cpp_extensions.py 217 KB
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# Copyright (c) 2022-2024, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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#
# See LICENSE for license information.
"""JAX te custom call"""
from abc import ABCMeta, abstractmethod
from dataclasses import dataclass
from typing import Tuple
from functools import partial, reduce
import operator
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import os
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import warnings

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import numpy as np
import jax.numpy as jnp
from jax.lib import xla_client
from jax import core, dtypes
from jax.interpreters import xla, mlir
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from jax.experimental.custom_partitioning import custom_partitioning
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from jax.interpreters.mlir import ir, dtype_to_ir_type
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from jax.sharding import PartitionSpec, NamedSharding
from jax._src.interpreters import batching
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from jax._src import dispatch

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import transformer_engine_jax
from transformer_engine_jax import DType as TEDType
from transformer_engine_jax import NVTE_Bias_Type
from transformer_engine_jax import NVTE_Mask_Type
from transformer_engine_jax import NVTE_QKV_Layout
from transformer_engine_jax import NVTE_Fused_Attn_Backend

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from .sharding import all_reduce_max_along_all_axes_except_PP
from .sharding import all_reduce_sum_along_dp_fsdp
from .sharding import get_all_mesh_axes, num_of_devices
from .sharding import get_padded_spec as te_get_padded_spec
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try:
    from jaxlib.hlo_helpers import custom_call
except ImportError:
    # Newer JAX changed its API. But we want to support a few JAX
    # version, so we still need this import.
    pass

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for _name, _value in transformer_engine_jax.registrations().items():
    xla_client.register_custom_call_target(_name, _value, platform="CUDA")


def te_dtype_to_jax_dtype(te_dtype):
    """
    convert TE dtype to jax dtype
    """
    assert isinstance(te_dtype, TEDType)
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    converter = {
        TEDType.kFloat32: jnp.float32,
        TEDType.kFloat16: jnp.float16,
        TEDType.kBFloat16: jnp.bfloat16,
        TEDType.kInt32: jnp.int32,
        TEDType.kInt64: jnp.int64,
        TEDType.kFloat8E4M3: jnp.float8_e4m3fn,
        TEDType.kFloat8E5M2: jnp.float8_e5m2,
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        TEDType.kByte: jnp.uint8
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    }

    if te_dtype not in converter:
        raise ValueError(f"Unsupported {te_dtype=}")

    return converter.get(te_dtype)
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def te_dtype_to_ir_dtype(te_dtype):
    """
    convert TE dtype to MLIR dtype
    """
    return dtype_to_ir_type(np.dtype(te_dtype_to_jax_dtype(te_dtype)))


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def jax_dtype_to_ir_dtype(jax_dtype):
    """
    convert Jax dtype to MLIR dtype
    """
    return dtype_to_ir_type(np.dtype(jax_dtype))


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def jax_dtype_to_te_dtype(jax_dtype):
    """
    convert jax dtype to TE dtype
    """
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    jax_dtype = dtypes.canonicalize_dtype(jax_dtype)
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    converter = {
        jnp.float32.dtype: TEDType.kFloat32,
        jnp.float16.dtype: TEDType.kFloat16,
        jnp.bfloat16.dtype: TEDType.kBFloat16,
        jnp.int32.dtype: TEDType.kInt32,
        jnp.int64.dtype: TEDType.kInt64,
        jnp.float8_e4m3fn.dtype: TEDType.kFloat8E4M3,
        jnp.float8_e5m2.dtype: TEDType.kFloat8E5M2,
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        jnp.uint8.dtype: TEDType.kByte,
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    }
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    if jax_dtype not in converter:
        raise ValueError(f"Unsupported {jax_dtype=}")
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    return converter.get(jax_dtype)
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def get_padded_spec(arg_info):
    """
    Get padded spec for partitioning from arguments' information
    """
    if arg_info.sharding is None:
        return te_get_padded_spec(None, arg_info.ndim)
    ndim, spec = arg_info.ndim, arg_info.sharding.spec
    return te_get_padded_spec(spec, ndim)
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def _check_valid_batch_dims(bdims):
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    """
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    Assert out non-supported bath dims
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    """
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    for dim in bdims:
        assert dim in [0, None], \
            "Currently only support batch_dim in [0, None], " \
            f"but got {dim=}"
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class BasePrimitive(metaclass=ABCMeta):
    """
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    jax primitive
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    """

    @staticmethod
    @abstractmethod
    def abstract():
        """
        to describe computing graph
        """
        return NotImplemented

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    @classmethod
    def outer_abstract(cls, *args, **kwargs):
        """
        optional abstract wrapper to eliminate workspace tensors
        """
        return cls.abstract(*args, **kwargs)

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    @staticmethod
    @abstractmethod
    def lowering():
        """
        to describe MLIR
        """
        return NotImplemented

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    @staticmethod
    @abstractmethod
    def impl():
        """
        to describe implementation
        """
        return NotImplemented

    @staticmethod
    @abstractmethod
    def batcher():
        """
        to describe batch rules for vmap
        """
        return NotImplemented

    @staticmethod
    @abstractmethod
    def infer_sharding_from_operands():
        """
        to describe infer_sharding_from_operands for custom_partitioning
        """
        return NotImplemented

    @staticmethod
    @abstractmethod
    def partition():
        """
        to describe partition for custom_partitioning
        """
        return NotImplemented

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def register_primitive(cls):
    """
    register jax primitive
    """
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    def name_of_wrapper_p():
        return cls.name + "_wrapper"

    inner_p = core.Primitive(cls.name)
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    dispatch.prim_requires_devices_during_lowering.add(inner_p)
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    inner_p.multiple_results = cls.multiple_results
    inner_p.def_impl(partial(xla.apply_primitive, inner_p))
    inner_p.def_abstract_eval(cls.abstract)
    mlir.register_lowering(inner_p, cls.lowering, platform='cuda')
    cls.inner_primitive = inner_p

    outer_p = core.Primitive(name_of_wrapper_p())
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    dispatch.prim_requires_devices_during_lowering.add(outer_p)
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    outer_p.multiple_results = cls.multiple_results
    outer_p.def_impl(cls.impl)
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    outer_p.def_abstract_eval(cls.outer_abstract)
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    batching.primitive_batchers[outer_p] = cls.batcher
    outer_p_lower = custom_partitioning(cls.impl, static_argnums=cls.impl_static_args)
    outer_p_lower.def_partition(infer_sharding_from_operands=cls.infer_sharding_from_operands,
                                partition=cls.partition)
    mlir.register_lowering(outer_p,
                           mlir.lower_fun(outer_p_lower, multiple_results=cls.multiple_results))
    cls.outer_primitive = outer_p
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@dataclass
class CustomCallArgsWrapper:
    """
    wrapper of XLA custom call args
    """

    def __init__(self,
                 output_types,
                 operands,
                 operand_shapes,
                 operand_specific_layouts=None,
                 output_specific_layouts=None):
        self.output_types = output_types
        self.operands = operands
        self.operand_layouts = CustomCallArgsWrapper.generate_layouts(operand_shapes,
                                                                      operand_specific_layouts)
        output_shapes = [x.shape for x in output_types]
        self.output_layouts = CustomCallArgsWrapper.generate_layouts(output_shapes,
                                                                     output_specific_layouts)

    @staticmethod
    def generate_layouts(shapes, specific_layouts):
        """
        setup layouts for XLA custom call
        """

        def default_layout(shape):
            return range(len(shape) - 1, -1, -1)

        if specific_layouts is None:
            specific_layouts = {}

        layouts = []
        for idx, shape in enumerate(shapes):
            if idx in specific_layouts:
                layouts.append(specific_layouts[idx])
            else:
                layouts.append(default_layout(shape))
        return layouts


def custom_caller(name, args, opaque, has_side_effect, **kwargs):
    """
    XLA custom call warpper
    """
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    if hasattr(mlir, "custom_call"):
        out = mlir.custom_call(name,
                               result_types=args.output_types,
                               operands=args.operands,
                               operand_layouts=args.operand_layouts,
                               result_layouts=args.output_layouts,
                               backend_config=opaque,
                               has_side_effect=has_side_effect,
                               **kwargs).results
    else:
        # Need to disable one pylint error as the second function
        # parameter name recenctly in JAX. Otherwise we won't be
        # compatible with multiple JAX version.
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        out = custom_call(    # pylint: disable=too-many-function-args
            name,
            args.output_types,
            operands=args.operands,
            operand_layouts=args.operand_layouts,
            result_layouts=args.output_layouts,
            backend_config=opaque,
            has_side_effect=has_side_effect,
            **kwargs)
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    return out


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class LayerNormFwdPrimitive(BasePrimitive):
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    """
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    Layer Normalization Forward Primitive
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    """
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    name = "te_layernorm_forward"
    multiple_results = True
    impl_static_args = (3, 4)    # zero_centered_gamma, epsilon
    inner_primitive = None
    outer_primitive = None
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    @staticmethod
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    def abstract(x_aval, gamma_aval, beta_aval, **kwargs):
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        """
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        LayerNorm fwd inner primitive abstract
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        """
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        x_dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        assert x_dtype in [jnp.float32, jnp.float16, jnp.bfloat16]

        mu_rsigama_dtype = jnp.float32
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        out_aval = core.raise_to_shaped(x_aval)
        mu_aval = rsigma_aval = out_aval.update(shape=out_aval.shape[:-1], dtype=mu_rsigama_dtype)
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        assert gamma_aval.size == beta_aval.size
        hidden_size = gamma_aval.size
        assert x_aval.size % hidden_size == 0

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        wkspace_info, barrier_info = transformer_engine_jax.get_layernorm_fwd_workspace_sizes(
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            x_aval.size // hidden_size,    # batch size
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            hidden_size,
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            jax_dtype_to_te_dtype(x_aval.dtype),    # in te_dtype
            jax_dtype_to_te_dtype(gamma_aval.dtype),    # weight te_dtype
            jax_dtype_to_te_dtype(x_aval.dtype),    # out te_dtype (same as input for Fp16/Bf16)
            True,
            kwargs['zero_centered_gamma'],
            kwargs['epsilon'])
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        wkspace_aval = out_aval.update(shape=wkspace_info[0],
                                       dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
        barrier_aval = out_aval.update(shape=barrier_info[0],
                                       dtype=te_dtype_to_jax_dtype(barrier_info[1]))

        return out_aval, mu_aval, rsigma_aval, wkspace_aval, barrier_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        LayerNorm fwd outer primitive abstract
        """
        out_aval, mu_aval, rsigma_aval, _, _ = \
            LayerNormFwdPrimitive.abstract(*args, **kwargs)
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        return out_aval, mu_aval, rsigma_aval
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    @staticmethod
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    def lowering(ctx, x, gamma, beta, *, zero_centered_gamma, epsilon):
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        """
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        LayerNorm fwd lowering rules
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        """
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        x_aval, gamma_aval, beta_aval = ctx.avals_in
        assert gamma_aval.dtype == beta_aval.dtype
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        g_type = ir.RankedTensorType(gamma.type)
        g_shape = g_type.shape
        b_type = ir.RankedTensorType(beta.type)
        b_shape = b_type.shape
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        assert g_type == b_type
        assert g_shape == b_shape
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        # Output shape is same as the input shape, but the output type is same as the weight type.
        # See ln_api.cpp
        output_type = g_type.element_type
        ir_mu_dtype = ir.F32Type.get()
        ir_rsigma_dtype = ir.F32Type.get()
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        out_shape = x_shape
        hidden_size = reduce(operator.mul, g_shape)
        batch_shape = out_shape[:-1]
        batch_size = reduce(operator.mul, x_shape) // hidden_size
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        wkspace_aval, barrier_aval = ctx.avals_out[-2:]

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        out_types = [
            ir.RankedTensorType.get(out_shape, output_type),
            ir.RankedTensorType.get(batch_shape, ir_mu_dtype),
            ir.RankedTensorType.get(batch_shape, ir_rsigma_dtype),
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            ir.RankedTensorType.get(wkspace_aval.shape, jax_dtype_to_ir_dtype(wkspace_aval.dtype)),
            ir.RankedTensorType.get(barrier_aval.shape, jax_dtype_to_ir_dtype(barrier_aval.dtype))
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        ]
        operands = [x, gamma, beta]
        operand_shapes = [x_shape, g_shape, b_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
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        sm_margin = int(os.getenv("NVTE_FWD_LAYERNORM_SM_MARGIN", "0"))

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        opaque = transformer_engine_jax.pack_norm_descriptor(
            batch_size,
            hidden_size,
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            wkspace_aval.size,
            barrier_aval.size,
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            0,    # no dgamma_part in FWD pass
            0,    # no dbeta_part in BWD pass
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            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(gamma_aval.dtype),
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            jax_dtype_to_te_dtype(wkspace_aval.dtype),
            jax_dtype_to_te_dtype(barrier_aval.dtype),
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            TEDType.kByte,    # dummy dgamma_part te_dtype
            TEDType.kByte,    # dummy dbeta_part te_dtype
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            zero_centered_gamma,
            epsilon,
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            sm_margin,
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        )
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        out = custom_caller(LayerNormFwdPrimitive.name, args, opaque, False)
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        return out
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    @staticmethod
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    def impl(x, gamma, beta, zero_centered_gamma, epsilon):
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        """
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        to describe implementation
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        """
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        assert LayerNormFwdPrimitive.inner_primitive is not None
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        out, mu, rsigma, _, _ = LayerNormFwdPrimitive.inner_primitive.bind(
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            x, gamma, beta, zero_centered_gamma=zero_centered_gamma, epsilon=epsilon)
        return out, mu, rsigma

    @staticmethod
    def batcher(batched_args, batch_dims, *, zero_centered_gamma, epsilon):
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        """
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        to describe batch rules for vmap
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        """
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        _check_valid_batch_dims(batch_dims)
        assert LayerNormFwdPrimitive.outer_primitive is not None
        x, gamma, beta = batched_args
        x_bdim, _, _ = batch_dims
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        out_bdims = x_bdim, x_bdim, x_bdim
        return LayerNormFwdPrimitive.outer_primitive.bind(x,
                                                          gamma,
                                                          beta,
                                                          zero_centered_gamma=zero_centered_gamma,
                                                          epsilon=epsilon), out_bdims
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    @staticmethod
    def infer_sharding_from_operands(zero_centered_gamma, epsilon, mesh, arg_infos, result_infos):
        del zero_centered_gamma, epsilon, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {LayerNormFwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
        mu_sharding = rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
        return (out_sharding, mu_sharding, rsigma_sharding)
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    @staticmethod
    def partition(zero_centered_gamma, epsilon, mesh, arg_infos, result_infos):
        del result_infos
        x_spec, g_spec, b_spec = map(get_padded_spec, arg_infos)
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {LayerNormFwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
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        if g_spec[-1] is not None:
            warnings.warn(
                f"{LayerNormFwdPrimitive.name} does not support sharding of parameter gamma " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )
        if b_spec[-1] is not None:
            warnings.warn(
                f"{LayerNormFwdPrimitive.name} does not support sharding of parameter beta " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )


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        x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
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        g_sharding = NamedSharding(mesh, PartitionSpec(None))
        b_sharding = NamedSharding(mesh, PartitionSpec(None))
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        out_sharding = x_sharding
        mu_sharding = rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
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        arg_shardings = (x_sharding, g_sharding, b_sharding)
        out_shardings = (out_sharding, mu_sharding, rsigma_sharding)
        impl = partial(LayerNormFwdPrimitive.impl,
                       zero_centered_gamma=zero_centered_gamma,
                       epsilon=epsilon)
        return mesh, impl, out_shardings, arg_shardings
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register_primitive(LayerNormFwdPrimitive)
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def layernorm_fwd(x: jnp.ndarray, gamma: jnp.ndarray, beta: jnp.ndarray, zero_centered_gamma: bool,
                  epsilon: float):
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    """
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    Wrapper for TE layernorm fwd
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    """
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    return LayerNormFwdPrimitive.outer_primitive.bind(x,
                                                      gamma,
                                                      beta,
                                                      zero_centered_gamma=zero_centered_gamma,
                                                      epsilon=epsilon)
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class LayerNormBwdPrimitive(BasePrimitive):
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    """
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    Layer Normalization Backward Primitive
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    """
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    name = "te_layernorm_backward"
    multiple_results = True
    impl_static_args = (5, 6)    # zero_centered_gamma, epsilon
    inner_primitive = None
    outer_primitive = None
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    @staticmethod
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    def abstract(dz_aval, x_aval, mu_aval, rsigma_aval, gamma_aval, **kwargs):
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        """
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        Layernorm bwd inner primitive abstract
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        """
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        w_dtype = dtypes.canonicalize_dtype(gamma_aval.dtype)
        mu_dtype = dtypes.canonicalize_dtype(mu_aval.dtype)
        rsigma_dtype = dtypes.canonicalize_dtype(rsigma_aval.dtype)

        assert dtypes.canonicalize_dtype(dz_aval.dtype) == w_dtype
        assert dz_aval.shape == x_aval.shape
        assert mu_aval.shape == rsigma_aval.shape == x_aval.shape[:-1]
        assert mu_dtype == rsigma_dtype == jnp.float32
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        dx_aval = core.raise_to_shaped(dz_aval)
        dgamma_aval = dbeta_aval = core.raise_to_shaped(gamma_aval)
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        wkspace_info, barrier_info, dgamma_part_info, dbeta_part_info = \
            transformer_engine_jax.get_layernorm_bwd_workspace_sizes(
                x_aval.size // gamma_aval.size,           # batch size
                gamma_aval.size,                          # hidden size
                jax_dtype_to_te_dtype(x_aval.dtype),      # input te_dtype
                jax_dtype_to_te_dtype(gamma_aval.dtype),  # weight te_dtype
                True, kwargs['zero_centered_gamma'], kwargs['epsilon']
            )
        wkspace_aval = dx_aval.update(shape=wkspace_info[0],
                                      dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
        barrier_aval = dx_aval.update(shape=barrier_info[0],
                                      dtype=te_dtype_to_jax_dtype(barrier_info[1]))
        dgamma_part_aval = dgamma_aval.update(shape=dgamma_part_info[0],
                                              dtype=te_dtype_to_jax_dtype(dgamma_part_info[1]))
        dbeta_part_aval = dbeta_aval.update(shape=dbeta_part_info[0],
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                                            dtype=te_dtype_to_jax_dtype(dbeta_part_info[1]))
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        return dx_aval, dgamma_aval, dbeta_aval, wkspace_aval, barrier_aval, \
               dgamma_part_aval, dbeta_part_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        LayerNorm bwd outer primitive abstract
        """
        dx_aval, dgamma_aval, dbeta_aval, _, _, _, _ = \
            LayerNormBwdPrimitive.abstract(*args, **kwargs)
551
        return dx_aval, dgamma_aval, dbeta_aval
552
553

    @staticmethod
554
    def lowering(ctx, dz, x, mu, rsigma, gamma, *, zero_centered_gamma, epsilon):
555
        """
556
        Layernorm bwd lowering rules
557
        """
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        _, x_aval, _, _, gamma_aval = ctx.avals_in
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        g_type = ir.RankedTensorType(gamma.type)
        g_shape = g_type.shape
        b_type = ir.RankedTensorType(gamma.type)
        b_shape = b_type.shape
        assert g_type == b_type
        assert g_shape == b_shape

        dz_shape = ir.RankedTensorType(dz.type).shape
        mu_shape = ir.RankedTensorType(mu.type).shape
        rsigma_shape = ir.RankedTensorType(rsigma.type).shape

        hidden_size = reduce(operator.mul, g_shape)
        batch_size = reduce(operator.mul, x_shape) // hidden_size
574
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        out_types = [
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            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
578
        ]
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        operands = [dz, mu, rsigma, x, gamma]
        operand_shapes = [dz_shape, mu_shape, rsigma_shape, x_shape, g_shape]
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        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

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        sm_margin = int(os.getenv("NVTE_BWD_LAYERNORM_SM_MARGIN", "0"))

586
        wkspace_aval, barrier_aval, dgamma_part_aval, dbeta_part_aval = ctx.avals_out[-4:]
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        opaque = transformer_engine_jax.pack_norm_descriptor(
            batch_size,
            hidden_size,
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            wkspace_aval.size,
            barrier_aval.size,
            dgamma_part_aval.size,
            dbeta_part_aval.size,
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            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(gamma_aval.dtype),
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            jax_dtype_to_te_dtype(wkspace_aval.dtype),
            jax_dtype_to_te_dtype(barrier_aval.dtype),
            jax_dtype_to_te_dtype(dgamma_part_aval.dtype),
            jax_dtype_to_te_dtype(dbeta_part_aval.dtype),
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            zero_centered_gamma,
            epsilon,
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            sm_margin,
603
        )
604

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        out = custom_caller(LayerNormBwdPrimitive.name, args, opaque, False)
606

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        return out
608

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    @staticmethod
    def impl(dz, x, mu, rsigma, gamma, zero_centered_gamma, epsilon):
        assert LayerNormBwdPrimitive.inner_primitive is not None
612
        dx, dgamma, dbeta, _, _, _, _ = LayerNormBwdPrimitive.inner_primitive.bind(
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            dz, x, mu, rsigma, gamma, zero_centered_gamma=zero_centered_gamma, epsilon=epsilon)
        return dx, dgamma, dbeta
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    @staticmethod
    def batcher(batched_args, batch_dims, *, zero_centered_gamma, epsilon):
        _check_valid_batch_dims(batch_dims)
        assert LayerNormBwdPrimitive.outer_primitive is not None
        dz, x, mu, rsigma, gamma = batched_args
        _, x_bdim, _, _, gamma_bdim = batch_dims

        out_bdims = x_bdim, gamma_bdim, gamma_bdim
        return LayerNormBwdPrimitive.outer_primitive.bind(dz,
                                                          x,
                                                          mu,
                                                          rsigma,
                                                          gamma,
                                                          zero_centered_gamma=zero_centered_gamma,
                                                          epsilon=epsilon), out_bdims
631

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    @staticmethod
    def infer_sharding_from_operands(zero_centered_gamma, epsilon, mesh, arg_infos, result_infos):
        del zero_centered_gamma, epsilon, result_infos
        x_spec = get_padded_spec(arg_infos[1])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {LayerNormBwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        g_b_spec = get_padded_spec(arg_infos[4])
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        if g_b_spec[-1] is not None:
            warnings.warn(
                f"{LayerNormBwdPrimitive.name} does not support sharding of gradients " \
                f"of gamma and beta of Layernorm " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )

650
        dx_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
651
        dgamma_sharding = dbeta_sharding = NamedSharding(mesh, PartitionSpec(None))
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        return dx_sharding, dgamma_sharding, dbeta_sharding
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    @staticmethod
    def partition(zero_centered_gamma, epsilon, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[1])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {LayerNormBwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        g_b_spec = get_padded_spec(arg_infos[4])
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        if g_b_spec[-1] is not None:
            warnings.warn(
                f"{LayerNormBwdPrimitive.name} does not support sharding of gradients " \
                f"of gamma and beta of Layernorm " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )

672
        dx_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
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        dgamma_sharding = dbeta_sharding = NamedSharding(mesh, PartitionSpec(None))
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        out_shardings = dx_sharding, dgamma_sharding, dbeta_sharding
        x_shardings = (dx_sharding,) * 2    # dz and x should have the same sharding.
        mu_shardings = (NamedSharding(mesh, PartitionSpec(*x_spec[:-1])),) * 2
677
        arg_shardings = (*x_shardings, *mu_shardings, NamedSharding(mesh, PartitionSpec(None)))
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        def sharded_impl(dz, x, mu, rsigma, gamma):
            local_dx, local_dgamma, local_dbeta = \
                LayerNormBwdPrimitive.impl(dz, x, mu, rsigma, gamma,
                     zero_centered_gamma=zero_centered_gamma,
                     epsilon=epsilon)
            global_dgamma = all_reduce_sum_along_dp_fsdp(local_dgamma)
            global_dbeta = all_reduce_sum_along_dp_fsdp(local_dbeta)
            return local_dx, global_dgamma, global_dbeta

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(LayerNormBwdPrimitive)


def layernorm_bwd(dz: jnp.ndarray, x: jnp.ndarray, mu: jnp.ndarray, rsigma: jnp.ndarray,
                  gamma: jnp.ndarray, zero_centered_gamma: bool, epsilon: float):
696
    """
697
    Wrapper for TE layernorm bwd
698
    """
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    return LayerNormBwdPrimitive.outer_primitive.bind(dz,
                                                      x,
                                                      mu,
                                                      rsigma,
                                                      gamma,
                                                      zero_centered_gamma=zero_centered_gamma,
                                                      epsilon=epsilon)
706
707


708
class RmsNormFwdPrimitive(BasePrimitive):
709
    """
710
    RMS Normalization Forward Primitive
711
    """
712
    name = "te_rmsnorm_forward"
713
    multiple_results = True
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    impl_static_args = (2,)    # epsilon
    inner_primitive = None
    outer_primitive = None
717
718

    @staticmethod
719
    def abstract(x_aval, gamma_aval, **kwargs):
720
        """
721
        RMSNorm fwd inner primitive abstract
722
        """
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        x_dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        assert x_dtype in [jnp.float32, jnp.float16, jnp.bfloat16]

        rsigama_dtype = jnp.float32

        out_aval = core.raise_to_shaped(x_aval)
        rsigma_aval = out_aval.update(shape=out_aval.shape[:-1], dtype=rsigama_dtype)
730

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732
        hidden_size = gamma_aval.size
        assert x_aval.size % hidden_size == 0
733

734
        wkspace_info, barrier_info = transformer_engine_jax.get_layernorm_fwd_workspace_sizes(
735
            x_aval.size // hidden_size,    # batch size
736
            hidden_size,
737
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742
            jax_dtype_to_te_dtype(x_aval.dtype),    # in te_dtype
            jax_dtype_to_te_dtype(gamma_aval.dtype),    # weight te_dtype
            jax_dtype_to_te_dtype(x_aval.dtype),    # out te_dtype (same as input for Fp16/Bf16)
            False,
            False,
            kwargs['epsilon'])
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        wkspace_aval = out_aval.update(shape=wkspace_info[0],
                                       dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
        barrier_aval = out_aval.update(shape=barrier_info[0],
                                       dtype=te_dtype_to_jax_dtype(barrier_info[1]))

        return out_aval, rsigma_aval, wkspace_aval, barrier_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        RMSNorm fwd outer primitive abstract
        """
        out_aval, rsigma_aval, _, _ = RmsNormFwdPrimitive.abstract(*args, **kwargs)
756
        return out_aval, rsigma_aval
757
758

    @staticmethod
759
    def lowering(ctx, x, gamma, *, epsilon):
760
        """
761
        RMSNorm fwd lowering rules
762
        """
763
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773
        x_aval, gamma_aval = ctx.avals_in
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        g_type = ir.RankedTensorType(gamma.type)
        g_shape = g_type.shape
        rsigma_element_type = ir.F32Type.get()

        out_shape = x_shape
        hidden_size = reduce(operator.mul, g_shape)
        batch_shape = out_shape[:-1]
        batch_size = reduce(operator.mul, x_shape) // hidden_size
774

775
776
        wkspace_aval, barrier_aval = ctx.avals_out[-2:]

777
        out_types = [
778
779
            ir.RankedTensorType.get(out_shape, x_type.element_type),
            ir.RankedTensorType.get(batch_shape, rsigma_element_type),
780
781
            ir.RankedTensorType.get(wkspace_aval.shape, jax_dtype_to_ir_dtype(wkspace_aval.dtype)),
            ir.RankedTensorType.get(barrier_aval.shape, jax_dtype_to_ir_dtype(barrier_aval.dtype))
782
        ]
783
784
        operands = [x, gamma]
        operand_shapes = [x_shape, g_shape]
785
786
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

787
788
        sm_margin = int(os.getenv("NVTE_FWD_LAYERNORM_SM_MARGIN", "0"))

789
790
791
        opaque = transformer_engine_jax.pack_norm_descriptor(
            batch_size,
            hidden_size,
792
793
            wkspace_aval.size,
            barrier_aval.size,
794
795
            0,    # no dgamma_part in FWD pass
            0,    # no dbeta_part in BWD pass
796
797
            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(gamma_aval.dtype),
798
799
            jax_dtype_to_te_dtype(wkspace_aval.dtype),
            jax_dtype_to_te_dtype(barrier_aval.dtype),
800
801
            TEDType.kByte,    # dummy dgamma_part te_dtype
            TEDType.kByte,    # dummy dbeta_part te_dtype
802
803
            False,    # RMSNorm doesn't support zero_centered_gamma
            epsilon,
804
            sm_margin,
805
        )
806

807
        out = custom_caller(RmsNormFwdPrimitive.name, args, opaque, False)
808
809
810
811

        return out

    @staticmethod
812
    def impl(x, gamma, epsilon):
813
        """
814
        to describe implementation
815
        """
816
        assert RmsNormFwdPrimitive.inner_primitive is not None
817
        out, rsigma, _, _ = RmsNormFwdPrimitive.inner_primitive.bind(x, gamma, epsilon=epsilon)
818
        return out, rsigma
819
820

    @staticmethod
821
    def batcher(batched_args, batch_dims, *, epsilon):
822
        """
823
        to describe batch rules for vmap
824
        """
825
826
827
828
        _check_valid_batch_dims(batch_dims)
        assert RmsNormFwdPrimitive.outer_primitive is not None
        x, gamma = batched_args
        x_bdim, _ = batch_dims
829

830
831
        out_bdims = x_bdim, x_bdim
        return RmsNormFwdPrimitive.outer_primitive.bind(x, gamma, epsilon=epsilon), out_bdims
832

833
834
835
836
837
838
839
840
841
842
843
844
845
    @staticmethod
    def infer_sharding_from_operands(epsilon, mesh, arg_infos, result_infos):
        del epsilon, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {RmsNormFwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
        rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
        return (out_sharding, rsigma_sharding)
846

847
848
849
850
851
852
853
854
855
856
    @staticmethod
    def partition(epsilon, mesh, arg_infos, result_infos):
        del result_infos
        x_spec, g_spec = map(get_padded_spec, arg_infos)
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {RmsNormFwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
857
858
859
860
861
862
        if g_spec[-1] is not None:
            warnings.warn(
                f"{RmsNormFwdPrimitive.name} does not support sharding of parameter gamma " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )

863
        x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
864
        g_sharding = NamedSharding(mesh, PartitionSpec(None))
865
866
867
868
869
870
        out_sharding = x_sharding
        rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
        arg_shardings = (x_sharding, g_sharding)
        out_shardings = (out_sharding, rsigma_sharding)
        impl = partial(RmsNormFwdPrimitive.impl, epsilon=epsilon)
        return mesh, impl, out_shardings, arg_shardings
871
872


873
register_primitive(RmsNormFwdPrimitive)
874
875


876
def rmsnorm_fwd(x: jnp.ndarray, gamma: jnp.ndarray, epsilon: float):
877
    """
878
    Wrapper for TE rmsnorm fwd
879
    """
880
    return RmsNormFwdPrimitive.outer_primitive.bind(x, gamma, epsilon=epsilon)
881
882


883
class RmsNormBwdPrimitive(BasePrimitive):
884
    """
885
    RMS Normalization Backward Primitive
886
    """
887
    name = "te_rmsnorm_backward"
888
    multiple_results = True
889
890
891
    impl_static_args = (4,)    # epsilon
    inner_primitive = None
    outer_primitive = None
892
893

    @staticmethod
894
    def abstract(dz_aval, x_aval, rsigma_aval, gamma_aval, **kwargs):
895
        """
896
        RMSNorm bwd inner primitive abstract
897
        """
898
899
900
901
902
903
904
905
906
907
        w_dtype = dtypes.canonicalize_dtype(gamma_aval.dtype)
        rsigma_dtype = dtypes.canonicalize_dtype(rsigma_aval.dtype)

        assert dtypes.canonicalize_dtype(dz_aval.dtype) == w_dtype
        assert dz_aval.shape == x_aval.shape
        assert rsigma_aval.shape == x_aval.shape[:-1]
        assert rsigma_dtype == jnp.float32

        dx_aval = core.raise_to_shaped(dz_aval)
        dgamma_aval = core.raise_to_shaped(gamma_aval)
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931

        wkspace_info, barrier_info, dgamma_part_info, _ = \
            transformer_engine_jax.get_layernorm_bwd_workspace_sizes(
                x_aval.size // gamma_aval.size,           # batch size
                gamma_aval.size,                          # hidden size
                jax_dtype_to_te_dtype(x_aval.dtype),      # in te_dtype
                jax_dtype_to_te_dtype(gamma_aval.dtype),  # weight te_dtype
                False, False, kwargs['epsilon']
            )
        wkspace_aval = dx_aval.update(shape=wkspace_info[0],
                                      dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
        barrier_aval = dx_aval.update(shape=barrier_info[0],
                                      dtype=te_dtype_to_jax_dtype(barrier_info[1]))
        dgamma_part_aval = dgamma_aval.update(shape=dgamma_part_info[0],
                                              dtype=te_dtype_to_jax_dtype(dgamma_part_info[1]))

        return dx_aval, dgamma_aval, wkspace_aval, barrier_aval, dgamma_part_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        RMSNorm bwd outer primitive abstract
        """
        dx_aval, dgamma_aval, _, _, _ = RmsNormBwdPrimitive.abstract(*args, **kwargs)
932
933
934
935
        return dx_aval, dgamma_aval

    @staticmethod
    def lowering(ctx, dz, x, rsigma, gamma, *, epsilon):
936
        """
937
        RMSNorm bwd lowering rules
938
        """
939
940
941
942
943
944
945
946
947
948
        _, x_aval, _, gamma_aval = ctx.avals_in
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        g_type = ir.RankedTensorType(gamma.type)
        g_shape = g_type.shape
        dz_shape = ir.RankedTensorType(dz.type).shape
        rsigma_shape = ir.RankedTensorType(rsigma.type).shape

        hidden_size = reduce(operator.mul, g_shape)
        batch_size = reduce(operator.mul, x_shape) // hidden_size
949

950
951
        wkspace_aval, barrier_aval, dgamma_part_aval = ctx.avals_out[-3:]

952
        out_types = [
953
954
            ir.RankedTensorType.get(x_shape, x_type.element_type),
            ir.RankedTensorType.get(g_shape, g_type.element_type),
955
956
957
958
            ir.RankedTensorType.get(wkspace_aval.shape, jax_dtype_to_ir_dtype(wkspace_aval.dtype)),
            ir.RankedTensorType.get(barrier_aval.shape, jax_dtype_to_ir_dtype(barrier_aval.dtype)),
            ir.RankedTensorType.get(dgamma_part_aval.shape,
                                    jax_dtype_to_ir_dtype(dgamma_part_aval.dtype))
959
        ]
960
961
        operands = [dz, rsigma, x, gamma]
        operand_shapes = [dz_shape, rsigma_shape, x_shape, g_shape]
962
963
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

964
965
        sm_margin = int(os.getenv("NVTE_BWD_LAYERNORM_SM_MARGIN", "0"))

966
967
968
        opaque = transformer_engine_jax.pack_norm_descriptor(
            batch_size,
            hidden_size,
969
970
971
            wkspace_aval.size,
            barrier_aval.size,
            dgamma_part_aval.size,
972
            0,    # no dbeta_part for RMSnorm
973
974
            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(gamma_aval.dtype),
975
976
977
            jax_dtype_to_te_dtype(wkspace_aval.dtype),
            jax_dtype_to_te_dtype(barrier_aval.dtype),
            jax_dtype_to_te_dtype(dgamma_part_aval.dtype),
978
            TEDType.kByte,    # dummy dbeta_part te_dtype
979
980
            False,    # RMSNorm doesn't support zero_centered_gamma
            epsilon,
981
            sm_margin,
982
        )
983

984
        out = custom_caller(RmsNormBwdPrimitive.name, args, opaque, False)
985
986
987

        return out

988
989
990
    @staticmethod
    def impl(dz, x, rsigma, gamma, epsilon):
        assert RmsNormBwdPrimitive.inner_primitive is not None
991
992
        dx, dgamma, _, _, _ = \
            RmsNormBwdPrimitive.inner_primitive.bind(dz, x, rsigma, gamma, epsilon=epsilon)
993
994
995
996
997
998
999
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014
1015
1016
        return dx, dgamma

    @staticmethod
    def batcher(batched_args, batch_dims, *, epsilon):
        _check_valid_batch_dims(batch_dims)
        assert RmsNormBwdPrimitive.outer_primitive is not None
        dz, x, rsigma, gamma = batched_args
        _, x_bdim, _, gamma_bdim = batch_dims

        out_bdims = x_bdim, gamma_bdim
        return RmsNormBwdPrimitive.outer_primitive.bind(dz, x, rsigma, gamma,
                                                        epsilon=epsilon), out_bdims

    @staticmethod
    def infer_sharding_from_operands(epsilon, mesh, arg_infos, result_infos):
        del epsilon, result_infos
        x_spec = get_padded_spec(arg_infos[1])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {RmsNormBwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        g_spec = get_padded_spec(arg_infos[3])
1017
1018
1019
1020
1021
        if g_spec[-1] is not None:
            warnings.warn(
                f"{RmsNormBwdPrimitive.name} does not support sharding of parameter gamma " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )
1022
        dx_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
1023
        dgamma_sharding = NamedSharding(mesh, PartitionSpec(None))
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
1034
1035
1036
        return dx_sharding, dgamma_sharding

    @staticmethod
    def partition(epsilon, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[1])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {RmsNormBwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        g_spec = get_padded_spec(arg_infos[3])
1037
1038
1039
1040
1041
        if g_spec[-1] is not None:
            warnings.warn(
                f"{RmsNormBwdPrimitive.name} does not support sharding of parameter gamma " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )
1042
        dx_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
1043
        dgamma_sharding = NamedSharding(mesh, PartitionSpec(None))
1044
1045
1046
        out_shardings = dx_sharding, dgamma_sharding
        x_shardings = (dx_sharding,) * 2    # dz and x should have the same sharding.
        rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
1047
        arg_shardings = (*x_shardings, rsigma_sharding, NamedSharding(mesh, PartitionSpec(None)))
1048
1049
1050
1051
1052
1053
1054
1055
1056

        def sharded_impl(dz, x, rsigma, gamma):
            local_dx, local_dgamma = \
                RmsNormBwdPrimitive.impl(dz, x, rsigma, gamma, epsilon=epsilon)
            global_dgamma = all_reduce_sum_along_dp_fsdp(local_dgamma)
            return local_dx, global_dgamma

        return mesh, sharded_impl, out_shardings, arg_shardings

1057

1058
register_primitive(RmsNormBwdPrimitive)
1059
1060


1061
1062
def rmsnorm_bwd(dz: jnp.ndarray, x: jnp.ndarray, rsigma: jnp.ndarray, gamma: jnp.ndarray,
                epsilon: float):
1063
    """
1064
    Wrapper for TE layernorm bwd
1065
    """
1066
    return RmsNormBwdPrimitive.outer_primitive.bind(dz, x, rsigma, gamma, epsilon=epsilon)
1067
1068


1069
class SoftmaxPrimitive(BasePrimitive):
1070
    """
1071
    Softmax Primitive
1072
    """
1073
    max_k_seqlen_supported = 4096
1074
    name = "te_softmax_internal_placeholder"
1075
1076

    @staticmethod
1077
1078
1079
1080
1081
    @abstractmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        raise NotImplementedError
1082

1083
1084
1085
1086
1087
    @staticmethod
    def get_batch_per_block(k_seqlen: int) -> int:
        """Get batch per CTA in Softmax kernels"""
        threads_per_warp = 32
        threads_per_block = 128    # Depends on the kernel implmentation
1088

1089
1090
1091
1092
1093
1094
        pow2 = 1 << (k_seqlen - 1).bit_length()
        warp_size = pow2 if pow2 < threads_per_warp else threads_per_warp
        batches_per_warp = 2 if pow2 <= 128 else 1
        warps_per_block = threads_per_block // warp_size
        batches_per_block = warps_per_block * batches_per_warp
        return batches_per_block
1095
1096

    @staticmethod
1097
    def forward_abstract(logits_aval, scale_factor):
1098
        """
1099
        softmax_forward abstract
1100
        """
1101
1102
1103
1104
1105
1106
1107
1108
1109
        del scale_factor
        i_dtype = dtypes.canonicalize_dtype(logits_aval.dtype)
        assert i_dtype in [jnp.float16, jnp.bfloat16]
        i_shape = logits_aval.shape
        # Assume [...Batch, Head, Q_Seqlen, K_Seqlen]
        q_seqlen = i_shape[-2]
        k_seqlen = i_shape[-1]
        assert k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported
        assert q_seqlen > 1
1110

1111
1112
        out_aval = core.raise_to_shaped(logits_aval)
        return out_aval
1113

1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
    @staticmethod
    def forward_lowering(name, ctx, logits, *, scale_factor):
        """
        softmax_forward lowering rules
        """
        i_aval, = ctx.avals_in
        i_type = ir.RankedTensorType(logits.type)
        i_shape = i_type.shape
        # Assume [...Batch, Head, Q_Seqlen, K_Seqlen]
        batch = reduce(operator.mul, i_shape[:-3])
        pad_batch = batch
        heads = i_shape[-3]
        q_seqlen = i_shape[-2]
        k_seqlen = i_shape[-1]

        out_types = [ir.RankedTensorType.get(i_shape, i_type.element_type)]
        operands = [logits]
        operand_shapes = [i_shape]
1132
1133
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

1134
1135
1136
1137
        opaque = transformer_engine_jax.pack_softmax_descriptor(batch, pad_batch, heads, q_seqlen,
                                                                k_seqlen,
                                                                jax_dtype_to_te_dtype(i_aval.dtype),
                                                                scale_factor)
1138

1139
        out = custom_caller(name, args, opaque, False)
1140
1141
1142

        return [out]

1143
1144
1145
1146
1147
1148
1149
1150
    @staticmethod
    def forward_impl(primitive, logits, scale_factor):
        """
        softmax_forward implementation
        """
        assert primitive is not None
        output = primitive.bind(logits, scale_factor=scale_factor)
        return output
1151

1152
1153
1154
1155
1156
1157
1158
1159
    @staticmethod
    def forward_batcher(primitive, batched_args, batch_dims, *, scale_factor):
        """
        softmax_forward batcher
        """
        assert primitive is not None
        logits, = batched_args
        logits_bdim, = batch_dims
1160

1161
1162
        out_bdims = logits_bdim
        return primitive.bind(logits, scale_factor=scale_factor), out_bdims
1163

1164
1165
    @classmethod
    def forward_infer_sharding_from_operands(cls, scale_factor, mesh, arg_infos, result_infos):
1166
1167
1168
1169
1170
        """
        softmax_forward infer_sharding_from_operands
        """
        del scale_factor, result_infos    # Unused.
        logits_spec = get_padded_spec(arg_infos[0])
1171
1172
1173
1174
1175
1176
1177
        if logits_spec[-1] is not None:
            warnings.warn(
                f"Sharding the hidden dimension is not supported in {cls.name}! " \
                f"Forcing XLA to not shard the hidden dim, which might introduce extra " \
                f"collective ops and hurt performance."
            )
        out_sharding = NamedSharding(mesh, PartitionSpec(*logits_spec[:-1], None))
1178
        return out_sharding
1179

1180
1181
    @classmethod
    def forward_partition(cls, impl, scale_factor, mesh, arg_infos, result_infos):
1182
        """
1183
        softmax_forward partitioning
1184
        """
1185
        del result_infos
1186
1187
1188
1189
1190
1191
1192
1193
1194
        logits_spec = get_padded_spec(arg_infos[0])
        if logits_spec[-1] is not None:
            warnings.warn(
                f"Sharding the hidden dimension is not supported in {cls.name}! " \
                f"Forcing XLA to not shard the hidden dim, which might introduce extra " \
                f"collective ops and hurt performance."
            )
        out_shardings = NamedSharding(mesh, PartitionSpec(*logits_spec[:-1], None))
        arg_shardings = (out_shardings,)
1195
1196
        impl = partial(impl, scale_factor=scale_factor)
        return mesh, impl, out_shardings, arg_shardings
1197

1198
1199
1200
1201
1202
1203
1204
1205
1206
1207
    @staticmethod
    def backward_abstract(dz_aval, softmax_out_aval, scale_factor=None):    # pylint: disable=unused-argument
        """
        softmax_backward abstract
        """
        dz_dtype = dtypes.canonicalize_dtype(dz_aval.dtype)
        softmax_out_dtype = dtypes.canonicalize_dtype(softmax_out_aval.dtype)
        assert dz_dtype == softmax_out_dtype
        assert dz_dtype in [jnp.float16, jnp.bfloat16]
        assert softmax_out_dtype in [jnp.float16, jnp.bfloat16]
1208

1209
        assert dz_aval.shape == softmax_out_aval.shape
1210

1211
        dx_aval = core.raise_to_shaped(dz_aval)
1212
        return dx_aval
1213
1214

    @staticmethod
1215
    def backward_lowering(name, ctx, dz, softmax_out, *, scale_factor):
1216
        """
1217
        softmax_backward lowering rules
1218
        """
1219
        dz_aval, _ = ctx.avals_in
1220

1221
1222
        dz_type = ir.RankedTensorType(dz.type)
        dz_shape = dz_type.shape
1223

1224
1225
1226
1227
1228
1229
        # Assume [...Batch, Head, Q_Seqlen, K_Seqlen]
        batch = reduce(operator.mul, dz_shape[:-3])
        pad_batch = batch    # unused
        heads = dz_shape[-3]
        q_seqlen = dz_shape[-2]
        k_seqlen = dz_shape[-1]
1230

1231
1232
        softmax_out_type = ir.RankedTensorType(softmax_out.type)
        softmax_out_shape = softmax_out_type.shape
1233

1234
        out_types = [ir.RankedTensorType.get(dz_shape, dz_type.element_type)]
1235
1236
        operands = [dz, softmax_out]
        operand_shapes = [dz_shape, softmax_out_shape]
1237
1238
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

1239
1240
1241
        opaque = transformer_engine_jax.pack_softmax_descriptor(
            batch, pad_batch, heads, q_seqlen, k_seqlen, jax_dtype_to_te_dtype(dz_aval.dtype),
            scale_factor)
1242

1243
        out = custom_caller(name, args, opaque, False)
1244

1245
        return [out]
1246
1247

    @staticmethod
1248
    def backward_impl(primitive, dz, softmax_out, scale_factor):
1249
        """
1250
        softmax_backward implementation
1251
        """
1252
1253
1254
        assert primitive is not None
        dx = primitive.bind(dz, softmax_out, scale_factor=scale_factor)
        return dx
1255

1256
1257
1258
1259
1260
1261
1262
1263
    @staticmethod
    def backward_batcher(primitive, batched_args, batch_dims, *, scale_factor):
        """
        softmax_backward batcher
        """
        assert primitive is not None
        dz, softmax_out = batched_args
        _, softmax_out_bdim = batch_dims
1264

1265
1266
        out_bdims = softmax_out_bdim
        return primitive.bind(dz, softmax_out, scale_factor=scale_factor), out_bdims
1267

1268
1269
    @classmethod
    def backward_infer_sharding_from_operands(cls, scale_factor, mesh, arg_infos, result_infos):
1270
        """
1271
        softmax_backward infer_sharding_from_operands
1272
        """
1273
        del scale_factor, result_infos    # Unused.
1274
1275
1276
1277
1278
1279
1280
1281
        dz_spec = get_padded_spec(arg_infos[0])
        if dz_spec[-1] is not None:
            warnings.warn(
                f"Sharding the hidden dimension is not supported in {cls.name}! " \
                f"Forcing XLA to not shard the hidden dim, which might introduce extra " \
                f"collective ops and hurt performance."
            )
        dx_sharding = NamedSharding(mesh, PartitionSpec(*dz_spec[:-1], None))
1282
        return dx_sharding
1283

1284
1285
    @classmethod
    def backward_partition(cls, impl, scale_factor, mesh, arg_infos, result_infos):
1286
1287
1288
1289
        """
        softmax_backward partition
        """
        del result_infos
1290
1291
1292
1293
1294
1295
1296
1297
1298
1299
1300
1301
1302
1303
1304
1305

        dz_spec = get_padded_spec(arg_infos[0])
        softmax_out_spec = get_padded_spec(arg_infos[1])
        if dz_spec[-1] is not None or softmax_out_spec[-1] is not None:
            warnings.warn(
                f"Sharding the hidden dimension is not supported in {cls.name}! " \
                f"Forcing XLA to not shard the hidden dim, which might introduce extra " \
                f"collective ops and hurt performance."
            )

        dz_sharding = NamedSharding(mesh, PartitionSpec(*dz_spec[:-1], None))
        softmax_out_sharding = NamedSharding(mesh, PartitionSpec(*softmax_out_spec[:-1], None))
        dx_sharding = dz_sharding
        arg_shardings = (dz_sharding, softmax_out_sharding)
        out_shardings = dx_sharding

1306
1307
        impl = partial(impl, scale_factor=scale_factor)
        return mesh, impl, out_shardings, arg_shardings
1308
1309


1310
1311
1312
1313
1314
1315
1316
1317
1318
class ScaledSoftmaxFwdPrimitive(SoftmaxPrimitive):
    """
    Scaled Softmax Fwd Primitive
    """
    name = "te_scaled_softmax_forward"
    multiple_results = False
    impl_static_args = (1,)    # scale_factor
    inner_primitive = None
    outer_primitive = None
1319

1320
1321
1322
1323
1324
    @staticmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        attn_batches = batch * heads
1325

1326
1327
1328
1329
1330
1331
1332
1333
1334
1335
1336
        dtype = dtypes.canonicalize_dtype(dtype)
        if (dtype in [jnp.float16, jnp.bfloat16]
                and 16 < k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported
        # k_seqlen must be 16 ~ 4096
                and q_seqlen % 4 == 0    # q_seqlen must be divisor of 4
                and attn_batches % 4 == 0    # batch * heads must be divisor of 4
           ):
            if 0 <= k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported:
                batch_per_block = SoftmaxPrimitive.get_batch_per_block(k_seqlen)
                return q_seqlen % batch_per_block == 0
        return False
1337

1338
1339
1340
1341
1342
1343
    @staticmethod
    def abstract(logits_aval, scale_factor):    # pylint: disable=unused-argument
        """
        te_scaled_softmax_forward abstract
        """
        return SoftmaxPrimitive.forward_abstract(logits_aval, scale_factor)
1344

1345
1346
1347
1348
1349
1350
1351
1352
1353
    @staticmethod
    def lowering(ctx, logits, *, scale_factor):
        """
        te_scaled_softmax_forward lowering rules
        """
        return SoftmaxPrimitive.forward_lowering(ScaledSoftmaxFwdPrimitive.name,
                                                 ctx,
                                                 logits,
                                                 scale_factor=scale_factor)
1354

1355
1356
1357
1358
1359
1360
1361
1362
1363
1364
1365
1366
    @staticmethod
    def impl(logits, scale_factor):
        return SoftmaxPrimitive.forward_impl(ScaledSoftmaxFwdPrimitive.inner_primitive, logits,
                                             scale_factor)

    @staticmethod
    def batcher(batched_args, batch_dims, *, scale_factor):
        _check_valid_batch_dims(batch_dims)
        return SoftmaxPrimitive.forward_batcher(ScaledSoftmaxFwdPrimitive.outer_primitive,
                                                batched_args,
                                                batch_dims,
                                                scale_factor=scale_factor)
1367

1368
1369
    @staticmethod
    def infer_sharding_from_operands(scale_factor, mesh, arg_infos, result_infos):
1370
1371
1372
        return ScaledSoftmaxFwdPrimitive.forward_infer_sharding_from_operands(
            scale_factor, mesh, arg_infos, result_infos
        )
1373
1374
1375

    @staticmethod
    def partition(scale_factor, mesh, arg_infos, result_infos):
1376
1377
1378
        return ScaledSoftmaxFwdPrimitive.forward_partition(
            ScaledSoftmaxFwdPrimitive.impl, scale_factor, mesh, arg_infos, result_infos
        )
1379
1380


1381
register_primitive(ScaledSoftmaxFwdPrimitive)
1382

1383
1384

def scaled_softmax_fwd(logits: jnp.ndarray, scale_factor: float) -> jnp.ndarray:
1385
    """
1386
1387
    scaled_softmax_forward wrapper
    Return FP16/BF16 tensor
1388
    """
1389
    return ScaledSoftmaxFwdPrimitive.outer_primitive.bind(logits, scale_factor=scale_factor)
1390
1391


1392
class ScaledSoftmaxBwdPrimitive(SoftmaxPrimitive):
1393
    """
1394
    Scaled Softmax Bwd Primitive
1395
    """
1396
1397
1398
1399
1400
1401
1402
1403
1404
1405
1406
1407
    name = "te_scaled_softmax_backward"
    multiple_results = False
    impl_static_args = (2,)    # scale_factor
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        return ScaledSoftmaxFwdPrimitive.is_kernel_available(batch, heads, q_seqlen, k_seqlen,
                                                             dtype)
1408
1409

    @staticmethod
1410
    def abstract(dz_aval, softmax_out_aval, scale_factor):
1411
        """
1412
        te_scaled_softmax_backward abstract
1413
        """
1414
        return SoftmaxPrimitive.backward_abstract(dz_aval, softmax_out_aval, scale_factor)
1415

1416
1417
1418
1419
1420
1421
1422
1423
1424
1425
    @staticmethod
    def lowering(ctx, dz, softmax_out, *, scale_factor):
        """
        te_scaled_softmax_backward lowering rules
        """
        out = SoftmaxPrimitive.backward_lowering(ScaledSoftmaxBwdPrimitive.name,
                                                 ctx,
                                                 dz,
                                                 softmax_out,
                                                 scale_factor=scale_factor)
1426

1427
        return out
1428

1429
1430
1431
1432
1433
1434
1435
1436
1437
1438
1439
1440
1441
1442
1443
1444
1445
    @staticmethod
    def impl(dz, softmax_out, scale_factor):
        return SoftmaxPrimitive.backward_impl(ScaledSoftmaxBwdPrimitive.inner_primitive,
                                              dz,
                                              softmax_out,
                                              scale_factor=scale_factor)

    @staticmethod
    def batcher(batched_args, batch_dims, *, scale_factor):
        _check_valid_batch_dims(batch_dims)
        return SoftmaxPrimitive.backward_batcher(ScaledSoftmaxBwdPrimitive.outer_primitive,
                                                 batched_args,
                                                 batch_dims,
                                                 scale_factor=scale_factor)

    @staticmethod
    def infer_sharding_from_operands(scale_factor, mesh, arg_infos, result_infos):
1446
1447
1448
        return ScaledSoftmaxBwdPrimitive.backward_infer_sharding_from_operands(
            scale_factor, mesh, arg_infos, result_infos
        )
1449
1450

    @staticmethod
1451
    def partition(scale_factor, mesh, arg_infos, result_infos):
1452
1453
1454
        return ScaledSoftmaxBwdPrimitive.backward_partition(
            ScaledSoftmaxBwdPrimitive.impl, scale_factor, mesh, arg_infos, result_infos
        )
1455
1456
1457
1458
1459
1460
1461
1462
1463
1464
1465
1466
1467
1468
1469
1470
1471
1472
1473
1474
1475
1476
1477
1478
1479
1480
1481
1482
1483
1484
1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
1495
1496
1497
1498
1499
1500


register_primitive(ScaledSoftmaxBwdPrimitive)


def scaled_softmax_bwd(dz: jnp.ndarray, softmax_out: jnp.ndarray,
                       scale_factor: float) -> jnp.ndarray:
    """
    scaled_backward wrapper
    Return FP16/BF16 tensor
    """
    return ScaledSoftmaxBwdPrimitive.outer_primitive.bind(dz,
                                                          softmax_out,
                                                          scale_factor=scale_factor)


class ScaledMaskedSoftmaxFwdPrimitive(SoftmaxPrimitive):
    """
    Scaled Masked Softmax Fwd Primitive
    """
    name = "te_scaled_masked_softmax_forward"
    multiple_results = False
    impl_static_args = (2,)    # scale_factor
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        attn_batches = batch * heads

        dtype = dtypes.canonicalize_dtype(dtype)
        if (dtype in [jnp.float16, jnp.bfloat16]
                and 16 < k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported
        # k_seqlen must be 16 ~ 4096
                and q_seqlen % 4 == 0    # q_seqlen must be divisor of 4
                and attn_batches % 4 == 0    # batch * heads must be divisor of 4
           ):
            if 0 <= k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported:
                batch_per_block = SoftmaxPrimitive.get_batch_per_block(k_seqlen)
                return q_seqlen % batch_per_block == 0
        return False

    @staticmethod
    def abstract(logits_aval, mask_aval, scale_factor):    # pylint: disable=unused-argument
1501
        """
1502
        te_scaled_masked_softmax_forward abstract
1503
1504
        """

1505
1506
1507
        i_dtype = dtypes.canonicalize_dtype(logits_aval.dtype)
        assert i_dtype in [jnp.float16, jnp.bfloat16]
        i_shape = logits_aval.shape
1508

1509
1510
1511
1512
1513
1514
        # Assume [...Batch, Head, Q_Seqlen, K_Seqlen]
        batch = reduce(operator.mul, i_shape[:-3])
        q_seqlen = i_shape[-2]
        k_seqlen = i_shape[-1]
        assert k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported
        assert q_seqlen > 1
1515

1516
1517
1518
        mask_dtype = dtypes.canonicalize_dtype(mask_aval.dtype)
        assert mask_dtype in [
            jnp.uint8,
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        ]
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        mask_shape = mask_aval.shape
        pad_batch = batch = reduce(operator.mul, mask_shape[:-3])
        assert pad_batch in (1, batch)    # 1 means broadcast
        assert mask_shape[-3] == 1    # 1 means broadcast
        assert mask_shape[-2] == q_seqlen
        assert mask_shape[-1] == k_seqlen

        out_aval = core.raise_to_shaped(logits_aval)
        return out_aval

    @staticmethod
    def lowering(ctx, logits, mask, *, scale_factor):
        """
        te_scaled_masked_softmax_forward lowering rules
        """

        logits_aval, _ = ctx.avals_in
        i_type = ir.RankedTensorType(logits.type)
        i_shape = i_type.shape
        # Assume [...Batch, Head, Q_Seqlen, K_Seqlen]
        batch = reduce(operator.mul, i_shape[:-3])
        heads = i_shape[-3]
        q_seqlen = i_shape[-2]
        k_seqlen = i_shape[-1]

        mask_type = ir.RankedTensorType(mask.type)
        mask_shape = mask_type.shape
        pad_batch = reduce(operator.mul, mask_shape[:-3])

        out_types = [ir.RankedTensorType.get(i_shape, i_type.element_type)]
        operands = [logits, mask]
        operand_shapes = [i_shape, mask_shape]
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        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

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        opaque = transformer_engine_jax.pack_softmax_descriptor(
            batch, pad_batch, heads, q_seqlen, k_seqlen, jax_dtype_to_te_dtype(logits_aval.dtype),
            scale_factor)
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        out = custom_caller(ScaledMaskedSoftmaxFwdPrimitive.name, args, opaque, False)

        return [out]

    @staticmethod
    def impl(logits, mask, scale_factor):
        assert ScaledMaskedSoftmaxFwdPrimitive.inner_primitive is not None
        output = ScaledMaskedSoftmaxFwdPrimitive.inner_primitive.bind(logits,
                                                                      mask,
                                                                      scale_factor=scale_factor)
        return output

    @staticmethod
    def batcher(batched_args, batch_dims, *, scale_factor):
        _check_valid_batch_dims(batch_dims)
        assert ScaledMaskedSoftmaxFwdPrimitive.outer_primitive is not None
        logits, mask = batched_args
        logits_bdim, _ = batch_dims

        out_bdims = logits_bdim
        return ScaledMaskedSoftmaxFwdPrimitive.outer_primitive.bind(
            logits, mask, scale_factor=scale_factor), out_bdims

    @staticmethod
    def infer_sharding_from_operands(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledMaskedSoftmaxFwdPrimitive.forward_infer_sharding_from_operands(
            scale_factor, mesh, arg_infos,result_infos
        )
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    @staticmethod
    def partition(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledMaskedSoftmaxFwdPrimitive.backward_partition(
            ScaledMaskedSoftmaxFwdPrimitive.impl, scale_factor, mesh, arg_infos, result_infos
        )
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register_primitive(ScaledMaskedSoftmaxFwdPrimitive)


def scaled_masked_softmax_fwd(logits: jnp.ndarray, mask: jnp.ndarray,
                              scale_factor: float) -> jnp.ndarray:
    """
    scaled_masked_softmax_forward wrapper
    Return FP16/BF16 tensor
    """
    return ScaledMaskedSoftmaxFwdPrimitive.outer_primitive.bind(logits,
                                                                mask,
                                                                scale_factor=scale_factor)


class ScaledMaskedSoftmaxBwdPrimitive(SoftmaxPrimitive):
    """
    Scaled Masked Softmax Bwd Primitive
    """
    name = "te_scaled_masked_softmax_backward"
    multiple_results = False
    impl_static_args = (2,)    # scale_factor
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        return ScaledSoftmaxFwdPrimitive.is_kernel_available(batch, heads, q_seqlen, k_seqlen,
                                                             dtype)

    @staticmethod
    def abstract(dz_aval, softmax_out_aval, *, scale_factor):
        """
        te_scaled_upper_triang_masked_backward abstract
        """
        return SoftmaxPrimitive.backward_abstract(dz_aval, softmax_out_aval, scale_factor)

    @staticmethod
    def lowering(ctx, dz, softmax_out, *, scale_factor):
        """
        te_scaled_upper_triang_masked_backward lowering rules
        """
        out = SoftmaxPrimitive.backward_lowering(ScaledMaskedSoftmaxBwdPrimitive.name,
                                                 ctx,
                                                 dz,
                                                 softmax_out,
                                                 scale_factor=scale_factor)

        return out

    @staticmethod
    def impl(dz, softmax_out, scale_factor):
        return SoftmaxPrimitive.backward_impl(ScaledMaskedSoftmaxBwdPrimitive.inner_primitive,
                                              dz,
                                              softmax_out,
                                              scale_factor=scale_factor)

    @staticmethod
    def batcher(batched_args, batch_dims, *, scale_factor):
        _check_valid_batch_dims(batch_dims)
        return SoftmaxPrimitive.backward_batcher(ScaledMaskedSoftmaxBwdPrimitive.outer_primitive,
                                                 batched_args,
                                                 batch_dims,
                                                 scale_factor=scale_factor)

    @staticmethod
    def infer_sharding_from_operands(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledMaskedSoftmaxBwdPrimitive.backward_infer_sharding_from_operands(
            scale_factor, mesh, arg_infos, result_infos
        )
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    @staticmethod
    def partition(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledMaskedSoftmaxBwdPrimitive.backward_partition(
            ScaledMaskedSoftmaxBwdPrimitive.impl, scale_factor, mesh, arg_infos, result_infos
        )
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register_primitive(ScaledMaskedSoftmaxBwdPrimitive)


def scaled_masked_softmax_bwd(dz: jnp.ndarray, softmax_out: jnp.ndarray,
                              scale_factor: float) -> jnp.ndarray:
    """
    scaled_masked_backward wrapper
    Return FP16/BF16 tensor
    """
    return ScaledMaskedSoftmaxBwdPrimitive.outer_primitive.bind(dz,
                                                                softmax_out,
                                                                scale_factor=scale_factor)


class ScaledUpperTriangMaskedSoftmaxFwdPrimitive(SoftmaxPrimitive):
    """
    Scaled Upper Triang Masked Softmax Fwd Primitive
    """
    name = "te_scaled_upper_triang_masked_softmax_forward"
    multiple_results = False
    impl_static_args = (1,)    # scale_factor
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        attn_batches = batch * heads

        dtype = dtypes.canonicalize_dtype(dtype)
        if (dtype in [jnp.float16, jnp.bfloat16]
                and 16 < k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported
        # k_seqlen must be 16 ~ 4096
                and q_seqlen % 4 == 0    # q_seqlen must be divisor of 4
                and attn_batches % 4 == 0    # batch * heads must be divisor of 4
           ):
            if 0 <= k_seqlen <= SoftmaxPrimitive.max_k_seqlen_supported:
                batch_per_block = SoftmaxPrimitive.get_batch_per_block(k_seqlen)
                return attn_batches % batch_per_block == 0
        return False

    @staticmethod
    def abstract(logits_aval, scale_factor):    # pylint: disable=unused-argument
        """
        te_scaled_upper_triang_masked_softmax_forward abstract
        """
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        q_seqlen = logits_aval.shape[-2]
        k_seqlen = logits_aval.shape[-1]
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        assert q_seqlen == k_seqlen
        return SoftmaxPrimitive.forward_abstract(logits_aval, scale_factor)

    @staticmethod
    def lowering(ctx, logits, *, scale_factor):
        """
        te_scaled_upper_triang_masked_softmax_forward lowering rules
        """
        return SoftmaxPrimitive.forward_lowering(ScaledUpperTriangMaskedSoftmaxFwdPrimitive.name,
                                                 ctx,
                                                 logits,
                                                 scale_factor=scale_factor)

    @staticmethod
    def impl(logits, scale_factor):
        return SoftmaxPrimitive.forward_impl(
            ScaledUpperTriangMaskedSoftmaxFwdPrimitive.inner_primitive, logits, scale_factor)

    @staticmethod
    def batcher(batched_args, batch_dims, *, scale_factor):
        _check_valid_batch_dims(batch_dims)
        return SoftmaxPrimitive.forward_batcher(
            ScaledUpperTriangMaskedSoftmaxFwdPrimitive.outer_primitive,
            batched_args,
            batch_dims,
            scale_factor=scale_factor)

    @staticmethod
    def infer_sharding_from_operands(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledUpperTriangMaskedSoftmaxFwdPrimitive.forward_infer_sharding_from_operands(
            scale_factor, mesh, arg_infos, result_infos
        )
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    @staticmethod
    def partition(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledUpperTriangMaskedSoftmaxFwdPrimitive.forward_partition(
            ScaledUpperTriangMaskedSoftmaxFwdPrimitive.impl, scale_factor, mesh,
            arg_infos, result_infos
        )
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register_primitive(ScaledUpperTriangMaskedSoftmaxFwdPrimitive)


def scaled_upper_triang_masked_softmax_fwd(logits: jnp.ndarray, scale_factor: float) -> jnp.ndarray:
    """
    scaled_upper_triang_masked_softmax_forward wrapper
    Return FP16/BF16 tensor
    """
    return ScaledUpperTriangMaskedSoftmaxFwdPrimitive.outer_primitive.bind(
        logits, scale_factor=scale_factor)


class ScaledUpperTriangMaskedSoftmaxBwdPrimitive(SoftmaxPrimitive):
    """
    Scaled Upper Triang Masked Softmax Bwd Primitive
    """
    name = "te_scaled_upper_triang_masked_softmax_backward"
    multiple_results = False
    impl_static_args = (2,)    # scale_factor
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def is_kernel_available(batch: int, heads: int, q_seqlen: int, k_seqlen: int,
                            dtype: jnp.dtype) -> bool:
        """Check Softmax kernel availability based on size"""
        return ScaledUpperTriangMaskedSoftmaxFwdPrimitive.is_kernel_available(
            batch, heads, q_seqlen, k_seqlen, dtype)

    @staticmethod
    def abstract(dz_aval, softmax_out_aval, *, scale_factor):
        """
        te_scaled_upper_triang_masked_backward abstract
        """
        return SoftmaxPrimitive.backward_abstract(dz_aval, softmax_out_aval, scale_factor)

    @staticmethod
    def lowering(ctx, dz, softmax_out, *, scale_factor):
        """
        te_scaled_upper_triang_masked_backward lowering rules
        """
        out = SoftmaxPrimitive.backward_lowering(ScaledUpperTriangMaskedSoftmaxBwdPrimitive.name,
                                                 ctx,
                                                 dz,
                                                 softmax_out,
                                                 scale_factor=scale_factor)
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        return out

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    @staticmethod
    def impl(dz, softmax_out, scale_factor):
        return SoftmaxPrimitive.backward_impl(
            ScaledUpperTriangMaskedSoftmaxBwdPrimitive.inner_primitive,
            dz,
            softmax_out,
            scale_factor=scale_factor)
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    @staticmethod
    def batcher(batched_args, batch_dims, *, scale_factor):
        _check_valid_batch_dims(batch_dims)
        return SoftmaxPrimitive.backward_batcher(
            ScaledUpperTriangMaskedSoftmaxBwdPrimitive.outer_primitive,
            batched_args,
            batch_dims,
            scale_factor=scale_factor)
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    @staticmethod
    def infer_sharding_from_operands(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledUpperTriangMaskedSoftmaxBwdPrimitive.backward_infer_sharding_from_operands(
            scale_factor, mesh, arg_infos, result_infos
        )
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    @staticmethod
    def partition(scale_factor, mesh, arg_infos, result_infos):
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        return ScaledUpperTriangMaskedSoftmaxBwdPrimitive.backward_partition(
            ScaledUpperTriangMaskedSoftmaxBwdPrimitive.impl, scale_factor, mesh,
            arg_infos, result_infos
        )
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register_primitive(ScaledUpperTriangMaskedSoftmaxBwdPrimitive)


def scaled_upper_triang_masked_softmax_bwd(dz: jnp.ndarray, softmax_out: jnp.ndarray,
                                           scale_factor: float) -> jnp.ndarray:
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    """
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    scaled_upper_triang_masked_backward wrapper
    Return FP16/BF16 tensor
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    """
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    return ScaledUpperTriangMaskedSoftmaxBwdPrimitive.outer_primitive.bind(
        dz, softmax_out, scale_factor=scale_factor)
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@dataclass(frozen=True)
class FusedAttnHelper:
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    """
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    Helper for the fused attention backend
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    """
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    q_type: jnp.dtype
    kv_type: jnp.dtype
    qkv_layout: NVTE_QKV_Layout
    attn_bias_type: NVTE_Bias_Type
    attn_mask_type: NVTE_Mask_Type
    dropout_probability: float
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    num_heads_q: int
    num_heads_kv: int
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    max_seqlen_q: int
    max_seqlen_kv: int
    head_dim: int

    def is_fused_attn_kernel_available(self):
        """Check if there is available fused attention kernel"""
        return self.get_fused_attn_backend() != NVTE_Fused_Attn_Backend.NVTE_No_Backend

    def get_fused_attn_backend(self):
        """Get the fused attention kernel backend"""
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        return transformer_engine_jax.get_fused_attn_backend(
            jax_dtype_to_te_dtype(self.q_type), jax_dtype_to_te_dtype(self.kv_type),
            self.qkv_layout, self.attn_bias_type, self.attn_mask_type, self.dropout_probability,
            self.num_heads_q, self.num_heads_kv, self.max_seqlen_q, self.max_seqlen_kv,
            self.head_dim)
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@dataclass(frozen=True)
class _FusedAttnRNGStateChecker:
    """
    Checker for guarding the fused attention rng state.
    The fused attention backend requires a 64 bits seed and a 64 bits offset.
    However, JAX doesn't enable 64 bits by default,
    so we have to emulate seed as two 32 bits array.
    The offset calculation is maintained in the backend.
    """
    rng_state_dtype: jnp.dtype = jnp.uint32
    # (seed,) with internal dtype int64
    seed_size: int = 2
    # (seed, offset) with internal dtype int64
    rng_state_size: int = 2 * 2

    def check_seed(self, seed, dropout_probability, is_training):
        """
        Check the seed and convert the data type of seed if possible.
        """
        # Jax can't bind None, create a dummy tensor for None
        if seed is None:
            dropout_enabled = dropout_probability > 0 and is_training
            assert not dropout_enabled, "seed is not allowed to be None when dropout is enabled."
            seed = jnp.zeros(2, dtype=self.rng_state_dtype)
            seed = jnp.repeat(seed, num_of_devices())

        if seed.dtype != self.rng_state_dtype:
            warnings.warn(
                f"Requested {seed.dtype=} is not available, and will be "
                f"casted to dtype {self.rng_state_dtype}. "
                f"Please use threefry/rbg/unsafe_rbg PRNG implementations to remove this warning.")
            seed = seed.astype(self.rng_state_dtype)

        assert seed.dtype == self.rng_state_dtype
        # Backend takes an int64_t seed, so only the first two u32 elements are taken
        assert seed.size >= self.seed_size

        return seed


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def generate_cu_seqlen(actual_seqlen):
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    """
    Generating cumsum seqlen for a batch
    """
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    cu_seqlen = jnp.cumsum(actual_seqlen)
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    cu_seqlen = jnp.hstack((0, cu_seqlen))
    return cu_seqlen


class SelfFusedAttnFwdPrimitive(BasePrimitive):
    """
    Self Fused Attention Forward Primitive
    """
    name = "te_self_fused_attn_forward"
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    multiple_results = True
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    impl_static_args = (4, 5, 6, 7, 8)
    inner_primitive = None
    outer_primitive = None
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    @staticmethod
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    def abstract(qkv_aval, bias_aval, seqlen_or_cu_seqlen_aval, seed_aval, *, attn_bias_type,
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                 attn_mask_type, scaling_factor, dropout_probability, is_training):
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        """
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        Self fused attention fwd inner primitive abstract
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        """
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        # outer_primitve is squeezed_mask, inner_primitive is cu_seqlen
        del seqlen_or_cu_seqlen_aval
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        qkv_dtype = dtypes.canonicalize_dtype(qkv_aval.dtype)
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        *input_batch_shape, max_seqlen, nqkv, attn_heads, head_dim = qkv_aval.shape
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        assert nqkv == 3
        assert qkv_aval.dtype == bias_aval.dtype
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        output_shape = (*input_batch_shape, max_seqlen, attn_heads, head_dim)
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        out_aval = qkv_aval.update(shape=output_shape, dtype=qkv_dtype)
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        # backend determines the softmax buffer shape/dtype
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        backend = FusedAttnHelper(qkv_dtype, qkv_dtype, NVTE_QKV_Layout.NVTE_BS3HD, attn_bias_type,
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                                  attn_mask_type, dropout_probability, attn_heads, attn_heads,
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                                  max_seqlen, max_seqlen, head_dim).get_fused_attn_backend()
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        if backend == NVTE_Fused_Attn_Backend.NVTE_F16_max512_seqlen:
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            softmax_shape = (*input_batch_shape, attn_heads, max_seqlen, max_seqlen)
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            softmax_dtype = qkv_dtype
        elif backend == NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen:
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            softmax_shape = (*input_batch_shape, attn_heads, max_seqlen, 1)
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            softmax_dtype = dtypes.canonicalize_dtype(jnp.float32)
        else:
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            raise ValueError(f'Unsupported {backend=}')
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        softmax_aux_aval = qkv_aval.update(shape=softmax_shape, dtype=softmax_dtype)
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        # JAX does not enable 64-bit int by default so we get XLA to allocate x8 memory with
        # 32-bit unsigned int to get the buffer size we need in the C++ kernel
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        checker = _FusedAttnRNGStateChecker()
        seed_dtype = dtypes.canonicalize_dtype(seed_aval.dtype)
        assert seed_dtype == checker.rng_state_dtype
        rng_state_shape = (seed_aval.shape[0], checker.rng_state_size)
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        rng_state_aval = seed_aval.update(shape=rng_state_shape, dtype=checker.rng_state_dtype)

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        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)

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        # do a dummy kernel call here to get workspace buffer shapes/dtypes that XLA needs to
        # prepare for the active fused-attn backend
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        input_batch = reduce(operator.mul, input_batch_shape)
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        wkspace_info = transformer_engine_jax.get_self_fused_attn_fwd_workspace_sizes(
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            input_batch, bias_batch, max_seqlen, attn_heads, bias_heads, head_dim,
            scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
            jax_dtype_to_te_dtype(qkv_aval.dtype), is_training)
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        wkspace_aval = qkv_aval.update(shape=wkspace_info[0],
                                       dtype=te_dtype_to_jax_dtype(wkspace_info[1]))

        return out_aval, softmax_aux_aval, rng_state_aval, wkspace_aval
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    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        Self fused attention fwd outer primitive abstract
        """
        out_aval, softmax_aux_aval, rng_state_aval, _ = \
            SelfFusedAttnFwdPrimitive.abstract(*args, **kwargs)
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        return out_aval, softmax_aux_aval, rng_state_aval
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    @staticmethod
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    def lowering(ctx, qkv, bias, cu_seqlen, seed, *, attn_bias_type, attn_mask_type, scaling_factor,
                 dropout_probability, is_training):
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        """
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        Self fused attention fwd lowering rules
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        """
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        operands = [qkv, bias, cu_seqlen, seed]
        operand_shapes = map(lambda x: x.type.shape, operands)
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        out_types = [
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            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
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        ]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
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        qkv_aval, bias_aval, *_ = ctx.avals_in
        *input_batch_shape, max_seqlen, _, attn_heads, head_dim = qkv_aval.shape
        input_batch = reduce(operator.mul, input_batch_shape)

        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)
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        wkspace_aval = ctx.avals_out[-1]

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        opaque = transformer_engine_jax.pack_fused_attn_descriptor(
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            input_batch, bias_batch, max_seqlen, max_seqlen,
            attn_heads, attn_heads, bias_heads, head_dim, wkspace_aval.size,
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            scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
            jax_dtype_to_te_dtype(qkv_aval.dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype),
            is_training)
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        out = custom_caller(SelfFusedAttnFwdPrimitive.name, args, opaque, has_side_effect=False)
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        return out

    @staticmethod
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    def impl(qkv, bias, seqlen, seed, attn_bias_type, attn_mask_type, scaling_factor,
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             dropout_probability, is_training):
        assert SelfFusedAttnFwdPrimitive.inner_primitive is not None
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        cu_seqlen = generate_cu_seqlen(seqlen)
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        output, softmax_aux, rng_state, _ = SelfFusedAttnFwdPrimitive.inner_primitive.bind(
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            qkv,
            bias,
            cu_seqlen,
            seed,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training)
        return output, softmax_aux, rng_state
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    @staticmethod
    def batcher(batched_args, batch_dims, *, attn_bias_type, attn_mask_type, scaling_factor,
                dropout_probability, is_training):
        _check_valid_batch_dims(batch_dims)
        assert SelfFusedAttnFwdPrimitive.outer_primitive is not None
        qkv_bdim, _, _, seed_bdim = batch_dims

        out_bdims = qkv_bdim, qkv_bdim, seed_bdim
        return SelfFusedAttnFwdPrimitive.outer_primitive.bind(
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            *batched_args,
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            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training), out_bdims
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    @staticmethod
    def infer_sharding_from_operands(attn_bias_type, attn_mask_type, scaling_factor,
                                     dropout_probability, is_training, mesh, arg_infos,
                                     result_infos):
        del attn_bias_type, attn_mask_type, scaling_factor
        del dropout_probability, is_training, result_infos
        x_spec = get_padded_spec(arg_infos[0])    # (...batch, seqlen, 3, head, hidden)
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-3], *x_spec[-2:]))
        softmax_aux_sharding = NamedSharding(
            mesh, PartitionSpec(*x_spec[:-4], x_spec[-2], x_spec[-4], None))
        rng_state_sharding = NamedSharding(mesh, PartitionSpec(get_all_mesh_axes(), None))
        return (out_sharding, softmax_aux_sharding, rng_state_sharding)
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    @staticmethod
    def partition(attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training,
                  mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])    # (...batch, seqlen, 3, head, hidden)
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-3], *x_spec[-2:]))
        softmax_aux_sharding = NamedSharding(
            mesh, PartitionSpec(*x_spec[:-4], x_spec[-2], x_spec[-4], None))
        rng_state_sharding = NamedSharding(mesh, PartitionSpec(get_all_mesh_axes(), None))
        arg_shardings = tuple([arg_i.sharding for arg_i in arg_infos[:-1]] + [rng_state_sharding])
        out_shardings = (out_sharding, softmax_aux_sharding, rng_state_sharding)
        impl = partial(SelfFusedAttnFwdPrimitive.impl,
                       attn_bias_type=attn_bias_type,
                       attn_mask_type=attn_mask_type,
                       scaling_factor=scaling_factor,
                       dropout_probability=dropout_probability,
                       is_training=is_training)
        return mesh, impl, out_shardings, arg_shardings


register_primitive(SelfFusedAttnFwdPrimitive)


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def self_fused_attn_fwd(qkv: jnp.ndarray, bias: jnp.ndarray | None, seqlen: jnp.ndarray,
                        seed: jnp.ndarray | None, attn_bias_type: NVTE_Bias_Type,
                        attn_mask_type: NVTE_Mask_Type, scaling_factor: float,
                        dropout_probability: float, is_training: bool):
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    """
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    Wrapper for TE self fused attention fwd
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    Return BMM1 -> (PreScaleBias) -> Scale -> (PostScaleBias) -> Softmax -> (Dropout) -> BMM2
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    """
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    checker = _FusedAttnRNGStateChecker()
    seed = checker.check_seed(seed, dropout_probability, is_training)

    if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
        assert bias is None
        bias = jnp.zeros(0, dtype=qkv.dtype)
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    return SelfFusedAttnFwdPrimitive.outer_primitive.bind(qkv,
                                                          bias,
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                                                          seqlen,
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                                                          seed,
                                                          attn_bias_type=attn_bias_type,
                                                          attn_mask_type=attn_mask_type,
                                                          scaling_factor=scaling_factor,
                                                          dropout_probability=dropout_probability,
                                                          is_training=is_training)
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class SelfFusedAttnBwdPrimitive(BasePrimitive):
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    """
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    Self Fused Attention Backward Primitive
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    """
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    name = "te_self_fused_attn_backward"
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    multiple_results = True
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    impl_static_args = (7, 8, 9, 10, 11)
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    inner_primitive = None
    outer_primitive = None
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    @staticmethod
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    def abstract(qkv_aval, bias_aval, softmax_aux_aval, rng_state_aval, output_aval, doutput_aval,
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                 seqlen_or_cu_seqlen_aval, *, attn_bias_type, attn_mask_type, scaling_factor,
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                 dropout_probability, is_training):
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        """
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        Self fused attention bwd abstract
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        """
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        del softmax_aux_aval, rng_state_aval, seqlen_or_cu_seqlen_aval

        assert qkv_aval.dtype == bias_aval.dtype == output_aval.dtype == doutput_aval.dtype
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        *input_batch_shape, max_seqlen, nqkv, attn_heads, head_dim = qkv_aval.shape
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        assert nqkv == 3
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        qkv_dtype = dtypes.canonicalize_dtype(qkv_aval.dtype)
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        bias_dtype = dtypes.canonicalize_dtype(bias_aval.dtype)
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        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)

        input_batch = reduce(operator.mul, input_batch_shape)
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        wkspace_shape, wkspace_dtype = \
            transformer_engine_jax.get_self_fused_attn_bwd_workspace_sizes(
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                input_batch, bias_batch, max_seqlen, attn_heads, bias_heads, head_dim,
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                scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
                jax_dtype_to_te_dtype(qkv_aval.dtype), is_training
            )
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        dqkv_aval = qkv_aval.update(shape=qkv_aval.shape, dtype=qkv_dtype)
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        dbias_aval = bias_aval.update(shape=bias_aval.shape, dtype=bias_dtype)
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        wkspace_aval = qkv_aval.update(shape=wkspace_shape,
                                       dtype=te_dtype_to_jax_dtype(wkspace_dtype))

        return dqkv_aval, dbias_aval, wkspace_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        Self fused attention bwd outer primitive abstract
        """
        dqkv_aval, dbias_aval, _ = SelfFusedAttnBwdPrimitive.abstract(*args, **kwargs)
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        return dqkv_aval, dbias_aval
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    @staticmethod
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    def lowering(ctx, qkv, bias, softmax_aux, rng_state, output, doutput, cu_seqlen, *,
                 attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training):
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        """
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        Self fused attention bwd lowering rules
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        """
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        operands = [qkv, bias, softmax_aux, rng_state, output, doutput, cu_seqlen]
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        operand_shapes = map(lambda x: x.type.shape, operands)
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        out_types = [
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            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
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        ]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

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        qkv_aval, bias_aval, *_ = ctx.avals_in
        *input_batch_shape, max_seqlen, _, attn_heads, head_dim = qkv_aval.shape
        input_batch = reduce(operator.mul, input_batch_shape)

        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)
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        wkspace_aval = ctx.avals_out[-1]

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        opaque = transformer_engine_jax.pack_fused_attn_descriptor(
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            input_batch, bias_batch, max_seqlen, max_seqlen,
            attn_heads, attn_heads, bias_heads, head_dim, wkspace_aval.size,
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            scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
            jax_dtype_to_te_dtype(qkv_aval.dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype),
            is_training)
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        out = custom_caller(SelfFusedAttnBwdPrimitive.name, args, opaque, has_side_effect=False)
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        return out

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    @staticmethod
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    def impl(qkv, bias, softmax_aux, rng_state, output, doutput, seqlen, attn_bias_type,
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             attn_mask_type, scaling_factor, dropout_probability, is_training):
        assert SelfFusedAttnBwdPrimitive.inner_primitive is not None

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        cu_seqlen = generate_cu_seqlen(seqlen)
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        dqkv, dbias, _ = SelfFusedAttnBwdPrimitive.inner_primitive.bind(
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            qkv,
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            bias,
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            softmax_aux,
            rng_state,
            output,
            doutput,
            cu_seqlen,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training)
        return dqkv, dbias
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    @staticmethod
    def batcher(batched_args, batch_dims, *, attn_bias_type, attn_mask_type, scaling_factor,
                dropout_probability, is_training):
        _check_valid_batch_dims(batch_dims)
        assert SelfFusedAttnBwdPrimitive.outer_primitive is not None
        qkv_bdim, *_ = batch_dims

        out_bdims = qkv_bdim, qkv_bdim
        return SelfFusedAttnBwdPrimitive.outer_primitive.bind(
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            *batched_args,
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            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training), out_bdims
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    @staticmethod
    def infer_sharding_from_operands(attn_bias_type, attn_mask_type, scaling_factor,
                                     dropout_probability, is_training, mesh, arg_infos,
                                     result_infos):
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        del attn_bias_type, attn_mask_type, scaling_factor, dropout_probability,
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        del is_training, result_infos
        x_spec = get_padded_spec(arg_infos[0])
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        bias_spec = get_padded_spec(arg_infos[1])
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        dx_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
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        dbias_sharding = NamedSharding(mesh, PartitionSpec(*bias_spec))
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        return (dx_sharding, dbias_sharding)

    @staticmethod
    def partition(attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training,
                  mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
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        bias_spec = get_padded_spec(arg_infos[1])
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        dx_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
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        dbias_sharding = NamedSharding(mesh, PartitionSpec(*bias_spec))
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        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (dx_sharding, dbias_sharding)

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        def sharded_impl(qkv, bias, softmax_aux, rng_state, output, doutput, cu_seqlen):
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            local_dx, local_dbias = SelfFusedAttnBwdPrimitive.impl(
                qkv,
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                bias,
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                softmax_aux,
                rng_state,
                output,
                doutput,
                cu_seqlen,
                attn_bias_type=attn_bias_type,
                attn_mask_type=attn_mask_type,
                scaling_factor=scaling_factor,
                dropout_probability=dropout_probability,
                is_training=is_training)
            global_dbias = local_dbias
            if attn_bias_type is not NVTE_Bias_Type.NVTE_NO_BIAS:
                global_dbias = all_reduce_sum_along_dp_fsdp(local_dbias)
            return local_dx, global_dbias

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(SelfFusedAttnBwdPrimitive)


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def self_fused_attn_bwd(qkv: jnp.ndarray, bias: jnp.ndarray, softmax_aux: jnp.ndarray,
                        rng_state: jnp.ndarray, output: jnp.ndarray, doutput: jnp.ndarray,
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                        seqlen: jnp.ndarray, attn_bias_type: NVTE_Bias_Type,
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                        attn_mask_type: NVTE_Mask_Type, scaling_factor: float,
                        dropout_probability: float, is_training: bool):
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    """
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    Wrapper for TE self fused attention bwd
    Return the gradients of self fused attention with packed qkv input
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    """
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    if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
        assert bias is None
        bias = jnp.zeros(0, dtype=qkv.dtype)
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    return SelfFusedAttnBwdPrimitive.outer_primitive.bind(qkv,
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                                                          bias,
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                                                          softmax_aux,
                                                          rng_state,
                                                          output,
                                                          doutput,
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                                                          seqlen,
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                                                          attn_bias_type=attn_bias_type,
                                                          attn_mask_type=attn_mask_type,
                                                          scaling_factor=scaling_factor,
                                                          dropout_probability=dropout_probability,
                                                          is_training=is_training)
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class CrossFusedAttnFwdPrimitive(BasePrimitive):
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    """
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    Cross Fused Attention Forward Primitive
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    """
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    name = "te_cross_fused_attn_forward"
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    multiple_results = True
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    impl_static_args = (6, 7, 8, 9, 10)
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    inner_primitive = None
    outer_primitive = None
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    @staticmethod
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    def abstract(q_aval, kv_aval, bias_aval, q_seqlen_or_cu_seqlen_aval,
                 kv_seqlen_or_cu_seqlen_aval, seed_aval, *, attn_bias_type, attn_mask_type,
                 scaling_factor, dropout_probability, is_training):
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        """
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        Cross fused attention fwd abstract
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        """
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        q_dtype = dtypes.canonicalize_dtype(q_aval.dtype)
        kv_dtype = dtypes.canonicalize_dtype(kv_aval.dtype)
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        bias_dtype = dtypes.canonicalize_dtype(bias_aval.dtype)
        assert q_dtype == kv_dtype == bias_dtype
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        assert q_seqlen_or_cu_seqlen_aval.dtype == kv_seqlen_or_cu_seqlen_aval.dtype

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        *q_batch_shape, q_max_seqlen, attn_heads, q_head_dim = q_aval.shape
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        *kv_batch_shape, kv_max_seqlen, nkv, num_gqa_groups, kv_head_dim = kv_aval.shape
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        assert q_batch_shape == kv_batch_shape
        assert q_head_dim == kv_head_dim
        assert nkv == 2
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        out_aval = q_aval.update(shape=q_aval.shape, dtype=q_dtype)
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        # backend determines the softmax buffer shape/dtype
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        backend = FusedAttnHelper(q_dtype, kv_dtype, NVTE_QKV_Layout.NVTE_BSHD_BS2HD,
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                                  attn_bias_type, attn_mask_type, dropout_probability, attn_heads,
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                                  num_gqa_groups, q_max_seqlen, kv_max_seqlen,
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                                  q_head_dim).get_fused_attn_backend()
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        if backend == NVTE_Fused_Attn_Backend.NVTE_F16_max512_seqlen:
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            softmax_shape = (*q_batch_shape, attn_heads, q_max_seqlen, kv_max_seqlen)
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            softmax_dtype = q_dtype
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        elif backend == NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen:
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            softmax_shape = (*q_batch_shape, attn_heads, q_max_seqlen, 1)
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            softmax_dtype = dtypes.canonicalize_dtype(jnp.float32)
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        else:
            raise ValueError(f'Unsupported {backend=}')
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        softmax_aux_aval = q_aval.update(shape=softmax_shape, dtype=softmax_dtype)
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        # JAX does not enable 64-bit int by default so we get XLA to allocate x8 memory with
        # 32-bit unsigned int to get the buffer size we need in the C++ kernel
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        checker = _FusedAttnRNGStateChecker()
        seed_dtype = dtypes.canonicalize_dtype(seed_aval.dtype)
        assert seed_dtype == checker.rng_state_dtype
        rng_state_shape = (seed_aval.shape[0], checker.rng_state_size)
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        rng_state_aval = seed_aval.update(shape=rng_state_shape, dtype=checker.rng_state_dtype)

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        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)

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        # do a dummy kernel call here to get workspace buffer shapes/dtypes that XLA needs to
        # prepare for the active fused-attn backend
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        input_batch = reduce(operator.mul, q_batch_shape)
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        wkspace_info = transformer_engine_jax.get_cross_fused_attn_fwd_workspace_sizes(
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            input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
            attn_heads, num_gqa_groups, bias_heads, q_head_dim,
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            scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
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            jax_dtype_to_te_dtype(q_aval.dtype), is_training)
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        wkspace_aval = q_aval.update(shape=wkspace_info[0],
                                     dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
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        return out_aval, softmax_aux_aval, rng_state_aval, wkspace_aval
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    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        Cross fused attention fwd outer primitive abstract
        """
        out_aval, softmax_aux_aval, rng_state_aval, _ = \
            CrossFusedAttnFwdPrimitive.abstract(*args, **kwargs)
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        return out_aval, softmax_aux_aval, rng_state_aval
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    @staticmethod
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    def lowering(ctx, q, kv, bias, q_cu_seqlen, kv_cu_seqlen, seed, *, attn_bias_type,
                 attn_mask_type, scaling_factor, dropout_probability, is_training):
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        """
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        Cross fused attention fwd lowering rules
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        """
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        operands = [q, kv, bias, q_cu_seqlen, kv_cu_seqlen, seed]
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        operand_shapes = map(lambda x: x.type.shape, operands)
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        out_types = [
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            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
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        ]
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        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
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        q_aval, kv_aval, bias_aval, *_ = ctx.avals_in
        *input_batch_shape, q_max_seqlen, attn_heads, head_dim = q_aval.shape
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        *_, kv_max_seqlen, _, num_gqa_groups, _ = kv_aval.shape
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        input_batch = reduce(operator.mul, input_batch_shape)

        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)
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        wkspace_aval = ctx.avals_out[-1]

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        opaque = transformer_engine_jax.pack_fused_attn_descriptor(
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            input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
            attn_heads, num_gqa_groups, bias_heads, head_dim,
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            wkspace_aval.size, scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
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            jax_dtype_to_te_dtype(q_aval.dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype),
            is_training)
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        out = custom_caller(CrossFusedAttnFwdPrimitive.name, args, opaque, has_side_effect=False)
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        return out

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    @staticmethod
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    def impl(q, kv, bias, q_seqlen, kv_seqlen, seed, attn_bias_type, attn_mask_type, scaling_factor,
             dropout_probability, is_training):
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        assert CrossFusedAttnFwdPrimitive.inner_primitive is not None
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        q_cu_seqlen = generate_cu_seqlen(q_seqlen)
        kv_cu_seqlen = generate_cu_seqlen(kv_seqlen)
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        output, softmax_aux, rng_state, _ = CrossFusedAttnFwdPrimitive.inner_primitive.bind(
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            q,
            kv,
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            bias,
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            q_cu_seqlen,
            kv_cu_seqlen,
            seed,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training)
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        return output, softmax_aux, rng_state
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    @staticmethod
    def batcher(batched_args, batch_dims, *, attn_bias_type, attn_mask_type, scaling_factor,
                dropout_probability, is_training):
        _check_valid_batch_dims(batch_dims)
        assert CrossFusedAttnFwdPrimitive.outer_primitive is not None
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        q_bdim, *_, seed_bdim = batch_dims
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        out_bdims = q_bdim, q_bdim, seed_bdim
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        return CrossFusedAttnFwdPrimitive.outer_primitive.bind(
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            *batched_args,
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            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training), out_bdims

    @staticmethod
    def infer_sharding_from_operands(attn_bias_type, attn_mask_type, scaling_factor,
                                     dropout_probability, is_training, mesh, arg_infos,
                                     result_infos):
        del attn_bias_type, attn_mask_type, scaling_factor
        del dropout_probability, is_training, result_infos
        q_spec = get_padded_spec(arg_infos[0])    # (...batch, q_seqlen, head, hidden)
        kv_spec = get_padded_spec(arg_infos[1])    # (...batch, kv_seqlen, 2, head, hidden)
        out_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        softmax_aux_sharding = NamedSharding(
            mesh, PartitionSpec(*q_spec[:-3], q_spec[-2], q_spec[-3], kv_spec[-4]))
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        rng_state_sharding = NamedSharding(mesh, PartitionSpec(get_all_mesh_axes(), None))
        return (out_sharding, softmax_aux_sharding, rng_state_sharding)
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    @staticmethod
    def partition(attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training,
                  mesh, arg_infos, result_infos):
        del result_infos
        q_spec = get_padded_spec(arg_infos[0])    # (...batch, q_seqlen, head, hidden)
        kv_spec = get_padded_spec(arg_infos[1])    # (...batch, kv_seqlen, 2, head, hidden)
        out_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        softmax_aux_sharding = NamedSharding(
            mesh, PartitionSpec(*q_spec[:-3], q_spec[-2], q_spec[-3], kv_spec[-4]))
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        rng_state_sharding = seed_sharding = NamedSharding(mesh,
                                                           PartitionSpec(get_all_mesh_axes(), None))
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        arg_shardings = tuple([arg_i.sharding for arg_i in arg_infos[:-1]] + [seed_sharding])
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        out_shardings = (out_sharding, softmax_aux_sharding, rng_state_sharding)
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        impl = partial(CrossFusedAttnFwdPrimitive.impl,
                       attn_bias_type=attn_bias_type,
                       attn_mask_type=attn_mask_type,
                       scaling_factor=scaling_factor,
                       dropout_probability=dropout_probability,
                       is_training=is_training)
        return mesh, impl, out_shardings, arg_shardings


register_primitive(CrossFusedAttnFwdPrimitive)


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def cross_fused_attn_fwd(q: jnp.ndarray, kv: jnp.ndarray, bias: jnp.ndarray, q_seqlen: jnp.ndarray,
                         kv_seqlen: jnp.ndarray, seed: jnp.ndarray, attn_bias_type: NVTE_Bias_Type,
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                         attn_mask_type: NVTE_Mask_Type, scaling_factor: float,
                         dropout_probability: float, is_training: bool):
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    """
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    Wrapper for TE cross fused attention fwd
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    Return BMM1 -> (PreScaleBias) -> Scale -> (PostScaleBias) -> Softmax -> (Dropout) -> BMM2
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    """
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    checker = _FusedAttnRNGStateChecker()
    seed = checker.check_seed(seed, dropout_probability, is_training)

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    if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
        assert bias is None
        bias = jnp.zeros(0, dtype=q.dtype)

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    return CrossFusedAttnFwdPrimitive.outer_primitive.bind(q,
                                                           kv,
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                                                           bias,
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                                                           q_seqlen,
                                                           kv_seqlen,
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                                                           seed,
                                                           attn_bias_type=attn_bias_type,
                                                           attn_mask_type=attn_mask_type,
                                                           scaling_factor=scaling_factor,
                                                           dropout_probability=dropout_probability,
                                                           is_training=is_training)
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class CrossFusedAttnBwdPrimitive(BasePrimitive):
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    """
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    Cross Fused Attention Backward Primitive
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    """
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    name = "te_cross_fused_attn_backward"
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    multiple_results = True
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    impl_static_args = (9, 10, 11, 12, 13)
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    inner_primitive = None
    outer_primitive = None
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    @staticmethod
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    def abstract(q_aval, kv_aval, bias_aval, softmax_aux_aval, rng_state_aval, output_aval,
                 doutput_aval, q_cu_seqlen_aval, kv_cu_seqlen_aval, *, attn_bias_type,
                 attn_mask_type, scaling_factor, dropout_probability, is_training):
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        """
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        Cross fused attention bwd abstract
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        """
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        del softmax_aux_aval, rng_state_aval, output_aval
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        q_dtype = dtypes.canonicalize_dtype(q_aval.dtype)
        kv_dtype = dtypes.canonicalize_dtype(kv_aval.dtype)
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        bias_dtype = dtypes.canonicalize_dtype(bias_aval.dtype)
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        doutput_dtype = dtypes.canonicalize_dtype(doutput_aval.dtype)
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        assert q_dtype == kv_dtype == bias_dtype == doutput_dtype
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        assert q_cu_seqlen_aval.dtype == kv_cu_seqlen_aval.dtype
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        *q_batch_shape, q_max_seqlen, attn_heads, q_head_dim = q_aval.shape
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        *kv_batch_shape, kv_max_seqlen, nkv, num_gqa_groups, kv_head_dim = kv_aval.shape
        assert q_batch_shape == kv_batch_shape
        assert q_head_dim == kv_head_dim
        assert nkv == 2

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        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)

        input_batch = reduce(operator.mul, q_batch_shape)
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        wkspace_shape, wkspace_dtype = \
            transformer_engine_jax.get_cross_fused_attn_bwd_workspace_sizes(
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                input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
                attn_heads, num_gqa_groups, bias_heads, q_head_dim,
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                scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
                jax_dtype_to_te_dtype(q_aval.dtype), is_training
            )

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        dq_aval = q_aval.update(shape=q_aval.shape, dtype=q_dtype)
        dkv_aval = kv_aval.update(shape=kv_aval.shape, dtype=kv_dtype)
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        dbias_aval = bias_aval.update(shape=bias_aval.shape, dtype=bias_dtype)
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        wkspace_aval = q_aval.update(shape=wkspace_shape,
                                     dtype=te_dtype_to_jax_dtype(wkspace_dtype))

        return dq_aval, dkv_aval, dbias_aval, wkspace_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        Cross fused attention fwd outer primitive abstract
        """
        dq_aval, dkv_aval, dbias_aval, _ = \
            CrossFusedAttnBwdPrimitive.abstract(*args, **kwargs)
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        return dq_aval, dkv_aval, dbias_aval
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    @staticmethod
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    def lowering(ctx, q, kv, bias, softmax_aux, rng_state, output, doutput, q_cu_seqlen,
                 kv_cu_seqlen, *, attn_bias_type, attn_mask_type, scaling_factor,
                 dropout_probability, is_training):
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        """
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        Cross fused attention bwd lowering rules
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        """
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        operands = [q, kv, bias, softmax_aux, rng_state, output, doutput, q_cu_seqlen, kv_cu_seqlen]
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        operand_shapes = map(lambda x: x.type.shape, operands)
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        out_types = [
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            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
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        ]
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        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

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        q_aval, kv_aval, bias_aval, *_ = ctx.avals_in
        *input_batch_shape, q_max_seqlen, attn_heads, head_dim = q_aval.shape
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        *_, kv_max_seqlen, _, num_gqa_groups, _ = kv_aval.shape
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        input_batch = reduce(operator.mul, input_batch_shape)

        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)
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        wkspace_aval = ctx.avals_out[-1]

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        opaque = transformer_engine_jax.pack_fused_attn_descriptor(
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            input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
            attn_heads, num_gqa_groups, bias_heads, head_dim,
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            wkspace_aval.size, scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
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            jax_dtype_to_te_dtype(q_aval.dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype),
            is_training)
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        out = custom_caller(CrossFusedAttnBwdPrimitive.name, args, opaque, has_side_effect=False)
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        return out

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    @staticmethod
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    def impl(q, kv, bias, softmax_aux, rng_state, output, doutput, q_seqlen, kv_seqlen,
             attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training):
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        assert CrossFusedAttnBwdPrimitive.inner_primitive is not None

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        q_cu_seqlen = generate_cu_seqlen(q_seqlen)
        kv_cu_seqlen = generate_cu_seqlen(kv_seqlen)
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        dq, dkv, dbias, _ = CrossFusedAttnBwdPrimitive.inner_primitive.bind(
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            q,
            kv,
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            bias,
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            softmax_aux,
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            rng_state,
            output,
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            doutput,
            q_cu_seqlen,
            kv_cu_seqlen,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training)
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        return dq, dkv, dbias
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    @staticmethod
    def batcher(batched_args, batch_dims, *, attn_bias_type, attn_mask_type, scaling_factor,
                dropout_probability, is_training):
        _check_valid_batch_dims(batch_dims)
        assert CrossFusedAttnBwdPrimitive.outer_primitive is not None
        q_bdim, kv_bdim, *_ = batch_dims

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        out_bdims = q_bdim, kv_bdim, q_bdim
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        return CrossFusedAttnBwdPrimitive.outer_primitive.bind(
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            *batched_args,
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            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training), out_bdims

    @staticmethod
    def infer_sharding_from_operands(attn_bias_type, attn_mask_type, scaling_factor,
                                     dropout_probability, is_training, mesh, arg_infos,
                                     result_infos):
        del attn_bias_type, attn_mask_type, scaling_factor
        del dropout_probability, is_training, result_infos
        q_spec = get_padded_spec(arg_infos[0])
        kv_spec = get_padded_spec(arg_infos[1])
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        bias_spec = get_padded_spec(arg_infos[2])
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        dq_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        dkv_sharding = NamedSharding(mesh, PartitionSpec(*kv_spec))
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        dbias_sharding = NamedSharding(mesh, PartitionSpec(*bias_spec))
        return (dq_sharding, dkv_sharding, dbias_sharding)
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    @staticmethod
    def partition(attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training,
                  mesh, arg_infos, result_infos):
        del result_infos
        q_spec = get_padded_spec(arg_infos[0])
        kv_spec = get_padded_spec(arg_infos[1])
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        bias_spec = get_padded_spec(arg_infos[2])
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        dq_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        dkv_sharding = NamedSharding(mesh, PartitionSpec(*kv_spec))
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        dbias_sharding = NamedSharding(mesh, PartitionSpec(*bias_spec))
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        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
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        out_shardings = (dq_sharding, dkv_sharding, dbias_sharding)

        def sharded_impl(q, kv, bias, softmax_aux, rng_state, output, doutput, q_cu_seqlen,
                         kv_cu_seqlen):
            local_dq, local_dkv, local_dbias = CrossFusedAttnBwdPrimitive.impl(
                q,
                kv,
                bias,
                softmax_aux,
                rng_state,
                output,
                doutput,
                q_cu_seqlen,
                kv_cu_seqlen,
                attn_bias_type=attn_bias_type,
                attn_mask_type=attn_mask_type,
                scaling_factor=scaling_factor,
                dropout_probability=dropout_probability,
                is_training=is_training)
            global_dbias = local_dbias
            if attn_bias_type is not NVTE_Bias_Type.NVTE_NO_BIAS:
                global_dbias = all_reduce_sum_along_dp_fsdp(local_dbias)
            return local_dq, local_dkv, global_dbias
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        return mesh, sharded_impl, out_shardings, arg_shardings
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register_primitive(CrossFusedAttnBwdPrimitive)
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def cross_fused_attn_bwd(q: jnp.ndarray, kv: jnp.ndarray, bias: jnp.ndarray,
                         softmax_aux: jnp.ndarray, rng_state: jnp.ndarray, output: jnp.ndarray,
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                         doutput: jnp.ndarray, q_seqlen: jnp.ndarray, kv_seqlen: jnp.ndarray,
                         attn_bias_type: NVTE_Bias_Type, attn_mask_type: NVTE_Mask_Type,
                         scaling_factor: float, dropout_probability: float, is_training: bool):
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    """
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    Wrapper for TE cross fused attention bwd
    Return the gradients of cross fused attention with packed kv input
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    """
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    if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
        assert bias is None
        bias = jnp.zeros(0, dtype=q.dtype)
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    return CrossFusedAttnBwdPrimitive.outer_primitive.bind(q,
                                                           kv,
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                                                           bias,
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                                                           softmax_aux,
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                                                           rng_state,
                                                           output,
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                                                           doutput,
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                                                           q_seqlen,
                                                           kv_seqlen,
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                                                           attn_bias_type=attn_bias_type,
                                                           attn_mask_type=attn_mask_type,
                                                           scaling_factor=scaling_factor,
                                                           dropout_probability=dropout_probability,
                                                           is_training=is_training)
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class FusedAttnFwdPrimitive(BasePrimitive):
    """
    Fused Attention Forward Primitive
    Query, key, value are seperated tensors
    """
    name = "te_fused_attn_forward"
    multiple_results = True
    impl_static_args = (7, 8, 9, 10, 11)
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def abstract(q_aval, k_aval, v_aval, bias_aval, q_seqlen_or_cu_seqlen_aval,
                 kv_seqlen_or_cu_seqlen_aval, seed_aval, *, attn_bias_type, attn_mask_type,
                 scaling_factor, dropout_probability, is_training):
        """
        Fused attention fwd abstract
        """
        q_dtype = dtypes.canonicalize_dtype(q_aval.dtype)
        k_dtype = dtypes.canonicalize_dtype(k_aval.dtype)
        v_dtype = dtypes.canonicalize_dtype(v_aval.dtype)
        bias_dtype = dtypes.canonicalize_dtype(bias_aval.dtype)
        assert q_dtype == k_dtype == v_dtype == bias_dtype
        assert q_seqlen_or_cu_seqlen_aval.dtype == kv_seqlen_or_cu_seqlen_aval.dtype

2829
        *q_batch_shape, q_max_seqlen, attn_heads, q_head_dim = q_aval.shape
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        *kv_batch_shape, kv_max_seqlen, num_gqa_groups, kv_head_dim = k_aval.shape
        assert q_batch_shape == kv_batch_shape
        assert q_head_dim == kv_head_dim
        assert k_aval.shape == v_aval.shape
        out_aval = q_aval.update(shape=q_aval.shape, dtype=q_dtype)

        # backend determines the softmax buffer shape/dtype
        backend = FusedAttnHelper(q_dtype, k_dtype, NVTE_QKV_Layout.NVTE_BSHD_BS2HD, attn_bias_type,
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                                  attn_mask_type, dropout_probability, attn_heads, num_gqa_groups,
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                                  q_max_seqlen, kv_max_seqlen, q_head_dim).get_fused_attn_backend()

        if backend == NVTE_Fused_Attn_Backend.NVTE_F16_max512_seqlen:
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            softmax_shape = (*q_batch_shape, attn_heads, q_max_seqlen, kv_max_seqlen)
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            softmax_dtype = q_dtype
        elif backend == NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen:
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            softmax_shape = (*q_batch_shape, attn_heads, q_max_seqlen, 1)
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            softmax_dtype = dtypes.canonicalize_dtype(jnp.float32)
        else:
            raise ValueError(f'Unsupported {backend=}')
        softmax_aux_aval = q_aval.update(shape=softmax_shape, dtype=softmax_dtype)

        # JAX does not enable 64-bit int by default so we get XLA to allocate x8 memory with
        # 32-bit unsigned int to get the buffer size we need in the C++ kernel
        checker = _FusedAttnRNGStateChecker()
        seed_dtype = dtypes.canonicalize_dtype(seed_aval.dtype)
        assert seed_dtype == checker.rng_state_dtype
        rng_state_shape = (seed_aval.shape[0], checker.rng_state_size)
        rng_state_aval = seed_aval.update(shape=rng_state_shape, dtype=checker.rng_state_dtype)

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        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)

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        # do a dummy kernel call here to get workspace buffer shapes/dtypes that XLA needs to
        # prepare for the active fused-attn backend
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        input_batch = reduce(operator.mul, q_batch_shape)
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        wkspace_info = transformer_engine_jax.get_fused_attn_fwd_workspace_sizes(
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            input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
            attn_heads, num_gqa_groups, bias_heads, q_head_dim,
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            scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
            jax_dtype_to_te_dtype(q_aval.dtype), is_training)
        wkspace_aval = q_aval.update(shape=wkspace_info[0],
                                     dtype=te_dtype_to_jax_dtype(wkspace_info[1]))

        return out_aval, softmax_aux_aval, rng_state_aval, wkspace_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        Fused attention fwd outer primitive abstract
        """
        out_aval, softmax_aux_aval, rng_state_aval, _ = \
            FusedAttnFwdPrimitive.abstract(*args, **kwargs)
        return out_aval, softmax_aux_aval, rng_state_aval

    @staticmethod
    def lowering(ctx, q, k, v, bias, q_cu_seqlen, kv_cu_seqlen, seed, *, attn_bias_type,
                 attn_mask_type, scaling_factor, dropout_probability, is_training):
        """
        Fused attention fwd lowering rules
        """
        operands = [q, k, v, bias, q_cu_seqlen, kv_cu_seqlen, seed]
        operand_shapes = map(lambda x: x.type.shape, operands)
        out_types = [
            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
        ]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

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        q_aval, k_aval, v_aval, bias_aval, *_ = ctx.avals_in
        *batch_shape, q_max_seqlen, attn_heads, head_dim = q_aval.shape
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        *_, kv_max_seqlen, num_gqa_groups, _ = k_aval.shape
        assert k_aval.shape == v_aval.shape
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        input_batch = reduce(operator.mul, batch_shape)

        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)
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        wkspace_aval = ctx.avals_out[-1]

        opaque = transformer_engine_jax.pack_fused_attn_descriptor(
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            input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
            attn_heads, num_gqa_groups, bias_heads, head_dim,
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            wkspace_aval.size, scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
            jax_dtype_to_te_dtype(q_aval.dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype),
            is_training)

        out = custom_caller(FusedAttnFwdPrimitive.name, args, opaque, has_side_effect=False)

        return out

    @staticmethod
    def impl(q, k, v, bias, q_seqlen, kv_seqlen, seed, attn_bias_type, attn_mask_type,
             scaling_factor, dropout_probability, is_training):
        assert FusedAttnFwdPrimitive.inner_primitive is not None

        q_cu_seqlen = generate_cu_seqlen(q_seqlen)
        kv_cu_seqlen = generate_cu_seqlen(kv_seqlen)

        output, softmax_aux, rng_state, _ = FusedAttnFwdPrimitive.inner_primitive.bind(
            q,
            k,
            v,
            bias,
            q_cu_seqlen,
            kv_cu_seqlen,
            seed,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training)
        return output, softmax_aux, rng_state

    @staticmethod
    def batcher(batched_args, batch_dims, *, attn_bias_type, attn_mask_type, scaling_factor,
                dropout_probability, is_training):
        _check_valid_batch_dims(batch_dims)
        assert FusedAttnFwdPrimitive.outer_primitive is not None
        q_bdim, *_, seed_bdim = batch_dims

        out_bdims = q_bdim, q_bdim, seed_bdim
        return FusedAttnFwdPrimitive.outer_primitive.bind(*batched_args,
                                                          attn_bias_type=attn_bias_type,
                                                          attn_mask_type=attn_mask_type,
                                                          scaling_factor=scaling_factor,
                                                          dropout_probability=dropout_probability,
                                                          is_training=is_training), out_bdims

    @staticmethod
    def infer_sharding_from_operands(attn_bias_type, attn_mask_type, scaling_factor,
                                     dropout_probability, is_training, mesh, arg_infos,
                                     result_infos):
        del attn_bias_type, attn_mask_type, scaling_factor
        del dropout_probability, is_training, result_infos
        q_spec = get_padded_spec(arg_infos[0])    # (...batch, q_seqlen, head, hidden)
        k_spec = get_padded_spec(arg_infos[1])    # (...batch, kv_seqlen, head, hidden)
        out_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        softmax_aux_sharding = NamedSharding(
            mesh, PartitionSpec(*q_spec[:-3], q_spec[-2], q_spec[-3], k_spec[-3]))
        rng_state_sharding = NamedSharding(mesh, PartitionSpec(get_all_mesh_axes(), None))
        return (out_sharding, softmax_aux_sharding, rng_state_sharding)

    @staticmethod
    def partition(attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training,
                  mesh, arg_infos, result_infos):
        del result_infos
        q_spec = get_padded_spec(arg_infos[0])    # (...batch, q_seqlen, head, hidden)
        k_spec = get_padded_spec(arg_infos[1])    # (...batch, kv_seqlen, head, hidden)
        out_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        softmax_aux_sharding = NamedSharding(
            mesh, PartitionSpec(*q_spec[:-3], q_spec[-2], q_spec[-3], k_spec[-3]))
        rng_state_sharding = seed_sharding = NamedSharding(mesh,
                                                           PartitionSpec(get_all_mesh_axes(), None))
        arg_shardings = tuple([arg_i.sharding for arg_i in arg_infos[:-1]] + [seed_sharding])
        out_shardings = (out_sharding, softmax_aux_sharding, rng_state_sharding)
        impl = partial(FusedAttnFwdPrimitive.impl,
                       attn_bias_type=attn_bias_type,
                       attn_mask_type=attn_mask_type,
                       scaling_factor=scaling_factor,
                       dropout_probability=dropout_probability,
                       is_training=is_training)
        return mesh, impl, out_shardings, arg_shardings


register_primitive(FusedAttnFwdPrimitive)


def fused_attn_fwd(q: jnp.ndarray, k: jnp.ndarray, v: jnp.ndarray, bias: jnp.ndarray,
                   q_seqlen: jnp.ndarray, kv_seqlen: jnp.ndarray, seed: jnp.ndarray,
                   attn_bias_type: NVTE_Bias_Type, attn_mask_type: NVTE_Mask_Type,
                   scaling_factor: float, dropout_probability: float, is_training: bool):
    """
    Wrapper for TE fused attention fwd, where query, key, value are seperated tensors
    Return BMM1 -> (PreScaleBias) -> Scale -> (PostScaleBias) -> Softmax -> (Dropout) -> BMM2
    """
    checker = _FusedAttnRNGStateChecker()
    seed = checker.check_seed(seed, dropout_probability, is_training)

    if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
        assert bias is None
        bias = jnp.zeros(0, dtype=q.dtype)

    return FusedAttnFwdPrimitive.outer_primitive.bind(q,
                                                      k,
                                                      v,
                                                      bias,
                                                      q_seqlen,
                                                      kv_seqlen,
                                                      seed,
                                                      attn_bias_type=attn_bias_type,
                                                      attn_mask_type=attn_mask_type,
                                                      scaling_factor=scaling_factor,
                                                      dropout_probability=dropout_probability,
                                                      is_training=is_training)


class FusedAttnBwdPrimitive(BasePrimitive):
    """
    Fused Attention Backward Primitive
    """
    name = "te_fused_attn_backward"
    multiple_results = True
    impl_static_args = (10, 11, 12, 13, 14)
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def abstract(q_aval, k_aval, v_aval, bias_aval, softmax_aux_aval, rng_state_aval, output_aval,
                 doutput_aval, q_cu_seqlen_aval, kv_cu_seqlen_aval, *, attn_bias_type,
                 attn_mask_type, scaling_factor, dropout_probability, is_training):
        """
        Fused attention bwd abstract
        """
        del softmax_aux_aval, rng_state_aval, output_aval

        q_dtype = dtypes.canonicalize_dtype(q_aval.dtype)
        k_dtype = dtypes.canonicalize_dtype(k_aval.dtype)
        v_dtype = dtypes.canonicalize_dtype(v_aval.dtype)
        bias_dtype = dtypes.canonicalize_dtype(bias_aval.dtype)
        doutput_dtype = dtypes.canonicalize_dtype(doutput_aval.dtype)
        assert q_dtype == k_dtype == v_dtype == bias_dtype == doutput_dtype
        assert q_cu_seqlen_aval.dtype == kv_cu_seqlen_aval.dtype

3059
        *q_batch_shape, q_max_seqlen, attn_heads, q_head_dim = q_aval.shape
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        *kv_batch_shape, kv_max_seqlen, num_gqa_groups, kv_head_dim = k_aval.shape
        assert q_batch_shape == kv_batch_shape
        assert q_head_dim == kv_head_dim
        assert k_aval.shape == v_aval.shape

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        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)

        input_batch = reduce(operator.mul, q_batch_shape)
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        wkspace_shape, wkspace_dtype = \
            transformer_engine_jax.get_fused_attn_bwd_workspace_sizes(
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                input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
                attn_heads, num_gqa_groups, bias_heads, q_head_dim,
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                scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
                jax_dtype_to_te_dtype(q_aval.dtype), is_training
            )

        dq_aval = q_aval.update(shape=q_aval.shape, dtype=q_dtype)
        dk_aval = k_aval.update(shape=k_aval.shape, dtype=k_dtype)
        dv_aval = v_aval.update(shape=v_aval.shape, dtype=v_dtype)
        dbias_aval = bias_aval.update(shape=bias_aval.shape, dtype=bias_dtype)
        wkspace_aval = q_aval.update(shape=wkspace_shape,
                                     dtype=te_dtype_to_jax_dtype(wkspace_dtype))

        return dq_aval, dk_aval, dv_aval, dbias_aval, wkspace_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        Fused attention fwd outer primitive abstract
        """
        dq_aval, dk_aval, dv_aval, dbias_aval, _ = \
            FusedAttnBwdPrimitive.abstract(*args, **kwargs)
        return dq_aval, dk_aval, dv_aval, dbias_aval

    @staticmethod
    def lowering(ctx, q, k, v, bias, softmax_aux, rng_state, output, doutput, q_cu_seqlen,
                 kv_cu_seqlen, *, attn_bias_type, attn_mask_type, scaling_factor,
                 dropout_probability, is_training):
        """
        Fused attention bwd lowering rules
        """
        operands = [
            q, k, v, bias, softmax_aux, rng_state, output, doutput, q_cu_seqlen, kv_cu_seqlen
        ]
        operand_shapes = map(lambda x: x.type.shape, operands)
        out_types = [
            ir.RankedTensorType.get(output.shape, mlir.dtype_to_ir_type(output.dtype))
            for output in ctx.avals_out
        ]

        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

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        q_aval, k_aval, v_aval, bias_aval, *_ = ctx.avals_in
        *batch_shape, q_max_seqlen, attn_heads, head_dim = q_aval.shape
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        *_, kv_max_seqlen, num_gqa_groups, _ = k_aval.shape
        assert k_aval.shape == v_aval.shape
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        input_batch = reduce(operator.mul, batch_shape)

        if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
            bias_batch = bias_heads = 0
        else:
            *bias_batch_shape, bias_heads, _, _ = bias_aval.shape
            bias_batch = reduce(operator.mul, bias_batch_shape)
3127
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        wkspace_aval = ctx.avals_out[-1]

        opaque = transformer_engine_jax.pack_fused_attn_descriptor(
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            input_batch, bias_batch, q_max_seqlen, kv_max_seqlen,
            attn_heads, num_gqa_groups, bias_heads, head_dim,
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            wkspace_aval.size, scaling_factor, dropout_probability, attn_bias_type, attn_mask_type,
            jax_dtype_to_te_dtype(q_aval.dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype),
            is_training)

        out = custom_caller(FusedAttnBwdPrimitive.name, args, opaque, has_side_effect=False)

        return out

    @staticmethod
    def impl(q, k, v, bias, softmax_aux, rng_state, output, doutput, q_seqlen, kv_seqlen,
             attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training):
        assert FusedAttnBwdPrimitive.inner_primitive is not None

        q_cu_seqlen = generate_cu_seqlen(q_seqlen)
        kv_cu_seqlen = generate_cu_seqlen(kv_seqlen)

        dq, dk, dv, dbias, _ = FusedAttnBwdPrimitive.inner_primitive.bind(
            q,
            k,
            v,
            bias,
            softmax_aux,
            rng_state,
            output,
            doutput,
            q_cu_seqlen,
            kv_cu_seqlen,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training)
        return dq, dk, dv, dbias

    @staticmethod
    def batcher(batched_args, batch_dims, *, attn_bias_type, attn_mask_type, scaling_factor,
                dropout_probability, is_training):
        _check_valid_batch_dims(batch_dims)
        assert FusedAttnBwdPrimitive.outer_primitive is not None
        q_bdim, k_bdim, v_bdim, *_ = batch_dims

        out_bdims = q_bdim, k_bdim, v_bdim, q_bdim
        return FusedAttnBwdPrimitive.outer_primitive.bind(*batched_args,
                                                          attn_bias_type=attn_bias_type,
                                                          attn_mask_type=attn_mask_type,
                                                          scaling_factor=scaling_factor,
                                                          dropout_probability=dropout_probability,
                                                          is_training=is_training), out_bdims

    @staticmethod
    def infer_sharding_from_operands(attn_bias_type, attn_mask_type, scaling_factor,
                                     dropout_probability, is_training, mesh, arg_infos,
                                     result_infos):
        del attn_bias_type, attn_mask_type, scaling_factor
        del dropout_probability, is_training, result_infos
        q_spec = get_padded_spec(arg_infos[0])
        k_spec = get_padded_spec(arg_infos[1])
        v_spec = get_padded_spec(arg_infos[2])
        bias_spec = get_padded_spec(arg_infos[3])
        dq_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        dk_sharding = NamedSharding(mesh, PartitionSpec(*k_spec))
        dv_sharding = NamedSharding(mesh, PartitionSpec(*v_spec))
        dbias_sharding = NamedSharding(mesh, PartitionSpec(*bias_spec))
        return (dq_sharding, dk_sharding, dv_sharding, dbias_sharding)

    @staticmethod
    def partition(attn_bias_type, attn_mask_type, scaling_factor, dropout_probability, is_training,
                  mesh, arg_infos, result_infos):
        del result_infos
        q_spec = get_padded_spec(arg_infos[0])
        k_spec = get_padded_spec(arg_infos[1])
        v_spec = get_padded_spec(arg_infos[2])
        bias_spec = get_padded_spec(arg_infos[3])
        dq_sharding = NamedSharding(mesh, PartitionSpec(*q_spec))
        dk_sharding = NamedSharding(mesh, PartitionSpec(*k_spec))
        dv_sharding = NamedSharding(mesh, PartitionSpec(*v_spec))
        dbias_sharding = NamedSharding(mesh, PartitionSpec(*bias_spec))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (dq_sharding, dk_sharding, dv_sharding, dbias_sharding)

        def sharded_impl(q, k, v, bias, softmax_aux, rng_state, output, doutput, q_cu_seqlen,
                         kv_cu_seqlen):
            local_dq, local_dk, local_dv, local_dbias = FusedAttnBwdPrimitive.impl(
                q,
                k,
                v,
                bias,
                softmax_aux,
                rng_state,
                output,
                doutput,
                q_cu_seqlen,
                kv_cu_seqlen,
                attn_bias_type=attn_bias_type,
                attn_mask_type=attn_mask_type,
                scaling_factor=scaling_factor,
                dropout_probability=dropout_probability,
                is_training=is_training)
            global_dbias = local_dbias
            if attn_bias_type is not NVTE_Bias_Type.NVTE_NO_BIAS:
                global_dbias = all_reduce_sum_along_dp_fsdp(local_dbias)
            return local_dq, local_dk, local_dv, global_dbias

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(FusedAttnBwdPrimitive)


def fused_attn_bwd(q: jnp.ndarray, k: jnp.ndarray, v: jnp.ndarray, bias: jnp.ndarray,
                   softmax_aux: jnp.ndarray, rng_state: jnp.ndarray, output: jnp.ndarray,
                   doutput: jnp.ndarray, q_seqlen: jnp.ndarray, kv_seqlen: jnp.ndarray,
                   attn_bias_type: NVTE_Bias_Type, attn_mask_type: NVTE_Mask_Type,
                   scaling_factor: float, dropout_probability: float, is_training: bool):
    """
    Wrapper for TE fused attention bwd
    Return the gradients of fused attention with seperated query, key, value tensors
    """
    if attn_bias_type == NVTE_Bias_Type.NVTE_NO_BIAS:
        assert bias is None
        bias = jnp.zeros(0, dtype=q.dtype)
3254

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3260
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    return FusedAttnBwdPrimitive.outer_primitive.bind(q,
                                                      k,
                                                      v,
                                                      bias,
                                                      softmax_aux,
                                                      rng_state,
                                                      output,
                                                      doutput,
                                                      q_seqlen,
                                                      kv_seqlen,
                                                      attn_bias_type=attn_bias_type,
                                                      attn_mask_type=attn_mask_type,
                                                      scaling_factor=scaling_factor,
                                                      dropout_probability=dropout_probability,
                                                      is_training=is_training)


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class GeluPrimitive(BasePrimitive):
    """
    Gelu Froward Primitive
    """
    name = "te_gelu"
    multiple_results = False
    inner_primitive = None
    outer_primitive = None
    impl_static_args = ()

    @staticmethod
    def abstract(x_aval):
        """
        gated_gelu abstract
        """
        dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]

        out_aval = core.raise_to_shaped(x_aval)
        return out_aval

    @staticmethod
    def lowering(ctx, x):
        """
        gated_gelu lowering rules
        """
        (x_aval,) = ctx.avals_in
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        out_shape = ir_x_shape

        out_types = [
            ir.RankedTensorType.get(out_shape, ir_x_type.element_type),
        ]
        operands = [x]
        operand_shapes = [ir_x_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

        hidden_size = ir_x_shape[-1]
        batch_size = reduce(operator.mul, ir_x_shape[:-1])
        in_dtype = jax_dtype_to_te_dtype(x_aval.dtype)
        opaque = transformer_engine_jax.pack_common_descriptor((batch_size, hidden_size), in_dtype,
                                                               in_dtype)

        out = custom_caller(GeluPrimitive.name, args, opaque, False)

        return [out]

    @staticmethod
    def impl(x):
        assert GeluPrimitive.inner_primitive is not None
        out = GeluPrimitive.inner_primitive.bind(x)
        return out

    @staticmethod
    def batcher(batched_args, batch_dims):
        """
        gated_gelu batcher
        """
        _check_valid_batch_dims(batch_dims)
        assert GeluPrimitive.outer_primitive is not None
        inputs, = batched_args
        inputs_bdim, = batch_dims

        out_bdims = inputs_bdim
        return GeluPrimitive.outer_primitive.bind(inputs), out_bdims

    @staticmethod
    def infer_sharding_from_operands(mesh, arg_infos, result_infos):
        """
        gated_gelu infer_sharding_from_operands
        """
        del result_infos    # Unused.
        x_spec = get_padded_spec(arg_infos[0])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        return out_sharding

    @staticmethod
    def partition(mesh, arg_infos, result_infos):
        """
        gated_gelu partitioning
        """
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        impl = GeluPrimitive.impl
        return mesh, impl, out_sharding, arg_shardings


register_primitive(GeluPrimitive)


def gelu(inputs: jnp.ndarray) -> jnp.ndarray:
    """
    gelu wrapper
    Return geglu(inputs)
    Assume inputs has two dimensions shape and the memory layout is (N..., H)
    """
    return GeluPrimitive.outer_primitive.bind(inputs)


class DGeluPrimitive(BasePrimitive):
    """
    Dgated Gelu Primitive
    """
    name = "te_dgelu"
    multiple_results = False
    inner_primitive = None
    outer_primitive = None
    impl_static_args = ()

    @staticmethod
    def abstract(dz_aval, x_aval):
        """
        dgelu abstract
        """
        dtype = dtypes.canonicalize_dtype(dz_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert x_aval.dtype == dtype
        assert dz_aval.shape == x_aval.shape

        out_aval = core.raise_to_shaped(x_aval)
        return out_aval

    @staticmethod
    def lowering(ctx, dz, x):
        """
        dgelu lowering rules
        """
        in_aval, gi_aval = ctx.avals_in
        assert in_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert gi_aval.dtype == in_aval.dtype
        ir_in_type = ir.RankedTensorType(dz.type)
        ir_in_shape = ir_in_type.shape
        gi_type = ir.RankedTensorType(x.type)
        gi_shape = gi_type.shape
        assert ir_in_shape == gi_shape

        ir_batch_size = reduce(operator.mul, ir_in_shape[:-1])
        i_hidden_size = ir_in_shape[-1]
        out_dtype = ir_in_type.element_type
        out_shape = gi_shape

        out_types = [
            ir.RankedTensorType.get(out_shape, out_dtype),
        ]
        operands = [dz, x]
        operand_shapes = [ir_in_shape, gi_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

        in_dtype = jax_dtype_to_te_dtype(in_aval.dtype)
        opaque = transformer_engine_jax.pack_common_descriptor((ir_batch_size, i_hidden_size),
                                                               in_dtype, in_dtype)

        out = custom_caller(DGeluPrimitive.name, args, opaque, False)

        return [out]

    @staticmethod
    def impl(dz, x):
        """
        dgelu implementation
        """
        assert DGeluPrimitive.inner_primitive is not None
        dx = DGeluPrimitive.inner_primitive.bind(dz, x)
        return dx

    @staticmethod
    def batcher(batched_args, batch_dims):
        """
        dgelu batcher
        """
        _check_valid_batch_dims(batch_dims)
        assert DGeluPrimitive.outer_primitive is not None
        dz, x = batched_args
        _, x_bdim = batch_dims

        out_bdims = x_bdim
        return DGeluPrimitive.outer_primitive.bind(dz, x), out_bdims

    @staticmethod
    def infer_sharding_from_operands(mesh, arg_infos, result_infos):
        """
        dgelu infer_sharding_from_operands
        """
        del result_infos    # Unused.
        gelu_out_spec = get_padded_spec(arg_infos[1])
        dx_sharding = NamedSharding(mesh, PartitionSpec(*gelu_out_spec))
        return dx_sharding

    @staticmethod
    def partition(mesh, arg_infos, result_infos):
        """
        dgelu partition
        """
        del result_infos
        dx_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = dx_sharding
        impl = DGeluPrimitive.impl
        return mesh, impl, out_shardings, arg_shardings


register_primitive(DGeluPrimitive)


def dgelu(inputs: jnp.ndarray, gelu_inputs: jnp.ndarray) -> jnp.ndarray:
    """
    dgelu fusion wrapper
    Return dgeglu(inputs)
    """
    return DGeluPrimitive.outer_primitive.bind(inputs, gelu_inputs)


3488
class GatedGeluPrimitive(BasePrimitive):
3489
    """
3490
    Gated Gelu Froward Primitive
3491
    """
3492
    name = "te_gated_gelu"
3493
    multiple_results = False
3494
3495
3496
    inner_primitive = None
    outer_primitive = None
    impl_static_args = ()
3497
3498

    @staticmethod
3499
    def abstract(x_aval):
3500
        """
3501
        gated_gelu abstract
3502
        """
3503
3504
3505
3506
3507
3508
3509
3510
3511
3512
        dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        x_shape = x_aval.shape
        assert x_shape[-2] == 2    # Assume x in (....., 2, hidden)
        hidden_size = x_shape[-1]
        batch_shapes = x_shape[:-2]
        x_shape = x_aval.shape
        out_aval = core.raise_to_shaped(x_aval)
        out_shape = (batch_shapes) + (hidden_size,)
        out_aval = out_aval.update(shape=out_shape, dtype=dtype)
3513

3514
        return out_aval
3515
3516

    @staticmethod
3517
    def lowering(ctx, x):
3518
        """
3519
        gated_gelu lowering rules
3520
        """
3521
3522
3523
3524
3525
        (x_aval,) = ctx.avals_in
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        out_shape = ir_x_shape[:-2] + [ir_x_shape[-1]]
3526

3527
3528
3529
3530
3531
3532
        out_types = [
            ir.RankedTensorType.get(out_shape, ir_x_type.element_type),
        ]
        operands = [x]
        operand_shapes = [ir_x_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
3533

3534
3535
3536
3537
3538
        hidden_size = ir_x_shape[-1]
        batch_size = reduce(operator.mul, ir_x_shape[:-2])
        in_dtype = jax_dtype_to_te_dtype(x_aval.dtype)
        opaque = transformer_engine_jax.pack_common_descriptor((batch_size, hidden_size), in_dtype,
                                                               in_dtype)
3539

3540
        out = custom_caller(GatedGeluPrimitive.name, args, opaque, False)
3541

3542
        return [out]
3543

3544
3545
3546
3547
3548
    @staticmethod
    def impl(x):
        assert GatedGeluPrimitive.inner_primitive is not None
        out = GatedGeluPrimitive.inner_primitive.bind(x)
        return out
3549

3550
3551
3552
3553
3554
3555
3556
3557
3558
    @staticmethod
    def batcher(batched_args, batch_dims):
        """
        gated_gelu batcher
        """
        _check_valid_batch_dims(batch_dims)
        assert GatedGeluPrimitive.outer_primitive is not None
        inputs, = batched_args
        inputs_bdim, = batch_dims
3559

3560
3561
        out_bdims = inputs_bdim
        return GatedGeluPrimitive.outer_primitive.bind(inputs), out_bdims
3562

3563
3564
3565
3566
3567
3568
3569
3570
3571
    @staticmethod
    def infer_sharding_from_operands(mesh, arg_infos, result_infos):
        """
        gated_gelu infer_sharding_from_operands
        """
        del result_infos    # Unused.
        x_spec = get_padded_spec(arg_infos[0])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-2], x_spec[-1]))
        return out_sharding
3572

3573
3574
3575
3576
3577
3578
3579
3580
3581
3582
3583
    @staticmethod
    def partition(mesh, arg_infos, result_infos):
        """
        gated_gelu partitioning
        """
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-2], x_spec[-1]))
        impl = GatedGeluPrimitive.impl
        return mesh, impl, out_sharding, arg_shardings
3584
3585


3586
register_primitive(GatedGeluPrimitive)
3587
3588


3589
def gated_gelu(inputs: jnp.ndarray) -> jnp.ndarray:
3590
    """
3591
3592
3593
    gated gelu wrapper
    Return FP8(geglu(inputs))
    Assume inputs has two dimensions shape and the memory layout is (N, 2, H)
3594
    """
3595
    return GatedGeluPrimitive.outer_primitive.bind(inputs)
3596
3597


3598
class DgatedGeluPrimitive(BasePrimitive):
3599
    """
3600
    Dgated Gelu Primitive
3601
    """
3602
3603
3604
3605
3606
    name = "te_dgated_gelu"
    multiple_results = False
    inner_primitive = None
    outer_primitive = None
    impl_static_args = ()
3607
3608

    @staticmethod
3609
    def abstract(dz_aval, x_aval):
3610
        """
3611
        dgated_gelu abstract
3612
        """
3613
3614
3615
3616
3617
        dtype = dtypes.canonicalize_dtype(dz_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert x_aval.dtype == dtype
        for axis in range(len(dz_aval.shape) - 1):
            assert dz_aval.shape[axis] == x_aval.shape[axis]
3618

3619
        assert x_aval.shape[-2] == 2    # Assume x in (....., 2, hidden)
3620

3621
3622
3623
3624
3625
        i_hidden_size = dz_aval.shape[-1]
        g_hidden_size = x_aval.shape[-1]
        assert i_hidden_size == g_hidden_size
        out_aval = core.raise_to_shaped(x_aval)
        return out_aval
3626
3627

    @staticmethod
3628
    def lowering(ctx, dz, x):
3629
        """
3630
        dgated_gelu lowering rules
3631
        """
3632
3633
3634
3635
3636
3637
3638
3639
3640
        in_aval, gi_aval = ctx.avals_in
        assert in_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert gi_aval.dtype == in_aval.dtype
        ir_in_type = ir.RankedTensorType(dz.type)
        ir_in_shape = ir_in_type.shape
        gi_type = ir.RankedTensorType(x.type)
        gi_shape = gi_type.shape
        for axis in range(len(ir_in_shape) - 1):
            assert ir_in_shape[axis] == gi_shape[axis]
3641

3642
3643
3644
3645
3646
3647
        ir_batch_size = reduce(operator.mul, ir_in_shape[:-1])
        i_hidden_size = ir_in_shape[-1]
        g_hidden_size = gi_shape[-1]
        assert i_hidden_size == g_hidden_size
        out_dtype = ir_in_type.element_type
        out_shape = gi_shape
3648
3649

        out_types = [
3650
            ir.RankedTensorType.get(out_shape, out_dtype),
3651
        ]
3652
3653
        operands = [dz, x]
        operand_shapes = [ir_in_shape, gi_shape]
3654
3655
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

3656
3657
3658
        in_dtype = jax_dtype_to_te_dtype(in_aval.dtype)
        opaque = transformer_engine_jax.pack_common_descriptor((ir_batch_size, i_hidden_size),
                                                               in_dtype, in_dtype)
3659

3660
        out = custom_caller(DgatedGeluPrimitive.name, args, opaque, False)
3661
3662
3663
3664

        return [out]

    @staticmethod
3665
3666
3667
3668
3669
3670
3671
    def impl(dz, x):
        """
        dgated_gelu implementation
        """
        assert DgatedGeluPrimitive.inner_primitive is not None
        dx = DgatedGeluPrimitive.inner_primitive.bind(dz, x)
        return dx
3672
3673

    @staticmethod
3674
    def batcher(batched_args, batch_dims):
3675
        """
3676
        dgated_gelu batcher
3677
        """
3678
3679
3680
3681
        _check_valid_batch_dims(batch_dims)
        assert DgatedGeluPrimitive.outer_primitive is not None
        dz, x = batched_args
        _, x_bdim = batch_dims
3682

3683
3684
        out_bdims = x_bdim
        return DgatedGeluPrimitive.outer_primitive.bind(dz, x), out_bdims
3685
3686

    @staticmethod
3687
    def infer_sharding_from_operands(mesh, arg_infos, result_infos):
3688
        """
3689
        dgated_gelu infer_sharding_from_operands
3690
        """
3691
3692
3693
3694
        del result_infos    # Unused.
        gelu_out_spec = get_padded_spec(arg_infos[1])
        dx_sharding = NamedSharding(mesh, PartitionSpec(*gelu_out_spec))
        return dx_sharding
3695

3696
3697
3698
3699
3700
3701
3702
3703
3704
3705
3706
    @staticmethod
    def partition(mesh, arg_infos, result_infos):
        """
        dgated_gelu partition
        """
        del result_infos
        dx_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = dx_sharding
        impl = DgatedGeluPrimitive.impl
        return mesh, impl, out_shardings, arg_shardings
3707
3708


3709
register_primitive(DgatedGeluPrimitive)
3710
3711


3712
3713
3714
3715
3716
3717
def dgated_gelu(inputs: jnp.ndarray, gelu_inputs: jnp.ndarray) -> jnp.ndarray:
    """
    dgated_gelu fusion wrapper
    Return dgeglu(inputs)
    """
    return DgatedGeluPrimitive.outer_primitive.bind(inputs, gelu_inputs)
3718
3719


3720
3721
def _normalize_axis_boundary(axis, ndim):
    return axis if axis >= 0 else ndim + axis
3722
3723


3724
def _multidim_transpose(shape, static_axis_boundary, transpose_axis_boundary):
3725
    """
3726
3727
3728
3729
3730
3731
3732
3733
3734
3735
3736
3737
3738
3739
3740
3741
3742
3743
    te_cast_transpose_p multi-dims transpose

    static_axis_boundary: int, Indicate those axes <= static_axis_boundary would not be
        involved into transpose, -1 means all axes involve into transpose.
    transpose_axis_boundary: int, Indicate how to split multi-dimensions tensors to 2D matrix for
        transpose. Note, transpose_axis_boundary should be greater than static_axis_boundary

    examples:
        X in shape (dim0, dim1, dim2, dim3, dim4)

        static_axis_boundary == -1, transpose_axis_boundary == 2
            Xt = (dim2, dim3, dim4, dim0, dim1)

        static_axis_boundary == 0, transpose_axis_boundary == 2
            Xt = (dim0, dim2, dim3, dim4, dim1)

        static_axis_boundary == 0, transpose_axis_boundary == 3
            Xt = (dim0, dim3, dim4, dim1. dim2)
3744
    """
3745
3746
3747
3748
3749
3750
3751
3752
    if static_axis_boundary < 0:
        static_axis_boundary = -1    # means no static axes
    assert static_axis_boundary < len(shape) - 2    # at least 2 remaining for transpose.
    transpose_start_idx = static_axis_boundary + 1
    transpose_axis_boundary = _normalize_axis_boundary(transpose_axis_boundary, len(shape))
    assert transpose_start_idx < transpose_axis_boundary
    return (*shape[:transpose_start_idx], *shape[transpose_axis_boundary:],
            *shape[transpose_start_idx:transpose_axis_boundary])
3753
3754


3755
class CastTransposePrimitive(BasePrimitive):
3756
    """
3757
    Cast Transpose Primitive
3758
    """
3759
3760
3761
3762
3763
    name = "te_cast_transpose"
    multiple_results = True
    impl_static_args = (4, 5, 6)
    inner_primitive = None
    outer_primitive = None
3764
3765

    @staticmethod
3766
3767
3768
3769
3770
3771
3772
3773
3774
3775
3776
3777
3778
3779
3780
3781
3782
3783
3784
    def abstract(x_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype, static_axis_boundary,
                 transpose_axis_boundary):
        """
        te_cast_transpose_p abstract
        """
        dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32

        transposed_x_shape = _multidim_transpose(x_aval.shape, static_axis_boundary,
                                                 transpose_axis_boundary)

        casted_x_aval = x_aval.update(shape=x_aval.shape, dtype=out_dtype)
        casted_xt_aval = x_aval.update(shape=transposed_x_shape, dtype=out_dtype)
        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)

        return casted_x_aval, casted_xt_aval, updated_amax_aval
3785
3786

    @staticmethod
3787
3788
    def lowering(ctx, x, amax, scale, scale_inv, *, out_dtype, static_axis_boundary,
                 transpose_axis_boundary):
3789
        """
3790
        te_cast_transpose_p lowering rules
3791
        """
3792
3793
3794
3795
3796
3797
3798
3799
3800
3801
3802
3803
3804
3805
3806
3807
3808
3809
3810
3811
3812
3813
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3815
3816
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3818
3819
3820
3821
3822
3823
3824
3825
3826
3827
3828
3829
3830
3831
3832
3833
        x_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        if static_axis_boundary >= 0:
            for i in range(static_axis_boundary + 1):
                assert ir_x_shape[i] == 1
        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape

        transposed_x_shape = _multidim_transpose(ir_x_shape, static_axis_boundary,
                                                 transpose_axis_boundary)

        out_types = [
            ir.RankedTensorType.get(ir_x_shape, ir_out_dtype),
            ir.RankedTensorType.get(transposed_x_shape, ir_out_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
        ]
        operands = [x, amax, scale, scale_inv]
        operand_shapes = [ir_x_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

        contracted_x_shape = (reduce(operator.mul, ir_x_shape[:transpose_axis_boundary]),
                              reduce(operator.mul, ir_x_shape[transpose_axis_boundary:]))
        opaque = transformer_engine_jax.pack_common_descriptor(contracted_x_shape,
                                                               jax_dtype_to_te_dtype(x_aval.dtype),
                                                               jax_dtype_to_te_dtype(out_dtype))

        out = custom_caller(CastTransposePrimitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={1: 2})

        return out
3834
3835

    @staticmethod
3836
    def impl(x, amax, scale, scale_inv, out_dtype, static_axis_boundary, transpose_axis_boundary):
3837
        """
3838
        te_cast_transpose implementation
3839
        """
3840
3841
3842
3843
3844
3845
3846
        assert CastTransposePrimitive.inner_primitive is not None
        casted_x, casted_transposed_x, updated_amax = \
            CastTransposePrimitive.inner_primitive.bind(
                x, amax, scale, scale_inv, out_dtype=out_dtype,
                static_axis_boundary=static_axis_boundary,
                transpose_axis_boundary=transpose_axis_boundary)
        return casted_x, casted_transposed_x, updated_amax
3847

3848
3849
3850
3851
3852
3853
    @staticmethod
    def batcher(batched_args, batch_dims, *, out_dtype, static_axis_boundary,
                transpose_axis_boundary):
        _check_valid_batch_dims(batch_dims)
        assert CastTransposePrimitive.outer_primitive is not None
        assert static_axis_boundary < 0
3854

3855
3856
        x, amax, scale, scale_inv = batched_args
        x_bdim, amax_bdim, *_ = batch_dims
3857

3858
3859
3860
        # Minus batch dim.
        transpose_axis_boundary = _normalize_axis_boundary(transpose_axis_boundary, x.ndim - 1)
        transpose_axis_boundary += 1    # Plus batch dim
3861

3862
3863
3864
3865
3866
3867
3868
3869
3870
        out_bdims = x_bdim, x_bdim, amax_bdim
        return CastTransposePrimitive.outer_primitive.bind(
            x,
            amax,
            scale,
            scale_inv,
            out_dtype=out_dtype,
            static_axis_boundary=x_bdim,
            transpose_axis_boundary=transpose_axis_boundary), out_bdims
3871

3872
3873
3874
3875
3876
3877
3878
3879
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3899
3900
3901
3902
3903
3904
3905
3906
3907
3908
3909
3910
3911
3912
3913
    @staticmethod
    def infer_sharding_from_operands(out_dtype, static_axis_boundary, transpose_axis_boundary, mesh,
                                     arg_infos, result_infos):
        del out_dtype, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        casted_x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, transpose_axis_boundary)
        casted_transposed_x_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        return (casted_x_sharding, casted_transposed_x_sharding, amax_sharding)

    @staticmethod
    def partition(out_dtype, static_axis_boundary, transpose_axis_boundary, mesh, arg_infos,
                  result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        casted_x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, transpose_axis_boundary)
        casted_transposed_x_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (casted_x_sharding, casted_transposed_x_sharding, amax_sharding)

        def sharded_impl(x, amax, scale, scale_inv):
            local_cx, local_cxt, local_updated_amax = \
                CastTransposePrimitive.impl(x, amax, scale, scale_inv,
                     out_dtype=out_dtype,
                       static_axis_boundary=static_axis_boundary,
                       transpose_axis_boundary=transpose_axis_boundary)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_updated_amax)

            return local_cx, local_cxt, global_updated_amax

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(CastTransposePrimitive)


def cast_transpose(x: jnp.ndarray, amax: jnp.ndarray, scale: jnp.ndarray, scale_inv: jnp.ndarray,
                   out_dtype: jnp.dtype, static_axis_boundary: int,
                   transpose_axis_boundary: int) -> Tuple[jnp.ndarray, jnp.ndarray, jnp.ndarray]:
3914
    """
3915
3916
    cast transpose wrapper
    Return two tensors, FP8(inputs) and FP8(inputs.T), which are scaled by `scale`
3917
    """
3918
3919
3920
3921
3922
3923
3924
3925
    return CastTransposePrimitive.outer_primitive.bind(
        x,
        amax,
        scale,
        scale_inv,
        out_dtype=out_dtype,
        static_axis_boundary=static_axis_boundary,
        transpose_axis_boundary=transpose_axis_boundary)
3926
3927


3928
3929
3930
3931
3932
3933
3934
3935
3936
3937
3938
3939
3940
3941
3942
3943
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3948
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3957
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3962
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3978
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3983
3984
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3987
3988
3989
3990
3991
3992
3993
3994
3995
3996
3997
3998
3999
4000
4001
4002
4003
4004
4005
4006
4007
4008
4009
4010
4011
class CastFP8Primitive(BasePrimitive):
    """
    Cast Primitive
    """
    name = "te_quantize"
    multiple_results = True
    impl_static_args = (4,)
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def abstract(x_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype):
        """
        te_cast abstract
        """
        dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32

        casted_x_aval = x_aval.update(shape=x_aval.shape, dtype=out_dtype)
        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)

        return casted_x_aval, updated_amax_aval

    @staticmethod
    def lowering(ctx, x, amax, scale, scale_inv, *, out_dtype):
        """
        te_cast lowering rules
        """
        x_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape

        out_types = [
            ir.RankedTensorType.get(ir_x_shape, ir_out_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
        ]
        operands = [x, amax, scale, scale_inv]
        operand_shapes = [ir_x_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

        opaque = transformer_engine_jax.pack_common_descriptor(ir_x_shape,
                                                               jax_dtype_to_te_dtype(x_aval.dtype),
                                                               jax_dtype_to_te_dtype(out_dtype))

        out = custom_caller(CastFP8Primitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={1: 1})

        return out

    @staticmethod
    def impl(x, amax, scale, scale_inv, out_dtype):
        """
        te_cast implementation
        """
        assert CastFP8Primitive.inner_primitive is not None
        casted_x, updated_amax = \
            CastFP8Primitive.inner_primitive.bind(
                x, amax, scale, scale_inv, out_dtype=out_dtype)
        return casted_x, updated_amax

    @staticmethod
    def batcher(batched_args, batch_dims, *, out_dtype):
        _check_valid_batch_dims(batch_dims)
        assert CastFP8Primitive.outer_primitive is not None

        x, amax, scale, scale_inv = batched_args
        x_bdim, amax_bdim, *_ = batch_dims

4012
        out_bdims = x_bdim, amax_bdim
4013
4014
4015
4016
4017
4018
4019
4020
4021
4022
4023
4024
4025
4026
4027
4028
4029
4030
4031
4032
4033
4034
4035
4036
4037
4038
4039
4040
4041
4042
4043
4044
4045
4046
4047
4048
4049
4050
4051
4052
4053
4054
        return CastFP8Primitive.outer_primitive.bind(x, amax, scale, scale_inv,
                                                     out_dtype=out_dtype), out_bdims

    @staticmethod
    def infer_sharding_from_operands(out_dtype, mesh, arg_infos, result_infos):
        del out_dtype, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        casted_x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        return (casted_x_sharding, amax_sharding)

    @staticmethod
    def partition(out_dtype, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        casted_x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (casted_x_sharding, amax_sharding)

        def sharded_impl(x, amax, scale, scale_inv):
            local_cx, local_updated_amax = \
                CastFP8Primitive.impl(x, amax, scale, scale_inv, out_dtype=out_dtype)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_updated_amax)

            return local_cx, global_updated_amax

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(CastFP8Primitive)


def cast_fp8(x: jnp.ndarray, amax: jnp.ndarray, scale: jnp.ndarray, scale_inv: jnp.ndarray,
             out_dtype: TEDType) -> Tuple[jnp.ndarray, jnp.ndarray]:
    """
    Cast wrapper
    Return FP8 tensor
    """
    return CastFP8Primitive.outer_primitive.bind(x, amax, scale, scale_inv, out_dtype=out_dtype)


4055
class TransposePrimitive(BasePrimitive):
4056
    """
4057
    Transpose Primitive
4058
    """
4059
    name = "te_transpose"
4060
    multiple_results = False
4061
4062
4063
    impl_static_args = (1, 2)
    inner_primitive = None
    outer_primitive = None
4064
4065

    @staticmethod
4066
    def abstract(x_aval, *, static_axis_boundary, transpose_axis_boundary):
4067
        """
4068
        _transpose abstract
4069
        """
4070
4071
4072
        transposed_x_shape = _multidim_transpose(x_aval.shape, static_axis_boundary,
                                                 transpose_axis_boundary)
        xt_aval = x_aval.update(shape=transposed_x_shape, dtype=x_aval.dtype)
4073

4074
        return xt_aval
4075
4076

    @staticmethod
4077
    def lowering(ctx, x, *, static_axis_boundary, transpose_axis_boundary):
4078
        """
4079
        _transpose cuda lowering
4080
4081
        """

4082
4083
4084
4085
        x_aval = ctx.avals_in[0]
        assert x_aval.dtype in [
            jnp.float32, jnp.float16, jnp.bfloat16, jnp.float8_e4m3fn, jnp.float8_e5m2
        ]
4086

4087
4088
4089
4090
4091
4092
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        ir_out_dtype = jax_dtype_to_ir_dtype(x_aval.dtype)
        if static_axis_boundary >= 0:
            for i in range(static_axis_boundary + 1):
                assert ir_x_shape[i] == 1
4093

4094
4095
4096
4097
4098
4099
        transposed_x_shape = _multidim_transpose(ir_x_shape, static_axis_boundary,
                                                 transpose_axis_boundary)

        out_types = [ir.RankedTensorType.get(transposed_x_shape, ir_out_dtype)]
        operands = [x]
        operand_shapes = [ir_x_shape]
4100
4101
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

4102
4103
4104
4105
4106
        te_dtype = jax_dtype_to_te_dtype(x_aval.dtype)
        contracted_x_shape = (reduce(operator.mul, ir_x_shape[:transpose_axis_boundary]),
                              reduce(operator.mul, ir_x_shape[transpose_axis_boundary:]))
        opaque = transformer_engine_jax.pack_common_descriptor(contracted_x_shape, te_dtype,
                                                               te_dtype)
4107

4108
        out = custom_caller(TransposePrimitive.name, args, opaque, False)
4109
4110
4111

        return [out]

4112
4113
4114
4115
4116
4117
4118
4119
4120
4121
4122
    @staticmethod
    def impl(x, static_axis_boundary, transpose_axis_boundary):
        """
        tcast_transpose implementation
        """
        assert TransposePrimitive.inner_primitive is not None
        transposed_x = \
            TransposePrimitive.inner_primitive.bind(x,
                                                    static_axis_boundary=static_axis_boundary,
                                                    transpose_axis_boundary=transpose_axis_boundary)
        return transposed_x
4123

4124
4125
4126
4127
4128
    @staticmethod
    def batcher(batched_args, batch_dims, *, static_axis_boundary, transpose_axis_boundary):
        _check_valid_batch_dims(batch_dims)
        assert TransposePrimitive.outer_primitive is not None
        assert static_axis_boundary < 0
4129

4130
4131
        x, = batched_args
        x_bdim, = batch_dims
4132

4133
4134
4135
        # Minus batch dim.
        transpose_axis_boundary = _normalize_axis_boundary(transpose_axis_boundary, x.ndim - 1)
        transpose_axis_boundary += 1    # Plus batch dim
4136

4137
4138
4139
4140
        out_bdims = x_bdim
        return TransposePrimitive.outer_primitive.bind(
            x, static_axis_boundary=x_bdim,
            transpose_axis_boundary=transpose_axis_boundary), out_bdims
4141
4142

    @staticmethod
4143
4144
4145
4146
4147
4148
4149
    def infer_sharding_from_operands(static_axis_boundary, transpose_axis_boundary, mesh, arg_infos,
                                     result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, transpose_axis_boundary)
        transposed_x_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
        return transposed_x_sharding
4150
4151

    @staticmethod
4152
4153
4154
4155
4156
4157
4158
    def partition(static_axis_boundary, transpose_axis_boundary, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, transpose_axis_boundary)
        transposed_x_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = transposed_x_sharding
4159

4160
4161
4162
        impl = partial(TransposePrimitive.impl,
                       static_axis_boundary=static_axis_boundary,
                       transpose_axis_boundary=transpose_axis_boundary)
4163

4164
        return mesh, impl, out_shardings, arg_shardings
4165
4166


4167
register_primitive(TransposePrimitive)
4168
4169


4170
4171
def transpose(x: jnp.ndarray, static_axis_boundary: int,
              transpose_axis_boundary: int) -> jnp.ndarray:
4172
    """
4173
    transpose wrapper
4174
    """
4175
4176
4177
    return TransposePrimitive.outer_primitive.bind(x,
                                                   static_axis_boundary=static_axis_boundary,
                                                   transpose_axis_boundary=transpose_axis_boundary)
4178
4179


4180
class LayerNormFwdFp8Primitive(BasePrimitive):
4181
    """
4182
    Layer Normalization Forward FP8 Primitive
4183
    """
4184
4185
4186
4187
4188
    name = "te_layernorm_forward_fp8"
    multiple_results = True
    impl_static_args = (6, 7, 8)    # out_type, zero_centered_gamma, epsilon
    inner_primitive = None
    outer_primitive = None
4189
4190

    @staticmethod
4191
4192
    def abstract(x_aval, gamma_aval, beta_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype,
                 zero_centered_gamma, epsilon):
4193
        """
4194
        LayerNorm fwd (fp8 out) inner primitive abstract
4195
        """
4196
        x_dtype = dtypes.canonicalize_dtype(x_aval.dtype)
4197

4198
4199
4200
4201
        assert x_dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
4202

4203
4204
4205
4206
        mu_rsigama_dtype = jnp.float32

        assert gamma_aval.size == beta_aval.size

4207
        wkspace_info, barrier_info = transformer_engine_jax.get_layernorm_fwd_workspace_sizes(
4208
4209
4210
4211
            x_aval.size // gamma_aval.size,    # batch size
            gamma_aval.size,    # hidden size
            jax_dtype_to_te_dtype(x_aval.dtype),    # in type
            jax_dtype_to_te_dtype(gamma_aval.dtype),    # weight type
4212
            jax_dtype_to_te_dtype(out_dtype),
4213
4214
4215
            True,
            zero_centered_gamma,
            epsilon)
4216

4217
4218
4219
        out_aval = x_aval.update(shape=x_aval.shape, dtype=out_dtype)
        mu_aval = rsigma_aval = out_aval.update(shape=out_aval.shape[:-1], dtype=mu_rsigama_dtype)
        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)
4220
4221
4222
4223
4224
4225
        wkspace_aval = x_aval.update(shape=wkspace_info[0],
                                     dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
        barrier_aval = x_aval.update(shape=barrier_info[0],
                                     dtype=te_dtype_to_jax_dtype(barrier_info[1]))

        return out_aval, mu_aval, rsigma_aval, updated_amax_aval, wkspace_aval, barrier_aval
4226

4227
4228
4229
4230
4231
4232
4233
    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        LayerNorm fwd (fp8 out) outer primitive abstract
        """
        out_aval, mu_aval, rsigma_aval, updated_amax_aval, _, _ = \
            LayerNormFwdFp8Primitive.abstract(*args, **kwargs)
4234
        return out_aval, mu_aval, rsigma_aval, updated_amax_aval
4235
4236

    @staticmethod
4237
4238
    def lowering(ctx, x, gamma, beta, amax, scale, scale_inv, *, out_dtype, zero_centered_gamma,
                 epsilon):
4239
        """
4240
        LayerNorm fwd (fp8 out) lowering rules
4241
        """
4242
        x_aval, gamma_aval, beta_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
4243

4244
4245
        # Currently only support casting to E4M3 only in C side.
        assert out_dtype == jnp.float8_e4m3fn
4246

4247
4248
4249
4250
4251
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert gamma_aval.dtype == beta_aval.dtype
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
4252

4253
4254
4255
4256
4257
4258
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        g_type = ir.RankedTensorType(gamma.type)
        g_shape = g_type.shape
        b_type = ir.RankedTensorType(beta.type)
        b_shape = b_type.shape
4259

4260
4261
        assert g_type == b_type
        assert g_shape == b_shape
4262

4263
4264
4265
4266
4267
4268
4269
4270
        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_mu_dtype = ir.F32Type.get()
        ir_rsigma_dtype = ir.F32Type.get()
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape
4271

4272
4273
4274
4275
        out_shape = x_shape
        hidden_size = reduce(operator.mul, g_shape)
        batch_shape = out_shape[:-1]
        batch_size = reduce(operator.mul, x_shape) // hidden_size
4276

4277
4278
        wkspace_aval, barrier_aval = ctx.avals_out[-2:]

4279
4280
4281
4282
4283
        out_types = [
            ir.RankedTensorType.get(out_shape, ir_out_dtype),
            ir.RankedTensorType.get(batch_shape, ir_mu_dtype),
            ir.RankedTensorType.get(batch_shape, ir_rsigma_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
4284
4285
            ir.RankedTensorType.get(wkspace_aval.shape, jax_dtype_to_ir_dtype(wkspace_aval.dtype)),
            ir.RankedTensorType.get(barrier_aval.shape, jax_dtype_to_ir_dtype(barrier_aval.dtype))
4286
4287
4288
4289
4290
4291
        ]
        operands = [x, gamma, beta, amax, scale, scale_inv]
        operand_shapes = [
            x_shape, g_shape, b_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape
        ]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
4292

4293
4294
        sm_margin = int(os.getenv("NVTE_FWD_LAYERNORM_SM_MARGIN", "0"))

4295
4296
4297
        opaque = transformer_engine_jax.pack_norm_descriptor(
            batch_size,
            hidden_size,
4298
4299
            wkspace_aval.size,
            barrier_aval.size,
4300
4301
            0,    # no dgamma_part in FWD pass
            0,    # no dbeta_part in BWD pass
4302
4303
            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(gamma_aval.dtype),
4304
4305
            jax_dtype_to_te_dtype(wkspace_aval.dtype),
            jax_dtype_to_te_dtype(barrier_aval.dtype),
4306
4307
            TEDType.kByte,    # dummy dgamma_part te_dtype
            TEDType.kByte,    # dummy dbeta_part te_dtype
4308
4309
            zero_centered_gamma,
            epsilon,
4310
            sm_margin,
4311
        )
4312

4313
4314
4315
4316
4317
        out = custom_caller(LayerNormFwdFp8Primitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={3: 3})
4318

4319
        return out
4320
4321

    @staticmethod
4322
    def impl(x, gamma, beta, amax, scale, scale_inv, out_dtype, zero_centered_gamma, epsilon):
4323
        """
4324
        to describe implementation
4325
        """
4326
        assert LayerNormFwdFp8Primitive.inner_primitive is not None
4327
        out, mu, rsigma, updated_amax, _, _ = LayerNormFwdFp8Primitive.inner_primitive.bind(
4328
4329
4330
4331
4332
4333
4334
4335
4336
4337
            x,
            gamma,
            beta,
            amax,
            scale,
            scale_inv,
            out_dtype=out_dtype,
            zero_centered_gamma=zero_centered_gamma,
            epsilon=epsilon)
        return out, mu, rsigma, updated_amax
4338
4339

    @staticmethod
4340
    def batcher(batched_args, batch_dims, *, out_dtype, zero_centered_gamma, epsilon):
4341
        """
4342
        to describe batch rules for vmap
4343
        """
4344
4345
4346
4347
4348
4349
4350
4351
4352
4353
4354
4355
4356
4357
4358
4359
4360
4361
4362
4363
4364
4365
4366
4367
4368
4369
4370
4371
4372
4373
4374
4375
4376
4377
4378
4379
4380
        _check_valid_batch_dims(batch_dims)
        assert LayerNormFwdFp8Primitive.outer_primitive is not None
        x, gamma, beta, amax, scale, scale_inv = batched_args
        x_bdim, _, _, amax_bdim, _, _ = batch_dims

        out_bdims = x_bdim, x_bdim, x_bdim, amax_bdim
        return LayerNormFwdFp8Primitive.outer_primitive.bind(
            x,
            gamma,
            beta,
            amax,
            scale,
            scale_inv,
            out_dtype=out_dtype,
            zero_centered_gamma=zero_centered_gamma,
            epsilon=epsilon), out_bdims

    @staticmethod
    def infer_sharding_from_operands(out_dtype, zero_centered_gamma, epsilon, mesh, arg_infos,
                                     result_infos):
        del out_dtype, zero_centered_gamma, epsilon, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {LayerNormFwdPrimitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance.")

        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
        mu_sharding = rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[3])))
        return (out_sharding, mu_sharding, rsigma_sharding, amax_sharding)

    @staticmethod
    def partition(out_dtype, zero_centered_gamma, epsilon, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
4381
4382
        g_spec = get_padded_spec(arg_infos[1])
        b_spec = get_padded_spec(arg_infos[2])
4383
4384
        if x_spec[-1] is not None:
            warnings.warn(
4385
                f"Does not support to shard hidden dim in {LayerNormFwdFp8Primitive.name}! " \
4386
4387
4388
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
4389
4390
4391
4392
4393
4394
4395
4396
4397
4398
        if g_spec[-1] is not None:
            warnings.warn(
                f"{LayerNormFwdFp8Primitive.name} does not support sharding of parameter gamma " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )
        if b_spec[-1] is not None:
            warnings.warn(
                f"{LayerNormFwdFp8Primitive.name} does not support sharding of parameter beta " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )
4399
        x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
4400
4401
        g_sharding = NamedSharding(mesh, PartitionSpec(None))
        b_sharding = NamedSharding(mesh, PartitionSpec(None))
4402
4403
4404
4405
4406
4407
4408
        out_sharding = x_sharding
        mu_sharding = rsigma_sharding = NamedSharding(
            mesh, PartitionSpec(*get_padded_spec(arg_infos[0])[:-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[3])))
        fp8_meta_sharding = amax_sharding
        arg_shardings = (x_sharding, g_sharding, b_sharding) + (fp8_meta_sharding,) * 3
        out_shardings = (out_sharding, mu_sharding, rsigma_sharding, amax_sharding)
4409

4410
4411
4412
4413
4414
4415
4416
        def sharded_impl(x, gamma, beta, amax, scale, scale_inv):
            local_x, local_mu, local_rsigma, local_amax = \
                LayerNormFwdFp8Primitive.impl(x, gamma, beta, amax, scale, scale_inv,
                                            out_dtype=out_dtype,
                                            zero_centered_gamma=zero_centered_gamma,
                                            epsilon=epsilon)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_amax)
4417

4418
            return local_x, local_mu, local_rsigma, global_updated_amax
4419

4420
        return mesh, sharded_impl, out_shardings, arg_shardings
4421

4422
4423
4424
4425
4426
4427
4428

register_primitive(LayerNormFwdFp8Primitive)


def layernorm_fwd_fp8(x: jnp.ndarray, gamma: jnp.ndarray, beta: jnp.ndarray, amax: jnp.ndarray,
                      scale: jnp.ndarray, scale_inv: jnp.ndarray, out_dtype: jnp.dtype,
                      zero_centered_gamma: bool, epsilon: float):
4429
    """
4430
    Wrapper for TE layernorm fwd (fp8 out)
4431
    """
4432
4433
4434
4435
4436
4437
4438
4439
4440
    return LayerNormFwdFp8Primitive.outer_primitive.bind(x,
                                                         gamma,
                                                         beta,
                                                         amax,
                                                         scale,
                                                         scale_inv,
                                                         out_dtype=out_dtype,
                                                         zero_centered_gamma=zero_centered_gamma,
                                                         epsilon=epsilon)
4441
4442


4443
class RmsNormFwdFp8Primitive(BasePrimitive):
4444
    """
4445
    RMS Normalization Forward FP8 Primitive
4446
    """
4447
4448
4449
4450
4451
    name = "te_rmsnorm_forward_fp8"
    multiple_results = True
    impl_static_args = (5, 6)    # out_dtype, epsilon
    inner_primitive = None
    outer_primitive = None
4452

4453
4454
    @staticmethod
    def abstract(x_aval, gamma_aval, amax_aval, scale_aval, scale_inv_aval, out_dtype, epsilon):
4455
        """
4456
        RMSNorm fwd (fp8 out) inner primitive abstract
4457
        """
4458
        x_dtype = dtypes.canonicalize_dtype(x_aval.dtype)
4459

4460
4461
4462
4463
        assert x_dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
4464

4465
4466
        hidden_size = gamma_aval.size
        assert x_aval.size % hidden_size == 0
4467

4468
        rsigama_dtype = jnp.float32
4469

4470
        wkspace_info, barrier_info = transformer_engine_jax.get_layernorm_fwd_workspace_sizes(
4471
            x_aval.size // hidden_size,    # batch_size
4472
            hidden_size,
4473
4474
4475
4476
4477
4478
            jax_dtype_to_te_dtype(x_aval.dtype),    # in te_dtype
            jax_dtype_to_te_dtype(gamma_aval.dtype),    # weight te_dtype
            jax_dtype_to_te_dtype(out_dtype),    # out te_dtype
            False,
            False,
            epsilon)
4479

4480
4481
4482
        out_aval = x_aval.update(shape=x_aval.shape, dtype=out_dtype)
        rsigma_aval = out_aval.update(shape=out_aval.shape[:-1], dtype=rsigama_dtype)
        amax_aval = out_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)
4483
4484
4485
4486
4487
4488
        wkspace_aval = x_aval.update(shape=wkspace_info[0],
                                     dtype=te_dtype_to_jax_dtype(wkspace_info[1]))
        barrier_aval = x_aval.update(shape=barrier_info[0],
                                     dtype=te_dtype_to_jax_dtype(barrier_info[1]))

        return out_aval, rsigma_aval, amax_aval, wkspace_aval, barrier_aval
4489

4490
4491
4492
4493
4494
4495
    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        RMSNorm fwd (fp8 out) outer primitive abstract
        """
        out_aval, rsigma_aval, amax_aval, _, _ = RmsNormFwdFp8Primitive.abstract(*args, **kwargs)
4496
        return out_aval, rsigma_aval, amax_aval
4497
4498

    @staticmethod
4499
    def lowering(ctx, x, gamma, amax, scale, scale_inv, *, out_dtype, epsilon):
4500
        """
4501
        RMSNorm fwd (fp8 out) lowering rules
4502
4503
        """

4504
4505
        # Currently only support casting to E4M3 only in C side.
        assert out_dtype == jnp.float8_e4m3fn
4506

4507
        x_aval, gamma_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
4508

4509
4510
4511
4512
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
4513

4514
4515
4516
4517
4518
4519
4520
4521
4522
4523
4524
4525
4526
4527
4528
4529
4530
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        g_type = ir.RankedTensorType(gamma.type)
        g_shape = g_type.shape

        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_rsigma_dtype = ir.F32Type.get()
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape

        out_shape = x_shape
        hidden_size = reduce(operator.mul, g_shape)
        batch_shape = out_shape[:-1]
        batch_size = reduce(operator.mul, x_shape) // hidden_size
4531

4532
4533
        wkspace_aval, barrier_aval = ctx.avals_out[-2:]

4534
4535
4536
4537
        out_types = [
            ir.RankedTensorType.get(out_shape, ir_out_dtype),
            ir.RankedTensorType.get(batch_shape, ir_rsigma_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
4538
4539
            ir.RankedTensorType.get(wkspace_aval.shape, jax_dtype_to_ir_dtype(wkspace_aval.dtype)),
            ir.RankedTensorType.get(barrier_aval.shape, jax_dtype_to_ir_dtype(barrier_aval.dtype))
4540
4541
4542
4543
4544
        ]
        operands = [x, gamma, amax, scale, scale_inv]
        operand_shapes = [x_shape, g_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

4545
4546
        sm_margin = int(os.getenv("NVTE_FWD_LAYERNORM_SM_MARGIN", "0"))

4547
4548
4549
        opaque = transformer_engine_jax.pack_norm_descriptor(
            batch_size,
            hidden_size,
4550
4551
            wkspace_aval.size,
            barrier_aval.size,
4552
4553
            0,    # no dgamma_part in FWD pass
            0,    # no dbeta_part in BWD pass
4554
4555
            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(gamma_aval.dtype),
4556
4557
            jax_dtype_to_te_dtype(wkspace_aval.dtype),
            jax_dtype_to_te_dtype(barrier_aval.dtype),
4558
4559
            TEDType.kByte,    # dummy dgamma_part te_dtype
            TEDType.kByte,    # dummy dbeta_part te_dtype
4560
4561
            False,    # RMSNorm doesn't support zero_centered_gamma
            epsilon,
4562
            sm_margin,
4563
4564
        )

4565
4566
4567
4568
4569
4570
4571
4572
        out = custom_caller(RmsNormFwdFp8Primitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={2: 2})

        return out

4573
    @staticmethod
4574
    def impl(x, gamma, amax, scale, scale_inv, out_dtype, epsilon):
4575
        """
4576
        to describe implementation
4577
        """
4578
        assert RmsNormFwdFp8Primitive.inner_primitive is not None
4579
4580
4581
4582
4583
4584
4585
        out, rsigma, amax, _, _ = RmsNormFwdFp8Primitive.inner_primitive.bind(x,
                                                                              gamma,
                                                                              amax,
                                                                              scale,
                                                                              scale_inv,
                                                                              out_dtype=out_dtype,
                                                                              epsilon=epsilon)
4586
        return out, rsigma, amax
4587

4588
4589
4590
4591
4592
4593
4594
4595
4596
4597
4598
4599
4600
4601
4602
4603
4604
    @staticmethod
    def batcher(batched_args, batch_dims, *, out_dtype, epsilon):
        """
        to describe batch rules for vmap
        """
        _check_valid_batch_dims(batch_dims)
        assert RmsNormFwdFp8Primitive.outer_primitive is not None
        x, gamma, amax, scale, scale_inv = batched_args
        x_bdim, _, amax_bdim, _, _ = batch_dims
        out_bdims = x_bdim, x_bdim, amax_bdim
        return RmsNormFwdFp8Primitive.outer_primitive.bind(x,
                                                           gamma,
                                                           amax,
                                                           scale,
                                                           scale_inv,
                                                           out_dtype=out_dtype,
                                                           epsilon=epsilon), out_bdims
4605

4606
4607
4608
4609
4610
4611
4612
4613
4614
4615
4616
4617
4618
4619
    @staticmethod
    def infer_sharding_from_operands(out_dtype, epsilon, mesh, arg_infos, result_infos):
        del out_dtype, epsilon, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {RmsNormFwdFp8Primitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
        rsigma_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[2])))
        return (out_sharding, rsigma_sharding, amax_sharding)
4620

4621
4622
4623
4624
    @staticmethod
    def partition(out_dtype, epsilon, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
4625
        g_spec = get_padded_spec(arg_infos[1])
4626
4627
4628
4629
4630
4631
        if x_spec[-1] is not None:
            warnings.warn(
                f"Does not support to shard hidden dim in {RmsNormFwdFp8Primitive.name}! " \
                f"Force to not shard the hidden dim, which might introduce extra collective ops, " \
                f"and hurt performance."
            )
4632
4633
4634
4635
4636
        if g_spec[-1] is not None:
            warnings.warn(
                f"{RmsNormFwdFp8Primitive.name} does not support sharding of parameter gamma " \
                f"Enforcing no sharding of parameters hidden dim! " \
            )
4637
        x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-1], None))
4638
        g_sharding = NamedSharding(mesh, PartitionSpec(None))
4639
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4644
        out_sharding = x_sharding
        rsigma_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[0])[:-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[2])))
        fp8_meta_sharding = amax_sharding
        arg_shardings = (x_sharding, g_sharding) + (fp8_meta_sharding,) * 3
        out_shardings = (out_sharding, rsigma_sharding, amax_sharding)
4645

4646
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4649
4650
        def sharded_impl(x, gamma, amax, scale, scale_inv):
            local_x, local_rsigma, local_amax= \
                RmsNormFwdFp8Primitive.impl(x, gamma, amax, scale, scale_inv,
                                            out_dtype=out_dtype, epsilon=epsilon)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_amax)
4651

4652
            return local_x, local_rsigma, global_updated_amax
4653

4654
        return mesh, sharded_impl, out_shardings, arg_shardings
4655
4656


4657
register_primitive(RmsNormFwdFp8Primitive)
4658

4659
4660
4661

def rmsnorm_fwd_fp8(x: jnp.ndarray, gamma: jnp.ndarray, amax: jnp.ndarray, scale: jnp.ndarray,
                    scale_inv: jnp.ndarray, out_dtype: jnp.dtype, epsilon: float):
4662
    """
4663
    Wrapper for TE rmsnorm fwd (fp8 out)
4664
    """
4665
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4671
    return RmsNormFwdFp8Primitive.outer_primitive.bind(x,
                                                       gamma,
                                                       amax,
                                                       scale,
                                                       scale_inv,
                                                       out_dtype=out_dtype,
                                                       epsilon=epsilon)
4672
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5046
class GeluFp8Primitive(BasePrimitive):
    """
    Gelu FP8 Primitive
    """
    name = "te_gelu_fp8"
    multiple_results = True
    impl_static_args = (4,)    #out_dtype
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def abstract(x_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype):
        """
        te_gelu_p abstract
        """
        dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        # Currently only support casting to E4M3 only in C side.
        assert out_dtype == jnp.float8_e4m3fn
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32

        out_aval = x_aval.update(shape=x_aval.shape, dtype=out_dtype)
        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)

        return out_aval, updated_amax_aval

    @staticmethod
    def lowering(ctx, x, amax, scale, scale_inv, *, out_dtype):
        """
        te_gated_gelu_p lowering rules
        """
        x_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape

        hidden_size = ir_x_shape[-1]
        batch_size = reduce(operator.mul, ir_x_shape[:-1])
        out_shape = ir_x_shape
        out_types = [
            ir.RankedTensorType.get(out_shape, ir_out_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
        ]
        operands = [x, amax, scale, scale_inv]
        operand_shapes = [ir_x_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)

        opaque = transformer_engine_jax.pack_common_descriptor((batch_size, hidden_size),
                                                               jax_dtype_to_te_dtype(x_aval.dtype),
                                                               jax_dtype_to_te_dtype(out_dtype))

        out = custom_caller(GeluFp8Primitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={1: 1})

        return out

    @staticmethod
    def impl(x, amax, scale, scale_inv, out_dtype):
        """
        to describe implementation
        """
        assert GeluFp8Primitive.inner_primitive is not None
        out, updated_amax = GeluFp8Primitive.inner_primitive.bind(x,
                                                                  amax,
                                                                  scale,
                                                                  scale_inv,
                                                                  out_dtype=out_dtype)
        return out, updated_amax

    @staticmethod
    def batcher(batched_args, batch_dims, *, out_dtype):
        """
        to describe batch rules for vmap
        """
        _check_valid_batch_dims(batch_dims)
        assert GeluFp8Primitive.outer_primitive is not None
        x, amax, scale, scale_inv = batched_args
        x_bdim, amax_bdim, _, _ = batch_dims

        out_bdims = x_bdim, amax_bdim
        return GeluFp8Primitive.outer_primitive.bind(x, amax, scale, scale_inv,
                                                     out_dtype=out_dtype), out_bdims

    @staticmethod
    def infer_sharding_from_operands(out_dtype, mesh, arg_infos, result_infos):
        del out_dtype, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        return (out_sharding, amax_sharding)

    @staticmethod
    def partition(out_dtype, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (out_sharding, amax_sharding)

        def sharded_impl(x, amax, scale, scale_inv):
            local_x, local_amax = GeluFp8Primitive.impl(x,
                                                        amax,
                                                        scale,
                                                        scale_inv,
                                                        out_dtype=out_dtype)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_amax)

            return local_x, global_updated_amax

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(GeluFp8Primitive)


def gelu_fp8(x: jnp.ndarray, amax: jnp.ndarray, scale: jnp.ndarray, scale_inv: jnp.ndarray,
             out_dtype: jnp.dtype) -> Tuple[jnp.ndarray, jnp.ndarray, jnp.ndarray]:
    """
    gated gelu wrapper
    Return FP8(geglu(x))
    """
    return GeluFp8Primitive.outer_primitive.bind(x, amax, scale, scale_inv, out_dtype=out_dtype)


class DGeluDBiasCastTransposePrimitive(BasePrimitive):
    """
    DGelu DBias Cast Transpose Primitive
    """
    name = "te_dgelu_dbias_cast_transpose"
    multiple_results = True
    # out_dtype, static_axis_boundary, transpose_axis_boundary
    impl_static_args = (5, 6, 7)
    inner_primitive = None
    outer_primitive = None

    @staticmethod
    def abstract(dz_aval, x_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype,
                 static_axis_boundary, transpose_axis_boundary):
        """
        te_dgelu_dbais_cast_transpose_p abstract
        """
        dtype = dtypes.canonicalize_dtype(dz_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert x_aval.dtype == dtype
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_hidden_szie = dz_aval.shape[-1]
        gi_hidden_size = x_aval.shape[-1]
        assert ir_hidden_szie == gi_hidden_size
        t_shape = _multidim_transpose(x_aval.shape, static_axis_boundary, transpose_axis_boundary)
        out = dz_aval.update(shape=x_aval.shape, dtype=out_dtype)
        t_out = dz_aval.update(shape=t_shape, dtype=out_dtype)

        dbias_shape = (*x_aval.shape[:static_axis_boundary + 1], gi_hidden_size)
        dbias = dz_aval.update(shape=dbias_shape, dtype=dtype)

        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)

        wkspace_info, = transformer_engine_jax.get_dgelu_dbias_ct_workspace_sizes(
            x_aval.size // gi_hidden_size,
            gi_hidden_size,
            jax_dtype_to_te_dtype(x_aval.dtype),
            jax_dtype_to_te_dtype(out_dtype),
        )
        wkspace_aval = x_aval.update(shape=wkspace_info[0],
                                     dtype=te_dtype_to_jax_dtype(wkspace_info[1]))

        return out, t_out, dbias, updated_amax_aval, wkspace_aval

    @staticmethod
    def outer_abstract(*args, **kwargs):
        """
        te_dgelu_dbais_cast_transpose_p outer abstract
        """

        out, t_out, dbias, updated_amax_aval, _ = \
            DGeluDBiasCastTransposePrimitive.abstract(*args, **kwargs)
        return out, t_out, dbias, updated_amax_aval

    @staticmethod
    def lowering(ctx, dz, x, amax, scale, scale_inv, *, out_dtype, static_axis_boundary,
                 transpose_axis_boundary):
        """
        te_dgated_gelu_cast_transpose_p lowering rules
        """
        dz_aval, x_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
        assert dz_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert x_aval.dtype == dz_aval.dtype
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_dz_type = ir.RankedTensorType(dz.type)
        ir_dz_shape = ir_dz_type.shape
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        assert ir_dz_shape == x_shape

        batch_szie = reduce(operator.mul, ir_dz_shape[:-1])
        ir_hidden_szie = ir_dz_shape[-1]
        contracted_x_shape = (batch_szie, ir_hidden_szie)

        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape
        transposed_x_shape = _multidim_transpose(x_shape, static_axis_boundary,
                                                 transpose_axis_boundary)
        dbias_shape = (*x_shape[:static_axis_boundary + 1], ir_hidden_szie)

        wkspace_aval = ctx.avals_out[-1]

        out_types = [
            ir.RankedTensorType.get(x_shape, ir_out_dtype),
            ir.RankedTensorType.get(transposed_x_shape, ir_out_dtype),
            ir.RankedTensorType.get(dbias_shape, ir_dz_type.element_type),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
            ir.RankedTensorType.get(wkspace_aval.shape, jax_dtype_to_ir_dtype(wkspace_aval.dtype)),
        ]
        operands = [dz, x, amax, scale, scale_inv]
        operand_shapes = [ir_dz_shape, x_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
        opaque = transformer_engine_jax.pack_common_wk_descriptor(
            contracted_x_shape, wkspace_aval.shape, jax_dtype_to_te_dtype(dz_aval.dtype),
            jax_dtype_to_te_dtype(out_dtype), jax_dtype_to_te_dtype(wkspace_aval.dtype))

        out = custom_caller(DGeluDBiasCastTransposePrimitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={2: 3})

        return out

    @staticmethod
    def impl(dz, x, amax, scale, scale_inv, out_dtype, static_axis_boundary,
             transpose_axis_boundary):
        """
        to describe implementation
        """
        assert DGeluDBiasCastTransposePrimitive.inner_primitive is not None
        out, t_out, dbias, updated_amax, _ = DGeluDBiasCastTransposePrimitive.inner_primitive.bind(
            dz,
            x,
            amax,
            scale,
            scale_inv,
            out_dtype=out_dtype,
            static_axis_boundary=static_axis_boundary,
            transpose_axis_boundary=transpose_axis_boundary)
        return out, t_out, dbias, updated_amax

    @staticmethod
    def batcher(batched_args, batch_dims, *, out_dtype, static_axis_boundary,
                transpose_axis_boundary):
        """
        to describe batch rules for vmap
        """
        del static_axis_boundary
        _check_valid_batch_dims(batch_dims)
        assert DGeluDBiasCastTransposePrimitive.outer_primitive is not None
        dz, x, amax, scale, scale_inv = batched_args
        x_bdim, _, amax_bdim, _, _ = batch_dims

        # Minus batch dim.
        transpose_axis_boundary = _normalize_axis_boundary(transpose_axis_boundary, x.ndim - 1)
        transpose_axis_boundary += 1    # Plus batch dim

        out_bdims = x_bdim, x_bdim, x_bdim, amax_bdim
        return DGeluDBiasCastTransposePrimitive.outer_primitive.bind(
            dz,
            x,
            amax,
            scale,
            scale_inv,
            out_dtype=out_dtype,
            static_axis_boundary=x_bdim,
            transpose_axis_boundary=transpose_axis_boundary), out_bdims

    @staticmethod
    def infer_sharding_from_operands(out_dtype, static_axis_boundary, transpose_axis_boundary, mesh,
                                     arg_infos, result_infos):
        del out_dtype, result_infos
        x_spec = get_padded_spec(arg_infos[1])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, transpose_axis_boundary)
        tranposed_out_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
        dbias_shaprding = NamedSharding(
            mesh, PartitionSpec(*x_spec[:static_axis_boundary + 1], x_spec[-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[2])))
        return (out_sharding, tranposed_out_sharding, dbias_shaprding, amax_sharding)

    @staticmethod
    def partition(out_dtype, static_axis_boundary, transpose_axis_boundary, mesh, arg_infos,
                  result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[1])
        casted_x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, transpose_axis_boundary)
        casted_transposed_x_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))

        dbias_shaprding = NamedSharding(
            mesh, PartitionSpec(*x_spec[:static_axis_boundary + 1], x_spec[-1]))

        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[2])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (casted_x_sharding, casted_transposed_x_sharding, dbias_shaprding,
                         amax_sharding)

        def sharded_impl(dz, x, amax, scale, scale_inv):
            local_out, local_t_out, local_dbias, local_amax = DGeluDBiasCastTransposePrimitive.impl(
                dz,
                x,
                amax,
                scale,
                scale_inv,
                out_dtype=out_dtype,
                static_axis_boundary=static_axis_boundary,
                transpose_axis_boundary=transpose_axis_boundary)
            global_dbias = all_reduce_sum_along_dp_fsdp(local_dbias)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_amax)
            return local_out, local_t_out, global_dbias, global_updated_amax

        return mesh, sharded_impl, out_shardings, arg_shardings


register_primitive(DGeluDBiasCastTransposePrimitive)


def dgelu_dbias_cast_transpose(
        dz: jnp.ndarray,
        x: jnp.ndarray,
        amax: jnp.ndarray,
        scale: jnp.ndarray,
        scale_inv: jnp.ndarray,
        out_dtype: TEDType,
        static_axis_boundary: int,
        transpose_axis_boundary: int = -1) -> Tuple[jnp.ndarray, jnp.ndarray, jnp.ndarray]:
    """
    cast transpose dgelu and dbias fusion wrapper
    Return FP8(dgeglu(inputs)), dbias
    """
    if static_axis_boundary < 0:
        static_axis_boundary = -1    # means no static axes

    return DGeluDBiasCastTransposePrimitive.outer_primitive.bind(
        dz,
        x,
        amax,
        scale,
        scale_inv,
        out_dtype=out_dtype,
        static_axis_boundary=static_axis_boundary,
        transpose_axis_boundary=transpose_axis_boundary)


5047
class GatedGeluFp8Primitive(BasePrimitive):
5048
    """
5049
    Gated Gelu FP8 Primitive
5050
    """
5051
    name = "te_gated_gelu_fp8"
5052
    multiple_results = True
5053
5054
5055
    impl_static_args = (4,)    #out_dtype
    inner_primitive = None
    outer_primitive = None
5056
5057

    @staticmethod
5058
    def abstract(x_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype):
5059
        """
5060
        te_gated_gelu_p abstract
5061
        """
5062
5063
5064
5065
5066
5067
5068
        dtype = dtypes.canonicalize_dtype(x_aval.dtype)
        # Currently only support casting to E4M3 only in C side.
        assert out_dtype == jnp.float8_e4m3fn
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
5069

5070
5071
5072
5073
5074
5075
        assert x_aval.shape[-2] == 2    # Assume x in (....., 2, hidden)
        hidden_size = x_aval.shape[-1]
        batch_shape = x_aval.shape[:-2]
        out_shape = (batch_shape) + (hidden_size,)
        out_aval = x_aval.update(shape=out_shape, dtype=out_dtype)
        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)
5076

5077
        return out_aval, updated_amax_aval
5078
5079

    @staticmethod
5080
    def lowering(ctx, x, amax, scale, scale_inv, *, out_dtype):
5081
        """
5082
        te_gated_gelu_p lowering rules
5083
        """
5084
5085
5086
5087
5088
5089
5090
5091
5092
5093
5094
5095
5096
        x_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
        assert x_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_x_type = ir.RankedTensorType(x.type)
        ir_x_shape = ir_x_type.shape
        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape
5097

5098
5099
5100
5101
        hidden_size = ir_x_shape[-1]
        batch_shape = ir_x_shape[:-2]
        batch_size = reduce(operator.mul, batch_shape)
        out_shape = batch_shape + [hidden_size]
5102
        out_types = [
5103
5104
            ir.RankedTensorType.get(out_shape, ir_out_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
5105
        ]
5106
5107
        operands = [x, amax, scale, scale_inv]
        operand_shapes = [ir_x_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
5108
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
5109

5110
5111
5112
        opaque = transformer_engine_jax.pack_common_descriptor((batch_size, out_shape[-1]),
                                                               jax_dtype_to_te_dtype(x_aval.dtype),
                                                               jax_dtype_to_te_dtype(out_dtype))
5113

5114
5115
5116
5117
5118
        out = custom_caller(GatedGeluFp8Primitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={1: 1})
5119
5120
5121
5122

        return out

    @staticmethod
5123
    def impl(x, amax, scale, scale_inv, out_dtype):
5124
        """
5125
        to describe implementation
5126
        """
5127
5128
5129
5130
5131
5132
5133
        assert GatedGeluFp8Primitive.inner_primitive is not None
        out, updated_amax = GatedGeluFp8Primitive.inner_primitive.bind(x,
                                                                       amax,
                                                                       scale,
                                                                       scale_inv,
                                                                       out_dtype=out_dtype)
        return out, updated_amax
5134
5135

    @staticmethod
5136
    def batcher(batched_args, batch_dims, *, out_dtype):
5137
        """
5138
        to describe batch rules for vmap
5139
        """
5140
5141
5142
5143
        _check_valid_batch_dims(batch_dims)
        assert GatedGeluFp8Primitive.outer_primitive is not None
        x, amax, scale, scale_inv = batched_args
        x_bdim, amax_bdim, _, _ = batch_dims
5144

5145
5146
5147
5148
5149
5150
        out_bdims = x_bdim, amax_bdim
        return GatedGeluFp8Primitive.outer_primitive.bind(x,
                                                          amax,
                                                          scale,
                                                          scale_inv,
                                                          out_dtype=out_dtype), out_bdims
5151

5152
5153
5154
5155
5156
5157
5158
    @staticmethod
    def infer_sharding_from_operands(out_dtype, mesh, arg_infos, result_infos):
        del out_dtype, result_infos
        x_spec = get_padded_spec(arg_infos[0])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-2], x_spec[-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        return (out_sharding, amax_sharding)
5159

5160
5161
5162
5163
5164
5165
5166
5167
    @staticmethod
    def partition(out_dtype, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[0])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec[:-2], x_spec[-1]))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[1])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (out_sharding, amax_sharding)
5168

5169
5170
5171
5172
5173
5174
5175
        def sharded_impl(x, amax, scale, scale_inv):
            local_x, local_amax = GatedGeluFp8Primitive.impl(x,
                                                             amax,
                                                             scale,
                                                             scale_inv,
                                                             out_dtype=out_dtype)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_amax)
5176

5177
            return local_x, global_updated_amax
5178

5179
        return mesh, sharded_impl, out_shardings, arg_shardings
5180
5181


5182
register_primitive(GatedGeluFp8Primitive)
5183

5184
5185
5186

def gated_gelu_fp8(x: jnp.ndarray, amax: jnp.ndarray, scale: jnp.ndarray, scale_inv: jnp.ndarray,
                   out_dtype: jnp.dtype) -> Tuple[jnp.ndarray, jnp.ndarray, jnp.ndarray]:
5187
    """
5188
5189
    gated gelu wrapper
    Return FP8(geglu(x))
5190
    """
5191
5192
5193
5194
5195
    return GatedGeluFp8Primitive.outer_primitive.bind(x,
                                                      amax,
                                                      scale,
                                                      scale_inv,
                                                      out_dtype=out_dtype)
5196
5197


5198
class DgatedGeluCastTransposePrimitive(BasePrimitive):
5199
    """
5200
    Dgated Gelu Cast Transpose Primitive
5201
    """
5202
    name = "te_dgated_gelu_cast_transpose"
5203
    multiple_results = True
5204
5205
5206
    impl_static_args = (5, 6)    # out_dtype, static_axis_boundary
    inner_primitive = None
    outer_primitive = None
5207
5208

    @staticmethod
5209
5210
    def abstract(dz_aval, x_aval, amax_aval, scale_aval, scale_inv_aval, *, out_dtype,
                 static_axis_boundary):
5211
        """
5212
        te_dgated_gelu_cast_transpose_p abstract
5213
        """
5214
5215
5216
5217
5218
5219
5220
5221
5222
5223
5224
5225
5226
5227
5228
        dtype = dtypes.canonicalize_dtype(dz_aval.dtype)
        assert dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert x_aval.dtype == dtype
        assert x_aval.shape[-2] == 2    # Linear + GeLU
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_hidden_szie = dz_aval.shape[-1]
        gi_hidden_size = x_aval.shape[-1]
        assert ir_hidden_szie == gi_hidden_size
        t_shape = _multidim_transpose(x_aval.shape, static_axis_boundary, -2)
        out = dz_aval.update(shape=x_aval.shape, dtype=out_dtype)
        t_out = dz_aval.update(shape=t_shape, dtype=out_dtype)
        updated_amax_aval = amax_aval.update(shape=amax_aval.shape, dtype=amax_aval.dtype)
        return out, t_out, updated_amax_aval
5229

5230
5231
5232
5233
5234
5235
5236
5237
5238
5239
5240
5241
5242
5243
5244
5245
5246
5247
5248
5249
5250
5251
5252
5253
5254
5255
5256
5257
5258
5259
5260
5261
5262
5263
5264
5265
5266
5267
5268
5269
5270
5271
5272
5273
5274
5275
5276
5277
5278
    @staticmethod
    def lowering(ctx, dz, x, amax, scale, scale_inv, *, out_dtype, static_axis_boundary):
        """
        te_dgated_gelu_cast_transpose_p lowering rules
        """
        dz_aval, x_aval, amax_aval, scale_aval, scale_inv_aval = ctx.avals_in
        assert dz_aval.dtype in [jnp.float32, jnp.float16, jnp.bfloat16]
        assert x_aval.dtype == dz_aval.dtype
        assert amax_aval.dtype == jnp.float32
        assert scale_aval.dtype == jnp.float32
        assert scale_inv_aval.dtype == jnp.float32
        ir_dz_type = ir.RankedTensorType(dz.type)
        ir_dz_shape = ir_dz_type.shape
        x_type = ir.RankedTensorType(x.type)
        x_shape = x_type.shape
        dz_batch_szie = reduce(operator.mul, ir_dz_shape[:-1])
        x_batch_size = reduce(operator.mul, x_shape[:-2])
        assert dz_batch_szie == x_batch_size
        assert x_shape[-2] == 2    # Linear + GeLU
        ir_hidden_szie = ir_dz_shape[-1]
        gi_hidden_size = x_shape[-1]
        assert ir_hidden_szie == gi_hidden_size
        ir_out_dtype = jax_dtype_to_ir_dtype(out_dtype)
        ir_amax_type = ir.RankedTensorType(amax.type)
        ir_amax_dtype = ir_amax_type.element_type
        ir_amax_shape = ir_amax_type.shape
        ir_scale_shape = ir_amax_shape
        ir_scale_inv_shape = ir_amax_shape
        transposed_x_shape = _multidim_transpose(x_shape, static_axis_boundary, -2)
        out_types = [
            ir.RankedTensorType.get(x_shape, ir_out_dtype),
            ir.RankedTensorType.get(transposed_x_shape, ir_out_dtype),
            ir.RankedTensorType.get(ir_amax_shape, ir_amax_dtype),
        ]
        operands = [dz, x, amax, scale, scale_inv]
        operand_shapes = [ir_dz_shape, x_shape, ir_amax_shape, ir_scale_shape, ir_scale_inv_shape]
        args = CustomCallArgsWrapper(out_types, operands, operand_shapes)
        contracted_x_shape = (x_batch_size, x_shape[-1])
        opaque = transformer_engine_jax.pack_common_descriptor(contracted_x_shape,
                                                               jax_dtype_to_te_dtype(dz_aval.dtype),
                                                               jax_dtype_to_te_dtype(out_dtype))

        out = custom_caller(DgatedGeluCastTransposePrimitive.name,
                            args,
                            opaque,
                            False,
                            operand_output_aliases={2: 2})

        return out
5279
5280

    @staticmethod
5281
    def impl(dz, x, amax, scale, scale_inv, out_dtype, static_axis_boundary):
5282
        """
5283
        to describe implementation
5284
        """
5285
5286
5287
5288
5289
5290
5291
5292
5293
5294
        assert DgatedGeluCastTransposePrimitive.inner_primitive is not None
        out, t_out, updated_amax = DgatedGeluCastTransposePrimitive.inner_primitive.bind(
            dz,
            x,
            amax,
            scale,
            scale_inv,
            out_dtype=out_dtype,
            static_axis_boundary=static_axis_boundary)
        return out, t_out, updated_amax
5295

5296
5297
5298
5299
5300
5301
5302
5303
5304
5305
    @staticmethod
    def batcher(batched_args, batch_dims, *, out_dtype, static_axis_boundary):
        """
        to describe batch rules for vmap
        """
        del static_axis_boundary
        _check_valid_batch_dims(batch_dims)
        assert DgatedGeluCastTransposePrimitive.outer_primitive is not None
        dz, x, amax, scale, scale_inv = batched_args
        x_bdim, _, amax_bdim, _, _ = batch_dims
5306

5307
5308
5309
5310
        out_bdims = x_bdim, x_bdim, amax_bdim
        return DgatedGeluCastTransposePrimitive.outer_primitive.bind(
            dz, x, amax, scale, scale_inv, out_dtype=out_dtype,
            static_axis_boundary=x_bdim), out_bdims
5311

5312
5313
5314
5315
5316
5317
5318
5319
5320
5321
    @staticmethod
    def infer_sharding_from_operands(out_dtype, static_axis_boundary, mesh, arg_infos,
                                     result_infos):
        del out_dtype, result_infos
        x_spec = get_padded_spec(arg_infos[1])
        out_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, -2)
        tranposed_out_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[2])))
        return (out_sharding, tranposed_out_sharding, amax_sharding)
5322

5323
5324
5325
5326
5327
5328
5329
    @staticmethod
    def partition(out_dtype, static_axis_boundary, mesh, arg_infos, result_infos):
        del result_infos
        x_spec = get_padded_spec(arg_infos[1])
        casted_x_sharding = NamedSharding(mesh, PartitionSpec(*x_spec))
        xt_spec = _multidim_transpose(x_spec, static_axis_boundary, -2)
        casted_transposed_x_sharding = NamedSharding(mesh, PartitionSpec(*xt_spec))
5330

5331
5332
5333
        amax_sharding = NamedSharding(mesh, PartitionSpec(*get_padded_spec(arg_infos[2])))
        arg_shardings = tuple(arg_i.sharding for arg_i in arg_infos)
        out_shardings = (casted_x_sharding, casted_transposed_x_sharding, amax_sharding)
5334

5335
5336
5337
5338
5339
5340
5341
5342
5343
5344
5345
        def sharded_impl(dz, x, amax, scale, scale_inv):
            local_out, local_t_out, local_amax = DgatedGeluCastTransposePrimitive.impl(
                dz,
                x,
                amax,
                scale,
                scale_inv,
                out_dtype=out_dtype,
                static_axis_boundary=static_axis_boundary)
            global_updated_amax = all_reduce_max_along_all_axes_except_PP(local_amax)
            return local_out, local_t_out, global_updated_amax
5346

5347
        return mesh, sharded_impl, out_shardings, arg_shardings
5348
5349


5350
register_primitive(DgatedGeluCastTransposePrimitive)
5351

5352
5353
5354
5355
5356

def dgated_gelu_cast_transpose(
        dz: jnp.ndarray, x: jnp.ndarray, amax: jnp.ndarray, scale: jnp.ndarray,
        scale_inv: jnp.ndarray, out_dtype: TEDType,
        static_axis_boundary: int) -> Tuple[jnp.ndarray, jnp.ndarray, jnp.ndarray]:
5357
    """
5358
5359
    cast transpose d_gated_gelu fusion wrapper
    Return FP8(dgeglu(inputs))
5360
    """
5361
5362
5363
5364
5365
5366
5367
5368
    return DgatedGeluCastTransposePrimitive.outer_primitive.bind(
        dz,
        x,
        amax,
        scale,
        scale_inv,
        out_dtype=out_dtype,
        static_axis_boundary=static_axis_boundary)