attention.py 206 KB
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# Copyright (c) 2022-2024, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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#
# See LICENSE for license information.

"""Attention."""
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import collections
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from contextlib import nullcontext
import functools
from importlib.metadata import version
import math
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import os
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from typing import Any, Callable, Dict, List, Optional, Tuple, Union
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import warnings
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import numpy as np
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from pkg_resources import packaging
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import torch
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import torch.nn.functional as F
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import transformer_engine_extensions as tex
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from transformer_engine.pytorch.cpp_extensions import (
    cast_to_fp8,
    cast_from_fp8,
)
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from transformer_engine.pytorch.cpp_extensions.fused_attn import (
    fused_attn_fwd_qkvpacked,
    fused_attn_bwd_qkvpacked,
    fused_attn_fwd_kvpacked,
    fused_attn_bwd_kvpacked,
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    fused_attn_fwd,
    fused_attn_bwd,
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    QKVLayout,
    AttnBiasType,
    AttnMaskType,
    FusedAttnBackend,
)
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from transformer_engine.pytorch.fp8 import get_fp8_te_dtype
from transformer_engine.pytorch.float8_tensor import Float8Tensor
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from transformer_engine.pytorch.module import LayerNormLinear, Linear
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from transformer_engine.pytorch.module.base import TransformerEngineBaseModule
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from transformer_engine.pytorch.utils import (
    divide,
    attention_mask_func,
    split_tensor_along_dim,
    get_device_compute_capability,
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    get_default_init_method,
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)
from transformer_engine.pytorch.constants import (
    AttnMaskTypes,
    AttnTypes,
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    AttnBiasTypes,
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    QKVLayouts,
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    dist_group_type,
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    TE_DType,
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)
from transformer_engine.pytorch.softmax import FusedScaleMaskSoftmax
from transformer_engine.pytorch.distributed import (
    get_distributed_world_size,
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    get_distributed_rank,
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    checkpoint,
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    set_all_rng_states,
    CudaRNGStatesTracker,
    graph_safe_rng_available,
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)
from transformer_engine.pytorch.export import is_in_onnx_export_mode
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from transformer_engine.pytorch.jit import jit_fuser, no_torch_dynamo
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from transformer_engine.pytorch.graph import is_graph_capturing

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_flash_attn_version = packaging.version.Version(version("flash-attn"))
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_flash_attn_version_required = packaging.version.Version("2.0.6")
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_flash_attn_2_1_plus = _flash_attn_version >= packaging.version.Version("2.1")
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_flash_attn_2_3_plus = _flash_attn_version >= packaging.version.Version("2.3")
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_flash_attn_2_4_plus = _flash_attn_version >= packaging.version.Version("2.4")
_flash_attn_2_4_1_plus = _flash_attn_version >= packaging.version.Version("2.4.1")
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if _flash_attn_version >= _flash_attn_version_required:
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    from flash_attn.flash_attn_interface import flash_attn_varlen_func as flash_attn_forward_func # pylint: disable=no-name-in-module
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    from flash_attn_2_cuda import varlen_bwd as flash_attn_cuda_bwd # pylint: disable=no-name-in-module
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    from flash_attn.flash_attn_interface import _flash_attn_varlen_forward as _flash_attn_forward # pylint: disable=no-name-in-module,ungrouped-imports
    from flash_attn.flash_attn_interface import _flash_attn_varlen_backward as _flash_attn_backward # pylint: disable=no-name-in-module
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META_QKV  = tex.FP8FwdTensors.GEMM1_OUTPUT
META_DQKV = tex.FP8BwdTensors.GRAD_OUTPUT1
META_O    = tex.FP8FwdTensors.GEMM2_INPUT
META_DO   = tex.FP8BwdTensors.GRAD_INPUT2
META_S    = tex.FP8FwdTensors.GEMM3_OUTPUT
META_DP   = tex.FP8BwdTensors.GRAD_INPUT3
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_NVTE_DEBUG = int(os.getenv("NVTE_DEBUG", "0"))
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_alibi_cache = {
    "_num_heads": None,
    "_alibi_slopes": None,
    "_max_seqlen_q": None,
    "_max_seqlen_kv": None,
    "_alibi_bias": None,
    "_alibi_slopes_require_update": False,
    "_alibi_bias_require_update": False,
    }
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__all__ = ["DotProductAttention", "InferenceParams", "MultiheadAttention"]

class InferenceParams: # pylint: disable=too-few-public-methods
    """
    Inference parameters that are passed to the main model in order
    to efficienly calculate and store the context during inference.

    Parameters
    ----------
    max_batch_size : int
                    maximum batch size during inference.
    max_sequence_length : int
                         maximum sequence length during inference.
    """

    def __init__(self, max_batch_size, max_sequence_length):
        self.max_sequence_length = max_sequence_length
        self.max_batch_size = max_batch_size
        self.sequence_len_offset = 0
        self.batch_size_offset = 0
        self.key_value_memory_dict = {}

    def swap_key_value_dict(self, batch_indices):
        """
        Reorders the KV cache using the specified batch indices.

        Parameters
        ----------
        batch_indices : List[int]
                       Sequence of indices to reorder along the batch dimensions of
                       the KV cache. Must have a length equal to the batch size.
        """
        if len(self.key_value_memory_dict) == 0:
            raise ValueError("should not swap when dict in empty")

        for layer_number, inference_memory in self.key_value_memory_dict.items():
            inference_key_memory, inference_value_memory = inference_memory
            assert (
                len(batch_indices) == inference_key_memory.shape[1]
            )  # make sure batch size is the same
            new_inference_key_memory = inference_key_memory[:, batch_indices]
            new_inference_value_memory = inference_value_memory[:, batch_indices]
            self.key_value_memory_dict[layer_number] = (
                new_inference_key_memory,
                new_inference_value_memory,
            )
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@torch.no_grad()
def get_alibi(
    num_heads: int,
    max_seqlen_q: int,
    max_seqlen_kv: int,
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    alibi_slopes: Optional[torch.Tensor] = None,
    bias_dtype: Optional[torch.dtype] = None,
) -> Tuple[torch.Tensor, torch.Tensor]:
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    """
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    Parameters
    ----------
    num_heads: int
        Number of heads.
    max_seqlen_q: int
        Maximum sequence length for queries.
    max_seqlen_kv: int
        Maximum sequence length for keys and values.
    alibi_slopes: Optional[torch.Tensor], default = `None`
        Custom ALiBi slopes, FP32, CUDA tensor, in shape [num_heads] or [batch_size, num_heads].
    bias_dtype: Optional[torch.dtype], default = `None`
        Dtype of the generated ALiBi bias. If None, use torch.float32.
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    Returns
    ----------
    alibi_slopes: torch.Tensor
        ALiBi slopes in FP32 and shape [num_heads] or [batch_size, num_heads].
    alibi_bias: torch.Tensor
        ALiBi bias in FP32 or `bias_dtype`. If `alibi_slopes` is in [num_heads] shape,
        then `alibi_bias` is in [1, num_heads, max_seqlen_q, max_seqlen_kv], and if
        `alibi_slopes` is in [batch_size, num_heads], then the bias is in
        [batch_size, num_heads, max_seqlen_q, max_seqlen_kv].
    """
    global _alibi_cache
    if _alibi_cache["_alibi_slopes_require_update"]:
        if alibi_slopes is not None:
            _alibi_cache["_alibi_slopes"] = alibi_slopes
        else:
            n = 2 ** math.floor(math.log2(num_heads))
            m_0 = 2.0 ** (-8.0 / n)
            m = torch.pow(m_0, torch.arange(1, 1 + n))

            if n < num_heads:
                m_hat_0 = 2.0 ** (-4.0 / n)
                m_hat = torch.pow(m_hat_0, torch.arange(1, 1 + 2 * (num_heads - n), 2))
                m = torch.cat([m, m_hat])

            _alibi_cache["_alibi_slopes"] = m.to(dtype=torch.float32, device="cuda")
        _alibi_cache["_num_heads"] = num_heads
        _alibi_cache["_alibi_slopes_require_update"] = False

    if _alibi_cache["_alibi_bias_require_update"]:
        assert _alibi_cache["_alibi_slopes"] is not None, "ALiBi slopes can not be None!"
        if _alibi_cache["_alibi_slopes"].dim() == 1:
            slopes_shape = torch.Size([1, _alibi_cache["_alibi_slopes"].shape[0], 1, 1])
        if _alibi_cache["_alibi_slopes"].dim() == 2:
            slopes_shape = torch.Size([*_alibi_cache["_alibi_slopes"].shape[:], 1, 1])
        bias = torch.arange(
            1 - max_seqlen_kv, 1, dtype=torch.int32, device="cuda").view(1, 1, 1, max_seqlen_kv)
        bias = bias - torch.arange(
            1 - max_seqlen_q, 1, dtype=torch.int32, device="cuda").view(1, 1, max_seqlen_q, 1)
        bias = bias.abs().mul(-1)
        bias = bias * _alibi_cache["_alibi_slopes"].view(slopes_shape)
        _alibi_cache["_max_seqlen_q"], _alibi_cache["_max_seqlen_kv"] = max_seqlen_q, max_seqlen_kv
        bias_dtype = torch.float32 if bias_dtype is None else bias_dtype
        _alibi_cache["_alibi_bias"] = bias.contiguous().to(dtype=bias_dtype, device="cuda")
        _alibi_cache["_alibi_bias_require_update"] = False

    return _alibi_cache["_alibi_slopes"], _alibi_cache["_alibi_bias"]
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def get_cu_seqlens(mask: torch.Tensor) -> torch.Tensor:
    """
    Given a padding mask of shape [batch_size, 1, 1, max_seqlen], returns an int32
    tensor of shape [batch_size + 1] containing the cumulative sequence lengths of
    the samples in a batch.
    """
    mask = mask.squeeze(1).squeeze(1)
    reduced_mask = mask.sum(dim=1)
    cu_seqlens = reduced_mask.cumsum(dim=0).to(torch.int32)
    zero = torch.zeros(1, dtype=torch.int32, device="cuda")
    cu_seqlens = torch.cat((zero, cu_seqlens))

    return cu_seqlens

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def get_cu_seqlens_and_indices(mask: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor]:
    """
    Given a padding mask of shape [batch_size, 1, 1, max_seqlen], returns an int32
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    tensor of shape [batch_size + 1] containing the cumulative sequence lengths of
    the samples in a batch, and another int32 tensor of shape [batch_size * max_seqlen, 1, 1]
    containing the indices for the valid tokens.
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    """
    mask = mask.squeeze(1).squeeze(1)
    bs, seqlen = mask.shape

    reduced_mask = mask.sum(dim=1)
    cu_seqlens = reduced_mask.cumsum(dim=0).to(torch.int32)
    zero = torch.zeros(1, dtype=torch.int32, device="cuda")
    cu_seqlens = torch.cat((zero, cu_seqlens))

    mask = mask.reshape(-1)
    indices = mask.nonzero()
    indices = indices.unsqueeze(-1)

    num_nonzeros = indices.shape[0]
    pad_amount = bs * seqlen - num_nonzeros
    indices = F.pad(input=indices, pad=(0, 0, 0, 0, 0, pad_amount),
                    mode="constant", value=float(bs * seqlen))

    return cu_seqlens, indices


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def get_indices(max_seqlen: int, cu_seqlens: torch.Tensor) -> torch.Tensor:
    """
    Given max_seqlen and cu_seqlens of shape [batch_size + 1], returns an int32
    tensor of shape [batch_size * max_seqlen, 1, 1] containing the indices for
    the valid tokens in a batch.
    """
    bs = len(cu_seqlens) - 1
    seqlens = cu_seqlens[1:] - cu_seqlens[:-1]
    indices = [i*max_seqlen + ii for i,j in enumerate(seqlens) for ii in range(j)]
    indices = torch.Tensor(indices).unsqueeze(1).unsqueeze(1).to(
                    dtype=torch.int64, device="cuda")

    num_nonzeros = indices.shape[0]
    pad_amount = bs * max_seqlen - num_nonzeros
    indices = F.pad(input=indices, pad=(0, 0, 0, 0, 0, pad_amount),
                    mode="constant", value=float(bs * max_seqlen))

    return indices


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@functools.lru_cache
def _get_full_cu_seqlens(
    batch_size: int,
    max_seqlen: int,
    device: torch.device,
) -> torch.Tensor:
    """Cumulative sequence lengths in full data batch

    All sequences in batch have the maximum sequence length.

    """
    return torch.arange(
        0,
        (batch_size + 1) * max_seqlen,
        step=max_seqlen,
        dtype=torch.int32,
        device=device,
    )


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@jit_fuser
def pack_tensor(
    indices: torch.Tensor,
    tensor: torch.Tensor,
) -> torch.Tensor:
    """
    Packs the given tensor using the `indices`.
    """
    padding_indice = torch.zeros(
        1, tensor.shape[1], tensor.shape[2], dtype=tensor.dtype, device=tensor.device)
    tensor = torch.cat((tensor, padding_indice), dim=0)

    indices = indices.repeat(1, tensor.shape[1], tensor.shape[2])
    packed = torch.gather(tensor, 0, indices)
    return packed


@jit_fuser
def pack_2_tensors(
    indices: torch.Tensor,
    t1: torch.Tensor,
    t2: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor]:
    """
    Packs the given 2 tensors using the `indices`.
    """
    t1_packed = pack_tensor(indices, t1)
    t2_packed = pack_tensor(indices, t2)
    return t1_packed, t2_packed


@jit_fuser
def pack_3_tensors(
    indices: torch.Tensor,
    t1: torch.Tensor,
    t2: torch.Tensor,
    t3: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
    """
    Packs the given 3 tensors using the `indices`.
    """
    t1_packed = pack_tensor(indices, t1)
    t2_packed = pack_tensor(indices, t2)
    t3_packed = pack_tensor(indices, t3)
    return t1_packed, t2_packed, t3_packed


@jit_fuser
def unpack_tensor(
    indices: torch.Tensor,
    dim0: int,
    tensor: torch.Tensor,
) -> torch.Tensor:
    """
    Inverse of `pack_tensor`.
    """
    indices = indices.repeat(1, tensor.shape[1], tensor.shape[2])
    unpacked = torch.zeros(
        dim0 + 1, tensor.shape[1], tensor.shape[2], dtype=tensor.dtype, device=tensor.device)
    unpacked.scatter_(0, indices, tensor)
    unpacked = unpacked[0:-1,:,:]
    return unpacked


@jit_fuser
def unpack_2_tensors(
    indices: torch.Tensor,
    dim0: int,
    t1: torch.Tensor,
    t2: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor]:
    """
    Inverse of `pack_2_tensors`.
    """
    t1_unpacked = unpack_tensor(indices, dim0, t1)
    t2_unpacked = unpack_tensor(indices, dim0, t2)
    return t1_unpacked, t2_unpacked


@jit_fuser
def unpack_3_tensors(
    indices: torch.Tensor,
    dim0: int,
    t1: torch.Tensor,
    t2: torch.Tensor,
    t3: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor]:
    """
    Inverse of `pack_3_tensors`.
    """
    t1_unpacked = unpack_tensor(indices, dim0, t1)
    t2_unpacked = unpack_tensor(indices, dim0, t2)
    t3_unpacked = unpack_tensor(indices, dim0, t3)
    return t1_unpacked, t2_unpacked, t3_unpacked


class PackTensors(torch.autograd.Function):
    """
    Autograd function to pack tensors.
    """
    @staticmethod
    def forward(
        ctx,
        indices: torch.Tensor,
        *tensors: Tuple[torch.Tensor, ...]
    ) -> Union[Tuple[torch.Tensor, ...], torch.Tensor]:
        assert 1 <= len(tensors) <= 3, f"Packing {len(tensors)} tensors not supported."
        ctx.indices = indices
        ctx.dim0 = tensors[0].shape[0]
        if len(tensors) == 1:
            return pack_tensor(indices, *tensors)
        if len(tensors) == 2:
            return pack_2_tensors(indices, *tensors)
        return pack_3_tensors(indices, *tensors)

    @staticmethod
    def backward(ctx, *grad_outputs: Tuple[torch.Tensor, ...]):
        if len(grad_outputs) == 1:
            return None, unpack_tensor(ctx.indices, ctx.dim0, *grad_outputs)
        if len(grad_outputs) == 2:
            return None, *unpack_2_tensors(ctx.indices, ctx.dim0, *grad_outputs)
        return None, *unpack_3_tensors(ctx.indices, ctx.dim0, *grad_outputs)


class UnpackTensor(torch.autograd.Function):
    """
    Autograd function to unpack a tensor.
    """
    @staticmethod
    def forward(
        ctx,
        indices: torch.Tensor,
        dim0: int,
        tensor: torch.Tensor,
    ) -> torch.Tensor:
        ctx.indices = indices
        return unpack_tensor(indices, dim0, tensor)

    @staticmethod
    def backward(ctx, grad_output):
        return None, None, pack_tensor(ctx.indices, grad_output)


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def flash_attn_p2p_communicate(rank, send_tensor, send_dst,
                               recv_tensor, recv_src,
                               cp_group, batch_p2p_comm):
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    """Point-to-point communications of KV and dKV in Attention with context parallelism"""
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    send_recv_ops = []

    if batch_p2p_comm:
        if rank % 2 == 0:
            send_op = torch.distributed.P2POp(torch.distributed.isend,
                                              send_tensor,
                                              send_dst,
                                              cp_group)
            recv_op = torch.distributed.P2POp(torch.distributed.irecv,
                                              recv_tensor,
                                              recv_src,
                                              cp_group)
            send_recv_ops.append(send_op)
            send_recv_ops.append(recv_op)
        else:
            recv_op = torch.distributed.P2POp(torch.distributed.irecv,
                                              recv_tensor,
                                              recv_src,
                                              cp_group)
            send_op = torch.distributed.P2POp(torch.distributed.isend,
                                              send_tensor,
                                              send_dst,
                                              cp_group)
            send_recv_ops.append(recv_op)
            send_recv_ops.append(send_op)
        send_recv_reqs = torch.distributed.batch_isend_irecv(send_recv_ops)
    else:
        if rank % 2 == 0:
            send_op = torch.distributed.isend(send_tensor, send_dst, cp_group)
            recv_op = torch.distributed.irecv(recv_tensor, recv_src, cp_group)
            send_recv_ops.append(send_op)
            send_recv_ops.append(recv_op)
        else:
            recv_op = torch.distributed.irecv(recv_tensor, recv_src, cp_group)
            send_op = torch.distributed.isend(send_tensor, send_dst, cp_group)
            send_recv_ops.append(recv_op)
            send_recv_ops.append(send_op)
        send_recv_reqs = send_recv_ops

    return send_recv_reqs


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@jit_fuser
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def flash_attn_fwd_out_correction(out, out_per_step, softmax_lse, softmax_lse_per_step):
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    """Merge partial outputs of each step in Attention with context parallelism"""
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    softmax_lse_corrected_exp = torch.exp(softmax_lse_per_step - softmax_lse).transpose(1, 2)
    softmax_lse_corrected_exp = softmax_lse_corrected_exp.unsqueeze(-1)
    out_corrected = out_per_step*softmax_lse_corrected_exp
    out.add_(out_corrected)


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@jit_fuser
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def flash_attn_fwd_softmax_lse_correction(softmax_lse, softmax_lse_per_step):
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    """Merge softmax stats of each step in Attention with context parallelism"""
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    max_scale = torch.max(softmax_lse, softmax_lse_per_step)
    min_scale = torch.min(softmax_lse, softmax_lse_per_step)
    new_scale = max_scale + torch.log(1 + torch.exp(min_scale - max_scale))
    softmax_lse.copy_(new_scale)
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class AttnFuncWithCP(torch.autograd.Function):
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    """
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    Attention implementation with context parallelism.
    Split attention compute into multiple steps, and overlap current-step
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    compute with next-step communication.
    """

    @staticmethod
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    def forward(ctx, is_training, q, k, v, cu_seqlens_q, cu_seqlens_k, max_seqlen_q, max_seqlen_k,
                dropout_p, cp_group, cp_global_ranks, cp_stream, softmax_scale, attn_mask_type,
                deterministic, use_fused_attention):
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        if softmax_scale is None:
            softmax_scale = q.shape[-1] ** (-0.5)

        cp_size = get_distributed_world_size(cp_group)
        rank = get_distributed_rank(cp_group)
        send_dst = cp_global_ranks[(rank + 1) % cp_size]
        recv_src = cp_global_ranks[(rank + cp_size - 1) % cp_size]
        batch_p2p_comm = int(os.getenv("NVTE_BATCH_MHA_P2P_COMM", "0")) or (cp_size == 2)

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        causal = (attn_mask_type == "causal")

        if causal:
            # [b, s, np, hn] -> [b, 2, s//2, np, hn]
            q, k, v = [x.view(x.shape[0], 2, x.shape[1]//2, *x.shape[2:]) for x in [q, k, v]]
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        assert(q.shape[-1] % 8 == 0), "hidden size per attention head should be multiple of 8"
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        fa_optional_forward_kwargs = {}
        if _flash_attn_2_3_plus:
            fa_optional_forward_kwargs["window_size"] = [-1, 0] if causal else [-1, -1]
        if _flash_attn_2_4_plus:
            fa_optional_forward_kwargs["alibi_slopes"] = None
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        # Flash Attn inputs
        q_inputs = [None, None]
        kv_inputs = [None, None]
        # Flash Attn outputs
        out_per_step = [None for _ in range(cp_size)]
        softmax_lse_per_step = [None for _ in range(cp_size)]
        rng_states = [None for _ in range(cp_size)]

        # create two streams to resolve wave quantization issue of Flash Attn in each step
        flash_attn_streams = [torch.cuda.current_stream(), cp_stream]
        # synchronize fwd results correction across steps
        fwd_results_correction_done = torch.cuda.Event()

        p2p_comm_buffers = [None for _ in range(cp_size)]
        p2p_comm_buffers[0] = torch.cat((k.unsqueeze(0), v.unsqueeze(0)), dim=0)
        send_recv_reqs = [[], []]

        for i in range(cp_size+1):
            if i < cp_size:
                with torch.cuda.stream(flash_attn_streams[i%2]):
                    # wait until KV is received
                    for req in send_recv_reqs[(i+1)%2]:
                        req.wait()

                    if i < (cp_size-1):
                        p2p_comm_buffers[i+1] = torch.empty_like(p2p_comm_buffers[i])
                        send_recv_reqs[i%2] = flash_attn_p2p_communicate(rank,
                                                                         p2p_comm_buffers[i],
                                                                         send_dst,
                                                                         p2p_comm_buffers[i+1],
                                                                         recv_src,
                                                                         cp_group,
                                                                         batch_p2p_comm)

                    kv_inputs[i%2] = p2p_comm_buffers[i]
                    if causal:
                        if i == 0:
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                            if use_fused_attention:
                                # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
                                q_inputs[i%2] = q.view(q.shape[0], -1, *q.shape[-2:])
                                # [2, b, 2, sk//2, np, hn] -> [2, b, sk, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2].view(
                                    2, k.shape[0], -1, *k.shape[-2:])
                                out_per_step[i], [softmax_lse_per_step[i], rng_states[i]] = \
                                fused_attn_fwd(
                                    is_training, max_seqlen_q, max_seqlen_k, cu_seqlens_q,
                                    cu_seqlens_k, q_inputs[i%2], kv_inputs[i%2][0],
                                    kv_inputs[i%2][1], TE_DType[q.dtype],
                                    tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                                    attn_scale=softmax_scale, dropout=dropout_p,
                                    qkv_layout="bshd_bshd_bshd", attn_mask_type="causal",
                                )
                            else:
                                # [b, 2, sq//2, np, hn] -> [b*sq, np, hn]
                                q_inputs[i%2] = q.view(-1, *q.shape[-2:])
                                # [2, b, 2, sk//2, np, hn] -> [2, b*sk, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2].view(2, -1, *k.shape[-2:])
                                _, _, _, _, out_per_step[i], \
                                softmax_lse_per_step[i], _, rng_states[i] = _flash_attn_forward(
                                    q_inputs[i%2], kv_inputs[i%2][0], kv_inputs[i%2][1],
                                    cu_seqlens_q, cu_seqlens_k, max_seqlen_q, max_seqlen_k,
                                    dropout_p, softmax_scale, causal=True, return_softmax=False,
                                    **fa_optional_forward_kwargs
                                )
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                        elif i <= rank:
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                            if use_fused_attention:
                                # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
                                q_inputs[i%2] = q.view(q.shape[0], -1, *q.shape[-2:])
                                # [2, b, 2, sk//2, np, hn] -> [2, b, sk//2, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2][:, :, 0, ...].contiguous()
                                out_per_step[i], [softmax_lse_per_step[i], rng_states[i]] = \
                                fused_attn_fwd(
                                    is_training, max_seqlen_q, max_seqlen_k//2, cu_seqlens_q,
                                    cu_seqlens_k//2, q_inputs[i%2], kv_inputs[i%2][0],
                                    kv_inputs[i%2][1], TE_DType[q.dtype],
                                    tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                                    attn_scale=softmax_scale, dropout=dropout_p,
                                    qkv_layout="bshd_bshd_bshd", attn_mask_type="no_mask",
                                )
                            else:
                                # [b, 2, sq//2, np, hn] -> [b*sq, np, hn]
                                q_inputs[i%2] = q.view(-1, *q.shape[-2:])
                                # [2, b, 2, sk//2, np, hn] -> [2, b, sk//2, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2][:, :, 0, ...].contiguous()
                                # [2, b, sk//2, np, hn] -> [2, b*sk//2, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2].view(2, -1, *k.shape[-2:])
                                if _flash_attn_2_3_plus:
                                    fa_optional_forward_kwargs["window_size"] = [-1, -1]
                                _, _, _, _, out_per_step[i], \
                                softmax_lse_per_step[i], _, rng_states[i] = _flash_attn_forward(
                                    q_inputs[i%2], kv_inputs[i%2][0], kv_inputs[i%2][1],
                                    cu_seqlens_q, cu_seqlens_k//2, max_seqlen_q, max_seqlen_k//2,
                                    dropout_p, softmax_scale, causal=False, return_softmax=False,
                                    **fa_optional_forward_kwargs
                                )
                        else:
                            if use_fused_attention:
                                # [b, 2, sq//2, np, hn] -> [b, sq//2, np, hn]
                                q_inputs[i%2] = q[:, 1, ...].contiguous()
                                # [2, b, 2, sk//2, np, hn] -> [2, b, sk, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2].view(
                                    2, k.shape[0], -1, *k.shape[-2:])
                                out_per_step[i], [softmax_lse_per_step[i], rng_states[i]] = \
                                fused_attn_fwd(
                                    is_training, max_seqlen_q//2, max_seqlen_k, cu_seqlens_q//2,
                                    cu_seqlens_k, q_inputs[i%2], kv_inputs[i%2][0],
                                    kv_inputs[i%2][1], TE_DType[q.dtype],
                                    tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                                    attn_scale=softmax_scale, dropout=dropout_p,
                                    qkv_layout="bshd_bshd_bshd", attn_mask_type="no_mask",
                                )
                            else:
                                # [b, 2, sq//2, np, hn] -> [b, sq//2, np, hn] -> [b*sq//2, np, hn]
                                q_inputs[i%2] = q[:, 1, ...].contiguous().view(-1, *q.shape[-2:])
                                # [2, b, 2, sk//2, np, hn] -> [2, b*sk, np, hn]
                                kv_inputs[i%2] = kv_inputs[i%2].view(2, -1, *k.shape[-2:])
                                if _flash_attn_2_3_plus:
                                    fa_optional_forward_kwargs["window_size"] = [-1, -1]
                                _, _, _, _, out_per_step[i], \
                                softmax_lse_per_step[i], _, rng_states[i] = _flash_attn_forward(
                                    q_inputs[i%2], kv_inputs[i%2][0], kv_inputs[i%2][1],
                                    cu_seqlens_q//2, cu_seqlens_k, max_seqlen_q//2, max_seqlen_k,
                                    dropout_p, softmax_scale, causal=False, return_softmax=False,
                                    **fa_optional_forward_kwargs
                                )
                    else:
                        if use_fused_attention:
                            out_per_step[i], [softmax_lse_per_step[i], rng_states[i]] = \
                            fused_attn_fwd(
                                is_training, max_seqlen_q, max_seqlen_k, cu_seqlens_q,
                                cu_seqlens_k, q, kv_inputs[i%2][0],
                                kv_inputs[i%2][1], TE_DType[q.dtype],
                                tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                                attn_scale=softmax_scale, dropout=dropout_p,
                                qkv_layout="bshd_bshd_bshd", attn_mask_type="no_mask",
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                            )
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                        else:
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                            # [b, sq, np, hn] -> [b*sq, np, hn]
                            q_inputs[i%2] = q.view(-1, *q.shape[-2:])
                            # [2, b, sk, np, hn] -> [2, b*sk, np, hn]
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                            kv_inputs[i%2] = kv_inputs[i%2].view(2, -1, *k.shape[-2:])
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                            _, _, _, _, out_per_step[i], \
                            softmax_lse_per_step[i], _, rng_states[i] = _flash_attn_forward(
                                q_inputs[i%2], kv_inputs[i%2][0], kv_inputs[i%2][1],
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                                cu_seqlens_q, cu_seqlens_k, max_seqlen_q, max_seqlen_k,
                                dropout_p, softmax_scale, causal=False, return_softmax=False,
                                **fa_optional_forward_kwargs
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                            )
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            if i > 0:
                # wait until fwd restuls correction of last step is done
                if i > 1:
                    flash_attn_streams[(i-1)%2].wait_event(fwd_results_correction_done)

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                if use_fused_attention:
                    # [b, np, sq, 1] -> [b, np, sq]
                    softmax_lse_per_step[i-1].squeeze_(-1)

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                with torch.cuda.stream(flash_attn_streams[(i-1)%2]):
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                    if i == 1:
                        out = torch.empty_like(q).zero_()
                        softmax_lse = torch.clone(softmax_lse_per_step[0]).to(torch.double)
                        if causal:
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                            # [b, np, sq] -> [b, np, 2, sq//2]
                            softmax_lse_ = softmax_lse.view(
                                *softmax_lse.shape[:-1], 2, softmax_lse.shape[-1]//2
                            )
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                    elif (i-1) <= rank or not causal:
                        flash_attn_fwd_softmax_lse_correction(softmax_lse,
                                                              softmax_lse_per_step[i-1])
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                    else:
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                        flash_attn_fwd_softmax_lse_correction(softmax_lse_[..., 1, :],
                                                              softmax_lse_per_step[i-1])
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                if i < cp_size:
                    flash_attn_streams[(i-1)%2].record_event(fwd_results_correction_done)

        torch.cuda.current_stream().wait_stream(flash_attn_streams[1])

        softmax_lse = softmax_lse.to(torch.float)
        for i in range(cp_size):
            # [b*sq, np, hn] -> [b, sq, np, hn] or [b*sq//2, np, hn] -> [b, sq//2, np, hn]
            out_ = out_per_step[i].view(out.shape[0], -1, *out.shape[-2:])
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            if i <= rank or not causal:
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                flash_attn_fwd_out_correction(out.view(*out_.shape),
                                              out_,
                                              softmax_lse,
                                              softmax_lse_per_step[i])
            else:
                flash_attn_fwd_out_correction(out[:, 1, ...],
                                              out_,
                                              softmax_lse_[..., 1, :],
                                              softmax_lse_per_step[i])

        kv = p2p_comm_buffers[-1]
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        if use_fused_attention:
            out = out.view(out.shape[0], -1, *out.shape[-2:])
        else:
            out = out.view(-1, *out.shape[-2:])
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        ctx.save_for_backward(q, kv, out, softmax_lse, cu_seqlens_q, cu_seqlens_k)
        ctx.rng_states = rng_states
        ctx.cp_group = cp_group
        ctx.cp_global_ranks = cp_global_ranks
        ctx.dropout_p = dropout_p
        ctx.max_seqlen_q = max_seqlen_q
        ctx.max_seqlen_k = max_seqlen_k
        ctx.softmax_scale = softmax_scale
        ctx.causal = causal
        ctx.deterministic = deterministic
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        ctx.use_fused_attention = use_fused_attention
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        return out

    @staticmethod
    def backward(ctx, dout):
        q, kv, out, softmax_lse, cu_seqlens_q, cu_seqlens_k = ctx.saved_tensors

        cp_size = get_distributed_world_size(ctx.cp_group)
        rank = get_distributed_rank(ctx.cp_group)
        send_dst = ctx.cp_global_ranks[(rank + cp_size - 1) % cp_size]
        recv_src = ctx.cp_global_ranks[(rank + 1) % cp_size]
        batch_p2p_comm = int(os.getenv("NVTE_BATCH_MHA_P2P_COMM", "0")) or (cp_size == 2)

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        if ctx.causal:
            # [b, np, sq] -> [b, np, 2, sq//2]
            softmax_lse_ = softmax_lse.view(*softmax_lse.shape[:-1], 2, softmax_lse.shape[-1]//2)
            softmax_lse_ = softmax_lse_[..., 1, :].contiguous()
            if ctx.use_fused_attention:
                # [b, np, sq//2] -> [b, np, sq//2, 1]
                softmax_lse_.unsqueeze_(-1)
        if ctx.use_fused_attention:
            # [b, np, sq] -> [b, np, sq, 1]
            softmax_lse.unsqueeze_(-1)
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        out = out.view(*q.shape)
        dout = dout.view(*q.shape)
        # Flash Attn outputs
        dq = torch.empty_like(q)

        p2p_comm_buffers = [torch.empty((2, *kv.shape), dtype=kv.dtype, device=kv.device), \
                            torch.empty((2, *kv.shape), dtype=kv.dtype, device=kv.device)]
        p2p_comm_buffers[0][0].copy_(kv)
        send_recv_reqs = []

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        fa_optional_backward_kwargs = {}
        if _flash_attn_2_4_plus:
            fa_optional_backward_kwargs["alibi_slopes"] = None
        if _flash_attn_2_4_1_plus:
            fa_optional_backward_kwargs["deterministic"] = ctx.deterministic

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        for i in range(cp_size):
            # wait until KV is received
            for req in send_recv_reqs:
                req.wait()

            send_tensor = p2p_comm_buffers[i%2]
            recv_tensor = p2p_comm_buffers[(i+1)%2]
            if i == 0:
                send_tensor = send_tensor[0]
                recv_tensor = recv_tensor[0]
            if i == (cp_size-1):
                send_tensor = send_tensor[1]
                recv_tensor = recv_tensor[1]

            send_recv_reqs = flash_attn_p2p_communicate(rank,
                                                        send_tensor,
                                                        send_dst,
                                                        recv_tensor,
                                                        recv_src,
                                                        ctx.cp_group,
                                                        batch_p2p_comm)

            kv = p2p_comm_buffers[i%2][0]
            # In reversed order of fwd
            if ctx.causal:
                if i == (cp_size-1):
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                    if ctx.use_fused_attention:
                        # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
                        q_ = q.view(q.shape[0], -1, *q.shape[-2:])
                        # [2, b, 2, sk//2, np, hn] -> [2, b, sk, np, hn]
                        kv_ = kv.view(*kv.shape[0:2], -1, *kv.shape[-2:])
                        # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
                        out_ = out.view(out.shape[0], -1, *out.shape[-2:])
                        dout_ = dout.view(dout.shape[0], -1, *dout.shape[-2:])
                        dq_, dk_, dv_, _ = fused_attn_bwd(
                            ctx.max_seqlen_q, ctx.max_seqlen_k,
                            cu_seqlens_q, cu_seqlens_k,
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                            q_, kv_[0], kv_[1], out_, dout_, TE_DType[q.dtype], TE_DType[kv.dtype],
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                            [softmax_lse, ctx.rng_states[cp_size-i-1]],
                            tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                            attn_scale=ctx.softmax_scale,
                            dropout=ctx.dropout_p,
                            qkv_layout="bshd_bshd_bshd",
                            attn_mask_type="causal",
                        )
                    else:
                        # [b, 2, sq//2, np, hn] -> [b*sq, np, hn]
                        q_ = q.view(-1, *q.shape[-2:])
                        dq_ = torch.empty_like(q_)
                        # [2, b, 2, sk//2, np, hn] -> [2, b*sk, np, hn]
                        kv_ = kv.view(2, -1, *kv.shape[-2:])
                        dkv_ = torch.empty_like(kv_)
                        # [b, 2, sq//2, np, hn] -> [b*sq, np, hn]
                        out_ = out.view(-1, *out.shape[-2:])
                        dout_ = dout.view(-1, *dout.shape[-2:])
                        if _flash_attn_2_3_plus:
                            fa_optional_backward_kwargs["window_size"] = [-1, 0]
                        _flash_attn_backward(
                            dout_, q_, kv_[0], kv_[1], out_, softmax_lse,
                            dq_, dkv_[0], dkv_[1], cu_seqlens_q, cu_seqlens_k,
                            ctx.max_seqlen_q, ctx.max_seqlen_k,
                            ctx.dropout_p, ctx.softmax_scale, True,
                            rng_state=ctx.rng_states[cp_size-i-1],
                            **fa_optional_backward_kwargs
                        )
                elif i >= (cp_size-rank-1):
                    if ctx.use_fused_attention:
                        # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
                        q_ = q.view(q.shape[0], -1, *q.shape[-2:])
                        # [2, b, 2, sk//2, np, hn] -> [2, b, sk//2, np, hn]
                        kv_ = kv[:, :, 0, ...].contiguous()
                        # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
                        out_ = out.view(out.shape[0], -1, *out.shape[-2:])
                        dout_ = dout.view(dout.shape[0], -1, *dout.shape[-2:])
                        dq_, dk_, dv_, _ = fused_attn_bwd(
                            ctx.max_seqlen_q, ctx.max_seqlen_k//2,
                            cu_seqlens_q, cu_seqlens_k//2,
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                            q_, kv_[0], kv_[1], out_, dout_, TE_DType[q.dtype], TE_DType[kv.dtype],
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                            [softmax_lse, ctx.rng_states[cp_size-i-1]],
                            tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                            attn_scale=ctx.softmax_scale,
                            dropout=ctx.dropout_p,
                            qkv_layout="bshd_bshd_bshd",
                            attn_mask_type="no_mask",
                        )
                    else:
                        # [b, 2, sq//2, np, hn] -> [b*sq, np, hn]
                        q_ = q.view(-1, *q.shape[-2:])
                        dq_ = torch.empty_like(q_)
                        # [2, b, 2, sk//2, np, hn] -> [2, b, sk//2, np, hn] -> [2, b*sk//2, np, hn]
                        kv_ = kv[:, :, 0, ...].contiguous().view(2, -1, *kv.shape[-2:])
                        dkv_ = torch.empty_like(kv_)
                        # [b, 2, sq//2, np, hn] -> [b*sq, np, hn]
                        out_ = out.view(-1, *out.shape[-2:])
                        dout_ = dout.view(-1, *dout.shape[-2:])
                        if _flash_attn_2_3_plus:
                            fa_optional_backward_kwargs["window_size"] = [-1, -1]
                        _flash_attn_backward(
                            dout_, q_, kv_[0], kv_[1], out_, softmax_lse,
                            dq_, dkv_[0], dkv_[1], cu_seqlens_q, cu_seqlens_k//2,
                            ctx.max_seqlen_q, ctx.max_seqlen_k//2,
                            ctx.dropout_p, ctx.softmax_scale, False,
                            rng_state=ctx.rng_states[cp_size-i-1],
                            **fa_optional_backward_kwargs
                        )
                else:
                    if ctx.use_fused_attention:
                        # [b, 2, sq//2, np, hn] -> [b, sq//2, np, hn]
                        q_ = q[:, 1, ...].contiguous()
                        # [2, b, 2, sk//2, np, hn] -> [2, b, sk, np, hn]
                        kv_ = kv.view(*kv.shape[0:2], -1, *kv.shape[-2:])
                        # [b, 2, sq//2, np, hn] -> [b, sq//2, np, hn]
                        out_ = out[:, 1, ...].contiguous()
                        dout_ = dout[:, 1, ...].contiguous()
                        dq_, dk_, dv_, _ = fused_attn_bwd(
                            ctx.max_seqlen_q//2, ctx.max_seqlen_k,
                            cu_seqlens_q//2, cu_seqlens_k,
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                            q_, kv_[0], kv_[1], out_, dout_, TE_DType[q.dtype], TE_DType[kv.dtype],
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                            [softmax_lse_, ctx.rng_states[cp_size-i-1]],
                            tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                            attn_scale=ctx.softmax_scale,
                            dropout=ctx.dropout_p,
                            qkv_layout="bshd_bshd_bshd",
                            attn_mask_type="no_mask",
                        )
                    else:
                        # [b, 2, sq//2, np, hn] -> [b, sq//2, np, hn] -> [b*sq//2, np, hn]
                        q_ = q[:, 1, ...].contiguous().view(-1, *q.shape[-2:])
                        dq_ = torch.empty_like(q_)
                        # [2, b, 2, sk//2, np, hn] -> [2, b*sk, np, hn]
                        kv_ = kv.view(2, -1, *kv.shape[-2:])
                        dkv_ = torch.empty_like(kv_)
                        # [b, 2, sq//2, np, hn] -> [b, sq//2, np, hn] -> [b*sq//2, np, hn]
                        out_ = out[:, 1, ...].contiguous().view(-1, *out.shape[-2:])
                        dout_ = dout[:, 1, ...].contiguous().view(-1, *dout.shape[-2:])
                        if _flash_attn_2_3_plus:
                            fa_optional_backward_kwargs["window_size"] = [-1, -1]
                        _flash_attn_backward(
                            dout_, q_, kv_[0], kv_[1], out_, softmax_lse_,
                            dq_, dkv_[0], dkv_[1], cu_seqlens_q//2, cu_seqlens_k,
                            ctx.max_seqlen_q//2, ctx.max_seqlen_k,
                            ctx.dropout_p, ctx.softmax_scale, False,
                            rng_state=ctx.rng_states[cp_size-i-1],
                            **fa_optional_backward_kwargs
                        )
            else:
                if ctx.use_fused_attention:
                    dq_, dk_, dv_, _ = fused_attn_bwd(
                        ctx.max_seqlen_q, ctx.max_seqlen_k,
                        cu_seqlens_q, cu_seqlens_k,
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                        q, kv[0], kv[1], out, dout, TE_DType[q.dtype], TE_DType[kv.dtype],
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                        [softmax_lse, ctx.rng_states[cp_size-i-1]],
                        tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen,
                        attn_scale=ctx.softmax_scale,
                        dropout=ctx.dropout_p,
                        qkv_layout="bshd_bshd_bshd",
                        attn_mask_type="no_mask",
                    )
                else:
                    # [b, sq, np, hn] -> [b*sq, np, hn]
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                    q_ = q.view(-1, *q.shape[-2:])
                    dq_ = torch.empty_like(q_)
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                    # [2, b, sk, np, hn] -> [2, b*sk, np, hn]
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                    kv_ = kv.view(2, -1, *kv.shape[-2:])
                    dkv_ = torch.empty_like(kv_)
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                    # [b, sq, np, hn] -> [b*sq, np, hn]
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                    out_ = out.view(-1, *out.shape[-2:])
                    dout_ = dout.view(-1, *dout.shape[-2:])
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                    if _flash_attn_2_3_plus:
                        fa_optional_backward_kwargs["window_size"] = [-1, -1]
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                    _flash_attn_backward(
                        dout_, q_, kv_[0], kv_[1], out_, softmax_lse,
                        dq_, dkv_[0], dkv_[1], cu_seqlens_q, cu_seqlens_k,
                        ctx.max_seqlen_q, ctx.max_seqlen_k,
                        ctx.dropout_p, ctx.softmax_scale, False,
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                        **fa_optional_backward_kwargs
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                    )

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            if i >= (cp_size-rank-1) or not ctx.causal:
                # [b*sq, np, hn] -> [b, 2, sq//2, np, hn] if causal
                # [b*sq, np, hn] -> [b, sq, np, hn] if not causal
                dq_ = dq_.view(*dq.shape)
            else:
                # [b*sq//2, np, hn] -> [b, sq//2, np, hn]
                dq_ = dq_.view(dq.shape[0], *dq.shape[2:])
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            if ctx.causal:
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                if i > (cp_size-rank-1):
                    dq.add_(dq_)
                elif i == (cp_size-rank-1):
                    if rank == (cp_size-1):
                        dq.copy_(dq_)
                    else:
                        dq[:, 0, ...].copy_(dq_[:, 0, ...])
                        dq[:, 1, ...].add_(dq_[:, 1, ...])
                elif i > 0:
                    dq[:, 1, ...].add_(dq_)
                else:
                    dq[:, 1, ...].copy_(dq_)
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            else:
                if i == 0:
                    dq.copy_(dq_)
                else:
                    dq.add_(dq_)
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            # wait until dKV is received
            for req in send_recv_reqs:
                req.wait()
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            dkv = p2p_comm_buffers[(i+1)%2][1]
            if ctx.use_fused_attention:
                dkv_ = torch.cat((dk_.unsqueeze(0), dv_.unsqueeze(0)), dim=0)
            if ctx.causal and i >= (cp_size-rank-1) and i != (cp_size-1):
                # [2, b*sk//2, np, hn] -> [2, b, sk//2, np, hn]
                dkv_ = dkv_.view(*dkv.shape[0:2], *dkv.shape[3:])
            else:
                # [2, b*sk, np, hn] -> [2, b, 2, sk//2, np, hn] if causal
                # [2, b*sk, np, hn] -> [2, b, sk, np, hn] if not causal
                dkv_ = dkv_.view(*dkv.shape)
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                if i == (cp_size-1):
                    if rank == 0:
                        dkv[:, :, 0, ...].add_(dkv_[:, :, 0, ...])
                        dkv[:, :, 1, ...].copy_(dkv_[:, :, 1, ...])
                    else:
                        dkv.add_(dkv_)
                elif i >= (cp_size-rank-1):
                    if i == 0 and rank == (cp_size-1):
                        dkv[:, :, 0, ...].copy_(dkv_)
                    else:
                        dkv[:, :, 0, ...].add_(dkv_)
                elif i > 0:
                    dkv.add_(dkv_)
                else:
                    dkv.copy_(dkv_)
            else:
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                if i == 0:
                    dkv.copy_(dkv_)
                else:
                    dkv.add_(dkv_)

        if ctx.causal:
            # [b, 2, sq//2, np, hn] -> [b, sq, np, hn]
            dq = dq.view(q.shape[0], -1, *q.shape[-2:])
            # [2, b, 2, sk//2, np, hn] -> [2, b, sk, np, hn]
            dkv = dkv.view(*kv.shape[0:2], -1, *kv.shape[-2:])
        return None, dq, dkv[0], dkv[1], None, None, None, None, None, None, \
                None, None, None, None, None, None


def attn_forward_func_with_cp(
    is_training, q, k, v, cu_seqlens_q, cu_seqlens_k, max_seqlen_q, max_seqlen_k, dropout_p,
    cp_group, cp_global_ranks, cp_stream, softmax_scale=None, attn_mask_type="causal",
    deterministic=False, use_fused_attention=False
) -> torch.Tensor:
    """Attention implementation with context parallelism"""
    assert (attn_mask_type in ["causal", "no_mask"]
        ), f"Mask type of {attn_mask_type} is not supported with context parallelism!"
    out = AttnFuncWithCP.apply(
        is_training, q, k, v, cu_seqlens_q, cu_seqlens_k, max_seqlen_q, max_seqlen_k,
        dropout_p, cp_group, cp_global_ranks, cp_stream, softmax_scale, attn_mask_type,
        deterministic, use_fused_attention
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    )
    return out


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class RotaryPositionEmbedding(torch.nn.Module):
    """
    Implements Rotary Position Embedding from https://arxiv.org/abs/2104.09864.
    """
    def __init__(
        self,
        dim: int,
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        rotary_percent: float = 1.0,
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        seq_len_interpolation_factor: Optional[int] = None,
        pretrained_max_position_embeddings: Optional[int] = None,
    ):
        """
        Parameters
        ----------
        dim: int
            rotary embedding dimension
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        rotary_percent: float
            Percent of rotary dimension to use for rotary position embeddings.
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        seq_len_interpolation_factor: int
            if not None, discrete positions will be interpolated by this factor via the trick in
            https://arxiv.org/abs/2306.15595
        pretrained_max_position_embeddings: int
            pre-trained max_position_embeddings before position interpolation
        """
        super().__init__()
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        if rotary_percent < 1.0:
            dim = int(dim * rotary_percent)
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        self.seq_len_interpolation_factor = seq_len_interpolation_factor
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        inv_freq = 1.0 / (
            10000
            ** (
                torch.arange(0, dim, 2, dtype=torch.float32, device=torch.cuda.current_device())
                / dim
            )
        )
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        self.register_buffer('inv_freq', inv_freq)
        self.pretrained_max_position_embeddings = pretrained_max_position_embeddings

    def forward(self, max_seq_len: int, offset: int = 0):
        """
        Create rotary position embedding frequencies

        Parameters
        ----------
        max_seq_len: int
            sequence length of a sample
        offset: int, default = 0
            fixed offset for freqencies
        """
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        seq = (
            torch.arange(max_seq_len, device=self.inv_freq.device, dtype=self.inv_freq.dtype)
            + offset
        )
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        if (self.pretrained_max_position_embeddings is not None
            and self.seq_len_interpolation_factor is not None):
            if (max_seq_len >
                self.pretrained_max_position_embeddings * self.seq_len_interpolation_factor):
                # dynamic linear scaling (length > position we have learned)
                seq *= 1 / (max_seq_len / self.pretrained_max_position_embeddings)
            else:
                # fixed linear scaling
                seq *= 1 / self.seq_len_interpolation_factor

        freqs = torch.einsum('i , j -> i j', seq, self.inv_freq)
        # first part even vector components, second part odd vector components,
        #  2 * dim in dimension size
        emb = torch.cat((freqs, freqs), dim=-1)
        # emb [seq_length, .., dim]
        return emb.reshape(emb.size(0), 1, 1, emb.size(1))

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class FusedRoPEFunc(torch.autograd.Function):
    """
    Function for FusedRoPE

    This implementation assumes the input tensor to be in `sbhd`, `bshd` or `thd` format and
    the RoPE tensor to be of shape (s, 1, 1, d). It accepts arbitrary memory layouts to avoid
    the expensive `.contiguous()` calls, thus it may not achieve the best memory access pattern.
    """

    @staticmethod
    def forward(
        ctx,
        t: torch.Tensor,
        freqs: torch.Tensor,
        tensor_format: str = "sbhd",
        cu_seqlens: Union[torch.Tensor, None] = None,
    ) -> torch.Tensor:
        if tensor_format == "sbhd":
            output = tex.fused_rope_forward(t, freqs, False)
        elif tensor_format == "bshd":
            output = tex.fused_rope_forward(
                t.transpose(0, 1), freqs, True
            ).transpose(0, 1)
        elif tensor_format == "thd":
            output = tex.fused_rope_thd_forward(t, cu_seqlens, freqs)
        else:
            raise ValueError(f"Unsupported tensor_format: {tensor_format}.")
        ctx.save_for_backward(freqs, cu_seqlens)
        ctx.tensor_format = tensor_format

        return output

    @staticmethod
    def backward(
        ctx, grad_output: torch.Tensor
    ) -> Tuple[Union[torch.Tensor, None], ...]:
        freqs, cu_seqlens = ctx.saved_tensors
        if ctx.tensor_format == "sbhd":
            grad_input = tex.fused_rope_backward(grad_output, freqs, False)
        elif ctx.tensor_format == "bshd":
            grad_input = tex.fused_rope_backward(
                grad_output.transpose(0, 1), freqs, True
            ).transpose(0, 1)
        elif ctx.tensor_format == "thd":
            grad_input = tex.fused_rope_thd_backward(grad_output, cu_seqlens, freqs)
        else:
            raise ValueError(f"Unsupported tensor_format: {ctx.tensor_format}.")

        return grad_input, None, None, None, None


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def _rotate_half(x: torch.Tensor) -> torch.Tensor:
    """
    change sign so the last dimension becomes [-odd, +even]
    """
    x = x.view(x.shape[:-1] + torch.Size((2, x.shape[-1] // 2)))
    x1, x2 = x.unbind(dim=-2)
    return torch.cat((-x2, x1), dim=-1)


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def apply_rotary_pos_emb(
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    t: torch.Tensor,
    freqs: torch.Tensor,
    tensor_format: str = "sbhd",
    fused: bool = False,
    cu_seqlens: Union[torch.Tensor, None] = None,
) -> torch.Tensor:
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    """
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    Apply rotary positional embedding tensor to the input tensor.
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    Parameters
    ----------
    t: torch.Tensor
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        rotary positional embedding will be applied.
    freqs: torch.Tensor
        Rotary positional embedding tensor of shape `[s2, 1, 1, d2]` and dtype 'float',
        with `s2 >= s` and `d2 <= d`.
    fused: bool, default = False
        Whether to use a fused applying RoPE implementation.
    tensor_format: {'sbhd', 'bshd', 'thd'}, default = 'sbhd'
        is `bshd` if `t` is of shape `[bs, seq, ...]`, or `sbhd` if `t` is
        of shape `[seq, bs, ...]`. 'thd' is only supported when `fused` is True.
    cu_seqlens: torch.Tensor, default = None.
        Cumulative sum of sequence lengths in a batch for `t`, with shape [b + 1] and
        dtype torch.int32. Only valid when `tensor_format` is 'thd'.
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    """
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    if fused:
        assert (
            tensor_format != "thd" or cu_seqlens is not None
        ), "cu_seqlens must not be None when tensor_format is 'thd'."
        return FusedRoPEFunc.apply(t, freqs, tensor_format, cu_seqlens)

    assert tensor_format in ("sbhd", "bshd"), (
        "Only formats `sbhd` or `bshd` are supported for input tensor `t` "
        f"when fused is False, got {tensor_format}."
    )

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    max_seq_len = freqs.shape[0]
    cur_seq_len = t.shape[1] if tensor_format == "bshd" else t.shape[0]

    # Only apply the rotary embeddings up to the sequence length of the running
    # input.
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    assert cur_seq_len <= max_seq_len, (
        f"Rotary Embeddings only supported up to {max_seq_len} sequence length!"
    )
    freqs = freqs[:cur_seq_len]
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    if tensor_format == "bshd":
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        freqs = freqs.transpose(0, 1)  # [seq, 1, 1, dim] -> [1, seq, 1, dim]
    # cos/sin first then dtype conversion for better precision
    cos_ = torch.cos(freqs).to(t.dtype)
    sin_ = torch.sin(freqs).to(t.dtype)
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    rot_dim = freqs.shape[-1]
    # ideally t_pass is empty so rotary pos embedding is applied to all tensor t
    t, t_pass = t[..., :rot_dim], t[..., rot_dim:]

    # first part is cosine component
    # second part is sine component, need to change signs with _rotate_half method
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    t = (t * cos_) + (_rotate_half(t) * sin_)
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    return torch.cat((t, t_pass), dim=-1)


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class _SplitAlongDim(torch.autograd.Function):
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    """"""

    @staticmethod
    def forward(ctx,
                mixed_x_layer: torch.Tensor,
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                split_dim: int,
                split_size_or_sections: Union[int, List[int], Tuple[int]],
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    ) -> Tuple[torch.Tensor, ...]:
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        ctx.split_dim = split_dim
        ctx.split_size_or_sections = split_size_or_sections
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        if isinstance(mixed_x_layer, Float8Tensor):
            return tuple(Float8Tensor.make_like(
                mixed_x_layer,
                data=x,
                ) for x in torch.split(
                    mixed_x_layer._data,
                    split_size_or_sections=split_size_or_sections,
                    dim=split_dim))
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        return torch.split(mixed_x_layer, split_size_or_sections, dim = split_dim)
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    @staticmethod
    def backward(ctx,
                 *grad_outputs):
        assert len(grad_outputs) > 0, "No gradients received for backprop!"

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        if isinstance(ctx.split_size_or_sections, (list, tuple)):
            split_sizes = ctx.split_size_or_sections
            assert (len(grad_outputs) == len(split_sizes)
                ), "Unequal number of gradients vs split sections for backprop!"
        if isinstance(ctx.split_size_or_sections, int):
            split_sizes = [ctx.split_size_or_sections] * len(grad_outputs)
        dims = len(grad_outputs[0].shape)
        split_dim = (ctx.split_dim + dims) % dims

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        if isinstance(grad_outputs[0], Float8Tensor):
            noop_ok = True
            strides = grad_outputs[0].stride()
            data_ptr = grad_outputs[0]._data.untyped_storage().data_ptr()
            shape = list(grad_outputs[0].shape)
            for i, tensor in enumerate(grad_outputs):
                shape_i = shape
                shape_i[split_dim] = split_sizes[i]
                offset_size = sum(split_sizes[:i]) * np.prod(shape[split_dim+1:])
                if (tensor.stride() != strides or
                    list(tensor.shape) != shape_i or
                    tensor._data.untyped_storage().data_ptr() != data_ptr or
                    tensor.storage_offset() != offset_size):
                    noop_ok = False
                    break
            if noop_ok:
                ret = torch.Tensor().to(device=grad_outputs[0].device,
                                        dtype=grad_outputs[0]._data.dtype)
                new_shape = list(shape)
                new_shape[split_dim] = sum(split_sizes)
                ret.set_(grad_outputs[0]._data.untyped_storage(),
                         grad_outputs[0]._data.storage_offset(),
                         new_shape,
                         strides
                )
                return Float8Tensor.make_like(grad_outputs[0], data=ret), None, None

            grad_outputs_data = [x._data for x in grad_outputs]
            return Float8Tensor.make_like(
                grad_outputs[0],
                data=torch.cat(grad_outputs_data, dim = split_dim)), None, None
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        noop_ok = True
        strides = grad_outputs[0].stride()
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        data_ptr = grad_outputs[0].untyped_storage().data_ptr()
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        shape = list(grad_outputs[0].shape)
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        for i, tensor in enumerate(grad_outputs):
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            shape_i = shape
            shape_i[split_dim] = split_sizes[i]
            offset_size = sum(split_sizes[:i]) * np.prod(shape[split_dim+1:])
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            if (tensor.stride() != strides or
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                list(tensor.shape) != shape_i or
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                tensor.untyped_storage().data_ptr() != data_ptr or
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                tensor.storage_offset() != offset_size):
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                noop_ok = False
                break
        if noop_ok:
            ret = torch.Tensor().to(device=grad_outputs[0].device,
                                    dtype=grad_outputs[0].dtype)
            new_shape = list(shape)
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            new_shape[split_dim] = sum(split_sizes)
            ret.set_(grad_outputs[0].untyped_storage(),
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                     grad_outputs[0].storage_offset(),
                     new_shape,
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                     strides
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            )
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            return ret, None, None
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        return torch.cat(grad_outputs, dim = split_dim), None, None
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class UnfusedDotProductAttention(torch.nn.Module):
    """Parallel attention w/o QKV and Proj Gemms
    BMM1 -> softmax + dropout -> BMM2
    """

    def __init__(
        self,
        norm_factor: float,
        attention_dropout: float = 0.0,
        attention_dropout_ctx: Optional[Callable] = nullcontext,
        layer_number: Optional[int] = None,
    ) -> None:
        super().__init__()

        self.norm_factor = norm_factor
        self.attention_dropout_ctx = attention_dropout_ctx
        self.layer_number = layer_number

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        self.scale_mask_softmax = FusedScaleMaskSoftmax(attention_mask_func)
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        # Dropout. Note that for a single iteration, this layer will generate
        # different outputs on different number of parallel partitions but
        # on average it should not be partition dependent.
        self.attention_dropout = torch.nn.Dropout(attention_dropout)

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        # An FP16 training trick required for certain GPT-like models.
        self.apply_qk_layer_scaling = (
            bool(int(os.getenv("NVTE_APPLY_QK_LAYER_SCALING", "0"))) and layer_number is not None)

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    def forward(
        self,
        query_layer: torch.Tensor,
        key_layer: torch.Tensor,
        value_layer: torch.Tensor,
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        qkv_layout: str = "sbh3d",
        cu_seqlens_q: Optional[torch.Tensor] = None, # pylint: disable=unused-argument
        cu_seqlens_kv: Optional[torch.Tensor] = None, # pylint: disable=unused-argument
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        attn_mask_type: str = "causal",
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]] = None,
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        core_attention_bias_type: str = "no_bias",
        core_attention_bias: Optional[torch.Tensor] = None,
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        alibi_slopes: Optional[torch.Tensor] = None,
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    ) -> torch.Tensor:
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        """Unfused attention fprop"""
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        assert (qkv_layout in QKVLayouts
            ), f"UnfusedDotProductAttention does not support qkv_layout = {qkv_layout}!"
        qkv_format = ''.join([i for i in qkv_layout.split('_')[0] if i.isalpha()])
        assert (qkv_format != 'thd'
            ), """UnfusedDotProductAttention does not support variable sequence lengths!"""
        if qkv_format == 'bshd':
            # convert to sbhd and use sbhd implementation for now
            query_layer, key_layer, value_layer = [x.transpose(0, 1)
                for x in [query_layer, key_layer, value_layer]]
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        batch_size, seqlen = query_layer.shape[1], query_layer.shape[0]
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        apply_qk_layer_scaling = self.apply_qk_layer_scaling and key_layer.dtype == torch.float16
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        # [b, np, sq, sk]
        output_size = (
            query_layer.size(1),
            query_layer.size(2),
            query_layer.size(0),
            key_layer.size(0),
        )

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        if key_layer.shape[2] != query_layer.shape[2]:
            assert (query_layer.shape[2]%key_layer.shape[2]==0
                ),"The number of attention heads must be divisible by the number of GQA groups!"
            key_layer = key_layer.repeat_interleave(
                    int(query_layer.shape[2]/key_layer.shape[2]), dim = 2)
            value_layer = value_layer.repeat_interleave(
                    int(query_layer.shape[2]/value_layer.shape[2]), dim = 2)

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        # [sq, b, np, hn] -> [sq, b * np, hn]
        query_layer = query_layer.reshape(
            output_size[2], output_size[0] * output_size[1], -1
        )
        # [sk, b, np, hn] -> [sk, b * np, hn]
        key_layer = key_layer.reshape(output_size[3], output_size[0] * output_size[1], -1)

        # preallocting result tensor: [b * np, sq, sk]
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        # WAR to set dtype to FP32 as ONNX lacks BF16 support for ConstantOfShape operator
        is_bf16 = query_layer.dtype == torch.bfloat16
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        matmul_result = torch.empty(
            output_size[0] * output_size[1],
            output_size[2],
            output_size[3],
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            dtype=torch.float32 if is_in_onnx_export_mode() and is_bf16 else query_layer.dtype,
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            device=torch.cuda.current_device(),
        )

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        if is_in_onnx_export_mode() and is_bf16:
            matmul_result = matmul_result.bfloat16()

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        scale = self.norm_factor
        if apply_qk_layer_scaling:
            scale *= self.layer_number

        # Raw attention scores. [b * np, sq, sk]
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        if core_attention_bias_type == "no_bias":
            matmul_result = torch.baddbmm(
                matmul_result,
                query_layer.transpose(0, 1),  # [b * np, sq, hn]
                key_layer.transpose(0, 1).transpose(1, 2),  # [b * np, hn, sk]
                beta=0.0,
                alpha=(1.0 / scale),
            )

        elif core_attention_bias_type == "pre_scale_bias":
            assert core_attention_bias is not None, "core_attention_bias should not be None!"
            matmul_result = torch.bmm(
                query_layer.transpose(0, 1),  # [b * np, sq, hn]
                key_layer.transpose(0, 1).transpose(1, 2),  # [b * np, hn, sk]
            )
            matmul_result = (matmul_result.view(
                output_size[0], output_size[1], output_size[2], output_size[3])
                + core_attention_bias).view(-1, output_size[2], output_size[3])
            matmul_result /= scale

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        elif core_attention_bias_type in ["post_scale_bias", "alibi"]:
            if core_attention_bias_type == "post_scale_bias":
                assert core_attention_bias is not None, "core_attention_bias should not be None!"
            if core_attention_bias_type == "alibi":
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                _, core_attention_bias = get_alibi(
                    output_size[1], output_size[2], output_size[3], alibi_slopes=alibi_slopes)
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            matmul_result = torch.baddbmm(
                matmul_result,
                query_layer.transpose(0, 1),  # [b * np, sq, hn]
                key_layer.transpose(0, 1).transpose(1, 2),  # [b * np, hn, sk]
                beta=0.0,
                alpha=(1.0 / scale),
            )
            matmul_result = (matmul_result.view(
                output_size[0], output_size[1], output_size[2], output_size[3])
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                + core_attention_bias).view(-1, output_size[2], output_size[3]).to(
                dtype=query_layer.dtype)
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        # change view to [b, np, sq, sk]
        attention_scores = matmul_result.view(*output_size)

        # attention scores and attention mask [b, np, sq, sk]
        softmax_scale = self.layer_number if apply_qk_layer_scaling else None
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        attention_probs = self.scale_mask_softmax(
            attention_scores, attention_mask, attn_mask_type, softmax_scale)
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        # This is actually dropping out entire tokens to attend to, which might
        # seem a bit unusual, but is taken from the original Transformer paper.
        with self.attention_dropout_ctx():
            attention_probs = self.attention_dropout(attention_probs)

        # value_layer -> context layer.
        # [sk, b, np, hn] --> [b, np, sq, hn]
        output_size = (
            value_layer.size(1),
            value_layer.size(2),
            query_layer.size(0),
            value_layer.size(3),
        )

        # change view [sk, b * np, hn]
        value_layer = value_layer.reshape(
            value_layer.size(0), output_size[0] * output_size[1], -1
        )

        # change view [b * np, sq, sk]
        attention_probs = attention_probs.view(
            output_size[0] * output_size[1], output_size[2], -1
        )

        # matmul: [b * np, sq, hn]
        context_layer = torch.bmm(attention_probs, value_layer.transpose(0, 1))

        # change view [b, np, sq, hn]
        context_layer = context_layer.view(*output_size)

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        if qkv_format == 'sbhd':
            # [b, np, sq, hn] --> [sq, b, np, hn]
            context_layer = context_layer.permute(2, 0, 1, 3).contiguous()
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            # [sq, b, np, hn] --> [sq, b, hp]
            context_layer = context_layer.view(seqlen, batch_size, -1)

        if qkv_format == 'bshd':
            # [b, np, sq, hn] --> [b, sq, np, hn]
            context_layer = context_layer.permute(0, 2, 1, 3).contiguous()

            # [b, sq, np, hn] --> [b, sq, hp]
            context_layer = context_layer.view(batch_size, seqlen, -1)
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        return context_layer


class _PrepareQKVForFA(torch.autograd.Function):
    """This class converts QKV from interleaved (s, b, ...) layout
       to separate contiguous q, k, v tensors in (b, s, ...) layout."""

    @staticmethod
    def forward(ctx,
                query_layer: torch.Tensor,
                key_layer: torch.Tensor,
                value_layer: torch.Tensor
    ) -> torch.Tensor:
        # All inputs received are non-contiguous tensors.
        # The `query_layer` tensor is used to access the
        # full memory region of the QKV tensor.
        qkv = tex.fa_prepare_fwd(query_layer)
        q, k, v = split_tensor_along_dim(qkv, 0, 3)
        query_layer = torch.squeeze(q, 0)
        key_layer = torch.squeeze(k, 0)
        value_layer = torch.squeeze(v, 0)
        return query_layer, key_layer, value_layer

    @staticmethod
    def backward(ctx,
                 dq: torch.Tensor,
                 dk: torch.Tensor,
                 dv: torch.Tensor
    ) -> Tuple[Union[torch.Tensor, None], ...]:
        dqkv = tex.fa_prepare_bwd(dq, dk, dv)
        dq, dk, dv = split_tensor_along_dim(dqkv, -1, 3)
        return dq, dk, dv

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def _get_qkv_layout(
        q: torch.Tensor,
        k: torch.Tensor,
        v: torch.Tensor,
        qkv_format: str = 'sbhd',
    ) -> str:
    """Get qkv layout.
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    Parameters
    ----------
    q: torch.Tensor
        Query tensor.
    k: torch.Tensor
        Key tensor.
    v: torch.Tensor
        Value tensor.
    qkv_format: str, default = `sbhd`
        Dimension format for `q`, `k` and `v`, {`sbhd`, `bshd`, `thd`}. `s` stands for
        the sequence length dimension, `b` batch size, `h` the number of attention heads,
        `d` head size, and `t` the total number of sequences in a batch, i.e.
        `t = sum(s_i) for i = 0...b-1`.

    Returns
    ----------
    qkv_layout: str
       Memory layout of `q`, `k` and `v`. Each `qkv_format` can be mapped to one of five
       memory layouts. For example, `sb3hd` means `q`, `k`, `v` are created as one chunk
       of memory and that they are interleaved in the `2`nd dimension. `sbhd_sbh2d` means
       `q` and `kv` are created in two chunks and that `q` itself is contiguous and `k`, `v`
       are interleaved with each other in the `3`rd dimension, `k = kv[:,:,:,0,:]` and
       `v = kv[:,:,:,1,:]`.
       Mapping:
       `sbhd`: {`sb3hd`, `sbh3d`, `sbhd_sb2hd`, `sbhd_sbh2d`, `sbhd_sbhd_sbhd`}
       `bshd`: {`bs3hd`, `bsh3d`, `bshd_bs2hd`, `bshd_bsh2d`, `bshd_bshd_bshd`}
       `thd` : {`t3hd`, `th3d`, `thd_t2hd`, `thd_th2d`, `thd_thd_thd`}
    """
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    check_last_dim_contiguous = all(x.stride(-1) == 1 for x in [q, k, v])
    assert check_last_dim_contiguous, "q, k and v must have stride 1 in their last dimension!"
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    def run_iteratively(q, k, v):
        data_ptr = q.untyped_storage().data_ptr()
        check_ptrs_qkv = all(x.untyped_storage().data_ptr() == data_ptr for x in [q, k, v])
        data_ptr = k.untyped_storage().data_ptr()
        check_ptrs_kv = all(x.untyped_storage().data_ptr() == data_ptr for x in [k, v])

        stride = q.stride()
        check_strides_qkv = all(stride == x.stride() for x in [q, k, v])
        stride = k.stride()
        check_strides_kv = all(stride == x.stride() for x in [k, v])

        shape = q.shape
        check_shapes_qkv = all(shape == x.shape for x in [q, k, v])
        shape = k.shape
        check_shapes_kv = all(shape == x.shape for x in [k, v])

        last_dim_size = q.shape[-1]
        check_last_dim_offsets_qkv = all(i * last_dim_size == x.storage_offset()
                            for i, x in enumerate([q, k, v]))
        last_dim_size = k.shape[-1]
        check_last_dim_offsets_kv = all(i * last_dim_size == x.storage_offset()
                            for i, x in enumerate([k, v]))

        last_two_dims_size = q.shape[-1] * q.shape[-2]
        check_last_two_dims_offsets_qkv = all(i * last_two_dims_size == x.storage_offset()
                            for i, x in enumerate([q, k, v]))
        last_two_dims_size = k.shape[-1] * k.shape[-2]
        check_last_two_dims_offsets_kv = all(i * last_two_dims_size == x.storage_offset()
                            for i, x in enumerate([k, v]))

        if (check_ptrs_qkv and check_strides_qkv and check_shapes_qkv
            and check_last_two_dims_offsets_qkv
            and not check_last_dim_offsets_qkv):
            # sb3hd, bs3hd, t3hd
            qkv_layout = qkv_format[:-2] + '3' + qkv_format[-2:]
        elif (check_ptrs_qkv and check_strides_qkv and check_shapes_qkv
            and check_last_dim_offsets_qkv):
            # sbh3d, bsh3d, th3d
            qkv_layout = qkv_format[:-1] + '3' + qkv_format[-1:]
        elif (check_ptrs_kv and check_strides_kv and check_shapes_kv
            and check_last_two_dims_offsets_kv
            and not check_last_dim_offsets_kv):
            # sbhd_sb2hd, bshd_bs2hd, thd_t2hd
            qkv_layout = qkv_format + '_' + qkv_format[:-2] + '2' + qkv_format[-2:]
        elif (check_ptrs_kv and check_strides_kv and check_shapes_kv
            and check_last_dim_offsets_kv):
            # sbhd_sbh2d, bshd_bsh2d, thd_th2d
            qkv_layout = qkv_format + '_' + qkv_format[:-1] + '2' + qkv_format[-1:]
        elif check_strides_kv and check_shapes_kv:
            # sbhd_sbhd_sbhd, bshd_bshd_bshd, thd_thd_thd
            qkv_layout = '_'.join(list([qkv_format])*3)
        else:
            qkv_layout = 'not_supported'

        return qkv_layout

    qkv_layout = run_iteratively(q, k, v)
    if qkv_layout == 'not_supported':
        # force q,k,v to be contiguous and run get_layout again
        q, k, v = [x.contiguous() for x in [q, k, v]]
        qkv_layout = run_iteratively(q, k, v)
    if qkv_layout == 'not_supported':
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        raise Exception("The provided qkv memory layout is not supported!")

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    return qkv_layout, q, k, v
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def check_set_window_size(
        attn_mask_type: str,
        window_size: Tuple[int, int] = None,
    ):
    """Check if sliding window size is compliant with mask type and if not,
    assert or set it to the appropriate size
    """
    if "causal" in attn_mask_type:
        if window_size is None:
            window_size = (-1, 0)
        else:
            assert (
                window_size[1] == 0
            ), "window_size[1] should be 0 when self_attn_mask_type includes 'causal'!"
    else:
        if window_size is None:
            window_size = (-1, -1)
    return window_size
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class FlashAttention(torch.nn.Module):
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    """Dot product attention, using HazyResearch flash-attn package:
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    https://github.com/Dao-AILab/flash-attention
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    """

    def __init__(
        self,
        norm_factor: float,
        attention_dropout: float = 0.0,
        attention_dropout_ctx: Optional[Callable] = nullcontext,
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        attention_type: str = "self",
        layer_number: Optional[int] = None,
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        deterministic: bool = False,
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    ) -> None:
        super().__init__()

        assert (
            _flash_attn_version >= _flash_attn_version_required
        ), f"FlashAttention minimum version {_flash_attn_version_required} is required."

        self.norm_factor = norm_factor
        self.attention_dropout_ctx = attention_dropout_ctx
        self.attention_dropout = attention_dropout
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        self.attention_type = attention_type
        self.layer_number = 1 if layer_number is None else layer_number
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        self.deterministic = deterministic
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    def forward(
        self,
        query_layer: torch.Tensor,
        key_layer: torch.Tensor,
        value_layer: torch.Tensor,
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]] = None,
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        qkv_layout: str = "sbh3d",
        cu_seqlens_q: Optional[torch.Tensor] = None,
        cu_seqlens_kv: Optional[torch.Tensor] = None,
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        max_seqlen_q: Optional[int] = None,
        max_seqlen_kv: Optional[int] = None,
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        attn_mask_type: str = "causal",
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        window_size: Optional[Tuple[int, int]] = None,
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        alibi_slopes: Optional[torch.Tensor] = None,
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        cp_group: Optional[dist_group_type] = None,
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        cp_global_ranks: List[int] = None,
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        cp_stream: torch.cuda.Stream = None,
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    ) -> torch.Tensor:
        """flash-attn fprop"""

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        window_size = check_set_window_size(attn_mask_type, window_size)

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        assert (
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            query_layer.dtype in [torch.float16, torch.bfloat16]
            and key_layer.dtype in [torch.float16, torch.bfloat16]
            and value_layer.dtype in [torch.float16, torch.bfloat16]
1750
            ), "FlashAttention currently only supports FP16 and BF16."
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        assert (
            query_layer.is_cuda and key_layer.is_cuda and value_layer.is_cuda
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            ), "FlashAttention currently only supports CUDA tensors."
        assert (
            qkv_layout in QKVLayouts
            ), f"FlashAttention does not support qkv_layout = {qkv_layout}!"

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        context_parallel = (cp_group is not None) and (get_distributed_world_size(cp_group) != 1)

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        qkv_format = ''.join([i for i in qkv_layout.split('_')[0] if i.isalpha()])

        if qkv_format == 'sbhd':
            # For now just 128, will make it more general in the future
            if (query_layer.shape[-1] == 128 and
                query_layer.shape[0] * query_layer.shape[1] >= 512 and
                qkv_layout == "sbh3d"):
                query_layer, key_layer, value_layer = _PrepareQKVForFA.apply(query_layer,
                                                                             key_layer,
                                                                             value_layer)
            else:
                query_layer, key_layer, value_layer = [x.transpose(0,1).contiguous()
                    for x in (query_layer, key_layer, value_layer)]
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        elif qkv_format == 'bshd':
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            query_layer, key_layer, value_layer = [x.contiguous()
                for x in (query_layer, key_layer, value_layer)]

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        batch_size = query_layer.shape[0]
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        if qkv_format in ['sbhd', 'bshd']:
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            max_seqlen_q, max_seqlen_kv = query_layer.shape[1], key_layer.shape[1]
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            if not context_parallel:
                # [b * s, h, d]
                query_layer, key_layer, value_layer = [
                    x.view(x.shape[0] * x.shape[1], *x.shape[2:])
                    for x in [query_layer, key_layer, value_layer]
                ]

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            if 'padding' in attn_mask_type:
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                assert not context_parallel, "Padding mask not supported with context parallelism!"
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                if self.attention_type == "self":
                    assert (
                        max_seqlen_q == max_seqlen_kv
                    ), "Maximum sequence length for Q and KV should be the same."
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                    if cu_seqlens_q is None:
                        assert (attention_mask is not None
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                                ), "Please provide attention_mask for padding!"
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                        cu_seqlens_q, indices_q = get_cu_seqlens_and_indices(attention_mask)
                    else:
                        indices_q = get_indices(max_seqlen_q, cu_seqlens_q)
                    cu_seqlens_kv = cu_seqlens_q
                    query_layer, key_layer, value_layer = PackTensors.apply(
                        indices_q, query_layer, key_layer, value_layer
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                    )
                else:
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                    if cu_seqlens_q is None or cu_seqlens_kv is None:
                        assert (attention_mask is not None
                            ), "Please provide attention_mask for padding!"
                        cu_seqlens_q, indices_q = get_cu_seqlens_and_indices(
                            attention_mask[0])
                        cu_seqlens_kv, indices_kv = get_cu_seqlens_and_indices(
                            attention_mask[1])
                    else:
                        indices_q = get_indices(max_seqlen_q, cu_seqlens_q)
                        indices_kv = get_indices(max_seqlen_kv, cu_seqlens_kv)
                    query_layer = PackTensors.apply(indices_q, query_layer)
                    key_layer, value_layer = PackTensors.apply(
                        indices_kv, key_layer, value_layer
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                    )
            else:
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                # Cumulative sequence lengths for unpadded data
                if cu_seqlens_q is None:
                    cu_seqlens_q = _get_full_cu_seqlens(
                        batch_size,
                        max_seqlen_q,
                        query_layer.device,
                    )
                if cu_seqlens_kv is None:
                    cu_seqlens_kv = _get_full_cu_seqlens(
                        batch_size,
                        max_seqlen_kv,
                        key_layer.device,
                    )
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        elif qkv_format == 'thd':
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            assert not context_parallel, "thd format not supported with context parallelism!"
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            assert (cu_seqlens_q is not None and cu_seqlens_kv is not None
                ), "cu_seqlens_q and cu_seqlens_kv can not be None when qkv_format = thd!"
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            if max_seqlen_q is None:
                seqlens_q = cu_seqlens_q[1:] - cu_seqlens_q[:-1]
                max_seqlen_q = seqlens_q.max().item()
            if max_seqlen_kv is None:
                seqlens_kv = cu_seqlens_kv[1:] - cu_seqlens_kv[:-1]
                max_seqlen_kv = seqlens_kv.max().item()
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        if context_parallel:
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            assert (
                window_size in ((-1, -1), (-1, 0))
                ), "Sliding window attention is not supported with context parallelism."
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            assert (
                alibi_slopes is None
            ), "Alibi slope bias addition is not supported with context parallelism."
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            with self.attention_dropout_ctx():
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                output = attn_forward_func_with_cp(
                    self.training, query_layer, key_layer, value_layer,
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                    cu_seqlens_q, cu_seqlens_kv, max_seqlen_q, max_seqlen_kv,
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                    self.attention_dropout if self.training else 0.0,
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                    cp_group, cp_global_ranks, cp_stream,
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                    softmax_scale=1.0/self.norm_factor,
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                    attn_mask_type=attn_mask_type,
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                    deterministic=self.deterministic
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                )
        else:
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            from .cpu_offload import CPUOffloadEnabled
            if CPUOffloadEnabled:
                tensor_list = [query_layer, key_layer, value_layer, cu_seqlens_q, cu_seqlens_kv]
                for tensor in tensor_list:
                    if tensor is not None:
                        tensor.activation_offloading = True

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            with self.attention_dropout_ctx():
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                fa_optional_forward_kwargs = {}
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                if _flash_attn_2_3_plus:
                    fa_optional_forward_kwargs["window_size"] = window_size
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                if _flash_attn_2_4_plus:
                    fa_optional_forward_kwargs["alibi_slopes"] = alibi_slopes
                if _flash_attn_2_4_1_plus:
                    fa_optional_forward_kwargs["deterministic"] = self.deterministic
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                output = flash_attn_forward_func(
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                    query_layer, key_layer, value_layer,
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                    cu_seqlens_q, cu_seqlens_kv, max_seqlen_q, max_seqlen_kv,
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                    self.attention_dropout if self.training else 0.0,
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                    softmax_scale=1.0/self.norm_factor, causal="causal" in attn_mask_type,
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                    **fa_optional_forward_kwargs,
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                )
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        if 'padding' in attn_mask_type:
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            output = UnpackTensor.apply(indices_q, batch_size * max_seqlen_q, output)
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        if qkv_format == 'sbhd':
            # (bs)hd -> bs(hd) -> sb(hd)
            output = output.view(batch_size, max_seqlen_q, -1).transpose(0, 1).contiguous()
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        elif qkv_format == 'bshd':
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            # (bs)hd -> bs(hd)
            output = output.view(batch_size, max_seqlen_q, -1).contiguous()
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        elif qkv_format == 'thd':
            # thd -> t(hd)
            output = output.view(output.shape[0], -1).contiguous()
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        return output
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def _combine_tensors(
        tensors: List[torch.Tensor],
        dim: int,
    ) -> torch.Tensor:
    """Combine tensors along a particular dimension"""

    num_tensors = len(tensors)
    new_shape = list(tensors[0].shape)
    new_shape.insert(dim, num_tensors)
    new_stride = list(tensors[0].stride())
    new_stride.insert(dim, int(new_stride[dim-1]/num_tensors))
    if isinstance(tensors[0], Float8Tensor):
        combined_tensor = torch.Tensor().to(
            device=tensors[0].device, dtype=tensors[0]._data.dtype)
        combined_tensor.set_(
            tensors[0]._data.untyped_storage(),
            tensors[0]._data.storage_offset(),
            new_shape, new_stride)
        combined_tensor = Float8Tensor.make_like(
            tensors[0], data=combined_tensor)
    else:
        combined_tensor = torch.Tensor().to(
            device=tensors[0].device, dtype=tensors[0].dtype)
        combined_tensor.set_(
            tensors[0].untyped_storage(),
            tensors[0].storage_offset(),
            new_shape, new_stride)

    return combined_tensor
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class FusedAttnFunc_qkvpacked(torch.autograd.Function):
    """Function for FusedAttention with packed QKV input"""

    @staticmethod
    def forward(ctx, is_training, max_seqlen, cu_seqlens, qkv, qkv_dtype, attn_bias, attn_scale,
                dropout_p, fast_zero_fill, qkv_layout, attn_bias_type, attn_mask_type,
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                rng_gen, fused_attention_backend, use_FAv2_bwd,
                fp8, fp8_meta, tp_size, tp_group):
        if fp8:
            if _NVTE_DEBUG:
                print('[DotProductAttention]: using FP8 forward')
            if fp8_meta["recipe"].fp8_mha:
                assert (isinstance(qkv, Float8Tensor)), "qkv must be Float8Tensors for FP8 MHA."
                fp8_meta["scaling_fwd"].scale_inv[META_QKV] = qkv._scale_inv
            fused_attention_backend = FusedAttnBackend["FP8"]
            fp8_dtype_forward = get_fp8_te_dtype(fp8_meta["recipe"], fprop_tensor=True)
            # 1: qkv packed, 2: kv packed, 3: qkv separate
            qkv_group = len(qkv_layout.split('_'))
            assert (qkv_group == 1
                ), f"qkv layout should conform to 3hd or h3d, e.g. sb3hd, \
                but found {qkv_layout}."
            if fp8_meta["recipe"].fp8_mha:
                qkv_fp8 = qkv._data
            else:
                qkv_c = qkv.view(-1, qkv.shape[-3] * qkv.shape[-2] * qkv.shape[-1])
                qkv_fp8 = cast_to_fp8(qkv_c,
                    fp8_meta["scaling_fwd"],
                    META_QKV, fp8_dtype_forward).view(qkv.shape)
            out_fp8, aux_ctx_tensors = fused_attn_fwd_qkvpacked(
                is_training, max_seqlen, cu_seqlens,
                qkv_fp8, fp8_dtype_forward, fused_attention_backend, attn_bias,
                fp8_meta["scaling_fwd"].scale_inv[META_QKV],
                fp8_meta["scaling_fwd"].scale_inv[META_S],
                fp8_meta["scaling_fwd"].scale[META_S],
                fp8_meta["scaling_fwd"].scale[META_O],
                fp8_meta["scaling_fwd"].amax_history[0][META_S],
                fp8_meta["scaling_fwd"].amax_history[0][META_O],
                attn_scale, dropout_p, fast_zero_fill, qkv_layout,
                attn_bias_type, attn_mask_type, rng_gen)
            if fp8_meta["recipe"].fp8_mha:
                out_ret = Float8Tensor(data=out_fp8,
                    fp8_meta=fp8_meta,
                    fp8_meta_forward=True,
                    fp8_meta_index=META_O,
                    fp8_dtype=fp8_dtype_forward,
                    dtype=qkv.dtype,
                )
            else:
                out_ret = cast_from_fp8(
                    out_fp8.view(-1, out_fp8.shape[-2] * out_fp8.shape[-1]),
                    fp8_meta["scaling_fwd"], META_O,
                    fp8_dtype_forward, qkv_dtype).view(out_fp8.shape)
            out_save = out_ret
            if fp8_meta["recipe"].fp8_mha and not int(os.getenv("NVTE_FP8_DPA_BWD", "1")):
                qkv_c = qkv.view(-1, qkv.shape[-3] * qkv.shape[-2] * qkv.shape[-1])
                qkv = cast_from_fp8(qkv_c._data,
                    fp8_meta["scaling_fwd"],
                    META_QKV, fp8_dtype_forward, TE_DType[qkv.dtype]).view(qkv.shape)
                out_save = cast_from_fp8(
                    out_fp8.view(-1, out_fp8.shape[-2] * out_fp8.shape[-1]),
                    fp8_meta["scaling_fwd"], META_O,
                    fp8_dtype_forward, qkv_dtype).view(out_fp8.shape)
            fp8_tensors = (qkv_fp8, out_fp8,
                fp8_meta["scaling_fwd"].scale.clone(),
                fp8_meta["scaling_fwd"].scale_inv.clone())
        else:
            if _NVTE_DEBUG:
                print('[DotProductAttention]: using non-FP8 forward')
            out_ret, aux_ctx_tensors = fused_attn_fwd_qkvpacked(
                is_training, max_seqlen, cu_seqlens, qkv, qkv_dtype,
                fused_attention_backend, attn_bias,
                None, None, None, None, None, None,
                attn_scale, dropout_p, fast_zero_fill, qkv_layout, attn_bias_type, attn_mask_type,
                rng_gen)
            fp8_tensors = (None, None, None, None)
            out_save = out_ret

        ctx.fp8 = fp8 and int(os.getenv("NVTE_FP8_DPA_BWD", "1"))
        qkvo_tensors = (qkv, out_save) if not ctx.fp8 else (None, None)
        ctx.save_for_backward(*qkvo_tensors, cu_seqlens, *fp8_tensors)
        ctx.fp8_meta = fp8_meta
        ctx.tp_size = tp_size
        ctx.tp_group = tp_group
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        ctx.aux_ctx_tensors = aux_ctx_tensors
        ctx.max_seqlen = max_seqlen
        ctx.qkv_dtype = qkv_dtype
        ctx.attn_scale = attn_scale
        ctx.dropout_p = dropout_p
        ctx.fast_zero_fill = fast_zero_fill
        ctx.qkv_layout = qkv_layout
        ctx.attn_bias_type = attn_bias_type
        ctx.attn_mask_type = attn_mask_type
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        ctx.fused_attention_backend = \
            fused_attention_backend if ctx.fp8 else FusedAttnBackend["F16_arbitrary_seqlen"]
2026
        ctx.use_FAv2_bwd = use_FAv2_bwd
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        return out_ret
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    @staticmethod
    def backward(ctx, d_out):
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        if ctx.fp8_meta["recipe"].fp8_mha:
            assert (isinstance(d_out, Float8Tensor)
                ), "Gradient of the DPA output must be in Float8Tensor type for FP8 MHA."
            d_out_f8tensor = d_out
            d_out = d_out._data

2038
        d_out = d_out.contiguous()
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        (qkv, out, cu_seqlens,
            qkv_fp8, out_fp8, fwd_scales, fwd_scale_invs) = ctx.saved_tensors
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        if not ctx.aux_ctx_tensors[0].is_contiguous():
            ctx.aux_ctx_tensors[0] = ctx.aux_ctx_tensors[0].contiguous()
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        if ctx.use_FAv2_bwd:
            softmax_lse, rng_state = ctx.aux_ctx_tensors
            dqkv = torch.empty_like(qkv)
            maybe_contiguous = lambda x: x.contiguous() if x.stride(-1) != 1 else x
            d_out, q, k, v, out = [maybe_contiguous(x)
                for x in (d_out, qkv[:,0], qkv[:,1], qkv[:,2], out)]
            flash_attn_cuda_bwd(
                d_out, q, k, v, out, softmax_lse, dqkv[:,0], dqkv[:,1], dqkv[:,2],
                cu_seqlens, cu_seqlens, ctx.max_seqlen, ctx.max_seqlen,
                ctx.dropout_p, ctx.attn_scale, False,
2053
                "causal" in ctx.attn_mask_type, None, rng_state
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            )
            dqkv = dqkv[..., :d_out.shape[-1]]
        else:
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            with torch.cuda.nvtx.range("_FusedAttn_qkvpacked"):
                if ctx.fp8:
                    if _NVTE_DEBUG:
                        print('[DotProductAttention]: using FP8 backward')
                    fp8_dtype_forward = get_fp8_te_dtype(
                        ctx.fp8_meta["recipe"], fprop_tensor=True)
                    fp8_dtype_backward = get_fp8_te_dtype(
                        ctx.fp8_meta["recipe"], fprop_tensor=False)
                    if ctx.fp8_meta["recipe"].fp8_mha:
                        d_out_fp8 = d_out
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DO] = d_out_f8tensor._scale_inv
                    else:
                        d_out_fp8 = cast_to_fp8(
                            d_out.view(-1, d_out.shape[-2] * d_out.shape[-1]),
                            ctx.fp8_meta["scaling_bwd"], META_DO, fp8_dtype_backward
                            ).view(d_out.shape)
                    dqkv_fp8, *rest = fused_attn_bwd_qkvpacked(
                        ctx.max_seqlen, cu_seqlens,
                        qkv_fp8, out_fp8, d_out_fp8,
                        fp8_dtype_forward, fp8_dtype_backward, ctx.aux_ctx_tensors,
                        ctx.fused_attention_backend,
                        fwd_scale_invs[META_QKV], # d_scale_qkv,
                        fwd_scale_invs[META_S], # d_scale_s,
                        fwd_scale_invs[META_O], # d_scale_o,
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DO], # d_scale_do
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DP], # d_scale_dp
                        fwd_scales[META_S], # q_scale_s
                        ctx.fp8_meta['scaling_bwd'].scale[META_DP], # q_scale_dp
                        ctx.fp8_meta['scaling_bwd'].scale[META_DQKV], # q_scale_dqkv
                        ctx.fp8_meta['scaling_bwd'].amax_history[0][META_DP], # amax_dp
                        ctx.fp8_meta['scaling_bwd'].amax_history[0][META_DQKV], # amax_dqkv
                        ctx.attn_scale, ctx.dropout_p, ctx.fast_zero_fill,
                        ctx.qkv_layout, ctx.attn_bias_type, ctx.attn_mask_type)
                    if ctx.fp8_meta["recipe"].fp8_mha:
                        dqkv = Float8Tensor(data=dqkv_fp8,
                            fp8_meta=ctx.fp8_meta,
                            fp8_meta_forward=False,
                            fp8_meta_index=META_DQKV,
                            fp8_dtype=fp8_dtype_backward,
                            dtype=d_out_f8tensor.dtype,
                            )
                    else:
                        dqkv_c_fp8 = dqkv_fp8.view(-1,
                            dqkv_fp8.shape[-3] * dqkv_fp8.shape[-2] * dqkv_fp8.shape[-1])
                        dqkv = cast_from_fp8(dqkv_c_fp8,
                            ctx.fp8_meta["scaling_bwd"], META_DQKV,
                            fp8_dtype_backward, ctx.qkv_dtype).view(dqkv_fp8.shape)
                else:
                    if _NVTE_DEBUG:
                        print('[DotProductAttention]: using non-FP8 backward')
                    if d_out.dtype == torch.uint8:
                        d_out = d_out_f8tensor.from_float8(qkv.dtype)
                    dqkv, *rest = fused_attn_bwd_qkvpacked(
                        ctx.max_seqlen, cu_seqlens, qkv, out, d_out,
                        ctx.qkv_dtype, ctx.qkv_dtype, ctx.aux_ctx_tensors,
                        ctx.fused_attention_backend,
                        None, None, None, None, None, None, None, None, None, None,
                        ctx.attn_scale, ctx.dropout_p, ctx.fast_zero_fill,
                        ctx.qkv_layout, ctx.attn_bias_type, ctx.attn_mask_type)
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        # if no_bias or alibi, return dqkv
        if ctx.attn_bias_type in ["no_bias", "alibi"]:
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            return (None, None, None, dqkv, None, None, None,
                    None, None, None, None, None, None,
                    None, None, None, None, None, None)
        # else, return (dqkv, dbias)
        return (None, None, None, dqkv, None, rest[0], None,
                None, None, None, None, None, None,
                None, None, None, None, None, None)

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class FusedAttnFunc_kvpacked(torch.autograd.Function):
    """Function for FusedAttention with packed KV input"""

    @staticmethod
    def forward(ctx, is_training, max_seqlen_q, max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                q, kv, qkv_dtype, attn_bias, attn_scale, dropout_p, fast_zero_fill,
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                qkv_layout, attn_bias_type, attn_mask_type, rng_gen, fused_attention_backend,
                use_FAv2_bwd, fp8, fp8_meta, tp_size, tp_group):
        if fp8:
            if _NVTE_DEBUG:
                print('[DotProductAttention]: using FP8 forward')
            if fp8_meta["recipe"].fp8_mha:
                assert (isinstance(q, Float8Tensor)
                    and isinstance(kv, Float8Tensor)), "q/kv must be Float8Tensors for FP8 MHA."
                fp8_meta["scaling_fwd"].scale_inv[META_QKV] = q._scale_inv
            fused_attention_backend = FusedAttnBackend["FP8"]
            fp8_dtype_forward = get_fp8_te_dtype(fp8_meta["recipe"], fprop_tensor=True)
            if fp8_meta["recipe"].fp8_mha:
                q_fp8, kv_fp8 = q._data, kv._data
            else:
                # 1: qkv packed, 2: kv packed, 3: qkv separate
                qkv_group = len(qkv_layout.split('_'))
                assert (qkv_group == 2
                    ), f"qkv layout should conform to hd_2hd or hd_h2d, e.g. sbhd_sb2hd, \
                    but found {qkv_layout}."
                q_fp8 = cast_to_fp8(q,
                    fp8_meta["scaling_fwd"],
                    META_QKV, fp8_dtype_forward).view(q.shape)
                kv_c = kv.view(-1, kv.shape[-3] * kv.shape[-2] * kv.shape[-1])
                kv_fp8 = cast_to_fp8(kv_c,
                    fp8_meta["scaling_fwd"],
                    META_QKV, fp8_dtype_forward).view(kv.shape)
            out_fp8, aux_ctx_tensors = fused_attn_fwd_kvpacked(
                is_training, max_seqlen_q, max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                q_fp8, kv_fp8, fp8_dtype_forward, fused_attention_backend, attn_bias,
                fp8_meta["scaling_fwd"].scale_inv[META_QKV],
                fp8_meta["scaling_fwd"].scale_inv[META_S],
                fp8_meta["scaling_fwd"].scale[META_S],
                fp8_meta["scaling_fwd"].scale[META_O],
                fp8_meta["scaling_fwd"].amax_history[0][META_S],
                fp8_meta["scaling_fwd"].amax_history[0][META_O],
                attn_scale, dropout_p, fast_zero_fill, qkv_layout,
                attn_bias_type, attn_mask_type, rng_gen)
            if fp8_meta["recipe"].fp8_mha:
                out_ret = Float8Tensor(data=out_fp8,
                    fp8_meta=fp8_meta,
                    fp8_meta_forward=True,
                    fp8_meta_index=META_O,
                    fp8_dtype=fp8_dtype_forward,
                    dtype=q.dtype,
                )
            else:
                out_ret = cast_from_fp8(
                    out_fp8.view(-1, out_fp8.shape[-2] * out_fp8.shape[-1]),
                    fp8_meta["scaling_fwd"], META_O,
                    fp8_dtype_forward, qkv_dtype).view(out_fp8.shape)
            out_save = out_ret
            if fp8_meta["recipe"].fp8_mha and not int(os.getenv("NVTE_FP8_DPA_BWD", "1")):
                q = cast_from_fp8(q._data,
                    fp8_meta["scaling_fwd"],
                    META_QKV, fp8_dtype_forward, TE_DType[q.dtype]).view(q.shape)
                kv_c = kv.view(-1, kv.shape[-3] * kv.shape[-2] * kv.shape[-1])
                kv = cast_from_fp8(kv_c._data,
                    fp8_meta["scaling_fwd"],
                    META_QKV, fp8_dtype_forward, TE_DType[kv.dtype]).view(kv.shape)
                out_save = cast_from_fp8(
                    out_fp8.view(-1, out_fp8.shape[-2] * out_fp8.shape[-1]),
                    fp8_meta["scaling_fwd"], META_O,
                    fp8_dtype_forward, qkv_dtype).view(out_fp8.shape)
            fp8_tensors = (q_fp8, kv_fp8, out_fp8,
                fp8_meta["scaling_fwd"].scale.clone(),
                fp8_meta["scaling_fwd"].scale_inv.clone())
        else:
            if _NVTE_DEBUG:
                print('[DotProductAttention]: using non-FP8 forward')
            out_ret, aux_ctx_tensors = fused_attn_fwd_kvpacked(
                is_training, max_seqlen_q, max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                q, kv, qkv_dtype, fused_attention_backend, attn_bias,
                None, None, None, None, None, None,
                attn_scale, dropout_p, fast_zero_fill, qkv_layout, attn_bias_type, attn_mask_type,
                rng_gen)
            out_save = out_ret
            fp8_tensors = (None, None, None, None, None)

        ctx.fp8 = fp8 and int(os.getenv("NVTE_FP8_DPA_BWD", "1"))
        qkvo_tensors = (q, kv, out_save) if not ctx.fp8 else (None, None, None)
        ctx.save_for_backward(*qkvo_tensors, cu_seqlens_q, cu_seqlens_kv, *fp8_tensors)
        ctx.fp8_meta = fp8_meta
        ctx.tp_size = tp_size
        ctx.tp_group = tp_group
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        ctx.aux_ctx_tensors = aux_ctx_tensors
        ctx.max_seqlen_q = max_seqlen_q
        ctx.max_seqlen_kv = max_seqlen_kv
        ctx.qkv_dtype = qkv_dtype
        ctx.attn_scale = attn_scale
        ctx.dropout_p = dropout_p
        ctx.fast_zero_fill = fast_zero_fill
        ctx.qkv_layout = qkv_layout
        ctx.attn_bias_type = attn_bias_type
        ctx.attn_mask_type = attn_mask_type
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        ctx.fused_attention_backend = \
            fused_attention_backend if ctx.fp8 else FusedAttnBackend["F16_arbitrary_seqlen"]
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        ctx.use_FAv2_bwd = use_FAv2_bwd
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        return out_ret
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    @staticmethod
    def backward(ctx, d_out):
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        if ctx.fp8_meta["recipe"].fp8_mha:
            assert (isinstance(d_out, Float8Tensor)
                ), "Gradient of the DPA output must be in Float8Tensor type for FP8 MHA."
            d_out_f8tensor = d_out
            d_out = d_out._data

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        d_out = d_out.contiguous()
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        (q, kv, out, cu_seqlens_q, cu_seqlens_kv,
            q_fp8, kv_fp8, out_fp8, fwd_scales, fwd_scale_invs) = ctx.saved_tensors
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        if not ctx.aux_ctx_tensors[0].is_contiguous():
            ctx.aux_ctx_tensors[0] = ctx.aux_ctx_tensors[0].contiguous()
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        if ctx.use_FAv2_bwd:
            softmax_lse, rng_state = ctx.aux_ctx_tensors
            dq = torch.empty_like(q)
            dkv = torch.empty_like(kv)
            maybe_contiguous = lambda x: x.contiguous() if x.stride(-1) != 1 else x
            d_out, q, k, v, out = [maybe_contiguous(x)
                for x in (d_out, q, kv[:,0], kv[:,1], out)]
            flash_attn_cuda_bwd(
                d_out, q, k, v, out, softmax_lse, dq, dkv[:,0], dkv[:,1],
                cu_seqlens_q, cu_seqlens_kv, ctx.max_seqlen_q, ctx.max_seqlen_kv,
                ctx.dropout_p, ctx.attn_scale, False,
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                "causal" in ctx.attn_mask_type, None, rng_state
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            )
            dq = dq[..., :d_out.shape[-1]]
            dkv = dkv[..., :d_out.shape[-1]]
        else:
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            with torch.cuda.nvtx.range("_FusedAttn_kvpacked"):
                if ctx.fp8:
                    if _NVTE_DEBUG:
                        print('[DotProductAttention]: using FP8 backward')
                    fp8_dtype_forward = get_fp8_te_dtype(
                        ctx.fp8_meta["recipe"], fprop_tensor=True)
                    fp8_dtype_backward = get_fp8_te_dtype(
                        ctx.fp8_meta["recipe"], fprop_tensor=False)
                    if ctx.fp8_meta["recipe"].fp8_mha:
                        d_out_fp8 = d_out
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DO] = d_out_f8tensor._scale_inv
                    else:
                        d_out_fp8 = cast_to_fp8(
                            d_out.view(-1, d_out.shape[-2] * d_out.shape[-1]),
                            ctx.fp8_meta["scaling_bwd"], META_DO, fp8_dtype_backward
                            ).view(d_out.shape)
                    dq_fp8, dkv_fp8, *rest = fused_attn_bwd_kvpacked(
                        ctx.max_seqlen_q, ctx.max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                        q_fp8, kv_fp8, out_fp8, d_out_fp8,
                        fp8_dtype_forward, fp8_dtype_backward, ctx.aux_ctx_tensors,
                        ctx.fused_attention_backend,
                        fwd_scale_invs[META_QKV], # d_scale_qkv,
                        fwd_scale_invs[META_S], # d_scale_s,
                        fwd_scale_invs[META_O], # d_scale_o,
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DO], # d_scale_do
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DP], # d_scale_dp
                        fwd_scales[META_S], # q_scale_s
                        ctx.fp8_meta['scaling_bwd'].scale[META_DP], # q_scale_dp
                        ctx.fp8_meta['scaling_bwd'].scale[META_DQKV], # q_scale_dqkv
                        ctx.fp8_meta['scaling_bwd'].amax_history[0][META_DP], # amax_dp
                        ctx.fp8_meta['scaling_bwd'].amax_history[0][META_DQKV], # amax_dqkv
                        ctx.attn_scale, ctx.dropout_p, ctx.fast_zero_fill,
                        ctx.qkv_layout, ctx.attn_bias_type, ctx.attn_mask_type)
                    if ctx.fp8_meta["recipe"].fp8_mha:
                        dq = Float8Tensor(data=dq_fp8,
                            fp8_meta=ctx.fp8_meta,
                            fp8_meta_forward=False,
                            fp8_meta_index=META_DQKV,
                            fp8_dtype=fp8_dtype_backward,
                            dtype=d_out_f8tensor.dtype,
                            )
                        dkv = Float8Tensor(data=dkv_fp8,
                            fp8_meta=ctx.fp8_meta,
                            fp8_meta_forward=False,
                            fp8_meta_index=META_DQKV,
                            fp8_dtype=fp8_dtype_backward,
                            dtype=d_out_f8tensor.dtype,
                            )
                    else:
                        dq = cast_from_fp8(
                            dq_fp8.view(-1, dq_fp8.shape[-2] * dq_fp8.shape[-1]),
                            ctx.fp8_meta["scaling_bwd"], META_DQKV,
                            fp8_dtype_backward, ctx.qkv_dtype).view(dq_fp8.shape)
                        dkv_c_fp8 = dkv_fp8.view(-1,
                            dkv_fp8.shape[-3] * dkv_fp8.shape[-2] * dkv_fp8.shape[-1])
                        dkv = cast_from_fp8(dkv_c_fp8,
                            ctx.fp8_meta["scaling_bwd"], META_DQKV,
                            fp8_dtype_backward, ctx.qkv_dtype).view(dkv_fp8.shape)
                else:
                    if _NVTE_DEBUG:
                        print('[DotProductAttention]: using non-FP8 backward')
                    if d_out.dtype == torch.uint8:
                        d_out = d_out_f8tensor.from_float8(q.dtype)
                    dq, dkv, *rest = fused_attn_bwd_kvpacked(
                        ctx.max_seqlen_q, ctx.max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                        q, kv, out, d_out,
                        ctx.qkv_dtype, ctx.qkv_dtype, ctx.aux_ctx_tensors,
                        ctx.fused_attention_backend,
                        None, None, None, None, None, None, None, None, None, None,
                        ctx.attn_scale, ctx.dropout_p, ctx.fast_zero_fill,
                        ctx.qkv_layout, ctx.attn_bias_type, ctx.attn_mask_type)
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        # if no_bias or alibi, return dqkv
        if ctx.attn_bias_type in ["no_bias", "alibi"]:
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            return (None, None, None, None, None, dq, dkv, None, None, None,
                    None, None, None, None, None, None,
                    None, None, None, None, None, None)
        # else, return (dqkv, dbias)
        return (None, None, None, None, None, dq, dkv, None, rest[0], None,
                None, None, None, None, None, None,
                None, None, None, None, None, None)

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class FusedAttnFunc(torch.autograd.Function):
    """Function for FusedAttention with separate Q, K, V tensors"""

    @staticmethod
    def forward(ctx, is_training, max_seqlen_q, max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                q, k, v, qkv_dtype, attn_bias, attn_scale, dropout_p, fast_zero_fill,
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                qkv_layout, attn_bias_type, attn_mask_type, rng_gen, fused_attention_backend,
                use_FAv2_bwd, fp8, fp8_meta, tp_size, tp_group):
        if fp8:
            if _NVTE_DEBUG:
                print('[DotProductAttention]: using FP8 forward')
            fused_attention_backend = FusedAttnBackend["FP8"]
            fp8_dtype_forward = get_fp8_te_dtype(fp8_meta["recipe"], fprop_tensor=True)
            if fp8_meta["recipe"].fp8_mha:
                assert (isinstance(q, Float8Tensor)
                    and isinstance(k, Float8Tensor)
                    and isinstance(v, Float8Tensor)), "q/k/v must be Float8Tensors for FP8 MHA."
                fp8_meta["scaling_fwd"].scale_inv[META_QKV] = q._scale_inv
                q_fp8, k_fp8, v_fp8 = q._data, k._data, v._data
            else:
                # 1: qkv packed, 2: kv packed, 3: qkv separate
                qkv_group = len(qkv_layout.split('_'))
                if qkv_group == 1:
                    dim = qkv_layout.find('3')
                    qkv = _combine_tensors([q,k,v], dim)
                    qkv_c = qkv.view(-1, qkv.shape[-3] * qkv.shape[-2] * qkv.shape[-1])
                    qkv_fp8 = cast_to_fp8(qkv_c,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward).view(qkv.shape)
                    q_fp8, k_fp8, v_fp8 = _SplitAlongDim.apply(qkv_fp8, dim, [1,1,1])
                    q_fp8, k_fp8, v_fp8 = [x.squeeze(dim) for x in [q_fp8, k_fp8, v_fp8]]
                if qkv_group == 2:
                    q_fp8 = cast_to_fp8(q,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward).view(q.shape)
                    dim = qkv_layout.split('_')[1].find('2')
                    kv = _combine_tensors([k,v], dim)
                    kv_c = kv.view(-1, kv.shape[-3] * kv.shape[-2] * kv.shape[-1])
                    kv_fp8 = cast_to_fp8(kv_c,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward).view(kv.shape)
                    k_fp8, v_fp8 = _SplitAlongDim.apply(kv_fp8, dim, [1,1])
                    k_fp8, v_fp8 = [x.squeeze(dim) for x in [k_fp8, v_fp8]]
                if qkv_group == 3:
                    q_fp8 = cast_to_fp8(q,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward).view(q.shape)
                    k_fp8 = cast_to_fp8(k,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward).view(k.shape)
                    v_fp8 = cast_to_fp8(v,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward).view(v.shape)
            out_fp8, aux_ctx_tensors = fused_attn_fwd(
                is_training, max_seqlen_q, max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                q_fp8, k_fp8, v_fp8, fp8_dtype_forward, fused_attention_backend, attn_bias,
                fp8_meta["scaling_fwd"].scale_inv[META_QKV],
                fp8_meta["scaling_fwd"].scale_inv[META_S],
                fp8_meta["scaling_fwd"].scale[META_S],
                fp8_meta["scaling_fwd"].scale[META_O],
                fp8_meta["scaling_fwd"].amax_history[0][META_S],
                fp8_meta["scaling_fwd"].amax_history[0][META_O],
                attn_scale, dropout_p, fast_zero_fill, qkv_layout,
                attn_bias_type, attn_mask_type, rng_gen)
            if fp8_meta["recipe"].fp8_mha:
                out_ret = Float8Tensor(data=out_fp8,
                    fp8_meta=fp8_meta,
                    fp8_meta_forward=True,
                    fp8_meta_index=META_O,
                    fp8_dtype=fp8_dtype_forward,
                    dtype=q.dtype,
                )
            else:
                out_ret = cast_from_fp8(
                    out_fp8.view(-1, out_fp8.shape[-2] * out_fp8.shape[-1]),
                    fp8_meta["scaling_fwd"], META_O,
                    fp8_dtype_forward, qkv_dtype).view(out_fp8.shape)
            out_save = out_ret

            if fp8_meta["recipe"].fp8_mha and not int(os.getenv("NVTE_FP8_DPA_BWD", "1")):
                # 1: qkv packed, 2: kv packed, 3: qkv separate
                qkv_group = len(qkv_layout.split('_'))
                if qkv_group == 1:
                    dim = qkv_layout.find('3')
                    qkv = _combine_tensors([q,k,v], dim)
                    qkv_c = qkv.view(-1, qkv.shape[-3] * qkv.shape[-2] * qkv.shape[-1])
                    qkv_no_fp8 = cast_from_fp8(qkv_c._data,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward, TE_DType[qkv.dtype]).view(qkv.shape)
                    q, k, v = _SplitAlongDim.apply(qkv_no_fp8, dim, [1,1,1])
                    q, k, v = [x.squeeze(dim) for x in [q, k, v]]
                if qkv_group == 2:
                    q = cast_from_fp8(q._data,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward, TE_DType[q.dtype]).view(q.shape)
                    dim = qkv_layout.split('_')[1].find('2')
                    kv = _combine_tensors([k,v], dim)
                    kv_c = kv.view(-1, kv.shape[-3] * kv.shape[-2] * kv.shape[-1])
                    kv_no_fp8 = cast_from_fp8(kv_c._data,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward, TE_DType[kv.dtype]).view(kv.shape)
                    k, v = _SplitAlongDim.apply(kv_no_fp8, dim, [1,1])
                    k, v = [x.squeeze(dim) for x in [k, v]]
                if qkv_group == 3:
                    q = cast_from_fp8(q._data,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward, TE_DType[q.dtype]).view(q.shape)
                    k = cast_from_fp8(k._data,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward, TE_DType[k.dtype]).view(k.shape)
                    v = cast_from_fp8(v._data,
                        fp8_meta["scaling_fwd"],
                        META_QKV, fp8_dtype_forward, TE_DType[v.dtype]).view(v.shape)
                out_save = cast_from_fp8(
                    out_fp8.view(-1, out_fp8.shape[-2] * out_fp8.shape[-1]),
                    fp8_meta["scaling_fwd"], META_O,
                    fp8_dtype_forward, qkv_dtype).view(out_fp8.shape)

            fp8_tensors = (q_fp8, k_fp8, v_fp8, out_fp8,
                fp8_meta["scaling_fwd"].scale.clone(),
                fp8_meta["scaling_fwd"].scale_inv.clone())
        else:
            if _NVTE_DEBUG:
                print('[DotProductAttention]: using non-FP8 forward')
            out_ret, aux_ctx_tensors = fused_attn_fwd(
                is_training, max_seqlen_q, max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                q, k, v, qkv_dtype, fused_attention_backend, attn_bias,
                None, None, None, None, None, None,
                attn_scale, dropout_p, fast_zero_fill, qkv_layout, attn_bias_type, attn_mask_type,
                rng_gen)
            out_save = out_ret
            fp8_tensors = (None, None, None, None, None, None)
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        from .cpu_offload import CPUOffloadEnabled
        if CPUOffloadEnabled:
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            tensor_list = [q, k, v, out_save, cu_seqlens_q, cu_seqlens_kv]
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            qkv_layout = 'sbhd_sbhd_sbhd'
            for tensor in tensor_list:
                if tensor is not None:
                    tensor.activation_offloading = True

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        ctx.fp8 = fp8 and int(os.getenv("NVTE_FP8_DPA_BWD", "1"))
        qkvo_tensors = (q, k, v, out_save) if not ctx.fp8 else (None, None, None, None)
        ctx.save_for_backward(*qkvo_tensors, cu_seqlens_q, cu_seqlens_kv, *fp8_tensors)
        ctx.fp8_meta = fp8_meta
        ctx.tp_size = tp_size
        ctx.tp_group = tp_group
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        ctx.aux_ctx_tensors = aux_ctx_tensors
        ctx.max_seqlen_q = max_seqlen_q
        ctx.max_seqlen_kv = max_seqlen_kv
        ctx.qkv_dtype = qkv_dtype
        ctx.attn_scale = attn_scale
        ctx.dropout_p = dropout_p
        ctx.fast_zero_fill = fast_zero_fill
        ctx.qkv_layout = qkv_layout
        ctx.attn_bias_type = attn_bias_type
        ctx.attn_mask_type = attn_mask_type
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        ctx.fused_attention_backend = \
            fused_attention_backend if ctx.fp8 else FusedAttnBackend["F16_arbitrary_seqlen"]
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        ctx.use_FAv2_bwd = use_FAv2_bwd

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        return out_ret
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    @staticmethod
    def backward(ctx, d_out):
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        if ctx.fp8_meta["recipe"].fp8_mha:
            assert (isinstance(d_out, Float8Tensor)
                ), "Gradient of the DPA output must be in Float8Tensor type for FP8 MHA."
            d_out_f8tensor = d_out
            d_out = d_out._data

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        d_out = d_out.contiguous()
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        (q, k, v, out, cu_seqlens_q, cu_seqlens_kv,
            q_fp8, k_fp8, v_fp8, out_fp8, fwd_scales, fwd_scale_invs) = ctx.saved_tensors
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        if not ctx.aux_ctx_tensors[0].is_contiguous():
            ctx.aux_ctx_tensors[0] = ctx.aux_ctx_tensors[0].contiguous()
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        if ctx.use_FAv2_bwd:
            softmax_lse, rng_state = ctx.aux_ctx_tensors
            dq = torch.empty_like(q)
            dk = torch.empty_like(k)
            dv = torch.empty_like(v)
            maybe_contiguous = lambda x: x.contiguous() if x.stride(-1) != 1 else x
            d_out, q, k, v, out = [maybe_contiguous(x)
                for x in (d_out, q, k, v, out)]
            flash_attn_cuda_bwd(
                d_out, q, k, v, out, softmax_lse, dq, dk, dv,
                cu_seqlens_q, cu_seqlens_kv, ctx.max_seqlen_q, ctx.max_seqlen_kv,
                ctx.dropout_p, ctx.attn_scale, False,
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                "causal" in ctx.attn_mask_type, None, rng_state
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            )
            dq = dq[..., :d_out.shape[-1]]
            dk = dk[..., :d_out.shape[-1]]
            dv = dv[..., :d_out.shape[-1]]
        else:
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            with torch.cuda.nvtx.range("_FusedAttn"):
                if ctx.fp8:
                    if _NVTE_DEBUG:
                        print('[DotProductAttention]: using FP8 backward')
                    fp8_dtype_forward = get_fp8_te_dtype(ctx.fp8_meta["recipe"], fprop_tensor=True)
                    fp8_dtype_backward = get_fp8_te_dtype(
                        ctx.fp8_meta["recipe"], fprop_tensor=False)
                    if ctx.fp8_meta["recipe"].fp8_mha:
                        d_out_fp8 = d_out
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DO] = d_out_f8tensor._scale_inv
                    else:
                        d_out_fp8 = cast_to_fp8(
                            d_out.view(-1, d_out.shape[-2] * d_out.shape[-1]),
                            ctx.fp8_meta["scaling_bwd"], META_DO, fp8_dtype_backward
                            ).view(d_out.shape)
                    dq_fp8, dk_fp8, dv_fp8, *rest = fused_attn_bwd(
                        ctx.max_seqlen_q, ctx.max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                        q_fp8, k_fp8, v_fp8, out_fp8, d_out_fp8,
                        fp8_dtype_forward, fp8_dtype_backward, ctx.aux_ctx_tensors,
                        ctx.fused_attention_backend,
                        fwd_scale_invs[META_QKV], # d_scale_qkv,
                        fwd_scale_invs[META_S], # d_scale_s,
                        fwd_scale_invs[META_O], # d_scale_o,
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DO], # d_scale_do
                        ctx.fp8_meta['scaling_bwd'].scale_inv[META_DP], # d_scale_dp
                        fwd_scales[META_S], # q_scale_s
                        ctx.fp8_meta['scaling_bwd'].scale[META_DP], # q_scale_dp
                        ctx.fp8_meta['scaling_bwd'].scale[META_DQKV], # q_scale_dqkv
                        ctx.fp8_meta['scaling_bwd'].amax_history[0][META_DP], # amax_dp
                        ctx.fp8_meta['scaling_bwd'].amax_history[0][META_DQKV], # amax_dqkv
                        ctx.attn_scale, ctx.dropout_p, ctx.fast_zero_fill,
                        ctx.qkv_layout, ctx.attn_bias_type, ctx.attn_mask_type)
                    if ctx.fp8_meta["recipe"].fp8_mha:
                        dq = Float8Tensor(data=dq_fp8,
                            fp8_meta=ctx.fp8_meta,
                            fp8_meta_forward=False,
                            fp8_meta_index=META_DQKV,
                            fp8_dtype=fp8_dtype_backward,
                            dtype=d_out_f8tensor.dtype,
                            )
                        dk = Float8Tensor(data=dk_fp8,
                            fp8_meta=ctx.fp8_meta,
                            fp8_meta_forward=False,
                            fp8_meta_index=META_DQKV,
                            fp8_dtype=fp8_dtype_backward,
                            dtype=d_out_f8tensor.dtype,
                            )
                        dv = Float8Tensor(data=dv_fp8,
                            fp8_meta=ctx.fp8_meta,
                            fp8_meta_forward=False,
                            fp8_meta_index=META_DQKV,
                            fp8_dtype=fp8_dtype_backward,
                            dtype=d_out_f8tensor.dtype,
                            )
                    else:
                        qkv_group = len(ctx.qkv_layout.split('_'))
                        if qkv_group == 1:
                            dim = ctx.qkv_layout.find('3')
                            dqkv_fp8 = _combine_tensors([dq_fp8,dk_fp8,dv_fp8], dim)
                            dqkv_c_fp8 = dqkv_fp8.view(-1,
                                dqkv_fp8.shape[-3] * dqkv_fp8.shape[-2] * dqkv_fp8.shape[-1])
                            dqkv = cast_from_fp8(dqkv_c_fp8,
                                ctx.fp8_meta["scaling_bwd"], META_DQKV,
                                fp8_dtype_backward, ctx.qkv_dtype).view(dqkv_fp8.shape)
                            dq, dk, dv = _SplitAlongDim.apply(dqkv, dim, [1,1,1])
                            dq, dk, dv = [x.squeeze(dim) for x in [dq, dk, dv]]
                        if qkv_group == 2:
                            dq = cast_from_fp8(
                                dq_fp8.view(-1, dq_fp8.shape[-2] * dq_fp8.shape[-1]),
                                ctx.fp8_meta["scaling_bwd"], META_DQKV,
                                fp8_dtype_backward, ctx.qkv_dtype).view(dq_fp8.shape)
                            dim = ctx.qkv_layout.split('_')[1].find('2')
                            dkv_fp8 = _combine_tensors([dk_fp8,dv_fp8], dim)
                            dkv_c_fp8 = dkv_fp8.view(-1,
                                dkv_fp8.shape[-3] * dkv_fp8.shape[-2] * dkv_fp8.shape[-1])
                            dkv = cast_from_fp8(dkv_c_fp8,
                                ctx.fp8_meta["scaling_bwd"], META_DQKV,
                                fp8_dtype_backward, ctx.qkv_dtype).view(dkv_fp8.shape)
                            dk, dv = _SplitAlongDim.apply(dkv, dim, [1,1])
                            dk, dv = [x.squeeze(dim) for x in [dk, dv]]
                        if qkv_group == 3:
                            dq = cast_from_fp8(
                                dq_fp8.view(-1, dq_fp8.shape[-2] * dq_fp8.shape[-1]),
                                ctx.fp8_meta["scaling_bwd"], META_DQKV,
                                fp8_dtype_backward, ctx.qkv_dtype).view(dq_fp8.shape)
                            dk = cast_from_fp8(
                                dk_fp8.view(-1, dk_fp8.shape[-2] * dk_fp8.shape[-1]),
                                ctx.fp8_meta["scaling_bwd"], META_DQKV,
                                fp8_dtype_backward, ctx.qkv_dtype).view(dk_fp8.shape)
                            dv = cast_from_fp8(
                                dv_fp8.view(-1, dv_fp8.shape[-2] * dv_fp8.shape[-1]),
                                ctx.fp8_meta["scaling_bwd"], META_DQKV,
                                fp8_dtype_backward, ctx.qkv_dtype).view(dv_fp8.shape)
                else:
                    if _NVTE_DEBUG:
                        print('[DotProductAttention]: using non-FP8 backward')
                    if d_out.dtype == torch.uint8:
                        d_out = d_out_f8tensor.from_float8(q.dtype)
                    dq, dk, dv, *rest = fused_attn_bwd(
                        ctx.max_seqlen_q, ctx.max_seqlen_kv, cu_seqlens_q, cu_seqlens_kv,
                        q, k, v, out, d_out,
                        ctx.qkv_dtype, ctx.qkv_dtype, ctx.aux_ctx_tensors,
                        ctx.fused_attention_backend,
                        None, None, None, None, None, None, None, None, None, None,
                        ctx.attn_scale, ctx.dropout_p, ctx.fast_zero_fill,
                        ctx.qkv_layout, ctx.attn_bias_type, ctx.attn_mask_type)
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        # if no_bias or alibi, return dqkv
        if ctx.attn_bias_type in ["no_bias", "alibi"]:
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            return (None, None, None, None, None, dq, dk, dv, None, None, None,
                    None, None, None, None, None, None,
                    None, None, None, None, None, None)
        # else, return (dqkv, dbias)
        return (None, None, None, None, None, dq, dk, dv, None, rest[0], None,
                None, None, None, None, None, None,
                None, None, None, None, None, None)

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class FusedAttention(TransformerEngineBaseModule):
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    """Dot product attention, with multiple backends:

    1. FusedAttnBackend["F16_max512_seqlen"]
       cuDNN based fused attention for FP16/BF16 and <=512 sequence length.
    2. FusedAttnBackend["F16_arbitrary_seqlen"]
       cuDNN based fused attention for FP16/BF16 and any sequence length.

    Support matrix:

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    | backend       | 1                       | 2                              |
    | flash based   | no                      | yes                            |
    | cuDNN based   | yes                     | yes                            |
    | qkv dtype     | fp16/bf16               | fp16/bf16                      |
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    | attn_type     | self/cross              | self/cross                     |
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    | qkv_layout    |                         |                                |
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    |  - (q,k,v)    | sb3hd, bs3hd            | sb3hd, bs3hd, sbh3d, bsh3d     |
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    |               | sbhd_sb2hd, bshd_bs2hd  | sbhd_sb2hd, bshd_bs2hd         |
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    |               | bshd_bshd_bshd          | sbhd_sbh2d, bshd_bsh2d         |
    |               |                         | sbhd_sbhd_sbhd, bshd_bshd_bshd |
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    | mask_type     | causal/padding/no_mask  | causal/padding/no_mask         |
    | bias_type     | post_scale_bias/no_bias | post_scale_bias/alibi/no_bias  |
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    | dropout       | yes                     | yes                            |
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    | max_seqlen    | <=512, multiple of 64   | any, multiple of 64            |
    | head_dim      | 64                      | <=128, multiple of 8           |
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    | output dtype  | fp16/bf16               | fp16/bf16                      |
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    """

    def __init__(
        self,
        norm_factor: float,
        attention_dropout: float = 0.0,
        attention_dropout_ctx: Optional[Callable] = nullcontext,
        attention_type: str = "self",
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        layer_number: Optional[int] = None,
        deterministic: bool = False,
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        tp_size: int = 1,
        tp_group: Optional[dist_group_type] = None,
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    ) -> None:
        super().__init__()

        self.norm_factor = norm_factor
        self.attention_dropout = attention_dropout
        self.attention_dropout_ctx = attention_dropout_ctx
        self.attention_type = attention_type
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        self.use_FAv2_bwd = (os.getenv("NVTE_FUSED_ATTN_USE_FAv2_BWD", "0") == "1"
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                        and get_device_compute_capability() == (9, 0))
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        self.layer_number = 1 if layer_number is None else layer_number
        if deterministic:
            # workspace optimization path is deterministic
            os.environ["CUDNN_FRONTEND_ATTN_DP_WORKSPACE_LIMIT"] = "-1"

        # CUDNN_FRONTEND_ATTN_DP_WORKSPACE_LIMIT
        # - unset:       enables workspace optimization when required workspace is <= 256MB
        #                or when bias gradient needs to be computed
        # - n:           enables workspace optimization when required workspace is <= n bytes
        # - -1:          enables workspace optimization always
        # - 0:           disables workspace optimization always
        if "NVTE_FUSED_ATTN_FORCE_WORKSPACE_OPT" in os.environ:
            if os.environ["NVTE_FUSED_ATTN_FORCE_WORKSPACE_OPT"] == "0":
                os.environ["CUDNN_FRONTEND_ATTN_DP_WORKSPACE_LIMIT"] = "0"
            if os.environ["NVTE_FUSED_ATTN_FORCE_WORKSPACE_OPT"] == "1":
                os.environ["CUDNN_FRONTEND_ATTN_DP_WORKSPACE_LIMIT"] = "-1"
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        self.tp_size = tp_size
        self.tp_group = tp_group

    def get_fp8_weights_scratchpad(
        self,
        is_first_microbatch: Union[bool, None],
    ) -> List[Float8Tensor]:
        """Needs override."""

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    @no_torch_dynamo()
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    def forward(
        self,
        query_layer: torch.Tensor,
        key_layer: torch.Tensor,
        value_layer: torch.Tensor,
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        qkv_layout: str = "sbh3d",
        cu_seqlens_q: Optional[torch.Tensor] = None,
        cu_seqlens_kv: Optional[torch.Tensor] = None,
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        max_seqlen_q: Optional[int] = None,
        max_seqlen_kv: Optional[int] = None,
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        attn_mask_type: str = "causal",
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]] = None,
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        fused_attention_backend:
            tex.NVTE_Fused_Attn_Backend = tex.NVTE_Fused_Attn_Backend.NVTE_No_Backend,
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        core_attention_bias_type: str = "no_bias",
        core_attention_bias: Optional[torch.Tensor] = None,
        fast_zero_fill: bool = True,
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        cp_group: Optional[dist_group_type] = None,
        cp_global_ranks: List[int] = None,
        cp_stream: torch.cuda.Stream = None,
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        is_first_microbatch: Optional[bool] = None,
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    ) -> torch.Tensor:
        """fused attention fprop"""

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        assert (fused_attention_backend
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            != tex.NVTE_Fused_Attn_Backend.NVTE_No_Backend
            ), 'No fused attention backend supports this input combination!'
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        assert (
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            (query_layer.dtype in [torch.float16, torch.bfloat16, torch.uint8])
            and (key_layer.dtype in [torch.float16, torch.bfloat16, torch.uint8])
            and (value_layer.dtype in [torch.float16, torch.bfloat16, torch.uint8])
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            ), 'FusedAttention only supports FP16 and BF16 data types.'
        assert (
            query_layer.is_cuda and key_layer.is_cuda and value_layer.is_cuda
            ), 'FusedAttention only supports CUDA tensors.'
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        assert (
            qkv_layout in QKVLayouts
            ), f"FusedAttention does not support qkv_layout = {qkv_layout}!"

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        context_parallel = (cp_group is not None) and (get_distributed_world_size(cp_group) != 1)

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        qkv_format = ''.join([i for i in qkv_layout.split('_')[0] if i.isalpha()])
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        assert (
            qkv_format != 'thd'
            ), 'FusedAttention does not support qkv_format = thd!'

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        if qkv_format in ['sbhd', 'bshd']:
            if qkv_format == 'sbhd':
                batch_size, max_seqlen_q, max_seqlen_kv = (
                    query_layer.shape[1], query_layer.shape[0], key_layer.shape[0])
            if qkv_format == 'bshd':
                batch_size, max_seqlen_q, max_seqlen_kv = (
                    query_layer.shape[0], query_layer.shape[1], key_layer.shape[1])
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            if 'padding' in attn_mask_type:
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                assert not context_parallel, "Padding mask not supported with context parallelism!"

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                if cu_seqlens_q is None or cu_seqlens_kv is None:
                    if attention_mask is None:
                        raise RuntimeError(
                            "Please provide attention_mask or cu_seqlens for padding!"
                        )
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                    if self.attention_type == "self":
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                        cu_seqlens_q = get_cu_seqlens(attention_mask)
                        cu_seqlens_kv = cu_seqlens_q
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                    else:
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                        cu_seqlens_q = get_cu_seqlens(attention_mask[0])
                        cu_seqlens_kv = get_cu_seqlens(attention_mask[1])
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            else:
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                if cu_seqlens_q is None:
                    cu_seqlens_q = _get_full_cu_seqlens(
                        batch_size,
                        max_seqlen_q,
                        query_layer.device,
                    )
                if cu_seqlens_kv is None:
                    cu_seqlens_kv = _get_full_cu_seqlens(
                        batch_size,
                        max_seqlen_kv,
                        key_layer.device,
                    )
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        qkv_dtype = TE_DType[query_layer.dtype]

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        use_FAv2_bwd = (self.use_FAv2_bwd
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                and (core_attention_bias_type == "no_bias")
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                and (fused_attention_backend
                    == tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen))
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        if context_parallel:
            assert (fused_attention_backend
                == tex.NVTE_Fused_Attn_Backend.NVTE_F16_arbitrary_seqlen
                ), f"{fused_attention_backend} does not work with context parallelism!"
            assert (core_attention_bias_type == "no_bias"), \
                "Core attention bias has not been supported with context parallelism yet!"
            if qkv_format == 'sbhd':
                query_layer, key_layer, value_layer = [x.transpose(0,1).contiguous()
                    for x in (query_layer, key_layer, value_layer)]
            with self.attention_dropout_ctx():
                output = attn_forward_func_with_cp(
                    self.training,
                    query_layer, key_layer, value_layer,
                    cu_seqlens_q, cu_seqlens_kv,
                    max_seqlen_q, max_seqlen_kv,
                    self.attention_dropout if self.training else 0.0,
                    cp_group, cp_global_ranks, cp_stream,
                    softmax_scale=1.0/self.norm_factor,
                    attn_mask_type=attn_mask_type,
                    use_fused_attention=True,
                )
            if qkv_format == 'sbhd':
                output = output.transpose(0,1).contiguous()
        else:
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            with self.prepare_forward(query_layer,
                is_first_microbatch,
                num_gemms=3,
                allow_non_contiguous=True) as query_layer:
                with self.attention_dropout_ctx():
                    forced_fp8_dpa = ""
                    if self.fp8_meta["recipe"].fp8_mha:
                        if not self.fp8_meta["recipe"].fp8_dpa:
                            self.fp8_meta["recipe"].fp8_dpa = True
                            forced_fp8_dpa = " (forced)"
                    if _NVTE_DEBUG:
                        print("[DotProductAttention]: "
                            f"""using fp8_recipe.fp8_mha={self.fp8_meta["recipe"].fp8_mha}, """
                            f"""fp8_recipe.fp8_dpa={self.fp8_meta["recipe"].fp8_dpa}"""
                            f"""{forced_fp8_dpa} and """
                            f"""NVTE_FP8_DPA_BWD={int(os.getenv("NVTE_FP8_DPA_BWD", "1"))}""")
                    output = FusedAttnFunc.apply(
                        self.training,
                        max_seqlen_q, max_seqlen_kv,
                        cu_seqlens_q, cu_seqlens_kv,
                        query_layer, key_layer, value_layer,
                        qkv_dtype,
                        core_attention_bias,
                        1.0/self.norm_factor,
                        self.attention_dropout if self.training else 0.0,
                        fast_zero_fill,
                        qkv_layout,
                        core_attention_bias_type,
                        attn_mask_type,
                        None, # rng_gen
                        fused_attention_backend,
                        use_FAv2_bwd,
                        self.fp8 and self.fp8_meta["recipe"].fp8_dpa,
                        self.fp8_meta,
                        self.tp_size,
                        self.tp_group,
                    )
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        # ...hd -> ...(hd)
        return output.view(*output.shape[:-2], -1)
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class DotProductAttention(torch.nn.Module):
    """Allows the model to jointly attend to information from different
    representation subspaces as described in the paper:
    `Attention Is All You Need <https://arxiv.org/abs/1706.03762>`_.

    .. note::

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        Argument :attr:`attention_mask` in the `forward` call is only used when
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        :attr:`attn_mask_type` includes '"padding"' or `"arbitrary"`.
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    .. warning::

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        FlashAttention uses a non-deterministic algorithm for optimal performance. To observe
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        deterministic behavior at the cost of performance, use FlashAttention version >= `2.4.1`
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        and set the environment variable :attr:`NVTE_ALLOW_NONDETERMINISTIC_ALGO=0`. In order
        to disable`flash-attn` entirely, set :attr:`NVTE_FLASH_ATTN=0`.
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    Parameters
    ----------
    num_attention_heads : int
                         number of attention heads in the transformer layer.
    kv_channels : int
                number of key-value channels.
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    num_gqa_groups : Optional[int] = None
                    number of GQA groups in the transformer layer.
                    Grouped Query Attention is described in
                    `this paper <https://arxiv.org/pdf/2305.13245.pdf>`_.
                    This only affects the keys and values, not the queries.
                    GQA-1 is equivalent to Multi-Query Attention
                    (`MQA <https://arxiv.org/pdf/1911.02150.pdf>`_), while GQA-H
                    is equivalent to MHA, i.e. `num_gqa_groups = num_attention_heads`.
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    attention_dropout: float, default = 0.0
                      dropout probability for the dropout op during multi-head attention.
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    attn_mask_type: str, default = `causal`
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                   type of attention mask passed into softmax operation, options are "`no_mask`",
                   "`padding`", "`causal`", "`padding,causal`", "`causal,padding`", and
                   "`arbitrary`", where "`padding,causal`" and "`causal,padding`" are equivalent.
                   This arg can be overridden by :attr:`attn_mask_type` in the `forward` method.
                   It is useful for cases involving compilation/tracing, e.g. ONNX export, and the
                   forward arg is useful for dynamically changing mask types, e.g. a different mask
                   for training and inference. For "`no_mask`", no attention mask is applied. For
                   "`causal`" or the causal mask in "`padding,causal`", TransformerEngine calculates
                   and applies an upper triangular mask to the softmax input. No user input is
                   needed. For "`padding`" or the padding mask in "`padding,causal`", users need to
                   provide the locations of padded tokens either via :attr:`cu_seqlens_q` and
                   :attr:`cu_seqlens_kv` in the shape of [batch_size + 1] or :attr:`attention_mask`
                   in the shape [batch_size, 1, 1, max_seq_len]. For the "`arbitrary`" mask, users
                   need to provide a mask that is broadcastable to the shape of softmax input.
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    window_size: Optional[Tuple[int, int]], default = `None`
                sliding window size for local attention, where query at position i attends to keys
                in [i + seqlen_k - seqlen_q - window_size[0], i + seqlen_k - seqlen_q
                + window_size[1]] inclusive. Special cases (-1, -1) and (-1, 0) mean no sliding
                window and causal mask specifically. Similar to :attr:`attn_mask_type`, it can
                be overridden by :attr:`window_size` in `forward` as well.
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    attention_type: str, default = `self`
                   type of attention, either "`self`" and "`cross`".
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    layer_number: int, default = `None`
                 layer number of the current `DotProductAttention` when multiple such modules
                 are concatenated, for instance in consecutive transformer blocks.
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    qkv_format: str, default = `sbhd`
               dimension format for `query_layer`, `key_layer` and `value_layer`,
               {`sbhd`, `bshd`, `thd`}. `s` stands for the sequence length, `b` batch size,
               `h` the number of heads, `d` head size, and `t` the total number of sequences
               in a batch, with `t = sum(s_i), for i = 0...b-1`. `sbhd` and `bshd` formats
               are used for when sequences in a batch are of equal length or padded to
               equal length, and the `thd` format is used for when sequences in a batch
               have different lengths. Please note that these formats do not reflect how
               tensors `query_layer`, `key_layer`, `value_layer` are laid out in memory.
               For that, please use `_get_qkv_layout` to gain the layout information.
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    Parallelism parameters
    ----------------------
    sequence_parallel : bool, default = `False`
                       if set to `True`, uses sequence parallelism.
    tp_size : int, default = 1
             tensor parallel world size.
    tp_group : ProcessGroup, default = `None`
              tensor parallel process group.
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    cp_group : ProcessGroup, default = `None`
              context parallel process group.
    cp_global_ranks : list of global rank IDs, default = `None`
                     global rank IDs of GPUs that are in cp_group.
    cp_stream : CUDA stream, default = `None`
               context parallelism splits flash attention into multiple steps for
               compute and communication overlapping. To address the wave quantization
               issue of each split step, we add an additional CUDA stream so that we
               can overlap two flash attention kernels.
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    """

    def __init__(
        self,
        num_attention_heads: int,
        kv_channels: int,
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        num_gqa_groups: Optional[int] = None,
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        attention_dropout: float = 0.0,
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        qkv_format: str = "sbhd",
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        attn_mask_type: str = "causal",
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        window_size: Optional[Tuple[int, int]] = None,
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        sequence_parallel: bool = False,
        tp_size: int = 1,
        get_rng_state_tracker: Optional[Callable] = None,
        tp_group: Optional[dist_group_type] = None,
        layer_number: Optional[int] = None,
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        attention_type: str = "self",
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        cp_group: Optional[dist_group_type] = None,
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        cp_global_ranks: List[int] = None,
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        cp_stream: torch.cuda.Stream = None,
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    ) -> None:
        super().__init__()

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        self.qkv_format = qkv_format
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        attn_mask_type = attn_mask_type.replace(",","_")
        if attn_mask_type == "causal_padding":
            attn_mask_type = "padding_causal"
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        self.attn_mask_type = attn_mask_type
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        self.window_size = window_size
        self.window_size = check_set_window_size(attn_mask_type, self.window_size)
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        self.tp_size = tp_size if tp_group is None else get_distributed_world_size(tp_group)
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        self.tp_group = tp_group
        self.get_rng_state_tracker = get_rng_state_tracker
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        self.num_attention_heads = num_attention_heads
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        self.layer_number = 1 if layer_number is None else layer_number
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        self.cp_group = cp_group
        self.cp_global_ranks = cp_global_ranks
        self.cp_stream = cp_stream
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        self.hidden_size_per_attention_head = kv_channels
        self.num_gqa_groups = (
            num_attention_heads if num_gqa_groups is None else num_gqa_groups
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        )
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        self.num_gqa_groups_per_partition = int(self.num_gqa_groups // tp_size)

        assert (num_attention_heads % self.num_gqa_groups == 0
                ), "The number of attention heads must be divisible by the number of GQA groups!"
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        self.rng_states_tracker = None
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        if sequence_parallel or get_rng_state_tracker is None:
            attention_dropout_ctx = nullcontext
        else:
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            self.rng_states_tracker = get_rng_state_tracker()
            set_all_rng_states(self.rng_states_tracker.get_states())
            attention_dropout_ctx = self.rng_states_tracker.fork
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        norm_factor = math.sqrt(self.hidden_size_per_attention_head)

        self.device_compute_capability = get_device_compute_capability()
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        self.deterministic = not bool(int(os.getenv("NVTE_ALLOW_NONDETERMINISTIC_ALGO", "1"))) \
                             or torch.are_deterministic_algorithms_enabled()
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        self.use_flash_attention = (
            int(os.getenv("NVTE_FLASH_ATTN", "1"))
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            and self.device_compute_capability >= (8, 0)
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        )
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        if not _flash_attn_2_4_1_plus and self.deterministic:
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            self.use_flash_attention = False
            warnings.warn(
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                "Disabling usage of FlashAttention since version <2.4.1 does not support "
                "deterministic execution. In order to use FA with deterministic behavior,"
                " please install FlashAttention version >=2.4.1."
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            )

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        self.use_fused_attention = (
            int(os.getenv("NVTE_FUSED_ATTN", "1"))
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            and self.device_compute_capability >= (8, 0)
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        )
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        assert (
            attention_type in AttnTypes
        ), f"attention_type {attention_type} not supported"

        self.attention_type = attention_type
        self.attention_dropout = attention_dropout

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        attn_kwargs = {
            "attention_dropout": attention_dropout,
            "attention_dropout_ctx": attention_dropout_ctx,
        }

        if self.use_flash_attention:
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            self.flash_attention = FlashAttention(norm_factor,
                                                  attention_type=attention_type,
                                                  layer_number=layer_number,
                                                  deterministic=self.deterministic,
                                                  **attn_kwargs)

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        # Instantiating three types since use of flash-attn and FusedAttention
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        # might be ruled out due to forward inputs.
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        if self.use_fused_attention:
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            self.fused_attention = FusedAttention(norm_factor,
                                                  attention_type=attention_type,
                                                  layer_number=layer_number,
                                                  deterministic=self.deterministic,
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                                                  **attn_kwargs,
                                                  tp_size=self.tp_size,
                                                  tp_group=self.tp_group)
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        self.unfused_attention = UnfusedDotProductAttention(
            norm_factor, **attn_kwargs, layer_number=layer_number)

    def _checkpointed_attention_forward(
        self,
        attention_func: Callable,
        *forward_args: Tuple[torch.Tensor, ...],
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        **forward_kwargs: Dict[str, Any],
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    ) -> torch.Tensor:
        """Forward method with activation checkpointing."""

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        def custom_forward(*input_args, **input_kwargs):
            return attention_func(*input_args, **input_kwargs)
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        hidden_states = checkpoint(
            custom_forward,
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            distribute_saved_activations=False,
            get_rng_state_tracker=self.get_rng_state_tracker,
            tp_group=self.tp_group,
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            *forward_args,
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            **forward_kwargs,
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        )

        return hidden_states

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    def set_context_parallel_group(
        self,
        cp_group: Union[dist_group_type, None],
        cp_global_ranks: List[int],
        cp_stream: torch.cuda.Stream,
    ) -> None:
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        """
        Set the context parallel attributes for the given
        module before executing the forward pass.

        Parameters
        ----------
        cp_group : ProcessGroup
                  context parallel process group.
        cp_global_ranks : List[int]
                         list of global ranks in the context group.
        cp_stream : torch.cuda.Stream
                   cuda stream for context parallel execution.
        """
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        self.cp_group = cp_group
        self.cp_global_ranks = cp_global_ranks
        self.cp_stream = cp_stream

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    @no_torch_dynamo(recursive=False)
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    def forward(
        self,
        query_layer: torch.Tensor,
        key_layer: torch.Tensor,
        value_layer: torch.Tensor,
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]] = None,
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        qkv_format: Optional[str] = None,
        cu_seqlens_q: Optional[torch.Tensor] = None,
        cu_seqlens_kv: Optional[torch.Tensor] = None,
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        max_seqlen_q: Optional[int] = None,
        max_seqlen_kv: Optional[int] = None,
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        attn_mask_type: Optional[str] = None,
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        window_size: Optional[Tuple[int, int]] = None,
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        checkpoint_core_attention: bool = False,
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        core_attention_bias_type: str = "no_bias",
        core_attention_bias: Optional[torch.Tensor] = None,
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        alibi_slopes: Optional[torch.Tensor] = None,
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        fast_zero_fill: bool = True,
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        inference_params: Optional[InferenceParams] = None,
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        is_first_microbatch: Optional[bool] = None,
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    ) -> torch.Tensor:
        """
        Dot Product Attention Layer.

        .. note::

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            Argument :attr:`attention_mask` is only used when :attr:`attn_mask_type`
            includes '"padding"' or `"arbitrary"`.
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        .. note::

            Input tensors :attr:`query_layer`, :attr:`key_layer`, and :attr:`value_layer`
            must each be of shape (:attr:`sequence_length`, :attr:`batch_size`,
            :attr:`num_attention_heads`, :attr:`kv_channels`). Output of shape
            (:attr:`sequence_length`, :attr:`batch_size`, :attr:`num_attention_heads`
            * :attr:`kv_channels`) is returned.

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        .. note::

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            DotProductAttention supports three backends: 1) FlashAttention which calls
            HazyResearch/Dao-AILab's `flash-attn <https://arxiv.org/pdf/2305.13245.pdf>`_
            PyTorch API, 2) FusedAttention which has multiple fused attention implementations
            based on `cuDNN Graph API
            <https://docs.nvidia.com/deeplearning/cudnn/developer-guide/index.html#op-fusion>`_
            (see :attr:`FusedAttention` for more details on FusedAttention backends), and 3)
            UnfusedDotProductAttention which is the native PyTorch implementation
            with fused scaled masked softmax.

        .. note::

            Users can use environment variables :attr:`NVTE_FLASH_ATTN`, :attr:`NVTE_FUSED_ATTN`,
            and :attr:`NVTE_FUSED_ATTN_BACKEND` to control which DotProductAttention backend,
            and FusedAttention backend if applicable, to use. TransformerEngine prioritizes
            FlashAttention over FusedAttention and over UnfusedDotProductAttention.
            If FusedAttention is being used, users can also choose to switch to flash-attn's
            implementation for backward by setting :attr:`NVTE_FUSED_ATTN_USE_FAv2_BWD=1`
            (default: 0), because of the performance differences between various versions of
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            flash-attn and FusedAttention. Further, :attr:`NVTE_FUSED_ATTN_FORCE_WORKSPACE_OPT`
            can be used to enable (:attr:`1`) or disable (:attr:`0`) the workspace related
            optimizations in FusedAttention. When unset, TransformerEngine determines the code path
            based on its internal logic. These optimizations trade memory for performance
            and should be used with care.
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        Parameters
        ----------
        query_layer : torch.Tensor
                     Query tensor.
        key_layer : torch.Tensor
                   Key tensor.
        value_layer : torch.Tensor
                     Value tensor.
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]],
             default = `None`. Boolean tensor(s) used to mask out attention softmax input.
             It should be 'None' for 'causal' and 'no_mask' types. For 'padding' masks, it should be
             a single tensor of [batch_size, 1, 1, seqlen_q] for self-attention, and a tuple of
             two tensors in shapes [batch_size, 1, 1, seqlen_q] and [batch_size, 1, 1, seqlen_kv]
             for cross-attention. For the 'arbitrary' mask type, it should be in a shape that is
             broadcastable to [batch_size, num_heads, max_seqlen_q, max_seqlen_kv].
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        qkv_format: str, default = `None`
                   If provided, overrides :attr:`qkv_format` from initialization.
        cu_seqlens_q: Optional[torch.Tensor], default = `None`
                   Cumulative sum of sequence lengths in a batch for `query_layer`,
                   with shape [batch_size + 1] and dtype torch.int32.
        cu_seqlens_kv: Optional[torch.Tensor], default = `None`
                   Cumulative sum of sequence lengths in a batch for `key_layer` and `value_layer`,
                   with shape [batch_size + 1] and dtype torch.int32.
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        max_seqlen_q: Optional[int], default = `None`
                      Maximum sequence length in `query_layer`.
                      Calculated from `cu_seqlens_q` if not provided.
        max_seqlen_kv: Optional[int], default = `None`
                       Maximum sequence length in `key_layer` and `value_layer`.
                       Calculated from `cu_seqlens_kv` if not provided.
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        attn_mask_type: {`no_mask`, `padding`, `causal`, `padding,causal`, `causal,padding`,
                       `arbitrary`}, default = `None`. Type of attention mask passed into
                       softmax operation. 'padding,causal' and 'causal,padding' are equivalent.
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        window_size: Optional[Tuple[int, int]], default = `None`
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                    Sliding window size for local attention.
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        checkpoint_core_attention : bool, default = `False`
                                   If true, forward activations for attention are recomputed
                                   during the backward pass in order to save memory that would
                                   otherwise be occupied to store the forward activations until
                                   backprop.
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        core_attention_bias_type: str, default = `no_bias`
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                    Bias type, {`no_bias`, `pre_scale_bias`, `post_scale_bias`, `alibi`}
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        core_attention_bias: Optional[torch.Tensor], default = `None`
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                    Bias tensor for Q * K.T, shape [1, num_head, max_seqlen_q, max_seqlen_kv].
                    It should be 'None' for 'no_bias' and 'alibi' bias types.
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        alibi_slopes: Optional[torch.Tensor], default = `None`
                     ALiBi slopes in FP32 and shape [nheads] or [batch_size, nheads].
                     It adds a bias of (-alibi_slope * (i + seqlen_k - seqlen_q - j))
                     to the attention score of query i and key j.
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        fast_zero_fill: bool, default = `True`
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                    Whether to use the fast path to set output tensors to 0 or not.
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        inference_params: Optional[InferenceParams], default = `None`
            Optimizes execution performance during inference by caching Keys and Values of the
            current decoding iteration. These cached values are appended to the K and V values
            computed in previous iterations, eliminating the need to recalculate them for the
            entire sequence.
            Initialization of `inference_params` is required prior to use to ensure sufficient
            memory allocation.
            Adjustments of the sequence_len_offset should be done after a complete forward pass.
            If rotary positional embeddings (RoPE) are utilized, they must be prepared beforehand.
            Supports "sbhd" and "bshd" layouts, with the "sbhd" layout being more efficient.
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        is_first_microbatch : {True, False, None}, default = None
                             During training using either gradient accumulation or
                             pipeline parallelism a minibatch of data is further split
                             into microbatches. Between the microbatches of the same minibatch
                             the model weights are not updated. Setting this parameter indicates
                             whether the current microbatch is the first in a minibatch or not.
                             When set, this parameter enables additional optimizations:

                             * during FP8 training, it allows caching of the FP8 versions of
                               the weights
                             * it also allows skipping gradient accumulation during the
                               first microbatch (since it is the first gradient being
                               produced)
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        """

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        assert (
            query_layer.is_cuda and key_layer.is_cuda and value_layer.is_cuda
            ), 'DotProductAttention only supports CUDA tensors.'

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        assert (key_layer.shape == value_layer.shape
            ), "Keys and values must have the same shape!"

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        if attn_mask_type is not None:
            window_size = check_set_window_size(attn_mask_type, window_size)
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        if attn_mask_type is None:
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            attn_mask_type = self.attn_mask_type
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        else:
            attn_mask_type = attn_mask_type.replace(",","_")
            if attn_mask_type == "causal_padding":
                attn_mask_type = "padding_causal"

        assert (attn_mask_type in AttnMaskTypes
            ), f"Attention mask type {attn_mask_type} is not supported!"

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        if self.rng_states_tracker is not None and is_graph_capturing():
            assert (
                isinstance(self.rng_states_tracker, CudaRNGStatesTracker)
            ), "Unsupported RNG states tracker."
            assert (
                graph_safe_rng_available()
            ), "Upgrade PyTorch version to get RNG manipulation support for cuda graph capture."

3294
3295
3296
        if window_size is None:
            window_size = self.window_size

3297
3298
        if qkv_format is None:
            qkv_format = self.qkv_format
3299

3300
3301
3302
3303
3304
3305
3306
3307
3308
3309
3310
3311
3312
3313
3314
3315
3316
3317
3318
3319
3320
3321
3322
3323
3324
3325
3326
3327
3328
3329
3330
3331
3332
        if inference_params is not None:
            assert self.layer_number is not None, "Layer number must be set!"

            if qkv_format == "bshd":
                key_layer = key_layer.transpose(0, 1)
                value_layer = value_layer.transpose(0, 1)

            (inference_key_memory, inference_value_memory,
            ) = inference_params.key_value_memory_dict[self.layer_number]

            batch_start = inference_params.batch_size_offset
            batch_end = batch_start + key_layer.size(1)
            assert batch_end <= inference_key_memory.size(1)

            sequence_start = inference_params.sequence_len_offset
            sequence_end = sequence_start + key_layer.size(0)
            assert sequence_end <= inference_key_memory.size(0)

            # Copy keys and values into KV-cache
            inference_key_memory[
                sequence_start:sequence_end, batch_start:batch_end, ...] = key_layer
            inference_value_memory[
                sequence_start:sequence_end, batch_start:batch_end, ...] = value_layer
            key_layer = inference_key_memory[:sequence_end, batch_start:batch_end, ...]
            value_layer = inference_value_memory[:sequence_end, batch_start:batch_end, ...]

            if qkv_format == "bshd":
                key_layer = key_layer.transpose(0, 1)
                value_layer = value_layer.transpose(0, 1)

            key_layer = key_layer.contiguous()
            value_layer = value_layer.contiguous()

3333
        assert (key_layer.shape[-2] == self.num_gqa_groups_per_partition
3334
3335
3336
3337
3338
3339
3340
3341
3342
3343
3344
3345
3346
3347
3348
3349
3350
            and value_layer.shape[-2] == self.num_gqa_groups_per_partition
            ), f"Keys and values must have num_gqa_group = {self.num_gqa_groups} heads!"
        assert (qkv_format in ['sbhd', 'bshd', 'thd']
            ), "DotProductAttention only supports qkv_format = {'sbhd', 'bshd', 'thd'}!"

        if qkv_format == 'thd':
            assert (all(len(x.shape) == 3 for x in (query_layer, key_layer, value_layer))
                ), "Queries, keys and values must be 3D tensors when qkv_format = thd!"
            assert (cu_seqlens_q is not None and cu_seqlens_kv is not None
                ), "cu_seqlens_q and cu_seqlens_kv can not be None when qkv_format = thd!"
            assert (cu_seqlens_q.shape == cu_seqlens_kv.shape
                and len(cu_seqlens_q.shape) == 1
                and len(cu_seqlens_kv.shape) == 1
                ), "cu_seqlens_q and cu_seqlens_q must both have shape [batch_size + 1]!"
            assert (cu_seqlens_q.dtype == torch.int32
                and cu_seqlens_kv.dtype == torch.int32
                ), "cu_seqlens_q and cu_seqlens_q must both be in dtype torch.int32!"
3351
3352
3353
3354
3355
3356
            if max_seqlen_q is None:
                seqlens_q = cu_seqlens_q[1:] - cu_seqlens_q[:-1]
                max_seqlen_q = seqlens_q.max().item()
            if max_seqlen_kv is None:
                seqlens_kv = cu_seqlens_kv[1:] - cu_seqlens_kv[:-1]
                max_seqlen_kv = seqlens_kv.max().item()
3357
3358
3359
3360
3361
3362
3363
3364
3365
3366
3367
3368
3369
3370
3371
3372
3373
3374
3375

        if qkv_format in ['sbhd', 'bshd']:
            assert (all(len(x.shape) == 4 for x in (query_layer, key_layer, value_layer))
                ), f"Queries, keys and values must be 4D tensors when qkv_format = {qkv_format}!"
            if qkv_format == 'sbhd':
                max_seqlen_q, max_seqlen_kv = (query_layer.shape[0], key_layer.shape[0])
            if qkv_format == 'bshd':
                max_seqlen_q, max_seqlen_kv = (query_layer.shape[1], key_layer.shape[1])
            if cu_seqlens_q is not None:
                seqlens_q = cu_seqlens_q[1:] - cu_seqlens_q[:-1]
                assert (all(seqlens_q <= max_seqlen_q)
                    ), """Sequence lengths indicated by cu_seqlens_q must be no greater than
                    the sequence dimention in 'query_layer'!"""
            if cu_seqlens_kv is not None:
                seqlens_kv = cu_seqlens_kv[1:] - cu_seqlens_kv[:-1]
                assert (all(seqlens_kv <= max_seqlen_kv)
                    ), """Sequence lengths indicated by cu_seqlens_kv must be no greater than
                    the sequence dimention in 'key_layer' and 'value_layer'!"""

3376
3377
3378
3379
3380
3381
3382
3383
        if (isinstance(query_layer, Float8Tensor)
            and isinstance(key_layer, Float8Tensor)
            and isinstance(value_layer, Float8Tensor)):
            qkv_layout, query_layer._data, key_layer._data, value_layer._data = _get_qkv_layout(
                query_layer._data, key_layer._data, value_layer._data, qkv_format = qkv_format)
        else:
            qkv_layout, query_layer, key_layer, value_layer = _get_qkv_layout(
                query_layer, key_layer, value_layer, qkv_format = qkv_format)
3384

3385
3386
        # The priority for attention backends (subject to availability and clearing the filters)
        # is: FlashAttention > FusedAttention (cuDNN) > UnfusedDotProductAttention.
3387
        use_flash_attention = self.use_flash_attention
3388
        use_fused_attention = self.use_fused_attention
3389
        use_unfused_attention = True
3390

3391
3392
3393
        # The following section filters out some backends based on
        # certain asserts before executing the forward pass.

3394
3395
3396
3397
3398
        # Filter: ONNX export.
        if is_in_onnx_export_mode():
            use_flash_attention = False
            use_fused_attention = False

3399
        # Filter: Input type.
3400
3401
3402
        if (query_layer.dtype not in [torch.bfloat16, torch.float16]
            or key_layer.dtype not in [torch.bfloat16, torch.float16]
            or value_layer.dtype not in [torch.bfloat16, torch.float16]
3403
            or any(isinstance(x, Float8Tensor) for x in [query_layer, key_layer, value_layer])
3404
3405
        ):
            use_flash_attention = False
3406
3407
3408
3409
        if (query_layer.dtype not in [torch.bfloat16, torch.float16]
            or key_layer.dtype not in [torch.bfloat16, torch.float16]
            or value_layer.dtype not in [torch.bfloat16, torch.float16]
        ):
3410
            use_fused_attention = False
3411

3412
        # Filter: Device and dimensions.
3413
        # FAv2 supports head_dim <= 256, and for >192 requires sm80/sm90
3414
3415
3416
3417
3418
        # FAv2 requires head_dim % 8 == 0
        if (key_layer.shape[-1] > 256
            or key_layer.shape[-1] % 8 != 0
            or (key_layer.shape[-1] > 192
                and self.device_compute_capability not in ((8, 0), (9, 0)))):
3419
3420
            use_flash_attention = False

3421
        # Filter: cross attention + causal mask.
3422
3423
3424
        # (in training mode)
        if (inference_params is None
            and _flash_attn_2_1_plus
3425
            and "causal" in attn_mask_type
3426
3427
            and max_seqlen_q != max_seqlen_kv
        ):
3428
            warnings.warn(
3429
3430
                "In training mode, disable the use of FlashAttention since version 2.1+ has "
                "changed its behavior for causal mask in cross attention. See "
3431
3432
3433
3434
                "https://github.com/Dao-AILab/flash-attention#21-change-behavior-of-causal-flag"
            )
            use_flash_attention = False

3435
3436
3437
        context_parallel = (self.cp_group is not None and \
            get_distributed_world_size(self.cp_group) != 1)

3438
3439
3440
3441
3442
3443
3444
        # Filter: sliding window attention.
        # UnfusedDotProductAttention can support SWA via arbitrary attention mask.
        if window_size not in ((-1, -1), (-1, 0)):
            use_fused_attention = False
            if (not _flash_attn_2_3_plus) or context_parallel:
                use_flash_attention = False

3445
        # Filter: Attention mask type.
3446
        #   attn_mask_type(s)    |     supported backends
3447
        # ------------------------------------------------
3448
3449
        #   no_mask              |     All
        #   padding              |     UnfusedDotProductAttention, FlashAttention, FusedAttention
3450
        #   causal               |     All
3451
        #   padding + causal     |     FlashAttention, FusedAttention
3452
3453
3454
3455
3456
        #   arbitrary            |     UnfusedDotProductAttention
        #
        if attn_mask_type == "arbitrary":
            use_flash_attention = False
            use_fused_attention = False
3457
3458
3459
3460
3461

        if (inference_params is None
            and "causal" in attn_mask_type
            and max_seqlen_q != max_seqlen_kv
        ):
3462
            use_unfused_attention = False
3463

3464
3465
3466
3467
3468
3469
3470
3471
3472
3473
3474
3475
3476
3477
3478
3479
3480
3481
3482
3483
3484
3485
3486
3487
3488
3489
3490
3491
        # Filter: bias.
        global _alibi_cache
        if alibi_slopes is not None:
            assert (core_attention_bias_type == "alibi"
                ), "core_attention_bias_type must be alibi in order to use alibi_slopes!"
            if self.layer_number == 1:
                _alibi_cache["_alibi_slopes_require_update"] = True
                _alibi_cache["_alibi_bias_require_update"] = True
        if core_attention_bias_type == "alibi":
            assert (core_attention_bias is None
                ), "core_attention_bias must be None when core_attention_bias_type is alibi!"
            if (_alibi_cache["_num_heads"] != query_layer.shape[-2]
                or _alibi_cache["_max_seqlen_q"] != max_seqlen_q
                or _alibi_cache["_max_seqlen_kv"] != max_seqlen_kv
                or _alibi_cache["_alibi_slopes"] is None):
                _alibi_cache["_alibi_slopes_require_update"] = True
                _alibi_cache["_alibi_bias_require_update"] = True

        if core_attention_bias_type not in ["no_bias", "alibi"] or core_attention_bias is not None:
            use_flash_attention = False

        fu_core_attention_bias_type = core_attention_bias_type
        fu_core_attention_bias = core_attention_bias
        if core_attention_bias_type == "alibi" and use_fused_attention and alibi_slopes is not None:
            fu_core_attention_bias_type = "post_scale_bias"
            _, fu_core_attention_bias = get_alibi(
                query_layer.shape[-2], max_seqlen_q, max_seqlen_kv, alibi_slopes=alibi_slopes,
                bias_dtype=query_layer.dtype)
3492
3493
3494
3495
3496
3497
3498
        if (use_fused_attention
            and fu_core_attention_bias_type == "post_scale_bias"
            and (fu_core_attention_bias.shape[0] != 1
            or fu_core_attention_bias.shape[1] != query_layer.shape[-2])):
            if fu_core_attention_bias.requires_grad:
                # remove this line when cuDNN adds bwd support for
                # [1, 1, s, s], [b, 1, s, s] and [b, h, s, s]
3499
                use_fused_attention = False
3500
            else:
3501
3502
3503
                # max512 backend will only support [1, h, s, s]
                os.environ["NVTE_FUSED_ATTN_BACKEND"] = "1"

3504
3505
        if use_fused_attention:
            fused_attention_backend = tex.get_fused_attn_backend(
3506
3507
3508
3509
                TE_DType[query_layer.dtype]
                if not isinstance(query_layer, Float8Tensor) else query_layer._fp8_dtype,
                TE_DType[key_layer.dtype]
                if not isinstance(key_layer, Float8Tensor) else key_layer._fp8_dtype,
3510
                QKVLayout[qkv_layout],
3511
                AttnBiasType[fu_core_attention_bias_type],
3512
                AttnMaskType[attn_mask_type],
3513
                self.attention_dropout,
3514
3515
3516
3517
3518
3519
                query_layer.shape[-2], # num_attn_heads
                key_layer.shape[-2], # num_gqa_groups
                max_seqlen_q,
                max_seqlen_kv,
                query_layer.shape[-1], # head_dim
            )
3520
3521
            # DPA does not support FP8; for FP8, use cpp_extensions modules directly
            is_backend_avail = (fused_attention_backend in
3522
3523
3524
                [FusedAttnBackend["F16_max512_seqlen"],
                FusedAttnBackend["F16_arbitrary_seqlen"],
                FusedAttnBackend["FP8"]])
3525
3526
3527
3528
            use_fused_attention = ( \
                use_fused_attention and is_backend_avail and \
                (not context_parallel or \
                 fused_attention_backend == FusedAttnBackend["F16_arbitrary_seqlen"]))
3529
3530
3531
3532
3533
            if (fused_attention_backend == FusedAttnBackend["F16_max512_seqlen"]
                and fu_core_attention_bias_type == "post_scale_bias"
                and (fu_core_attention_bias.shape[0] != 1
                or fu_core_attention_bias.shape[1] != query_layer.shape[-2])):
                use_fused_attention = False
3534

3535
3536
3537
3538
3539
3540
3541
3542
3543
3544
3545
3546
3547
3548
3549
3550
3551
3552
        # Filter: determinism.
        # backend                                  | deterministic
        # ---------------------------------------------------------
        # flash-attn v1                            | yes
        # flash-attn v2                            | no
        # FusedAttnBackend["F16_max512_seqlen"]    | yes
        # FusedAttnBackend["F16_arbitrary_seqlen"] | workspace optimization path: yes; otherwise: no
        # UnfusedDotProductAttention               | yes
        #
        # Note that FusedAttnBackend["F16_arbitrary_seqlen"] only has workspace optimization path
        # on sm90 architectures.
        #
        if (use_fused_attention
            and fused_attention_backend == FusedAttnBackend["F16_arbitrary_seqlen"]
            and self.deterministic
            and self.device_compute_capability != (9, 0)):
            use_fused_attention = False

3553
3554
3555
3556
3557
3558
        # Select FusedAttention on sm90 and FlashAttention on others for performance
        if (use_flash_attention
            and use_fused_attention
            and fused_attention_backend == FusedAttnBackend["F16_arbitrary_seqlen"]):
            if self.device_compute_capability == (9, 0):
                use_flash_attention = False
3559
3560

        if use_flash_attention:
3561
3562
            if _NVTE_DEBUG:
                print("[DotProductAttention]: using flash-attn",_flash_attn_version)
3563
3564
3565
            if core_attention_bias_type == "alibi":
                alibi_slopes, _ = get_alibi(
                    query_layer.shape[-2], max_seqlen_q, max_seqlen_kv, alibi_slopes=alibi_slopes)
3566
3567
3568
3569
3570
3571
3572
3573
            return self.flash_attention(query_layer,
                                        key_layer,
                                        value_layer,
                                        attention_mask=attention_mask,
                                        qkv_layout=qkv_layout,
                                        cu_seqlens_q=cu_seqlens_q,
                                        cu_seqlens_kv=cu_seqlens_kv,
                                        attn_mask_type=attn_mask_type,
3574
                                        window_size=window_size,
3575
                                        alibi_slopes=alibi_slopes,
3576
3577
                                        cp_group=self.cp_group,
                                        cp_global_ranks=self.cp_global_ranks,
3578
3579
3580
                                        cp_stream=self.cp_stream,
                                        max_seqlen_q=max_seqlen_q,
                                        max_seqlen_kv=max_seqlen_kv)
3581

3582
        if use_fused_attention:
3583
3584
3585
            if _NVTE_DEBUG:
                print("[DotProductAttention]: using cuDNN fused attention (backend "
                    + str(int(fused_attention_backend)) + ")")
3586
            if checkpoint_core_attention:
3587
3588
3589
3590
3591
3592
3593
3594
                return self._checkpointed_attention_forward(
                    self.fused_attention,
                    query_layer,
                    key_layer,
                    value_layer,
                    qkv_layout=qkv_layout,
                    cu_seqlens_q=cu_seqlens_q,
                    cu_seqlens_kv=cu_seqlens_kv,
3595
3596
                    max_seqlen_q=max_seqlen_q,
                    max_seqlen_kv=max_seqlen_kv,
3597
3598
3599
                    attn_mask_type=attn_mask_type,
                    attention_mask=attention_mask,
                    fused_attention_backend=fused_attention_backend,
3600
3601
                    core_attention_bias_type=fu_core_attention_bias_type,
                    core_attention_bias=fu_core_attention_bias,
3602
3603
3604
3605
                    fast_zero_fill=fast_zero_fill,
                    cp_group=self.cp_group,
                    cp_global_ranks=self.cp_global_ranks,
                    cp_stream=self.cp_stream,
3606
                    is_first_microbatch=is_first_microbatch)
3607
3608
3609
3610
3611
3612
3613
            return self.fused_attention(
                query_layer,
                key_layer,
                value_layer,
                qkv_layout=qkv_layout,
                cu_seqlens_q=cu_seqlens_q,
                cu_seqlens_kv=cu_seqlens_kv,
3614
3615
                max_seqlen_q=max_seqlen_q,
                max_seqlen_kv=max_seqlen_kv,
3616
3617
3618
                attn_mask_type=attn_mask_type,
                attention_mask=attention_mask,
                fused_attention_backend=fused_attention_backend,
3619
3620
                core_attention_bias_type=fu_core_attention_bias_type,
                core_attention_bias=fu_core_attention_bias,
3621
3622
3623
3624
                fast_zero_fill=fast_zero_fill,
                cp_group=self.cp_group,
                cp_global_ranks=self.cp_global_ranks,
                cp_stream=self.cp_stream,
3625
                is_first_microbatch=is_first_microbatch)
3626
3627
3628

        assert (not context_parallel), \
            "Context parallelism is only implemented with Flash Attention and Fused Attention!"
3629

3630
3631
3632
3633
3634
3635
3636
        from .cpu_offload import CPUOffloadEnabled
        if CPUOffloadEnabled:
            warnings.warn(
                           "Attention activation Offloading is only implemented"
                           "with Flash Attention and Fused Attention!"
                         )

3637
3638
        if _NVTE_DEBUG:
            print("[DotProductAttention]: using unfused DPA")
3639
3640
3641
3642
3643
3644
3645
3646
3647
3648
3649
3650
3651
        if use_unfused_attention:
            if checkpoint_core_attention:
                return self._checkpointed_attention_forward(
                    self.unfused_attention,
                    query_layer,
                    key_layer,
                    value_layer,
                    qkv_layout = qkv_layout,
                    cu_seqlens_q = cu_seqlens_q,
                    cu_seqlens_kv = cu_seqlens_kv,
                    attn_mask_type = attn_mask_type,
                    attention_mask = attention_mask,
                    core_attention_bias_type = core_attention_bias_type,
3652
3653
                    core_attention_bias = core_attention_bias,
                    alibi_slopes = alibi_slopes)
3654
3655
3656
3657
3658
3659
3660
3661
3662
            return self.unfused_attention(query_layer,
                    key_layer,
                    value_layer,
                    qkv_layout = qkv_layout,
                    cu_seqlens_q = cu_seqlens_q,
                    cu_seqlens_kv = cu_seqlens_kv,
                    attn_mask_type = attn_mask_type,
                    attention_mask = attention_mask,
                    core_attention_bias_type = core_attention_bias_type,
3663
3664
                    core_attention_bias = core_attention_bias,
                    alibi_slopes = alibi_slopes)
3665
3666

        raise Exception("No dot product attention support for the provided inputs!")
3667
3668


3669
3670
3671
3672
3673
3674
3675
class MultiheadAttention(torch.nn.Module):
    r"""
    Multi-head Attention (MHA), including Query,
    Key, Value and Output projection.

    .. note::

3676
3677
        Argument :attr:`attention_mask` in the `forward` call is only used when
        :attr:`attn_mask_type` includes '"padding"' or `"arbitrary"`.
3678

3679
3680
3681
3682
3683
3684
3685
3686
3687
3688
3689
3690
3691
3692
3693
3694
3695
3696
3697
3698
3699
3700
3701
3702
3703
    Parameters
    ----------
    hidden_size : int
                 size of each input sample.
    num_attention_heads : int
                         number of attention heads in the transformer layer.
    kv_channels: int, default = `None`
                number of key-value channels. defaults to
                :attr:`hidden_size` / :attr:`num_attention_heads` if `None`.
    attention_dropout: float, default = 0.1
                      dropout probability for the dropout op during multi-head attention.
    layernorm_epsilon : float, default = 1e-5
                       a value added to the denominator of layer normalization
                       for numerical stability.
    init_method : Callable, default = `None`
                 used for initializing weights of QKV and FC1 weights in the following way:
                 `init_method(weight)`. When set to `None`, defaults to
                 `torch.nn.init.normal_(mean=0.0, std=0.023)`.
    output_layer_init_method : Callable, default = `None`
                              used for initializing weights of PROJ and FC2 in the following way:
                              `output_layer_init_method(weight)`. When set to `None`, defaults to
                              `torch.nn.init.normal_(mean=0.0, std=0.023)`.
    layer_number: int, default = `None`
                 layer number of the current `TransformerLayer` when multiple such modules are
                 concatenated to form a transformer block.
3704
3705
    attn_mask_type: {'no_mask', 'padding', 'causal', 'padding_causal' 'arbitrary'},
                   default = `causal`
3706
3707
3708
3709
3710
                   type of attention mask passed into softmax operation. Overridden by
                   :attr:`attn_mask_type` in the `forward` method. The forward
                   arg is useful for dynamically changing mask types, e.g. a different
                   mask for training and inference. The init arg is useful for cases
                   involving compilation/tracing, e.g. ONNX export.
3711
3712
3713
3714
3715
3716
    window_size: Optional[Tuple[int, int]], default = `None`
                sliding window size for local attention, where query at position i attends to keys
                in [i + seqlen_k - seqlen_q - window_size[0], i + seqlen_k - seqlen_q
                + window_size[1]] inclusive. Special cases (-1, -1) and (-1, 0) mean no sliding
                window and causal mask specifically. Similar to :attr:`attn_mask_type`, it can
                be overridden by :attr:`window_size` in `forward` as well.
3717
3718
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    num_gqa_groups : int, default = `None`
                         number of GQA groups in the transformer layer.
                         Grouped Query Attention is described in
                         `this paper <https://arxiv.org/pdf/2305.13245.pdf>`_.
                         This only affects the keys and values, not the querys.
                         GQA-1 is equivalent to Multi-Query Attention
                         (`MQA <https://arxiv.org/pdf/1911.02150.pdf>`_), while GQA-H
                         is equivalent to MHA, i.e. `num_gqa_groups = num_attention_heads`.
    return_layernorm_output : bool, default = `False`
                             if set to `True`, output of layernorm is returned from the forward
                             together with the output of the linear transformation.
                             Example use case: residual connection for transformer module is
                             taken post layernorm.
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    input_layernorm: bool, default = `False`
                     if set to `True`, layer normalization to the input is applied.
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    attention_type: { 'self', 'cross' }, default = 'self'
                   type of attention applied.
    zero_centered_gamma : bool, default = 'False'
                         if set to 'True', gamma parameter in LayerNorm is initialized to 0 and
                         the LayerNorm formula changes to

                         .. math::
                            y = \frac{x - \mathrm{E}[x]}{ \sqrt{\mathrm{Var}[x] + \varepsilon}} *
                            (1 + \gamma) + \beta
    normalization : { 'LayerNorm', 'RMSNorm' }, default = 'LayerNorm'
                   type of normalization applied.
    qkv_weight_interleaved : bool, default = `True`
                            if set to `False`, the QKV weight is interpreted as a concatenation of
                            query, key, and value weights along the `0th` dimension. The default
                            interpretation is that the individual `q`, `k`, and `v` weights for each
                            attention head are interleaved. This parameter is set to `False` when
                            using :attr:`fuse_qkv_params=False`.
    bias : bool, default = `True`
          if set to `False`, the transformer layer will not learn any additive biases.
    device : Union[torch.device, str], default = "cuda"
          The device on which the parameters of the model will allocated. It is the user's
          responsibility to ensure all parameters are moved to the GPU before running the
          forward pass.
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    qkv_format: str, default = `sbhd`
            dimension format for `query_layer`, `key_layer` and `value_layer`,
            {`sbhd`, `bshd`}. `s` stands for the sequence length, `b` batch size,
            `h` the number of heads and `d` head size. `sbhd` and `bshd` formats
            are used for when sequences in a batch are of equal length or padded to
            equal length. Please note that these formats do not reflect how
            tensors `query_layer`, `key_layer`, `value_layer` are laid out in memory.
            For that, please use `_get_qkv_layout` to gain the layout information.
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    Parallelism parameters
    ----------------------
    set_parallel_mode : bool, default = `False`
                      if set to `True`, QKV and FC1 layers are used as Column Parallel
                      whereas PROJ and FC2 is used as Row Parallel as described
                      `here <https://arxiv.org/pdf/1909.08053.pdf>`_.
    sequence_parallel : bool, default = `False`
                       if set to `True`, uses sequence parallelism.
    tp_group : ProcessGroup, default = `None`
              tensor parallel process group.
    tp_size : int, default = 1
             used as TP (tensor parallel) world size when TP groups are not formed during
             initialization. In this case, users must call the
             `set_tensor_parallel_group(tp_group)` method on the initialized module before the
             forward pass to supply the tensor parallel group needed for tensor and sequence
             parallel collectives.

    Optimization parameters
    -----------------------
    fuse_wgrad_accumulation : bool, default = 'False'
                             if set to `True`, enables fusing of creation and accumulation of
                             the weight gradient. When enabled, it is assumed that the weights
                             have an additional `main_grad` attribute (used instead of the
                             regular `grad`) which is a pre-allocated buffer of the correct
                             size to accumulate gradients in.
    params_dtype : torch.dtype, default = `torch.get_default_dtype()`
                  it controls the type used to allocate the initial parameters. Useful when
                  the model is trained with lower precision and the original FP32 parameters
                  would not fit in GPU memory.
    return_bias : bool, default = `False`
                 when set to `True`, this module will not apply the additive bias itself, but
                 instead return the bias value during the forward pass together with the
                 output of the linear transformation :math:`y = xA^T`. This is useful when
                 the bias addition can be fused to subsequent operations.
    fuse_qkv_params: bool, default = 'False'
                    if set to `True`, `TransformerLayer` module exposes a single fused
                    parameter for query-key-value. This enables optimizations such as QKV
                    fusion without concatentations/splits and also enables the argument
                    `fuse_wgrad_accumulation`.
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    """

    def __init__(
        self,
        hidden_size: int,
        num_attention_heads: int,
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        kv_channels: Optional[int] = None,
        attention_dropout: float = 0.1,
        layernorm_epsilon: float = 1e-5,
        init_method: Optional[Callable] = None,
        output_layer_init_method: Optional[Callable] = None,
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        layer_number: Optional[int] = None,
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        attn_mask_type: str = "causal",
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        window_size: Optional[Tuple[int, int]] = None,
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        tp_group: Optional[dist_group_type] = None,
        tp_size: int = 1,
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        num_gqa_groups: Optional[int] = None,
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        fuse_wgrad_accumulation: bool = False,
        get_rng_state_tracker: Optional[Callable] = None,
        sequence_parallel: bool = False,
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        params_dtype: Optional[torch.dtype] = None,
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        return_bias: bool = False,
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        return_layernorm_output: bool = False,
        input_layernorm: bool = False,
        attention_type: str = "self",
        set_parallel_mode: bool = False,
        fuse_qkv_params: bool = False,
        zero_centered_gamma: bool = False,
        qkv_weight_interleaved: bool = True,
        ub_bulk_wgrad: bool = False,
        ub_bulk_dgrad: bool = False,
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        ub_overlap_rs_dgrad: bool = False,
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        ub_overlap_rs: bool = False,
        ub_overlap_ag: bool = False,
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        bias: bool = True,
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        normalization: str = "LayerNorm",
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        device: Union[torch.device, str] = "cuda",
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        qkv_format: str = "sbhd",
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    ) -> None:
        super().__init__()
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        self.qkv_format = qkv_format
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        self.attn_mask_type = attn_mask_type
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        self.window_size = window_size
        self.window_size = check_set_window_size(attn_mask_type, self.window_size)
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        self.layer_number = layer_number
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        self.input_layernorm = input_layernorm
        self.attention_type = attention_type
        self.get_rng_state_tracker = get_rng_state_tracker
        self.tp_group = tp_group
        self.return_layernorm_output = return_layernorm_output
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        self.params_dtype = torch.get_default_dtype() if params_dtype is None else params_dtype
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        self.num_attention_heads = num_attention_heads
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        self.return_bias = return_bias

        kv_channels = kv_channels if kv_channels else (hidden_size // num_attention_heads)

        if init_method is None:
            init_method = get_default_init_method()
        if output_layer_init_method is None:
            output_layer_init_method = get_default_init_method()
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        if not fuse_qkv_params:
            qkv_weight_interleaved = False
        self.qkv_weight_interleaved = qkv_weight_interleaved

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        assert attention_type in AttnTypes, f"attention_type {attention_type} not supported"
        if layer_number is not None:
            assert layer_number > 0, "layer_number must be a positive integer"
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        tp_size = tp_size if tp_group is None else get_distributed_world_size(tp_group)
        self.tp_size = tp_size
        self.sequence_parallel = (tp_size > 1) and sequence_parallel

        self.hidden_size_per_attention_head = kv_channels
        self.num_attention_heads_per_partition = divide(num_attention_heads, tp_size)
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        self.num_gqa_groups = (
            num_attention_heads if num_gqa_groups is None else num_gqa_groups
        )
        assert (num_attention_heads % self.num_gqa_groups == 0
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                ), "The number of attention heads must be divisible by the number of GQA groups!"
        assert (self.num_gqa_groups % tp_size == 0
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                ), "The number of GQA groups must be divisible by tensor parallel size!"
        self.num_gqa_groups_per_partition = int(self.num_gqa_groups // tp_size)
        self.hidden_size_kv = int(hidden_size * self.num_gqa_groups // num_attention_heads)
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        common_gemm_kwargs = {
            "fuse_wgrad_accumulation": fuse_wgrad_accumulation,
            "tp_group": tp_group,
            "tp_size": tp_size,
            "get_rng_state_tracker": get_rng_state_tracker,
            "sequence_parallel": sequence_parallel,
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            "params_dtype": self.params_dtype,
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            "device": device,
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        }

        qkv_parallel_mode = "column" if set_parallel_mode else None

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        if self.attention_type == "self":
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            parameters_split = None
            if not fuse_qkv_params:
                parameters_split = collections.OrderedDict([
                    ("query", hidden_size),
                    ("key", self.hidden_size_kv),
                    ("value", self.hidden_size_kv),
                ])
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            if self.input_layernorm:
                self.layernorm_qkv = LayerNormLinear(
                    hidden_size,
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                    hidden_size + 2 * self.hidden_size_kv,
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                    eps=layernorm_epsilon,
                    init_method=init_method,
                    bias=bias,
                    return_bias=False,
                    parallel_mode=qkv_parallel_mode,
                    return_layernorm_output=return_layernorm_output,
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                    parameters_split=parameters_split,
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                    zero_centered_gamma=zero_centered_gamma,
                    ub_bulk_wgrad=ub_bulk_wgrad,
                    ub_bulk_dgrad=ub_bulk_dgrad,
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                    ub_overlap_rs_dgrad=ub_overlap_rs_dgrad,
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                    ub_overlap_ag=ub_overlap_ag,
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                    normalization=normalization,
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                    ub_name="qkv",
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                    **common_gemm_kwargs,
                )
            else:
                self.qkv = Linear(
                    hidden_size,
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                    hidden_size + 2 * self.hidden_size_kv,
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                    init_method=init_method,
                    bias=bias,
                    return_bias=False,
                    parallel_mode=qkv_parallel_mode,
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                    parameters_split=parameters_split,
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                    **common_gemm_kwargs,
                )
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        elif self.attention_type == "cross":
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            if self.input_layernorm:
                self.layernorm_query = LayerNormLinear(
                    hidden_size,
                    hidden_size,
                    eps=layernorm_epsilon,
                    init_method=init_method,
                    bias=bias,
                    return_bias=False,
                    parallel_mode=qkv_parallel_mode,
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                    parameters_split=("query",) if not fuse_qkv_params else None,
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                    return_layernorm_output=return_layernorm_output,
                    zero_centered_gamma=zero_centered_gamma,
                    ub_bulk_wgrad=ub_bulk_wgrad,
                    ub_bulk_dgrad=ub_bulk_dgrad,
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                    ub_overlap_rs_dgrad=ub_overlap_rs_dgrad,
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                    ub_overlap_ag=ub_overlap_ag,
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                    normalization=normalization,
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                    ub_name="qkv",
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                    **common_gemm_kwargs,
                )
            else:
                self.query_layer = Linear(
                    hidden_size,
                    hidden_size,
                    init_method=init_method,
                    bias=bias,
                    return_bias=False,
                    parallel_mode=qkv_parallel_mode,
                    **common_gemm_kwargs,
                )
            self.key_value = Linear(
                hidden_size,
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                2 * self.hidden_size_kv,
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                init_method=init_method,
                bias=bias,
                return_bias=False,
                parallel_mode=qkv_parallel_mode,
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                parameters_split=("key", "value") if not fuse_qkv_params else None,
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                **common_gemm_kwargs,
            )

        # Attention.
        self.core_attention = DotProductAttention(
            num_attention_heads,
            kv_channels,
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            num_gqa_groups=self.num_gqa_groups,
            attention_dropout=attention_dropout,
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            qkv_format=self.qkv_format,
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            tp_size=tp_size,
            get_rng_state_tracker=get_rng_state_tracker,
            sequence_parallel=sequence_parallel,
            tp_group=tp_group,
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            layer_number=self.layer_number,
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            attention_type=self.attention_type,
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        )

        # Linear
        self.proj = Linear(
            hidden_size,
            hidden_size,
            init_method=output_layer_init_method,
            bias=bias,
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            return_bias=return_bias,
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            parallel_mode="row" if set_parallel_mode else None,
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            ub_overlap_rs=ub_overlap_rs,
            ub_overlap_ag=ub_overlap_ag,
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            ub_name="proj",
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            **common_gemm_kwargs,
        )


    def _allocate_memory(
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        self, inference_max_sequence_len: int, batch_size: int, dtype: torch.dtype
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    ) -> torch.Tensor:
        return torch.empty(
            inference_max_sequence_len,
            batch_size,
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            self.num_gqa_groups_per_partition,
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            self.hidden_size_per_attention_head,
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            dtype=dtype,
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            device=torch.cuda.current_device(),
        )

    def set_tensor_parallel_group(self, tp_group: Union[dist_group_type, None]) -> None:
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        """
        Set the tensor parallel group for the given
        module before executing the forward pass.

        Parameters
        ----------
        tp_group : ProcessGroup, default = `None`
                  tensor parallel process group.
        """
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        self.tp_group = tp_group

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    def set_context_parallel_group(
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        self,
        cp_group: Union[dist_group_type, None],
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        cp_global_ranks: List[int],
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        cp_stream: torch.cuda.Stream,
    ) -> None:
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        """
        Set the context parallel attributes for the given
        module before executing the forward pass.

        Parameters
        ----------
        cp_group : ProcessGroup
                  context parallel process group.
        cp_global_ranks : List[int]
                         list of global ranks in the context group.
        cp_stream : torch.cuda.Stream
                   cuda stream for context parallel execution.
        """
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        # Deep iterate but skip self to avoid infinite recursion.
        for index, child in enumerate(self.modules()):
            if index == 0:
                continue
            if hasattr(child, "set_context_parallel_group"):
                child.set_context_parallel_group(cp_group, cp_global_ranks, cp_stream)
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    def forward(
        self,
        hidden_states: torch.Tensor,
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]] = None,
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        encoder_output: Optional[torch.Tensor] = None,
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        attn_mask_type: Optional[str] = None,
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        window_size: Optional[Tuple[int, int]] = None,
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        is_first_microbatch: Optional[bool] = None,
        checkpoint_core_attention: bool = False,
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        inference_params: Optional[InferenceParams] = None,
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        rotary_pos_emb: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]] = None,
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        core_attention_bias_type: str = "no_bias",
        core_attention_bias: Optional[torch.Tensor] = None,
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        alibi_slopes: Optional[torch.Tensor] = None,
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        fast_zero_fill: bool = True,
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    ) -> Tuple[Union[torch.Tensor, None], ...]:
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        """
        Forward propagation for MultiheadAttention layer.

        .. note::

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            Argument :attr:`attention_mask` is only used when :attr:`attn_mask_type`
            includes `"padding"` or `"arbitrary"`.
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        Parameters
        ----------
        hidden_states : torch.Tensor
             Input tensor.
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        attention_mask: Optional[Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]]],
             default = `None`. Boolean tensor(s) used to mask out attention softmax input.
             It should be 'None' for 'causal' and 'no_mask' types. For 'padding' masks, it should be
             a single tensor of [batch_size, 1, 1, seqlen_q] for self-attention, and a tuple of
             two tensors in shapes [batch_size, 1, 1, seqlen_q] and [batch_size, 1, 1, seqlen_kv]
             for cross-attention. For the 'arbitrary' mask type, it should be in a shape that is
             broadcastable to [batch_size, num_heads, max_seqlen_q, max_seqlen_kv].
        attn_mask_type: {'no_mask', 'padding', 'causal', 'padding_causal', 'arbitrary'},
                       default = `None`
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                       type of attention mask passed into softmax operation.
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        window_size: Optional[Tuple[int, int]], default = `None`
                    sliding window size for local attention.
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        encoder_output : Optional[torch.Tensor], default = `None`
             Output of the encoder block to be fed into the decoder block if using
             `layer_type="decoder"`.
        is_first_microbatch : {True, False, None}, default = None
                             During training using either gradient accumulation or
                             pipeline parallelism a minibatch of data is further split
                             into microbatches. Between the microbatches of the same minibatch
                             the model weights are not updated. Setting this parameter indicates
                             whether the current microbatch is the first in a minibatch or not.
                             When set, this parameter enables additional optimizations:

                             * during FP8 training, it allows caching of the FP8 versions of
                               the weights
                             * it also allows skipping gradient accumulation during the
                               first microbatch (since it is the first gradient being
                               produced)
        checkpoint_core_attention: bool, default = `False`
                                  If true, forward activations for core attention are recomputed
                                  during the backward pass in order to save memory that would
                                  otherwise be occupied to store the forward activations until
                                  backprop.
        rotary_pos_emb: Union[torch.Tensor, Tuple[torch.Tensor, torch.Tensor]], default = `None`
                       Embeddings for query and key tensors for applying rotary position
                       embedding. By default no input embedding is applied.
        core_attention_bias_type: str, default = `no_bias`
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                    Bias type, {`no_bias`, `pre_scale_bias`, 'post_scale_bias`, `alibi`}
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        core_attention_bias: Optional[torch.Tensor], default = `None`
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                    Bias tensor for Q * K.T, shape [1, num_head, max_seqlen_q, max_seqlen_kv].
                    It should be 'None' for 'no_bias' and 'alibi' bias types.
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        alibi_slopes: Optional[torch.Tensor], default = `None`
                     ALiBi slopes in FP32 and shape [nheads] or [batch_size, nheads].
                     It adds a bias of (-alibi_slope * (i + seqlen_k - seqlen_q - j))
                     to the attention score of query i and key j.
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        fast_zero_fill: bool, default = `True`
                    Whether to set output tensors to 0 or not before use.
        """
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        # hidden_states: [sq, b, h]

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        if attn_mask_type is not None:
            window_size = check_set_window_size(attn_mask_type, window_size)
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        if attn_mask_type is None:
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            attn_mask_type = self.attn_mask_type
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        if window_size is None:
            window_size = self.window_size
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        if "padding" in attn_mask_type and attention_mask is not None:
            for i,_ in enumerate(attention_mask):
                assert (
                    attention_mask[i].dtype == torch.bool
                ), "Attention mask must be in boolean type!"
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        assert (core_attention_bias_type in AttnBiasTypes
                ), f"core_attention_bias_type {core_attention_bias_type} is not supported!"
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        # =================================================
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        # Pre-allocate memory for key-values for inference
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        # =================================================

        if inference_params and self.layer_number is not None:
            if self.layer_number not in inference_params.key_value_memory_dict:
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                inf_max_seq_len = inference_params.max_sequence_length
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                inf_max_batch_size = inference_params.max_batch_size
                inference_key_memory = self._allocate_memory(
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                    inf_max_seq_len, inf_max_batch_size, hidden_states.dtype
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                )
                inference_value_memory = self._allocate_memory(
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                    inf_max_seq_len, inf_max_batch_size, hidden_states.dtype
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                )
                inference_params.key_value_memory_dict[self.layer_number] = (
                    inference_key_memory,
                    inference_value_memory,
                )
            else:
                (
                    inference_key_memory,
                    inference_value_memory,
                ) = inference_params.key_value_memory_dict[self.layer_number]

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        # ======================
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        # Query, Key, and Value
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        # ======================
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        if self.attention_type == "self":
            # Attention heads [sq, b, h] --> [sq, b, ng * (np/ng + 2) * hn]
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            if self.input_layernorm:
                layernorm_qkv_outputs = self.layernorm_qkv(
                    hidden_states,
                    is_first_microbatch=is_first_microbatch,
                )
                if self.return_layernorm_output:
                    mixed_x_layer, layernorm_output = layernorm_qkv_outputs
                else:
                    mixed_x_layer = layernorm_qkv_outputs
            else:
                mixed_x_layer = self.qkv(
                    hidden_states,
                    is_first_microbatch=is_first_microbatch,
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                    is_first_module_in_mha=True, # specific to FP8 MHA
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                )

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            num_queries_per_key_value = (self.num_attention_heads_per_partition //
                                         self.num_gqa_groups_per_partition)
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            if self.qkv_weight_interleaved:
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                # [sq, b, ng * (np/ng + 2) * hn] --> [sq, b, ng, (np/ng + 2), hn]
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                new_tensor_shape = mixed_x_layer.size()[:-1] + (
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                    self.num_gqa_groups_per_partition,
                    (num_queries_per_key_value + 2),
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                    self.hidden_size_per_attention_head,
                )
                # split along second last dimension
                split_dim = -2
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            else:
                # [sq, b, ng * (np/ng + 2) * hn] --> [sq, b, (np/ng + 2), ng, hn]
                new_tensor_shape = mixed_x_layer.size()[:-1] + (
                    (num_queries_per_key_value + 2),
                    self.num_gqa_groups_per_partition,
                    self.hidden_size_per_attention_head
                )
                # split along third last dimension
                split_dim = -3
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            mixed_x_layer = mixed_x_layer.view(*new_tensor_shape)

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            # qkv_weight_interleaved:
            #  [sq, b, ng, (np/ng + 2), hn]
            #  --> [sq, b, ng, np/ng, hn], [sq, b, ng, 1, hn], [sq, b, ng, 1, hn]
            # not qkv_weight_interleaved:
            #  [sq, b, (np/ng + 2), ng, hn]
            #  --> [sq, b, np/ng, np, hn], [sq, b, 1, ng, hn], [sq, b, 1, ng, hn]
            if not is_in_onnx_export_mode():
                query_layer, key_layer, value_layer = _SplitAlongDim.apply(
                    mixed_x_layer, split_dim, (num_queries_per_key_value, 1, 1)
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                )
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            else:
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                query_layer, key_layer, value_layer = torch.split(
                    mixed_x_layer, (num_queries_per_key_value, 1, 1), dim = split_dim,
                 )

            # query: -> [sq, b, np, hn]
            # key, value: -> [sq, b, ng, hn]
            query_layer, key_layer, value_layer = (x.reshape(x.size(0), x.size(1), -1,
                                                             self.hidden_size_per_attention_head)
                                                   for x in (query_layer, key_layer, value_layer))

        elif self.attention_type == "cross":
            # Attention heads [sk, b, h] --> [sk, b, (ng * 2 * hn)]
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            mixed_kv_layer = self.key_value(
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                encoder_output,
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                is_first_microbatch=is_first_microbatch,
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                is_first_module_in_mha=True, # specific to FP8 MHA
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            )

            if self.qkv_weight_interleaved:
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                # [sq, b, (ng * 2 * hn)] --> [sq, b, ng, 2 * hn]
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                new_tensor_shape = mixed_kv_layer.size()[:-1] + (
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                    self.num_gqa_groups_per_partition,
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                    2 * self.hidden_size_per_attention_head,
                )
                # split along last dimension
                split_dim = -1
            else:
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                # [sq, b, (ng * 2 * hn)] --> [sq, b, 2 * ng, hn]
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                new_tensor_shape = mixed_kv_layer.size()[:-1] + (
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                    2 * self.num_gqa_groups_per_partition,
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                    self.hidden_size_per_attention_head,
                )
                # split along second last dimension
                split_dim = -2

            mixed_kv_layer = mixed_kv_layer.view(*new_tensor_shape)

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            # mixed_kv_layer --> 2 [sk, b, ng, hn]
            if not is_in_onnx_export_mode():
                key_layer, value_layer = _SplitAlongDim.apply(
                    mixed_kv_layer, split_dim, mixed_kv_layer.shape[split_dim] // 2,
                )
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            else:
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                key_layer, value_layer = torch.split(
                    mixed_kv_layer, mixed_kv_layer.shape[split_dim] // 2, dim = split_dim,
                )
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            key_layer, value_layer = (x.reshape(
                x.size(0), x.size(1), -1, self.hidden_size_per_attention_head,
                ) for x in (key_layer, value_layer))
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            # Attention head [sq, b, h] --> [sq, b, hp]
            if self.input_layernorm:
                layernorm_query_outputs = self.layernorm_query(
                    hidden_states,
                    is_first_microbatch=is_first_microbatch,
                )
                if self.return_layernorm_output:
                    query_layer, layernorm_output = layernorm_query_outputs
                else:
                    query_layer = layernorm_query_outputs
            else:
                query_layer = self.query_layer(
                    hidden_states,
                    is_first_microbatch=is_first_microbatch,
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                )

            # [sq, b, hp] --> [sq, b, np, hn]
            new_tensor_shape = query_layer.size()[:-1] + (
                self.num_attention_heads_per_partition,
                self.hidden_size_per_attention_head,
            )
            query_layer = query_layer.view(*new_tensor_shape)

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        # ======================================================
        # Apply relative positional encoding (rotary embedding)
        # ======================================================
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        if rotary_pos_emb is not None:
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            assert (not isinstance(query_layer, Float8Tensor)
                and not isinstance(key_layer, Float8Tensor)
                ), "RoPE is not supported for Float8Tensors!"
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            # duplicate the pos_emb for self attention
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            if not isinstance(rotary_pos_emb, tuple):
                rotary_pos_emb = ((rotary_pos_emb,) * 2)

            q_pos_emb, k_pos_emb = rotary_pos_emb
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            # adjust key and value for inference
            if inference_params is not None:
                if self.qkv_format == "sbhd":
                    sequence_length = key_layer.size(0)
                elif self.qkv_format == "bshd":
                    sequence_length = key_layer.size(1)

                sequence_start = inference_params.sequence_len_offset
                sequence_end = sequence_start + sequence_length

                q_pos_emb = q_pos_emb[sequence_start:sequence_end, ...]
                k_pos_emb = k_pos_emb[sequence_start:sequence_end, ...]

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            query_layer = apply_rotary_pos_emb(query_layer, q_pos_emb, self.qkv_format, fused=True)
            key_layer = apply_rotary_pos_emb(key_layer, k_pos_emb, self.qkv_format, fused=True)
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        # ===========================
        # Core attention computation
        # ===========================

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        context_layer = self.core_attention(
            query_layer,
            key_layer,
            value_layer,
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            qkv_format=self.qkv_format,
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            cu_seqlens_q=None,
            cu_seqlens_kv=None,
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            attention_mask=attention_mask,
            attn_mask_type=attn_mask_type,
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            window_size=window_size,
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            checkpoint_core_attention=checkpoint_core_attention,
            core_attention_bias_type=core_attention_bias_type,
            core_attention_bias=core_attention_bias,
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            alibi_slopes=alibi_slopes,
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            fast_zero_fill=fast_zero_fill,
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            inference_params=inference_params,
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        )

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        # ===================
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        # Output. [sq, b, h]
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        # ===================
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        projection_output = self.proj(
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            context_layer,
            is_first_microbatch=is_first_microbatch,
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        )

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        if self.return_bias:
            attention_output, attention_bias = projection_output
        else:
            attention_output, attention_bias = projection_output, None

        outputs = (attention_output,)
        if self.return_bias:
            outputs += (attention_bias,)
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        if self.input_layernorm and self.return_layernorm_output:
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            outputs += (layernorm_output,)
        return outputs if len(outputs) > 1 else outputs[0]