test_numerics.py 94.2 KB
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# Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
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#
# See LICENSE for license information.

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import math
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import os
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from typing import Dict, List, Tuple, Optional
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import pytest
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import random
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import torch
import torch.nn as nn
from torch.nn import Parameter

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from transformer_engine.pytorch.quantization import (
    FP8GlobalStateManager,
    get_align_size_for_quantization,
)
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from transformer_engine.pytorch.utils import (
    init_method_normal,
    scaled_init_method_normal,
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    attention_mask_func,
)
from transformer_engine.pytorch import (
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    autocast,
    quantized_model_init,
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    DotProductAttention,
    LayerNormLinear,
    LayerNormMLP,
    Linear,
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    GroupedLinear,
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    MultiheadAttention,
    RMSNorm,
    TransformerLayer,
    LayerNorm,
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    Fp8Padding,
    Fp8Unpadding,
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    Float8Quantizer,
    Float8CurrentScalingQuantizer,
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    MXFP8Quantizer,
    get_device_compute_capability,
    is_fp8_available,
    is_mxfp8_available,
    is_fp8_block_scaling_available,
    is_bf16_available,
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    is_nvfp4_available,
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)
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from transformer_engine.pytorch import checkpoint as te_checkpoint
from transformer_engine.pytorch.cpp_extensions import general_gemm, general_grouped_gemm
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from transformer_engine.common import recipe
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import transformer_engine_torch as tex
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from utils import ModelConfig, reset_rng_states
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# Only run FP8 tests on supported devices.
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fp8_available, reason_for_no_fp8 = is_fp8_available(return_reason=True)
mxfp8_available, reason_for_no_mxfp8 = is_mxfp8_available(return_reason=True)
fp8_block_scaling_available = is_fp8_block_scaling_available()
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nvfp4_available = is_nvfp4_available()
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sm_80plus = get_device_compute_capability() >= (8, 0)
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seed = 1234
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# Reset RNG states.
reset_rng_states()
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torch._dynamo.config.recompile_limit = 16

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model_configs = {
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    "small": ModelConfig(1, 128, 8, 16, num_layers=4),
    "126m": ModelConfig(1, 2048, 12, 64, num_layers=12),
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}
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model_configs_inference = {
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    "126m": ModelConfig(1, 256, 12, 64, num_layers=12),
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}
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backends_inference = ["FlashAttention", "UnfusedAttention", "FusedAttention"]
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module_inference = ["TransformerLayer", "MultiheadAttention"]
input_formats_inference = ["sbhd", "bshd"]

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param_types = [torch.float32, torch.float16]
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if is_bf16_available():  # bf16 requires sm_80 or higher
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    param_types.append(torch.bfloat16)

batch_sizes = [1, 2]

all_boolean = [True, False]

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all_activations = [
    "gelu",
    "geglu",
    "qgelu",
    "qgeglu",
    "relu",
    "reglu",
    "srelu",
    "sreglu",
    "silu",
    "swiglu",
]
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all_normalizations = ["LayerNorm", "RMSNorm"]

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mask_types = ["causal", "no_mask"]

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NVTE_TEST_NVINSPECT_ENABLED = int(os.environ.get("NVTE_TEST_NVINSPECT_ENABLED", "0"))
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if NVTE_TEST_NVINSPECT_ENABLED:
    # The numerics of all the layers should work the same,
    # when debug=True. I fed them with dummy feature
    # to prevent switching off debug, which can happen if
    # no feature is active.
    import nvdlfw_inspect.api as debug_api

    debug_api.initialize(
        os.environ["NVTE_TEST_NVINSPECT_CONFIG_FILE"],
        feature_dirs=os.environ["NVTE_TEST_NVINSPECT_FEATURE_DIRS"],
    )

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def nvfp4_rht_and_2d_quantization():
    nvfp4_recipe = recipe.NVFP4BlockScaling()
    nvfp4_recipe.fp4_quant_fwd_inp = recipe.QParams(
        random_hadamard_transform=True, fp4_2d_quantization=False
    )
    nvfp4_recipe.fp4_quant_fwd_weight = recipe.QParams(
        random_hadamard_transform=False, fp4_2d_quantization=True
    )
    nvfp4_recipe.fp4_quant_bwd_grad = recipe.QParams(
        random_hadamard_transform=True, fp4_2d_quantization=False
    )
    return nvfp4_recipe


def check_rht_usage(recipe: recipe.Recipe) -> bool:
    # if using RHT, we can only support bf16
    # check fp4_quant_fwd_inp, fp4_quant_fwd_weight, fp4_quant_bwd_grad
    if recipe.nvfp4():
        if (
            recipe.fp4_quant_fwd_inp.random_hadamard_transform
            or recipe.fp4_quant_fwd_weight.random_hadamard_transform
            or recipe.fp4_quant_bwd_grad.random_hadamard_transform
        ):
            return True
    return False


def get_nvfp4_inp_supported_dtypes(recipe: recipe.Recipe, dtype: torch.dtype) -> bool:
    supported_input_dtypes = []
    if recipe.nvfp4():
        supported_input_dtypes.append(torch.bfloat16)
        # if not using RHT, we can add fp32 as well
    if not check_rht_usage(recipe):
        supported_input_dtypes.append(torch.float32)
    return supported_input_dtypes


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fp8_recipes = []
if mxfp8_available:
    fp8_recipes.append(recipe.MXFP8BlockScaling())
if fp8_block_scaling_available:
    fp8_recipes.append(recipe.Float8BlockScaling())
if fp8_available:
    fp8_recipes.append(recipe.Float8CurrentScaling())
    fp8_recipes.append(recipe.DelayedScaling())
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if nvfp4_available:
    fp8_recipes.append(nvfp4_rht_and_2d_quantization())
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use_cutlass_grouped_gemm = [False]
# Only enable cutlass grouped gemm on Hopper
if torch.cuda.get_device_capability() == (9, 0):
    use_cutlass_grouped_gemm.append(True)

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def get_causal_attn_mask(sq: int) -> torch.Tensor:
    return torch.triu(torch.ones(sq, sq, device="cuda"), diagonal=1).bool()


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def dtype_tols(dtype: torch.dtype) -> Dict[str, float]:
    """Estimated numerical error for a datatype
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    Based on tolerances for torch.testing.assert_close.
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    """
    if dtype == torch.float32:
        return dict(rtol=1.3e-6, atol=1e-5)
    if dtype == torch.float16:
        return dict(rtol=1e-3, atol=1e-5)
    if dtype == torch.bfloat16:
        return dict(rtol=1.6e-2, atol=1e-5)
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    raise ValueError(f"Unsupported dtype ({dtype})")
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def assert_allclose(
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    l1: List[torch.Tensor], l2: List[torch.Tensor], atol: float = None, rtol: float = None
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) -> bool:
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    """Ensures two lists are equal."""
    assert len(l1) == len(l2), "Unequal number of outputs."
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    for i, (t1, t2) in enumerate(zip(l1, l2)):
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        tols = dtype_tols(t2.dtype)
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        if rtol is not None:
            tols["rtol"] = rtol
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        if atol is not None:
            tols["atol"] = atol
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        result = torch.allclose(t1, t2, **tols)
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        if not result:
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            diff = torch.abs(t1 - t2)
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            tol = tols["atol"] + (tols["rtol"] * torch.abs(t2))
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            exceed_mask = diff > tol
            if exceed_mask.any():
                indices = torch.nonzero(exceed_mask, as_tuple=True)
                max_diff = diff[exceed_mask].max()
                max_idx = (diff[exceed_mask] == max_diff).nonzero(as_tuple=True)[0][0]
                max_location = [idx[max_idx].item() for idx in indices]
                msg = (
                    f"Outputs not close enough in tensor at idx={i}. "
                    f"Maximum difference at location {max_location} "
                    f"with {t1[exceed_mask][max_idx].item()} vs {t2[exceed_mask][max_idx].item()} "
                    f"(diff {max_diff.item()})."
                )
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            raise AssertionError(msg)
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@pytest.fixture(autouse=True)
def reset_global_fp8_state():
    yield
    FP8GlobalStateManager.reset()
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class TorchScaledMaskedSoftmax(nn.Module):
    def __init__(self) -> None:
        super().__init__()

    def forward(
        self, inp: torch.Tensor, mask: torch.Tensor, scale: Optional[float] = None
    ) -> torch.Tensor:
        dtype = inp.dtype
        inp = inp.float()

        if scale is not None:
            inp = inp * scale
        mask_output = attention_mask_func(inp, mask) if mask is not None else inp

        probs = torch.nn.Softmax(dim=-1)(mask_output)
        probs = probs.to(dtype)
        return probs


class TorchDotProductAttention(torch.nn.Module):
    def __init__(
        self,
        kv_channels: int,
        attention_dropout: float = 0.0,
    ) -> None:
        super().__init__()

        self.norm_factor = math.sqrt(kv_channels)
        self.scale_mask_softmax = TorchScaledMaskedSoftmax()
        self.attention_dropout = torch.nn.Dropout(attention_dropout)

    def forward(
        self,
        query_layer: torch.Tensor,
        key_layer: torch.Tensor,
        value_layer: torch.Tensor,
        attention_mask: Optional[torch.Tensor] = None,
    ) -> torch.Tensor:
        batch_size, seqlen = query_layer.shape[1], query_layer.shape[0]

        # [b, np, sq, sk]
        output_size = (
            query_layer.size(1),
            query_layer.size(2),
            query_layer.size(0),
            key_layer.size(0),
        )

        # [sq, b, np, hn] -> [sq, b * np, hn]
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        query_layer = query_layer.reshape(output_size[2], output_size[0] * output_size[1], -1)
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        # [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]
        matmul_result = torch.empty(
            output_size[0] * output_size[1],
            output_size[2],
            output_size[3],
            dtype=query_layer.dtype,
            device=torch.cuda.current_device(),
        )

        # Raw attention scores. [b * np, sq, sk]
        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 / self.norm_factor),
        )

        # change view to [b, np, sq, sk]
        attention_scores = matmul_result.view(*output_size)

        # attention scores and attention mask [b, np, sq, sk]
        attention_probs = self.scale_mask_softmax(attention_scores, attention_mask)
        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]
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        value_layer = value_layer.reshape(value_layer.size(0), output_size[0] * output_size[1], -1)
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        # change view [b * np, sq, sk]
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        attention_probs = attention_probs.view(output_size[0] * output_size[1], output_size[2], -1)
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        # 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)

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

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

        return context_layer

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class TorchLayerNorm(nn.Module):
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    def __init__(self, in_features: int, eps: float, zero_centered_gamma: bool):
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        super().__init__()
        self.eps = eps
        self.in_features = in_features
        self.zero_centered_gamma = zero_centered_gamma

        initial_value = torch.ones(in_features) if zero_centered_gamma else torch.zeros(in_features)
        self.weight = nn.Parameter(initial_value)
        self.bias = nn.Parameter(torch.zeros(in_features))
        self.register_parameter("weight", self.weight)
        self.register_parameter("bias", self.bias)

    def forward(self, x: torch.Tensor) -> torch.Tensor:
        w = self.weight if not self.zero_centered_gamma else 1 + self.weight
        w = w.to(torch.float32)
        b = self.bias.to(torch.float32)
        inp = x.to(torch.float32)
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        out = torch.nn.functional.layer_norm(
            inp, (self.in_features,), weight=w, bias=b, eps=self.eps
        )
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        return out.to(x.dtype)

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# Adapted from https://github.com/bzhangGo/rmsnorm/blob/c6691f20ec0af4128c8159c903071f7575404295/rmsnorm_torch.py
class TorchRMSNorm(nn.Module):
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    def __init__(self, in_features, zero_centered_gamma, eps=1e-5):
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        super().__init__()

        self.eps = eps
        self.in_features = in_features
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        self.zero_centered_gamma = zero_centered_gamma
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        initial_value = torch.ones(in_features) if zero_centered_gamma else torch.zeros(in_features)
        self.weight = nn.Parameter(initial_value)
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        self.register_parameter("weight", self.weight)

    def forward(self, x):
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        norm_x2 = torch.sum(x.float() ** 2, dim=-1, keepdim=True)
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        d_x = self.in_features

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        rms_x2 = norm_x2 / d_x + self.eps
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        r_rms_x = rms_x2 ** (-1.0 / 2)
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        x_normed = x * r_rms_x
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        w = self.weight.float()
        if self.zero_centered_gamma:
            w = 1 + w
        return (w * x_normed).to(x.dtype)
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class TorchLayerNormLinear(nn.Module):
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    def __init__(
        self,
        in_features: int,
        out_features: int,
        eps: float,
        normalization: str = "LayerNorm",
        zero_centered_gamma: bool = False,
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        bias: bool = True,
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    ):
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        super().__init__()
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        if normalization == "LayerNorm":
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            self.layernorm = TorchLayerNorm(
                in_features, eps=eps, zero_centered_gamma=zero_centered_gamma
            )
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        elif normalization == "RMSNorm":
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            self.layernorm = TorchRMSNorm(
                in_features, eps=eps, zero_centered_gamma=zero_centered_gamma
            )
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        else:
            raise RuntimeError("Unsupported normalization")

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        self.linear = nn.Linear(in_features, out_features, bias=bias)
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    def forward(self, x: torch.Tensor) -> torch.Tensor:
        return self.linear(self.layernorm(x))


class TorchMHA(nn.Module):
    def __init__(self, hidden_size: int, num_attention_heads: int):
        super().__init__()
        self.mhsa = nn.MultiheadAttention(
            embed_dim=hidden_size,
            num_heads=num_attention_heads,
            dropout=0.1,
            bias=True,
            batch_first=False,
        )

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    def forward(self, x, attention_mask=None):
        output = self.mhsa(x, x, x, attn_mask=attention_mask, need_weights=False)
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        if isinstance(output, tuple):
            output = output[0]
        return output

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class TorchQuickGELU(nn.Module):
    def forward(self, input: torch.Tensor) -> torch.Tensor:
        return input * torch.sigmoid(1.702 * input)
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class TorchSquaredRELU(nn.Module):
    def forward(self, input: torch.Tensor) -> torch.Tensor:
        return (input > 0) * input * input

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class TorchGroupedLinearWithPadding(nn.Module):

    def __init__(
        self, num_gemms, in_features, out_features, bias, params_dtype, parallel_mode, fp8
    ) -> None:
        super().__init__()

        self.padding = Fp8Padding(num_gemms)
        self.linear_fn = GroupedLinear(
            num_gemms,
            in_features,
            out_features,
            bias=bias,
            params_dtype=params_dtype,
            parallel_mode=parallel_mode,
            device="cuda",
        )
        self.unpadding = Fp8Unpadding(num_gemms)

        self.fp8 = fp8

    def forward(self, inp: torch.Tensor, m_splits: List[int]) -> torch.Tensor:
        if self.fp8:
            orig_m_splits = m_splits
            inp, m_splits = self.padding(inp, m_splits)

        out = self.linear_fn(inp, m_splits)

        if self.fp8:
            out = self.unpadding(out, orig_m_splits)

        return out


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_supported_act = {
    "gelu": nn.GELU(approximate="tanh"),
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    "geglu": nn.GELU(approximate="tanh"),
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    "qgelu": TorchQuickGELU(),
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    "qgeglu": TorchQuickGELU(),
    "relu": nn.ReLU(),
    "reglu": nn.ReLU(),
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    "srelu": TorchSquaredRELU(),
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    "sreglu": TorchSquaredRELU(),
    "silu": nn.SiLU(),
    "swiglu": nn.SiLU(),
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}
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class TorchGLU(nn.Module):
    def __init__(self, activation: str):
        super().__init__()
        self.act = _supported_act[activation]

    def forward(self, x):
        shape = x.size(-1)
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        a = x[..., : shape // 2]
        b = x[..., (shape // 2) :]
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        a = self.act(a)
        return a * b
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class TorchLayerNormMLP(nn.Module):
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    def __init__(
        self,
        hidden_size: int,
        ffn_hidden_size: int,
        eps: float = 1e-5,
        activation="gelu",
        normalization: str = "LayerNorm",
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        bias: bool = True,
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    ):
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        super().__init__()
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        if normalization == "LayerNorm":
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            self.ln = TorchLayerNorm(hidden_size, eps=eps, zero_centered_gamma=False)
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        elif normalization == "RMSNorm":
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            self.ln = TorchRMSNorm(hidden_size, eps=eps, zero_centered_gamma=False)
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        else:
            raise RuntimeError("Unsupported normalization")
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        if "glu" in activation:
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            fc1_output_features = 2 * ffn_hidden_size
            self.gelu = TorchGLU(activation)
        else:
            fc1_output_features = ffn_hidden_size
            self.gelu = _supported_act[activation]

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        self.fc1 = nn.Linear(hidden_size, fc1_output_features, bias=bias)
        self.fc2 = nn.Linear(ffn_hidden_size, hidden_size, bias=bias)
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    def forward(self, x):
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        t = self.gelu(self.fc1(self.ln(x)))
        return self.fc2(t)
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class TorchGPT(nn.Module):
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    def __init__(
        self, hidden_size: int, eps: float, num_attention_heads: int, parallel_attention_mlp: bool
    ):
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        super().__init__()
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        self.ln = nn.LayerNorm(hidden_size, eps=eps)
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        self.causal_attn = TorchMHA(hidden_size, num_attention_heads)
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        self.ln_mlp = TorchLayerNormMLP(hidden_size, 4 * hidden_size, eps)
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        self.parallel_attention_mlp = parallel_attention_mlp
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    def forward(
        self,
        x: torch.Tensor,
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        attention_mask: Optional[torch.Tensor] = None,
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    ) -> torch.Tensor:
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        a = self.ln(x)
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        b = self.causal_attn(a, attention_mask)
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        if self.parallel_attention_mlp:
            n = self.ln_mlp(x)
            x = x + nn.functional.dropout(b + n, p=0.1, training=self.training)
        else:
            x = x + nn.functional.dropout(b, p=0.1, training=self.training)
            n = self.ln_mlp(x)
            x = x + nn.functional.dropout(n, p=0.1, training=self.training)
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        return x


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567
def _test_e2e_selective_recompute(
    bs, dtype, config, fp8, recipe, fp8_model_params=False, recompute=False
):
568
    reset_rng_states()
569
    FP8GlobalStateManager.reset()
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572
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574

    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)

575
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
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        block = TransformerLayer(
            config.hidden_size,
            4 * config.hidden_size,
579
            config.num_heads,
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            layernorm_epsilon=config.eps,
            init_method=init_method,
            output_layer_init_method=output_layer_init_method,
            hidden_dropout=0.1,
            attention_dropout=0.1,
585
            kv_channels=config.kv_channels,
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            apply_residual_connection_post_layernorm=False,
            output_layernorm=False,
            params_dtype=dtype,
            fuse_qkv_params=True,
            device="cuda",
591
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593
        )

    te_inp_hidden_states = torch.randn(
594
        (config.max_seqlen_q, bs, config.hidden_size),
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        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
599
    te_inp_hidden_states.retain_grad()
600
    te_inp_attn_mask = get_causal_attn_mask(config.max_seqlen_q)
601

602
    with autocast(enabled=fp8, recipe=recipe):
603
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        te_out = block(
            te_inp_hidden_states,
605
            attention_mask=te_inp_attn_mask,
606
            checkpoint_core_attention=recompute,
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        )
    loss = te_out.sum()
    loss.backward()
    torch.cuda.synchronize()

    outputs = [te_out, te_inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
            outputs.append(p.grad)
    return outputs


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
621
@pytest.mark.parametrize("model", ["126m"])
622
@pytest.mark.parametrize("fp8", all_boolean)
623
@pytest.mark.parametrize("recipe", fp8_recipes)
624
@pytest.mark.parametrize("fp8_model_params", all_boolean)
625
def test_gpt_selective_activation_recompute(dtype, bs, model, fp8, recipe, fp8_model_params):
626
627
    if fp8_model_params and NVTE_TEST_NVINSPECT_ENABLED:
        pytest.skip("FP8 parameters are not supported in debug mode.")
628
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631
632
    if fp8 and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )
633

634
635
    config = model_configs[model]

636
    outputs = _test_e2e_selective_recompute(
637
        bs, dtype, config, fp8, recipe, fp8_model_params, recompute=False
638
639
    )
    outputs_recompute = _test_e2e_selective_recompute(
640
        bs, dtype, config, fp8, recipe, fp8_model_params, recompute=True
641
    )
642
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648

    # Check that results match
    tols = dtype_tols(dtype)
    if dtype in (torch.float16, torch.bfloat16):
        tols["atol"] = 1e-4
    if fp8 or fp8_model_params:
        tols.update(dict(rtol=0.125, atol=0.0675))
649

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    for i, (ref, test) in enumerate(zip(outputs, outputs_recompute)):
        torch.testing.assert_close(
            test,
            ref,
            msg=f"Mismatch in tensor {i}",
            **tols,
        )
657
658


659
def _test_e2e_full_recompute(
660
    bs, dtype, config, fp8, recipe, fp8_model_params=False, recompute=False, use_reentrant=True
661
):
662
663
664
    reset_rng_states()
    FP8GlobalStateManager.reset()

665
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667
668
    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)

669
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
670
        block = TransformerLayer(
671
672
            config.hidden_size,
            4 * config.hidden_size,
673
            config.num_heads,
674
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678
            layernorm_epsilon=config.eps,
            init_method=init_method,
            output_layer_init_method=output_layer_init_method,
            hidden_dropout=0.1,
            attention_dropout=0.1,
679
            kv_channels=config.kv_channels,
680
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682
            apply_residual_connection_post_layernorm=False,
            output_layernorm=False,
            params_dtype=dtype,
683
            fuse_qkv_params=True,
684
            device="cuda",
685
        )
686

687
    te_inp_hidden_states = torch.randn(
688
        (config.max_seqlen_q, bs, config.hidden_size),
689
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692
        dtype=dtype,
        device="cuda",
        requires_grad=use_reentrant,
    )
693
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    if use_reentrant:
        te_inp_hidden_states.retain_grad()
695
    te_inp_attn_mask = get_causal_attn_mask(config.max_seqlen_q)
696

697
    with autocast(enabled=fp8, recipe=recipe):
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        if recompute:
            te_out = te_checkpoint(
                block,
                te_inp_hidden_states,
                attention_mask=te_inp_attn_mask,
                checkpoint_core_attention=False,
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                distribute_saved_activations=False,
                tp_group=None,
                use_reentrant=use_reentrant,
707
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717
            )
        else:
            te_out = block(
                te_inp_hidden_states,
                attention_mask=te_inp_attn_mask,
                checkpoint_core_attention=False,
            )
    loss = te_out.sum()
    loss.backward()
    torch.cuda.synchronize()

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723
    outputs = [te_out]
    names = ["output"]
    if use_reentrant:
        outputs.append(te_inp_hidden_states.grad)
        names.append("input")
    for name, p in block.named_parameters():
724
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        if p.requires_grad:
            outputs.append(p.grad)
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            names.append(name)

    return outputs, names
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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
733
@pytest.mark.parametrize("model", ["126m"])
734
@pytest.mark.parametrize("fp8", all_boolean)
735
@pytest.mark.parametrize("recipe", fp8_recipes)
736
@pytest.mark.parametrize("fp8_model_params", all_boolean)
737
@pytest.mark.parametrize("use_reentrant", all_boolean)
738
739
740
def test_gpt_full_activation_recompute(
    dtype, bs, model, fp8, recipe, fp8_model_params, use_reentrant
):
741
742
    if fp8_model_params and NVTE_TEST_NVINSPECT_ENABLED:
        pytest.skip("FP8 parameters are not supported in debug mode.")
743
744
745
746
747
    if fp8 and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )
748
749
750

    config = model_configs[model]

751
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754
    if not use_reentrant:
        # Non-reentrant checkpoint becomes non-deterministic with bias+GELU fusion
        os.environ["NVTE_BIAS_GELU_NVFUSION"] = "0"

755
    outputs, names = _test_e2e_full_recompute(
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758
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762
763
        bs,
        dtype,
        config,
        fp8,
        recipe,
        fp8_model_params,
        recompute=False,
        use_reentrant=use_reentrant,
764
765
    )
    outputs_recompute, _ = _test_e2e_full_recompute(
766
767
768
769
770
771
772
773
        bs,
        dtype,
        config,
        fp8,
        recipe,
        fp8_model_params,
        recompute=True,
        use_reentrant=use_reentrant,
774
    )
775
776
777
778
779

    if not use_reentrant:
        # Reset bias+GELU fusion flag to avoid contaminating other tests
        del os.environ["NVTE_BIAS_GELU_NVFUSION"]

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784
785
786
787
788
789
790
791
792
    # Check that results match
    tols = dtype_tols(dtype)
    if dtype in (torch.float16, torch.bfloat16):
        tols["atol"] = 1e-3
    if fp8 or fp8_model_params:
        tols.update(dict(rtol=0.125, atol=0.0675))
    for i, (ref, test) in enumerate(zip(outputs, outputs_recompute)):
        torch.testing.assert_close(
            test,
            ref,
            msg=f"Mismatch in tensor {i}",
            **tols,
        )
793
794
795
796
797
798


def _test_e2e_checkpointing_get_model(config, dtype):
    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)
799

800
801
802
    return TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
803
        config.num_heads,
804
805
806
807
808
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0.1,
        attention_dropout=0.1,
809
        kv_channels=config.kv_channels,
810
811
812
813
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        params_dtype=dtype,
        device="cuda",
814
815
816
817
818
819
820
    )


def _test_e2e_checkpointing(bs, dtype, config, checkpoint=False, steps=10, path="checkpoint.pt"):
    reset_rng_states()

    te_inp_hidden_states = torch.randn(
821
        (config.max_seqlen_q, bs, config.hidden_size),
822
823
824
825
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
826
827
828
829
830
831
832
    te_inp_hidden_states.retain_grad()

    block = _test_e2e_checkpointing_get_model(config, dtype)

    for _ in range(steps // 2):
        te_out = block(
            te_inp_hidden_states,
833
            None,
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
850
        )
        loss = te_out.sum()
        loss.backward()

    if checkpoint:
        # This process is necessary so that we can start afresh with
        # a new model while erasing all internal state to ensure that
        # loading from a checkpoint gives bitwise identical results.
        # Since gradients are being accumulated, it is important to
        # restore them post loading the checkpoint.
        torch.save(block.state_dict(), path)

        param_grads = []
        for p in block.parameters():
            if p.requires_grad:
                param_grads.append(p.grad.clone())

851
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853
        _cpu_rng_state = torch.get_rng_state()
        _cuda_rng_state = torch.cuda.get_rng_state()

854
855
        del block
        block = _test_e2e_checkpointing_get_model(config, dtype)
856
        block.load_state_dict(torch.load(path, weights_only=False))
857
858
        torch.set_rng_state(_cpu_rng_state)
        torch.cuda.set_rng_state(_cuda_rng_state)
859
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865
866
867
868

        for p in block.parameters():
            if p.requires_grad:
                p.grad = param_grads.pop(0)

        assert not param_grads, "Oops!"

    for _ in range(steps // 2):
        te_out = block(
            te_inp_hidden_states,
869
            None,
870
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879
880
881
882
883
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        )
        loss = te_out.sum()
        loss.backward()

    torch.cuda.synchronize()

    if os.path.exists(path):
        os.remove(path)

    outputs = [te_out, te_inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
            outputs.append(p.grad)
    return outputs


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
888
@pytest.mark.parametrize("model", ["126m"])
889
890
891
def test_gpt_checkpointing(dtype, bs, model):
    config = model_configs[model]
    outputs = _test_e2e_checkpointing(bs, dtype, config, checkpoint=False)
892
    outputs_checkpoint = _test_e2e_checkpointing(bs, dtype, config, checkpoint=True)
893
894
895
896
897
898
899
900
901
902
903
904

    # Check that results match
    tols = dtype_tols(dtype)
    if dtype in (torch.float16, torch.bfloat16):
        tols.update(dict(rtol=2e-2, atol=2e-3))
    for i, (ref, test) in enumerate(zip(outputs, outputs_checkpoint)):
        torch.testing.assert_close(
            test,
            ref,
            msg=f"Mismatch in tensor {i}",
            **tols,
        )
905
906
907
908
909
910


def _test_e2e_gpt_accuracy(block, bs, dtype, config):
    reset_rng_states()

    inp_hidden_states = torch.randn(
911
        (config.max_seqlen_q, bs, config.hidden_size),
912
913
914
915
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
916
    inp_hidden_states.retain_grad()
917
    inp_attn_mask = get_causal_attn_mask(config.max_seqlen_q)
918

919
    out = block(inp_hidden_states, attention_mask=inp_attn_mask)
920
921
922
923
924
925
926
927
928
929
930
931
932
    loss = out.sum()
    loss.backward()

    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
            outputs.append(p.grad)
    return outputs


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
933
@pytest.mark.parametrize("model", ["small"])
934
935
@pytest.mark.parametrize("parallel_attention_mlp", all_boolean)
def test_gpt_accuracy(dtype, bs, model, parallel_attention_mlp):
936
937
    config = model_configs[model]

938
939
940
    te_gpt = TransformerLayer(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
941
        num_attention_heads=config.num_heads,
942
943
944
945
946
947
948
949
950
        layernorm_epsilon=config.eps,
        attention_dropout=0.1,
        hidden_dropout=0.1,
        params_dtype=dtype,
        fuse_qkv_params=True,
        qkv_weight_interleaved=False,
        parallel_attention_mlp=parallel_attention_mlp,
        device="cuda",
    ).eval()
951
952
953
954
955

    torch_gpt = (
        TorchGPT(
            config.hidden_size,
            config.eps,
956
            config.num_heads,
957
            parallel_attention_mlp=parallel_attention_mlp,
958
959
960
961
962
963
964
965
        )
        .to(dtype=dtype)
        .cuda()
        .eval()
    )

    # Share params
    with torch.no_grad():
966
        torch_gpt.ln.weight = Parameter(
967
968
            te_gpt.self_attention.layernorm_qkv.layer_norm_weight.clone()
        )
969
        torch_gpt.ln.bias = Parameter(te_gpt.self_attention.layernorm_qkv.layer_norm_bias.clone())
970
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972
973
974
975
976
977
978
979
980
981
        torch_gpt.causal_attn.mhsa.in_proj_weight = Parameter(
            te_gpt.self_attention.layernorm_qkv.weight.clone()
        )
        torch_gpt.causal_attn.mhsa.in_proj_bias = Parameter(
            te_gpt.self_attention.layernorm_qkv.bias.clone()
        )
        torch_gpt.causal_attn.mhsa.out_proj.weight = Parameter(
            te_gpt.self_attention.proj.weight.clone()
        )
        torch_gpt.causal_attn.mhsa.out_proj.bias = Parameter(
            te_gpt.self_attention.proj.bias.clone()
        )
982
983
984
985
986
987
        torch_gpt.ln_mlp.ln.weight = Parameter(te_gpt.layernorm_mlp.layer_norm_weight.clone())
        torch_gpt.ln_mlp.ln.bias = Parameter(te_gpt.layernorm_mlp.layer_norm_bias.clone())
        torch_gpt.ln_mlp.fc1.weight = Parameter(te_gpt.layernorm_mlp.fc1_weight.clone())
        torch_gpt.ln_mlp.fc1.bias = Parameter(te_gpt.layernorm_mlp.fc1_bias.clone())
        torch_gpt.ln_mlp.fc2.weight = Parameter(te_gpt.layernorm_mlp.fc2_weight.clone())
        torch_gpt.ln_mlp.fc2.bias = Parameter(te_gpt.layernorm_mlp.fc2_bias.clone())
988
989
990
991

    te_outputs = _test_e2e_gpt_accuracy(te_gpt, bs, dtype, config)
    torch_outputs = _test_e2e_gpt_accuracy(torch_gpt, bs, dtype, config)

992
993
994
995
996
997
    atol = {
        torch.float32: 5e-3,
        torch.half: 5e-2,
        torch.bfloat16: 1e-1,
    }

998
    # Check output.
999
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1001
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1003
1004
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1007
1008
1009
1010
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype])

    # Check gradients, only for small model
    if model == "small":
        atol[torch.float32] = 5e-2
        rtol = {
            torch.float32: 1e-2,
            torch.half: 1e-2,
            torch.bfloat16: 1e-2,
        }
        for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
            assert_allclose(te_output, torch_output, atol[dtype], rtol[dtype])
1011
1012


1013
def _test_mha_accuracy(block, bs, dtype, config, mask_type, te=True):
1014
1015
1016
    reset_rng_states()

    inp_hidden_states = torch.randn(
1017
        (config.max_seqlen_q, bs, config.hidden_size),
1018
1019
1020
1021
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
1022
    inp_hidden_states.retain_grad()
1023
    inp_attn_mask = get_causal_attn_mask(config.max_seqlen_q) if mask_type == "causal" else None
1024

1025
1026
1027
1028
1029
1030
    forward_kwargs = {}
    if te:
        forward_kwargs["attn_mask_type"] = mask_type
    forward_kwargs["attention_mask"] = inp_attn_mask

    out = block(inp_hidden_states, **forward_kwargs)
1031
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1033
1034
1035
1036
1037
1038
1039
1040
1041
1042
1043
    loss = out.sum()
    loss.backward()

    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
            outputs.append(p.grad)
    return outputs


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1044
@pytest.mark.parametrize("model", ["small"])
1045
1046
1047
1048
@pytest.mark.parametrize("mask_type", mask_types)
def test_mha_accuracy(dtype, bs, model, mask_type):
    config = model_configs[model]

1049
1050
    te_mha = MultiheadAttention(
        config.hidden_size,
1051
        config.num_heads,
1052
1053
1054
1055
1056
1057
        fuse_qkv_params=True,
        params_dtype=dtype,
        qkv_weight_interleaved=False,
        input_layernorm=False,
        device="cuda",
    ).eval()
1058
1059
1060
1061

    torch_mha = (
        TorchMHA(
            config.hidden_size,
1062
            config.num_heads,
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
1074
1075
        )
        .to(dtype=dtype)
        .cuda()
        .eval()
    )

    # Share params
    with torch.no_grad():
        torch_mha.mhsa.in_proj_weight = Parameter(te_mha.qkv.weight.clone())
        torch_mha.mhsa.in_proj_bias = Parameter(te_mha.qkv.bias.clone())
        torch_mha.mhsa.out_proj.weight = Parameter(te_mha.proj.weight.clone())
        torch_mha.mhsa.out_proj.bias = Parameter(te_mha.proj.bias.clone())

1076
1077
    te_outputs = _test_mha_accuracy(te_mha, bs, dtype, config, mask_type, te=True)
    torch_outputs = _test_mha_accuracy(torch_mha, bs, dtype, config, mask_type, te=False)
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1079
1080
1081
1082
1083
1084

    # Check output.
    if dtype == torch.float32:
        assert_allclose(te_outputs[0], torch_outputs[0], 5e-3)
    else:
        assert_allclose(te_outputs[0], torch_outputs[0], 5e-2)

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    # Check gradients, only for small model
    if model == "small":
        atol = {
            torch.float32: 5e-2,
            torch.half: 5e-2,
            torch.bfloat16: 5e-2,
        }
        rtol = {
            torch.float32: 1e-2,
            torch.half: 1e-2,
            torch.bfloat16: 1e-2,
        }
        for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
            assert_allclose(te_output, torch_output, atol[dtype], rtol[dtype])

1100

1101
def _test_granular_accuracy(block, bs, dtype, config, delay_wgrad_compute=False, recipe=None):
1102
    reset_rng_states()
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    fp8 = recipe is not None
    if fp8:
        FP8GlobalStateManager.reset()
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    inp_hidden_states = torch.randn(
1108
        (config.max_seqlen_q, bs, config.hidden_size),
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        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
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    inp_hidden_states.retain_grad()

1115
    with autocast(enabled=fp8, recipe=recipe):
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        out = block(inp_hidden_states)
        if isinstance(out, (List, Tuple)):
            out = out[0]
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    loss = out.sum()
    loss.backward()
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    if delay_wgrad_compute:
        block.backward_dw()
1123
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    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
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            if getattr(p, "main_grad", None) is not None:
                outputs.append(p.main_grad)
                assert p.grad is None  # grad should be None if fuse_wgrad_accumulation is True
            else:
                outputs.append(p.grad)
1133
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    return outputs


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def _test_dpa_accuracy(block, bs, dtype, config):
    reset_rng_states()

1139
    mask = torch.triu(
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        torch.ones(config.max_seqlen_q, config.max_seqlen_kv, dtype=torch.bool, device="cuda"),
        diagonal=1,
1142
    )
1143
    query, key, value = [
1144
        torch.randn(
1145
            (config.max_seqlen_q, bs, config.num_heads, config.kv_channels),
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            dtype=dtype,
            device="cuda",
            requires_grad=True,
        )
        for _ in range(3)
    ]
1152
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1156

    query.retain_grad()
    key.retain_grad()
    value.retain_grad()

1157
    out = block(query, key, value, attention_mask=mask)
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    loss = out.sum()
    loss.backward()

    torch.cuda.synchronize()

    return [out, query.grad, key.grad, value.grad]


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1168
@pytest.mark.parametrize("model", ["126m"])
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def test_dpa_accuracy(dtype, bs, model):
    config = model_configs[model]

    te_dpa = (
        DotProductAttention(
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            config.num_heads,
            config.kv_channels,
1176
            attention_dropout=0.0,  # disable dropout, FU uses rng differently
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        )
        .to(dtype=dtype)
        .cuda()
    )

    torch_dpa = (
        TorchDotProductAttention(
1184
            config.kv_channels,
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            0.0,  # dropout
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        )
        .to(dtype=dtype)
        .cuda()
    )

    te_outputs = _test_dpa_accuracy(te_dpa, bs, dtype, config)
    torch_outputs = _test_dpa_accuracy(torch_dpa, bs, dtype, config)

    # Check output.
    if dtype == torch.float32:
        assert_allclose(te_outputs[0], torch_outputs[0], 5e-3)
    else:
        assert_allclose(te_outputs[0], torch_outputs[0], 5e-2)

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    for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
        assert_allclose(te_output, torch_output, atol=5e-2, rtol=1e-2)

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class TestReturnBiasModule(nn.Module):
    def __init__(self, mod, **kwargs):
        super().__init__()
        self.te_module = mod(**kwargs)
        self.return_bias = kwargs["return_bias"]
        self.bias = kwargs["bias"]

    def forward(self, x):
        if self.return_bias:
            out, bias = self.te_module(x)
            if self.bias:
                out = out + bias
            return out
        return self.te_module(x)


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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1222
@pytest.mark.parametrize("model", ["small"])
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@pytest.mark.parametrize("return_bias", all_boolean)
@pytest.mark.parametrize("bias", all_boolean)
def test_linear_accuracy(dtype, bs, model, return_bias, bias):
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    config = model_configs[model]

1228
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    te_linear = TestReturnBiasModule(
        Linear,
        in_features=config.hidden_size,
        out_features=4 * config.hidden_size,
1232
        params_dtype=dtype,
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        return_bias=return_bias,
        bias=bias,
1235
        device="cuda",
1236
    )
1237

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    torch_linear = torch.nn.Linear(
        config.hidden_size,
        4 * config.hidden_size,
1241
        bias=bias,
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        device="cuda",
        dtype=dtype,
1244
    )
1245
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    # Share params
    with torch.no_grad():
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        torch_linear.weight = Parameter(te_linear.te_module.weight.clone())
        if bias:
            torch_linear.bias = Parameter(te_linear.te_module.bias.clone())
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    te_outputs = _test_granular_accuracy(te_linear, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_linear, bs, dtype, config)

    # Check output.
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    if model == "small":
        tolerance = 5e-3 if dtype == torch.float32 else 5e-2
        rtol = {
            torch.float32: 1.3e-6,
            torch.half: 1e-2,
            torch.bfloat16: 2e-2,
        }
        for te_output, torch_output in zip(te_outputs, torch_outputs):
            assert_allclose(te_output, torch_output, tolerance, rtol[dtype])
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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
@pytest.mark.parametrize("model", ["small"])
@pytest.mark.parametrize("bias", all_boolean)
@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
def test_linear_accuracy_delay_wgrad_compute(dtype, bs, model, bias, fuse_wgrad_accumulation):
    config = model_configs[model]

    te_linear_ref = Linear(
        config.hidden_size,
        4 * config.hidden_size,
        bias=bias,
        params_dtype=dtype,
        device="cuda",
        delay_wgrad_compute=False,
        fuse_wgrad_accumulation=fuse_wgrad_accumulation,
    ).eval()

    te_linear = Linear(
        config.hidden_size,
        4 * config.hidden_size,
        bias=bias,
        params_dtype=dtype,
        device="cuda",
        delay_wgrad_compute=True,
        fuse_wgrad_accumulation=fuse_wgrad_accumulation,
    ).eval()

    # Share params
    with torch.no_grad():
        te_linear_ref.weight = Parameter(te_linear.weight.clone())
        if bias:
            te_linear_ref.bias = Parameter(te_linear.bias.clone())
        if fuse_wgrad_accumulation:
            weight = getattr(te_linear, f"weight")
            weight.main_grad = torch.rand_like(weight, dtype=torch.float32)
            te_linear_ref.weight.main_grad = weight.main_grad.clone()

    te_outputs = _test_granular_accuracy(te_linear, bs, dtype, config, delay_wgrad_compute=True)
    te_outputs_ref = _test_granular_accuracy(
        te_linear_ref, bs, dtype, config, delay_wgrad_compute=False
    )

1310
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    # Should be bit-wise match
    for _, (o, o_ref) in enumerate(zip(te_outputs, te_outputs_ref)):
1312
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1314
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


1315
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1322
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("model", ["small"])
@pytest.mark.parametrize("recipe", fp8_recipes + [None])
def test_linear_accuracy_save_original_input(dtype, model, recipe):
    bs = 1
    fuse_wgrad_accumulation = True
    fp8_model_params = False
    fp8 = recipe is not None
1323

1324
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1326
1327
    if fp8 and recipe.delayed():
        pytest.skip("DelayedScaling recipe is not supported with save_original_input")

    config = model_configs[model]
1328
    if config.max_seqlen_q % 16 != 0 and fp8:
1329
1330
        pytest.skip("FP8 requires sequence length to be divisible by 16.")

1331
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1336
    if recipe is not None and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )

1337
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
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        te_linear_ref = Linear(
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            device="cuda",
            fuse_wgrad_accumulation=fuse_wgrad_accumulation,
            save_original_input=False,
        ).eval()

        te_linear = Linear(
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            device="cuda",
            fuse_wgrad_accumulation=fuse_wgrad_accumulation,
            save_original_input=True,
        ).eval()

    # Share params
    with torch.no_grad():
        te_linear_ref.weight = Parameter(te_linear.weight.clone())
        if fuse_wgrad_accumulation:
            weight = getattr(te_linear, f"weight")
            weight.main_grad = torch.rand_like(weight, dtype=torch.float32)
            te_linear_ref.weight.main_grad = weight.main_grad.clone()

    te_outputs = _test_granular_accuracy(te_linear, bs, dtype, config, recipe=recipe)
    te_outputs_ref = _test_granular_accuracy(te_linear_ref, bs, dtype, config, recipe=recipe)

1369
    # Should be bit-wise match
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    for i, (o, o_ref) in enumerate(zip(te_outputs, te_outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1376
@pytest.mark.parametrize("model", ["126m"])
1377
@pytest.mark.parametrize("eps", [1e-1, 1e-3, 1e-5, 1e-7])
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@pytest.mark.parametrize("zero_centered_gamma", all_boolean)
def test_rmsnorm_accuracy(dtype, bs, model, eps, zero_centered_gamma):
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    config = model_configs[model]

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    te_rmsnorm = RMSNorm(
        config.hidden_size,
        eps=eps,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
        device="cuda",
    ).eval()
1389
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    torch_rmsnorm = (
1391
        TorchRMSNorm(config.hidden_size, eps=eps, zero_centered_gamma=zero_centered_gamma)
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        .to(dtype=dtype)
        .cuda()
        .eval()
    )

    # Share params
    with torch.no_grad():
        torch_rmsnorm.weight = Parameter(te_rmsnorm.weight.clone())

    te_outputs = _test_granular_accuracy(te_rmsnorm, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_rmsnorm, bs, dtype, config)

1404
1405
1406
1407
    atol = {
        torch.float32: 1e-7,
        torch.half: 2e-3,
        torch.bfloat16: 2e-2,
1408
    }
1409
1410

    # Check output.
1411
1412
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype])

1413
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1417
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1419
1420
1421
1422
    atol[torch.float32] = 2e-3
    rtol = {
        torch.float32: 1.3e-6,
        torch.half: 1e-3,
        torch.bfloat16: 1.6e-2,
    }
    # Check gradients
    for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
        assert_allclose(te_output, torch_output, atol[dtype], rtol[dtype])

1423

1424
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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1426
@pytest.mark.parametrize("model", ["126m"])
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@pytest.mark.parametrize("eps", [1e-1, 1e-3, 1e-5, 1e-7])
@pytest.mark.parametrize("zero_centered_gamma", all_boolean)
def test_layernorm_accuracy(dtype, bs, model, eps, zero_centered_gamma):
    config = model_configs[model]

1432
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1436
1437
1438
    te_layernorm = LayerNorm(
        config.hidden_size,
        eps=eps,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
        device="cuda",
    ).eval()
1439
1440

    torch_layernorm = (
1441
        TorchLayerNorm(config.hidden_size, eps=eps, zero_centered_gamma=zero_centered_gamma)
1442
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1445
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1448
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1450
1451
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        .to(dtype=dtype)
        .cuda()
        .eval()
    )

    # Share params
    with torch.no_grad():
        torch_layernorm.weight = Parameter(te_layernorm.weight.clone())
        torch_layernorm.bias = Parameter(te_layernorm.bias.clone())

    te_outputs = _test_granular_accuracy(te_layernorm, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_layernorm, bs, dtype, config)

1455
1456
1457
1458
    atol = {
        torch.float32: 1e-7,
        torch.half: 2e-3,
        torch.bfloat16: 2e-2,
1459
    }
1460
1461

    # Check output.
1462
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype])
1463

1464
1465
1466
1467
1468
1469
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1471
1472
1473
    rtol = {
        torch.float32: 1.3e-6,
        torch.half: 1e-3,
        torch.bfloat16: 1.6e-2,
    }
    atol[torch.float32] = 1e-4
    # Check gradients
    for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
        assert_allclose(te_output, torch_output, atol[dtype], rtol[dtype])

1474

1475
1476
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1477
@pytest.mark.parametrize("model", ["small"])
1478
@pytest.mark.parametrize("normalization", all_normalizations)
1479
@pytest.mark.parametrize("zero_centered_gamma", all_boolean)
1480
1481
1482
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1484
@pytest.mark.parametrize("return_bias", all_boolean)
@pytest.mark.parametrize("bias", all_boolean)
def test_layernorm_linear_accuracy(
    dtype, bs, model, normalization, zero_centered_gamma, return_bias, bias
):
1485
1486
    config = model_configs[model]

1487
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1491
    te_ln_linear = TestReturnBiasModule(
        LayerNormLinear,
        in_features=config.hidden_size,
        out_features=4 * config.hidden_size,
        eps=config.eps,
1492
1493
1494
        normalization=normalization,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
1495
1496
        return_bias=return_bias,
        bias=bias,
1497
        device="cuda",
1498
    )
1499
1500
1501
1502
1503
1504

    torch_ln_linear = (
        TorchLayerNormLinear(
            config.hidden_size,
            4 * config.hidden_size,
            config.eps,
1505
            normalization=normalization,
1506
            zero_centered_gamma=zero_centered_gamma,
1507
            bias=bias,
1508
1509
1510
1511
1512
1513
1514
        )
        .to(dtype=dtype)
        .cuda()
    )

    # Share params
    with torch.no_grad():
1515
1516
1517
        torch_ln_linear.layernorm.weight = Parameter(
            te_ln_linear.te_module.layer_norm_weight.clone()
        )
1518
        if normalization != "RMSNorm":
1519
1520
1521
1522
1523
1524
            torch_ln_linear.layernorm.bias = Parameter(
                te_ln_linear.te_module.layer_norm_bias.clone()
            )
        torch_ln_linear.linear.weight = Parameter(te_ln_linear.te_module.weight.clone())
        if bias:
            torch_ln_linear.linear.bias = Parameter(te_ln_linear.te_module.bias.clone())
1525
1526
1527
1528

    te_outputs = _test_granular_accuracy(te_ln_linear, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_ln_linear, bs, dtype, config)

1529
1530
1531
1532
    atol = {
        torch.float32: 2.5e-4,
        torch.half: 2e-3,
        torch.bfloat16: 2e-2,
1533
    }
1534
1535
1536
1537
1538
    rtol = {
        torch.float32: 1e-3,
        torch.half: 4e-2,
        torch.bfloat16: 4e-2,
    }
1539
1540

    # Check output.
1541
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype], rtol[dtype])
1542

1543
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1555
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    if model == "small":
        atol = {
            torch.float32: 1e-3,
            torch.half: 5e-2,
            torch.bfloat16: 5e-2,
        }
        rtol = {
            torch.float32: 1e-3,
            torch.half: 4e-2,
            torch.bfloat16: 4e-2,
        }
        # Check gradients
        for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
            assert_allclose(te_output, torch_output, atol[dtype], rtol[dtype])

1558

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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
@pytest.mark.parametrize("model", ["small"])
@pytest.mark.parametrize("normalization", all_normalizations)
@pytest.mark.parametrize("zero_centered_gamma", all_boolean)
@pytest.mark.parametrize("bias", all_boolean)
@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
def test_layernorm_linear_accuracy_delay_wgrad_compute(
    dtype, bs, model, normalization, zero_centered_gamma, bias, fuse_wgrad_accumulation
):
    config = model_configs[model]

    ln_linear_ref = LayerNormLinear(
        config.hidden_size,
        4 * config.hidden_size,
        config.eps,
        bias=bias,
        normalization=normalization,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
        device="cuda",
        delay_wgrad_compute=False,
        fuse_wgrad_accumulation=fuse_wgrad_accumulation,
    ).eval()

    ln_linear = LayerNormLinear(
        config.hidden_size,
        4 * config.hidden_size,
        config.eps,
        bias=bias,
        normalization=normalization,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
        device="cuda",
        delay_wgrad_compute=True,
        fuse_wgrad_accumulation=fuse_wgrad_accumulation,
    ).eval()

    # Share params
    with torch.no_grad():
        ln_linear_ref.layer_norm_weight = Parameter(ln_linear.layer_norm_weight.clone())
        if normalization != "RMSNorm":
            ln_linear_ref.layer_norm_bias = Parameter(ln_linear.layer_norm_bias.clone())
        ln_linear_ref.weight = Parameter(ln_linear.weight.clone())
        if bias:
            ln_linear_ref.bias = Parameter(ln_linear.bias.clone())
        if fuse_wgrad_accumulation:
            weight = getattr(ln_linear, f"weight")
            weight.main_grad = torch.rand_like(weight, dtype=torch.float32)
            ln_linear_ref.weight.main_grad = weight.main_grad.clone()

    te_outputs = _test_granular_accuracy(ln_linear, bs, dtype, config, delay_wgrad_compute=True)
    te_outputs_ref = _test_granular_accuracy(
        ln_linear_ref, bs, dtype, config, delay_wgrad_compute=False
    )

    # Shoule be bit-wise match
    for i, (o, o_ref) in enumerate(zip(te_outputs, te_outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
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@pytest.mark.parametrize("model", ["small"])
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@pytest.mark.parametrize("activation", all_activations)
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@pytest.mark.parametrize("normalization", all_normalizations)
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@pytest.mark.parametrize("return_bias", all_boolean)
@pytest.mark.parametrize("bias", all_boolean)
def test_layernorm_mlp_accuracy(dtype, bs, model, activation, normalization, return_bias, bias):
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    config = model_configs[model]

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    te_ln_mlp = TestReturnBiasModule(
        LayerNormMLP,
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
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        activation=activation,
        normalization=normalization,
        params_dtype=dtype,
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        return_bias=return_bias,
        bias=bias,
1639
        device="cuda",
1640
    )
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    torch_ln_mlp = (
        TorchLayerNormMLP(
            config.hidden_size,
            4 * config.hidden_size,
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            activation=activation,
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            normalization=normalization,
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            bias=bias,
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        )
        .to(dtype=dtype)
        .cuda()
    )

    # Share params
    with torch.no_grad():
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        torch_ln_mlp.ln.weight = Parameter(te_ln_mlp.te_module.layer_norm_weight.clone())
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        if normalization != "RMSNorm":
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            torch_ln_mlp.ln.bias = Parameter(te_ln_mlp.te_module.layer_norm_bias.clone())
        torch_ln_mlp.fc1.weight = Parameter(te_ln_mlp.te_module.fc1_weight.clone())
        torch_ln_mlp.fc2.weight = Parameter(te_ln_mlp.te_module.fc2_weight.clone())
        if bias:
            torch_ln_mlp.fc1.bias = Parameter(te_ln_mlp.te_module.fc1_bias.clone())
            torch_ln_mlp.fc2.bias = Parameter(te_ln_mlp.te_module.fc2_bias.clone())
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    te_outputs = _test_granular_accuracy(te_ln_mlp, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_ln_mlp, bs, dtype, config)

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    atol = {
        torch.float32: 2e-2,
        torch.half: 5e-2,
        torch.bfloat16: 5e-2,
    }

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    rtol = {
        torch.float32: 1e-3,
        torch.half: 4e-2,
        torch.bfloat16: 4e-2,
    }

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    # Check output.
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    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype], rtol[dtype])
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    # Check gradients, only for small model
    rtol = {
        torch.float32: 1e-3,
        torch.half: 1e-2,
        torch.bfloat16: 4e-2,
    }
    atol[torch.half] = 2e-1
    atol[torch.bfloat16] = 2e-1
    if model == "small":
        for te_output, torch_output in zip(te_outputs[1:], torch_outputs[1:]):
            assert_allclose(te_output, torch_output, atol[dtype], rtol[dtype])
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@pytest.mark.parametrize("dtype", param_types)
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@pytest.mark.parametrize("bs", [2])
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@pytest.mark.parametrize("model", ["small"])
@pytest.mark.parametrize("bias", all_boolean)
@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
def test_layernorm_mlp_accuracy_delay_wgrad_compute(
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    dtype,
    bs,
    model,
    bias,
    fuse_wgrad_accumulation,
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):
    config = model_configs[model]

    ln_mlp = LayerNormMLP(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
        eps=config.eps,
        bias=bias,
        params_dtype=dtype,
        device="cuda",
        delay_wgrad_compute=True,
        fuse_wgrad_accumulation=fuse_wgrad_accumulation,
    ).eval()

    ln_mlp_ref = LayerNormMLP(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
        eps=config.eps,
        bias=bias,
        params_dtype=dtype,
        device="cuda",
        delay_wgrad_compute=False,
        fuse_wgrad_accumulation=fuse_wgrad_accumulation,
    ).eval()

    # Share params
    with torch.no_grad():
        ln_mlp_ref.layer_norm_weight = Parameter(ln_mlp.layer_norm_weight.clone())
1735
        ln_mlp_ref.layer_norm_bias = Parameter(ln_mlp.layer_norm_bias.clone())
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        ln_mlp_ref.fc1_weight = Parameter(ln_mlp.fc1_weight.clone())
        ln_mlp_ref.fc2_weight = Parameter(ln_mlp.fc2_weight.clone())
        if bias:
            ln_mlp_ref.fc1_bias = Parameter(ln_mlp.fc1_bias.clone())
            ln_mlp_ref.fc2_bias = Parameter(ln_mlp.fc2_bias.clone())
        if fuse_wgrad_accumulation:
            ln_mlp.fc1_weight.main_grad = torch.rand_like(ln_mlp.fc1_weight, dtype=torch.float32)
            ln_mlp_ref.fc1_weight.main_grad = ln_mlp.fc1_weight.main_grad.clone()
            ln_mlp.fc2_weight.main_grad = torch.rand_like(ln_mlp.fc2_weight, dtype=torch.float32)
            ln_mlp_ref.fc2_weight.main_grad = ln_mlp.fc2_weight.main_grad.clone()

    te_outputs = _test_granular_accuracy(ln_mlp, bs, dtype, config, delay_wgrad_compute=True)
    te_outputs_ref = _test_granular_accuracy(
        ln_mlp_ref, bs, dtype, config, delay_wgrad_compute=False
    )

    # Shoule be bit-wise match
    for i, (o, o_ref) in enumerate(zip(te_outputs, te_outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)
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@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", [2])
@pytest.mark.parametrize("model", ["small"])
@pytest.mark.parametrize("bias", all_boolean)
def test_layernorm_mlp_accuracy_checkpoint(
    dtype,
    bs,
    model,
    bias,
):
    config = model_configs[model]

    ln_mlp = LayerNormMLP(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
        eps=config.eps,
        bias=bias,
        params_dtype=dtype,
        device="cuda",
        checkpoint=True,
    ).eval()

    ln_mlp_ref = LayerNormMLP(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
        eps=config.eps,
        bias=bias,
        params_dtype=dtype,
        device="cuda",
        checkpoint=False,
    ).eval()

    # Share params
    with torch.no_grad():
        ln_mlp_ref.layer_norm_weight = Parameter(ln_mlp.layer_norm_weight.clone())
        ln_mlp_ref.layer_norm_bias = Parameter(ln_mlp.layer_norm_bias.clone())
        ln_mlp_ref.fc1_weight = Parameter(ln_mlp.fc1_weight.clone())
        ln_mlp_ref.fc2_weight = Parameter(ln_mlp.fc2_weight.clone())
        if bias:
            ln_mlp_ref.fc1_bias = Parameter(ln_mlp.fc1_bias.clone())
            ln_mlp_ref.fc2_bias = Parameter(ln_mlp.fc2_bias.clone())

    te_outputs = _test_granular_accuracy(ln_mlp, bs, dtype, config, delay_wgrad_compute=False)
    te_outputs_ref = _test_granular_accuracy(
        ln_mlp_ref, bs, dtype, config, delay_wgrad_compute=False
    )

    # Shoule be bit-wise match
    for i, (o, o_ref) in enumerate(zip(te_outputs, te_outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)
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1809
def _test_grouped_linear_accuracy(
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    block,
    num_gemms,
    bs,
    dtype,
    config,
    recipe,
    fp8,
    fuse_wgrad_accumulation,
    delay_wgrad_compute=False,
1819
):
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    reset_rng_states()
    if fp8:
        FP8GlobalStateManager.reset()

    inp_hidden_states = torch.randn(
1825
        (config.max_seqlen_q, bs, config.hidden_size),
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        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
    inp_hidden_states.retain_grad()

1832
    if num_gemms > 1:
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        split_size = 1
        if fp8:
1835
            split_size = get_align_size_for_quantization(recipe)
1836
        m = config.max_seqlen_q // split_size
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        dist = torch.sort(torch.randint(0, m, (num_gemms - 2,))).values.tolist()
        dist.append(dist[-1])  # Manually add a zero
        m_splits = torch.tensor(dist + [m]) - torch.tensor([0] + dist)
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        m_splits = m_splits * split_size
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        assert m_splits.sum() == config.max_seqlen_q and len(m_splits) == num_gemms
1842
    else:
1843
        m_splits = torch.tensor([config.max_seqlen_q])
1844

1845
    with autocast(enabled=fp8, recipe=recipe):
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        if isinstance(block, GroupedLinear):
            m_splits = m_splits * bs
            out = block(inp_hidden_states, m_splits.tolist())
        else:
            out = torch.cat(
                [
                    block[i](inp)
                    for i, inp in enumerate(torch.split(inp_hidden_states, m_splits.tolist()))
                ]
            )
    loss = out.sum()
    loss.backward()
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    if delay_wgrad_compute:
        if isinstance(block, GroupedLinear):
            block.backward_dw()
        else:
            for i in range(num_gemms):
                block[i].backward_dw()
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    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
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            if getattr(p, "main_grad", None) is not None:
                outputs.append(p.main_grad)
                assert p.grad is None  # grad should be None if fuse_wgrad_accumulation is True
            else:
                outputs.append(p.grad)
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    return outputs


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@pytest.mark.parametrize("dtype", param_types, ids=str)
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@pytest.mark.parametrize("num_gemms", [3, 6])
@pytest.mark.parametrize("bs", batch_sizes)
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@pytest.mark.parametrize("model", ["126m"])
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@pytest.mark.parametrize("recipe", fp8_recipes + [None])
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@pytest.mark.parametrize("fp8_model_params", all_boolean)
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@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
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@pytest.mark.parametrize("bias", all_boolean)
@pytest.mark.parametrize("delay_wgrad_compute", all_boolean)
1886
def test_grouped_linear_accuracy(
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    dtype,
    num_gemms,
    bs,
    model,
    recipe,
    fp8_model_params,
    fuse_wgrad_accumulation,
1894
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    bias,
    delay_wgrad_compute,
1896
    parallel_mode=None,
1897
    use_cutlass=False,
1898
):
1899
    fp8 = recipe is not None
1900
    if fp8 and fp8_model_params and NVTE_TEST_NVINSPECT_ENABLED:
1901
        pytest.skip("FP8 parameters are not supported in debug mode.")
1902
1903

    config = model_configs[model]
1904
    if config.max_seqlen_q % 16 != 0 and fp8:
1905
1906
        pytest.skip("FP8 requires sequence length to be divisible by 16.")

1907
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    if recipe is not None and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )

1913
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
1914
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1917
        grouped_linear = GroupedLinear(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
1918
            bias=bias,
1919
            params_dtype=dtype,
1920
            parallel_mode=parallel_mode,
1921
            device="cuda",
1922
            fuse_wgrad_accumulation=fuse_wgrad_accumulation,
1923
            delay_wgrad_compute=delay_wgrad_compute,
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            save_original_input=False,
        ).eval()
        sequential_linear = torch.nn.ModuleList(
            [
                Linear(
                    config.hidden_size,
                    4 * config.hidden_size,
                    bias=bias,
                    params_dtype=dtype,
                    parallel_mode=parallel_mode,
                    device="cuda",
                    fuse_wgrad_accumulation=fuse_wgrad_accumulation,
                ).eval()
                for _ in range(num_gemms)
            ]
        )

    # Share params
    with torch.no_grad():
        for i in range(num_gemms):
            sequential_linear[i].weight = Parameter(getattr(grouped_linear, f"weight{i}").clone())
            if bias:
                sequential_linear[i].bias = Parameter(getattr(grouped_linear, f"bias{i}").clone())
            if fuse_wgrad_accumulation:
                weight_i = getattr(grouped_linear, f"weight{i}")
                weight_i.main_grad = torch.rand_like(weight_i, dtype=torch.float32)
                sequential_linear[i].weight.main_grad = weight_i.main_grad.clone()

    outputs_ref = _test_grouped_linear_accuracy(
        sequential_linear,
        num_gemms,
        bs,
        dtype,
        config,
        recipe,
        fp8,
        fuse_wgrad_accumulation,
        delay_wgrad_compute,
    )
    outputs = _test_grouped_linear_accuracy(
        grouped_linear,
        num_gemms,
        bs,
        dtype,
        config,
        recipe,
        fp8,
        fuse_wgrad_accumulation,
        delay_wgrad_compute,
    )

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    for o, o_ref in zip(outputs, outputs_ref):
        if use_cutlass:
            torch.testing.assert_close(o, o_ref, rtol=1e-3, atol=1e-3)
        else:
            # cuBLAS implementation should be bit-wise match
            torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


@pytest.mark.skipif(
    torch.cuda.get_device_capability() != (9, 0),
    reason="Only enable CUTLASS grouped gemm on Hopper",
)
@pytest.mark.parametrize("dtype", param_types, ids=str)
@pytest.mark.parametrize("num_gemms", [3, 6])
@pytest.mark.parametrize("bs", batch_sizes)
@pytest.mark.parametrize("model", ["126m"])
@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
@pytest.mark.parametrize("delay_wgrad_compute", all_boolean)
def test_grouped_linear_accuracy_cutlass(
    dtype,
    num_gemms,
    bs,
    model,
    fuse_wgrad_accumulation,
    delay_wgrad_compute,
):
    os.environ["NVTE_USE_CUTLASS_GROUPED_GEMM"] = "1"
    test_grouped_linear_accuracy(
        dtype,
        num_gemms,
        bs,
        model,
        None,
        False,
        fuse_wgrad_accumulation,
        False,
        delay_wgrad_compute,
        None,
        use_cutlass=True,
    )
    os.environ.pop("NVTE_USE_CUTLASS_GROUPED_GEMM", None)
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@pytest.mark.parametrize("dtype", param_types, ids=str)
@pytest.mark.parametrize("num_gemms", [3])
@pytest.mark.parametrize("bs", [1])
@pytest.mark.parametrize("model", ["126m"])
@pytest.mark.parametrize("recipe", fp8_recipes + [None])
@pytest.mark.parametrize("fp8_model_params", [False])
@pytest.mark.parametrize("fuse_wgrad_accumulation", [True])
@pytest.mark.parametrize("bias", [False])
@pytest.mark.parametrize("delay_wgrad_compute", [True])
def test_grouped_linear_accuracy_save_original_input(
    dtype,
    num_gemms,
    bs,
    model,
    recipe,
    fp8_model_params,
    fuse_wgrad_accumulation,
    bias,
    delay_wgrad_compute,
    parallel_mode=None,
):
    fp8 = recipe is not None
2040
    if fp8 and fp8_model_params and NVTE_TEST_NVINSPECT_ENABLED:
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2045
        pytest.skip("FP8 parameters are not supported in debug mode.")
    if fp8 and recipe.delayed():
        pytest.skip("DelayedScaling recipe is not supported with save_original_input")

    config = model_configs[model]
2046
    if config.max_seqlen_q % 16 != 0 and fp8:
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2048
        pytest.skip("FP8 requires sequence length to be divisible by 16.")

2049
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2054
    if recipe is not None and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )

2055
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
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        grouped_linear = GroupedLinear(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=bias,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            device="cuda",
            fuse_wgrad_accumulation=fuse_wgrad_accumulation,
            delay_wgrad_compute=delay_wgrad_compute,
            save_original_input=True,
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        ).eval()
        sequential_linear = torch.nn.ModuleList(
            [
                Linear(
                    config.hidden_size,
                    4 * config.hidden_size,
2073
                    bias=bias,
2074
                    params_dtype=dtype,
2075
                    parallel_mode=parallel_mode,
2076
                    device="cuda",
2077
                    fuse_wgrad_accumulation=fuse_wgrad_accumulation,
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                ).eval()
                for _ in range(num_gemms)
            ]
        )

    # Share params
    with torch.no_grad():
        for i in range(num_gemms):
            sequential_linear[i].weight = Parameter(getattr(grouped_linear, f"weight{i}").clone())
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            if bias:
                sequential_linear[i].bias = Parameter(getattr(grouped_linear, f"bias{i}").clone())
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            if fuse_wgrad_accumulation:
                weight_i = getattr(grouped_linear, f"weight{i}")
                weight_i.main_grad = torch.rand_like(weight_i, dtype=torch.float32)
                sequential_linear[i].weight.main_grad = weight_i.main_grad.clone()
2093
2094

    outputs_ref = _test_grouped_linear_accuracy(
2095
2096
2097
2098
2099
2100
2101
2102
2103
        sequential_linear,
        num_gemms,
        bs,
        dtype,
        config,
        recipe,
        fp8,
        fuse_wgrad_accumulation,
        delay_wgrad_compute,
2104
2105
    )
    outputs = _test_grouped_linear_accuracy(
2106
2107
2108
2109
2110
2111
2112
2113
2114
        grouped_linear,
        num_gemms,
        bs,
        dtype,
        config,
        recipe,
        fp8,
        fuse_wgrad_accumulation,
        delay_wgrad_compute,
2115
2116
2117
2118
2119
2120
2121
    )

    # Shoule be bit-wise match
    for i, (o, o_ref) in enumerate(zip(outputs, outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


2122
@pytest.mark.parametrize("recipe", fp8_recipes + [None])
2123
def test_grouped_linear_accuracy_single_gemm(recipe):
2124
2125
2126
2127
2128
    """Split the tests to save CI time"""
    test_grouped_linear_accuracy(
        dtype=torch.float32,
        num_gemms=1,
        bs=2,
2129
        model="126m",
2130
        recipe=recipe,
2131
        fp8_model_params=True,
2132
        fuse_wgrad_accumulation=True,
2133
2134
        bias=True,
        delay_wgrad_compute=False,
2135
2136
2137
    )


2138
def _test_padding_grouped_linear_accuracy(block, num_gemms, bs, dtype, config, recipe, fp8=False):
2139
2140

    def _pad_tensor_for_fp8(hidden_states, tokens_per_expert):
2141
        align_size = get_align_size_for_quantization(recipe)
2142
        padded_tokens_per_expert = [
2143
2144
            (num_tokens + align_size - 1) // align_size * align_size
            for num_tokens in tokens_per_expert
2145
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2195
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2197
        ]
        hidden_states = torch.split(hidden_states, tokens_per_expert)
        padded_hidden_states = []
        for hidden_state, actual_num_tokens, padded_num_tokens in zip(
            hidden_states, tokens_per_expert, padded_tokens_per_expert
        ):
            padded_hidden_states.append(hidden_state)
            if padded_num_tokens > actual_num_tokens:
                pad_tensor = torch.zeros(
                    padded_num_tokens - actual_num_tokens,
                    hidden_state.shape[1],
                    dtype=hidden_state.dtype,
                    device=hidden_state.device,
                )
                padded_hidden_states.append(pad_tensor)
        padded_hidden_states = torch.cat(padded_hidden_states, dim=0)
        return padded_hidden_states, padded_tokens_per_expert

    def _unpad_tensor_for_fp8(padded_hidden_states, actual_tokens_per_expert, tokens_per_expert):
        inputmats = torch.split(
            padded_hidden_states.view(-1, padded_hidden_states.shape[-1]), tokens_per_expert
        )
        hidden_states = torch.cat(
            [
                grad_output_mat[: actual_tokens_per_expert[i]]
                for i, grad_output_mat in enumerate(inputmats)
            ],
            dim=0,
        )

        return hidden_states

    def _generate_random_numbers(n, total_sum):
        if n <= 0:
            return []

        # reset seed
        random.seed(seed)

        breaks = sorted(random.sample(range(1, total_sum), n - 1))
        random_numbers = (
            [breaks[0]]
            + [breaks[i] - breaks[i - 1] for i in range(1, n - 1)]
            + [total_sum - breaks[-1]]
        )

        return random_numbers

    reset_rng_states()
    if fp8:
        FP8GlobalStateManager.reset()

    inp_hidden_states = torch.randn(
2198
        (config.max_seqlen_q * bs, config.hidden_size),
2199
2200
2201
2202
2203
2204
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
    inp_hidden_states.retain_grad()

2205
    m_splits = _generate_random_numbers(num_gemms, config.max_seqlen_q * bs)
2206

2207
    with autocast(enabled=fp8, recipe=recipe):
2208
2209
2210
2211
2212
2213
2214
2215
2216
2217
2218
2219
2220
2221
2222
2223
2224
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2226
2227
2228
2229
2230
2231
2232
2233
        if isinstance(block, TorchGroupedLinearWithPadding):
            out = block(inp_hidden_states, m_splits)
        else:
            if fp8:
                padded_inp_hidden_states, padding_m_splits = _pad_tensor_for_fp8(
                    inp_hidden_states, m_splits
                )
                padded_inp_hidden_states = block(padded_inp_hidden_states, padding_m_splits)
                out = _unpad_tensor_for_fp8(padded_inp_hidden_states, m_splits, padding_m_splits)
            else:
                out = block(inp_hidden_states, m_splits)

    loss = out.sum()
    loss.backward()

    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
            outputs.append(p.grad)
    return outputs


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("num_gemms", [3, 6])
@pytest.mark.parametrize("bs", batch_sizes)
2234
@pytest.mark.parametrize("model", ["126m"])
2235
@pytest.mark.parametrize("fp8", [True])
2236
@pytest.mark.parametrize("recipe", fp8_recipes)
2237
2238
@pytest.mark.parametrize("fp8_model_params", all_boolean)
def test_padding_grouped_linear_accuracy(
2239
2240
2241
2242
2243
2244
2245
2246
2247
2248
2249
2250
2251
    dtype,
    num_gemms,
    bs,
    model,
    fp8,
    recipe,
    fp8_model_params,
    parallel_mode=None,
):
    if fp8_model_params and NVTE_TEST_NVINSPECT_ENABLED:
        pytest.skip("FP8 parameters are not supported in debug mode.")

    config = model_configs[model]
2252
    if config.max_seqlen_q % 16 != 0 and fp8:
2253
2254
        pytest.skip("FP8 requires sequence length to be divisible by 16.")

2255
2256
2257
2258
2259
2260
    if recipe is not None and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )

2261
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
2262
2263
2264
2265
2266
2267
2268
2269
2270
2271
        grouped_linear = TorchGroupedLinearWithPadding(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            fp8=fp8,
        ).eval()

2272
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
2273
2274
2275
2276
2277
2278
2279
2280
2281
2282
2283
2284
2285
2286
2287
2288
2289
2290
2291
2292
2293
2294
2295
2296
2297
2298
2299
2300
2301
2302
2303
2304
2305
2306
2307
2308
2309
2310
2311
2312
2313
2314
2315
2316
2317
2318
2319
2320
2321
        ref_grouped_linear = GroupedLinear(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            device="cuda",
            save_original_input=False,
        ).eval()

    # Share params
    with torch.no_grad():
        inner_grouped_linear = grouped_linear.linear_fn
        for i in range(num_gemms):
            setattr(
                ref_grouped_linear,
                f"weight{i}",
                Parameter(getattr(inner_grouped_linear, f"weight{i}").clone()),
            )

    outputs = _test_padding_grouped_linear_accuracy(
        grouped_linear, num_gemms, bs, dtype, config, recipe, fp8
    )
    outputs_ref = _test_padding_grouped_linear_accuracy(
        ref_grouped_linear, num_gemms, bs, dtype, config, recipe, fp8
    )

    # Shoule be bit-wise match
    for i, (o, o_ref) in enumerate(zip(outputs, outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("num_gemms", [3])
@pytest.mark.parametrize("bs", [1])
@pytest.mark.parametrize("model", ["126m"])
@pytest.mark.parametrize("fp8", [True])
@pytest.mark.parametrize("recipe", fp8_recipes)
@pytest.mark.parametrize("fp8_model_params", [False])
def test_padding_grouped_linear_accuracy_save_original_input(
    dtype,
    num_gemms,
    bs,
    model,
    fp8,
    recipe,
    fp8_model_params,
    parallel_mode=None,
2322
):
2323
2324
    if fp8_model_params and NVTE_TEST_NVINSPECT_ENABLED:
        pytest.skip("FP8 parameters are not supported in debug mode.")
2325
2326
    if fp8 and recipe.delayed():
        pytest.skip("DelayedScaling recipe is not supported with save_original_input")
2327
2328

    config = model_configs[model]
2329
    if config.max_seqlen_q % 16 != 0 and fp8:
2330
2331
        pytest.skip("FP8 requires sequence length to be divisible by 16.")

2332
2333
2334
2335
2336
2337
    if recipe is not None and recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )

2338
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
2339
2340
2341
2342
2343
2344
2345
2346
2347
2348
        grouped_linear = TorchGroupedLinearWithPadding(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            fp8=fp8,
        ).eval()

2349
    with quantized_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
2350
2351
2352
2353
2354
2355
2356
2357
        ref_grouped_linear = GroupedLinear(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            device="cuda",
2358
            save_original_input=True,
2359
2360
2361
2362
2363
2364
2365
2366
2367
2368
2369
2370
2371
        ).eval()

    # Share params
    with torch.no_grad():
        inner_grouped_linear = grouped_linear.linear_fn
        for i in range(num_gemms):
            setattr(
                ref_grouped_linear,
                f"weight{i}",
                Parameter(getattr(inner_grouped_linear, f"weight{i}").clone()),
            )

    outputs = _test_padding_grouped_linear_accuracy(
2372
        grouped_linear, num_gemms, bs, dtype, config, recipe, fp8
2373
2374
    )
    outputs_ref = _test_padding_grouped_linear_accuracy(
2375
        ref_grouped_linear, num_gemms, bs, dtype, config, recipe, fp8
2376
2377
2378
2379
2380
2381
2382
    )

    # Shoule be bit-wise match
    for i, (o, o_ref) in enumerate(zip(outputs, outputs_ref)):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)


2383
2384
2385
2386
2387
2388
2389
def _test_gpt_e2e_cuda_graph(block, bs, dtype, config, graph):
    reset_rng_states()

    # Initialize loss function and optimizer.
    loss_fn = torch.nn.MSELoss()
    optimizer = torch.optim.SGD(block.parameters(), lr=0.1)

2390
    # Placeholders used for graph capture.
2391
    static_input = torch.randn(
2392
2393
2394
2395
        config.max_seqlen_q, bs, config.hidden_size, device="cuda", dtype=dtype, requires_grad=True
    )
    static_target = torch.randn(
        config.max_seqlen_q, bs, config.hidden_size, device="cuda", dtype=dtype
2396
    )
2397
2398
2399
2400

    real_input = torch.rand_like(static_input)
    real_target = torch.rand_like(static_target)

2401
2402
2403
2404
2405
2406
2407
2408
2409
2410
2411
2412
2413
2414
2415
2416
2417
2418
2419
2420
    # Basic training loop.
    def train_step():
        optimizer.zero_grad(set_to_none=False)
        out = block(static_input)
        loss = loss_fn(out, static_target)
        loss.backward()
        optimizer.step()
        return out

    # Warmup steps in a separate stream.
    s = torch.cuda.Stream()
    s.wait_stream(torch.cuda.current_stream())
    with torch.cuda.stream(s):
        for _ in range(3):
            train_step()
    torch.cuda.current_stream().wait_stream(s)

    # Capture graph.
    g = None
    static_output = None
2421
2422
2423
    if graph:
        g = torch.cuda.CUDAGraph()
        with torch.cuda.graph(g):
2424
2425
2426
2427
2428
2429
2430
            static_output = train_step()

    # Run with new data.
    with torch.no_grad():
        static_input.copy_(real_input)
        static_target.copy_(real_target)
    if graph:
2431
2432
        g.replay()
    else:
2433
        static_output = train_step()
2434
2435
2436
2437
2438
2439
2440
2441
2442
2443
2444
2445
2446

    grads = [static_input.grad]
    for p in block.parameters():
        if p.requires_grad:
            grads.append(p.grad)

    with torch.no_grad():
        output = static_output.clone()
    return output, grads


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
2447
@pytest.mark.parametrize("model", ["126m"])
2448
def test_gpt_cuda_graph(dtype, bs, model):
2449
2450
    if NVTE_TEST_NVINSPECT_ENABLED:
        pytest.skip("Cuda Graphs are not supported in debug mode.")
2451
2452
2453
2454
2455
2456
    config = model_configs[model]

    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)

2457
    block_args = (
2458
2459
        config.hidden_size,
        4 * config.hidden_size,
2460
        config.num_heads,
2461
2462
    )
    block_kwargs = dict(
2463
2464
2465
2466
2467
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0.1,
        attention_dropout=0.1,
2468
        kv_channels=config.kv_channels,
2469
2470
2471
2472
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
2473
    )
2474
2475
2476
2477
2478
    block = TransformerLayer(*block_args, **block_kwargs)
    graphed_block = TransformerLayer(*block_args, **block_kwargs)
    with torch.no_grad():
        for param1, param2 in zip(block.parameters(), graphed_block.parameters()):
            param2.copy_(param1)
2479

2480
2481
2482
2483
    out, grads = _test_gpt_e2e_cuda_graph(block, bs, dtype, config, False)
    graphed_out, graphed_grads = _test_gpt_e2e_cuda_graph(graphed_block, bs, dtype, config, True)
    params = list(block.parameters())
    graphed_params = list(graphed_block.parameters())
2484

2485
2486
2487
2488
    # Check that results match
    assert_allclose(out, graphed_out, 1e-3)
    assert_allclose(params, graphed_params, 1e-3)
    assert_allclose(grads, graphed_grads, 1e-3)
2489
2490


2491
def _test_gpt_fp8_parameters(bs, dtype, config, fp8_model_params, recipe):
2492
2493
2494
2495
2496
2497
2498
    reset_rng_states()
    FP8GlobalStateManager.reset()

    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)

2499
    with quantized_model_init(enabled=fp8_model_params, recipe=recipe):
2500
2501
2502
        block = TransformerLayer(
            config.hidden_size,
            4 * config.hidden_size,
2503
            config.num_heads,
2504
2505
2506
2507
2508
            layernorm_epsilon=config.eps,
            init_method=init_method,
            output_layer_init_method=output_layer_init_method,
            hidden_dropout=0.1,
            attention_dropout=0.1,
2509
            kv_channels=config.kv_channels,
2510
2511
2512
2513
2514
            apply_residual_connection_post_layernorm=False,
            output_layernorm=False,
            params_dtype=dtype,
            fuse_qkv_params=True,
            device="cuda",
2515
2516
2517
        )

    te_inp_hidden_states = torch.randn(
2518
        (config.max_seqlen_q, bs, config.hidden_size),
2519
2520
2521
2522
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
2523
    te_inp_hidden_states.retain_grad()
2524
    te_inp_attn_mask = get_causal_attn_mask(config.max_seqlen_q)
2525

2526
    with autocast(enabled=True, recipe=recipe):
2527
2528
2529
2530
2531
2532
2533
2534
2535
2536
2537
2538
2539
2540
        te_out = block(te_inp_hidden_states, attention_mask=te_inp_attn_mask)
    loss = te_out.sum()
    loss.backward()
    torch.cuda.synchronize()

    outputs = [te_out, te_inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
            outputs.append(p.grad)
    return outputs


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
2541
@pytest.mark.parametrize("model", ["126m"])
2542
2543
@pytest.mark.parametrize("recipe", fp8_recipes)
def test_gpt_fp8_parameters(dtype, bs, model, recipe):
2544
2545
    if NVTE_TEST_NVINSPECT_ENABLED:
        pytest.skip("FP8 parameters are not supported in debug mode.")
2546

2547
2548
2549
2550
2551
2552
    if recipe.nvfp4():
        if dtype not in get_nvfp4_inp_supported_dtypes(recipe, dtype):
            pytest.skip(
                f"Input dtype {dtype} not supported for NVFP4 Recipe {recipe.__class__.__name__}"
            )

2553
2554
    config = model_configs[model]

2555
2556
    outputs = _test_gpt_fp8_parameters(bs, dtype, config, False, recipe)
    outputs_fp8_params = _test_gpt_fp8_parameters(bs, dtype, config, True, recipe)
2557
2558
2559
2560
2561
2562
2563
2564
2565
2566
2567
2568

    # Check that results match
    tols = dict(rtol=0.125, atol=0.0675)
    for i, (ref, test) in enumerate(zip(outputs, outputs_fp8_params)):
        torch.testing.assert_close(
            test,
            ref,
            msg=f"Mismatch in tensor {i}",
            rtol=0.125,
            atol=0.0675,
        )

2569
2570
2571

@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
2572
@pytest.mark.parametrize("model", ["126m"])
2573
2574
2575
2576
2577
2578
2579
2580
2581
2582
2583
def test_transformer_layer_hidden_states_format(dtype, bs, model):
    config = model_configs[model]

    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)

    # Set `torch.manual_seed` to make sure the weights are identical to the
    # other layer. Set `*dropout` values to 0 to make sure the forward pass
    # is identical to the other layer.
    torch.manual_seed(0)
2584
2585
2586
    block_sbhd = TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
2587
        config.num_heads,
2588
2589
2590
2591
2592
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0,
        attention_dropout=0,
2593
        kv_channels=config.kv_channels,
2594
2595
2596
2597
2598
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
        attn_input_format="sbhd",
2599
2600
2601
2602
2603
2604
    )

    # Set `torch.manual_seed` to make sure the weights are identical to the
    # other layer. Set `*dropout` values to 0 to make sure the forward pass
    # is identical to the other layer.
    torch.manual_seed(0)
2605
2606
2607
    block_bshd = TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
2608
        config.num_heads,
2609
2610
2611
2612
2613
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0,
        attention_dropout=0,
2614
        kv_channels=config.kv_channels,
2615
2616
2617
2618
2619
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
        attn_input_format="bshd",
2620
2621
    )

2622
2623
2624
2625
    torch.manual_seed(0)
    block_thd = TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
2626
        config.num_heads,
2627
2628
2629
2630
2631
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0,
        attention_dropout=0,
2632
        kv_channels=config.kv_channels,
2633
2634
2635
2636
2637
2638
2639
2640
2641
2642
2643
2644
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
        attn_input_format="thd",
        self_attn_mask_type="padding_causal",
    )

    for (n1, p1), (n2, p2), (n3, p3) in zip(
        block_bshd.named_parameters(), block_sbhd.named_parameters(), block_thd.named_parameters()
    ):
        assert torch.all(torch.eq(p1, p2) & torch.eq(p1, p3)), f"{n1}, {n2} and {n3} not identical"
2645
2646

    x_sbhd = torch.randn(
2647
        (config.max_seqlen_q, bs, config.hidden_size),
2648
2649
2650
2651
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
2652

2653
    x_bshd = x_sbhd.transpose(0, 1).contiguous()
2654
2655
    x_thd = x_bshd.reshape(bs * config.max_seqlen_q, config.hidden_size).contiguous()
    x_thd_cumsum = torch.arange(bs + 1, device="cuda", dtype=torch.int32) * config.max_seqlen_q
2656
2657
2658
2659
2660
2661
2662
2663
2664
2665
2666

    # To make sure forward is also identical (just in case some module decides
    # to act fancy)
    torch.manual_seed(0)
    y_sbhd = block_sbhd(x_sbhd)

    # To make sure forward is also identical (just in case some module decides
    # to act fancy)
    torch.manual_seed(0)
    y_bshd = block_bshd(x_bshd)

2667
2668
2669
    # Check that results match
    torch.testing.assert_close(
        y_bshd,
2670
        y_sbhd.transpose(0, 1).contiguous(),
2671
    )
2672

2673
2674
2675
2676
2677
2678
2679
2680
2681
    # THD is not supported in float32 and on GPUs older than Ampere, skip the test here
    if dtype != torch.float32 and sm_80plus:
        # To make sure forward is also identical (just in case some module decides
        # to act fancy)
        torch.manual_seed(0)
        y_thd = block_thd(
            x_thd,
            cu_seqlens_q=x_thd_cumsum,
            cu_seqlens_kv=x_thd_cumsum,
2682
2683
            max_seqlen_q=config.max_seqlen_q,
            max_seqlen_kv=config.max_seqlen_kv,
2684
2685
2686
2687
        )

        torch.testing.assert_close(
            y_bshd,
2688
            y_thd.reshape(bs, config.max_seqlen_q, config.hidden_size).contiguous(),
2689
2690
        )

2691
2692
2693
2694
2695
2696
2697
2698
2699
2700

@pytest.mark.parametrize(
    "shape",
    [
        (1, 127, 128, 512),
        (8, 15, 128, 512),
        (8, 1027, 128, 512),
        (16, 10027, 128, 512),
    ],
)
2701
@pytest.mark.parametrize("dtype", param_types, ids=str)
2702
2703
@pytest.mark.parametrize("layout", ["TN", "NN", "NT"])
@pytest.mark.parametrize("accumulate", [False, True])
2704
2705
@pytest.mark.parametrize("use_cutlass", use_cutlass_grouped_gemm)
def test_grouped_gemm(shape, dtype, layout, accumulate, use_cutlass):
2706
2707
2708
2709
2710
2711
2712
2713
2714
2715
    torch.manual_seed(0)
    z, m, k, n = shape

    dist = torch.sort(torch.randint(0, m, (z - 1,))).values.tolist()
    m_splits = torch.tensor(dist + [m]) - torch.tensor([0] + dist)
    assert m_splits.sum() == m and len(m_splits) == z
    m_splits = m_splits.tolist()

    if layout == "TN":
        A = [torch.randn(n, k, dtype=dtype, device="cuda") for _ in range(z)]  # weight
2716
2717
2718
        B = list(torch.split(torch.randn(m, k, dtype=dtype, device="cuda"), m_splits))  # input
        out = [torch.randn(m, n, dtype=dtype, device="cuda")]  # output
        out_ref = [o.clone() for o in torch.split(out[0], m_splits)]
2719
        grad = False
2720
        single_output = True
2721
2722
    elif layout == "NN":
        A = [torch.randn(n, k, dtype=dtype, device="cuda") for _ in range(z)]  # weight
2723
2724
2725
2726
2727
        B = list(
            torch.split(torch.randn(m, n, dtype=dtype, device="cuda"), m_splits)
        )  # grad_output
        out = [torch.randn(m, k, dtype=dtype, device="cuda")]  # dgrad
        out_ref = [o.clone() for o in torch.split(out[0], m_splits)]
2728
        grad = True
2729
        single_output = True
2730
    else:  # layout == "NT"
2731
2732
2733
2734
        A = list(torch.split(torch.randn(m, k, dtype=dtype, device="cuda"), m_splits))  # input
        B = list(
            torch.split(torch.randn(m, n, dtype=dtype, device="cuda"), m_splits)
        )  # grad_output
2735
        out = [torch.randn(n, k, dtype=dtype, device="cuda") for _ in range(z)]  # wgrad
2736
        out_ref = [o.clone() for o in out]
2737
        grad = True
2738
        single_output = False
2739

2740
2741
2742
    if use_cutlass:
        os.environ["NVTE_USE_CUTLASS_GROUPED_GEMM"] = "1"

2743
    for i in range(z):
2744
        general_gemm(
2745
2746
            A[i],
            B[i],
2747
            dtype,
2748
2749
2750
2751
2752
            grad=grad,
            accumulate=accumulate,
            layout=layout,
            out=out_ref[i],
        )
2753
2754
    if single_output:
        out_ref = [torch.cat(out_ref)]
2755

2756
    general_grouped_gemm(
2757
        A,
2758
2759
        B,
        out,
2760
        dtype,
2761
        m_splits=m_splits,
2762
2763
2764
        grad=grad,
        accumulate=accumulate,
        layout=layout,
2765
        single_output=single_output,
2766
2767
2768
    )

    for o, o_ref in zip(out, out_ref):
2769
2770
2771
2772
2773
2774
2775
2776
        if not use_cutlass:
            # cublas implementation should be bit-wise match
            torch.testing.assert_close(o, o_ref, rtol=0, atol=0)
        else:
            torch.testing.assert_close(o, o_ref, rtol=1.5e-2, atol=1.5e-2)

    if use_cutlass:
        os.environ.pop("NVTE_USE_CUTLASS_GROUPED_GEMM", None)
2777
2778


2779
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@pytest.mark.parametrize("N", [32])
@pytest.mark.parametrize("datatype", [torch.float16, torch.bfloat16])
@pytest.mark.parametrize(
    "input_quantizer",
    [
        Float8CurrentScalingQuantizer(fp8_dtype=tex.DType.kFloat8E4M3, device="cuda"),
        MXFP8Quantizer(fp8_dtype=tex.DType.kFloat8E4M3),
    ],
)
@pytest.mark.parametrize(
    "out_quantizer",
    [
        Float8CurrentScalingQuantizer(fp8_dtype=tex.DType.kFloat8E4M3, device="cuda"),
        MXFP8Quantizer(fp8_dtype=tex.DType.kFloat8E4M3),
        Float8Quantizer(
            torch.ones(1).cuda().squeeze(), torch.ones(1).cuda().squeeze(), tex.DType.kFloat8E4M3
        ),
    ],
)
def test_fp8gemm_with_unfused_quantization(N, datatype, input_quantizer, out_quantizer):
    # For MXFP8 and CurrentScaling, below unfused quantization should happen
    # FP8 input --> cublas GEMM --> BF16 output --> Quantize to FP8 --> fp8 Output
    # Skip invalid configurations
    is_mxfp8_needed = isinstance(input_quantizer, MXFP8Quantizer) or isinstance(
        out_quantizer, MXFP8Quantizer
    )
    if not fp8_available:
        pytest.skip(reason_for_no_fp8)
    if is_mxfp8_needed and not mxfp8_available:
        pytest.skip(reason_for_no_mxfp8)
    inp_fp8 = input_quantizer(torch.randn(N, N, device="cuda", dtype=datatype))
    weight_fp8 = input_quantizer(torch.randn(N, N, device="cuda", dtype=datatype))
    outp_type = torch.float32
    quantized_out, *_ = general_gemm(
        weight_fp8,
        inp_fp8,
        outp_type,
        quantization_params=out_quantizer,
        bias=None,
        use_split_accumulator=False,
    )

    out, *_ = general_gemm(
        weight_fp8,
        inp_fp8,
        outp_type,
        quantization_params=None,
        bias=None,
        use_split_accumulator=False,
    )
    expected_quantized_out = out_quantizer(out)

    # Match results again Pytorch GEMM and allow for quantization tolerance
    pytorch_out = torch.matmul(
        inp_fp8.dequantize().to(torch.float64),
        torch.transpose(weight_fp8.dequantize().to(torch.float64), 0, 1),
    )
    fp8_tols = dict(rtol=0.125, atol=0.0675)
    torch.testing.assert_close(
        pytorch_out.to(outp_type), expected_quantized_out.dequantize(), **fp8_tols
    )
    # Match results between quantization happening inside vs outside general_gemm
    torch.testing.assert_close(expected_quantized_out.dequantize(), quantized_out.dequantize())


2844
2845
2846
2847
2848
2849
2850
2851
2852
@pytest.mark.parametrize(
    "shape",
    [
        (1, 128, 128, 512),
        (8, 1024, 128, 512),
        (16, 4096, 128, 512),
    ],
)
@pytest.mark.parametrize("accumulate", [False, True])
2853
def test_fp8_grouped_gemm(shape, accumulate):
2854
2855
2856
2857
    if not fp8_available:
        pytest.skip(reason_for_no_fp8)

    z, m, k, n = shape
2858
    m_splits = [m // z] * z
2859
2860
2861
2862
2863
2864
2865
2866

    dtype = torch.bfloat16
    A = [torch.randn(n, k, dtype=dtype, device="cuda") for _ in range(z)]  # weight
    B = torch.split(torch.randn(m, k, dtype=dtype, device="cuda"), m_splits)  # input
    out = torch.split(torch.randn(m, n, dtype=dtype, device="cuda"), m_splits)  # output
    out_ref = [o.clone() for o in out]

    # fp8 should be robust enough to this fake scale
2867
2868
    scale = 1 + torch.rand(1, dtype=torch.float32, device="cuda").squeeze()
    amax = torch.zeros(1, 1, dtype=torch.float32, device="cuda")
2869

2870
2871
2872
2873
    a_quantizers = [
        Float8Quantizer(
            scale.clone(),
            amax.clone(),
2874
2875
            tex.DType.kFloat8E4M3,
        )
2876
        for _ in range(z)
2877
    ]
2878
2879
2880
2881
2882
    b_quantizers = [
        Float8Quantizer(
            scale.clone(),
            amax.clone(),
            tex.DType.kFloat8E4M3,
2883
        )
2884
        for _ in range(z)
2885
2886
    ]

2887
2888
2889
2890
2891
2892
    A_fp8 = []
    B_fp8 = []

    for i in range(z):
        A_fp8.append(a_quantizers[i](A[i]))
        B_fp8.append(b_quantizers[i](B[i]))
2893
2894
2895

    # baseline
    for i in range(z):
2896
        general_gemm(
2897
2898
            A_fp8[i],
            B_fp8[i],
2899
            dtype,
2900
2901
2902
            out=out_ref[i],
            accumulate=accumulate,
        )
2903
2904
2905
2906
2907
    general_grouped_gemm(
        A_fp8,
        B_fp8,
        out,
        dtype,
2908
        m_splits=m_splits,
2909
2910
        accumulate=accumulate,
    )
2911
2912
2913
2914

    # should be bit-wise match
    for o, o_ref in zip(out, out_ref):
        torch.testing.assert_close(o, o_ref, rtol=0, atol=0)
2915
2916
2917
2918
2919
2920
2921
2922
2923
2924
2925
2926
2927
2928
2929
2930
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2949
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2951
2952
2953
2954
2955
2956
2957
2958
2959
2960
2961
2962
2963


def test_noncontiguous():
    def _create2modules(m, params):
        mod1 = m(*params)
        mod2 = m(*params)
        for p1, p2 in zip(mod1.parameters(), mod2.parameters()):
            p2.data = p1.data.clone()

        return mod1, mod2

    def _run_module(m, inp):
        out = m(inp)
        out.sum().backward()
        ret = [out]
        if inp.grad is not None:
            ret.append(inp.grad)

        for p in m.parameters():
            if p.requires_grad:
                ret.append(p.grad)
        return ret

    a = torch.randn((128, 256), device="cuda", requires_grad=True)
    a = a.T
    assert not a.is_contiguous(), "The test is supposed to test noncontiguous input."

    b = a.contiguous()

    # LayerNorm
    ln1, ln2 = _create2modules(LayerNorm, [128])
    outT = _run_module(ln1, a)
    out = _run_module(ln2, b)

    assert_allclose(out, outT, 1e-7)

    # RMSNorm
    ln1, ln2 = _create2modules(RMSNorm, [128])
    outT = _run_module(ln1, a)
    out = _run_module(ln2, b)

    assert_allclose(out, outT, 1e-7)

    # GEMM
    g1, g2 = _create2modules(Linear, [128, 128])
    outT = _run_module(g1, a)
    out = _run_module(g2, b)

    assert_allclose(out, outT, 1e-7)