test_numerics.py 83.3 KB
Newer Older
1
# Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
2
3
4
#
# See LICENSE for license information.

5
from collections import OrderedDict
6
import math
7
import os
8
from typing import Dict, List, Tuple, Optional
9
import pytest
10
import random
11
12
13
14
15

import torch
import torch.nn as nn
from torch.nn import Parameter

16
17
18
19
20
from transformer_engine.pytorch.fp8 import (
    FP8GlobalStateManager,
    fp8_autocast,
    fp8_model_init,
)
21
22
23
from transformer_engine.pytorch.utils import (
    init_method_normal,
    scaled_init_method_normal,
24
    attention_mask_func,
25
    is_bf16_compatible,
26
27
)
from transformer_engine.pytorch import (
28
29
30
31
    DotProductAttention,
    LayerNormLinear,
    LayerNormMLP,
    Linear,
32
    GroupedLinear,
33
34
35
36
    MultiheadAttention,
    RMSNorm,
    TransformerLayer,
    LayerNorm,
37
38
    Fp8Padding,
    Fp8Unpadding,
39
)
40
from transformer_engine.pytorch.attention.inference import InferenceParams
41
from transformer_engine.pytorch.distributed import checkpoint as te_checkpoint
42
43
from transformer_engine.pytorch.cpp_extensions import general_gemm, general_grouped_gemm
from transformer_engine.pytorch.tensor.float8_tensor import Float8Quantizer
44
from transformer_engine.pytorch.module.base import get_multi_stream_cublas_workspace, get_workspace
45
from transformer_engine.pytorch.utils import get_device_compute_capability
46
from transformer_engine.common import recipe
47
import transformer_engine_torch as tex
48

49
# Only run FP8 tests on supported devices.
50
fp8_available, reason_for_no_fp8 = FP8GlobalStateManager.is_fp8_available()
51
mxfp8_available, reason_for_no_mxfp8 = FP8GlobalStateManager.is_mxfp8_available()
52
53
54
fp8_block_scaling_available, reason_for_no_fp8_block_scaling = (
    FP8GlobalStateManager.is_fp8_block_scaling_available()
)
55

56
sm_80plus = get_device_compute_capability() >= (8, 0)
57

58
59
60
61
62
63
64
seed = 1234
torch.manual_seed(seed)
torch.cuda.manual_seed(seed)
# Record initial RNG state from script run.
_cpu_rng_state = torch.get_rng_state()
_cuda_rng_state = torch.cuda.get_rng_state()

65
66
torch._dynamo.config.recompile_limit = 16

67
68
69
70
71
72
73
74
75
76
77
78

class ModelConfig:
    def __init__(self, hidden_size, eps, num_attention_heads, embed, num_layers, seq_len):
        self.hidden_size = hidden_size
        self.eps = eps
        self.num_attention_heads = num_attention_heads
        self.embed = embed
        self.num_layers = num_layers
        self.seq_len = seq_len


model_configs = {
79
    "small": ModelConfig(128, 1e-5, 8, 36, 4, 128),
80
81
82
    "126m": ModelConfig(768, 1e-5, 12, 64, 12, 2048),
}

83
84
model_configs_inference = {
    # hidden_size, eps, num_attention_heads, embed, num_layers, seq_len
85
    "126m": ModelConfig(768, 1e-5, 12, 64, 12, 256),
86
}
87
backends_inference = ["FlashAttention", "UnfusedAttention", "FusedAttention"]
88
89
90
module_inference = ["TransformerLayer", "MultiheadAttention"]
input_formats_inference = ["sbhd", "bshd"]

91
param_types = [torch.float32, torch.float16]
92
if is_bf16_compatible():  # bf16 requires sm_80 or higher
93
94
95
96
97
98
    param_types.append(torch.bfloat16)

batch_sizes = [1, 2]

all_boolean = [True, False]

99
all_activations = ["gelu", "relu", "reglu", "geglu", "swiglu", "qgelu", "srelu"]
100

101
102
all_normalizations = ["LayerNorm", "RMSNorm"]

103
104
mask_types = ["causal", "no_mask"]

105
106
107
fp8_recipes = [
    recipe.MXFP8BlockScaling(),
    recipe.DelayedScaling(),
108
    recipe.Float8CurrentScaling(),
109
    recipe.Float8BlockScaling(),
110
111
]

112

113
114
115
116
def get_causal_attn_mask(sq: int) -> torch.Tensor:
    return torch.triu(torch.ones(sq, sq, device="cuda"), diagonal=1).bool()


117
118
def dtype_tols(dtype: torch.dtype) -> Dict[str, float]:
    """Estimated numerical error for a datatype
119

120
    Based on tolerances for torch.testing.assert_close.
121

122
123
124
125
126
127
128
129
130
131
132
    """
    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)
    raise ValueError(f"Unsuppored dtype ({dtype})")


def assert_allclose(
133
    l1: List[torch.Tensor], l2: List[torch.Tensor], atol: float = None, rtol: float = None
134
) -> bool:
135
136
    """Ensures two lists are equal."""
    assert len(l1) == len(l2), "Unequal number of outputs."
137
    for i, (t1, t2) in enumerate(zip(l1, l2)):
138
        tols = dtype_tols(t2.dtype)
139
140
        if rtol is not None:
            tols["rtol"] = rtol
141
142
        if atol is not None:
            tols["atol"] = atol
143
        result = torch.allclose(t1, t2, **tols)
144
        if not result:
145
            diff = torch.abs(t1 - t2)
146
            tol = tols["atol"] + (tols["rtol"] * torch.abs(t2))
147
148
149
150
151
152
153
154
155
156
157
158
            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()})."
                )
159
            raise AssertionError(msg)
160
161
162


def reset_rng_states() -> None:
163
    """revert back to initial RNG state."""
164
    torch.set_rng_state(_cpu_rng_state)
165
166
167
168
169
170
171
    torch.cuda.set_rng_state(_cuda_rng_state)


@pytest.fixture(autouse=True)
def reset_global_fp8_state():
    yield
    FP8GlobalStateManager.reset()
172
173


174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
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]
223
        query_layer = query_layer.reshape(output_size[2], output_size[0] * output_size[1], -1)
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
        # [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]
262
        value_layer = value_layer.reshape(value_layer.size(0), output_size[0] * output_size[1], -1)
263
264

        # change view [b * np, sq, sk]
265
        attention_probs = attention_probs.view(output_size[0] * output_size[1], output_size[2], -1)
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280

        # 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

281

282
class TorchLayerNorm(nn.Module):
283
    def __init__(self, in_features: int, eps: float, zero_centered_gamma: bool):
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
        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)
300
301
302
        out = torch.nn.functional.layer_norm(
            inp, (self.in_features,), weight=w, bias=b, eps=self.eps
        )
303
304
        return out.to(x.dtype)

305

306
307
# Adapted from https://github.com/bzhangGo/rmsnorm/blob/c6691f20ec0af4128c8159c903071f7575404295/rmsnorm_torch.py
class TorchRMSNorm(nn.Module):
308
    def __init__(self, in_features, zero_centered_gamma, eps=1e-5):
309
310
311
312
        super().__init__()

        self.eps = eps
        self.in_features = in_features
313
        self.zero_centered_gamma = zero_centered_gamma
314

315
316
        initial_value = torch.ones(in_features) if zero_centered_gamma else torch.zeros(in_features)
        self.weight = nn.Parameter(initial_value)
317
318
319
        self.register_parameter("weight", self.weight)

    def forward(self, x):
320
        norm_x2 = torch.sum(x.float() ** 2, dim=-1, keepdim=True)
321
322
        d_x = self.in_features

323
        rms_x2 = norm_x2 / d_x + self.eps
324
        r_rms_x = rms_x2 ** (-1.0 / 2)
325
        x_normed = x * r_rms_x
326

327
328
329
330
        w = self.weight.float()
        if self.zero_centered_gamma:
            w = 1 + w
        return (w * x_normed).to(x.dtype)
331

332

333
class TorchLayerNormLinear(nn.Module):
334
335
336
337
338
339
340
    def __init__(
        self,
        in_features: int,
        out_features: int,
        eps: float,
        normalization: str = "LayerNorm",
        zero_centered_gamma: bool = False,
341
        bias: bool = True,
342
    ):
343
        super().__init__()
344
        if normalization == "LayerNorm":
345
346
347
            self.layernorm = TorchLayerNorm(
                in_features, eps=eps, zero_centered_gamma=zero_centered_gamma
            )
348
        elif normalization == "RMSNorm":
349
350
351
            self.layernorm = TorchRMSNorm(
                in_features, eps=eps, zero_centered_gamma=zero_centered_gamma
            )
352
353
354
        else:
            raise RuntimeError("Unsupported normalization")

355
        self.linear = nn.Linear(in_features, out_features, bias=bias)
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371

    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,
        )

372
373
    def forward(self, x, attention_mask=None):
        output = self.mhsa(x, x, x, attn_mask=attention_mask, need_weights=False)
374
375
376
377
        if isinstance(output, tuple):
            output = output[0]
        return output

378

379
380
381
class TorchQuickGELU(nn.Module):
    def forward(self, input: torch.Tensor) -> torch.Tensor:
        return input * torch.sigmoid(1.702 * input)
382

383

384
385
386
387
class TorchSquaredRELU(nn.Module):
    def forward(self, input: torch.Tensor) -> torch.Tensor:
        return (input > 0) * input * input

388

389
390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
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


423
424
425
426
427
428
429
430
431
_supported_act = {
    "geglu": nn.GELU(approximate="tanh"),
    "gelu": nn.GELU(approximate="tanh"),
    "reglu": nn.ReLU(),
    "relu": nn.ReLU(),
    "swiglu": nn.SiLU(),
    "qgelu": TorchQuickGELU(),
    "srelu": TorchSquaredRELU(),
}
432

433

434
435
436
437
438
439
440
class TorchGLU(nn.Module):
    def __init__(self, activation: str):
        super().__init__()
        self.act = _supported_act[activation]

    def forward(self, x):
        shape = x.size(-1)
441
442
        a = x[..., : shape // 2]
        b = x[..., (shape // 2) :]
443
444
        a = self.act(a)
        return a * b
445

446

447
class TorchLayerNormMLP(nn.Module):
448
449
450
451
452
453
454
    def __init__(
        self,
        hidden_size: int,
        ffn_hidden_size: int,
        eps: float = 1e-5,
        activation="gelu",
        normalization: str = "LayerNorm",
455
        bias: bool = True,
456
    ):
457
        super().__init__()
458
        if normalization == "LayerNorm":
459
            self.ln = TorchLayerNorm(hidden_size, eps=eps, zero_centered_gamma=False)
460
        elif normalization == "RMSNorm":
461
            self.ln = TorchRMSNorm(hidden_size, eps=eps, zero_centered_gamma=False)
462
463
        else:
            raise RuntimeError("Unsupported normalization")
464
        if "glu" in activation:
465
466
467
468
469
470
            fc1_output_features = 2 * ffn_hidden_size
            self.gelu = TorchGLU(activation)
        else:
            fc1_output_features = ffn_hidden_size
            self.gelu = _supported_act[activation]

471
472
        self.fc1 = nn.Linear(hidden_size, fc1_output_features, bias=bias)
        self.fc2 = nn.Linear(ffn_hidden_size, hidden_size, bias=bias)
473
474

    def forward(self, x):
475
476
        t = self.gelu(self.fc1(self.ln(x)))
        return self.fc2(t)
477
478
479


class TorchGPT(nn.Module):
480
481
482
    def __init__(
        self, hidden_size: int, eps: float, num_attention_heads: int, parallel_attention_mlp: bool
    ):
483
        super().__init__()
484
        self.ln = nn.LayerNorm(hidden_size, eps=eps)
485
        self.causal_attn = TorchMHA(hidden_size, num_attention_heads)
486
        self.ln_mlp = TorchLayerNormMLP(hidden_size, 4 * hidden_size, eps)
487
        self.parallel_attention_mlp = parallel_attention_mlp
488
489
490
491

    def forward(
        self,
        x: torch.Tensor,
492
        attention_mask: Optional[torch.Tensor] = None,
493
    ) -> torch.Tensor:
494
        a = self.ln(x)
495
        b = self.causal_attn(a, attention_mask)
496
497
498
499
500
501
502
        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)
503
504
505
        return x


506
507
508
def _test_e2e_selective_recompute(
    bs, dtype, config, fp8, recipe, fp8_model_params=False, recompute=False
):
509
    reset_rng_states()
510
    FP8GlobalStateManager.reset()
511
512
513
514
515

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

516
    with fp8_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
        block = TransformerLayer(
            config.hidden_size,
            4 * config.hidden_size,
            config.num_attention_heads,
            layernorm_epsilon=config.eps,
            init_method=init_method,
            output_layer_init_method=output_layer_init_method,
            hidden_dropout=0.1,
            attention_dropout=0.1,
            kv_channels=config.embed,
            apply_residual_connection_post_layernorm=False,
            output_layernorm=False,
            params_dtype=dtype,
            fuse_qkv_params=True,
            device="cuda",
532
533
534
        )

    te_inp_hidden_states = torch.randn(
535
536
537
538
539
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
540
541
542
    te_inp_hidden_states.retain_grad()
    te_inp_attn_mask = get_causal_attn_mask(config.seq_len)

543
    with fp8_autocast(enabled=fp8, fp8_recipe=recipe):
544
545
        te_out = block(
            te_inp_hidden_states,
546
            attention_mask=te_inp_attn_mask,
547
            checkpoint_core_attention=recompute,
548
549
550
551
552
553
554
555
556
557
558
559
560
561
        )
    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)
562
@pytest.mark.parametrize("model", ["126m"])
563
@pytest.mark.parametrize("fp8", all_boolean)
564
@pytest.mark.parametrize("recipe", fp8_recipes)
565
@pytest.mark.parametrize("fp8_model_params", all_boolean)
566
def test_gpt_selective_activation_recompute(dtype, bs, model, fp8, recipe, fp8_model_params):
567
568
    if fp8 and not fp8_available:
        pytest.skip(reason_for_no_fp8)
569
570
    if recipe.mxfp8() and not mxfp8_available:
        pytest.skip(reason_for_no_mxfp8)
571
572
    if recipe.float8_block_scaling() and not fp8_block_scaling_available:
        pytest.skip(reason_for_no_fp8_block_scaling)
573

574
575
    config = model_configs[model]

576
    outputs = _test_e2e_selective_recompute(
577
        bs, dtype, config, fp8, recipe, fp8_model_params, recompute=False
578
579
    )
    outputs_recompute = _test_e2e_selective_recompute(
580
        bs, dtype, config, fp8, recipe, fp8_model_params, recompute=True
581
    )
582
583
584
585
586
587
588

    # 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))
589

590
591
592
593
594
595
596
    for i, (ref, test) in enumerate(zip(outputs, outputs_recompute)):
        torch.testing.assert_close(
            test,
            ref,
            msg=f"Mismatch in tensor {i}",
            **tols,
        )
597
598


599
def _test_e2e_full_recompute(
600
    bs, dtype, config, fp8, recipe, fp8_model_params=False, recompute=False, use_reentrant=True
601
):
602
603
604
    reset_rng_states()
    FP8GlobalStateManager.reset()

605
606
607
608
    sigma = 0.023
    init_method = init_method_normal(sigma)
    output_layer_init_method = scaled_init_method_normal(sigma, config.num_layers)

609
    with fp8_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
610
        block = TransformerLayer(
611
612
613
614
615
616
617
618
619
620
621
622
            config.hidden_size,
            4 * config.hidden_size,
            config.num_attention_heads,
            layernorm_epsilon=config.eps,
            init_method=init_method,
            output_layer_init_method=output_layer_init_method,
            hidden_dropout=0.1,
            attention_dropout=0.1,
            kv_channels=config.embed,
            apply_residual_connection_post_layernorm=False,
            output_layernorm=False,
            params_dtype=dtype,
623
            fuse_qkv_params=True,
624
            device="cuda",
625
        )
626

627
    te_inp_hidden_states = torch.randn(
628
629
630
631
632
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=use_reentrant,
    )
633
634
    if use_reentrant:
        te_inp_hidden_states.retain_grad()
635
636
    te_inp_attn_mask = get_causal_attn_mask(config.seq_len)

637
    with fp8_autocast(enabled=fp8, fp8_recipe=recipe):
638
639
640
641
642
643
        if recompute:
            te_out = te_checkpoint(
                block,
                te_inp_hidden_states,
                attention_mask=te_inp_attn_mask,
                checkpoint_core_attention=False,
644
645
646
                distribute_saved_activations=False,
                tp_group=None,
                use_reentrant=use_reentrant,
647
648
649
650
651
652
653
654
655
656
657
            )
        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()

658
659
660
661
662
663
    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():
664
665
        if p.requires_grad:
            outputs.append(p.grad)
666
667
668
            names.append(name)

    return outputs, names
669
670
671
672


@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
673
@pytest.mark.parametrize("model", ["126m"])
674
@pytest.mark.parametrize("fp8", all_boolean)
675
@pytest.mark.parametrize("recipe", fp8_recipes)
676
@pytest.mark.parametrize("fp8_model_params", all_boolean)
677
@pytest.mark.parametrize("use_reentrant", all_boolean)
678
679
680
def test_gpt_full_activation_recompute(
    dtype, bs, model, fp8, recipe, fp8_model_params, use_reentrant
):
681
682
    if fp8 and not fp8_available:
        pytest.skip(reason_for_no_fp8)
683
684
    if recipe.mxfp8() and not mxfp8_available:
        pytest.skip(reason_for_no_mxfp8)
685
686
    if recipe.float8_block_scaling() and not fp8_block_scaling_available:
        pytest.skip(reason_for_no_fp8_block_scaling)
687
688
689

    config = model_configs[model]

690
691
692
693
    if not use_reentrant:
        # Non-reentrant checkpoint becomes non-deterministic with bias+GELU fusion
        os.environ["NVTE_BIAS_GELU_NVFUSION"] = "0"

694
    outputs, names = _test_e2e_full_recompute(
695
696
697
698
699
700
701
702
        bs,
        dtype,
        config,
        fp8,
        recipe,
        fp8_model_params,
        recompute=False,
        use_reentrant=use_reentrant,
703
704
    )
    outputs_recompute, _ = _test_e2e_full_recompute(
705
706
707
708
709
710
711
712
        bs,
        dtype,
        config,
        fp8,
        recipe,
        fp8_model_params,
        recompute=True,
        use_reentrant=use_reentrant,
713
    )
714
715
716
717
718

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

719
720
721
722
723
724
725
726
727
728
729
730
731
    # 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,
        )
732
733
734
735
736
737


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)
738

739
740
741
742
743
744
745
746
747
748
749
750
751
752
    return TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
        config.num_attention_heads,
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0.1,
        attention_dropout=0.1,
        kv_channels=config.embed,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        params_dtype=dtype,
        device="cuda",
753
754
755
756
757
758
759
    )


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

    te_inp_hidden_states = torch.randn(
760
761
762
763
764
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
765
766
767
768
769
770
771
    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,
772
            None,
773
774
775
776
777
778
779
780
781
782
783
784
785
786
787
788
789
        )
        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())

790
791
792
793
        global _cpu_rng_state, _cuda_rng_state
        _cpu_rng_state = torch.get_rng_state()
        _cuda_rng_state = torch.cuda.get_rng_state()

794
795
        del block
        block = _test_e2e_checkpointing_get_model(config, dtype)
796
        block.load_state_dict(torch.load(path, weights_only=False))
797
        reset_rng_states()
798
799
800
801
802
803
804
805
806
807

        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,
808
            None,
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
        )
        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)
827
@pytest.mark.parametrize("model", ["126m"])
828
829
830
def test_gpt_checkpointing(dtype, bs, model):
    config = model_configs[model]
    outputs = _test_e2e_checkpointing(bs, dtype, config, checkpoint=False)
831
    outputs_checkpoint = _test_e2e_checkpointing(bs, dtype, config, checkpoint=True)
832
833
834
835
836
837
838
839
840
841
842
843

    # 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,
        )
844
845
846
847
848
849


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

    inp_hidden_states = torch.randn(
850
851
852
853
854
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
855
856
857
    inp_hidden_states.retain_grad()
    inp_attn_mask = get_causal_attn_mask(config.seq_len)

858
    out = block(inp_hidden_states, attention_mask=inp_attn_mask)
859
860
861
862
863
864
865
866
867
868
869
870
871
    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)
872
@pytest.mark.parametrize("model", ["small"])
873
874
@pytest.mark.parametrize("parallel_attention_mlp", all_boolean)
def test_gpt_accuracy(dtype, bs, model, parallel_attention_mlp):
875
876
    config = model_configs[model]

877
878
879
880
881
882
883
884
885
886
887
888
889
    te_gpt = TransformerLayer(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
        num_attention_heads=config.num_attention_heads,
        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()
890
891
892
893
894
895

    torch_gpt = (
        TorchGPT(
            config.hidden_size,
            config.eps,
            config.num_attention_heads,
896
            parallel_attention_mlp=parallel_attention_mlp,
897
898
899
900
901
902
903
904
        )
        .to(dtype=dtype)
        .cuda()
        .eval()
    )

    # Share params
    with torch.no_grad():
905
        torch_gpt.ln.weight = Parameter(
906
907
            te_gpt.self_attention.layernorm_qkv.layer_norm_weight.clone()
        )
908
        torch_gpt.ln.bias = Parameter(te_gpt.self_attention.layernorm_qkv.layer_norm_bias.clone())
909
910
911
912
913
914
915
916
917
918
919
920
        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()
        )
921
922
923
924
925
926
        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())
927
928
929
930

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

931
932
933
934
935
936
    atol = {
        torch.float32: 5e-3,
        torch.half: 5e-2,
        torch.bfloat16: 1e-1,
    }

937
    # Check output.
938
939
940
941
942
943
944
945
946
947
948
949
    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])
950
951


952
def _test_mha_accuracy(block, bs, dtype, config, mask_type, te=True):
953
954
955
    reset_rng_states()

    inp_hidden_states = torch.randn(
956
957
958
959
960
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
961
962
963
    inp_hidden_states.retain_grad()
    inp_attn_mask = get_causal_attn_mask(config.seq_len) if mask_type == "causal" else None

964
965
966
967
968
969
    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)
970
971
972
973
974
975
976
977
978
979
980
981
982
    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)
983
@pytest.mark.parametrize("model", ["small"])
984
985
986
987
@pytest.mark.parametrize("mask_type", mask_types)
def test_mha_accuracy(dtype, bs, model, mask_type):
    config = model_configs[model]

988
989
990
991
992
993
994
995
996
    te_mha = MultiheadAttention(
        config.hidden_size,
        config.num_attention_heads,
        fuse_qkv_params=True,
        params_dtype=dtype,
        qkv_weight_interleaved=False,
        input_layernorm=False,
        device="cuda",
    ).eval()
997
998
999
1000
1001
1002
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013
1014

    torch_mha = (
        TorchMHA(
            config.hidden_size,
            config.num_attention_heads,
        )
        .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())

1015
1016
    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)
1017
1018
1019
1020
1021
1022
1023

    # 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)

1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
1034
1035
1036
1037
1038
    # 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])

1039

1040
def _test_granular_accuracy(block, bs, dtype, config, delay_wgrad_compute=False):
1041
1042
1043
    reset_rng_states()

    inp_hidden_states = torch.randn(
1044
1045
1046
1047
1048
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
1049
1050
1051
    inp_hidden_states.retain_grad()

    out = block(inp_hidden_states)
1052
1053
    if isinstance(out, (List, Tuple)):
        out = out[0]
1054
1055
    loss = out.sum()
    loss.backward()
1056
1057
    if delay_wgrad_compute:
        block.backward_dw()
1058
1059
1060
1061
1062

    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
1063
1064
1065
1066
1067
            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)
1068
1069
1070
    return outputs


1071
1072
1073
def _test_dpa_accuracy(block, bs, dtype, config):
    reset_rng_states()

1074
1075
1076
    mask = torch.triu(
        torch.ones(config.seq_len, config.seq_len, dtype=torch.bool, device="cuda"), diagonal=1
    )
1077
    query, key, value = [
1078
1079
1080
1081
1082
1083
1084
1085
        torch.randn(
            (config.seq_len, bs, config.num_attention_heads, config.embed),
            dtype=dtype,
            device="cuda",
            requires_grad=True,
        )
        for _ in range(3)
    ]
1086
1087
1088
1089
1090

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

1091
    out = block(query, key, value, attention_mask=mask)
1092
1093
1094
1095
1096
1097
1098
1099
1100
1101
    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)
1102
@pytest.mark.parametrize("model", ["126m"])
1103
1104
1105
1106
1107
1108
1109
def test_dpa_accuracy(dtype, bs, model):
    config = model_configs[model]

    te_dpa = (
        DotProductAttention(
            config.num_attention_heads,
            config.embed,
1110
            attention_dropout=0.0,  # disable dropout, FU uses rng differently
1111
1112
1113
1114
1115
1116
1117
1118
        )
        .to(dtype=dtype)
        .cuda()
    )

    torch_dpa = (
        TorchDotProductAttention(
            config.embed,
1119
            0.0,  # dropout
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
1133
        )
        .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)

1134
1135
1136
    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)

1137

1138
1139
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
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)


1154
1155
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1156
@pytest.mark.parametrize("model", ["small"])
1157
1158
1159
@pytest.mark.parametrize("return_bias", all_boolean)
@pytest.mark.parametrize("bias", all_boolean)
def test_linear_accuracy(dtype, bs, model, return_bias, bias):
1160
1161
    config = model_configs[model]

1162
1163
1164
1165
    te_linear = TestReturnBiasModule(
        Linear,
        in_features=config.hidden_size,
        out_features=4 * config.hidden_size,
1166
        params_dtype=dtype,
1167
1168
        return_bias=return_bias,
        bias=bias,
1169
        device="cuda",
1170
    )
1171

1172
1173
1174
    torch_linear = torch.nn.Linear(
        config.hidden_size,
        4 * config.hidden_size,
1175
        bias=bias,
1176
1177
        device="cuda",
        dtype=dtype,
1178
    )
1179
1180
1181

    # Share params
    with torch.no_grad():
1182
1183
1184
        torch_linear.weight = Parameter(te_linear.te_module.weight.clone())
        if bias:
            torch_linear.bias = Parameter(te_linear.te_module.bias.clone())
1185
1186
1187
1188
1189

    te_outputs = _test_granular_accuracy(te_linear, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_linear, bs, dtype, config)

    # Check output.
1190
1191
1192
1193
1194
1195
1196
1197
1198
    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])
1199

1200

1201
1202
1203
1204
1205
1206
1207
1208
1209
1210
1211
1212
1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227
1228
1229
1230
1231
1232
1233
1234
1235
1236
1237
1238
1239
1240
1241
1242
1243
1244
1245
1246
1247
1248
@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
    )

    # 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)


1249
1250
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1251
@pytest.mark.parametrize("model", ["126m"])
1252
@pytest.mark.parametrize("eps", [1e-1, 1e-3, 1e-5, 1e-7])
1253
1254
@pytest.mark.parametrize("zero_centered_gamma", all_boolean)
def test_rmsnorm_accuracy(dtype, bs, model, eps, zero_centered_gamma):
1255
1256
    config = model_configs[model]

1257
1258
1259
1260
1261
1262
1263
    te_rmsnorm = RMSNorm(
        config.hidden_size,
        eps=eps,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
        device="cuda",
    ).eval()
1264
1265

    torch_rmsnorm = (
1266
        TorchRMSNorm(config.hidden_size, eps=eps, zero_centered_gamma=zero_centered_gamma)
1267
1268
1269
1270
1271
1272
1273
1274
1275
1276
1277
1278
        .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)

1279
1280
1281
1282
    atol = {
        torch.float32: 1e-7,
        torch.half: 2e-3,
        torch.bfloat16: 2e-2,
1283
    }
1284
1285

    # Check output.
1286
1287
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype])

1288
1289
1290
1291
1292
1293
1294
1295
1296
1297
    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])

1298

1299
1300
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1301
@pytest.mark.parametrize("model", ["126m"])
1302
1303
1304
1305
1306
@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]

1307
1308
1309
1310
1311
1312
1313
    te_layernorm = LayerNorm(
        config.hidden_size,
        eps=eps,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
        device="cuda",
    ).eval()
1314
1315

    torch_layernorm = (
1316
        TorchLayerNorm(config.hidden_size, eps=eps, zero_centered_gamma=zero_centered_gamma)
1317
1318
1319
1320
1321
1322
1323
1324
1325
1326
1327
1328
1329
        .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)

1330
1331
1332
1333
    atol = {
        torch.float32: 1e-7,
        torch.half: 2e-3,
        torch.bfloat16: 2e-2,
1334
    }
1335
1336

    # Check output.
1337
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype])
1338

1339
1340
1341
1342
1343
1344
1345
1346
1347
1348
    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])

1349

1350
1351
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1352
@pytest.mark.parametrize("model", ["small"])
1353
@pytest.mark.parametrize("normalization", all_normalizations)
1354
@pytest.mark.parametrize("zero_centered_gamma", all_boolean)
1355
1356
1357
1358
1359
@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
):
1360
1361
    config = model_configs[model]

1362
1363
1364
1365
1366
    te_ln_linear = TestReturnBiasModule(
        LayerNormLinear,
        in_features=config.hidden_size,
        out_features=4 * config.hidden_size,
        eps=config.eps,
1367
1368
1369
        normalization=normalization,
        params_dtype=dtype,
        zero_centered_gamma=zero_centered_gamma,
1370
1371
        return_bias=return_bias,
        bias=bias,
1372
        device="cuda",
1373
    )
1374
1375
1376
1377
1378
1379

    torch_ln_linear = (
        TorchLayerNormLinear(
            config.hidden_size,
            4 * config.hidden_size,
            config.eps,
1380
            normalization=normalization,
1381
            zero_centered_gamma=zero_centered_gamma,
1382
            bias=bias,
1383
1384
1385
1386
1387
1388
1389
        )
        .to(dtype=dtype)
        .cuda()
    )

    # Share params
    with torch.no_grad():
1390
1391
1392
        torch_ln_linear.layernorm.weight = Parameter(
            te_ln_linear.te_module.layer_norm_weight.clone()
        )
1393
        if normalization != "RMSNorm":
1394
1395
1396
1397
1398
1399
            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())
1400
1401
1402
1403

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

1404
1405
1406
1407
    atol = {
        torch.float32: 2.5e-4,
        torch.half: 2e-3,
        torch.bfloat16: 2e-2,
1408
    }
1409
1410
1411
1412
1413
    rtol = {
        torch.float32: 1e-3,
        torch.half: 4e-2,
        torch.bfloat16: 4e-2,
    }
1414
1415

    # Check output.
1416
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype], rtol[dtype])
1417

1418
1419
1420
1421
1422
1423
1424
1425
1426
1427
1428
1429
1430
1431
1432
    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])

1433

1434
1435
1436
1437
1438
1439
1440
1441
1442
1443
1444
1445
1446
1447
1448
1449
1450
1451
1452
1453
1454
1455
1456
1457
1458
1459
1460
1461
1462
1463
1464
1465
1466
1467
1468
1469
1470
1471
1472
1473
1474
1475
1476
1477
1478
1479
1480
1481
1482
1483
1484
1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
@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)


1495
1496
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
1497
@pytest.mark.parametrize("model", ["small"])
1498
@pytest.mark.parametrize("activation", all_activations)
1499
@pytest.mark.parametrize("normalization", all_normalizations)
1500
1501
1502
@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):
1503
1504
    config = model_configs[model]

1505
1506
1507
1508
    te_ln_mlp = TestReturnBiasModule(
        LayerNormMLP,
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
1509
1510
1511
        activation=activation,
        normalization=normalization,
        params_dtype=dtype,
1512
1513
        return_bias=return_bias,
        bias=bias,
1514
        device="cuda",
1515
    )
1516
1517
1518
1519
1520

    torch_ln_mlp = (
        TorchLayerNormMLP(
            config.hidden_size,
            4 * config.hidden_size,
1521
            activation=activation,
1522
            normalization=normalization,
1523
            bias=bias,
1524
1525
1526
1527
1528
1529
1530
        )
        .to(dtype=dtype)
        .cuda()
    )

    # Share params
    with torch.no_grad():
1531
        torch_ln_mlp.ln.weight = Parameter(te_ln_mlp.te_module.layer_norm_weight.clone())
1532
        if normalization != "RMSNorm":
1533
1534
1535
1536
1537
1538
            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())
1539
1540
1541
1542

    te_outputs = _test_granular_accuracy(te_ln_mlp, bs, dtype, config)
    torch_outputs = _test_granular_accuracy(torch_ln_mlp, bs, dtype, config)

1543
1544
1545
1546
1547
1548
    atol = {
        torch.float32: 2e-2,
        torch.half: 5e-2,
        torch.bfloat16: 5e-2,
    }

1549
1550
1551
1552
1553
1554
    rtol = {
        torch.float32: 1e-3,
        torch.half: 4e-2,
        torch.bfloat16: 4e-2,
    }

1555
    # Check output.
1556
    assert_allclose(te_outputs[0], torch_outputs[0], atol[dtype], rtol[dtype])
1557
1558
1559
1560
1561
1562
1563
1564
1565
1566
1567
1568

    # 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])
1569
1570


1571
1572
1573
1574
1575
1576
1577
1578
1579
1580
1581
1582
1583
1584
1585
1586
1587
1588
1589
1590
1591
1592
1593
1594
1595
1596
1597
1598
1599
1600
1601
1602
1603
1604
1605
1606
1607
1608
1609
1610
1611
1612
1613
1614
1615
1616
1617
1618
1619
1620
1621
1622
1623
1624
1625
1626
1627
1628
1629
1630
1631
1632
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
@pytest.mark.parametrize("model", ["small"])
@pytest.mark.parametrize("activation", all_activations)
@pytest.mark.parametrize("normalization", all_normalizations)
@pytest.mark.parametrize("bias", all_boolean)
@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
def test_layernorm_mlp_accuracy_delay_wgrad_compute(
    dtype, bs, model, activation, normalization, bias, fuse_wgrad_accumulation
):
    config = model_configs[model]

    ln_mlp = LayerNormMLP(
        hidden_size=config.hidden_size,
        ffn_hidden_size=4 * config.hidden_size,
        eps=config.eps,
        bias=bias,
        normalization=normalization,
        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,
        normalization=normalization,
        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())
        if normalization != "RMSNorm":
            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())
        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)


1633
def _test_grouped_linear_accuracy(
1634
1635
1636
1637
1638
1639
1640
1641
1642
    block,
    num_gemms,
    bs,
    dtype,
    config,
    recipe,
    fp8,
    fuse_wgrad_accumulation,
    delay_wgrad_compute=False,
1643
):
1644
1645
1646
1647
1648
1649
1650
1651
1652
1653
1654
1655
    reset_rng_states()
    if fp8:
        FP8GlobalStateManager.reset()

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

1656
    if num_gemms > 1:
1657
1658
        split_size = 1
        if fp8:
1659
            split_size = 16
1660
1661
1662
            if recipe.mxfp8():
                split_size = 128
        m = config.seq_len // split_size
1663
1664
1665
        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)
1666
        m_splits = m_splits * split_size
1667
1668
1669
        assert m_splits.sum() == config.seq_len and len(m_splits) == num_gemms
    else:
        m_splits = torch.tensor([config.seq_len])
1670

1671
    with fp8_autocast(enabled=fp8, fp8_recipe=recipe):
1672
1673
1674
1675
1676
1677
1678
1679
1680
1681
1682
1683
        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()
1684
1685
1686
1687
1688
1689
    if delay_wgrad_compute:
        if isinstance(block, GroupedLinear):
            block.backward_dw()
        else:
            for i in range(num_gemms):
                block[i].backward_dw()
1690
1691
1692
1693
1694

    torch.cuda.synchronize()
    outputs = [out, inp_hidden_states.grad]
    for p in block.parameters():
        if p.requires_grad:
1695
1696
1697
1698
1699
            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)
1700
1701
1702
    return outputs


1703
@pytest.mark.parametrize("dtype", param_types, ids=str)
1704
1705
@pytest.mark.parametrize("num_gemms", [3, 6])
@pytest.mark.parametrize("bs", batch_sizes)
1706
@pytest.mark.parametrize("model", ["126m"])
1707
@pytest.mark.parametrize("recipe", fp8_recipes + [None])
1708
@pytest.mark.parametrize("fp8_model_params", all_boolean)
1709
@pytest.mark.parametrize("fuse_wgrad_accumulation", all_boolean)
1710
1711
@pytest.mark.parametrize("bias", all_boolean)
@pytest.mark.parametrize("delay_wgrad_compute", all_boolean)
1712
def test_grouped_linear_accuracy(
1713
1714
1715
1716
1717
1718
1719
    dtype,
    num_gemms,
    bs,
    model,
    recipe,
    fp8_model_params,
    fuse_wgrad_accumulation,
1720
1721
    bias,
    delay_wgrad_compute,
1722
    parallel_mode=None,
1723
):
1724
    fp8 = recipe is not None
1725
1726
    if fp8 and not fp8_available:
        pytest.skip(reason_for_no_fp8)
1727
    if fp8 and recipe.mxfp8() and not mxfp8_available:
1728
        pytest.skip(reason_for_no_mxfp8)
1729
1730
    if fp8 and recipe.float8_block_scaling() and not fp8_block_scaling_available:
        pytest.skip(reason_for_no_fp8_block_scaling)
1731
1732
1733
1734
1735

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

1736
    with fp8_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
1737
1738
1739
1740
        grouped_linear = GroupedLinear(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
1741
            bias=bias,
1742
            params_dtype=dtype,
1743
            parallel_mode=parallel_mode,
1744
            device="cuda",
1745
            fuse_wgrad_accumulation=fuse_wgrad_accumulation,
1746
            delay_wgrad_compute=delay_wgrad_compute,
1747
1748
1749
1750
1751
1752
        ).eval()
        sequential_linear = torch.nn.ModuleList(
            [
                Linear(
                    config.hidden_size,
                    4 * config.hidden_size,
1753
                    bias=bias,
1754
                    params_dtype=dtype,
1755
                    parallel_mode=parallel_mode,
1756
                    device="cuda",
1757
                    fuse_wgrad_accumulation=fuse_wgrad_accumulation,
1758
1759
1760
1761
1762
1763
1764
1765
1766
                ).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())
1767
1768
            if bias:
                sequential_linear[i].bias = Parameter(getattr(grouped_linear, f"bias{i}").clone())
1769
1770
1771
1772
            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()
1773
1774

    outputs_ref = _test_grouped_linear_accuracy(
1775
1776
1777
1778
1779
1780
1781
1782
1783
        sequential_linear,
        num_gemms,
        bs,
        dtype,
        config,
        recipe,
        fp8,
        fuse_wgrad_accumulation,
        delay_wgrad_compute,
1784
1785
    )
    outputs = _test_grouped_linear_accuracy(
1786
1787
1788
1789
1790
1791
1792
1793
1794
        grouped_linear,
        num_gemms,
        bs,
        dtype,
        config,
        recipe,
        fp8,
        fuse_wgrad_accumulation,
        delay_wgrad_compute,
1795
1796
1797
1798
1799
1800
1801
    )

    # 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)


1802
@pytest.mark.parametrize("recipe", fp8_recipes + [None])
1803
def test_grouped_linear_accuracy_single_gemm(recipe):
1804
1805
1806
1807
1808
    """Split the tests to save CI time"""
    test_grouped_linear_accuracy(
        dtype=torch.float32,
        num_gemms=1,
        bs=2,
1809
        model="126m",
1810
        recipe=recipe,
1811
        fp8_model_params=True,
1812
        fuse_wgrad_accumulation=True,
1813
1814
        bias=True,
        delay_wgrad_compute=False,
1815
1816
1817
    )


1818
def _test_padding_grouped_linear_accuracy(block, num_gemms, bs, dtype, config, recipe, fp8=False):
1819
1820

    def _pad_tensor_for_fp8(hidden_states, tokens_per_expert):
1821
1822
1823
        align_size = 16
        if recipe.mxfp8():
            align_size = 32
1824
        padded_tokens_per_expert = [
1825
1826
            (num_tokens + align_size - 1) // align_size * align_size
            for num_tokens in tokens_per_expert
1827
1828
1829
1830
1831
1832
1833
1834
1835
1836
1837
1838
1839
1840
1841
1842
1843
1844
1845
1846
1847
1848
1849
1850
1851
1852
1853
1854
1855
1856
1857
1858
1859
1860
1861
1862
1863
1864
1865
1866
1867
1868
1869
1870
1871
1872
1873
1874
1875
1876
1877
1878
1879
1880
1881
1882
1883
1884
1885
1886
1887
1888
        ]
        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(
        (config.seq_len * bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
    inp_hidden_states.retain_grad()

    m_splits = _generate_random_numbers(num_gemms, config.seq_len * bs)

1889
    with fp8_autocast(enabled=fp8, fp8_recipe=recipe):
1890
1891
1892
1893
1894
1895
1896
1897
1898
1899
1900
1901
1902
1903
1904
1905
1906
1907
1908
1909
1910
1911
1912
1913
1914
1915
        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)
1916
@pytest.mark.parametrize("model", ["126m"])
1917
@pytest.mark.parametrize("fp8", [True])
1918
@pytest.mark.parametrize("recipe", fp8_recipes)
1919
1920
@pytest.mark.parametrize("fp8_model_params", all_boolean)
def test_padding_grouped_linear_accuracy(
1921
    dtype, num_gemms, bs, model, fp8, recipe, fp8_model_params, parallel_mode=None
1922
1923
1924
):
    if fp8 and not fp8_available:
        pytest.skip(reason_for_no_fp8)
1925
1926
    if recipe.mxfp8() and not mxfp8_available:
        pytest.skip(reason_for_no_mxfp8)
1927
1928
    if recipe.float8_block_scaling() and not fp8_block_scaling_available:
        pytest.skip(reason_for_no_fp8_block_scaling)
1929
1930
1931
1932
1933

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

1934
    with fp8_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
1935
1936
1937
1938
1939
1940
1941
1942
1943
1944
        grouped_linear = TorchGroupedLinearWithPadding(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            fp8=fp8,
        ).eval()

1945
    with fp8_model_init(enabled=fp8 and fp8_model_params, recipe=recipe):
1946
1947
1948
1949
1950
1951
1952
1953
1954
1955
1956
1957
1958
1959
1960
1961
1962
1963
1964
1965
1966
        ref_grouped_linear = GroupedLinear(
            num_gemms,
            config.hidden_size,
            4 * config.hidden_size,
            bias=False,
            params_dtype=dtype,
            parallel_mode=parallel_mode,
            device="cuda",
        ).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(
1967
        grouped_linear, num_gemms, bs, dtype, config, recipe, fp8
1968
1969
    )
    outputs_ref = _test_padding_grouped_linear_accuracy(
1970
        ref_grouped_linear, num_gemms, bs, dtype, config, recipe, fp8
1971
1972
1973
1974
1975
1976
1977
    )

    # 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)


1978
1979
1980
1981
1982
1983
1984
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)

1985
    # Placeholders used for graph capture.
1986
1987
1988
1989
    static_input = torch.randn(
        config.seq_len, bs, config.hidden_size, device="cuda", dtype=dtype, requires_grad=True
    )
    static_target = torch.randn(config.seq_len, bs, config.hidden_size, device="cuda", dtype=dtype)
1990
1991
1992
1993

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

1994
1995
1996
1997
1998
1999
2000
2001
2002
2003
2004
2005
2006
2007
2008
2009
2010
2011
2012
2013
    # 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
2014
2015
2016
    if graph:
        g = torch.cuda.CUDAGraph()
        with torch.cuda.graph(g):
2017
2018
2019
2020
2021
2022
2023
            static_output = train_step()

    # Run with new data.
    with torch.no_grad():
        static_input.copy_(real_input)
        static_target.copy_(real_target)
    if graph:
2024
2025
        g.replay()
    else:
2026
        static_output = train_step()
2027
2028
2029
2030
2031
2032
2033
2034
2035
2036
2037
2038
2039

    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)
2040
@pytest.mark.parametrize("model", ["126m"])
2041
2042
2043
2044
2045
2046
2047
def test_gpt_cuda_graph(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)

2048
    block_args = (
2049
2050
2051
        config.hidden_size,
        4 * config.hidden_size,
        config.num_attention_heads,
2052
2053
    )
    block_kwargs = dict(
2054
2055
2056
2057
2058
2059
2060
2061
2062
2063
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0.1,
        attention_dropout=0.1,
        kv_channels=config.embed,
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
2064
    )
2065
2066
2067
2068
2069
    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)
2070

2071
2072
2073
2074
    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())
2075

2076
2077
2078
2079
    # 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)
2080
2081


2082
def _test_gpt_fp8_parameters(bs, dtype, config, fp8_model_params, recipe):
2083
2084
2085
2086
2087
2088
2089
    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)

2090
    with fp8_model_init(enabled=fp8_model_params, recipe=recipe):
2091
2092
2093
2094
2095
2096
2097
2098
2099
2100
2101
2102
2103
2104
2105
        block = TransformerLayer(
            config.hidden_size,
            4 * config.hidden_size,
            config.num_attention_heads,
            layernorm_epsilon=config.eps,
            init_method=init_method,
            output_layer_init_method=output_layer_init_method,
            hidden_dropout=0.1,
            attention_dropout=0.1,
            kv_channels=config.embed,
            apply_residual_connection_post_layernorm=False,
            output_layernorm=False,
            params_dtype=dtype,
            fuse_qkv_params=True,
            device="cuda",
2106
2107
2108
        )

    te_inp_hidden_states = torch.randn(
2109
2110
2111
2112
2113
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
2114
2115
2116
    te_inp_hidden_states.retain_grad()
    te_inp_attn_mask = get_causal_attn_mask(config.seq_len)

2117
    with fp8_autocast(enabled=True, fp8_recipe=recipe):
2118
2119
2120
2121
2122
2123
2124
2125
2126
2127
2128
2129
2130
2131
        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)
2132
@pytest.mark.parametrize("model", ["126m"])
2133
2134
@pytest.mark.parametrize("recipe", fp8_recipes)
def test_gpt_fp8_parameters(dtype, bs, model, recipe):
2135
2136
    if not fp8_available:
        pytest.skip(reason_for_no_fp8)
2137
2138
    if recipe.mxfp8() and not mxfp8_available:
        pytest.skip(reason_for_no_mxfp8)
2139
2140
    if recipe.float8_block_scaling() and not fp8_block_scaling_available:
        pytest.skip(reason_for_no_fp8_block_scaling)
2141
2142
2143

    config = model_configs[model]

2144
2145
    outputs = _test_gpt_fp8_parameters(bs, dtype, config, False, recipe)
    outputs_fp8_params = _test_gpt_fp8_parameters(bs, dtype, config, True, recipe)
2146
2147
2148
2149
2150
2151
2152
2153
2154
2155
2156
2157

    # 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,
        )

2158
2159
2160

@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
2161
@pytest.mark.parametrize("model", ["126m"])
2162
2163
2164
2165
2166
2167
2168
2169
2170
2171
2172
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)
2173
2174
2175
2176
2177
2178
2179
2180
2181
2182
2183
2184
2185
2186
2187
    block_sbhd = TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
        config.num_attention_heads,
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0,
        attention_dropout=0,
        kv_channels=config.embed,
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
        attn_input_format="sbhd",
2188
2189
2190
2191
2192
2193
    )

    # 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)
2194
2195
2196
2197
2198
2199
2200
2201
2202
2203
2204
2205
2206
2207
2208
    block_bshd = TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
        config.num_attention_heads,
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0,
        attention_dropout=0,
        kv_channels=config.embed,
        params_dtype=dtype,
        apply_residual_connection_post_layernorm=False,
        output_layernorm=False,
        device="cuda",
        attn_input_format="bshd",
2209
2210
    )

2211
2212
2213
2214
2215
2216
2217
2218
2219
2220
2221
2222
2223
2224
2225
2226
2227
2228
2229
2230
2231
2232
2233
    torch.manual_seed(0)
    block_thd = TransformerLayer(
        config.hidden_size,
        4 * config.hidden_size,
        config.num_attention_heads,
        layernorm_epsilon=config.eps,
        init_method=init_method,
        output_layer_init_method=output_layer_init_method,
        hidden_dropout=0,
        attention_dropout=0,
        kv_channels=config.embed,
        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"
2234
2235

    x_sbhd = torch.randn(
2236
2237
2238
2239
2240
        (config.seq_len, bs, config.hidden_size),
        dtype=dtype,
        device="cuda",
        requires_grad=True,
    )
2241

2242
    x_bshd = x_sbhd.transpose(0, 1).contiguous()
2243
2244
    x_thd = x_bshd.reshape(bs * config.seq_len, config.hidden_size).contiguous()
    x_thd_cumsum = torch.arange(bs + 1, device="cuda", dtype=torch.int32) * config.seq_len
2245
2246
2247
2248
2249
2250
2251
2252
2253
2254
2255

    # 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)

2256
2257
2258
    # Check that results match
    torch.testing.assert_close(
        y_bshd,
2259
        y_sbhd.transpose(0, 1).contiguous(),
2260
    )
2261

2262
2263
2264
2265
2266
2267
2268
2269
2270
2271
2272
2273
2274
2275
2276
2277
2278
2279
    # 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,
            max_seqlen_q=config.seq_len,
            max_seqlen_kv=config.seq_len,
        )

        torch.testing.assert_close(
            y_bshd,
            y_thd.reshape(bs, config.seq_len, config.hidden_size).contiguous(),
        )

2280
2281
2282
2283
2284
2285
2286
2287

@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("bs", batch_sizes)
@pytest.mark.parametrize("model_key", model_configs_inference.keys())
@pytest.mark.parametrize("use_RoPE", all_boolean)
@pytest.mark.parametrize("input_format", input_formats_inference)
@pytest.mark.parametrize("module", module_inference)
@pytest.mark.parametrize("backend", backends_inference)
2288
2289
2290
2291
2292
2293
2294
2295
2296
@pytest.mark.parametrize("is_paged", [False, True])
def test_kv_cache_accuracy(dtype, bs, model_key, use_RoPE, input_format, module, backend, is_paged):
    reset_rng_states()

    if backend in ["FusedAttention", "FlashAttention"] and dtype == torch.float32:
        pytest.skip("FusedAttention and FlashAttention do not support FP32")
    if use_RoPE:
        pytest.skip("KV cache does not support starting positions for RoPE")

2297
2298
    os.environ["NVTE_FLASH_ATTN"] = "0"
    os.environ["NVTE_FUSED_ATTN"] = "0"
2299
    os.environ["NVTE_UNFUSED_ATTN"] = "0"
2300
2301
2302
2303
2304

    if backend == "FlashAttention":
        os.environ["NVTE_FLASH_ATTN"] = "1"
    elif backend == "FusedAttention":
        os.environ["NVTE_FUSED_ATTN"] = "1"
2305
2306
    elif backend == "UnfusedAttention":
        os.environ["NVTE_UNFUSED_ATTN"] = "1"
2307
2308
2309
2310
2311
2312
2313
2314
2315
2316
2317
2318

    config = model_configs_inference[model_key]

    S = config.seq_len
    B = bs
    H = config.num_attention_heads
    D = config.hidden_size
    head_size = config.embed
    layer_number = 1

    # Limits the max size of KV-cache
    B_max = B
2319
    S_max = S
2320
2321

    if module == "TransformerLayer":
2322
2323
2324
2325
2326
        model = TransformerLayer(
            hidden_size=D,
            ffn_hidden_size=4 * D,
            num_attention_heads=H,
            attn_input_format=input_format,
2327
2328
            self_attn_mask_type="causal",
            enc_dec_attn_mask_type="causal",
2329
2330
2331
2332
2333
            layer_number=layer_number,
            attention_dropout=0.0,
            params_dtype=dtype,
            device="cuda",
        ).eval()
2334
2335
2336
2337
2338
2339
2340
    else:
        model = (
            MultiheadAttention(
                hidden_size=D,
                num_attention_heads=H,
                qkv_format=input_format,
                layer_number=layer_number,
2341
                attention_dropout=0.0,
2342
                attn_mask_type="causal",
2343
                params_dtype=dtype,
2344
2345
2346
2347
2348
            )
            .cuda()
            .eval()
        )

2349
2350
    inference_params = InferenceParams(
        max_batch_size=B_max,
2351
        max_sequence_length=S_max,
2352
2353
2354
2355
2356
2357
2358
2359
        num_heads_kv=H,
        head_dim_k=head_size,
        dtype=dtype,
        is_paged=is_paged,
        total_num_pages=int(B_max * S_max / 256),
        page_size=256,
    )

2360
2361
2362
2363
2364
2365
2366
2367
2368
    rotary_freqs = torch.randn((S_max, 1, 1, head_size), dtype=torch.float, device="cuda")

    input = torch.randn((S, B, D), dtype=dtype, device="cuda")
    if input_format == "bshd":
        input = input.transpose(0, 1).contiguous()

    incremental_output = torch.zeros_like(input)

    # Generate output for the entire sequence
2369
    full_output = model(hidden_states=input, rotary_pos_emb=rotary_freqs if use_RoPE else None)
2370
2371

    # Incrementaly generate outputs using KV-cache
2372
    step_dict = OrderedDict(zip(list(range(B)), [1] * B))
2373
    for i in range(S):
2374
2375
        inference_params.pre_step(step_dict)

2376
        if input_format == "sbhd":
2377
            incremental_input = input[i].view(1, B, D)
2378
        else:
2379
            incremental_input = input[:, i, :].view(B, 1, D)
2380

2381
2382
2383
2384
2385
2386
2387
2388
2389
2390
2391
        seqlens_q = torch.ones(B, dtype=torch.int32, device="cuda")
        cu_seqlens_q = torch.zeros(B + 1, dtype=torch.int32, device="cuda")
        cu_seqlens_q[1:] = torch.cumsum(seqlens_q, dim=0)
        cu_seqlens_kv = cu_seqlens_q.clone()

        mask_type = "padding"
        kwargs = {}
        if module == "TransformerLayer":
            kwargs["self_attn_mask_type"] = mask_type
        else:
            kwargs["attn_mask_type"] = mask_type
2392
2393
2394
        line_output = model(
            hidden_states=incremental_input,
            inference_params=inference_params,
2395
            rotary_pos_emb=rotary_freqs if use_RoPE else None,
2396
2397
2398
2399
2400
            **kwargs,
            max_seqlen_q=1,
            max_seqlen_kv=S,
            cu_seqlens_q=cu_seqlens_q,
            cu_seqlens_kv=cu_seqlens_kv,
2401
        )
2402
2403

        if input_format == "sbhd":
2404
            incremental_output[i, :, :] = line_output.view(B, D)
2405
        else:
2406
            incremental_output[:, i, :] = line_output.view(B, D)
2407
2408
2409

    if module == "TransformerLayer":
        atol = {
2410
2411
            torch.float32: 5e-3,
            torch.half: 5e-3,
2412
2413
2414
2415
            torch.bfloat16: 5e-2,
        }
    else:
        atol = {
2416
2417
            torch.float32: 1e-3,
            torch.half: 1e-3,
2418
2419
2420
2421
2422
            torch.bfloat16: 1e-2,
        }

    # Check if the fully generated output matches the one generated incrementally
    assert_allclose(full_output, incremental_output, atol[dtype])
2423
2424
2425
2426
2427
2428
2429
2430
2431
2432
2433
2434
2435
2436
2437
2438
2439
2440
2441
2442
2443
2444
2445
2446
2447


@pytest.mark.parametrize(
    "shape",
    [
        (1, 127, 128, 512),
        (8, 15, 128, 512),
        (8, 1027, 128, 512),
        (16, 10027, 128, 512),
    ],
)
@pytest.mark.parametrize("dtype", param_types)
@pytest.mark.parametrize("layout", ["TN", "NN", "NT"])
@pytest.mark.parametrize("accumulate", [False, True])
def test_grouped_gemm(shape, dtype, layout, accumulate):
    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
2448
2449
2450
        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)]
2451
        grad = False
2452
        single_output = True
2453
2454
    elif layout == "NN":
        A = [torch.randn(n, k, dtype=dtype, device="cuda") for _ in range(z)]  # weight
2455
2456
2457
2458
2459
        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)]
2460
        grad = True
2461
        single_output = True
2462
    else:  # layout == "NT"
2463
2464
2465
2466
        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
2467
        out = [torch.randn(n, k, dtype=dtype, device="cuda") for _ in range(z)]  # wgrad
2468
        out_ref = [o.clone() for o in out]
2469
        grad = True
2470
        single_output = False
2471
2472

    for i in range(z):
2473
        general_gemm(
2474
2475
2476
            A[i],
            B[i],
            get_workspace(),
2477
            dtype,
2478
2479
2480
2481
2482
            grad=grad,
            accumulate=accumulate,
            layout=layout,
            out=out_ref[i],
        )
2483
2484
    if single_output:
        out_ref = [torch.cat(out_ref)]
2485

2486
    general_grouped_gemm(
2487
        A,
2488
2489
        B,
        out,
2490
2491
        dtype,
        get_multi_stream_cublas_workspace(),
2492
        m_splits=m_splits,
2493
2494
2495
        grad=grad,
        accumulate=accumulate,
        layout=layout,
2496
        single_output=single_output,
2497
2498
2499
2500
2501
2502
2503
2504
2505
2506
2507
2508
2509
2510
2511
2512
2513
2514
2515
2516
2517
2518
    )

    # 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)


@pytest.mark.parametrize(
    "shape",
    [
        (1, 128, 128, 512),
        (8, 1024, 128, 512),
        (16, 4096, 128, 512),
    ],
)
@pytest.mark.parametrize("fp8_dtype", [tex.DType.kFloat8E4M3, tex.DType.kFloat8E5M2])
@pytest.mark.parametrize("accumulate", [False, True])
def test_fp8_grouped_gemm(shape, fp8_dtype, accumulate):
    if not fp8_available:
        pytest.skip(reason_for_no_fp8)

    z, m, k, n = shape
2519
    m_splits = [m // z] * z
2520
2521
2522
2523
2524
2525
2526
2527

    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
2528
2529
    scale = 1 + torch.rand(1, dtype=torch.float32, device="cuda").squeeze()
    amax = torch.zeros(1, 1, dtype=torch.float32, device="cuda")
2530

2531
2532
2533
2534
    a_quantizers = [
        Float8Quantizer(
            scale.clone(),
            amax.clone(),
2535
2536
            tex.DType.kFloat8E4M3,
        )
2537
        for _ in range(z)
2538
    ]
2539
2540
2541
2542
2543
    b_quantizers = [
        Float8Quantizer(
            scale.clone(),
            amax.clone(),
            tex.DType.kFloat8E4M3,
2544
        )
2545
        for _ in range(z)
2546
2547
    ]

2548
2549
2550
2551
2552
2553
    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]))
2554
2555
2556

    # baseline
    for i in range(z):
2557
        general_gemm(
2558
2559
2560
            A_fp8[i],
            B_fp8[i],
            get_workspace(),
2561
            dtype,
2562
2563
2564
            out=out_ref[i],
            accumulate=accumulate,
        )
2565
2566
2567
2568
2569
2570
    general_grouped_gemm(
        A_fp8,
        B_fp8,
        out,
        dtype,
        get_multi_stream_cublas_workspace(),
2571
        m_splits=m_splits,
2572
2573
        accumulate=accumulate,
    )
2574
2575
2576
2577

    # 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)
2578
2579
2580
2581
2582
2583
2584
2585
2586
2587
2588
2589
2590
2591
2592
2593
2594
2595
2596
2597
2598
2599
2600
2601
2602
2603
2604
2605
2606
2607
2608
2609
2610
2611
2612
2613
2614
2615
2616
2617
2618
2619
2620
2621
2622
2623
2624
2625
2626


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)