modelopt.py 71.7 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3

4
from fnmatch import fnmatch
5
from typing import TYPE_CHECKING, Any, Optional
6
7
8
9
10

import torch
from torch.nn import Module
from torch.nn.parameter import Parameter

11
12
import vllm.envs as envs
import vllm.model_executor.layers.fused_moe.modular_kernel as mk
13
from vllm._custom_ops import cutlass_scaled_fp4_mm, scaled_fp4_quant
14
from vllm.attention.layer import Attention
15
from vllm.logger import init_logger
16
from vllm.model_executor.layers.fused_moe.config import (
17
18
19
20
    FusedMoEQuantConfig,
    fp8_w8a8_moe_quant_config,
    nvfp4_moe_quant_config,
)
21
from vllm.model_executor.layers.fused_moe.fused_marlin_moe import fused_marlin_moe
22
from vllm.model_executor.layers.fused_moe.layer import (
23
24
25
26
27
28
29
30
31
    FusedMoE,
    FusedMoEMethodBase,
    FusedMoeWeightScaleSupported,
)
from vllm.model_executor.layers.linear import (
    LinearBase,
    LinearMethodBase,
    UnquantizedLinearMethod,
)
32
from vllm.model_executor.layers.quantization import QuantizationMethods
33
from vllm.model_executor.layers.quantization.base_config import (
34
35
36
    QuantizationConfig,
    QuantizeMethodBase,
)
37
from vllm.model_executor.layers.quantization.kv_cache import BaseKVCacheMethod
38
from vllm.model_executor.layers.quantization.utils.flashinfer_fp4_moe import (
39
    build_flashinfer_fp4_cutlass_moe_prepare_finalize,
40
    flashinfer_trtllm_fp4_moe,
41
    flashinfer_trtllm_fp4_routed_moe,
42
    prepare_static_weights_for_trtllm_fp4_moe,
43
44
45
    reorder_w1w3_to_w3w1,
    select_nvfp4_gemm_impl,
)
46
from vllm.model_executor.layers.quantization.utils.flashinfer_utils import (
47
48
49
50
    FlashinferMoeBackend,
    apply_flashinfer_per_tensor_scale_fp8,
    flashinfer_cutlass_moe_fp8,
    get_flashinfer_moe_backend,
51
    is_flashinfer_supporting_global_sf,
52
53
54
55
56
    register_moe_scaling_factors,
    rotate_flashinfer_fp8_moe_weights,
    select_cutlass_fp8_gemm_impl,
    swap_w13_to_w31,
)
57
58
59
from vllm.model_executor.layers.quantization.utils.fp8_utils import (
    W8A8BlockFp8LinearOp,
)
60
61
62
from vllm.model_executor.layers.quantization.utils.marlin_utils import (
    get_marlin_input_dtype,
)
63
from vllm.model_executor.layers.quantization.utils.marlin_utils_fp4 import (
64
65
66
67
68
    apply_fp4_marlin_linear,
    is_fp4_marlin_supported,
    prepare_fp4_layer_for_marlin,
    prepare_moe_fp4_layer_for_marlin,
)
69
from vllm.model_executor.layers.quantization.utils.quant_utils import (
70
71
72
73
74
    GroupShape,
    cutlass_fp4_supported,
    is_layer_skipped,
    swizzle_blockscale,
)
75
from vllm.model_executor.layers.quantization.utils.w8a8_utils import (
76
    Fp8LinearOp,
77
    cutlass_block_fp8_supported,
78
79
    requantize_with_max_scale,
)
80
81
82
83
84
85
from vllm.model_executor.parameter import (
    BlockQuantScaleParameter,
    ChannelQuantScaleParameter,
    ModelWeightParameter,
    PerTensorScaleParameter,
)
86
from vllm.scalar_type import scalar_types
87
88
89
90
91
from vllm.utils.flashinfer import (
    flashinfer_scaled_fp4_mm,
    has_flashinfer,
    has_flashinfer_moe,
)
92
from vllm.utils.math_utils import round_up
93

94
95
96
if TYPE_CHECKING:
    from vllm.model_executor.models.utils import WeightsMapper

97
98
logger = init_logger(__name__)

99
100
101
102
103
104
105
106
107
108
QUANT_ALGOS = [
    # FP8 (per-tensor weight + optional static activation scale).
    "FP8",
    # FP8 per-channel weight scale + per-token activation scale.
    "FP8_PER_CHANNEL_PER_TOKEN",
    # FP8 per-block weight-only (ModelOpt may emit this as lowercase).
    "FP8_PB_WO",
    # FP4
    "NVFP4",
]
109
KV_CACHE_QUANT_ALGOS = ["FP8"]
110
111


112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
class ModelOptFp8KVCacheMethod(BaseKVCacheMethod):
    """
    Supports loading kv-cache scaling factors from FP8 checkpoints.
    """

    def __init__(self, quant_config: "ModelOptQuantConfigBase"):
        super().__init__(quant_config)


class ModelOptQuantConfigBase(QuantizationConfig):
    LinearMethodCls: type = LinearMethodBase
    FusedMoEMethodCls: type = FusedMoEMethodBase
    KVCacheMethodCls: type = BaseKVCacheMethod

    def __init__(
        self,
        exclude_modules: list[str],
    ):
        super().__init__()
        self.exclude_modules: list[str] = exclude_modules

    def is_layer_excluded(self, prefix: str) -> bool:
        """
        Check if a layer should be excluded from quantization.

        Handles both exact matching (for fused layers) and ModelOpt wildcard matching.

        The ModelOpt exclude_modules list is a list of wildcards.
        """
        if len(self.exclude_modules) == 0:
            return False

        # First check exact matching with fused layer support
        if is_layer_skipped(prefix, self.exclude_modules, self.packed_modules_mapping):
            return True

        # TODO: This special hard coded logic is not needed for quantized checkpoints
        # generated by ModelOpt >= 0.39.0 where they are handled natually by the
        # exclude_modules config. But need to keep them for loading quantized
        # checkpoints generated by older versions. Then check substring matching
        # for patterns not caught by exact match
        for exclude_module in self.exclude_modules:
            # Skip exact matches already handled above
            if exclude_module != prefix and (
                exclude_module in prefix
                or (
                    prefix.startswith("language_model.")
                    and exclude_module in prefix.removeprefix("language_model.")
                )
            ):
                return True

        # modelopt exclude modules are not simple strings, they are wildcards
        for wildcard_pattern in self.exclude_modules:
            if fnmatch(prefix, wildcard_pattern):
                return True

        return False

    def get_quant_method(
        self, layer: torch.nn.Module, prefix: str
    ) -> Optional["QuantizeMethodBase"]:
        # handle kv-cache first so we can focus only on weight quantization thereafter
        if isinstance(layer, Attention):
            return self.KVCacheMethodCls(self)

        # handle exclusion
        if self.is_layer_excluded(prefix):
            if isinstance(layer, LinearBase):
                return UnquantizedLinearMethod()
            return None

        # TODO: This special hard coded logic is not needed for quantized checkpoints
        # generated by ModelOpt >= 0.39.0 where they are handled natually by the
        # exclude_modules config. But need to keep them for loading quantized
        # checkpoints generated by older versions. Then check substring matching
        # for patterns not caught by exact match
        if "vision_tower" in prefix or "vision_model" in prefix:
            return UnquantizedLinearMethod()

        # now, the layer is quantized, handle it here
        if isinstance(layer, LinearBase):
194
195
196
197
            quant_method = self.LinearMethodCls(self)
            if getattr(quant_method, "backend", "") == "marlin":
                quant_method.marlin_input_dtype = get_marlin_input_dtype(prefix)
            return quant_method
198
        elif isinstance(layer, FusedMoE):
199
200
201
202
            quant_method = self.FusedMoEMethodCls(quant_config=self, layer=layer)
            if getattr(quant_method, "backend", "") == "marlin":
                quant_method.marlin_input_dtype = get_marlin_input_dtype(prefix)
            return quant_method
203
204
205
206
207

        return None

    def apply_vllm_mapper(self, hf_to_vllm_mapper: "WeightsMapper"):
        if len(self.exclude_modules) > 0:
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
            # This is a workaround for the weights remapping issue:
            # https://github.com/vllm-project/vllm/issues/28072
            # Right now, the Nvidia ModelOpt library use just one wildcard pattern:
            #        module_path*
            # It gets applied if the whole tree of modules rooted at module_path
            # is not quantized. Here we replace such pattern by 2 patterns that are
            # collectively equivalent to the original pattern:
            #        module_path
            #        module_path.*
            new_exclude_modules = []
            for exclude in self.exclude_modules:
                if len(exclude) >= 2 and exclude[-1] == "*" and exclude[-2] != ".":
                    new_exclude_modules.append(exclude[:-1])
                    new_exclude_modules.append(exclude[:-1] + ".*")
                else:
                    new_exclude_modules.append(exclude)

            self.exclude_modules = hf_to_vllm_mapper.apply_list(new_exclude_modules)
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
262
263
264
265
266
267
268
269
270
271
272
273
274

    @staticmethod
    def get_config_filenames() -> list[str]:
        return ["hf_quant_config.json"]

    @classmethod
    def _from_config(
        cls,
        *,
        quant_method: str,
        kv_cache_quant_method: str | None,
        exclude_modules: list[str],
        original_config: dict[str, Any],
        group_size: int | None,
    ) -> "ModelOptQuantConfigBase":
        raise NotImplementedError("Please implement this function in sub classes")

    @classmethod
    def from_config(cls, config: dict[str, Any]) -> "ModelOptQuantConfigBase":
        # Handle both ModelOpt format and compressed-tensors style format
        if "quantization" in config:
            # Traditional ModelOpt format:
            # {"quantization": {"quant_algo": "..."}}
            quant_config = cls.get_from_keys(config, ["quantization"])
            if not isinstance(quant_config, dict):
                raise ValueError("Expected 'quantization' to be a dictionary in config")

            quant_method = quant_config.get("quant_algo")

            # Handle kv_cache_quant_algo with proper type validation
            kv_cache_quant_method = quant_config.get("kv_cache_quant_algo")

            # Handle group_size with proper type validation
            group_size_raw = quant_config.get("group_size")

            # "exclude_modules" is the key in the legacy hf_quant_config.json
            exclude_modules = quant_config.get("exclude_modules", [])
        else:
            # Compressed-tensors style format:
            # {"quant_algo": "...", "quant_method": "modelopt"}
            quant_method = config.get("quant_algo")
            kv_cache_quant_method = config.get("kv_cache_quant_algo")
            # "ignore" is the key in config.json
            exclude_modules = config.get("ignore", [])
            group_size_raw = config.get("group_size")

        if not quant_method:
            raise ValueError("Missing 'quant_algo' in quantization config")

275
276
277
        # Normalize quant_algo for robust matching (ModelOpt may emit lowercase).
        quant_method = str(quant_method).upper()

278
279
280
281
282
283
284
285
        if kv_cache_quant_method is None:
            # No KV cache quantization, keep this branch just to have this comment
            pass
        elif not isinstance(kv_cache_quant_method, str):
            raise ValueError(
                f"kv_cache_quant_algo must be a string, got "
                f"{type(kv_cache_quant_method)}"
            )
286
287
        else:
            kv_cache_quant_method = kv_cache_quant_method.upper()
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322

        if not isinstance(exclude_modules, list):
            raise ValueError(
                f"exclude_modules must be a list, got {type(exclude_modules)}"
            )

        if group_size_raw is None:
            group_size = None
        elif isinstance(group_size_raw, int):
            group_size = group_size_raw
        else:
            try:
                group_size = int(group_size_raw)
            except (ValueError, TypeError):
                raise ValueError(
                    f"group_size must be an integer, got {type(group_size_raw)}"
                ) from None

        if quant_method not in QUANT_ALGOS:
            raise ValueError(
                f"ModelOpt currently only supports: {QUANT_ALGOS} "
                "quantizations in vLLM. Please check the "
                "`hf_quant_config.json` file for your model's "
                "quant configuration."
            )
        return cls._from_config(
            quant_method=quant_method,
            kv_cache_quant_method=kv_cache_quant_method,
            exclude_modules=exclude_modules,
            group_size=group_size,
            original_config=config,
        )


class ModelOptFp8Config(ModelOptQuantConfigBase):
323
324
325
326
    """Config class for ModelOpt FP8."""

    def __init__(
        self,
327
        quant_method: str,
328
329
330
        is_checkpoint_fp8_serialized: bool,
        kv_cache_quant_method: str | None,
        exclude_modules: list[str],
331
    ) -> None:
332
        super().__init__(exclude_modules)
333
        self.quant_method = quant_method
334
        self.is_checkpoint_fp8_serialized = is_checkpoint_fp8_serialized
335
        self.kv_cache_quant_method = kv_cache_quant_method
336
        if is_checkpoint_fp8_serialized:
337
            logger.warning(
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
                "Detected ModelOpt fp8 checkpoint (quant_algo=%s). Please note "
                "that the format is experimental and could change.",
                quant_method,
            )

        # Select LinearMethod implementation based on quant_algo.
        if self.quant_method == "FP8":
            self.LinearMethodCls = ModelOptFp8LinearMethod
        elif self.quant_method == "FP8_PER_CHANNEL_PER_TOKEN":
            self.LinearMethodCls = ModelOptFp8PcPtLinearMethod
        elif self.quant_method == "FP8_PB_WO":
            self.LinearMethodCls = ModelOptFp8PbWoLinearMethod
        else:
            raise ValueError(
                "Unsupported ModelOpt FP8 quant_algo for vLLM: "
                f"{self.quant_method}. Supported: FP8 / "
                "FP8_PER_CHANNEL_PER_TOKEN / FP8_PB_WO."
355
            )
356

357
    def get_name(self) -> QuantizationMethods:
358
359
        return "modelopt"

360
    def get_supported_act_dtypes(self) -> list[torch.dtype]:
361
362
363
364
365
366
        return [torch.bfloat16, torch.half]

    @classmethod
    def get_min_capability(cls) -> int:
        return 89

367
368
    @classmethod
    def override_quantization_method(
369
        cls, hf_quant_cfg, user_quant
370
    ) -> QuantizationMethods | None:
371
372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
        """Detect if this ModelOpt config should be used based on
        quantization config."""

        if hf_quant_cfg is None:
            return None

        # Use the community standard 'quant_method'
        quant_method = hf_quant_cfg.get("quant_method", "").lower()

        # Only proceed if the method is explicitly "modelopt"
        if quant_method != "modelopt":
            return None

        # Look for ModelOpt-specific config structure
        if "quantization" in hf_quant_cfg:
            quant_config = hf_quant_cfg["quantization"]
            if isinstance(quant_config, dict):
388
389
                quant_algo = str(quant_config.get("quant_algo", ""))
                if "FP8" in quant_algo.upper():
390
391
392
                    return "modelopt"
        else:
            # Check for compressed-tensors style config with specific quant_algo
393
394
            quant_algo = str(hf_quant_cfg.get("quant_algo", ""))
            if "FP8" in quant_algo.upper():
395
396
397
398
                return "modelopt"

        return None

399
    @classmethod
400
401
402
403
404
405
406
407
408
    def _from_config(
        cls,
        *,
        quant_method: str,
        kv_cache_quant_method: str | None,
        exclude_modules: list[str],
        original_config: dict[str, Any],
        **kwargs: Any,
    ) -> "ModelOptFp8Config":
409
        is_checkpoint_fp8_serialized = "FP8" in quant_method
410

411
412
413
414
415
416
        return cls(
            quant_method,
            is_checkpoint_fp8_serialized,
            kv_cache_quant_method,
            exclude_modules,
        )
417

418
419
420
421

class ModelOptFp8LinearMethod(LinearMethodBase):
    """Linear method for Model Optimizer static quantization.
    Supports loading FP8 checkpoints with static weight scale and
422
    activation scale. Future support might be added for dynamic
423
424
425
426
    scales.

    Limitations:
    1. Only support per-tensor quantization due to torch._scaled_mm support.
427
    2. Only support float8_e4m3fn datatype
428
429
430
        Args: quant_config: The ModelOpt quantization config.
    """

431
    def __init__(self, quant_config: ModelOptFp8Config) -> None:
432
        self.quant_config = quant_config
433
        self.fp8_linear = Fp8LinearOp(
434
435
            act_quant_static=True, act_quant_group_shape=GroupShape.PER_TENSOR
        )
436
437
438
439
440

    def create_weights(
        self,
        layer: torch.nn.Module,
        input_size_per_partition: int,
441
        output_partition_sizes: list[int],
442
443
444
445
446
447
448
449
450
451
452
        input_size: int,
        output_size: int,
        params_dtype: torch.dtype,
        **extra_weight_attrs,
    ):
        del input_size, output_size
        output_size_per_partition = sum(output_partition_sizes)
        weight_loader = extra_weight_attrs.get("weight_loader")
        layer.logical_widths = output_partition_sizes
        layer.input_size_per_partition = input_size_per_partition
        layer.output_size_per_partition = output_size_per_partition
453
454
455
456
457
458
459
460
461
462
463
464
465
        weight_dtype = (
            torch.float8_e4m3fn
            if self.quant_config.is_checkpoint_fp8_serialized
            else params_dtype
        )
        weight = ModelWeightParameter(
            data=torch.empty(
                output_size_per_partition, input_size_per_partition, dtype=weight_dtype
            ),
            input_dim=1,
            output_dim=0,
            weight_loader=weight_loader,
        )
466
467
468
469
        layer.register_parameter("weight", weight)

        if self.quant_config.is_checkpoint_fp8_serialized:
            # WEIGHT SCALE
470
471
472
473
            weight_scale = PerTensorScaleParameter(
                data=torch.empty(len(output_partition_sizes), dtype=torch.float32),
                weight_loader=weight_loader,
            )
474
475
476
            weight_scale[:] = torch.finfo(torch.float32).min
            layer.register_parameter("weight_scale", weight_scale)
            # INPUT SCALE
477
478
479
480
            scale = PerTensorScaleParameter(
                data=torch.empty(len(output_partition_sizes), dtype=torch.float32),
                weight_loader=weight_loader,
            )
481
482
483
484
485

            scale[:] = torch.finfo(torch.float32).min
            layer.register_parameter("input_scale", scale)

    def process_weights_after_loading(self, layer: Module) -> None:
486
487
488
489
        weight = layer.weight
        max_w_scale = layer.weight_scale.max()
        if not (layer.weight_scale == layer.weight_scale[0]).all():
            max_w_scale, weight = requantize_with_max_scale(
490
491
                layer.weight, layer.weight_scale, layer.logical_widths
            )
492
493
        layer.weight = Parameter(weight.t(), requires_grad=False)
        layer.weight_scale = Parameter(max_w_scale, requires_grad=False)
494
        layer.input_scale = Parameter(layer.input_scale.max(), requires_grad=False)
495
496
497
498
499

    def apply(
        self,
        layer: torch.nn.Module,
        x: torch.Tensor,
500
        bias: torch.Tensor | None = None,
501
    ) -> torch.Tensor:
502
503
504
505
506
507
508
        return self.fp8_linear.apply(
            input=x,
            weight=layer.weight,
            weight_scale=layer.weight_scale,
            input_scale=layer.input_scale,
            bias=bias,
        )
509
510


511
512
513
514
515
516
517
518
519
520
521
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
555
556
557
558
559
560
561
562
563
564
565
566
567
568
569
570
571
572
573
574
575
576
577
578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
595
596
597
598
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
635
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
class ModelOptFp8PcPtLinearMethod(LinearMethodBase):
    """Linear method for ModelOpt FP8_PER_CHANNEL_PER_TOKEN checkpoints.

    Expected checkpoint structure (per Linear):
    - weight: fp8-e4m3fn, shape [out, in]
    - weight_scale: fp32, shape [out] (per-output-channel)
    - no input_scale (activations are dynamically quantized per-token)
    """

    def __init__(self, quant_config: ModelOptFp8Config) -> None:
        self.quant_config = quant_config
        self.fp8_linear = Fp8LinearOp(
            act_quant_static=False, act_quant_group_shape=GroupShape.PER_TOKEN
        )

    def create_weights(
        self,
        layer: torch.nn.Module,
        input_size_per_partition: int,
        output_partition_sizes: list[int],
        input_size: int,
        output_size: int,
        params_dtype: torch.dtype,
        **extra_weight_attrs,
    ):
        del input_size, output_size

        if not self.quant_config.is_checkpoint_fp8_serialized:
            raise ValueError(
                "FP8_PER_CHANNEL_PER_TOKEN currently only supports "
                "FP8-serialized checkpoints."
            )

        output_size_per_partition = sum(output_partition_sizes)
        weight_loader = extra_weight_attrs.get("weight_loader")
        layer.logical_widths = output_partition_sizes
        layer.input_size_per_partition = input_size_per_partition
        layer.output_size_per_partition = output_size_per_partition

        weight = ModelWeightParameter(
            data=torch.empty(
                output_size_per_partition,
                input_size_per_partition,
                dtype=torch.float8_e4m3fn,
            ),
            input_dim=1,
            output_dim=0,
            weight_loader=weight_loader,
        )
        layer.register_parameter("weight", weight)

        weight_scale = ChannelQuantScaleParameter(
            data=torch.empty(output_size_per_partition, dtype=torch.float32),
            output_dim=0,
            weight_loader=weight_loader,
        )
        weight_scale[:] = torch.finfo(torch.float32).min
        layer.register_parameter("weight_scale", weight_scale)

    def process_weights_after_loading(self, layer: Module) -> None:
        layer.weight = Parameter(layer.weight.t(), requires_grad=False)
        layer.weight_scale = Parameter(layer.weight_scale.data, requires_grad=False)

    def apply(
        self,
        layer: torch.nn.Module,
        x: torch.Tensor,
        bias: torch.Tensor | None = None,
    ) -> torch.Tensor:
        return self.fp8_linear.apply(
            input=x,
            weight=layer.weight,
            weight_scale=layer.weight_scale,
            input_scale=None,
            bias=bias,
        )


class ModelOptFp8PbWoLinearMethod(LinearMethodBase):
    """Linear method for ModelOpt FP8_PB_WO checkpoints.

    ModelOpt exports `weight_scale` as a 4D tensor:
      [out_blk, 1, in_blk, 1]
    where block size is typically 128 for both dims.

    vLLM executes it as FP8 GEMM with *dynamic per-token* activation quant.
    """

    _WEIGHT_BLOCK_SIZE: tuple[int, int] = (128, 128)

    def __init__(self, quant_config: ModelOptFp8Config) -> None:
        self.quant_config = quant_config
        block_n, block_k = self._WEIGHT_BLOCK_SIZE
        self.weight_block_size = list(self._WEIGHT_BLOCK_SIZE)
        self.w8a8_block_fp8_linear = W8A8BlockFp8LinearOp(
            weight_group_shape=GroupShape(block_n, block_k),
            act_quant_group_shape=GroupShape(1, block_k),
            cutlass_block_fp8_supported=cutlass_block_fp8_supported(),
            use_aiter_and_is_supported=False,
        )

    def create_weights(
        self,
        layer: torch.nn.Module,
        input_size_per_partition: int,
        output_partition_sizes: list[int],
        input_size: int,
        output_size: int,
        params_dtype: torch.dtype,
        **extra_weight_attrs,
    ):
        del input_size, output_size

        if not self.quant_config.is_checkpoint_fp8_serialized:
            raise ValueError(
                "FP8_PB_WO currently only supports FP8-serialized checkpoints."
            )

        output_size_per_partition = sum(output_partition_sizes)
        weight_loader = extra_weight_attrs.get("weight_loader")
        layer.logical_widths = output_partition_sizes
        layer.input_size_per_partition = input_size_per_partition
        layer.output_size_per_partition = output_size_per_partition

        # Expose block size so the v2 weight loaders can translate offsets from
        # element-space -> block-space for BlockQuantScaleParameter.
        layer.weight_block_size = self.weight_block_size

        weight = ModelWeightParameter(
            data=torch.empty(
                output_size_per_partition,
                input_size_per_partition,
                dtype=torch.float8_e4m3fn,
            ),
            input_dim=1,
            output_dim=0,
            weight_loader=weight_loader,
        )
        layer.register_parameter("weight", weight)

        block_n, block_k = self._WEIGHT_BLOCK_SIZE
        if output_size_per_partition % block_n != 0:
            raise ValueError(
                "ModelOpt FP8_PB_WO requires out_features divisible by "
                f"{block_n}, got {output_size_per_partition}."
            )
        if input_size_per_partition % block_k != 0:
            raise ValueError(
                "ModelOpt FP8_PB_WO requires in_features divisible by "
                f"{block_k}, got {input_size_per_partition}."
            )

        out_blks = output_size_per_partition // block_n
        in_blks = input_size_per_partition // block_k

        # Match ModelOpt's exported shape so weight loading works without a
        # custom loader: [out_blk, 1, in_blk, 1]
        weight_scale = BlockQuantScaleParameter(
            data=torch.empty((out_blks, 1, in_blks, 1), dtype=torch.float32),
            input_dim=2,
            output_dim=0,
            weight_loader=weight_loader,
        )
        weight_scale[:] = torch.finfo(torch.float32).min
        layer.register_parameter("weight_scale", weight_scale)

    def process_weights_after_loading(self, layer: Module) -> None:
        # Keep weight in [out, in] layout for W8A8BlockFp8LinearOp.
        layer.weight = Parameter(layer.weight.data, requires_grad=False)

        scale = layer.weight_scale
        if scale.dim() == 4:
            # [out_blk, 1, in_blk, 1] -> [out_blk, in_blk]
            scale = scale.squeeze(1).squeeze(-1)
        elif scale.dim() != 2:
            raise ValueError(
                "Unexpected ModelOpt FP8_PB_WO weight_scale shape: "
                f"{tuple(scale.shape)}."
            )

        layer.weight_scale = Parameter(scale.contiguous(), requires_grad=False)

    def apply(
        self,
        layer: torch.nn.Module,
        x: torch.Tensor,
        bias: torch.Tensor | None = None,
    ) -> torch.Tensor:
        return self.w8a8_block_fp8_linear.apply(
            input=x,
            weight=layer.weight,
            weight_scale=layer.weight_scale,
            input_scale=None,
            bias=bias,
        )


708
709
710
711
712
713
714
715
class ModelOptFp8MoEMethod(FusedMoEMethodBase):
    """MoE method for ModelOpt FP8.
    Supports loading FP8 checkpoints with static weight scale and
    activation scale.
    Args:
        quant_config: The ModelOpt quantization config.
    """

716
717
718
    def __init__(
        self,
        quant_config: ModelOptFp8Config,
719
        layer: FusedMoE,
720
    ) -> None:
721
722
        super().__init__(layer.moe_config)
        self.layer = layer
723
724
        self.quant_config = quant_config
        from vllm.model_executor.layers.quantization.utils.w8a8_utils import (
725
726
727
            cutlass_fp8_supported,
        )

728
        self.cutlass_fp8_supported = cutlass_fp8_supported()
729
        self.flashinfer_moe_backend: FlashinferMoeBackend | None = None
730
        if envs.VLLM_USE_FLASHINFER_MOE_FP8 and has_flashinfer_moe():
731
            self.flashinfer_moe_backend = get_flashinfer_moe_backend()
732
733
734
735
736
737
738
739
740
741
            if (
                self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
                and not self.moe.is_act_and_mul
            ):
                logger.info_once(
                    "Non-gated MoE is not supported for min-latency mode,"
                    "falling back to high-throughput mode"
                )
                self.flashinfer_moe_backend = FlashinferMoeBackend.CUTLASS

742
            logger.info_once(
743
744
745
746
                f"Using FlashInfer {self.flashinfer_moe_backend.value} kernels"
            )

    def maybe_make_prepare_finalize(
747
        self,
748
        routing_tables: tuple[torch.Tensor, torch.Tensor, torch.Tensor] | None = None,
749
    ) -> mk.FusedMoEPrepareAndFinalize | None:
750
751
752
        # TRT LLM not supported with all2all yet.
        if self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM:
            return None
753
        return super().maybe_make_prepare_finalize(routing_tables)
754
755
756
757

    def select_gemm_impl(
        self,
        prepare_finalize: mk.FusedMoEPrepareAndFinalize,
758
        layer: torch.nn.Module,
759
    ) -> mk.FusedMoEPermuteExpertsUnpermute:
760
        assert self.moe_quant_config is not None
761
        experts = select_cutlass_fp8_gemm_impl(
762
763
            self.moe,
            self.moe_quant_config,
764
765
766
        )
        logger.debug_once("Using %s", experts.__class__.__name__)
        return experts
767
768
769
770
771
772
773
774
775
776
777

    def create_weights(
        self,
        layer: torch.nn.Module,
        num_experts: int,
        hidden_size: int,
        intermediate_size_per_partition: int,
        params_dtype: torch.dtype,
        **extra_weight_attrs,
    ):
        # Use FP8 dtype if checkpoint is serialized
778
779
780
781
782
        weight_dtype = (
            torch.float8_e4m3fn
            if self.quant_config.is_checkpoint_fp8_serialized
            else params_dtype
        )
783
784
        weight_loader = extra_weight_attrs.get("weight_loader")

785
786
787
788
789
        if self.moe.is_act_and_mul:
            w13_up_dim = 2 * intermediate_size_per_partition
        else:
            w13_up_dim = intermediate_size_per_partition

790
        w13_weight = ModelWeightParameter(
791
792
            data=torch.empty(
                num_experts,
793
                w13_up_dim,
794
795
796
                hidden_size,
                dtype=weight_dtype,
            ),
797
798
799
800
801
802
803
            input_dim=2,
            output_dim=1,
            weight_loader=weight_loader,
        )
        layer.register_parameter("w13_weight", w13_weight)

        w2_weight = ModelWeightParameter(
804
805
806
807
808
809
            data=torch.empty(
                num_experts,
                hidden_size,
                intermediate_size_per_partition,
                dtype=weight_dtype,
            ),
810
811
812
813
814
815
816
817
            input_dim=2,
            output_dim=1,
            weight_loader=weight_loader,
        )
        layer.register_parameter("w2_weight", w2_weight)

        if self.quant_config.is_checkpoint_fp8_serialized:
            # WEIGHT SCALES - Per-tensor scaling for ModelOpts
818
            # For gated MoE, allocate 2 scales for w1 and w3 respectively.
819
            # They will be combined to a single scale after weight loading.
820
821
822
823
824
            # For non-gated MoE, allocate 1 scale for w13.
            if self.moe.is_act_and_mul:
                w13_weight_scale_shape = (num_experts, 2)
            else:
                w13_weight_scale_shape = (num_experts, 1)
825
826
            w13_weight_scale = PerTensorScaleParameter(
                data=torch.full(
827
                    w13_weight_scale_shape,
828
829
830
831
832
833
                    1.0,
                    dtype=torch.float32,
                ),
                weight_loader=weight_loader,
            )
            w2_weight_scale = PerTensorScaleParameter(
834
                data=torch.full((num_experts,), 1.0, dtype=torch.float32),
835
836
837
838
839
840
841
                weight_loader=weight_loader,
            )
            layer.register_parameter("w13_weight_scale", w13_weight_scale)
            layer.register_parameter("w2_weight_scale", w2_weight_scale)

            # Set weight loader attributes for scales
            extra_weight_attrs.update(
842
843
                {"quant_method": FusedMoeWeightScaleSupported.TENSOR.value}
            )
844
845
846

            # INPUT SCALES - Per-tensor scaling for ModelOpt
            w13_input_scale = PerTensorScaleParameter(
847
                data=torch.full((num_experts,), 1.0, dtype=torch.float32),
848
849
850
                weight_loader=weight_loader,
            )
            w2_input_scale = PerTensorScaleParameter(
851
                data=torch.full((num_experts,), 1.0, dtype=torch.float32),
852
853
854
855
856
857
858
859
860
861
                weight_loader=weight_loader,
            )
            layer.register_parameter("w13_input_scale", w13_input_scale)
            layer.register_parameter("w2_input_scale", w2_input_scale)

    def process_weights_after_loading(self, layer: torch.nn.Module) -> None:
        """Process FP8 MoE weights after loading from serialized checkpoint.
        Only supports pre-quantized checkpoints with FP8 weights and scales.
        """

862
863
864
        if self.flashinfer_moe_backend is not None:
            self._maybe_pad_intermediate_for_flashinfer(layer)

865
        layer.w13_weight = Parameter(layer.w13_weight.data, requires_grad=False)
866
867
868
869
        layer.w2_weight = Parameter(layer.w2_weight.data, requires_grad=False)

        from vllm._custom_ops import scaled_fp8_quant
        from vllm.model_executor.layers.quantization.utils.w8a8_utils import (
870
871
            per_tensor_dequantize,
        )
872
873

        # Handle scale parameters
874
        if hasattr(layer, "w13_weight_scale") and layer.w13_weight_scale is not None:
875
876
877
            # Fp8 moe kernel needs single weight scale for w13 per expert.
            # We take the max of the w1 and w3 scales
            # then dequant and requant each expert.
878
879
880
881
882
883
884
885
            if (
                layer.w13_weight_scale.dim() == 2
                and layer.w13_weight_scale.shape[1] == 2
            ):
                assert self.moe.is_act_and_mul, (
                    "w13_weight_scale should have 2 elements per expert "
                    "only for gated MoE"
                )
886
887
888
889
890
891
892
893
894
895
896
897
                # Get the maximum scale across w1 and w3 for each expert
                max_w13_scales = layer.w13_weight_scale.max(dim=1).values

                # Requantize each expert's weights using the combined scale
                # w13_weight (num_experts, 2 * intermediate_size, hidden_size)
                # where the first intermediate_size rows are w1, the next are w3
                intermediate_size = layer.w13_weight.shape[1] // 2
                for expert_id in range(layer.w13_weight.shape[0]):
                    start = 0
                    for shard_id in range(2):  # w1 and w3
                        # Dequantize using the original scale for this shard
                        dq_weight = per_tensor_dequantize(
898
899
900
                            layer.w13_weight[expert_id][
                                start : start + intermediate_size, :
                            ],
901
902
903
904
905
                            layer.w13_weight_scale[expert_id][shard_id],
                        )
                        # Requantize using the combined max scale

                        (
906
907
908
                            layer.w13_weight[expert_id][
                                start : start + intermediate_size, :
                            ],
909
                            _,
910
                        ) = scaled_fp8_quant(dq_weight, max_w13_scales[expert_id])
911
912
913
914

                        start += intermediate_size

                # Update the scale parameter to be per-expert
915
                layer.w13_weight_scale = Parameter(max_w13_scales, requires_grad=False)
916
            else:
917
918
919
                layer.w13_weight_scale = Parameter(
                    layer.w13_weight_scale.data, requires_grad=False
                )
920

921
922
923
924
        if hasattr(layer, "w2_weight_scale") and layer.w2_weight_scale is not None:
            layer.w2_weight_scale = Parameter(
                layer.w2_weight_scale.data, requires_grad=False
            )
925
        # Input scales must be equal for each expert in fp8 MoE layers.
926
927
928
929
930
931
932
933
        if hasattr(layer, "w13_input_scale") and layer.w13_input_scale is not None:
            layer.w13_input_scale = Parameter(
                layer.w13_input_scale.max(), requires_grad=False
            )
        if hasattr(layer, "w2_input_scale") and layer.w2_input_scale is not None:
            layer.w2_input_scale = Parameter(
                layer.w2_input_scale.max(), requires_grad=False
            )
934

935
        if self.flashinfer_moe_backend is not None:
936
937
            if self.moe.is_act_and_mul:
                layer.w13_weight.data = swap_w13_to_w31(layer.w13_weight.data)
938
            if self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM:
939
                rotate_flashinfer_fp8_moe_weights(layer.w13_weight, layer.w2_weight)
940
        register_moe_scaling_factors(layer)
941

942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
964
965
966
967
968
969
970
971
972
973
974
975
976
977
978
979
980
981
982
983
984
985
    def _maybe_pad_intermediate_for_flashinfer(self, layer: torch.nn.Module) -> None:
        """Pad intermediate size so FlashInfer kernels' alignment constraints hold.

        Some FlashInfer FP8 MoE kernels require the (gated) intermediate size
        used for GEMM to be divisible by a small alignment value. When this is
        not satisfied (e.g. with certain tensor-parallel sizes), we pad the
        gate/up and down projection weights along the intermediate dim.
        """
        if not hasattr(layer, "w13_weight") or not hasattr(layer, "w2_weight"):
            return

        # Current local intermediate size (per partition) is the K dimension of
        # the down projection.
        num_experts, hidden_size, intermediate = layer.w2_weight.shape

        min_alignment = 16
        padded_intermediate = round_up(intermediate, min_alignment)

        if padded_intermediate == intermediate:
            return

        logger.info(
            "Padding intermediate size from %d to %d for up/down projection weights.",
            intermediate,
            padded_intermediate,
        )

        up_mult = 2 if self.moe.is_act_and_mul else 1
        padded_gate_up_dim = up_mult * padded_intermediate

        # Pad w13 and w12 along its intermediate dimension.
        w13 = layer.w13_weight.data
        padded_w13 = w13.new_zeros((num_experts, padded_gate_up_dim, hidden_size))
        padded_w13[:, : w13.shape[1], :] = w13
        layer.w13_weight.data = padded_w13

        w2 = layer.w2_weight.data
        padded_w2 = w2.new_zeros((num_experts, hidden_size, padded_intermediate))
        padded_w2[:, :, :intermediate] = w2
        layer.w2_weight.data = padded_w2

        if hasattr(layer, "intermediate_size_per_partition"):
            layer.intermediate_size_per_partition = padded_intermediate

986
    def get_fused_moe_quant_config(
987
        self, layer: torch.nn.Module
988
    ) -> FusedMoEQuantConfig | None:
989
990
991
992
993
        if self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM:
            return None

        return fp8_w8a8_moe_quant_config(
            w1_scale=layer.w13_weight_scale,
994
            g1_alphas=layer.output1_scales_gate_scalar.squeeze(),
995
            w2_scale=layer.w2_weight_scale,
996
            g2_alphas=layer.output2_scales_scalar.squeeze(),
997
            a1_scale=layer.w13_input_scale,
998
            a1_gscale=layer.w13_input_scale,
999
            a2_scale=layer.w2_input_scale,
1000
            a2_gscale=layer.w2_input_scale_inv,
1001
1002
1003
            per_act_token_quant=False,
        )

1004
1005
    def apply(
        self,
1006
        layer: FusedMoE,
1007
1008
        x: torch.Tensor,
        router_logits: torch.Tensor,
1009
    ) -> torch.Tensor | tuple[torch.Tensor, torch.Tensor]:
1010
        if self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM:
1011
1012
1013
1014
            if layer.enable_eplb:
                raise NotImplementedError(
                    "EPLB not supported for `ModelOptFp8MoEMethod` yet."
                )
1015
1016
            assert layer.activation == "silu", (
                f"Expected 'silu' activation but got {layer.activation}"
1017
            )
1018
1019

            assert not layer.renormalize
1020
1021
1022
1023
            return apply_flashinfer_per_tensor_scale_fp8(
                layer=layer,
                hidden_states=x,
                router_logits=router_logits,
1024
1025
1026
1027
1028
1029
                routing_bias=layer.e_score_correction_bias,
                global_num_experts=layer.global_num_experts,
                top_k=layer.top_k,
                num_expert_group=layer.num_expert_group,
                topk_group=layer.topk_group,
                apply_router_weight_on_input=layer.apply_router_weight_on_input,
1030
            )
1031

1032
        # Expert selection
1033
        topk_weights, topk_ids = layer.select_experts(
1034
1035
1036
            hidden_states=x,
            router_logits=router_logits,
        )
1037

1038
        if self.flashinfer_moe_backend == FlashinferMoeBackend.CUTLASS:
1039
            assert layer.activation in ("silu", "relu2_no_mul"), (
1040
                "Expected activation to be in ('silu', 'relu2_no_mul'),"
1041
                f"but got {layer.activation}"
1042
            )
1043
1044
1045
1046
1047
1048
            return flashinfer_cutlass_moe_fp8(
                x,
                layer,
                topk_weights,
                topk_ids,
                inplace=False,
1049
1050
1051
1052
                activation=layer.activation,
                global_num_experts=layer.global_num_experts,
                expert_map=layer.expert_map,
                apply_router_weight_on_input=layer.apply_router_weight_on_input,
1053
1054
            )
        else:
1055
1056
            from vllm.model_executor.layers.fused_moe.fused_moe import fused_experts

1057
1058
1059
1060
1061
1062
1063
1064
1065
            assert self.moe_quant_config is not None

            return fused_experts(
                x,
                layer.w13_weight,
                layer.w2_weight,
                topk_weights=topk_weights,
                topk_ids=topk_ids,
                inplace=True,
1066
                activation=layer.activation,
1067
                quant_config=self.moe_quant_config,
1068
1069
1070
                global_num_experts=layer.global_num_experts,
                expert_map=layer.expert_map,
                apply_router_weight_on_input=layer.apply_router_weight_on_input,
1071
            )
1072
1073


1074
1075
1076
1077
1078
1079
ModelOptFp8Config.LinearMethodCls = ModelOptFp8LinearMethod
ModelOptFp8Config.FusedMoEMethodCls = ModelOptFp8MoEMethod
ModelOptFp8Config.KVCacheMethodCls = ModelOptFp8KVCacheMethod


class ModelOptNvFp4Config(ModelOptQuantConfigBase):
1080
1081
1082
1083
1084
    """Config class for ModelOpt FP4."""

    def __init__(
        self,
        is_checkpoint_nvfp4_serialized: bool,
1085
        kv_cache_quant_algo: str | None,
1086
        exclude_modules: list[str],
1087
1088
        group_size: int = 16,
    ) -> None:
1089
        super().__init__(exclude_modules)
1090
1091
1092
1093
        self.is_checkpoint_nvfp4_serialized = is_checkpoint_nvfp4_serialized
        if is_checkpoint_nvfp4_serialized:
            logger.warning(
                "Detected ModelOpt NVFP4 checkpoint. Please note that"
1094
1095
                " the format is experimental and could change in future."
            )
1096
1097
1098
1099

            self.group_size = group_size
            self.kv_cache_quant_algo = kv_cache_quant_algo

1100
    def get_name(self) -> QuantizationMethods:
1101
        return "modelopt_fp4"
1102

1103
    def get_supported_act_dtypes(self) -> list[torch.dtype]:
1104
1105
1106
1107
        return [torch.bfloat16, torch.half, torch.float8_e4m3fn]

    @classmethod
    def get_min_capability(cls) -> int:
1108
        return 75
1109

1110
1111
    @classmethod
    def override_quantization_method(
1112
        cls, hf_quant_cfg, user_quant
1113
    ) -> QuantizationMethods | None:
1114
1115
1116
1117
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
1133
1134
1135
1136
1137
1138
1139
1140
1141
        """Detect if this ModelOpt FP4 config should be used based on
        quantization config."""
        if hf_quant_cfg is None:
            return None

        # Use the community standard 'quant_method'
        quant_method = hf_quant_cfg.get("quant_method", "").lower()

        # Only proceed if the method is explicitly "modelopt"
        if quant_method != "modelopt":
            return None

        # Look for ModelOpt-specific config structure
        if "quantization" in hf_quant_cfg:
            quant_config = hf_quant_cfg["quantization"]
            if isinstance(quant_config, dict):
                quant_algo = quant_config.get("quant_algo", "")
                if "NVFP4" in quant_algo:
                    return "modelopt_fp4"
        else:
            # Check for compressed-tensors style config with specific
            # quant_algo field
            quant_algo = hf_quant_cfg.get("quant_algo", "")
            if isinstance(quant_algo, str) and "FP4" in quant_algo.upper():
                return "modelopt_fp4"

        return None

1142
    @classmethod
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
    def _from_config(
        cls,
        *,
        quant_method: str,
        kv_cache_quant_method: str | None,
        exclude_modules: list[str],
        original_config: dict[str, Any],
        group_size: int | None,
        **kwargs: Any,
    ) -> "ModelOptNvFp4Config":
1153
        is_checkpoint_nvfp4_serialized = "NVFP4" in quant_method
1154

1155
1156
1157
        if group_size is None:
            group_size = 16  # Default value

1158
        # For FP4, these fields are required
1159
        if is_checkpoint_nvfp4_serialized and "quantization" in original_config:
1160
            # Check if required fields are present in the quantization config
1161
            quant_config = original_config["quantization"]
1162
            required_fields = ["group_size", "kv_cache_quant_algo", "exclude_modules"]
1163
1164
1165
1166
1167
1168
            missing_fields = [
                field for field in required_fields if field not in quant_config
            ]
            if missing_fields:
                raise ValueError(
                    f"NVFP4 quantization requires the following fields in "
1169
1170
1171
1172
1173
                    f"hf_quant_config.json: {missing_fields}"
                )

        return cls(
            is_checkpoint_nvfp4_serialized,
1174
            kv_cache_quant_method,
1175
1176
1177
            exclude_modules,
            group_size,
        )
1178
1179
1180
1181
1182


class ModelOptNvFp4LinearMethod(LinearMethodBase):
    """Linear method for Model Optimizer NVFP4.
    Supports loading NVFP4 checkpoints with the following structure:
1183

1184
1185
1186
1187
1188
1189
1190
    input_scale: torch.float32, scalar ,
    weight: NVFP4(represented as byte) Shape: [1, X, y/2]
    weight_scale: FP8-E4M3, Shape: [X, Y], aka per block scale,
    weight_scale_2: torch.float32, scalar,
    Args: quant_config: The ModelOpt quantization config.
    """

1191
    def __init__(self, quant_config: ModelOptNvFp4Config) -> None:
1192
        self.quant_config = quant_config
1193
        self.marlin_input_dtype = None
1194

1195
1196
1197
1198
1199
1200
1201
1202
1203
1204
1205
        self.backend = "none"
        if envs.VLLM_NVFP4_GEMM_BACKEND is None:
            if has_flashinfer():
                self.backend = "flashinfer-cutlass"
            elif cutlass_fp4_supported():
                self.backend = "cutlass"
            elif is_fp4_marlin_supported():
                self.backend = "marlin"
        elif envs.VLLM_NVFP4_GEMM_BACKEND.startswith("flashinfer-"):
            self.backend = envs.VLLM_NVFP4_GEMM_BACKEND
            assert has_flashinfer(), f"FlashInfer is required for {self.backend}"
1206
1207
1208
        elif envs.VLLM_NVFP4_GEMM_BACKEND == "cutlass":
            self.backend = "cutlass"
            assert cutlass_fp4_supported(), f"Cutlass is required for {self.backend}"
1209
1210

        if self.backend == "none":
1211
            raise ValueError(
1212
1213
                "No valid NVFP4 GEMM backend found. "
                "Please check your platform capability."
1214
            )
1215

1216
1217
        logger.info_once(f"Using {self.backend} for NVFP4 GEMM")

1218
1219
1220
1221
    def create_weights(
        self,
        layer: torch.nn.Module,
        input_size_per_partition: int,
1222
        output_partition_sizes: list[int],
1223
1224
1225
1226
1227
1228
1229
        input_size: int,
        output_size: int,
        params_dtype: torch.dtype,
        **extra_weight_attrs,
    ):
        del input_size, output_size
        if not self.quant_config.is_checkpoint_nvfp4_serialized:
1230
1231
1232
1233
            raise ValueError(
                "NVFP4 quantization was selected, "
                " dynamic quantization is not supported."
            )
1234
1235
1236
1237
1238
1239
        output_size_per_partition = sum(output_partition_sizes)
        weight_loader = extra_weight_attrs.get("weight_loader")
        layer.logical_widths = output_partition_sizes
        layer.input_size_per_partition = input_size_per_partition
        layer.output_size_per_partition = output_size_per_partition

1240
1241
1242
1243
        if input_size_per_partition % 16 != 0:
            raise ValueError(
                "Unsupported model when in features size is not multiple of 16"
            )
1244
        # The nvfp4 weight is still represented as
1245
1246
1247
1248
1249
        weight_dtype = (
            torch.float8_e4m3fn
            if self.quant_config.is_checkpoint_nvfp4_serialized
            else params_dtype
        )
1250
1251
1252
1253
1254
1255
        # Weight
        weight = ModelWeightParameter(
            data=torch.empty(
                # 2 fp4 items are packed in the input dimension
                layer.output_size_per_partition,
                layer.input_size_per_partition // 2,
1256
1257
                dtype=torch.uint8,
            ),
1258
1259
            input_dim=1,
            output_dim=0,
1260
1261
            weight_loader=weight_loader,
        )
1262
1263
1264
        layer.register_parameter("weight", weight)

        # Input Weight Scale
1265
1266
1267
1268
        input_scale = PerTensorScaleParameter(
            data=torch.empty(len(output_partition_sizes), dtype=torch.float32),
            weight_loader=weight_loader,
        )
1269
1270
1271
        layer.register_parameter("input_scale", input_scale)

        # Global Weight Scale
1272
1273
1274
1275
        weight_scale_2 = PerTensorScaleParameter(
            data=torch.empty(len(output_partition_sizes), dtype=torch.float32),
            weight_loader=weight_loader,
        )
1276
1277
1278
        layer.register_parameter("weight_scale_2", weight_scale_2)

        # Per Block Weight Scale
1279
1280
1281
1282
1283
1284
1285
1286
1287
1288
        weight_scale = ModelWeightParameter(
            data=torch.empty(
                output_size_per_partition,
                input_size_per_partition // self.quant_config.group_size,
                dtype=weight_dtype,
            ),
            input_dim=1,
            output_dim=0,
            weight_loader=weight_loader,
        )
1289
1290
1291
1292
1293
1294
1295
1296
1297
1298
1299

        layer.register_parameter("weight_scale", weight_scale)

    def process_weights_after_loading(self, layer: Module) -> None:
        # global scales:
        input_scale_2 = layer.input_scale.max().to(torch.float32)
        layer.input_scale = Parameter(input_scale_2, requires_grad=False)

        weight_scale_2 = layer.weight_scale_2.max().to(torch.float32)
        layer.weight_scale_2 = Parameter(weight_scale_2, requires_grad=False)

1300
1301
1302
        layer.alpha = Parameter(
            layer.input_scale * layer.weight_scale_2, requires_grad=False
        )
1303

1304
1305
        # Calculate `1 / input_scale` so that we don't need to do so at runtime
        layer.input_scale_inv = Parameter(
1306
1307
            (1 / layer.input_scale).to(torch.float32), requires_grad=False
        )
1308

1309
1310
1311
        # Swizzle the weight blockscale.
        # contracting dimension is input dimension
        # block_size = 16;
1312
1313
1314
        assert layer.weight_scale.dtype == torch.float8_e4m3fn, (
            "Weight Block scale must be represented as FP8-E4M3"
        )
1315

1316
1317
1318
1319
1320
        if self.backend == "marlin":
            prepare_fp4_layer_for_marlin(layer)
            del layer.alpha
            del layer.input_scale
        elif self.backend == "flashinfer-trtllm":
1321
1322
1323
1324
1325
1326
1327
1328
1329
1330
            # FlashInfer TRTLLM FP4 GEMM requires a different weight layout.
            # FlashInfer provides nvfp4_quantize to quantize + shuffle the
            # layout but we use our own quantization so we have to call
            # shuffles ourselves.
            from flashinfer import shuffle_matrix_a, shuffle_matrix_sf_a

            weight = layer.weight.data
            weight_scale = layer.weight_scale.data

            epilogue_tile_m = 128
1331
1332
1333
1334
1335
1336
            weight = shuffle_matrix_a(weight.view(torch.uint8), epilogue_tile_m)
            weight_scale = (
                shuffle_matrix_sf_a(weight_scale.view(torch.uint8), epilogue_tile_m)
                .reshape(weight_scale.shape)
                .view(torch.float8_e4m3fn)
            )
1337

1338
            layer.weight_scale = Parameter(weight_scale, requires_grad=False)
1339
1340
1341
            layer.weight = Parameter(weight, requires_grad=False)
        else:
            swizzled_weight_scale = swizzle_blockscale(layer.weight_scale)
1342
            layer.weight_scale = Parameter(swizzled_weight_scale, requires_grad=False)
1343
            layer.weight = Parameter(layer.weight.data, requires_grad=False)
1344
1345
1346
1347
1348

    def apply(
        self,
        layer: torch.nn.Module,
        x: torch.Tensor,
1349
        bias: torch.Tensor | None = None,
1350
    ) -> torch.Tensor:
1351
        if self.backend == "marlin":
1352
1353
1354
1355
1356
1357
1358
1359
            return apply_fp4_marlin_linear(
                input=x,
                weight=layer.weight,
                weight_scale=layer.weight_scale,
                weight_scale_2=layer.weight_scale_2,
                workspace=layer.workspace,
                size_n=layer.output_size_per_partition,
                size_k=layer.input_size_per_partition,
1360
                bias=bias,
1361
                input_dtype=self.marlin_input_dtype,
1362
            )
1363

1364
        output_dtype = x.dtype
1365
        output_shape = [x.shape[0], layer.weight.shape[0]]
1366
1367

        # quantize BF16 or FP16 to (FP4 and interleaved block scale)
1368
        x_fp4, x_blockscale = scaled_fp4_quant(x, layer.input_scale_inv)
1369
1370
1371

        # validate dtypes of quantized input, input block scale,
        # weight and weight_blockscale
1372
1373
1374
1375
1376
        assert x_fp4.dtype == torch.uint8
        assert layer.weight.dtype == torch.uint8
        assert x_blockscale.dtype == torch.float8_e4m3fn
        assert layer.weight_scale.dtype == torch.float8_e4m3fn
        assert layer.alpha.dtype == torch.float32
1377

1378
1379
1380
1381
        mm_args = (
            x_fp4,
            layer.weight,
            x_blockscale,
1382
            layer.weight_scale,
1383
1384
1385
            layer.alpha,
            output_dtype,
        )
1386
1387
1388
        if self.backend.startswith("flashinfer-"):
            backend_name = self.backend[len("flashinfer-") :]
            out = flashinfer_scaled_fp4_mm(*mm_args, backend=backend_name)
1389
        else:
1390
            assert self.backend == "cutlass"
1391
1392
            out = cutlass_scaled_fp4_mm(*mm_args)

1393
1394
1395
        if bias is not None:
            out = out + bias
        return out.view(*output_shape)
1396
1397
1398
1399
1400


class ModelOptNvFp4FusedMoE(FusedMoEMethodBase):
    """
    MoE Method for FP4 Quantization.
1401
    Args:
1402
1403
1404
        quant_config: NVFP4 Quant Config
    """

1405
1406
1407
    def __init__(
        self,
        quant_config: ModelOptNvFp4Config,
1408
        layer: FusedMoE,
1409
    ) -> None:
1410
1411
        from vllm.model_executor.layers.quantization.utils.nvfp4_moe_support import (
            detect_nvfp4_moe_support,  # noqa: E501
1412
1413
        )

1414
        super().__init__(layer.moe_config)
1415
1416
        self.quant_config = quant_config
        self.layer = layer
1417
1418
        _nvfp4 = detect_nvfp4_moe_support(self.__class__.__name__)
        self.cutlass_nvfp4_supported = _nvfp4.cutlass_supported
1419
        self.allow_flashinfer = _nvfp4.allow_flashinfer
1420
        self.use_marlin = _nvfp4.use_marlin
1421
        self.marlin_input_dtype = None
1422
1423
        self.flashinfer_moe_backend = None
        if self.allow_flashinfer:
1424
1425
1426
            self.flashinfer_moe_backend = get_flashinfer_moe_backend()
            logger.info_once(
                f"Using FlashInfer {self.flashinfer_moe_backend.value} kernels"
1427
1428
                " for ModelOptNvFp4FusedMoE."
            )
1429
1430
1431
1432
        elif self.use_marlin:
            logger.info_once("Using Marlin for ModelOptNvFp4FusedMoE.")
        else:
            logger.info_once("Using Cutlass for ModelOptNvFp4FusedMoE.")
1433

1434
1435
1436
1437
    def maybe_make_prepare_finalize(
        self,
        routing_tables: tuple[torch.Tensor, torch.Tensor, torch.Tensor] | None = None,
    ) -> mk.FusedMoEPrepareAndFinalize | None:
1438
1439
1440
1441
        if self.use_marlin or (
            self.allow_flashinfer
            and self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
        ):
1442
            return None
1443
1444
1445
1446
        elif (
            self.allow_flashinfer
            and self.flashinfer_moe_backend == FlashinferMoeBackend.CUTLASS
        ):
1447
            # For now, fp4 moe only works with the flashinfer dispatcher.
1448
1449
1450
            prepare_finalize = build_flashinfer_fp4_cutlass_moe_prepare_finalize(
                self.moe
            )
1451
1452
            logger.debug_once("%s", prepare_finalize.__class__.__name__)
            return prepare_finalize
1453
        else:
1454
            return super().maybe_make_prepare_finalize(routing_tables)
1455

1456
1457
1458
    def select_gemm_impl(
        self,
        prepare_finalize: mk.FusedMoEPrepareAndFinalize,
1459
        layer: torch.nn.Module,
1460
    ) -> mk.FusedMoEPermuteExpertsUnpermute:
1461
        assert self.moe_quant_config is not None
1462
        experts = select_nvfp4_gemm_impl(
1463
1464
            self.moe,
            self.moe_quant_config,
1465
1466
1467
1468
            allow_flashinfer=self.allow_flashinfer,
        )
        logger.debug_once("Using %s", experts.__class__.__name__)
        return experts
1469

1470
1471
1472
1473
1474
1475
    def uses_weight_scale_2_pattern(self) -> bool:
        """
        FP4 variants use 'weight_scale_2' pattern for per-tensor weight scales.
        """
        return True

1476
1477
1478
1479
1480
1481
1482
1483
1484
    def create_weights(
        self,
        layer: torch.nn.Module,
        num_experts: int,
        hidden_size: int,
        intermediate_size_per_partition: int,
        params_dtype: torch.dtype,
        **extra_weight_attrs,
    ):
1485
        if not self.quant_config.is_checkpoint_nvfp4_serialized:
1486
1487
1488
1489
            raise ValueError(
                "NVFP4 quantization was selected, "
                " dynamic quantization is not supported."
            )
1490

1491
1492
        layer.num_experts = num_experts
        layer.params_dtype = params_dtype
1493
1494
1495
1496
        layer.quant_config = self.quant_config
        weight_dtype = torch.uint8
        weight_scale_dtype = torch.float8_e4m3fn
        weight_loader = extra_weight_attrs.get("weight_loader")
1497
        global_num_experts = extra_weight_attrs.get("global_num_experts")
1498
1499
1500
1501
        # GEMM 1
        w13_weight = ModelWeightParameter(
            data=torch.empty(
                num_experts,
1502
                (2 if self.moe.is_act_and_mul else 1) * intermediate_size_per_partition,
1503
1504
                # 2 fp4 items are packed in the input dimension
                hidden_size // 2,
1505
1506
                dtype=weight_dtype,
            ),
1507
1508
            input_dim=1,
            output_dim=2,
1509
1510
            weight_loader=weight_loader,
        )
1511
1512
1513
1514
1515
1516
1517
1518
1519
        layer.register_parameter("w13_weight", w13_weight)

        # GEMM 2
        w2_weight = ModelWeightParameter(
            data=torch.empty(
                num_experts,
                hidden_size,
                # 2 fp4 items are packed in the input dimension
                intermediate_size_per_partition // 2,
1520
1521
                dtype=weight_dtype,
            ),
1522
1523
            input_dim=1,
            output_dim=2,
1524
1525
            weight_loader=weight_loader,
        )
1526
1527
1528
1529
1530
        layer.register_parameter("w2_weight", w2_weight)

        w13_weight_scale = ModelWeightParameter(
            data=torch.empty(
                num_experts,
1531
                (2 if self.moe.is_act_and_mul else 1) * intermediate_size_per_partition,
1532
1533
                # 2 fp4 items are packed in the input dimension
                hidden_size // self.quant_config.group_size,
1534
1535
                dtype=weight_scale_dtype,
            ),
1536
1537
            input_dim=1,
            output_dim=2,
1538
1539
            weight_loader=weight_loader,
        )
1540
1541
1542
1543
1544
1545
1546
        layer.register_parameter("w13_weight_scale", w13_weight_scale)

        w2_weight_scale = ModelWeightParameter(
            data=torch.empty(
                num_experts,
                hidden_size,
                # 2 fp4 items are packed in the input dimension
1547
1548
1549
                intermediate_size_per_partition // self.quant_config.group_size,
                dtype=weight_scale_dtype,
            ),
1550
1551
            input_dim=1,
            output_dim=2,
1552
1553
            weight_loader=weight_loader,
        )
1554
1555
1556
        layer.register_parameter("w2_weight_scale", w2_weight_scale)

        extra_weight_attrs.update(
1557
1558
            {"quant_method": FusedMoeWeightScaleSupported.BLOCK.value}
        )
1559
1560

        w13_weight_scale_2 = PerTensorScaleParameter(
1561
1562
1563
            data=torch.empty(
                num_experts, 2 if self.moe.is_act_and_mul else 1, dtype=torch.float32
            ),
1564
1565
            weight_loader=weight_loader,
        )
1566
1567
1568
1569
        layer.register_parameter("w13_weight_scale_2", w13_weight_scale_2)

        w2_weight_scale_2 = PerTensorScaleParameter(
            data=torch.empty(num_experts, dtype=torch.float32),
1570
1571
            weight_loader=weight_loader,
        )
1572
1573
1574
        layer.register_parameter("w2_weight_scale_2", w2_weight_scale_2)

        extra_weight_attrs.update(
1575
1576
            {"quant_method": FusedMoeWeightScaleSupported.TENSOR.value}
        )
1577

1578
1579
1580
1581
1582
        use_global_sf = self.allow_flashinfer and is_flashinfer_supporting_global_sf(
            self.flashinfer_moe_backend
        )
        global_scale_num_experts = global_num_experts if use_global_sf else num_experts

1583
        w13_input_scale = PerTensorScaleParameter(
1584
1585
1586
1587
1588
            data=torch.empty(
                global_scale_num_experts,
                2 if self.moe.is_act_and_mul else 1,
                dtype=torch.float32,
            ),
1589
1590
            weight_loader=weight_loader,
        )
1591
1592
        layer.register_parameter("w13_input_scale", w13_input_scale)

1593
        w2_input_scale = PerTensorScaleParameter(
1594
            data=torch.empty(global_scale_num_experts, dtype=torch.float32),
1595
1596
            weight_loader=weight_loader,
        )
1597
1598
1599
        layer.register_parameter("w2_input_scale", w2_input_scale)

    def process_weights_after_loading(self, layer: torch.nn.Module) -> None:
1600
        # GEMM 1 processing
1601
1602
1603
        gemm1_weight = layer.w13_weight.data
        gemm1_weight_scale = layer.w13_weight_scale.data

1604
1605
1606
1607
1608
1609
1610
        if (
            self.allow_flashinfer
            and (
                self.flashinfer_moe_backend == FlashinferMoeBackend.CUTLASS
                or self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
            )
            and self.moe.is_act_and_mul
1611
        ):
1612
            gemm1_weight, gemm1_weight_scale = reorder_w1w3_to_w3w1(
1613
1614
                gemm1_weight, gemm1_weight_scale, dim=-2
            )
1615
1616

        layer.w13_weight = Parameter(gemm1_weight, requires_grad=False)
1617
        layer.w13_weight_scale = Parameter(gemm1_weight_scale, requires_grad=False)
1618

1619
        # Common processing for w13_weight_scale_2
1620
        if self.moe.is_act_and_mul and not torch.allclose(
1621
1622
            layer.w13_weight_scale_2[:, 0], layer.w13_weight_scale_2[:, 1]
        ):
1623
1624
            logger.warning_once(
                "w1_weight_scale_2 must match w3_weight_scale_2. "
1625
1626
                "Accuracy may be affected."
            )
1627

1628
        w13_weight_scale_2 = layer.w13_weight_scale_2[:, 0].contiguous()
1629
        layer.w13_weight_scale_2 = Parameter(w13_weight_scale_2, requires_grad=False)
1630

1631
        # Common processing for input scales and alphas
1632
1633
1634
1635
1636
1637
1638
1639
1640
1641
1642
        use_global_sf = self.allow_flashinfer and is_flashinfer_supporting_global_sf(
            self.flashinfer_moe_backend
        )
        if use_global_sf:
            # For backends provide by Flashinfer, the input global scales are
            # shared across all experts.
            w13_input_scale = (
                layer.w13_input_scale.max().to(torch.float32).expand(layer.num_experts)
            )
        else:
            w13_input_scale = layer.w13_input_scale.max(dim=1).values.to(torch.float32)
1643
1644
        layer.g1_alphas = Parameter(
            (w13_input_scale * w13_weight_scale_2).to(torch.float32),
1645
1646
            requires_grad=False,
        )
1647
1648
1649

        # This is for quantization, so we need to invert it.
        layer.w13_input_scale_quant = Parameter(
1650
1651
            (1 / w13_input_scale).to(torch.float32), requires_grad=False
        )
1652

1653
        # GEMM 2 processing
1654
1655
1656
1657
1658
1659
1660
1661
        if use_global_sf:
            # For backends provide by Flashinfer, the input global scales are
            # shared across all experts.
            w2_input_scale = (
                layer.w2_input_scale.max().to(torch.float32).expand(layer.num_experts)
            )
        else:
            w2_input_scale = layer.w2_input_scale
1662
        layer.g2_alphas = Parameter(
1663
            (w2_input_scale * layer.w2_weight_scale_2).to(torch.float32),
1664
1665
            requires_grad=False,
        )
1666
1667
1668

        # This is for quantization, so we need to invert it.
        layer.w2_input_scale_quant = Parameter(
1669
            (1 / w2_input_scale).to(torch.float32), requires_grad=False
1670
        )
1671

1672
        # TensorRT-LLM specific processing
1673
1674
1675
1676
        if (
            self.allow_flashinfer
            and self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
        ):
1677
            # Prepare static weights for TRT-LLM kernel
1678
            # alternate: prepare_static_weight_layouts_for_trtllm_moe
1679
1680
1681
1682
1683
            (
                gemm1_weights_fp4_shuffled,
                gemm1_scales_fp4_shuffled,
                gemm2_weights_fp4_shuffled,
                gemm2_scales_fp4_shuffled,
1684
            ) = prepare_static_weights_for_trtllm_fp4_moe(
1685
1686
1687
1688
1689
1690
1691
1692
                layer.w13_weight,
                layer.w2_weight,
                layer.w13_weight_scale,
                layer.w2_weight_scale,
                layer.w2_weight.size(-2),  # hidden_size
                layer.w13_weight.size(-2) // 2,  # intermediate_size
                layer.w13_weight.size(0),  # num_experts
            )
1693
            logger.debug_once("Finished shuffling weights for TRT-LLM MOE")
1694

1695
            layer.w13_weight = Parameter(
1696
1697
                gemm1_weights_fp4_shuffled, requires_grad=False
            )
1698
1699
            layer.w2_weight = Parameter(gemm2_weights_fp4_shuffled, requires_grad=False)
            layer.w13_weight_scale = Parameter(
1700
1701
                gemm1_scales_fp4_shuffled, requires_grad=False
            )
1702
            layer.w2_weight_scale = Parameter(
1703
1704
                gemm2_scales_fp4_shuffled, requires_grad=False
            )
1705
1706
1707

            # Additional parameter needed for TRT-LLM
            layer.g1_scale_c = Parameter(
1708
                (layer.w2_input_scale_quant * layer.g1_alphas).to(torch.float32),
1709
1710
                requires_grad=False,
            )
1711
1712
1713
1714
1715
1716
1717
        elif self.use_marlin:
            # Marlin processing
            prepare_moe_fp4_layer_for_marlin(layer)
            del layer.g1_alphas
            del layer.g2_alphas
            del layer.w13_input_scale_quant
            del layer.w2_input_scale_quant
1718
1719
        else:
            # Non-TRT-LLM processing (Cutlass or non-flashinfer)
1720
1721
1722
1723
1724
            w13_blockscale_swizzled = swizzle_blockscale(layer.w13_weight_scale)
            layer.w13_weight_scale = Parameter(
                w13_blockscale_swizzled, requires_grad=False
            )

1725
1726
1727
1728
1729
1730
1731
1732
1733
1734
1735
1736
1737
1738
1739
1740
1741
1742
1743
1744
1745
1746
1747
1748
1749
1750
1751
1752
1753
            w13_weight = layer.w13_weight
            intermediate_size_pad = w13_blockscale_swizzled.size(1) - w13_weight.size(1)
            if intermediate_size_pad:
                # padding gated activations will require to split w1 and w3
                # and pad them individually
                assert not self.moe.is_act_and_mul, (
                    "The intermediate size required padding, "
                    "but padding is not implemented for gated activations"
                )

                layer.w13_weight = Parameter(
                    torch.nn.functional.pad(
                        w13_weight, (0, 0, 0, intermediate_size_pad)
                    ),
                    requires_grad=False,
                )
                layer.w2_weight = Parameter(
                    torch.nn.functional.pad(
                        layer.w2_weight, (0, intermediate_size_pad // 2, 0, 0)
                    ),
                    requires_grad=False,
                )
                layer.w2_weight_scale = Parameter(
                    torch.nn.functional.pad(
                        layer.w2_weight_scale, (0, intermediate_size_pad // 16)
                    ),
                    requires_grad=False,
                )

1754
            w2_blockscale_swizzled = swizzle_blockscale(layer.w2_weight_scale)
1755
1756
1757
            layer.w2_weight_scale = Parameter(
                w2_blockscale_swizzled, requires_grad=False
            )
1758

1759
1760
1761
1762
1763
1764
1765
1766
1767
1768
1769
1770
1771
1772
1773
1774
1775
1776
    def prepare_dp_allgather_tensor(
        self,
        layer: FusedMoE,
        hidden_states: torch.Tensor,
        router_logits: torch.Tensor,
    ) -> tuple[torch.Tensor, list[torch.Tensor]]:
        """Optionally prepare extra tensors to carry through DP allgather/EP."""
        import flashinfer

        a1_gscale = layer.w13_input_scale_quant
        hidden_states_fp4, hidden_states_sf = flashinfer.fp4_quantize(
            hidden_states,
            a1_gscale,
            is_sf_swizzled_layout=False,
        )
        extra_tensors: list[torch.Tensor] = [hidden_states_sf]
        return hidden_states_fp4, extra_tensors

1777
    def get_fused_moe_quant_config(
1778
        self, layer: torch.nn.Module
1779
    ) -> FusedMoEQuantConfig | None:
1780
1781
1782
1783
        if (
            self.use_marlin
            or self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
        ):
1784
1785
1786
1787
1788
1789
1790
1791
1792
1793
1794
            return None

        return nvfp4_moe_quant_config(
            w1_scale=layer.w13_weight_scale,
            w2_scale=layer.w2_weight_scale,
            g1_alphas=layer.g1_alphas,
            g2_alphas=layer.g2_alphas,
            a1_gscale=layer.w13_input_scale_quant,
            a2_gscale=layer.w2_input_scale_quant,
        )

1795
1796
1797
1798
    @property
    def supports_eplb(self) -> bool:
        return True

1799
1800
    def apply(
        self,
1801
        layer: FusedMoE,
1802
1803
        x: torch.Tensor,
        router_logits: torch.Tensor,
1804
    ) -> torch.Tensor | tuple[torch.Tensor, torch.Tensor]:
1805
1806
1807
1808
1809
1810
1811
1812
        if not self.moe.is_act_and_mul:
            assert (
                self.allow_flashinfer
                and self.flashinfer_moe_backend == FlashinferMoeBackend.CUTLASS
            ), (
                "Non-gated activations are only supported by the"
                " flashinfer CUTLASS backend for modelopt checkpoints"
            )
1813

1814
1815
1816
        if (
            self.allow_flashinfer
            and self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
1817
            and not layer.enable_eplb
1818
        ):
1819
1820
1821
1822
            return flashinfer_trtllm_fp4_moe(
                layer=layer,
                x=x,
                router_logits=router_logits,
1823
1824
1825
1826
1827
1828
                top_k=layer.top_k,
                global_num_experts=layer.global_num_experts,
                num_expert_group=layer.num_expert_group,
                topk_group=layer.topk_group,
                custom_routing_function=layer.custom_routing_function,
                e_score_correction_bias=layer.e_score_correction_bias,
1829
            )
1830

1831
1832
1833
1834
1835
        # Hidden_states in select_experts is only used to extract metadata
        if isinstance(x, tuple):
            x_routing, _ = x
        else:
            x_routing = x
1836
        topk_weights, topk_ids = layer.select_experts(
1837
            hidden_states=x_routing,
1838
            router_logits=router_logits,
1839
        )
1840

1841
1842
1843
1844
1845
1846
1847
1848
1849
1850
1851
1852
1853
1854
        # EPLB path
        if (
            self.allow_flashinfer
            and self.flashinfer_moe_backend == FlashinferMoeBackend.TENSORRT_LLM
        ):
            return flashinfer_trtllm_fp4_routed_moe(
                layer=layer,
                x=x,
                topk_ids=topk_ids,
                topk_weights=topk_weights,
                top_k=layer.top_k,
                global_num_experts=layer.global_num_experts,
            )

1855
        if self.use_marlin:
1856
            return fused_marlin_moe(
1857
1858
1859
                x,
                layer.w13_weight,
                layer.w2_weight,
1860
1861
                None,
                None,
1862
1863
1864
1865
1866
1867
1868
1869
                layer.w13_weight_scale,
                layer.w2_weight_scale,
                router_logits,
                topk_weights,
                topk_ids,
                global_scale1=layer.w13_weight_scale_2,
                global_scale2=layer.w2_weight_scale_2,
                quant_type_id=scalar_types.float4_e2m1f.id,
1870
1871
1872
                apply_router_weight_on_input=layer.apply_router_weight_on_input,
                global_num_experts=layer.global_num_experts,
                expert_map=layer.expert_map,
1873
                input_dtype=self.marlin_input_dtype,
1874
            )
1875

1876
1877
1878
1879
        elif self.allow_flashinfer:
            assert self.flashinfer_moe_backend in (
                FlashinferMoeBackend.CUTLASS,
                FlashinferMoeBackend.CUTEDSL,
1880
            )
1881
1882
1883
1884
            if self.flashinfer_moe_backend == FlashinferMoeBackend.CUTLASS:
                from vllm.model_executor.layers.fused_moe.flashinfer_cutlass_moe import (  # noqa: E501
                    flashinfer_cutlass_moe_fp4,
                )
1885

1886
1887
1888
1889
1890
1891
1892
                flashinfer_fn_moe_fp4 = flashinfer_cutlass_moe_fp4
            else:
                from vllm.model_executor.layers.fused_moe.flashinfer_cutedsl_moe import (  # noqa: E501
                    flashinfer_cutedsl_moe_fp4,
                )

                flashinfer_fn_moe_fp4 = flashinfer_cutedsl_moe_fp4
1893

1894
1895
            assert self.moe_quant_config is not None
            return flashinfer_fn_moe_fp4(
1896
1897
1898
1899
1900
                hidden_states=x,
                w1=layer.w13_weight,
                w2=layer.w2_weight,
                topk_weights=topk_weights,
                topk_ids=topk_ids,
1901
1902
                quant_config=self.moe_quant_config,
                inplace=False,
1903
1904
1905
1906
                activation=layer.activation,
                global_num_experts=layer.global_num_experts,
                expert_map=layer.expert_map,
                apply_router_weight_on_input=layer.apply_router_weight_on_input,
1907
1908
            )
        else:
1909
1910
            # If no modular kernel is provided, use cutlass_moe_fp4 for TP case
            # only (no EP).
1911
1912
            from vllm.model_executor.layers.fused_moe.cutlass_moe import cutlass_moe_fp4

1913
1914
            assert self.moe_quant_config is not None
            return cutlass_moe_fp4(
1915
1916
1917
1918
1919
                a=x,
                w1_fp4=layer.w13_weight,
                w2_fp4=layer.w2_weight,
                topk_weights=topk_weights,
                topk_ids=topk_ids,
1920
                quant_config=self.moe_quant_config,
1921
1922
                expert_map=layer.expert_map,
                apply_router_weight_on_input=layer.apply_router_weight_on_input,
1923
                # TODO: derive from arguments
1924
1925
1926
1927
                m=x.shape[0],
                n=layer.w2_weight.shape[2] * 2,
                k=x.shape[1],
                e=layer.w13_weight.shape[0],
1928
            )
1929
1930
1931
1932
1933


ModelOptNvFp4Config.LinearMethodCls = ModelOptNvFp4LinearMethod
ModelOptNvFp4Config.FusedMoEMethodCls = ModelOptNvFp4FusedMoE
ModelOptNvFp4Config.KVCacheMethodCls = ModelOptFp8KVCacheMethod