quantizer.py 34.6 KB
Newer Older
1
2
3
4
5
6
7
8
9
10
11
# Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
#
# See LICENSE for license information.
"""
Tensor quantization classes for TE/JAX.

This module provides classes and utilities for quantizing tensors in JAX.
"""
from abc import ABC, abstractmethod
from dataclasses import dataclass, field
from functools import partial
12
13
from typing import Union, Optional, Tuple
import warnings
14
15
16
17

import jax
import jax.numpy as jnp
from jax.tree_util import register_pytree_node_class
18
from transformer_engine_jax import QuantizeLayout
19
from transformer_engine.common import recipe
20
21

from .scaling_modes import ScalingMode
22
from .tensor import ScaledTensor, ScaledTensor1x, ScaledTensor2x, ScaledTensorFactory
23
from .helper import (
24
25
    get_quantize_config,
    get_quantize_config_class,
26
    AmaxComputeAlgo,
27
    TensorSource,
28
)
29
from .device_utils import is_fp8_gemm_with_all_layouts_supported
30
31

__all__ = [
32
    "QuantizeLayout",
33
34
    "Quantizer",
    "QuantizerSet",
35
    "CurrentScaleQuantizer",
36
37
    "DelayedScaleQuantizer",
    "BlockScaleQuantizer",
38
    "GroupedQuantizer",
39
40
    "QuantizerFactory",
    "noop_quantizer_set",
41
    "compute_scale_from_amax",
42
43
44
]


45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
def compute_scale_from_amax(
    amax: jnp.ndarray, q_dtype: jnp.dtype, scale: Optional[jnp.ndarray] = None
) -> jnp.ndarray:
    """Compute scale from amax value.

    Args:
        amax: Maximum absolute value of the tensor
        q_dtype: Quantization data type

    Returns:
        Scale value
    """
    fp8_max = jnp.astype(jnp.finfo(q_dtype).max, jnp.float32)
    if scale is None:
        scale = jnp.ones((1,))
60
    sf = (fp8_max / amax) / (2 ** get_quantize_config().MARGIN)
61
62
63
64
65
    sf = jnp.where(amax > 0.0, sf, scale)
    sf = jnp.where(jnp.isfinite(amax), sf, scale)
    return sf


66
67
68
69
70
71
72
73
74
75
76
@register_pytree_node_class
@dataclass
class Quantizer(ABC):
    """Base class for quantizers.

    This abstract class defines the interface for tensor quantization, providing
    methods for quantization and scale management.

    Attributes:
        q_dtype: The data type for quantized values
        scaling_mode: The scaling mode to use for quantization
77
        q_layout: The quantization axis (row-wise, column-wise, or both)
78
79
80
81
    """

    q_dtype: jnp.dtype
    scaling_mode: ScalingMode
82
    q_layout: QuantizeLayout
83
    data_layout: str
84
85
86
87
88
89
90
91

    def tree_flatten(self):
        """Flatten the quantizer for JAX tree operations.

        Returns:
            Tuple of (children, aux_data) for tree operations
        """
        children = ()
92
        aux_data = (self.q_dtype, self.scaling_mode, self.q_layout, self.data_layout)
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
        return (children, aux_data)

    @classmethod
    def tree_unflatten(cls, aux_data, children):
        """Reconstruct a quantizer from its flattened representation.

        Args:
            aux_data: Auxiliary data containing quantizer parameters
            children: Unused children data

        Returns:
            A reconstructed Quantizer instance
        """
        return cls(*aux_data, *children)

    def update(self, *args, **kwargs):
        """Update quantizer state (no-op in base class)."""
        del args, kwargs

    def is_2x2x(self) -> bool:
        """Check if quantizer uses both row-wise and column-wise quantization.

        Returns:
            True if using both row-wise and column-wise quantization
        """
118
        return self.q_layout == QuantizeLayout.ROWWISE_COLWISE
119

120
    def get_data_layout(self) -> str:
121
        """Get the data data_layout string.
122
123

        Returns:
124
            Data data_layout in string format
125
126
127

        Raises:
            ValueError: If quantization axis is invalid
128
        """
129
130
131
132
133
134
135
        if self.q_layout == QuantizeLayout.ROWWISE_COLWISE:
            return self.data_layout
        if self.q_layout == QuantizeLayout.ROWWISE:
            return self.data_layout[0]
        if self.q_layout == QuantizeLayout.COLWISE:
            return self.data_layout[1]
        raise ValueError(f"Invalid q_layout: {self.q_layout}")
136
137

    @abstractmethod
138
    def _quantize_func(self, x, is_colwise=False, dq_dtype=None, flatten_axis=-1) -> ScaledTensor1x:
139
140
141
142
143
144
        """Core quantization function to be implemented by subclasses.

        Args:
            x: Input tensor to quantize
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values, default is x.dtype
145
            flatten_axis: The quantization axis for the tensor
146
147
148
149
150

        Returns:
            A ScaledTensor1x containing the quantized data
        """

151
152
153
    def quantize(
        self, x, is_rowwise=False, is_colwise=False, dq_dtype=None, flatten_axis=-1, **kwargs
    ) -> ScaledTensor:
154
155
156
157
158
159
160
        """Quantize a tensor using the internal _quantize_func().

        Args:
            x: Input tensor to quantize
            is_rowwise: Whether to use row-wise quantization
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values
161
            flatten_axis: The quantization axis for the tensor
162
163
164
165

        Returns:
            A ScaledTensor1x or ScaledTensor2x containing the quantized data
        """
166
        del kwargs
167
        if (is_rowwise and is_colwise) or self.is_2x2x():
168
169
170
171
            rowwise_tensor = self._quantize_func(x, dq_dtype=dq_dtype, flatten_axis=flatten_axis)
            colwise_tensor = self._quantize_func(
                x, is_colwise=True, dq_dtype=dq_dtype, flatten_axis=flatten_axis
            )
172
173
174
            return ScaledTensor2x(rowwise_tensor, colwise_tensor)

        if is_colwise:
175
176
177
            return self._quantize_func(
                x, is_colwise=True, dq_dtype=dq_dtype, flatten_axis=flatten_axis
            )
178

179
        return self._quantize_func(x, dq_dtype=dq_dtype, flatten_axis=flatten_axis)
180

181
    def get_scale_shapes(self, data_shape, is_padded=True, flatten_axis=-1, **kwargs):
182
183
184
185
186
187
188
189
190
        """Get shapes for scale tensors.

        Args:
            data_shape: Shape of the input tensor
            is_padded: Whether to use padded shapes

        Returns:
            Tuple of (rowwise_scale_shape, colwise_scale_shape)
        """
191
        del kwargs
192
        return self.scaling_mode.get_scale_shape_2x(data_shape, is_padded, flatten_axis)
193
194
195
196
197
198
199
200
201
202
203
204

    def get_scale_dtype(self):
        """Get the data type for scale tensors.

        Returns:
            The data type for scale tensors
        """
        return self.scaling_mode.get_scale_dtype()


@register_pytree_node_class
@dataclass
205
206
class CurrentScaleQuantizer(Quantizer):
    """Quantizer implementation using current scaling.
207

208
    This quantizer uses current scaling mode with float32 scales
209
210
211

    Attributes:
        scaling_mode: Set to NVTE_DELAYED_TENSOR_SCALING
212
        q_layout: Quantization axis (default: ROWWISE_COLWISE)
213
214
    """

215
    scaling_mode: ScalingMode = ScalingMode.CURRENT_TENSOR_SCALING
216
    q_layout: QuantizeLayout = QuantizeLayout.ROWWISE_COLWISE
217
    data_layout: str = "NT"
218
219
220
221

    def _quantize_func(
        self, x: jnp.ndarray, is_colwise=False, dq_dtype=None, flatten_axis=-1
    ) -> ScaledTensor1x:
222
223
224
225
226
227
        """Quantize function helper for delayed scaling FP8.

        Args:
            x: Input tensor to quantize
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values
228

229
230
231
232
233
        Returns:
            A ScaledTensor1x containing the quantized data
        """
        dq_dtype = dq_dtype if dq_dtype is not None else x.dtype

234
        compute_dtype = jnp.float32
235
        dtype_max = (jnp.finfo(self.q_dtype).max).astype(compute_dtype)
236
        amax = jnp.max(jnp.abs(x)).reshape((1,))
237
        fp8_max = jnp.astype(jnp.finfo(self.q_dtype).max, jnp.float32)
238
        scale = (fp8_max / amax) / (2 ** get_quantize_config().MARGIN)
239
        scaled_x = x.astype(compute_dtype) * scale
240
241

        clipped_scaled_x = jnp.clip(scaled_x, -dtype_max, dtype_max).astype(self.q_dtype)
242
        scale_inv = 1.0 / scale
243
244
245
246
247
        return ScaledTensorFactory.create_1x(
            data=clipped_scaled_x,
            scale_inv=scale_inv,
            scaling_mode=self.scaling_mode,
            dq_dtype=dq_dtype,
248
            flatten_axis=flatten_axis,
249
250
        )

251
252
253
    def quantize(
        self, x, is_rowwise: bool = None, is_colwise: bool = None, dq_dtype=None, flatten_axis=-1
    ):
254
255
256
257
258
259
260
        """Quantize a tensor using the internal _quantize_func().

        Args:
            x: Input tensor to quantize
            is_rowwise: Whether to use row-wise quantization
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values
261
            flatten_axis: The quantization axis for the tensor
262
263
264
265
266

        Returns:
            A ScaledTensor1x or ScaledTensor2x containing the quantized data
        """
        dq_dtype = dq_dtype if dq_dtype is not None else x.dtype
267
268
269
270
        if flatten_axis < 0:
            flatten_axis += x.ndim
        assert 0 < flatten_axis < x.ndim, "flatten_axis is out of bounds!"

271
272
273
        is_rowwise = (
            is_rowwise
            if is_rowwise is not None
274
            else (self.q_layout == QuantizeLayout.ROWWISE or self.is_2x2x())
275
276
277
278
        )
        is_colwise = (
            is_colwise
            if is_colwise is not None
279
            else (self.q_layout == QuantizeLayout.COLWISE or self.is_2x2x())
280
281
        )

282
        rowwise_tensor = self._quantize_func(x, dq_dtype=dq_dtype, flatten_axis=flatten_axis)
283
284
285
        colwise_tensor = None
        if is_colwise:
            colwise_tensor = ScaledTensorFactory.create_1x(
286
287
288
                data=jnp.transpose(
                    rowwise_tensor.data, (*range(flatten_axis, x.ndim), *range(flatten_axis))
                ),
289
290
291
292
                scale_inv=rowwise_tensor.scale_inv,
                scaling_mode=self.scaling_mode,
                dq_dtype=dq_dtype,
                is_colwise=True,
293
294
                data_layout="T",
                flatten_axis=flatten_axis,
295
            )
296

297
298
299
300
301
302
        if is_colwise and is_rowwise:
            return ScaledTensor2x(rowwise_tensor, colwise_tensor)
        if is_colwise:
            return colwise_tensor
        return rowwise_tensor

303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323

@register_pytree_node_class
@dataclass
class DelayedScaleQuantizer(CurrentScaleQuantizer):
    """Quantizer implementation using delayed scaling.

    This quantizer uses delayed scaling mode with float32 scales and maintains
    a history of maximum absolute values for dynamic scaling.

    Attributes:
        scaling_mode: Set to NVTE_DELAYED_TENSOR_SCALING
        q_layout: Quantization axis (default: ROWWISE_COLWISE)
        scale: Current scaling factor
        amax_history: History of maximum absolute values
    """

    scaling_mode: ScalingMode = ScalingMode.DELAYED_TENSOR_SCALING
    q_layout: QuantizeLayout = QuantizeLayout.ROWWISE_COLWISE

    scale: jnp.ndarray = field(default_factory=lambda: jnp.ones((1,), jnp.float32))
    amax_history: jnp.ndarray = field(
324
        default_factory=lambda: jnp.zeros((get_quantize_config().AMAX_HISTORY_LEN,), jnp.float32)
325
326
327
328
329
330
331
332
333
    )

    def tree_flatten(self):
        """Flatten the quantizer for JAX tree operations.

        Returns:
            Tuple of (children, aux_data) for tree operations
        """
        children = (self.scale, self.amax_history)
334
        aux_data = (self.q_dtype, self.scaling_mode, self.q_layout, self.data_layout)
335
336
337
338
339
340
341
342
343
344
345
346
347
348
349
350
351
352
353
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
        return (children, aux_data)

    def _quantize_func(
        self, x: jnp.ndarray, is_colwise=False, dq_dtype=None, flatten_axis=-1
    ) -> ScaledTensor1x:
        """Quantize function helper for delayed scaling FP8.

        Args:
            x: Input tensor to quantize
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values
            flatten_axis: The quantization axis for the tensor
        Returns:
            A ScaledTensor1x containing the quantized data
        """
        dq_dtype = dq_dtype if dq_dtype is not None else x.dtype

        compute_dtype = jnp.float32
        dtype_max = (jnp.finfo(self.q_dtype).max).astype(compute_dtype)
        scaled_x = x.astype(compute_dtype) * self.scale

        # quantize() in the old dot.py do this way, leave this code block here for future debugging
        # compute_dtype = x.dtype
        # dtype_max = (jnp.finfo(self.q_dtype).max).astype(compute_dtype)
        # scaled_x = x * self.scale.astype(compute_dtype)

        clipped_scaled_x = jnp.clip(scaled_x, -dtype_max, dtype_max).astype(self.q_dtype)
        scale_inv = 1.0 / self.scale
        self.update(jnp.max(jnp.abs(x)).reshape((1,)))
        return ScaledTensorFactory.create_1x(
            data=clipped_scaled_x,
            scale_inv=scale_inv,
            scaling_mode=self.scaling_mode,
            dq_dtype=dq_dtype,
            flatten_axis=flatten_axis,
        )

372
373
374
375
376
377
378
379
380
381
382
383
384
385
386
387
388
389
390
391
392
393
394
395
396
397
398
399
400
    @staticmethod
    @jax.jit
    def _update_amax_history(amax_history, new_amax):
        """Update AMAX history with new maximum value.

        Args:
            amax_history: Current AMAX history
            new_amax: New maximum value to add

        Returns:
            Updated AMAX history
        """
        amax_history = amax_history.at[0].set(new_amax[0])
        return amax_history

    @staticmethod
    @partial(jax.jit, static_argnums=(2,))
    def _compute_scale(amax_history, scale, q_dtype):
        """Compute new scale based on AMAX history.

        Args:
            amax_history: History of maximum absolute values
            scale: Current scale
            q_dtype: Quantization data type

        Returns:
            Updated scale value
        """
        # 2. Calculate the current scale
401
        if get_quantize_config().AMAX_COMPUTE_ALGO is AmaxComputeAlgo.MAX:
402
403
404
405
            amax = jnp.max(amax_history, axis=-1, keepdims=True)
        else:
            amax = amax_history[0:1]

406
        return compute_scale_from_amax(amax, q_dtype, scale=scale)
407
408
409
410
411
412
413
414
415
416
417
418
419
420
421
422
423
424
425
426
427
428
429
430
431
432
433
434
435
436
437
438
439
440
441
442
443

    @staticmethod
    @jax.jit
    def _roll_and_reset_amax_history(amax_history):
        """Roll AMAX history and reset first element.

        Args:
            amax_history: Current AMAX history

        Returns:
            Updated AMAX history
        """
        updated_amax_history = jnp.roll(amax_history, -1, -1)
        amax_history = updated_amax_history.at[0].set(0.0)
        return amax_history

    def update(self, new_amax: jnp.ndarray):
        """Update AMAX history and compute new scale.

        Args:
            new_amax: New maximum absolute value to add to history
        """
        amax_history = self._update_amax_history(self.amax_history, new_amax)
        self.scale = self._compute_scale(amax_history, self.scale, self.q_dtype)
        self.amax_history = self._roll_and_reset_amax_history(amax_history)


@register_pytree_node_class
@dataclass
class BlockScaleQuantizer(Quantizer):
    """Quantizer implementation using block-based scaling.

    This quantizer uses block scaling mode with FP8 scales and block-based
    quantization for improved efficiency.

    Attributes:
        scaling_mode: Set to NVTE_MXFP8_1D_SCALING
444
        q_layout: Quantization axis (default: ROWWISE_COLWISE)
445
446
    """

447
    scaling_mode: ScalingMode = ScalingMode.MXFP8_1D_SCALING
448
    q_layout: QuantizeLayout = QuantizeLayout.ROWWISE_COLWISE
449
    data_layout: str = "NN"
450

451
    def _quantize_func(self, x, is_colwise=False, dq_dtype=None, flatten_axis=-1) -> ScaledTensor1x:
452
453
454
455
456
457
        """Quantize function helper for block scaling FP8.

        Args:
            x: Input tensor to quantize
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values
458
            flatten_axis: The quantization axis for the tensor
459
460
461
462
463

        Returns:
            A ScaledTensor1x containing the quantized data
        """
        # TODO(Phuong): use quantize_func from JAX
464
465
466
467
468
469
        if flatten_axis < 0:
            flatten_axis = x.ndim + flatten_axis
        assert (
            0 <= flatten_axis < x.ndim
        ), f"Invalid flatten_axis: {flatten_axis} for tensor of shape {x.shape}"

470
471
        dq_dtype = dq_dtype if dq_dtype is not None else x.dtype
        x_shape = x.shape
472
473
474
        scale_shape = self.scaling_mode.get_scale_shape(
            x_shape, is_colwise, is_padded=False, flatten_axis=flatten_axis
        )
475
476
        scale_dtype = self.scaling_mode.get_scale_dtype()
        x = x.reshape(
477
478
479
480
            *x_shape[: flatten_axis - 1],
            scale_shape[flatten_axis - 1],
            int(x_shape[flatten_axis - 1] / scale_shape[flatten_axis - 1]),
            *x_shape[flatten_axis:-1],
481
482
483
            scale_shape[-1],
            int(x_shape[-1] / scale_shape[-1]),
        )
484
        amax = jnp.max(jnp.abs(x), axis=(flatten_axis + 2 - 2, -1), keepdims=True)
485
486
487
488
489
490
491
492
493
494
495
496
497
        MAX = jnp.finfo(self.q_dtype).max.astype(jnp.float32)
        scales = amax.astype(jnp.float32) / MAX

        scales_q = self._cast_to_e8m0_with_rounding_up(scales)
        scaled_x = x / self._e8m0_to_dtype(scales_q, jnp.float32)

        clipped_x = jnp.clip(scaled_x, -MAX, MAX)
        x_q = clipped_x.astype(self.q_dtype).reshape(x_shape)
        scales_q = scales_q.reshape(scale_shape).view(scale_dtype)

        return ScaledTensorFactory.create_1x(
            x_q,
            scales_q,
498
            scaling_mode=self.scaling_mode,
499
500
            is_colwise=is_colwise,
            dq_dtype=dq_dtype,
501
            flatten_axis=flatten_axis,
502
503
504
505
506
507
508
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
        )

    def _cast_to_e8m0_with_rounding_up(self, scales):
        """Cast scales to E8M0 format with rounding up.

        Args:
            scales: Input scales to convert

        Returns:
            Scales in E8M0 format
        """
        temp = scales.astype(jnp.float32).view(jnp.uint32)
        exp = temp >> 23
        mant = temp & 0x7FFFFF
        is_ru = jnp.logical_and(
            jnp.logical_and((mant > 0), (exp != 0xFE)),
            ~jnp.logical_and((exp == 0), (mant <= 0x400000)),
        )
        exp = jnp.where(is_ru, exp + 1, exp)
        new_scales = exp.astype(jnp.uint8)
        return new_scales

    def _e8m0_to_dtype(self, x, dtype):
        """Convert E8M0 format to specified data type.

        Args:
            x: Input in E8M0 format
            dtype: Target data type

        Returns:
            Converted values in target data type
        """
        temp = x.astype(jnp.uint32)
        exp = temp << 23
        new_x = exp.view(jnp.float32)
        near_zero_value = 2**-15 if dtype == jnp.float16 else 2**-127
        new_x = jnp.where(new_x == 0, jnp.array(near_zero_value, jnp.float32), new_x)
        return new_x.astype(dtype)


@register_pytree_node_class
@dataclass
class QuantizerSet:
    """Set of quantizers for different tensor types.

    This class manages quantizers for input tensors, kernel tensors, and
    gradient tensors.

    Attributes:
        x: Quantizer for input tensors
        kernel: Quantizer for kernel tensors
        dgrad: Quantizer for gradient tensors
    """

    x: Optional[Quantizer]
    kernel: Optional[Quantizer]
    dgrad: Optional[Quantizer]

    def tree_flatten(self):
        """Flatten the quantizer set for JAX tree operations.

        Returns:
            Tuple of (children, aux_data) for tree operations
        """
        children = (self.x, self.kernel, self.dgrad)
        aux_data = ()
        return (children, aux_data)

    @classmethod
    def tree_unflatten(cls, aux_data, children):
        """Reconstruct a quantizer set from its flattened representation.

        Args:
            aux_data: Unused auxiliary data
            children: Tuple of quantizers

        Returns:
            A reconstructed QuantizerSet instance
        """
        return cls(*aux_data, *children)


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
@register_pytree_node_class
@dataclass
class GroupedQuantizer(Quantizer):
    """Quantizer for grouped arrays.

    This class extends Quantizer to support quantization of arrays in grouped manner,
    where elements are grouped along a specified axis then quantized separately.

    Attributes:
        data_layout: The data layout specification
        n_groups: Number of groups for quantization
        quantizers: Tuple of quantizers for each group
    """

    data_layout: str = None
    n_groups: int = 1
    quantizers: Tuple[Quantizer] = field(default_factory=lambda: (None,))

    def tree_flatten(self):
        """Flatten the quantizer for JAX tree operations.

        Returns:
            Tuple of (children, aux_data) for tree operations
        """
        children = (self.quantizers,)
        aux_data = (self.q_dtype, self.scaling_mode, self.q_layout, self.data_layout, self.n_groups)
        return (children, aux_data)

    def __post_init__(self):
        if self.quantizers[0] is None:
614
            quantizers = QuantizerFactory.create(
615
616
                self.n_groups, self.scaling_mode, self.q_dtype, self.q_layout
            )
617
            self.quantizers = (quantizers,) if not isinstance(quantizers, tuple) else quantizers
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
        self.data_layout = self.quantizers[0].data_layout

    def _create_grouped_tensor_from_tensor_list(
        self, tensor_list, group_sizes, original_shape, group_axis, mode
    ):
        # mode 0 = concate, mode 1 = add
        # TODO(Ming Huang): Consider to apply Enum for mode.
        assert mode in [0, 1]
        grouped_data = (
            [] if mode == 0 else jnp.zeros(tensor_list[0].data.shape, tensor_list[0].data.dtype)
        )
        grouped_scale_inv = []

        for tensor in tensor_list:
            if mode == 0:
                grouped_data.append(tensor.data.flatten())
            else:
                grouped_data += tensor.data
            grouped_scale_inv.append(tensor.scale_inv.flatten())

        grouped_data = jnp.concatenate(grouped_data) if mode == 0 else grouped_data.flatten()
        grouped_scale_inv = jnp.concatenate(grouped_scale_inv)

        return ScaledTensorFactory.create_1x(
            grouped_data,
            grouped_scale_inv,
644
645
646
647
648
            scaling_mode=self.scaling_mode,
            dq_dtype=tensor_list[0].dq_dtype,
            is_colwise=tensor_list[0].is_colwise,
            data_layout=tensor_list[0].data_layout,
            flatten_axis=tensor_list[0].flatten_axis,
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
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
724
725
726
727
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
753
754
755
756
757
758
759
760
761
762
763
764
765
766
767
            group_sizes=group_sizes,
            original_shape=original_shape,
            group_axis=group_axis,
        )

    def _quantize_func(self, *args, **kwargs):
        pass

    def quantize(
        self,
        x,
        is_rowwise: bool = None,
        is_colwise: bool = None,
        dq_dtype=None,
        flatten_axis=-1,
        group_sizes=None,
        group_axis=0,
    ):
        """Quantize a tensor in grouped manner.

        Expected input shape: [M, K] or [G, K, N]
        Split to x.shape[group_axis] number of groups if group_sizes is not given

        Args:
            x: Input tensor to quantize
            is_rowwise: Whether to use row-wise quantization
            is_colwise: Whether to use column-wise quantization
            dq_dtype: Data type for dequantized values
            flatten_axis: The axis along which the tensor could be flattened to 2D (default: -1)
            group_sizes: Array of ints containing the size of each group (default: None)
            group_axis: The axis along which grouping is performed (default: 0)

        Returns:
            A ScaledTensor1x or ScaledTensor2x containing the quantized data
        """
        assert group_axis == 0, "Only group_axis == 0 is supported now!"

        dq_dtype = dq_dtype if dq_dtype is not None else x.dtype
        if flatten_axis < 0:
            flatten_axis += x.ndim
        assert 0 < flatten_axis < x.ndim, "flatten_axis is out of bounds!"

        is_rowwise = (
            is_rowwise
            if is_rowwise is not None
            else (self.q_layout == QuantizeLayout.ROWWISE or self.is_2x2x())
        )
        is_colwise = (
            is_colwise
            if is_colwise is not None
            else (self.q_layout == QuantizeLayout.COLWISE or self.is_2x2x())
        )
        assert is_rowwise or is_colwise, "No quantization layout is specified"

        original_shape = x.shape

        if group_sizes is not None:
            assert not is_colwise, "Not yet implememted!"
            assert group_sizes.ndim == 1, (
                "GroupedQuantizer only support 1D group_sizes, got group_sizes.ndim ="
                f" {group_sizes.ndim}"
            )

            _zeros = partial(jax.lax.full_like, fill_value=0)

            x_iota = jax.lax.broadcasted_iota(group_sizes.dtype, x.shape, 0)
            group_ends = jnp.cumulative_sum(group_sizes)
            group_starts = jax.lax.concatenate(
                [_zeros(group_sizes)[:1], group_ends[:-1]],
                dimension=0,
            )
            x_zero = _zeros(x)

            tensor_list = []
            for i in range(len(group_sizes)):
                mask = jax.lax.bitwise_and(group_starts[i] <= x_iota, x_iota < group_ends[i])
                x_selected = jax.lax.select(mask, x, x_zero)
                tensor = self.quantizers[i].quantize(
                    x_selected, is_rowwise, is_colwise, dq_dtype, flatten_axis
                )
                tensor_list.append(tensor)
            combine_mode = 1  # Add
        else:
            group_sizes = jnp.ones(x.shape[group_axis], dtype=jnp.int32)
            x = jnp.split(x, x.shape[group_axis], axis=group_axis)

            tensor_list = []
            for i in range(len(group_sizes)):
                tensor = self.quantizers[i].quantize(
                    x[i], is_rowwise, is_colwise, dq_dtype, flatten_axis
                )
                tensor_list.append(tensor)
            combine_mode = 0  # Concate

        grouped_rowwise_tensor = grouped_colwise_tensor = None
        if is_rowwise:
            rowwise_tensor_list = [tensor.get_rowwise_tensor() for tensor in tensor_list]
            grouped_rowwise_tensor = self._create_grouped_tensor_from_tensor_list(
                rowwise_tensor_list, group_sizes, original_shape, group_axis, combine_mode
            )
        if is_colwise:
            colwise_tensor_list = [tensor.get_colwise_tensor() for tensor in tensor_list]
            grouped_colwise_tensor = self._create_grouped_tensor_from_tensor_list(
                colwise_tensor_list, group_sizes, original_shape, group_axis, combine_mode
            )

        if is_colwise and is_rowwise:
            return ScaledTensor2x(grouped_rowwise_tensor, grouped_colwise_tensor)
        if is_colwise:
            return grouped_colwise_tensor
        return grouped_rowwise_tensor

    def get_scale_shapes(self, data_shape, is_padded=True, flatten_axis=-1, group_sizes=None):
        assert group_sizes, "Empty group_sizes was given!"
        return self.scaling_mode.get_grouped_scale_shape_2x(
            data_shape, group_sizes, is_padded, flatten_axis
        )


768
769
770
771
772
773
774
775
776
@dataclass
class QuantizerFactory:
    """Factory class for creating quantizers.

    This class provides static methods to create individual quantizers and
    sets of quantizers with various configurations.
    """

    quantizer_type_map = {
777
        ScalingMode.DELAYED_TENSOR_SCALING: DelayedScaleQuantizer,
778
        ScalingMode.CURRENT_TENSOR_SCALING: CurrentScaleQuantizer,
779
        ScalingMode.MXFP8_1D_SCALING: BlockScaleQuantizer,
780
781
782
783
784
785
786
    }

    @staticmethod
    def create(
        n_quantizers: int = 1,
        scaling_mode: ScalingMode = None,
        q_dtype: jnp.dtype = None,
787
        q_layout: QuantizeLayout = None,
788
        n_groups: int = None,
789
790
791
792
793
794
795
796
        **kwargs,
    ) -> Quantizer:
        """Create one or more quantizers with specified parameters.

        Args:
            n_quantizers: Number of quantizers to create
            scaling_mode: Scaling mode to use
            q_dtype: Quantization data type
797
798
            q_layout: Quantization axis
            flatten_axis: The quantization axis for the tensor
799
            n_groups: Number of quantizers if GroupedQuantizer
800
801
802
803
804
805
            **kwargs: Additional arguments for quantizer initialization

        Returns:
            A single quantizer or tuple of quantizers
        """
        # (Phuong): add this assert back when NVTE_NO_SCALING is fully implememted
806
        assert isinstance(scaling_mode, ScalingMode), "Invalid scaling_mode type"
807
808
809
810
811
812
813
814
815
816
        if n_groups:
            if n_quantizers != 1:
                warnings.warn(
                    "Using more than one GroupedQuantizer for a grouped input is not recommended"
                )
            quantizer_type = GroupedQuantizer
            kwargs["n_groups"] = n_groups
        else:
            quantizer_type = QuantizerFactory.quantizer_type_map.get(scaling_mode)

817
        if scaling_mode == ScalingMode.NO_SCALING:
818
819
820
821
822
823
            quantizers = [None] * n_quantizers
        else:
            quantizers = []
            for _ in range(n_quantizers):
                quantizers.append(
                    quantizer_type(
824
                        q_dtype=q_dtype, scaling_mode=scaling_mode, q_layout=q_layout, **kwargs
825
826
827
828
829
                    )
                )
        return quantizers[0] if len(quantizers) == 1 else tuple(quantizers)

    @staticmethod
830
    def _create_set(
831
832
833
834
835
836
837
838
        x_scaling_mode,
        kernel_scaling_mode,
        grad_scaling_mode,
        fwd_dtype,
        bwd_dtype,
        is_2x2x,
        n_groups,
        **kwargs,
839
    ) -> QuantizerSet:
840
841
842
        """Create a set of quantizers for forward and backward passes.

        Args:
843
844
845
            x_scaling_mode: Scaling mode to use for input tensor 'x'
            kernel_scaling_mode: Scaling mode to use for kernel tensor
            grad_scaling_mode: Scaling mode to use for gradient tensor
846
847
848
            fwd_dtype: Data type for forward pass
            bwd_dtype: Data type for backward pass
            is_2x2x: Whether to use 2x2x quantization
849
            n_groups
850
851
852
853
854
855
            **kwargs: Additional arguments for quantizer initialization

        Returns:
            A QuantizerSet instance
        """
        if is_2x2x:
856
            q_layout_x = q_layout_kernel = q_layout_dgrad = QuantizeLayout.ROWWISE_COLWISE
857
        else:
858
            q_layout_x = q_layout_kernel = q_layout_dgrad = QuantizeLayout.ROWWISE
859
            if kernel_scaling_mode.is_1d_block_scaling():
860
                q_layout_kernel = QuantizeLayout.COLWISE
861
            if get_quantize_config().INFERENCE_MODE:
862
                q_layout_dgrad = None
863
864
865
866
867
868
869
870
871
872
873
874
875
876
877
878
879
880

        if "quantize_meta_set" in kwargs:
            quantize_meta_set = kwargs.get("quantize_meta_set")
            args_x = {
                "scale": quantize_meta_set.x.scale,
                "amax_history": quantize_meta_set.x.amax_history,
            }
            args_kernel = {
                "scale": quantize_meta_set.kernel.scale,
                "amax_history": quantize_meta_set.kernel.amax_history,
            }
            args_grad = {
                "scale": quantize_meta_set.grad.scale,
                "amax_history": quantize_meta_set.grad.amax_history,
            }
        else:
            args_x = args_kernel = args_grad = {}

881
        q_x = QuantizerFactory.create(1, x_scaling_mode, fwd_dtype, q_layout_x, n_groups, **args_x)
882
        q_kernel = QuantizerFactory.create(
883
            1, kernel_scaling_mode, fwd_dtype, q_layout_kernel, n_groups, **args_kernel
884
885
        )
        q_dgrad = QuantizerFactory.create(
886
            1, grad_scaling_mode, bwd_dtype, q_layout_dgrad, n_groups, **args_grad
887
        )
888
889
890
891
892
        return QuantizerSet(x=q_x, kernel=q_kernel, dgrad=q_dgrad)

    @staticmethod
    def create_set(
        n_quantizer_sets: int = 1,
893
        scaling_mode: Optional[ScalingMode] = None,
894
895
896
        fwd_dtype: jnp.dtype = None,
        bwd_dtype: jnp.dtype = None,
        is_2x2x: bool = None,
897
        n_groups: int = None,
898
        fp8_recipe: Optional[recipe.Recipe] = None,
899
900
901
902
903
904
        **kwargs,
    ) -> tuple[Union[tuple[Quantizer], None]]:
        """Create one or more sets of quantizers.

        Args:
            n_quantizer_sets: Number of quantizer sets to create
905
906
907
908
            scaling_mode: Scaling mode to use, default is get_quantize_config().get_scaling_mode
            fwd_dtype: Data type for forward pass, default is get_quantize_config().FWD_DTYPE
            bwd_dtype: Data type for backward pass, default is get_quantize_config().BWD_DTYPE
            is_2x2x: Whether to use 2x2x quantization, default is get_quantize_config().IF_QUANTIZE_2X
909
            n_groups:
910
            fp8_recipe: Recipe to use for quantization. Scaling mode can be specified directly via the scaling_mode parameter or indirectly via recipe. Recipe is preferred as it will support additional recipes in future where scaling mode differs between x, kernel, and grad in the quantizer set.
911
912
913
914
915
            **kwargs: Additional arguments for quantizer initialization

        Returns:
            A single quantizer set or tuple of quantizer sets
        """
916
917
918
919
920
921
922
923
924

        assert scaling_mode is None or fp8_recipe is None, (
            "Cannot specify both scaling_mode and fp8_recipe when creating a quantizer set. Scaling"
            " mode can be specified directly via the scaling_mode parameter or indirectly via"
            " recipe. Recipe is preferred as it will support additional recipes in future where"
            " scaling mode differs between x, kernel, and grad in the quantizer set."
        )

        if fp8_recipe is not None:
925
926
927
928
929
930
931
932
            quantize_config = get_quantize_config_class(fp8_recipe)()
            x_scaling_mode = quantize_config.get_scaling_mode(TensorSource.X)
            kernel_scaling_mode = quantize_config.get_scaling_mode(TensorSource.KERNEL)
            grad_scaling_mode = quantize_config.get_scaling_mode(TensorSource.DGRAD)
        elif scaling_mode is not None:
            x_scaling_mode = scaling_mode
            kernel_scaling_mode = scaling_mode
            grad_scaling_mode = scaling_mode
933
        else:
934
935
936
937
938
939
            x_scaling_mode = get_quantize_config().get_scaling_mode(TensorSource.X)
            kernel_scaling_mode = get_quantize_config().get_scaling_mode(TensorSource.KERNEL)
            grad_scaling_mode = get_quantize_config().get_scaling_mode(TensorSource.DGRAD)

        fwd_dtype = fwd_dtype or get_quantize_config().FWD_DTYPE
        bwd_dtype = bwd_dtype or get_quantize_config().BWD_DTYPE
940
        if is_2x2x is None:
941
942
            # TODO(Jeremy): check x, kernel, grad separately for 2x
            if x_scaling_mode.is_1d_block_scaling():
943
                is_2x2x = True
944
            elif x_scaling_mode.is_tensor_scaling():
945
946
947
                is_2x2x = not is_fp8_gemm_with_all_layouts_supported()
            else:  # NO_SCALING ignores is_2x2x for now
                is_2x2x = False
948
        is_inference_mode = get_quantize_config().INFERENCE_MODE
949
        assert not is_inference_mode, "Inference mode is not supported yet!"
950
951
952
953

        q_set = []
        for _ in range(n_quantizer_sets):
            q_set.append(
954
                QuantizerFactory._create_set(
955
956
957
958
959
960
961
962
                    x_scaling_mode=x_scaling_mode,
                    kernel_scaling_mode=kernel_scaling_mode,
                    grad_scaling_mode=grad_scaling_mode,
                    fwd_dtype=fwd_dtype,
                    bwd_dtype=bwd_dtype,
                    is_2x2x=is_2x2x,
                    n_groups=n_groups,
                    **kwargs,
963
                )
964
965
966
967
968
            )

        return q_set[0] if len(q_set) == 1 else tuple(q_set)


969
noop_quantizer_set = QuantizerFactory.create_set(scaling_mode=ScalingMode.NO_SCALING, is_2x2x=False)