attention.py 37.9 KB
Newer Older
1
# Copyright (c) 2022-2025, NVIDIA CORPORATION & AFFILIATES. All rights reserved.
2
3
4
#
# See LICENSE for license information.
"""JAX multi-head attention modules"""
5
from __future__ import annotations
6
7
from enum import Enum
from functools import partial
8
9
10
from typing import Optional, Tuple, Union
import warnings

11
from jax.ad_checkpoint import checkpoint_name
12
13
import jax
import jax.numpy as jnp
14
from flax.linen import make_attention_mask
15

16
17
18
from transformer_engine.transformer_engine_jax import NVTE_Bias_Type
from transformer_engine.transformer_engine_jax import NVTE_Mask_Type
from transformer_engine.transformer_engine_jax import NVTE_QKV_Layout
19
20
from transformer_engine.transformer_engine_jax import NVTE_QKV_Format
from transformer_engine.transformer_engine_jax import nvte_get_qkv_format
21

22
from . import cpp_extensions as tex
23
24
25


class AttnBiasType(Enum):
26
27
28
29
30
    """
    NO_BIAS: Softmax is performed as softmax(scale * qk)
    PRE_SCALE_BIAS: Softmax is performed as softmax(scale * (qk + bias))
    POST_SCALE_BIAS: Softmax is performed as softmax(scale * qk + bias)
    """
31

32
33
34
35
36
37
    NO_BIAS = NVTE_Bias_Type.NVTE_NO_BIAS
    PRE_SCALE_BIAS = NVTE_Bias_Type.NVTE_PRE_SCALE_BIAS
    POST_SCALE_BIAS = NVTE_Bias_Type.NVTE_POST_SCALE_BIAS


class AttnMaskType(Enum):
38
39
40
41
42
43
    """
    NO_MASK: No attention mask is applied.
    PADDING_MASK: Indicates the presence of paddings at the end of each sequence.
    CAUSAL_MASK: An upper triangular mask is applied to the softmax inputs.
    PADDING_CAUSAL_MASK: A combination of both causal and padding masks.
    """
44

45
46
47
    NO_MASK = NVTE_Mask_Type.NVTE_NO_MASK
    PADDING_MASK = NVTE_Mask_Type.NVTE_PADDING_MASK
    CAUSAL_MASK = NVTE_Mask_Type.NVTE_CAUSAL_MASK
48
    PADDING_CAUSAL_MASK = NVTE_Mask_Type.NVTE_PADDING_CAUSAL_MASK
49
50
    CAUSAL_BOTTOM_RIGHT_MASK = NVTE_Mask_Type.NVTE_CAUSAL_BOTTOM_RIGHT_MASK
    PADDING_CAUSAL_BOTTOM_RIGHT_MASK = NVTE_Mask_Type.NVTE_PADDING_CAUSAL_BOTTOM_RIGHT_MASK
51

52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
    def is_causal(self):
        """Returns True if the mask is a causal mask"""
        return self in [
            AttnMaskType.CAUSAL_MASK,
            AttnMaskType.PADDING_CAUSAL_MASK,
            AttnMaskType.CAUSAL_BOTTOM_RIGHT_MASK,
            AttnMaskType.PADDING_CAUSAL_BOTTOM_RIGHT_MASK,
        ]

    def is_padding(self):
        """Returns True if the mask includes padding"""
        return self in [
            AttnMaskType.PADDING_MASK,
            AttnMaskType.PADDING_CAUSAL_MASK,
            AttnMaskType.PADDING_CAUSAL_BOTTOM_RIGHT_MASK,
        ]

    def is_bottom_right(self):
        """Returns True if the causal mask is calculated from the bottom-right section"""
        return self in [
            AttnMaskType.CAUSAL_BOTTOM_RIGHT_MASK,
            AttnMaskType.PADDING_CAUSAL_BOTTOM_RIGHT_MASK,
        ]


class QKVFormat(Enum):
    """
    SBHD: q,k,v memory layout with [s, b, ..., h, d]
    BSHD: q,k,v memory layout with [b, s, ..., h, d]
    THD: q,k,v memory layout is same as BSHD, but allow multiple segments packed in a sequence.
    """

    SBHD = NVTE_QKV_Format.NVTE_SBHD
    BSHD = NVTE_QKV_Format.NVTE_BSHD
    THD = NVTE_QKV_Format.NVTE_THD

88

89
class QKVLayout(Enum):
90
91
92
93
94
95
96
97
98
99
    """
    BSHD Format:
        - BS3HD: q,k,v are interleave packed as a tensor with shape [b, s, 3, h, d].
        - BSHD_BS2HD: q with shape [b, s, h, d] and kv are interleaved with shape [b, s, 2, h, d].
        - BSHD_BSHD_BSHD: q,k,v are seperate tensors with shape [b, s, h, d]
    THD Format: Shape is same as BSHD layout but allow multiple segments packed in a sequence.
        - T3HD: q,k,v are interleave packed as a tensor with shape [b, s, 3, h, d].
        - THD_T2HD: q with shape [b, s, h, d] and kv are interleaved with shape [b, s, 2, h, d].
        - THD_THD_THD: q,k,v are seperate tensors with shape [b, s, h, d]
    """
100

101
102
    BS3HD = NVTE_QKV_Layout.NVTE_BS3HD
    BSHD_BS2HD = NVTE_QKV_Layout.NVTE_BSHD_BS2HD
103
    BSHD_BSHD_BSHD = NVTE_QKV_Layout.NVTE_BSHD_BSHD_BSHD
104
105
106
107
    T3HD = NVTE_QKV_Layout.NVTE_T3HD
    THD_T2HD = NVTE_QKV_Layout.NVTE_THD_T2HD
    THD_THD_THD = NVTE_QKV_Layout.NVTE_THD_THD_THD

108
109
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
    def get_qkv_format(self):
        """
        Return the corresponding qkv_format (BSHD, SBHD, THD)
        """
        return QKVFormat(nvte_get_qkv_format(self.value))

    def is_qkvpacked(self):
        """
        Return True if the query, key, value is packed
        """
        return self in [QKVLayout.BS3HD, QKVLayout.T3HD]

    def is_kvpacked(self):
        """
        Return True if the key, value is packed
        """
        return self in [QKVLayout.BSHD_BS2HD, QKVLayout.THD_T2HD]

    def is_separate(self):
        """
        Return True if the query, key, value are three separate tensors
        """
        return self in [QKVLayout.BSHD_BSHD_BSHD, QKVLayout.THD_THD_THD]

    def is_thd(self):
        """
        Return True if the layout belongs to THD
        """
        return self in [QKVLayout.T3HD, QKVLayout.THD_T2HD, QKVLayout.THD_THD_THD]
137
138


139
140
141
142
143
144
145
146
147
148
149
150
151
class CPStrategy(Enum):
    """Defines the context parallel strategies of Jax fused attention.

    DEFAULT: Default strategy will choose automatically if context parallel axis is sharded.
    ALL_GATHER: All-gather/reduce scatter implementation.
    RING: Ring attention implementation (https://arxiv.org/abs/2310.01889).
    """

    DEFAULT = 0
    ALL_GATHER = 1
    RING = 2


152
def make_swa_mask(
153
154
    segment_pos_q: jnp.ndarray,
    segment_pos_kv: jnp.ndarray,
155
156
157
158
    window_size: Optional[Tuple[int, int]] = None,
    dtype: jax.typing.DTypeLike = jnp.float32,
):
    """
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
    Generate a sliding window mask (1 = attend, 0 = masked).

    Args:
        segment_pos_q (jnp.ndarray):
            Query positions within each segment. For example, a batch with segment_ids =
            [[1, 1, 1, 2, 2, 2, 2, 2]] yields segment_pos =
            [[0, 1, 2, 0, 1, 2, 3, 4]].
        segment_pos_kv (jnp.ndarray):
            Key/value positions within each segment.
        window_size (Optional[Tuple[int, int]], optional):
            Sliding window size for local attention, where query at position i attends to keys
            in [i - window_size[0], i + window_size[1]] inclusive. A negative number means an
            infinite window; None means no sliding window.
            Defaults to None.
        dtype (jax.typing.DTypeLike, optional):
            Mask data type. Defaults to jnp.float32.

    Returns:
        jnp.ndarray:
            The mask with shape [b, 1, max_seqlen_q, max_seqlen_kv].
179
    """
180
181
    if window_size is not None:
        left_window, right_window = window_size
182
    else:
183
184
185
186
187
188
189
190
        left_window = right_window = jnp.inf
    left_window = jnp.inf if left_window < 0 else left_window
    right_window = jnp.inf if right_window < 0 else right_window
    pos_q = jnp.expand_dims(segment_pos_q, axis=-1)
    pos_kv = jnp.expand_dims(segment_pos_kv, axis=-2)
    inv_swa_mask = (pos_kv >= pos_q - left_window) & (pos_kv <= pos_q + right_window)
    inv_swa_mask = jnp.expand_dims(inv_swa_mask, axis=-3)
    return inv_swa_mask.astype(dtype)
191
192


193
194
195
196
197
198
def canonicalize_attn_mask_type(attn_mask_type: str):
    """Convert string attn_mask_type to AttnMaskType
    TE-JAX currently fall back to the padding version kernels for the libraries integration.
    The overhead between padding and non-padding version should be small.
    However, we will lease this limitation in the near feature.
    """
199
    match attn_mask_type:
200
        case "no_mask":
201
            return AttnMaskType.NO_MASK
202
        case "padding":
203
            return AttnMaskType.PADDING_MASK
204
        case "causal":
205
            return AttnMaskType.CAUSAL_MASK
206
207
        case "causal_bottom_right" | "bottom_right_causal":
            return AttnMaskType.CAUSAL_BOTTOM_RIGHT_MASK
208
        case "padding_causal" | "causal_padding":
209
            return AttnMaskType.PADDING_CAUSAL_MASK
210
211
212
213
214
215
216
        case (
            "padding_causal_bottom_right"
            | "causal_padding_bottom_right"
            | "bottom_right_causal_padding"
            | "bottom_right_padding_causal"
        ):
            return AttnMaskType.PADDING_CAUSAL_BOTTOM_RIGHT_MASK
217
    raise ValueError(
218
219
220
        f"Unsupported {attn_mask_type=}, supported attn_mask_type={{'no_mask', 'padding', 'causal',"
        " 'padding_causal', 'causal_padding', 'causal_bottom_right',"
        " 'padding_causal_bottom_right'}"
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
    )


def is_fused_attn_kernel_available(
    q_dtype,
    kv_dtype,
    qkv_layout,
    attn_bias_type,
    attn_mask_type,
    dropout_probability,
    q_num_heads,
    kv_num_heads,
    q_max_seqlen,
    kv_max_seqlen,
    head_dim,
236
    window_size: Optional[Tuple[int, int]] = None,
237
):
238
    """
239
    To check whether the fused attention kernel is supported
240
    """
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257

    def make_helper(attn_mask_type):
        return tex.FusedAttnHelper(
            q_dtype,
            kv_dtype,
            qkv_layout.value,
            attn_bias_type.value,
            attn_mask_type.value,
            dropout_probability,
            q_num_heads,
            kv_num_heads,
            q_max_seqlen,
            kv_max_seqlen,
            head_dim,
            (-1, -1) if window_size is None else window_size,
        )

258
    return make_helper(attn_mask_type).is_fused_attn_kernel_available()
259
260


261
def _obtain_batch_and_max_seqlen(qkv, qkv_layout):
262
263
264
265
266
267
268
269
270
271
272
273
274
275
    if qkv_layout.is_qkvpacked():
        assert len(qkv) == 1, f"qkv must be (qkvpacked,) with {qkv_layout=}"
        batch, q_max_seqlen, *_ = qkv[0].shape
        kv_max_seqlen = q_max_seqlen
    elif qkv_layout.is_kvpacked():
        assert len(qkv) == 2, f"qkv must be (query, kvpacked) with {qkv_layout=}"
        batch, q_max_seqlen, *_ = qkv[0].shape
        kv_max_seqlen = qkv[1].shape[1]
    elif qkv_layout.is_separate():
        assert len(qkv) == 3, f"qkv must be (query, key, value) with {qkv_layout=}"
        batch, q_max_seqlen, *_ = qkv[0].shape
        kv_max_seqlen = qkv[1].shape[1]
    else:
        raise ValueError(f"Unsupported {qkv_layout=}")
276
    return batch, q_max_seqlen, kv_max_seqlen
277

278

279
280
def reorder_causal_load_balancing(tensor, cp_size: int, tensor_format: QKVFormat):
    """Reorders a tensor for load balancing the compute of causal attention."""
281
282
    seq_dim = 1 if tensor_format == QKVFormat.BSHD else 0
    return tex.attention.reorder_causal_load_balancing(tensor, cp_size, seq_dim, False)
283
284
285
286


def inverse_reorder_causal_load_balancing(tensor, cp_size: int, tensor_format: QKVFormat):
    """Inverse operation of `reorder_causal_load_balancing`."""
287
288
    seq_dim = 1 if tensor_format == QKVFormat.BSHD else 0
    return tex.attention.reorder_causal_load_balancing(tensor, cp_size, seq_dim, True)
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
323
324
325
326
327
328
329
330
331
332
333
334
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
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
401
402
403
404
405
406
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
444
445
446
447
448
449
450
451
452
453
454
455
456
457
458
459
460
461
462
463
464
465
466
467
468
469
470
471
472
473
474
475
476
477
478
479
480
481
482
483
484
485
486
487
488
489
490
491
492
493
494
495
496
497
498
499
500
501
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
def _get_seqlens_and_offsets(segment_ids, max_segments_per_seq):
    # bincount map with 0s
    bincount_vmap = jax.vmap(partial(jnp.bincount, length=max_segments_per_seq + 1))
    seqlens_with_zero = bincount_vmap(segment_ids.astype(jnp.int32))
    seqlens = seqlens_with_zero[..., 1:]

    def _find_offsets(x):
        same_as_previous = jnp.logical_and(x[..., 1:] != x[..., :-1], x[..., 1:] != 0)
        first_column = x[..., :1] != 0
        same_as_previous = jnp.hstack((first_column, same_as_previous))
        return jax.vmap(partial(jnp.argwhere, size=(max_segments_per_seq + 1), fill_value=-1))(
            same_as_previous
        ).squeeze(-1)

    offsets = _find_offsets(segment_ids)
    return seqlens, offsets


def _mask_to_seqlens_offset(mask, max_segments_per_seq):
    assert mask.shape[1] == 1
    row_ids = mask.squeeze(axis=1).max(axis=-1)
    q_seqlen, q_offset = _get_seqlens_and_offsets(row_ids, max_segments_per_seq)
    col_ids = mask.squeeze(axis=1).max(axis=-2)
    kv_seqlen, kv_offset = _get_seqlens_and_offsets(col_ids, max_segments_per_seq)
    return q_seqlen, q_offset, kv_seqlen, kv_offset


def _segment_ids_pos_to_seqlens_offsets(
    segment_ids_q,
    segment_ids_kv,
    segment_pos_q,
    segment_pos_kv,
    attn_mask_type,
    window_size,
    max_segments_per_seq,
):
    # (1 = attend, 0 = masked)
    segment_mask = make_attention_mask(
        segment_ids_q,
        segment_ids_kv,
        jnp.equal,
    )
    segment_mask_with_id = make_attention_mask(
        segment_ids_q,
        segment_ids_kv,
        lambda x, y: jnp.equal(x, y) * x,
    )
    attn_mask = segment_mask
    if attn_mask_type.is_causal():
        causal_mask = make_attention_mask(
            segment_pos_q,
            segment_pos_kv,
            jnp.greater_equal,
        )
        attn_mask = jnp.logical_and(segment_mask, causal_mask)

    swa_mask = make_swa_mask(segment_pos_q, segment_pos_kv, window_size, dtype=jnp.bool)
    attn_mask = jnp.logical_and(attn_mask, swa_mask)

    attn_mask_with_id = jnp.where(attn_mask, segment_mask_with_id, 0)
    q_seqlen, q_offset, kv_seqlen, kv_offset = _mask_to_seqlens_offset(
        attn_mask_with_id, max_segments_per_seq
    )
    return q_seqlen, kv_seqlen, q_offset, kv_offset


def _segment_ids_to_seqlens(segment_ids_q, segment_ids_kv, attn_mask_type):
    # convert the mask to seqlens, mask doesn't support ragged offsets
    if not attn_mask_type.is_padding():
        q_max_seqlen = segment_ids_q.shape[-1]
        kv_max_seqlen = segment_ids_kv.shape[-1]
        q_seq_lens = jnp.full_like(q_max_seqlen, q_max_seqlen, dtype=jnp.int32)
        kv_seq_lens = jnp.full_like(kv_max_seqlen, kv_max_seqlen, dtype=jnp.int32)
    else:
        q_seq_lens = jnp.sum(segment_ids_q, axis=-1).astype(jnp.int32)
        kv_seq_lens = jnp.sum(segment_ids_kv, axis=-1).astype(jnp.int32)
    return q_seq_lens, kv_seq_lens


@jax.tree_util.register_pytree_node_class
class SequenceDescriptor:
    """A class to descibe the sequences with flexible initialization.
    - SequenceDescriptor.from_seqlens
      For non-THD (non-packed) cases, where each batch has only 1 sequence.
    - SequenceDescriptor.from_seqlens_and_offsets
      For THD (packed) cases, where each batch may have not only 1 sequence.
    - SequenceDescriptor.from_segment_ids_and_pos
      Experimental feature for THD (packed) cases with context parallelism.
    """

    seqlens: Optional[Tuple[jnp.ndarray, jnp.ndarray]]
    seq_offsets: Optional[Tuple[jnp.ndarray, jnp.ndarray]]
    segment_ids: Optional[Tuple[jnp.ndarray, jnp.ndarray]]
    segment_pos: Optional[Tuple[jnp.ndarray, jnp.ndarray]]

    def __init__(self, seqlens=None, seq_offsets=None, segment_ids=None, segment_pos=None):
        """
        Initialize to Tuple(jnp.zeros, jnp.zeros) because the primitive only accepts pure jax array
        """
        self.seqlens = (jnp.zeros(0), jnp.zeros(0)) if seqlens is None else seqlens
        self.seq_offsets = (jnp.zeros(0), jnp.zeros(0)) if seq_offsets is None else seq_offsets
        self.segment_ids = (jnp.zeros(0), jnp.zeros(0)) if segment_ids is None else segment_ids
        self.segment_pos = (jnp.zeros(0), jnp.zeros(0)) if segment_pos is None else segment_pos

    def tree_flatten(self):
        """
        Flatten method to register as a pytree node
        """
        return ((self.seqlens, self.seq_offsets, self.segment_ids, self.segment_pos), None)

    @classmethod
    def tree_unflatten(cls, aux_data, children):
        """
        Unflatten method to register as a pytree node
        """
        del aux_data
        return cls(*children)

    def get_seqlens_and_offsets(
        self, attn_mask_type, qkv_layout, window_size, max_segments_per_seq
    ):
        """
        Acquire the seqlens/offsets for cuDNN backend
        """
        attn_mask_type = AttnMaskType(attn_mask_type)
        qkv_layout = QKVLayout(qkv_layout)
        q_segment_ids, kv_segment_ids = self.segment_ids
        q_segment_pos, kv_segment_pos = self.segment_pos
        assert q_segment_ids.shape == q_segment_pos.shape
        assert kv_segment_ids.shape == kv_segment_pos.shape
        # No segment_ids/segment_pos
        if q_segment_ids.size + kv_segment_ids.size == 0:
            return self.seqlens, self.seq_offsets

        if qkv_layout.is_thd():
            q_seqlens, kv_seqlens, q_offsets, kv_offsets = _segment_ids_pos_to_seqlens_offsets(
                q_segment_ids,
                kv_segment_ids,
                q_segment_pos,
                kv_segment_pos,
                attn_mask_type,
                window_size,
                max_segments_per_seq,
            )
        else:
            q_seqlens, kv_seqlens = _segment_ids_to_seqlens(
                q_segment_ids,
                kv_segment_ids,
                attn_mask_type,
            )
            q_offsets = kv_offsets = jnp.zeros(0)
        return (q_seqlens, kv_seqlens), (q_offsets, kv_offsets)

    @classmethod
    def _expand_to_pair(
        cls, value: Union[jnp.ndarray, Tuple[jnp.ndarray, jnp.ndarray]]
    ) -> Tuple[jnp.ndarray, jnp.ndarray]:
        """
        Internal helper to ensure a single value expands into a pair (q, kv).
        """
        if isinstance(value, tuple):
            if len(value) != 2:
                raise ValueError("Input tuple must have exactly 2 elements.")
            return value

        if isinstance(value, jnp.ndarray):
            return value, value  # Duplicate for q=kv case

        raise TypeError(
            "Expected a jax.numpy.ndarray or a tuple of two jax.numpy.ndarray, "
            f"but got {type(value).__name__}."
        )

    @classmethod
    def from_seqlens(
        cls,
        seqlens: Union[jnp.ndarray, Tuple[jnp.ndarray, jnp.ndarray]],
    ) -> SequenceDescriptor:
        """
        Factory method for inputs with sequence lengths only (non-THD).
        Args:
            seqlens(Tuple(jnp.ndarray, jnp.ndarray)) = (q_seqlens, kv_seqlens):
                - q_seqlens (jnp.ndarray):
                  Sequence lengths for the query, with shape [batch].
                - kv_seqlen (jnp.ndarray):
                  Sequence lengths for the key and value, with shape [batch].
        Return:
            A SequenceDescriptor with only seqlens initialized.
        """
        q_seqlens, kv_seqlens = cls._expand_to_pair(seqlens)
        return cls(seqlens=(q_seqlens, kv_seqlens))

    @classmethod
    def from_seqlens_and_offsets(
        cls,
        seqlens: Union[jnp.ndarray, Tuple[jnp.ndarray, jnp.ndarray]],
        seq_offsets: Union[jnp.ndarray, Tuple[jnp.ndarray, jnp.ndarray]],
    ) -> SequenceDescriptor:
        """
        Factory method for inputs with sequence lengths and offsets (THD).
        Args:
            seqlens(Tuple(jnp.ndarray, jnp.ndarray)) = (q_seqlens, kv_seqlens):
                - q_seqlens (jnp.ndarray):
                  Sequence lengths for the query, with shape [batch, max_seqlen].
                  Unused positions are padded with -1.
                - kv_seqlen (jnp.ndarray):
                  Sequence lengths for the key and value, with shape [batch, max_seqlen].
                  Unused positions are padded with -1.
            seq_offsets(Tuple(jnp.ndarray, jnp.ndarray)) = (q_offsets, kv_offsets)
                - q_seq_offsets (jnp.ndarray):
                  The offsets in the sequence dim for the query, with shape [batch, max_seqlen + 1].
                  Unused positions are padded with -1.
                - kv_seq_offsets (jnp.ndarray):
                  The offsets in the sequence dim for the query, with shape [batch, max_seqlen + 1].
                  Unused positions are padded with -1.
        Return:
            A SequenceDescriptor with seqlens/seq_offsets initialized.
        """
        q_seqlens, kv_seqlens = cls._expand_to_pair(seqlens)
        q_offsets, kv_offsets = cls._expand_to_pair(seq_offsets)
        return cls(seqlens=(q_seqlens, kv_seqlens), seq_offsets=(q_offsets, kv_offsets))

    @classmethod
    def from_segment_ids_and_pos(
        cls,
        segment_ids: Union[jnp.ndarray, Tuple[jnp.ndarray, jnp.ndarray]],
        segment_pos: Optional[Union[jnp.ndarray, Tuple[jnp.ndarray, jnp.ndarray]]] = None,
    ) -> SequenceDescriptor:
        """
        Experimental factory method for inputs with segment IDs and optional positions. (THD)
        Args:
            segment_ids(Tuple(jnp.ndarray, jnp.ndarray)) = (q_segment_ids, kv_segment_ids):
                - q_segment_ids (jnp.ndarray):
                  Query segment ids start with 1, with shape [batch, max_seqlen].
                  0s are treated as paddings.
                - kv_segment_ids (jnp.ndarray):
                  Key, value segment ids start with 1, with shape [batch, max_seqlen].
                  0s are treated as paddings.
            segment_pos(Tuple(jnp.ndarray, jnp.ndarray)) = (q_segment_pos, kv_segment_pos)
                - q_segment_pos (jnp.ndarray):
                  The position inside each segment for query, with shape [batch, max_seqlen].
                - kv_segment_pos (jnp.ndarray):
                  The position inside each segment for key, value, with shape [batch, max_seqlen].
        Return:
            A SequenceDescriptor with segment_ids/segment_pos initialized.
        """
        q_seg_ids, kv_seg_ids = cls._expand_to_pair(segment_ids)

        if segment_pos is not None:
            segment_pos = cls._expand_to_pair(segment_pos)
        else:

            def generate_default_pos(segment_ids):
                seqlen = segment_ids.shape[-1]
                return jnp.broadcast_to(jnp.arange(seqlen), segment_ids.shape)

            q_seg_pos = generate_default_pos(q_seg_ids)
            kv_seg_pos = generate_default_pos(kv_seg_ids)
            segment_pos = (q_seg_pos, kv_seg_pos)

        return cls(
            segment_ids=(q_seg_ids, kv_seg_ids),
            segment_pos=segment_pos,
        )


def _legacy_fused_attn(
558
559
560
561
    qkv: Tuple[jnp.ndarray, ...],
    bias: Optional[jnp.ndarray],
    mask: Optional[jnp.ndarray],
    seed: Optional[jnp.ndarray],
562
563
    attn_bias_type: AttnBiasType,
    attn_mask_type: AttnMaskType,
564
    qkv_layout: QKVLayout,
565
566
567
    scaling_factor: float,
    dropout_probability: float,
    is_training: bool,
568
    window_size: Optional[Tuple[int, int]] = None,
569
    context_parallel_strategy: CPStrategy = CPStrategy.DEFAULT,
570
571
    context_parallel_causal_load_balanced: bool = False,
    context_parallel_axis: str = "",
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
    Perform non-THD (non-packed) cuDNN fused attention.

    This function implements the following formula:
        BMM1 -> (PreBias) -> ScaleMaskSoftmax -> (PostBias) -> (Dropout) -> BMM2
    Args:
        qkv (Tuple[jnp.ndarray, ...]): A tuple containing query, key, and value tensors.
        It supports three formats:
            - `(qkv_packed,)`: For interleaved QKV packed format, typically used when query, key,
              and value have the same shape (e.g., self-attention).
            - `(query, kv_packed)`: For separate query and KV packed format, typically used when
              query has a different shape (e.g., cross-attention).
            - `(query, key, value)`: For separate query, key, and value tensors.
        bias (Optional[jnp.ndarray]): An optional bias tensor to be added to the attention scores.
        mask (Optional[jnp.ndarray]):
            An optional mask tensor to mask out the attention scores, `True` means mask out.
            Intra-sequence padding is not valid. The padded tokens can only on the right-most.
            Otherwise the results will be wrong.
        seed (Optional[jnp.ndarray]): Optional random seed for dropout.
        attn_bias_type (NVTE_Bias_Type): Type of attention bias.
        attn_mask_type (NVTE_Mask_Type): Type of attention mask.
        qkv_layout (NVTE_QKV_Layout): Layout of the QKV tensors.
        scaling_factor (float): Scaling factor for the attention scores.
        dropout_probability (float): Dropout probability to apply during attention.
        is_training (bool): Flag indicating whether the model is in training mode.
598
        window_size (Optional[Tuple[int, int]]): Sliding window size.
599
600
601
        context_parallel_causal_load_balanced (bool):
            Indicates the sequences are ordered for causal mask load balancing when running context parallelism.
        context_parallel_axis (str): The name of the context parallel axis.
602
603
    Returns:
        (jnp.ndarray): The output tensor from the fused attention.
604
    """
605
    assert (
606
        not qkv_layout.is_thd()
607
608
609
610
611
612
613
614
615
616
617
618
619
620
621
622
    ), "Please use transformer_engine.jax.attention.fused_attn_thd for THD format."

    # Check inputs qkv
    match qkv_layout:
        case NVTE_QKV_Layout.NVTE_BS3HD:
            assert len(qkv) == 1, f"qkv=(packed_qkv,) is expected with {qkv_layout=} but got {qkv=}"
        case NVTE_QKV_Layout.NVTE_BSHD_BS2HD:
            assert (
                len(qkv) == 2
            ), f"qkv=(query, packed_kv) is expected with {qkv_layout=} but got {qkv=}"
        case NVTE_QKV_Layout.NVTE_BSHD_BSHD_BSHD:
            assert (
                len(qkv) == 3
            ), f"qkv=(query, key, value) is expected with {qkv_layout=} but got {qkv=}"

    # convert the mask to seqlens, mask doesn't support ragged offsets
623
    if not attn_mask_type.is_padding():
624
625
626
        batch, q_max_seqlen, kv_max_seqlen = _obtain_batch_and_max_seqlen(qkv, qkv_layout)
        q_seq_lens = jnp.full((batch,), q_max_seqlen, dtype=jnp.int32)
        kv_seq_lens = jnp.full((batch,), kv_max_seqlen, dtype=jnp.int32)
zlsh80826's avatar
zlsh80826 committed
627
    else:
628
        assert mask is not None
629
        mask = jnp.logical_not(mask)
630
        q_seq_lens = jnp.sum(mask, axis=-2, dtype=jnp.int32)[..., 0, 0]
631
        if attn_mask_type == AttnMaskType.PADDING_MASK:
632
            kv_seq_lens = jnp.sum(mask, axis=-1, dtype=jnp.int32)[..., 0, 0]
633
634
        else:
            # When mask is causal, the actual seqlen is not the last row, use max to find it
635
            kv_seq_lens = jnp.max(jnp.sum(mask, axis=-1, dtype=jnp.int32), axis=(-1, -2))
636

637
638
    output = _fused_attn(
        qkv,
639
        bias,
640
        SequenceDescriptor.from_seqlens((q_seq_lens, kv_seq_lens)),
641
        seed,
642
643
644
        attn_bias_type=attn_bias_type,
        attn_mask_type=attn_mask_type,
        qkv_layout=qkv_layout,
645
646
647
        scaling_factor=scaling_factor,
        dropout_probability=dropout_probability,
        is_training=is_training,
648
        max_segments_per_seq=1,
649
        window_size=window_size,
650
        context_parallel_strategy=context_parallel_strategy,
651
652
        context_parallel_causal_load_balanced=context_parallel_causal_load_balanced,
        context_parallel_axis=context_parallel_axis,
653
    )
654

655
    return output
656
657


658
659
660
661
662
663
664
665
def fused_attn_thd(
    qkv: Tuple[jnp.ndarray, ...],
    bias: Optional[jnp.ndarray],
    q_seq_lens: jnp.ndarray,
    kv_seq_lens: jnp.ndarray,
    q_seq_offsets: jnp.ndarray,
    kv_seq_offsets: jnp.ndarray,
    seed: Optional[jnp.ndarray],
666
667
    attn_bias_type: AttnBiasType,
    attn_mask_type: AttnMaskType,
668
    qkv_layout: QKVLayout,
669
670
671
    scaling_factor: float,
    dropout_probability: float,
    is_training: bool,
672
    max_segments_per_seq: int = 1,
673
    window_size: Optional[Tuple[int, int]] = None,
674
    context_parallel_strategy: CPStrategy = CPStrategy.DEFAULT,
675
676
    context_parallel_causal_load_balanced: bool = False,
    context_parallel_axis: str = "",
677
):
678
    """
679
    Deprecated THD fused attn, please use fusd_attn with SequenceDescriptor
680
    """
681
682
683
684
685
    warnings.warn(
        "fused_attn_thd is deprecated, please use fused_attn with SequenceDescriptor",
        DeprecationWarning,
    )

686
    assert (
687
        qkv_layout.is_thd()
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
    ), "Please use transformer_engine.jax.attention.fused_attn for non-THD format."

    # Check inputs qkv
    match qkv_layout:
        case NVTE_QKV_Layout.NVTE_T3HD:
            assert len(qkv) == 1, f"qkv=(packed_qkv,) is expected with {qkv_layout=} but got {qkv=}"
        case NVTE_QKV_Layout.NVTE_THD_T2HD:
            assert (
                len(qkv) == 2
            ), f"qkv=(query, packed_kv) is expected with {qkv_layout=} but got {qkv=}"
        case NVTE_QKV_Layout.NVTE_THD_THD_THD:
            assert (
                len(qkv) == 3
            ), f"qkv=(query, key, value) is expected with {qkv_layout=} but got {qkv=}"

    batch, q_max_seqlen, kv_max_seqlen = _obtain_batch_and_max_seqlen(qkv, qkv_layout)
    assert q_seq_lens.shape == (batch, q_max_seqlen)
    assert kv_seq_lens.shape == (batch, kv_max_seqlen)
    assert q_seq_offsets.shape == (batch, q_max_seqlen + 1)
    assert kv_seq_offsets.shape == (batch, kv_max_seqlen + 1)
708

709
    output = _fused_attn(
710
        qkv,
711
        bias,
712
713
714
        SequenceDescriptor.from_seqlens_and_offsets(
            (q_seq_lens, kv_seq_lens), (q_seq_offsets, kv_seq_offsets)
        ),
715
716
717
        seed,
        attn_bias_type=attn_bias_type,
        attn_mask_type=attn_mask_type,
718
        qkv_layout=qkv_layout,
719
720
721
        scaling_factor=scaling_factor,
        dropout_probability=dropout_probability,
        is_training=is_training,
722
        max_segments_per_seq=max_segments_per_seq,
723
        window_size=window_size,
724
        context_parallel_strategy=context_parallel_strategy,
725
726
        context_parallel_causal_load_balanced=context_parallel_causal_load_balanced,
        context_parallel_axis=context_parallel_axis,
727
    )
728
729
730
731

    return output


732
@partial(jax.custom_vjp, nondiff_argnums=(4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14))
733
def _fused_attn(
734
735
    qkv: Tuple[jnp.ndarray, ...],
    bias: Optional[jnp.ndarray],
736
737
    sequence_descriptor: SequenceDescriptor,
    seed: Optional[jnp.ndarray],
738
739
    attn_bias_type: AttnBiasType,
    attn_mask_type: AttnMaskType,
740
    qkv_layout: QKVLayout,
741
742
743
    scaling_factor: float,
    dropout_probability: float,
    is_training: bool,
744
    max_segments_per_seq: int,
745
    window_size: Optional[Tuple[int, int]],
746
    context_parallel_strategy: CPStrategy,
747
748
    context_parallel_causal_load_balanced: bool,
    context_parallel_axis: str,
749
750
):
    output, _ = _fused_attn_fwd_rule(
751
        qkv,
752
        bias,
753
        sequence_descriptor,
754
755
756
        seed,
        attn_bias_type,
        attn_mask_type,
757
        qkv_layout,
758
759
760
        scaling_factor,
        dropout_probability,
        is_training,
761
        max_segments_per_seq,
762
        window_size,
763
        context_parallel_strategy,
764
765
        context_parallel_causal_load_balanced,
        context_parallel_axis,
766
    )
767
768
769
    return output


770
def _fused_attn_fwd_rule(
771
    qkv,
772
    bias,
773
    sequence_descriptor,
774
775
776
    seed,
    attn_bias_type,
    attn_mask_type,
777
    qkv_layout,
778
779
780
    scaling_factor,
    dropout_probability,
    is_training,
781
    max_segments_per_seq,
782
    window_size,
783
    context_parallel_strategy,
784
785
    context_parallel_causal_load_balanced,
    context_parallel_axis,
786
787
):
    output, softmax_aux, rng_state = tex.fused_attn_fwd(
788
        qkv,
789
        bias,
790
        sequence_descriptor,
791
792
793
        seed,
        attn_bias_type=attn_bias_type.value,
        attn_mask_type=attn_mask_type.value,
794
        qkv_layout=qkv_layout.value,
795
796
797
        scaling_factor=scaling_factor,
        dropout_probability=dropout_probability,
        is_training=is_training,
798
        max_segments_per_seq=max_segments_per_seq,
799
        window_size=window_size,
800
        context_parallel_strategy=context_parallel_strategy,
801
802
        context_parallel_causal_load_balanced=context_parallel_causal_load_balanced,
        context_parallel_axis=context_parallel_axis,
803
804
805
806
807
    )
    output = checkpoint_name(output, "context")
    softmax_aux = checkpoint_name(softmax_aux, "context")
    rng_state = checkpoint_name(rng_state, "context")
    return output, (
808
        qkv,
809
        bias,
810
        sequence_descriptor,
811
812
813
814
815
816
817
        softmax_aux,
        rng_state,
        output,
    )


def _fused_attn_bwd_rule(
818
819
820
821
822
823
824
    attn_bias_type,
    attn_mask_type,
    qkv_layout,
    scaling_factor,
    dropout_probability,
    is_training,
    max_segments_per_seq,
825
    window_size,
826
    context_parallel_strategy,
827
828
    context_parallel_causal_load_balanced,
    context_parallel_axis,
829
830
    ctx,
    dz,
831
):
832
833
834
    (
        qkv,
        bias,
835
        sequence_descriptor,
836
837
838
839
840
841
        softmax_aux,
        rng_state,
        output,
    ) = ctx
    grad_qkv, grad_bias = tex.fused_attn_bwd(
        qkv,
842
843
844
845
846
        bias,
        softmax_aux,
        rng_state,
        output,
        dz,
847
        sequence_descriptor,
848
849
        attn_bias_type=attn_bias_type.value,
        attn_mask_type=attn_mask_type.value,
850
        qkv_layout=qkv_layout.value,
851
852
853
        scaling_factor=scaling_factor,
        dropout_probability=dropout_probability,
        is_training=is_training,
854
        max_segments_per_seq=max_segments_per_seq,
855
        window_size=window_size,
856
        context_parallel_strategy=context_parallel_strategy,
857
858
        context_parallel_causal_load_balanced=context_parallel_causal_load_balanced,
        context_parallel_axis=context_parallel_axis,
859
    )
860
861
    if attn_bias_type == AttnBiasType.NO_BIAS:
        grad_bias = None
862
863
864
865
866
867
    return (
        grad_qkv,
        grad_bias,
        None,
        None,
    )
868
869
870


_fused_attn.defvjp(_fused_attn_fwd_rule, _fused_attn_bwd_rule)
871
872
873
874
875
876
877
878
879
880
881
882
883
884
885
886
887
888
889
890
891
892
893
894
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
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
986
987
988
989
990
991
992
993
994
995


def fused_attn(
    qkv: Tuple[jnp.ndarray, ...],
    bias: Optional[jnp.ndarray],
    sequence_descriptor: SequenceDescriptor,
    seed: Optional[jnp.ndarray],
    attn_bias_type: AttnBiasType,
    attn_mask_type: AttnMaskType,
    qkv_layout: QKVLayout,
    scaling_factor: float,
    dropout_probability: float,
    is_training: bool,
    max_segments_per_seq: int = 1,
    window_size: Optional[Tuple[int, int]] = None,
    context_parallel_strategy: CPStrategy = CPStrategy.DEFAULT,
    context_parallel_causal_load_balanced: bool = False,
    context_parallel_axis: str = "",
):
    """
    Perform cuDNN fused attention.

    This function implements the following formula:
        BMM1 -> (PreBias) -> ScaleMaskSoftmax -> (PostBias) -> (Dropout) -> BMM2
    Args:
        qkv (Tuple[jnp.ndarray, ...]): A tuple containing query, key, and value tensors.
        It supports three formats:
            - `(qkv_packed,)`: For interleaved QKV packed format, typically used when query, key,
              and value have the same shape (e.g., self-attention).
            - `(query, kv_packed)`: For separate query and KV packed format, typically used when
              query has a different shape (e.g., cross-attention).
            - `(query, key, value)`: For separate query, key, and value tensors.
        bias (Optional[jnp.ndarray]): An optional bias tensor to be added to the attention scores.
        sequence_descriptor (SequenceDescriptor): Descriptor for how to describe the sequence.
        seed (Optional[jnp.ndarray]): Optional random seed for dropout.
        attn_bias_type (NVTE_Bias_Type): Type of attention bias.
        attn_mask_type (NVTE_Mask_Type): Type of attention mask.
        qkv_layout (NVTE_QKV_Layout): Layout of the QKV tensors.
        scaling_factor (float): Scaling factor for the attention scores.
        dropout_probability (float): Dropout probability to apply during attention.
        is_training (bool): Flag indicating whether the model is in training mode.
        max_segments_per_seq (int):
            Indicating the maximum number of segments inside a sequence. This parameter is to
            constrain the limit usage and need to be static during the e2e training. The XLA compile
            time and memory consumption is proportional to `max_segments_per_seq`.
        window_size (Optional[Tuple[int, int]]):
            Sliding window size.
        context_parallel_causal_load_balanced (bool):
            Indicates the sequences are ordered for causal mask load balancing when running context parallelism.
        context_parallel_axis (str): The name of the context parallel axis.
    Returns:
        (jnp.ndarray): The output tensor from the fused attention.

    Examples (non-THD, also known as non-packed):
        >>> #  q_segment_ids = [[1, 1, 1, 0], [1, 1, 0, 0]], 0 means padded tokens
        >>> # kv_segment_ids = [[1, 0, 0, 0], [1, 1, 0, 0]], 0 means padded tokens
        >>> b, s, h, d = 2, 4, 12, 64
        >>> qkv = jnp.zeros((b, s, 3, h, d), dtype=jnp.bfloat16)
        >>> q_seq_lens = jnp.asarray([3, 2])
        >>> kv_seq_lens = jnp.asarray([1, 2])
        >>> sequence_desc = SequenceDescriptor.from_seqlens(
                seqlens=(q_seq_lens, kv_seq_lens))
        >>> out = fused_attn((qkv,), None, sequence_desc, None,
                             AttnBiasType.NO_BIAS, AttnMaskType.PADDING_CAUSAL_MASK,
                             QKVLayout.BS3HD, 0.125, 0, True, 3)

    Examples (THD, also known as packed):
        >>> # segment_ids = [[1, 1, 2, 3], [1, 1, 2, 0]], 0 means padded tokens
        >>> # segment_pos = [[0, 1, 0, 0], [0, 1, 0, 1]]
        >>> b, s, h, d = 2, 4, 12, 64
        >>> qkv = jnp.zeros((b, s, 3, h, d), dtype=jnp.bfloat16)
        >>> # 3 segments in first seq, 2 segments in second seq
        >>> q_seq_lens = kv_seq_lens = jnp.asarray([[2, 1, 1, -1], [2, 1, -1, -1]])
        >>> # seq_offsets need to include the end offset of the last segments
        >>> q_seq_offsets = kv_seq_offsets = jnp.asarray([[0, 2, 3, 4, -1], [0, 2, 3, -1, -1]])
        >>> sequence_desc = SequenceDescriptor.from_seqlens_and_offsets(
                seqlens=(q_seq_lens, kv_seq_lens),
                seq_offsets=(q_seq_offsets, kv_seq_offsets))
        >>> out = fused_attn((qkv,), None, sequence_desc, None,
                             AttnBiasType.NO_BIAS, AttnMaskType.PADDING_CAUSAL_MASK,
                             QKVLayout.T3HD, 0.125, 0, True, 3)
    """
    if isinstance(sequence_descriptor, jnp.ndarray):
        warnings.warn(
            "Pass mask to fused_attn is deprecated, please use SequenceDescriptor instead. "
            + "See help(transformer_engine.jax.attention.SequenceDescriptor) for details.",
            DeprecationWarning,
        )
        if max_segments_per_seq != 1:
            raise ValueError("Passing mask is only supported for non-THD case.")
        return _legacy_fused_attn(
            qkv,
            bias,
            sequence_descriptor,
            seed,
            attn_bias_type=attn_bias_type,
            attn_mask_type=attn_mask_type,
            qkv_layout=qkv_layout,
            scaling_factor=scaling_factor,
            dropout_probability=dropout_probability,
            is_training=is_training,
            window_size=window_size,
            context_parallel_strategy=context_parallel_strategy,
            context_parallel_causal_load_balanced=context_parallel_causal_load_balanced,
            context_parallel_axis=context_parallel_axis,
        )
    output = _fused_attn(
        qkv,
        bias,
        sequence_descriptor,
        seed,
        attn_bias_type=attn_bias_type,
        attn_mask_type=attn_mask_type,
        qkv_layout=qkv_layout,
        scaling_factor=scaling_factor,
        dropout_probability=dropout_probability,
        is_training=is_training,
        max_segments_per_seq=max_segments_per_seq,
        window_size=window_size,
        context_parallel_strategy=context_parallel_strategy,
        context_parallel_causal_load_balanced=context_parallel_causal_load_balanced,
        context_parallel_axis=context_parallel_axis,
    )

    return output