utils.py 42.8 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3
import abc
4
import enum
5
import functools
6
from abc import abstractmethod
7
from dataclasses import dataclass, field, fields, make_dataclass
8
9
10
11
12
13
14
15
16
17
from typing import (
    TYPE_CHECKING,
    Any,
    ClassVar,
    Generic,
    Literal,
    Protocol,
    TypeVar,
    get_args,
)
18

19
import numpy as np
20
import torch
21
from typing_extensions import runtime_checkable
22

23
from vllm.config import VllmConfig, get_layers_from_vllm_config
24
from vllm.utils.math_utils import cdiv
25

26
27
28
29
if TYPE_CHECKING:
    from vllm.v1.core.sched.output import SchedulerOutput
    from vllm.v1.worker.gpu_input_batch import InputBatch

30
import vllm.envs as envs
31
32
33
34
35
from vllm.attention.backends.abstract import (
    AttentionBackend,
    AttentionImpl,
    AttentionMetadata,
)
36
from vllm.distributed.kv_transfer.kv_connector.utils import (
37
38
    get_kv_connector_cache_layout,
)
39
from vllm.logger import init_logger
40
from vllm.model_executor.layers.attention_layer_base import AttentionLayerBase
41
from vllm.v1.kv_cache_interface import AttentionSpec
42
from vllm.v1.worker.ubatch_utils import UBatchSlice
43
44

logger = init_logger(__name__)
45
KVCacheLayoutType = Literal["NHD", "HND"]
46
_KV_CACHE_LAYOUT_OVERRIDE: KVCacheLayoutType | None = None
47

48
49
PAD_SLOT_ID = -1

50
51
52

def is_valid_kv_cache_layout(value: str) -> bool:
    return value in get_args(KVCacheLayoutType)
53

54
55
56
57

@dataclass
class CommonAttentionMetadata:
    """
58
59
    Per-batch attention metadata, shared across layers and backends.
    AttentionMetadataBuilder instances use it to construct per-layer metadata.
60

61
    For many of the tensors we keep both GPU and CPU versions.
62
63
64
    """

    query_start_loc: torch.Tensor
65
    query_start_loc_cpu: torch.Tensor
66
    """(batch_size + 1,), the start location of each request in query Tensor"""
67

68
    seq_lens: torch.Tensor
69
    seq_lens_cpu: torch.Tensor
70
71
    """(batch_size,), the length of each request including both computed tokens
    and newly scheduled tokens"""
72
    
73
74
    num_computed_tokens_cpu: torch.Tensor
    """(batch_size,), the number of computed tokens for each request"""
75
    
76
77
    num_reqs: int
    """Number of requests"""
78
    # TODO(lucas): rename to num_tokens since it may be padded and this is misleading
79
80
81
82
    num_actual_tokens: int
    """Total number of tokens in batch"""
    max_query_len: int
    """Longest query in batch"""
83
84
    max_seq_len: int
    """Longest context length in batch"""
85

86
    block_table_tensor: torch.Tensor
87
88
89
    
    num_speculative_tokens: int = 0
    """Number of speculative tokens"""
90
91
    slot_mapping: torch.Tensor = None
    """(batch_size, seq_len), slot mapping"""
92
    spec_layer_decoding: bool = False
93

94
95
    causal: bool = True

96
    # Needed by FastPrefillAttentionBuilder
97
98
    logits_indices_padded: torch.Tensor | None = None
    num_logits_indices: int | None = None
99

100
    # Needed by CrossAttentionBuilder
101
102
    encoder_seq_lens: torch.Tensor | None = None
    encoder_seq_lens_cpu: np.ndarray | None = None
103

104
    dcp_local_seq_lens: torch.Tensor | None = None
105
    dcp_local_seq_lens_cpu: torch.Tensor | None = None
106
107
    """Sequence lengths of the local rank in decode context parallelism world"""

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
    # TODO(lucas): remove once we have FULL-CG spec-decode support
    def unpadded(
        self, num_actual_tokens: int, num_actual_reqs: int
    ) -> "CommonAttentionMetadata":
        maybe_slice_reqs = lambda x: x[:num_actual_reqs] if x is not None else None
        return CommonAttentionMetadata(
            query_start_loc=self.query_start_loc[: num_actual_reqs + 1],
            query_start_loc_cpu=self.query_start_loc_cpu[: num_actual_reqs + 1],
            seq_lens=self.seq_lens[:num_actual_reqs],
            seq_lens_cpu=self.seq_lens_cpu[:num_actual_reqs],
            num_computed_tokens_cpu=self.num_computed_tokens_cpu[:num_actual_reqs],
            num_reqs=num_actual_reqs,
            num_actual_tokens=num_actual_tokens,
            max_query_len=self.max_query_len,
            max_seq_len=self.max_seq_len,
            block_table_tensor=self.block_table_tensor[:num_actual_reqs],
            slot_mapping=self.slot_mapping[:num_actual_tokens],
            causal=self.causal,
            logits_indices_padded=self.logits_indices_padded,
            num_logits_indices=self.num_logits_indices,
            encoder_seq_lens=maybe_slice_reqs(self.encoder_seq_lens),
            encoder_seq_lens_cpu=maybe_slice_reqs(self.encoder_seq_lens_cpu),
            dcp_local_seq_lens=maybe_slice_reqs(self.dcp_local_seq_lens),
            dcp_local_seq_lens_cpu=maybe_slice_reqs(self.dcp_local_seq_lens_cpu),
        )
133

134

135
136
137
138
139
def slice_query_start_locs(
    query_start_loc: torch.Tensor,
    request_slice: slice,
) -> torch.Tensor:
    """
140
    Creates a new query_start_loc that corresponds to the requests in
141
142
143
144
145
    request_slice.

    Note: This function creates a new tensor to hold the new query_start_locs.
    This will break cudagraph compatibility.
    """
146
147
148
149
    return (
        query_start_loc[request_slice.start : request_slice.stop + 1]
        - query_start_loc[request_slice.start]
    )
150
151
152


def _make_metadata_with_slice(
153
154
    ubatch_slice: UBatchSlice, attn_metadata: CommonAttentionMetadata
) -> CommonAttentionMetadata:
155
    """
156
    This function creates a new CommonAttentionMetadata that corresponds to
157
158
159
    the requests included in ubatch_slice
    """

160
    assert not ubatch_slice.is_empty(), f"Ubatch slice {ubatch_slice} is empty"
161

162
163
164
    request_slice = ubatch_slice.request_slice
    token_slice = ubatch_slice.token_slice

165
166
167
168
169
170
    start_locs = attn_metadata.query_start_loc_cpu
    first_req = request_slice.start
    first_tok = token_slice.start
    last_req = request_slice.stop - 1
    last_tok = token_slice.stop - 1

171
    assert start_locs[first_req] <= first_tok < start_locs[first_req + 1], (
172
        "Token slice start outside of first request"
173
    )
174
    # NOTE: last token can be outside of the last request if we have CG padding.
175
176
177
178
179
180
181
182
183

    # If the "middle" request has tokens in both ubatches, we have to split it.
    # If ubatch_slice is the first ubatch then we will be splitting the last
    # request. If it's the second microbatch, then we will be splitting the
    # first request
    splits_first_request = first_tok > start_locs[first_req]
    splits_last_request = last_tok < start_locs[last_req + 1] - 1

    query_start_loc_cpu = slice_query_start_locs(start_locs, request_slice)
184
185
186
    query_start_loc = slice_query_start_locs(
        attn_metadata.query_start_loc, request_slice
    )
187

188
    assert len(query_start_loc) >= 2, (
189
190
        f"query_start_loc must have at least 2 elements, got {len(query_start_loc)}"
    )
191

192
193
194
195
    if splits_first_request:
        tokens_skipped = first_tok - start_locs[first_req]
        query_start_loc[1:] -= tokens_skipped
        query_start_loc_cpu[1:] -= tokens_skipped
196
197
    seq_lens = attn_metadata.seq_lens[request_slice]
    seq_lens_cpu = attn_metadata.seq_lens_cpu[request_slice]
198
199
200
201
202
203
204
205
206
207
208
209
210

    if splits_last_request:
        tokens_skipped = query_start_loc_cpu[-1] - token_slice.stop
        query_start_loc[-1] -= tokens_skipped
        query_start_loc_cpu[-1] -= tokens_skipped

        # Make sure we don't modify the seq_lens tensors
        #  (not cudagraph compatible)
        seq_lens = seq_lens.clone()
        seq_lens_cpu = seq_lens_cpu.clone()
        seq_lens[-1] -= tokens_skipped
        seq_lens_cpu[-1] -= tokens_skipped

211
    max_seq_len = int(seq_lens_cpu.max())
212
    num_computed_tokens_cpu = attn_metadata.num_computed_tokens_cpu[request_slice]
213
214
215
216

    num_requests = request_slice.stop - request_slice.start
    num_actual_tokens = token_slice.stop - token_slice.start
    max_query_len = int(
217
218
        torch.max(torch.abs(query_start_loc_cpu[1:] - query_start_loc_cpu[:-1])).item()
    )
219

220
221
222
223
224
    # This is to account for the case where we are in a dummy
    # run and query_start_loc_cpu is full of 0s
    if max_query_len == 0:
        max_query_len = attn_metadata.max_query_len

225
226
227
228
229
230
231
232
233
234
235
236
    block_table_tensor = attn_metadata.block_table_tensor[request_slice]
    slot_mapping = attn_metadata.slot_mapping[token_slice]

    return CommonAttentionMetadata(
        query_start_loc=query_start_loc,
        query_start_loc_cpu=query_start_loc_cpu,
        seq_lens=seq_lens,
        seq_lens_cpu=seq_lens_cpu,
        num_computed_tokens_cpu=num_computed_tokens_cpu,
        num_reqs=num_requests,
        num_actual_tokens=num_actual_tokens,
        max_query_len=max_query_len,
237
        max_seq_len=max_seq_len,
238
239
240
241
242
243
        block_table_tensor=block_table_tensor,
        slot_mapping=slot_mapping,
    )


def split_attn_metadata(
244
    ubatch_slices: list[UBatchSlice],
245
246
247
    common_attn_metadata: CommonAttentionMetadata,
) -> list[CommonAttentionMetadata]:
    """
248
    Creates a new CommonAttentionMetadata instance that corresponds to the
249
    requests for each UBatchSlice in ubatch_slices.
250
251
252
253
254

    Note: This function does not modify common_attn_metadata
    """
    results = []
    for ubatch_slice in ubatch_slices:
255
        results.append(_make_metadata_with_slice(ubatch_slice, common_attn_metadata))
256

257
258
    return results

259
260
261
262

M = TypeVar("M")


263
class AttentionCGSupport(enum.Enum):
264
    """Constants for the cudagraph support of the attention backend
265
266
267
    Here we do not consider the cascade attention, as currently
    it is never cudagraph supported."""

268
269
270
271
    ALWAYS = 3
    """Cudagraph always supported; supports mixed-prefill-decode"""
    UNIFORM_BATCH = 2
    """Cudagraph supported for batches the only contain query lengths that are
272
    the same, this can be used for spec-decode
273
274
275
        i.e. "decodes" are 1 + num_speculative_tokens"""
    UNIFORM_SINGLE_TOKEN_DECODE = 1
    """Cudagraph supported for batches the only contain query_len==1 decodes"""
276
277
278
279
    NEVER = 0
    """NO cudagraph support"""


280
class AttentionMetadataBuilder(abc.ABC, Generic[M]):
281
    # Does this backend/builder support CUDA Graphs for attention (default: no).
282
283
    # Do not access directly. Call get_cudagraph_support() instead.
    _cudagraph_support: ClassVar[AttentionCGSupport] = AttentionCGSupport.NEVER
284
285
286
    # Does this backend/builder reorder the batch?
    # If not, set this to None. Otherwise set it to the query
    # length that will be pulled into the front of the batch.
287
    reorder_batch_threshold: int | None = None
288
289

    @abstractmethod
290
291
292
293
294
295
296
    def __init__(
        self,
        kv_cache_spec: AttentionSpec,
        layer_names: list[str],
        vllm_config: VllmConfig,
        device: torch.device,
    ):
297
        self.kv_cache_spec = kv_cache_spec
298
299
300
        self.layer_names = layer_names
        self.vllm_config = vllm_config
        self.device = device
301

302
303
304
305
306
307
308
309
310
    @classmethod
    def get_cudagraph_support(
        cls: type["AttentionMetadataBuilder"],
        vllm_config: VllmConfig,
        kv_cache_spec: AttentionSpec,
    ) -> AttentionCGSupport:
        """Get the cudagraph support level of this builder class."""
        return cls._cudagraph_support

311
    def _init_reorder_batch_threshold(
312
        self,
313
        reorder_batch_threshold: int | None = 1,
314
315
        supports_spec_as_decode: bool = False,
        supports_dcp_with_varlen: bool = False,
316
    ) -> None:
317
        self.reorder_batch_threshold = reorder_batch_threshold
318
        if self.reorder_batch_threshold is not None and supports_spec_as_decode:
319
320
321
322
            # If the backend supports spec-as-decode kernels, then we can set
            # the reorder_batch_threshold based on the number of speculative
            # tokens from the config.
            speculative_config = self.vllm_config.speculative_config
323
324
325
326
            if (
                speculative_config is not None
                and speculative_config.num_speculative_tokens is not None
            ):
327
328
329
                self.reorder_batch_threshold = max(
                    self.reorder_batch_threshold,
                    1 + speculative_config.num_speculative_tokens,
330
                )
331

332
333
334
335
336
        if (
            self.vllm_config.parallel_config.decode_context_parallel_size > 1
            and not supports_dcp_with_varlen
        ):
            self.reorder_batch_threshold = 1
337

338
    @abstractmethod
339
340
341
342
343
344
    def build(
        self,
        common_prefix_len: int,
        common_attn_metadata: CommonAttentionMetadata,
        fast_build: bool = False,
    ) -> M:
345
346
347
        """
        Central method that builds attention metadata.
        Some builders (MLA) require reorder_batch to be called prior to build.
348

349
350
351
352
353
354
        Args:
            common_prefix_len: The length of the common prefix of the batch.
            common_attn_metadata: The common attention metadata.
            fast_build: The meta-data will prioritize speed of building over
                then speed at execution. Can be used for spec-decode where the
                result of a build call may only be used for few layers/iters.
355
356
357
358
        """
        raise NotImplementedError

    def build_for_cudagraph_capture(
359
360
        self, common_attn_metadata: CommonAttentionMetadata
    ) -> M:
361
362
363
364
365
        """
        Build attention metadata for CUDA graph capture. Uses build by default.
        Subclasses that override this method should call self.build or
        super().build_for_cudagraph_capture.
        """
366
367
368
        return self.build(
            common_prefix_len=0, common_attn_metadata=common_attn_metadata
        )
369

370
371
372
373
374
375
376
    def build_for_drafting(
        self,
        common_attn_metadata: CommonAttentionMetadata,
        draft_index: int,
    ) -> M:
        """
        Build attention metadata for draft model. Uses build by default.
377

378
379
380
381
382
383
384
385
        Args:
            common_attn_metadata: The common attention metadata.
            draft_index: The index of the current draft operation.
                When speculating a chain of tokens, this index refers to the
                draft attempt for the i-th token.
                For tree-based attention, this index instead refers to the
                draft attempt for the i-th level in the tree of tokens.
        """
386
387
388
389
390
        return self.build(
            common_prefix_len=0,
            common_attn_metadata=common_attn_metadata,
            fast_build=True,
        )
391

392
393
394
395
396
397
398
399
    def use_cascade_attention(
        self,
        common_prefix_len: int,
        query_lens: np.ndarray,
        num_query_heads: int,
        num_kv_heads: int,
        use_alibi: bool,
        use_sliding_window: bool,
400
        use_local_attention: bool,
401
        num_sms: int,
402
        dcp_world_size: int,
403
404
405
    ) -> bool:
        return False

406

407
408
@functools.lru_cache
def get_kv_cache_layout():
409
    # Format specified by the code.
410
    global _KV_CACHE_LAYOUT_OVERRIDE
411
412
413

    if _KV_CACHE_LAYOUT_OVERRIDE is not None:
        cache_layout = _KV_CACHE_LAYOUT_OVERRIDE
414
415
416
417
418
        logger.info_once(
            "`_KV_CACHE_LAYOUT_OVERRIDE` variable detected. "
            "Setting KV cache layout to %s.",
            cache_layout,
        )
419
420
421
        return cache_layout

    # Format specified by the user.
422
    cache_layout = envs.VLLM_KV_CACHE_LAYOUT
423
    # When neither the user nor the override specified a layout, get default
424
425
426
    if cache_layout is None:
        cache_layout = get_kv_connector_cache_layout()
    else:
427
        assert is_valid_kv_cache_layout(cache_layout)
428
429
430
431
432
        logger.info_once(
            "`VLLM_KV_CACHE_LAYOUT` environment variable "
            "detected. Setting KV cache layout to %s.",
            cache_layout,
        )
433
    return cache_layout
434
435


436
def set_kv_cache_layout(cache_layout: KVCacheLayoutType):
437
438
439
440
    global _KV_CACHE_LAYOUT_OVERRIDE
    _KV_CACHE_LAYOUT_OVERRIDE = cache_layout


441
442
443
444
@dataclass
class PerLayerParameters:
    """
    Currently, FlashInfer backend only support models in which all layers share
445
446
447
    the same values for the following hyperparameters. Should not be used for
    trtllm-gen backend since it supports different values for the following
    hyperparameters.
448
449
450
    """

    window_left: int
451
    logits_soft_cap: float | None
452
    sm_scale: float
453
    has_sinks: bool = False
454
    # has same params for all layers
455
456
    has_same_window_lefts: bool | None = field(default=None, compare=False)
    has_same_all_params: bool | None = field(default=None, compare=False)
457
458
459


def get_per_layer_parameters(
460
461
    vllm_config: VllmConfig, layer_names: list[str], cls_: type["AttentionImpl"]
) -> dict[str, PerLayerParameters]:
462
    """
463
    Scan layers in `layer_names` and determine some hyperparameters
464
465
466
    to use during `plan`.
    """

467
    layers = get_layers_from_vllm_config(vllm_config, AttentionLayerBase, layer_names)
468
469
470
471
472
473
474
475
476
477
478
    per_layer_params: dict[str, PerLayerParameters] = {}

    for key, layer in layers.items():
        impl = layer.impl
        assert isinstance(impl, cls_)

        # Infer hyperparameters from the attention layer
        window_size = getattr(impl, "sliding_window", None)
        window_left = window_size[0] if window_size is not None else -1
        logits_soft_cap = getattr(impl, "logits_soft_cap", None)
        sm_scale = impl.scale
479
        has_sinks = getattr(impl, "sinks", None) is not None
480

481
482
483
        per_layer_params[key] = PerLayerParameters(
            window_left, logits_soft_cap, sm_scale, has_sinks
        )
484
485
486
487
488

    return per_layer_params


def infer_global_hyperparameters(
489
490
    per_layer_params: dict[str, PerLayerParameters],
) -> PerLayerParameters:
491
    """
492
    Currently, FlashInfer backend other than trtllm-gen
493
    only support models in which all layers share
494
495
496
497
498
499
500
501
502
503
504
505
506
    the same values for the following hyperparameters:
    - `window_left`
    - `logits_soft_cap`
    - `sm_scale`

    So this function asserts that all layers share the same values for these
    hyperparameters and returns the global values.
    """

    assert len(per_layer_params) > 0, "No attention layers found in the model."

    param_sets = list(per_layer_params.values())
    global_params = param_sets[0]
507

508
509
510
511
512
513
    global_params.has_same_window_lefts = all(
        params.window_left == global_params.window_left for params in param_sets
    )
    global_params.has_same_all_params = all(
        params == global_params for params in param_sets
    )
514
515
516
517

    return global_params


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
#
# Take in `query_start_loc_np` and `seq_lens_np` and break the sequences into
# local attention blocks, where each block is passed to the attention kernel
# as an independent local ("virtual") batch item.
#
# For example, if are performing a chunked prefill a batch of 3 sequences:
#   q_seqlens  = [4, 10, 5]
#   kv_seqlens = [6, 17, 9]
# Then normally for regular attention we would compute with an attention mask
#  for batch idx 0 (q_seqlens = 4, kv_seqlens = 6) like:
#   batch idx: 0 (q_seqlens = 4, kv_seqlens = 6)
#        k_toks >   0 1 2 3 4 5
#        q_toks v  _____________
#               0 | 1 1 1
#               1 | 1 1 1 1
#               2 | 1 1 1 1 1
#               3 | 1 1 1 1 1 1
#
# for local attention (with attn_chunk_size = 4) we would compute with an
#  attention mask like:
#   batch idx: 0  (q_seqlens = 4, kv_seqlens = 6, attn_chunk_size = 4)
#        k_toks >   0 1 2 3 4 5
#        q_toks v  _____________
#               0 | 1 1 1
#               1 | 1 1 1 1
#               2 |         1
#               3 |         1 1
#
# We can simulate this mask using standard flash-attention by breaking the
#  sequences into local ("virtual") batches, where each local batch item is a
#  local attention block, so in this case batch idx 0 would be broken up into:
#
#   local-batch idx: 0 (q_seqlens = 2, kv_seqlens = 4)  (batch 0)
#        k_toks >   0 1 2 3
#        q_toks v  _____________
#               0 | 1 1 1
#               1 | 1 1 1 1
#   local-batch idx: 1 (q_seqlens = 2, kv_seqlens = 2) (batch 0)
#        k_toks >   4 5
#        q_toks v  _____________
#               2 | 1
#               3 | 1 1
#
# e.g. if we have:
#   attn_chunk_size = 4
#   query_start_loc_np = [0, 4, 14, 19] (q_seqlens = [4, 10, 5])
# Then this function would return:
#                           __b0__  ______b1______  __b2__ < orig batch indices
#   q_seqlens_local    = [   2,  2,  1,  4,  4,  1,  4,  1]
#   cu_seqlens_q_local = [0, 4,  6, 10, 14, 18, 19, 23, 24]
#   seqlens_k_local    = [   4,  2,  4,  4,  4,  1,  4,  1]
#   block_table_local  : shape[local_virtual_batches, pages_per_local_batch]
def make_local_attention_virtual_batches(
    attn_chunk_size: int,
572
    common_attn_metadata: CommonAttentionMetadata,
573
    block_size: int = 0,
574
575
576
577
578
579
) -> CommonAttentionMetadata:
    query_start_loc_np = common_attn_metadata.query_start_loc_cpu.numpy()
    seq_lens_np = common_attn_metadata.seq_lens_cpu.numpy()
    block_table = common_attn_metadata.block_table_tensor
    device = common_attn_metadata.query_start_loc.device

580
581
582
583
584
585
586
587
588
589
590
591
592
593
594
    q_seqlens = query_start_loc_np[1:] - query_start_loc_np[:-1]
    actual_batch_size = seq_lens_np.shape[0]

    # Handle if we are starting in the middle of a local attention block,
    #  we assume q_seqlens > 0 (for all elements), for each batch idx we compute
    #  the number of tokens that are not in the first local attention block and
    #  then we can simply use a cdiv for the rest.
    # For example if we have:
    #   attn_chunk_size = 4
    #   q_seqlens = [4, 10, 5]
    #   k_seqlens = [6, 17, 9]
    # Then we would get:
    #   new_tokens_in_first_block = [2, 1, 4]
    #   local_blocks = [2, 4, 2]
    q_tokens_in_first_block = np.minimum(
595
596
        attn_chunk_size - ((seq_lens_np - q_seqlens) % attn_chunk_size), q_seqlens
    ).astype(np.int32)
597
    tokens_in_last_block = attn_chunk_size + (seq_lens_np % -attn_chunk_size)
598
    local_blocks = 1 + cdiv(q_seqlens - q_tokens_in_first_block, attn_chunk_size)
599
600
601
602
603
604
605
606
607
608
609
610
611
612
613
614
615
616
617
618

    # Once we know the number of local blocks we can compute the request spans
    #  for each batch idx, we can figure out the number of "virtual" requests we
    #  have to make,
    # For the above example we would get:
    #   seqlens_q_local = [2, 2, 1, 4, 4, 1, 4, 1]
    #
    # First Get batched arange. (E.g., [2, 4, 2] -> [0, 1, 0, 1, 2, 3, 0, 1])
    #   (TODO: max a utility to share this code with _prepare_inputs)
    # arange step 1. [2, 4, 2] -> [2, 6, 8]
    cu_num_blocks = np.cumsum(local_blocks)
    virtual_batches = cu_num_blocks[-1]
    # arange step 2. [2, 6, 8] -> [0, 0, 2, 2, 2, 2, 6, 6]
    block_offsets = np.repeat(cu_num_blocks - local_blocks, local_blocks)
    # arange step 3. [0, 1, 0, 1, 2, 3, 0, 1]
    arange = np.arange(virtual_batches, dtype=np.int32) - block_offsets
    # also compute reverse arange (i.e. [1, 0, 3, 2, 1, 0, 1, 0])
    rarange = np.repeat(local_blocks, local_blocks) - arange - 1
    # Then we can compute the seqlens_q_local, handling the fact that the
    #  first and last blocks could be partial
619
    seqlens_q_local = np.repeat(q_seqlens - q_tokens_in_first_block, local_blocks)
620
621
622
623
    # set the first block since this may be a partial block
    seqlens_q_local[arange == 0] = q_tokens_in_first_block
    # set the remaining blocks
    seqlens_q_local[arange > 0] = np.minimum(
624
625
        seqlens_q_local - attn_chunk_size * (arange - 1), attn_chunk_size
    )[arange > 0]
626
627

    # convert from q_seqlens to cu_seqlens_q
628
629
630
    cu_seqlens_q_local = np.empty(virtual_batches + 1, dtype=np.int32)
    np.cumsum(seqlens_q_local, out=cu_seqlens_q_local[1:])
    cu_seqlens_q_local[0] = 0
631
632
633
634
635
636

    # compute the seqlens_k_local,
    #  basically a full local attention block for all but the last block in each
    #  batch
    # For our example this will be:
    #   seqlens_k_local = [4, 2, 4, 4, 4, 1, 4, 1]
637
    seqlens_k_local = np.full(cu_num_blocks[-1], attn_chunk_size, dtype=np.int32)
638
    seqlens_k_local[cu_num_blocks - 1] = tokens_in_last_block
639
    num_computed_tokens_local = seqlens_k_local - seqlens_q_local
640

641
642
643
    k_seqstarts_absolute = np.repeat(seq_lens_np, local_blocks) - (
        rarange * attn_chunk_size + np.repeat(tokens_in_last_block, local_blocks)
    )
644
645
646
647
    # For the example the local attention blocks start at:
    #                           _b0_  _____b1_____  _b2_
    #   k_seqstarts_absolute = [0, 4, 4, 8, 12, 16, 4, 8]
    block_starts = k_seqstarts_absolute // block_size
648
649
650
    assert attn_chunk_size % block_size == 0, (
        f"attn_chunk_size {attn_chunk_size} is not divisible by block_size {block_size}"
    )
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
    pages_per_local_batch = attn_chunk_size // block_size

    # Create a block_table for the local attention blocks
    # For out example if we have a block-table like (assuming block_size=2):
    #   block_table = [
    #     [ 0,  1,  2,  3,  4,  5,  6,  7,  8,  9],  < batch 0
    #     [10, 11, 12, 13, 14, 15, 16, 17, 18, 19],  < batch 1
    #     [20, 21, 22, 23, 24, 25, 26, 27, 28, 29],  < batch 2
    #   ]
    # Then for the local batches we would want a block-table like
    #   block_table_local = [
    #     [  0,  1 ], < local-batch 0, (batch 0, starting from k[0])
    #     [  2,  3 ], < local-batch 1, (batch 0, starting from k[4])
    #     [ 12, 13 ], < local-batch 2, (batch 1, starting from k[4])
    #     [ 14, 15 ], < local-batch 3, (batch 1, starting from k[8])
    #     [ 16, 17 ], < local-batch 4, (batch 1, starting from k[12])
    #     [ 18, 19 ], < local-batch 5, (batch 1, starting from k[16])
    #     [ 22, 23 ], < local-batch 6, (batch 2, starting from k[4])
    #     [ 24, 25 ], < local-batch 7, (batch 2, starting from k[8])
    #   ]
671
672
673
674
675
676
677
678
    block_indices = block_starts[:, None] + np.arange(
        pages_per_local_batch, dtype=np.int32
    )
    block_indices = block_indices.reshape(-1).clip(max=block_table.shape[1] - 1)
    batch_indices = np.repeat(
        np.arange(actual_batch_size, dtype=np.int32),
        local_blocks * pages_per_local_batch,
    )
679
680
681
682
683
684
685

    # NOTE: https://github.com/pytorch/pytorch/pull/160256 causes performance
    # regression when using numpy arrays (batch and block indices) to index into
    # torch tensor (block_table). As a workaround, convert numpy arrays to torch
    # tensor first, which recovers perf.
    batch_indices_torch = torch.from_numpy(batch_indices)
    block_indices_torch = torch.from_numpy(block_indices)
686
687
688
    block_table_local = block_table[batch_indices_torch, block_indices_torch].view(
        virtual_batches, -1
    )
689

690
691
    query_start_loc_cpu = torch.from_numpy(cu_seqlens_q_local)
    seq_lens_cpu = torch.from_numpy(seqlens_k_local)
692
    max_seq_len = int(seq_lens_cpu.max())
693
694
695

    return CommonAttentionMetadata(
        query_start_loc_cpu=query_start_loc_cpu,
696
        query_start_loc=query_start_loc_cpu.to(device=device, non_blocking=True),
697
698
699
700
701
702
        seq_lens_cpu=seq_lens_cpu,
        seq_lens=seq_lens_cpu.to(device=device, non_blocking=True),
        num_computed_tokens_cpu=torch.from_numpy(num_computed_tokens_local),
        num_reqs=len(seq_lens_cpu),
        num_actual_tokens=common_attn_metadata.num_actual_tokens,
        max_query_len=seqlens_q_local.max(),
703
        max_seq_len=max_seq_len,
704
705
        block_table_tensor=block_table_local,
        slot_mapping=common_attn_metadata.slot_mapping,
706
        causal=True,
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
def make_kv_sharing_fast_prefill_common_attn_metadata(
    common_attn_metadata: CommonAttentionMetadata,
) -> CommonAttentionMetadata:
    if common_attn_metadata.max_query_len == 1:
        # All requests are decode (assume 1 token for now)
        # Skip computing fast prefill path
        return common_attn_metadata

    assert common_attn_metadata.logits_indices_padded is not None
    assert common_attn_metadata.num_logits_indices is not None

    logits_indices_padded = common_attn_metadata.logits_indices_padded
    num_logits_indices = common_attn_metadata.num_logits_indices
    # Get rid of CUDAGraph padding, if any
    logits_indices = logits_indices_padded[:num_logits_indices]
    num_reqs = common_attn_metadata.num_reqs
    query_start_loc = common_attn_metadata.query_start_loc
    seq_lens = common_attn_metadata.seq_lens
    # Example inputs
    # num_reqs: 3
    # generation_indices:  [14, 18, 19, 27]
    # query_start_loc: [0, 15, 20, 28]
    # seq_lens:        [41, 31, 40]

    # Find how many decode indices belong to each request
    # request_ids: [0, 1, 1, 2]
736
    request_ids = torch.bucketize(logits_indices, query_start_loc[1:], right=True)
737
738
739
740
741
742
743

    # Figure out how many tokens are in each request
    # num_decode_tokens: [1, 2, 1]
    num_decode_tokens = torch.bincount(request_ids, minlength=num_reqs)

    # Calculate new query_start_loc with tokens in generation_indices
    # decode_query_start_loc: [0, 1, 3, 4]
744
745
746
    decode_query_start_loc = torch.empty(
        num_reqs + 1, device=query_start_loc.device, dtype=query_start_loc.dtype
    )
747
748
749
750
751
752
753
754

    decode_query_start_loc[0] = 0
    decode_query_start_loc[1:] = torch.cumsum(num_decode_tokens, dim=0)
    decode_max_query_len = int(num_decode_tokens.max().item())
    total_num_decode_tokens = int(num_decode_tokens.sum().item())

    common_attn_metadata = CommonAttentionMetadata(
        query_start_loc=decode_query_start_loc,
755
        query_start_loc_cpu=decode_query_start_loc.to("cpu", non_blocking=True),
756
757
758
759
760
761
762
763
764
765
766
767
        seq_lens=seq_lens,
        seq_lens_cpu=seq_lens.to("cpu", non_blocking=True),
        num_computed_tokens_cpu=common_attn_metadata.num_computed_tokens_cpu,
        num_reqs=num_reqs,
        num_actual_tokens=total_num_decode_tokens,
        max_query_len=decode_max_query_len,
        max_seq_len=common_attn_metadata.max_seq_len,
        block_table_tensor=common_attn_metadata.block_table_tensor,
        slot_mapping=common_attn_metadata.slot_mapping,
        causal=True,
    )
    return common_attn_metadata
768
769
770


def subclass_attention_backend(
771
772
773
    name_prefix: str,
    attention_backend_cls: type[AttentionBackend],
    builder_cls: type[AttentionMetadataBuilder[M]],
774
775
776
777
778
779
) -> type[AttentionBackend]:
    """
    Return a new subclass where `get_builder_cls` returns `builder_cls`.
    """
    name: str = name_prefix + attention_backend_cls.__name__  # type: ignore

780
781
782
    return type(
        name, (attention_backend_cls,), {"get_builder_cls": lambda: builder_cls}
    )
783
784


785
786
787
788
789
790
791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
821
822
823
824
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
841
842
843
844
845
846
847
848
849
def split_decodes_prefills_and_extends(
    common_attn_metadata: CommonAttentionMetadata,
    decode_threshold: int = 1,
) -> tuple[int, int, int, int, int, int]:
    """
    Assuming a reordered batch, finds the boundary between prefill and decode
    requests.

    Args:
        common_attn_metadata: CommonAttentionMetadata object containing the
            batch metadata.
        decode_threshold: The maximum query length to be considered a decode.

    Returns:
        num_decodes: The number of decode requests.
        num_extends: The number of extend requests.
        num_prefills: The number of prefill requests.
        num_decode_tokens: The number of tokens in the decode requests.
        num_extend_tokens: The number of tokens in the extend requests.
        num_prefill_tokens: The number of tokens in the prefill requests.
    """
    max_query_len = common_attn_metadata.max_query_len
    num_reqs = common_attn_metadata.num_reqs
    num_tokens = common_attn_metadata.num_actual_tokens
    query_start_loc = common_attn_metadata.query_start_loc_cpu
    seq_lens = common_attn_metadata.seq_lens_cpu

    if max_query_len <= decode_threshold:
        return num_reqs, 0, 0, num_tokens, 0, 0

    query_lens = query_start_loc[1:] - query_start_loc[:-1]
    is_prefill_or_extend = query_lens > decode_threshold
    is_prefill = (seq_lens == query_lens) & is_prefill_or_extend
    first_extend = is_prefill_or_extend.int().argmax(dim=-1).item()
    first_prefill = is_prefill.int().argmax(dim=-1).item()
    num_decodes = first_extend
    num_decode_tokens = query_start_loc[first_extend].item()
    if not torch.any(is_prefill_or_extend):
        return (num_decodes, 0, 0, num_decode_tokens, 0, 0)

    num_prefills_or_extends = num_reqs - num_decodes
    num_prefill_or_extend_tokens = num_tokens - num_decode_tokens
    if not torch.any(is_prefill):
        return (
            num_decodes,
            num_prefills_or_extends,
            0,
            num_decode_tokens,
            num_prefill_or_extend_tokens,
            0,
        )

    num_extends = first_prefill - num_decodes
    num_prefills = num_reqs - first_prefill

    num_prefill_tokens = num_tokens - query_start_loc[first_prefill]
    num_extend_tokens = num_prefill_or_extend_tokens - num_prefill_tokens
    return (
        num_decodes,
        num_extends,
        num_prefills,
        num_decode_tokens,
        num_extend_tokens,
        num_prefill_tokens,
    )
850
851


852
def split_decodes_and_prefills(
853
854
855
856
    common_attn_metadata: CommonAttentionMetadata,
    decode_threshold: int = 1,
    require_uniform: bool = False,
) -> tuple[int, int, int, int]:
857
858
859
860
861
862
863
864
    """
    Assuming a reordered batch, finds the boundary between prefill and decode
    requests.

    Args:
        common_attn_metadata: CommonAttentionMetadata object containing the
            batch metadata.
        decode_threshold: The maximum query length to be considered a decode.
865
866
867
        require_uniform: If True, requires that all decode requests have the
            same query length. When set, some queries may be considered prefills
            even if they are <= decode_threshold, in order to ensure uniformity.
868
869
870
871
872
873
874
875
876
877
878
879

    Returns:
        num_decodes: The number of decode requests.
        num_prefills: The number of prefill requests.
        num_decode_tokens: The number of tokens in the decode requests.
        num_prefill_tokens: The number of tokens in the prefill requests.
    """
    max_query_len = common_attn_metadata.max_query_len
    num_reqs = common_attn_metadata.num_reqs
    num_tokens = common_attn_metadata.num_actual_tokens
    query_start_loc = common_attn_metadata.query_start_loc_cpu

880
881
882
    if max_query_len <= decode_threshold and (
        not require_uniform or decode_threshold <= 1
    ):
883
884
885
        return num_reqs, 0, num_tokens, 0

    query_lens = query_start_loc[1:] - query_start_loc[:-1]
886
887
888
889
890
891
892
    if query_lens[0].item() > decode_threshold:
        # first request is not decode, so no decode requests
        return 0, num_reqs, 0, num_tokens

    if require_uniform:
        is_prefill = query_lens != query_lens[0]
    else:
893
894
895
        # 0-query len indicates a padded request; leave this at the back
        # of the batch with the prefills
        is_prefill = (query_lens > decode_threshold) | (query_lens == 0)
896

897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
    if not torch.any(is_prefill):
        return num_reqs, 0, num_tokens, 0

    first_prefill = is_prefill.int().argmax(dim=-1).item()
    assert torch.all(query_lens[:first_prefill] <= decode_threshold)
    num_decodes = first_prefill
    num_prefills = num_reqs - num_decodes
    num_decode_tokens = query_start_loc[first_prefill].item()
    num_prefill_tokens = num_tokens - num_decode_tokens
    return (num_decodes, num_prefills, num_decode_tokens, num_prefill_tokens)


def reorder_batch_to_split_decodes_and_prefills(
    input_batch: "InputBatch",
    scheduler_output: "SchedulerOutput",
    decode_threshold: int = 1,
) -> bool:
    """
    Reorders the batch to split into prefill and decode requests; places all
    requests with <= decode_threshold tokens at the front of the batch.
917

918
919
920
    Returns:
        True if the batch was modified, False otherwise.
    """
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
    # We now want to reorder the batch into decode → extend → prefill order
    # where:
    #   decode: request with num_scheduled_tokens <= decode_threshold
    #   extend: non-decode request with existing context
    #   prefill: non-decode request with no existing context
    # NOTE for now we loosely use "decode" to mean requests where attention is
    #  likely memory-bound and "prefill" to mean requests where attention is
    #  likely compute-bound,
    num_reqs = len(input_batch.req_ids)
    num_scheduled_tokens = [
        scheduler_output.num_scheduled_tokens[id] for id in input_batch.req_ids
    ]
    num_scheduled_tokens_np = np.array(num_scheduled_tokens)
    num_computed_tokens_np = input_batch.num_computed_tokens_cpu[:num_reqs]

    is_decode = num_scheduled_tokens_np <= decode_threshold
937
938
    is_extend = (~is_decode) & (num_computed_tokens_np > 0)
    is_prefill = (~is_decode) & (num_computed_tokens_np == 0)
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957

    # Desired order: decode → extend → prefill
    req_regions = np.zeros(is_decode.shape, dtype=np.int32)  # 0 = decode by default
    req_regions[is_extend] = 1
    req_regions[is_prefill] = 2

    num_decodes = int(is_decode.sum())
    num_extends = int(is_extend.sum())

    target_regions = np.zeros(num_reqs, dtype=np.int32)
    target_regions[num_decodes : num_decodes + num_extends] = 1
    target_regions[num_decodes + num_extends :] = 2

    needs_swap = req_regions != target_regions

    if not needs_swap.any():
        return False

    # Extract indices that need swapping and sort by target region
958
    orig_indices = np.where(needs_swap)[0]
959
    sorted_order = np.argsort(req_regions[needs_swap], kind="stable")
960
    src_indices = orig_indices[sorted_order]
961

962
    src_dest_map = {int(src): int(dst) for src, dst in zip(src_indices, orig_indices)}
963
964
965
966
967
968
969
970
971
972
973

    for src in src_dest_map:
        dst = src_dest_map[src]
        while src != dst:
            input_batch.swap_states(src, dst)
            # Mark dst as done by updating its destination to itself
            next_dst = src_dest_map.get(dst, dst)
            src_dest_map[dst] = dst
            dst = next_dst

    return True
974
975


976
def reshape_query_for_spec_decode(query: torch.Tensor, batch_size: int) -> torch.Tensor:
977
978
979
980
981
982
983
984
985
    """
    Reshapes the query tensor for the specified batch size, so that
    it has shape (batch_size, seq_len, num_heads, head_dim).
    """
    assert query.dim() == 3, f"query must be 3D, got {query.dim()}D"
    total_tokens = query.shape[0]
    num_heads = query.shape[1]
    head_dim = query.shape[2]
    assert total_tokens % batch_size == 0, (
986
987
        f"{total_tokens=} is not divisible by {batch_size=}"
    )
988
989
990
991
    seq_len = total_tokens // batch_size
    return query.view(batch_size, seq_len, num_heads, head_dim)


992
def reshape_attn_output_for_spec_decode(attn_output: torch.Tensor) -> torch.Tensor:
993
994
995
996
997
998
999
    """
    Reshapes the attention output tensor, so that
    the batch_size and seq_len dimensions are combined.
    """
    if attn_output.dim() == 3:
        # Already in the correct shape
        return attn_output
1000
    assert attn_output.dim() == 4, f"attn_output must be 4D, got {attn_output.dim()}D"
1001
    total_tokens = attn_output.shape[0] * attn_output.shape[1]
1002
    return attn_output.view(total_tokens, attn_output.shape[2], attn_output.shape[3])
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
1013


def subclass_attention_metadata(
    name_prefix: str,
    metadata_cls: Any,
    fields: list[tuple[str, Any, Any]],
) -> Any:
    """
    Return a new subclass of `metadata_cls` with additional fields
    """
    name: str = name_prefix + metadata_cls.__name__  # type: ignore
1014
    Wrapped = make_dataclass(name, fields, bases=(metadata_cls,))
1015
1016
1017
    return Wrapped


1018
1019
@runtime_checkable
class KVSharingFastPrefillMetadata(Protocol):
1020
1021
    logits_indices_padded: torch.Tensor | None = None
    num_logits_indices: int | None = None
1022
1023
1024
1025
1026
1027
1028
1029
1030


def create_fast_prefill_custom_backend(
    prefix: str,
    underlying_attn_backend: AttentionBackend,
) -> type[AttentionBackend]:
    underlying_builder = underlying_attn_backend.get_builder_cls()

    class FastPrefillAttentionBuilder(underlying_builder):  # type: ignore
1031
1032
1033
1034
1035
1036
1037
1038
1039
1040
1041
1042
        def build(
            self,
            common_prefix_len: int,
            common_attn_metadata: CommonAttentionMetadata,
            fast_build: bool = False,
        ) -> AttentionMetadata:
            new_common_attn_metadata = (
                make_kv_sharing_fast_prefill_common_attn_metadata(common_attn_metadata)
            )
            metadata = super().build(
                common_prefix_len, new_common_attn_metadata, fast_build
            )
1043
1044

            class KVSharingFastPrefillAttentionMetadata(
1045
1046
1047
                metadata.__class__,  #  type: ignore
                KVSharingFastPrefillMetadata,
            ):
1048
1049
                def __init__(self, metadata, common_attn_metadata):
                    # Shallow copy all fields in metadata cls
1050
1051
                    for _field in fields(metadata.__class__):
                        setattr(self, _field.name, getattr(metadata, _field.name))
1052

1053
                    self.logits_indices_padded = (
1054
                        common_attn_metadata.logits_indices_padded
1055
1056
                    )
                    self.num_logits_indices = common_attn_metadata.num_logits_indices
1057

1058
            return KVSharingFastPrefillAttentionMetadata(metadata, common_attn_metadata)
1059
1060
1061
1062

    attn_backend = subclass_attention_backend(
        name_prefix=prefix,
        attention_backend_cls=underlying_attn_backend,
1063
1064
        builder_cls=FastPrefillAttentionBuilder,
    )
1065
1066

    return attn_backend
1067
1068
1069
1070


def compute_causal_conv1d_metadata(query_start_loc_p: torch.Tensor):
    # Needed for causal_conv1d
1071
    seqlens = query_start_loc_p.diff().to("cpu")
1072
1073
1074
    nums_dict = {}  # type: ignore
    batch_ptr = None
    token_chunk_offset_ptr = None
1075
    device = query_start_loc_p.device
1076
1077
1078
    for BLOCK_M in [8]:  # cover all BLOCK_M values
        nums = -(-seqlens // BLOCK_M)
        nums_dict[BLOCK_M] = {}
1079
1080
        nums_dict[BLOCK_M]["nums"] = nums
        nums_dict[BLOCK_M]["tot"] = nums.sum().item()
1081
        mlist = torch.from_numpy(np.repeat(np.arange(len(nums)), nums))
1082
1083
1084
        nums_dict[BLOCK_M]["mlist"] = mlist
        mlist_len = len(nums_dict[BLOCK_M]["mlist"])
        nums_dict[BLOCK_M]["mlist_len"] = mlist_len
1085
1086
1087
1088
1089
        MAX_NUM_PROGRAMS = max(1024, mlist_len) * 2
        offsetlist = []  # type: ignore
        for idx, num in enumerate(nums):
            offsetlist.extend(range(num))
        offsetlist = torch.tensor(offsetlist, dtype=torch.int32)
1090
        nums_dict[BLOCK_M]["offsetlist"] = offsetlist
1091
1092
1093

        if batch_ptr is None:
            # Update default value after class definition
1094
1095
1096
1097
1098
1099
            batch_ptr = torch.full(
                (MAX_NUM_PROGRAMS,), PAD_SLOT_ID, dtype=torch.int32, device=device
            )
            token_chunk_offset_ptr = torch.full(
                (MAX_NUM_PROGRAMS,), PAD_SLOT_ID, dtype=torch.int32, device=device
            )
1100
1101
1102
1103
        else:
            if batch_ptr.nelement() < MAX_NUM_PROGRAMS:
                batch_ptr.resize_(MAX_NUM_PROGRAMS).fill_(PAD_SLOT_ID)
                token_chunk_offset_ptr.resize_(  # type: ignore
1104
1105
                    MAX_NUM_PROGRAMS
                ).fill_(PAD_SLOT_ID)
1106
1107
1108

        batch_ptr[0:mlist_len].copy_(mlist)
        token_chunk_offset_ptr[  # type: ignore
1109
1110
1111
1112
            0:mlist_len
        ].copy_(offsetlist)
        nums_dict[BLOCK_M]["batch_ptr"] = batch_ptr
        nums_dict[BLOCK_M]["token_chunk_offset_ptr"] = token_chunk_offset_ptr  # type: ignore
1113
1114

    return nums_dict, batch_ptr, token_chunk_offset_ptr
1115
1116
1117
1118


def get_dcp_local_seq_lens(
    seq_lens: torch.Tensor,
1119
    dcp_size: int = 1,
1120
    dcp_rank: int | None = None,
1121
    cp_kv_cache_interleave_size: int = 1,
1122
1123
1124
1125
1126
1127
1128
1129
) -> torch.Tensor:
    """While using dcp, kv_cache size stored on each rank may be different,
    use this function to calculate split decode seq_lens of each dcp rank.
    Only consider dcp now, we can extend the case of cp based on this.
    """
    num_requests = seq_lens.size(0)
    if dcp_rank is None:
        rank_offsets = (
1130
            torch.arange(dcp_size, dtype=torch.int32, device=seq_lens.device)
1131
1132
1133
1134
            .unsqueeze(0)
            .repeat(num_requests, 1)
        )
    else:
1135
1136
1137
        rank_offsets = torch.tensor(
            [[dcp_rank]], dtype=torch.int32, device=seq_lens.device
        )
1138
1139
1140
1141
1142
    seq_lens_tiled = (
        seq_lens.to(torch.int32).unsqueeze(-1).repeat(1, rank_offsets.shape[1])
    )
    base = (
        seq_lens_tiled
1143
1144
1145
        // cp_kv_cache_interleave_size
        // dcp_size
        * cp_kv_cache_interleave_size
1146
    )
1147
    remainder = seq_lens_tiled - base * dcp_size
1148
    remainder = torch.clip(
1149
        remainder - rank_offsets * cp_kv_cache_interleave_size,
1150
        0,
1151
        cp_kv_cache_interleave_size,
1152
1153
1154
    )
    dcp_local_seq_lens = base + remainder
    return dcp_local_seq_lens.squeeze(1)