spec_decode_worker.py 70.6 KB
Newer Older
1
2
# SPDX-License-Identifier: Apache-2.0

3
import os
4
import copy
5
from collections import defaultdict
6
from functools import cached_property
7
from typing import Any, Dict, List, Optional, Set, Tuple, Type
8
9

import torch
10
import torch.nn as nn
11

12
from vllm.config import ParallelConfig, SpeculativeConfig, VllmConfig
王敏's avatar
王敏 committed
13
14
from vllm.distributed.communication_op import broadcast_tensor_dict, get_tp_group
from vllm.distributed.parallel_state import model_parallel_is_initialized
15
from vllm.logger import init_logger
16
from vllm.model_executor.layers.rejection_sampler import RejectionSampler
17
from vllm.model_executor.layers.sampler import SamplerOutput
18
from vllm.model_executor.layers.spec_decode_base_sampler import (
19
    SpecDecodeBaseSampler, SpecDecodeStochasticBaseSampler)
20
21
from vllm.model_executor.layers.typical_acceptance_sampler import (
    TypicalAcceptanceSampler)
22
from vllm.platforms import current_platform
23
24
from vllm.sequence import (VLLM_INVALID_TOKEN_ID,
                           CompletionSequenceGroupOutput, ExecuteModelRequest,
25
                           HiddenStates, SequenceGroupMetadata,
26
                           get_all_seq_ids_and_request_ids, Logits)
zhuwenwen's avatar
zhuwenwen committed
27
from vllm.spec_decode.batch_expansion import BatchExpansionTreeStyleScorer
28
from vllm.spec_decode.batch_expansion import BatchExpansionTop1Scorer
29
30
31
32

if current_platform.is_cuda_alike():
    from vllm.spec_decode.draft_model_runner import TP1DraftModelRunner

33
34
from vllm.spec_decode.interfaces import (SpeculativeProposals,
                                         SpeculativeScorer, SpeculativeScores)
35
from vllm.spec_decode.medusa_worker import MedusaWorker
36
from vllm.spec_decode.metrics import AsyncMetricsCollector
37
from vllm.spec_decode.mlp_speculator_worker import MLPSpeculatorWorker
38
from vllm.spec_decode.mqa_scorer import MQAScorer
39
from vllm.spec_decode.multi_step_worker import MultiStepWorker
40
from vllm.spec_decode.ngram_worker import NGramWorker
41
from vllm.spec_decode.proposer_worker_base import ProposerWorkerBase
42
from vllm.spec_decode.smaller_tp_proposer_worker import SmallerTpProposerWorker
43
from vllm.spec_decode.target_model_runner import TargetModelRunner
44
45
from vllm.spec_decode.util import (Timer, create_logprobs_output,
                                   create_sequence_group_output,
46
                                   get_all_num_logprobs,
47
                                   get_sampled_token_logprobs, nvtx_range,
48
                                   split_batch_by_proposal_len)
49
50
from vllm.utils import resolve_obj_by_qualname
from vllm.worker.worker_base import LoraNotSupportedWorkerBase, WorkerBase
51

52
53
from vllm.worker.cache_engine import CacheEngine
from vllm.attention.ops.paged_attn import PagedAttention
王敏's avatar
王敏 committed
54
from vllm.spec_decode.proposer_worker_base import NonLLMProposerWorkerBase
55
56

logger = init_logger(__name__)
57
58


59
60
61
62
def create_spec_worker(*args, **kwargs) -> "SpecDecodeWorker":
    """Helper method that is the entrypoint for Executors which use
    WorkerWrapper. It constructs a SpecDecodeWorker from the speculative config.
    """
63
64
    vllm_config: VllmConfig = kwargs.get("vllm_config")
    speculative_config: SpeculativeConfig = vllm_config.speculative_config
65
66
    assert speculative_config is not None

67
68
69
70
    if vllm_config.parallel_config.pipeline_parallel_size > 1:
        raise NotImplementedError("Speculative decoding is currently "
                                  "incompatible with pipeline parallelism")

71
72
73
    draft_worker_kwargs = kwargs.copy()

    kwargs["model_runner_cls"] = TargetModelRunner
74
75
76
    target_worker_config = copy.deepcopy(vllm_config)
    target_worker_config.parallel_config.worker_cls =\
        target_worker_config.parallel_config.sd_worker_cls
77
78
79
    cls = resolve_obj_by_qualname(
        target_worker_config.parallel_config.worker_cls)
    target_worker = cls(*args, **kwargs)
80
81
82
83
    # Set the disable_logprobs variable in the TargetModelRunner instance
    # as per its value specified in the SpeculativeConfig.
    target_worker.model_runner.disable_logprobs =\
         speculative_config.disable_logprobs
84

85
86
    draft_worker_config = copy.deepcopy(vllm_config)
    draft_worker_config.model_config = speculative_config.draft_model_config
87
88
89
90
    # draft_worker_config.quant_config = VllmConfig._get_quantization_config(
    #     draft_worker_config.model_config,
    #     vllm_config.load_config,
    # )
91
92
    speculative_config.draft_parallel_config.worker_cls =\
        draft_worker_config.parallel_config.sd_worker_cls
93
94
95
    draft_worker_config.parallel_config = speculative_config.draft_parallel_config  # noqa
    # TODO allow draft-model specific load config.

96
97
    # Override draft-model specific worker args.
    draft_worker_kwargs.update(
98
        vllm_config=draft_worker_config,
99
100
101
102
103
104
105
        ngram_prompt_lookup_max=speculative_config.ngram_prompt_lookup_max,
        ngram_prompt_lookup_min=speculative_config.ngram_prompt_lookup_min,
    )

    spec_decode_worker = SpecDecodeWorker.create_worker(
        scorer_worker=target_worker,
        draft_worker_kwargs=draft_worker_kwargs,
106
        disable_mqa_scorer=speculative_config.speculative_disable_mqa_scorer,
107
108
        disable_by_batch_size=speculative_config.
        speculative_disable_by_batch_size,
109
110
111
112
113
        draft_token_acceptance_method=speculative_config.
        draft_token_acceptance_method,
        typical_acceptance_sampler_posterior_threshold=speculative_config.
        typical_acceptance_sampler_posterior_threshold,
        typical_acceptance_sampler_posterior_alpha=speculative_config.
114
        typical_acceptance_sampler_posterior_alpha,
115
        disable_logprobs=speculative_config.disable_logprobs,
王敏's avatar
王敏 committed
116
117
118
        disable_log_stats=speculative_config.disable_log_stats,
        num_speculative_tokens=speculative_config.num_speculative_tokens,
    )
119
120
121
122

    return spec_decode_worker


123
# Reminder: Please update docs/source/features/compatibility_matrix.md
124
# If the feature combo become valid
125
class SpecDecodeWorker(LoraNotSupportedWorkerBase):
126
127
128
129
130
131
132
133
    """Worker which implements speculative decoding.

    Speculative decoding reduces decoding per-token latency by using a proposal
    method, such as a small draft model, to speculate ahead of a larger LLM. The
    probabilities of the speculative tokens are then determined by the larger
    LLM, after which some verification routine determines which (if any) of the
    speculative tokens are accepted by the larger LLM.

134
    See https://github.com/vllm-project/vllm/pull/2188 and
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
    https://github.com/vllm-project/vllm/pull/3103 for more info.

    The current implementation has the following limitations:
    * Only draft-model proposal is implemented (contributions for more forms are
        welcome!).
    * Only top-1 proposal and scoring are implemented. Tree-attention is left as
        future work.
    * All sequences in a batch must have the same proposal length, or zero. This
        can be improved by having per-sequence speculation in the future.
    * The scoring forward pass is done without an MQA kernel, which is
        suboptimal especially as the batch size, proposal length, and sequence
        lengths grow. Contributions to add a MQA scoring are welcome once
        correctness tests pass.
        More info here https://docs.google.com/document/d/1T-JaS2T1NRfdP51qzqpyakoCXxSXTtORppiwaj5asxA/edit.
    """

151
    @classmethod
152
153
    def create_worker(
        cls,
154
        scorer_worker: WorkerBase,
155
        draft_worker_kwargs: Dict[str, Any],
156
        disable_mqa_scorer: bool,
157
        disable_by_batch_size: Optional[int],
158
159
160
        draft_token_acceptance_method: str,
        typical_acceptance_sampler_posterior_threshold: float,
        typical_acceptance_sampler_posterior_alpha: float,
161
        disable_logprobs: bool,
162
        disable_log_stats: bool,
王敏's avatar
王敏 committed
163
        num_speculative_tokens: int,
164
165
    ) -> "SpecDecodeWorker":

166
        allow_zero_draft_token_step = True
王敏's avatar
王敏 committed
167
        num_spec_prefill_steps = 1
168
169
170
171
        ngram_prompt_lookup_max = (
            draft_worker_kwargs.pop("ngram_prompt_lookup_max"))
        ngram_prompt_lookup_min = (
            draft_worker_kwargs.pop("ngram_prompt_lookup_min"))
172
173
174
        draft_model_config = draft_worker_kwargs["vllm_config"].model_config
        draft_parallel_config: ParallelConfig = draft_worker_kwargs[
            'vllm_config'].parallel_config
175
        if ngram_prompt_lookup_max > 0:
王敏's avatar
王敏 committed
176
177
178
            draft_parallel_config: ParallelConfig = draft_worker_kwargs[
                'parallel_config']
            assert draft_parallel_config.tensor_parallel_size == 1
179
180
            draft_worker_kwargs[
                "device_type"] = scorer_worker.device_config.device.type
181
182
183
184
            proposer_worker = NGramWorker(**draft_worker_kwargs)
            proposer_worker.set_ngram_window_size(ngram_prompt_lookup_min,
                                                  ngram_prompt_lookup_max)
        else:
185
186
187
            draft_tp = draft_parallel_config.tensor_parallel_size
            target_tp = scorer_worker.parallel_config.tensor_parallel_size

188
            if draft_model_config.hf_config.model_type == "mlp_speculator":
189
                proposer_worker = MLPSpeculatorWorker(**draft_worker_kwargs)
190
            elif draft_model_config.hf_config.model_type == "medusa":
191
                proposer_worker = MedusaWorker(**draft_worker_kwargs)
192
            else:
王敏's avatar
王敏 committed
193
194
                if draft_tp == 1 or draft_model_config.hf_config.model_type ==\
                    "deepseek_mtp":
195
196
197
                    if current_platform.is_cuda_alike():
                        draft_worker_kwargs[
                            "model_runner_cls"] = TP1DraftModelRunner
198
                else:
199
                    if draft_model_config.hf_config.model_type == "eagle":
200
                        raise NotImplementedError(
王敏's avatar
王敏 committed
201
202
                            f"{draft_model_config.hf_config.model_type} "
                            "does not support TP > 1 yet")
203

204
                    allow_zero_draft_token_step = False
205
                proposer_worker = MultiStepWorker(**draft_worker_kwargs)
王敏's avatar
王敏 committed
206
207
                if draft_model_config.hf_config.model_type == "deepseek_mtp":
                    num_spec_prefill_steps = num_speculative_tokens
208

209
210
            proposer_worker = SmallerTpProposerWorker.maybe_wrap_worker(
                proposer_worker, draft_tp, target_tp)
211

212
213
214
        logger.info("Configuring SpecDecodeWorker with proposer=%s",
                    type(proposer_worker))

215
216
        spec_decode_sampler: SpecDecodeBaseSampler = None
        if draft_token_acceptance_method == "rejection_sampler":
217
            spec_decode_sampler = RejectionSampler()
218
219
220
221
222
223
        elif draft_token_acceptance_method == "typical_acceptance_sampler":
            spec_decode_sampler = TypicalAcceptanceSampler(
                posterior_threshold=\
                    typical_acceptance_sampler_posterior_threshold,
                posterior_alpha=typical_acceptance_sampler_posterior_alpha,
            )
224
225
226
227
228
229
        logger.info(
            "[Speculative Decoding] Configuring"
            " SpecDecodeWorker with sampler=%s", type(spec_decode_sampler))

        if not disable_mqa_scorer:
            if scorer_worker.model_runner.attn_backend.get_name(
230
            ) != "FLASH_ATTN":
231
232
233
234
235
                disable_mqa_scorer = True
                logger.info(
                    "[Speculative Decoding] Disabling MQA scorer as the "
                    "MQA is only available with flash attn backend.")

236
237
            if draft_model_config and \
                draft_model_config.max_model_len < \
238
239
240
241
242
243
244
245
246
247
248
249
                    scorer_worker.model_config.max_model_len:
                disable_mqa_scorer = True
                logger.info(
                    "[Speculative Decoding] Disabling MQA scorer as the "
                    "draft model max_model_len is smaller than the target "
                    "model max_model_len.")

            if not scorer_worker.model_runner.model_config.enforce_eager:
                disable_mqa_scorer = True
                logger.info(
                    "[Speculative Decoding] Disabling MQA scorer as the "
                    "target model is not running in eager mode.")
250

251
252
253
        return SpecDecodeWorker(
            proposer_worker,
            scorer_worker,
254
            disable_mqa_scorer=disable_mqa_scorer,
255
            disable_logprobs=disable_logprobs,
256
            disable_log_stats=disable_log_stats,
257
258
            disable_by_batch_size=disable_by_batch_size,
            spec_decode_sampler=spec_decode_sampler,
王敏's avatar
王敏 committed
259
260
            allow_zero_draft_token_step=allow_zero_draft_token_step,
            num_spec_prefill_steps=num_spec_prefill_steps)
261

262
263
    def __init__(
        self,
264
        proposer_worker: ProposerWorkerBase,
265
        scorer_worker: WorkerBase,
266
        spec_decode_sampler: SpecDecodeBaseSampler,
267
        disable_mqa_scorer: bool = False,
268
269
        disable_logprobs: bool = False,
        disable_log_stats: bool = False,
270
        metrics_collector: Optional[AsyncMetricsCollector] = None,
271
        disable_by_batch_size: Optional[int] = None,
272
        allow_zero_draft_token_step: Optional[bool] = True,
王敏's avatar
王敏 committed
273
        num_spec_prefill_steps: int = 1,
274
275
276
277
278
279
280
281
282
283
    ):
        """
        Create a SpecDecodeWorker.

        Args:
            proposer_worker: A worker that can produce speculative tokens for
                sequences.
            scorer_worker: A worker that produces probabilities of speculative
                tokens according to some base model. Typically a vanilla vLLM
                Worker.
284
285
286
287
288
289
            spec_decode_sampler: A Torch module used to perform acceptance
                sampling of the draft tokens in the verification step of
                speculative decoding. Currently we support two different 
                types of sampler namely RejectionSampler and
                TypicalAcceptanceSampler. 'spec_decode_sampler' is either an
                instance of RejectionSampler or TypicalAcceptanceSampler.
290
291
            disable_mqa_scorer: If set to True, disable the MQA scorer and use
                the BatchExpansionTop1Scorer instead.
292
293
294
            disable_logprobs: If set to True, token log probabilities will
                not be output in both the draft worker and the target worker.
                If set to False, log probabilities will be output by both.
295
296
            disable_log_stats: If set to True, disable periodic printing of
                speculative stage times.
297
298
            disable_by_batch_size: If the batch size is larger than this,
                disable speculative decoding for new incoming requests.
299
300
            metrics_collector: Helper class for collecting metrics; can be set
                for testing purposes.
301
302
303
            allow_zero_draft_token_step: whether to allow a step where the draft
                model generates no draft token; should disallow when the tp of
                draft model is larger than 1 (TODO: #5814)
王敏's avatar
王敏 committed
304
305
306
307
            num_spec_prefill_steps: number of speculative prefill steps to run
                before the speculative decoding starts. This is only used when
                the draft model is a deepseek_mtp model that requires prefill
                kv cache separately for each MTP layer.
308
309
310
        """
        self.proposer_worker = proposer_worker
        self.scorer_worker = scorer_worker
311
312
313
        scorer_runner = getattr(self.scorer_worker, "model_runner", None)
        self.generators = scorer_runner.get_generators(
        ) if scorer_runner else None
314
        self.disable_by_batch_size = disable_by_batch_size or float("inf")
315
        self.spec_decode_sampler = spec_decode_sampler
316
        self._allow_zero_draft_token_step = allow_zero_draft_token_step
317
        self._metrics = AsyncMetricsCollector(
318
            self.spec_decode_sampler
319
        ) if metrics_collector is None else metrics_collector
320
321
322
323
324
325
326
327
328
        # Tracks the sequence IDs that received a bonus token ID in
        # their last forward pass. Needed only if KV cache is being
        # used for token generation such as in the case of MultiStepWorker.
        self._seq_with_bonus_token_in_last_step: Set[int] = set()
        # Tracks the currently active request ids and the sequence IDs
        # corresponding to them
        self._request_id_seq_id_mapping: Dict[str, Set[int]] = defaultdict(set)
        # Tracks if the proposer worker uses the KV cache or not.

329
330
        self.probs_dtype = self.spec_decode_sampler.probs_dtype
        self.token_id_dtype = self.spec_decode_sampler.token_id_dtype
331
        # Lazy initialization.
332
        self.scorer: BatchExpansionTop1Scorer
333
        self.disable_mqa_scorer = disable_mqa_scorer
334

335
336
337
        # Hidden states from target model to pass to proposer
        # in the subsequent step.
        self.previous_hidden_states: Optional[HiddenStates] = None
338
        self.previous_logits: Optional[Logits] = None
339
        self.kvcache_slot_to_be_moved: Optional[torch.Tensor] = None
340
        self._disable_logprobs = disable_logprobs
341
        self._disable_log_stats = disable_log_stats
王敏's avatar
王敏 committed
342
        self._num_spec_prefill_steps = num_spec_prefill_steps
343

344
        self.tree_decoding = (os.environ.get('VLLM_TREE_DECODING') == '1')
345

346
    def init_device(self) -> None:
347
348
349
350
        """Initialize both scorer and proposer models.
        """
        # The scorer worker model is initialized first in case the proposer
        # model has a smaller TP degree than the target worker.
351
352
        self.scorer_worker.init_device()
        self.proposer_worker.init_device()
353

354
355
356
357
        # NOTE(cade): load_model is not part of the WorkerBase interface.
        self.scorer_worker.load_model()
        self.proposer_worker.load_model()

358
        self._metrics.init_tensors(self.rank, device_type=self.device)
王敏's avatar
王敏 committed
359
360
361
362
363
364
        if model_parallel_is_initialized():
            self.spec_decode_sampler.init_tensors(get_tp_group().local_rank,
                                                  device_type=self.device)
        else:
            self.spec_decode_sampler.init_tensors(self.rank,
                                                  device_type=self.device)
zhuwenwen's avatar
zhuwenwen committed
365
        
366
367
368
369
370
371
372
373
374
        scorer_cls: Type[SpeculativeScorer]
        if self.disable_mqa_scorer:
            scorer_cls = BatchExpansionTop1Scorer
            logger.info("[Speculative Decoding] Use batch "
                        "expansion for scoring proposals.")
        else:
            scorer_cls = MQAScorer
            logger.info(
                "[Speculative Decoding] Use MQA scorer for scoring proposals.")
375

376
        if not self.tree_decoding:
zhuwenwen's avatar
zhuwenwen committed
377
            self.scorer = scorer_cls(scorer_worker=self.scorer_worker,
378
379
                                 device=self.device,
                                 vocab_size=self._vocab_size)
380
381
382
383
384
        else:
            self.scorer = BatchExpansionTreeStyleScorer(
                scorer_worker=self.scorer_worker,
                device=self.device,
                vocab_size=self._vocab_size)
385

386
387
        self._configure_model_sampler_for_spec_decode()

388
389
390
    def load_model(self, *args, **kwargs):
        pass

391
392
393
    def _configure_model_sampler_for_spec_decode(self):
        """Configure model sampler to emit GPU tensors. This allows spec decode
        to keep data on device without transferring to CPU and serializing,
394
        which significantly reduces overhead of sampling during verification.
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411

        NOTE(cade): This breaks abstraction boundaries pretty badly. The better
        design is to have the "move to CPU and serialize" sampling decision be
        done outside of the model/sampler; this way the "last-mile" worker
        object which interfaces with the scheduler can serialize and incur the
        performance hit as necessary. This allows us to run the worker several
        iterations in a row without incurring the "move to CPU and serialize"
        performance penalty.

        Since this requires a large change to vLLM, we defer it to later and
        temporarily accept this broken abstraction boundary.

        NOTE(cade): This will require a special check if the proposer worker
        does not have a sampler (e.g. ngram speculation).
        """
        (self.scorer_worker.model_runner.model.sampler.include_gpu_probs_tensor
         ) = True
412
413
        
        # tree_style decoding modify probs in _verify_tokens
414
        if not self.tree_decoding:
415
416
            (self.scorer_worker.model_runner.model.sampler.
            should_modify_greedy_probs_inplace) = True
417
        self.proposer_worker.set_include_gpu_probs_tensor()
418
        self.proposer_worker.set_should_modify_greedy_probs_inplace()
419

420
    def determine_num_available_blocks(self) -> Tuple[int, int]:
421
422
423
424
425
426
427
428
        """Determine the number of cache blocks to use.

        This is done by profiling the scorer model (which is typically the
        larger of the two). Then the total memory which would be used by the
        scorer cache is divided evenly between the proposer and scorer model KV,
        such that the number of blocks is equal in both KV caches.
        """
        num_gpu_blocks, num_cpu_blocks = (
429
            self.scorer_worker.determine_num_available_blocks())
430

431
        scorer_cache_block_size_bytes = (
432
            self.scorer_worker.get_cache_block_size_bytes())
433
        proposer_cache_block_size_bytes = (
434
            self.proposer_worker.get_cache_block_size_bytes())
435
436
437
438
439
440

        new_num_gpu_blocks = split_num_cache_blocks_evenly(
            scorer_cache_block_size_bytes, proposer_cache_block_size_bytes,
            num_gpu_blocks)
        return new_num_gpu_blocks, num_cpu_blocks

441
442
    def initialize_cache(self, num_gpu_blocks: int,
                         num_cpu_blocks: int) -> None:
443
444
        """Initialize the cache engine of the scorer and proposer workers.
        """
445
446
447
448
        self.scorer_worker.initialize_cache(num_gpu_blocks=num_gpu_blocks,
                                            num_cpu_blocks=num_cpu_blocks)
        self.proposer_worker.initialize_cache(num_gpu_blocks=num_gpu_blocks,
                                              num_cpu_blocks=num_cpu_blocks)
449

450
451
452
    def get_model(self) -> nn.Module:
        return self.scorer_worker.get_model()

453
454
    @torch.inference_mode()
    def execute_model(
455
456
457
        self,
        execute_model_req: Optional[ExecuteModelRequest] = None
    ) -> List[SamplerOutput]:
458
459
        """Perform speculative decoding on the input batch.
        """
460
461
462
        if self.rank != self._driver_rank:
            self._run_non_driver_rank()
            return []
463

464
465
466
467
468
469
470
        if execute_model_req is None:
            # This signals that there's no more requests to process for now.
            # All workers are running infinite loop with broadcast_tensor_dict,
            # and it stops the loop when the driver broadcasts an empty input.
            # Send an empty input to notify all other workers to stop their
            # execution loop.
            broadcast_tensor_dict({}, src=0)
471
            return []
472

473
        self._track_finished_requests(execute_model_req)
474
475
476
        disable_all_speculation = self._should_disable_all_speculation(
            execute_model_req)
        num_lookahead_slots = execute_model_req.num_lookahead_slots
477
478
479
480
481
482
483
484
485
486
487
488
489
490
        all_prompt = True
        atleast_one_prompt = False
        all_zero_spec_tokens = True
        for sgm in execute_model_req.seq_group_metadata_list:
            all_prompt = all_prompt and sgm.is_prompt
            atleast_one_prompt = atleast_one_prompt or sgm.is_prompt
            all_zero_spec_tokens = all_zero_spec_tokens and (
                sgm.num_speculative_tokens == 0)

        if all_prompt and execute_model_req.seq_group_metadata_list:
            assert num_lookahead_slots == 0, (
                "Prompt only runs should have num_lookahead_slots equal to 0. "
                "This should never happen, please file a bug at "
                "https://github.com/vllm-project/vllm/issues")
491
492
493
494
495
        # Speculative decoding is disabled in the following cases:
        # 1. Prefill phase: Speculative decoding is not
        #    used during the prefill phase.
        # 2. Auto-disable enabled: The running queue size exceeds
        #    the specified threshold.
496
497
        # 3. No request: There are no requests in the batch, or
        #    none of the requests in the batch have spec decoding enabled.
498
499
        # In any of these cases, the proposer and scorer workers
        # are called normally.
500
        # We expect `num_speculative_tokens` to be None for prefills.
501
502
        no_spec = (num_lookahead_slots == 0 or disable_all_speculation
                   or all_zero_spec_tokens)
503

504
505
506
507
508
        # Broadcast how many lookahead slots are scheduled for this step, and
        # whether all speculation is disabled, to all non-driver workers.

        # This is required as if the number of draft model runs changes
        # dynamically, the non-driver workers won't know unless we perform a
509
        # communication to inform them.
510
511
512
513
514
515
516

        # no_spec is used to signal non-driver worker about prefill vs decode
        # stage. This is needed to ensure that order of execution of proposer
        # and scorer is same in both driver and non-driver workers (i.e.,
        # scorer -> proposer for prefill and proposer -> scorer in decode). This
        # order is needed to support models like EAGLE that take scorer states
        # as inputs.
517
518
        broadcast_dict = dict(
            num_lookahead_slots=num_lookahead_slots,
519
            no_spec=no_spec,
520
            disable_all_speculation=disable_all_speculation,
521
522
523
524
525
526
527
528
529
            # When both chunked prefill and speculative decoding are enabled
            # it is possible that the same batch contains both prefill
            # and decodes. If that happens in the scorer we run the batch
            # as one single forward pass. However, in the proposer we
            # run them as 2 different batches - one for prefill and
            # the other for decodes. The variable indicates to the non-driver
            # worker that there are prefills as part of the speculative batch
            # and hence it needs to run an extra prefill forward pass.
            run_spec_proposer_for_prefill=atleast_one_prompt,
530
531
532
533
534
535
536
537
538
        )
        broadcast_tensor_dict(broadcast_dict, src=self._driver_rank)

        assert execute_model_req.seq_group_metadata_list is not None, (
            "speculative decoding requires non-None seq_group_metadata_list")

        self._maybe_disable_speculative_tokens(
            disable_all_speculation, execute_model_req.seq_group_metadata_list)

539
        if no_spec:
540
541
542
543
544
545
546
547
548
549
550
551
            return self._run_no_spec(execute_model_req,
                                     skip_proposer=disable_all_speculation)
        return self._run_speculative_decoding_step(execute_model_req,
                                                   num_lookahead_slots)

    @torch.inference_mode()
    def start_worker_execution_loop(self) -> None:
        """Execute model loop to perform speculative decoding
        in parallel worker."""
        while self._run_non_driver_rank():
            pass

552
553
    def _should_disable_all_speculation(
            self, execute_model_req: ExecuteModelRequest) -> bool:
554
555
        # When the batch size is too large, disable speculative decoding
        # to stop trading off throughput for latency.
556
557
        return (execute_model_req.running_queue_size
                >= self.disable_by_batch_size)
558
559
560
561
562
563
564
565
566
567
568
569
570
571

    def _maybe_disable_speculative_tokens(
            self, disable_all_speculation: bool,
            seq_group_metadata_list: List[SequenceGroupMetadata]) -> None:
        if not disable_all_speculation:
            return

        for seq_group_metadata in seq_group_metadata_list:
            # Once num_speculative_tokens is set to 0, the spec decode
            # of this request will be disabled forever.
            # TODO(comaniac): We currently store spec decoding specific
            # state in the global data structure, but we should maintain
            # this state within spec decode worker.
            seq_group_metadata.num_speculative_tokens = 0
572

573
574
    def _serialize_sampler_output_no_logprobs(
            self, execute_model_req: ExecuteModelRequest,
575
            sampler_output: SamplerOutput) -> List[SamplerOutput]:
576
        """
577
578
        Creates and returns a `SamplerOutput` with only the token IDs being
        serialized to CPU and populated in `CompletionSequenceGroupOutput`.
579
580
581
582
583
584
585
586
587
588
589
        All other parameters in `CompletionSequenceGroupOutput` related to log 
        probabilities are skipped.

        Args:
            execute_model_req (ExecuteModelRequest): The model request that
            was executed.
            sampler_output (SamplerOutput): The output from the sampler with
            only GPU tensors populated.

        Returns:
            SamplerOutput: A new `SamplerOutput` instance containing a list of 
590
591
            `CompletionSequenceGroupOutput` objects with only token IDs
            populated.
592
        """
593
594
595
596
597
598
599
600
601
602
603
604
        seq_output_prompt_logprobs = [
            seq.is_prompt and seq.sampling_params.prompt_logprobs is not None
            and seq.sampling_params.prompt_logprobs > 0
            for seq in execute_model_req.seq_group_metadata_list
        ]
        # ignore slots for prompt tokens that are filled with INVALID_TOKEN_ID
        sampled_token_ids_list = (sampler_output.sampled_token_ids[torch.where(
            # subtracting is faster than testing for equality
            sampler_output.sampled_token_ids - VLLM_INVALID_TOKEN_ID)[0]] \
            if any(seq_output_prompt_logprobs) else \
                sampler_output.sampled_token_ids).tolist()

605
        seq_data_entries = [
606
607
608
            (seq_id, seq_data) for sg in \
            execute_model_req.seq_group_metadata_list \
            for seq_id, seq_data in sg.seq_data.items()
609
        ]
610
611
        completion_seq_group_output_list: List[
            CompletionSequenceGroupOutput] = []
612
613
614
        output_index = 0
        # Make sure the non-terminal prefill chunks are still aligned with
        # their own empty output.
615
616
617
618
619
620
621
622
623
624
625
626
627
628
629
630
631
        for idx, seq_group_meta in enumerate(
                execute_model_req.seq_group_metadata_list):
            needs_prompt_logprobs = seq_output_prompt_logprobs[idx]
            seq_id, seq_data = seq_data_entries[idx]
            if needs_prompt_logprobs:
                prompt_token_ids = seq_data.get_prompt_token_ids()

                # Some of these sequences may belong to non-terminal chunks,
                # which may still have to report logprobs for prompts.
                start = 1 if seq_data._num_computed_tokens == 0 \
                    else seq_data._num_computed_tokens
                end = (seq_data._num_computed_tokens + \
                       seq_group_meta.token_chunk_size)
                prompt_token_ids = prompt_token_ids[start:end]
                prompt_logprobs = [
                    create_logprobs_output(
                        token_id=p_token_id,
632
633
634
635
                        token_id_logprob_rank=-1,
                        token_id_logprob=0.0,
                        topk_token_ids=[],
                        topk_logprobs=[],
636
637
638
639
640
641
642
643
644
645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
                    ) for p_token_id in prompt_token_ids
                ]
            else:
                prompt_logprobs = None

            # Since we can get chunks here, we dont always have a sampled token
            # (only on last chunk) but we still have to provide an output.
            if not seq_group_meta.do_sample:
                completion_seq_group_output_list.append(
                    CompletionSequenceGroupOutput(
                        samples=[], prompt_logprobs=prompt_logprobs))
                continue

            # Sequence with output.
            completion_seq_group_output_list.append(
                create_sequence_group_output(
                    token_id=sampled_token_ids_list[output_index][0],
                    token_id_logprob_rank=-1,
                    token_id_logprob=0.0,
                    seq_id=seq_id,
                    topk_token_ids=[],
                    topk_logprobs=[],
                    prompt_logprobs=prompt_logprobs))
            output_index += 1
660
661

        return [SamplerOutput(outputs=completion_seq_group_output_list)]
662

663
    @nvtx_range("spec_decode_worker._run_no_spec")
664
665
    def _run_no_spec(self, execute_model_req: ExecuteModelRequest,
                     skip_proposer: bool) -> List[SamplerOutput]:
666
667
        """Run a single generation step without any speculation. The input is
        sent to the proposer and scorer model so that the KV cache is consistent
668
669
670
        between the two. When skip_proposer is True, the proposer model is
        not called, meaning that the kv-cache in proposer for requests is not
        updated, so they cannot enable spec decode in the rest decoding.
671
        """
672
        if self.tree_decoding and self.kvcache_slot_to_be_moved is not None:
王敏's avatar
王敏 committed
673
674
            execute_model_req.kvcache_slot_to_be_moved = self.kvcache_slot_to_be_moved
            self.kvcache_slot_to_be_moved = None
675

676
        sampler_output = self.scorer_worker.execute_model(execute_model_req)
677
678
        assert len(sampler_output) == 1
        sampler_output = sampler_output[0]
679

680
        # Store hidden states from target model execution, BxD.
681
682
        hidden_states = sampler_output.hidden_states
        if hidden_states is not None:
683
684
685
686
687
688
689
            # Only decodes and prefill terminal chunks need a hidden state.
            seq_group_meta_with_hidden = [
                sg for sg in execute_model_req.seq_group_metadata_list
                if sg.do_sample
            ]
            if any(seq.is_prompt for seq in seq_group_meta_with_hidden):
                # Drop hidden_states with no prediction (eg non-terminal chunks)
690
691
692
                hidden_states = hidden_states[
                    torch.where(sampler_output.sampled_token_ids -
                                VLLM_INVALID_TOKEN_ID)[0]]
693
            
694
695
696
697
698
699
700
701
            if self.previous_hidden_states is None and len(
                    seq_group_meta_with_hidden):
                self.previous_hidden_states = HiddenStates(
                    hidden_states, seq_group_meta_with_hidden)
            elif self.previous_hidden_states and len(
                    seq_group_meta_with_hidden):
                self.previous_hidden_states.update(hidden_states,
                                                seq_group_meta_with_hidden)
702
                
zhuwenwen's avatar
zhuwenwen committed
703
704
705
706
707
708
709
710
711
712
            # Store logits from target model execution.
            if self.tree_decoding:
                logits = sampler_output.logits
                if logits is not None:
                    if self.previous_logits is None:
                        self.previous_logits = Logits(
                            logits, execute_model_req.seq_group_metadata_list)
                    else:
                        self.previous_logits.update(
                            logits, execute_model_req.seq_group_metadata_list)
713
714
715
716
717
718
719
720
721

        if not skip_proposer:
            # We prepare the prefill hidden states here so that there no
            # additional complexity in worker for spec_decode vs non_spec_decode
            # flow and execute_model doesn't need additional modifications.
            execute_model_req.previous_hidden_states = \
                prepare_prefill_hidden_states(
                    sampler_output.prefill_hidden_states)

王敏's avatar
王敏 committed
722
723
724
            for i in range(self._num_spec_prefill_steps):
                execute_model_req.spec_step_idx = i
                self.proposer_worker.execute_model(execute_model_req)
725

726
727
728
        sampler_output_to_return = (self._serialize_sampler_output_no_logprobs(
            execute_model_req=execute_model_req, sampler_output=sampler_output)
                                    if self._disable_logprobs else
729
                                    [sampler_output])
730

731
732
        # Clear device tensors from sampler output. This reduces communication
        # overhead when the engine runs in a different process than the workers.
733
734
        sampler_output.sampled_token_probs = None
        sampler_output.sampled_token_ids = None
735
        sampler_output.logprobs = None
736
        return sampler_output_to_return
737

738
    def _run_non_driver_rank(self) -> bool:
739
740
741
        """Run proposer and verifier model in non-driver workers. This is used
        for both speculation cases (num_lookahead_slots>0) and non-speculation
        cases (e.g. prefill).
742

743
        Returns True if there are remaining sequences to process.
744
        """
745
746
747
748
749
750
        assert self.rank != self._driver_rank

        data = broadcast_tensor_dict(src=self._driver_rank)
        if not data:
            return False
        num_lookahead_slots = data["num_lookahead_slots"]
751

752
753
754
755
756
757
        # In case of prefill, scorer_worker has to be run before proposer so
        # that the hidden states can be propagated to proposer when needed.
        if data["no_spec"]:
            self.scorer_worker.execute_model()

        if not data["disable_all_speculation"]:
758
            # if not self.tree_decoding:
王敏's avatar
王敏 committed
759
760
761
762
763
764
765
766
767
768
769
770
771
772
773
            #     # Even if num_lookahead_slots is zero, we want to run the
            #     # proposer model as it may have KV.
            #     #
            #     # We run the proposer once per lookahead slot. In the future we
            #     # should delegate how many times it runs to the proposer.
            #     for _ in range(max(num_lookahead_slots, 1)):
            #         self.proposer_worker.execute_model()
            # else:
            #     if not data["no_spec"]:
            #         self.proposer_worker.sampler_output(None, None, None)

            if issubclass(type(self.proposer_worker), NonLLMProposerWorkerBase):
                if not data["no_spec"]:
                    self.proposer_worker.sampler_output(None, num_lookahead_slots, None)
            else:
774
775
776
777
778
779
780
                # Even if num_lookahead_slots is zero, we want to run the
                # proposer model as it may have KV.
                #
                # We run the proposer once per lookahead slot. In the future we
                # should delegate how many times it runs to the proposer.
                for _ in range(max(num_lookahead_slots, 1)):
                    self.proposer_worker.execute_model()
781
782
783

        if not data["no_spec"]:
            self.scorer_worker.execute_model()
784
785
            if data["run_spec_proposer_for_prefill"]:
                self.proposer_worker.execute_model()
786

787
        return True
788

789
790
    @nvtx_range("spec_decode_worker._run_speculative_decoding_step")
    def _run_speculative_decoding_step(
791
792
            self, execute_model_req: ExecuteModelRequest,
            num_lookahead_slots: int) -> List[SamplerOutput]:
793
794
795
796
797
        """Execute a single step of speculative decoding.

        This invokes the proposer worker to get k speculative tokens for each
        sequence, then scores each speculative token using the scoring worker.

798
799
800
801
        When `enable_chunked_prefill` is set, scorer will batch decodes and 
        prefills, while proposer will sync its KV-cache by running an extra
        forward on prefills.

802
803
804
        Returns a list of SamplerOutput, each containing a single token per
        sequence.
        """
805
806
        # With prefill chunking, expect requests to have prompts first
        # so that backend gets prefill|decode.
807
        assert num_lookahead_slots == execute_model_req.num_lookahead_slots
808

809
810
811
812
        # Pass last hidden states from target model to proposer
        execute_model_req.previous_hidden_states = self.previous_hidden_states
        self.previous_hidden_states = None

813
814
815
816
        # Pass last logits from target model to proposer
        execute_model_req.previous_logits = self.previous_logits
        self.previous_logits = None

817
818
819
        execute_model_req.kvcache_slot_to_be_moved = self.kvcache_slot_to_be_moved
        self.kvcache_slot_to_be_moved = None

820
821
822
823
        with Timer() as proposal_timer:
            # Generate proposals using draft worker.
            proposals = self.proposer_worker.get_spec_proposals(
                execute_model_req, self._seq_with_bonus_token_in_last_step)
824

825
826
827
828
        if not self._allow_zero_draft_token_step and proposals.no_proposals:
            #TODO: Fix it #5814
            raise RuntimeError("Cannot handle cases where distributed draft "
                               "workers generate no tokens")
829
830
        
        # Pass tree attention mask and postions to target model
831
        if self.tree_decoding:
832
833
            execute_model_req.tree_attn_masks = proposals.tree_attn_masks
            execute_model_req.tree_position_ids = proposals.tree_position_ids
834

835
836
        execute_model_req.previous_hidden_states = None

837
838
839
840
841
842
        with Timer() as scoring_timer:
            proposal_scores = self.scorer.score_proposals(
                execute_model_req,
                proposals,
            )

843
844
845
846
847
848
849
850
851
852
853
854
855
856
857
858
        _, (non_spec_seqs, non_spec_indices) = split_batch_by_proposal_len(
            execute_model_req.seq_group_metadata_list, proposals.proposal_lens)
        # With prefill chunking enabled, `non_spec_seqs` contains prefills too:
        # discard decodes that have already been processed by proposer.
        non_spec_indices = [
            idx for idx in non_spec_indices
            if execute_model_req.seq_group_metadata_list[idx].is_prompt
        ]
        if len(non_spec_indices):
            all_hidden_states = proposal_scores.hidden_states
            if all_hidden_states is not None:
                prefill_hidden_states = all_hidden_states[non_spec_indices]
                execute_model_req.previous_hidden_states = \
                    prepare_prefill_hidden_states(prefill_hidden_states)
            # Sync proposer KV cache for prefills.
            prefill_req = execute_model_req.clone(non_spec_seqs)
859
            # TODO avoid sampling here?
860
861
            self.proposer_worker.execute_model(prefill_req)

862
        with Timer() as verification_timer:
863
            accepted_token_ids, target_logprobs, select_indices_list, accept_lengths = self._verify_tokens(
864
865
                execute_model_req.seq_group_metadata_list, proposal_scores,
                proposals, execute_model_req.num_lookahead_slots)
866
867
            
            # move kv_caches of selected tokens to right positions
868
            if self.tree_decoding:
869
                self.move_caches(execute_model_req, select_indices_list, accept_lengths)
870
871
872
873

        stage_times = (proposal_timer.elapsed_time_ms / num_lookahead_slots,
                       scoring_timer.elapsed_time_ms,
                       verification_timer.elapsed_time_ms)
874

875
        return self._create_output_sampler_list(
876
            execute_model_req.seq_group_metadata_list,
877
878
            accepted_token_ids,
            target_logprobs=target_logprobs,
879
880
            prompt_logprobs=proposal_scores.prompt_logprobs
            if not self._disable_logprobs else None,
881
882
            k=execute_model_req.num_lookahead_slots,
            stage_times=stage_times)
883
884
885
886
887
888
889
890

    @nvtx_range("spec_decode_worker._verify_tokens")
    def _verify_tokens(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        proposal_scores: SpeculativeScores,
        proposals: SpeculativeProposals,
        max_proposal_len: int,
891
    ) -> Tuple[torch.Tensor, torch.Tensor, List[List[int]], List[int]]:
892
893
        """Determine which speculative tokens are accepted using the
        probabilities of each token according to the proposer and scorer models.
894
895
896

        Returns a tuple of Tensors, one for the accepted token ids and one for
        the logprobs according to the scoring model.
897
898
899
900
901
902
903
        """
        proposal_lens_list = proposals.proposal_lens.tolist()

        # vLLM currently only supports proposal lens equal to zero or the batch
        # proposal len. This adds some complexity (splitting the batch into spec
        # and non spec sequences) and should be removed in the future. It can be
        # done by supporting per-sequence proposal lens.
904
905
        (_, spec_indices), (_, non_spec_indices) = split_batch_by_proposal_len(
            seq_group_metadata_list, proposal_lens_list)
906
907
        original_indices = spec_indices + non_spec_indices

908
        # Get probabilities of target model, including bonus tokens.
909
910
911
912
        if non_spec_indices:
            proposal_verifier_probs = proposal_scores.probs[spec_indices]
        else:
            proposal_verifier_probs = proposal_scores.probs
913

914
        if self.tree_decoding:
915
916
917
            retrieve_indices = proposals.retrieve_indices
            proposal_verifier_probs = proposal_verifier_probs[:, retrieve_indices]

918
        # Get non-speculative sampled tokens from target model.
919
920
        non_spec_token_ids = proposal_scores.token_ids[non_spec_indices]

921
        # Get bonus tokens from target model.
922
923
924
        bonus_token_ids = proposal_scores.token_ids[:, -1:]
        if non_spec_indices:
            bonus_token_ids = bonus_token_ids[spec_indices, :]
925
926

        # Get probabilities according to proposal method.
927
        proposal_probs = proposals.proposal_probs if proposals.proposal_probs is not None else None
928
        if proposal_probs is not None and non_spec_indices:
929
            proposal_probs = proposal_probs[spec_indices]
930
931

        # Get proposed tokens.
932
933
934
        proposal_token_ids = proposals.proposal_token_ids
        if non_spec_indices:
            proposal_token_ids = proposal_token_ids[spec_indices] 
935

936
        # Get tree buffers.
937
        cart_candidates = proposals.cart_candidates if proposals.cart_candidates is not None else None
938
        if cart_candidates is not None and non_spec_indices:
939
            cart_candidates = cart_candidates[spec_indices] 
940

941
        # Sampler arguments
942
943
944
945
946
947
948
949
        sampler_extra_kwargs: Dict[str, Any] = {}
        if self.generators and isinstance(self.spec_decode_sampler,
                                          SpecDecodeStochasticBaseSampler):
            sampler_extra_kwargs["seeded_seqs"] = {
                idx: self.generators[sgm.request_id]
                for idx, sgm in enumerate(seq_group_metadata_list)
                if sgm.sampling_params.seed is not None
            }
950

951
952
953
954
955
956
957
958
        if isinstance(self.spec_decode_sampler, TypicalAcceptanceSampler):
            sampler_extra_kwargs["cart_candidates"] = cart_candidates
            sampler_extra_kwargs["best_candidates"] = []
            sampler_extra_kwargs["accept_lengths"] = []

            first_step_flags = []
            for i, sgm in enumerate(seq_group_metadata_list):
                seq = next(iter(sgm.seq_data.values()))
959
                first_step_flags.append(True if seq.get_first_step_flag() else False)
960
961
962
            
            sampler_extra_kwargs["first_step_flags"] = first_step_flags

963
        accepted_token_ids = self.spec_decode_sampler(
964
            target_with_bonus_probs=proposal_verifier_probs,
965
966
967
            bonus_token_ids=bonus_token_ids,
            draft_probs=proposal_probs,
            draft_token_ids=proposal_token_ids,
968
            **sampler_extra_kwargs,
969
970
971
        )
        # Append output tokens from non-speculative sequences to
        # the accepted token ids tensor.
972
        if not self.tree_decoding:
973
974
975
976
977
            non_spec_token_ids = non_spec_token_ids.expand(-1, max_proposal_len +
                                                        1).clone()
        else:
            non_spec_token_ids = non_spec_token_ids.expand(-1, max_proposal_len).clone()

978
979
980
        non_spec_token_ids[:, 1:] = -1
        accepted_token_ids = torch.cat(
            [accepted_token_ids, non_spec_token_ids])
981
        logprobs = proposal_scores.logprobs
982
983
984
985
        # Rearrange so that results are in the order of the original seq group
        # metadata.
        accepted_token_ids[original_indices] = accepted_token_ids.clone()

986
        # B x K+1 x D
987
        hidden_states = proposal_scores.hidden_states
988
989
990
991
992
993
994
995

        select_indices = None
        accept_lengths = None

        select_indices_list = []

        if cart_candidates is None:
            if hidden_states is not None:
zhuwenwen's avatar
zhuwenwen committed
996
997
998
999
                # Only get terminal hidden states for next step
                terminal_metadata = [
                    sg for sg in seq_group_metadata_list if sg.do_sample
                ]
1000
1001
1002
                # Contract hidden states based on accepted tokens
                hs_size = hidden_states.shape[-1]
                accepted_index = accepted_token_ids + 1  # Convert -1 to 0
zhuwenwen's avatar
zhuwenwen committed
1003
1004
1005
1006
1007
1008
1009
1010
1011
1012
                accepted_index = accepted_index.count_nonzero(dim=1).add_(-1)  # b
                # Drop non-terminal prefill chunks hidden states.
                hidden_states = hidden_states[accepted_index !=
                                            VLLM_INVALID_TOKEN_ID]
                accepted_index = accepted_index[accepted_index !=
                                                VLLM_INVALID_TOKEN_ID]
                assert len(accepted_index) == hidden_states.shape[0] == len(
                    terminal_metadata)
                index = accepted_index[:, None, None].expand(-1, 1,
                                                            hs_size)  # b x 1 x d
1013
1014
                second_last_token_hidden_states = hidden_states[:, -2]  # b x d
                hidden_states = hidden_states.gather(1, index).squeeze(1)  # b x d
zhuwenwen's avatar
zhuwenwen committed
1015
                    
1016
1017
                # Store hidden states from target model for subsequent decode step
                self.previous_hidden_states = HiddenStates(
zhuwenwen's avatar
zhuwenwen committed
1018
1019
                    hidden_states, terminal_metadata,
                    second_last_token_hidden_states)  
1020
1021
1022
1023
1024
1025
1026
1027
        else:
            retrieve_indices = proposals.retrieve_indices

            batch_size = len(seq_group_metadata_list)

            best_candidates = sampler_extra_kwargs["best_candidates"]
            accept_lengths = sampler_extra_kwargs["accept_lengths"]

1028
            # Contract hidden states based on accepted tokens
1029
            hs_size = hidden_states.shape[-1]
1030
1031
1032
1033
1034
1035
1036
1037
1038
1039
            hidden_states = hidden_states.view(batch_size, -1, hs_size)

            # Store logits from target model for subsequent proposal
            logits = proposal_scores.logits
            logits = logits.view(batch_size, -1, logits.shape[-1])
            logits = logits[:, retrieve_indices] # [batch_size, retrieve_size, max_depth, vocab_size]

            previous_logits_list = []

            previous_hidden_state_list = []
1040
1041

            retrieve_indices = retrieve_indices.cpu()
1042
1043
1044
1045
1046
1047
1048
1049
1050
1051
1052
1053
1054
1055
1056
1057
1058
            
            for i in range(batch_size):
                logit = logits[i, best_candidates[i], accept_lengths[i]].unsqueeze(0)
                previous_logits_list.append(logit)
                select_indices = retrieve_indices[best_candidates[i], :accept_lengths[i]+1]
                hidden_state = hidden_states[i, select_indices[-1]].unsqueeze(0)
                select_indices_list.append(select_indices)
                previous_hidden_state_list.append(hidden_state)

            logits = torch.cat(previous_logits_list, dim=0)
            self.previous_logits = Logits(logits, seq_group_metadata_list)

            hidden_states = torch.cat(previous_hidden_state_list, dim=0) # [batch_size, 1, vocab_size]
            self.previous_hidden_states = HiddenStates(hidden_states, 
                                                       seq_group_metadata_list,)

        return accepted_token_ids, logprobs, select_indices_list, accept_lengths
zhuwenwen's avatar
zhuwenwen committed
1059

1060
1061
1062
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
1074
1075
1076
1077
1078
    
    def move_caches(self, execute_model_req: ExecuteModelRequest, 
                    select_indices_list: List[torch.Tensor], 
                    accept_lengths: List[int]):
        """Given selected output tokens and accept length,
        move kv_caches of selected tokens to right positions.
        """
        seq_lens = []
        for sg in execute_model_req.seq_group_metadata_list:
            seq_ids = list(sg.seq_data.keys())
            
            for seq_id in seq_ids:
                seq_data = sg.seq_data[seq_id]
                seq_len = seq_data.get_len()
                token_chunk_size = sg.token_chunk_size
                context_len = seq_len - 1
                seq_len = min(seq_len, context_len + token_chunk_size)

                # first step of tree-style decoding need to ignore first generated token
1079
                if seq_data.get_first_step_flag():
1080
                    seq_len -= 1
1081
1082
1083

                # move cache is the last step of tree decoding, so set first_step_flag to false
                seq_data.set_first_step_flag(False)   
1084
1085
1086
1087
                seq_lens.append(seq_len)

        model_input = self.scorer._scorer_worker.model_input
        block_tables = None
1088
1089
        if hasattr(model_input, 'attn_metadata') and hasattr(model_input.attn_metadata, 'block_tables_list'):
            block_tables = model_input.attn_metadata.block_tables_list
1090
1091
1092
1093
1094
1095
1096
1097
1098
1099
1100
1101
1102
1103
1104
1105

        if block_tables is None:
            raise RuntimeError("Can not get block_tables from model_input.")

        cache_engine = self.scorer._scorer_worker.cache_engines[execute_model_req.virtual_engine]
        block_size = cache_engine.block_size
        batch_size = len(select_indices_list)
        block_table_stride = len(block_tables) // batch_size

        select_indices_slot_mapping = []
        target_slot_mapping = []
        for i in range(batch_size):
            accept_legth = accept_lengths[i]

            if accept_legth > 0:
                select_indices = select_indices_list[i][1:] + seq_lens[i]
1106
                select_indices = select_indices.tolist()
1107
1108
1109
1110
                self.compute_slot_mapping(select_indices_slot_mapping, i*block_table_stride,
                                            select_indices, block_size, block_tables)

                target_indices = torch.arange(accept_legth+1)[1:] + seq_lens[i]
1111
                target_indices = target_indices.tolist()
1112
1113
1114
1115
1116
1117
1118
1119
1120
1121
1122
                self.compute_slot_mapping(target_slot_mapping, i*block_table_stride, 
                                            target_indices, block_size, block_tables)

        if len(select_indices_slot_mapping) >0:
            select_indices_slot_tensor = torch.tensor(select_indices_slot_mapping,
                                            dtype=torch.long,
                                            device=self.device).view(-1, 1)
            target_slot_mapping_tensor = torch.tensor(target_slot_mapping,
                                            dtype=torch.long,
                                            device=self.device).view(-1, 1)
            src_dst_tensor = torch.cat([select_indices_slot_tensor, target_slot_mapping_tensor], dim=-1) #[batch_size*T, 2]
1123

1124
            self.kvcache_slot_to_be_moved = src_dst_tensor
zhuwenwen's avatar
zhuwenwen committed
1125

1126

1127
1128
1129
1130
    def _create_output_sampler_list(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        accepted_token_ids: torch.Tensor,  # shape: [batch_size, k+1]
1131
        target_logprobs: torch.Tensor,  # shape: [batch_size, k+1, vocab_size]
1132
1133
        prompt_logprobs: Optional[
            torch.Tensor],  # shape: [nprompt_tokens, vocab_size]
1134
        k: int,
1135
        stage_times: Tuple[float, float, float],
1136
1137
1138
1139
1140
1141
    ) -> List[SamplerOutput]:
        """Given the accepted token ids, create a list of SamplerOutput.

        The output is padded with -1 tokens such that each sequence has
        the same number of outputs.
        """
1142
1143
        batch_size, num_steps = accepted_token_ids.shape
        accepted_token_ids_by_step = accepted_token_ids.transpose(0, 1)
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
        if self._disable_logprobs:
            # We are skipping the logprobs. Hence don't serialize the
            # logprobs related tensors from the GPU. Instead create
            # empty/dummy lists.
            (accepted_token_id_ranks_by_step,
            accepted_token_id_logprobs_by_step,
            topk_logprobs_by_step, topk_indices_by_step) =\
            self._create_dummy_logprob_lists(
                batch_size, num_steps,
                self.scorer_worker.model_config.max_logprobs)
        else:
            # Organize input tensors by step instead of by sequence.
            target_logprobs_by_step = target_logprobs.transpose(0, 1)
            # Serialize all tensors into Python lists.
            (accepted_token_id_ranks_by_step,
            accepted_token_id_logprobs_by_step,
            topk_logprobs_by_step, topk_indices_by_step) =\
                self._create_logprob_lists_from_tensors(
                    target_logprobs_by_step, accepted_token_ids_by_step,
                    self.scorer_worker.model_config.max_logprobs)
1164
1165
1166

        # Get the sequence ids and num_logprobs (sampling parameter) in the
        # batch.
1167
1168
1169
        seq_ids, request_ids_seq_ids_mapping = get_all_seq_ids_and_request_ids(
            seq_group_metadata_list)

1170
1171
        num_logprobs_per_seq = get_all_num_logprobs(seq_group_metadata_list)

1172
        # Serialize tensor to CPU Python list.
1173
1174
1175
        accepted_token_ids_by_step = accepted_token_ids_by_step.tolist()

        # Construct the output on a per-step, per-sequence basis.
1176
        # Non-terminal prefill chunks will end up here as rows with just -1s
1177
1178
        # i.e mixed-batch [[-1, 1576], [-1, 29884], [-1, -1], [-1, -1]] while
        # terminal chunks will only have one generated token at time 0.
1179
        sampler_output_list: List[SamplerOutput] = []
1180
1181
1182
1183
1184
1185
1186
1187
1188
1189
1190
1191
1192
1193
1194
1195
1196
1197
1198
1199
1200
1201
1202
1203
1204
1205
1206
1207
1208
1209
1210
1211
1212
1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227
1228
1229
1230
1231
1232
1233
1234
1235
1236
1237
1238
1239
1240
1241
1242
1243
1244
1245

        # Prefills are not multi-step (return at most 1 token), in order to
        # avoid padding or repetition to fit decodes, we separate them.
        for i, sg in enumerate(seq_group_metadata_list):
            if not sg.is_prompt:
                # Requests are ordered as prefills|decodes=>no more prefills.
                break
            num_logprobs = num_logprobs_per_seq[i]
            seq_kwargs = dict(token_id=-1,
                              token_id_logprob_rank=0,
                              token_id_logprob=-float('inf'),
                              topk_token_ids=[-1] * num_logprobs,
                              topk_logprobs=[-float('inf')] * num_logprobs,
                              seq_id=seq_ids[i])
            # Terminal chunk, has token.
            if sg.do_sample:
                seq_kwargs.update(
                    dict(
                        token_id=accepted_token_ids[i][0].item(),
                        token_id_logprob_rank=accepted_token_id_ranks_by_step[
                            0][i],
                        token_id_logprob=accepted_token_id_logprobs_by_step[0]
                        [i],
                        topk_token_ids=topk_indices_by_step[0][i]
                        [:num_logprobs],
                        # output only so step is 0
                        topk_logprobs=topk_logprobs_by_step[0][i]
                        [:num_logprobs],
                    ))
            needs_plogs = (sg.sampling_params.prompt_logprobs
                           and sg.sampling_params.prompt_logprobs > 0)
            plogs = None
            if prompt_logprobs is not None:
                # Even non-terminal prompt chunks can have logprobs here.
                plogs = prompt_logprobs[i]
            elif needs_plogs:
                # Prompt logprobs are requested but `_disable_logprobs` is set.
                seq_data = next(iter(sg.seq_data.values()))
                # Get only the tokens in this chunk!
                prompt_token_ids = seq_data.get_prompt_token_ids()
                prompt_token_ids = prompt_token_ids[
                    seq_data.
                    _num_computed_tokens:seq_data._num_computed_tokens +
                    sg.token_chunk_size]

                is_first_chunk = seq_data._num_computed_tokens == 0
                # There's no prob generated for the first token in a sequence.
                if is_first_chunk:
                    prompt_token_ids = prompt_token_ids[1:]
                plogs = [
                    create_logprobs_output(
                        token_id=p_token_id,
                        token_id_logprob_rank=-1,
                        token_id_logprob=0.0,
                        topk_token_ids=[],
                        topk_logprobs=[],
                    ) for p_token_id in prompt_token_ids
                ]
            seq_kwargs.update(dict(prompt_logprobs=plogs))

            sampler_output_list.append(
                SamplerOutput(
                    outputs=[create_sequence_group_output(
                        **seq_kwargs)]))  # type: ignore

        # Decodes, create one SamplerOutput per-step (at most K+1).
1246
        for step_index in range(num_steps):
1247
1248
1249
1250
            if all(token_id == -1 for sg, token_id in zip(
                    seq_group_metadata_list,
                    accepted_token_ids_by_step[step_index])
                   if not sg.is_prompt):
1251
1252
                break

1253
            step_output_token_ids: List[CompletionSequenceGroupOutput] = []
1254
            for sequence_index in range(batch_size):
1255
1256
1257
1258
1259
                seq_meta = seq_group_metadata_list[sequence_index]
                # Prompts already processed above.
                if seq_meta.is_prompt:
                    continue

1260
1261
                # Each sequence may have a different num_logprobs; retrieve it.
                num_logprobs = num_logprobs_per_seq[sequence_index]
1262
                step_output_token_ids.append(
1263
1264
1265
1266
1267
1268
1269
1270
1271
1272
1273
1274
                    create_sequence_group_output(
                        token_id=accepted_token_ids_by_step[step_index]
                        [sequence_index],
                        token_id_logprob_rank=accepted_token_id_ranks_by_step[
                            step_index][sequence_index],
                        token_id_logprob=accepted_token_id_logprobs_by_step[
                            step_index][sequence_index],
                        seq_id=seq_ids[sequence_index],
                        topk_token_ids=topk_indices_by_step[step_index]
                        [sequence_index][:num_logprobs],
                        topk_logprobs=topk_logprobs_by_step[step_index]
                        [sequence_index][:num_logprobs],
1275
1276
1277
1278
                    ))
            sampler_output_list.append(
                SamplerOutput(outputs=step_output_token_ids))

1279
1280
1281
1282
1283
        # Populate the data structures needed to keep track of sequences with
        # bonus tokens.
        self._track_sequences_with_bonus_tokens(seq_ids,
                                                request_ids_seq_ids_mapping,
                                                accepted_token_ids_by_step)
1284
1285
        maybe_rejsample_metrics = (
            self._metrics.maybe_collect_rejsample_metrics(k))
1286
        if maybe_rejsample_metrics is not None and sampler_output_list:
1287
1288
            sampler_output_list[
                0].spec_decode_worker_metrics = maybe_rejsample_metrics
1289
1290
1291
1292
1293

            # Log time spent in each stage periodically.
            # This is periodic because the rejection sampler emits metrics
            # periodically.
            self._maybe_log_stage_times(*stage_times)
1294
1295
        # First `n_prefills` entries will contain prefills SamplerOutput when
        # chunked prefill is enabled, the rest is decodes in multi-step format.
1296
1297
        return sampler_output_list

1298
1299
1300
1301
1302
1303
1304
1305
1306
1307
1308
1309
1310
1311
1312
1313
    def _maybe_log_stage_times(self, average_time_per_proposal_tok_ms: float,
                               scoring_time_ms: float,
                               verification_time_ms: float) -> None:
        """Log the speculative stage times. If stat logging is disabled, do
        nothing.
        """
        if self._disable_log_stats:
            return

        logger.info(
            "SpecDecodeWorker stage times: "
            "average_time_per_proposal_tok_ms=%.02f "
            "scoring_time_ms=%.02f verification_time_ms=%.02f",
            average_time_per_proposal_tok_ms, scoring_time_ms,
            verification_time_ms)

1314
1315
1316
1317
1318
1319
1320
1321
1322
1323
1324
1325
1326
1327
1328
1329
1330
1331
1332
1333
1334
1335
1336
1337
1338
1339
1340
1341
1342
1343
1344
1345
1346
1347
1348
1349
1350
1351
1352
1353
1354
1355
1356
1357
1358
1359
1360
1361
1362
1363
1364
1365
1366
1367
1368
1369
1370
1371
1372
1373
1374
1375
1376
1377
1378
1379
1380
1381
1382
1383
1384
1385
1386
1387
1388
1389
1390
1391
1392
1393
1394
1395
1396
1397
1398
1399
1400
1401
1402
1403
1404
1405
1406
1407
1408
1409
1410
1411
1412
1413
1414
1415
    def _create_dummy_logprob_lists(
        self,
        batch_size: int,
        num_steps: int,
        num_top_k: int,
    ) -> Tuple[List[List[int]], List[List[float]],
               List[List[List[Optional[float]]]],
               List[List[List[Optional[int]]]]]:
        """
        Creates and returns four dummy lists representing token probabilities 
        and their ranks.

        This method initializes and returns:
            - The ranks of the accepted tokens, shaped (num_steps, batch_size)
            - The log probabilities of the accepted tokens,
              shaped (num_steps, batch_size)
            - The log probabilities of the top k tokens,
              shaped (num_steps, batch_size, num_top_k)
            - The token IDs of the top k tokens,
              shaped (num_steps, batch_size, num_top_k)

        Args:
            batch_size (int): The size of the batch.
            num_steps (int): The number of steps in the sequence.
            num_top_k (int): The number of top-k token log probabilities to
            return.
        
        Returns:
            A tuple containing four dummy lists as described above.
        """
        accepted_token_id_ranks_by_step = [[-1] * batch_size
                                           for _ in range(num_steps)]
        accepted_token_id_logprobs_by_step = [[0.0] * batch_size
                                              for _ in range(num_steps)]
        topk_logprobs_by_step: List[List[List[Optional[float]]]] = [[
            [None] * num_top_k for _ in range(batch_size)
        ] for _ in range(num_steps)]
        topk_indices_by_step: List[List[List[Optional[int]]]] = [[
            [None] * num_top_k for _ in range(batch_size)
        ] for _ in range(num_steps)]
        return (accepted_token_id_ranks_by_step,
                accepted_token_id_logprobs_by_step, topk_logprobs_by_step,
                topk_indices_by_step)

    def _create_logprob_lists_from_tensors(
        self,
        target_logprobs_by_step: torch.Tensor,
        accepted_token_ids_by_step: torch.Tensor,
        num_top_k: int,
    ) -> Tuple[List[List[int]], List[List[float]],
               List[List[List[Optional[float]]]],
               List[List[List[Optional[int]]]]]:
        """
        Creates and returns four lists representing token probabilities and
        their ranks.

        This method initializes and returns four lists containing:
            - The ranks of the accepted tokens, shaped (num_steps, batch_size)
            - The log probabilities of the accepted tokens,
              shaped (num_steps, batch_size)
            - The log probabilities of the top k tokens,
              shaped (num_steps, batch_size, num_top_k)
            - The token IDs of the top k tokens,
              shaped (num_steps, batch_size, num_top_k)

        Args:
            target_logprobs_by_step (torch.Tensor): Tensor representing the
            log probabilities of the target model,
            shaped (num_steps, batch_size, vocab_size)
            accepted_token_ids_by_step (torch.Tensor): Tensor representing
            the accepted  token_ids, shaped (num_steps, batch_size) 
            num_top_k (int): The number of top-k token log probabilities to
            return.
        
        Returns:
            A tuple containing the lists as described above.
        """
        # Serialize all tensors to CPU Python lists.
        # Get the logprobs/rank of the accepted tokens.
        (accepted_token_id_ranks_by_step_tensor,
         accepted_token_id_logprobs_by_step_tensor
         ) = get_sampled_token_logprobs(
             logprob_tensor=target_logprobs_by_step,
             sampled_token_ids=accepted_token_ids_by_step,
         )
        # Get the top-k logprobs (which may or may not include the
        # logprob of the accepted token).
        (topk_logprobs_by_step_tensor,
         topk_indices_by_step_tensor) = target_logprobs_by_step.topk(
             k=num_top_k,
             dim=-1,
         )
        accepted_token_id_ranks_by_step = (
            accepted_token_id_ranks_by_step_tensor.tolist())
        accepted_token_id_logprobs_by_step = (
            accepted_token_id_logprobs_by_step_tensor.tolist())
        topk_logprobs_by_step = topk_logprobs_by_step_tensor.tolist()
        topk_indices_by_step = topk_indices_by_step_tensor.tolist()
        return (accepted_token_id_ranks_by_step,
                accepted_token_id_logprobs_by_step, topk_logprobs_by_step,
                topk_indices_by_step)

1416
1417
1418
1419
1420
1421
1422
1423
1424
1425
1426
1427
1428
1429
1430
1431
1432
1433
1434
1435
1436
1437
1438
1439
1440
1441
1442
    def _track_finished_requests(self, execute_model_req: ExecuteModelRequest):
        """
        Removes the finished requests and their associated sequence ids from
        internal book keeping data structures.
        """
        for finished_request in execute_model_req.finished_requests_ids:
            for seq_id in self._request_id_seq_id_mapping[finished_request]:
                self._seq_with_bonus_token_in_last_step.discard(seq_id)
            del self._request_id_seq_id_mapping[finished_request]

    def _track_sequences_with_bonus_tokens(
            self, seq_ids: List[int],
            request_ids_seq_ids_mapping: Dict[str, Set[int]],
            accepted_token_ids_by_step: List[List[int]]):
        """
        Updates the internal data structures which keep track of sequences
        which have been assigned bonus tokens in their last forward pass.
        """
        for seq_index, seq_id in enumerate(seq_ids):
            last_token_id = accepted_token_ids_by_step[-1][seq_index]
            if last_token_id == -1:
                self._seq_with_bonus_token_in_last_step.discard(seq_id)
            else:
                self._seq_with_bonus_token_in_last_step.add(seq_id)
        for request_id, sequences in request_ids_seq_ids_mapping.items():
            self._request_id_seq_id_mapping[request_id].update(sequences)

1443
1444
1445
1446
1447
1448
1449
1450
1451
1452
1453
1454
1455
1456
1457
1458
1459
1460
1461
1462
    @cached_property
    def _vocab_size(self) -> int:
        """Get the vocab size of the model and make sure it's consistent between
        draft and target workers.
        """
        vocab_sizes = [
            worker.vocab_size
            for worker in [self.proposer_worker, self.scorer_worker]
        ]
        assert all(vocab_sizes[0] == vocab_size for vocab_size in vocab_sizes)
        return vocab_sizes[0]

    @property
    def rank(self):
        return self.scorer_worker.rank

    @property
    def device(self):
        return self.scorer_worker.device

1463
1464
1465
1466
    @property
    def _driver_rank(self) -> int:
        return 0

1467
1468
1469
1470
1471
1472
1473
1474
1475
1476
    def get_cache_block_size_bytes(self):
        """Return the size of a cache block in bytes.
        
        This function is only used to compose workers within a SpecDecodeWorker.
        We leave composing a SpecDecodeWorker within a SpecDecodeWorker
        undefined for now, although it could be implemented in the future.
        See https://arxiv.org/abs/2308.04623.
        """
        raise NotImplementedError

1477
    def start_profile(self):
1478
        if isinstance(self.scorer_worker, WorkerBase):
1479
1480
1481
            self.scorer_worker.start_profile()

    def stop_profile(self):
1482
        if isinstance(self.scorer_worker, WorkerBase):
1483
1484
            self.scorer_worker.stop_profile()

1485
1486
1487
1488
1489
1490
1491
1492
1493
1494
1495
1496
1497
1498
1499
1500
1501
1502
1503
1504
1505
1506

def split_num_cache_blocks_evenly(scorer_cache_block_size_bytes: int,
                                  proposer_cache_block_size_bytes: int,
                                  total_num_gpu_blocks: int) -> int:
    """Given total_num_gpu_blocks, the number of GPU blocks that could be
    allocate to the target model, this function calculates how many blocks
    should be given to the draft and target model.

    Note that usually the block size, in bytes, of each model is different,
    as it's a function of number of KV/layer, number of heads, and hidden
    dimension size.

    Since the target and draft models allocate the same number of blocks, we
    simply calculate the number of blocks where if allocated by both models,
    the total memory usage from KV cache is no larger than the number of
    blocks allocatable by the target model alone.
    """
    new_num_gpu_blocks = int(
        total_num_gpu_blocks * scorer_cache_block_size_bytes /
        (proposer_cache_block_size_bytes + scorer_cache_block_size_bytes))

    return new_num_gpu_blocks
1507
1508
1509
1510
1511
1512
1513
1514
1515
1516
1517
1518


def prepare_prefill_hidden_states(
        prefill_hidden_states: torch.Tensor) -> HiddenStates:
    # For prefill step in proposer, we run the model for N-1 tokens
    # because Nth token will be processed in the first decode step. For
    # N-1 tokens, the input should be 0:N-1 hidden states which should
    # be concatanated with 1:N token (since output of scorer has to be
    # the input for proposer). Therefore, we shift the hidden states to
    # align n-1th hidden state with nth token.
    return HiddenStates(prefill_hidden_states.roll(
        shifts=1, dims=0)) if prefill_hidden_states is not None else None