spec_decode_worker.py 16.9 KB
Newer Older
1
from functools import cached_property
2
from typing import Dict, List, Optional, Tuple
3
4
5

import torch

6
from vllm.logger import init_logger
7
from vllm.model_executor.layers.rejection_sampler import RejectionSampler
8
from vllm.sequence import (Logprob, SamplerOutput, SequenceGroupMetadata,
9
                           SequenceGroupOutput, SequenceOutput)
10
11
12
13
from vllm.spec_decode.batch_expansion import BatchExpansionTop1Scorer
from vllm.spec_decode.interfaces import (SpeculativeProposals,
                                         SpeculativeScorer, SpeculativeScores)
from vllm.spec_decode.metrics import AsyncMetricsCollector
14
from vllm.spec_decode.multi_step_worker import MultiStepWorker
15
from vllm.spec_decode.util import (get_all_seq_ids, nvtx_range,
16
                                   split_batch_by_proposal_len)
17
18
19
from vllm.worker.worker_base import LoraNotSupportedWorkerBase, WorkerBase

logger = init_logger(__name__)
20
21


22
class SpecDecodeWorker(LoraNotSupportedWorkerBase):
23
24
25
26
27
28
29
30
    """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.

31
    See https://github.com/vllm-project/vllm/pull/2188 and
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
    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.
    * Only lossless rejection sampling is supported. Contributions adding lossy
        verification routines are welcome (e.g. Medusa's typical acceptance).
    * 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.
    """

50
51
52
53
54
55
56
57
58
59
    @classmethod
    def from_workers(cls, proposer_worker: MultiStepWorker,
                     scorer_worker: WorkerBase) -> "SpecDecodeWorker":
        return SpecDecodeWorker(
            proposer_worker,
            scorer_worker,
            # TODO(cade) disable strict mode for speedup.
            rejection_sampler=RejectionSampler(strict_mode=True),
        )

60
61
62
    def __init__(
        self,
        proposer_worker: MultiStepWorker,
63
        scorer_worker: WorkerBase,
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
        rejection_sampler: RejectionSampler,
        metrics_collector: Optional[AsyncMetricsCollector] = None,
    ):
        """
        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.
            rejection_sampler: A Torch module used to perform modified rejection
                sampling for speculative decoding.
            metrics_collector: Helper class for collecting metrics; can be set
                for testing purposes.
        """
        self.proposer_worker = proposer_worker
        self.scorer_worker = scorer_worker
        self.rejection_sampler = rejection_sampler

        self._metrics = AsyncMetricsCollector(
            rejection_sampler
        ) if metrics_collector is None else metrics_collector

        self.probs_dtype = self.rejection_sampler.probs_dtype
        self.token_id_dtype = self.rejection_sampler.token_id_dtype

92
93
        # Lazy initiazliation.
        self.scorer: SpeculativeScorer
94

95
    def init_device(self) -> None:
96
97
98
99
        """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.
100
101
        self.scorer_worker.init_device()
        self.proposer_worker.init_device()
102

103
104
105
106
        # NOTE(cade): load_model is not part of the WorkerBase interface.
        self.scorer_worker.load_model()
        self.proposer_worker.load_model()

107
108
109
110
111
112
113
        self._metrics.init_gpu_tensors(self.rank)
        self.rejection_sampler.init_gpu_tensors(self.rank)
        self.scorer = BatchExpansionTop1Scorer(
            scorer_worker=self.scorer_worker,
            device=self.device,
            vocab_size=self._vocab_size)

114
    def determine_num_available_blocks(self) -> Tuple[int, int]:
115
116
117
118
119
120
121
122
        """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 = (
123
            self.scorer_worker.determine_num_available_blocks())
124

125
        scorer_cache_block_size_bytes = (
126
            self.scorer_worker.get_cache_block_size_bytes())
127
        proposer_cache_block_size_bytes = (
128
            self.proposer_worker.get_cache_block_size_bytes())
129
130
131
132
133
134

        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

135
136
    def initialize_cache(self, num_gpu_blocks: int,
                         num_cpu_blocks: int) -> None:
137
138
        """Initialize the cache engine of the scorer and proposer workers.
        """
139
140
141
142
        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)
143
144
145
146
147
148
149
150

    @torch.inference_mode()
    def execute_model(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        blocks_to_swap_in: Optional[Dict[int, int]],
        blocks_to_swap_out: Optional[Dict[int, int]],
        blocks_to_copy: Optional[Dict[int, List[int]]],
151
        num_lookahead_slots: int,
152
153
154
155
156
157
158
159
    ) -> List[SamplerOutput]:
        """Perform speculative decoding on the input batch.
        """

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

160
161
        logger.info(f"spec_decode_worker.execute_model {num_lookahead_slots=}")

162
163
        # If no spec tokens, call the proposer and scorer workers normally.
        # Used for prefill.
164
        if num_lookahead_slots == 0 or len(seq_group_metadata_list) == 0:
165
166
167
168
169
170
171
172
173
174
175
176
            return self._run_no_spec(
                seq_group_metadata_list=seq_group_metadata_list,
                blocks_to_swap_in=blocks_to_swap_in,
                blocks_to_swap_out=blocks_to_swap_out,
                blocks_to_copy=blocks_to_copy,
            )

        return self._run_speculative_decoding_step(
            seq_group_metadata_list=seq_group_metadata_list,
            blocks_to_swap_in=blocks_to_swap_in,
            blocks_to_swap_out=blocks_to_swap_out,
            blocks_to_copy=blocks_to_copy,
177
            k=num_lookahead_slots,
178
179
180
181
182
183
184
185
186
187
188
189
190
191
        )

    @nvtx_range("spec_decode_worker._run_no_spec")
    def _run_no_spec(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        blocks_to_swap_in: Optional[Dict[int, int]],
        blocks_to_swap_out: Optional[Dict[int, int]],
        blocks_to_copy: Optional[Dict[int, List[int]]],
    ) -> List[SamplerOutput]:
        """Run a prefill step, without any speculation. The input is sent to the
        proposer and scorer model so that the KV cache is consistent between the
        two.
        """
192
        logger.info("run proposer worker no spec")
193
194
195
196
197
198

        self.proposer_worker.execute_model(
            seq_group_metadata_list=seq_group_metadata_list,
            blocks_to_swap_in=blocks_to_swap_in,
            blocks_to_swap_out=blocks_to_swap_out,
            blocks_to_copy=blocks_to_copy,
199
        )
200

201
        logger.info("run target worker no spec")
202
203
204
205
206
207
        sampler_output = self.scorer_worker.execute_model(
            seq_group_metadata_list=seq_group_metadata_list,
            blocks_to_swap_in=blocks_to_swap_in,
            blocks_to_swap_out=blocks_to_swap_out,
            blocks_to_copy=blocks_to_copy,
        )
208
209
        assert len(sampler_output) == 1
        sampler_output = sampler_output[0]
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234

        # Clear device tensors from sampler output. This reduces communication
        # overhead when the engine runs in a different process than the workers.
        sampler_output.probs = None
        sampler_output.sampled_tokens = None
        return [sampler_output]

    @nvtx_range("spec_decode_worker._run_speculative_decoding_step")
    def _run_speculative_decoding_step(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        blocks_to_swap_in: Optional[Dict[int, int]],
        blocks_to_swap_out: Optional[Dict[int, int]],
        blocks_to_copy: Optional[Dict[int, List[int]]],
        k: int,
    ) -> List[SamplerOutput]:
        """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.

        Returns a list of SamplerOutput, each containing a single token per
        sequence.
        """

235
        logger.info("get spec proposals")
236
        # Generate proposals using draft worker.
237
238
239
        assert blocks_to_swap_in is not None
        assert blocks_to_swap_out is not None
        assert blocks_to_copy is not None
240
241
242
243
        proposals = self.proposer_worker.get_spec_proposals(
            seq_group_metadata_list, blocks_to_swap_in, blocks_to_swap_out,
            blocks_to_copy, k)

244
        logger.info("score proposals")
245
246
247
248
249
250
251
252
253
        proposal_scores = self.scorer.score_proposals(
            seq_group_metadata_list,
            blocks_to_swap_in,
            blocks_to_swap_out,
            blocks_to_copy,
            k,
            proposals,
        )

254
        logger.info("verify proposals")
255
256
257
        accepted_token_ids = self._verify_tokens(seq_group_metadata_list,
                                                 proposal_scores, proposals, k)

258
        logger.info("create output list")
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
313
314
315
316
317
318
319
320
321
322
323
324
325
326
327
328
329
330
331
332
333
334
335
336
337
338
339
340
341
342
343
        return self._create_output_sampler_list(seq_group_metadata_list,
                                                accepted_token_ids, k)

    @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,
    ) -> torch.Tensor:
        """Determine which speculative tokens are accepted using the
        probabilities of each token according to the proposer and scorer models.
        """
        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.
        _, spec_indices = split_batch_by_proposal_len(
            seq_group_metadata_list,
            proposal_lens_list,
            select_proposal_len_zero=False)
        _, non_spec_indices = split_batch_by_proposal_len(
            seq_group_metadata_list,
            proposal_lens_list,
            select_proposal_len_zero=True)
        original_indices = spec_indices + non_spec_indices

        proposal_probs = proposal_scores.probs[spec_indices, :-1]
        bonus_token_ids = proposal_scores.token_ids[spec_indices, -1:]
        non_spec_token_ids = proposal_scores.token_ids[non_spec_indices]

        accepted_token_ids = self.rejection_sampler(
            proposal_probs,
            bonus_token_ids,
            proposals.proposal_probs,
            proposals.proposal_token_ids,
        )

        # Append output tokens from non-speculative sequences to
        # the accepted token ids tensor.
        non_spec_token_ids = non_spec_token_ids.expand(-1, max_proposal_len +
                                                       1).clone()
        non_spec_token_ids[:, 1:] = -1
        accepted_token_ids = torch.cat(
            [accepted_token_ids, non_spec_token_ids])

        # Rearrange so that results are in the order of the original seq group
        # metadata.
        accepted_token_ids[original_indices] = accepted_token_ids.clone()

        return accepted_token_ids

    def _create_output_sampler_list(
        self,
        seq_group_metadata_list: List[SequenceGroupMetadata],
        accepted_token_ids: torch.Tensor,  # shape: [batch_size, k+1]
        k: int,
    ) -> 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.
        """
        seq_ids = get_all_seq_ids(seq_group_metadata_list)

        # shape: [k+1, batch_size]
        accepted_token_ids_by_step = accepted_token_ids.transpose(0,
                                                                  1).tolist()
        sampler_output_list = []
        for token_ids_by_step in accepted_token_ids_by_step:
            if all(token_id == -1 for token_id in token_ids_by_step):
                break

            step_output_token_ids = []
            for token_id, seq_id in zip(token_ids_by_step, seq_ids):
                step_output_token_ids.append(
                    SequenceGroupOutput(
                        samples=[
                            SequenceOutput(
                                parent_seq_id=seq_id,
                                output_token=token_id,
                                # TODO Add verifier logprobs.
344
                                logprobs={token_id: Logprob(0.0)},
345
346
347
348
349
350
351
                            )
                        ],
                        prompt_logprobs=None,
                    ))
            sampler_output_list.append(
                SamplerOutput(outputs=step_output_token_ids))

352
353
        maybe_rejsample_metrics = (
            self._metrics.maybe_collect_rejsample_metrics(k))
354
355
356
357
358
359
360
361
362
363
364
365
366
367
368
369
370
371
372
373
374
375
376
377
378
379
        if maybe_rejsample_metrics is not None:
            sampler_output_list[
                0].spec_decode_worker_metrics = maybe_rejsample_metrics

        return sampler_output_list

    @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

380
381
382
383
384
385
386
387
388
389
    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

390
391
392
393
394
395
396
397
398
399
400
401
402
403
404
405
406
407
408
409
410
411

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