"vscode:/vscode.git/clone" did not exist on "3cdfe1f38b2c07a10a1681cd2d60c3bea1bae2f0"
sampler.py 54.2 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
"""A layer that samples the next tokens from the model's outputs."""
3
import itertools
lizhigong's avatar
lizhigong committed
4
import os
5
import warnings
6
from dataclasses import dataclass
7
from importlib.util import find_spec
8
from math import inf
9
from typing import Dict, Iterator, List, Optional, Tuple, Union
Woosuk Kwon's avatar
Woosuk Kwon committed
10

11
import msgspec
Woosuk Kwon's avatar
Woosuk Kwon committed
12
13
14
import torch
import torch.nn as nn

15
import vllm.envs as envs
16
from vllm.model_executor.layers.utils import apply_penalties
17
from vllm.model_executor.sampling_metadata import (SamplingMetadata,
18
19
20
                                                   SamplingTensors,
                                                   SequenceGroupToSample)
from vllm.sampling_params import SamplingType
21
22
from vllm.sequence import (VLLM_INVALID_TOKEN_ID,
                           CompletionSequenceGroupOutput, Logprob,
23
                           PromptLogprobs, SampleLogprobs, SequenceOutput)
24
from vllm.spec_decode.metrics import SpecDecodeWorkerMetrics
Woosuk Kwon's avatar
Woosuk Kwon committed
25

26
27
28
29
30
31
32
33
34
35
if envs.VLLM_USE_FLASHINFER_SAMPLER and find_spec("flashinfer"):
    import flashinfer.sampling
    # yapf: disable
    from flashinfer.sampling import (
        top_k_top_p_sampling_from_probs as flashinfer_top_k_top_p_sampling)

    # yapf: enable
else:
    flashinfer_top_k_top_p_sampling = None

Joe Runde's avatar
Joe Runde committed
36
37
38
39
40
41
42
43
44

def get_sampler() -> torch.nn.Module:
    if envs.VLLM_USE_V1:
        # Lazy import: the v1 package isn't distributed
        from vllm.v1.sample.sampler import Sampler as V1Sampler
        return V1Sampler()
    return Sampler()


45
46
47
# (num_token_ids, num_parent_ids) per sequence group.
SampleResultType = List[Tuple[List[int], List[int]]]

48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
# Types of temporary data structures used for
# computing sample_result
SampleMetadataType = Dict[SamplingType, Tuple[List[int],
                                              List[SequenceGroupToSample]]]
MultinomialSamplesType = Dict[SamplingType, torch.Tensor]
SampleResultsDictType = Dict[int, Tuple[List[int], List[int]]]


# Encapsulates temporary data structures for computing
# sample_result.
#
# * For multi-step scheduling: must be returned
#   by `Sampler.forward()` and used later to compute the pythonized
#   sample_result
#
# * For single-step scheduling: consumed immediately
#   inside `Sampler.forward()` to compute pythonized sample_result.
@dataclass
class SampleResultArgsType:
    sample_metadata: SampleMetadataType
    multinomial_samples: MultinomialSamplesType
    sample_results_dict: SampleResultsDictType
    sampling_metadata: SamplingMetadata
    greedy_samples: Optional[torch.Tensor]
    beam_search_logprobs: Optional[torch.Tensor]
guanyu1's avatar
guanyu1 committed
73
74
75
# Implemented by guanyu
@dataclass
class SampleDeviceToDevices:
lizhigong's avatar
lizhigong committed
76
77
78
79
80
81
    def __init__(self):
        self.seq_id:torch.Tensor = None
        self.random_samples:torch.Tensor = None
        self.zero_overhead:bool = False

d2d_data = SampleDeviceToDevices() 
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138

# Union of non-deferred (single-step scheduling)
# vs deferred (multi-step scheduling)
# sample result types
MaybeDeferredSampleResultType = Union[SampleResultType, SampleResultArgsType]

# Abbreviation of the _sample() return type
SampleReturnType = Tuple[MaybeDeferredSampleResultType, Optional[torch.Tensor]]


class SamplerOutput(
        msgspec.Struct,
        omit_defaults=True,  # type: ignore[call-arg]
        array_like=True):  # type: ignore[call-arg]
    """For each sequence group, we generate a list of SequenceOutput object,
    each of which contains one possible candidate for the next token.

    This data structure implements methods, so it can be used like a list, but
    also has optional fields for device tensors.
    """

    outputs: List[CompletionSequenceGroupOutput]

    # On-device tensor containing probabilities of each token.
    sampled_token_probs: Optional[torch.Tensor] = None

    # On-device tensor containing the logprobs of each token.
    logprobs: Optional["torch.Tensor"] = None

    # Holds either (1) the pythonized sampler result (single-step scheduling)
    # or (2) what will be arguments for later deferred pythonization of the
    # sampler result (muliti-step scheduling)
    deferred_sample_results_args: Optional[SampleResultArgsType] = None

    # On-device tensor containing the sampled token ids.
    sampled_token_ids: Optional[torch.Tensor] = None
    # CPU tensor containing the sampled token ids. Used during multi-step to
    # return the sampled token ids from last rank to AsyncLLMEngine to be
    # 'broadcasted' to all other PP ranks for next step.
    sampled_token_ids_cpu: Optional[torch.Tensor] = None

    # Spec decode metrics populated by workers.
    spec_decode_worker_metrics: Optional[SpecDecodeWorkerMetrics] = None

    # Optional last hidden states from the model.
    hidden_states: Optional[torch.Tensor] = None

    # Optional prefill hidden states from the model
    # (used for models like EAGLE).
    prefill_hidden_states: Optional[torch.Tensor] = None

    # Time taken in the forward pass for this across all workers
    model_forward_time: Optional[float] = None

    # Time taken in the model execute function. This will include model forward,
    # block/sync across workers, cpu-gpu sync time and sampling time.
    model_execute_time: Optional[float] = None
zhuwenwen's avatar
zhuwenwen committed
139
140
141
142
143
144
145
146
147
148
    
    # Optional lm_head logits from the model.
    logits: Optional[torch.Tensor] = None

    # tree-style cartesian candidates
    cart_candidates: Optional[torch.Tensor] = None

    # tree-style cartesian candidates
    tree_attn_masks: Optional[torch.Tensor] = None

lizhigong's avatar
lizhigong committed
149
150
151
    sampler_out_tenosr : Optional[torch.Tensor] = None

    sampler_out_ids : Optional[torch.Tensor] = None
152

153
    def __getitem__(self, idx: int) -> CompletionSequenceGroupOutput:
154
155
156
157
158
        return self.outputs[idx]

    def __setitem__(self, idx: int, value):
        self.outputs[idx] = value

159
160
161
    def __iter__(self) -> Iterator[CompletionSequenceGroupOutput]:
        return iter(self.outputs)

162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
    def __len__(self):
        return len(self.outputs)

    def __eq__(self, other: object):
        return isinstance(other,
                          self.__class__) and self.outputs == other.outputs

    def __repr__(self) -> str:
        """Show the shape of a tensor instead of its values to reduce noise.
        """
        sampled_token_probs_repr = ("None" if self.sampled_token_probs is None
                                    else self.sampled_token_probs.shape)
        sampled_token_ids_repr = ("None" if self.sampled_token_ids is None else
                                  self.sampled_token_ids.shape)
        return (
            f"SamplerOutput(outputs={self.outputs}, "
            f"sampled_token_probs={sampled_token_probs_repr}, "
            f"sampled_token_ids={sampled_token_ids_repr}, "
180
181
            f"spec_decode_worker_metrics={self.spec_decode_worker_metrics}, "
            f"logits={self.logits}, "
lizhigong's avatar
lizhigong committed
182
183
184
185
            f"tree_attn_masks={self.tree_attn_masks}, "
            f"sampler_out_tenosr={self.sampler_out_tenosr}, "
            f"sampler_out_ids={self.sampler_out_ids}, "
            f")")
186

187

Woosuk Kwon's avatar
Woosuk Kwon committed
188
class Sampler(nn.Module):
189
190
191
192
193
194
    """Samples the next tokens from the model's outputs.

    This layer does the following:
    1. Discard the hidden states that are not used for sampling (i.e., all
        tokens except the final one in each prompt).
    2. Compute the logits for the next tokens.
195
    3. Apply presence, frequency and repetition penalties.
196
197
198
199
200
    4. Apply temperature scaling.
    5. Apply top-p and top-k truncation.
    6. Sample the next tokens.
    Here, each sequence group within the batch can have different sampling
    parameters (e.g., sampling method, temperature, top-p, top-k, etc.).
201
202
203
204
205
206

    The structure of the logits tensor is coupled with the seq_groups in
    sampling_metadata. Typically, each sequence in each seq_group has one row in
    logits for the next token to be sampled; however, for a seq_group with a
    prompt request with the prompt_logprobs sampling parameter, there are rows
    in logits for each token in the input prompt.
207
    """
Woosuk Kwon's avatar
Woosuk Kwon committed
208

209
210
211
212
213
214
215
    def __init__(self):
        super().__init__()

        # Whether or not the SamplerOutput should have on-device tensors
        # containing the sampled token ids and probabilities. This is used by
        # speculative decoding.
        self.include_gpu_probs_tensor = False
216
        self.should_modify_greedy_probs_inplace = False
lizhigong's avatar
lizhigong committed
217
218
        self.zero_overhead = os.environ.get('VLLM_ZERO_OVERHEAD') == '1'
        d2d_data.zero_overhead = self.zero_overhead
219

220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
    def _init_sampling_tensors(
        self,
        logits: torch.Tensor,
        sampling_metadata: SamplingMetadata,
    ):
        """The goal here is to reuse sampling tensors between similar decode
        runs. This is possible because sampling logic does not change between
        decodes of the same sequences.
        """
        _, vocab_size = logits.shape

        # First free any existing stored sampling tensors.
        # This is necessary because some sampling tensors may
        # have pinned memory.
        self._sampling_tensors = None

        # Initialize new sampling tensors
        (sampling_tensors, do_penalties, do_top_p_top_k,
         do_min_p) = SamplingTensors.from_sampling_metadata(
             sampling_metadata, vocab_size, logits.device, logits.dtype)

        self._sampling_tensors = sampling_tensors
        self._do_penalties = do_penalties
        self._do_top_p_top_k = do_top_p_top_k
        self._do_min_p = do_min_p

Woosuk Kwon's avatar
Woosuk Kwon committed
246
247
    def forward(
        self,
248
        logits: torch.Tensor,
249
        sampling_metadata: SamplingMetadata,
250
    ) -> Optional[SamplerOutput]:
251
        """
252
253
254
255
256
257
258
259
260
261
262
263
264
        Single-step scheduling:
        * Perform GPU-side sampling computation & compute
          GPU-side logprobs tensor
        * Pythonize sampling result & logprobs tensor

        Multi-step scheduling:
        * Perform GPU-side sampling computation & compute
          GPU-side logprobs tensor
        * Defer Pythonization of sampling result & logprobs
          tensor
        * Encapsulate arguments required for deferred Pythonization
          in the :class:`SamplerOutput` structure

265
266
267
268
        Args:
            logits: (num_tokens, vocab_size).
            sampling_metadata: Metadata for sampling.
        """
269
        assert logits is not None
270
271
        _, vocab_size = logits.shape

272
        # Prepare sampling tensors with pinned memory to avoid blocking.
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
        if not sampling_metadata.reuse_sampling_tensors:
            self._init_sampling_tensors(logits, sampling_metadata)
        elif self._do_penalties:
            # In this case, the sampling tensors logic depends on
            # "output_tokens" of a sequence. As a result, we cannot
            # reuse sampling tensors, since "output_tokens" changes
            # between decode runs.
            self._init_sampling_tensors(logits, sampling_metadata)

        assert self._sampling_tensors is not None
        sampling_tensors = self._sampling_tensors
        do_penalties = self._do_penalties
        do_top_p_top_k = self._do_top_p_top_k
        do_min_p = self._do_min_p

        logits = _apply_min_tokens_penalty(logits, sampling_metadata)
289

290
        # Apply presence and frequency penalties.
291
        if do_penalties:
292
293
294
295
296
            logits = apply_penalties(logits, sampling_tensors.prompt_tokens,
                                     sampling_tensors.output_tokens,
                                     sampling_tensors.presence_penalties,
                                     sampling_tensors.frequency_penalties,
                                     sampling_tensors.repetition_penalties)
297

298
        # Use float32 to apply temperature scaling.
299
        # Use in-place division to avoid creating a new tensor.
300
        logits = logits.to(torch.float)
301
        logits.div_(sampling_tensors.temperatures.unsqueeze(dim=1))
302

303
        if do_top_p_top_k and flashinfer_top_k_top_p_sampling is None:
304
            logits = _apply_top_k_top_p(logits, sampling_tensors.top_ps,
305
306
                                        sampling_tensors.top_ks)

Roy's avatar
Roy committed
307
        if do_min_p:
308
            logits = _apply_min_p(logits, sampling_tensors.min_ps)
Roy's avatar
Roy committed
309

310
311
312
        # We use float32 for probabilities and log probabilities.
        # Compute the probabilities.
        probs = torch.softmax(logits, dim=-1, dtype=torch.float)
Zhuohan Li's avatar
Zhuohan Li committed
313
314
        # Compute the log probabilities.
        logprobs = torch.log_softmax(logits, dim=-1, dtype=torch.float)
315

Woosuk Kwon's avatar
Woosuk Kwon committed
316
        # Sample the next tokens.
317
        maybe_deferred_sample_results, maybe_sampled_tokens_tensor = _sample(
318
319
320
321
322
323
324
325
326
            probs,
            logprobs,
            sampling_metadata,
            sampling_tensors,
            include_gpu_probs_tensor=self.include_gpu_probs_tensor,
            modify_greedy_probs=self._should_modify_greedy_probs_inplace,
        )

        if self.include_gpu_probs_tensor:
327
328
329
            # Since we will defer sampler result Pythonization,
            # preserve GPU-side tensors in support of later
            # deferred pythonization of logprobs
330
            assert maybe_sampled_tokens_tensor is not None
331
            on_device_tensors = (probs, logprobs, maybe_sampled_tokens_tensor)
332
        else:
333
334
            # Since Pythonization has already happened, don't preserve
            # GPU-side tensors.
335
336
            on_device_tensors = None

337
        # Get the logprobs query results.
338
339
340
        prompt_logprobs = None
        sample_logprobs = None
        if not sampling_metadata.skip_sampler_cpu_output:
341
342
343
344
345
            # Pythonize logprobs now (GPU -> CPU); do not defer.
            assert not isinstance(maybe_deferred_sample_results,
                                  SampleResultArgsType)
            prompt_logprobs, sample_logprobs = get_logprobs(
                logprobs, sampling_metadata, maybe_deferred_sample_results)
346
347

        return _build_sampler_output(
348
            maybe_deferred_sample_results,
349
350
351
352
            sampling_metadata,
            prompt_logprobs,
            sample_logprobs,
            on_device_tensors=on_device_tensors,
353
            skip_sampler_cpu_output=sampling_metadata.skip_sampler_cpu_output,
354
            logits=logits)
355
356
357
358
359
360
361
362
363
364
365
366
367

    @property
    def _should_modify_greedy_probs_inplace(self) -> bool:
        """Whether or not the sampler should modify the probability distribution
        of greedily-sampled tokens such that multinomial sampling would sample
        the greedily-sampled token.

        In other words, if True then we set the probability of the greedily-
        sampled token to 1.

        This is used by speculative decoding, which requires that the sampling
        method be encoded into the probability distribution.
        """
368
        return self.should_modify_greedy_probs_inplace
369
370


371
372
373
374
def _apply_min_tokens_penalty(
    logits: torch.Tensor,
    sampling_metadata: SamplingMetadata,
) -> torch.Tensor:
375
376
377
    """Apply min_tokens penalty which sets stop tokens to -inf if min_tokens
        have not been generated yet
    """
378
    # list of indices in logits that will be set to -inf
379
    logits_to_penalize: List[Tuple[int, int]] = []
380
381
382
383
384
385
386
387
388
389
    logits_applied = 0
    for seq_group in sampling_metadata.seq_groups:
        seq_ids = seq_group.seq_ids
        sampling_params = seq_group.sampling_params

        sample_indices = seq_group.sample_indices
        logits_applied += len(sample_indices) + len(
            seq_group.prompt_logprob_indices)
        if not seq_group.do_sample:
            continue
390

391
        start_idx = sample_indices[0]
392
        min_tokens = sampling_params.min_tokens
393
394
        token_ids_to_penalize = sampling_params.all_stop_token_ids
        if min_tokens > 0 and token_ids_to_penalize:
395
            seqs_to_penalize: List[int] = []
396
            for j, seq_id in enumerate(seq_ids):
397
                seq_data = seq_group.seq_data[seq_id]
398
                if len(seq_data.output_token_ids_array) < min_tokens:
399
                    seqs_to_penalize.append(j)
400
401
402

            if seqs_to_penalize:
                # convert to the index into logits
403
                seqs_to_penalize = [start_idx + j for j in seqs_to_penalize]
404
405
406
407
408
409
410
411
412
                # itertools.product pairs each seq index with every token id
                logits_to_penalize.extend(
                    itertools.product(seqs_to_penalize, token_ids_to_penalize))

    if logits_to_penalize:
        # use zip and * to group indices along each dimension
        # eg. [ (1,2), (1,3), (5,6) ] -> ( (1,1,5), (2,3,6) )
        logits[tuple(zip(*logits_to_penalize))] = -float("inf")

413
    # verifies that no rows in logits were missed unexpectedly
414
    assert logits_applied == logits.shape[0]
415
416
417
    return logits


418
def _apply_top_k_top_p(
419
    logits: torch.Tensor,
420
421
    p: torch.Tensor,
    k: torch.Tensor,
422
) -> torch.Tensor:
423
424
425
426
427
428
429
430
    logits_sort, logits_idx = logits.sort(dim=-1, descending=False)

    # Apply top-k.
    top_k_mask = logits_sort.size(1) - k.to(torch.long)
    # Get all the top_k values.
    top_k_mask = logits_sort.gather(1, top_k_mask.unsqueeze(dim=1))
    top_k_mask = logits_sort < top_k_mask
    logits_sort.masked_fill_(top_k_mask, -float("inf"))
Woosuk Kwon's avatar
Woosuk Kwon committed
431
432

    # Apply top-p.
433
    probs_sort = logits_sort.softmax(dim=-1)
434
435
436
437
438
    probs_sum = probs_sort.cumsum(dim=-1)
    top_p_mask = probs_sum <= 1 - p.unsqueeze(dim=1)
    # at least one
    top_p_mask[:, -1] = False
    logits_sort.masked_fill_(top_p_mask, -float("inf"))
Woosuk Kwon's avatar
Woosuk Kwon committed
439
440

    # Re-sort the probabilities.
441
442
443
    logits = torch.empty_like(logits_sort).scatter_(dim=-1,
                                                    index=logits_idx,
                                                    src=logits_sort)
444
    return logits
445
446


Roy's avatar
Roy committed
447
448
def _apply_min_p(
    logits: torch.Tensor,
449
    min_p: torch.Tensor,
Roy's avatar
Roy committed
450
451
452
453
454
455
456
) -> torch.Tensor:
    """
    Adapted from
    https://github.com/oobabooga/text-generation-webui/blob/3146124ec01f02c8fb1650a6517cf1b60b537aaf/modules/sampler_hijack.py#L16C17-L16C17
    """
    probs = torch.softmax(logits, dim=-1)
    top_probs, _ = probs.max(dim=-1, keepdim=True)
457
    scaled_min_p = min_p.unsqueeze_(dim=1) * top_probs
Roy's avatar
Roy committed
458
    tokens_to_remove = probs < scaled_min_p
459
    logits = logits.masked_fill_(tokens_to_remove, -float("inf"))
Roy's avatar
Roy committed
460
461
462
463

    return logits


464
def _greedy_sample(
465
    selected_seq_groups: List[SequenceGroupToSample],
466
    samples: torch.Tensor,
467
) -> SampleResultType:
468
469
470
471
472
473
474
475
476
477
478
479
    """Run greedy sampling on a given samples.

    Args:
        selected_seq_groups: A list of sequence groups batched.
        samples: (num_selected_samples,) A tensor of samples. The length of
            samples could be smaller than selected_seq_groups if
            seq_group.do_sample is False.
    Returns:
        Tuple of (next_token_ids, parent_ids). The length of returned list is
        same as the length of selected_seq_groups. If the corresponding
        seq_group has do_sample=False, tuple contains ([], [])
    """
480
    samples_lst = samples.tolist()
481
    sample_idx = 0
482
    results: SampleResultType = []
483
    for seq_group in selected_seq_groups:
484
485
486
487
488
        if not seq_group.do_sample:
            results.append(([], []))
            continue

        seq_ids = seq_group.seq_ids
489
490
491
492
        num_parent_seqs = len(seq_ids)
        assert num_parent_seqs == 1, (
            "Greedy sampling should have only one seq.")
        parent_ids = list(range(num_parent_seqs))
493
        next_token_ids = [samples_lst[sample_idx]]
494
495
496
497
498
499
        results.append((next_token_ids, parent_ids))
        sample_idx += num_parent_seqs
    return results


def _random_sample(
500
    selected_seq_groups: List[SequenceGroupToSample],
501
    random_samples: torch.Tensor,
502
) -> SampleResultType:
503
504
505
506
507
508
509
510
511
512
513
514
    """Run random sampling on a given samples.

    Args:
        selected_seq_groups: A list of sequence groups batched.
        random_samples: (num_selected_samples,) A tensor of samples. The
            length of samples could be smaller than selected_seq_groups if
            seq_group.do_sample is False.
    Returns:
        Tuple of (next_token_ids, parent_ids). The length of returned list is
        same as the length of selected_seq_groups. If the corresponding
        seq_group has do_sample=False, tuple contains ([], [])
    """
515
    # Find the maximum n value of the prompt phase requests.
lizhigong's avatar
lizhigong committed
516
517
    if not d2d_data.zero_overhead:
        random_samples = random_samples.cpu()
518
    sample_idx = 0
519
    results: SampleResultType = []
520
521
522
523
524
525
526
527
    for seq_group in selected_seq_groups:
        if not seq_group.do_sample:
            results.append(([], []))
            continue

        seq_ids = seq_group.seq_ids
        sampling_params = seq_group.sampling_params
        is_prompt = seq_group.is_prompt
528
529
530
        num_parent_seqs = len(seq_ids)
        if is_prompt:
            # Prompt phase.
531
            parent_ids = [0] * sampling_params.n
lizhigong's avatar
lizhigong committed
532
533
534
535
536
            if d2d_data.zero_overhead:
                next_token_ids = [0] * sampling_params.n
            else:
                next_token_ids = random_samples[
                    sample_idx, :sampling_params.n].tolist()
537
538
539
        else:
            # Generation phase.
            parent_ids = list(range(num_parent_seqs))
lizhigong's avatar
lizhigong committed
540
541
542
543
544
            if d2d_data.zero_overhead:
                next_token_ids = [0] * num_parent_seqs
            else:
                next_token_ids = random_samples[sample_idx:sample_idx +
                                                num_parent_seqs, 0].tolist()
545
546
547
548
549
550
        results.append((next_token_ids, parent_ids))
        sample_idx += num_parent_seqs
    return results


def _beam_search_sample(
551
    selected_seq_groups: List[SequenceGroupToSample],
552
    logprobs: torch.Tensor,
553
) -> SampleResultType:
554
555
556
557
558
559
560
561
562
563
564
    """Run beam sampling on a given samples.

    Args:
        selected_seq_groups: A list of sequence groups batched.
        logprobs: (num_selected_samples, vocab_size,) A tensor of logprob
        on selected sample indices.
    Returns:
        Tuple of (next_token_ids, parent_ids). The length of returned list is
        same as the length of selected_seq_groups. If the corresponding
        seq_group has do_sample=False, tuple contains ([], [])
    """
565
566
567
568
569
570
571
    # We sample 2 * beam_width candidates to make sure that with high
    # probability we can get `beam_width` candidates in addition to
    # the finished sequences for the next iteration. See
    # https://github.com/tensorflow/tensor2tensor/blob/bafdc1b67730430d38d6ab802cbd51f9d053ba2e/tensor2tensor/utils/beam_search.py#L557-L563
    # for details. See also HF reference:
    # https://github.com/huggingface/transformers/blob/a4dd53d88e4852f023332d284ff07a01afcd5681/src/transformers/generation/utils.py#L3063-L3065
    #
572
    # NOTE: Beam search is not vectorized, so its speed can be slower than
573
574
    # other sampling methods.
    sample_idx = 0
575
    results: SampleResultType = []
576
577
578
579
580
581
582
    for seq_group in selected_seq_groups:
        if not seq_group.do_sample:
            results.append(([], []))
            continue

        is_prompt = seq_group.is_prompt
        seq_ids, sampling_params = seq_group.seq_ids, seq_group.sampling_params
583
        num_parent_seqs = len(seq_ids)
584
        beam_width = sampling_params.n
585
586
587
588
589
590
591
592
593
594
595
        seq_group_logprobs = logprobs[sample_idx:sample_idx + num_parent_seqs]
        if is_prompt:
            # Prompt phase.
            assert num_parent_seqs == 1, (
                "Prompt input should have only one seq.")
            parent_ids = [0] * (2 * beam_width)
            _, next_token_ids = torch.topk(seq_group_logprobs[0],
                                           2 * beam_width)
            next_token_ids = next_token_ids.tolist()
        else:
            # Generation phase.
596
            cumulative_logprobs: List[float] = [
597
598
                seq_group.seq_data[seq_id].cumulative_logprob
                for seq_id in seq_ids
599
            ]
600
            cumulative_logprobs_tensor = torch.tensor(
601
602
603
604
                cumulative_logprobs,
                dtype=torch.float,
                device=seq_group_logprobs.device)
            seq_group_logprobs = (seq_group_logprobs +
605
                                  cumulative_logprobs_tensor.unsqueeze(dim=1))
606
607
608
609
610
611
612
613
614
615
            _, topk_ids = torch.topk(seq_group_logprobs.flatten(),
                                     2 * beam_width)
            topk_ids = topk_ids.tolist()
            vocab_size = seq_group_logprobs.size(-1)
            parent_ids = [i // vocab_size for i in topk_ids]
            next_token_ids = [i % vocab_size for i in topk_ids]
        results.append((next_token_ids, parent_ids))
        sample_idx += num_parent_seqs
    assert sample_idx == logprobs.size(0)
    return results
616
617


618
619
620
621
622
623
624
625
# torch.multinomial forces a GPU<->CPU sync.
# Therefore, we use an optimized implementation instead.
# Note that we always sample with replacement.
# probs will be modified in place, but this is fine, as we pass
# in a copy already.
def _multinomial(
    probs: torch.Tensor,
    num_samples: int,
626
    seq_groups: Optional[List[SequenceGroupToSample]] = None,
Nick Hill's avatar
Nick Hill committed
627
) -> torch.Tensor:
628
    if num_samples > 1:
629
        probs = probs.repeat_interleave(num_samples, dim=0)
Nick Hill's avatar
Nick Hill committed
630
631
632
633
634
    q = torch.empty_like(probs)
    if seq_groups is None:
        q.exponential_()
    else:
        sample_idx = 0
635
636
        for seq_group in seq_groups:
            seq_ids = seq_group.seq_ids
637
638
639
640
641
            stride = len(seq_ids) * num_samples
            assert seq_group.generator is not None
            q[sample_idx:sample_idx +
              stride].exponential_(generator=seq_group.generator)
            sample_idx += stride
642
643
644
    return probs.div_(q).argmax(dim=1).view(-1, num_samples)


645
646
647
648
649
650
651
652
653
654
655
656
657
658
659
660
661
662
663
664
665
666
667
668
669
670
671
672
673
674
675
676
677
678
679
680
681
682
def _top_k_top_p_multinomial_with_flashinfer(
        probs: torch.Tensor, top_ks: torch.Tensor, top_ps: torch.Tensor,
        num_samples: int, seq_groups: Optional[List[SequenceGroupToSample]]):
    max_top_k_round = 32
    if num_samples > 1:
        probs = probs.repeat_interleave(num_samples, dim=0)
        top_ks = top_ks.repeat_interleave(num_samples)
        top_ps = top_ps.repeat_interleave(num_samples)
    batch_size = probs.shape[0]
    uniform_samples = torch.empty((max_top_k_round, batch_size),
                                  device=probs.device)
    if seq_groups is None:
        uniform_samples.uniform_()
    else:
        sample_idx = 0
        for seq_group in seq_groups:
            seq_ids = seq_group.seq_ids
            stride = len(seq_ids) * num_samples
            assert seq_group.generator is not None
            uniform_samples[:, sample_idx:sample_idx +
                            stride].uniform_(generator=seq_group.generator)
            sample_idx += stride
    batch_next_token_ids, success = flashinfer_top_k_top_p_sampling(
        probs,
        uniform_samples,
        top_ks,
        top_ps,
    )
    if not success.all():
        warnings.warn("FlashInfer rejection sampling failed, fallback.",
                      stacklevel=1)
        probs = flashinfer.sampling.top_k_renorm_prob(probs, top_ks)
        probs = flashinfer.sampling.top_p_renorm_prob(probs, top_ps)
        batch_next_token_ids = flashinfer.sampling.sampling_from_probs(
            probs, uniform_samples[0])
    return batch_next_token_ids.view(-1, num_samples)


683
684
685
686
687
688
689
690
691
692
693
694
695
696
697
698
699
700
701
702
703
704
705
706
707
708
709
710
711
712
713
714
715
716
717
718
719
720
721
722
723
def get_pythonized_sample_results(
        sample_result_args: SampleResultArgsType) -> SampleResultType:
    '''This function consumes GPU-side sampler results and computes
    Pythonized CPU-side sampler results (GPU -> CPU sync.)

    Single-step scheduling: this function is invoked at sampling-time
    for immediate Pythonization.

    Multi-step scheduling: Pythonization is deferred until after multiple
    GPU-side steps have been completed.

    Args:
      sample_result_args: GPU-side inputs to the Pythonization process

    Returns:
      Pythonized sampler results
    '''

    (
        sample_metadata,
        sampling_metadata,
        greedy_samples,
        multinomial_samples,
        beam_search_logprobs,
        sample_results_dict,
    ) = (
        sample_result_args.sample_metadata,
        sample_result_args.sampling_metadata,
        sample_result_args.greedy_samples,
        sample_result_args.multinomial_samples,
        sample_result_args.beam_search_logprobs,
        sample_result_args.sample_results_dict,
    )

    for sampling_type in SamplingType:
        if sampling_type not in sample_metadata:
            continue
        (seq_group_id, seq_groups) = sample_metadata[sampling_type]
        if sampling_type == SamplingType.GREEDY:
            sample_results = _greedy_sample(seq_groups, greedy_samples)
        elif sampling_type in (SamplingType.RANDOM, SamplingType.RANDOM_SEED):
lizhigong's avatar
lizhigong committed
724
            d2d_data.random_samples = multinomial_samples[sampling_type]#记录random_samples的数据
725
726
727
728
729
730
731
732
733
734
735
736
737
            sample_results = _random_sample(seq_groups,
                                            multinomial_samples[sampling_type])
        elif sampling_type == SamplingType.BEAM:
            sample_results = _beam_search_sample(seq_groups,
                                                 beam_search_logprobs)
        sample_results_dict.update(zip(seq_group_id, sample_results))

    return [
        sample_results_dict.get(i, ([], []))
        for i in range(len(sampling_metadata.seq_groups))
    ]


738
def _sample_with_torch(
739
740
    probs: torch.Tensor,
    logprobs: torch.Tensor,
741
    sampling_metadata: SamplingMetadata,
742
    sampling_tensors: SamplingTensors,
743
744
    include_gpu_probs_tensor: bool,
    modify_greedy_probs: bool,
745
746
747
) -> SampleReturnType:
    '''Torch-oriented _sample() implementation.

748
    Single-step scheduling:
749
750
751
752
753
754
755
756
757
    * Perform GPU-side sampling computation
    * Immediately Pythonize sampling result

    Multi-step scheduling:
    * Perform GPU-side sampling computation
    * Defer Pythonization & preserve GPU-side
      tensors required for Pythonization
    '''

758
759
760
    categorized_seq_group_ids: Dict[SamplingType, List[int]] = {
        t: []
        for t in SamplingType
lizhigong's avatar
lizhigong committed
761
762
    }
    d2d_data.seq_id = torch.zeros(len(sampling_metadata.seq_groups))
763
764
    categorized_sample_indices = sampling_metadata.categorized_sample_indices
    for i, seq_group in enumerate(sampling_metadata.seq_groups):
lizhigong's avatar
lizhigong committed
765
        d2d_data.seq_id[i] = seq_group.seq_ids[0]
766
        sampling_params = seq_group.sampling_params
767
768
        sampling_type = sampling_params.sampling_type
        categorized_seq_group_ids[sampling_type].append(i)
769

770
771
772
773
774
    sample_results_dict: SampleResultsDictType = {}
    sample_metadata: SampleMetadataType = {}
    multinomial_samples: MultinomialSamplesType = {}
    greedy_samples: Optional[torch.Tensor] = None
    beam_search_logprobs: Optional[torch.Tensor] = None
775

776
777
    # Create output tensor for sampled token ids.
    if include_gpu_probs_tensor:
778
779
780
781
        sampled_token_ids_tensor = torch.full((logprobs.shape[0], 1),
                                              VLLM_INVALID_TOKEN_ID,
                                              dtype=torch.long,
                                              device=logprobs.device)
782
783
784
    else:
        sampled_token_ids_tensor = None

785
786
    # Counterintiutively, having two loops here is actually faster.
    # The first loop can run without waiting on GPU<->CPU sync.
787
    for sampling_type in SamplingType:
788
        sample_indices = categorized_sample_indices[sampling_type]
789
        num_tokens = len(sample_indices)
790
791
        if num_tokens == 0:
            continue
792

793
794
795
796
        seq_group_id = categorized_seq_group_ids[sampling_type]
        seq_groups = [sampling_metadata.seq_groups[i] for i in seq_group_id]
        sample_metadata[sampling_type] = (seq_group_id, seq_groups)
        long_sample_indices = sample_indices.long()
797
        if sampling_type == SamplingType.GREEDY:
798
            greedy_samples = torch.argmax(logprobs[long_sample_indices],
799
                                          dim=-1)
800

801
            if sampled_token_ids_tensor is not None:
802
803
804
805
806
807
808
809
810
811
812
813
                # Store sampled tokens in output tensor.
                sampled_token_ids_tensor[
                    long_sample_indices] = greedy_samples.unsqueeze(-1)

            if modify_greedy_probs:
                # If required, modify the probabilities such that sampling from
                # the modified distribution would always sample the argmax
                # token id.
                _modify_greedy_probs_inplace(logprobs, probs,
                                             long_sample_indices,
                                             greedy_samples)

Nick Hill's avatar
Nick Hill committed
814
        elif sampling_type in (SamplingType.RANDOM, SamplingType.RANDOM_SEED):
815
            max_n_in_batch = 1
816
817
818
            for seq_group in seq_groups:
                if seq_group.is_prompt:
                    sampling_params = seq_group.sampling_params
819
                    max_n_in_batch = max(max_n_in_batch, sampling_params.n)
820
821
822
823
824
825
826
827
828
            seq_groups_arg = (None if sampling_type == SamplingType.RANDOM else
                              seq_groups)

            if flashinfer_top_k_top_p_sampling is not None:
                multinomial_samples[
                    sampling_type] = _top_k_top_p_multinomial_with_flashinfer(
                        probs[long_sample_indices],
                        sampling_tensors.top_ks[long_sample_indices],
                        sampling_tensors.top_ps[long_sample_indices],
829
                        max_n_in_batch,
830
831
832
833
834
                        seq_groups_arg,
                    )
            else:
                multinomial_samples[sampling_type] = _multinomial(
                    probs[long_sample_indices],
835
                    max_n_in_batch,
836
                    seq_groups=seq_groups_arg)
837

838
            if sampled_token_ids_tensor is not None:
839
                # Store sampled tokens in output tensor.
840
841
                sampled_token_ids_tensor[long_sample_indices] = \
                    multinomial_samples[sampling_type].to(torch.long)
842

843
844
845
846
847
        elif sampling_type == SamplingType.BEAM:
            beam_search_logprobs = logprobs[sample_indices]
        else:
            raise ValueError(f"Unsupported sampling type: {sampling_type}")

848
849
850
851
852
853
854
855
856
857
    # Encapsulate arguments for computing Pythonized sampler
    # results, whether deferred or otherwise.
    maybe_deferred_args = SampleResultArgsType(
        sampling_metadata=sampling_metadata,
        sample_metadata=sample_metadata,
        multinomial_samples=multinomial_samples,
        greedy_samples=greedy_samples,
        beam_search_logprobs=beam_search_logprobs,
        sample_results_dict=sample_results_dict)

858
    if not sampling_metadata.skip_sampler_cpu_output:
859
860
861
862
863
        # GPU<->CPU sync happens here.
        # This also converts the sampler output to a Python object.
        # Return Pythonized sampler result & sampled token ids
        return get_pythonized_sample_results(
            maybe_deferred_args), sampled_token_ids_tensor
864
    else:
865
866
867
868
869
870
        # Defer sampler result Pythonization; return deferred
        # Pythonization args & sampled token ids
        return (
            maybe_deferred_args,
            sampled_token_ids_tensor,
        )
871
872


873
def _sample(
874
875
876
877
878
879
    probs: torch.Tensor,
    logprobs: torch.Tensor,
    sampling_metadata: SamplingMetadata,
    sampling_tensors: SamplingTensors,
    include_gpu_probs_tensor: bool,
    modify_greedy_probs: bool,
880
) -> SampleReturnType:
881
882
883
884
885
886
887
888
889
890
    """
    Args:
        probs: (num_query_tokens_in_batch, num_vocab)
        logprobs: (num_query_tokens_in_batch, num_vocab)
        sampling_metadata: The metadata for a batch for sampling.
        sampling_tensors: Tensors that include sampling related metadata.

    Returns:
        (next_token_ids, parent_seq_ids) for each seq group in a batch.
            If sampling is skipped, it returns ([], [])
891
        sampled_token_ids_tensor: A tensor of sampled token ids.
892
    """
893
894
895
896
    return _sample_with_torch(
        probs,
        logprobs,
        sampling_metadata,
897
        sampling_tensors,
898
899
900
        include_gpu_probs_tensor=include_gpu_probs_tensor,
        modify_greedy_probs=modify_greedy_probs,
    )
901
902


903
def _get_ranks(x: torch.Tensor, indices: torch.Tensor) -> torch.Tensor:
904
905
906
907
908
909
    """
    This function calculates the ranks of the chosen tokens in a logprob tensor.

    Args:
        x (torch.Tensor): 2D logprob tensor of shape (N, M)
                        where N is the no. of tokens and M is the vocab dim.
910
        indices (torch.Tensor): List of chosen token indices.
911
912
913

    Returns:
        torch.Tensor: 1D tensor of shape (N,) where N is the no. of tokens.
914
                    Each element in the returned tensor represents the rank
915
916
                    of the chosen token in the input logprob tensor.
    """
917
918
    vals = x[torch.arange(0, len(x), device=x.device, dtype=indices.dtype),
             indices]
919
920
921
    result = (x > vals[:, None])
    del vals
    return result.sum(1).add_(1)
922
923


924
def get_logprobs(
925
    logprobs: torch.Tensor,
926
    sampling_metadata: SamplingMetadata,
927
    sample_results: SampleResultType,
928
) -> Tuple[List[Optional[PromptLogprobs]], List[SampleLogprobs]]:
929
    """Return sample logprobs and prompt logprobs.
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960

    The logic consists of 3 parts.
    - Select indices to compute logprob from, ranks of token ids, and
        the top k token ids from logprobs.
    - Compute prompt logprobs if required.
    - Compute sample logprobs if required.

    Args:
        logprobs: (num_query_tokens_across_batch, num_vocab). Each query token's
            logprob per vocab. Sequence groups' query tokens are batched in a
            single flattened tensor. For example, assuming there are N
            seq groups, it is sorted by prefill tokens for seq_group_1 (if
            prompt logprob is enabled), decode tokens for seq_group_1 (if
            sampling is required), prefill tokens for seq_group_2, ...
        sampling_metadata: The sampling metadata.
        sample_results: (num_seq_groups) The tuple of (next_token_ids,
            parent_ids) for each sequence group. When beam search is enabled,
            sample_results can contain different number of seq_ids from
            sampling_metadata.seq_groups. It is because beam search creates
            2 * BEAM_WIDTH number of samples (whereas there are only up to
            BEAM_WIDTH number of seq_ids).

    Returns:
        A tuple of prompt and sample logprobs per sequence group in a batch.
    """
    # The index of query token to calculate logprobs. It includes both
    # prompt and sample logprob indices.
    query_indices: List[int] = []
    # The next token ids to get the logprob value from.
    next_token_ids: List[int] = []
    # The largest requested number of logprobs. We find logprobs as many as the
961
962
963
    # largest num logprobs in this API. If every logprobs is None, it will be
    # set to -1.
    largest_num_logprobs = -1
964
965
966
967
968
969
970
971
972

    # Select indices to compute logprob from, ranks of token ids, and the top
    # k token ids from logprobs.
    for (seq_group, sample_result) in zip(sampling_metadata.seq_groups,
                                          sample_results):
        sampling_params = seq_group.sampling_params

        # Update indices and tokens for prompt logprobs.
        if (seq_group.is_prompt
973
974
975
                and sampling_params.prompt_logprobs is not None):
            largest_num_logprobs = max(largest_num_logprobs,
                                       sampling_params.prompt_logprobs)
976
977
978
979
980
981
982
983
984
985
986
987
988
989
990
991
992
993
994
995
996
997
998
            next_prompt_tokens = _get_next_prompt_tokens(seq_group)
            query_indices.extend(seq_group.prompt_logprob_indices)
            next_token_ids.extend(next_prompt_tokens)

        # Update indices and next tokenes for sample logprob.
        if seq_group.do_sample:
            token_ids, parent_seq_ids = sample_result
            # NOTE: We cannot directly use sample_indices because
            # sample_indices only contain parent seq_ids of a previous step.
            # The current step may have different number of seq_ids, and
            # we can obtain it from `sample_result[1]`.
            query_idx = seq_group.sample_indices[0]
            query_indices.extend(
                [query_idx + parent_id for parent_id in parent_seq_ids])
            next_token_ids.extend(token_ids)

            if sampling_params.logprobs is not None:
                largest_num_logprobs = max(largest_num_logprobs,
                                           sampling_params.logprobs)

        assert len(next_token_ids) == len(query_indices)

    if len(query_indices) == 0:
999
1000
        empty_sampled_logprob: SampleLogprobs = []
        empty_prompt_logprob: Optional[PromptLogprobs] = None
1001
1002
        return [empty_prompt_logprob], [empty_sampled_logprob]

1003
1004
1005
1006
1007
    selected_logprobs, ranks = None, None
    top_logprobs, top_token_ids = None, None

    # If largest_num_logprobs == -1, i.e. no logprobs are requested, we can
    # skip the whole logprob calculation.
1008
    if largest_num_logprobs >= 0:
1009
1010
1011
1012
1013
1014
1015
1016
1017
1018
1019
1020
1021
1022
1023
1024
1025
1026
1027
1028
1029
1030
1031
1032
1033
        query_indices_gpu = torch.tensor(query_indices, device=logprobs.device)
        next_token_ids_gpu = torch.tensor(next_token_ids,
                                          device=logprobs.device)

        # (num_selected_query_tokens, num_logprobs). Note that query_indices can
        # contain duplicates if beam search is enabled.
        selected_logprobs = logprobs[[
            query_indices_gpu,
            next_token_ids_gpu,
        ]]
        ranks = _get_ranks(
            logprobs[query_indices_gpu],
            next_token_ids_gpu,
        )
        assert selected_logprobs.shape[0] == ranks.shape[0]

        # We need to compute top k only if there exists logprobs > 0.
        if largest_num_logprobs > 0:
            # Logprobs of topk tokens for a batch of sequence groups.
            # (num_query_tokens_across_batch).
            top_logprobs, top_token_ids = torch.topk(logprobs,
                                                     largest_num_logprobs,
                                                     dim=-1)
            top_logprobs = top_logprobs.to('cpu')
            top_token_ids = top_token_ids.to('cpu')
1034

1035
1036
        selected_logprobs = selected_logprobs.to('cpu')
        ranks = ranks.to('cpu')
1037
1038
1039
1040
1041
1042
1043
1044
1045
1046
1047
1048
1049
1050
1051
1052
1053
1054
1055
1056
1057
1058
1059
1060
1061
1062
1063
1064
1065
1066
1067
1068
1069
1070
1071
1072
1073
1074
1075

    # Find prompt/sample logprobs.
    prompt_logprobs_per_seq_group: List[Optional[PromptLogprobs]] = []
    sample_logprobs_per_seq_group: List[SampleLogprobs] = []
    top_logprob_idx = 0
    selected_logprobs_idx = 0

    for seq_group, sample_result in zip(sampling_metadata.seq_groups,
                                        sample_results):
        (prompt_logprobs, top_logprob_idx,
         selected_logprobs_idx) = _get_prompt_logprob_if_needed(
             seq_group, selected_logprobs, ranks, top_token_ids, top_logprobs,
             selected_logprobs_idx, top_logprob_idx)
        prompt_logprobs_per_seq_group.append(prompt_logprobs)

        (sampled_logprobs, top_logprob_idx,
         selected_logprobs_idx) = _get_sampled_logprob_if_needed(
             seq_group, sample_result, selected_logprobs, ranks, top_token_ids,
             top_logprobs, selected_logprobs_idx, top_logprob_idx)
        sample_logprobs_per_seq_group.append(sampled_logprobs)

    return prompt_logprobs_per_seq_group, sample_logprobs_per_seq_group


def _get_prompt_logprob_if_needed(
    seq_group: SequenceGroupToSample,
    selected_logprobs: torch.Tensor,
    ranks: torch.Tensor,
    top_token_ids: torch.Tensor,
    top_logprobs: torch.Tensor,
    selected_logprobs_idx: int,
    top_logprob_idx: int,
):
    """Compute the prompt logprob from a sequence group if needed."""
    sampling_params = seq_group.sampling_params
    is_prompt = seq_group.is_prompt

    # Find prompt logprobs
    prompt_logprobs: Optional[PromptLogprobs] = None
1076
    if is_prompt and sampling_params.prompt_logprobs is not None:
1077
1078
1079
        prompt_logprobs = []
        num_logprobs = sampling_params.prompt_logprobs
        next_prompt_tokens = _get_next_prompt_tokens(seq_group)
1080
1081
1082
1083
1084
1085
1086
1087
1088
        # Pre-select indexes and create a list. It is faster than calling .item
        # repetitively.
        selected_logprob_items = selected_logprobs[
            selected_logprobs_idx:selected_logprobs_idx +
            len(next_prompt_tokens)].tolist()
        rank_items = ranks[selected_logprobs_idx:selected_logprobs_idx +
                           len(next_prompt_tokens)].tolist()

        for idx, token_id in enumerate(next_prompt_tokens):
1089
1090
1091
            # Calculate the prompt logprob of the real prompt tokens.
            # {token_id: (logprob, rank_from_vocab)}
            prompt_logprobs_dict: Dict[int, Tuple[float, int]] = {
1092
                token_id: (selected_logprob_items[idx], rank_items[idx])
1093
            }
1094

1095
1096
            # Add top K prompt logprobs along with its rank.
            if num_logprobs > 0:
1097
1098
1099
1100
1101
1102
1103
1104
1105
1106
1107
1108
                top_ids = top_token_ids[
                    top_logprob_idx, :num_logprobs].tolist()
                top_probs = top_logprobs[
                    top_logprob_idx, :num_logprobs].tolist()
                # Top K is already sorted by rank, so we can use 1 ~
                # num_logprobs + 1 for rank.
                top_ranks = range(1, num_logprobs + 1)
                prompt_logprobs_dict.update({
                    top_id: (top_prob, rank)
                    for top_id, top_prob, rank in zip(top_ids, top_probs,
                                                      top_ranks)
                })
1109
1110
1111
1112
1113
1114
            prompt_logprobs.append({
                token_id: Logprob(*logprob_and_rank)
                for token_id, logprob_and_rank in prompt_logprobs_dict.items()
            })
            # + 1 to go to the next prompt token.
            top_logprob_idx += 1
1115
1116
1117

        # + len(next_prompt_tokens) to go to the next prompt.
        selected_logprobs_idx += len(next_prompt_tokens)
1118
1119
1120
1121
1122
1123
1124
1125
1126
1127
1128
1129
1130
1131
1132
    return prompt_logprobs, top_logprob_idx, selected_logprobs_idx


def _get_sampled_logprob_if_needed(
    seq_group: SequenceGroupToSample,
    sample_result: Tuple[List[int], List[int]],
    selected_logprobs: torch.Tensor,
    ranks: torch.Tensor,
    top_token_ids: torch.Tensor,
    top_logprobs: torch.Tensor,
    selected_logprobs_idx: int,
    top_logprob_idx: int,
):
    """Compute the sample logprob if needed."""
    seq_ids = seq_group.seq_ids
1133
    num_logprobs = seq_group.sampling_params.logprobs
1134
1135
1136
1137
1138
    sampled_logprobs: SampleLogprobs = []
    next_token_ids, parent_seq_ids = sample_result

    if seq_group.do_sample:
        assert len(next_token_ids) > 0
1139
        if num_logprobs is None:
1140
1141
1142
1143
1144
1145
1146
1147
1148
1149
1150
1151
1152
1153
1154
1155
1156
1157
1158
1159
1160
1161
1162
1163
1164
1165
1166
1167
1168
1169
1170
1171
1172
1173
1174
1175
1176
            for next_token_id in next_token_ids:
                # Use a dummy logprob
                sampled_logprobs.append({next_token_id: Logprob(inf)})
        else:
            # Pre-select items from tensor. tolist() is faster than repetitive
            # `.item()` calls.
            selected_logprob_items = selected_logprobs[
                selected_logprobs_idx:selected_logprobs_idx +
                len(next_token_ids)].tolist()
            rank_items = ranks[selected_logprobs_idx:selected_logprobs_idx +
                               len(next_token_ids)].tolist()
            for idx, (next_token_id, parent_id) in enumerate(
                    zip(next_token_ids, parent_seq_ids)):
                # Get the logprob of a sampled token.
                sampled_logprobs_dict = {
                    next_token_id:
                    (selected_logprob_items[idx], rank_items[idx])
                }
                if num_logprobs is not None and num_logprobs > 0:
                    # Get top K logprobs.
                    top_ids = top_token_ids[top_logprob_idx +
                                            parent_id, :num_logprobs].tolist()
                    top_probs = top_logprobs[
                        top_logprob_idx + parent_id, :num_logprobs].tolist()
                    # Top K is already sorted by rank, so we can use 1 ~
                    # num_logprobs + 1 for rank.
                    top_ranks = range(1, num_logprobs + 1)
                    sampled_logprobs_dict.update({
                        top_id: (top_prob, rank)
                        for top_id, top_prob, rank in zip(
                            top_ids, top_probs, top_ranks)
                    })

                sampled_logprobs.append({
                    token_id: Logprob(*logprob_and_rank)
                    for token_id, logprob_and_rank in
                    sampled_logprobs_dict.items()
1177
1178
1179
1180
1181
1182
1183
1184
1185
1186
                })

        # NOTE: This part of code is not intuitive. `selected_logprobs` include
        # logprobs for the current step, which has len(next_token_ids) tokens
        # per sequence group. `logprobs` includes logprobs from the previous
        # steps, which has len(seq_ids) tokens per sequence group.

        # Iterate to the next sequence group in a batch.
        selected_logprobs_idx += len(next_token_ids)
        # Iterate to the next sequence group in a batch.
1187
1188
        top_logprob_idx += len(seq_ids)
    return sampled_logprobs, top_logprob_idx, selected_logprobs_idx
1189
1190


1191
1192
1193
1194
1195
1196
1197
1198
1199
1200
1201
1202
1203
1204
1205
1206
1207
1208
1209
1210
1211
def _modify_greedy_probs_inplace(logprobs: torch.Tensor, probs: torch.Tensor,
                                 sample_indices: torch.Tensor,
                                 greedy_samples: torch.Tensor) -> None:
    """Modify the probability distributions of the greedily-sampled tokens such
    that each sampled token has a "probability" of 1.0. This is required by
    speculative decoding, which depends on the sampling method being encoded
    within the probability distribution for correctness.

    # Why do we only need to do this for greedy sampling?

    vLLM's sampler performs the following steps for greedy or multinomial
    (random) sampling:
        1. Get logits from model.
        2. Modify logits according to per-sequence sampling parameters.
            - Multiply by temperature, top-k and top-p masking, penalize tokens
                according to their frequency, etc.
        3. Sample a token.
            - Random sampling simply samples from the modified probability
                distribution.
            - Greedy sampling performs `argmax` to obtain the token with the
                highest likelihood.
1212

1213
1214
1215
1216
1217
1218
1219
1220
1221
1222
1223
1224
1225
1226
1227
1228
1229
1230
1231
1232
1233
1234
1235
    Ignoring greedy sampling for a moment, we find that the computed probability
    distribution has the following property: we can sample from it independently
    and find that the token sampled by the Sampler has a frequency corresponding
    to how often we see it in our sampling. In other words, for tokens sampled
    with vLLM's random SamplingType, the computed probability distribution
    encodes the sampling methodology completely.

    Greedy sampling does not normally have this property. vLLM modifies logits
    according to sampling params, then performs `argmax`, then returns the
    sampled token and the computed probability distribution. If we sample from
    the distribution, we'll find the likelihood of the greedily-sampled token
    is not always 1.0.

    Since lossless speculative decoding requires that the sampling methodology
    be encoded within the probability distribution, we are motivated to modify
    the probability distribution such that the sampled token has probability 1
    when speculative decoding is used.

    NOTE: Alternatively, we could use an extremely low temperature to achieve
    greedy sampling using multinomial computation and unite the codepaths. This
    has implications on the overall design of the sampler, e.g. how to record
    accurate logprobs for the user, so this improvement is deferred to later.
    """
1236
    # NOTE: logprobs are not modified so they can be returned to the user.
1237
1238
1239
1240
    probs[sample_indices, :] = 0
    probs[sample_indices, greedy_samples] = 1.0


1241
def _build_sampler_output(
1242
    maybe_deferred_sample_results: MaybeDeferredSampleResultType,
1243
    sampling_metadata: SamplingMetadata,
1244
1245
    prompt_logprobs: Optional[List[Optional[PromptLogprobs]]],
    sample_logprobs: Optional[List[SampleLogprobs]],
1246
1247
    on_device_tensors: Optional[Tuple[torch.Tensor, torch.Tensor,
                                      torch.Tensor]],
1248
    skip_sampler_cpu_output: bool = False,
1249
    logits: Optional[torch.Tensor] = None
1250
) -> SamplerOutput:
1251
1252
1253
1254
1255
1256
1257
1258
    """Construct Python objects with the output of sampling.

    Args:
        on_device_tensors: Tuple containing on-device tensors with the
            probabilities used in sampling and the sampled token ids. This
            allows post-processing without copies to CPU/serialization, e.g. in
            speculative decoding rejection sampling.
    """
1259
    sampler_output: List[CompletionSequenceGroupOutput] = []
1260
1261
1262
1263
1264

    if skip_sampler_cpu_output:
        assert isinstance(maybe_deferred_sample_results, SampleResultArgsType)
        deferred_sample_results_args = maybe_deferred_sample_results
    else:
1265
1266
        assert prompt_logprobs is not None
        assert sample_logprobs is not None
1267
1268
1269
        assert not isinstance(maybe_deferred_sample_results,
                              SampleResultArgsType)
        deferred_sample_results_args = None
1270
1271
1272

        for (seq_group, sample_result, group_prompt_logprobs,
             group_sample_logprobs) in zip(sampling_metadata.seq_groups,
1273
1274
                                           maybe_deferred_sample_results,
                                           prompt_logprobs, sample_logprobs):
1275
1276
1277
1278
1279
1280
1281
1282
1283
1284
1285
            seq_ids = seq_group.seq_ids
            next_token_ids, parent_ids = sample_result
            seq_outputs: List[SequenceOutput] = []
            for parent_id, next_token_id, logprobs in zip(
                    parent_ids, next_token_ids, group_sample_logprobs):
                seq_outputs.append(
                    SequenceOutput(seq_ids[parent_id], next_token_id,
                                   logprobs))
            sampler_output.append(
                CompletionSequenceGroupOutput(seq_outputs,
                                              group_prompt_logprobs))
1286
1287
1288

    # If not specified, store None values in SamplerOutput.
    if on_device_tensors is not None:
1289
1290
        (sampled_token_probs, logprobs_tensor,
         sampled_token_ids) = on_device_tensors
1291
    else:
1292
1293
        sampled_token_probs, logprobs_tensor, sampled_token_ids = (None, None,
                                                                   None)
1294
1295
1296
1297
1298

    return SamplerOutput(
        outputs=sampler_output,
        sampled_token_probs=sampled_token_probs,
        sampled_token_ids=sampled_token_ids,
1299
        logprobs=logprobs_tensor,
1300
        deferred_sample_results_args=deferred_sample_results_args,
lizhigong's avatar
lizhigong committed
1301
1302
1303
        logits=logits,
        sampler_out_tenosr = d2d_data.random_samples,
        sampler_out_ids = d2d_data.seq_id)
1304
1305


1306
def _get_next_prompt_tokens(seq_group: SequenceGroupToSample) -> List[int]:
1307
1308
1309
1310
1311
1312
1313
1314
1315
1316
1317
1318
1319
1320
1321
1322
    """Get a list of next prompt tokens to compute logprob from a
        given sequence group.

    It is used to compute prompt logprob. Imagine you have logprob for each
    query token. Query token needs to know the next prompt token id to compute
    prompt logprob. This is a helper to obtain next prompt token ids.

    This API has to be used only when the caller knows seq_group is in prefill
    stage.

    Returns:
        A list of next prompt tokens to compute logprob.
    """
    assert seq_group.is_prompt, (
        "Caller should ensure the sequence group is in a prefill stage.")
    seq_ids = seq_group.seq_ids
1323
1324
    query_len = seq_group.query_len
    assert query_len is not None
1325
1326
1327
1328
1329
1330
1331
    # prompt has only 1 seq id.
    assert len(seq_ids) == 1
    seq_data = seq_group.seq_data[seq_ids[0]]
    computed_len = seq_data.get_num_computed_tokens()
    prompt_tokens = seq_data.prompt_token_ids
    # +1 because we are looking for a next prompt token.
    next_token_index_start = computed_len + 1
1332
    next_token_index_end = min(computed_len + query_len + 1,
1333
1334
1335
1336
                               len(prompt_tokens))
    next_prompt_tokens = prompt_tokens[
        next_token_index_start:next_token_index_end]
    return next_prompt_tokens