llm.py 71.8 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3

4
import itertools
5
from collections.abc import Sequence
6
from typing import TYPE_CHECKING, Any, Callable, Optional, Union, cast
7

8
import cloudpickle
9
import torch.nn as nn
10
from pydantic import ValidationError
11
from tqdm.auto import tqdm
12
from typing_extensions import TypeVar
13

14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
from vllm.beam_search import (
    BeamSearchInstance,
    BeamSearchOutput,
    BeamSearchSequence,
    create_sort_beams_key_function,
)
from vllm.config import (
    CompilationConfig,
    ModelDType,
    StructuredOutputsConfig,
    TokenizerMode,
    is_init_field,
)
from vllm.engine.arg_utils import (
    ConvertOption,
    EngineArgs,
    HfOverrides,
    PoolerConfig,
    RunnerOption,
)
from vllm.entrypoints.chat_utils import (
    ChatCompletionMessageParam,
    ChatTemplateContentFormatOption,
    apply_hf_chat_template,
    apply_mistral_chat_template,
    parse_chat_messages,
    resolve_chat_template_content_format,
)
from vllm.entrypoints.score_utils import (
    ScoreContentPartParam,
    ScoreMultiModalParam,
    _cosine_similarity,
    _validate_score_input_lens,
    compress_token_type_ids,
    get_score_prompt,
)
from vllm.entrypoints.utils import _validate_truncation_size, log_non_default_args
from vllm.inputs import (
    DataPrompt,
    PromptType,
    SingletonPrompt,
    TextPrompt,
    TokensPrompt,
)
58
from vllm.inputs.parse import get_prompt_components
59
from vllm.logger import init_logger
60
from vllm.lora.request import LoRARequest
61
from vllm.model_executor.layers.quantization import QuantizationMethods
62
63
64
65
66
67
68
from vllm.outputs import (
    ClassificationRequestOutput,
    EmbeddingRequestOutput,
    PoolingRequestOutput,
    RequestOutput,
    ScoringRequestOutput,
)
69
from vllm.plugins.io_processors import get_io_processor
70
from vllm.pooling_params import PoolingParams
71
from vllm.sampling_params import BeamSearchParams, RequestOutputKind, SamplingParams
72
from vllm.tasks import PoolingTask
73
74
75
76
77
78
from vllm.transformers_utils.tokenizer import (
    AnyTokenizer,
    MistralTokenizer,
    get_cached_tokenizer,
    init_tokenizer_from_configs,
)
yhu422's avatar
yhu422 committed
79
from vllm.usage.usage_lib import UsageContext
80
from vllm.utils import Counter, Device, as_iter, is_list_of
81
from vllm.v1.engine import EngineCoreRequest
82
from vllm.v1.engine.llm_engine import LLMEngine
83
from vllm.v1.engine.processor import Processor
84
from vllm.v1.sample.logits_processor import LogitsProcessor
85

86
87
88
if TYPE_CHECKING:
    from vllm.v1.metrics.reader import Metric

89
90
logger = init_logger(__name__)

91
92
_R = TypeVar("_R", default=Any)

93
94

class LLM:
Woosuk Kwon's avatar
Woosuk Kwon committed
95
96
97
98
99
100
101
102
103
104
    """An LLM for generating texts from given prompts and sampling parameters.

    This class includes a tokenizer, a language model (possibly distributed
    across multiple GPUs), and GPU memory space allocated for intermediate
    states (aka KV cache). Given a batch of prompts and sampling parameters,
    this class generates texts from the model, using an intelligent batching
    mechanism and efficient memory management.

    Args:
        model: The name or path of a HuggingFace Transformers model.
105
        tokenizer: The name or path of a HuggingFace Transformers tokenizer.
106
107
        tokenizer_mode: The tokenizer mode. "auto" will use the fast tokenizer
            if available, and "slow" will always use the slow tokenizer.
108
109
110
        skip_tokenizer_init: If true, skip initialization of tokenizer and
            detokenizer. Expect valid prompt_token_ids and None for prompt
            from the input.
111
112
        trust_remote_code: Trust remote code (e.g., from HuggingFace) when
            downloading the model and tokenizer.
113
114
115
116
        allowed_local_media_path: Allowing API requests to read local images
            or videos from directories specified by the server file system.
            This is a security risk. Should only be enabled in trusted
            environments.
117
        allowed_media_domains: If set, only media URLs that belong to this
118
            domain can be used for multi-modal inputs.
Woosuk Kwon's avatar
Woosuk Kwon committed
119
120
121
        tensor_parallel_size: The number of GPUs to use for distributed
            execution with tensor parallelism.
        dtype: The data type for the model weights and activations. Currently,
Woosuk Kwon's avatar
Woosuk Kwon committed
122
123
124
125
            we support `float32`, `float16`, and `bfloat16`. If `auto`, we use
            the `torch_dtype` attribute specified in the model config file.
            However, if the `torch_dtype` in the config is `float32`, we will
            use `float16` instead.
126
        quantization: The method used to quantize the model weights. Currently,
127
            we support "awq", "gptq", and "fp8" (experimental).
128
129
130
131
            If None, we first check the `quantization_config` attribute in the
            model config file. If that is None, we assume the model weights are
            not quantized and use `dtype` to determine the data type of
            the weights.
Jasmond L's avatar
Jasmond L committed
132
133
        revision: The specific model version to use. It can be a branch name,
            a tag name, or a commit id.
134
135
        tokenizer_revision: The specific tokenizer version to use. It can be a
            branch name, a tag name, or a commit id.
136
137
138
139
140
141
        seed: The seed to initialize the random number generator for sampling.
        gpu_memory_utilization: The ratio (between 0 and 1) of GPU memory to
            reserve for the model weights, activations, and KV cache. Higher
            values will increase the KV cache size and thus improve the model's
            throughput. However, if the value is too high, it may cause out-of-
            memory (OOM) errors.
142
143
144
145
146
147
148
149
        kv_cache_memory_bytes: Size of KV Cache per GPU in bytes. By default,
            this is set to None and vllm can automatically infer the kv cache
            size based on gpu_memory_utilization. However, users may want to
            manually specify the kv cache memory size. kv_cache_memory_bytes
            allows more fine-grain control of how much memory gets used when
            compared with using gpu_memory_memory_utilization. Note that
            kv_cache_memory_bytes (when not-None) ignores
            gpu_memory_utilization
150
        swap_space: The size (GiB) of CPU memory per GPU to use as swap space.
151
152
153
154
155
            This can be used for temporarily storing the states of the requests
            when their `best_of` sampling parameters are larger than 1. If all
            requests will have `best_of=1`, you can safely set this to 0.
            Noting that `best_of` is only supported in V0. Otherwise, too small
            values may cause out-of-memory (OOM) errors.
156
157
158
159
        cpu_offload_gb: The size (GiB) of CPU memory to use for offloading
            the model weights. This virtually increases the GPU memory space
            you can use to hold the model weights, at the cost of CPU-GPU data
            transfer for every forward pass.
160
161
162
        enforce_eager: Whether to enforce eager execution. If True, we will
            disable CUDA graph and always execute the model in eager mode.
            If False, we will use CUDA graph and eager execution in hybrid.
163
164
        disable_custom_all_reduce: See
            [ParallelConfig][vllm.config.ParallelConfig].
165
        hf_token: The token to use as HTTP bearer authorization for remote files
166
            . If `True`, will use the token generated when running
167
            `huggingface-cli login` (stored in `~/.huggingface`).
168
169
170
        hf_overrides: If a dictionary, contains arguments to be forwarded to the
            HuggingFace config. If a callable, it is called to update the
            HuggingFace config.
171
172
173
174
175
        mm_processor_kwargs: Arguments to be forwarded to the model's processor
            for multi-modal data, e.g., image processor. Overrides for the
            multi-modal processor obtained from `AutoProcessor.from_pretrained`.
            The available overrides depend on the model that is being run.
            For example, for Phi-3-Vision: `{"num_crops": 4}`.
176
177
178
179
180
        pooler_config: Initialize non-default pooling config for the pooling
            model. e.g. `PoolerConfig(pooling_type="mean", normalize=False)`.
        override_pooler_config: [DEPRECATED] Use `pooler_config` instead. This
            argument is deprecated and will be removed in v0.12.0 or v1.0.0,
            whichever is sooner.
181
182
183
        compilation_config: Either an integer or a dictionary. If it is an
            integer, it is used as the level of compilation optimization. If it
            is a dictionary, it can specify the full compilation configuration.
184
        **kwargs: Arguments for [`EngineArgs`][vllm.EngineArgs].
nunjunj's avatar
nunjunj committed
185

186
187
    Note:
        This class is intended to be used for offline inference. For online
188
        serving, use the [AsyncLLMEngine][vllm.AsyncLLMEngine] class instead.
189
    """
190
191
192
193

    def __init__(
        self,
        model: str,
194
        *,
195
196
        runner: RunnerOption = "auto",
        convert: ConvertOption = "auto",
197
        tokenizer: Optional[str] = None,
198
        tokenizer_mode: TokenizerMode = "auto",
199
        skip_tokenizer_init: bool = False,
200
        trust_remote_code: bool = False,
201
        allowed_local_media_path: str = "",
202
        allowed_media_domains: Optional[list[str]] = None,
203
        tensor_parallel_size: int = 1,
204
205
        dtype: ModelDType = "auto",
        quantization: Optional[QuantizationMethods] = None,
206
        revision: Optional[str] = None,
207
        tokenizer_revision: Optional[str] = None,
208
        seed: Optional[int] = None,
209
        gpu_memory_utilization: float = 0.9,
210
        swap_space: float = 4,
211
        cpu_offload_gb: float = 0,
212
        enforce_eager: bool = False,
213
        disable_custom_all_reduce: bool = False,
214
        hf_token: Optional[Union[bool, str]] = None,
215
        hf_overrides: Optional[HfOverrides] = None,
216
        mm_processor_kwargs: Optional[dict[str, Any]] = None,
217
        pooler_config: Optional[PoolerConfig] = None,
218
        override_pooler_config: Optional[PoolerConfig] = None,
219
220
221
        structured_outputs_config: Optional[
            Union[dict[str, Any], StructuredOutputsConfig]
        ] = None,
222
        kv_cache_memory_bytes: Optional[int] = None,
223
224
225
226
        compilation_config: Optional[
            Union[int, dict[str, Any], CompilationConfig]
        ] = None,
        logits_processors: Optional[list[Union[str, type[LogitsProcessor]]]] = None,
227
        **kwargs: Any,
228
    ) -> None:
229
        """LLM constructor."""
230

231
232
        if "disable_log_stats" not in kwargs:
            kwargs["disable_log_stats"] = True
233

234
235
236
237
238
239
240
        if "worker_cls" in kwargs:
            worker_cls = kwargs["worker_cls"]
            # if the worker_cls is not qualified string name,
            # we serialize it using cloudpickle to avoid pickling issues
            if isinstance(worker_cls, type):
                kwargs["worker_cls"] = cloudpickle.dumps(worker_cls)

241
        if "kv_transfer_config" in kwargs and isinstance(
242
243
            kwargs["kv_transfer_config"], dict
        ):
244
            from vllm.config.kv_transfer import KVTransferConfig
245

246
247
            raw_config_dict = kwargs["kv_transfer_config"]
            try:
248
                kwargs["kv_transfer_config"] = KVTransferConfig(**raw_config_dict)
249
250
251
252
            except ValidationError as e:
                logger.error(
                    "Failed to convert 'kv_transfer_config' dict to "
                    "KVTransferConfig object. Dict: %s. Error: %s",
253
254
255
                    raw_config_dict,
                    e,
                )
256
257
                # Consider re-raising a more specific vLLM error or ValueError
                # to provide better context to the user.
258
                raise ValueError(f"Invalid 'kv_transfer_config' provided: {e}") from e
259

260
261
262
        if hf_overrides is None:
            hf_overrides = {}

263
        if compilation_config is not None:
264
265
            if isinstance(compilation_config, int):
                compilation_config_instance = CompilationConfig(
266
267
                    level=compilation_config
                )
268
269
            elif isinstance(compilation_config, dict):
                compilation_config_instance = CompilationConfig(
270
271
272
273
                    **{
                        k: v
                        for k, v in compilation_config.items()
                        if is_init_field(CompilationConfig, k)
274
275
                    }
                )
276
277
            else:
                compilation_config_instance = compilation_config
278
        else:
279
            compilation_config_instance = CompilationConfig()
280

281
282
283
284
285
286
287
        if structured_outputs_config is not None:
            if isinstance(structured_outputs_config, dict):
                structured_outputs_instance = StructuredOutputsConfig(
                    **{
                        k: v
                        for k, v in structured_outputs_config.items()
                        if is_init_field(StructuredOutputsConfig, k)
288
289
                    }
                )
290
291
292
293
294
            else:
                structured_outputs_instance = structured_outputs_config
        else:
            structured_outputs_instance = StructuredOutputsConfig()

Zhuohan Li's avatar
Zhuohan Li committed
295
        engine_args = EngineArgs(
296
            model=model,
297
298
            runner=runner,
            convert=convert,
299
            tokenizer=tokenizer,
300
            tokenizer_mode=tokenizer_mode,
301
            skip_tokenizer_init=skip_tokenizer_init,
302
            trust_remote_code=trust_remote_code,
303
            allowed_local_media_path=allowed_local_media_path,
304
            allowed_media_domains=allowed_media_domains,
305
306
            tensor_parallel_size=tensor_parallel_size,
            dtype=dtype,
307
            quantization=quantization,
308
            revision=revision,
309
            tokenizer_revision=tokenizer_revision,
310
311
            seed=seed,
            gpu_memory_utilization=gpu_memory_utilization,
312
            kv_cache_memory_bytes=kv_cache_memory_bytes,
313
            swap_space=swap_space,
314
            cpu_offload_gb=cpu_offload_gb,
315
            enforce_eager=enforce_eager,
316
            disable_custom_all_reduce=disable_custom_all_reduce,
317
            hf_token=hf_token,
318
            hf_overrides=hf_overrides,
319
            mm_processor_kwargs=mm_processor_kwargs,
320
            pooler_config=pooler_config,
321
            override_pooler_config=override_pooler_config,
322
            structured_outputs_config=structured_outputs_instance,
323
            compilation_config=compilation_config_instance,
324
            logits_processors=logits_processors,
325
326
            **kwargs,
        )
327

328
329
        log_non_default_args(engine_args)

330
331
        # Create the Engine (autoselects V0 vs V1)
        self.llm_engine = LLMEngine.from_engine_args(
332
333
            engine_args=engine_args, usage_context=UsageContext.LLM_CLASS
        )
334
        self.engine_class = type(self.llm_engine)
335

336
        self.request_counter = Counter()
337
        self.default_sampling_params: Union[dict[str, Any], None] = None
338

339
        supported_tasks = self.llm_engine.get_supported_tasks()  # type: ignore
340
341
342
343
344

        logger.info("Supported_tasks: %s", supported_tasks)

        self.supported_tasks = supported_tasks

345
346
        # Load the Input/Output processor plugin if any
        io_processor_plugin = self.llm_engine.model_config.io_processor_plugin
347
348
349
        self.io_processor = get_io_processor(
            self.llm_engine.vllm_config, io_processor_plugin
        )
350

351
352
353
354
    @property
    def model_config(self):
        return self.llm_engine.model_config

355
356
    def get_tokenizer(self) -> AnyTokenizer:
        return self.llm_engine.get_tokenizer()
357
358

    def set_tokenizer(self, tokenizer: AnyTokenizer) -> None:
359
360
361
362
        # While CachedTokenizer is dynamic, have no choice but
        # compare class name. Misjudgment will arise from
        # user-defined tokenizer started with 'Cached'
        if tokenizer.__class__.__name__.startswith("Cached"):
363
            self.llm_engine.tokenizer = tokenizer
364
        else:
365
            self.llm_engine.tokenizer = get_cached_tokenizer(tokenizer)
366

367
368
369
370
371
372
373
374
375
376
    def _get_processor(self) -> Processor:
        if not hasattr(self, "_processor"):
            vllm_config = self.llm_engine.vllm_config
            if self.model_config.skip_tokenizer_init:
                tokenizer = None
            else:
                tokenizer = init_tokenizer_from_configs(self.model_config)
            self._processor = Processor(vllm_config, tokenizer)
        return self._processor

377
    def get_default_sampling_params(self) -> SamplingParams:
378
379
        if self.default_sampling_params is None:
            self.default_sampling_params = (
380
381
                self.llm_engine.model_config.get_diff_sampling_param()
            )
382
383
        if self.default_sampling_params:
            return SamplingParams.from_optional(**self.default_sampling_params)
384
385
        return SamplingParams()

386
387
388
    def generate(
        self,
        prompts: Union[PromptType, Sequence[PromptType]],
389
390
391
        sampling_params: Optional[
            Union[SamplingParams, Sequence[SamplingParams]]
        ] = None,
392
        *,
393
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
394
395
396
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
        priority: Optional[list[int]] = None,
    ) -> list[RequestOutput]:
Woosuk Kwon's avatar
Woosuk Kwon committed
397
398
        """Generates the completions for the input prompts.

399
        This class automatically batches the given prompts, considering
Woosuk Kwon's avatar
Woosuk Kwon committed
400
401
402
403
        the memory constraint. For the best performance, put all of your prompts
        into a single list and pass it to this method.

        Args:
404
            prompts: The prompts to the LLM. You may pass a sequence of prompts
405
                for batch inference. See [PromptType][vllm.inputs.PromptType]
406
                for more details about the format of each prompt.
Woosuk Kwon's avatar
Woosuk Kwon committed
407
            sampling_params: The sampling parameters for text generation. If
nunjunj's avatar
nunjunj committed
408
409
410
                None, we use the default sampling parameters.
                When it is a single value, it is applied to every prompt.
                When it is a list, the list must have the same length as the
411
                prompts and it is paired one by one with the prompt.
412
413
414
415
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
416
            lora_request: LoRA request to use for generation, if any.
417
418
            priority: The priority of the requests, if any.
                Only applicable when priority scheduling policy is enabled.
Woosuk Kwon's avatar
Woosuk Kwon committed
419
420

        Returns:
421
            A list of `RequestOutput` objects containing the
422
            generated completions in the same order as the input prompts.
423

424
425
426
427
        Note:
            Using `prompts` and `prompt_token_ids` as keyword parameters is
            considered legacy and may be deprecated in the future. You should
            instead pass them via the `inputs` parameter.
428
        """
429
430
431
        model_config = self.llm_engine.model_config
        runner_type = model_config.runner_type
        if runner_type != "generate":
432
433
434
            raise ValueError(
                "LLM.generate() is only supported for generative models. "
                "Try passing `--runner generate` to use the model as a "
435
436
                "generative model."
            )
437

438
439
        if sampling_params is None:
            # Use default sampling params.
440
            sampling_params = self.get_default_sampling_params()
441

442
        # Add any modality specific loras to the corresponding prompts
443
        lora_request = self._get_modality_specific_lora_reqs(prompts, lora_request)
444

445
        self._validate_and_add_requests(
446
            prompts=prompts,
447
            params=sampling_params,
448
            use_tqdm=use_tqdm,
449
            lora_request=lora_request,
450
451
            priority=priority,
        )
452

453
        outputs = self._run_engine(use_tqdm=use_tqdm)
Joe Runde's avatar
Joe Runde committed
454
        return self.engine_class.validate_outputs(outputs, RequestOutput)
455

456
    def _get_modality_specific_lora_reqs(
457
458
459
460
        self,
        prompts: Union[PromptType, Sequence[PromptType]],
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]],
    ):
461
462
463
464
465
466
        # Grab the lora config off the vllm config on the engine,
        # since this is the same for both v0 & v1.
        lora_config = self.llm_engine.vllm_config.lora_config

        # If there's no lora config / default_mm_loras, or the model
        # isn't multimodal, leave the lora as is.
467
468
469
470
471
        if (
            lora_config is None
            or not self.llm_engine.model_config.is_multimodal_model
            or (lora_config and lora_config.default_mm_loras is None)
        ):
472
473
            return lora_request

474
475
        if not isinstance(prompts, Sequence):
            prompts = [prompts]
476

477
478
479
480
481
        optional_loras = (
            [lora_request] * len(prompts)
            if not isinstance(lora_request, Sequence)
            else lora_request
        )
482
483
484

        return [
            self._resolve_single_prompt_mm_lora(
485
                prompt,
486
487
                opt_lora_req,
                lora_config.default_mm_loras,
488
489
            )
            for prompt, opt_lora_req in zip(prompts, optional_loras)
490
491
        ]

492
493
494
495
496
497
498
499
500
501
502
    def _resolve_single_prompt_mm_lora(
        self,
        prompt: PromptType,
        lora_request: Optional[LoRARequest],
        default_mm_loras: Optional[dict[str, str]],
    ):
        if (
            not default_mm_loras
            or not isinstance(prompt, dict)
            or "multi_modal_data" not in prompt
        ):
503
504
            return lora_request

505
        prompt = cast(Union[TextPrompt, TokensPrompt], prompt)
506

507
508
509
        intersection = set(prompt["multi_modal_data"].keys()).intersection(
            default_mm_loras.keys()
        )
510
511
512
513
514
515
516
517
518
        if not intersection:
            return lora_request
        if len(intersection) > 1:
            # TODO: Would be nice to be able to have multiple loras per prompt
            logger.warning(
                "Multiple modality specific loras were registered and would be"
                " used by a single prompt consuming several modalities; "
                " currently we only support one lora per request; as such,"
                " lora(s) registered with modalities: %s"
519
520
521
                " will be skipped",
                intersection,
            )
522
523
524
525
526
527
528
529
530
531
532
533
534
535
536
            return lora_request

        # Build the LoRA request; the ID of the default mm lora is the
        # index of the modality name sorted alphabetically + 1.
        modality_name = intersection.pop()
        modality_lora_path = default_mm_loras[modality_name]
        modality_lora_id = sorted(default_mm_loras).index(modality_name) + 1

        # If we have a collision, warn if there is a collision,
        # but always send the explicitly provided request.
        if lora_request:
            if lora_request.lora_int_id != modality_lora_id:
                logger.warning(
                    "A modality with a registered lora and a lora_request "
                    "with a different ID were provided; falling back to the "
537
538
                    "lora_request as we only apply one LoRARequest per prompt"
                )
539
540
541
542
543
544
545
546
            return lora_request

        return LoRARequest(
            modality_name,
            modality_lora_id,
            modality_lora_path,
        )

547
548
549
550
551
552
553
    def collective_rpc(
        self,
        method: Union[str, Callable[..., _R]],
        timeout: Optional[float] = None,
        args: tuple = (),
        kwargs: Optional[dict[str, Any]] = None,
    ) -> list[_R]:
554
555
556
557
558
559
560
561
562
563
564
        """
        Execute an RPC call on all workers.

        Args:
            method: Name of the worker method to execute, or a callable that
                is serialized and sent to all workers to execute.

                If the method is a callable, it should accept an additional
                `self` argument, in addition to the arguments passed in `args`
                and `kwargs`. The `self` argument will be the worker object.
            timeout: Maximum time in seconds to wait for execution. Raises a
565
                [`TimeoutError`][] on timeout. `None` means wait indefinitely.
566
567
568
569
570
            args: Positional arguments to pass to the worker method.
            kwargs: Keyword arguments to pass to the worker method.

        Returns:
            A list containing the results from each worker.
571

572
573
574
        Note:
            It is recommended to use this API to only pass control messages,
            and set up data-plane communication to pass data.
575
        """
576
577

        return self.llm_engine.collective_rpc(method, timeout, args, kwargs)
578
579

    def apply_model(self, func: Callable[[nn.Module], _R]) -> list[_R]:
580
        """
581
582
        Run a function directly on the model inside each worker,
        returning the result for each of them.
583
584
585
586
587
588

        !!! warning
            To reduce the overhead of data transfer, avoid returning large
            arrays or tensors from this method. If you must return them,
            make sure you move them to CPU first to avoid taking up additional
            VRAM!
589
        """
590
        return self.llm_engine.apply_model(func)
591

592
593
594
595
596
597
    def _get_beam_search_lora_requests(
        self,
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]],
        prompts: list[Union[TokensPrompt, TextPrompt]],
    ) -> list[Optional[LoRARequest]]:
        """Get the optional lora request corresponding to each prompt."""
598
        if isinstance(lora_request, Sequence) and len(lora_request) != len(prompts):
599
            raise ValueError(
600
601
                "Lora request list should be the same length as the prompts"
            )
602
603
604
605
606
607

        if lora_request is None or isinstance(lora_request, LoRARequest):
            return [lora_request] * len(prompts)

        raise TypeError(f"Invalid lora_request type {type(lora_request)}")

608
609
    def beam_search(
        self,
610
        prompts: list[Union[TokensPrompt, TextPrompt]],
611
        params: BeamSearchParams,
612
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
613
        use_tqdm: bool = False,
614
        concurrency_limit: Optional[int] = None,
615
    ) -> list[BeamSearchOutput]:
616
617
618
619
620
621
        """
        Generate sequences using beam search.

        Args:
            prompts: A list of prompts. Each prompt can be a string or a list
                of token IDs.
622
            params: The beam search parameters.
623
            lora_request: LoRA request to use for generation, if any.
624
            use_tqdm: Whether to use tqdm to display the progress bar.
625
626
            concurrency_limit: The maximum number of concurrent requests.
                If None, the number of concurrent requests is unlimited.
627
        """
628
629
        # TODO: how does beam search work together with length penalty,
        # frequency, penalty, and stopping criteria, etc.?
630
631
632
633
        beam_width = params.beam_width
        max_tokens = params.max_tokens
        temperature = params.temperature
        ignore_eos = params.ignore_eos
634
635
        length_penalty = params.length_penalty

636
        lora_requests = self._get_beam_search_lora_requests(lora_request, prompts)
637

638
639
640
641
642
        tokenizer = self.get_tokenizer()
        sort_beams_key = create_sort_beams_key_function(
            tokenizer.eos_token_id,
            length_penalty,
        )
643

644
645
646
        if use_tqdm and concurrency_limit is not None:
            logger.warning(
                "Progress bar is not supported when using concurrency_limit. "
647
648
                "Disabling progress bar."
            )
649
650
651
652
653
            use_tqdm = False

        if concurrency_limit is None:
            concurrency_limit = len(prompts)

654
655
        def create_tokens_prompt_from_beam(beam: BeamSearchSequence) -> TokensPrompt:
            token_prompt_kwargs: TokensPrompt = {"prompt_token_ids": beam.tokens}
656
657
658
659
            if beam.multi_modal_data is not None:
                token_prompt_kwargs["multi_modal_data"] = beam.multi_modal_data

            if beam.mm_processor_kwargs is not None:
660
                token_prompt_kwargs["mm_processor_kwargs"] = beam.mm_processor_kwargs
661
            return TokensPrompt(**token_prompt_kwargs)
662

663
664
665
        # generate 2 * beam_width candidates at each step
        # following the huggingface transformers implementation
        # at https://github.com/huggingface/transformers/blob/e15687fffe5c9d20598a19aeab721ae0a7580f8a/src/transformers/generation/beam_search.py#L534 # noqa
666
667
668
        beam_search_params = SamplingParams(
            logprobs=2 * beam_width, max_tokens=1, temperature=temperature
        )
669
        instances: list[BeamSearchInstance] = []
670

671
        for lora_req, prompt in zip(lora_requests, prompts):
672
673
674
675
676
            # Add multimodal processor kwargs & data
            mm_kwargs = {}
            if "multi_modal_data" in prompt:
                mm_kwargs["multi_modal_data"] = prompt["multi_modal_data"]
            if "mm_processor_kwargs" in prompt:
677
                mm_kwargs["mm_processor_kwargs"] = prompt["mm_processor_kwargs"]
678

679
680
            if "prompt_token_ids" in prompt:
                prompt = cast(TokensPrompt, prompt)  # Needed for mypy
681
682
683
                prompt_tokens = prompt["prompt_token_ids"]
            else:
                prompt_tokens = tokenizer.encode(prompt["prompt"])
684

685
            instances.append(
686
687
688
689
690
                BeamSearchInstance(
                    prompt_tokens,
                    lora_request=lora_req,
                    logprobs=None,
                    **mm_kwargs,
691
692
                ),
            )
693

694
        for prompt_start in range(0, len(prompts), concurrency_limit):
695
            instances_batch = instances[prompt_start : prompt_start + concurrency_limit]
696
697
698

            token_iter = range(max_tokens)
            if use_tqdm:
699
700
701
                token_iter = tqdm(
                    token_iter, desc="Beam search", unit="token", unit_scale=False
                )
702
703
704
                logger.warning(
                    "The progress bar shows the upper bound on token steps and "
                    "may finish early due to stopping conditions. It does not "
705
706
                    "reflect instance-level progress."
                )
707
708
            for _ in token_iter:
                all_beams: list[BeamSearchSequence] = list(
709
710
                    sum((instance.beams for instance in instances_batch), [])
                )
711
712
                pos = [0] + list(
                    itertools.accumulate(
713
714
715
                        len(instance.beams) for instance in instances_batch
                    )
                )
716
                instance_start_and_end: list[tuple[int, int]] = list(
717
718
                    zip(pos[:-1], pos[1:])
                )
719
720
721
722
723
724

                if len(all_beams) == 0:
                    break

                # create corresponding batch entries for prompt & optional lora
                prompts_batch, lora_req_batch = zip(
725
726
727
728
729
                    *[
                        (create_tokens_prompt_from_beam(beam), beam.lora_request)
                        for beam in all_beams
                    ]
                )
730
731
732

                # only runs for one step
                # we don't need to use tqdm here
733
734
735
736
737
738
                output = self.generate(
                    prompts_batch,
                    sampling_params=beam_search_params,
                    use_tqdm=False,
                    lora_request=lora_req_batch,
                )
739

740
741
742
                for (start, end), instance in zip(
                    instance_start_and_end, instances_batch
                ):
743
744
745
746
747
748
749
750
751
752
753
754
755
756
                    instance_new_beams = []
                    for i in range(start, end):
                        current_beam = all_beams[i]
                        result = output[i]

                        if result.outputs[0].logprobs is not None:
                            # if `result.outputs[0].logprobs` is None, it means
                            # the sequence is completed because of the
                            # max-model-len or abortion. we don't need to add
                            # it to the new beams.
                            logprobs = result.outputs[0].logprobs[0]
                            for token_id, logprob_obj in logprobs.items():
                                new_beam = BeamSearchSequence(
                                    tokens=current_beam.tokens + [token_id],
757
                                    logprobs=current_beam.logprobs + [logprobs],
758
                                    lora_request=current_beam.lora_request,
759
760
761
762
763
764
765
766
767
768
                                    cum_logprob=current_beam.cum_logprob
                                    + logprob_obj.logprob,
                                    multi_modal_data=current_beam.multi_modal_data,
                                    mm_processor_kwargs=current_beam.mm_processor_kwargs,
                                )

                                if (
                                    token_id == tokenizer.eos_token_id
                                    and not ignore_eos
                                ):
769
770
771
                                    instance.completed.append(new_beam)
                                else:
                                    instance_new_beams.append(new_beam)
772
773
774
                    sorted_beams = sorted(
                        instance_new_beams, key=sort_beams_key, reverse=True
                    )
775
                    instance.beams = sorted_beams[:beam_width]
776
777
778
779

        outputs = []
        for instance in instances:
            instance.completed.extend(instance.beams)
780
781
782
            sorted_completed = sorted(
                instance.completed, key=sort_beams_key, reverse=True
            )
783
784
785
786
787
788
789
790
            best_beams = sorted_completed[:beam_width]

            for beam in best_beams:
                beam.text = tokenizer.decode(beam.tokens)
            outputs.append(BeamSearchOutput(sequences=best_beams))

        return outputs

791
    def preprocess_chat(
nunjunj's avatar
nunjunj committed
792
        self,
793
794
795
        messages: Union[
            list[ChatCompletionMessageParam], list[list[ChatCompletionMessageParam]]
        ],
nunjunj's avatar
nunjunj committed
796
        chat_template: Optional[str] = None,
797
        chat_template_content_format: ChatTemplateContentFormatOption = "auto",
798
        add_generation_prompt: bool = True,
799
        continue_final_message: bool = False,
800
        tools: Optional[list[dict[str, Any]]] = None,
801
        chat_template_kwargs: Optional[dict[str, Any]] = None,
802
        mm_processor_kwargs: Optional[dict[str, Any]] = None,
803
    ) -> list[TokensPrompt]:
nunjunj's avatar
nunjunj committed
804
        """
805
806
        Generate prompt for a chat conversation. The pre-processed
        prompt can then be used as input for the other LLM methods.
nunjunj's avatar
nunjunj committed
807

808
        Refer to `chat` for a complete description of the arguments.
nunjunj's avatar
nunjunj committed
809
        Returns:
810
811
812
            A list of `TokensPrompts` objects containing the tokenized
            prompt after chat template interpolation, and the
            pre-processed multi-modal inputs.
nunjunj's avatar
nunjunj committed
813
        """
814
        list_of_messages: list[list[ChatCompletionMessageParam]]
nunjunj's avatar
nunjunj committed
815

816
817
        # Handle multi and single conversations
        if is_list_of(messages, list):
818
            # messages is list[list[...]]
819
            list_of_messages = cast(list[list[ChatCompletionMessageParam]], messages)
820
        else:
821
            # messages is list[...]
822
            list_of_messages = [cast(list[ChatCompletionMessageParam], messages)]
823

824
        tokenizer = self.get_tokenizer()
825
826
827
        model_config = self.llm_engine.get_model_config()
        resolved_content_format = resolve_chat_template_content_format(
            chat_template,
828
            tools,
829
830
            chat_template_content_format,
            tokenizer,
831
            model_config=model_config,
832
833
        )

834
835
836
837
838
839
840
841
        _chat_template_kwargs: dict[str, Any] = dict(
            chat_template=chat_template,
            add_generation_prompt=add_generation_prompt,
            continue_final_message=continue_final_message,
            tools=tools,
        )
        _chat_template_kwargs.update(chat_template_kwargs or {})

842
        prompts: list[TokensPrompt] = []
843
844

        for msgs in list_of_messages:
845
846
847
            # NOTE: _parse_chat_message_content_parts() currently doesn't
            # handle mm_processor_kwargs, since there is no implementation in
            # the chat message parsing for it.
848
            conversation, mm_data, mm_uuids = parse_chat_messages(
849
850
851
852
853
                msgs,
                model_config,
                tokenizer,
                content_format=resolved_content_format,
            )
854
855

            if isinstance(tokenizer, MistralTokenizer):
856
                prompt_token_ids = apply_mistral_chat_template(
857
858
                    tokenizer,
                    messages=msgs,
859
                    **_chat_template_kwargs,
860
861
                )
            else:
862
                prompt_str = apply_hf_chat_template(
863
                    tokenizer=tokenizer,
864
                    conversation=conversation,
865
                    model_config=model_config,
866
                    **_chat_template_kwargs,
867
                )
868
869
                # Special tokens are already included in chat templates so
                # should not be added by the tokenizer in this case.
870
871
872
                prompt_token_ids = tokenizer.encode(
                    prompt_str, add_special_tokens=False
                )
873

874
            prompt = TokensPrompt(prompt_token_ids=prompt_token_ids)
875
876
877
878

            if mm_data is not None:
                prompt["multi_modal_data"] = mm_data

879
880
881
            if mm_uuids is not None:
                prompt["multi_modal_uuids"] = mm_uuids

882
883
884
            if mm_processor_kwargs is not None:
                prompt["mm_processor_kwargs"] = mm_processor_kwargs

885
            prompts.append(prompt)
886

887
888
889
890
        return prompts

    def chat(
        self,
891
892
893
894
        messages: Union[
            list[ChatCompletionMessageParam], list[list[ChatCompletionMessageParam]]
        ],
        sampling_params: Optional[Union[SamplingParams, list[SamplingParams]]] = None,
895
896
897
898
899
900
901
902
903
904
905
906
907
908
909
910
911
912
913
914
915
916
917
918
919
920
921
922
923
924
925
926
927
928
929
930
931
932
933
934
935
936
937
938
939
940
941
942
943
944
945
946
947
948
949
950
951
952
953
954
955
956
957
958
959
960
961
962
963
964
965
966
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
        lora_request: Optional[LoRARequest] = None,
        chat_template: Optional[str] = None,
        chat_template_content_format: ChatTemplateContentFormatOption = "auto",
        add_generation_prompt: bool = True,
        continue_final_message: bool = False,
        tools: Optional[list[dict[str, Any]]] = None,
        chat_template_kwargs: Optional[dict[str, Any]] = None,
        mm_processor_kwargs: Optional[dict[str, Any]] = None,
    ) -> list[RequestOutput]:
        """
        Generate responses for a chat conversation.

        The chat conversation is converted into a text prompt using the
        tokenizer and calls the [generate][vllm.LLM.generate] method to generate
        the responses.

        Multi-modal inputs can be passed in the same way you would pass them
        to the OpenAI API.

        Args:
            messages: A list of conversations or a single conversation.

                - Each conversation is represented as a list of messages.
                - Each message is a dictionary with 'role' and 'content' keys.

            sampling_params: The sampling parameters for text generation.
                If None, we use the default sampling parameters. When it
                is a single value, it is applied to every prompt. When it
                is a list, the list must have the same length as the
                prompts and it is paired one by one with the prompt.
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
            lora_request: LoRA request to use for generation, if any.
            chat_template: The template to use for structuring the chat.
                If not provided, the model's default chat template will be used.
            chat_template_content_format: The format to render message content.

                - "string" will render the content as a string.
                  Example: `"Who are you?"`
                - "openai" will render the content as a list of dictionaries,
                  similar to OpenAI schema.
                  Example: `[{"type": "text", "text": "Who are you?"}]`

            add_generation_prompt: If True, adds a generation template
                to each message.
            continue_final_message: If True, continues the final message in
                the conversation instead of starting a new one. Cannot be
                `True` if `add_generation_prompt` is also `True`.
            chat_template_kwargs: Additional kwargs to pass to the chat
                template.
            mm_processor_kwargs: Multimodal processor kwarg overrides for this
                chat request. Only used for offline requests.

        Returns:
            A list of `RequestOutput` objects containing the generated
            responses in the same order as the input messages.
        """

        prompts = self.preprocess_chat(
            messages=messages,
            chat_template=chat_template,
            chat_template_content_format=chat_template_content_format,
            add_generation_prompt=add_generation_prompt,
            continue_final_message=continue_final_message,
            tools=tools,
            chat_template_kwargs=chat_template_kwargs,
            mm_processor_kwargs=mm_processor_kwargs,
        )

nunjunj's avatar
nunjunj committed
967
        return self.generate(
968
            prompts,
969
            sampling_params=sampling_params,
nunjunj's avatar
nunjunj committed
970
971
972
973
            use_tqdm=use_tqdm,
            lora_request=lora_request,
        )

974
975
    def encode(
        self,
976
        prompts: Union[PromptType, Sequence[PromptType], DataPrompt],
977
        pooling_params: Optional[Union[PoolingParams, Sequence[PoolingParams]]] = None,
978
        *,
979
        truncate_prompt_tokens: Optional[int] = None,
980
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
981
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
982
        pooling_task: PoolingTask = "encode",
983
        tokenization_kwargs: Optional[dict[str, Any]] = None,
984
    ) -> list[PoolingRequestOutput]:
985
986
        """Apply pooling to the hidden states corresponding to the input
        prompts.
987

988
        This class automatically batches the given prompts, considering
989
990
991
992
        the memory constraint. For the best performance, put all of your prompts
        into a single list and pass it to this method.

        Args:
993
            prompts: The prompts to the LLM. You may pass a sequence of prompts
994
                for batch inference. See [PromptType][vllm.inputs.PromptType]
995
                for more details about the format of each prompt.
996
997
            pooling_params: The pooling parameters for pooling. If None, we
                use the default pooling parameters.
998
999
1000
1001
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
1002
            lora_request: LoRA request to use for generation, if any.
1003
            pooling_task: Override the pooling task to use.
1004
1005
            tokenization_kwargs: overrides tokenization_kwargs set in
                pooling_params
1006
1007

        Returns:
1008
            A list of `PoolingRequestOutput` objects containing the
1009
            pooled hidden states in the same order as the input prompts.
1010

1011
1012
1013
1014
        Note:
            Using `prompts` and `prompt_token_ids` as keyword parameters is
            considered legacy and may be deprecated in the future. You should
            instead pass them via the `inputs` parameter.
1015
        """
1016
1017
1018
1019

        if self.supported_tasks == ["encode"] and pooling_task is None:
            pooling_task = "encode"

1020
1021
1022
1023
1024
1025
1026
1027
1028
1029
1030
        if pooling_task is None:
            if "embed" in self.supported_tasks:
                pooling_task = "embed"
            else:
                pooling_task = "encode"

            logger.warning_once(
                "`LLM.encode` is currently using `pooling_task = %s`.\n"
                "Please use one of the more specific methods or set the "
                "task directly when using `LLM.encode`:\n"
                "  - For embeddings, use `LLM.embed(...)` "
1031
                'or `pooling_task="embed"`.\n'
1032
                "  - For classification logits, use `LLM.classify(...)` "
1033
                'or `pooling_task="classify"`.\n'
1034
                "  - For rewards, use `LLM.reward(...)` "
1035
                'or `pooling_task="reward"`\n'
1036
                "  - For similarity scores, use `LLM.score(...)`.",
1037
1038
                pooling_task,
            )
1039

1040
1041
        model_config = self.llm_engine.model_config
        runner_type = model_config.runner_type
1042
        if runner_type != "pooling":
1043
1044
1045
            raise ValueError(
                "LLM.encode() is only supported for pooling models. "
                "Try passing `--runner pooling` to use the model as a "
1046
1047
                "pooling model."
            )
1048

1049
        if pooling_task not in self.supported_tasks:
1050
            raise ValueError(f"pooling_task must be one of {self.supported_tasks}.")
1051

1052
1053
1054
        if pooling_params is None:
            # Use default pooling params.
            pooling_params = PoolingParams()
1055

1056
1057
1058
1059
1060
        for param in as_iter(pooling_params):
            param.verify(pooling_task, model_config)
            # for backwards compatibility
            if truncate_prompt_tokens is not None:
                param.truncate_prompt_tokens = truncate_prompt_tokens
1061

1062
1063
1064
1065
1066
1067
1068
1069
        io_processor_prompt = False
        if isinstance(prompts, dict) and "data" in prompts:
            io_processor_prompt = True
            if self.io_processor is None:
                raise ValueError(
                    "No IOProcessor plugin installed. Please refer "
                    "to the documentation and to the "
                    "'prithvi_geospatial_mae_io_processor' "
1070
1071
                    "offline inference example for more details."
                )
1072
1073
1074
1075
1076
1077
1078

            # Validate the request data is valid for the loaded plugin
            validated_prompt = self.io_processor.parse_request(prompts)

            # obtain the actual model prompts from the pre-processor
            prompts = self.io_processor.pre_process(prompt=validated_prompt)

1079
        self._validate_and_add_requests(
1080
            prompts=prompts,
1081
            params=pooling_params,
1082
            use_tqdm=use_tqdm,
1083
            lora_request=lora_request,
1084
1085
        )

1086
        outputs = self._run_engine(use_tqdm=use_tqdm)
1087
1088

        model_outputs = self.engine_class.validate_outputs(
1089
1090
            outputs, PoolingRequestOutput
        )
1091
1092
1093
1094
1095

        if io_processor_prompt:
            # get the post-processed model outputs
            assert self.io_processor is not None
            processed_outputs = self.io_processor.post_process(
1096
1097
                model_output=model_outputs
            )
1098
1099

            return [
1100
1101
1102
1103
1104
1105
                PoolingRequestOutput[Any](
                    request_id="",
                    outputs=processed_outputs,
                    prompt_token_ids=[],
                    finished=True,
                )
1106
1107
1108
            ]
        else:
            return model_outputs
1109

1110
1111
1112
1113
    def embed(
        self,
        prompts: Union[PromptType, Sequence[PromptType]],
        *,
1114
        truncate_prompt_tokens: Optional[int] = None,
1115
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1116
        pooling_params: Optional[Union[PoolingParams, Sequence[PoolingParams]]] = None,
1117
1118
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
    ) -> list[EmbeddingRequestOutput]:
1119
1120
1121
1122
1123
1124
1125
1126
1127
        """
        Generate an embedding vector for each prompt.

        This class automatically batches the given prompts, considering
        the memory constraint. For the best performance, put all of your prompts
        into a single list and pass it to this method.

        Args:
            prompts: The prompts to the LLM. You may pass a sequence of prompts
1128
                for batch inference. See [PromptType][vllm.inputs.PromptType]
1129
                for more details about the format of each prompt.
1130
1131
            pooling_params: The pooling parameters for pooling. If None, we
                use the default pooling parameters.
1132
1133
1134
1135
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
1136
1137
1138
            lora_request: LoRA request to use for generation, if any.

        Returns:
1139
            A list of `EmbeddingRequestOutput` objects containing the
1140
1141
            embedding vectors in the same order as the input prompts.
        """
1142
        if "embed" not in self.supported_tasks:
1143
1144
            raise ValueError(
                "Embedding API is not supported by this model. "
1145
1146
                "Try converting the model using `--convert embed`."
            )
1147

1148
1149
1150
1151
1152
1153
1154
1155
        items = self.encode(
            prompts,
            truncate_prompt_tokens=truncate_prompt_tokens,
            use_tqdm=use_tqdm,
            pooling_params=pooling_params,
            lora_request=lora_request,
            pooling_task="embed",
        )
1156
1157
1158
1159
1160
1161
1162

        return [EmbeddingRequestOutput.from_base(item) for item in items]

    def classify(
        self,
        prompts: Union[PromptType, Sequence[PromptType]],
        *,
1163
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1164
        pooling_params: Optional[Union[PoolingParams, Sequence[PoolingParams]]] = None,
1165
1166
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
    ) -> list[ClassificationRequestOutput]:
1167
1168
1169
1170
1171
1172
1173
1174
1175
        """
        Generate class logits for each prompt.

        This class automatically batches the given prompts, considering
        the memory constraint. For the best performance, put all of your prompts
        into a single list and pass it to this method.

        Args:
            prompts: The prompts to the LLM. You may pass a sequence of prompts
1176
                for batch inference. See [PromptType][vllm.inputs.PromptType]
1177
                for more details about the format of each prompt.
1178
1179
1180
1181
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
1182
            lora_request: LoRA request to use for generation, if any.
1183
1184
            pooling_params: The pooling parameters for pooling. If None, we
                use the default pooling parameters.
1185
        Returns:
1186
            A list of `ClassificationRequestOutput` objects containing the
1187
1188
            embedding vectors in the same order as the input prompts.
        """
1189
        if "classify" not in self.supported_tasks:
1190
            raise ValueError(
1191
                "Classification API is not supported by this model. "
1192
1193
                "Try converting the model using `--convert classify`."
            )
1194

1195
1196
1197
        items = self.encode(
            prompts,
            use_tqdm=use_tqdm,
1198
            pooling_params=pooling_params,
1199
1200
1201
            lora_request=lora_request,
            pooling_task="classify",
        )
1202
1203
1204

        return [ClassificationRequestOutput.from_base(item) for item in items]

1205
1206
1207
1208
1209
1210
1211
    def reward(
        self,
        prompts: Union[PromptType, Sequence[PromptType]],
        /,
        *,
        truncate_prompt_tokens: Optional[int] = None,
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1212
        pooling_params: Optional[Union[PoolingParams, Sequence[PoolingParams]]] = None,
1213
1214
1215
1216
1217
1218
1219
1220
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
    ) -> list[PoolingRequestOutput]:
        """
        Generate rewards for each prompt.

        Args:
            prompts: The prompts to the LLM. You may pass a sequence of prompts
                for batch inference. See [PromptType][vllm.inputs.PromptType]
1221
                for more details about the format of each prompt.
1222
1223
1224
1225
1226
1227
1228
1229
1230
1231
1232
1233
1234
1235
1236
1237
1238
1239
1240
1241
1242
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
            lora_request: LoRA request to use for generation, if any.
            pooling_params: The pooling parameters for pooling. If None, we
                use the default pooling parameters.
        Returns:
            A list of `PoolingRequestOutput` objects containing the
            pooled hidden states in the same order as the input prompts.
        """

        return self.encode(
            prompts,
            use_tqdm=use_tqdm,
            lora_request=lora_request,
            pooling_params=pooling_params,
            truncate_prompt_tokens=truncate_prompt_tokens,
            pooling_task="encode",
        )

1243
1244
1245
    def _embedding_score(
        self,
        tokenizer: AnyTokenizer,
1246
1247
        text_1: list[Union[str, TextPrompt, TokensPrompt]],
        text_2: list[Union[str, TextPrompt, TokensPrompt]],
1248
        truncate_prompt_tokens: Optional[int] = None,
1249
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1250
        pooling_params: Optional[PoolingParams] = None,
1251
1252
1253
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
    ) -> list[ScoringRequestOutput]:
        encoded_output: list[PoolingRequestOutput] = self.encode(
1254
            text_1 + text_2,
1255
            truncate_prompt_tokens=truncate_prompt_tokens,
1256
1257
            use_tqdm=use_tqdm,
            lora_request=lora_request,
1258
            pooling_params=pooling_params,
1259
1260
            pooling_task="embed",
        )
1261

1262
1263
        encoded_output_1: list[PoolingRequestOutput] = encoded_output[0 : len(text_1)]
        encoded_output_2: list[PoolingRequestOutput] = encoded_output[len(text_1) :]
1264
1265
1266
1267

        if len(encoded_output_1) == 1:
            encoded_output_1 = encoded_output_1 * len(encoded_output_2)

1268
1269
1270
        scores = _cosine_similarity(
            tokenizer=tokenizer, embed_1=encoded_output_1, embed_2=encoded_output_2
        )
1271

1272
        items = self.engine_class.validate_outputs(scores, PoolingRequestOutput)
1273
1274
1275
1276
        return [ScoringRequestOutput.from_base(item) for item in items]

    def _cross_encoding_score(
        self,
1277
        tokenizer: AnyTokenizer,
1278
1279
        data_1: Union[list[str], list[ScoreContentPartParam]],
        data_2: Union[list[str], list[ScoreContentPartParam]],
1280
        truncate_prompt_tokens: Optional[int] = None,
1281
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1282
        pooling_params: Optional[PoolingParams] = None,
1283
1284
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
    ) -> list[ScoringRequestOutput]:
1285
        model_config = self.llm_engine.model_config
1286
1287

        if isinstance(tokenizer, MistralTokenizer):
1288
            raise ValueError("Score API is not supported for Mistral tokenizer")
1289

1290
1291
        if len(data_1) == 1:
            data_1 = data_1 * len(data_2)
1292

1293
1294
1295
1296
1297
        if pooling_params is None:
            pooling_params = PoolingParams(task="score")

        model_config = self.llm_engine.model_config
        pooling_params.verify("score", model_config)
1298
        pooling_params_list = list[PoolingParams]()
1299

1300
        tokenization_kwargs: dict[str, Any] = {}
1301

1302
1303
1304
        _validate_truncation_size(
            model_config.max_model_len, truncate_prompt_tokens, tokenization_kwargs
        )
1305

1306
        prompts = list[PromptType]()
1307

1308
1309
        input_pairs = [(t1, t2) for t1, t2 in zip(data_1, data_2)]

1310
        model_config = self.llm_engine.model_config
1311

1312
1313
1314
1315
1316
1317
1318
1319
1320
        for q, d in input_pairs:
            _, engine_prompt = get_score_prompt(
                model_config=model_config,
                data_1=q,
                data_2=d,
                tokenizer=tokenizer,
                tokenization_kwargs=tokenization_kwargs,
            )

1321
            if token_type_ids := engine_prompt.pop("token_type_ids", None):
1322
1323
1324
1325
1326
1327
1328
                params = pooling_params.clone()
                compressed = compress_token_type_ids(token_type_ids)
                params.extra_kwargs = {"compressed_token_type_ids": compressed}
                pooling_params_list.append(params)
            else:
                pooling_params_list.append(pooling_params)

1329
            prompts.append(engine_prompt)
1330
1331

        self._validate_and_add_requests(
1332
            prompts=prompts,
1333
            params=pooling_params_list,
1334
            use_tqdm=use_tqdm,
1335
1336
1337
1338
            lora_request=lora_request,
        )

        outputs = self._run_engine(use_tqdm=use_tqdm)
1339
        items = self.engine_class.validate_outputs(outputs, PoolingRequestOutput)
1340
1341
1342

        return [ScoringRequestOutput.from_base(item) for item in items]

1343
1344
    def score(
        self,
1345
1346
        data_1: Union[SingletonPrompt, Sequence[SingletonPrompt], ScoreMultiModalParam],
        data_2: Union[SingletonPrompt, Sequence[SingletonPrompt], ScoreMultiModalParam],
1347
        /,
1348
        *,
1349
        truncate_prompt_tokens: Optional[int] = None,
1350
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1351
        pooling_params: Optional[PoolingParams] = None,
1352
1353
        lora_request: Optional[Union[list[LoRARequest], LoRARequest]] = None,
    ) -> list[ScoringRequestOutput]:
1354
1355
        """Generate similarity scores for all pairs `<text,text_pair>` or
          `<multi-modal data, multi-modal data pair>`.
1356

1357
        The inputs can be `1 -> 1`, `1 -> N` or `N -> N`.
1358
1359
        In the `1 - N` case the `data_1` input will be replicated `N`
        times to pair with the `data_2` inputs.
1360
        The input pairs are used to build a list of prompts for the
1361
1362
        cross encoder model. This class automatically batches the prompts,
        considering the memory constraint. For the best performance, put all
1363
1364
1365
        of your inputs into a single list and pass it to this method.

        Supports both text and multi-modal data (images, etc.) when used with
1366
        appropriate multi-modal models. For multi-modal inputs, ensure the
1367
        prompt structure matches the model's expected input format.
1368
1369

        Args:
1370
1371
1372
            data_1: Can be a single prompt, a list of prompts or
                `ScoreMultiModalParam`, which can contain either text or
                multi-modal data. When a list, it must have the same length as
1373
                the `data_2` list.
1374
            data_2: The data to pair with the query to form the input to
1375
                the LLM. Can be text or multi-modal data. See [PromptType]
1376
                [vllm.inputs.PromptType] for more details about the format of
1377
                each prompt.
1378
1379
1380
1381
            use_tqdm: If `True`, shows a tqdm progress bar.
                If a callable (e.g., `functools.partial(tqdm, leave=False)`),
                it is used to create the progress bar.
                If `False`, no progress bar is created.
1382
            lora_request: LoRA request to use for generation, if any.
1383
1384
            pooling_params: The pooling parameters for pooling. If None, we
                use the default pooling parameters.
1385
        Returns:
1386
            A list of `ScoringRequestOutput` objects containing the
1387
1388
            generated scores in the same order as the input prompts.
        """
1389
1390
        model_config = self.llm_engine.model_config
        runner_type = model_config.runner_type
1391
        if runner_type != "pooling":
1392
1393
1394
            raise ValueError(
                "LLM.score() is only supported for pooling models. "
                "Try passing `--runner pooling` to use the model as a "
1395
1396
                "pooling model."
            )
1397

1398
1399
        supported_tasks = self.supported_tasks
        if all(t not in supported_tasks for t in ("embed", "classify")):
1400
1401
1402
1403
1404
            raise ValueError(
                "Score API is not supported by this model. "
                "Try converting the model using "
                "`--convert embed` or `--convert classify`."
            )
1405

1406
1407
1408
1409
        if (
            model_config.is_cross_encoder
            and getattr(model_config.hf_config, "num_labels", 0) != 1
        ):
1410
            raise ValueError("Score API is only enabled for num_labels == 1.")
1411
1412
1413
1414

        # the tokenizer for models such as
        # "cross-encoder/ms-marco-MiniLM-L-6-v2" doesn't support passing
        # lists of tokens to the `text` and `text_pair` kwargs
1415
        tokenizer = self.get_tokenizer()
1416

1417
        if not model_config.is_multimodal_model:
1418

1419
1420
1421
1422
1423
            def check_data_type(
                data: Union[
                    SingletonPrompt, Sequence[SingletonPrompt], ScoreMultiModalParam
                ],
            ):
1424
                if isinstance(data, dict) and "content" in data:
1425
1426
1427
1428
                    raise ValueError(
                        "ScoreMultiModalParam is not supported "
                        f"for {model_config.architecture}"
                    )
1429
1430
1431
1432
1433
1434
1435

            check_data_type(data_1)
            check_data_type(data_2)

            def ensure_str(prompt: SingletonPrompt):
                if isinstance(prompt, dict):
                    if "multi_modal_data" in prompt:
1436
1437
1438
                        raise ValueError(
                            "Multi-modal prompt is not supported for scoring"
                        )
1439
1440
                    elif "prompt_token_ids" in prompt:
                        prompt = tokenizer.decode(
1441
1442
                            cast(TokensPrompt, prompt)["prompt_token_ids"]
                        )
1443
1444
1445
1446
1447
1448
1449
1450
1451
1452
1453
1454
1455
1456
1457
1458
1459
1460
1461
1462
1463
1464
1465
1466
1467
1468
1469
1470
                    elif "prompt" in prompt:
                        prompt = cast(TextPrompt, prompt)["prompt"]
                assert type(prompt) is str
                return prompt

            if isinstance(data_1, (str, dict)):
                # Convert a single prompt to a list.
                data_1 = [data_1]  # type: ignore[list-item]

            data_1 = [ensure_str(t) for t in data_1]

            if isinstance(data_2, (str, dict)):
                # Convert a single prompt to a list.
                data_2 = [data_2]  # type: ignore[list-item]

            data_2 = [ensure_str(t) for t in data_2]

        if isinstance(data_1, dict) and "content" in data_1:
            data_1 = data_1.get("content")  # type: ignore[assignment]
        elif isinstance(data_1, str):
            data_1 = [data_1]

        if isinstance(data_2, dict) and "content" in data_2:
            data_2 = data_2.get("content")  # type: ignore[assignment]
        elif isinstance(data_2, str):
            data_2 = [data_2]

        _validate_score_input_lens(data_1, data_2)  # type: ignore[arg-type]
1471

1472
        if model_config.is_cross_encoder:
1473
1474
1475
1476
1477
1478
            return self._cross_encoding_score(
                tokenizer,
                data_1,  # type: ignore[arg-type]
                data_2,  # type: ignore[arg-type]
                truncate_prompt_tokens,
                use_tqdm,
1479
                pooling_params,
1480
1481
                lora_request,
            )
1482
        else:
1483
1484
            return self._embedding_score(
                tokenizer,
1485
1486
                data_1,  # type: ignore[arg-type]
                data_2,  # type: ignore[arg-type]
1487
1488
                truncate_prompt_tokens,
                use_tqdm,
1489
                pooling_params,
1490
1491
                lora_request,
            )
1492

1493
1494
1495
1496
1497
1498
    def start_profile(self) -> None:
        self.llm_engine.start_profile()

    def stop_profile(self) -> None:
        self.llm_engine.stop_profile()

1499
1500
    def reset_prefix_cache(self, device: Optional[Device] = None) -> bool:
        return self.llm_engine.reset_prefix_cache(device)
1501

1502
1503
1504
1505
1506
1507
    def sleep(self, level: int = 1):
        """
        Put the engine to sleep. The engine should not process any requests.
        The caller should guarantee that no requests are being processed
        during the sleep period, before `wake_up` is called.

1508
        Args:
1509
1510
            level: The sleep level. Level 1 sleep will offload the model
                weights and discard the kv cache. The content of kv cache
1511
                is forgotten. Level 1 sleep is good for sleeping and waking
1512
1513
1514
1515
1516
                up the engine to run the same model again. The model weights
                are backed up in CPU memory. Please make sure there's enough
                CPU memory to store the model weights. Level 2 sleep will
                discard both the model weights and the kv cache. The content
                of both the model weights and kv cache is forgotten. Level 2
1517
                sleep is good for sleeping and waking up the engine to run a
1518
                different model or update the model, where previous model
1519
                weights are not needed. It reduces CPU memory pressure.
1520
        """
1521
        self.reset_prefix_cache()
1522
1523
        self.llm_engine.sleep(level=level)

1524
    def wake_up(self, tags: Optional[list[str]] = None):
1525
        """
1526
1527
        Wake up the engine from sleep mode. See the [sleep][vllm.LLM.sleep]
        method for more details.
1528

1529
        Args:
1530
1531
            tags: An optional list of tags to reallocate the engine memory
                for specific memory allocations. Values must be in
1532
                `("weights", "kv_cache")`. If None, all memory is reallocated.
1533
                wake_up should be called with all tags (or None) before the
1534
1535
1536
                engine is used again.
        """
        self.llm_engine.wake_up(tags)
1537

1538
1539
1540
1541
1542
1543
1544
1545
1546
1547
1548
1549
    def get_metrics(self) -> list["Metric"]:
        """Return a snapshot of aggregated metrics from Prometheus.

        Returns:
            A ``MetricSnapshot`` instance capturing the current state
            of all aggregated metrics from Prometheus.

        Note:
            This method is only available with the V1 LLM engine.
        """
        return self.llm_engine.get_metrics()

1550
1551
    def _validate_and_add_requests(
        self,
1552
        prompts: Union[PromptType, Sequence[PromptType], DataPrompt],
1553
1554
1555
1556
1557
1558
        params: Union[
            SamplingParams,
            Sequence[SamplingParams],
            PoolingParams,
            Sequence[PoolingParams],
        ],
1559
        *,
1560
        use_tqdm: Union[bool, Callable[..., tqdm]] = True,
1561
        lora_request: Optional[Union[Sequence[LoRARequest], LoRARequest]],
1562
        priority: Optional[list[int]] = None,
1563
    ) -> None:
1564
        if isinstance(prompts, (str, dict)):
1565
            # Convert a single prompt to a list.
1566
            prompts = [prompts]  # type: ignore[list-item]
1567

1568
        num_requests = len(prompts)
1569
        if isinstance(params, Sequence) and len(params) != num_requests:
1570
1571
1572
1573
1574
1575
1576
            raise ValueError("The lengths of prompts and params must be the same.")
        if isinstance(lora_request, Sequence) and len(lora_request) != num_requests:
            raise ValueError(
                "The lengths of prompts and lora_request must be the same."
            )

        for sp in params if isinstance(params, Sequence) else (params,):
1577
1578
1579
            if isinstance(sp, SamplingParams):
                # We only care about the final output
                sp.output_kind = RequestOutputKind.FINAL_ONLY
1580

Zhuohan Li's avatar
Zhuohan Li committed
1581
        # Add requests to the engine.
1582
1583
        it = prompts
        if use_tqdm:
1584
1585
            tqdm_func = use_tqdm if callable(use_tqdm) else tqdm
            it = tqdm_func(it, desc="Adding requests")
1586
1587

        for i, prompt in enumerate(it):
1588
1589
            if isinstance(prompt, dict):
                self._validate_mm_data_and_uuids(
1590
1591
                    prompt.get("multi_modal_data"), prompt.get("multi_modal_uuids")
                )
1592

1593
            self._add_request(
1594
                prompt,
1595
                params[i] if isinstance(params, Sequence) else params,
1596
1597
1598
                lora_request=lora_request[i]
                if isinstance(lora_request, Sequence)
                else lora_request,
1599
                priority=priority[i] if priority else 0,
nunjunj's avatar
nunjunj committed
1600
            )
1601

1602
    def _validate_mm_data_and_uuids(
1603
1604
1605
        self,
        multi_modal_data: Optional[Any],  # MultiModalDataDict
        multi_modal_uuids: Optional[Any],  # MultiModalUUIDDict
1606
1607
1608
    ):
        """
        Validate that if any multi-modal data is skipped (i.e. None),
1609
        then its corresponding UUID must be set.
1610
1611
1612
1613
1614
1615
1616
1617
        """
        if multi_modal_data is None:
            return

        for modality, data in multi_modal_data.items():
            if isinstance(data, list):
                for i, d in enumerate(data):
                    if d is None:
1618
1619
1620
1621
1622
1623
1624
1625
                        if (
                            multi_modal_uuids is None
                            or modality not in multi_modal_uuids
                            or multi_modal_uuids[  # noqa: E501
                                modality
                            ]
                            is None
                        ):
1626
1627
                            raise ValueError(
                                f"Multi-modal data for {modality} is None "
1628
1629
                                f"but UUID is not provided"
                            )
1630
                        else:
1631
1632
1633
1634
                            if (
                                len(multi_modal_uuids[modality]) <= i
                                or multi_modal_uuids[modality][i] is None
                            ):
1635
1636
                                raise ValueError(
                                    f"Multi-modal data for {modality} is None "
1637
1638
                                    f"but UUID is not provided"
                                )
1639
            else:
1640
1641
1642
1643
1644
1645
1646
1647
1648
                if data is None and (
                    multi_modal_uuids is None
                    or modality not in multi_modal_uuids
                    or multi_modal_uuids[modality] is None
                ):
                    raise ValueError(
                        f"Multi-modal data for {modality} is None"
                        f" but UUID is not provided"
                    )
1649

1650
1651
1652
1653
1654
1655
1656
1657
1658
1659
1660
    def _process_inputs(
        self,
        request_id: str,
        engine_prompt: PromptType,
        params: Union[SamplingParams, PoolingParams],
        *,
        lora_request: Optional[LoRARequest],
        priority: int,
    ) -> tuple[EngineCoreRequest, dict[str, Any]]:
        """Use the Processor to process inputs for LLMEngine."""
        tokenization_kwargs: dict[str, Any] = {}
1661
1662
1663
1664
1665
        _validate_truncation_size(
            self.model_config.max_model_len,
            params.truncate_prompt_tokens,
            tokenization_kwargs,
        )
1666
1667
1668
1669
1670
1671
1672
1673
1674
1675
1676
1677

        processor = self._get_processor()
        engine_request = processor.process_inputs(
            request_id,
            engine_prompt,
            params,
            lora_request=lora_request,
            tokenization_kwargs=tokenization_kwargs,
            priority=priority,
        )
        return engine_request, tokenization_kwargs

1678
    def _add_request(
nunjunj's avatar
nunjunj committed
1679
        self,
1680
        prompt: PromptType,
nunjunj's avatar
nunjunj committed
1681
        params: Union[SamplingParams, PoolingParams],
1682
        lora_request: Optional[LoRARequest] = None,
1683
        priority: int = 0,
1684
    ) -> None:
1685
        prompt_text, _, _ = get_prompt_components(prompt)
1686
        request_id = str(next(self.request_counter))
1687
1688

        engine_request, tokenization_kwargs = self._process_inputs(
1689
            request_id,
1690
            prompt,
1691
1692
            params,
            lora_request=lora_request,
1693
1694
1695
1696
1697
1698
1699
1700
            priority=priority,
        )

        self.llm_engine.add_request(
            request_id,
            engine_request,
            params,
            lora_request=lora_request,
1701
            tokenization_kwargs=tokenization_kwargs,
1702
            priority=priority,
1703
            prompt_text=prompt_text,
nunjunj's avatar
nunjunj committed
1704
        )
1705

1706
    def _run_engine(
1707
        self, *, use_tqdm: Union[bool, Callable[..., tqdm]] = True
1708
    ) -> list[Union[RequestOutput, PoolingRequestOutput]]:
1709
1710
        # Initialize tqdm.
        if use_tqdm:
Zhuohan Li's avatar
Zhuohan Li committed
1711
            num_requests = self.llm_engine.get_num_unfinished_requests()
1712
1713
            tqdm_func = use_tqdm if callable(use_tqdm) else tqdm
            pbar = tqdm_func(
1714
1715
1716
                total=num_requests,
                desc="Processed prompts",
                dynamic_ncols=True,
1717
                postfix=(f"est. speed input: {0:.2f} toks/s, output: {0:.2f} toks/s"),
1718
            )
1719

Zhuohan Li's avatar
Zhuohan Li committed
1720
        # Run the engine.
1721
        outputs: list[Union[RequestOutput, PoolingRequestOutput]] = []
1722
1723
        total_in_toks = 0
        total_out_toks = 0
Zhuohan Li's avatar
Zhuohan Li committed
1724
1725
        while self.llm_engine.has_unfinished_requests():
            step_outputs = self.llm_engine.step()
1726
            for output in step_outputs:
1727
                if output.finished:
1728
1729
                    outputs.append(output)
                    if use_tqdm:
1730
1731
                        if isinstance(output, RequestOutput):
                            # Calculate tokens only for RequestOutput
1732
                            n = len(output.outputs)
1733
                            assert output.prompt_token_ids is not None
1734
                            total_in_toks += len(output.prompt_token_ids) * n
1735
1736
                            in_spd = total_in_toks / pbar.format_dict["elapsed"]
                            total_out_toks += sum(
1737
1738
1739
                                len(stp.token_ids) for stp in output.outputs
                            )
                            out_spd = total_out_toks / pbar.format_dict["elapsed"]
1740
1741
                            pbar.postfix = (
                                f"est. speed input: {in_spd:.2f} toks/s, "
1742
1743
                                f"output: {out_spd:.2f} toks/s"
                            )
1744
                            pbar.update(n)
1745
1746
                        else:
                            pbar.update(1)
1747
1748
                        if pbar.n == num_requests:
                            pbar.refresh()
1749

1750
1751
        if use_tqdm:
            pbar.close()
1752
1753
1754
        # Sort the outputs by request ID.
        # This is necessary because some requests may be finished earlier than
        # its previous requests.
1755
        return sorted(outputs, key=lambda x: int(x.request_id))