gpu_input_batch.py 34 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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# Datastructures defining a GPU input batch
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from dataclasses import dataclass
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from typing import Optional, cast
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import numpy as np
import torch
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from typing_extensions import deprecated
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from vllm.lora.request import LoRARequest
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from vllm.multimodal.inputs import (MultiModalKwargs, MultiModalKwargsItem,
                                    PlaceholderRange)
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from vllm.pooling_params import PoolingParams
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from vllm.sampling_params import SamplingParams, SamplingType
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from vllm.utils import swap_dict_values
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from vllm.v1.outputs import LogprobsTensors
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from vllm.v1.pool.metadata import PoolingMetadata
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from vllm.v1.sample.logits_processor import (BatchUpdateBuilder,
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                                             LogitsProcessors,
                                             MoveDirectionality)
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from vllm.v1.sample.metadata import SamplingMetadata
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from vllm.v1.spec_decode.utils import is_spec_decode_unsupported
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from vllm.v1.utils import copy_slice
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from vllm.v1.worker.block_table import MultiGroupBlockTable
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@dataclass
class CachedRequestState:

    req_id: str
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    prompt_token_ids: list[int]
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    mm_kwargs: list[MultiModalKwargsItem]
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    mm_positions: list[PlaceholderRange]
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    sampling_params: Optional[SamplingParams]
    pooling_params: Optional[PoolingParams]
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    generator: Optional[torch.Generator]

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    block_ids: tuple[list[int], ...]
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    num_computed_tokens: int
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    output_token_ids: list[int]
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    mrope_positions: Optional[torch.Tensor] = None
    mrope_position_delta: Optional[int] = None

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    lora_request: Optional[LoRARequest] = None

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    def __post_init__(self):
        self.num_prompt_tokens = len(self.prompt_token_ids)

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    @property
    def num_tokens(self) -> int:
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        return self.num_prompt_tokens + len(self.output_token_ids)

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    # Temporary back-compatibility for plugins that define model runner
    @property
    @deprecated("`mm_inputs` is superseded by `mm_kwargs` and will be "
                "removed in v0.13. Please use `mm_kwargs` instead.")
    def mm_inputs(self) -> list[MultiModalKwargs]:
        return [MultiModalKwargs.from_items([item]) for item in self.mm_kwargs]

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    def get_token_id(self, idx: int) -> int:
        if idx < self.num_prompt_tokens:
            return self.prompt_token_ids[idx]
        else:
            return self.output_token_ids[idx - self.num_prompt_tokens]
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class InputBatch:

    def __init__(
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        self,
        max_num_reqs: int,
        max_model_len: int,
        max_num_batched_tokens: int,
        device: torch.device,
        pin_memory: bool,
        vocab_size: int,
        block_sizes: list[int],  # The block_size of each kv cache group
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        logitsprocs: Optional[LogitsProcessors] = None,
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        is_spec_decode: bool = False,
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        is_pooling_model: bool = False,
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    ):
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        self.is_pooling_model = is_pooling_model
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        self.is_spec_decode = is_spec_decode
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        self.max_num_reqs = max_num_reqs
        self.max_model_len = max_model_len
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        self.max_num_batched_tokens = max_num_batched_tokens
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        self.device = device
        self.pin_memory = pin_memory
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        self.vocab_size = vocab_size
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        self._req_ids: list[Optional[str]] = []
        self.req_id_to_index: dict[str, int] = {}
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        # TODO(woosuk): This buffer could be too large if max_model_len is big.
        # Find a way to reduce the CPU memory usage.
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        # This buffer is not directly transferred to the GPU, so it does not
        # need to be pinned.
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        self.token_ids_cpu_tensor = torch.zeros(
            (max_num_reqs, max_model_len),
            device="cpu",
            dtype=torch.int32,
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            pin_memory=False,
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        )
        self.token_ids_cpu = self.token_ids_cpu_tensor.numpy()
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        self.num_tokens = np.zeros(max_num_reqs, dtype=np.int32)
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        self.num_tokens_no_spec = np.zeros(max_num_reqs, dtype=np.int32)
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        self.num_prompt_tokens = np.zeros(max_num_reqs, dtype=np.int32)
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        self.num_computed_tokens_cpu_tensor = torch.zeros(
            (max_num_reqs, ),
            device="cpu",
            dtype=torch.int32,
            pin_memory=pin_memory,
        )
        self.num_computed_tokens_cpu = \
            self.num_computed_tokens_cpu_tensor.numpy()
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        # Block table.
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        self.block_table = MultiGroupBlockTable(
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            max_num_reqs=max_num_reqs,
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            max_model_len=max_model_len,
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            max_num_batched_tokens=max_num_batched_tokens,
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            pin_memory=pin_memory,
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            device=device,
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            block_sizes=block_sizes,
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        )

        # Sampling-related.
        self.temperature = torch.empty((max_num_reqs, ),
                                       dtype=torch.float32,
                                       device=device)
        self.temperature_cpu_tensor = torch.empty((max_num_reqs, ),
                                                  dtype=torch.float32,
                                                  device="cpu",
                                                  pin_memory=pin_memory)
        self.temperature_cpu = self.temperature_cpu_tensor.numpy()
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        self.greedy_reqs: set[str] = set()
        self.random_reqs: set[str] = set()
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        self.top_p = torch.empty((max_num_reqs, ),
                                 dtype=torch.float32,
                                 device=device)
        self.top_p_cpu_tensor = torch.empty((max_num_reqs, ),
                                            dtype=torch.float32,
                                            device="cpu",
                                            pin_memory=pin_memory)
        self.top_p_cpu = self.top_p_cpu_tensor.numpy()
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        self.top_p_reqs: set[str] = set()
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        self.top_k = torch.empty((max_num_reqs, ),
                                 dtype=torch.int32,
                                 device=device)
        self.top_k_cpu_tensor = torch.empty((max_num_reqs, ),
                                            dtype=torch.int32,
                                            device="cpu",
                                            pin_memory=pin_memory)
        self.top_k_cpu = self.top_k_cpu_tensor.numpy()
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        self.top_k_reqs: set[str] = set()
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        # IDs of requests which do not support spec decoding
        self.spec_decode_unsupported_reqs: set[str] = set()
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        # Frequency penalty related data structures
        self.frequency_penalties = torch.empty((max_num_reqs, ),
                                               dtype=torch.float,
                                               device=device)
        self.frequency_penalties_cpu_tensor = torch.empty(
            (max_num_reqs, ),
            dtype=torch.float,
            device="cpu",
            pin_memory=pin_memory)
        self.frequency_penalties_cpu = \
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            self.frequency_penalties_cpu_tensor.numpy()
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        self.frequency_penalties_reqs: set[str] = set()
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        # Presence penalty related data structures
        self.presence_penalties = torch.empty((max_num_reqs, ),
                                              dtype=torch.float,
                                              device=device)
        self.presence_penalties_cpu_tensor = torch.empty((max_num_reqs, ),
                                                         dtype=torch.float,
                                                         device="cpu",
                                                         pin_memory=pin_memory)
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        self.presence_penalties_cpu = self.presence_penalties_cpu_tensor.numpy(
        )
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        self.presence_penalties_reqs: set[str] = set()
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        # Repetition penalty related data structures
        self.repetition_penalties = torch.empty((max_num_reqs, ),
                                                dtype=torch.float,
                                                device=device)
        self.repetition_penalties_cpu_tensor = torch.empty(
            (max_num_reqs, ),
            dtype=torch.float,
            device="cpu",
            pin_memory=pin_memory)
        self.repetition_penalties_cpu = \
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            self.repetition_penalties_cpu_tensor.numpy()
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        self.repetition_penalties_reqs: set[str] = set()
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        # lora related
        self.request_lora_mapping = np.zeros((self.max_num_reqs, ),
                                             dtype=np.int32)
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        self.lora_id_to_request_ids: dict[int, set[str]] = {}
        self.lora_id_to_lora_request: dict[int, LoRARequest] = {}
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        # req_index -> generator
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        # NOTE(woosuk): The indices of the requests that do not have their own
        # generator should not be included in the dictionary.
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        self.generators: dict[int, torch.Generator] = {}
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        self.num_logprobs: dict[str, int] = {}
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        # NOTE(rob): num_prompt_logprobs only includes reqs
        # that are currently in the prefill phase.
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        self.num_prompt_logprobs: dict[str, int] = {}
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        # To accumulate prompt logprobs tensor chunks across prefill steps.
        self.in_progress_prompt_logprobs_cpu: dict[str, LogprobsTensors] = {}

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        # Internal representation of per-step batch state changes, used for
        # reordering persistent batch and generating logitsprocs batch state
        # updates. Should reset each step.
        self.batch_update_builder = BatchUpdateBuilder()

        # TODO convert this to LogitsProcessor
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        self.has_allowed_token_ids: set[str] = set()
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        # NOTE(lufang): In the mask tensor, if the corresponding token allowed,
        # the value is False. Since we use masked_fill_ to set -inf.
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        self.allowed_token_ids_mask: Optional[torch.Tensor] = None
        self.allowed_token_ids_mask_cpu_tensor: Optional[torch.Tensor] = None
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        # req_index -> bad_words_token_ids
        self.bad_words_token_ids: dict[int, list[list[int]]] = {}

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        self.logits_processing_needs_token_ids = np.zeros(max_num_reqs,
                                                          dtype=bool)

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        self.req_output_token_ids: list[Optional[list[int]]] = []
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        # Store provided logitsprocs. If none are provided, initialize empty
        # data structure
        self.logitsprocs = logitsprocs or LogitsProcessors()

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        # This is updated each time the batch constituents change.
        self.sampling_metadata = self._make_sampling_metadata()

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        self.pooling_params: dict[str, PoolingParams] = {}

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    @property
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    def req_ids(self) -> list[str]:
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        # None elements should only be present transiently
        # while performing state updates to the batch.
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        return cast(list[str], self._req_ids)
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    def _register_add_request(self, request: "CachedRequestState") -> int:
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        """Track add-request operations for logits processors.
        Not applicable to pooling models.
        """

        # Detailed added request metadata is only required for non-pooling
        # models, to support logitsprocs
        assert request.sampling_params

        # Fill the next empty index if there is one.
        if (new_req_index := self.batch_update_builder.pop_removed()) is None:
            # Append to end otherwise.
            new_req_index = self.num_reqs

        assert new_req_index < self.max_num_reqs
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        self.batch_update_builder.added.append(
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            (new_req_index, request.sampling_params, request.prompt_token_ids,
             request.output_token_ids))
        return new_req_index
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    def add_request(
        self,
        request: "CachedRequestState",
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    ) -> int:
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        if not self.is_pooling_model:
            # New request index bookkeeping for autoregressive models.
            req_index = self._register_add_request(request)
        else:
            req_index = self.num_reqs
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        req_id = request.req_id
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        if req_index == len(self._req_ids):
            self._req_ids.append(req_id)
            self.req_output_token_ids.append(request.output_token_ids)
        else:
            self._req_ids[req_index] = req_id
            self.req_output_token_ids[req_index] = request.output_token_ids

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        self.req_id_to_index[req_id] = req_index

        # Copy the prompt token ids and output token ids.
        num_prompt_tokens = len(request.prompt_token_ids)
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        self.num_prompt_tokens[req_index] = num_prompt_tokens
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        self.token_ids_cpu[
            req_index, :num_prompt_tokens] = request.prompt_token_ids
        start_idx = num_prompt_tokens
        end_idx = start_idx + len(request.output_token_ids)
        self.token_ids_cpu[req_index,
                           start_idx:end_idx] = request.output_token_ids
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        # Number of token ids in token_ids_cpu.
        # NOTE(woosuk): This may include spec decode tokens.
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        self.num_tokens[req_index] = request.num_tokens
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        # Number of tokens without spec decode tokens.
        self.num_tokens_no_spec[req_index] = request.num_tokens
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        self.num_computed_tokens_cpu[req_index] = request.num_computed_tokens
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        self.block_table.add_row(request.block_ids, req_index)
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        if sampling_params := request.sampling_params:
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            if (self.is_spec_decode
                    and is_spec_decode_unsupported(sampling_params)):
                self.spec_decode_unsupported_reqs.add(req_id)
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            if sampling_params.sampling_type == SamplingType.GREEDY:
                # Avoid later division by zero.
                self.temperature_cpu[req_index] = -1.0
                self.greedy_reqs.add(req_id)
            else:
                self.temperature_cpu[req_index] = sampling_params.temperature
                self.random_reqs.add(req_id)

            self.top_p_cpu[req_index] = sampling_params.top_p
            if sampling_params.top_p < 1:
                self.top_p_reqs.add(req_id)
            top_k = sampling_params.top_k
            if 0 < top_k < self.vocab_size:
                self.top_k_reqs.add(req_id)
            else:
                top_k = self.vocab_size
            self.top_k_cpu[req_index] = top_k
            self.frequency_penalties_cpu[
                req_index] = sampling_params.frequency_penalty
            if sampling_params.frequency_penalty != 0.0:
                self.frequency_penalties_reqs.add(req_id)
            self.presence_penalties_cpu[
                req_index] = sampling_params.presence_penalty
            if sampling_params.presence_penalty != 0.0:
                self.presence_penalties_reqs.add(req_id)
            self.repetition_penalties_cpu[
                req_index] = sampling_params.repetition_penalty
            if sampling_params.repetition_penalty != 1.0:
                self.repetition_penalties_reqs.add(req_id)

            # NOTE(woosuk): self.generators should not include the requests that
            # do not have their own generator.
            if request.generator is not None:
                self.generators[req_index] = request.generator

            if sampling_params.logprobs is not None:
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                self.num_logprobs[req_id] = (self.vocab_size
                                             if sampling_params.logprobs == -1
                                             else sampling_params.logprobs)
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            if sampling_params.prompt_logprobs is not None:
                self.num_prompt_logprobs[
                    req_id] = sampling_params.prompt_logprobs

            if sampling_params.allowed_token_ids:
                self.has_allowed_token_ids.add(req_id)
                if self.allowed_token_ids_mask_cpu_tensor is None:
                    # Lazy allocation for this tensor, which can be large.
                    # False means we don't fill with -inf.
                    self.allowed_token_ids_mask = torch.zeros(
                        self.max_num_reqs,
                        self.vocab_size,
                        dtype=torch.bool,
                        device=self.device)
                    self.allowed_token_ids_mask_cpu_tensor = torch.zeros(
                        self.max_num_reqs,
                        self.vocab_size,
                        dtype=torch.bool,
                        device="cpu")
                self.allowed_token_ids_mask_cpu_tensor[req_index] = True
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                # False means we don't fill with -inf.
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                self.allowed_token_ids_mask_cpu_tensor[req_index][
                    sampling_params.allowed_token_ids] = False
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            if sampling_params.bad_words_token_ids:
                self.bad_words_token_ids[
                    req_index] = sampling_params.bad_words_token_ids
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        elif pooling_params := request.pooling_params:
            self.pooling_params[req_id] = pooling_params
            self.logits_processing_needs_token_ids[req_index] = (
                pooling_params.requires_token_ids)
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        else:
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            raise NotImplementedError(request)
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        # Add request lora ID
        if request.lora_request:
            lora_id = request.lora_request.lora_int_id
            if lora_id not in self.lora_id_to_request_ids:
                self.lora_id_to_request_ids[lora_id] = set()

            self.request_lora_mapping[req_index] = lora_id
            self.lora_id_to_request_ids[lora_id].add(request.req_id)
            self.lora_id_to_lora_request[lora_id] = request.lora_request
        else:
            # No LoRA
            self.request_lora_mapping[req_index] = 0

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        return req_index

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    def remove_request(self, req_id: str) -> Optional[int]:
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        """This method must always be followed by a call to condense().
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        Args:
          req_id: request to remove

        Returns:
          Removed request index, or `None` if `req_id` not recognized
        """
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        req_index = self.req_id_to_index.pop(req_id, None)
        if req_index is None:
            return None
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        if not self.is_pooling_model:
            # Autoregressive models require bookkeeping of removed requests to
            # support logitsprocs.
            self.batch_update_builder.removed_append(req_index)
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        self._req_ids[req_index] = None
        self.req_output_token_ids[req_index] = None
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        self.greedy_reqs.discard(req_id)
        self.random_reqs.discard(req_id)
        self.top_p_reqs.discard(req_id)
        self.top_k_reqs.discard(req_id)
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        self.spec_decode_unsupported_reqs.discard(req_id)
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        self.frequency_penalties_reqs.discard(req_id)
        self.presence_penalties_reqs.discard(req_id)
        self.repetition_penalties_reqs.discard(req_id)
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        self.generators.pop(req_index, None)
        self.num_logprobs.pop(req_id, None)
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        self.num_prompt_logprobs.pop(req_id, None)
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        self.in_progress_prompt_logprobs_cpu.pop(req_id, None)
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        # LoRA
        lora_id = self.request_lora_mapping[req_index]
        if lora_id != 0:
            self.lora_id_to_request_ids[lora_id].discard(req_id)
            if len(self.lora_id_to_request_ids[lora_id]) == 0:
                self.lora_id_to_request_ids.pop(lora_id)
                self.lora_id_to_lora_request.pop(lora_id)
            self.request_lora_mapping[req_index] = 0

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        self.has_allowed_token_ids.discard(req_id)
        if self.allowed_token_ids_mask_cpu_tensor is not None:
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            # False means we don't fill with -inf.
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            self.allowed_token_ids_mask_cpu_tensor[req_index].fill_(False)
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        self.bad_words_token_ids.pop(req_index, None)
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        self.pooling_params.pop(req_id, None)
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        return req_index

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    def swap_states(self, i1: int, i2: int) -> None:
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        # For autoregressive models, track detailed request reordering info
        # to support logitsprocs
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        self.batch_update_builder.moved.append(
            (i1, i2, MoveDirectionality.SWAP))
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        old_id_i1 = self._req_ids[i1]
        old_id_i2 = self._req_ids[i2]
        self._req_ids[i1], self._req_ids[i2] =\
            self._req_ids[i2], self._req_ids[i1] # noqa
        self.req_output_token_ids[i1], self.req_output_token_ids[i2] =\
            self.req_output_token_ids[i2], self.req_output_token_ids[i1]
        assert old_id_i1 is not None and old_id_i2 is not None
        self.req_id_to_index[old_id_i1], self.req_id_to_index[old_id_i2] =\
            self.req_id_to_index[old_id_i2], self.req_id_to_index[old_id_i1]
        self.num_tokens[i1], self.num_tokens[i2] =\
            self.num_tokens[i2], self.num_tokens[i1]
        self.num_tokens_no_spec[i1], self.num_tokens_no_spec[i2] =\
            self.num_tokens_no_spec[i2], self.num_tokens_no_spec[i1]
        self.num_prompt_tokens[i1], self.num_prompt_tokens[i2] =\
            self.num_prompt_tokens[i2], self.num_prompt_tokens[i1]
        self.num_computed_tokens_cpu[i1], self.num_computed_tokens_cpu[i2] =\
            self.num_computed_tokens_cpu[i2], self.num_computed_tokens_cpu[i1]
        self.temperature_cpu[i1], self.temperature_cpu[i2] =\
            self.temperature_cpu[i2], self.temperature_cpu[i1]
        self.top_p_cpu[i1], self.top_p_cpu[i2] =\
            self.top_p_cpu[i2], self.top_p_cpu[i1]
        self.top_k_cpu[i1], self.top_k_cpu[i2] =\
            self.top_k_cpu[i2], self.top_k_cpu[i1]
        self.frequency_penalties_cpu[i1], self.frequency_penalties_cpu[i2] =\
            self.frequency_penalties_cpu[i2], self.frequency_penalties_cpu[i1]
        self.presence_penalties_cpu[i1], self.presence_penalties_cpu[i2] =\
            self.presence_penalties_cpu[i2], self.presence_penalties_cpu[i1]
        self.repetition_penalties_cpu[i1], self.repetition_penalties_cpu[i2] =\
            self.repetition_penalties_cpu[i2], self.repetition_penalties_cpu[i1]

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        # NOTE: the following is unsafe
        # self.token_ids_cpu[i1, ...], self.token_ids_cpu[i2, ...], =\
        #     self.token_ids_cpu[i2, ...], self.token_ids_cpu[i1, ...]
        # instead, we need to temporiarily copy the data for one of the indices
        # TODO(lucas): optimize this by only copying valid indices
        tmp = self.token_ids_cpu[i1, ...].copy()
        self.token_ids_cpu[i1, ...] = self.token_ids_cpu[i2, ...]
        self.token_ids_cpu[i2, ...] = tmp

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        swap_dict_values(self.generators, i1, i2)
        swap_dict_values(self.bad_words_token_ids, i1, i2)
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        self.request_lora_mapping[i1], self.request_lora_mapping[i2] =\
            self.request_lora_mapping[i2], self.request_lora_mapping[i1]
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        if self.allowed_token_ids_mask_cpu_tensor is not None:
            self.allowed_token_ids_mask_cpu_tensor[i1], \
                self.allowed_token_ids_mask_cpu_tensor[i2] =\
                self.allowed_token_ids_mask_cpu_tensor[i2], \
                    self.allowed_token_ids_mask_cpu_tensor[i1]
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        self.block_table.swap_row(i1, i2)

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    def condense(self) -> None:
        """Slide non-empty requests down into lower, empty indices.

        Any consecutive empty indices at the very end of the list are not
        filled.

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        Args:
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          empty_req_indices: empty indices which may be filled.

        Returns:
          swaps: list of (from,to) swap tuples for moved requests
          empty_req_indices: indices not filled by condensation
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        """
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        num_reqs = self.num_reqs

        if self.is_pooling_model:
            # Will be contiguous in pooling case, just trim the lists.
            del self._req_ids[num_reqs:]
            del self.req_output_token_ids[num_reqs:]
            return

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        if not (empty_req_indices := self.batch_update_builder.removed):
            # All removed requests were replaced by added requests, or else no
            # requests were removed at all. No condense() needed
            return
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        if num_reqs == 0:
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            # The batched states are empty.
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            self._req_ids.clear()
            self.req_output_token_ids.clear()
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            return

        # NOTE(woosuk): This function assumes that the empty_req_indices
        # is sorted in descending order.
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        last_req_index = num_reqs + len(empty_req_indices) - 1
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        while empty_req_indices:
            # Find the largest non-empty index.
            while last_req_index in empty_req_indices:
                last_req_index -= 1

            # Find the smallest empty index.
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            empty_index = self.batch_update_builder.peek_removed()
            assert empty_index is not None
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            if empty_index >= last_req_index:
                break

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            # Move active request down into empty request
            # index.
            self.batch_update_builder.pop_removed()
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            # Autoregressive models require detailed tracking of condense
            # operations to support logitsprocs
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            self.batch_update_builder.moved.append(
                (last_req_index, empty_index,
                 MoveDirectionality.UNIDIRECTIONAL))
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            req_id = self._req_ids[last_req_index]
            output_token_ids = self.req_output_token_ids[last_req_index]
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            assert req_id is not None
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            self._req_ids[empty_index] = req_id
            self._req_ids[last_req_index] = None
            self.req_output_token_ids[empty_index] = output_token_ids
            self.req_output_token_ids[last_req_index] = None
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            self.req_id_to_index[req_id] = empty_index

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            num_tokens = self.num_tokens[last_req_index]
            self.token_ids_cpu[empty_index, :num_tokens] = self.token_ids_cpu[
                last_req_index, :num_tokens]
            self.num_tokens[empty_index] = num_tokens
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            self.num_tokens_no_spec[empty_index] = self.num_tokens_no_spec[
                last_req_index]
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            self.num_prompt_tokens[empty_index] = self.num_prompt_tokens[
                last_req_index]
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            self.num_computed_tokens_cpu[
                empty_index] = self.num_computed_tokens_cpu[last_req_index]
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            self.block_table.move_row(last_req_index, empty_index)
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            self.temperature_cpu[empty_index] = self.temperature_cpu[
                last_req_index]
            self.top_p_cpu[empty_index] = self.top_p_cpu[last_req_index]
            self.top_k_cpu[empty_index] = self.top_k_cpu[last_req_index]
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            self.frequency_penalties_cpu[
                empty_index] = self.frequency_penalties_cpu[last_req_index]
            self.presence_penalties_cpu[
                empty_index] = self.presence_penalties_cpu[last_req_index]
            self.repetition_penalties_cpu[
                empty_index] = self.repetition_penalties_cpu[last_req_index]
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            generator = self.generators.pop(last_req_index, None)
            if generator is not None:
                self.generators[empty_index] = generator

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            self.request_lora_mapping[empty_index] = self.request_lora_mapping[
                last_req_index]

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            # TODO convert these to LogitsProcessors
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            if self.allowed_token_ids_mask_cpu_tensor is not None:
                self.allowed_token_ids_mask_cpu_tensor[
                    empty_index] = self.allowed_token_ids_mask_cpu_tensor[
                        last_req_index]

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            bad_words_token_ids = self.bad_words_token_ids.pop(
                last_req_index, None)
            if bad_words_token_ids is not None:
                self.bad_words_token_ids[empty_index] = bad_words_token_ids
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            # Decrement last_req_index since it is now empty.
            last_req_index -= 1

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        # Trim lists to the batch size.
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        del self._req_ids[num_reqs:]
        del self.req_output_token_ids[num_reqs:]
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    def refresh_metadata(self):
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        """Apply any batch updates to sampling metadata."""
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        if self.is_pooling_model:
            # Batch changes every step for pooling models.
            self.sampling_metadata = self._make_sampling_metadata()
            return

        # For non-pooling models - generate and apply logitsprocs update;
        # reset batch update tracking.
        # Update sampling metadata if batch state is changed.
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        batch_update = self.batch_update_builder.get_and_reset(self.num_reqs)
        for logit_proc in self.logitsprocs.all:
            logit_proc.update_state(batch_update)
        if batch_update:
            self.sampling_metadata = self._make_sampling_metadata()
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    def _make_sampling_metadata(self) -> SamplingMetadata:
        num_reqs = self.num_reqs
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        if not self.all_greedy:
            temperature = copy_slice(self.temperature_cpu_tensor,
                                     self.temperature, num_reqs)
        else:
            temperature = None
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        if not self.no_top_p:
            copy_slice(self.top_p_cpu_tensor, self.top_p, num_reqs)
        if not self.no_top_k:
            copy_slice(self.top_k_cpu_tensor, self.top_k, num_reqs)

        if not self.no_penalties:
            # Since syncing these tensors is expensive only copy them
            # if necessary i.e. if there are requests which require
            # penalties to be applied during sampling.
            copy_slice(self.frequency_penalties_cpu_tensor,
                       self.frequency_penalties, num_reqs)
            copy_slice(self.presence_penalties_cpu_tensor,
                       self.presence_penalties, num_reqs)
            copy_slice(self.repetition_penalties_cpu_tensor,
                       self.repetition_penalties, num_reqs)

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        needs_prompt_token_ids = (
            not self.no_penalties
            or self.logits_processing_needs_token_ids[:num_reqs].any())
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        if needs_prompt_token_ids:
            # The prompt tokens are used only for applying penalties or
            # step pooling during the sampling/pooling process.
            # Hence copy these tensors only when there are requests which
            # need penalties/step_pooler to be applied.
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            prompt_token_ids = self._make_prompt_token_ids_tensor()
        else:
            prompt_token_ids = None
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        allowed_token_ids_mask: Optional[torch.Tensor] = None
        if not self.no_allowed_token_ids:
            assert self.allowed_token_ids_mask is not None
            copy_slice(self.allowed_token_ids_mask_cpu_tensor,
                       self.allowed_token_ids_mask, num_reqs)
            allowed_token_ids_mask = self.allowed_token_ids_mask[:num_reqs]

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        return SamplingMetadata(
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            temperature=temperature,
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            all_greedy=self.all_greedy,
            all_random=self.all_random,
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            top_p=None if self.no_top_p else self.top_p[:num_reqs],
            top_k=None if self.no_top_k else self.top_k[:num_reqs],
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            generators=self.generators,
            max_num_logprobs=self.max_num_logprobs,
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            prompt_token_ids=prompt_token_ids,
            frequency_penalties=self.frequency_penalties[:num_reqs],
            presence_penalties=self.presence_penalties[:num_reqs],
            repetition_penalties=self.repetition_penalties[:num_reqs],
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            output_token_ids=cast(list[list[int]], self.req_output_token_ids),
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            no_penalties=self.no_penalties,
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            allowed_token_ids_mask=allowed_token_ids_mask,
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            bad_words_token_ids=self.bad_words_token_ids,
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            logitsprocs=self.logitsprocs,
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        )

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    @property
    def pooling_metadata(self) -> PoolingMetadata:
        if len(self.pooling_params) == 0:
            pooling_params = []
        else:
            # Note, for now this assumes that all request in the batch
            # are either sampling or pooling requests
            assert len(self.req_ids) == len(self.pooling_params)
            pooling_params = [
                self.pooling_params[req_id] for req_id in self.req_ids
            ]

        return PoolingMetadata(
            prompt_lens=torch.from_numpy(
                self.num_prompt_tokens[:self.num_reqs]).to(self.device),
            prompt_token_ids=self.sampling_metadata.prompt_token_ids,
            pooling_params=pooling_params,
        )

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    def _make_prompt_token_ids_tensor(self) -> torch.Tensor:
        max_prompt_len = self.num_prompt_tokens[:self.num_reqs].max()
        prompt_token_ids_cpu_tensor = torch.empty(
            (self.num_reqs, max_prompt_len),
            device="cpu",
            dtype=torch.int64,
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            pin_memory=self.pin_memory,
        )
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        prompt_token_ids = prompt_token_ids_cpu_tensor.numpy()
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        prompt_token_ids[:] = self.token_ids_cpu[:self.
                                                 num_reqs, :max_prompt_len]
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        # Use the value of vocab_size as a pad since we don't have a
        # token_id of this value.
        for i in range(self.num_reqs):
            prompt_token_ids[i, self.num_prompt_tokens[i]:] = self.vocab_size
        return prompt_token_ids_cpu_tensor.to(device=self.device,
                                              non_blocking=True)

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    def make_lora_inputs(
        self, num_scheduled_tokens: np.ndarray
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    ) -> tuple[tuple[int, ...], tuple[int, ...], set[LoRARequest]]:
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        """
        Given the num_scheduled_tokens for each request in the batch, return
        datastructures used to activate the current LoRAs.
        Returns:
            1. prompt_lora_mapping: A tuple of size self.num_reqs where,
               prompt_lora_mapping[i] is the LoRA id to use for the ith prompt.
            2. token_lora_mapping: A tuple of size np.sum(num_scheduled_tokens)
               where, token_lora_mapping[i] is the LoRA id to use for ith token.
            3. lora_requests: Set of relevant LoRA requests.
        """

        req_lora_mapping = self.request_lora_mapping[:self.num_reqs]
        prompt_lora_mapping = tuple(req_lora_mapping)
        token_lora_mapping = tuple(
            req_lora_mapping.repeat(num_scheduled_tokens))
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        active_lora_requests: set[LoRARequest] = set(
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            self.lora_id_to_lora_request.values())

        return prompt_lora_mapping, token_lora_mapping, active_lora_requests

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    @property
    def num_reqs(self) -> int:
        return len(self.req_id_to_index)

    @property
    def all_greedy(self) -> bool:
        return len(self.random_reqs) == 0

    @property
    def all_random(self) -> bool:
        return len(self.greedy_reqs) == 0

    @property
    def no_top_p(self) -> bool:
        return len(self.top_p_reqs) == 0

    @property
    def no_top_k(self) -> bool:
        return len(self.top_k_reqs) == 0

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    @property
    def no_penalties(self) -> bool:
        return (len(self.presence_penalties_reqs) == 0
                and len(self.frequency_penalties_reqs) == 0
                and len(self.repetition_penalties_reqs) == 0)

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    @property
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    def max_num_logprobs(self) -> Optional[int]:
        return max(self.num_logprobs.values()) if self.num_logprobs else None
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    @property
    def no_prompt_logprob(self) -> bool:
792
        return not self.num_prompt_logprobs
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    @property
    def no_allowed_token_ids(self) -> bool:
        return len(self.has_allowed_token_ids) == 0