models.py 34.2 KB
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# SPDX-License-Identifier: Apache-2.0

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import copy
import math
import os
import re
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from dataclasses import dataclass, field
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from typing import (Any, Callable, Dict, List, Optional, Sequence, Set, Type,
                    Union)
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import safetensors.torch
import torch
from torch import nn

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from vllm.adapter_commons.models import (AdapterLRUCache, AdapterModel,
                                         AdapterModelManager)
from vllm.adapter_commons.utils import (add_adapter, deactivate_adapter,
                                        get_adapter, list_adapters,
                                        remove_adapter, set_adapter_mapping)
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from vllm.config import LoRAConfig
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from vllm.logger import init_logger
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from vllm.lora.layers import (BaseLayerWithLoRA,
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                              LinearScalingRotaryEmbeddingWithLoRA,
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                              LoRAMapping)
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from vllm.lora.lora import LoRALayerWeights, PackedLoRALayerWeights
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from vllm.lora.peft_helper import PEFTHelper
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from vllm.lora.punica_wrapper import get_punica_wrapper
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from vllm.lora.utils import (from_layer, from_layer_logits_processor,
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                             get_supported_lora_modules,
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                             is_regex_target_modules,
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                             parse_fine_tuned_lora_name, replace_submodule)
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from vllm.model_executor.models import SupportsLoRA, supports_multimodal
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from vllm.model_executor.models.interfaces import is_pooling_model
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from vllm.model_executor.models.module_mapping import MultiModelKeys
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from vllm.model_executor.models.utils import PPMissingLayer, WeightsMapper
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from vllm.utils import is_pin_memory_available
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logger = init_logger(__name__)
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_GLOBAL_LORA_ID = 0


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@dataclass
class LongContextLoRAContext:
    """Context for lora adapters that support long context."""
    # The scaling factors to support long context lora fine tuned models.
    scaling_factors: List[float]
    # dimension to apply rotary embedding.
    rot_dim: int
    # offsets to the sin_cos_cache for each lora_id loaded.
    # This value is dynamically modified.
    offsets_by_lora_id: Dict[int, int] = field(default_factory=dict)


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def get_lora_id():
    global _GLOBAL_LORA_ID
    _GLOBAL_LORA_ID += 1
    return _GLOBAL_LORA_ID


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class LoRAModel(AdapterModel):
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    """A LoRA fine-tuned model."""

    def __init__(
        self,
        lora_model_id: int,
        rank: int,
        loras: Dict[str, LoRALayerWeights],
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        scaling_factor: Optional[float] = None,
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    ) -> None:
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        """
        Args:
            lora_model_id: The integer id for the lora model.
            rank: lora rank.
            loras: module name -> weights for lora-replaced layers.
            scaling_factor: Scaling factor to support long context lora model.
                None if the lora is not tuned for long context support.
        """
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        self.id = lora_model_id
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        # Scaling factor for long context lora model. None if it is not
        # fine tuned for the long context.
        self.scaling_factor = scaling_factor
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        assert (
            lora_model_id
            > 0), f"a valid lora id should be greater than 0, got {self.id}"
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        self.rank = rank
        self.loras: Dict[str, LoRALayerWeights] = loras

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    def clone(self, lora_model_id: int) -> "LoRAModel":
        """Return a copy of the object with different ids.

        Will share the underlying tensors."""
        return self.__class__(
            lora_model_id,
            rank=self.rank,
            loras=self.loras.copy(),
        )

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    @property
    def extra_vocab_size(self) -> int:
        return max(lora.extra_vocab_size
                   for lora in self.loras.values()) if self.loras else 0

    def get_lora(self, module_name: str) -> Optional[LoRALayerWeights]:
        """Get LoRA for a given module by name"""
        return self.loras.get(module_name, None)

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    def check_lora_name(self, lora_name: str) -> bool:
        return lora_name in self.loras

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    # (yard1): TODO see if we can derive target_embedding_padding automatically
    @classmethod
    def from_lora_tensors(
        cls,
        lora_model_id: int,
        tensors: Dict[str, torch.Tensor],
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        peft_helper: PEFTHelper,
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        device: str = "cuda",
        dtype: Optional[torch.dtype] = None,
        embeddings: Optional[Dict[str, torch.Tensor]] = None,
        target_embedding_padding: Optional[int] = None,
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        embedding_modules: Optional[Dict[str, str]] = None,
        embedding_padding_modules: Optional[List[str]] = None,
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        weights_mapper: Optional[WeightsMapper] = None,
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    ) -> "LoRAModel":
        """Create a LoRAModel from a dictionary of tensors."""
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        pin_memory = str(device) == "cpu" and is_pin_memory_available()
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        loras: Dict[str, LoRALayerWeights] = {}
        for tensor_name, tensor in tensors.items():
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            module_name, is_lora_a, is_bias = parse_fine_tuned_lora_name(
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                tensor_name, weights_mapper)
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            if module_name not in loras:
                lora_embeddings_tensor = None
                if embeddings:
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                    assert embedding_modules is not None
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                    embeddings_module = next(
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                        (k for k in embedding_modules if k in module_name),
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                        None)
                    if embeddings_module:
                        lora_embeddings_tensor = embeddings[
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                            embedding_modules[embeddings_module]].to(
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                                device=device, dtype=dtype)
                        if pin_memory:
                            lora_embeddings_tensor = (
                                lora_embeddings_tensor.pin_memory())
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                loras[module_name] = LoRALayerWeights.from_config(
                    module_name, peft_helper, lora_embeddings_tensor)

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            if is_bias:
                loras[module_name].bias = tensor.to(device=device,
                                                    dtype=dtype).t()
                bias = tensor.to(device=device, dtype=dtype).t()
                if pin_memory:
                    bias = bias.pin_memory()
                loras[module_name].bias = bias
            elif is_lora_a:
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                loras[module_name].lora_a = tensor.to(device=device,
                                                      dtype=dtype).t()
                if pin_memory:
                    loras[module_name].lora_a = loras[
                        module_name].lora_a.pin_memory()
            else:
                loras[module_name].lora_b = tensor.to(device=device,
                                                      dtype=dtype).t()
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                assert embedding_padding_modules is not None
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                if any(name in module_name
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                       for name in embedding_padding_modules
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                       ) and target_embedding_padding is not None:
                    lora_b = loras[module_name].lora_b
                    assert target_embedding_padding >= lora_b.shape[1]
                    addition = target_embedding_padding - lora_b.shape[1]
                    loras[module_name].lora_b = torch.nn.functional.pad(
                        lora_b, (0, addition))
                if pin_memory:
                    loras[module_name].lora_b = loras[
                        module_name].lora_b.pin_memory()

        for lora in loras.values():
            lora.optimize()
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        return cls(lora_model_id,
                   peft_helper.r,
                   loras,
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                   scaling_factor=peft_helper.vllm_long_context_scaling_factor)
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    @classmethod
    def from_local_checkpoint(
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        cls,
        lora_dir: str,
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        expected_lora_modules: List[str],
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        peft_helper: PEFTHelper,
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        *,
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        lora_model_id: Optional[int] = None,
        device: str = "cuda",
        dtype: Optional[torch.dtype] = None,
        target_embedding_padding: Optional[int] = None,
        embedding_modules: Optional[Dict[str, str]] = None,
        embedding_padding_modules: Optional[List[str]] = None,
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        weights_mapper: Optional[WeightsMapper] = None,
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    ) -> "LoRAModel":
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        """Create a LoRAModel from a local checkpoint.
        
        Args:
            lora_dir: The local path that has lora data.
            expected_lora_modules: Name of modules that are expected to be
                replaced by lora.
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            peft_helper: Loaded lora configuration information.
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            lora_model_id: LoRA model id. If not given, automatically set by
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                a global counter.
            device: Device where the lora model is loaded.
            dtype: dtype of the lora model weights.

        Returns:
            Loaded LoRA Model.
        """
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        lora_tensor_path = os.path.join(lora_dir, "adapter_model.safetensors")
        lora_bin_file_path = os.path.join(lora_dir, "adapter_model.bin")
        new_embeddings_tensor_path = os.path.join(
            lora_dir, "new_embeddings.safetensors")
        new_embeddings_bin_file_path = os.path.join(lora_dir,
                                                    "new_embeddings.bin")
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        unexpected_modules: List[Union[list[str], str]]
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        if os.path.isfile(lora_tensor_path):
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            tensors: Dict[str, torch.Tensor] = {}
            # Find unexpected modules.
            # Use safetensor key as a source of truth to find expected modules.
            # in peft if you have target_modules A, B, C and C does not exist
            # in the model it won’t error and model will be trained with A, B
            # loraified. C won’t exist in the safetensor but it will exist in
            # the target_modules of the adapter_config.json.
            unexpected_modules = []
            with safetensors.safe_open(lora_tensor_path,
                                       framework="pt") as f:  # type: ignore
                for lora_module in f.keys():  # noqa
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                    module_name, _, _ = parse_fine_tuned_lora_name(
                        lora_module, weights_mapper)
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                    part_name = module_name.split(".")[-1]
                    if part_name not in expected_lora_modules:
                        unexpected_modules.append(module_name)
                if unexpected_modules:
                    raise ValueError(
                        f"While loading {lora_dir}, expected"
                        f" target modules in {expected_lora_modules}"
                        f" but received {unexpected_modules}."
                        f" Please verify that the loaded LoRA module is correct"
                    )
                # Load tensors if there are only expected modules.
                for module in f.keys():  # noqa
                    tensors[module] = f.get_tensor(module)
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        elif os.path.isfile(lora_bin_file_path):
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            # When a bin file is provided, we rely on config to find unexpected
            # modules.
            unexpected_modules = []
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            target_modules = peft_helper.target_modules
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            if not isinstance(target_modules, list):
                target_modules = [target_modules]
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            for module in target_modules:
                # Compatible with more modules,
                # such as:layers.11.self_attn.k_proj
                part_name = module.split(".")[-1]
                if part_name not in expected_lora_modules:
                    unexpected_modules.append(module)
            # loaded lora's target modules must be a subset of
            # expected_lora_modules. It is not reliable. See
            # https://github.com/vllm-project/vllm/pull/5909. But there's no
            # other better mechanism.
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            if unexpected_modules and not is_regex_target_modules(
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                    peft_helper.target_modules, expected_lora_modules):
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                raise ValueError(
                    f"While loading {lora_dir}, expected"
                    f" target modules in {expected_lora_modules}"
                    f" but received {unexpected_modules}."
                    f" Please verify that the loaded LoRA module is correct")
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            tensors = torch.load(lora_bin_file_path, map_location=device)
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        else:
            raise ValueError(f"{lora_dir} doesn't contain tensors")

        embeddings = None
        if os.path.isfile(new_embeddings_tensor_path):
            embeddings = safetensors.torch.load_file(
                new_embeddings_tensor_path)
        elif os.path.isfile(new_embeddings_bin_file_path):
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            embeddings = torch.load(new_embeddings_bin_file_path,
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                                    map_location=device,
                                    weights_only=True)
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        return cls.from_lora_tensors(
            lora_model_id=get_lora_id()
            if lora_model_id is None else lora_model_id,
            tensors=tensors,
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            peft_helper=peft_helper,
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            device=device,
            dtype=dtype,
            embeddings=embeddings,
            target_embedding_padding=target_embedding_padding,
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            embedding_modules=embedding_modules,
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            embedding_padding_modules=embedding_padding_modules,
            weights_mapper=weights_mapper)
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class LoRAModelManager(AdapterModelManager):
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    """A manager that manages multiple LoRA-fine-tuned models."""

    def __init__(
        self,
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        model: SupportsLoRA,
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        max_num_seqs: int,
        max_num_batched_tokens: int,
        vocab_size: int,
        lora_config: LoRAConfig,
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        device: torch.device,
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    ):
        """Create a LoRAModelManager and adapter for a given model.

        Args:
            model: the model to be adapted.
            max_num_seqs: the maximum number of sequences model can run in a
                single batch.
            max_num_batched_tokens: the maximum number of tokens model can run
                in a single batch.
            vocab_size: the vocab size of the model.
            lora_config: the LoRA configuration.
        """
        self.lora_config = lora_config
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        self.device = device
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        self.max_num_seqs = max_num_seqs
        assert self.capacity >= self.lora_slots
        self.max_num_batched_tokens = math.ceil(max_num_batched_tokens / 8) * 8
        self.lora_index_to_id: List[Optional[int]] = [None] * self.lora_slots
        self.vocab_size = vocab_size
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        self.long_lora_context: Optional[LongContextLoRAContext] = None
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        self.punica_wrapper = get_punica_wrapper(
            max_num_batched_tokens,
            max_batches=self.max_num_seqs,
            device=self.device,
            max_loras=self.lora_config.max_loras)
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        # Scaling factor -> offset to the sin_cos_cache to it.
        # Used for long context lora.
        self.scaling_factor_to_offset: Dict[float, int] = {}
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        super().__init__(model)
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        self.supported_lora_modules = get_supported_lora_modules(self.model)
        assert self.supported_lora_modules, "No supported LoRA modules found in"
        f"{self.model.__class__.__name__}."
        if lora_config.long_lora_scaling_factors:
            # We need to replace rotary emb layer to do batch computation
            # for long lora.
            self.supported_lora_modules.append("rotary_emb")
        self.packed_modules_mapping = copy.deepcopy(
            self.model.packed_modules_mapping)
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        # Used to indicate whether the model is a multimodal model
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        self.supports_mm: bool = (
            supports_multimodal(self.model)
            # In case the model only supports LoRA for
            # text modules (e.g. ChatGLM)
            and hasattr(self.model, "get_mm_mapping"))
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        self.is_pooling_model = is_pooling_model(self.model)
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        self.packed_modules: Dict[str, List[str]] = {}
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        self.modules: Dict[str, BaseLayerWithLoRA] = {}
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        # Dict instead of a Set for compatibility with LRUCache.
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        self._last_mapping: Optional[LoRAMapping] = None
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        self._create_lora_modules()
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        self.model.lora_manager = self
        self.adapter_type = 'LoRa'
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    @property
    def capacity(self) -> int:
        return self.lora_config.max_cpu_loras

    @property
    def lora_slots(self) -> int:
        return self.lora_config.max_loras

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    @property
    def adapter_slots(self) -> int:
        return self.lora_slots
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    def activate_adapter(
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        self,
        lora_id: int,
    ) -> bool:
        """Move LoRA into a GPU buffer to be used in the forward pass."""
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        if lora_id in self._active_adapters:
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            return False
        first_free_slot = next(
            ((i, lora_id) for i, lora_id in enumerate(self.lora_index_to_id)
             if lora_id is None), None)
        if first_free_slot is None:
            raise ValueError("No free lora slots")
        index, _ = first_free_slot
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        self._active_adapters[lora_id] = None
        lora_model = self._registered_adapters[lora_id]
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        logger.debug("Activating LoRA. int id: %d, slot index: %d",
                     lora_model.id, index)
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        self.lora_index_to_id[index] = lora_model.id
        for module_name, module in self.modules.items():
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            module_lora = self._get_lora_layer_weights(lora_model, module_name)
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            if module_lora:
                module_lora.optimize()
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                # Bias is not explicitly enabled with the flag enable_lora_bias.
                bias = module_lora.bias
                if ((torch.is_tensor(bias) or
                     (isinstance(bias, Sequence) and any(b is not None
                                                         for b in bias)))
                        and not self.lora_config.bias_enabled):
                    module_lora.bias = None
                    raise ValueError(
                        f"Adapter bias cannot be used for {module_name}"
                        " without --enable-lora-bias.")
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                module.set_lora(index, module_lora.lora_a, module_lora.lora_b,
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                                module_lora.embeddings_tensor,
                                module_lora.bias)
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            else:
                module.reset_lora(index)
        return True

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    def _deactivate_adapter(self, lora_id: int):
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        try:
            index = self.lora_index_to_id.index(lora_id)
            self.lora_index_to_id[index] = None
        except ValueError:
            pass

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    def _set_long_lora_context(self, lora: LoRAModel):
        if self.long_lora_context is None:
            return

        if lora.scaling_factor is None:
            return

        if (lora.scaling_factor not in self.scaling_factor_to_offset):
            raise ValueError(f"Long LoRA scaling factor {lora.scaling_factor}"
                             " has not been initialized.")

        offsets = self.scaling_factor_to_offset.get(lora.scaling_factor)
        if offsets:
            self.long_lora_context.offsets_by_lora_id[lora.id] = offsets

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    def _add_adapter(self, lora: LoRAModel):
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        self._create_merged_loras_inplace(lora)
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        self._registered_adapters[lora.id] = lora
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        self._set_long_lora_context(lora)
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    def pin_adapter(self, lora_id: int) -> bool:
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        """Pin a LoRAModel in the manager cache."""
        raise NotImplementedError(
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            "Pinning is not supported in LoRAModelManager. "
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            "Use LRUCacheLoRAModelManager for pinning")  # type: ignore

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    def _set_adapter_mapping(self, mapping: LoRAMapping) -> None:
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        # update lora states
        self.punica_wrapper.update_metadata(
            mapping,
            self.lora_index_to_id,
            self.lora_slots + 1,
            self.vocab_size,
            self.lora_config.lora_extra_vocab_size,
            self.long_lora_context,
        )
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    def remove_all_adapters(self):
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        """Remove all LoRAModels from the manager."""
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        self._registered_adapters.clear()
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        self.lora_index_to_id = [None] * self.lora_slots
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        self._active_adapters.clear()
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    def _create_lora_modules(self):
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        for module_name, module in self.model.named_modules(
                remove_duplicate=False):
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            if isinstance(module, PPMissingLayer):
                continue
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            if not self._match_target_modules(module_name):
                continue
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            # A temporary approach for multimodal models to support LoRA
            # TODO: Remove this restriction
            if self._filter_unsupported_mm_module(module_name):
                logger.warning(
                    "Regarding multimodal models, vLLM currently only supports "
                    "adding LoRA to language model, %s will be ignored.",
                    module_name,
                )
                continue
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            parts = module_name.split(".")[-1]
            packed_moduled_lst = self.packed_modules_mapping.get(parts, [])
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            new_module = replace_submodule(
                self.model, module_name,
                from_layer(module, self.lora_slots, self.lora_config,
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                           packed_moduled_lst, self.model.config))
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            # LinearScalingRotaryEmbeddingWithLoRA is used to handle
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            # long context lora. Register relevant metadata.
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            if isinstance(new_module, LinearScalingRotaryEmbeddingWithLoRA):
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                self.long_lora_context = LongContextLoRAContext(
                    new_module.scaling_factors, new_module.rotary_dim)
                self.scaling_factor_to_offset = \
                    new_module.scaling_factor_to_offset
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            # (yard1): TODO make this more robust
            if "lm_head" in module_name:
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                logits_processor_module = self.model.get_submodule(
                    "logits_processor")
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                new_module = replace_submodule(
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                    self.model, "logits_processor",
                    from_layer_logits_processor(logits_processor_module,
                                                module, self.lora_slots,
                                                self.lora_config,
                                                self.model.config))
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            # In some models, especially multimodal ones, layers with the same
            # name may have different types, such as nn.Linear and
            # ReplicatedLinear. The nn.Linear layers cannot be replaced with
            # LoRA layers, leading to assertion error. The following check
            # aims to prevent this error
            if self.supports_mm and not isinstance(new_module,
                                                   BaseLayerWithLoRA):
                continue
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            self.register_module(module_name, new_module)
            self._register_packed_modules(module_name)
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            # All lora layers share the same punica_wrapper based on reference.
            new_module.set_mapping(self.punica_wrapper)
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    def register_module(self, module_name: str, module: "BaseLayerWithLoRA"):
        assert isinstance(module, BaseLayerWithLoRA)
        self.modules[module_name] = module

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    def create_dummy_lora(
            self,
            lora_id: int,
            rank: int,
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            scaling_factor: Optional[float],
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            embedding_modules: Optional[Dict[str, str]] = None) -> LoRAModel:
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        """Create zero-initialized LoRAModel for warmup."""
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        model = LoRAModel(lora_id, rank, {}, scaling_factor)
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        for module_name, module in self.model.named_modules():
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            bias_enabled = self.lora_config.bias_enabled
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            if (not self._match_target_modules(module_name)
                    or not isinstance(module, BaseLayerWithLoRA)
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                    or isinstance(module, LinearScalingRotaryEmbeddingWithLoRA)
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                    or self._filter_unsupported_mm_module(module_name)):
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                continue
            parts = module_name.split(".")
            if module_name not in self.packed_modules:
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                assert embedding_modules is not None
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                if parts[-1] in embedding_modules:
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                    input_dim = (module.base_layer.org_vocab_size +
                                 self.lora_config.lora_extra_vocab_size if
                                 hasattr(module.base_layer, "org_vocab_size")
                                 else module.base_layer.weight.shape[1])
                    output_dim = module.base_layer.embedding_dim if hasattr(
                        module.base_layer,
                        "embedding_dim") else module.base_layer.weight.shape[0]
                    embeddings_tensor_dim = (module.base_layer.embedding_dim if
                                             hasattr(module.base_layer,
                                                     "embedding_dim") else
                                             module.base_layer.weight.shape[1])
                    lora = LoRALayerWeights.create_dummy_lora_weights(
                        module_name,
                        input_dim,
                        output_dim,
                        rank,
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                        module.lora_a_stacked[0].dtype,
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                        "cpu",
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                        embeddings_tensor_dim=embeddings_tensor_dim,
                        bias_enabled=bias_enabled)
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                else:
                    lora = LoRALayerWeights.create_dummy_lora_weights(
                        module_name,
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                        module.lora_a_stacked[0].shape[-1],
                        module.lora_b_stacked[0].shape[-2],
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                        rank,
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                        module.lora_a_stacked[0].dtype,
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                        "cpu",
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                        bias_enabled=bias_enabled,
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                    )
                lora.optimize()
            else:
                parts = module_name.split(".")
                replacements = self.packed_modules_mapping[parts[-1]]
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                subloras: List[Optional[LoRALayerWeights]] = []
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                for i, r in enumerate(replacements):
                    lora = LoRALayerWeights.create_dummy_lora_weights(
                        module_name + "." + r,
                        module.lora_a_stacked[i].shape[-1],
                        module.lora_b_stacked[i].shape[-2],
                        rank,
                        module.lora_a_stacked[i].dtype,
                        "cpu",
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                        bias_enabled=bias_enabled,
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                    )
                    lora.optimize()
                    subloras.append(lora)
                lora = PackedLoRALayerWeights.pack(subloras)
            model.loras[module_name] = lora
        return model

    def _match_target_modules(self, module_name: str):
        return any(
            re.match(
                r".*\.{target_module}$".format(target_module=target_module),
                module_name) or target_module == module_name
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            for target_module in self.supported_lora_modules)
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    def _filter_unsupported_mm_module(self, module_name: str) -> bool:
        """
        Regarding multimodal models, vLLM currently only supports adding LoRA to
        language model. LoRA for other modules, such as the vision tower, will 
        be filtered out.
        """
        if self.supports_mm:
            module_mapping: MultiModelKeys = self.model.get_mm_mapping()
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            prefix_lst = module_mapping.connector + module_mapping.tower_model
            return any(
                [module_name.startswith(prefix) for prefix in prefix_lst])
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        return False

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    def _register_packed_modules(self, module_full_name: str) -> None:
        parts = module_full_name.split(".")
        module_name = parts[-1]
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        replacements = self.packed_modules_mapping.get(module_name, [])
        # When replacements is less than or equal to 1, it indicates that this
        # module is not a packed module.
        if len(replacements) <= 1:
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            return
        prefix = ".".join(parts[:-1])
        self.packed_modules[module_full_name] = [
            prefix + "." + r if prefix else r for r in replacements
        ]

    def _create_merged_loras_inplace(self, lora_model: LoRAModel) -> None:
        for module_name, new_module_names in self.packed_modules.items():
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            replacement_loras: List[Optional[LoRALayerWeights]] = []
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            replaced_module: Set[str] = set()
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            has_replacement = False
            for r in new_module_names:
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                lora = self._get_lora_layer_weights(lora_model, r)
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                replacement_loras.append(lora)
                if lora:
                    has_replacement = True
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                    replaced_module.add(r)
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            if not has_replacement:
                continue
            for i in range(len(replacement_loras)):
                if replacement_loras[i]:
                    continue
                replacement_loras[i] = None
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            # HACK Temporary solution for the pool model.
            if self.is_pooling_model and not lora_model.check_lora_name(
                    module_name):
                replaced_module_name = module_name.replace("model.", "")
                if lora_model.check_lora_name(module_name):
                    module_name = replaced_module_name
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            lora_model.loras[module_name] = PackedLoRALayerWeights.pack(
                replacement_loras)
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            # Remove the modules that have been replaced.
            for module in replaced_module:
                lora_model.loras.pop(module, None)
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    def _get_lora_layer_weights(
            self, lora_model: LoRAModel,
            module_name: str) -> Optional[LoRALayerWeights]:
        org_module_name = module_name
        if self.is_pooling_model and not lora_model.check_lora_name(
                module_name):
            # If it's a pool model, and the layer name is not found,
            # remove the prefix 'model.' and search again.
            module_name = module_name.replace("model.", "")
            if lora_model.check_lora_name(module_name):
                org_module_name = module_name
                logger.info_once(
                    "For the pool model, successfully loaded the LoRA weights "
                    "after removing the prefix 'model.'.")
        return lora_model.get_lora(org_module_name)

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    def deactivate_adapter(self, adapter_id: int) -> bool:
        return deactivate_adapter(adapter_id, self._active_adapters,
                                  self._deactivate_adapter)

    def add_adapter(self, adapter: LoRAModel) -> bool:
        logger.debug(
            "Adding lora. Model id: %d, "
            "int id: %d, "
            "scaling factor: %s", adapter.id, adapter.id,
            adapter.scaling_factor)
        return add_adapter(adapter, self._registered_adapters, self.capacity,
                           self._add_adapter)
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    def set_adapter_mapping(self, mapping: LoRAMapping) -> None:
        self._last_mapping = set_adapter_mapping(mapping, self._last_mapping,
                                                 self._set_adapter_mapping)

    def remove_adapter(self, adapter_id: int) -> bool:
        return remove_adapter(adapter_id, self._registered_adapters,
                              self.deactivate_adapter)

    def list_adapters(self) -> Dict[int, Any]:
        return list_adapters(self._registered_adapters)

    def get_adapter(self, adapter_id: int) -> Optional[Any]:
        return get_adapter(adapter_id, self._registered_adapters)


class LoRALRUCache(AdapterLRUCache[LoRAModel]):
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    def __init__(self, capacity: int, deactivate_lora_fn: Callable[[int],
                                                                   bool]):
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        super().__init__(capacity, deactivate_lora_fn)
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class LRUCacheLoRAModelManager(LoRAModelManager):
    """A model manager that manages multiple LoRAs with LRU cache."""

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    def __init__(self, model: nn.Module, max_num_seqs: int,
                 max_num_batched_tokens: int, vocab_size: int,
                 lora_config: LoRAConfig, device: torch.device):
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        super().__init__(model, max_num_seqs, max_num_batched_tokens,
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                         vocab_size, lora_config, device)
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        self._registered_adapters: LoRALRUCache = LoRALRUCache(
            self.capacity, self.deactivate_adapter)
        self._active_adapters: LoRALRUCache = LoRALRUCache(
            self.lora_slots, self._deactivate_adapter)
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    def list_adapters(self) -> Dict[int, LoRAModel]:
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        """List all registered LoRAModels."""
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        return dict(self._registered_adapters.cache)
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    def add_adapter(self, lora: LoRAModel) -> bool:
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        """Add a LoRAModel to the manager."""
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        logger.debug(
            "Adding lora. Model id: %d, "
            "int id: %d, "
            "scaling factor: %s", lora.id, lora.id, lora.scaling_factor)
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        if lora.id not in self._registered_adapters:
            self._add_adapter(lora)
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            was_added = True
        else:
            # We always touch to update the LRU cache order
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            self._registered_adapters.touch(lora.id)
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            was_added = False
        return was_added

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    def activate_adapter(
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        self,
        lora_id: int,
    ) -> bool:
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        if lora_id not in self._active_adapters and len(
                self._active_adapters) >= self.lora_slots:
            self._active_adapters.remove_oldest()
        result = super().activate_adapter(lora_id)
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        # We always touch to update the LRU cache order
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        self._active_adapters.touch(lora_id)
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        return result

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    def remove_oldest_adapter(self) -> bool:
        if len(self._registered_adapters) > 0:
            self._registered_adapters.remove_oldest()
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            return True
        return False

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    def pin_adapter(self, lora_id: int) -> bool:
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        """Pin a LoRAModel in the manager cache."""
        self._pin_lora_in_cpu_cache(lora_id)
        self._pin_lora_in_gpu_cache(lora_id)
        return True

    def _pin_lora_in_cpu_cache(self, lora_id: int):
        try:
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            self._registered_adapters.pin(lora_id)
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        except ValueError as err:
            raise ValueError("Pinning failed. "
                             f"LoRA {lora_id} is not registered.") from err

    def _pin_lora_in_gpu_cache(self, lora_id: int):
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        if lora_id not in self._active_adapters:
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            # move lora to gpu if not already active
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            self.activate_adapter(lora_id)
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        self._active_adapters.pin(lora_id)
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def create_lora_manager(
        model: nn.Module,
        max_num_seqs: int,
        max_num_batched_tokens: int,
        vocab_size: int,
        lora_config: LoRAConfig,
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        device: torch.device,
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        lora_manager_cls: Type[LoRAModelManager] = LoRAModelManager,
        **kwargs) -> LoRAModelManager:
    """Create a LoRA adapter for a given model."""
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    if not hasattr(model, "packed_modules_mapping"):
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        raise ValueError(f"Model {type(model)} is not supported for LoRA.")
    lora_manager = lora_manager_cls(
        model=model,
        max_num_seqs=max_num_seqs,
        max_num_batched_tokens=max_num_batched_tokens,
        vocab_size=vocab_size,
        lora_config=lora_config,
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        device=device,
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        **kwargs)
    return lora_manager