from functools import lru_cache from typing import TYPE_CHECKING, Any, Dict, Optional import torch from PIL import Image from vllm.inputs.registry import InputContext from vllm.logger import init_logger from vllm.transformers_utils.processor import get_image_processor from vllm.utils import is_list_of from .base import MultiModalPlugin from .inputs import ImageItem, MultiModalData, MultiModalKwargs if TYPE_CHECKING: from vllm.config import ModelConfig logger = init_logger(__name__) cached_get_image_processor = lru_cache(get_image_processor) class ImagePlugin(MultiModalPlugin): """Plugin for image data.""" def get_data_key(self) -> str: return "image" def _get_hf_image_processor( self, model_config: "ModelConfig", mm_processor_kwargs: Optional[Dict[str, Any]] = None, ): if mm_processor_kwargs is None: mm_processor_kwargs = {} return cached_get_image_processor( model_config.model, trust_remote_code=model_config.trust_remote_code, **mm_processor_kwargs) def _default_input_mapper( self, ctx: InputContext, data: MultiModalData[ImageItem], **mm_processor_kwargs, ) -> MultiModalKwargs: model_config = ctx.model_config # PIL image if isinstance(data, Image.Image) or is_list_of(data, Image.Image): image_processor = self._get_hf_image_processor( model_config, mm_processor_kwargs, ) if image_processor is None: raise RuntimeError("No HuggingFace processor is available " "to process the image object") try: # NOTE: It may make sense to forward the mm_processor_kwargs # here too. For now, to keep it simple, we only allow it be # used for the initialization call though, just in case the # signatures of the preprocessor initializer don't match # preprocess() batch_data = image_processor \ .preprocess(data, return_tensors="pt") \ .data except Exception: logger.error( "Failed to process image (%s) with the default mapper. " "This is most likely an edge-case with this model's image " "processor in transformers (type: %s), and not vLLM.", data, type(image_processor).__name__) raise return MultiModalKwargs(batch_data) # Image embedding elif isinstance(data, torch.Tensor) or is_list_of(data, torch.Tensor): return MultiModalKwargs({"image_embeds": data}) raise TypeError(f"Invalid image type: {type(data)}") def _default_max_multimodal_tokens(self, ctx: InputContext) -> int: return 3000