# SPDX-License-Identifier: Apache-2.0 # SPDX-FileCopyrightText: Copyright contributors to the vLLM project import asyncio import atexit from collections.abc import Generator, Set from concurrent.futures import ThreadPoolExecutor from itertools import groupby from pathlib import Path from typing import TYPE_CHECKING, Any, TypeVar from urllib.parse import ParseResult, urlparse from urllib.request import url2pathname import numpy as np import numpy.typing as npt import torch from PIL import Image, UnidentifiedImageError import vllm.envs as envs from vllm.connections import HTTPConnection, global_http_connection from vllm.logger import init_logger from vllm.utils.registry import ExtensionManager from .audio import AudioEmbeddingMediaIO, AudioMediaIO from .base import MediaIO from .image import ImageEmbeddingMediaIO, ImageMediaIO from .video import VideoMediaIO if TYPE_CHECKING: from .inputs import ( BatchedTensorInputs, MultiModalKwargsItem, MultiModalPlaceholderDict, ) else: BatchedTensorInputs = Any MultiModalKwargsItem = Any MultiModalPlaceholderDict = Any logger = init_logger(__name__) global_thread_pool = ThreadPoolExecutor( max_workers=envs.VLLM_MEDIA_LOADING_THREAD_COUNT ) atexit.register(global_thread_pool.shutdown) _M = TypeVar("_M") MEDIA_CONNECTOR_REGISTRY = ExtensionManager() @MEDIA_CONNECTOR_REGISTRY.register("http") class MediaConnector: def __init__( self, media_io_kwargs: dict[str, dict[str, Any]] | None = None, connection: HTTPConnection = global_http_connection, *, allowed_local_media_path: str = "", allowed_media_domains: list[str] | None = None, ) -> None: """ Args: media_io_kwargs: Additional args passed to process media inputs, keyed by modalities. For example, to set num_frames for video, set `--media-io-kwargs '{"video":{"num_frames":40}}'` connection: HTTP connection client to download media contents. allowed_local_media_path: A local directory to load media files from. allowed_media_domains: If set, only media URLs that belong to this domain can be used for multi-modal inputs. """ super().__init__() self.media_io_kwargs: dict[str, dict[str, Any]] = ( media_io_kwargs if media_io_kwargs else {} ) self.connection = connection if allowed_local_media_path: allowed_local_media_path_ = Path(allowed_local_media_path) if not allowed_local_media_path_.exists(): raise ValueError( "Invalid `--allowed-local-media-path`: The path " f"{allowed_local_media_path_} does not exist." ) if not allowed_local_media_path_.is_dir(): raise ValueError( "Invalid `--allowed-local-media-path`: The path " f"{allowed_local_media_path_} must be a directory." ) else: allowed_local_media_path_ = None self.allowed_local_media_path = allowed_local_media_path_ if allowed_media_domains is None: allowed_media_domains = [] self.allowed_media_domains = allowed_media_domains def _load_data_url( self, url_spec: ParseResult, media_io: MediaIO[_M], ) -> _M: # type: ignore[type-var] data_spec, data = url_spec.path.split(",", 1) media_type, data_type = data_spec.split(";", 1) if data_type != "base64": msg = "Only base64 data URLs are supported for now." raise NotImplementedError(msg) return media_io.load_base64(media_type, data) def _load_file_url( self, url_spec: ParseResult, media_io: MediaIO[_M], ) -> _M: # type: ignore[type-var] allowed_local_media_path = self.allowed_local_media_path if allowed_local_media_path is None: raise RuntimeError( "Cannot load local files without `--allowed-local-media-path`." ) filepath = Path(url2pathname(url_spec.netloc + url_spec.path)) if allowed_local_media_path not in filepath.resolve().parents: raise ValueError( f"The file path {filepath} must be a subpath " f"of `--allowed-local-media-path {allowed_local_media_path}`." ) return media_io.load_file(filepath) def _assert_url_in_allowed_media_domains(self, url_spec: ParseResult) -> None: if ( self.allowed_media_domains and url_spec.hostname not in self.allowed_media_domains ): raise ValueError( f"The URL must be from one of the allowed domains: " f"{self.allowed_media_domains}. Input URL domain: " f"{url_spec.hostname}" ) def load_from_url( self, url: str, media_io: MediaIO[_M], *, fetch_timeout: int | None = None, ) -> _M: # type: ignore[type-var] url_spec = urlparse(url) if url_spec.scheme.startswith("http"): self._assert_url_in_allowed_media_domains(url_spec) connection = self.connection data = connection.get_bytes( url, timeout=fetch_timeout, allow_redirects=envs.VLLM_MEDIA_URL_ALLOW_REDIRECTS, ) return media_io.load_bytes(data) if url_spec.scheme == "data": return self._load_data_url(url_spec, media_io) if url_spec.scheme == "file": return self._load_file_url(url_spec, media_io) msg = "The URL must be either a HTTP, data or file URL." raise ValueError(msg) async def load_from_url_async( self, url: str, media_io: MediaIO[_M], *, fetch_timeout: int | None = None, ) -> _M: url_spec = urlparse(url) loop = asyncio.get_running_loop() if url_spec.scheme.startswith("http"): self._assert_url_in_allowed_media_domains(url_spec) connection = self.connection data = await connection.async_get_bytes( url, timeout=fetch_timeout, allow_redirects=envs.VLLM_MEDIA_URL_ALLOW_REDIRECTS, ) future = loop.run_in_executor(global_thread_pool, media_io.load_bytes, data) return await future if url_spec.scheme == "data": future = loop.run_in_executor( global_thread_pool, self._load_data_url, url_spec, media_io ) return await future if url_spec.scheme == "file": future = loop.run_in_executor( global_thread_pool, self._load_file_url, url_spec, media_io ) return await future msg = "The URL must be either a HTTP, data or file URL." raise ValueError(msg) def fetch_audio( self, audio_url: str, ) -> tuple[np.ndarray, int | float]: """ Load audio from a URL. """ audio_io = AudioMediaIO(**self.media_io_kwargs.get("audio", {})) return self.load_from_url( audio_url, audio_io, fetch_timeout=envs.VLLM_AUDIO_FETCH_TIMEOUT, ) async def fetch_audio_async( self, audio_url: str, ) -> tuple[np.ndarray, int | float]: """ Asynchronously fetch audio from a URL. """ audio_io = AudioMediaIO(**self.media_io_kwargs.get("audio", {})) return await self.load_from_url_async( audio_url, audio_io, fetch_timeout=envs.VLLM_AUDIO_FETCH_TIMEOUT, ) def fetch_image( self, image_url: str, *, image_mode: str = "RGB", ) -> Image.Image: """ Load a PIL image from an HTTP or base64 data URL. By default, the image is converted into RGB format. """ image_io = ImageMediaIO( image_mode=image_mode, **self.media_io_kwargs.get("image", {}) ) try: return self.load_from_url( image_url, image_io, fetch_timeout=envs.VLLM_IMAGE_FETCH_TIMEOUT, ) except UnidentifiedImageError as e: # convert to ValueError to be properly caught upstream raise ValueError(str(e)) from e async def fetch_image_async( self, image_url: str, *, image_mode: str = "RGB", ) -> Image.Image: """ Asynchronously load a PIL image from an HTTP or base64 data URL. By default, the image is converted into RGB format. """ image_io = ImageMediaIO( image_mode=image_mode, **self.media_io_kwargs.get("image", {}) ) try: return await self.load_from_url_async( image_url, image_io, fetch_timeout=envs.VLLM_IMAGE_FETCH_TIMEOUT, ) except UnidentifiedImageError as e: # convert to ValueError to be properly caught upstream raise ValueError(str(e)) from e def fetch_video( self, video_url: str, *, image_mode: str = "RGB", ) -> tuple[npt.NDArray, dict[str, Any]]: """ Load video from an HTTP or base64 data URL. """ image_io = ImageMediaIO( image_mode=image_mode, **self.media_io_kwargs.get("image", {}) ) video_io = VideoMediaIO(image_io, **self.media_io_kwargs.get("video", {})) return self.load_from_url( video_url, video_io, fetch_timeout=envs.VLLM_VIDEO_FETCH_TIMEOUT, ) async def fetch_video_async( self, video_url: str, *, image_mode: str = "RGB", ) -> tuple[npt.NDArray, dict[str, Any]]: """ Asynchronously load video from an HTTP or base64 data URL. By default, the image is converted into RGB format. """ image_io = ImageMediaIO( image_mode=image_mode, **self.media_io_kwargs.get("image", {}) ) video_io = VideoMediaIO(image_io, **self.media_io_kwargs.get("video", {})) return await self.load_from_url_async( video_url, video_io, fetch_timeout=envs.VLLM_VIDEO_FETCH_TIMEOUT, ) def fetch_image_embedding( self, data: str, ) -> torch.Tensor: """ Load image embedding from a URL. """ image_embedding_io = ImageEmbeddingMediaIO() return image_embedding_io.load_base64("", data) def fetch_audio_embedding( self, data: str, ) -> torch.Tensor: """ Load audio embedding from a URL. """ audio_embedding_io = AudioEmbeddingMediaIO() return audio_embedding_io.load_base64("", data) def encode_audio_base64( audio: np.ndarray, sampling_rate: int, ) -> str: """Encode audio as base64.""" audio_io = AudioMediaIO() return audio_io.encode_base64((audio, sampling_rate)) def encode_image_base64( image: Image.Image, *, image_mode: str = "RGB", format: str = "JPEG", ) -> str: """ Encode a pillow image to base64 format. By default, the image is converted into RGB format before being encoded. """ image_io = ImageMediaIO(image_mode=image_mode) return image_io.encode_base64(image, image_format=format) def encode_video_base64(frames: npt.NDArray) -> str: image_io = ImageMediaIO() video_io = VideoMediaIO(image_io) return video_io.encode_base64(frames) def argsort_mm_positions( mm_positions: MultiModalPlaceholderDict, ) -> list[tuple[str, int]]: """ Given a `MultiModalPlaceholderDict`, output a sequence of keys to sort the dictionary by `offset` (starting index in the input sequence) in ascending order. Returns: A list of `(modality, idx)`, which can be used to access an item by `mm_positions[modality][idx]`. """ flat_items = ( (modality, idx, item) for modality, items in mm_positions.items() for idx, item in enumerate(items) ) sorted_flat_items = sorted(flat_items, key=lambda x: x[2].offset) return [(modality, idx) for modality, idx, _ in sorted_flat_items] def group_mm_kwargs_by_modality( mm_kwargs: list[MultiModalKwargsItem], *, device: torch.types.Device = None, pin_memory: bool = False, merge_by_field_config: bool | None = None, multimodal_cpu_fields: Set[str] | None = None, ) -> Generator[tuple[str, int, BatchedTensorInputs], None, None]: """Group consecutive `MultiModalKwargsItem`s from `mm_kwargs` with the same modality together into the same `MultiModalKwargs` instance. Args: mm_kwargs: List of `MultiModalKwargsItem`. device: The device to place the grouped tensors on. pin_memory: Whether to pin memory for faster host-to-device transfer. Yields: A tuple `(modality, num_items, grouped_kwargs)`. """ if merge_by_field_config is not None: logger.warning_once( "The `merge_by_field_config` argument of `group_mm_kwargs_by_modality` " "is deprecated and will be removed in v0.14." ) if multimodal_cpu_fields is not None: logger.warning_once( "The `multimodal_cpu_fields` argument of `group_mm_kwargs_by_modality` " "is deprecated and will be removed in v0.14." ) from vllm.multimodal.inputs import MultiModalKwargsItems for modality, items in groupby(mm_kwargs, key=lambda item: item.modality): items_lst = list(items) mm_kwargs_items = MultiModalKwargsItems.from_seq(items_lst) mm_kwargs_data = mm_kwargs_items.get_data( device=device, pin_memory=pin_memory, ) yield modality, len(items_lst), mm_kwargs_data def fetch_audio( audio_url: str, audio_io_kwargs: dict[str, Any] | None = None, ) -> tuple[np.ndarray, int | float]: """ Args: audio_url: URL of the audio file to fetch. audio_io_kwargs: Additional kwargs passed to handle audio IO. Warning: This method has direct access to local files and is only intended to be called by user code. Never call this from the online server! """ media_io_kwargs = None if not audio_io_kwargs else {"audio": audio_io_kwargs} media_connector = MediaConnector( media_io_kwargs=media_io_kwargs, allowed_local_media_path="/", ) return media_connector.fetch_audio(audio_url) def fetch_image( image_url: str, image_io_kwargs: dict[str, Any] | None = None, ) -> Image.Image: """ Args: image_url: URL of the image file to fetch. image_io_kwargs: Additional kwargs passed to handle image IO. Warning: This method has direct access to local files and is only intended to be called by user code. Never call this from the online server! """ media_io_kwargs = None if not image_io_kwargs else {"image": image_io_kwargs} media_connector = MediaConnector( media_io_kwargs=media_io_kwargs, allowed_local_media_path="/", ) return media_connector.fetch_image(image_url) def fetch_video( video_url: str, video_io_kwargs: dict[str, Any] | None = None, ) -> tuple[npt.NDArray, dict[str, Any]]: """ Args: video_url: URL of the video file to fetch. video_io_kwargs: Additional kwargs passed to handle video IO. Warning: This method has direct access to local files and is only intended to be called by user code. Never call this from the online server! """ media_io_kwargs = None if not video_io_kwargs else {"video": video_io_kwargs} media_connector = MediaConnector( media_io_kwargs=media_io_kwargs, allowed_local_media_path="/", ) return media_connector.fetch_video(video_url)