""" Image encoder using third-party clip-as-service (Jina CLIP server). Requires clip-as-service server to be running. The client is loaded from third-party/clip-as-service/client so no separate pip install is needed if that path is on sys.path or the package is installed in development mode. """ import logging import os import sys from typing import List, Optional import numpy as np logger = logging.getLogger(__name__) # Ensure third-party clip client is importable def _ensure_clip_client_path(): repo_root = os.path.dirname(os.path.dirname(os.path.abspath(__file__))) client_path = os.path.join(repo_root, "third-party", "clip-as-service", "client") if os.path.isdir(client_path) and client_path not in sys.path: sys.path.insert(0, client_path) # Skip client version check to avoid importing helper (pkg_resources); no conda/separate env os.environ.setdefault("NO_VERSION_CHECK", "1") def _normalize_image_url(url: str) -> str: """Normalize image URL for clip-as-service (e.g. //host/path -> https://host/path).""" if not url or not isinstance(url, str): return "" url = url.strip() if url.startswith("//"): return "https:" + url return url class ClipAsServiceImageEncoder: """ Image embedding encoder using clip-as-service Client. Vector length follows the loaded Chinese-CLIP model (e.g. 1024 for ViT-H-14, 768 for ViT-L-14); must match ``services.embedding.image_backends.*.model_name`` and ES ``image_embedding.vector.dims``. """ def __init__( self, server: str = "grpc://127.0.0.1:51000", batch_size: int = 8, show_progress: bool = False, ): """ Args: server: clip-as-service server URI (e.g. grpc://127.0.0.1:51000 or http://127.0.0.1:51000). batch_size: batch size for encode requests. show_progress: whether to show progress bar when encoding. """ _ensure_clip_client_path() from clip_client import Client self._server = server self._batch_size = batch_size self._show_progress = show_progress try: self._client = Client(server) except ModuleNotFoundError as e: if str(e) == "No module named 'pkg_resources'": raise RuntimeError( "clip-as-service requires pkg_resources via jina/hubble. " "Install compatible setuptools (<82) in current venv." ) from e raise def encode_image_urls( self, urls: List[str], batch_size: Optional[int] = None, normalize_embeddings: bool = True, ) -> List[np.ndarray]: """ Encode a list of image URLs to vectors. Args: urls: list of image URLs (http/https or //host/path). batch_size: override instance batch_size for this call. Returns: List of vectors (float32), same length as urls. """ if not urls: return [] normalized = [_normalize_image_url(u) for u in urls] bs = batch_size if batch_size is not None else self._batch_size invalid_indices = [i for i, u in enumerate(normalized) if not u] if invalid_indices: raise ValueError(f"Invalid empty image URL at indices: {invalid_indices}") # Client.encode(iterable of str) returns np.ndarray [N, D] for string input arr = self._client.encode( normalized, batch_size=bs, show_progress=self._show_progress, ) if arr is None or not hasattr(arr, "shape"): raise RuntimeError("clip-as-service encode returned empty result") if len(arr) != len(normalized): raise RuntimeError( f"clip-as-service encode length mismatch: expected {len(normalized)}, got {len(arr)}" ) out: List[np.ndarray] = [] for row in arr: vec = np.asarray(row, dtype=np.float32) if vec.ndim != 1 or vec.size == 0 or not np.isfinite(vec).all(): raise RuntimeError("clip-as-service returned invalid embedding vector") if normalize_embeddings: norm = float(np.linalg.norm(vec)) if not np.isfinite(norm) or norm <= 0.0: raise RuntimeError("clip-as-service returned zero/invalid norm vector") vec = vec / norm out.append(vec) return out def encode_image_from_url(self, url: str, normalize_embeddings: bool = True) -> np.ndarray: """Encode a single image URL and return one float32 vector (length = model embedding dim).""" results = self.encode_image_urls([url], batch_size=1, normalize_embeddings=normalize_embeddings) if not results: raise RuntimeError("clip-as-service returned empty result for single image URL") return results[0] def encode_clip_texts( self, texts: List[str], batch_size: Optional[int] = None, normalize_embeddings: bool = True, ) -> List[np.ndarray]: """ CN-CLIP 文本塔:与 encode_image_urls 输出同一向量空间(图文检索 / image_embedding)。 仅传入自然语言字符串;HTTP 侧见 ``POST /embed/clip_text``。 """ if not texts: return [] bs = batch_size if batch_size is not None else self._batch_size arr = self._client.encode( texts, batch_size=bs, show_progress=self._show_progress, ) if arr is None or not hasattr(arr, "shape"): raise RuntimeError("clip-as-service encode (text) returned empty result") if len(arr) != len(texts): raise RuntimeError( f"clip-as-service text encode length mismatch: expected {len(texts)}, got {len(arr)}" ) out: List[np.ndarray] = [] for row in arr: vec = np.asarray(row, dtype=np.float32) if vec.ndim != 1 or vec.size == 0 or not np.isfinite(vec).all(): raise RuntimeError("clip-as-service returned invalid text embedding vector") if normalize_embeddings: norm = float(np.linalg.norm(vec)) if not np.isfinite(norm) or norm <= 0.0: raise RuntimeError("clip-as-service returned zero/invalid norm vector") vec = vec / norm out.append(vec) return out