""" Embedding Inference API Supports JobBERT v2, Jina AI, and Voyage AI embeddings """ from fastapi import FastAPI, HTTPException from fastapi.middleware.cors import CORSMiddleware from pydantic import BaseModel, Field from typing import List, Optional from sentence_transformers import SentenceTransformer import os import logging logging.basicConfig(level=logging.INFO) logger = logging.getLogger(__name__) app = FastAPI( title="Embedding Inference API", description="Generate embeddings using JobBERT v2/v3, Jina AI, or Voyage AI", version="1.0.0" ) app.add_middleware( CORSMiddleware, allow_origins=["*"], allow_credentials=True, allow_methods=["*"], allow_headers=["*"], ) MODELS = {} VOYAGE_API_KEY = os.environ.get('VOYAGE_API_KEY', '') voyage_client = None if VOYAGE_API_KEY: try: import voyageai voyage_client = voyageai.Client(api_key=VOYAGE_API_KEY) logger.info("✓ Voyage AI client initialized") except ImportError: logger.warning("⚠️ voyageai package not installed") except Exception as e: logger.warning(f"⚠️ Voyage AI initialization failed: {e}") def load_models(): """Load embedding models on startup""" try: logger.info("Loading JobBERT-v2...") MODELS['jobbertv2'] = SentenceTransformer('TechWolf/JobBERT-v2') logger.info("✓ JobBERT-v2 loaded") logger.info("Loading JobBERT-v3...") MODELS['jobbertv3'] = SentenceTransformer('TechWolf/JobBERT-v3') logger.info("✓ JobBERT-v3 loaded") logger.info("Loading Jina AI embeddings-v3...") MODELS['jina'] = SentenceTransformer('jinaai/jina-embeddings-v3', trust_remote_code=True) logger.info("✓ Jina AI v3 loaded") logger.info("All models loaded successfully!") except Exception as e: logger.error(f"Error loading models: {e}") raise @app.on_event("startup") async def startup_event(): load_models() class EmbeddingRequest(BaseModel): texts: List[str] = Field(..., description="List of texts to embed", min_items=1) model: str = Field(..., description="Model to use: 'jobbertv2', 'jobbertv3', 'jina', or 'voyage'") task: Optional[str] = Field(None, description="Task type for Jina AI: 'retrieval.query', 'retrieval.passage', 'text-matching', etc.") input_type: Optional[str] = Field(None, description="Input type for Voyage AI: 'document' or 'query'") class Config: schema_extra = { "example": { "texts": ["Software Engineer", "Data Scientist"], "model": "jobbertv3", "task": "text-matching" } } class EmbeddingResponse(BaseModel): embeddings: List[List[float]] = Field(..., description="List of embedding vectors") model: str = Field(..., description="Model used") dimension: int = Field(..., description="Embedding dimension") num_texts: int = Field(..., description="Number of texts processed") class HealthResponse(BaseModel): status: str models_loaded: List[str] voyage_available: bool @app.get("/", response_model=dict) async def root(): """Root endpoint with API information""" return { "message": "Embedding Inference API", "version": "1.0.0", "endpoints": { "/health": "Health check and available models", "/embed": "Generate embeddings (POST)", "/docs": "API documentation" } } @app.get("/health", response_model=HealthResponse) async def health(): """Health check endpoint""" models_loaded = list(MODELS.keys()) return { "status": "healthy", "models_loaded": models_loaded, "voyage_available": voyage_client is not None } @app.post("/embed", response_model=EmbeddingResponse) async def create_embeddings(request: EmbeddingRequest): """ Generate embeddings for input texts **Models:** - `jobbertv2`: JobBERT-v2 (768-dim, job-specific) - `jobbertv3`: JobBERT-v3 (768-dim, job-specific, improved performance) - `jina`: Jina AI embeddings-v3 (1024-dim, general purpose, supports task types) - `voyage`: Voyage AI (1024-dim, requires API key) **Jina AI Tasks:** - `retrieval.query`: For search queries - `retrieval.passage`: For documents/passages - `text-matching`: For similarity matching (default) - `classification`: For classification tasks - `separation`: For clustering **Voyage AI Input Types:** - `document`: For documents/passages - `query`: For search queries """ model_name = request.model.lower() if model_name == "voyage": if not voyage_client: raise HTTPException( status_code=503, detail="Voyage AI not available. Set VOYAGE_API_KEY environment variable." ) try: input_type = request.input_type or "document" result = voyage_client.embed( texts=request.texts, model="voyage-3", input_type=input_type ) embeddings = result.embeddings dimension = len(embeddings[0]) if embeddings else 0 return EmbeddingResponse( embeddings=embeddings, model="voyage-3", dimension=dimension, num_texts=len(request.texts) ) except Exception as e: raise HTTPException(status_code=500, detail=f"Voyage AI error: {str(e)}") elif model_name in MODELS: try: model = MODELS[model_name] if model_name == "jina" and request.task: embeddings = model.encode( request.texts, task=request.task, convert_to_numpy=True ) else: embeddings = model.encode( request.texts, convert_to_numpy=True ) embeddings_list = embeddings.tolist() dimension = len(embeddings_list[0]) if embeddings_list else 0 return EmbeddingResponse( embeddings=embeddings_list, model=model_name, dimension=dimension, num_texts=len(request.texts) ) except Exception as e: raise HTTPException(status_code=500, detail=f"Model error: {str(e)}") else: raise HTTPException( status_code=400, detail=f"Invalid model '{model_name}'. Choose from: jobbertv2, jobbertv3, jina, voyage" ) @app.get("/models") async def list_models(): """List available models and their specifications""" models_info = { "jobbertv2": { "name": "TechWolf/JobBERT-v2", "dimension": 768, "description": "Job-specific BERT model fine-tuned on job titles", "max_tokens": 512, "available": "jobbertv2" in MODELS }, "jobbertv3": { "name": "TechWolf/JobBERT-v3", "dimension": 768, "description": "Latest JobBERT model with improved performance", "max_tokens": 512, "available": "jobbertv3" in MODELS }, "jina": { "name": "jinaai/jina-embeddings-v3", "dimension": 1024, "description": "General-purpose embeddings with long context support", "max_tokens": 8192, "available": "jina" in MODELS, "tasks": ["retrieval.query", "retrieval.passage", "text-matching", "classification", "separation"] }, "voyage": { "name": "voyage-3", "dimension": 1024, "description": "State-of-the-art embeddings (requires API key)", "max_tokens": 32000, "available": voyage_client is not None, "input_types": ["document", "query"] } } return models_info if __name__ == "__main__": import uvicorn port = int(os.environ.get("PORT", 7860)) uvicorn.run(app, host="0.0.0.0", port=port)