""" FastAPI model serving endpoint. Loads the champion model from MLflow Model Registry (or falls back to the locally saved joblib file) and serves predictions. Start with: uv run uvicorn serving.api:app --host 0.0.0.0 --port 8000 --reload """ from __future__ import annotations import json from pathlib import Path from typing import Optional import joblib import mlflow import numpy as np from fastapi import FastAPI, HTTPException from pydantic import BaseModel, Field ROOT = Path(__file__).parent.parent MODELS_DIR = ROOT / "models" META_PATH = MODELS_DIR / "feature_meta.json" INFO_PATH = MODELS_DIR / "best_model_info.json" app = FastAPI( title="Computer Durability Classifier", description="Predicts whether a computer needs replacement based on usage patterns.", version="1.0.0", ) # ── Model Loading ───────────────────────────────────────────────────────────── _model = None _scaler = None _feature_cols: list[str] = [] def _load_artifacts() -> None: global _model, _scaler, _feature_cols if META_PATH.exists(): meta = json.loads(META_PATH.read_text()) _feature_cols = meta["feature_cols"] scaler_path = Path(meta["scaler_path"]) if not scaler_path.exists(): scaler_path = MODELS_DIR / scaler_path.name _scaler = joblib.load(scaler_path) else: raise RuntimeError("feature_meta.json not found — run the Dagster pipeline first.") if INFO_PATH.exists(): info = json.loads(INFO_PATH.read_text()) winner = info.get("winner", "XGBoost") if winner == "XGBoost": model_path = MODELS_DIR / "xgb_tuned.joblib" else: model_path = MODELS_DIR / "rf_baseline.joblib" _model = joblib.load(model_path) else: raise RuntimeError("best_model_info.json not found — run the Dagster pipeline first.") @app.on_event("startup") def startup_event() -> None: _load_artifacts() # ── Request / Response schemas ──────────────────────────────────────────────── class PredictionRequest(BaseModel): hours_used_per_day: float = Field(..., ge=0.0, le=24.0, example=18.5) cost: float = Field(..., ge=0.0, example=15000.0) user_age: float = Field(..., ge=0.0, le=120.0, example=45.0) primary_usage: int = Field(..., ge=1, le=4, example=2) brand: int = Field(..., ge=1, le=5, example=3) computer_age_months: float = Field(..., ge=0.0, example=36.0) class PredictionResponse(BaseModel): needs_replacement: bool probability: float model_version: Optional[str] = None # ── Endpoints ───────────────────────────────────────────────────────────────── @app.get("/health") def health() -> dict: return {"status": "ok", "model_loaded": _model is not None} @app.get("/") def root() -> dict: return { "service": "Computer Durability Classifier API", "health": "/health", "docs": "/docs", "predict": "/predict", } @app.get("/info") def model_info() -> dict: if INFO_PATH.exists(): return json.loads(INFO_PATH.read_text()) return {"error": "model info not available"} @app.post("/predict", response_model=PredictionResponse) def predict(request: PredictionRequest) -> PredictionResponse: if _model is None or _scaler is None: raise HTTPException(status_code=503, detail="Model not loaded") # Assemble feature vector in the exact column order row = np.array([[ request.hours_used_per_day, request.cost, request.user_age, request.primary_usage, request.brand, request.computer_age_months, ]]) row_scaled = _scaler.transform(row) prob = float(_model.predict_proba(row_scaled)[0, 1]) label = prob >= 0.5 version = None if INFO_PATH.exists(): info = json.loads(INFO_PATH.read_text()) version = f"{info.get('winner')} v{info.get('registry_version')}" return PredictionResponse( needs_replacement=label, probability=round(prob, 4), model_version=version, ) @app.post("/predict/batch") def predict_batch(requests: list[PredictionRequest]) -> list[PredictionResponse]: if _model is None or _scaler is None: raise HTTPException(status_code=503, detail="Model not loaded") rows = np.array([ [r.hours_used_per_day, r.cost, r.user_age, r.primary_usage, r.brand, r.computer_age_months] for r in requests ]) rows_scaled = _scaler.transform(rows) probs = _model.predict_proba(rows_scaled)[:, 1] version = None if INFO_PATH.exists(): info = json.loads(INFO_PATH.read_text()) version = f"{info.get('winner')} v{info.get('registry_version')}" return [ PredictionResponse( needs_replacement=bool(p >= 0.5), probability=round(float(p), 4), model_version=version, ) for p in probs ]