"""FastAPI app for F1 pit-stop model inference.""" from __future__ import annotations import io from typing import Any import pandas as pd from fastapi import FastAPI, File, HTTPException, UploadFile from fastapi.staticfiles import StaticFiles from pydantic import BaseModel, Field from src import config from src.inference import ( RAW_INPUT_COLUMNS, load_sklearn_model, predict_records, prepare_features, ) class PredictRequest(BaseModel): records: list[dict[str, Any]] = Field(..., min_length=1) class PredictResponse(BaseModel): predictions: list[int] class DashboardRow(BaseModel): driver: str lap: int compound: str stint: int tyreLife: int lapTime: float lapDelta: float cumDeg: float raceProg: float position: int posChange: int isStintStart: bool class DashboardPredictRequest(BaseModel): race: str year: int rows: list[DashboardRow] = Field(..., min_length=1) class DashboardPrediction(BaseModel): driver: str lap: int pPit: float pred: int class DashboardPredictResponse(BaseModel): predictions: list[DashboardPrediction] app = FastAPI(title="F1 Pit-Stop Prediction API") _sklearn_model: Any = None COMPOUND_MAP = {"S": "SOFT", "M": "MEDIUM", "H": "HARD", "I": "INTERMEDIATE", "W": "WET"} def _get_sklearn_model() -> Any: global _sklearn_model if _sklearn_model is None: _sklearn_model = load_sklearn_model() return _sklearn_model @app.get("/health") def health() -> dict[str, str]: return {"status": "ok"} @app.post("/predict", response_model=PredictResponse) def predict(request: PredictRequest) -> PredictResponse: try: predictions = predict_records(request.records) except ValueError as exc: raise HTTPException(status_code=400, detail=str(exc)) from exc return PredictResponse(predictions=predictions) @app.post("/predict/dashboard", response_model=DashboardPredictResponse) def predict_dashboard(request: DashboardPredictRequest) -> DashboardPredictResponse: rows = request.rows raw = pd.DataFrame({ "id": [f"{r.driver}_{r.lap}" for r in rows], "Driver": [r.driver for r in rows], "Compound": [COMPOUND_MAP.get(r.compound, r.compound) for r in rows], "Race": [request.race] * len(rows), "Year": [request.year] * len(rows), "PitStop": [int(r.isStintStart) for r in rows], "LapNumber": [r.lap for r in rows], "Stint": [r.stint for r in rows], "TyreLife": [r.tyreLife for r in rows], "Position": [r.position for r in rows], "LapTime (s)": [r.lapTime for r in rows], "LapTime_Delta": [r.lapDelta for r in rows], "Cumulative_Degradation": [r.cumDeg for r in rows], "RaceProgress": [r.raceProg for r in rows], "Position_Change": [r.posChange for r in rows], }) try: model = _get_sklearn_model() features = prepare_features(raw) probs = model.predict_proba(features)[:, 1] preds = (probs >= 0.5).astype(int) except ValueError as exc: raise HTTPException(status_code=400, detail=str(exc)) from exc return DashboardPredictResponse(predictions=[ DashboardPrediction(driver=r.driver, lap=r.lap, pPit=float(p), pred=int(d)) for r, p, d in zip(rows, probs, preds) ]) @app.post("/predict/csv") async def predict_csv(file: UploadFile = File(...)) -> dict[str, Any]: contents = await file.read() if not contents: raise HTTPException(status_code=400, detail="Empty file") try: raw = pd.read_csv(io.BytesIO(contents)) except Exception as exc: raise HTTPException(status_code=400, detail=f"Could not parse CSV: {exc}") from exc try: model = _get_sklearn_model() features = prepare_features(raw) probs = model.predict_proba(features)[:, 1] preds = (probs >= 0.5).astype(int) except ValueError as exc: raise HTTPException(status_code=400, detail=str(exc)) from exc out = raw.copy() out["pPit"] = probs out["pred"] = preds f1 = None if config.TARGET_COL in raw.columns: from sklearn.metrics import f1_score try: f1 = float(f1_score(raw[config.TARGET_COL].astype(int), preds, average="macro")) except Exception: f1 = None return { "count": int(len(out)), "f1_macro": f1, "expected_columns": RAW_INPUT_COLUMNS, "rows": out.to_dict(orient="records"), } app.mount("/", StaticFiles(directory="dashboard", html=True), name="static")