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| from fastapi import FastAPI | |
| from contextlib import asynccontextmanager | |
| import joblib, os, requests, pandas as pd | |
| from datetime import datetime | |
| from typing import Literal, Annotated | |
| from pydantic import BaseModel, Field | |
| HF_REPO = "samithcs/heart-rate-models" | |
| HEART_MODEL_FILENAME = "Heart_Rate_Predictor_model.joblib" | |
| ANOMALY_MODEL_FILENAME = "Anomaly_Detector_model.joblib" | |
| MODEL_DIR = os.path.join("artifacts", "model_trainer") | |
| os.makedirs(MODEL_DIR, exist_ok=True) | |
| def download_from_hf(filename): | |
| local_path = os.path.join(MODEL_DIR, filename) | |
| if os.path.exists(local_path): | |
| return local_path | |
| url = f"https://huggingface.co/{HF_REPO}/resolve/main/{filename}" | |
| with requests.get(url, stream=True) as r: | |
| r.raise_for_status() | |
| with open(local_path, "wb") as f: | |
| for chunk in r.iter_content(chunk_size=8192): | |
| f.write(chunk) | |
| return local_path | |
| # =============================== | |
| # Lifespan context | |
| # =============================== | |
| async def lifespan(app: FastAPI): | |
| global heart_model, heart_features, anomaly_model, anomaly_features | |
| HEART_MODEL_PATH = download_from_hf(HEART_MODEL_FILENAME) | |
| ANOMALY_MODEL_PATH = download_from_hf(ANOMALY_MODEL_FILENAME) | |
| heart_model_artifacts = joblib.load(HEART_MODEL_PATH) | |
| heart_model = heart_model_artifacts['model'] | |
| heart_features = heart_model_artifacts['feature_columns'] | |
| anomaly_model_artifacts = joblib.load(ANOMALY_MODEL_PATH) | |
| anomaly_model = anomaly_model_artifacts['model'] | |
| anomaly_features = anomaly_model_artifacts['feature_columns'] | |
| yield | |
| # =============================== | |
| # FastAPI app | |
| # =============================== | |
| app = FastAPI(title="Health Monitoring API", lifespan=lifespan) | |
| # =============================== | |
| # Request schemas | |
| # =============================== | |
| class HeartRateInput(BaseModel): | |
| age: Annotated[int, Field(..., gt=0, lt=120)] | |
| gender: Annotated[Literal['M', 'F'], Field(...)] | |
| weight_kg: Annotated[float, Field(..., gt=0)] | |
| height_cm: Annotated[float, Field(..., gt=0, lt=250)] | |
| bmi: Annotated[float, Field(..., gt=0, lt=100)] | |
| fitness_level: Annotated[Literal['lightly_active','fairly_active','sedentary','very_active'], Field(...)] | |
| performance_level: Annotated[Literal['low','moderate','high'], Field(...)] | |
| resting_hr: Annotated[int, Field(..., gt=0, lt=120)] | |
| max_hr: Annotated[int, Field(..., gt=0, lt=220)] | |
| activity_type: Annotated[Literal['sleeping','walking','resting','light','commuting','exercise'], Field(...)] | |
| activity_intensity: Annotated[float, Field(..., gt=0.0)] | |
| steps_5min: Annotated[int, Field(..., gt=0)] | |
| calories_5min: Annotated[float, Field(..., gt=0)] | |
| hrv_rmssd: Annotated[float, Field(..., gt=0)] | |
| stress_score: Annotated[int, Field(..., gt=0, lt=100)] | |
| signal_quality: Annotated[float, Field(..., gt=0)] | |
| skin_temperature: Annotated[float, Field(..., gt=0)] | |
| device_battery: Annotated[int, Field(..., gt=0)] | |
| elevation_gain: Annotated[int, Field(..., ge=0)] | |
| sleep_stage: Annotated[Literal['light_sleep','deep_sleep','rem_sleep'], Field(...)] | |
| date: Annotated[datetime, Field(...)] | |
| class AnomalyInput(BaseModel): | |
| heart_rate: Annotated[float, Field(..., gt=0.0)] | |
| resting_hr_baseline: Annotated[int, Field(..., gt=0, lt=120)] | |
| activity_type: Annotated[Literal['sleeping','walking','resting','light','commuting','exercise'], Field(...)] | |
| activity_intensity: Annotated[float, Field(..., gt=0)] | |
| steps_5min: Annotated[int, Field(..., gt=0)] | |
| calories_5min: Annotated[float, Field(..., gt=0)] | |
| hrv_rmssd: Annotated[float, Field(..., gt=0)] | |
| stress_score: Annotated[int, Field(..., gt=0, lt=100)] | |
| confidence_score: Annotated[float, Field(..., gt=0.0)] | |
| signal_quality: Annotated[float, Field(..., gt=0)] | |
| skin_temperature: Annotated[float, Field(..., gt=0)] | |
| device_battery: Annotated[int, Field(..., gt=0)] | |
| elevation_gain: Annotated[int, Field(..., ge=0)] | |
| sleep_stage: Annotated[Literal['light_sleep','deep_sleep','rem_sleep'], Field(...)] | |
| date: Annotated[datetime, Field(...)] | |
| # =============================== | |
| # Utility: preprocess features | |
| # =============================== | |
| def preprocess_heart_features(data_dict: dict) -> pd.DataFrame: | |
| data_dict['date_encoded'] = data_dict['date'].timestamp() | |
| data_dict['gender_M'] = 1 if data_dict['gender']=='M' else 0 | |
| data_dict['gender_F'] = 1 if data_dict['gender']=='F' else 0 | |
| for act in ['sleeping','walking','resting','light','commuting','exercise']: | |
| data_dict[f"activity_type_{act}"] = 1 if data_dict['activity_type']==act else 0 | |
| for stage in ['light_sleep','deep_sleep','rem_sleep']: | |
| data_dict[f"sleep_stage_{stage}"] = 1 if data_dict['sleep_stage']==stage else 0 | |
| return pd.DataFrame([{f: data_dict.get(f,0) for f in heart_features}]) | |
| def preprocess_anomaly_features(data_dict: dict) -> pd.DataFrame: | |
| data_dict['date_encoded'] = data_dict['date'].timestamp() | |
| for act in ['sleeping','walking','resting','light','commuting','exercise']: | |
| data_dict[f"activity_type_{act}"] = 1 if data_dict['activity_type']==act else 0 | |
| for stage in ['light_sleep','deep_sleep','rem_sleep']: | |
| data_dict[f"sleep_stage_{stage}"] = 1 if data_dict['sleep_stage']==stage else 0 | |
| return pd.DataFrame([{f: data_dict.get(f,0) for f in anomaly_features}]) | |
| # =============================== | |
| # Endpoints | |
| # =============================== | |
| def home(): | |
| return {"message":"Health Monitoring API is running!"} | |
| def predict_heart_rate(input_data: HeartRateInput): | |
| try: | |
| X = preprocess_heart_features(input_data.model_dump()) | |
| prediction = heart_model.predict(X)[0] | |
| return {"heart_rate_prediction": float(prediction)} | |
| except Exception as e: | |
| return {"error": str(e)} | |
| def detect_anomaly(input_data: AnomalyInput): | |
| try: | |
| X = preprocess_anomaly_features(input_data.model_dump()) | |
| prediction = anomaly_model.predict(X)[0] | |
| return {"anomaly_detected": bool(prediction)} | |
| except Exception as e: | |
| return {"error": str(e)} | |