import os import json import numpy as np import tensorflow as tf import gradio as gr # ---------- CONFIG ---------- MODEL_PATH = "best_model.h5" # or best_model.keras STATS_PATH = "Means & Std for Excel.json" # must match filename in repo CLASSES = ["Top", "Mid-Top", "Mid", "Mid-Low", "Low"] # ---------------------------- print("Loading model and stats...") model = tf.keras.models.load_model(MODEL_PATH, compile=False) with open(STATS_PATH, "r") as f: stats = json.load(f) FEATURES = list(stats.keys()) print("Feature order:", FEATURES) # ---------- Utility helpers ---------- def _zscore(val: float, mean: float, sd: float) -> float: """Compute safe z-score (handles NaNs and zeros).""" try: v = float(val) except (TypeError, ValueError): v = 0.0 return 0.0 if (sd is None or sd == 0) else (v - mean) / sd def coral_probs_from_logits(logits_np): """Convert (N, K-1) CORAL logits → (N, K) probabilities.""" logits = tf.convert_to_tensor(logits_np, dtype=tf.float32) sig = tf.math.sigmoid(logits) left = tf.concat([tf.ones_like(sig[:, :1]), sig], axis=1) right = tf.concat([sig, tf.zeros_like(sig[:, :1])], axis=1) probs = tf.clip_by_value(left - right, 1e-12, 1.0) return probs.numpy() def predict_core(ratios: dict): """ ratios: dict mapping feature name -> raw numeric ratio. Returns dict with predicted_state, probabilities, z_scores, missing. """ missing = [f for f in FEATURES if f not in ratios] # Build z-score vector in same feature order zscores, zscores_dict = [], {} for f in FEATURES: mean = stats[f]["mean"] sd = stats[f]["std"] val = ratios.get(f, 0.0) z = _zscore(val, mean, sd) zscores.append(z) zscores_dict[f] = z X = np.array([zscores], dtype=np.float32) logits = model.predict(X, verbose=0) probs = coral_probs_from_logits(logits)[0] # now 5 probabilities pred_idx = int(np.argmax(probs)) pred_state = CLASSES[pred_idx] return { "input_ok": len(missing) == 0, "missing": missing, "z_scores": zscores_dict, "probabilities": {CLASSES[i]: float(probs[i]) for i in range(len(CLASSES))}, "predicted_state": pred_state, } # ---------- Gradio interface ---------- def predict_from_json(payload, x_api_key: str = ""): """ Accepts either: {feature: value} or [{feature: value}] """ if isinstance(payload, list) and len(payload) == 1 and isinstance(payload[0], dict): payload = payload[0] if not isinstance(payload, dict): return {"error": "Invalid payload: expected a JSON object mapping feature -> value."} return predict_core(payload) iface = gr.Interface( fn=predict_from_json, inputs=gr.JSON(label="ratios JSON (dict of feature -> value)"), outputs="json", title="Static Fingerprint Model API", description=( "POST JSON to /run/predict with a dict of your 21 ratios. " "Server normalises using saved means/stds and returns probabilities + predicted state." ), ) if __name__ == "__main__": iface.launch()