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"""Evaluation pipeline for the structural analysis surrogate.

Computes R2, MAPE, max error per problem family, calibration metrics,
and generates comparison tables and plots.

Usage:
    python -m src.training.evaluate --config configs/training.yaml
"""

import argparse
import json
import logging
from pathlib import Path

import numpy as np
import torch
import yaml
from sklearn.metrics import r2_score

from src.models.ensemble import DeepEnsemble
from src.models.normalization import LogTransformStandardizer
from src.training.dataset import create_dataloaders
from src.utils.device import get_device

logger = logging.getLogger(__name__)


def evaluate_ensemble(
    ensemble: DeepEnsemble,
    test_loader: torch.utils.data.DataLoader,
    device: torch.device,
) -> dict:
    """Run evaluation on test set.

    Returns:
        Dict with metrics per output (stress, deflection) and overall.
    """
    ensemble = ensemble.to(device)
    ensemble.eval()

    all_stress_pred = []
    all_stress_true = []
    all_defl_pred = []
    all_defl_true = []
    all_stress_std = []
    all_defl_std = []
    all_safety_pred = []
    all_safety_true = []

    with torch.no_grad():
        for X_batch, targets in test_loader:
            X_batch = X_batch.to(device)
            out = ensemble(X_batch)

            all_stress_pred.append(out["stress_mean"].cpu().numpy())
            all_defl_pred.append(out["deflection_mean"].cpu().numpy())
            all_stress_std.append(torch.sqrt(out["stress_var"]).cpu().numpy())
            all_defl_std.append(torch.sqrt(out["deflection_var"]).cpu().numpy())

            all_stress_true.append(targets["log_stress"].numpy())
            all_defl_true.append(targets["log_deflection"].numpy())

            all_safety_pred.append(out["safety"].argmax(dim=1).cpu().numpy())
            all_safety_true.append(targets["safety_class"].numpy())

    # Concatenate
    stress_pred = np.concatenate(all_stress_pred)
    stress_true = np.concatenate(all_stress_true)
    defl_pred = np.concatenate(all_defl_pred)
    defl_true = np.concatenate(all_defl_true)
    stress_std = np.concatenate(all_stress_std)
    defl_std = np.concatenate(all_defl_std)
    safety_pred = np.concatenate(all_safety_pred)
    safety_true = np.concatenate(all_safety_true)

    # Metrics in log-space (predictions are in log10)
    metrics = {}

    for name, pred, true, std in [
        ("stress", stress_pred, stress_true, stress_std),
        ("deflection", defl_pred, defl_true, defl_std),
    ]:
        r2 = r2_score(true, pred)

        # MAPE in original space: |10^pred - 10^true| / 10^true * 100
        pred_orig = 10.0 ** pred
        true_orig = 10.0 ** true
        mape = np.mean(np.abs(pred_orig - true_orig) / true_orig) * 100.0

        # Max absolute percentage error
        max_ape = np.max(np.abs(pred_orig - true_orig) / true_orig) * 100.0

        # RMSE in log-space
        rmse_log = np.sqrt(np.mean((pred - true) ** 2))

        # Calibration: what fraction of test points fall within predicted 95% CI?
        z95 = 1.96
        lower = pred - z95 * std
        upper = pred + z95 * std
        coverage_95 = np.mean((true >= lower) & (true <= upper)) * 100.0

        metrics[name] = {
            "r2": float(r2),
            "mape_percent": float(mape),
            "max_ape_percent": float(max_ape),
            "rmse_log10": float(rmse_log),
            "coverage_95_percent": float(coverage_95),
        }

    # Safety classification accuracy
    safety_acc = np.mean(safety_pred == safety_true) * 100.0
    metrics["safety_accuracy_percent"] = float(safety_acc)

    return metrics


def main() -> None:
    parser = argparse.ArgumentParser(description="Evaluate PI-ResMLP ensemble")
    parser.add_argument("--config", default="configs/training.yaml")
    args = parser.parse_args()

    logging.basicConfig(level=logging.INFO, format="%(asctime)s %(levelname)s %(message)s")

    with open(args.config) as f:
        config = yaml.safe_load(f)

    device = get_device()

    # Load normalizer and model
    checkpoint_dir = Path(config["output"]["checkpoint_dir"])
    normalizer = LogTransformStandardizer.load(checkpoint_dir / "normalization_params.json")

    with open(checkpoint_dir / "model_config.json") as f:
        model_kwargs = json.load(f)

    ensemble = DeepEnsemble.load(
        checkpoint_dir / "model_ensemble",
        num_members=config["model"]["num_ensemble_members"],
        **model_kwargs,
    )

    # Create test dataloader
    data_dir = Path(config["data"]["directory"])
    _, _, test_loader = create_dataloaders(
        data_dir, normalizer,
        batch_size=config["data"]["batch_size"],
    )

    # Evaluate
    metrics = evaluate_ensemble(ensemble, test_loader, device)

    # Print results
    logger.info("\n" + "=" * 60)
    logger.info("EVALUATION RESULTS")
    logger.info("=" * 60)
    for key, value in metrics.items():
        if isinstance(value, dict):
            logger.info(f"\n{key.upper()}:")
            for k, v in value.items():
                logger.info(f"  {k}: {v:.4f}")
        else:
            logger.info(f"{key}: {value:.4f}")

    # Save results
    results_dir = Path(config["output"].get("figures_dir", "artifacts/figures"))
    results_dir.mkdir(parents=True, exist_ok=True)
    with open(results_dir / "eval_results.json", "w") as f:
        json.dump(metrics, f, indent=2)

    logger.info(f"\nResults saved to {results_dir / 'eval_results.json'}")


if __name__ == "__main__":
    main()