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"""
Generalized evaluation of the main model with sub-module comparison.
This file evaluates the main model's performance by comparing specialized parts
(color and hierarchy) with corresponding specialized models. It calculates similarity
matrices, linear projections between embedding spaces, and generates detailed statistics
on alignment between different representations.
"""

import os
import json
import argparse
import config
import torch
import torch.nn.functional as F
import pandas as pd
from PIL import Image
from torchvision import transforms
from transformers import CLIPProcessor, CLIPModel as CLIPModelTransformers
from tqdm.auto import tqdm

# Local imports
from color_model import ColorCLIP as ColorModel, ColorDataset, Tokenizer
from config import color_model_path, color_emb_dim, device, hierarchy_model_path, hierarchy_emb_dim
from hierarchy_model import Model as HierarchyModel, HierarchyExtractor


def load_color_model(color_model_path, color_emb_dim, device):
    # Load color model
    color_checkpoint = torch.load(color_model_path, map_location=device, weights_only=True)
    color_model = ColorModel(vocab_size=39, embedding_dim=color_emb_dim).to(device)
    color_model.load_state_dict(color_checkpoint)

    # Load and set the tokenizer
    tokenizer = Tokenizer()
    with open(config.tokeniser_path, 'r') as f:
        vocab_dict = json.load(f)
    color_model.tokenizer = tokenizer 

    color_model.eval()
    return color_model


def get_emb_color_model(color_model, image_path_to_encode, text_to_encode):
    # Load and preprocess image
    image = Image.open(image_path_to_encode).convert('RGB')

    transform = transforms.Compose([
        transforms.Resize((224, 224)),
        transforms.ToTensor(),
        transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
    ])

    processed_image = transform(image)

    # Get embeddings
    processed_image_batch = processed_image.unsqueeze(0).to(device)  # Shape: [1, 3, 224, 224]
    with torch.no_grad():
        image_emb = color_model.image_encoder(processed_image_batch)

    # Text embedding via tokenizer + text_encoder
    token_ids = torch.tensor([color_model.tokenizer(text_to_encode)], dtype=torch.long, device=device)
    lengths = torch.tensor([token_ids.size(1) if token_ids.dim() > 1 else token_ids.size(0)], dtype=torch.long, device=device)
    with torch.no_grad():
        txt_emb = color_model.text_encoder(token_ids, lengths)

    return image_emb, txt_emb

def load_main_model(main_model_path, device):
    checkpoint = torch.load(main_model_path, map_location=device)
    main_model = CLIPModel_transformers.from_pretrained('laion/CLIP-ViT-B-32-laion2B-s34B-b79K')
    state = checkpoint['model_state_dict'] if isinstance(checkpoint, dict) and 'model_state_dict' in checkpoint else checkpoint
    try:
        main_model.load_state_dict(state, strict=False)
    except Exception:
        # Fallback: filter matching keys
        model_state = main_model.state_dict()
        filtered = {k: v for k, v in state.items() if k in model_state and model_state[k].shape == v.shape}
        main_model.load_state_dict(filtered, strict=False)
    main_model.to(device)
    main_model.eval()
    processor = CLIPProcessor.from_pretrained('laion/CLIP-ViT-B-32-laion2B-s34B-b79K')
    return main_model, processor


def load_hierarchy_model(hierarchy_model_path, device):
    checkpoint = torch.load(hierarchy_model_path, map_location=device)
    hierarchy_classes = checkpoint.get('hierarchy_classes', [])
    model = HierarchyModel(num_hierarchy_classes=len(hierarchy_classes), embed_dim=config.hierarchy_emb_dim).to(device)
    model.load_state_dict(checkpoint['model_state'])
    extractor = HierarchyExtractor(hierarchy_classes, verbose=False)
    model.set_hierarchy_extractor(extractor)
    model.eval()
    return model


def get_emb_hierarchy_model(hierarchy_model, image_path_to_encode, text_to_encode):
    image = Image.open(image_path_to_encode).convert('RGB')
    transform = transforms.Compose([
        transforms.Resize((224, 224)),
        transforms.ToTensor(),
    ])
    image_tensor = transform(image).unsqueeze(0).to(device)

    with torch.no_grad():
        img_emb = hierarchy_model.get_image_embeddings(image_tensor)
        txt_emb = hierarchy_model.get_text_embeddings(text_to_encode)

    return img_emb, txt_emb

def get_emb_main_model(main_model, processor, image_path_to_encode, text_to_encode):
    image = Image.open(image_path_to_encode).convert('RGB')
    transform = transforms.Compose([
        transforms.Resize((224, 224)),
        transforms.ToTensor(),
        transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
    ])
    image = transform(image)
    image = image.unsqueeze(0).to(device)
    # Prepare text inputs via processor
    text_inputs = processor(text=[text_to_encode], return_tensors="pt", padding=True)
    text_inputs = {k: v.to(device) for k, v in text_inputs.items()}
    outputs = main_model(**text_inputs, pixel_values=image)
    text_emb = outputs.text_embeds
    image_emb = outputs.image_embeds

    return text_emb, image_emb


if __name__ == '__main__':
    parser = argparse.ArgumentParser(description='Evaluate main model parts vs small models and build similarity matrices')
    parser.add_argument('--main-checkpoint', type=str, default='models/laion_explicable_model.pth')
    parser.add_argument('--color-checkpoint', type=str, default='models/color_model.pt')
    parser.add_argument('--csv', type=str, default='data/data_with_local_paths.csv')
    parser.add_argument('--color-emb-dim', type=int, default=16)
    parser.add_argument('--num-samples', type=int, default=200)
    parser.add_argument('--seed', type=int, default=42)
    parser.add_argument('--primary-metric', type=str, default='sim_color_txt_img',
                        choices=['sim_txt_color_part', 'sim_img_color_part', 'sim_color_txt_img', 'sim_small_txt_img',
                                 'sim_txt_hierarchy_part', 'sim_img_hierarchy_part'])
    parser.add_argument('--top-k', type=int, default=30)
    parser.add_argument('--heatmap', action='store_true')
    parser.add_argument('--l2-grid', type=str, default='1e-5,1e-4,1e-3,1e-2,1e-1')
    args = parser.parse_args()

    main_checkpoint = args.main_checkpoint
    color_checkpoint = args.color_checkpoint
    csv = args.csv
    color_emb_dim = args.color_emb_dim
    num_samples = args.num_samples
    seed = args.seed
    primary_metric = args.primary_metric
    top_k = args.top_k
    l2_grid = [float(x) for x in args.l2_grid.split(',') if x]
    device = torch.device("mps")

    df = pd.read_csv(csv)

    # Normalize colors (reduce aliasing and sparsity)
    def normalize_color(c):
        if pd.isna(c):
            return c
        s = str(c).strip().lower()
        aliases = {
            'grey': 'gray',
            'navy blue': 'navy',
            'light blue': 'blue',
            'dark blue': 'blue',
            'light grey': 'gray',
            'dark grey': 'gray',
            'light gray': 'gray',
            'dark gray': 'gray',
        }
        return aliases.get(s, s)

    if config.color_column in df.columns:
        df[config.color_column] = df[config.color_column].apply(normalize_color)

    color_model = load_color_model(color_checkpoint, color_emb_dim, device)
    main_model, processor = load_main_model(main_checkpoint, device)
    hierarchy_model = load_hierarchy_model(hierarchy_model_path, device)

    # Results container
    results = []

    # Accumulators for projection (A: main part, B: small model)
    color_txt_As, color_txt_Bs = [], []
    color_img_As, color_img_Bs = [], []
    hier_txt_As, hier_txt_Bs = [], []
    hier_img_As, hier_img_Bs = [], []

    # Ensure determinism for sampling
    pd.options.mode.copy_on_write = True
    rng = pd.Series(range(len(df)), dtype=int)
    _ = rng  # silence lint
    torch.manual_seed(seed)

    unique_hiers = sorted(df[config.hierarchy_column].dropna().unique())
    unique_colors = sorted(df[config.color_column].dropna().unique())

    # Progress bar across all (hierarchy, color) pairs
    total_pairs = len(unique_hiers) * len(unique_colors)
    pair_pbar = tqdm(total=total_pairs, desc="Evaluating pairs", leave=False)
    for hierarchy in unique_hiers:
        for color in unique_colors:
            group = df[(df[config.hierarchy_column] == hierarchy) & (df[config.color_column] == color)]

            # Sample up to num_samples per (hierarchy, color)
            k = min(num_samples, len(group))
            group_iter = group.sample(n=k, random_state=seed) if len(group) > k else group.iloc[:k]

            # Progress bar for samples within the pair
            inner_pbar = tqdm(total=len(group_iter), desc=f"{hierarchy}/{color}", leave=False)
            for row_idx, (_, example) in enumerate(group_iter.iterrows()):
                try:
                    image_emb, txt_emb = get_emb_color_model(color_model, example['local_image_path'], example['text'])
                    image_emb_hier, txt_emb_hier = get_emb_hierarchy_model(hierarchy_model, example['local_image_path'], example['text'])
                    text_emb_main_model, image_emb_main_model = get_emb_main_model(
                        main_model, processor, example['local_image_path'], example['text']
                    )

                    color_part_txt = text_emb_main_model[:, :color_emb_dim]
                    color_part_img = image_emb_main_model[:, :color_emb_dim]
                    hier_part_txt = text_emb_main_model[:, color_emb_dim:color_emb_dim + hierarchy_emb_dim]
                    hier_part_img = image_emb_main_model[:, color_emb_dim:color_emb_dim + hierarchy_emb_dim]

                    # L2-normalize parts and small-model embeddings for stable cosine
                    color_part_txt = F.normalize(color_part_txt, dim=1)
                    color_part_img = F.normalize(color_part_img, dim=1)
                    hier_part_txt = F.normalize(hier_part_txt, dim=1)
                    hier_part_img = F.normalize(hier_part_img, dim=1)
                    txt_emb = F.normalize(txt_emb, dim=1)
                    image_emb = F.normalize(image_emb, dim=1)
                    txt_emb_hier = F.normalize(txt_emb_hier, dim=1)
                    image_emb_hier = F.normalize(image_emb_hier, dim=1)

                    sim_txt_color_part = F.cosine_similarity(txt_emb, color_part_txt).item()
                    sim_img_color_part = F.cosine_similarity(image_emb, color_part_img).item()
                    sim_color_txt_img = F.cosine_similarity(color_part_txt, color_part_img).item()
                    sim_small_txt_img = F.cosine_similarity(txt_emb, image_emb).item()

                    sim_txt_hierarchy_part = F.cosine_similarity(txt_emb_hier, hier_part_txt).item()
                    sim_img_hierarchy_part = F.cosine_similarity(image_emb_hier, hier_part_img).item()

                    # Accumulate for projection fitting later
                    color_txt_As.append(color_part_txt.squeeze(0).detach().cpu())
                    color_txt_Bs.append(txt_emb.squeeze(0).detach().cpu())
                    color_img_As.append(color_part_img.squeeze(0).detach().cpu())
                    color_img_Bs.append(image_emb.squeeze(0).detach().cpu())

                    hier_txt_As.append(hier_part_txt.squeeze(0).detach().cpu())
                    hier_txt_Bs.append(txt_emb_hier.squeeze(0).detach().cpu())
                    hier_img_As.append(hier_part_img.squeeze(0).detach().cpu())
                    hier_img_Bs.append(image_emb_hier.squeeze(0).detach().cpu())

                    results.append({
                        'hierarchy': hierarchy,
                        'color': color,
                        'row_index': int(row_idx),
                        'sim_txt_color_part': float(sim_txt_color_part),
                        'sim_img_color_part': float(sim_img_color_part),
                        'sim_color_txt_img': float(sim_color_txt_img),
                        'sim_small_txt_img': float(sim_small_txt_img),
                        'sim_txt_hierarchy_part': float(sim_txt_hierarchy_part),
                        'sim_img_hierarchy_part': float(sim_img_hierarchy_part),
                    })
                except Exception as e:
                    print(f"Skipping example due to error: {e}")
                finally:
                    inner_pbar.update(1)
            inner_pbar.close()
            pair_pbar.update(1)
    pair_pbar.close()

    results_df = pd.DataFrame(results)

    # Save raw results
    os.makedirs('evaluation_outputs', exist_ok=True)
    raw_path = os.path.join('evaluation_outputs', 'similarities_raw.csv')
    results_df.to_csv(raw_path, index=False)
    print(f"Saved raw similarities to {raw_path}")

    # Intelligent averages
    metrics = ['sim_txt_color_part', 'sim_img_color_part', 'sim_color_txt_img', 'sim_small_txt_img',
               'sim_txt_hierarchy_part', 'sim_img_hierarchy_part']

    # Overall means
    overall_means = results_df[metrics].mean().to_frame(name='mean').T
    overall_means.insert(0, 'level', 'overall')

    # By hierarchy
    by_hierarchy = results_df.groupby(config.hierarchy_column)[metrics].mean().reset_index()
    by_hierarchy.insert(0, 'level', config.hierarchy_column)

    # By color
    by_color = results_df.groupby(config.color_column)[metrics].mean().reset_index()
    by_color.insert(0, 'level', config.color_column)

    # By hierarchy+color
    by_pair = results_df.groupby([config.hierarchy_column, config.color_column])[metrics].mean().reset_index()
    by_pair.insert(0, 'level', 'hierarchy_color')

    summary_df = pd.concat([overall_means, by_hierarchy, by_color, by_pair], ignore_index=True)
    summary_path = os.path.join('evaluation_outputs', 'similarities_summary.csv')
    summary_df.to_csv(summary_path, index=False)
    print(f"Saved summary statistics to {summary_path}")

    # =====================
    # Similarity matrices for best hierarchy-color combinations
    # =====================
    try:
        by_pair_core = results_df.groupby([config.hierarchy_column, config.color_column])[metrics].mean().reset_index()
        top_pairs = by_pair_core.nlargest(top_k, primary_metric)
        matrix = top_pairs.pivot(index=config.hierarchy_column, columns=config.color_column, values=primary_metric)
        os.makedirs('evaluation_outputs', exist_ok=True)
        matrix_csv_path = os.path.join('evaluation_outputs', f'similarity_matrix_{primary_metric}_top{top_k}.csv')
        matrix.to_csv(matrix_csv_path)
        print(f"Saved similarity matrix to {matrix_csv_path}")

        if args.heatmap:
            try:
                import seaborn as sns
                import matplotlib.pyplot as plt
                plt.figure(figsize=(max(6, 0.5 * len(matrix.columns)), max(4, 0.5 * len(matrix.index))))
                sns.heatmap(matrix, annot=False, cmap='viridis')
                plt.title(f'Similarity matrix (top {top_k}) - {primary_metric}')
                heatmap_path = os.path.join('evaluation_outputs', f'similarity_matrix_{primary_metric}_top{top_k}.png')
                plt.tight_layout()
                plt.savefig(heatmap_path, dpi=200)
                plt.close()
                print(f"Saved similarity heatmap to {heatmap_path}")
            except Exception as e:
                print(f"Skipping heatmap generation: {e}")
    except Exception as e:
        print(f"Skipping matrix generation: {e}")

    # =====================
    # Learn projections A->B and report projected cosine means
    # =====================
    def fit_ridge_projection(A, B, l2_reg=1e-3):
        # A: [N, D_in], B: [N, D_out]
        A = torch.stack(A)  # [N, D_in]
        B = torch.stack(B)  # [N, D_out]
        # Closed-form ridge: W = (A^T A + λI)^-1 A^T B
        AtA = A.T @ A
        D_in = AtA.shape[0]
        AtA_reg = AtA + l2_reg * torch.eye(D_in)
        W = torch.linalg.solve(AtA_reg, A.T @ B)
        return W  # [D_in, D_out]

    def fit_ridge_with_cv(A, B, l2_values):
        # Simple holdout CV: 80/20 split
        if len(A) < 10:
            # Not enough data for split; fallback to middle lambda
            best_l2 = l2_values[min(len(l2_values) // 2, len(l2_values)-1)]
            W = fit_ridge_projection(A, B, best_l2)
            return W, best_l2, None

        N = len(A)
        idx = torch.randperm(N)
        split = int(0.8 * N)
        train_idx = idx[:split]
        val_idx = idx[split:]

        A_tensor = torch.stack(A)
        B_tensor = torch.stack(B)

        A_train, B_train = A_tensor[train_idx], B_tensor[train_idx]
        A_val, B_val = A_tensor[val_idx], B_tensor[val_idx]

        def to_list(t):
            return [row for row in t]

        best_l2 = None
        best_score = -1.0
        for l2 in l2_values:
            W = fit_ridge_projection(to_list(A_train), to_list(B_train), l2)
            score = mean_projected_cosine(to_list(A_val), to_list(B_val), W)
            if score > best_score:
                best_score = score
                best_l2 = l2

        # Refit on all with best_l2
        W_best = fit_ridge_projection(A, B, best_l2)
        return W_best, best_l2, best_score

    def mean_projected_cosine(A, B, W):
        A = torch.stack(A)
        B = torch.stack(B)
        A_proj = A @ W
        A_proj = F.normalize(A_proj, dim=1)
        B = F.normalize(B, dim=1)
        return torch.mean(torch.sum(A_proj * B, dim=1)).item()

    projection_report = {}

    if len(color_txt_As) >= 8:
        W_ct, best_l2_ct, cv_ct = fit_ridge_with_cv(color_txt_As, color_txt_Bs, l2_grid)
        projection_report['proj_sim_txt_color_part_mean'] = mean_projected_cosine(color_txt_As, color_txt_Bs, W_ct)
        projection_report['proj_txt_color_part_best_l2'] = best_l2_ct
        if cv_ct is not None:
            projection_report['proj_txt_color_part_cv_val'] = cv_ct
    if len(color_img_As) >= 8:
        W_ci, best_l2_ci, cv_ci = fit_ridge_with_cv(color_img_As, color_img_Bs, l2_grid)
        projection_report['proj_sim_img_color_part_mean'] = mean_projected_cosine(color_img_As, color_img_Bs, W_ci)
        projection_report['proj_img_color_part_best_l2'] = best_l2_ci
        if cv_ci is not None:
            projection_report['proj_img_color_part_cv_val'] = cv_ci
    if len(hier_txt_As) >= 8:
        W_ht, best_l2_ht, cv_ht = fit_ridge_with_cv(hier_txt_As, hier_txt_Bs, l2_grid)
        projection_report['proj_sim_txt_hierarchy_part_mean'] = mean_projected_cosine(hier_txt_As, hier_txt_Bs, W_ht)
        projection_report['proj_txt_hierarchy_part_best_l2'] = best_l2_ht
        if cv_ht is not None:
            projection_report['proj_txt_hierarchy_part_cv_val'] = cv_ht
    if len(hier_img_As) >= 8:
        W_hi, best_l2_hi, cv_hi = fit_ridge_with_cv(hier_img_As, hier_img_Bs, l2_grid)
        projection_report['proj_sim_img_hierarchy_part_mean'] = mean_projected_cosine(hier_img_As, hier_img_Bs, W_hi)
        projection_report['proj_img_hierarchy_part_best_l2'] = best_l2_hi
        if cv_hi is not None:
            projection_report['proj_img_hierarchy_part_cv_val'] = cv_hi

    proj_summary_path = os.path.join('evaluation_outputs', 'projection_summary.json')
    with open(proj_summary_path, 'w') as f:
        json.dump(projection_report, f, indent=2)
    print(f"Saved projection summary to {proj_summary_path}")