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path: root/collaborativeagents/scripts/visualize_user_vectors.py
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#!/usr/bin/env python3
"""
User Vector Visualization Script

Visualizes learned user vectors using t-SNE and PCA for dimensionality reduction.
Supports multiple coloring schemes to analyze user clusters.

Usage:
    python visualize_user_vectors.py --results-dir ../results/fullrun_3methods
    python visualize_user_vectors.py --vectors-file user_vectors.npy --profiles-file profiles.json
"""

import argparse
import json
import numpy as np
import matplotlib.pyplot as plt
from pathlib import Path
from typing import Dict, List, Optional, Tuple
from sklearn.manifold import TSNE
from sklearn.decomposition import PCA
from sklearn.preprocessing import StandardScaler
import warnings
warnings.filterwarnings('ignore')


def load_user_vectors(results_dir: Path) -> Tuple[np.ndarray, List[int]]:
    """Load user vectors from experiment results."""
    vectors = []
    user_ids = []

    # Try to find user vectors in different locations
    possible_paths = [
        results_dir / "user_vectors.npy",
        results_dir / "rag_vector" / "user_vectors.npy",
        results_dir / "checkpoints" / "user_vectors.npy",
    ]

    for path in possible_paths:
        if path.exists():
            data = np.load(path, allow_pickle=True)
            if isinstance(data, np.ndarray):
                if data.dtype == object:
                    # Dictionary format
                    data = data.item()
                    for uid, vec in data.items():
                        user_ids.append(int(uid))
                        vectors.append(vec)
                else:
                    # Direct array format
                    vectors = data
                    user_ids = list(range(len(data)))
            print(f"Loaded {len(vectors)} user vectors from {path}")
            return np.array(vectors), user_ids

    # Try to extract from results.json
    results_files = list(results_dir.glob("**/results.json"))
    for rf in results_files:
        try:
            with open(rf) as f:
                data = json.load(f)
            # Extract user vectors if stored in results
            if isinstance(data, dict) and "user_vectors" in data:
                for uid, vec in data["user_vectors"].items():
                    user_ids.append(int(uid))
                    vectors.append(np.array(vec))
                print(f"Loaded {len(vectors)} user vectors from {rf}")
                return np.array(vectors), user_ids
        except:
            continue

    raise FileNotFoundError(f"No user vectors found in {results_dir}")


def load_profiles(profiles_path: Path) -> List[Dict]:
    """Load user profiles for labeling."""
    if profiles_path.suffix == '.jsonl':
        profiles = []
        with open(profiles_path) as f:
            for line in f:
                profiles.append(json.loads(line))
        return profiles
    else:
        with open(profiles_path) as f:
            return json.load(f)


def extract_profile_features(profiles: List[Dict]) -> Dict[str, List]:
    """Extract features from profiles for coloring."""
    features = {
        "categories": [],
        "n_preferences": [],
        "persona_length": [],
    }

    for p in profiles:
        # Extract categories if available
        cats = p.get("categories", [])
        features["categories"].append(cats[0] if cats else "unknown")

        # Number of preferences
        prefs = p.get("preferences", [])
        features["n_preferences"].append(len(prefs))

        # Persona length
        persona = p.get("persona", "")
        features["persona_length"].append(len(persona))

    return features


def apply_tsne(vectors: np.ndarray, perplexity: int = 30, max_iter: int = 1000) -> np.ndarray:
    """Apply t-SNE dimensionality reduction."""
    # Standardize vectors
    scaler = StandardScaler()
    vectors_scaled = scaler.fit_transform(vectors)

    # Adjust perplexity if needed
    n_samples = len(vectors)
    perplexity = min(perplexity, n_samples - 1)

    tsne = TSNE(
        n_components=2,
        perplexity=perplexity,
        max_iter=max_iter,
        random_state=42,
        init='pca',
        learning_rate='auto'
    )
    return tsne.fit_transform(vectors_scaled)


def apply_pca(vectors: np.ndarray) -> Tuple[np.ndarray, np.ndarray]:
    """Apply PCA dimensionality reduction. Returns (2D projection, explained variance)."""
    scaler = StandardScaler()
    vectors_scaled = scaler.fit_transform(vectors)

    pca = PCA(n_components=min(10, vectors.shape[1]))
    transformed = pca.fit_transform(vectors_scaled)

    return transformed[:, :2], pca.explained_variance_ratio_


def plot_comparison(
    vectors: np.ndarray,
    user_ids: List[int],
    profiles: Optional[List[Dict]] = None,
    output_path: Optional[Path] = None,
    title_prefix: str = ""
):
    """Create side-by-side t-SNE and PCA plots."""

    # Apply dimensionality reduction
    print("Applying t-SNE...")
    tsne_2d = apply_tsne(vectors)

    print("Applying PCA...")
    pca_2d, pca_variance = apply_pca(vectors)

    # Prepare coloring
    if profiles and len(profiles) >= len(user_ids):
        features = extract_profile_features(profiles)
        color_by = features["n_preferences"]
        color_label = "Number of Preferences"
    else:
        color_by = user_ids
        color_label = "User ID"

    # Create figure
    fig, axes = plt.subplots(1, 2, figsize=(16, 7))

    # t-SNE plot
    ax1 = axes[0]
    scatter1 = ax1.scatter(
        tsne_2d[:, 0], tsne_2d[:, 1],
        c=color_by, cmap='viridis', alpha=0.7, s=50
    )
    ax1.set_xlabel('t-SNE Dimension 1')
    ax1.set_ylabel('t-SNE Dimension 2')
    ax1.set_title(f'{title_prefix}t-SNE Visualization\n({len(vectors)} users)')
    plt.colorbar(scatter1, ax=ax1, label=color_label)

    # PCA plot
    ax2 = axes[1]
    scatter2 = ax2.scatter(
        pca_2d[:, 0], pca_2d[:, 1],
        c=color_by, cmap='viridis', alpha=0.7, s=50
    )
    ax2.set_xlabel(f'PC1 ({pca_variance[0]*100:.1f}% variance)')
    ax2.set_ylabel(f'PC2 ({pca_variance[1]*100:.1f}% variance)')
    ax2.set_title(f'{title_prefix}PCA Visualization\n(Top 2 components: {(pca_variance[0]+pca_variance[1])*100:.1f}% variance)')
    plt.colorbar(scatter2, ax=ax2, label=color_label)

    plt.tight_layout()

    if output_path:
        plt.savefig(output_path, dpi=150, bbox_inches='tight')
        print(f"Saved comparison plot to {output_path}")

    plt.show()

    return tsne_2d, pca_2d, pca_variance


def plot_by_category(
    vectors: np.ndarray,
    user_ids: List[int],
    profiles: List[Dict],
    output_path: Optional[Path] = None
):
    """Create plots colored by preference category."""

    features = extract_profile_features(profiles)
    categories = features["categories"]
    unique_cats = list(set(categories))
    cat_to_idx = {c: i for i, c in enumerate(unique_cats)}
    cat_colors = [cat_to_idx[c] for c in categories[:len(user_ids)]]

    # Apply reductions
    tsne_2d = apply_tsne(vectors)
    pca_2d, pca_variance = apply_pca(vectors)

    fig, axes = plt.subplots(1, 2, figsize=(16, 7))

    # t-SNE by category
    ax1 = axes[0]
    scatter1 = ax1.scatter(
        tsne_2d[:, 0], tsne_2d[:, 1],
        c=cat_colors, cmap='tab10', alpha=0.7, s=50
    )
    ax1.set_xlabel('t-SNE Dimension 1')
    ax1.set_ylabel('t-SNE Dimension 2')
    ax1.set_title('t-SNE by Preference Category')

    # PCA by category
    ax2 = axes[1]
    scatter2 = ax2.scatter(
        pca_2d[:, 0], pca_2d[:, 1],
        c=cat_colors, cmap='tab10', alpha=0.7, s=50
    )
    ax2.set_xlabel(f'PC1 ({pca_variance[0]*100:.1f}%)')
    ax2.set_ylabel(f'PC2 ({pca_variance[1]*100:.1f}%)')
    ax2.set_title('PCA by Preference Category')

    # Add legend
    handles = [plt.scatter([], [], c=[cat_to_idx[c]], cmap='tab10', label=c)
               for c in unique_cats[:10]]  # Limit to 10 categories
    fig.legend(handles, unique_cats[:10], loc='center right', title='Category')

    plt.tight_layout()
    plt.subplots_adjust(right=0.85)

    if output_path:
        plt.savefig(output_path, dpi=150, bbox_inches='tight')
        print(f"Saved category plot to {output_path}")

    plt.show()


def plot_pca_variance(vectors: np.ndarray, output_path: Optional[Path] = None):
    """Plot PCA explained variance to understand dimensionality."""
    scaler = StandardScaler()
    vectors_scaled = scaler.fit_transform(vectors)

    n_components = min(50, vectors.shape[1], vectors.shape[0])
    pca = PCA(n_components=n_components)
    pca.fit(vectors_scaled)

    fig, axes = plt.subplots(1, 2, figsize=(14, 5))

    # Individual variance
    ax1 = axes[0]
    ax1.bar(range(1, n_components + 1), pca.explained_variance_ratio_ * 100)
    ax1.set_xlabel('Principal Component')
    ax1.set_ylabel('Explained Variance (%)')
    ax1.set_title('PCA Explained Variance by Component')
    ax1.set_xlim(0, n_components + 1)

    # Cumulative variance
    ax2 = axes[1]
    cumvar = np.cumsum(pca.explained_variance_ratio_) * 100
    ax2.plot(range(1, n_components + 1), cumvar, 'b-o', markersize=4)
    ax2.axhline(y=90, color='r', linestyle='--', label='90% variance')
    ax2.axhline(y=95, color='g', linestyle='--', label='95% variance')
    ax2.set_xlabel('Number of Components')
    ax2.set_ylabel('Cumulative Explained Variance (%)')
    ax2.set_title('PCA Cumulative Explained Variance')
    ax2.legend()
    ax2.set_xlim(0, n_components + 1)
    ax2.set_ylim(0, 105)

    # Find components needed for 90% and 95% variance
    n_90 = np.argmax(cumvar >= 90) + 1
    n_95 = np.argmax(cumvar >= 95) + 1
    print(f"Components for 90% variance: {n_90}")
    print(f"Components for 95% variance: {n_95}")

    plt.tight_layout()

    if output_path:
        plt.savefig(output_path, dpi=150, bbox_inches='tight')
        print(f"Saved variance plot to {output_path}")

    plt.show()

    return pca.explained_variance_ratio_


def generate_synthetic_vectors(n_users: int = 200, dim: int = 64) -> np.ndarray:
    """Generate synthetic user vectors for testing visualization."""
    np.random.seed(42)

    # Create 5 clusters of users
    n_clusters = 5
    cluster_size = n_users // n_clusters
    vectors = []

    for i in range(n_clusters):
        # Each cluster has a different center
        center = np.random.randn(dim) * 2
        # Users in cluster are variations around center
        cluster_vectors = center + np.random.randn(cluster_size, dim) * 0.5
        vectors.append(cluster_vectors)

    # Add remaining users
    remaining = n_users - n_clusters * cluster_size
    if remaining > 0:
        vectors.append(np.random.randn(remaining, dim))

    return np.vstack(vectors)


def main():
    parser = argparse.ArgumentParser(description="Visualize user vectors with t-SNE and PCA")
    parser.add_argument("--results-dir", type=str, help="Path to experiment results directory")
    parser.add_argument("--vectors-file", type=str, help="Path to user vectors .npy file")
    parser.add_argument("--profiles-file", type=str, help="Path to user profiles JSON file")
    parser.add_argument("--output-dir", type=str, default=".", help="Output directory for plots")
    parser.add_argument("--demo", action="store_true", help="Run demo with synthetic data")
    args = parser.parse_args()

    output_dir = Path(args.output_dir)
    output_dir.mkdir(parents=True, exist_ok=True)

    if args.demo:
        print("Running demo with synthetic user vectors...")
        vectors = generate_synthetic_vectors(200, 64)
        user_ids = list(range(200))
        profiles = None
        title_prefix = "[Demo] "
    elif args.vectors_file:
        vectors = np.load(args.vectors_file)
        user_ids = list(range(len(vectors)))
        profiles = None
        if args.profiles_file:
            profiles = load_profiles(Path(args.profiles_file))
        title_prefix = ""
    elif args.results_dir:
        results_dir = Path(args.results_dir)
        vectors, user_ids = load_user_vectors(results_dir)

        # Try to find profiles
        profiles = None
        profile_paths = [
            results_dir / "generated_profiles.json",
            results_dir.parent / "profiles.json",
            Path("../data/complex_profiles_v2/profiles_200.jsonl"),
        ]
        for pp in profile_paths:
            if pp.exists():
                profiles = load_profiles(pp)
                print(f"Loaded {len(profiles)} profiles from {pp}")
                break
        title_prefix = ""
    else:
        print("Please provide --results-dir, --vectors-file, or --demo")
        return

    print(f"\nUser vectors shape: {vectors.shape}")
    print(f"Number of users: {len(user_ids)}")

    # Generate plots
    print("\n=== Generating comparison plot ===")
    plot_comparison(
        vectors, user_ids, profiles,
        output_path=output_dir / "user_vectors_comparison.png",
        title_prefix=title_prefix
    )

    print("\n=== Generating PCA variance plot ===")
    plot_pca_variance(
        vectors,
        output_path=output_dir / "user_vectors_pca_variance.png"
    )

    if profiles and len(profiles) >= len(user_ids):
        print("\n=== Generating category plot ===")
        plot_by_category(
            vectors, user_ids, profiles,
            output_path=output_dir / "user_vectors_by_category.png"
        )

    print("\n=== Done! ===")
    print(f"Plots saved to {output_dir}")


if __name__ == "__main__":
    main()