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"""
MHA CV Relational Test β€” Prototype
Train a minimal embedding + MHA + classifier on 10 noise patterns.
Measure CV on embedding weights, Q/K/V projections, and attention output
across different head counts per embedding dimension.

Hypothesis: head_dim (D / n_heads) determines CV of internal representations,
and the band-valid head_dims produce qualitatively different geometric behavior.
"""

import torch
import torch.nn as nn
import torch.nn.functional as F
import math


# ── CM primitives ──

def cayley_menger_vol2(points):
    B, N, D = points.shape
    gram = torch.bmm(points, points.transpose(1, 2))
    norms = torch.diagonal(gram, dim1=1, dim2=2)
    d2 = F.relu(norms.unsqueeze(2) + norms.unsqueeze(1) - 2 * gram)
    cm = torch.zeros(B, N + 1, N + 1, device=points.device, dtype=points.dtype)
    cm[:, 0, 1:] = 1.0
    cm[:, 1:, 0] = 1.0
    cm[:, 1:, 1:] = d2
    k = N - 1
    sign = (-1.0) ** (k + 1)
    fact = math.factorial(k)
    return sign * torch.linalg.det(cm.float()).to(points.dtype) / ((2 ** k) * (fact ** 2))


def cv_metric(weight, n_samples=300):
    """CV of pentachoron volumes. weight: (N, D)"""
    V, D = weight.shape
    if V < 5:
        return None
    pool = min(V, 512)
    indices = torch.stack([
        torch.randperm(pool, device=weight.device)[:5]
        for _ in range(n_samples)
    ])
    pts = weight[:pool][indices]
    vol2 = cayley_menger_vol2(pts)
    valid = vol2 > 1e-20
    if valid.sum() < 10:
        return None
    vols = vol2[valid].sqrt()
    return (vols.std() / (vols.mean() + 1e-8)).item()


# ── Minimal model ──

class MHAClassifier(nn.Module):
    def __init__(self, vocab, dim, n_heads, seq_len, n_classes):
        super().__init__()
        self.emb = nn.Embedding(vocab, dim)
        self.pos = nn.Parameter(torch.randn(1, seq_len, dim) * 0.02)
        self.mha = nn.MultiheadAttention(dim, n_heads, batch_first=True)
        self.norm = nn.LayerNorm(dim)
        self.head = nn.Linear(dim, n_classes)

    def forward(self, x):
        # x: (B, seq_len) token indices
        h = self.emb(x) + self.pos
        attn_out, _ = self.mha(h, h, h)
        h = self.norm(h + attn_out)
        # pool over sequence
        h = h.mean(dim=1)
        return self.head(h)

    @torch.no_grad()
    def forward_activations(self, x, n_heads):
        """Forward pass returning per-head Q/K/V activations and post-attn output.

        Returns dict of (B*seq, head_dim) tensors for CV measurement.
        """
        h = self.emb(x) + self.pos  # (B, seq, D)
        B, S, D = h.shape
        head_dim = D // n_heads

        # Manually compute Q, K, V from in_proj
        w = self.mha.in_proj_weight
        b = self.mha.in_proj_bias
        qkv = F.linear(h, w, b)  # (B, seq, 3*D)
        q, k, v = qkv.chunk(3, dim=-1)  # each (B, seq, D)

        # Reshape to per-head: (B, seq, n_heads, head_dim)
        q = q.view(B, S, n_heads, head_dim)
        k = k.view(B, S, n_heads, head_dim)
        v = v.view(B, S, n_heads, head_dim)

        # Compute attention output
        attn_out, _ = self.mha(h, h, h)
        post_attn = self.norm(h + attn_out)  # (B, seq, D)
        # Post-attn per head view
        post_heads = post_attn.view(B, S, n_heads, head_dim)

        acts = {}
        for i in range(n_heads):
            acts[f"act_Q_h{i}"] = q[:, :, i, :].reshape(-1, head_dim)
            acts[f"act_K_h{i}"] = k[:, :, i, :].reshape(-1, head_dim)
            acts[f"act_V_h{i}"] = v[:, :, i, :].reshape(-1, head_dim)
            acts[f"act_post_h{i}"] = post_heads[:, :, i, :].reshape(-1, head_dim)

        # Also full-dim activations
        acts["act_emb"] = h.reshape(-1, D)
        acts["act_post_full"] = post_attn.reshape(-1, D)

        return acts

    def get_qkv_weights(self):
        """Extract Q, K, V projection weight matrices."""
        # nn.MultiheadAttention packs Q, K, V into in_proj_weight: (3*dim, dim)
        w = self.mha.in_proj_weight.detach()
        d = w.shape[1]
        q_w = w[:d]       # (dim, dim)
        k_w = w[d:2*d]    # (dim, dim)
        v_w = w[2*d:]     # (dim, dim)
        return q_w, k_w, v_w

    def get_per_head_projections(self, n_heads):
        """Split Q/K/V weights into per-head chunks. Returns list of (head_dim, dim) per head."""
        q_w, k_w, v_w = self.get_qkv_weights()
        d = q_w.shape[0]
        head_dim = d // n_heads
        q_heads = [q_w[i*head_dim:(i+1)*head_dim] for i in range(n_heads)]
        k_heads = [k_w[i*head_dim:(i+1)*head_dim] for i in range(n_heads)]
        v_heads = [v_w[i*head_dim:(i+1)*head_dim] for i in range(n_heads)]
        return q_heads, k_heads, v_heads


# ── Data: 10 noise patterns with perturbations ──

def make_data(n_classes=10, samples_per_class=50, seq_len=8, vocab=256):
    """Create simple classification data. Each class has a base token pattern with noise."""
    torch.manual_seed(42)
    # Base patterns: each class gets a fixed token sequence
    base_patterns = torch.randint(0, vocab, (n_classes, seq_len))

    all_x, all_y = [], []
    for cls in range(n_classes):
        for _ in range(samples_per_class):
            pattern = base_patterns[cls].clone()
            # Perturb ~25% of positions
            mask = torch.rand(seq_len) < 0.25
            pattern[mask] = torch.randint(0, vocab, (mask.sum(),))
            all_x.append(pattern)
            all_y.append(cls)

    x = torch.stack(all_x)
    y = torch.tensor(all_y)
    perm = torch.randperm(len(x))
    return x[perm], y[perm]


# ── CV measurement suite ──

def measure_all_cv(model, n_heads, x=None):
    """Measure CV on all relevant weight matrices and activations."""
    results = {}

    # Embedding weights
    emb_w = model.emb.weight.detach()
    results["emb"] = cv_metric(emb_w)

    # Full Q, K, V projection matrices (dim Γ— dim)
    q_w, k_w, v_w = model.get_qkv_weights()
    results["Q_full"] = cv_metric(q_w)
    results["K_full"] = cv_metric(k_w)
    results["V_full"] = cv_metric(v_w)

    # Per-head projections (head_dim Γ— dim) β€” CV measured on head_dim rows
    q_heads, k_heads, v_heads = model.get_per_head_projections(n_heads)
    for i in range(n_heads):
        results[f"Q_h{i}"] = cv_metric(q_heads[i])
        results[f"K_h{i}"] = cv_metric(k_heads[i])
        results[f"V_h{i}"] = cv_metric(v_heads[i])

    # Output projection
    out_w = model.mha.out_proj.weight.detach()
    results["out_proj"] = cv_metric(out_w)

    # Classifier head
    head_w = model.head.weight.detach()
    results["cls_head"] = cv_metric(head_w)

    # Activations β€” the space where attention actually operates
    if x is not None:
        model.eval()
        acts = model.forward_activations(x, n_heads)
        for name, tensor in acts.items():
            results[name] = cv_metric(tensor)

    return results


def fmt_cv(cv):
    if cv is None:
        return "  N/A "
    band = "*" if 0.13 < cv < 0.30 else " "
    return f"{band}{cv:.4f}{band}"


# ── Training + measurement loop ──

def run_experiment(dim, n_heads, vocab=256, seq_len=8, n_classes=10, epochs=50, lr=1e-3):
    head_dim = dim // n_heads
    print(f"\n{'='*70}")
    print(f"D={dim}  heads={n_heads}  head_dim={head_dim}")
    print(f"{'='*70}")

    x, y = make_data(n_classes=n_classes, seq_len=seq_len, vocab=vocab)
    model = MHAClassifier(vocab, dim, n_heads, seq_len, n_classes)
    opt = torch.optim.Adam(model.parameters(), lr=lr)

    # Pre-training CV
    print(f"\n  [pre-train]")
    pre_cv = measure_all_cv(model, n_heads, x)
    for k, v in pre_cv.items():
        print(f"    {k:16s}: {fmt_cv(v)}")

    # Training
    mid_cv = None
    for epoch in range(1, epochs + 1):
        model.train()
        opt.zero_grad()
        logits = model(x)
        loss = F.cross_entropy(logits, y)
        loss.backward()
        opt.step()

        if epoch == epochs // 2:
            model.eval()
            with torch.no_grad():
                acc = (model(x).argmax(-1) == y).float().mean().item()
            mid_cv = measure_all_cv(model, n_heads, x)
            print(f"\n  [epoch {epoch}]  loss={loss.item():.4f}  acc={acc:.2%}")
            for k, v in mid_cv.items():
                print(f"    {k:16s}: {fmt_cv(v)}")

    # Post-training CV
    model.eval()
    with torch.no_grad():
        acc = (model(x).argmax(-1) == y).float().mean().item()
    print(f"\n  [post-train]  loss={loss.item():.4f}  acc={acc:.2%}")
    post_cv = measure_all_cv(model, n_heads, x)
    for k, v in post_cv.items():
        pre = pre_cv.get(k)
        delta = ""
        if v is not None and pre is not None:
            d = v - pre
            delta = f"  Ξ”={d:+.4f}"
        print(f"    {k:16s}: {fmt_cv(v)}{delta}")

    return {
        "dim": dim, "n_heads": n_heads, "head_dim": head_dim,
        "pre": pre_cv, "mid": mid_cv, "post": post_cv, "acc": acc,
    }


# ── Main ──

if __name__ == "__main__":
    print("MHA CV Relational Test β€” Prototype")
    print("Band: 0.13 < CV < 0.30")

    configs = [
        # D=64: head_dims 64, 32, 16, 8
        (64, 1),
        (64, 2),
        (64, 4),
        (64, 8),
        # D=128: head_dims 128, 64, 32, 16
        (128, 1),
        (128, 2),
        (128, 4),
        (128, 8),
        # D=256: head_dims 256, 128, 64, 32
        (256, 1),
        (256, 2),
        (256, 4),
        (256, 8),
    ]

    all_results = []
    for dim, n_heads in configs:
        r = run_experiment(dim, n_heads)
        all_results.append(r)

    # Summary β€” Weights
    print(f"\n\n{'='*70}")
    print("SUMMARY: Post-training WEIGHT CV by head_dim")
    print(f"{'='*70}")
    print(f"{'D':>5} {'heads':>5} {'hdim':>5} | {'emb':>8} {'Q_full':>8} {'K_full':>8} {'V_full':>8} {'out':>8} | acc")
    print("-" * 80)
    for r in all_results:
        p = r["post"]
        print(f"{r['dim']:5d} {r['n_heads']:5d} {r['head_dim']:5d} | "
              f"{fmt_cv(p.get('emb')):>8} {fmt_cv(p.get('Q_full')):>8} "
              f"{fmt_cv(p.get('K_full')):>8} {fmt_cv(p.get('V_full')):>8} "
              f"{fmt_cv(p.get('out_proj')):>8} | {r['acc']:.2%}")

    # Summary β€” Activations (the real test)
    print(f"\n\n{'='*70}")
    print("SUMMARY: Post-training ACTIVATION CV by head_dim")
    print("(These measure the space where attention actually operates)")
    print(f"{'='*70}")
    print(f"{'D':>5} {'heads':>5} {'hdim':>5} | {'act_emb':>8} {'aQ_h0':>8} {'aK_h0':>8} {'aV_h0':>8} {'aPost0':>8} {'act_full':>8} | acc")
    print("-" * 90)
    for r in all_results:
        p = r["post"]
        print(f"{r['dim']:5d} {r['n_heads']:5d} {r['head_dim']:5d} | "
              f"{fmt_cv(p.get('act_emb')):>8} "
              f"{fmt_cv(p.get('act_Q_h0')):>8} {fmt_cv(p.get('act_K_h0')):>8} "
              f"{fmt_cv(p.get('act_V_h0')):>8} {fmt_cv(p.get('act_post_h0')):>8} "
              f"{fmt_cv(p.get('act_post_full')):>8} | {r['acc']:.2%}")

    # Summary — Activation CV delta (pre→post)
    print(f"\n\n{'='*70}")
    print("SUMMARY: ACTIVATION CV movement (post - pre)")
    print(f"{'='*70}")
    print(f"{'D':>5} {'heads':>5} {'hdim':>5} | {'act_emb':>8} {'aQ_h0':>8} {'aK_h0':>8} {'aV_h0':>8} {'aPost0':>8} {'act_full':>8}")
    print("-" * 80)
    for r in all_results:
        pre, post = r["pre"], r["post"]
        def delta(k):
            a, b = pre.get(k), post.get(k)
            if a is not None and b is not None:
                d = b - a
                return f"{d:+.4f}"
            return "  N/A "
        print(f"{r['dim']:5d} {r['n_heads']:5d} {r['head_dim']:5d} | "
              f"{delta('act_emb'):>8} "
              f"{delta('act_Q_h0'):>8} {delta('act_K_h0'):>8} "
              f"{delta('act_V_h0'):>8} {delta('act_post_h0'):>8} "
              f"{delta('act_post_full'):>8}")