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"""Test different strategies to fix the output length issue."""

import sys
import os
import time
import torch

sys.path.insert(0, os.path.dirname(os.path.dirname(os.path.abspath(__file__))))

from data.longlamp import load_longlamp, select_k_profile_items
from data.templates import build_query_prompt
from models.qwen_wrapper import QwenWrapper
from models.cvh import CVHHead, UnconditionalHead
from adapt.cache_hidden import cache_support_hidden_states
from adapt.fit_theta import fit_theta
from eval.metrics import evaluate_all


def run_with_blend(wrapper, examples, support_sets, head_module, d=64,
                   beta=0.05, steps=30, lr=0.05, blend_gamma=0.5,
                   min_new_tokens=64, max_new_tokens=512):
    """Run CVH with logit blending: logits = (1-gamma)*base + gamma*cvh"""
    device = 'cuda:1'
    lm_head_bias = None
    if hasattr(wrapper.model.lm_head, 'bias') and wrapper.model.lm_head.bias is not None:
        lm_head_bias = wrapper.model.lm_head.bias.data

    predictions = []
    theta_norms = []

    for i, (ex, support) in enumerate(zip(examples, support_sets)):
        cached_h = cache_support_hidden_states(wrapper, support, ex['task'])
        if not cached_h:
            prompt = build_query_prompt(ex['query_input'], ex['task'])
            pred = wrapper.generate_base(prompt, max_new_tokens=max_new_tokens)
            predictions.append(pred)
            continue

        theta = fit_theta(
            cached_h=cached_h,
            lm_head_weight=wrapper.lm_head_weight,
            lm_head_bias=lm_head_bias,
            head_module=head_module,
            d=d, lr=lr, steps=steps, beta=beta, lam=1e-4,
            max_grad_norm=5.0, device=device, verbose=False,
        )
        theta_norms.append(theta.norm().item())

        # Generate with blending
        prompt = build_query_prompt(ex['query_input'], ex['task'])
        pred = generate_with_blend(
            wrapper, prompt, theta, head_module,
            gamma=blend_gamma, max_new_tokens=max_new_tokens,
            min_new_tokens=min_new_tokens,
        )
        predictions.append(pred)

        del cached_h, theta
        torch.cuda.empty_cache()

        if (i + 1) % 20 == 0:
            print(f"    {i+1}/{len(examples)}")

    avg_norm = sum(theta_norms) / max(len(theta_norms), 1)
    avg_len = sum(len(p.split()) for p in predictions) / max(len(predictions), 1)
    return predictions, avg_norm, avg_len


def generate_with_blend(wrapper, input_text, theta, head_module,
                        gamma=0.5, max_new_tokens=512, min_new_tokens=64):
    """Generate with blended base + CVH logits."""
    chat_messages = [
        {"role": "system", "content": "You are a helpful writing assistant."},
        {"role": "user", "content": input_text},
    ]
    prompt_text = wrapper.tokenizer.apply_chat_template(
        chat_messages, tokenize=False, add_generation_prompt=True
    )
    input_ids = wrapper.tokenizer.encode(prompt_text, return_tensors="pt").to(wrapper.device)

    generated_ids = []
    past_key_values = None

    for step in range(max_new_tokens):
        if step == 0:
            cur_input = input_ids
        else:
            cur_input = torch.tensor([[generated_ids[-1]]], device=wrapper.device)

        with torch.no_grad():
            outputs = wrapper.model(
                input_ids=cur_input,
                past_key_values=past_key_values,
                output_hidden_states=True,
                use_cache=True,
                return_dict=True,
            )

        past_key_values = outputs.past_key_values
        last_hidden = outputs.hidden_states[-1][:, -1, :]  # (1, H)

        # Base logits
        base_logits = torch.nn.functional.linear(
            last_hidden.to(wrapper.lm_head_weight.dtype),
            wrapper.lm_head_weight,
            wrapper.model.lm_head.bias if hasattr(wrapper.model.lm_head, 'bias') and wrapper.model.lm_head.bias is not None else None,
        ).float()

        # CVH logits
        h_prime = head_module.forward_fn(last_hidden.float(), theta)
        cvh_logits = torch.nn.functional.linear(
            h_prime.to(wrapper.lm_head_weight.dtype),
            wrapper.lm_head_weight,
            wrapper.model.lm_head.bias if hasattr(wrapper.model.lm_head, 'bias') and wrapper.model.lm_head.bias is not None else None,
        ).float()

        # Blend logits
        logits = (1 - gamma) * base_logits + gamma * cvh_logits

        # Suppress EOS before min_new_tokens
        if step < min_new_tokens and wrapper.tokenizer.eos_token_id is not None:
            logits[0, wrapper.tokenizer.eos_token_id] = float('-inf')

        next_token = logits.argmax(dim=-1).item()

        if next_token == wrapper.tokenizer.eos_token_id:
            break

        generated_ids.append(next_token)

    return wrapper.tokenizer.decode(generated_ids, skip_special_tokens=True)


def main():
    N = 50
    print(f"Loading data ({N} examples)...")
    examples = load_longlamp('product_review_user', split='val')[:N]
    K = 4
    support_sets = [select_k_profile_items(ex['profile_items'], K, seed=0) for ex in examples]
    references = [ex['target_output'] for ex in examples]
    support_texts = [[s['support_output'] for s in ss] for ss in support_sets]

    avg_ref_len = sum(len(r.split()) for r in references) / len(references)
    print(f"Avg reference length: {avg_ref_len:.0f} words")

    print("Loading model...")
    wrapper = QwenWrapper('Qwen/Qwen2.5-1.5B-Instruct', device='cuda:1')
    H = wrapper.hidden_size
    device = 'cuda:1'

    # Base with min_new_tokens=200
    print("\n=== Base ===")
    base_preds = []
    for ex in examples:
        prompt = build_query_prompt(ex['query_input'], ex['task'])
        pred = wrapper.generate_base(prompt, max_new_tokens=512, temperature=0.0)
        base_preds.append(pred)
    base_r = evaluate_all(base_preds, references, support_texts)
    base_len = sum(len(p.split()) for p in base_preds) / len(base_preds)
    print(f"  R-L: {base_r['rougeL']:.4f}, METEOR: {base_r['meteor']:.4f}, SFD: {base_r['sfd']:.4f}, len: {base_len:.0f}")

    results = {'Base': {**base_r, 'avg_len': base_len}}

    head = CVHHead(H, d=64, alpha=0.1, basis_seed=42).to(device)
    uncond = UnconditionalHead(H, d=64, alpha=0.1, basis_seed=42).to(device)

    configs = [
        # Standard CVH with higher min_new_tokens
        ('CVH min=200', head, 1.0, 200),
        # Blended CVH with different gammas
        ('CVH blend=0.3 min=64', head, 0.3, 64),
        ('CVH blend=0.5 min=64', head, 0.5, 64),
        ('CVH blend=0.7 min=64', head, 0.7, 64),
        ('CVH blend=0.5 min=128', head, 0.5, 128),
        # Uncond blend
        ('Uncond blend=0.5 min=64', uncond, 0.5, 64),
    ]

    for name, head_mod, gamma, min_tok in configs:
        print(f"\n=== {name} ===")
        t0 = time.time()
        preds, avg_norm, avg_len = run_with_blend(
            wrapper, examples, support_sets, head_mod, d=64,
            beta=0.05, steps=30, lr=0.05, blend_gamma=gamma,
            min_new_tokens=min_tok, max_new_tokens=512,
        )
        elapsed = time.time() - t0
        r = evaluate_all(preds, references, support_texts)
        results[name] = {**r, 'avg_len': avg_len}
        print(f"  R-L: {r['rougeL']:.4f}, METEOR: {r['meteor']:.4f}, SFD: {r['sfd']:.4f}, "
              f"|theta|: {avg_norm:.3f}, len: {avg_len:.0f}, time: {elapsed:.0f}s")

    # Summary
    print("\n" + "=" * 100)
    print(f"{'Config':<30} {'R-1':<8} {'R-L':<8} {'METEOR':<8} {'SFD':<8} {'Len':<6}")
    print("-" * 100)
    for name, r in results.items():
        print(f"{name:<30} {r['rouge1']:<8.4f} {r['rougeL']:<8.4f} "
              f"{r['meteor']:<8.4f} {r['sfd']:<8.4f} {r.get('avg_len', 0):<6.0f}")


if __name__ == '__main__':
    main()