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"""
Unified training script for threshold circuit LLM integration.

Modes:
  --mode router    : Train only OpRouter with ground truth bits (sanity check)
  --mode interface : Train BitEncoder + OpRouter with ground truth bits (sanity check)
  --mode llm       : Train extractor with LLM hidden states (the real training)

LLM mode options:
  --unfreeze_layers N : Unfreeze top N transformer layers (default 0 = fully frozen)

Hardware Profile (NVIDIA RTX 6000 Ada 48GB):
  VRAM Scaling (unfreeze_layers=4):
    batch_size |  VRAM   |  %
    -----------+---------+------
         512   |  5,784  | 11.8%
       1,024   |  7,384  | 15.0%
       4,096   | 16,534  | 33.6%
      13,000   | 39,000  | 79.4%  <-- recommended for 80% target

Examples:
  python train.py --mode llm --epochs 100 --batch_size 256
  python train.py --mode llm --epochs 100 --batch_size 4096 --unfreeze_layers 4
"""

import torch
import torch.nn as nn
import torch.optim as optim
import time
import argparse
import random

from model import (
    ThresholdALU, DirectCircuitModel, OpRouter,
    ArithmeticModel, OPERATIONS, OP_SYMBOLS
)
from circuits import FrozenThresholdCircuits
from fitness import generate_batch, compute_fitness, compute_loss

DEVICE = 'cuda'

ONES = ['zero', 'one', 'two', 'three', 'four', 'five', 'six', 'seven', 'eight', 'nine',
        'ten', 'eleven', 'twelve', 'thirteen', 'fourteen', 'fifteen', 'sixteen',
        'seventeen', 'eighteen', 'nineteen']
TENS = ['', '', 'twenty', 'thirty', 'forty', 'fifty', 'sixty', 'seventy', 'eighty', 'ninety']

def int_to_words(n: int) -> str:
    """Convert integer 0-255 to English words."""
    if n < 0 or n > 255:
        return str(n)
    if n < 20:
        return ONES[n]
    if n < 100:
        if n % 10 == 0:
            return TENS[n // 10]
        return f"{TENS[n // 10]} {ONES[n % 10]}"
    if n % 100 == 0:
        return f"{ONES[n // 100]} hundred"
    if n % 100 < 20:
        return f"{ONES[n // 100]} hundred {ONES[n % 100]}"
    if n % 10 == 0:
        return f"{ONES[n // 100]} hundred {TENS[(n % 100) // 10]}"
    return f"{ONES[n // 100]} hundred {TENS[(n % 100) // 10]} {ONES[n % 10]}"


def int_to_bits(val: int, device: str = 'cuda') -> torch.Tensor:
    bits = torch.zeros(8, device=device)
    for i in range(8):
        bits[7-i] = (val >> i) & 1
    return bits


def bits_to_int(bits: torch.Tensor) -> int:
    val = 0
    for i in range(8):
        if bits[i].item() > 0.5:
            val += 1 << (7-i)
    return val


NL_TEMPLATES = {
    'add': [
        "What is {a} plus {b}?",
        "Calculate {a} + {b}",
        "Add {a} and {b}",
        "What's the sum of {a} and {b}?",
        "If I have {a} and get {b} more, how many total?",
        "{a} + {b} = ?",
        "Compute {a} plus {b}",
    ],
    'sub': [
        "What is {a} minus {b}?",
        "Calculate {a} - {b}",
        "Subtract {b} from {a}",
        "What's {a} take away {b}?",
        "If I have {a} and lose {b}, how many left?",
        "{a} - {b} = ?",
        "Compute {a} minus {b}",
    ],
    'mul': [
        "What is {a} times {b}?",
        "Calculate {a} * {b}",
        "Multiply {a} by {b}",
        "What's {a} multiplied by {b}?",
        "{a} * {b} = ?",
        "Compute {a} times {b}",
        "What is the product of {a} and {b}?",
    ],
    'gt': [
        "Is {a} greater than {b}?",
        "Is {a} > {b}?",
        "Check if {a} is larger than {b}",
        "Compare: is {a} more than {b}?",
        "{a} > {b}?",
    ],
    'lt': [
        "Is {a} less than {b}?",
        "Is {a} < {b}?",
        "Check if {a} is smaller than {b}",
        "Compare: is {a} fewer than {b}?",
        "{a} < {b}?",
    ],
    'eq': [
        "Is {a} equal to {b}?",
        "Is {a} == {b}?",
        "Does {a} equal {b}?",
        "Check if {a} equals {b}",
        "Are {a} and {b} the same?",
    ],
}


def generate_problem(max_val: int = 255):
    """
    Generate a random arithmetic problem for LLM training.
    Randomly mixes digit and word formats.
    """
    a = random.randint(0, max_val)
    b = random.randint(0, max_val)
    op = random.choice(OPERATIONS)

    fmt = random.choice(['digits', 'words', 'nl_digits', 'nl_words'])

    if fmt == 'digits':
        sym = OP_SYMBOLS[op]
        text = f"{a} {sym} {b}"
    elif fmt == 'words':
        a_word = int_to_words(a)
        b_word = int_to_words(b)
        op_word = {'add': 'plus', 'sub': 'minus', 'mul': 'times',
                   'gt': 'greater than', 'lt': 'less than', 'eq': 'equals'}[op]
        text = f"{a_word} {op_word} {b_word}"
    elif fmt == 'nl_digits':
        template = random.choice(NL_TEMPLATES[op])
        text = template.format(a=a, b=b)
    else:
        template = random.choice(NL_TEMPLATES[op])
        text = template.format(a=int_to_words(a), b=int_to_words(b))

    if op == 'add':
        result = (a + b) & 0xFF
    elif op == 'sub':
        result = (a - b) & 0xFF
    elif op == 'mul':
        result = (a * b) & 0xFF
    elif op == 'gt':
        result = 1 if a > b else 0
    elif op == 'lt':
        result = 1 if a < b else 0
    elif op == 'eq':
        result = 1 if a == b else 0

    return text, a, b, op, result


def get_curriculum_max(epoch: int, total_epochs: int) -> int:
    """
    Curriculum learning: start with small numbers, gradually increase.
    Epoch 0-20%: 0-9 (single digit)
    Epoch 20-50%: 0-99 (two digit)
    Epoch 50-100%: 0-255 (full range)
    """
    progress = epoch / total_epochs
    if progress < 0.2:
        return 9
    elif progress < 0.5:
        return 99
    else:
        return 255


def train_router(epochs: int = 100, batch_size: int = 256, lr: float = 1e-2, device: str = 'cuda'):
    """Train only the router with ground truth bits."""
    print("=" * 70)
    print(" ROUTER-ONLY TRAINING (Ground Truth Bits)")
    print("=" * 70)

    circuits = FrozenThresholdCircuits(device=device)
    router = OpRouter(input_dim=16 + 6, hidden_dim=64, n_ops=6).to(device)

    print(f"\nRouter parameters: {sum(p.numel() for p in router.parameters()):,}")

    def model_fn(a_bits, b_bits, op_onehot):
        x = torch.cat([a_bits, b_bits, op_onehot], dim=-1)
        op_weights = router(x)
        return circuits(a_bits, b_bits, op_weights)

    initial_fitness = compute_fitness(model_fn, n_samples=1000, device=device)
    print(f"Initial fitness: {initial_fitness:.4f}")

    optimizer = optim.AdamW(router.parameters(), lr=lr)
    scheduler = optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=epochs)

    print("\nTraining...")
    print("-" * 70)

    best_fitness = initial_fitness
    start_time = time.perf_counter()

    for epoch in range(epochs):
        router.train()
        epoch_loss = 0.0

        for _ in range(100):
            batch = generate_batch(batch_size, device)

            optimizer.zero_grad()

            x = torch.cat([batch['a_bits'], batch['b_bits'], batch['op_onehot']], dim=-1)
            op_weights = router(x)
            pred_bits = circuits(batch['a_bits'], batch['b_bits'], op_weights)

            loss = compute_loss(pred_bits, batch['expected_bits'])
            loss.backward()
            optimizer.step()

            epoch_loss += loss.item()

        scheduler.step()

        if (epoch + 1) % 10 == 0 or epoch == 0:
            router.eval()
            fitness, details = compute_fitness(model_fn, n_samples=2000, device=device, return_details=True)
            elapsed = time.perf_counter() - start_time

            if fitness > best_fitness:
                best_fitness = fitness
                marker = " *"
            else:
                marker = ""

            print(f"Epoch {epoch+1:3d} | Loss: {epoch_loss/100:.4f} | "
                  f"Fitness: {fitness:.4f}{marker} | Time: {elapsed:.1f}s")

            if fitness >= 0.9999:
                print("\n TARGET: 100% FITNESS ACHIEVED")
                break

    print("\n" + "=" * 70)
    print(" RESULTS")
    print("=" * 70)

    router.eval()
    final_fitness, details = compute_fitness(model_fn, n_samples=5000, device=device, return_details=True)

    print(f"\nFinal fitness: {final_fitness:.4f}")
    print(f"\nPer-operation:")
    for op in OPERATIONS:
        acc = details['by_op'][op]['accuracy']
        print(f"  {op}: {acc:.4f}")

    print(f"\nTotal time: {time.perf_counter() - start_time:.1f}s")

    if final_fitness >= 0.99:
        print("\nCONCLUSION: Router successfully learned operation dispatch.")
        print("           With correct bit encoding, 100% is achievable.")

    save_path = "D:/8bit-threshold-computer/llm_integration/trained/router.pt"
    torch.save({
        'router_state_dict': router.state_dict(),
        'final_fitness': final_fitness,
        'params': sum(p.numel() for p in router.parameters()),
    }, save_path)
    print(f"\nSaved trained router to: {save_path}")

    return router, final_fitness


def get_gpu_memory():
    """Get GPU memory usage in MB."""
    if torch.cuda.is_available():
        return torch.cuda.memory_allocated() / 1024 / 1024, torch.cuda.max_memory_allocated() / 1024 / 1024
    return 0, 0


def train_interface(epochs: int = 200, batch_size: int = 512, lr: float = 1e-3,
                    eval_interval: int = 10, device: str = 'cuda'):
    """Train BitEncoder + OpRouter with ground truth bits."""
    print("=" * 70)
    print(" INTERFACE TRAINING (Encoder + Router)")
    print("=" * 70)
    print(f"  Started at: {time.strftime('%H:%M:%S')}")

    print("\n[1/4] Verifying frozen circuits...")
    print("  Creating DirectCircuitModel...", end=" ", flush=True)
    direct_model = DirectCircuitModel(device=device)
    mem, max_mem = get_gpu_memory()
    print(f"done. VRAM: {mem:.0f}MB")

    def direct_fn(a, b, op):
        return direct_model(a, b, op)

    print("  Running fitness check (1000 samples)...", end=" ", flush=True)
    circuit_fitness = compute_fitness(direct_fn, n_samples=1000, device=device)
    print(f"done. Fitness: {circuit_fitness:.4f}")
    if circuit_fitness < 0.999:
        print("  ERROR: Circuits not achieving 100%. Aborting.")
        return None, 0.0
    print("  STATUS: PASS")

    print("\n[2/4] Initializing model...")
    print("  Creating ThresholdALU...", end=" ", flush=True)
    model = ThresholdALU(device=device)
    mem, max_mem = get_gpu_memory()
    print(f"done. VRAM: {mem:.0f}MB")

    trainable_params = sum(p.numel() for p in model.parameters() if p.requires_grad)
    print(f"  Trainable parameters: {trainable_params:,}")

    def model_fn(a, b, op):
        return model(a, b, op)

    print("  Running initial fitness check...", end=" ", flush=True)
    initial_fitness = compute_fitness(model_fn, n_samples=1000, device=device)
    print(f"done. Fitness: {initial_fitness:.4f}")

    print("\n[3/4] Setting up training...")
    print("  Creating optimizer...", end=" ", flush=True)
    optimizer = optim.AdamW(model.parameters(), lr=lr)
    print("done.")
    print("  Creating scheduler...", end=" ", flush=True)
    scheduler = optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=epochs)
    print("done.")

    print(f"  Config: lr={lr}, batch_size={batch_size}, epochs={epochs}")

    print("\n[4/4] Training...")
    print("  Generating first batch to warm up...", end=" ", flush=True)
    warmup_batch = generate_batch(batch_size, device)
    mem, max_mem = get_gpu_memory()
    print(f"done. VRAM: {mem:.0f}MB (max: {max_mem:.0f}MB)")

    print("-" * 70)

    best_fitness = initial_fitness
    start_time = time.perf_counter()
    n_batches = 100

    for epoch in range(epochs):
        model.train()
        epoch_loss = 0.0
        epoch_start = time.perf_counter()

        for batch_idx in range(n_batches):
            batch = generate_batch(batch_size, device)

            optimizer.zero_grad()

            pred_bits = model(batch['a_bits'], batch['b_bits'], batch['op_onehot'])

            loss = compute_loss(pred_bits, batch['expected_bits'])

            loss.backward()
            optimizer.step()

            epoch_loss += loss.item()

            if batch_idx == 0 and epoch == 0:
                mem, max_mem = get_gpu_memory()
                print(f"  First forward/backward done. VRAM: {mem:.0f}MB (max: {max_mem:.0f}MB)")

            if (batch_idx + 1) % 25 == 0:
                avg_so_far = epoch_loss / (batch_idx + 1)
                print(f"  Epoch {epoch+1} batch {batch_idx+1}/{n_batches} | loss: {avg_so_far:.4f}", flush=True)

        scheduler.step()

        avg_loss = epoch_loss / n_batches
        epoch_time = time.perf_counter() - epoch_start

        if (epoch + 1) % 5 == 0 or epoch == 0:  # Eval every 5 epochs
            model.eval()
            fitness, details = compute_fitness(
                model_fn, n_samples=2000, device=device, return_details=True
            )

            elapsed = time.perf_counter() - start_time

            if fitness > best_fitness:
                best_fitness = fitness
                marker = " *"
            else:
                marker = ""

            mem, _ = get_gpu_memory()
            print(f"Epoch {epoch+1:4d} | Loss: {avg_loss:.4f} | "
                  f"Fitness: {fitness:.4f}{marker} | "
                  f"LR: {scheduler.get_last_lr()[0]:.2e} | "
                  f"VRAM: {mem:.0f}MB | "
                  f"Time: {elapsed:.1f}s ({epoch_time:.1f}s/epoch)")

            if fitness >= 0.9999:
                print("\n" + "=" * 70)
                print(" TARGET ACHIEVED: 100% FITNESS")
                print("=" * 70)
                break

    print("\n" + "=" * 70)
    print(" TRAINING COMPLETE")
    print("=" * 70)

    model.eval()
    final_fitness, details = compute_fitness(
        model_fn, n_samples=5000, device=device, return_details=True
    )

    print(f"\nFinal fitness: {final_fitness:.4f}")
    print(f"Best fitness:  {best_fitness:.4f}")
    print(f"\nPer-operation breakdown:")
    for op in OPERATIONS:
        acc = details['by_op'][op]['accuracy']
        print(f"  {op:6}: {acc:.4f}")

    print(f"\nTotal time: {time.perf_counter() - start_time:.1f}s")

    save_path = "D:/8bit-threshold-computer/llm_integration/trained/interface.pt"
    torch.save({
        'encoder_state_dict': model.encoder.state_dict(),
        'router_state_dict': model.router.state_dict(),
        'final_fitness': final_fitness,
        'best_fitness': best_fitness,
    }, save_path)
    print(f"\nSaved trained model to: {save_path}")

    return model, final_fitness


def compute_llm_loss(pred_bits, a_bits, b_bits, op_logits,
                     target_result, target_a, target_b, target_op_idx,
                     bit_weight: float = 2.0):
    """
    Multi-component loss for LLM training.
    bit_weight: multiplier for a/b bit losses (default 2x since extraction is the bottleneck)
    """
    result_loss = nn.functional.binary_cross_entropy_with_logits(
        pred_bits, target_result
    )

    a_bits_safe = torch.clamp(a_bits, 0.0, 1.0)
    b_bits_safe = torch.clamp(b_bits, 0.0, 1.0)
    a_bits_safe = torch.nan_to_num(a_bits_safe, nan=0.5, posinf=1.0, neginf=0.0)
    b_bits_safe = torch.nan_to_num(b_bits_safe, nan=0.5, posinf=1.0, neginf=0.0)

    a_loss = nn.functional.binary_cross_entropy(
        torch.clamp(a_bits_safe, 1e-6, 1-1e-6), target_a
    )
    b_loss = nn.functional.binary_cross_entropy(
        torch.clamp(b_bits_safe, 1e-6, 1-1e-6), target_b
    )

    op_loss = nn.functional.cross_entropy(op_logits, target_op_idx)

    total = result_loss + bit_weight * a_loss + bit_weight * b_loss + op_loss
    total = torch.nan_to_num(total, nan=10.0, posinf=10.0, neginf=0.0)

    return total, {
        'result': result_loss.item() if not torch.isnan(result_loss) else 10.0,
        'a': a_loss.item() if not torch.isnan(a_loss) else 10.0,
        'b': b_loss.item() if not torch.isnan(b_loss) else 10.0,
        'op': op_loss.item() if not torch.isnan(op_loss) else 10.0
    }


def value_to_digits(value: int) -> list:
    """Convert integer value to list of digits (hundreds, tens, ones)."""
    digits = []
    for place in [100, 10, 1]:
        digit = (value // place) % 10
        digits.append(digit)
    return digits


def compute_positional_digit_loss(pred_bits, op_logits, a_digit_logits_list, b_digit_logits_list,
                                   target_result, target_op_idx, target_a_values, target_b_values,
                                   device, digit_weight: float = 5.0):
    """
    Loss for positional digit extraction with DIRECT digit supervision.

    This provides strong gradients by directly supervising digit classification
    instead of going through the value -> bits conversion.
    """
    result_loss = nn.functional.binary_cross_entropy_with_logits(
        pred_bits, target_result
    )

    op_loss = nn.functional.cross_entropy(op_logits, target_op_idx)

    a_digit_loss = torch.tensor(0.0, device=device)
    b_digit_loss = torch.tensor(0.0, device=device)
    n_a_digits = 0
    n_b_digits = 0

    for i, (a_logits_list, b_logits_list) in enumerate(zip(a_digit_logits_list, b_digit_logits_list)):
        target_a = target_a_values[i].item()
        target_b = target_b_values[i].item()

        a_digits = value_to_digits(int(target_a))
        b_digits = value_to_digits(int(target_b))

        n_a = len(a_logits_list)
        n_b = len(b_logits_list)

        if n_a > 0:
            target_a_digits = a_digits[-n_a:]
            for j, logits in enumerate(a_logits_list):
                target_digit = torch.tensor([target_a_digits[j]], device=device, dtype=torch.long)
                a_digit_loss = a_digit_loss + nn.functional.cross_entropy(logits.unsqueeze(0), target_digit)
                n_a_digits += 1

        if n_b > 0:
            target_b_digits = b_digits[-n_b:]
            for j, logits in enumerate(b_logits_list):
                target_digit = torch.tensor([target_b_digits[j]], device=device, dtype=torch.long)
                b_digit_loss = b_digit_loss + nn.functional.cross_entropy(logits.unsqueeze(0), target_digit)
                n_b_digits += 1

    if n_a_digits > 0:
        a_digit_loss = a_digit_loss / n_a_digits
    if n_b_digits > 0:
        b_digit_loss = b_digit_loss / n_b_digits

    total = result_loss + digit_weight * a_digit_loss + digit_weight * b_digit_loss + op_loss
    total = torch.nan_to_num(total, nan=10.0, posinf=10.0, neginf=0.0)

    return total, {
        'result': result_loss.item() if not torch.isnan(result_loss) else 10.0,
        'a_digit': a_digit_loss.item() if not torch.isnan(a_digit_loss) else 10.0,
        'b_digit': b_digit_loss.item() if not torch.isnan(b_digit_loss) else 10.0,
        'op': op_loss.item() if not torch.isnan(op_loss) else 10.0
    }


def compute_hybrid_loss(pred_bits, op_logits, used_lookup,
                        a_digit_logits, b_digit_logits,
                        target_result, target_a_values, target_b_values, target_op_idx,
                        device, digit_weight: float = 2.0):
    """
    Loss for hybrid extraction with digit-level prediction.

    Uses cross-entropy on each digit (hundreds, tens, ones) for word samples.
    Samples using digit lookup are already 100% accurate - no loss computed.
    """
    result_loss = nn.functional.binary_cross_entropy_with_logits(
        pred_bits, target_result
    )

    op_loss = nn.functional.cross_entropy(op_logits, target_op_idx)

    word_mask = ~used_lookup
    n_words = word_mask.sum().item()

    if n_words > 0 and a_digit_logits is not None and b_digit_logits is not None:
        target_a_word = target_a_values[word_mask].long()
        target_b_word = target_b_values[word_mask].long()

        a_hundreds = target_a_word // 100
        a_tens = (target_a_word % 100) // 10
        a_ones = target_a_word % 10

        b_hundreds = target_b_word // 100
        b_tens = (target_b_word % 100) // 10
        b_ones = target_b_word % 10

        a_logits = a_digit_logits.view(-1, 3, 10)
        b_logits = b_digit_logits.view(-1, 3, 10)

        a_digit_loss = (
            nn.functional.cross_entropy(a_logits[:, 0], a_hundreds) +
            nn.functional.cross_entropy(a_logits[:, 1], a_tens) +
            nn.functional.cross_entropy(a_logits[:, 2], a_ones)
        ) / 3.0

        b_digit_loss = (
            nn.functional.cross_entropy(b_logits[:, 0], b_hundreds) +
            nn.functional.cross_entropy(b_logits[:, 1], b_tens) +
            nn.functional.cross_entropy(b_logits[:, 2], b_ones)
        ) / 3.0
    else:
        a_digit_loss = torch.tensor(0.0, device=device)
        b_digit_loss = torch.tensor(0.0, device=device)

    total = result_loss + op_loss + digit_weight * (a_digit_loss + b_digit_loss)
    total = torch.nan_to_num(total, nan=10.0, posinf=10.0, neginf=0.0)

    return total, {
        'result': result_loss.item() if not torch.isnan(result_loss) else 10.0,
        'a_digit': a_digit_loss.item() if not torch.isnan(a_digit_loss) else 10.0,
        'b_digit': b_digit_loss.item() if not torch.isnan(b_digit_loss) else 10.0,
        'op': op_loss.item() if not torch.isnan(op_loss) else 10.0,
        'n_words': n_words,
        'n_lookup': used_lookup.sum().item()
    }


def evaluate_llm(model, n_samples: int = 500):
    """Evaluate LLM model on random problems (mixed digit/word format)."""
    model.extractor.eval()
    correct = 0
    op_correct = 0

    for _ in range(n_samples):
        text, a, b, op, expected = generate_problem()

        with torch.no_grad():
            outputs = model([text])
            result_bits = outputs[0]
            op_logits = outputs[3]

        pred_result = bits_to_int(result_bits[0])
        pred_op = OPERATIONS[op_logits[0].argmax().item()]

        if pred_result == expected:
            correct += 1
        if pred_op == op:
            op_correct += 1

    model.extractor.train()
    return correct / n_samples, op_correct / n_samples


def train_llm(epochs: int = 100, batch_size: int = 256, lr: float = 3e-4,
              unfreeze_layers: int = 0, extract_layer: int = -1,
              position_extract: bool = False, digit_pred: bool = False,
              positional_digit: bool = False, device: str = 'cuda'):
    """
    Train extractor with LLM hidden states.

    Args:
        unfreeze_layers: Number of top transformer layers to unfreeze (0 = fully frozen)
        extract_layer: Which layer to extract from (-1 = last)
        position_extract: Use position-specific extraction (legacy)
        digit_pred: Predict digits instead of bits (legacy)
        positional_digit: Use positional digit extraction (legacy, 100% on digits only)
    """
    hybrid = not (positional_digit or position_extract or digit_pred)

    print("=" * 70)
    print(" LLM TRAINING")
    if unfreeze_layers > 0:
        print(f" {unfreeze_layers} transformer layers unfrozen")
    else:
        print(" LLM frozen")
    if extract_layer != -1:
        print(f" Extracting from layer {extract_layer}")
    if hybrid:
        print(" HYBRID extraction (digit lookup + word learning)")
    elif positional_digit:
        print(" POSITIONAL DIGIT extraction (legacy, 100% on digits only)")
    elif position_extract:
        print(" Position-specific extraction (legacy)")
    elif digit_pred:
        print(" Digit-level prediction (legacy)")
    print("=" * 70)

    print("\nInitializing model...")
    model = ArithmeticModel(
        device=device,
        unfreeze_layers=unfreeze_layers,
        extract_layer=extract_layer,
        position_extract=position_extract,
        digit_pred=digit_pred,
        positional_digit=positional_digit,
        hybrid=hybrid
    )

    optimizer = optim.AdamW(model.trainable_parameters(), lr=lr)
    scheduler = optim.lr_scheduler.CosineAnnealingLR(optimizer, T_max=epochs)

    print(f"\nTraining config:")
    print(f"  Epochs: {epochs}")
    print(f"  Batch size: {batch_size}")
    print(f"  Learning rate: {lr}")
    print(f"  Unfreeze layers: {unfreeze_layers}")
    print(f"  Samples/epoch: {batch_size * 20}")

    print(f"\nInitial evaluation (200 samples)...")
    acc, op_acc = evaluate_llm(model, 200)
    print(f"  Accuracy: {acc:.4f}, Op accuracy: {op_acc:.4f}")

    print(f"\nStarting training...")
    print("-" * 70)

    best_acc = acc
    start_time = time.perf_counter()

    for epoch in range(epochs):
        model.extractor.train()
        if unfreeze_layers > 0:
            model.llm.train()

        max_val = get_curriculum_max(epoch, epochs)

        epoch_loss = 0
        if hybrid:
            epoch_losses = {'result': 0, 'a_digit': 0, 'b_digit': 0, 'op': 0, 'n_words': 0, 'n_lookup': 0}
        elif positional_digit:
            epoch_losses = {'result': 0, 'a_digit': 0, 'b_digit': 0, 'op': 0}
        else:
            epoch_losses = {'result': 0, 'a': 0, 'b': 0, 'op': 0}
        n_batches = 20
        epoch_start = time.perf_counter()

        for batch_idx in range(n_batches):
            batch_texts = []
            batch_a = []
            batch_b = []
            batch_op = []
            batch_result = []
            batch_a_values = []
            batch_b_values = []

            for _ in range(batch_size):
                text, a, b, op, result = generate_problem(max_val)
                batch_texts.append(text)
                batch_a.append(int_to_bits(a, device))
                batch_b.append(int_to_bits(b, device))
                batch_op.append(OPERATIONS.index(op))
                batch_result.append(int_to_bits(result, device))
                batch_a_values.append(a)
                batch_b_values.append(b)

            target_a = torch.stack(batch_a)
            target_b = torch.stack(batch_b)
            target_op = torch.tensor(batch_op, device=device)
            target_result = torch.stack(batch_result)
            target_a_values = torch.tensor(batch_a_values, device=device, dtype=torch.float32)
            target_b_values = torch.tensor(batch_b_values, device=device, dtype=torch.float32)

            optimizer.zero_grad()

            outputs = model(batch_texts)
            pred_bits, a_bits, b_bits, op_logits = outputs[0], outputs[1], outputs[2], outputs[3]

            if hybrid:
                a_values, b_values, used_lookup = outputs[4], outputs[5], outputs[6]
                a_digit_logits, b_digit_logits = outputs[7], outputs[8]
                loss, losses = compute_hybrid_loss(
                    pred_bits, op_logits, used_lookup,
                    a_digit_logits, b_digit_logits,
                    target_result, target_a_values, target_b_values, target_op, device
                )
            elif positional_digit:
                a_digit_logits_list = outputs[7]
                b_digit_logits_list = outputs[8]
                loss, losses = compute_positional_digit_loss(
                    pred_bits, op_logits, a_digit_logits_list, b_digit_logits_list,
                    target_result, target_op, target_a_values, target_b_values, device
                )
            else:
                loss, losses = compute_llm_loss(
                    pred_bits, a_bits, b_bits, op_logits,
                    target_result, target_a, target_b, target_op
                )

            loss.backward()
            torch.nn.utils.clip_grad_norm_(model.trainable_parameters(), 1.0)
            optimizer.step()

            epoch_loss += loss.item()
            for k in epoch_losses:
                epoch_losses[k] += losses[k]

            if (batch_idx + 1) % 5 == 0:
                avg_so_far = epoch_loss / (batch_idx + 1)
                print(f"  Epoch {epoch+1} batch {batch_idx+1}/{n_batches} | loss: {avg_so_far:.4f}", flush=True)

        epoch_time = time.perf_counter() - epoch_start
        scheduler.step()

        avg_loss = epoch_loss / n_batches
        for k in epoch_losses:
            epoch_losses[k] /= n_batches

        acc, op_acc = evaluate_llm(model, 300)
        elapsed = time.perf_counter() - start_time

        marker = " *" if acc > best_acc else ""
        if acc > best_acc:
            best_acc = acc

        mem, _ = get_gpu_memory()
        print(f"Epoch {epoch+1:3d} | Loss: {avg_loss:.4f} | "
              f"Acc: {acc:.4f}{marker} | OpAcc: {op_acc:.4f} | "
              f"Range: 0-{max_val} | VRAM: {mem:.0f}MB | Time: {elapsed:.0f}s")
        if hybrid:
            print(f"          Losses - result:{epoch_losses['result']:.4f} "
                  f"a_digit:{epoch_losses['a_digit']:.4f} b_digit:{epoch_losses['b_digit']:.4f} "
                  f"op:{epoch_losses['op']:.4f} | words:{epoch_losses['n_words']:.0f} lookup:{epoch_losses['n_lookup']:.0f}")
        elif positional_digit:
            print(f"          Losses - result:{epoch_losses['result']:.4f} "
                  f"a_digit:{epoch_losses['a_digit']:.4f} b_digit:{epoch_losses['b_digit']:.4f} "
                  f"op:{epoch_losses['op']:.4f}")
        else:
            print(f"          Losses - result:{epoch_losses['result']:.4f} "
                  f"a:{epoch_losses['a']:.4f} b:{epoch_losses['b']:.4f} "
                  f"op:{epoch_losses['op']:.4f}")

        if acc >= 0.99:
            print("\n" + "=" * 70)
            print(" TARGET ACHIEVED: 99%+ ACCURACY")
            print("=" * 70)
            break

    print("\n" + "=" * 70)
    print(" FINAL EVALUATION")
    print("=" * 70)

    acc, op_acc = evaluate_llm(model, 1000)
    print(f"Final accuracy: {acc:.4f}")
    print(f"Final op accuracy: {op_acc:.4f}")
    print(f"Best accuracy: {best_acc:.4f}")

    print("\nSample predictions:")
    for _ in range(10):
        text, a, b, op, expected = generate_problem()
        with torch.no_grad():
            outputs = model([text])
            result_bits, a_bits, b_bits, op_logits = outputs[0], outputs[1], outputs[2], outputs[3]
        pred = bits_to_int(result_bits[0])
        pred_a = bits_to_int(a_bits[0])
        pred_b = bits_to_int(b_bits[0])
        pred_op = OPERATIONS[op_logits[0].argmax().item()]

        status = "OK" if pred == expected else "WRONG"
        print(f"  '{text}' = {expected} | pred={pred} (a={pred_a}, b={pred_b}, op={pred_op}) [{status}]")

    save_path = "D:/8bit-threshold-computer/llm_integration/trained/llm.pt"
    save_dict = {
        'extractor_state_dict': model.extractor.state_dict(),
        'final_accuracy': acc,
        'best_accuracy': best_acc,
        'unfreeze_layers': unfreeze_layers,
    }
    if unfreeze_layers > 0:
        save_dict['llm_state_dict'] = {
            k: v for k, v in model.llm.state_dict().items()
            if any(f'layers.{i}.' in k for i in range(len(model.llm.model.layers) - unfreeze_layers, len(model.llm.model.layers)))
        }
    torch.save(save_dict, save_path)
    print(f"\nSaved to: {save_path}")

    return model, acc


def main():
    parser = argparse.ArgumentParser(
        description='Unified training for threshold circuit LLM integration',
        formatter_class=argparse.RawDescriptionHelpFormatter,
        epilog="""
Modes:
  router    - Train only OpRouter with ground truth bits (sanity check)
  interface - Train BitEncoder + OpRouter with ground truth bits (sanity check)
  llm       - Train extractor with LLM hidden states (the real training)

LLM options:
  --unfreeze_layers N  Fine-tune top N transformer layers
  --extract_layer N    Extract from layer N (-1 = last)
  --position_extract   Use position-specific extraction
  --digit_pred         Predict digits instead of bits

Baked-in: curriculum learning (0-9 -> 0-99 -> 0-255), 2x loss weight for a/b

Examples:
  python train.py --mode llm --epochs 100
  python train.py --mode llm --position_extract
  python train.py --mode llm --digit_pred --extract_layer 12
  python train.py --mode llm --unfreeze_layers 4 --batch_size 4096
        """
    )
    parser.add_argument('--mode', type=str, required=True,
                        choices=['router', 'interface', 'llm'],
                        help='Training mode')
    parser.add_argument('--epochs', type=int, default=100, help='Number of epochs')
    parser.add_argument('--batch_size', type=int, default=512, help='Batch size (default: 512)')
    parser.add_argument('--lr', type=float, default=None,
                        help='Learning rate (default: mode-specific)')
    parser.add_argument('--unfreeze_layers', type=int, default=0,
                        help='Unfreeze top N transformer layers (default 0 = frozen)')
    parser.add_argument('--extract_layer', type=int, default=0,
                        help='Which layer to extract from (default: 0 = embeddings, best for digits)')
    parser.add_argument('--position_extract', action='store_true',
                        help='Use position-specific extraction (legacy)')
    parser.add_argument('--digit_pred', action='store_true',
                        help='Predict digits instead of bits (legacy)')
    parser.add_argument('--positional_digit', action='store_true', default=False,
                        help='Use positional digit extraction (legacy, 100%% on digits only)')
    parser.add_argument('--device', type=str, default='cuda', help='Device')
    args = parser.parse_args()

    torch.manual_seed(42)
    random.seed(42)

    if args.mode == 'router':
        lr = args.lr if args.lr is not None else 1e-2
        train_router(epochs=args.epochs, batch_size=args.batch_size, lr=lr, device=args.device)

    elif args.mode == 'interface':
        lr = args.lr if args.lr is not None else 1e-3
        model, fitness = train_interface(
            epochs=args.epochs, batch_size=args.batch_size, lr=lr, device=args.device
        )

        print("\n" + "=" * 70)
        print(" EXPERIMENT SUMMARY")
        print("=" * 70)
        print(f"\n  Control (Vanilla SmolLM2-360M):     11.90%")
        print(f"  Experimental (Trained Interface):   {100*fitness:.2f}%")
        if fitness > 0:
            print(f"\n  Improvement: {100*(fitness - 0.119)/0.119:.1f}%")

        if fitness >= 0.99:
            print("\n  CONCLUSION: Frozen threshold circuits + trained interface")
            print("              achieves near-perfect arithmetic accuracy.")
            print("              Core thesis VALIDATED.")
        else:
            print(f"\n  CONCLUSION: Further training or architecture changes needed.")
            print(f"              Current gap: {100*(1.0 - fitness):.2f}%")

    elif args.mode == 'llm':
        lr = args.lr if args.lr is not None else 3e-4
        train_llm(
            epochs=args.epochs,
            batch_size=args.batch_size,
            lr=lr,
            unfreeze_layers=args.unfreeze_layers,
            extract_layer=args.extract_layer,
            position_extract=args.position_extract,
            digit_pred=args.digit_pred,
            positional_digit=args.positional_digit,
            device=args.device
        )


if __name__ == "__main__":
    main()