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			367 lines
		
	
	
		
			13 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
			
		
		
	
	
			367 lines
		
	
	
		
			13 KiB
		
	
	
	
		
			Python
		
	
	
	
	
	
# Copyright (c) Sebastian Raschka under Apache License 2.0 (see LICENSE.txt).
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# Source for "Build a Large Language Model From Scratch"
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#   - https://www.manning.com/books/build-a-large-language-model-from-scratch
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# Code: https://github.com/rasbt/LLMs-from-scratch
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import argparse
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from pathlib import Path
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import time
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import pandas as pd
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import tiktoken
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import torch
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from torch.utils.data import DataLoader
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from torch.utils.data import Dataset
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from gpt_download import download_and_load_gpt2
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from previous_chapters import GPTModel, load_weights_into_gpt
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class IMDBDataset(Dataset):
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    def __init__(self, csv_file, tokenizer, max_length=None, pad_token_id=50256):
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        self.data = pd.read_csv(csv_file)
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        self.max_length = max_length if max_length is not None else self._longest_encoded_length(tokenizer)
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        # Pre-tokenize texts
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        self.encoded_texts = [
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            tokenizer.encode(text)[:self.max_length]
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            for text in self.data["text"]
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        ]
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        # Pad sequences to the longest sequence
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        self.encoded_texts = [
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            et + [pad_token_id] * (self.max_length - len(et))
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            for et in self.encoded_texts
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        ]
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    def __getitem__(self, index):
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        encoded = self.encoded_texts[index]
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        label = self.data.iloc[index]["label"]
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        return torch.tensor(encoded, dtype=torch.long), torch.tensor(label, dtype=torch.long)
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    def __len__(self):
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        return len(self.data)
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    def _longest_encoded_length(self, tokenizer):
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        max_length = 0
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        for text in self.data["text"]:
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            encoded_length = len(tokenizer.encode(text))
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            if encoded_length > max_length:
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                max_length = encoded_length
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        return max_length
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def instantiate_model(choose_model, load_weights):
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    BASE_CONFIG = {
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        "vocab_size": 50257,     # Vocabulary size
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        "context_length": 1024,  # Context length
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        "drop_rate": 0.0,        # Dropout rate
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        "qkv_bias": True         # Query-key-value bias
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    }
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    model_configs = {
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        "gpt2-small (124M)": {"emb_dim": 768, "n_layers": 12, "n_heads": 12},
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        "gpt2-medium (355M)": {"emb_dim": 1024, "n_layers": 24, "n_heads": 16},
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        "gpt2-large (774M)": {"emb_dim": 1280, "n_layers": 36, "n_heads": 20},
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        "gpt2-xl (1558M)": {"emb_dim": 1600, "n_layers": 48, "n_heads": 25},
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    }
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    BASE_CONFIG.update(model_configs[choose_model])
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    if not load_weights:
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        torch.manual_seed(123)
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    model = GPTModel(BASE_CONFIG)
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    if load_weights:
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        model_size = choose_model.split(" ")[-1].lstrip("(").rstrip(")")
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        settings, params = download_and_load_gpt2(model_size=model_size, models_dir="gpt2")
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        load_weights_into_gpt(model, params)
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    model.eval()
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    return model
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def calc_loss_batch(input_batch, target_batch, model, device, trainable_token=-1):
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    input_batch, target_batch = input_batch.to(device), target_batch.to(device)
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    logits = model(input_batch)[:, trainable_token, :]  # Logits of last output token
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    loss = torch.nn.functional.cross_entropy(logits, target_batch)
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    return loss
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def calc_loss_loader(data_loader, model, device, num_batches=None, trainable_token=-1):
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    total_loss = 0.
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    if len(data_loader) == 0:
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        return float("nan")
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    elif num_batches is None:
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        num_batches = len(data_loader)
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    else:
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        # Reduce the number of batches to match the total number of batches in the data loader
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        # if num_batches exceeds the number of batches in the data loader
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        num_batches = min(num_batches, len(data_loader))
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    for i, (input_batch, target_batch) in enumerate(data_loader):
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        if i < num_batches:
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            loss = calc_loss_batch(input_batch, target_batch, model, device, trainable_token=trainable_token)
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            total_loss += loss.item()
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        else:
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            break
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    return total_loss / num_batches
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@torch.no_grad()  # Disable gradient tracking for efficiency
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def calc_accuracy_loader(data_loader, model, device, num_batches=None, trainable_token=-1):
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    model.eval()
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    correct_predictions, num_examples = 0, 0
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    if num_batches is None:
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        num_batches = len(data_loader)
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    else:
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        num_batches = min(num_batches, len(data_loader))
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    for i, (input_batch, target_batch) in enumerate(data_loader):
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        if i < num_batches:
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            input_batch, target_batch = input_batch.to(device), target_batch.to(device)
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            logits = model(input_batch)[:, trainable_token, :]  # Logits of last output token
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            predicted_labels = torch.argmax(logits, dim=-1)
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            num_examples += predicted_labels.shape[0]
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            correct_predictions += (predicted_labels == target_batch).sum().item()
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        else:
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            break
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    return correct_predictions / num_examples
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def evaluate_model(model, train_loader, val_loader, device, eval_iter, trainable_token=-1):
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    model.eval()
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    with torch.no_grad():
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        train_loss = calc_loss_loader(train_loader, model, device, num_batches=eval_iter, trainable_token=trainable_token)
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        val_loss = calc_loss_loader(val_loader, model, device, num_batches=eval_iter, trainable_token=trainable_token)
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    model.train()
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    return train_loss, val_loss
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def train_classifier_simple(model, train_loader, val_loader, optimizer, device, num_epochs,
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                            eval_freq, eval_iter, tokenizer, max_steps=None, trainable_token=-1):
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    # Initialize lists to track losses and tokens seen
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    train_losses, val_losses, train_accs, val_accs = [], [], [], []
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    examples_seen, global_step = 0, -1
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    # Main training loop
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    for epoch in range(num_epochs):
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        model.train()  # Set model to training mode
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        for input_batch, target_batch in train_loader:
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            optimizer.zero_grad()  # Reset loss gradients from previous epoch
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            loss = calc_loss_batch(input_batch, target_batch, model, device, trainable_token=trainable_token)
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            loss.backward()  # Calculate loss gradients
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            optimizer.step()  # Update model weights using loss gradients
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            examples_seen += input_batch.shape[0]  # New: track examples instead of tokens
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            global_step += 1
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            # Optional evaluation step
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            if global_step % eval_freq == 0:
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                train_loss, val_loss = evaluate_model(
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                    model, train_loader, val_loader, device, eval_iter, trainable_token=trainable_token)
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                train_losses.append(train_loss)
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                val_losses.append(val_loss)
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                print(f"Ep {epoch+1} (Step {global_step:06d}): "
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                      f"Train loss {train_loss:.3f}, Val loss {val_loss:.3f}")
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            if max_steps is not None and global_step > max_steps:
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                break
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        # New: Calculate accuracy after each epoch
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        train_accuracy = calc_accuracy_loader(train_loader, model, device, num_batches=eval_iter, trainable_token=trainable_token)
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        val_accuracy = calc_accuracy_loader(val_loader, model, device, num_batches=eval_iter, trainable_token=trainable_token)
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        print(f"Training accuracy: {train_accuracy*100:.2f}% | ", end="")
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        print(f"Validation accuracy: {val_accuracy*100:.2f}%")
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        train_accs.append(train_accuracy)
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        val_accs.append(val_accuracy)
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        if max_steps is not None and global_step > max_steps:
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            break
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    return train_losses, val_losses, train_accs, val_accs, examples_seen
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if __name__ == "__main__":
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    parser = argparse.ArgumentParser()
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    parser.add_argument(
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        "--model_size",
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        type=str,
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        default="gpt2-small (124M)",
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        help=(
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            "Which GPT model to use. Options: 'gpt2-small (124M)', 'gpt2-medium (355M)',"
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            " 'gpt2-large (774M)', 'gpt2-xl (1558M)'."
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        )
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    )
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    parser.add_argument(
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        "--weights",
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        type=str,
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        default="pretrained",
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        help=(
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            "Whether to use 'pretrained' or 'random' weights."
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        )
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    )
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    parser.add_argument(
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        "--trainable_layers",
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        type=str,
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        default="last_block",
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        help=(
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            "Which layers to train. Options: 'all', 'last_block', 'last_layer'."
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        )
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    )
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    parser.add_argument(
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        "--trainable_token",
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        type=str,
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        default="last",
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        help=(
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            "Which token to train. Options: 'first', 'last'."
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        )
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    )
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    parser.add_argument(
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        "--context_length",
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        type=str,
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        default="256",
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        help=(
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            "The context length of the data inputs."
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            "Options: 'longest_training_example', 'model_context_length' or integer value."
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        )
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    )
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    args = parser.parse_args()
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    if args.trainable_token == "first":
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        args.trainable_token = 0
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    elif args.trainable_token == "last":
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        args.trainable_token = -1
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    else:
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        raise ValueError("Invalid --trainable_token argument")
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    ###############################
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    # Load model
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    ###############################
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    if args.weights == "pretrained":
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        load_weights = True
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    elif args.weights == "random":
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        load_weights = False
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    else:
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        raise ValueError("Invalid --weights argument.")
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    model = instantiate_model(args.model_size, load_weights)
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    for param in model.parameters():
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        param.requires_grad = False
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    if args.model_size == "gpt2-small (124M)":
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        in_features = 768
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    elif args.model_size == "gpt2-medium (355M)":
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        in_features = 1024
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    elif args.model_size == "gpt2-large (774M)":
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        in_features = 1280
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    elif args.model_size == "gpt2-xl (1558M)":
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        in_features = 1600
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    else:
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        raise ValueError("Invalid --model_size argument")
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    torch.manual_seed(123)
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    model.out_head = torch.nn.Linear(in_features=in_features, out_features=2)
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    if args.trainable_layers == "last_layer":
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        pass
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    elif args.trainable_layers == "last_block":
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        for param in model.trf_blocks[-1].parameters():
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            param.requires_grad = True
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        for param in model.final_norm.parameters():
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            param.requires_grad = True
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    elif args.trainable_layers == "all":
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        for param in model.parameters():
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            param.requires_grad = True
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    else:
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        raise ValueError("Invalid --trainable_layers argument.")
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    device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
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    model.to(device)
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    ###############################
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    # Instantiate dataloaders
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    ###############################
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    base_path = Path(".")
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    tokenizer = tiktoken.get_encoding("gpt2")
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    train_dataset = None
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    if args.context_length == "model_context_length":
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        max_length = model.pos_emb.weight.shape[0]
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    elif args.context_length == "longest_training_example":
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        train_dataset = IMDBDataset(base_path / "train.csv", max_length=None, tokenizer=tokenizer)
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        max_length = train_dataset.max_length
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    else:
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        try:
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            max_length = int(args.context_length)
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        except ValueError:
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            raise ValueError("Invalid --context_length argument")
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    if train_dataset is None:
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        train_dataset = IMDBDataset(base_path / "train.csv", max_length=max_length, tokenizer=tokenizer)
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    val_dataset = IMDBDataset(base_path / "validation.csv", max_length=max_length, tokenizer=tokenizer)
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    test_dataset = IMDBDataset(base_path / "test.csv", max_length=max_length, tokenizer=tokenizer)
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    num_workers = 0
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    batch_size = 8
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    train_loader = DataLoader(
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        dataset=train_dataset,
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        batch_size=batch_size,
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        shuffle=True,
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        num_workers=num_workers,
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        drop_last=True,
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    )
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    val_loader = DataLoader(
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        dataset=val_dataset,
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        batch_size=batch_size,
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        num_workers=num_workers,
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        drop_last=False,
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    )
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    test_loader = DataLoader(
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        dataset=test_dataset,
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        batch_size=batch_size,
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        num_workers=num_workers,
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        drop_last=False,
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    )
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    ###############################
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    # Train model
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    ###############################
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    start_time = time.time()
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    torch.manual_seed(123)
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    optimizer = torch.optim.AdamW(model.parameters(), lr=5e-5, weight_decay=0.1)
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    num_epochs = 3
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    train_losses, val_losses, train_accs, val_accs, examples_seen = train_classifier_simple(
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        model, train_loader, val_loader, optimizer, device,
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        num_epochs=num_epochs, eval_freq=50, eval_iter=20,
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        tokenizer=tokenizer, max_steps=None, trainable_token=args.trainable_token
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    )
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    end_time = time.time()
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    execution_time_minutes = (end_time - start_time) / 60
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    print(f"Training completed in {execution_time_minutes:.2f} minutes.")
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    ###############################
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    # Evaluate model
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    ###############################
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    print("\nEvaluating on the full datasets ...\n")
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    train_accuracy = calc_accuracy_loader(train_loader, model, device, trainable_token=args.trainable_token)
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    val_accuracy = calc_accuracy_loader(val_loader, model, device, trainable_token=args.trainable_token)
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    test_accuracy = calc_accuracy_loader(test_loader, model, device, trainable_token=args.trainable_token)
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    print(f"Training accuracy: {train_accuracy*100:.2f}%")
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    print(f"Validation accuracy: {val_accuracy*100:.2f}%")
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    print(f"Test accuracy: {test_accuracy*100:.2f}%")
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