# Copyright (c) Sebastian Raschka under Apache License 2.0 (see LICENSE.txt). # Source for "Build a Large Language Model From Scratch" # - https://www.manning.com/books/build-a-large-language-model-from-scratch # Code: https://github.com/rasbt/LLMs-from-scratch from .ch04 import generate_text_simple import json import os import urllib.request import numpy as np import matplotlib.pyplot as plt from matplotlib.ticker import MaxNLocator import torch from tqdm import tqdm def generate(model, idx, max_new_tokens, context_size, temperature=0.0, top_k=None, eos_id=None): # For-loop is the same as before: Get logits, and only focus on last time step for _ in range(max_new_tokens): idx_cond = idx[:, -context_size:] with torch.no_grad(): logits = model(idx_cond) logits = logits[:, -1, :] # New: Filter logits with top_k sampling if top_k is not None: # Keep only top_k values top_logits, _ = torch.topk(logits, top_k) min_val = top_logits[:, -1] logits = torch.where(logits < min_val, torch.tensor(float('-inf')).to(logits.device), logits) # New: Apply temperature scaling if temperature > 0.0: logits = logits / temperature # Apply softmax to get probabilities probs = torch.softmax(logits, dim=-1) # (batch_size, context_len) # Sample from the distribution idx_next = torch.multinomial(probs, num_samples=1) # (batch_size, 1) # Otherwise same as before: get idx of the vocab entry with the highest logits value else: idx_next = torch.argmax(logits, dim=-1, keepdim=True) # (batch_size, 1) if idx_next == eos_id: # Stop generating early if end-of-sequence token is encountered and eos_id is specified break # Same as before: append sampled index to the running sequence idx = torch.cat((idx, idx_next), dim=1) # (batch_size, num_tokens+1) return idx def train_model_simple(model, train_loader, val_loader, optimizer, device, num_epochs, eval_freq, eval_iter, start_context, tokenizer): # Initialize lists to track losses and tokens seen train_losses, val_losses, track_tokens_seen = [], [], [] tokens_seen, global_step = 0, -1 # Main training loop for epoch in range(num_epochs): model.train() # Set model to training mode for input_batch, target_batch in train_loader: optimizer.zero_grad() # Reset loss gradients from previous batch iteration loss = calc_loss_batch(input_batch, target_batch, model, device) loss.backward() # Calculate loss gradients optimizer.step() # Update model weights using loss gradients tokens_seen += input_batch.numel() global_step += 1 # Optional evaluation step if global_step % eval_freq == 0: train_loss, val_loss = evaluate_model( model, train_loader, val_loader, device, eval_iter) train_losses.append(train_loss) val_losses.append(val_loss) track_tokens_seen.append(tokens_seen) print(f"Ep {epoch+1} (Step {global_step:06d}): " f"Train loss {train_loss:.3f}, Val loss {val_loss:.3f}") # Print a sample text after each epoch generate_and_print_sample( model, tokenizer, device, start_context ) return train_losses, val_losses, track_tokens_seen def evaluate_model(model, train_loader, val_loader, device, eval_iter): model.eval() with torch.no_grad(): train_loss = calc_loss_loader(train_loader, model, device, num_batches=eval_iter) val_loss = calc_loss_loader(val_loader, model, device, num_batches=eval_iter) model.train() return train_loss, val_loss def generate_and_print_sample(model, tokenizer, device, start_context): model.eval() context_size = model.pos_emb.weight.shape[0] encoded = text_to_token_ids(start_context, tokenizer).to(device) with torch.no_grad(): token_ids = generate_text_simple( model=model, idx=encoded, max_new_tokens=50, context_size=context_size ) decoded_text = token_ids_to_text(token_ids, tokenizer) print(decoded_text.replace("\n", " ")) # Compact print format model.train() def assign(left, right): if left.shape != right.shape: raise ValueError(f"Shape mismatch. Left: {left.shape}, Right: {right.shape}") return torch.nn.Parameter(torch.tensor(right)) def load_weights_into_gpt(gpt, params): gpt.pos_emb.weight = assign(gpt.pos_emb.weight, params['wpe']) gpt.tok_emb.weight = assign(gpt.tok_emb.weight, params['wte']) for b in range(len(params["blocks"])): q_w, k_w, v_w = np.split( (params["blocks"][b]["attn"]["c_attn"])["w"], 3, axis=-1) gpt.trf_blocks[b].att.W_query.weight = assign( gpt.trf_blocks[b].att.W_query.weight, q_w.T) gpt.trf_blocks[b].att.W_key.weight = assign( gpt.trf_blocks[b].att.W_key.weight, k_w.T) gpt.trf_blocks[b].att.W_value.weight = assign( gpt.trf_blocks[b].att.W_value.weight, v_w.T) q_b, k_b, v_b = np.split( (params["blocks"][b]["attn"]["c_attn"])["b"], 3, axis=-1) gpt.trf_blocks[b].att.W_query.bias = assign( gpt.trf_blocks[b].att.W_query.bias, q_b) gpt.trf_blocks[b].att.W_key.bias = assign( gpt.trf_blocks[b].att.W_key.bias, k_b) gpt.trf_blocks[b].att.W_value.bias = assign( gpt.trf_blocks[b].att.W_value.bias, v_b) gpt.trf_blocks[b].att.out_proj.weight = assign( gpt.trf_blocks[b].att.out_proj.weight, params["blocks"][b]["attn"]["c_proj"]["w"].T) gpt.trf_blocks[b].att.out_proj.bias = assign( gpt.trf_blocks[b].att.out_proj.bias, params["blocks"][b]["attn"]["c_proj"]["b"]) gpt.trf_blocks[b].ff.layers[0].weight = assign( gpt.trf_blocks[b].ff.layers[0].weight, params["blocks"][b]["mlp"]["c_fc"]["w"].T) gpt.trf_blocks[b].ff.layers[0].bias = assign( gpt.trf_blocks[b].ff.layers[0].bias, params["blocks"][b]["mlp"]["c_fc"]["b"]) gpt.trf_blocks[b].ff.layers[2].weight = assign( gpt.trf_blocks[b].ff.layers[2].weight, params["blocks"][b]["mlp"]["c_proj"]["w"].T) gpt.trf_blocks[b].ff.layers[2].bias = assign( gpt.trf_blocks[b].ff.layers[2].bias, params["blocks"][b]["mlp"]["c_proj"]["b"]) gpt.trf_blocks[b].norm1.scale = assign( gpt.trf_blocks[b].norm1.scale, params["blocks"][b]["ln_1"]["g"]) gpt.trf_blocks[b].norm1.shift = assign( gpt.trf_blocks[b].norm1.shift, params["blocks"][b]["ln_1"]["b"]) gpt.trf_blocks[b].norm2.scale = assign( gpt.trf_blocks[b].norm2.scale, params["blocks"][b]["ln_2"]["g"]) gpt.trf_blocks[b].norm2.shift = assign( gpt.trf_blocks[b].norm2.shift, params["blocks"][b]["ln_2"]["b"]) gpt.final_norm.scale = assign(gpt.final_norm.scale, params["g"]) gpt.final_norm.shift = assign(gpt.final_norm.shift, params["b"]) gpt.out_head.weight = assign(gpt.out_head.weight, params["wte"]) def text_to_token_ids(text, tokenizer): encoded = tokenizer.encode(text, allowed_special={"<|endoftext|>"}) encoded_tensor = torch.tensor(encoded).unsqueeze(0) # add batch dimension return encoded_tensor def token_ids_to_text(token_ids, tokenizer): flat = token_ids.squeeze(0) # remove batch dimension return tokenizer.decode(flat.tolist()) def calc_loss_batch(input_batch, target_batch, model, device): input_batch, target_batch = input_batch.to(device), target_batch.to(device) logits = model(input_batch) loss = torch.nn.functional.cross_entropy(logits.flatten(0, 1), target_batch.flatten()) return loss def calc_loss_loader(data_loader, model, device, num_batches=None): total_loss = 0. if len(data_loader) == 0: return float("nan") elif num_batches is None: num_batches = len(data_loader) else: # Reduce the number of batches to match the total number of batches in the data loader # if num_batches exceeds the number of batches in the data loader num_batches = min(num_batches, len(data_loader)) for i, (input_batch, target_batch) in enumerate(data_loader): if i < num_batches: loss = calc_loss_batch(input_batch, target_batch, model, device) total_loss += loss.item() else: break return total_loss / num_batches def plot_losses(epochs_seen, tokens_seen, train_losses, val_losses): fig, ax1 = plt.subplots(figsize=(5, 3)) # Plot training and validation loss against epochs ax1.plot(epochs_seen, train_losses, label="Training loss") ax1.plot(epochs_seen, val_losses, linestyle="-.", label="Validation loss") ax1.set_xlabel("Epochs") ax1.set_ylabel("Loss") ax1.legend(loc="upper right") ax1.xaxis.set_major_locator(MaxNLocator(integer=True)) # only show integer labels on x-axis # Create a second x-axis for tokens seen ax2 = ax1.twiny() # Create a second x-axis that shares the same y-axis ax2.plot(tokens_seen, train_losses, alpha=0) # Invisible plot for aligning ticks ax2.set_xlabel("Tokens seen") fig.tight_layout() # Adjust layout to make room plt.savefig("loss-plot.pdf") plt.show() def download_and_load_gpt2(model_size, models_dir): import tensorflow as tf # Validate model size allowed_sizes = ("124M", "355M", "774M", "1558M") if model_size not in allowed_sizes: raise ValueError(f"Model size not in {allowed_sizes}") # Define paths model_dir = os.path.join(models_dir, model_size) base_url = "https://openaipublic.blob.core.windows.net/gpt-2/models" backup_base_url = "https://f001.backblazeb2.com/file/LLMs-from-scratch/gpt2" filenames = [ "checkpoint", "encoder.json", "hparams.json", "model.ckpt.data-00000-of-00001", "model.ckpt.index", "model.ckpt.meta", "vocab.bpe" ] # Download files os.makedirs(model_dir, exist_ok=True) for filename in filenames: file_url = os.path.join(base_url, model_size, filename) backup_url = os.path.join(backup_base_url, model_size, filename) file_path = os.path.join(model_dir, filename) download_file(file_url, file_path, backup_url) # Load settings and params tf_ckpt_path = tf.train.latest_checkpoint(model_dir) settings = json.load(open(os.path.join(model_dir, "hparams.json"), "r", encoding="utf-8")) params = load_gpt2_params_from_tf_ckpt(tf_ckpt_path, settings) return settings, params def download_file(url, destination, backup_url=None): def _attempt_download(download_url): with urllib.request.urlopen(download_url) as response: # Get the total file size from headers, defaulting to 0 if not present file_size = int(response.headers.get("Content-Length", 0)) # Check if file exists and has the same size if os.path.exists(destination): file_size_local = os.path.getsize(destination) if file_size == file_size_local: print(f"File already exists and is up-to-date: {destination}") return True # Indicate success without re-downloading block_size = 1024 # 1 Kilobyte # Initialize the progress bar with total file size progress_bar_description = os.path.basename(download_url) with tqdm(total=file_size, unit="iB", unit_scale=True, desc=progress_bar_description) as progress_bar: with open(destination, "wb") as file: while True: chunk = response.read(block_size) if not chunk: break file.write(chunk) progress_bar.update(len(chunk)) return True try: if _attempt_download(url): return except (urllib.error.HTTPError, urllib.error.URLError): if backup_url is not None: print(f"Primary URL ({url}) failed. Attempting backup URL: {backup_url}") try: if _attempt_download(backup_url): return except urllib.error.HTTPError: pass # If we reach here, both attempts have failed error_message = ( f"Failed to download from both primary URL ({url})" f"{' and backup URL (' + backup_url + ')' if backup_url else ''}." "\nCheck your internet connection or the file availability.\n" "For help, visit: https://github.com/rasbt/LLMs-from-scratch/discussions/273" ) print(error_message) except Exception as e: print(f"An unexpected error occurred: {e}") def load_gpt2_params_from_tf_ckpt(ckpt_path, settings): import tensorflow as tf # Initialize parameters dictionary with empty blocks for each layer params = {"blocks": [{} for _ in range(settings["n_layer"])]} # Iterate over each variable in the checkpoint for name, _ in tf.train.list_variables(ckpt_path): # Load the variable and remove singleton dimensions variable_array = np.squeeze(tf.train.load_variable(ckpt_path, name)) # Process the variable name to extract relevant parts variable_name_parts = name.split("/")[1:] # Skip the 'model/' prefix # Identify the target dictionary for the variable target_dict = params if variable_name_parts[0].startswith("h"): layer_number = int(variable_name_parts[0][1:]) target_dict = params["blocks"][layer_number] # Recursively access or create nested dictionaries for key in variable_name_parts[1:-1]: target_dict = target_dict.setdefault(key, {}) # Assign the variable array to the last key last_key = variable_name_parts[-1] target_dict[last_key] = variable_array return params