skills/domains/ai-ml/llm-from-scratch-guide/SKILL.md
Build a ChatGPT-like LLM from scratch using PyTorch step by step
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LLMs-from-scratch is a comprehensive educational repository with over 87,000 stars on GitHub that teaches you how to build a ChatGPT-like large language model from the ground up using PyTorch. Created by Sebastian Raschka, a machine learning researcher and author, the project provides a complete pipeline covering data preparation, tokenization, attention mechanisms, pretraining, and instruction finetuning.
Unlike tutorials that treat LLMs as black boxes, this project demystifies every component by walking through the full implementation. Each chapter corresponds to a Jupyter notebook with clear explanations, diagrams, and runnable code. The repository accompanies the book "Build a Large Language Model (From Scratch)" and serves as a standalone learning resource for researchers and engineers who want deep understanding of transformer-based language models.
The project is particularly valuable for academic researchers who need to understand the internals of LLMs for their own research, whether that involves modifying architectures, running ablation studies, or developing domain-specific language models for scientific applications.
Clone the repository and set up a Python environment with the required dependencies:
git clone https://github.com/rasbt/LLMs-from-scratch.git
cd LLMs-from-scratch
# Create a virtual environment
python -m venv llm-env
source llm-env/bin/activate
# Install dependencies
pip install -r requirements.txt
The project requires Python 3.10+ and PyTorch 2.0+. For GPU-accelerated training, ensure you have CUDA installed. The notebooks can also run on CPU for smaller model configurations, though training times will be significantly longer.
Key dependencies include:
The project is organized into sequential chapters that build on each other:
Covers the conceptual foundations of LLMs, including the transformer architecture, the difference between encoder and decoder models, and how pretraining and finetuning work at a high level.
Implements text tokenization from scratch, including byte-pair encoding (BPE). You build a custom tokenizer and learn how text is converted to numerical representations:
# Tokenization example from the project
import tiktoken
tokenizer = tiktoken.get_encoding("gpt2")
text = "Large language models are fascinating."
token_ids = tokenizer.encode(text)
decoded = tokenizer.decode(token_ids)
Implements self-attention, multi-head attention, and causal (masked) attention from scratch. This is the core computational primitive of transformers:
# Simplified multi-head attention
class MultiHeadAttention(nn.Module):
def __init__(self, d_in, d_out, context_length, num_heads, dropout=0.0):
super().__init__()
self.W_query = nn.Linear(d_in, d_out, bias=False)
self.W_key = nn.Linear(d_in, d_out, bias=False)
self.W_value = nn.Linear(d_in, d_out, bias=False)
self.out_proj = nn.Linear(d_out, d_out)
self.num_heads = num_heads
self.head_dim = d_out // num_heads
Assembles the full GPT architecture using the attention mechanism, layer normalization, feed-forward networks, and positional embeddings.
Trains the GPT model on a text corpus using next-token prediction. Covers the training loop, loss computation, learning rate scheduling, and gradient clipping.
Adapts the pretrained model for downstream classification tasks, demonstrating how to add a classification head and finetune on labeled data.
Converts the pretrained model into an instruction-following assistant using supervised finetuning on instruction-response pairs, similar to how ChatGPT is trained.
This resource is invaluable for several research scenarios:
For researchers working with limited compute, the project includes configurations for small models (124M parameters) that can be trained on a single GPU in reasonable time, making it practical for experimentation and prototyping.
Combine this project with other tools in your research stack:
The bonus materials in the repository cover additional topics like DPO (Direct Preference Optimization), loading pretrained weights from Hugging Face, and converting models between different formats.
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