MIT 6.S191 Lab 3 teaches you how to fine-tune large language models like Gemma 2B, structure prompts, and evaluate outputs using tools like Opik and LFM-40B.
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Jun 17, 2025 - Jupyter Notebook
MIT 6.S191 Lab 3 teaches you how to fine-tune large language models like Gemma 2B, structure prompts, and evaluate outputs using tools like Opik and LFM-40B.
Build and train neural networks and CNNs for MNIST digit classification using PyTorch and TensorFlow
A curated collection of my optional machine learning projects — covering generative models, NLP, computer vision, and lab exercises. Each repository includes its own README with code and explanations.
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