ledesma-ivan/How-Transformer-LLMs-Work
Understand the architecture behind modern Large Language Models. This project explores how transformer-based models process language, covering tokenization, embeddings, self-attention, transformer blocks, and recent attention optimizations used in real-world LLM implementations.
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Mar 12, 2026
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