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Last active November 15, 2024 12:06
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Normcore LLM Reads

Anti-hype LLM reading list

Goals: Add links that are reasonable and good explanations of how stuff works. No hype and no vendor content if possible. Practical first-hand accounts of models in prod eagerly sought.

Foundational Concepts

Screenshot 2023-12-18 at 10 40 27 PM

Pre-Transformer Models

Screenshot 2023-12-18 at 8 25 42 PM

Building Blocks

Foundational Deep Learning Papers (in semi-chronological order)

The Transformer Architecture

Screenshot 2023-12-18 at 8 37 44 PM

Attention

GPT

Screenshot 2023-12-18 at 8 37 44 PM

Significant OSS Models

LLMs in 2023

Screenshot 2023-12-18 at 10 07 57 PM

Training Data

Pre-Training

RLHF and DPO

Screenshot 2023-12-18 at 10 07 57 PM

Fine-Tuning and Compression

Small and Local LLMs

Deployment and Production

LLM Inference and K-V Cache

Prompt Engineering and RAG

GPUs

Screenshot 2023-12-18 at 10 02 48 PM

Evaluation

Eval Frameworks

UX

What's Next?

Thanks to everyone who added suggestions on Twitter, Mastodon, and Bluesky.

@lcrmorin
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I keep coming back to this list. However I feel like it miss a good discussion about current stuff not working. I keep failling to implement working stuff, despite lenghty theoretical works, and when I scratch the veneer I keep getting the same answer: "technology is not ready yet".

@lcrmorin
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lcrmorin commented Dec 29, 2023

@zaunere
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zaunere commented Sep 22, 2024

Awesome list (and comments), but "graph" is missing

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