Deep Dive into LLMs like ChatGPT

  • 2025.02.06
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Deep Dive into LLMs like ChatGPT

This is a general audience deep dive into the Large Language Model (LLM) AI technology that powers ChatGPT and related products. It is covers the full training stack of how the models are developed, along with mental models of how to think about their “psychology”, and how to get the best use them in practical applications. I have one “Intro to LLMs” video already from ~year ago, but that is just a re-recording of a random talk, so I wanted to loop around and do a lot more comprehensive version.

Instructor
Andrej was a founding member at OpenAI (2015) and then Sr. Director of AI at Tesla (2017-2022), and is now a founder at Eureka Labs, which is building an AI-native school. His goal in this video is to raise knowledge and understanding of the state of the art in AI, and empower people to effectively use the latest and greatest in their work.
Find more at https://karpathy.ai/ and https://x.com/karpathy

Chapters
00:00:00 introduction
00:01:00 pretraining data (internet)
00:07:47 tokenization
00:14:27 neural network I/O
00:20:11 neural network internals
00:26:01 inference
00:31:09 GPT-2: training and inference
00:42:52 Llama 3.1 base model inference
00:59:23 pretraining to post-training
01:01:06 post-training data (conversations)
01:20:32 hallucinations, tool use, knowledge/working memory
01:41:46 knowledge of self
01:46:56 models need tokens to think
02:01:11 tokenization revisited: models struggle with spelling
02:04:53 jagged intelligence
02:07:28 supervised finetuning to reinforcement learning
02:14:42 reinforcement learning
02:27:47 DeepSeek-R1
02:42:07 AlphaGo
02:48:26 reinforcement learning from human feedback (RLHF)
03:09:39 preview of things to come
03:15:15 keeping track of LLMs
03:18:34 where to find LLMs
03:21:46 grand summary

Links
– ChatGPT https://chatgpt.com/
– FineWeb (pretraining dataset): https://huggingface.co/spaces/HuggingFaceFW/blogpost-fineweb-v1
– Tiktokenizer: https://tiktokenizer.vercel.app/
– Transformer Neural Net 3D visualizer: https://bbycroft.net/llm
– llm.c Let’s Reproduce GPT-2 https://github.com/karpathy/llm.c/discussions/677
– Llama 3 paper from Meta: https://arxiv.org/abs/2407.21783
– Hyperbolic, for inference of base model: https://app.hyperbolic.xyz/
– InstructGPT paper on SFT: https://arxiv.org/abs/2203.02155
– HuggingFace inference playground: https://huggingface.co/spaces/huggingface/inference-playground
– DeepSeek-R1 paper: https://arxiv.org/abs/2501.12948
– TogetherAI Playground for open model inference: https://api.together.xyz/playground
– AlphaGo paper (PDF): https://discovery.ucl.ac.uk/id/eprint/10045895/1/agz_unformatted_nature.pdf
– AlphaGo Move 37 video: https://www.youtube.com/watch?v=HT-UZkiOLv8
– LM Arena for model rankings: https://lmarena.ai/
– AI News Newsletter: https://buttondown.com/ainews
– LMStudio for local inference https://lmstudio.ai/

– The visualization UI I was using in the video: https://excalidraw.com/
– The specific file of Excalidraw we built up: https://drive.google.com/file/d/1EZh5hNDzxMMy05uLhVryk061QYQGTxiN/view?usp=sharing
– Discord channel for Eureka Labs and this video: https://discord.gg/3zy8kqD9Cp

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