Did a very different format with Reiner Pope – a blackboard lecture where he walks through how frontier LLMs are trained and served. It's shocking how
much you can deduce about what the labs are doing from a handful of equations, public API prices, and some chalk. It’s a bit technical, but I
encourage you to hang in there - it’s really worth it.
There are less than a handful of people who understand the full stack of AI, from chip design to model architecture, as well as Reiner. It was a real delight to learn from him.
Reiner is CEO of MatX, a new chip startup (full disclosure - I’m an angel investor). He was previously at Google, where he worked on software efficiency, compilers, and TPU architecture.
Wrote up some flashcards and practice problems to help myself retain what Reiner taught. Hope it's helpful to you too! https://reiner-flashcards.vercel.app/
Download markdown of transcript here to chat with an LLM: https://gist.github.com/dwarkeshsp/79100f0fdeed69d76241903bb0604dbe
0:00:00 – How batch size affects token cost and speed 0:31:59 – How MoE models are laid out across GPU racks 0:47:02 – How pipeline parallelism
spreads model layers across racks 1:03:27 – Why Ilya said, “As we now know, pipelining is not wise.” 1:18:49 – Because of RL, models may be 100x
over-trained beyond Chinchilla-optimal 1:32:52 – Deducing long context memory costs from API pricing 2:03:52 – Convergent evolution between neural
nets and cryptography