@karpathy: Fireside chat at Sequoia Ascent 2026 from a ~week ago. Some highlights: The first theme I tried to push on is that LLMs…
Summary
Summary of Andrej Karpathy's talks at Sequoia Ascent 2026, highlighting three key themes: LLMs enabling new horizons beyond speed improvements (e.g., native image processing, .md scripts, unstructured knowledge bases), the economics behind model 'jaggedness' in capabilities, and the emergence of an agent-native economy.
Similar Articles
@karpathy: Personal update: I've joined Anthropic. I think the next few years at the frontier of LLMs will be especially formative…
Andrej Karpathy announced he has joined Anthropic to work on frontier LLM research and development, expressing excitement about the next few years at the forefront of large language models.
@runes_leo: At Sequoia Ascent on 4/30, Karpathy compressed this year’s most valuable explanation of AI into three core arguments. You’ll see AI differently after reading this. 1. AI Isn’t Just “Faster,” It’s a New Paradigm For the past two years, the narrative has been that AI speeds things up. Karpathy says this is a misunderstanding...
This article summarizes Karpathy’s core points at the Sequoia Ascent conference, highlighting that AI is a paradigm shift restructuring workflows rather than merely an acceleration tool. It introduces the concept of a "jagged edge" for model capabilities based on verifiability and economic viability, and predicts that future software will evolve into an agent-native architecture where LLMs serve as the logic layer and traditional code functions as sensors and actuators.
Andrej Karpathy: From Vibe Coding to Agentic Engineering
Andrej Karpathy discusses the December 2024 shift where LLMs reached new reliability, coining 'vibe coding' for floor-raising and 'agentic engineering' for ceiling-raising, and argues that verifiability is key to AI's jagged capabilities.
@AnatoliKopadze: Karpathy just said the people who don't use LLMs are already losing. he spent 4 minutes explaining why smart people are…
The article discusses Andrej Karpathy's argument that the real advantage in AI lies in effective utilization rather than mere access, highlighting a skill gap where most users fail to leverage LLMs beyond basic tasks.
@rohanpaul_ai: Andrej Karpathy had already talked about this possibility 1 month back, that he might join one of the big AI labs and w…
Andrej Karpathy announces he has joined Anthropic, citing the importance of being at a frontier lab to stay at the cutting edge of LLM development.