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Andrej Karpathy(@karpathy)

Fireside chat at Sequoia Ascent 2026 from a ~week ago. Some highlights: The first theme I tried to ...

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Fireside chat at Sequoia Ascent 2026 from a ~week ago. Some highlights:

The first theme I tried to ...
AI 深度提炼
  • LLMs开启新应用领域,如menugen无需传统编码即可生成输出。
  • 通过.md技能安装代替脚本,利用LLM智能适应安装环境。
  • LLM知识库处理非结构化数据,实现之前不可能的功能。

结构提纲

AI 替你读一遍后整理出的核心层级。

  1. Karpathy在Sequoia Ascent 2026活动中的炉边谈话亮点回顾。

  2. 讨论LLMs如何超越仅加速现有技术,提供三个新视角:menugen、.md技能安装、知识库处理非结构化数据。

  3. 解释LLMs表现不一致性(jaggedness)的原因,涉及领域可验证性与经济因素。

  4. 探讨产品服务分解、信息对LLMs的最大化透明度,及agentic工程相关的技能和招聘趋势。

思维导图

用一张图看清主题之间的关系。

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查看大纲文本(无障碍 / 无 JS 友好)
  • Karpathy炉边谈话亮点
    • LLMs新领域
      • menugen
      • .md技能安装
      • 知识库处理
    • LLMs能力模式
      • 领域可验证性
      • 经济因素影响
    • 代理原生经济
      • 产品服务分解
      • 信息透明度
      • agentic工程

金句 / Highlights

值得收藏与分享的关键句。

#LLMs#人工智能#Fireside Chat#Sequoia Ascent
打开原文

The first theme I tried to push on is that LLMs are about a lot more than just speeding up what existed before (e.g. coding). Three examples of new horizons:

1. menugen: an app that can be fully engulfed by" / X

Post

Conversation

Fireside chat at Sequoia Ascent 2026 from a ~week ago. Some highlights: The first theme I tried to push on is that LLMs are about a lot more than just speeding up what existed before (e.g. coding). Three examples of new horizons: 1. menugen: an app that can be fully engulfed by LLMs, with no classical code needed: input an image, output an image and an LLM can natively do the thing. 2. install .md skills instead of install .sh scripts. Why create a complex Software 1.0 bash script for e.g. installing a piece of software if you can write the installation out in words and say "just show this to your LLM". The LLM is an advanced interpreter of English and can intelligently target installation to your setup, debug everything inline, etc. 3. LLM knowledge bases as an example of something that was *impossible* with classical code because it's computation over unstructured data (knowledge) from arbitrary sources and in arbitrary formats, including simply text articles etc. I pushed on these because in every new paradigm change, the obvious things are always in the realm of speeding up or somehow improving what existed, but here we have examples of functionality that either suddenly perhaps shouldn't even exist (1,2), or was fundamentally not possible before (3). The second (ongoing) theme is trying to explain the pattern of jaggedness in LLMs. How it can be true that a single artifact will simultaneously 1) coherently refactor a 100,000-line code base *and* 2) tell you to walk to the car wash to wash your car. I previously wrote about the source of this as having to do with verifiability of a domain, here I expand on this as having to also do with economics because revenue/TAM dictates what the frontier labs choose to package into training data distributions during RL. You're either in the data distribution (on the rails of the RL circuits) and flying or you're off-roading in the jungle with a machete, in relative terms. Still not 100% satisfied with this, but it's an ongoing struggle to build an accurate model of LLM capabilities if you wish to practically take advantage of their power while avoiding their pitfalls, which brings me to... Last theme is the agent-native economy. The decomposition of products and services into sensors, actuators and logic (split up across all of 1.0/2.0/3.0 computing paradigms), how we can make information maximally legible to LLMs, some words on the quickly emerging agentic engineering and its skill set, related hiring practices, etc., possibly even hints/dreams of fully neural computing handling the vast majority of computation with some help from (classical) CPU coprocessors.

Quote

Stephanie Zhan

@stephzhan

Apr 29

@karpathy and I are back! At @sequoia AI Ascent 2026. And a lot has changed. Last year, he coined “vibe coding”. This year, he’s never felt more behind as a programmer. The big shift: vibe coding raised the floor. Agentic engineering raises the ceiling. We talk about what it

0:00 / 29:49

29:48

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