Miscellaneous


The Dangerous Illusion of AI Coding? - Jeremy Howard

Mar 3, 2026

Dive into the realities of AI-assisted coding, the origins of modern fine-tuning, and the cognitive science behind machine learning with fast.ai founder Jeremy Howard. In this episode, we unpack why AI might be turning software engineering into a slot machine and how to maintain true technical intuition in the age of large language models.

Jeremy Howard is a renowned data scientist, researcher, entrepreneur, and educator. As the co-founder of fast.ai, former President of Kaggle, and the creator of ULMFiT, Jeremy has spent decades democratizing deep learning. His pioneering work laid the foundation for modern transfer learning and the pre-training and fine-tuning paradigm that powers today's language models.Key Topics and Main Insights Discussed:
  • The Origins of ULMFiT and Fine-Tuning
  • The Vibe Coding Illusion and Software Engineering
  • Cognitive Science, Friction, and Learning
  • The Future of Developers
TIMESTAMPS:
00:00:00 Introduction & GTC Sponsor
00:04:30 ULMFiT & The Birth of Fine-Tuning
00:12:00 Intuition & The Mechanics of Learning
00:18:30 Abstraction Hierarchies & AI Creativity
00:23:00 Claude Code & The Interpolation Illusion
00:27:30 Coding vs. Software Engineering
00:30:00 Cosplaying Intelligence: Dennett vs. Searle
00:36:30 Automation, Radiology & Desirable Difficulty
00:42:30 Organizational Knowledge & The Slope
00:48:00 Vibe Coding as a Slot Machine
00:54:00 The Erosion of Control in Software
01:01:00 Interactive Programming & REPL Environments
01:05:00 The Notebook Debate & Exploratory Science
01:17:30 AI Existential Risk & Power Centralization
01:24:20 Current Risks, Privacy & Enfeeblement
 

The End of Coding: Andrej Karpathy on Agents, AutoResearch, and the Loopy Era of AI

Mar 20, 2026

What happens when AI agents can design experiments, collect data, and improve — without a human in the loop? Andrej Karpathy joins Sarah Guo on the state of models, the future of engineering and education, thinking about impact on jobs, and his project AutoResearch: where agents close the loop on a piece of AI research (experimentation, training, and optimization, autonomously).

00:00 Andrej Karpathy Introduction
02:55 What Capability Limits Remain?
06:15 What Mastery of Coding Agents Looks Like
11:16 Second Order Effects of Natural Language Coding
15:51 Why AutoResearch
22:45 Relevant Skills in the AI Era
28:25 Model Speciation
32:30 Building More Collaboration Surfaces for Humans and AI
37:28 Analysis of Jobs Market Data
48:25 Open vs. Closed Source Models
53:51 Autonomous Robotics
1:00:59 MicroGPT and Agentic Education
1:05:40 Conclusion
 
Back
Top