The Gradient: Perspectives on AI

Subbarao Kambhampati: Planning, Reasoning, and Interpretability in the Age of LLMs

127 snips
Feb 8, 2024
Subbarao Kambhampati, Professor of computer science at Arizona State University, discusses planning, reasoning, and interpretability in the age of LLMs. Topics include explanation in AI, thinking and language, scalability in planning, computational complexity in LLMs, and concerns about misinformation generated by LLMs.
Ask episode
AI Snips
Chapters
Transcript
Episode notes
INSIGHT

Thinking vs. Language

  • While language feels central to thought, much subconscious activity occurs without it.
  • Fluency in skills like music can bypass explicit language-based thought.
INSIGHT

Tacit vs. Explicit Knowledge

  • Explicit knowledge (explainable actions) forms the basis of human civilization, unlike tacit knowledge (unexplainable actions).
  • LLMs offer a way to bridge this gap by teasing out approximate symbolic models from tacit knowledge domains.
INSIGHT

Planning and Scalability

  • Planning involves sequential decision-making, differing in abstraction levels from pixels to symbolic representations.
  • Classical planning uses declarative models and faces scalability challenges with increasing problem complexity.
Get the Snipd Podcast app to discover more snips from this episode
Get the app