Hasty Briefsbeta

Detailed balance in large language model-driven agents

4 days ago
  • #Generative Dynamics
  • #AI Theory
  • #Large Language Models
  • LLM-driven agents are emerging as a powerful paradigm for solving complex problems.
  • A theoretical framework to understand their macroscopic dynamics is currently lacking.
  • The study proposes a method based on the least action principle to estimate generative directionality in LLMs.
  • Experimental measurements reveal a detailed balance in LLM-generated state transitions.
  • LLM generation may involve learning underlying potential functions rather than rule sets.
  • This discovery represents the first macroscopic physical law in LLM generative dynamics.
  • The work aims to elevate AI agent studies from engineering practices to a quantifiable science.