Back to articles
AIOpenAI News

Evolution through large models

OpenAI June 17, 2022 Publication Evolution through large models Read paper (opens in a new window) Loading… Share Abstract This paper pursues the insight that large language models (LLMs) trained to genera...

The RSS feed only provided an excerpt. FlowMarket recovered the public content available from the original page without bypassing restricted content.

June 17, 2022

Evolution through large models

Evolution Through Large Models

Abstract

This paper pursues the insight that large language models (LLMs) trained to generate code can vastly improve the effectiveness of mutation operators applied to programs in genetic programming (GP). Because such LLMs benefit from training data that includes sequential changes and modifications, they can approximate likely changes that humans would make. To highlight the breadth of implications of such evolution through large models (ELM), in the main experiment ELM combined with MAP-Elites generates hundreds of thousands of functional examples of Python programs that output working ambulating robots in the Sodarace domain, which the original LLM had never seen in pre-training. These examples then help to bootstrap training a new conditional language model that can output the right walker for a particular terrain. The ability to bootstrap new models that can output appropriate artifacts for a given context in a domain where zero training data was previously available carries implications for open-endedness, deep learning, and reinforcement learning. These implications are explored here in depth in the hope of inspiring new directions of research now opened up by ELM.

  • GPT
  • Language
  • Learning Paradigms
  • Exploration & Games
  • Multi-agent
  • Simulated Environments
  • Robotics

Authors

Related articles

Three farmers using a mobile app outside

Jan 12, 2024

Wix cover image

May 29, 2025

WHOOP Coach HIIT

Jan 4, 2024

Need an n8n workflow or help installing it?

After the briefing, move to execution: find an n8n template or a creator who can adapt it to your tools.

Source

OpenAI News - openai.com

View original publication