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Research#AI Development📝 BlogAnalyzed: Jan 3, 2026 01:46

Jeff Clune: Agent AI Needs Darwin

Published:Jan 4, 2025 02:43
1 min read
ML Street Talk Pod

Analysis

The article discusses Jeff Clune's work on open-ended evolutionary algorithms for AI, drawing inspiration from nature. Clune aims to create "Darwin Complete" search spaces, enabling AI agents to continuously develop new skills and explore new domains. A key focus is "interestingness," using language models to gauge novelty and avoid the pitfalls of narrowly defined metrics. The article highlights the potential for unending innovation through this approach, emphasizing the importance of genuine originality in AI development. The article also mentions the use of large language models and reinforcement learning.
Reference

Rather than rely on narrowly defined metrics—which often fail due to Goodhart’s Law—Clune employs language models to serve as proxies for human judgment.

Research#AGI📝 BlogAnalyzed: Dec 29, 2025 07:39

Accelerating Intelligence with AI-Generating Algorithms with Jeff Clune - #602

Published:Dec 5, 2022 19:16
1 min read
Practical AI

Analysis

This article summarizes a podcast episode from Practical AI featuring Jeff Clune, a computer science professor. The core discussion revolves around the potential of AI-generating algorithms to achieve artificial general intelligence (AGI). Clune outlines his approach, which centers on meta-learning architectures, meta-learning algorithms, and auto-generating learning environments. The conversation also touches upon the safety concerns associated with these advanced learning algorithms and explores future research directions. The episode provides insights into a specific research path towards AGI, highlighting key components and challenges.
Reference

Jeff Clune discusses the broad ambitious goal of the AI field, artificial general intelligence, where we are on the path to achieving it, and his opinion on what we should be doing to get there, specifically, focusing on AI generating algorithms.