Automated Design of Agentic Systems with Shengran Hu
EPISODE 700
|
SEPTEMBER
3,
2024
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About this Episode
Today, we're joined by Shengran Hu, a PhD student at the University of British Columbia, to discuss Automated Design of Agentic Systems (ADAS), an approach focused on automatically creating agentic system designs. We explore the spectrum of agentic behaviors, the motivation for learning all aspects of agentic system design, the key components of the ADAS approach, and how it uses LLMs to design novel agent architectures in code. We also cover the iterative process of ADAS, its potential to shed light on the behavior of foundation models, the higher-level meta-behaviors that emerge in agentic systems, and how ADAS uncovers novel design patterns through emergent behaviors, particularly in complex tasks like the ARC challenge. Finally, we touch on the practical applications of ADAS and its potential use in system optimization for real-world tasks.
About the Guest
Shengran Hu
University of British Columbia
Resources
- Automated Design of Agentic Systems (ADAS)
- AI-GAs: AI-generating algorithms, an alternate paradigm for producing general artificial intelligence
- Accelerating Multi-Objective Neural Architecture Search by Random-Weight Evaluation
- Multi-objective Neural Architecture Search with Almost No Training
- MetaGPT: Meta Programming for A Multi-Agent Collaborative Framework
- Accelerating Intelligence with AI-Generating Algorithms with Jeff Clune - #602

