Overview
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Explore a 32-minute research presentation that delves into Multi-Scale Insight (MSI) Agents, an innovative approach to enhance Large Language Models' planning and decision-making capabilities without supervised fine-tuning or reinforcement learning. Learn how MSI-Agents systematically generate and utilize insights at multiple abstraction levels by collecting detailed experiences from past tasks, employing similarity-based selection of success-failure pairs, and creating multi-scale insights across general principles, environment-specific knowledge, and subtask-specific guidance. Discover the practical implementation using hashmap data structures for efficient insight retrieval, the process of insight management through atomic actions, and how the system continuously refines its knowledge base through experiential learning. Follow along with detailed examples, including business management applications, while understanding the robustness of MSI-Agents in domain shifting and their overall methodology as presented in the official pre-print research paper.
Syllabus
Multi-Scale Insight Agents
Core idea of MSI Agents
How to create insights for Agents?
Three levels of complexity for insights
Practical examples to show the inner workings of MSI agents
Multi-Scale Insight generation
Insight selection for specific task
Robustness in Domain Shifting
Overall method explained
Official pre-print
Business Management Example of MSI Agents
Taught by
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