Unlocking the Wisdom of Large Language Models: An Introduction to The Path to Artificial General Intelligence
- URL: http://arxiv.org/abs/2409.01007v3
- Date: Tue, 15 Apr 2025 05:21:22 GMT
- Title: Unlocking the Wisdom of Large Language Models: An Introduction to The Path to Artificial General Intelligence
- Authors: Edward Y. Chang,
- Abstract summary: Unlocking the Wisdom of Multi-LLM Collaborative Intelligence serves as an introduction to the full volume The Path to Artificial General Intelligence.<n>Through fourteen aphorisms, it distills the core principles of Multi-LLM Agent Collaborative Intelligence.<n>The booklet includes titles, abstracts, and introductions from each main chapter, along with the full content of the first two.
- Score: 2.5200794639628032
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This booklet, Unlocking the Wisdom of Multi-LLM Collaborative Intelligence, serves as an accessible introduction to the full volume The Path to Artificial General Intelligence. Through fourteen aphorisms, it distills the core principles of Multi-LLM Agent Collaborative Intelligence (MACI), a framework designed to coordinate multiple LLMs toward reasoning, planning, and decision-making that surpasses the capabilities of any single model. The booklet includes titles, abstracts, and introductions from each main chapter, along with the full content of the first two. The newly released third edition features significant enhancements to Chapters 6 through 9 and a revised preface responding to Yann LeCun's critique of AGI feasibility. While LeCun argues that LLMs lack grounding, memory, and planning, we propose that MACI's collaborative architecture, featuring multimodal agents in executive, legislative, and judicial roles, directly addresses these limitations. Chapters on SocraSynth, EVINCE, consciousness modeling, and behavior regulation demonstrate that reasoning systems grounded in structured interaction and checks and balances can produce more reliable, interpretable, and adaptive intelligence. By integrating complementary model strengths, including world modeling and multimodal perception, MACI enables a system-level intelligence that exceeds the sum of its parts. Like human institutions, progress in AI may depend less on isolated performance and more on coordinated judgment. Collaborative LLMs, not just larger ones, may chart the path toward artificial general intelligence.
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