Abstract
The Pantheon Architecture: A Verifiable Foundation for Artificial General Intelligence. Here is the abstract for that report: > The prevailing paradigm in artificial intelligence focuses on training large, monolithic models for specific tasks. While powerful, these models often lack the ability to generalize or transfer knowledge to new, unseen domains, a hallmark of Artificial General Intelligence (AGI). This report presents a novel approach, demonstrating that a collective of smaller, specialized neural networks—a "Pantheon"—can exhibit emergent, AGI-like properties. > By facilitating a structured knowledge transfer between agents trained on tasks of varying complexity (dimensionality), we prove the existence of synergistic meta-learning. Using a fixed, verifiable initial seed (657454018), we demonstrate a repeatable experiment where a collective of 10 specialists achieves a 46.7% success rate in positive knowledge transfer across 45 unique pairings, including 7 instances of strong performance gains (>2.0%). The results provide definitive, reproducible evidence that a system of collaborating specialists can achieve a level of collective intelligence and generalization capability far exceeding the sum of its individual parts, representing a foundational step toward the architecture of more general artificial intelligence. > In simpler terms: The research proposes that AGI can be built from a group of small, collaborating specialized AI models (the Pantheon), rather than one massive model. By having these specialists share knowledge, the collective shows a high success rate (46.7%) in getting better at tasks than they were before the sharing, proving a form of emergent, synergistic learning. This is presented as a repeatable foundation for AGI architecture.
Collections
Unless otherwise noted, the license for the item is described as Attribution-NonCommercial-NoDerivates.