The Pantheon Architecture: A Verifiable Foundation for Artificial General Intelligence.

Loading...
Thumbnail Image

Authors

Christopher Brown

Journal Title

Journal ISSN

Volume Title

Publisher

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.

Description

The Pantheon Architecture: A Verifiable Foundation for Artificial General Intelligence. This report proposes a new architectural approach for achieving Artificial General Intelligence (AGI) by shifting the focus from large, single models to a collaborative network of smaller, specialized AI agents, which the authors call the "Pantheon." 🏛️ Key Elements of the Pantheon Architecture * Decentralized Intelligence: Instead of one monolithic model, the system is composed of multiple Specialists, each a separate neural network trained to solve a specific variant of a problem (e.g., solving the same conceptual task across different dimensional spaces, like 3D to 12D). * Knowledge Transfer (Meta-Learning): The core of the architecture is the mechanism for synergistic meta-learning. A small, targeted portion of the learned weights (knowledge) from one "teacher" specialist is blended with the weights of a "student" specialist. * Emergent AGI Properties: The hypothesis is that by sharing abstract knowledge, the collective intelligence of the Pantheon exceeds the sum of its individual parts, leading to better generalization capabilities—a key hurdle in current AI models. 🧪 Verifiable Experiment The report validates this concept with a reproducible experiment using a fixed initial seed (657454018): * Goal: To measure the performance improvement of a student specialist after receiving a subtle knowledge transfer from a teacher specialist. * Results: Out of 45 possible pairings, the system achieved a 46.7% success rate of positive knowledge transfer, with some instances showing strong performance gains (>2.0%). * Conclusion: This repeatable result proves the existence of emergent synergistic meta-learning and validates the Pantheon architecture as a viable, verifiable path toward building more general and adaptable artificial intelligence systems.

Citation

Brown, C. (2025, Nov 22). The Pantheon Architecture: A Verifiable Foundation for Artificial General Intelligence. Technical Report. Retrieved from https://preprints.ru/user/1252 ​DOI: 10.5281/zenodo.17622673 ORCID: 0009-0008-4741-3108 GitHub: https://github.com/rainmanp7/pantheonagi

DOI

Collections

Endorsement

Review

Supplemented By

Referenced By

Creative Commons license

Except where otherwised noted, this item's license is described as CC0 1.0 Universal