AIFeb 2, 2024

Foundation Model Sherpas: Guiding Foundation Models through Knowledge and Reasoning

arXiv:2402.01602v15 citationsh-index: 27
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that addresses the problem of improving foundation model reliability for developers and users in practical AI applications.

The paper tackles the limitations of foundation models in real-world systems by proposing a conceptual framework for guiding them through knowledge augmentation and reasoning, categorizing agent roles and interaction protocols to enhance trustworthiness and usability.

Foundation models (FMs) such as large language models have revolutionized the field of AI by showing remarkable performance in various tasks. However, they exhibit numerous limitations that prevent their broader adoption in many real-world systems, which often require a higher bar for trustworthiness and usability. Since FMs are trained using loss functions aimed at reconstructing the training corpus in a self-supervised manner, there is no guarantee that the model's output aligns with users' preferences for a specific task at hand. In this survey paper, we propose a conceptual framework that encapsulates different modes by which agents could interact with FMs and guide them suitably for a set of tasks, particularly through knowledge augmentation and reasoning. Our framework elucidates agent role categories such as updating the underlying FM, assisting with prompting the FM, and evaluating the FM output. We also categorize several state-of-the-art approaches into agent interaction protocols, highlighting the nature and extent of involvement of the various agent roles. The proposed framework provides guidance for future directions to further realize the power of FMs in practical AI systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes