SEAINov 8, 2023

CAIS-DMA: A Decision-Making Assistant for Collaborative AI Systems

arXiv:2311.04562v11 citationsh-index: 3
Originality Incremental advance
AI Analysis

This work addresses the challenge of maintaining decision-making in collaborative AI systems under disruptions, which is incremental as it builds on existing CAIS concepts with a new monitoring and intervention framework.

The paper tackles the problem of performance degradation in collaborative AI systems (CAIS) due to disruptive events by introducing a framework that automatically monitors and supports decision-making, demonstrated with a real-world collaborative robot to balance recovery time and energy efficiency.

A Collaborative Artificial Intelligence System (CAIS) is a cyber-physical system that learns actions in collaboration with humans in a shared environment to achieve a common goal. In particular, a CAIS is equipped with an AI model to support the decision-making process of this collaboration. When an event degrades the performance of CAIS (i.e., a disruptive event), this decision-making process may be hampered or even stopped. Thus, it is of paramount importance to monitor the learning of the AI model, and eventually support its decision-making process in such circumstances. This paper introduces a new methodology to automatically support the decision-making process in CAIS when the system experiences performance degradation after a disruptive event. To this aim, we develop a framework that consists of three components: one manages or simulates CAIS's environment and disruptive events, the second automates the decision-making process, and the third provides a visual analysis of CAIS behavior. Overall, our framework automatically monitors the decision-making process, intervenes whenever a performance degradation occurs, and recommends the next action. We demonstrate our framework by implementing an example with a real-world collaborative robot, where the framework recommends the next action that balances between minimizing the recovery time (i.e., resilience), and minimizing the energy adverse effects (i.e., greenness).

Code Implementations1 repo
Foundations

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

Your Notes