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).
- CAIS-DMA: A Decision-Making Assistant for Collaborative AI Systems
- Diaeddin M A RimawiAntonio Liotta - Free University of Bozen-BolzanoMarco Todescato - Fraunhofer Italia ResearchBarbara Russo - Free University of Bozen-Bolzano
- Product-Focused Software Process Improvement (PROFES 2023), pp.183-199
- Kadgien R, Jedlitschka A, Janes A, Lenarduzzi V, Li X
- 9783031492655
- 9783031492662
- 0302-9743
- 1611-3349
- Product Focused Software Process Improvement (Dornbirn, 10/12/2023–13/12/2023)
- Lecture Notes in Computer Science
- Springer Cham
Cham - Online
- 17
- 978-3-031-49265-5
(UNIBZ)83918741
991006818492601241 - 2-s2.0-85196481251
- Faculty of Engineering
- English
- Conference proceeding
- Rimawi D, Liotta A, Todescato M, Russo B
- Editors/Supervisors: Kadgien R, Jedlitschka A, Janes A, Lenarduzzi V, Li X