TY - JOUR
T1 - A collective AI via lifelong learning and sharing at the edge
AU - Soltoggio, Andrea
AU - Ben-Iwhiwhu, Eseoghene
AU - Braverman, Vladimir
AU - Eaton, Eric
AU - Epstein, Benjamin
AU - Ge, Yunhao
AU - Halperin, Lucy
AU - How, Jonathan
AU - Itti, Laurent
AU - Jacobs, Michael A.
AU - Kantharaju, Pavan
AU - Le, Long
AU - Lee, Steven
AU - Liu, Xinran
AU - Monteiro, Sildomar T.
AU - Musliner, David
AU - Nath, Saptarshi
AU - Panda, Priyadarshini
AU - Peridis, Christos
AU - Pirsiavash, Hamed
AU - Parekh, Vishwa
AU - Roy, Kaushik
AU - Shperberg, Shahaf
AU - Siegelmann, Hava T.
AU - Stone, Peter
AU - Vedder, Kyle
AU - Wu, Jingfeng
AU - Yang, Lin
AU - Zheng, Guangyao
AU - Kolouri, Soheil
N1 - Publisher Copyright:
© Springer Nature Limited 2024.
PY - 2024/3/1
Y1 - 2024/3/1
N2 - One vision of a future artificial intelligence (AI) is where many separate units can learn independently over a lifetime and share their knowledge with each other. The synergy between lifelong learning and sharing has the potential to create a society of AI systems, as each individual unit can contribute to and benefit from the collective knowledge. Essential to this vision are the abilities to learn multiple skills incrementally during a lifetime, to exchange knowledge among units via a common language, to use both local data and communication to learn, and to rely on edge devices to host the necessary decentralized computation and data. The result is a network of agents that can quickly respond to and learn new tasks, that collectively hold more knowledge than a single agent and that can extend current knowledge in more diverse ways than a single agent. Open research questions include when and what knowledge should be shared to maximize both the rate of learning and the long-term learning performance. Here we review recent machine learning advances converging towards creating a collective machine-learned intelligence. We propose that the convergence of such scientific and technological advances will lead to the emergence of new types of scalable, resilient and sustainable AI systems.
AB - One vision of a future artificial intelligence (AI) is where many separate units can learn independently over a lifetime and share their knowledge with each other. The synergy between lifelong learning and sharing has the potential to create a society of AI systems, as each individual unit can contribute to and benefit from the collective knowledge. Essential to this vision are the abilities to learn multiple skills incrementally during a lifetime, to exchange knowledge among units via a common language, to use both local data and communication to learn, and to rely on edge devices to host the necessary decentralized computation and data. The result is a network of agents that can quickly respond to and learn new tasks, that collectively hold more knowledge than a single agent and that can extend current knowledge in more diverse ways than a single agent. Open research questions include when and what knowledge should be shared to maximize both the rate of learning and the long-term learning performance. Here we review recent machine learning advances converging towards creating a collective machine-learned intelligence. We propose that the convergence of such scientific and technological advances will lead to the emergence of new types of scalable, resilient and sustainable AI systems.
UR - http://www.scopus.com/inward/record.url?scp=85188545268&partnerID=8YFLogxK
U2 - 10.1038/s42256-024-00800-2
DO - 10.1038/s42256-024-00800-2
M3 - Article
AN - SCOPUS:85188545268
SN - 2522-5839
VL - 6
SP - 251
EP - 264
JO - Nature Machine Intelligence
JF - Nature Machine Intelligence
IS - 3
ER -