Space & Astronomy
10 min read
Autonomous AI Systems Revolutionize Materials Research
Mirage News
January 20, 2026•2 days ago
AI-Generated SummaryAuto-generated
Researchers developed "autonomous AI network" technology enabling multiple AI systems to collaborate and efficiently discover new materials. The AI systems share and utilize knowledge, not just data, improving optimization speed and exploration efficiency. This advancement mimics human research communities, promising accelerated materials discovery through networked AI.
A joint research team from NIMS and University of Tsukuba developed "autonomous AI network" technology by which multiple autonomous AI systems can efficiently discover new materials by spontaneously collaborating with each other and forming a network. The team demonstrated the effectiveness of the technology through simulations. This research result was published in npj Computational Materials on December 9, 2025.
Background
In recent years, "autonomous AI systems" that integrate artificial intelligence (AI), robotics, and simulations have attracted attention, and have been built and operated worldwide. However, current autonomous AI systems operate in isolation, without collaborating with other systems. This is because the AI systems explore different material systems, and while they can share data easily, it is challenging for them to utilize data from other systems in their own autonomous exploration. Humans (researchers) advance research in a sophisticated manner while sharing extensive knowledge by forming a research community through conversation (see the left side of the figure). Likewise, if multiple autonomous AI systems can perform autonomous exploration while sharing and utilizing extensive knowledge (trends extracted from data) by forming a network, they can discover new materials more efficiently.
Key Findings
In this research, the team took a hint from human research communication methods to develop "autonomous AI network" technology by which multiple autonomous AI systems collaborate to perform autonomous exploration while sharing knowledge. In a research community, a human researcher normally does not merely give their research data to another researcher, but communicates by way of conveying some knowledge gained from that data to the other researcher. In order to realize this also among autonomous AI systems, the research team built an algorithm that incorporates knowledge learned by other systems as a reference for decision-making, and enabled the AI systems to perform autonomous exploration while sharing knowledge instead of data. As shown on the right side of the figure, when three autonomous AI systems, each performing exploration to maximize a different physical property value, were made to spontaneously exchange knowledge with each other, their optimization speed was found to improve. In other words, the team demonstrated that the exploration efficiency of each system improves by forming an autonomous AI network.
Future Outlook
Autonomous AI systems that integrate AI, robotics, and simulations have been developed worldwide, and are constantly performing material exploration. Their number will continue to increase rapidly, and various types of autonomous AI systems will discover and synthesize numerous new materials. This large number of autonomous AI systems has a potential to generate greater values by collaborating with each other in the future. Going forward, the team aims to build a more enormous autonomous AI network, while further advancing development of autonomous AI systems.
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