NIMS researchers developed an AI technique capable of swiftly predicting materials' compositions with desired properties. By adapting prediction models based on dataset sizes, the team expedited the identification process. Remarkably, they identified effective electrode materials from thousands of candidates in just one month—a task that would have taken years through manual evaluation. These materials, comprising elements like manganese, iron, and nickel, demonstrate superior electrochemical properties compared to conventional options.