Self-evolving edge AI enables real-time learning and forecasting in small devices

Phys.org — AI & Machine LearningThursday, October 30, 2025 at 7:20:07 PM
Self-evolving edge AI enables real-time learning and forecasting in small devices
Researchers at the University of Osaka have unveiled a groundbreaking edge AI technology called MicroAdapt, which allows small devices to learn and forecast in real-time. This innovation is a game-changer, processing data up to 100,000 times faster and achieving 60% higher accuracy than traditional deep learning methods. This advancement not only enhances the capabilities of compact devices but also opens up new possibilities for applications in various fields, making technology smarter and more efficient.
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