Accelerating materials discovery

Researchers at Mizzou Engineering are advancing the field of materials discovery by integrating machine learning with experimental methods. This approach accelerates the identification and development of new materials, particularly those applicable in energy storage, catalysis, and environmental sustainability. The team employs computational models to predict material properties and validate findings through laboratory testing, significantly reducing the time and cost traditionally required for materials research. By merging artificial intelligence with experimental science, Mizzou’s engineers aim to address pressing global challenges and support sustainable technological progress.

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Dr. Gabriele Mogni
Technical Consultant and EU Representative
Virtual Lab Inc., the parent company of the Materials Square platform
Website: Home | Virtual Lab Inc.
Email: gabriele@simulation.re.kr

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