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Discover how the innovative use of microfabricated, graphene-based Vertical RRAM (VRRAM) can revolutionize neuromorphic computing, enhancing energy efficiency and recognition accuracy. This exciting research conducted by Batyrbek Alimkhanuly, Joon Sohn, Ik-Joon Chang, and Seunghyun Lee showcases the advantages of graphene in advanced computing technologies.
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