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Published
Oct 23, 2024
Vol/Issue
15(1)
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Funding
National Research Foundation of Korea Award: RS-2023-00260527
Cite This Article
Jong Kyung Kim, Eun Chan Park, Wonjun Shin, et al. (2024). Analog reservoir computing via ferroelectric mixed phase boundary transistors. Nature Communications, 15(1). https://doi.org/10.1038/s41467-024-53321-2
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