Co-designing Data-Driven Educational Technology and Practice: Reflections from the Japanese Context
Hiroaki Ogata(Kyushu University), Rwitajit Majumdar(Kumamoto Industrial Research Institute), Brendan Flanagan(Kyoto University), Izumi Horikoshi, Yiling Dai(Kyoto University), Kohei Nakamura(Kyoto University), Kyosuke Takami(Kyoto University), Yuko Toyokawa(Kyoto University), Changhao Liang(Beijing University of Chinese Medicine), Taisei Yamauchi(Hirosaki University), Chia-Yu Hsu(Kyoto University)
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