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Node-RED meets Edge Computing for Smart Cities

Node-RED meets Edge Computing for Smart Cities

Node-RED Conference Tokyo 2019の発表スライドです。

6-B Node-RED meets Edge Computing for Smart Cities
米澤 拓郎氏 名古屋大学 大学院工学研究科 准教授

nodered-ug-jp

July 17, 2019
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