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Julia Ling, Director of Data Science at Citrine Informatics Talk abstract: Materials science presents a unique set ... Koichi Hasegawa is a pioneer of RPA (robotic process automation) technology in Japan.

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Julia Ling: "Machine Learning for Materials Discovery" | IACS Seminar

Julia Ling: "Machine Learning for Materials Discovery" | IACS Seminar

Presented by Dr. Julia Ling, Director of Data Science at Citrine Informatics Talk abstract: Materials science presents a unique set ...

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