Design of network threat detection and classification based on machine learning on cloud computing
Hyunjoo Kim(Electronics and Telecommunications Research Institute), Kuinam J. Kim(Kyonggi University), Jonghyun Kim(Electronics and Telecommunications Research Institute), Ikkyun Kim(Electronics and Telecommunications Research Institute), Youngsoo Kim(Electronics and Telecommunications Research Institute)
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