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Alexander Prosvirin

Dr. Alexander Prosvirin

AI Foundations and Algorithms,  Huawei Technologies (Russia)

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Alexander E. Prosvirin received the Engineering degree (specialty Control and Informatics in Technical Systems) from the Moscow State University of Mechanical Engineering “MAMI” (MSUME-MAMI), now called Moscow Polytechnic University, Moscow, Russia, in 2013. He is currently pursuing the Ph.D. degree in computer engineering with the University of Ulsan, Ulsan, South Korea. Since 2016, he has been working as a Graduate Research Assistant with the Ulsan Industrial Artificial Intelligence (UIAI) Laboratory, Department of Electrical and Computer Engineering, University of Ulsan. His research interests include artificial intelligence, signal processing, fault diagnosis and condition monitoring of industrial machinery, and fault feature extraction.

Research Keywords & Expertise

Deep Learning
Feature Extraction
machine learning
fault diagnosis
Machine Learning & Art...

Fingerprints

85%
fault diagnosis
45%
Feature Extraction
20%
machine learning
15%
Deep Learning

Short Biography

Alexander E. Prosvirin received the Engineering degree (specialty Control and Informatics in Technical Systems) from the Moscow State University of Mechanical Engineering “MAMI” (MSUME-MAMI), now called Moscow Polytechnic University, Moscow, Russia, in 2013. He is currently pursuing the Ph.D. degree in computer engineering with the University of Ulsan, Ulsan, South Korea. Since 2016, he has been working as a Graduate Research Assistant with the Ulsan Industrial Artificial Intelligence (UIAI) Laboratory, Department of Electrical and Computer Engineering, University of Ulsan. His research interests include artificial intelligence, signal processing, fault diagnosis and condition monitoring of industrial machinery, and fault feature extraction.