Predictive Modelling of Electronic Materials: A Review of Deep Learning Techniques in Computer Engineering
), Hanhan Maulana(2), Senny Luckyardi(3), Eddy Soeryanto Soegoto(4), Dostnazar Ximmataliyev(5), Goh Kang Wen(6), Tomáš Chochole(7), Hewa Majeed Zangana(8),
(1) Universitas Komputer Indonesia
(2) Universitas Komputer Indonesia
(3) Universitas Komputer Indonesia
(4) Universitas Komputer Indonesia
(5) Chirchik State Pedagogical University
(6) INTI International University
(7) University of West Bohemia
(8) Duhok Polytechnic University
Corresponding Author
Abstract
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References
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