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Mijwil et al., 2023 - Google Patents

The significance of machine learning and deep learning techniques in cybersecurity: A comprehensive review

Mijwil et al., 2023

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Document ID
10482775689727616889
Author
Mijwil M
Salem I
Ismaeel M
Publication year
Publication venue
Iraqi Journal For Computer Science and Mathematics

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Snippet

People in the moderneraspendmost of their lives in virtual environments that offer a range of public and private servicesand social platforms. Therefore, these environments need to be protected from cyber attackers that can steal data or disruptsystems. Cybersecurity refers to …
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