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Machine Learning And Data Analytics For Cyber Security Phil Legg

  • SKU: BELL-234579908
Machine Learning And Data Analytics For Cyber Security Phil Legg
$ 35.00 $ 45.00 (-22%)

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Machine Learning And Data Analytics For Cyber Security Phil Legg instant download after payment.

Publisher: MDPI
File Extension: PDF
File size: 25.13 MB
Pages: 364
Author: Phil Legg, Giorgio Giacinto
ISBN: 9783725833603, 9783725833597, 3725833605, 3725833591
Language: English
Year: 2025

Product desciption

Machine Learning And Data Analytics For Cyber Security Phil Legg by Phil Legg, Giorgio Giacinto 9783725833603, 9783725833597, 3725833605, 3725833591 instant download after payment.

The aim of this reprint is to provide an overview of the current challenges within the cyber security community today, as recognized by our contributors. This reprint provides 16 papers from the Topical Collection on “Machine Learning and Data Analytics for Cyber Security” that cover topics of large language models for cybersecurity claim classification, adversarial machine learning attacks against intrusion detection systems, the detection of PLC process control anomalies, identifying session-replay bots compared to human users, and mitigating against side-channel attacks.