Predictive data security using AI insights and issues of blockchain, IoT, and DevOps

Introduction to Data Security with Machine Learning: Traditional Methods vs Recent Trends.- Data Security and Predictive Informatics: Issues, Challenges, and Opportunities.- Data Security Analytics using Machine Learning: Supervised and Unsupervised Approaches.- Data Security in Data Servers: Implem...

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Weitere Verfasser: Bhadoria, Robin Singh (HerausgeberIn), Swarnkar, Mayank (HerausgeberIn), Thakkar, Hiren Kumar (HerausgeberIn)
Format: UnknownFormat
Sprache:eng
Veröffentlicht: Singapore Springer 2023
Schriftenreihe:Studies in computational intelligence volume 1065
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Beschreibung
Zusammenfassung:Introduction to Data Security with Machine Learning: Traditional Methods vs Recent Trends.- Data Security and Predictive Informatics: Issues, Challenges, and Opportunities.- Data Security Analytics using Machine Learning: Supervised and Unsupervised Approaches.- Data Security in Data Servers: Implementation of Security in Data Servers, Content Delivery Network Servers and Proxy Servers.- Data Security in Multimedia using AI: Perspective and Practices.- Data Security in Blockchain: Data Generation, Analysis and Predictions.
This contributed volume consists of 11 chapters that specifically cover the security aspects of the latest technologies such as Blockchain, IoT, and DevOps, and how to effectively deal with them using Intelligent techniques. Moreover, machine learning (ML) and deep learning (DL) algorithms are also not secured and often manipulated by attackers for data stealing. This book also discusses the types of attacks and offers novel solutions to counter the attacks on ML and DL algorithms. This book describes the concepts and issues with figures and the supporting arguments with facts and charts. In addition to that, the book provides the comparison of different security solutions in terms of experimental results with tables and charts. Besides, the book also provides the future directions for each chapter and novel alternative approaches, wherever applicable. Often the existing literature provides domain-specific knowledge such as the description of security aspects. However, the readers find it difficult to understand how to tackle the application-specific security issues. This book takes one step forward and offers the security issues, current trends, and technologies supported by alternate solutions. Moreover, the book provides thorough guidance on the applicability of ML and DL algorithms to deal with application-specific security issues followed by novel approaches to counter threats to ML and DL algorithms. The book includes contributions from academicians, researchers, security experts, security architectures, and practitioners and provides an in-depth understanding of the mentioned issues
Beschreibung:Literaturangaben
Interessenniveau: 06, Professional and scholarly: For an expert adult audience, including academic research. (06)
Beschreibung:xii, 216 Seiten
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ISBN:9789811962899
978-981-19-6289-9