
Автор: Fadele Ayotunde Alaba, Alvaro Rocha
Издательство: Springer
Год: 2025
Страниц: 119
Язык: английский
Формат: pdf (true), epub
Размер: 10.1 MB
This comprehensive book explores the challenges posed by cyberattacks on big data systems and their corresponding mitigation strategies. The book is organized into logical chapters, each focusing on specific aspects of the subject, ensuring clarity and depth in addressing the multifaceted nature of the problem. The introductory chapter provides a clear overview of the problem, introducing the prevalence of cyberattacks on big data systems, the motivation for addressing these risks, and the goals of the book. It also outlines the goals of the book, such as identifying vulnerabilities, evaluating mitigation strategies, and proposing integrated solutions. The second chapter provides a detailed examination of cyberattacks, emphasizing their implications for big data systems. It systematically categorizes tools and techniques available for mitigating these risks, including identity and access management (IAM), symmetric data encryption, network firewalls, IDPS, data loss prevention (DLP), SIEM, DDoS protection, and big data backup and recovery strategies.
Because of the ever-changing nature of cyber threats, organizations must implement effective intrusion detection and prevention systems (IDPS) to keep their networks and data secure. Snort is an open-source intrusion detection and prevention system that has gained widespread popularity. The following sections will examine how Snort has recently improved network security. Introduction to Snort: Snort was created by Sourcefire (now owned by Cisco) and is a free and open-source network intrusion detection and prevention system. Admins can quickly respond to possible attacks thanks to Snort’s real-time network traffic analysis and detection of suspicious or malicious actions. Snort uses signature-based detection, which includes checking network traffic against a massive library of previously identified threat signatures. Snort has two distinct modes: inline, which actively blocks or prevents harmful traffic, and passive, where it only monitors and warns administrators without disrupting network traffic.
The book focuses on key mitigation techniques, such as IAM, encryption methods, network segmentation, firewalls, and intrusion detection systems. It also proposes an integrated cybersecurity model, combining these solutions for enhanced effectiveness against cyberattacks. The book also identifies research gaps and suggests areas for future research, such as adapting to emerging technologies and improving scalability in big data security frameworks. The book is a valuable resource for cybersecurity professionals, researchers, and practitioners aiming to address the unique challenges posed by cyberattacks on big data systems.
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