Abstract
<jats:p>The ever-evolving cyber landscape presents an ongoing challenge to traditional security measures and threat detection methodologies. As cyber threats grow in complexity, conventional defences are often rendered insufficient in identifying and mitigating sophisticated attacks. The book before you, Enhancing Cybersecurity with Machine Learning: A Data-Driven Approach to Detect and Mitigate Threats, delves into the transformative role of machine learning (ML) and artificial intelligence (AI) in modern cybersecurity, offering cutting-edge insights into data-driven security strategies. This volume provides a comprehensive exploration of ML-driven techniques, demonstrating how they enhance cybersecurity by automating threat detection, analysing vast datasets, and responding to anomalies with greater accuracy. Covering a diverse range of topics, from intrusion detection systems and malware analysis to behavioural analytics and adversarial machine learning, the chapters present a balanced mix of theoretical foundations and practical applications. Our goal is to equip readers with a deep understanding of the intersection between cybersecurity and machine learning, enabling them to harness AI-driven security solutions effectively. Through the contributions of seasoned experts and researchers, this book highlights real-world implementations, emerging trends, and challenges, paving the way for future advancements in cybersecurity. This collection serves as a valuable resource for researchers, cybersecurity professionals, data scientists, and students seeking to explore data driven security solutions. Whether you are an industry practitioner or an academic enthusiast, we hope this book provides an indispensable guide to navigating the complexities of cybersecurity in the age of machine learning.</jats:p>