Exploiting Machine Learning for Robust Security explores the world of machine learning, discussing the darknet of threat detection and vulnerability assessment, malware analysis, and predictive security analysis. Using case studies, it explores machine learning for threat detection and bolstered online defenses. This book covers topics such as anomaly detection, threat intelligence, and machine learning, and is a useful resource for engineers, security professionals, computer scientists, academicians, and researchers.
Anchit Bijalwan is an accomplished academician and researcher with a Ph.D. in Computer Science and Engineering. Currently serving as Research Coordinator at the British University Vietnam, he has over 15 years of experience in academia. His research interests include network forensics, cybersecurity, machine learning, and data mining. Dr. Bijalwan has authored two books and published extensively in prestigious journals like Security and Communication Networks, Discrete Dynamics in Nature and Society, and Journal of Healthcare Engineering. He has delivered international training programs, chaired conferences, and served as an examiner and editor for reputed publications. His contributions have been recognized through awards like the International Researcher Award in 2021.
Tarun Kumar received his Ph.D. degree from the National Institute of Technology Patna, Bihar, India. Dr. Kumar has more than 18 years of experience in teaching and is currently working as an Assistant Professor in the School of Computer Science and Engineering at Galgotias University, Greater Noida, India. His research interests include cloud computing, IoT, and DNA computing. Dr. Kumar has published several patents and papers in conference proceedings, book chapters, and refereed journals. He has also participated in many international conferences as an organizer and session chair. Dr. Kumar is a member of IEEE, ACM, and the IEEE Computer Society. [Editor]