Book Image

10 Machine Learning Blueprints You Should Know for Cybersecurity

By : Rajvardhan Oak
4 (1)
Book Image

10 Machine Learning Blueprints You Should Know for Cybersecurity

4 (1)
By: Rajvardhan Oak

Overview of this book

Machine learning in security is harder than other domains because of the changing nature and abilities of adversaries, high stakes, and a lack of ground-truth data. This book will prepare machine learning practitioners to effectively handle tasks in the challenging yet exciting cybersecurity space. The book begins by helping you understand how advanced ML algorithms work and shows you practical examples of how they can be applied to security-specific problems with Python – by using open source datasets or instructing you to create your own. In one exercise, you’ll also use GPT 3.5, the secret sauce behind ChatGPT, to generate an artificial dataset of fabricated news. Later, you’ll find out how to apply the expert knowledge and human-in-the-loop decision-making that is necessary in the cybersecurity space. This book is designed to address the lack of proper resources available for individuals interested in transitioning into a data scientist role in cybersecurity. It concludes with case studies, interview questions, and blueprints for four projects that you can use to enhance your portfolio. By the end of this book, you’ll be able to apply machine learning algorithms to detect malware, fake news, deep fakes, and more, along with implementing privacy-preserving machine learning techniques such as differentially private ML.
Table of Contents (15 chapters)

Summary

In recent years, user privacy has grown as a field of importance. Users are to have full control over their data, including its collection, storage, and use. This can be a hindrance to machine learning, especially in the cybersecurity domain, where increased privacy causing a decreased utility can lead to fraud, network attacks, data theft, or abuse.

This chapter first covered the fundamental aspects of privacy – what it entails, why it is important, the legal requirements surrounding it, and how it can be incorporated into practice through the privacy-by-design framework. We then covered differential privacy, a statistical technique to add noise to data so that analysis can be performed while maintaining user privacy. Finally, we looked at how differential privacy can be applied to machine learning in the domain of credit card fraud detection, as well as deep learning models.

This completes our journey into building machine learning solutions for cybersecurity...