Book Image

Mastering Machine Learning for Penetration Testing

By : Chiheb Chebbi
Book Image

Mastering Machine Learning for Penetration Testing

By: Chiheb Chebbi

Overview of this book

Cyber security is crucial for both businesses and individuals. As systems are getting smarter, we now see machine learning interrupting computer security. With the adoption of machine learning in upcoming security products, it’s important for pentesters and security researchers to understand how these systems work, and to breach them for testing purposes. This book begins with the basics of machine learning and the algorithms used to build robust systems. Once you’ve gained a fair understanding of how security products leverage machine learning, you'll dive into the core concepts of breaching such systems. Through practical use cases, you’ll see how to find loopholes and surpass a self-learning security system. As you make your way through the chapters, you’ll focus on topics such as network intrusion detection and AV and IDS evasion. We’ll also cover the best practices when identifying ambiguities, and extensive techniques to breach an intelligent system. By the end of this book, you will be well-versed with identifying loopholes in a self-learning security system and will be able to efficiently breach a machine learning system.
Table of Contents (13 chapters)

The detection of network anomalies

Network intrusion detection systems (IDSs) are not a new idea. They have been proposed since the earliest network attacks. IDS can be categorized into two major categories, based on their deployment: HIDS and NIDS. The following diagram illustrates a high-level overview of an IDS architecture:

HIDS

HIDS are able to collect and monitor computer systems (especially their internals) in order to give security analysts a deep visibility into what's happening on critical systems, such as workstations, servers, and mobile devices. The main goal of an HIDS is to detect intrusions.

NIDS

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