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Machine Learning for Cybersecurity Cookbook

Machine Learning for Cybersecurity Cookbook

By : Emmanuel Tsukerman
3 (2)
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Machine Learning for Cybersecurity Cookbook

Machine Learning for Cybersecurity Cookbook

3 (2)
By: Emmanuel Tsukerman

Overview of this book

Organizations today face a major threat in terms of cybersecurity, from malicious URLs to credential reuse, and having robust security systems can make all the difference. With this book, you'll learn how to use Python libraries such as TensorFlow and scikit-learn to implement the latest artificial intelligence (AI) techniques and handle challenges faced by cybersecurity researchers. You'll begin by exploring various machine learning (ML) techniques and tips for setting up a secure lab environment. Next, you'll implement key ML algorithms such as clustering, gradient boosting, random forest, and XGBoost. The book will guide you through constructing classifiers and features for malware, which you'll train and test on real samples. As you progress, you'll build self-learning, reliant systems to handle cybersecurity tasks such as identifying malicious URLs, spam email detection, intrusion detection, network protection, and tracking user and process behavior. Later, you'll apply generative adversarial networks (GANs) and autoencoders to advanced security tasks. Finally, you'll delve into secure and private AI to protect the privacy rights of consumers using your ML models. By the end of this book, you'll have the skills you need to tackle real-world problems faced in the cybersecurity domain using a recipe-based approach.
Table of Contents (11 chapters)
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MalConv – end-to-end deep learning for malicious PE detection

One of the new developments in static malware detection has been the use of deep learning for end-to-end machine learning for malware detection. In this setting, we completely skip all feature engineering; we need not have any knowledge of the PE header or other features that may be indicative of PE malware. We simply feed a stream of raw bytes into our neural network and train. This idea was first suggested in https://arxiv.org/pdf/1710.09435.pdf. This architecture has come to be known as MalConv, as shown in the following screenshot:

Getting ready

Preparation for this recipe involves installing a number of packages in pip, namely, keras, tensorflow...

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