Machine learning and security: protecting systems with data and algorithms

Machine learning and security: protecting systems with data and algorithms

Chio, Clarence
Freeman, W. David

56,16 €(IVA inc.)

We wrote this book to provide a framework for discussing the inevitable marriage of two ubiquitous concepts: machine learning and security. While there is some literature on the intersection of these subjects (and multiple conference workshops: CCS’s AISec, AAAI’s AICS, and NIPS’s Machine Deception), most of the existing work is academic or theoretical. In particular, we did not find a guide that provides concrete, worked examples with code that can educate security practitioners about data science and help machine learning practitioners think about modern security problems effectively. In examining a broad range of topics in the security space, we provide examples of how machine learning can be applied to augment or replace rule-based or heuristic solutions to problems like intrusion detection, malware classification, or network analysis. In addition to exploring the core machine learning algorithms and techniques, we focus on the challenges of building maintainable, reliable, and scalable data mining systems in the security space. Through worked examples and guided discussions, we show you how to think about data in an adversarial environment and how to identify the important signals that can get drowned out by noise.

  • ISBN: 9781491979907
  • Editorial: O'Reilly
  • Encuadernacion: Rústica
  • Páginas: 300
  • Fecha Publicación: 31/01/2018
  • Nº Volúmenes: 1
  • Idioma: Inglés