The Android Malware Handbook : Using Manual Analysis and ML-Based Detection
Book Details
Format
Paperback / Softback
ISBN-10
171850330X
ISBN-13
9781718503304
Publisher
No Starch Press,US
Imprint
No Starch Press,US
Country of Manufacture
US
Country of Publication
GB
Publication Date
Nov 7th, 2023
Print length
328 Pages
Weight
654 grams
Dimensions
23.50 x 18.20 x 2.30 cms
Product Classification:
Computer programming / software development
Ksh 8,650.00
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This comprehensive guide to Android malware introduces current threats facing the world's most widely used operating system. After exploring the history of attacks seen in the wild since the time Android first launched, including several malware families previously absent from the literature, you'll practice static and dynamic approaches to analysing real malware specimens. Next, you'll examine the machine-learning techniques used to detect malicious apps, the types of classification models that defenders can use, and the various features of malware specimens that can become input to these models. You'll then adapt these machine-learning strategies to the identification of malware categories like banking trojans, ransomware, and SMS fraud. You'll learn: How historical Android malware can elevate your understanding of current threats; How to manually identify and analyse current Android malware using static and dynamic reverse-engineering tools; How machine-learning algorithms can analyse thousands of apps to detect malware at scale.
This comprehensive guide to Android malware introduces current threats facing the world''s most widely used operating system. After exploring the history of attacks seen in the wild since the time Android first launched, including several malware families previously absent from the literature, you''ll practice static and dynamic approaches to analysing real malware specimens. Next, you''ll examine the machine-learning techniques used to detect malicious apps, the types of classification models that defenders can use, and the various features of malware specimens that can become input to these models. You''ll then adapt these machine-learning strategies to the identification of malware categories like banking trojans, ransomware, and SMS fraud. You''ll learn: How historical Android malware can elevate your understanding of current threats; How to manually identify and analyse current Android malware using static and dynamic reverse-engineering tools; How machine-learning algorithms can analyse thousands of apps to detect malware at scale.
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