Malware Dynamic Analysis
Duration: 3 days | MP4 | Video: h264, yuv420p, 1280x720 | Audio: aac, 44100 Hz | 5.25GB
Genre: eLearning | Language: English
This introductory malware dynamic analysis class is dedicated to people who are starting to work on malware analysis or who want to know what kinds of artifacts left by malware can be detected via various tools. The class will be a hands-on class where students can use various tools to look for how malware is: Persisting, Communicating, and Hiding
We will achieve the items above by first learning the individual techniques sandboxes utilize. We will show how to capture and record registry, file, network, mutex, API, installation, hooking and other activity undertaken by the malware. We will create fake network responses to deceive malware so that it shows more behavior. We will also talk about how using MITRE's Malware Attribute Enumeration & Characterization (MAEC - pronounced "Mike") standard can help normalize the data obtained manually or from sandboxes, and improve junior malware analysts' reports. The class will additionally discuss how to take malware attributes and turn them into useful detection signatures such as Snort network IDS rules, or YARA signatures.
Dynamic analysis should always be an analyst's first approach to discovering malware functionality. But this class will show the instances where dynamic analysis cannot achieve complete analysis, due to malware tricks for instance. So in this class you will learn when you will need to use static analysis, as offered in follow the follow on Introduction to Reverse Engineering and Reverse Engineering Malware classes.
During the course students will complete many hands on exercises.
* Understand how to set up a protected dynamic malware analysis environment
* Get hands on experience with various malware behavior monitoring tools
* Learn the set of malware artifacts an analyst should gather from an analysis
* Learn how to trick malware into exhibiting behaviors that only occur under special conditions
* Create actionable detection signatures from malware indicators
This class is recommended for a later class on malware static analysis. This is so that students understand both techniques, and utilize the technique which gives the quickest answer to a given question.
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