What is the MITRE ATT&CK Framework?

The MITRE ATT&CK framework is a knowledge base of tactics, techniques and procedures that are commonly used by attackers in a cyber attack. The main purpose of this framework is to detect possible adversary behaviours so that the cyber attacks can be prevented effectively. The framework is created by the MITRE Corporation. The MITRE Corporation is an American non-profit organization.

Attackers use different techniques to perpetrate a cyber attack. The MITRE ATT&CK framework organizes these techniques into a set of tactics. Also, each technique contains relevant information on how the technique works. The information is helpful for both penetration testers and red teams in detecting and preventing cyber attacks.


In this article, we will discuss:

  • What is the MITRE ATT&CK Framework?

  • Understanding the MITRE ATT&CK Framework

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Amrita Mitra

Author

Ms. Amrita Mitra is an author, who has authored the books “Cryptography And Public Key Infrastructure“, “Web Application Vulnerabilities And Prevention“, “A Guide To Cyber Security” and “Phishing: Detection, Analysis And Prevention“. She is also the founder of Asigosec Technologies, the company that owns The Security Buddy.

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