Findcoding/Android-Malware-Detection-System-Using-Machine-Learning
Leveraging the power of Machine Learning as a tool, we delve into the realm of app permissions to discern the true nature of applications, whether they harbor malicious or benign intent. By analyzing and predicting based on these permissions, we unlock valuable insights to safeguard users in the digital landscape.
This system helps identify potentially harmful Android applications before they can compromise user systems. By analyzing the permissions an app requests upon installation, it classifies whether the app is benign or malicious. This is ideal for mobile security analysts, app store administrators, or even advanced individual users who want to screen apps for safety.
No commits in the last 6 months.
Use this if you need a fast, automated way to assess the risk of Android applications based purely on their requested permissions.
Not ideal if you need to detect malware that doesn't rely on suspicious permissions or requires dynamic analysis of app behavior.
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Last pushed
May 29, 2023
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