nefarious-linkedin
Extension detector
An open source browser extension that detects and reveals LinkedIn's methods to scan user browsers for installed extensions
A look at how LinkedIn spies on its users.
825 stars
16 watching
39 forks
Language: JavaScript
last commit: about 6 years ago Related projects:
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