To strengthen the authentication mechanism (web), I would like to log a user fingerprint for every attempt and apply pattern recognition to distinguish malicious attempts. For example if the user always logs in from European computers and there is an attempt made from China, the user is blocked until the user confirms (via email, for example) to allow logins from China.
I have a very, very small knowledge of pattern recognition from a university course. However, I cannot recall enough to start developing this service. What I know, is you look at various features:
- Browser agent string, resulting in:
- Operating system
- Browser vendor
- IP address, resulting in:
- Time stamp of login
- Number of (failed) attempts (within session, or total)
You search for patterns and any extraordinary attempt is marked because it does not follow the average pattern. You probably will apply a threshold, so if a user logs in at night or has a new PC, it still works.
There are also a few requirements: first, the check of an attempt must be made real-time. You cannot block access after 2 minutes if the credentials were OK but you found out later on the attempt could have been malicious. Furthermore, all our apps are written in PHP, but PHP is probably too slow for this. I prefer to use Python then, but subsequently there is also a binding to Pythin required.
So the question is: where to start? What is the best approach to accomplish this? I can log all data in a key storage like Redis or document based like Mongo. How would I design a service which allows to validate a new attempt with certain features against a bulk of known other attempts? And return whether the attempt matches the average within a timely fashion, say 250ms.