That's, ehm, embarassing...
Let me go into details.
Digging into your particular case, I discovered that we weren't taking into account your Stack Overflow question view history to determine job recommendations.
Put simply, if you look at a lot of java questions, we weren't taking that into account, even though that's a pretty important piece of information.
This bug was introduced 17 days ago, and affected, well, all the areas which leverage our job matching algorithm: job search, emails, job recommendations on your profile, etc...
All the other criteria that help us select job matches were applied correctly, including geographic location, and job preferences.
Only the Stack Overflow tag views were ignored, and (ironically) only for registered users. Stack Overflow tag views are the most important criteria for selecting job matches, so this was a pretty serious bug.
What caused the bug?
The source of the bug was a recent refactor (by yours truly) which caused the
AccountId property not to be set on
As a result, the Stack Overflow question history (tag views) for the account was not fetched from Providence, so it stopped having any effect on the matching algorithm.
Fix it (thrice)
The bug has been resolved, and a unit test has been added to make sure this specific problem doesn't reoccur.
I'm also working on an additional integration test which should further ensure this bug won't resurrect.
"We really like this job for you" emails
We've received a lot of feedback about this email (thank you for your report!) and we're currently discussing and experimenting with several options to make sure we email you relevant jobs.
- Stricter eligibility criteria for recipients of the email, i.e. only email users who are active or passive job seekers, and only if we know enough about them to surface good job recommendations.
- Stricter job selection: look at additional features of the jobs, and ensure those features match the user's interests. Specifically, look at the jobs' title and developer role (full stack, mobile, ...)
- New machine learning approaches: initiate discovery on new classification algorithms.