


Recently, JavaScript has been trending a lot in my country. I mean, it's everywhere—Node.js, Vue, Nuxt, and so on. As a Python developer, I was like, "Oh no!" Sure, I can eventually find Python jobs, but for every one Python job, there are 100 Node.js ones. So, I decided to do something fun about it.
I wrote a script that fetches recently joined GitHub users (within the last few weeks) from my country who are writing in JavaScript and have 1-3 JavaScript repositories.
I ended up fetching over 3,000 usernames! Then, for 50 in 3,000 , I opened issues and tagged them, like this:
In total, I created over 120 issues. ? It's not really spam since each user got only one notification, as the issues were closed and locked immediately. Also, no username was tagged more than once. It was just for fun because, honestly, I’m getting jealous of how big the JavaScript community is becoming while Python feels a bit left out. ?
Then, I got this comment:
Ahhhh, that’s hilarious! I didn’t see that coming. ?
Here’s the script: https://github.com/skylord0001/some-github-script
And here’s my main profile: https://github.com/devfemibadmus
Thanks for reading… bye!
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