Albert Rapp
@rappa753
🎓 Math PhD student & freelancer 👨🏫 Bite-sized insights on dataviz, web dev & data science with R at https://3mw.albert-rapp.de/subscribe
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Even though I've kept this tweet streak going for quite some time, I'm focusing on a new platform now . I will stop tweeting as soon as my scheduled tweets are over. If you want to see more of my content, you can join me via the link in the thread below 👇
372 days of daily tweeting got me: ~ 9,300 new followers ~ 10,000,000 impressions Guess I have to do the same thing on the "business people" platform again 🤷 Come find me there as I'm going to use it for more in-depth content✌️
Looking for a great resource to get better at data wrangling with R?🤔 Check out the upcoming video course from @JoachimSchork 👀 Looks like it will cover everything from the basics to advanced tricks (even times & dates 🥳) Full course description at youtube.com/watch?v=hcGLjC…
youtube.com
YouTube
R Programming Online Course by Statistics Globe | Registration is...
Doing calculations with time data is hard. But it's considerably easier with {lubridate}. You can use its convenience functions to ✅ make dates ✅ add subtract arbitrary time spans ✅ find time lengths between two time points
The {lubridate} package gives you data wrangling superpowers. My favorite trick: Convert text dates into actual dates. Just specify the orders of day, month and year and `parse_date_time()` will do the rest. It can even handle a mix of formats.
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