Skip to content

scikit-learn Open-Source Sprint [Beginners Welcome]

Photo of Edoardo Abati
Hosted By
Edoardo A.
scikit-learn Open-Source Sprint [Beginners Welcome]

Details

Welcome to our open-source sprint meetup!

Once again, we will have the chance to contribute to scikit-learn, one of the most popular open-source libraries for machine learning!

We'll have core developers from scikit-learn lead the sprint. As always, we welcome new contributors. For beginners in open-source, we'll have a beginners' table for making your first pull request on GitHub.

Please read the details below for more info on how to prepare for the event and what to expect during the evening.

⚠️ This event has limited seats and may have a waiting list. If you are confirmed but can't attend, please remember to release your place to someone else. Similarly, please don't show up if you're on the waiting list but haven't been confirmed. Unfortunately, we'll not be able to accommodate more people than planned.

SPONSORS ✨

A huge thanks to Thomson Reuters Labs for sponsoring this event and ETH AI Center for hosting us!

AGENDA 🗓️

  • 18.30: Welcome, networking, drinks and food
  • 18.45: Sponsors presentation, scikit-learn presentation
  • 19.00: Coding
  • 21.30: End of the event

HOW TO PREPARE FOR THE SPRINT 💻

You need to bring your own laptop and have a development environment already set up:

  • Create the scikit-learn development environment following the instructions from steps 1 to 6
  • (Optional) Extra videos resources are also available if you want to learn more about how to contribute to Scikit-Learn.

First Time Contributors

  • Create a GitHub account if you don't have one.
  • Install Python if you don't have it already (for this sprint, we suggest using Miniconda or Anaconda).
  • If you can, set up the development environment as shown above. If you experience any problems, we'll help you fix them during the event.
  • Check out the videos linked above to get familiar with the process of contributing to scikit-learn.

Code of Conduct
Please be reminded that all participants are expected to follow the NumFOCUS Code of Conduct.

Photo of Python Sprints Zürich group
Python Sprints Zürich
See more events
ETH AI Center
OAT X11, Andreasstrasse 5, 8092 Zürich · Zurich