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Title & Speakers Event
Tamara Atanasoska – Open Source Software Engineer @ :probably.. , Adrin Jalali – scikit-learn and Fairlearn maintainer @ scikit-learn and Fairlearn

Learn how you can contribute to Fairlearn and how to contribute.

fairlearn
Guillaume Lemaitre – scikit-learn maintainer @ scikit-learn , Stefanie Senger – Open source developer @ :probabl. , Maren Westermann – scikit-learn team member @ PyLadies Berlin

Learn what you can contribute to scikit-learn and how to contribute.

scikit-learn

PyLadies Berlin are excited to bring you this open source workshop dedicated to setting up your scikit-learn or fairlearn development environment.

scikit-learn is a popular machine learning library and is widely adopted in industry as well as academia.

Fairlearn is a community-driven project to help data scientists improve fairness of AI systems.

This is a warm-up session for the upcoming workshop, but it is open to anyone who would like to get guidance, even if you won’t attend the workshop. No prior contributing experience required!

By setting up your development environment in advance, you can use the in-person workshop time for finding an issue to work on, and working on a contribution.

• Format for the session: First 10 minutes : welcome and introduction The rest : "office hours" during which you can ask questions and where you'll be supported with setting up a development environment.

• Preparation work for scikit-learn To get the most out of the session, it's encouraged that you check out the Developer's Guide of scikit-learn and follow steps 1 to 7 under the section "How to contribute": https://scikit-learn.org/dev/developers/contributing.html#how-to-contribute. You will also find a lot of useful additional information on this page, for example video resources: https://scikit-learn.org/dev/developers/contributing.html#video-resources. Please be aware that it could take longer to set up a development environment on ​​a computer running a Windows operating system compared to MacOS or Unix. If you are using Windows, it is recommended to install Windows Subsystem for Linux. You can find instructions on the installation process for example by following the steps described here: https://learn.microsoft.com/en-us/windows/wsl/install. Please note that you should be using WSL 2, and here's how you can upgrade to this version if you have WSL 1: https://learn.microsoft.com/en-us/windows/wsl/install#upgrade-version-from-wsl-1-to-wsl-2

• Preparation work for Fairlearn You don't need to do any preparation work for Fairlearn for this session, instructions will be given during this event. However, it is recommended that you have a look at the Fairlearn Contributor Guide here: https://fairlearn.org/v0.12/contributor_guide/index.html

• How to join We'll be using Discord for this event. Please follow the steps below: 1. Join the scikit-learn Discord server: https://discord.gg/aBgkfXBtWZ 2. Join the #help-desk-voice channel. This is the channel where we'll be hosting this workshop.

• Audience level Everyone is welcome to attend this session! If you've never contributed to open source software before, then you will learn how to, and if you have experience contributing, then you can either help mentor other attendees or you can work on more challenging contributions. It is useful to have some scikit-learn, git, and python experience.

• Facilitators The session will be lead by Maren Westermann (PyLadies Berlin, scikit-learn team member), Tamara Atanasoska (scikit-learn contributor, Fairlearn maintainer), Stefanie Senger (scikit-learn team member), Adrin Jalali (scikit-learn and Fairlearn maintainer) and Guillaume Lemaitre (scikit-learn maintainer).

• By attending our event, you agree to the PyLadies Code of Conduct: https://www.pyladies.com/CodeOfConduct/

❓ Can men attend ❓ Everyone is welcome. If you identify as someone well-represented in open source and in tech, please be mindful of the space and privileges you have, and use it to support others.

• Contact Interested in speaking at one of our events? Have a good idea for a Meetup? Get in touch with us at [email protected] Find us on the PyLadies Global workspace: 1. https://slackin.pyladies.com enter your email address. 2. Accept the email invitation 3. Go to workspace https://pyladies.slack.com 4. Join channel #city-berlin\, #germany\, #jobs-europe

Let's contribute to scikit-learn and Fairlearn! Optional preparation event
Claudia Stangarone – Data analyst @ GLS Studio , Helen FitzGerald – Data analyst

Claims in logistics, especially for lost parcels or delivery issues, can be a significant cost for companies. In this talk, we’ll present the framework and share some early results of a new feature within TrustCourier. This feature uses machine learning to predict and flag high-risk deliveries before they escalate into costly claims.

machine learning
Tamara Atanasoska – Open Source Software Engineer @ :probably..

Scikit-learn is a popular machine learning library. It currently has over 200 estimators ready to use for a vast array of use cases. What if you are working on something special that still hasn't found its way into the library? Scikit-learn offers a way to write new compatible estimators, which can be seamlessly integrated with the rest of the library. We will look into what an estimator is, what API that scikit-learn estimators have, reasons why you would like to implement your own and an example of how to. We will end with real-world examples of how other OSS projects use this for their needs.

scikit-learn Python
Stefanie Senger – Open source developer @ :probabl.

This talk will introduce scikit-learn users to the new API for metadata routing, a feature introduced in the recent releases and almost fully available since version 1.5 (released in May 2024).

Python scikit-learn open source

Dear PyLadies 💚🐍

Our next on-site event is coming on the 13th of March featuring 𓆙 Stefanie Senger from :probabl. and introducing lightning talks where you can take 3 mins to talk about anything Python or tech related (more below)

🌟Agenda (preliminary)

18h45 - 19h00 Come and take your seat

19h00 - 19h10 Welcome by PyLadies Paris and Criteo

19h10 - 19h50 Talk by Stefanie Senger (:probabl.)

19h50 - 20h10 Lightning talks

20h10 - 21h00 pizza, networking

🌟 Stefanie Senger (:probabl.) Talk title: How do YOU start contributing to Open Source? Abstract: In this talk, we'll explore what it needs to start contributing to open source projects as a beginner. We'll discuss the mindset required for successful participation, focusing on qualities like collaboration, curiosity, and a willingness to learn. We'll cover essential pre-requisites such as understanding version control systems, issue tracking, and the basics of code review. Finally, we'll provide practical advice on where to begin your open source journey, including tips for finding beginner-friendly projects and issues and leveraging online resources and communities. If you're looking to take your first steps into the world of open source contribution, don't miss out on this.

About Stefanie: Stefanie is an open source developer at scikit-learn, who has transitioned into this field not too long ago. She has been an historian before and contributed text to the Wikipedia before getting into Python.

Get ready for lightning talks: Many of you told us that you would like to give a talk, but your project is not mature enough. You no longer have to worry about it. Come and practice your public speaking during the 3 minutes time-slot. Some ideas on what you can talk about:

  • Python library or function you love or which you recently discovered,
  • article you've read
  • your journey into Python
  • conference you have attended

You can decide anytime before the start of lightning talks or you may want to prepare up to one slide (in pdf format) which you can send us the latest on the 11th of March to [email protected]

Criteo will be our host and sponsor of the food and the drinks during the networking session after the talks: thank you 💚 and special thanks to Sonia Corne from Criteo for all the support.

Important info

1:❗For safety reasons, the venue's staff will check everyone's identity on site. 📝Please remember to bring an ID with you and register for the event with your real name and family name. Thank you!

2: Please be on time. We can’t guarantee a seat once the meetup has started

# 🔍 FAQ

Q. I'm not female, is it ok for me to attend?

A. Yes, PyLadies Paris events are open to everyone at all levels.

PyLadies Paris Python Talks #13

PyLadies Berlin are excited to bring you this open source workshop dedicated to contributing to scikit-learn!

scikit-learn is a popular machine learning library and is widely adopted in industry as well as academia. In this session, you will be guided on how you can make your own contributions to the project, no prior experience in contributing required! Not only will this teach you new skills and boost your CV, you'll also likely get a nice adrenaline rush when your contribution is accepted! If you don’t finish your contribution during the event, we hope you will continue to work on it after the workshop. PyLadies Berlin also offers regular open source hack events where you can continue to meet and work on your contributions together.

• Format for the session: 6:30 - 6:45 pm: Welcome, networking, food and drinks 6:45 - 6:50 pm Community announcements 6:50 - 7:00 pm: Introduction to scikit-learn - what you can contribute and how to contribute from 7:00 pm: "Office hours" during which you'll be mentored for making a contribution to scikit-learn.

**Pre Workshop Session** For attending the event it is required that you have successfully installed the dev version of scikit-learn, have set up a dedicated python environment for the project, and that tests are running successfully. We have a dedicated pre-workshop event scheduled for these tasks which will be happening on 27 July. It is mandatory to sign up for this event if you don't have a working development environment. You can install all requirements yourself by following the instructions on this repository under "1.environment.md" and "2.building.md": https://github.com/scikit-learn-inria-fondation/EuroSciPy22 . You will also find a lot of useful additional information on this page. Note that during the main workshop, we won't have the resources to help you set up your environment.

❓ Can men attend ❓ Everyone is welcome. :) If you identify as someone well-represented in open source and in tech, please be mindful of the space and privileges you have, and use it to support others.

• Audience level Everyone is welcome to attend this session! If you've never contributed to open source software before, then you will learn how to, and if you have experience contributing, then you can either help mentor other attendees or you can work on more challenging contributions. It is useful to have some scikit-learn, git, and python experience.

• Facilitators The session will be lead by Maren Westermann (PyLadies Berlin, scikit-learn contributor experience team), Adrin Jalali (scikit-learn maintainer), and Guillaume Lemaitre (scikit-learn maintainer), Stefanie Senger (scikit-learn intern), and Noa Tamir (PyLadies Berlin, pandas maintainer)

• Host This event is being sponsored by DB Systel GmbH Food and drinks will be available by our hosts 🥳

• By attending our event, you agree to the PyLadies Code of Conduct: https://www.pyladies.com/CodeOfConduct/

• Contact Interested in speaking at one of our events? Have a good idea for a Meetup? Get in touch with us at [email protected] Find us on the PyLadies Global workspace: 1. https://slackin.pyladies.com enter your email address. 2. Accept the email invitation 3. Go to workspace https://pyladies.slack.com 4. Join channel #city-berlin\, #germany\, #jobs-europe

Let's contribute to scikit-learn! Mentored workshop

PyLadies Berlin are excited to bring you this open source workshop dedicated to setting up your scikit-learn development environment.

scikit-learn is a popular machine learning library and is widely adopted in industry as well as academia. This is a warm-up session for the upcoming workshop, but it is open to anyone who would like to get guidance, even if you won’t attend the workshop. No prior contributing experience required!

By setting up your development environment in advance, you can use the in-person workshop time for finding an issue to work on, and working on a contribution.

In addition, PyLadies Berlin offers regular open source hack events where you can continue to meet and work on your contributions together.

• Format for the session: First 10 minutes : welcome and introduction The rest : "office hours" during which you can ask questions and where you'll be supported with setting up a development environment.

• Preparation work To get the most out of the session, it's encouraged that you check out the following repository and follow the instructions under "1.environment.md" and "2.building.md": https://github.com/scikit-learn-inria-fondation/EuroSciPy22 . You will also find a lot of useful additional information on this page. Please be aware that it could take longer to set up a development environment on ​​a computer running a Windows operating system compared to MacOS or Unix. If you are using Windows, it is recommended to install Windows Subsystem for Linux. You can find instructions on the installation process for example by following the steps described here: https://learn.microsoft.com/en-us/windows/wsl/install Please note that you should be using WSL 2, and here's how you can upgrade to this version if you have WSL 1: https://learn.microsoft.com/en-us/windows/wsl/install#upgrade-version-from-wsl-1-to-wsl-2

• How to join We'll be using Discord for this event. Please follow the steps below: 1. Join the scikit-learn Discord server: https://discord.com/invite/4GbqW7vpbS 2. Join the #help-desk-voice channel. This is the channel where we'll be hosting this workshop.

• Audience level Everyone is welcome to attend this session! If you've never contributed to open source software before, then you will learn how to, and if you have experience contributing, then you can either help mentor other attendees or you can work on more challenging contributions. It is useful to have some scikit-learn, git, and python experience.

• Facilitators The session will be led by Maren Westermann (PyLadies Berlin, scikit-learn contributor experience team), Adrin Jalali (scikit-learn maintainer), and Guillaume Lemaitre (scikit-learn maintainer), and Stefanie Senger (scikit-learn intern).

• By attending our event, you agree to the PyLadies Code of Conduct: https://www.pyladies.com/CodeOfConduct/

❓ Can men attend ❓ Everyone is welcome. :) If you identify as someone well-represented in open source and in tech, please be mindful of the space and privileges you have, and use it to support others.

• Contact Interested in speaking at one of our events? Have a good idea for a Meetup? Get in touch with us at [email protected] Find us on the PyLadies Global workspace: 1. https://slackin.pyladies.com enter your email address. 2. Accept the email invitation 3. Go to workspace https://pyladies.slack.com 4. Join channel #city-berlin\, #germany\, #jobs-europe

Let's contribute to scikit-learn! Mentored workshop - optional preparation event
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