❄️ The Christmas release is out ❄️ 🎥 Release video below Discover scikit-learn 1.6 and its: 🟢 2 major features & 34 features 🔵 5 efficiency improvements & 21 enhancements 🟡 14 API changes 🔴 30 fixes 👥 160 contributors (thank you all!) More details in the changelog: https://lnkd.in/e5pui3ev You can upgrade with pip as usual: pip install -U scikit-learn Using conda-forge builds: conda install -c conda-forge scikit-learn Thanks to 👋 Vincent D. Warmerdam for this release highlights video. https://lnkd.in/eRM_5rte #scikitlearn #Python #release #sklearn #software #ML #machinelearning #datavisualization #dataanalytics #data #dataanalysis #deeplearning #opensource #opensourcesoftware #opensourcecommunity
About us
scikit-learn is an Open Source library for machine learning in Python.
- Website
-
https://scikit-learn.org
External link for scikit-learn
- Industry
- Software Development
- Company size
- 2-10 employees
- Type
- Nonprofit
Employees at scikit-learn
-
Guillaume Lemaitre
Open-source engineer @ :probabl.
-
Adam Li, PhD
Causal AI Machine Learning Researcher and Engineer
-
Thomas J. Fan
Senior Machine Learning Engineer at Union.ai
-
Lauren Burke-McCarthy
Senior Data Science Lead at Further | AI & DS Strategy | Head of Community at Women in Analytics | Host, WIA After Hours Podcast | Finding creative…
Updates
-
scikit-learn reposted this
Talks from PyData Paris are now available! I’m excited to share our "Update on the Latest scikit-learn Features," presented alongside Guillaume Lemaitre. I cover advancements in the metadata routing API, while Guillaume introduces the new TunedThresholdClassifierCV and other quality improvements. Video link in the comments.
-
PyData Paris 2024 45-minute Keynote by Olivier Grisel: 🟠 Handling predictive uncertainty in machine learning Machine Learning practitioners build predictive models from "noisy" data resulting in uncertain predictions. But what does "noise" mean in a machine learning context? #python #machinelearning #datascience #opensource https://lnkd.in/ez2hn8dp
KEYNOTE: Olivier Grisel - Handling predictive uncertainty in Machine Learning | PyData Paris 2024
https://www.youtube.com/
-
scikit-learn reposted this
Are you one of the 1.5 billion (yes, BILLION) people who’ve downloaded scikit-learn? ✋🏼 (eta: scikit-learn has been downloaded 1.5 billion times. Likely you've downloaded it more than once; still--a phenomenal number! 🌟 ) A cornerstone for machine learning in Python, scikit-learn has become an essential tool for data scientists worldwide. While I knew it was an open-source library, I was surprised to learn about its French origins and the pivotal support it received from Inria (the National Institute for Research in Digital Science and Technology) and the French government. 🇫🇷 Curious to learn more? 🎧 Check out the link in the comments to an interesting Practical AI interview with Yann Lechelle, CEO of the spin-out Probabl that now supports sci-kit learn, and one of its core developers, Guillaume Lemaitre. Fun facts I learned : ✔ Despite the rise of deep learning and GenAI, scikit-learn’s foundational models still account for 95%+ of current machine learning use cases. ✔ 22% of scikit-learn downloads come from the U.S. alone. ✔ Behind the library are 10 full-time developers, supported by a passionate community of volunteer contributors who keep it thriving. If you’re a fan of scikit-learn (or just curious about its impact), give the interview a listen!
-
scikit-learn reposted this
Did you know that many #opensource repositories suffer from a large number of open pull requests that need a reviewer? Open source maintainers are usually very busy with many of them being volunteers. This easily leads to a great number of pull requests that lack attention. So this Hacktoberfest I've been focussing on reviewing pull request and I encourage you to do the same! 😊 Many people are afraid of starting to review code because they fear that they lack the required knowledge and experience. However, if you have made a few contributions of a similar kind to a project, for example code documentation, you definitely have the necessary skills to start reviewing code documentation! Starting to review open source code is very educational, increases your competence over time and will make you feel more connected to the community of the project you are involved with. For more information about the different aspects of reviewing a pull request, check out this video: https://lnkd.in/eQ2mEAQ5
[27] 3 Components of Reviewing a Pull Request (scikit-learn) (Thomas Fan)
https://www.youtube.com/
-
Tick-tock, tick-tock ⏰ The user survey is closing soon... Participate to this collaborative effort to improve your favorite package! We would like to thank the teams from University of Oxford, POSSEE OpenTeams, and :probabl. as well as many scikit-learn contributors, for their time and effort in designing and translating it. https://lnkd.in/eYNG2bjd
-
📢 Bugfix release - scikit-learn 1.5.2 is out! 🔴 6 fixes It fixes several regressions introduced in version 1.5 More details in the changelog: https://lnkd.in/emPUn6Rt You can upgrade with pip as usual: pip install -U scikit-learn or using the conda-forge builds: conda install -c conda-forge scikit-learn Thanks to all the contributors!
-
Yay, the 2024 scikit-learn user survey is out! Please join this structured dialogue with the scikit-learn team to better guide and prioritize decision-making about the development of the project. 🌎 We have the survey available in these languages: Arabic, English, French, Japanese, Mandarin, Portuguese, Spanish. ⏱️ The survey will take about 15 minutes of your time and close on October 14th, 2024. 📝 A survey results report and anonymized dataset will be publicly released by the end of 2024. ➡️ To get started, click here: https://lnkd.in/eyAyjEu2
SCIKIT-LEARN USER SURVEY
docs.google.com
-
Thrilled to share that scikit-learn has been awarded a CZI-EOSS grant for cycle 6! 🎉 With this funding, we'll enhance and expand tools for predictive model evaluation and inspection. Read all about it here: https://lnkd.in/eCpr6uji 📝 A big thank you to Chan Zuckerberg Initiative and Wellcome Trust for their support! #MachineLearning #OpenScience #python #DataScience
Chan Zuckerberg Initiative considers scikit-learn an Essential Open Source Software
blog.scikit-learn.org
-
🔵 There is now a handy widget on the scikit-learn GitHub repo for citations. 🔸GitHub has added this built-in citation support so researchers and scientists can more easily receive acknowledgments for their contributions to software. 🔸Check it out! If you use scikit-learn in a scientific publication, we appreciate citations. https://lnkd.in/dwncfBb7 #opensource #datascience #machinelearning