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- # ### Blog Post Template ####
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# ### Post Information ####
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title : " Skolar: an open-source initiative to democratize open data science"
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<span style =" color :red " >* This blog post has been submitted by Probabl, a sponsor of scikit-learn.* </span >
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- The scikit-learn project always puts efforts on education to build and nurture a
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- strong vibrant open-source community. The goal is straightforward: give
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+ The scikit-learn project values educational efforts that build and nurture a
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+ strong vibrant open-source community. The goal of this is straightforward: give
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everyone, everywhere, the tools they need to easily grasp, engage with, and
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meaningfully contribute to data science using open-source software. This mission
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is shared and actively supported by [ Probabl] ( https://probabl.ai/ ) , a company
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that helps maintain scikit-learn by employing many of its core contributors and
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- investing in its long-term sustainability. With their support and a deep
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- commitment from the community, we continue building bridges between research,
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+ investing in its long-term sustainability. With Probabl's support and a deep
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+ commitment from the community, the scikit-learn ecosystem continues building bridges between research,
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software, and education.
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When the [ Inria scikit-learn MOOC] ( https://inria.github.io/scikit-learn-mooc/ )
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- (Massive Open Online Course) first went live, our community got a front-row seat
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+ (Massive Open Online Course) first went live, the community got a front-row seat
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to the amazing impact of practical, accessible and open learning. Created by
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several core developers and maintainers of scikit-learn—now working at
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Probabl—the MOOC has reached over 40,000 learners worldwide, clearly
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Inria MOOC but enhanced with new material on unsupervised learning, especially
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clustering.
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- The next stages, professional and expert levels, will launch soon. We’ll also
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- add more courses covering other open-source libraries such as skrub (for data
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- wrangling), hazardous (for survival analysis), and fairlearn (for fairness).
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+ The next stages, professional and expert levels, will be released soon. We'll
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+ also add more courses covering other open-source libraries such as
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+ [ skrub] ( https://skrub-data.org ) (for data wrangling),
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+ [ hazardous] ( https://soda-inria.github.io/hazardous/ ) (for survival analysis),
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+ and [ fairlearn] ( https://fairlearn.org/ ) (for fairness).
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Additionally, our scikit-learn team is planning to create industry-specific
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modules tackling real-world needs in fields like healthcare, finance, medicine,
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and beyond.
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