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Predicting Data Science Programming Performance: Using Fair ML to detect Bias

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Published in:Smart Learning Environments
Format: Online Article RSS Article
Published: 2026
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container_title Smart Learning Environments
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discipline_display Education
discipline_facet Education
format Online Article
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genre Journal Article
id rss_article:39705
institution FRELIP
journal_source_facet Smart Learning Environments
publishDate 2026
publishDateSort 2026
record_format rss_article
spellingShingle Predicting Data Science Programming Performance: Using Fair ML to detect Bias
— — — — — Distance Education and eLearning
Educational Technology
Education
sub_discipline_display Educational Technology
sub_discipline_facet Educational Technology
subject_display — — — — — Distance Education and eLearning
Educational Technology
Education
— — — — — Distance Education and eLearning
Educational Technology
Education
subject_facet — — — — — Distance Education and eLearning
Educational Technology
Education
title Predicting Data Science Programming Performance: Using Fair ML to detect Bias
title_auth Predicting Data Science Programming Performance: Using Fair ML to detect Bias
title_full Predicting Data Science Programming Performance: Using Fair ML to detect Bias
title_fullStr Predicting Data Science Programming Performance: Using Fair ML to detect Bias
title_full_unstemmed Predicting Data Science Programming Performance: Using Fair ML to detect Bias
title_short Predicting Data Science Programming Performance: Using Fair ML to detect Bias
title_sort predicting data science programming performance: using fair ml to detect bias
topic — — — — — Distance Education and eLearning
Educational Technology
Education
url https://link.springer.com/article/10.1186/s40561-026-00436-2