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Auteurs principaux: Tkáč, Michal, Sieber, Jakub, Kuhlmann, Lara, Brueggenolte, Matthias, Rinciog, Alexandru, Henke, Michael, Schweidtmann, Artur M., Gao, Qinghe, Theisen, Maximilian F., Shawi, Radwa El
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2401.16291
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author Tkáč, Michal
Sieber, Jakub
Kuhlmann, Lara
Brueggenolte, Matthias
Rinciog, Alexandru
Henke, Michael
Schweidtmann, Artur M.
Gao, Qinghe
Theisen, Maximilian F.
Shawi, Radwa El
author_facet Tkáč, Michal
Sieber, Jakub
Kuhlmann, Lara
Brueggenolte, Matthias
Rinciog, Alexandru
Henke, Michael
Schweidtmann, Artur M.
Gao, Qinghe
Theisen, Maximilian F.
Shawi, Radwa El
contents Machine Learning (ML) techniques are encountered nowadays across disciplines, from social sciences, through natural sciences to engineering. The broad application of ML and the accelerated pace of its evolution lead to an increasing need for dedicated teaching concepts aimed at making the application of this technology more reliable and responsible. However, teaching ML is a daunting task. Aside from the methodological complexity of ML algorithms, both with respect to theory and implementation, the interdisciplinary and empirical nature of the field need to be taken into consideration. This paper introduces the MachineLearnAthon format, an innovative didactic concept designed to be inclusive for students of different disciplines with heterogeneous levels of mathematics, programming and domain expertise. At the heart of the concept lie ML challenges, which make use of industrial data sets to solve real-world problems. These cover the entire ML pipeline, promoting data literacy and practical skills, from data preparation, through deployment, to evaluation.
format Preprint
id arxiv_https___arxiv_org_abs_2401_16291
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MachineLearnAthon: An Action-Oriented Machine Learning Didactic Concept
Tkáč, Michal
Sieber, Jakub
Kuhlmann, Lara
Brueggenolte, Matthias
Rinciog, Alexandru
Henke, Michael
Schweidtmann, Artur M.
Gao, Qinghe
Theisen, Maximilian F.
Shawi, Radwa El
Machine Learning
Computers and Society
Machine Learning (ML) techniques are encountered nowadays across disciplines, from social sciences, through natural sciences to engineering. The broad application of ML and the accelerated pace of its evolution lead to an increasing need for dedicated teaching concepts aimed at making the application of this technology more reliable and responsible. However, teaching ML is a daunting task. Aside from the methodological complexity of ML algorithms, both with respect to theory and implementation, the interdisciplinary and empirical nature of the field need to be taken into consideration. This paper introduces the MachineLearnAthon format, an innovative didactic concept designed to be inclusive for students of different disciplines with heterogeneous levels of mathematics, programming and domain expertise. At the heart of the concept lie ML challenges, which make use of industrial data sets to solve real-world problems. These cover the entire ML pipeline, promoting data literacy and practical skills, from data preparation, through deployment, to evaluation.
title MachineLearnAthon: An Action-Oriented Machine Learning Didactic Concept
topic Machine Learning
Computers and Society
url https://arxiv.org/abs/2401.16291