Introduction to Machine Learning with Robots and Playful Learning
Author: Viktoriya Olari, Kostadin Cvejoski and Oyvind Eide
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Description: Introduction to Machine Learning with Robots and Playful Learning por Viktoriya Olari, Kostadin Cvejoski and Oyvind Eide presents an engaging approach to teaching machine learning concepts to children using robots and a block-based programming language. This paper is valuable for its constructionist approach, allowing students to experiment and directly manipulate machine learning algorithms.
Pages: 10
Megabytes: 0.35 MB
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