9781003276579_10.4324_9781003276579-3.pdf

This introduction to the book provides a conceptual and historical overview of learning engineering. Although its formal definition is still evolving, learning engineering aims to optimize specific learning solutions--from the learning sciences to human-centered design methodologies to data-informed...

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Γλώσσα:English
Έκδοση: Taylor & Francis 2023
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spelling oapen-20.500.12657-862512023-12-20T02:40:42Z Chapter Introduction Goodell, Jim instructional design; user experience design; data analysis; ISLS; International Society of the Learning Sciences; technology-enhanced learning; artificial intelligence; participatory research design; learning design; engineering design; Janet Kolodner; human-centered learning; Association for the Advancement of Computing in Education; IEDMS; online learning; reskilling; E-Learning; learning sciences; Evidence-Based Practices; computer science; learning analytics; big data; Society for Learning Analytics Research; International Educational Data Mining Society; AECT; Association for Educational Communications and Technologies; ICICLE; design-based research; Learning Engineering Toolkit; lean-agile development; SoLAR; IEEE IC Industry Consortium on Learning Engineering; digital learning; course design; upskilling; massive open online courses; human computer interaction; HCI; Jim Goodell; data science; educational data mining; AACE; educational technologies; MOOC bic Book Industry Communication::J Society & social sciences::JN Education bic Book Industry Communication::J Society & social sciences::JN Education::JNM Higher & further education, tertiary education bic Book Industry Communication::J Society & social sciences::JN Education::JNV Educational equipment & technology, computer-aided learning (CAL) bic Book Industry Communication::J Society & social sciences::JN Education::JNQ Open learning, home learning, distance education This introduction to the book provides a conceptual and historical overview of learning engineering. Although its formal definition is still evolving, learning engineering aims to optimize specific learning solutions--from the learning sciences to human-centered design methodologies to data-informed decision-making--in order to understand under what conditions and with what learners a current design is optimal or not, and to develop and test alternative more robust, or more refined, solutions that are more scalable. The author makes the case for learning engineering as a multidisciplinary approach that complements related professional practices and fields of study such as instructional design, learning sciences, data analytics, instructional systems design, and more. After a brief exploration of the differences between science from engineering, this introduction goes on to address the theoretical and professional origins of learning engineering as well as its inherently team-based process, using as examples the language-learning platform Duolingo and the Carnegie Mellon University spinoff Carnegie Learning, Inc. to discuss effective techniques. 2023-12-19T13:08:55Z 2023-12-19T13:08:55Z 2023 chapter 9781032208503 9781032232829 https://library.oapen.org/handle/20.500.12657/86251 eng application/pdf Attribution-NonCommercial-NoDerivatives 4.0 International 9781003276579_10.4324_9781003276579-3.pdf Taylor & Francis Learning Engineering Toolkit Routledge 10.4324/9781003276579-3 10.4324/9781003276579-3 7b3c7b10-5b1e-40b3-860e-c6dd5197f0bb 23f817e1-b552-46eb-8005-3b73c15e8aa4 9781032208503 9781032232829 Routledge 22 open access
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language English
description This introduction to the book provides a conceptual and historical overview of learning engineering. Although its formal definition is still evolving, learning engineering aims to optimize specific learning solutions--from the learning sciences to human-centered design methodologies to data-informed decision-making--in order to understand under what conditions and with what learners a current design is optimal or not, and to develop and test alternative more robust, or more refined, solutions that are more scalable. The author makes the case for learning engineering as a multidisciplinary approach that complements related professional practices and fields of study such as instructional design, learning sciences, data analytics, instructional systems design, and more. After a brief exploration of the differences between science from engineering, this introduction goes on to address the theoretical and professional origins of learning engineering as well as its inherently team-based process, using as examples the language-learning platform Duolingo and the Carnegie Mellon University spinoff Carnegie Learning, Inc. to discuss effective techniques.
title 9781003276579_10.4324_9781003276579-3.pdf
spellingShingle 9781003276579_10.4324_9781003276579-3.pdf
title_short 9781003276579_10.4324_9781003276579-3.pdf
title_full 9781003276579_10.4324_9781003276579-3.pdf
title_fullStr 9781003276579_10.4324_9781003276579-3.pdf
title_full_unstemmed 9781003276579_10.4324_9781003276579-3.pdf
title_sort 9781003276579_10.4324_9781003276579-3.pdf
publisher Taylor & Francis
publishDate 2023
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