CT 2.0Erstpublikation in: Koli Calling '21: Proceedings of the 21st Koli Calling International Conference on Computing Education Research, November 2021
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Zusammenfassungen
CT has been the central rallying point for K-12 computing education at least since the early 2010s. Many teachers, school administrators, and policymakers have joined the movement. A consensus has emerged over the conceptual landscape of CT.
Meanwhile, machine learning (ML) has triggered some major changes in many sectors of computing. Children’s lives today are full of ML-driven services—take TikTok’s spot-on recommendations, social media’s automatic tagging of their friends in photos, and targeted personalized advertisement, just to mention a few. Children cannot learn to think about and design ML technology from learning classical programming. ML is poised to upend the CT consensus.
Look at some of the changes ML has already triggered in computing. It has enabled greatly improved speech and image recognition, powerful recommendations on streaming services, autonomous navigation of cars, super-human performance in board and computer games, and even alternative-reality “deepfake” videos. Most advances in topics above are due to hardware evolution to non-traditional, special purpose architectures, new algorithms such as convolutional neural networks (CNN) or generative adversarial networks (GAN), and new objectives and measures of success.
We will show that several key CT concepts, including debugging, problem-solving workflow, correctness, and notional machines, are insufficient for ML and need to be extended. Moreover, ML introduces new concepts including neural networks, curating and training data, and reinforcement learning that are not part of CT at all. All these changes challenge the traditional views related to teaching CT in K–12.
ML is not the only emerging technology appearing in the computing landscape. Quantum computing and biological computing are not far behind. We need to start rethinking how CT must evolve to anticipate and meet these challenges.
Von Matti Tedre, Peter J. Denning, Tapani Toivonen im Text CT 2.0 (2021) Meanwhile, machine learning (ML) has triggered some major changes in many sectors of computing. Children’s lives today are full of ML-driven services—take TikTok’s spot-on recommendations, social media’s automatic tagging of their friends in photos, and targeted personalized advertisement, just to mention a few. Children cannot learn to think about and design ML technology from learning classical programming. ML is poised to upend the CT consensus.
Look at some of the changes ML has already triggered in computing. It has enabled greatly improved speech and image recognition, powerful recommendations on streaming services, autonomous navigation of cars, super-human performance in board and computer games, and even alternative-reality “deepfake” videos. Most advances in topics above are due to hardware evolution to non-traditional, special purpose architectures, new algorithms such as convolutional neural networks (CNN) or generative adversarial networks (GAN), and new objectives and measures of success.
We will show that several key CT concepts, including debugging, problem-solving workflow, correctness, and notional machines, are insufficient for ML and need to be extended. Moreover, ML introduces new concepts including neural networks, curating and training data, and reinforcement learning that are not part of CT at all. All these changes challenge the traditional views related to teaching CT in K–12.
ML is not the only emerging technology appearing in the computing landscape. Quantum computing and biological computing are not far behind. We need to start rethinking how CT must evolve to anticipate and meet these challenges.
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Nicht erwähnte Begriffe | Digitalisierung, Eltern, Lernen, Schule, Schweiz, supervised learning, Unterricht |
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7 Erwähnungen
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- HDI 2023 - Hochschuldidaktik Informatik (Jörg Desel, Simone Opel) (2023)
- Informatics in Schools. Beyond Bits and Bytes: Nurturing Informatics Intelligence in Education - 16th International Conference on Informatics in Schools: Situation, Evolution, and Perspectives, ISSEP 2023, Lausanne, Switzerland, October 23–25, 2023 (Jean-Philippe Pellet, Gabriel Parriaux) (2023)
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- DELFI 2024 (Sandra Schulz, Natalie Kiesler) (2024)
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- WIPSCE '24 (Tilman Michaeli, Sue Sentance, Nadine Bergner) (2024)
- Unpacking Approaches to Learning and Teaching Machine Learning in K-12 Education - Transparency, Ethics, and Design Activities (Luis Morales-Navarro, Yasmin B. Kafai) (2024)
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Beat und dieses Konferenz-Paper
Beat hat Dieses Konferenz-Paper während seiner Zeit am Institut für Medien und Schule (IMS) ins Biblionetz aufgenommen. Beat besitzt kein physisches, aber ein digitales Exemplar. Eine digitale Version ist auf dem Internet verfügbar (s.o.). Es gibt bisher nur wenige Objekte im Biblionetz, die dieses Werk zitieren. Beat hat Dieses Konferenz-Paper auch schon in Vorträgen erwähnt.