Hassan, Muhammad Umair, Alaliyat, Saleh, Sarwar, Raheem, NAWAZ, Raheel and Hameed, Ibrahim A. (2023) Leveraging deep learning and big data to enhance computing curriculum for industry-relevant skills: A Norwegian case study. Heliyon, 9 (4). e15407. ISSN 2405-8440
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Abstract or description
Computer science graduates face a massive gap between industry-relevant skills and those learned at school. Industry practitioners often counter a huge challenge when moving from academics to industry, requiring a completely different set of skills and knowledge. It is essential to fill the gap between the industry's required skills and those taught at varsities. In this study, we leverage deep learning and big data to propose a framework that maps the required skills with those acquired by computing graduates. Based on the mapping, we recommend enhancing the computing curriculum to match the industry-relevant skills. Our proposed framework consists of four layers: data, embedding, mapping, and a curriculum enhancement layer. Based on the recommendations from the mapping module, we made revisions and modifications to the computing curricula. Finally, we perform a case study of the Norwegian IT jobs market, where we make recommendations for data science and software engineering-related jobs. We argue that by using our proposed methodology and analysis, a significant enhancement in the computing curriculum is possible to help increase employability, student satisfaction, and smart decision-making. © 2023 The Authors
Item Type: | Article |
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Uncontrolled Keywords: | Computing education research; Curriculum development; Internet education; Deep learning; Student experiences; Employability ; |
Faculty: | Executive |
Depositing User: | Raheel NAWAZ |
Date Deposited: | 11 Sep 2024 15:35 |
Last Modified: | 11 Sep 2024 15:58 |
URI: | https://eprints.staffs.ac.uk/id/eprint/8454 |