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Review of Wayne Holmes and Kaśka Porayska-Pomsta (Eds.). (2022). The Ethics of Artificial Intelligence in Education: Practices, Challenges and Debates

Abingdon, UK and New York, NY: Routledge. 312 pp. ISBN 9780429329067 (E-Book)

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Scott, H. Review of Wayne Holmes and Kaśka Porayska-Pomsta (Eds.). (2022). The Ethics of Artificial Intelligence in Education: Practices, Challenges and Debates. Postdigit Sci Educ 6, 705–710 (2024). https://doi.org/10.1007/s42438-023-00439-z

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