ABSTRACT Despite industrial initiatives and government regulations to ensure fairness in AI, gender bias remains a concerning issue, causing bad user experience, injustices, and mental harm to women. Computing education has incorporated ethics discussions to prepare students to design more ethical AI systems. However, through interviews with 18 AI practitioners/learners, we revealed limitations of the current gender bias education in the computing curricula – the education is absent, sporadic, abstract, or tech‐oriented. We designed and evaluated hands‐on tutorials to raise AI practitioners/learners' awareness and knowledge of gender bias – such tutorials have the potential to complement the insufficient education on AI gender bias in computing/AI courses. By reflecting on the lessons from the design and evaluation process, we synthesized design implications and a rubric to guide future research, education, and design.
Zhou et al. (Wed,) studied this question.
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