ensuring diversity and inclusivity in machine learning algorithms
Ensuring diversity and inclusivity in machine learning algorithms refers to the process of designing and developing algorithms that are fair, unbiased, and inclusive, taking into account multiple perspectives, ethnicities, genders, and other relevant factors to avoid discriminatory and unjust outcomes.
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