How can AI systems be designed to promote inclusivity and diversity?
Answer / Pankaj Kumar Pal
AI systems can be designed to promote inclusivity and diversity by incorporating data from diverse sources, using algorithms that minimize bias, ensuring transparency in decision-making processes, and involving stakeholders from underrepresented groups in the development process.
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