Answer Posted / Pramod Kumar Mishra
To detect and mitigate bias in AI systems, data should be collected from diverse sources to avoid skewing results. Bias can also be reduced by using fairness-aware machine learning algorithms, which aim to minimize discrimination in predictions. Regular audits of AI systems can help identify and correct any biases that may have crept in.
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