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  • 08-1Have you implemented techniques to remove bias in the AI model?
    Determine applicability: Consider this question if there is any potential bias due to the impact or use of sensitive attributes in input or output when developing an AI model in the public sector, and determine if the requirement has been fulfilled.

    • An AI model learns the potential biases in data and even amplifies biases. It is advisable to implement techniques to not only remove potential biases in data during data cleansing but also remove or mitigate model bias in model development.

    • These techniques are divided into three based on the implementation stage of the bias mitigation method: pre-processing, in-processing, and post-processing. Select and implement an appropriate technique depending on the AI model, objectives, and mission.