
[TMP-029] Contesting Black-Box Decisions
This projects aims to establish foundations for integrating contestability into decision-making systems based on socio-ethical policies
"Research bundles" give you a space in the AI on-demand platform where you can collect and publish the outputs of a small research project in a compact way. A research bundle collects in a single place all the assets (code, data, tutorials, examples, ...) produced by your project and published on the AI on-demand platform. Of course, you can also put links to assets published elsewhere, like Github or Zenodo.
This projects aims to establish foundations for integrating contestability into decision-making systems based on socio-ethical policies
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