What critical shift in perspective is emphasized regarding accountability in AI systems?
Answer
The focus shifts from 'what the algorithm predicts' to 'who answers for the prediction'.
Accountability requires the organization to establish structures defining responsibility when failures occur because the AI entity itself cannot face consequences. This means focusing on human responsibility for the outcome rather than just the algorithm's output.

Related Questions
What three core concepts coalesce around the established principles for working effectively in responsible AI?What is the primary difference in focus between ethical AI and responsible AI?What critical shift in perspective is emphasized regarding accountability in AI systems?What characteristic must a formal governance mechanism possess to successfully bridge the gap between abstract ideals and operational rules?According to the provided mapping table, which area corresponds primarily to 'Explainability' in the IBM framework?What constitutes the foundational document that translates general responsible AI principles into actionable operational guidelines?Which essential role is responsible for ensuring adherence to both internal and external ethical practices within an AI team?In the context of operationalizing responsibility, what specific failure mode in an airline chatbot example did the company attempt to use to avoid accountability?Which required pillar of the Responsible AI Policy mandates the establishment of approval workflows and an appeals process for affected individuals?Why is assembling interdisciplinary and diverse teams considered essential in responsible AI work?