What measures should be taken to prevent data misuse in AI?
Answer / Chitra Gautam
To prevent data misuse in AI, several measures can be implemented. These include: (1) Implementing strong data governance policies and procedures, (2) Anonymizing and pseudonymizing data whenever possible, (3) Limiting data access to authorized personnel only, (4) Regularly auditing and monitoring data usage, (5) Using techniques like differential privacy for added protection, (6) Providing transparency about data collection practices and usage, and (7) Ensuring compliance with relevant data protection laws and regulations.
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