ITGSS Certified Technical Associate: Project Management Practice Exam

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In the context of AI, what does Privacy and Security refer to?

  1. The need to improve AI performance

  2. The requirement to secure sensitive data

  3. The process of reducing AI model complexity

  4. The evaluation of user privacy rights

The correct answer is: The requirement to secure sensitive data

In the context of AI, Privacy and Security specifically refers to the requirement to secure sensitive data. This encompasses the measures and protocols needed to protect information that can be classified as private, confidential, or proprietary against unauthorized access, breaches, and potential misuse. As AI systems often rely on vast amounts of data, including personal identification information, ensuring that data is handled securely is paramount to maintain trust and comply with regulatory standards. Securing sensitive data involves implementing safeguards such as encryption, access controls, and data masking to prevent unauthorized individuals from obtaining critical information. This focus on security is vital not only to protect individuals' rights but also to uphold the integrity of the AI systems themselves. In today’s landscape, where data breaches and privacy concerns are prevalent, a strong emphasis on data security is essential for AI applications to function responsibly. Other options, while related to AI, do not specifically address the core principles of privacy and security. Improving AI performance focuses on enhancing the effectiveness and efficiency of AI systems, which is not inherently about data protection. Reducing AI model complexity pertains to simplifying algorithms and processes, not directly involving privacy concerns. Evaluating user privacy rights, while important, is more about rights assessment than the actionable requirement to secure the actual data itself, which is