The principle "ASEAN Guide on AI Governance and Ethics" has mentioned the topic "privacy" in the following places:

    1. Transparency and Explainability

    By disclosing to individuals that AI is used in the system, individuals will become aware and can make an informed choice of whether to use the AIenabled system.

    1. Transparency and Explainability

    It is important for users to be aware of the expected behaviour of the AI systems so they can make more informed decisions about the potential harm of interacting with AI systems.

    1. Transparency and Explainability

    that influenced the AI system’s decision so that they can subsequently make informed decisions on their own.

    3. Security and Safety

    Security refers to ensuring the cybersecurity of AI systems, which includes mechanisms against malicious attacks specific to AI such as data poisoning, model inversion, the tampering of datasets, byzantine attacks in federated learning5, as well as other attacks designed to reverse engineer personal data used to train the AI.

    4. Human centricity

    personal data Protection Commission of Singapore’s (PDPC) Guide on Job Redesign in the Age of AI6 provides useful guidance to assist organisations in considering the impact of AI on its employees, and how work tasks can be redesigned to help employees embrace AI and move towards higher value tasks.

    4. Human centricity

    Personal data protection Commission of Singapore’s (PDPC) Guide on Job Redesign in the Age of AI6 provides useful guidance to assist organisations in considering the impact of AI on its employees, and how work tasks can be redesigned to help employees embrace AI and move towards higher value tasks.

    5. Privacy and Data Governance

    privacy and Data Governance

    5. Privacy and Data Governance

    AI systems should have proper mechanisms in place to ensure data privacy and protection and maintain and protect the quality and integrity of data throughout their entire lifecycle.

    5. Privacy and Data Governance

    Data privacy and protection should be respected and upheld during the design, development, and deployment of AI systems.

    5. Privacy and Data Governance

    The way data is collected, stored, generated, and deleted throughout the AI system lifecycle must comply with applicable data protection laws, data governance legislation, and ethical principles.

    5. Privacy and Data Governance

    Some data protection and privacy laws in ASEAN include Malaysia’s personal data Protection Act 2010, the Philippines’ Data Privacy Act of 2012, Singapore’s personal data Protection Act 2012, Thailand’s personal data Protection Act 2019, Indonesia’s personal data Protection Law 2022, and Vietnam’s personal data Protection Decree 2023.

    5. Privacy and Data Governance

    Some data protection and privacy laws in ASEAN include Malaysia’s Personal data protection Act 2010, the Philippines’ Data Privacy Act of 2012, Singapore’s Personal data protection Act 2012, Thailand’s Personal data protection Act 2019, Indonesia’s Personal data protection Law 2022, and Vietnam’s Personal data protection Decree 2023.

    5. Privacy and Data Governance

    Some data protection and privacy laws in ASEAN include Malaysia’s Personal Data Protection Act 2010, the Philippines’ Data privacy Act of 2012, Singapore’s Personal Data Protection Act 2012, Thailand’s Personal Data Protection Act 2019, Indonesia’s Personal Data Protection Law 2022, and Vietnam’s Personal Data Protection Decree 2023.

    5. Privacy and Data Governance

    Some data protection and privacy laws in ASEAN include Malaysia’s Personal Data Protection Act 2010, the Philippines’ Data privacy Act of 2012, Singapore’s Personal Data Protection Act 2012, Thailand’s Personal Data Protection Act 2019, Indonesia’s Personal Data Protection Law 2022, and Vietnam’s Personal Data Protection Decree 2023.

    5. Privacy and Data Governance

    Organisations should ensure that necessary consent is obtained from individuals before collecting, using, or disclosing personal data for AI development and deployment, or otherwise have appropriate legal basis to collect, use or disclose personal data without consent.

    5. Privacy and Data Governance

    data protection and governance frameworks should be set up and adhered to by developers and deployers of AI systems.

    5. Privacy and Data Governance

    These frameworks should also be periodically reviewed and updated in accordance with applicable privacy and data protection laws.

    5. Privacy and Data Governance

    These frameworks should also be periodically reviewed and updated in accordance with applicable privacy and data protection laws.

    5. Privacy and Data Governance

    For example, data protection impact assessments (DPIA) help organisations determine how data processing systems, procedures, or technologies affect individuals’ privacy and eliminate risks that might violate compliance7.

    5. Privacy and Data Governance

    For example, data protection impact assessments (DPIA) help organisations determine how data processing systems, procedures, or technologies affect individuals’ privacy and eliminate risks that might violate compliance7.

    5. Privacy and Data Governance

    Developers and deployers of AI systems should also incorporate a privacy by design principle when developing and deploying AI systems.

    5. Privacy and Data Governance

    privacy by design is an approach that embeds privacy in every stage of the system development lifecycle.

    5. Privacy and Data Governance

    privacy by design is an approach that embeds privacy in every stage of the system development lifecycle.

    5. Privacy and Data Governance

    Data privacy is essential in gaining the public’s trust in technological advances.

    5. Privacy and Data Governance

    Another consideration is investing in privacy enhancing technologies to preserve privacy while allowing personal data to be used for innovation.

    5. Privacy and Data Governance

    Another consideration is investing in privacy enhancing technologies to preserve privacy while allowing personal data to be used for innovation.

    5. Privacy and Data Governance

    Another consideration is investing in privacy enhancing technologies to preserve privacy while allowing personal data to be used for innovation.

    5. Privacy and Data Governance

    privacy enhancing technologies include, but are not limited to, differential privacy, where small changes are made to raw data to securely de identify inputs without having a significant impact on the results of the AI system, and zero knowledge proofs (ZKP), where ZKP hide the underlying data and answer simple questions about whether something is true or false without revealing additional information

    5. Privacy and Data Governance

    privacy enhancing technologies include, but are not limited to, differential privacy, where small changes are made to raw data to securely de identify inputs without having a significant impact on the results of the AI system, and zero knowledge proofs (ZKP), where ZKP hide the underlying data and answer simple questions about whether something is true or false without revealing additional information