l. ISO/IEC 42001:2023
On December 18, 2023, the International Organization for Standardization (ISO) published the ISO/IEC 42001:2023 – Information Technology – Artificial Intelligence – Management System standard.
ISO/IEC 42001:2023 has been developed by the International Organization for Standardization / International Electrotechnical Commission (ISO/IEC) Joint Technical Committee (JTC) 1, Information technology, Subcommittee (SC) 42, Artificial intelligence.
The standard is a comprehensive sector-agnostic management framework comprising of guidance for organisations to systematically address and control risks related to the development and deployment of AI system.
The proposed risk management framework is articulated on a “Plan-Do-Check-Act” approach encouraging organizations developing and deploying AI systems to adopt policies and objectives, as well as processes to achieve the objectives specific to their AI systems with the goal to reduce potential harms, as follows:
- Plan: Analysis and policy development
- Do: Process Implementation
- Check: Evaluation and audit
- Act: Continual improvement
ISO/IEC 42001:2023 body is relatively generic, but its 4 annexes comprise specific elements, as follows:
Annex A: Management guide for AI system development, including a list of controls, such as:
- Policies related to AI.
- Internal organization (e.g., roles and responsibilities, reporting of concerns)
- Resources for AI systems (e.g., data, tooling, human)
- Impact analysis of AI systems on individuals, groups, & society
- AI system life cycle
- Data for AI systems
- Information for interested parties of AI systems.
- Use of AI systems (e.g., responsible / intended use, objectives)
- Third-party relationships (e.g., suppliers, customers)
Annex B: Implementation guidance for the AI controls listed in Annex A, including data management processes.
Annex C: AI related organizational objectives and risk sources, such as:
- Objectives: Fairness; Security; Safety; Privacy; Robustness; Transparency and explainability; Accountability; Availability; Maintainability; Availability and quality of training data; AI expertise
- Risk sources: Level of automation; Lack of transparency and explainability; Complexity of IT environment; System life cycle issues; System hardware issues; Technology readiness; Risks related to ML.
Annex D: Domain and sector-specific standards.
ll. AI System Impact Assessment
- Stakeholder Identification: Identifying and engaging with all stakeholders affected by AI systems, including individuals, communities, and relevant interest groups.
- Impact Criteria Definition: Establishing clear criteria for assessing the impacts of AI systems, such as ethical considerations, privacy implications, and economic effects.
- Risk Assessment: Conducting comprehensive risk assessments to identify potential negative consequences of AI deployment and use on individuals, groups, and societies.
- Algorithmic Bias Evaluation: Evaluating AI algorithms for biases that may perpetuate discrimination or inequity among different demographic groups.
- Data Privacy and Security: Assessing the privacy and security implications of AI systems, including data handling practices, encryption methods, and compliance with relevant regulations (e.g., GDPR).
- Societal Well-being Analysis: Examining the broader societal implications of AI systems, including their effects on employment, social cohesion, and access to resources.
- Ethical Considerations: Addressing ethical dilemmas associated with AI development and use, such as fairness, accountability, transparency, and human rights.
- Regulatory Compliance: Ensuring compliance with relevant regulations and standards, including ISO 42001, to guide the responsible implementation of AI management systems.
- Continuous Monitoring and Improvement: Implementing mechanisms for ongoing monitoring, evaluation, and improvement of AI systems’ impacts on individuals, groups, and societies.
- Stakeholder Engagement: Facilitating open dialogue and collaboration with stakeholders throughout the AI system impact assessment process to ensure inclusivity, transparency, and trustworthiness.
lll. ISO/IEC 42001:2023 and the AI Act
Author: Petruta Pirvan, Founder and Legal Counsel Data Privacy and Digital Law at EU Digital Partners