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This free resource helps agetech teams understand AI governance - from foundational concepts to ISO 42001 frameworks. Hayflick doesn't provide an AI management system, but we offer guidance to help the global agetech industry build AI that serves older adults responsibly.
Need hands-on help? Browse our curated global network of vetted experts in AI governance, security, UX, and related domains.
Older adults are particularly vulnerable to AI failures: medication recommendations, fall detection, health monitoring. Getting AI wrong isn't just a bug - it's a safety issue. AI governance ensures your systems are transparent, fair, and safe for the people who depend on them.
Regulatory Pressure
EU AI Act, FDA oversight incoming
User Trust
85% want to know when AI is used
Risk Mitigation
Prevent costly bias and safety incidents
Choose where to start based on your timeline, resources, and maturity goals
Minimal Viable Governance
Core Governance Framework
ISO 42001 Compliance
Complete these four categories to establish minimal viable AI governance
Understanding the core components of an AI management system
Identify and evaluate AI-specific risks including bias, fairness, privacy, and safety concerns
Clear disclosure of AI use, capabilities, limitations, and decision-making processes to users
Meaningful human review and intervention points for critical AI decisions
Continuous monitoring and mitigation of algorithmic bias across demographic groups
Secure handling of training data with proper consent, lineage, and retention policies
Comprehensive records of AI systems, decisions, performance, and changes over time
Learn from others who've implemented AI governance
Treating AI governance as a one-time checkbox
Implement continuous monitoring and regular reviews
Only considering bias at the end of development
Build fairness testing into every sprint
Hiding AI use from users 'for better UX'
Embrace transparency - users trust disclosed AI more
No plan for when AI makes a wrong decision
Document incident response before incidents happen
Ready-to-use documentation templates, risk assessment frameworks, and compliance checklists
Download TemplatesReal-world examples of age-tech companies implementing AI governance at different maturity levels
Read Case StudiesStay current with EU AI Act, FDA guidance, and international AI regulations
View AI Ethics GuideContinue through the Hayflick framework to ensure your AI product is safe, fair, and compliant