This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
ApartSprints
Women in AI Safety Hackathon
679781551b57b97e23660edd
Women in AI Safety Hackathon
March 10, 2025
Accepted at the 
679781551b57b97e23660edd
 research sprint on 

Morph: AI Safety Education Adaptable to (Almost) Anyone

One-liner: Morph is the ultimate operation stack for AI safety education—combining dynamic localization, policy simulations, and ecosystem tools to turn abstract risks into actionable, culturally relevant solutions for learners worldwide. AI safety education struggles with cultural homogeneity, abstract technical content, and unclear learning and post-learning pathways, alienating global audiences. We address these gaps with an integrated platform combining culturally adaptive content (e.g. policy simulations), learning + career pathway mapper, and tools ecosystem to democratize AI safety education. Our MVP features a dynamic localization that tailors case studies, risk scenarios, and policy examples to users’ cultural and regional contexts (e.g., healthcare AI governance in Southeast Asia vs. the EU). This engine adjusts references, and frameworks to align with local values. We integrate transformer-based localization, causal inference for policy outcomes, and graph-based matching, providing a scalable framework for inclusive AI safety education. This approach bridges theory and practice, ensuring solutions reflect the diversity of societies they aim to protect. In future works, we map out the partnership we’re currently establishing to use Morph beyond this hackathon.

By 
Shafira Noh, Wan Aimran
🏆 
4th place
3rd place
2nd place
1st place
 by peer review
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This project is private