Featured Resources
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2026 Quarter 1 AI & Interoperability Brief Release
Interoperability is foundational to AI success in education, and building an underlying structure grounded in data standards and data maturity is key to implementing AI that will truly benefit schools and students.
The 2026 Quarterly AI and Interoperability Brief Series explores the intersection of interoperability and AI, highlighting the latest trends, case studies, and tools you can use to improve your educational technology ecosystem.
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Currently, the lack of standardized, national definitions for core service terms creates a systemic ‘transfer gap.’ This lack of clarity often results in significant delays for students waiting to receive comparable services in a new district. To address this, researchers convened an expert panel to establish a much-needed consensus on these terms.
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AI Data Use and Protection - Worksheet
In the rush to adopt an AI tool, don’t let data security become an afterthought. The AI Data Use and Protection Worksheet is designed to help cross-functional leaders—from the CISO to General Counsel—a clear, standardized vetting process.
This worksheet allows teams to create a side-by-side risk matrix for every vendor, allowing them to make a safe, confident, and informed decision before entering a vendor agreement.
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Considerations for the School Districts in Considering Large Scale AI Model Deals
As Artificial Intelligence (AI) and frontier AI models rapidly reshape the educational landscape, school systems face a dual challenge: harnessing these tools' transformative potential while rigorously safeguarding student data, privacy, and well-being. Procurement is no longer just about purchasing; along with AI literacy, it is the first line of defense in responsible AI governance.
The following slide deck is available for consideration and understanding.
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Considerations for the School Districts in Considering Large Scale AI Model Deals
As Artificial Intelligence (AI) and frontier AI models rapidly reshape the educational landscape, school systems face a dual challenge: harnessing these tools' transformative potential while rigorously safeguarding student data, privacy, and well-being. Procurement is no longer just about purchasing; along with AI literacy, it is the first line of defense in responsible AI governance.
For years, Project Unicorn has championed the need for data to flow seamlessly and securely between systems to inform instruction and operations. Simultaneously, the EDSAFE AI Alliance has led the global charge on the SAFE (Safety, Accountability, Fairness, and Efficacy) benchmarks for AI adoption in education.
Now, as "frontier models"—highly capable, large-scale AI systems—enter our schools, these two missions must converge. Procurement is the intersection where safety meets connectivity.
We developed this resource to bridge the gap between technical data governance and ethical AI implementation, responding to practical needs from our work leading 29 school district policy labs and 10 state policy labs. These questions are designed to help district and state leadership vet tools not just for what they can do, but for how they fit into a secure, interoperable, and learner-centered ecosystem. Whether you are evaluating a standalone AI app or integrating a large-scale frontier model, this guide can be part of your blueprint for responsible innovation.
Resource Database
Arizona DoE Successfully Launches New Data System
Our partners at EdFi Alliance launched a video featuring their partners at the Arizona Department of Education. View the video here and read all about their progress here in this case study. Stay tuned for more videos and updates in this series!
Teachers Know Best
Read this study from the Bill and Melinda Gates Foundation on making data work for teachers and students.
Centralized vs. Distributed Educational Solution Architectures – Data Confederacies Compared to Data Unions
Compare and Contrast: Multi-tier Educational Data Sharing Architectures