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ADRCon 2025 : Administrative Data Research Conference

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Link: https://mdi.georgetown.edu/research-adrcon2025-call-for-speakers/
 
When Jun 24, 2025 - Jun 25, 2025
Where Washington, DC
Submission Deadline Mar 14, 2025
Categories    administrative data   public data   data governance   data linkage
 

Call For Papers

Submit your proposal to share your work at the inaugural Administrative Data Research Conference (ADRCon)

ADRCon 2025, hosted by the Massive Data Institute at Georgetown University McCourt School of Public Policy, Mathematica, and Northwestern University, is now accepting program proposals for both days of the June 24-25, 2025 conference in Washington D.C.

If you’ve been working with administrative data and are ready to share your insights, this is the perfect opportunity to present your findings to a community of researchers and evaluators across the public and private sector.

Additional information on the conference, requirements, and submission details can be found here. https://bit.ly/ADRCon_CFS

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