Just a quick note that I'm hiring pre-docs in economics at the University of Toronto this year. Unlike in a typical pre-doc, I anticipate that there will be some scope for pre-docs to develop their own projects. Potential candidates interested in AI are particularly encouraged to apply, but there could also be scope to work on projects relating to forecasting and evidence-based policy, among other topics.

Deadline: March 31, 2025

Apply now

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