I'm Nicholas, a political risk analyst & futures aficionado. 

I was just assigned as a Team Lead in INFER while a team contest has just opened, and I'm looking for longtermists and superforecasters for our team. I wanted to invite you to participate or to refer suitable people. The forecasting assignments include AI Governance, Advanced Materials, Energy, and Biosecurity assignments while the commitment is as minimum as one forecast per month. 

INFER is launching a 6-month forecasting tournament – the INFER Future Bowl – just for teams! The goal is to create friendly competition among the INFER community of teams and encourage regular participation and forecasting practice across a variety of topics. You'll  have the opportunity to win a portion of $5,000 in cash prizes. 

 If you are interested in joining as, please feel free to email or DM me. 

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