Treasury Secretary Bessent predicts 3% GDP growth as Trump preps economy tour

nypostPublicado em 2025-12-08Última atualização em 2025-12-08

Resumo

Treasury Secretary Steven Bessent forecasts 3% GDP growth as former President Donald Trump prepares to launch an economy-focused tour. The announcement highlights key economic priorities and policy directions expected to be emphasized during the upcoming tour.

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