A criação de uma coalização de políticas públicas baseadas em evidências no Brasil: auxiliando na construção de um alicerce político para avançar em uma agenda longoprazista e de governança de IA

Fernando Moreno, Vitor Douglas Andrade

Mudanças duradouras em política pública dependem, em democracias, de coalizões políticas amplas capazes de atravessar ciclos eleitorais.

Partindo dessa premissa, e da centralidade de evidências científicas robustas para uma gestão pública eficiente, este artigo propõe a criação de uma Coalizão Brasileira de Políticas Públicas Baseadas em Evidências, fruto da parceria entre as comunidades em torno da Associação Brasileira de Psicologia Baseada em Evidências (ABPBE) e do Altruísmo Eficaz Brasil (AEBr).

Melhorar a tomada de decisões institucionais já foi tida como uma das questões mais relevantes pelo guia de carreiras 80.000 hours e pela comunidade do Altruísmo Eficaz, ainda que tal atuação tenha sido despriorizada em avaliações mais recentes. De todo modo, entendemos que a coalizão pode ser em si meritória no desenvolvimento institucional do país e constituir um alicerce político proveitoso para avançar pautas longoprazistas mais complexas, como segurança de IA e prevenção de pandemias.

O artigo detalha o desenho institucional proposto para a Coalizão: seus princípios norteadores, grupos de trabalho temáticos, critérios de seleção de pautas, metodologia de avaliação de políticas (eficácia e riscos, pertinência dos objetivos, eficiência e sustentabilidade intertemporal), produção de notas técnicas, estratégias de comunicação e incidência e mecanismos de governança e prestação de contas.

Como trabalho futuro, indicam-se os próximos passos para a efetiva implantação da Coalizão no segundo semestre de 2026, incluindo captação de recursos e recrutamento de voluntários e profissionais dedicados.

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Cite this work

@misc {

title={

(HckPrj) A criação de uma coalização de políticas públicas baseadas em evidências no Brasil: auxiliando na construção de um alicerce político para avançar em uma agenda longoprazista e de governança de IA

},

author={

Fernando Moreno, Vitor Douglas Andrade

},

date={

},

organization={Apart Research},

note={Research submission to the research sprint hosted by Apart.},

howpublished={https://apartresearch.com}

}

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This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.
This work was done during one weekend by research workshop participants and does not represent the work of Apart Research.