Machine learning e o direito

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https://doi.org/10.53798/suprema.2023.v3.n1.a212

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2023-06-30

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SURDEN, Harry; LEAL, Saul Tourinho; SILVA NETO, Wilson Seraine da. Machine learning e o direito. Suprema – Revista de Estudos Constitucionais, Distrito Federal, Brasil, v. 3, n. 1, p. 353–389, 2023. DOI: 10.53798/suprema.2023.v3.n1.a212. Disponível em: https://suprema.stf.jus.br/index.php/suprema/article/view/212. Acesso em: 22 dez. 2024.