Tecnologias emergentes na educação: potencial e desafios da personalização via IA e Blockchain
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Resumo
Este artigo examina como a análise da aprendizagem, a inteligência artificial (IA) e o blockchain estão transformando a personalização da educação. Ao explorar a literatura recente, ele identifica as contribuições e os desafios dessas tecnologias para melhorar os caminhos educacionais. A análise sugere que a integração dessas tecnologias oferece oportunidades únicas para a personalização da aprendizagem, ao mesmo tempo em que levanta questões importantes sobre segurança, privacidade e justiça. A convergência da IA, da análise de aprendizagem e da tecnologia blockchain promete uma revolução na forma como a educação é oferecida e recebida, permitindo uma adaptação precisa ao perfil de cada aluno. Essa integração tecnológica, no entanto, exige uma consideração cuidadosa das estruturas éticas e regulatórias para garantir que a personalização da educação beneficie a todos, sem comprometer a segurança dos dados ou exacerbar a desigualdade. O artigo defende a colaboração estreita entre desenvolvedores de tecnologia, educadores e formuladores de políticas para enfrentar esses desafios e explorar todo o potencial dessas tecnologias emergentes na educação.
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