EDUCA AÇÃO COM CIÊNCIA: POR UMA SOCIEDADE BRASILEIRA DE ENSINO E PESQUISAS EM INTELIGÊNCIA ARTIFICIAL E LETRAMENTO CIENTÍFICO

Autores

DOI:

https://doi.org/10.22481/reed.v3i7.10336

Palavras-chave:

Letramento Científico, Inteligência Artificial, Ciência

Resumo

Os avanços em inteligência artificial (IA) trouxeram novas oportunidades e desafios para os pesquisadores lidarem com problemas e sistemas complexos e incertos, que não poderiam ser resolvidos pelos métodos tradicionais. Abordagens tradicionais desenvolvidas para problemas matematicamente bem definidos com modelos precisos podem carecer de autonomia e capacidade de tomada de decisão em ambientes incertos e nebulosos. Este trabalho objetiva, com base em pesquisa bibliográfica, apresentar a IA com o intuito de revelar sua capacidade de abrangência, natureza científica e sua aplicabilidade nos contextos do letramento científico. Contemplar a complexidade de ambos como modos positivos em múltiplas áreas de pesquisas científicas e desenvolvimentos nos processos de ensino e aprendizagem. Aqui pretende-se revelar a urgente necessidade de criação e organização de uma “sociedade brasileira de pesquisas em inteligência artificial e letramento científico” (SBPIALC). A pesquisa revelou uma certa escassez de trabalhos publicados sobre o uso da IA no letramento científico quando comparada com o número de trabalhos encontrados sobre a IA na educação. Entretanto, a IA está habilitada para ser parte integrante das atividades dos pesquisadores, professores e estudantes na produção de conhecimento e letramento científico devido a sua capacidade de coleta e análises de grandes dados de informação.

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Biografia do Autor

Antonio Luiz de Almeida, uneb

Licenciado em Física pela Universidade Federal Rural do Rio de Janeiro (UFRRJ). Mestrado/Doutorado em Química Quântica pelo Centro Brasileiro de Pesquisas Físicas (CBPF). Professor da Universidade do Estado da Bahia (UNEB), Departamento de Ciências Exatas e da Terra, Campus I (DCET-I).

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2022-03-31

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Almeida, A. L. de. (2022). EDUCA AÇÃO COM CIÊNCIA: POR UMA SOCIEDADE BRASILEIRA DE ENSINO E PESQUISAS EM INTELIGÊNCIA ARTIFICIAL E LETRAMENTO CIENTÍFICO . Revista De Estudos Em Educação E Diversidade - REED, 3(7), 1-27. https://doi.org/10.22481/reed.v3i7.10336

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