Inteligência artificial, educação e pensamento complexo: caminhos para religação de saberes

The advances in artificial intelligence (AI) applications based on data processing (Big Data) have brought a new context to digital culture or cyberculture. Increasingly present in our daily lives, AI is a technology that makes use of statistical probability models that work from correlations and id...

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Detalles Bibliográficos
Autor: Gonsales, Priscila
Tipo de recurso: tesis de maestría
Estado:Versión publicada
Fecha de publicación:2022
País:Brasil
Institución:Pontifícia Universidade Católica de São Paulo (PUC-SP)
Repositorio:Repositório Institucional da PUC_SP
Idioma:portugués
OAI Identifier:oai:repositorio.pucsp.br:handle/26498
Acceso en línea:https://repositorio.pucsp.br/jspui/handle/handle/26498
Access Level:acceso abierto
Palabra clave:CNPQ::ENGENHARIAS
Educação
Complexidade
Inteligência artificial
Big data
Transdisciplinaridade
Education
Complexity
Artificial intelligence
Transdisciplinary
Descripción
Sumario:The advances in artificial intelligence (AI) applications based on data processing (Big Data) have brought a new context to digital culture or cyberculture. Increasingly present in our daily lives, AI is a technology that makes use of statistical probability models that work from correlations and identification of patterns in data. In education, AI has often been pointed out as a source for improving teaching from a merely utilitarian and tool viewpoint, that is, solely for the customization of the content transmission and monitoring/evaluation of apprehension of such content. However, AI has a multidimensional character, involving benefits and risks, as well as social, economic, legal, and environmental impacts that are practically unknown by educators and managers. This research highlights the need for a transdisciplinary vision for AI in education, as a field of knowledge and its various implications, based on Edgar Morin's complex thinking. A framework launched in 2020 by a group of researchers from the European Commission (BIDARRA et al., 2020) organizes in three aspects the interface between AI and education, highlighting the need to go beyond the use in content teaching: 1) learning with AI (study of AI applications aimed at teaching); 2) learning about AI (understanding the functioning of AI aimed at professional education for AI developers); 3) learning for AI (understanding the impacts of AI on society, ethical issues such as fake news, privacy, and security). Through the analysis of documents, publications and recent studies (2018-2021), the research addresses the urgency of institutional management policies, teacher training and educational governance that promote the reform of thinking for the reconnection of knowledge (MORIN, 2011b), considering principles of complexity such as dialogic, circularity, the "ecology of action" in order to promote an ecosystemic view of the current context of technology and, consequently, of a world in constant transformation