Will artificial intelligence overcome teachers that just addresses content?

A inteligência artificial vai superar os professores que apenas abordam o conteúdo?

Autores

Palavras-chave:

education, teachers, generative artificial intellignce

Resumo

With the rapid advancement of artificial intelligence (AI), there is growing speculation about its potential to replace traditional teachers who primarily focus on content delivery. This paper explores the question of whether AI will surpass the role of teachers limited to content delivery. By examining the capabilities of AI in education, including personalized learning, adaptive assessments, and data analytics, we argue that while AI can enhance teaching and learning experiences, it cannot fully replace the multifaceted role of human teachers. The paper highlights the unique qualities of teachers, such as empathy, interpersonal skills, and critical thinking facilitation, that contribute to holistic education. It concludes that AI should be viewed as a complementary tool that empowers teachers to personalize education and create more engaging learning environments, rather than a substitute for their essential role in shaping students' intellectual and social development.

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Biografia do Autor

Adriano Pila, Centro Universitário Alves Faria - UNIALFA

Intensa vivência na gestão de negócios no setor educacional com desempenho e resultados comprovados. Excelente capacidade de análise sistêmica e raciocínio lógico. Doutorado em Inteligência Artificial com foco em Machine Learning e Computação Evolutiva para solução de problemas em Data Science. SOFT SKILLS Proativo, estratégico, determinado, autoconfiante, versátil, flexível, ágil, inovador, orientado a resultados, assume riscos calculados, visão generalista sem perder os detalhes, acompanha os processos, tem habilidade para improvisar, visão de dono, estrategista e executor. Exerce liderança de forma persuasiva e simpática. HARD SKILLS Computação evolutiva, Inteligência artificial, Lógica Difusa, Machine Learning, Raciocínio probabilístico, Redes neurais artificiais, Algoritmos genéticos, Bancos de dados relacionais e SQL, Programação Orientada a Objetos, Python (Pandas, Numpy, Scikit-Learning), KPIs, Opex, Capex, BSC. 

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Publicado

2023-07-14

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Articles