Tópicos em Gerenciamento de Dados e Informações: Minicursos do SBBD 2023
Palavras-chave:
SBBD 2023, SBBD, Minicursos do SBBD, Minicursos do SBBD 2023, Tópicos em Gerenciamento de Dados e InformaçõesSinopse
O presente livro do XXXVIII Simpósio Brasileiro de Bancos de Dados (SBBD 2023) inclui dois capítulos escritos pelos autores dos minicursos selecionados e apresentados na edição do evento realizado de 25 a 29 de setembro de 2023. Os minicursos têm como objetivo apresentar temas relevantes relacionados à área de Banco de Dados e promover discussões sobre os fundamentos, tendências e desafios dos temas abordados. Cada minicurso tem quatro horas de duração e constitui uma excelente oportunidade de atualização para acadêmicos e profissionais que participam do evento.
Os capítulos abordam conteúdos relacionados à interface de programação da OpenAI e a manipulação de dados geoespaciais. O comitê de programa de minicursos foi composto pelos professores Humberto Razente (UFU), Denio Duarte (UFFS) e Ronaldo dos Santos Mello (UFSC), sob coordenação do primeiro.
A qualidade dessa edição é devida essencialmente aos autores e revisores dos trabalhos submetidos. Expressamos nossos fortes agradecimentos pelas contribuições e discussões durante o SBBD 2023.
Capítulos
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1. Introdução à API da OpenAI
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2. Geospatial Data: From Theory to Practice
Downloads
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