Servindo modelos de machine learning com uma arquitetura baseada em serverless

Smart solutions for data classification that make use of Deep Learning are in a moment of ascension. The data analysis area is attracting more and more developers and researchers, but the solutions developed need to be modularized into well-defined components in order to be able to parallelize some...

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Detalhes bibliográficos
Autor principal: Ribeiro, José Lucas Santos
Outros Autores: Cacho, Nelio Alessandro Azevedo
Formato: Dissertação
Idioma:pt_BR
Publicado em: Universidade Federal do Rio Grande do Norte
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Endereço do item:https://repositorio.ufrn.br/handle/123456789/30696
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Descrição
Resumo:Smart solutions for data classification that make use of Deep Learning are in a moment of ascension. The data analysis area is attracting more and more developers and researchers, but the solutions developed need to be modularized into well-defined components in order to be able to parallelize some stages and obtain a good performance in the execution stage. From this motivation, this work presents a generic architecture for data classification, named Machine Learning in Serverless Architecture (MLSA), that can be reproduced in a production environment. In addition, the use of the architecture is presented in a project that makes multi-label classification of images to recommend tourist attractions and validates the use of serverless to serve models of Machine Learning. When using this type of approach, a decrease of at least 60% in processing time has been achieved compared to a monolithic approach.