BIG DATA, MACHINE LEARNING E CLOUD COMPUTING NA GESTÃO DE OBRAS: UMA REVISÃO SISTEMÁTICA DA LITERATURA
DOI:
https://doi.org/10.46421/entac.v18i.1186Keywords:
Big Data, Machine Learning, Cloud Computing, Works management, Civil constructionAbstract
This study sought to identify the main contributions of the use of Big Data, Machine Learning and Cloud Computing tools in the field of construction work management. For this, a systematic literature review was carried out in the main databases of international scientific research and 37 papers on the subject were selected. The analysis showed that the use of these tools in civil construction is incipient and related mostly to the use of BIM technology, mainly in Machine Learning and Big Data. It has been found that civil construction still needs to advance more in the use of such tools, in order to use in its entirety what technology has to offer.
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