Brazilian olympiad of informatic in Videira/SC city: web tool to monitor and avaliate competitors profile
DOI:
https://doi.org/10.5902/2318133835949Abstract
This project is aim to create a web tool that allows analytic query online - olaps - about data from schools students in Videira city that participated of the Brazilian Olympiad of Informatic - OBI 2017. The OBI was developed from an extension project of Federal Institute of Santa Catarina - campus Videira, and the main objective was encourage schools of Videira city to participate of these tests that follow the calendar of Campinas University, OBI organizing Institution. IFC's participation is since the dissemination, application, conference and the release of the score obtained for each of competitors.
Keywords: OBI; olap; profile.
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