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<resTitle>ELECCIONES_GOBERNADORES_2019_13_CIUDADES</resTitle>
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<keyword>Elecciones</keyword>
<keyword>Registraduría</keyword>
<keyword>Gobernadores</keyword>
<keyword>Candidatos</keyword>
<keyword>Puestos de votación</keyword>
<keyword>2019</keyword>
<keyword>Votaciones</keyword>
<keyword>Votos</keyword>
</searchKeys>
<idPurp>Esta capa contiene información de los votos que obtuvieron los candidatos a las gobernaciones en las 13 principales ciudades de Colombia a nivel de puesto de votación (2019), además se incluye el porcentaje de votos que significo en cada punto. Se adjunta también el ganador por puesto de votación, a que partido pertenece, el total de votos del candidato y el porcentaje. De igual forma fueron incluidos los votos en blanco, nulos y no marcados.</idPurp>
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