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En vedette
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Vortrag W. Schäfer
Vortrag W. Schäfer
Presentación1
1.
2.
GESTIÓN DE GRANDES
OBRAS NOS VAN A ESCUCHAR
3.
PUESTO DE SALUD
DEL BARRIO MIRAMAR
4.
PUESTO DE SALUD
DEL BARRIO NELSON PEREZ
5.
UNIDAD DE CUIDADOS INTERMEDIOS
DEL HOSPITAL SAN CRISTOBAL
6.
PROYECTO DE ORDENANZA •
POR MEDIO DEL CUAL SE ORDENA LA CREACION DE LOS CONSEJOS MUNICIPALES DE ATENCION A LA DISCAPACIDAD
7.
PROPUESTAS PARA EL CONCEJO
2012-2015
8.
BANCO DEL EMPLEO OBLIGA
A LAS EMPRESAS CONTRATAR PERSONAL CIÉNAGUERO
9.
OPORTUNIDAD PARA TODOS
LOS CIÉNAGUEROS
10.
COMOSIÓN DE PAZ
Y RECONCILIO
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