SG Conference & Expo

Event Details

SG Conference & Expo

Time: July 1, 2015 to July 2, 2015
Location: Mexico City
City/Town: Mexico City
Website or Map: http://sg.com.mx/sgce
Event Type: conference
Organized By: http://sg.com.mx/
Latest Activity: Jun 16, 2015

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Event Description

En SG Conference & Expo los profesionistas de software de alto desempeño en México se encuentran para conocer tendencias, compartir experiencias y renovar su motivación para seguir creando software grandioso.

La edición 2015 de SGCE se realizará el 1 y 2 de julio en la Ciudad de México.

Here's a classy Google translation: SG Conference & Expo in the software professionals of high performance in Mexico are for trends, share experiences and renew their motivation to continue creating great software.

SGCE 2015 edition will be held on 1 and July 2 in Mexico City.

You know what we mean! Come on, have some fun and learn a lot in beautiful, historic Mexico City.

This event is sponsored by Software Gurus, the leading media source in Latin America. Check them out here: http://sg.com.mx/about-sg-software-guru

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