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Hadoop UG Germany

Listen:
Last week we opened 2 groups in the major social business platforms LinkedIn and XING. Feel free to join us.

The admins of both groups are working on a german-speaking hadoop user group, and the first fragments are online. Any help is highly welcome, open an account and help us to evangelize Europe!

Thanks,
 Alexander Alten-Lorenz, Lars Francke and Kai Voigt

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