Codetown ::: a software developer's community
Time: April 6, 2009 from 7pm to 9pm
Event Type: meetup
Organized By: Chad Miller
Latest Activity: Mar 12, 2009
Codetown is a social network. It's got blogs, forums, groups, personal pages and more! You might think of Codetown as a funky camper van with lots of compartments for your stuff and a great multimedia system, too! Best of all, Codetown has room for all of your friends.
Created by Michael Levin Dec 18, 2008 at 6:56pm. Last updated by Michael Levin May 4, 2018.
Check out the Codetown Jobs group.

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