Rajil Sajila
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  • Congo, Republic of the
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How did you hear about Codetown?
by JCERTIF
What are your main interests in software development?
java programming
Anything else you'd like to add? Where do you live? (optional!)
I'd like to be an astrophysicist

Comment Wall (3 comments)

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At 8:44am on September 23, 2011, Kevin Neelands said…
I recommend getting familar with java first but if you are familiar with C++ (or C) you will probably have no problems.
At 7:57am on August 23, 2011, Michael Levin said…
Hi Rajil! You get it: the spirit here is sharing. Astrophysics uses computing as a tool in almost every aspect. All the best and keep dreaming along with doing. Best, Michael Levin
At 9:54am on August 21, 2011, Michael Levin said…
Hi Rajil

Welcome to Codetown! I loved hearing that you dream of being an astrophysicist. I have a friend and former colleague, Than Putzig, who is an astrophysicist working with the Mars Project. He's my Facebook friend and if you're on FB, I will be glad to suggest you two friend eachother.

Hope you enjoy Codetown, dig in and start joining groups and contributing right away.

All the best and kitoko, my friend!

Michael Levin
 
 
 

Happy 10th year, JCertif!

Notes

Welcome to Codetown!

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.

When you create a profile for yourself you get a personal page automatically. That's where you can be creative and do your own thing. People who want to get to know you will click on your name or picture and…
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Created by Michael Levin Dec 18, 2008 at 6:56pm. Last updated by Michael Levin May 4, 2018.

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