I'm looking for suggestions on how I can get myself up to a reasonable level of
competence in Java. What would you recommend? I'm open to any ideas, from
self-taught methods to paid training and/or certification/degree paths.


The Jacksonville JUG mailing list has a thread that discusses where to begin studying Java from a current perspective...Continue reading this post here, in the J2SE Town group.

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Happy 10th year, JCertif!

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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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