Took some time off

§ March 7th, 2010 § Filed under Uncategorized § 33 Comments

I think I have too many irons in the fire, but thankfully one just got removed and I am now done with SF and can focus on other pursuits…. Like getting plug-in widgets properly figured out.

Ouch

§ February 22nd, 2010 § Filed under Uncategorized § 36 Comments

HIERARCHICAL CLUSTERING

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Just got the beginings of a plugin working

§ February 22nd, 2010 § Filed under Uncategorized § 38 Comments

Hacking through things but am getting close to figuring out how to do plugins on Wordpress.

World Hello

§ February 21st, 2010 § Filed under Uncategorized § 26 Comments

Hello world!

§ February 21st, 2010 § Filed under Uncategorized § 45 Comments

Welcome to WordPress. This is your first post. Edit or delete it, then start blogging!