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Recommended -- Mid-October

Here are three articles that I've found pretty interesting over the past few days:

Finance:

A fairly insightful blog post about the changing view of management, share holders, and corporate cash.

Journalism:

The Guardian sticks it to Murdoch, again.

Science:

This is a great article on symmetry in physics. The highly speculative ending is at the very least fun. I hadn't really known much about symmetry and larger Group Theory until reading Alexander Masters' excellent biography of the eccentric mathematician Simon Norton the other day. Also highly recommended.

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