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Posted on 11/5/2007 by John Langford

CMU wins DARPA Urban Challenge

The results have been posted, with CMU first, Stanford second, and Virginia Tech Third.

Considering that this was an open event (at least for people in the US), this was a very strong showing for research at universities (instead of defense contractors, for example). Some details should become public at the NIPS workshops.

Slashdot has a post with many comments.

CategoriesCompetitions, Machine Learning, Workshop

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