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From: Travis O. <oli...@ee...> - 2006-01-20 23:03:16
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Russell E. Owen wrote: >We're getting numeric data from a (MySQL) database. We'd like to use >numarray or NumPy on the resulting data, but some values may be None. Is >there a fast, efficient way to replace None with NaN? I'd hate to use a >list comprehension on each data tuple before turning it into an array, >but I haven't thought of anything else. > > Current numpy SVN allows array([1.0,None,2.0],dtype=float) array([ 1. , nan, 2. ]) -Travis |