In article <f6dbf631-73a9-485f-8ada-bc7376ac6...@h25g2000prf.googlegroups.com> bdb112 <boyd.blackw...@gmail.com> wrote: >First a trap for new players, then a question to developers > >Code accelerated by numpy can be slowed down by a large factor is you >neglect to import numpy.sum . > >from timeit import Timer >frag = 'x=sum(linspace(0,1,1000))' >Timer(frag ,setup='from numpy import linspace').timeit(1000) ># 0.6 sec >Timer(frag, setup='from numpy import sum, linspace').timeit(1000) # >difference is I import numpy.sum ># 0.04 sec 15x faster! > >This is obvious of course - but it is very easy to forget to import >numpy.sum and pay the price in execution. > >Question: >Can I replace the builtin sum function globally for test purposes so >that my large set of codes uses the replacement? >The replacement would simply issue warnings.warn() if it detected an >ndarray argument, then call the original sum >I could then find the offending code and use the appropriate import to >get numpy.sum
Sure, just execute code along these lines before running any of the tests: import __builtin__ import warnings _sys_sum = sum # grab it before we change __builtin__.sum def hacked_sum(sequence, start=0): if isinstance(sequence, whatever): warnings.warn('your warning here') return _sys_sum(sequence, start) __builtin__.sum = hacked_sum (You might want to grab a stack trace too, using the traceback module.) You said "without using import" but all you have to do is arrange for python to import this module before running any of your own code, e.g., with $PYTHONHOME and a modified site file. -- In-Real-Life: Chris Torek, Wind River Systems Intel require I note that my opinions are not those of WRS or Intel Salt Lake City, UT, USA (40°39.22'N, 111°50.29'W) +1 801 277 2603 email: gmail (figure it out) http://web.torek.net/torek/index.html
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