4

The following works great:

times1h = pandas.DatetimeIndex(start='2010-01-01', end='2014-01-01', freq='1h')
times10min = pandas.DatetimeIndex(start='2010-01-01', end='2014-01-01', freq='10T')
wind=pandas.DataFrame({'wind':0}, index=times1h)
power=pandas.DataFrame({'power':0}, index=times10min)
%timeit pandas.merge(wind, power, how='inner', left_index=True, right_index=True)

100 loops, best of 3: 5.2 ms per loop

The following is inexplicably slow. I just make the timestamps of the first dataframe non-unique and have it as a column rather than as an index:

times1h = pandas.DatetimeIndex(start='2010-01-01', end='2014-01-01', freq='1h')
times10min = pandas.DatetimeIndex(start='2010-01-01', end='2014-01-01', freq='10T')
wind=pandas.DataFrame({'time':pandas.concat([pandas.Series(times1h),     pandas.Series(times1h)]), 'wind':0})
power=pandas.DataFrame({'power':0}, index=times10min)
%timeit pandas.merge(wind, power, how='inner', left_on='time', right_index=True)

1 loops, best of 3: 16.6 s per loop

Why is this so much slower? Can I do anything about this?

I am trying to get a set of (x,y) points for a Power Curve fitting.

I use pandas 0.13.1 because it's the one included in WinPython :)

  • you need to show the input frames (or at the very least, df.info()) – Jeff Aug 28 '14 at 13:44
  • Yes, I provided the df.info() etc in my update. Maybe I need to make a complete example that runs and demonstrates the performance problem – Bjarke Ebert Aug 28 '14 at 13:50
  • yes a copy pastable example is best! – Jeff Aug 28 '14 at 14:00
  • 3
    This works in 0.14.1 at about the same speed as the top one. Don't exactly recall what the issue was. Upgrading would be your best bet. – Jeff Aug 28 '14 at 14:37
  • 2
    If you're looking for an alternative way to run python on Windows with more up to date packages, Anaconda is a good choice - store.continuum.io/cshop/anaconda – chrisb Aug 28 '14 at 15:15
0

As Jeff posted in the comments under the question, the solution is to upgrade from pandas 0.13.1 to 0.14.1

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