Thanks to the response to my initial question, I now have a multi-indexed DataFrame the way that I want it. Now that I have the data in the data structure, I'm trying to get it out and wonder if there is a better way to do this. My two problems are related, but may have separate "ideal" solutions:
Sample DataFrame (truncated)
Experiment IWWGCW IWWGDW Lead Time 24 48 24 48 2010-11-27 12:00:00 0.997 0.991 0.998 0.990 2010-11-28 12:00:00 0.998 0.987 0.997 0.990 2010-11-29 12:00:00 0.997 0.992 0.997 0.992 2010-11-30 12:00:00 0.997 0.987 0.997 0.987 2010-12-01 12:00:00 0.996 0.986 0.996 0.986
I'd like to be able to loop over this DataFrame where the iteration would take me down only 1 index dimension, i.e. an
iteritems behavior that would return
[('IWWGCW', df['IWWGCW']), ('IWWGDW', df['IWWGDW'])] and yield 2 DataFrames with Lead Time columns. My brute-force solution is to use a wrapper routine that basically does
[(key, df[key] for key in df.columns.levels]. Is there a better way to do this?
I'd also like to do things like "subtract the IWWGDW entries from everybody else" to compute paired differences. I tried to do
df.apply(lambda f: f - df['IWWGDW']) but get a
KeyError: ('IWWGDW', 'occurred at index 2010-11-26 12:00:00') regardless of if I use
axis=0. I've tried rebuilding a new DataFrame using the iteration workaround identified above, but I always worry when I brute-force things. Is there a more "pandasic" way to do this sort of computation?