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Suppose that df is a pandas dataframe. I want to split it into two dataframes according to some criterion. The best way I've found for doing this is something like

df0, df1 = [v for _, v in df.groupby(df['class'] != 'special')]

In the above example, the criterion is the argument to the groupby method. The resulting df0 consists of the sub-dataframe where the class field has value 'special', and df1 is basically the complement of df0. (Unfortunately, with this construct, the sub-dataframe consisting of the items that fail the criterion are returned first, which is not intuitive.)

The above construct has the drawback that it is not particularly readable, certainly not as readable as, for instance, some hypothetical splitby method like

df0, df1 = df.splitby(df['class'] == 'special')

Since splitting a dataframe like this is something I often need to do, I figure that there may be a built-in function, or maybe an established idiom, for doing this. If so, please let me know.

1 Answer 1

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I think the most readable way is to do this is:

m = df['class'] != 'special'
a, b = df[m], df[~m]

I haven't come across a special method for this...

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    I might do d = dict(list(df.groupby(df["class"] != "b"))) and then use d[0]/d[False] and d[1]/d[True] instead.
    – DSM
    Feb 19, 2013 at 12:25
  • @DSM In fact, groupby is probably an even better way to store it (!) Feb 19, 2013 at 12:27
  • @AndyHayden: what do you mean? It would be great if one could just address the content of groupby by its (pseudo-)keys, but it doesn't work; i.e. df.groupby(df.class != 'b')[True] throws an error... I don't know how to do this sort of thing without converting the groupby object to a dict...
    – kjo
    Feb 19, 2013 at 14:48
  • But what I mean to say is, why convert to a dict when you can access via g.get_group(True) ? Feb 19, 2013 at 16:52

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