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I have two dataframes, df1 and df2.

df1:

contig  position   tumor_f  t_ref_count  t_alt_count
1     14599  0.000000            1            0
1     14653  0.400000            3            2
1     14907  0.333333            6            3
1     14930  0.363636            7            4 

df2:

contig  position
1     14599
1     14653

I would like to remove the rows from df1 with matching contig, position values in df2. Something akin to: df1[df1[['contig','position']].isin(df2[['contig','position']])] Except this doesn't work.

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3 Answers 3

Here's a verbose approach:

iter1 = df1[['contig', 'position']].itertuples()
is_in_other_df = []
for row in iter1:
    tup2 = df2.itertuples()
    is_in_other_df.append(row in tup2)
df1["InOtherDF"] = is_in_other_df

Then just drop rows where "InOtherDF" is True. You might have to adjust it slightly to ignore the index when giving back the row-tuples.

I think this is a cleaner way using merge

df2["FromDF2"] = True
df1 = pandas.merge(df1, df2, left_on=["contig", "position"], 
                   right_on=["contig", "position"], how="left")
df1[~df1.FromDF2]
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Feels like there ought to be neater way to do anti-join! –  Andy Hayden Jul 31 '13 at 20:58

Version .13 is adding an isin method to DataFrame that will accomplish this. If you're using the current master you can try:

In [46]: df1[['contig', 'position']].isin(df2.to_dict(outtype='list'))
Out[46]: 
  contig position
0   True     True
1   True     True
2   True    False
3   True    False

To get the elements not contained use ~ for not and index

In [45]: df1.ix[~df1[['contig', 'position']].isin(df2.to_dict(outtype='list')).
all(axis=1)]
Out[45]: 
   contig  position   tumor_f  t_ref_count  t_alt_count
2       1     14907  0.333333            6            3
3       1     14930  0.363636            7            4
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Andy if you read this, what are you thoughts on isin accepting another dataframe (that has to be similarly indexed) to remove the need for the df2.to_dict? Using to_dict isn't terrible, but it looks like @user1867185 was expecting a dataframe to work. –  TomAugspurger Jul 31 '13 at 19:53
    
a DF is dict-like so shouldn't be hard to do –  Jeff Jul 31 '13 at 20:18
    
We didn't put it in 0.12 in case there were API changes, looks like there could be :) do you mind putting together a github issue for this? excitingly I get a segfault when doing something similar... –  Andy Hayden Jul 31 '13 at 20:18
    
Thank you for the help. I am apparently using 0.12.0 that I installed few minutes back using "pip install pandas". I only attempted the first solution you proposed and that yielded "AttributeError: 'DataFrame' object has no attribute 'isin'." –  user1867185 Jul 31 '13 at 20:27
    
@AndyHayden I'll start an issue. @user1867185 The isin method is new to .13, which isn't officially released yet. I think pip has the ability to install from github repositories. pandas' is located at github.com/pydata/pandas –  TomAugspurger Jul 31 '13 at 20:37

You can do this with the Series isin twice (works in 0.12):

In [21]: df1['contig'].isin(df2['contig']) & df1['position'].isin(df2['position'])
Out[21]:
0     True
1     True
2    False
3    False
dtype: bool

In [22]: ~(df1['contig'].isin(df2['contig']) & df1['position'].isin(df2['position']))
Out[22]:
0    False
1    False
2     True
3     True
dtype: bool

In [23]: df1[~(df1['contig'].isin(df2['contig']) & df1['position'].isin(df2['position']))]
Out[23]:
   contig  position   tumor_f  t_ref_count  t_alt_count
2       1     14907  0.333333            6            3
3       1     14930  0.363636            7            4

Perhaps we can get a neat solution in 0.13 (using DataFrame's isin like in Tom's answer).

It feel like there ought to be a neat way to do this using an inner merge...

In [31]: pd.merge(df1, df2, how="inner")
Out[31]:
   contig  position  tumor_f  t_ref_count  t_alt_count
0       1     14599      0.0            1            0
1       1     14653      0.4            3            2
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Feels like ought to be a neat merge way –  Andy Hayden Jul 31 '13 at 20:55

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