While vmg's solution is neat, it requires you to know which columns you need to group by. A more generic approach is this:
First subtract one data frame from another:
In [46]: df3 = df1.subtract(df2)
In [47]: df3
Out[47]:
A B C
0 0 0 NaN
1 NaN NaN NaN
2 NaN NaN NaN
You see that the interesting rows, are those who don't exist in df2
, so they are all NaN. Using numpy method you can find those rows:
In [50]: np.isnan(df3.iloc[0])
Out[50]:
A False
B False
C True
Name: 0, dtype: bool
In [51]: np.isnan(df3.iloc[1])
Out[51]:
A True
B True
C True
Name: 1, dtype: bool
Now, that you know how to locate those rows, you can do a crazy one liner:
In [52]: df1.iloc[[idx for idx, row in df3.iterrows() if
all(np.isnan(df3.iloc[idx]))]]
Out[52]:
A B C
1 2 22 222
2 3 33 333
update, let's add a generic function
def substract_dataframe(df1, df2):
for i in [df1, df2]:
if not isinstance(i, pd.DataFrame):
raise ValueError(("Wrong argument given!
All arguments must be DataFrame instances"))
df = df1.subtract(df2)
return df1.iloc[[idx for idx, row in df.iterrows() if
all(np.isnan(df.iloc[idx]))]]
testing ...
In [54]: substract_dataframe(df1, df2)
Out[54]:
A B C
1 2 22 222
2 3 33 333
In [55]: substract_dataframe(df1, 'sdf')
---------------------------------------------------------------------------
ValueError Traceback (most recent call last)
<ipython-input-55-6ce801e88ce4> in <module>()
----> 1 substract_dataframe(df1, 'sdf')
<ipython-input-53-e5d7db966311> in substract_dataframe(df1, df2)
2 for i in [df1, df2]:
3 if not isinstance(i, pd.DataFrame):
----> 4 raise ValueError("Wrong argument given! All arguments must be DataFrame instances")
5 df = df1.subtract(df2)
6 return df1.iloc[[idx for idx, row in df.iterrows() if all(np.isnan(df.iloc[idx]))]]
ValueError: Wrong argument given! All arguments must be DataFrame instances