5

I have one massive pandas dataframe with this structure:

df1:
    A   B
0   0  12
1   0  15
2   0  17
3   0  18
4   1  45
5   1  78
6   1  96
7   1  32
8   2  45
9   2  78
10  2  44
11  2  10

And a second one, smaller like this:

df2
   G   H
0  0  15
1  1  45
2  2  31

I want to add a column to my first dataframe following this rule: column df1.C = df2.H when df1.A == df2.G

I manage to do it with for loops, but the database is massive and the code run really slowly so I am looking for a Pandas-way or numpy to do it.

Many thanks,

Boris

  • So, are all elements from df2.G guaranteed to be in df1.A? Is df2.G sorted? What are the shapes of the input dataframes in your actual use case? – Divakar Jun 7 '17 at 14:13
  • The input data contains more columns/lines, but the structure is the same. The function I needed was DataFrame.merge() which is perfectly working – boris Jun 7 '17 at 14:22
2

You probably want to use a merge:

df=df1.merge(df2,left_on="A",right_on="G")

will give you a dataframe with 3 columns, but the third one's name will be H

df.columns=["A","B","C"]

will then give you the column names you want

0

You can use map by Series created by set_index:

df1['C'] = df1['A'].map(df2.set_index('G')['H'])
print (df1)
    A   B   C
0   0  12  15
1   0  15  15
2   0  17  15
3   0  18  15
4   1  45  45
5   1  78  45
6   1  96  45
7   1  32  45
8   2  45  31
9   2  78  31
10  2  44  31
11  2  10  31

Or merge with drop and rename:

df = df1.merge(df2,left_on="A",right_on="G", how='left')
        .drop('G', axis=1)
        .rename(columns={'H':'C'})
print (df)
    A   B   C
0   0  12  15
1   0  15  15
2   0  17  15
3   0  18  15
4   1  45  45
5   1  78  45
6   1  96  45
7   1  32  45
8   2  45  31
9   2  78  31
10  2  44  31
11  2  10  31
0

Here's one vectorized NumPy approach -

idx = np.searchsorted(df2.G.values, df1.A.values)
df1['C'] = df2.H.values[idx]

idx could be computed in a simpler way with : df2.G.searchsorted(df1.A), but don't think that would be anymore efficient, because we want to use the underlying array with .values for performance as done earlier.

  • @boris Make sure to time it at your end. Should be pretty efficient :) – Divakar Jun 7 '17 at 14:19

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.