10

I am trying to merge two dataframes and replace the nan in the left df with the right df, I can do it with three lines of code as below, but I want to know if there is a better/shorter way?

# Example data (my actual df is ~500k rows x 11 cols)
df1 = pd.DataFrame({'a': [1,2,3,4], 'b': [0,1,np.nan, 1], 'e': ['a', 1, 2,'b']})
df2 = pd.DataFrame({'a': [1,2,3,4], 'b': [np.nan, 1, 0, 1]})

# Merge the dataframes...
df = df1.merge(df2, on='a', how='left')

# Fillna in 'b' column of left df with right df...
df['b'] = df['b_x'].fillna(df['b_y'])

# Drop the columns no longer needed
df = df.drop(['b_x', 'b_y'], axis=1)
  • I rephrased your question to state the desired behavior: "Fillna in 'b' column of left df with right df". Really you want to skip the left-merge giving you two unwanted columns 'b_x, b_y' in the first place, then having to manipulate them. That's what update() is for. – smci Jul 8 '19 at 2:16
5

The problem confusing merge is that both dataframes have a 'b' column, but the left and right versions have NaNs in mismatched places. You want to avoid getting unwanted multiple 'b' columns 'b_x', 'b_y' from merge in the first place:

  • slice the non-shared columns 'a','e' from df1
  • do merge(df2, 'left'), this will pick up 'b' from the right dataframe (since it only exists in the right df)
  • finally do df1.update(...) , this will update the NaNs in the column 'b' taken from df2 with df1['b']

Solution:

df1.update(df1[['a', 'e']].merge(df2, 'left'))

df1

   a    b  e
0  1  0.0  a
1  2  1.0  1
2  3  0.0  2
3  4  1.0  b

Note: Because I used merge(..., how='left'), I preserve the row order of the calling dataframe. If my df1 had values of a that were not in order

   a    b  e
0  1  0.0  a
1  2  1.0  1
2  4  1.0  b
3  3  NaN  2

The result would be

df1.update(df1[['a', 'e']].merge(df2, 'left'))

df1

   a    b  e
0  1  0.0  a
1  2  1.0  1
2  4  1.0  b
3  3  0.0  2

Which is as expected.


Further...

If you want to be more explicit when there may be more columns involved

df1.update(df1.drop('b', 1).merge(df2, 'left', 'a'))

Even Further...

If you don't want to update the dataframe, we can use combine_first

Quick

df1.combine_first(df1[['a', 'e']].merge(df2, 'left'))

Explicit

df1.combine_first(df1.drop('b', 1).merge(df2, 'left', 'a'))

EVEN FURTHER!...

The 'left' merge may preserve order but NOT the index. This is the ultra conservative approach:

df3 = df1.drop('b', 1).merge(df2, 'left', on='a').set_index(df1.index)
df1.combine_first(df3)
| improve this answer | |
  • update function doesn't work for me; however the combine_first did exactly what I wanted, thank you – Kenan Jul 5 '19 at 14:29
  • kslookall: update works fine, please retry in a clean session with pandas 0.24, and confirm it works. – smci Jul 8 '19 at 2:17
  • @piRSquared you really need to explain that update is filling the NAs, before the left-merge, so they don't cause unwanted multiple 'b' columns 'b_x', 'b_y'. – smci Jul 8 '19 at 2:22
  • That’s fair. I’ll add explanation when I have a chance – piRSquared Jul 8 '19 at 2:23
  • I edited in some explanation. It's confusing that you present so many alternatives, please edit concise one-line explanations of when you need each one. – smci Jul 8 '19 at 2:46
5

Short version

df1.b.fillna(df1.a.map(df2.set_index('a').b),inplace=True)
df1
Out[173]: 
   a    b  e
0  1  0.0  a
1  2  1.0  1
2  3  0.0  2
3  4  1.0  b

Since you mentioned there will be multiple columns

df = df1.combine_first(df1[['a']].merge(df2, on='a', how='left'))
df
Out[184]: 
   a    b  e
0  1  0.0  a
1  2  1.0  1
2  3  0.0  2
3  4  1.0  b

Also we can pass to fillna with df

df1.fillna(df1[['a']].merge(df2, on='a', how='left'))
Out[185]: 
   a    b  e
0  1  0.0  a
1  2  1.0  1
2  3  0.0  2
3  4  1.0  b
| improve this answer | |
  • 2
    Operating on the dataframe df1 without any inplace mutation... If you wanted to: df1.fillna({'b': df1.a.map(df2.set_index('a').b)}) – piRSquared Jul 1 '19 at 20:48
  • If you look good, this can be variant on merge? Or better combine_first? – Erfan Jul 1 '19 at 20:51
  • @piRSquared yep , already + for that , that is a great answer sir :-) – BEN_YO Jul 1 '19 at 21:06
3

Only if the indices are alligned (important note), we can use update:

df1['b'].update(df2['b'])


   a    b  e
0  1  0.0  a
1  2  1.0  1
2  3  0.0  2
3  4  1.0  b

Or simply fillna:

df1['b'].fillna(df2['b'], inplace=True)

If you're indices are not alligned, see WenNYoBen's answer or comment underneath.

| improve this answer | |
  • df1.set_index('a',inplace=True); df1.update(df2.set_index('a')); df1.reset_index() – BEN_YO Jul 1 '19 at 20:45
2

You can mask the data.

original data:

print(df)
   one  two  three
0    1  1.0    1.0
1    2  NaN    2.0
2    3  3.0    NaN

print(df2)
   one  two  three
0    4    4      4
1    4    2      4
2    4    4      3

See below, mask just fills based on condition.

# mask values where isna()
df1[['two','three']] = df1[['two','three']]\
        .mask(df1[['two','three']].isna(),df2[['two','three']])

output:

   one  two  three
0    1  1.0    1.0
1    2  2.0    2.0
2    3  3.0    3.0
| improve this answer | |
  • Note how my example has 3 columns, so you have to merge somehow – Kenan Jul 2 '19 at 0:07
  • I edited to account for this. You can mask more than once column at a time. No merge required. Still requires the order to be the same. – krewsayder Jul 2 '19 at 2:09

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