5

I have one initial dataframe df1:

    df1 = pd.DataFrame(np.array([[1, 'B', 'C', 'D', 'E'], [2, 'B', 'C', 'D', 'E'], [3, 'B', 'C', 'D', 'E'], [4, 'B', 'C', 'D', 'E'], [5, 'B', 'C', 'D', 'E']]), columns=['a', 'b', 'c', 'd', 'e'])

        a   b   c   d   e
    0   1   B   C   D   E
    1   2   B   C   D   E
    2   3   B   C   D   E
    3   4   B   C   D   E
    4   5   B   C   D   E

Then I compute some new parameters based on df1 column values, create a new df2 and merge with df1 on column name "a".

    df2 = pd.DataFrame(np.array([[1, 'F', 'G'], [2, 'F', 'G']]), columns=['a', 'f', 'g'])

        a   f   g
    0   1   F   G
    1   2   F   G
    df1 = pd.merge(df1, df2,  how='left', left_on=['a'], right_on = ['a'])

        a   b   c   d   e   f   g
    0   1   B   C   D   E   F   G
    1   2   B   C   D   E   F   G
    2   3   B   C   D   E   NaN NaN
    3   4   B   C   D   E   NaN NaN
    4   5   B   C   D   E   NaN NaN

This works perfectly fine, but in another loop event, I create a df3 with same columns as df2 but merge in this case does not work, it doesn't take into account that the same columns are already in df1.

IMPORTANT REMARK: This is for illustration purpose only, there are thousands of new dataframes to be added, one per loop step.

    df3 = pd.DataFrame(np.array([[3, 'F', 'G']]), columns=['a', 'f', 'g'])

        a   f   g
    0   3   F   G
df1 = pd.merge(df1, df3,  how='left', left_on=['a'], right_on = ['a'])

        a   b   c   d   e   f_x g_x f_y g_y
    0   1   B   C   D   E   F   G   NaN NaN
    1   2   B   C   D   E   F   G   NaN NaN
    2   3   B   C   D   E   NaN NaN F   G
    3   4   B   C   D   E   NaN NaN NaN NaN
    4   5   B   C   D   E   NaN NaN NaN NaN

I just one to fill missing gaps using the already existing columns. This approach creates new columns (f_x, g_x, f_y, g_y).

Append and contact also does not work as they repeats information (repeated rows on "a").

Any advice on how to solve this? Final result after merging df1 with df2, and after with df3 should be:

        a   b   c   d   e   f   g
    0   1   B   C   D   E   F   G
    1   2   B   C   D   E   F   G
    2   3   B   C   D   E   F   G
    3   4   B   C   D   E   NaN NaN
    4   5   B   C   D   E   NaN NaN

Eventually all the columns will be filled during the loop, so the first added (df2) will add new columns, and from df3 onwards just new data to fill all NaN. The loop looks like this:

df1 = pd.DataFrame(np.array([[1, 'B', 'C', 'D', 'E'], [2, 'B', 'C', 'D', 'E'], [3, 'B', 'C', 'D', 'E'], [4, 'B', 'C', 'D', 'E'], [5, 'B', 'C', 'D', 'E']]), columns=['a', 'b', 'c', 'd', 'e'])
for num, item in enumerate(df1['a']):
    #compute df[num] (based on values on df1)
    df1 = pd.merge(df1, df[num],  how='left', left_on=['a'], right_on = ['a'])
  • I see your new remark after the edit. Could you maybe show a piece of your loop where you merge all these dataframes? – Erfan Mar 14 at 13:05
  • @Erfan It was something like: df1 = pd.DataFrame(np.array([[1, 'B', 'C', 'D', 'E'], [2, 'B', 'C', 'D', 'E'], [3, 'B', 'C', 'D', 'E'], [4, 'B', 'C', 'D', 'E'], [5, 'B', 'C', 'D', 'E']]), columns=['a', 'b', 'c', 'd', 'e']) for num, item in enumerate(df1['a'].values): #compute df[num] df1 = pd.merge(df1, df[num], how='left', left_on=['a'], right_on = ['a']) – juanman Mar 14 at 14:30
  • Pls include this in your post @juanman – Erfan Mar 14 at 14:39
3

One possible solution is concat all small DataFrames and then only once merge:

df4 = pd.concat([df2, df3])
print (df4)
   a  f  g
0  1  F  G
1  2  F  G
0  3  F  G

df1 = pd.merge(df1, df4,  how='left', on = 'a')
print (df1)
   a  b  c  d  e    f    g
0  1  B  C  D  E    F    G
1  2  B  C  D  E    F    G
2  3  B  C  D  E    F    G
3  4  B  C  D  E  NaN  NaN
4  5  B  C  D  E  NaN  NaN

Another possible solution is use DataFrame.combine_first with DataFrame.set_index:

df1 = (df1.set_index('a')
         .combine_first(df2.set_index('a'))
         .combine_first(df3.set_index('a')))
print (df1)
   b  c  d  e    f    g
a                      
1  B  C  D  E    F    G
2  B  C  D  E    F    G
3  B  C  D  E    F    G
4  B  C  D  E  NaN  NaN
5  B  C  D  E  NaN  NaN
  • Thanks for the approach @jezrael There is one important remark: the new dataframes are generated in a loop, one new at a time. So the first one we merge with the original (df1) is ok, but after we have this issue. We have thousands of dfs to generate so it may not be memory efficient to store all of them and merge them at the end. But I will try. – juanman Mar 14 at 11:54
  • @juanman - hmmm, merge data in loop should be more memory consumed, but all depends of data. the best test it. – jezrael Mar 14 at 12:14
  • @juanman - general solution is not easy, I find another one, please check it. – jezrael Mar 14 at 12:33
  • I've been testing this approach since then, its just taking long due to the amount of math calculations. There are thousands of dataframes to be created, will keep you updated. Thanks! – juanman Mar 14 at 13:46
  • 1
    Thanks, I confirmed this did the trick! So I created first a list of all the new dataframes, then concatenated them and finally made the merge with the original (df1). – juanman Mar 14 at 16:19
1

Another way is too use fillna then drop the extra columns you dont need anymore:

# Fill NaN with the extra columns value
df1.f_x.fillna(df1.f_y, inplace=True)
df1.g_x.fillna(df1.g_y, inplace=True)

   a  b  c  d  e  f_x  g_x  f_y  g_y
0  1  B  C  D  E    F    G  NaN  NaN
1  2  B  C  D  E    F    G  NaN  NaN
2  3  B  C  D  E    F    G    F    G
3  4  B  C  D  E  NaN  NaN  NaN  NaN
4  5  B  C  D  E  NaN  NaN  NaN  NaN

# Slice of the last two columns
df1 = df1.iloc[:, :-2]
# Rename the columns correctly
df1.columns = df1.columns.str.replace('_x', '')

Output

   a  b  c  d  e    f    g
0  1  B  C  D  E    F    G
1  2  B  C  D  E    F    G
2  3  B  C  D  E    F    G
3  4  B  C  D  E  NaN  NaN
4  5  B  C  D  E  NaN  NaN
0

I would just use a subset of df1 in the merge with df3, or alternatively I would keep a copy of the original df1.

  1. subset:

    df1.fillna(pd.merge(df1.loc(1)['a':'e'], df3, how='left',
                        left_on=['a'], right_on = ['a']),
               inplace=True)
    
  2. copy of original data

    df1_orig = df1           # before merging with df2
    ...
    df1.fillna(pd.merge(df1_orig, df3, how='left',
                        left_on=['a'], right_on = ['a']),
               inplace=True)
    

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