This question already has an answer here:

I have 2 dataframes that I would like to combine the following way: df1:

I   A           B           C
0   0.719391    0.091693    one
1   0.951499    0.83716     one
2   0.975212    0.224855    one
3   0.80762     0.031284    three
4   0.63319     0.342889    one
5   0.075102    0.899291    two
6   0.502843    0.773424    two
7   0.032285    0.242476    one
8   0.794938    0.607745    one

df2:

I   Y   C
0   1   one
1   2   two
2   3   three

The result be: df_comb:

I   A           B           C       Y
0   0.719391    0.091693    one     1
1   0.951499    0.83716     one     1
2   0.975212    0.224855    one     1
3   0.80762     0.031284    three   3
4   0.63319     0.342889    one     1
5   0.075102    0.899291    two     2
6   0.502843    0.773424    two     2
7   0.032285    0.242476    one     1
8   0.794938    0.607745    one     1

So every row in column Y of df_comb where the value of columns C is matched to a value in column C of df2 should have the corresponding value of column Y in df2 in it's column Y.

I tried some join and merge without success. Does anyone knows how to do this without using a for loop?

Thanks

marked as duplicate by jezrael pandas Nov 11 '17 at 19:31

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • Can we see your unsuccessful attempt at merge? Because this definitely looks like a merge problem. – user2285236 Nov 11 '17 at 19:29
  • @ayhan Can you find a dupe? – coldspeed Nov 11 '17 at 19:30
  • @cᴏʟᴅsᴘᴇᴇᴅ jezrael beat me to it. :) – user2285236 Nov 11 '17 at 19:31
  • @ayhan pleasantly surprising! – coldspeed Nov 11 '17 at 19:33
up vote 3 down vote accepted

Option 1
df.map

df['Y']=df.C.map(df2.set_index('C')['Y'])
df
Out[164]: 
   I         A         B      C  Y
0  0  0.719391  0.091693    one  1
1  1  0.951499  0.837160    one  1
2  2  0.975212  0.224855    one  1
3  3  0.807620  0.031284  three  3
4  4  0.633190  0.342889    one  1
5  5  0.075102  0.899291    two  2
6  6  0.502843  0.773424    two  2
7  7  0.032285  0.242476    one  1
8  8  0.794938  0.607745    one  1

Option 2
df.merge

df.merge(df2, on='C', how='left')

          A         B      C  Y
0  0.719391  0.091693    one  1
1  0.951499  0.837160    one  1
2  0.975212  0.224855    one  1
3  0.633190  0.342889    one  1
4  0.032285  0.242476    one  1
5  0.794938  0.607745    one  1
6  0.807620  0.031284  three  3
7  0.075102  0.899291    two  2
8  0.502843  0.773424    two  2

Option 3
df.replace

df.C.replace(df2.set_index('C').Y)

I
0    1
1    1
2    1
3    3
4    1
5    2
6    2
7    1
8    1
Name: C, dtype: int64
  • Merged our answers, hope that's okay. – coldspeed Nov 11 '17 at 19:33
  • @cᴏʟᴅsᴘᴇᴇᴅ nice replace here:-) – Wen Nov 11 '17 at 19:33
  • Guys, it's a very nice answer(s) +1 :) – MaxU Nov 11 '17 at 19:48
  • Hmmm, if dupe answer the best is remove it? Or not? What do you think, guys? – jezrael Nov 11 '17 at 19:55
  • or community wiki ? – jezrael Nov 11 '17 at 19:55

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