Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I would like to use the 'pandas.concat' method to merge two DataFrames, but I don't fully understand all 'pandas.concat' arguments. I've got two DataFrames, which have the same identifying variables in the columns, but differ in one single column.

import pandas as pd
dict_data = {'Treatment': ['C', 'C', 'C'], 'Biorep': ['A', 'A', 'A'], 'Techrep': [1, 1, 1], 'AAseq': ['ELVISLIVES', 'ELVISLIVES', 'ELVISLIVES'], 'mz':[500.0, 500.5, 501.0]}
df_a = pd.DataFrame(dict_data)
dict_data = {'Treatment': ['C', 'C', 'C'], 'Biorep': ['A', 'A', 'A'], 'Techrep': [1, 1, 1], 'AAseq': ['ELVISLIVES', 'ELVISLIVES', 'ELVISLIVES'], 'inte':[1100.0, 1050.0, 1010.0]}
df_b = pd.DataFrame(dict_data)

df_a

        AAseq   Biorep  Techrep Treatment   mz
0    ELVISLIVES  A   1   C   500.0
1    ELVISLIVES  A   1   C   500.5
2    ELVISLIVES  A   1   C   501.0

df_b

    AAseq   Biorep  Techrep Treatment   int
0    ELVISLIVES  A   1   C   1100
1    ELVISLIVES  A   1   C   1050
2    ELVISLIVES  A   1   C   1010

I can add the column the following way:

df_m = df_a.copy()
df_m['inte'] = df_b['inte']

     AAseq  Biorep  Techrep Treatment   inte
0    ELVISLIVES  A   1   C   1100
1    ELVISLIVES  A   1   C   1050
2    ELVISLIVES  A   1   C   1010

My real data looks much more complex and I'm afraid that the method above could lead to the wrong order of values in the rows (specially since I want to use 'pandas.melt' beforehand).

When using:

dfm = pd.concat([df_a, df_b])

     AAseq  Biorep  Techrep Treatment   inte    mz
0    ELVISLIVES  A   1   C   NaN     500.0
1    ELVISLIVES  A   1   C   NaN     500.5
2    ELVISLIVES  A   1   C   NaN     501.0
0    ELVISLIVES  A   1   C   1100    NaN
1    ELVISLIVES  A   1   C   1050    NaN
2    ELVISLIVES  A   1   C   1010    NaN

The concatenated DataFrame extends the values rowwise leading to NaN vals.

Question: How can I achieve the same result (shown above) using 'concat'?

Thank you for your support!

share|improve this question
    
Have you actually tested whether that method will break your dataset? –  Ffisegydd Jul 12 '14 at 12:06
    
No I have not. The dataset is large (rows 3847440, cols 16), and I don't know how to test for the break. How can I test for a break?? I'm asking for the concat method since I'm hoping that there is an argument(s) that will rely on the indices of the two dataframes to concat/merge them. –  tryptofame Jul 12 '14 at 13:10
    
Create smaller dataset for tests. –  furas Jul 12 '14 at 13:24
    
fair enough :) I would just like to have certainty that the concatenation doesn't break the dataframe. If you know how to achieve the same result using the concat method please be so kind and enlighten me. –  tryptofame Jul 12 '14 at 14:02

1 Answer 1

up vote 1 down vote accepted

Using

 print pd.concat((df_a, df_b['inte']), axis=1)

you can get

        AAseq Biorep  Techrep Treatment     mz  inte
0  ELVISLIVES      A        1         C  500.0  1100
1  ELVISLIVES      A        1         C  500.5  1050
2  ELVISLIVES      A        1         C  501.0  1010

Is this what you expected ?


Or maybe you have more complicated data like this - see different values in column Treatment

        AAseq Biorep  Techrep Treatment     mz
0  ELVISLIVES      A        1         A  500.0
1  ELVISLIVES      A        1         B  500.5
2  ELVISLIVES      A        1         C  501.0

        AAseq Biorep  Techrep Treatment  inte
0  ELVISLIVES      A        1         C  1100
1  ELVISLIVES      A        1         B  1050
2  ELVISLIVES      A        1         A  1010

and you need to keep order using values from columns AAseq Biorep Techrep Treatment then use merge

import pandas as pd
dict_data = {
    'AAseq': ['ELVISLIVES', 'ELVISLIVES', 'ELVISLIVES'],
    'Biorep': ['A', 'A', 'A'],
    'Techrep': [1, 1, 1],
    'Treatment': ['A', 'B', 'C'],
    'mz':[500.0, 500.5, 501.0]
}
df_a = pd.DataFrame(dict_data)

dict_data = {
    'AAseq': ['ELVISLIVES', 'ELVISLIVES', 'ELVISLIVES'],
    'Biorep': ['A', 'A', 'A'],
    'Techrep': [1, 1, 1],
    'Treatment': ['C', 'B', 'A'],
    'inte':[1100.0, 1050.0, 1010.0]
}
df_b = pd.DataFrame(dict_data)

print pd.merge(left=df_a, right=df_b, on=['AAseq', 'Biorep', 'Techrep', 'Treatment'])

result:

        AAseq Biorep  Techrep Treatment     mz  inte
0  ELVISLIVES      A        1         A  500.0  1010
1  ELVISLIVES      A        1         B  500.5  1050
2  ELVISLIVES      A        1         C  501.0  1100
share|improve this answer
    
Yes that is what I've expected, however I'm getting an Error when trying your code: """TypeError: Cannot concatenate list of ['DataFrame', 'Series']""" I've tried your exact code as well as """pd.concat([df_a, df_b['inte']], axis=1)""". I can only execute the statement if I remove the column index: """pd.concat((df_a, df_b), axis=1)""" but that results in duplicate identifyer columns. –  tryptofame Jul 12 '14 at 14:25
    
I tried on your example data and it works - I use pandas 0.14.0 (print pd.__version__). Check your version. –  furas Jul 12 '14 at 14:29
    
THANK YOU VERY MUCH!! The 'merge' function is EXACTLY what I was looking for/missing. Awesome. Your help is much appreciated! –  tryptofame Jul 12 '14 at 14:34
    
version: 0.13.1 –  tryptofame Jul 12 '14 at 14:35
1  
Eventually you could try to update pandas to newer version (pip install -upgrade pandas) if you stiil need concat() ;) –  furas Jul 12 '14 at 14:41

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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