17

I do as below:

data1 = pd.DataFrame({ 'b' : [1, 1, 1], 'a' : [2, 2, 2]})
data2 = pd.DataFrame({ 'b' : [1, 1, 1], 'a' : [2, 2, 2]})
frames = [data1, data2]
data = pd.concat(frames)
data


   a    b
0   2   1
1   2   1
2   2   1
0   2   1
1   2   1
2   2   1

The data column order is in alphabet order. Why is it so? and how to keep the original order?

11

You are creating DataFrames out of dictionaries. Dictionaries are a unordered which means the keys do not have a specific order. So

d1 = {'key_a': 'val_a', 'key_b': 'val_b'}

and

d2 = {'key_b': 'val_b', 'key_a': 'val_a'}

are the same.

In addition to that I assume that pandas sorts the dictionary's keys descending by default (unfortunately I did not find any hint in the docs in order to prove that assumption) leading to the behavior you encountered.

So the basic motivation would be to resort / reorder the columns in your DataFrame. You can do this as follows:

import pandas as pd

data1 = pd.DataFrame({ 'b' : [1, 1, 1], 'a' : [2, 2, 2]})
data2 = pd.DataFrame({ 'b' : [1, 1, 1], 'a' : [2, 2, 2]})
frames = [data1, data2]
data = pd.concat(frames)

print(data)

cols = ['b' , 'a']
data = data[cols]

print(data)
  • Will this "just work" in Python 3.7? Dicts are guaranteed to maintain their order. – BallpointBen Aug 27 '18 at 15:46
  • As an improvement, you don't have to manually specify the columns. You can just do... combined = pd.concat([df1, df2])[df1.columns]. This does assume you already have a data frame with columns in the order you want. But that was my case. – bwest87 Jan 27 at 20:22
2

You can create the original DataFrames with OrderedDicts

from collections import OrderedDict

odict = OrderedDict()
odict['b'] = [1, 1, 1]
odict['a'] = [2, 2, 2]
data1 = pd.DataFrame(odict)
data2 = pd.DataFrame(odict)
frames = [data1, data2]
data = pd.concat(frames)
data


    b    a
0   1    2
1   1    2
2   1    2
0   1    2
1   1    2
2   1    2
2
def concat_ordered_columns(frames):
    columns_ordered = []
    for frame in frames:
        columns_ordered.extend(x for x in frame.columns if x not in columns_ordered)
    final_df = pd.concat(frames)    
    return final_df[columns_ordered]       

# Usage
dfs = [df_a,df_b,df_c]
full_df = concat_ordered_columns(dfs)

This should work.

  • Thanks, this was nice to have for my case where the DataFrames were being created from already-existing CSV files. – Jon Apr 9 '18 at 23:20
1

you can also specify the order like this :

import pandas as pd

data1 = pd.DataFrame({ 'b' : [1, 1, 1], 'a' : [2, 2, 2]})
data2 = pd.DataFrame({ 'b' : [1, 1, 1], 'a' : [2, 2, 2]})
listdf = [data1, data2]
data = pd.concat(listdf)
sequence = ['b','a']
data = data.reindex(columns=sequence)

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.