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I attempting to add a Series to an empty DataFrame and can not find an answer either in the Doc's or other questions. Since you can append two DataFrames by row or by column it would seem there must be an "axis marker" missing from a Series. Can anyone explain why this does not work?.

import Pandas as pd
df1 = pd.DataFrame()
s1 = pd.Series(['a',5,6])
df1 = pd.concat([df1,s1],axis = 1)
#go run some process return s2, s3, sn ...
s2 = pd.Series(['b',8,9])
df1 = pd.concat([df1,s2],axis = 1)
s3 = pd.Series(['c',10,11])
df1 = pd.concat([df1,s3],axis = 1)

If my example above is some how misleading perhaps using the example from the docs will help.

Quoting: Appending rows to a DataFrame.
While not especially efficient (since a new object must be created), you can append a single row to a DataFrame by passing a Series or dict to append, which returns a new DataFrame as above. End Quote.

The example from the docs appends "S", which is a row from a DataFrame, "S1" is a Series and attempting to append "S1" produces an error. My question is WHY will appending "S1 not work? The assumption behind the question is that a DataFrame must code or contain axes information for two axes, where a Series must contain only information for one axes.

df = pd.DataFrame(np.random.randn(8, 4), columns=['A','B','C','D'])
s = df.xs(3); #third row of DataFrame
s1 = pd.Series([np.random.randn(4)]); #new Series of equal len
df= df.append(s, ignore_index=True)


   0  1

0  a  b

1  5  8

2  6  9


   0  1 2

0  a  5 6

1  b  8 9
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2 Answers 2

You were close, just transposed the result from concat

In [14]: s1
0    a
1    5
2    6
dtype: object

In [15]: s2
0    b
1    8
2    9
dtype: object

In [16]: pd.concat([s1, s2], axis=1).T
   0  1  2
0  a  5  6
1  b  8  9

[2 rows x 3 columns]

You also don't need to create the empty DataFrame.

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Tom, Using your answer, if I now want to concat another Series to the result I get: AttributeError: 'Series' object has no attribute '_data' –  Dick Eshelman Jan 8 '14 at 21:32
Can you edit your question to show the third Series you want to concat? If you have it at the same time as s1 and s2, you can do `pd.concat([s1, s2, s3], axis=1).T –  TomAugspurger Jan 8 '14 at 22:18
Please see the edited version of the problem, the concat operations do not happen at the same time. –  Dick Eshelman Jan 9 '14 at 17:30
It's still not clear what your 3rd Series is. And again, you don't need to make an empty DataFrame. Once you have the DataFrame from my answer, you can add additional rows/columns with .loc[2, :] or append or join, take a look at the docs. –  TomAugspurger Jan 9 '14 at 18:19

A method of accomplishing the same objective as appending a Series to a DataFrame is to just convert the data to an array of lists and append the array(s) to the DataFrame.

data as an array of lists

def get_example(idx):

   list1 = (idx+1,idx+2 ,chr(idx + 97))
   data = [list1]

df1 = pd.DataFrame()

for idx in range(4):

   data = get_example(idx)
   df1= df1.append(data, ignore_index = True)
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