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I realize Dataframe takes a map of {'series_name':Series(data, index)}. However, it automatically sorts that map even if the map is an OrderedDict().

Is there a simple way to pass a list of Series(data, index, name=name) such that the order is preserved and the column names are the series.name? Is there an easy way if all the indices are the same for all the series?

I normally do this by just passing a numpy column_stack of series.values and specifying the column names. However, this is ugly and in this particular case the data is strings not floats.

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ok so strings actually do work in numpy arrays and I have a solution. Still it feels like a bit of a hack and I was wondering if there was a clean solution. –  rhaskett Nov 30 '12 at 21:06

3 Answers 3

up vote 2 down vote accepted

You could use pandas.concat:

import pandas as PD
from pandas.util.testing import rands

data = [PD.Series([rands(4) for j in range(6)],
                  index = PD.date_range('1/1/2000', periods = 6),
                  name = 'col'+str(i)) for i in range(4)]

df = PD.concat(data, axis = 1, keys = [s.name for s in data])
print(df)

yields

            col0  col1  col2  col3
2000-01-01  GqcN  Lwlj  Km7b  XfaA
2000-01-02  lhNC  nlSm  jCYu  XLVb
2000-01-03  sSRz  PFby  C1o5  0BJe
2000-01-04  khZb  Ny9p  crUY  LNmc
2000-01-05  hmLp  4rVp  xF2P  OmD9
2000-01-06  giah  psQb  T5RJ  oLSh
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Beautiful thanks. –  rhaskett Nov 30 '12 at 21:19
a = pd.Series(data=[1,2,3])
b = pd.Series(data=[4,5,6])
a.name = 'a'
b.name= 'b'

pd.DataFrame(zip(a,b), columns=[a.name, b.name])

or just concat dataframes

pd.concat([pd.DataFrame(a),pd.DataFrame(b)], axis=1)

In [53]: %timeit pd.DataFrame(zip(a,b), columns=[a.name, b.name])
1000 loops, best of 3: 362 us per loop

In [54]: %timeit pd.concat([pd.DataFrame(a),pd.DataFrame(b)], axis=1)
1000 loops, best of 3: 808 us per loop
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Will the zip be faster if the index/data is the same length for both? –  rhaskett Nov 30 '12 at 21:40
    
edited post for speed comparsion. yes its faster –  locojay Nov 30 '12 at 21:48

Check out DataFrame.from_items too

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How would DataFrame.from_items work in this example? –  Rich Signell Jan 25 at 13:15
    
DataFrame.from_items([<Series1>, <Series2>, ...]) –  norm Dec 5 at 10:33
    
oops, i meant: DataFrame.from_items([('column1', <Series1>), ('column2', <Series2>), ...]) –  norm Dec 5 at 10:49

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