15

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.

  • 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
22

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
  • Beautiful thanks. – rhaskett Nov 30 '12 at 21:19
7
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
  • 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
4

Build the list of series:

import pandas as pd
import numpy as np

> series = [pd.Series(np.random.rand(3), name=c) for c in list('abcdefg')]

First method:

> pd.DataFrame.from_items([(s.name, s) for s in series])
          a         b         c         d         e         f         g
0  0.071094  0.077545  0.299540  0.377555  0.751840  0.879995  0.933399
1  0.538251  0.066780  0.415607  0.796059  0.718893  0.679950  0.502138
2  0.096001  0.680868  0.883778  0.210488  0.642578  0.023881  0.250317

Second method:

> pd.concat(series, axis=1)
          a         b         c         d         e         f         g
0  0.071094  0.077545  0.299540  0.377555  0.751840  0.879995  0.933399
1  0.538251  0.066780  0.415607  0.796059  0.718893  0.679950  0.502138
2  0.096001  0.680868  0.883778  0.210488  0.642578  0.023881  0.250317
3

Simply passing the list of Series to DataFrame then transposing seems to work too. It will also fill in any indices that are missing from one or the other Series.

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.DataFrame(data).T
print(df)
2

Check out DataFrame.from_items too

  • How would DataFrame.from_items work in this example? – Rich Signell Jan 25 '14 at 13:15
  • DataFrame.from_items([<Series1>, <Series2>, ...]) – chris Dec 5 '14 at 10:33
  • oops, i meant: DataFrame.from_items([('column1', <Series1>), ('column2', <Series2>), ...]) – chris Dec 5 '14 at 10:49
  • from_items deprecation... use from_dict: pd.DataFrame.from_dict({'column1':mylist}) – Christopher May 23 at 19:51

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