4

I have a python list l.The first few elements of the list looks like below

[751883787]
[751026090]
[752575831]
[751031278]
[751032392]
[751027358]
[751052118]

I want to convert this list to pandas.core.series.Series with 2 leading 0.My final outcome will look like

00751883787
00751026090
00752575831
00751031278
00751032392
00751027358
00751052118

I'm working in Python 3.x in windows environment.Can you suggest me how to do this? Also my list contains around 2000000 elements

0

4 Answers 4

8

you can try:

list=[121,123,125,145]
series='00'+pd.Series(list).astype(str)
print(series)

output:

0    00121
1    00123
2    00125
3    00145
dtype: object
1
  • @riccardo.Thanks a lot it works. But sorry my current reputation doesn't allow me select that the answer is useful or correct Feb 14, 2018 at 9:41
4

First use DataFrame constructor with columns, then cast to string and last add 0 by Series.str.zfill if nested lists:

lst = [[751883787],
       [751026090],
       [752575831],
       [751031278],
       [751032392],
       [751027358],
       [751052118]]

s = pd.DataFrame(lst, columns=['a'])['a'].astype(str).str.zfill(11)
print (s)
0    00751883787
1    00751026090
2    00752575831
3    00751031278
4    00751032392
5    00751027358
6    00751052118
Name: a, dtype: object

If there is one list only:

lst = [751883787,
       751026090,
       752575831,
       751031278,
       751032392,
       751027358,
       751052118]


s = pd.Series(lst).astype(str).str.zfill(11)
print (s)
0    00751883787
1    00751026090
2    00752575831
3    00751031278
4    00751032392
5    00751027358
6    00751052118
dtype: object
4
  • I performed almost identical operations but using list comprehension, but pandas method seems ~3x slower. I thought .astype(str).str.zfill(11) would all be vectorised? Do you have an idea about why? [Benchmarking results in my post]
    – jpp
    Feb 14, 2018 at 12:08
  • It is expected output, because pandas str function handle NaNs, so are slowier.
    – jezrael
    Feb 14, 2018 at 12:10
  • I see, maybe there should be an na=False parameter for astype !
    – jpp
    Feb 14, 2018 at 12:17
  • there is no such parameter
    – jezrael
    Feb 14, 2018 at 12:18
2

This is one way.

from itertools import chain; concat = chain.from_iterable
import pandas as pd

lst = [[751883787],
       [751026090],
       [752575831],
       [751031278]]

pd.DataFrame({'a': pd.Series([str(i).zfill(11) for i in concat(lst)])})

             a
0  00751883787
1  00751026090
2  00752575831
3  00751031278

Some benchmarking, relevant since your dataframe is large:

from itertools import chain; concat = chain.from_iterable
import pandas as pd

lst = [[751883787],
       [751026090],
       [752575831],
       [751031278],
       [751032392],
       [751027358],
       [751052118]]*300000

%timeit pd.DataFrame(lst, columns=['a'])['a'].astype(str).str.zfill(11)
# 1 loop, best of 3: 7.88 s per loop

%timeit pd.DataFrame({'a': pd.Series([str(i).zfill(11) for i in concat(lst)])})
# 1 loop, best of 3: 2.06 s per loop
1

both the given answers are usefull ... below is the summrise one

import pandas as pd
mylist = [751883787,751026090,752575831,751031278]
mysers = pd.Series(mylist).astype(str).str.zfill(11)
print (mysers)

./test
0    00751883787
1    00751026090
2    00752575831
3    00751031278
dtype: object

another way around is , cast the dtype of the series to str using astype and use vectorised str.zfill to pad with 00, though using lamda will be more easy to read ..

import pandas as pd
mylist = pd.DataFrame([751883787,751026090,752575831,751031278], columns=['coln'])
result = mylist.coln.apply(lambda x: str(int(x)).zfill(11))
print(result)

Below is the result..

./test
0    00751883787
1    00751026090
2    00752575831
3    00751031278
Name: coln, dtype: object
7
  • And for second apprach is important no NaNs, else failed ;)
    – jezrael
    Feb 14, 2018 at 10:40
  • @jezrael, i couldn't get you sorry :(
    – krock1516
    Feb 14, 2018 at 10:43
  • If NaNs values in list then second solution failed.
    – jezrael
    Feb 14, 2018 at 10:44
  • mylist = [751883787,751026090,752575831,751031278, np.nan]
    – jezrael
    Feb 14, 2018 at 10:44
  • 1
    You beated me @jezrael ;) thats why in my opening ans i said given solution are useful !
    – krock1516
    Feb 14, 2018 at 10:49

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