104

I use Pandas 'ver 0.12.0' with Python 2.7 and have a dataframe as below:

df = pd.DataFrame({'id' : [123,512,'zhub1', 12354.3, 129, 753, 295, 610],
                    'colour': ['black', 'white','white','white',
                            'black', 'black', 'white', 'white'],
                    'shape': ['round', 'triangular', 'triangular','triangular','square',
                                        'triangular','round','triangular']
                    },  columns= ['id','colour', 'shape'])

The id Series consists of some integers and strings. Its dtype by default is object. I want to convert all contents of id to strings. I tried astype(str), which produces the output below.

df['id'].astype(str)
0    1
1    5
2    z
3    1
4    1
5    7
6    2
7    6

1) How can I convert all elements of id to String?

2) I will eventually use id for indexing for dataframes. Would having String indices in a dataframe slow things down, compared to having an integer index?

6
  • 1
    Not sure why you get that output as astype works fine for me, at least in version 0.13.1, maybe 0.12.0 has a bug? In answer to your second point, yes it is likely to be slower as string comparison will not be faster than integer comparison but I would profile this first, also it depends on the size
    – EdChum
    Mar 6 '14 at 17:41
  • you've set the column, right? df['id'] = df['id'].astype(str) Mar 6 '14 at 17:51
  • @Andy Hayden, yes I do the appointment, but it is the output that I thought was unexpected.
    – Zhubarb
    Mar 6 '14 at 18:48
  • unexpected in what way? Mar 6 '14 at 19:26
  • 1
    It only returns the 1st character of each Series element as I put in the question under df['id'].astype(str)
    – Zhubarb
    Mar 7 '14 at 8:55

11 Answers 11

117

You can convert all elements of id to str using apply

df.id.apply(str)

0        123
1        512
2      zhub1
3    12354.3
4        129
5        753
6        295
7        610

Edit by OP:

I think the issue was related to the Python version (2.7.), this worked:

df['id'].astype(basestring)
0        123
1        512
2      zhub1
3    12354.3
4        129
5        753
6        295
7        610
Name: id, dtype: object
8
  • 4
    Thank you, I will try this when I am next to a computer and accept your answer. do you know why astype(str ) does not work?
    – Zhubarb
    Mar 6 '14 at 18:49
  • 2
    @Zhubarb - I just tried it, I am getting same result with df['id'].astype(str)
    – Amit Verma
    Mar 6 '14 at 18:53
  • the same result that I posted (undesired) or the result that you got with df.id.apply(str) (desired)?
    – Zhubarb
    Mar 7 '14 at 8:57
  • 4
    I believe it should be .astype('str') instead of .astype(str) Aug 6 '16 at 19:15
  • 2
    @ErnestSKirubakaran - Read the previous comment, try with .astype('str')
    – Amit Verma
    Sep 25 '17 at 11:40
95

A new answer to reflect the most current practices: as of now (v1.2.4), neither astype('str') nor astype(str) work.

As per the documentation, a Series can be converted to the string datatype in the following ways:

df['id'] = df['id'].astype("string")

df['id'] = pandas.Series(df['id'], dtype="string")

df['id'] = pandas.Series(df['id'], dtype=pandas.StringDtype)
3
  • 1
    This needs to get higher in the search results for this kind of question. Everything else I tried was from out of date advice! Thank you!
    – Liz Z
    Mar 16 '21 at 21:10
  • @LizZ My pleasure! My answer is relatively new, but I assume it will work its way up to the top eventually. Mar 16 '21 at 21:15
  • 2
    This solution worked and the others did not. This should go as the accepted answer instead !
    – lqope54
    Aug 12 '21 at 12:28
66

You must assign it, like this:-

df['id']= df['id'].astype(str)
0
5

Personally none of the above worked for me. What did:

new_str = [str(x) for x in old_obj][0]
0
3

You can use:

df.loc[:,'id'] = df.loc[:, 'id'].astype(str)

This is why they recommend this solution: Pandas doc

TD;LR

To reflect some of the answers:

df['id'] = df['id'].astype("string")

This will break on the given example because it will try to convert to StringArray which can not handle any number in the 'string'.

df['id']= df['id'].astype(str)

For me this solution throw some warning:

> SettingWithCopyWarning:  
> A value is trying to be set on a copy of a
> slice from a DataFrame. Try using .loc[row_indexer,col_indexer] = value instead
3

There are two possibilities:

2

For me it worked:

 df['id'].convert_dtypes()

see the documentation here:

https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.convert_dtypes.html

1

Your problem can easily be solved by converting it to the object first. After it is converted to object, just use "astype" to convert it to str.

obj = lambda x:x[1:]
df['id']=df['id'].apply(obj).astype('str')
0
0

for me .to_string() worked

df['id']=df['id'].to_string()
0

I came here from this post and none of the answers worked also posting of answer was disabled there so I am writing for future readers

To keep the data type of dataframe I simply changed from csv to excel writer like this:

with pd.ExcelWriter(file_path) as writer:
   df.to_excel(writer, index=False)

Now the output file will have the format as expected without any conversion. Also don't forget to keep file extension as .xlsx

0

use pandas string methods ie df['id'].str.cat()

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