34

I have a csv file with 3 columns, wherein each row of Column 3 has list of values in it. As you can see from the following table structure

Col1,Col2,Col3
1,a1,"['Proj1', 'Proj2']"
2,a2,"['Proj3', 'Proj2']"
3,a3,"['Proj4', 'Proj1']"
4,a4,"['Proj3', 'Proj4']"
5,a5,"['Proj5', 'Proj2']"

Whenever I try to read this csv, Col3 is getting read as str object and not as list. I tried to alter the dtype of that column to list but got "Attribute Error" as below

df = pd.read_csv("inputfile.csv")
df.Col3.dtype = list

AttributeError                            Traceback (most recent call last)
<ipython-input-19-6f9ec76b1b30> in <module>()
----> 1 df.Col3.dtype = list

C:\Python27\lib\site-packages\pandas\core\generic.pyc in __setattr__(self,         name, value)
   1953                     object.__setattr__(self, name, value)
   1954             except (AttributeError, TypeError):
-> 1955                 object.__setattr__(self, name, value)
   1956 
   1957     #----------------------------------------------------------------------

AttributeError: can't set attribute

It would be really great if you can guide me how to go about it.

  • Can you show us an example of your csv (not as an image) , copy paste first few rows of your csv. – Anand S Kumar Sep 23 '15 at 15:04
  • Standard warning: nonscalar values aren't really supported by pandas. You can use them, as they're sometimes handy in intermediate steps, but working with them is inconvenient, and that's not going to change in the near future. – DSM Sep 23 '15 at 15:07
  • What do you want to do with the values? – Padraic Cunningham Sep 23 '15 at 15:07
  • @AnandSKumar Copy Pasted values from my csv – nachiappanpl Sep 23 '15 at 15:13
  • 1
    @PadraicCunningham No the final value will be a String. PFB Sample Illustration of my requirement Input Row:1,a1,"['Proj1', 'Proj2']" Output Rows: 1,a1,"Proj1" 1,a1,"Proj2" – nachiappanpl Sep 24 '15 at 9:07
43

You could use the ast lib:

from ast import literal_eval


df.Col3 = df.Col3.apply(literal_eval)
print(df.Col3[0][0])
Proj1

You can also do it when you create the dataframe from the csv, using converters:

df = pd.read_csv("in.csv",converters={"Col3": literal_eval})

If you are sure the format is he same for all strings, stripping and splitting will be a lot faster:

 df = pd.read_csv("in.csv",converters={"Col3": lambda x: x.strip("[]").split(", ")})

But you will end up with the strings wrapped in quotes

| improve this answer | |
  • I'm getting syntax error returned when trying to do this. My string is '[whatever.com/extension]' – bgenchel May 10 '17 at 23:04
  • Like @5norre 's answer below, the lambda function fails on empty lists returning [''] when the input is []. – Epimetheus Jul 16 at 21:13
6

Adding a replace to Cunninghams answer:

df = pd.read_csv("in.csv",converters={"Col3": lambda x: x.strip("[]").replace("'","").split(", ")})

See also pandas - convert string into list of strings

| improve this answer | |
  • This is a neat solution but it doesn't handle empty strings, the lambda gives [''] for input [] – Epimetheus Jul 16 at 21:09
2

I have a different approach for this, which can be used for string representations of other data types, besides just lists.

You can use the json library and apply json.loads() to the desired column. e.g

import json
df.my_column = df.my_column.apply(json.loads)

For this to work, however, your input strings must be enclosed in double quotations.

| improve this answer | |
1

@Padraic Cunningham's answer will not work if you have to parse lists of strings that do not have quotes. For example, literal_eval will successfully parse "['a', 'b', 'c']", but not "[a, b, c]". To load strings like this, use the PyYAML library.

import io 
import pandas as pd

data = '''
A,B,C
"[1, 2, 3]",True,"[a, b, c]"
"[4, 5, 6]",False,"[d, e, f]"
'''

df = pd.read_csv(io.StringIO(data), sep=',')                                    
df
           A      B          C
0  [1, 2, 3]   True  [a, b, c]
1  [4, 5, 6]  False  [d, e, f]

df['C'].tolist()                                                           
# ['[a, b, c]', '[d, e, f]']

import yaml
df[['A', 'C']] = df[['A', 'C']].applymap(yaml.safe_load) 

df['C'].tolist()                                                           
# [['a', 'b', 'c'], ['d', 'e', 'f']]

yaml can be installed using pip install pyyaml.

| improve this answer | |
1

If you have the option to write the file -

you can use pd.to_parquet and pd.read_parquet (instead of csv).

It will properly parse this column.

| improve this answer | |

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