32

I came up with values in square bracket(more like a list) after applying str.findall() to column of a pandas dataframe. How can I remove the square bracket ?

print df

id     value                 
1      [63]        
2      [65]       
3      [64]        
4      [53]       
5      [13]      
6      [34]  
1
  • 2
    what are the contents of that column, is this a string '[63]' or a list [63]?
    – EdChum
    Commented Jul 1, 2016 at 14:04

5 Answers 5

61

If values in column value have type list, use:

df['value'] = df['value'].str[0]

Or:

df['value'] = df['value'].str.get(0)

Docs.

Sample:

df = pd.DataFrame({'value':[[63],[65],[64]]})
print (df)
  value
0  [63]
1  [65]
2  [64]

#check type if index 0 exist
print (type(df.loc[0, 'value']))
<class 'list'>

#check type generally, index can be `DatetimeIndex`, `FloatIndex`...
print (type(df.loc[df.index[0], 'value']))
<class 'list'>

df['value'] = df['value'].str.get(0)
print (df)
   value
0     63
1     65
2     64

If strings use str.strip and then convert to numeric by astype:

df['value'] = df['value'].str.strip('[]').astype(int)

Sample:

df = pd.DataFrame({'value':['[63]','[65]','[64]']})
print (df)
  value
0  [63]
1  [65]
2  [64]

#check type if index 0 exist
print (type(df.loc[0, 'value']))
<class 'str'>

#check type generally, index can be `DatetimeIndex`, `FloatIndex`...
print (type(df.loc[df.index[0], 'value']))
<class 'str'>


df['value'] = df['value'].str.strip('[]').astype(int)
print (df)
  value
0    63
1    65
2    64
18
  • 1
    df['value'].dtype gave dtype('O')
    – DougKruger
    Commented Jul 1, 2016 at 14:15
  • And what type(df.ix[0, 'value']) ?
    – jezrael
    Commented Jul 1, 2016 at 14:16
  • is it possible to have result as dtype: float64 ?
    – DougKruger
    Commented Jul 1, 2016 at 14:18
  • 1
    @separ1 - yes exactly. df['value'].str.get(0) or df['value'].str[0] means give fist value of lists. If need al values, need df1 = pd.DataFrame(df['value'].values.tolist())
    – jezrael
    Commented Jul 27, 2017 at 13:03
  • 6
    What to do when I have [63, 23] (2 values in the list) instead of [63]?
    – seralouk
    Commented Jul 22, 2019 at 19:45
8

if string we can also use string.replace method

import pandas as pd

df =pd.DataFrame({'value':['[63]','[65]','[64]']})

print(df)
  value
0  [63]
1  [65]
2  [64]

df['value'] =  df['value'].apply(lambda x: x.replace('[','').replace(']','')) 

#convert the string columns to int
df['value'] = df['value'].astype(int)

#output
print(df)

   value
0     63
1     65
2     64

print(df.dtypes)
value    int32
dtype: object
1

The "values in column values have type list" solution by jezrael won't work if there are multiple members in one list. You can use "lambda" solution by qaiser and sumit. But convert it into "str" before apply the method. Full code:

import pandas as pd
df = pd.DataFrame({'value':[[70,63],[12,65],[64,39]]}).astype(str) #list converted into string, so we can use str.replace
df=df['value'].apply(lambda x: x.replace("[","").replace("]",""))

output:

0    70, 63
1    12, 65
2    64, 39
Name: value, dtype: object
0

A general solution to remove [ and ] chars from a dataframe string column is

df['value'] = df['value'].str.replace(r'[][]', '', regex=True)  # one by one
df['value'] = df['value'].str.replace(r'[][]+', '', regex=True) # by chunks of one or more [ or ] chars

The [][] is a character class in regex, that matches a ] or [ char. + makes the regex engine match these chars one or more times sequentially.

See the regex demo.

However, in this case, the square brackets mark the list of strings that was a result of Series.str.findall. It is clear that you wanted to extract one, the first match from the column values.

  • When you need the first match, use Series.str.extract
  • When you need all matches, use Series.str.findall

So, in this case, to avoid this trouble you found yourself in, you could use

df['value'] = df['source_column'].str.extract(r'my regex with one set of (parentheses)')

Note that str.extract requires at least one set of capturing parentheses to actually work and return a value (str.findall works even without a capturing group).

Note if you were to get multiple matches with findall, and you wanted a single string as output, you could str.join the matches:

df['value'] = df['source_column'].str.findall(pattern).str.join(', ')
0

The answer given by jezrael won't work if there are multiple members in one list. In this case, replace method works.

df['column_name'] =  df['column_name'].apply(lambda x: x.replace('[','').replace(']','')) 

If the members in the list are not integers, you have to convert them.

df['column_name'] = df['column_name'].astype(int)

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