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Is there anyway to use the mapping function or something better to replace values in an entire dataframe?

I only know how to perform the mapping on series.

I would like to replace the strings in the 'tesst' and 'set' column with a number for example set = 1, test =2

Here is a example of my dataset: (Original dataset is very large)

ds_r
  respondent  brand engine  country  aware  aware_2  aware_3  age tesst   set
0          a  volvo      p      swe      1        0        1   23   set   set
1          b  volvo   None      swe      0        0        1   45   set   set
2          c    bmw      p       us      0        0        1   56  test  test
3          d    bmw      p       us      0        1        1   43  test  test
4          e    bmw      d  germany      1        0        1   34   set   set
5          f   audi      d  germany      1        0        1   59   set   set
6          g  volvo      d      swe      1        0        0   65  test   set
7          h   audi      d      swe      1        0        0   78  test   set
8          i  volvo      d       us      1        1        1   32   set   set

Final result should be

 ds_r
  respondent  brand engine  country  aware  aware_2  aware_3  age  tesst  set
0          a  volvo      p      swe      1        0        1   23      1    1
1          b  volvo   None      swe      0        0        1   45      1    1
2          c    bmw      p       us      0        0        1   56      2    2
3          d    bmw      p       us      0        1        1   43      2    2
4          e    bmw      d  germany      1        0        1   34      1    1
5          f   audi      d  germany      1        0        1   59      1    1
6          g  volvo      d      swe      1        0        0   65      2    1
7          h   audi      d      swe      1        0        0   78      2    1
8          i  volvo      d       us      1        1        1   32      1    1

grateful for advise,

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2 Answers 2

up vote 6 down vote accepted

What about DataFrame.replace?

In [9]: mapping = {'set': 1, 'test': 2}

In [10]: df.replace({'set': mapping, 'tesst': mapping})
Out[10]: 
   Unnamed: 0 respondent  brand engine  country  aware  aware_2  aware_3  age  \
0           0          a  volvo      p      swe      1        0        1   23   
1           1          b  volvo   None      swe      0        0        1   45   
2           2          c    bmw      p       us      0        0        1   56   
3           3          d    bmw      p       us      0        1        1   43   
4           4          e    bmw      d  germany      1        0        1   34   
5           5          f   audi      d  germany      1        0        1   59   
6           6          g  volvo      d      swe      1        0        0   65   
7           7          h   audi      d      swe      1        0        0   78   
8           8          i  volvo      d       us      1        1        1   32   

  tesst set  
0     2   1  
1     1   2  
2     2   1  
3     1   2  
4     2   1  
5     1   2  
6     2   1  
7     1   2  
8     2   1  

As @Jeff pointed out in the comments, in pandas versions < 0.11.1, manually tack .convert_objects() onto the end to properly convert tesst and set to int64 columns, in case that matters in subsequent operations.

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+1 clearly best solution –  Andy Hayden Jun 14 '13 at 18:41
1  
note that you might want to do a df.convert_objects() after the replacement to coerce to proper dtypes –  Jeff Jun 14 '13 at 18:45
    
Thank you, spot on!! –  jonas Jun 14 '13 at 18:47
1  
@Dan Allan this will be default in 0.11.1, FYI (to convert_objects) –  Jeff Jun 14 '13 at 19:41

You can use the applymap DataFrame function to do this:

In [26]: df = DataFrame({"A": [1,2,3,4,5], "B": ['a','b','c','d','e'],
                         "C": ['b','a','c','c','d'], "D": ['a','c',7,9,2]})
In [27]: df
Out[27]:
   A  B  C  D
0  1  a  b  a
1  2  b  a  c
2  3  c  c  7
3  4  d  c  9
4  5  e  d  2

In [28]: mymap = {'a':1, 'b':2, 'c':3, 'd':4, 'e':5}

In [29]: df.applymap(lambda s: mymap.get(s) if s in mymap else s)
Out[29]:
   A  B  C  D
0  1  1  2  1
1  2  2  1  3
2  3  3  3  7
3  4  4  3  9
4  5  5  4  2
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