3

I'm trying to replace values in a certain range with some other value.

I have a dictionary containing a char as key and the upper range as a value like the following -

replace_dict = {
        'A': 10, 
        'B': 21, 
        'C': 34, 
        'D': 49, 
        'E': 66, 
        'F': 85, 
        'G': 107, 
        'H': 132, 
        'I': 160, 
        'J': 192, 
        'K': 229, 
        'L': 271, 
        'M': 319, 
        'N': 395, 
        'O': 495, 
        'P': 595, 
        'Q': 795, 
        'R': 1100
}

I need to replace the values with the corresponding keys that fall in a range.

For example:

Values in the range of 1-10 will be replaced by 'A',
Values in the range of 11-21 will be replaced by 'B'
Values in the range of 22-34 will be replaced by 'C'
Values in the range of 35-50 will be replaced by 'D'
Values in the range of 51-66 will be replaced by 'E'

I've written the following code:

k=1
for i, j in replace_dict.items():
    data.loc[data['my_col'].between(k,j)] = i
    k=j+1

This code shows TypeError: '>=' not supported between instances of 'str' and 'int'.

However, the line data.loc[data['my_col'].between(1,10)] = 'A' works fine.

What is a good solution for this problem?

2
  • just invert i and j
    – ebonnal
    May 26, 2018 at 22:56
  • Is data['my_col']'s dtype str? Try data['my_col'],astype('int32').between(k,j)
    – wwii
    May 27, 2018 at 0:12

2 Answers 2

2

You can use pandas.cut. A few points to note:

  1. We use the fact ordering of dict.keys and dict.values is consistent.
  2. We provide bins and labels explicitly; note that labels must have one less item than bins.
  3. You may wish to add an extra bin for values above 1100.

Here is a minimal example.

df = pd.DataFrame({'col': [500, 123, 56, 12, 1000, 2, 456]})

df['mapped'] = pd.cut(df['col'],
                      bins=[1]+list(replace_dict.values()),
                      labels=list(replace_dict.keys()))

print(df)

    col mapped
0   500      P
1   123      H
2    56      E
3    12      B
4  1000      R
5     2      A
6   456      O
0
1

You can create a separate DataFrame using your desired ranges and map using an intervalIndex

Setup

ranges = pd.DataFrame(replace_dict, index=['STOP']).T.reset_index()
ranges['START'] = (ranges.STOP.shift(1)+1).fillna(1)
ranges.index = pd.IntervalIndex.from_arrays(ranges.START, ranges.STOP, closed='both')

                index  STOP  START
[1.0, 10.0]         A    10    1.0
[11.0, 21.0]        B    21   11.0
[22.0, 34.0]        C    34   22.0
[35.0, 49.0]        D    49   35.0
[50.0, 66.0]        E    66   50.0
etc...

map using your intervalIndex

df = pd.DataFrame({'nums': np.random.randint(1, 1000, 10)})
   nums
0   699
1   133
2   829
3   299
4   306
5   691
6   172
7   225
8   522
9   671

df.nums.map(ranges['index'])

0    Q
1    I
2    R
3    M
4    M
5    Q
6    J
7    K
8    P
9    Q

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.