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I have a large data set with a column that contains personal names, totally there are 60 names by value_counts(). I don't want to show those names when I analyze the data, instead I want to rename them to participant_1, ... ,participant_60.

I also want to rename the values in alphabetical order so that I will be able to find out who is participant_1 later.

I started with create a list of new names:

newnames = [f"participant_{i}" for i in range(1,61)]

Then I try to use the function df.replace.

df.replace('names', 'newnames')

However, I don't know where to specify that I want participant_1 replace the name that comes first in alphabetical order. Any suggestions or better solutions?

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3 Answers 3

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If need replace values in column in alphabetical order use Categorical.codes:

df = pd.DataFrame({
        'names':list('bcdada'),

})

df['new'] = [f"participant_{i}" for i in pd.Categorical(df['names']).codes + 1]
#alternative solution
#df['new'] = [f"participant_{i}" for i in pd.CategoricalIndex(df['names']).codes + 1]

print (df)
  names            new
0     b  participant_2
1     c  participant_3
2     d  participant_4
3     a  participant_1
4     d  participant_4
5     a  participant_1
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  • thank you, however, I want to replace values inside columns. The real data contains 10 thousand observations in column. 60 is the value counts.
    – Ping
    Apr 30, 2019 at 9:38
  • 1
    @Ping - Can you test df['new'] = [f"participant_{i}" for i in pd.CategoricalIndex(df['names']).codes] ?
    – jezrael
    Apr 30, 2019 at 9:39
  • @jezrael, thank you so much, that works! the categoricalindex starts from 0, is it possible to let it starts from 1?
    – Ping
    Apr 30, 2019 at 9:45
  • @Ping - Edited answer, check it.
    – jezrael
    Apr 30, 2019 at 9:46
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use rename

df.rename({'old_column_name':'new_column_nmae',......},axis=1,inplace=1)

You can generate the mapping using a dict comprehension like this -

mapper = {k: v for (k,v) in zip(sorted(df.columns), newnames)}
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If I understood correctly you want to replace column values not column names.

Create a dict with old_names and new_names then You can use df.replace

import pandas as pd

df = pd.DataFrame()
df['names'] = ['sam','dean','jack','chris','mark']

x = ["participant_{}".format(i+1) for i in range(len(df))]

rep_dict = {k:v for k,v in zip(df['names'].sort_values(), x)}

print(df.replace(rep_dict))

Output:

        names
0  participant_5
1  participant_2
2  participant_3
3  participant_1
4  participant_4

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