1

I have just moved from R to Python and have an issue regarding groupby. I have a dataframe with three features as shown below:

date    Scaled  Name
3   2018-10-01 02:00:00 14.57   19245
4   2018-10-01 02:00:00 11.90   7245
5   2018-10-01 02:00:00 15.84   25245
6   2018-10-01 03:00:00 16.98   25245
7   2018-10-01 03:00:00 11.40   7245
8   2018-10-01 03:00:00 16.95   19245
9   2018-10-01 04:00:00 17.78   25245
10  2018-10-01 04:00:00 12.06   7245
11  2018-10-01 04:00:00 18.19   19245
12  2018-10-01 05:00:00 19.63   25245

I have around 80 unique names in the dataset and hence duplicate dates. I would like to create a new column in the data set which is a percentage unique to each Name showing the proportion of hours for that particular Name compared to the total range of hours in the dataset. I can easily make this calculation, but I am struggling with generating the new column. The calculation would be something like this

hours = ((df['date'].max(axis=0) - df['date'].min(axis=0)).total_seconds())/3600

df['percentage'] = df['Name'].value_counts()/ hours

5

You are close, only add Series.map:

df['percentage'] = df['Name'].map(df['Name'].value_counts())/ hours

Or use GroupBy.transform with GroupBy.size:

df['percentage'] = df.groupby('Name')['Name'].transform('size')/ hours

print (df)
                 date  Scaled   Name  percentage
0 2018-10-01 02:00:00   14.57  19245    1.000000
1 2018-10-01 02:00:00   11.90   7245    1.000000
2 2018-10-01 02:00:00   15.84  25245    1.333333
3 2018-10-01 03:00:00   16.98  25245    1.333333
4 2018-10-01 03:00:00   11.40   7245    1.000000
5 2018-10-01 03:00:00   16.95  19245    1.000000
6 2018-10-01 04:00:00   17.78  25245    1.333333
7 2018-10-01 04:00:00   12.06   7245    1.000000
8 2018-10-01 04:00:00   18.19  19245    1.000000
9 2018-10-01 05:00:00   19.63  25245    1.333333
| improve this answer | |
  • 1
    Thanks! That did the trick! Do you mind explaining the difference between using the groupby function and map as you did there? – ojp Jan 24 at 13:28
  • Sorry just seen your links in the answer, I will look at those. – ojp Jan 24 at 13:30
  • 1
    df['percentage'] = df['Name'].map(df['Name'].value_counts()/hours) faster:) – ansev Jan 24 at 13:35

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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