2

I have a column called: "cars" and want to create another called "persons" using random.randint() which i have:

dat['persons']=np.random.randint(1,5,len(dat))

This is so i can put the number of persons who use these but i'd like to know how to put a condition so in the 'suv' category will be generated only numbers from 4 to 9 for example.

cars | persons
suv     4
sedan   2
truck   2         
suv     1      
suv     5
2

You can create an index for your series, where matching rows have True, and everything else has False. You can then assign to the rows matching that index using loc[] to select the rows; you then generate just the number of values for those selected rows:

m = dat['cars'] == 'suv'
dat.loc[m, 'persons'] = np.random.randint(4, 9, m.sum())

You could also use apply on the cars series to create the new column, creating a new random value in each call:

dat['persons'] = dat.cars.apply(
    lambda c: random.randint(4, 9) if c == 'suv' else random.randint(1, 5))

But this has to make a separate function call for each row. Using a mask will be more efficient.

1

Option 1
So, you're generating random numbers between 1 and 5, whereas numbers in the SUV category should be between 4 and 9. That just means you can generate a random number, and then add 4 to all random numbers belonging to the SUV category?

df = df.assign(persons=np.random.randint(1,5, len(df)))
df.loc[df.cars == 'suv', 'persons'] += 4

df

    cars  persons
0    suv        7
1  sedan        3
2  truck        1
3    suv        8
4    suv        8

Option 2
Another alternative would be using np.where -

df.persons = np.where(df.cars == 'suv', 
                      np.random.randint(5, 9, len(df)), 
                      np.random.randint(1, 5, len(df)))
df

    cars  persons
0    suv        8
1  sedan        1
2  truck        2
3    suv        5
4    suv        6
0

There may be a way to do this with something like a groupby that's more clever than I am, but my approach would be to build a function and apply it to your cars column. This is pretty flexible - it will be easy to build in more complicated logic if you want something different for each car:

def get_persons(car):
    if car == 'suv':
        return np.random.randint(4, 9)
    else:
        return np.random.randint(1, 5)
dat['persons'] = dat['cars'].apply(get_persons)

or in a more slick, but less flexible way:

dat['persons'] = dat['cars'].apply(lambda car: np.random.randint(4, 9) if car == 'suv' else np.random.randint(1, 5))
  • this is going to be much slower than the other solution – Joran Beasley Dec 27 '17 at 17:13

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.