2

I'm trying to create a column in pandas using a conditional to create a qualitative observation.

For example, if the data frame looks like this:

      Distance      
1     1              
2     5                        
3     40              
4     15 

I want to create a new column (let's call it df['length']) which is an observation on the distances.

For example:

if df[Distance] = 1:
  print('Short')

I want 'Short' to be input into the new column for each row that fits the conditional.

Or for example:

if df[Distance] > 10:
  print('Long')

I want each row that fits the conditional in the new column to be 'Long'.

How would I go about doing this?

I'm trying to write it into a function. This is what I have now:

def trip_distance(row):    

    df = pd.read_csv('taxi_january_standard_rate.csv')

    if df['trip_distance'] > 50 :
        return "Long"

and then I try and use that to populate a new column:

df['trip_length'] = df.apply(trip_distance , axis=1)

but it doesn't seem to work. It's giving me an error:

('The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().', 'occurred at index 0')

Basically, I'm trying to give 5 Qualitative descriptions to a column in a taxicab data set, where for each distance greater than a certain value, I describe it as 'Long' or if it is close to the mean, I describe it as 'Average', etc.

  • 3
    Compute column based on multiple conditions may be of use. You basically want to create 2 lists, one of the conditions and one of the values assigned if that condition is True and then use numpy.select to assign the values to a new column – ALollz Jul 11 '18 at 3:42
  • 2
    To give an example to @ALollz's strategy: df['length'] = np.select([df.Distance < 2, df.Distance > 10], ['short', 'long'], 'average'). You can read more about np.select on the relevant documentation pages – sacuL Jul 11 '18 at 3:52
5

you need np.where

 import numpy as np
 df['Length']=np.where(df['Distance']>10,'Long','Short')

if you want multiple conditions, go with @sacul solution, use np.select

df['length'] = np.select([df.Distance < 2, df.Distance > 10], ['short', 'long'], 'average')
0
>>> df = pd.DataFrame(l,columns=['Distannce'])
>>> df
   Distannce
0          1
1          5
2         40
3         15

>>> df['length'] = np.nan
>>> df['length'][df['Distannce'] > 10] = 'Long'
>>> df
   Distannce length
0          1    NaN
1          5    NaN
2         40   Long
3         15   Long
>>> df['length'][df['Distannce'] == 1] = 'Short'
>>> df
   Distannce length
0          1  Short
1          5    NaN
2         40   Long
3         15   Long
>>> 

Let me know if it helps, also please mark as answer if it works for you.

0

Alternatively you could do:

df.loc[df['Distance'] > 10, 'length'] = 'Long'
df.loc[df['Distance'] == 1, 'length'] = 'Short'

Output:

   Distance length
0   1      Short
1   5      NaN
2   40     Long
3   15     Long

You can fill NaN with whatever value you want using fillna

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.