I have 2 columns in my data frame. “adult” represents the number of adults in a hotel room and “children” represents the number of children in a room.

I want to create a new column based on these two. For example if df['adults'] == 2 and df[‘children’]==0 the value of the new column would be "couple with no children". And if the df['adults'] = 2 and df[‘children’]=1 the value of the new column would be "couple with 1 child".

I have a big amount of data and I want the code to run fast.

Any advice? This is a sample of the inputs and the output that I need.

adult children   family_status

2       0       "Couple without children"     
2       0       "Couple without children"
2       1       "Couple with one child"
  • 1
    What should be values if adults are more than 2 or less than 2? – Ch3steR May 23 at 15:31
  • For example if adult =1 the value can be "single". The adult unique values are 1 and 2. – yasi_ensaf May 23 at 15:34
  • Can you add some sample data to the question and expected output covering all the cases? It would be helpful. – Ch3steR May 23 at 15:36
  • Add the details to the question. It's very cryptic in comments – Ch3steR May 23 at 15:44
  • I'm so sorry, I edited the question. – yasi_ensaf May 23 at 15:46

Use np.select

  adult  children
0      2         0
1      2         0
2      2         1

condlist = [(df['adults']==2) & (df['children']==0),(df['adults']==2) & (df['children']==1)]
choicelist = ['couple with no children','couple with 1 child']
df['family_status'] = np.select(condlist,choicelist,np.nan)
   adult  children            family_status
0      2         0  couple with no children
1      2         0  couple with no children
2      2         1      couple with 1 child
| improve this answer | |
  • Thanks I tried it but I got this error:ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all(). – yasi_ensaf May 23 at 15:47
  • @yasi_ensaf My bad I messed parenthesis while editing. Check the edited answer. ;) – Ch3steR May 23 at 15:52
  • I edited the answer to handle cases that kriti mentioned too. ;) It will add np.nan – Ch3steR May 23 at 15:58

You can try:

df['family_status'] = df.apply(lambda x: 'adult with no child' if (x['adult']==2 and x['children']==0)  
                        else ( 'adult with 1 child' 
                              if (x['adult']==2 and x['children']==1) else ''), axis=1)

Hope this will help you!!

| improve this answer | |
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  • 1
    Thanks a lot! it worked! – yasi_ensaf May 23 at 15:59
  • 1
    Check this Avoiding apply. Try to avoid df.apply as much as possible. ;) Not saying your answer is bad. – Ch3steR May 23 at 16:00

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