5

This question already has an answer here:

I'm trying to apply an if condition over a dataframe, but I'm missing something (error: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().)

raw_data = {'age1': [23,45,21],'age2': [10,20,50]}
df = pd.DataFrame(raw_data, columns = ['age1','age2'])

def my_fun (var1,var2,var3):
if (df[var1]-df[var2])>0 :
    df[var3]=df[var1]-df[var2]
else:
    df[var3]=0
print(df[var3])

my_fun('age1','age2','diff')

marked as duplicate by jpp dataframe Aug 10 '18 at 13:23

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • The error means, that in your selected columns are some values, which are evaluated as True and also some, which are evaluated as False. You may need to run my_fun per row. – Michal Polovka Apr 13 '17 at 11:55
  • I don't know this approach per row, could you give me any hint please? – progster Apr 13 '17 at 12:03
  • See the answer by @jezrael, it's much better solution – Michal Polovka Apr 13 '17 at 12:14
10

You can use numpy.where:

def my_fun (var1,var2,var3):
    df[var3]= np.where((df[var1]-df[var2])>0, df[var1]-df[var2], 0)
    return df

df1 = my_fun('age1','age2','diff')
print (df1)
   age1  age2  diff
0    23    10    13
1    45    20    25
2    21    50     0

Error is better explain here.

Slowier solution with apply, where need axis=1 for data processing by rows:

def my_fun(x, var1, var2, var3):
    print (x)
    if (x[var1]-x[var2])>0 :
        x[var3]=x[var1]-x[var2]
    else:
        x[var3]=0
    return x    

print (df.apply(lambda x: my_fun(x, 'age1', 'age2','diff'), axis=1))
   age1  age2  diff
0    23    10    13
1    45    20    25
2    21    50     0

Also is possible use loc, but sometimes data can be overwritten:

def my_fun(x, var1, var2, var3):
    print (x)
    mask = (x[var1]-x[var2])>0
    x.loc[mask, var3] = x[var1]-x[var2]
    x.loc[~mask, var3] = 0

    return x    

print (my_fun(df, 'age1', 'age2','diff'))
   age1  age2  diff
0    23    10  13.0
1    45    20  25.0
2    21    50   0.0
  • the point is that in real life the conditions are more tricky and it seems that nesting with the np.where could be a little tricky to read. is there any change to do it with a more tradition if-elif-else statement? – progster Apr 13 '17 at 12:05
  • I add solution with apply. You are right, if meany complicated conditions with many elif, apply is better. – jezrael Apr 13 '17 at 12:32
  • thanks, since you asked more details I opened another topic, just to avoid confusion in this 3d. stackoverflow.com/questions/43393672/… – progster Apr 13 '17 at 13:32
  • @progster feel free to up vote this answer as well. and any other answers you find useful. – piRSquared Apr 13 '17 at 13:35
5

You can use pandas.Series.where

df.assign(age3=(df.age1 - df.age2).where(df.age1 > df.age2, 0))

   age1  age2  age3
0    23    10    13
1    45    20    25
2    21    50     0

You can wrap this in a function

def my_fun(v1, v2):
    return v1.sub(v2).where(v1 > v2, 0)

df.assign(age3=my_fun(df.age1, df.age2))

   age1  age2  age3
0    23    10    13
1    45    20    25
2    21    50     0
1

There is another way without np.where or pd.Series.where. Am not saying it is better, but after trying to adapt this solution to a challenging problem today, was finding the syntax for where no so intuitive. In the end, not sure whether it would have possible with where, but found the following method lets you have a look at the subset before you modify it and it for me led more quickly to a solution. Works for the OP here of course as well.

You deliberately set a value on a slice of a dataframe as Pandas so often warns you not to.

This answer shows you the correct method to do that.

The following gives you a slice:

df.loc[df['age1'] - df['age2'] > 0]

..which looks like:

   age1  age2
0    23    10
1    45    20

Add an extra column to the original dataframe for the values you want to remain after modifying the slice:

df['diff'] = 0

Now modify the slice:

df.loc[df['age1'] - df['age2'] > 0, 'diff'] = df['age1'] - df['age2']

..and the result:

   age1  age2  diff
0    23    10    13
1    45    20    25
2    21    50     0

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