How can I use ternary operator in the lambda function within
apply function of
First of all, this code is from R/plyr, which is exactly what I want to get:
ddply(mtcars, .(cyl), summarise, sum(ifelse(carb==4,1,0))/sum(ifelse(carb %in% c(4,1),1,0)))
in the above function, I can use
ifelse function, R's ternary operator, to compute the resultant dataframe.
However, when I want to do the same in Python/pandas with the following code
mtcars.groupby(["cyl"]).apply(lambda x: sum(1 if x["carb"] == 4 else 0) / sum(1 if x["carb"] in (4, 1) else 0))
, the following error occurs:
ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()
So how can I compute and get the same dataframe as in R/plyr?
For your information, if I use the ternary operator without grouping the columns, such as
mtcars.apply(lambda x: sum(1 if x["carb"] == 4 else 0) / sum(1 if x["carb"] in (4, 1) else 0), axis=1)
, I can get the resultant dataframe for some reasons (but it's not what I wanted to do).
Sorry, the original example is not a good one when it comes to the use of ternary operator, since it uses
0, which can be used as a binary. So the updated R/plyr code is the following:
ddply(mtcars, .(cyl), summarise, sum(ifelse(carb==4,6,3))/sum(ifelse(carb %in% c(4,1),8,4)))
Is it feasible to use the ternary operator in this situation?