Is there an idiomatic way to do this using Spark?
No. If you're concerned with low level optimizations like this one, then Spark is not the best option. It doesn't mean it is completely impossible.
If you can for example try something like this:
(min_value, ) = rdd.filter(lambda x: x == 0).take(1) or [rdd.min()]
short circuit partitions:
min_ = None
for x in xs:
min_ = min(x, min_) if min_ is not None else x
if x == 0:
return [min_] in min_ is not None else 
Both will usually execute more than required, each giving slightly different performance profile, but can skip evaluating some records. With rare zeros the first one might be better.
You can even listen to accumulator updates and use
sc.cancelJobGroup once 0 is seen. Here is one example of similar approach Is there a way to stream results to driver without waiting for all partitions to complete execution?