visitors.distinct().count() would be the obvious ways, with the first way in distinct you can specify the level of parallelism and also see improvement in the speed. If it is possible to set up visitors as a stream and use D-streams, that would do the count in realtime. You can stream directly from a directory and use the same methods as on the RDD like:
val file = ssc.textFileStream("...")
Last option is to use
def countApproxDistinct(relativeSD: Double = 0.05): Long however this is labelled as experimental, but would be significantly faster than count if
relativeSD (std deviation) is low.
EDIT: Since you want the count per website you can just reduce on the website id, this can be done efficiently (with combiners ) since count is aggregate. If you have an RDD of website name user id tuples you can do.
visitors.countApproxDistinctByKey(), once again the approx one is experimental. To use approx distinct by key you need a PairRDD
Interesting side note if you are ok with approximations and want fast results you might want to look into blinkDB made by the same people as spark amp labs.