I'm learning Spark and start understanding how Spark distributes the data and combines the results. I came to the conclusion that using the operation map followed by reduce has an advantage on using just the operation aggregate. This is (at least I believe so) because aggregate uses a sequential operation, which hurts parallelism, while map and reduce can benefit from full parallelism. So when having a choice, isn't it better to use map and reduce than aggregate ? Are there cases where aggregate is preferred ? Or maybe when aggregate can't be replaced by the combination map and reduce ?
As an example - I want to find the string with the max length:
val z = sc.parallelize(List("123","12","345","4567")) // instead of this aggregate .... z.aggregate(0)((x, y) => math.max(x, y.length), (x, y) => math.max(x, y)) // .... shouldn't I rather use this map - reduce combination ? z.map(_.length).reduce((x, y) => math.max(x, y))