# Sorting by multiple fields in Apache Spark [closed]

I have a RDD in spark. Each element of the RDD is a list. Moreover, all the elements are lists of similar pattern, so its kinda like a table. I need the RDD sorted by some columns, in a specific priority order.

How can I achieve this?

PS : This is what I tried.

I tried to sort by the field with highest priority, then group by it, then sort each result by the field with second highest priority. I did this recursively, and joined the results. But, using RDD.groupBy so many times made it very very slow.

• No no no. It would be nice to work something on your own. Then show us what you've got. Please read how to ask, eventually. – mihai Dec 20 '15 at 9:20
• I did try several ideas, only to find that they are miserably wrong or are inefficient. – Raghuram Krishnaswami Dec 21 '15 at 4:15

If you want to simply sort in ascending / descending order there are two pieces you need to make it work:

• `RDD.rdd.sortBy` function which "sorts (...) RDD by the given `keyfunc`"
• knowledge that Python `lists` and `tuples` are compared lexicographically:

``````>>> (1, 2) < (3, 4)
True
>>> (5, 6) < (3, 4)
False
>>> ("foo", 1) < ("foo", 2, 5)
True
>>> ("bar", 1, 2) > ("bar", 1)
True
``````

Simply combine these two in something like `rdd.sortBy(lambda x: (x[0], x[3]))` and you're good to go.

If you need mixed ordering (descending by some values, ascending by other) on non-numeric values you can either embed this logic inside `keyfunc` or convert RDD to a DataFrame and use `orderBy` method with `desc`:

``````df.orderBy(desc("foo"), "bar")
``````