RDD has a meaningful (as opposed to some random order imposed by the storage model) order if it was processed by sortBy(), as explained in this reply.

Now, which operations preserve that order?

E.g., is it guaranteed that (after a.sortBy())

a.map(f).zip(a) === 
a.map(x => (f(x),x))

How about

a.filter(f).map(g) === 
a.map(x => (x,g(x))).filter(f(_._1)).map(_._2)

what about

a.filter(f).flatMap(g) === 
a.flatMap(x => g(x).map((x,_))).filter(f(_._1)).map(_._2)

Here "equality" === is understood as "functional equivalence", i.e., there is no way to distinguish the outcome using user-level operations (i.e., without reading logs &c).

  • I guess that any operation that changes the elements in an RDD cannot be expected to preserve order. eg. intRdd.map(x=>x*-1). On rdds with a key, there're dedicated operations that preserve the order pairRDD.mapValues and pairRDD.flatMapValues` - not sure if there's a generalization that could satisfy this question- hence the comment.
    – maasg
    Mar 26, 2015 at 20:43
  • RDDs are immutable; all operation create new RDDs.
    – sds
    Mar 26, 2015 at 20:44
  • look at the last line of the question, I am talking about functional equivalence rather than physical identity
    – sds
    Mar 26, 2015 at 20:58
  • @maasg: That's different from how I think this works. I've added an answer, but please let me know if you disagree. Especially if you can provide a counter-example in spark-shell. Thanks! Mar 27, 2015 at 12:58
  • @DanielDarabos I misinterpreted the question and my comment was me thinking in terms of "collection being sorted" rather than preservation of the element ordering.
    – maasg
    Mar 27, 2015 at 13:23

2 Answers 2


All operations preserve the order, except those that explicitly do not. Ordering is always "meaningful", not just after a sortBy. For example, if you read a file (sc.textFile) the lines of the RDD will be in the order that they were in the file.

Without trying to give a complete list, map, filter and flatMap do preserve the order. sortBy, partitionBy, join do not preserve the order.

The reason is that most RDD operations work on Iterators inside the partitions. So map or filter just has no way to mess up the order. You can take a look at the code to see for yourself.

You may now ask: What if I have an RDD with a HashPartitioner. What happens when I use map to change the keys? Well, they will stay in place, and now the RDD is not partitioned by the key. You can use partitionBy to restore the partitioning with a shuffle.

  • 1
    Daniel, I was expecting something like that as well, where only a shuffle step would break the ordering, but it seems that RDD ordering is coincidental and not contractual. This was a good thread: issues.apache.org/jira/browse/SPARK-3098 What I don't understand is this question after getting that info on a previous question: stackoverflow.com/questions/29268210/mind-blown-rdd-zip-method/…
    – maasg
    Mar 27, 2015 at 13:20
  • I haven't read SPARK-3098 fully, but it uses distinct. distinct has to build a hashmap of the lines, so it loses the ordering. In the other question I think Sean is saying the same thing, that RDDs have an ordering. They are not multisets. Mar 27, 2015 at 13:30
  • 8
    I can confirm that repartition does not preserve order, as far as I can tell. If I run x = sc.textFile('somefile'); y = x.repartition(100); a = x.collect(); b = y.collect(), then a==b is returns False.
    – moustachio
    Sep 29, 2015 at 17:20
  • 2
    @moustachio: Oops, thanks! You're right. repartition calls coalesce with shuffle=true, so it's obvious it will shuffle the RDD. I've fixed the list. Sep 29, 2015 at 20:57
  • 1
    @MinnieShi: If partitions 2 and 3 get coalesced into one partition then it will just chain the iterators from partitions 2 and 3, so the new partition will contain the elements of partition 2 in order followed by the elements of partition 3 in order. Is this unclear in the answer? Or do you know it to be wrong? Sep 13, 2016 at 8:59

In Spark 2.0.0+ coalesce doesn't guarantee partitions order during merge. DefaultPartitionCoalescer has optimization algorithm which is based on partition locality. When a partition contains information about its locality DefaultPartitionCoalescer tries to merge partitions on the same host. And only when there is no locality information it simply splits partition based on their index and preserves partitions order.


If you load DataFrame from files, like parquet, Spark breaks order when it plans file splits. You can see it in DataSourceScanExec.scala#L629 or in new Spark 3.x FileScan#L152 if you use it. It just sorts partitions by size and the splits which are less than spark.sql.files.maxPartitionBytes gets to last partitions.

So, if you need to load sorted dataset from files you need to implement your own reader.

  • 1
    Anecdotally I can confirm this is correct. When I switched from Spark 2 to Spark 3 I started noticing that some of my data was occasionally losing its sortedness. The job building that data was doing df.sort(...).coalesce(...), and switching that job to use df.coalesce(...).sort(...) seems to have fixed the problem. (Though TBF I could never seem to reproduce the issue in my testing - I just haven't found any unsorted data after making this change.)
    – 0x5453
    Jan 14, 2022 at 19:36

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