# Which operations preserve RDD order?

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))
``````

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

``````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. 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. Mar 27, 2015 at 13:23

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 `Iterator`s 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.

• 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/… 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
• 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`. Sep 29, 2015 at 17:20
• @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
• @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.

UPDATE:

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.

• 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.) Jan 14, 2022 at 19:36