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).

`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.`spark-shell`

. Thanks!