34

I used cache() to cache the data in memory but I realized to see the performance without cached data I need to uncache it to remove data from memory:

rdd.cache();
//doing some computation
...
rdd.uncache()

but I got the error said:

value uncache is not a member of org.apache.spark.rdd.RDD[(Int, Array[Float])]

I don't know how to do the uncache then!

4 Answers 4

60

RDD can be uncached using unpersist()

rdd.unpersist()

source

1
  • 2
    Also, you can pass boolean to unpersist, to determine whether to block until all blocks are deleted or not Apr 10, 2020 at 13:49
12

The uncache function doesn't exist. I think that you were looking for unpersist. Which according to the Spark ScalaDoc mark the RDD as non-persistent, and remove all blocks for it from memory and disk.

3
  • Thanks you are right. I tried what Josh said and it seems like it's working!
    – Mahsa
    Sep 19, 2014 at 16:54
  • It's ok. It's exactly the same answer. ;)
    – eliasah
    Sep 19, 2014 at 16:55
  • 3
    It'd be quite useful to merge the answers and remove one. What do you think? Sep 20, 2014 at 23:43
9

If you want to remove all the cached RDDs, use this ::

for ((k,v) <- sc.getPersistentRDDs) {
  v.unpersist()
}
4

If you cache the source data in a RDD by using .cache() or You have declared small memory. or the default memory is used and its about 500 MB for me. and you are running the code again and again,

Then this error occurs. Try clearing all RDD at the end of the code, thus each time the code runs, the RDD is created and also cleared from memory.

Do this by using: RDD_Name.unpersist()

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