In terms of
RDD persistence, what are the differences between
persist() in spark ?
cache(), you use only the default storage level
persist(), you can specify which storage level you want,(rdd-persistence).
From the official docs:
- You can mark an
RDDto be persisted using the
cache() methods on it.
- each persisted
RDDcan be stored using a different
cache() method is a shorthand for using the default storage level, which is
StorageLevel.MEMORY_ONLY(store deserialized objects in memory).
persist() if you want to assign a storage level other than
MEMORY_ONLY to the
RDD (which storage level to choose)
Caching or persistence are optimization techniques for (iterative and interactive) Spark computations. They help saving interim partial results so they can be reused in subsequent stages. These interim results as
RDDs are thus kept in memory (default) or more solid storage like disk and/or replicated.
RDDs can be cached using
cache operation. They can also be persisted using
These functions can be used to adjust the storage level of a
RDD. When freeing up memory, Spark will use the storage level identifier to decide which partitions should be kept. The parameter less variants
cache() are just abbreviations for
Warning: Once the storage level has been changed, it cannot be changed again!
Warning -Cache judiciously... see ((Why) do we need to call cache or persist on a RDD)
Just because you can cache a
RDD in memory doesn’t mean you should blindly do so. Depending on how many times the dataset is accessed and the amount of work involved in doing so, recomputation can be faster than the price paid by the increased memory pressure.
It should go without saying that if you only read a dataset once there is no point in caching it, it will actually make your job slower. The size of cached datasets can be seen from the Spark Shell..
def cache(): RDD[T] def persist(): RDD[T] def persist(newLevel: StorageLevel): RDD[T]
*See below example : *
val c = sc.parallelize(List("Gnu", "Cat", "Rat", "Dog", "Gnu", "Rat"), 2) c.getStorageLevel res0: org.apache.spark.storage.StorageLevel = StorageLevel(false, false, false, false, 1) c.cache c.getStorageLevel res2: org.apache.spark.storage.StorageLevel = StorageLevel(false, true, false, true, 1)
The difference between
persistoperations is purely syntactic. cache is a synonym of persist or persist(
persistwith the default storage level
See more visually here....
Persist in memory and disk:
Caching can improve the performance of your application to a great extent.
There is no difference. From
/** Persist this RDD with the default storage level (`MEMORY_ONLY`). */ def persist(): this.type = persist(StorageLevel.MEMORY_ONLY) /** Persist this RDD with the default storage level (`MEMORY_ONLY`). */ def cache(): this.type = persist()
Spark gives 5 types of Storage level
cache() will use
MEMORY_ONLY. If you want to use something else, use
store the data in the JVM heap as unserialized objects.
Cache() and persist() both the methods are used to improve performance of spark computation. These methods help to save intermediate results so they can be reused in subsequent stages.
The only difference between cache() and persist() is ,using Cache technique we can save intermediate results in memory only when needed while in Persist() we can save the intermediate results in 5 storage levels(MEMORY_ONLY, MEMORY_AND_DISK, MEMORY_ONLY_SER, MEMORY_AND_DISK_SER, DISK_ONLY).