I am facing a weird problem related to spark's persistence mechanism. I am trying to persist a fairly big Dataset (MEMORY_AND_DISK_SER) with the following spark (2.1.1) configuration :
--num-executors 27 --executor-memory 30GB --executor-cores 5
- The cluster I'm running the spark app on has the following characteristics :
Numbers of nodes : 9, Memory per node : 100GB, Core per node : 15
- The Dataset has :
810 partitions (27*5*6)
The dataset reaches a 1.4TB size in memory, which explains why I'm using MEMORY_AND_DISK_SER persistence. However, at some point, when 15G (30*0.5) per node are fully used for memory persistence, instead of writing into disk, Spark executors fail and so does the spark program. Did anyone ever face this kind of problem ? Could anyone suggest an alternative solution ? I absolutely need to persist my datasets because recomputing them is very (very!) expensive.
On a similar note, I have a question about persistence order. Let's assume, my code is as follows :
Dataset<T> mydataset = loading a file; mydataset.map(...).persist().count(); Dataset<T> mydataset2 = mydataset.map(...); mydataset.unpersist(); mydataset2.persist().count();
I understand that persist is a lazy operation. If I break down the code, what I would assume is that mydataset will be computed and persisted, then, mydataset2 will use mydataset (which is persisted) for computations. Mydataset is unpersisted right away and replaced with mydataset2 in memory storage. Right ? Well what I have noticed on SparkUI is that mydataset is unpersisted way before mydataset2 is computed. Is this the expected behavior or am I missing something ?