Edit: The answer helps, but I described my solution in: memoryOverhead issue in Spark.
I have an RDD with 202092 partitions, which reads a dataset created by others. I can manually see that the data is not balanced across the partitions, for example some of them have 0 images and other have 4k, while the mean lies at 432. When processing the data, I got this error:
Container killed by YARN for exceeding memory limits. 16.9 GB of 16 GB physical memory used. Consider boosting spark.yarn.executor.memoryOverhead.
while memoryOverhead is already boosted. I feel that some spikes are happening which make Yarn kill my container, because that spike overflows the specified borders.
So what should I do make sure that my data are (roughly) balanced across partitions?
My idea was that repartition() would work, it invokes shuffling:
dataset = dataset.repartition(202092)
but I just got the very same error, despite the programming-guide's instructions:
Reshuffle the data in the RDD randomly to create either more or fewer partitions and balance it across them. This always shuffles all data over the network.
Check my toy example though:
data = sc.parallelize([0,1,2], 3).mapPartitions(lambda x: range((x.next() + 1) * 1000)) d = data.glom().collect() len(d) # 1000 len(d) # 2000 len(d) # 3000 repartitioned_data = data.repartition(3) re_d = repartitioned_data.glom().collect() len(re_d) # 1854 len(re_d) # 1754 len(re_d) # 2392 repartitioned_data = data.repartition(6) re_d = repartitioned_data.glom().collect() len(re_d) # 422 len(re_d) # 845 len(re_d) # 1643 len(re_d) # 1332 len(re_d) # 1547 len(re_d) # 211 repartitioned_data = data.repartition(12) re_d = repartitioned_data.glom().collect() len(re_d) # 132 len(re_d) # 265 len(re_d) # 530 len(re_d) # 1060 len(re_d) # 1025 len(re_d) # 145 len(re_d) # 290 len(re_d) # 580 len(re_d) # 1113 len(re_d) # 272 len(re_d) # 522 len(re_d) # 66