11

I am running a spark job, and I got Not enough space to cache rdd_128_17000 in memory warning. However, in the attached file, it obviously saying only 90.8 G out of 719.3 G is used. Why is that? Thanks!


15/10/16 02:19:41 WARN storage.MemoryStore: Not enough space to cache rdd_128_17000 in memory! (computed 21.4 GB so far)
15/10/16 02:19:41 INFO storage.MemoryStore: Memory use = 4.1 GB (blocks) + 21.2 GB (scratch space shared across 1 thread(s)) = 25.2 GB. Storage limit = 36.0 GB.
15/10/16 02:19:44 WARN storage.MemoryStore: Not enough space to cache rdd_129_17000 in memory! (computed 9.4 GB so far)
15/10/16 02:19:44 INFO storage.MemoryStore: Memory use = 4.1 GB (blocks) + 30.6 GB (scratch space shared across 1 thread(s)) = 34.6 GB. Storage limit = 36.0 GB.
15/10/16 02:25:37 INFO metrics.MetricsSaver: 1001 MetricsLockFreeSaver 339 comitted 11 matured S3WriteBytes values
15/10/16 02:29:00 INFO s3n.MultipartUploadOutputStream: uploadPart /mnt1/var/lib/hadoop/s3/959a772f-d03a-41fd-bc9d-6d5c5b9812a1-0000 134217728 bytes md5: qkQ8nlvC8COVftXkknPE3A== md5hex: aa443c9e5bc2f023957ed5e49273c4dc
15/10/16 02:38:15 INFO s3n.MultipartUploadOutputStream: uploadPart /mnt/var/lib/hadoop/s3/959a772f-d03a-41fd-bc9d-6d5c5b9812a1-0001 134217728 bytes md5: RgoGg/yJpqzjIvD5DqjCig== md5hex: 460a0683fc89a6ace322f0f90ea8c28a
15/10/16 02:42:20 INFO metrics.MetricsSaver: 2001 MetricsLockFreeSaver 339 comitted 10 matured S3WriteBytes values

enter image description here

2
  • Total used / Total does not matter for caching blocks, they are atomic in memory sense. Can you try to increase # of partitions for that specific RDD? BTW, you have a nifty cluster. Commented Oct 16, 2015 at 5:10
  • So what would be the difference between caching block and the (Total used/Total) appeared on UI? Thanks!
    – Edamame
    Commented Oct 16, 2015 at 16:24

4 Answers 4

7

This is likely to be caused by the configuration of spark.storage.memoryFraction being too low. Spark will only use this fraction of the allocated memory to cache RDDs.

Try either:

  • increasing the storage fraction
  • rdd.persist(StorageLevel.MEMORY_ONLY_SER) to reduce memory usage by serializing the RDD data
  • rdd.persist(StorageLevel.MEMORY_AND_DISK) to partially persist onto disk if memory limits are reached.
1
0

This could be due to the following issue if you're loading lots of avro files:

https://mail-archives.apache.org/mod_mbox/spark-user/201510.mbox/%3CCANx3uAiJqO4qcTXePrUofKhO3N9UbQDJgNQXPYGZ14PWgfG5Aw@mail.gmail.com%3E

With a PR in progress at:

https://github.com/databricks/spark-avro/pull/95

0

I have a Spark-based batch application (a JAR with main() method, not written by me, I'm not a Spark expert) that I run in local mode without spark-submit, spark-shell, or spark-defaults.conf. When I tried to use IBM JRE (like one of my customers) instead of Oracle JRE (same machine and same data), I started getting those warnings.

Since the memory store is a fraction of the heap (see the page that Jacob suggested in his comment), I checked the heap size: IBM JRE uses a different strategy to decide default heap size and it was too small, so I simply added appropriate -Xms and -Xmx params and the problem disappeared: now the batch works fine both with IBM and Oracle JRE.

My usage scenario is not typical, I know, however I hope this can help someone.

0

you can fix this problem by increasing memory allocation.
In Pyspark, you can increase spark.driver.memory and spark.executor.memory to 4g using this configuration:

spark = SparkSession.builder 
    .appName("Pandas_on_spark") 
    .config("spark.driver.memory", "4g") 
    .config("spark.executor.memory", "4g") 
    .getOrCreate()

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.