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I have a folder with 150 G of txt files (around 700 files, on average each 200 MB).

I'm using scala to process the files and calculate some aggregate statistics in the end. I see two possible approaches to do that:

  • manually loop through all the files, do the calculations per file and merge the results in the end
  • read the whole folder to one RDD, do all the operations on this single RDD and let spark do all the parallelization

I'm leaning towards the second approach as it seems cleaner (no need for parallelization specific code), but I'm wondering if my scenario will fit the constraints imposed by my hardware and data. I have one workstation with 16 threads and 64 GB of RAM available (so the parallelization will be strictly local between different processor cores). I might scale the infrastructure with more machines later on, but for now I would just like to focus on tunning the settings for this one workstation scenario.

The code I'm using: - reads TSV files, and extracts meaningful data to (String, String, String) triplets - afterwards some filtering, mapping and grouping is performed - finally, the data is reduced and some aggregates are calculated

I've been able to run this code with a single file (~200 MB of data), however I get a java.lang.OutOfMemoryError: GC overhead limit exceeded and/or a Java out of heap exception when adding more data (the application breaks with 6GB of data but I would like to use it with 150 GB of data).

I guess I would have to tune some parameters to make this work. I would appreciate any tips on how to approach this problem (how to debug for memory demands). I've tried increasing the 'spark.executor.memory' and using a smaller number of cores (the rational being that each core needs some heap space), but this didn't solve my problems.

I don't need the solution to be very fast (it can easily run for a few hours even days if needed). I'm also not caching any data, but just saving them to the file system in the end. If you think it would be more feasible to just go with the manual parallelization approach, I could do that as well.

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if you are running Spark in standalone mode, it cannot work. You need to run your application on resource manager like YARN per example, that runs on a Hadoop cluster. – eliasah Jul 4 '14 at 9:08
    
Does it make sense to run YARN on a single machine? Doesn't the standalone mode (when properly configured) work the same as a cluster manager if no distributed cluster is present? – Igor Jul 4 '14 at 9:47
    
How will you fit 150G on your 64RAM thought if you are not planning to use a distributed cluster? – eliasah Jul 4 '14 at 9:49
1  
I was thinking of something in the way of taking a chunk of data, processing it, storing partial results on disk (if needed), continuing with the next chunk until all are done, and finally merging partial results in the end. – Igor Jul 4 '14 at 11:54
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@Igor by massively increasing the number of partitions you use this can result in the effect you are after - i.e. processing a bit at a time. This answer has a list of all the things you can try: stackoverflow.com/a/22742982/1586965 – samthebest Jul 6 '14 at 9:52

Me and my team had processed a csv data sized over 1 TB over 5 machine @32GB of RAM each successfully. It depends heavily what kind of processing you're doing and how.

  1. If you repartition an RDD, it requires additional computation that has overhead above your heap size, try loading the file with more paralelism by decreasing split-size in TextInputFormat.SPLIT_MINSIZE and TextInputFormat.SPLIT_MAXSIZE (if you're using TextInputFormat) to elevate the level of paralelism.

  2. Try using mapPartition instead of map so you can handle the computation inside a partition. If the computation uses a temporary variable or instance and you're still facing out of memory, try lowering the number of data per partition (increasing the partition number)

  3. Increase the driver memory and executor memory limit using "spark.executor.memory" and "spark.driver.memory" in spark configuration before creating Spark Context

Note that Spark is a general-purpose cluster computing system so it's unefficient (IMHO) using Spark in a single machine

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do you have example code for using limited memory to read large file? Especially how you use TextInputFormat.SPLIT_MAXSIZE and mapPartitions? I'm using conf.set("TextInputFormat.SPLIT_MAXSIZE", "512M"), there is no luck. – Kane Apr 27 '15 at 9:41

To add another perspective based on code (as opposed to configuration): Sometimes it's best to figure out at what stage your Spark application is exceeding memory, and to see if you can make changes to fix the problem. When I was learning Spark, I had a Python Spark application that crashed with OOM errors. The reason was because I was collecting all the results back in the master rather than letting the tasks save the output.

E.g.

for item in processed_data.collect():
   print(item)
  • failed with OOM errors. On the other hand,

processed_data.saveAsTextFile(output_dir)

  • worked fine.
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