14

I have launched my cluster this way:

/usr/lib/spark/bin/spark-submit --class MyClass --master yarn-cluster--num-executors 3 --driver-memory 10g --executor-memory 10g --executor-cores 4 /path/to/jar.jar

The first thing I do is read a big text file, and count it:

val file = sc.textFile("/path/to/file.txt.gz")
println(file.count())

When doing this, I see that only one of my nodes is actually reading the file and executing the count (because I only see one task). Is that expected? Should I repartition my RDD afterwards, or when I use map reduce functions, will Spark do it for me?

5
  • What's your "defaultMinPartitions"? As the doc clearly says, textFile takes an optional number of partitions parameter, which defaults to that. Jan 24 '15 at 16:32
  • My defaultMinPartitions is greater than one. It seems that I can't force a specified number of partition, because it's only one text file... running.... val file = sc.textFile("/path/to/file.txt.gz",8) println(file.partitions.length) returns 1
    – Stephane
    Jan 24 '15 at 17:08
  • Well, it has to do the reading in one place, because that's inherently serial. But I can't see why it would have that optional param if it didn't do something. Jan 24 '15 at 17:29
  • I see... so because count doesn't do much, it keeps it on one worker. But if I run a map or a reduce, it should start spreading the dataset around?
    – Stephane
    Jan 24 '15 at 17:31
  • No idea, sorry, but I'm guessing it should. Jan 24 '15 at 17:33
22

It looks like you're working with a gzipped file.

Quoting from my answer here:

I think you've hit a fairly typical problem with gzipped files in that they cannot be loaded in parallel. More specifically, a single gzipped file cannot be loaded in parallel by multiple tasks, so Spark will load it with 1 task and thus give you an RDD with 1 partition.

You need to explicitly repartition the RDD after loading it so that more tasks can run on it parallel.

For example:

val file = sc.textFile("/path/to/file.txt.gz").repartition(sc.defaultParallelism * 3)
println(file.count())

Regarding the comments on your question, the reason setting minPartitions doesn't help here is because a gzipped file is not splittable, so Spark will always use 1 task to read the file.

If you set minPartitions when reading a regular text file, or a file compressed with a splittable compression format like bzip2, you'll see that Spark will actually deploy that number of tasks in parallel (up to the number of cores available in your cluster) to read the file.

10
  • Thanks! Would you recommend bzip2 over gzip then? If I load that file frequently, what should be my strategy to optimize every run?
    – Stephane
    Jan 24 '15 at 17:56
  • @Stephane - It depends on how much data is coming in and how much time your cluster spends repartitioning the data. A single gzipped file might be fine. If the one file is too big, you could probably also go with multiple gzipped files (i.e. splitting before compressing) as each gzipped file can be loaded in parallel into the same RDD (one task per file). That's probably the path of least resistance. Jan 24 '15 at 18:02
  • very very interesting thanks! So .gz.001 splitted files or bzip2... I'll experiment with both! I think that yes, the big bottleneck is the first repartition, so if I manage to already split my files when they're coming it might save me a little bit of time
    – Stephane
    Jan 24 '15 at 18:05
  • @Stephane, do you know why that limitation exists? It doesn't seem any easier to distribute the reading of a non-gzipped file - in both cases, you need to read the file serially to work out where the next record begins? Jan 26 '15 at 11:35
  • @Paul, I haven't experimented with bzip2 yet, I'll tell you if parallel reading truly works. I don't know, if the archive is splittable, then I guess you can read it in parallel (block 1 to n, n+1 to 2n, etc...) and then probably send the few missing bytes here and there to make sure every part is correctly formed. I hope that's what Spark does
    – Stephane
    Jan 26 '15 at 14:09

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