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My team built a Java application using the Hadoop libraries to transform a bunch of input files into useful output. Given the current load a single multicore server will do fine for the coming year or so. We do not (yet) have the need to go for a multiserver Hadoop cluster, yet we chose to start this project "being prepared".

When I run this app on the command-line (or in eclipse or netbeans) I have not yet been able to convince it to use more that one map and/or reduce thread at a time. Given the fact that the tool is very CPU intensive this "single threadedness" is my current bottleneck.

When running it in the netbeans profiler I do see that the app starts several threads for various purposes, but only a single map/reduce is running at the same moment.

The input data consists of several input files so Hadoop should at least be able to run 1 thread per input file at the same time for the map phase.

What do I do to at least have 2 or even 4 active threads running (which should be possible for most of the processing time of this application)?

I'm expecting this to be something very silly that I've overlooked.


I just found this: https://issues.apache.org/jira/browse/MAPREDUCE-1367 This implements the feature I was looking for in Hadoop 0.21 It introduces the flag mapreduce.local.map.tasks.maximum to control it.

For now I've also found the solution described here in this question.

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4 Answers 4

up vote 5 down vote accepted

I'm not sure if I'm correct, but when you are running tasks in local mode, you can't have multiple mappers/reducers.

Anyway, to set maximum number of running mappers and reducers use configuration options mapred.tasktracker.map.tasks.maximum and mapred.tasktracker.reduce.tasks.maximum by default those options are set to 2, so I might be right.

Finally, if you want to be prepared for multinode cluster go straight with running this in fully-distributed way, but have all servers (namenode, datanode, tasktracker, jobtracker, ...) run on a single machine

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Thanks, because of your observation I downloaded the source and dug through that. I found that when running in local mode the org.apache.hadoop.mapred.LocalJobRunner is used to actually run the job. The run() method simply does everything sequentially. No threading at all. I did find org.apache.hadoop.mapreduce.lib.map.MultithreadedMapper A very strange feature: A mapper implementation that does threading OUTSIDE of the actual Hadoop framework. According to the documentation only useful if you are not CPU bound. Our tool is CPU bound so we can't use this. –  Niels Basjes Aug 5 '10 at 8:42

Just for clarification... If hadoop runs in local mode you don't have parallel execution on a task level (except you're running >= hadoop 0.21 (MAPREDUCE-1367)). Though you can submit multiple jobs at once and these getting executed in parallel then.

All those

mapred.tasktracker.{map|reduce}.tasks.maximum

properties do only apply to the hadoop running in distributed mode!

HTH Joahnnes

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Correct. The way I ran it two years ago ( stackoverflow.com/questions/3546025 ) was by ONLY running a job and tasktrackers. So this is not local and only half way to pseudo-distributed. This makes using multiple CPU cores possible without the 0.21 feature you mentioned. –  Niels Basjes May 12 '12 at 22:18

According to this thread on the hadoop.core-user email list, you'll want to change the mapred.tasktracker.tasks.maximum setting to the max number of tasks you would like your machine to handle (which would be the number of cores).

This (and other properties you may want to configure) is also documented in the main documentation on how to setup your cluster/daemons.

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There's no option like:mapred.tasktracker.tasks.maximum, there are separate options for map and reduce: mapred.tasktracker.{map|reduce}.tasks.maximum, it's under the second link you have posted. –  Wojtek Aug 4 '10 at 19:19
    
my interpretation of that was that you could have map or reduce or none. The email thread is from 2007 but the author of Hadoop mentioned using mapred.tasktracker.tasks.maximum –  matt b Aug 4 '10 at 21:04
    
Well, this email is from 2007, it most likely concerns version before 0.16 of hadoop, since separate options for mappers and reducers were introduced in 0.16 (and 0.16 was introduced somewhere around 2008) take a look at: hadoop.apache.org/common/docs/r0.15.2/… and hadoop.apache.org/common/docs/r0.16.0/… –  Wojtek Aug 4 '10 at 22:15
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I just found that mapred.tasktracker.tasks.maximum was deprecated in Hadoop 0.16 ( issues.apache.org/jira/browse/HADOOP-1274 ) and is now mapred.tasktracker.{map|reduce}.tasks.maximum. –  Niels Basjes Aug 5 '10 at 7:35

What you want to do is run Hadoop in "pseudo-distributed" mode. One machine, but, running task trackers and name nodes as if it were a real cluster. Then it will (potentially) run several workers.

Note that if your input is small Hadoop will decide it's not worth parallelizing. You may have to coax it by changing its default split size.

In my experience, "typical" Hadoop jobs are I/O bound, sometimes memory-bound, way before they are CPU-bound. You may find it impossible to fully utilize all the cores on one machine for this reason.

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For the CPU bound job this question was about (almost 2 years ago) it was fine to have it run on multiple CPU cores without HDFS. Hence a stripped form of "pseudo-distributed" mode. –  Niels Basjes May 12 '12 at 22:14

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