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I couldn't find an answer to my issue while sifting through some Hadoop guides: I am committing various Hadoop jobs (up to 200) in one go via a shell script on a client computer. Each job is started by means of a JAR (which is quite large; approx. 150 MB). Right after submitting the jobs, the client machine has a very high CPU load (each core on 100%) and the RAM is getting full quite fast. That way, the client is no longer usable. I thought that the computation of each job is entirely done within the Hadoop framework, and only some status information is exchanged between the cluster and the client while the job is running.

So, why is the client fully stretched? Am I committing Hadoop jobs the wrong way? Is each JAR too big?

Thanks in advance.

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up vote 2 down vote accepted

It is not about the jar. The client side is calculating the InputSplits. So it can be possible that when having large number of input files for each job the client machine gets a lot of load. But I guess when submitting 200 jobs the RPC Handler on the jobtracker has some problems. How many RPC handlers are active on the jobtracker?

Anyways, I would batch the submission up to 10 or 20 jobs at a time and wait for their completion. I guess you're having the default FIFO scheduler? So you won't benefit from submitting all 200 jobs at a time either.

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I wasn't aware of a configuration of RPC handlers for the jobtracker. The value in mapred-site.xml is set to 40. I'm using the FairScheduler. – labrassbandito Sep 25 '11 at 14:31
    
Well, you could increase it a bit. But the memory usage from calculating the input splits will still be there. – Thomas Jungblut Sep 25 '11 at 14:36
2  
Also, the jar file has to be copied to HDFS. 200 jobs * 150 MB ~ 30 GB to HDFS from the client. Also, mapred.submit.replication is defaulted to 10 (so 30 GB has to be replicated 10 times in HDFS). Documentation says this replication should be square root of the number of nodes. Not sure if decreasing this replication makes things faster. – Praveen Sripati Sep 25 '11 at 15:33
    
@PraveenSripati Thanks for your insights. Indeed, the mapred.submit.replication value is still set to the default value. I have about 40 nodes in my cluster, so I'll try to decrease the value to 6. In addition, I'll try to minimize the size of my JAR, because the replication and network traffic caused is very high. – labrassbandito Sep 25 '11 at 17:00
    
@Thomas - I guess you're having the default FIFO scheduler? So you won't benefit from submitting all 200 jobs at a time either. - Just curious how does it matter? – Praveen Sripati Sep 25 '11 at 17:31

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