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I wanted to understand how mapreduce happens using KFS as file system in Hadoop.

# ./bin/
If the map/reduce job/task trackers are up, all I/O will be done to KFS.

So, suppose my input files are scattered in different nodes(Kosmos servers), how do I(hadoop client using KFS as file system) issue a Mapreduce command?

Moreover, after issuing a Mapreduce command would my hadoop client fetch all the data from different servers to my local machine and then do a Mapreduce or would it start the TaskTracker daemons on the machine(s) where the input file(s) are located and perform a Mapreduce there? Please rectify me if I am wrong but I suppose that the location of input files top Mapreduce is being returned by the function getFileBlockLocations (FileStatus, long, long).

Thank you very much for your time and helping me out.

Regards, Nikhil

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are you mentioning Kosmos File system(KFS) – azzaxp Feb 22 '13 at 6:38
Yes. Thanks for the reply but i am still not clear where is Mapreduce actually happening? – user2095164 Feb 22 '13 at 7:51
Chk my Updated answer. – azzaxp Feb 22 '13 at 9:41

1 Answer 1

up vote 1 down vote accepted

No. MapReduce is a program that is run in all the nodes, in a distributed fashion. The Master node will be like a supervisor for all the data/slave nodes responsible for the get the work done. Fig :1

Map Reduce Tasks

  • A MapReduce job usually splits the input data-set into independent chunks which are processed by the map tasks in a completely parallel manner.

  • The framework sorts the outputs of the maps, which are then input to the reduce tasks.

  • Typically both the input and the output of the job are stored in a

  • The framework takes care of scheduling tasks, monitoring them and
    re-executes the failed tasks.

Fig: 2 Fig: 3 The Above fig:3 shows How the MapReduce happens at node level.

Now your about your KFS:

When the Hadoop map/reduce trackers start up, those processes (on local as well as remote nodes) will now need to load KFS's library.

To simplify this process, it is advisable to store in an NFS accessible directory (similar to where Hadoop binaries/scripts are stored); then, modify Hadoop's conf/ adding the following line and providing suitable value for

export LD_LIBRARY_PATH=<path>

Chk out this link:

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Here the Output file explained in the figure 2, is also stored in the KFS/HDFS in a distributed system. – azzaxp Feb 22 '13 at 9:42
Hi!! Thanks a lot for putting in so much of effort to answer my question. The diagram explains quite well how a MapReduce actually happens. In Hadoop there are different FileSystems like HDFS/KFS/S3/etc. In case of S3 the data is fetched to the local machine and then MR is done on it. continued in comment below...... – user2095164 Feb 22 '13 at 10:32
Therefore, I wanted to ask that in case of KFS, is the data pulled from different servers to the local machine ? or Does the MR framework start TaskTracker daemons on the nodes containing the input data for MR and thus, MR is carried out without any fetching of data? The link which you had specified i have seen but it does not clearly answer the question. Thanks for your time and energy. – user2095164 Feb 22 '13 at 10:33
I would still say it works the same for GFS,HDFS or KFS(cloudstore) Because most of the places KFS is just another option and nothing specifically has been mentioned unlike S3, they all work on local computation and grouping only computed data is shuffled for reduce process. – azzaxp Feb 22 '13 at 11:44

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