Hi Satish
       After changing dfs.block.size to 40 did to recopy the files. Changing 
dfs.block.size won't affect the existing files in hdfs it would be applicable 
from the new files you copy to hdfs. In short with the changes in 
dfs.block.size=40,
mapred.min.split.size=0,mapred.max.split.size=40 do a copyFromLocal and try 
executing your job on this newly copied data.


Regards
Bejoy K S

-----Original Message-----
From: "Satish Setty (HCL Financial Services)" <satish.se...@hcl.com>
Date: Tue, 10 Jan 2012 08:57:37 
To: Bejoy Ks<bejoy.had...@gmail.com>
Cc: mapreduce-user@hadoop.apache.org<mapreduce-user@hadoop.apache.org>
Subject: RE: hadoop

  
Hi Bejoy, 
  

 Thanks for help. Changed values  
mapred.min.split.size=0,mapred.max.split.size=40 but but job counter does not 
reflect any other changes? 
For posting kindly let me know correct link/mail-id - at present directly 
sending to your account["Bejoy Ks ‎[bejoy.had...@gmail.com]‎" - has been great 
help to me. 
  
Posting to group account 
mapreduce-user@hadoop.apache.org <mailto:mapreduce-user@hadoop.apache.org>   
bounces back. 
  
 
 
 Counter Map Reduce Total 
 File Input Format Counters Bytes Read 61 0 61 
 Job Counters SLOTS_MILLIS_MAPS 0 0 3,886 
 Launched map tasks 0 0 2 
 Data-local map tasks 0 0 2 
 FileSystemCounters HDFS_BYTES_READ 267 0 267 
 FILE_BYTES_WRITTEN 58,134 0 58,134 
 Map-Reduce Framework Map output materialized bytes 0 0 0 
 Combine output records 0 0 0 
 Map input records 9 0 9 
 Spilled Records 0 0 0 
 Map output bytes 70 0 70 
 Map input bytes 54 0 54 
 SPLIT_RAW_BYTES 206 0 206 
 Map output records 7 0 7 
 Combine input records 0 0 0 
 
----------------
 From: Bejoy Ks [bejoy.had...@gmail.com]
 Sent: Monday, January 09, 2012 11:13 PM
 To: Satish Setty (HCL Financial Services)
 Cc: mapreduce-user@hadoop.apache.org
 Subject: Re: hadoop
 
 
 
Hi Satish
       It would be good if you don't cross post your queries. Just post it once 
on the right list.
 
       What is your value for mapred.max.split.size? Try setting these values 
as well 
 mapred.min.split.size=0 (it is the default value)
 mapred.max.split.size=40
 
 Try executing your job once you apply these changes on top of others you did. 
 
 Regards
 Bejoy.K.S
 
 
On Mon, Jan 9, 2012 at 5:09 PM, Satish Setty (HCL Financial Services) 
<satish.se...@hcl.com <mailto:satish.se...@hcl.com> > wrote:
 
 
Hi Bejoy, 
  
Even with below settings map tasks never go beyound 2, any way to make this 
spawn 10 tasks. Basically it should look like compute grid - computation in 
parallel. 
  
<property>
   <name>io.bytes.per.checksum</name>
   <value>30</value>
   <description>The number of bytes per checksum.  Must not be larger than
   io.file.buffer.size.</description>
 </property> 

 <property>
   <name>dfs.block.size</name>
    <value>30</value>
   <description>The default block size for new files.</description>
 </property>
 
<property>
   <name>mapred.tasktracker.map.tasks.maximum</name>
   <value>10</value>
   <description>The maximum number of map tasks that will be run
   simultaneously by a task tracker.
   </description>
 </property>
 
  
 
----------------
 
From: Satish Setty (HCL Financial Services)
 Sent: Monday, January 09, 2012 1:21 PM 
 
 

 To: Bejoy Ks
 Cc: mapreduce-user@hadoop.apache.org <mailto:mapreduce-user@hadoop.apache.org> 
 Subject: RE: hadoop
 
 
 
 
 
 
 
Hi Bejoy, 
  
In hdfs I have set block size - 40bytes . Input Data set is as below 
data1   (5*8=40 bytes) 
data2 
...... 
data10 
  
  
But still I see only 2 map tasks spawned, should have been atleast 10 map 
tasks. Not sure how works internally. Line feed does not work [as you have 
explained below] 
  
Thanks 
 
----------------
 From: Satish Setty (HCL Financial Services)
 Sent: Saturday, January 07, 2012 9:17 PM
 To: Bejoy Ks
 Cc: mapreduce-user@hadoop.apache.org <mailto:mapreduce-user@hadoop.apache.org> 
 Subject: RE: hadoop
 
 
 
 
Thanks Bejoy - great information - will try out. 
  
I meant for below problem single node with high configuration -> 8 cpus and 8gb 
memory. Hence taking an example of 10 data items with line feeds. We want 
to utilize full power of machine - hence want at least 10 map tasks - each task 
needs to perform highly complex mathematical simulation.  At present it looks 
like file data is the only way to specify number of map tasks via splitsize 
(in bytes) - but I prefer some criteria like line feed or whatever. 
  
In below example - 'data1' corresponds to 5*8=40bytes, if I have data1 .... 
data10 in theory I need to see 10 map tasks with split size of 40bytes. 
  
How do I perform logging - where is the log (apache logger) data written? 
system outs may not come as it is background process. 
  
Regards 
  
  
 
----------------
 From: Bejoy Ks [bejoy.had...@gmail.com <mailto:bejoy.had...@gmail.com> ]
 Sent: Saturday, January 07, 2012 7:35 PM
 To: Satish Setty (HCL Financial Services)
 Cc: mapreduce-user@hadoop.apache.org <mailto:mapreduce-user@hadoop.apache.org> 
 Subject: Re: hadoop
 
 
 
Hi Satish
       Please find some pointers inline
 
 Problem - As per documentation filesplits corresponds to number of map tasks.  
File split is governed  by bock size - 64mb in hadoop-0.20.203.0. Where can I 
find default settings for variour parameters like block size, number of 
map/reduce tasks.
 
 [Bejoy] I'd rather state it other way round, the number of map tasks triggered 
by a MR job is determined by number of input splits (and input format). If you 
use TextInputFormat with default settings the number of input splits is equal 
to the no of hdfs blocks occupied by the input. Size of an input split is equal 
to hdfs block size in default(64Mb). If you want to have more splits for one 
hdfs block itself you need to set a value less than 64 Mb for 
mapred.max.split.size. 
 
 You can find pretty much all default configuration values from the downloaded 
.tar at
 hadoop-0.20.*/src/mapred/mapred-default.xml
 hadoop-0.20.*/src/hdfs/hdfs-default.xml
 hadoop-0.20.*/src/core/core-default.xml
 
 If you want to alter some of these values then you can provide the same in 
 $HADOOP_HOME/conf/mapred-site.xml
 $HADOOP_HOME/conf/hdfs-site.xml
 $HADOOP_HOME/conf/core-site.xml
 
 These values provided in *-site.xml would be taken into account only if they 
are not marked in *-default.xml. If not final, the values provided in 
*-site.xml overrides the values in *-default.xml for corresponding 
configuration parameter.
 
 I require atleast  10 map taks which is same as number of "line feeds". Each 
corresponds to complex calculation to be done by map task. So I can have 
optimal cpu utilization - 8 cpus.
 
 [Bejoy] Hadoop is a good choice processing large amounts of data. It is not 
wise to choose one mapper for one record/line in a file, as creation of a map 
task itself is expensive with jvm spanning and all. Currently you may have 10 
records in your input but I believe you are just testing Hadoop in dev env and 
in production that wouldn't be the case there could be n files having m records 
each and this m can be in millions.(Just assuming based on my experience). On 
larger data sets you may not need to split on line boundaries. There can be 
multiple lines in a file and if you use TextInputFormat it is just one line 
processed by a map task at an instant. If you have n map tasks then n lines 
could be getting processed at an instant of map task execution time frame one 
by each map task. In larger data volumes map tasks are spanned in specific 
nodes primarily based on data locality, then on available tasks slots on data 
local node and so on. It is possible that if you have a 10 node cluster, 10 
hdfs blocks corresponding to a input file and assume that all the blocks are 
present only on 8 nodes and there are sufficient task slots available on all 8 
, then tasks for your job may be executed in 8 nodes alone instead of 10. So 
there are chances that there won't be 100% balanced CPU utilization across 
nodes in a cluster. 
                I'm not really sure how you can spawn map tasks based on line 
feeds in a file .Let us wait for others  to comment on this. 
            Also if your using map reduce for parallel computation alone the 
make sure you set the number of reducers to zero, with that you can save a lot 
of time that would be other wise spend on sort and shuffle phases. 
 (-D  mapred.reduce.tasks=0)
 
 
Behaviour of maptasks looks strange to be as some times if I give in program 
jobconf.set(num map tasks) it takes 2 or 8.  
 
 [Bejoy]There is no default value for number of map tasks, it is determined by 
input splits and  input format used by your job. You cannot set the number of 
map tasks even if you set them at your job level, it is not considered. 
(mapred.map.tasks) . But you can definitely specify the number of reduce tasks 
at your job level  by job.setNumReduceTasks(n) or mapred.reduce.tasks. If not 
set it would take the default value for reduce tasks specified in conf files.
 
 
 I see some files like part-00001... 
Are they partitions? 
 [Bejoy] The part-000* files corresponds to reducers. You'd have n files if you 
have n reducers as one reducer produces one output file.
 
 Hope it helps!..
 
 Regards
 Bejoy.KS
 
 
 
On Sat, Jan 7, 2012 at 3:32 PM, Satish Setty (HCL Financial Services) 
<satish.se...@hcl.com <mailto:satish.se...@hcl.com> > wrote:
 
 
Hi Bijoy, 
 
 
 
 
  
Just finished installation and tested sample applications. 
  
Problem - As per documentation filesplits corresponds to number of map tasks.  
File split is governed  by bock size - 64mb in hadoop-0.20.203.0. Where can I 
find default settings for variour parameters like block size, number of 
map/reduce tasks. 
  
Is it possible to control filesplit by "line feed - \n". I tried giving sample 
input -> jobconf -> TextInputFormat 
  
date1   
date2 
date3 
....... 
...... 
date10 
  
But when I run I see number of maptasks=2 or 1. 
I require atleast  10 map taks which is same as number of "line feeds". Each 
corresponds to complex calculation to be done by map task. So I can have 
optimal cpu utilization - 8 cpus. 
  
Behaviour of maptasks looks strange to be as some times if I give in program 
jobconf.set(num map tasks) it takes 2 or 8.  I see some files like 
part-00001... 
Are they partitions? 
  
Thanks 
 
----------------
 From: Satish Setty (HCL Financial Services)
 Sent: Friday, January 06, 2012 12:29 PM
 To: bejoy.had...@gmail.com <mailto:bejoy.had...@gmail.com> 
 Subject: FW: hadoop
 
 
 
 
  
 
 
 
 
 
Thanks Bejoy. Extremely useful information. We will try and come back. WebApp 
application [jobtracker web UI ] does this require deployment or application 
server container comes inbuilt with hadoop? 
  
Regards 
  
 
----------------
 From: Bejoy Ks [bejoy.had...@gmail.com <mailto:bejoy.had...@gmail.com> ]
 Sent: Friday, January 06, 2012 12:54 AM
 To: mapreduce-user@hadoop.apache.org <mailto:mapreduce-user@hadoop.apache.org> 
 Subject: Re: hadoop
 
 
 
 
 
 
Hi Satish
         Please find some pointers in line
 
 (a) How do we know number of  map tasks spawned?  Can this be controlled? We 
notice only 4 jvms running on a single node - namenode, datanode, jobtracker, 
tasktracker. As we understand depending on number of splits that many map tasks 
are spawned - so we should see that many increase in jvms.
 
 [Bejoy] namenode, datanode, jobtracker, tasktracker, secondaryNameNode are the 
default process on hadoop it is not dependent on your tasks and your tasks are 
custom tasks are launched in separate jvms. You can control the maximum number 
of mappers on each tasktracker at an instance by setting 
mapred.tasktracker.map.tasks.maximum. In default all the tasks (map or reduce) 
are executed on individual jvms and once the task is completed the jvms are 
destroyed. You are right, in default one map task is launched per input split.
 Just check the jobtracker web UI 
(http://nameNodeHostName:50030/jobtracker.jsp), it would give you you all 
details on the job including the number of map tasks spanned by a job. If you 
want to run multiple task tracker and data node instances on the same machine 
you need to ensure that there are no port conflicts.
 
 (b) Our mapper class should perform complex computations - it has plenty of 
dependent jars so how do we add all jars in class path  while running 
application? Since we require to perform parallel computations - we need many 
map tasks running in parallel with different data. All are in same machine with 
different jvms.
 
 [Bejoy] If these dependent jars are used by almost all your applications 
include the same in class path of all your nodes.(in your case just one node). 
Alternatively you can use -libjars option while submitting your job. For more 
details refer
 
http://www.cloudera.com/blog/2011/01/how-to-include-third-party-libraries-in-your-map-reduce-job/
 
 (c) How does data split happen?  JobClient does not talk about data splits? As 
we understand we create format for distributed file system, start-all.sh and 
then "hadoop fs -put". Do this write data to all datanodes? But we are unable 
to see physical location? How does split happen from this hdfs source?
 
 [Bejoy] Input files are split into blocks during copy into hdfs itself , the 
size of each block is detmined from the hadoop configuration of your cluster. 
Name node decides on which all datanodes these blocks are to be placed 
including its replicas and this details are passed on to the client. The client 
copies the blocks to one data node and from this data node the block is 
replicated to other datanodes. The splitting of a file happens in HDFS API 
level.
 
 thanks 

 
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