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Below is my Table (MyTable)

ID          TotalCount   ErrorCount   DT
1345653         5           3       20120709
534140349       5           2       20120709
601806615       5           1       20120709
682527813       4           3       20120709
687612723       3           2       20120709
704318001       5           4       20120709
1345653         5           2       20120710
704318001       1           0       20120710
1120784094      3           2       20120711

So If I need to calculate the error percentage in Hive using HiveQL for specific date, then I will be doing like this-

SELECT 100 * sum(ErrorCount*1.0) / sum(TotalCount) FROM MyTable 
where dt = '20120709'; 

But I need to do the same thing using Java MapReduce. Is there any way we can do the same thing using MapReduce in Java code. First of all I am confused whenever we write any MapReduce job in Java we read the corresponding file for that date partition? or we read the table?

Update:- Below is the table name which will contain the above scenario

create table lipy
( buyer_id bigint,
  total_chkout bigint,
  total_errpds bigint
 partitioned by (dt string)
row format delimited fields terminated by '\t'
stored as sequencefile
location '/apps/hdmi-technology/lipy'
share|improve this question
If you do not mind asking, why do you need to implement this in Java MapReduce. HiveQL gets translated to MapReduce code anyway. –  Edmon Aug 3 '12 at 3:01
I wanted to do this in Java MapReduce because I need to generate a report basis on that percentage I will be getting as mentioned in the query. So I thought may be if I am doing in Java MapReduce, then I can make an excel report as a Graph showing percentage thing and then also I can send that excel file as an email in an attachment to my teams. That is the reason I wanted to do it in Java MapReduce. –  lining Aug 3 '12 at 3:04

2 Answers 2

up vote 1 down vote accepted

That is quite easy- let me give a shot at some pseudo code.

SELECT 100 * sum(ErrorCount*1.0) / sum(TotalCount) FROM MyTable 
where dt = '20120709'; 

Map Stage:

  • increment a counter for total counts (you can simply use a field)
  • check if the dt column is equal to 20120709
  • if yes, increment an error counter
  • in cleanup emit as Key/Value: -1 / totalcount and 0 / error counter

Reduce stage: (you get a totalcount for key -1 and the error counter as key 0)

  • add all the numbers from key -1 and key 0
  • in cleanup you can calculate your percentage, and maybe send a mail if that is possible

Several things to note:

  • Mapoutput is <IntWritable, IntWritable> or <IntWritable,LongWritable> if the count does not fit in a integer.
  • Set the number of reducers to 1, so a single reducer gets all the keys.

I believe this is everything to note, it is quite early here and I had no coffee, so if you find a problem, feel free to tell me ;)

share|improve this answer
Thanks Thomas for suggestion. I recently started working with MapReduce so I am not sure how can I start implementing the above pseudo code you provided me. Can you provide me some code example that will work considering my scenario. And I have also updated my question with the table structure. It will be of great help if you can provide some working code, by that I can understand more on this. –  lining Aug 3 '12 at 6:20

You can do this but the implementation will depend on:

  1. Are your tables external About locations:


  1. How is data formatted - row format, delimited, ...

  2. How do you want to execute MapReduce. One very straightforward option is to run your Java MapReduce code as user defined functions (UDFs) that reuse HiveQL functions:


or simply run your custom mapreduce over Hive table data in HDFS.

share|improve this answer
I have updated the question with my Table Structure that will be storing that data. Can you provide me some example by that way I can understand more. –  lining Aug 3 '12 at 6:21

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