1,441 reputation
415
bio website techidiocy.com
location
age 25
visits member for 2 years, 10 months
seen Nov 20 at 7:34

A engineer by profession and a coder by heart.


Sep
30
awarded  Explainer
Sep
24
awarded  Autobiographer
Aug
14
comment passing a list to Mapper and reducer
yes , you can write directly to a file on HDFS. But i would rather suggest to first write it in your local and then move it to HDFS.
Aug
12
answered Hadoop set --config parameter via code
Aug
12
comment passing a list to Mapper and reducer
write this list records to a file and then pass the location of this input to your job. From there Mapper will parse it record by record and performs your business logic present in the map() implementation.
Aug
12
revised Synchronization among Mappers in map-reduce task
added 45 characters in body
Aug
12
revised Synchronization among Mappers in map-reduce task
added 60 characters in body
Aug
12
asked Synchronization among Mappers in map-reduce task
Aug
2
comment Mapreduce dataflow Internals
Tejas - links that you mentioned in the post seems like an invitation is required to read them.
Aug
1
comment Efficient Data Structure To Store Millions of Records
Yes I don't need them in memory , and processing is happening in the same way. But somehow objects are not getting garbage collected.
Jul
31
revised Efficient Data Structure To Store Millions of Records
Added Mapper Implementation
Jul
31
comment Efficient Data Structure To Store Millions of Records
I am not sure about the stream process , what you mean. Please bear with me. Upto my understanding I am doing the same thing - reading a record , parsing it to a generic record , sending it to drools framework and then writing it to a file. what I am missing here ? Yes records are independent of each other. I have added the code for my mapper implementation.
Jul
31
comment Efficient Data Structure To Store Millions of Records
@Baldy After that drools framework set a flag in the GenericRecord whether this record is rejected or passes. On the basis of this flag, record will be written to either accpeted or rejected file. These files are final outcome of our process.
Jul
31
comment Efficient Data Structure To Store Millions of Records
@LuiggiMendoza Sorry for not being clear , yes RAM is a problem as it is finite. As at this moment I don't have an exact requirement how big file will be (but at least millions record each) and this will increase in future. So , I think embedded db based solution might work here. Do you have any recommendation for embedded based DB solution ?
Jul
31
comment Efficient Data Structure To Store Millions of Records
I can use arrays but i need a relationship to be set between the key and values , so that later Drools framework can use it. I have seen few Map implementation those have the concept of external keys and values are stored in array.
Jul
31
comment Efficient Data Structure To Store Millions of Records
@LuiggiMendoza RAM is not a problem upto a level ,but as soon as file size increases it will blow off as it is creating lot of java objects in the memory.
Jul
31
comment Efficient Data Structure To Store Millions of Records
@C.B. yes we are using Hadoop , and in the mapper implementation everything happens. Updated the question.
Jul
31
revised Efficient Data Structure To Store Millions of Records
Updated question - Added Hadoop Tag
Jul
31
asked Efficient Data Structure To Store Millions of Records
Jul
16
comment HBase keeps doing SIMPLE authentication
can you please provide more explanation on what settings are you talking about. I am also facing the same problem. - Thanks