Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

My problem statement. Read a csv file with 10 million data and store it in db. with as minimal time as possible.

I had implemented it using Simple multi threaded executor of java and the logic is almost similar to spring batch's chunk. Read preconfigured number of data from csv file and then create a thread, and passing the data to thread which validates data and then writes to file which runs in multi thread. once all the task is done I'm calling sql loader to load each file. Now I want to move this code to spring batch(I'm newbie to spring batch)

Here are my question
1. In task, is it possible to make ItemReader to Item writer multi threaded(as I read the file create a new thread to process the data before the thread writes to data)? if not I need to create two steps first step read the file which is single threaded and another step which is multi threaded writing to individual file, but how do I pass the list of data to another task from previous task.
2. In case if there are any failures in a single thread, how can I stop whole batch job processing.
3. How to retry the batch job in case of failure after certain interval. I know that there is retry option in case of failure but I could not find an option to retry the task after certain interval in case of failure. here I'm not talking about scheduler because I've batch job already runs under scheduler, but on failure it has to be re-run after 3 minutes are so.

share|improve this question

2 Answers 2

  1. About multi-thread read How to set up multi-threading in Spring Batch? answer; it will point you to right direction. Also, in this sample there are some consideration about restart for CSV file
  2. Job should automatically fails if some error on thread: I have never tried, but this should be the default behaviour
  3. Spring Batch How to set time interval between each call in a Chunk tasklet can be a start. Also, official doc about Backoff Policies - When retrying after a transient failure it often helps to wait a bit before trying again, because usually the failure is caused by some problem that will only be resolved by waiting. If a RetryCallback fails, the RetryTemplate can pause execution according to the BackoffPolicy in place.

Let me known if this help or how you solve problem because I'm interested for my (future) work!
I hope my indications can be helpful.

share|improve this answer
    
Thanks @bellabax for your suggestion, I had gone through sample project parallel job which uses staging but still I'm not keen on using the Staging, since staging involves DB operation which I'm really not keen on, since staging will create an over head task(in my case) of write data to db and then read data from DB and write to file and finally call sql loader, My one more constraint is that I've on column with ADT data, hence sql loader provides me batter approach. –  Karthik Prasad Sep 8 '13 at 9:23
up vote 0 down vote accepted

Here is how I solved the problem.

  1. Read a file and chunk the file( split the file) using Buffered and File Channel reader and writer ( the fastest way of File read/write, even spring batch uses the same). I implemented such that this is executed before job is started( However it can be executed using job as step using method invoker)

  2. Start the Job with directory location as job parameter.

  3. Use multiResourcePartitioner which will get the directory location and for each file a slave step is created in separate thread
  4. In the Slave step get the file passed from Partitioner and use spring batchs itemreader to read the file
  5. Use the Database item writer( I'm using mybatis batch itemwriter) to push the data to Database.
  6. Its better to use the split count equal to commit-count of step.
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.