A storm topology contains a Spout component which is run using >1 threads. e.g.

 builder.setSpout("lines", new TestLineSpout(), 2);

The Spout (open function) opens and reads all the lines of a text file and nextTuple emits each line to a bolt.

As 2 threads are run, for the spout, each line of the file is read twice.

I am new to storm and am wondering the best way of handling this? I could reduce the number of threads to 1 or modify the spout so that each thread reads different lines - or do (how) I need to make use of the TopologyContext parameter? am not sure if I've missed a "storm" way of imlementing this?

  • There's no magic. To make it so that multiple spout instances process each line exactly once you need to add some level of complexity which really isn't worth it. In this case the I/O shouldn't be that bad relative to the overhead of tracking blocks or entire files that are processed by the spout instances. – Chris Gerken May 28 '14 at 2:00
  • The 2 threads each read the file once so that the file is read twice. How can the file be read just once - but still keeping the 2 threads? – Helen Reeves May 28 '14 at 2:18
  • Is this just a single file or are you reading a list of files from some other source? – bridiver May 28 '14 at 4:07
  • It is a single file – Helen Reeves May 28 '14 at 20:49


Storm has no functionality to read files stored on the local file system in parallel. You can write a spout that does that, but apart from small test and experimentation purposes, that would conflict with the architecture of Storm.

Here are a few pointers:

  • Storm is designed to process data stream received in real time. If you already have all your data finalized and stored somewhere, the constraints imposed by Storm will just be annoyances in your way. Batch oriented solutions like Yarn map reduce or Spark are easier.

  • Storm is meant to be distributed, with many threads per worker (VM), many workers per slave node and many (many) slave nodes. There is no concept of "a single file on the local file system" in such a distributed architecture. Also, for scalability reasons, one core idea is to have all those workers act independently without communicating with each order. That's why we typically use distributed solutions to feed data into Storm, like Kafka or 0mq.

  • The closest thing to a file on the local file system I can think of in the distributed word is an HDFS folder. The pattern is to have all producers of data write to a folder, each to a file with uniquely generated name, and a data readers consuming a folder would read all files in it, no matter their name. But again, if you go that way, traditional map reduce or spark are easier, I think.

I hope this help :D


This is our solution:

Read the file on your local system line by line into mq or kafka with a simple java program, here each line acts as a stream. Then you can use storm to process those streams in a parallel manner.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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