We are evaluating pursuing Storm for a deployment, but I am a little concerned. We currently run Hadoop MapReduce, and would want to transition some of our processing from MapReduce to Storm processes. Note that that is some, but not all. We would still have some MapReduce functionality.

I had found Mesos, which could (potentially) allow for us to maintain a Storm and Hadoop deployment on the same hardware, but had a few other issues:

  • I envision the ideal situation as being able to "borrow" slots between Storm and Hadoop arbitrarily. ex. both would use the same resources as needed. Unfortunately this is a fixed deployment, and isn't "cloud based" like EC2 or the such.

  • I want to avoid bottlenecks in our Storm environment. An ideal case would be to "spin up" (or the inverse) more instances of Bolts as demand requires. Is this possible / realistic?

  • "Restarting" a topology seems like a fairly expensive operation, and I'm not sure is really an option. Ideally, I would want it to be as seamless as possible.

Are we approaching this problem correctly? Essentially, a Storm topology would "feed" a MapReduce batch job. Some of our processing can be processed in a streaming fashion, and would be much better as a Storm topology, while some of it requires batch processing.

Any general feedback, even if it doesn't address my specific questions, would be welcome. This is more of an exploratory phase at this point, and I might be totally approaching this the wrong way.

  • What do you mean when you say "Restarting a topology seems like a fairly expensive operation"? Expensive in what way?
    – Jack
    Jan 10, 2013 at 19:38
  • It seems to have to shut down and redeploy everything, and could have gaps of unavailability.
    – jon
    Jan 11, 2013 at 20:43
  • The way to deal with this is to shut down the topology, and let the messages/data queue up at the source, as you then fix/change your topolgoy and redeploy. Right now Storm does not have a way to change # of bolts in running topology automatically, however in 0.8.0+ you can use the Executors abstraction to adjust the parallelism "on the fly". This is essentially scaling up/down. Storm plans on having a "storm-swap" in the future, which would allow you to make modifications, adding/removing bolts, (changing the topology) and "swap" it out with minimal downtime.
    – Jack
    Jan 14, 2013 at 5:08

1 Answer 1


Some thoughts, and my experiences thus far in doing a similar experiment (worked through in a Spike during a Sprint):

  • From my experiences (I could be wrong), you don't really spin up more bolts as demand increases, but rather you adjust the parallelism configurations of each one in the topology. Topologies are not scaled by adding more Bolts, rather they are scaled by increasing the parallelism for whatever bolt is the bottleneck. Take the example word count problem:
builder.setBolt(4, new MyBolt(), 12)
    .fieldsGrouping(3, new Fields("id1", "id2"));

That last parameter (the "12") is the parallelism of that bolt. If it's a bottleneck in the topology and you need to scale up to meet demand, you increase this. A parallelism of 12 means it will result in 12 threads executing the bolt in parallel across the storm cluster.

  • In 0.8.0 you can use "Executors", which also allow for adjustments "on the fly" to help scale a bolt/etc up/down. Example:

builder.setBolt(new MyBolt(), 3) .setNumTasks(64) .shuffleGrouping("someSpout");

Here, the number of executors (threads) for MyBolt() is 3, and you can change the number of threads dynamically without affecting the topology. storm rebalance is used for this:

$ storm rebalance someTopology -n 6 -e mySpout=4 -e myBolt=6

This changes the number of workers for the "someTopology" topology to 6, the number of executors/threads for mySpout to 4, and the number of executors/threads for myBolt to 6.

  • It sounds like your storm topology would process on the streaming data. Data that requires batch processing would be kicked off after it's been persisted to whatever datastore (HDFS) you are using. In that case, you would wrap a bolt to do persistence to the datastore for whatever data is needed.
  • If, on the other hand, you want to do some sort of incremental processing on top of whatever datastore you already have (and remain stateful), use Trident (https://github.com/nathanmarz/storm/wiki/Trident-tutorial). Trident might actually solve a lot of the questions you have.
  • I'll also add that before deploying a topology, you should have some rough idea of what the load will be like. And you should test the topology to find where the bottlenecks are at, and adjust parallelism from there. I believe Twitter uses Iago twitter.github.com/iago (aka Parrot) for load testing APIs, and without knowing more about what Storm might already provide, you might be able to use that.
    – Jack
    Jan 11, 2013 at 21:09
  • The link to Trident is no longer valid, instead try: storm.apache.org/documentation/Trident-tutorial.html
    – dlaidlaw
    Jun 18, 2015 at 13:37

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