One of the authors here. The neat thing about this set up is that these streaming examples are executing against a real stream processor in the browser.
The interactive examples were built using [Onyx](https://github.com/onyx-platform/onyx) and it's cross-compiled JavaScript sibling, [onyx-local-rt](https://github.com/onyx-platform/onyx-local-rt).
Distributed Masonry uses Clojure to build Onyx [1], an open source distributed batch and streaming platform. We also build a realtime application platform named Pyroclast [2] directly on top of Onyx. Our code base is written entirely in Clojure. The architecture we've ended up with is hands down the cleanest I've ever worked on.
We persist the IDs to disk with RocksDB itself when that happens, periodically pruning them away when the messages are complete. The Bloom filter is mostly an optimization - even though it does the job most of the time. You're right - we intentionally omitted further discussion of that piece.
I wasn't aware that they're Thrift serializable - that's cool, and offers roughly what Onyx does in terms of its workflow representation.
Onyx goes a little further though in terms of its catalog. I wanted more of the computation to be pulled out into a data structure. That includes runtime parameters, flow, performance tuning knobs, and grouping functions. All of these things are represented as data in Onyx. It's a little harder, at least in my experience, to do these things in Storm.
I'll paraphrase a few snippets from my own documentation to answer these questions. Happy to comment more if needed.
Information models are often superior to APIs, and almost always better than DSLs. The hyper-flexibility of a data structure literal allows Onyx workflows and catalogs to be constructed at a distance, meaning on another machine, in a different language, by another program, etc. Contrast this to Storm. Topologies are written with functions, macros, and objects. These things are specific to a programming language, and make it hard to work at a distance - specifically in the browser. JavaScript is the ultimate place to be when creating specifications.
Further, the information model for an Onyx workflow has the distinct advantage that it's possible to compile other workflows (perhaps a datalog) into the workflow that Onyx understands.
- Storm is significantly more mature and performant the moment.
- Storm has a better cross-language story in terms of bolt functions.
- Pretty much everything in Onyx is much more open ended. This applies to deployment, program structure, and workflow creation - and is mostly an artifact of how aggressively Onyx uses data structures.
- Onyx has a far better reach across languages in terms of its information model.
- Onyx will be adopting a tweaked version of Storm's message model next release to get on the same level of performance and reliability. We're dropping the HornetQ dependency.
- Onyx is born out of years of frustration of direct usage of Storm and Hadoop.