Everywhere in Flink docs I see that a state is individual to a map function and a worker. This seems to be powerful in a standalone approach, but what if Flink runs in a cluster ? Can Flink handle a global state where all workers could add data and query it ?

From Flink article on states :

For high throughput and low latency in this setting, network communications among tasks must be minimized. In Flink, network communication for stream processing only happens along the logical edges in the job’s operator graph (vertically), so that the stream data can be transferred from upstream to downstream operators.

However, there is no communication between the parallel instances of an operator (horizontally). To avoid such network communication, data locality is a key principle in Flink and strongly affects how state is stored and accessed.

1 Answer 1


I think that Flink only supports state on operators and state on Keyed streams, if you need some kind of global state, you have to store and recover data into some kind of database/file system/shared memory and mix that data with your stream.

Anyways, in my experiece, with a good processing pipeline design and partitioning your data in the right way, in most cases you should be able to apply divide and conquer algorithms or MapReduce strategies to archive your needs

If you introduce in your system some kind of global state, that global state could be a great bottleneck. So try to avoid it at all cost.

  • Asynchronous operations are supported via Flink though, can we interact with a database as the state ?
    – bachrc
    Commented Feb 5, 2018 at 10:41
  • Technically, you can do it with Managed Operator States. You can load the data from a database in the state with the initializeState function and store it with the snapshotState, but i don encourage you to do that, because that doesn't look like the purpose of thoose functions.
    – diegoreico
    Commented Feb 6, 2018 at 7:45
  • Another way to do that, is to use a custom operator extending a Flink operator. In any of thoose case, you must be carefull managing the number of connections open at the same time to your database
    – diegoreico
    Commented Feb 6, 2018 at 7:55
  • Also, operator state could be global if you use a KeyedStream in which the field that act as a key has the same value for all of your data, but i think that all your nada will be managed by a single TaskManager, so you will have another bottleneck
    – diegoreico
    Commented Feb 6, 2018 at 8:01

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