i'm currently working on a streaming ML pipeline and need exactly once event processing. I was interested by Flink but i'm wondering if there is any way to alter/update the execution state from outside.
The ml algorithm state is kept by Flink and that's ok, but considering that i'd like to change some execution parameters at runtime, i cannot find a viable solution. Basically an external webapp (in GO) is used to tune the parameters and changes should reflect in Flink for the subsequent events.
I thought about:
- a shared Redis with pub/sub (as polling for each event would kill throughput)
- writing a custom solution in Go :D
- ...
The state would be kept by key, related to the source of one of the multiple event streams coming in from Kafka.
Thanks