Thanks for the info! We're running EBS gp2 volumes... awhile back we tested local SSDs with a different job and didn't notice any gains, but that was likely due to an under-optimized job where the bottleneck was elsewhere
On Wed, Apr 20, 2022, 11:08 AM Yaroslav Tkachenko <yaros...@goldsky.io> wrote: > Hey Trystan, > > Based on my personal experience, good disk IO for RocksDB matters a lot. > Are you using the fastest SSD storage you can get for RocskDB folders? > > For example, when running on GCP, we noticed *10x* throughput improvement > by switching RocksDB storage to > https://cloud.google.com/compute/docs/disks/local-ssd > > On Wed, Apr 20, 2022 at 8:50 AM Trystan <entro...@gmail.com> wrote: > >> Hello, >> >> We have a job where its main purpose is to track whether or not we've >> previously seen a particular event - that's it. If it's new, we save it to >> an external database. If we've seen it, we block the write. There's a 3-day >> TTL to manage the state size. The downstream db can tolerate new data >> slipping through and reject the write - we mainly use the state to reduce >> writes. >> >> We're starting to see some performance issues, even after adding 50% >> capacity to the job. After some number of days/weeks, it eventually goes >> into a constant backpressure situation. I'm wondering if there's something >> we can do to improve efficiency. >> >> 1. According to the flamegraph, 60-70% of the time is spent in RocksDB.get >> 2. The state is just a ValueState<Boolean>. I assume this is the >> smallest/most efficient state. The keyby is extremely high cardinality - >> are we better off with a lower cardinality and a MapState<String, Boolean> >> .contains() check? >> 3. Current configs: taskmanager.memory.process.size: >> 4g, taskmanager.memory.managed.fraction: 0.8 (increased from 0.6, didn't >> see much change) >> 4. Estimated num keys tops out somewhere around 9-10B. Estimated live >> data size somewhere around 250 GB. Attempting to switch to heap state >> immediately ran into OOM (parallelism: 120, 8gb memory each). >> >> And perhaps the answer is just "scale out" :) but if there are any >> signals to know when we've reached the limit of current scale, it'd be >> great to know what signals to look for! >> >> Thanks! >> Trystan >> >