you beat me to it. let's me try that. On Wed, Jan 22, 2020 at 7:57 PM Jingsong Li <jingsongl...@gmail.com> wrote:
> Fanbin, > > Document is here: > https://ci.apache.org/projects/flink/flink-docs-release-1.9/dev/table/config.html > NOTE: you need configure this into TableConfig. > > Best, > Jingsong Lee > > On Thu, Jan 23, 2020 at 11:54 AM Fanbin Bu <fanbin...@coinbase.com> wrote: > >> Jingsong, >> >> Thank you for the response. >> Since I'm using flink on EMR and the latest version is 1.9 now. the >> second option is ruled out. but will keep that in mind for future upgrade. >> >> I'm going to try the first option. It's probably a good idea to add that >> in the doc for example: >> https://ci.apache.org/projects/flink/flink-docs-stable/ops/config.html >> >> Thanks, >> Fanbin >> >> On Wed, Jan 22, 2020 at 7:08 PM Jingsong Li <jingsongl...@gmail.com> >> wrote: >> >>> Hi Fanbin, >>> >>> Thanks for using blink batch mode. >>> >>> The OOM is caused by the manage memory not enough in Hash aggregation. >>> >>> There are three options you can choose from: >>> >>> 1.Is your version Flink 1.9? 1.9 still use fix memory configuration. So >>> you need increase hash memory: >>> - table.exec.resource.hash-agg.memory: 1024 mb >>> >>> 2.In 1.10, we use slot manage memory to dynamic config real operator >>> memory, so operator can use more manage memory, so you don't need configure >>> hash agg memory anymore. You can try 1.10 RC0 [1] >>> >>> 3.We can use sort aggregation to avoid OOM too, but there is no config >>> option now, I created JIRA to track it. [2] >>> >>> [1] >>> http://apache-flink-mailing-list-archive.1008284.n3.nabble.com/ANNOUNCE-Apache-Flink-1-10-0-release-candidate-0-td36770.html >>> [2] https://issues.apache.org/jira/browse/FLINK-15732 >>> >>> Best, >>> Jingsong Lee >>> >>> On Thu, Jan 23, 2020 at 7:40 AM Fanbin Bu <fanbin...@coinbase.com> >>> wrote: >>> >>>> >>>> tried to increase memory: >>>> flink run -m yarn-cluster -p 16 -ys 1 -ytm 200000 -yjm 8096 myjar >>>> >>>> and still got the same OOM exception. >>>> >>>> my sql is like: >>>> >>>> select id, hop_end(created_at, interval '30' second, interval '1' minute), >>>> sum(field)... #20 of these sums >>>> >>>> from table group by id, hop(created_at, interval '30' second, interval '1' >>>> minute) >>>> >>>> >>>> >>>> On Wed, Jan 22, 2020 at 3:19 PM Fanbin Bu <fanbin...@coinbase.com> >>>> wrote: >>>> >>>>> Hi, >>>>> >>>>> I have a batch job using blink planner. and got the following error. I >>>>> was able to successfully run the same job with flink 1.8 on yarn. >>>>> >>>>> I set conf as: >>>>> taskmanager.heap.size: 50000m >>>>> >>>>> and flink UI gives me >>>>> Last Heartbeat:20-01-22 >>>>> 14:56:25ID:container_1579720108062_0018_01_000020Data Port:41029Free Slots >>>>> / All Slots:1 / 0CPU Cores:16Physical Memory:62.9 GBJVM Heap Size:10.3 >>>>> GBFlink Managed Memory:24.9 GB >>>>> >>>>> any suggestions on how to move forward? >>>>> Thanks, >>>>> Fanbin >>>>> >>>>> Caused by: org.apache.flink.runtime.client.JobExecutionException: Job >>>>> execution failed. >>>>> at >>>>> org.apache.flink.runtime.jobmaster.JobResult.toJobExecutionResult(JobResult.java:146) >>>>> at >>>>> org.apache.flink.client.program.rest.RestClusterClient.submitJob(RestClusterClient.java:259) >>>>> ... 25 more >>>>> >>>>> *Caused by: java.io.IOException: Hash window aggregate map OOM.* at >>>>> HashWinAggWithKeys$534.processElement(Unknown Source) >>>>> at >>>>> org.apache.flink.streaming.runtime.io.StreamOneInputProcessor.processElement(StreamOneInputProcessor.java:164) >>>>> at >>>>> org.apache.flink.streaming.runtime.io.StreamOneInputProcessor.processInput(StreamOneInputProcessor.java:143) >>>>> at >>>>> org.apache.flink.streaming.runtime.tasks.StreamTask.performDefaultAction(StreamTask.java:276) >>>>> at >>>>> org.apache.flink.streaming.runtime.tasks.StreamTask.run(StreamTask.java:298) >>>>> at >>>>> org.apache.flink.streaming.runtime.tasks.StreamTask.invoke(StreamTask.java:403) >>>>> at org.apache.flink.runtime.taskmanager.Task.doRun(Task.java:705) >>>>> at org.apache.flink.runtime.taskmanager.Task.run(Task.java:530) >>>>> at java.lang.Thread.run(Thread.java:748) >>>>> >>>> >>> >>> -- >>> Best, Jingsong Lee >>> >> > > -- > Best, Jingsong Lee >