Rick, 

I think “spark.streaming.kafka.maxRatePerPartition” won’t work for you since, 
afaik, it’s a configuration option of Spark Kafka reader and Beam KafkaIO 
doesn’t use it (since it has own consumer implementation).
In the same time, if you want to set an option for Beam KafkaIO consumer config 
then you should use "updateConsumerProperties()” method.

> On 28 Jan 2019, at 10:56, <[email protected]> <[email protected]> wrote:
> 
> Dear Raghu,
>  
> I add the line: “PCollection<Integer> reshuffled = 
> windowKV.apply(Reshuffle.viaRandomKey());” in my program.
>  
> I tried to control the streaming data size: 100,000/1sec to decrease the 
> processing time.
>  
> The following settings are used for my project.
>  
> 1.      One topic / 2 partitions
> <image004.jpg>
> 2.      Two workers / two executors
>  
> 3.      The spark-default setting is:
> spark.executor.instances=2
> spark.executor.cores=4
> spark.executor.memory=2048m
> spark.default.parallelism=200
>  
> spark.streaming.blockInterval=50ms
> spark.streaming.kafka.maxRatePerPartition=50,000
> spark.streaming.backpressure.enabled=true
> spark.streaming.concurrentJobs = 1
> spark.executor.extraJavaOptions=-XX:+UseConcMarkSweepGC
> spark.executor.extraJavaOptions=-Xss100M
>  
> spark.shuffle.consolidateFiles=true
> spark.streaming.unpersist=true
> spark.streaming.stopGracefullyOnShutdown=true
>  
> I hope that the data size is controlled at 100,000.
>  
> Here,
> <image005.jpg>
>  
> The data size is always over 100,000. The setting of 
> “spark.streaming.kafka.maxRatePerPartition” confused me.
>  
> That does not seem to work for me.
>  
> Rick
>  
> From: Raghu Angadi [mailto:[email protected] <mailto:[email protected]>] 
> Sent: Saturday, January 26, 2019 3:06 AM
> To: [email protected] <mailto:[email protected]>
> Subject: Re: kafkaIO Consumer Rebalance with Spark Runner
>  
> You have 32 partitions. Reading can not be distributed to more than 32 
> parallel tasks. 
> If you have a log of processing for each record after reading, you can 
> reshuffle the messages before processing them, that way the processing could 
> be distributed to more tasks. Search for previous threads about reshuffle in 
> Beam lists.
>  
> On Thu, Jan 24, 2019 at 7:23 PM <[email protected] 
> <mailto:[email protected]>> wrote:
> Dear all,
>  
> I am using the kafkaIO sdk in my project (Beam with Spark runner).
>  
> The problem about task skew is shown as the following figure.
> <image001.jpg>
>  
> My running environment is:
> OS: Ubuntn 14.04.4 LTS
> The version of related tools is:
> java version: "1.8.0_151"
> Beam version: 2.9.0 (Spark runner with Standalone mode)
> Spark version: 2.3.1 Standalone mode
>   Execution condition:
>   Master/Driver node: ubuntu7
>   Worker nodes: ubuntu8 (4 Executors); ubuntu9 (4 Executors)
> The number of executors is 8
>  
> Kafka Broker: 2.10-0.10.1.1
>   Broker node at ubuntu7
> Kafka Client:
>         The topic: kafkasink32
> kafkasink32 Partitions: 32
>  
> The programming of my project for kafkaIO SDK is as:
> ==============================================================================
> Map<String, Object> map = ImmutableMap.<String, Object>builder()
>            .put("group.id <http://group.id/>", (Object)"test-consumer-group")
>            .build();
> List<TopicPartition> topicPartitions = new ArrayList();
>            for(int i = 0; i < 32; i++) {
>                      topicPartitions.add(new TopicPartition("kafkasink32",i));
>     }
> PCollection<KV<Long, String>> readKafkaData = p.apply(KafkaIO.<Long, 
> String>read()
>          .withBootstrapServers("ubuntu7:9092")
>        .updateConsumerProperties(map)
>        .withKeyDeserializer(LongDeserializer.class)
>        .withValueDeserializer(StringDeserializer.class)
>        .withTopicPartitions(topicPartitions)
>        .withoutMetadata()
>        );
> ==============================================================================
> Here I have two directions to solve this problem:
>  
> 1.      Using the following sdk from spark streaming
> 
> https://jaceklaskowski.gitbooks.io/spark-streaming/spark-streaming-kafka-LocationStrategy.html
>  
> <https://jaceklaskowski.gitbooks.io/spark-streaming/spark-streaming-kafka-LocationStrategy.html>
> LocationStrategies.PreferConsistent: Use in most cases as it consistently 
> distributes partitions across all executors.
>  
> If we would like to use this feature, we have not idea to set this in kafkaIO 
> SDK.
>  
> 2.      Setting the related configurations of kafka to perform the consumer 
> rebalance
> 
> set consumer group? Set group.id <http://group.id/>?
> 
>  
> 
> If we need to do No2., could someone give me some ideas to set configurations?
>  
> 
> If anyone provides any direction to help us to overcome this problem, we 
> would appreciate it.
>  
> 
> Thanks.
>  
> Sincerely yours,
>  
> Rick
>  
> 
> 
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