[ 
https://issues.apache.org/jira/browse/FLINK-33545?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=17793457#comment-17793457
 ] 

Mason Chen commented on FLINK-33545:
------------------------------------

The reason why you don't find any synchronization is because the task is single 
threaded. Even if the issue you describe exists, it would need to be fixed in 
the Flink runtime and not the Kafka connector, as such a bug would affect all 
sink connectors.

Assuming the Flink runtime is correct, the only way for data loss to occur if 
there is a case when the Kafka Producer API doesn't throw an exception when the 
broker has not ack'ed the record.

> KafkaSink implementation can cause dataloss during broker issue when not 
> using EXACTLY_ONCE if there's any batching
> -------------------------------------------------------------------------------------------------------------------
>
>                 Key: FLINK-33545
>                 URL: https://issues.apache.org/jira/browse/FLINK-33545
>             Project: Flink
>          Issue Type: Bug
>          Components: Connectors / Kafka
>    Affects Versions: 1.18.0
>            Reporter: Kevin Tseng
>            Assignee: Kevin Tseng
>            Priority: Major
>              Labels: pull-request-available
>
> In the current implementation of KafkaSource and KafkaSink there are some 
> assumption that were made:
>  # KafkaSource completely relies on Checkpoint to manage and track its offset 
> in *KafkaSourceReader<T>* class
>  # KafkaSink in *KafkaWriter<IN>* class only performs catch-flush when 
> *DeliveryGuarantee.EXACTLY_ONCE* is specified.
> KafkaSource is assuming that checkpoint should be properly fenced and 
> everything it had read up-til checkpoint being initiated will be processed or 
> recorded by operators downstream, including the TwoPhaseCommiter such as 
> *KafkaSink*
> *KafkaSink* goes by the model of:
>  
> {code:java}
> flush -> prepareCommit -> commit{code}
>  
> In a scenario that:
>  * KafkaSource ingested records #1 to #100
>  * KafkaSink only had chance to send records #1 to #96
>  * with a batching interval of 5ms
> when checkpoint has been initiated, flush will only confirm the sending of 
> record #1 to #96.
> This allows checkpoint to proceed as there's no error, and record #97 to 100 
> will be batched after first flush.
> Now, if broker goes down / has issue that caused the internal KafkaProducer 
> to not be able to send out the record after a batch, and is on a constant 
> retry-cycle (default value of KafkaProducer retries is Integer.MAX_VALUE), 
> *WriterCallback* error handling will never be triggered until the next 
> checkpoint flush.
> This can be tested by creating a faulty Kafka cluster and run the following 
> code:
> {code:java}
> Properties props = new Properties(); 
> props.put(ProducerConfig.BOOTSTRAP_SERVERS_CONFIG, BOOTSTRAP_SERVER);
> props.put(ProducerConfig.CLIENT_ID_CONFIG, "example-producer");
> props.put(ProducerConfig.KEY_SERIALIZER_CLASS_CONFIG, 
> StringSerializer.class.getName());
> props.put(ProducerConfig.VALUE_SERIALIZER_CLASS_CONFIG, 
> StringSerializer.class.getName()); 
> props.put(ProducerConfig.RETRIES_CONFIG, Integer.MAX_VALUE); 
> props.put(ProducerConfig.DELIVERY_TIMEOUT_MS_CONFIG, Integer.MAX_VALUE); 
> props.put(ProducerConfig.ACKS_CONFIG, "all"); 
> final KafkaProducer<String, String> producer = new KafkaProducer<>(props);
> try {
>     for (int i = 0; i < 10; i++) {
>         System.out.printf("sending record #%d\n", i);
>         String data = UUID.randomUUID().toString();
>         final ProducerRecord<String, String> record = new 
> ProducerRecord<>(TOPIC, Integer.toString(i), data);
>         producer.send(record, new CB(Integer.toString(i), data));
>         Thread.sleep(10000); //sleep for 10 seconds
>     }
> } catch (Exception e) {
>     e.printStackTrace();
> } finally {
>     System.out.println("flushing");
>     producer.flush();
>     System.out.println("closing");
>     producer.close();
> }{code}
> Once callback returns due to network timeout, it will cause Flink to restart 
> from previously saved checkpoint (which recorded reading up to record #100), 
> but KafkaWriter never sent record #97 to #100.
> This will result in dataloss of record #97 to #100
> Because KafkaWriter only catches error *after* callback, if callback is never 
> invoked (due to broker issue) right after the first flush has taken place, 
> those records are effectively gone unless someone decided to go back and look 
> for it.
> This behavior should be ok if user has set {*}DeliveryGuarantee.NONE{*}, but 
> is not expected for {*}DeliveryGuarantee.AT_LEAST_ONCE{*}.
> There is a divergence of the process in the event of {*}EXACTLY_ONCE{*}.
> prepareCommit will produce a list of KafkaCommittable that corresponds to 
> Transactional KafkaProducer to be committed. And a catch up flush will take 
> place during *commit* step. Whether this was intentional or not, due to the 
> fact that flush is a blocking call, the second flush for EXACTLY_ONCE at the 
> end of EXACTLY_ONCE actually ensured everything fenced in the current 
> checkpoint will be sent to Kafka, or fail the checkpoint if not successful.
>  
> Due the above finding, I'm recommending one of the following fixes:
>  # need to perform second flush for AT_LEAST_ONCE
>  # or move flush to the end of the KafkaSink process.
> I'm leaning towards 2nd option as it does not make sense to flush then do 
> checkpoint, it should be right before checkpoint completes then we flush, 
> given that's what commit is meant to do.



--
This message was sent by Atlassian Jira
(v8.20.10#820010)

Reply via email to