I don't think schedule savepoint periodically is better than periodic checkpoint(which flink have out of box).
1. Savepoint and checkpoint have the same code path exception savepoint will do a full snapshot, and checkpoint can do an incremental snapshot. If the checkpoint can not be done, then the savepoint can not be done also. 2. Checkpoint is periodic already in Flink 3. Savepoint is always full snapshot -- which means maybe slow, checkpoint can be incremental, and incremental checkpoint is much faster than savepoint. Best, Congxian Flavio Pompermaier <pomperma...@okkam.it> 于2019年10月11日周五 下午5:24写道: > If I understood correctly you're saying that in this case I'd need to > reprocess all messages from scratch (unless I retain my checkpoints..), > right? > Could it be a good strategy to schedule savepoints periodically to avoid > such situations? Is there any smarter solution to this? > > On Fri, Oct 11, 2019 at 4:45 AM Yun Tang <myas...@live.com> wrote: > >> Any checkpoint could only completed if your job not failed. Since >> checkpoint barrier is injected with messages together, if the problematic >> message would cause your job to fail. You cannot complete any checkpoint >> after that problematic message processed. In other words, you could always >> resume your job from kafka offset before that problematic message. >> >> Best >> Yun Tang >> ------------------------------ >> *From:* Flavio Pompermaier <pomperma...@okkam.it> >> *Sent:* Friday, October 11, 2019 5:50 >> *To:* Yun Tang <myas...@live.com> >> *Cc:* Congxian Qiu <qcx978132...@gmail.com>; >> theo.diefent...@scoop-software.de <theo.diefent...@scoop-software.de>; >> user <user@flink.apache.org> >> *Subject:* Re: Flink restoring a job from a checkpoint >> >> Sorry for the dumb question but let's suppose to not use retained >> checkpoint and my job processed billions of messages from Kafka. Then a >> problematic message causes my job to fail..am I able to complete a >> savepoint to fic the job and restart from the problematic message (i.e. >> last "valid" kafka offset)? >> >> Il Gio 10 Ott 2019, 20:01 Yun Tang <myas...@live.com> ha scritto: >> >> Hi Vishwas >> >> Image this scenario, if your last committed offset is A with a >> savepoint-A and then you just stop this job and try a new program logical >> such as print your output instead of writing to previous sink to do some >> experiments. The new experimental job might commit offset-B to kafka. Once >> verified, and then you still need to resume from kafka offset-A to ensure >> all data has been written to target sink. This would be easier If you just >> restore the job from savepoint-A. >> >> In other words, Flink has already provided a more strong and flexible >> mechanism to resume kafka offsets, why not use this? >> >> Best >> Yun Tang >> ------------------------------ >> *From:* Congxian Qiu <qcx978132...@gmail.com> >> *Sent:* Thursday, October 10, 2019 11:52 >> *To:* theo.diefent...@scoop-software.de < >> theo.diefent...@scoop-software.de> >> *Cc:* user <user@flink.apache.org> >> *Subject:* Re: Flink restoring a job from a checkpoint >> >> Hi Vishwas >> >> Sorry for the confusing, what Theo said previous is the meaning I want >> to say. Previously, what I said is from Flink's side, if we do not restore >> from checkpoint/savepoint, all the TMs will have no state, so the Job >> starts from scratch. >> >> Best, >> Congxian >> >> >> theo.diefent...@scoop-software.de <theo.diefent...@scoop-software.de> >> 于2019年10月10日周四 上午1:15写道: >> >> Hi Vishaws, >> >> With "from scratch", Congxian means that Flink won't load any state >> automatically and starts as if there was no state. Of course if the kafka >> consumer group already exists and you have configured Flink to start from >> group offsets if there is no state yet, it will start from the group >> offsets. >> >> I think your approach is totally fine. Ignoring savepoints and don't >> retaining checkpoints saves overhead and configuration burdens and works >> nicely as long as you don't have any state in your pipeline. >> >> You should however be certain that nobody in your team will add something >> with state later on and forgets to think about the missing state... >> >> Best regards >> Theo >> >> >> >> >> -------- Ursprüngliche Nachricht -------- >> Betreff: Re: Flink restoring a job from a checkpoint >> Von: Vishwas Siravara >> An: Congxian Qiu >> Cc: Yun Tang ,user >> >> Hi Congxian, >> Thanks for getting back. Why would the streaming start from scratch if my >> consumer group does not change ? I start from the group offsets : >> env.addSource(consumer.setStartFromGroupOffsets()).name(source + "- >> kafka source") >> So when I restart the job it should consume from the last committed >> offset to kafka isn't it ? Let me know what you think . >> >> Best, >> Vishwas >> On Tue, Oct 8, 2019 at 9:06 PM Congxian Qiu <qcx978132...@gmail.com> >> wrote: >> >> Hi Vishwas >> >> Currently, Flink can only restore retained checkpoint or savepoint with >> parameter `-s`[1][2], otherwise, it will start from scratch. >> >> ``` >> checkpoint ---> bin/flink run -s :checkpointMetaDataPath [ >> :runArgs] >> savepoint --> bin/flink run -s :savepointPath [:runArgs] >> >> [1] >> https://ci.apache.org/projects/flink/flink-docs-release-1.9/ops/state/checkpoints.html#resuming-from-a-retained-checkpoint >> [2] >> https://ci.apache.org/projects/flink/flink-docs-master/ops/state/savepoints.html#resuming-from-savepoints >> >> Best, >> Congxian >> >> >> Vishwas Siravara <vsirav...@gmail.com> 于2019年10月9日周三 上午5:07写道: >> >> Hi Yun, >> Thanks for your reply. I do start from GROUP_OFFSET . Here is the code >> snippet : >> >> env.addSource(consumer.setStartFromGroupOffsets()).name(source + "- kafka >> source") >> >> I have also enabled and externalized checkpointing to S3 . >> Why is it not recommended to just restart the job once I cancel it, as >> long as the topology does not change? What is the advantage of >> explicitly restoring from last checkpoint by passing the -s option to the >> flink command line if it does the same thing? For instance if >> s3://featuretoolkit.checkpoints/qa_streaming/c17f2cb6da5e6cbc897410fe49676edd/chk-1350/ >> is my last successful checkpoint, what is the difference between 1 and 2. >> >> 1. /usr/mware/flink/bin/flink run -d -C >> file:///usr/mware/flink/externalconfig/ -c com.visa.flink.cli.Main >> flink-job-assembly.jar flink druid -p 8 -cp qa_streaming >> 2. /usr/mware/flink/bin/flink run -s >> s3://featuretoolkit.checkpoints/qa_streaming/c17f2cb6da5e6cbc897410fe49676edd/chk-1350/ >> -d -C file:///usr/mware/flink/externalconfig/ -c com.visa.flink.cli.Main >> flink-job-assembly.jar flink druid -p 4 -cp qa_streaming >> >> Thanks, >> Vishwas >> >> On Tue, Oct 8, 2019 at 1:51 PM Yun Tang <myas...@live.com> wrote: >> >> Hi Vishwas >> >> If you did not configure your >> org.apache.flink.streaming.connectors.kafka.config.StartupMode, it is >> GROUP_OFFSET by default, which means "Start from committed offsets in ZK / >> Kafka brokers of a specific consumer group". And you need to enable >> checkpoint so that kafka offsets are committed when checkpoint completes. >> >> In other words, even if you don't resume from checkpoint, just enable >> checkpoint in previous jobs and set startupMode as GROUP_OFFSET, you could >> restore from last committed offset if previous checkpoint completed [1][2]. >> However, this is not really recommended, better to resume from last >> checkpoint [3] >> >> [1] >> https://www.slideshare.net/robertmetzger1/clickthrough-example-for-flinks-kafkaconsumer-checkpointing >> [2] https://www.ververica.com/blog/kafka-flink-a-practical-how-to >> [3] >> https://ci.apache.org/projects/flink/flink-docs-stable/ops/state/checkpoints.html#resuming-from-a-retained-checkpoint >> >> >> Best >> Yun Tang >> >> >> ------------------------------ >> *From:* Vishwas Siravara <vsirav...@gmail.com> >> *Sent:* Wednesday, October 9, 2019 0:54 >> *To:* user <user@flink.apache.org> >> *Subject:* Flink restoring a job from a checkpoint >> >> Hi guys, >> I have a flink streaming job which streams from a kafka source. There is >> no state in the job, just a simple filter , map and write to a kafka sink. >> Suppose I stop my job and then submit the job again to the cluster with the >> same consumer group, will the job restore automatically from the last >> successful checkpoint , since this is what is the last committed offset to >> kafka ? >> >> Thanks, >> Vishwas >> >> >