Hey, Viktor. As far as my implementation is concerned, the default setting is 30s, but I added it to `MirrorConnectorConfig`, which can be adjusted freely according to the load of the source cluster and the number of tasks.
best, hudeqi "Viktor Somogyi-Vass" <viktor.somo...@cloudera.com.INVALID>写道: > Hey Elkhan and hudeqi, > > I'm reading your debate around the implementation. I also think a > scheduled task would be better in overall accuracy and performance > (compared to calling endOffsets with every poll). > Hudeqi, do you have any experience of what works best for you in terms of > time intervals? I would think refreshing the metric every 5-10sec would be > overall good and sufficient for the users (as short intervals can be quite > noisy anyways). > > Best, > Viktor > > On Mon, Sep 4, 2023 at 11:41 AM hudeqi <16120...@bjtu.edu.cn> wrote: > > > My approach is to create another thread to regularly request and update > > the end offset of each partition for the `keySet` in the collection > > `lastReplicatedSourceOffsets` mentioned by your kip (if there is no update > > for a long time, it will be removed from `lastReplicatedSourceOffsets`). > > Obviously, such processing makes the calculation of the partition offset > > lag less real-time and accurate. > > But this also meets our needs, because we need the partition offset lag to > > analyze the replication performance of the task and which task may have > > performance problems; and if you monitor the overall offset lag of the > > topic, then using the > > "kafka_consumer_consumer_fetch_manager_metrics_records_lag" metric will be > > more real-time and accurate. > > This is my suggestion. I hope to be able to throw bricks and start jade, > > we can come up with a better solution. > > > > best, > > hudeqi > > > > "Elxan Eminov" <elxanemino...@gmail.com>写道: > > > @huqedi replying to your comment on the PR ( > > > https://github.com/apache/kafka/pull/14077#discussion_r1314592488), > > quote: > > > > > > "I guess we have a disagreement about lag? My understanding of lag is: > > the > > > real LEO of the source cluster partition minus the LEO that has been > > > written to the target cluster. It seems that your definition of lag is: > > the > > > lag between the mirror task getting data from consumption and writing it > > to > > > the target cluster?" > > > > > > Yes, this is the case. I've missed the fact that the consumer itself > > might > > > be lagging behind the actual data in the partition. > > > I believe your definition of the lag is more precise, but: > > > Implementing it this way will come at the cost of an extra listOffsets > > > request, introducing the overhead that you mentioned in your initial > > > comment. > > > > > > If you have enough insights about this, what would you say is the chances > > > of the task consumer lagging behind the LEO of the partition? > > > Are they big enough to justify the extra call to listOffsets? > > > @Viktor, any thoughts? > > > > > > Thanks, > > > Elkhan > > > > > > On Mon, 4 Sept 2023 at 09:36, Elxan Eminov <elxanemino...@gmail.com> > > wrote: > > > > > > > I already have the PR for this so if it will make it easier to discuss, > > > > feel free to take a look: https://github.com/apache/kafka/pull/14077 > > > > > > > > On Mon, 4 Sept 2023 at 09:17, hudeqi <16120...@bjtu.edu.cn> wrote: > > > > > > > >> But does the offset of the last `ConsumerRecord` obtained in poll not > > > >> only represent the offset of this record in the source cluster? It > > seems > > > >> that it cannot represent the LEO of the source cluster for this > > partition. > > > >> I understand that the offset lag introduced here should be the LEO of > > the > > > >> source cluster minus the offset of the last record to be polled? > > > >> > > > >> best, > > > >> hudeqi > > > >> > > > >> > > > >> > -----原始邮件----- > > > >> > 发件人: "Elxan Eminov" <elxanemino...@gmail.com> > > > >> > 发送时间: 2023-09-04 14:52:08 (星期一) > > > >> > 收件人: dev@kafka.apache.org > > > >> > 抄送: > > > >> > 主题: Re: [DISCUSS] KIP-971 Expose replication-offset-lag > > MirrorMaker2 > > > >> metric > > > >> > > > > >> </elxanemino...@gmail.com> > > > > > > > > > >