2017-05-11 7:14 GMT+02:00 Tyler Akidau <taki...@google.com.invalid>: > On Tue, May 9, 2017 at 3:06 PM Fabian Hueske <fhue...@gmail.com> wrote: > > > Hi Tyler, > > > > thank you very much for this excellent write-up and the super nice > > visualizations! > > You are discussing a lot of the things that we have been thinking about > as > > well from a different perspective. > > IMO, yours and the Flink model are pretty much aligned although we use a > > different terminology (which is not yet completely established). So there > > should be room for unification ;-) > > > > Good to hear, thanks for giving it a look. :-) > > > > Allow me a few words on the current state in Flink. In the upcoming 1.3.0 > > release, we will have support for group window (TUMBLE, HOP, SESSION), > OVER > > RANGE/ROW window (without FOLLOWING), and non-windowed GROUP BY > > aggregations. The group windows are triggered by watermark and the over > > window and non-windowed aggregations emit for each input record > > (AtCount(1)). The window aggregations do not support early or late firing > > (late records are dropped), so no updates here. However, the non-windowed > > aggregates produce updates (in acc and acc/retract mode). Based on this > we > > will work on better control for late updates and early firing as well as > > joins in the next release. > > > > Impressive. At this rate there's a good chance we'll just be doing catchup > and thanking you for building everything. ;-) Do you have ideas for what > you want your early/late updates control to look like? That's one of the > areas I'd like to see better defined for us. And how deep are you going > with joins? >
Right now (well actually I merged the change 1h ago) we are using a QueryConfig object to specify state retention intervals to be able to clean up state for inactive keys. A running a query looks like this: // ------- val env = StreamExecutionEnvironment.getExecutionEnvironment val tEnv = TableEnvironment.getTableEnvironment(env) val qConf = tEnv.queryConfig.withIdleStateRetentionTime(Time.hours(12)) // state of inactive keys is kept for 12 hours val t: Table = tEnv.sql("SELECT a, COUNT(*) AS cnt FROM MyTable GROUP BY a") val stream: DataStream[(Boolean, Row)] = t.toRetractStream[Row](qConf) // boolean flag for acc/retract env.execute() // ------- We plan to use the QueryConfig also to specify early/late updates. Our main motivation is to have a uniform and standard SQL for batch and streaming. Hence, we have to move the configuration out of the query. But I agree, that it would be very nice to be able to include it in the query. I think it should not be difficult to optionally support an EMIT clause as well. > > > Reading the document, I did not find any major difference in our > concepts. > > In fact, we are aiming to support the cases you are describing as well. > > I have a question though. Would you classify an OVER aggregation as a > > stream -> stream or stream -> table operation? It collects records to > > aggregate them, but emits one record for each input row. Depending on the > > window definition (i.e., with FOLLOWING CURRENT ROW), you can compute and > > emit the result record when the input record is received. > > > > I would call it a composite stream → stream operation (since SQL, like the > standard Beam/Flink APIs, is a higher level set of constructs than raw > streams/tables operations) consisting of a stream → table windowed grouping > followed by a table → stream triggering on every element, basically as you > described in the previous paragraph. > > That makes sense. Thanks :-) > -Tyler > > > > > > I'm looking forward to the second part. > > > > Cheers, Fabian > > > > > > > > 2017-05-09 0:34 GMT+02:00 Tyler Akidau <taki...@google.com.invalid>: > > > > > Any thoughts here Fabian? I'm planning to start sending out some more > > > emails towards the end of the week. > > > > > > -Tyler > > > > > > > > > On Wed, Apr 26, 2017 at 8:18 AM Tyler Akidau <taki...@google.com> > wrote: > > > > > > > No worries, thanks for the heads up. Good luck wrapping all that > stuff > > > up. > > > > > > > > -Tyler > > > > > > > > On Tue, Apr 25, 2017 at 12:07 AM Fabian Hueske <fhue...@gmail.com> > > > wrote: > > > > > > > >> Hi Tyler, > > > >> > > > >> thanks for pushing this effort and including the Flink list. > > > >> I haven't managed to read the doc yet, but just wanted to thank you > > for > > > >> the > > > >> write-up and let you know that I'm very interested in this > discussion. > > > >> > > > >> We are very close to the feature freeze of Flink 1.3 and I'm quite > > busy > > > >> getting as many contributions merged before the release is forked > off. > > > >> When that happened, I'll have more time to read and comment. > > > >> > > > >> Thanks, > > > >> Fabian > > > >> > > > >> > > > >> 2017-04-22 0:16 GMT+02:00 Tyler Akidau <taki...@google.com.invalid > >: > > > >> > > > >> > Good point, when you start talking about anything less than a full > > > join, > > > >> > triggers get involved to describe how one actually achieves the > > > desired > > > >> > semantics, and they may end up being tied to just one of the > inputs > > > >> (e.g., > > > >> > you may only care about the watermark for one side of the join). > Am > > > >> > expecting us to address these sorts of details more precisely in > doc > > > #2. > > > >> > > > > >> > -Tyler > > > >> > > > > >> > On Fri, Apr 21, 2017 at 2:26 PM Kenneth Knowles > > > <k...@google.com.invalid > > > >> > > > > >> > wrote: > > > >> > > > > >> > > There's something to be said about having different triggering > > > >> depending > > > >> > on > > > >> > > which side of a join data comes from, perhaps? > > > >> > > > > > >> > > (delightful doc, as usual) > > > >> > > > > > >> > > Kenn > > > >> > > > > > >> > > On Fri, Apr 21, 2017 at 1:33 PM, Tyler Akidau > > > >> <taki...@google.com.invalid > > > >> > > > > > >> > > wrote: > > > >> > > > > > >> > > > Thanks for reading, Luke. The simple answer is that CoGBK is > > > >> basically > > > >> > > > flatten + GBK. Flatten is a non-grouping operation that merges > > the > > > >> > input > > > >> > > > streams into a single output stream. GBK then groups the data > > > within > > > >> > that > > > >> > > > single union stream as you might otherwise expect, yielding a > > > single > > > >> > > table. > > > >> > > > So I think it doesn't really impact things much. Grouping, > > > >> aggregation, > > > >> > > > window merging etc all just act upon the merged stream and > > > generate > > > >> > what > > > >> > > is > > > >> > > > effectively a merged table. > > > >> > > > > > > >> > > > -Tyler > > > >> > > > > > > >> > > > On Fri, Apr 21, 2017 at 12:36 PM Lukasz Cwik > > > >> <lc...@google.com.invalid > > > >> > > > > > >> > > > wrote: > > > >> > > > > > > >> > > > > The doc is a good read. > > > >> > > > > > > > >> > > > > I think you do a great job of explaining table -> stream, > > stream > > > >> -> > > > >> > > > stream, > > > >> > > > > and stream -> table when there is only one stream. > > > >> > > > > But when there are multiple streams reading/writing to a > > table, > > > >> how > > > >> > > does > > > >> > > > > that impact what occurs? > > > >> > > > > For example, with CoGBK you have multiple streams writing > to a > > > >> table, > > > >> > > how > > > >> > > > > does that impact window merging? > > > >> > > > > > > > >> > > > > On Thu, Apr 20, 2017 at 5:57 PM, Tyler Akidau > > > >> > > <taki...@google.com.invalid > > > >> > > > > > > > >> > > > > wrote: > > > >> > > > > > > > >> > > > > > Hello Beam, Calcite, and Flink dev lists! > > > >> > > > > > > > > >> > > > > > Apologies for the big cross post, but I thought this might > > be > > > >> > > something > > > >> > > > > all > > > >> > > > > > three communities would find relevant. > > > >> > > > > > > > > >> > > > > > Beam is finally making progress on a SQL DSL utilizing > > > Calcite, > > > >> > > thanks > > > >> > > > to > > > >> > > > > > Mingmin Xu. As you can imagine, we need to come to some > > > >> conclusion > > > >> > > > about > > > >> > > > > > how to elegantly support the full suite of streaming > > > >> functionality > > > >> > in > > > >> > > > the > > > >> > > > > > Beam model in via Calcite SQL. You folks in the Flink > > > community > > > >> > have > > > >> > > > been > > > >> > > > > > pushing on this (e.g., adding windowing constructs, > amongst > > > >> others, > > > >> > > > thank > > > >> > > > > > you! :-), but from my understanding we still don't have a > > full > > > >> spec > > > >> > > for > > > >> > > > > how > > > >> > > > > > to support robust streaming in SQL (including but not > > limited > > > >> to, > > > >> > > > e.g., a > > > >> > > > > > triggers analogue such as EMIT). > > > >> > > > > > > > > >> > > > > > I've been spending a lot of time thinking about this and > > have > > > >> some > > > >> > > > > opinions > > > >> > > > > > about how I think it should look that I've already written > > > down, > > > >> > so I > > > >> > > > > > volunteered to try to drive forward agreement on a general > > > >> > streaming > > > >> > > > SQL > > > >> > > > > > spec between our three communities (well, technically I > > > >> volunteered > > > >> > > to > > > >> > > > do > > > >> > > > > > that w/ Beam and Calcite, but I figured you Flink folks > > might > > > >> want > > > >> > to > > > >> > > > > join > > > >> > > > > > in since you're going that direction already anyway and > will > > > >> have > > > >> > > > useful > > > >> > > > > > insights :-). > > > >> > > > > > > > > >> > > > > > My plan was to do this by sharing two docs: > > > >> > > > > > > > > >> > > > > > 1. The Beam Model : Streams & Tables - This one is for > > > >> context, > > > >> > > and > > > >> > > > > > really only mentions SQL in passing. But it describes > the > > > >> > > > relationship > > > >> > > > > > between the Beam Model and the "streams & tables" way > of > > > >> > thinking, > > > >> > > > > which > > > >> > > > > > turns out to be useful in understanding what robust > > > >> streaming in > > > >> > > SQL > > > >> > > > > > might > > > >> > > > > > look like. Many of you probably already know some or > all > > of > > > >> > what's > > > >> > > > in > > > >> > > > > > here, > > > >> > > > > > but I felt it was necessary to have it all written down > > in > > > >> order > > > >> > > to > > > >> > > > > > justify > > > >> > > > > > some of the proposals I wanted to make in the second > doc. > > > >> > > > > > > > > >> > > > > > 2. A streaming SQL spec for Calcite - The goal for this > > doc > > > >> is > > > >> > > that > > > >> > > > it > > > >> > > > > > would become a general specification for what robust > > > >> streaming > > > >> > SQL > > > >> > > > in > > > >> > > > > > Calcite should look like. It would start out as a basic > > > >> proposal > > > >> > > of > > > >> > > > > what > > > >> > > > > > things *could* look like (combining both what things > look > > > >> like > > > >> > now > > > >> > > > as > > > >> > > > > > well > > > >> > > > > > as a set of proposed changes for the future), and we > > could > > > >> all > > > >> > > > iterate > > > >> > > > > > on > > > >> > > > > > it together until we get to something we're happy with. > > > >> > > > > > > > > >> > > > > > At this point, I have doc #1 ready, and it's a bit of a > > > monster, > > > >> > so I > > > >> > > > > > figured I'd share it and let folks hack at it with > comments > > if > > > >> they > > > >> > > > have > > > >> > > > > > any, while I try to get the second doc ready in the > > meantime. > > > As > > > >> > part > > > >> > > > of > > > >> > > > > > getting doc #2 ready, I'll be starting a separate thread > to > > > try > > > >> to > > > >> > > > gather > > > >> > > > > > input on what things are already in flight for streaming > SQL > > > >> across > > > >> > > the > > > >> > > > > > various communities, to make sure the proposal captures > > > >> everything > > > >> > > > that's > > > >> > > > > > going on as accurately as it can. > > > >> > > > > > > > > >> > > > > > If you have any questions or comments, I'm interested to > > hear > > > >> them. > > > >> > > > > > Otherwise, here's doc #1, "The Beam Model : Streams & > > Tables": > > > >> > > > > > > > > >> > > > > > http://s.apache.org/beam-streams-tables > > > >> > > > > > > > > >> > > > > > -Tyler > > > >> > > > > > > > > >> > > > > > > > >> > > > > > > >> > > > > > >> > > > > >> > > > > > > > > > >