I am wondering about "I create internal topic manually" -- which topics do you refer in detail?
Kafka Streams create all kind of internal topics with auto-generated names. So it would be quite tricky to create all of them manually (especially because you need to know those name in advance). IRRC, if a topic does exist, Kafka Streams does no change it's configuration. Only if Kafka Streams does create a topic, it will specify certain config parameters on topic create step. -Matthias On 12/13/16 8:16 PM, Sachin Mittal wrote: > Hi, > Thanks for the explanation. This illustration makes it super easy to > understand how until works. Perhaps we can update the wiki with this > illustration. > It is basically the retention time for a past window. > I used to think until creates all the future windows for that period and > when time passes that it used to delete all the past windows. However > actually until retains a window for specified time. This makes so much more > sense. > > I just had one pending query regarding: > >> windowstore.changelog.additional.retention.ms > > How does this relate to rentention.ms param of topic config? > I create internal topic manually using say rentention.ms=3600000. > In next release (post kafka_2.10-0.10.0.1) since we support delete of > internal changelog topic as well and I want it to be retained for say just > 1 hour. > So how does that above parameter interfere with this topic level setting. > Or now I just need to set above config as 3600000 and not add > rentention.ms=3600000 > while creating internal topic. > > Thanks > Sachin > > > On Tue, Dec 13, 2016 at 11:27 PM, Matthias J. Sax <matth...@confluent.io> > wrote: > >> First, windows are only created if there is actual data for a window. So >> you get windows [0, 50), [25, 75), [50, 100) only if there are record >> falling into each window (btw: window start-time is inclusive while >> window end time is exclusive). If you have only 2 record with lets say >> ts=20 and ts=90 you will not have an open window [25,75). Each window is >> physically created each time the first record for it is processed. >> >> If you have above 4 windows and a record with ts=101 arrives, a new >> window [101,151) will be created. Window [0,50) will not be deleted yet, >> because retention is 100 and thus Streams guarantees that all record >> with ts >= 1 (= 101 - 100) are still processed correctly and those >> records would fall into window [0,50). >> >> Thus, window [0,50) can be dropped, if time advanced to TS = 150, but >> not before that. >> >> -Matthias >> >> >> On 12/13/16 12:06 AM, Sachin Mittal wrote: >>> Hi, >>> So is until for future or past? >>> Say I get first record at t = 0 and until is 100 and my window size is 50 >>> advance by 25. >>> I understand it will create windows (0, 50), (25, 75), (50, 100) >>> Now at t = 101 it will drop >>> (0, 50), (25, 75), (50, 100) and create >>> (101, 150), (125, 175), (150, 200) >>> >>> Please confirm if this understanding us correct. It is not clear how it >>> will handle overlapping windows (75, 125) and (175, 225) and so on? >>> >>> What case is not clear again is that at say t = 102 I get some message >> with >>> timestamp 99. What happens then? >>> Will the result added to previous aggregation of (50, 100) or (75, 125), >>> like it should. >>> >>> Or it will recreate the old window (50, 100) and aggregate the value >> there >>> and then drop it. This would result is wrong aggregated value, as it does >>> not consider the previous aggregated values. >>> >>> So this is the pressing case I am not able to understand. Maybe I am >> wrong >>> at some basic understanding. >>> >>> >>> Next for >>> The parameter >>>> windowstore.changelog.additional.retention.ms >>> >>> How does this relate to rentention.ms param of topic config? >>> I create internal topic manually using say rentention.ms=3600000. >>> In next release (post kafka_2.10-0.10.0.1) since we support delete of >>> internal changelog topic as well and I want it to be retained for say >> just >>> 1 hour. >>> So how does that above parameter interfere with this topic level setting. >>> Or now I just need to set above config as 3600000 and not add >>> rentention.ms=3600000 >>> while creating internal topic. >>> This is just another doubt remaining here. >>> >>> Thanks >>> Sachin >>> >>> >>> >>> On Tue, Dec 13, 2016 at 3:02 AM, Matthias J. Sax <matth...@confluent.io> >>> wrote: >>> >>>> Sachin, >>>> >>>> There is no reason to have an .until() AND a .retain() -- just increase >>>> the value of .until() >>>> >>>> If you have a window of let's say 1h size and you set .until() also to >>>> 1h -- you can obviously not process any late arriving data. If you set >>>> until() to 2h is this example, you can process data that is up to 1h >>>> delayed. >>>> >>>> So basically, the retention should always be larger than you window >> size. >>>> >>>> The parameter >>>>> windowstore.changelog.additional.retention.ms >>>> >>>> is applies to changelog topics that backup window state stores. Those >>>> changelog topics are compacted. However, the used key does encode an >>>> window ID and thus older data can never be cleaned up by compaction. >>>> Therefore, an additional retention time is applied to those topics, too. >>>> Thus, if an old window is not updated for this amount of time, it will >>>> get deleted eventually preventing this topic to grown infinitely. >>>> >>>> The value will be determined by until(), i.e., whatever you specify in >>>> .until() will be used to set this parameter. >>>> >>>> >>>> -Matthias >>>> >>>> On 12/12/16 1:07 AM, Sachin Mittal wrote: >>>>> Hi, >>>>> We are facing the exact problem as described by Matthias above. >>>>> We are keeping default until which is 1 day. >>>>> >>>>> Our record's times tamp extractor has a field which increases with >> time. >>>>> However for short time we cannot guarantee the time stamp is always >>>>> increases. So at the boundary ie after 24 hrs we can get records which >>>> are >>>>> beyond that windows retention period. >>>>> >>>>> Then it happens like it is mentioned above and our aggregation fails. >>>>> >>>>> So just to sum up when we get record >>>>> 24h + 1 sec (it deletes older window and since the new record belongs >> to >>>>> the new window its gets created) >>>>> Now when we get next record of 24 hs - 1 sec since older window is >>>> dropped >>>>> it does not get aggregated in that bucket. >>>>> >>>>> I suggest we have another setting next to until call retain which >> retains >>>>> the older windows into next window. >>>>> >>>>> I think at stream window boundary level it should use a concept of >>>> sliding >>>>> window. So we can define window like >>>>> >>>>> TimeWindows.of("test-table", 3600 * 1000l).advanceBy(1800 * >>>> 1000l).untill(7 >>>>> * 24 * 3600 * 1000l).retain(900 * 1000l) >>>>> >>>>> So after 7 days it retains the data covered by windows in last 15 >> minutes >>>>> which rolls over the data in them to next window. This way streams work >>>>> continuously. >>>>> >>>>> Please let us know your thoughts on this. >>>>> >>>>> On another side question on this there is a setting: >>>>> >>>>> windowstore.changelog.additional.retention.ms >>>>> I is not clear what is does. Is this the default for until? >>>>> >>>>> Thanks >>>>> Sachin >>>>> >>>>> >>>>> On Mon, Dec 12, 2016 at 10:17 AM, Matthias J. Sax < >> matth...@confluent.io >>>>> >>>>> wrote: >>>>> >>>>>> Windows are created on demand, ie, each time a new record arrives and >>>>>> there is no window yet for it, a new window will get created. >>>>>> >>>>>> Windows are accepting data until their retention time (that you can >>>>>> configure via .until()) passed. Thus, you will have many windows being >>>>>> open in parallel. >>>>>> >>>>>> If you read older data, they will just be put into the corresponding >>>>>> windows (as long as window retention time did not pass). If a window >> was >>>>>> discarded already, a new window with this single (later arriving) >> record >>>>>> will get created, the computation will be triggered, you get a result, >>>>>> and afterwards the window is deleted again (as it's retention time >>>>>> passed already). >>>>>> >>>>>> The retention time is driven by "stream-time", in internal tracked >> time >>>>>> that only progressed in forward direction. It gets it value from the >>>>>> timestamps provided by TimestampExtractor -- thus, per default it will >>>>>> be event-time. >>>>>> >>>>>> -Matthias >>>>>> >>>>>> On 12/11/16 3:47 PM, Jon Yeargers wrote: >>>>>>> I've read this and still have more questions than answers. If my data >>>>>> skips >>>>>>> about (timewise) what determines when a given window will start / >> stop >>>>>>> accepting new data? What if Im reading data from some time ago? >>>>>>> >>>>>>> On Sun, Dec 11, 2016 at 2:22 PM, Matthias J. Sax < >>>> matth...@confluent.io> >>>>>>> wrote: >>>>>>> >>>>>>>> Please have a look here: >>>>>>>> >>>>>>>> http://docs.confluent.io/current/streams/developer- >>>>>>>> guide.html#windowing-a-stream >>>>>>>> >>>>>>>> If you have further question, just follow up :) >>>>>>>> >>>>>>>> >>>>>>>> -Matthias >>>>>>>> >>>>>>>> >>>>>>>> On 12/10/16 6:11 PM, Jon Yeargers wrote: >>>>>>>>> Ive added the 'until()' clause to some aggregation steps and it's >>>>>> working >>>>>>>>> wonders for keeping the size of the state store in useful >>>> boundaries... >>>>>>>> But >>>>>>>>> Im not 100% clear on how it works. >>>>>>>>> >>>>>>>>> What is implied by the '.until()' clause? What determines when to >>>> stop >>>>>>>>> receiving further data - is it clock time (since the window was >>>>>> created)? >>>>>>>>> It seems problematic for it to refer to EventTime as this may >> bounce >>>>>> all >>>>>>>>> over the place. For non-overlapping windows a given record can only >>>>>> fall >>>>>>>>> into a single aggregation period - so when would a value get >>>> discarded? >>>>>>>>> >>>>>>>>> Im using 'groupByKey(),aggregate(..., TimeWindows.of(60 * >>>>>>>> 1000L).until(10 * >>>>>>>>> 1000L))' - but what is this accomplishing? >>>>>>>>> >>>>>>>> >>>>>>>> >>>>>>> >>>>>> >>>>>> >>>>> >>>> >>>> >>> >> >> >
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