After doing some more research using Google. It's clear that aggregations
by default are stateful in Structured Streaming. so the question now is how
to do stateless aggregations(not storing the result from previous batches)
using Structured Streaming 2.3.0? I am trying to do it using raw spark SQL
so not using FlatMapsGroupWithState. And if that is not available then is
it fair to say there is no declarative way to do stateless aggregations?

On Thu, May 3, 2018 at 1:24 AM, kant kodali <kanth...@gmail.com> wrote:

> Hi All,
>
> I was under an assumption that one needs to run grouby(window(...)) to run
> any stateful operations but looks like that is not the case since any
> aggregation like query
>
> "select count(*) from some_view"  is also stateful since it stores the
> result of the count from the previous batch. Likewise, if I do
>
> "select collect_list(*) from some_view" with say maxOffsetsTrigger set to
> 1 I can see the rows from the previous batch at every trigger.
>
> so is it fair to say aggregations by default are stateful?
>
> I am looking more like DStream like an approach(stateless) where I want to
> collect bunch of records on each batch do some aggregation like say count
> and throw the result out and next batch it should only count from that
> batch only but not from the previous batch.
>
> so If I run "select collect_list(*) from some_view" I want to collect
> whatever rows are available at each batch/trigger but not from the previous
> batch. How do I do that?
>
> Thanks!
>

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