Splendid.

Please invite me to the next meeting

mich.talebza...@gmail.com

Timezone London, UK  *GMT+1*

Thanks,


   view my Linkedin profile
<https://www.linkedin.com/in/mich-talebzadeh-ph-d-5205b2/>



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On Thu, 8 Jul 2021 at 19:04, Holden Karau <hol...@pigscanfly.ca> wrote:

> Hi Y'all,
>
> We had an initial meeting which went well, got some more context around
> Volcano and its near-term roadmap. Talked about the impact around scheduler
> deadlocking and some ways that we could potentially improve integration
> from the Spark side and Volcano sides respectively. I'm going to start
> creating some sub-issues under
> https://issues.apache.org/jira/browse/SPARK-36057
>
> If anyone is interested in being on the next meeting please reach out and
> I'll send an e-mail around to try and schedule re-occurring sync that works
> for folks.
>
> Cheers,
>
> Holden
>
> On Thu, Jun 24, 2021 at 8:56 AM Holden Karau <hol...@pigscanfly.ca> wrote:
>
>> That's awesome, I'm just starting to get context around Volcano but maybe
>> we can schedule an initial meeting for all of us interested in pursuing
>> this to get on the same page.
>>
>> On Wed, Jun 23, 2021 at 6:54 PM Klaus Ma <klaus1982...@gmail.com> wrote:
>>
>>> Hi team,
>>>
>>> I'm kube-batch/Volcano founder, and I'm excited to hear that the spark
>>> community also has such requirements :)
>>>
>>> Volcano provides several features for batch workload, e.g. fair-share,
>>> queue, reservation, preemption/reclaim and so on.
>>> It has been used in several product environments with Spark; if
>>> necessary, I can give an overall introduction about Volcano's features and
>>> those use cases :)
>>>
>>> -- Klaus
>>>
>>> On Wed, Jun 23, 2021 at 11:26 PM Mich Talebzadeh <
>>> mich.talebza...@gmail.com> wrote:
>>>
>>>>
>>>>
>>>> Please allow me to be diverse and express a different point of view on
>>>> this roadmap.
>>>>
>>>>
>>>> I believe from a technical point of view spending time and effort plus
>>>> talent on batch scheduling on Kubernetes could be rewarding. However, if I
>>>> may say I doubt whether such an approach and the so-called democratization
>>>> of Spark on whatever platform is really should be of great focus.
>>>>
>>>> Having worked on Google Dataproc <https://cloud.google.com/dataproc> (A 
>>>> fully
>>>> managed and highly scalable service for running Apache Spark, Hadoop and
>>>> more recently other artefacts) for that past two years, and Spark on
>>>> Kubernetes on-premise, I have come to the conclusion that Spark is not a
>>>> beast that that one can fully commoditize it much like one can do with
>>>> Zookeeper, Kafka etc. There is always a struggle to make some niche areas
>>>> of Spark like Spark Structured Streaming (SSS) work seamlessly and
>>>> effortlessly on these commercial platforms with whatever as a Service.
>>>>
>>>>
>>>> Moreover, Spark (and I stand corrected) from the ground up has already
>>>> a lot of resiliency and redundancy built in. It is truly an enterprise
>>>> class product (requires enterprise class support) that will be difficult to
>>>> commoditize with Kubernetes and expect the same performance. After all,
>>>> Kubernetes is aimed at efficient resource sharing and potential cost saving
>>>> for the mass market. In short I can see commercial enterprises will work on
>>>> these platforms ,but may be the great talents on dev team should focus on
>>>> stuff like the perceived limitation of SSS in dealing with chain of
>>>> aggregation( if I am correct it is not yet supported on streaming datasets)
>>>>
>>>>
>>>> These are my opinions and they are not facts, just opinions so to speak
>>>> :)
>>>>
>>>>
>>>>    view my Linkedin profile
>>>> <https://www.linkedin.com/in/mich-talebzadeh-ph-d-5205b2/>
>>>>
>>>>
>>>>
>>>> *Disclaimer:* Use it at your own risk. Any and all responsibility for
>>>> any loss, damage or destruction of data or any other property which may
>>>> arise from relying on this email's technical content is explicitly
>>>> disclaimed. The author will in no case be liable for any monetary damages
>>>> arising from such loss, damage or destruction.
>>>>
>>>>
>>>>
>>>>
>>>> On Fri, 18 Jun 2021 at 23:18, Holden Karau <hol...@pigscanfly.ca>
>>>> wrote:
>>>>
>>>>> I think these approaches are good, but there are limitations (eg
>>>>> dynamic scaling) without us making changes inside of the Spark Kube
>>>>> scheduler.
>>>>>
>>>>> Certainly whichever scheduler extensions we add support for we should
>>>>> collaborate with the people developing those extensions insofar as they 
>>>>> are
>>>>> interested. My first place that I checked was #sig-scheduling which is
>>>>> fairly quite on the Kubernetes slack but if there are more places to look
>>>>> for folks interested in batch scheduling on Kubernetes we should 
>>>>> definitely
>>>>> give it a shot :)
>>>>>
>>>>> On Fri, Jun 18, 2021 at 1:41 AM Mich Talebzadeh <
>>>>> mich.talebza...@gmail.com> wrote:
>>>>>
>>>>>> Hi,
>>>>>>
>>>>>> Regarding your point and I quote
>>>>>>
>>>>>> "..  I know that one of the Spark on Kube operators
>>>>>> supports volcano/kube-batch so I was thinking that might be a place I 
>>>>>> would
>>>>>> start exploring..."
>>>>>>
>>>>>> There seems to be ongoing work on say Volcano as part of  Cloud
>>>>>> Native Computing Foundation <https://cncf.io/> (CNCF). For example
>>>>>> through https://github.com/volcano-sh/volcano
>>>>>>
>>>>> <https://github.com/volcano-sh/volcano>
>>>>>>
>>>>>> There may be value-add in collaborating with such groups through CNCF
>>>>>> in order to have a collective approach to such work. There also seems to 
>>>>>> be
>>>>>> some work on Integration of Spark with Volcano for Batch Scheduling.
>>>>>> <https://github.com/GoogleCloudPlatform/spark-on-k8s-operator/blob/master/docs/volcano-integration.md>
>>>>>>
>>>>>>
>>>>>>
>>>>>> What is not very clear is the degree of progress of these projects.
>>>>>> You may be kind enough to elaborate on KPI for each of these projects and
>>>>>> where you think your contributions is going to be.
>>>>>>
>>>>>>
>>>>>> HTH,
>>>>>>
>>>>>>
>>>>>> Mich
>>>>>>
>>>>>>
>>>>>>    view my Linkedin profile
>>>>>> <https://www.linkedin.com/in/mich-talebzadeh-ph-d-5205b2/>
>>>>>>
>>>>>>
>>>>>>
>>>>>> *Disclaimer:* Use it at your own risk. Any and all responsibility
>>>>>> for any loss, damage or destruction of data or any other property which 
>>>>>> may
>>>>>> arise from relying on this email's technical content is explicitly
>>>>>> disclaimed. The author will in no case be liable for any monetary damages
>>>>>> arising from such loss, damage or destruction.
>>>>>>
>>>>>>
>>>>>>
>>>>>>
>>>>>> On Fri, 18 Jun 2021 at 00:44, Holden Karau <hol...@pigscanfly.ca>
>>>>>> wrote:
>>>>>>
>>>>>>> Hi Folks,
>>>>>>>
>>>>>>> I'm continuing my adventures to make Spark on containers party and I
>>>>>>> was wondering if folks have experience with the different batch
>>>>>>> scheduler options that they prefer? I was thinking so that we can
>>>>>>> better support dynamic allocation it might make sense for us to
>>>>>>> support using different schedulers and I wanted to see if there are
>>>>>>> any that the community is more interested in?
>>>>>>>
>>>>>>> I know that one of the Spark on Kube operators supports
>>>>>>> volcano/kube-batch so I was thinking that might be a place I start
>>>>>>> exploring but also want to be open to other schedulers that folks
>>>>>>> might be interested in.
>>>>>>>
>>>>>>> Cheers,
>>>>>>>
>>>>>>> Holden :)
>>>>>>>
>>>>>>> --
>>>>>>> Twitter: https://twitter.com/holdenkarau
>>>>>>> Books (Learning Spark, High Performance Spark, etc.):
>>>>>>> https://amzn.to/2MaRAG9
>>>>>>> YouTube Live Streams: https://www.youtube.com/user/holdenkarau
>>>>>>>
>>>>>>> ---------------------------------------------------------------------
>>>>>>> To unsubscribe e-mail: dev-unsubscr...@spark.apache.org
>>>>>>>
>>>>>>> --
>>>>> Twitter: https://twitter.com/holdenkarau
>>>>> Books (Learning Spark, High Performance Spark, etc.):
>>>>> https://amzn.to/2MaRAG9  <https://amzn.to/2MaRAG9>
>>>>> YouTube Live Streams: https://www.youtube.com/user/holdenkarau
>>>>>
>>>>
>>
>> --
>> Twitter: https://twitter.com/holdenkarau
>> Books (Learning Spark, High Performance Spark, etc.):
>> https://amzn.to/2MaRAG9  <https://amzn.to/2MaRAG9>
>> YouTube Live Streams: https://www.youtube.com/user/holdenkarau
>>
>
>
> --
> Twitter: https://twitter.com/holdenkarau
> Books (Learning Spark, High Performance Spark, etc.):
> https://amzn.to/2MaRAG9  <https://amzn.to/2MaRAG9>
> YouTube Live Streams: https://www.youtube.com/user/holdenkarau
>

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