There might've been some misunderstanding. I was referring to the MLlib
pipeline design doc when I said the design doc was posted, in response to
the first paragraph of your original email.


On Wed, Sep 17, 2014 at 2:47 AM, Egor Pahomov <pahomov.e...@gmail.com>
wrote:

> It's doc about MLLib pipeline functionality. What about oozie-like
> workflow?
>
> 2014-09-17 13:08 GMT+04:00 Mark Hamstra <m...@clearstorydata.com>:
>
> > See https://issues.apache.org/jira/browse/SPARK-3530 and this doc,
> > referenced in that JIRA:
> >
> >
> >
> https://docs.google.com/document/d/1rVwXRjWKfIb-7PI6b86ipytwbUH7irSNLF1_6dLmh8o/edit?usp=sharing
> >
> > On Wed, Sep 17, 2014 at 2:00 AM, Egor Pahomov <pahomov.e...@gmail.com>
> > wrote:
> >
> >> I have problems using Oozie. For example it doesn't sustain spark
> context
> >> like ooyola job server does. Other than GUI interfaces like HUE it's
> hard
> >> to work with - scoozie stopped in development year ago(I spoke with
> >> creator) and oozie xml very hard to write.
> >> Oozie still have all documentation and code in MR model rather than in
> >> yarn
> >> model. And based on it's current speed of development I can't expect
> >> radical changes in nearest future. There is no "Databricks" for oozie,
> >> which would have people on salary to develop this kind of radical
> changes.
> >> It's dinosaur.
> >>
> >> Reunold, can you help finding this doc? Do you mean just pipelining
> spark
> >> code or additional logic of persistence tasks, job server, task retry,
> >> data
> >> availability and extra?
> >>
> >>
> >> 2014-09-17 11:21 GMT+04:00 Reynold Xin <r...@databricks.com>:
> >>
> >> > Hi Egor,
> >> >
> >> > I think the design doc for the pipeline feature has been posted.
> >> >
> >> > For the workflow, I believe Oozie actually works fine with Spark if
> you
> >> > want some external workflow system. Do you have any trouble using
> that?
> >> >
> >> >
> >> > On Tue, Sep 16, 2014 at 11:45 PM, Egor Pahomov <
> pahomov.e...@gmail.com>
> >> > wrote:
> >> >
> >> >> There are two things we(Yandex) miss in Spark: MLlib good
> abstractions
> >> and
> >> >> good workflow job scheduler. From threads "Adding abstraction in
> MlLib"
> >> >> and
> >> >> "[mllib] State of Multi-Model training" I got the idea, that
> databricks
> >> >> working on it and we should wait until first post doc, which would
> lead
> >> >> us.
> >> >> What about workflow scheduler? Is there anyone already working on it?
> >> Does
> >> >> anyone have a plan on doing it?
> >> >>
> >> >> P.S. We thought that MLlib abstractions about multiple algorithms run
> >> with
> >> >> same data would need such scheduler, which would rerun algorithm in
> >> case
> >> >> of
> >> >> failure. I understand, that spark provide fault tolerance out of the
> >> box,
> >> >> but we found some "Ooozie-like" scheduler more reliable for such long
> >> >> living workflows.
> >> >>
> >> >> --
> >> >>
> >> >>
> >> >>
> >> >> *Sincerely yoursEgor PakhomovScala Developer, Yandex*
> >> >>
> >> >
> >> >
> >>
> >>
> >> --
> >>
> >>
> >>
> >> *Sincerely yoursEgor PakhomovScala Developer, Yandex*
> >>
> >
> >
>
>
> --
>
>
>
> *Sincerely yoursEgor PakhomovScala Developer, Yandex*
>

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