Yan: Where can I find performance numbers for Astro (it's close to middle of August) ?
Cheers On Tue, Aug 11, 2015 at 3:58 PM, Yan Zhou.sc <yan.zhou...@huawei.com> wrote: > Finally I can take a look at HBASE-14181 now. Unfortunately there is no > design doc mentioned. Superficially it is very similar to Astro with a > difference of > > this being part of HBase client library; while Astro works as a Spark > package so will evolve and function more closely with Spark SQL/Dataframe > instead of HBase. > > > > In terms of architecture, my take is loosely-coupled query engines on top > of KV store vs. an array of query engines supported by, and packaged as > part of, a KV store. > > > > Functionality-wise the two could be close but Astro also supports Python > as a result of tight integration with Spark. > > It will be interesting to see performance comparisons when HBase-14181 is > ready. > > > > Thanks, > > > > > > *From:* Ted Yu [mailto:yuzhih...@gmail.com] > *Sent:* Tuesday, August 11, 2015 3:28 PM > *To:* Yan Zhou.sc > *Cc:* Bing Xiao (Bing); dev@spark.apache.org; u...@spark.apache.org > *Subject:* Re: 答复: Package Release Annoucement: Spark SQL on HBase "Astro" > > > > HBase will not have query engine. > > > > It will provide better support to query engines. > > > > Cheers > > > On Aug 10, 2015, at 11:11 PM, Yan Zhou.sc <yan.zhou...@huawei.com> wrote: > > Ted, > > > > I’m in China now, and seem to experience difficulty to access Apache Jira. > Anyways, it appears to me that HBASE-14181 > <https://issues.apache.org/jira/browse/HBASE-14181> attempts to support > Spark DataFrame inside HBase. > > If true, one question to me is whether HBase is intended to have a > built-in query engine or not. Or it will stick with the current way as > > a k-v store with some built-in processing capabilities in the forms of > coprocessor, custom filter, …, etc., which allows for loosely-coupled query > engines > > built on top of it. > > > > Thanks, > > > > *发件人**:* Ted Yu [mailto:yuzhih...@gmail.com <yuzhih...@gmail.com>] > *发送时间**:* 2015年8月11日 8:54 > *收件人**:* Bing Xiao (Bing) > *抄送**:* dev@spark.apache.org; u...@spark.apache.org; Yan Zhou.sc > *主题**:* Re: Package Release Annoucement: Spark SQL on HBase "Astro" > > > > Yan / Bing: > > Mind taking a look at HBASE-14181 > <https://issues.apache.org/jira/browse/HBASE-14181> 'Add Spark DataFrame > DataSource to HBase-Spark Module' ? > > > > Thanks > > > > On Wed, Jul 22, 2015 at 4:53 PM, Bing Xiao (Bing) <bing.x...@huawei.com> > wrote: > > We are happy to announce the availability of the Spark SQL on HBase 1.0.0 > release. > http://spark-packages.org/package/Huawei-Spark/Spark-SQL-on-HBase > > The main features in this package, dubbed “Astro”, include: > > · Systematic and powerful handling of data pruning and > intelligent scan, based on partial evaluation technique > > · HBase pushdown capabilities like custom filters and coprocessor > to support ultra low latency processing > > · SQL, Data Frame support > > · More SQL capabilities made possible (Secondary index, bloom > filter, Primary Key, Bulk load, Update) > > · Joins with data from other sources > > · Python/Java/Scala support > > · Support latest Spark 1.4.0 release > > > > The tests by Huawei team and community contributors covered the areas: > bulk load; projection pruning; partition pruning; partial evaluation; code > generation; coprocessor; customer filtering; DML; complex filtering on keys > and non-keys; Join/union with non-Hbase data; Data Frame; multi-column > family test. We will post the test results including performance tests the > middle of August. > > You are very welcomed to try out or deploy the package, and help improve > the integration tests with various combinations of the settings, extensive > Data Frame tests, complex join/union test and extensive performance tests. > Please use the “Issues” “Pull Requests” links at this package homepage, if > you want to report bugs, improvement or feature requests. > > Special thanks to project owner and technical leader Yan Zhou, Huawei > global team, community contributors and Databricks. Databricks has been > providing great assistance from the design to the release. > > “Astro”, the Spark SQL on HBase package will be useful for ultra low > latency* query and analytics of large scale data sets in vertical > enterprises**.* We will continue to work with the community to develop > new features and improve code base. Your comments and suggestions are > greatly appreciated. > > > > Yan Zhou / Bing Xiao > > Huawei Big Data team > > > > > >