Yes, it looks good .
We are building the spark sql extensions to support for hudi in our internal 
version.
I am interested in participating in the extension of SparkSQL on hudi.
2020年12月22日 下午4:30,Vinoth Chandar <vin...@apache.org> 写道:


Hi,

I think what we are landing on finally is.

- Keep pushing for SparkSQL support using Spark extensions route
- Calcite effort will be a separate/orthogonal approach, down the line

Please feel free to correct me, if I got this wrong.

On Mon, Dec 21, 2020 at 3:30 AM pzwpzw <pengzhiwei2...@icloud.com.invalid>
wrote:


Hi 受春柏 ,here is my point. We can use Calcite to build a common sql layer
to process engine independent SQL, for example most of the DDL、Hoodie CLI
command and also provide parser for the common SQL extensions(e.g. Merge
Into). The Engine-related syntax can be taught to the respective engines to
process. If the common sql layer can handle the input sql, it handle
it.Otherwise it is routed to the engine for processing. In long term, the
common layer will more and more rich and perfect.
2020年12月21日 下午4:38,受春柏 <sc...@126.com> 写道:


Hi,all




That's very good,Hudi SQL syntax can support Flink、hive and other analysis
components at the same time,
But there are some questions about SparkSQL. SparkSQL syntax is in
conflict with Calctite syntax.Is our strategy
user migration or syntax compatibility?
In addition ,will it also support write SQL?








































在 2020-12-19 02:10:16,"Nishith" <n3.nas...@gmail.com> 写道:


That’s awesome. Looks like we have a consensus on Calcite. Look forward to
the RFC as well!




-Nishith




On Dec 18, 2020, at 9:03 AM, Vinoth Chandar <vin...@apache.org> wrote:




Sounds good. Look forward to a RFC/DISCUSS thread.




Thanks


Vinoth




On Thu, Dec 17, 2020 at 6:04 PM Danny Chan <danny0...@apache.org> wrote:




Yes, Apache Flink basically reuse the DQL syntax of Apache Calcite, i would


add support for SQL connectors of Hoodie Flink soon ~


Currently, i'm preparing a refactoring to the current Flink writer code.




Vinoth Chandar <vin...@apache.org> 于2020年12月18日周五 上午6:39写道:




Thanks Kabeer for the note on gmail. Did not realize that. :)




My desired use case is user use the Hoodie CLI to execute these SQLs.


They can choose what engine to use by a CLI config option.




Yes, that is also another attractive aspect of this route. We can build


out


a common SQL layer and have this translate to the underlying engine


(sounds


like Hive huh)


Longer term, if we really think we can more easily implement a full DML +


DDL + DQL, we can proceed with this.




As others pointed out, for Spark SQL, it might be good to try the Spark


extensions route, before we take this on more fully.




The other part where Calcite is great is, all the support for


windowing/streaming in its syntax.


Danny, I guess if we should be able to leverage that through a deeper


Flink/Hudi integration?






On Thu, Dec 17, 2020 at 1:07 PM Vinoth Chandar <vin...@apache.org>


wrote:




I think Dongwook is investigating on the same lines. and it does seem


better to pursue this first, before trying other approaches.








On Tue, Dec 15, 2020 at 1:38 AM pzwpzw <pengzhiwei2...@icloud.com


.invalid>


wrote:




Yeah I agree with Nishith that an option way is to look at the


ways


to


plug in custom logical and physical plans in Spark. It can simplify


the


implementation and reuse the Spark SQL syntax. And also users


familiar


with


Spark SQL will be able to use HUDi's SQL features more quickly.


In fact, spark have provided the SparkSessionExtensions interface for


implement custom syntax extensions and SQL rewrite rule.










https://spark.apache.org/docs/2.4.5/api/java/org/apache/spark/sql/SparkSessionExtensions.html


.


We can use the SparkSessionExtensions to extended hoodie sql syntax


such


as MERGE INTO and DDL syntax.




2020年12月15日 下午3:27,Nishith <n3.nas...@gmail.com> 写道:




Thanks for starting this thread Vinoth.


In general, definitely see the need for SQL style semantics on Hudi


tables. Apache Calcite is a great option to considering given


DatasourceV2


has the limitations that you described.




Additionally, even if Spark DatasourceV2 allowed for the flexibility,


the


same SQL semantics needs to be supported in other engines like Flink


to


provide the same experience to users - which in itself could also be


considerable amount of work.


So, if we’re able to generalize on the SQL story along Calcite, that


would


help reduce redundant work in some sense.


Although, I’m worried about a few things




1) Like you pointed out, writing complex user jobs using Spark SQL


syntax


can be harder for users who are moving from “Hudi syntax” to “Spark


syntax”


for cross table joins, merges etc using data frames. One option is to


look


at the if there are ways to plug in custom logical and physical plans


in


Spark, this way, although the merge on sparksql functionality may not


be


as


simple to use, but wouldn’t take away performance and feature set for


starters, in the future we could think of having the entire query


space


be


powered by calcite like you mentioned


2) If we continue to use DatasourceV1, is there any downside to this


from


a performance and optimization perspective when executing plan - I’m


guessing not but haven’t delved into the code to see if there’s


anything


different apart from the API and spec.




On Dec 14, 2020, at 11:06 PM, Vinoth Chandar <vin...@apache.org>


wrote:






Hello all,






Just bumping this thread again






thanks




vinoth






On Thu, Dec 10, 2020 at 11:58 PM Vinoth Chandar <vin...@apache.org>


wrote:






Hello all,






One feature that keeps coming up is the ability to use UPDATE, MERGE


sql




syntax to support writing into Hudi tables. We have looked into the


Spark 3




DataSource V2 APIs as well and found several issues that hinder us in




implementing this via the Spark APIs






- As of this writing, the UPDATE/MERGE syntax is not really opened up


to




external datasources like Hudi. only DELETE is.




- DataSource V2 API offers no flexibility to perform any kind of




further transformations to the dataframe. Hudi supports keys,


indexes,




preCombining and custom partitioning that ensures file sizes etc. All


this




needs shuffling data, looking up/joining against other dataframes so


forth.




Today, the DataSource V1 API allows this kind of further




partitions/transformations. But the V2 API is simply offers partition


level




iteration once the user calls df.write.format("hudi")






One thought I had is to explore Apache Calcite and write an adapter


for




Hudi. This frees us from being very dependent on a particular


engine's




syntax support like Spark. Calcite is very popular by itself and


supports




most of the key words and (also more streaming friendly syntax). To


be




clear, we will still be using Spark/Flink underneath to perform the


actual




writing, just that the SQL grammar is provided by Calcite.






To give a taste of how this will look like.






A) If the user wants to mutate a Hudi table using SQL






Instead of writing something like : spark.sql("UPDATE ....")




users will write : hudiSparkSession.sql("UPDATE ....")






B) To save a Spark data frame to a Hudi table




we continue to use Spark DataSource V1






The obvious challenge I see is the disconnect with the Spark


DataFrame




ecosystem. Users would write MERGE SQL statements by joining against


other




Spark DataFrames.




If we want those expressed in calcite as well, we need to also invest


in




the full Query side support, which can increase the scope by a lot.




Some amount of investigation needs to happen, but ideally we should


be




able to integrate with the sparkSQL catalog and reuse all the tables


there.






I am sure there are some gaps in my thinking. Just starting this


thread,




so we can discuss and others can chime in/correct me.






thanks




vinoth















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