Could you please list which features we want to finish before the branch
cut? How long will they take?

Xiao

Chao Sun <sunc...@apache.org> 于2022年3月14日周一 13:30写道:

> Hi Max,
>
> As there are still some ongoing work for the above listed SPIPs, can we
> still merge them after the branch cut?
>
> Thanks,
> Chao
>
> On Mon, Mar 14, 2022 at 6:12 AM Maxim Gekk
> <maxim.g...@databricks.com.invalid> wrote:
>
>> Hi All,
>>
>> Since there are no actual blockers for Spark 3.3.0 and significant
>> objections, I am going to cut branch-3.3 after 15th March at 00:00 PST.
>> Please, let us know if you have any concerns about that.
>>
>> Best regards,
>> Max Gekk
>>
>>
>> On Thu, Mar 3, 2022 at 9:44 PM Maxim Gekk <maxim.g...@databricks.com>
>> wrote:
>>
>>> Hello All,
>>>
>>> I would like to bring on the table the theme about the new Spark release
>>> 3.3. According to the public schedule at
>>> https://spark.apache.org/versioning-policy.html, we planned to start
>>> the code freeze and release branch cut on March 15th, 2022. Since this date
>>> is coming soon, I would like to take your attention on the topic and gather
>>> objections that you might have.
>>>
>>> Bellow is the list of ongoing and active SPIPs:
>>>
>>> Spark SQL:
>>> - [SPARK-31357] DataSourceV2: Catalog API for view metadata
>>> - [SPARK-35801] Row-level operations in Data Source V2
>>> - [SPARK-37166] Storage Partitioned Join
>>>
>>> Spark Core:
>>> - [SPARK-20624] Add better handling for node shutdown
>>> - [SPARK-25299] Use remote storage for persisting shuffle data
>>>
>>> PySpark:
>>> - [SPARK-26413] RDD Arrow Support in Spark Core and PySpark
>>>
>>> Kubernetes:
>>> - [SPARK-36057] Support Customized Kubernetes Schedulers
>>>
>>> Probably, we should finish if there are any remaining works for Spark
>>> 3.3, and switch to QA mode, cut a branch and keep everything on track. I
>>> would like to volunteer to help drive this process.
>>>
>>> Best regards,
>>> Max Gekk
>>>
>>

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