### _Why are the changes needed?_ extract catalog for ResolvedTable and DataSourceV2Relation in tableExtractors ### _How was this patch tested?_ - [x] Add some test cases that check the changes thoroughly including negative and positive cases if possible - [ ] Add screenshots for manual tests if appropriate - [x] [Run test](https://kyuubi.apache.org/docs/latest/develop_tools/testing.html#running-tests) locally before make a pull request Closes #3989 from bowenliang123/catalog-v2table. Closes #3989 88392051c [liangbowen] update e32dbd54a [liangbowen] revert catalogExtractor and remove spark session for input 0e36e2fb3 [liangbowen] style 90a671640 [liangbowen] remove CurrentCatalogExtractor 77e0f864a [liangbowen] add package name in comments for extractor 5c2642b38 [liangbowen] update CurrentCatalogExtractor 8bdb7d767 [liangbowen] fix ut error and cancel fetching catalog inside IdentifierTableExtractor 6be3496f3 [liangbowen] check catalog for TableIdentifierTableExtractor with DescribeColumnCommand 5ee473de3 [liangbowen] fill catalog in IdentifierTableExtractor/CatalogTableTableExtractor/TableIdentifierTableExtractor 802ea065d [liangbowen] 1. fill catalog for table with current catalog name if None catalog return after catalogdesc extracted 2. implement CurrentCatalogExtractor 273875ae1 [liangbowen] use CatalogPluginCatalogExtractor in ResolvedDbObjectNameTableExtractor 0368ac513 [liangbowen] remove unnecessary seq in ut 0b0ca7802 [liangbowen] revert relevant changes in ResolvedDbObjectNameTableExtractor 7ebcc92f0 [liangbowen] revert relevant changes in ResolvedDbObjectNameTableExtractor bd13a1ef8 [liangbowen] lint 551153d0d [liangbowen] add ut for DataSourceV2RelationTableExtractor e13987f86 [liangbowen] extract catalog for DataSourceV2Relation cdbc705d8 [liangbowen] add ut for ResolvedTableTableExtractor 85f26947a [liangbowen] extract catalog for ResolvedTable Authored-by: liangbowen <liangbowen@gf.com.cn> Signed-off-by: Kent Yao <yao@apache.org> |
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Apache Kyuubi (Incubating)
What is Kyuubi?
Apache Kyuubi™ is a distributed and multi-tenant gateway to provide serverless SQL on data warehouses and lakehouses.
Kyuubi provides a pure SQL gateway through Thrift JDBC/ODBC interface for end-users to manipulate large-scale data with pre-programmed and extensible Spark SQL engines. This "out-of-the-box" model minimizes the barriers and costs for end-users to use Spark at the client side. At the server-side, Kyuubi server and engines' multi-tenant architecture provides the administrators a way to achieve computing resource isolation, data security, high availability, high client concurrency, etc.
- A HiveServer2-like API
- Multi-tenant Spark Support
- Running Spark in a serverless way
Target Users
Kyuubi's goal is to make it easy and efficient for anyone to use Spark(maybe other engines soon) and facilitate users to handle big data like ordinary data. Here, anyone means that users do not need to have a Spark technical background but a human language, SQL only. Sometimes, SQL skills are unnecessary when integrating Kyuubi with Apache Superset, which supports rich visualizations and dashboards.
In typical big data production environments with Kyuubi, there should be system administrators and end-users.
- System administrators: A small group consists of Spark experts responsible for Kyuubi deployment, configuration, and tuning.
- End-users: Focus on business data of their own, not where it stores, how it computes.
Additionally, the Kyuubi community will continuously optimize the whole system with various features, such as History-Based Optimizer, Auto-tuning, Materialized View, SQL Dialects, Functions, e.t.c.
Usage scenarios
Port workloads from HiveServer2 to Spark SQL
In typical big data production environments, especially secured ones, all bundled services manage access control lists to restricting access to authorized users. For example, Hadoop YARN divides compute resources into queues. With Queue ACLs, it can identify and control which users/groups can take actions on particular queues. Similarly, HDFS ACLs control access of HDFS files by providing a way to set different permissions for specific users/groups.
Apache Spark is a unified analytics engine for large-scale data processing. It provides a Distributed SQL Engine, a.k.a, the Spark Thrift Server(STS), designed to be seamlessly compatible with HiveServer2 and get even better performance.
HiveServer2 can identify and authenticate a caller, and then if the caller also has permissions for the YARN queue and HDFS files, it succeeds. Otherwise, it fails. However, on the one hand, STS is a single Spark application. The user and queue to which STS belongs are uniquely determined at startup. Consequently, STS cannot leverage cluster managers such as YARN and Kubernetes for resource isolation and sharing or control the access for callers by the single user inside the whole system. On the other hand, the Thrift Server is coupled in the Spark driver's JVM process. This coupled architect puts a high risk on server stability and makes it unable to handle high client concurrency or apply high availability such as load balancing as it is stateful.
Kyuubi extends the use of STS in a multi-tenant model based on a unified interface and relies on the concept of multi-tenancy to interact with cluster managers to finally gain the ability of resources sharing/isolation and data security. The loosely coupled architecture of the Kyuubi server and engine dramatically improves the client concurrency and service stability of the service itself.
DataLake/LakeHouse Support
The vision of Kyuubi is to unify the portal and become an easy-to-use data lake management platform. Different kinds of workloads, such as ETL processing and BI analytics, can be supported by one platform, using one copy of data, with one SQL interface.
- Logical View support via Kyuubi DataLake Metadata APIs
- Multiple Catalogs support
- SQL Standard Authorization support for DataLake(coming)
Cloud Native Support
Kyuubi can deploy its engines on different kinds of Cluster Managers, such as, Hadoop YARN, Kubernetes, etc.
The Kyuubi Ecosystem(present and future)
The figure below shows our vision for the Kyuubi Ecosystem. Some of them have been realized, some in development, and others would not be possible without your help.
Online Documentation
Since Kyuubi 1.3.0-incubating, the Kyuubi online documentation is hosted by https://kyuubi.apache.org/. You can find the latest Kyuubi documentation on this web page. For 1.2 and earlier versions, please check the Readthedocs directly.
Quick Start
Ready? Getting Started with Kyuubi.
Contributing
Contributor over time
Aside
The project took its name from a character of a popular Japanese manga - Naruto.
The character is named Kyuubi Kitsune/Kurama, which is a nine-tailed fox in mythology.
Kyuubi spread the power and spirit of fire, which is used here to represent the powerful Apache Spark.
Its nine tails stand for end-to-end multi-tenancy support of this project.
License
This project is licensed under the Apache 2.0 License. See the LICENSE file for details.


