9 Star 18 Fork 3

Gitee 极速下载 / KSQL

加入 Gitee
与超过 1200万 开发者一起发现、参与优秀开源项目,私有仓库也完全免费 :)
免费加入
此仓库是为了提升国内下载速度的镜像仓库,每日同步一次。 原始仓库: https://github.com/confluentinc/ksql
克隆/下载
贡献代码
同步代码
取消
提示: 由于 Git 不支持空文件夾,创建文件夹后会生成空的 .keep 文件
up
Loading...
README

KSQL rocket ksqlDB

The database purpose-built for stream processing applications

Overview

ksqlDB is a database for building stream processing applications on top of Apache Kafka. It is distributed, scalable, reliable, and real-time. ksqlDB combines the power of real-time stream processing with the approachable feel of a relational database through a familiar, lightweight SQL syntax. ksqlDB offers these core primitives:

  • Streams and tables - Create relations with schemas over your Apache Kafka topic data
  • Materialized views - Define real-time, incrementally updated materialized views over streams using SQL
  • Push queries- Continuous queries that push incremental results to clients in real time
  • Pull queries - Query materialized views on demand, much like with a traditional database
  • Connect - Integrate with any Kafka Connect data source or sink, entirely from within ksqlDB

Composing these powerful primitives enables you to build a complete streaming app with just SQL statements, minimizing complexity and operational overhead. ksqlDB supports a wide range of operations including aggregations, joins, windowing, sessionization, and much more. You can find more ksqlDB tutorials and resources here.

Getting Started

Documentation

See the ksqlDB documentation for the latest stable release.

Use Cases and Examples

Materialized views

ksqlDB allows you to define materialized views over your streams and tables. Materialized views are defined by what is known as a "persistent query". These queries are known as persistent because they maintain their incrementally updated results using a table.

CREATE TABLE hourly_metrics AS
  SELECT url, COUNT(*)
  FROM page_views
  WINDOW TUMBLING (SIZE 1 HOUR)
  GROUP BY url EMIT CHANGES;

Results may be "pulled" from materialized views on demand via SELECT queries. The following query will return a single row:

SELECT * FROM hourly_metrics
  WHERE url = 'http://myurl.com' AND WINDOWSTART = '2019-11-20T19:00';

Results may also be continuously "pushed" to clients via streaming SELECT queries. The following streaming query will push to the client all incremental changes made to the materialized view:

SELECT * FROM hourly_metrics EMIT CHANGES;

Streaming queries will run perpetually until they are explicitly terminated.

Streaming ETL

Apache Kafka is a popular choice for powering data pipelines. ksqlDB makes it simple to transform data within the pipeline, readying messages to cleanly land in another system.

CREATE STREAM vip_actions AS
  SELECT userid, page, action
  FROM clickstream c
  LEFT JOIN users u ON c.userid = u.user_id
  WHERE u.level = 'Platinum' EMIT CHANGES;

Anomaly Detection

ksqlDB is a good fit for identifying patterns or anomalies on real-time data. By processing the stream as data arrives you can identify and properly surface out of the ordinary events with millisecond latency.

CREATE TABLE possible_fraud AS
  SELECT card_number, count(*)
  FROM authorization_attempts
  WINDOW TUMBLING (SIZE 5 SECONDS)
  GROUP BY card_number
  HAVING count(*) > 3 EMIT CHANGES;

Monitoring

Kafka's ability to provide scalable ordered records with stream processing make it a common solution for log data monitoring and alerting. ksqlDB lends a familiar syntax for tracking, understanding, and managing alerts.

CREATE TABLE error_counts AS
  SELECT error_code, count(*)
  FROM monitoring_stream
  WINDOW TUMBLING (SIZE 1 MINUTE)
  WHERE  type = 'ERROR'
  GROUP BY error_code EMIT CHANGES;

Integration with External Data Sources and Sinks

ksqlDB includes native integration with Kafka Connect data sources and sinks, effectively providing a unified SQL interface over a broad variety of external systems.

The following query is a simple persistent streaming query that will produce all of its output into a topic named clicks_transformed:

CREATE STREAM clicks_transformed AS
  SELECT userid, page, action
  FROM clickstream c
  LEFT JOIN users u ON c.userid = u.user_id EMIT CHANGES;

Rather than simply send all continuous query output into a Kafka topic, it is often very useful to route the output into another datastore. ksqlDB's Kafka Connect integration makes this pattern very easy.

The following statement will create a Kafka Connect sink connector that continuously sends all output from the above streaming ETL query directly into Elasticsearch:

 CREATE SINK CONNECTOR es_sink WITH (
  'connector.class' = 'io.confluent.connect.elasticsearch.ElasticsearchSinkConnector',
  'key.converter'   = 'org.apache.kafka.connect.storage.StringConverter',
  'topics'          = 'clicks_transformed',
  'key.ignore'      = 'true',
  'schema.ignore'   = 'true',
  'type.name'       = '',
  'connection.url'  = 'http://elasticsearch:9200');

Join the Community

For user help, questions or queries about ksqlDB please use our user Google Group or our public Slack channel #ksqldb in Confluent Community Slack. Everyone is welcome!

You can get help, learn how to contribute to ksqlDB, and find the latest news by connecting with the Confluent community.

For more general questions about the Confluent Platform please post in the Confluent Google group.

Contributing and building from source

Contributions to the code, examples, documentation, etc. are very much appreciated.

License

The project is licensed under the Confluent Community License.

Apache, Apache Kafka, Kafka, and associated open source project names are trademarks of the Apache Software Foundation.

空文件

简介

KSQL  用于 Apache Kafka 的流数据 SQL 引擎 注意:项目还处于开发者预览版,请暂时勿用于生产集群中 展开 收起
取消

发行版

暂无发行版

贡献者

全部

近期动态

加载更多
不能加载更多了
Java
1
https://gitee.com/mirrors/KSQL.git
git@gitee.com:mirrors/KSQL.git
mirrors
KSQL
KSQL
master

搜索帮助