MLSQL Stack如何让流调试更加简单详解

前言

有一位同学正在调研MLSQL Stack对流的支持。然后说了流调试其实挺困难的。经过实践,希望实现如下三点:

  • 能随时查看最新固定条数的Kafka数据
  • 调试结果(sink)能打印在web控制台
  • 流程序能自动推测json schema(现在spark是不行的)

实现这三个点之后,我发现调试确实就变得简单很多了。

流程

首先我新建了一个kaf_write.mlsql,里面方便我往Kafka里写数据:

set abc='''

{ "x": 100, "y": 200, "z": 200 ,"dataType":"A group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

{ "x": 120, "y": 100, "z": 260 ,"dataType":"B group"}

''';

load jsonStr.`abc` as table1;

select to_json(struct(*)) as value from table1 as table2;

save append table2 as kafka.`wow` where

kafka.bootstrap.servers="127.0.0.1:9092";

这样我每次运行,数据就能写入到Kafka.

接着,我写完后,需要看看数据是不是真的都写进去了,写成了什么样子:

!kafkaTool sampleData 10 records from "127.0.0.1:9092" wow;

这句话表示,我要采样Kafka 10条Kafka数据,该Kafka的地址为127.0.0.1:9092,主题为wow.运行结果如下:

没有什么问题。接着我写一个非常简单的流式程序:

-- the stream name, should be uniq.

set streamName="streamExample";

-- use kafkaTool to infer schema from kafka

!kafkaTool registerSchema 2 records from "127.0.0.1:9092" wow;

load kafka.`wow` options

kafka.bootstrap.servers="127.0.0.1:9092"

as newkafkatable1;

select * from newkafkatable1

as table21;

-- print in webConsole instead of terminal console.

save append table21

as webConsole.``

options mode="Append"

and duration="15"

and checkpointLocation="/tmp/s-cpl4";

运行结果如下:

在终端我们也可以看到实时效果了。

补充

当然,MLSQL Stack 还有对流还有两个特别好地方,第一个是你可以对流的事件设置http协议的callback,以及对流的处理结果再使用批SQL进行处理,最后入库。参看如下脚本:

-- the stream name, should be uniq.

set streamName="streamExample";

-- mock some data.

set data='''

{"key":"yes","value":"no","topic":"test","partition":0,"offset":0,"timestamp":"2008-01-24 18:01:01.001","timestampType":0}

{"key":"yes","value":"no","topic":"test","partition":0,"offset":1,"timestamp":"2008-01-24 18:01:01.002","timestampType":0}

{"key":"yes","value":"no","topic":"test","partition":0,"offset":2,"timestamp":"2008-01-24 18:01:01.003","timestampType":0}

{"key":"yes","value":"no","topic":"test","partition":0,"offset":3,"timestamp":"2008-01-24 18:01:01.003","timestampType":0}

{"key":"yes","value":"no","topic":"test","partition":0,"offset":4,"timestamp":"2008-01-24 18:01:01.003","timestampType":0}

{"key":"yes","value":"no","topic":"test","partition":0,"offset":5,"timestamp":"2008-01-24 18:01:01.003","timestampType":0}

''';

-- load data as table

load jsonStr.`data` as datasource;

-- convert table as stream source

load mockStream.`datasource` options

stepSizeRange="0-3"

as newkafkatable1;

-- aggregation

select cast(value as string) as k from newkafkatable1

as table21;

!callback post "http://127.0.0.1:9002/api_v1/test" when "started,progress,terminated";

-- output the the result to console.

save append table21

as custom.``

options mode="append"

and duration="15"

and sourceTable="jack"

and code='''

select count(*) as c from jack as newjack;

save append newjack as parquet.`/tmp/jack`;

'''

and checkpointLocation="/tmp/cpl15";

总结

以上就是这篇文章的全部内容了,希望本文的内容对大家的学习或者工作具有一定的参考学习价值,谢谢大家对的支持。

以上是 MLSQL Stack如何让流调试更加简单详解 的全部内容, 来源链接: utcz.com/p/229655.html

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