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Flink SQl 语法(hint,with,select,分组窗口聚合,时间属性(处理,事件))

作者:互联网

1、查询语句

1、hint

在对表进行查询的是偶动态修改表的属性

-- 创建表
CREATE TABLE word (
    lines STRING
) 
WITH (
  'connector' = 'kafka',
  'topic' = 'word',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',-- 读取所有的数据
  'format' = 'csv',
  'csv.field-delimiter'='\t'
)
-- 加载hive函数
LOAD MODULE hive WITH ('hive-version' = '1.2.1');
--统计单词的数量
--不动态指定开始读取的参数
select word,count(1) from 
word,
lateral table(explode(split(lines,','))) as t(word)
group by word

-- OPTIONS 动态指定参数
select word,count(1) from 
word /*+ OPTIONS('scan.startup.mode'='latest-offset') */ ,
lateral table(explode(split(lines,','))) as t(word)
group by word

3、WITH
-- temp可以在后面的sql中使用多次
with temp as (
    select word from word,
    lateral table(explode(split(lines,','))) as t(word)
)
select * from  temp
 union all
select * from  temp

4、SELECT
SELECT order_id, price 
FROM
(VALUES (1, 2.0), (2, 3.1))  AS t (order_id, price)

5、分组窗口聚合

老版本语法,新版本中不推荐使用

-- PROCTIME(): 获取处理时间的函数
CREATE TABLE words_window (
    lines STRING,
    proc_time as PROCTIME()
) WITH (
  'connector' = 'kafka',
  'topic' = 'words',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',-- 读取所有的数据
  'format' = 'csv',
  'csv.field-delimiter'='\t'
)

-- TUMBLE:滚动窗口
-- HOP": 滑动黄口
-- SESSION: 会话窗口

--TUMBLE:处理时间的滑动窗口
select 
word,
TUMBLE_START(proc_time, INTERVAL '5' SECOND)  as s, -- 窗口开始时间
TUMBLE_END(proc_time, INTERVAL '5' SECOND) as e, -- 窗口开始使时间
count(1) as c
from 
words_window,
lateral table(explode(split(lines,','))) as t(word)
group by 
word,
TUMBLE(proc_time, INTERVAL '5' SECOND) -- 每5秒计算一次

CREATE TABLE words_window (
    lines STRING,
    proc_time as PROCTIME()
) WITH (
  'connector' = 'kafka',
  'topic' = 'words',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',-- 读取所有的数据
  'format' = 'csv',
  'csv.field-delimiter'='\t'
)
select 
word,
SESSION_START(proc_time, INTERVAL '5' SECOND)  as s, -- 窗口开始时间
SESSION_END(proc_time, INTERVAL '5' SECOND) as e, -- 窗口结束使时间
count(1) as c
from 
words_window,
lateral table(explode(split(lines,','))) as t(word)
group by 
word,
SESSION(proc_time, INTERVAL '5' SECOND) -- 会话超过5秒中没有发送消息,就开始进行计算

6、TVFs(重点)
CREATE TABLE words_window (
    lines STRING,
    proc_time as PROCTIME()
) WITH (
  'connector' = 'kafka',
  'topic' = 'words',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',-- 读取所有的数据
  'format' = 'csv',
  'csv.field-delimiter'='\t'
)

-- TUMBLE(TABLE words_window, DESCRIPTOR(proc_time), INTERVAL '5' SECOND)
-- TUMBLE: 窗口函数,可以给原表增加床i偶开始时间,窗口的结束时间,窗口时间
-- TABLE words_window : 指定原表
-- DESCRIPTOR(proc_time) 指定时间字段,可以处理时间,也可以是事件时间
-- INTERVAL '5' SECOND 指定窗口大小

 SELECT lines,proc_time,window_start,window_end,window_time FROM TABLE(
  TUMBLE(TABLE words_window, DESCRIPTOR(proc_time), INTERVAL '5' SECOND)
 );
 
 -- 在划分和窗口之后进行聚合计算
 SELECT word,window_start,count(1) as c FROM 
 TABLE(
  TUMBLE(TABLE words_window, DESCRIPTOR(proc_time), INTERVAL '5' SECOND)
 ),
 lateral table(explode(split(lines,','))) as t(word)
 group by word,window_start
CREATE TABLE words_window (
    lines STRING,
    proc_time as PROCTIME()
) WITH (
  'connector' = 'kafka',
  'topic' = 'words',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',-- 读取所有的数据
  'format' = 'csv',
  'csv.field-delimiter'='\t'
)
-- HOP: 滑动窗口函数,需要指定窗口大小和滑动时间
-- 输入一条数据会输出多条数据
with temp as (
select * from words_window /*+ OPTIONS('scan.startup.mode'='latest-offset') */
)
SELECT * FROM 
TABLE(
    HOP(TABLE temp , DESCRIPTOR(proc_time), INTERVAL '5' SECOND, INTERVAL '15' SECOND) 
) 
;

-- 窗口止呕进行聚合
with temp as (
select * from words_window /*+ OPTIONS('scan.startup.mode'='latest-offset') */
)
SELECT word ,window_start,count(1) as c FROM 
TABLE(
    HOP(TABLE temp, DESCRIPTOR(proc_time), INTERVAL '5' SECOND, INTERVAL '15' SECOND)),
lateral table(explode(split(lines,','))) as t(word)
group by word,window_start
;

7、时间属性

1、处理时间

使用PROCTIME()函数给表增加一个时间字段

CREATE TABLE student_kafka_proc_time (
    id STRING,
    name STRING,
    age INT,
    gender STRING,
    clazz STRING,
    proc as PROCTIME() -- 处理时间字段
) WITH (
  'connector' = 'kafka',
  'topic' = 'student',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',
  'format' = 'csv',
  'csv.field-delimiter'=',', -- csv格式数据的分隔符
  'csv.ignore-parse-errors'='true', -- 如果出现脏数据据,补null
  'csv.allow-comments'='true'--跳过#注释行
)

-- 使用处理时间可以做窗口统计
 SELECT clazz,window_start,count(1) as c FROM 
 TABLE(
  TUMBLE(TABLE student_kafka_proc_time, DESCRIPTOR(proc), INTERVAL '5' SECOND)
 )
 group by clazz,window_start

2、事件时间

练习

统计单词的数量,
每隔5秒统计一次
每个窗口中取单词数量最多个两个单词

CREATE TABLE words_window_demo (
    lines STRING,
    proc_time as PROCTIME()
) WITH (
  'connector' = 'kafka',
  'topic' = 'words',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'testGroup',
  'scan.startup.mode' = 'earliest-offset',-- 读取所有的数据
  'format' = 'csv',
  'csv.field-delimiter'='\t'
)
-- 在夫林卡 sql 流处理中row_number()必须要取topN
select * from (
    select 
    word,
    window_start,
    c,
    row_number() over(partition by window_start order by c desc) as r
    from (
        select  word,window_start,count(1) as c from 
        TABLE(
            TUMBLE(TABLE words_window_demo, DESCRIPTOR(proc_time), INTERVAL '5' SECOND)
        ),
        lateral table(explode(split(lines,','))) as t(word)
        group by word,window_start
    ) as a
) as b
where r <= 2
-- 数据
{
    "car": "皖AK0H90",
    "city_code": "340100",
    "county_code": "340111",
    "card": 117303031813010,
    "camera_id": "00004",
    "orientation": "北",
    "road_id": 34130440,
    "time": 1614799929,
    "speed": 84.51
}

-- TIMESTAMP(3) flink的时间戳类型
-- ts - INTERVAL '5' SECOND 水位线前移5秒
-- 创建表读取kafka中的json数据
CREATE TABLE cars_kafka_event_time (
    car STRING,          
    city_code STRING,    
    county_code STRING,  
    card BIGINT,         
    camera_id STRING,    
    orientation STRING,  
    road_id BIGINT,      
    `time` BIGINT,         
    speed DOUBLE, 
    ts_ltz AS TO_TIMESTAMP_LTZ(`time`, 3),
    WATERMARK FOR ts_ltz AS ts_ltz - INTERVAL '5' SECOND -- 指定时间字段和水位线
) WITH (
  'connector' = 'kafka',
  'topic' = 'car_test',
  'properties.bootstrap.servers' = 'master:9092,node1:9092,node2:9092',
  'properties.group.id' = 'carGroup',
  'scan.startup.mode' = 'earliest-offset',
  'format' = 'json'
)
-- 测试一下是否存在数据
select * from  cars_kafka_event_time

--  统计每个城市中每个区县的车流量,每隔5分钟统计一次,统计最近15分钟的数据,每个城市中取车流量最大的前2个区县
select * 
from (
select     
	county_code
    ,city_code
    ,window_start
    , c 
    ,row_number() over(partition by window_start order by c desc) as r
    from 
(
with temp as (
select * from cars_kafka_event_time  /*+ OPTIONS('scan.startup.mode'='latest-offset') */
)
SELECT 
    county_code
    ,city_code
    ,window_start
    ,count(1) as c 
    FROM 
TABLE(
    HOP(TABLE temp, DESCRIPTOR(ts_ltz), INTERVAL '5' SECOND, INTERVAL '15' SECOND))
group by county_code,city_code,window_start
) as b ) as h
where r <= 2;


-- 创建mysql的sink表
CREATE TABLE clazz_num_mysql (
  country_city_r_count STRING,
  window_start STRING,
  PRIMARY KEY (country_city_r_count) NOT ENFORCED -- 按照主键更新数据
) WITH (
   'connector' = 'jdbc',
   'url' = 'jdbc:mysql://master:3306/bigdata17?useUnicode=true&characterEncoding=UTF-8',
   'table-name' = 'city_top_2', -- 需要手动到数据库中创建表
   'username' = 'root',
   'password' = '123456'
);

-- 发送到mysql中
insert into clazz_num_mysql
select concat_ws('_',county_code,city_code,r,c) country_city_r_count ,window_start
from (
select     
	cast(county_code as STRING) county_code
    ,cast(city_code as STRING) city_code 
    ,cast(window_start as STRING) window_start
    ,cast(c as STRING) c 
    ,cast(row_number() over(partition by window_start order by c desc) as STRING) as r
    from 
(
with temp as (
select * from cars_kafka_event_time 
)
SELECT 
    county_code
    ,city_code
    ,window_start
    ,count(1) as c 
    FROM 
TABLE(
    HOP(TABLE temp, DESCRIPTOR(ts_ltz), INTERVAL '5' SECOND, INTERVAL '15' SECOND))
group by county_code,city_code,window_start
) as b ) as h
where r <= 2;

-- mysql 中的查询方法如下(笨方法)
select SUBSTRING_INDEX(country_city_r_count,'_',1) as country ,SUBSTRING_INDEX(SUBSTRING_INDEX(country_city_r_count,'_',2),'_',1)as city,SUBSTRING_INDEX(SUBSTRING_INDEX(country_city_r_count,'_',3) ,'_',-1) as topn ,   SUBSTRING_INDEX(country_city_r_count,'_',-1) as count_car ,window_start from city_top_2

标签:Flink,word,hint,--,SQl,9092,window,time,TABLE
来源: https://www.cnblogs.com/atao-BigData/p/16538409.html