Hive SQL 分类

时间:2021-09-22 20:33:19

题目:

请使用Hive SQL实现下面的题目。

下面是一张表名为user_buy_log的表,有三个字段,user(用户),grp(分组编号),time(购物时间)。

需要将用户按照grp分组,对time进行升序排序,

如果用户间购物时间间隔小于5分钟,则认为是一个小团体,标号为1;

如果时间间隔大于5分,标号开始累加1。

user            

grp

time

num15

B

2019-01-06 13:44:20.0

num17

B

2019-01-06 13:47:24.0

num10

A

2019-01-09 15:45:50.0

num18

B

2019-01-06 13:47:49.0

num16

B

2019-01-06 13:46:40.0

num3

A

2019-01-09 11:21:12.0

num4

A

2019-01-09 11:24:42.0

num1

A

2019-01-09 09:16:08.0

num12

B

2019-01-06 13:43:32.0

num13

B

2019-01-06 13:43:44.0

num2

A

2019-01-09 09:17:11.0

num7

A

2019-01-09 15:42:28.0

num11

A

2019-01-09 15:46:05.0

num5

A

2019-01-09 11:24:53.0

num9

A

2019-01-09 15:45:32.0

num8

A

2019-01-09 15:43:02.0

num6

A

2019-01-09 11:25:04.0

num14

B

2019-01-06 13:44:06.0

最终输出结果表名:user_buy_log_res,结果如下:

    Hive SQL 分类

结果解析:

由于num1,num2时间间隔小于5分钟,而且他们是组A的最开始的分组,因此组号(res_grp)为1。

由于num3与num2的时间间隔超过5分钟,因此num3的组号(res_grp)开始累加,因此(res_grp)为2。

Num7跟num6的间隔超过5分钟,num7组号(res_grp)开始再次累加,因此(res_grp)为3。

num12是属于新的分组B,因此其(res_grp)重新从1开始编号,因为后续用户的购物时间间隔都小于5分钟,因此编号没有再累加。

解决办法:

set hive.support.sql11.reserved.keywords=false;

create database tab

use tab

create table user_buy_log (user string, grp string,time string)
ROW FORMAT DELIMITED
FIELDS TERMINATED BY '\t'
STORED AS TEXTFILE;

load data local inpath '/home/hadoop/Desktop/user_buy_log.txt' into table user_buy_log;

Hive SQL 分类

CREATE TABLE user_buy_log_1 AS
SELECT user,grp,time,
CAST(( UNIX_TIMESTAMP(time)-UNIX_TIMESTAMP(lag(time) over(PARTITION BY grp ORDER BY time ASC)))/60 AS INT) period,
row_number() over (PARTITION BY grp ORDER BY time ASC) AS row_num
FROM user_buy_log;

SELECT * FROM user_buy_log_1;

Hive SQL 分类

CREATE TABLE user_buy_log_2 AS
SELECT user,grp,time, period , row_num,CASE
WHEN period > 5 THEN 2
WHEN period is null THEN 1
ELSE NULL
END
AS res_grp
FROM user_buy_log_1;

SELECT * FROM user_buy_log_2;

Hive SQL 分类

CREATE TABLE user_buy_log_3 AS
SELECT user,grp,time,row_number() over (PARTITION BY grp ORDER BY time ASC) AS row_num
FROM user_buy_log_2
WHERE res_grp is not null;

SELECT * FROM user_buy_log_3;

Hive SQL 分类

CREATE TABLE user_buy_log_4 AS
SELECT t2.user,t2.grp,t2.time,t2.row_num,t3.row_num AS res_grp
FROM user_buy_log_2 t2
LEFT JOIN user_buy_log_3 t3
ON t2.user = t3.user;

SELECT * FROM user_buy_log_4;

Hive SQL 分类

CREATE TABLE user_buy_log_res AS
SELECT user,grp,time,
MAX(res_grp) over(PARTITION BY grp ORDER BY time ASC) AS res_grp
FROM user_buy_log_4;

SELECT * FROM user_buy_log_res;

Hive SQL 分类

所有代码:

set hive.support.sql11.reserved.keywords=false;

create database tab

use tab

create table user_buy_log (user string, grp string,time string)
ROW FORMAT DELIMITED
FIELDS TERMINATED BY '\t'
STORED AS TEXTFILE; load data local inpath '/home/hadoop/Desktop/user_buy_log.txt' into table user_buy_log; CREATE TABLE user_buy_log_1 AS
SELECT user,grp,time,
CAST(( UNIX_TIMESTAMP(time)-UNIX_TIMESTAMP(lag(time) over(PARTITION BY grp ORDER BY time ASC)))/60 AS INT) period,
row_number() over (PARTITION BY grp ORDER BY time ASC) AS row_num
FROM user_buy_log; SELECT * FROM user_buy_log_1; CREATE TABLE user_buy_log_2 AS
SELECT user,grp,time, period , row_num,CASE
WHEN period > 5 THEN 2
WHEN period is null THEN 1
ELSE NULL
END
AS res_grp
FROM user_buy_log_1; SELECT * FROM user_buy_log_2; CREATE TABLE user_buy_log_3 AS
SELECT user,grp,time,row_number() over (PARTITION BY grp ORDER BY time ASC) AS row_num
FROM user_buy_log_2
WHERE res_grp is not null; SELECT * FROM user_buy_log_3; CREATE TABLE user_buy_log_4 AS
SELECT t2.user,t2.grp,t2.time,t2.row_num,t3.row_num AS res_grp
FROM user_buy_log_2 t2
LEFT JOIN user_buy_log_3 t3
ON t2.user = t3.user; SELECT * FROM user_buy_log_4; CREATE TABLE user_buy_log_res AS
SELECT user,grp,time,
MAX(res_grp) over(PARTITION BY grp ORDER BY time ASC) AS res_grp
FROM user_buy_log_4; SELECT * FROM user_buy_log_res;
user_buy_log.txt
num15    B    2019-01-06 13:44:20.0
num17 B 2019-01-06 13:47:24.0
num10 A 2019-01-09 15:45:50.0
num18 B 2019-01-06 13:47:49.0
num16 B 2019-01-06 13:46:40.0
num3 A 2019-01-09 11:21:12.0
num4 A 2019-01-09 11:24:42.0
num1 A 2019-01-09 09:16:08.0
num12 B 2019-01-06 13:43:32.0
num13 B 2019-01-06 13:43:44.0
num2 A 2019-01-09 09:17:11.0
num7 A 2019-01-09 15:42:28.0
num11 A 2019-01-09 15:46:05.0
num5 A 2019-01-09 11:24:53.0
num9 A 2019-01-09 15:45:32.0
num8 A 2019-01-09 15:43:02.0
num6 A 2019-01-09 11:25:04.0
num14 B 2019-01-06 13:44:06.0