博客 Hive SQL综合案例(上)

Hive SQL综合案例(上)

   数栈君   发表于 2024-12-23 11:08  311  0

一 Hive SQL练习之影评案例
案例说明
现有如此三份数据:
1、users.dat 数据格式为: 2::M::56::16::70072,

共有6040条数据
对应字段为:UserID BigInt, Gender String, Age Int, Occupation String, Zipcode String
对应字段中文解释:用户id,性别,年龄,职业,邮政编码

2、movies.dat 数据格式为: 2::Jumanji (1995)::Adventure|Children's|Fantasy,

共有3883条数据
对应字段为:MovieID BigInt, Title String, Genres String
对应字段中文解释:电影ID,电影名字,电影类型

3、ratings.dat 数据格式为: 1::1193::5::978300760,

共有1000209条数据
对应字段为:UserID BigInt, MovieID BigInt, Rating Double, Timestamped String
对应字段中文解释:用户ID,电影ID,评分,评分时间戳

题目要求

  数据要求:
    (1)写shell脚本清洗数据。(hive不支持解析多字节的分隔符,也就是说hive只能解析':', 不支持解析'::',所以用普通方式建表来使用是行不通的,要求对数据做一次简单清洗)
    (2)使用Hive能解析的方式进行

  Hive要求:
    (1)正确建表,导入数据(三张表,三份数据),并验证是否正确

    (2)求被评分次数最多的10部电影,并给出评分次数(电影名,评分次数)

    (3)分别求男性,女性当中评分最高的10部电影(性别,电影名,影评分)

    (4)求movieid = 2116这部电影各年龄段(因为年龄就只有7个,就按这个7个分就好了)的平均影评(年龄段,影评分)

    (5)求最喜欢看电影(影评次数最多)的那位女性评最高分的10部电影的平均影评分(观影者,电影名,影评分)

    (6)求好片(评分>=4.0)最多的那个年份的最好看的10部电影

    (7)求1997年上映的电影中,评分最高的10部Comedy类电影

    (8)该影评库中各种类型电影中评价最高的5部电影(类型,电影名,平均影评分)

    (9)各年评分最高的电影类型(年份,类型,影评分)

    (10)每个地区最高评分的电影名,把结果存入HDFS(地区,电影名,影评分)

数据下载
https://files.cnblogs.com/files/qingyunzong/hive%E5%BD%B1%E8%AF%84%E6%A1%88%E4%BE%8B.zip

解析
之前已经使用MapReduce程序将3张表格进行合并,所以只需要将合并之后的表格导入对应的表中进行查询即可。

1、正确建表,导入数据(三张表,三份数据),并验证是否正确

(1)分析需求

需要创建一个数据库movie,在movie数据库中创建3张表,t_user,t_movie,t_rating

t_user:userid bigint,sex string,age int,occupation string,zipcode string
t_movie:movieid bigint,moviename string,movietype string
t_rating:userid bigint,movieid bigint,rate double,times string

原始数据是以::进行切分的,所以需要使用能解析多字节分隔符的Serde即可

使用RegexSerde

需要两个参数:
input.regex = "(.*)::(.*)::(.*)"
output.format.string = "%1$s %2$s %3$s"

(2)创建数据库

drop database if exists movie;
create database if not exists movie;
use movie;

(3)创建t_user表 

create table t_user(
userid bigint,
sex string,
age int,
occupation string,
zipcode string)
row format serde 'org.apache.hadoop.hive.serde2.RegexSerDe'
with serdeproperties('input.regex'='(.*)::(.*)::(.*)::(.*)::(.*)','output.format.string'='%1$s %2$s %3$s %4$s %5$s')
stored as textfile;

(4)创建t_movie表 

use movie;
create table t_movie(
movieid bigint,
moviename string,
movietype string)
row format serde 'org.apache.hadoop.hive.serde2.RegexSerDe'
with serdeproperties('input.regex'='(.*)::(.*)::(.*)','output.format.string'='%1$s %2$s %3$s')
stored as textfile;

(5)创建t_rating表 

use movie;
create table t_rating(
userid bigint,
movieid bigint,
rate double,
times string)
row format serde 'org.apache.hadoop.hive.serde2.RegexSerDe'
with serdeproperties('input.regex'='(.*)::(.*)::(.*)::(.*)','output.format.string'='%1$s %2$s %3$s %4$s')
stored as textfile;

(6)导入数据 

0: jdbc:hive2://hadoop3:10000> load data local inpath "/home/hadoop/movie/users.dat" into table t_user;
No rows affected (0.928 seconds)
0: jdbc:hive2://hadoop3:10000> load data local inpath "/home/hadoop/movie/movies.dat" into table t_movie;
No rows affected (0.538 seconds)
0: jdbc:hive2://hadoop3:10000> load data local inpath "/home/hadoop/movie/ratings.dat" into table t_rating;
No rows affected (0.963 seconds)
0: jdbc:hive2://hadoop3:10000>

(7)验证 

select t.* from t_user t;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/97154a2073230541a3e21119976eb765..png

select t.* from t_movie t;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/af80945d5af0f6a6b7c39c5b876b7ff3..png
http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/af80945d5af0f6a6b7c39c5b876b7ff3..png
http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/af80945d5af0f6a6b7c39c5b876b7ff3..png
http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/af80945d5af0f6a6b7c39c5b876b7ff3..png

select t.* from t_rating t;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/b8f40d6bd8673da34eb74f14e4f5afcc..png
http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/b8f40d6bd8673da34eb74f14e4f5afcc..png

2、求被评分次数最多的10部电影,并给出评分次数(电影名,评分次数)

(1)思路分析:

  1、需求字段:电影名 t_movie.moviename

         评分次数 t_rating.rate count()

  2、核心SQL:按照电影名进行分组统计,求出每部电影的评分次数并按照评分次数降序排序

(2)完整SQL:

create table answer2 as 
select a.moviename as moviename,count(a.moviename) as total
from t_movie a join t_rating b on a.movieid=b.movieid
group by a.moviename
order by total desc
limit 10;
select * from answer2;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/4e3f6a5b9ca21836b9a40ce68c9953a3..png
http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/4e3f6a5b9ca21836b9a40ce68c9953a3..png

3、分别求男性,女性当中评分最高的10部电影(性别,电影名,影评分)

(1)分析思路:

  1、需求字段:性别  t_user.sex

         电影名 t_movie.moviename

         影评分 t_rating.rate

  2、核心SQL:三表联合查询,按照性别过滤条件,电影名作为分组条件,影评分作为排序条件进行查询

(2)完整SQL:

女性当中评分最高的10部电影(性别,电影名,影评分)评论次数大于等于50次

create table answer3_F as 
select "F" as sex, c.moviename as name, avg(a.rate) as avgrate, count(c.moviename) as total
from t_rating a
join t_user b on a.userid=b.userid
join t_movie c on a.movieid=c.movieid
where b.sex="F"
group by c.moviename
having total >= 50
order by avgrate desc
limit 10;
select * from answer3_F;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/f9aa453d2cc9b8c3e1d517c1d10921b1..png

男性当中评分最高的10部电影(性别,电影名,影评分)评论次数大于等于50次

create table answer3_M as 
select "M" as sex, c.moviename as name, avg(a.rate) as avgrate, count(c.moviename) as total
from t_rating a
join t_user b on a.userid=b.userid
join t_movie c on a.movieid=c.movieid
where b.sex="M"
group by c.moviename
having total >= 50
order by avgrate desc
limit 10;
select * from answer3_M;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/befc0ba79001f02a0f6b4300049deb43..png

4、求movieid = 2116这部电影各年龄段(因为年龄就只有7个,就按这个7个分就好了)的平均影评(年龄段,影评分)

(1)分析思路:

  1、需求字段:年龄段  t_user.age

         影评分 t_rating.rate

  2、核心SQL:t_user和t_rating表进行联合查询,用movieid=2116作为过滤条件,用年龄段作为分组条件

(2)完整SQL:

create table answer4 as 
select a.age as age, avg(b.rate) as avgrate
from t_user a join t_rating b on a.userid=b.userid
where b.movieid=2116
group by a.age;
select * from answer4;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/e271e7900509b01779a4480aa801688c..png

5、求最喜欢看电影(影评次数最多)的那位女性评最高分的10部电影的平均影评分(观影者,电影名,影评分)

(1)分析思路:

  1、需求字段:观影者 t_rating.userid

         电影名 t_movie.moviename

         影评分 t_rating.rate

  2、核心SQL:

    A.  需要先求出最喜欢看电影的那位女性

          需要查询的字段:性别:t_user.sex

                  观影次数:count(t_rating.userid)

    B.  根据A中求出的女性userid作为where过滤条件,以看过的电影的影评分rate作为排序条件进行排序,求出评分最高的10部电影

          需要查询的字段:电影的ID:t_rating.movieid

    C.  求出B中10部电影的平均影评分

          需要查询的字段:电影的ID:answer5_B.movieid

                  影评分:t_rating.rate

(2)完整SQL:

A.  需要先求出最喜欢看电影的那位女性

select a.userid, count(a.userid) as total 
from t_rating a join t_user b on a.userid = b.userid
where b.sex="F"
group by a.userid
order by total desc
limit 1;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/3c51dc9bd17ffd133c62ec6c3b7ad26f..png

B.  根据A中求出的女性userid作为where过滤条件,以看过的电影的影评分rate作为排序条件进行排序,求出评分最高的10部电影

create table answer5_B as 
select a.movieid as movieid, a.rate as rate
from t_rating a
where a.userid=1150
order by rate desc
limit 10;
select * from answer5_B;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/965e791d7e0b41cadbe9ef5987b0f163..png

C.  求出B中10部电影的平均影评分

create table answer5_C as 
select b.movieid as movieid, c.moviename as moviename, avg(b.rate) as avgrate
from answer5_B a
join t_rating b on a.movieid=b.movieid
join t_movie c on b.movieid=c.movieid
group by b.movieid,c.moviename;
select * from answer5_C;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/3e1e761d512ac5dd904f921d81336543..png

6、求好片(评分>=4.0)最多的那个年份的最好看的10部电影

(1)分析思路:

  1、需求字段:电影id t_rating.movieid

         电影名 t_movie.moviename(包含年份)

         影评分 t_rating.rate

         上映年份 xxx.years

  2、核心SQL:

    A.  需要将t_rating和t_movie表进行联合查询,将电影名当中的上映年份截取出来,保存到临时表answer6_A中

          需要查询的字段:电影id t_rating.movieid

                  电影名 t_movie.moviename(包含年份)

                  影评分 t_rating.rate

    B.  从answer6_A按照年份进行分组条件,按照评分>=4.0作为where过滤条件,按照count(years)作为排序条件进行查询

          需要查询的字段:电影的ID:answer6_A.years

    C.  从answer6_A按照years=1998作为where过滤条件,按照评分作为排序条件进行查询

          需要查询的字段:电影的ID:answer6_A.moviename

                  影评分:answer6_A.avgrate

(2)完整SQL:

A.  需要将t_rating和t_movie表进行联合查询,将电影名当中的上映年份截取出来

create table answer6_A as
select a.movieid as movieid, a.moviename as moviename, substr(a.moviename,-5,4) as years, avg(b.rate) as avgrate
from t_movie a join t_rating b on a.movieid=b.movieid
group by a.movieid, a.moviename;
select * from answer6_A;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/d7a48206aecfb79059840b2292226ba1..png

B.  从answer6_A按照年份进行分组条件,按照评分>=4.0作为where过滤条件,按照count(years)作为排序条件进行查询

select years, count(years) as total 
from answer6_A a
where avgrate >= 4.0
group by years
order by total desc
limit 1;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/d0bcf36a0310b4951e58e4bb6d298205..png

C.  从answer6_A按照years=1998作为where过滤条件,按照评分作为排序条件进行查询

create table answer6_C as
select a.moviename as name, a.avgrate as rate
from answer6_A a
where a.years=1998
order by rate desc
limit 10;
select * from answer6_C;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/a6c857f65f75ed4c98c96ec877315e73..png

7、求1997年上映的电影中,评分最高的10部Comedy类电影

(1)分析思路:

  1、需求字段:电影id t_rating.movieid

         电影名 t_movie.moviename(包含年份)

         影评分 t_rating.rate

         上映年份 xxx.years(最终查询结果可不显示)

         电影类型 xxx.type(最终查询结果可不显示)

  2、核心SQL:

    A.  需要电影类型,所有可以将第六步中求出answer6_A表和t_movie表进行联合查询

          需要查询的字段:电影id answer6_A.movieid

                  电影名 answer6_A.moviename

                  影评分 answer6_A.rate

                  电影类型 t_movie.movietype 

                  上映年份 answer6_A.years

    B.  从answer7_A按照电影类型中是否包含Comedy和按上映年份作为where过滤条件,按照评分作为排序条件进行查询,将结果保存到answer7_B中

          需要查询的字段:电影的ID:answer7_A.id

                  电影的名称:answer7_A.name

                  电影的评分:answer7_A.rate

(2)完整SQL:

A.  需要电影类型,所有可以将第六步中求出answer6_A表和t_movie表进行联合查询

create table answer7_A as 
select b.movieid as id, b.moviename as name, b.years as years, b.avgrate as rate, a.movietype as type
from t_movie a join answer6_A b on a.movieid=b.movieid;
select t.* from answer7_A t;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/6aa84ea3b85a43c06bc59f62f0bdbf78..png

B.  从answer7_A按照电影类型中是否包含Comedy和按照评分>=4.0作为where过滤条件,按照评分作为排序条件进行查询,将结果保存到answer7_B中

create table answer7_B as 
select t.id as id, t.name as name, t.rate as rate
from answer7_A t
where t.years=1997 and instr(lcase(t.type),'comedy') >0
order by rate desc
limit 10;
select * from answer7_B;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/d1d58712f63d17a193478f8f40e96177..png

8、该影评库中各种类型电影中评价最高的5部电影(类型,电影名,平均影评分)

(1)分析思路:

  1、需求字段:电影id movieid

         电影名 moviename

         影评分 rate(排序条件)

         电影类型 type(分组条件)

  2、核心SQL:

    A.  需要电影类型,所有需要将answer7_A中的type字段进行裂变,将结果保存到answer8_A中

          需要查询的字段:电影id answer7_A.id

                  电影名 answer7_A.name(包含年份)

                  上映年份 answer7_A.years

                  影评分 answer7_A.rate

                  电影类型 answer7_A.movietype 

    B.  求TopN,按照type分组,需要添加一列来记录每组的顺序,将结果保存到answer8_B中

row_number() :用来生成 num字段的值

distribute by movietype :按照type进行分组

sort by avgrate desc :每组数据按照rate排降序

num:新列, 值就是每一条记录在每一组中按照排序规则计算出来的排序值

    C.  从answer8_B中取出num列序号<=5的

(2)完整SQL:

A.  需要电影类型,所有需要将answer7_A中的type字段进行裂变,将结果保存到answer8_A中

create table answer8_A as 
select a.id as id, a.name as name, a.years as years, a.rate as rate, tv.type as type
from answer7_A a
lateral view explode(split(a.type,"\\|")) tv as type;
select * from answer8_A;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/31ac7c2a8199b2c79b4f9ac34579efab..png

B.  求TopN,按照type分组,需要添加一列来记录每组的顺序,将结果保存到answer8_B中

create table answer8_B as 
select id,name,years,rate,type,row_number() over(distribute by type sort by rate desc ) as num
from answer8_A;
select * from answer8_B;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/e08498a2af2c18ecca59bad92cf5d71c..png

C.  从answer8_B中取出num列序号<=5的

select a.* from answer8_B a where a.num <= 5;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/90393844f41011a1ea9cf5f0a10de39b..png

9、各年评分最高的电影类型(年份,类型,影评分)

(1)分析思路:

  1、需求字段:电影id movieid

         电影名 moviename

         影评分 rate(排序条件)

         电影类型 type(分组条件)

         上映年份 years(分组条件)

  2、核心SQL:

    A.  需要按照电影类型和上映年份进行分组,按照影评分进行排序,将结果保存到answer9_A中

          需要查询的字段:

                  上映年份 answer7_A.years

                  影评分 answer7_A.rate

                  电影类型 answer7_A.movietype 

    B.  求TopN,按照years分组,需要添加一列来记录每组的顺序,将结果保存到answer9_B中

    C.  按照num=1作为where过滤条件取出结果数据

(2)完整SQL:

A.  需要按照电影类型和上映年份进行分组,按照影评分进行排序,将结果保存到answer9_A中

create table answer9_A as 
select a.years as years, a.type as type, avg(a.rate) as rate
from answer8_A a
group by a.years,a.type
order by rate desc;
select * from answer9_A;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/d9d74fe59da2fc15b797ee7f570e3ea6..png

B.  求TopN,按照years分组,需要添加一列来记录每组的顺序,将结果保存到answer9_B中

create table answer9_B as 
select years,type,rate,row_number() over (distribute by years sort by rate) as num
from answer9_A;
select * from answer9_B;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/7c60b6931f7e87e335f4aeadb21e53bc..png

C.  按照num=1作为where过滤条件取出结果数据

select * from answer9_B where num=1;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/c94ee1965f42b76c012af8f6036d56a0..png

10、每个地区最高评分的电影名,把结果存入HDFS(地区,电影名,影评分)

(1)分析思路:

  1、需求字段:电影id t_movie.movieid

         电影名 t_movie.moviename

         影评分 t_rating.rate(排序条件)

         地区 t_user.zipcode(分组条件)

  2、核心SQL:

    A.  需要把三张表进行联合查询,取出电影id、电影名称、影评分、地区,将结果保存到answer10_A表中

          需要查询的字段:电影id t_movie.movieid

                   电影名 t_movie.moviename

                   影评分 t_rating.rate(排序条件)

                   地区 t_user.zipcode(分组条件)

    B.  求TopN,按照地区分组,按照平均排序,添加一列num用来记录地区排名,将结果保存到answer10_B表中

    C.  按照num=1作为where过滤条件取出结果数据

(2)完整SQL:

A.  需要把三张表进行联合查询,取出电影id、电影名称、影评分、地区,将结果保存到answer10_A表中

create table answer10_A as
select c.movieid, c.moviename, avg(b.rate) as avgrate, a.zipcode
from t_user a
join t_rating b on a.userid=b.userid
join t_movie c on b.movieid=c.movieid
group by a.zipcode,c.movieid, c.moviename;
select t.* from answer10_A t;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/84a984c8195d38484ea39ab69b7ee197..png

B.求TopN,按照地区分组,按照平均排序,添加一列num用来记录地区排名,将结果保存到answer10_B表中

create table answer10_B as
select movieid,moviename,avgrate,zipcode, row_number() over (distribute by zipcode sort by avgrate) as num
from answer10_A;
select t.* from answer10_B t;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/a0eabf0ba96f71dd770e2f77d41ef5bb..png

C.  按照num=1作为where过滤条件取出结果数据并保存到HDFS上

insert overwrite directory "/movie/answer10/" select t.* from answer10_B t where t.num=1;

http://dtstack-static.oss-cn-hangzhou.aliyuncs.com/2021bbs/files_user1/article/7608642641de83c7047daa129bbe8ff7..png

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