Hive中的集合数据类型

Hive系列文章

  1. Hive表的基本操作
  2. Hive中的集合数据类型
  3. Hive动态分区详解
  4. hive中orc格式表的数据导入
  5. Java通过jdbc连接hive
  6. 通过HiveServer2访问Hive
  7. SpringBoot连接Hive实现自助取数
  8. hive关联hbase表
  9. Hive udf 使用方法
  10. Hive基于UDF进行文本分词
  11. Hive窗口函数row number的用法
  12. 数据仓库之拉链表

除了使用础的数据类型string等,Hive中的列支持使用struct, map, array集合数据类型。

1. Array的使用

创建数据库表,以array作为数据类型

create table  person(name string,work_locations array<string>)
ROW FORMAT DELIMITED
FIELDS TERMINATED BY '\t'
COLLECTION ITEMS TERMINATED BY ',';
SQL

数据

biansutao beijing,shanghai,tianjin,hangzhou
linan changchu,chengdu,wuhan

入库数据

LOAD DATA LOCAL INPATH '/home/hadoop/person.txt' OVERWRITE INTO TABLE person;
SQL

查询

hive> select * from person;
biansutao       ["beijing","shanghai","tianjin","hangzhou"]
linan   ["changchu","chengdu","wuhan"]
Time taken: 0.355 seconds
hive> select name from person;
linan
biansutao
Time taken: 12.397 seconds
hive> select work_locations[0] from person;
changchu
beijing
Time taken: 13.214 seconds
hive> select work_locations from person;   
["changchu","chengdu","wuhan"]
["beijing","shanghai","tianjin","hangzhou"]
Time taken: 13.755 seconds
hive> select work_locations[3] from person;
NULL
hangzhou
Time taken: 12.722 seconds
hive> select work_locations[4] from person;
NULL
NULL
Time taken: 15.958 seconds

2. Map 的使用

创建数据库表

create table score(name string, score map<string,int>)
ROW FORMAT DELIMITED
FIELDS TERMINATED BY '\t'
COLLECTION ITEMS TERMINATED BY ','
MAP KEYS TERMINATED BY ':';
SQL

要入库的数据

biansutao '数学':80,'语文':89,'英语':95
jobs '语文':60,'数学':80,'英语':99

入库数据

LOAD DATA LOCAL INPATH '/home/hadoop/score.txt' OVERWRITE INTO TABLE score;
SQL

查询

hive> select * from score;
biansutao       {"数学":80,"语文":89,"英语":95}
jobs    {"语文":60,"数学":80,"英语":99}
Time taken: 0.665 seconds
hive> select name from score;
jobs
biansutao
Time taken: 19.778 seconds
hive> select t.score from score t;
{"语文":60,"数学":80,"英语":99}
{"数学":80,"语文":89,"英语":95}
Time taken: 19.353 seconds
hive> select t.score['语文'] from score t;
60
89
Time taken: 13.054 seconds
hive> select t.score['英语'] from score t;
99
95
Time taken: 13.769 seconds

修改map字段的分隔符

Storage Desc Params:         
    colelction.delim        ##                  
    field.delim             \t                  
    mapkey.delim            =                   
    serialization.format    \t                  

可以通过desc formatted tableName查看表的属性。
hive-2.1.1中,可以看出colelction.delim,这里是colelction而不是collection,hive里面这个单词写错了,所以还是要按照错误的来。

alter table t8 set serdepropertyes('colelction.delim'=',');
SQL

3. Struct 的使用

创建数据表

CREATE TABLE test(id int,course struct<course:string,score:int>)
ROW FORMAT DELIMITED
FIELDS TERMINATED BY '\t'
COLLECTION ITEMS TERMINATED BY ',';
SQL

数据

1 english,80
2 math,89
3 chinese,95

入库

LOAD DATA LOCAL INPATH '/home/hadoop/test.txt' OVERWRITE INTO TABLE test;
SQL

查询

hive> select * from test;
OK
1       {"course":"english","score":80}
2       {"course":"math","score":89}
3       {"course":"chinese","score":95}
Time taken: 0.275 seconds
hive> select course from test;
{"course":"english","score":80}
{"course":"math","score":89}
{"course":"chinese","score":95}
Time taken: 44.968 seconds
select t.course.course from test t; 
english
math
chinese
Time taken: 15.827 seconds
hive> select t.course.score from test t;
80
89
95
Time taken: 13.235 seconds

4. 不支持组合的复杂数据类型

我们有时候可能想建一个复杂的数据集合类型,比如下面的a字段,本身是一个Map,它的key是string类型的,value是Array集合类型的。

建表

create table test1(id int,a MAP<STRING,ARRAY<STRING>>)
row format delimited fields terminated by '\t' 
collection items terminated by ','
MAP KEYS TERMINATED BY ':';
SQL

导入数据

1 english:80,90,70
2 math:89,78,86
3 chinese:99,100,82

LOAD DATA LOCAL INPATH '/home/hadoop/test1.txt' OVERWRITE INTO TABLE test1;

这里查询出数据:

hive> select * from test1;
OK
1   {"english":["80"],"90":null,"70":null}
2   {"math":["89"],"78":null,"86":null}
3   {"chinese":["99"],"100":null,"82":null}
SQL

可以看到,已经出问题了,我们意图是想"english":["80", "90", "70"],实际上把90和70也当作Map的key了,value值都是空的。分析一下我们的建表语句,collection items terminated by ','制定了集合类型(map, struct, array)数据元素之间分隔符是", ",实际上map也是属于集合的,那么也会按照逗号分出3个key-value对;由于MAP KEYS TERMINATED BY ':'定义了map中key-value的分隔符是":",第一个“english”可以准确识别,后面的直接把value置为"null"了。




作者:柯广的网络日志

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