数据dept表的准备:
--创建dept表
CREATE TABLE dept(
deptno int,
dname string,
loc string)
ROW FORMAT DELIMITED FIELDS TERMINATED BY ',' STORED AS textfile;
数据文件准备:
vi detp.txt
10,ACCOUNTING,NEW YORK
20,RESEARCH,DALLAS
30,SALES,CHICAGO
40,OPERATIONS,BOSTON
数据表emp准备:
CREATE TABLE emp(
empno int,
ename string,
job string,
mgr int,
hiredate string,
sal int,
comm int,
deptno int)
ROW FORMAT DELIMITED FIELDS TERMINATED BY ',' STORED AS textfile;
表emp数据准备:
vi emp.txt
7369,SMITH,CLERK,7902,1980-12-17,800,null,20
7499,ALLEN,SALESMAN,7698,1981-02-20,1600,300,30
7521,WARD,SALESMAN,7698,1981-02-22,1250,500,30
7566,JONES,MANAGER,7839,1981-04-02,2975,null,20
7654,MARTIN,SALESMAN,7698,1981-09-28,1250,1400,30
7698,BLAKE,MANAGER,7839,1981-05-01,2850,null,30
7782,CLARK,MANAGER,7839,1981-06-09,2450,null,10
7788,SCOTT,ANALYST,7566,1987-04-19,3000,null,20
7839,KING,PRESIDENT,null,1981-11-17,5000,null,10
7844,TURNER,SALESMAN,7698,1981-09-08,1500,0,30
7876,ADAMS,CLERK,7788,1987-05-23,1100,null,20
7900,JAMES,CLERK,7698,1981-12-03,950,null,30
7902,FORD,ANALYST,7566,1981-12-02,3000,null,20
7934,MILLER,CLERK,7782,1982-01-23,1300,null,10
把数据文件装到表里
load data local inpath '/home/hadoop/tmp/dept.txt' overwrite into table dept;
load data local inpath '/home/hadoop/tmp/emp.txt' overwrite into table emp;
查询语句
select d.dname,d.loc,e.empno,e.ename,e.hiredate from dept d join emp e on e.deptno = d.deptno ;
* 可以看到走的是map reduce 程序
二、Hive分区
hive分区的目的
* hive为了避免全表扫描,从而引进分区技术来将数据进行划分。减少不必要数据的扫描,从而提高效率。
hive分区和mysql分区的区别
* mysql分区字段用的是表内字段;而hive分区字段采用表外字段。
hive的分区技术
* hive的分区字段是一个伪字段,但是可以用来进行操作。
* 分区字段不进行区分大小写
* 分区可以是表分区或者分区的分区,可以有多个分区
hive分区根据
* 看业务,只要是某个标识能把数据区分开来。比如:年、月、日、地域、性别等
分区关键字
* partitioned by(字段)
分区本质
* 在表的目录或者是分区的目录下在创建目录,分区的目录名为指定字段=值
创建分区表:
create table if not exists u1( id int, name string, age int ) partitioned by(dt string) row format delimited fields terminated by ' '
stored as textfile;
数据准备:
[hadoop@master tmp]$ more u1.txt
1 xm1 16
2 xm2 18
3 xm3 22
加载数据:
load data local inpath '/home/hadoop/tmp/u1.txt' into table u1 partition(dt="2018-10-14");
查询:
hive> select * from u1;
OK
1 xm1 16 2018-10-14
2 xm2 18 2018-10-14
3 xm3 22 2018-10-14
Time taken: 5.919 seconds, Fetched: 3 row(s)
查询分区:
hive> select * from u1 where dt='2018-10-15';
OK
1 xm1 16 2018-10-15
2 xm2 18 2018-10-15
3 xm3 22 2018-10-15
Time taken: 0.413 seconds, Fetched: 3 row(s)
Hive的二级分区
创建表u2
create table if not exists u2(id int,name string,age int)
partitioned by(month int,day int) row format delimited fields terminated by ' ' stored as textfile;
导入数据:
load data local inpath '/home/hadoop/tmp/u2.txt' into table u2 partition(month=9,day=14);
数据查询:
hive> select * from u2;
OK
1 xm1 16 9 14
2 xm2 18 9 14
Time taken: 0.303 seconds, Fetched: 2 row(s)
分区修改:
查看分区:
hive> show partitions u1;
OK
dt=2018-10-14
dt=2018-10-15
增加分区:
> alter table u1 add partition(dt="2018-10-16");
OK
查看新增加的分区:
hive> show partitions u1;
OK
dt=2018-10-14
dt=2018-10-15
dt=2018-10-16
Time taken: 0.171 seconds, Fetched: 3 row(s)
删除分区:
hive> alter table u1 drop partition(dt="2018-10-15");
Dropped the partition dt=2018-10-15
OK
Time taken: 0.576 seconds
hive> select * from u1 ;
OK
1 xm1 16 2018-10-14
2 xm2 18 2018-10-14
3 xm3 22 2018-10-14
Time taken: 0.321 seconds, Fetched: 3 row(s)
三、hive动态分区
hive配置文件hive-site.xml 文件里有配置参数:
hive.exec.dynamic.partition=true; 是否允许动态分区
hive.exec.dynamic.partition.mode=strict/nostrict; 动态区模式为严格模式
strict: 严格模式,最少需要一个静态分区列(需指定固定值)
nostrict:非严格模式,允许所有的分区字段都为动态。
hive.exec.max.dynamic.partitions=1000; 允许最大的动态分区
hive.exec.max.dynamic.partitions.pernode=100; 单个节点允许最大分区
创建动态分区表
动态分区表的创建语句与静态分区表相同,不同之处在与导入数据,静态分区表可以从本地文件导入,但是动态分区表需要使用from…insert into语句导入。
create table if not exists u3(id int,name string,age int) partitioned by(month int,day int)
row format delimited fields terminated by ' ' stored as textfile;
导入数据,将u2表中的数据加载到u3中:
from u2
insert into table u3 partition(month,day)
select id,name,age,month,day;
FAILED: SemanticException [Error 10096]: Dynamic partition strict mode requires at least one static partition column. To turn this off set hive.exec.dynamic.partition.mode=nonstrict
解决方法:
要动态插入分区必需设置hive.exec.dynamic.partition.mode=nonstrict
hive> set hive.exec.dynamic.partition.mode;
hive.exec.dynamic.partition.mode=strict
hive> set hive.exec.dynamic.partition.mode=nonstrict;
然后再次插入就可以了
查询:
hive> select * from u3;
OK
1 xm1 16 9 14
2 xm2 18 9 14
Time taken: 0.451 seconds, Fetched: 2 row(s)
hive分桶
分桶目的作用
* 更加细致地划分数据;对数据进行抽样查询,较为高效;可以使查询效率提高
* 记住,分桶比分区,更高的查询效率。
分桶原理关键字
* 分桶字段是表内字段,默认是对分桶的字段进行hash值,然后再模于总的桶数,得到的值则是分区桶数。每个桶中都有数据,但每个桶中的数据条数不一定相等。
bucket
clustered by(id) into 4 buckets
分桶的本质
* 在表目录或者分区目录中创建文件。
分桶案例
* 分四个桶
create table if not exists u4(id int, name string, age int) partitioned by(month int,day int)
clustered by(id) into 4 buckets row format delimited fields terminated by ' ' stored as textfile;
对分桶的数据不能使用load的方式加载数据,使用load方式加载不会报错,但是没有分桶的效果。
为分桶表添加数据,需要设置set hive.enforce.bucketing=true;
首先将数据添加到u2表中
1 xm1 16
2 xm2 18
3 xm3 22
4 xh4 20
5 xh5 22
6 xh6 23
7 xh7 25
8 xh8 28
9 xh9 32
load data local inpath '/home/hadoop/tmp/u2.txt' into table u2 partition(month=9,day=14);
加载到桶表中:
from u2 insert into table u4 partition(month=9,day=14) select id,name,age where month = 9 and day = 14;
2019-03-31 15:43:26,755 Stage-1 map = 0%, reduce = 0%
2019-03-31 15:43:34,241 Stage-1 map = 100%, reduce = 0%, Cumulative CPU 0.85 sec
2019-03-31 15:43:41,681 Stage-1 map = 100%, reduce = 25%, Cumulative CPU 1.95 sec
2019-03-31 15:43:45,855 Stage-1 map = 100%, reduce = 50%, Cumulative CPU 3.21 sec
2019-03-31 15:43:47,927 Stage-1 map = 100%, reduce = 75%, Cumulative CPU 4.35 sec
2019-03-31 15:43:48,959 Stage-1 map = 100%, reduce = 100%, Cumulative CPU 5.35 sec
MapReduce Total cumulative CPU time: 5 seconds 350 msec
Ended Job = job_1554061731326_0001
Loading data to table db_hive.u4 partition (month=9, day=14)
MapReduce Jobs Launched:
Stage-Stage-1: Map: 1 Reduce: 4 Cumulative CPU: 5.35 sec HDFS Read: 20301 HDFS Write: 405 SUCCESS
Total MapReduce CPU Time Spent: 5 seconds 350 msec
加载日志可以看到有:Map: 1 Reduce: 4
对分桶进行查询:tablesample(bucket x out of y on id)
* x:表示从哪个桶开始查询
* y:表示桶的总数,一般为桶的总数的倍数或者因子。
* x不能大于y。
hive> select * from u4;
OK
8 xh8 28 9 14
4 xh4 20 9 14
9 xh9 32 9 14
5 xh5 22 9 14
1 xm1 16 9 14
6 xh6 23 9 14
2 xm2 18 9 14
7 xh7 25 9 14
3 xm3 22 9 14
Time taken: 0.148 seconds, Fetched: 9 row(s)
> select * from u4 tablesample(bucket 1 out of 4 on id);
OK
8 xh8 28 9 14
4 xh4 20 9 14
Time taken: 0.149 seconds, Fetched: 2 row(s)
hive> select * from u4 tablesample(bucket 2 out of 4 on id);
OK
9 xh9 32 9 14
5 xh5 22 9 14
1 xm1 16 9 14
Time taken: 0.069 seconds, Fetched: 3 row(s)
hive> select * from u4 tablesample(bucket 1 out of 2 on id);
OK
8 xh8 28 9 14
4 xh4 20 9 14
6 xh6 23 9 14
2 xm2 18 9 14
Time taken: 0.089 seconds, Fetched: 4 row(s)
hive> select * from u4 tablesample(bucket 1 out of 8 on id) where age > 22;
OK
8 xh8 28 9 14
Time taken: 0.075 seconds, Fetched: 1 row(s)
随机查询:
select * from u4 order by rand() limit 3;
OK
1 xm1 16 9 14
3 xm3 22 9 14
6 xh6 23 9 14
Time taken: 20.724 seconds, Fetched: 3 row(s) --走map reduce任务
> select * from u4 tablesample(3 rows);
OK
8 xh8 28 9 14
4 xh4 20 9 14
9 xh9 32 9 14
Time taken: 0.073 seconds, Fetched: 3 row(s)
hive> select * from u4 tablesample(30 percent);
OK
8 xh8 28 9 14
4 xh4 20 9 14
9 xh9 32 9 14
Time taken: 0.058 seconds, Fetched: 3 row(s)
> select * from u4 tablesample(3G);
OK
8 xh8 28 9 14
4 xh4 20 9 14
9 xh9 32 9 14
5 xh5 22 9 14
1 xm1 16 9 14
6 xh6 23 9 14
2 xm2 18 9 14
7 xh7 25 9 14
3 xm3 22 9 14
Time taken: 0.069 seconds, Fetched: 9 row(s)
hive> select * from u4 tablesample(3K);
OK
8 xh8 28 9 14
4 xh4 20 9 14
9 xh9 32 9 14
5 xh5 22 9 14
1 xm1 16 9 14
6 xh6 23 9 14
2 xm2 18 9 14
7 xh7 25 9 14
3 xm3 22 9 14
Time taken: 0.058 seconds, Fetched: 9 row(s)
* 分区与分桶的对比
* 分区使用表外的字段,分桶使用表内字段
* 分区可以使用load加载数据,而分桶就必须要使用insert into方式加载数据
* 分区常用;分桶少用
hive数据导入
* load从本地加载
* load从hdfs中加载
* insert into方式加载
* location指定
* like指定,克隆
* ctas语句指定(create table as)
* 手动将数据copy到表目录
hive数据导出
* insert into方式导出
* insert overwrite local directory:导出到本地某个目录
* insert overwrite directory:导出到hdfs某个目录
导出到文件
hive -S -e “use gp1801;select * from u2” > /home/out/02/result