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Hive常用函数大全(二)(窗口函数、分析函数、增强group)_hive 分析函数 count

hive 分析函数 count

窗口函数与分析函数

应用场景:
(1)用于分区排序
(2)动态Group By
(3)Top N
(4)累计计算
(5)层次查询

窗口函数

FIRST_VALUE:取分组内排序后,截止到当前行,第一个值
LAST_VALUE: 取分组内排序后,截止到当前行,最后一个值
LEAD(col,n,DEFAULT) :用于统计窗口内往下第n行值。第一个参数为列名,第二个参数为往下第n行(可选,默认为1),第三个参数为默认值(当往下第n行为NULL时候,取默认值,如不指定,则为NULL)
LAG(col,n,DEFAULT) :与lead相反,用于统计窗口内往上第n行值。第一个参数为列名,第二个参数为往上第n行(可选,默认为1),第三个参数为默认值(当往上第n行为NULL时候,取默认值,如不指定,则为NULL)

OVER从句

1、使用标准的聚合函数COUNT、SUM、MIN、MAX、AVG
2、使用PARTITION BY语句,使用一个或者多个原始数据类型的列
3、使用PARTITION BYORDER BY语句,使用一个或者多个数据类型的分区或者排序列
4、使用窗口规范,窗口规范支持以下格式:

(ROWS | RANGE) BETWEEN (UNBOUNDED | [num]) PRECEDING AND ([num] PRECEDING | CURRENT ROW | (UNBOUNDED | [num]) FOLLOWING)
(ROWS | RANGE) BETWEEN CURRENT ROW AND (CURRENT ROW | (UNBOUNDED | [num]) FOLLOWING)
(ROWS | RANGE) BETWEEN [num] FOLLOWING AND (UNBOUNDED | [num]) FOLLOWING
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ORDER BY后面缺少窗口从句条件,窗口规范默认是 RANGE BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW.

ORDER BY和窗口从句都缺失, 窗口规范默认是 ROW BETWEEN UNBOUNDED PRECEDING AND UNBOUNDED FOLLOWING.

OVER从句支持以下函数, 但是并不支持和窗口一起使用它们。
Ranking函数: Rank, NTile, DenseRank, CumeDist, PercentRank.
LeadLag 函数.

分析函数

ROW_NUMBER() 从1开始,按照顺序,生成分组内记录的序列,比如,按照pv降序排列,生成分组内每天的pv名次,ROW_NUMBER()的应用场景非常多,再比如,获取分组内排序第一的记录;获取一个session中的第一条refer等。
RANK() 生成数据项在分组中的排名,排名相等会在名次中留下空位
DENSE_RANK() 生成数据项在分组中的排名,排名相等会在名次中不会留下空位
CUME_DIST 小于等于当前值的行数/分组内总行数。比如,统计小于等于当前薪水的人数,所占总人数的比例
PERCENT_RANK 分组内当前行的RANK值-1/分组内总行数-1
NTILE(n) 用于将分组数据按照顺序切分成n片,返回当前切片值,如果切片不均匀,默认增加第一个切片的分布。NTILE不支持ROWS BETWEEN,比如 NTILE(2) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND CURRENT ROW)。

Hive2.1.0及以后支持Distinct

在聚合函数(SUM, COUNT and AVG)中,支持distinct,但是在ORDER BY 或者 窗口限制不支持。

COUNT(DISTINCT a) OVER (PARTITION BY c)
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Hive 2.2.0中在使用ORDER BY和窗口限制时支持distinct

COUNT(DISTINCT a) OVER (PARTITION BY c ORDER BY d ROWS BETWEEN 1 PRECEDING AND 1 FOLLOWING)
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Hive2.1.0及以后支持在OVER从句中支持聚合函数
SELECT rank() OVER (ORDER BY sum(b))
FROM T
GROUP BY a;
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测试数据集:

## COUNT、SUM、MIN、MAX、AVG
select 
	user_id,
	user_type,
	sales,
	--默认为从起点到当前行
	sum(sales) OVER(PARTITION BY user_type ORDER BY sales asc) AS sales_1,
	--从起点到当前行,结果与sales_1不同。
	sum(sales) OVER(PARTITION BY user_type ORDER BY sales asc ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS sales_2,
	--当前行+往前3行
	sum(sales) OVER(PARTITION BY user_type ORDER BY sales asc ROWS BETWEEN 3 PRECEDING AND CURRENT ROW) AS sales_3,
	--当前行+往前3行+往后1行
	sum(sales) OVER(PARTITION BY user_type ORDER BY sales asc ROWS BETWEEN 3 PRECEDING AND 1 FOLLOWING) AS sales_4,
	--当前行+往后所有行  
	sum(sales) OVER(PARTITION BY user_type ORDER BY sales asc ROWS BETWEEN CURRENT ROW AND UNBOUNDED FOLLOWING) AS sales_5,
	--分组内所有行
	SUM(sales) OVER(PARTITION BY user_type) AS sales_6							
from 
	order_detail
order by 
	user_type,
	sales,
	user_id

+----------+------------+--------+----------+----------+----------+----------+----------+----------+--+
| user_id  | user_type  | sales  | sales_1  | sales_2  | sales_3  | sales_4  | sales_5  | sales_6  |
+----------+------------+--------+----------+----------+----------+----------+----------+----------+--+
| liiu     | new        | 1      | 2        | 2        | 2        | 4        | 22       | 23       |
| qibaqiu  | new        | 1      | 2        | 1        | 1        | 2        | 23       | 23       |
| zhangsa  | new        | 2      | 4        | 4        | 4        | 7        | 21       | 23       |
| wanger   | new        | 3      | 7        | 7        | 7        | 12       | 19       | 23       |
| lilisi   | new        | 5      | 17       | 17       | 15       | 21       | 11       | 23       |
| qishili  | new        | 5      | 17       | 12       | 11       | 16       | 16       | 23       |
| wutong   | new        | 6      | 23       | 23       | 19       | 19       | 6        | 23       |
| lisi     | old        | 1      | 1        | 1        | 1        | 3        | 6        | 6        |
| wangshi  | old        | 2      | 3        | 3        | 3        | 6        | 5        | 6        |
| liwei    | old        | 3      | 6        | 6        | 6        | 6        | 3        | 6        |
+----------+------------+--------+----------+----------+----------+----------+----------+----------+--+

注意:
结果和ORDER BY相关,默认为升序
如果不指定ROWS BETWEEN,默认为从起点到当前行;
如果不指定ORDER BY,则将分组内所有值累加;

关键是理解ROWS BETWEEN含义,也叫做WINDOW子句:
PRECEDING:往前
FOLLOWING:往后
CURRENT ROW:当前行
UNBOUNDED:无界限(起点或终点)
UNBOUNDED PRECEDING:表示从前面的起点 
UNBOUNDED FOLLOWING:表示到后面的终点
其他COUNT、AVG,MIN,MAX,和SUM用法一样。
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## first_value与last_value
select 
	user_id,
	user_type,
	ROW_NUMBER() OVER(PARTITION BY user_type ORDER BY sales) AS row_num,  
	first_value(user_id) over (partition by user_type order by sales desc) as max_sales_user,
	first_value(user_id) over (partition by user_type order by sales asc) as min_sales_user,
	last_value(user_id) over (partition by user_type order by sales desc) as curr_last_min_user,
	last_value(user_id) over (partition by user_type order by sales asc) as curr_last_max_user
from 
	order_detail;

+----------+------------+----------+-----------------+-----------------+---------------------+---------------------+--+
| user_id  | user_type  | row_num  | max_sales_user  | min_sales_user  | curr_last_min_user  | curr_last_max_user  |
+----------+------------+----------+-----------------+-----------------+---------------------+---------------------+--+
| wutong   | new        | 7        | wutong          | qibaqiu         | wutong              | wutong              |
| lilisi   | new        | 6        | wutong          | qibaqiu         | qishili             | lilisi              |
| qishili  | new        | 5        | wutong          | qibaqiu         | qishili             | lilisi              |
| wanger   | new        | 4        | wutong          | qibaqiu         | wanger              | wanger              |
| zhangsa  | new        | 3        | wutong          | qibaqiu         | zhangsa             | zhangsa             |
| liiu     | new        | 2        | wutong          | qibaqiu         | qibaqiu             | liiu                |
| qibaqiu  | new        | 1        | wutong          | qibaqiu         | qibaqiu             | liiu                |
| liwei    | old        | 3        | liwei           | lisi            | liwei               | liwei               |
| wangshi  | old        | 2        | liwei           | lisi            | wangshi             | wangshi             |
| lisi     | old        | 1        | liwei           | lisi            | lisi                | lisi                |
+----------+------------+----------+-----------------+-----------------+---------------------+---------------------+--+

## lead与lag
select 
	user_id,device_id,
	lead(device_id) over (order by sales) as default_after_one_line,
	lag(device_id) over (order by sales) as default_before_one_line,
	lead(device_id,2) over (order by sales) as after_two_line,
	lag(device_id,2,'abc') over (order by sales) as before_two_line
from 
	order_detail;

+----------+-------------+-------------------------+--------------------------+-----------------+------------------+--+
| user_id  |  device_id  | default_after_one_line  | default_before_one_line  | after_two_line  | before_two_line  |
+----------+-------------+-------------------------+--------------------------+-----------------+------------------+--+
| qibaqiu  | fds         | fdsfagwe                | NULL                     | 543gfd          | abc              |
| liiu     | fdsfagwe    | 543gfd                  | fds                      | f332            | abc              |
| lisi     | 543gfd      | f332                    | fdsfagwe                 | dfsadsa323      | fds              |
| wangshi  | f332        | dfsadsa323              | 543gfd                   | hfd             | fdsfagwe         |
| zhangsa  | dfsadsa323  | hfd                     | f332                     | 65ghf           | 543gfd           |
| liwei    | hfd         | 65ghf                   | dfsadsa323               | fds             | f332             |
| wanger   | 65ghf       | fds                     | hfd                      | dsfgg           | dfsadsa323       |
| qishili  | fds         | dsfgg                   | 65ghf                    | 543gdfsd        | hfd              |
| lilisi   | dsfgg       | 543gdfsd                | fds                      | NULL            | 65ghf            |
| wutong   | 543gdfsd    | NULL                    | dsfgg                    | NULL            | fds              |
+----------+-------------+-------------------------+--------------------------+-----------------+------------------+--+

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## RANK、ROW_NUMBER、DENSE_RANK
select 
	user_id,user_type,sales,
	RANK() over (partition by user_type order by sales desc) as r,
	ROW_NUMBER() over (partition by user_type order by sales desc) as rn,
	DENSE_RANK() over (partition by user_type order by sales desc) as dr
from
	order_detail;	


+----------+------------+--------+----+-----+-----+--+
| user_id  | user_type  | sales  | r  | rn  | dr  |
+----------+------------+--------+----+-----+-----+--+
| wutong   | new        | 6      | 1  | 1   | 1   |
| qishili  | new        | 5      | 2  | 2   | 2   |
| lilisi   | new        | 5      | 2  | 3   | 2   |
| wanger   | new        | 3      | 4  | 4   | 3   |
| zhangsa  | new        | 2      | 5  | 5   | 4   |
| qibaqiu  | new        | 1      | 6  | 6   | 5   |
| liiu     | new        | 1      | 6  | 7   | 5   |
| liwei    | old        | 3      | 1  | 1   | 1   |
| wangshi  | old        | 2      | 2  | 2   | 2   |
| lisi     | old        | 1      | 3  | 3   | 3   |
+----------+------------+--------+----+-----+-----+--+	
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## NTILE

select 
	user_type,sales,
	--分组内将数据分成2片
	NTILE(2) OVER(PARTITION BY user_type ORDER BY sales) AS nt2,
	--分组内将数据分成3片	
	NTILE(3) OVER(PARTITION BY user_type ORDER BY sales) AS nt3,
	--分组内将数据分成4片	
	NTILE(4) OVER(PARTITION BY user_type ORDER BY sales) AS nt4,
	--将所有数据分成4片
	NTILE(4) OVER(ORDER BY sales) AS all_nt4
from 
	order_detail
order by 
	user_type,
	sales


+------------+--------+------+------+------+----------+--+
| user_type  | sales  | nt2  | nt3  | nt4  | all_nt4  |
+------------+--------+------+------+------+----------+--+
| new        | 1      | 1    | 1    | 1    | 1        |
| new        | 1      | 1    | 1    | 1    | 1        |
| new        | 2      | 1    | 1    | 2    | 2        |
| new        | 3      | 1    | 2    | 2    | 3        |
| new        | 5      | 2    | 2    | 3    | 4        |
| new        | 5      | 2    | 3    | 3    | 3        |
| new        | 6      | 2    | 3    | 4    | 4        |
| old        | 1      | 1    | 1    | 1    | 1        |
| old        | 2      | 1    | 2    | 2    | 2        |
| old        | 3      | 2    | 3    | 3    | 2        |
+------------+--------+------+------+------+----------+--+


求取sale前20%的用户ID

select
	user_id
from
(
	select 
		user_id,
		NTILE(5) OVER(ORDER BY sales desc) AS nt
	from 
		order_detail
)A
where nt=1;
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## CUME_DIST、PERCENT_RANK 

select 
user_id,user_type,sales,
--没有partition,所有数据均为1组
CUME_DIST() OVER(ORDER BY sales) AS cd1,
--按照user_type进行分组
CUME_DIST() OVER(PARTITION BY user_type ORDER BY sales) AS cd2 
from 
order_detail;	

+----------+------------+--------+------+----------------------+--+
| user_id  | user_type  | sales  | cd1  |         cd2          |
+----------+------------+--------+------+----------------------+--+
| liiu     | new        | 1      | 0.3  | 0.2857142857142857   |
| qibaqiu  | new        | 1      | 0.3  | 0.2857142857142857   |
| zhangsa  | new        | 2      | 0.5  | 0.42857142857142855  |
| wanger   | new        | 3      | 0.7  | 0.5714285714285714   |
| lilisi   | new        | 5      | 0.9  | 0.8571428571428571   |
| qishili  | new        | 5      | 0.9  | 0.8571428571428571   |
| wutong   | new        | 6      | 1.0  | 1.0                  |
| lisi     | old        | 1      | 0.3  | 0.3333333333333333   |
| wangshi  | old        | 2      | 0.5  | 0.6666666666666666   |
| liwei    | old        | 3      | 0.7  | 1.0                  |
+----------+------------+--------+------+----------------------+--+


select 
user_type,sales
--分组内总行数      
SUM(1) OVER(PARTITION BY user_type) AS s, 
--RANK值  
RANK() OVER(ORDER BY sales) AS r,    
PERCENT_RANK() OVER(ORDER BY sales) AS pr,
--分组内     
PERCENT_RANK() OVER(PARTITION BY user_type ORDER BY sales) AS prg 
from 
order_detail;	

+----+-----+---------------------+---------------------+--+
| s  |  r  |         pr          |         prg         |
+----+-----+---------------------+---------------------+--+
| 7  | 1   | 0.0                 | 0.0                 |
| 7  | 1   | 0.0                 | 0.0                 |
| 7  | 4   | 0.3333333333333333  | 0.3333333333333333  |
| 7  | 6   | 0.5555555555555556  | 0.5                 |
| 7  | 8   | 0.7777777777777778  | 0.6666666666666666  |
| 7  | 8   | 0.7777777777777778  | 0.6666666666666666  |
| 7  | 10  | 1.0                 | 1.0                 |
| 3  | 1   | 0.0                 | 0.0                 |
| 3  | 4   | 0.3333333333333333  | 0.5                 |
| 3  | 6   | 0.5555555555555556  | 1.0                 |
+----+-----+---------------------+---------------------+--+
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###增强的聚合 Cube和Grouping 和Rollup
这几个分析函数通常用于OLAP中,不能累加,而且需要根据不同维度上钻和下钻的指标统计,比如,分小时、天、月的UV数。

GROUPING SETS
在一个GROUP BY查询中,根据不同的维度组合进行聚合,等价于将不同维度的GROUP BY结果集进行UNION ALL,
其中的GROUPING__ID,表示结果属于哪一个分组集合。

select
	user_type,
	sales,
	count(user_id) as pv,
	GROUPING__ID 
from 
	order_detail
group by 
	user_type,sales
GROUPING SETS(user_type,sales) 
ORDER BY 
	GROUPING__ID;

+------------+--------+-----+---------------+--+
| user_type  | sales  | pv  | grouping__id  |
+------------+--------+-----+---------------+--+
| old        | NULL   | 3   | 1             |
| new        | NULL   | 7   | 1             |
| NULL       | 6      | 1   | 2             |
| NULL       | 5      | 2   | 2             |
| NULL       | 3      | 2   | 2             |
| NULL       | 2      | 2   | 2             |
| NULL       | 1      | 3   | 2             |
+------------+--------+-----+---------------+--+

select
	user_type,
	sales,
	count(user_id) as pv,
	GROUPING__ID 
from 
	order_detail
group by 
	user_type,sales
GROUPING SETS(user_type,sales,(user_type,sales)) 
ORDER BY 
	GROUPING__ID;

+------------+--------+-----+---------------+--+
| user_type  | sales  | pv  | grouping__id  |
+------------+--------+-----+---------------+--+
| old        | NULL   | 3   | 1             |
| new        | NULL   | 7   | 1             |
| NULL       | 1      | 3   | 2             |
| NULL       | 6      | 1   | 2             |
| NULL       | 5      | 2   | 2             |
| NULL       | 3      | 2   | 2             |
| NULL       | 2      | 2   | 2             |
| old        | 3      | 1   | 3             |
| old        | 2      | 1   | 3             |
| old        | 1      | 1   | 3             |
| new        | 6      | 1   | 3             |
| new        | 5      | 2   | 3             |
| new        | 3      | 1   | 3             |
| new        | 1      | 2   | 3             |
| new        | 2      | 1   | 3             |
+------------+--------+-----+---------------+--+
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CUBE
根据GROUP BY的维度的所有组合进行聚合。

select
	user_type,
	sales,
	count(user_id) as pv,
	GROUPING__ID 
from 
	order_detail
group by 
	user_type,sales
WITH CUBE 
ORDER BY 
	GROUPING__ID;

+------------+--------+-----+---------------+--+
| user_type  | sales  | pv  | grouping__id  |
+------------+--------+-----+---------------+--+
| NULL       | NULL   | 10  | 0             |
| new        | NULL   | 7   | 1             |
| old        | NULL   | 3   | 1             |
| NULL       | 6      | 1   | 2             |
| NULL       | 5      | 2   | 2             |
| NULL       | 3      | 2   | 2             |
| NULL       | 2      | 2   | 2             |
| NULL       | 1      | 3   | 2             |
| old        | 3      | 1   | 3             |
| old        | 2      | 1   | 3             |
| old        | 1      | 1   | 3             |
| new        | 6      | 1   | 3             |
| new        | 5      | 2   | 3             |
| new        | 3      | 1   | 3             |
| new        | 2      | 1   | 3             |
| new        | 1      | 2   | 3             |
+------------+--------+-----+---------------+--+
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ROLLUP
是CUBE的子集,以最左侧的维度为主,从该维度进行层级聚合。

select
	user_type,
	sales,
	count(user_id) as pv,
	GROUPING__ID 
from 
	order_detail
group by 
	user_type,sales
WITH ROLLUP 
ORDER BY 
	GROUPING__ID;

+------------+--------+-----+---------------+--+
| user_type  | sales  | pv  | grouping__id  |
+------------+--------+-----+---------------+--+
| NULL       | NULL   | 10  | 0             |
| old        | NULL   | 3   | 1             |
| new        | NULL   | 7   | 1             |
| old        | 3      | 1   | 3             |
| old        | 2      | 1   | 3             |
| old        | 1      | 1   | 3             |
| new        | 6      | 1   | 3             |
| new        | 5      | 2   | 3             |
| new        | 3      | 1   | 3             |
| new        | 2      | 1   | 3             |
| new        | 1      | 2   | 3             |
+------------+--------+-----+---------------+--+
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