• Hive分析窗口函数


    数据准备

    CREATE EXTERNAL TABLE lxw1234 (
    cookieid string,
    createtime string,   --day 
    pv INT
    ) ROW FORMAT DELIMITED 
    FIELDS TERMINATED BY ',' 
    stored as textfile location '/tmp/lxw11/';
     
    DESC lxw1234;
    cookieid                STRING 
    createtime              STRING 
    pv                      INT 
     
    hive> select * from lxw1234;
    OK
    cookie1 2015-04-10      1
    cookie1 2015-04-11      5
    cookie1 2015-04-12      7
    cookie1 2015-04-13      3
    cookie1 2015-04-14      2
    cookie1 2015-04-15      4
    cookie1 2015-04-16      4
    

    分析

    SELECT cookieid,
    createtime,
    pv,
    SUM(pv) OVER(PARTITION BY cookieid ORDER BY createtime) AS pv1, -- 默认为从起点到当前行
    SUM(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS pv2, --从起点到当前行,结果同pv1 
    SUM(pv) OVER(PARTITION BY cookieid) AS pv3,                             --分组内所有行
    SUM(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND CURRENT ROW) AS pv4,   --当前行+往前3行
    SUM(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND 1 FOLLOWING) AS pv5,    --当前行+往前3行+往后1行
    SUM(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN CURRENT ROW AND UNBOUNDED FOLLOWING) AS pv6   ---当前行+往后所有行  
    FROM lxw1234;
     
    cookieid createtime     pv      pv1     pv2     pv3     pv4     pv5      pv6 
    -----------------------------------------------------------------------------
    cookie1  2015-04-10      1       1       1       26      1       6       26
    cookie1  2015-04-11      5       6       6       26      6       13      25
    cookie1  2015-04-12      7       13      13      26      13      16      20
    cookie1  2015-04-13      3       16      16      26      16      18      13
    cookie1  2015-04-14      2       18      18      26      17      21      10
    cookie1  2015-04-15      4       22      22      26      16      20      8
    cookie1  2015-04-16      4       26      26      26      13      13      4
    
    • pv1: 分组内从起点到当前行的pv累积,如,11号的pv1=10号的pv+11号的pv, 12号=10号+11号+12号
    • pv2: 同pv1
    • pv3: 分组内(cookie1)所有的pv累加
    • pv4: 分组内当前行+往前3行,如,11号=10号+11号, 12号=10号+11号+12号, 13号=10号+11号+12号+13号, 14号=11号+12号+13号+14号
    • pv5: 分组内当前行+往前3行+往后1行,如,14号=11号+12号+13号+14号+15号=5+7+3+2+4=21
    • pv6: 分组内当前行+往后所有行,如,13号=13号+14号+15号+16号=3+2+4+4=13,14号=14号+15号+16号=2+4+4=10

    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:起点,UNBOUNDED PRECEDING 表示从前面的起点, UNBOUNDED FOLLOWING:表示到后面的终点。

    –其他AVG,MIN,MAX,和SUM用法一样。

    AVG

    --AVG
    SELECT cookieid,
    createtime,
    pv,
    AVG(pv) OVER(PARTITION BY cookieid ORDER BY createtime) AS pv1, -- 默认为从起点到当前行
    AVG(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS pv2, --从起点到当前行,结果同pv1 
    AVG(pv) OVER(PARTITION BY cookieid) AS pv3,                             --分组内所有行
    AVG(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND CURRENT ROW) AS pv4,   --当前行+往前3行
    AVG(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND 1 FOLLOWING) AS pv5,    --当前行+往前3行+往后1行
    AVG(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN CURRENT ROW AND UNBOUNDED FOLLOWING) AS pv6   ---当前行+往后所有行  
    FROM lxw1234; 
    cookieid createtime     pv      pv1     pv2     pv3     pv4     pv5      pv6 
    -----------------------------------------------------------------------------
    cookie1 2015-04-10      1       1.0     1.0     3.7142857142857144      1.0     3.0     3.7142857142857144
    cookie1 2015-04-11      5       3.0     3.0     3.7142857142857144      3.0     4.333333333333333       4.166666666666667
    cookie1 2015-04-12      7       4.333333333333333       4.333333333333333       3.7142857142857144      4.333333333333333       4.0     4.0
    cookie1 2015-04-13      3       4.0     4.0     3.7142857142857144      4.0     3.6     3.25
    cookie1 2015-04-14      2       3.6     3.6     3.7142857142857144      4.25    4.2     3.3333333333333335
    cookie1 2015-04-15      4       3.6666666666666665      3.6666666666666665      3.7142857142857144      4.0     4.0     4.0
    cookie1 2015-04-16      4       3.7142857142857144      3.7142857142857144      3.7142857142857144      3.25    3.25    4.0
    

    MIN

    --MIN
    SELECT cookieid,
    createtime,
    pv,
    MIN(pv) OVER(PARTITION BY cookieid ORDER BY createtime) AS pv1, -- 默认为从起点到当前行
    MIN(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS pv2, --从起点到当前行,结果同pv1 
    MIN(pv) OVER(PARTITION BY cookieid) AS pv3,                                                                                                                             --分组内所有行
    MIN(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND CURRENT ROW) AS pv4,   --当前行+往前3行
    MIN(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND 1 FOLLOWING) AS pv5,    --当前行+往前3行+往后1行
    MIN(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN CURRENT ROW AND UNBOUNDED FOLLOWING) AS pv6   ---当前行+往后所有行  
    FROM lxw1234;
     
    cookieid createtime     pv      pv1     pv2     pv3     pv4     pv5      pv6 
    -----------------------------------------------------------------------------
    cookie1 2015-04-10      1       1       1       1       1       1       1
    cookie1 2015-04-11      5       1       1       1       1       1       2
    cookie1 2015-04-12      7       1       1       1       1       1       2
    cookie1 2015-04-13      3       1       1       1       1       1       2
    cookie1 2015-04-14      2       1       1       1       2       2       2
    cookie1 2015-04-15      4       1       1       1       2       2       4
    cookie1 2015-04-16      4       1       1       1       2       2       4
    

    MAX

    ----MAX
    SELECT cookieid,
    createtime,
    pv,
    MAX(pv) OVER(PARTITION BY cookieid ORDER BY createtime) AS pv1, -- 默认为从起点到当前行
    MAX(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN UNBOUNDED PRECEDING AND CURRENT ROW) AS pv2, --从起点到当前行,结果同pv1 
    MAX(pv) OVER(PARTITION BY cookieid) AS pv3,                             --分组内所有行
    MAX(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND CURRENT ROW) AS pv4,   --当前行+往前3行
    MAX(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN 3 PRECEDING AND 1 FOLLOWING) AS pv5,    --当前行+往前3行+往后1行
    MAX(pv) OVER(PARTITION BY cookieid ORDER BY createtime ROWS BETWEEN CURRENT ROW AND UNBOUNDED FOLLOWING) AS pv6   ---当前行+往后所有行  
    FROM lxw1234;
     
    cookieid createtime     pv      pv1     pv2     pv3     pv4     pv5      pv6 
    -----------------------------------------------------------------------------
    cookie1 2015-04-10      1       1       1       7       1       5       7
    cookie1 2015-04-11      5       5       5       7       5       7       7
    cookie1 2015-04-12      7       7       7       7       7       7       7
    cookie1 2015-04-13      3       7       7       7       7       7       4
    cookie1 2015-04-14      2       7       7       7       7       7       4
    cookie1 2015-04-15      4       7       7       7       7       7       4
    cookie1 2015-04-16      4       7       7       7       4       4       4
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  • 原文地址:https://www.cnblogs.com/sx66/p/12039601.html
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