sql笔记
--分析函数示例 select name,lesson,times,score, rank() over (partition by lesson,times order by score desc) as "RANK_L", --排名(不连续) dense_rank() over (partition by lesson,times order by score desc) as "DRANK_L", --排名(连续) row_number() over (partition by lesson,times order by score desc) as "ROWN_L", --行号,非确定 rank() over (partition by name,times order by score desc) as "RANK_P", max(score) over (partition by lesson,times) as "Max RANK_L", --聚合,最大值 sum(score) over (partition by NAME,times) as "RANK_SUM", --聚合,求和 TRUNC(100*RATIO_TO_REPORT(score) OVER (partition by NAME,times),2) as "RATIO_S", --当前值对SUM的百分比 sum(score) over (partition by lesson,times) as "SUM_L", TRUNC(100*RATIO_TO_REPORT(score) OVER (partition by lesson,times),2) as "RATIO_L", lag(score) over (partition by lesson,times order by score desc) as "Prev", --引用前一行,前n行 score - lag(score) over (partition by lesson,times order by score desc) as "D_Prev", lead(score) over (partition by lesson,times order by score desc) as "Next", --引用后一行,后n行 score - lead(score) over (partition by lesson,times order by score desc) as "D_Next", PERCENT_RANK() OVER (partition by lesson,times order by SCORE desc) as "PCT_RANK_L", --排名百分比 percentile_cont(0.8) within group (order by score desc) over (partition by lesson,times ) as "MID_PC", --PERCENT_RANK反函数,在每一个分组中检查百分比排名的值并返回,如果没有精确匹配值,则取前后最近两个平均数 percentile_disc(0.8) within group (order by score desc) over (partition by lesson,times ) as "MID_PD", --PERCENT_RANK反函数,在每一个分组中检查百分比排名的值并返回,如果没有精确匹配值,则按排序取后一个值 PERCENT_RANK() OVER (partition by lesson,times order by SCORE) as "PCT_RANK_L_A", percentile_disc(0.8) within group (order by score) over (partition by lesson,times ) as "MID_PD_A", first_value(score) over (partition by lesson,times order by score desc rows between unbounded preceding and unbounded FOLLOWING) as "No1_Score", --第1个值 nth_value(score,2) over (partition by lesson,times order by score desc rows between unbounded preceding and unbounded following) as "2nd_Score", --第N个值 last_value(score) over (partition by lesson,times order by score desc rows between unbounded preceding and unbounded following) as "Last_Score", --最后一个值 ntile(3) over (partition by lesson,times order by score desc) as "RANK_NTILE", --分成N片,并返回分片序号 listagg(name,'|') within group (order by score) over (partition by lesson,times) as LSG, --行合并成一列(VARCHAR2) stddev(score) over (partition by lesson,times) as LSG --标准差 from t_analyze order by times,lesson ; --省略窗口取值,默认窗口rows between unbounded preceding and current row 窗口第一行到当前行 --开窗语法 --rows between --range between --开窗示例 --sum(score) over (partition by NAME,times rows between unbounded preceding and unbounded following) --SUM计算窗口范围:分组内所有取值 --sum(score) over (partition by NAME,times rows between unbounded preceding and unbounded following) --SUM计算窗口范围:分组内第一行到当前行
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