转:hive面试题

有一张很大的表:TRLOG
该表大概有2T左右
TRLOG:
CREATE TABLE TRLOG
(PLATFORM string,
USER_ID int,
CLICK_TIME string,
CLICK_URL string)
row format delimited
fields terminated by ' ';

数据:
PLATFORM USER_ID CLICK_TIME CLICK_URL
WEB 12332321 2013-03-21 13:48:31.324 /home/
WEB 12332321 2013-03-21 13:48:32.954 /selectcat/er/
WEB 12332321 2013-03-21 13:48:46.365 /er/viewad/12.html
WEB 12332321 2013-03-21 13:48:53.651 /er/viewad/13.html
WEB 12332321 2013-03-21 13:49:13.435 /er/viewad/24.html
WEB 12332321 2013-03-21 13:49:35.876 /selectcat/che/
WEB 12332321 2013-03-21 13:49:56.398 /che/viewad/93.html
WEB 12332321 2013-03-21 13:50:03.143 /che/viewad/10.html
WEB 12332321 2013-03-21 13:50:34.265 /home/
WAP 32483923 2013-03-21 23:58:41.123 /m/home/
WAP 32483923 2013-03-21 23:59:16.123 /m/selectcat/fang/
WAP 32483923 2013-03-21 23:59:45.123 /m/fang/33.html
WAP 32483923 2013-03-22 00:00:23.984 /m/fang/54.html
WAP 32483923 2013-03-22 00:00:54.043 /m/selectcat/er/
WAP 32483923 2013-03-22 00:01:16.576 /m/er/49.html
…… …… …… ……

需要把上述数据处理为如下结构的表ALLOG:
CREATE TABLE ALLOG
(PLATFORM string,
USER_ID int,
SEQ int,
FROM_URL string,
TO_URL string)
row format delimited
fields terminated by ' ';

整理后的数据结构:
PLATFORM USER_ID SEQ FROM_URL TO_URL
WEB 12332321 1 NULL /home/
WEB 12332321 2 /home/ /selectcat/er/
WEB 12332321 3 /selectcat/er/ /er/viewad/12.html
WEB 12332321 4 /er/viewad/12.html /er/viewad/13.html
WEB 12332321 5 /er/viewad/13.html /er/viewad/24.html
WEB 12332321 6 /er/viewad/24.html /selectcat/che/
WEB 12332321 7 /selectcat/che/ /che/viewad/93.html
WEB 12332321 8 /che/viewad/93.html /che/viewad/10.html
WEB 12332321 9 /che/viewad/10.html /home/
WAP 32483923 1 NULL /m/home/
WAP 32483923 2 /m/home/ /m/selectcat/fang/
WAP 32483923 3 /m/selectcat/fang/ /m/fang/33.html
WAP 32483923 4 /m/fang/33.html /m/fang/54.html
WAP 32483923 5 /m/fang/54.html /m/selectcat/er/
WAP 32483923 6 /m/selectcat/er/ /m/er/49.html
…… …… …… ……
PLATFORM和USER_ID还是代表平台和用户ID;SEQ字段代表用户按时间排序后的访问顺序,FROM_URL和TO_URL分别代表用户从哪一页跳转到哪一页。对于某个平台上某个用户的第一条访问记录,其FROM_URL是NULL(空值)。


面试官说需要用两种办法做出来:
1、实现一个能加速上述处理过程的Hive Generic UDF,并给出使用此UDF实现ETL过程的Hive SQL

2、实现基于纯Hive SQL的ETL过程,从TRLOG表生成ALLOG表;(结果是一套SQL)

答案:

1.

UDF

[java] view plaincopy
 
  1. package org.apache.hadoop.hive.udf;  
  2.   
  3. public class RowNumber extends org.apache.hadoop.hive.ql.exec.UDF {  
  4.        
  5.     private static int MAX_VALUE = 50;  
  6.     private static String comparedColumn[] = new String[MAX_VALUE];  
  7.     private static int rowNum = 1;  
  8.    
  9.     public int evaluate(Object... args) {  
  10.         String columnValue[] = new String[args.length];  
  11.         for (int i = 0; i < args.length; i++)  
  12.             columnValue[i] = args[i].toString();  
  13.         if (rowNum == 1)  
  14.         {  
  15.    
  16.             for (int i = 0; i < columnValue.length; i++)  
  17.                 comparedColumn[i] = columnValue[i];  
  18.         }  
  19.    
  20.         for (int i = 0; i < columnValue.length; i++)  
  21.         {  
  22.    
  23.             if (!comparedColumn[i].equals(columnValue[i]))  
  24.             {  
  25.                 for (int j = 0; j < columnValue.length; j++)  
  26.                 {  
  27.                     comparedColumn[j] = columnValue[j];  
  28.                 }  
  29.                 rowNum = 1;  
  30.                 return rowNum++;  
  31.             }  
  32.         }  
  33.         return rowNum++;  
  34.     }  
  35.       
  36.     public static void main(String[] args) {  
  37.         RowNumber aRowNumber = new RowNumber();  
  38.         System.out.println(aRowNumber.evaluate("12332321"));  
  39.         System.out.println(aRowNumber.evaluate("12332321"));  
  40.         System.out.println(aRowNumber.evaluate("12332321"));  
  41.         System.out.println(aRowNumber.evaluate("12332321"));  
  42.         System.out.println(aRowNumber.evaluate("12332321"));  
  43.     }  
  44.       
  45. }  



INSERT OVERWRITE TABLE ALLOG
SELECT t1.platform,t1.user_id,RowNumber(t1.user_id)seq,t2.click_url FROM_URL,t1.click_url TO_URL FROM
(select *,RowNumber(user_id)seq from trlog)t1
LEFT OUTER JOIN
(select *,RowNumber(user_id)seq from trlog)t2
on t1.user_id = t2.user_id and t1.seq=t2.seq+1;

2.

INSERT OVERWRITE TABLE ALLOG
SELECT t1.platform,t1.user_id,t1.seq,t2.click_url FROM_URL,t1.click_url TO_URL FROM
(SELECT platform,user_id,click_time,click_url,count(1) seq FROM (SELECT a.*,b.click_time click_time1,b.click_url click_url2  FROM trlog a left outer join trlog b on a.user_id = b.user_id)t WHERE click_time>=click_time1 GROUP BY platform,user_id,click_time,click_url)t1
LEFT OUTER JOIN
(SELECT platform,user_id,click_time,click_url,count(1) seq FROM (SELECT a.*,b.click_time click_time1,b.click_url click_url2  FROM trlog a left outer join trlog b on a.user_id = b.user_id)t WHERE click_time>=click_time1 GROUP BY platform,user_id,click_time,click_url )t2 
on t1.user_id = t2.user_id and t1.seq = t2.seq + 1;

原文地址:https://www.cnblogs.com/duanxingxing/p/4936751.html