当前位置:   article > 正文

explode与lateral view使用详解(spark及hive环境对比)_lateral view explode

lateral view explode

HIVE环境

1.explode 炸裂函数

定义:explode函数能够将array及map类型的数据炸开,实现一行变多行

格式:select explode(array/map) from table

示例

原始数据tmp表

name

id

goods

a

1

book_a,food_a

b

2

book_b,food_b

c

3

null 

  1. with tmp as (
  2. select 'a' name,'1' as id,'book_a,food_a' as goods
  3. union all
  4. select 'b' name,'2' as id,'book_b,food_b' as goods
  5. union all
  6. select 'c' name,'3' as id,null as goods
  7. )
  8. select explode(split(goods,',')) as goods_col
  9. from tmp

输出结果

goods_col

book_a

food_a

book_b

food_b

注意
1.如果炸开字段为null值,则会被直接过滤掉
2.hive环境下使用explode函数只能select explode炸开的列,且仅能包含单个explode,其他列无法取到。如
select explode(split(goods,','))  as goods_col
       ,name
       ,id
from tmp
则会报错

2.lateral view侧视图

定义:Lateral 也是用来对数组进行列转行的,Lateral View主要解决在select使用UDTF(如explode)做查询的过程中查询只能包含单个UDTF,不能包含其它字段以及多个UDTF的情况(及不能添加额外的select列的问题)

格式:tabelA lateral view UDTF(xxx) 视图别名(虚拟表名) as a,b,c

示例:

  1. with tmp as (
  2. select 'a' name,'1' as id,'book_a,food_a' as goods
  3. union all
  4. select 'b' name,'2' as id,'book_b,food_b' as goods
  5. union all
  6. select 'c' name,'3' as id,null as goods
  7. )
  8. select name,id,goods_col
  9. from tmp
  10. lateral view explode(split(goods,',')) tmp_table as goods_col

输出结果

name

id

goods_col

a

1

book_a

a

1

food_a

b

2

book_a

b

2

food_b

注意
1.如果炸开字段为null值,则会被直接过滤掉

特别的,如果想要保留炸开字段为空值的行,则可以使用lateral view 来实现,对上述查询逻辑进行改动

  1. with tmp as (
  2. select 'a' name,'1' as id,'book_a,food_a' as goods
  3. union all
  4. select 'b' name,'2' as id,'book_b,food_b' as goods
  5. union all
  6. select 'c' name,'3' as id,null as goods
  7. )
  8. select name,id,goods_col
  9. from tmp
  10. lateral view outer explode(split(goods,',')) tmp_table as goods_col

输出结果

name

id

goods_col

a

1

book_a

a

1

food_a

b

2

book_a

b

2

food_b

c

3

null

spark

1.explode 炸裂函数

        spark中的炸裂函数explode具备hive中的explode的功能,不同的是,spark中使用explode函数在select时能够筛选额外的列

  1. with tmp as (
  2. select 'a' name,'1' as id,'book_a,food_a' as goods
  3. union all
  4. select 'b' name,'2' as id,'book_b,food_b' as goods
  5. union all
  6. select 'c' name,'3' as id,null as goods
  7. )
  8. select name,id,explode(split(goods,',')) as goods_col
  9. from tmp

输出结果

name

id

goods_col

a

1

book_a

a

1

food_a

b

2

book_a

b

2

food_b

        因此在spark中explode 近似可理解为等同于 lateral view explode,同时,spark中也支持explode_outer 等同于 lateral view outer explode

2.lateral view侧视图

        spark中使用lateral view侧视图与hive中完全一致

声明:本文内容由网友自发贡献,不代表【wpsshop博客】立场,版权归原作者所有,本站不承担相应法律责任。如您发现有侵权的内容,请联系我们。转载请注明出处:https://www.wpsshop.cn/w/weixin_40725706/article/detail/655728
推荐阅读
相关标签
  

闽ICP备14008679号