Spark DataFrame中的join类型inner join, left join, right join, full join

Spark DataFrame中join与SQL很像,都有 inner join, left join, right join, full join
那么join方法如何实现不同的join类型呢?
看其原型
def join(right : DataFrame, usingColumns : Seq[String], joinType : String) : DataFrame
def join(right : DataFrame, joinExprs : Column, joinType : String) : DataFrame

可见,可以通过传入String类型的joinType来实现。

joinType可以是”inner”、“left”、“right”、“full”分别对应inner join, left join, right join, full join,默认值是”inner”,代表内连接

>>>personDataFrame.join(orderDataFrame, personDataFrame("id_person") === orderDataFrame("id_person")).show()

>>>personDataFrame.join(orderDataFrame, personDataFrame("id_person") === orderDataFrame("id_person"), "inner").show()

结果如下:

id_person    name    address    id_order    orderNum    id_person
1    张三    深圳    3    533    1
1    张三    深圳    4    444    1
2    李四    成都    1    325    2
3    王五    厦门    2    34    3
 
“left”,”left_outer”或者”leftouter”代表左连接
 
>>>personDataFrame.join(orderDataFrame, personDataFrame("id_person") === orderDataFrame("id_person"), "left").show()

>>>personDataFrame.join(orderData

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