13

Spark SQL documentation specifies that join() supports the following join types:

Must be one of: inner, cross, outer, full, full_outer, left, left_outer, right, right_outer, left_semi, and left_anti.

Spark SQL Join()

Is there any difference between outer and full_outer? I suspect not, I suspect they are just synonyms for each other, but wanted to get clarity.

2 Answers 2

8

There is no difference between outer and full_outer - they are the same. See the following answer for a demonstration: What are the various join types in Spark?

5

Spark v2.4.0 join code (the _ has been suppressed):

case "inner" => Inner
case "outer" | "full" | "fullouter" => FullOuter
case "leftouter" | "left" => LeftOuter
case "rightouter" | "right" => RightOuter
case "leftsemi" => LeftSemi
case "leftanti" => LeftAnti
case "cross" => Cross

So Spark really supports: Inner, FullOuter, LeftOuter, RightOuter, LeftSemi, LeftAnti, and Cross.

Quick example, given:

+---+-----+
| id|value|
+---+-----+
|  1|   A1|
|  2|   A2|
|  3|   A3|
|  4|   A4|
+---+-----+

and:

+---+-----+
| id|value|
+---+-----+
|  3|   A3|
|  4|   A4|
|  4| A4_1|
|  5|   A5|
|  6|   A6|
+---+-----+

You get:

OUTER JOIN

+----+-----+----+-----+
|  id|value|  id|value|
+----+-----+----+-----+
|null| null|   5|   A5|
|null| null|   6|   A6|
|   1|   A1|null| null|
|   2|   A2|null| null|
|   3|   A3|   3|   A3|
|   4|   A4|   4|   A4|
|   4|   A4|   4| A4_1|
+----+-----+----+-----+

FULL_OUTER JOIN

+----+-----+----+-----+
|  id|value|  id|value|
+----+-----+----+-----+
|null| null|   5|   A5|
|null| null|   6|   A6|
|   1|   A1|null| null|
|   2|   A2|null| null|
|   3|   A3|   3|   A3|
|   4|   A4|   4|   A4|
|   4|   A4|   4| A4_1|
+----+-----+----+-----+

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.