112

What is the difference between an INNER JOIN and LEFT SEMI JOIN?

In the scenario below, why am I getting two different results?

The INNER JOIN result set is a lot larger. Can someone explain? I am trying to get the names within table_1 that only appear in table_2.

SELECT name
FROM table_1 a
    INNER JOIN table_2 b ON a.name=b.name

SELECT name
FROM table_1 a
    LEFT SEMI JOIN table_2 b ON (a.name=b.name)
7
  • 4
    The inner join will achieve your goal. I had never heard of a semi join until I saw this question.
    – Dan Bracuk
    Feb 12, 2014 at 20:25
  • The left semi join should be returning more rows than the inner join. Feb 12, 2014 at 20:29
  • 2
    The inner join will return data only if there is a match between both tables. The left join will return data from the first table regardless if a matching record is found in the second table.
    – j03z
    Feb 12, 2014 at 20:34
  • 15
    @GordonLinoff not necessarily, a LEFT SEMI JOIN will only return one row from the left, even if there are multiple matches in the right. An INNER JOIN will return multiple rows if there are multiple matching on the right.
    – D Stanley
    Feb 12, 2014 at 20:48
  • 2
    @j03z that can't be correct. If the purpose of the left hemi-join is 1) to return only the information in the left table (as others have said) and 2) to return rows from teh left table regardless of match (as I think you say) then that is just the original left table -- no join is necessary to accomplish that. I think others must be correct that the left hemi-join 1) only returns columns from the left table, 2) only returns rows that have a match in the right table, and 3) will return a single row from the left for one or more matches.
    – Carl G
    Sep 21, 2015 at 20:20

4 Answers 4

158

An INNER JOIN can return data from the columns from both tables, and can duplicate values of records on either side have more than one match. A LEFT SEMI JOIN can only return columns from the left-hand table, and yields one of each record from the left-hand table where there is one or more matches in the right-hand table (regardless of the number of matches). It's equivalent to (in standard SQL):

SELECT name
FROM table_1 a
WHERE EXISTS(
    SELECT * FROM table_2 b WHERE (a.name=b.name))

If there are multiple matching rows in the right-hand column, an INNER JOIN will return one row for each match on the right table, while a LEFT SEMI JOIN only returns the rows from the left table, regardless of the number of matching rows on the right side. That's why you're seeing a different number of rows in your result.

I am trying to get the names within table_1 that only appear in table_2.

Then a LEFT SEMI JOIN is the appropriate query to use.

4
  • Is there really such a thing as a LEFT SEMI JOIN? Isn't is just a SEMI JOIN? There's no sense to a RIGHT SEMI JOIN, is there?
    – ErikE
    Jul 18, 2014 at 23:37
  • In Hive, yes.
    – D Stanley
    Jul 20, 2014 at 2:24
  • 2
    great answer just what i was looking for. i would phrase the answer more accurately :"...an INNER JOIN will return one row for each matching row of the right table, while a LEFT SEMI JOIN... Apr 20, 2015 at 18:10
  • 4
    The opposite of this is a LEFT ANTI JOIN that filters out the data from the right table in the left table according to a key. Thought I'd leave this nugget here for someone who might be looking! Oct 29, 2017 at 19:55
94

Suppose there are 2 tables TableA and TableB with only 2 columns (Id, Data) and following data:

TableA:

+----+---------+
| Id |  Data   |
+----+---------+
|  1 | DataA11 |
|  1 | DataA12 |
|  1 | DataA13 |
|  2 | DataA21 |
|  3 | DataA31 |
+----+---------+

TableB:

+----+---------+
| Id |  Data   |
+----+---------+
|  1 | DataB11 |
|  2 | DataB21 |
|  2 | DataB22 |
|  2 | DataB23 |
|  4 | DataB41 |
+----+---------+

Inner Join on column Id will return columns from both the tables and only the matching records:

.----.---------.----.---------.
| Id |  Data   | Id |  Data   |
:----+---------+----+---------:
|  1 | DataA11 |  1 | DataB11 |
:----+---------+----+---------:
|  1 | DataA12 |  1 | DataB11 |
:----+---------+----+---------:
|  1 | DataA13 |  1 | DataB11 |
:----+---------+----+---------:
|  2 | DataA21 |  2 | DataB21 |
:----+---------+----+---------:
|  2 | DataA21 |  2 | DataB22 |
:----+---------+----+---------:
|  2 | DataA21 |  2 | DataB23 |
'----'---------'----'---------'

Left Join (or Left Outer join) on column Id will return columns from both the tables and matching records with records from left table (Null values from right table):

.----.---------.----.---------.
| Id |  Data   | Id |  Data   |
:----+---------+----+---------:
|  1 | DataA11 |  1 | DataB11 |
:----+---------+----+---------:
|  1 | DataA12 |  1 | DataB11 |
:----+---------+----+---------:
|  1 | DataA13 |  1 | DataB11 |
:----+---------+----+---------:
|  2 | DataA21 |  2 | DataB21 |
:----+---------+----+---------:
|  2 | DataA21 |  2 | DataB22 |
:----+---------+----+---------:
|  2 | DataA21 |  2 | DataB23 |
:----+---------+----+---------:
|  3 | DataA31 |    |         |
'----'---------'----'---------'

Right Join (or Right Outer join) on column Id will return columns from both the tables and matching records with records from right table (Null values from left table):

┌────┬─────────┬────┬─────────┐
│ Id │  Data   │ Id │  Data   │
├────┼─────────┼────┼─────────┤
│  1 │ DataA11 │  1 │ DataB11 │
│  1 │ DataA12 │  1 │ DataB11 │
│  1 │ DataA13 │  1 │ DataB11 │
│  2 │ DataA21 │  2 │ DataB21 │
│  2 │ DataA21 │  2 │ DataB22 │
│  2 │ DataA21 │  2 │ DataB23 │
│    │         │  4 │ DataB41 │
└────┴─────────┴────┴─────────┘

Full Outer Join on column Id will return columns from both the tables and matching records with records from left table (Null values from right table) and records from right table (Null values from left table):

╔════╦═════════╦════╦═════════╗
║ Id ║  Data   ║ Id ║  Data   ║
╠════╬═════════╬════╬═════════╣
║  - ║         ║    ║         ║
║  1 ║ DataA11 ║  1 ║ DataB11 ║
║  1 ║ DataA12 ║  1 ║ DataB11 ║
║  1 ║ DataA13 ║  1 ║ DataB11 ║
║  2 ║ DataA21 ║  2 ║ DataB21 ║
║  2 ║ DataA21 ║  2 ║ DataB22 ║
║  2 ║ DataA21 ║  2 ║ DataB23 ║
║  3 ║ DataA31 ║    ║         ║
║    ║         ║  4 ║ DataB41 ║
╚════╩═════════╩════╩═════════╝

Left Semi Join on column Id will return columns only from left table and matching records only from left table:

┌────┬─────────┐
│ Id │  Data   │
├────┼─────────┤
│  1 │ DataA11 │
│  1 │ DataA12 │
│  1 │ DataA13 │
│  2 │ DataA21 │
└────┴─────────┘
4
  • 2
    I used to call this as "LEFT INNER Join". Mar 31, 2017 at 8:41
  • DISTINCT of A.* from INNER JOIN result is equivalent to LEFT SEMI JOIN.
    – Teja
    Sep 28, 2018 at 21:46
  • 8
    Distinct does not sound safe, suppose A contains two identical records. Jan 27, 2019 at 12:33
  • Even if the result ends up being the same, using DISTINCT might have a more expensive plan compared to EXISTS Mar 19, 2020 at 18:53
34

Tried in Hive and got the below output

table1

1,wqe,chennai,india

2,stu,salem,india

3,mia,bangalore,india

4,yepie,newyork,USA

table2

1,wqe,chennai,india

2,stu,salem,india

3,mia,bangalore,india

5,chapie,Los angels,USA

Inner Join

SELECT * FROM table1 INNER JOIN table2 ON (table1.id = table2.id);

1 wqe chennai india 1 wqe chennai india

2 stu salem india 2 stu salem india

3 mia bangalore india 3 mia bangalore india

Left Join

SELECT * FROM table1 LEFT JOIN table2 ON (table1.id = table2.id);

1 wqe chennai india 1 wqe chennai india

2 stu salem india 2 stu salem india

3 mia bangalore india 3 mia bangalore india

4 yepie newyork USA NULL NULL NULL NULL

Left Semi Join

SELECT * FROM table1 LEFT SEMI JOIN table2 ON (table1.id = table2.id);

1 wqe chennai india

2 stu salem india

3 mia bangalore india

note: Only records in left table are displayed whereas for Left Join both the table records displayed

0
4

All above answers are correct. However in practice, it helps to associate the mental model of a filter when imagining LEFT SEMI JOIN.

The answer is a subset of rows from LEFT table, which have a match in RIGHT TABLE.

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