Lateral Joins vs. Subqueries: When Should I Use Which?
Lateral Joins vs. Subqueries: A Practical Comparison
This guide clarifies the distinctions between Lateral joins and subqueries in PostgreSQL, helping developers choose the optimal approach for query optimization.
Understanding Lateral Joins
Lateral joins (also called INSTEAD OF joins) uniquely allow subqueries to access columns from the preceding tables in the FROM
clause. This characteristic mirrors the functionality of correlated subqueries, executing the subquery for each row of the left-hand table.
When to Use Lateral Joins
Lateral joins prove particularly useful in situations requiring:
- Access to preceding table columns within subqueries.
- Retrieval of multiple rows or columns from a subquery.
- Utilization of set-returning functions (like
unnest()
) with multiple parameters, which are typically restricted outside theFROM
clause.
Key Differences: Lateral Joins vs. Subqueries
Feature | Lateral Join | Subquery | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
|
Correlated; evaluated per row of the left table | Evaluated once | ||||||||||||
Output | Multiple rows/columns possible | Typically single value; multiple rows possible with set-returning functions | ||||||||||||
Efficiency | Potentially more efficient due to query planner optimization | Can be less efficient, especially with correlated subqueries |
- Limitations of Subqueries and Advantages of Lateral Joins
- Subqueries often fall short when dealing with:
-
FROM
Multiple Rows/Columns: Returning multiple rows or columns directly is cumbersome. Lateral joins seamlessly handle this using set-returning functions.FROM
- Set-Returning Functions in : Lateral joins readily integrate set-returning functions within the
CROSS JOINs
clause, expanding functional options.
CROSS JOINs: Lateral joins explicitly support , enabling joins without requiring join conditions.
-
INNER
Essential ConsiderationsOUTER
NATURAL
ON
USING
For and - joins, a join condition (
CROSS JOINs
, , or - clauses) is mandatory.
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