What does join mean in sql
JOIN in SQL is used to combine rows from multiple tables and match rows based on common columns or expressions. JOIN types are: INNER JOIN: Rows matching values LEFT JOIN: All rows in the left table match rows in the right table RIGHT JOIN: All rows in the right table match rows in the left table FULL JOIN: All rows in the left and right tables
Meaning of JOIN in SQL
JOIN is a keyword in SQL that is used to combine rows from two or more tables Together, create a new result set. It does this by matching rows on a common column or expression.
Segmentation of JOIN Types
There are four main JOIN types:
- INNER JOIN: Only Returns the combination of rows from two tables with matching values.
- LEFT JOIN: Returns all rows from the left table, plus right table rows that match the right table if they exist.
- RIGHT JOIN: Returns all rows from the right table, and left table rows that match the left table if they exist.
- FULL JOIN: Returns all rows from the left and right tables, including those with no matching values.
JOIN Syntax
The JOIN operation uses the following syntax:
SELECT 列名 FROM 表1 JOIN 表2 ON 表1.公共列 = 表2.公共列
Application of JOIN
## The #JOIN operation is useful in the following situations:- Combining data from multiple tablesCreating one-to-many or many-to-many relationshipsLooking for occurrences of Matching records in different tablesFiltering and filtering results
Example
Suppose we have two tables:Customers and
Orders. To find the number of orders for each customer, you can use the following JOIN query:
SELECT c.CustomerName, COUNT(o.OrderID) AS OrderCount FROM Customers c JOIN Orders o ON c.CustomerID = o.CustomerID GROUP BY c.CustomerName
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