cross join 和left join的区别
时间: 2023-10-21 13:25:15 浏览: 175
Cross join和left join是SQL语言中常用的两种连接方式,它们在连接两个表时有一些区别。
Cross join是一种笛卡尔积的连接方式,它会将左表和右表的所有记录进行组合,返回的结果集中的行数等于左表的行数乘以右表的行数。这种连接方式适用于需要获取两个表的所有组合情况的场景。
Left join则是一种左连接的方式,它会返回左表中的所有记录,同时将右表中与左表匹配的记录进行连接。如果左表中的某行没有匹配的右表记录,那么在结果集中会用NULL填充相应的字段。这种连接方式适用于需要获取左表全部数据以及与左表匹配的右表数据的场景。
简而言之,cross join返回的结果集是两个表的笛卡尔积,而left join返回的结果集是左表和右表进行连接后的数据,如果没有匹配的记录则用NULL填充相应的字段。<span class="em">1</span><span class="em">2</span><span class="em">3</span>
#### 引用[.reference_title]
- *1* [SQL联合查询inner join、outer join和cross join的区别详解](https://download.csdn.net/download/weixin_38734037/13703202)[target="_blank" data-report-click={"spm":"1018.2226.3001.9630","extra":{"utm_source":"vip_chatgpt_common_search_pc_result","utm_medium":"distribute.pc_search_result.none-task-cask-2~all~insert_cask~default-1-null.142^v93^chatsearchT3_2"}}] [.reference_item style="max-width: 33.333333333333336%"]
- *2* [SQL中inner join,outer join,cross join及left join,right join的区别](https://blog.csdn.net/weixin_44342332/article/details/105593959)[target="_blank" data-report-click={"spm":"1018.2226.3001.9630","extra":{"utm_source":"vip_chatgpt_common_search_pc_result","utm_medium":"distribute.pc_search_result.none-task-cask-2~all~insert_cask~default-1-null.142^v93^chatsearchT3_2"}}] [.reference_item style="max-width: 33.333333333333336%"]
- *3* [【SQLite】SQLite数据库的内连接INNER JOIN、左连接LEFT JOIN、右连接RIGHT JOIN和交叉连接CROSS JOIN ...](https://blog.csdn.net/logani/article/details/127061526)[target="_blank" data-report-click={"spm":"1018.2226.3001.9630","extra":{"utm_source":"vip_chatgpt_common_search_pc_result","utm_medium":"distribute.pc_search_result.none-task-cask-2~all~insert_cask~default-1-null.142^v93^chatsearchT3_2"}}] [.reference_item style="max-width: 33.333333333333336%"]
[ .reference_list ]
阅读全文
相关推荐

















