MySQL汇总数据_MySQL
汇总数据
有时对数据表的操作不是表中数据本身,而是表中数据的汇总,例如 某一列数据的平均值,最大值,最小值等。而对于这些常用的数据汇总处理,MySQL提供了函数来处理。
SQL聚集函数
函数 | 说明 |
COUNT() | 返回某列的行数 |
MAX() | 返回某列最大值 |
MIN() | 返回某列最小值 |
AVG() | 返回某列平均值 |
SUM() | 返回某列值之和 |
例子:
首先显示出products表格如下:
求出prod_price列的平均值
看起来比较怪,原表只显示了一行:
求出特定行的 如vend_id =1003所有商品的价格;
COUNT函数
用于确定满足某种条件的行数目,products表中共有14行:
统计Vend_id = 1001有多少行:
MAX()查找最大值
MIN() 最小值
SUM()求数列值之和
聚集不同的值
统计有多少个厂商,加上了DISTINCT关键字,就只统计该列中不同的值的数量:
组合聚合函数
多个函数可以一起用,功能更强大:

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