与MSSQL对比学习MYSQL的心得(四)--BLOB数据类型_MySQL
MYSQL里的BLOB数据类型
BLOB是一个二进制大对象,用来存储可变数量的数据。BLOB类型分为4种:TinyBlob、Blob、MediumBlob、LongBlob,
这几个类型之间的唯一区别是在存储文件的最大大小上不同。
MySQL的四种BLOB类型 类型 大小(单位:字节)
TinyBlob 最大 255
Blob 最大 65K
MediumBlob 最大 16M
LongBlob 最大 4G
BLOB列存储的是二进制字符串(字节字符串);TEXT列存储的是非二进制字符串(字符字符串)。
BLOB列没有字符集,并且排序和比较基于列值字节的数值;TEXT列有一个字符集,并且根据字符集对值进行排序和比较
BLOB是二进制字符串,TEXT是非二进制字符串,两者均可存放大容量的信息。BLOB主要存储图片、音频信息等,
而TEXT只能存储文本文件。
SQLSERVER
SQLSERVER并没有BLOB数据类型,只有大型对象数据类型(LOB):
text,ntext,image,nvarchar(max),varchar(max),varbinary(max)和xml数据类型
这些数据类型的数据都存放在LOB类型的数据页面里

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