SQL Server 2005和SQL Server 2000数据的相互导入
1) SQL Server 2000数据导入SQL Server 2005 在SQL Server 2000中,把其数据进行备份,在数据库中点击右键,选择所有任务下的备份数据库,弹出一个对话框,然后点击添加按钮,输入对应的数据库备份名称,就可以备份数据了。然后在SQL Server 2005中,在数据
1) SQL Server 2000数据导入SQL Server 2005
在SQL Server 2000中,把其数据进行备份,在数据库中点击右键,选择“所有任务”下的“备份数据库”,弹出一个对话框,然后点击“添加”按钮,输入对应的数据库备份名称,就可以备份数据了。然后在SQL Server 2005中,在数据库中点击右键,,点击“还原数据库”,在弹出的对话框中,“常规”的选项卡中,“目标数据库”后面中,输入数据库的名字,在指定用于还原的备份集的源和位置下面选择“源设备”,在后面对应的文件夹按钮中点击选择我们在SQL Server 2000中备份的数据库,然后选中前面的选框,需要在“选项”选项卡中修改对应的路径,这样就可以在SQL Server 2005中恢复对应的数据了。在这种数据的导入过程,其实并不考虑SQL Server版本的问题了,它和各版本之间数据的互相导入没有什么区别,就是界面的显示不同而已。
2) SQL Server 2005数据导入SQL Server 2000中
在SQL Server 2005中,在对应的数据库中点击右键然后选择“任务”菜单下的“生成脚本”,连续点击两个“下一步”,然后在弹出的对话框中,在“选项”下面的框中找到“为服务器版本编写脚本”,把后面的SQL Server2005修改成SQL Server 2000,然后再点击下一步,把表选中,如有存储过程,也需要把存储过程选中,然后点击下一步,全选存储过程或者表,然后点击“下一步”,再点击“完成”,然后会在新建的查询窗口中生成了所有的SQL语句,我们把这些语句进行复制,然后在SQL Server 2000中对应数据库的查询分析器中进行执行,就把对应的表结构及存储过程生成了。这时我们再来用SQL Server 2000中在对应数据库中点击右键,在“所有任务”对应的“导入数据”,输入SQL Server 2005中服务器的名称或者IP地址,然后再输入SQL Server 2000中服务器对应的名称或者IP地址,然后默认的选择进入“下一步”,全选所有的表,然后点击两个“下一步“,数据就可以导进来了。

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