ThinkPHP完成对数据的添加以及表单数据的收集
ThinkPHP完成对数据的添加以及表单数据的收集
数据添加分两种方式,一种是数组的方式,另一种是使用AR的方式添加,其实这两种方式添加的方式是相同的,就是一个规范的不同而已,所谓AR,就是:
//一个数据模型代表一张表。
//一个对象代表一条数据。
//一个字段代表一个对象的属性
这样也符合传统的思维习惯,下面是数据模拟添加的实例代码:
$temp=D('User'); // $arr=array('id'=>11,'name'=>'add_1_xuning','password'=>md5('123456')); //下面是通过AR的方式进行数据添加 //一个数据模型代表一张表。 //一个对象代表一条数据。 //一个字段代表一个对象的属性 $temp->name="add_xuning"; $temp->password=md5('456'); $res=$temp->add(); // $res=$temp->add($arr); if($res){ $info=$temp->select(); $this->assign('info',$info); $this->display(); }else{ echo "添加失败"; } }
然后就是收集表单数据进行添加:
1:{$smarty.const.__SELF__}表示当前问价的控制器路径。
2:收集数据添加有三种方法:
public function add_data(){ if(!empty($_POST)){ $arr=$_POST; $temp=D('User'); //$res=$temp->add($arr);//直接添加 // $temp->id=$_POST['id'];//AR添加 // $temp->name=$_POST['usename']; // $temp->password=md5($_POST['password']); $temp->create();//create添加 $res=$temp->add(); if($res){ echo "添加成功"; }else{ echo "添加失败"; } }else{ echo "内容为空"; $this->display(); } }
这样的话,就完成了对数据的添加工作

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