Take Custom Action Upon SharePoint FBA User Login

本文介绍如何为使用表单身份验证 (FBA) 的 SharePoint Extranet 实施自定义登录操作,如更新 CRM 或重定向用户。通过修改登录页面及利用 Visual Studio 编写自定义代码实现。
 转自:http://sharepointsolutions.blogspot.com/2007/08/take-custom-action-upon-sharepoint-fba.html

Many of our customers have use cases where by they would like to take a specific custom action when an FBA (forms based authentication) user logs in to their SharePoint Extranet. Some examples may be to update a back-end CRM system, or redirect the user to a specific page. It is actually fairly simple to implement this logic. The Visual Studio project and source code for this article can be downloaded by clicking the download link at the bottom of this page.

First under the 12 hive, open the C:/Program Files/Common Files/Microsoft Shared/web server extensions/12/TEMPLATE/LAYOUTS folder. Find the login.aspx file, and make a copy of it called CustomLogin.aspx. This will be our new user login page.

Next, open the web.config for your SharePoint application, find the <authentication/> element, and change it from:

    <authentication mode="Forms">
<
forms loginUrl="/_layouts/login.aspx" />
</
authentication>

to:

    <authentication mode="Forms">
<
forms loginUrl="/_layouts/CustomLogin.aspx" />
</
authentication>

Now, create a new Class Library project in Visual Studio, or alternatively download my sample project from the link below. Your project will need references to Microsoft.SharePoint.dll, Microsoft.SharePoint.ApplicationPages.dll, and System.Web.

Rename the automatically created Class1.cs to CustomLoginPage.cs. To save time and effort, the CustomLoginPage class will derive from Microsoft.SharePoint.ApplicationPages.LoginPage. Here's what the class should look like:

using System;
using System.Collections.Generic;
using System.Text;
using System.Web;
using System.Web.Security;

namespace SPSolutions.Custom
{
public class CustomLoginPage : Microsoft.SharePoint.ApplicationPages.LoginPage
{
protected override void OnLoad(EventArgs e)
{
base.OnLoad(e);
this.login.LoggedIn += new EventHandler(OnLoggedIn);
}

// Fires after user has sucessfully logged in
void OnLoggedIn(object sender, EventArgs e)
{
// Get the user
MembershipUser user = Membership.GetUser(this.login.UserName);

if (user != null)
{
// Do something interesting such as redirect or update CRM
}
}
}
}

As you can see, it is a simple matter of subscribing to the base page's login control's LoggedIn event, and then taking action when that event fires. Inside the event handler, you can instantiate a MembershipUser object for the newly logged in user, and then do something interesting.

It should also be noted that the login control has three other events which may be salient to your particular use case.

  • LoggingIn - Occurs when a user submits login information, but before authentication takes place.
  • Authenticate - Occurs when a user is authentication takes place.
  • LoggedIn - Occurs when a user logs in to the web site, and has been authenticated.
  • LoginError - Occurs when a login error is detected.

Next, open the CustomLogin.aspx page created in the first step, and modify its Assembly and Page declarations to point towards the new custom code behind assembly. If you're using my sample project, your declaration will look exactly like this:

<%@ Assembly Name="SPSolutions.Custom, Version=1.0.0.0, Culture=neutral, PublicKeyToken=e9db3057acd9c0f6"%> 
<%@ Page Language="C#" Inherits="SPSolutions.Custom.CustomLoginPage" MasterPageFile="~/_layouts/simple.master"%>

Finally, place the compiled assembly into the _app_bin folder of your SharePoint web application (e.g. C:/Inetpub/wwwroot/wss/VirtualDirectories/adventureworks.local.dev/_app_bin). Optionally, you could also place the assembly into the GAC.

Download SPSolutionsCustomLogin.zip

(Quick, painless registration is required for access to this download)

【多变量输入超前多步预测】基于CNN-BiLSTM的光伏功率预测研究(Matlab代码实现)内容概要:本文介绍了基于CNN-BiLSTM模型的多变量输入超前多步光伏功率预测方法,并提供了Matlab代码实现。该研究结合卷积神经网络(CNN)强大的特征提取能力与双向长短期记忆网络(BiLSTM)对时间序列前后依赖关系的捕捉能力,构建了一个高效的深度学习预测模型。模型输入包含多个影响光伏发电的气象与环境变量,能够实现对未来多个时间步长的光伏功率进行精确预测,适用于复杂多变的实际应用场景。文中详细阐述了数据预处理、模型结构设计、训练流程及实验验证过程,展示了该方法相较于传统模型在预测精度和稳定性方面的优势。; 适合人群:具备一定机器学习和深度学习基础,熟悉Matlab编程,从事新能源预测、电力系统分析或相关领域研究的研发人员与高校研究生。; 使用场景及目标:①应用于光伏电站功率预测系统,提升电网调度的准确性与稳定性;②为可再生能源并网管理、能量存储规划及电力市场交易提供可靠的数据支持;③作为深度学习在时间序列多步预测中的典型案例,用于科研复现与教学参考。; 阅读建议:建议读者结合提供的Matlab代码进行实践操作,重点关注数据归一化、CNN特征提取层设计、BiLSTM时序建模及多步预测策略的实现细节,同时可尝试引入更多外部变量或优化网络结构以进一步提升预测性能。
评论
成就一亿技术人!
拼手气红包6.0元
还能输入1000个字符
 
红包 添加红包
表情包 插入表情
 条评论被折叠 查看
添加红包

请填写红包祝福语或标题

红包个数最小为10个

红包金额最低5元

当前余额3.43前往充值 >
需支付:10.00
成就一亿技术人!
领取后你会自动成为博主和红包主的粉丝 规则
hope_wisdom
发出的红包
实付
使用余额支付
点击重新获取
扫码支付
钱包余额 0

抵扣说明:

1.余额是钱包充值的虚拟货币,按照1:1的比例进行支付金额的抵扣。
2.余额无法直接购买下载,可以购买VIP、付费专栏及课程。

余额充值