ExportToExcel SharePointSolutionInstaller

本文详细介绍了如何安装并使用ExportListToExcel功能,将SharePoint列表导出为Excel文件,方便报告制作。通过几步简单的操作,用户可以将列表数据转换为可编辑和分析的Excel格式。

Export List to Excel
This document depicts the installation details of Export to Excel feature.
Steps to be followed:
1. Unzip the given file.
2. Run setup.exe, it will install ExcelToExcel feature in site level.
3. Login to the SharePoint site
a. Go to Site ActionsSite Settings
b. Under Site Administration section click Site Features
c. Activate the feature named Export List To Excel
4. Navigate to any document library or custom list. You can see the Export List to Excel
feature under Actions tab.
5. On clicking the feature, it will generate an excel sheet with contents of the list. Now you
can save the list as an excel file.

 

 

EXPORT LIST TO EXCEL

Why: To export a sharepoint list in to an excel sheet.

Description:  A custom feature which provides an option to export a sharepoint list into an excel sheet. It will be more useful at the time of taking reports. All the datas are stored in a sharepoint list and through this feature we can tranfer it in to an excel sheet. Finally we can able to take any kind of reports from the generated excel sheet.

Screenshots: Below are some of the screenshots for Export List To Excel Feature

Export List To Excel Feature Screen02Installation document: Click the below link to download an installation document for Export List To Excel Feature.

Download link: Just download a copy by clicking the below link.

http://www.vana.in/Pages/ExportToExcel.aspx

 

 

 

 

转载于:https://www.cnblogs.com/Areas/archive/2012/05/24/2516812.html

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