EPPlus is a .NET library that reads and writes Excel files using the Office Open XML format (xlsx). It is an unofficial and free .NET EPPlus book created for educational purposes. All the content is extracted from Stack Overflow Documentation, which is written by many hardworking individuals at Stack Overflow.
This open book is licensed under a Creative Commons License (CC BY-SA). You can download Learning .NET EPPlus ebook for free in PDF format (0.9 MB).
Table of Contents
Getting started with epplus
Append data to existing document
Columns and Rows
Creating formulas and calculate ranges
Filling the document with data
Importing data from existing file
Rich Text in cells
Saving the Excel document
Styling the Excel document
User Input Validation
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