MEAN Stack Implementation on Friends Book Application

Shivam Pandey

Abstract


One of the most prominent Technology Stacks is MEAN Stack. It's used to create a full-featured web application. Although it is a collection of distinct technologies, they are all based on the JavaScript programming language. A collection of JavaScript technologies used to construct online applications is referred to as the Mean Stack. This open-source stack provides a simple and systematic technique for quickly prototyping web-based apps. As a result, JavaScript is used all the way through the system, from client to server and server to database. MEAN is a full-stack development framework for building trustworthy internet apps quickly. MEAN is a simple-to-use stack for developing dynamic webpages and applications. In this paper, I'm going to show you how the mean stack is implemented on a project called Friends Book. This is a social media web app that has been deployed to heroku for further use.


Keywords


MEAN, NPM, JSON, JWT

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