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Creating the new Project in Asp.net Core


In this article, I'm going to be using Visual Studio to work on this project. Since .NET Core works across platforms, including Linux and Mac, you might be using a different environment, like Visual Studio Code or Visual Studio for the Mac.  I am using Visual Studio and our first order of business is going to be to create the AcmeCore application that we want to work on.  I want to create a New, Project. And from the .NET Core templates

First of all Open visual studio , click on File Menu, select new project as below.




 I'm going to be taken to a second screen where I can select the specific type of template that I want to use to create this application. I'm going to tell Visual Studio that I want to use the .NET Core Web framework



Select the directory where you want to create the project and give project name


After that you will be taken to the below screen where you can select ASP.NET Core 2.1 on top of .NET Core. And I want to build a Web Application, not a Web Application (Model-View-Controller), a Web Application. And I'm going to leave all the other current settings at their default settings. So we will configure this for HTTPS. We're not going to enable Docker support. We're not going to start with any authentication. With that, I should be able to press OK to create this project


We will see the project created in solution explorer



Let's hit Ctrl+F5. Ctrl+F5 is the default Visual Studio keyboard shortcut to run my project without a debugger attached. You can also execute this command by going to the DEBUG menu in Visual Studio and selecting Run Without Debugging. This will start a web server with my app. It's also going to launch a web browser that appears on a different window. So let me drag this over to the screen, and this is the application we're going to start with. It's running on localhost port 44369. Your port might be different, but this is over HTTPS, and it has just a few basic features where I can view a Home page, and About page, and a Contact page. This is the starting point for our application.



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