Skip to content

Initial forray into Machine Learning using TensorFlow.js scaffolded on an Angular app

Notifications You must be signed in to change notification settings

crenaz/tensorflow-FirstApp

Repository files navigation

TensorflowFirstApp

Whelp, here we go barging head-first into the field of machine learning. As I am not a data scientist, I'll just be using fireship's TensorFlow tutorial.

Original README continues below

This project was generated with Angular CLI version 15.0.2.

Development server

Run ng serve for a dev server. Navigate to http://localhost:4200/. The application will automatically reload if you change any of the source files.

Code scaffolding

Run ng generate component component-name to generate a new component. You can also use ng generate directive|pipe|service|class|guard|interface|enum|module.

Build

Run ng build to build the project. The build artifacts will be stored in the dist/ directory.

Running unit tests

Run ng test to execute the unit tests via Karma.

Running end-to-end tests

Run ng e2e to execute the end-to-end tests via a platform of your choice. To use this command, you need to first add a package that implements end-to-end testing capabilities.

Further help

To get more help on the Angular CLI use ng help or go check out the Angular CLI Overview and Command Reference page.

About

Initial forray into Machine Learning using TensorFlow.js scaffolded on an Angular app

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published