FOSS Digital Asset Distribution Platform built on Frappe.

Overview

Digistore

FOSS Digital Assets Marketplace. Distribute digital assets, like a pro.

Video Demo Here

Features

  • Create, attach and list digital assets (PDFs, mp3s, videos and more..)
  • Modern and Clean UI (built using tailwindCSS)
  • Single-page application for smooth UX
  • Create products and add information (images, descriptions etc.)
  • And create differents tiers (plans) for the products.

Different plans can have different prices and a set of assets that go with the plan.

Installation

  1. Install Frappe Bench
  2. Create a new site:
$ bench new-site <your-site>
  1. Install digistore app
$ bench get-app https://github.com/NagariaHussain/digistore.git
$ bench --site <your-site> install-app digistore

Demo

  1. User Store Front

  1. Users can only access thier purchased assets

  1. Purchase directly through Stripe

  1. Frappe Admin Interface: Let's you easily create products, plans, assets and more.

License

MIT

Owner
Mohammad Hussain Nagaria
Software Engineer & Coding Instructor
Mohammad Hussain Nagaria
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