jankawulok / vue-storefront-api

Vue.js storefront for Magento2 (and not only) - data backend

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

REST API backend for vue-storefront

This is a backend service for vue-storefront. Provides data access to product catalog (via ElasticSearch) and allows users to place orders into order queue (by default it's Redis queue supported via kqueue library).

Vue Storefront

Vue Storefront is a standalone PWA (Progressive Web Application ) storefront for your eCommerce, possible to connect with any eCommerce backend (eg. Magento, Prestashop or Shopware) through the API.

Vue Storefront is and always will be in the open source. Anyone can use and support the project, we want it to be a tool for the improvement of the shopping experience. The project is still in the prove of concept phase. We are looking for Contributors and Designer willing to help us the the solution development.

Vue Storefront was build as a all-in-one front-end for eCommerce. For providing the best performance we decided to use Vue.js as a front-end library, Node.js + Express (and maybe GraphQL support) as a server-API, Elastic Search as a database of products and full PWA/off-line support. Here you can read more about the proof of concept for Vue Storefront connected with Magento2.

Besides a big improvement for the shopping experience, we also want to create a great code base for every developer who needs to work on a front-end application for the eCommerce.

Requirements

  • Node.js 8.x or higher
  • Docker and Docker Compose
  • ImageMagick (to fit, resize and crop images)

Installation

Warm up ElasticSearch Cluster and Redis

docker-compose up -d

npm run migrate to execute all data migrations up to date

Import product catalog

Product catalog is imported using elasticdump, which is installed automatically via project dependency. The default ElasticSearch index name is: vue_storefront_catalog

npm run restore

It restores JSON documents stored in ./var/catalog.json. The opposite command - used to generate catalog.json file from running ElasticSearch cluster:

npm run dump

Run development server

Code auto reload is enabled along with ESLint, babel support.

PORT=8080 npm run dev

Access ElasticSearch data with Kibana

A Kibana service is available to explore, search and visualize indexed data at the following url:

http://localhost:5601/

At first access it will ask to specify an index pattern, insert vue_storefront*

API access

Catalog API calls are compliant with ElasticSearch (it works like a filtering proxy to ES). More on ES queries: ElasticSearch queries tutorial

Elastic search endpoint: http://localhost:8080/api/catalog/search/<INDEX_NAME>/. You can run the following command to check if everything is up and runing (it assumes vue_storefront_catalog as default index name):

curl -i http://localhost:8080/api/search/vue_storefront_catalog/_search?query=*

Data formats

This backend is using ElasticSearch data formats popularized by ElasticSuite for Magento2 by Smile.fr.

Data migrations

Please use data migration mechanism provided to manipulate Redis, ElasticSearch or kue. Details: https://github.com/DivanteLtd/vue-storefront-api/tree/master/doc

Adding custom modules with own dependencies (Yarn only)

When adding custom Extensions to the API you might want to define some dependencies inside them. Thanks to Yarn workspaces dependecies defined inside your custom module will be intaled when you execute yarn at project root level, so it's way esier and faster than installing all modules dependcies separetly.

To do this, define the package.json with your dependencies in your custom module:

  • src/api/extensions/{your-custom-extension}/package.json
  • src/platforms/{your-custom-platform}/package.json

Executing yarn at root level will also download your custom modules dependencies.

NOTE: npm users will still have to install the dependencies individually in their modules.

License

MIT

About

Vue.js storefront for Magento2 (and not only) - data backend

License:MIT License


Languages

Language:JavaScript 100.0%