Skip to content

This demo app is demonstrating ReactiveSearch which is built on top of ElasticSearch. It shows how Dropdownlist, search components work..

Notifications You must be signed in to change notification settings

rashidmajeed/reactivesearch

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

5 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Moviefinder using elasticsearch with react.

Link to prototype running on github pages

https://rashidmajeed.github.io/reactivesearch/

Description

  • In a prototype, User can search for movies from a large dataset given by appbase.io.
  • Search is too fast using the reactivesearch components backed by elasticsearch engine.
  • Reactivesearch components such as ReactiveBase, DataSearch,MultiDropDownList, ResultCard.

Reasoning of usage

  • Reactivebase is used as a wrapper to all components.
  • Datasearch component is used to search the desired data.
  • MultiDropDownList component works for selecting movies for different genres.
  • ResultCard component is used to present fetched data into the browser.
  • Using Resultcard component it is so easy to implement pagination.
  • User can search movies in just few milliseconds.
  • when prototype runs elasticsearch brings 13001 movies in 2ms. much faster :)

Elasticsearch and Reactivesearch concepts

Below is a few concepts for elasticsearch and reactivesearch…

What is Elastic Search and why we need?

  • Elasticsearch is a super fast, open-source, full-text search engine.
  • It allows us to store, search, and analyze amount of data quickly.
  • With Elasticsearch, you can build a fast search utilizing its powerful Query DSL.

Why Elasticsearch is better to use?

  • Elasticsearch is developed on Java, compatible on almost every platform.
  • Elasticsearch after one second the added document is searchable in this engine.
  • Creating full backups are easy by using Elasticsearch.
  • Elasticsearch uses JSON objects as responses, which makes it possible to invoke the * Elasticsearch server with a large number of different programming languages.

Comparison of Elasticsearch with RDBMS

  • Elasticsearch involves => Index, Mapping, Field, JSON Object
  • RDBMS involves => Database, Table, Field, Tuple

What is Reactivesearch and why we used to make a prototype

  • Elasticsearch data mapping, analyzers and tokenizers need to be set correctly otherwise you may not receive accurate search results back.
  • More filters with the search query, the more complex the resulting search query becomes.
  • Reactivesearch components connect with any Elasticsearch server and provide us queries.
  • Reactivesearch will help us to build UI widgets for filters and search related UI elements.

aETLs, or Syncing data to Elasticsearch

  • It can import MongoDB, SQL, JSON, CSV Data Into Elasticsearch.
  • abc can index the data into Elasticsearch.
  • This is currently only supported for MongoDB and Postgres.

Useful resources:

https://www.tutorialspoint.com/elasticsearch/index.htm/ https://www.elastic.co/products/elasticsearch https://opensource.appbase.io/reactivesearch/

Installation locally

npm install inside the project folder

To Start Demo

npm start

Visit browser

https://localhost:3000

About

This demo app is demonstrating ReactiveSearch which is built on top of ElasticSearch. It shows how Dropdownlist, search components work..

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published