Skip to content
/ GEQE Public
forked from Sotera/GEQE

Geo Event Quey by Example - Leverage geo-located temporal text data in order to identify similar locations or events.

License

Notifications You must be signed in to change notification settings

nagyistge/GEQE

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

GEQE - Geo Event Query by Example VERSION 0.1.1-dev - public beta

The GEQE tool (pronounced "Jeh Key") is aimed at leveraging geo-located temporal text data in order to identify locations or events of similar nature. For more detailed information about our machine learning methods read the white paper. This repository is organized as follows

  1. geqe-ml: Apache Spark machine learning scripts. Can be used as a standalone project via command line interface with an Apache Spark Cluster, or as the back end to the geqe web application.

  2. geqe-comm: Communication Layer / Utility, allows front ends to execute spark jobs and contains various data-loaders.

  3. Data service (sotera/GEQEDataService): Loopback-based data API server. Abstracts all database interactions for the web app into an easy to use and discover REST API. The server can be used as an integration point between the geqe-ml backend and other front end applications.

  4. Web app (sotera/GEQEWebApp): NodeJS server provides a UI for training / applying models and exploring results.

Getting Started

  1. First go to the geqe-ml directory and see the README and docs. You'll need to setup some data and an Apache Spark Cluster. For front end development only you can setup a MOCK service in place of an actual geqe-ml backend, see geqe-comm/MockGeqeConsumer.py

  2. Install GEQEDataService (see project README)

  3. Install GEQEWebApp (see project README)

  4. Run a GeqeConsumer (see geqe-comm) to execute geqe jobs on your spark cluster.

About

Geo Event Quey by Example - Leverage geo-located temporal text data in order to identify similar locations or events.

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 74.6%
  • JavaScript 21.9%
  • HTML 1.9%
  • Other 1.6%