Skip to content

🌏 Live visualization of all the pokemon in your area... and more!

License

Notifications You must be signed in to change notification settings

evenly-epic-mule/PokemonGo-Map

 
 

Repository files navigation

PokemonGo Map

Python 2.7 License Build Status Donate

Live visualization of all the pokemon (with option to show gyms and pokestops) in your area. This is a proof of concept that we can load all the pokemon visible nearby given a location. Currently runs on a Flask server displaying Google Maps with markers on it.

Map

Features:

  • Shows Pokemon, Pokestops, and gyms with a clean GUI.
  • Notifications
  • Lure information
  • Multithreaded mode
  • Filters
  • Independent worker threads (many can be used simulatenously to quickly generate a livemap of a huge geographical area)
  • Localization (en, fr, pt_br, de, ru, ja, zh_tw, zh_cn, zh_hk)
  • DB storage (sqlite or mysql) of all found pokemon
  • Incredibly fast, efficient searching algorithm (compared to everything else available)

Information

  • Twitter for status updates
  • Website for general introduction
  • Forum for most issues and support
  • Discord for general support
  • Documentation for installation and usage docs
  • feathub to request new features Use a Github issue, tag with [Feature Request].
  • Github Issues for reporting bugs (not for support!)

Installation

For instructions on how to setup and run the tool, please refer to the project documentation or the video guide.

Deployment

Deploy Deploy on Scalingo

iOS Version

There is an iOS port in the works. All iOS related prs and issues please refer to this repo.

Contributions

Please submit all pull requests to develop branch.

Building off tejado's python pgoapi, Mila432's API, leegao's additions and Flask-GoogleMaps. Current version relies primarily on the pgoapi and Google Maps JS API.

About

🌏 Live visualization of all the pokemon in your area... and more!

Resources

License

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 88.4%
  • JavaScript 6.2%
  • CSS 3.8%
  • HTML 1.3%
  • Other 0.3%