Mark Liversedge 6ef1cb7b96 Update README.md
.. include references to community sharing via cloud db
   open data and erg db

[skip ci]
2023-06-05 10:37:13 +01:00
2023-04-22 21:13:34 -03:00
2023-06-05 10:02:33 +01:00
2023-03-20 22:01:47 -03:00
2023-04-14 20:02:39 -03:00
2021-10-06 11:01:04 +01:00
2023-03-16 15:28:29 -03:00
2023-03-20 22:01:47 -03:00
2018-06-02 11:01:43 +01:00
2019-03-12 19:16:22 +00:00
2022-10-30 12:16:46 -03:00
2023-06-05 10:37:13 +01:00

GoldenCheetah

About

GoldenCheetah is a desktop application for cyclists and triathletes and coaches

  • Analyse using summary metrics like BikeStress, TRIMP or RPE
  • Extract insight via models like Critical Power and W'bal
  • Track and predict performance using models like Banister and PMC
  • Optimise aerodynamics using Virtual Elevation
  • Train indoors with ANT and BTLE trainers
  • Upload and Download with many cloud services including Strava and Todays Plan
  • Import and export data to and from a wide range of bike computers and file formats

GoldenCheetah provides tools for users to develop their own own metrics, models and charts

  • A high-performance and powerful built-in scripting language
  • Local Python runtime or embedding a user installed runtime
  • Embedded user installed R runtime

GoldenCheetah supports community sharing via the Cloud

  • Upload and download user developed metrics
  • Upload and download user, Python or R charts
  • Import indoor workouts from the ErgDB
  • Share anonymised data with researchers via the OpenData initiative

GoldenCheetah is free for everyone to use and modify, released under the GPL v2 open source license with pre-built binaries for Mac, Windows and Linux.

Installing

Golden Cheetah install and build instructions are documented for each platform;

INSTALL-WIN32 For building on Microsoft Windows

INSTALL-LINUX For building on Linux

INSTALL-MAC For building on Apple OS X

macOS and Linux: Build Status

Windows: Build status

Coverity Status

Official release builds, snapshots and development builds are all available from http://www.goldencheetah.org

NOTIO Fork

If you are looking for the NOTIO fork of GoldenCheetah it can be found here: https://github.com/notio-technologies/GCNotio

Languages
Standard ML 68.3%
C++ 28.1%
C 2.7%
Yacc 0.2%
QMake 0.2%
Other 0.1%