Skip to content

MathBunny/strava-wind-analysis

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Strava Wind Analysis
Bringing machine learning analytics, data visualization and weather data to cycling activities and segments.

Build Status GitHub issues Uptime Robot ratio (7 days) node npm release GitHub license

Features

  • Strava OAuth authentication
  • Performance analytics on historical segment and aggregate data
  • Interactive charts using chart.js, Google Maps integration
  • Wind analysis using DarkSky API and vector manipulation algorithm
  • Individual modals with athlete-specific statistics on segment leaderboard
  • Linear regression and interpolation tools using scikit-learn
  • Segment and ride filtering options (distance, speed, etc.)
  • Content-based segment recommendation engine for scrolling feed
  • Improved performance with Redis caching
  • Integration with MongoDB including weather API throttling and user profiles
  • Legacy website support

Screenshots

Strava Wind Analysis Strava Wind Analysis Strava Wind Analysis Strava Wind Analysis Strava Wind Analysis Strava Wind Analysis Strava Wind Analysis

Build, Configure and Run

First, install the dependencies. Ensure you have Node.js installed and npm:

npm install

Now setup the configuration file in the root folder as follows (saved as config.js):

const clientID = 0;
const clientSecret = "0";
const callbackURL = "http://localhost:3000/login/callback";
const weatherKey = "YourDarkSkyWeatherKey";
const port = 3000;
const accessToken = "0";
const mlEndpoint = "YourMLEndPoint";
const defaultExpirationTime = 7200; // Redis cache expiration time
const mongoDBUrl = ''; // MongoDB url
const dailyDarkSkyLimit = 500; // Hard limit on API calls per day
const elasticsearchendpoint = 'YourElasticsearchEndpoint';

exports.clientID = clientID;
exports.clientSecret = clientSecret;
exports.callbackURL = callbackURL;
exports.port = port;
exports.weatherKey = weatherKey;
exports.accessToken = accessToken;
exports.mlEndpoint = mlEndpoint;
exports.defaultExpirationTime = defaultExpirationTime;
exports.mongoDBUrl = mongoDBUrl;
exports.dailyDarkSkyLimit = dailyDarkSkyLimit;
exports.elasticsearchendpoint = elasticsearchendpoint;

Now setup a Redis instance and direct it to localhost with port 6379 (default configuration).

Install and run the machine learning server with Flask:

FLASK_APP=app.py flask run

To start the server use:

npm start

Running Tests

You can run tests using Mocha and Chai:

npm test

Contributing

Feel free to submit a pull request. The coding conventions of this app follow the Airbnb base style guide.