Skip to content

Wells Fargo's Campus Analytics Challenge: Live Green and Live Happy

Notifications You must be signed in to change notification settings

nicksspirit/live_green_live_happy

Repository files navigation

live_green_live_happy

Wells Fargo's Campus Analytics Challenge: Live Green and Live Happy

One of Wells Fargo’s priorities is to promote environmental sustainability, which includes accelerating the transition to a low-carbon economy. Taking individual actions can encourage collective responsibility to help achieve this. Using machine learning, create a data product to help individuals optimize the balance between their carbon footprint and quality of life. The data gives a peek into the lives of 1,000 individuals who rated several everyday activities (taking a long shower, driving a car, etc.) on a scale of 1-100 based on how important those activities are to their daily lives.

Objective

The goal of this project is to create a machine learning algorithm that minimizes carbon footprint for each customer while maintaining their total quality of life.

Deliverables

  • Written description of how the data product succeeds mathematically in minimizing an individual’s carbon footprint with minimal negative impact on their utility
  • Explain why the data product created is a good example of machine learning in action
  • General idea of how individuals would interface eg. a visual representation of the app
  • Documented code that is operational and can be run using the data provided

Rules of the Competition Campus-Analytics-2018-Challenge-LONG-Rules-Final.docx

The Team

  • Nick (@odintech3)
  • Spandana (@spandanasudalagunta)
  • Tina (@davinia1991)
  • Prof. Murali Shanker (@mshanker1)

About

Wells Fargo's Campus Analytics Challenge: Live Green and Live Happy

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published