Skip to content

Machine Learning to Regionalize Data and perform geospatial clustering

Notifications You must be signed in to change notification settings

ShanRaye/regionalization_model

Repository files navigation

regionalization_model

Machine Learning to Regionalize Data and perform geospatial clustering

Read a csv of historical loads booked from 2018 - May 2021, evaluating customer mix, carrier mix, and limiting volume distribution to create optimized regions in the US for satellite offices. Using seaborn, numpy and pysal, perform geospatial clustering using the origin state of shipments to regionalize across 5 clusters to optimize volume and balance office load. This solves for issues including underdeveloped markets having less load volume causing poor KPIs from satellite offices which have less market to serve.

About

Machine Learning to Regionalize Data and perform geospatial clustering

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published