Skip to content

Exploratory Data Analysis using machine learning techniques as an exercise for GLY6932 (Data Science and Machine Learning Methods in the Geosciences) at the University of Florida.

Notifications You must be signed in to change notification settings

katiebristol/epsilon_Fe2O3_controls

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

9 Commits
 
 
 
 
 
 

Repository files navigation

epsilon_Fe2O3_controls

A Jupyter notebook for Exploratory Data Analysis using machine learning techniques. This was made as an exercise for GLY6932 (Data Science and Machine Learning Methods in the Geosciences) at University of Florida.

Purpose

The purpose of this notebook is to explore which factors may be controlling the formation of ε-Fe2O3 in North American Clinker Deposits. To do this, I used machine learning techniques (Principal component analysis, K-means clustering, and a random forest classifier) via the scikit-learn library.

How to use

See an interactive version of the notebook below:

Binder

Simply launch the binder (be patient while it loads), select the notebook, and run the cells. Markdown has been added to the notebbok to walk you through the results.

Alternatively, you can view the code and outputs of the notebook here on GitHub.

Data

The data used in this exercise is a combination of previously published data (Sprain et al., 2021) and unpublished data. The unpublished data is part of a manuscript that is currently in preparation (unrelated to this exercise).

About

Exploratory Data Analysis using machine learning techniques as an exercise for GLY6932 (Data Science and Machine Learning Methods in the Geosciences) at the University of Florida.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages