Hands-on Learning Modules on Data Science and Machine Learning in Engineering
Discoverability: Visible
Join Policy: Open/Anyone
Created: 29 Sep 2020
Overview
This series of modules introduces key concepts in data science in the context of application in materials science and engineering. The end to end modules include:
The modules are self-contained and modular, they are designed for easy incorporation into existing courses or for those interested in self-study.
All interactive computing is performed using cloud computing in nanoHUB, there is no need to download or install any software. All resources are open and free.
Knowledge and Skills
Data collection, completeness, and provenance:
Data storage and sharing:
Data querying, organization, and filtering:
Data visualization:
Digital representation and descriptors for materials:
Simple regression models:
Machine learning models for regression and classification:
Random forests and decision trees:
Uncertainty quantification
(coming soon):
(coming soon):
Coming Soon
Active learning for design of experiments:
Pre-requisites
The interactive computing is performed using Python through Jupyter notebooks. Basic programming skills are required. An introductory tutorial on Jupyter, Python and Plotting is available.
Module list
MODULE 6
QUANTIFYING UNCERTAINTIES IN MACHINE LEARNING MODELS

Coming soon