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Learner Reviews & Feedback for Materials Data Sciences and Informatics by Georgia Institute of Technology

4.5
stars
341 ratings

About the Course

This course aims to provide a succinct overview of the emerging discipline of Materials Informatics at the intersection of materials science, computational science, and information science. Attention is drawn to specific opportunities afforded by this new field in accelerating materials development and deployment efforts. A particular emphasis is placed on materials exhibiting hierarchical internal structures spanning multiple length/structure scales and the impediments involved in establishing invertible process-structure-property (PSP) linkages for these materials. More specifically, it is argued that modern data sciences (including advanced statistics, dimensionality reduction, and formulation of metamodels) and innovative cyberinfrastructure tools (including integration platforms, databases, and customized tools for enhancement of collaborations among cross-disciplinary team members) are likely to play a critical and pivotal role in addressing the above challenges....

Top reviews

RR

Sep 22, 2018

Machine learning part and its application to material science was interesting but informative contents like material dev eco system and whole week 1 was more informative than logical

MR

Jul 11, 2024

This course effectively bridged the gap between materials science and data-driven methodologies, introducing advanced techniques for managing and analyzing complex materials data.

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76 - 84 of 84 Reviews for Materials Data Sciences and Informatics

By Sukru T

Dec 17, 2020

it was very good and useful.

By Chandramouli S

Jul 2, 2021

Some topics were very lightly touched while some of them were outright skipped. For example the instructor said the topic of leave one out cross validation was done earlier while it wasn't. Overall I was an insightful course for those who want to link Material Science and Computation/Modelling but the caveat is a lot of external reading is suggested and I would suggest you might have a basic data science/Linear algebra knowledge for PCA analysis and Spatial Correlations along with python for pyMKS system.

By Javier G M

Jun 5, 2020

Not bad, but it would be better with a bit of hands-on practice.

By Xin L

Dec 30, 2019

interesting class

By CEDRIC T

Dec 4, 2019

The course gives a "good" overview of some techniques but is way too descriptive, way too theoretical. There is no progressive (computational) practice. The major flaws of this course are: 1)no handouts of the slides provided, 2) reference to papers are not clickable URL's, 3) PyMKS runs in Python 2.7 (not 3.4) with many modules deprecated. Running this PyMks is therefore not easy at all and bugged with the environments. Once you get in the course is just about replicating some logic without going in-depth of the potential of this tool. As well , what are more up to date tools to be used? 5) instructors are not really good at teaching , 6) there is no active learners community at this period (november 2019)

By Rachel H

May 20, 2020

It took until the last 15 minutes of week 5 to get to the actual data science...

By Henry Z

Apr 25, 2018

照本宣科。以及习题的设置,怕不是在开玩笑?

By Shijie Z

Aug 27, 2017

Too much talk about general idea. Lack of practice to learn skills