A mini-course offered to Undergrad chemistry students

Overview

The best way to use this material is by forking it by click the Fork button at the top, right corner. Then you will get your own copy to play with!

The presentation and the notebooks are prepared for the lecture Computer-based Exercises in Physical Chemistry on 26 December 2021 as a part of the program National Initiative on Undergraduate Science (NIUS). NIUS is an initiative of the Homi Bhabha Centre for Science Education, TIFR.

Click the slides below for the presentation

You can access the notebooks interactively here https://mybinder.org/v2/gh/raghurama123/Comp_PhysChem_Basic/HEAD

Owner
Raghu
Assistant Professor
Raghu
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