top of page

Your certificate is now private

CertificateBackground.png

Certificate of Completion

ErdosHorizontal.png

THIS ACKNOWLEDGES THAT

HAS COMPLETED THE SPRING 2025 DATA SCIENCE BOOT CAMP

FNU Simran

Roman Holowinsky, PhD

APRIL 25, 2025

DIRECTOR

DATE

clear.png

TEAM

Discovering Next-Gen Battery Materials

Dorisa Tabaku, Avinash Karamchandani, Qinying Chen, Sadisha Nanayakkara, FNU Simran

clear.png

Building the next generation of batteries—efficient, compact, and sustainable—relies on discovering new materials with the right set of properties. Metal-organic frameworks (MOFs), a class of crystalline and porous materials, have emerged as promising candidates for battery electrodes due to their potential for electrical conductivity. One key property that influences a MOF’s conductivity is its band gap. However, state-of-the-art density functional theory (DFT) calculations used to compute band gaps are computationally expensive. In this project, our goal was to develop a machine learning model to predict the band gaps of MOFs, helping to rapidly identify promising candidates for future energy storage technologies such as next-generation batteries.

Screen Shot 2022-06-03 at 11.31.35 AM.png
github URL

©2017-2025 by The Erdős Institute.

bottom of page