Research

Experimental Inorganic and Solid-State Chemistry

Machine Learning to Accelerate Materials Discovery

DFT Calculations to Unravel the Electronic Structure of Materials

My primary research focuses on experimental Inorganic and Solid-State Chemistry, integrating advanced machine learning algorithms and first-principle quantum calculations.  


1. Oxychalcogenides: Investigating materials with insulating and semiconducting blocks in their crystal structure, allowing precise tuning of band gaps for electrocatalytic applications (HER and OER) and thermoelectrics. [Link1] [Link2] 


2. Chalcogenides: Exploring materials for semiconducting applications, including their use in photovoltaic cells and catalysis. [Link1] [Link2] [Link3] [Link4] 


3. Intermetallics: Studying materials for their magnetic and resistivity properties. [Link1] [Link2] [Link3] 


4. Coloured Intermetallics: Investigating materials with intriguing colors, potentially applicable in jewelry and battery technologies. [Link1] [Link2] 


I grow single crystals of these materials through high-temperature standard solid-state synthesis and employ Bruker's Platform, D8 Venture single-crystal X-ray diffractometer for crystallographic analysis. Phase purity of powder samples is confirmed using Bruker D8 advance powder X-ray diffractometer, and the quality and composition of single crystals are assessed through Jeol scanning electron microscope, Zeiss Sigma 300 VP-FESEM, and EDX analysis. Diffuse reflectance measurements are conducted to determine optical band gaps.


Following the experimental discovery of materials, I delve into understanding their electronic properties, including band structure and Density of States. Chemical bonding is explored to quantify ionicity and covalency in constructing these materials.


Recently, I've incorporated machine learning algorithms to expedite material discovery. Employing ML, I classify and predict new materials such as Perovskites, Spinels, and non-centrosymmetric compounds for applications in solid oxide fuel cells, catalysts, lasers, and solar cells.


Predictions of materials and related properties from ML results are only helpful when they can be realized experimentally. Thus, after predictions, I verify them experimentally on a laboratory scale.