Research Interests
Research Interests
Materials Genome Initiative
Exploiting the powerfulness of high-throughput automated experiments for exploring vast properties of optoelectronic materials
High-Throughput Automated Synthesis
High-throughput robotic synthesis and characterizations allow for a comprehensive understanding of the materials system, which broadens its physical and chemical insights that pave the way for materials designing with desired functionalities.
Machine Learning Integrated Materials Explorations and Accelerated Discovery
Machine learning enables prompt and comprehensive data interpretation across a massive dataset, where human cannot catch and explore. This can significantly saves the precious time and efforts of human to be used in a more valuable tasks.
Spatially Resolved Materials Characterizations
Conventional materials characterization relies on a global analysis in an ensemble system. In fact, there are significant local phase/materials homogeneities in a materials system that are associated with chemical complexity. Various state-of-the-art spatially resolved characterizations allow us to understand a comprehensive understanding of the materials, which cannot be identified in the conventional, ensemble-based global characterizations.