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Researcher
- Kyle Kelley
- Rama K Vasudevan
- Costas Tsouris
- Gs Jung
- Gyoung Gug Jang
- Olga S Ovchinnikova
- Radu Custelcean
- Sergei V Kalinin
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- Marti Checa Nualart
- Maxim A Ziatdinov
- Md Inzamam Ul Haque
- Mina Yoon
- Neus Domingo Marimon
- Stephen Jesse
- Steven Randolph
- Yongtao Liu

Among the methods for point source carbon capture, the absorption of CO2 using aqueous amines (namely MEA) from the post-combustion gas stream is currently considered the most promising.

The invention introduces a novel, customizable method to create, manipulate, and erase polar topological structures in ferroelectric materials using atomic force microscopy.

High coercive fields prevalent in wurtzite ferroelectrics present a significant challenge, as they hinder efficient polarization switching, which is essential for microelectronic applications.

A novel molecular sorbent system for low energy CO2 regeneration is developed by employing CO2-responsive molecules and salt in aqueous media where a precipitating CO2--salt fractal network is formed, resulting in solid-phase formation and sedimentation.

This invention presents technologies for characterizing physical properties of a sample's surface by combining image processing with machine learning techniques.

This invention introduces a system for microscopy called pan-sharpening, enabling the generation of images with both full-spatial and full-spectral resolution without needing to capture the entire dataset, significantly reducing data acquisition time.

This innovative approach combines optical and spectral imaging data via machine learning to accurately predict cancer labels directly from tissue images.