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Aini Palizhati

Showing results (1-10 of 4) with videos related to

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Journal of Chemical Information and Modeling|November 21, 2018
Dynamic Workflows for Routine Materials Discovery in Surface ScienceKevin Tran, Aini Palizhati, Seoin Back, et al.
Journal of Chemical Information and Modeling|October 24, 2019
Toward Predicting Intermetallics Surface Properties with High-Throughput DFT and Convolutional Neural NetworksAini Palizhati, Wen Zhong, Kevin Tran, et al.
The Journal of Chemical Physics|August 20, 2022
Screening of bimetallic electrocatalysts for water purification with machine learningRichard Tran, Duo Wang, Ryan Kingsbury, et al.
Scientific Reports|March 19, 2022
Agents for sequential learning using multiple-fidelity dataAini Palizhati, Steven B Torrisi, Muratahan Aykol, et al.
Pageof 1

Showing results (1-10 of 4) with videos related to

Sort By:
Pageof 1
Journal of Chemical Information and Modeling|November 21, 2018
Dynamic Workflows for Routine Materials Discovery in Surface ScienceKevin Tran, Aini Palizhati, Seoin Back, et al.
Journal of Chemical Information and Modeling|October 24, 2019
Toward Predicting Intermetallics Surface Properties with High-Throughput DFT and Convolutional Neural NetworksAini Palizhati, Wen Zhong, Kevin Tran, et al.
The Journal of Chemical Physics|August 20, 2022
Screening of bimetallic electrocatalysts for water purification with machine learningRichard Tran, Duo Wang, Ryan Kingsbury, et al.
Scientific Reports|March 19, 2022
Agents for sequential learning using multiple-fidelity dataAini Palizhati, Steven B Torrisi, Muratahan Aykol, et al.
Pageof 1