no code implementations • 24 Sep 2024 • Yash Gandhi, Kexin Zheng, Birendra Jha, Ken-ichi Nomura, Aiichiro Nakano, Priya Vashishta, Rajiv K. Kalia
Forecasting oil production from oilfields with multiple wells is an important problem in petroleum and geothermal energy extraction, as well as energy storage technologies.
1 code implementation • 14 Mar 2023 • Hikaru Ibayashi, Taufeq Mohammed Razakh, Liqiu Yang, Thomas Linker, Marco Olguin, Shinnosuke Hattori, Ye Luo, Rajiv K. Kalia, Aiichiro Nakano, Ken-ichi Nomura, Priya Vashishta
Specifically, Allegro-Legato exhibits much weaker dependence of timei-to-failure on the problem size, $t_{\textrm{failure}} \propto N^{-0. 14}$ ($N$ is the number of atoms) compared to the SOTA Allegro model $\left(t_{\textrm{failure}} \propto N^{-0. 29}\right)$, i. e., systematically delayed time-to-failure, thus allowing much larger and longer NNQMD simulations without failure.
no code implementations • 2 Dec 2022 • Kuang Liu, Rajiv K. Kalia, Xinlian Liu, Aiichiro Nakano, Ken-ichi Nomura, Priya Vashishta, Rafael Zamora-Resendizc
Machine learning (ML) is revolutionizing protein structural analysis, including an important subproblem of predicting protein residue contact maps, i. e., which amino-acid residues are in close spatial proximity given the amino-acid sequence of a protein.
no code implementations • 6 Nov 2020 • Taufeq Mohammed Razakh, Beibei Wang, Shane Jackson, Rajiv K. Kalia, Aiichiro Nakano, Ken-ichi Nomura, Priya Vashishta
We have developed a novel differential equation solver software called PND based on the physics-informed neural network for molecular dynamics simulators.
no code implementations • 14 Sep 2020 • Pankaj Rajak, Aravind Krishnamoorthy, Ankit Mishra, Rajiv K. Kalia, Aiichiro Nakano, Priya Vashishta
Predictive materials synthesis is the primary bottleneck in realizing new functional and quantum materials.
no code implementations • 28 Nov 2018 • I-Cheng Tung, Aravind Krishnamoorthy, Sridhar Sadasivam, Hua Zhou, Qi Zhang, Kyle L. Seyler, Genevieve Clark, Ehren M. Mannebach, Clara Nyby, Friederike Ernst, Diling Zhu, James M. Glownia, Michael E. Kozina, Sanghoon Song, Silke Nelson, Hiroyuki Kumazoe, Fuyuki Shimojo, Rajiv K. Kalia, Priya Vashishta, Pierre Darancet, Tony F. Heinz, Aiichiro Nakano, Xiaodong Xu, Aaron M. Lindenberg, Haidan Wen
X-ray scattering is one of the primary tools to determine crystallographic configuration with atomic accuracy.
Materials Science