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Journals

Separable Shape Tensors for Aerodynamic Design

Author(s)
Zachary J. Grey, Andrew Glaws, Olga Doronina
Airfoil shape design is a classical problem in engineering and manufacturing. In this work, we combine principled physics-based considerations for the shape

Validation of open-path dual-comb spectroscopy against an O2 background

Author(s)
Nathan Malarich, Brian Washburn, Kevin Cossel, Fabrizio Giorgetta, Griffin Mead, Daniel Herman, Nathan R. Newbury, Ian Coddington
Dual-comb spectroscopy measures greenhouse gas concentrations over kilometer-length open-air paths with high precision. However, characterizing the absolute

Iron-sulfur clusters are involved in post-translational arginylation

Author(s)
Verna Van, Janae Brown, Corin R. O’Shea, Hannah Rosenbach, Ijaz Mohamed, Nna-Emeka Ejimogu, Toan Bui, Veronika Szalai, Kelly Chacón, Ingrid Span, Aaron T. Smith
Eukaryotic arginylation is an essential post-translational modification that both modulates protein stability and regulates protein half-life through the N

Design and characterization of a protein fold switching network

Author(s)
David Travis Gallagher, Biao Ruan, Yanan He, Yingwei Chen, Eun Jung Choi, Yihong Chen, Dana Motabar, Tsega Solomon, Richard Simmerman, Thomas Kauffman, John Orban, Philip Bryan
Protein sequences encoding three common small folds (3-alpha, beta-grasp, and alpha/beta plait) were connected in a network of mutational pathways that

Device Modeling Bias in ReRAM-Based Neural Network Simulations

Author(s)
Imtiaz Hossen, Matthew Daniels, Martin Lueker-Boden, Andrew Dienstfrey, Gina Adam, Osama Yousuf
The study of resistive-RAM (ReRAM) devices for energy efficient machine learning accelerators requires fast and robust simulation frameworks that incorporate