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Researcher
- Amit Shyam
- Beth L Armstrong
- Peeyush Nandwana
- Alex Plotkowski
- Brian Post
- Jun Qu
- Rangasayee Kannan
- Sudarsanam Babu
- Yong Chae Lim
- Zhili Feng
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- Corson Cramer
- James A Haynes
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- Jian Chen
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- Mike Zach
- Raymond Borges Hink
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- Steve Bullock
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- Thomas Feldhausen
- Tomas Grejtak
- Wei Zhang
- Ying Yang
- Yousub Lee
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- Burak Ozpineci
- Carter Christopher
- Chance C Brown
- Charlie Cook
- Christopher Fancher
- Christopher Hershey
- Christopher Ledford
- Craig Blue
- Dali Wang
- Daniel Rasmussen
- David J Mitchell
- Dean T Pierce
- Debjani Pal
- Debraj De
- Elizabeth Piersall
- Emilio Piesciorovsky
- Emrullah Aydin
- Ethan Self
- Gabriel Veith
- Gary Hahn
- Gautam Malviya Thakur
- Gerry Knapp
- Glenn R Romanoski
- Gordon Robertson
- Govindarajan Muralidharan
- Hsin Wang
- Isaac Sikkema
- Isabelle Snyder
- James Gaboardi
- Jay Reynolds
- Jeff Brookins
- Jeffrey Einkauf
- Jennifer M Pyles
- Jesse McGaha
- Jiheon Jun
- John Lindahl
- Jordan Wright
- Joseph Olatt
- Jovid Rakhmonov
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- Kevin Sparks
- Khryslyn G Araño
- Kunal Mondal
- Kuntal De
- Laetitia H Delmau
- Liz McBride
- Luke Sadergaski
- Mahim Mathur
- Marm Dixit
- Matthew S Chambers
- Michael Kirka
- Mingyan Li
- Mostak Mohammad
- Nancy Dudney
- Nedim Cinbiz
- Nicholas Richter
- Nils Stenvig
- Omer Onar
- Oscar Martinez
- Ozgur Alaca
- Padhraic L Mulligan
- Peter L Fuhr
- Peter Wang
- Priyanshi Agrawal
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- Rose Montgomery
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- Sergiy Kalnaus
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- Tim Graening Seibert
- Todd Thomas
- Tolga Aytug
- Tony Beard
- Trevor Aguirre
- Venugopal K Varma
- Weicheng Zhong
- Wei Tang
- William Peter
- Xiang Chen
- Xiuling Nie
- Yanli Wang
- Yarom Polsky
- Yiyu Wang
- Yukinori Yamamoto
- Yutai Kato

Often there are major challenges in developing diverse and complex human mobility metrics systematically and quickly.

A finite element approach integrated with a novel constitute model to predict phase change, residual stresses and part deformation.

Ruthenium is recovered from used nuclear fuel in an oxidizing environment by depositing the volatile RuO4 species onto a polymeric substrate.

Currently available cast Al alloys are not suitable for various high-performance conductor applications, such as rotor, inverter, windings, busbar, heat exchangers/sinks, etc.

The invented alloys are a new family of Al-Mg alloys. This new family of Al-based alloys demonstrate an excellent ductility (10 ± 2 % elongation) despite the high content of impurities commonly observed in recycled aluminum.

This technology can help to increase number of application areas of Wireless Power Transfer systems. It can be applied to consumer electronics, defense industry, automotive industry etc.

The lack of real-time insights into how materials evolve during laser powder bed fusion has limited the adoption by inhibiting part qualification. The developed approach provides key data needed to fabricate born qualified parts.

This invention is directed to a machine leaning methodology to quantify the association of a set of input variables to a set of output variables, specifically for the one-to-many scenarios in which the output exhibits a range of variations under the same replicated input condi

A new nanostructured bainitic steel with accelerated kinetics for bainite formation at 200 C was designed using a coupled CALPHAD, machine learning, and data mining approach.