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Christiane Lemieux

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

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ACS ES&T Air|February 19, 2026
Efficient Simulation of a Leak-Detection-and-Repair ProgramChristiane Lemieux, Kyle J Daun, Augustine Wigle
Functional Plant Biology : FPB|July 22, 2020
Quasi-Monte Carlo simulation of the light environment of plantsMikolaj Cieslak, Christiane Lemieux, Jim Hanan, et al.
Proceedings of the National Academy of Sciences of the United States of America|September 26, 2024
Message-Passing Monte Carlo: Generating low-discrepancy point sets via graph neural networksT Konstantin Rusch, Nathan Kirk, Michael M Bronstein, et al.
ACS ES&T Air|September 19, 2024
Estimation and Applications of Uncertainty in Methane Emissions Quantification Technologies: A Bayesian ApproachAugustine Wigle, Audrey Béliveau, Daniel Blackmore, et al.
Pageof 1

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

Sort By:
Pageof 1
ACS ES&T Air|February 19, 2026
Efficient Simulation of a Leak-Detection-and-Repair ProgramChristiane Lemieux, Kyle J Daun, Augustine Wigle
Functional Plant Biology : FPB|July 22, 2020
Quasi-Monte Carlo simulation of the light environment of plantsMikolaj Cieslak, Christiane Lemieux, Jim Hanan, et al.
Proceedings of the National Academy of Sciences of the United States of America|September 26, 2024
Message-Passing Monte Carlo: Generating low-discrepancy point sets via graph neural networksT Konstantin Rusch, Nathan Kirk, Michael M Bronstein, et al.
ACS ES&T Air|September 19, 2024
Estimation and Applications of Uncertainty in Methane Emissions Quantification Technologies: A Bayesian ApproachAugustine Wigle, Audrey Béliveau, Daniel Blackmore, et al.
Pageof 1