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chemistry, electronic structure (static and dynamic aspects), wave function methods (Coupled Cluster, multi-configurational methods, DMRG), Quantum Monte Carlo, DFT-type methods, Green's function methods
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Position Summary The Quantum Monte Carlo group in the Physics Department at WashU in St. Louis invites applications for one postdoctoral position beginning August 2026. We are interested in
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Kinetics models - from simplified Point Kinetics to more detailed Space Kinetics approaches – and by integrating high-fidelity neutron physics calculations performed by Monte Carlo methods to generate
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qualified women to apply for the position. Project description: You will be responsible for the development of neutron scattering and imaging instruments by numerical calculation and Monte-Carlo ray-tracing
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integration of simulation and AI-based analysis. An analytical Monte Carlo-inspired simulator will optimize system geometry and acquisition parameters, support sensitivity studies, and serve as a forward
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population synthesis code. Further develop this code, based on Monte Carlo techniques. Compare results with available observational data of white dwarf stars. Where to apply Website https
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contact information for at least two (2) professionals in the field who can provide letters of recommendation. Applications must be submitted at this link: https://apply.interfolio.com/178857 . Applications
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varying material properties. The resulting response will be analyzed using techniques such as Monte Carlo simulations. Identifying the variability of the model parameters using Bayesian inference
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Two-year postdoc position (M/F) in signal processing and Monte Carlo methods applied to epidemiology
model, both variational estimators and Monte Carlo samplers have been designed and implemented during the pandemic to estimate the reproduction number of the Covid19. The major bottleneck
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for immobilizing these ions. Modern methods of theoretical chemistry (first principles, kinetic Monte Carlo, machine learning) will be applied to investigate diffusion phenomena and link speciation with