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Xiaocheng Shang
Education:
- 2012–2015, PhD in Applied and Computational Mathematics, University of Edinburgh, Edinburgh, United Kingdom (Advisor: Professor Benedict Leimkuhler, FRSE)
Research Interests:
- Numerical Methods and Error Analysis for Stochastic Differential Equations
- Molecular Dynamics, Statistical Mechanics, Multiscale Methods
- Momentum-Conserving Thermostats, Dissipative Particle Dynamics
- Nonequilibrium Modelling, Adaptive Thermostats
- Bayesian Sampling, Machine Learning, Data Science
Publications:
- B. Leimkuhler and X. Shang. On the numerical treatment of dissipative particle dynamics and related systems. Journal of Computational Physics, 280, 72–95, (2015)
- B. Leimkuhler and X. Shang. Adaptive thermostats for noisy gradient systems. SIAM Journal on Scientific Computing, 38, A712–A736, (2016)
- X. Shang, Z. Zhu, B. Leimkuhler and A. Storkey. Covariance-controlled adaptive Langevin thermostat for large-scale Bayesian sampling. Advances in Neural Information Processing Systems (NIPS) 28, 37–45, (2015)
- B. Leimkuhler and X. Shang. Pairwise adaptive thermostats for improved accuracy and stability in dissipative particle dynamics. Journal of Computational Physics, 324, 174–193, (2016)
Conferences and Symposia:
Professional Service:
Reviewer of
- Journal of Computational Physics
- Journal of Computational Chemistry