FYSS5440 Quantum Monte Carlo Methods (3 cr)
Description
Scaling and computational cost
Simple Monte Carlo
Importance sampling
Correlated samples and MC accuracy
Sampling from a distribution (e.g. normal distribution)
Central Limit Theorem
Detailed balance
Markov Chain Monte Carlo
Metropolis–Hastings algorithm
Variational Monte Carlo
Optimization of the trial wave function
Diffusion Monte Carlo
Short-time estimates of Green’s function
Variance optimization
Fixed node and released node methods
Second order DMC algorithms, application to 4He liquid
Path Integral Monte Carlo, density matrices , Bose symmetry
Connection to path integral formulation of quantum mechanics
Fermion paths: The sign problem; Fermion PIMC methods
Error estimation, biased and unbiased estimators, block averaging, resampling method.
Large-time-step propagators, fourth or higher order accuracy, propagators with no time step error
Learning outcomes
After completing the course the student knows
how to calculate the properties of a system from an arbitrary wave function using the Variational Monte Carlo method and the ground state properties of bosonic systems using the Diffusion Monte Carlo method
the principal challenges in computing the fermion ground state properties both on the mathematical and on the algorithmic side
how to compute the finite temperature properties of simple bosonic systems using the path integral (PIMC) method
Description of prerequisites
Basic programming skills in Python, Julia or C++ will aid following sample programs.
Study materials
Lecture notes
Sample MC programs
Scientific articles
Completion methods
Method 1
Participation in teaching (3 cr)
Lectures, exercises, exam.