The population annealing algorithm is a novel approach to study systems with rough free-energy landscapes, such as spin glasses. It combines the power of simulated annealing, Boltzmann weighted differential reproduction and sequential Monte Carlo process to bring the population of replicas to the equilibrium even in the low-temperature region. Moreover, it provides a very good estimate of the free energy. The fact that population annealing algorithm is performed over a large number of replicas with many spin updates, makes it a good candidate for massive parallelism. We chose the GPU programming using a CUDA implementation to create a highly optimized simulation. It has been previously shown for the frustrated Ising antiferromagnet on the s...
Simulated annealing and related Monte Carlo-type optimization algorithms are used to apply statistic...
The ferromagnetic Ising model is a paradigmatic model of statistical physics used to study phase tr...
We present several efficient implementations of the simulated annealing algorithm for Ising spin gla...
The population annealing algorithm is a novel approach to study systems with rough free-energy lands...
Population annealing is a promising recent approach for Monte Carlo simulations in statistical physi...
Population annealing is a Monte Carlo algorithm that marries features from simulated annealing and p...
The canonical technique for Monte Carlo simulations in statistical physics is importance sampling vi...
The population annealing algorithm introduced by Hukushima and Iba is described. Population annealin...
AbstractWe consider Monte Carlo simulations of classical spin models of statistical mechanics using ...
Monte Carlo simulations of the Ising model play an important role in the field of computational stat...
The compute unified device architecture (CUDA) is a programming approach for performing scientific c...
Data-parallel accelerator devices such as Graphical Processing Units (GPUs) are providing dramatic p...
Spin glasses are spin-lattice models with quenched disorder and frustration. The mean field long-ran...
Abstract: Lattice spin models are useful for studying critical phenomena and allow the extraction of...
Because of its complexity, the 3D Ising model has not been given an exact analytic solution so far, ...
Simulated annealing and related Monte Carlo-type optimization algorithms are used to apply statistic...
The ferromagnetic Ising model is a paradigmatic model of statistical physics used to study phase tr...
We present several efficient implementations of the simulated annealing algorithm for Ising spin gla...
The population annealing algorithm is a novel approach to study systems with rough free-energy lands...
Population annealing is a promising recent approach for Monte Carlo simulations in statistical physi...
Population annealing is a Monte Carlo algorithm that marries features from simulated annealing and p...
The canonical technique for Monte Carlo simulations in statistical physics is importance sampling vi...
The population annealing algorithm introduced by Hukushima and Iba is described. Population annealin...
AbstractWe consider Monte Carlo simulations of classical spin models of statistical mechanics using ...
Monte Carlo simulations of the Ising model play an important role in the field of computational stat...
The compute unified device architecture (CUDA) is a programming approach for performing scientific c...
Data-parallel accelerator devices such as Graphical Processing Units (GPUs) are providing dramatic p...
Spin glasses are spin-lattice models with quenched disorder and frustration. The mean field long-ran...
Abstract: Lattice spin models are useful for studying critical phenomena and allow the extraction of...
Because of its complexity, the 3D Ising model has not been given an exact analytic solution so far, ...
Simulated annealing and related Monte Carlo-type optimization algorithms are used to apply statistic...
The ferromagnetic Ising model is a paradigmatic model of statistical physics used to study phase tr...
We present several efficient implementations of the simulated annealing algorithm for Ising spin gla...