English

Parallel Cluster Labeling for Large-Scale Monte Carlo Simulations

High Energy Physics - Lattice 2015-06-25 v1 Condensed Matter

Abstract

We present an optimized version of a cluster labeling algorithm previously introduced by the authors. This algorithm is well suited for large-scale Monte Carlo simulations of spin models using cluster dynamics on parallel computers with large numbers of processors. The algorithm divides physical space into rectangular cells which are assigned to processors and combines a serial local labeling procedure with a relaxation process across nearest-neighbor processors. By controlling overhead and reducing inter-processor communication this method attains good computational speed-up and efficiency. Large systems of up to 65536 X 65536 spins have been simulated at updating speeds of 11 nanosecs/site (90.7 million spin updates/sec) using state-of-the-art supercomputers. In the second part of the article we use the cluster algorithm to study the relaxation of magnetization and energy on large Ising models using Swendsen-Wang dynamics. We found evidence that exponential and power law factors are present in the relaxation process as has been proposed by Hackl et al.

Keywords

Cite

@article{arxiv.hep-lat/9502007,
  title  = {Parallel Cluster Labeling for Large-Scale Monte Carlo Simulations},
  author = {M. Flanigan and P. Tamayo},
  journal= {arXiv preprint arXiv:hep-lat/9502007},
  year   = {2015}
}

Comments

11 pages of LaTeX. Additional 17 pages of postscript figures are provided in a separated uuencoded file. A full Postcript version of this paper and other related papers are available at http://www.think.com/ProdServ/ADC/projects/proj.cc_spmd.html