4.7 Article

The density matrix renormalization group algorithm on kilo-processor architectures: Implementation and trade-offs

Journal

COMPUTER PHYSICS COMMUNICATIONS
Volume 185, Issue 6, Pages 1570-1581

Publisher

ELSEVIER SCIENCE BV
DOI: 10.1016/j.cpc.2014.02.021

Keywords

Strongly correlated systems; DMRG; GPU acceleration; FPGA acceleration

Funding

  1. Hungarian Research Fund (OTKA) [NN110360, K100908, K84267]
  2. [TAMOP-4.2.2.C-11/1/KONV-2012-0004]
  3. [TAMOP-4.2.1./B-11/2/KMR-2011-002]
  4. [TAMOP-4.2.2./B-10/1-2010-0014]

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In the numerical analysis of strongly correlated quantum lattice models one of the leading algorithms developed to balance the size of the effective Hilbert space and the accuracy of the simulation is the density matrix renormalization group (DMRG) algorithm, in which the run-time is dominated by the iterative diagonalization of the Hamilton operator. As the most time-dominant step of the diagonalization can be expressed as a list of dense matrix operations, the DMRG is an appealing candidate to fully utilize the computing power residing in novel kilo-processor architectures. In the paper a smart hybrid CPU GPU implementation is presented, which exploits the power of both CPU and GPU and tolerates problems exceeding the GPU memory size. Furthermore, a new CUDA kernel has been designed for asymmetric matrix vector multiplication to accelerate the rest of the diagonalization. Besides the evaluation of the GPU implementation, the practical limits of an FPGA implementation are also discussed. (C) 2014 Elsevier B.V. All rights reserved.

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