1 research outputs found
Importance of Explicit Vectorization for CPU and GPU Software Performance
Much of the current focus in high-performance computing is on
multi-threading, multi-computing, and graphics processing unit (GPU) computing.
However, vectorization and non-parallel optimization techniques, which can
often be employed additionally, are less frequently discussed. In this paper,
we present an analysis of several optimizations done on both central processing
unit (CPU) and GPU implementations of a particular computationally intensive
Metropolis Monte Carlo algorithm. Explicit vectorization on the CPU and the
equivalent, explicit memory coalescing, on the GPU are found to be critical to
achieving good performance of this algorithm in both environments. The
fully-optimized CPU version achieves a 9x to 12x speedup over the original CPU
version, in addition to speedup from multi-threading. This is 2x faster than
the fully-optimized GPU version.Comment: 17 pages, 17 figure