We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm relies on data-parallel primitives (DPPs), which provide portable performance over hardware architecture. We evaluate results on CPUs and GPUs for an image segmentation problem. Compared to a serial baseline, we observe runtime speedups of up to 13X (CPU) and 44X (GPU). We also compare our performance to a reference, OpenMP-based algorithm, and find speedups of up to 7X (CPU)
Real world data is likely to contain an inherent structure. Those structures may be represented with...
Real world data is likely to contain an inherent structure. Those structures may be represented wit...
The recent emergence of Graphics Processing Units (GPUs) as general-purpose parallel computing devic...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
Abstract. This contribution shows how unsupervised Markovian segmentation techniques can be accelera...
Abstract. This paper shows how Markovian segmentation algorithms used to solve well known computer v...
Real world data is likely to contain an inherent structure. Those structures may be represented with...
Real world data is likely to contain an inherent structure. Those structures may be represented wit...
The recent emergence of Graphics Processing Units (GPUs) as general-purpose parallel computing devic...
We present a new parallel algorithm for probabilistic graphical model optimization. The algorithm re...
This work examines performance characteristics of multiple shared-memory implementations of a probab...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
We present algorithms for parallel probabilistic model checking on general purpose graphic processin...
Abstract. This contribution shows how unsupervised Markovian segmentation techniques can be accelera...
Abstract. This paper shows how Markovian segmentation algorithms used to solve well known computer v...
Real world data is likely to contain an inherent structure. Those structures may be represented with...
Real world data is likely to contain an inherent structure. Those structures may be represented wit...
The recent emergence of Graphics Processing Units (GPUs) as general-purpose parallel computing devic...