We describe the application of a communication-reduction technique for the PageRank algorithm that dynamically adapts the precision of the data access to the numerical requirements of the algorithm as the iteration converges. Our variable-precision strategy, using a customized precision format based on mantissa segmentation (CPMS), abandons the IEEE 754 single- and double-precision number representation formats employed in the standard implementation of PageRank, and instead handles the data in memory using a customized floating-point format. The customized format enables fast data access in different accuracy, prevents overflow/ underflow by preserving the ieee 754 double-precision exponent, and efficiently avoids data duplication, since a...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
Abstract This paper discusses efficient techniques for computing PageRank, a ranking met-ric for hyp...
Thanks to the high parallelism endowed by physical rules, in-memory computing with crosspoint resist...
[EN] We describe the application of a communication-reduction technique for the PageRank algorithm t...
In this work, we pursue the idea of radically decoupling the floating point format used for arithmet...
Sparse matrix-vector multiplication is often employed in many data-analytic workloads in which low l...
With the memory bandwidth of current computer architectures being significantly slower than the (flo...
PageRank kernel is a standard benchmark addressing various graph processing and analytical problems....
In this work, a non-stationary technique based on the Power method for accelerating the parallel com...
We observe that the convergence patterns of pages in the PageRank algorithm have a nonuniform distri...
AbstractWe observe that the convergence patterns of pages in the PageRank algorithm have a nonunifor...
Abstract. In this paper, we consider the problem of calculating fast and accurate ap-proximations to...
PageRank is the measure of importance of a node within a set of nodes. It was originally developed f...
Abstract. We present a novel technique for speeding up the computation of PageRank, a hyperlink-base...
In this paper, parallel Relaxed and Extrapolated algorithms based on the Power method for accelerati...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
Abstract This paper discusses efficient techniques for computing PageRank, a ranking met-ric for hyp...
Thanks to the high parallelism endowed by physical rules, in-memory computing with crosspoint resist...
[EN] We describe the application of a communication-reduction technique for the PageRank algorithm t...
In this work, we pursue the idea of radically decoupling the floating point format used for arithmet...
Sparse matrix-vector multiplication is often employed in many data-analytic workloads in which low l...
With the memory bandwidth of current computer architectures being significantly slower than the (flo...
PageRank kernel is a standard benchmark addressing various graph processing and analytical problems....
In this work, a non-stationary technique based on the Power method for accelerating the parallel com...
We observe that the convergence patterns of pages in the PageRank algorithm have a nonuniform distri...
AbstractWe observe that the convergence patterns of pages in the PageRank algorithm have a nonunifor...
Abstract. In this paper, we consider the problem of calculating fast and accurate ap-proximations to...
PageRank is the measure of importance of a node within a set of nodes. It was originally developed f...
Abstract. We present a novel technique for speeding up the computation of PageRank, a hyperlink-base...
In this paper, parallel Relaxed and Extrapolated algorithms based on the Power method for accelerati...
We propose FrogWild, a novel algorithm for fast approxi-mation of high PageRank vertices, geared tow...
Abstract This paper discusses efficient techniques for computing PageRank, a ranking met-ric for hyp...
Thanks to the high parallelism endowed by physical rules, in-memory computing with crosspoint resist...