More recent advances in (hyper) graph partitioning
In recent years, significant advances have been made in the design and evaluation of
balanced (hyper) graph partitioning algorithms. We survey trends of the past decade in …
balanced (hyper) graph partitioning algorithms. We survey trends of the past decade in …
[LIVRE][B] Recent advances in graph partitioning
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{PowerGraph}: Distributed {Graph-Parallel} computation on natural graphs
Large-scale graph-structured computation is central to tasks ranging from targeted
advertising to natural language processing and has led to the development of several graph …
advertising to natural language processing and has led to the development of several graph …
A survey of direct methods for sparse linear systems
Wilkinson defined a sparse matrix as one with enough zeros that it pays to take advantage of
them. 1 This informal yet practical definition captures the essence of the goal of direct …
them. 1 This informal yet practical definition captures the essence of the goal of direct …
[HTML][HTML] The open porous media flow reservoir simulator
Abstract The Open Porous Media (OPM) initiative is a community effort that encourages
open innovation and reproducible research for simulation of porous media processes. OPM …
open innovation and reproducible research for simulation of porous media processes. OPM …
Parallel and distributed graph neural networks: An in-depth concurrency analysis
Graph neural networks (GNNs) are among the most powerful tools in deep learning. They
routinely solve complex problems on unstructured networks, such as node classification …
routinely solve complex problems on unstructured networks, such as node classification …
[LIVRE][B] Communication-avoiding Krylov subspace methods
M Hoemmen - 2010 - search.proquest.com
Krylov subspace methods (KSMs) are iterative algorithms for solving large, sparse linear
systems and eigenvalue problems. Current KSMs rely on sparse matrix-vector multiply …
systems and eigenvalue problems. Current KSMs rely on sparse matrix-vector multiply …
High-quality hypergraph partitioning
Hypergraphs are a generalization of graphs where edges (aka nets) are allowed to connect
more than two vertices. They have a similarly wide range of applications as graphs. This …
more than two vertices. They have a similarly wide range of applications as graphs. This …
Distributed power-law graph computing: Theoretical and empirical analysis
With the emergence of big graphs in a variety of real applications like social networks,
machine learning based on distributed graph-computing~(DGC) frameworks has attracted …
machine learning based on distributed graph-computing~(DGC) frameworks has attracted …
A quantum bit commitment scheme provably unbreakable by both parties
We describe a complete protocol for bit commitment based on the transmission of polarized
photons. We show that under the laws of quantum physics, this protocol cannot be cheated …
photons. We show that under the laws of quantum physics, this protocol cannot be cheated …