AbstractDehne, F., A. Ferreira and A. Rau-Chaplin, Parallel fractional cascading on hypercube multiprocessors, Computational Geometry: Theory and Applications 2 (1992) 141–167. In this paper we present a new data-structuring technique for parallel computational geometry on a hypercube multiprocessor. This technique, called hypercube cascading, is an efficient parallel implementation of fractional cascading for the hypercube multiprocessor. That is, it allows complex data structures with catalogs to be traversed efficiently in parallel by a large number of simultaneous queries. We show that for monotone graphs with n nodes, m multiple look-up queries with path length at most p (including catalog look-ups) can be executed independently, in pa...
Computers with multiple processor cores using shared memory are now ubiquitous. In this paper, we pr...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
Thesis (Ph.D.)--University of Washington, 2015The need to analyze and understand big data has change...
Dehne, F., A. Ferreira and A. Rau-Chaplin, Parallel fractional cascading on hypercube multiprocessor...
Fractional cascading is a technique designed to allow efficient sequential search in a graph with ca...
Fractional cascading is a technique designed to allow efficient sequential search in a graph with ca...
AbstractIn this paper we give improved bounds for the multisearch problem on a hypercube. This is a ...
Abstract, In this paper, we study the problem of implementing standard data structures on a hypercub...
AbstractGiven an n-edge convex subdivision of the plane, is it possible to report its k intersection...
The multisearch problem is defined as follows. Given a data structure D modeled as a graph with n co...
Using the notions of Q-heaps and fusion trees developed by Fredman and Willard, we develop a faster...
We studyscalable parallel computational geometry algorithms for the coarse grained multicomputer mod...
Using the notions of Q-heaps and fusion trees developed by Fredman and Willard, we develop a faster ...
AbstractA direct, simple and general parallel algorithm is described for the preprocessing of a plan...
Many parallel algorithms use hypercubes as the communication topology among their processes. When su...
Computers with multiple processor cores using shared memory are now ubiquitous. In this paper, we pr...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
Thesis (Ph.D.)--University of Washington, 2015The need to analyze and understand big data has change...
Dehne, F., A. Ferreira and A. Rau-Chaplin, Parallel fractional cascading on hypercube multiprocessor...
Fractional cascading is a technique designed to allow efficient sequential search in a graph with ca...
Fractional cascading is a technique designed to allow efficient sequential search in a graph with ca...
AbstractIn this paper we give improved bounds for the multisearch problem on a hypercube. This is a ...
Abstract, In this paper, we study the problem of implementing standard data structures on a hypercub...
AbstractGiven an n-edge convex subdivision of the plane, is it possible to report its k intersection...
The multisearch problem is defined as follows. Given a data structure D modeled as a graph with n co...
Using the notions of Q-heaps and fusion trees developed by Fredman and Willard, we develop a faster...
We studyscalable parallel computational geometry algorithms for the coarse grained multicomputer mod...
Using the notions of Q-heaps and fusion trees developed by Fredman and Willard, we develop a faster ...
AbstractA direct, simple and general parallel algorithm is described for the preprocessing of a plan...
Many parallel algorithms use hypercubes as the communication topology among their processes. When su...
Computers with multiple processor cores using shared memory are now ubiquitous. In this paper, we pr...
AbstractComputers with multiple processor cores using shared memory are now ubiquitous. In this pape...
Thesis (Ph.D.)--University of Washington, 2015The need to analyze and understand big data has change...