Biological applications, from genomics to ecology, deal with graphs that represents the structure of interactions. Analyzing such data requires searching for subgraphs in collections of graphs. This task is computationally expensive. Even though multicore architectures, from commodity computers to more advanced symmetric multiprocessing (SMP), offer scalable computing power, currently published software implementations for indexing and graph matching are fundamentally sequential. As a consequence, such software implementations (i) do not fully exploit available parallel computing power and (ii) they do not scale with respect to the size of graphs in the database. We present GRAPES, software for parallel searching on databases of large biolo...
Next-generation database systems dealing with biomedical data, web relationships, net-work directori...
Abstract: Plenty of structural patterns in real world have been represented as graph like molecules,...
Bioinformatics and computational biology are driven by growing volumes of data in biological systems...
Biological applications, from genomics to ecology, deal with graphs that represents the structure of...
Biological applications, from genomics to ecology, deal with graphs that represents the structure of...
<div><p>Biological applications, from genomics to ecology, deal with graphs that represents the stru...
Software applications for biological networks analysis rely on graphs to model the structure interac...
BACKGROUND: Graphs are mathematical structures widely used for expressing relationships among elemen...
Background: R has become the de-facto reference analysis environment in Bioinformatics. Plenty of to...
The need for graph computations is evident in a multitude of use cases. To support computations on ...
rom biochemical applications to social networks, graphs represent data. Comparing graphs or searchin...
Abstract: The increasing availability of protein-protein interaction graphs (PPI) requires new effic...
This document surveys the computational strategies followed to parallelize the most used software in...
Motivations. The graph is a data structure to represent biological data ranging from molecules and p...
The increasing availability of interaction graphs requires new resource-efficient tools capable of e...
Next-generation database systems dealing with biomedical data, web relationships, net-work directori...
Abstract: Plenty of structural patterns in real world have been represented as graph like molecules,...
Bioinformatics and computational biology are driven by growing volumes of data in biological systems...
Biological applications, from genomics to ecology, deal with graphs that represents the structure of...
Biological applications, from genomics to ecology, deal with graphs that represents the structure of...
<div><p>Biological applications, from genomics to ecology, deal with graphs that represents the stru...
Software applications for biological networks analysis rely on graphs to model the structure interac...
BACKGROUND: Graphs are mathematical structures widely used for expressing relationships among elemen...
Background: R has become the de-facto reference analysis environment in Bioinformatics. Plenty of to...
The need for graph computations is evident in a multitude of use cases. To support computations on ...
rom biochemical applications to social networks, graphs represent data. Comparing graphs or searchin...
Abstract: The increasing availability of protein-protein interaction graphs (PPI) requires new effic...
This document surveys the computational strategies followed to parallelize the most used software in...
Motivations. The graph is a data structure to represent biological data ranging from molecules and p...
The increasing availability of interaction graphs requires new resource-efficient tools capable of e...
Next-generation database systems dealing with biomedical data, web relationships, net-work directori...
Abstract: Plenty of structural patterns in real world have been represented as graph like molecules,...
Bioinformatics and computational biology are driven by growing volumes of data in biological systems...