Classification systems specifically designed to deal with fully labeled graphs are gaining importance in many application fields. The main computational bottleneck in such systems is the dissimilarity measure between pairs of graphs. In this paper we propose to accelerate in hardware such computations, relying on the Graph Coverage as the core inexact graph matching procedure, targeting the design to FPGA as an inexpensive way to design specific co-processing devices. A comparison in terms of computational time between the proposed system and a software implementation on a standard workstation shows encouraging results. © 2013 IEEE
Rapid advances in VLSI technology have led to FieldProgrammable Gate Arrays (FPGAs) being employed i...
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Rapid advances in VLSI technology have led to FieldProgrammable Gate Arrays (FPGAs) being employed i...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...
Efficient large-scale graph processing is crucial to many disciplines. Yet, while graph algorithms n...
Abstract—Vertex-centric graph computations are widely used in many machine learning and data mining ...
Graphs are important in many applications however their analysis on conventional computer architectu...
Subgraph matching is a basic operation widely used in many applications. However, due to its NP-hard...
FPGAs are promising platforms to efficiently execute distributed graph algorithms. Unfortunately, th...
Abstract. Many important algorithms in computational biology and related subjects rely on the abilit...
The paper discusses an effective matrix-based exact algorithm for graph colouring that is well-suite...
2018-10-16Graph analytics has drawn much research interest because of its broad applicability from m...
In this paper, we develop a highly scalable approach to constructing an efficient heterogeneous grap...
This thesis proposes a reconfigurable computing approach for supporting parallel processing in large...
FPGA-based soft processors customized for operations on sparse graphs can deliver significant perfor...
As field-programmable gate array (FPGA) capacities continue to increase in lockstep with semiconduct...
An efficient distributed method is developped for the technology mapping of Look Up Table-based Fiel...
Rapid advances in VLSI technology have led to FieldProgrammable Gate Arrays (FPGAs) being employed i...
A graph is a ubiquitous data structure that models entities and their interactions through the colle...
Efficient large-scale graph processing is crucial to many disciplines. Yet, while graph algorithms n...