In this paper we investigate the design of a compact genetic algorithm to solve Multi-FPGA Partitioning problems. Nowadays Multi-FPGA systems are used for a great variety of applications such as dynamically re-configurable hardware applications, digital circuit emulation, and numerical computation. Both a sequential and a parallel version of a compact genetic algorithm (cGA) have been designed and implemented on a cluster of workstations. The peculiarities of the cGA permits to save memory in order to address large Multi-FPGA Parfitioning problems, while the exploitation of parallelism allows to reduce execution times. The good results achieved on several experiments conduced on different Multi-FPGA Partitioning instances show that this solution is viable to solve Multi-FPGA Partitioning problems.

A parallel compact genetic algorithm for multi-FPGA partitioning

2001

Abstract

In this paper we investigate the design of a compact genetic algorithm to solve Multi-FPGA Partitioning problems. Nowadays Multi-FPGA systems are used for a great variety of applications such as dynamically re-configurable hardware applications, digital circuit emulation, and numerical computation. Both a sequential and a parallel version of a compact genetic algorithm (cGA) have been designed and implemented on a cluster of workstations. The peculiarities of the cGA permits to save memory in order to address large Multi-FPGA Parfitioning problems, while the exploitation of parallelism allows to reduce execution times. The good results achieved on several experiments conduced on different Multi-FPGA Partitioning instances show that this solution is viable to solve Multi-FPGA Partitioning problems.
2001
Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI
Multi-FPGA
Parallel algorithms
Processor architectures
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/113156
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