[[abstract]]FuzzyCLIPS is a rule-based programming language and it is very suitable for developing fuzzy expert systems. However, it usually requires much longer execution time than algorithmic languages such as C and Java. To address this problem, we propose a parallel version of FuzzyCLIPS to parallelize the execution of a fuzzy expert system with data dependence on a cluster system. We have designed some extended parallel syntax following the original FuzzyCLIPS style. To simplify the programming model of parallel FuzzyCLIPS, we hide, as much as possible, the tasks of parallel processing from programmers and implement them in the inference engine by using MPI, the de facto standard for parallel programming for cluster systems. Furthermor...
We propose a modified fuzzy c-means algorithm that operates on different feature spaces, so-called p...
Distribution and parallelism are historically important approaches for the implementation of artific...
As computer clusters become more common and the size of the problems encountered in the field of AI ...
[[abstract]]FuzzyCLIPS is a rule-based language designed especially for developing fuzzy expert syst...
[[abstract]]FuzzyCLIPS is a knowledge-base programming language designed especially for developing f...
[[abstract]]In this paper, we use Parallel FuzzyCLIPS to parallelize the execution of FQHR websites ...
Technological advances have allowed to collect and store large volumes of data over the years. Besid...
Technological advances have allowed to collect and store large volumes of data over the years. Besid...
The work presented in this thesis focuses on the design and implementation of parallel algorithms fo...
Clustering aims to classify different patterns into groups called clusters. Many algorithms for both...
Abstract. The parallel fuzzy c-means (PFCM) algorithm for cluster-ing large data sets is proposed in...
In this article we present the application of fuzziness in querying imprecise databases with partiti...
[[abstract]]Because enriching grid applications is crucial to promote grid computing and grid econom...
This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to h...
The aim of this paper is to describe a fuzzy expert system for load balancing in a symmetric multipr...
We propose a modified fuzzy c-means algorithm that operates on different feature spaces, so-called p...
Distribution and parallelism are historically important approaches for the implementation of artific...
As computer clusters become more common and the size of the problems encountered in the field of AI ...
[[abstract]]FuzzyCLIPS is a rule-based language designed especially for developing fuzzy expert syst...
[[abstract]]FuzzyCLIPS is a knowledge-base programming language designed especially for developing f...
[[abstract]]In this paper, we use Parallel FuzzyCLIPS to parallelize the execution of FQHR websites ...
Technological advances have allowed to collect and store large volumes of data over the years. Besid...
Technological advances have allowed to collect and store large volumes of data over the years. Besid...
The work presented in this thesis focuses on the design and implementation of parallel algorithms fo...
Clustering aims to classify different patterns into groups called clusters. Many algorithms for both...
Abstract. The parallel fuzzy c-means (PFCM) algorithm for cluster-ing large data sets is proposed in...
In this article we present the application of fuzziness in querying imprecise databases with partiti...
[[abstract]]Because enriching grid applications is crucial to promote grid computing and grid econom...
This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to h...
The aim of this paper is to describe a fuzzy expert system for load balancing in a symmetric multipr...
We propose a modified fuzzy c-means algorithm that operates on different feature spaces, so-called p...
Distribution and parallelism are historically important approaches for the implementation of artific...
As computer clusters become more common and the size of the problems encountered in the field of AI ...