Abstract—This paper presents a new approach that uses neural networks to predict the performance of a number of dynamic decentralized load balancing strategies. A distributed multicomputer system using any distributed load balancing strategy is represented by a unified analytical queuing model. A large simulation data set is used to train a neural network using the back–propagation learning algorithm based on gradient descent. The performance model using the predicted data from the neural network produces the average response time of various load balancing algorithms under various system parameters. The validation and comparison with simulation data show that the neural network is very effective in predicting the performance of dynamic load...
Abstract—This paper discusses a proposed load balance technique based on artificial neural network. ...
In this work we present a parallel neural network controller training code, that uses MPI, a portabl...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...
This paper presents a new approach that uses neural networks to predict the performance of a number ...
Computing literature has being flooded recently with a plethora of dynamic load balancing strategies...
This paper presents a performance evaluation approach to compare different distributed load balancin...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
With the incidence of technology at each and every juncture of human life, there has been an acceler...
The capability to predict the host load of a system is significant for computational grids to make e...
Load balancing technology can effectively exploit potential enormous compute power available on dist...
Dynamic load balancing techniques have been shown to be the most critical part of an efficient imple...
We report on the improvements that can be achieved by applying machine learning techniques, in parti...
Dynamic load balancing techniques have proved to be the most critical part of an efficient implement...
A desirable feature in a Distributed Computing System is to balance the load of processors of a syst...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
Abstract—This paper discusses a proposed load balance technique based on artificial neural network. ...
In this work we present a parallel neural network controller training code, that uses MPI, a portabl...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...
This paper presents a new approach that uses neural networks to predict the performance of a number ...
Computing literature has being flooded recently with a plethora of dynamic load balancing strategies...
This paper presents a performance evaluation approach to compare different distributed load balancin...
We report on the improvements. that can be achieved by applying machine learning techniques, in part...
With the incidence of technology at each and every juncture of human life, there has been an acceler...
The capability to predict the host load of a system is significant for computational grids to make e...
Load balancing technology can effectively exploit potential enormous compute power available on dist...
Dynamic load balancing techniques have been shown to be the most critical part of an efficient imple...
We report on the improvements that can be achieved by applying machine learning techniques, in parti...
Dynamic load balancing techniques have proved to be the most critical part of an efficient implement...
A desirable feature in a Distributed Computing System is to balance the load of processors of a syst...
Load balancing (LB) is the process of distributing the workload fairly across the servers within the...
Abstract—This paper discusses a proposed load balance technique based on artificial neural network. ...
In this work we present a parallel neural network controller training code, that uses MPI, a portabl...
Server load prediction can be utilized for load-balancing and load-sharing in distributed systems. T...