This paper describes a software architecture designed as a support for tackling the load distribution problem when solving complex problems on concurrent processors. We have considered transputer-based MIMD multiprocessors as concurrent processors and a simulator for biologically inspired neural networks as a case study. Biologically inspired neural networks are characterized by having many thousands of neurons and synapses and topologically based connection schemes. It has been our main aim to give the user the possibility of simply defining and modifying widely differing load distribution strategies, in order to make it possible to deal with a broad range of neural network architectures and processor topologies. Furthermore we provide a r...
In this thesis, we examine an important issue in the execution of parallel programs on multicomputer...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...
{An application package which allows the user to explore the possibility of hiding communication lat...
This thesis investigates and develops dynamic load-balancing mechanisms on distributed-memory MIMD m...
In this paper, we present an improved load distribution strategy, for arbitrarily divisible processi...
The focus of this study is how we can efficiently implement the neural network backpropagation algor...
Neuromorphic computing systems have been introduced in the past few decades as a paradigm shift in c...
Neuroscience is witnessing increasing knowledge about the anatomy and electrophysiological propertie...
Various Artificial Neural Networks (ANNs) have been proposed in recent years to mimic the human brai...
AbstractIn this paper, we present an improved load distribution strategy, for arbitrarily divisible ...
Over the last few years tremendous progress has been made in neuroscience by employing simulation to...
The main goal of this paper is t o survey the issues an application developer would have to resolve ...
In this contribution we present an advanced concept of neural hardware that realizes two important f...
ii This thesis discusses techniques for sharing the processing load among multiple pro-cessing units...
In this thesis, we examine an important issue in the execution of parallel programs on multicomputer...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...
{An application package which allows the user to explore the possibility of hiding communication lat...
This thesis investigates and develops dynamic load-balancing mechanisms on distributed-memory MIMD m...
In this paper, we present an improved load distribution strategy, for arbitrarily divisible processi...
The focus of this study is how we can efficiently implement the neural network backpropagation algor...
Neuromorphic computing systems have been introduced in the past few decades as a paradigm shift in c...
Neuroscience is witnessing increasing knowledge about the anatomy and electrophysiological propertie...
Various Artificial Neural Networks (ANNs) have been proposed in recent years to mimic the human brai...
AbstractIn this paper, we present an improved load distribution strategy, for arbitrarily divisible ...
Over the last few years tremendous progress has been made in neuroscience by employing simulation to...
The main goal of this paper is t o survey the issues an application developer would have to resolve ...
In this contribution we present an advanced concept of neural hardware that realizes two important f...
ii This thesis discusses techniques for sharing the processing load among multiple pro-cessing units...
In this thesis, we examine an important issue in the execution of parallel programs on multicomputer...
Fast response, storage efficiency, fault tolerance and graceful degradation in face of scarce or spu...
Abstract—This paper presents a new approach that uses neural networks to predict the performance of ...