Since biological neural systems contain big number of neurons working in parallel, simulation of such dynamic system is a real challenge. The main objective of this paper is to speed up the simulation performance of SystemC designs at the RTL abstraction level using the high degree of parallelism afforded by graphics processors (GPUs) for large scale SNN with proposed structure in pattern classification field. Simulation results show 100 times speedup for the proposed SNN structure on the GPU compared with the CPU version. In addition, CPU memory has problems when trained for more than 120K cells but GPU can simulate up to 40 million neuron
The performance analysis of an efficient multiprocessor architecture that allows accelerating the em...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
This paper presents a hardware accelerated model of a spiking neural network implemented in CUDA C. ...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Real-time simulations of biological neural networks (BNNs) provide a natural platform for applicatio...
© 2011 Jad Abi-SamraThe study of the structure and functionality of the brain has been ardently inve...
Summary. We present in this paper our work regarding simulating a type of P sys-tem known as a spiki...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Substantial evidence indicates that the time structure of neuronal spike trains is relevant in neuro...
The performance analysis of an efficient multiprocessor architecture that allows accelerating the em...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
This paper presents a hardware accelerated model of a spiking neural network implemented in CUDA C. ...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
e understanding of the structural and dynamic complexity of neural networks is greatly facilitated b...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Recently, there has been strong interest in large-scale simulations of biological spiking neural net...
Real-time simulations of biological neural networks (BNNs) provide a natural platform for applicatio...
© 2011 Jad Abi-SamraThe study of the structure and functionality of the brain has been ardently inve...
Summary. We present in this paper our work regarding simulating a type of P sys-tem known as a spiki...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Conventional artificial neural networks have traditionally faced inherent problems with efficient pa...
Substantial evidence indicates that the time structure of neuronal spike trains is relevant in neuro...
The performance analysis of an efficient multiprocessor architecture that allows accelerating the em...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
This paper presents a hardware accelerated model of a spiking neural network implemented in CUDA C. ...