In this work we present further extensions and improvements of a Spiking Neural P system (for short, SNP systems) simulator on graphics processing units (for short, GPUs). Using previous results on representing SNP system computations using linear algebra, we analyze and implement a compu- tation simulation algorithm on the GPU. A two-level parallelism is introduced for the computation simulations. We also present a set of benchmark SNP sys- tems to stress test the simulation and show the increased performance obtained using GPUs over conventional CPUs. For a 16 neuron benchmark SNP system with 65536 nondeterministic rule selection choices, we report a 2.31 speedup of the GPU-based simulations over CPU-based simulations.Ministerio ...
Software development for Membrane Computing is growing up yielding new applications. Nowadays, the ...
Real-time simulations of biological neural networks (BNNs) provide a natural platform for applicatio...
Since biological neural systems contain big number of neurons working in parallel, simulation of suc...
Spiking Neural P (SNP) systems, variants of Psystems (under Membrane and Natural computing), are com...
We present in this paper our work regarding simulating a type of P sys- tem known as a spiking neur...
In this paper we present our results in adapting a Spiking Neural P system (SNP system) simulator t...
In this paper we present a Spiking Neural P system (SNP system) simulator based on graphics process...
Summary. We present in this paper our work regarding simulating a type of P sys-tem known as a spiki...
Spiking neural P systems (in short, SN P systems) are parallel models of computations inspired by t...
Current parallel simulation algorithms for Spiking Neural P (SNP) systems are based on a matrix rep...
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...
To date, parallel simulation algorithms for spiking neural P (SNP) systems are based on a matrix re...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
The acceleration of P system simulations is required increasingly, since they are at the core of mo...
Software development for Membrane Computing is growing up yielding new applications. Nowadays, the ...
Real-time simulations of biological neural networks (BNNs) provide a natural platform for applicatio...
Since biological neural systems contain big number of neurons working in parallel, simulation of suc...
Spiking Neural P (SNP) systems, variants of Psystems (under Membrane and Natural computing), are com...
We present in this paper our work regarding simulating a type of P sys- tem known as a spiking neur...
In this paper we present our results in adapting a Spiking Neural P system (SNP system) simulator t...
In this paper we present a Spiking Neural P system (SNP system) simulator based on graphics process...
Summary. We present in this paper our work regarding simulating a type of P sys-tem known as a spiki...
Spiking neural P systems (in short, SN P systems) are parallel models of computations inspired by t...
Current parallel simulation algorithms for Spiking Neural P (SNP) systems are based on a matrix rep...
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...
To date, parallel simulation algorithms for spiking neural P (SNP) systems are based on a matrix re...
The simulation of large-scale biological spiking neural networks (SNN) is computationally onerous. I...
The acceleration of P system simulations is required increasingly, since they are at the core of mo...
Software development for Membrane Computing is growing up yielding new applications. Nowadays, the ...
Real-time simulations of biological neural networks (BNNs) provide a natural platform for applicatio...
Since biological neural systems contain big number of neurons working in parallel, simulation of suc...