To date, parallel simulation algorithms for spiking neural P (SNP) systems are based on a matrix representation. This way, the simulation is implemented with linear algebra operations, which can be easily parallelized on high performance computing platforms such as GPUs. Although it has been convenient for the first generation of GPU-based simulators, such as CuSNP, there are some bottlenecks to sort out. For example, the proposed matrix representations of SNP systems lead to very sparse matrices, where the majority of values are zero. It is known that sparse matrices can compromise the performance of algorithms since they involve a waste of memory and time. This problem has been extensively studied in the literature of parallel comp...
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...
Schäfer M, Schönauer T, Wolff C, Hartmann G, Klar H, Rückert U. Simulation of Spiking Neural Network...
Current parallel simulation algorithms for Spiking Neural P (SNP) systems are based on a matrix rep...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
We present in this paper our work regarding simulating a type of P sys- tem known as a spiking neur...
Spiking Neural P (SNP) systems, variants of Psystems (under Membrane and Natural computing), are com...
Abstract(#br)In this paper, we create a matrix representation for spiking neural P systems with stru...
Spiking neural P systems (in short, SN P systems) are parallel models of computations inspired by t...
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 (SN P systems, for short) are a class of distributed parallel computing de...
In the 2010, matrix representation of SN P system without delay was presented while in the case of S...
Many modern neural simulators focus on the simulation of networks of spiking neurons on parallel har...
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...
Schäfer M, Schönauer T, Wolff C, Hartmann G, Klar H, Rückert U. Simulation of Spiking Neural Network...
Current parallel simulation algorithms for Spiking Neural P (SNP) systems are based on a matrix rep...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
We present in this paper our work regarding simulating a type of P sys- tem known as a spiking neur...
Spiking Neural P (SNP) systems, variants of Psystems (under Membrane and Natural computing), are com...
Abstract(#br)In this paper, we create a matrix representation for spiking neural P systems with stru...
Spiking neural P systems (in short, SN P systems) are parallel models of computations inspired by t...
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 (SN P systems, for short) are a class of distributed parallel computing de...
In the 2010, matrix representation of SN P system without delay was presented while in the case of S...
Many modern neural simulators focus on the simulation of networks of spiking neurons on parallel har...
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...
Schäfer M, Schönauer T, Wolff C, Hartmann G, Klar H, Rückert U. Simulation of Spiking Neural Network...