High performance computing on the Graphics Processing Unit (GPU) is an emerging field driven by the promise of high computational power at a low cost. However, GPU programming is a non-trivial task and moreover architectural limitations raise the question of whether investing effort in this direction may be worthwhile. In this work, we use GPU programming to simulate a two-layer network of Integrate-and-Fire neurons with varying degrees of recurrent connectivity and investigate its ability to learn a simplified navigation task using a policy-gradient learning rule stemming from Reinforcement Learning. The purpose of this paper is twofold. First, we want to support the use of GPUs in the field of Computational Neuroscience. Second, using GPU...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
High performance computing on the Graphics Processing Unit (GPU) is an emerging field driven by the ...
Efficient simulation of large-scale spiking neuronal networks is important for neuroscientific resea...
Simulating biological neural networks is an important task for computational neuroscientists attempt...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
Taking inspiration from machine learning libraries - where techniques such as parallel batch trainin...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
The performance potential of future architectures, thanks to Moores Law, grows linearly with the nu...
Simulations are an important tool for investigating brain function but large models are needed to fa...
The ability to train large-scale neural networks has resulted in state-of-the-art per-formance in ma...
The arrival of graphics processing (GPU) cards suitable for massively parallel computing promises a↵...
There has been a strong interest in modeling a mammalian brain in order to study the architectural a...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...
High performance computing on the Graphics Processing Unit (GPU) is an emerging field driven by the ...
Efficient simulation of large-scale spiking neuronal networks is important for neuroscientific resea...
Simulating biological neural networks is an important task for computational neuroscientists attempt...
Large-scale simulations of parts of the brain using detailed neuronal models to improve our understa...
Taking inspiration from machine learning libraries - where techniques such as parallel batch trainin...
In this work we present further extensions and improvements of a Spiking Neural P system (for short...
Simulation speed matters for neuroscientific research: this includes not only how quickly the simula...
The performance potential of future architectures, thanks to Moores Law, grows linearly with the nu...
Simulations are an important tool for investigating brain function but large models are needed to fa...
The ability to train large-scale neural networks has resulted in state-of-the-art per-formance in ma...
The arrival of graphics processing (GPU) cards suitable for massively parallel computing promises a↵...
There has been a strong interest in modeling a mammalian brain in order to study the architectural a...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
This paper propose a multithreaded Genetic Programming classi cation evaluation model using NVIDIA...
Simulation speed matters for neuroscientific research: this includes not only how fast the simulated...