Abstract—Temporal data mining algorithms are becoming increasingly important in many application domains including computational neuroscience, especially the analysis of spike train data. While application scientists have been able to readily gather multi-neuronal datasets, analysis capabilities have lagged behind, due to both lack of powerful algorithms and inaccessibility to powerful hardware platforms. The advent of GPU architectures such as Nvidia’s GTX 280 offers a cost-effective option to bring these capabilities to the neuroscien-tist’s desktop. Rather than port existing algorithms onto this architecture, we advocate the need for algorithm transformation, i.e., rethinking the design of the algorithm in a way that need not necessarily...
Abstract—The graphics processing unit (GPU) has evolved into a key part of today’s heterogeneous par...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
Abstract In the next decade, the demands for computing in large scientific experimen...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Data Mining allows one to analyze large amounts of data. With increasing amounts of data being colle...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Porrmann F, Pilz S, Stella A, et al. Acceleration of the SPADE Method Using a Custom-Tailored FP-Gro...
Neuroimaging genomics is an emerging field that provides exciting opportunities to understand the ge...
The fields of neuroscience and artificial intelligence have a long and entwined history. In recent t...
We present two efficient Apriori implementations of Frequent Itemset Mining (FIM) that utilize new-g...
Nowadays, with the increase of computational analysis in sciences such as biology and neuroscience, ...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
Dedicated computing environments are becoming increasingly important in neuroimaging applications. ...
Abstract—The graphics processing unit (GPU) has evolved into a key part of today’s heterogeneous par...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
Abstract In the next decade, the demands for computing in large scientific experimen...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Data Mining allows one to analyze large amounts of data. With increasing amounts of data being colle...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Understanding the functioning of a neural system in terms of its underlying circuitry is an importan...
Porrmann F, Pilz S, Stella A, et al. Acceleration of the SPADE Method Using a Custom-Tailored FP-Gro...
Neuroimaging genomics is an emerging field that provides exciting opportunities to understand the ge...
The fields of neuroscience and artificial intelligence have a long and entwined history. In recent t...
We present two efficient Apriori implementations of Frequent Itemset Mining (FIM) that utilize new-g...
Nowadays, with the increase of computational analysis in sciences such as biology and neuroscience, ...
The last decade has seen the re-emergence of machine learning methods based on formal neural network...
Dedicated computing environments are becoming increasingly important in neuroimaging applications. ...
Abstract—The graphics processing unit (GPU) has evolved into a key part of today’s heterogeneous par...
Data analysis is a rising field of interest for computer science research due to the growing amount ...
Abstract In the next decade, the demands for computing in large scientific experimen...