Through the algorthmic design patterns of data parallelism and task parallelism, the graphics processing unit (GPU) offers the potential to vastly accelerate discovery and innovation across a multitude of disciplines. For example, the exponential growth in data volume now presents an obstacle for high-throughput data mining in fields such as neuroinformatics and bioinformatics. As such, we present a characterization of a MapReduce-based data-mining application on a general-purpose GPU (GPGPU). Using neuroscience as the application vehicle, the results of our multi-dimensional performance evaluation show that a “one-size-fits-all” approach maps poorly across different GPGPU cards. Rather, a high-performance implementation on the GPGPU should f...
The extensive use of medical monitoring devices has resulted in the generation of tremendous amounts...
BackgroundModern neuroscience research demands computing power. Neural circuit mapping studies such ...
Nowadays, with the increase of computational analysis in sciences such as biology and neuroscience, ...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Abstract—Temporal data mining algorithms are becoming increasingly important in many application dom...
Data Mining allows one to analyze large amounts of data. With increasing amounts of data being colle...
In this age, a huge amount of data is generated every day by human interactions with services. Disco...
Multiple instance learning is a challenging task in supervised learning and data mining. How- ever,...
Many tasks in data mining and statistics are inherently parallel. While modern commodity desktop pro...
Graph Pattern Mining (GPM) extracts higher-order information in a large graph by searching for small...
Dedicated computing environments are becoming increasingly important in neuroimaging applications. ...
Pattern matching is an important task in a plethora of different fields ranging from computer scienc...
Using modern graphics processing units for no-graphics high performance computing is motivated by th...
Many real-world applications are capable of producing continuous, infinite streams of data. During t...
Data Mining by its definition is meant to deal with large volumes of data. Ever growing volumes of ...
The extensive use of medical monitoring devices has resulted in the generation of tremendous amounts...
BackgroundModern neuroscience research demands computing power. Neural circuit mapping studies such ...
Nowadays, with the increase of computational analysis in sciences such as biology and neuroscience, ...
Through the algorthmic design patterns of data parallelism and task parallelism, the graphics proces...
Abstract—Temporal data mining algorithms are becoming increasingly important in many application dom...
Data Mining allows one to analyze large amounts of data. With increasing amounts of data being colle...
In this age, a huge amount of data is generated every day by human interactions with services. Disco...
Multiple instance learning is a challenging task in supervised learning and data mining. How- ever,...
Many tasks in data mining and statistics are inherently parallel. While modern commodity desktop pro...
Graph Pattern Mining (GPM) extracts higher-order information in a large graph by searching for small...
Dedicated computing environments are becoming increasingly important in neuroimaging applications. ...
Pattern matching is an important task in a plethora of different fields ranging from computer scienc...
Using modern graphics processing units for no-graphics high performance computing is motivated by th...
Many real-world applications are capable of producing continuous, infinite streams of data. During t...
Data Mining by its definition is meant to deal with large volumes of data. Ever growing volumes of ...
The extensive use of medical monitoring devices has resulted in the generation of tremendous amounts...
BackgroundModern neuroscience research demands computing power. Neural circuit mapping studies such ...
Nowadays, with the increase of computational analysis in sciences such as biology and neuroscience, ...