Big Data applications are trivially parallelizable because they typically consist of simple and straightforward operations performed on a large number of independent input records. GPUs appear to be particularly well suited for this class of applications given their high degree of parallelism and high memory bandwidth. However, a number of issues severely complicate matters when trying to exploit GPUs to accelerate these applications. First, Big Data is often too large to fit in the GPUâ s separate, limited-sized memory. Second, data transfers to and from GPUs are expensive because the bus that connects CPUs and GPUs has limited bandwidth and high latency; in practice, this often results in data-starved GPU cores. Third, GPU memory bandwid...
We have analyzed and accelerated two large scientific applications used at the Barcelona Supercomput...
Deep learning is an emerging workload in the field of HPC. This powerful method of resolution is abl...
High compute-density with massive thread-level parallelism of Graphics Processing Units (GPUs) is be...
Big Data applications are trivially parallelizable because they typically consist of simple and stra...
2018-08-02Recent exponential growth of the data sets size demanded by modern big data applications r...
Algorithms for processing large, unstructured data sets have shown great promise in implementations ...
Graphics processing units (GPUs) have become prevalent in modern computing systems. While their high...
The big data revolution has ushered an era with ever increasing volumes and complexity of data requi...
GPUs are increasingly adopted for large-scale database processing, where data accesses represent the...
Many applications with regular parallelism have been shown to benefit from using Graphics Processing...
Big data analytics is eventual discovery of knowledge from large set of data thus leading to busines...
The general-purpose computing capabilities of the Graphics Processing Unit (GPU) have recently been ...
This paper presents novel cache optimizations for massively parallel, throughput-oriented architectu...
The ever-increasing demand for high performance Big Data ana- lytics and data processing, has paved ...
Big data analytics open challenges for efficiently processing, moving and storing data. Existing res...
We have analyzed and accelerated two large scientific applications used at the Barcelona Supercomput...
Deep learning is an emerging workload in the field of HPC. This powerful method of resolution is abl...
High compute-density with massive thread-level parallelism of Graphics Processing Units (GPUs) is be...
Big Data applications are trivially parallelizable because they typically consist of simple and stra...
2018-08-02Recent exponential growth of the data sets size demanded by modern big data applications r...
Algorithms for processing large, unstructured data sets have shown great promise in implementations ...
Graphics processing units (GPUs) have become prevalent in modern computing systems. While their high...
The big data revolution has ushered an era with ever increasing volumes and complexity of data requi...
GPUs are increasingly adopted for large-scale database processing, where data accesses represent the...
Many applications with regular parallelism have been shown to benefit from using Graphics Processing...
Big data analytics is eventual discovery of knowledge from large set of data thus leading to busines...
The general-purpose computing capabilities of the Graphics Processing Unit (GPU) have recently been ...
This paper presents novel cache optimizations for massively parallel, throughput-oriented architectu...
The ever-increasing demand for high performance Big Data ana- lytics and data processing, has paved ...
Big data analytics open challenges for efficiently processing, moving and storing data. Existing res...
We have analyzed and accelerated two large scientific applications used at the Barcelona Supercomput...
Deep learning is an emerging workload in the field of HPC. This powerful method of resolution is abl...
High compute-density with massive thread-level parallelism of Graphics Processing Units (GPUs) is be...