Emerging challenges for scientific communities are to efficiently process big data obtained by experimentation and computational simulations. Supercomputing architectures are available to support scalable and high performant processing environment, but many of the existing algorithm implementations are still unable to cope with its architectural complexity. One approach is to have innovative technologies that effectively use these resources and also deal with geographically dispersed large datasets. Those technologies should be accessible in a way that data scientists who are running data intensive computations do not have to deal with technical intricacies of the underling execution system. Our work primarily focuses on providing data scie...
Whereas traditional scientific applications are computationally intensive, recent applications requi...
At the International Research Workshop on Advanced High Performance Computing Systems held in Cetrar...
According to a recent exascale roadmap report, analysis will be the limiting factor in gaining insig...
Big data processing relies today on complex middleware stacks, comprised of high-level languages, pr...
Rapid advances in digital sensors, networks, storage, and computation along with their availability ...
Scientific communities engaging in big data analysis face numerous challenges in managing complex co...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
Exascale eScience infrastructures will face important and critical challenges, both from computation...
Emerging Big Data analytics and machine learning applications require a significant amount of comput...
Recent years the Hadoop Distributed File System(HDFS) has been deployed as the bedrock for many para...
Many scientific problems depend on the ability to analyze and compute on large amounts of data. This...
Over the past four years, the Big Data and Exascale Computing (BDEC) project organized a series of f...
International audienceOver the past four years, the Big Data and Exascale Computing (BDEC) project o...
The Large Hadron Collider (LHC), operating at the international CERN Laboratory in Geneva, Switzerla...
Whereas traditional scientific applications are computationally intensive, recent applications requi...
At the International Research Workshop on Advanced High Performance Computing Systems held in Cetrar...
According to a recent exascale roadmap report, analysis will be the limiting factor in gaining insig...
Big data processing relies today on complex middleware stacks, comprised of high-level languages, pr...
Rapid advances in digital sensors, networks, storage, and computation along with their availability ...
Scientific communities engaging in big data analysis face numerous challenges in managing complex co...
With Cloud Computing emerging as a promising new approach for ad-hoc parallel data processing, major...
In the last decade, our ability to store data has grown at a greater rate than our ability to proces...
Exascale eScience infrastructures will face important and critical challenges, both from computation...
Emerging Big Data analytics and machine learning applications require a significant amount of comput...
Recent years the Hadoop Distributed File System(HDFS) has been deployed as the bedrock for many para...
Many scientific problems depend on the ability to analyze and compute on large amounts of data. This...
Over the past four years, the Big Data and Exascale Computing (BDEC) project organized a series of f...
International audienceOver the past four years, the Big Data and Exascale Computing (BDEC) project o...
The Large Hadron Collider (LHC), operating at the international CERN Laboratory in Geneva, Switzerla...
Whereas traditional scientific applications are computationally intensive, recent applications requi...
At the International Research Workshop on Advanced High Performance Computing Systems held in Cetrar...
According to a recent exascale roadmap report, analysis will be the limiting factor in gaining insig...