Extreme Data is an incarnation of Big Data concept distinguished by the massive amounts of data that must be queried, communicated and analyzed in near real-time by using a very large number of memory or storage elements and exascale computing systems. Immediate examples are the scientific data produced at a rate of hundreds of gigabits-per-second that must be stored, filtered and analyzed, the millions of images per day that must be analyzed in parallel, the one billion of social data posts queried in real-time on an in-memory components database. Traditional disks or commercial storage nowadays cannot handle the extreme scale of such application data. Following the need of improvement of current concepts and technologies, we focus i...
At the International Research Workshop on Advanced High Performance Computing Systems held in Cetrar...
Due to energy limitation and high operational costs, it is likely that exascale computing will not b...
Exascale eScience infrastructures will face important and critical challenges, both from computation...
[Abstract] Extreme Data is an incarnation of Big Data concept distinguished by the massive amounts o...
International audienceExtreme Data is an incarnation of Big Data concept distinguished by the massiv...
Extreme scale parallel computing systems will have tens of thousands of optionally accelerator-equip...
Recently, we’ve seen a variety of emerging programming models targeting the next generation of HPC h...
Abstract Scalability is a key feature for big data analysis and machine learning frameworks and for ...
c © The Authors 2015. This paper is published with open access at SuperFri.org Extreme scale paralle...
We report on a two-day workshop in September 2018 which brought together scientists from different d...
Rapid advances in digital sensors, networks, storage, and computation along with their availability ...
The ever increasing demand of computing power has led to the development of extremely large systems ...
This chapter describes a software architecture for processing big-data analytics considering the com...
International audienceExtreme scale parallel computing systems will have tens of thousands ...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
At the International Research Workshop on Advanced High Performance Computing Systems held in Cetrar...
Due to energy limitation and high operational costs, it is likely that exascale computing will not b...
Exascale eScience infrastructures will face important and critical challenges, both from computation...
[Abstract] Extreme Data is an incarnation of Big Data concept distinguished by the massive amounts o...
International audienceExtreme Data is an incarnation of Big Data concept distinguished by the massiv...
Extreme scale parallel computing systems will have tens of thousands of optionally accelerator-equip...
Recently, we’ve seen a variety of emerging programming models targeting the next generation of HPC h...
Abstract Scalability is a key feature for big data analysis and machine learning frameworks and for ...
c © The Authors 2015. This paper is published with open access at SuperFri.org Extreme scale paralle...
We report on a two-day workshop in September 2018 which brought together scientists from different d...
Rapid advances in digital sensors, networks, storage, and computation along with their availability ...
The ever increasing demand of computing power has led to the development of extremely large systems ...
This chapter describes a software architecture for processing big-data analytics considering the com...
International audienceExtreme scale parallel computing systems will have tens of thousands ...
Automation of the execution of computational tasks is at the heart of improving scientific productiv...
At the International Research Workshop on Advanced High Performance Computing Systems held in Cetrar...
Due to energy limitation and high operational costs, it is likely that exascale computing will not b...
Exascale eScience infrastructures will face important and critical challenges, both from computation...