In the era of petascale computing, more scientific applications are being deployed on leadership scale computing platforms to enhance the scientific productivity. Many I/O techniques have been designed to address the growing I/O bottleneck on large-scale systems by handling massive scientific data in a holistic manner. While such techniques have been leveraged in a wide range of applications, they have not been shown as adequate for many mission critical applications, particularly in data post-processing stage. One of the examples is that some scientific applications generate datasets composed of a vast amount of small data elements that are organized along many spatial and temporal dimensions but require sophisticated data analytics on one...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Computing in the last decade has been characterized by the rise of data- intensive scalable computin...
Scientific data sets have grown rapidly in recent years, outpacing the growth in memory and network ...
Exascale computing systems are soon to emerge, which will pose great challenges on the huge gap betw...
Advanced computing and sensing technologies enable scientists to study natural and physical phenomen...
Earth Observation data are a vital resource for studying long term changes, but the large data volum...
As scientific simulations scale to use petascale machines and beyond, the data volumes generated pos...
International audienceReading and writing data efficiently from storage system is necessary for most...
Core to many scientific and analytics applications are spatial data capturing the position or shape ...
Reading and writing big data is increasingly becoming a major bottleneck of using high-performance c...
The Earth Observing System Data and Information System archives many datasets that are critical to u...
pre-printWith the onset of extreme-scale computing, I/O constraints make it increasingly difficult f...
Today, it is projected that data storage and management is becoming one of the key challenges in ord...
Data analysis applications in areas as diverse as remote sensing and telepathology require operatin...
Current visualization tools lack the ability to perform full-range spatial and temporal analysis on ...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Computing in the last decade has been characterized by the rise of data- intensive scalable computin...
Scientific data sets have grown rapidly in recent years, outpacing the growth in memory and network ...
Exascale computing systems are soon to emerge, which will pose great challenges on the huge gap betw...
Advanced computing and sensing technologies enable scientists to study natural and physical phenomen...
Earth Observation data are a vital resource for studying long term changes, but the large data volum...
As scientific simulations scale to use petascale machines and beyond, the data volumes generated pos...
International audienceReading and writing data efficiently from storage system is necessary for most...
Core to many scientific and analytics applications are spatial data capturing the position or shape ...
Reading and writing big data is increasingly becoming a major bottleneck of using high-performance c...
The Earth Observing System Data and Information System archives many datasets that are critical to u...
pre-printWith the onset of extreme-scale computing, I/O constraints make it increasingly difficult f...
Today, it is projected that data storage and management is becoming one of the key challenges in ord...
Data analysis applications in areas as diverse as remote sensing and telepathology require operatin...
Current visualization tools lack the ability to perform full-range spatial and temporal analysis on ...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Computing in the last decade has been characterized by the rise of data- intensive scalable computin...
Scientific data sets have grown rapidly in recent years, outpacing the growth in memory and network ...