The role of data in modern scientific workflows becomes more and more crucial. The unprecedented amount of data available in the digital era, combined with the recent advancements in Machine Learning and High-Performance Computing (HPC), let computers surpass human performances in a wide range of fields, such as Computer Vision, Natural Language Processing and Bioinformatics. However, a solid data management strategy becomes crucial for key aspects like performance optimisation, privacy preservation and security. Most modern programming paradigms for Big Data analysis adhere to the principle of data locality: moving computation closer to the data to remove transfer-related overheads and risks. Still, there are scenarios in which it is wort...
Next-generation e-science is producing colossal amounts of data, now frequently termed as Big Data, ...
Many tools and techniques have been developed to analyze big collections of data. The increased use ...
Generalizable approaches, models, and frameworks for irregular application scalability is an old yet...
The role of data in modern scientific workflows becomes more and more crucial. The unprecedented amo...
The analysis of next-generation sequencing (NGS) data requires complex computational workf...
Increasingly, online computer applications rely on large-scale data analyses to offer personalised a...
With the advancement in science and technology numerous complex scientific applications can be exec...
Abstract — In this new era of Big Data, there is a growing need to enable scientific workflows to pe...
In the last decade we witnessed an immense evolution of the computing infrastructures in terms of p...
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...
Emerging coupled scientific simulation workflows are composed of multiple component applications tha...
Data intensive computing holds the promise of major scientific breakthroughs and discoveries from th...
International audienceWorkflows may be defined as abstractions used to model the coherent flow of ac...
Next-generation computation-intensive scientific applications feature large-scale computing workflow...
Next-generation e-science is producing colossal amounts of data, now frequently termed as Big Data, ...
Many tools and techniques have been developed to analyze big collections of data. The increased use ...
Generalizable approaches, models, and frameworks for irregular application scalability is an old yet...
The role of data in modern scientific workflows becomes more and more crucial. The unprecedented amo...
The analysis of next-generation sequencing (NGS) data requires complex computational workf...
Increasingly, online computer applications rely on large-scale data analyses to offer personalised a...
With the advancement in science and technology numerous complex scientific applications can be exec...
Abstract — In this new era of Big Data, there is a growing need to enable scientific workflows to pe...
In the last decade we witnessed an immense evolution of the computing infrastructures in terms of p...
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...
Emerging coupled scientific simulation workflows are composed of multiple component applications tha...
Data intensive computing holds the promise of major scientific breakthroughs and discoveries from th...
International audienceWorkflows may be defined as abstractions used to model the coherent flow of ac...
Next-generation computation-intensive scientific applications feature large-scale computing workflow...
Next-generation e-science is producing colossal amounts of data, now frequently termed as Big Data, ...
Many tools and techniques have been developed to analyze big collections of data. The increased use ...
Generalizable approaches, models, and frameworks for irregular application scalability is an old yet...