Big data processing systems are characterized by a relevant number of components that are used in parallel to run multiple instances of the same tasks in order to achieve the needed performance levels in applications characterized by huge amounts of data. Such a number of components depend on the dimension of the involved data, so that new resources (e.g., processing or storage servers) are usually added as the working database grows. A reliable performance evaluation of these systems is at the same time crucial, in order to enable administrators and developers to keep the pace with data growth, and extremely difficult, due to the intrinsic complexity of these architectures. Notwithstanding, the available literature does not yet offer suffi...
Predicting sequential execution blocks of a large scale parallel application is an essential part of...
Big Data systems manage and process huge volumes of data constantly generated by various technologie...
\ua9 2014 IEEE. Big data benchmark suites must include a diversity of data and workloads to be usefu...
Big data processing systems are characterized by a relevant number of components that are used in pa...
Summary Big Data applications are characterized by a non-negligible number of complex parallel trans...
Big Data applications represent an emerging field, which have proved to be crucial in business intel...
Big Data analysis is of great challenges in practice. The data set sizes will grow quickly. And anal...
Computational analysis is a collection of procedures that is used to process large amounts of data w...
The selection of the Big Data algorithms, YARN rules and infrastructure can affect accuracy, perform...
Nowadays deployment of data-intensive systems in multi-dimensional domains is achieved with insuffic...
The enormous increase in data has led to the next grand challenge in computing: the big data problem...
One pivotal aspect of big data is the process which handles it, mainly referred to as big data anal...
International audienceMean field approximation is a powerful technique to study the performance of l...
The mean value analysis algorithm is used to model a database application that runs over a grid of c...
In the recent times the amount of data are generated and stored by various industries are rapidly in...
Predicting sequential execution blocks of a large scale parallel application is an essential part of...
Big Data systems manage and process huge volumes of data constantly generated by various technologie...
\ua9 2014 IEEE. Big data benchmark suites must include a diversity of data and workloads to be usefu...
Big data processing systems are characterized by a relevant number of components that are used in pa...
Summary Big Data applications are characterized by a non-negligible number of complex parallel trans...
Big Data applications represent an emerging field, which have proved to be crucial in business intel...
Big Data analysis is of great challenges in practice. The data set sizes will grow quickly. And anal...
Computational analysis is a collection of procedures that is used to process large amounts of data w...
The selection of the Big Data algorithms, YARN rules and infrastructure can affect accuracy, perform...
Nowadays deployment of data-intensive systems in multi-dimensional domains is achieved with insuffic...
The enormous increase in data has led to the next grand challenge in computing: the big data problem...
One pivotal aspect of big data is the process which handles it, mainly referred to as big data anal...
International audienceMean field approximation is a powerful technique to study the performance of l...
The mean value analysis algorithm is used to model a database application that runs over a grid of c...
In the recent times the amount of data are generated and stored by various industries are rapidly in...
Predicting sequential execution blocks of a large scale parallel application is an essential part of...
Big Data systems manage and process huge volumes of data constantly generated by various technologie...
\ua9 2014 IEEE. Big data benchmark suites must include a diversity of data and workloads to be usefu...