Real-time monitoring of cloud resources is crucial for a variety of tasks such as performance analysis, workload management, capacity planning and fault detection. Applications producing big data make the monitoring task very difficult at high sampling frequencies because of high computational and communication overheads in collecting, storing, and managing information. We present an adaptive algorithm for monitoring big data applications that adapts the intervals of sampling and frequency of updates to data characteristics and administrator needs. Adaptivity allows us to limit computational and communication costs and to guarantee high reliability in capturing relevant load changes. Experimental evaluations performed on a large testbed sho...
Over the last decade, the number, size and complexity of large-scale networked systems has been grow...
Monitoring plays a significant role in improving the quality of service in cloud computing. It helps...
Cloud-based solutions are increasingly being used to implement large-scale dynamic data driven appli...
Real-time monitoring of cloud resources is crucial for a variety of tasks such as performance analys...
Abstract—In large scale systems, real-time monitoring of hardware and software resources is a crucia...
In large scale systems, real-time monitoring of hardware and software resources is a crucial means f...
Mainstream cloud technologies are challenged by real-time, big data processing requirements or emerg...
Efficient utilization of resources plays an important role in the performance of large scale task pr...
AbstractIn this paper, we propose a new framework based on learning techniques to improve the execut...
Cloud computing service providers seek to deploy vast quantities of shared resources that are manag...
The emergence of cloud computing has made dynamic provisioning of elastic capacity to applications o...
Abstract-The emergence of cloud computing has made dynamic provisioning of elastic capacity to appli...
Large-scale Cloud systems and big data analytics frameworks are now widely used for practical servic...
Cloud computing is a suitable solution for professionals, companies, and institutions that need to h...
Cloud computing is a groundbreaking solution to acquire computational resources on demand. To delive...
Over the last decade, the number, size and complexity of large-scale networked systems has been grow...
Monitoring plays a significant role in improving the quality of service in cloud computing. It helps...
Cloud-based solutions are increasingly being used to implement large-scale dynamic data driven appli...
Real-time monitoring of cloud resources is crucial for a variety of tasks such as performance analys...
Abstract—In large scale systems, real-time monitoring of hardware and software resources is a crucia...
In large scale systems, real-time monitoring of hardware and software resources is a crucial means f...
Mainstream cloud technologies are challenged by real-time, big data processing requirements or emerg...
Efficient utilization of resources plays an important role in the performance of large scale task pr...
AbstractIn this paper, we propose a new framework based on learning techniques to improve the execut...
Cloud computing service providers seek to deploy vast quantities of shared resources that are manag...
The emergence of cloud computing has made dynamic provisioning of elastic capacity to applications o...
Abstract-The emergence of cloud computing has made dynamic provisioning of elastic capacity to appli...
Large-scale Cloud systems and big data analytics frameworks are now widely used for practical servic...
Cloud computing is a suitable solution for professionals, companies, and institutions that need to h...
Cloud computing is a groundbreaking solution to acquire computational resources on demand. To delive...
Over the last decade, the number, size and complexity of large-scale networked systems has been grow...
Monitoring plays a significant role in improving the quality of service in cloud computing. It helps...
Cloud-based solutions are increasingly being used to implement large-scale dynamic data driven appli...