In order to assess service quality of a networked application (such as a streaming session), distributed monitoring servers need to continuously collect application-specific performance metrics in real time. Much of the previous work to address this is to use distributed aggregation tree (DAT) rooted at each monitor. However, this approach often leads to high monitoring delay and network stress. In this paper, we study a highly scalable monitoring network for distributed applications. In the network, there are distributed monitors collecting application performance in two steps: first, client applications report their performance to some proxies by means of a client overlay, and then the proxies report the performance to the distributed mon...
Abstract Most of the traditional top-k algorithms are based on a single-server setting. They may be ...
Traditional centralized monitoring systems (MS) do not scale to emerging large network computing sys...
Grid services have tremendously simplified the programming challenges in leveraging large-scale dist...
In order to assess the overall service quality in real time, the performance metrics of a distribute...
Efficient and scalable management of large networks requires distributed management systems. In this...
textScalable system monitoring is a fundamental abstraction for large-scale networked systems. The g...
The focus of this thesis is continuous real-time monitoring, which is essential for the realization ...
We present a monitoring system for large-scale parallel and distributed computing environments that ...
Large-scale networked systems, such as the Internet and server clusters, are omnipresent today. They...
Distributed systems are challenging for runtime verification. Centralized specifications provide a g...
Over the last decade, the number, size and complexity of large-scale networked systems has been grow...
Akademisk avhandling som med tillstånd av Kungl Tekniska högskolan framlägges till offentlig granskn...
Abstract-Large scale distributed system has become the fundamental platforms for many real-world pro...
Abstract. We aim to build a scalable, distributed passive network mon-itoring system that can run se...
Real-time monitoring is increasingly becoming impor-tant in various scenes of large scale, multi-sit...
Abstract Most of the traditional top-k algorithms are based on a single-server setting. They may be ...
Traditional centralized monitoring systems (MS) do not scale to emerging large network computing sys...
Grid services have tremendously simplified the programming challenges in leveraging large-scale dist...
In order to assess the overall service quality in real time, the performance metrics of a distribute...
Efficient and scalable management of large networks requires distributed management systems. In this...
textScalable system monitoring is a fundamental abstraction for large-scale networked systems. The g...
The focus of this thesis is continuous real-time monitoring, which is essential for the realization ...
We present a monitoring system for large-scale parallel and distributed computing environments that ...
Large-scale networked systems, such as the Internet and server clusters, are omnipresent today. They...
Distributed systems are challenging for runtime verification. Centralized specifications provide a g...
Over the last decade, the number, size and complexity of large-scale networked systems has been grow...
Akademisk avhandling som med tillstånd av Kungl Tekniska högskolan framlägges till offentlig granskn...
Abstract-Large scale distributed system has become the fundamental platforms for many real-world pro...
Abstract. We aim to build a scalable, distributed passive network mon-itoring system that can run se...
Real-time monitoring is increasingly becoming impor-tant in various scenes of large scale, multi-sit...
Abstract Most of the traditional top-k algorithms are based on a single-server setting. They may be ...
Traditional centralized monitoring systems (MS) do not scale to emerging large network computing sys...
Grid services have tremendously simplified the programming challenges in leveraging large-scale dist...