The increasingly common practice of (1) replicating datasets and (2) using resources as distributed data stores in Grid environments has lead to the problem of determining which replica can be accessed most efficiently. Due to diverse performance characteristics and load variations of several components in the end-to-end path linking these various locations, selecting a replica location from among many requires accurate prediction information of end-to-end data transfer times between the sources and sinks. In this paper, we present a prediction system that is based on combining end-to-end application throughput observations and network load variations, drawing from their merits of capturing whole system performance and variations in load pa...
Predicting the data transfer throughput of cloud networks plays an important role in several resourc...
Abstract- Grid Computing has emerged as an efficient problem solution paradigm since the last decade...
A good running time prediction of tasks is very helpful and important for job scheduling and resourc...
The recent proliferation of Data Grids and the increas-ingly common practice of using resources as d...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
Experimental performance studies on computer systems, including Grids, require deep understandings o...
Abstract. Grid applications often require large data transfers along heterogeneous networks having d...
Computing grids are key enablers of computational science. Researchers from many fields (High Energy...
Grids consist of both dedicated and non-dedicated clusters. For effective mapping of parallel applic...
AbstractGrid is a collection of heterogeneous systems which share the computing power and storage ca...
To make the best use of the resources in a shared grid environment, an application scheduler must ma...
Abstract. As Grid computing increasingly enters the commercial domain, per-formance and Quality of S...
Abstract—In distributed system the knowledge of the network is mandatory to know the available conne...
In this paper, we describe methods for predicting the performance of Computational Grid resources (m...
Predicting the data transfer throughput of cloud networks plays an important role in several resourc...
Abstract- Grid Computing has emerged as an efficient problem solution paradigm since the last decade...
A good running time prediction of tasks is very helpful and important for job scheduling and resourc...
The recent proliferation of Data Grids and the increas-ingly common practice of using resources as d...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
The computational grid is becoming the platform of choice for large-scale distributed data-intensive...
Experimental performance studies on computer systems, including Grids, require deep understandings o...
Abstract. Grid applications often require large data transfers along heterogeneous networks having d...
Computing grids are key enablers of computational science. Researchers from many fields (High Energy...
Grids consist of both dedicated and non-dedicated clusters. For effective mapping of parallel applic...
AbstractGrid is a collection of heterogeneous systems which share the computing power and storage ca...
To make the best use of the resources in a shared grid environment, an application scheduler must ma...
Abstract. As Grid computing increasingly enters the commercial domain, per-formance and Quality of S...
Abstract—In distributed system the knowledge of the network is mandatory to know the available conne...
In this paper, we describe methods for predicting the performance of Computational Grid resources (m...
Predicting the data transfer throughput of cloud networks plays an important role in several resourc...
Abstract- Grid Computing has emerged as an efficient problem solution paradigm since the last decade...
A good running time prediction of tasks is very helpful and important for job scheduling and resourc...