The ability to provision resources on the fly and their pay-as-you-go nature has made cloud computing platforms a staple of modern computer infrastructure. Such platforms allow for new scheduling strategies for the execution of computing workloads. Finding a strategy that satisfies a user’s cost and time constraints is a difficult problem that requires a prediction tool. However the inherent variability of these platforms makes building such a tool a complex endeavor. Our thesis is that, by producing probability distributions of possible outcomes, stochastic simulation can be used to produce predictions that account for the variability. To demonstrate this we used Monte Carlo methods to produce a stochastic simulation by repeatedly running ...
Abstract—In recent years, researchers have contributed promising new techniques for allocating cloud...
Copyright © 2015 Inderscience Enterprises Ltd. We propose a Monte Carlo simulation as a service (MCS...
In this study, we focus on the resource provisioning problem of a cloud consumer from an Infrastruct...
The ability to provision resources on the fly and their pay-as-you-go nature has made cloud computin...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
Contrary to deterministic models, the execution of stochastic models depends on the realization of r...
International audienceThe Monte Carlo (MC) method is the most common technique used for uncertainty ...
This work introduces scheduling strategies to maximize the expected numberof independent tasks that ...
In this paper, we are interested in scheduling stochastic jobs on a reservation-based platform. Spec...
The growing character of the cloud business has manifested exponentially in the last 5 years. The ca...
In cloud systems consisting of heterogeneous distributed resources, scheduling plays a key role to o...
International audienceDue to its simplicity and good statistical results, the Monte Carlo (MC) metho...
Cloud computing provides a cheap and elastic platform for executing large scientific workflow applic...
Abstract-In recent years, researchers have contributed promising new techniques for allocating cloud...
Abstract—In recent years, researchers have contributed promising new techniques for allocating cloud...
Copyright © 2015 Inderscience Enterprises Ltd. We propose a Monte Carlo simulation as a service (MCS...
In this study, we focus on the resource provisioning problem of a cloud consumer from an Infrastruct...
The ability to provision resources on the fly and their pay-as-you-go nature has made cloud computin...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
International audienceIn the cloud computing model, cloud providers invoice clients for resource con...
Contrary to deterministic models, the execution of stochastic models depends on the realization of r...
International audienceThe Monte Carlo (MC) method is the most common technique used for uncertainty ...
This work introduces scheduling strategies to maximize the expected numberof independent tasks that ...
In this paper, we are interested in scheduling stochastic jobs on a reservation-based platform. Spec...
The growing character of the cloud business has manifested exponentially in the last 5 years. The ca...
In cloud systems consisting of heterogeneous distributed resources, scheduling plays a key role to o...
International audienceDue to its simplicity and good statistical results, the Monte Carlo (MC) metho...
Cloud computing provides a cheap and elastic platform for executing large scientific workflow applic...
Abstract-In recent years, researchers have contributed promising new techniques for allocating cloud...
Abstract—In recent years, researchers have contributed promising new techniques for allocating cloud...
Copyright © 2015 Inderscience Enterprises Ltd. We propose a Monte Carlo simulation as a service (MCS...
In this study, we focus on the resource provisioning problem of a cloud consumer from an Infrastruct...