Statistics-Driven Workload Modeling for the Cloud
A recent trend for data-intensive computations is to use pay-as-one-go execution environments that scale transparently to the user. However, providers of such environments must tackle the challenge of configuring their system to provide maximal performance while minimizing the cost of resources used. This paper uses statistical models to predict resource requirements for Cloud computing applications. Such a prediction framework can guide system design and deployment decisions such as scale, scheduling, and capacity.