HCloud

Author:

Delimitrou Christina1,Kozyrakis Christos2

Affiliation:

1. Stanford University/Cornell University, Stanford, CA, USA

2. Stanford University/EPFL, Stanford, CA, USA

Abstract

Cloud computing promises flexibility and high performance for users and cost efficiency for operators. To achieve this, cloud providers offer instances of different sizes, both as long-term reservations and short-term, on-demand allocations. Unfortunately, determining the best provisioning strategy is a complex, multi-dimensional problem that depends on the load fluctuation and duration of incoming jobs, and the performance unpredictability and cost of resources. We first compare the two main provisioning strategies (reserved and on-demand resources) on Google Compute Engine (GCE) using three representative workload scenarios with batch and latency-critical applications. We show that either approach is suboptimal for performance or cost. We then present HCloud, a hybrid provisioning system that uses both reserved and on-demand resources. HCloud determines which jobs should be mapped to reserved versus on-demand resources based on overall load, and resource unpredictability. It also determines the optimal instance size an application needs to satisfy its Quality of Service (QoS) constraints. We demonstrate that hybrid configurations improve performance by 2.1x compared to fully on-demand provisioning, and reduce cost by 46% compared to fully reserved systems. We also show that hybrid strategies are robust to variation in system and job parameters, such as cost and system load.

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Graphics and Computer-Aided Design,Software

Reference71 articles.

1. Amazon ec2. http://aws.amazon.com/ec2/. Amazon ec2. http://aws.amazon.com/ec2/.

2. K. Annapureddy. Security challenges in hybrid cloud infrastructures. In Aalto University T-110.5290 Seminar on Network Security. 2010. K. Annapureddy. Security challenges in hybrid cloud infrastructures. In Aalto University T-110.5290 Seminar on Network Security. 2010.

3. Autoscale. https://cwiki.apache.org/cloudstack/autoscaling.html. Autoscale. https://cwiki.apache.org/cloudstack/autoscaling.html.

4. Aws autoscaling. http://aws.amazon.com/autoscaling/. Aws autoscaling. http://aws.amazon.com/autoscaling/.

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