Efficient runtime capture of multiworkflow data using provenance
Renan Souza, Marta Mattoso, et al.
eScience 2019
An important feature of most cloud computing solutions is auto-scaling, an operation that enables dynamic changes on resource capacity. Auto-scaling algorithms generally take into account aspects such as system load and response time to determine when and by how much a resource pool capacity should be extended or shrunk. In this article, we propose a scheduling algorithm and auto-scaling triggering strategies that explore user patience, a metric that estimates the perception end-users have from the Quality of Service (QoS) delivered by a service provider based on the ratio between expected and actual response times for each request. The proposed strategies help reduce costs with resource allocation while maintaining perceived QoS at adequate levels. Results show reductions on resource-hour consumption by up to approximately 9% compared to traditional approaches.
Renan Souza, Marta Mattoso, et al.
eScience 2019
Rajkumar Buyya, Satish Narayana Srirama, et al.
ACM Computing Surveys
Renato L.F. Cunha, Lucas C. Villa Real, et al.
eScience 2021
Rajkumar Buyya, Satish Narayana Srirama, et al.
ACM Computing Surveys