Authors:
            
                    John O’Loughlin
                    
                        
                    
                     and
                
                    Lee Gillam
                    
                        
                    
                    
                
        
        
            Affiliation:
            
                    
                        
                    
                    University of Surrey, United Kingdom
                
        
        
        
        
        
             Keyword(s):
            Cloud Computing, Performance Prediction, Virtualisation, Scheduling.
        
        
            
                Related
                    Ontology
                    Subjects/Areas/Topics:
                
                        Cloud Brokering
                    ; 
                        Cloud Computing
                    ; 
                        Cloud Computing Architecture
                    ; 
                        Cloud Risk, Challenges, and Governance
                    ; 
                        Fundamentals
                    ; 
                        QoS for Applications on Clouds
                    ; 
                        Services Science
                    
            
        
        
            
                Abstract: 
                Various papers have reported on the differential performance of virtual machine instances of the same type, and same supposed performance rating, in Public Infrastructure Clouds. It has been established that instance performance is determined in large part by the underlying hardware, and performance variation is due to the heterogeneous nature of large and growing Clouds. Currently, customers have limited ability to request performance levels, and can only identify the physical CPU backing an instance, and so associate CPU models with expected performance levels, once resources have been obtained. Little progress has been made to predict likely performance for instances on such Public Clouds. In this paper, we demonstrate how such performance predictions could be provided for, predicated on knowledge derived empirically from one common Public Infrastructure Cloud.