E-Book, Englisch, 212 Seiten, eBook
Reihe: KAIST Research Series
Youn / Chen / Dazzi Cloud Broker and Cloudlet for Workflow Scheduling
1. Auflage 2017
ISBN: 978-981-10-5071-8
Verlag: Springer Singapore
Format: PDF
Kopierschutz: 1 - PDF Watermark
E-Book, Englisch, 212 Seiten, eBook
Reihe: KAIST Research Series
ISBN: 978-981-10-5071-8
Verlag: Springer Singapore
Format: PDF
Kopierschutz: 1 - PDF Watermark
This book blends the principles of cloud computing theory and discussion of emerging technologies in cloud broker systems, enabling users to realise the potential of an integrated broker system for scientific applications and the Internet of Things (IoT).
Due to dynamic situations in user demand and cloud resource status, scalability has become crucial in the execution of complex scientific applications. Therefore, data analysts and computer scientists must grasp workflow management issues in order to better understand the characteristics of cloud resources, allocate these resources more efficiently and make critical decisions intelligently. Thus, this book addresses these issues through discussion of some novel approaches and engineering issues in cloud broker systems and cloudlets for workflow scheduling. This book closes the gaps between cloud programmers and scientific applications designers, describing the fundamentals of cloud broker system technology and the state-of-the-art applications in implementation and performance evaluation.
The books gives details of scheduling structures and processes, providing guidance and inspiration for users including cloud programmers, application designers and decision makers with involvement in cloud resource management.
Zielgruppe
Research
Autoren/Hrsg.
Weitere Infos & Material
1 Integrated Cloud Broker System and Its Experimental Evaluation.
1.1 Cloud Broker System Overview. 1.2 VM Resource management schemes in cloud brokers. 1.3 Adaptive Resource Collaboration Framework [13]. 1.4 Science Gateway Overview. 1.5 Scientific Workflow Applications. 1.6 Conventional service broker for scientific application in cloud. 1.7 Cost Adaptive Resource Management in Science Gateway. 1.8 Workflow Scheduling Scheme with Division Policy. 1.9 Test Environments for Performance Evaluation on resource management schemes of the Science Gateway. 1.10 Performance Evaluation on resource management schemes of Science Gateway.
Reference.
2 VM Placement via Resource Brokers in a Cloud Datacenter.
2.1 Introduction. 2.2 Computing-aware Initial VM Placement. 2.3 VM reallocation based on resource utilization-aware VM consolidation and dispersion. 2.4 Reference.
3 Cost Adaptive Workflow Resource Broker in Cloud. 3.1 Introduction . 3.2 Background and Related Works. 3.3 Objectives. 3.4 Proposed System Model for Cost-Adaptive Resource Management Scheme. 3.5 Proposed Cost Adaptive Workflow Scheduling Scheme. 3.6 Proposed Marginal Cost based Resource Provisioning Scheme. 3.7 Experiment and Results. 3.8 Conclusions. 3.9 Reference.
4 A Cloud Broker System for Connected Car Services with an Integrated Simulation Framework.
4.1 Introduction. 4.2 A Cloud Broker System for V2C Connected Car Service Offloading. 4.3 An Integrated Road Traffic-Network-Cloud Simulation Framework for V2C Connected Car Services Using a Cloud Broker System . 4.4 Conclusion. Reference.
5 Mobile Device as Cloud Broker for Computation Offloading at Cloudlets.
5.1 Introduction. 5.2 New architecture of computation offloading at cloudlet. 5.3 A study on the OCS Mode. 5.4 Allocation problem in mobile device broker. 5.5 Reference.
6 Opportunistic Task Scheduling over Co-Located Clouds.
6.1 Introduction. 6.2 Background and related works. 6.3 Opportunistic Task Scheduling over Co-Located Clouds Mode. 6.4 OSCC Mode. 6.5 Analysis and Optimization for OSCC Mode. 6.6 Performance Evaluation. 6.7 References.
7 Mobility-Aware Resource Scheduling Cloudlets in Mobile Environment.
7.1 Introduction. 7.2 Resource scheduling based on mobility-aware Caching. 7.3 Resource scheduling based on mobility-aware computation offloading. 7.4 Incentive Design for Caching and Computation Offloading. 7.5 References.
8 Machine-learning based approaches for cloud brokering.
8.1 Introduction. 8.2 Different ways to achieve machine learning. 8.3 Different methodologies for machine learning. 8.4 Machine Learning and Cloud Brokering.
8.5 The current landscape of Machine-learning enabled cloud brokering approaches.
8.6 Conclusion.
8.7 References




