Title
DEARS: A Deep Learning Based Elastic and Automatic Resource Scheduling Framework for Cloud Applications
Abstract
Cloud computing paradigm supports more enterprises to provide satisfactory web services to their clients. However, the bursty and fluctuation of requests challenge the traditional resource scheduling framework. Previous strategies manage the jobs in each virtual machines (VMs) according to the derived historical utilization patterns, where the misalignment on the utilization curves may cause the resource over-prediction and over-provisioning. To better reduce the service latency and the above mentioned problem, we propose DEARS, a Deep learning based Elastic and Automatic Resource Scheduling framework for cloud applications. It gives a proactive and reactive strategy, where the LSTM model is pro-applied to predict the future request demand based on historical workload. The corresponding VM allocation is separately managed by restriction assessment, VM provision, and dynamic consolidation modules. Then the SLAs feedback are iteratively applied to reactively improve the performance of resource allocation. Experiments based on real-life collected data shows the feasibility and efficiency of our framework. The high accuracy of prediction contributes to a more suitable allocation. And a better trade-off between QoS and SLAs in server side is achieved compared with the baselines.
Year
DOI
Venue
2018
10.1109/BDCloud.2018.00086
2018 IEEE Intl Conf on Parallel & Distributed Processing with Applications, Ubiquitous Computing & Communications, Big Data & Cloud Computing, Social Computing & Networking, Sustainable Computing & Communications (ISPA/IUCC/BDCloud/SocialCom/SustainCom)
Keywords
Field
DocType
cloud computing,resource scheduling,deep learning,SLAs
Server-side,Virtual machine,Computer science,Workload,Quality of service,Resource allocation,Artificial intelligence,Deep learning,Web service,Multimedia,Cloud computing,Distributed computing
Conference
ISSN
ISBN
Citations 
2158-9178
978-1-7281-1141-4
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Muhammad Hassan100.34
Haopeng Chen224137.94
Yutong Liu3205.75