4.7 Article

MAGNETIC: Multi-Agent Machine Learning-Based Approach for Energy Efficient Dynamic Consolidation in Data Centers

期刊

IEEE TRANSACTIONS ON SERVICES COMPUTING
卷 15, 期 1, 页码 30-44

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TSC.2019.2919555

关键词

Host power mode; machine learning; migration cost; power mode transition cost; VM consolidation; VM migration; energy efficiency; cloud data centers

资金

  1. EC H2020 MANGO [671668]
  2. EC [825111]
  3. ERC Consolidator Grant COMPUSAPIEN [725657]
  4. Ministry of Science, Research and Technology of Islamic Republic of Iran

向作者/读者索取更多资源

In this paper, a centralized-distributed low-overhead failure-aware dynamic VM consolidation strategy is proposed to minimize energy consumption in large-scale data centers. The strategy selects the most adequate power mode and frequency of each host during runtime using a distributed multi-agent Machine Learning (ML) based strategy, and migrates the VMs accordingly using a centralized heuristic. Experimental results show that this strategy reduces data center energy consumption and the number of VM migrations and host power mode transitions, while guaranteeing the same QoS. Additionally, the strategy exhibits better scalability and lower time overhead compared to other approaches.
Improving the energy efficiency of data centers while guaranteeing Quality of Service (QoS), together with detecting performance variability of servers caused by either hardware or software failures, are two of the major challenges for efficient resource management of large-scale cloud infrastructures. Previous works in the area of dynamic Virtual Machine (VM) consolidation are mostly focused on addressing the energy challenge, but fall short in proposing comprehensive, scalable, and low-overhead approaches that jointly tackle energy efficiency and performance variability. Moreover, they usually assume over-simplistic power models, and fail to accurately consider all the delay and power costs associated with VM migration and host power mode transition. These assumptions are no longer valid in modem servers executing heterogeneous workloads and lead to unrealistic or inefficient results. In this paper, we propose a centralized-distributed low-overhead failure-aware dynamic VM consolidation strategy to minimize energy consumption in large-scale data centers. Our approach selects the most adequate power mode and frequency of each host during runtime using a distributed multi-agent Machine Learning (ML) based strategy, and migrates the VMs accordingly using a centralized heuristic. Our Multi-AGent machine learNing-based approach for Energy efficienT dynamic Consolidation (MAGNETIC) is implemented in a modified version of the CloudSim simulator, and considers the energy and delay overheads associated with host power mode transition and VM migration, and is evaluated using power traces collected from various workloads running in real servers and resource utilization logs from cloud data center infrastructures. Results show how our strategy reduces data center energy consumption by up to 15 percent compared to other works in the state-of-the-art (SoA), guaranteeing the same QoS and reducing the number of VM migrations and host power mode transitions by up to 86 and 90 percent, respectively. Moreover, it shows better scalability than all other approaches, taking less than 0.7 percent time overhead to execute for a data center with 1,500 VMs. Finally, our solution is capable of detecting host performance variability due to failures, automatically migrating VMs from failing hosts and draining them from workload.

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