4.7 Article

Renewable Energy-Aware Big Data Analytics in Geo-Distributed Data Centers with Reinforcement Learning

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TNSE.2018.2813333

Keywords

Big data; load balancing; reinforcement learning; data center

Funding

  1. National China 973 Project [2015CB352401]
  2. NSFC [61572262]
  3. China Postdoctoral Science Foundation [2017M610252]
  4. China Postdoctoral Science Special Foundation [2017T100297]
  5. JSPS KAKENHI [16K16038]
  6. Strategic Information and Communications R&D Promotion Programme (SCOPE), MIC, Japan [162302008]
  7. Grants-in-Aid for Scientific Research [16K16038] Funding Source: KAKEN

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In the age of big data, companies tend to deploy their services in data centers rather than their own servers. The demands of big data analytics grow significantly, which leads to an extremely high electricity consumption at data centers. In this paper, we investigate the cost minimization problem of big data analytics on geo-distributed data centers connected to renewable energy sources with unpredictable capacity. To solve this problem, we propose a Reinforcement Learning (RL) based job scheduling algorithm by combining RL with neural network (NN). Moreover, two techniques are developed to enhance the performance of our proposal. Specifically, Random Pool Sampling (RPS) is proposed to retrain the NN via accumulated training data, and a novel Unidirectional Bridge Network (UBN) structure is designed for further enhancing the training speed by using the historical knowledge stored in the trained NN. Experiment results on real Google cluster traces and electricity price from Energy Information Administration show that our approach is able to reduce the data centers' cost significantly compared with other benchmark algorithms.

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