Towards Sustainability and Energy Efficiency Using Data Analytics for HPC Data Center

Author:

Chinnici Andrea1,Ahmadzada Eyvaz23,Kor Ah-Lian2ORCID,De Chiara Davide4,Domínguez-Díaz Adrián1ORCID,de Marcos Ortega Luis1ORCID,Chinnici Marta3ORCID

Affiliation:

1. Departamento de Ciencias de la Computación, Universidad de Alcalá, 28801 Madrid, Spain

2. School of Built Environment, Engineering, and Computing, Leeds-Beckett University, Leeds LS2 3AE, UK

3. ENEA Casaccia Research Center, Department of Energy Technologies and Renewable Sources, ICT Division-HPC Lab, 00123 Rome, Italy

4. ENEA Portici Research Center, Department of Energy Technologies and Renewable Sources, ICT Division-HPC Lab, 80055 Portici, Italy

Abstract

High-performance computing (HPC) in data centers increases energy use and operational costs. Therefore, it is necessary to efficiently manage resources for the sustainability of and reduction in the carbon footprint. This research analyzes and optimizes ENEA HPC data centers, particularly the CRESCO6 cluster. The study starts by gathering and cleaning extensive datasets consisting of job schedules, environmental conditions, cooling systems, and sensors. Descriptive statistics accompanied with visualizations provide deep insight into collated data. Inferential statistics are then used to investigate relationships between various operational variables. Finally, machine learning models predict the average hot-aisle temperature based on cooling parameters, which can be used to determine optimal cooling settings. Furthermore, idle periods for computing nodes are analyzed to estimate wasted energy, as well as for evaluating the effect that idle node shutdown will have on the thermal characteristics of the data center under consideration. It closes with a discussion on how statistical and machine learning techniques can improve operations in a data center by focusing on important variables that determine consumption patterns.

Publisher

MDPI AG

Reference28 articles.

1. Barroso, L.A., Clidaras, J., and Holzle, U. (2013). The Datacenter as a Computer: An Introduction to the Design of Ware-House-Scale Machines, Morgan & Claypool Publishers. [2nd ed.].

2. Mell, P., and Grance, T. (2011). The NIST Definition of Cloud Computing, National Institute of Standards and Technology.

3. Hamilton, J. (2009, January 4–7). Cooperative expendable micro-slice servers (CEMS): Low cost, low power servers for internet-scale services. Proceedings of the Conference on Innovative Data Systems Research (CIDR), Asilomar, CA, USA.

4. ASHRAE (2021). Thermal Guidelines for Data Processing Environments, American Society of Heating, Refrigerating and Air-Conditioning Engineers, Inc.. [5th ed.].

5. Hastie, T., Tibshirani, R., and Friedman, J. (2009). The Elements of Statistical Learning: Data Mining, Inference, and Prediction, Springer Science & Business Media.

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