Hierarchical Multi-Agent Framework for Carbon-Efficient Liquid-Cooled Data Center Clusters

Authors

  • Soumyendu Sarkar Hewlett Packard Enterprise
  • Avisek Naug Hewlett Packard Enterprise
  • Antonio Guillen Hewlett Packard Enterprise
  • Vineet Gundecha Hewlett Packard Enterprise
  • Ricardo Luna Gutiérrez Hewlett Packard Enterprise
  • Sahand Ghorbanpour Hewlett Packard Enterprise
  • Sajad Mousavi Hewlett Packard Enterprise
  • Ashwin Ramesh Babu Hewlett Packard Enterprise
  • Desik Rengarajan Hewlett Packard Enterprise Amazon
  • Cullen Bash Hewlett Packard Enterprise

DOI:

https://doi.org/10.1609/aaai.v39i28.35370

Abstract

Reducing the environmental impact of cloud computing requires efficient workload distribution across geographically dispersed Data Center Clusters (DCCs) and simultaneously optimizing liquid and air (HVAC) cooling with time shift of workloads within individual data centers (DC). This paper introduces Green-DCC, which proposes a Reinforcement Learning (RL) based hierarchical controller to optimize both workload and liquid cooling dynamically in a DCC. By incorporating factors like weather, carbon intensity, and resource availability, Green-DCC addresses realistic constraints and interdependencies. We demonstrate how the system optimizes multiple data centers synchronously, enabling the scope of digital twins, and compare the performance of various RL approaches based on carbon emissions and sustainability metrics while also offering a framework and benchmark simulation for broader ML research in sustainability.

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Published

2025-04-11

How to Cite

Sarkar, S., Naug, A., Guillen, A., Gundecha, V., Luna Gutiérrez, R., Ghorbanpour, S., Mousavi, S., Ramesh Babu, A., Rengarajan, D., & Bash, C. (2025). Hierarchical Multi-Agent Framework for Carbon-Efficient Liquid-Cooled Data Center Clusters. Proceedings of the AAAI Conference on Artificial Intelligence, 39(28), 29694-29696. https://doi.org/10.1609/aaai.v39i28.35370