Projekt per år
Sammanfattning
The increased use of cloud and other large scale datacenter IT services and the associated power usage has put the spotlight on more energy-efficient datacenter management. In this paper, a simple model was developed to represent the heat rejection system and energy usage in a small DC setup. The model was then controlled by a reinforcement learning agent that handles both the load balancing of the IT workload, as well as cooling system setpoints.
The main contribution is the holistic approach to datacenter control where both facility metrics, IT hardware metric and cloud service logs are used as inputs.
The application of reinforcement learning in the proposed holistic setup is feasible and achieves results that outperform standard algorithms. The paper presents both the simplified DC model and the reinforcement learning agent in detail and discusses how this work can be extended towards a richer datacenter model.
The main contribution is the holistic approach to datacenter control where both facility metrics, IT hardware metric and cloud service logs are used as inputs.
The application of reinforcement learning in the proposed holistic setup is feasible and achieves results that outperform standard algorithms. The paper presents both the simplified DC model and the reinforcement learning agent in detail and discusses how this work can be extended towards a richer datacenter model.
Originalspråk | engelska |
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Titel på värdpublikation | e-Energy '21: Proceedings of the Twelfth ACM International Conference on Future Energy Systems |
Sidor | 424–429 |
DOI | |
Status | Published - 2021 juni 28 |
Ämnesklassifikation (UKÄ)
- Elektroteknik och elektronik
Fingeravtryck
Utforska forskningsämnen för ”Towards a Holistic Controller: Reinforcement Learning for Data Center Control”. Tillsammans bildar de ett unikt fingeravtryck.Projekt
- 1 Avslutade
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Autonomous datacenter for long term deployment: AutoDC
Eker, J., Årzén, K. & Heimerson, A.
2018/12/01 → 2021/10/06
Projekt: Forskning