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A Configurable Pythonic Data Center Model for Sustainable Cooling and ML Integration

18 April 2024
Avisek Naug
Antonio Guillen
Ricardo Luna Gutierrez
Vineet Gundecha
Sahand Ghorbanpour
Sajad Mousavi
Ashwin Ramesh Babu
Soumyendu Sarkar
    AI4CE
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Abstract

There have been growing discussions on estimating and subsequently reducing the operational carbon footprint of enterprise data centers. The design and intelligent control for data centers have an important impact on data center carbon footprint. In this paper, we showcase PyDCM, a Python library that enables extremely fast prototyping of data center design and applies reinforcement learning-enabled control with the purpose of evaluating key sustainability metrics including carbon footprint, energy consumption, and observing temperature hotspots. We demonstrate these capabilities of PyDCM and compare them to existing works in EnergyPlus for modeling data centers. PyDCM can also be used as a standalone Gymnasium environment for demonstrating sustainability-focused data center control.

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