Clean Energy Solutions in Data Centers: Leveraging Advanced Materials and AI for Sustainable DevOps Operations
DOI:
https://doi.org/10.36676/jrps.v14.i5.1542Keywords:
DevOps Operations, AIAbstract
This paper examines how artificial intelligence (AI) and advanced engineering materials contribute to reduced energy consumption in data centers, a key consideration for sustainable DevOps. The topic of study is to use AI to introduce efficiency within data center operations such as maintenance, workload distribution, and cooling systems. Furthermore, the paper discusses the effectiveness of integrating different materials within buildings, including phase change materials and cutting-edge thermal management approaches to minimize energy utilization. Simulation findings reveal the potential to achieve higher efficiency levels in energy use when AI and Advanced Materials are incorporated. Such findings are supported by real-time examples that illustrate its applicability and usefulness in actual working environments. It also examines challenges regarding deployment and reproducibility, presenting suggestions intended to enhance the sustainability of the data centers via technological developments.
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