The rapid advancement of artificial intelligence (AI) and machine learning (ML) is fundamentally reshaping the data center landscape. Sectors including healthcare, finance, manufacturing, and transportation are beginning to leverage sophisticated predictive algorithms, and as AI models continue to mature and organizations strive to process growing datasets, data centers must rapidly scale to support increasingly complex workflows.
Data centers require large quantities of power, due to the vast amount of computing required to operate efficiently. Some leaders have raised concerns about the high energy consumption of AI workloads in particular, citing reservations about environmental impact. However, many experts believe such fears may be overstated, with estimates suggesting that AI workloads would only represent 15% to 20% of data center capacity by 2028.
In fact, technological advancements—including AI—can profoundly enhance data center energy management by streamlining operations, refining cooling technologies, and integrating renewable energy sources into data center operations.
Optimizing Energy Management
As data centers scale operations to meet the growing demand of organizations across industries, leaders must identify new ways to streamline data center operations and lessen their environmental impact.
Cooling Technologies
A notable advancement is the shift from traditional air-cooling systems to more energy efficient liquid cooling solutions. Cooling is critical within data centers to prevent the overheating of servers, but traditional air-based cooling is notorious for its significant impact on data center power consumption, often accounting for nearly half of a facility’s total energy usage. New liquid cooling technologies can more efficiently transfer heat away from data center components, thereby significantly reducing the energy consumption required for cooling functionality.
AI Monitoring
AI can also enhance data center operations by analyzing hundreds or thousands of IoT sensing devices across all domains and correlate that into real time insights, facility and or IT optimization opportunities as well as overall risk management and avoidance. For example, AI can predict maintenance needs before they arise, preventing any unnecessary downtime.
Future and more advanced AI models will be able to adjust cooling or power distribution automatically based on real-time data center operations, therefore preventing unnecessary energy waste, risk, etc. Continuous optimization through AI-driven energy management software enables data centers to improve efficiency, reduce risk & waste and align operational practices with environmental objectives.
Smart-Grids and Microgrids
To effectively manage energy demands, data centers are increasingly adopting smart-grid technologies and deploying microgrids. Smart-grid technologies facilitate real-time communication and control between energy providers and consumers, enhancing the reliability and efficiency of energy distribution. Microgrids, on the other hand, are localized energy systems that can operate independently or in conjunction with the main power grid. Together, they enable better management of distributed energy resources, such as solar and wind, alleviating pressure on the primary power grid and enhancing energy resilience.
Integrating Renewable Energy Sources
AI can also help to optimize site selection for renewable energy projects, helping to integrate these renewable energy sources into data center operations. By analyzing vast datasets, AI identifies the optimal location for installations, predicting energy production and facilitating the seamless integration of intermittent sources like wind and solar into the grid. This approach not only enhances the scalability of renewable energy initiatives, but also enables data centers to meet performance demands while reducing their carbon footprint.
Embracing Innovation and Enhancing Energy Efficiency
As AI continues to transform data center operations, the growing demand for high-performance computing and the increasing data traffic from digital services and cloud computing present both challenges and opportunities. While the need for more scalable infrastructure to support AI-driven applications may be seen as problematic by some, it also opens the door for innovation and operational efficiency. AI-driven autonomous systems can streamline routine tasks, reduce manual oversight, and boost productivity, all while pushing the boundaries of infrastructure design.
Crucially, this evolution is not just about managing energy consumption—it’s about leveraging AI to optimize resources, enhance sustainability, and build more efficient data centers. The future of data centers will be defined by their ability to adapt to the needs of AI, driving both technological progress and environmental responsibility.
About the Author
Joe Reele is Vice President, Solution Architects at Schneider Electric, responsible for bringing together the full suite of the company’s products and services to provide complete solutions for its customers. Joe has more than 22 years of experience in strategic planning, business development, operations management, and system engineering strategies. He started his career with the U.S. Air Force Nuclear program and then led one of the world’s largest financial data center portfolios. Joe provides strong technical and business leadership skills with the proven ability to analyze an organization’s business requirements, identify deficiencies and potential opportunities, and develop innovative solutions to meet the customer’s business objectives.
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