Leveraging AI for Sustainable Data Centers: Discovering the Path to Greener Technology

By Andy Connor, Channel Director EMEA for Subzero Engineering.

The digital age has meant that demand for data processing has soared in recent years, placing data centers front and central to the internet and cloud computing infrastructure.

Recent research from Goldman Sachs Research has estimated that while data centers currently consume between 1 and 2% of the world’s overall power, this demand is expected to grow by 160% by the end of the decade. And it is this unprecedented energy demand that can incur significant environmental costs, with 2022 to 2030 carbon emissions predicted to double!

The upsurge of AI must take responsibility for its role in increased energy consumption. According to the International Energy Agency, a Google search requires just 0.3 watt-hours of electricity, compared with a mighty 2.9 watt-hours for a single ChatGPT query. In this article, we look at both the part AI plays in technology’s demand for power, and conversely its huge potential in advancing sustainability efforts.

AI’s Role in Advancing Sustainability 

By balancing the power and cooling requirements of data centers with the need for efficiency, AI algorithms can predict, monitor, and adjust power consumption in real time, optimizing server utilization, cooling systems, or other infrastructure by reducing energy wastage from idle or underutilized equipment. This approach can pay huge dividends, resulting in notable energy savings and improved operational efficiency. 

Cooling contributes to a significant energy expenditure in data centers. Modeling using Computational Fluid Dynamics (CFD), uses AI insights to manage cooling systems by adjusting temperature and airflow based on real-time data and predictive analytics without compromising performance.

This allows data center operators and engineers to achieve improved energy efficiency, by enhancing cooling performance, proactively addressing issues to minimize downtime, and delivering optimal resource utilization. This enables informed decisions to be made in the reduction of energy consumption and improvement of overall efficiency. 

Going forward, we expect to see CFD used extensively with the integration of machine learning (ML) and AI ITE and hybrid cooling designs, with a continued priority on energy efficiency and sustainability.

As an exercise, we have kept track of the savings we have achieved for our customers through careful and considered optimization of their data center environments. The numbers are impressive. Since 2015 our customers have saved just under 9.1 billion kilowatt hours, reduced water consumption by 4.3 billion gallons, and have a total carbon reduction figure of more than 8.6 million tons - the equivalent of planting 47 million trees.

Along the way, we’ve also been able to help customers achieve an estimated 25% energy cost reduction and reduced the PUE (Power Usage Effectiveness) figure by an average of 0.3.

AI’s Role in Renewable Energy Sources 

Adopting AI and other emerging technologies must not come at the expense of environmental impact. The integration of renewable energy sources into data center operations therefore, remains pivotal in obtaining true sustainability credibility. Using free environmental energy sources, such as solar, wind, or water provides a sustainable means for power with AI further reducing the carbon footprint by predicting production from the source and aligning it with the facility’s demands. As an example, AI plays a critical role in monitoring and managing Microsoft’s Project Natick’s underwater data centers ensuring they operate efficiently, sustainably, and reliably.

There are, and will always be regional challenges, such as high temperatures, water scarcity, or high dust surroundings that can impact sustainability. AI can mitigate these challenges by predictive modeling, but there is an additional need to invest in research and development to advance renewable technologies. Furthermore, by sharing these innovations with the broader industry, this leadership can help drive the adoption and influence of sustainable solutions across the tech sector.

Integrating Sustainability into AI Development Strategies Without Compromising Innovation

Many hyperscalers are considering their infrastructure today for tomorrow’s technologies. They want to know that if by upgrading from a standard data center to an AI high-performance data center would it result in having to rip everything out, restarting their business from the ground up? They want to know if they can install a hyperscale area in their current facility or, in the event they need to put in piping for water cooling, that the infrastructure is primed and optimized for hyperscaling challenges.

When talking to our customers we ask them what they want to achieve, when they want to achieve it, and how we can help them engineer a solution that will work for them now and going forward. Are there alternative materials that are closer to sustainability values? How can we work better to make something that will be around for 10 or 20 years? We also discuss the type of materials being used. We're working closely with other companies where we can produce a product that's viable against steel. It's more efficient and more sustainable. You can transfer it, it's lighter and these things make a difference. 

Is the hyperscaler running its own data center? Or are they taking space in a CoLo? If they're in a CoLo, there's a responsibility on all sides to achieve sustainability goals. Often customers taking space in a CoLo don't care how efficient that data center is. They just want to make sure their SLAs are met. 

The CoLos are up against it because they need to provide the metrics of whoever's taking the estate. But, as legislation comes in, the efficiency of the data center will remain the focus. 

The Future of AI and Sustainable Data Centers

If you were looking at a true 100% AI infrastructure data center, the likelihood is that it won’t exist just yet. There will always be areas within the industry that will need high-performance compute processing power, but most facilities are likely to be powering what they do now; our phones, apps, laptops, and smart homes.

While new-build data centers can make themselves reasonably sustainable and efficient, legacy data centers have their work cut out. And that's where new containment systems ready for AI technologies, such as on-chip cooling, can enable companies to upgrade to more sustainable cooling solutions, without the need to completely rebuild. 

AI is another step in the evolution of digital transformation. We can either allow it to consume more power or leverage it to enhance operational efficiency, integrate renewable energy sources, and drive substantial and purposeful change. Organizations will continue to embrace AI-driven solutions but it is in the optimization of the technology, that can pave the way for greener and more energy-efficient infrastructure, benefiting both business and the planet.

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