The Rise of AI Data Center Hubs: How Ellendale, North Dakota, is Powering the Future of Compute
The demand for artificial intelligence is no longer a future prediction – it’s an insatiable present reality. And that reality requires power, and a lot of it. Applied Digital Corporation’s ambitious data center campus in Ellendale, North Dakota, underscored by a new $7 billion lease agreement with CoreWeave, isn’t just another construction project; it’s a bellwether for a fundamental shift in where and how AI is built and deployed. This isn’t simply about building bigger data centers; it’s about strategically positioning infrastructure to meet the exponential growth of AI and high-performance computing (HPC).
The Ellendale Advantage: Power, Location, and Scalability
Applied Digital’s choice of Ellendale isn’t accidental. The campus is designed to deliver up to 1 gigawatt of power, a critical factor for AI workloads that demand immense computational resources. But power alone isn’t enough. Ellendale’s location offers access to abundant, low-cost energy – a significant operational advantage – and a climate conducive to efficient cooling, reducing energy consumption further. This combination positions the region as a potential leader in the emerging AI data center ecosystem (opens in a new tab).
The 15-year lease with CoreWeave, an AI hyperscaler, for 250 megawatts (MW) of critical IT load, is a pivotal moment. The option for an additional 150 MW demonstrates CoreWeave’s confidence in Ellendale’s scalability and long-term potential. This isn’t just about immediate capacity; it’s about building a platform that can adapt to the rapidly evolving needs of AI and HPC. The campus is engineered for high-density compute, meaning it can pack more processing power into a smaller footprint, maximizing efficiency and minimizing costs.
Beyond CoreWeave: The Broader Implications for AI Infrastructure
The Applied Digital-CoreWeave deal highlights a growing trend: the specialization of data center infrastructure. Traditional data centers are often designed for a wide range of workloads. However, AI and HPC have unique requirements – massive power, high bandwidth, and specialized cooling solutions. We’re seeing a rise in purpose-built facilities like Ellendale, designed from the ground up to meet these demands. This specialization is crucial for unlocking the full potential of AI and accelerating innovation.
This shift also has geographic implications. While established data center hubs like Northern Virginia and Silicon Valley remain important, locations like North Dakota, with access to affordable power and favorable climates, are gaining prominence. This decentralization of AI infrastructure could lead to new economic opportunities in these regions and reduce the strain on existing hubs. The competition for these locations will only intensify as AI adoption continues to accelerate.
The Role of Sustainable Energy in AI’s Future
The energy consumption of AI is a growing concern. As models become more complex and data volumes increase, the demand for power will only escalate. This makes sustainable energy sources even more critical. Ellendale’s access to low-cost energy, coupled with the campus’s energy-efficient design, positions it as a potential model for sustainable AI infrastructure. The International Energy Agency (opens in a new tab) highlights the importance of energy efficiency and renewable energy sources in mitigating the environmental impact of data centers.

Looking Ahead: The Future of AI Data Center Development
The Applied Digital-CoreWeave partnership is more than just a lease agreement; it’s a glimpse into the future of AI infrastructure. We can expect to see more purpose-built data centers, a greater emphasis on sustainability, and a geographic diversification of AI workloads. The race to build the next generation of AI infrastructure is on, and Ellendale, North Dakota, is rapidly emerging as a key player. The ability to rapidly deploy capacity, combined with access to abundant and affordable power, will be the defining characteristics of successful AI data center hubs.
What are your predictions for the evolution of AI data center infrastructure? Share your thoughts in the comments below!