Flexible data centers could relieve grid stress with Emerald AI’s smart platform

Emerald AI’s smart platform orchestrates data center energy use, helping Artificial Intelligence factories adapt to grid stress and speed up deployment.

As demand for next-generation data centers surges, many technology hubs face lengthy delays—sometimes lasting years—due to the slow rollout of supporting energy infrastructure. To tackle this bottleneck, Washington, D.C.–based startup Emerald AI is pioneering a dynamic Artificial Intelligence-driven approach that could let data centers come online using the power grid’s existing latent capacity.

Emerald AI’s solution centers around its Emerald Conductor platform, a system that intelligently mediates between the grid and data centers. Rather than treating massive Artificial Intelligence factories as unyielding energy sinks, this platform enables the strategic slowing, pausing, or redirection of selected computing workloads based on real-time grid demands. During a Phoenix, Arizona field test with 256 NVIDIA GPUs, the company demonstrated it could reduce Artificial Intelligence workload power consumption by 25% for three hours amid a peak stress event—maintaining essential services while shifting flexible workloads or momentarily throttling non-urgent jobs such as model training.

Beyond optimizing individual sites, Emerald Conductor coordinates across a data center network, ensuring time-sensitive inference tasks maintain quality while shifting lower-priority or deferrable workloads to less-stressed regions or times. This agility not only allows faster deployment of new Artificial Intelligence factories—potentially sidestepping the need for costly grid expansion—but also enables cities to avoid rolling blackouts and facilitates higher penetration of renewable energy. By behaving like ´shock absorbers´, data centers can help stabilize grids’ variable energy flows, making intermittent renewables easier to integrate.

Emerald AI’s Phoenix demonstration—developed in partnership with NVIDIA, Oracle Cloud Infrastructure, utility Salt River Project, and EPRI’s DCFlex initiative—showed its system could support real utility grid operations, adjusting power draw during high air-conditioning demand without sacrificing Artificial Intelligence performance. AI jobs are categorized by flexibility tiers, with some workloads voluntarily slowed or rescheduled based on predicted or label-based flex potential. The Emerald Simulator tightly models these trade-offs to optimize both performance and grid support. Leading figures from Oracle, Databricks, and SRP affirmed the potential for this approach to redefine data centers as proactive grid allies.

With the International Energy Agency forecasting a potential doubling of data center electricity use by 2030, Emerald AI’s solution arrives as grid constraints push states like Texas to consider laws requiring centers to curtail demand during peak events. By dynamically managing their energy use, data centers might not only stay online during emergencies but could also accelerate the Artificial Intelligence revolution while supporting a more resilient, green grid. Emerald AI is now expanding its trials, aiming to prove that data centers can flex to grid needs—without compromising mission-critical compute.

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