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Let us know which data center you'd like to visit and how to reach you, and one of team members will be in touch shortly.
By Anthony Mares, Director of Infrastructure Engineering, DataBank
AI at the Edge
As AI’s popularity grows and is proving to deliver innovative new business benefits, we’re seeing many cases where it can be combined with other technologies. AI-powered analytics. AI-driven virtual assistants. AI in industry-specific technologies in healthcare, finance, insurance, and virtually every other sector.
What about AI at the edge, though? Just what is this combination, and what does it mean for companies looking to take advantage of all it can offer?
AI at the edge refers to the deployment of artificial intelligence algorithms on edge devices, servers, or systems directly at the “edge” of a network instead of relying solely on centralized processing. This approach enables real-time data analysis and decision-making closer to where the data is generated, helping to reduce latency and improve application performance.
Initially, AI models required extensive resources and were run on powerful servers in centralized locations. However, as devices became more capable and the demand for immediate insights grew, the shift to edge computing emerged, enabling AI to operate independently in more diverse and dynamic edge environments.
This has opened new possibilities for industries where real-time responses are critical such as technology, healthcare, finance, automotive, and utilities. Some companies are already utilizing AI to screen resumes and provide HR support to their employees.
AI in edge computing enhances the efficiency, speed, and intelligence of localized data processing. These AI algorithms can perform various tasks such as data analysis, pattern recognition, decision-making, and predictive modeling – all at the source of the data.
Here’s a closer look at how AI functions within edge computing in various industries and its overall benefits:
Data centers are now doing all they can to offer AI at the edge to meet the growing demand for low-latency, high-performance applications across various industries. As more businesses adopt IoT, autonomous systems, and real-time analytics, the need for immediate data processing close to the source has become critical.
Offering edge AI capabilities enables data center companies to differentiate themselves in a competitive market. By integrating AI at the edge into their services, data center companies can provide customers with the ability to process and analyze data locally, reducing the time it takes to make decisions and improving the responsiveness of their applications. Utilizing high performance computing (HPC) clusters, which are made up of multiple servers connected through high-speed networks, allows for parallel processing. For their customers, this means enhanced performance where milliseconds can make a significant difference.
Consider the case of a popular online gaming company that has millions of players across the globe, including in regions with varying levels of internet infrastructure. To ensure that every player, regardless of location, experiences smooth gameplay with minimal latency, the company leverages AI at the edge for its game hosting.
For example, in a densely populated city on the west coast, where internet speeds can fluctuate due to high user demand, the company deploys edge servers closer to this specific geographic area. These servers host the game locally, allowing players to connect to a nearby data center instead of a distant central server. The edge AI continuously monitors network conditions, predicting and adjusting for potential slowdowns in real-time. This ensures that players enjoy fast, responsive gameplay with reduced lag, even during peak hours.
By hosting the application closer to consumers, the gaming company enhances the overall player experience, providing a competitive edge in markets where internet connectivity may not be as robust. This approach also allows the company to roll out updates and new features rapidly in specific regions, tailoring the experience to local preferences and maintaining high performance globally.
Or imagine the example of a smart city where the energy grid is optimized using edge AI. Smart meters in homes and businesses continuously monitor energy consumption and weather conditions, making real-time adjustments to energy distribution.
During a sudden heatwave, the edge AI in these meters can quickly decide to balance the load, diverting excess energy from non-essential areas to critical cooling systems in hospitals or other vital facilities. By processing this information locally, the city ensures a stable energy supply, even in rapidly changing conditions, demonstrating the transformative power of AI at the edge.
By bringing AI closer to where data is generated, edge computing becomes faster, more responsive, and more efficient. This combination not only improves performance in applications requiring real-time processing but also enables smarter, more autonomous systems across various industries.
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