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How ‘Unseen AI’ is Enhancing the Resilience of Critical Infrastructure

By: Jeff Gray, CEO and Co-Founder, Gluware

When the majority of people think about AI, the first thing that comes to mind is AI chatbots that write poetry and generate artistic masterpieces in the blink of an eye. While these AI applications capture tons of headlines and mindshare, a far more consequential AI revolution is taking place largely out of public view. This unseen AI revolution isn’t happening in Silicon Valley boardrooms or viral social media posts – it’s occurring in the underground tunnels of water treatment facilities, along vast electrical grids, and within the complex networks that keep our cities and communities running smoothly. Although these applications of AI might not garner the same amount of public attention, they are fundamentally reshaping how our most critical infrastructure operates.

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AI in Critical Infrastructure

Consider what happens when you turn on your tap for a glass of water. That simple action triggers a complex cascade of systems that have increasingly come to rely on artificial intelligence. Modern water utilities are using AI to predict equipment failures before they occur, optimize treatment processes, and detect leaks in real-time across thousands of miles of pipelines. In fact, AI-powered leak detection solutions can reduce the average building’s water use by approximately 20%, according to one company’s claims. These systems continuously analyze data from countless sensors, making micro-adjustments that collectively save millions of gallons of water and ensure consistent, safe delivery to our homes and businesses.

Our power grids, once relatively simple one-way streets of electricity delivery, have evolved into complex networks that must balance traditional power sources with renewable energy, storage systems, and varying demand patterns. AI systems are now essential to maintaining this delicate balance, making split-second decisions to prevent outages and ensure stable power delivery. During extreme weather events, these AI systems can automatically reroute power, predict potential failure points, and optimize recovery efforts – capabilities that would have seemed impossible just a decade ago. This level of intelligent automation is reminiscent of what we’ve achieved in enterprise network management, where AI-driven systems can now anticipate and prevent network disruptions before they impact business operations.

In both critical infrastructure and enterprise networks, we’re moving towards intent-based systems. For instance, in power grids, operators can specify intentions like ‘maintain stable voltage’ or ‘prioritize renewable sources when available,’ and the AI system works out the details. Similarly, in water management, the intent might be ‘maintain water quality within specific parameters’ or ‘optimize distribution based on demand patterns.’

Transportation infrastructure has undergone a similar quiet revolution. While self-driving cars capture public attention, AI is silently orchestrating traffic flows across entire cities, adjusting signal timing in real-time to reduce congestion and respond to accidents or special events. AI-powered traffic signals can reduce travel time by 25%-40% in certain areas, as seen in cities like Los Angeles and Pittsburgh. These systems can recognize developing traffic patterns hours in advance and make preemptive adjustments to prevent gridlock before it occurs. In public transit systems, AI algorithms are optimizing bus and train schedules based on real-time demand, weather conditions, and special events, ensuring more efficient service while reducing operational costs. These systems exemplify the intent-based approach, where the goal might be to ‘minimize congestion’ or ‘optimize transit schedules,’ allowing AI to dynamically adjust to changing conditions.

The impact of these behind-the-scenes AI applications extends into areas that might seem mundane but are crucial for human life. Waste management systems now use AI-powered routing to optimize collection schedules and reduce fuel consumption. Building management systems employ AI to control heating, cooling, and ventilation systems with unprecedented precision, significantly reducing energy consumption while improving comfort. Bridge and tunnel maintenance programs use AI-powered image analysis to detect structural issues before they become critical, preventing costly failures and potentially saving lives. These advancements mirror the progress we’ve seen in network automation, where AI-driven systems can now proactively identify and resolve potential issues across vast and complex network infrastructures.

The Invisibility Paradox

Perhaps the most remarkable aspect of this infrastructure revolution is its invisible nature. When these AI systems work perfectly, we don’t notice them at all. Our lights stay on, our water runs clean, our commutes remain predictable, and our buildings maintain comfortable temperatures. It’s only when these systems fail that we recognize their essential role in our daily lives. This invisibility paradox represents both the triumph and the challenge of infrastructure AI – its greatest successes are marked by the absence of problems rather than the presence of obvious innovations. This is why the technology underpinning all of this must be flawless.

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The implications of this quiet revolution extend far beyond operational efficiency. As our infrastructure becomes more intelligent and interconnected, it’s becoming more resilient to both natural disasters and human-caused disruptions. AI systems can predict and respond to extreme weather events, security threats, and equipment failures faster and more effectively than human operators alone. This enhanced resilience is particularly crucial as our infrastructure systems face mounting pressures from urbanization, aging systems, and increasing service demands. In the realm of network management, we’ve witnessed firsthand how AI-driven automation can dramatically improve network resilience and reduce downtime, even in the face of increasingly complex cyber threats.

Challenges and Considerations

However, this transformation also presents new challenges that demand attention from industry leaders and policymakers. As our infrastructure becomes more dependent on AI-driven automation, we must ensure these systems are secure from cyber threats, transparent in their decision-making, rigorously tested and designed with appropriate human oversight. Without these elements firmly in place, one small incident could cause widespread outages. Our experience in network automation has taught us the critical importance of robust security measures and clear governance frameworks in AI-driven systems.

The workforce implications are equally significant. Rather than replacing human workers, these AI systems are changing the nature of infrastructure jobs, creating new roles that combine traditional engineering knowledge with data science and AI expertise. This evolution requires a fundamental rethinking of how we train and develop the infrastructure workforce of the future. We’ve observed this shift in the networking industry, where professionals are increasingly learning to blend networking expertise with AI and automation skills, which is creating new job opportunities.

Moving forward, the next phase of this revolution will likely focus on integration – creating systems that can work together across different types of infrastructure. Imagine AI systems that can coordinate power grid operations with transportation networks, or water management systems that can automatically adjust to changes in industrial power consumption. These interconnected systems could create new levels of efficiency and resilience that we’re only beginning to envision. We’ve seen this already play out in enterprise networks, and the results have been powerful. The potential for similar integration across critical infrastructure sectors is immense and exciting.

Looking Ahead

As we marvel at the latest chatbot or AI-generated artwork, it’s worth remembering that the most profound impacts of AI often occur out of sight. The true revolution isn’t in the headlines or viral videos – it’s in the unseen systems and infrastructure that quietly keep our world running smoothly. This quiet AI revolution may not always capture public imagination, but it’s fundamentally transforming how our cities and communities function, creating a more resilient and efficient future for all of us.

The challenge now lies in ensuring this transformation continues to serve the public good seamlessly while developing appropriate oversight and security measures. Leaders who understand and embrace this quiet revolution will be best positioned to shape a future where technology and infrastructure work together harmoniously to improve lives. Drawing from experience in network automation, I believe the key to success lies in developing AI systems that are not only powerful and efficient but also adaptable, secure, and capable of understanding high-level intentions, while ensuring interoperability across diverse infrastructure sectors. The best is yet to come.

[To share your insights with us as part of editorial or sponsored content, please write to psen@itechseries.com]

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