Top 2025 utility analytics trends transforming the industry

The pace of change in today’s world is accelerating, and organizations that continue thriving will be those that embrace analytics as a strategic driver of innovation and resilience. In the utilities sector, this shift is particularly critical as leaders navigate growing climate risks, regulatory pressures, and evolving customer expectations. Advanced analytics is helping utilities tackle these challenges head-on—transforming operations, improving decision-making, and creating new opportunities to adapt and excel.

This article delves into four key utility analytics trends shaping 2025. Two focus on the unique demands of utilities, while the others offer broader, cross-industry relevance. From wildfire mitigation strategies to next-generation workflows powered by generative AI, these trends illustrate how data-driven insights are empowering organizations to navigate complexity and seize opportunities for innovation.

Trend #1: Wildfire mitigation analytics for utilities: A cost-aware approach

Wildfires have become an increasingly significant threat across the United States, driven by climate change and expanding land settlement patterns. What was once a regional concern is now a national challenge, with more communities at risk than ever before. According to NOAA, the threat of large fires is projected to increase sixfold over the next 20 years (Kennedy, 2015), underscoring the urgency for innovative mitigation strategies.

State regulators are responding to this challenge by requiring comprehensive wildfire mitigation plans (WMPs), which serve as frameworks to guide mitigation efforts and align activities like vegetation management, grid hardening, and emergency response. As an example, the Grid Resilience and Innovation Partnerships (GRIP) Program (U.S. Department of Energy, 2023) provided federal funding to help utilities implement critical wildfire mitigation initiatives.

Analytics in action

Addressing wildfire risk effectively requires a strategic, cost-aware approach. Advanced analytics empowers utilities to make data-driven decisions about where and how to invest in mitigation efforts. For instance, undergrounding power lines can prevent ignitions but comes at a high cost, making it crucial to determine the most critical areas for implementation. Similarly, intelligent fuses like remote-controlled reclosers can reduce wildfire risks by preventing automatic power restoration during wildfire events—a potentially hazardous scenario. Analytics helps utilities evaluate the costs and benefits of such measures to ensure resources are allocated efficiently while aligning with WMP objectives.

Optimizing emergency response and vegetation management

Beyond infrastructure investments, advanced risk modeling plays a key role in emergency preparedness and vegetation management. By analyzing data on environmental conditions, asset health, and vegetation proximity, utilities can prioritize areas for proactive maintenance or targeted inspections, reducing both costs and risks. These efforts are further strengthened when integrated into the WMP framework, ensuring all mitigation activities work cohesively.

Sample case study: How data-driven insights are saving lives and landscapes

Utilities can implement machine learning models that predict asset ignition and failure risks. These models can provide critical insights that inform Public Safety Power Shutoff (PSPS) decisions, helping the utilities mitigate potential wildfire damage while minimizing customer disruption. By integrating data-driven insights into their WMP strategy, utilities improve both safety outcomes and cost efficiency.

Trend #2: Computer vision as a transformative tool for utility asset management

As utilities confront the dual pressures of aging infrastructure and climate-related risks, computer vision is emerging as a game changer in asset management. Adoption of this technology is accelerating, driven by its ability to provide precise and scalable monitoring. By leveraging computer vision, utilities can move beyond traditional methods of inspection to a more proactive and data-driven approach, ensuring greater reliability and resilience in the face of escalating challenges.

Enhancing precision and efficiency

Computer vision is revolutionizing how organizations conduct inspections and manage assets, offering significant improvements in precision and efficiency. One critical application is cataloging assets, helping organizations address the common challenge of incomplete or outdated records of what infrastructure they have and where it is located. By providing this foundational situational awareness, computer vision enables utilities to maintain more accurate and reliable asset data.

In addition to cataloging, computer vision enhances efficiency by enabling more remote inspections and evaluations of infrastructure. Traditionally, utilities relied on sending electrical engineers to the field to inspect assets—a time-consuming and costly process. With the ability to collect imagery through automated systems or by deploying non-technical personnel equipped with drones or other imaging tools, utilities can now cover vast areas quickly and at a lower cost. This decoupling of data collection from technical expertise allows electrical engineers to conduct inspections and evaluations remotely, optimizing their time and reducing operational expenses.

Empowering data-driven decision making

The actionable insights generated by computer vision facilitate better decision making to enhance grid reliability and safety. With a clearer understanding of infrastructure health, utilities can prioritize maintenance activities, reduce risks of equipment failure, and minimize outages. By adopting a data-centric approach, providers are also allocating resources more efficiently, focusing efforts on where they will have the greatest impact.

Sample case study: How data-driven insights are saving time and costs

Utilities developing a computer vision solution can significantly reduce inspection time and costs. This innovative approach enables the utility to identify damaged equipment early and replace it before failures can occur, mitigating risks to both customers and the environment. By transitioning to a more advanced inspection methodology, utilities can not only improve safety outcomes but also enhance operational efficiency for their teams.

Trend #3: Generative AI driving next-generation workflows and decision making

Generative AI is revolutionizing how organizations approach operational workflows, offering tools and capabilities that were unimaginable just a few years ago. This technology, from advanced modeling to AI-powered solutions, is transforming everyday tasks into opportunities for innovation and efficiency. A noteworthy development is generative AI’s ability to deliver next-best-action recommendations, which leverage real-time, contextual data to guide decisions or automate steps in a wide range of processes.

Driving actionable recommendations and automation

Generative AI excels at transforming complex data into actionable insights. By analyzing contextual information— such as operational metrics, customer behaviors, or supply chain data, these tools can recommend optimal next steps, from prioritizing tasks to reallocating resources in real time. In some cases, generative AI can go further, enabling teams to focus on strategic activities by automating routine or repetitive tasks.

Enhancing integration and efficiency

One of the most compelling aspects of generative AI is its ability to integrate seamlessly with existing workflows and tools. By embedding AI capabilities into platforms already in use, organizations can enhance productivity without disrupting established processes, creating opportunities to streamline operations, reduce bottlenecks, and accelerate decision making.

Sample case study: How data-driven AI is transforming workflows

Generative AI can be applied to streamlining processes that depend on large volumes of documents such as customer support operations, invoice processing, and regulatory response research to reduce manual effort and empower teams to make faster, data-driven decisions. Generative AI helps make it possible to find answers faster.

Trend #4: Building consistent foundations with data governance and infrastructure

In today’s data-driven environment, robust data governance is the backbone of effective decision-making and analytics across industries. Ensuring the scalability, reliability, and compliance of analytics initiatives depends on the quality and accessibility of data. Modern architectures like data lakehouses and data meshes are enabling organizations to integrate and leverage their data assets more effectively, creating a solid foundation for innovation and efficiency.

Delivering consistency and accuracy

High-quality data is essential for consistent and accurate decision making. Whether data supports multiyear business planning, guiding operational responses during emergencies, or driving compliance reporting, robust data governance ensures analyses are based on reliable and standardized information. This consistency helps organizations align diverse decision-making processes and create a unified framework for analytics.

Streamlining interconnected analytics

A centralized data layer enhances the ability to address interconnected challenges by integrating diverse datasets—such as operational metrics, customer insights, and environmental data—to inform decisions across multiple functions. This approach allows organizations to tackle complex problems more efficiently, streamline operations, and adapt quickly to changing demands, fostering greater agility and responsiveness across industries.

Sample case study: How streamlining data drives efficiency

Utilities that automate data processes and establish robust data management practices help to ensure compliance with regulatory requirements while improving operational efficiency. This initiative not only enhances the consistency and reliability of the utility’s data, but also provides a foundation for solving interconnected challenges, such as resource allocation and long-term infrastructure planning.

Leading with analytics to shape a resilient future

The pace of change is accelerating, and industries that thrive will be those that embrace analytics not as a supporting tool, but as a strategic driver of innovation and resilience. From wildfire mitigation to generative AI, the trends shaping 2025 reveal the growing importance of actionable insights and data-driven decisions in tackling complex challenges.

For utilities, these advancements are more than operational enhancements—they are lifelines. As climate risks intensify and infrastructure demands increase, leveraging advanced analytics enables utilities to plan smarter, act faster, and operate more effectively. The same principles apply across industries: Those who invest in robust data governance, predictive tools, and next-generation AI will find themselves equipped to adapt and excel.

The true power of analytics lies in its ability to bring clarity to complexity, bridging the gap between raw data and informed action. By integrating these trends into their strategies, forward-thinking organizations are not only navigating the challenges ahead but seizing opportunities to lead in their markets.

The future belongs to those who lead with analytics. Will you be ready?

References

Kennedy, Caitlyn. (2015). Risk of very large fires could increase sixfold by mid-century in the US. NOAA. https://www.climate.gov/news-features/featured-images/risk-very-large-fires-could-increase-sixfold-mid-century-us

U.S. Department of Energy. (2023). Grid Resilience and Innovation Partnerships (GRIP) Program. https://www.energy.gov/gdo/grid-resilience-and-innovation-partnerships-grip-program


About the author

Adam Cornille is Senior Director of Advanced Analytics at Logic20/20. He is a data science manager and practitioner with over a decade of field experience, and has trained in development, statistics, and management practices. Adam currently heads the development of data science solutions and strategies for improving business maturity in the application of data.

 

is a member of

Utility Analytics Institute (UAI)

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