- The new Vertiv Next Predict service uses AI analytics to anticipate equipment failures and optimise uptime.
- The initiative highlights industry shifts toward data-driven maintenance, but its real-world impact and adoption barriers warrant scrutiny.
What happened: Vertiv launches AI-driven data center service
Vertiv Holdings Co., a U.S. provider of critical infrastructure for data centres and networks, has introduced Vertiv Next Predict, an AI-powered managed service designed to transform how data centres handle maintenance and operations. The service uses machine learning and advanced analytics to assess patterns in equipment behaviour and predict issues before they disrupt operations, according to the company’s announcement.
Vertiv’s positioning of Next Predict comes as data center facilities face mounting pressure to manage AI workloads, which demand higher power density, fast deployment cycles and reliable uptime. Recent industry reports highlight that AI-intensive workloads reshape the infrastructure needs of data centers, creating complexity across power, cooling and IT systems.
The predictive service can be applied across Vertiv’s power management, thermal systems and integrated infrastructure platforms, with the goal of reducing unplanned downtime and lowering the total cost of ownership for operators. By shifting from traditional reactive or scheduled maintenance to data-driven prediction, the company says clients can respond before faults escalate.
Vertiv’s broader strategy also includes modular cooling solutions and advanced power architectures to support high-density AI deployments, reflecting its broader pivots toward next-generation data centre requirements. For example, the company has been expanding liquid cooling offerings and modular infrastructure products designed for AI environments.
Also Read: https://btw.media/all/tech-trends/ai-infrastructure-and-enterprise-storage/
Why it’s important: AI workloads and data centre evolution
Vertiv Next Predict illustrates a notable trend in data centre operations: integration of AI analytics into infrastructure maintenance and optimisation. As artificial intelligence and large-scale machine learning workloads grow, operators are increasingly searching for tools that can manage complexity and ensure reliability without excessive manual oversight.
Yet the shift to predictive maintenance — while promising efficiency gains, raises questions about adoption barriers and user readiness. Integrating AI analytics into mission-critical systems requires data quality, integration with legacy equipment and a shift in operational culture. Operators must trust model outputs and reconcile them with established maintenance workflows, which is not trivial in highly regulated or performance-sensitive environments.
Moreover, while services like Vertiv Next Predict can help anticipate issues, they cannot fully eliminate risks inherent to complex systems. Predicting failures depends on historical and real-time data; unforeseen conditions or novel workload patterns could still lead to outages.
On the market side, the initiative also reflects Vertiv’s efforts to expand beyond hardware into managed services with recurring revenue potential. This could help differentiate vendors in a crowded landscape where competitors also target AI-centric infrastructure needs. However, success will depend on tangible results in operational uptime and cost-efficiency that justify customers’ investment in predictive tools.
Also Read: https://btw.media/all/it-infrastructure/data-centre-energy-and-cooling/
