24/7 availability requires a service model powered by real-time data and predictive intelligence. Read how automation and insights-empowered service teams maximize uptime.

January 21, 2026
In today’s always-connected world, consumers expect uninterrupted access to critical services — whether in healthcare, manufacturing, IT, security, or retail banking. The margin for downtime has all but disappeared as outages can erode trust, disrupt operations, and damage a brand’s reputation.
For financial institutions in particular, where the self-service channel is a cornerstone of customer interaction, ensuring 24/7 availability has become not just an operational concern but a strategic priority. The question is: how can leaders deliver it consistently, at scale, and cost-effectively?
The answer lies in data-driven decision-making — using real-time insights, predictive analytics, and automation to anticipate issues, prevent failures and resolve incidents faster.
Traditional approaches to availability have long relied on what’s known as “break-fix” service: wait for something to fail, then send a technician to repair it. While simple, this model is reactive, costly, and increasingly risky in an environment where expectations are always-on.
In contrast, a data-driven model enables organizations to manage availability more efficiently. Predictive algorithms flag anomalies in device behavior, predicting failures before they occur. This capability helps optimize maintenance schedules and minimize emergency repairs. Real-time monitoring tools trigger automated fixes, driving faster resolution. Service teams are dispatched with the right skills and parts only when necessary; they are equipped with actionable insights that boost first-time fix rates. The result is higher uptime, reduced costs, and an improved customer experience.
Successful availability management begins with a rich data ecosystem.
Devices equipped with IoT sensors generate constant streams of information about performance, usage patterns, and environmental conditions. Predictive analytics can mine this data to identify early warning signs of failure.
Historical logs reveal recurring issues and trends, while operator feedback adds the human context that raw numbers can sometimes miss — helping to optimize service procedures and drive continuous improvement.
Together, these data sources provide a comprehensive view of device health — allowing organizations to shift from reactive firefighting to proactive management.
Making availability data-driven requires more than technology alone; it calls for a shift in the entire service model. Four principles stand out:
This model transforms availability management into a self-improving ecosystem — one where every incident makes the system smarter, faster, and more reliable.
In the age of smart technology and AI, data-driven availability management is no longer optional. By combining real-time monitoring, predictive analytics, and automated response systems, organizations can maximize value.
In short, availability is not only a key performance indicator by itself. It is a differentiator that shapes both customer experience and the bottom line.
At Diebold Nixdorf, we manage more than 400,000 retail banking devices worldwide. Our data intelligence platform, DN AllConnect® Data Engine, allows us to shift from reactive service to proactive, predictive operations. By leveraging IoT connectivity, cloud computing, AI, and decades of servicing expertise, we detect and resolve many incidents before they impact customers.
This approach delivers industry-leading first-time fix rates, reduces downtime, and extends device lifespans — ultimately maximizing end-user availability while lowering cost to serve.
Discover more about Diebold Nixdorf’s AI-driven service model at DieboldNixdorf.com/DataEngine.
As a global technology leader and innovative services provider, Diebold Nixdorf delivers the solutions that enable financial institutions to improve efficiencies, protect assets and better serve consumers.