The landscape of disaster recovery is on the cusp of a dramatic transformation, according to technology visionary John Roese. As we look toward 2026, the concept of “AI factories”, specialized infrastructure designed to manufacture and deploy artificial intelligence at scale, promises to revolutionize how organizations prepare for, respond to, and recover from catastrophic events.
From Static Failovers to Intelligence Manufacturing
Roese’s vision centres on a fundamental shift in how we think about disaster recovery infrastructure. Traditional disaster recovery has long relied on static backup systems, predetermined failover protocols, and manual coordination across teams. AI factories represent a new paradigm: dynamic, intelligent systems that can anticipate failures, orchestrate complex recovery operations autonomously, and learn from each incident to improve future responses.
These AI factories are purpose-built environments where AI models are continuously trained, tested, and deployed specifically for resilience and recovery scenarios. Think of them as manufacturing plants, but instead of producing physical goods, they generate predictive models, recovery playbooks, and autonomous response systems.
Reading the Warning Signs Before Catastrophe Hits
One of the most significant advantages AI factories bring to disaster recovery is their ability to process massive amounts of data in real-time to predict potential failures before they cascade into full-blown disasters. By analyzing patterns across infrastructure logs, weather data, geopolitical signals, and cybersecurity threats, these systems can identify weak points and vulnerabilities that human operators might miss.
This predictive capability extends beyond traditional IT infrastructure. AI factories can model complex interdependencies between power grids, communication networks, supply chains, and cloud services. When a hurricane threatens a coastal data centre, the AI factory doesn’t just initiate a standard failover protocol; it runs thousands of simulations to determine the optimal recovery strategy based on current conditions, available resources, and predicted impact patterns.
Machine-Speed Recovery Without the Wait for Human Approval
When disaster strikes, speed is everything. AI factories enable autonomous response systems that can execute recovery operations at machine speed, coordinating actions across multiple systems simultaneously. Rather than waiting for human operators to assess damage, consult runbooks, and manually trigger recovery procedures, AI-driven systems can instantly initiate appropriate responses.
This orchestration capability becomes particularly valuable in complex, multi-cloud environments where applications and data are distributed across numerous platforms and geographic regions. An AI factory can simultaneously coordinate workload migration, data replication, network reconfiguration, and resource allocation across this distributed infrastructure, ensuring business continuity with minimal downtime.
Every Disaster Becomes a Training Exercise
Perhaps the most revolutionary aspect of AI factories in disaster recovery is their ability to learn and improve continuously. Every incident, whether a minor glitch or a major outage, becomes training data for the AI models. The system analyzes what worked, what didn’t, and why, automatically updating recovery protocols and decision-making algorithms.
This creates a self-improving disaster recovery capability that becomes more sophisticated over time. Organizations no longer need to manually update their disaster recovery plans every quarter or rely on periodic testing exercises that may not reflect real-world conditions. The AI factory is constantly testing, learning, and evolving its understanding of how to best protect and recover critical systems.
The Trust Problem and Infrastructure Investment
Despite the promise, implementing AI factories for disaster recovery isn’t without challenges. Organizations must grapple with questions about trust and control, and how much autonomy an AI system should have during a crisis. There are also significant infrastructure investments required, and the need for specialized expertise to design, implement, and oversee these systems.
Data privacy and security concerns loom large as well. AI factories require access to vast amounts of operational data to function effectively, raising questions about data governance and protection. Organizations must ensure that their AI-driven disaster recovery systems don’t themselves become attractive targets for adversaries.
2026: When Resilience Gets Redesigned
As we approach 2026, Roese’s vision of AI factories transforming disaster recovery appears increasingly feasible. The convergence of advances in machine learning, edge computing, and orchestration technologies is creating the foundation for these intelligent recovery systems. Early adopters are already experimenting with AI-driven disaster recovery capabilities, and the lessons learned from these pioneers will shape the broader adoption curve.
The organizations that successfully implement AI factories for disaster recovery will gain a significant competitive advantage. They’ll be able to offer higher service availability guarantees, recover from incidents faster, and do so at lower operational costs than competitors relying on traditional approaches.
The transformation won’t happen overnight, and it won’t replace human expertise entirely. Instead, AI factories will augment human capabilities, handling the routine aspects of disaster recovery autonomously while escalating complex, novel situations to human experts who can provide the judgment and creativity that AI systems still lack.
As John Roese envisions it, 2026 will mark the beginning of a new era where intelligent systems stand as the first and most capable line of defence against the chaos that inevitably disrupts our increasingly digital world.








