



























Artificial intelligence is forcing companies to change almost every aspect of their business. From operations to hiring to sales and training, change is happening faster than ever. One aspect of this change that has flown under the radar is the need for companies to rethink their business continuity plans.
AI is pressuring enterprises to move beyond traditional ideas of resilience and toward architectures and operating models that assume continuous, systemic disruption — and can keep the business running anyway. For information technology leaders, that means business continuity shifts from a document-and-disaster recovery exercise to an operating discipline.
Equinix Inc.’s recent announcement, “Resilience Isn’t Enough: The New Rules of Business Continuity,” argues that redundancy and failover are no longer sufficient as disruptions become systemic. The company highlights research indicating that Global 2000 firms now incur roughly $400 billion in downtime annually, with an average cost of about $540,000 per hour, underscoring how business-wide the continuity problem has become. I expect that as AI becomes more embedded in organizations and productivity grows, the cost of downtime will also increase.
The post defines “operational survivability” and introduces Zscaler Inc.‘s Business Continuity Cloud, running on Equinix infrastructure, as an example of “architectural independence.” This fault-isolated, parallel environment has separate deployment pipelines, network paths, domains and routing, and is designed to remain operational when the primary stack cannot. It is positioned not as a cold backup or secondary region, but as a continuously operating, logically separate control and data plane that preserves zero-trust policies, user experience and compliance even when primary environments or teams are degraded.
The Equinix post calls AI a “force multiplier” for continuity risk. As enterprises scale AI from pilots to production, workloads become more distributed, latency-sensitive and deeply embedded in real-time operations. When AI services fail, organizations don’t just lose compute; they lose the decision systems that now drive logistics, fraud detection, customer experiences and revenue-critical processes.
Beyond that, several trends are converging:
In this environment, continuity and resilience need to be AI-aware in two directions: Protect AI as a critical dependency and use AI to build more adaptive continuity capabilities.
Traditionally, resilience has meant building robust systems with improved redundancy, clustering, backup data centers and DR processes to restore service after an outage. The reality is that this is necessary but not sufficient because primary and backup environments often share invisible dependencies, such as cloud regions, identity providers, control planes or operations teams.
The “architectural independence” idea pushes continuity a step further:
In practice, this means IT leaders need to look past legacy “N+1 in the same cloud” thinking and consider independence by provider, platform and even organizational control.
AI is not just another workload you need to protect, but it’s also a tool to transform how continuity is managed.
The implication is that continuity strategies that ignore AI, either as an asset or as a source of risk, are already obsolete.
For an IT audience that lives this every day, the question is how to turn these ideas into tangible next steps. Several lessons can be learned from both Equinix’s announcement and the broader industry work around AI-first resilience:
Architectural independence can’t be built if you don’t know where dependencies concentrate.
Use that map to pinpoint where a single misconfiguration, regional outage or vendor issue could take out both sides of your current DR design.
Once you understand shared dependencies, refactor continuity architectures to prioritize independence.
This doesn’t mean duplicating everything; it means making deliberate choices about which layers must be independent for true survivability.
AI should be as integral to your continuity strategy as backup and monitoring.
The goal is to shorten the path from detection to action, while keeping humans firmly in charge of high-impact decisions.
Business continuity professionals need to add AI to their impact analyses and tabletop exercises.
This is especially important as more operational decisions in areas such as security, logistics and IT operations are delegated to AI systems.
Finally, continuity in an AI-driven world is as much an operating model challenge as a technology one.
Equinix’s emphasis on “operational survivability” captures the mindset shift: Assume disruption, assume AI as both dependency and tool, and engineer your environment so the business keeps running anyway.
Zeus Kerravala is a principal analyst at ZK Research, a division of Kerravala Consulting. He wrote this article for SiliconANGLE.
Support our mission to keep content open and free by engaging with theCUBE community. Join theCUBE’s Alumni Trust Network, where technology leaders connect, share intelligence and create opportunities.
About SiliconANGLE Media
SiliconANGLE Media is a recognized leader in digital media innovation, uniting breakthrough technology, strategic insights and real-time audience engagement. As the parent company of SiliconANGLE, theCUBE Network, theCUBE Research, CUBE365, theCUBE AI and theCUBE SuperStudios — with flagship locations in Silicon Valley and the New York Stock Exchange — SiliconANGLE Media operates at the intersection of media, technology and AI.
Founded by tech visionaries John Furrier and Dave Vellante, SiliconANGLE Media has built a dynamic ecosystem of industry-leading digital media brands that reach 15+ million elite tech professionals. Our new proprietary theCUBE AI Video Cloud is breaking ground in audience interaction, leveraging theCUBEai.com neural network to help technology companies make data-driven decisions and stay at the forefront of industry conversations.
此内容由惯性聚合(RSS阅读器)自动聚合整理,仅供阅读参考。 原文来自 — 版权归原作者所有。