Agentic AI Is Transforming Defense, But Only Secure IT Infrastructure Will Maximize It
Agentic AI Is Transforming Defense, But Only Secure IT Infrastructure Will Maximize It
Over the past several weeks, the cybersecurity community has been reminded how quickly frontier and agentic AI in defense networks can challenge our assumptions. When Anthropic’s Claude Mythos model was made available to a limited set of organizations as a technical preview, it was reported that an unauthorized group claimed that it had gained access within hours. The incident, if true, was more than a possible breach. It was a warning.
The potential impact of advanced AI on U.S. defense and intelligence networks is significant. As the U.S. government moves to deploy AI capabilities on classified networks, the opportunity is clear: advanced AI can help accelerate decision superiority for American forces. But the risks are expanding just as quickly, particularly as agentic AI begins to operate across sensitive networks, data environments, and mission workflows.
AI adoption is not simply about deploying powerful models. It requires the right security, governance, and resilient infrastructure around them.
AI is only as trustworthy as the data it uses, the networks it touches, and the controls that determine who and what can access it. In classified environments, that challenge is compounded by the need to move information securely across classification levels, compartments, coalition boundaries, and operational environments.
For AI to rapidly deliver the expected decision advantage, three important areas must be considered:
1. What is entering the model?
Training data and commercial models must move quickly but securely into classified environments. Without proper inspection, even the strongest AI model can become a liability by processing stale information or ingesting ‘poisoned’ content that leads to compromised assessments.
2. Who and what can access the AI?
Cleared analysts, coalition partners, edge operators, and AI integration teams will all require governed access that enforces security boundaries without inadvertently ‘collapsing’ networks together.
3. Where is the AI agent reaching back out?
Every model call to a database, mission system, or coalition partner must preserve the integrity of the classification layer. If AI is going to compress operational timelines, the security boundary cannot become the first point of failure.
AI Mission Advantage Starts with Secure Infrastructure
All of this depends on the network layers beneath the models. Everfox is enabling defense and intelligence agencies to keep pace with revolutionary changes in AI without compromising mission speed and security. Our technologies provide a secure network fabric built on cross domain capabilities and hardware-enforced protection that is purpose-built for classified environments and the tactical edge, all so AI can be securely and confidently deployed at mission scale.
AI introduces risk across every layer: system components, integrations, downstream outputs, and mission workflows. As defense and intelligence organizations accelerate adoption, AI tools will increasingly operate across domains, compartments, and operational theaters. In these environments, trusted infrastructure, strict access controls, and strong data governance are not optional. They are mission critical.
Sensitive data must be able to move securely across classification boundaries, with threats and policy violations identified before they ever reach a model.
If we want to deploy AI responsibly at scale, we have to build security in from the start, not bolt it on after the technology is already embedded in mission operations.
Frontier AI will be an important engine of future mission advantage. But without a secure network fabric to carry it, even the best models cannot be trusted to operate where and when they matter most.
Note: This article is written and contributed by Dave Wajsgras – Chairman and CEO of Everfox.
