
In the last five years, enterprises have been forced to reimagine and reengineer what resilient and cost-optimized logistics means.
When supply chains and logistics strategies are tested, we usually hear about it in the context of which consumer products will or won’t be available for purchase. We hear less about how the government and private sector agencies are pivoting in the moment, to ensure and maintain citizens’ safety and well-being.
In moments of instability, the government has quietly led the charge, constantly innovating for flexibility, speed and intelligence, to ensure that emergency impacts on supply chain and logistics capabilities see little to no effect.
The Defense Production Act (DPA) was invoked to prioritize contracts, allocate materials and expand domestic manufacturing to remove supply chain bottlenecks. This allowed the government to direct companies to prioritize critical materials and product needs for vaccine development. As a result, it facilitated record-speed vaccine development, created supply chain resilience, and mitigated shortages that could have slowed deployment. It showcased the strategic utility of the DPA in national health emergencies.
Whether war-gaming operational plans or deploying artificial intelligence in disconnected environments, defense and critical infrastructure entities within government have created a blueprint ripe for adaptation among commercial enterprises. These aren’t just military strategies — they’re tangible, tested frameworks for success that retailers, manufacturers, automotive and biotech sectors can and should implement.
From Forecast to Foresight
Enterprises are investing heavily in AI, in the form of predictive analytics and demand planning platforms to help solve potential supply chain issues.
The problem, however, is a trap seen all too frequently: Many companies have become overly reliant on historical data and deterministic models. This technology is excellent in a vacuum. However, these tools often fail when faced with high-impact, low-frequency disruptions.
Government agencies are always scenario-planning to prepare for complex situations. This can incorporate real-time data, an understanding of geopolitical risk and resource constraints, which can be layered on top of flexible decision matrices.
An AI-centric “what-if” analysis can help simulate multiple disruption types in advance to ensure better operational readiness, staging and response.
Hybrid and remote work impact everyone, and have led to expanding distributed operations. This has been the case in mining, renewable energy, last-mile retail and many other industries. As a result, many companies have taken to the internet of things, edge computing and remote monitoring to ensure that work remains status quo, regardless of an on-site presence.
However, many technological tactics remain dependent on centralized cloud systems that haven’t been optimized to run across distributed environments. This leads to breakdowns due to connectivity and bandwidth issues, especially in remote and disaster-affected areas. Digital transformation requires that every aspect of the organization address a complete infrastructure, not just the parts that generate the most revenue.
In government, teams are deploying AI systems at the edge, including within air-gapped and disconnected settings. This creates a secure, localized and cloud-independent solution that enables resilient, responsive logistics in disconnected or high-risk environments.
These pre-configured AI appliances can perform predictive maintenance, routing and anomaly detection at the point of need. Delivering AI in remote, disconnected and degraded locations is also useful when deployed to assist in humanitarian crises, forward-operating bases, and post-disaster zones.
Edge-ready logistics systems can reduce downtime, improve autonomy and protect critical data in high-risk or disconnected environments. Finding success with this strategy makes it even more imperative to consistently evaluate your tech stacks in remote situations.
Real-Time Clarity Made Possible
Whether you’re a start-up or a top-tier enterprise, fragmented data and legacy systems are a major barrier to achieving effective AI within supply chains. Siloed systems and “black-box” AI generate opaque recommendations and untraceable outputs. This lack of transparency erodes trust, slows adoption and magnifies risk in high-stakes decision-making.
In the past, when a government supply chain used classification frameworks, the group could standardize data across departments. When AI is brought into the fold, this framework enables flexible platforms that serve many needs and evolve over time, giving multiple groups a common platform with built-in explainability, confidence scoring and user oversight. This means that if you suspect something is off with the model, you’ll be able to test it to find out where the suspect information is coming from.
As a result, any decision made can be traceable, audited and aligned with operational rules of engagement. For example, this “co-ontology” can allow defense logistics systems to detect counterfeit or faulty parts, flag procurement anomalies and validate readiness with a clear understanding to explain why, not just what, to fix.
By all means, continue to invest in AI. But make sure your analytics tools surface rationale, not just outputs. Transparency can increase decision-making quality, build team confidence and accelerate rollout across departments — all with human oversight.
Human in the Loop
That human oversight part is so important. Many companies get caught in this false sense of security when they implement AI and play a “set-it-and-forget-it” card. These efforts can backfire when systems can’t be adapted in the moment. The false binary of all or nothing leads to operational blind spots that can be detrimental to the work being done in judgment-heavy tasks.
We’re embracing the teamwork between humans and AI. An AI agent can provide decision support and generate or recommend options, while a human can validate, refine, or override the actions.
For example, a humanitarian logistics team uses an AI agent to gather and assess multi-source data that helps prioritize shipments and route supplies during an emergency. With the instruction and leadership of a field coordinator, final decisions can be implemented based on evolving conditions, to ensure that there are no logistics or supply chain delays to get items on the ground to anyone who needs them.
Supply chain resilience isn’t just a risk strategy; it’s an advantage in achieving decision dominance. Although it may seem disconnected, the work done in the public and private sectors can easily be translated to what’s being accomplished by any other supply chain and logistics team worldwide.
There will likely be another major supply chain hurdle with significant impact. It’s a matter of when and how, not if. But with the government’s playbook, enterprises can tap into proven models for scalable, resilient and intelligent logistics. These models are legitimately battle-tested for success.
Derek Britton is senior vice president, government at Seekr.