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Friday, February 13, 2026

The Quiet Tax on Your Supply Chain (and How to Stop Paying It)

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Most supply chains are leaking value long before anyone sees a problem, and the edge now comes from spotting those leaks early enough to stop them. This is less about another dashboard and more about a different way of running the business — one that treats foresight as a daily habit, not a special project.

The old strategies of financial engineering and one‑time cost cuts still matter, but no longer separate leaders from the pack for very long. What really shows up now is how well a company manages complexity, especially in its supply chain, where small disruptions quickly snowball into missed revenue, margin erosion and bloated working capital. In that world, reacting quickly is not enough. The companies that pull ahead are the ones that get a heads‑up before trouble hits the bottom line, and use that time to intervene calmly instead of scrambling after the fact.

Inside most organizations, the story is familiar: Teams work hard, systems are in place, and yet bad news still arrives late. The problem is structural, not personal. Most core systems were designed to record what already happened, not to flag what is starting to drift. So revenue slips when stockouts hit, inventory piles up when forecasts miss, and expediting becomes a way of life because deviations are discovered only after they have financial teeth.

Over time, this delay becomes a quiet tax on the business. Revenue that could have been booked goes missing, margin that could have been protected gets shaved off by volatility and expedited freight, and cash that could be put to better use sits locked in the wrong inventory. Analysts chase root causes, managers run fire drills, and everyone explains last quarter while the next set of issues is already forming.

What An “AI‑First” Posture Really Is

This is where AI stops being a buzzword and starts becoming an operating discipline. The point is not to park clever models on the side; the point is to move the moment of discovery forward in time so that human judgment is applied when options are still open. In an AI‑first operating model, people stay firmly responsible for decisions, but they no longer have to hunt for problems across fragmented systems, or wait for KPIs to drift before they know where to look.

Weak signals surface continuously, and potential exposure is quantified before it turns into actual damage. Decision‑makers spend their time weighing trade‑offs, and orchestrating action, rather than reconciling spreadsheets or arguing about whose data is right. The tone of management conversations shifts from “What went wrong?” to “What is starting to move, and what are we going to do about it now?” Intervention becomes earlier and smaller, and volatility falls not because people run faster but because fewer fires start.

Many companies have invested in analytics and even some AI, only to find that better insight does not automatically produce better outcomes. Dashboards can be beautiful, and still leave the decision rhythm unchanged if they are consulted only in monthly reviews. The real pivot comes when predictive signals are wired into daily decisions across forecasting, planning, inventory, and service performance.

In a predictive operating model, deviations from plan are spotted early and ranked by economic importance, so the team knows not only what is drifting but what is worth acting on. Forecasts are updated with fresh signals instead of waiting for the next planning cycle; inventory positions are adjusted before imbalances swell; and service risks are addressed before customers feel an impact. The organization spends less time explaining misses and more time shaping outcomes.

This shift from reactive to predictive management changes the feel of the business. Instead of living in post‑mortems and war rooms, leaders see a forward‑looking picture of risk and opportunity, and decisions line up across functions because everyone is working from the same view of what is coming, not just what has already happened.

All of this may sound conceptual, but the economics are concrete. When supply chains are run predictively, companies see forecast errors shrink, inventories tighten, and order‑to‑cash cycles speed up, because misalignments are corrected while they are still small. Service performance improves because commitments are protected upstream, not rescued at the last minute with costly workarounds.

There is also a trust dividend. As performance becomes more stable and explainable, confidence in the numbers grows. Forecasts carry more weight with boards and investors when they are backed by a visible, disciplined way of controlling volatility rather than wishful thinking layered on an unstable operation.

Investors are not just looking at headline results; they are asking whether those results are structural or situational. They watch earnings quality, cash‑flow volatility, and how much the story depends on a few heroes versus a repeatable system. A predictive operating model speaks directly to that concern, because it shows that performance is anchored in how the business runs every day, not just in favorable conditions or one‑off efforts.

When a company can show that it routinely spots and addresses deviations before they bite, earnings become easier to underwrite and integration risk drops, especially in deals where continuity and scalability matter. Intelligence and intervention are baked into decision‑making, rather than living in the heads of a small group of experts. That kind of maturity is increasingly visible in the consistency of results and in the confidence with which management explains what is happening and why.

In practical terms, predictive capability becomes part of the valuation story. It is not sold as a shiny technology asset, but recognized as evidence that the enterprise can sustain and extend its performance under pressure.

Getting Started Without Getting Stuck

Most leadership teams do not need more enthusiasm for AI; they need a clearer path. The question is not whether to lean into AI but where to aim first, and how to get from promise to measurable value without getting lost in endless pilots. A practical starting point is to map where late visibility is costing the most today, then focus on the spots where even a few weeks of foresight would meaningfully change financial outcomes.

From there, the work is to embed predictive discipline into those decision loops — how demand is sensed and translated into plans, how inventory thresholds are set and adjusted, and how service risks are flagged and escalated — so that early signals automatically trigger the right human conversations and actions. This replaces open‑ended “AI strategy” debates with a concrete operating playbook tied directly to revenue, margin and cash.

Pete Stiles is CMO of A2go.

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