Food & Beverage News: Insights, Safety, and Dining Trends
- Agentic AI plans and acts across systems to pursue goals, not just predict or generate responses.
- Early value in supply rerouting, production scheduling, replenishment, and predictive maintenance where actions are recoverable.
- Keep humans for safety-critical, irreversible decisions: product holds, CCP overrides, recalls, labeling, and compliance sign-offs.
- Delegate only after ensuring MES and ERP integration, traceability, auditability, and reversible decision scope; build a data foundation first.
Key takeaways:
- Agentic AI is a different category from the AI you already use. Predictive AI flags a problem and generative AI drafts a response, but agentic AI pursues a goal. It plans, acts across your systems, and carries the task forward with limited supervision.
- The early payoff is in supply chain and scheduling. General Mills credits AI that evaluates more than 5,000 daily shipments with over $20 million in savings since fiscal 2024, and has layered agentic capability on top to automate routine logistics coordination while people handle the exceptions.
- The value comes from the division of labor. Agents absorb the constant, recoverable decisions that grind down planners and operators. People keep the judgment calls, especially anything touching food safety.
There’s a real difference between AI that warns you a pump is about to fail and AI that orders the part, books the technician, and reschedules the line around the repair. The first hands you a recommendation. The second gets the job done. That shift, from insight to action, is what separates agentic AI from the tools most food plants already run, and it’s showing up in real operations now, not in a vendor’s someday demo.
Before you can decide where it belongs in your plant, it helps to be precise about what it is, how it differs from the predictive models and copilots you already use, where it’s proving its worth on real production lines today, and which decisions should it own vs. which ones stay with your people.
Three kinds of AI, and why the difference matters
Most food manufacturers already use AI, even if they don’t always call it that. The confusion starts when vendors stamp “agent” on tools that aren’t.
Three categories are worth keeping straight, because they ask different things of your operation and carry different risks:
- Predictive AI reads data and tells you what’s likely to happen. A vibration sensor model that warns a motor will probably fail within two weeks is predictive AI. It produces a forecast. A person decides what to do with it.
- Generative AI produces something new on request, such as a maintenance summary, a draft SOP, a first pass at root-cause analysis. It’s reactive. It waits for a prompt, generates an answer, and stops.
- Agentic AI is the one that changes the job. Give it a goal and it breaks the work into steps, acts across your MES, ERP, and scheduling systems, and carries context from one step to the next without someone driving each move. Where predictive AI says “this motor will fail” and generative AI drafts the work order when asked, an agent opens the work order, reserves the part, reschedules production around the downtime, and reports back what it did.
Christopher Selden, senior director of product at data company Crisp, notes that durable, cross-team use of agentic AI is achievable within a few years, provided some real requirements are met first. Gartner projects that 33% of enterprise software applications will include agentic AI by 2028. The category is young, but moving quickly.
Where agentic AI is already proving its worth
General Mills began building a connected data foundation back in 2019. On top of it came ELF, an end-to-end logistics system that started as a digital twin running predictive analytics. It assessed orders, modeled scenarios, and recommended better plans. In a U.S. business handling about 3,000 orders a day, the system was generating up to 400 recommendations, with roughly 70% accepted automatically and the rest routed to people. The company credits AI that evaluates more than 5,000 daily shipments with over $20 million in savings since fiscal 2024.
That recommendation engine is valuable and it’s where most food manufacturers are with AI, but General Mills has taken it to the next level. By late 2025, the company described ELF as using generative and agentic AI to talk system-to-system with one of its largest retail partners, optimizing truck utilization with less human relay in between. The chief supply chain officer observed work that used to take 18 hours to sort orders and build truckloads now takes under 30 minutes, and fewer trucks on the road have cut more than 15,000 tons of carbon to date.
Notice the progression, because it’s the whole lesson. Predictive analytics flagged the better plan. People accepted or overrode it. Then, once the data foundation and the trust were in place, the agentic layer took over the routine, high-volume coordination, software negotiating with software, while people kept watch on the exceptions.
The company didn’t hand over the keys on day one. It widened the agent’s authority as the groundwork justified it.
A similar trend is emerging in plant operations where decisions are made frequently and errors can be easily corrected:
- Supply rerouting: An agent watches raw material availability and freight transit times, and when a shipment slips, it reroutes supply, alerts operations, and proposes a revised production plan, in minutes rather than the hours a planner would need.
- Production scheduling: Agents weigh the live demand plan against available capacity, run “what if” scenarios, and adjust sequences as conditions shift, the constant recalculation that wears a human scheduler down by mid-shift.
- Replenishment and inventory: Agents rebalance stock across a network to protect service levels while trimming the cost of carrying too much, which matters when overstock spoils.
- Predictive maintenance, closed-loop: Embedded AI already spots failure trends early. The agentic version schedules the work and reserves the parts, turning a warning into a completed task.
What these share is forgiveness. A suboptimal reorder or a reshuffled schedule costs money and can be undone. That tolerance for error is what makes them the right places to let an agent act first.
Where a person stays in charge
Food manufacturing carries a category of decision that most industries don’t, where a wrong autonomous call isn’t a margin hit but a sick consumer, a recall, or a failed audit. Those decisions belong to a person, and the General Mills model points the way. Let the agent handle the routine majority, and route the consequential exceptions to people.
Keep an agent out of the final call anywhere it could:
- Release or clear a product safety hold.
- Override a critical control point, a temperature threshold, a pasteurization cycle, or a metal-detection reject.
- Make the final decision on a recall or market withdrawal.
- Change a label, an allergen statement, or anything tied to compliance, without human sign-off.
An agent can still do real work around these decisions, such as gathering the data, flagging the deviation, drafting the response, and modeling the options. The key is that it’s informing a safety decision rather than making one.
What has to be true before you delegate
Agentic AI acts on your systems, so it’s only as good as what it can reach. This is the same lesson the broader AI rollout keeps teaching food manufacturers: the technology stalls on data and integration long before it stalls on intelligence. An agent acting on disconnected or unreliable data will act confidently and wrongly.
So before you hand any decision to an agent, run it through three questions:
- How reversible is a wrong call? Recoverable decisions like a reorder or a schedule tweak are safe to delegate. Irreversible ones like a safety hold are not.
- Can the agent reach the data it needs? If your MES, ERP, and quality systems don’t talk to each other, fix that first. An agent can’t act well on data it can’t see.
- Can you audit what it did and why? If you can’t trace an agent’s actions after the fact, you can’t trust it with anything that matters. Hold its decisions to the same traceability standard you hold your product to.
Start where the answers are reassuring, like supply, scheduling, and replenishment, and widen the agent’s authority only as your systems and your confidence grow.
Agentic AI in food isn’t headed toward a lights-out plant, at least not anywhere safety is on the line. The practical win is a sharper division of labor. Agents take on the constant, recoverable decisions that wear down your teams. People keep their hands on the ones where safety and trust are at stake. General Mills built up to that arrangement over six years, starting with the data foundation and widening the agent’s authority only as the groundwork earned it. That sequence, foundation first, autonomy by degrees, is the part worth copying.
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