
Key takeaways:
- Targeted digital and automation investments, especially real‑time production monitoring, robotics, and warehouse systems, delivered a reliable return on investment (ROI) in 2025.
- AI delivered value when tied to specific use cases and workflow redesign, but many food manufacturers got stuck in pilots and saw little financial impact.
- Supply chain resilience improved most where companies combined digital traceability, cold‑chain monitoring, and multi‑sourcing strategies (not just software spend) and those lessons should heavily shape 2026 tech roadmaps and budgets.
2025 was the year digital transformation had to prove itself.
- According to our benchmark data, there were three clear ROI leaders in the food manufacturing digital transformation: automated warehouse management systems, real-time production monitoring, and robotics systems on the plant floor.
- Most surveyed companies now direct 26-50% of their equipment and systems budgets to digital and automation projects, even as budget constraints remain the top barrier to implementation.
- Deloitte’s 2025 Smart Manufacturing and Operations Survey, which covers multiple manufacturing sectors (including consumer products), proves that smart manufacturing initiatives are already delivering 10-20% gains in production output, 7-20% improvements in employee productivity, and 10-15% unlocked capacity on average.
The consistent picture is that the tech that worked in 2025 was practical, tightly scoped, and operations‑first. The tech that underperformed tended to be grand, platform‑heavy, and light on change management.
Let’s break down the 2025 report card and how to recalibrate your 2026 roadmap.
What actually delivered ROI in 2025
1. Operational visibility and real‑time production monitoring
The biggest digital win in 2025 wasn’t flashy AI — it was visibility.
Food plants that deployed real‑time production monitoring and line‑level dashboards saw measurable improvements in yield, throughput, and labor productivity. That aligns with our data, which names real‑time production monitoring as one of the top ROI leaders for the sector.
In practice, successful plants focused on:
- Clean data from the line: Simple but robust signals on uptime, speed, scrap, and changeover performance.
- Line‑side visual management: Screens that frontline teams actually use during the shift, not just monthly KPI decks.
- Tight integration with maintenance and quality workflows: Alerts that trigger actions (like inspection or root cause analysis) instead of just more reporting.
Manufacturers that implemented these kinds of “foundational” smart operations reported double‑digit improvements in output and capacity and are now reinvesting aggressively.
For food manufacturers, that translates into:
- Faster response to micro‑stoppages
- Less giveaway and overfill
- Reduced overtime through better sequencing and changeover performance
None of this requires bleeding‑edge AI — just disciplined use of sensors, edge collection, and cloud analytics.
2. Targeted automation on the plant floor
Automation also had clear winners and losers.
Fast‑payback winners in 2025:
- End‑of‑line robotics (case packers, palletizers, simple pick‑and‑place)
- Automated guided vehicles (AGVs) or autonomous mobile robots (AMRs) for repetitive internal logistics
- Vision systems for quality inspection (detecting damaged packaging, label errors, seal integrity issues)
According to Deloitte’s research, process automation was a top investment priority for 46% of manufacturers, and physical automation for 37%, with strong links to alleviating skilled labor shortages and boosting productivity.
Food manufacturers that see the fastest ROI generally:
- Pick very specific, high‑labor, high‑injury‑risk tasks
- Standardize packaging formats before automating
- Invest in maintainer skills and spare‑parts planning, not just robots
By contrast, ambitious “lights‑out” or fully autonomous plant visions often slip or stall. The technical complexity of handling variable raw materials, allergens, and hygiene constraints prove much higher than expectations, and capital payback periods stretch beyond tolerable thresholds.
3. Digital food safety, traceability, and warehouse systems
Under rising regulatory and retailer pressure, traceability moved from “nice to have” to “license to operate” in 2025. That created a surge in:
- Warehouse management systems (WMS) tailored for food
- Digital traceability platforms
- Integrated quality and compliance systems
Our survey respondents cited automated warehouse management systems among the highest‑ROI technologies, reflecting labor savings, fewer shipping errors, and stronger inventory control.
On the supply chain side, New Food Magazine notes how technologies like blockchain, Internet of Things (IoT) sensors, and AI are reshaping visibility. It highlights Walmart’s use of blockchain, which cut the time needed to trace leafy greens from days to seconds — a step change for food safety and recall management.
The common pattern across winners is clear compliance and risk‑reduction business cases, plus ready‑made data sources (lots of barcodes and scans) to feed the systems.
AI implementation: Why it stalled in some plants and scaled in others
In 2025, the biggest divider wasn’t “AI leaders vs. laggards.” It was execution: companies that treated artificial intelligence (AI) as an operational change program saw progress; those that treated it like a tool rollout often got stuck.
McKinsey’s State of AI 2025 found 88% of organizations use AI in at least one function, but only about one-third have scaled it enterprise-wide, and few report more than modest impact on earnings before interest and taxes (EBIT).
Where AI underperformed
Many food manufacturers fell into the “pilot trap,” where experiments ran, but value didn’t scale. Typical symptoms included:
- Standalone generative AI assistants for planners or engineers that never integrated with core systems.
- Predictive maintenance pilots built on small or noisy data sets.
- AI scheduling recommendations that planners distrusted and bypassed.
A major reason is that AI often creates a short-term “J-curve,” where productivity dips before it improves. MIT Sloan’s research notes that adoption can initially reduce productivity, and Professor Kristina McElheran summarizes, “AI isn’t plug-and-play. It requires systemic change, and that process introduces friction, particularly for established firms.”
In day-to-day operations, that friction shows up as:
- More work for supervisors (data entry, extra dashboards)
- Conflicts with existing rules (planning logic, quality constraints, customer requirements)
- Overloaded teams (IT and operations stretched just keeping pilots alive)
Net result: AI spend without AI scale.
The foundational issues that stalled momentum
Even strong ideas struggled when the basics weren’t in place:
“Platform first, value later” builds:
- Large data lakes with weak governance
- Overlapping tools (MES, OEE platforms, point solutions)
- Custom “do-everything” platforms that became integration sinkholes
IoT sensor sprawl without a sustainment plan:
- Dozens (or hundreds) of Internet of Things (IoT) devices
- No consistent calibration, health monitoring, or maintenance
- Lots of dashboards, not enough action
The lesson is you don’t need perfect enterprise data to get value. You need just enough clean, reliable data for a few priority use cases.
Where AI scalers did differently
McKinsey identifies a small group of “AI high performers” (about 6%) who attribute 5%+ of EBIT to AI. Their advantage wasn’t better algorithms, but better implementation:
- Start with 1-2 line-of-sight use cases (easy to measure, operationally close to the work), such as:
- Yield optimization and waste reduction
- Predictive maintenance for critical assets (ovens, fillers, freezers)
- Demand forecasting for short-shelf-life products
- Redesign workflows, not just dashboards:
Change daily routines (maintenance planning, production meetings) so the AI insight becomes the default input.
- Build the “glue” that makes AI stick:
- Embed outputs into existing systems (CMMS, ERP, scheduling tools)
- Assign ownership (who acts, by when, based on what threshold)
- Set realistic timelines (pilot results in months; enterprise impact over years)
Treat AI as a change program with a technical component rather than a technology program hoping change will follow. If your 2025 pilots didn’t scale, the fix is usually less about model quality and more about workflow, data discipline, and accountability.
Automation investments that paid off fastest
Looking at 2025 data, fast-payback automation in food manufacturing appears to center on:
- End-of-line/intralogistics automation: Case packing, palletizing, stretch-wrapping, and AGVs/AMRs for material movement. Often paid back in 12-24 months for high-volume, high-overtime areas.
- Computer vision for quality: Automated verification of labels/date-codes and seal/packaging defect checks. Reduces rework, complaints, and recall risks.
- Digital work instructions: Tablets/wearables providing step-by-step guidance and escalation paths. Best for high-turnover sites and complex changeovers.
- Selective process automation: Automating paperwork (e.g., changeover/sanitation forms) and using RPA for scheduling, order, or procurement management.
Deloitte’s data backs this “selective automation” strategy: nearly half of manufacturers ranked process automation as a top investment focus, and 41% plan near‑term investment in factory automation hardware, supported by sensors and vision systems.
For 2026, that suggests a clear rule of thumb: aim for automation that removes manual, repetitive work in the most constrained parts of your value stream, not everywhere at once.
Supply chain resilience strategies that actually worked
2025 was another year of climate shocks, geopolitical uncertainty, and logistics surprises. Food and beverage companies that navigated it well tended to share a similar resilience playbook.
Several supply chain patterns emerged from leading companies:
- End-to-end digital traceability: Blockchain drastically reduced recall investigation time from days to near-instant lookups. QR codes and blockchain also allow consumers to verify sourcing, boosting trust.
- IoT-enabled cold chain and warehouse monitoring: Real-time temperature and condition monitoring reduces spoilage, claims, and compliance risk in transit and storage.
- AI-powered forecasting and risk analytics: AI and machine learning improved demand/raw material planning, especially for volatile categories. Scenario modeling tools help planners prepare for disruptions like port closures.
- Multi-sourcing and regionalization: Brands like McDonald’s and Unilever adopted multi-tier, regional, and ethically-backed sourcing, increasing flexibility against geographic disruption.
For 2026 planning, supply chain resilience tech — traceability, cold‑chain visibility, and risk analytics — should sit alongside plant automation as a top‑tier investment category.
Recalibrating your 2026 technology roadmap and budget
1. Rebalance the portfolio: Use cases over platforms
Anchor your 2026 roadmap in proven use cases:
- 50-60% on proven “workhorse” tech: Real-time production monitoring, digital quality/food safety, WMS/traceability upgrades, end-of-line automation.
- 25-35% on scaling high-ROI AI/automation: Yield/scrap/energy optimization, predictive maintenance, AI-enhanced forecasting.
- 10-20% on long-horizon bets: Digital twins, advanced robotics, GenAI in R&D, new business models.
2. Fund data readiness, don’t assume it
Data quality, workflow redesign, and skills are decisive for AI success:
- Fund master data cleanup.
- Standardize KPIs and naming conventions across plants.
- Establish clear data ownership and quality metrics.
Avoid years-long data archaeology; aim for months-old sprints.
3. Tie every project to specific financial/operational metrics
With rising costs and board scrutiny, every major initiative must answer:
- Which metric will change (e.g., yield %, labor hours/case)?
- What are the baseline and target?
- When is the first measurable impact expected (6, 12, 24 months)?
- What plant floor/supply chain behavior will change?
4. Build cross-functional teams to prove value
For critical use cases, form small teams that include plant, maintenance, quality, supply chain, and it/data stakeholders. Give them a 90-day mandate to prove value with minimum viable tech before scaling.
5. Budget for people and change management
Talent and change management are often bigger constraints than technology. When planning investments, be sure to include these costs:
- Upskilling operators and technicians.
- Digital champions/super-users at each site.
- Time for teams to participate in process redesign.
The 2026 agenda: From experimentation to earnings
The 2025 food manufacturing technology report card is encouraging, showing:
- Reliable ROI in real-time monitoring, targeted automation, digital food safety, and traceability.
- Value in AI when paired with workflow redesign and data readiness.
- Supply chain resilience can be achieved through tech, smart sourcing, and collaboration.
For 2026, winning tech leaders will make fewer, bigger bets; fund data, standards, and skills; and tie tech to measurable business outcomes. The goal is a decisive move from “digital in theory” to “digital in the P&L.”
FAQ for food manufacturing leaders
Q: What is a realistic ROI timeline for AI in a food plant?
A: Expect a J‑curve. AI often causes a short‑term productivity dip before longer‑term gains, particularly in older, more established organizations.
While pilots may take 3-6 months to prove their worth, portfolio-level benefits may take 18-36 months, especially if you need to clean data and redesign workflows.
Q: How should smaller manufacturers approach automation and AI with limited capital?
A: If capital is limited, prioritize:
- Low-cost digital steps: Cloud-based monitoring, simple digital checklists/instructions, and basic WMS/inventory tools.
- One narrow automation project: E.g., a small palletizing cell or vision-based label inspection.
- Partnering: Use vendors with food references, preconfigured templates, and “as-a-service” models to shift CAPEX to OPEX.
Goal: Prove value and reinvest, don’t attempt a full “smart factory” at once.
Q: Our data is a mess. Where do we start?
A: Start where plant leaders already feel the pain:
- Pick one line or product family with chronic issues (e.g., high scrap, frequent changeover problems).
- Standardize a small set of metrics (uptime, speed, scrap, rework) and clean historical data just for that area.
- Use a simple dashboard to make that data visible to the frontline.
Once teams see decisions improving, you’ll get support for broader data cleanup.
Q: How do we balance cybersecurity with the need for more connectivity?
A: Increased use of sensors, cloud, and remote access heightens cyber risk, which is critical in food manufacturing.
Practical defenses include:
- Segment OT networks; avoid open access.
- Use vendors with strong security and regular patching.
- Train frontline staff on basic cyber hygiene (phishing, USBs).
- Integrate cyber risk assessments and incident drills into your food safety culture.
Modern smart manufacturing can maintain strong security while leveraging data sharing benefits.
Q: Which skills should we prioritize in hiring and upskilling?
A: There are three essential skill clusters:
- Digitally fluent operators and supervisors: Comfortable with digital tools (dashboards, tablets, instructions), able to interpret trends, and escalate issues.
- Hybrid engineers: Maintenance or process engineers who can work with data, understand basic analytics, and collaborate with IT.
- Change leaders: Individuals who connect corporate strategy to plant reality, translating tech projects into clear frontline behaviors.

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