AI + INLAN

See Items in Real Time. AI-Ready Data.

AI-ready data from every tagged item: location, temperature, motion. At cents per tag.

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What AI models in manufacturing actually need

To power reliable AI in manufacturing and logistics, data must meet three non-negotiable standards.

01

Granular

Deep, detailed data at every level of the process, down to the individual item. Pallet-level or shipment-level data is too coarse for AI to act on meaningfully.

02

Real-Time

Live streaming data for instant decision-making. Batch uploads and periodic scans create blind spots that make AI outputs stale before they can be acted on.

03

Multi-Dimensional

Identity, location, temperature, motion status, and more, unified in a single view. Single-axis data can't capture the complexity of a real production or logistics environment.

Without all three, AI models either can't be deployed at all or produce unreliable outputs. This is the bottleneck holding back the entire industry. It has nothing to do with the quality of the algorithms.

The technology gap holding AI back

Existing tracking technologies were not designed to feed AI models. Each comes with a fundamental limitation that prevents it from meeting all three data requirements.

Passive RFID

Widely deployed. Fundamentally limited.

Passive RFID is everywhere in warehousing and retail, but it cannot provide real-time or multi-dimensional data. Read events are point-in-time snapshots triggered by a reader passing by, not continuous streams. There is no temperature, no motion, no dwell time. Just a binary "tag seen here at this moment."

Active (Battery-Powered) Tags

Capable data. Impossible economics.

Active tags can provide richer, continuous data, but the unit economics break down at scale. When you need to tag thousands or millions of individual items, battery-powered tags are simply too expensive. Large-scale deployments remain financially out of reach for most operations.

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This technology gap is the primary reason AI adoption in manufacturing remains in the low single digits, while sectors like information technology and scientific services have surged past 30%. The bottleneck isn't ambition or investment. It's data infrastructure.

INLAN: The data layer AI has been waiting for

INLAN bridges the gap between what existing technology can deliver and what AI models actually need by combining battery-less smart tags with long-range infrastructure to produce continuous, item-level data streams at a cost that works at scale.

Real-Time

Continuous streaming data, not periodic scans. Every tagged item reports its state constantly, giving AI models a live, accurate picture of your operation at all times.

Scalable

Designed from the ground up for deployments of thousands to millions of tags, across a single facility or an entire network of sites.

Cost-Effective

Economics that work at item-level tagging, not just pallet-level. Battery-less tag technology removes the cost barrier that makes active-tag deployments impractical at scale.

Accurate Localization

Precise positioning within facilities and across zones. Know exactly where every item is not just which building it's in, but which aisle, dock, or production stage.

Reliable Sensors

Consistent, dependable data capture in real-world industrial conditions, through vibration, RF interference, and the demanding environments of active production floors.

Long Range

Coverage across large warehouses, factories, and yards, without dense reader infrastructure. A single deployment covers your entire operation.

The data AI models actually need

INLAN tags generate two complementary streams of item-level data: location intelligence and environmental sensing, giving AI models a complete, continuous picture of every asset in your operation.

Location Intelligence

Real-time position of every tagged item Motion detection: moving vs. stationary Direction and speed of movement Total distance travelled Dwell time: total time stationary at a location Automated inventory counting Zone-level tracking and geofencing

Environmental Sensing

Real-time temperature per item Historical temperature variation logging Critical threshold alerting Cumulative exposure tracking Facility temperature mapping

AI use cases that become possible with INLAN data

When AI models have access to continuous, item-level data, entirely new classes of automation and prediction become viable in operations where they were previously impossible.

Predictive Workflow Optimization

AI analyzes movement patterns and dwell times across your facility to identify bottlenecks in real time. Models surface specific layout or process changes that reduce cycle times and cut wasted motion automatically, continuously, and at item-level resolution.

Automated Cold Chain Compliance

Continuous per-item temperature monitoring feeds AI models that predict and prevent spoilage before it happens. Cumulative exposure data enables compliance records without manual audits, and threshold alerts trigger corrective action the moment a breach occurs.

Dynamic Inventory Management

Real-time, zone-level inventory data enables AI-driven demand forecasting and automated replenishment triggers. Eliminate manual cycle counts, reduce safety stock requirements, and respond to demand changes with data that's accurate to the current moment.

Quality & Process Control

Correlate item location, dwell time, and environmental exposure to predict and flag quality issues proactively. AI models trained on INLAN data can identify process deviations before they result in defective output or compliance failures.

The Future of Manufacturing AI

Give Your AI Models the Data They Deserve

The future of manufacturing AI isn't about better algorithms. It's about better data. INLAN provides the continuous, rich, item-level data stream that turns AI potential into operational reality.

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