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Customer case · Visual Inspection

Control-module assembly for electronic equipment

Multi-model line, zero code, minutes to changeover.

A contract manufacturer of electronic equipment runs a high-mix control-module line with heavy text-content and component-placement variance. Visual Inspection AI Agent replaced brittle rule-based vision across multiple stations.

Industry
Electronic equipment manufacturing
Product
Visual Inspection AI Agent
Scope
Multi-station, multi-variant
Changeover
Minutes per new variant
The challenge

A traditional vision stack that could not keep up with the SKU mix.

The line runs many control-module variants back to back. The previous rule-based machine-vision setup needed weeks of engineering for every new SKU, and lighting drift caused cascading false positives on production runs.

Engineering bottleneck on new SKUs

Every new product variant required the vision specialist to rewrite templates, re-tune thresholds, and re-validate — the inspection step became the gate on how fast new SKUs could launch.

Fragile under lighting and material drift

Small changes in ambient lighting or surface finish produced false-reject spikes, eroding the operator trust that had taken months to build.

Text and label variance uncovered

Each variant had different text content, labels, and component layouts. Classical OCR combined with template matching could not reliably verify all three dimensions at once.

Changeover eating throughput

On a mixed-model line, the inspection station — not the assembly itself — was the real constraint on daily output.

The solution

Replace rule-based vision with a semantic AI Agent.

The Insightek engineering team deployed Visual Inspection AI Agent at the critical control-module stations. Line engineers ran the entire registration workflow themselves — no machine-vision specialist in the loop.

  1. 01

    Register a baseline per variant

    For each variant, line engineers photographed a handful of OK samples. The AI Agent auto-recognized the module structure, text regions, and key components — then a single operator confirmed the layout through a visual interface.

  2. 02

    Integrate with the line PLC

    The inference service was wired to the existing PLC trigger. On every captured frame, the agent produced an OK/NG verdict plus an annotated process image and a structured log entry for the MES.

  3. 03

    Roll out to remaining stations

    Once the first station was stable, station templates were replicated to the rest of the control-module line, and new SKUs were added by re-running the register-and-confirm workflow.

No code was written during deployment. All registration and changeover was done by line engineers through the visual interface.

Measured results

What the line changed — with disclosure.

These numbers come from this named customer deployment under NDA. Every figure below is published together with its test method and baseline so the claim is unambiguous.

Validated customer metrics — control-module line
Metric Value Test method Baseline
Engineering debug time −95% End-to-end time from blank line to first OK/NG on a new product variant Customer's prior traditional machine-vision setup on the same line
Single-station throughput +50% Takt-time measurements post-deployment vs. pre-deployment baseline Manual visual inspection at the same station
Programming lines of code 0 Engineer timesheet during model registration (photo + confirm)
Product changeover time Minutes Stopwatch from new sample in hand to stable OK/NG Traditional rule-based vision: hours to days

Figures are from a single named customer deployment under NDA. Specific numbers vary by line, product mix, and lighting conditions. A full methodology report is available on request after NDA.

Run a similar rollout on your control-module line.

Book a 30-minute demo with the engineering team. We will walk through your line, your variant mix, and a realistic POC plan.