Live deployment · Industrial pilot

AI That Learns in Simulation. Deploys in Reality.

We train industrial perception models on synthetic data — no manual labels, no data collection campaigns, no domain gap.

01 / Pipeline

From Physical Object
to Deployed Intelligence.

Five stages, fully automated. Every step is reproducible, every label is generated, and every model improves the next iteration — without a human ever drawing a bounding box.

01 — STEP
Scan

Real object to 3D model

Photogrammetry on the physical hazard. The asset carries real geometry and real surface response.

02 — STEP
Simulate

Load in photoreal environment

Drop into CARLA or NVIDIA Omniverse. The simulator becomes a sampler over every condition the model will face.

03 — STEP
Generate

Millions of labeled images

All lighting, all angles, all weather. Ground truth — bounding boxes, masks, depth — emitted alongside every frame.

04 — STEP
Train

Detection without annotation

SynYOLO — our YOLOX-based detector — learns directly from synthetic frames. No annotation teams, no labeling queue, no humans in the loop.

05 — STEP
Deploy

Live on factory cameras

TensorRT inference on industrial RTSP feeds. Pixel detections become real-world coordinates via camera calibration.

02 / Why this works

A pipeline that replaces the bottleneck.

Real-world data is expensive to collect, dangerous to stage, and impossible to label fast enough. We replace all three problems with a single rendered pixel.

01 / VALUE

Zero Manual Labels

No annotation teams. No data collection campaigns. No labeling queue running ahead of you forever. The simulator emits ground truth — every box, every mask, every depth value — alongside the image it just rendered.

02 / VALUE

48-Hour Deployment

A new hazard class — from 3D capture to production model on a live camera — in days, not quarters. New failure modes in the field become a new render pass overnight. Retrain and redeploy before the next shift.

03 / VALUE

Sim-to-Real Transfer

Models trained entirely in simulation work in reality. Photoreal rendering, domain randomisation, and PBR materials close the gap — verified on live factory footage the model has never seen.

Currently deployed

Running on real cameras
at an industrial testbed.

A research-grade smart-manufacturing testbed with permanent industrial cameras. Our prototype detects traffic cones — trained on zero real photographs, deployed against real ones.

6.8px
Mean
localisation accuracy
100%
Synthetic training data
no real labels
Real-time
Inference on
industrial RTSP feeds
04 / Backed by

Trusted by the programs that build AI infrastructure.

Active members of the leading startup programs from NVIDIA, AWS, and Microsoft — and a partner in Austria's 5G LUMEIK testbed.

Member
NVIDIA
Inception
NVIDIA Inception
Omniverse · GPU credits
Member
AWS
AWS Activate
Startups
Cloud · inference
Member
MS / for
Startups
Microsoft
for Startups
Azure · GTM
Partner
5G
LUMEIK
5G LUMEIK
Austrian 5G testbed