Synthetic Data Solution
We transform real-world environment into digital twins and create simulation environments where AI can learn.
We transform real-world environment into digital twins and create simulation environments where AI can learn.
Train Physical AI with synthetic data grounded in reality.
For Physical AI to operate reliably in real industrial environments, it needs large-scale data about the real world. But collecting real data is slow and costly, and the more critical the exception, the harder it is to obtain. SKAI Intelligence recreates industrial sites as precise digital twins, enabling AI systems to learn, adapt, and operate reliably in the real world.
The most challenging part of Physical AI
isn't the model.
It's the data.

Lighting Variation
Factory lighting varies throughout the day and across prodution zones. It's the primary reason models that perform well in the lab struggles in production.

Material & Surface Properties
A model trained on limited material conditions often fails when exposed to real-world variability.

Edge Cases
Defects are unpredictable. Rare edge cases that are difficult to capture often become the leading cause of failure after deployment.
From Real-World Data to AI-Ready Simulation Data
In industrial AI, acquiring sufficient high-quality data remains one of the greatest challenges. Capturing every edge case, material variation, and environmental condition is both time-consuming and costly.
Through an NVIDIA Omniverse-based digital twin pipeline, SKAI Intelligence recreates real-world environments with physical accuracy and generates synthetic data at scale, enabling AI to learn from reality before deployment.

Physically Accurate Data Inputs
We transform real-world inputs required for AI training, including products, parts, CAD models, sensor parameters, and camera and lighting conditions, into a digital environment that accurately reflects real materials, surface properties, and industrial operating conditions.

Physically Accurate Data Inputs
We transform real-world inputs required for AI training, including products, parts, CAD models, sensor parameters, and camera and lighting conditions, into a digital environment that accurately reflects real materials, surface properties, and industrial operating conditions.

Digital Twin Simulation
We recreate real-world operating conditions through physically accurate simulation of lighting, cameras, viewpoints, and environmental variables, generating the diverse scenarios and edge cases required for robust AI training.

Synthetic Data Generation for AI Training
We generate high-fidelity synthetic datasets with automated annotations, enabling robotics and AI vision systems to train, validate, and perform reliably in real-world conditions.
99% Vision Task Success Rate
Measured on an active production line rather than in a controlled test environment, these results demonstrate the real-world effectiveness of AI trained on SKAI Intelligence synthetic data.

Up to 99%
Computer Vision Accuracy

Up to 30%
Reduction in Sim-to-Real Gap

Under 1mm
Geometric Precision
Material & Surface Modeling
We model material and surface properties with physical accuracy, enabling AI to learn how real-world materials are perceived by industrial sensors.

Lighting & Camera Simulation
We simulate real-world lighting and camera conditions, enabling AI to learn from diverse industrial environments before deployment.

Controlled Randomization
We generate diverse scenarios and edge cases through controlled simulation, improving AI robustness in real-world environments.

Automatic Labeling & Structuring
Precise annotations are generated automatically and delivered as AI-ready datasets, eliminating the need for manual labeling and data preparation.

The price of the last 1%.
Even small gains in vision accuracy can reduce manual intervention and improve operational efficiency.

99% Accuracy Changes the Economics of Automation. Even a 1% gain in vision accuracy can reduce failures, improve efficiency, and accelerate automation.
A Data Flywheel That Continuously Closes the Reality Gap.

Real → Simulation → Real
SKAI Intelligence closes the Real-to-Sim-to-Real loop, continuously refining digital twins, generating new edge cases, and improving AI performance through real-world feedback.
01.Real-World Capture
We capture and structure real-world assets, materials, lighting, and camera conditions as the foundation of a digital twin environment.
02.Digital Twin Simulation
Omniverse-native digital twin simulation enables AI training across diverse industrial conditions and edge cases.
03.Synthetic Data Generation
We generate automatically annotated synthetic datasets at scale for AI training and validation.
04.Real-World Deployment
We enable AI systems to perceive and operate reliably in real-world industrial environments.
Designed for Real Factory Environments
From shifting lights to material reflections to the unpredictable variables of the floor. Grounded in real factory environments, SKAI Intelligence builds simulation and synthetic data pipelines that let AI operate reliably in the real world.
Robotic Assembly
Pose estimation, part recognition, and verification under real production lighting and cluttered environments.

Surface Inspection
Defect detection across reflective, machined, and coated surfaces, including rare conditions often missing from real-world datasets.

Object Detection under Variable Lighting
Reliable object detection across varying lighting conditions and real-world environmental changes.

Precision Grasping
Sub-millimeter digital twin precision enables reliable transfer from simulation to real-world grasping.

FAQ
- A
It transforms real-world environments into digital twins and generates automatically annotated training data at scale, eliminating the need for extensive real-world data collection.
- A
No. Because it is built from real-world scans, it has reduced domain gap by up to 30% and achieved up to 99% vision task success in live production environments.
- A
As AI-ready images and 3D datasets with automated annotations included.
- A
Yes. We scan your equipment and environment at sub-millimeter precision to generate data optimized for your operational conditions.
- A
We have validated our technology through various PoCs with a global robotics company.