Our
Mission
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Bring AI to any machine, and help machines collaborate.
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Multi-agent AI on edge networks
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Manufacturing and Industrial
Revolutionizing Manufacturing Efficiency with AI-Driven Automation
90% Reduction in Calibration Time – AI eliminates manual tuning, cutting setup time from hours to minutes. The resulting operational efficiencies enable the organization to allocate its resources toward higher-value activities.
Key Performance Gains & Cost Savings
30% Increase in Throughput – Intelligent optimization dynamically adjusts machine parameters, reducing bottlenecks and driving higher production capacity. The scale of automation investment determines the exponential growth of output.
40% Reduction in Downtime – AI-driven predictive maintenance anticipates failures before they occur, minimizing unplanned shutdowns and extending equipment lifespan. The result is a more resilient, high-performance operation.
20% Energy Savings – AI continuously learns and adapts machine power consumption for optimal efficiency. AI-driven energy management systems optimize operational costs while improving sustainability performance.
50% Fewer Defective Parts – AI-powered vision systems catch defects in real-time, ensuring higher first-pass yield, reducing waste, and minimizing rework. The combination of cost efficiency and brand reputation improvement results from this approach.
Zero-Latency AI Response – On-premise AI eliminates cloud dependency, enabling real-time decision-making with 50x faster processing compared to traditional cloud-based automation.
Self-Learning Factory Network – Machines communicate and adjust performance dynamically, ensuring continuous optimization and peak efficiency across the production line.
Fleet-Wide Intelligence Sharing – When one machine learns an optimization, the entire factory benefits instantly, accelerating the compounding effects of AI-driven improvements across operations.
Scalable, Intelligent, and ROI-Driven Manufacturing Automation
Our
Team
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Anthony Dean
President / AI-Driven Embedded Control Systems Architect
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Dr. Agni Sundar
Vice President of Artificial Intelligence / Research & Development Computer Scientist / PhD in Federated Machine Learning
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Tobias Dornai
Vice President of Mechanical Engineering / Robotics & Automation Mechanical Engineer
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Samuel Razumovsky
Convolutional Neural Network Researcher / Full-Stack Software Developer / Interdisciplinary Aerospace and SoftwareEngineer
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Charles Kalis
Systems Engineer / Model-Based Systems Research & Integration Engineer / MS, Systems Engineering
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Eirik Robertstad
Senior Network Engineer / Enterprise Infrastructure Architect and Senior DevOps Engineer
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Brian Lester
Advisor / Senior Program Controls Manager and Agile & DevOps Expert / Honeywell, Raytheon, GDMS, Iridium
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Paul Spaven
Senior Advisor / former President at GKN Advanced Defense Systems and IAI North America