Use Case
Explore how AI transformation is reshaping industries through real-world case studies.
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Optimization Pharmaceutical
Automated Fermentation Optimization: Control Deviation Reduced to 0.2%
Automation of the early fermentation phase eliminates human error and significantly enhances control accuracy.
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AI Platform Manufacturing Optimization Predictive Operations
AI Platform: Optimizing Inventory Management for Food Franchises
AI platform(Runway) powers an AI-driven MLOps system that integrates with existing tools to optimize demand forecasting, order planning, and inventory management.
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Manufacturing Optimization
Furnace Equipment Temperature Optimization: 2% LNG Savings
AI-powered Model Predictive Control (MPC) optimizes furnace temperature, ensuring consistent quality and lower energy use.
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Manufacturing Optimization
Production Scheduling Optimization: 66% Adherence Increase
Production scheduling optimizes multi-variety, small-batch operations, reducing bottlenecks and idle equipment to enhance productivity.
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Energy Manufacturing Optimization
Thermal Storage System Optimization: 11% Energy Cost Reduction
AI simulation using real-world data optimizes control strategies, reducing energy costs and variation among site managers.
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Manufacturing Optimization
Parameter Tuning Automation: 52% Faster, 20% More Accurate
Parameter tuning through data-driven simulation and reinforcement learning minimizes discrepancies between commanded and actual motion.
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Manufacturing Optimization
SMT Performance: Optimized in 8 Weeks
Reinforcement learning optimizes PCB component placement sequences, reducing total process time in SMT production.
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Manufacturing Optimization Robotics
Robot Offline Programming Automation: From 6 Weeks to Days
AI-driven multi-robot welding automation optimizes path planning and task execution, enhancing safety and cutting both operation and production time.
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Automotive Optimization
EV HVAC Control Optimization: Energy Use Cut by 10%
Powered by real EV data, our AI simulator mirrors real driving conditions and leverages a lightweight model to accelerate computation and optimize energy efficiency.
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Optimization Semiconductor
Chip Design Automation: 85% Faster Execution, 49% Better Performance
AI-driven simulators and RL agents automate ASIC component placement for faster, higher-performing designs.