Autonomous Optimization of Every Machine, Line, and Shift
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Autonomous Optimization of Every Machine, Line, and Shift

Leverage GenAI and Agentic AI to optimize output, reduce costs, improve quality, and enhance sustainability.

Rising production costs, workforce shortages, volatile supply chains, and ever-increasing pressure to deliver at speed. MicroAI’s manufacturing-specific Agentic AI & GenAI solutions are built to help modern factories overcome these challenges by enabling autonomous decision-making, predictive problem-solving, and end-to-end operational optimization.

  • Higher Equipment Uptime – downtime reduced by 20-30%
  • Scrap Reduction and Improved Yield – scrap reduced by 15-25%
  • Cycle-Time Reduction – cycle-times reduced by 10-20%
  • Reduced Energy Consumption – 5-20% reduction in energy use
  • Reduced Cost – 7-20% reduction in CoS

Migwelder Digital Twin

Mig Welder asset owners and operators experience sub-par welder performance due to lack of deep, predictive, observability into welder performance and health.

What is Agentic AI for Manufacturing?

MicroAI’s Agentic AI goes beyond traditional automation. It uses specialized, autonomous AI agents that can:

  • Provide 360° observation of machine and machine group data

  • Analyze performance, detect faults, and forecast issues

  • Propose and execute decisions within defined guardrails

  • Collaborate with humans and other Agents to optimize workflows

Combined with Generative AI, these agents create actionable insights, generate instructions or documentation, and adapt dynamically to changing variables in real time.

Core Capabilities

  • Autonomous Production Optimization

    • Edge-based analysis of machine health, cycle times, and line and shift consistency
    • Independent adjustment of operating parameters to optimize output
    • GenAI-enabled insights into historical issues and impactful resolutions
  • Intelligent Quality Verification

    • Multi-agent collaboration (vision and sensor) for instant defect detection and automated alerts
    • GenAI-enabled corrective action insights and query-based quality trend forecasting
    • Closed-loop, human-in-the-loop, correctitve action implementation, validation, and audit trails
  • Predictive and Autonomous Machine Maintenance

    • Embedded, edge-based, machine-learning models learn the normal state of machine behavior and trigger alerts on impending failure
    • Agentic AI triggers proactive work orders, inspections, or component replacements
    • Extends asset lifespans, reduces downtime, optimizes energy consumption, and lowers emergency repair costs
  • Supply Chain and Inventory Intelligence

    • Combination of operational data and external signals (demand forecasts, supplier performance analytics, logistics updates) to maintain opitimal inventory levels
      • Predict material shortages
      • Insight-fueled order scheduling
      • Proactive alternative sourcing
  • Workforce Augmentation

    • AI agents act as autonomous assistants that handle routine, repetitive, and time-consuming tasks so human teams can focus on higher-value work
    • GenAI provides contextual recommendations by pulling from manuals, historical data, tribal knowledge, and real-time telemetry
    • GenAI captures institutional knowledge that usually disappears with retirements or turnover

Example Use Cases and Impacts

  • Predictive Maintenance

    Edge Agents review sensor data and historical failures, trigger diagnostics, and autonomously schedule maintenance. Impact: Reduces unplanned downtime and replacement costs

  • Optimizing Production Scheduling

    Agentic systems simulate, optimize, and re-plan schedules based on real-time shop-floor constraints (machine downtime, material availability, WIP levels). Impact: Higher OEE, fewer bottlenecks, smoother workflows

  • Yield Optimization and Parameter Tuning

    AI Agents run multi-variate optimization to find ideal process conditions for extrusion, molding, welding, machining, and heat treatment. Impact: Higher first-pass yield, reduced scrap, lower cost

  • Energy Management and Sustainability Automation

    Agentic AI autonomously adjusts energy-intensive systems (HVAC, ovens, compressors) to minimize consumption without impacting throughput. Impact: Lower energy cost, improved sustainability KPIs, reduced carbon footprint

How it Works

  • Step 1 – Connect and Collect
    • Integrates with MES, ERP, SCADA, PLCs, sensors, and machine systems
  • Step 2 – Analyze and Predict
    • Edge-based AI agents interpret historical and real-time data to find patterns and forecast outcomes
  • Step 3 – Recommend and Act
    • Depending on customized governance rules, the system delivers:
      • Autonomous actions for optimization
      • Human-in-the-loop recommendations
      • Continuous, closed-loop, optimization and verification cycles
  • Step 4 – Learn and Improve
    • AI Agents evolve with every interaction, ensuring long-term reliability and adaptability

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