🧭 Course Description:
This immersive 5-day training explores how Artificial Intelligence (AI) and Robotics are reshaping manufacturing, supply chains, energy operations, and industrial automation. Participants will gain a practical understanding of smart factories, intelligent robots, predictive maintenance, and AI-powered decision-making.
________________________________________
📅 Duration:
5 Days – Intermediate to Advanced
Includes lab simulations, industry case studies, and applied projects.
________________________________________
🧩 Key Modules:
Day 1: Foundations of AI & Robotics in Industry
• Role of AI and robotics in Industry 4.0
• Smart factories, IoT integration, and cyber-physical systems
• AI vs traditional automation: key differences
Day 2: Intelligent Robotics & Machine Vision
• Types of industrial robots: collaborative, autonomous, adaptive
• Machine vision and sensors in manufacturing
• Hands-on demo: programming basic robotic arms (simulated)
Day 3: Predictive Maintenance & Operational AI
• How AI enables predictive maintenance and real-time monitoring
• Using data for machine health analysis
• Case study: reducing downtime using ML models
Day 4: AI in Supply Chain & Quality Control
• Automating logistics and warehouse operations
• Smart procurement and quality prediction using AI
• Ethical and safety considerations in robotic deployment
Day 5: Capstone Project & Implementation Strategy
• Designing an AI+Robotics solution for your facility or agency
• Drafting an implementation roadmap: tools, timelines, ROI
• Pitch presentation to peers/instructors
________________________________________
🏭 Who Should Attend:
• Industrial engineers, plant managers, production supervisors
• Digital transformation officers in manufacturing
• Energy & infrastructure sector staff
• Technical educators and trainers
• Government or defense logistics officials
________________________________________
🎓 Outcomes & Certification:
• Certificate: “AI & Robotics in Industry Professional”
• Applied project portfolio for internal deployment
• Tools list: Open-source platforms, simulation environments, vendor options
• Optional: Post-course consultation on implementation strategy