
AI+ Mining™ – Course Outline
Program Overview
The AI+ Mining™ course introduces participants to the principles and techniques of extracting valuable insights from large datasets using Artificial Intelligence (AI), Machine Learning (ML), and modern data mining methods. The course focuses on transforming raw data into actionable intelligence to support decision-making, forecasting, and business optimization.
Participants will gain both theoretical knowledge and practical skills in data preprocessing, pattern recognition, predictive modeling, and AI-driven analytics.
Course Objectives
• Understand the fundamentals of data mining and AI analytics
• Apply machine learning techniques to extract patterns from data
• Clean, prepare, and transform datasets for analysis
• Build predictive and descriptive models
• Use AI tools for business intelligence and decision-making
• Interpret and communicate data-driven insights effectively
Target Audience
• Data Analysts & Business Analysts
• IT Professionals & Software Developers
• Project Managers & Decision Makers
• Business Intelligence Specialists
• Students and beginners in AI/Data Science
• Professionals interested in AI-driven analytics
Course Duration
• 20–30 Hours (Flexible: 3–4 days instructor-led or customized corporate delivery)
Assessment & Certification
• Quizzes and knowledge checks
• Practical assignments and mini-projects
• Final evaluation (optional)
• AI+ Mining™ Certificate of Completion
Training Methodology
• Instructor-led training (in-person / virtual)
• Hands-on practical exercises
• Case study discussions
• Interactive demonstrations
• Group projects
Course Modules
Module 1: Introduction to AI in Mining
• Overview of AI, Machine Learning & Deep Learning in Mining
• Use Cases
• Activity
Module 2: Machine Learning & Deep Learning for Mining
• Introduction to ML & Deep Learning
• Use Cases
• Case Study
• Hands-on Exercise
• Activity
Module 3: AI in Mineral Exploration & Resource Modeling
• AI for Smart Exploration & Orebody Modeling
• Use Cases
• Case Study
• Hands-on Exercises
• Activity
Module 4: AI for Equipment Automation & Fleet Optimization
• AI in Autonomous Vehicles & Robotics
• Use Cases
• Case Study
• Hands-on Exercise
• Activity
Module 5: AI in Predictive Maintenance & Asset Management
• AI in Equipment Health Monitoring
• Use Cases
• Case Study
• Hands-on Exercise
• Activity
Module 6: AI for Environmental Compliance & Sustainability
• AI-Powered Environmental Monitoring
• Use Cases
• Case Study
• Hands-on Exercises
• Activity (Group Exercise)
Module 7: AI for Workforce Transformation & Ethical AI
• Ethical AI, Workforce Augmentation & AI Regulations
• Use Cases
• Case Study
• Hands-on Exercises
Module 8: AI in Mining Strategy & Implementation
• AI-Driven Decision-Making in Mining
• Use Cases
• Case Study

