Get in Touch

Course Outline

Introduction to Artificial Intelligence (AI), Machine Learning (ML), and Data Science

  • AI in a historical context and combinatorial technologies
  • Introduction to AI, concepts, narrow and general AI, and different types of AI
  • AI: Sense, Reason, Act
  • Thinking in AI: Machine Learning
  • Advanced Analytics versus Artificial Intelligence
  • Looking back, now, and forward
  • 4 types of data analytics
  • Analytics value chain
  • Algorithms explained without technical jargon
  • Supervised learning
  • Unsupervised learning
  • Reinforcement learning
  • Data as fuel for AI
  • Structured and unstructured data, and the 5 V's of data
  • Data governance
  • The data engineering platform
  • Just enough to understand data architecture
  • Big data reference architecture
  • 3 categories of data usage

AI Opportunity Matrix

Successful use cases by Porter's value chain

  • Primary activities
  • Supporting activities

Successful use cases by technology

  • NLP
  • Image recognition
  • Machine learning

Ideation of AI Projects

  • AI Funnel process
  • Various idea generation approaches
  • Prioritize projects
  • AI project canvas

Executing AI Projects

  • Machine learning life cycle
  • AI machine learning canvas
  • When to build versus when to buy AI solutions

Transforming into an AI-Ready Organization

  • Utilizing the AI strategy cycle
  • Dimensions of the AI framework
  • Practical approach to assess the organization's AI maturity
  • Best organizational structures
  • Benefits of an AI Center of Excellence
  • Skills and competencies

AI and Ethics

  • Risks of AI
  • Ethical guidelines
  • Realizing trustworthy AI
 35 Hours

Testimonials (4)

Related Categories