Course Outline

Introduction to AI

  • History of AI
  • Definitions and terminology
  • AI vs. human intelligence
  • Future trends and potential

Machine Learning Basics

  • Types of machine learning: supervised, unsupervised, reinforcement
  • Key ML algorithms
  • ML workflow: from data collection to model evaluation

Data Management

  • Data collection techniques
  • Data cleaning and preprocessing
  • Data analysis and visualization

AI in Practice

  • Case studies of AI applications
  • Industry-specific AI solutions
  • AI in consumer products

Ethical Considerations

  • AI and job displacement
  • Bias and fairness in AI
  • Privacy and security issues
  • Future of AI ethics

Lab Project

  • Python programming assignments
  • Data analysis projects using real-world datasets
  • Development of a simple ML model

Summary and Next Steps

Requirements

  • An understanding of basic programming concepts
  • Experience with Python programming
  • Familiarity with basic statistics and mathematics

Audience

  • IT Professionals
 14 Hours

Testimonials (2)

Related Courses

Building Intelligent Applications with AI and ML

28 Hours

Intelligent Applications Advanced

21 Hours

Building Intelligent Mobile Applications

35 Hours

AI-102T00: Designing and Implementing a Microsoft Azure AI Solution

28 Hours

AI-Augmented Software Engineering (AIASE)

14 Hours

Artificial Intelligence (AI) Strategy for Business and Professionals

35 Hours

AI Coding Assistants: Enhancing Developer Productivity

7 Hours

Introduction to Data Science and AI using Python

35 Hours

AI in Digital Marketing

7 Hours

Artificial Intelligence (AI) for Managers

7 Hours

Artificial Intelligence (AI) for Robotics

21 Hours

Introduction to Artificial Intelligence (AI)

35 Hours

AI and Robotics for Nuclear - Extended

120 Hours

AI and Robotics for Nuclear

80 Hours

AI in business and Society & The future of AI - AI/Robotics

7 Hours

Related Categories