AI for Smart Cities: Urban Planning & Sustainable Development Training Course

 

AI for Smart Cities: Urban Planning & Sustainable Development Training Course

Introduction

As urban populations continue to grow, cities face unprecedented challenges related to infrastructure, resource management, environmental sustainability, and quality of life. This AI for Smart Cities: Urban Planning & Sustainable Development Training Course is designed for urban planners, city officials, government employees, civil engineers, AI/ML engineers, data scientists, environmental specialists, and public policy makers seeking to leverage Artificial Intelligence (AI) to create more intelligent, efficient, and livable urban environments. The course explores how AI can transform urban planning, enhance public services, optimize resource consumption, and foster sustainable development.

Participants will gain a comprehensive understanding of AI applications in smart mobility, energy management, waste optimization, public safety, and environmental monitoring. The curriculum emphasizes the strategic integration of IoT data, predictive analytics, and machine learning models to address complex urban challenges. By mastering these concepts and examining real-world case studies, you will be equipped to design, implement, and govern AI-powered solutions that drive innovation, improve urban resilience, and build smarter, more sustainable cities for the future.

Target Audience

  • Urban Planners and Architects.
  • City Officials and Government Administrators.
  • Civil Engineers and Infrastructure Managers.
  • AI/ML Engineers and Data Scientists interested in urban applications.
  • Environmental Scientists and Sustainability Experts.
  • Public Policy Makers and Urban Development Consultants.

Duration

10 days

Course Objectives

  1. Understand the core concepts of smart cities and the pivotal role of AI in urban transformation.
  2. Master strategies for building robust data infrastructures to support AI applications in urban environments.
  3. Apply AI and machine learning techniques to optimize urban mobility and transportation systems.
  4. Leverage AI for efficient energy management, waste reduction, and sustainable resource utilization.
  5. Explore AI's contribution to enhancing public safety, security, and emergency response in cities.
  6. Understand how AI can be used for environmental monitoring, climate resilience, and sustainable urban planning.
  7. Analyze the ethical, privacy, and governance challenges associated with AI deployment in smart cities.
  8. Develop a strategic vision for integrating AI into urban planning and sustainable development initiatives.

Physical Training Schedule

Start & End Date

Location

Fee (USD)

Register

May 5 – May 14, 2025

Kigali

2,850

May 19 – May 28, 2025

Mombasa

1,450

June 2 – June 11, 2025

Nairobi

1,150

June 16 – June 25, 2025

Pretoria

4,000

July 1 – July 10, 2025

Nairobi

1,150

July 15 – July 24, 2025

Dar es Salaam

2,850

August 4 – August 13, 2025

Nairobi

1,150

August 18 – August 27, 2025

Nairobi

1,150

September 1 – September 10, 2025

Mombasa

1,450

September 15 – September 24, 2025

Nairobi

1,150

October 1 – October 10, 2025

Kigali

2,850

October 15 – October 24, 2025

Nairobi

1,150

November 3 – November 12, 2025

Dar es Salaam

2,850

November 17 – November 26, 2025

Nairobi

1,150

December 1 – December 10, 2025

Pretoria

4,000

December 15 – December 24, 2025

Nairobi

1,150

Online Training Schedule

Start & End Date

Fee (USD)

Register

May 5 – May 14, 2025

1,200

May 19 – May 28, 2025

1,200

June 2 – June 11, 2025

1,200

June 16 – June 25, 2025

1,200

July 1 – July 10, 2025

1,200

July 15 – July 24, 2025

1,200

August 4 – August 13, 2025

1,200

August 18 – August 27, 2025

1,200

September 1 – September 10, 2025

1,200

September 15 – September 24, 2025

1,200

October 1 – October 10, 2025

1,200

October 15 – October 24, 2025

1,200

November 3 – November 12, 2025

1,200

November 17 – November 26, 2025

1,200

December 1 – December 10, 2025

1,200

December 15 – December 24, 2025

1,200