Rapid Ai Project Leadership Blueprint
Published 9/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.35 GB | Duration: 1h 25m
Published 9/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.35 GB | Duration: 1h 25m
The Fast-Track to Learn The Principles of Leading AI Projects!
What you'll learn
Learn how to lead AI projects with confidence, even in uncertain and evolving environments.
Understand the blueprint principles that keep AI projects aligned with business goals.
Ask the right questions about data, ethics, and project success.
Avoid common pitfalls that keep AI projects stuck in proof-of-concept.
Master how to define and measure success when goals and metrics constantly evolve in AI projects.
Requirements
No prior experience required.
You don’t need technical or coding skills to join this course.
A basic understanding of project management is helpful but not mandatory.
All you need is curiosity, willingness to learn, and access to a computer with internet.
Description
This fast-paced course is designed to equip project managers with a practical blueprint for leading AI initiatives with confidence and clarity.AI projects are fundamentally different from traditional project management—they are complex, iterative, and constantly evolving.Fixed budgets, rigid timelines, and well-defined requirements rarely apply. Instead, success requires adaptability, strategic thinking, and a deep understanding of the principles that drive AI projects forward.In this course, you won’t get lost in the technical details or coding. Instead, you’ll learn the core leadership principles that matter most: how to navigate uncertainty, manage evolving goals, and align technical teams with business objectives.You’ll gain insight into the importance of data quality and governance, ethical considerations, and trustworthy AI practices, ensuring that your projects are not only effective but responsible.You’ll also explore operational frameworks such as MLOps, which bridge the gap between development and production, helping AI systems perform reliably in real-world environments.By the end of the course, you’ll have a clear leadership blueprint that guides you from project conception to full implementation.You’ll be prepared to lead teams confidently, ask the right questions, build trust with stakeholders, and move initiatives from proof-of-concept to impactful outcomes.Whether you’re an experienced project manager or stepping into AI projects for the first time, this course provides the knowledge and strategies to thrive in the fast-paced world of AI project leadership.Also, one more thing.The concepts are presented through my AI avatar (It's my face, but movement and speech are GenAI). Why?As a non-native speaker, I wanted to keep the focus on the content—not on my accent.It perfectly fits the theme: if we’re learning about AI, why not let AI help teach?Let’s get started—your blueprint for leading AI projects begins now.
Overview
Section 1: No Time Wasted
Lecture 1 Read Me
Section 2: Bridging Project Management and AI
Lecture 2 The New PM Mindset for AI Projects
Lecture 3 5 real-world examples of Traditional PM vs. AI PM
Lecture 4 Why Your AI Project Will Fail & How to Save It
Lecture 5 4 quick case studies illustrating how AI project managers must manage data
Lecture 6 Ethical AI: The Human in the Machine
Lecture 7 2 examples of Explainable AI (ExAI) and 1 of AI as an augmentation tool
Lecture 8 From Lab to Live: PMs Navigating MLOps
Lecture 9 3 Real-world examples of projects with and without MLOps
Section 3: AI Project Management vs. Traditional Project Management: Key Differences
Lecture 10 Budgeting for the Unpredictable AI Projects
Lecture 11 3 real-world examples that show why AI projects often need flexible budgets
Lecture 12 Defining Success in AI Projects
Lecture 13 Success metrics
Lecture 14 AI: It's All About the Data.mp4
Lecture 15 3 real-world examples that show why AI project managers need data literacy
Section 4: Navigating AI Project Challenges
Lecture 16 Solving the Black Box Problem
Lecture 17 3 real-world examples of how Explainable AI helps solve the Black Box problem
Lecture 18 The AI Proof of Concept Trap
Lecture 19 2 real-world examples of AI projects that succeeded in proof-of-concept but fai
Lecture 20 Hidden Threats to Your GenAI Project
Lecture 21 threats
Lecture 22 Why AI Projects Fail
Lecture 23 3 examples of impressive AI projects that failed the real-world
Project managers who want to step into AI initiatives with confidence.,Business leaders seeking a clear blueprint to guide AI projects.,Professionals transitioning into AI-related roles without deep technical expertise.,Anyone curious about the principles behind successful AI project leadership.