Properly Scoping AI Projects [AI Today Podcast]
AI Today Podcast: Artificial Intelligence Insights, Experts, and Opinion - Un podcast de AI & Data Today
Catégories:
The best practice for any high risk, emerging technology project with ill-defined goals is: Think Big. Start Small. Iterate Often. But, what does that really mean? How do you think big? And how do you start small? What does iteration look like? And how does this connect to project scope? In this episode of the AI Today podcast we discuss what it means to think big when it comes to AI. We discuss how to start with small accessible parts as well as how to incorporate the Seven Patterns of AI to help define where and how to start. We discuss why AI Projects need to be short and outcome focused. And, we let listeners know what it means to be properly scoping AI projects. How do you scope an AI project? AI Projects need to be short and outcome focused. Each small iteration should not run more than a few weeks and ideally be a handful of days long. Iterations should never take multiple months, or years! The scope of a project defines what is part of the project and what is not. In this episode we go into the six processes of scope management according to the Project Management Body of Knowledge (PMBOK). And, which ones specifically matter for AI projects. And from the CPMAI perspective, we share which three steps are the most important for AI projects. Show Notes: Free Intro to CPMAI course CPMAI Certification Subscribe to Cognilytica newsletter on LinkedIn Revisiting the Seven Patterns of AI in 2024 [AI Today Podcast]