This second course of the AI Product Management Specialization by Duke University's Pratt School of Engineering focuses on the practical aspects of managing machine learning projects. The course walks through the keys steps of a ML project from how to identify good opportunities for ML through data collection, model building, deployment, and monitoring and maintenance of production systems. Participants will learn about the data science process and how to apply the process to organize ML efforts, as well as the key considerations and decisions in designing ML systems.
At the conclusion of this course, you should be able to:
1) Identify opportunities to apply ML to solve problems for users
2) Apply the data science process to organize ML projects
3) Evaluate the key technology decisions to make in ML system design
4) Lead ML projects from ideation through production using best practices
Artificial Intelligence and Machine Learning (AI/ML), Project Management, Data Management, Data Pipelines, Data Processing, Technical Management, Systems Architecture, Software Versioning, Machine Learning, Data Collection, Technology Solutions, Data Cleansing, Data Quality, Software Development Life Cycle, MLOps (Machine Learning Operations), Data Science, Solution Design, Feature Engineering, Applied Machine Learning
Reviews
4.8 (252 ratings)
5 stars
83.33%
4 stars
12.30%
3 stars
2.77%
2 stars
0.79%
1 star
0.79%
GK
Feb 15, 2024
This is a more appropriate course for the intended (AI & ML for Product Managers) audience as opposed to the first one.
GG
Jul 28, 2023
Mostly basic product and project management with the right focus on the twists for ML to keep in mind. Great course.
From the lesson
Identifying Opportunities for Machine Learning
In this module we will discuss how to identify problems worth solving, how to determine whether ML is a good fit as part of the solution, and how to validate solution concepts. We will also learn why heuristics are useful in modeling projects and the advantages and disadvantages of ML relative to heuristics.