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.

Managing Machine Learning Projects

Managing Machine Learning Projects
This course is part of AI Product Management Specialization

Instructor: Jon Reifschneider
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29,934 already enrolled
371 reviews
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Skills you'll gain
- MLOps (Machine Learning Operations)
- Data Preprocessing
- Data Quality
- Data Management
- Project Management
- Model Evaluation
- Systems Design
- Machine Learning
- Data Cleansing
- Model Training
- Data Collection
- Technology Solutions
- Software Development Methodologies
- Application Lifecycle Management
- Data Pipelines
- Technical Management
- Data Science
- Technical Design
- Applied Machine Learning
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Reviewed on May 4, 2026
Clear understanding of the different problems on how to approach ML opportunities
Reviewed on Jul 10, 2024
I like this course; it is very informative. I learned a lot of useful concepts, and I reinforced much of what I knew. I recommend this course, even if is just for fun.
Reviewed on Jun 29, 2023
I appreciate the use cases that were shared throughout the course. It helped tremendously.





