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学生对 Duke University 提供的 Machine Learning Foundations for Product Managers 的评价和反馈

4.7
759 个评分

课程概述

In this first course of the AI Product Management Specialization offered by Duke University's Pratt School of Engineering, you will build a foundational understanding of what machine learning is, how it works and when and why it is applied. To successfully manage an AI team or product and work collaboratively with data scientists, software engineers, and customers you need to understand the basics of machine learning technology. This course provides a non-coding introduction to machine learning, with focus on the process of developing models, ML model evaluation and interpretation, and the intuition behind common ML and deep learning algorithms. The course will conclude with a hands-on project in which you will have a chance to train and optimize a machine learning model on a simple real-world problem. At the conclusion of this course, you should be able to: 1) Explain how machine learning works and the types of machine learning 2) Describe the challenges of modeling and strategies to overcome them 3) Identify the primary algorithms used for common ML tasks and their use cases 4) Explain deep learning and its strengths and challenges relative to other forms of machine learning 5) Implement best practices in evaluating and interpreting ML models...

热门审阅

KV

Jun 23, 2023

Great way to get started and introduced to concepts. Project work ensure it covers all the topics taught in the course. Great way to recap and apply concepts to play.

JE

Dec 16, 2023

I thought the course had a good pace and was informative. I should have took advantage of the discussion forums more to ask some questions. Doing the project brought even more questions.

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201 - Machine Learning Foundations for Product Managers 的 225 个评论(共 234 个)

创建者 Tanya T

Dec 24, 2025

I think the course is a little but technical for product managers, I would expect more examples from the real life to be used in industry and less mathematical calculations

创建者 Amgad B

Oct 7, 2023

good intro for machine learning, you will need to search and google lots of concepts to fully understand them so its gonna take more time to finish

创建者 Candida G

Aug 20, 2023

It was a great learning. This course is perfectly curated for beginner who needs to understand the pros and cons of it.

创建者 Sharmila S

Dec 4, 2022

I thoroughly enjoyed this introductory course to ML. It was a intensive introduction to various models and techniques.

创建者 Elba A

Nov 22, 2024

well structured, ambitious content, applicability and mathematical methods must be thought through carefully

创建者 Phillip C

Jan 9, 2024

I think the information should be better organised. Meaning, it should follow a more linear progression.

创建者 Nikita F

Jan 8, 2024

The course is great. It does, however, need an update, as so much has happened over the past few years.

创建者 Reggie O

Jan 16, 2026

Solid introduction. It would have been great if we could have gotten into using Vertex AI.

创建者 Anthony P

Aug 20, 2025

Found some of the content a bit hard to follow, some more real world examples would help.

创建者 Sudeepta S

Sep 13, 2023

Well arranged course following a sequential learning path.

创建者 Astrinos

Dec 12, 2022

Very tough course. I don't think it's for beginner Level.

创建者 Juhi K

Oct 13, 2024

Awesome course - great learning of the foundations of ML

创建者 Aurélien V

Nov 21, 2023

Great course. a few more real exercise would improve it!

创建者 Dawid P

Nov 14, 2022

Very good but also very technical. Refresh your math :-)

创建者 SENTHIL K S

Dec 31, 2025

we may need more engagement for AI model assessments

创建者 Selly W

Nov 10, 2023

Well structured foundational course

创建者 BIMALENDU B

Mar 19, 2025

excellent

创建者 Abhishek A

Oct 9, 2022

创建者 Siddharth

Jan 18, 2024

I was eager to take this course to expand my knowledge of machine learning fundamentals and applications as a product manager. Overall, I found the course to be a valuable introduction to key machine learning concepts and algorithms. The instructor clearly has deep expertise in the field and I appreciated how he used real-world examples to illustrate the material. His lectures were engaging and he effectively conveyed complex topics in an accessible way. I also liked that the course provided opportunities to get hands-on experience through the final project. My main suggestion would be to consider expanding the curriculum to add more depth on supervised and unsupervised learning approaches. While I recognize the course aims for a broad overview, slightly more rigor would help differentiate it and better prepare students to apply these techniques. That said, I understand the challenges of balancing breadth and depth in a short course. The topics covered do provide a solid foundation to build upon. I particularly valued the practical guidance on evaluating and interpreting models - an area where product managers need to collaborate effectively with technical teams. To fully prepare product managers for applying machine learning, I believe the course would benefit from more in-depth coverage of supervised and unsupervised learning techniques. I posit that adding another course, or two that adds greater depth to all things Supervised, and Unsupervised learning in this course could make this course not just stand out, but also transform it to being the go-to course for anyone wanting to become an AI PM. Also, consider adding another module in the intro course to cover algorithms like support vector machines and Naive Bayes to make it more complete. Incorporating 5-6 hands-on guided projects using the methods covered would also let students get critical hands-on experience applying the concepts. With these enhancements, the course could become the definitive destination for aspiring AI PMs to build a strong foundation beyond surface-level ML literacy. That said, I appreciate the quality of instruction and see this as constructive feedback for an already valuable introductory course. Overall, I would absolutely recommend this course to anyone interested in gaining core ML literacy as a product manager. The instructor and content are excellent for an introductory survey course. I believe expanding on a few areas could make it an even more comprehensive offering and stellar resource for aspiring AI product managers. Please take my suggestions as constructive feedback to an already strong course. I appreciate the quality of instruction and look forward to learning more!

创建者 Ronya M

Feb 12, 2026

Overall, I found the course valuable and I do think it adds meaningful insight into machine learning concepts. That said, based on my own experience, I would strongly encourage anyone interested in taking it to make sure they have the prerequisite knowledge first. There is a fair amount of higher-level math and terminology that the course moves through quickly, and having that foundation already absorbed would make the learning experience much smoother

创建者 Hunter P

Oct 31, 2023

Lots of what, not enough why. Some lessons are just explanations of algorithms without examples of why or how they would be useful. I can look up these concepts anywhere, wikipedia, google. I'm taking this course to learn why something is important, not to go through motions like a machine.

创建者 Olaf K

Dec 9, 2022

A completely new experience, this course, a lot is explained in the video, but then solving a complex task without practice, where you have to repeat everything, shocked me at first. Hope you understand this english better, like me.

创建者 Aditya A

Dec 30, 2024

Was trying to do too many things in a single course. Could have done with introduction of less concepts - I am not sure how many people will remember K-means clustering 1 month after doing this course.

创建者 Shubhashis P

Oct 24, 2023

I am indifferent to just reading the slides vs going through the slides. The quiz and slides are great not the content delivery.

创建者 Jon N

Sep 22, 2023

The instructor was a bit boring. Talked a lot about equations but never showed examples of how to use them.