学生对 DeepLearning.AI 提供的 Machine Learning in Production 的评价和反馈
课程概述
热门审阅
PK
Jan 8, 2023
Excellent course! Andrew Ng is an exceptional human being. His teaching skill are impeccable and you as a student actually are interested in what he's telling you and learn more.
EW
Nov 15, 2024
I learned many new perspective on how I can build my machine learning product and some pitfalls that could happen. It gives me fundamental on how do I design my product better.
551 - Machine Learning in Production 的 575 个评论(共 579 个)
创建者 yeison d
•Sep 13, 2021
Amazing intro course
创建者 N N M M
•Aug 3, 2025
Very helpful course
创建者 Javier P O
•Apr 8, 2022
Great introduction!
创建者 davecote
•Jan 18, 2022
light but usefull
创建者 shushanta p
•Aug 1, 2021
Excellent course
创建者 Ernesto A
•Jul 7, 2021
Ernesto Anaya
创建者 Pham N G
•Mar 30, 2025
...
创建者 Rukshar A
•Dec 12, 2022
It teaches a lot about the basics of ML in industrial production. I find there is a lack of lab work and real-world examples. The provided lab works do not go in-depth teaching the concepts discussed in the course. They seemed superficial. More graded quizzes are needed to test the pupils and make the courses more interactive.
创建者 Володимир Г
•Dec 8, 2025
The instructor is nice and explains things well. But There’s not much information. I didn’t complete two of the labs (I postponed them), but the course was still marked as completed. This same data-handling content is available in the Amazon courses, but in a much more extensive form.
创建者 Kamal
•Nov 3, 2022
The content of the course is really good and gives a great brief about MLOps. However, there are very few lab exercises and all of them are ungraded. Moreover, all the lab exercises are in Jupyter Notebook. This is still a good introductory course to MLOps
创建者 Diego L
•Jun 9, 2021
It is really a nice conversation with Andrew Ng over some problems that you face when you try to put model on production, define projects and manage it. But, the frameworks that he proposes are totally general and this course has technical debts.
创建者 jitao f
•Aug 6, 2022
I have worked in AI powered healthcare imaging industry for some years. Most of concept mentioned are our daily routaine. It is good to catch them up with constructed courses but I was expecting more juciy.
创建者 Kenan M
•Mar 11, 2022
Consice and Vocational , especial to those working on unstructured data. I enjoyed it. Thanks
创建者 Grischa E
•Apr 16, 2025
Prof. Ng is great as always, but the course is too shallow and the assessments too simple.
创建者 Prabhanjan J
•May 16, 2023
Weeks 2 and 3 were too much into theory. There wasn't much practice and application.
创建者 Olivia W
•Oct 21, 2023
1) too shallow. 2) too many repeating content. Overall I don't feel very helpful
创建者 diego p
•Jul 20, 2021
Much more a high level course respect to what i expected
创建者 Kiran R
•Sep 25, 2021
very boring and should not be part of specialization
创建者 محمد ا
•May 19, 2023
the course was full of videos without practice
创建者 Leandro K d O
•Jun 13, 2021
I wish we had more practical exercises
创建者 enrico s
•Jan 2, 2025
too high level and really basic
创建者 SRIKANTH M
•Sep 7, 2021
its very good experience
创建者 Gal H
•May 6, 2024
tensorflow..
创建者 Tman
•Apr 4, 2023
Well, I am a big fan of Andrew Ng, his initial ML course is what kickstarted my career change from a computer scientist to an established data scientist, I quite liked the Deep Learning Specalization, but this course is absolutely not what I hoped it would be. Explaining what a confusion matrix is in an MLOps course? Explaining precision, recall and F1 score? Come on. That is not content I want to hear about when paying for an MLOps course. Data augmentation and feature engineering? Also, not MLOps topics. A lot of important topics are briefly discussed, but not in detail. Quite a bit of content is rehashed from the Deep Learning Specalization. Good content, but this course is not the right place for that.
创建者 Matthieu G
•Feb 28, 2024
I was quite disappointed, as it feel that this 1 week course could have been summarised in a 15min article: there are a lot of generalities, repetitions... and no hands-on assignments where you are effectively expected to code something (which is, to my point, fundamental to get something of ML mooc).