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Learner reviews & feedback for Structuring Machine Learning Projects

4.850,143 reviews

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Featured reviews

YP

5.0Reviewed Jul 25, 2018

Very important and valuable intuitions about DNN training/optimization. It's full of really practical information while implementing my own models.DNN을 실제 적용할때 반드시 이해하고 적용해야 할 실질적 내용들로 구성된 멋진 코스 입니다!

PD

5.0Reviewed Feb 24, 2020

Generally, the course is great. This is a short course and could be combined with other courses in this series. Also, some knowledge such as data splitting has been introduced in the courses before.

NS

4.0Reviewed Oct 15, 2018

The course is very teaching in my uneducated opinion and will help m later in life, hopefully.I wish the test question had been more coherent.I enjoyed learning it, and the simulator is a great idea!

NI

5.0Reviewed Nov 10, 2017

Awesome course as always. The course teaches real world practical aspects of how to get started and navigate in the real world projects. The guidelines are actual learnings from years of experience.

ST

5.0Reviewed Sep 21, 2018

This is a must course in the entire specialization. It covers the step by step procedure to approach and solve a problem. The case studies provided are real world problems which are so much helpful.

DC

5.0Reviewed Mar 7, 2018

Going beyond the technical details, this part of the course goes into the high level view on how to direct your efforts in a ML project. Really enjoyable and useful. Thanks for making this available!

YL

5.0Reviewed Nov 28, 2017

It's a great course! This course gave me a lot of new perspectives in constructing a machine learning project. Especially, the discussion of data distribution in the train/dev/test set is fantastic.

CC

5.0Reviewed Jun 15, 2020

Useful to know what are the steps that should be taken after obtaining results. Tho there isn't much information regarding making machine learning projects here (ie. there isn't any hands on project)

SB

5.0Reviewed May 6, 2020

This course gave some very useful tips on how to start with a Machine learning project when I was struggling to do so. It also gave useful information about error analysis and data set distribution.

SV

5.0Reviewed Feb 19, 2019

This is the knowledge in which we will get from lots of experience only, but the andrew has shared in this course which might help us in future by saving a lot of time through this course experience

MG

5.0Reviewed Mar 30, 2020

It is very nice to have a very experienced deep learning practitioner showing you the "magic" of making DNN works. That is usually passed from Professor to graduate student, but is available here now.

TW

5.0Reviewed Jul 16, 2019

I am glad I took this class. There are a lot of things think about with respect to structuring your M/L project. Fortunately, it is not as mysterious as people often claim...but it is very nuanced.

All reviews

Showing: 20 of 5,749

Damian Coltzau
5.0
Reviewed Mar 8, 2018
Howard Friedman
1.0
Reviewed Oct 29, 2017
Mark Naeem
1.0
Reviewed Jan 27, 2018
sathwik matcha
2.0
Reviewed May 19, 2020
Ankit Malviya
5.0
Reviewed Nov 23, 2017
4.0
Reviewed Jun 11, 2019
Walter Gordy
5.0
Reviewed Mar 19, 2019
sai vasanth
5.0
Reviewed Feb 20, 2019
Dibyendu Bhattacharya
1.0
Reviewed Oct 3, 2017
sairohith thammana
5.0
Reviewed Sep 22, 2018
Vipin Sharma
5.0
Reviewed Dec 6, 2020
matheus girotto
5.0
Reviewed Mar 30, 2020
Anand Ramachandran
5.0
Reviewed Feb 15, 2018
David Soknacki
4.0
Reviewed Sep 13, 2020
Derek Hao Hu
5.0
Reviewed Sep 14, 2017
David Cherney
4.0
Reviewed Jul 24, 2019
D. Refaeli
3.0
Reviewed Oct 1, 2019
Marina Romanchikova
2.0
Reviewed Oct 18, 2017
Aslan Chen
2.0
Reviewed Oct 22, 2020
Nilesh Ingle
5.0
Reviewed Nov 11, 2017