学生对 DeepLearning.AI 提供的 Improving Deep Neural Networks: Hyperparameter Tuning, Regularization and Optimization 的评价和反馈
课程概述
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AS
Apr 18, 2020
Very good course to give you deep insight about how to enhance your algorithm and neural network and improve its accuracy. Also teaches you Tensorflow. Highly recommend especially after the 1st course
AA
Oct 22, 2017
Assignment in week 2 could not tell the difference between 'a-=b' and 'a=a-b' and marked the former as incorrect even though they are the same and gave the same output. Other than that, a great course
6576 - Improving Deep Neural Networks: Hyperparameter Tuning, Regularization and Optimization 的 6600 个评论(共 7,283 个)
创建者 Idan H
•Feb 10, 2021
A great course!
I do feel that in order to become really good I now must apply the learned concepts myself soon.
创建者 Johannes C d M
•May 27, 2020
Very well explained, but the Tenserflow explanation is shallow for those that have less programming experience.
创建者 Dilip V
•Apr 29, 2020
This Course Helped me a lot in learning how to get best-optimized models by tuning Hypermeters.I really like it
创建者 Joshua S
•Nov 13, 2019
A good course that provided more intuition on which models to work with and how to tune parameters effectively.
创建者 Aayush A
•Aug 2, 2019
The Jupyter notebooks had a lot of mistakes which wasted a lot of my time otherwise the course content was good
创建者 Corbin C
•May 10, 2018
Good lectures, but the jupyter notebook examples are inconsistent and sometimes use deprecated Tensorflow code.
创建者 Srikanth C
•Oct 1, 2017
I particularly benefited from the explanations of dropout, batch normalization and the RMSProp/Adam optimisers.
创建者 Ayesha A
•Apr 21, 2024
Many high level concepts are not explained in details so it felt quite difficult as a newbie in Deep learning.
创建者 Arran D
•Jun 12, 2023
Despite completing the course, I feel there is much more that I could be tested on to cement my understanding.
创建者 Narendran S
•Oct 1, 2017
TensorFlow needs more time dedicated to it. I didn't completely understand the concepts behind this framework.
创建者 Arun J
•Sep 16, 2017
really loved the course material but would have loved it more if it gave more in depth tutorials on tensorflow
创建者 Hector D M P
•Sep 2, 2017
Nice and clean; with nice focus in the framework; but they also could be more in depth regarding the exercises
创建者 Crack I
•Jan 20, 2024
Great course by Andrew. The exposure and the length of what I had to learn changed the circuitry of my brain.
创建者 Samuel C
•Sep 27, 2021
Some of the programming exercises weren't as polished as part 1 of this specialization. Still great overall!
创建者 Shailesh
•Apr 3, 2020
Really helpful in terms of practical application and tricks/tuning for DNN. Also starts on TF which is bonus!
创建者 Ramanjee M
•Aug 20, 2017
Quizes as part of middle of lectures help to check the understandings. For many lectures quizzes are missing.
创建者 Pabbisetty S R
•Jul 5, 2020
explanation is very good but assignments need to be done comletely by student not like filling missing parts
创建者 Rohit G
•Mar 26, 2020
The tensorflow portions need to be updated. Otherwise it's a great module, building on the previous courses.
创建者 Ryota M
•Mar 21, 2018
-1 : Serveral bugs inside the assignments, causing 0 grades in auto grader
That said, a perfect intro to DNN.
创建者 Qihong L
•Oct 1, 2018
sometimes the teacher speaks too fast to follow, but the content itself is very good and easy to understand
创建者 Donguk L
•Nov 25, 2017
Maybe providing some video or reading resource for back propagation processes for batch norm would be good?
创建者 Snehitha D
•Jun 19, 2024
the concepts are a little complex and tricky and i hope there's a project by the end of the specialization
创建者 Mozhdeh S
•Mar 21, 2022
I needed more foundation for understanding tensorflow programming. However, I learnt a lot in this course.
创建者 Parjanya P P
•Jun 23, 2020
The answer in the last assignment was wrong, wasting a lot of my time. But otherwise the course was great.
创建者 Aaron E
•May 4, 2019
its a good intro, if not a little simplistic with the coding exercises, bring back the quizzes mid lecture