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學生對 提供的 Introduction to TensorFlow for Artificial Intelligence, Machine Learning, and Deep Learning 的評價和反饋

16,070 個評分
3,358 條評論


If you are a software developer who wants to build scalable AI-powered algorithms, you need to understand how to use the tools to build them. This course is part of the upcoming Machine Learning in Tensorflow Specialization and will teach you best practices for using TensorFlow, a popular open-source framework for machine learning. The Machine Learning course and Deep Learning Specialization from Andrew Ng teach the most important and foundational principles of Machine Learning and Deep Learning. This new TensorFlow Specialization teaches you how to use TensorFlow to implement those principles so that you can start building and applying scalable models to real-world problems. To develop a deeper understanding of how neural networks work, we recommend that you take the Deep Learning Specialization....



Good intro course, but google colab assignments need to be improved. And submitting a jupyter notebook was much more easier, why would I want to login to my google account to be a part of this course?


Great course to get started with building Convolutional Neural Networks in Keras for building Image Classifiers. This is probably the best way to get beginners into Deep Learning for Computer Vision.


51 - Introduction to TensorFlow for Artificial Intelligence, Machine Learning, and Deep Learning 的 75 個評論(共 3,378 個)

創建者 Xiaobo T


Very good illustrate some basic knowledge and practices of CNN, it is a good start for new learners

創建者 Ahsan A


it's my second Experience with Andrew Ng. I've learnt so many things from scratch in this course.

創建者 Arun K P


Good introductory courser to step into AI , ML and DL world with computer vision application

創建者 Jiaming W


Lots of practice and visualization, machine learning is friendly explained in this course.

創建者 Hanan S A


The course is very well organised. I enjoyed working on the programming exercises.

創建者 nick b


Thank you for this course. It really helped me understand different concepts.

創建者 Sergey A


The lessons are clear and easy to follow. Great basic course to start with.

創建者 Suddhaswatta M


Please add learning rate reduction in basic course.Thanks !! in advance

創建者 Frank L V


This was great. I can't think of two better presenters for this topic!

創建者 changqing_nick


I think it is pretty good to people who are not familar with keras

創建者 Abhijeet M


I really enjoyed this course and learned a lot from this course.

創建者 Lakshmi V


Good understanding of CNN by linking Andrew Ng teachings

創建者 Samarendra P


Excellent set of videos and practice assignments!

創建者 Jui W


This is a very nice introduction to Tensorflow.

創建者 Min H S


Thanks for awesome lectures.

創建者 Ahmed S


Good Course but too short!

創建者 Juan A


Another Amazing Course :)

創建者 Jun W


Brief and interesting.

創建者 akash k d


Enplaned very nicely

創建者 毛昊


excellent course

創建者 Georji G


Great content

創建者 Hadi F


Very good!

創建者 J.A. M P


The course offers a great introduction to TensorFlow methods for handling data, training models, and inferring results. Two things could be enhanced, in my opinion:

1) A better estimate of the time required to read the materials and do the exercises (the course takes less time than stated).

2) More in-depth explanations for certain parameters (although it could be argued that you should just follow the other specialisation for that).

Overall, though, a great crash-course for getting started with Tensorflow!

創建者 Hao H


I took this course after taking deep learning ai CNN course. I found this course complement the other course really well.On itself, it is a little thin on theory size, but if you have already taken the other course, then this is a great consolidation of the material.

創建者 Arkady T


It take some time to change the code and run examples from this course with TensorFlow 2.0 locally on my computer. Today TF 2.0 is state of the art and required in practice. Please rewrite code for TensorFlow 2.0