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Learner Reviews & Feedback for Building Deep Learning Models with TensorFlow by IBM

4.4
stars
844 ratings

About the Course

Deep learning is revolutionizing many fields, including computer vision, natural language processing, and robotics. In addition, Keras, a high-level neural networks API written in Python, has become an essential part of TensorFlow, making deep learning accessible and straightforward. Mastering these techniques will open many opportunities in research and industry. You will learn to create custom layers and models in Keras and integrate Keras with TensorFlow 2.x for enhanced functionality. You will develop advanced convolutional neural networks (CNNs) using Keras. You will also build transformer models for sequential data and time series using TensorFlow with Keras. The course also covers the principles of unsupervised learning in Keras and TensorFlow for model optimization and custom training loops. Finally, you will develop and train deep Q-networks (DQNs) with Keras for advanced reinforcement learning tasks. You will be able to practice the concepts learned in the hands-on labs after each lesson. A culminating final project in the last module will provide you an opportunity to apply your knowledge to build a Regression Model in Keras. This course is suitable for all aspiring AI engineers who want to learn TensorFlow and Keras. It requires some basic knowledge of Python programming and basic mathematical concepts such as gradients and matrices....

Top reviews

ZR

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Deep Learning made me feel that there is a way to build models and classify data so easily and in a skillful way. Amazing course!

MW

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This course had a best and fast pace understanding for ANN, DNN, RDM and Autoencoders with Tensorflow

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126 - 150 of 175 Reviews for Building Deep Learning Models with TensorFlow

By Simon P

Oct 17, 2020

Lots of code and theory heavy, which is not a bad thing, but there is little thought given over to the actual learning objectives. There is also no real opportunity to practice learning to use TensorFlow. There are likely better tutorials out there, which is a shame because a lot of effort has gone into this course.

By Gherbi H

Jan 17, 2020

The Course was more about the the types of neural networks and how they work than Tensorflow, except for week 1 where we had a Tensorflow introduction, I could gather a lot from the programming assignments but I think there needs to be more about the Tensorflow library in the lectures.

By Yong S

Feb 6, 2020

I found the practice notebooks of this course to be lacking due to two reasons: 1) The notebook links are broken, resulting in my not being able to complete them. 2) The notebooks do not have practice sections where we could code ourselves following the examples given.

By Jorge T

Aug 10, 2023

Nice review when you have previous knowledge. The PyTorch course was more detailed. Nowadays, Pytorch is becoming more popular than TensorFlow and the new Keras API supports it (PyTorch) as well.

I think it is time for IBM to update its syllabus.

By Marc J

Mar 23, 2024

Good basic understand. No mix ups between general understanding and coding. Much better explanations than in the other courses of this specialization. Unfortunately content is still too shallow.

By Philippe G

Mar 16, 2020

The course is good, but 1) the lab environment is not working at all.... I had to run the notebooks on google colab ! 2) The code is outdated. Tensorflow 2.x is out.

By Charles L

Jan 23, 2020

Overall good course but lectures were a bit weak on underlying math, compared to labs which made it a challenging at times to tie the two parts together.

By Gopal I

Apr 14, 2022

One of the better courses in the IBM AI certificate. The notebooks are nicely annotated and have more relevant information than the video lectures.

By Mitchell H

Aug 6, 2020

All the code is TensorFlow1, which is unfortunately completely outdated. Also no assignments or final. But good for the fundamentals of TF.

By Alistair K

Jun 11, 2020

Basic level but well explained, useful notebooks, not much on Tensorflow, more on the theory of the networks. Uses outdated Tensorflow v1

By Alex

May 27, 2020

The course is good but you have to change the codes from TF1 to TF2 since is dificult for the learner tranaslate de codes by himself

By I'm M

Apr 16, 2021

I do not consider the practical part to be exactly beginner level, but the theoretical material is very good.

By Jesus S d J

Jul 12, 2020

Labs would need to be updated to new versions of Tensorflow

The presentations were clear and concise

By jordi p c

Jun 9, 2020

There is a sense to be outdated. Not much activity in the forum, code which is not updated...

By Md S A

Feb 1, 2022

It would be better if the exams are a bit more tough.

The questions are too easy to solve.

By Benhur O J

Jan 30, 2020

Too focus in coding but not in the underlying concepts and how to use the libraries.

By Jochen G

Feb 8, 2020

Interesting view on tensor flow, but gap between labs and videos is quite big.

By Suman k s

May 19, 2020

Low explanation.

But in this short duration we can't expect more.

By Giorgio G

Jun 25, 2020

Course needs to be updated to Tensorflow 2.0 at least.

By Sanjeev G

May 10, 2022

we should have more videos and theory also..

By Chris R

Aug 15, 2022

Material excellent, cramed though.

By Kabila H

May 17, 2020

The tensorflow version is outdated

By Rafi O

Jul 12, 2020

Outdated and not in depth enough.

By Emanuel N

Feb 23, 2021

Falto mas teoria

By Bernardo A

Aug 26, 2020

No real dataset