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Learner Reviews & Feedback for Applied AI with DeepLearning by IBM

4.4
stars
1,109 ratings

About the Course

>>> By enrolling in this course you agree to the End User License Agreement as set out in the FAQ. Once enrolled you can access the license in the Resources area <<< This course, Applied Artificial Intelligence with DeepLearning, is part of the IBM Advanced Data Science Certificate which IBM is currently creating and gives you easy access to the invaluable insights into Deep Learning models used by experts in Natural Language Processing, Computer Vision, Time Series Analysis, and many other disciplines. We’ll learn about the fundamentals of Linear Algebra and Neural Networks. Then we introduce the most popular DeepLearning Frameworks like Keras, TensorFlow, PyTorch, DeepLearning4J and Apache SystemML. Keras and TensorFlow are making up the greatest portion of this course. We learn about Anomaly Detection, Time Series Forecasting, Image Recognition and Natural Language Processing by building up models using Keras on real-life examples from IoT (Internet of Things), Financial Marked Data, Literature or Image Databases. Finally, we learn how to scale those artificial brains using Kubernetes, Apache Spark and GPUs. IMPORTANT: THIS COURSE ALONE IS NOT SUFFICIENT TO OBTAIN THE "IBM Watson IoT Certified Data Scientist certificate". You need to take three other courses where two of them are currently built. The Specialization will be ready late spring, early summer 2018 Using these approaches, no matter what your skill levels in topics you would like to master, you can change your thinking and change your life. If you’re already an expert, this peep under the mental hood will give your ideas for turbocharging successful creation and deployment of DeepLearning models. If you’re struggling, you’ll see a structured treasure trove of practical techniques that walk you through what you need to do to get on track. If you’ve ever wanted to become better at anything, this course will help serve as your guide. Prerequisites: Some coding skills are necessary. Preferably python, but any other programming language will do fine. Also some basic understanding of math (linear algebra) is a plus, but we will cover that part in the first week as well. If you choose to take this course and earn the Coursera course certificate, you will also earn an IBM digital badge. To find out more about IBM digital badges follow the link ibm.biz/badging....

Top reviews

SS

Oct 23, 2020

I learned many things from this course. However, I think in some points it could have been instructed much better. But all in all, it is a very worthy course for the price offered. Thanks a lot!

RC

Apr 25, 2018

It was really great learning with coursera and I loved the course. The way faculty teaches here is just awesome as they are very much clear and helped a lot while learning this coursea

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126 - 150 of 197 Reviews for Applied AI with DeepLearning

By saurabh

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Mar 12, 2018

One of the great course from IBM Watson .Really one should take this one if intrested in Deep Learning.

By Thomas H A B

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Mar 21, 2020

This is a good course with good introductory material that covers a broad range of topics.

By Chandan C

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Feb 9, 2020

Exercises let me explore the topic further which was very helpful for my learning

By Mrutyunjaya S Y

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Jul 18, 2020

This course gives you a overall concepts of AI with DeepLearning ...Nice course

By Sourastra N

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Jul 25, 2019

The course needs to allow the students to build their own model.

By Dmitry G

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Jul 19, 2018

Concise intro to much needed big data machine learning solutions

By Joe-Kai T

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Apr 19, 2021

Great course for learning Deep Learning tools and techniques!

By Victor O

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Jan 9, 2019

I think we need in this module more pratical assignments.

By PRASHANT K R

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Jun 7, 2018

very nice course it gives more insight to deep learning.

By Jair M

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May 22, 2019

Some videos are missing, but anyway is a great course

By Amalka W

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Dec 29, 2019

Course covers scalerble deep learning concepts

By Ruan L D

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May 12, 2021

Sometimes great, some lectures not too good.

By Andrei O

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Sep 7, 2018

Part with DeepLearning4J is not very good...

By Deleted A

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Jul 30, 2019

Really Helpful course for AI Enthusiasts

By Mobassir H

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Apr 22, 2020

pytorch instructor was the best <3

By Jaime A L

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May 6, 2021

One of the best courses ive taken

By Valerio N

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Mar 27, 2019

Very Complete course.

By Aarti Y

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Apr 9, 2018

It was nice

By Deleted A

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Aug 26, 2018

n/a

By Pierre-Matthieu P

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Nov 30, 2019

I was pretty disppointed overall.

Pros : we see many types of tools and get to use some of them in the programming assignments. I feel like I now have a general knowledge of the field. I particularly liked the aspects of scaling and deploying models in production.

Cons : This honestly feels more like a rough draft than a finished and polished course. I would have liked a consolidated overview of all these tools, their pros and cons, etc. Some tools and techniques were explained in literaly 15 min(!) and in some cases simply walked through a tutorial from the tool's website (!!). A programming assignment was broken through not being updated for more recent spark versions. Some videos mentioned a non-existent programming assignment (I assume they were reused from an internal IBM training session), etc. The comparison with say Andrew Ng's course on ML is cruel.

By Appan P

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Jun 7, 2020

Even though this course covers quite a bit of breath - in terms of implementation frameworks, there is scope of improving the presentation material. It will help a lot if the neural network models and the data transformations are explained using pictures.

Also, the one of the videos in the sequence of videos on LSTM for time-series forecasting (week3) talks about comparing performance of MSE and MAE but I could not find any such video on performance comparison.

Also, the assignments are quite simple and wish they had more steps for the student to "fill-up".

There is not much info on deploying the model and online evaluation of its performance. At least one video on how to do it in IBM data cloud will be helpful.

By Ricardo S

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Apr 6, 2023

A very good course with obsolete libraries.

The content is excellent, but I had troubles to could run some of the code locally (because I had a different set up/libraries installed locally).

Some of the videos use python 2, which is even no longer available in the IBM lab.

Also the amount of usage time provided by IBM in its lab it is not enough to explore what is going.

Sometimes it is difficult to follow the mapping between the code and the mathematics that are behind it.

I wish IBM would make an updated version of this course.

By Jakob S

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Mar 26, 2020

The course covers some very interesting and important concepts, however on a very low level. The reason for this might simply be the lack of time; one cannot properly cover methods for AI image processing, NLP, etc. in such limited space. I also had mixed feelings about the exercises: It is very nice to see applications of the tools discussed in the lectures, but unfortunately the exercises are so simple that they can be easily finished without really understanding the code.

By Manas S

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Jun 19, 2020

The course instructors are very experienced and knowledgeable but the teaching part has not been done very well. The assignments were not up to the mark, and an attempt to included too many topics in a very concise format was made. Some topics like Feed-forward NN in Keras were covered very well but most other things were a disappointment.

By Jose L M G

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Apr 1, 2019

Lo hago, el curso es muy bueno en cuanto al uso de la plataforma watson, pero falla en explicar los fundamentos principales con animaciones, ejemplo, el curso de pytorch de udacity enseña eso muy bien. En lo demas esta bien, pero al no contar con elementos visuales de ayuda en laclase de LSTM se hace tediosa.