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DeepLearning.AI

Neural Networks and Deep Learning

In the first course of the Deep Learning Specialization, you will study the foundational concept of neural networks and deep learning. By the end, you will be familiar with the significant technological trends driving the rise of deep learning; build, train, and apply fully connected deep neural networks; implement efficient (vectorized) neural networks; identify key parameters in a neural network’s architecture; and apply deep learning to your own applications. The Deep Learning Specialization is our foundational program that will help you understand the capabilities, challenges, and consequences of deep learning and prepare you to participate in the development of leading-edge AI technology. It provides a pathway for you to gain the knowledge and skills to apply machine learning to your work, level up your technical career, and take the definitive step in the world of AI.

Status: Supervised Learning
Status: Python Programming
IntermediateCourse25 hours

Featured reviews

HK

5.0Reviewed Oct 25, 2019

This was a very intuitive approach to neural networks. It helped me get all the basic concepts right.I highly recommend this course to anyone who wants to learn basics and maths behind neural network

SK

5.0Reviewed Jul 7, 2021

Very informative course by Andrew Ng and team.Teaches everything from the basics and helps you understand difficult topics (as i thought before taking this course) such as Deep Neural Networks easily.

MH

5.0Reviewed Jun 29, 2018

Very good course to start Deep learning. But you need to have the basic idea first. I would suggest to do the Stanford Andrew Ng Machine Learning course first and then take this specialization courses

AH

5.0Reviewed Apr 29, 2020

Amazing course, the lecturer breaks makes it very simple and quizzes, assignments were very helpful to ensure your understanding of the content. Hope for future learners you provide code model-answers

AG

5.0Reviewed May 31, 2020

It's really quite an amazing course where we get to learn the mathematics behind the Neural Networks. It is great to learn such core basics which will help us further in developing our own algorithms.

AH

5.0Reviewed Jan 11, 2021

It was a great start of long deep learning journey. The concepts were explained in simple and brief way. The course is designed in excellent way, Quizzes and assignments makes this course worthy.

KX

5.0Reviewed Dec 6, 2017

Andrew explained the concepts very well and contextualized in just the right kind of real world examples, with none of the fluff that's surrounding deep learning these days. Incredibly good teaching.

PB

4.0Reviewed Aug 20, 2022

Although problems sets are too easy and over simplified, the course has good content, I learned a lot and I have a better intuition now on how NNs work. Best: - Andrew's classes.Worst:- Problem sets

AN

5.0Reviewed Jul 24, 2021

T​he notation and the description of the course materials are way more comprehensible than that of the ML course. I deeply appreciate all the efforts made so that this course could be presented to us.

BC

5.0Reviewed Dec 3, 2018

Extremely helpful review of the basics, rooted in mathematics, but not overly cumbersome. Very clear, and example coding exercises greatly improved my understanding of the importance of vectorization.

SA

5.0Reviewed Jan 24, 2021

Lot of courses teach theory and uses python in built libraries. This is the only course learners are encourage to built the algorithm from scratch to gain more understanding of things under the hood.

JP

5.0Reviewed Feb 11, 2018

I would love some pointers to additional references for each video. Also, the instructor keeps saying that the math behind backprop is hard. What about an optional video with that? Otherwise, awesome!

All reviews

Showing: 20 of 10,000

Vatsal Mehra
3.0
Reviewed Sep 14, 2017
Jonathan Chang
2.0
Reviewed Aug 20, 2017
Mageswaran D
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Reviewed Nov 9, 2017
Saad Hassan
1.0
Reviewed Apr 28, 2019
Md. Nazmul Hoq
5.0
Reviewed Jun 30, 2018
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2.0
Reviewed Dec 2, 2018
Nikolay Belokolodov
1.0
Reviewed Oct 26, 2017
Okundu Omeni
5.0
Reviewed Oct 21, 2017
Nicolás Andrés Gallinal
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Reviewed Dec 5, 2018
Stanislav Trifonov
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Reviewed Jul 7, 2018
Martin Paul
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Reviewed Aug 11, 2018
Jonathan Cohen
1.0
Reviewed Mar 24, 2019
Sundar Srinivasan
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Reviewed Nov 27, 2017
Brandon Crosbie
5.0
Reviewed Dec 4, 2018
Leon Villanueva (Leon)
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Reviewed Apr 7, 2019
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Reviewed Mar 7, 2019
A H
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Reviewed Apr 30, 2020
Xingchi Liu
5.0
Reviewed Aug 27, 2017
Sergey Gladysh
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Reviewed Jul 15, 2019
Sameerkumar_Ramakameshwara vittala
5.0
Reviewed Aug 30, 2018