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Learner Reviews & Feedback for Neural Networks and Deep Learning by DeepLearning.AI

4.9
stars
122,134 ratings

About the Course

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....

Top reviews

L

Apr 6, 2019

A bit easy (python wise) but maybe that's just a reflection of personal experience / practice. The contest is easy to digest (week to week) and the intuitions are well thought of in their explanation.

XL

Aug 26, 2017

This is a very good course for people who want to get started with neural networks. Andrew did a great job explaining the math behind the scenes. Assignments are well-designed too. Highly recommended.

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5426 - 5450 of 10,000 Reviews for Neural Networks and Deep Learning

By Fatemeh S

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Aug 10, 2022

It was very useful for me, especially the homework part, but the quality of the video itself was low, especially the information he wrote on the board.

By Muhammad W M

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Dec 19, 2021

Great beginner's course for people who are interested in deep learning and want to learn neural networks. Great programming exercises in python as well

By Matej T

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Sep 29, 2021

A high quality course that gives you a solid understanding of computations required to implement DNN. Labs are thoughtfully designed as well. Good job!

By Mahendra B

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Jul 26, 2021

This is a great course. Clearly explains the fundamentals and the programming assignments are greatly organized in validating and applying the theories

By Miron F

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Jun 18, 2021

gave well explained background information and really gave me the feeling of deeply understanding, what is happening behind the scenes of deep learning

By Larry M

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Dec 28, 2020

Excellent course. It is well organized and took me through a logical sequence of steps towards understanding neural networks and deep learning networks

By George d V C N

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Dec 25, 2020

A great intro to deep learning, from neural networks to more in deep subjects with a lot of details. Simple and deep, Andrew is a really big professor.

By Guglielmo F

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Nov 24, 2020

I find it really clear and it introduces you to the practical side of deep learning, which is exactly what I was searching being expert of Mathematics.

By Alberto P

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Nov 5, 2020

I have read several papers trying to understand back propagation. Finally could understand the concept in this course, and Andrew made it seem so easy.

By Ebuka O

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Oct 11, 2020

Very clear and easy to follow. Gives the fundamentals of understanding neural networks. A lot of the abstract topics and inner workings are discussed.

By Mayank S

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Oct 8, 2020

Awesome course.

Forward & backward propagation were taught so clearly that i have gained the confidence to implement my own neural network from scratch.

By Flavia G

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Sep 10, 2020

I really liked it, he addressed all the topics deeply and I learned a lot, the explanations were step by step and every week it became more interesting

By DING M

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Aug 18, 2020

very comprehensive and useful course to start on deep learning. The coding assignments are really well designed and helpful as well. Highly recommended

By Vikrant T

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Jul 6, 2020

The course is very structured and systematically defined for the learners. Assignments are very helpful to solidify the concepts. Andrew Ng is amazing.

By Yağmur Ç A

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Jun 24, 2020

This was so useful to realize that I haven't exactly understood the base logic and the calculations between matrix etc. Thanks for this amazing course!

By Ani M

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Jun 23, 2020

Absolutely loved this course. Fantastically taught, even though it was a fairly complex topic. Assignments were incredibly structured and designed too!

By Sivaram T

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Jun 23, 2020

I gain basic knowledge of neural nets and deep learning through this course. Thanks to Andrew Ng, who made this course as simple and clear as possible.

By Jorge M

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Jun 1, 2020

Great course to learn how neural networks are build from scratch and to get a sense about the math behind them. It's REALLY worth it! Thanks Andrew Ng.

By Sandeep G

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May 11, 2020

The course is good. I had completed Machine Learning from Andrew last year and this course had been a refresher and continuation from the previous one.

By DR. S S

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Apr 30, 2020

really i learnt a lot. actually i am new to neuarl networks. now i have a very good idea. As a VLSI designer , now i planned to merge the NN with FPGA.

By Joaquim I M

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Apr 28, 2020

One of the best courses to get started on deep learning. Coolest Instructor, Professor Andrew's tone is reassuring and motivating to continue learning.

By Naveen K L

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Apr 13, 2020

Great learning experience Prof. Andrew Ng, Wonderful learning. every minute concept is much clear now for me. Thank u Coursera, Thank u Prof. Andrew Ng

By Salma R

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Apr 12, 2020

The learning process is very gradual in a way that I easily understood every part in the course, looking forward to seeing the next courses. Thank you!

By Lei Y

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Mar 24, 2020

Extraordinary course! Lectures are very clear and hands-on assignments are extremely helpful! Thanks Dr. Ng and all people who put the course together.

By Digvijay S

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Mar 14, 2020

A must have course in case you are starting as a beginner. The course focuses on explaining the ML concepts instead of simply using standard libraries.