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學生對 deeplearning.ai 提供的 序列模型 的評價和反饋

4.8
27,689 個評分
3,306 條評論

課程概述

In the fifth course of the Deep Learning Specialization, you will become familiar with sequence models and their exciting applications such as speech recognition, music synthesis, chatbots, machine translation, natural language processing (NLP), and more. By the end, you will be able to build and train Recurrent Neural Networks (RNNs) and commonly-used variants such as GRUs and LSTMs; apply RNNs to Character-level Language Modeling; gain experience with natural language processing and Word Embeddings; and use HuggingFace tokenizers and transformer models to solve different NLP tasks such as NER and Question Answering. The Deep Learning Specialization is a 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 take the definitive step in the world of AI by helping you gain the knowledge and skills to level up your career....

熱門審閱

AM

2019年6月30日

The course is very good and has taught me the all the important concepts required to build a sequence model. The assignments are also very neatly and precisely designed for the real world application.

WK

2018年3月13日

I was really happy because I could learn deep learning from Andrew Ng.\n\nThe lectures were fantastic and amazing.\n\nI was able to catch really important concepts of sequence models.\n\nThanks a lot!

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3201 - 序列模型 的 3225 個評論(共 3,309 個)

創建者 Anmol D

2021年3月21日

Theory explained in a better way, but practicals could have been more involved and better.

創建者 Sidharth S

2018年12月23日

Really Nice course. Could have been more fun if Keras and it's functioning had more focus.

創建者 Uttam R

2018年3月26日

Course is got but grader compilations are horrible spent more time on them than the course

創建者 Iván G

2019年3月13日

Not as good as structured in explanation nor in programming assigments as the last ones.

創建者 mohsin j

2018年6月7日

This is only good enough, not good course. All previous ones were 5 stars, definitely!

創建者 jinwei z

2022年2月1日

the lab and programming is not as intuitive as the first two course in the specilism.

創建者 Thomas P

2020年4月9日

Overall a great class. I had some trouble understanding the programming assignments.

創建者 Archana A

2019年10月7日

This felt the the least prepared and organized course of the series, unfortunately.

創建者 Sébastien C

2020年8月18日

Good theoretical overview - project just require you to fill in lines of code

創建者 Samit H

2020年8月18日

I found this course boring and also too many assignments in a single week.

創建者 Tushar B

2018年6月12日

Issues with assignments. Took more than 4 hours to figure out the problem.

創建者 Saeif A

2020年1月3日

This was the least clear course among the others. The others were great!

創建者 Ragav S

2019年9月18日

Would like to learn a bit on how back-prop works when using attention.

創建者 Gaetan J d B

2019年6月17日

fairly more complex and deeper as previous courses. Nice ex. however.

創建者 Yun W

2019年4月6日

I feel this course is not as carefully designed as previous courses

創建者 mayukh m

2020年4月16日

Trigger word detection - v1.ipynb bug is annoying. Course is good.

創建者 yuichi k

2020年7月27日

ほぼ英語、プログラムの課題の問題を解決するのが非常に大変だった。bugも多いのでこなすのは苦労した。ビデオは相変わらず素晴らしい

創建者 Prateek S

2020年4月22日

Good Course but lectures and assignments could have been better.

創建者 bernd e

2018年3月10日

Should be five weeks instead of three. Dive deeper into Details

創建者 Rohan L

2021年11月15日

lecture videos were good but in assignments let us code more.

創建者 Ar-Em J L

2019年10月30日

One of the weaker courses in the specialization. Felt rushed.

創建者 Danilo G F R

2018年2月5日

Assigments too complicate without a necessary guide and help.

創建者 Morgan H

2020年11月15日

Less clear instruction than other courses in specialization

創建者 André T D S

2018年10月1日

Bugs in the programming assignments grading kills the flow

創建者 Sri R

2020年12月7日

This course is not satisfactory than the previous courses