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学生对 DeepLearning.AI 提供的 Structuring Machine Learning Projects 的评价和反馈

4.8
50,128 个评分

课程概述

In the third course of the Deep Learning Specialization, you will learn how to build a successful machine learning project and get to practice decision-making as a machine learning project leader. By the end, you will be able to diagnose errors in a machine learning system; prioritize strategies for reducing errors; understand complex ML settings, such as mismatched training/test sets, and comparing to and/or surpassing human-level performance; and apply end-to-end learning, transfer learning, and multi-task learning. This is also a standalone course for learners who have basic machine learning knowledge. This course draws on Andrew Ng’s experience building and shipping many deep learning products. If you aspire to become a technical leader who can set the direction for an AI team, this course provides the "industry experience" that you might otherwise get only after years of ML work experience. 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....

热门审阅

YP

Jul 25, 2018

Very important and valuable intuitions about DNN training/optimization. It's full of really practical information while implementing my own models.DNN을 실제 적용할때 반드시 이해하고 적용해야 할 실질적 내용들로 구성된 멋진 코스 입니다!

WG

Mar 18, 2019

Though it might not seem imminently useful, the course notes I've referred back to the most come from this class. This course is could be summarized as a machine learning master giving useful advice.

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1076 - Structuring Machine Learning Projects 的 1100 个评论(共 5,746 个)

创建者 Armaan B

Aug 17, 2019

Wish I'd done this coarse 2 years ago when we started working on our own ML problems. It's extremely insightful. Will certainly revisit again.

创建者 Sumandeep B

Dec 17, 2017

Very good intuitive insights into designing the best suited DL solution as well as making the most out of data and improve system performance.

创建者 Jingbo L

Nov 20, 2017

It is very helpful to have a big picture of where the project goes, and how to make a good use of time to make a bigger impact on the project.

创建者 Cameron D K

Nov 18, 2017

The material in this course is very important. It is not found in books or easily found on the Internet. Very valuable and highly recommended.

创建者 Adarsh

Nov 8, 2020

Really great course for getting to know thee errors in deep learning and how to deal with them. Good explaination of Train , dev , test sets.

创建者 Tarun S

May 23, 2020

A well organized and structured course for anyone who wants to optimize the performance of their model and do the error analysis efficiently.

创建者 Виктор В К

May 15, 2020

Очень интересный курс. Много узнал о стратегиях развития проектов с использованием нейронной сети. Спасибо отличному преподавателю Andrew Ng.

创建者 Pree R

Feb 15, 2020

great content and fantastic way to practically learn various aspects of a real-time ML project. Appreciate the great instructor & lectures!!!

创建者 Max A

Jan 2, 2020

Despite working on ML projects for two years now, found a lot of insights in this course.

Thank you all for making these incredible materials.

创建者 Krishna B

Mar 12, 2018

Very good class. There was a lot of practical knowledge in terms of fitting models and setting up a workflow that are hard to find elsewhere.

创建者 Shabie I

Feb 10, 2018

Some very sensible advice given in the lecture about how to properly evaluate the ML models though at times the lectures felt a bit too long.

创建者 Ahmed M K

Apr 15, 2021

The case studies were really challenging and helped me a lot to understand and realize how real decisions are being made with such projects.

创建者 Gaurav V

Jun 11, 2020

Very Productive Skills were taught which helped me very much to reduce my time and effort on the model and come up with maximum productivity

创建者 Di C

Mar 27, 2020

Great course for strategic part in ML projects. The project-based simulator is a good way for exercising the ideas learned in the lectures!

创建者 Yashveer S

Mar 15, 2020

I enjoyed this course the most thus far because it related practical experience in the real world, which I currently do as a data scientist.

创建者 謝其宏

Jun 12, 2018

I know that's really hard to put code section here. But that's necessary for giving example to explain how to put all the knowledge together

创建者 Keval N D

Jan 16, 2018

An excellent course. This course has some valuable insights on how to organize and systematically move forward in machine learning projects.

创建者 Julian F V

Oct 27, 2017

Excellent approach in how to solve difficult questions about, wich path to take, related to improve the deep learning models, just excelent!

创建者 Duncan M

Sep 7, 2017

Really valuable insights into how to make progress and *think* about machine learning projects, and taught in an engaging and practical way.

创建者 Laurent J

Aug 22, 2017

This course is quite unique in its content and is of great help to guide you in the plethora of options that Deep Learning algorithms offer.

创建者 Kamran K

Apr 11, 2021

I would prefer to be the student of Sir Andrew Ng.

I salute Sir Andrew for encouraging me to follow him till to complete the specialization.

创建者 richa k

Oct 23, 2020

This course is worth taking. it covers advance level though basic topics that helps you deal with machine learning projects in smarter way.

创建者 Deepak P

Jul 10, 2020

Unique material as claimed, provides an opportunity to practice different decision making skills that are common in a ML practioneers life.

创建者 Yu L

Apr 20, 2020

valuable insight on how to build a machine learning model, most of the tricks are omitted in a college course but it is useful in practice.

创建者 Victor Y

Feb 14, 2020

Excellent course on learning how to plan for different stage of a Deep Learning project and common potential issues people would encounter.