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学生对 Google 云端平台 提供的 Launching into Machine Learning 的评价和反馈

4.6
3,750 个评分
433 条评论

课程概述

Starting from a history of machine learning, we discuss why neural networks today perform so well in a variety of data science problems. We then discuss how to set up a supervised learning problem and find a good solution using gradient descent. This involves creating datasets that permit generalization; we talk about methods of doing so in a repeatable way that supports experimentation. Course Objectives: Identify why deep learning is currently popular Optimize and evaluate models using loss functions and performance metrics Mitigate common problems that arise in machine learning Create repeatable and scalable training, evaluation, and test datasets...

热门审阅

OD

May 31, 2020

Amazing course. For a beginner like me, it was a shot in the arm. Excellent presentation very lively and engaging. Hope to see the instructor soon in a another course. Thanks so much. I learned a lot.

PT

Dec 02, 2018

This is an awesome module. It will open up so much inside story of ML process which is core of the topic with such a simplicity. It greatly increases my interest into this topic and this course :)

筛选依据:

426 - Launching into Machine Learning 的 432 个评论(共 432 个)

创建者 Arman A

Apr 11, 2019

Pros: Tensorflow is an excellent framework for deep learning

Cons :

1- The way this material is designed is 10 X SHIT

2- Either teach properly or don't teach at all.

创建者 Praveen K M

Feb 17, 2019

I'm not able to access the video lectures even though I purchased and completed this course 6 months back

创建者 Diretnan D

Nov 05, 2018

Too much scary information provided at once combined with the mindbending sql queries and data parsing

创建者 Ehsan F

Nov 13, 2018

This is the most superficial course I have ever taken. I just waisted my time.

创建者 Chi S S

Sep 02, 2018

Did not learn much! Poorly instructed courses.

创建者 Karim E

Aug 08, 2018

not well structured and lack handouts

创建者 sasidhar m

Jul 16, 2018

No hands on learning.