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學生對 加州大学圣地亚哥分校 提供的 基于大数据的机器学习 的評價和反饋

4.6
1,527 個評分
297 條評論

課程概述

Want to make sense of the volumes of data you have collected? Need to incorporate data-driven decisions into your process? This course provides an overview of machine learning techniques to explore, analyze, and leverage data. You will be introduced to tools and algorithms you can use to create machine learning models that learn from data, and to scale those models up to big data problems. At the end of the course, you will be able to: • Design an approach to leverage data using the steps in the machine learning process. • Apply machine learning techniques to explore and prepare data for modeling. • Identify the type of machine learning problem in order to apply the appropriate set of techniques. • Construct models that learn from data using widely available open source tools. • Analyze big data problems using scalable machine learning algorithms on Spark. Software Requirements: Cloudera VM, KNIME, Spark...

熱門審閱

PR

Jul 19, 2018

Excellent course, I learned a lot about machine learning with big data, but most importantly I feel ready to take it into more complex level although I realized there is lots to learn.

BK

Mar 06, 2020

This is starting course for Machine Learning. Very well explained and after finishing this course, one will get interest in continuing and exploring further in Machine Learning field.

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76 - 基于大数据的机器学习 的 100 個評論(共 281 個)

創建者 Grissonnanche

Jan 15, 2018

Very well structured and clearly presented course! Thank you for putting this together!

創建者 Benh L S

Mar 02, 2020

Clear and concise explanations. Good examples, and good hands-on (setup issues aside).

創建者 Nur K

Jul 04, 2019

This is good courses, the explanation of the concept is easy to understand. Thank you!

創建者 Lukáš B

Jan 12, 2018

The most interesting course of all specialization. What is missing is deeper insight.

創建者 Prajwal S N

Jul 18, 2018

The best course in the specialization. ML instructor was very crisp and smiplistic.

創建者 David C

Mar 31, 2020

Good learning videos with excellent pronunciation, challenging labs... i have fun.

創建者 Apurva T

Mar 23, 2019

Very good course. Training very well provided by trainer. Very good examples used.

創建者 Juan C H

Jun 11, 2017

All the topics were explained with a lot of detail. Enjoyed and Learned a lot!!

創建者 Suraj J W

Sep 24, 2019

Thanks for craeting such nice course and helping other to learn new technology

創建者 Sabawoon S

Jan 30, 2018

Excellent content, the hands on exercise can be improved and be more detailed.

創建者 Amin O

Oct 07, 2019

Awesome!!

It would be great if more hands-on (specially spark) will be added.

創建者 MARTIN C

Oct 15, 2019

Excellent Course. I would consider changing Spark for other similar to knime

創建者 Сулейкин А

Mar 26, 2017

Very interesting cource! Thank you!

I would suggest to advance python tasks

創建者 ADITYA S

Jan 19, 2018

Good for learning the concepts and techniques of Machine Learning with Big

創建者 Darius T

Jan 01, 2018

Great course to understand Machine Learning basics and practice with Spark

創建者 Piotr B

Nov 05, 2017

This was an amazing course. Everything was very well explained. Thank you.

創建者 Juan C C C

Nov 12, 2019

Clearly explained course with practical hands-on and insightful concepts.

創建者 Hamada I M

Jul 06, 2017

very good this course special the activity on KNIME prog

thank you DR Mai

創建者 Harinarayanan P

Mar 09, 2019

Excellent course and material. It was really great learning for me.

創建者 salma R

Feb 16, 2019

J'ai vraiment apprécié ce cours bien expliquer et très pédagogique !

創建者 Sai L K

Oct 31, 2018

The Hands-On exercises are particularly challenging and interesting

創建者 Ramalingaraju G

Sep 29, 2019

great experience and learned about Machine Learning with Big Data

創建者 Lorie S

May 25, 2018

Awesome course and you will learn a lot, with great explanations.

創建者 Juan A C S

Dec 28, 2016

Excelent Introductory course to MACHINE LEARNING with Big Data.

創建者 Marcin L

Jul 25, 2017

Great experience, valuable knowledge and encouraging tests.