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学生对 加州大学圣地亚哥分校 提供的 基于大数据的机器学习 的评价和反馈

4.6
2,392 个评分

课程概述

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...

热门审阅

JG

Oct 24, 2020

Excellent course. It teaches the basics with a great method and with practical exercises, involving real data. The sctructure is clear and it covers a good amount of topics. Well done San Diego!

PR

Jul 18, 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.

筛选依据:

476 - 基于大数据的机器学习 的 488 个评论(共 488 个)

创建者 Nwogbo b C

Jun 12, 2020

The course was thrilling with a lot of hands-on activities..but the downside was that there were errors especially in the second and last hands-on and those bugs are so annoying giving the fact that some of us are still new in the big data world and have no clue to solving such problems

创建者 Anirudha A M

Aug 20, 2020

It should have been made clear that good experience in Spark is required for this course. I struggled with most of the commands and had to watch, re-watch most Spark related videos, google meanings of commands etc. The course experience was not very pleasant. Nevertheless, thank you.

创建者 Erik P

Oct 17, 2017

The virtual machine in this course no longer is functioning. PySpark update seems to not play nice. I think the content also needs some updating for more modern machine learning techniques.. like using big data with deep learning systems like tensor flow or PyTorch.

创建者 Manfred K

Jul 14, 2017

I expected course with more in-depth and more difficult examples, I learned about a few new concepts, most methods were repetitions for me.

创建者 Alfonso A G

Dec 3, 2016

Machine learning is too simplified and spark part is not even explained, also very little relation of all course with Big Data.

创建者 LEONARDO R

Jun 9, 2020

Considero que está algo desactualizado el curso y las herramientas de aprendizaje. Tenía mayor expectativa

创建者 Michal Š

Nov 18, 2016

Almost a useless course - ML overview using KNIME which gives no insight whatsoever.

创建者 Ruijia W

Nov 25, 2017

Too basic

创建者 Beatrice C

Dec 14, 2016

The course content is very poorly explained. The quiz questions don't really test what was taught in the lectures, and the assignments are just copying and pasting things. I feel like I still have a very poor understanding of what was supposedly covered in the course. I cannot generalise or apply the 'learned' information or skills to other topics or researches because I didn't actually understand the core concepts or how to use the programs.

创建者 William R

Nov 19, 2016

This is another course in UCSD's "Big Data" introductory course. The material is not pertinent to a specialty on big data technologies. Further the course does not increase one's knowledge of Machine Learning in any way that justifies spending the time in the course.

创建者 Tim C

Sep 3, 2021

T​he VM software provided is now out of date. The use of a clunky GUI-based tool (KNIME) seems like a waste of time--not likely to be useful in real applications.

创建者 Kamalesh P

Oct 23, 2019

Regression is least bothered, less hands on

创建者 Martin D

Oct 16, 2020

cloudera vm doesnt work well