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學生對 密歇根大学 提供的 Applied Machine Learning in Python 的評價和反饋

4.6
8,259 個評分

課程概述

This course will introduce the learner to applied machine learning, focusing more on the techniques and methods than on the statistics behind these methods. The course will start with a discussion of how machine learning is different than descriptive statistics, and introduce the scikit learn toolkit through a tutorial. The issue of dimensionality of data will be discussed, and the task of clustering data, as well as evaluating those clusters, will be tackled. Supervised approaches for creating predictive models will be described, and learners will be able to apply the scikit learn predictive modelling methods while understanding process issues related to data generalizability (e.g. cross validation, overfitting). The course will end with a look at more advanced techniques, such as building ensembles, and practical limitations of predictive models. By the end of this course, students will be able to identify the difference between a supervised (classification) and unsupervised (clustering) technique, identify which technique they need to apply for a particular dataset and need, engineer features to meet that need, and write python code to carry out an analysis. This course should be taken after Introduction to Data Science in Python and Applied Plotting, Charting & Data Representation in Python and before Applied Text Mining in Python and Applied Social Analysis in Python....

熱門審閱

FL

2017年10月13日

Very well structured course, and very interesting too! Has made me want to pursue a career in machine learning. I originally just wanted to learn to program, without true goal, now I have one thanks!!

OA

2017年9月8日

This course is ideally designed for understanding, which tools you can use to do machine learning tasks in python. However, for deep understanding ML algorithms you should take more math based courses

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51 - Applied Machine Learning in Python 的 75 個評論(共 1,502 個)

創建者 Omid

2018年9月22日

1- very slow paced lectures

2- very basic and elementary examples

To sum up, it is boring and not useful for practical application.

創建者 Sandeep S

2019年11月24日

I am not happy with the course material and the way teachers are teaching.

創建者 Abbas S

2020年9月10日

This is not a good course for beginners.

創建者 kapish s

2019年5月28日

no teacher intraction

創建者 Vaibhav S

2018年6月26日

This course provides a brief introduction to many of the vast and dense ML concepts, like Regression, Classification, Clustering, Neural Networks and many more.I took a course by Prof. Andrew ng on Coursera before taking this course. And due to this reason, i was somewhat familiar with the concepts that are being taught in this video.If you are a beginner, i personally recommend you to take Prof. Ng's course on Machine Learning, and then switch to this part of specialisation, by completing the 1st specialisation (2nd is optional but if you are sort of artistic person, and have a habit of visualising things then opt this too). It is best for those who just want a quick recap of some topic.

創建者 Athira C

2019年1月30日

The course is so informative and interseting.

創建者 Pawan M

2020年5月4日

This is an excellent course. If you will complete all exercises making sure you complete all questions in each exercise and score almost 100% in each quiz then you will get full value out of course. Deadlines can be reset any time so you can resume courses anytime and you can take your own time as per your schedule. The programming exercises can be solved only when you get the basics right. Else, you will need to revisit the course material.

創建者 Haim S R

2019年6月27日

Gives practical experience with ML in Python.

Hides the math under the hood :(

However, this course is not enough to become a real data scientist. One needs much more exercises.

創建者 Krishna B S

2019年3月6日

A very comprehensive and hands-on course for learning applied Machine Learning. Many thanks for this course.

創建者 Ankur P

2019年3月30日

Unsupervised learning was missing. The codes written in the lectures were not explained clearly. Some topics looked unimportant.

創建者 Katherine F

2020年10月28日

This is an incredibly dry course from the University of Michigan. In typical academic fashion, it churns out a bunch of lectures, expects you to remember the content, then throws you straight into some quite complicated problems. Half the time, these problems don't even work and you have to dive into the forums to find out how to correct mistakes that the content providers have failed to correct themselves, even several years down the line. There are iPython notebooks you can use to follow along with the lectures, but really they could do with useful information and explanation embedded within them, which is one of the main strengths of iPython notebooks and has been sorely underutilised here. If the course material were presented in a more interactive and engaging manner, the learner might be more motivated and engaged when solving assignment problems. As it is, unless you have prior knowledge or experience within the field, or a mountain load of free time, it's more an education in frustration than machine learning.

創建者 Justin F

2017年9月26日

The quality of this course in the series is a far cry from that of module 1 and 2, which is a shame because this is the one that I was really looking forward to. The professor does not seem comfortable and uses a lot of extra words in his lectures which can make them confusing and rambling. Many questions on the quizzes and assignments are not covered or well explained by the material. Many assignment questions have to be explained by teaching staff on the forums because the task is not clear.

創建者 Martin M

2020年8月10日

Week 1 was great...and then it all went downhill.

Too much material cramped into 4 weeks. The lectures are monotonous and rarely go in detail and provide real world cases. yeah, the data is from the real world but just punching code without explaining it is not very instructive.

Oh yeah, and lets not forget the last time the course has been updated was in 2017 and none of the bugs that keep popping up with the code and the autograder have been fixed.

創建者 ALONSO A R P D A

2020年7月11日

Sorry by bad writting, english is my second language, but:

Again, the videos and suggested reads are not sufficient to learn all that is needed in assingments or in real life application. Doing others courses in coursera like courses offered offered by University of Macquaire turn more clear that this course is so hard to learn because there's less things that what is actually the subject

創建者 Gregory O

2017年9月25日

I was excited going into this course because the others in the series were taught well and I had learned a lot. Unfortunately, this course greatly disappointed. The lectures were dull, included a lot of mistakes, and did not cover most of what was expected during the assignments. All in all, this course was a waste of time versus just learning scikit-learn on your own.

創建者 Shubham N

2020年8月23日

Not happy & satisfied with the assignments. Whenever I tried to submit, always error occurs, mostly files does not exist. Went to forums though, but files are kept elsewhere, especially for Assignment 4. Had to specially download the file and uploaded in the project directory just to work. Need to have proper file arrangements before starting the assignment.

創建者 Nahuel V

2020年8月3日

I am not a big fan of this course. The assignments were too easy up to the last one that was too hard. There is no moderation in the forums, you can ask a question and nobody will answer.

創建者 Subhadeep B

2020年8月20日

The instructor makes me sleepy. The autograder runs outdated versions of many packages and was last updated in 2018. Although the mentors are always active in the discussions forums.

創建者 Thomas M S

2018年2月9日

I do not have the impression after this course that I have reached a level of familiarity that I will continue using the content of this course. Disappointing.

創建者 Dror L

2017年11月25日

great topic, poorly presented. material not well divided among weeks. lots of repetitions. lack of hands on practice until the very last task.

創建者 Kale H

2020年5月31日

Autograder is poor and professor is hard to listen to. You're better to just do a YouTube tutorial, like Codebasics.

創建者 Rakesh D

2019年11月10日

lectures are boring, not updated but yes i learned something, but its not up to the margin

創建者 Stephen O

2020年8月25日

Desperately in need of an update as much of the code is no longer up to date/broken.

創建者 Keshav B

2020年1月2日

Instructor tell the thing which are far beyond from asignments and quizes

創建者 Mohamed R

2020年3月27日

one of the worst courses i ever had