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学生对 University of Michigan 提供的 Introduction to Data Science in Python 的评价和反馈

4.5
27,271 个评分

课程概述

This course will introduce the learner to the basics of the python programming environment, including fundamental python programming techniques such as lambdas, reading and manipulating csv files, and the numpy library. The course will introduce data manipulation and cleaning techniques using the popular python pandas data science library and introduce the abstraction of the Series and DataFrame as the central data structures for data analysis, along with tutorials on how to use functions such as groupby, merge, and pivot tables effectively. By the end of this course, students will be able to take tabular data, clean it, manipulate it, and run basic inferential statistical analyses. This course should be taken before any of the other Applied Data Science with Python courses: Applied Plotting, Charting & Data Representation in Python, Applied Machine Learning in Python, Applied Text Mining in Python, Applied Social Network Analysis in Python....

热门审阅

TG

Apr 13, 2020

Awesome course! I haven't done any course like this. Explanations were very clear and deep, which is very helpful to learn the content. Thanks a lot to the professor and the University of Michigan.

ME

Jul 26, 2020

Quizzes were very challenging and interesting. I learned alot. The main drawback in this course is that the materials are insufficient to answer the assignments.And some questions were not so clear.

筛选依据:

5376 - Introduction to Data Science in Python 的 5400 个评论(共 5,994 个)

创建者 VARUN K

Mar 4, 2017

The course instructor could have been more elaborate with the examples. I felt there was a wide gap between the exercises and the course material.

创建者 Justin L

Dec 6, 2016

Assignments are challenging, but some questions are very vague and require lots of trial and error guesswork to get the autograder to accept them.

创建者 pouya S

Jun 29, 2018

Assignments are great to reinforce your learning. But the instructor does not cover many topics and leave you with a lot of questions unanswered.

创建者 Hanwen L

Aug 15, 2019

Please update the auto-grader such that is it compatible with current version of Jupyter notebook, very frustrating dealing compatibility issues

创建者 Hemanta B

Aug 13, 2019

This course is a nicely organized. However assignments are not completely clear. Especially assignment 4 needs more explanation and details.

创建者 Joel B

Jul 31, 2019

Subject matter was very good. Some of the assignments were not clear on instruction, and some of the Coursera functions were buggy or broken

创建者 Deleted A

Nov 5, 2018

Material delivered a bit too rapidly to effectively assimilate. Often, further external research is needed to find solutions to assignments.

创建者 Anant

Mar 27, 2019

I don't think this is a good enough course to "teach" you "data-science". All this does is give you an overview of things you need to know.

创建者 Ahmad A

Jun 24, 2018

The assignment descriptions needs to be precise (with psuedo code).And the statistics part needed a lot visualization to aid understanding.

创建者 Jordan K

May 18, 2018

The material is valuable and taught well. The lectures are impossibly fast paced (lots of pausing) and the assignments are often ambiguous.

创建者 Vusisizwe M

Dec 5, 2022

The course is great, if ambiguity and vagueness could be removed when asking questions. This would help with finishing the course on time.

创建者 Adam P

Mar 12, 2022

Assignments were more difficult than they needed to be because many of the directions were unclear. Otherwise, the class was interesting.

创建者 Vipin G

Dec 16, 2017

Great Assignments, Great learning, but requires good "prior" knowledge of Python and Pandas. This is more of a refresher course in Pandas.

创建者 Marat K

Nov 11, 2017

Much more time needs to be invested into theory of the data frames. The course is too lightweight for the heavyweight topic it's covering.

创建者 SHUVA M

Sep 3, 2020

Course materials should be scrutinized. It's like the mentor is going through a scripted page. I understood very little from this course.

创建者 Tobias T

Aug 26, 2020

Good course for the basics, but the assignments are very difficult as lectures do not cover everything which is asked in the assignments.

创建者 Greg S

Jan 4, 2018

Great Content. Course Auto-Grader was immensely frustrating. Videos aren't very helpful except to identify where to do your self study.

创建者 Sai S B

Jun 19, 2020

The course assignments are at a very good level. But, I feel the course doesn't prepare you for that. Most of the work is self-learning.

创建者 Kelsey S

Aug 17, 2018

The examples used are so small it's hard to understand how to use these skills in real-world situations if you aren't as used to Python.

创建者 Michal Z

Jan 5, 2018

There should be more Pandas API hints in lectures, it ware really hard to find optimal ways to perform operations on DataFrames I wanted

创建者 Francesco L

Mar 5, 2017

The course lessons could have been more specific and provide more explanations on many topics that are later required in the assignments

创建者 Jimi O

May 28, 2019

Lectures are interesting but coursework is challenging. It requires significant external reading and understanding to stand a chance.

创建者 Bruno C

Jul 6, 2020

The demanded exercises were way harder than the content taught. Also, the main teacher isn't didatic, he speaks in a monotonous way.

创建者 Morales J S

Jun 21, 2020

is good to make students to investigate but, in the whole course i was thinking that youtube teached me more than the course itself.

创建者 Sergey S

May 9, 2020

It is a bit messy. There are bugs and the sytem of ex submission is not really well done. There is a problem with the certification.