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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
27,240 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

KL

Mar 11, 2018

A very nice introduction to libraries/skills used by data scientists. The auto-grader was extremely annoying though. Also, I felt that some of the questions on the assignments were a bit ambiguous.

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:

1926 - Introduction to Data Science in Python 的 1950 个评论(共 5,986 个)

创建者 Siddartha Y L

May 3, 2020

This course is very helpful for me, I learn lot of things using python.

创建者 Servet D

Mar 24, 2020

I gained perspective on the solution of real-life problems with python.

创建者 Pranav I

Jan 18, 2020

Highest learning potential amongst all the Coursera courses I have done

创建者 Min L

Dec 10, 2018

Good exercise, very practical course, teach and self learning combined.

创建者 Harish S

Jun 15, 2018

A great course to learn data cleaning and working with large data sets.

创建者 Deep P

Jan 29, 2018

Great material to get introduced to world of data science using Python!

创建者 Sebastian E G

Feb 23, 2017

Challenging assignments, clear and concise explanations, learned a ton!

创建者 Peter P

Dec 12, 2022

Very useful information and Assignments, a great way to learn python

创建者 Duong A D

Nov 30, 2022

The course is a bit difficult, but I learned more than I had expected.

创建者 ADITYA R S

Jul 27, 2022

Got to learn a lot . A very difficult Course, Assignment wise...!!!!!!

创建者 OFFISONG E E

Aug 19, 2020

Thank you so much sir. I so love this course. This is one of the best.

创建者 Juan N R A

Jun 28, 2020

Excellent Course maybe the best that i´ve taken in Coursera until now.

创建者 Shubham B

Jun 10, 2020

extremely helpful course who want to enter into domain of data science

创建者 MAYANK P

May 30, 2020

Excellent to take up this course as on the coming future technologies.

创建者 Aida H

Apr 26, 2020

An amazing course for beginners, there is a lot of new stuff to learn.

创建者 cường n

Apr 24, 2020

great. This course is very clear and teach me basic panda. Very useful

创建者 Adir O

Apr 14, 2020

it was hard as i hoped it would be

good help in the forum(thanks Yusuf)

创建者 karan a

Apr 12, 2020

Awesome course for someone who wants to brush up Python with Ds skills

创建者 Ravi M

Feb 10, 2020

Excellent course!! Covers the basic concept of Statistics with Python.

创建者 Niclas F S

Oct 17, 2019

A great course! Assignments can be tricky to solve, but are rewarding.

创建者 German C

Jul 25, 2019

El curso esta muy bien explicado. Es entretenido y realmente muy util.

创建者 Sergio P

Jul 10, 2019

Exceptional course to get a complete introduction to pandas in python!

创建者 Gyaneshwar P

Mar 27, 2019

It was terrific, complete hands-on experience with real case problems.

创建者 Ay s

Mar 5, 2019

very nice explanations provided in the videos really liked the course.

创建者 Deleted A

May 16, 2018

Awesome course for beginners to learn basics and how it is applicable.