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学生对 IBM 提供的 Python for Data Science, AI & Development 的评价和反馈

4.6
43,146 个评分

课程概述

Kickstart your Python journey with this beginner-friendly, self-paced course taught by an expert. Python is one of the most popular programming languages, and the demand for individuals with Python skills continues to grow. This course takes you from zero to programming in Python in a matter of hours—no prior programming experience is necessary! You’ll begin with Python basics, including data types, expressions, variables, and string operations. You will explore essential data structures such as lists, tuples, dictionaries, and sets, learning how to create, access, and manipulate them. Next, you will delve into logic concepts like conditions and branching, learning how to use loops and functions, along with important programming principles like exception handling and object-oriented programming. As you progress, you will gain practical experience reading from and writing to files and working with common file formats. You’ll also use powerful Python libraries like NumPy and Pandas for data manipulation and analysis. The course also covers APIs and web scraping, teaching you how to interact with REST APIs using libraries like requests and extract data from websites using BeautifulSoup. You will practice and apply what you learn through hands-on labs using Jupyter Notebooks. By the end of this course, you’ll feel comfortable creating basic programs, working with data, and automating real-world tasks using Python. This course is suitable for individuals interested in pursuing careers in Data Science, Data Analytics, Software Development, Data Engineering, AI, and DevOps and a variety of other technology-related roles....

热门审阅

EM

Sep 24, 2022

i​t becomes easier wand clearer when one gets to complete the assignment as to how to utilize what has been learned practical work is a great way to lerarn which was a fundamental part of the course.

HK

Oct 19, 2022

T​his was an extremely informative course and I believe is perfect way to strt off your coding journey. The teaching style was understandable.detail oriented and very practical. Highly Recommended.

筛选依据:

2701 - Python for Data Science, AI & Development 的 2725 个评论(共 7,840 个)

创建者 Jesus G

Jul 19, 2025

muy bueno el cursos y se entiende muy bien

创建者 Prince S

Jul 7, 2025

This course is very effective and accurate

创建者 Monika

Jan 15, 2025

Very well-explained ànd easy to understand

创建者 Stefan A

Nov 1, 2024

Great course, thank you very much Joseph !

创建者 Juan C F B

Oct 7, 2024

Excelente curso para el nivel principiante

创建者 Anas S

Apr 2, 2023

VERY INFORMATIVE COURSE AND WELL DESIGNED.

创建者 Arslan K

Aug 25, 2022

it was good and very easy to understand it

创建者 Danish K

Jun 21, 2022

that was the great course for data science

创建者 Raneem Y

May 24, 2022

it's very useful and recap my information.

创建者 Somansh A

Feb 23, 2022

AMAZING COURSE WITH WONDERFUL EXPLAINATION

创建者 JOHN R

Dec 18, 2021

I'm having fun with this coure. Worth it.

创建者 Eric d G

Jul 25, 2021

GVery good introductory course for Python.

创建者 Gustavo A C M

May 17, 2021

thank you very much very interesting curse

创建者 João V S S

Feb 5, 2021

Muito Bom !! Aprendi muito com esse curso!

创建者 Erwin T

Oct 27, 2020

Great course, good insight in basic Python

创建者 Prasad J

Oct 12, 2020

Excellent videos, labs and study material!

创建者 saurabh c

Jul 9, 2020

very nice and vedio was in so good quality

创建者 Yu J

Jun 28, 2020

Very good course, informative and concise.

创建者 Shreya

May 1, 2020

Loved the course! Enjoyed every bit of it.

创建者 Syed F

Mar 22, 2020

awsome course for aspirants of datascience

创建者 Corey J

Dec 22, 2019

Awesome Course! Informative and Practical.

创建者 Ramkumar Y

Oct 30, 2019

Neatly done. Covered all necessary topics.

创建者 Muhammad B

Oct 25, 2019

Best Course for the Data Science Aspirants

创建者 Morgan D

Aug 22, 2019

Very Educational, and lends good practice.

创建者 Mridul P

Jun 20, 2019

Easy to comprehend. The assignment is key.