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学生对 IBM 提供的 Machine Learning with Python 的评价和反馈

4.7
18,084 个评分

课程概述

Python is a core skill in machine learning, and this course equips you with the tools to apply it effectively. You’ll learn key ML concepts, build models with scikit-learn, and gain hands-on experience using Jupyter Notebooks. Start with regression techniques like linear, multiple linear, polynomial, and logistic regression. Then move into supervised models such as decision trees, K-Nearest Neighbors, and support vector machines. You’ll also explore unsupervised learning, including clustering methods and dimensionality reduction with PCA, t-SNE, and UMAP. Through real-world labs, you’ll practice model evaluation, cross-validation, regularization, and pipeline optimization. A final project on rainfall prediction and a course-wide exam will help you apply and reinforce your skills. Enroll now to start building machine learning models with confidence using Python....

热门审阅

RV

Jan 14, 2025

good course , some part is typical more statistical part shown, even i have good understanding of ML , so new learner will find little typical. rest tutor voice and language is understandable.

RN

May 25, 2020

Labs were incredibly useful as a practical learning tool which therefore helped in the final assignment! I wouldn't have done well in the final assignment without it together with the lecture videos!

筛选依据:

901 - Machine Learning with Python 的 925 个评论(共 3,228 个)

创建者 Abu A

Jun 4, 2020

It's a great course with practical and very interesting projects. Thank you!

创建者 Sorrapon M

May 23, 2020

this course is very interesting. lectures and videos are good also the labs.

创建者 Жовтобрюх Д А

Apr 4, 2020

good course to become familiar with the basics of machine learning in python

创建者 Eliana C H L

Mar 17, 2020

Me gustó el curso y los ejercicios, fueron de mucha ayuda. muchas gracias !!

创建者 Shyam P

Feb 18, 2020

I recommend this course for anyone to head start a machine learning venture.

创建者 Yash J

Jan 20, 2020

Wonderful course. One must do it to enhance their career in Machine learning

创建者 Himanshu P

Jan 3, 2020

A brief revision or description of numpy and pandas function should be given

创建者 Carlos F S

Apr 2, 2019

TOP! V ery useful and impressed how difficult topics are explained so easy!!

创建者 Chánh T T

Jul 24, 2022

Thank you so much. This is such a nice course. I learned so much from this.

创建者 Brian B J

Mar 24, 2022

Fine course for getting the basics of machine learning with python covered.

创建者 Duarte

Mar 15, 2022

A nice course for an introduction to the main machine learning techniques.

创建者 Erich H

Sep 21, 2021

Love the hands on and the work on the data set with different ML techinques

创建者 Romil N

May 23, 2020

great assignments for practice..great course for machine learning in python

创建者 Ishraque Z B

Apr 28, 2020

An Excellent and easy way to understand critical concept. Highly recommend.

创建者 Rida Z

Apr 4, 2020

Amazing course, I got only gained theroritical but also technical knowledge

创建者 Santhosh R

Jan 3, 2020

The lab exercises are very good. The pace of the course will suit everyone.

创建者 Christopher C

Sep 18, 2019

Excellent course. Peer review quality for final project was extremely poor.

创建者 Krishna P G

Oct 16, 2025

Gave me a detailed intro to ML when I was clueless about what why and when

创建者 Jitendra B 2

Apr 12, 2025

Absolutely fantastic course and I've learned from scratch from this course

创建者 Muhammad M

Jul 24, 2023

Too helpful and easy to understand different concepts of machine learning.

创建者 Bui N H T

Aug 23, 2021

Excellent course but I would like to learn more in classification problems

创建者 Jesús V

Aug 17, 2021

Great starting course for anyone interested in the Machine Learning field.

创建者 Ivan G G

Jul 1, 2020

There are good explanations and it was very useful for my current project.

创建者 Ritesh k M

Jun 6, 2020

By this course you will get lot of basic knowledge about machine learning.

创建者 Akos G

Jan 25, 2020

Well structured course and nicely explained examples. Very useful overview