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Learner Reviews & Feedback for Machine Learning with Python by IBM

4.7
stars
16,314 ratings

About the Course

Get ready to dive into the world of Machine Learning (ML) by using Python! This course is for you whether you want to advance your Data Science career or get started in Machine Learning and Deep Learning. This course will begin with a gentle introduction to Machine Learning and what it is, with topics like supervised vs unsupervised learning, linear & non-linear regression, simple regression and more. You will then dive into classification techniques using different classification algorithms, namely K-Nearest Neighbors (KNN), decision trees, and Logistic Regression. You’ll also learn about the importance and different types of clustering such as k-means, hierarchical clustering, and DBSCAN. With all the many concepts you will learn, a big emphasis will be placed on hands-on learning. You will work with Python libraries like SciPy and scikit-learn and apply your knowledge through labs. In the final project you will demonstrate your skills by building, evaluating and comparing several Machine Learning models using different algorithms. By the end of this course, you will have job ready skills to add to your resume and a certificate in machine learning to prove your competency....

Top reviews

FO

Oct 8, 2020

I'm extremely excited with what I have learnt so far. As a newbie in Machine Learning, the exposure gained will serve as the much needed foundation to delve into its application to real life problems.

RC

Feb 6, 2019

The course was highly informative and very well presented. It was very easier to follow. Many complicated concepts were clearly explained. It improved my confidence with respect to programming skills.

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2001 - 2025 of 2,830 Reviews for Machine Learning with Python

By Mrinal G

•

Dec 3, 2018

nice

By AKALYA S P

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Jul 25, 2024

GUD

By Marcio F V

•

Nov 15, 2021

OK!

By Abhijit P

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Jul 7, 2020

okk

By Guru K A

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Oct 28, 2024

na

By Anh T T

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Jun 28, 2024

no

By Johan M T B

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Feb 29, 2024

ok

By Sundarlal

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Nov 7, 2022

NA

By Dr. A K S

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Jul 17, 2022

ok

By PRANEYA S L

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Dec 22, 2021

ht

By Talha A

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Sep 29, 2019

<3

By Ahmed A M

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Feb 7, 2019

ff

By Princi

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Sep 19, 2024

.

By MAITRI D

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Mar 16, 2024

D

By Eun C

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May 6, 2023

d

By Arnav K

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Sep 3, 2022

,

By Livia C

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Sep 2, 2022

By Niladri J

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Jan 24, 2022

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By Ali C B

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Dec 21, 2020

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By Carlo E C

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Oct 8, 2020

U

By Prathamesh S

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Jan 5, 2020

h

By Deepa S

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Oct 22, 2019

A

By Uttam K

•

Apr 16, 2020

Thanking Coursera for providing me the free education and helping for my substantial need

as I was not able to afford the course fee ; literally I can't express the happiness of

mine in words and how much I'm thankful to coursera cannot be described but heartfully am

feeling blessed by the coursera for helping me..Thank You Coursera with Love.

And none the less the instructor was very helpful throughout the course and along with the

discussion forum is also a great way to share and being helped during any problematic

situation but one thing I would like to add the lab tools are not available most of the time

but hopefully got to managed by practicing on my local Jupyter Notebook with the help of

sir's saeed aghabozorgi github repo. As I had some prior knowledge of Machine Learning so

the course was on intermediary level for me on scale of learning and enhancing my

introductory hands-on skills of training .

I have successfully completed the project although it was challenging but enjoyed a lot while

learning and building my final_capstone_project.

I've posted my project notebook very neatly and well maintained and have posted my notebook

with no hidden code cells to help others and inspire with my work.

If anyone wants to visit my github repo to final_capstone_project notebook feel free to commen

t down I'll share it with you happily :)

Thank You !

By Sherry A

•

Jul 2, 2020

The content in this course is presented clearly through the videos provided, and the ungraded labs are quite helpful in learning how to implement the algorithms discussed in the videos. I took this course by itself (not as part of the IBM Data Science Certification), and there was some stuff I had to look up, especially about Pandas data frames and how to work with them. Maybe that content is covered in the courses before this one in the certification sequence. I didn't see a prerequisite knowledge list for this course, but that would be helpful for future learners who are considering taking this course by itself.

The reason I'm giving this course 4 stars instead of 5 is because of the typos that occurred, especially in the directions of the final graded project. I was able to read through the discussion threads about the final project to get a better understanding of what I was expected to do (because part of the directions don't make sense), but those posts are from over a year ago, meaning the typos haven't as of yet been corrected in the course.

Otherwise, I found this course to be enriching and enjoyable! Thank you!

By Sourabh K

•

Jul 10, 2020

The course is not for someone who is new to python. This course requires some prior proficiency and understanding of the language.

There are no professional notes at end of each module or section like some other courses, so you need to take your own notes while going through videos. Having proper summarized notes like the ones in Andrew NG machine learning course would have been great.

There has to be some proper videos / guidance notes or well documented pdfs focusing on the data pre-processing and related components in Python and all other details as well regarding training a model, assignments are directly provided to be completed in Python without any tutorial of the same

Overall a good course but it would be great to have all documentation. Also since the title itself makes it clear that course will be in Python, Kindly add videos to the course which help more understanding of all concepts through Python, currently all videos only have conceptual explanation but no video touches the Python component or how to go about the implementations in real world.

Thanks