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Learner Reviews & Feedback for Machine Learning with Python by IBM

4.7
stars
16,740 ratings

About the Course

Python is one of the most widely used programming languages in machine learning (ML), and many ML job listings require it as a core skill. This course equips aspiring machine learning practitioners with essential Python skills that help them stand out to employers. Throughout the course, you’ll dive into core ML concepts and learn about the iterative nature of model development. With Python libraries like Scikit-learn, you’ll gain hands-on experience with tools used for real-world applications. Plus, you’ll build a foundation in statistical methods like linear and logistic regression. You’ll explore supervised learning techniques with libraries such as TensorFlow and Pandas, as well as classification methods like decision trees, KNN, and SVM, covering key concepts like the bias-variance tradeoff. The course also covers unsupervised learning, including clustering and dimensionality reduction. With guidance on model evaluation, tuning techniques, and practical projects in Jupyter Notebooks, you’ll gain the Python skills that power your ML journey. ENROLL TODAY to enhance your resume with in-demand expertise!...

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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2701 - 2725 of 2,912 Reviews for Machine Learning with Python

By Rajshekhar D

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Feb 22, 2021

The course gives idea about the things to know choose a prediction algorithm, only thing is - the coding part can be stressed upon more.

By Mohit M

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Jul 1, 2020

It covers only the basics of machine learning not all topics are covered in this course. You will need to learn many things on your own.

By Vibha S

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Aug 28, 2020

It would have been helpful to have an explanation of t each of the lines in the code, especially the ones that created the graphs.

By Louis C C I

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Mar 25, 2021

I learned a lot but wish the coding was explained better. The final project could have been better if it had more instructions.

By Rohith P R

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Apr 24, 2020

Need more clarity while explaining the algorithms. Also need video lectures on the code used in the lab and how the code flows.

By Amal J (

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Jul 16, 2020

Peer review was problamatic , IBM Watson was tough to grasp could have been more informative .

But the course was really good

By Shankari S

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Aug 31, 2020

This course covers the basic of major algorithms. It could be useful if they add more examples and more metrics calculation.

By AINUR A

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Mar 25, 2021

Why am I not eligible to upgrade to a New version of a specification if it exists and I already paid for the next months??

By Manuel D

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Oct 3, 2023

Basic Mahcine Learning course. It goes through the very basics of several models, but lacks practice and true excercises

By Pratik P

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May 1, 2023

Was not able to get a clear understanding of the applications of Statistical concept applied in different ML algorithms.

By Zulqarnain B A

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Jan 17, 2025

The course is good but a lot of content is just thrown at you without explaining anything the labs need to be improved

By Bob D

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Jan 25, 2022

Some useful material, but again plagued by bad spelling, punctuation and technical issues. Nowhere near good enough.

By Diwakar S

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Apr 19, 2020

a very short video on theory part and without practical example. then we directly jump on notebook assignment.

By Pedro S

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Nov 16, 2022

I understand that this a introduction course but I believe some things should have been taught in more depth.

By Muhammad S

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Oct 10, 2022

The answer to questions were very difficult to interpret. The feedback from staff was not very satisfactory

By Raed K

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Aug 11, 2020

I felt that it needs to be guided more it was tough to take the final project. But thank you for the course

By Pedro V

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Jan 10, 2022

Rather basic but pretty well explained. I was expecting something more advanced and with much more Math

By its m

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Jan 22, 2025

Coding part wasnt discussed in videos and it was left upto us to read and understand from lab exercises

By Kiran V

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Sep 4, 2019

Some concepts should be dealt with more explanation (SVM, recommedor system- collaborative filtering)

By Johan

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Mar 31, 2020

The statistical equations can be explained better to enable better application in the real world.

By Andrew P

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Jan 17, 2020

Would have preferred more step by step explanations to the process, even if it is in written form

By Dhananjay K

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May 1, 2020

this course quite difficult to complete. please add some normal application in this course.

By DHAVAL J

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Feb 26, 2020

Could have been better especially in optimization part and pratical coding in video itself.

By Pablo V V

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Mar 26, 2019

I prefer a blackboard videos likek Khan Academy. Instructor looks like a robot. But its ok.

By Sokob C

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Jul 25, 2020

I prefer to have more lab work to help with maintaining what was covered in each section.