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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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2301 - 2325 of 2,912 Reviews for Machine Learning with Python

By ABU H M A R

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Jan 5, 2020

Great course for the fundamentals of different machine learning techniques. Enjoyed this wuite a kot

By Manal C

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Nov 27, 2019

Recommending more emphasis on the coding behind the algorithm (reminders / links to references ...)

By Matthew A

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Jun 14, 2019

This was a good course - but still could use more hands-on exercises to go along with the lectures.

By 018 A D

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May 19, 2020

it was a nice course but there must be a little explanation video of the codes written in the labs

By Brian G

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Jun 17, 2019

Would've liked the labs to be a little less demo and more DIY, but otherwise outstanding material.

By Mitchell H

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May 15, 2020

Covers all the basics of sklearn library. Would have been nice to have more assignments/practice.

By Joseph L

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Jul 24, 2019

I am enjoying the course so far. Very well explained with a pretty comprehensive course material.

By nilay m

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Mar 11, 2019

it was a nice course giving basics of every ML algorithm and i am all in all very much benefited.

By Saptashwa B (

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Mar 4, 2019

The course is pretty good, I just hope the printing mistakes in the slides will be corrected soon

By ADEJOKUN A

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Apr 27, 2020

The underlying concepts of the various algorithms were broken down and delivered with simplicity

By Bala M

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Sep 17, 2019

Excellent course explaining all the essential details to kick of the ML journey using Python.

By Lovish G

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Apr 26, 2024

Difficult to understand for a Non-mathematical student. Overall a great learning experience.

By Neil C

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Aug 29, 2020

It was a good course but the final exam could do with more structure around what is expected

By Urs H

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Jun 29, 2019

Comprehensive, good to understand, minor errors in the description of the final assignḿent.

By Alex L

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Oct 18, 2022

Very eductational as a intro to machine learning - wish the homeworks were more difficult

By rk s

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Feb 20, 2022

the final peer review quiz was too difficult, should have included more practice exercises

By Ciniso M

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May 25, 2021

This course is very fruitful and it's instructors are awesome. Thank you Coursera and IBM.

By Mitanshi K

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Apr 30, 2020

Great for beginners. Explains theoretical concepts well but lags on the coding part of it.

By Vinit K S

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Apr 8, 2020

It is such a vast topic, It would have really been great if there were few more exercises.

By Ritesh P

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Dec 4, 2023

Random Forest, XGBoost etc should have been there. Decision tree explanation was amazing.

By Daniel J B O

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May 26, 2020

A little bit to basic for someone who studied the topics in the past but a good refresher

By Mauricio C V

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Jul 11, 2024

Hace falta que se explique mas los cuadernos de laboratorio para entender mas la teoria

By Rubén G

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May 29, 2020

I recommend including more examples and documentation of the metrics in the algorithms.

By Aldy P

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May 29, 2020

This course didn't help Much for a beginner. But overall worth to try. Thanks Coursera!

By Asanka W

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Aug 23, 2022

Good course great explanation, but i had issues with practicles overal course is great