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Learner Reviews & Feedback for Machine Learning with Python by IBM

4.7
stars
16,374 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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2601 - 2625 of 2,850 Reviews for Machine Learning with Python

By Elvijs M

•

Apr 18, 2020

The only OK course in the specialization. I found that the intuition/concept behind various algorithms was explained quite well. The mathematics, on the other hand, were basically skipped. And as always, the assignments are sadly pretty much "copy and paste from the examples".

By Samantha R

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Sep 7, 2019

Good course and quite relevant. However, the project was not gearing up for the final Capstone project. I did not feel the skills I gained from this course set me up to succeed with my Capstone project. I felt like I was still in the dark running any kind of machine learning

By Carrae E G

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Oct 28, 2021

This course is a good start. There was not enough assistance with completing the course work. I waited 2 weeks for help and had to send in my assignment incomplete. I wish there was at least one session where students could get their questions answered in real time.

By Simon C

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Jan 18, 2021

Some of the material is out-of-date with respect to current versions of the Python libraries. There are a lot of typos in the material. In the final assessment, the instructions were quite vague regarding what information should be included in the submission.

By Chris R

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Apr 27, 2022

The material was excellent however, a lack of downloadable notes and out of date instructions on the use of IBM watson and how not to pay for time on watson need attension to merit a higher rating.

Lastly, facilty response to questions was outstanding!

By 宋文傑

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Feb 18, 2019

It go through many kinds of machine learning with only simple sample. it doesn't seem like I can earn some job-ready skill after taking this course. The introduction is good, but the content are just too simple to help us deal with real problem.

By Mohammad Q

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Aug 30, 2019

It is an overwhelming course.. really it is packed with knowledge.. yet I with that in the video the instructor explain more in the code.. the theoritical knowledge is understandable but when coding comes.. things getting little bit difficult.

By Sergio D E C

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Aug 7, 2024

It is an intermediate level course that would be great if it could help or remind you of the uses of the libraries and the steps to not fall short in the explanations in their real application in Python. Otherwise, very good and thank you.

By Jeremiah T

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May 4, 2020

Explained basic methods of machine learning but could have provided more guiding information on the final project that encouraged learning and helped us complete the project efficiently but also compel us to explore the methods thoroughly.

By Bea C

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Oct 24, 2020

Loads of typos/spelling mistakes throughout, some contradictory statements in the quizzes that need to all be ticked, some questions are unclear... Overall the content isn't bad but the entire course needs to be spellchecked and reviewed.

By Joel A

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Feb 6, 2021

Good survey material for those unfamiliar with statistical concepts, but the training material is incomplete, misleading, RIDDLED with spelling/technical mistakes, and only the forums address the methods to submit homework correctly.

By Andrei-Ionut D

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Aug 31, 2019

Not too many explanations for the assignment, only 2 rows which are supposed to tell us exactly what we have to do. This is why everyone ended up creating very different things, which made it harder when reviewing their work.

By Kevin C

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Jun 30, 2021

Great course but the final assignment was very fiddly with standard libraries not being uploaded properly in the Watson lab notebook provided. There was no option to use local environments to mitigate this. Hence 3 starts

By Adam J L J H

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May 27, 2020

I think that the Machine Learning Models taught were explained really well In theory to help understand what we are doing. However, there is not much explanation to the syntax of the models which could be elaborated on.

By Enrique H

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Sep 2, 2022

It's good course if you have not heard anything about Machine Learning, however I would like that teach important techniques such as neural networks, PCA because they are used many times in different jobs and studies.

By Artin Y

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May 18, 2020

The course was very intense and it was not clear what was wanted from you(i.e. the scope you're expected to know for the exams)

The quizzes are vastly different from the final project and don't prepare you for it.

By Kennedy O A

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Sep 6, 2024

The assignments covered only the basics, without aspects like overfitting detection, hyperparameter tuning, ensemble learning, clustering, dimensionality reduction, missing data imputation, and cross validation.

By Atharva J

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Mar 26, 2020

I got a great understanding of the concepts but, there should have been more videos related to the implementation(coding) part. There was just once use of Third-party tool for every module and nowhere else...

By Julien P

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Dec 30, 2020

Content was good, a bit shallow on some aspects (didn't cover many ML techniques, was light on SVM content, etc.). But the quizzes were too easy and didn't properly test technical aspects of the course.

By Mohammed A Q K

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Sep 27, 2020

The sections on Clustering and Recommender Systems were difficult to follow. It would have been ideal if they had more in-depth video explanations or if the contents in the lab notebooks was simplified.

By Shreya D

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Jul 24, 2020

It is a really good course for understanding theories and covers vast topics! The concept were explained very nicely but it lacked proper mathematical working of algorithms or deep intuition about them.

By SAIKAT B

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Nov 29, 2019

There is more theory than practical examples and exercises. The final project is nowhere near the actual course syllabus. No ML algorithm is taught in the course. But you ask them in the final project.

By Ashish K

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Jul 30, 2019

The instructor is very good and explanation of concepts is very clear.

But the code explaination is not there so we have to search for each keyword on google. Just wanted to have someone to explain code.

By Fadhil R M

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Nov 30, 2022

not deep enough, many algorithm and model evaluation approaches that wasn't include in this course. But I think for beginner who just get into a Data Science or ML things, this is a good modules

By Rejoy C

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Jul 11, 2020

Its Ok. From Theoretical aspect, its good as a introduction. But for Python, this is not like introductory. Python programming is just reading materials. There are no videos for explanation.