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Learner Reviews & Feedback for Supervised Machine Learning: Regression and Classification by DeepLearning.AI

4.9
stars
24,998 ratings

About the Course

In the first course of the Machine Learning Specialization, you will: • Build machine learning models in Python using popular machine learning libraries NumPy and scikit-learn. • Build and train supervised machine learning models for prediction and binary classification tasks, including linear regression and logistic regression The Machine Learning Specialization is a foundational online program created in collaboration between DeepLearning.AI and Stanford Online. In this beginner-friendly program, you will learn the fundamentals of machine learning and how to use these techniques to build real-world AI applications. This Specialization is taught by Andrew Ng, an AI visionary who has led critical research at Stanford University and groundbreaking work at Google Brain, Baidu, and Landing.AI to advance the AI field. This 3-course Specialization is an updated and expanded version of Andrew’s pioneering Machine Learning course, rated 4.9 out of 5 and taken by over 4.8 million learners since it launched in 2012. It provides a broad introduction to modern machine learning, including supervised learning (multiple linear regression, logistic regression, neural networks, and decision trees), unsupervised learning (clustering, dimensionality reduction, recommender systems), and some of the best practices used in Silicon Valley for artificial intelligence and machine learning innovation (evaluating and tuning models, taking a data-centric approach to improving performance, and more.) By the end of this Specialization, you will have mastered key concepts and gained the practical know-how to quickly and powerfully apply machine learning to challenging real-world problems. If you’re looking to break into AI or build a career in machine learning, the new Machine Learning Specialization is the best place to start....

Top reviews

FA

May 24, 2023

The course was extremely beginner friendly and easy to follow, loved the curriculum, learned a lot about various ML algorithms like linear, and logistic regression, and was a great overall experience.

JM

Sep 21, 2022

Specacular course to learn the basics of ML. I was able to do it thanks to finnancial aid and I'm very grateful because this was really a great oportunity to learn. Looking forward to the next courses

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4451 - 4475 of 4,882 Reviews for Supervised Machine Learning: Regression and Classification

By Axl A M

Jun 10, 2023

This gave me a really good overview of how to solve Linear Regression and Classification problems. I learned a lot about prominent Python-based machine learning tool-kits, applications and libraries. It comes with some extremely valuable insights from one of the AI field's experts. Being an introduction, this course does, from time to time, skip the specifics. I thoroughly enjoyed it.

By Đorđe I

Jul 3, 2022

The course is great regarding content and explanations. On the other hand, it could have more practice tasks that one should do on their own to better understand the topic and grasp knowledge in the field. In the last practice task in the section for user's input, there is a suggestion to use inefficient code without vectorization which is in ML crucial as professor Ng mentioned.

By Abdulrahman T

Jun 14, 2023

The content covered is interesting and explained thoroughly and in a very clear fashion however I find the practice labs a bit underwhelming, they have too much assistance and also the pre-existing guiding code can lead to avoiding vectorized code which supports slower algorithms, I feel like this course could have better practice so as to be easier to apply in other applications

By Vuk L

Jun 24, 2022

Andrew Ng surpased himself as far as his teaching skills. I am amazed by quality of his lectures and the way he explains things. However I found that quizes were to too easy. One should just pay attention to what was said during lectures and 100% grade is guaranteed. That's why I'm giving 4.0, although I think 4.5 would be more appropriate. All in all - great first course!

By Sahan M

Jul 8, 2023

It was a great course for introduction to Machine Learning. I enjoyed the course very much. One thing I would like to add is there should be an exercise to write full code, because that would enable us to understand better what variables to take and what algorithm we should follow without any existing template and all. Otherwise I liked this course very much

By Naveen D

Apr 5, 2023

The content was good, but I think the quizzes and assignments weren't designed focusing the development of intuition and a deeper understanding of the content. The same goes for the optional labs. I would say to take some inspiration from the courses offered by Imperial college. But overall the topics were covered in depth and effectively by the instructor.

By Yasir N

Aug 9, 2022

Great Intro to ML. I did not find it challenging enough or offering extra info that we can study on our own (like generalised linear models). It also doesn't mention that there are other parameter optimisation algorithms other than gradient descent. Overall a very beginner friendly course, but left me wanting for more, which isn't exactly bad I guess ;)

By sai g v

Jul 10, 2023

I appreciate the example-driven approach toward these complex topics. One thing I feel missing is the practical sessions on the coding part, although the coding part is provided in the optional labs times it feels a bit confusing and requires some further explanation on it. An overall, very useful course for those who are looking for the fundamentals .

By Mohamed M

Aug 21, 2022

The code need to be explained because there are many functions student doesn't know. I searched and knew these functions but sometimes I couldn't understand why we used this fun while there is another one can do the same. and many things wasn't clear to me in the optional labs.

But the videos were excellent and I recommened the course to my friends.

By Mohamed k a

Aug 21, 2022

The course was very helpfull and the instructor made the course very easy to understand ,I wish i could thank him in person .But, the challenge was in the jupyter labs it was hard to understand the skills in visualizing the data given and the codes was tricky hope to see more videos of coding in the future.

Thank you coursera.

Thank you sir\Andrew.

By Syed G A

Sep 1, 2024

Some classes are not understandable. Please add a contact form or something similar to reach out for guidance and clarification. One more thing: I think this course is designed for someone who already knows calculus and algebra, which is why it is very difficult to understand the classes. Overall, I learned a lot, but with the help of GPT :D

By alireza h

Aug 29, 2024

Andrew's explanation of the different aspects of ML is excellent. The only thing I think could make the course even better is if the optional labs were replaced with tasks based on real-world ML problems and scenarios, and if there were more focus on using libraries and tools that are commonly used in development and production environments.

By Saurish S

May 28, 2023

The content is very-well explained. I would have liked the practice labs to be a little more difficult. The labs fill up almost all of the code and leave very little to be done by the student, so the labs were not sufficient for me to get a good grasp of the coding skills required to INDEPENDENTLY write code for my own ML projects if any.

By Souvik M

Dec 11, 2023

Overall good starter courser, but have been good have a little more videos on using the scikit-learn library. Also an exercise is needed where one implements the entire regression solution from identifying variables, creating cost function and the gradient descent. Doing everything from ground up, even if it is for a small training set.

By Varun S T

Apr 15, 2023

The course was very good. Well-structured and the concepts were made simple enough to understand. The only drawback was the minimal use of libraries such as Sci-kit learn in practice labs and assessments. However, will definitely recommend to people who are interested in understanding core concepts behind Regression and Classification

By NAVJEET S

Sep 4, 2023

A very good course to understand Regression and Classification. However its just about the introduction of it. Would have been great if the talk on Mathematics of Regression possibly from R-squared, SSR and such things could also have been there. Same goes for Logisitic regression such as Accuracy, Precision..etc. Good for beginners.

By Mark Q

Jul 9, 2023

Very good overview, although as a mathematician I found the lack of rigour in the analysis 'disturbing'. It's a bit frightening to think of hordes of people (or, worse, machines themselves...) using tools like this to reach potentially incorrect conclusions without a clear appreciation of the limits of the techniques they are using.

By Ellen C

Feb 20, 2024

I really like this course. Though for more in depth learning how to apply logistic and linear regression i would recommend Andrew NG older course also still available on coursera. It goes more in depth of how to evaluate a model when implementen and comparing them. Anyway thanks to all the contributors to making this available.

By Nicholas G

Jan 23, 2024

Consolidates all of the essential beginner information for types of regression and gradient descent. Worth it for busier professionals. Wish there were more hands-on "throw you into the pool and let you swim" types of labs, everything is very hand-held. That is what other resources and personal projects are for, it seems.

By Keegan D

Jan 22, 2024

Was a great course and the visual representations really helped a lot in understanding key concepts, my only suggestion would be a little more depth in coding know how and video explanation of it than just notebooks to read from. Overall a great course to learn in-depth about regression and classification from ground up.

By Juan P H

Nov 14, 2024

I would have liked a bit more hands on coding and going a bit more deeper in the math and coding. Having said that, on the following course, having these understandings and intuitions have been very helpful to better understand how neural networks work behind the scene. I do recommend this course.

By mohammad k

Sep 11, 2023

This first part of the course is probably suits a freshman student in engineering who has limited knowledge of numerical methods or computer programming. While I hold great regard for Mr. Ng, I find the pace of the course to be somewhat sluggish, and the depth of the material covered to be modest.

By Praveena C

Jul 19, 2023

Overall, the course was remarkably insightful and presented in a way that made it easy to follow. In the future, I think it would be beneficial for the lessons to delve deeper into the programming aspects of machine learning, as this area demanded a lot more independent research and self-learning.

By Edouard T

Oct 22, 2024

The course is great and offers a wealth of details, both theoretical and practical. However, as a first course in machine learning, the coding in some labs could be simplified. The labs could have been designed using simpler code, particularly by utilizing NumPy instead of looping over vectors.

By Nyan

Oct 30, 2022

This is a really really great course which provides the fundamentals of Supervised Machine Learning and also math concepts used in Regression and Classification. Ones who don't have basic math knowledge and basic python programming knowledge will face some difficulites in this course I guess.