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

4.9
stars
22,170 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

JM

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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

AD

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Amazingly delivered course! Very impressed. The concepts are communicated very clearly and concisely, making the course content very accessible to those without a maths or computer science background.

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251 - 275 of 4,537 Reviews for Supervised Machine Learning: Regression and Classification

By Fredrik Ö

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Aug 3, 2022

Had already completed the old course "Machine Learning". Took this course because of the switch from Octave to Python. So i thought it was a great idea to repeat what i had learned and at the same time sharpen my skills in Python. Really liked the enhancements, like the extra optional labs with Scikit. Also this was a preparation for me since i intend to take the 2 continuation courses.

By Sohail S

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Feb 17, 2023

This was an exciting ride, I enjoyed every bit of it. The explanation, the presentation, the examples, and the labs were up to the mark. I loved the optional labs, the way they were structured, and the way they explained every block of code is worth appreciating. Thank you, Coursera, and Stanford for providing such a fantastic course, looking forward to completing the specialization.

By Jeffrey C

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Aug 14, 2022

Terrific introductory course, but I wish it gave you the option for more hands on implementation of the supervised machine learning algorithms as you progressed. I could have easily passed this course with knowing the bare minimum, but I wanted to become proficient in the foundations, and unfortunately there wasn't much in the way of testing your knowledge without the training wheels.

By vijay s

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Aug 14, 2022

I felt after learning this, that my overall understanding has become very deep and now i feel very confident about implementing this in real life scenorio. It has given me clarity on "how to steps in Machine learning" . Very intutive and natural course for topic of vast calibre and application. Thanks to the team of coursera, deeplearning.ai and standford for sharing such information.

By Badavath T

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Jul 5, 2022

This course is fantastic, everything from the previous course but more. Adding Python instead of octave/Matlab is excellent, and the programming assignments are also beneficial. The teaching is exceptional as always. If you are looking for a course in machine learning, this is the best pick. I enrolled the day the course was released, looking forward to completing the specialization.

By Matthew T

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Nov 7, 2022

Very good - easy to understand instruction and enjoyable to listen to.

The lab's are excellent to take the theory and test it. I found using the labs was the best way to understand the maths and logic, and how the layers of iterations come together. Particularly in the last few lessons when you have operations happen on individual features, individuals examples and then the whole set.

By Th D

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Sep 10, 2023

Andrew Ng is a great teacher.The material is very well presented and Andrew makes sure the learners develop an intuition on the concepts of the course.As a side note i found the assignments too easy, but i can understand the philosophy of the course is not to discourage people but help them understand the concepts and give inspiration to enter the exciting world of machine learning.

By Argha B

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Jul 28, 2022

Andrew Ng is one of the pioneers in the field of AI. His original course, while very theortically enriched, was showing its age for the choice of its programming language. This new specialization was just the right thing for someone like me who needed to implement all the concepts in the de facto language of AI, all the while learning the said concepts from the leaders of the field.

By Alexandre C

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Oct 3, 2023

It is an introductory course, but it manages to go a little deeper than I expected. Obviously, do not expect any (or almost any) mathematical proof or deep explanation about veery topic, but you can expect to learn the mathematics behind logistic and linear regression, being able to implement then even without a package. Andrew's explanation about the logic of the models is great.

By عبدالله م م ع

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Mar 29, 2023

this course was so impressive to me , from building up the intuition to practical labs as well as the optional labs , I have visited the concepts provided in that course before , but the way I understood those concepts in this course was new to me and added a lot to me , thanks for providing such valuable information in a very simple systematic way. Special thanks to Andrew :D

By Virender S

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Aug 5, 2023

This course is a very good start for beginners in the field of ML and AI. Concepts are explained very well by Andrew himself. Best part of the course is how Andrew tries to develop the intuition behind different algorithms. I had been reading some books to understand these concepts but it was hard. Now, I think, I have the foundation to understand different books on these topics.

By Ghulfam H

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Jan 23, 2024

Andrew Ng's "Supervised Machine Learning: Regression and Classification" is not just a course; it's an immersive learning experience. It's a well-structured roadmap, a friendly guide, and a spark for your journey into the exciting world of machine learning. Highly recommended for anyone who wants to understand, apply, and ultimately be inspired by this transformative technology.

By ZAIN Z

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Jul 12, 2023

Overall, the "Supervised Machine Learning: Regression and Classification" course on Coursera is highly recommended for anyone interested in mastering the concepts and techniques of supervised learning for regression and classification tasks. It will equip you with the necessary skills to apply these techniques to real-world problems and make informed decisions in various domains

By Saif U R

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Aug 16, 2022

Thank you Prof. Andrew, Eddy Shyu, Aarti Bagul, Geoff Ladwig, and all the members of the team for a wonderful course. It is very easy to understand and, at the same time, enjoyable. And, deeplearning community is also very supportive. I got stuck several times in the course and the community help me to go through that. Highly indebted to all of you. Hasta la vista in course 2.

By CESAR D M C

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Oct 6, 2022

Durante el desarrollo del curso vas acercandote cada vez mas a problemas reales con la ayuda de herramientas que se utilizar en el desarrollo de ML. Te da el conocimiento basico y va profundizando en los conceptos sin saturar la leccion. Las notebooks son muy agradables y ayudan mucho a practicar la teoria, no cabe duda que es el mejor curso de ML con el que puedes comenzar.

By Krishnakanth G V

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Sep 22, 2022

its a good experience through out the course and keep my expectations to the mark with the coverage of topics in this specialization . I develop myself to find more about field of Machine Learning concepts around the world in my window.thanks to that , I got some confidence to say that I aware of what is supervised ML and use the optimal algorithms to particular problems

By Cihat D

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Aug 24, 2023

An insightful and comprehensible overview of machine learning algorithms is provided in this course, presenting the underlying mathematics in a clear manner, free from complexity. What I particularly liked were the optional study labs, which aid in better understanding through valuable visualizations. I extend my gratitude to the esteemed Andrew Ng for this invaluable course

By Vincent A C T

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Jan 5, 2023

Thank you Andrew Ng and team for such an incredible journey in this first course of machine learning specialization. I have gained much better concept and understanding on supervised learning, especially in linear and logistic regression. This course really helps me establish a solid foundation in the world of machine learning. Again, thank you so much for the opportunity :)

By souvik d

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Jan 24, 2024

As a beginner in the field of Machine Learning, this course is a very good starting point as it ramps you up excellently and provides in-depth knowledge and understanding of the building blocks of ML. I highly recommend this for anyone starting their journey on ML understanding, as well as for experienced people who are looking for a refresher. Andrew is a master educator.

By Hoang L

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Aug 13, 2023

Andrew Ng is the best teacher I've ever had. I took his course just for fun - to work my brain and keep me from aging (not young anymore). It's not for my career or anything, but I love this course and can't describe how I like the way Andrew taught this course. Great teacher. I just wish the course is more rigorous and serious just like the Stanford one offered on campus.

By Svetlana V

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Jan 18, 2023

Excellent presentation by Dr. Ng, as usual. I like how the assignments are prefilled with data/values not related to the core learning, how clear the math behind it all is explained, and that this course uses the tools most likely found in most companies.

The previous version of course was great, too, but skewed a little too academic. You did a great job, folks! Thank you!

By Angad S T

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Dec 30, 2023

I would confidently rate the "Supervised Machine Learning: Regression and Classification" course as highly valuable. The expertise of the instructors, the clarity of the content, and the practical applications covered in the course make it a commendable resource for individuals looking to enhance their understanding of supervised machine learning. Keep up the great work!

By Seif H

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Jul 10, 2023

I took the previous Machine Learning and Deep Learning course in 2019, and the programming assignments were in Matlab/Octave, which was a bit challenging. But this Specialisation is entirely in Python, and I really enjoyed every content presented in the course. Dr Andrew's teaching method is just amazing and I hope to see a more advanced topic covered in the next course.

By Omar A

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Feb 26, 2023

The course is an amazing kickstart to a student's life into ML. Andrew Ng is an amazing educator and has the capability to explain difficult concepts with ease. One area of improvement can be that more examples can be taken while explaining the concepts as the same examples over and over again can get a bit monotonous. Other than that the course is majestically designed.

By SAURONIL B

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Feb 18, 2023

An excellent course by Andrew Ng sir, Hats off for such learning material. Sir made this ML easy, though it is not easy. The content is heavy to digest though sir delivered it in easiest and simplest language. Thank you a lot Andrew Sir for such wonderful teaching. Coursera team thank you tons for giving me such a opportunity to learn one of the best course in industry.