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Learner Reviews & Feedback for Linear Algebra for Machine Learning and Data Science by DeepLearning.AI

4.5
stars
1,293 ratings

About the Course

Newly updated for 2024! After completing this course, learners will be able to: • Represent data as vectors and matrices and identify their properties using concepts of singularity, rank, and linear independence, etc. • Apply common vector and matrix algebra operations like dot product, inverse, and determinants • Express certain types of matrix operations as linear transformations • Apply concepts of eigenvalues and eigenvectors to machine learning problems Mathematics for Machine Learning and Data science is a foundational online program created in by DeepLearning.AI and taught by Luis Serrano. This beginner-friendly program is where you’ll master the fundamental mathematics toolkit of machine learning. Many machine learning engineers and data scientists need help with mathematics, and even experienced practitioners can feel held back by a lack of math skills. This Specialization uses innovative pedagogy in mathematics to help you learn quickly and intuitively, with courses that use easy-to-follow plugins and visualizations to help you see how the math behind machine learning actually works. Upon completion, you’ll understand the mathematics behind all the most common algorithms and data analysis techniques — plus the know-how to incorporate them into your machine learning career. This is a beginner-friendly program, with a recommended background of at least high school mathematics (functions, basic algebra). We also recommend a basic familiarity with Python (loops, functions, if/else statements, lists/dictionaries, importing libraries), as labs use Python and Jupyter Notebooks to demonstrate learning objectives in the environment where they’re most applicable to machine learning and data science. If you are already familiar with the concepts of linear algebra, Course 1 will provide a good review, or you can choose to take Course 2: Calculus for Machine Learning and Data Science and Course 3: Probability and Statistics for Machine Learning and Data Science, of this specialization....

Top reviews

NA

Jun 17, 2023

Very visual and application oriented and gives the context for machine learning and where linAL is applied in PCA and neural networks. The structure is really byte sized and fun to work with.

SP

Jul 26, 2023

This course is truly exceptional for individuals eager to strengthen their grasp of Linear Algebra concepts, paving the way for a deeper understanding of machine learning and data science.

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226 - 250 of 351 Reviews for Linear Algebra for Machine Learning and Data Science

By Adek P D

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Sep 30, 2023

nice

By Pramitha D

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Sep 22, 2023

cool

By partheniac

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Jun 1, 2023

good

By Dr. M S

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Mar 23, 2023

Nice

By Noah C

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Dec 26, 2023

:)

By Latifah N

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Sep 28, 2023

ye

By Hugo M

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Sep 27, 2023

Overall a good course - but there is room for improvement here. At the beginning of the course it was stated that high school algebra was sufficient. But I felt like too many videos were spent on solving simple linear equations - the course assumes the learner should know this. On the other hand the more complex topics like eigenvalues, eigenvectors and eigenbasis were covered in less than 10 minutes! Yes, less than 2 videos for the more challenging parts of the course. Then a fairly difficult quiz for techniques and concepts that were barely touched in the videos. People like me expect a paid course to be more self-contained. I also felt like other videos were rushed. The instructor brings up really interesting geometric properties of the dot product, cosines etc but it is just gone through way too fast, too fast to digest or appreciate it, draw other connections etc. There needs to be more connection to the ML/AI world. How is solving linear systems going to help me in day to day ML practise? If eigenvectors are relevant to PCA, then please make a video about that (the intro doesn't count). Markov matrices are brought up in the final section as a motivating example, but again, we need videos explaining this please! That stuff is interesting and we want to see applications. Now for the "positive" comments. I think Luis is a great teacher overall, and I really liked the way there were visualisations, both in videos and in other sections. Playing around with vectors you could move around was great. The quizzes were mostly good and made you think carefully and practise the concepts. The labs helped see the practical side of the concepts. The course covers good ground.

By Diana K

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Jan 13, 2024

A commendable introductory course, yet there are opportunities for improvement: 1) Augment the learning experience by incorporating additional reading materials. It would greatly enhance comprehension to have concise summaries of key lecture points. 2) Enhance clarity through more comprehensive explanations and examples, particularly in the final week. A need arose for external information to complete the last quiz, indicating a potential gap in content coverage. 3) Strengthen the educational foundation by incorporating more formal definitions and formulas into the lectures. While the basics were conveyed through examples, having initial definitions would provide a more holistic understanding. 4) Address the discrepancy in the lab work on neural networks, which seemed somewhat disconnected from the lecture content. A more detailed integration of lab work within the lecture material would enhance the overall coherence of the course.

By Omar e

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Jul 22, 2023

I recently completed the Linear Algebra for Machine Learning course, and overall, I found it to be an excellent resource for understanding the fundamental concepts of linear algebra in the context of machine learning. The course provided a solid foundation and equipped me with the necessary tools to apply linear algebra techniques effectively in various machine learning tasks.

However, while the majority of the course content was explained comprehensively, I did encounter some difficulties during the assignments. Specifically, I found that certain headlines or instructions in the programming assignments were not adequately addressed in the accompanying videos. This lack of explanation made it challenging to grasp the underlying concepts required to complete those specific tasks.

By Miles W

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May 7, 2023

The first 3 modules are great; simple and easy to follow with clear directions and decent labs and quizzes. The last module though is not very good, which is unfortunate because has some of the most important concepts in linear algebra as it relates to machine learning. The final lab is confusing and instructions for multiple parts are unclear. I had to comb through the discussion boards to figure out there were multiple bugs in the lab. I still don't understand the webpage navigation example or how it is supposed to help grasp the concepts.

It was still a good course overall - the first 3 modules were quite good, but the section on eigenvectors and eigenvalues was rushed and did not do a good job at covering fundamentals required. Really poor finish to the course.

By Nandan P

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Oct 9, 2023

Overall a great intro course for Linear Algrebra <> ML. My only friendly feedback is that the final video in the final week, on eigen values and vectors, was pretty rushed and was not comprehensive enough. The quizes & assignment that followed in Week 4, made me feel as if I had skipped some video(s) by mistake, given they used terminology/concepts I had not encountered before. I reviewed the videos and had taken detailed notes and I had certainly not missed anything. Given eigen values & vectors are very interesting topics, I think videos on them can be expanded. Also, solving for eigen vectors was not well explained when the equations had infinitely many solutions. In rest, the course is very good.

By aborucu

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Oct 22, 2023

Very intuitive approach in understanding how a matrix incorporates information. Has a community website which is active and reviewed by TAs. Provides NN and other cosing applications which are very guided, so it only checks your theoretical understanding. Pedagogically could be a bit more fine tuned since some quiz questions take a deep dive whereas the video content doesnt (i.e. if I wasnt proficient in eigenvalue decomp from earlier studies didnt have a chance) but maybe the aim is to take the hassle and ask detailed help in QA forum. Also slides are presented but there has been additions like fundamental subspaces in slides which are not touched upon in videos.

By Aniruddha J

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Sep 16, 2023

If you already have taken a class in Linear Algebra, then this would seem like a basic refresher course. I did like how the instructor approached certain topics like systems of linear equations with simple and easy-to-understand examples. I would go to Youtube to find specific linear algebra topics that have applications to machine learning because the material covered in this course is still not enough. I thought more rigor and advanced topics were lacking in this course. Singular Value Decomposition and LU Factorizations were missing and I'd have would have loved to see them here.

By houda b

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Jun 16, 2023

I enjoyed the course immensely. The instructor did a great job of simplifying complex concepts, making them easy to understand. I learned a lot of new things, and I also gained a better understanding of some concepts that I already knew.

The only thing that I struggled with was extracting eigenvectors after finding eigenvalues. The lesson did not cover this topic, so I had to look it up in other resources.

Overall, I was very happy with the course. I would recommend it to anyone who is interested in learning more about linear algebra.

By Ayoub A

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Jun 6, 2023

Overall the course was very informative and learned much on it but, if I had any remarks to give it would be the following and only related to Week 4: (Week 4 issues) - Course still needs to become more detailed when It came to solving matrices and equations - Eigenvalues and Eigenvectors need to be very much more detailed, also need to check more on the quadratics Programming assignment (Week 4): - Understanding shear / y-axis projections was complex - Understanding Discrete Dynamical System was quite complex

By Kumar K

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Mar 21, 2023

Bad:

Horrible - Very elementary course - did not learn much..

Strange accent with very inferior & buggy transcriptions..

Volume very low..

Good:

The style of teaching was very intuitive, and the Instructor Luis seems quite creative!

Luis, put in the effort to make this better.. last quiz demanded lots of donkey work..

(How not to create a lousy course..)

The only good part is that the Author is creative & enthusiastic..!

Thank you.

By Kaspar L

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May 30, 2023

Good course to refresh the basics. At some points, the intermediate questions in the videos come too quickly. In the case of eigenvalues and eigenvectors, I actually miss a bit more content or a better explanation. 2x2 matrices are nice to explain, but I would like to see further content at this point. This is even in the video on "Eigenvalues and eigenvectors", but from my point of view it comes much too late.

By Atique A

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Jul 16, 2023

The course was well designed and structured. The assignment had a few bugs that I have reported in the community and hope that it will be fixed soon for new students who will be taking this course to transform their academic and professional lives in the future. And thanks to all the people who had contributed to this course and a special thank to Andrew Ng and Luis Serrano for this wonderful course.

By Tom F

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Feb 20, 2023

I wanted to like this course more. Serrano is an excellent teacher, I loved the visual style, but I wanted to go deeper on this topic. I understand that it was geared for beginners; as a practicing data scientist, however, I would have benefitted from a deeper treatment. So, I hope that prof. Serrano will consider a follow up course at the intermediate or advanced level.

By Георгий И

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Mar 28, 2023

A good introductory course, providing the idea of how linear algebra is used in machine learning. I'd rather watch along with 3blue1brown youtube course on linear algebra to get solid understanding. Personally, would like to see a better explanation of the use eigenvectors related to the dynamic states (the last exercise) and some material on single value decomposition.

By Artur B

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Aug 29, 2023

The Syllabus, learning material visualization, additional tools, labs, everthing is solid 10/10. but im having hard time to understan the way the luis talk, honestly, the way he talks is too fast for me, and the conjunction word such as "of", "and", "is", etc, are not pronounced clearly. that's why i need to watch the video repeatly and sometimes on slower speed.

By Néstor P R R

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Apr 29, 2023

It is a great course, but I don't feel enough comfortable with my level in Linear algebra, I learned a lot about linear equations, matrices and machine learning. But I'm not sure if I could understand how machine learning algorithms works. But this course is an excellent introduction to find more information about Linear algebra.

By Talha K

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Jul 2, 2023

The material is well thought out but the examples are not that great, The instructor tends to use colloquialisms which is fine but sometimes hard to follow. The examples could be more thorough and step by step. A number of times they move from one matrix to another transformation but its actually multiple steps condensed.

By Abhilash P

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Feb 24, 2023

An excellent coverage of Linear Algebra with very good hands on assignments to make the concepts sink in. I do believe that the lectures can be improved a bit more especially for the more complex topics with more examples to work through. I had to refer other lectures and videos to really understand many of these topics.

By Mark N

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Mar 15, 2023

A mostly good, thorough and intuitive introduction to linear algebra. Unfortunately, had to rely on some other resources to complete assignments in week 4 as explanations seemed to be insufficient (maybe just me). Plus, programming assignments used notations that hadn't been discussed previously.

Very strong 4/5.