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.
By Manoj P
•Oct 30, 2018
can be done much better
By Rao M H
•Apr 1, 2020
Lab are working worst
By Rajesh K R
•Dec 12, 2019
Good for beginners
By Сокол С А
•Dec 2, 2019
Too superficial
By Bido Y
•Jan 9, 2024
not bad,useful
By Anand V S C
•Nov 29, 2022
Too simplistic
By Muhammad M M
•Apr 7, 2024
Nice course,
By Sumika M
•Jan 15, 2022
Good Course.
By fatama j
•Oct 31, 2022
good.
By Swastika B
•Jun 3, 2022
GOOD.
By sandra h e
•Nov 28, 2023
good
By Akash D
•Aug 20, 2020
Good
By Lyn S
•Aug 23, 2019
It's too bad some people with phds and very poor teaching skills think they can write up some code and feel they are teaching these classes. That being said, it's super cheap and it's very easy to find information online to supplement the lack of adequate descriptions of the topics. Changes that would make me more likely to take another coursera class :
Don't have a bunch of really short videos, combine them into one longer one.
If there is text or code on a slide, make sure that is in the transcription.
Don't have the dumb popup questions that stop the video and make you find the mouse and click to restart the video. Many of us are listening to the video doing something else, I listen over and over. Sometimes, I have to read the transcription to understand what is being said, so I have to stop, get the mouse, click back up to the slides, press SKIP, etc...
If you have an exam, make sure to later send us the answers - e.g. the code that we were expected to write. This is the weakest and most frustrating part of this class. I was not sure how to some things, in part because I wasn't sure what was being asked, to what detail. Even the class discussions showed we weren't sure what data set to use for what. It seems to rely on peer grading, but most of the responses I got from peers was either completely absent or not useful. But thanks for keeping this relatively cheap.
By Dmitrii L
•May 11, 2021
The course covers basic machine learning algorithms and I do not fully understand why it's ranked as an Intermediate one.
Pros:
You will definitely pick up some new skills after completion this course.
There is simple explanation of a basic idea underlying each algorithm the authors present in the course. It's not hidden in tons of math which is good for beginners and is likely to be bad for those who know something about ML and want to get some deeper understanding.
Cons:
You pay for the course and receive a massive advertisement of IBM services. This shouldn't be tolerated.
You are forced to fulfill a final project using IBM Cloud and Watson studio. So, even if you don't want to work with those tools, it's mandatory for you to waste your time on picking up potentially useless skills.
You might encounter with an error occurring during a signing up on IBM Cloud page. In order to resolve the issue you might need to contact their support team, which is quite annoying, time-consuming and, moreover, your subscription may start another month and you won't be able to suspend it if you want to get a certificate.
Think twice before enrolling into this course. I'd better find an alternative.
By Miranda C
•Aug 22, 2020
At first this class seemed easy to follow, but that was deceptive. While I learned some theory (and some mathematics) behind the algorithms we were meant to learn, there was far too little emphasis on how and when to run the actual code. Normally the labs are a helpful part of these courses, wherein I have the opportunity to actually learn code. Not so with this course.
When I reached the final project for this class, I had no clue how to do what we were supposed to do, as essentially, it had not been taught within the course. I had to seek out other sources in order to actually learn the material and make a lot of educated guesses about what I was suppose to do. I suspect (or hope) that much of this will become easier when I re-take Statistics and some other maths (not course requirements), but that won't make up for the deficiencies in the course. Lastly, the typos and other grammatical errors are extremely distracting and misleading (i.e. "lables" -- do they mean "tables" or "labels"? Who can say for sure!).
By Britto T
•Dec 17, 2023
The laboratory interface falls short of expectations; its quality does not align with the high standard of the content being taught. In my recent completion of the advanced data analytics course, the Jupyter notebook interface stood out for its excellence, maintaining a clear connection with the course material and lab exercises. For instance, the course taught us how to utilize scikit-learn for the train-test split operation, but the exercise content merely presented the code without the context. While the simplicity is appreciated, there is a noticeable disconnection. If the lab exercises followed a structured approach similar to the course content, such as starting with step 1 - importing libraries and modules, then proceeding to data splitting, model building, fitting, and prediction, it would enhance the learning experience. As it stands, this discrepancy may pose challenges for individuals who are new to machine learning as a subject
By Thomas S
•May 13, 2020
Like many of the courses, the instructions are not in a format that supports incremental learning and focuses on the mechanics for performing an activity rather than an explanation for why and the reason we are doing these things.
The objectives and measures of success for the final exercise is not clearly articulated, causing me to guess as to what the evaluator had wanted us to do. The instructions said to solve for the four types of methods, but left it to the student as to if they wished to generate graphics, etc. If the only objective was to generate the Jaccard score, F1 score, and LogLoss (as appropriate) to complete the activities, then it should have been stated. In addition, the examples presented in the course labs did not have us generating the F1 and Jaccard scores for many of the models.
By Laura A B
•Aug 20, 2024
The lectures were interesting, however, I do not think that the labs are at all aligned with the knowledge learned during the courses, at all. All videos and reading material are about theory and mathematical concepts, which truly are interesting, but there is zero Python training in this course, a soon as you get to a lab, you need to figure it out on your own. As a reference, AWS labs are 100% guided which makes them way easier to learn. Also, I felt that some of the lectures started from very basic concepts, but then they quickly escalated to much more complex ones, specifically from Module 4. I think there should be a warning before starting this course to ensure people know some Python - if there is a specific course to covers these concepts, it should potentially be part of the certification.
By Ksenia T
•Apr 27, 2021
From all the courses so far in this certificate this course feels like the least taken care of. Material gets outdated, same typos and bugs according to the forum persist for years, staff replies only very generally. Frustrating issues with online tools they provide when they don't work well for days. I have done most of the labs on the local environment and strongly suggest to everyone else to do the same. Overall I feel like I gained new skills, but it could have been achieved in a better manner. I would not recommend this course to my friends. P.S. And what on Earth is with these forums filled with "Please, review my project"? Any useful threads are drowning among ridiculous requests to do peer review in the course that has automated peer-review system. Jeez.
By Alexander W
•May 6, 2020
Even for an introductory course most lessons lacked depth. Usually the broad idea of an algorithm is introduced and then an exercise shows a python call to which applies it. However neither are there any theoretical/mathematical insights why the algorithm works, nor does one obtain relevant practical knowledge. E.g. the course fails to even superficially explain the many options and parameters each algorithm has and which are necessary to actually apply it in practice.
What makes it worse is that there is apparently no support and maintenance for this course: There are tons of smaller and some larger mistakes in the lectures as well as the exercises, however reports of those as well as most other questions in the discussion forums remain unanswered.
By Reha P
•Jul 19, 2020
This course was definitely informative, but the final assignment grading process was ridiculous. There was way too much ambiguity with the grading criteria. I submitted the same exact assignment twice, the first time I got a 13.5 and the second time I got a 25. This should not be possible. Much like some of the other courses in the IBM Data Science certificate program, I HIGHLY suggest adding an image of what the solution should be instead of leaving it up to people to determine what they think is right or wrong. This turned into an all day process for me and I'm beyond frustrated with the course and relieved I'm done with it.
By Ankit K
•Jul 27, 2020
Very deep with less, almost zero explanations. Not at all for beginners. Either, it has been given as an overview or should completely moved to Professional Segment.
As I remember, at the very first starting of this IBM course series, it was quoted that you need not to know much coding, but what I am observing by end of the modules, it requires lots of coding.
There must be specific guidelines what to learn, what to master before attempting, otherwise it just becomes a mere certificate.
By Dominik S
•Nov 8, 2023
This course teaches people that it is a valid training technique to train on the whole dataset and then use a subset of training data as a testing dataset. I think i would get fired from my job and kicked out of college if i ever said that. Other than that this course is an extremely shallow introduction to machine learning, useful more as a quick preface to what you'll learn in your first semester at college, rather than something that will be of practical use to you.
By Brandon M
•Feb 17, 2021
Pros:
1. Nice introduction to machine learning
2. Videos are not too long
Cons:
1. Code in exercises made no sense
2. In some videos the presenter went into mathematical concepts not needed to understand the technique itself (at an introductory level).
3. Final assignment was difficult to follow as instructions were not clear
4. You will learn more if you read a machine learning book in conjunction with this course
By Erik D L
•Dec 28, 2019
The videos are good, very clear
The lab exercises when compared to rest of the course is not satisfactory because in lab sessions, the algorithms were not explained and lacks Student excercise. It also lacks clarity around when to use which algorithm
almost every lab uses a distinct code compared to other courses i think it needs more commenting i didn' like the final grade either because is very subjective