KK
Feb 23, 2020
Terrific introduction to the Data Science course. Never expected but was extremely excited with the quality of content, speakers and a very honest attempt to making this course interesting.
Krishna
PD
Jul 18, 2018
I thought this course introduced the topic of data science very well. I think I have a much better idea how to describe data science and common terms associated with the field (like machine learning).
By Erik M
•Jan 3, 2019
Friendly and gentle introduction to data science! Can't wait to go further...
By AKASH P
•Jan 15, 2022
I throughly enjoyed the course and the fact that everything was explained thoroughly. I always enjoyed Dr. White's personal experience with Data Science as well as other Data Scientists point of view.
By Robert C
•May 23, 2019
Good overview of data science, its history, and uses of data science.
By Souro C
•Dec 31, 2018
It was a good introduction for everyone even novice.
By Shahul H
•Jul 25, 2021
Thank you for this coursera.
I get know experience and knowledge in using different kinds of online tools which are useful and effective. I'll use some of them during my lessons. And lots of thanks
By Yaron R
•Jan 2, 2020
This course is borderline insulting!
The entire course content could be summaries on half A4 page.
The video clips are interviews with people working in the field. the reading material either reiterate the video clip content or presents a new concept in an elementary school level.
By Ankit S
•Jul 30, 2019
I dont appreciate the Peer-graded assessment part. It is simply not acceptable to be reliant on other students for assessment. This is just lazy.
By Sebastian S
•Mar 28, 2019
IBM Cloud advertisement and nothing more.
By Reinhard H J
•Oct 9, 2019
I'm sorry to give a low rating, but this course is condescending. Some of the statements are also opinions that contradict things you will hear in other courses, not to mention that a great part of the course is obvious, academic approaches and even how to structure a report like a thesis.
This course added absolutely nothing to my knowledge. You're better off reading a recent blog post, or simply an introduction from a good book on applied ML/data science.
By Clayton B H I
•Dec 12, 2018
This is literally just hype for data science with no substance, include coding from day one or get real, I'm here to learn.
By Mateusz K
•Dec 31, 2018
Quite vague and repetetive, I didn't feel like there is a structure in the course, more like a collection of random thoughts by various people. It's more an introduction to what data scientists think about data science than an introduction to data science itself.
By Weishi W
•Oct 21, 2018
For what?
By Felix O ( A
•Aug 21, 2023
This course is rich, engaging and thought provoking. It is a solid foundation for a career in data science. I now feel more confident that I can excel in this field. Thank you IBM! Thank you Coursera!
By Sobhan A
•May 6, 2020
Completely waste of time! Very Disappointed with this course. This teaching method is completely inefficient. Some professional people will be interviewed and then you should answer quizzes after each video. It takes more than 3 hours to complete this course, however, all useful information could be provided in 5 slides and discuss them only for 20-30 minutes.
By Patryk W
•May 10, 2019
Little value in terms of knowledge or skills for somebody paying for this course. Single Wiki document will cover the entire course content.
By Jan D
•Oct 5, 2018
Don't take it. No Course Instructors, no help. Not worth the money...
Even the Working Platform is always timing out or has a gateway error.
By Rick N
•Apr 27, 2018
I did not learn much from this course. I did not enjoy seeing the young data scientists talking about their jobs. I was not too impressed by Dr. Haider or the professor from NYU.
Dr. Haider misused some words, such as "judgmental" and "argumentative". Without any evidence or examples for support, he claimed that it was more important for a job applicant to have a sense of humor than technical skills.
This course should have named specific techniques used in data science, and how to acquire the knowledge. Regression was mentioned, but the explanation was inadequate. Perhaps the explanation should have been omitted. K-nearest neighbor was mentioned.
Many students want to know what courses to take next, what computer languages to study, etc. What are the computer programming languages of the future?
Students cannot learn everything. Would it make sense for someone to skip some things, and to focus on others? Should everyone learn Python? Does everyone need to learn SQL? What about Tableau? Is that worthless?
How should students set their learning priorities in order to achieve a basic or minimal skill set within 3 or 6 or 12 months?
Remember that most Coursera students already have a college degree.
The course was created several years ago, so I think it needs to be updated regarding developments of the last three years.
By Nathan S
•Jan 3, 2019
This was a nice and easy course, but the material was quite obvious and not new and could be included in one week lessons of another course.
By Xueting L
•Dec 27, 2019
This course has only maximum 20% useful content that could have been covered as an executive summary in 10 minutes instead of a whole week. A lot of the content is either fluffy socializing or irrelevant secondary information that has nothing to do with data science. As a toxicologist I'm interested in applying data science to my aggregate exposure estimation, and I have absolutely no interest in knowing the base salary of a data scientist working in North America, or which organization says what (facts do not care about opinions!) but unfortunately this was a mandatory question in the quizzes and was a waste of my time. And I find the self-introduction part of the final assignment a bit surreal and again irrelevant. I come here to learn about data science, not socializing. We have facebook, twitter and instagram for that. What my name is or what I do is irrelevant to others who take this course; where others come from is irrelevant to me; we're wasting our time saying something irrelevant and being forgotten by others in 5 minutes. Hoping to see more tangible content in the next courses.
By Dafydd J
•Jan 17, 2019
i thought a lot of questions were subjective at aimed at the academic field. It neglected to refer to real world situations and jobs, which is where the majority of learners will surely be coming from. Probably a little bit my own perspective, but I dislike when Data Scientists big them up to be so much better than every other profession and separate themselves from statistics so much (it's part of statistics and should just be considered a branch of such in my opinion, not a separate profession). There was too much of it here.
By Angelique B d l F
•Mar 27, 2019
Very very superficial, most of the course material is about the profile, job and prospects of a data scientist. Hardly any of the content is about the actual science and technology. A few sketchy minutes are spent on Hadoop and deep learning, the rest is fluff. Waste of my time. Too bad, IBM is such a forefront player, I expected a lot more.
By Tian Q
•Oct 15, 2019
In the peer graded assignments, there are always students intentionally click on the lowest score!
By Joel L
•Oct 22, 2018
Didn't really learn anything but I guess it was a good gatekeeper.
By Dharmendra K S
•Aug 14, 2019
Descriptive picture of data science. Videos are short but nicely presented which gives an student a clear idea of the subject. Even Documents at the end of the course presentation are well explained.
By Linda T
•Dec 14, 2019
It is my first time to take an online Coursera course. I am badly grateful for your financial support. too many thanks seem not enough to express my happiness to finish this course about data science