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Learner Reviews & Feedback for Tools for Data Science by IBM

4.5
stars
29,125 ratings

About the Course

In order to be successful in Data Science, you need to be skilled with using tools that Data Science professionals employ as part of their jobs. This course teaches you about the popular tools in Data Science and how to use them. You will become familiar with the Data Scientist’s tool kit which includes: Libraries & Packages, Data Sets, Machine Learning Models, Kernels, as well as the various Open source, commercial, Big Data and Cloud-based tools. Work with Jupyter Notebooks, JupyterLab, RStudio IDE, Git, GitHub, and Watson Studio. You will understand what each tool is used for, what programming languages they can execute, their features and limitations. This course gives plenty of hands-on experience in order to develop skills for working with these Data Science Tools. With the tools hosted in the cloud on Skills Network Labs, you will be able to test each tool and follow instructions to run simple code in Python, R, or Scala. Towards the end the course, you will create a final project with a Jupyter Notebook. You will demonstrate your proficiency preparing a notebook, writing Markdown, and sharing your work with your peers....

Top reviews

DE

Aug 14, 2022

I love the detailing of every aspect of this course. The Labs, the free subscriptions and free trials provided by IBM Skills Network, everything has been so amazing. Thank you Coursera, thank you IBM.

MO

Apr 17, 2023

the best course for the beginner who is going to start his data science journey. This course tells you all options like tools, libraries, programming languages, etc. Highly recommended for beginners.

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2576 - 2600 of 4,754 Reviews for Tools for Data Science

By Misty W

Apr 30, 2021

Learning a little in a lot of various areas of data science, but lack of updates in some sections are the cause for labs and assignments taking much longer than necessary. Overall, it seems to be good introductory material in the first course for the IBM Data Science Professional Certification.

By Zezhou J

Sep 24, 2018

Comprehensive but student-friendly introduction to common and popular open source tools for DS. Although tools are the most popular ones, the course relies too much on the IBM platforms, which kind of bind the students to the IBM products. Lectures in the first two weeks are a little bit dry.

By Emre C Ö

May 15, 2020

Great course for getting knowledge of available open source tools for data science. Only thing is, it is sometimes hard to follow the videos since the IBM Watson Studio is updated since the course videos have been recorded. There can be update information after the videos for clarification.

By Cecilia A

Apr 1, 2019

I think this course should be forward. Now that I'm doing the 3rd one (DS Methodology), it is more useful to understand what data science means and the process that involves. It gives you the big picture while the Open Source Tools course it more specific and more technical, in my opinion.

By Sema K

Apr 11, 2020

Nice to give a headstart before furter exploring but some tools are never used throughout the course. For example apache spark. Besides if you are including the introduction here I think there is no need to put extra readings about how to obtain an IBM Watson account over and over again.

By Manthan M S

Jun 11, 2019

IBM Studio's layout has changed and the videos in Week 3 explain using the previous layout. This led to much confusion in the peer graded assignment. It would really help future participants of the course if the videos in Week 3 can be re-shot using the updated IBM studio site. Thanks!

By Usman S

Jul 15, 2019

i think it is better to have assignments which could give insight of using the technology. current assignments are barely touching the surface. Secondly, moving from AI experience to Watson studio has some visual options different which created an issue in finding some of the options.

By Joseph A V

Jul 27, 2020

I enjoyed the course and overall it satisfied my expectations. There were confusing instructions that were duplicated and sometimes not clear which disrupted how the learner should scaffold their knowledge. Otherwise, the content covered sufficed to fulfill the learning objectives.

By Poornima P K

Dec 18, 2019

It's a good introductory course, but the content needs to be updated esp. setting up IBM Watson Studio, though it is not so much of problem, you just need to explore a bit and you'll get it done in no time. I think that's the essence of online e-learning platforms, explore and learn!

By Mª J N C

Dec 12, 2023

Good material and organization. The scheduled times are useless because, generally, it takes longer to complete the tasks. Note that some organizations do not allow for the display of the software in the their computers. Hence, there is a need to use two computers simultaneously.

By Tobías O

Jul 5, 2022

I think its has too much information, i would prefer a good introduction and then center on only a few tools. Also, i think it would be beter if the course leans towards learning and understanding than besides memorising. On the other hand, the labs were great, i really enjoy them.

By Spyros A

Nov 15, 2018

While this course is a very good introduction and generates and overview for the tools i would like to have some more fundamental information about for example what is spark and where is used (examples of real life scenarios etc etc.)

Maybe it will be covered in the next courses.

By Daria S

Oct 2, 2018

I fully satisfied this course, but I had a problem with IBM Cloud which closed me an access to my project, because I had to stop each session and, as it turned out, it was explained at the IBM website (not at the course instructions). In this case, I had to miss a whole week.

By Belvin S A

Jan 29, 2021

not recommended for a fresh data science, because many thing that's really odd for a new on this focus course, but i still recommended it because it still usefull. we can learn the jupyter notebook's work and github too, and i think it's really a good point in this course.

By Alvin Z

Sep 28, 2024

Perhaps the course creators can instead of us havnig to screenshot each picture of the assignment, just let us share the link and leave it at that. It's a bit redundant to screenshot 13 times for a cell that takes 2 seconds to write. Half my time is just saving pictures.

By Anthony M R

Oct 21, 2018

There need to be more standardization with naming via IBM Watson (Data Science Experience vs Watson Studio...videos should reflect the current version). It is also unclear how after finishing the labs, whether or not the completion is then noted within the course itself.

By Marjorie V

Apr 21, 2020

There is not a lot of time spent discussing the why for these tools, just an introduction and some code we could copy and paste. As this is a new language for many I would like to know more about most utilized tools and an intro to what codes etc are most foundational.

By Allan M

Oct 4, 2021

Very insightful course, the only downfall was that for some of the instructions for the GitHub usage was extremely confusing. This could be due to versioning or the interface used. I referred to GitHub for a more informative instructional information to configure SSH.

By Sandra L

Jan 25, 2021

This course is very well constructed and very informative. A very good course that provides systematic information to beginners. Some of the contents and explanations are a little dry, the instructors can consider making it more fun and easy to understand for learners.

By Antas J

Sep 4, 2019

Since there was no one to one interaction for major part with any instructor, it got little dizzy to understand the working of the tools but however, I completed the course and learned to use these tools, as it comes out, practice is the key.

Thanks Coursera for that.

By Yolanda J

Oct 10, 2019

Good course, but some of the videos need to be updated as they don't follow the current layout of IBM Watson. The one upside to that is it makes the student have to hunt for the links and having to do that makes the student retain the locations of links and options.

By Aman R K

Dec 31, 2019

IBM Watson studio has been updated and the tutorials are not helpful enough to get started. It took me an hour to figure out how to use notebooks in Watson studio. It would be more helpful, if tutorials are also updated according to the updated IBM Watson studio.

By Amy P

Apr 25, 2019

A good overview of popular data science tools. In a couple of the videos, I would have liked there to be more original content, rather than just reading the text off of the websites. Still, the course gave me a quick idea of what is out there. Still lots to learn.

By Roman S

Apr 3, 2020

A lot of the information and navigation was outdated. IBM Watson Studio does not really return errors, so in case what you see deviates from the course material and you can't progress, there's no help specifically on Coursera. Otherwise the course is quite good.

By Hemanth S

Apr 13, 2020

The Zeppelin Notebook part was not impressive, could be cause of the instructor or either the notebook is built so. I have to practice Zeppelin a lot again to get a good feeling about it or even better, completely ditch Zeppelin for Jupyter or IBM Watson Studio