Chevron Left
Back to Tools for Data Science

Learner Reviews & Feedback for Tools for Data Science by IBM

4.5
stars
29,204 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.

Filter by:

3601 - 3625 of 4,771 Reviews for Tools for Data Science

By Mauricio J F C

Oct 18, 2018

In this course one can learn very useful tools, each of this with different targets, with good examples and material. But some material (mainly videos) are deprecated in some degree, turn learning in an uncomfortable experience, because lead to make some errors and many time must be invest in relate information of video with actual web tools.

I hope this problem will be solved soon.

By Deleted A

Jan 25, 2022

The course provided an overview and very shallow hands on tutorials. appropriate for beginners. Course materials were out of date and IBM's own platform was not working as intended for the course causing frustration with this student and others as seen on the discussion board. Even so, I learned quite a bit on how to get started with a good sampling of tools.

Thank you.

By Sara J H

Sep 11, 2022

Lots of material and tons to remember. It's unclear what is important and what is just "good to be aware of" until you get to the quizzes and need to remember much more in detail. The videos are way too fast for beginners inmy opinion but the exercises are well explained and easy enough to follow along. I would not recommend this for someone with no experience in this field.

By Deleted A

Dec 6, 2019

This was a solid course. I learned what the tools were for data science. Some of the vocabulary was difficult though, as the instructor's seemed to expect that terms such as 'RDD' were common knowledge to the audience and did not stop to explain them. For me, it was difficult as I felt like I had to learn an entirely new language and then learn about the tools on top of that.

By Steven P

Jan 3, 2022

Please fix the Watson Studio and IBM Cloud access. Once the 30 free trial is over, it is extremely difficult and frustrating to get access again to complete the final assignment for the course. The final exam is much too difficult for a beginner course of this caliber. The information being tested was too detailed for a course teaching a tools overview for data science.

By 刘四维

Nov 20, 2018

1.The interface was often "frozen", don't know it's the problem of the course or coursera.

2. The clips are too long-winded, explaining every single steps of creating accounts, projects, etc., which can be better done if we just explore them by ourselves. And the webs are already changed and operate differently compared to the clips, which makes the clips sort of misleading.

By Laureta A

Apr 10, 2020

In really enjoying learning .However, I thing that the lectures must be updated to help to complete successfully our projects. Something valuable I learned from this course was click , delete .search make you feel comfortable with the new tools I learned. Hopefully , in the next courses we be able to get more clarification, especially iif we are new in data science.

By Alexis Z

Jul 1, 2019

I feel I just got to try a bunch of tools out there but didn't have a clue how they could be used in the real world. I mean I certainly could look into those tutorials in the community but registering for a course is to save me some time browsing through random topics. I think the course can be a bit more structured and provide more meaningful practice opportunities.

By Mariano J C

Jul 14, 2020

This course is well organized and rich in content; yet at times, it felt like instructors were just zooming though to deliver the content and not necessarily teach. Obviously they are not professional or trained teachers, but mostly it seems, they were just reading from the script, and that makes the experience and learning more challenging. Overall, great content.

By Ankur G

May 19, 2020

A great course to get insights about various Data Science tools at our disposal to analyze and visualize data to make effective decisions. I thank the professors to make this course interesting and worth it.

Just one thing though, some more insights about these Data Science packages would have enhanced our familarity with these packages, thus helping us immensely.

By Gavin P

Feb 18, 2020

Not good. Bugs. Discrepancies between material and tools. Probably needs to be updated. I might drop this track and go to another set of courses because this course is fundamental to the other 7 in this track, and IBM tools are not widely enough used to warrant spending a lot of time learning a track that is IBM tool specific.

And my latest submission is empty???

By David C

Mar 10, 2022

Some good material on Jupyter and Github but way too much on IBM cloud/Watson.Also, most of the IBM materials were out of date with poor explanations requiring you to figure out how to do things in the cloud on your own, with trial and error. They also tested the IBM material through irrelevant minutiae making the quizzes harder than they needed to be.

By Shady S

Apr 25, 2020

The outcomes expected from people in this course are vague. The course presents some more advanced programs within the modules and its not tole to us whether we need to understand the code or we are just supposed to run it as is without knowing what is happening inside. I mean the content is interesting but it is more advanced to beginner level.

By Atfy I Z

Apr 11, 2020

A good course if you are interested to go beyond merely knowing what Data Science is and try yourself on the open source tools available.

The instruction in the course, however, can be a bit confusing, particularly if you do not have computing background. That being said, with a little bit of extra effort, a newbie can still follow this course.

By Chika

Sep 23, 2019

Unfortunately, I did not have the best experience with this course. The IBM Watson Studio course content is not up to date. I spent a lot of time trying to figure out where to find information. Thankfully, the discussion forum helped me understand that the course content was a little outdated with regards to screenshots and nomenclature.

By Martijn M

Oct 22, 2020

A great course to learn about different tools and to try writing code for the first time. But week 2 was not so great: some of the video's explained step by step what to do, but not why or what happened exactly. Some of the video's were the same as the readings and sometimes the order in which the metarial was presented puzzled me a bit.

By Rohaan N

Aug 5, 2020

A few instructions need to work on their communication skills and videos from week 2 have don't have a linear information flow. Plus, week 2 the instructors tend to jump into the middle of things which leaves the student confused.

All the other instructors and amazing and this course is a really good intro to many of IBM Watson tools :)

By Balu

Jul 29, 2021

Almost i got Headache ! , Tools for Data Science is complete theory about tools used in data science . I found This course is completely little bit out dated subject about IBM Watson studio. Watson was pretty good cloud platform for data scientists, But this course material not reached up to the mark for delivery a quality subject.

By Venkatesh S

Sep 15, 2019

This one is basically IBM peddling its wares! But I guess if you don't already know how to use Jupyter notebooks, this can be a good place to start. I won't recommend paying exclusively for this course! But if you are taking this to get the IBM Professional certificate, then just go through it quickly with the videos at 2x speed.

By Aurelio A I

Dec 23, 2019

The videos are not updated. I know the people in the texts say so but it was very difficult to me to follow one of them. Due to this, I realize how bad is Coursera's help and support and forum management since I had to find my way out to finish the course. This is a complaint on the platform, not on the course. The course is OK.

By Aravind B R

May 28, 2019

The instructions on IBM Watson studio aren't very good, given that the tool has changed. Spent over an hour trying to create a new Jupyter Notebook. During the storage selection, after clicking 'Add', you need to pick existing and not Create New. Then select the storage, go back and click 'Refresh' on the Notebook creation page.

By Olivia V

Nov 24, 2020

Rather uneven. Some parts are explained step-by-step, some are vaguely glossed over. Several times, course material is mentioned, either in the labs or (worse) in the quizzes, that hasn't been seen yet. Some technical problems with Watson Studio have yet to be solved. Overall, the tools are presented without useful context.

By Stefan G

Jul 31, 2020

About half of the lessons are useless, as the lecturer jumps into topics that never came up before and starts coding stuff, without any explanation. He seems to be a good data scientist, but lecturing people is not his thing. There are hundreds of complaints in the forum about these lessons, but nothing was updated so far.

By Rick K

Nov 15, 2021

The overall course was pretty good. It felt a little bloated. Final Exam instructions were unclear. The pop out instructions that said "Detailed Assignment Instructions" Did not list what had to be in it. Which meant the first time around I didn't have enough because there was no clear guidance until you read the rubric.

By Gregory D

Jan 4, 2023

Good overview but doesn't dive into anything specific. It might be more useful to have a limited number of tools in the overview (like the ones most commonly used or what would be used when starting) and go into slightly more detail on their uses and applications. Nice to finally work with GitHuh and Jupyter Notebooks.