Chevron Left
Back to The Data Scientist’s Toolbox

Learner Reviews & Feedback for The Data Scientist’s Toolbox by Johns Hopkins University

4.6
stars
33,933 ratings

About the Course

In this course you will get an introduction to the main tools and ideas in the data scientist's toolbox. The course gives an overview of the data, questions, and tools that data analysts and data scientists work with. There are two components to this course. The first is a conceptual introduction to the ideas behind turning data into actionable knowledge. The second is a practical introduction to the tools that will be used in the program like version control, markdown, git, GitHub, R, and RStudio....
Highlights
Foundational tools

(243 Reviews)

Introductory course

(1056 Reviews)

Top reviews

SF

Apr 14, 2020

As a business student from Bangladesh who is aspiring to be a data analyst in near future, I love this course very much. The quizzes and assessments were the places to check how much I exactly learnt.

LR

Sep 7, 2017

It was really insightful, coming from knowing almost nothing about statistics or experimental design, it was easy to understand while not feeling shallow. Just the right amount of information density.

Filter by:

6651 - 6675 of 7,151 Reviews for The Data Scientist’s Toolbox

By Mark P

Oct 11, 2020

the computer voice is very hard to handle.

low production value of the course in that part.

By Kapeesh

Jul 26, 2020

Video lectures where TTS, not at all engaging. Thankfully, text material was well written.

By Shahrooz

Jul 22, 2016

Overall the course content is good, but the power points are not engaging and interactive.

By Mantra B

Jun 27, 2020

Very Basic level. A little difficult to stay focused without having an instructor around.

By Sadanand U

Aug 19, 2018

Very basic, may be a bit more use cases on Git would have been useful. But that's just me

By Uian S

Nov 23, 2017

Few content for an entire course. I think this one could be together with R Programming.

By Ali A F A N

Apr 12, 2020

Wasn't as good as I expected, but still I learnt from it, I can say it's above average.

By Andreas L

Dec 3, 2017

I am aware that this is the introduction to this topic but it was a bit long-drawn-out.

By Juan J E

Oct 22, 2017

I was already familiar with some content. it was a good starting point for may training

By Craig G

Jan 27, 2017

A good intro to the tools, but for anyone with prior programming experience unnecessary

By Debanjan D

May 25, 2019

Okayish course. This course will give you an introduction in RStudio and Data Science.

By João P S

Sep 7, 2017

Too few activities for the time allocated. I completed this course in 4 periods of 2h.

By Danyal B

Jun 7, 2017

I think the project became very confusing since no examples were done in the lectures!

By Seckin D

May 20, 2016

I think this class is best for academic people. I did not find what i was looking for.

By kheman g

Aug 5, 2020

This is a very basic of the course where I learned so much about the different tools.

By John Y

Jul 8, 2017

This could be wrapped into one of the other courses since its just environment setup.

By R G

Jan 17, 2017

Pretty simple, the Univ of Michigan Data Science with Python set the bar pretty high.

By Ankush K

May 31, 2017

A little boring. Necessary if you have ABSOLUTELY no experience with data analysis.

By Drake O N

Mar 17, 2017

Good starter setup. Looking forward to the technical portion of the Specialization.

By Yash D

Mar 24, 2020

the course is good but the language is little bit hard because it is auto generated

By John P

Aug 24, 2017

peer review was sporadic, had to redo several assignments based on language barrier

By LUIS E M H

Nov 12, 2020

Una buena introducción de los fundamentos y herramientas para el trabajo con datos

By Snow L

Nov 17, 2020

This was a good intro for novices, except the automated robot voice was annoying.

By João “ L L

Dec 31, 2019

It`s too introductory. The methodology with an IA voice it`s not comfortable yet.

By Ivan S

Jan 12, 2016

highly recommended for newbs in any kind of development, otherwise waste of time.