Chevron Left
Back to Data Science Methodology

Learner Reviews & Feedback for Data Science Methodology by IBM

4.6
stars
20,435 ratings

About the Course

If there is a shortcut to becoming a Data Scientist, then learning to think and work like a successful Data Scientist is it. In this course, you will learn and then apply this methodology that you can use to tackle any Data Science scenario. You’ll explore two notable data science methodologies, Foundational Data Science Methodology, and the six-stage CRISP-DM data science methodology, and learn how to apply these data science methodologies. Most established data scientists follow these or similar methodologies for solving data science problems. Begin by learning about forming the business/research problem Learn how data scientists obtain, prepare, and analyze data. Discover how applying data science methodology practices helps ensure that the data used for problem-solving is relevant and properly manipulated to address the question. Next, learn about building the data model, deploying that model, data storytelling, and obtaining feedback You’ll think like a data scientist and develop your data science methodology skills using a real-world inspired scenario through progressive labs hosted within Jupyter Notebooks and using Python....

Top reviews

AG

May 13, 2019

This is a proper course which will make you to understand each and every stage of Data science methodology. Lectures are well enough to make you think as a data scientist. Thank you fr this course :)

JM

Feb 26, 2020

Very informative step-by-step guide of how to create a data science project. Course presents concepts in an engaging way and the quizzes and assignments helped in understanding the overall material.

Filter by:

1776 - 1800 of 2,575 Reviews for Data Science Methodology

By Yongda F

•

Jul 16, 2019

I think this course is quite brief, some of the terminologies are not well explained. But overall, this gives some insight into data science and is a pretty good introductory course. I hope this course can have more detailed knowledge.

By Anagh S

•

Oct 20, 2022

The case study in the video was pretty complex to understand. Thankfully the case study taken in lab ( japanese dishes) was very simple and easy to understand. Overall a good course to understand the methodology used in data science.

By usman k

•

May 19, 2021

Slides needs to improved , text spoken should be presented in text form in Video as well. Over coverage is comprehensive very informative , for learning purposes text should be presented. over exercises and tests are very high quality

By Siripat W

•

Nov 1, 2018

I think this course need more resource to teaching a students, It's so difficult to understanding but I received a lot of knowledge from searching a resource, However if it possible to attached more resource that/s be great. thank you

By Carolina C S

•

Jan 2, 2020

I believe this course is key to have an overall understanding of the Data Science Methodology, however found that it was a bit un-organized and some stages werent fully clear, so had to look for additional information in other sites.

By Sridhar M

•

Jul 18, 2020

This is a good course - I would have given 5 stars for the course if there was a hands-on lab to build a Supervised Regression model with some data sets and introduced the learner to normalization and fundamentals of statistics.

By Yael I V N

•

Apr 30, 2020

Doing it for the IBM data science certificate, definitely liked this course more, as what is taught is linked in an excellent way with the interactive Notebooks, letting you experiment with the code to learn their inner workings.

By Abigail B

•

Jan 10, 2020

Great walk-through of the general steps of a data science life cycle! My only complaint is that the materials often spoke of more than one step of the ten in a video, making it easy to confuse what things belong to each step.

By Muhammad A

•

Sep 19, 2019

The instructor's speaking pace was quite fast so had some difficulty understanding the lecture because of that. The case studies should be kept simple. Congestive heart failure case study was quite difficult to understand.

By Paulina B

•

Apr 4, 2022

Well explained and concise. The test questions were at times hard to understand and the answers to some were in the following videos. The practice questions should be related to the video just watched not the next one.

By Marcel V

•

Jun 18, 2019

Capstone project is a bit limited on 3 topics to choose from.

Why not more creative or even let the user come up with his own problem !!

Still you do learn a goo methodology to handle a problem with datascience approach

By Spyridon M

•

Jul 6, 2019

This course through the explanatory videos of each stage of Data Science Methodology and a case study provides you with the mindset a data scientist needs against real-world problems. Would definitely recommend it.

By Itamar S

•

Nov 4, 2023

Overall great, maybe the most critical knowledge when starting out with data science. However, videos tend to be too short, could go more in-depth and provide better explanations and maybe more practical examples.

By Jeremy H

•

Apr 4, 2020

Good overview of the process overall. Lecture style, not a project based course. Some of the videos don't always completely convey the information as expected in the quizzes, but still overall good information.

By Ajani O

•

Apr 25, 2020

The course is an expository one that has helped me understand some other vital areas of data science. The effort I have put into the course is not wasted at all. I am a changed man when it comes to data science.

By Tyler C

•

Jan 26, 2020

I would have liked more explanation on what the code was performing, however I assume that also comes later. Otherwise, it was a good overview of the workflow leading to answer questions with machine learning.

By Nitin R

•

Dec 4, 2019

Good course, very well explanation of the concept in the course. But the case study that was taken in the course was a little typical for a beginner and could be explained in detailed for better understanding.

By Luigi d M N

•

May 24, 2020

It was a course with a good structured focus on each stage of the methodology process. I found very interesting the Lab in Jupyter notebook, providing a coherent application of the described methodology.

By Akshit K

•

Nov 18, 2023

Great course by IBM. Would like instructors to have better communication skills. As the instructor in week 2 and 3 did not have that strong communication skills as compared to week 1 . Overall 8/10

By Gerardo O

•

May 5, 2021

Great course for understanding data science and data related methodologies. Some parts that included machine learning algorithms confused me a little bit, but a little google search made it clear.

By CHEMISTRY M E

•

Aug 8, 2024

The course is well structured but the case studies were not well elaborated, felt like I was struggling to understand. Also, Data science methodology should be taught after a course in Python.

By ilan s

•

May 7, 2020

The final assignment should be rated by the instructors, becuase of the comlexity of the methodology.

The best way to assimilate the methodology is by OJT. Try to assign students to companies.

By Nur C N

•

Jul 7, 2019

I like the way they provide sample with food preparation on each of the stage of data science methodology. Need to give more sample for the study case to give more insight and understanding.

By HÆ°ng V V

•

May 17, 2021

A bit more complex than what I would have hoped, but the material is still digestible. I think this course could be improve if the lecturer slow down a bit and spend more time on each topic

By Andreas P

•

Jan 21, 2020

It is a good course, teaching about the general process and life cycle of a data science project. Excellent tips are provided. Overall, I feel it was lacking a bit in content for 3 weeks.