RP
Apr 19, 2019
perfect for beginner level. all the concepts with code and parameter wise have been explained excellently. overall best course in making anyone eager to learn from basics to handle advances with ease.
SC
May 5, 2020
I started this course without any knowledge on Data Analysis with Python, and by the end of the course I was able to understand the basics of Data Analysis, usage of different libraries and functions.
By Anuradha B
•Jul 14, 2018
The course is very interesting and concise, it has a very logical flow. The best parts about the course are quiz embedded in the lectures and detailed lab assignments. However, there are few errors in the lab and assignments, which need to be rectified. Otherwise, it would have been 5star from me. Thank You for desiging this course.
By Ming
•Dec 18, 2019
Easy to understand and grasp for a beginner. Good refresher for those who have some basics of programming down. Typos in the reference codes here and there but no major problems. Other than that the Watson interface is alright to work with however there will be some lagging some times. I enjoyed the process of learning this course.
By Ning C
•May 12, 2020
Clear structure and message delivering. I have learnt a lot from this course within a short time. Teaching assistants answer questions in each weeke's forum also with good clarity and patience. Although some mistakes, cannnot obscure the splendor of the jade. :) Looking forward to a better version after the improvement on typos.
By Rodion M
•Jun 17, 2023
The course covers a lot of Python libraries and functions, but in practical exercises, all tasks are mainly aimed at copying author’s examples. I would like to better remember the syntax of the language. As an overview tour of Python, it turned out great, but I only remembered a small part of the names of methods and functions.
By Mats B F
•May 1, 2020
You can consider some more explanations on how the training and testing codes are linked together and what explicitly the Python codes does. This was the elements I struggled to understand. But this was the only part that also was new to me. All in all, the material was well explained and the course was very interesting.
By José F M V
•Oct 7, 2020
I just have an issue with some minor bugs with the Coursera web app. I don't know if they are specific of this course or as a whole. For example, when clicking in next assignment sometimes it jumps two assignments. Or when you type too fast the system just writes the last letter. Other than that is pretty ok.
By jeff l
•Jun 17, 2020
great lectures and projects. on data analysis topic, IBM has chopped contents into many small courses, which make student confused and hard to find which one to take. IBM should consolidate them into 4 or 5 courses that are focused, heavy weighted, so that students can build rock solid knowledge and skills.
By Roy v E
•Apr 23, 2020
The courses are very good to get familiar with Data Science and what it essentially is. I would have like practise examples with answers after each chapter to practise it in but that is just how I learn. Overall I learned a lot about new resources and how to do certain things in the Data Science world.
By Ranjeeta R
•Mar 25, 2020
I liked the course. Highly recommended for someone who is looking for coding experience for data Analysis using python. Please practice the lab that will make you confident. Only thing which bothered me is the final assignment review. It was not correctly reviewed. I lost 4 marks. Hope this helps!
By Joseph O
•Mar 11, 2019
a few discrepancies here and there, please see the comments in the discussions. Other than that, very good! This course was more difficult than the others, and so i guess this is why employers prefer potential employees hold a PhD, or at least maintain a high algebraic/calculus/statistical aptitude
By Mohit S C
•Mar 10, 2022
This is course is very useful to understand the data and analysis. You should do the labs because give us clearn understanding the concepts which see in the video lecture. So concept are difficult to understand like as Regression in the first time but if you watch the video again it will be clear
By Joshua S
•Jun 29, 2021
Actually one of the better courses in the Data Science program. Information is useful, test/quizzes are related to the material, and the final exam is appropriate difficulty to the material and information being applied. This course was challenging yet the tools needed to succeed were available.
By Sumit C
•Jun 6, 2019
The underlying basics of Data Analysis with Python were deeply conveyed. Simple examples and easy to operate commands were greatly described. I would suggest everyone take this course whether or not they know to code. It is always great fun to learn new concepts and Coursera makes it possible.
By Susan A
•May 6, 2020
Some of the Regression-model and Plotting topics that were tested on the Peer-Graded Assignment should have gotten a little more time in the videos. The best solution to this would be to put the "Data Visualization with Python" course BEFORE this one, as it devotes more time to these topics.
By Awan B
•May 4, 2024
Successfully completed the 'IBM Data Analystics with Python' course, gaining proficiency in Python for data analysis and visualization to drive business insights. This certification marks a significant step forward in leveraging data science tools for practical, real-world data challenges.
By John B
•Sep 9, 2019
Contained some simple grammatical errors, as well as some syntax typos in some of the modules. The most relevant thing I would criticize is the lack of depth with describing certain topics ion the modules as they can be very complex. I recommend studying the section notebooks thoroughly.
By Michael K
•Apr 28, 2019
There is a lot to unpack in this course. If you have a statistics background, this may seem kind of trivial, but for the rest of us it is loaded with ways to view data. My only criticism would be that it sometimes skims across an advanced topic without really giving a general overview.
By Irving B
•Oct 11, 2018
This course gives a very clear view of the tools used to find the best way to analyze data when looking for the best model to predict target values. The use of Jupyter Notebooks to run code for the data analysis is very useful and enables the student to experiment on his own for options.
By Tom G
•Mar 24, 2019
I have start this course without knowing any Python code. I made it through but with a lot of rock with all the code. like a For loop or simple Python code. I suggest to study basic Python code then start this course but this course did push me a lot on Python code learning with Youtube
By Jurriaan A M
•Feb 11, 2021
Only 1 thing i miss in this course : some extra reading material because especially the last subjects here are a bit tricky to comprehend in full. Presentation overall is great, the labs are really helpfull as they are packed with excercises AND extra info. So yeah : take this course!
By Lauren J
•May 7, 2019
This was a good course, but didn't have as much labwork as I would have liked. There were a lot of labs, but they were mostly already completed by the instructors - more of a read-along than actually doing work yourself. That said, it was a valuable course and don't regret taking it.
By Parth A M
•Oct 17, 2023
This entire course is elucidated through projects and their respective tasks and assignments, allowing for a comprehensive understanding. Skills: Data Analysis, Visualizations, & Predictive Modelling Model Selection Python: Pandas, NumPy, Seaborn, Matplotlib, SciPy, Scikit-Learn
By Nicole L
•Oct 4, 2020
This was a very challenging course. i don’t think I had any business choosing an intermediate level course because I have no experience in Data Analytics so I am a beginner. It was very interesting to see how statistics and math concepts were applied though and I did learn a lot.
By Leandro P
•Oct 9, 2020
Great course to help us understand more about Python libraries. Just marked as 4 stars because I wish we had a better conclusion, showing us how to explain the charts and values to a meaningful insight for decision making. There could also be more dataset examples for training.
By Eduardo N d S S
•Oct 4, 2022
This module required a lot of effort and dedication in studies. It was very gratifying to complete it. Particularly, I will have to study the topic of this module a lot. I can say that this module deserves a separate course. Thank you to everyone who helped me along this path.