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 Carlos A P
•Aug 30, 2018
Excellente content and very didactic laboratory. There is a lot of information in the course and at the same time it encourages me to investigate and further develop, particularly in Model Evaluation and Refinement
By Brian B
•Dec 5, 2020
Very "meaty" hands-on work with doing some data wrangling, exploratory analysis and models with single linear, multiple linear, and polynomial regression fits. I took several hundreds of lines of code in my notes.
By Ashutosh P
•Apr 29, 2019
Thank you so much for creating this is great learning and useful course that I got for Data Analytics.This course is very beneficial for all to enhance the knowledge about data analysis with Python.Thank you sir.
By N V
•Jun 28, 2020
I find the course well organized and the lab sessions made use of relevant instruction that I can use for my daily work. The final assignment could be more challenging. Overall a very helpful learning experience.
By Ram A
•Apr 20, 2020
Excellent explanation about the topics and helpful examples. Course requires reading outside the course module for better understanding. Will be helpful, if you could run the program on the window and explain us.
By Aditya A M
•May 22, 2022
Extremely helpful course for those who are new to the terms of machine learning concepts are well explained and sufficient practice taken in Lab modules and the last peer-graded assignment helped me learn a lot.
By Daniel L
•Oct 13, 2019
A rotating three-dimensional plot may be added. Its very easy and practical to complement the analysis presented. Otherwise the course is very complete.
Also, the pipe explanation may be improved a little bit.
By Ricardo R M
•Oct 16, 2022
This course provided me with the necessary knowledge and tools to introduce me to the field of creating and evaluating data analysis models to make predictions with Artificial Intelligence and Machine Learning.
By Seemant T
•Apr 24, 2020
I am reviewing this course after the completing it. It was a good learning experience!!
The entire course is based of the student interaction and requires basic knowledge of Python and its Libraries.
ThankYou..
By Farideh F
•Aug 4, 2023
Thanks! Overall, it was a good experience learning Python with Coursera. Some quizzes and assignments need to be improved, but overall, it was great. Thanks to Coursera for all the support and financial aid.
By vrushabh l
•May 7, 2020
Very good course to begin with in the field of Data Science. The analysis of data is very important before we start implementing predictive models on the data, which has been covered very well in the course.
By Mustaquim A
•Mar 29, 2023
This was a great course and I learnt a lot about data analysis. Instructions were very clear and precise and the course overall was amazing. Recommended Highly who are beginners or intermediate in python.
By Gerson C H
•Feb 5, 2020
Its a great introduction a clear explanation about Machine Learning, generation of linear regression models and all the things to do before to the analysis front the data. I'm very excited and gratefullnes.
By Victor A d S
•Jun 13, 2022
Even though I know a little about pandas, with this course I was surprised and I was able to learn even more, besides, the examples of statistical tests that are essential in data analysis are very useful.
By William
•Jul 1, 2024
The course taught me a lot of useful regression techniques in python including multiple linear regression, polynomial transformation, pipelines, ridge regression and gridsearch, an optimization algorithm.
By Magesh J
•May 27, 2021
A fast and quick way to get into the data science using Python. The program includes well defined Jupyter notebooks which can be printed out and used a reference. The videos are short and well presented.
By Daniel K
•Oct 25, 2019
Grate course. Really straight forward. I live the design of this course (a lot of quizzes to harden knowledge). I couldn't find any code for box plot during course and I had to make one during assignment.
By Nima G M
•Oct 4, 2020
One of the greatest courses to become familiar with different Python libraries for machine learning, more specifically, the Pandas library, in which we should have the ability to work with "dataframes".
By Mahmoud E
•Jun 7, 2023
thanks for the powerful content and the knowledge that was shared in the courser i hope that course ill help me in my career and find the first work as data analysis engineer, thanks for the instructor
By Souparna C
•Jan 7, 2021
I'm really over-whelmed!...And I mean it. After completing this course one can get a clear insight of data. All topics are clearly explained. All lectures and labs are well structured. Thanks Team IBM!
By Saravanan S
•Jul 2, 2020
This course is very good and it covers all the fundamental concepts used by pandas and numpy. It covers the linear regression, ridge search, grid search, polynomial regression and Pipeline construction
By Dominique D
•Apr 6, 2020
It gives a very good introduction on most of the basic statistical methods. It is a bit challenging to absorb it all, but all by all very doable. I enjoyed this one and learned a lot from it! Thank you
By Carol L
•Apr 22, 2020
Me gustó aprender procesos de análisis de datos, algunos un poco complejos de entender pero se saca el tema. Seria bueno colocar algunas referencias para ir mas en detalle en algunos puntos complejos.
By Alyona M
•Apr 17, 2023
Thanks for course! I met some errors, described them in your forms. I liked every models, but the final assignment was not interesting. I think it can be done better, with decisions and conclusions.
By Md. A A
•Dec 1, 2020
A compact course. Good one who want to learn within a short period of time. But if one wants to understand the topics well, then he/she should go through the documentation of respective libraries.