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 Filipe S M G
•Aug 24, 2019
Good introductory course on Data Analysus with Python. Since the course is short, the functions and concepts are explained very quickly. There are also many mistakes in the slides, notebooks and even in the final assignment.
By Benoit T P
•May 4, 2019
The content of the course is very interesting. There are lots of typos in the lab workbooks though. Additionally, i found having to use Watson Studio for the assignment / labs as opposed to plain Jupyter a little annoying.
By Lippman T
•Nov 28, 2023
There is more value to this course if you use ChatGPT as a supplement. The course is really high level and uses some codes that can be confusing (and it doesn't break it down) if you don't come from a coding background.
By CHEW K C
•Mar 14, 2021
it will be better if you can illustrate how to solve the problem step by step and explain what is the parameters that you put inside the function. Some videos are great but some videos seems a bit rush.
By Sadanand U
•Apr 9, 2019
It would be great if we go in a little more details of when to use which metrics for evaluation. Instead of running through a bunch of concepts you could have spent a little more time in each of them.
By Joseph M
•Feb 21, 2019
There were serious problems with this course, not in the instructional material but in the execution. There were multiple typos in the code. The especially grievous ones being in the dictionary names.
By Tejas M J
•May 4, 2021
Few mistakes in the questions made for this course. Also, more questions for quizzes are needed to test the learner's abilities better. Slightly harder coding assignments would also be a great idea.
By Michael L
•Jan 1, 2021
Ran into some roadblocks during the peer assignment. It would have been nice to have had access to someone to discuss the roadblocks and assist me with understanding how I went wrong.
By Deren T
•Jan 7, 2019
This is the 6th course of the specialization and I gave 5 stars to the previous courses. But this course have many typos in videos and codes. It makes harder to understand some points.
By Kristen P
•Aug 18, 2019
The work in this course was incredibly interesting. However, there are many errors and the forums went for over a week without response to questions...It seems hastily put together.
By L V P K M
•May 14, 2020
Videos are very fast and dont go into details. Assignment is very easy, it could have been more challenging which can test and make learner to think using several concepts learned.
By Taqi H
•Jul 18, 2022
one must have prior knowledge about python and have little bit understanding of statistics. over all course was good but should be improved in terms of Data, ML terminologies, etc
By Ivan L
•Apr 28, 2019
Typos are very unprofessional and spoil impressions of the course. Tests and labs are super-easy and do not make you think, and you only need to repeat commands from the lectures.
By Vladimir K
•Feb 24, 2020
So many errors in materials. It's unacceptable for course of such level. Even though people mentioned these errors in discussion forumns noone seems to bother about correct em.
By Naveen B
•Jul 12, 2019
Some of the codes shown in the videos had minor errors. Also, a bit more explanation for function (in statistics terms) would have helped in having a better understanding.
By Sruthi A
•Jan 20, 2021
This course covered all the topics and overall it's a good one. I wish there were more examples, as it was hard to understand the details in depth with just one example .
By Marta I
•Aug 23, 2020
This is a good course for beginners with Python. The content is explained in a very direct and comprehensible way, but more programming exercises and tasks are required.
By Ying W O
•Sep 27, 2019
There are lots of typos in the labs and assignments, which can be frustrating. I expect better quality from IBM. Content is great and easy to understand nevertheless.
By Nan
•Oct 4, 2024
The staff helps answer questions, which is very good. but there are some bugs never got fixed, and few practice questions give wrong answer, which can be misleading.
By Matteo T
•Jan 1, 2020
This course is quite good. The bad thing is that the arguments of the last "lesson week" are treated very superficially, taking for granted some advanced knowledge.
By Marcel V
•Jun 28, 2019
A lot (too much maybe) is covered in this coarse
It really helps a lot when you know some statistics. Like linear regression,
Why gridsearch was covered I wonder.
By Milica V
•Mar 24, 2022
It could be better. It provides a lot of coding, but it does not explain all the aspects of it. The tests are not a good representation of what has been done.
By Dylan H
•Apr 3, 2019
While a bit fast and loose with the concepts, does contain a lot of practical code as to how exactly to bring things discussed about, which is appreciated.
By Xuecong L
•Feb 16, 2019
Thanks for teaching me the systematic way to do data analysis! However, I found quite a few mistakes in the lectures in this course, hope it will improve!
By Namra A
•Aug 8, 2021
This course was good if you study the course and study the material from other sources and books too ,so it will give you deeper and more understanding