MA
May 16, 2020
The syllabus of the course takes you in a roller-coaster ride.
From basic level to advance level and you won't feel any trouble nor hesitate a bit.
It's easy, it's vast, and it's really usefull.
TM
Nov 17, 2019
it becomes easier wand clearer when one gets to complete the assignments as to how to utilize what has been learned. Practical work is a great way to learn, which was a fundamental part of the course.
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By Gargi M
•Aug 17, 2020
Thank you for giving the opportunity to learn Python.
As for my review of this course, I suggest proofreading the labs before publishing them because they have many spelling errors. Since one of the recommended qualities of a Data Scientist is to be detailed oriented, it would be better for all the English and non-English speaking students to have instruction without errors. This will set a good role model for them to be more aware of their work.
Additionally, it would help students who have no prior knowledge of Python to be given some context before starting the labs. There are some labs that expect more than what is explained in the videos.
In regards to creating an object in Watson Studio, I highly recommend including Alex Aklson's video in the curriculum. Screenshots that are provided for the labs are helpful, however, the video is more comprehensive, and the step-by-step process eliminates confusion. Please devote more time to the subject of Numpy as it seems to be a vast subject and needs more instruction and examples.
Overall, this was an informative course that had an enormous amount of material to cover. Thank you once again and continue teaching thousands of students like me around the world.
By Lena G
•Nov 15, 2022
I thoroughly enjoyed this course. It skims the surface of basic Python you need for Data Analysis, which is exactly what I was looking for. You get a general understanding of basic Python elements, syntax, useful libraries and some examples of really simple data analysis.
The main disadvantage of this course is a couple of exercises at the end of hands-on labs that do not correspond to the course material by their level of difficulty. To me, as a person with zero programming background, it felt like I've just been explained addition on examples like 2+3 and then asked to add something like exponential numbers and square roots. Judging by the discussion forums, I am not the only one who felt this way, which was the only thing to keep me from thinking that I am too dumb for this and giving up. I believe those tasks are great as extra challenges but must be marked accordingly.
The other odd thing is that really useful info specifically for Data Analysis process is contained in optional videos and labs, so I advise future learners to draw attention to them despite their being non-compulsory to finish this course.
Thanks to all the course authors and moderators.
By Rui Z
•May 24, 2019
The course itself was fine, and the project was helpful. I’m thankful to IBM to come out with this course. But the Watson Studio part could be very frustrating. It is not really relevant to Python study, but you will have to use the Studio for your final project. I found he Studio to have very complex layouts, very hard to nevigate, a lack of guidance on the studio itself. I was to give 3 stars as my final project experience was so ruined by the Watson Studio, I definitely spent way more hours on figuring out Watson Studio than the Python part of the studio, and not feel it’s helpful to know Watson Studio as I probably will not use it in the future. But my reasonableness and fairness side told me, the very end of an experience in general puts more weight on one’s overall experience on something, so a bad ending of it could potentially make me to give a biased opinion, towards the down side, to the experience. So trying to overcome that bias, and being appreciate for IBM to put this course together and Coursera to offer it, I gave 4 stars.
By Khailendra P
•Apr 13, 2023
The Coursera course on Python for Data Science, AI & Development is an exceptional resource for anyone who wants to learn Python programming and its applications in data science and artificial intelligence. The course starts with the basics of Python programming and gradually progresses to advanced topics such as data manipulation, visualization, and machine learning. One of the key strengths of the course is its practical approach, with numerous hands-on exercises and projects that allow learners to apply what they have learned in real-world scenarios. The instructors are knowledgeable and engaging, and the course is well-structured and easy to follow, with clear explanations and examples. Additionally, the course provides a supportive learning environment, with a dedicated discussion forum where learners can ask questions and get help from instructors and other learners. Overall, I would highly recommend this course to anyone who wants to improve their Python programming skills and learn its applications in data science and AI.