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Learner Reviews & Feedback for Introduction to Data Science in Python by University of Michigan

4.5
stars
27,080 ratings

About the Course

This course will introduce the learner to the basics of the python programming environment, including fundamental python programming techniques such as lambdas, reading and manipulating csv files, and the numpy library. The course will introduce data manipulation and cleaning techniques using the popular python pandas data science library and introduce the abstraction of the Series and DataFrame as the central data structures for data analysis, along with tutorials on how to use functions such as groupby, merge, and pivot tables effectively. By the end of this course, students will be able to take tabular data, clean it, manipulate it, and run basic inferential statistical analyses. This course should be taken before any of the other Applied Data Science with Python courses: Applied Plotting, Charting & Data Representation in Python, Applied Machine Learning in Python, Applied Text Mining in Python, Applied Social Network Analysis in Python....

Top reviews

PK

May 9, 2020

The course had helped in understanding the concepts of NumPy and pandas. The assignments were so helpful to apply these concepts which provide an in-depth understanding of the Numpy as well as pandans

YH

Sep 28, 2021

This is the practical course.There is some concepts and assignments like: pandas, data-frame, merge and time. The asg 3 and asg4 are difficult but I think that it's very useful and improve my ability.

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201 - 225 of 5,951 Reviews for Introduction to Data Science in Python

By Saadman S

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Sep 16, 2020

Statistical stuffs are really tough, it's hard to understand without any background also the assignment materials should be discussed more, they should be included in the course.

By Alice C

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Dec 20, 2020

Recent changes to the course made it a lot worse! Longer, less concise videos, difficult to find course notes, fewer mid-video working problems, and quizzes are pointless.

By Bárbara C G

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Feb 2, 2021

The videos are ok. The assignments are extremelly centered in data cleansing. The debate in forums is very helpful, and the course staff answers regularly.

By Ryan V

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Feb 10, 2021

Interesting material, poor instruction and not enough practice for things to sink in. Have to basically teach yourself everything through google searches.

By Colleen K

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Sep 21, 2018

I learned a lot by doing assignments, but the course materials are not helpful. Stackflow and Python documents guide me much more than the course itself.

By Mohammed A H

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Sep 26, 2020

During the course, the instructor was presenting with a background contains moving people which caused a big distraction to me.

By Sudharshan C

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Oct 28, 2020

The assignments can be better structured. I found it tough to navigate and perform operations

By Sai S

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Dec 23, 2020

Needs to be packaged in more interesting way..felt course contents and presentation vague

By Khairul A

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Aug 10, 2020

Too fast explanation

By Matteo S

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Nov 3, 2021

Issues:

1. The lectures are a chore to sit through. Dry, slow, and unorganized. The lecture on pivot tables was not used in any assignment. So why have it?

2. Assignments. Ooof. Lets break this down.

a. Autograder is poor. Aside from the oddities that just break it sometimes, the hidden test feedback is lacking. If my answer is off at the 15th decimal point because my dataframe is 226 rows and not 227. I need another assert and feedback telling me that. Instead of a lesson on logic a lot of these problems became frustrating cases of github searching for other peoples passing code and then working backwards

b. Assignments felt rushed. Each assignment had poorly written questions that frequently popped up in the forums asking for clarification. The assignments themselves had odd jumps in difficulty and assumptions. Some would build upon the lectures but other times they would jump and assume that we would figure out the middle. Oftentimes we did, but imperfectly, and the assignments penalized us for that imperfection. For example, if question says clean the data and we do using one of a dozen different ways why are we penalize if we have 224 clean rows, and the answer requires 227. If that level of end accuracy is required, then we need more guidance to achieve exactly that.

3. Forums. Useless. Filled with garbage, and the useful ones are unstructured mess. For one, the autograders output is small grey typwriter text which is undecipherable and the TAs always wanted it posted. This lead to long chains of code blocks and one line responses. I also think the TAs emphasis on posting zero code is wrong. The entire web is built on Stack Overflow, so why not allow code snippets in the forum?

By Will Y

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Aug 31, 2022

This course serves more as a 'test' for those quite experienced with pandas than an actual educational course. The main issue is that it would be extremely difficult to complete this just with the course materials. You really need to spend a lot of time on stack overflow and with the recommended textbook to make any progress unless you are already quite familiar with pandas. It is then fair to ask - what is the point of the course? What value does it actually add?

The content difficulty isn't the issue its the fact that there is little support from the course in completing the assignments. The content is essentially a whistle stop tour through pandas followed by some tough quizzes and labs with little feedback for when/if you go wrong. I'm really surprised at how high the other ratings are (look at how many go onto the complete the specialization to see a truer reflection!). Again I don't think it is the difficulty per se, there are other courses on this site which cover quite challenging topics (ML, Deep Learning etc...) that do so a lot better than this course. If you have done one to compare against its unlikely you’d give this 5*s.

Instead of doing this course I’d either recommend going directly to the source and read the pandas textbook by the actual author of pandas to get started or do various Kaggle challenges if you want some practical challenges. The only thing this course provides value wise is the certificate.

By Brian L

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Oct 3, 2020

TLDR - poor design of class makes for a bad experience and wasted time.

Longer - There is a disjunct between what is covered in the videos and what is tested in the assignments, and there are problems with the assignments (the autograder and the extremely dated pandas version supported) . The videos function as a partial reference guide, which is only very loosely what is tested in the assignments. If I didn't pay for the class, I would see value in the assignments themselves. Since I did pay for the class, I expect more value from the videos. For the 3rd and 4th weeks I proceeded more quickly by relying much more heavily on stack overflow and pandas documentation, to the point of sometimes ignoring the videos entirely. As-is the gaps between videos and assignments, on the one hand, and ongoing difficulty of knowing how to navigate the black box which is the autograder (using an outdated version of pandas) are shunted to the forums and other students, volunteers, and assistants. While the forum is helpful (always start there with the assignments, so you will waste less time on poorly designed / assessed questions!), it is poor pedagogy and a bad experience to offload bad course design onto it.

By Lucas C

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Sep 1, 2019

Overall: I felt this course was useful but pretty time-consuming. The course had relatively limited taught material and relied a lot on searching & self-studying. If you have a fair amount of time it is a good choice.

Pros: You learn through doing assignments which are well supported by mentors/community. Also, you get used to studying through googling problems and learning from websites such as Stackoverflow.

Cons: Whilst this learning method definitely had its merits, it could be quite time-consuming for someone seeking to gain introductory-level skills quickly. You could find yourself in situations where you spend hours searching for something quite elementary and could easily have been taught to you, which could be frustrating. I personally think this course could be improved by adding a bit more small quizzes for beginners to play around with the basics, before requiring them to self-learn through searches.

By Daniela T J

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Dec 12, 2022

I've learned a lot in this course. Nevertheless I only give it two stars. Here's the reason.

In the last few weeks I've spent an incredible number of hours researching details on the Pandas library online and trying to solve the tasks and conquer the autograder. I already knew quite a lot about Pandas before starting the course and I've had a good knowledge on Regex beforehand. But I really stood no chance to solve the assignments in the recommended three hours. It always took me at least five, in the case of assignment 3 even more than ten hours. Now I'm stuck with assignment 4 and despite having invested a lot of time I'll just give up feeling frustrated on confusing instructions, time consuming data cleaning and too difficult tasks for my level and somehow feeling not smart enough to finish a course labeled as "Introduction"

By Susan C

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Feb 9, 2021

The lectures were essentially the instructor reading from the provided Jupyter notebooks at _very_ high speed. You can slow down the video, but then you get a weirdly artificial drone that is hard to listen to. And the lectures jump briskly from topic to topic without providing any context, or advice about writing good programs. The assignments took WAY more time than estimated because (a) there was a lot of self-learning via StackOverflow (b) the auto-grader is very very finicky. (It would have been useful to have a quick demo video showing how to approach the assignments and deal with the auto-grader).

That said, the people (TAs?) helping on the forums were very helpful. And I learned quite a bit, but mostly on my own.

By Markus Z

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Aug 7, 2020

Compared to the previous course I have taken at University of Michigan the content was ok but how it was taught I didn't like. Just reading rapidly the text of the Jupyter Notebook is not enough from my point of view. Ok you can find out the stuff yourself but why take then this course and don't go directly to stack overflow.

You just get weird replies from the auto grader and search through the forum to get any idea why you didn't pass. And if you pass, you will never know if your solution was the proper way to solve this task....

By Ruibo S

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Oct 4, 2020

The assignments are much more difficult than what is covered in the class. The teaching speed is too fast without enough PPT slides. The class coding demonstration is also too fast. The lecturer should either teach more in class or make the assignments easier. Assignment 3 and assignment 4 need a lot of independent studies of the functions in pandas library. If the assignments need a lot of independent studies, what is the meaning of the teaching in class?

By Daniel D

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Jan 29, 2020

I agree with some reviews saying that course was mostly limited to self-learning. Videos were rushed and learning mostly limited to self-studying. Assignments descriptions were confusing and not well explained, not to mention that it takes hours to figure out why correct solution is not accepted. I'd say writing code (correctly) takes 4 hours but then you need 8 hours to figure out why your answer is not accepted.

By Carl M

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Nov 14, 2019

Poorly worded questions (that are mentioned throughout the discussion board), older version of pandas and the course resources don't help you with course. Get ready to 'learn' by looking in StackOverflow or reading the volumes upon volumes of python/pandas documentation. In other words, expect to spend 15 hours a week per week (obviously it will vary)

By Brent D

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Aug 12, 2020

Lectures do not reflect what is required to complete the assignments. Much of the learning is left to independent study by the student. Assignment questions are too vague and frequently require parsing through class discussions to determine the answer the auto-grader is looking for.

By OK

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Mar 28, 2019

The lectures are not good. They go too quickly. They're about 5 minutes long, but you have to stop every minute or 30 seconds and rewind to understand what the instructor is saying. He just goes way too fast, and it's very frustrating. Really ruins the experience.

By Glenn

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Feb 17, 2021

The teaching was sparse and assignments got very difficult very quickly. An inordinate amount of time was spent Googling to get past each step due to poor foundations. I learned more in a much shorter time from more gradual and concise YouTube tutorials.

By Yizi Z

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Nov 9, 2018

There is only few minutes taught video courses each week, although the reading materials and topics are quite interesting. The learning of python coding rely heavily on your own trial and error, which you could do even without this course.

By Saurabh C

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Sep 2, 2020

The level of course content and assignments is not at all similar. The course contents need to be revised, seems like the professor assumes we know everything about the topic. Also the teaching speed is extremely fast. Very Disappointed!

By Tsvetov P A

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Oct 3, 2020

With great tasks, lectures, there're terrible assignments, w/o explanation, multiple interpretations. Ttest task in Module 4, is really a hard task, w/o any explanation, could have moved it in a different course.