This is the level of self-study of data analysis using Python for a year 3 years ago. (Beginner~Beginner level)
I came across this lecture when I was about to start studying again for stock analysis after giving up on it for a living.
I've only listened to half of it, but the more I listen, the more I think about how great it would have been if I had known about this lecture 3 years ago, so I'm leaving a review in advance. Come to think of it, this lecture wasn't available 3 years ago. ㅠ
It was the best to listen to it now.
It's a great lecture that makes you feel the need to study formally while listening to the basics and various tips necessary for analysis, and even the concept of unit testing in data analysis. I regret that my expressive skills are lacking. It's a life lecture.
Lastly, if you have time, please make a lecture on financial information crawling, automatic trading system, and reinforcement learning utilization into a lecture.
Stay healthy in the cold winter~ Be happy. Thank you.
I don't know what to do with myself since you said it's a life lecture. There are more contents that can be called a life lecture than this lecture, so I will definitely live up to your expectations. Thank you.
I wanted to finish the course and leave a review, but since there are no reviews yet, I think there might be some people who are hesitating whether to take this course or not, so I'll write a few words about the course review.
My thoughts are:
1) I came to learn quant, but I'm learning Pandas properly again.
What code is efficient, why is it fast, etc.
For those who just want to learn Pandas without a topic, it's a very good choice to take this course in the first place, thinking that they're learning quant as a bonus.
2) The lecture style is not at all vague or hesitant. It explains very clearly, and I really like the tone of voice and speed. There's no need to speed it up 1.5x.
3) The lecture content is very informative. As you listen, you can feel that it's very systematic, and that they put a lot of sincerity into the production of the lecture.
Conclusion) I'm not interested in stocks, but if you think like this, I think this is a course you can miss. Quant is a bonus, and I think this is a lecture where you can learn Pandas properly. I didn't finish it, but I took 70% of the class and I'm writing down what I felt. I'm looking forward to future lectures on topics like automatic trading or Tensorflow. I think I'll take all of the instructor's lectures.^^
I got goosebumps reading the course reviews... You seem to have accurately figured out the things I was thinking about while making the lecture, as well as the intentions and goals of the class. Haha. Just with the content of this course, I can do a lot of things in the future, but I think it will have even more synergy if I add it to the content of the lectures I will make in the future! Thank you!