Python for Data Analysis Tutorial - Setup, Read File & First Chart

preview_player
Показать описание
How can we get started with data analysis or data science - so for example read and change data and also create our first quick chart - in Python? Besides Python, all we need is Pandas and Matplotlib. Doesn't sound familiar to you? Let's clear things up and get started in this video!

----------

----------

• And you should of course also follow @academind_real.

See you in the videos!

----------

Рекомендации по теме
Комментарии
Автор

That was a great intro video please continue with this series with intermediate and advanced use cases thanks!!

JoeWong
Автор

Man, you were the only video I could find in days that broke it down to my rank-beginner level. You did not try to impress me with your savvy. Instead, you chose to teach me. I am now on my way to analyzing my experimental data with Python instead of Excel. What other Python/Jupyter/Data-Analysis videos do you have for a newb like me, and how do I pay you to keep this stuff coming? I'm in.

John-ryfr
Автор

Hiya, I can't find the link to the sample data, could you please help me find it?

annagoncharenko
Автор

I really like this video, I started with zero with data analysis in Python. The Presenter explain all idea in so perfect way, Thanks and I will recommend every one to start with it.

fatenalabbas
Автор

This video just make sense! I hope I can find the next release as my appetite is already wet and am ready to go into data science! Thanks and God bless you for this.

justmaths
Автор

I never commented on lectures video....but this video shows actually from the scratch. Appreciated very much. Thank you

mukulthakur
Автор

FYI: If you are running Anaconda on Windows, you can access the Anacando Prompt instead of Windows command. Here you can also use commands like "conda list" etc. and it works smootly. You can find Anaconda Prompt when clicking on Start Button in the program list or use search function in task bar. Thank you very much for this tutorial

shankz
Автор

All those Kaggle notebooks make more sense now 😀 Thanks for a great intro video.

mouradk
Автор

Where can I find the file ? If it's available for the youtube series

SmokeIsInStock
Автор

Thanks man! This is simply brilliant approach to teaching. One of the best videos on data analysis with Python

pravin
Автор

you are great teacher. well done. Your tutorial are much better that courses that I have to do. I am doing them 2 weeks and I did not know about tab. thanks

maciejmajewski
Автор

Enjoying the comments on here and glad to see this Dev community growing.

nomnomdata
Автор

Man! This videos is brilliant. Even a beginner like me could understand perfectly such tutorial. I'm engaging to understand tools and Python applied in data science and data analysis. This tutorial is a perfect introduction to this issue.

Greetings from Brazil dude! Please, keep going to.

TeologiaArtesanal
Автор

Would have been nice if you actually did include the csv file...
Good video though

bsktblkid
Автор

Thank you for introducing me to python. A good start

flintchenjera
Автор

Your teaching style is excellent. I enjoyed every bit of the walkthrough.
Could you please produce more of these tutorials especially the intermediate and advanced levels of Data Analysis...topics like web scraping, data cleaning, etc...that one may encounter in real projects?

nedum_uzoh
Автор

Thanks for this one ! Just as we expected, It's be great if you can turn it to a series with deep dive into advanced's python feature.

ibrahimandaw
Автор

It is the most great video on data analysis with python thanks
I am still waiting for intermediate and advanced levels of this video
Thank you

godeeply
Автор

Gone through a couple of videos by far this is the BEST! Very well explained especially at the beginning explaining the structure of how python and the libraries work. The chart at the beginning provided a very clear picture. 👍👍📊 Great teacher.🙇‍♀️ I sat through and learnt patiently. And practised at the same time.

ginho
Автор

Great content, the presentation makes sense on the whole data analysis topic.

tolagurl