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saurabh618 / All Python Codes Of Ztm Course By Andrei Neagoie

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Complete Python Developer in 2020: Zero to Mastery

This repository contains all the codes and notes, which I prepared when I was pursuing this course by @aneagoie.

I have added all these codes (which also contains my notes inside the .py file itself) because I thought that it might help the community and fellow students to get everything at one place, and it will help them in learning and debugging the code, it will also save immense amount of time and frustration, and later for the revision purposes as well (just like the cheatsheet.pdf given at the very end of the course).

Feel free to fork and add/edit files in here. Also, in case you want the additional handwritten notes as well, kindly email me at [email protected]

Additionally I want to say that, I have worked really hard in creating and keeping the Python codes and my notes up to date. It consists of my long hours of work, writing notes, coding and debugging to finally make this repository what it is today. And I really hope that it's helping you guys and our community. If you feel like it has really helped you in your learning process and saved your time and frustration, then do consider supporting me. This will motivate me like never before and will mean the world to me :-)

You can support me here (This is completely optional. Please do not feel obligated in any way to do so.):

For Bitcoin, Etherium or USDT (ERC20 address, $5+ transfer fee): 0x9ceed8db321995934e7deeaf00fd9ec79a659c3b

For USDT (TRC20 address, $0 transfer fee): TWBpme5WVozC7z2YsMr8hhyBUi53TzpDdZ

Thank You and Keep learning :)

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