qg0 / Cheatsheets.pdf
π Various cheatsheets in PDF
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Various cheatsheets basically in PDF.
Gift me some bitcoins please 3BMEXXuoBoS5iRqWuZRLCZw9VMtvFgcBwN and get more cheatsheets, SALE 99% OFF BLACK FRIDAY!
I need to eat to make cheatsheets!
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