I created My own Virtual Artificial Intelligence named genesis, He can assist with my Tasks and also perform some analysis,,

Overview

Virtual-Artificial-Intelligence-genesis-

I created My own Virtual Artificial Intelligence named genesis, He can assist with my Tasks and also perform some analysis,, Contact me for full project Link!!

Commands: 'play' "translate" "wake up" 'time' "who are you" "what is" "offers" "do you know about" 'what can you do' 'open chrome' 'search 'joke' "reminder" "remind me" "can you calculate" "scan' 'check my whatsapp' 'instagram' 'in youtube' gmail' 'trace' "type "want to know about' etc

Owner
AKASH M
String newLine = System.getProperty("line.separator"); System.out.println("i am a programmer"+newline+"Gamer"+newline+"and a CSE student");
AKASH M
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