Flutter SQLite Database with full project
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Flutter SQLite Database with full project

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About this course

In this course you will learn the basics of Local Database "SQLite",We will build a full flutter App, Using Local Database using SQFlte, to create our data base also to insert some data to our database and how to delete from our data base, how to use The flutter bloc in an easy way...By Using SQFlite Package you can deal with :-How to create your Database.How to insert to Databasse.How to delete from Database.How to get from Database.By using Cubit "Flutter Bloc" state management :-How to create our States...How to create our Cubit...How to create Bloc Provider how to get an object from our cubit to our screen...How to consume your data to listen and build your project...By using Localization :-How to use multiple language and change from one to other.By useing Themes (dark & Light Mode) :-How to change your App from Light Mode to Dark Mode...After the course you can deal with SQFlite to create your own app with your own design with your own data...but you have first to use your hands and do what i do!and understand everything i do to can deal with everything i do...

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Mobile DevelopmentEnglish

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Level: All Levels

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Duration: Self-paced

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  • πŸ“ΉVideo lectures
  • πŸ“„Downloadable resources
  • πŸ“±Mobile & desktop access
  • πŸŽ“Certificate of completion
  • ♾️Lifetime access
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