miniob
Database intro project
A compact database project designed to introduce developers to the fundamental workings of a database in a gentle and practical way.
MiniOB is a compact database that assists developers in understanding the fundamental workings of a database.
4k stars
27 watching
1k forks
Language: C++
last commit: 11 months ago classroomcplusplusdatabaseeducationhackertoberfestlearn-to-databasemini-databasetraining
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