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Potential Recommendations for a Computer Science Bachelor's Degree final project

I have a friend who will be finishing his Computer Science bachelor's degree next semestre, and he's trying to think what he could do for his final project.

He plans to use Python as his main language, with potential frameworks like Kivy and/or Django. He's also considering using real data from his university if given permission for his project. So far he hasn't gotten any luck comming up with project ideas that can apply something computer science related such as AI or simulation. He also needs to make sure that it isn't exclusively an information system project (like if the project is just a simple dashboard or a normal website that won't do much).

If anyone can offer any recommendations for what could be a good computer science final project for my friend i'd be very grateful.



source https://stackoverflow.com/questions/77623696/potential-recommendations-for-a-computer-science-bachelors-degree-final-project

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