
A complete Python and Flask final year project that predicts scholarship eligibility, recommends and ranks scholarships.
Python | Flask | scikit-learn | Pandas | NumPy | SHAP | Plotly | Matplotlib | Seaborn | SQLite | Jupyter Notebook | Groq LLaMA API
Finding the right scholarship is one of the most stressful parts of a student's academic journey. There are hundreds of scholarships, each with its own eligibility rules, and most students never discover the ones they actually qualify for. This final year project solves that problem with a single intelligent platform. A student fills one profile form, and the system tells them which scholarships they are eligible for, which ones suit them best, how likely they are to succeed, and which career paths and skills match their profile. Every result is backed by a clear, visual explanation so nothing feels like a black box.
Built with Python and Flask and trained inside well-documented Jupyter notebooks, this is a strong, defensible choice for computer science and IT students who want a project that goes beyond a simple prediction model. It combines classification, recommendation, ranking, and explainable AI into one connected product, which makes it stand out in viva and on a resume.
The package includes the full source code, the training notebooks for every model, a synthetic data generation script, a clean and professional dashboard interface, an SQLite database, and a step-by-step setup guide. The platform runs completely offline, with the AI career roadmap as an optional add-on, so your demo never depends on an internet connection.
If you want to explore more options in this space, you can browse our full collection of AI and machine learning final year projects, or view every available build on the final year projects with source code page.
Most student projects stop at a single prediction. This one tells a complete story: it predicts, recommends, ranks, estimates outcomes, plans a career, and then explains itself. That combination of practical value and explainability is exactly what evaluators look for, and it gives the student plenty to talk about during the viva.
Add any of these professional upgrades to save time and impress your evaluators.
We'll install and configure the project on your PC via remote session (Google Meet, Zoom, or AnyDesk).
1-hour live session to explain logic, flow, database design, and key features.
Want to know exactly how the setup works? Review our detailed step-by-step process before scheduling your session.
Fully customized to match your college format, guidelines, and submission standards.
Need feature changes, UI updates, or new features added?
Charges vary based on complexity.
We'll review your request and provide a clear quote before starting work.