aliabdallah7/loan_prediction_ApplAi
Predict if your loan will be accepted or not. This happens by using a labeled data for applicants who applied for a loan before, analyzing these data and using some classification models on it.
This tool helps loan officers and credit analysts quickly determine the likelihood of a loan applicant being approved. By inputting an applicant's financial and personal data, it uses historical loan data to predict acceptance or rejection. It's designed for professionals involved in credit risk assessment and loan processing.
Use this if you need to rapidly assess the probability of a loan application being accepted based on past applicant profiles.
Not ideal if you require a deep, explainable breakdown of every factor influencing the loan decision rather than a predictive outcome.
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11
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3
Language
Jupyter Notebook
License
MIT
Category
Last pushed
Dec 16, 2025
Commits (30d)
0
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