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A comprehensive .NET Core client library for Keycloak that provides seamless integration with Keycloak's authentication and authorization services. This library offers a robust implementation of Keycloak's REST API, including support for OpenID Connect, OAuth 2.0, and User-Managed Access (UMA 2.0).
🛡️ CardShield AI – Fraud Identification System Advanced credit card fraud detection system leveraging machine learning, SMOTE for imbalance handling, optimized Random Forest, feature scaling, and an interactive Streamlit app for single and batch transaction predictions.
💴 A machine learning project that detects fraudulent credit card transactions using classification algorithms. Includes data preprocessing, EDA, model training & evaluation with techniques like Random Forest, Logistic Regression, and SMOTE for class imbalance. Built for secure financial insights and real-world fraud detection use cases.
The Credit Card Fraud Detection project utilizes machine learning algorithms to identify and prevent fraudulent credit card transactions. Project Includes Source Code, PPT, Synopsis, Report, Documents, Base Research Paper & Video tutorials
Aegis Security Environment is an enterprise-grade, multi-layered security platform designed to protect mobile banking applications from fraud and unauthorized access. It implements advanced cryptographic protocols, device fingerprinting, and policy-based security enforcement to ensure end-to-end protection of financial transactions.
a machine learning application for real-time credit card fraud detection using machine learning models trained on synthetic and European transaction datasets.
FraudDetectAI is an advanced credit card fraud detection system built with XGBoost and Hybrid SMOTE Sampling (Oversampling + Undersampling). This project tackles highly imbalanced datasets, ensuring strong fraud detection accuracy while minimizing overfitting risks.