This is an Online Transaction Fraud Detection System (FDS) to detect payment frauds. Made using Django.
-
Updated
Jul 21, 2024 - JavaScript
This is an Online Transaction Fraud Detection System (FDS) to detect payment frauds. Made using Django.
This repository outlines various solutions using AWS Cloud's AIML services to detect fraud faster.
A machine learning-based fraud detection system that analyzes transaction patterns to identify potentially fraudulent activities. Features a Streamlit web interface for real-time predictions. Note: Model is currently in development with ongoing improvements planned.
AI-powered behavioural fraud detection system for UPI transactions using FastAPI and Streamlit.
Full-stack Flask insurance workflow system with policy management, QR verification, Twilio SMS alerts, NLP sentiment analysis, and Decision Tree-based fraud detection (77% accuracy).
An open-source project for ROSP Lab based on Fraud Detection using ML
Fraud investigation tutorial across 9 phases — same 6 cases, progressively adding LangGraph, tools, HITL, multi-agent coordination, and LangSmith observability
data-engineering aws pyspark fraud-detection data-pipeline etl-pipeline aws-glue data-lake medallion-architecture banking-analytics
AI Deepfake and Fraud Detection
Real-time transaction risk monitoring system with rule-based fraud detection, REST API, and a React dashboard. Built with Node.js, Express, and SQLite.
Fraud Detection REST API project built with FastAPI and LightGBM Binary Classifier.
Detect fraudulent transactions and accounts in a vast dataset
A ML-based web app that detects fraudulent e-commerce transactions in real time. Features SMOTE for class balancing, Logistic Regression & Random Forest models, and an interactive form UI for live predictions. Built with Python, scikit-learn, and Flask.
Add a description, image, and links to the fraud-detection-system topic page so that developers can more easily learn about it.
To associate your repository with the fraud-detection-system topic, visit your repo's landing page and select "manage topics."