Repository of GEMAct source code. Enjoy!
-
Updated
Nov 11, 2025 - HTML
Repository of GEMAct source code. Enjoy!
GLM, Neural Network and Gradient Boosting for Insurance Pricing, Part 1: Claim Frequency
XGBoost Regressor to predict healthcare expenses based on features such as age, BMI, smoking, etc.
Claw🦞 agentic driven InsurTech🛡🤖AI-driven infrastructure that programmatically underwrites, covers risk, and processes claims/fraud with precise, algorithmic protection.
Data visualization about smoking impact on insurance annual charges
InsureSight is an intelligent insurance pricing engine that leverages ML to forecast premiums using demographics, medical history, and lifestyle factors. Delivers instant, data-driven cost predictions via an intuitive Streamlit interface.
Actuarial tail risk quantile/expectile regression for insurance pricing - TVaR, large loss loading, ILF curves, CatBoost
Constrained portfolio rate optimisation for insurance pricing — SLSQP, FCA ENBP, efficient frontier, shadow prices, JSON audit trail
Model governance for insurance pricing — PRA SS1/23 validation reports, model risk management, risk tier scoring
This is the backend server for AssuredLife - a modern life insurance management platform. It is a role-based full-stack web application built with the MERN stack. It provides a secure and robust REST API to support the client-side application.
GLM tooling for insurance pricing — nested GLM embeddings, R2VF factor level clustering, territory banding, SKATER
AssuredLife is a modern, full-stack web application designed to streamline the process of purchasing and managing life insurance policies. It provides a secure, responsive, and role-based platform for customers, agents, and administrators.
Insurance Premium Optimization (End-to-end ML Ops project)
Density ratio correction for insurance pricing book shifts — CatBoost/RuLSIF/KLIEP, LR-QR conformal, FCA SUP 15.3 diagnostics
End-to-end insurance pricing pipeline: CatBoost frequency model, SHAP relativities, fairness audit, monitoring, and conformal intervals on a single synthetic UK motor dataset
GAMLSS for insurance pricing in Python — model variance, shape, and tail parameters as functions of covariates
Model drift detection for insurance pricing — exposure-weighted PSI/CSI, A/E ratios, Gini drift z-test
Constrained rate optimisation for insurance pricing — FCA ENBP compliance, demand modelling, efficient frontier, portfolio-level margin control
BYM2 spatial territory ratemaking for insurance pricing — PyMC 5 ICAR, adjacency, Moran's I diagnostics
To view the report and the semantic model of this repository click the link below
Add a description, image, and links to the insurance-pricing topic page so that developers can more easily learn about it.
To associate your repository with the insurance-pricing topic, visit your repo's landing page and select "manage topics."