Project
Creation of an Artificial Intelligence (AI) Cybersecurity Readiness Metric
About
Cybil code: G0939
Status: Ongoing
From: Nov 2023
To: Mar 2025
Funders
Partners
Themes & Topics
Region
Countries
Summary
This project aims to create an Artificial Intelligence (AI) Cybersecurity Readiness Metric to help nations and organizations rapidly assess their current state of capability to withstand AI cybersecurity risks and identify corresponding priorities for cybersecurity capacity enhancement.
Read more here: Oxford Centre to create AI Cybersecurity Readiness Metric | Global Cyber Security Capacity Centre
Details
Aim
The aim of this project is to develop an AI Cybersecurity Readiness Metric to help nations and organizations rapidly assess their current state of capability to withstand AI cybersecurity risks and identify corresponding priorities for cybersecurity capacity enhancement.
Context
The Global Cyber Security Capacity Centre (GCSCC) at the University of Oxford has over ten years of experience in benchmarking national cybersecurity capacity and researching effective capacity-building methods. The new metric will complement and interface with the Cybersecurity Capacity Maturity Model for Nations (CMM), a flagship output of the centre for benchmarking national cybersecurity capacity that has been used by over 90 countries worldwide.
Output
This project will result in the creation of an AI Cybersecurity Readiness Metric that will help nations and organizations rapidly assess their current state of capability to withstand AI cybersecurity risks and identify corresponding priorities for cybersecurity capacity enhancement.
The Cybil project repository is being continuously updated, and the information it contains is either publicly available, or consent for publication was given by the owner. Please contact the portal manager with any additional information or corrections. Whilst every reasonable effort is made to keep the content of this inventory accurate and up to date, no warranty or representation of any kind, express or implied, is made in relation to the accuracy, completeness or adequacy of the information contained in these pages.