Enhancing AI Security with Federated Learning and Advanced Honeypots
Reference number | |
Coordinator | Lindholmen Science Park AB - AI Sweden |
Funding from Vinnova | SEK 4 028 600 |
Project duration | June 2024 - June 2026 |
Status | Ongoing |
Venture | Advanced digitalization - Enabling technologies |
Call | Cyber security for advanced digitalization 2024 |
Purpose and goal
This project aims to develop a novel framework for AI security in decentralized learning environments by means of incorporating honeypots into federated learning networks. This will be a starting point in understanding and identifying yet unknown threats and create resilient AI solutions for Swedish organizations.
Expected effects and result
1. A security framework that incorporates adaptive Honeypots into federated learning networks. 2. An analysis and set of methodologies for assessing the effectiveness and longevity of Honeypots´ deception capabilities within decentralized learning networks. 3. The design of adaptive Honeypots for use in the security framework described above.
Planned approach and implementation
** Denna text är maskinöversatt ** The project is carried out in 4 work packages (AP). AP1 consists of project management and project advice by senior leaders from the project parties involved. AP2: Develops the framework where adaptive Honeypots will be included as a main component AP3: Develops adaptive Honeypots AP4: Works with AI Swedens partners to ensure that they are given the opportunity to follow the project and share the results.