Privacy-preserving machine learning through secure management of data's lifecycle in distributed systems: REMINDER
Lead Research Organisation:
University of the West of England
Department Name: Faculty of Environment and Technology
Abstract
The Artificial Intelligence (AI) becomes ubiquitous and leading a technological paradigm shift.
Some of the main objectives set out in the United Nations' Sustainable Development Goals (SDGs) for 2030 will require to be addressed through the responsible use of AI techniques to transform data into real knowledge for the benefit of our society. This trend is being driven through an increasing degree of hyperconnectivity based on the integration of distributed systems into the Internet infrastructure mainly based on the deployment of Internet of Things (IoT) technologies as well as 5G/6G infrastructures. The integration of such systems will enable new data-based services in our surrounding environment, e.g., in the context of sustainable cities and communities or advanced eHealth services. To provide these services effectively and efficiently, a key aspect is the management of security and privacy throughout the data's lifecycle in a way that ensures the services are based on trustworthy information provided by legitimate systems. In this direction, this project (REMINDER) will design a decentralized and secure approach for the access and processing of data produced by distributed systems. In particular, REMINDER will design and implement an edge-based architecture for applications using Federated Learning (FL) that will be accessible to resource-constrained end nodes. Unlike most current deployments, the architecture will enable a collaborative model creation without the need to share the data itself. This architecture will consider the high degree of dynamism of decentralized and distributed systems by designing a node selection approach for the training process in the FL architecture while considering end systems' features (e.g., device status or battery level), as well as their evolution during their life cycle. Additionally, REMINDER will address some of the major security and privacy challenges associated with the use of decentralized Machine Learning (ML) approaches, such as FL. In this direction, the project will analyze the use of cryptographic techniques, such as Differential Privacy (DP) and Secure Multi- Party Computation (SMPC) for the sake of reaching the right balance between the effectiveness provided by ML techniques and the level of privacy being guaranteed. Data privacy will be considered in rest, transit, and while processing. The proposed solutions will be preventive and reactive. They will also ensure the privacy preserving aspects are being compliant with existing data protection regulations, such as the GDPR over the data lifecycle. REMINDER will also address some of the major security attacks in FL environments by designing and implementing an authentication protocol to ensure that only legitimate systems are able to take part in the collaborative creation process of ML models. Moreover, REMINDER will demonstrate the feasibility of the proposed research through two main use cases around eHealth and smart buildings.
Some of the main objectives set out in the United Nations' Sustainable Development Goals (SDGs) for 2030 will require to be addressed through the responsible use of AI techniques to transform data into real knowledge for the benefit of our society. This trend is being driven through an increasing degree of hyperconnectivity based on the integration of distributed systems into the Internet infrastructure mainly based on the deployment of Internet of Things (IoT) technologies as well as 5G/6G infrastructures. The integration of such systems will enable new data-based services in our surrounding environment, e.g., in the context of sustainable cities and communities or advanced eHealth services. To provide these services effectively and efficiently, a key aspect is the management of security and privacy throughout the data's lifecycle in a way that ensures the services are based on trustworthy information provided by legitimate systems. In this direction, this project (REMINDER) will design a decentralized and secure approach for the access and processing of data produced by distributed systems. In particular, REMINDER will design and implement an edge-based architecture for applications using Federated Learning (FL) that will be accessible to resource-constrained end nodes. Unlike most current deployments, the architecture will enable a collaborative model creation without the need to share the data itself. This architecture will consider the high degree of dynamism of decentralized and distributed systems by designing a node selection approach for the training process in the FL architecture while considering end systems' features (e.g., device status or battery level), as well as their evolution during their life cycle. Additionally, REMINDER will address some of the major security and privacy challenges associated with the use of decentralized Machine Learning (ML) approaches, such as FL. In this direction, the project will analyze the use of cryptographic techniques, such as Differential Privacy (DP) and Secure Multi- Party Computation (SMPC) for the sake of reaching the right balance between the effectiveness provided by ML techniques and the level of privacy being guaranteed. Data privacy will be considered in rest, transit, and while processing. The proposed solutions will be preventive and reactive. They will also ensure the privacy preserving aspects are being compliant with existing data protection regulations, such as the GDPR over the data lifecycle. REMINDER will also address some of the major security attacks in FL environments by designing and implementing an authentication protocol to ensure that only legitimate systems are able to take part in the collaborative creation process of ML models. Moreover, REMINDER will demonstrate the feasibility of the proposed research through two main use cases around eHealth and smart buildings.
Publications
Merabtine, Nassima
(2024)
A novel hybrid framework for realistic UAV detection using a mixed RF signal database
Kareem Y
(2024)
A Survey on Emerging Blockchain Technology Platforms for Securing the Internet of Things
in Future Internet
| Description | AIT Austrian Institute of Technology GmbH (AIT) Group of Stephan Krenn |
| Organisation | Austrian Institute of Technology |
| Country | Austria |
| Sector | Private |
| PI Contribution | We are collaborating with the AIT research team to develop authentication protocols and lightweight cryptography techniques to secure the federated learning architectures. A conceptual paper with a conference publication is currently in progress: |
| Collaborator Contribution | We are collaborating with the AIT research team to develop authentication protocols and lightweight cryptography techniques to secure the federated learning architectures. A conceptual paper with a conference publication is currently in progress. |
| Impact | A journal article is planned after the successful completion of the testing and evaluation of the proposed solution. |
| Start Year | 2024 |
| Description | Siemens SRL / Artificial Intelligence, Group of Anamaria Vizitiu |
| Organisation | Siemens Healthcare |
| Country | Germany |
| Sector | Private |
| PI Contribution | We are collaborating with the Siemens research team to develop prvicay-preserving federated learning architectures for two potetial use cases of smart buildings and healthcare. A data exploratory analysis and a conceptual paper is currently in progress. |
| Collaborator Contribution | The collaborator provides the real-time dataset collected in smart buildings and healthcare applications. We will jointly develop the secure FL architecture in this real-time application. |
| Impact | Conceptual paper and other joint publications are currently in progress. |
| Start Year | 2024 |
| Description | University of Murcia, Group of Prof Antonio F. Skarmeta |
| Organisation | University of Murcia, Spain |
| Country | Spain |
| Sector | Academic/University |
| PI Contribution | This is the partner and coordinator for this Chistera-era project. In addition to the overall coordination for the project. We worked together thus far on: - Developing a technical solution for ensuring integrating of federated learning platform in distributed systems: Published conference paper - A conceptual project on the paper: ongoing |
| Collaborator Contribution | This is the partner and coordinator for this Chistera-era project. In addition to the overall coordination for the project. We worked together thus far on: - Developing a technical solution for ensuring integrating of federated learning platform in distributed systems: Published conference paper - A conceptual project on the paper: ongoing |
| Impact | - Conference paper: |
| Start Year | 2024 |
