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Machine learning to augment shared knowledge in federated privacy-preserving scenarios

Project description

New privacy-preserving methods for massive data

Privacy is a major security concern when it comes to Big Data. It is not possible to apply traditional security methods to a large volume and variety of data. In this context, the EU-funded MUSKETEER project will create a validated, federated, privacy-preserving machine learning platform tested on industrial data that is interoperable and scalable. The aim is to alleviate data sharing barriers by using decentralised datasets, employing machine learning. For instance, data can continue to be stored in different locations with different privacy constraints but shared securely. The project will create machine learning models over a variety of privacy-preserving scenarios. It will also provide a standardised and extendable architecture.

Objective

The massive increase in data collected and stored worldwide calls for new ways to preserve privacy while still allowing data sharing among multiple data owners. Today, the lack of trusted and secure environments for data sharing inhibits data economy while legality, privacy, trustworthiness, data value and confidentiality hamper the free flow of data. By the end of the project, MUSKETEER aims to create a validated, federated, privacy-preserving machine learning platform tested on industrial data that is inter-operable, scalable and efficient enough to be deployed in real use cases. MUSKETEER aims to alleviate data sharing barriers by providing secure, scalable and privacy-preserving analytics over decentralized datasets using machine learning. Data can continue to be stored in different locations with different privacy constraints, but shared securely. The MUSKETEER cross-domain platform will validate progress in the industrial scenarios of smart manufacturing and health. MUSKETEER strives to (1) create machine learning models over a variety of privacy-preserving scenarios, (2) ensure security and robustness against external and internal threats, (3) provide a standardized and extendable architecture, (4) demonstrate and validate in two different industrial scenarios and (5) enhance data economy by boosting sharing across domains. The MUSKETEER impact crosses industrial, scientific, economic and strategic domains. Real-world industry requirements and outcomes are validated in an operational setting. Federated machine learning approaches for data sharing are innovated. Data economy is fostered by creating a rewarding model capable of fairly monetizing datasets according to the real data value. Finally, Europe is positioned as a leader in innovative data sharing technologies.

Fields of science (EuroSciVoc)

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Programme(s)

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Topic(s)

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Funding Scheme

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RIA - Research and Innovation action

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Call for proposal

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(opens in new window) H2020-ICT-2018-20

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Coordinator

IBM IRELAND LIMITED
Net EU contribution

Net EU financial contribution. The sum of money that the participant receives, deducted by the EU contribution to its linked third party. It considers the distribution of the EU financial contribution between direct beneficiaries of the project and other types of participants, like third-party participants.

€ 830 900,00
Address
BD 2 IBM TECHNOLOGY CAMPUS DAMASTOWN INDUSTRIAL PA MULHUDDART
D15 HN66 DUBLIN
Ireland

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Activity type
Private for-profit entities (excluding Higher or Secondary Education Establishments)
Links
Total cost

The total costs incurred by this organisation to participate in the project, including direct and indirect costs. This amount is a subset of the overall project budget.

€ 830 911,25

Participants (10)

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