Trustworthy Efficient AI for Cloud-Edge Computing
Acronym
MANOLO
Description of the granted funding
MANOLO will deliver a complete stack of trustworthy algorithms and tools to help AI systems reach better efficiency and seamless optimization in their operations, resources and data required to train, deploy and run high-quality and lighter AI models in both centralised and cloud-edge distributed environments. It will push the state of the art in the development of a collection of complementary algorithms for training, understanding, compressing and optimising machine learning models by advancing research in the areas of: model compression, meta-learning (few-shot learning), domain adaptation, frugal neural network search and growth and neuromorphic models. Novel dynamic algorithms for data/energy efficient and policy-compliance allocation of AI tasks to assets and resources in the cloud-edge continuum will be designed, allowing for trustworthy widespread deployment.
To support these activities a data management framework for distributed tracking of assets and their provenance (data, models, algorithms) and a benchmark system to monitor, evaluate and compare new AI algorithms and model deployments will be developed. Trustworthiness evaluation mechanisms will be embedded at its core for explainability, robustness and security of models while using the Z-Inspection methodology for TrustworthyAI assesment, helping AI systems conform to the new AI Act regulation.
MANOLO will be deployed as a toolset and tested in lab environments via Use Cases with different distributed AI paradigms within cloud-edge continuum settings; it will be validated in verticals such as health, manufacturing, and telecommunications aligned with ADRA identified market opportunities, and with a granular set of embedded devices covering robotics, smartphones, IoT as well as using Neuromorphic chips. MANOLO will integrate with ongoing projects at EU level developing the next operating system for cloud-edge continuum, while promoting its sustainability via the AI-on-demand platform and EU portals.
Show moreStarting year
2024
End year
2026
Granted funding
FOUR DOT INFINITY INFORMATION AND TELECOMMUNICATIONS SOLUTIONS PRIVATE COMPANY (EL)
455 625 €
Participant
EVIDEN TECHNOLOGIES SRL (RO)
69 375 €
Third party
UNIVERSITE PARIS-SACLAY (FR)
58 336.25 €
Third party
ARX NET AE YPIRESIES KAI EPICHIRISIS DIADIKTYOU ANONIMI ETAIRIA (EL)
283 125 €
Participant
ATOS IT SOLUTIONS AND SERVICES IBERIA SL (ES)
531 562.5 €
Participant
EIT DIGITAL (BE)
445 625 €
Participant
PAL ROBOTICS SL (ES)
600 625 €
Participant
BIT & BRAIN TECHNOLOGIES SL (ES)
344 062.5 €
Participant
INSTITUT NATIONAL DE RECHERCHE ENINFORMATIQUE ET AUTOMATIQUE (FR)
641 317.5 €
Participant
Q-PLAN INTERNATIONAL ADVISORS PC (EL)
494 062.5 €
Participant
TECHNISCHE UNIVERSITAET BRAUNSCHWEIG (DE)
453 750 €
Participant
UNIVERSITY COLLEGE DUBLIN, NATIONAL UNIVERSITY OF IRELAND, DUBLIN (IE)
1 103 125 €
Coordinator
UNIVERSITAT POLITECNICA DE CATALUNYA (ES)
581 250 €
Participant
"NATIONAL CENTER FOR SCIENTIFIC RESEARCH "DEMOKRITOS" (EL)
532 500 €
Participant
FRAUNHOFER GESELLSCHAFT ZUR FOERDERUNG DER ANGEWANDTEN FORSCHUNG E.V. (DE)
1 030 806.25 €
Participant
KATHOLIEKE UNIVERSITEIT LEUVEN (BE)
300 312.5 €
Participant
Amount granted
8 605 773 €
Funder
European Union
Funding instrument
HORIZON Research and Innovation Actions
Framework programme
Horizon Europe (HORIZON)
Call
Programme part
Digital, Industry and Space (11704 Artificial Intelligence and Robotics (11709 )
Topic
Efficient trustworthy AI - making the best of data (AI, Data and Robotics Partnership) (RIA) (HORIZON-CL4-2023-HUMAN-01-01Call ID
HORIZON-CL4-2023-HUMAN-01-CNECT Other information
Funding decision number
101135782
Identified topics
security, privacy, cybersecurity