Trustworthy Efficient AI for Cloud-Edge Computing

Digital, Industry & SpaceHORIZON-RIAID: 101135782
EC Contribution
€86,058
Consortium Size
19 orgs
Start Year
2024
Summary

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.

Consortium (19)

Project Results (22)

Source: CORDIS, the EU research results database.

Publications (11)
DriftMoE: A Mixture of Experts Approach to Handle Concept Drifts
arXiv e-prints· 2025DOI
spis, M., Cajas Ordónez, S. A., Suárez-Cetrulo, A. L., and Simón Carbajo, R.
Effective ML Model Versioning in Edge Networks
2025 International Wireless Communications and Mobile Computing (IWCMC)· 2025DOI
Fin Gentzen, Mounir Bensalem, Admela Jukan
Growth strategies for arbitrary DAG neural architectures
ESANN 2025 - 33th European Symposium on Artificial Neural Networks European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning· 2025DOI
Stella Douka, Manon Verbockhaven, Théo Rudkiewicz, Stéphane Rivaud, François P. Landes, Sylvain Chevallier, Guillaume Charpiat
Lecture Notes in Computer Science
Lecture Notes in Computer Science, Value Engineering in Artificial Intelligence· 2025DOI
Alexandros Nousias, Maria Dagioglou, Georgios Petasis
PETRA: Parallel End-to-end Training with Reversible Architectures
ICLR 2025 International Conference on Learning Representations· 2025DOI
Stéphane Rivaud, Louis Fournier, Thomas Pumir, Eugene Belilovsky, Michael Eickenberg, Edouard Oyallon
Towards Smart Microfarming in an Urban Computing Continuum
2024 IEEE Latin-American Conference on Communications (LATINCOM)· 2025DOI
Marla Grunewald, Mounir Bensalem, Jasenka Dizdarević, Admela Jukan
$$ Xpression $$: A Unifying Metric to Optimize Compression and Explainability Robustness of AI Models
Communications in Computer and Information Science, Explainable Artificial Intelligence· 2024DOI
Eric Arazo, Hristo Stoev, Cristian Bosch, Andrés L. Suárez-Cetrulo, Ricardo Simón-Carbajo
Comparing Prior and Learned Time Representations in Transformer Models of Timeseries
Proceedings of the 13th Hellenic Conference on Artificial Intelligence· 2024DOI
Natalia Koliou; Tatiana Boura; Stasinos Konstantopoulos; Georgios Meramveliotakis; George Kosmadakis
Human-Aware Design for Transferring Knowledge During Human-AI Co-Learning
27th European Conference on Artificial Intelligence· 2024DOI
Koutrintzes, Dimitrios; Spatharis, Christos; Dagioglou, Maria
On the Reliability of Artificial Intelligence Systems
Proceedings of the 13th Hellenic Conference on Artificial Intelligence· 2024DOI
Konstantopoulos, Stasinos
Virtual worlds, real risks: exploring user safety in the metaverse under the Digital Services Act
International Congress Towards a Reponsible Development of the Metaverse· 2024DOI
Noémie Krack, Jean De Meyere
Deliverables (11)