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Funded Projects › HORIZON

MLSysOps · Machine Learning for Autonomic System Operation in the Heterogeneous Edge-Cloud Continuum

HORIZONStatus: SIGNED1 January 202331 January 2026EU funding €5,711,250Call HORIZON-CL4-2022-DATA-01

MLSysOps will achieve substantial research contributions in the realm of AI-based system adaptation across the cloud-edge continuum by introducing advanced methods and tools to enable optimal system management and application deployment. MLSysOps will design, implement and evaluate a complete framework for autonomic end-to-end system management across the full cloud-edge continuum. MLSysOps will employ a hierarchical agent-based AI architecture to interface with the underlying resource management and application deployment/orchestration mechanisms of the continuum. Adaptivity will be achieved through continual ML model learning in conjunction with intelligent retraining concurrently to application execution, while openness and extensibility will be supported through explainable ML methods and an API for pluggable ML models. Flexible/efficient application execution on heterogeneous infrastructures and nodes will be enabled through innovative portable container-based technology. Energy efficiency, performance, low latency, efficient, resilient and trusted tier-less storage, cross-layer orchestration including resource-constrained devices, resilience to imperfections of physical networks, trust and security, are key elements of MLSysOps addressed using ML models. The framework architecture disassociates management from control and seamlessly interfaces with popular control frameworks for different layers of the continuum. The framework will be evaluated using research testbeds as well as two real-world application-specific testbeds in the domain of smart cities and smart agriculture, which will also be used to collect the system-level data necessary to train and validate the ML models, while realistic system simulators will be used to conduct scale-out experiments. The MLSysOps consortium is a balanced blend of academic/research and industry/SME partners, bringing together the necessary scientific and technological skills to ensure successful implementation and impact.

Consortium · 12 organisations

coordinator

PANEPISTIMIO THESSALIAS

EL · €690,671

participant

AUGMENTA AGRICULTURE TECHNOLOGIES MONOPROSOPI IDIOTIKI KEFALAIOUCHIKIETAIREIA

EL · €390,428

participant

INSTITUT NATIONAL DE RECHERCHE EN INFORMATIQUE ET AUTOMATIQUE

FR · €390,428

participant

UNIVERSITY COLLEGE DUBLIN, NATIONAL UNIVERSITY OF IRELAND, DUBLIN

IE · €434,086

participant

NTT DATA ITALIA SPA

IT · €483,981

participant

MELLANOX TECHNOLOGIES LTD - MLNX

IL · €462,526

participant

NUBIS IDIOTIKI KEFALAIOUCHIKI ETAIRIA

EL · €480,239

participant

ASSOCIACAO FRAUNHOFER PORTUGAL RESEARCH

PT · €447,807

participant

CHOCOLATE CLOUD APS

DK · €459,033

participant

UBIWHERE LDA

PT · €505,336

participant

UNIVERSITA DELLA CALABRIA

IT · €492,089

participant

TECHNISCHE UNIVERSITEIT DELFT

NL · €474,626

Research fields

View the official record on CORDIS →

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Source: CORDIS, Publications Office of the European Union. Global Research Partnerships surfaces open EU research data to help you find collaborators; we are not affiliated with the European Union.