Skip to main content
Weiter zur Homepage der Europäischen Kommission (öffnet in neuem Fenster)
Deutsch de
CORDIS - Forschungsergebnisse der EU
CORDIS

Device-Edge-Cloud Intelligent Collaboration framEwork

CORDIS bietet Links zu öffentlichen Ergebnissen und Veröffentlichungen von HORIZONT-Projekten.

Links zu Ergebnissen und Veröffentlichungen von RP7-Projekten sowie Links zu einigen Typen spezifischer Ergebnisse wie Datensätzen und Software werden dynamisch von OpenAIRE abgerufen.

Leistungen

Implementation Report of CI/CD Environment (öffnet in neuem Fenster)

Technical description of the selected CI/CD environment including the chosen code quality and security tools. This further includes the description of the configuration of quality gates preventing poor quality or insecure code from being built.

Use Case Requirements (öffnet in neuem Fenster)

A list of the selected use cases and a detailed inventory of requirements for each application use case of the DECICE framework that covers hardware specifications (e.g. networking, storage, computinge) and performance demands.

Specification of the Optimization Scope (öffnet in neuem Fenster)

A detailed technical description of the system characteristics and metrics necessary for the scheduler and the supported user-requirements for job/workload.

AI-Scheduler Prototypes for Storage and Compute (öffnet in neuem Fenster)

Individual prototypes of the two AI-schedulers for storage and compute are implemented and are ready for use in the synthetic training environment.

Dissemination & Communication Plan (öffnet in neuem Fenster)

This deliverable will be focused on informing the broad audience on the project’s goals and activities, and raising awareness on its results. To achieve this, DECICE will lay out the target stakeholders as well as the means to reach them.  This will be updated in M18 for adjusting the plan to the requirements of the project and new opportunities and challenges. The plan will lay out the various activities which will seek to encourage stakeholders to use and uptake the AI-techniques and models developed by the project for further research or commercial activities.

Integration of Monitoring Framework (öffnet in neuem Fenster)

This deliverable contains the software components, technical descriptions and documentation for the monitoring framework.

Project Handbook (öffnet in neuem Fenster)

This document provides an overview of management and administrative procedures that are in place to guarantee the quality of project results and efficient teamwork. Key aspects of these procedures and standards are discussed and agreed upon during the kick-off general assembly. This includes a description of the collaborative environment, how to organize material, a FAQ for typical questions of project partners, and plans for quality assurance, technical integration, risk management, communication and dissemination. For example, the QA and risk management plan defines guidelines, procedures, and checklists to be followed for project specific documentation, criteria for the reviews, communication, innovation potential, progress and impact indicators, and contingency plans. The plan also includes assigned deliverable and milestone review teams and documents the potential and emerged risks. Throughout the project, the project handbook will be constantly updated.

Development Environment Specification (öffnet in neuem Fenster)

A detailed technical specification of the necessary hardware and software to create a development environment for the DECICE framework as well as the definition of performance metrics for evaluation.

Online and Media Presence (öffnet in neuem Fenster)

This deliverable will present information on the development of the project website, the utilized social media channels and project newsletter.

Data Management Plan (öffnet in neuem Fenster)

The first version of the DMP is based on the Horizon Europe guidelines. It ensures that created data and research results are findable, accessible, interoperable and reusable (FAIR). It covers the handling of data during and after the project: the generated, collected and processed data, the procedures and standards applied, the restrictions on data, and the data curation and preservation. The DMP will be periodically updated similarly to the project handbook.

Project Development Environment Deployed for Phase 1 and 2 (öffnet in neuem Fenster)

A project development environment is deployed for Phase 1 (one site) and Phase 2 (2 sites) with access for all project members to enable performance evaluations.

Synthetic Test Environment (öffnet in neuem Fenster)

This deliverable contains the code and documentation for the synthetic test environment as defined in T3.5 that allows the training of the ML-models from WP2. Slight adaptations may be necessary after the initial version while the overall system architecture is not yet finalized. It also contains a description of the architecture.

Digital Twin (öffnet in neuem Fenster)

Core of this deliverable is the implementation of the digital twin and the corresponding interfaces, including the integration of the Telemetry API and the interface to the AI-schedulers.

Veröffentlichungen

GRAAFE: GRaph Anomaly Anticipation Framework for Exascale HPC systems (öffnet in neuem Fenster)

Autoren: Martin Molan, Mohsen Seyedkazemi Ardebili, Junaid Ahmed Khan, Francesco Beneventi, Daniele Cesarini, Andrea Borghesi, Andrea Bartolini
Veröffentlicht in: Future Generation Computer Systems, Ausgabe 160, 2024, ISSN 0167-739X
Herausgeber: Elsevier BV
DOI: 10.1016/J.FUTURE.2024.06.032

The REGALE Library: A DDS Interoperability Layer for the HPC PowerStack (öffnet in neuem Fenster)

Autoren: Giacomo Madella, Federico Tesser, Lluis Alonso, Julita Corbalan, Daniele Cesarini, Andrea Bartolini
Veröffentlicht in: Journal of Low Power Electronics and Applications, Ausgabe 15, 2025, ISSN 2079-9268
Herausgeber: MDPI AG
DOI: 10.3390/JLPEA15010010

Performance Characterization of Hardware/Software Communication Interfaces in End-to-End Power Management Solutions of High-Performance Computing Processors (öffnet in neuem Fenster)

Autoren: Antonio del Vecchio, Alessandro Ottaviano, Giovanni Bambini, Andrea Acquaviva, Andrea Bartolini
Veröffentlicht in: Energies, Ausgabe 17, 2025, ISSN 1996-1073
Herausgeber: MDPI AG
DOI: 10.3390/EN17225778

Directly-trained Spiking Neural Networks for Deep Reinforcement Learning: Energy efficient implementation of event-based obstacle avoidance on a neuromorphic accelerator (öffnet in neuem Fenster)

Autoren: Luca Zanatta, Alfio Di Mauro, Francesco Barchi, Andrea Bartolini, Luca Benini, Andrea Acquaviva
Veröffentlicht in: Neurocomputing, Ausgabe 562, 2025, ISSN 0925-2312
Herausgeber: Elsevier BV
DOI: 10.1016/J.NEUCOM.2023.126885

M100 ExaData: a data collection campaign on the CINECA’s Marconi100 Tier-0 supercomputer (öffnet in neuem Fenster)

Autoren: Borghesi, Andrea; Di Santi, Carmine; Molan, Martin; Seyedkazemi Ardebili, Mohsen; Mauri, Alessio; Guarrasi, Massimiliano; Galetti, Daniela; Cestari, Mirko; Barchi, Francesco; BENINI, LUCA; Beneventi, Francesco; Bartolini, Andrea
Veröffentlicht in: Scientific Data, Vol 10, Iss 1, Pp 1-10 (2023), 2023, ISSN 2052-4463
Herausgeber: Nature
DOI: 10.3929/ethz-b-000614369

Fair and efficient resource allocation via vehicle-edge cooperation in 5G-V2X networks (öffnet in neuem Fenster)

Autoren: Muhammed Nur Avcil, Mujdat Soyturk, Burak Kantarci
Veröffentlicht in: Vehicular Communications, Ausgabe 48, 2024, ISSN 2214-2096
Herausgeber: Elsevier BV
DOI: 10.1016/J.VEHCOM.2024.100773

HazardNet: A thermal hazard prediction framework for datacenters (öffnet in neuem Fenster)

Autoren: Seyedkazemi Ardebili, Mohsen, Andrea Acquaviva, Luca Benini, and Andrea Bartolini.
Veröffentlicht in: Future Generation Computer Systems, ISSN 1872-7115
Herausgeber: ScienceDirect
DOI: 10.1016/J.FUTURE.2024.01.031

PM100: A Job Power Consumption Dataset of a Large-scale Production HPC System (öffnet in neuem Fenster)

Autoren: Francesco Antici, Mohsen Seyedkazemi Ardebili, Andrea Bartolini, Zeynep Kiziltan
Veröffentlicht in: Proceedings of the SC '23 Workshops of the International Conference on High Performance Computing, Network, Storage, and Analysis, 2025
Herausgeber: ACM
DOI: 10.1145/3624062.3624263

DECICE (öffnet in neuem Fenster)

Autoren: Julian Martin Kunkel; Christian Boehme; Jonathan Decker; Fabrizio Magugliani; Dirk Pleiter; Bastian Koller; Karthee Sivalingam; Sabri Pllana; Alexander Nikolov; Mujdat Soyturk; Christian Racca; Andrea Bartolini; Adrian Tate; Berkay Yaman
Veröffentlicht in: Crossref, 2023, ISBN 9798400701405
Herausgeber: Association for Computing Machinery
DOI: 10.48550/arxiv.2305.02697

SpikeStream: Accelerating Spiking Neural Network Inference on RISC-V Clusters with Sparse Computation Extensions (öffnet in neuem Fenster)

Autoren: Simone Manoni, Paul Scheffler, Luca Zanatta, Andrea Acquaviva, Luca Benini, Andrea Bartolini
Veröffentlicht in: 2025 Design, Automation & Test in Europe Conference (DATE), 2025
Herausgeber: IEEE
DOI: 10.23919/DATE64628.2025.10992749

TinyLid: a RISC-V accelerated Neural Network For LiDAR Contaminant Classification in Autonomous Vehicle (öffnet in neuem Fenster)

Autoren: Grafika Jati, Martin Molan, Francesco Barchi, Andrea Bartolini, Andrea Acquaviva
Veröffentlicht in: Proceedings of the 21st ACM International Conference on Computing Frontiers, 2025
Herausgeber: ACM
DOI: 10.1145/3649153.3649201

Comparing Fault-tolerance in Kubernetes and Slurm in HPC Infrastructure

Autoren: Mirac Aydin, Michael Bidollahkhani, and Julian M. Kunkel
Veröffentlicht in: ISSN 2308-4499
Herausgeber: ADVCOMP 2024

Graph Neural Networks for Anomaly Anticipation in HPC Systems (öffnet in neuem Fenster)

Autoren: Martin Molan, Junaid Ahmed Khan, Andrea Borghesi, Andrea Bartolini
Veröffentlicht in: Companion of the 2023 ACM/SPEC International Conference on Performance Engineering, 2025
Herausgeber: ACM
DOI: 10.1145/3578245.3585335

Bio-Inspired Drone Control: A Reinforcement Learning-Trained Spiking Neural Networks for Agile Navigation in Dynamic Environment (öffnet in neuem Fenster)

Autoren: Yin-Ching Lee, Sebastiano Mengozzi, Luca Zanatta, Andrea Bartolini, Andrea Acquaviva, Francesco Barchi
Veröffentlicht in: 2025 IEEE International Conference on Omni-layer Intelligent Systems (COINS), 2025
Herausgeber: IEEE
DOI: 10.1109/COINS65080.2025.11125776

HOSHMAND: Accelerated AI-Driven Scheduler Emulating Conventional Task Distribution Techniques for Cloud Workloads

Autoren: Michael Bidollahkhani, Aasish Kumar Sharma and Julian Martin Kunkel
Veröffentlicht in: Ausgabe CFP24061-ART, ISSN 2836-3795
Herausgeber: IEEE COMPSAC

Towards Nano-Drones Agile Flight Using Deep Reinforcement Learning (öffnet in neuem Fenster)

Autoren: Sebastiano Mengozzi, Luca Zanatta, Francesco Barchi, Andrea Bartolini, Andrea Acquaviva
Veröffentlicht in: 2024 IEEE International Conference on Omni-layer Intelligent Systems (COINS), 2024
Herausgeber: IEEE
DOI: 10.1109/COINS61597.2024.10622558

Monte Cimone v2: Down the Road of RISC-V High-Performance Computers

Herausgeber: Emanuele Venieri, Simone Manoni, Gabriele Ceccolini, Giacomo Madella, Federico Ficarelli, Daniele Gregori, Daniele Cesarini, Luca Benini, Andrea Bartolini

https://arxiv.org/html/2504.01972

Autoren: Umberto Laghi, Simone Manoni, Emanuele Parisi, Andrea Bartolini
Veröffentlicht in: 2025
Herausgeber: arxiv.org

MCBound: An Online Framework to Characterize and Classify Memory/Compute-bound HPC Jobs

Autoren: Antici, Francesco ; Bartolini, Andrea ; Kiziltan, Zeynep ; Babaoglu, Ozalp ; Kodama, Yuetsu
Veröffentlicht in: 2024
Herausgeber: Universtià di Bologna

Assessing Tenstorrent’s RISC-V MatMul Acceleration Capabilities

Autoren: Hiari Pizzini Cavagna, Daniele Cesarini, Andrea Bartolini
Veröffentlicht in: 2025
Herausgeber: Cornell University

Suche nach OpenAIRE-Daten ...

Bei der Suche nach OpenAIRE-Daten ist ein Fehler aufgetreten

Es liegen keine Ergebnisse vor

Mein Booklet 0 0