Reliable AI for 6G Communications Systems and Services

Closed

Programme Category

EU Competitive Programmes

Programme Name

Smart Networks and Services Joint Undertaking (SNS JU)

Programme Description

The European Smart Networks and Services Joint Undertaking (SNS JU) aims to ensure industrial leadership for Europe in 5G and 6G.

Programme Details

Identifier Code

HORIZON-JU-SNS-2024-STREAM-B-01-08

Call

Reliable AI for 6G Communications Systems and Services

Summary

The focus of this Strand is on several complementary issues and applicants may select several or all the below-mentioned issues. The main goal of this project is to fill the gaps and work on the end-to-end system integration of SNS AI/ML solutions, or national level developed AI/ML solutions and not to focus on dedicated AI/ML problems of specific network domains.

Detailed Call Description

The targeted project scope includes:

  • Development of a reference framework for end-to-end AI usage for the telecommunications domain in relation to 6G, including methodologies for centralized, distributed and federated applications, reference use cases, data acquisition and generation, repositories, curated training and evaluation data, as well as the technologies and functionalities needed to use it as a benchmarking platform for future AI/ML solutions for 6G networks. The framework should be expandable so that future R&I actions can follow its directives and easily provide new use cases and data sets. Towards this end, the reference framework shall be hardware-agnostic, so that it can support heterogeneous hardware implementations.
  • Development of appropriate data infrastructure and functionalities that will enable novel AI-based services as well as AI as a Service to vertical industries.
  • Models for AI costs and benefits in telecommunications applications. Typical 6G metrics should be able to be evaluated, including but not limited to data rate, latency, density, energy efficiency, flexibility and performance, and/or security and privacy, but other value metrics can be considered as well.
  • Solutions that will guarantee reliable use of the technology and build trust in 6G and services enabled by 6G. Associated topics include: i) AI environment (training, development, production) evaluation; ii) assessment models of reliable AI costs and performance value; iii) conflict resolution among local and global AI models, iv) Vulnerability assessment of AI models for different telecommunication applications potentially using friendly hacking means and v) Reliable and trustable AI life cycle, including the AI development and deployment environments.
  • The framework should address a wide range of open issues indicatively and not limited to, e2e AI/ML conflict resolution, placement of AI at appropriate places inside the network (e.g., edge), provide energy friendly AI/ML solutions, how to handle vast amount of data for AI/ML purposes using computing/storage and network resources in a scalable way, and any other advances needed to support the overall goal. In addition, the AI/ML should be able to work across different/multiple network infrastructures, tools, apps, and data/communication needs.
  • Production of data sets should cover as many areas as possible from the actual operation of 6G networks (user mobility patterns, RAN/Transport/Core data traffic patterns, network failures or security attacks, computing usage patterns etc.) including real and synthetic data, or even appropriately adapted data from open free data sets.
  • Production of data sets and validation methodologies, contributing to 6G Human Centricity and Societal acceptance and in compliance with the rules of data legislation. Development of guidelines, for ethical considerations, and suggestions to regulatory frameworks are also desirable. Methods of accreditation of usage/compliance may also be considered to validate techniques of dataset production and dataset conformance.
  • Development of solutions that will address the need for robust and trustworthy AI/ML validating the “quality” datasets from different scenarios, which influences the outcomes of the AI systems, as well as the corresponding outcome of AI.
  • Verification and validation of AI techniques over experimental platforms, additionally providing the associated datasets.

Applicants are expected to provide details on the type and availability of the datasets to be produced and curated by the project. This includes, but is not limited to, whether they will be based on existing or new datasets, project partner(s) in charge of producing them, whether they will be based on real-world measurements or synthetic ones, etc; as well as their complementarity, availability of datasets beyond consortium partners.

Call Total Budget

€6.000.000

Financing percentage by EU or other bodies / Level of Subsidy or Loan

100% – non-for-profit organisations
90% – profit organisations

Unfortunately, the maximum funding rate in the budget table is set to 100%. We kindly ask all for-profit organizations to make a manual calculation and request only 90% of the budget.

Expected EU contribution per topic: €6.000.000

Thematic Categories

  • Information and Communication Technologies
  • Research, Technological Development and Innovation

Eligibility for Participation

  • Researchers/Research Centers/Institutions

Call Opening Date

16/01/2024

Call Closing Date

18/04/2024

EU Contact Point