HORIZON-CL4-2027-04-DIGITAL-EMERGING-05

Apply AI: AI-Driven Robotics for Industry: Enabling System Integration and Adoption (IA) (Partnership in AI, Data and Robotics) -

⚫ indicates current topic
Node background color indicates the call topic status
Double click on a topic to center information around it.
Node size is proportional to distance from the current topic

About the connections

The graph above was generated based on the following links

  • HORIZON-CL4-2026-05-DIGITAL-EMERGING-03
    Apply AI: Next-Generation Agile and Intelligent Robotics Platforms for Industrial and Service Applications (Partnership in AI, Data and Robotics) (RIA)

    MOTIVATION HORIZON-CL4-2027-04-DIGITAL-EMERGING-05 and HORIZON-CL4-2026-05-DIGITAL-EMERGING-03 are complementary topics under the "Apply AI Strategy" in the application sector of robotics.

  • HORIZON-CL4-2026-04-DIGITAL-EMERGING-08
    Apply AI: Robotics for Manufacturing: Advancing Core Skills through Technical Challenges (RIA) (Partnership in AI, Data and Robotics)

    MOTIVATION HORIZON-CL4-2027-04-DIGITAL-EMERGING-05 and HORIZON-CL4-2026-04-DIGITAL-EMERGING-08 are complementary topics under the "Apply AI Strategy" in the application sector of robotics.

Call text (as on F&T portal)

View on F&T portal

Expected Outcome:

The Apply AI Strategy emphasises acceleration pipelines to ensure a smooth transition from research to deployment of AI-powered robotics. Projects under this topic will deliver common frameworks and reusable building blocks that can serve multiple sectors and use cases, reinforcing Europe’s ability to bring AI-driven robotics to scale.

Project results are expected to contribute to all of the following expected outcomes:

  • Wider and faster deployment of robotics, bridging the gap between technology providers and end-users.
  • Development and implementation of modular and interoperable integration frameworks and solutions, including standardized protocols for data, training and safety testing, evaluation and validation of robotic solutions in key use cases
  • Improved competitiveness of European industries, notably SMEs via the development of advanced robotics systems, intelligent planning and control systems, user feedback rendering techniques and cutting-edge AI innovations

Scope:

The project will address the current European gap in system integration capabilities for robotics solutions addressing the various needs of industries. The project will aim at disseminating a deep understanding of state-of-the-art robotics components, including both hardware and software, and expertise in addressing interoperability issues for the upskilling of system integrators.

To maximise the impact and adaptability of deployed systems, the approach should consider the most appropriate tools to speed up integration processes and suitable AI design, training and inference methodologies, ensuring scalability, transferability, transparency, robustness, flexibility, and real-world applicability in diverse industrial environments, and should remain adaptable to the latest technological developments.

Integration frameworks will promote the use of energy-efficient AI models and hardware ('Green AI'), alongside carbon-aware deployment and operational strategies for robotic system. Where relevant, projects should contribute to open and widely recognised standards to foster interoperability and uptake across the robotics ecosystem. To enhance safety and performance, projects may include high-fidelity simulation environments or digital twins as testbeds for training, validation and verification, with measures to ensure smooth transfer from simulation to real-world deployment.

By bridging the gap between technology providers and end-users, these integrators will enable the creation of seamless, reliable and scalable robotics systems that can be easily adopted by industries, especially SMEs, thereby supporting more flexible and efficient production processes.

The project is expected to deliver:

  • A deployable, modular integration framework, validated through at least three real-world industrial pilots covering different reference scenarios to demonstrate that the approach can be adapted to varied industrial needs and company sizes, including both SMEs and larger manufacturers. This framework should provide, for example, a common software layer, standard interfaces to connect to existing workflow and legacy system, possibly also to connect various robot components, coordinate multiple robots and link them with additional AI tools and IoT environments, as well as tested configuration templates and clear guidelines to ensure safe and efficient use.
  • An Integration Kit, building on this framework, which offers ready-to-use modules, example configurations and practical tools that help system integrators and companies to set up, test and run AI-enabled robotics solutions more quickly and with reduced technical effort.
  • Where relevant, high-fidelity digital twin testbeds should be linked to each pilot, allowing safe and realistic testing and training before deployment, and supporting a smooth transition from virtual models to actual production lines.
  • Reusable, datasets (compliant with relevant regulation and IP protection) and practical benchmark tasks, made available to the wider robotics and AI community, to support further development and comparison of new solutions while respecting European data protection rules.
  • A clear Step-by-Step Adoption Guide aimed at SMEs and other end-users, providing easy-to-follow instructions, practical checklists and examples to help companies plan, budget and implement AI-driven robotics in a safe and cost-effective way, even if they have limited in-house expertise, and including guidance to navigate regulatory compliance and certification.
  • Concrete contributions to relevant open standards and clear guidance on certification pathways, to help ensure compliance with European regulations and build trust in the safe use of AI in robotics. Projects are expected to make full use of existing robotics resources and assets made available through the AI-on-Demand Platform, such as the EuroCORE repository and other relevant shared tools, to maximise synergies, avoid duplication of efforts and ensure broad dissemination and reuse of results within the European AI and robotics community.

This topic implements the co-programmed European Partnership on AI, data, and robotics (ADRA), and all proposals are expected to allocate tasks for cohesion activities with ADRA.

null

Activities are expected to start at TRL 4 and achieve TRL 7 by the end of the project – see General Annex B.

News flashes

Found 3 annotations in info base click to see
call topic details
Call status: Forthcoming
Opening date: 2026-11-17 (7 months from now)
Closing date: 2027-03-18 (11 months from now)
Procedure: single-stage

Budget: 18,000,000
Expected grants: 1
Contribution: 18,000,000 - 18,000,000
News flashes

This call topic has been appended 0 times by the EC with news.

Source information

Showing the latest information. Found 3 versions of this call topic in the F&T portal.

Information from

  • 2026-03-03_06-30-40
  • 2026-01-20_06-30-33
  • 2025-12-16_06-30-33

Check the differences between the versions.

Annotations

You must be logged in to add annotations
Work Programme info
Added 1 month ago by Alrun Hauke
Eligibility for this topic is restricted under art. 22.5 and art. 22.6 of the Horizon Europe regulation (see [1]). Specifically, under art. 22.5, participation for projects under this call topic is restricted to legal entities established in EU member states, Iceland, Norway, Canada, Israel, the Republic of Korea, New Zealand, Switzerland and the United Kingdom. Under art. 22.6, any entities considered high-risk suppliers of mobile network communication equipment are expressly excluded from participating. This currently concerns companies Huawei and ZTE (see [2]) as well as any entities fully or partially owned / controlled by them. As part of the proposal submission for this topic, consortium members have to fill in the ownership control declaration (see [3]). The coordinator has to collect these forms from all partners and submit them as a single appendix to the proposal. The ownership control declarations are examined by the EC as part of the evaluation process. If it is found that a consortium partner is established in one of the eligible countries listed above, but controlled by an entity established in a non-eligible third country, the partner in question will be asked to provide a guarantee (see [4]) during grant agreement preparation which ensures that the EU's strategic interests are protected. The European Commission (EC) will examine this guarantee and - if approved - will forward it to the government of the eligible country of establishment of the partner for national approval. The partner in question may participate in the project only if both the EC and the respective national authority approve the guarantee. If either or both of these bodies do not approve the guarantee, the partner in question will be removed from the consortium during grant agreement preparation. [1] https://eur-lex.europa.eu/eli/reg/2021/695/oj/eng [2] https://digital-strategy.ec.europa.eu/en/library/communication-commission-implementation-5g-cybersecurity-toolbox [3] https://ec.europa.eu/info/funding-tenders/opportunities/docs/2021-2027/common/temp-form/af/ownership-control-declaration_en.docx [4] https://ec.europa.eu/info/funding-tenders/opportunities/docs/2021-2027/common/temp-form/gap/ownership-control-guarantee_en.docx
NCP knowledge
Added 1 month ago by Alrun Hauke
NCP knowledge
Added 1 month ago by Alrun Hauke
Check out the "Apply AI" webinar series to find out more about the Apply AI Strategy and its application sectors: https://digital-strategy.ec.europa.eu/en/policies/apply-ai-events

Events

This is just a very first implementation, better visualisation coming

Horizon Europe Cluster 4 Digital Matchmaking Platform

2025-11-12 -> 2026-12-31

online

Find your collaboration partners for EU projects in the digital domain of Cluster 4 here!

KETs Brokerage Event 2026

2026-02-04 -> 2026-02-05

online

Do you want to tackle the challenges of Industry, Manufacturing & Production, Materials, Digital/AI/Robotics, Batteries and Hydrogen? - Then use the unique opportunities of the KETs (Key Enabling Technologies) 2026 EU Brokerage Event on February 5, 2026 in Karlsruhe, Germany!

European Robotics Forum 2026

2026-03-23 -> 2026-03-27

online

The European Robotics Forum (ERF) is Europe’s leading annual robotics and AI networking event, bringing together industry, research, and policy stakeholders to explore the latest innovations, challenges, and future directions in robotics.

Events are added by the ideal-ist NCP community and are hand-picked. If you would like to suggest an event, please contact idealist@ffg.at.

Call topic timeline

What phase of the topic timeline are we in? This timeline contains some suggestions on what are realistic actions you should or could take at this moment. The timeline is based on the information provided by the call topic.
  1. Publication date

    - 3 months ago

    The call was first imported in TopicTree.

  2. Today

  3. Work programme available

    - 5 months from now

    The call topics are published first in the Work Programme, which is available a while before the call opens. By following up the Work Programme publications, you can get a headstart.

  4. Opening date

    - 7 months from now

    The call opened for submissions.

  5. Closing date

    - 11 months from now

    Deadline for submitting a project.

  6. Time to inform applicants Estimate

    - 1 year from now

    The maximum time to inform applicants (TTI) of the outcome of the evaluation is five months from the call closure date.

  7. Sign grant agreement Estimate

    - 1 year from now

    The maximum time to sign grant agreements (TTG) is three months from the date of informing applicants.

Funded Projects

Loading...

Project information comes from CORDIS (for Horizon 2020 and Horizon Europe) and will be sourced from F&T Portal (for Digital Europe projects)

Bubbles

This call topic is part of: