AI in Science
European Commission
- Use:
- Date closing: April 21, 2026
- Amount: -
- Industry focus: All
- Total budget: -
- Entity type: Public Agency
- Vertical focus: All
- Status: Open
- Funding type:
- Geographic focus: EU;
- Public/Private: Public
- Stage focus:
- Applicant target:
Overview
Expected Outcome:
- Scientific progress with the help of AI, addressing strategic scientific challenges in the thematic areas selected;
- Pilot networks of excellent labs in the selected thematic areas to pool talent and expertise as part of a Resource for AI Science in Europe (RAISE), operating as a virtual institute across Europe;
- Establish a model of cooperation among these labs and support the development of a strategic research agenda for the application of AI in scientific research in the selected thematic domain(s)
- Reinforce the European AI in science community, attract top-notch talent and spread excellence in AI in science;
- Develop synergies with the “Science for AI” RAISE pilot call.
Scope:
The aim of this topic is to establish networks of excellent labs across Europe, dedicated to collaborative research using AI in strategic and promising scientific areas or domains, piloting RAISE and aligning research efforts.
The selected consortia will be composed of leading European research labs in the thematic area with strong experience in applying AI in the research process. At least half the members of the consortium should have a proven track record of developing innovative AI solutions for scientific research. Consortia are welcome to involve expertise in Social Sciences and Humanities in their proposal as they see fit to achieve the objectives.
Each network of excellence will be dedicated to the application of AI to scientific research in a specific thematic area or scientific discipline. A thematic network of excellence for AI in materials science is proposed (Cluster 4).
To achieve these objectives, the consortium will undertake a range of dedicated activities:
- Draw an ambitious strategic research agenda for the field and identify the key scientific grand challenges that can be addressed with AI in the thematic area of the network.
- Carry out collaborative research to solve the prioritised scientific challenges, through explicit targets and milestones.
- As part of RAISE as a virtual institute, closely work with central RAISE governance and the other RAISE networks of excellence as privileged partners for sharing data, research results, expertise and infrastructure.
- Develop talent and knowledge exchange schemes (e.g. jointly supervised fellowships, mobility schemes, summer schools, matchmaking events) and include partnering schemes with institutes outside the excellence network to spread excellence across Europe.
- Identify, expand, curate, integrate share and make available relevant datasets and AI models. Develop community-driven standards and benchmarks for AI models in the thematic scientific area or discipline.
- Develop collaborations with industry for uptake of scientific outcomes and AI-based research methodologies.
The consortium should use financial support to third parties (FSTP), in order to spread excellence or seek complementary expertise across Europe. For spreading excellence, the FSTP should be based on the transferring of knowledge to the FSTP recipients. For complementary expertise, the FSTP should be based on bringing complementary/supplementary data, expertise, AI models, etc.. The consortium should set up an open and objective selection process to complement the efforts of the consortium for a maximum of EUR 60,000 per beneficiary. While it is expected to involve several such beneficiaries, the core consortium’s activities should represent a minimum of 85% of the total financial grant. FSTP recipients should be based in a Member State or an Associated Country. FSTP activities should be integrated into (one or more) separate work packages, which are to describe the conditions for implementing the support.
Proposals are expected to develop synergies with running Horizon Europe projects in the same field, for example with HORIZON-CL4-INDUSTRY-2025-01-DIGITAL-61
AI in Science FAQ
AI in Science Reviews
Recommend to a Friend
Experience
No data experience
Getting the funds
No data getting funds
Simple process
Featured Funds
- Usage: R&D;
- Entity type: Public Agency
- Total: 135M €
- Funding type: Grant;
- Status: Open
- Geographic focus: Horizon Europe associated countries; Europe;
- 0 reviews 2 questions
- Usage: Scale-up;
- Entity type: Private Equity Firm
- Total: 900M €
- Funding type: Equity investment;
- Status: Open
- Geographic focus: Netherlands Antilles; Europe;
- 0 reviews 0 questions
- Usage: R&D;
- Entity type: Other
- Funding type: Grant;
- Geographic focus: Germany;
- 0 reviews 2 questions


