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The First FFplus Open Call for Innovation Studies was Successful: 18 Sub-projects were Selected for Funding

24. March 2025

The First FFplus Open Call for Innovation Studies was Successful: 18 Sub-projects were Selected for Funding

 

About

The first FFplus Open Call for Innovation Studies (Type 2) addressed the needs of SMEs and Start-ups proficient in generative AI and HPC for large-to extreme-scale computing resources. The strategic objective is to facilitate and strengthen the technological development of European SMEs in the area of generative AI. The participating SMEs and Start-ups will be supported in enhancing their innovation potential by leveraging new generative AI models, such as Large Language Models (LLMs), building on their existing expertise, application domain, business model and potential for expansion.

The indicative total funding budget for all sub-projects funded under this call was € 4M.

 

Statistics

The FFplus project is pleased to announce the results of its first open call for Innovation Studies proposals, referred to as Open Call-1, Type-2. The call opened on June 21, 2024 and closed on September 4. A total of 62 proposals were received and all eligible proposals were evaluated in a two-stage, consensus-based review involving 24 expert evaluators. Each proposal was independently evaluated by two experts, and a consensus review result was then written with the help of a moderator.

As a result of this process, 18 sub-projects were selected for funding based on their impact, the soundness of the technical concept, the quality of the proposing consortium and the deployment of requested resources. 

 

Country Statistics

In total, 62 proposals were received, including 119 organisations from 24 European countries. The 18 funded sub-projects involve a total of 36 organisations including 20 SMEs (56% of all organisations) and 16 other organisations from 14 countries, with Germany and Italy leading the field in the number of selected proposals consists of participants from their countries.

Since one of the FFplus Open Call objectives was to broaden the geographical base of generative AI proficient SMEs using large-scale HPC resources, awarding the first 18 Innovation Studies sub-projects to consortia involving 14 European countries demonstrates a clear success. The sub-projects involve participants from the following countries: Austria, Belgium, Czechia, Estonia, France, Greece, Germany, Italy, Lithuania, Poland, Portugal, Spain, Slovakia and Turkey.

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The total Open Call-1 budget for Type 2 was €4M, while each FFplus sub-project was limited to a total funding of € 300,000 aggregated over all its partners. The 18 selected innovation studies were awarded a total funding budget of €4.37 million.

 

Small and Medium Enterprise Participation

Of the 36 organisations participating in the selected experiments, 20 (or 56%) are Small and Medium-Sized Enterprises (SMEs). This is significant since the main objective of the FFplus project is to demonstrate the business value for SMEs.

 

End-User Domains

Each of the FFplus Open Call-1 Type 2 proposals targets a specific economic end-user sector, aiming to accelerate innovation and create business value within that domain. Among all received proposals, the Healthcare/Pharma/Life Sciences and ICT sectors each account for 10 proposals. These are followed by Administration (Public, Finance, Recruitment) with 7 proposals and Film/Gaming/Media with 5 proposals.

Regarding the funded sub-projects, the Healthcare/Pharma/Life Sciences and ICT sectors together account for 8 sub-projects, with 4 funded sub-projects each. Administration follows with 3 funded sub-projects.

The selected innovation studies cover a wide spread of activities, from using LLMs for geographic data to automatic invoice checking for insurance companies.

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Computational Disciplines

The word cloud shows the different generative AI technologies that are used by the selected sub-projects: while all of them focus on LLMs, there are different applications of the employed technologies (e.g. computer vision or speech recognition). The innovation studies focus on different AI topics: explainability, interpretability or data augmentation.

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The first of the innovation studies commenced working on January 1st and all will be running for 10 months. When the innovation study is successfully concluded, it results in a success story, whose purpose is to inspire the broader industrial and commercial AI technology community to follow their lead and exploit the possibilities offered by large-scale computing systems.

 

List of funded Innovation Studies Sub-projects

Country of Coordinator

Innovation Study Title

Germany

Geo-Llama, the first LLM for Geographic Data

Spain

Generative Craniofacial Reconstruction as a Game-Changing Tool for Forensic Human Identification

France

AI for Local Authorities

Greece

A GenAI-based Tool for 3D Dosimetry from 2D Imaging for Preclinical Studies

Germany

LLM-based CAD Information Extraction

Estonia

ImagingGenesis

Greece

Generative AI-based Co-Pilot Supporting Citizen in Energy Transition by Leveraging the Benefits of HPC

Italy

Assisted Low-code Generation and Optimization

Italy

BankGPT is the Specialized LLM for Finance and Banking in Europe

Germany

Adaptive Prompt Routing and Hallucination Detection for Enhanced Multilingual Open-Source LLMs

Italy

Enhancing AI Transparency in Investment Management Using Large Language Models

Lithuania

Locally Deployable Enterprise Search and Q&A Solution

Portugal

AI-Powered Knowledge Graphs for Fact-Based Journalism

Germany

European Regulatory Compliance Copilot: An AI-Powered Solution for Real-Time Compliance Monitoring and Reporting

Germany

Multimodal Foundation Model for German Property Invoice Checking

Belgium

A Hybrid AI-Model for Resolving Molecular Structures Integrating Sequence and Cryo-Electron Microscopy Data

Turkey

On Device AI Assistant: Revolutionizing Real-Time API Interactions with Privacy-Preserving Intelligence

Slovakia

Foundation Model for Geospatial Analysis