Martina Bacaro

Call for Course Proposals: 3rd TAILOR Summer School – ESSAI 2023 (European Summer School on Artificial Intelligence) 

The 3rd TAILOR summer school will be co-arranged with ESSAI, by Saso Džeroski at Jožef Stefan Institute, partner of TAILOR. The first ESSAI-TAILOR Summer School will be held in Ljubljana, Slovenia between the 24th and 28th of July 2023. The European Summer School in Artificial Intelligence (ESSAI) is a new annual summer school held under […]

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TAILOR project extension

On November 15th, The European Commission approved the extension of TAILOR project from 36 to 48 months. Extending the project duration by one year, to end of August 2024, will align the four ICT-48 networks, including TAILOR, and VISION in terms of their funding period and provide major benefits for the overall ICT-48 ecosystem: The

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Paving the way for AI we can trust – CORDIS on TAILOR project

The Community Research and Development Information Service (CORDIS) is the European Commission’s primary source of results from the projects funded by the EU’s framework programmes for research and innovation, from framework programme 1 to Horizon Europe. It was originally created in 1990, and is managed by the Publications Office of the EU under the direction

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Platforms: AI-on-demand Platform

The AI-on-demand platform (AIOD) seeks to act as a resource to facilitate European research and innovation in AI. The objective of the platform is to support all solutions and tools that contribute to the ecosystem of excellence and the ecosystem of trust, which define the European Vision of AI. The AIOD is a community resource

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Report from the Connectivity Fund

Julian Schumann at the Insititute for Transportation Studies in Leeds Julian Schumann from TU Delft is one of the students who received funding from TAILOR Connectivity Fund in the last call. Julian presented a project for his PhD period abroad, from TU Delft (TAILOR lab) to the Institute for Transportation Studies at the University of

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TAILOR scientists at NeurIPS 2022

The NeurIPS conference 2022 will be in New Orleans from Monday, November 28th through Friday, December 9th. The NeurIPS conference is one of the major worldwide annual appointments in the field of AI. The conference was founded in 1987 and is now a multi-track interdisciplinary meeting that includes invited talks, demonstrations, symposia, and oral and poster presentations

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New projects funded by Connectivity Fund

Also for this call, Connectivity Fund received many applications. We are glad to announce the funded projects for this session: For having a look to the other projects granted by Connectivity Fund, check this webpage: https://tailor-network.eu/connectivity-fund/funded-projects/ The next call for Connectivity Fund will be in 4 months. The next deadline is in 15th of March

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A Modular Framework for Hybrid Participatory Systems

Enrico Liscio – TU Delft PhD student Participatory systems aim to elicit citizens’ stances on societal discussions to inform policy making. In particular, human values are a crucial component of citizens’ stances, since they are the drivers of our opinions and behaviors. AI can enable mass participation and process large quantity of citizens’ input. However,

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Trustworthy AI for human behavior prediction by autonomous vehicles

Julian F. Schumann – TU Delft PhD student For humans to trust autonomous vehicles, they need to have confidence in the vehicles’ ability to reliably resolve space-sharing conflicts with other traffic participants in a safe manner – such as in the case of crossing or merging paths. Planning safe and efficient interactions for autonomous vehicles

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Graph Gaussian Processes for Interactive Robot Task Learning

Giovanni Franzese – TU Delft PhD candidate The adaptability of robot manipulators to many different tasks is currently constrained by systematic hard coding of each specific task. Recent machine learning methods like Learning from Demonstrations (LfD) and Reinforcement Learning (RL) have shown promising results in having fast reprogramming of the task using human demonstrations or

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