A4 Vertaisarvioitu artikkeli konferenssijulkaisussa

Lessons Learned from the RAICAM Doctoral Network Research Sprints




TekijätKenan, Alperen; Kordkheili, Sahar Sadeghi; Garcia Cardenas, Juan Jose; Melone, Alessandro; Tian, Changda; Li, Haichuan; Raei, Hamidreza; Arachchige, Sasanka Kuruppu; Tang, Yifeng; Tapus, Adriana; Ollero, Anibal; Ajudani, Arash; Arrue, Begoña C.; Papageorgiou, Dimitrios; Kämäräinen, Joni-Kristian; Heikkonen, Jukka; Figueredo, Luis; Giuliani, Manuel; Trahanias, Panos; Bremner, Paul; Nekoo, Saeed Rafee; Watson, Simon; Westerlund, Tomi

ToimittajaCavalcanti, Ana; Foster, Simon; Richardson, Robert

Konferenssin vakiintunut nimiTowards Autonomous Robotic Systems

KustantajaSpringer Science and Business Media Deutschland GmbH

Julkaisuvuosi2025

Lehti:Lecture Notes in Computer Science

Kokoomateoksen nimiTowards Autonomous Robotic Systems: 26th Annual Conference, TAROS 2025, York, UK, August 20–22, 2025, Proceedings

Vuosikerta16045

Aloitussivu526

Lopetussivu539

ISBN978-3-032-01485-6

eISBN978-3-032-01486-3

ISSN0302-9743

eISSN1611-3349

DOIhttps://doi.org/10.1007/978-3-032-01486-3_40

Verkko-osoitehttps://doi.org/10.1007/978-3-032-01486-3_40


Tiivistelmä
Doctoral Networks (DNs) aim to address systemic challenges in doctoral education, such as fostering interdisciplinarity, enabling international and intersectoral collaboration, enhancing employability, and promoting responsible innovation. While cohort-based training helps mitigate student isolation through workshops and summer schools, traditional DNs often struggle to fully realise their collaborative potential, often relying on predefined supervisor relationships or the initiative of individual researchers. In contrast, Marie Skłodowska-Curie Doctoral Networks (MSCA-DNs) prioritise doctoral candidates (DCs), challenging them to balance independent research with contributions to a shared, mission-driven objective. This study examines how structured training, including digital communities and application-focused research sprints, enhances system integration and collaboration within the Robotics and AI for Critical Asset Monitoring (RAICAM) Doctoral Network. DCs located across seven European countries worked in virtual teams, refining systems through structured workflows, weekly meetings, and shared workspaces before training schools. Through continuous online collaboration and targeted sprints, RAICAM facilitated interdisciplinary integration. Two research sprints, conducted in Italy and France, allowed teams to develop and test solutions for real-world challenges with an impact-driven plan that considers a given problem from and end-to-end perspective that requires and foster interdisciplinary collaboration. The results highlight the effectiveness of structured training in enhancing collaboration and adaptability, while identifying key areas for improvement. This study translates lessons from RAICAM into practical guidelines for future doctoral networks, demonstrating how structured training empowers students to drive interdisciplinary research independently.


Julkaisussa olevat rahoitustiedot
This work was supported by the European Commission’s Marie Skłodowska-Curie Action (MSCA) Project RAICAM (GA101072634) 2025.


Last updated on 2025-22-10 at 15:31