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DSN - Industry Track 2026 : The 56th Annual IEEE/IFIP International Conference on Dependable Systems and Networks - Industry Track | |||||||||||||||||
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Call For Papers | |||||||||||||||||
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IEEE/IFIP DSN 2026 The 56th Annual IEEE/IFIP International Conference on Dependable Systems and Networks (DSN 2026) Charlotte, USA June 22-25, 2026 dsn2026.github.io ************************************************************************************* Call for Contributions - Industry Track ---------------------- The extensive reliance on computing systems and networks raises numerous dependability challenges. Researchers and practitioners face complex interdisciplinary issues, from manufacturing technology to hardware and software development, networking, integration of complex systems, and cyber-security. The DSN-2026 Industry track provides a forum for interaction between industry and academia, and presentation of the latest R&D and operational challenges, practical solutions, case studies, and field dependability data. Industry contributions to the DSN community are invited to address dependability issues related to either the development process or the operation of critical systems as seen from an industrial perspective. The topics of interest target several aspects of dependable systems and networks: * Hardware (e.g., VLSI, FPGA, and SOC) * Technology (e.g., FinFET, nanotechnology, soft errors, and obsolescence of HW components) * Networks (e.g., networks on a chip, optical networks, and wireless networks) * Software (e.g., applications, middleware, and operating systems) * Security (e.g., hardware and software cyber-security, and network security) * Safety (e.g., autonomous critical systems/objects, car-to-X, plane-to-X systems, robots) * Field data (e.g. hardware and software fault/error data) * AI/ML (e.g., trustworthiness, fairness, adversarial attacks and defenses, factuality, toxicity and robustness) * Applications (e.g., embedded systems, drive by wire, and autonomous vehicles) * Development paradigms (e.g., AIOps, MLOps, DevSecOps) The Industry Track aims in particular at promoting and fostering discussion on advanced current work in an industrial context, feedback from experiments, scalability issues regarding recent techniques, novel technology-related problems, etc. The objective of this track is not to compete with the main DSN track, where finalized research and development work is presented, but to give the members of industrial and academic communities the opportunity to discuss hot topics regarding the future of dependable systems and networks, and to share experience among different industrial domains including, but not limited to dependability, privacy, safety, and security issues in: * Cyber-physical systems and Internet of Things (IoT) * Intelligent vehicles and transportation systems (e.g., road, rail, air, maritime) * Clouds, software-defined data centers, and virtual machines * Embedded and edge computing, and extreme scale systems * System operations * Critical infrastructures (e.g., smart grids, telecommunications) * Big data systems * AI/ML, and AI/ML-based systems * Physical AI systems * Blockchain and financial technology (Fintech) systems We solicit contributions addressing different aspects including a focus on specific dependability aspects in practice, either a product or service offered to the market or dependability analysis tools, dependability challenges, practical solutions, tradeoffs, strengths and weaknesses of adopted solutions, lessons learned, and field and/or measured data. Important dates ---------------------- March 2, 2026: Abstract Submission Deadline March 9, 2026: Paper Submission Deadline April 20, 2026: Notification to Authors April 28, 2026: Camera-ready Materials * All dates refer to AoE time (Anywhere on Earth) * Submission Guidelines ---------------------- All materials must be written in English up to 6 pages and must adhere to the IEEE Computer Society 8.5″x11″ two-column camera-ready format (using a 10-point font on 12-point single-spaced leading) available at https://www.ieee.org/conferences/publishing/templates. The list of references is not included in the 6 pages. Papers must be submitted in their final form. Practical aspects of previously presented scientific papers in a recent conference or edition are welcome, it helps if a clear connection and added value is pointed out. Contributions must be in PDF and submitted through the following link: https://easychair.org/conferences/?conf=dsn_2026 Please be sure to select 'DSN 2026: Industry Track' at the beginning of the submission process. Submissions will undergo a single-blind review process. All accepted papers will be published in the DSN supplemental volume and made available in IEEE Xplore. Accepted materials will be presented in dedicated sessions. Industry Track Co-Chairs ---------------------- Matti Hiltunen, AT&T Labs, USA Ganesh Pai, KBR/NASA Ames Research Center, USA Antonio Pecchia, University of Sannio, Italy Contact ---------------------- For further information please send an email to industry_track@dsn.org Program Committee ---------------------- Rasmus Adler, Fraunhofer IESE, Germany Magnus Albert, SICK AG - Global R&D, Germany Nuno Antunes, Guardsquare, Germany Subho Banerjee, Google, USA Simon Burton, University of York, UK Mauricio Castillo-Effen, Lockheed Martin Advanced Technology Labs, USA Marta Catillo, University of Sannio, Italy Marcello Cinque, Critiware, Italy Valerio Formicola, CalPoly Pomona, USA Yuxuan Jiang, Ericsson, Canada Ramesh Kottapalli, IBM, USA Avnish Kumar, AWS, USA Jinyang Liu, ByteDance, USA Jon Perez, Ikerlan, Spain Shankaranararaynan Puzhavakath Narayanan, AT&T, USA Jonas Nilsson, Nvidia, USA Michael Paulitsch, Intel, Germany Marco Platania, AT&T, USA Mohan Rajagopalan, MACAW Security, USA Behrooz Sangchoolie, RISE, Sweden Joy Selasi Agbasi, Meta, USA Nuno Silva, Critical Software, Portugal Wilfried Steiner, TTTech, Austria Liang Tang, GE Global Research, USA |
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