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AI4AS 2024 : AI4AS 2024: Second International Workshop on Artificial Intelligence for Autonomous computing Systems | |||||||||||||||
Link: https://ai4as.github.io | |||||||||||||||
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Call For Papers | |||||||||||||||
********************************************************* AI4AS 2024: Second International Workshop on Artificial Intelligence for Autonomous computing Systems Web: https://ai4as.github.io September 16-20, 2024 - Aarhus, Denmark co-located with ACSOS 2024 (https://2024.acsos.org) ********************************************************* IMPORTANT DATES --------------- Manuscript submission: July 4th, 2024 (AoE), extended Notification to authors: July 18th, 2024 Camera-ready: July 26th, 2024 Workshop: September 16th or 20th, 2024 SCOPE AND TOPICS ---------------- Modern computing systems are large and heterogeneous. Their complexity is hardly manageable by a human being, especially when it comes to taking timely decisions in highly dynamic environments or to guarantee strict Quality-of-Service requirements. Not surprisingly, recent advancements in Artificial Intelligence (AI) and Machine Learning (ML) significantly impacted and fostered the development of autonomous computing systems, providing new or enhanced methodologies to cope with system complexity and uncertainty. AI and ML techniques are increasingly adopted to assist or guide system self-adaptation, as they are used, e.g., to extract relevant information from highly dimensional and noisy monitoring data, to predict internal or external dynamics, to automatically plan adaptation actions. However, there are still several challenges to face for researchers and practitioners aiming to take advantage of these methodologies and incorporate them in their systems. Fundamental issues towards the applicability of AI and ML techniques across diverse domains must be investigated, especially as regards the accuracy, robustness, explainability, safety, security, performance and sustainability of AI-driven autonomous computing systems. In this workshop, we solicit high quality contributions that fit with the overarching theme of AI and ML meeting autonomous computing systems. We invite submissions of original research papers, as well as vision papers and experience reports. Authors of selected papers from the workshop will be invited to submit an extended version of their work to the special issue of ACM Transactions on Autonomous and Adaptive Systems (TAAS) on "Artificial Intelligence for Adaptive and Autonomous Cloud/Edge Computing Systems". We invite submissions of original research papers, as well as vision papers and experience reports. The aim of the workshop is to share new findings, exchange ideas and discuss research challenges on the following topics (not an exhaustive list): - AI and ML techniques for self-* computing systems - Architectures and frameworks for AI integration - Sustainability aspects of AI-driven adaptation - Federated and multi-agent learning approaches for decentralized adaptation - Robustness, explainability, safety, and security of AI-driven computing systems - Integration of large language models (LLMs) into autonomous computing systems - Self-adaptation for AI/ML systems - Case studies and real-world implementations of AI for autonomous computing systems SUBMISSION INSTRUCTIONS ----------------------- Papers can be submitted in PDF format via EasyChair and must be no longer than *6 pages* (including figures, tables, and references). Accepted papers will be published in the ACSOS Companion volume and will appear in IEEE Xplore. Note: when submitting via EasyChair, make sure that the track indicated as Workshop on Artificial Intelligence for Autonomous computing Systems is selected. EasyChair link: https://easychair.org/conferences/submission_new?a=32711075 ORGANIZING COMMITTEE -------------------- Workshop co-chairs - Gabriele Russo Russo, Tor Vergata University of Rome, Italy - Valeria Cardellini, Tor Vergata University of Rome, Italy - Paolo Romano, University of Lisbon, Portugal Technical program committee - Sherif Abdelwahed, Virginia Commonwealth University, USA - Ivana Dusparic, Trinity College Dublin, Ireland - David Garlan, Carnegie Mellon University, USA - Janick Edinger, University of Hamburg, Germany - Shashikant Ilager, TU Wien, Austria - Emilio Incerto, IMT School for Advanced Studies, Italy - Matteo Nardelli, Bank of Italy, Italy - Luis Rodrigues, University of Lisbon, Portugal - Gregor Schiele, University of Duisburg-Essen, Germany |
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