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AIChallengeIoT 2022 : AIChallengeIoT 2022 : Workshop on Challenges in Artificial Intelligence and Machine Learning for Internet of Things | |||||||||||||||
Link: https://aichallengeiot.github.io/ | |||||||||||||||
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Call For Papers | |||||||||||||||
The 4th International Workshop on Challenges in Artificial Intelligence and Machine Learning for Internet of Things (AIChallengeIoT 2022) will be held in conjunction with ACM SenSys 2022.
Artificial intelligence (AI) and machine learning (ML) are key enabling technologies for many Internet of Things (IoT) applications. However, the collection and processing of data for AI and ML are very challenging in the IoT domain. For example, there are usually a large number of low-powered sensors deployed in large geographical areas with possibly intermittent network connectivity. The sensors and their collected data may be owned by different users or organizations, which can bring further obstacles to data collection due to privacy concerns and noisy labels provided by different users. The successful application of AI/ML approaches in such scenarios with noisy and decentralized data is difficult. In addition, the amount of collected data that can be used for training AI/ML models is usually proportional to the number of users in the system, but the system may not be able to attract many users without a well-trained AI/ML model, and it is challenging to solve this dilemma. This workshop focuses on how to address the above and other unique challenges of applying AI/ML in IoT systems. We invite researchers and practitioners to submit papers describing original work, experiences, or vision related to the entire lifecycle of an IoT system powered by AI and ML, including (but not limited to) the following topics: - AI/ML in multi-agent, distributed, and decentralized settings - AI/ML on low-powered and/or intermittently connected devices - AI/ML with noisy and possibly adversarial data and labels - Algorithms and techniques for evolving from a new system that is initially trained with only a small amount of data - Algorithms and techniques for making use of data collected by geographically dispersed sensors to provide useful services through AI/ML - Algorithms and techniques for reducing human effort in data labeling, including active learning - Algorithms and techniques for sharing data and training AI/ML models while preserving user sensitive information, including federated learning - Design and implementation of AI/ML-powered IoT systems - Hardware, software, and tools for AI/ML in IoT - IoT applications enabled by AI/ML - Privacy and security of AI/ML in IoT Submissions focusing on specific IoT applications and generic IoT systems are both welcome. We specifically encourage papers with forward-looking ideas that may initiate new research directions. We solicit the following types of submissions: - Regular papers describing novel research work or experiences, up to 6 pages including figures and tables, but not including references (references can use additional pages as needed), which will be presented at the workshop as an oral presentation - Vision/position papers describing new research directions and challenges, up to 4 pages including figures, tables, and references, which will be presented at the workshop as a short oral presentation followed by interactive discussions Submitted papers should be previously unpublished and not currently under review by another conference or journal. All accepted regular papers and vision/position papers will be published in the conference proceedings and the ACM Digital Library. All submissions should use the double-column ACM proceedings format. The ACM template is available at: https://www.acm.org/publications/proceedings-template. LaTeX submissions should use the acmart.cls template (sigconf option), with the default 9-pt font. This format will also be used for the camera-ready version of accepted regular and vision/position papers. The submissions should include authors’ names and affiliations (i.e., not be double-blind). Submissions will be reviewed by the program committee for novelty, relevance, and quality. At least one of the authors of every accepted paper/presentation must register and present the work at the workshop. Submissions should be in Adobe Portable Document Format (PDF). The organizing committee will select a best paper award among submitted papers, which will be announced at the workshop. The link for submission is: https://aichallenge22.hotcrp.com/ Organizing Committee Program Chairs Luis Garcia (University of Southern California Information Sciences Institute, USA) Dezhi Hong (Amazon, USA) Steering Committee Bharathan Balaji (Amazon AI Lab, USA) Jorge Ortiz (Rutgers University, USA) Mani Srivastava (University of California, Los Angeles, USA) Shiqiang Wang (IBM T. J. Watson Research Center, USA) Shuochao Yao (George Mason University, USA) Program Committee Andreas Reinhardt (TU Clausthal, Germany) Diana Popescu (Cambridge University, UK) Dong Chen (Colorado School of Mines) Ing-Ray Chen (Virginia Tech) Lin Wang (Vrije Universiteit Amsterdam) Manuel Roveri (Politecnico di Milano, Italy) Moustafa Alzantot (Google) Qing Wang (TU Delft, Netherlands) Rui Tan (Nanyang Technological University, Singapore) Salma Elmalaki (UC Irvine, USA) Sandeep Sandha (Amazon) Syed Shabih Hasan (Delos) Swarnava Dey (Tata Consultancy Services Ltd.) Vikranth Jeyakumar (NVIDIA) |
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