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Date:
Mon, 4 Jul 2022 11:19:45 -0000
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Mirko Nardi <[log in to unmask]>
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Journal: Elsevier Pervasive and Mobile Computing 
(IF: 3.453, https://www.journals.elsevier.com/pervasive-and-mobile-computing)

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+ Submission link: https://www.editorialmanager.com/pmc/default.aspx 
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* Schedule:
-----------
- Submission deadline (EXTENDED): July 21, 2022
- First review round completed: September, 15 2022
- Revised manuscripts due: December 01, 2022
- Completion of the review and revision process (final notification): January 31, 2023


* Call for Papers
------------------
The explosion of data volumes generated at the edge of the internet by an increasing number of devices combined with the growing attention and sensitivity to privacy preservation of such data, is moving the whole AI process from remote cloud facilities towards the edge of the network, i.e., data owners/holders are more and more unwilling to share their raw data freely to build AI applications and services. However, the data and computational landscape at the edge is so much different from the one in the cloud, that it has stimulated the development of new learning frameworks designed to cope with the several connected challenges at the edge. This is the case for Federated Learning, to mention one, that is a distributed learning framework specifically designed for being robust to context where devices holding some local data collaborate to train a globally shared AI model. The challenges to be addressed in learning at the edge are many since the learning algorithm has to consider several aspects like local data heterogeneity, device heterogeneity, technological shortcomings like intermittent connectivity, devices with limited computational resources, to mention a few.

Developing intelligent distributed and pervasive systems over federated datasets overcoming the limitations imposed by the edge scenario faces new exciting challenges in the design of new AI algorithms, federated and distributed optimization methods, privacy and security mechanisms, and system implementation. This special issue serves as a forum for researchers and practitioners to present their latest research findings and engineering experiences in the theoretical foundations, empirical studies, and novel applications of federated learning, distributed and embedded learning for next-generation pervasive systems. We welcome contributions proposing advancements in theory, algorithms, systems, and applications of federated learning, embedded learning in pervasive systems for various AI tasks to establish the latest efforts of the research in this area.

* Topics of interest include but are not limited to:
----------------------------------------------------
- Federated/Distributed Machine Learning Algorithms for Embedded/Mobile/Edge Systems
- Supervised/Semi-supervised/Unsupervised Federated/Distributed Learning
- Optimization Algorithms in Federated/Distributed Learning
- Incentive Mechanisms for Federated Learning
- Fairness in Federated Learning
- Communication-Efficient Distributed/Decentralised Machine Learning
- Efficient Privacy-Preserving & Secure Machine Learning
- Personalized Federated/Distributed Machine Learning
- Online/Continual Learning in Pervasive Systems
- Compression of machine learning models for real-time inference on Embedded/Mobile/Edge Systems
- Efficient on-device learning

- Applications of Federated/Distributed/Embedded Learning for:
- Activity recognition
- Anomaly detection
- Urban computing
- Healthcare
- Industry 4.0
- COVID-19
- Smart Cities
- Smart Agriculture
- Audio and Video signals processing
- Emotion recognition
- Environmental applications
- Resilient Communication in Contested Environments

* Guest Editors
----------------
Dr. Lorenzo Valerio, IIT-CNR, Pisa, Italy ([log in to unmask])
Dr. Franco Maria Nardini, ISTI-CNR, Pisa, Italy ([log in to unmask])
Dr. Nirmalya Roy, University of Maryland, Baltimore County, USA ([log in to unmask])
Dr. Raghuveer Rao, U.S. DEVCOM Army Research Laboratory, USA ([log in to unmask])

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