Machine Learning for Dependable Edge Computing Systems and Services
A special issue of Big Data and Cognitive Computing (ISSN 2504-2289).
Deadline for manuscript submissions: closed (30 April 2024) | Viewed by 27428
Special Issue Editors
Interests: large-scale distributed systems; resource management; fault tolerance and software reliability; big data processing and analytic; applied machine learning (graph representation learning); reinforcement learning
Special Issues, Collections and Topics in MDPI journals
Interests: big data processing; distributed system; computer networks; machine learning systems
Special Issues, Collections and Topics in MDPI journals
Interests: intelligent software engineering; distributed system; software reliability and scalability
Special Issues, Collections and Topics in MDPI journals
Interests: cyber security; smart grid security; wireless sensor networks and IoT security
Special Issues, Collections and Topics in MDPI journals
Special Issue Information
Dear Colleagues,
Recent advances in machine learning (ML) techniques, particularly deep learning (DL), reinforcement learning, and federated learning, have successfully caused a huge number of breakthroughs in various application domains. Internet of Things (IoT) systems and applications consist of ubiquitously interconnecting devices (e.g., wireless sensors, wearable/mobile devices, cameras, smart tags, robots/UAVs, etc.). The urgent requirement of responsiveness and privacy led to Edge computing, a new paradigm that pushes the power of data analytics and computing capability to the edge of a network, closer to where the data are generated. Huge challenges exist in the design, implementation, deployment and maintenance of trustworthy and reliable Edge systems’ infrastructures, algorithms, and applications. ML and DL technologies are well-suited and insightful for use in the provision automated data and resource management and offer advanced secure and robust malicious behaviour detection, thereby significantly improving the trusted intelligence and operational efficiency.
This Special Issue will cover, but not be limited to, the following topics:
- ML for dependable middleware and infrastructure design;
- ML for end-to-end performance tracing, debugging, and prediction;
- ML for security and privacy in Edge computing, including anomaly detection, anomaly diagnosis, intrusion/malware/fraud detection, cyber-attack detection, lightweight access control framework, etc.;
- ML-assisted interoperability and collaboration between edge devices and clouds;
- Interpretability and robustness of ML for edge computing systems;
- ML for autonomous systems and applications;
- ML-assisted fault tolerance in Edge computing infrastructures and applications;
- Privacy preserving federated learning for Edge computing infrastructures and applications;
- Reinforcement learning for edge computing systems, particularly in resource management and Quality of Service;
- Risk and threat detection and analysis for edge applications;
- Open datasets of edge computing systems for system and ML research;
- Big data analytics frameworks for edge computing;
- Distributed training and neural architecture search for/on the edge.
Dr. Renyu Yang
Prof. Dr. Zhenyu Wen
Dr. Xu Wang
Dr. Prosanta Gope
Dr. Bin Shi
Guest Editors
Manuscript Submission Information
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Keywords
- machine learning
- deep learning
- edge computing
- dependability
- security and privacy
- fault-tolerance
- anomaly detection
- anomaly diagnosis
- access control
- federated learning
- reinforcement learning
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