Special Issue on Autonomous and Evolutive Optimization in Networked AI

IEEE Journal of Selected Topics in Signal Processing (JSTSP) Special Issue on “Autonomous and Evolutive Optimization in Networked AI“.

Special Issue Overview:
This Special Issue addresses autonomous and evolutive optimization in networked AI, a transformative paradigm that integrates traditional adaptive signal processing with modern deep learning approaches. It explores online, self-evolving mechanisms that enable distributed models to improve through dynamic data acquisition, reward generation, and pseudo-labeling. Emphasis is placed on unifying supervised and reinforcement learning within multi-agent, time-varying environments. The issue highlights scalable, self-optimizing AI architectures applicable to communications, IoT, and intelligent signal processing. Its goal is to advance foundational methodologies and promote impactful real-world applications in next-generation AI systems.

Topics of Interest Include:
• Foundations and principles of signal processing in networking systems of AI
• Mathematical underpinnings of networked AI optimization
• End-cloud collaborative large language models with evolutive optimization
• Coordinated sensing and control processing in autonomous multi-agent AI systems
• Multimodal and adaptive signal processing with networked AI
• Networked AI for cognitive communications and networks
• Online model-drift detection and compensation mechanisms
• Networked AI enhanced signal processing in non-stationary environments
• Practices of autonomous and evolutive learning for networked AI systems

Key Dates:
• Submission Deadline: June 15, 2026
• First Review Due: August 14, 2026
• Final Decision: November 20, 2026
• Publication: January 2027

Links:
IEEE JSTSP Special Issue Call: https://signalprocessingsociety.org/events/ieee-jstsp-special-issue-autonomous-and-evolutive-optimization-networked-ai
Guidelines: https://signalprocessingsociety.org/publications-resources/ieee-journal-selected-topics-signal-processing
Submission: https://mc.manuscriptcentral.com/sps-ieee

Guest Editors:
Liang Song, Fudan University, China, songl@fudan.edu.cn (Lead GE)
Jiangchuan Liu, Simon Fraser University, Canada, jcliu@sfu.ca
Amit Dvir, Ariel University, Israel, amitdv@g.ariel.ac.il
Athanassios Skodras, University of Patras, Greece, skodras@upatras.gr
Victor C.M. Leung, University of British Columbia, Canada, vleung@ece.ubc.ca
Qi Bi, China Telecom Research Institute, China, qibi@chinatelecom.cn

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