[AISWorld] Special issue on LLM+IoT
IEEE COINS Conference
coinsconf at gmail.com
Wed Sep 4 23:45:58 EDT 2024
Special issue on integrative horizons: charting new paths in the
convergence of foundation models and IoT
Introduction:
The convergence of the Internet-of-Things (IoT) and foundation models,
particularly Large Language Models (LLMs), is believed to mark a new era of
intelligent and adaptive systems. This fusion highlights the potential to
revolutionize how we interact with technology, making it more intuitive and
capable of autonomously managing complex tasks with minimal human
intervention. The IoT’s extensive network of interconnected devices offers
a wealth of real-time data, which, when paired with the advanced processing
power of foundation models like LLMs, unlocks new avenues for innovation
across various sectors.
This special issue is designed to explore this emerging field, focusing on
the architectural, operational, and application-related intricacies of this
integration. It seeks contributions that showcase the enhanced
decision-making and automation capabilities afforded by this synergy and
addresses the significant challenges it faces, including data privacy,
scalability, and the need for scalable, secure, robust architectures. By
highlighting innovative solutions and real-world applications, this issue
strives to build a holistic view of the opportunities and obstacles in the
IoT and foundational model nexus, setting the stage for a future where
technology is seamlessly woven into the fabric of our daily existence.
Furthermore, this special issue aims to catalyze industry-academic
discourse, propel research, and foster innovation at the confluence of IoT
and foundational models. In this context, we invite original contributions
on a wide array of topics。
Topics covered include, but are not limited to:
- Novel theories, concepts, and paradigms of the convergence of IoT and
foundation models Architectural blueprints for weaving IoT with
foundational models
- Architectural blueprints for weaving IoT with foundational models.
- Scalable edge computing models enhancing IoT and LLM synergies.
- Scalable Edge Computing Solutions for IoT-LLM Integration
- Novel Hardware Acceleration Techniques for IoT Devices Utilizing LLMs
- Big Data Analytics Powered by LLMs for IoT Insights
- Adaptive Resource Management in IoT Using Foundation Models
- Deployment and Orchestration of IoT Services with foundation model
Support
- Containerization tactics for streamlined IoT-LLM application deployment
- Serverless Computing Models for Dynamic IoT-LLM Workloads
- Distributed Execution Environments for IoT and LLM Collaboration
- Data collection, aggregation, and analysis techniques enriched by
foundational models
- Orchestrating AI and IoT workflows with foundation models for complex
task execution
- Development of IoT-focused foundational and generative AI models.
- Innovations in achieving interpretability and explainability in IoT
- Context-aware data enrichment techniques using foundational models
- Investigation into the fusion of IoT data streams with foundation
models (LLMs) for enhanced decision-making
- Privacy-preserving machine learning techniques
- Data ownership management
- Security, Privacy, and Trustworthiness
- Modern learning algorithms tailored for security, privacy
preservation, and trustworthiness
- Adversarial examples of attacks and defense
- The role of 5G/6G, Edge-Cloud computing, and Blockchain in the
convergence of IoT and foundation models
- Foundation model and generative AI applications in IoT for dynamic
analytics and creative problem-solving
- Cross-disciplinary methods for evaluating and refining IoT-integrated
foundation models
- Grounded learning - Comparative studies on learning modalities in the
context of IoT and foundational model integration
- Social and interactive learning paradigms within IoT and foundational
model ecosystems
- Sector-specific applications and case studies (e.g., Healthcare,
Industry 4.0, Energy, Smart Cities, Finance)
Important dates:
- Submissions deadline: September 15, 2024
- First notification: November 1, 2024
- Final notification:March 31, 2025
- Publication date: April2025
Submission instructions:
Please read the *Guide for Authors*
<http://www.keaipublishing.com/en/journals/digital-communications-and-networks/guide-for-authors/>
before submitting. All articles should be *submitted online*
<https://www.editorialmanager.com/dcan/default.aspx> via the editorial
management system <https://www.editorialmanager.com/dcan/default1.aspx>;
please select article type: Foundation Models and IoT*.*
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