Large Language Models in the IoT Ecosystem -- A Survey on Security Challenges and Applications
Kushal Khatiwada, Jayden Hopper, Joseph Cheatham, Ayan Joshi, Sabur Baidya

TL;DR
This survey explores the integration of Large Language Models with IoT devices, highlighting applications, security challenges, and future research directions to enhance IoT systems through advanced AI capabilities.
Contribution
It provides a comprehensive overview of how LLMs are applied in IoT, emphasizing security, deployment strategies, and identifying research gaps for future exploration.
Findings
LLMs enable more intuitive IoT interactions.
Security vulnerabilities arise from resource-intensive LLM integration.
Edge computing frameworks are crucial for effective deployment.
Abstract
The Internet of Things (IoT) and Large Language Models (LLMs) have been two major emerging players in the information technology era. Although there has been significant coverage of their individual capabilities, our literature survey sheds some light on the integration and interaction of LLMs and IoT devices - a mutualistic relationship in which both parties leverage the capabilities of the other. LLMs like OpenAI's ChatGPT, Anthropic's Claude, Google's Gemini/BERT, any many more, all demonstrate powerful capabilities in natural language understanding and generation, enabling more intuitive and context-aware interactions across diverse IoT applications such as smart cities, healthcare systems, industrial automation, and smart home environments. Despite these opportunities, integrating these resource-intensive LLMs into IoT devices that lack the state-of-the-art computational power is a…
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