LLM-Driven Auto Configuration for Transient IoT Device Collaboration
Hetvi Shastri, Walid A. Hanafy, Li Wu, David Irwin, Mani Srivastava, Prashant Shenoy

TL;DR
This paper introduces CollabIoT, a system that uses large language models to automatically generate fine-grained access control policies for transient IoT device collaboration, ensuring secure, seamless, and efficient interactions in dynamic environments.
Contribution
The paper presents a novel LLM-driven approach for automatic policy generation and device configuration in transient IoT environments, addressing heterogeneity and security challenges.
Findings
LLM-based policy generation achieves 100% accuracy.
Device configuration takes approximately 150 ms.
Network and access control overheads are minimal.
Abstract
Today's Internet of Things (IoT) has evolved from simple sensing and actuation devices to those with embedded processing and intelligent services, enabling rich collaborations between users and their devices. However, enabling such collaboration becomes challenging when transient devices need to interact with host devices in temporarily visited environments. In such cases, fine-grained access control policies are necessary to ensure secure interactions; however, manually implementing them is often impractical for non-expert users. Moreover, at run-time, the system must automatically configure the devices and enforce such fine-grained access control rules. Additionally, the system must address the heterogeneity of devices. In this paper, we present CollabIoT, a system that enables secure and seamless device collaboration in transient IoT environments. CollabIoT employs a Large language…
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