AuditNet: A Conversational AI-based Security Assistant [DEMO]
- URL: http://arxiv.org/abs/2407.14116v1
- Date: Fri, 19 Jul 2024 08:33:07 GMT
- Title: AuditNet: A Conversational AI-based Security Assistant [DEMO]
- Authors: Shohreh Deldari, Mohammad Goudarzi, Aditya Joshi, Arash Shaghaghi, Simon Finn, Flora D. Salim, Sanjay Jha,
- Abstract summary: We propose a versatile conversational AI assistant framework designed to facilitate compliance checking on the go.
Our framework automates the review, indexing, and retrieval of relevant, context-aware information.
This AI assistant not only reduces the manual effort involved in compliance checks but also enhances accuracy and efficiency.
- Score: 10.941722434218262
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: In the age of information overload, professionals across various fields face the challenge of navigating vast amounts of documentation and ever-evolving standards. Ensuring compliance with standards, regulations, and contractual obligations is a critical yet complex task across various professional fields. We propose a versatile conversational AI assistant framework designed to facilitate compliance checking on the go, in diverse domains, including but not limited to network infrastructure, legal contracts, educational standards, environmental regulations, and government policies. By leveraging retrieval-augmented generation using large language models, our framework automates the review, indexing, and retrieval of relevant, context-aware information, streamlining the process of verifying adherence to established guidelines and requirements. This AI assistant not only reduces the manual effort involved in compliance checks but also enhances accuracy and efficiency, supporting professionals in maintaining high standards of practice and ensuring regulatory compliance in their respective fields. We propose and demonstrate AuditNet, the first conversational AI security assistant designed to assist IoT network security experts by providing instant access to security standards, policies, and regulations.
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