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arxiv:2409.14603

Brain Surgery: Ensuring GDPR Compliance in Large Language Models via Concept Erasure

Published on Sep 22, 2024
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Abstract

Brain Surgery enables GDPR compliance for local AI models through real-time privacy management and targeted unlearning techniques.

AI-generated summary

As large-scale AI systems proliferate, ensuring compliance with data privacy laws such as the General Data Protection Regulation (GDPR) has become critical. This paper introduces Brain Surgery, a transformative methodology for making every local AI model GDPR-ready by enabling real-time privacy management and targeted unlearning. Building on advanced techniques such as Embedding-Corrupted Prompts (ECO Prompts), blockchain-based privacy management, and privacy-aware continual learning, Brain Surgery provides a modular solution that can be deployed across various AI architectures. This tool not only ensures compliance with privacy regulations but also empowers users to define their own privacy limits, creating a new paradigm in AI ethics and governance.

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