GOD model: Privacy Preserved AI School for Personal Assistant
- URL: http://arxiv.org/abs/2502.18527v2
- Date: Thu, 27 Feb 2025 20:33:35 GMT
- Title: GOD model: Privacy Preserved AI School for Personal Assistant
- Authors: PIN AI Team, Bill Sun, Gavin Guo, Regan Peng, Boliang Zhang, Shouqiao Wang, Laura Florescu, Xi Wang, Davide Crapis, Ben Wu,
- Abstract summary: We introduce the Guardian of Data (GOD), a secure, privacy-preserving framework for training and evaluating AI assistants on-device.<n>GOD measures how well assistants can anticipate user needs-such as suggesting gifts-while protecting user data and autonomy.
- Score: 3.3015224434662396
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Personal AI assistants (e.g., Apple Intelligence, Meta AI) offer proactive recommendations that simplify everyday tasks, but their reliance on sensitive user data raises concerns about privacy and trust. To address these challenges, we introduce the Guardian of Data (GOD), a secure, privacy-preserving framework for training and evaluating AI assistants directly on-device. Unlike traditional benchmarks, the GOD model measures how well assistants can anticipate user needs-such as suggesting gifts-while protecting user data and autonomy. Functioning like an AI school, it addresses the cold start problem by simulating user queries and employing a curriculum-based approach to refine the performance of each assistant. Running within a Trusted Execution Environment (TEE), it safeguards user data while applying reinforcement and imitation learning to refine AI recommendations. A token-based incentive system encourages users to share data securely, creating a data flywheel that drives continuous improvement. Specifically, users mine with their data, and the mining rate is determined by GOD's evaluation of how well their AI assistant understands them across categories such as shopping, social interactions, productivity, trading, and Web3. By integrating privacy, personalization, and trust, the GOD model provides a scalable, responsible path for advancing personal AI assistants. For community collaboration, part of the framework is open-sourced at https://github.com/PIN-AI/God-Model.
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