An AI Agent Execution Environment to Safeguard User Data
Robert Stanley, Avi Verma, Lillian Tsai, Konstantinos Kallas, Sam Kumar

TL;DR
This paper introduces GAAP, a secure execution environment for AI agents that guarantees user data privacy by enforcing permission-based data flow control without trusting the AI model or user prompts.
Contribution
GAAP is a novel privacy-preserving environment that tracks and enforces user permissions for private data in AI agents, preventing data leaks even under attack.
Findings
GAAP blocks all data disclosure attacks in evaluation.
GAAP operates without significant utility loss for AI agents.
GAAP enforces privacy guarantees deterministically without trusting the AI model.
Abstract
AI agents promise to serve as general-purpose personal assistants for their users, which requires them to have access to private user data (e.g., personal and financial information). This poses a serious risk to security and privacy. Adversaries may attack the AI model (e.g., via prompt injection) to exfiltrate user data. Furthermore, sharing private data with an AI agent requires users to trust a potentially unscrupulous or compromised AI model provider with their private data. This paper presents GAAP (Guaranteed Accounting for Agent Privacy), an execution environment for AI agents that guarantees confidentiality for private user data. Through dynamic and directed user prompts, GAAP collects permission specifications from users describing how their private data may be shared, and GAAP enforces that the agent's disclosures of private user data, including disclosures to the AI model…
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