Authenticated Delegation and Authorized AI Agents
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Good quality. Reputable source with community review or editorial standards, but less rigorous than peer-reviewed venues.
Rating inherited from publication venue: arXiv
Relevant to AI governance and safety practitioners designing infrastructure for agentic AI systems; proposes concrete technical standards for accountability and access control as autonomous agents proliferate.
Paper Details
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Abstract
The rapid deployment of autonomous AI agents creates urgent challenges around authorization, accountability, and access control in digital spaces. New standards are needed to know whom AI agents act on behalf of and guide their use appropriately, protecting online spaces while unlocking the value of task delegation to autonomous agents. We introduce a novel framework for authenticated, authorized, and auditable delegation of authority to AI agents, where human users can securely delegate and restrict the permissions and scope of agents while maintaining clear chains of accountability. This framework builds on existing identification and access management protocols, extending OAuth 2.0 and OpenID Connect with agent-specific credentials and metadata, maintaining compatibility with established authentication and web infrastructure. Further, we propose a framework for translating flexible, natural language permissions into auditable access control configurations, enabling robust scoping of AI agent capabilities across diverse interaction modalities. Taken together, this practical approach facilitates immediate deployment of AI agents while addressing key security and accountability concerns, working toward ensuring agentic AI systems perform only appropriate actions and providing a tool for digital service providers to enable AI agent interactions without risking harm from scalable interaction.
Summary
This paper introduces a framework for secure, auditable delegation of authority to autonomous AI agents, extending OAuth 2.0 and OpenID Connect with agent-specific credentials. It addresses authorization, accountability, and access control challenges by translating natural language permissions into formal access control configurations, enabling organizations to deploy AI agents with verifiable, restricted scopes of action.
Key Points
- •Extends existing OAuth 2.0 and OpenID Connect protocols with agent-specific credentials and metadata to maintain compatibility with current web infrastructure.
- •Proposes a method for translating natural language permissions into auditable access control configurations for flexible yet verifiable agent scoping.
- •Maintains clear chains of accountability so human principals can track and verify what actions AI agents perform on their behalf.
- •Aims for immediate practical deployability while addressing key security concerns for digital service providers interacting with autonomous agents.
- •Addresses the risk of scalable harm from AI agents by enabling service providers to gate and restrict agentic interactions at the protocol level.
Cited by 1 page
| Page | Type | Quality |
|---|---|---|
| Multi-Agent Safety | Approach | 68.0 |
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[License: CC BY-SA 4.0](https://info.arxiv.org/help/license/index.html#licenses-available)
arXiv:2501.09674v1 \[cs.CY\] 16 Jan 2025
# Authenticated Delegation and Authorized AI Agents
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Tobin South
Samuele Marro
Thomas Hardjono
Robert Mahari
Cedric Deslandes Whitney
Dazza Greenwood
Alan Chan
Alex Pentland
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###### Abstract
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The rapid deployment of autonomous AI agents creates urgent challenges around authorization, accountability, and access control in digital spaces.
New standards are needed to know whom AI agents act on behalf of and guide their use appropriately, protecting online spaces while unlocking the value of task delegation to autonomous agents.
We introduce a novel framework for authenticated, authorized, and auditable delegation of authority to AI agents, where human users can securely delegate and restrict the permissions and scope of agents while maintaining clear chains of accountability.
This framework builds on existing identification and access management protocols, extending OAuth 2.0 and OpenID Connect with agent-specific credentials and metadata, maintaining compatibility with established authentication and web infrastructure.
Further, we propose a framework for translating flexible, natural language permissions into auditable access control configurations, enabling robust scoping of AI agent capabilities across diverse interaction modalities.
Taken together, this practical approach facilitates immediate deployment of AI agents while addressing key security and accountability concerns, working toward ensuring agentic AI systems perform only appropriate actions and providing a tool for digital service providers to enable AI agent interactions without risking harm from scalable interaction.
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Machine Learning, ICML
## 1 Introduction
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Agentic AI systems, also referred to as AI assistants or simply ‘agents’, are AI systems that can pursue complex goals with limited direct supervision on behalf of a user (Gabriel et al., [2024](https://arxiv.org/html/2501.09674v1#bib.bib33 ""); Chan et al., [2024a](https://arxiv.org/html/2501.09674v1#bib.bib22 ""); Shavit et al., [2023](https://arxiv.org/html/2501.09674v1#bib.bib72 ""); Chan et al., [2023](https://arxiv.org/html/2501.09674v1#bib.bib21 ""); Kenton et al., [2023](https://arxiv.org/html/2501.09674v1#bib.bib45 "")), including by interacting with a variety of external digital tools and services (Nakano et al., [2021](https://arxiv.org/html/2501.09674v1#bib.bib55 ""); Lieberman, [1997](https://arxiv.org/html/2501.09674v1#bib.bib47 ""); Fourney et al., [2024](https://arxiv.org/html/2501.09674v1#bib.bib32 "")). For example, AI agents given a prompt to book travel arrangements for a holiday may browse the web for recommendations, search for flights via APIs, or message an airline agent in natural language via ch
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