y0news
AnalyticsDigestsSourcesTopicsRSSAICrypto

#audit-trails News & Analysis

9 articles tagged with #audit-trails. AI-curated summaries with sentiment analysis and key takeaways from 50+ sources.

9 articles
AI × CryptoNeutralarXiv – CS AI · Jun 47/10
🤖

Notarized Agents: Receiver-Attested Confidential Receipts for AI Agent Actions

Researchers propose Sello, a cryptographic protocol that addresses a critical vulnerability in AI agent observability by having external services sign tamper-evident receipts of agent actions rather than agents logging their own activity. The system uses receiver-side signing, encryption, and public transparency logs to create an independent audit trail that prevents compromised agents from falsifying records.

AINeutralarXiv – CS AI · May 297/10
🧠

The Importance of Out-of-Band Metadata for Safe Autonomous Agents: The Redpanda Agentic Data Plane

Researchers present the Redpanda Agentic Data Plane, an architecture that isolates security-critical metadata from autonomous AI agents through out-of-band channels. The system enforces access controls, policy constraints, and audit trails outside the agent's operational path, addressing the fundamental tension between agent autonomy and security vulnerability in enterprise environments.

AIBullisharXiv – CS AI · Apr 137/10
🧠

From Business Events to Auditable Decisions: Ontology-Governed Graph Simulation for Enterprise AI

Researchers introduce LOM-action, an enterprise AI system that grounds LLM-based decisions in business ontologies and event-driven simulations rather than unrestricted knowledge spaces. The approach achieves 93.82% accuracy with 98.74% F1 scores on decision chains, vastly outperforming larger models like DeepSeek-V3.2, while maintaining complete audit trails for enterprise compliance.

AINeutralarXiv – CS AI · Jun 116/10
🧠

A Five-Plane Reference Architecture for Runtime Governance of Production AI Agents

Researchers propose a five-plane reference architecture for governing production AI agents in enterprise environments, addressing security gaps where traditional data-boundary controls fail. The system uses composite principals, capability attenuation, and structured audit trails to manage delegated agent actions that could otherwise transform business processes without proper authorization.

AINeutralarXiv – CS AI · Jun 96/10
🧠

Collaborative Human-Agent Protocol (CHAP)

Researchers introduce CHAP (Collaborative Human-Agent Protocol), a standardized framework for managing interactions between humans and AI agents in production systems. The protocol structures oversight moments, handoffs, and approvals as auditable events with cryptographic signatures, addressing a gap between existing tool-access standards (MCP) and agent-to-agent protocols (A2A).

AINeutralarXiv – CS AI · May 296/10
🧠

From Prompts to Context: An Ontology-Driven Framework for Human-Generative AI Collaboration

Researchers propose an ontology-driven framework called CCAI (Contextual Collaboration AI Ontology) to document and trace human-AI interactions, converting ephemeral prompt-response exchanges into structured, queryable collaboration records. The framework addresses transparency and accountability gaps in AI-assisted workflows by explicitly modeling tasks, agent roles, resources, and constraints within a machine-interpretable vocabulary.

AINeutralarXiv – CS AI · May 16/10
🧠

Chronology of Multi-Agent Interactions for Provenance of Evolving Information

Researchers propose a novel system for tracking provenance in multi-agent AI systems by creating chronological records of contributions during content generation. The approach uses 'symbolic chronicles'—timestamped records similar to forensic chain-of-custody documentation—enabling attribution without relying on internal memory or external metadata, addressing accountability challenges in collaborative AI.

AINeutralarXiv – CS AI · Apr 146/10
🧠

EmbodiedGovBench: A Benchmark for Governance, Recovery, and Upgrade Safety in Embodied Agent Systems

Researchers introduce EmbodiedGovBench, a new evaluation framework for embodied AI systems that measures governance capabilities like controllability, policy compliance, and auditability rather than just task completion. The benchmark addresses a critical gap in AI safety by establishing standards for whether robot systems remain safe, recoverable, and responsive to human oversight under realistic failures.

AINeutralarXiv – CS AI · Mar 96/10
🧠

ESAA-Security: An Event-Sourced, Verifiable Architecture for Agent-Assisted Security Audits of AI-Generated Code

Researchers have developed ESAA-Security, a new architecture for conducting secure, verifiable audits of AI-generated code using structured agent workflows rather than unstructured LLM conversations. The system creates an immutable audit trail through event-sourcing and produces comprehensive security reports across 26 tasks and 95 executable checks.