Foundations for Agentic AI Investigations from the Forensic Analysis of OpenClaw
Jan Gruber, Jan-Niclas Hilgert

TL;DR
This paper investigates forensic analysis methods for agentic AI systems, focusing on OpenClaw, and highlights challenges posed by nondeterminism and abstraction layers in tracing agent behavior.
Contribution
It provides an empirical analysis of OpenClaw, proposes an agent artifact taxonomy, and discusses foundational challenges in agentic AI forensics.
Findings
Identified recoverable traces in OpenClaw's interaction stages
Classified forensic traces to evaluate their investigative value
Highlighted nondeterminism as a key challenge in agent forensics
Abstract
Agentic Al systems are increasingly deployed as personal assistants and are likely to become a common object of digital investigations. However, little is known about how their internal state and actions can be reconstructed during forensic analysis. Despite growing popularity, systematic forensic approaches for such systems remain largely unexplored. This paper presents an empirical study of OpenClaw a widely used single-agent assistant. We examine OpenClaw's technical design via static code analysis and apply differential forensic analysis to identify recoverable traces across stages of the agent interaction loop. We classify and correlate these traces to assess their investigative value in a systematic way. Based on these observations, we propose an agent artifact taxonomy that captures recurring investigative patterns. Finally, we highlight a foundational challenge for agentic Al…
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