Sealing the Audit-Runtime Gap for LLM Skills
Tingda Shen, Yebo Feng, Konglin Zhu, Xiaojun Jia, Yang Liu, Lin Zhang

TL;DR
SIGIL is a framework that securely verifies and seals LLM skills from publication to runtime using a tamper-evident on-chain registry and a verification protocol, enhancing trust and security.
Contribution
It introduces a decentralized, verifiable hosting system for LLM skills with a comprehensive vetting and verification process, bridging the audit and runtime gap.
Findings
SIGIL verifies skills against an on-chain record within 86 ms.
The framework supports 1,023 real-world skills across six attack types.
Skills are cryptographically bound from publication to runtime, ensuring integrity.
Abstract
Large language model (LLM) ecosystems such as Claude Code and ChatGPT increasingly rely on skills: packages of natural-language instructions and executable tools. Once in the LLM's context, skill content cannot be reliably separated from trusted instructions, and a skill's executable side can invoke privileged actions, exposing the skill supply chain to injection, tampering, and rug-pull attacks. Existing defenses are stage-bound: centralized signing, audit reports unbound from the runtime artifact, or policy engines that cannot attest to what was approved. We present SIGIL, the first framework that seals the audit-runtime gap for LLM skills. SIGIL delivers verifiable hosting through a tamper-evident, decentralized on-chain registry from which LLMs fetch skills directly. The registry admits four publication types, Transparent, Licensed, Sealed, and Committed, spanning plaintext public…
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