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by mlyle
115 days ago
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There's no mathematically verifiable proof that anyone followed the rules. There's a cryptographic chain, but it just means "this piece of the stack, at some point, was convinced to process this and recorded that it did this." -- not whether that actually happened, what code was running, etc. It doesn't tell you anything about what code was running there or whether it was really enforced. Look, it's cool that this is an area that interests you. But I want you to know that AI agents are sycophantic and will claim your ideas are good and will not necessarily steer you in good directions. I have patents in the area of non-repudiation dating back 25 years and am doing my best to give you good feedback. Non-repudiation, policy enforcement, audit-readiness, ledgers: these are all good things. As far as I can tell, there's nothing too special about doing this with LLMs, too. The same kinds of code that a bank uses to ensure that its ledger isn't tampered with and that the right software is running in the right places would work for this job -- and it wasn't vibe coded and mostly specified by AI. |
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On “nothing too special about doing this with LLMs,” also fair. The primitives (policy enforcement, audit trails, non-repudiation) aren’t new. The bet is that AI agents will need these at a scale and standardization level that does not exist yet, and having it as a composable library matters when every framework (LangChain, CrewAI, Vercel AI SDK) is building agents differently. But the underlying cryptography isn’t novel.