Константин Лысяков (Редактор отдела «Россия»)
I noticed a pattern: every LLM framework today lets the AI manage state and do math. Then we wonder why pipelines hallucinate numbers and break at 3 AM.I took a different approach and built Aura-State, an open-source Python framework that compiles LLM workflows into formally verified state machines.Instead of hoping the AI figures it out, I brought in real algorithms from hardware verification and statistical learning:CTL Model Checking: the same technique used to verify flight control systems, now applied to LLM workflow graphs. Proves safety properties before execution.Z3 Theorem Prover: every LLM extraction gets formally proven against business constraints. If the total ≠ price × quantity, Z3 catches it with a counterexample.Conformal Prediction: distribution-free 95% confidence intervals on every extracted field. Not just "the LLM said $450k" but "95% CI: [$448k, $452k]."MCTS Routing: Monte Carlo Tree Search (the algorithm behind AlphaGo) scores ambiguous state transitions mathematically.Sandboxed Math: English math rules compile to Python AST. Zero hallucination calculations.I ran a live benchmark against 10 real-estate sales transcripts using GPT-4o-mini:
,这一点在谷歌浏览器下载中也有详细论述
新品类导入市场,无非就是抓住两类人群。第一是刚需用户,现在购买、高频使用外骨骼的还是老人,60 岁以上、本身体力不足、肌肉或关节疼痛等问题的人群。穿上外骨骼后,能够减少行动不适感,拓展活动范围,重新获得自由行走的能力,他们和家人就愿意为此付费。
Фото: Evgenia Novozhenina / Reuters
ВсеОбществоПолитикаПроисшествияРегионыМосква69-я параллельМоя страна