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arXiv 提交日期: 2026-06-21
📄 Abstract - Grounded Scaling: Why Agentic AI Needs Deterministic Environments

Long-chain agent execution fails exponentially in environments designed for human tolerance: with per-step determinism $\delta < 1$, $k$-step chain success degrades as $\delta^k$. The AGI-to-ASI scaling debate (Genewein et al., 2026) has so far framed progress as a race between compute growth and a list of frictions (data wall, abstraction barrier, embodied bottleneck, multi-agent trust); we argue that environment determinism is a complementary binding axis cutting across all four, for the broad class of agentic AI tasks whose outcomes are verifiable economically, physically, or through multi-party settlement. Three formal results pin down the regime: a Determinism-Efficiency Bound on chain-task success, a Verifier-Goodharting Floor on flywheel ceilings under imperfect rewards, and a convergence condition for environment-side skill evolution. We operationalise the framework as a Supply Certainty Index (SCI) over five measurable properties, a five-level Determinism Maturity Model (DMM) as adoption ladder, and a falsifiable open-question programme (OQ1-OQ5) with explicit null results that would force retraction. The position is platform-agnostic. We engage three competing positions: sim-to-real sufficiency, alignment sufficiency, and AI-as-normal-technology.

顶级标签: agents theory
详细标签: deterministic environments long-chain execution scaling laws supply certainty index maturity model 或 搜索:

接地缩放:为何智能体AI需要确定性环境 / Grounded Scaling: Why Agentic AI Needs Deterministic Environments


1️⃣ 一句话总结

本文提出,在复杂任务中,智能体AI的成功率会随着执行步骤增加而指数级下降,根本原因在于现实环境缺乏确定性;作者通过数学模型证明,提高环境确定性比单纯增加算力或数据更能有效推动AI规模扩展,并给出了衡量和提升环境确定性的实用工具与开放性问题。

源自 arXiv: 2606.22495