Engineering methods are centered around traditional notions of decomposition and recomposition that rely on partitioning the inputs and outputs of components to allow for component-level properties to hold after their composition. In artificial intelligence (AI), however, systems are often expected to influence their environments, and, by way of their environments, to influence themselves. Thus, it is unclear if an AI system's inputs will be independent of its outputs, and, therefore, if AI systems can be treated as traditional components. This paper posits that engineering general intelligence requires new general systems precepts, termed the core and periphery, and explores their theoretical uses. The new precepts are elaborated using abstract systems theory and the Law of Requisite Variety. By using the presented material, engineers can better understand the general character of regulating the outcomes of AI to achieve stakeholder needs and how the general systems nature of embodiment challenges traditional engineering practice.
翻译:工程方法围绕着传统的分解和再组合概念,这些概念依赖于对部件的投入和产出进行分割,以便部件的特性在组成后得以保持。然而,在人工智能(AI)中,系统通常会影响其环境,并通过环境影响自身。因此,尚不清楚AI系统的投入是否独立于其产出,因此,如果可以将AI系统视为传统组成部分。本文认为,工程一般情报需要新的一般系统规则,称为核心和外围,并探索其理论用途。新规则是利用抽象系统理论和补充多样性法来拟订的。通过使用所提供的材料,工程师可以更好地了解管理AI结果的一般性质,以便满足利害关系方的需求,以及体现传统工程实践的一般系统性质是如何挑战的。