It's just distributed computing: Rethinking AI governance

IF 5.9 2区 管理学 Q1 COMMUNICATION
Milton L. Mueller
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Abstract

What we now lump under the unitary label “artificial intelligence” is not a single technology, but a highly varied set of machine learning applications enabled and supported by a globally ubiquitous system of distributed computing. The paper introduces a 4 part conceptual framework for analyzing the structure of that system, which it labels the digital ecosystem. What we now call “AI” is then shown to be a general functionality of distributed computing. "AI” has been present in primitive forms from the origins of digital computing in the 1950s. Three short case studies show that large-scale machine learning applications have been present in the digital ecosystem ever since the rise of the Internet. and provoked the same public policy concerns that we now associate with “AI.” The governance problems of “AI” are really caused by the development of this digital ecosystem, not by LLMs or other recent applications of machine learning. The paper then examines five recent proposals to “govern AI”and maps them to the constituent elements of the digital ecosystem model. This mapping shows that real-world attempts to assert governance authority over AI capabilities requires systemic control of all four elements of the digital ecosystem: data, computing power, networks and software. “Governing AI,” in other words, means total control of distributed computing. A better alternative is to focus governance and regulation upon specific applications of machine learning. An application-specific approach to governance allows for a more decentralized, freer and more effective method of solving policy conflicts.
它只是分布式计算:重新思考人工智能治理
我们现在统称为“人工智能”的东西,并不是一种单一的技术,而是一组高度多样化的机器学习应用程序,由全球无处不在的分布式计算系统启用和支持。本文介绍了一个由四部分组成的概念框架来分析该系统的结构,并将其称为数字生态系统。我们现在所说的“人工智能”是分布式计算的一般功能。从20世纪50年代数字计算的起源开始,“人工智能”就以原始的形式出现了。三个简短的案例研究表明,自互联网兴起以来,大规模的机器学习应用已经出现在数字生态系统中。并引发了我们现在与“人工智能”联系在一起的公共政策担忧。“人工智能”的治理问题实际上是由这个数字生态系统的发展引起的,而不是由法学硕士或其他最近的机器学习应用引起的。然后,本文研究了最近提出的五项“治理人工智能”的建议,并将它们映射到数字生态系统模型的组成要素。这张地图表明,在现实世界中,试图对人工智能能力行使治理权威,需要对数字生态系统的所有四个要素进行系统控制:数据、计算能力、网络和软件。换句话说,“治理人工智能”意味着对分布式计算的完全控制。更好的选择是将治理和监管重点放在机器学习的特定应用上。特定于应用程序的治理方法允许采用更分散、更自由和更有效的方法来解决策略冲突。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Telecommunications Policy
Telecommunications Policy 工程技术-电信学
CiteScore
10.80
自引率
12.50%
发文量
122
审稿时长
38 days
期刊介绍: Telecommunications Policy is concerned with the impact of digitalization in the economy and society. The journal is multidisciplinary, encompassing conceptual, theoretical and empirical studies, quantitative as well as qualitative. The scope includes policy, regulation, and governance; big data, artificial intelligence and data science; new and traditional sectors encompassing new media and the platform economy; management, entrepreneurship, innovation and use. Contributions may explore these topics at national, regional and international levels, including issues confronting both developed and developing countries. The papers accepted by the journal meet high standards of analytical rigor and policy relevance.
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