学习机器学习:论大型科技公司在线人工智能课程的政治经济学

IF 6.5 1区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY Big Data & Society Pub Date : 2023-01-01 DOI:10.1177/20539517231153806
Inga Luchs, C. Apprich, M. Broersma
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引用次数: 2

摘要

机器学习算法在媒体研究领域仍然是一个新的研究对象。现有的研究一方面侧重于具体的软件,另一方面侧重于这些系统开发和使用的社会经济背景,而本文将在线ML课程作为一个研究对象,迄今为止很少受到关注。通过对b谷歌的机器学习速成课程和IBM的机器学习Python入门课程进行演练和批判性话语分析,我们不仅揭示了机器学习作为实践领域的技术知识、假设和主导基础设施,而且还揭示了提供课程的公司的经济利益。我们展示了在线课程如何进一步支持b谷歌和IBM通过招募新的人工智能人才,并确保他们的基础设施和模型成为主导地位,巩固甚至扩大他们的权力地位。此外,我们还展示了这些公司如何不仅极大地影响机器学习的表现方式,而且还展示了这些表现如何反过来影响和指导当前的机器学习研究和开发,以及它们的产品的社会影响。在这里,他们吹嘘着公平民主的人工智能形象,这与他们无处不在的企业产品以及公司所追求的效率和性能的广告指令形成鲜明对比。这强调了对替代基础设施和观点的需求。
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Learning machine learning: On the political economy of big tech's online AI courses
Machine learning (ML) algorithms are still a novel research object in the field of media studies. While existing research focuses on concrete software on the one hand and the socio-economic context of the development and use of these systems on the other, this paper studies online ML courses as a research object that has received little attention so far. By pursuing a walkthrough and critical discourse analysis of Google's Machine Learning Crash Course and IBM's introductory course to Machine Learning with Python, we not only shed light on the technical knowledge, assumptions, and dominant infrastructures of ML as a field of practice, but also on the economic interests of the companies providing the courses. We demonstrate how the online courses further support Google and IBM to consolidate and even expand their position of power by recruiting new AI talent and by securing their infrastructures and models to become the dominant ones. Further, we show how the companies not only influence greatly how ML is represented, but also how these representations in turn influence and direct current ML research and development, as well as the societal effects of their products. Here, they boast an image of fair and democratic artificial intelligence, which stands in stark contrast to the ubiquity of their corporate products and the advertised directives of efficiency and performativity the companies strive for. This underlines the need for alternative infrastructures and perspectives.
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来源期刊
Big Data & Society
Big Data & Society SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
10.90
自引率
10.60%
发文量
59
审稿时长
11 weeks
期刊介绍: Big Data & Society (BD&S) is an open access, peer-reviewed scholarly journal that publishes interdisciplinary work principally in the social sciences, humanities, and computing and their intersections with the arts and natural sciences. The journal focuses on the implications of Big Data for societies and aims to connect debates about Big Data practices and their effects on various sectors such as academia, social life, industry, business, and government. BD&S considers Big Data as an emerging field of practices, not solely defined by but generative of unique data qualities such as high volume, granularity, data linking, and mining. The journal pays attention to digital content generated both online and offline, encompassing social media, search engines, closed networks (e.g., commercial or government transactions), and open networks like digital archives, open government, and crowdsourced data. Rather than providing a fixed definition of Big Data, BD&S encourages interdisciplinary inquiries, debates, and studies on various topics and themes related to Big Data practices. BD&S seeks contributions that analyze Big Data practices, involve empirical engagements and experiments with innovative methods, and reflect on the consequences of these practices for the representation, realization, and governance of societies. As a digital-only journal, BD&S's platform can accommodate multimedia formats such as complex images, dynamic visualizations, videos, and audio content. The contents of the journal encompass peer-reviewed research articles, colloquia, bookcasts, think pieces, state-of-the-art methods, and work by early career researchers.
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