Developing industrial AI capabilities: An organisational learning perspective

IF 11.1 1区 管理学 Q1 ENGINEERING, INDUSTRIAL Technovation Pub Date : 2024-10-15 DOI:10.1016/j.technovation.2024.103120
Paavo Ritala , Päivi Aaltonen , Mika Ruokonen , Andre Nemeh
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引用次数: 0

Abstract

Incumbent industrial firms are putting in a lot of effort in developing capabilities for machine learning (ML) systems that help them better predict and perform a variety of industrial and business processes and decisions. Given the data-, process-, and organizational structure-related requirements for effective implementation of such systems, these organizations encounter a major challenge in developing capabilities in this context. However, the existing literature has yet to unravel the organizational processes and practices associated with artificial intelligence (AI) capability development and deployment in industrial incumbent firms. The present study frames AI adoption in established industrial firms as a process of history-embedded, situated organizational learning involving explorative and exploitative learning. Based on a qualitative study of seven firms utilizing ML algorithms in their industrial and business processes, we develop a grounded model that explains AI capability building as both enabled and constrained by perceptual and functional triggers and barriers, leveraged via communicative and structural practices, and resulting in ongoing and interdependent processes of exploration and exploitation. The study contributes to the literature by showing how the convergence of organizational learning and AI technology's unique features promotes a distinct dynamic of AI capability building and deployment.
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发展工业人工智能能力:组织学习视角
现有的工业企业正在花大力气开发机器学习(ML)系统的能力,以帮助它们更好地预测和执行各种工业和业务流程及决策。鉴于有效实施此类系统需要满足与数据、流程和组织结构相关的要求,这些组织在开发这方面的能力时遇到了重大挑战。然而,现有文献尚未揭示工业现有企业中与人工智能(AI)能力开发和部署相关的组织流程和实践。本研究将老牌工业企业采用人工智能的过程视为一个历史嵌入式、情景化的组织学习过程,其中涉及探索性学习和利用性学习。基于对七家在其工业和业务流程中使用人工智能算法的公司进行的定性研究,我们建立了一个基础模型,解释了人工智能能力建设既受感知和功能触发因素及障碍的影响,又受其制约,通过沟通和结构实践加以利用,并导致持续和相互依存的探索和利用过程。本研究通过展示组织学习与人工智能技术独特功能的融合如何促进人工智能能力建设和部署的独特动态,为相关文献做出了贡献。
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来源期刊
Technovation
Technovation 管理科学-工程:工业
CiteScore
15.10
自引率
11.20%
发文量
208
审稿时长
91 days
期刊介绍: The interdisciplinary journal Technovation covers various aspects of technological innovation, exploring processes, products, and social impacts. It examines innovation in both process and product realms, including social innovations like regulatory frameworks and non-economic benefits. Topics range from emerging trends and capital for development to managing technology-intensive ventures and innovation in organizations of different sizes. It also discusses organizational structures, investment strategies for science and technology enterprises, and the roles of technological innovators. Additionally, it addresses technology transfer between developing countries and innovation across enterprise, political, and economic systems.
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