The disruptive potential of AI systems roots in the emergence of big data. Yet, a significant portion is scattered and locked in data silos, leaving its potential untapped. Federated Machine Learning is a novel AI paradigm enabling the creation of AI models from decentralized, potentially siloed data. Hence, Federated Machine Learning could technically open data silos and therefore unlock economic potential. However, this requires collaboration between multiple parties owning data silos. Setting up collaborative business models is complex and often a reason for failure. Current literature lacks guidelines on which aspects must be considered to successfully realize collaborative AI projects. This research investigates the challenges of prevailing collaborative business models and distinct aspects of Federated Machine Learning. Through a systematic literature review, focus group, and expert interviews, we provide a systemized collection of socio-technical challenges and an extended Business Model Canvas for the initial viability assessment of collaborative AI projects.
翻译:人工智能系统的破坏性潜力源于大数据的出现。然而,其中可观的一部分数据是分散和封锁在数据孤岛中的,其中的潜力无法被挖掘。分布式机器学习是一种新的人工智能范式,它使得可以从分散、潜在的孤立数据中创建人工智能模型。因此,分布式机器学习可以在技术上打开数据孤岛,并因此释放经济潜力。然而,这需要多个拥有数据孤岛的参与方之间的协作。建立合作商业模型是复杂的,也常常成为失败的原因。当前的文献缺乏指导方针,有关成功实现协同人工智能项目必须考虑的各个方面没有得到重视。本研究通过系统性文献综述、重点小组和专家访谈,提供了系统化的社会技术挑战收集以及一个扩展的业务模式画布,用于初步可行性评估协同人工智能项目。