If we want a future where AI serves a plurality of interests, then we should pay attention to the factors that drive its success. While others have studied the importance of data, hardware, and models in directing the trajectory of AI, we argue that open source software is a neglected factor shaping AI as a discipline. We start with the observation that almost all AI research and applications are built on machine learning open source software (MLOSS). This paper presents three contributions. First, it quantifies the outsized impact of MLOSS by using Github contributions data. By contrasting the costs of MLOSS and its economic benefits, we find that the average dollar of MLOSS investment corresponds to at least \$100 of global economic value created, corresponding to \$30B of economic value created this year. Second, we leverage interviews with AI researchers and developers to develop a causal model of the effect of open sourcing on economic value. We argue that open sourcing creates value through three primary mechanisms: standardization of MLOSS tools, increased experimentation in AI research, and creation of communities. Finally, we consider the incentives for developing MLOSS and the broader implications of these effects. We intend this paper to be useful for technologists and academics who want to analyze and critique AI, and policymakers who want to better understand and regulate AI systems.
CITATION STYLE
Langenkamp, M., & Yue, D. N. (2022). How Open Source Machine Learning Software Shapes AI. In AIES 2022 - Proceedings of the 2022 AAAI/ACM Conference on AI, Ethics, and Society (pp. 385–395). Association for Computing Machinery, Inc. https://doi.org/10.1145/3514094.3534167
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