TL;DR
This paper analyzes the development and diffusion of Deep Learning as a General Purpose Technology, highlighting its global geographic shifts, regional clustering, and the factors influencing its growth and dominance.
Contribution
It provides a novel empirical analysis of Deep Learning's evolution as a GPT, including geographic and industrial dynamics, using new datasets and metrics.
Findings
China's rise in AI rankings and regional dominance
Consolidation of DL research hubs over time
Regional clusters driven by research and industrial synergy
Abstract
General Purpose Technologies (GPTs) that can be applied in many industries are an important driver of economic growth and national and regional competitiveness. In spite of this, the geography of their development and diffusion has not received significant attention in the literature. We address this with an analysis of Deep Learning (DL), a core technique in Artificial Intelligence (AI) increasingly being recognized as the latest GPT. We identify DL papers in a novel dataset from ArXiv, a popular preprints website, and use CrunchBase, a technology business directory to measure industrial capabilities related to it. After showing that DL conforms with the definition of a GPT, having experienced rapid growth and diffusion into new fields where it has generated an impact, we describe changes in its geography. Our analysis shows China's rise in AI rankings and relative decline in several…
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