The topic of artificial intelligence (AI) has been influencing market trends for several years. From microcomponent manufacturers to software developers, the ongoing transformation of economies is a narrative punctuated by both hope and fear. The impact on the workforce, the potential for automation to replace human labour and the need for substantial investment in computing and energy infrastructure are all factors that are gradually making the technological and digital revolution visible and measurable. The speed at which this new technology is being adopted, combined with apparent productivity gains, raises questions about the scale of the transformation in the production of goods and services. Beyond this initial channel through which the technological shock is transmitted, a second area of application remains to be explored: the capacity of innovation to generate new ideas, which makes the economies of scale associated with the production and sharing of knowledge virtually infinite. This note provides an overview of the current state of economic research on the impact of this innovation on growth, the place of human capital within the production structure of economies, and the productive capacity of actors adopting this new wave of innovation.
The impact of innovation on productivity: the cornerstone of economic development
Technological and organisational innovations have consistently shaped the development of the modern economy. From the industrial deployment of the steam engine and the standardisation of international trade to electrification and digitalisation, not to mention the introduction of Taylorism and Kanban, the development of the global economy has continually increased the efficiency of the production process.
Figure 1 illustrates productivity gains in the US, the eurozone and Japan since the late 19th century. Deep learning, or AI, is therefore part of a long line of technical innovations that will shape the creation of added value through their use and integration into current production processes, or the creation of future modes and relationships of production. However, Figure 1 shows that the labour productivity growth rate varies across economic regions. This suggests that the efficiency of production methods stems from a combination of investment, research, legal and regulatory frameworks, as well as the diversity of production ecosystems in the US, Japan, and the euro area.
As Aghion and Bunel (2024) point out, the innovation shock brought about by AI is likely to be subject to a transmission lag similar to that observed during the introduction of electricity or digitalisation. This delay is due to the inherent inertia of the physical and intellectual structures that are required to assimilate innovation, such as incompatible machinery and resources that must be adapted to facilitate adoption.