Digitalization of the EU Manufacturing Sector: The Use of Artificial Intelligence
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2025
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Національна академія статистики, обліку та аудиту
Abstract
This paper analyzes the statistical toolkit of Eurostat for collecting and processing data on the
implementation of Artificial Intelligence (AI) in enterprises across European Union (EU) countries. The study
defines the key aspects of evaluating the adoption of AI technologies, such as text mining, natural language
generation (NLG), speech and image recognition, machine learning and deep learning, process automation, and
autonomous system management. The application of this toolkit allows for the assessment of the digitalization
status of the manufacturing sector in the EU and identifies trends in the integration of advanced technologies
into business processes.
According to data from 2024, it has been determined that the average level of AI penetration in EU-27
countries remains at an early stage, ranging from 1.46% for autonomous robots to 4.58% for text analysis.
It has been analyzed that the most widespread technologies are text mining, NLG, and process automation
(RPA/AI software), which can be attributed to their relative ease of implementation and lower investment
barriers compared to AI systems embedded in devices, such as autonomous robots for warehouse automation
or production assembly works, autonomous drones for production surveillance or parcel handling, etc.
Geographic analysis reveals that the leaders in AI implementation are small to medium-sized economies
with a high level of digitalization and developed innovation infrastructure: Luxembourg, Belgium, Denmark,
Finland, Austria, the Netherlands, and Sweden. It has been established that text mining and NLG dominate in
countries with advanced data analytics, while machine learning and image recognition are more characteristic of
high-tech economies in Northern and Western Europe. It has been found that hardware-intensive technologies,
such as autonomous robots, are less widespread due to high financial and technical barriers. In particular, a
low level of AI adoption is observed in Eastern and Southern Europe, especially in Romania, Greece, Serbia,
Cyprus, and Bulgaria. The study underscores the impact of the size and technological development of a country
on the level of AI implementation: small, technologically advanced economies show leadership, whereas larger
countries with traditional manufacturing sectors exhibit moderate use of these technologies.
In Ukraine from 2026 the government plans to introduce national statistical monitoring of AI usage in
enterprises. This will allow for the collection of detailed data on the digitalization of business and the public
sector, facilitate the assessment of progress in implementing innovative technologies, monitor strategic
priorities, and adjust development policies. Alignment with European standards of AI statistics will ensure
comparability of data at the international level and contribute to Ukraine’s integration into global economic
processes. The introduction of a national statistical toolkit is an important step for monitoring the digital
transformation of the economy, assessing the impact of AI on the competitiveness of enterprises and industries,
formulating informed strategic decisions, and developing national innovation policy.
Description
Salikhov, M. M. (2025). Digitalization of the EU Manufacturing Sector: The Use of Artificial Intelligence. Statystyka Ukrainy – Statistics of Ukraine, 3, 88–101. Doi: 10.31767/su.3(110)2025.03.07
Keywords
statistical toolkit, artificial intelligence (AI), digitalization, information and communication technologies (ICT), innovation policy