Періодичні видання НАСОА
Permanent URI for this communityhdl:123456789/12
Browse
Browsing Періодичні видання НАСОА by Subject "artificial intelligence (AI)"
Now showing 1 - 2 of 2
- Results Per Page
- Sort Options
Item Digitalization of the EU Manufacturing Sector: The Use of Artificial Intelligence(Національна академія статистики, обліку та аудиту, 2025) Salikhov M. M.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.Item Implementation of Artificial Intelligence in EU Industry: Trends Аnalysis.(Національна академія статистики, обліку та аудиту, 2026) Polozova, T. V.; Salikhov, M. M.The article analyzes current trends in the implementation of artificial intelligence (AI) technologies in manufacturing in the European Union. It is established that since 2018, the EU has evolved from the formation of basic regulatory frameworks to a comprehensive architecture aimed at integrating AI into economic systems, production processes, and organizational models. It was found that the share of enterprises using at least one AI technology increased from 6.93% in 2021 to 17.27% in 2025, indicating a shift from fragmented use to systematic integration of AI in production and management processes. The analysis of high-tech (KTI) and traditional (non-KTI) sectors revealed clear structural differences: in 2025, the highest levels of AI adoption among KTI sectors were recorded in pharmaceutical manufacturing (41.32%), computer, electronic, and optical equipment production (37.44%), chemical manufacturing (28.45%), electrical equipment manufacturing (25.90%), and mechanical engineering (25.45%). This reflects the high intensity of digitalization in knowledge-intensive sectors, where AI is integrated into production and innovation processes. It was determined that national AI adoption trajectories in 2021–2025 form two groups: 1) countries with a high initial base (over 10%), including Denmark, Luxembourg, the Netherlands, Germany, Slovenia, Austria, Belgium, and Sweden, demonstrate stable digital transformation; 2) countries with a lower starting base, such as Estonia, Lithuania, Ireland, and Malta, show accelerated growth. For Ukraine, research priorities are justified: assessing the efficiency of digital transformation under limited resources, integrating ICT and AI into traditional manufacturing and service sectors, and identifying factors that stimulate digital innovation. The results may serve as a scientific basis for improving strategic documents on the digitalization of Ukraine's economy, promoting high-tech sectors, supporting traditional sectors through AI access, standardizing solutions and personnel training, and considering European regulatory approaches to integrate Ukrainian manufacturing into the EU digital space.