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Artificial intelligence-based neuro consultant in the field of legal metrology

https://doi.org/10.32446/0368-1025it.2024-10-65-72

Abstract

The most booming technology of artificial intelligence, so-called large language models (LLM), is considered. Their functionality, examples and prospects of use in various fields of activity are analyzed. It is shown that by means of specialized pre-training technologies there are opportunities to create numerous neuro employees on the basis of large language models, increasing the efficiency of companies' activity. Pre-training adds special expert knowledge in a particular field and/or specific functional capabilities to the “basic intelligence” of large language models. A pilot project implemented by VNIIMS in cooperation with the University of Artificial Intelligence to create a neuro consultant in the field of legal metrology based on the YandexGPT model is described. The results of the project confirmed the practical feasibility and high efficiency of such a neuro employee. The project assumes the possibility of further development and scaling.

About the Authors

A. Yu. Kuzin
Russian Research Institute for Metrological Service
Russian Federation

Alexander Yu. Kuzin

Moscow



A. N. Kroshkin
Russian Research Institute for Metrological Service
Russian Federation

Alexey N. Kroshkin

Moscow



I. A. Obolensky
Limited Liability Company “Terra AI”
Russian Federation

Ivan A. Obolensky

Moscow



References

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Supplementary files

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For citations:


Kuzin A.Yu., Kroshkin A.N., Obolensky I.A. Artificial intelligence-based neuro consultant in the field of legal metrology. Izmeritel`naya Tekhnika. 2024;(10):65-72. (In Russ.) https://doi.org/10.32446/0368-1025it.2024-10-65-72

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ISSN 0368-1025 (Print)
ISSN 2949-5237 (Online)