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JOURNALS // Doklady Rossijskoj Akademii Nauk. Mathematika, Informatika, Processy Upravlenia // Archive

Dokl. RAN. Math. Inf. Proc. Upr., 2022 Volume 508, Pages 94–99 (Mi danma342)

This article is cited in 8 papers

ADVANCED STUDIES IN ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING

Application of pretrained large language models in embodied artificial intelligence

A. K. Kovaleva, A. I. Panovb

a Artificial Intelligence Research Institute, Moscow
b Federal Research Center "Computer Science and Control" of Russian Academy of Sciences, Moscow, Russia

Abstract: A feature of tasks in embodied artificial intelligence is that a query to an intelligent agent is formulated in natural language. As a result, natural language processing methods have to be used to transform the query into a format convenient for generating an appropriate action plan. There are two basic approaches to the solution of this problem. One is based on specialized models trained with particular instances of instructions translated into agent-executable format. The other approach relies on the ability of large language models trained with a large amount of unlabeled data to store common sense knowledge. As a result, such models can be used to generate an agent’s action plan in natural language without preliminary learning. This paper provides a detailed review of models based on the second approach as applied to embodied artificial intelligence tasks.

Keywords: embodied artificial intelligence, large language models, common sense knowledge, construction of action plans.

UDC: 004.8

Presented: A. A. Shananin
Received: 28.10.2022
Revised: 31.10.2022
Accepted: 03.11.2022

DOI: 10.31857/S268695432207013X


 English version:
Doklady Mathematics, 2022, 106:suppl. 1, S85–S90

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© Steklov Math. Inst. of RAS, 2024