GPT-4 TURBO: EXPANDING THE BOUNDARIES OF ARTIFICIAL INTELLIGENCE THROUGH API INTEGRATION
https://doi.org/10.54596/2958-0048-2023-4-140-147
Abstract
GPT-4 Turbo represents a new milestone in the development of artificial intelligence (AI), providing unique opportunities for API integration into proprietary developments. This algorithm, based on the GPT-4 architecture, not only improves the quality of natural language, but also provides high performance and efficiency in a wide variety of tasks. In this article, we will look at the key characteristics of the GPT-4 Turbo, as well as consider the prospects for its implementation through the API in various areas.
About the Authors
B. R. TanatovaKazakhstan
Petropavlovsk
V. P. Kulikov
Kazakhstan
Petropavlovsk
References
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Review
For citations:
Tanatova B.R., Kulikov V.P. GPT-4 TURBO: EXPANDING THE BOUNDARIES OF ARTIFICIAL INTELLIGENCE THROUGH API INTEGRATION. Vestnik of M. Kozybayev North Kazakhstan University. 2023;(4 (60)):140-147. (In Russ.) https://doi.org/10.54596/2958-0048-2023-4-140-147