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A COMPARATIVE ANALYSIS OF MODELS BASED ON GPT AND ITS OWN CREATED NEURAL NETWORK IN THE PROBLEM OF OBJECT DETECTION

https://doi.org/10.53360/2788-7995-2025-3(19)-11

Abstract

In recent years, the use of neural networks has expanded significantly through the development of models such as Generative Pre-trained Transformer (GPT) and various variations of convolutional neural networks (CNN) for various machine vision tasks. One of the key tasks in this area is the detection of objects in images. This article presents a comparative analysis of GPT-based models, pre-trained models and created artificial neural networks in the context of object detection. Object detection is a key task in computer vision, and applications cover various fields such as autonomous driving, surveillance, and medical imaging. The study begins by outlining the basics of object detection and the importance of choosing the right model for effective implementation. The advantages of their extensive pre-training are juxtaposed with the challenges associated with high computing requirements and limited customization.

About the Authors

A. K. Kossayakova
Manash Kozybayev North Kazakhstan university
Kazakhstan

Aknur Koptileuovna Kossayakova 

150000, Republic of Kazakhstan, Petropavlovsk, Magzhan Zhumabayev St. 114



D. M. Kalmanova
Eurasian National University named after L.N. Gumilyov
Kazakhstan

Dinara Mirzabekovna Kalmanova – Candidate of Pedagogical Sciences and Acting Associate Professor of the Department of «Space Engineering and Technology» 

Republic of Kazakhstan, Astana, Satpayev street, building 2



I. G. Kurmashev
Manash Kozybayev North Kazakhstan university
Kazakhstan

Ildar Gusmanovich Kurmashev – PhD, Associate Professor

150000, Republic of Kazakhstan, Petropavlovsk, Magzhan Zhumabayev St. 114 



O. K. Abdirashev
Eurasian National University named after L.N. Gumilyov
Kazakhstan

Omirzak Koptileuovich Abdirashev – PhD, Acting Associate Professor of the Department of «Space Engineering and Technology»

Republic of Kazakhstan, Astana, Satpayev street, building 2



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Review

For citations:


Kossayakova A.K., Kalmanova D.M., Kurmashev I.G., Abdirashev O.K. A COMPARATIVE ANALYSIS OF MODELS BASED ON GPT AND ITS OWN CREATED NEURAL NETWORK IN THE PROBLEM OF OBJECT DETECTION. Bulletin of Shakarim University. Technical Sciences. 2025;(3(19)):90-98. (In Kazakh) https://doi.org/10.53360/2788-7995-2025-3(19)-11

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ISSN 2788-7995 (Print)
ISSN 3006-0524 (Online)
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