Resonance diagnostics of production space of generative systems of artificial intelligence

Author:

S KovalevskyyORCID, ,O KovalevskaORCID,D SidyukORCID, ,

Abstract

The development of artificial intelligence generative systems (AIGS) in the modern world requires addressing issues related to the quality, stability, and efficiency of the generated content. In this context, resonance diagnostics become of paramount importance. The purpose of this study is to explore the possibilities of applying resonance diagnostics for detecting, analyzing, and resolving problems in artificial intelligence generative systems. To achieve the set goal, the following tasks were identified: analysis of the theoretical foundations of resonance diagnostics; investigation of the potential of using resonance signals to adjust AIGS learning parameters; studying the impact of resonance diagnostics on the stability and adaptation of AIGS to changing operating conditions. The study conducted an analysis of resonance diagnostics in the context of AIGS and revealed its powerful influence on addressing issues related to system quality and productivity. The research demonstrated that resonance diagnostics can be used to achieve realism, diversity, and quality of generated content. Additionally, it was determined that it can contribute to enhancing the stability and adaptation of systems to varying operational conditions

Publisher

National Academy of Sciences of Ukraine (Co. LTD Ukrinformnauka) (Publications)

Reference14 articles.

1. 1. Fiona Fui-Hung Na, Ruilin Zheng, Jingguan Tsai, Keng Siao and Langtao Chen (2023). Generative AI and ChatGPT: Applications, challenges, and human collaboration, Journal of Information Technology Case and Application Research, DOI: 10.1080/15228053.2023. 2233814.

2. 2. Sujit Kumar Dehury, Deeptimayee Khatua, Ram Naresh Prasad Choudhary, Patnala Ganga Raju Achary. (2021). Electrical and Dielectric Characterization of Bismuth Holmium Nickel Titanate (BiHoNiTiO6). Transactions of the Indian Ceramic Society 80:2, pages 135-141.

3. Measuring Designers' Cognitive Load for Timely Knowledge Push via Eye Tracking;Tong;International Journal of Human-Computer Interaction 39,2023

4. 4. Zhang, Wentian & Liu, Haozhe & Bing, Li & Xie, Jinheng & Huang, Yawen & Li, Yuexiang & Zheng, Yefeng & Ghanem, Bernard. (2023). Dynamically Masked Discriminator for Generative Adversarial Networks.

5. 5. Zillner, S., Bisset, D., Milano, M., Curry, E., García Robles, A., Hahn, T., Irgens, M., Lafrenz, R., Liepert, B., O'Sullivan, B. and Smeulders, A., (eds) (2020) "Strategic Research, Innovation and Deployment Agenda - AI, Data and Robotics Partnership. Third Release." September 2020, Brussels. BDVA, euRobotics, ELLIS, EurAI and CLAIRE.

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