A Code-Driven Approach Design with Help of Artificial Intelligence

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Hasan Hashim, Omar Isam Al Mrayat, El-Sayed Atlam, Dyala Ibrahim

Abstract

This paper investigates the creation of real-time experimentation in Artificial Intelligence (AI) by means of a code-driven approach, which addresses the dynamic nature of AI applications in contemporary contexts. The complexities of real-world scenarios are frequently not captured by traditional AI experimentation, which heavily depends on static datasets and preset criteria. This study illustrates the process of adapting and enhancing AI models in live environments by combining real-time data processing with continuous method optimization. The methodology entails the establishment of real-time data channels, the execution of AI models in dynamic conditions, and the application of numerical analysis to quantify performance enhancements. The primary findings. indicate that real-time experimentation substantially enhances the accuracy, productivity, and flexibility of models in comparison to conventional methods. The results are corroborated by meticulous numerical experiments, which encompass metrics such as precision, recall, accuracy, and processing times. This research contributes to the expanding field of AI by illustrating the efficacy of real-time, code-driven testing and offering practical insights. This work has a wide-ranging impact on a variety of industries, as the demand for real-time, adaptive AI solutions becomes more urgent. These methods could be further refined and additional applications across various AI domains could be explored in future research.

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