Download PDFOpen PDF in browserOptimizing Software Performance and Bug Detection: Genetic Algorithm-Enhanced Time Convolution Neural Networks (GA-TCN)EasyChair Preprint 128127 pages•Date: March 28, 2024AbstractIn the realm of software development, optimizing performance and detecting bugs are crucial tasks for ensuring robust and reliable applications. This paper introduces a novel approach, termed Genetic Algorithm-Enhanced Time Convolution Neural Networks (GA-TCN), designed to address these challenges. The integration of genetic algorithms (GA) with time convolution neural networks (TCN) offers a powerful paradigm for technological evaluation and software bug training. By leveraging GA's evolutionary principles and TCN's ability to capture temporal dependencies, GA-TCN provides a versatile framework for enhancing software performance and detecting bugs. This paper presents the conceptual foundation, implementation methodology, and experimental results of GA-TCN, demonstrating its efficacy in various software development scenarios. Keyphrases: Genetic Algorithms, Performance enhancement, Technological evaluation, Time convolution neural networks, bug detection, software optimization
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