Quantum-Assisted AI Model Optimization: Synergy between Amazon Q and GitLab
Author(s): Nagaraj Parvatha
Publication #: 2505043
Date of Publication: 09.09.2024
Country: India
Pages: 1-14
Published In: Volume 10 Issue 5 September-2024
Abstract
Integration of quantum computing into artificial intelligence (AI) model optimization is a paradigmatic leap in both fields. To improve the efficiency and performance of AI models, this research examines the synergy of Amazon Q, a quantum computing service, with GitLab, a platform for DevOps and continuous integration and continuous deployment (CI/CD). In this approach we apply quantum optimization algorithms such as the Quantum Approximate Optimization Algorithm (QAOA) to the AI model training process to reduce computation times, improve optimization outcomes. By applying Amazon Q’s quantum capabilities to integrate with GitLab’s CI/CD pipeline, we bring ability to automate optimization and deployment of AI models and help reduce bandwidth bottlenecks inherent to traditional AI workflows and drive time-to-production. In this paper, the methodology of merging quantum computing with automated DevOps pipelines is described and the benefits of this hybrid methodology are evaluated. It is found that quantum assisted optimization is more efficient computationally and has higher optimization accuracy against classical techniques. Even though today quantum hardware suffers from its qubit coherence and gate fidelity limitations, integrating quantum technologies into the AI development lifecycle makes it possible to make significant progress in future AI model optimization. The foundation of this research for the practical application of AI and software development in quantum computing leads to new paths of industry adoption. The implications of this work span across healthcare, finance and autonomous systems where fast, accurate and efficient AI models are needed.
Keywords:
Download/View Count: 92
Share this Article