Quantum Intelligence Platform: A Hybrid Quantum-Inspired Framework for Intelligent Decision Prediction and Optimization

Authors

  • G Saikumar Author
  • G Indiravathi Author

DOI:

https://doi.org/10.46647/rdems0205061

Keywords:

Quantum Intelligence, Quantum-Inspired Computing, Hybrid Architecture, Machine Learning, Decision Prediction, Optimization, Quantum Simulation.

Abstract

The rapid advancement of artificial intelligence (AI) and quantum computing has introduced new paradigms for solving computationally complex problems beyond the capabilities of classical systems. This paper presents a Quantum Intelligence Platform (QIP), a hybrid quantum-inspired computational framework designed to enhance intelligent decision prediction and optimization in complex environments. The proposed system integrates quantum probabilistic modelling concepts such as superposition and interference with classical machine learning algorithms to improve prediction accuracy and adaptive decision-making. A hybrid architecture combining quantum circuit simulation and classical deep learning modules is developed to enable scalable experimentation without requiring physical quantum hardware. The platform is evaluated on decision prediction and optimization tasks, demonstrating improvements in convergence stability and predictive performance compared to conventional models. Experimental results show that quantum-inspired state representation enhances feature expressiveness and probabilistic reasoning. The proposed framework bridges the gap between theoretical quantum computation and practical intelligent systems, offering a scalable pathway for future quantum-enhanced AI applications.

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Published

2026-05-14