Quantum Intelligence: Merging AI and Quantum Computing for Unprecedented Power
Sonu Kumar, Simran Kaur, Manjit Singh
Abstract
The result of AI and quantum computing coming together is the novel idea known as Quantum Intelligence (QI). This work explores the possible advantages of combining artificial intelligence (AI) and quantum computing to address difficult problems that have proven to be beyond the capabilities of conventional computer methods. This study offers a thorough grasp of the unique properties of qubits, superposition, and entanglement while examining the fundamental concepts of quantum computing. The current state of artificial intelligence is also examined, with a focus on the difficulties traditional computers have in managing the increasing complexity of computing tasks. The paper's main focus is on Quantum Intelligence, providing an explanation of how quantum algorithms might enhance machine learning procedures and improve artificial intelligence algorithms. The paper also discusses Open Source Libraries, TensorFlow Quantum, and the necessity of quantum programming languages. This abstract discusses the advantages and challenges of integrating quantum computing into AI procedures, emphasizing the necessity for hybrid models and scalable algorithms. We explore the interdependent nature of quantum and classical machine learning models and show how quantum-enhanced algorithms may be able to outperform their classical counterparts in specific application domains. The conclusion of the abstract emphasizes how the development and use of open-source frameworks and tools will fuel the transformative potential of AI and quantum computing together.