Quantum Computing and AI: Perspectives on Advanced Automation in Science and Engineering
By: Tadashi Kadowaki
Potential Business Impact:
Quantum computers help engineers design things faster.
Recent advances in artificial intelligence (AI) and quantum computing are accelerating automation in scientific and engineering processes, fundamentally reshaping research methodologies. This perspective highlights parallels between scientific automation and established Computer-Aided Engineering (CAE) practices, introducing Quantum CAE as a framework that leverages quantum algorithms for simulation, optimization, and machine learning within engineering design. Practical implementations of Quantum CAE are illustrated through case studies for combinatorial optimization problems. Further discussions include advancements toward higher automation levels, highlighting the critical role of specialized AI agents proficient in quantum algorithm design. The integration of quantum computing with AI raises significant questions about the collaborative dynamics among human scientists and engineers, AI systems, and quantum computational resources, underscoring a transformative future for automated discovery and innovation.
Similar Papers
Quantum computing and artificial intelligence: status and perspectives
Quantum Physics
Makes computers smarter and faster using new science.
Quantum Artificial Intelligence for Software Engineering: the Road Ahead
Software Engineering
Quantum computers help fix software bugs faster.
Quantum Computing as a Service - a Software Engineering Perspective
Software Engineering
Makes quantum computers easier for everyone to use.