Compilation, Optimization, Error Mitigation, and Machine Learning in Quantum Algorithms
By: Shuangbao Paul Wang, Jianzhou Mao, Eric Sakk
Potential Business Impact:
Makes quantum computers solve problems much faster.
This paper discusses the compilation, optimization, and error mitigation of quantum algorithms, essential steps to execute real-world quantum algorithms. Quantum algorithms running on a hybrid platform with QPU and CPU/GPU take advantage of existing high-performance computing power with quantum-enabled exponential speedups. The proposed approximate quantum Fourier transform (AQFT) for quantum algorithm optimization improves the circuit execution on top of an exponential speed-ups the quantum Fourier transform has provided.
Similar Papers
Optimizing Compilation for Distributed Quantum Computing via Clustering and Annealing
Quantum Physics
Makes quantum computers work better together.
Scalable Memory Recycling for Large Quantum Programs
Quantum Physics
Makes quantum computers run faster and use less memory.
Introduction to Quantum Machine Learning and Quantum Architecture Search
Quantum Physics
Makes computers learn faster using quantum power.