How do you benchmark the performance of quantum annealing and gate-based models on different problem domains?
Quantum computing is a rapidly evolving field that promises to solve some of the most challenging problems in science, engineering, and optimization. However, there is no single quantum computing model that can perform equally well on all types of problems. Two of the most prominent quantum computing models are quantum annealing and gate-based models, which have different strengths and limitations. In this article, you will learn how to benchmark the performance of quantum annealing and gate-based models on different problem domains, such as combinatorial optimization, machine learning, and quantum simulation.
-
Diogo Pereira CoelhoFounding Partner @Sypar | Lawyer | PhD Student | Instructor | Web3 & Web4 | FinTech | DeFi | DLT | DAO | Tokenization |…
-
Dr. Corey O'MearaChief Quantum Scientist @ E.ON | 2x Quantum Computing Innovator of the Year | LinkedIn Top Quantum Computing Voice |…
-
Brian Otieno|Nairobi Quantum Fusion? | Oxford University