Noisy intermediate-scale quantum (NISQ) algorithms
This is an incremental review summarizing existing algorithms and tools for NISQ devices, addressing the problem of achieving quantum advantage with current noisy quantum hardware for researchers and practitioners.
The paper reviews noisy intermediate-scale quantum (NISQ) algorithms, which aim to leverage existing quantum computers with hundreds of noisy qubits to tackle classically challenging tasks in fields like physics and machine learning, as fault-tolerant quantum computers remain decades away.
A universal fault-tolerant quantum computer that can solve efficiently problems such as integer factorization and unstructured database search requires millions of qubits with low error rates and long coherence times. While the experimental advancement towards realizing such devices will potentially take decades of research, noisy intermediate-scale quantum (NISQ) computers already exist. These computers are composed of hundreds of noisy qubits, i.e. qubits that are not error-corrected, and therefore perform imperfect operations in a limited coherence time. In the search for quantum advantage with these devices, algorithms have been proposed for applications in various disciplines spanning physics, machine learning, quantum chemistry and combinatorial optimization. The goal of such algorithms is to leverage the limited available resources to perform classically challenging tasks. In this review, we provide a thorough summary of NISQ computational paradigms and algorithms. We discuss the key structure of these algorithms, their limitations, and advantages. We additionally provide a comprehensive overview of various benchmarking and software tools useful for programming and testing NISQ devices.