Navigating the dynamic noise landscape of variational quantum algorithms
with QISMET
- URL: http://arxiv.org/abs/2209.12280v2
- Date: Fri, 29 Sep 2023 21:20:02 GMT
- Title: Navigating the dynamic noise landscape of variational quantum algorithms
with QISMET
- Authors: Gokul Subramanian Ravi, Kaitlin N. Smith, Jonathan M. Baker, Tejas
Kannan, Nathan Earnest, Ali Javadi-Abhari, Henry Hoffmann and Frederic T.
Chong
- Abstract summary: Most popular examples of iterative long-running quantum applications are variational quantum algorithms (VQAs)
Noise fluctuation can cause a significant transient impact on the objective function estimation of the VQA / tuning candidates.
This paper proposes QISMET: Quantum Iteration Skipping to Mitigate Error Transients.
- Score: 7.99585857871427
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Transient errors from the dynamic NISQ noise landscape are challenging to
comprehend and are especially detrimental to classes of applications that are
iterative and/or long-running, and therefore their timely mitigation is
important for quantum advantage in real-world applications. The most popular
examples of iterative long-running quantum applications are variational quantum
algorithms (VQAs). Iteratively, VQA's classical optimizer evaluates circuit
candidates on an objective function and picks the best circuits towards
achieving the application's target. Noise fluctuation can cause a significant
transient impact on the objective function estimation of the VQA iterations /
tuning candidates. This can severely affect VQA tuning and, by extension, its
accuracy and convergence.
This paper proposes QISMET: Quantum Iteration Skipping to Mitigate Error
Transients, to navigate the dynamic noise landscape of VQAs. QISMET actively
avoids instances of high fluctuating noise which are predicted to have a
significant transient error impact on specific VQA iterations. To achieve this,
QISMET estimates transient error in VQA iterations and designs a controller to
keep the VQA tuning faithful to the transient-free scenario. By doing so,
QISMET efficiently mitigates a large portion of the transient noise impact on
VQAs and is able to improve the fidelity by 1.3x-3x over a traditional VQA
baseline, with 1.6-2.4x improvement over alternative approaches, across
different applications and machines. Further, to diligently analyze the effects
of transients, this work also builds transient noise models for target VQA
applications from observing real machine transients. These are then integrated
with the Qiskit simulator.
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