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arxiv:2607.07816

A Sparse and Truncated State Vector Simulator for Peaked Circuits

Published on Jul 8
· Submitted by
Diogo R. Ferreira
on Jul 10

Abstract

Peaked quantum circuits can be efficiently simulated classically using sparse state vector representations with vectorized operations and hardware acceleration.

In a class of quantum circuits known as peaked circuits, the goal is to predict the most probable bit string at the output of the circuit. Since these circuits are designed to have a sharp peak in their output distribution, in principle it should be possible to simulate them using a truncated state vector with a limited number of terms, or a fraction of the total probability mass. This approximate simulation can be carried out on a classical computer with a sparse representation that stores only the nonzero amplitudes of the state vector, in contrast to the dense representations that are common in most quantum simulators. For efficiency, all operations on the state vector should be vectorized to the furthest possible extent and, if available, hardware acceleration can also be used. This work describes how these requirements were met in an open-source implementation, and discusses its performance and limitations.

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Introduces a sparse and truncated state‑vector simulator for peaked quantum circuits, where the goal is to find the most probable output bit string. By storing only nonzero amplitudes and by vectorizing all operations (with optional GPU acceleration), this open‑source implementation enables approximate classical simulation beyond the memory limits of dense state-vector representations.

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