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A low-magic universal quantum circuit sampler based on ZX stabilizer rank decomposition

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Tsim

A GPU-accelerated quantum circuit sampler based on ZX-calculus stabilizer rank decomposition. Tsim feels just like Stim, but supports non-Clifford gates.

Installation

Install with pip:

pip install bloqade-tsim

Or with uv:

uv add bloqade-tsim

If your machine has a GPU, use:

pip install "bloqade-tsim[cuda13]"

Quick Start

An introductory tutorial is available here. Please also refer to the documentation.

For many existing scripts, replacing stim with tsim should just work. Tsim mirrors the Stim API and currently supports all Stim instructions.

Additionally, Tsim supports the instructions T, T_DAG, R_Z, R_X, R_Y, and U3.

import tsim

c = tsim.Circuit(
    """
    RX 0
    R 1
    T 0
    PAULI_CHANNEL_1(0.1, 0.1, 0.2) 0 1
    H 0
    CNOT 0 1
    DEPOLARIZE2(0.01) 0 1
    M 0 1
    DETECTOR rec[-1] rec[-2]
    """
)

detector_sampler = c.compile_detector_sampler()
samples = detector_sampler.sample(shots=100)

Architecture

Architecture A detailed description of Tsim's architecture is given in arXiv:2604.01059. Quantum programs are translated into ZX diagrams in which Pauli noise channels appear as parameterized vertices with binary variables $e_i$. ZX simplification factors the diagram into a classical part that represents the Tanner graph and a quantum part containing the observable circuit. Both parts define a new basis of error mechanisms $f_i = \bigoplus_j T_{ij},e_j$. The observable diagram is used to compute marginal probabilities for autoregressive sampling. Here, each diagram is decomposed into a sum of Clifford terms via stabilizer rank decomposition, following Sutcliffe and Kissinger (2024), and compiled into binary JAX tensors $g_{tki}$. At sampling time, JIT-compiled XLA kernels contract $g_{tki}$ with batched noise configurations $f_i^{s}$ to evaluate marginal probabilities and autoregressively sample detector and observable bits.

Differences from Stim

Tsim supports non-deterministic detectors and observables. An important consequence is that Tsim will simulate actual detector samples, whereas Stim only reports detection flips (i.e. detection samples XORed with a noiseless reference sample). Concretely,

c = tsim.Circuit(
    """
    X 0
    M 0
    DETECTOR rec[-1]
    """
)
sampler = c.compile_detector_sampler()
samples = sampler.sample(shots=100)
print(samples)

will report True values, whereas the same circuit would result in False values in Stim. To reproduce the behavior of Stim, you can use the following:

samples = sampler.sample(
    shots=100,
    use_detector_reference_sample=True,
    use_observable_reference_sample=True,
)

When set to True, a noiseless reference sample is computed and XORed with the results, so that output values represent deviations from the noiseless baseline. Note that this feature should be used carefully. If detectors or observables are not deterministic, this may lead to incorrect statistics.

Benchmarks

With GPU acceleration, Tsim can achieve sampling throughput for low-magic circuits that approaches the throughput of Stim on Clifford circuits of the same size. The figure below shows a comparison for distillation circuits (35 and 85 qubits), cultivation circuits, and rotated surface code circuits. Tsim can be five orders of magnitude faster than quizx.

Benchmarks

Supported Instructions

Tsim supports all Stim instructions. In addition, Tsim defines the following non-Clifford instructions:

T and T_DAG

The T gate applies a π/4 phase rotation around the Z axis, and T_DAG is its inverse:

T 0 1 2  # Apply T to qubits 0, 1, 2
T_DAG 0  # Apply T_DAG to qubit 0

Rotation Gates: R_X, R_Y, R_Z

Rotation gates around the X, Y, and Z axes by an angle θ = α·π (where α is specified as the parameter):

R_X(0.11) 0  # Rotate qubit 0 around X by 0.11π
R_Y(0.25) 1  # Rotate qubit 1 around Y by π/4
R_Z(0.125) 2  # Rotate qubit 2 around Z by π/8

U3 Gate

The general single-qubit unitary with three parameters (θ, φ, λ), each specified as a multiple of π:

U3(0.5, 0.25, 0.125) 0  # Apply U3 with θ=π/2, φ=π/4, λ=π/8

Publications Using Tsim

Citing Tsim

If you use Tsim, please consider citing the paper describing the core simulation approach:

@article{tsim2026,
  title={Tsim: Fast Universal Simulator for Quantum Error Correction},
  author={Haenel, Rafael and Luo, Xiuzhe and Zhao, Chen},
  journal={arXiv preprint arXiv:2604.01059},
  year={2026}
}

You may also cite the work by Sutcliffe and Kissinger (2024):

@article{sutcliffe2024fast,
  title={Fast classical simulation of quantum circuits via parametric rewriting in the ZX-calculus},
  author={Sutcliffe, Matthew and Kissinger, Aleks},
  journal={arXiv preprint arXiv:2403.06777},
  year={2024}
}

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