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High order correlation analysis of error models.

Project description

correlation

High-order correlation analysis for detector error models produced by stim.

Solvers

  • correlation.cal_2nd_order_correlations(...) computes 1st- and 2nd-order correlations analytically.
  • correlation.cal_high_order_correlations(...) computes higher-order correlations cluster by cluster using a closed-form parity-moment inversion, with a numerical fallback for ill-conditioned sampled moments.
  • correlation.TannerGraph(...) extracts hyperedges and probabilities from a detector error model.

Recommended Workflow

This repository includes a checked-in uv.lock. Prefer uv for reproducible local development and example runs:

uv sync --dev
uv run python examples/surface_code.py
uv run python examples/repetition_code.py

Installation

pip install correlation-analysis

If you only want the published package, pip is sufficient. If you are working from this repository, prefer uv sync --dev.

Quick Start

import numpy as np
import stim

import correlation

circuit = stim.Circuit.generated(
    code_task="surface_code:rotated_memory_z",
    distance=3,
    rounds=2,
    after_clifford_depolarization=0.01,
    after_reset_flip_probability=0.01,
    before_measure_flip_probability=0.01,
    before_round_data_depolarization=0.01,
)
dets = circuit.compile_detector_sampler().sample(shots=250_000)
dem = circuit.detector_error_model(decompose_errors=True)
graph = correlation.TannerGraph(dem)

result = correlation.cal_high_order_correlations(dets, graph.hyperedges)
probs_dem = np.array(
    [graph.hyperedge_probs[hyperedge] for hyperedge in graph.hyperedges],
    dtype=np.float64,
)
probs_num = np.array(
    [result.get(hyperedge) for hyperedge in graph.hyperedges],
    dtype=np.float64,
)

print("max abs diff:", np.max(np.abs(probs_dem - probs_num)))
print("mean abs diff:", np.mean(np.abs(probs_dem - probs_num)))

If you only need pairwise correlations, use the analytic solver:

result = correlation.cal_2nd_order_correlations(dets)
boundary, edges = result.data

num_workers=1 is usually sufficient now because the common high-order path is closed form. Additional workers are mainly useful if many clusters fall back to the numerical root solver.

Documentation And Examples

  • Algorithm article: docs/high_order_correlations.typ
  • Compiled article: docs/high_order_correlations.pdf
  • High-order example: examples/surface_code.py
  • Analytic example: examples/repetition_code.py

Development

uv sync --dev
uv run --with pytest python -m pytest -q
uv run --with ruff python -m ruff check src examples

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