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qubolite

A light-weight toolbox for working with QUBO instances in NumPy.

Installation

pip install qubolite

This package was created using Python 3.10, but runs with Python >= 3.8.

Optional Dependencies

If you're planning to use the roof dual function as lower bound you will need to install optional dependencies. The igraph based roof dual lower bound function can be used by calling qubolite.bounds.lb_roof_dual(). It requires that the igraph library is installed. This can be done with pip install igraph or by installing qubolite with pip install qubolite[roof_dual].

Using the function qubolite.ordering_distance() requires the Kendall-τ measure from the scipy library which can be installed by pip install scipy or by installing qubolite with pip install qubolite[kendall_tau].

For exemplary QUBO embeddings (e.g. clustering or subset sum), the scikit-learn library is required. It can be installed by either using pip install scikit-learn or installing qubolite with pip install qubolite[embeddings].

If you would like to install all optional dependencies you can use pip install qubolite[all] for achieving this.

Usage Examples

By design, qubolite is a shallow wrapper around numpy arrays, which represent QUBO parameters. The core class is qubo, which receives a numpy.ndarray of size (n, n). Alternatively, a random instance can be created using qubo.random().

>>> import numpy as np
>>> from qubolite import qubo
>>> arr = np.triu(np.random.random((8, 8)))
>>> Q = qubo(arr)
>>> Q2 = qubo.random(12, distr='uniform')

By default, qubo() takes an upper triangle matrix. A non-triangular matrix is converted to an upper triangle matrix by adding the lower to the upper triangle.

To get the QUBO function value, instances can be called directly with a bit vector. The bit vector must be a numpy.ndarray of size (n,) or (m, n).

>>> x = np.random.random(8) < 0.5
>>> Q(x)
7.488225478498116
>>> xs = np.random.random((5,8)) < 0.5
>>> Q(xs)
array([5.81642745, 4.41380893, 11.3391062, 4.34253921, 6.07799747])

Solving

The submodule solving contains several methods to obtain the minimizing bit vector or energy value of a given QUBO instance, both exact and approximative.

>>> from qubolite.solving import brute_force
>>> x_min, value = brute_force(Q, return_value=True)
>>> x_min
array([1., 1., 1., 0., 1., 0., 0., 0.])
>>> value
-3.394893116198653

The method brute_force is implemented efficiently in C and parallelized with OpenMP. Still, for instances with more than 30 variables take a long time to solve this way.

Documentation

The complete API documentation can be found here.

Version Log

  • 0.2 Added problem embeddings (binary clustering, subset sum problem)
  • 0.3 Added QUBOSample class and sampling methods full and gibbs
  • 0.4 Renamed QUBOSample to BinarySample; added methods for saving and loading QUBO and Sample instances
  • 0.5 Moved gibbs to mcmc and implemented true Gibbs sampling as gibbs; added numba as dependency
    • 0.5.1 changed keep_prob to keep_interval in Gibbs sampling, making the algorithm's runtime deterministic; renamed sample to random in QUBO embedding classes, added MAX 2-SAT problem embedding
  • 0.6 Changed Python version to 3.8; removed bitvec dependency; added scipy dependency required for matrix operations in numba functions
    • 0.6.1 added scaling and rounding
    • 0.6.2 removed seedpy dependency
    • 0.6.3 renamed shots to size in BinarySample; cleaned up sampling, simplified type hints
    • 0.6.4 added probabilistic functions to qubo class
    • 0.6.5 complete empirical prob. vector can be returned from BinarySample
    • 0.6.6 fixed spectral gap implementation
    • 0.6.7 moved brute_force to new sub-module solving; added some approximate solving methods
    • 0.6.8 added bitvec sub-module; dynamic_range now uses bits by default, changed bits=False to decibel=False; removed scipy from requirements
    • 0.6.9 new, more memory-efficient save format
    • 0.6.10 fixed requirements in setup.py; fixed size estimation in qubo.save()
  • 0.7 Added more efficient brute-force implementation using C extension; added optional dependencies for calculating bounds and ordering distance
  • 0.8 New embeddings, new solving methods; switched to NumPy random generators from RandomState; added parameter compression for dynamic range reduction; Added documentation
    • 0.8.1 some fixes to documentation
    • 0.8.2 implemented qubo.dx2(); added several new solving heuristics
    • 0.8.3 added submodule preprocessing and moved DR reduction there; added partial_assignment class as replacement of qubo.clamp(), which is now deprecated
    • 0.8.4 added fast Gibbs sampling and QUBO parameter training

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Toolbox for quadratic binary optimization

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