A Numpy and Numba based Python library for solving Constraint Satisfaction Problems
Project description
NUCS
TLDR
NUCS is a Python library for solving Constraint Satisfaction and Optimization Problems. Because it is 100% written in Python, NUCS is easy to install and use. NUCS is also very fast because it is powered by Numpy and Numba.
With NUCS, in a few seconds you can ...
Compute the 92 solutions to the BIBD(8,14,7,4,3) problem:
{
'OPTIMIZER_SOLUTION_NB': 0,
'PROBLEM_FILTER_NB': 2797,
'PROBLEM_PROPAGATOR_NB': 462,
'PROBLEM_VARIABLE_NB': 504,
'PROPAGATOR_ENTAILMENT_NB': 36977,
'PROPAGATOR_FILTER_NB': 564122,
'PROPAGATOR_FILTER_NO_CHANGE_NB': 534436,
'PROPAGATOR_INCONSISTENCY_NB': 1307,
'SOLVER_BACKTRACK_NB': 1398,
'SOLVER_CHOICE_DEPTH': 41,
'SOLVER_CHOICE_NB': 1398,
'SOLVER_SOLUTION_NB': 92
}
Demonstrate that the optimal 10-marks Golomb ruler length is 55:
{
'OPTIMIZER_SOLUTION_NB': 10,
'PROBLEM_FILTER_NB': 22204,
'PROBLEM_PROPAGATOR_NB': 82,
'PROBLEM_VARIABLE_NB': 45,
'PROPAGATOR_ENTAILMENT_NB': 416934,
'PROPAGATOR_FILTER_NB': 2145268,
'PROPAGATOR_FILTER_NO_CHANGE_NB': 1129818,
'PROPAGATOR_INCONSISTENCY_NB': 11065,
'SOLVER_BACKTRACK_NB': 11064,
'SOLVER_CHOICE_DEPTH': 9,
'SOLVER_CHOICE_NB': 11129,
'SOLVER_SOLUTION_NB': 10
}
Find all 14200 solutions to the 12-queens problem:
{
'OPTIMIZER_SOLUTION_NB': 0,
'PROBLEM_FILTER_NB': 262011,
'PROBLEM_PROPAGATOR_NB': 3,
'PROBLEM_VARIABLE_NB': 36,
'PROPAGATOR_ENTAILMENT_NB': 0,
'PROPAGATOR_FILTER_NB': 1910609,
'PROPAGATOR_FILTER_NO_CHANGE_NB': 631079,
'PROPAGATOR_INCONSISTENCY_NB': 116806,
'SOLVER_BACKTRACK_NB': 131005,
'SOLVER_CHOICE_DEPTH': 10,
'SOLVER_CHOICE_NB': 131005,
'SOLVER_SOLUTION_NB': 14200
}
How to use NUCS ?
It is very simple to get started with NUCS. You can either install the Pip package or install NUCS from the sources.
Install the NUCS package
Let's install the Pip package for NUCS:
pip install nucs
Now we can write the following queens.py
program (please refer to the technical documentation
to better understand how NUCS works under the hood):
from nucs.problems.problem import Problem
from nucs.solvers.backtrack_solver import BacktrackSolver
from nucs.propagators.propagators import ALG_ALLDIFFERENT
n = 8 # the number of queens
problem = Problem(
[(0, n - 1)] * n, # these n domains are shared between 3n variables with different offsets
list(range(n)) * 3, # for each variable, its domain
[0] * n + list(range(n)) + list(range(0, -n, -1)) # for each variable, its offset
)
problem.add_propagator((list(range(n)), ALG_ALLDIFFERENT, []))
problem.add_propagator((list(range(n, 2 * n)), ALG_ALLDIFFERENT, []))
problem.add_propagator((list(range(2 * n, 3 * n)), ALG_ALLDIFFERENT, []))
print(BacktrackSolver(problem).solve_one()[:n])
Let's run this model with the following command:
NUMBA_CACHE_DIR=.numba/cache PYTHONPATH=. python queens.py
The first solution found is:
[0, 4, 7, 5, 2, 6, 1, 3]
[!TIP] Note that the second run will always be much faster since the Python code will already have been compiled and cached by Numba.
Install NUCS from the sources
Let's install NUCS from the sources by cloning the NUCS Github repository:
git clone https://github.com/yangeorget/nucs.git
pip install -r requirements.txt
From there, we will launch some NUCS examples.
Run some examples
Some of the examples come with a command line interface and can be run directly.
Let's find all solutions to the 12-queens problem:
NUMBA_CACHE_DIR=.numba/cache PYTHONPATH=. python tests/examples/test_queens.py -n 12
Let's find the optimal solution to the Golomb ruler problem with 10 marks:
NUMBA_CACHE_DIR=.numba/cache PYTHONPATH=. python tests/examples/test_golomb.py -n 10
Other constraint solvers in Python
CCPMpy
CPMpy is a Constraint Programming and Modeling library in Python, based on numpy, with direct solver access.
Numberjack
Numberjack is a modelling package written in Python for combinatorial optimisation.
python-constraint
The Python constraint module offers solvers for Constraint Solving Problems (CSPs) over finite domains in simple and pure Python.
PyCSP
PyCSP3 is a Python library for developping models of combinatorial constrained problems in a declarative manner; you can write models of constraint satisfaction (CSP) and constraint optimization (COP) problems.
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