Files
MIPLearn/tests/test_benchmark.py

37 lines
1.3 KiB
Python

# MIPLearn: Extensible Framework for Learning-Enhanced Mixed-Integer Optimization
# Copyright (C) 2020, UChicago Argonne, LLC. All rights reserved.
# Released under the modified BSD license. See COPYING.md for more details.
import os.path
from miplearn.benchmark import BenchmarkRunner
from miplearn.problems.stab import MaxWeightStableSetGenerator
from scipy.stats import randint
from miplearn.solvers.learning import LearningSolver
def test_benchmark():
for n_jobs in [1, 4]:
# Generate training and test instances
generator = MaxWeightStableSetGenerator(n=randint(low=25, high=26))
train_instances = generator.generate(5)
test_instances = generator.generate(3)
# Solve training instances
training_solver = LearningSolver()
training_solver.parallel_solve(train_instances, n_jobs=n_jobs)
# Benchmark
test_solvers = {
"Strategy A": LearningSolver(),
"Strategy B": LearningSolver(),
}
benchmark = BenchmarkRunner(test_solvers)
benchmark.fit(train_instances)
benchmark.parallel_solve(test_instances, n_jobs=n_jobs, n_trials=2)
assert benchmark.results.values.shape == (12, 18)
benchmark.write_csv("/tmp/benchmark.csv")
assert os.path.isfile("/tmp/benchmark.csv")