dwave-optimization enables the formulation of nonlinear models for industrial optimization problems. The package includes:
- a class for nonlinear models used by the Leap service's quantum-classical hybrid nonlinear-program solver.
- model generators for common optimization problems.
(For explanations of the terminology, see the Ocean glossary.)
The
flow-shop scheduling
problem is a variant of the renowned
job-shop scheduling
optimization problem. Given n
jobs to schedule on m
machines, with
specified processing times for each job per machine, minimize the makespan
(the total length of the schedule for processing all the jobs). For every
job, the i
-th operation is executed on the i
-th machine. No machine
can perform more than one operation simultaneously.
This small example builds a model for optimizing the schedule for processing two jobs on three machines.
from dwave.optimization.generators import flow_shop_scheduling
processing_times = [[10, 5, 7], [20, 10, 15]]
model = flow_shop_scheduling(processing_times=processing_times)
See the documentation for more examples.
Installation from PyPI:
pip install dwave-optimization
During package development, it is often convenient to use an editable install. See meson-python's editible installs for more details.
pip install -r requirements.txt
pip install --no-build-isolation --config-settings=editable-verbose=true --editable .
All code should be thoroughly tested and all pull requests should include tests.
To run the Python tests, first install the package using an editable install as described above. The tests can then be run with unittest.
python -m unittest
To run the C++ tests, first install the project dependencies, then setup a
meson
build directory. You must configure the build as a debug build for
the tests to run.
pip install -r requirements.txt
meson setup build -Dbuildtype=debug
You can then run the tests using meson's test framework.
meson test -Cbuild
Released under the Apache License 2.0. See LICENSE file.
Ocean's contributing guide has guidelines for contributing to Ocean packages.
dwave-optimization
includes some formatting customization in the
.clang-format and setup.cfg files.
dwave-optimization
makes use of reno
to manage its release notes.
When making a contribution to dwave-optimization
that will affect users,
create a new release note file by running
reno new your-short-descriptor-here
You can then edit the file created under releasenotes/notes/
.
Remove any sections not relevant to your changes.
Commit the file along with your changes.
See reno's user guide for details.