Various blackbox optimization algorithms with a common interface along with useful helpers like parallel optimization loops, analysis and visualization scripts.
Random search is provided as an example optimizer along with tests for the interface.
New optimizers can require blackboxopt
as a dependency, which is just the light-weight
interface definition.
If you want all optimizer implementations that come with this package, install
blackboxopt[all]
Alternatively, you can get individual optimizers with e.g. blackboxopt[bohb]
This software is a research prototype. The software is not ready for production use. It has neither been developed nor tested for a specific use case. However, the license conditions of the applicable Open Source licenses allow you to adapt the software to your needs. Before using it in a safety relevant setting, make sure that the software fulfills your requirements and adjust it according to any applicable safety standards (e.g. ISO 26262).
Visit boschresearch.github.io/blackboxopt
Install poetry >= 1.5.0
pip install --upgrade poetry
Install the blackboxopt
package from source by running the following from the root
directory of this repository
poetry install
(Optional) Install pre-commit hooks to check code standards before committing changes:
poetry run pre-commit install
Make sure to install all extras before running tests
poetry install -E testing
poetry run pytest tests/
For HTML test coverage reports run
poetry run pytest tests/ --cov --cov-report html:htmlcov
Make sure to install all necessary dependencies:
poetry install --extras=all
The documentation can be built from the repository root as follows:
poetry run mkdocs build --clean --no-directory-urls
For serving it locally while working on the documentation run:
poetry run mkdocs serve
In the context of initializing an evaluation result from a specification, facing the concern that having a constructor with a specification argument while the specification attributes end up as toplevel attributes and not summarized under a specification attribute we decided for unpacking the evaluation specification like a dictionary into the result constructor to prevent the said cognitive dissonance, accepting that the unpacking operator can feel unintuitive and that users might tend to matching the attributes explictly to the init arguments.
In the context of many optimizers just sequentally reporting the individual evaluations
when multiple evaluations are reported at once and thus not leveraging any batch
reporting benefits, facing the concern that representing that common behaviour in the
optimizer base class requires the definition of an abstract report single and an
abstract report multi method for which the report single does not need to be implemented
if the report multi is, we decided to refactor the arising redundancy into a function
call_functions_with_evaluations_and_collect_errors
, accepting that this increases the
cognitive load when reading the code.
blackboxopt
is open-sourced under the Apache-2.0 license. See the LICENSE
file for details.
For a list of other open source components included in blackboxopt
, see the file
3rd-party-licenses.txt.