Collection of various optimization methods, including tensor based, for multivariate functions and multidimensional data arrays
Project description
teneva_opti
Description
Collection of various optimization methods (search for the global minimum and/or maximum) for multivariate functions and multidimensional data arrays (tensors). This library is based on a software product teneva. See also related benchmarks library teneva_bm.
Installation
-
The package can be installed via pip (it requires the Python programming language of the version 3.8 or 3.9):
pip install teneva_opti==0.4.3
The package can be also downloaded from the repository teneva_opti and be installed by
python setup.py install
command from the root folder of the project. -
We test optimizers with benchmarks from teneva_bm library. For installation of additional dependencies (
gym
,mujoco
, etc.), please, do the following (for existing conda environmentteneva_opti
; if you are using a different environment name, then please make the appropriate substitution in the script; note that you don't need to use environment in colab):wget https://raw.githubusercontent.com/AndreiChertkov/teneva_bm/main/install_all.py && python install_all.py --env teneva_opti && rm install_all.py
In the case of problems with
scikit-learn
, uninstall it aspip uninstall scikit-learn
and then install it from the anaconda:conda install -c anaconda scikit-learn
.
Documentation and examples (in progress...)
Please, run the demo script from the root of the teneva_opti repository:
clear && python demo/base.py
See also other demo
scripts in the folder
demo` of the teneva_opti repository.
Authors
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