Metadata-Version: 2.1
Name: ioh
Version: 0.3.7
Summary: The experimenter for Iterative Optimization Heuristics
Home-page: https://iohprofiler.github.io/IOHexperimenter
Author: Jacob de Nobel, Furong Ye, Diederick Vermetten, Hao Wang, Carola Doerr and Thomas Bäck
Author-email: iohprofiler@liacs.leidenuniv.nl
License: BSD
Requires-Python: >=3.6
Description-Content-Type: text/markdown
License-File: LICENSE.md

# IOHexperimenter

![Ubuntu g++-{10, 9, 8}](https://github.com/IOHprofiler/IOHexperimenter/workflows/Ubuntu/badge.svg)
![MacOS clang++, g++-{9, 8}](https://github.com/IOHprofiler/IOHexperimenter/workflows/MacOS/badge.svg)
![Windows MVSC-2019](https://github.com/IOHprofiler/IOHexperimenter/workflows/Windows/badge.svg)

**Experimenter** for **I**terative **O**ptimization **H**euristics (IOHs), built in* `C++`.

* **Documentation**: [https://iohprofiler.github.io/IOHexperimenter](https://iohprofiler.github.io/IOHexperimenter).
* **Publication**: [https://arxiv.org/abs/1810.05281](https://arxiv.org/abs/1810.05281).
* **Wiki page**: [https://iohprofiler.github.io](https://iohprofiler.github.io/).

**IOHexperimenter** *provides*:

* A framework to ease the benchmarking of any iterative optimization heuristic.
* [Pseudo-Boolean Optimization (PBO)](https://iohprofiler.github.io/IOHproblem/) problem set (25 pseudo-Boolean problems).
* Integration of the well-known [Black-black Optimization Benchmarking (BBOB)](https://github.com/numbbo/coco) problem set (24 continuous problems).
* [W-model](https://dl.acm.org/doi/abs/10.1145/3205651.3208240?casa_token=S4U_Pi9f6MwAAAAA:U9ztNTPwmupT8K3GamWZfBL7-8fqjxPtr_kprv51vdwA-REsp0EyOFGa99BtbANb0XbqyrVg795hIw) problem sets constructed on OneMax and LeadingOnes.
* Integration of the [Tree Decomposition (TD) Mk Landscapes](https://github.com/tobiasvandriessel/problem-generator) problems.
* Submodular optimization problems, as seen in the [GECCO '22 workshop](https://cs.adelaide.edu.au/~optlog/CompetitionESO2022.php).
* Flexible interface for adding new suites and problems.
* Advanced logging module that takes care of registering the data in a seamless manner.
* Data format is compatible with [IOHanalyzer](https://github.com/IOHprofiler/IOHanalyzer).

**Available Problem Suites:**

* BBOB (Single Objective Noiseless) (COCO)
* SBOX-COST (COCO)
* StarDiscrepancy
* PBO
* Submodular Graph Problems

## C++

The complete API documentation, can be found [here](https://iohprofiler.github.io/IOHexperimenter/cpp), as well as a Getting-Started guide. In addition to the documentation, some example projects can be found in the [example](./example/) folder of this repository.

## Python

The pip-version of IOHexperimenters python interface is available via [pip](https://pypi.org/project/ioh). A tutorial with python in the form of a jupyter notebook can be found in the example folder of [this repository](./example/tutorial.ipynb).
A Getting-Started guide and the full API documentation can be found [here](https://iohprofiler.github.io/IOHexperimenter/python).

## Contact

If you have any questions, comments or suggestions, please don't hesitate contacting us <IOHprofiler@liacs.leidenuniv.nl>.

### Our team

* [Jacob de Nobel](https://www.universiteitleiden.nl/en/staffmembers/jacob-de-nobel), *Leiden Institute of Advanced Computer Science*,
* [Furong Ye](https://www.universiteitleiden.nl/en/staffmembers/furong-ye#tab-1), *Leiden Institute of Advanced Computer Science*,
* [Diederick Vermetten](https://www.universiteitleiden.nl/en/staffmembers/diederick-vermetten#tab-1), *Leiden Institute of Advanced Computer Science*,
* [Hao Wang](https://www.universiteitleiden.nl/en/staffmembers/hao-wang#tab-1), *Leiden Institute of Advanced Computer Science*,
* [Carola Doerr](http://www-desir.lip6.fr/~doerr/), *CNRS and Sorbonne University*,
* [Thomas Bäck](https://www.universiteitleiden.nl/en/staffmembers/thomas-back#tab-1), *Leiden Institute of Advanced Computer Science*,

When using IOHprofiler and parts thereof, please kindly cite this work as

Carola Doerr, Hao Wang, Furong Ye, Sander van Rijn, Thomas Bäck: *IOHprofiler: A Benchmarking and Profiling Tool for Iterative Optimization Heuristics*, arXiv e-prints:1810.05281, 2018.

```bibtex
@ARTICLE{IOHexperimenter,
  author = {Jacob de Nobel and
               Furong Ye and
               Diederick Vermetten and
               Hao Wang and
               Carola Doerr and
               Thomas B{\"{a}}ck},
  title = {{IOHexperimenter: Benchmarking Platform for Iterative Optimization Heuristics}},
  journal = {arXiv e-prints:2111.04077},
  archivePrefix = "arXiv",
  eprint = {2111.04077},
  year = 2021,
  month = Nov,
  keywords = {Computer Science - Neural and Evolutionary Computing},
  url = {https://arxiv.org/abs/2111.04077}
}
```
