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- Description:
libcmaes is a multithreaded C++ implementation of the CMA-ES algorithm for stochastic optimization of nonlinear 'blackbox' functions. The implemented algorithms have a wide range of applications in various disciplines, ranging from pure function optimization, optimization in industrial and scientific applications, to the solving of reinforcement and machine learning problems.
Current features include: high-level API for simple use in external applications, implementatio of several flavors of CMA-ES, IPOP-CMA-ES, BIPOP-CMA-ES, active CMA-ES, active IPOP and BIPOP restart strategies, sep-CMA-ES (linear time & space complexity) along with support for IPOP and BIPOP flavors as well.
Some operations benefit from multicores, and there's support for objective function gradient, when available. A control exe in the command line is provided for running the algorithm over a range of classical single-objective optimization problems.
Full documentation is available from https://github.com/beniz/libcmaes/wiki
Developer API documentation is available from http://beniz.github.io/libcmaes/doc/html/index.html
- Changes to previous version:
- Python bindings, ref #26
- Cleaned up setters / getters interface, ref #64
- Lib is now quiet by default, ref #61
- Support for pkg-config, ref #58
- Improved make uninstall, ref #66
- API improvements (e.g. new parameters constructor from vector, ref #60)
- Stopping criteria with explicit control of in-memory history size for large-scale optimization
- BibTeX Entry: Download
- Supported Operating Systems: Linux, Windows, Mac Os X
- Data Formats: Any
- Tags: Black Box Optimization, Evolution Strategy, Stochastic Optimization
- Archive: download here
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