optimas
Optimization at scale, powered by libEnsemble
Optimization at scale, powered by libEnsemble
To install this package, run one of the following:
Optimas is a Python library designed for highly scalable optimization, from laptops to massively-parallel supercomputers. Key Features Scalability: Leveraging the power of libEnsemble, Optimas is designed to scale seamlessly from your laptop to high-performance computing clusters. User-Friendly: Optimas simplifies the process of running large parallel parameter scans and optimizations. Specify the number of parallel evaluations and the computing resources to allocate to each of them and Optimas will handle the rest. Advanced Optimization: Optimas integrates algorithms from the Ax library, offering both single- and multi-objective Bayesian optimization. This includes advanced techniques such as multi-fidelity and multi-task algorithms.
Summary
Optimization at scale, powered by libEnsemble
Last Updated
May 28, 2025 at 20:36
License
BSD-3-Clause-LBNL
Total Downloads
8.1K
Supported Platforms
GitHub Repository
https://github.com/optimas-org/optimas