Dakota: Explore and predict with confidence
The Dakota project delivers both state-of-the-art research and robust, usable software for optimization and UQ. Broadly, the Dakota software's advanced parametric analyses enable design exploration, model calibration, risk analysis, and quantification of margins and uncertainty with computational models. The Dakota toolkit provides a flexible, extensible interface between such simulation codes and its iterative systems analysis methods, which include:
- Optimization with gradient and nongradient-based methods;
- Uncertainty quantification with sampling, reliability, stochastic expansion, and epistemic methods;
- Parameter estimation using nonlinear least squares (deterministic) or Bayesian inference (stochastic); and
- Sensitivity/variance analysis with design of experiments and parameter study methods.
These capabilities may be used on their own or as components within advanced strategies such as hybrid optimization, surrogate-based optimization, mixed integer nonlinear programming, or optimization under uncertainty.
- Links to science / dakota
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Checkout Package
osc -A https://api.opensuse.org checkout home:eeich:branches:science/dakota && cd $_ - Create Badge
Source Files (show merged sources derived from linked package)
| Filename | Size | Changed |
|---|---|---|
| JEGA.patch | 0000000393 393 Bytes | |
| _link | 0000000115 115 Bytes | |
| dakota-6.9-release-public.src.tar.gz | 0087727367 83.7 MB | |
| dakota.changes | 0000002025 1.98 KB | |
| dakota.spec | 0000008046 7.86 KB | |
| env-script.patch | 0000008968 8.76 KB | |
| install-destination.patch | 0000025596 25 KB | |
| shebang.patch | 0000000296 296 Bytes |
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