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A Python framework to conduct GLUE analyses

Project description

Generalised Likelihood Uncertainty Estimation (GLUE) Framework
Joost Delsman, Deltares, 2011

Generic Python framework to conduct GLUE analyses
NOTE: Package is still under construction and undocumented

1) model parameters, that:
- hold the statistical properties of the a priori parameter space
- hold the statistical properties of the a posteriori parameter space
- can return a random value based on the a priori parameter space
- can accept an evaluated parameter + behavioural / non-behavioural
statement from the evaluator

2) a model, that:
- returns a result set based on a parameter set
- can be called successively to explore the parameter space
- resides outside GLUE
- (can even be outside python)
- function or wrapper must return a dict with parameters and
their values, recognised by the evaluator

3) a model evaluator, that:
- evaluates the model result by a prescribed set of rules
- assigns behavioural / non-behavioural

4) a framework that:
- initializes a monte-carlo sequence
- for each run:
- get parameter values
- run the model
- evaluate the model
- store behavioural runs

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