pybop.optimisers.base_pints_optimiser#
Classes#
A base class for defining optimisation methods from the PINTS library. |
Module Contents#
- class pybop.optimisers.base_pints_optimiser.BasePintsOptimiser(cost, pints_optimiser, max_iterations: int = None, min_iterations: int = 2, max_unchanged_iterations: int = 15, multistart: int = 1, parallel: bool = False, **optimiser_kwargs)[source]#
Bases:
pybop.BaseOptimiserA base class for defining optimisation methods from the PINTS library.
- Parameters:
cost (callable) – The cost function to be minimized.
pints_optimiser (class) – The PINTS optimiser class to be used.
max_iterations (int, optional) – Maximum number of iterations for the optimisation.
min_iterations (int, optional (default=2)) – Minimum number of iterations before termination.
max_unchanged_iterations (int, optional (default=15)) – Maximum number of iterations without improvement before termination.
parallel (bool, optional (default=False)) – Whether to run the optimisation in parallel.
**optimiser_kwargs (optional) –
Valid PINTS option keys and their values, for example: x0 : array_like
Initial position from which optimization will start.
- sigma0float
Initial step size or standard deviation depending on the optimiser.
- boundsdict
A dictionary with ‘lower’ and ‘upper’ keys containing arrays for lower and upper bounds on the parameters.
- use_f_guessedbool
Whether to track guessed function values.
- absolute_tolerancefloat
Absolute tolerance for convergence checking.
- relative_tolerancefloat
Relative tolerance for convergence checking.
- max_evaluationsint
Maximum number of function evaluations.
- thresholdfloat
Threshold value for early termination.
- _run()[source]#
Internal method to run the optimization using a PINTS optimiser.
- Returns:
result – The result of the optimisation including the optimised parameter values and cost.
- Return type:
pybop.Result
See also
This
- f_guessed_tracking()[source]#
Check if f_guessed instead of f_best is being tracked. Credit: PINTS
- Returns:
True if f_guessed is being tracked, False otherwise.
- Return type:
bool
- set_f_guessed_tracking(use_f_guessed=False)[source]#
Set the method used to track the optimiser progress. Credit: PINTS
- Parameters:
use_f_guessed (bool, optional) – If True, track f_guessed; otherwise, track f_best (default: False).
- set_max_evaluations(evaluations=None)[source]#
Set a maximum number of evaluations stopping criterion. Credit: PINTS
- Parameters:
evaluations (int, optional) – The maximum number of evaluations after which to stop the optimisation (default: None).
- set_max_iterations(iterations='default')[source]#
Set the maximum number of iterations as a stopping criterion. Credit: PINTS
- Parameters:
iterations (int, optional) – The maximum number of iterations to run. Set to None to remove this stopping criterion.
- set_max_unchanged_iterations(iterations=15, absolute_tolerance=1e-05, relative_tolerance=0.01)[source]#
Set the maximum number of iterations without significant change as a stopping criterion. Credit: PINTS
- Parameters:
iterations (int, optional) – The maximum number of unchanged iterations to run (default: 15). Set to None to remove this stopping criterion.
absolute_tolerance (float, optional) – The minimum significant change (absolute tolerance) in the objective function value that resets the unchanged iteration counter (default: 1e-5).
relative_tolerance (float, optional) – The minimum significant proportional change (relative tolerance) in the objective function value that resets the unchanged iteration counter (default: 1e-2).
- set_min_iterations(iterations=2)[source]#
Set the minimum number of iterations as a stopping criterion.
- Parameters:
iterations (int, optional) – The minimum number of iterations to run (default: 2). Set to None to remove this stopping criterion.
- set_parallel(parallel=False)[source]#
Enable or disable parallel evaluation. Credit: PINTS
- Parameters:
parallel (bool or int, optional) – If True, use as many worker processes as there are CPU cores. If an integer, use that many workers. If False or 0, disable parallelism (default: False).
- set_population_size(population_size=None)[source]#
Set the population size for population-based optimisers, if specified.
- set_threshold(threshold=None)[source]#
Adds a stopping criterion, allowing the routine to halt once the objective function goes below a set
threshold.This criterion is disabled by default, but can be enabled by calling this method with a valid
threshold. To disable it, useset_threshold(None). Credit: PINTS- Parameters:
threshold (float, optional) – The threshold below which the objective function value is considered optimal (default: None).