paraqeet.optimizers.cmaes_optimizer.CMAEsOptimizer#
- class paraqeet.optimizers.cmaes_optimizer.CMAEsOptimizer(measure, optimization_map, logger=None, callback=None)[source]#
Bases:
OptimizerWrapper for the pycma implementation of CMA-Es.
The pycmi implementation has the following custom options for optimization:
- Parameters:
noise (float) – Artificial noise added to a function evaluation.
init_point (boolean) – Force the use of the initial point in the first generation.
spread (float) – Adjust the parameter spread of the first generation cloud.
stop_at_convergence (int) – Custom stopping condition. Stop if the cloud shrunk for this number of generations.
stop_at_sigma (float) – Custom stopping condition. Stop if the cloud shrunk to this standard deviation.
measure (NormalizableMeasurement)
optimization_map (OptimizationMap)
logger (Logger | None)
See also: http://cma.gforge.inria.fr/apidocs-pycma/
- Parameters:
measure (Measurement) – Represents any observable and the process of measurement itself.
optimization_map (OptimizationMap) – Optimizable interface for all parameters considered in optimization.
logger (FileLogger | None, default=None) – The file logger object.
callback – Callback function for optimization.
- __init__(measure, optimization_map, logger=None, callback=None)[source]#
- Parameters:
measure (NormalizableMeasurement)
optimization_map (OptimizationMap)
logger (Logger | None)
Methods
__init__(measure, optimization_map[, ...])optimize(times)Optimize the system via the CMA-Es optimizer.
Attributes
Returns the current callback function.
Returns the current logger that is being used by this optimizer, or None if no logger was set yet.
Return the optimization map that this optimizer uses.
Get options from the system.
- property callback: Callable | None#
Returns the current callback function.
- property logger: Logger | None#
Returns the current logger that is being used by this optimizer, or None if no logger was set yet.
- property optimization_map: OptimizationMap#
Return the optimization map that this optimizer uses.
Parameters that can be optimized need to be added to this map.
- Returns:
Returns the optimization map that this optimizer uses.
- Return type:
paraqeet.optimization_map
- optimize(times)[source]#
Optimize the system via the CMA-Es optimizer.
Performs the actual optimization via the following custom options:
- noise: float
Artificial noise added to a function evaluation.
- init_point: boolean
Force the use of the initial point in the first generation.
- spread: float
Adjust the parameter spread of the first generation cloud.
- stop_at_convergenceint
Custom stopping condition. Stop if the cloud shrunk for this number of generations.
- stop_at_sigma: float
Custom stopping condition. Stop if the cloud shrunk to this standard deviation.
Note - If input `times` is a float, then the start time of propagation is implicitly assumed to be zero. For an array of times, the first time point is the start time.
- Returns:
Result of optimization via the OptimizationResult object. (status, value, iterations and the raw result)
- Return type:
- Parameters:
times (Array | float)
- property options: dict#
Get options from the system.