pdmlabs.mango.tuner#
Main Tuner Class which uses other abstractions. General usage is to find the optimal hyper-parameters of the classifier
Classes
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- class pdmlabs.mango.tuner.Tuner(param_dict, objective, conf_dict=None)#
Bases:
object- class Config(domain_size: int = None, initial_random: int = 2, initial_custom: list = None, num_iteration: int = 20, batch_size: int = 1, optimizer: str = 'Bayesian', parallel_strategy: str = 'clustering', surrogate: object = None, alpha: float = 2.0, exploration: float = 1.0, exploration_decay: float = 0.9, exploration_min: float = 0.1, fixed_domain: bool = False, early_stopping: Callable = None, constraint: Callable = None)#
Bases:
object- alpha: float = 2.0#
- batch_size: int = 1#
- constraint: Callable = None#
- domain_size: int = None#
- early_stop(results)#
- early_stopping: Callable = None#
- exploration: float = 1.0#
- exploration_decay: float = 0.9#
- exploration_min: float = 0.1#
- fixed_domain: bool = False#
- initial_custom: list = None#
- initial_random: int = 2#
- property is_bayesian#
- property is_random#
- num_iteration: int = 20#
- optimizer: str = 'Bayesian'#
- parallel_strategy: str = 'clustering'#
- property strategy_is_clustering#
- property strategy_is_penalty#
- surrogate: object = None#
- valid_optimizers = ['Bayesian', 'Random']#
- valid_parallel_strategies = ['penalty', 'clustering']#
- static calculateDomainSize(param_dict)#
Calculating the domain size to be explored for finding optimum of bayesian optimizer
- maximize()#
- minimize()#
- process_initial_custom()#
- run()#
- runBayesianOptimizer()#
- runRandomOptimizer()#
- runUserObjective(X_next_PS)#
- run_initial()#