Пример #1
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class SeedsConfig(Config):
    expected_tail_length = ConfigField(100)
    max_tail_length = ConfigField(200)
    num_random_points = ConfigField(50)
    safe_projection = ConfigField(False)
    projection_max_line_search = ConfigField(10)
    _section = 'optimizers.seeds'
Пример #2
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class SimpleControllerConfig(ControllerConfig):
    T = ConfigField(100, comment="Horizon")
    best_predicted_every = ConfigField(
        0,
        comment=
        "Do .best_predict() on every n-th timestep, if set to 0, don't evaluate .best_predict()"
    )
Пример #3
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class ModelMixinConfig:
    model = ClassConfigField('febo.models.GP')
    model_config = ConfigField({})
    constraints_model = ClassConfigField(None, allow_none=True)
    constraints_model_config = ConfigField({})
    noise_model = ClassConfigField(None, allow_none=True)
    noise_model_config = ConfigField({})
    _section = 'algorithm'
Пример #4
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class TripathyGPConfig(ModelConfig):
    """
    * kernels: List of kernels
    * noise_var: noise variance

    """
    # kernels = ConfigField([('GPy.kern.RBF', {'variance': 2., 'lengthscale': 0.2 , 'ARD': True})])
    noise_var = ConfigField(0.01)
    calculate_gradients = ConfigField(False, comment='Enable/Disable computation of gradient on each update.')
    optimize_bias = ConfigField(False)
    optimize_var = ConfigField(False)
    bias = ConfigField(0)
    _section = 'src.tripathy__'
Пример #5
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class ScipySolverConfig(Config):
    lbfgs_use_gradients = ConfigField(False)
    lbfgs_maxfun = ConfigField(1000)
    # lbfgs_maxiter = ConfigField(1000)
    num_restart = ConfigField(50)
    num_processes = ConfigField(1)
    sync_restarts = ConfigField(True)
    convergence_warnings = ConfigField(True)
    _section = 'solver.scipy'
Пример #6
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class MainConfig(Config):
    experiment = ClassConfigField('febo.experiment.SimpleExperiment', comment="Experiment")
    modules = ConfigField([])
    log_level_console = ConfigField('INFO')
    log_level_file = ConfigField('INFO')
    experiment_dir = ConfigField('runs/')
    sync_dir = ConfigField('remote/')
    plotting_backend = ConfigField(None, allow_none=True, comment='Set to "agg" on machines where default matplotlib qt backend is not available.')
    _section = 'main'
Пример #7
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class BenchmarkEnvironmentConfig(EnvironmentConfig):
    constraints = ClassListConfigField([])
    lower_bound_objective = ConfigField(None,
                                        field_type=float,
                                        allow_none=True)
    noise_function = ConfigField(0.5)
    noise_obs_mode = EnumConfigField(
        'full',
        enum_cls=NoiseObsMode,
        comment='Can be set to "full", "evaluation" or "hidden".')
    dimension = ConfigField(3)
    num_domain_points = ConfigField(30)
    bias = ConfigField(0)
    scale = ConfigField(1)
    seed = ConfigField(None,
                       comment='Seed for randomly generated environments.',
                       allow_none=True)
    random_x0 = ConfigField(False)
    random_x0_min_value = ConfigField(None, allow_none=True)
    _section = 'environment.benchmark'
Пример #8
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class StandaloneGPConfig(ModelConfig):

    kernels = ConfigField([('ard', {
        'variance': 2.,
        'lengthscale': 0.2,
        'ARD': True,
        'groups': None
    })])
    noise_var = ConfigField(0.1)
    calculate_gradients = ConfigField(
        True, comment='Enable/Disable computation of gradient on each update.')
    optimize_bias = ConfigField(True)
    optimize_var = ConfigField(True)
    bias = ConfigField(0)
Пример #9
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class CDBanditConfig(BenchmarkEnvironmentConfig):
    exact_context = ConfigField(False)
Пример #10
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class UCBCDConfig(AlgorithmConfig):
    observe_context = ConfigField(
        False, comment='If true, exact context is used for regression')
    l = ConfigField(1)
    _section = 'algorithm.ucbcd'
Пример #11
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class PlottingControllerConfig:
    plots = ConfigField([])
    _section = 'controller'
Пример #12
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class BoringConfig(AlgorithmConfig):
    # dim = ConfigField(2, comment='subspace dimension')
    optimize_every = ConfigField(40,
                                 comment='adding how many datapoints will lead to identifying the active and passive subspace?')
Пример #13
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class CompassConfig(AlgorithmConfig):
    deltatol = ConfigField(0.01)
    deltainit = ConfigField(0.5)
    redfactor = ConfigField(1.5)
    niter = ConfigField(400)
    _section = 'algorithm.cmaes'
Пример #14
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class SPSAConfig(AlgorithmConfig):
    a = ConfigField(0.5)
    c = ConfigField(0.1)
    niter = ConfigField(500)

    _section = 'algorithm.spsa'
Пример #15
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class GridSolverConfig(Config):
    points_per_dimension = ConfigField(20)
    _section = 'solver.grid'
Пример #16
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class GridSearchConfig(AlgorithmConfig):
    points_per_dim = ConfigField(5)
Пример #17
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class AcquisitionAlgorithmConfig(AlgorithmConfig):
    solver = ClassConfigField(None, field_type=str, allow_none=True)
    evaluate_x0 = ConfigField(True)
    _section = 'algorithm.acquisition'
Пример #18
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class NoiseConfig(Config):
    low = ConfigField(0.5, comment="May be used by the noise function to roughly set the lowest noise level.")
    high = ConfigField(0.5, comment="May be used by the noise function to roughly set the higest noise level.")
    seed = ConfigField(None, comment="Seed for randomly generated noise function.", allow_none=True)
    _section = 'environment.benchmark.noise'
Пример #19
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class SubDomainBOConfig(AlgorithmConfig):
    points_in_max_interval_to_stop = ConfigField(10)
    min_queries_line = ConfigField(10)
    max_queries_line = ConfigField(30)
    min_queries_tr = ConfigField('d')
    max_queries_tr = ConfigField('2*d')
    tr_radius = ConfigField(0.1)
    tr_method = ConfigField('grad')
    line_boundary_margin = ConfigField(0.1)
    plot = ConfigField(False)
    plot_every_step = ConfigField(False)

    acquisition = ConfigField('febo.algorithms.subdomainbo.acquisition.ts')
    _section = 'algorithm.subdomainbo'
Пример #20
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class RemboConfig(AlgorithmConfig):
    emb_d = ConfigField(2, comment='subspace dimension')
    _section = 'algorithm.rembo'
Пример #21
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class ModelConfig(Config):
    delta = ConfigField(0.05)
    beta = ConfigField(default=2, allow_none=True)
    _section = "model"
Пример #22
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class RemboConfig(AlgorithmConfig):
    dim = ConfigField(2, comment='subspace dimension')
Пример #23
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class DataBaseConfig(Config):
    chunk_size = ConfigField(200)
    _section = 'database'
Пример #24
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class MultiExperimentConfig(SimpleExperimentConfig):
    fixed_environment = ConfigField(False, comment='If true, only one environment for the whole batch will be created. Use this, if you randomly genrate your environment, but the whole batch should use the same random instance of the environment.')
    iterator = SubconfigField({})
    multi_controller = ClassConfigField('febo.controller.multi.RepetitionController')
    label = ClassConfigField(label_id)
    _section = 'experiment.multi'
Пример #25
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class CMAESConfig(AlgorithmConfig):
    sigma0 = ConfigField(0.1)
    _section = 'algorithm.cmaes'
Пример #26
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class InterleavedRemboConfig(AlgorithmConfig):
    interleaved_runs = ConfigField(4)
    _section = 'algorithm.rembo'
Пример #27
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class SafeOptConfigMixin:
    bo_expander_ratio = ConfigField(2.)
    _section = 'algorithm.subdomainbo'
Пример #28
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class NelderMeadConfig(AlgorithmConfig):
    contraction_factor = ConfigField(0.8)
    initial_stepsize = ConfigField(0.1)
    restart_threshold = ConfigField(0.001)
    adaptive = ConfigField(True)
    _section = 'algorithm.nelder_mead'
Пример #29
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class AugmentedDimensionMixinConfig:
    aug_d = ConfigField(10)
    random_permutation = ConfigField(True)
    _section = 'environment.benchmark'
Пример #30
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class GaussianConfig(BenchmarkEnvironmentConfig):
    initial_value = ConfigField(0.1)
    _section = 'environment.benchmark.gaussian'