Ejemplo n.º 1
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def observed_hypervolume(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    objective_thresholds: Optional[TRefPoint] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
) -> float:
    """Calculate hypervolume of a pareto frontier based on observed data.

    Given observed data, return the hypervolume of the pareto frontier formed from
    those outcomes.

    Args:
        modelbridge: Modelbridge that holds previous training data.
        objective_thresholds: point defining the origin of hyperrectangles that
            can contribute to hypervolume.
        observation_features: observation features to predict. Model's training
            data used by default if unspecified.
        optimization_config: Optimization config

    Returns:
        (float) calculated hypervolume.
    """
    # Get observation_data from current training data.
    observation_data = [obs.data for obs in modelbridge.get_training_data()]
    observation_features = [
        obs.features for obs in modelbridge.get_training_data()
    ]

    return hypervolume(
        modelbridge=modelbridge,
        objective_thresholds=objective_thresholds,
        observation_features=observation_features,
        observation_data=observation_data,
        optimization_config=optimization_config,
        use_model_predictions=False,
    )
Ejemplo n.º 2
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def observed_pareto_frontier(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    objective_thresholds: Optional[TRefPoint] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
) -> List[ObservationData]:
    """Generate a pareto frontier based on observed data.

    Given observed data, return those outcomes in the pareto frontier.

    Args:
        modelbridge: Modelbridge that holds previous training data.
        objective_thresholds: metric values bounding the region of interest in
            the objective outcome space.
        optimization_config: Optimization config

    Returns:
        Data representing points on the pareto frontier.
    """
    # Get observation_data from current training data
    observation_data = [obs.data for obs in modelbridge.get_training_data()]

    return pareto_frontier(
        modelbridge=modelbridge,
        objective_thresholds=objective_thresholds,
        observation_data=observation_data,
        optimization_config=optimization_config,
    )
Ejemplo n.º 3
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def hypervolume(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    observation_features: List[ObservationFeatures],
    objective_thresholds: Optional[TRefPoint] = None,
    observation_data: Optional[List[ObservationData]] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
    use_model_predictions: bool = True,
) -> float:
    """Helper function that computes hypervolume of a given list of outcomes."""
    array_to_tensor = partial(_array_to_tensor, modelbridge=modelbridge)

    # Extract a tensor of outcome means from observation data.
    observations = pareto_frontier(
        modelbridge=modelbridge,
        objective_thresholds=objective_thresholds,
        observation_features=observation_features,
        observation_data=observation_data,
        optimization_config=optimization_config,
        use_model_predictions=use_model_predictions,
    )
    observation_data = [obs.data for obs in observations]
    if not observation_data:
        # The hypervolume of an empty set is always 0.
        return 0
    means, _ = modelbridge.transform_observation_data(observation_data)

    # Extract objective_weights and objective_thresholds
    if optimization_config is None:
        optimization_config = (
            # pyre-ignore[16]: Optional has undefined attr `_optimization_config`
            modelbridge._optimization_config.clone()
            if modelbridge._optimization_config is not None
            else None
        )
    else:
        # pyre-ignore[9]: declared as type `Optional[...]` but used as type `...`
        optimization_config = optimization_config.clone()

    if objective_thresholds is not None:
        optimization_config = optimization_config.clone_with_args(
            objective_thresholds=objective_thresholds
        )

    obj_w = extract_objective_weights(
        objective=optimization_config.objective, outcomes=modelbridge.outcomes
    )
    obj_w = array_to_tensor(obj_w)
    objective_thresholds_arr = extract_objective_thresholds(
        objective_thresholds=optimization_config.objective_thresholds,
        outcomes=modelbridge.outcomes,
    )
    obj_t = array_to_tensor(objective_thresholds_arr)
    obj, obj_t = get_weighted_mc_objective_and_objective_thresholds(
        objective_weights=obj_w, objective_thresholds=obj_t
    )
    means = obj(means)
    hv = Hypervolume(ref_point=obj_t)
    return hv.compute(means)
Ejemplo n.º 4
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def _get_modelbridge_training_data(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
) -> Tuple[List[ObservationFeatures], List[ObservationData],
           List[Optional[str]]]:
    obs = modelbridge.get_training_data()
    obs_feats, obs_data, arm_names = [], [], []
    for ob in obs:
        obs_feats.append(ob.features)
        obs_data.append(ob.data)
        arm_names.append(ob.arm_name)
    return obs_feats, obs_data, arm_names
Ejemplo n.º 5
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def predicted_pareto_frontier(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    objective_thresholds: Optional[TRefPoint] = None,
    observation_features: Optional[List[ObservationFeatures]] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
) -> List[Observation]:
    """Generate a pareto frontier based on the posterior means of given
    observation features.

    Given a model and features to evaluate use the model to predict which points
    lie on the pareto frontier.

    Args:
        modelbridge: Modelbridge used to predict metrics outcomes.
        objective_thresholds: metric values bounding the region of interest in
            the objective outcome space.
        observation_features: observation features to predict. Model's training
            data used by default if unspecified.
        optimization_config: Optimization config

    Returns:
        Observations representing points on the pareto frontier.
    """
    if observation_features is None:
        observation_features = []
        arm_names = []
        for obs in modelbridge.get_training_data():
            observation_features.append(obs.features)
            arm_names.append(obs.arm_name)
    else:
        arm_names = None
    if not observation_features:
        raise ValueError(
            "Must receive observation_features as input or the model must "
            "have training data."
        )

    pareto_observations = pareto_frontier(
        modelbridge=modelbridge,
        objective_thresholds=objective_thresholds,
        observation_features=observation_features,
        optimization_config=optimization_config,
        arm_names=arm_names,
    )
    return pareto_observations
Ejemplo n.º 6
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def predicted_hypervolume(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    objective_thresholds: Optional[TRefPoint] = None,
    observation_features: Optional[List[ObservationFeatures]] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
) -> float:
    """Calculate hypervolume of a pareto frontier based on the posterior means of
    given observation features.

    Given a model and features to evaluate calculate the hypervolume of the pareto
    frontier formed from their predicted outcomes.

    Args:
        modelbridge: Modelbridge used to predict metrics outcomes.
        objective_thresholds: point defining the origin of hyperrectangles that
            can contribute to hypervolume.
        observation_features: observation features to predict. Model's training
            data used by default if unspecified.
        optimization_config: Optimization config

    Returns:
        calculated hypervolume.
    """
    observation_features = (
        observation_features
        if observation_features is not None
        else [obs.features for obs in modelbridge.get_training_data()]
    )
    if not observation_features:
        raise ValueError(
            "Must receive observation_features as input or the model must "
            "have training data."
        )

    return hypervolume(
        modelbridge=modelbridge,
        objective_thresholds=objective_thresholds,
        observation_features=observation_features,
        optimization_config=optimization_config,
    )
Ejemplo n.º 7
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def get_pareto_frontier_and_transformed_configs(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    observation_features: List[ObservationFeatures],
    observation_data: Optional[List[ObservationData]] = None,
    objective_thresholds: Optional[TRefPoint] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
    arm_names: Optional[List[Optional[str]]] = None,
    use_model_predictions: bool = True,
) -> Tuple[List[Observation], Tensor, Tensor, Optional[Tensor]]:
    """Helper that applies transforms and calls frontier_evaluator.

    Returns transformed configs in addition to the Pareto observations.

    Args:
        modelbridge: Modelbridge used to predict metrics outcomes.
        observation_features: observation features to predict, if provided and
            use_model_predictions is True.
        observation_data: data for computing the Pareto front, unless features
            are provided and model_predictions is True.
        objective_thresholds: metric values bounding the region of interest in
            the objective outcome space.
        optimization_config: Optimization config.
        arm_names: Arm names for each observation.
        use_model_predictions: If True, will use model predictions at
            observation_features to compute Pareto front, if provided. If False,
            will use observation_data directly to compute Pareto front, regardless
            of whether observation_features are provided.

    Returns:
        frontier_observations: Observations of points on the pareto frontier.
        f: n x m tensor representation of the Pareto frontier values where n is the
        length of frontier_observations and m is the number of metrics.
        obj_w: m tensor of objective weights.
        obj_t: m tensor of objective thresholds corresponding to Y, or None if no
        objective thresholds used.
    """

    array_to_tensor = partial(_array_to_tensor, modelbridge=modelbridge)
    X = (modelbridge.transform_observation_features(observation_features)
         if use_model_predictions else None)
    X = array_to_tensor(X) if X is not None else None
    Y, Yvar = (None, None)
    if observation_data is not None:
        Y, Yvar = modelbridge.transform_observation_data(observation_data)
        Y, Yvar = (array_to_tensor(Y), array_to_tensor(Yvar))
    if arm_names is None:
        arm_names = [None] * len(observation_features)

    # Optimization_config
    mooc = optimization_config or checked_cast_optional(
        MultiObjectiveOptimizationConfig, modelbridge._optimization_config)
    if not mooc:
        raise ValueError(
            ("Experiment must have an existing optimization_config "
             "of type `MultiObjectiveOptimizationConfig` "
             "or `optimization_config` must be passed as an argument."))
    if not isinstance(mooc, MultiObjectiveOptimizationConfig):
        mooc = not_none(MultiObjectiveOptimizationConfig.from_opt_conf(mooc))
    if objective_thresholds:
        mooc = mooc.clone_with_args(objective_thresholds=objective_thresholds)

    optimization_config = mooc

    # Transform OptimizationConfig.
    optimization_config = modelbridge.transform_optimization_config(
        optimization_config=optimization_config,
        fixed_features=ObservationFeatures(parameters={}),
    )
    # Extract weights, constraints, and objective_thresholds
    objective_weights = extract_objective_weights(
        objective=optimization_config.objective, outcomes=modelbridge.outcomes)
    outcome_constraints = extract_outcome_constraints(
        outcome_constraints=optimization_config.outcome_constraints,
        outcomes=modelbridge.outcomes,
    )
    obj_t = extract_objective_thresholds(
        objective_thresholds=optimization_config.objective_thresholds,
        objective=optimization_config.objective,
        outcomes=modelbridge.outcomes,
    )
    obj_t = array_to_tensor(obj_t)
    # Transform to tensors.
    obj_w, oc_c, _, _, _ = validate_and_apply_final_transform(
        objective_weights=objective_weights,
        outcome_constraints=outcome_constraints,
        linear_constraints=None,
        pending_observations=None,
        final_transform=array_to_tensor,
    )
    frontier_evaluator = get_default_frontier_evaluator()
    # pyre-ignore[28]: Unexpected keyword `modelbridge` to anonymous call
    f, cov, indx = frontier_evaluator(
        model=modelbridge.model,
        X=X,
        Y=Y,
        Yvar=Yvar,
        objective_thresholds=obj_t,
        objective_weights=obj_w,
        outcome_constraints=oc_c,
    )
    f, cov = f.detach().cpu().clone(), cov.detach().cpu().clone()
    indx = indx.tolist()
    frontier_observation_data = array_to_observation_data(
        f=f.numpy(), cov=cov.numpy(), outcomes=not_none(modelbridge.outcomes))
    # Untransform observations
    for t in reversed(modelbridge.transforms.values()):  # noqa T484
        frontier_observation_data = t.untransform_observation_data(
            frontier_observation_data, [])
    # Construct observations
    frontier_observations = []
    for i, obsd in enumerate(frontier_observation_data):
        frontier_observations.append(
            Observation(
                features=observation_features[indx[i]],
                data=obsd,
                arm_name=arm_names[indx[i]],
            ))
    return frontier_observations, f, obj_w, obj_t
Ejemplo n.º 8
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def pareto_frontier(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    objective_thresholds: Optional[TRefPoint] = None,
    observation_features: Optional[List[ObservationFeatures]] = None,
    observation_data: Optional[List[ObservationData]] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
) -> List[ObservationData]:
    """Helper that applies transforms and calls frontier_evaluator."""
    array_to_tensor = partial(_array_to_tensor, modelbridge=modelbridge)
    X = (modelbridge.transform_observation_features(observation_features)
         if observation_features else None)
    X = array_to_tensor(X) if X is not None else None
    Y, Yvar = (None, None)
    if observation_data:
        Y, Yvar = modelbridge.transform_observation_data(observation_data)
    if Y is not None and Yvar is not None:
        Y, Yvar = (array_to_tensor(Y), array_to_tensor(Yvar))

    # Optimization_config
    mooc = optimization_config or checked_cast_optional(
        MultiObjectiveOptimizationConfig, modelbridge._optimization_config)
    if not mooc:
        raise ValueError(
            ("Experiment must have an existing optimization_config "
             "of type `MultiObjectiveOptimizationConfig` "
             "or `optimization_config` must be passed as an argument."))
    if not isinstance(mooc, MultiObjectiveOptimizationConfig):
        mooc = not_none(MultiObjectiveOptimizationConfig.from_opt_conf(mooc))
    if objective_thresholds:
        mooc = mooc.clone_with_args(objective_thresholds=objective_thresholds)

    optimization_config = mooc

    # Transform OptimizationConfig.
    optimization_config = modelbridge.transform_optimization_config(
        optimization_config=optimization_config,
        fixed_features=ObservationFeatures(parameters={}),
    )
    # Extract weights, constraints, and objective_thresholds
    objective_weights = extract_objective_weights(
        objective=optimization_config.objective, outcomes=modelbridge.outcomes)
    outcome_constraints = extract_outcome_constraints(
        outcome_constraints=optimization_config.outcome_constraints,
        outcomes=modelbridge.outcomes,
    )
    objective_thresholds_arr = extract_objective_thresholds(
        objective_thresholds=optimization_config.objective_thresholds,
        outcomes=modelbridge.outcomes,
    )
    # Transform to tensors.
    obj_w, oc_c, _, _ = validate_and_apply_final_transform(
        objective_weights=objective_weights,
        outcome_constraints=outcome_constraints,
        linear_constraints=None,
        pending_observations=None,
        final_transform=array_to_tensor,
    )
    obj_t = array_to_tensor(objective_thresholds_arr)
    frontier_evaluator = get_default_frontier_evaluator()
    # pyre-ignore[28]: Unexpected keyword `modelbridge` to anonymous call
    f, cov = frontier_evaluator(
        model=modelbridge.model,
        X=X,
        Y=Y,
        Yvar=Yvar,
        objective_thresholds=obj_t,
        objective_weights=obj_w,
        outcome_constraints=oc_c,
    )
    f, cov = f.detach().cpu().clone().numpy(), cov.detach().cpu().clone(
    ).numpy()
    frontier_observation_data = array_to_observation_data(
        f=f, cov=cov, outcomes=not_none(modelbridge.outcomes))
    # Untransform observations
    for t in reversed(modelbridge.transforms.values()):  # noqa T484
        frontier_observation_data = t.untransform_observation_data(
            frontier_observation_data, [])
    return frontier_observation_data
Ejemplo n.º 9
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def get_pareto_frontier_and_configs(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
    observation_features: List[ObservationFeatures],
    observation_data: Optional[List[ObservationData]] = None,
    objective_thresholds: Optional[TRefPoint] = None,
    optimization_config: Optional[MultiObjectiveOptimizationConfig] = None,
    arm_names: Optional[List[Optional[str]]] = None,
    use_model_predictions: bool = True,
    transform_outcomes_and_configs: bool = True,
) -> Tuple[List[Observation], Tensor, Tensor, Optional[Tensor]]:
    """Helper that applies transforms and calls ``frontier_evaluator``.

    Returns the ``frontier_evaluator`` configs in addition to the Pareto
    observations.

    Args:
        modelbridge: ``Modelbridge`` used to predict metrics outcomes.
        observation_features: Observation features to consider for the Pareto
            frontier.
        observation_data: Data for computing the Pareto front, unless
            ``observation_features`` are provided and ``model_predictions is True``.
        objective_thresholds: Metric values bounding the region of interest in
            the objective outcome space; used to override objective thresholds
            specified in ``optimization_config``, if necessary.
        optimization_config: Multi-objective optimization config.
        arm_names: Arm names for each observation in ``observation_features``.
        use_model_predictions: If ``True``, will use model predictions at
            ``observation_features`` to compute Pareto front. If ``False``,
            will use ``observation_data`` directly to compute Pareto front, ignoring
            ``observation_features``.
        transform_outcomes_and_configs: If ``True``, will transform the optimization
            config, observation features and observation data, before calling
            ``frontier_evaluator``, then will untransform all of the above before
            returning the observations.

    Returns: Four-item tuple of:
          - frontier_observations: Observations of points on the pareto frontier,
          - f: n x m tensor representation of the Pareto frontier values where n is the
            length of frontier_observations and m is the number of metrics,
          - obj_w: m tensor of objective weights,
          - obj_t: m tensor of objective thresholds corresponding to Y, or None if no
            objective thresholds used.
    """

    array_to_tensor = partial(_array_to_tensor, modelbridge=modelbridge)
    X, Y, Yvar = None, None, None
    if use_model_predictions:
        X = array_to_tensor(
            modelbridge.transform_observation_features(observation_features))
    if observation_data is not None:
        if transform_outcomes_and_configs:
            Y, Yvar = modelbridge.transform_observation_data(observation_data)
        else:
            Y, Yvar = observation_data_to_array(
                outcomes=modelbridge.outcomes,
                observation_data=observation_data)
        Y, Yvar = (array_to_tensor(Y), array_to_tensor(Yvar))
    if arm_names is None:
        arm_names = [None] * len(observation_features)

    # Extract optimization config: make sure that the problem is a MOO
    # problem and clone the optimization config with specified
    # `objective_thresholds` if those are provided. If `optimization_config`
    # is not specified, uses the one stored on `modelbridge`.
    optimization_config = _get_multiobjective_optimization_config(
        modelbridge=modelbridge,
        optimization_config=optimization_config,
        objective_thresholds=objective_thresholds,
    )

    # Transform optimization config.
    fixed_features = ObservationFeatures(parameters={})
    if transform_outcomes_and_configs:
        optimization_config = modelbridge.transform_optimization_config(
            optimization_config=optimization_config,
            fixed_features=fixed_features,
        )
    else:
        # de-relativize outcome constraints and objective thresholds
        obs_feats, obs_data, _ = _get_modelbridge_training_data(
            modelbridge=modelbridge)
        tf = Derelativize(
            search_space=modelbridge.model_space.clone(),
            observation_data=obs_data,
            observation_features=obs_feats,
            config={"use_raw_status_quo": True},
        )
        # pyre-ignore [9]
        optimization_config = tf.transform_optimization_config(
            optimization_config=optimization_config.clone(),
            modelbridge=modelbridge,
            fixed_features=fixed_features,
        )
    # Extract weights, constraints, and objective_thresholds
    objective_weights = extract_objective_weights(
        objective=optimization_config.objective, outcomes=modelbridge.outcomes)
    outcome_constraints = extract_outcome_constraints(
        outcome_constraints=optimization_config.outcome_constraints,
        outcomes=modelbridge.outcomes,
    )
    obj_t = extract_objective_thresholds(
        objective_thresholds=optimization_config.objective_thresholds,
        objective=optimization_config.objective,
        outcomes=modelbridge.outcomes,
    )
    obj_t = array_to_tensor(obj_t)
    # Transform to tensors.
    obj_w, oc_c, _, _, _ = validate_and_apply_final_transform(
        objective_weights=objective_weights,
        outcome_constraints=outcome_constraints,
        linear_constraints=None,
        pending_observations=None,
        final_transform=array_to_tensor,
    )
    frontier_evaluator = get_default_frontier_evaluator()
    # pyre-ignore[28]: Unexpected keyword `modelbridge` to anonymous call
    f, cov, indx = frontier_evaluator(
        model=modelbridge.model,
        X=X,
        Y=Y,
        Yvar=Yvar,
        objective_thresholds=obj_t,
        objective_weights=obj_w,
        outcome_constraints=oc_c,
    )
    f, cov = f.detach().cpu().clone(), cov.detach().cpu().clone()
    indx = indx.tolist()
    frontier_observation_data = array_to_observation_data(
        f=f.numpy(), cov=cov.numpy(), outcomes=not_none(modelbridge.outcomes))

    if use_model_predictions:
        # Untransform observations
        for t in reversed(modelbridge.transforms.values()):  # noqa T484
            frontier_observation_data = t.untransform_observation_data(
                frontier_observation_data, [])
        # reconstruct tensor representation of untransformed predictions
        Y_arr, _ = observation_data_to_array(
            outcomes=modelbridge.outcomes,
            observation_data=frontier_observation_data)
        f = _array_to_tensor(Y_arr)
    # Construct observations
    frontier_observations = []
    for i, obsd in enumerate(frontier_observation_data):
        frontier_observations.append(
            Observation(
                features=observation_features[indx[i]],
                data=obsd,
                arm_name=arm_names[indx[i]],
            ))
    return frontier_observations, f, obj_w.cpu(), obj_t.cpu()
Ejemplo n.º 10
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def _get_modelbridge_training_data(
    modelbridge: modelbridge_module.array.ArrayModelBridge,
) -> Tuple[List[ObservationFeatures], List[ObservationData],
           List[Optional[str]]]:
    obs = modelbridge.get_training_data()
    return _unpack_observations(obs=obs)