#!/usr/bin/env python3
# Copyright (c) Meta Platforms, Inc. and affiliates.
#
# This source code is licensed under the MIT license found in the
# LICENSE file in the root directory of this source tree.
from copy import deepcopy
from typing import Any, Dict, List, Optional, Tuple, Union
import numpy as np
from ax.core.observation import ObservationFeatures
from ax.modelbridge.base import ModelBridge
from ax.plot.base import AxPlotConfig, AxPlotTypes, PlotData
from ax.plot.helper import (
get_range_parameters,
TNullableGeneratorRunsDict,
axis_range,
get_fixed_values,
get_grid_for_parameter,
get_plot_data,
get_range_parameter,
slice_config_to_trace,
)
from ax.utils.common.typeutils import not_none
from plotly import graph_objs as go
# type aliases
SlicePredictions = Tuple[
PlotData,
List[Dict[str, Union[str, float]]],
List[float],
np.ndarray,
np.ndarray,
str,
str,
bool,
Dict[str, Optional[Union[str, bool, float, int]]],
np.ndarray,
bool,
]
def _get_slice_predictions(
model: ModelBridge,
param_name: str,
metric_name: str,
generator_runs_dict: TNullableGeneratorRunsDict = None,
relative: bool = False,
density: int = 50,
slice_values: Optional[Dict[str, Any]] = None,
fixed_features: Optional[ObservationFeatures] = None,
trial_index: Optional[int] = None,
) -> SlicePredictions:
"""Computes slice prediction configuration values for a single metric name.
Args:
model: ModelBridge that contains model for predictions
param_name: Name of parameter that will be sliced
metric_name: Name of metric to plot
generator_runs_dict: A dictionary {name: generator run} of generator runs
whose arms will be plotted, if they lie in the slice.
relative: Predictions relative to status quo
density: Number of points along slice to evaluate predictions.
slice_values: A dictionary {name: val} for the fixed values of the
other parameters. If not provided, then the status quo values will
be used if there is a status quo, otherwise the mean of numeric
parameters or the mode of choice parameters. Ignored if
fixed_features is specified.
fixed_features: An ObservationFeatures object containing the values of
features (including non-parameter features like context) to be set
in the slice.
Returns: Configruation values for AxPlotConfig.
"""
if generator_runs_dict is None:
generator_runs_dict = {}
parameter = get_range_parameter(model, param_name)
grid = get_grid_for_parameter(parameter, density)
plot_data, raw_data, cond_name_to_parameters = get_plot_data(
model=model,
generator_runs_dict=generator_runs_dict,
metric_names={metric_name},
fixed_features=fixed_features,
)
if fixed_features is not None:
slice_values = fixed_features.parameters
else:
fixed_features = ObservationFeatures(parameters={})
fixed_values = get_fixed_values(model, slice_values, trial_index)
prediction_features = []
for x in grid:
predf = deepcopy(fixed_features)
predf.parameters = fixed_values.copy()
predf.parameters[param_name] = x
prediction_features.append(predf)
f, cov = model.predict(prediction_features)
f_plt = f[metric_name]
sd_plt = np.sqrt(cov[metric_name][metric_name])
# pyre-fixme[7]: Expected `Tuple[PlotData, List[Dict[str, Union[float, str]]],
# List[float], np.ndarray, np.ndarray, str, str, bool, Dict[str, Union[None, bool,
# float, int, str]], np.ndarray, bool]` but got `Tuple[PlotData, Dict[str,
# Dict[str, Union[None, bool, float, int, str]]], List[float], List[Dict[str,
# Union[float, str]]], np.ndarray, str, str, bool, Dict[str, Union[None, bool,
# float, int, str]], typing.Any, bool]`.
return (
plot_data,
cond_name_to_parameters,
f_plt,
raw_data,
grid,
metric_name,
param_name,
relative,
fixed_values,
sd_plt,
parameter.log_scale,
)
[docs]def plot_slice_plotly(
model: ModelBridge,
param_name: str,
metric_name: str,
generator_runs_dict: TNullableGeneratorRunsDict = None,
relative: bool = False,
density: int = 50,
slice_values: Optional[Dict[str, Any]] = None,
fixed_features: Optional[ObservationFeatures] = None,
trial_index: Optional[int] = None,
) -> go.Figure:
"""Plot predictions for a 1-d slice of the parameter space.
Args:
model: ModelBridge that contains model for predictions
param_name: Name of parameter that will be sliced
metric_name: Name of metric to plot
generator_runs_dict: A dictionary {name: generator run} of generator runs
whose arms will be plotted, if they lie in the slice.
relative: Predictions relative to status quo
density: Number of points along slice to evaluate predictions.
slice_values: A dictionary {name: val} for the fixed values of the
other parameters. If not provided, then the status quo values will
be used if there is a status quo, otherwise the mean of numeric
parameters or the mode of choice parameters. Ignored if
fixed_features is specified.
fixed_features: An ObservationFeatures object containing the values of
features (including non-parameter features like context) to be set
in the slice.
Returns:
go.Figure: plot of objective vs. parameter value
"""
pd, cntp, f_plt, rd, grid, _, _, _, fv, sd_plt, ls = _get_slice_predictions(
model=model,
param_name=param_name,
metric_name=metric_name,
generator_runs_dict=generator_runs_dict,
relative=relative,
density=density,
slice_values=slice_values,
fixed_features=fixed_features,
trial_index=trial_index,
)
config = {
"arm_data": pd,
"arm_name_to_parameters": cntp,
"f": f_plt,
"fit_data": rd,
"grid": grid,
"metric": metric_name,
"param": param_name,
"rel": relative,
"setx": fv,
"sd": sd_plt,
"is_log": ls,
}
config = AxPlotConfig(config, plot_type=AxPlotTypes.GENERIC).data
arm_data = config["arm_data"]
arm_name_to_parameters = config["arm_name_to_parameters"]
f = config["f"]
fit_data = config["fit_data"]
grid = config["grid"]
metric = config["metric"]
param = config["param"]
rel = config["rel"]
setx = config["setx"]
sd = config["sd"]
is_log = config["is_log"]
traces = slice_config_to_trace(
arm_data,
arm_name_to_parameters,
f,
fit_data,
grid,
metric,
param,
rel,
setx,
sd,
is_log,
True,
)
# layout
xrange = axis_range(grid, is_log)
xtype = "log" if is_log else "linear"
layout = {
"hovermode": "closest",
"xaxis": {
"anchor": "y",
"autorange": False,
"exponentformat": "e",
"range": xrange,
"tickfont": {"size": 11},
"tickmode": "auto",
"title": param,
"type": xtype,
},
"yaxis": {
"anchor": "x",
"tickfont": {"size": 11},
"tickmode": "auto",
"title": metric,
},
}
return go.Figure(data=traces, layout=layout)
[docs]def plot_slice(
model: ModelBridge,
param_name: str,
metric_name: str,
generator_runs_dict: TNullableGeneratorRunsDict = None,
relative: bool = False,
density: int = 50,
slice_values: Optional[Dict[str, Any]] = None,
fixed_features: Optional[ObservationFeatures] = None,
trial_index: Optional[int] = None,
) -> AxPlotConfig:
"""Plot predictions for a 1-d slice of the parameter space.
Args:
model: ModelBridge that contains model for predictions
param_name: Name of parameter that will be sliced
metric_name: Name of metric to plot
generator_runs_dict: A dictionary {name: generator run} of generator runs
whose arms will be plotted, if they lie in the slice.
relative: Predictions relative to status quo
density: Number of points along slice to evaluate predictions.
slice_values: A dictionary {name: val} for the fixed values of the
other parameters. If not provided, then the status quo values will
be used if there is a status quo, otherwise the mean of numeric
parameters or the mode of choice parameters. Ignored if
fixed_features is specified.
fixed_features: An ObservationFeatures object containing the values of
features (including non-parameter features like context) to be set
in the slice.
Returns:
AxPlotConfig: plot of objective vs. parameter value
"""
return AxPlotConfig(
data=plot_slice_plotly(
model=model,
param_name=param_name,
metric_name=metric_name,
generator_runs_dict=generator_runs_dict,
relative=relative,
density=density,
slice_values=slice_values,
fixed_features=fixed_features,
trial_index=trial_index,
),
plot_type=AxPlotTypes.GENERIC,
)
[docs]def interact_slice_plotly(
model: ModelBridge,
generator_runs_dict: TNullableGeneratorRunsDict = None,
relative: bool = False,
density: int = 50,
slice_values: Optional[Dict[str, Any]] = None,
fixed_features: Optional[ObservationFeatures] = None,
trial_index: Optional[int] = None,
) -> go.Figure:
"""Create interactive plot with predictions for a 1-d slice of the parameter
space.
Args:
model: ModelBridge that contains model for predictions
generator_runs_dict: A dictionary {name: generator run} of generator runs
whose arms will be plotted, if they lie in the slice.
relative: Predictions relative to status quo
density: Number of points along slice to evaluate predictions.
slice_values: A dictionary {name: val} for the fixed values of the
other parameters. If not provided, then the status quo values will
be used if there is a status quo, otherwise the mean of numeric
parameters or the mode of choice parameters. Ignored if
fixed_features is specified.
fixed_features: An ObservationFeatures object containing the values of
features (including non-parameter features like context) to be set
in the slice.
Returns:
go.Figure: interactive plot of objective vs. parameter
"""
if generator_runs_dict is None:
generator_runs_dict = {}
metric_names = list(model.metric_names)
# Populate `pbuttons`, which allows the user to select 1D slices of parameter
# space with the chosen parameter on the x-axis.
range_parameters = get_range_parameters(model)
param_names = [parameter.name for parameter in range_parameters]
pbuttons = []
init_traces = []
xaxis_init_format = {}
first_param_bool = True
should_replace_slice_values = fixed_features is not None
for param_name in param_names:
pbutton_data_args = {"x": [], "y": [], "error_y": []}
parameter = get_range_parameter(model, param_name)
grid = get_grid_for_parameter(parameter, density)
plot_data_dict = {}
raw_data_dict = {}
sd_plt_dict: Dict[str, Dict[str, np.ndarray]] = {}
cond_name_to_parameters_dict = {}
is_log_dict: Dict[str, bool] = {}
if should_replace_slice_values:
slice_values = not_none(fixed_features).parameters
else:
fixed_features = ObservationFeatures(parameters={})
fixed_values = get_fixed_values(model, slice_values, trial_index)
prediction_features = []
for x in grid:
predf = deepcopy(not_none(fixed_features))
predf.parameters = fixed_values.copy()
predf.parameters[param_name] = x
prediction_features.append(predf)
f, cov = model.predict(prediction_features)
for metric_name in metric_names:
pd, cntp, f_plt, rd, _, _, _, _, _, sd_plt, ls = _get_slice_predictions(
model=model,
param_name=param_name,
metric_name=metric_name,
generator_runs_dict=generator_runs_dict,
relative=relative,
density=density,
slice_values=slice_values,
fixed_features=fixed_features,
)
plot_data_dict[metric_name] = pd
raw_data_dict[metric_name] = rd
cond_name_to_parameters_dict[metric_name] = cntp
sd_plt_dict[metric_name] = np.sqrt(cov[metric_name][metric_name])
is_log_dict[metric_name] = ls
config = {
"arm_data": plot_data_dict,
"arm_name_to_parameters": cond_name_to_parameters_dict,
"f": f,
"fit_data": raw_data_dict,
"grid": grid,
"metrics": metric_names,
"param": param_name,
"rel": relative,
"setx": fixed_values,
"sd": sd_plt_dict,
"is_log": is_log_dict,
}
config = AxPlotConfig(config, plot_type=AxPlotTypes.GENERIC).data
arm_data = config["arm_data"]
arm_name_to_parameters = config["arm_name_to_parameters"]
f = config["f"]
fit_data = config["fit_data"]
grid = config["grid"]
metrics = config["metrics"]
param = config["param"]
rel = config["rel"]
setx = config["setx"]
sd = config["sd"]
is_log = config["is_log"]
# layout
xrange = axis_range(grid, is_log[metrics[0]])
xtype = "log" if is_log_dict[metrics[0]] else "linear"
for i, metric in enumerate(metrics):
cur_visible = i == 0
metric = metrics[i]
traces = slice_config_to_trace(
arm_data[metric],
arm_name_to_parameters[metric],
f[metric],
fit_data[metric],
grid,
metric,
param,
rel,
setx,
sd[metric],
is_log[metric],
cur_visible,
)
pbutton_data_args["x"] += [trace["x"] for trace in traces]
pbutton_data_args["y"] += [trace["y"] for trace in traces]
pbutton_data_args["error_y"] += [
{
"type": "data",
"array": trace["error_y"]["array"],
"visible": True,
"color": "black",
}
if "error_y" in trace and "array" in trace["error_y"]
else []
for trace in traces
]
if first_param_bool:
init_traces.extend(traces)
pbutton_args = [
pbutton_data_args,
{
"xaxis.title": param_name,
"xaxis.range": xrange,
"xaxis.type": xtype,
},
]
pbuttons.append({"args": pbutton_args, "label": param_name, "method": "update"})
if first_param_bool:
xaxis_init_format = {
"anchor": "y",
"autorange": False,
"exponentformat": "e",
"range": xrange,
"tickfont": {"size": 11},
"tickmode": "auto",
"title": param_name,
"type": xtype,
}
first_param_bool = False
# Populate mbuttons, which allows the user to select which metric to plot
mbuttons = []
for i, metric in enumerate(metrics):
trace_cnt = 3 + len(arm_data[metric]["out_of_sample"].keys())
visible = [False] * (len(metrics) * trace_cnt)
for j in range(i * trace_cnt, (i + 1) * trace_cnt):
visible[j] = True
mbuttons.append(
{
"method": "update",
"args": [{"visible": visible}, {"yaxis.title": metric}],
"label": metric,
}
)
layout = {
"title": "Predictions for a 1-d slice of the parameter space",
"annotations": [
{
"showarrow": False,
"text": "Choose metric:",
"x": 0.225,
"xanchor": "right",
"xref": "paper",
"y": -0.455,
"yanchor": "bottom",
"yref": "paper",
},
{
"showarrow": False,
"text": "Choose parameter:",
"x": 0.225,
"xanchor": "right",
"xref": "paper",
"y": -0.305,
"yanchor": "bottom",
"yref": "paper",
},
],
"updatemenus": [
{
"y": -0.35,
"x": 0.25,
"xanchor": "left",
"yanchor": "top",
"buttons": mbuttons,
"direction": "up",
},
{
"y": -0.2,
"x": 0.25,
"xanchor": "left",
"yanchor": "top",
"buttons": pbuttons,
"direction": "up",
},
],
"hovermode": "closest",
"xaxis": xaxis_init_format,
"yaxis": {
"anchor": "x",
"autorange": True,
"tickfont": {"size": 11},
"tickmode": "auto",
"title": metrics[0],
},
}
return go.Figure(data=init_traces, layout=layout)
[docs]def interact_slice(
model: ModelBridge,
generator_runs_dict: TNullableGeneratorRunsDict = None,
relative: bool = False,
density: int = 50,
slice_values: Optional[Dict[str, Any]] = None,
fixed_features: Optional[ObservationFeatures] = None,
trial_index: Optional[int] = None,
) -> AxPlotConfig:
"""Create interactive plot with predictions for a 1-d slice of the parameter
space.
Args:
model: ModelBridge that contains model for predictions
generator_runs_dict: A dictionary {name: generator run} of generator runs
whose arms will be plotted, if they lie in the slice.
relative: Predictions relative to status quo
density: Number of points along slice to evaluate predictions.
slice_values: A dictionary {name: val} for the fixed values of the
other parameters. If not provided, then the status quo values will
be used if there is a status quo, otherwise the mean of numeric
parameters or the mode of choice parameters. Ignored if
fixed_features is specified.
fixed_features: An ObservationFeatures object containing the values of
features (including non-parameter features like context) to be set
in the slice.
Returns:
AxPlotConfig: interactive plot of objective vs. parameter
"""
return AxPlotConfig(
data=interact_slice_plotly(
model=model,
generator_runs_dict=generator_runs_dict,
relative=relative,
density=density,
slice_values=slice_values,
fixed_features=fixed_features,
trial_index=trial_index,
),
plot_type=AxPlotTypes.GENERIC,
)