Source code for pybop.plot.parameters
from pybop import GaussianLogLikelihood
from pybop.plot.standard_plots import StandardSubplot
[docs]
def parameters(optim, show=True, **layout_kwargs):
"""
Plot the evolution of parameters during the optimization process using Plotly.
Parameters
----------
optim : object
Optimisation object containing the history of parameter values and associated cost.
show : bool, optional
If True, the figure is shown upon creation (default: True).
**layout_kwargs : optional
Valid Plotly layout keys and their values,
e.g. `xaxis_title="Time [s]"` or
`xaxis={"title": "Time [s]", font={"size":14}}`
Returns
-------
plotly.graph_objs.Figure
A Plotly figure object showing the parameter evolution over iterations.
"""
# Extract parameters and log from the optimisation object
parameters = optim.cost.parameters
x = list(range(len(optim.log.x)))
y = [list(item) for item in zip(*optim.log.x)]
# Create lists of axis titles and trace names
axis_titles = []
trace_names = parameters.keys()
for name in trace_names:
axis_titles.append(("Function Call", name))
if isinstance(optim.cost, GaussianLogLikelihood):
axis_titles.append(("Function Call", "Sigma"))
trace_names.append("Sigma")
# Set subplot layout options
layout_options = dict(
title="Parameter Convergence",
width=1024,
height=576,
legend=dict(orientation="h", yanchor="bottom", y=1.02, xanchor="right", x=1),
)
# Create a plot dictionary
plot_dict = StandardSubplot(
x=x,
y=y,
axis_titles=axis_titles,
layout_options=layout_options,
trace_names=trace_names,
trace_name_width=50,
)
# Generate the figure and update the layout
fig = plot_dict(show=False)
fig.update_layout(**layout_kwargs)
if show:
fig.show()
return fig