| import numpy as np |
| import pandas as pd |
| from plotly import graph_objects as go |
| import plotly.express as px |
| from viewer.utils import PlotOptions |
|
|
|
|
| def parse_merge_runs_to_plot(df, metric_name, merge_method): |
| if merge_method == "none": |
| return [ |
| (group["steps"], group[metric_name], f'{runname}-s{seed}') |
| for (runname, seed), group in df.groupby(["runname", "seed"]) |
| ] |
| if metric_name not in df.columns: |
| return [] |
| grouped = df.groupby(['runname', 'steps']).agg({metric_name: merge_method}).reset_index() |
| return [ |
| (group["steps"], group[metric_name], runname) |
| for (runname,), group in grouped.groupby(["runname"]) |
| ] |
|
|
|
|
| def prepare_plot_data(df: pd.DataFrame, metric_name: str, seed_merge_method: str, |
| plot_options: PlotOptions) -> pd.DataFrame: |
| if df is None or "steps" not in df or metric_name not in df.columns: |
| return pd.DataFrame() |
|
|
| df = df.copy().sort_values(by=["steps"]) |
| plot_data = parse_merge_runs_to_plot(df, metric_name, seed_merge_method) |
|
|
| |
| all_steps = sorted(set(step for xs, _, _ in plot_data for step in xs)) |
| result_df = pd.DataFrame(index=all_steps) |
|
|
| |
| for xs, ys, runname in plot_data: |
| result_df[runname] = pd.Series(index=xs.values, data=ys.values) |
|
|
| |
| if plot_options.interpolate: |
| |
| result_df = result_df.interpolate(method='linear') |
| |
| if plot_options.smoothing > 0: |
| result_df = result_df.rolling(window=plot_options.smoothing, min_periods=1).mean() |
| if plot_options.pct: |
| result_df = result_df * 100 |
|
|
| return result_df |
|
|
|
|
| def plot_metric(plot_df: pd.DataFrame, metric_name: str, seed_merge_method: str, pct: bool, statistics: dict, |
| nb_stds: int, language: str = None, barplot: bool = False) -> go.Figure: |
| if barplot: |
| return plot_metric_barplot(plot_df, metric_name, seed_merge_method, pct, statistics, nb_stds, language) |
| return plot_metric_scatter(plot_df, metric_name, seed_merge_method, pct, statistics, nb_stds, language) |
|
|
| def plot_metric_scatter(plot_df: pd.DataFrame, metric_name: str, seed_merge_method: str, pct: bool, statistics: dict, |
| nb_stds: int, language: str = None) -> go.Figure: |
| fig = go.Figure() |
| if not isinstance(plot_df, pd.DataFrame) or plot_df.empty: |
| return fig |
| show_error_bars = nb_stds > 0 and not np.isnan(statistics["mean_std"]) |
| error_value = statistics["mean_std"] * nb_stds * (100 if pct else 1) if show_error_bars else 0.0 |
|
|
| last_y_values = {runname: plot_df[runname].iloc[-1] for runname in plot_df.columns} |
| sorted_runnames = sorted(last_y_values, key=last_y_values.get, reverse=True) |
| for runname in sorted_runnames: |
| fig.add_trace( |
| go.Scatter(x=plot_df.index, y=plot_df[runname], mode='lines+markers', name=runname, |
| hovertemplate=f'%{{y:.2f}} ({runname})<extra></extra>', |
| error_y=dict( |
| type='constant', |
| value=error_value, |
| visible=show_error_bars |
| )) |
| ) |
|
|
| lang_string = f" ({language})" if language else "" |
|
|
| fig.update_layout( |
| title=f"Run comparisons{lang_string}: {metric_name}" + |
| (f" ({seed_merge_method} over seeds)" if seed_merge_method != "none" else "") + (f" [%]" if pct else ""), |
| xaxis_title="Training steps", |
| yaxis_title=metric_name, |
| hovermode="x unified" |
| ) |
| return fig |
|
|
|
|
| def plot_metric_barplot(plot_df: pd.DataFrame, metric_name: str, seed_merge_method: str, pct: bool, statistics: dict, |
| nb_stds: int, language: str = None) -> go.Figure: |
| fig = go.Figure() |
| if not isinstance(plot_df, pd.DataFrame) or plot_df.empty: |
| return fig |
|
|
| show_error_bars = nb_stds > 0 and not np.isnan(statistics["mean_std"]) |
| error_value = statistics["mean_std"] * nb_stds * (100 if pct else 1) if show_error_bars else 0.0 |
|
|
| last_values = {runname: plot_df[runname].iloc[-1] for runname in plot_df.columns} |
| sorted_runnames = sorted(last_values, key=last_values.get, reverse=True) |
|
|
| |
| colors = px.colors.qualitative.Set1 |
| color_map = {run: colors[i % len(colors)] for i, run in enumerate(plot_df.columns)} |
|
|
| fig.add_trace( |
| go.Bar( |
| x=sorted_runnames, |
| y=[last_values[run] for run in sorted_runnames], |
| marker_color=[color_map[run] for run in sorted_runnames], |
| error_y=dict( |
| type='constant', |
| value=error_value, |
| visible=show_error_bars |
| ), |
| hovertemplate='%{y:.2f}<extra></extra>' |
| ) |
| ) |
|
|
| lang_string = f" ({language})" if language else "" |
|
|
| fig.update_layout( |
| title=f"Run comparisons{lang_string}: {metric_name}" + |
| (f" ({seed_merge_method} over seeds)" if seed_merge_method != "none" else "") + ( |
| f" [%]" if pct else ""), |
| xaxis_title="Runs", |
| yaxis_title=metric_name, |
| hovermode="x" |
| ) |
| return fig |