"""Plotting utilities to visualize training logs.""" import torch import pandas as pd import numpy as np import seaborn as sns import matplotlib.pyplot as plt from pathlib import Path, PurePath def plot_logs(logs, fields=('class_error', 'loss_bbox_unscaled', 'mAP'), ewm_col=0, log_name='log.txt'): """Function to plot specific fields from training log(s). Plots both training and test results. :: Inputs - logs = list containing Path objects, each pointing to individual dir with a log file - fields = which results to plot from each log file - plots both training and test for each field. - ewm_col = optional, which column to use as the exponential weighted smoothing of the plots - log_name = optional, name of log file if different than default 'log.txt'. :: Outputs - matplotlib plots of results in fields, color coded for each log file. - solid lines are training results, dashed lines are test results. """ func_name = 'plot_utils.py::plot_logs' if not isinstance(logs, list): if isinstance(logs, PurePath): logs = [logs] print( f'{func_name} info: logs param expects a list argument, converted to list[Path].' ) else: raise ValueError( f'{func_name} - invalid argument for logs parameter.\n \ Expect list[Path] or single Path obj, received {type(logs)}') for i, dir in enumerate(logs): if not isinstance(dir, PurePath): raise ValueError( f'{func_name} - non-Path object in logs argument of {type(dir)}: \n{dir}' ) if not dir.exists(): raise ValueError( f'{func_name} - invalid directory in logs argument:\n{dir}') # verify log_name exists fn = Path(dir / log_name) if not fn.exists(): print( f'-> missing {log_name}. Have you gotten to Epoch 1 in training?' ) print(f'--> full path of missing log file: {fn}') return # load log file(s) and plot dfs = [pd.read_json(Path(p) / log_name, lines=True) for p in logs] fig, axs = plt.subplots(ncols=len(fields), figsize=(16, 5)) for df, color in zip(dfs, sns.color_palette(n_colors=len(logs))): for j, field in enumerate(fields): if field == 'mAP': coco_eval = pd.DataFrame( np.stack( df.test_coco_eval_bbox.dropna().values)[:, 1]).ewm( com=ewm_col).mean() axs[j].plot(coco_eval, c=color) else: df.interpolate().ewm(com=ewm_col).mean().plot( y=[f'train_{field}', f'test_{field}'], ax=axs[j], color=[color] * 2, style=['-', '--']) for ax, field in zip(axs, fields): if field == 'mAP': ax.legend([Path(p).name for p in logs]) ax.set_title(field) else: ax.legend([f'train', f'test']) ax.set_title(field) return fig, axs def plot_precision_recall(files, naming_scheme='iter'): if naming_scheme == 'exp_id': # name becomes exp_id names = [f.parts[-3] for f in files] elif naming_scheme == 'iter': names = [f.stem for f in files] else: raise ValueError(f'not supported {naming_scheme}') fig, axs = plt.subplots(ncols=2, figsize=(16, 5)) for f, color, name in zip(files, sns.color_palette('Blues', n_colors=len(files)), names): data = torch.load(f) precision = data['precision'] recall = data['params'].recThrs scores = data['scores'] precision = precision[0, :, :, 0, -1].mean(1) scores = scores[0, :, :, 0, -1].mean(1) prec = precision.mean() rec = data['recall'][0, :, 0, -1].mean() print(f'{naming_scheme} {name}: mAP@50={prec * 100: 05.1f}, ' + f'score={scores.mean():0.3f}, ' + f'f1={2 * prec * rec / (prec + rec + 1e-8):0.3f}') axs[0].plot(recall, precision, c=color) axs[1].plot(recall, scores, c=color) axs[0].set_title('Precision / Recall') axs[0].legend(names) axs[1].set_title('Scores / Recall') axs[1].legend(names) return fig, axs