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- # Copyright (c) OpenMMLab. All rights reserved.
- import argparse
- import json
- from collections import defaultdict
- import matplotlib.pyplot as plt
- import numpy as np
- import seaborn as sns
- def cal_train_time(log_dicts, args):
- for i, log_dict in enumerate(log_dicts):
- print(f'{"-" * 5}Analyze train time of {args.json_logs[i]}{"-" * 5}')
- all_times = []
- for epoch in log_dict.keys():
- if args.include_outliers:
- all_times.append(log_dict[epoch]['time'])
- else:
- all_times.append(log_dict[epoch]['time'][1:])
- all_times = np.array(all_times)
- epoch_ave_time = all_times.mean(-1)
- slowest_epoch = epoch_ave_time.argmax()
- fastest_epoch = epoch_ave_time.argmin()
- std_over_epoch = epoch_ave_time.std()
- print(f'slowest epoch {slowest_epoch + 1}, '
- f'average time is {epoch_ave_time[slowest_epoch]:.4f}')
- print(f'fastest epoch {fastest_epoch + 1}, '
- f'average time is {epoch_ave_time[fastest_epoch]:.4f}')
- print(f'time std over epochs is {std_over_epoch:.4f}')
- print(f'average iter time: {np.mean(all_times):.4f} s/iter')
- print()
- def plot_curve(log_dicts, args):
- if args.backend is not None:
- plt.switch_backend(args.backend)
- sns.set_style(args.style)
- # if legend is None, use {filename}_{key} as legend
- legend = args.legend
- if legend is None:
- legend = []
- for json_log in args.json_logs:
- for metric in args.keys:
- legend.append(f'{json_log}_{metric}')
- assert len(legend) == (len(args.json_logs) * len(args.keys))
- metrics = args.keys
- num_metrics = len(metrics)
- for i, log_dict in enumerate(log_dicts):
- epochs = list(log_dict.keys())
- for j, metric in enumerate(metrics):
- print(f'plot curve of {args.json_logs[i]}, metric is {metric}')
- if metric not in log_dict[epochs[0]]:
- raise KeyError(
- f'{args.json_logs[i]} does not contain metric {metric}')
- xs = []
- ys = []
- for epoch in epochs:
- xs.append(np.array(log_dict[epoch]['step']))
- ys.append(np.array(log_dict[epoch][metric]))
- xs = np.concatenate(xs)
- ys = np.concatenate(ys)
- plt.xlabel('step')
- plt.plot(xs, ys, label=legend[i * num_metrics + j], linewidth=0.5)
- plt.legend()
- if args.title is not None:
- plt.title(args.title)
- if args.out is None:
- plt.show()
- else:
- print(f'save curve to: {args.out}')
- plt.savefig(args.out)
- plt.cla()
- def add_plot_parser(subparsers):
- parser_plt = subparsers.add_parser(
- 'plot_curve', help='parser for plotting curves')
- parser_plt.add_argument(
- 'json_logs',
- type=str,
- nargs='+',
- help='path of train log in json format')
- parser_plt.add_argument(
- '--keys',
- type=str,
- nargs='+',
- default=['loss_kpt'],
- help='the metric that you want to plot')
- parser_plt.add_argument('--title', type=str, help='title of figure')
- parser_plt.add_argument(
- '--legend',
- type=str,
- nargs='+',
- default=None,
- help='legend of each plot')
- parser_plt.add_argument(
- '--backend', type=str, default=None, help='backend of plt')
- parser_plt.add_argument(
- '--style', type=str, default='dark', help='style of plt')
- parser_plt.add_argument('--out', type=str, default=None)
- def add_time_parser(subparsers):
- parser_time = subparsers.add_parser(
- 'cal_train_time',
- help='parser for computing the average time per training iteration')
- parser_time.add_argument(
- 'json_logs',
- type=str,
- nargs='+',
- help='path of train log in json format')
- parser_time.add_argument(
- '--include-outliers',
- action='store_true',
- help='include the first value of every epoch when computing '
- 'the average time')
- def parse_args():
- parser = argparse.ArgumentParser(description='Analyze Json Log')
- # currently only support plot curve and calculate average train time
- subparsers = parser.add_subparsers(dest='task', help='task parser')
- add_plot_parser(subparsers)
- add_time_parser(subparsers)
- args = parser.parse_args()
- return args
- def load_json_logs(json_logs):
- # load and convert json_logs to log_dict, key is epoch, value is a sub dict
- # keys of sub dict is different metrics, e.g. memory, top1_acc
- # value of sub dict is a list of corresponding values of all iterations
- log_dicts = [dict() for _ in json_logs]
- for json_log, log_dict in zip(json_logs, log_dicts):
- with open(json_log, 'r') as log_file:
- for line in log_file:
- log = json.loads(line.strip())
- # skip lines without `epoch` field
- if 'epoch' not in log:
- continue
- epoch = log.pop('epoch')
- if epoch not in log_dict:
- log_dict[epoch] = defaultdict(list)
- for k, v in log.items():
- log_dict[epoch][k].append(v)
- return log_dicts
- def main():
- args = parse_args()
- json_logs = args.json_logs
- for json_log in json_logs:
- assert json_log.endswith('.json')
- log_dicts = load_json_logs(json_logs)
- eval(args.task)(log_dicts, args)
- if __name__ == '__main__':
- main()
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