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main_incremental.py
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main_incremental.py
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import os
import time
import torch
import argparse
import importlib
import numpy as np
from functools import reduce
import utils
import approach
from loggers.exp_logger import MultiLogger
from datasets.data_loader import get_loaders
from datasets.dataset_config import dataset_config
from last_layer_analysis import last_layer_analysis
from networks import tvmodels, allmodels, set_tvmodel_head_var
def main(argv=None):
tstart = time.time()
# Arguments
parser = argparse.ArgumentParser(description='FACIL - Framework for Analysis of Class Incremental Learning')
# miscellaneous args
parser.add_argument('--gpu', type=int, default=0,
help='GPU (default=%(default)s)')
parser.add_argument('--results-path', type=str, default='../results',
help='Results path (default=%(default)s)')
parser.add_argument('--exp-name', default=None, type=str,
help='Experiment name (default=%(default)s)')
parser.add_argument('--seed', type=int, default=0,
help='Random seed (default=%(default)s)')
parser.add_argument('--log', default=['disk'], type=str, choices=['disk', 'tensorboard'],
help='Loggers used (disk, tensorboard) (default=%(default)s)', nargs='*', metavar="LOGGER")
parser.add_argument('--save-models', action='store_true',
help='Save trained models (default=%(default)s)')
parser.add_argument('--last-layer-analysis', action='store_true',
help='Plot last layer analysis (default=%(default)s)')
parser.add_argument('--no-cudnn-deterministic', action='store_true',
help='Disable CUDNN deterministic (default=%(default)s)')
# dataset args
parser.add_argument('--datasets', default=['cifar100'], type=str, choices=list(dataset_config.keys()),
help='Dataset or datasets used (default=%(default)s)', nargs='+', metavar="DATASET")
parser.add_argument('--num-workers', default=4, type=int, required=False,
help='Number of subprocesses to use for dataloader (default=%(default)s)')
parser.add_argument('--pin-memory', default=False, type=bool, required=False,
help='Copy Tensors into CUDA pinned memory before returning them (default=%(default)s)')
parser.add_argument('--batch-size', default=64, type=int, required=False,
help='Number of samples per batch to load (default=%(default)s)')
parser.add_argument('--num-tasks', default=4, type=int, required=False,
help='Number of tasks per dataset (default=%(default)s)')
parser.add_argument('--nc-first-task', default=None, type=int, required=False,
help='Number of classes of the first task (default=%(default)s)')
parser.add_argument('--use-valid-only', action='store_true',
help='Use validation split instead of test (default=%(default)s)')
parser.add_argument('--stop-at-task', default=0, type=int, required=False,
help='Stop training after specified task (default=%(default)s)')
# model args
parser.add_argument('--network', default='resnet32', type=str, choices=allmodels,
help='Network architecture used (default=%(default)s)', metavar="NETWORK")
parser.add_argument('--keep-existing-head', action='store_true',
help='Disable removing classifier last layer (default=%(default)s)')
parser.add_argument('--pretrained', action='store_true',
help='Use pretrained backbone (default=%(default)s)')
# training args
parser.add_argument('--approach', default='finetuning', type=str, choices=approach.__all__,
help='Learning approach used (default=%(default)s)', metavar="APPROACH")
parser.add_argument('--nepochs', default=200, type=int, required=False,
help='Number of epochs per training session (default=%(default)s)')
parser.add_argument('--lr', default=0.1, type=float, required=False,
help='Starting learning rate (default=%(default)s)')
parser.add_argument('--lr-min', default=1e-4, type=float, required=False,
help='Minimum learning rate (default=%(default)s)')
parser.add_argument('--lr-factor', default=3, type=float, required=False,
help='Learning rate decreasing factor (default=%(default)s)')
parser.add_argument('--lr-patience', default=5, type=int, required=False,
help='Maximum patience to wait before decreasing learning rate (default=%(default)s)')
parser.add_argument('--clipping', default=10000, type=float, required=False,
help='Clip gradient norm (default=%(default)s)')
parser.add_argument('--momentum', default=0.0, type=float, required=False,
help='Momentum factor (default=%(default)s)')
parser.add_argument('--weight-decay', default=0.0, type=float, required=False,
help='Weight decay (L2 penalty) (default=%(default)s)')
parser.add_argument('--warmup-nepochs', default=0, type=int, required=False,
help='Number of warm-up epochs (default=%(default)s)')
parser.add_argument('--warmup-lr-factor', default=1.0, type=float, required=False,
help='Warm-up learning rate factor (default=%(default)s)')
parser.add_argument('--multi-softmax', action='store_true',
help='Apply separate softmax for each task (default=%(default)s)')
parser.add_argument('--fix-bn', action='store_true',
help='Fix batch normalization after first task (default=%(default)s)')
parser.add_argument('--eval-on-train', action='store_true',
help='Show train loss and accuracy (default=%(default)s)')
# gridsearch args
parser.add_argument('--gridsearch-tasks', default=-1, type=int,
help='Number of tasks to apply GridSearch (-1: all tasks) (default=%(default)s)')
# Args -- Incremental Learning Framework
args, extra_args = parser.parse_known_args(argv)
args.results_path = os.path.expanduser(args.results_path)
base_kwargs = dict(nepochs=args.nepochs, lr=args.lr, lr_min=args.lr_min, lr_factor=args.lr_factor,
lr_patience=args.lr_patience, clipgrad=args.clipping, momentum=args.momentum,
wd=args.weight_decay, multi_softmax=args.multi_softmax, wu_nepochs=args.warmup_nepochs,
wu_lr_factor=args.warmup_lr_factor, fix_bn=args.fix_bn, eval_on_train=args.eval_on_train)
if args.no_cudnn_deterministic:
print('WARNING: CUDNN Deterministic will be disabled.')
utils.cudnn_deterministic = False
utils.seed_everything(seed=args.seed)
print('=' * 108)
print('Arguments =')
for arg in np.sort(list(vars(args).keys())):
print('\t' + arg + ':', getattr(args, arg))
print('=' * 108)
# Args -- CUDA
if torch.cuda.is_available():
torch.cuda.set_device(args.gpu)
device = 'cuda'
else:
print('WARNING: [CUDA unavailable] Using CPU instead!')
device = 'cpu'
# Multiple gpus
# if torch.cuda.device_count() > 1:
# self.C = torch.nn.DataParallel(C)
# self.C.to(self.device)
####################################################################################################################
# Args -- Network
from networks.network import LLL_Net
if args.network in tvmodels: # torchvision models
tvnet = getattr(importlib.import_module(name='torchvision.models'), args.network)
if args.network == 'googlenet':
init_model = tvnet(pretrained=args.pretrained, aux_logits=False)
else:
init_model = tvnet(pretrained=args.pretrained)
set_tvmodel_head_var(init_model)
else: # other models declared in networks package's init
net = getattr(importlib.import_module(name='networks'), args.network)
# WARNING: fixed to pretrained False for other model (non-torchvision)
init_model = net(pretrained=False)
# Args -- Continual Learning Approach
from approach.incremental_learning import Inc_Learning_Appr
Appr = getattr(importlib.import_module(name='approach.' + args.approach), 'Appr')
assert issubclass(Appr, Inc_Learning_Appr)
appr_args, extra_args = Appr.extra_parser(extra_args)
print('Approach arguments =')
for arg in np.sort(list(vars(appr_args).keys())):
print('\t' + arg + ':', getattr(appr_args, arg))
print('=' * 108)
# Args -- Exemplars Management
from datasets.exemplars_dataset import ExemplarsDataset
Appr_ExemplarsDataset = Appr.exemplars_dataset_class()
if Appr_ExemplarsDataset:
assert issubclass(Appr_ExemplarsDataset, ExemplarsDataset)
appr_exemplars_dataset_args, extra_args = Appr_ExemplarsDataset.extra_parser(extra_args)
print('Exemplars dataset arguments =')
for arg in np.sort(list(vars(appr_exemplars_dataset_args).keys())):
print('\t' + arg + ':', getattr(appr_exemplars_dataset_args, arg))
print('=' * 108)
else:
appr_exemplars_dataset_args = argparse.Namespace()
# Args -- GridSearch
if args.gridsearch_tasks > 0:
from gridsearch import GridSearch
gs_args, extra_args = GridSearch.extra_parser(extra_args)
Appr_finetuning = getattr(importlib.import_module(name='approach.finetuning'), 'Appr')
assert issubclass(Appr_finetuning, Inc_Learning_Appr)
GridSearch_ExemplarsDataset = Appr.exemplars_dataset_class()
print('GridSearch arguments =')
for arg in np.sort(list(vars(gs_args).keys())):
print('\t' + arg + ':', getattr(gs_args, arg))
print('=' * 108)
assert len(extra_args) == 0, "Unused args: {}".format(' '.join(extra_args))
####################################################################################################################
# Log all arguments
full_exp_name = reduce((lambda x, y: x[0] + y[0]), args.datasets) if len(args.datasets) > 0 else args.datasets[0]
full_exp_name += '_' + args.approach
if args.exp_name is not None:
full_exp_name += '_' + args.exp_name
logger = MultiLogger(args.results_path, full_exp_name, loggers=args.log, save_models=args.save_models)
logger.log_args(argparse.Namespace(**args.__dict__, **appr_args.__dict__, **appr_exemplars_dataset_args.__dict__))
# Loaders
utils.seed_everything(seed=args.seed)
trn_loader, val_loader, tst_loader, taskcla = get_loaders(args.datasets, args.num_tasks, args.nc_first_task,
args.batch_size, num_workers=args.num_workers,
pin_memory=args.pin_memory)
# Apply arguments for loaders
if args.use_valid_only:
tst_loader = val_loader
max_task = len(taskcla) if args.stop_at_task == 0 else args.stop_at_task
# Network and Approach instances
utils.seed_everything(seed=args.seed)
net = LLL_Net(init_model, remove_existing_head=not args.keep_existing_head)
utils.seed_everything(seed=args.seed)
# taking transformations and class indices from first train dataset
first_train_ds = trn_loader[0].dataset
transform, class_indices = first_train_ds.transform, first_train_ds.class_indices
appr_kwargs = {**base_kwargs, **dict(logger=logger, **appr_args.__dict__)}
if Appr_ExemplarsDataset:
appr_kwargs['exemplars_dataset'] = Appr_ExemplarsDataset(transform, class_indices,
**appr_exemplars_dataset_args.__dict__)
utils.seed_everything(seed=args.seed)
appr = Appr(net, device, **appr_kwargs)
# GridSearch
if args.gridsearch_tasks > 0:
ft_kwargs = {**base_kwargs, **dict(logger=logger,
exemplars_dataset=GridSearch_ExemplarsDataset(transform, class_indices))}
appr_ft = Appr_finetuning(net, device, **ft_kwargs)
gridsearch = GridSearch(appr_ft, args.seed, gs_args.gridsearch_config, gs_args.gridsearch_acc_drop_thr,
gs_args.gridsearch_hparam_decay, gs_args.gridsearch_max_num_searches)
# Loop tasks
print(taskcla)
acc_taw = np.zeros((max_task, max_task))
acc_tag = np.zeros((max_task, max_task))
forg_taw = np.zeros((max_task, max_task))
forg_tag = np.zeros((max_task, max_task))
for t, (_, ncla) in enumerate(taskcla):
# Early stop tasks if flag
if t >= max_task:
continue
print('*' * 108)
print('Task {:2d}'.format(t))
print('*' * 108)
# Add head for current task
net.add_head(taskcla[t][1])
net.to(device)
# GridSearch
if t < args.gridsearch_tasks:
# Search for best finetuning learning rate -- Maximal Plasticity Search
print('LR GridSearch')
best_ft_acc, best_ft_lr = gridsearch.search_lr(appr.model, t, trn_loader[t], val_loader[t])
# Apply to approach
appr.lr = best_ft_lr
gen_params = gridsearch.gs_config.get_params('general')
for k, v in gen_params.items():
if not isinstance(v, list):
setattr(appr, k, v)
# Search for best forgetting/intransigence tradeoff -- Stability Decay
print('Trade-off GridSearch')
best_tradeoff, tradeoff_name = gridsearch.search_tradeoff(args.approach, appr,
t, trn_loader[t], val_loader[t], best_ft_acc)
# Apply to approach
if tradeoff_name is not None:
setattr(appr, tradeoff_name, best_tradeoff)
print('-' * 108)
# Train
appr.train(t, trn_loader[t], val_loader[t])
print('-' * 108)
# Test
for u in range(t + 1):
test_loss, acc_taw[t, u], acc_tag[t, u] = appr.eval(u, tst_loader[u])
if u < t:
forg_taw[t, u] = acc_taw[:t, u].max(0) - acc_taw[t, u]
forg_tag[t, u] = acc_tag[:t, u].max(0) - acc_tag[t, u]
print('>>> Test on task {:2d} : loss={:.3f} | TAw acc={:5.1f}%, forg={:5.1f}%'
'| TAg acc={:5.1f}%, forg={:5.1f}% <<<'.format(u, test_loss,
100 * acc_taw[t, u], 100 * forg_taw[t, u],
100 * acc_tag[t, u], 100 * forg_tag[t, u]))
logger.log_scalar(task=t, iter=u, name='loss', group='test', value=test_loss)
logger.log_scalar(task=t, iter=u, name='acc_taw', group='test', value=100 * acc_taw[t, u])
logger.log_scalar(task=t, iter=u, name='acc_tag', group='test', value=100 * acc_tag[t, u])
logger.log_scalar(task=t, iter=u, name='forg_taw', group='test', value=100 * forg_taw[t, u])
logger.log_scalar(task=t, iter=u, name='forg_tag', group='test', value=100 * forg_tag[t, u])
# Save
print('Save at ' + os.path.join(args.results_path, full_exp_name))
logger.log_result(acc_taw, name="acc_taw", step=t)
logger.log_result(acc_tag, name="acc_tag", step=t)
logger.log_result(forg_taw, name="forg_taw", step=t)
logger.log_result(forg_tag, name="forg_tag", step=t)
logger.save_model(net.state_dict(), task=t)
logger.log_result(acc_taw.sum(1) / np.tril(np.ones(acc_taw.shape[0])).sum(1), name="avg_accs_taw", step=t)
logger.log_result(acc_tag.sum(1) / np.tril(np.ones(acc_tag.shape[0])).sum(1), name="avg_accs_tag", step=t)
aux = np.tril(np.repeat([[tdata[1] for tdata in taskcla[:max_task]]], max_task, axis=0))
logger.log_result((acc_taw * aux).sum(1) / aux.sum(1), name="wavg_accs_taw", step=t)
logger.log_result((acc_tag * aux).sum(1) / aux.sum(1), name="wavg_accs_tag", step=t)
# Last layer analysis
if args.last_layer_analysis:
weights, biases = last_layer_analysis(net.heads, t, taskcla, y_lim=True)
logger.log_figure(name='weights', iter=t, figure=weights)
logger.log_figure(name='bias', iter=t, figure=biases)
# Output sorted weights and biases
weights, biases = last_layer_analysis(net.heads, t, taskcla, y_lim=True, sort_weights=True)
logger.log_figure(name='weights', iter=t, figure=weights)
logger.log_figure(name='bias', iter=t, figure=biases)
# Print Summary
utils.print_summary(acc_taw, acc_tag, forg_taw, forg_tag)
print('[Elapsed time = {:.1f} h]'.format((time.time() - tstart) / (60 * 60)))
print('Done!')
return acc_taw, acc_tag, forg_taw, forg_tag, logger.exp_path
####################################################################################################################
if __name__ == '__main__':
main()