mirror of
https://github.com/Anjok07/ultimatevocalremovergui.git
synced 2024-11-28 09:21:03 +01:00
224 lines
8.2 KiB
Python
224 lines
8.2 KiB
Python
import argparse
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from datetime import datetime as dt
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import gc
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import json
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import os
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import random
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import numpy as np
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import torch
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import torch.nn as nn
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from lib import dataset
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from lib import nets
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from lib import spec_utils
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def train_val_split(mix_dir, inst_dir, val_rate, val_filelist_json):
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input_exts = ['.wav', '.m4a', '.3gp', '.oma', '.mp3', '.mp4']
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X_list = sorted([
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os.path.join(mix_dir, fname)
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for fname in os.listdir(mix_dir)
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if os.path.splitext(fname)[1] in input_exts])
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y_list = sorted([
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os.path.join(inst_dir, fname)
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for fname in os.listdir(inst_dir)
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if os.path.splitext(fname)[1] in input_exts])
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filelist = list(zip(X_list, y_list))
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random.shuffle(filelist)
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val_filelist = []
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if val_filelist_json is not None:
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with open(val_filelist_json, 'r', encoding='utf8') as f:
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val_filelist = json.load(f)
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if len(val_filelist) == 0:
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val_size = int(len(filelist) * val_rate)
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train_filelist = filelist[:-val_size]
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val_filelist = filelist[-val_size:]
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else:
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train_filelist = [
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pair for pair in filelist
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if list(pair) not in val_filelist]
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return train_filelist, val_filelist
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def train_inner_epoch(X_train, y_train, model, optimizer, batchsize, instance_loss):
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sum_loss = 0
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model.train()
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aux_crit = nn.L1Loss()
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criterion = nn.L1Loss(reduction='none')
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perm = np.random.permutation(len(X_train))
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for i in range(0, len(X_train), batchsize):
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local_perm = perm[i: i + batchsize]
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X_batch = torch.from_numpy(X_train[local_perm]).cpu()
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y_batch = torch.from_numpy(y_train[local_perm]).cpu()
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model.zero_grad()
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mask, aux = model(X_batch)
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aux_loss = aux_crit(X_batch * aux, y_batch)
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X_batch = spec_utils.crop_center(mask, X_batch, False)
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y_batch = spec_utils.crop_center(mask, y_batch, False)
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abs_diff = criterion(X_batch * mask, y_batch)
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loss = abs_diff.mean() * 0.9 + aux_loss * 0.1
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loss.backward()
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optimizer.step()
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abs_diff_np = abs_diff.detach().cpu().numpy()
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instance_loss[local_perm] += abs_diff_np.mean(axis=(1, 2, 3))
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sum_loss += float(loss.detach().cpu().numpy()) * len(X_batch)
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return sum_loss / len(X_train)
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def val_inner_epoch(dataloader, model):
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sum_loss = 0
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model.eval()
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criterion = nn.L1Loss()
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with torch.no_grad():
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for X_batch, y_batch in dataloader:
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X_batch = X_batch.cpu()
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y_batch = y_batch.cpu()
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mask = model.predict(X_batch)
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X_batch = spec_utils.crop_center(mask, X_batch, False)
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y_batch = spec_utils.crop_center(mask, y_batch, False)
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loss = criterion(X_batch * mask, y_batch)
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sum_loss += float(loss.detach().cpu().numpy()) * len(X_batch)
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return sum_loss / len(dataloader.dataset)
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def main():
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p = argparse.ArgumentParser()
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p.add_argument('--gpu', '-g', type=int, default=-1)
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p.add_argument('--seed', '-s', type=int, default=2019)
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p.add_argument('--sr', '-r', type=int, default=44100)
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p.add_argument('--hop_length', '-l', type=int, default=1024)
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p.add_argument('--mixture_dataset', '-m', required=True)
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p.add_argument('--instrumental_dataset', '-i', required=True)
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p.add_argument('--learning_rate', type=float, default=0.001)
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p.add_argument('--lr_min', type=float, default=0.0001)
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p.add_argument('--lr_decay_factor', type=float, default=0.9)
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p.add_argument('--lr_decay_patience', type=int, default=6)
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p.add_argument('--batchsize', '-B', type=int, default=4)
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p.add_argument('--cropsize', '-c', type=int, default=256)
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p.add_argument('--val_rate', '-v', type=float, default=0.1)
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p.add_argument('--val_filelist', '-V', type=str, default=None)
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p.add_argument('--val_batchsize', '-b', type=int, default=4)
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p.add_argument('--val_cropsize', '-C', type=int, default=512)
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p.add_argument('--patches', '-p', type=int, default=16)
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p.add_argument('--epoch', '-E', type=int, default=100)
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p.add_argument('--inner_epoch', '-e', type=int, default=4)
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p.add_argument('--oracle_rate', '-O', type=float, default=0)
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p.add_argument('--oracle_drop_rate', '-o', type=float, default=0.5)
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p.add_argument('--mixup_rate', '-M', type=float, default=0.0)
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p.add_argument('--mixup_alpha', '-a', type=float, default=1.0)
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p.add_argument('--pretrained_model', '-P', type=str, default=None)
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p.add_argument('--debug', '-d', action='store_true')
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args = p.parse_args()
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random.seed(args.seed)
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np.random.seed(args.seed)
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torch.manual_seed(args.seed)
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timestamp = dt.now().strftime('%Y%m%d%H%M%S')
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model = nets.CascadedASPPNet()
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if args.pretrained_model is not None:
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model.load_state_dict(torch.load(args.pretrained_model))
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if args.gpu >= 0:
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model.cuda()
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optimizer = torch.optim.Adam(model.parameters(), lr=args.learning_rate)
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scheduler = torch.optim.lr_scheduler.ReduceLROnPlateau(
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optimizer,
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factor=args.lr_decay_factor,
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patience=args.lr_decay_patience,
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min_lr=args.lr_min,
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verbose=True)
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train_filelist, val_filelist = train_val_split(
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mix_dir=args.mixture_dataset,
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inst_dir=args.instrumental_dataset,
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val_rate=args.val_rate,
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val_filelist_json=args.val_filelist)
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if args.debug:
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print('### DEBUG MODE')
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train_filelist = train_filelist[:1]
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val_filelist = val_filelist[:1]
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with open('val_{}.json'.format(timestamp), 'w', encoding='utf8') as f:
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json.dump(val_filelist, f, ensure_ascii=False)
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for i, (X_fname, y_fname) in enumerate(val_filelist):
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print(i + 1, os.path.basename(X_fname), os.path.basename(y_fname))
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val_dataset = dataset.make_validation_set(
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filelist=val_filelist,
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cropsize=args.val_cropsize,
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sr=args.sr,
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hop_length=args.hop_length,
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offset=model.offset)
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val_dataloader = torch.utils.data.DataLoader(
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dataset=val_dataset,
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batch_size=args.val_batchsize,
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shuffle=False,
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num_workers=4)
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log = []
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oracle_X = None
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oracle_y = None
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best_loss = np.inf
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for epoch in range(args.epoch):
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X_train, y_train = dataset.make_training_set(
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train_filelist, args.cropsize, args.patches, args.sr, args.hop_length, model.offset)
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X_train, y_train = dataset.mixup_generator(
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X_train, y_train, args.mixup_rate, args.mixup_alpha)
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if oracle_X is not None and oracle_y is not None:
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perm = np.random.permutation(len(oracle_X))
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X_train[perm] = oracle_X
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y_train[perm] = oracle_y
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print('# epoch', epoch)
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instance_loss = np.zeros(len(X_train), dtype=np.float32)
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for inner_epoch in range(args.inner_epoch):
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print(' * inner epoch {}'.format(inner_epoch))
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train_loss = train_inner_epoch(
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X_train, y_train, model, optimizer, args.batchsize, instance_loss)
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val_loss = val_inner_epoch(val_dataloader, model)
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print(' * training loss = {:.6f}, validation loss = {:.6f}'
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.format(train_loss * 1000, val_loss * 1000))
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scheduler.step(val_loss)
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if val_loss < best_loss:
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best_loss = val_loss
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print(' * best validation loss')
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model_path = 'models/model_iter{}.pth'.format(epoch)
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torch.save(model.state_dict(), model_path)
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log.append([train_loss, val_loss])
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with open('log_{}.json'.format(timestamp), 'w', encoding='utf8') as f:
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json.dump(log, f, ensure_ascii=False)
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if args.oracle_rate > 0:
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instance_loss /= args.inner_epoch
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oracle_X, oracle_y, idx = dataset.get_oracle_data(
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X_train, y_train, instance_loss, args.oracle_rate, args.oracle_drop_rate)
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print(' * oracle loss = {:.6f}'.format(instance_loss[idx].mean()))
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del X_train, y_train
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gc.collect()
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if __name__ == '__main__':
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main()
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