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- """
- Performance check of AutoGL trainer + PYG dataset
- """
-
- import os
-
- os.environ["AUTOGL_BACKEND"] = "pyg"
-
- import random
- import numpy as np
-
- from torch_geometric.datasets import TUDataset
- from torch_geometric.data import DataLoader
- from autogl.datasets import utils
- from autogl.module.train import GraphClassificationFullTrainer
- from autogl.solver.utils import set_seed
- from helper import get_encoder_decoder_hp
- import logging
-
- logging.basicConfig(level=logging.ERROR)
-
- def fixed(**kwargs):
- return [{
- 'parameterName': k,
- "type": "FIXED",
- "value": v
- } for k, v in kwargs.items()]
-
- if __name__ == '__main__':
-
- import argparse
- parser = argparse.ArgumentParser('pyg trainer')
- parser.add_argument('--device', type=str, default='cuda')
- parser.add_argument('--dataset', type=str, choices=['MUTAG', 'COLLAB', 'IMDBBINARY', 'IMDBMULTI', 'NCI1', 'PROTEINS', 'PTC', 'REDDITBINARY', 'REDDITMULTI5K'], default='MUTAG')
- parser.add_argument('--dataset_seed', type=int, default=2021)
- parser.add_argument('--batch_size', type=int, default=32)
- parser.add_argument('--repeat', type=int, default=50)
- parser.add_argument('--model', type=str, choices=['gin', 'gat', 'gcn', 'sage'], default='gin')
- parser.add_argument('--lr', type=float, default=0.0001)
- parser.add_argument('--epoch', type=int, default=100)
-
- args = parser.parse_args()
-
- # seed = 100
- dataset = TUDataset(os.path.expanduser('~/.pyg'), args.dataset)
-
- # 1. split dataset [fix split]
- dataids = list(range(len(dataset)))
- random.seed(args.dataset_seed)
- random.shuffle(dataids)
-
- fold = int(len(dataset) * 0.1)
- train_index = dataids[:fold * 8]
- val_index = dataids[fold * 8: fold * 9]
- test_index = dataids[fold * 9: ]
- dataset.train_index = train_index
- dataset.val_index = val_index
- dataset.test_index = test_index
- dataset.train_split = dataset[dataset.train_index]
- dataset.val_split = dataset[dataset.val_index]
- dataset.test_split = dataset[dataset.test_index]
-
- labels = np.array([data.y.item() for data in dataset.test_split])
-
- accs = []
-
- model_hp, decoder_hp = get_encoder_decoder_hp(args.model)
-
- from tqdm import tqdm
- for seed in tqdm(range(args.repeat)):
- set_seed(seed)
-
- trainer = GraphClassificationFullTrainer(
- model=args.model,
- device=args.device,
- init=False,
- num_features=dataset[0].x.size(1),
- num_classes=max([data.y.item() for data in dataset]) + 1,
- num_graph_features=0,
- loss='nll_loss',
- feval=('acc')
- ).duplicate_from_hyper_parameter(
- {
- "trainer": {
- # hp from trainer
- "max_epoch": args.epoch,
- "batch_size": args.batch_size,
- "early_stopping_round": args.epoch + 1,
- "lr": args.lr,
- "weight_decay": 0,
- },
- "encoder": model_hp,
- "decoder": decoder_hp
- }
- )
-
- trainer.train(dataset, False)
- out = trainer.predict(dataset, 'test').detach().cpu().numpy()
- acc = (out == labels).astype('float').mean()
- accs.append(acc)
- print('{:.4f} ~ {:.4f}'.format(np.mean(accs), np.std(accs)))
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