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train.py
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train.py
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import torch
import numpy as np
import argparse
import time
import util
import matplotlib.pyplot as plt
from engine import trainer
parser = argparse.ArgumentParser()
parser.add_argument('--device',type=str,default='cuda:3',help='')
parser.add_argument('--data',type=str,default='data/METR-LA',help='data path')
parser.add_argument('--adjdata',type=str,default='data/sensor_graph/adj_mx.pkl',help='adj data path')
parser.add_argument('--adjtype',type=str,default='doubletransition',help='adj type')
parser.add_argument('--gcn_bool',action='store_true',help='whether to add graph convolution layer')
parser.add_argument('--aptonly',action='store_true',help='whether only adaptive adj')
parser.add_argument('--addaptadj',action='store_true',help='whether add adaptive adj')
parser.add_argument('--randomadj',action='store_true',help='whether random initialize adaptive adj')
parser.add_argument('--seq_length',type=int,default=12,help='')
parser.add_argument('--nhid',type=int,default=32,help='')
parser.add_argument('--in_dim',type=int,default=2,help='inputs dimension')
parser.add_argument('--num_nodes',type=int,default=207,help='number of nodes')
parser.add_argument('--batch_size',type=int,default=64,help='batch size')
parser.add_argument('--learning_rate',type=float,default=0.001,help='learning rate')
parser.add_argument('--dropout',type=float,default=0.3,help='dropout rate')
parser.add_argument('--weight_decay',type=float,default=0.0001,help='weight decay rate')
parser.add_argument('--epochs',type=int,default=100,help='')
parser.add_argument('--print_every',type=int,default=50,help='')
#parser.add_argument('--seed',type=int,default=99,help='random seed')
parser.add_argument('--save',type=str,default='./garage/metr',help='save path')
parser.add_argument('--expid',type=int,default=1,help='experiment id')
args = parser.parse_args()
def main():
#set seed
#torch.manual_seed(args.seed)
#np.random.seed(args.seed)
#load data
device = torch.device(args.device)
sensor_ids, sensor_id_to_ind, adj_mx = util.load_adj(args.adjdata,args.adjtype)
dataloader = util.load_dataset(args.data, args.batch_size, args.batch_size, args.batch_size)
scaler = dataloader['scaler']
supports = [torch.tensor(i).to(device) for i in adj_mx]
print(args)
if args.randomadj:
adjinit = None
else:
adjinit = supports[0]
if args.aptonly:
supports = None
engine = trainer(scaler, args.in_dim, args.seq_length, args.num_nodes, args.nhid, args.dropout,
args.learning_rate, args.weight_decay, device, supports, args.gcn_bool, args.addaptadj,
adjinit)
print("start training...",flush=True)
his_loss =[]
val_time = []
train_time = []
for i in range(1,args.epochs+1):
#if i % 10 == 0:
#lr = max(0.000002,args.learning_rate * (0.1 ** (i // 10)))
#for g in engine.optimizer.param_groups:
#g['lr'] = lr
train_loss = []
train_mape = []
train_rmse = []
t1 = time.time()
dataloader['train_loader'].shuffle()
for iter, (x, y) in enumerate(dataloader['train_loader'].get_iterator()):
trainx = torch.Tensor(x).to(device)
trainx= trainx.transpose(1, 3)
trainy = torch.Tensor(y).to(device)
trainy = trainy.transpose(1, 3)
metrics = engine.train(trainx, trainy[:,0,:,:])
train_loss.append(metrics[0])
train_mape.append(metrics[1])
train_rmse.append(metrics[2])
if iter % args.print_every == 0 :
log = 'Iter: {:03d}, Train Loss: {:.4f}, Train MAPE: {:.4f}, Train RMSE: {:.4f}'
print(log.format(iter, train_loss[-1], train_mape[-1], train_rmse[-1]),flush=True)
t2 = time.time()
train_time.append(t2-t1)
#validation
valid_loss = []
valid_mape = []
valid_rmse = []
s1 = time.time()
for iter, (x, y) in enumerate(dataloader['val_loader'].get_iterator()):
testx = torch.Tensor(x).to(device)
testx = testx.transpose(1, 3)
testy = torch.Tensor(y).to(device)
testy = testy.transpose(1, 3)
metrics = engine.eval(testx, testy[:,0,:,:])
valid_loss.append(metrics[0])
valid_mape.append(metrics[1])
valid_rmse.append(metrics[2])
s2 = time.time()
log = 'Epoch: {:03d}, Inference Time: {:.4f} secs'
print(log.format(i,(s2-s1)))
val_time.append(s2-s1)
mtrain_loss = np.mean(train_loss)
mtrain_mape = np.mean(train_mape)
mtrain_rmse = np.mean(train_rmse)
mvalid_loss = np.mean(valid_loss)
mvalid_mape = np.mean(valid_mape)
mvalid_rmse = np.mean(valid_rmse)
his_loss.append(mvalid_loss)
log = 'Epoch: {:03d}, Train Loss: {:.4f}, Train MAPE: {:.4f}, Train RMSE: {:.4f}, Valid Loss: {:.4f}, Valid MAPE: {:.4f}, Valid RMSE: {:.4f}, Training Time: {:.4f}/epoch'
print(log.format(i, mtrain_loss, mtrain_mape, mtrain_rmse, mvalid_loss, mvalid_mape, mvalid_rmse, (t2 - t1)),flush=True)
torch.save(engine.model.state_dict(), args.save+"_epoch_"+str(i)+"_"+str(round(mvalid_loss,2))+".pth")
print("Average Training Time: {:.4f} secs/epoch".format(np.mean(train_time)))
print("Average Inference Time: {:.4f} secs".format(np.mean(val_time)))
#testing
bestid = np.argmin(his_loss)
engine.model.load_state_dict(torch.load(args.save+"_epoch_"+str(bestid+1)+"_"+str(round(his_loss[bestid],2))+".pth"))
outputs = []
realy = torch.Tensor(dataloader['y_test']).to(device)
realy = realy.transpose(1,3)[:,0,:,:]
for iter, (x, y) in enumerate(dataloader['test_loader'].get_iterator()):
testx = torch.Tensor(x).to(device)
testx = testx.transpose(1,3)
with torch.no_grad():
preds = engine.model(testx).transpose(1,3)
outputs.append(preds.squeeze())
yhat = torch.cat(outputs,dim=0)
yhat = yhat[:realy.size(0),...]
print("Training finished")
print("The valid loss on best model is", str(round(his_loss[bestid],4)))
amae = []
amape = []
armse = []
for i in range(12):
pred = scaler.inverse_transform(yhat[:,:,i])
real = realy[:,:,i]
metrics = util.metric(pred,real)
log = 'Evaluate best model on test data for horizon {:d}, Test MAE: {:.4f}, Test MAPE: {:.4f}, Test RMSE: {:.4f}'
print(log.format(i+1, metrics[0], metrics[1], metrics[2]))
amae.append(metrics[0])
amape.append(metrics[1])
armse.append(metrics[2])
log = 'On average over 12 horizons, Test MAE: {:.4f}, Test MAPE: {:.4f}, Test RMSE: {:.4f}'
print(log.format(np.mean(amae),np.mean(amape),np.mean(armse)))
torch.save(engine.model.state_dict(), args.save+"_exp"+str(args.expid)+"_best_"+str(round(his_loss[bestid],2))+".pth")
if __name__ == "__main__":
t1 = time.time()
main()
t2 = time.time()
print("Total time spent: {:.4f}".format(t2-t1))