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run_m4.py
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run_m4.py
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import argparse
import torch
from accelerate import Accelerator, DeepSpeedPlugin
from accelerate import DistributedDataParallelKwargs
from torch import optim
from torch.optim import lr_scheduler
from data_provider.m4 import M4Meta
from models import Autoformer, DLinear, TimeLLM
from data_provider.data_factory import data_provider
import time
import random
import numpy as np
import pandas
from utils.losses import smape_loss
from utils.m4_summary import M4Summary
import os
os.environ['CURL_CA_BUNDLE'] = ''
os.environ["PYTORCH_CUDA_ALLOC_CONF"] = "max_split_size_mb:64"
from utils.tools import del_files, EarlyStopping, adjust_learning_rate, load_content, test
parser = argparse.ArgumentParser(description='Time-LLM')
fix_seed = 2021
random.seed(fix_seed)
torch.manual_seed(fix_seed)
np.random.seed(fix_seed)
# basic config
parser.add_argument('--task_name', type=str, required=True, default='long_term_forecast',
help='task name, options:[long_term_forecast, short_term_forecast, imputation, classification, anomaly_detection]')
parser.add_argument('--is_training', type=int, required=True, default=1, help='status')
parser.add_argument('--model_id', type=str, required=True, default='test', help='model id')
parser.add_argument('--model_comment', type=str, required=True, default='none', help='prefix when saving test results')
parser.add_argument('--model', type=str, required=True, default='Autoformer',
help='model name, options: [Autoformer, DLinear]')
parser.add_argument('--seed', type=int, default=0, help='random seed')
# data loader
parser.add_argument('--data', type=str, required=True, default='ETTm1', help='dataset type')
parser.add_argument('--root_path', type=str, default='./dataset', help='root path of the data file')
parser.add_argument('--data_path', type=str, default='ETTh1.csv', help='data file')
parser.add_argument('--features', type=str, default='M',
help='forecasting task, options:[M, S, MS]; '
'M:multivariate predict multivariate, S: univariate predict univariate, '
'MS:multivariate predict univariate')
parser.add_argument('--target', type=str, default='OT', help='target feature in S or MS task')
parser.add_argument('--loader', type=str, default='modal', help='dataset type')
parser.add_argument('--freq', type=str, default='h',
help='freq for time features encoding, '
'options:[s:secondly, t:minutely, h:hourly, d:daily, b:business days, w:weekly, m:monthly], '
'you can also use more detailed freq like 15min or 3h')
parser.add_argument('--checkpoints', type=str, default='./checkpoints/', help='location of model checkpoints')
# forecasting task
parser.add_argument('--seq_len', type=int, default=96, help='input sequence length')
parser.add_argument('--label_len', type=int, default=48, help='start token length')
parser.add_argument('--pred_len', type=int, default=96, help='prediction sequence length')
parser.add_argument('--seasonal_patterns', type=str, default='Monthly', help='subset for M4')
# model define
parser.add_argument('--enc_in', type=int, default=7, help='encoder input size')
parser.add_argument('--dec_in', type=int, default=7, help='decoder input size')
parser.add_argument('--c_out', type=int, default=7, help='output size')
parser.add_argument('--d_model', type=int, default=16, help='dimension of model')
parser.add_argument('--n_heads', type=int, default=8, help='num of heads')
parser.add_argument('--e_layers', type=int, default=2, help='num of encoder layers')
parser.add_argument('--d_layers', type=int, default=1, help='num of decoder layers')
parser.add_argument('--d_ff', type=int, default=32, help='dimension of fcn')
parser.add_argument('--moving_avg', type=int, default=25, help='window size of moving average')
parser.add_argument('--factor', type=int, default=1, help='attn factor')
parser.add_argument('--dropout', type=float, default=0.1, help='dropout')
parser.add_argument('--embed', type=str, default='timeF',
help='time features encoding, options:[timeF, fixed, learned]')
parser.add_argument('--activation', type=str, default='gelu', help='activation')
parser.add_argument('--output_attention', action='store_true', help='whether to output attention in ecoder')
parser.add_argument('--patch_len', type=int, default=16, help='patch length')
parser.add_argument('--stride', type=int, default=8, help='stride')
parser.add_argument('--prompt_domain', type=int, default=0, help='')
parser.add_argument('--llm_model', type=str, default='LLAMA', help='LLM model') # LLAMA, GPT2, BERT
parser.add_argument('--llm_dim', type=int, default='4096', help='LLM model dimension')# LLama7b:4096; GPT2-small:768; BERT-base:768
# optimization
parser.add_argument('--num_workers', type=int, default=10, help='data loader num workers')
parser.add_argument('--itr', type=int, default=1, help='experiments times')
parser.add_argument('--train_epochs', type=int, default=10, help='train epochs')
parser.add_argument('--align_epochs', type=int, default=10, help='alignment epochs')
parser.add_argument('--batch_size', type=int, default=32, help='batch size of train input data')
parser.add_argument('--eval_batch_size', type=int, default=8, help='batch size of model evaluation')
parser.add_argument('--patience', type=int, default=20, help='early stopping patience')
parser.add_argument('--learning_rate', type=float, default=0.0001, help='optimizer learning rate')
parser.add_argument('--des', type=str, default='test', help='exp description')
parser.add_argument('--loss', type=str, default='MSE', help='loss function')
parser.add_argument('--lradj', type=str, default='type1', help='adjust learning rate')
parser.add_argument('--pct_start', type=float, default=0.2, help='pct_start')
parser.add_argument('--use_amp', action='store_true', help='use automatic mixed precision training', default=False)
parser.add_argument('--llm_layers', type=int, default=6)
parser.add_argument('--percent', type=int, default=100)
args = parser.parse_args()
ddp_kwargs = DistributedDataParallelKwargs(find_unused_parameters=True)
deepspeed_plugin = DeepSpeedPlugin(hf_ds_config='./ds_config_zero2.json')
accelerator = Accelerator(kwargs_handlers=[ddp_kwargs], deepspeed_plugin=deepspeed_plugin)
for ii in range(args.itr):
# setting record of experiments
setting = '{}_{}_{}_{}_ft{}_sl{}_ll{}_pl{}_dm{}_nh{}_el{}_dl{}_df{}_fc{}_eb{}_{}_{}'.format(
args.task_name,
args.model_id,
args.model,
args.data,
args.features,
args.seq_len,
args.label_len,
args.pred_len,
args.d_model,
args.n_heads,
args.e_layers,
args.d_layers,
args.d_ff,
args.factor,
args.embed,
args.des, ii)
if args.data == 'm4':
args.pred_len = M4Meta.horizons_map[args.seasonal_patterns] # Up to M4 config
args.seq_len = 2 * args.pred_len
args.label_len = args.pred_len
args.frequency_map = M4Meta.frequency_map[args.seasonal_patterns]
train_data, train_loader = data_provider(args, 'train')
vali_data, vali_loader = data_provider(args, 'val')
test_data, test_loader = data_provider(args, 'test')
if args.model == 'Autoformer':
model = Autoformer.Model(args).float()
elif args.model == 'DLinear':
model = DLinear.Model(args).float()
else:
model = TimeLLM.Model(args).float()
path = os.path.join(args.checkpoints,
setting + '-' + args.model_comment) # unique checkpoint saving path
args.content = load_content(args)
if not os.path.exists(path) and accelerator.is_local_main_process:
os.makedirs(path)
time_now = time.time()
train_steps = len(train_loader)
early_stopping = EarlyStopping(accelerator=accelerator, patience=args.patience, verbose=True)
model_optim = optim.Adam(model.parameters(), lr=args.learning_rate)
if args.lradj == 'COS':
scheduler = torch.optim.lr_scheduler.CosineAnnealingLR(model_optim, T_max=20, eta_min=1e-8)
else:
scheduler = lr_scheduler.OneCycleLR(optimizer=model_optim,
steps_per_epoch=train_steps,
pct_start=args.pct_start,
epochs=args.train_epochs,
max_lr=args.learning_rate)
criterion = smape_loss()
train_loader, vali_loader, model, model_optim, scheduler = accelerator.prepare(
train_loader, vali_loader, model, model_optim, scheduler)
for epoch in range(args.train_epochs):
iter_count = 0
train_loss = []
model.train()
epoch_time = time.time()
for i, (batch_x, batch_y, batch_x_mark, batch_y_mark) in enumerate(train_loader):
iter_count += 1
model_optim.zero_grad()
batch_x = batch_x.float().to(accelerator.device)
batch_y = batch_y.float().to(accelerator.device)
batch_y_mark = batch_y_mark.float().to(accelerator.device)
# decoder input
dec_inp = torch.zeros_like(batch_y[:, -args.pred_len:, :]).float().to(accelerator.device)
dec_inp = torch.cat([batch_y[:, :args.label_len, :], dec_inp], dim=1).float().to(
accelerator.device)
outputs = model(batch_x, None, dec_inp, None)
f_dim = -1 if args.features == 'MS' else 0
outputs = outputs[:, -args.pred_len:, f_dim:]
batch_y = batch_y[:, -args.pred_len:, f_dim:]
batch_y_mark = batch_y_mark[:, -args.pred_len:, f_dim:]
loss = criterion(batch_x, args.frequency_map, outputs, batch_y, batch_y_mark)
train_loss.append(loss.item())
if (i + 1) % 100 == 0:
accelerator.print(
"\titers: {0}, epoch: {1} | loss: {2:.7f}".format(i + 1, epoch + 1, loss.item())
)
speed = (time.time() - time_now) / iter_count
left_time = speed * ((args.train_epochs - epoch) * train_steps - i)
accelerator.print('\tspeed: {:.4f}s/iter; left time: {:.4f}s'.format(speed, left_time))
iter_count = 0
time_now = time.time()
accelerator.backward(loss)
model_optim.step()
if args.lradj == 'TST':
adjust_learning_rate(accelerator, model_optim, scheduler, epoch + 1, args, printout=False)
scheduler.step()
accelerator.print("Epoch: {} cost time: {}".format(epoch + 1, time.time() - epoch_time))
train_loss = np.average(train_loss)
vali_loss = test(args, accelerator, model, train_loader, vali_loader, criterion)
test_loss = vali_loss
accelerator.print(
"Epoch: {0}, Steps: {1} | Train Loss: {2:.7f} Vali Loss: {3:.7f} Test Loss: {4:.7f}".format(
epoch + 1, train_steps, train_loss, vali_loss, test_loss))
early_stopping(vali_loss, model, path) # model saving
if early_stopping.early_stop:
accelerator.print("Early stopping")
break
if args.lradj != 'TST':
adjust_learning_rate(accelerator, model_optim, scheduler, epoch + 1, args, printout=True)
else:
accelerator.print('Updating learning rate to {}'.format(scheduler.get_last_lr()[0]))
best_model_path = path + '/' + 'checkpoint'
accelerator.wait_for_everyone()
unwrapped_model = accelerator.unwrap_model(model)
torch.cuda.synchronize()
torch.cuda.empty_cache()
unwrapped_model.load_state_dict(torch.load(best_model_path, map_location=lambda storage, loc: storage))
x, _ = train_loader.dataset.last_insample_window()
y = test_loader.dataset.timeseries
x = torch.tensor(x, dtype=torch.float32).to(accelerator.device)
x = x.unsqueeze(-1)
model.eval()
with torch.no_grad():
B, _, C = x.shape
dec_inp = torch.zeros((B, args.pred_len, C)).float().to(accelerator.device)
dec_inp = torch.cat([x[:, -args.label_len:, :], dec_inp], dim=1)
outputs = torch.zeros((B, args.pred_len, C)).float().to(accelerator.device)
id_list = np.arange(0, B, args.eval_batch_size)
id_list = np.append(id_list, B)
for i in range(len(id_list) - 1):
outputs[id_list[i]:id_list[i + 1], :, :] = model(
x[id_list[i]:id_list[i + 1]],
None,
dec_inp[id_list[i]:id_list[i + 1]],
None
)
accelerator.wait_for_everyone()
f_dim = -1 if args.features == 'MS' else 0
outputs = outputs[:, -args.pred_len:, f_dim:]
outputs = outputs.detach().cpu().numpy()
preds = outputs
trues = y
x = x.detach().cpu().numpy()
accelerator.print('test shape:', preds.shape)
folder_path = './m4_results/' + args.model + '-' + args.model_comment + '/'
if not os.path.exists(folder_path) and accelerator.is_local_main_process:
os.makedirs(folder_path)
if accelerator.is_local_main_process:
forecasts_df = pandas.DataFrame(preds[:, :, 0], columns=[f'V{i + 1}' for i in range(args.pred_len)])
forecasts_df.index = test_loader.dataset.ids[:preds.shape[0]]
forecasts_df.index.name = 'id'
forecasts_df.set_index(forecasts_df.columns[0], inplace=True)
forecasts_df.to_csv(folder_path + args.seasonal_patterns + '_forecast.csv')
# calculate metrics
accelerator.print(args.model)
file_path = folder_path
if 'Weekly_forecast.csv' in os.listdir(file_path) \
and 'Monthly_forecast.csv' in os.listdir(file_path) \
and 'Yearly_forecast.csv' in os.listdir(file_path) \
and 'Daily_forecast.csv' in os.listdir(file_path) \
and 'Hourly_forecast.csv' in os.listdir(file_path) \
and 'Quarterly_forecast.csv' in os.listdir(file_path):
m4_summary = M4Summary(file_path, args.root_path)
# m4_forecast.set_index(m4_winner_forecast.columns[0], inplace=True)
smape_results, owa_results, mape, mase = m4_summary.evaluate()
accelerator.print('smape:', smape_results)
accelerator.print('mape:', mape)
accelerator.print('mase:', mase)
accelerator.print('owa:', owa_results)
else:
accelerator.print('After all 6 tasks are finished, you can calculate the averaged performance')
accelerator.wait_for_everyone()
if accelerator.is_local_main_process:
path = './checkpoints' # unique checkpoint saving path
del_files(path) # delete checkpoint files
accelerator.print('success delete checkpoints')