import os import numpy as np import pandas as pd import torch from torch.utils.data import Dataset, DataLoader # from sklearn.preprocessing import StandardScaler from utils.tools import StandardScaler from utils.timefeatures import time_features import warnings warnings.filterwarnings('ignore') class Dataset_bikeshare(Dataset): def __init__(self, root_path, flag='train', size=None, features='M', data_path='informer_dataset.csv', target='demand', scale=True, inverse=False, timeenc=0, freq='h', cols=None): # size [seq_len, label_len, pred_len] # info if size == None: self.seq_len = 720 self.label_len = 336 self.pred_len = 336 else: self.seq_len = size[0] self.label_len = size[1] self.pred_len = size[2] # init assert flag in ['train', 'test', 'val'] type_map = {'train':0, 'val':1, 'test':2} self.set_type = type_map[flag] self.features = features self.target = target self.scale = scale self.inverse = inverse self.timeenc = timeenc self.freq = freq self.root_path = root_path self.data_path = data_path self.__read_data__() def __read_data__(self): self.scaler = StandardScaler() df_raw = pd.read_csv(os.path.join(self.root_path, self.data_path)) border1s = [0, 33600 - 1488, 33600] border2s = [33600, 33600, 33600 + 1488] border1 = border1s[self.set_type] border2 = border2s[self.set_type] if self.features=='M' or self.features=='MS': cols_data = df_raw.columns[1:] df_data = df_raw[cols_data] elif self.features=='S': df_data = df_raw[[self.target]] if self.scale: train_data = df_data[border1s[0]:border2s[0]] self.scaler.fit(train_data.values) data = self.scaler.transform(df_data.values) else: data = df_data.values df_stamp = df_raw[['date']][border1:border2] df_stamp['date'] = pd.to_datetime(df_stamp.date) data_stamp = time_features(df_stamp, timeenc=self.timeenc, freq=self.freq) self.data_x = data[border1:border2] if self.inverse: self.data_y = df_data.values[border1:border2] else: self.data_y = data[border1:border2] self.data_stamp = data_stamp def __getitem__(self, index): s_begin = index s_end = s_begin + self.seq_len r_begin = s_end - self.label_len r_end = r_begin + self.label_len + self.pred_len seq_x = self.data_x[s_begin:s_end] if self.inverse: seq_y = np.concatenate([self.data_x[r_begin:r_begin+self.label_len], self.data_y[r_begin+self.label_len:r_end]], 0) else: seq_y = self.data_y[r_begin:r_end] seq_x_mark = self.data_stamp[s_begin:s_end] seq_y_mark = self.data_stamp[r_begin:r_end] return seq_x, seq_y, seq_x_mark, seq_y_mark def __len__(self): return len(self.data_x) - self.seq_len- self.pred_len + 1 def inverse_transform(self, data): return self.scaler.inverse_transform(data) class Dataset_ETT_hour(Dataset): def __init__(self, root_path, flag='train', size=None, features='S', data_path='ETTh1.csv', target='OT', scale=True, inverse=False, timeenc=0, freq='h', cols=None): # size [seq_len, label_len, pred_len] # info if size == None: self.seq_len = 24*4*4 self.label_len = 24*4 self.pred_len = 24*4 else: self.seq_len = size[0] self.label_len = size[1] self.pred_len = size[2] # init assert flag in ['train', 'test', 'val'] type_map = {'train':0, 'val':1, 'test':2} self.set_type = type_map[flag] self.features = features self.target = target self.scale = scale self.inverse = inverse self.timeenc = timeenc self.freq = freq self.root_path = root_path self.data_path = data_path self.__read_data__() def __read_data__(self): self.scaler = StandardScaler() df_raw = pd.read_csv(os.path.join(self.root_path, self.data_path)) border1s = [0, 12*30*24 - self.seq_len, 12*30*24+4*30*24 - self.seq_len] border2s = [12*30*24, 12*30*24+4*30*24, 12*30*24+8*30*24] border1 = border1s[self.set_type] border2 = border2s[self.set_type] if self.features=='M' or self.features=='MS': cols_data = df_raw.columns[1:] df_data = df_raw[cols_data] elif self.features=='S': df_data = df_raw[[self.target]] if self.scale: train_data = df_data[border1s[0]:border2s[0]] self.scaler.fit(train_data.values) data = self.scaler.transform(df_data.values) else: data = df_data.values df_stamp = df_raw[['date']][border1:border2] df_stamp['date'] = pd.to_datetime(df_stamp.date) data_stamp = time_features(df_stamp, timeenc=self.timeenc, freq=self.freq) self.data_x = data[border1:border2] if self.inverse: self.data_y = df_data.values[border1:border2] else: self.data_y = data[border1:border2] self.data_stamp = data_stamp def __getitem__(self, index): s_begin = index s_end = s_begin + self.seq_len r_begin = s_end - self.label_len r_end = r_begin + self.label_len + self.pred_len seq_x = self.data_x[s_begin:s_end] if self.inverse: seq_y = np.concatenate([self.data_x[r_begin:r_begin+self.label_len], self.data_y[r_begin+self.label_len:r_end]], 0) else: seq_y = self.data_y[r_begin:r_end] seq_x_mark = self.data_stamp[s_begin:s_end] seq_y_mark = self.data_stamp[r_begin:r_end] return seq_x, seq_y, seq_x_mark, seq_y_mark def __len__(self): return len(self.data_x) - self.seq_len- self.pred_len + 1 def inverse_transform(self, data): return self.scaler.inverse_transform(data) class Dataset_ETT_minute(Dataset): def __init__(self, root_path, flag='train', size=None, features='S', data_path='ETTm1.csv', target='OT', scale=True, inverse=False, timeenc=0, freq='t', cols=None): # size [seq_len, label_len, pred_len] # info if size == None: self.seq_len = 24*4*4 self.label_len = 24*4 self.pred_len = 24*4 else: self.seq_len = size[0] self.label_len = size[1] self.pred_len = size[2] # init assert flag in ['train', 'test', 'val'] type_map = {'train':0, 'val':1, 'test':2} self.set_type = type_map[flag] self.features = features self.target = target self.scale = scale self.inverse = inverse self.timeenc = timeenc self.freq = freq self.root_path = root_path self.data_path = data_path self.__read_data__() def __read_data__(self): self.scaler = StandardScaler() df_raw = pd.read_csv(os.path.join(self.root_path, self.data_path)) border1s = [0, 12*30*24*4 - self.seq_len, 12*30*24*4+4*30*24*4 - self.seq_len] border2s = [12*30*24*4, 12*30*24*4+4*30*24*4, 12*30*24*4+8*30*24*4] border1 = border1s[self.set_type] border2 = border2s[self.set_type] if self.features=='M' or self.features=='MS': cols_data = df_raw.columns[1:] df_data = df_raw[cols_data] elif self.features=='S': df_data = df_raw[[self.target]] if self.scale: train_data = df_data[border1s[0]:border2s[0]] self.scaler.fit(train_data.values) data = self.scaler.transform(df_data.values) else: data = df_data.values df_stamp = df_raw[['date']][border1:border2] df_stamp['date'] = pd.to_datetime(df_stamp.date) data_stamp = time_features(df_stamp, timeenc=self.timeenc, freq=self.freq) self.data_x = data[border1:border2] if self.inverse: self.data_y = df_data.values[border1:border2] else: self.data_y = data[border1:border2] self.data_stamp = data_stamp def __getitem__(self, index): s_begin = index s_end = s_begin + self.seq_len r_begin = s_end - self.label_len r_end = r_begin + self.label_len + self.pred_len seq_x = self.data_x[s_begin:s_end] if self.inverse: seq_y = np.concatenate([self.data_x[r_begin:r_begin+self.label_len], self.data_y[r_begin+self.label_len:r_end]], 0) else: seq_y = self.data_y[r_begin:r_end] seq_x_mark = self.data_stamp[s_begin:s_end] seq_y_mark = self.data_stamp[r_begin:r_end] return seq_x, seq_y, seq_x_mark, seq_y_mark def __len__(self): return len(self.data_x) - self.seq_len - self.pred_len + 1 def inverse_transform(self, data): return self.scaler.inverse_transform(data) class Dataset_Custom(Dataset): def __init__(self, root_path, flag='train', size=None, features='S', data_path='ETTh1.csv', target='OT', scale=True, inverse=False, timeenc=0, freq='h', cols=None): # size [seq_len, label_len, pred_len] # info if size == None: self.seq_len = 24*4*4 self.label_len = 24*4 self.pred_len = 24*4 else: self.seq_len = size[0] self.label_len = size[1] self.pred_len = size[2] # init assert flag in ['train', 'test', 'val'] type_map = {'train':0, 'val':1, 'test':2} self.set_type = type_map[flag] self.features = features self.target = target self.scale = scale self.inverse = inverse self.timeenc = timeenc self.freq = freq self.cols=cols self.root_path = root_path self.data_path = data_path self.__read_data__() def __read_data__(self): self.scaler = StandardScaler() df_raw = pd.read_csv(os.path.join(self.root_path, self.data_path)) ''' df_raw.columns: ['date', ...(other features), target feature] ''' # cols = list(df_raw.columns); if self.cols: cols=self.cols.copy() cols.remove(self.target) else: cols = list(df_raw.columns); cols.remove(self.target); cols.remove('date') df_raw = df_raw[['date']+cols+[self.target]] num_train = int(len(df_raw)*0.7) num_test = int(len(df_raw)*0.2) num_vali = len(df_raw) - num_train - num_test border1s = [0, num_train-self.seq_len, len(df_raw)-num_test-self.seq_len] border2s = [num_train, num_train+num_vali, len(df_raw)] border1 = border1s[self.set_type] border2 = border2s[self.set_type] if self.features=='M' or self.features=='MS': cols_data = df_raw.columns[1:] df_data = df_raw[cols_data] elif self.features=='S': df_data = df_raw[[self.target]] if self.scale: train_data = df_data[border1s[0]:border2s[0]] self.scaler.fit(train_data.values) data = self.scaler.transform(df_data.values) else: data = df_data.values df_stamp = df_raw[['date']][border1:border2] df_stamp['date'] = pd.to_datetime(df_stamp.date) data_stamp = time_features(df_stamp, timeenc=self.timeenc, freq=self.freq) self.data_x = data[border1:border2] if self.inverse: self.data_y = df_data.values[border1:border2] else: self.data_y = data[border1:border2] self.data_stamp = data_stamp def __getitem__(self, index): s_begin = index s_end = s_begin + self.seq_len r_begin = s_end - self.label_len r_end = r_begin + self.label_len + self.pred_len seq_x = self.data_x[s_begin:s_end] if self.inverse: seq_y = np.concatenate([self.data_x[r_begin:r_begin+self.label_len], self.data_y[r_begin+self.label_len:r_end]], 0) else: seq_y = self.data_y[r_begin:r_end] seq_x_mark = self.data_stamp[s_begin:s_end] seq_y_mark = self.data_stamp[r_begin:r_end] return seq_x, seq_y, seq_x_mark, seq_y_mark def __len__(self): return len(self.data_x) - self.seq_len- self.pred_len + 1 def inverse_transform(self, data): return self.scaler.inverse_transform(data) class Dataset_Pred(Dataset): def __init__(self, root_path, flag='pred', size=None, features='S', data_path='ETTh1.csv', target='OT', scale=True, inverse=False, timeenc=0, freq='15min', cols=None): # size [seq_len, label_len, pred_len] # info if size == None: self.seq_len = 24*4*4 self.label_len = 24*4 self.pred_len = 24*4 else: self.seq_len = size[0] self.label_len = size[1] self.pred_len = size[2] # init assert flag in ['pred'] self.features = features self.target = target self.scale = scale self.inverse = inverse self.timeenc = timeenc self.freq = freq self.cols=cols self.root_path = root_path self.data_path = data_path self.__read_data__() def __read_data__(self): self.scaler = StandardScaler() df_raw = pd.read_csv(os.path.join(self.root_path, self.data_path)) ''' df_raw.columns: ['date', ...(other features), target feature] ''' if self.cols: cols=self.cols.copy() cols.remove(self.target) else: print(f"df_raw.columns : {df_raw.columns}") print(f"self.target : {self.target}") cols = list(df_raw.columns); cols.remove(self.target); cols.remove('date') df_raw = df_raw[['date']+cols+[self.target]] border1 = len(df_raw)-self.seq_len border2 = len(df_raw) if self.features=='M' or self.features=='MS': cols_data = df_raw.columns[1:] df_data = df_raw[cols_data] elif self.features=='S': df_data = df_raw[[self.target]] self.prediction_data = df_data[border1:border2] # print(f"df_data.values : {df_data.values}") if self.scale: self.scaler.fit(df_data.values) data = self.scaler.transform(df_data.values) else: data = df_data.values tmp_stamp = df_raw[['date']][border1:border2] self.df_stamp = tmp_stamp tmp_stamp['date'] = pd.to_datetime(tmp_stamp.date) pred_dates = pd.date_range(tmp_stamp.date.values[-1], periods=self.pred_len+1, freq=self.freq) df_stamp = pd.DataFrame(columns = ['date']) df_stamp.date = list(tmp_stamp.date.values) + list(pred_dates[1:]) data_stamp = time_features(df_stamp, timeenc=self.timeenc, freq=self.freq[-1:]) self.data_x = data[border1:border2] if self.inverse: self.data_y = df_data.values[border1:border2] else: self.data_y = data[border1:border2] self.data_stamp = data_stamp def __getitem__(self, index): s_begin = index s_end = s_begin + self.seq_len r_begin = s_end - self.label_len r_end = r_begin + self.label_len + self.pred_len seq_x = self.data_x[s_begin:s_end] if self.inverse: seq_y = self.data_x[r_begin:r_begin+self.label_len] else: seq_y = self.data_y[r_begin:r_begin+self.label_len] seq_x_mark = self.data_stamp[s_begin:s_end] seq_y_mark = self.data_stamp[r_begin:r_end] return seq_x, seq_y, seq_x_mark, seq_y_mark, r_begin def __len__(self): return len(self.data_x) - self.seq_len + 1 def inverse_transform(self, data): return self.scaler.inverse_transform(data)