Time Series Datasets
We are the Time Series Analysis Team of Southeast University.
email: zysong@seu.edu.cn
We are developing a new benchmark that includes a broader dataset and a more lightweight code framework to address the issue of excessive encapsulation in current time series forecasting libraries.
COMMON: such as ETT, Traffic, Electricity, PEMS
TFB: form paper "TFB: Towards Comprehensive and Fair Benchmarking of Time Series Forecasting Methods"
WORKLOAD: form paper "Fremer: Lightweight and Effective Frequency Transformer for Workload Forecasting in Cloud Services", ByteDance
Dataset format
dict:
'data': np.array, shape: (length, num_variates)
'time_date': the DatetimeIndex, shape: (length,)
'columns': np.array, shape: (num_variates,)
'freq': np.str
'cycle': np.array, the series cycles (*e.g.*, 24, 24*7 and so on). We don't test the cycle if the value is -1.
Loading Dataset
import numpy as np
import pandas as pd
df_data_columns_date = np.load(file_path, allow_pickle=True).item()
df_data = df_data_columns_date["data"] # shape (seq_len, num_features)
# df_columns = df_data_columns_date["columns"] # list of column names
df_date = df_data_columns_date["time_date"] # pd.DatetimeIndex (seq_len, )