TSlib is an open-source library for deep learning researchers, especially for deep time series analysis.
We provide a neat code base to evaluate advanced deep time series models or develop your model, which covers five mainstream tasks: long- and short-term forecasting, imputation, anomaly detection, and classification.
🚩News (2023.10) We add an implementation to iTransformer, which is the state-of-the-art model for long-term forecasting. The official code and complete scripts of iTransformer can be found here.
🚩News (2023.09) We added a detailed tutorial for TimesNet and this library, which is quite friendly to beginners of deep time series analysis.
Till October 2023, the top three models for five different tasks are:
Model Ranking |
Long-term Forecasting |
Short-term Forecasting |
Imputation | Classification | Anomaly Detection |
---|---|---|---|---|---|
🥇 1st | iTransformer | TimesNet | TimesNet | TimesNet | TimesNet |
🥈 2nd | PatchTST | Non-stationary Transformer |
Non-stationary Transformer |
Non-stationary Transformer |
FEDformer |
🥉 3rd | TimesNet | FEDformer | Autoformer | Informer | Autoformer |
Note: We will keep updating this leaderboard. If you have proposed advanced and awesome models, you can send us your paper/code link or raise a pull request. We will add them to this repo and update the leaderboard as soon as possible.
Compared models of this leaderboard. ☑ means that their codes have already been included in this repo.
- iTransformer - iTransformer: Inverted Transformers Are Effective for Time Series Forecasting [arXiv 2023] [Code].
- PatchTST - A Time Series is Worth 64 Words: Long-term Forecasting with Transformers [ICLR 2023] [Code].
- TimesNet - TimesNet: Temporal 2D-Variation Modeling for General Time Series Analysis [ICLR 2023] [Code] [ICLR 2024] [Code].
- DLinear - Are Transformers Effective for Time Series Forecasting? [AAAI 2023] [Code].
- LightTS - Less Is More: Fast Multivariate Time Series Forecasting with Light Sampling-oriented MLP Structures [arXiv 2022] [Code].
- ETSformer - ETSformer: Exponential Smoothing Transformers for Time-series Forecasting [arXiv 2022] [Code].
- Non-stationary Transformer - Non-stationary Transformers: Exploring the Stationarity in Time Series Forecasting [NeurIPS 2022] [Code].
- FEDformer - FEDformer: Frequency Enhanced Decomposed Transformer for Long-term Series Forecasting [ICML 2022] [Code].
- Pyraformer - Pyraformer: Low-complexity Pyramidal Attention for Long-range Time Series Modeling and Forecasting [ICLR 2022] [Code].
- Autoformer - Autoformer: Decomposition Transformers with Auto-Correlation for Long-Term Series Forecasting [NeurIPS 2021] [Code].
- Informer - Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting [AAAI 2021] [Code].
- Reformer - Reformer: The Efficient Transformer [ICLR 2020] [Code].
- Transformer - Attention is All You Need [NeurIPS 2017] [Code].
See our latest paper [TimesNet] for the comprehensive benchmark. We will release a real-time updated online version soon.
Newly added baselines. We will add them to the leaderboard after a comprehensive evaluation.
- Koopa - Koopa: Learning Non-stationary Time Series Dynamics with Koopman Predictors [NeurIPS 2023] [Code].
- TiDE - Long-term Forecasting with TiDE: Time-series Dense Encoder [arXiv 2023] [Code].
- FiLM - FiLM: Frequency improved Legendre Memory Model for Long-term Time Series Forecasting [NeurIPS 2022][Code].
- MICN - MICN: Multi-scale Local and Global Context Modeling for Long-term Series Forecasting [ICLR 2023][Code].
- Crossformer - Crossformer: Transformer Utilizing Cross-Dimension Dependency for Multivariate Time Series Forecasting [ICLR 2023][Code].
- Install Python 3.8. For convenience, execute the following command.
pip install -r requirements.txt
- Prepare Data. You can obtain the well pre-processed datasets from [Google Drive] or [Baidu Drive], Then place the downloaded data in the folder
./dataset
. Here is a summary of supported datasets.
- Train and evaluate model. We provide the experiment scripts for all benchmarks under the folder
./scripts/
. You can reproduce the experiment results as the following examples:
# long-term forecast
bash ./scripts/long_term_forecast/ETT_script/TimesNet_ETTh1.sh
# short-term forecast
bash ./scripts/short_term_forecast/TimesNet_M4.sh
# imputation
bash ./scripts/imputation/ETT_script/TimesNet_ETTh1.sh
# anomaly detection
bash ./scripts/anomaly_detection/PSM/TimesNet.sh
# classification
bash ./scripts/classification/TimesNet.sh
- Develop your own model.
- Add the model file to the folder
./models
. You can follow the./models/Transformer.py
. - Include the newly added model in the
Exp_Basic.model_dict
of./exp/exp_basic.py
. - Create the corresponding scripts under the folder
./scripts
.
If you find this repo useful, please cite our paper.
@inproceedings{wu2023timesnet,
title={TimesNet: Temporal 2D-Variation Modeling for General Time Series Analysis},
author={Haixu Wu and Tengge Hu and Yong Liu and Hang Zhou and Jianmin Wang and Mingsheng Long},
booktitle={International Conference on Learning Representations},
year={2023},
}
If you have any questions or suggestions, feel free to contact:
- Haixu Wu (wuhx23@mails.tsinghua.edu.cn)
- Tengge Hu (htg21@mails.tsinghua.edu.cn)
- Haoran Zhang (z-hr20@mails.tsinghua.edu.cn)
- Jiawei Guo (guo-jw21@mails.tsinghua.edu.cn)
Or describe it in Issues.
This project is supported by the National Key R&D Program of China (2021YFB1715200).
This library is constructed based on the following repos:
-
Forecasting: https://github.com/thuml/Autoformer.
-
Anomaly Detection: https://github.com/thuml/Anomaly-Transformer.
-
Classification: https://github.com/thuml/Flowformer.
All the experiment datasets are public, and we obtain them from the following links:
-
Long-term Forecasting and Imputation: https://github.com/thuml/Autoformer.
-
Short-term Forecasting: https://github.com/ServiceNow/N-BEATS.
-
Anomaly Detection: https://github.com/thuml/Anomaly-Transformer.
-
Classification: https://www.timeseriesclassification.com/.