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An adaptation of the BasicTS framework for my thesis "Prediction of road congestion levels in urban environments with Graph Neural Networks"

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A Fair and Scalable Time Series Forecasting Benchmark and Toolkit.


EasyTorch LICENSE PyTorch PyTorch python lint

🎉 Getting Started | 💡 Overall Design

📦 Dataset | 🛠️ Scaler | 🧠 Model | 📉 Metrics | 🏃‍♂️ Runner | 📜 Config | 📜 Baselines

$\text{BasicTS}^{+}$ (Basic Time Series) is a benchmark library and toolkit designed for time series forecasting. It now supports a wide range of tasks and datasets, including spatial-temporal forecasting and long-term time series forecasting. It covers various types of algorithms such as statistical models, machine learning models, and deep learning models, making it an ideal tool for developing and evaluating time series forecasting models.

If you find this project helpful, please don't forget to give it a ⭐ Star to show your support. Thank you!

On one hand, BasicTS provides a unified and standardized pipeline, offering a fair and comprehensive platform for reproducing and comparing popular models.

On the other hand, BasicTS offers a user-friendly and easily extensible interface, enabling quick design and evaluation of new models. Users can simply define their model structure and easily perform basic operations.

You can find detailed tutorials in Getting Started. Additionally, we are collecting ToDo and HowTo items. If you need more features (e.g., additional datasets or benchmark models) or tutorials, feel free to open an issue or leave a comment here.

Important

If you find this repository helpful for your work, please consider citing the following benchmarking paper:

@article{shao2024exploring,
 title={Exploring progress in multivariate time series forecasting: Comprehensive benchmarking and heterogeneity analysis},
 author={Shao, Zezhi and Wang, Fei and Xu, Yongjun and Wei, Wei and Yu, Chengqing and Zhang, Zhao and Yao, Di and Sun, Tao and Jin, Guangyin and Cao, Xin and others},
 journal={IEEE Transactions on Knowledge and Data Engineering},
 year={2024},
 publisher={IEEE}
}

🔥🔥🔥 The paper has been accepted by IEEE TKDE! You can check it out here. 🔥🔥🔥

✨ Highlighted Features

Fair Performance Review

Users can compare the performance of different models on arbitrary datasets fairly and exhaustively based on a unified and comprehensive pipeline.

Developing with BasicTS

Minimum Code Users only need to implement key codes such as model architecture and data pre/post-processing to build their own deep learning projects.
Everything Based on Config Users can control all the details of the pipeline through a config file, such as the hyperparameter of dataloaders, optimization, and other tricks (*e.g.*, curriculum learning).
Support All Devices BasicTS supports CPU, GPU and GPU distributed training (both single node multiple GPUs and multiple nodes) thanks to using EasyTorch as the backend. Users can use it by setting parameters without modifying any code.
Save Training Log Support `logging` log system and `Tensorboard`, and encapsulate it as a unified interface, users can save customized training logs by calling simple interfaces.

🚀 Installation and Quick Start

For detailed instructions, please refer to the Getting Started tutorial.

📦 Supported Baselines

BasicTS implements a wealth of models, including classic models, spatial-temporal forecasting models, and long-term time series forecasting model:

You can find the implementation of these models in the baselines directory.

The code links (💻Code) in the table below point to the official implementations from these papers. Many thanks to the authors for open-sourcing their work!

Spatial-Temporal Forecasting

📊Baseline 📝Title 📄Paper 💻Code 🏛Venue 🎯Task
BigST Linear Complexity Spatio-Temporal Graph Neural Network for Traffic Forecasting on Large-Scale Road Networks Link Link VLDB'24 STF
STDMAE Spatio-Temporal-Decoupled Masked Pre-training for Traffic Forecasting Link Link IJCAI'24 STF
STWave When Spatio-Temporal Meet Wavelets: Disentangled Traffic Forecasting via Efficient Spectral Graph Attention Networks Link Link ICDE'23 STF
STAEformer Spatio-Temporal Adaptive Embedding Makes Vanilla Transformer SOTA for Traffic Forecasting Link Link CIKM'23 STF
MegaCRN Spatio-Temporal Meta-Graph Learning for Traffic Forecasting Link Link AAAI'23 STF
DGCRN Dynamic Graph Convolutional Recurrent Network for Traffic Prediction: Benchmark and Solution Link Link ACM TKDD'23 STF
STID Spatial-Temporal Identity: A Simple yet Effective Baseline for Multivariate Time Series Forecasting Link Link CIKM'22 STF
STEP Pretraining Enhanced Spatial-temporal Graph Neural Network for Multivariate Time Series Forecasting Link Link SIGKDD'22 STF
D2STGNN Decoupled Dynamic Spatial-Temporal Graph Neural Network for Traffic Forecasting Link Link VLDB'22 STF
STNorm Spatial and Temporal Normalization for Multi-variate Time Series Forecasting Link Link SIGKDD'21 STF
STGODE Spatial-Temporal Graph ODE Networks for Traffic Flow Forecasting Link Link SIGKDD'21 STF
GTS Discrete Graph Structure Learning for Forecasting Multiple Time Series Link Link ICLR'21 STF
StemGNN Spectral Temporal Graph Neural Network for Multivariate Time-series Forecasting Link Link NeurIPS'20 STF
MTGNN Connecting the Dots: Multivariate Time Series Forecasting with Graph Neural Networks Link Link SIGKDD'20 STF
AGCRN Adaptive Graph Convolutional Recurrent Network for Traffic Forecasting Link Link NeurIPS'20 STF
GWNet Graph WaveNet for Deep Spatial-Temporal Graph Modeling Link Link IJCAI'19 STF
STGCN Spatio-Temporal Graph Convolutional Networks: A Deep Learning Framework for Traffic Forecasting Link Link IJCAI'18 STF
DCRNN Diffusion Convolutional Recurrent Neural Network: Data-Driven Traffic Forecasting Link Link1, Link2 ICLR'18 STF

Long-Term Time Series Forecasting

📊Baseline 📝Title 📄Paper 💻Code 🏛Venue 🎯Task
CATS Are Self-Attentions Effective for Time Series Forecasting? Link Link NeurIPS'24 LTSF
Sumba Structured Matrix Basis for Multivariate Time Series Forecasting with Interpretable Dynamics Link Link NeurIPS'24 LTSF
GLAFF Rethinking the Power of Timestamps for Robust Time Series Forecasting: A Global-Local Fusion Perspective Link Link NeurIPS'24 LTSF
CycleNet CycleNet: Enhancing Time Series Forecasting through Modeling Periodic Patterns Forecasting Link Link NeurIPS'24 LTSF
Fredformer Fredformer: Frequency Debiased Transformer for Time Series Forecasting Link Link KDD'24 LTSF
UMixer An Unet-Mixer Architecture with Stationarity Correction for Time Series Forecasting Link Link AAAI'24 LTSF
TimeMixer Decomposable Multiscale Mixing for Time Series Forecasting Link Link ICLR'24 LTSF
Time-LLM Time-LLM: Time Series Forecasting by Reprogramming Large Language Models Link Link ICLR'24 LTSF
SparseTSF Modeling LTSF with 1k Parameters Link Link ICML'24 LTSF
iTrainsformer Inverted Transformers Are Effective for Time Series Forecasting Link Link ICLR'24 LTSF
Koopa Learning Non-stationary Time Series Dynamics with Koopman Predictors Link Link NeurIPS'24 LTSF
CrossGNN CrossGNN: Confronting Noisy Multivariate Time Series Via Cross Interaction Refinement Link Link NeurIPS'23 LTSF
NLinear Are Transformers Effective for Time Series Forecasting? Link Link AAAI'23 LTSF
Crossformer Transformer Utilizing Cross-Dimension Dependency for Multivariate Time Series Forecasting Link Link ICLR'23 LTSF
DLinear Are Transformers Effective for Time Series Forecasting? Link Link AAAI'23 LTSF
DSformer A Double Sampling Transformer for Multivariate Time Series Long-term Prediction Link Link CIKM'23 LTSF
SegRNN Segment Recurrent Neural Network for Long-Term Time Series Forecasting Link Link arXiv LTSF
MTS-Mixers Multivariate Time Series Forecasting via Factorized Temporal and Channel Mixing Link Link arXiv LTSF
LightTS Fast Multivariate Time Series Forecasting with Light Sampling-oriented MLP Link Link arXiv LTSF
ETSformer Exponential Smoothing Transformers for Time-series Forecasting Link Link arXiv LTSF
NHiTS Neural Hierarchical Interpolation for Time Series Forecasting Link Link AAAI'23 LTSF
PatchTST A Time Series is Worth 64 Words: Long-term Forecasting with Transformers Link Link ICLR'23 LTSF
TiDE Long-term Forecasting with TiDE: Time-series Dense Encoder Link Link TMLR'23 LTSF
TimesNet Temporal 2D-Variation Modeling for General Time Series Analysis Link Link ICLR'23 LTSF
Triformer Triangular, Variable-Specific Attentions for Long Sequence Multivariate Time Series Forecasting Link Link IJCAI'22 LTSF
NSformer Exploring the Stationarity in Time Series Forecasting Link Link NeurIPS'22 LTSF
FiLM Frequency improved Legendre Memory Model for LTSF Link Link NeurIPS'22 LTSF
FEDformer Frequency Enhanced Decomposed Transformer for Long-term Series Forecasting Link Link ICML'22 LTSF
Pyraformer Low complexity pyramidal Attention For Long-range Time Series Modeling and Forecasting Link Link ICLR'22 LTSF
HI Historical Inertia: A Powerful Baseline for Long Sequence Time-series Forecasting Link None CIKM'21 LTSF
Autoformer Decomposition Transformers with Auto-Correlation for Long-Term Series Forecasting Link Link NeurIPS'21 LTSF
Informer Beyond Efficient Transformer for Long Sequence Time-Series Forecasting Link Link AAAI'21 LTSF

Others

📊Baseline 📝Title 📄Paper 💻Code 🏛Venue 🎯Task
LightGBM LightGBM: A Highly Efficient Gradient Boosting Decision Tree Link Link NeurIPS'17 Machine Learning
NBeats Neural basis expansion analysis for interpretable time series forecasting Link Link1, Link2 ICLR'19 Deep Time Series Forecasting
DeepAR Probabilistic Forecasting with Autoregressive Recurrent Networks Link Link1, Link2, Link3 Int. J. Forecast'20 Probabilistic Time Series Forecasting
WaveNet WaveNet: A Generative Model for Raw Audio. Link Link 1, Link 2 arXiv Audio

📦 Supported Datasets

BasicTS support a variety of datasets, including spatial-temporal forecasting, long-term time series forecasting, and large-scale datasets.

Spatial-Temporal Forecasting

🏷️Name 🌐Domain 📏Length 📊Time Series Count 🔄Graph ⏱️Freq. (m) 🎯Task
METR-LA Traffic Speed 34272 207 True 5 STF
PEMS-BAY Traffic Speed 52116 325 True 5 STF
PEMS03 Traffic Flow 26208 358 True 5 STF
PEMS04 Traffic Flow 16992 307 True 5 STF
PEMS07 Traffic Flow 28224 883 True 5 STF
PEMS08 Traffic Flow 17856 170 True 5 STF

Long-Term Time Series Forecasting

🏷️Name 🌐Domain 📏Length 📊Time Series Count 🔄Graph ⏱️Freq. (m) 🎯Task
BeijingAirQuality Beijing Air Quality 36000 7 False 60 LTSF
ETTh1 Electricity Transformer Temperature 14400 7 False 60 LTSF
ETTh2 Electricity Transformer Temperature 14400 7 False 60 LTSF
ETTm1 Electricity Transformer Temperature 57600 7 False 15 LTSF
ETTm2 Electricity Transformer Temperature 57600 7 False 15 LTSF
Electricity Electricity Consumption 26304 321 False 60 LTSF
ExchangeRate Exchange Rate 7588 8 False 1440 LTSF
Illness Ilness Data 966 7 False 10080 LTSF
Traffic Road Occupancy Rates 17544 862 False 60 LTSF
Weather Weather 52696 21 False 10 LTSF

Large Scale Dataset

🏷️Name 🌐Domain 📏Length 📊Time Series Count 🔄Graph ⏱️Freq. (m) 🎯Task
CA Traffic Flow 35040 8600 True 15 Large Scale
GBA Traffic Flow 35040 2352 True 15 Large Scale
GLA Traffic Flow 35040 3834 True 15 Large Scale
SD Traffic Flow 35040 716 True 15 Large Scale

📉 Main Results

See the paper Exploring Progress in Multivariate Time Series Forecasting: Comprehensive Benchmarking and Heterogeneity Analysis.

✨ Contributors

Thanks goes to these wonderful people (emoji key):

S22
S22

🚧 💻 🐛
finleywang
finleywang

🧑‍🏫
blisky-li
blisky-li

💻
LMissher
LMissher

💻 🐛
CNStark
CNStark

🚇
Azusa
Azusa

🐛
Yannick Wölker
Yannick Wölker

🐛
hlhang9527
hlhang9527

🐛
Chengqing Yu
Chengqing Yu

💻
Reborn14
Reborn14

📖 💻
TensorPulse
TensorPulse

🐛
superarthurlx
superarthurlx

💻 🐛
Yisong Fu
Yisong Fu

💻
Xubin
Xubin

📖
DU YIFAN
DU YIFAN

💻

This project follows the all-contributors specification. Contributions of any kind welcome!

⭐ Star History

Star History Chart

🔗 Acknowledgement

BasicTS is developed based on EasyTorch, an easy-to-use and powerful open-source neural network training framework.

📧 Contact

We invite you to join our official community to access comprehensive technical support.

Official Discord Server: Click here to join our Discord community

Official WeChat Group:

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An adaptation of the BasicTS framework for my thesis "Prediction of road congestion levels in urban environments with Graph Neural Networks"

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