This repository contains code for a series of research projects about Machine Intelligence on Sequence Data.
- 2023.12.11 ContiFormer: Continuous-Time Transformer for Irregular Time Series Modeling is now available in ContiFormer.
- 2023.4.17 Learning Decomposed Spatial Relations for Multi-Variate Time-Series Modeling is now available in SRD.
- 2023.4.8 SIMPLE: Specialized Model-Sample Matching for Domain Generalization is now available in SIMPLE.
- 2023.4.8 Towards Inference Efficient Deep Ensemble Learning is now available in IRENE.
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