Code Repository for Liquid Time-Constant Networks (LTCs)
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Updated
Jun 3, 2024 - Python
Code Repository for Liquid Time-Constant Networks (LTCs)
A Python package for probabilistic state space modeling with JAX
Liquid Structural State-Space Models
Mambular is a Python package that simplifies tabular deep learning by providing a suite of models for regression, classification, and distributional regression tasks. It includes models such as Mambular, TabM, FT-Transformer, TabulaRNN, TabTransformer, and tabular ResNets.
Bayes-Newton—A Gaussian process library in JAX, with a unifying view of approximate Bayesian inference as variants of Newton's method.
[CVPR'24 Spotlight] The official implementation of "State Space Models for Event Cameras"
[ACM MM'24 Oral] RainMamba: Enhanced Locality Learning with State Space Models for Video Deraining
Recall to Imagine, a model-based RL algorithm with superhuman memory. Oral (1.2%) @ ICLR 2024
Official implementation of our ECCV paper "StretchBEV: Stretching Future Instance Prediction Spatially and Temporally"
[NeurIPS 2024] Official implementation of the paper "MambaLRP: Explaining Selective State Space Sequence Models".
Official repository for Mamba-based Segmentation Model for Speaker Diarization
A toolkit for developing foundation models using Electronic Health Record (EHR) data.
Official Pytorch implementation of NeuralWalker (ICLR 2025)
Official implementation of DenoMamba: A fused state-space model for low-dose CT denoising
[CVPR'25 Highlight] The official implementation of "GG-SSMs: Graph-Generating State Space Models"
Official implementation of MambaRoll: A Physics-Driven Autoregressive State Space Model for Medical Image Reconstruction (https://arxiv.org/abs/2412.09331)
Temporal Neural Networks
Simulates the dynamics of a Reaction Wheel Inverted Pendulum with python.
Gradient-informed particle MCMC methods
Official implementation of the CBF-SSM model
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