Hashed Lookup Table based Matrix Multiplication (halutmatmul) - Stella Nera accelerator
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Updated
Dec 10, 2023 - Python
Hashed Lookup Table based Matrix Multiplication (halutmatmul) - Stella Nera accelerator
A Python package for approximate Bayesian inference and optimization using Gaussian processes
Implementations of the ICML 2017 paper (with Yarin Gal)
Input Inference for Control (i2c), a control-as-inference framework for optimal control
PyTorch implementation for "Probabilistic Circuits for Variational Inference in Discrete Graphical Models", NeurIPS 2020
Bayesian optimisation for fast approximate inference in state-space models with intractable likelihoods
An implementation of loopy belief propagation for binary image denoising. Both sequential and parallel updates are implemented.
Empirical analysis of recent stochastic gradient methods for approximate inference in Bayesian deep learning, including SWA-Gaussian, MultiSWAG, and deep ensembles. See report_localglobal.pdf.
Simulation-based inference using SSNL
Expectation Maximisation, Variational Bayes, ARD, Loopy Belief Propagation, Gaussian Process Regression
Implementation of Prior, Rejection, Likelihood and Gibbs Sampling
Code repository for the UAI 2020 paper "Active learning of conditional mean embeddings via Bayesian optimisation" by S. R. Chowdhury, R. Oliveira and F. Ramos.
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