Bayesian inference with probabilistic programming.
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Updated
May 24, 2024 - Julia
Bayesian inference with probabilistic programming.
ProbLog is a Probabilistic Logic Programming Language for logic programs with probabilities.
Code for "Depth Uncertainty in Neural Networks" (https://arxiv.org/abs/2006.08437)
Probabilistic Circuits from the Juice library
Probabilistic programming system for fast and exact symbolic inference
R package for context-specific functionality analysis of metabolic gene clusters
Pure julia implementation of Multiple Affine Invariant Sampling for efficient Approximate Bayesian Computation
Combined Learning from Demonstration and Motion Planning
An official repository for tutorials of Probabilistic Modelling and Reasoning (2023/2024) - a University of Edinburgh master's course.
Implementation of CogSci 2019 paper 'Active physical learning via reinforcement learning'
This repo demonstrates how to build a surrogate (proxy) model by multivariate regressing building energy consumption data (univariate and multivariate) and use (1) Bayesian framework, (2) Pyomo package, (3) Genetic algorithm with local search, and (4) Pymoo package to find optimum design parameters and minimum energy consumption.
Small Variance Asymptotics in Non Parametric Bayesian Clustering
A Benchmarking Suite for Probabilistic Inference Frameworks 📊🔍 Developed at IFIS, University of Lübeck
An official repository for a VAE tutorial of Probabilistic Modelling and Reasoning (2023/2024) - a University of Edinburgh master's course.
Code for the paper Iterated Denoising Energy Matching for Sampling from Boltzmann Densities.
Simultaneous State Estimation and Dynamics Learning from Indirect Observations.
An official repository for a PGM demo of Probabilistic Modelling and Reasoning (2023/2024) - a University of Edinburgh master's course.
Disentangling Sources of Uncertainty for Active Exploration (Reinforcement Learning)
A scalable and accurate probabilistic network configuration analyzer verifying network properties in the face of random failures.
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