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DoWhy is a Python library for causal inference that supports explicit modeling and testing of causal assumptions. DoWhy is based on a unified language for causal inference, combining causal graphical models and potential outcomes frameworks.
A probabilistic programming library for Bayesian deep learning, generative models, based on Tensorflow
DGMs for NLP. A roadmap.
Auton Survival - an open source package for Regression, Counterfactual Estimation, Evaluation and Phenotyping with Censored Time-to-Events
Sum Product Flow: An Easy and Extensible Library for Sum-Product Networks
Scikit-learn compatible estimation of general graphical models
Robopy is a python port for Robotics Toolbox in Matlab created by Peter Corke
Graphical language server platform for building web-based diagram editors
Scalable inference for a generative model of astronomical images
Input Output Hidden Markov Model (IOHMM) in Python
Overview and implementation of Belief Propagation and Loopy Belief Propagation algorithms: sum-product, max-product, max-sum
Graphical modeling and code generation tool based on UML state machines
Factored inference for discrete-continuous smoothing and mapping.
pathpy is an OpenSource python package for the modeling and analysis of pathways and temporal networks using higher-order and multi-order graphical models
Kalman Variational Auto-Encoder
A toolbox for differentially private data generation
Deep Markov Models
A Java Toolbox for Scalable Probabilistic Machine Learning
A Python 3 package for learning Bayesian Networks (DAGs) from data. Official implementation of the paper "DAGMA: Learning DAGs via M-matrices and a Log-Determinant Acyclicity Characterization"
Repository for the OpenMx Structural Equation Modeling package