sbi is a Python package for simulation-based inference, designed to meet the needs of both researchers and practitioners. Whether you need fine-grained control or an easy-to-use interface, sbi has you covered.
- Updated
Jun 2, 2025 - Python
sbi is a Python package for simulation-based inference, designed to meet the needs of both researchers and practitioners. Whether you need fine-grained control or an easy-to-use interface, sbi has you covered.
python Parameter EStimation TOolbox
Probabilistic Inference on Noisy Time Series
A library for using direct collocation in the optimization of dynamic systems.
Framework for dynamical system identification of floating-base rigid body tree structures
FMI-compliant Model Estimation in Python
Create Your Own Metropolis-Hastings Markov Chain Monte Carlo Algorithm for Bayesian Inference (With Python)
X-PSI: X-ray Pulse Simulation and Inference
A python-package for handling well based field campaigns.
A Python Framework for Modeling and Analysis of Signaling Systems
A collection of mathematical models with experimental data in the PEtab format as benchmark problems in order to evaluate new and existing methodologies for data-based modelling
Black-box Bayesian inference for agent-based models
Induction motor parameter estimation tool
Learning simulation parameters from experimental data, from the micro to the macro, from laptops to clusters.
This is a disciplined Python implementation of the Recursive Least Squares Method
Loop like a pro, make parameter studies fun.
A python package for Bayesian inference of gravitational-wave data
A simulation-based Inference (SBI) library designed to perform analysis on a wide class of gravitational wave signals
Python package for working with PEtab files
Parameter estimation for complex physical problems often suffers from finding ‘solutions’ that are not physically realistic. The PEUQSE software provides tools for finding physically realistic parameter estimates, graphs of the parameter estimate positions within parameter space, and plots of the final simulation results.
Add a description, image, and links to the parameter-estimation topic page so that developers can more easily learn about it.
To associate your repository with the parameter-estimation topic, visit your repo's landing page and select "manage topics."