Simulation-based Inference with the Python Package sbijax
arXiv stat.ML / 3/23/2026
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Key Points
- sbijax is a Python package that implements a wide variety of neural simulation-based inference methods using an easy-to-use interface.
- It supports conventional approximate Bayesian computation, model diagnostics, and automatic summary-statistics estimation in addition to SBI estimators.
- The package is written entirely in JAX, enabling fast training of neural networks and parallel execution on CPU and GPU.
- Users can quickly construct SBI estimators and visualize posterior distributions with only a few lines of code.
- By combining SBI with JAX-based efficiency, sbijax aims to make Bayesian inference with intractable likelihoods more accessible and scalable.
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