Abstract
We present burbuja (Baring Unseen Regions of Bubbles Using Joint-Density Analysis), an automated software tool for detecting and characterizing gas bubbles and other local voids in molecular structures and trajectories containing explicit aqueous solvent. We describe the burbuja algorithm and demonstrate its accuracy and utility across a range of example systems, including globular proteins, a membrane system, a large viral capsid containing approximately 150 million atoms, and a very large respiratory aerosol system containing approximately 1 billion atoms. Burbuja supports optional GPU acceleration and can be run as a standalone command-line utility or through a Python-based API, facilitating integration with existing community tools for molecular system preparation and analysis. Burbuja is open-source and freely available at https://github.com/Abrahammc90/Burbuja.git.



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