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Normalizing Flow models in PyTorch

Project description

flow

This project implements basic Normalizing Flows in PyTorch and provides functionality for defining your own easily, following the conditioner-transformer architecture.

This is specially useful for lower-dimensional flows and for learning purposes. Nevertheless, work is being done on extending its functionalities to also accomodate for higher dimensional flows.

Supports conditioning flows, meaning, learning probability distributions conditioned by a given conditioning tensor. Specially useful for modelling causal mechanisms.

For more information, please look at our Github page.

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