Dinf is discriminator-based inference for population genetics.
It uses a neural network to discriminate between a target dataset
and a simulated dataset.
Inference is done by finding simulation parameters that produce
data closely matching the target dataset.
Dinf provides a Python API for creating simulation models,
and a CLI for discriminator training and inference.
Dinf is discriminator-based inference for population genetics. It uses a neural network to discriminate between a target dataset and a simulated dataset. Inference is done by finding simulation parameters that produce data closely matching the target dataset. Dinf provides a Python API for creating simulation models, and a CLI for discriminator training and inference.
See the documentation for details. https://racimolab.github.io/dinf/