Easy to use distributions, bijections and normalizing flows in JAX.
Project description
FlowJax: Distributions and Normalizing Flows in Jax
Documentation
Available here.
Short example
Training a flow can be done in a few lines of code:
from flowjax.flows import block_neural_autoregressive_flow
from flowjax.train import fit_to_data
from flowjax.distributions import Normal
from jax import random
import jax.numpy as jnp
data_key, flow_key, train_key = random.split(random.PRNGKey(0), 3)
x = random.uniform(data_key, (10000, 3)) # Toy data
base_dist = Normal(jnp.zeros(x.shape[1]))
flow = block_neural_autoregressive_flow(flow_key, base_dist=base_dist)
flow, losses = fit_to_data(
key=train_key,
dist=flow,
x=x,
learning_rate=1e-2,
)
# We can now evaluate the log-probability of arbitrary points
flow.log_prob(x)
The package currently includes:
- Many simple bijections and distributions, implemented as Equinox modules.
coupling_flow
(Dinh et al., 2017) andmasked_autoregressive_flow
(Kingma et al., 2016, Papamakarios et al., 2017) normalizing flow architectures.- These can be used with arbitrary bijections as transformers, such as
Affine
orRationalQuadraticSpline
(the latter used in neural spline flows; Durkan et al., 2019).
- These can be used with arbitrary bijections as transformers, such as
block_neural_autoregressive_flow
, as introduced by De Cao et al., 2019planar_flow
, as introduced by Rezende and Mohamed, 2015.triangular_spline_flow
, introduced here.- Training scripts for fitting by maximum likelihood, variational inference, or using contrastive learning for sequential neural posterior estimation (Greenberg et al., 2019; Durkan et al., 2020)
Installation
pip install flowjax
Development
We can install a version for development as follows
git clone https://github.com/danielward27/flowjax.git
cd flowjax
pip install -e .[dev]
sudo apt-get install pandoc # Required for building documentation
Warning
This package is in its early stages of development and may undergo significant changes, including breaking changes, between major releases. Whilst ideally we should be on version 0.y.z to indicate its state, we have already progressed beyond that stage.
TODO
A few limitations / things that could be worth including in the future:
- Add ability to "reshape" bijections.
Related
We make use of the Equinox package, which facilitates defining models using a PyTorch-like syntax with Jax.
Authors
flowjax
was written by Daniel Ward <danielward27@outlook.com>
.
Project details
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