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Edward is a Python library for probabilistic modeling,
inference, and criticism. It is a testbed for fast experimentation and research
with probabilistic models, ranging from classical hierarchical models on small
data sets to complex deep probabilistic models on large data sets. Edward fuses
three fields: Bayesian statistics and machine learning, deep learning, and
probabilistic programming.
It supports modeling with
Directed graphical models
Neural networks (via libraries such as
tf.layers
and
Keras)
Implicit generative models
Bayesian nonparametrics and probabilistic programs
It supports inference with
Variational inference
Black box variational inference
Stochastic variational inference
Generative adversarial networks
Maximum a posteriori estimation
Monte Carlo
Gibbs sampling
Hamiltonian Monte Carlo
Stochastic gradient Langevin dynamics
Compositions of inference
Expectation-Maximization
Pseudo-marginal and ABC methods
Message passing algorithms
It supports criticism of the model and inference with
Point-based evaluations
Posterior predictive checks
Edward is built on top of TensorFlow.
It enables features such as computational graphs, distributed
training, CPU/GPU integration, automatic differentiation, and
visualization with TensorBoard.