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Second Order Optimization and Curvature Estimation with K-FAC in JAX.

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KFAC-JAX - Second Order Optimization with Approximate Curvature in JAX

Installation | Quickstart | Documentation | Examples | Citing KFAC-JAX

CI status docs pypi

KFAC-JAX is a library built on top of JAX for second-order optimization of neural networks and for computing scalable curvature approximations. The main goal of the library is to provide researchers with an easy-to-use implementation of the K-FAC optimizer and curvature estimator.

Installation

KFAC-JAX is written in pure Python, but depends on C++ code via JAX.

First, follow these instructions to install JAX with the relevant accelerator support.

Then, install KFAC-JAX using pip:

$ pip install git+https://github.com/google-deepmind/kfac-jax

Alternatively, you can install via PyPI:

$ pip install -U kfac-jax

Our examples rely on additional libraries, all of which you can install using:

$ pip install kfac-jax[examples]

Quickstart

Let's take a look at a simple example of training a neural network, defined using Haiku, with the K-FAC optimizer:

import haiku as hk
import jax
import jax.numpy as jnp
import kfac_jax

# Hyper parameters
NUM_CLASSES = 10
L2_REG = 1e-3
NUM_BATCHES = 100


def make_dataset_iterator(batch_size):
  # Dummy dataset, in practice this should be your dataset pipeline
  for _ in range(NUM_BATCHES):
    yield jnp.zeros([batch_size, 100]), jnp.ones([batch_size], dtype="int32")


def softmax_cross_entropy(logits: jnp.ndarray, targets: jnp.ndarray):
  """Softmax cross entropy loss."""
  # We assume integer labels
  assert logits.ndim == targets.ndim + 1

  # Tell KFAC-JAX this model represents a classifier
  # See https://kfac-jax.readthedocs.io/en/latest/overview.html#supported-losses
  kfac_jax.register_softmax_cross_entropy_loss(logits, targets)
  log_p = jax.nn.log_softmax(logits, axis=-1)
  return - jax.vmap(lambda x, y: x[y])(log_p, targets)


def model_fn(x):
  """A Haiku MLP model function - three hidden layer network with tanh."""
  return hk.nets.MLP(
    output_sizes=(50, 50, 50, NUM_CLASSES),
    with_bias=True,
    activation=jax.nn.tanh,
  )(x)


# The Haiku transformed model
hk_model = hk.without_apply_rng(hk.transform(model_fn))


def loss_fn(model_params, model_batch):
  """The loss function to optimize."""
  x, y = model_batch
  logits = hk_model.apply(model_params, x)
  loss = jnp.mean(softmax_cross_entropy(logits, y))

  # The optimizer assumes that the function you provide has already added
  # the L2 regularizer to its gradients.
  return loss + L2_REG * kfac_jax.utils.inner_product(params, params) / 2.0


# Create the optimizer
optimizer = kfac_jax.Optimizer(
  value_and_grad_func=jax.value_and_grad(loss_fn),
  l2_reg=L2_REG,
  value_func_has_aux=False,
  value_func_has_state=False,
  value_func_has_rng=False,
  use_adaptive_learning_rate=True,
  use_adaptive_momentum=True,
  use_adaptive_damping=True,
  initial_damping=1.0,
  multi_device=False,
)

input_dataset = make_dataset_iterator(128)
rng = jax.random.PRNGKey(42)
dummy_images, dummy_labels = next(input_dataset)
rng, key = jax.random.split(rng)
params = hk_model.init(key, dummy_images)
rng, key = jax.random.split(rng)
opt_state = optimizer.init(params, key, (dummy_images, dummy_labels))

# Training loop
for i, batch in enumerate(input_dataset):
  rng, key = jax.random.split(rng)
  params, opt_state, stats = optimizer.step(
      params, opt_state, key, batch=batch, global_step_int=i)
  print(i, stats)

Do not stage (jit or pmap) the optimizer

You should not apply jax.jit or jax.pmap to the call to Optimizer.step. This is already done for you automatically by the optimizer class. To control the staging behaviour of the optimizer set the flag multi_device to True for pmap and to False for jit.

Do not stage (jit or pmap) the loss function

The value_and_grad_func argument provided to the optimizer should compute the loss function value and its gradients. Since the optimizer already stages its step function internally, applying jax.jit to value_and_grad_func is NOT recommended. Importantly, applying jax.pmap is WRONG and most likely will lead to errors.

Registering the model loss function

In order for KFAC-JAX to be able to correctly approximate the curvature matrix of the model it needs to know the precise loss function that you want to optimize. This is done via registration with certain functions provided by the library. For instance, in the example above this is done via the call to kfac_jax.register_softmax_cross_entropy_loss, which tells the optimizer that the loss is the standard softmax cross-entropy. If you don't do this you will get an error when you try to call the optimizer. For all supported loss functions please read the documentation.

Important: The optimizer assumes that the loss is averaged over examples in the minibatch. It is crucial that you follow this convention.

Other model function options

Oftentimes, one will want to output some auxiliary statistics or metrics in addition to the loss value. This can already be done in the value_and_grad_func, in which case we follow the same conventions as JAX and expect the output to be (loss, aux), grads. Similarly, the loss function can take an additional function state (batch norm layers usually have this) or an PRNG key (used in stochastic layers). All of these, however, need to be explicitly told to the optimizer via its arguments value_func_has_aux, value_func_has_state and value_func_has_rng.

Verify optimizer registrations

We strongly encourage the user to pay attention to the logging messages produced by the automatic registration system, in order to ensure that it has correctly understood your model. For the example above this looks like this:

==================================================
Graph parameter registrations:
{'mlp/~/linear_0': {'b': 'Auto[dense_with_bias_3]',
                    'w': 'Auto[dense_with_bias_3]'},
 'mlp/~/linear_1': {'b': 'Auto[dense_with_bias_2]',
                    'w': 'Auto[dense_with_bias_2]'},
 'mlp/~/linear_2': {'b': 'Auto[dense_with_bias_1]',
                    'w': 'Auto[dense_with_bias_1]'},
 'mlp/~/linear_3': {'b': 'Auto[dense_with_bias_0]',
                    'w': 'Auto[dense_with_bias_0]'}}
==================================================

As can be seen from this message, the library has correctly detected all parameters of the model to be part of dense layers.

Further reading

For a high level overview of the optimizer, the different curvature approximations, and the supported layers, please see the documentation.

Citing KFAC-JAX

To cite this repository:

@software{kfac-jax2022github,
  author = {Aleksandar Botev and James Martens},
  title = {{KFAC-JAX}},
  url = {https://github.com/google-deepmind/kfac-jax},
  version = {0.0.2},
  year = {2022},
}

In this bibtex entry, the version number is intended to be from kfac_jax/__init__.py, and the year corresponds to the project's open-source release.