JaxLayer
classkeras.layers.JaxLayer(
call_fn, init_fn=None, params=None, state=None, seed=None, **kwargs
)
Keras Layer that wraps a JAX model.
This layer enables the use of JAX components within Keras when using JAX as the backend for Keras.
This layer accepts JAX models in the form of a function, call_fn
, which
must take the following arguments with these exact names:
params
: trainable parameters of the model.state
(optional): non-trainable state of the model. Can be omitted if
the model has no non-trainable state.rng
(optional): a jax.random.PRNGKey
instance. Can be omitted if the
model does not need RNGs, neither during training nor during inference.inputs
: inputs to the model, a JAX array or a PyTree
of arrays.training
(optional): an argument specifying if we're in training mode
or inference mode, True
is passed in training mode. Can be omitted if
the model behaves the same in training mode and inference mode.The inputs
argument is mandatory. Inputs to the model must be provided via
a single argument. If the JAX model takes multiple inputs as separate
arguments, they must be combined into a single structure, for instance in a
tuple
or a dict
.
The initialization of the params
and state
of the model can be handled
by this layer, in which case the init_fn
argument must be provided. This
allows the model to be initialized dynamically with the right shape.
Alternatively, and if the shape is known, the params
argument and
optionally the state
argument can be used to create an already initialized
model.
The init_fn
function, if provided, must take the following arguments with
these exact names:
rng
: a jax.random.PRNGKey
instance.inputs
: a JAX array or a PyTree
of arrays with placeholder values to
provide the shape of the inputs.training
(optional): an argument specifying if we're in training mode
or inference mode. True
is always passed to init_fn
. Can be omitted
regardless of whether call_fn
has a training
argument.For JAX models that have non-trainable state:
call_fn
must have a state
argumentcall_fn
must return a tuple
containing the outputs of the model and
the new non-trainable state of the modelinit_fn
must return a tuple
containing the initial trainable params of
the model and the initial non-trainable state of the model.This code shows a possible combination of call_fn
and init_fn
signatures
for a model with non-trainable state. In this example, the model has a
training
argument and an rng
argument in call_fn
.
def stateful_call(params, state, rng, inputs, training):
outputs = ...
new_state = ...
return outputs, new_state
def stateful_init(rng, inputs):
initial_params = ...
initial_state = ...
return initial_params, initial_state
For JAX models with no non-trainable state:
call_fn
must not have a state
argumentcall_fn
must return only the outputs of the modelinit_fn
must return only the initial trainable params of the model.This code shows a possible combination of call_fn
and init_fn
signatures
for a model without non-trainable state. In this example, the model does not
have a training
argument and does not have an rng
argument in call_fn
.
def stateless_call(params, inputs):
outputs = ...
return outputs
def stateless_init(rng, inputs):
initial_params = ...
return initial_params
If a model has a different signature than the one required by JaxLayer
,
one can easily write a wrapper method to adapt the arguments. This example
shows a model that has multiple inputs as separate arguments, expects
multiple RNGs in a dict
, and has a deterministic
argument with the
opposite meaning of training
. To conform, the inputs are combined in a
single structure using a tuple
, the RNG is split and used the populate the
expected dict
, and the Boolean flag is negated:
def my_model_fn(params, rngs, input1, input2, deterministic):
...
if not deterministic:
dropout_rng = rngs["dropout"]
keep = jax.random.bernoulli(dropout_rng, dropout_rate, x.shape)
x = jax.numpy.where(keep, x / dropout_rate, 0)
...
...
return outputs
def my_model_wrapper_fn(params, rng, inputs, training):
input1, input2 = inputs
rng1, rng2 = jax.random.split(rng)
rngs = {"dropout": rng1, "preprocessing": rng2}
deterministic = not training
return my_model_fn(params, rngs, input1, input2, deterministic)
keras_layer = JaxLayer(my_model_wrapper_fn, params=initial_params)
JaxLayer
enables the use of Haiku
components in the form of
haiku.Module
.
This is achieved by transforming the module per the Haiku pattern and then
passing module.apply
in the call_fn
parameter and module.init
in the
init_fn
parameter if needed.
If the model has non-trainable state, it should be transformed with
haiku.transform_with_state
.
If the model has no non-trainable state, it should be transformed with
haiku.transform
.
Additionally, and optionally, if the module does not use RNGs in "apply", it
can be transformed with
haiku.without_apply_rng
.
The following example shows how to create a JaxLayer
from a Haiku module
that uses random number generators via hk.next_rng_key()
and takes a
training positional argument:
class MyHaikuModule(hk.Module):
def __call__(self, x, training):
x = hk.Conv2D(32, (3, 3))(x)
x = jax.nn.relu(x)
x = hk.AvgPool((1, 2, 2, 1), (1, 2, 2, 1), "VALID")(x)
x = hk.Flatten()(x)
x = hk.Linear(200)(x)
if training:
x = hk.dropout(rng=hk.next_rng_key(), rate=0.3, x=x)
x = jax.nn.relu(x)
x = hk.Linear(10)(x)
x = jax.nn.softmax(x)
return x
def my_haiku_module_fn(inputs, training):
module = MyHaikuModule()
return module(inputs, training)
transformed_module = hk.transform(my_haiku_module_fn)
keras_layer = JaxLayer(
call_fn=transformed_module.apply,
init_fn=transformed_module.init,
)
Arguments
None
, then params
and/or state
must be provided.PyTree
containing all the model trainable parameters. This
allows passing trained parameters or controlling the initialization.
If both params
and state
are None
, init_fn
is called at
build time to initialize the trainable parameters of the model.PyTree
containing all the model non-trainable state. This
allows passing learned state or controlling the initialization. If
both params
and state
are None
, and call_fn
takes a state
argument, then init_fn
is called at build time to initialize the
non-trainable state of the model.