Used to instantiate a Keras tensor.
tf.keras.Input(
shape=None,
batch_size=None,
dtype=None,
sparse=None,
batch_shape=None,
name=None,
tensor=None
)
Used in the notebooks
Used in the guide |
Used in the tutorials |
|
|
A Keras tensor is a symbolic tensor-like object, which we augment with
certain attributes that allow us to build a Keras model just by knowing the
inputs and outputs of the model.
For instance, if a
, b
and c
are Keras tensors,
it becomes possible to do:
model = Model(input=[a, b], output=c)
Args |
shape
|
A shape tuple (tuple of integers or None objects),
not including the batch size.
For instance, shape=(32,) indicates that the expected input
will be batches of 32-dimensional vectors. Elements of this tuple
can be None ; None elements represent dimensions where the shape
is not known and may vary (e.g. sequence length).
|
batch_size
|
Optional static batch size (integer).
|
dtype
|
The data type expected by the input, as a string
(e.g. "float32" , "int32" ...)
|
sparse
|
A boolean specifying whether the expected input will be sparse
tensors. Note that, if sparse is False , sparse tensors can still
be passed into the input - they will be densified with a default
value of 0. This feature is only supported with the TensorFlow
backend. Defaults to False .
|
name
|
Optional name string for the layer.
Should be unique in a model (do not reuse the same name twice).
It will be autogenerated if it isn't provided.
|
tensor
|
Optional existing tensor to wrap into the Input layer.
If set, the layer will use this tensor rather
than creating a new placeholder tensor.
|
Example:
# This is a logistic regression in Keras
x = Input(shape=(32,))
y = Dense(16, activation='softmax')(x)
model = Model(x, y)