Implements the TF backend ops for a PC auto-batching VM.
tfp.experimental.auto_batching.TensorFlowBackend(
safety_checks=True,
while_parallel_iterations=10,
while_maximum_iterations=None,
basic_block_xla_device=None
)
Attributes |
variable_class
|
|
Methods
any
View source
any(
t, name=None
)
assert_matching_dtype
View source
assert_matching_dtype(
expected_dtype, value, message=''
)
Asserts that the dtype of value
matches expected_dtype
.
Args |
expected_dtype
|
A numpy dtype
|
value
|
Tensor or convertible.
|
message
|
Optional diagnostic message.
|
Raises |
ValueError
|
If dtype does not match.
|
batch_size
View source
batch_size(
value, name=None
)
Returns the first (batch) dimension of value
.
broadcast_to_shape_of
View source
broadcast_to_shape_of(
val, target, name=None
)
Broadcasts val to the shape of target.
Attempts to match the dtype of broadcast_val
to the dtype of target
, if
val
is not a Tensor
and target
has a dtype.
Args |
val
|
The value to be broadcast. Must be broadcast-compatible with
target .
|
target
|
Tensor whose shape we will broadcast val to match.
|
name
|
Optional name for the op.
|
Returns |
broadcast_val
|
A Tensor with shape matching val + target . Provided
that val 's dimension sizes are all smaller or equal to target 's, the
returned value will be the shape of target .
|
cond
View source
cond(
pred, true_fn, false_fn, name=None
)
Implements a conditional operation for the backend.
Args |
pred
|
A boolean scalar Tensor indicating the condition.
|
true_fn
|
A callable accepting and returning nests of Tensor s having
the same structure as state , to be executed when pred is True.
|
false_fn
|
A callable accepting and returning nests of Tensor s having
the same structure as state , to be executed when pred is False.
|
name
|
Optional name for the op.
|
Returns |
state
|
Output state, matching nest structure of input argument state .
|
create_variable
View source
create_variable(
name, alloc, type_, max_stack_depth, batch_size
)
Returns an intialized Variable.
Args |
name
|
Name for the variable.
|
alloc
|
VariableAllocation for the variable.
|
type_
|
instructions.TensorType describing the sub-batch shape and dtype
of the variable being created.
|
max_stack_depth
|
Scalar int Tensor , the maximum stack depth allocated.
|
batch_size
|
Scalar int Tensor , the number of parallel threads being
executed.
|
Returns |
var
|
A new, initialized Variable object.
|
equal
View source
equal(
t1, t2, name=None
)
Implements equality comparison for TF backend.
fill
View source
fill(
value, size, dtype, shape, name=None
)
Fill a fresh batched Tensor of the given shape and dtype with value
.
Args |
value
|
Scalar to fill with.
|
size
|
Scalar int Tensor specifying the number of VM threads.
|
dtype
|
tf.DType of the zeros to be returned.
|
shape
|
Rank 1 int Tensor , the per-thread value shape.
|
name
|
Optional name for the op.
|
Returns |
result
|
Tensor of dtype value s with shape [size, *shape]
|
full_mask
View source
full_mask(
size, name=None
)
Returns an all-True mask Tensor
with shape [size]
.
merge_dtypes
View source
merge_dtypes(
dt1, dt2
)
Merges two dtypes, returning a compatible dtype.
In practice, TF implementation asserts that the two dtypes are identical.
Args |
dt1
|
A numpy dtype, or None.
|
dt2
|
A numpy dtype, or None.
|
Returns |
dtype
|
The common numpy dtype.
|
Raises |
ValueError
|
If dt1 and dt2 are not equal and both are non-None .
|
merge_shapes
View source
merge_shapes(
s1, s2
)
Merges two shapes, returning a broadcasted shape.
Args |
s1
|
A list of Python int or None.
|
s2
|
A list of Python int or None.
|
Returns |
shape
|
A list of Python int or None.
|
Raises |
ValueError
|
If s1 and s2 are not broadcast compatible.
|
not_equal
View source
not_equal(
t1, t2, name=None
)
Implements inequality comparison for TF backend.
prepare_for_cond
View source
prepare_for_cond(
state
)
Backend hook for preparing Tensors for cond
.
The TensorFlow backend uses this hook to apply tf.convert_to_tensor
before
entering the cond tree generated by virtual_machine._staged_apply
. One
could do this inside cond
, but when this API element was defined there
seemed to be a performance reason (for Eager mode) to do it once per cond
tree rather than once per cond.
Args |
state
|
A state to be prepared for use in conditionals.
|
Returns |
state
|
The prepared state.
|
reduce_min
View source
reduce_min(
t, name=None
)
Implements reduce_min for TF backend.
run_on_dummies
View source
run_on_dummies(
primitive_callable, input_types
)
Runs the given primitive_callable
with dummy input.
This is useful for examining the outputs for the purpose of type inference.
Args |
primitive_callable
|
A python callable.
|
input_types
|
list of instructions.Type type of each argument to the
callable. Note that the contained TensorType objects must match the
dimensions with which the primitive is to be invoked at runtime, even
though type inference conventionally does not store the batch dimension
in the TensorType s.
|
Returns |
outputs
|
pattern of backend-specific objects whose types may be
analyzed by the caller with type_of .
|
static_value
View source
static_value(
t
)
Gets the eager/immediate value of t
, or None
if t
is a Tensor.
switch_case
View source
switch_case(
branch_selector, branch_callables, name=None
)
Implements a switch (branch_selector) { case ... } construct.
type_of
View source
type_of(
t, dtype_hint=None
)
Returns the instructions.Type
of t
.
Args |
t
|
tf.Tensor or a Python or numpy constant.
|
dtype_hint
|
dtype to prefer, if t is a constant.
|
where
View source
where(
condition, x, y, name=None
)
Implements a where selector for the TF backend.
Attempts to match the dtypes of the value operands, if they are not yet both
Tensor
s.
Args |
condition
|
A boolean Tensor , either a vector having length
(x + y).shape[0] or matching the full shape of x + y .
|
x
|
Tensor of values to take when condition is True . Shape must match
that of y .
|
y
|
Tensor of values to take when condition is False . Shape must
match that of x .
|
name
|
Optional name for the op.
|
Returns |
masked
|
A broadcast-shaped Tensor where elements corresponding to True
values of condition come from x , and others come from y .
|
while_loop
View source
while_loop(
cond, body, loop_vars, name=None
)
Implements while loops for TF backend.
wrap_straightline_callable
View source
wrap_straightline_callable(
f
)
Method exists solely to be stubbed, i.e. for defun + XLA compile.