|  View source on GitHub | 
Rewrites computation for execution on a TPU system.
tf.compat.v1.tpu.rewrite(
    computation, inputs=None, infeed_queue=None, device_assignment=None, name=None
)
| Args | |
|---|---|
| computation | A Python function that builds a computation to apply to the
input. If the function takes n inputs, 'inputs' should be a list of n
tensors. 
 All  | 
| inputs | A list of input tensors or None(equivalent to an empty list).
Each input can be a nested structure containing values that are
convertible to tensors. Note that passing an N-dimension list of
compatible values will result in a N-dimension list of scalar tensors
rather than a single Rank-N tensors. If you need different behavior,
convert part of inputs to tensors withtf.convert_to_tensor. | 
| infeed_queue | If not None, theInfeedQueuefrom which to append a tuple
of arguments as inputs tocomputation. | 
| device_assignment | if not None, aDeviceAssignmentdescribing the
mapping between logical cores in the computation with physical cores in
the TPU topology. May be omitted for a single-core computation, in which
case the core attached to task 0, TPU device 0 is used. | 
| name | (Deprecated) Does nothing. | 
| Returns | |
|---|---|
| Same data structure as if computation(*inputs) is called directly with some
exceptions for correctness. Exceptions include: 1) None output: a NoOp would be returned which control-depends on computation. 2) Single value output: A tuple containing the value would be returned. 3) Operation-only outputs: a NoOp would be returned which control-depends on computation. |