|  View source on GitHub | 
Wraps a python function and uses it as a TensorFlow op.
tf.compat.v1.py_func(
    func, inp, Tout, stateful=True, name=None
)
Migrate to TF2
This name was deprecated and removed in TF2, but tf.numpy_function is a
near-exact replacement, just drop the stateful argument (all
tf.numpy_function calls are considered stateful). It is compatible with
eager execution and tf.function.
tf.py_function is a close but not an exact replacement, passing TensorFlow
tensors to the wrapped function instead of NumPy arrays, which provides
gradients and can take advantage of accelerators.
Before:
def fn_using_numpy(x):x[0] = 0.return xtf.compat.v1.py_func(fn_using_numpy, inp=[tf.constant([1., 2.])],Tout=tf.float32, stateful=False)<tf.Tensor: shape=(2,), dtype=float32, numpy=array([0., 2.], dtype=float32)>
After:
tf.numpy_function(fn_using_numpy, inp=[tf.constant([1., 2.])],Tout=tf.float32)<tf.Tensor: shape=(2,), dtype=float32, numpy=array([0., 2.], dtype=float32)>
Description
Given a python function func, which takes numpy arrays as its
arguments and returns numpy arrays as its outputs, wrap this function as an
operation in a TensorFlow graph. The following snippet constructs a simple
TensorFlow graph that invokes the np.sinh() NumPy function as a operation
in the graph:
def my_func(x):
  # x will be a numpy array with the contents of the placeholder below
  return np.sinh(x)
input = tf.compat.v1.placeholder(tf.float32)
y = tf.compat.v1.py_func(my_func, [input], tf.float32)
- The body of the function (i.e. - func) will not be serialized in a- GraphDef. Therefore, you should not use this function if you need to serialize your model and restore it in a different environment.
- The operation must run in the same address space as the Python program that calls - tf.compat.v1.py_func(). If you are using distributed TensorFlow, you must run a- tf.distribute.Serverin the same process as the program that calls- tf.compat.v1.py_func()and you must pin the created operation to a device in that server (e.g. using- with tf.device():).
E.g.
  import tensorflow as tf
  import numpy as np
  def make_synthetic_data(i):
      return np.cast[np.uint8](i) * np.ones([20,256,256,3],
              dtype=np.float32) / 10.
  def preprocess_fn(i):
      ones = tf.py_function(make_synthetic_data,[i],tf.float32)
      ones.set_shape(tf.TensorShape([None, None, None, None]))
      ones = tf.image.resize(ones, [224,224])
      return ones
  ds = tf.data.Dataset.range(10)
  ds = ds.map(preprocess_fn)
| Args | |
|---|---|
| func | A Python function, which accepts ndarrayobjects as arguments and
returns a list ofndarrayobjects (or a singlendarray). This function
must accept as many arguments as there are tensors ininp, and these
argument types will match the correspondingtf.Tensorobjects ininp.
The returnsndarrays must match the number and types definedTout.
Important Note: Input and output numpyndarrays offuncare not
  guaranteed to be copies. In some cases their underlying memory will be
  shared with the corresponding TensorFlow tensors. In-place modification
  or storingfuncinput or return values in python datastructures
  without explicit (np.)copy can have non-deterministic consequences. | 
| inp | A list of Tensorobjects. | 
| Tout | A list or tuple of tensorflow data types or a single tensorflow data
type if there is only one, indicating what funcreturns. | 
| stateful | (Boolean.) If True, the function should be considered stateful. If a function is stateless, when given the same input it will return the same output and have no observable side effects. Optimizations such as common subexpression elimination are only performed on stateless operations. | 
| name | A name for the operation (optional). | 
| Returns | |
|---|---|
| A list of Tensoror a singleTensorwhichfunccomputes. |