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Enables debug mode for tf.data.
tf.data.experimental.enable_debug_mode()
Example usage with pdb module:
import tensorflow as tf
import pdb
tf.data.experimental.enable_debug_mode()
def func(x):
# Python 3.7 and older requires `pdb.Pdb(nosigint=True).set_trace()`
pdb.set_trace()
x = x + 1
return x
dataset = tf.data.Dataset.from_tensor_slices([1, 2, 3])
dataset = dataset.map(func)
for item in dataset:
print(item)
The effect of debug mode is two-fold:
1) Any transformations that would introduce asynchrony, parallelism, or non-determinism to the input pipeline execution will be forced to execute synchronously, sequentially, and deterministically.
2) Any user-defined functions passed into tf.data transformations such as
map
will be wrapped in tf.py_function
so that their body is executed
"eagerly" as a Python function as opposed to a traced TensorFlow graph, which
is the default behavior. Note that even when debug mode is enabled, the
user-defined function is still traced to infer the shape and type of its
outputs; as a consequence, any print
statements or breakpoints will be
triggered once during the tracing before the actual execution of the input
pipeline.
Raises | |
---|---|
ValueError
|
When invoked from graph mode. |