From an official TensorFlow dev, shortened (emphasis mine):
The API import is in the root of the package. Any other import is just Python allowing you to access privates with no consideration for good coding practices.
The only way that imports should be are
import tensorflow as tf
We also provide support for
from tensorflow.keras import,
though this is brittle and can break as we keep refactoring.
tensorflow.python or any other modules (including
import tensorflow_core) is not supported, and can break unannounced.
Me: To confirm,
tf.python.keras is private, intended for development, rather than public use?
Yes, that's exactly the case. Anything under
tf.python is private
This, however, is not the full picture.
tf.python remains the only way to access certain functions / classes - e.g.,
tf.python.ops, both used in
tf.keras.optimizers. But as per above, this doesn't become a concern unless you're "developing" - i.e. writing custom functionality or classes. "Out of box" usage should be fine without ever touching
Note this isn't only a compatibility matter, and the two are not interchangeable "as long as nothing breaks"; for example,
tf.keras uses optimizer_v2, which differs substantially from
Lastly, note that both above links end up in
tf.python.keras -- not certain, but it appears that
tf.keras doesn't actually exist in TF Github (e.g. nothing references
OptimizerV2), but it does merge with TF in
tensorflow_core/python/keras/api/_v2 folder when installed locally:
from tensorflow import keras
from tensorflow.python import keras
Though both share the
python/ folder, they're not both
tf.python - can be verified from their respective
tf.python.keras.optimizers used with
tf.keras.optimizers used with
tf.keras.layers runs 11.5x slower for a mid-sized model (code). I continue to see former in user code - consider this a note of warning.