Update tensorflow requirement from <2.12.0 to <2.14.0
Created by: dependabot[bot]
Updates the requirements on tensorflow to permit the latest version.
Release notes
Sourced from tensorflow's releases.
TensorFlow 2.13.0
Release 2.13.0
TensorFlow
Breaking Changes
- The LMDB kernels have been changed to return an error. This is in preparation for completely removing them from TensorFlow. The LMDB dependency that these kernels are bringing to TensorFlow has been dropped, thus making the build slightly faster and more secure.
Major Features and Improvements
tf.lite
- Added 16-bit and 64-bit float type support for built-in op
cast
.- The Python TF Lite Interpreter bindings now have an option
experimental_disable_delegate_clustering
to turn-off delegate clustering.- Added int16x8 support for the built-in op
exp
- Added int16x8 support for the built-in op
mirror_pad
- Added int16x8 support for the built-in ops
space_to_batch_nd
andbatch_to_space_nd
- Added 16-bit int type support for built-in op
less
,greater_than
,equal
- Added 8-bit and 16-bit support for
floor_div
andfloor_mod
.- Added 16-bit and 32-bit int support for the built-in op
bitcast
.- Added 8-bit/16-bit/32-bit int/uint support for the built-in op
bitwise_xor
- Added int16 indices support for built-in op
gather
andgather_nd
.- Added 8-bit/16-bit/32-bit int/uint support for the built-in op
right_shift
- Added reference implementation for 16-bit int unquantized
add
.- Added reference implementation for 16-bit int and 32-bit unsigned int unquantized
mul
.add_op
supports broadcasting up to 6 dimensions.- Added 16-bit support for
top_k
.
tf.function
- ConcreteFunction (
tf.types.experimental.ConcreteFunction
) as generated throughget_concrete_function
now performs holistic input validation similar to callingtf.function
directly. This can cause breakages where existing calls pass Tensors with the wrong shape or omit certain non-Tensor arguments (including default values).
tf.nn
tf.nn.embedding_lookup_sparse
andtf.nn.safe_embedding_lookup_sparse
now support ids and weights described bytf.RaggedTensor
s.- Added a new boolean argument
allow_fast_lookup
totf.nn.embedding_lookup_sparse
andtf.nn.safe_embedding_lookup_sparse
, which enables a simplified and typically faster lookup procedure.
tf.data
tf.data.Dataset.zip
now supports Python-style zipping, i.e.Dataset.zip(a, b, c)
.tf.data.Dataset.shuffle
now supportstf.data.UNKNOWN_CARDINALITY
When doing a "full shuffle" usingdataset = dataset.shuffle(dataset.cardinality())
. But remember, a "full shuffle" will load the full dataset into memory so that it can be shuffled, so make sure to only use this with small datasets or datasets of small objects (like filenames).
tf.math
tf.nn.top_k
now supports specifying the output index type via parameterindex_type
. Supported types aretf.int16
,tf.int32
(default), andtf.int64
.
tf.SavedModel
- Introduced class method
tf.saved_model.experimental.Fingerprint.from_proto(proto)
, which can be used to construct aFingerprint
object directly from a protobuf.
... (truncated)
Changelog
Sourced from tensorflow's changelog.
Release 2.13.0
TensorFlow
Breaking Changes
- The LMDB kernels have been changed to return an error. This is in preparation for completely removing them from TensorFlow. The LMDB dependency that these kernels are bringing to TensorFlow has been dropped, thus making the build slightly faster and more secure.
Major Features and Improvements
tf.lite
- Added 16-bit and 64-bit float type support for built-in op
cast
.- The Python TF Lite Interpreter bindings now have an option
experimental_disable_delegate_clustering
to turn-off delegate clustering.- Added int16x8 support for the built-in op
exp
- Added int16x8 support for the built-in op
mirror_pad
- Added int16x8 support for the built-in ops
space_to_batch_nd
andbatch_to_space_nd
- Added 16-bit int type support for built-in op
less
,greater_than
,equal
- Added 8-bit and 16-bit support for
floor_div
andfloor_mod
.- Added 16-bit and 32-bit int support for the built-in op
bitcast
.- Added 8-bit/16-bit/32-bit int/uint support for the built-in op
bitwise_xor
- Added int16 indices support for built-in op
gather
andgather_nd
.- Added 8-bit/16-bit/32-bit int/uint support for the built-in op
right_shift
- Added reference implementation for 16-bit int unquantized
add
.- Added reference implementation for 16-bit int and 32-bit unsigned int unquantized
mul
.add_op
supports broadcasting up to 6 dimensions.- Added 16-bit support for
top_k
.
tf.function
- ConcreteFunction (
tf.types.experimental.ConcreteFunction
) as generated throughget_concrete_function
now performs holistic input validation similar to callingtf.function
directly. This can cause breakages where existing calls pass Tensors with the wrong shape or omit certain non-Tensor arguments (including default values).
tf.nn
tf.nn.embedding_lookup_sparse
andtf.nn.safe_embedding_lookup_sparse
now support ids and weights described bytf.RaggedTensor
s.- Added a new boolean argument
allow_fast_lookup
totf.nn.embedding_lookup_sparse
andtf.nn.safe_embedding_lookup_sparse
, which enables a simplified and typically faster lookup procedure.
tf.data
tf.data.Dataset.zip
now supports Python-style zipping, i.e.Dataset.zip(a, b, c)
.tf.data.Dataset.shuffle
now supportstf.data.UNKNOWN_CARDINALITY
When doing a "full shuffle" usingdataset = dataset.shuffle(dataset.cardinality())
. But remember, a "full shuffle" will load the full dataset into memory so that it can be shuffled, so make sure to only use this with small datasets or datasets of small objects (like filenames).
tf.math
tf.nn.top_k
now supports specifying the output index type via parameterindex_type
. Supported types aretf.int16
,tf.int32
(default), andtf.int64
.
tf.SavedModel
- Introduced class method
tf.saved_model.experimental.Fingerprint.from_proto(proto)
, which can be used to construct aFingerprint
object directly from a protobuf.- Introduced member method
tf.saved_model.experimental.Fingerprint.singleprint()
, which provides a convenient way to uniquely identify a SavedModel.
... (truncated)
Commits
-
1cb1a03
updating release notes with security fixes (#61119) -
bd4c381
Merge pull request #61102 from tensorflow/venkat-patch-123 -
2a17745
update estimator and keras versions -
71a2f7f
Merge pull request #61097 from tensorflow-jenkins/version-numbers-2.13.0-1179 -
3e6e3ce
Update version numbers to 2.13.0 -
6657f49
Merge pull request #61075 from elfringham/limit_numpy -
90389e9
Fix unit test failure caused by numpy update -
5b6abc8
Merge pull request #60904 from tensorflow/venkat-patch-22 -
5763bc3
Fix TPUExecute for TPU embedding operations. Create temporary device memory -
1c27a49
Merge pull request #60888 from tensorflow/venkat-patch-16 - Additional commits viewable in compare view
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