alibi
alibi copied to clipboard
Update tensorflow requirement from !=2.6.0,!=2.6.1,<2.15.0,>=2.0.0 to >=2.0.0,!=2.6.0,!=2.6.1,<2.18.0
Updates the requirements on tensorflow to permit the latest version.
Release notes
Sourced from tensorflow's releases.
TensorFlow 2.17.0
Release 2.17.0
TensorFlow
Breaking Changes
- GPU
- Support for NVIDIA GPUs with compute capability 5.x (Maxwell generation) has been removed from TF binary distributions (Python wheels).
Major Features and Improvements
Add
is_cpu_target_available
, which indicates whether or not TensorFlow was built with support for a given CPU target. This can be useful for skipping target-specific tests if a target is not supported.
tf.data
- Support
data.experimental.distribued_save
.distribued_save
uses tf.data service (https://www.tensorflow.org/api_docs/python/tf/data/experimental/service) to write distributed dataset snapshots. The call is non-blocking and returns without waiting for the snapshot to finish. Settingwait=True
totf.data.Dataset.load
allows the snapshots to be read while they are being written.Bug Fixes and Other Changes
GPU
- Support for NVIDIA GPUs with compute capability 8.9 (e.g. L4 & L40) has been added to TF binary distributions (Python wheels).
Replace
DebuggerOptions
of TensorFlow Quantizer, and migrate toDebuggerConfig
of StableHLO Quantizer.Add TensorFlow to StableHLO converter to TensorFlow pip package.
TensorRT support: this is the last release supporting TensorRT. It will be removed in the next release.
NumPy 2.0 support: TensorFlow is going to support NumPy 2.0 in the next release. It may break some edge cases of TensorFlow API usage.
tf.lite
- Quantization for
FullyConnected
layer is switched from per-tensor to per-channel scales for dynamic range quantization use case (float32
inputs / outputs andint8
weights). The change enables new quantization schema globally in the converter and inference engine. The new behaviour can be disabled via experimental flagconverter._experimental_disable_per_channel_quantization_for_dense_layers = True
.- C API:
- The experimental
TfLiteRegistrationExternal
type has been renamed asTfLiteOperator
, and likewise for the corresponding API functions.- The Python TF Lite Interpreter bindings now have an option
experimental_default_delegate_latest_features
to enable all default delegate features.- Flatbuffer version update:
GetTemporaryPointer()
bug fixed.
tf.data
- Add
wait
totf.data.Dataset.load
. IfTrue
, for snapshots written withdistributed_save
, it reads the snapshot while it is being written. For snapshots written with regularsave
, it waits for the snapshot until it's finished. The default isFalse
for backward compatibility. Users ofdistributed_save
are recommended to set it toTrue
.
tf.tpu.experimental.embedding.TPUEmbeddingV2
- Add
compute_sparse_core_stats
for sparse core users to profile the data with this API to get themax_ids
andmax_unique_ids
. These numbers will be needed to configure the sparse core embedding mid level api.- Remove the
preprocess_features
method since that's no longer needed.Thanks to our Contributors
This release contains contributions from many people at Google, as well as:
Abdulaziz Aloqeely, Ahmad-M-Al-Khateeb, Akhil Goel, akhilgoe, Alexander Pivovarov, Amir Samani, Andrew Goodbody, Andrey Portnoy, Ashiq Imran, Ben Olson, Chao, Chase Riley Roberts, Clemens Giuliani, dependabot[bot], Dimitris Vardoulakis, Dragan Mladjenovic, ekuznetsov139, Elfie Guo, Faijul Amin, Gauri1 Deshpande, Georg Stefan Schmid, guozhong.zhuang, Hao Wu, Haoyu (Daniel), Harsha H S, Harsha Hs, Harshit Monish, Ilia Sergachev, Jane Liu, Jaroslav Sevcik, Jinzhe Zeng, Justin Dhillon, Kaixi Hou, Kanvi Khanna, LakshmiKalaKadali, Learning-To-Play, lingzhi98, Lu Teng, Matt Bahr, Max Ren, Meekail Zain, Mmakevic-Amd, mraunak, neverlva, nhatle, Nicola Ferralis, Olli Lupton, Om Thakkar, orangekame3, ourfor, pateldeev, Pearu Peterson, pemeliya, Peng Sun, Philipp Hack, Pratik Joshi, prrathi, rahulbatra85, Raunak, redwrasse, Robert Kalmar, Robin Zhang, RoboSchmied, Ruturaj Vaidya, sachinmuradi, Shawn Wang, Sheng Yang, Surya, Thibaut Goetghebuer-Planchon, Thomas Preud'Homme, tilakrayal, Tj Xu, Trevor Morris, wenchenvincent, Yimei Sun, zahiqbal, Zhu Jianjiang, Zoranjovanovic-Ns
Changelog
Sourced from tensorflow's changelog.
Release 2.17.0
TensorFlow
Breaking Changes
Known Caveats
Major Features and Improvements
Bug Fixes and Other Changes
GPU
- Support for NVIDIA GPUs with compute capability 8.9 (e.g. L4 & L40) has been added to TF binary distributions (Python wheels).
Replace
DebuggerOptions
of TensorFlow Quantizer, and migrate toDebuggerConfig
of StableHLO Quantizer.Add TensorFlow to StableHLO converter to TensorFlow pip package.
TensorRT support: this is the last release supporting TensorRT. It will be removed in the next release.
NumPy 2.0 support: TensorFlow is going to support NumPy 2.0 in the next release. It may break some edge cases of TensorFlow API usage.
Keras
Breaking Changes
- GPU
- Support for NVIDIA GPUs with compute capability 5.x (Maxwell generation) has been removed from TF binary distributions (Python wheels).
... (truncated)
Commits
ad6d8cc
Merge pull request #71345 from tensorflow-jenkins/version-numbers-2.17.0-69598ca87bf
Update version numbers to 2.17.0b3dcff9
Merge pull request #70600 from tensorflow/r2.17-2d72742d40f742ccbb
Add tensorflow support for 16k page sizes on arm648581151
Merge pull request #70475 from tensorflow-jenkins/version-numbers-2.17.0rc1-8204d6b2aa0
Update version numbers to 2.17.0-rc1bb8057c
Merge pull request #70454 from vladbelit/gcs_trailing_dot_undo72f4b02
Fix issues with TF GCS operations not working in certain environments.6ed0a1a
Merge pull request #70358 from tensorflow/r2.17-b24db0b2a85ffca2f5
Add backxla/stream_executor:cuda_platform
totf_additional_binary_deps
.- Additional commits viewable in compare view
Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting @dependabot rebase
.
Dependabot commands and options
You can trigger Dependabot actions by commenting on this PR:
-
@dependabot rebase
will rebase this PR -
@dependabot recreate
will recreate this PR, overwriting any edits that have been made to it -
@dependabot merge
will merge this PR after your CI passes on it -
@dependabot squash and merge
will squash and merge this PR after your CI passes on it -
@dependabot cancel merge
will cancel a previously requested merge and block automerging -
@dependabot reopen
will reopen this PR if it is closed -
@dependabot close
will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually -
@dependabot show <dependency name> ignore conditions
will show all of the ignore conditions of the specified dependency -
@dependabot ignore this major version
will close this PR and stop Dependabot creating any more for this major version (unless you reopen the PR or upgrade to it yourself) -
@dependabot ignore this minor version
will close this PR and stop Dependabot creating any more for this minor version (unless you reopen the PR or upgrade to it yourself) -
@dependabot ignore this dependency
will close this PR and stop Dependabot creating any more for this dependency (unless you reopen the PR or upgrade to it yourself)