| commit | 902e8f4bd534d5b440c90f2c42dd126ca90a8fd6 | [log] [tgz] |
|---|---|---|
| author | River Riddle <riverriddle@google.com> | Mon Dec 09 15:24:10 2019 -0800 |
| committer | TensorFlower Gardener <gardener@tensorflow.org> | Mon Dec 09 15:41:28 2019 -0800 |
| tree | db60ee935fb1740818ed556da5582c5cc5a5a042 | |
| parent | c70fe93b765ecfc566dc79b55cdb51260df07f6c [diff] |
Refactor the Block support classes. Each of the support classes for Block are now moved into a new header BlockSupport.h. The successor iterator class is also reimplemented as an indexed_accessor_range. This makes the class more efficient, and expands on its available functionality. PiperOrigin-RevId: 284646792 Change-Id: Ib1a4385a415e3127e506c7bb1141648be97b1890
Documentation |
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TensorFlow is an end-to-end open source platform for machine learning. It has a comprehensive, flexible ecosystem of tools, libraries, and community resources that lets researchers push the state-of-the-art in ML and developers easily build and deploy ML-powered applications.
TensorFlow was originally developed by researchers and engineers working on the Google Brain team within Google's Machine Intelligence Research organization to conduct machine learning and deep neural networks research. The system is general enough to be applicable in a wide variety of other domains, as well.
TensorFlow provides stable Python and C++ APIs, as well as non-guaranteed backward compatible API for other languages.
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See the TensorFlow install guide for the pip package, to enable GPU support, use a Docker container, and build from source.
To install the current release for CPU-only:
$ pip install tensorflow
Use the GPU package for CUDA-enabled GPU cards (Ubuntu and Windows):
$ pip install tensorflow-gpu
Nightly binaries are available for testing using the tf-nightly and tf-nightly-gpu packages on PyPi.
$ python
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| Build Type | Status | Artifacts |
|---|---|---|
| Linux CPU | PyPI | |
| Linux GPU | PyPI | |
| Linux XLA | TBA | |
| macOS | PyPI | |
| Windows CPU | PyPI | |
| Windows GPU | PyPI | |
| Android | ||
| Raspberry Pi 0 and 1 | Py2 Py3 | |
| Raspberry Pi 2 and 3 | Py2 Py3 |
| Build Type | Status | Artifacts |
|---|---|---|
| Linux AMD ROCm GPU Nightly | Nightly | |
| Linux AMD ROCm GPU Stable Release | Release 1.15 / 2.x | |
| Linux s390x Nightly | Nightly | |
| Linux s390x CPU Stable Release | Release | |
| Linux ppc64le CPU Nightly | Nightly | |
| Linux ppc64le CPU Stable Release | Release 1.15 / 2.x | |
| Linux ppc64le GPU Nightly | Nightly | |
| Linux ppc64le GPU Stable Release | Release 1.15 / 2.x | |
| Linux CPU with Intel® MKL-DNN Nightly | Nightly | |
| Linux CPU with Intel® MKL-DNN Stable Release | Release 1.15 / 2.x | |
| Red Hat® Enterprise Linux® 7.6 CPU & GPU Python 2.7, 3.6 | 1.13.1 PyPI |
Learn more about the TensorFlow community and how to contribute.