Skip to content

A performant and modular runtime for TensorFlow

License

Notifications You must be signed in to change notification settings

shangzhizhou/runtime

 
 

Repository files navigation

TFRT: A New TensorFlow Runtime

TFRT is a new TensorFlow runtime. It aims to provide a unified, extensible infrastructure layer with best-in-class performance across a wide variety of domain specific hardware. It provides efficient use of multithreaded host CPUs, supports fully asynchronous programming models, and focuses on low-level efficiency.

TFRT will benefit a broad range of users, but it will be of particular interest to you if you are a:

  • Researcher looking to experiment with complex new models and add custom operations to TensorFlow
  • Application developer looking for improved performance when serving models in production
  • Hardware maker looking to plug hardware into TensorFlow, including edge and datacenter devices

...or you are simply curious about cool ML infrastructure and low-level runtime technology!

To learn more about TFRT’s early progress and wins, check out our Tensorflow Dev Summit 2020 presentation where we provided a performance benchmark for small-batch GPU inference on ResNet 50, and our MLIR Open Design Deep Dive presentation where we provided a detailed overview of TFRT’s core components, low-level abstractions, and general design principles.

Note: TFRT is an early stage project and is not yet ready for general use.

Getting started

TLDR: This section describes how to set up a development environment for TFRT, as well as instructions to build and test TFRT components.

TFRT currently supports Ubuntu-16.04. Future supported platforms include MacOS, Windows, etc. Bazel and clang are required to build and test TFRT. NVIDIA's CUDA Toolkit and cuDNN libraries are required for the GPU backend.

To describe the TFRT build and test workflows, we will build and run the following binaries for graph execution.

Recall from our Dev Summit presentation that for graph execution, a TensorFlow user passes into TFRT a TensorFlow graph created via high-level TensorFlow APIs, and TFRT then calls the MLIR-based graph compiler to optimize and lower the graph into BEF, a Binary Executable Format for TFRT graph execution (MLIR is the compiler infrastructure that we use to represent TFRT host programs). The blue arrows in the simplified TensorFlow training stack diagram below show this flow.

TFRT Overview

The two binaries introduced next focus on the backend of the graph execution workflow. After the graph compiler has optimized the TensorFlow graph and produced a low-level TFRT Host Program represented in MLIR, tfrt_translate generates a BEF file from that host program and bef_executor runs the BEF file. The progression from TFRT Host Program to bef_executor via tfrt_translate is depicted in the expanded TensorFlow training stack diagram below. Note that the blue arrow between TFRT Host Program and BEF file represents tfrt_translate. Both programs are built in the tools directory.

BEF Conversion

tfrt_translate

The tfrt_translate program does round trip translation between MLIR and BEF, similar to an assembler and disassembler.

bef_executor

The bef_executor program is the execution driver of BEF files. It reads in a BEF file, sets up runtime, and asynchronously executes function(s) in that file.

Prerequisites

Install Bazel

To build TFRT, you need to install Bazel. TFRT is built and verified with Bazel 4.0. Follow the Bazel installation instructions to install Bazel. Verify the installation with

$ bazel --version
bazel 4.0.0

Install clang

Follow the clang installation instructions to install clang. The automatic installation script that installs clang, lldb, and lld, is recommended. TFRT is built and verified with clang 11.1.

If you have multiple versions of clang installed, ensure that the correct version of clang is the default. On Ubuntu based systems, you can use update-alternatives to select the default version. The following example commands assume you installed clang-11:

$ sudo update-alternatives --install /usr/bin/clang clang /usr/bin/clang-11 11
$ sudo update-alternatives --install /usr/bin/clang++ clang++ /usr/bin/clang++-11 11

Verify the installation with

$ clang --version
clang version 11.1.0

Install libstdc++

TFRT requires libstdc++8 or greater. Check clang's selected version with

$ clang++ -v |& grep "Selected GCC"
Selected GCC installation: /usr/bin/../lib/gcc/x86_64-linux-gnu/10

In the example above, the 10 at the end of the path indicates that clang will use libstdc++10, which is compatible with TFRT.

If you need to upgrade, the easiest way is to install gcc-8. Run the following command to install:

$ sudo add-apt-repository -y ppa:ubuntu-toolchain-r/test
$ sudo apt-get update
$ sudo apt-get install -y gcc-8 g++-8

To verify installation, re-run the clang++ -v check above.

GPU prerequisites

Note: You can skip this section if you don't want to build the GPU backend. Remember to exclude //backends/gpu/... from your Bazel target patterns though.

Building and running the GPU backend requires installing additional components.

Install clang Python bindings using pip with

$ pip install libclang

Install NVIDIA's CUDA Toolkit v11.2 (see installation guide for details) in a single directory from NVIDIA’s .run package with

$ wget http://developer.download.nvidia.com/compute/cuda/11.2.2/local_installers/cuda_11.2.2_460.32.03_linux.run
$ sudo sh cuda_11.2.2_460.32.03_linux.run --toolkit --installpath=<path>

Register the path to CUDA shared objects with

$ sudo echo '<path>/lib64' > '/etc/ld.so.conf.d/cuda.conf'
$ sudo ldconfig

Install NVIDIA's cuDNN libraries (see installation guide for details) with

$ wget http://developer.download.nvidia.com/compute/machine-learning/repos/ubuntu1604/x86_64/libcudnn8_8.0.4.30-1+cuda11.1_amd64.deb
$ sudo apt install ./libcudnn8_8.0.4.30-1+cuda11.1_amd64.deb

Note: The above package is intended for CUDA 11.1, but is compatible with CUDA 11.2. TFRT is built and verified with cuDNN 8.1 for CUDA 11.2. Access to that package requires a (free) NVIDIA developer account.

Building and running TFRT

To build TFRT, cd to the root directory (where WORKSPACE file is located) of the TFRT workspace. A set of build configurations is in .bazelrc file. You can create a user.bazelrc in the repository root with extra Bazel configs that may be useful. Build tfrt_translate and bef_executor with the following commands:

$ bazel build //tools:bef_executor
$ bazel build //tools:tfrt_translate

The above commands build the binaries with opt compilation mode. Check Bazel's documentation for more build options. Bazel will notify the output location at the end of a successful build (default is bazel-bin).

After tfrt_translate and bef_executor are built, run an .mlir program with the following command:

$ bazel-bin/tools/tfrt_translate -mlir-to-bef path/to/program.mlir | bazel-bin/tools/bef_executor

TFRT provides a series of .mlir test programs. For example:

$ bazel-bin/tools/tfrt_translate -mlir-to-bef mlir_tests/bef_executor/async.mlir | bazel-bin/tools/bef_executor

Any output will be printed out to the terminal.

Adding GPU support

Add --config=cuda to the Bazel command to link the GPU backend to the above targets.

Custom CUDA Toolkit locations can be specified with --repo_env=CUDA_PATH=<path>. The default is /usr/local/cuda.

Testing

TFRT utilizes LLVM’s LIT infrastructure and FileCheck utility tool to construct MLIR-based check tests. These tests verify that some set of string tags appear in the test’s output. More introduction and guidelines on testing can be found here. An example test is shown below:

// RUN: tfrt_translate -mlir-to-bef %s | bef_executor | FileCheck %s
// RUN: tfrt_opt %s | tfrt_opt

// CHECK-LABEL: --- Running 'basic_tensor'
func @basic_tensor() {
  %c0 = tfrt.new.chain

  %a = dht.create_uninitialized_tensor.i32.2 [3 : i64, 2 : i64]
  %c1 = dht.fill_tensor_with_constant.i32 %a, %c0 0 : i32

  // CHECK: shape = [3, 2], values = [0, 0, 0, 0, 0, 0]
  %c2 = dht.print_tensor %a, %c1

  tfrt.return
}

To run a test, simply invoke bazel test:

$ bazel test //mlir_tests/bef_executor:basics.mlir.test

Most tests under //backends/gpu/... need to be built with --config=cuda so that the GPU backend is linked to the bef_executor:

$ bazel test --config=cuda //backends/gpu/mlir_tests/core_runtime:get_device.mlir.test

Use Bazel target patterns to run multiple tests:

$ bazel test -- //... -//third_party/... -//backends/gpu/...  # All CPU tests.
$ bazel test --config=cuda //backends/gpu/...                 # All GPU tests.

Next Steps

Try our tutorial for some hands-on experience with TFRT.

See host runtime design for more details on TFRT's design.

Repository Overview

The three key directories under the TFRT root directory are

  • lib/: Contains core TFRT infrastructure code
  • backends/: Contains device specific infrastructure and op/kernel implementations
  • include/: Contains public header files for core TFRT infrastructure
Top level directory Sub-directory Description
include/ TFRT infrastructure public headers
lib/ TFRT infrastructure common for host runtime and all device runtime
basic_kernels/ Common infrastructure kernels, e.g. control flow kernels
bef_executor/ BEFFile and BEFExecutor implementation
bef_executor_driver/ Driver code for running BEFExecutor for an input MLIR file
bef_converter/ Converter between MLIR and BEF (bef_to_mlir and mlir_to_bef)
core_runtime/ TFRT Core Runtime infrastructure
distributed_runtime/ TFRT Distributed Runtime infrastructure
data/ TFRT infrastructure for TF input pipelines
host_context/ Host TFRT data structure, e.g. HostContext, AsyncValue, ConcurrentWorkQueue
metrics/ ML metric integration
support/ Basic utilities, e.g. hash_util, string_util
tensor/ Base Tensor class and host tensor implementations
test_kernels/ Testing kernel implementations
tracing/ Tracing/profiling support
cpp_tests/ C++ unit tests
mlir_tests/ MLIR-based unit tests
utils/ Miscellaneous utilities, such as scripts for generating test ML models.
tools/ Binaries including bef_executor, tfrt_translate etc.
backends/common/ Library shared for different backends, e.g. eigen, dnn_op_utils.h
ops/ Shared library for op implementations across devices, e.g. metadata functions
compat/eigen/ Adapter library for eigen, used by multiple backends
utils/ Miscellaneous utilities, such as scripts for generating MLIR test code.
backends/cpu/ CPU device infra and CPU ops and kernels
include/ CPU related public headers
lib/core_runtime/ CPU core_runtime infra, e.g. cpu_device
lib/ops CPU ops
lib/kernels CPU kernels
cpp_tests/ CPU infra unit tests
mlir_tests/ CPU mlir based tests
backends/gpu/ GPU infra and op/kernel implementations. We might split this directory into a separate repository at some point after the interface with the rest of TFRT infra becomes stable.
include/ GPU related public headers
lib/core_runtime/ GPU Core runtime infra
lib/memory GPU memory abstraction
lib/stream GPU stream abstraction and wrappers
lib/tensor GPU tensor
lib/ops GPU ops
lib/kernels GPU kernels
lib/data GPU kernels for input pipeline infrastructure
cpp_tests/ GPU infra unit tests
mlir_tests/ GPU mlir based tests
tools/ Miscellaneous utilities

Contribution guidelines

If you want to contribute to TFRT, be sure to review the contribution guidelines. This project adheres to TensorFlow's code of conduct. By participating, you are expected to uphold this code of conduct.

Note: TFRT is currently not open to contributions. TFRT developers are currently developing workflows and continuous integration for accepting contributions. Once we are ready, we will update this page.

Continuous build status

Status Status

Contact

Subscribe to the TFRT mailing list for general discussions about the runtime.

We use GitHub issues to track bugs and feature requests.

License

Apache License 2.0

About

A performant and modular runtime for TensorFlow

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • C++ 48.4%
  • MLIR 47.0%
  • Starlark 2.1%
  • C 2.1%
  • Other 0.4%