The recent growth of Deep Learning has driven the development of more complex models that require significantly more compute and memory capabilities. Several low precision numeric formats have been proposed to address the problem. Google's bfloat16 and the FP16: IEEE half-precision format are two of the most widely used sixteen bit formats. Mixed precision training and inference using low precision formats have been developed to reduce compute and bandwidth requirements.
The recently launched 3rd Gen Intel® Xeon® Scalable processor (codenamed Cooper Lake), featuring Intel® Deep Learning Boost, is the first general-purpose x86 CPU to support the bfloat16 format. Specifically, three new bfloat16 instructions are added as a part of the AVX512_BF16 extension within Intel Deep Learning Boost: VCVTNE2PS2BF16, VCVTNEPS2BF16, and VDPBF16PS. The first two instructions allow converting to and from bfloat16 data type, while the last one performs a dot product of bfloat16 pairs. Further details can be found in the hardware numerics document published by Intel.
Intel has worked with the TensorFlow development team to enhance TensorFlow to include bfloat16 data support for CPUs. For more information about BF16 in TensorFlow, please read Accelerating AI performance on 3rd Gen Intel® Xeon® Scalable processors with TensorFlow and Bfloat16.
Intel® Neural Compressor can support op-wise BF16 precision for TensorFlow now. With BF16 support, it can get a mixed precision model with acceptable accuracy and performance or others objective goals. This document will give a simple introduction of TensorFlow BF16 convert transformation and how to use the BF16.
-
Convert to a
FP32 + INT8
mixed precision GraphIn this steps, TF adaptor will regard all fallback datatype as
FP32
. According to the per op datatype in tuning config passed by strategy, TF adaptor will generate aFP32 + INT8
mixed precision graph. -
Convert to a
BF16 + FP32 + INT8
mixed precision GraphIn this phase, adaptor will convert some
FP32
ops toBF16
according tobf16_ops
list in tuning config. -
Optimize the
BF16 + FP32 + INT8
mixed precision GraphAfter the mixed precision graph generated, there are still some optimization need to be applied to improved the performance, for example
Cast + Cast
and so on. TheBF16Convert
transformer also apply a depth-first method to make it possible to take the ops useBF16
which can supportBF16
datatype to reduce the insertion ofCast
op.
BF16 support has enabled in intel-tensorflow
2.3.0
/2.4.0
/1.15.0up1
/1.15.0up2
and intel-tensorflow-avx512
2.3.0
/2.4.0
. On hardware side, it need the CPU support avx512_bf16
instruction set. We also support force enable it for debug usage by using set the environment variable FORCE_BF16=1
. But without above 2 sides support, the poor performance or other problems may expect.
For now this feature will be auto enabled in the env with intel-tensorflow
>=2.3.0
and avx512_bf16
instruction set support platform. To get better performance with BF16
datatype, the intel-tensorflow-avx512
is recommended, or build intel tensorflow (take tag v1.15.0up2
as example) from source code by using below command,
bazel build --cxxopt=-D_GLIBCXX_USE_CXX11_ABI=0 --copt=-O3 --copt=-Wformat --copt=-Wformat-security \
--copt=-fstack-protector --copt=-fPIC --copt=-fpic --linkopt=-znoexecstack --linkopt=-zrelro \
--linkopt=-znow --linkopt=-fstack-protector --config=mkl --define build_with_mkl_dnn_v1_only=true \
--copt=-DENABLE_INTEL_MKL_BFLOAT16 --copt=-march=native //tensorflow/tools/pip_package:build_pip_package
./bazel-bin/tensorflow/tools/pip_package/build_pip_package /tmp/
By default, BF16
has been added into activation and weight supported datatype if the tensorflow version and CPU meet the requirements. We can disable it in the yaml config file by specifying the datatype for activation and weight. For now, only the Basic
strategy BF16
support has been tested.