Performance Tips and Tricks
This document will show you how to speed things up and get more out of your GPU/CPU.
Mixed Precision Training
Combined FP16/FP32 training can tremendously improve training speed and use less GPU RAM. For theory behind it see this thread
To deploy it see these instructions.
Faster Image Processing
If you notice a bottleneck in JPEG decoding (decompression) it’s enough to switch to a much faster libjpeg-turbo
, using the normal version of Pillow
.
If you need faster image resize, blur, alpha composition, alpha premultiplication, division by alpha, grayscale and other image manipulations you need to switch to Pillow-SIMD
.
At the moment this section is only relevant if you’re on the x86 platform.
libjpeg-turbo
This is a faster compression/decompression libjpeg
drop-in replacement.
libjpeg-turbo
is a JPEG image codec that uses SIMD instructions (MMX, SSE2, AVX2, NEON, AltiVec). On x86 platforms it accelerates baseline JPEG compression and decompression and progressive JPEG compression. libjpeg-turbo
is generally 2-6x as fast as libjpeg
, all else being equal.
When you install it system-wide it provides a drop-in replacement for the libjpeg
library. Some packages that rely on this library will be able to start using it right away, most will need to be recompiled against the replacement library.
Here is its git-repo.
fastai
uses Pillow
for its image processing and you have to rebuild Pillow
to take advantage of libjpeg-turbo
.
To learn how to rebuild Pillow-SIMD
or Pillow
with libjpeg-turbo
see the Pillow-SIMD
entry.
Pillow-SIMD
There is a faster Pillow
version out there.
Background
First, there was PIL (Python Image Library). And then its development was abandoned.
Then, Pillow forked PIL as a drop-in replacement and according to its benchmarks it is significantly faster than ImageMagick
, OpenCV
, IPP
and other fast image processing libraries (on identical hardware/platform).
Relatively recently, Pillow-SIMD was born to be a drop-in replacement for Pillow. This library in its turn is 4-6 times faster than Pillow, according to the same benchmarks. Pillow-SIMD
is highly optimized for common image manipulation instructions using Single Instruction, Multiple Data (SIMD approach, where multiple data points are processed simultaneously. This is not parallel processing (think threads), but a single instruction processing, supported by CPU, via data-level parallelism, similar to matrix operations on GPU, which also use SIMD.
Pillow-SIMD
currently works only on the x86 platform. That’s the main reason it’s a fork of Pillow and not backported to Pillow
- the latter is committed to support many other platforms/architectures where SIMD-support is lacking. The Pillow-SIMD
release cycle is made so that its versions are identical Pillow’s and the functionality is identical, except Pillow-SIMD
speeds up some of them (e.g. resize).
Installation
This section explains how to install Pillow-SIMD
w/ libjpeg-turbo
(but the very tricky libjpeg-turbo
part of it is identically relevant to Pillow
- just replace pillow-simd
with pillow
in the code below).
Here is the tl;dr version to install Pillow-SIMD
w/ libjpeg-turbo
and w/o TIFF
support:
conda uninstall -y --force pillow pil jpeg libtiff libjpeg-turbo
pip uninstall -y pillow pil jpeg libtiff libjpeg-turbo
conda install -yc conda-forge libjpeg-turbo
CFLAGS="${CFLAGS} -mavx2" pip install --upgrade --no-cache-dir --force-reinstall --no-binary :all: --compile pillow-simd
conda install -y jpeg libtiff
Here are the detailed instructions, with an optional TIFF
support:
First remove
pil
,pillow
,jpeg
andlibtiff
packages. Also remove ‘libjpeg-tubo’ if a previous version is installed:conda uninstall -y --force pillow pil jpeg libtiff libjpeg-turbo
pip uninstall -y pillow pil jpeg libtiff libjpeg-turbo
Both conda packages
jpeg
andlibjpeg-turbo
contain alibjpeg.so
library.jpeg
’slibjpeg.so
library will be replaced later in these instructions withlibjpeg-turbo
’s one for the duration of the build.libtiff
is linked againstlibjpeg.so
library from thejpeg
conda package, and sincePillow
will try to link against it, we must remove it too for the duration of the build. If this is not done,import PIL
will fail.Note, that the
--force
conda
option forces removal of a package without removing packages that depend on it. Using this option will usually leave yourconda
environment in a broken and inconsistent state. Andpip
does it anyway. But we are going to fix your environment in the next step. Alternatively, you may choose not to use--force
, but then it’ll uninstall a whole bunch of other packages and you will need to re-install them later. It’s your call.Now we are ready to replace
libjpeg
with a drop-in replacement oflibjpeg-turbo
and then replacePillow
withPillow-SIMD
:conda install -yc conda-forge libjpeg-turbo
CFLAGS="${CFLAGS} -mavx2" pip install --upgrade --no-cache-dir --force-reinstall --no-binary :all: --compile pillow-simd
Do note that since you’re building from source, you may end up not having some of the features that come with the binary
Pillow
package if the corresponding libraries aren’t available on your system during the build time. For more information see: Building from source.If you add
-v
to thepip install
command, you will be able to see all the details of the build, and one useful part of the output is its report of what was enabled and what not, inPIL SETUP SUMMARY
:--- JPEG support available
*** OPENJPEG (JPEG2000) support not available
--- ZLIB (PNG/ZIP) support available
*** LIBIMAGEQUANT support not available
*** LIBTIFF support not available
--- FREETYPE2 support available
--- LITTLECMS2 support available
*** WEBP support not available
*** WEBPMUX support not available
Another nuance is
libtiff
which we removed, - and that means thatPillow
was built withoutLIBTIFF
support and will not be able to read TIFF files.You can safely skip this step if you don’t care for TIFF files.
This can be fixed by installing a
libtiff
library, linked againstlibjpeg-turbo
.conda install -y -c zegami libtiff-libjpeg-turbo
and then rebuilding
Pillow
as explained in the stage above. Only linux version of thelibtiff-libjpeg-turbo
package is available at the moment.XXX: The
libtiff-libjpeg-turbo
package could be outdated - it’s currently only available on someone’s personal channel. Alternatively, it’ll need to be built from scratch. Pypi’slibtiff
package doesn’t help - it doesn’t placelibtiff.so
under conda environment’slib
directory.The other option is to install system-wide
libjpeg-turbo
andlibtiff
linked against the former.Assuming that
libjpeg-turbo
andjpeg
’slibjpeg.so.X.X.X
don’t collide you can now reinstall back thejpeg
package - other programs most likely need it. Andlibtiff
too:conda install -y jpeg libtiff
Since this is a forked drop-in replacement, however, the package managers don’t know they have
Pillow
-replacement package installed, so if any update happens that triggers an update ofPillow
,conda
/pip
will overwritePillow-SIMD
reverting to the less speedyPillow
solution. So it’s worthwhile checking your run-time setup that you’re indeed usingPillow-SIMD
in your code.That means that every time you update the
fastai
conda package you will have to rebuildPillow-SIMD
.
How to check whether you’re running Pillow
or Pillow-SIMD
?
> "python -c "import PIL; print(PIL.__version__)"
'8.1.0' or 7.0.0.post3
According to the author, if PILLOW_VERSION
has a postfix, it is Pillow-SIMD
. (Assuming that Pillow
will never make a .postX
release).
Is JPEG compression SIMD-optimized?
libjpeg-turbo
replacement for libjpeg
is SIMD-optimized. In order to get Pillow
or its faster fork Pillow-SIMD
to use libjpeg-turbo
, the latter needs to be already installed during the former’s compilation time. Once Pillow
is compiled/installed, it no longer matters which libjpeg
version is installed in your virtual environment or system-wide, as long as the same libjpeg
library remains at the same location as it was during the compilation time (it’s dynamically linked).
However, if at a later time something triggers a conda or pip update on Pillow
it will fetch a pre-compiled version which most likely is not built against libjpeg-turbo
and replace your custom built Pillow
or Pillow-SIMD
.
Here is how you can see that the PIL
library is dynamically linked to libjpeg.so
:
cd ~/anaconda3/envs/fastai/lib/python3.6/site-packages/PIL/
ldd _imaging.cpython-36m-x86_64-linux-gnu.so | grep libjpeg
libjpeg.so.8 => ~/anaconda3/envs/fastai/lib/libjpeg.so.8
and ~/anaconda3/envs/fastai/lib/libjpeg.so.8
was installed by conda install -c conda-forge libjpeg-turbo
. We know that from:
cd ~/anaconda3/envs/fastai/conda-meta/
grep libjpeg.so libjpeg-turbo-2.0.1-h470a237_0.json
If I now install the normal libjpeg
and do the same check on the jpeg
’s package info:
conda install jpeg
cd ~/anaconda3/envs/fastai/conda-meta/
grep libjpeg.so jpeg-9b-h024ee3a_2.json
I find that it’s lib/libjpeg.so.9.2.0
(~/anaconda3/envs/fastai/lib/libjpeg.so.9.2.0
).
Also, if libjpeg-turbo
and libjpeg
happen to have the same version number, even if you built Pillow
or Pillow-SIMD
against libjpeg-turbo
, but then later replaced it with the default jpeg
with exactly the same version you will end up with the slower version, since the linking happens at build time. But so far that risk appears to be small, as of this writing, libjpeg-turbo
releases are in the 8.x versions, whereas jpeg
’s are in 9.x’s.
How to tell whether Pillow
or Pillow-SIMD
is using libjpeg-turbo
?
You need Pillow>=5.4.0
to accomplish the following (install from github until then: pip install git+https://github.com/python-pillow/Pillow
).
python -c "from PIL import features; print(features.check_feature('libjpeg_turbo'))"
True
And a version-proof check:
from PIL import features, Image
from packaging import version
try: ver = Image.__version__ # PIL >= 7
except: ver = Image.PILLOW_VERSION # PIL < 7
if version.parse(ver) >= version.parse("5.4.0"):
if features.check_feature('libjpeg_turbo'):
print("libjpeg-turbo is on")
else:
print("libjpeg-turbo is not on")
else:
print(f"libjpeg-turbo' status can't be derived - need Pillow(-SIMD)? >= 5.4.0 to tell, current version {ver}")
Conda packages
The fastai
conda (test) channel has an experimental pillow
package built against a custom build of libjpeg-turbo
. There are python 3.6 and 3.7 linux builds:
To install:
conda uninstall -y --force pillow libjpeg-turbo
conda install -c fastai/label/test pillow
There is also an experimental pillow-simd-5.3.0.post0
conda package built against libjpeg-turbo
and compiled with avx2
. Try it only for python 3.6 on linux.
conda uninstall -y --force pillow libjpeg-turbo
conda install -c fastai/label/test pillow-simd
It probably won’t work on your setup unless its CPU has the same capability as the one it was built on (Intel). So if it doesn’t work, install pillow-simd
from source instead.
Note that pillow-simd
will get overwritten by pillow
through update/install of any other package depending on pillow
. You can fool pillow-simd
into believing it is pillow
and then it’ll not get wiped out. You will have to make a local build for that.
If you have problems with these experimental packages please post here, including the output of python -m fastai.utils.check_perf
and python -m fastai.utils.show_install
and the exact problem/errors you encountered.
GPU Performance
See GPU Memory Notes.
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