Extending TorchScript with Custom C++ Operators¶
The PyTorch 1.0 release introduced a new programming model to PyTorch called TorchScript. TorchScript is a subset of the Python programming language which can be parsed, compiled and optimized by the TorchScript compiler. Further, compiled TorchScript models have the option of being serialized into an on-disk file format, which you can subsequently load and run from pure C++ (as well as Python) for inference.
TorchScript supports a large subset of operations provided by the torch
package, allowing you to express many kinds of complex models purely as a series
of tensor operations from PyTorch’s “standard library”. Nevertheless, there may
be times where you find yourself in need of extending TorchScript with a custom
C++ or CUDA function. While we recommend that you only resort to this option if
your idea cannot be expressed (efficiently enough) as a simple Python function,
we do provide a very friendly and simple interface for defining custom C++ and
CUDA kernels using ATen, PyTorch’s high
performance C++ tensor library. Once bound into TorchScript, you can embed these
custom kernels (or “ops”) into your TorchScript model and execute them both in
Python and in their serialized form directly in C++.
The following paragraphs give an example of writing a TorchScript custom op to
call into OpenCV, a computer vision library written
in C++. We will discuss how to work with tensors in C++, how to efficiently
convert them to third party tensor formats (in this case, OpenCV Mat
), how
to register your operator with the TorchScript runtime and finally how to
compile the operator and use it in Python and C++.
Implementing the Custom Operator in C++¶
For this tutorial, we’ll be exposing the warpPerspective
function, which applies a perspective transformation to an image, from OpenCV to
TorchScript as a custom operator. The first step is to write the implementation
of our custom operator in C++. Let’s call the file for this implementation
op.cpp
and make it look like this:
torch::Tensor warp_perspective(torch::Tensor image, torch::Tensor warp) {
// BEGIN image_mat
cv::Mat image_mat(/*rows=*/image.size(0),
/*cols=*/image.size(1),
/*type=*/CV_32FC1,
/*data=*/image.data_ptr<float>());
// END image_mat
// BEGIN warp_mat
cv::Mat warp_mat(/*rows=*/warp.size(0),
/*cols=*/warp.size(1),
/*type=*/CV_32FC1,
/*data=*/warp.data_ptr<float>());
// END warp_mat
// BEGIN output_mat
cv::Mat output_mat;
cv::warpPerspective(image_mat, output_mat, warp_mat, /*dsize=*/{8, 8});
// END output_mat
// BEGIN output_tensor
torch::Tensor output = torch::from_blob(output_mat.ptr<float>(), /*sizes=*/{8, 8});
return output.clone();
// END output_tensor
}
The code for this operator is quite short. At the top of the file, we include
the OpenCV header file, opencv2/opencv.hpp
, alongside the torch/script.h
header which exposes all the necessary goodies from PyTorch’s C++ API that we
need to write custom TorchScript operators. Our function warp_perspective
takes two arguments: an input image
and the warp
transformation matrix
we wish to apply to the image. The type of these inputs is torch::Tensor
,
PyTorch’s tensor type in C++ (which is also the underlying type of all tensors
in Python). The return type of our warp_perspective
function will also be a
torch::Tensor
.
Tip
See this note for
more information about ATen, the library that provides the Tensor
class to
PyTorch. Further, this tutorial describes how to
allocate and initialize new tensor objects in C++ (not required for this
operator).
Attention
The TorchScript compiler understands a fixed number of types. Only these types
can be used as arguments to your custom operator. Currently these types are:
torch::Tensor
, torch::Scalar
, double
, int64_t
and
std::vector
s of these types. Note that only double
and not
float
, and only int64_t
and not other integral types such as
int
, short
or long
are supported.
Inside of our function, the first thing we need to do is convert our PyTorch
tensors to OpenCV matrices, as OpenCV’s warpPerspective
expects cv::Mat
objects as inputs. Fortunately, there is a way to do this without copying
any data. In the first few lines,
cv::Mat image_mat(/*rows=*/image.size(0),
/*cols=*/image.size(1),
/*type=*/CV_32FC1,
/*data=*/image.data_ptr<float>());
we are calling this constructor
of the OpenCV Mat
class to convert our tensor to a Mat
object. We pass
it the number of rows and columns of the original image
tensor, the datatype
(which we’ll fix as float32
for this example), and finally a raw pointer to
the underlying data – a float*
. What is special about this constructor of
the Mat
class is that it does not copy the input data. Instead, it will
simply reference this memory for all operations performed on the Mat
. If an
in-place operation is performed on the image_mat
, this will be reflected in
the original image
tensor (and vice-versa). This allows us to call
subsequent OpenCV routines with the library’s native matrix type, even though
we’re actually storing the data in a PyTorch tensor. We repeat this procedure to
convert the warp
PyTorch tensor to the warp_mat
OpenCV matrix:
cv::Mat warp_mat(/*rows=*/warp.size(0),
/*cols=*/warp.size(1),
/*type=*/CV_32FC1,
/*data=*/warp.data_ptr<float>());
Next, we are ready to call the OpenCV function we were so eager to use in
TorchScript: warpPerspective
. For this, we pass the OpenCV function the
image_mat
and warp_mat
matrices, as well as an empty output matrix
called output_mat
. We also specify the size dsize
we want the output
matrix (image) to be. It is hardcoded to 8 x 8
for this example:
cv::Mat output_mat;
cv::warpPerspective(image_mat, output_mat, warp_mat, /*dsize=*/{8, 8});
The final step in our custom operator implementation is to convert the
output_mat
back into a PyTorch tensor, so that we can further use it in
PyTorch. This is strikingly similar to what we did earlier to convert in the
other direction. In this case, PyTorch provides a torch::from_blob
method. A
blob in this case is intended to mean some opaque, flat pointer to memory that
we want to interpret as a PyTorch tensor. The call to torch::from_blob
looks
like this:
torch::Tensor output = torch::from_blob(output_mat.ptr<float>(), /*sizes=*/{8, 8});
return output.clone();
We use the .ptr<float>()
method on the OpenCV Mat
class to get a raw
pointer to the underlying data (just like .data_ptr<float>()
for the PyTorch
tensor earlier). We also specify the output shape of the tensor, which we
hardcoded as 8 x 8
. The output of torch::from_blob
is then a
torch::Tensor
, pointing to the memory owned by the OpenCV matrix.
Before returning this tensor from our operator implementation, we must call
.clone()
on the tensor to perform a memory copy of the underlying data. The
reason for this is that torch::from_blob
returns a tensor that does not own
its data. At that point, the data is still owned by the OpenCV matrix. However,
this OpenCV matrix will go out of scope and be deallocated at the end of the
function. If we returned the output
tensor as-is, it would point to invalid
memory by the time we use it outside the function. Calling .clone()
returns
a new tensor with a copy of the original data that the new tensor owns itself.
It is thus safe to return to the outside world.
Registering the Custom Operator with TorchScript¶
Now that have implemented our custom operator in C++, we need to register it with the TorchScript runtime and compiler. This will allow the TorchScript compiler to resolve references to our custom operator in TorchScript code. If you have ever used the pybind11 library, our syntax for registration resembles the pybind11 syntax very closely. To register a single function, we write:
TORCH_LIBRARY(my_ops, m) {
m.def("warp_perspective", warp_perspective);
}
somewhere at the top level of our op.cpp
file. The TORCH_LIBRARY
macro
creates a function that will be called when your program starts. The name
of your library (my_ops
) is given as the first argument (it should not
be in quotes). The second argument (m
) defines a variable of type
torch::Library
which is the main interface to register your operators.
The method Library::def
actually creates an operator named warp_perspective
,
exposing it to both Python and TorchScript. You can define as many operators
as you like by making multiple calls to def
.
Behinds the scenes, the def
function is actually doing quite a bit of work:
it is using template metaprogramming to inspect the type signature of your
function and translate it into an operator schema which specifies the operators
type within TorchScript’s type system.
Building the Custom Operator¶
Now that we have implemented our custom operator in C++ and written its
registration code, it is time to build the operator into a (shared) library that
we can load into Python for research and experimentation, or into C++ for
inference in a no-Python environment. There exist multiple ways to build our
operator, using either pure CMake, or Python alternatives like setuptools
.
For brevity, the paragraphs below only discuss the CMake approach. The appendix
of this tutorial dives into other alternatives.
Environment setup¶
We need an installation of PyTorch and OpenCV. The easiest and most platform independent way to get both is to via Conda:
conda install -c pytorch pytorch
conda install opencv
Building with CMake¶
To build our custom operator into a shared library using the CMake build system, we need to write a short CMakeLists.txt
file and place it with our previous op.cpp
file. For this, let’s agree on a
a directory structure that looks like this:
warp-perspective/
op.cpp
CMakeLists.txt
The contents of our CMakeLists.txt
file should then be the following:
cmake_minimum_required(VERSION 3.1 FATAL_ERROR)
project(warp_perspective)
find_package(Torch REQUIRED)
find_package(OpenCV REQUIRED)
# Define our library target
add_library(warp_perspective SHARED op.cpp)
# Enable C++14
target_compile_features(warp_perspective PRIVATE cxx_std_14)
# Link against LibTorch
target_link_libraries(warp_perspective "${TORCH_LIBRARIES}")
# Link against OpenCV
target_link_libraries(warp_perspective opencv_core opencv_imgproc)
To now build our operator, we can run the following commands from our
warp_perspective
folder:
$ mkdir build
$ cd build
$ cmake -DCMAKE_PREFIX_PATH="$(python -c 'import torch.utils; print(torch.utils.cmake_prefix_path)')" ..
-- The C compiler identification is GNU 5.4.0
-- The CXX compiler identification is GNU 5.4.0
-- Check for working C compiler: /usr/bin/cc
-- Check for working C compiler: /usr/bin/cc -- works
-- Detecting C compiler ABI info
-- Detecting C compiler ABI info - done
-- Detecting C compile features
-- Detecting C compile features - done
-- Check for working CXX compiler: /usr/bin/c++
-- Check for working CXX compiler: /usr/bin/c++ -- works
-- Detecting CXX compiler ABI info
-- Detecting CXX compiler ABI info - done
-- Detecting CXX compile features
-- Detecting CXX compile features - done
-- Looking for pthread.h
-- Looking for pthread.h - found
-- Looking for pthread_create
-- Looking for pthread_create - not found
-- Looking for pthread_create in pthreads
-- Looking for pthread_create in pthreads - not found
-- Looking for pthread_create in pthread
-- Looking for pthread_create in pthread - found
-- Found Threads: TRUE
-- Found torch: /libtorch/lib/libtorch.so
-- Configuring done
-- Generating done
-- Build files have been written to: /warp_perspective/build
$ make -j
Scanning dependencies of target warp_perspective
[ 50%] Building CXX object CMakeFiles/warp_perspective.dir/op.cpp.o
[100%] Linking CXX shared library libwarp_perspective.so
[100%] Built target warp_perspective
which will place a libwarp_perspective.so
shared library file in the
build
folder. In the cmake
command above, we use the helper
variable torch.utils.cmake_prefix_path
to conveniently tell us where
the cmake files for our PyTorch install are.
We will explore how to use and call our operator in detail further below, but to get an early sensation of success, we can try running the following code in Python:
import torch
torch.ops.load_library("build/libwarp_perspective.so")
print(torch.ops.my_ops.warp_perspective)
If all goes well, this should print something like:
<built-in method my_ops::warp_perspective of PyCapsule object at 0x7f618fc6fa50>
which is the Python function we will later use to invoke our custom operator.
Using the TorchScript Custom Operator in Python¶
Once our custom operator is built into a shared library we are ready to use this operator in our TorchScript models in Python. There are two parts to this: first loading the operator into Python, and second using the operator in TorchScript code.
You already saw how to import your operator into Python:
torch.ops.load_library()
. This function takes the path to a shared library
containing custom operators, and loads it into the current process. Loading the
shared library will also execute the TORCH_LIBRARY
block. This will register
our custom operator with the TorchScript compiler and allow us to use that
operator in TorchScript code.
You can refer to your loaded operator as torch.ops.<namespace>.<function>
,
where <namespace>
is the namespace part of your operator name, and
<function>
the function name of your operator. For the operator we wrote
above, the namespace was my_ops
and the function name warp_perspective
,
which means our operator is available as torch.ops.my_ops.warp_perspective
.
While this function can be used in scripted or traced TorchScript modules, we
can also just use it in vanilla eager PyTorch and pass it regular PyTorch
tensors:
import torch
torch.ops.load_library("build/libwarp_perspective.so")
print(torch.ops.my_ops.warp_perspective(torch.randn(32, 32), torch.rand(3, 3)))
producing:
tensor([[0.0000, 0.3218, 0.4611, ..., 0.4636, 0.4636, 0.4636],
[0.3746, 0.0978, 0.5005, ..., 0.4636, 0.4636, 0.4636],
[0.3245, 0.0169, 0.0000, ..., 0.4458, 0.4458, 0.4458],
...,
[0.1862, 0.1862, 0.1692, ..., 0.0000, 0.0000, 0.0000],
[0.1862, 0.1862, 0.1692, ..., 0.0000, 0.0000, 0.0000],
[0.1862, 0.1862, 0.1692, ..., 0.0000, 0.0000, 0.0000]])
Note
What happens behind the scenes is that the first time you access
torch.ops.namespace.function
in Python, the TorchScript compiler (in C++
land) will see if a function namespace::function
has been registered, and
if so, return a Python handle to this function that we can subsequently use to
call into our C++ operator implementation from Python. This is one noteworthy
difference between TorchScript custom operators and C++ extensions: C++
extensions are bound manually using pybind11, while TorchScript custom ops are
bound on the fly by PyTorch itself. Pybind11 gives you more flexibility with
regards to what types and classes you can bind into Python and is thus
recommended for purely eager code, but it is not supported for TorchScript
ops.
From here on, you can use your custom operator in scripted or traced code just
as you would other functions from the torch
package. In fact, “standard
library” functions like torch.matmul
go through largely the same
registration path as custom operators, which makes custom operators really
first-class citizens when it comes to how and where they can be used in
TorchScript. (One difference, however, is that standard library functions
have custom written Python argument parsing logic that differs from
torch.ops
argument parsing.)
Using the Custom Operator with Tracing¶
Let’s start by embedding our operator in a traced function. Recall that for tracing, we start with some vanilla Pytorch code:
def compute(x, y, z):
return x.matmul(y) + torch.relu(z)
and then call torch.jit.trace
on it. We further pass torch.jit.trace
some example inputs, which it will forward to our implementation to record the
sequence of operations that occur as the inputs flow through it. The result of
this is effectively a “frozen” version of the eager PyTorch program, which the
TorchScript compiler can further analyze, optimize and serialize:
inputs = [torch.randn(4, 8), torch.randn(8, 5), torch.randn(4, 5)]
trace = torch.jit.trace(compute, inputs)
print(trace.graph)
Producing:
graph(%x : Float(4:8, 8:1),
%y : Float(8:5, 5:1),
%z : Float(4:5, 5:1)):
%3 : Float(4:5, 5:1) = aten::matmul(%x, %y) # test.py:10:0
%4 : Float(4:5, 5:1) = aten::relu(%z) # test.py:10:0
%5 : int = prim::Constant[value=1]() # test.py:10:0
%6 : Float(4:5, 5:1) = aten::add(%3, %4, %5) # test.py:10:0
return (%6)
Now, the exciting revelation is that we can simply drop our custom operator into
our PyTorch trace as if it were torch.relu
or any other torch
function:
def compute(x, y, z):
x = torch.ops.my_ops.warp_perspective(x, torch.eye(3))
return x.matmul(y) + torch.relu(z)
and then trace it as before:
inputs = [torch.randn(4, 8), torch.randn(8, 5), torch.randn(8, 5)]
trace = torch.jit.trace(compute, inputs)
print(trace.graph)
Producing:
graph(%x.1 : Float(4:8, 8:1),
%y : Float(8:5, 5:1),
%z : Float(8:5, 5:1)):
%3 : int = prim::Constant[value=3]() # test.py:25:0
%4 : int = prim::Constant[value=6]() # test.py:25:0
%5 : int = prim::Constant[value=0]() # test.py:25:0
%6 : Device = prim::Constant[value="cpu"]() # test.py:25:0
%7 : bool = prim::Constant[value=0]() # test.py:25:0
%8 : Float(3:3, 3:1) = aten::eye(%3, %4, %5, %6, %7) # test.py:25:0
%x : Float(8:8, 8:1) = my_ops::warp_perspective(%x.1, %8) # test.py:25:0
%10 : Float(8:5, 5:1) = aten::matmul(%x, %y) # test.py:26:0
%11 : Float(8:5, 5:1) = aten::relu(%z) # test.py:26:0
%12 : int = prim::Constant[value=1]() # test.py:26:0
%13 : Float(8:5, 5:1) = aten::add(%10, %11, %12) # test.py:26:0
return (%13)
Integrating TorchScript custom ops into traced PyTorch code is as easy as this!
Using the Custom Operator with Script¶
Besides tracing, another way to arrive at a TorchScript representation of a
PyTorch program is to directly write your code in TorchScript. TorchScript is
largely a subset of the Python language, with some restrictions that make it
easier for the TorchScript compiler to reason about programs. You turn your
regular PyTorch code into TorchScript by annotating it with
@torch.jit.script
for free functions and @torch.jit.script_method
for
methods in a class (which must also derive from torch.jit.ScriptModule
). See
here for more details on
TorchScript annotations.
One particular reason to use TorchScript instead of tracing is that tracing is unable to capture control flow in PyTorch code. As such, let us consider this function which does use control flow:
def compute(x, y):
if bool(x[0][0] == 42):
z = 5
else:
z = 10
return x.matmul(y) + z
To convert this function from vanilla PyTorch to TorchScript, we annotate it
with @torch.jit.script
:
@torch.jit.script
def compute(x, y):
if bool(x[0][0] == 42):
z = 5
else:
z = 10
return x.matmul(y) + z
This will just-in-time compile the compute
function into a graph
representation, which we can inspect in the compute.graph
property:
>>> compute.graph
graph(%x : Dynamic
%y : Dynamic) {
%14 : int = prim::Constant[value=1]()
%2 : int = prim::Constant[value=0]()
%7 : int = prim::Constant[value=42]()
%z.1 : int = prim::Constant[value=5]()
%z.2 : int = prim::Constant[value=10]()
%4 : Dynamic = aten::select(%x, %2, %2)
%6 : Dynamic = aten::select(%4, %2, %2)
%8 : Dynamic = aten::eq(%6, %7)
%9 : bool = prim::TensorToBool(%8)
%z : int = prim::If(%9)
block0() {
-> (%z.1)
}
block1() {
-> (%z.2)
}
%13 : Dynamic = aten::matmul(%x, %y)
%15 : Dynamic = aten::add(%13, %z, %14)
return (%15);
}
And now, just like before, we can use our custom operator like any other function inside of our script code:
torch.ops.load_library("libwarp_perspective.so")
@torch.jit.script
def compute(x, y):
if bool(x[0] == 42):
z = 5
else:
z = 10
x = torch.ops.my_ops.warp_perspective(x, torch.eye(3))
return x.matmul(y) + z
When the TorchScript compiler sees the reference to
torch.ops.my_ops.warp_perspective
, it will find the implementation we
registered via the TORCH_LIBRARY
function in C++, and compile it into its
graph representation:
>>> compute.graph
graph(%x.1 : Dynamic
%y : Dynamic) {
%20 : int = prim::Constant[value=1]()
%16 : int[] = prim::Constant[value=[0, -1]]()
%14 : int = prim::Constant[value=6]()
%2 : int = prim::Constant[value=0]()
%7 : int = prim::Constant[value=42]()
%z.1 : int = prim::Constant[value=5]()
%z.2 : int = prim::Constant[value=10]()
%13 : int = prim::Constant[value=3]()
%4 : Dynamic = aten::select(%x.1, %2, %2)
%6 : Dynamic = aten::select(%4, %2, %2)
%8 : Dynamic = aten::eq(%6, %7)
%9 : bool = prim::TensorToBool(%8)
%z : int = prim::If(%9)
block0() {
-> (%z.1)
}
block1() {
-> (%z.2)
}
%17 : Dynamic = aten::eye(%13, %14, %2, %16)
%x : Dynamic = my_ops::warp_perspective(%x.1, %17)
%19 : Dynamic = aten::matmul(%x, %y)
%21 : Dynamic = aten::add(%19, %z, %20)
return (%21);
}
Notice in particular the reference to my_ops::warp_perspective
at the end of
the graph.
Attention
The TorchScript graph representation is still subject to change. Do not rely on it looking like this.
And that’s really it when it comes to using our custom operator in Python. In
short, you import the library containing your operator(s) using
torch.ops.load_library
, and call your custom op like any other torch
operator from your traced or scripted TorchScript code.
Using the TorchScript Custom Operator in C++¶
One useful feature of TorchScript is the ability to serialize a model into an on-disk file. This file can be sent over the wire, stored in a file system or, more importantly, be dynamically deserialized and executed without needing to keep the original source code around. This is possible in Python, but also in C++. For this, PyTorch provides a pure C++ API for deserializing as well as executing TorchScript models. If you haven’t yet, please read the tutorial on loading and running serialized TorchScript models in C++, on which the next few paragraphs will build.
In short, custom operators can be executed just like regular torch
operators
even when deserialized from a file and run in C++. The only requirement for this
is to link the custom operator shared library we built earlier with the C++
application in which we execute the model. In Python, this worked simply calling
torch.ops.load_library
. In C++, you need to link the shared library with
your main application in whatever build system you are using. The following
example will showcase this using CMake.
Note
Technically, you can also dynamically load the shared library into your C++ application at runtime in much the same way we did it in Python. On Linux, you can do this with dlopen. There exist equivalents on other platforms.
Building on the C++ execution tutorial linked above, let’s start with a minimal
C++ application in one file, main.cpp
in a different folder from our
custom operator, that loads and executes a serialized TorchScript model:
#include <torch/script.h> // One-stop header.
#include <iostream>
#include <memory>
int main(int argc, const char* argv[]) {
if (argc != 2) {
std::cerr << "usage: example-app <path-to-exported-script-module>\n";
return -1;
}
// Deserialize the ScriptModule from a file using torch::jit::load().
std::shared_ptr<torch::jit::script::Module> module = torch::jit::load(argv[1]);
std::vector<torch::jit::IValue> inputs;
inputs.push_back(torch::randn({4, 8}));
inputs.push_back(torch::randn({8, 5}));
torch::Tensor output = module->forward(std::move(inputs)).toTensor();
std::cout << output << std::endl;
}
Along with a small CMakeLists.txt
file:
cmake_minimum_required(VERSION 3.1 FATAL_ERROR)
project(example_app)
find_package(Torch REQUIRED)
add_executable(example_app main.cpp)
target_link_libraries(example_app "${TORCH_LIBRARIES}")
target_compile_features(example_app PRIVATE cxx_range_for)
At this point, we should be able to build the application:
And run it without passing a model just yet:
Next, let’s serialize the script function we wrote earlier that uses our custom operator:
torch.ops.load_library("libwarp_perspective.so")
@torch.jit.script
def compute(x, y):
if bool(x[0][0] == 42):
z = 5
else:
z = 10
x = torch.ops.my_ops.warp_perspective(x, torch.eye(3))
return x.matmul(y) + z
compute.save("example.pt")
The last line will serialize the script function into a file called “example.pt”. If we then pass this serialized model to our C++ application, we can run it straight away:
Or maybe not. Maybe not just yet. Of course! We haven’t linked the custom operator library with our application yet. Let’s do this right now, and to do it properly let’s update our file organization slightly, to look like this:
example_app/
CMakeLists.txt
main.cpp
warp_perspective/
CMakeLists.txt
op.cpp
This will allow us to add the warp_perspective
library CMake target as a
subdirectory of our application target. The top level CMakeLists.txt
in the
example_app
folder should look like this:
cmake_minimum_required(VERSION 3.1 FATAL_ERROR)
project(example_app)
find_package(Torch REQUIRED)
add_subdirectory(warp_perspective)
add_executable(example_app main.cpp)
target_link_libraries(example_app "${TORCH_LIBRARIES}")
target_link_libraries(example_app -Wl,--no-as-needed warp_perspective)
target_compile_features(example_app PRIVATE cxx_range_for)
This basic CMake configuration looks much like before, except that we add the
warp_perspective
CMake build as a subdirectory. Once its CMake code runs, we
link our example_app
application with the warp_perspective
shared
library.
Attention
There is one crucial detail embedded in the above example: The
-Wl,--no-as-needed
prefix to the warp_perspective
link line. This is
required because we will not actually be calling any function from the
warp_perspective
shared library in our application code. We only need the
TORCH_LIBRARY
function to run. Inconveniently, this
confuses the linker and makes it think it can just skip linking against the
library altogether. On Linux, the -Wl,--no-as-needed
flag forces the link
to happen (NB: this flag is specific to Linux!). There are other workarounds
for this. The simplest is to define some function in the operator library
that you need to call from the main application. This could be as simple as a
function void init();
declared in some header, which is then defined as
void init() { }
in the operator library. Calling this init()
function
in the main application will give the linker the impression that this is a
library worth linking against. Unfortunately, this is outside of our control,
and we would rather let you know the reason and the simple workaround for this
than handing you some opaque macro to plop in your code.
Now, since we find the Torch
package at the top level now, the
CMakeLists.txt
file in the warp_perspective
subdirectory can be
shortened a bit. It should look like this:
find_package(OpenCV REQUIRED)
add_library(warp_perspective SHARED op.cpp)
target_compile_features(warp_perspective PRIVATE cxx_range_for)
target_link_libraries(warp_perspective PRIVATE "${TORCH_LIBRARIES}")
target_link_libraries(warp_perspective PRIVATE opencv_core opencv_photo)
Let’s re-build our example app, which will also link with the custom operator
library. In the top level example_app
directory:
$ mkdir build
$ cd build
$ cmake -DCMAKE_PREFIX_PATH="$(python -c 'import torch.utils; print(torch.utils.cmake_prefix_path)')" ..
-- The C compiler identification is GNU 5.4.0
-- The CXX compiler identification is GNU 5.4.0
-- Check for working C compiler: /usr/bin/cc
-- Check for working C compiler: /usr/bin/cc -- works
-- Detecting C compiler ABI info
-- Detecting C compiler ABI info - done
-- Detecting C compile features
-- Detecting C compile features - done
-- Check for working CXX compiler: /usr/bin/c++
-- Check for working CXX compiler: /usr/bin/c++ -- works
-- Detecting CXX compiler ABI info
-- Detecting CXX compiler ABI info - done
-- Detecting CXX compile features
-- Detecting CXX compile features - done
-- Looking for pthread.h
-- Looking for pthread.h - found
-- Looking for pthread_create
-- Looking for pthread_create - not found
-- Looking for pthread_create in pthreads
-- Looking for pthread_create in pthreads - not found
-- Looking for pthread_create in pthread
-- Looking for pthread_create in pthread - found
-- Found Threads: TRUE
-- Found torch: /libtorch/lib/libtorch.so
-- Configuring done
-- Generating done
-- Build files have been written to: /warp_perspective/example_app/build
$ make -j
Scanning dependencies of target warp_perspective
[ 25%] Building CXX object warp_perspective/CMakeFiles/warp_perspective.dir/op.cpp.o
[ 50%] Linking CXX shared library libwarp_perspective.so
[ 50%] Built target warp_perspective
Scanning dependencies of target example_app
[ 75%] Building CXX object CMakeFiles/example_app.dir/main.cpp.o
[100%] Linking CXX executable example_app
[100%] Built target example_app
If we now run the example_app
binary and hand it our serialized model, we
should arrive at a happy ending:
$ ./example_app example.pt
11.4125 5.8262 9.5345 8.6111 12.3997
7.4683 13.5969 9.0850 11.0698 9.4008
7.4597 15.0926 12.5727 8.9319 9.0666
9.4834 11.1747 9.0162 10.9521 8.6269
10.0000 10.0000 10.0000 10.0000 10.0000
10.0000 10.0000 10.0000 10.0000 10.0000
10.0000 10.0000 10.0000 10.0000 10.0000
10.0000 10.0000 10.0000 10.0000 10.0000
[ Variable[CPUFloatType]{8,5} ]
Success! You are now ready to inference away.
Conclusion¶
This tutorial walked you throw how to implement a custom TorchScript operator in C++, how to build it into a shared library, how to use it in Python to define TorchScript models and lastly how to load it into a C++ application for inference workloads. You are now ready to extend your TorchScript models with C++ operators that interface with third party C++ libraries, write custom high performance CUDA kernels, or implement any other use case that requires the lines between Python, TorchScript and C++ to blend smoothly.
As always, if you run into any problems or have questions, you can use our forum or GitHub issues to get in touch. Also, our frequently asked questions (FAQ) page may have helpful information.
Appendix A: More Ways of Building Custom Operators¶
The section “Building the Custom Operator” explained how to build a custom operator into a shared library using CMake. This appendix outlines two further approaches for compilation. Both of them use Python as the “driver” or “interface” to the compilation process. Also, both re-use the existing infrastructure PyTorch provides for *C++ extensions*, which are the vanilla (eager) PyTorch equivalent of TorchScript custom operators that rely on pybind11 for “explicit” binding of functions from C++ into Python.
The first approach uses C++ extensions’ convenient just-in-time (JIT)
compilation interface
to compile your code in the background of your PyTorch script the first time you
run it. The second approach relies on the venerable setuptools
package and
involves writing a separate setup.py
file. This allows more advanced
configuration as well as integration with other setuptools
-based projects.
We will explore both approaches in detail below.
Building with JIT compilation¶
The JIT compilation feature provided by the PyTorch C++ extension toolkit allows embedding the compilation of your custom operator directly into your Python code, e.g. at the top of your training script.
Note
“JIT compilation” here has nothing to do with the JIT compilation taking place in the TorchScript compiler to optimize your program. It simply means that your custom operator C++ code will be compiled in a folder under your system’s /tmp directory the first time you import it, as if you had compiled it yourself beforehand.
This JIT compilation feature comes in two flavors. In the first, you still keep
your operator implementation in a separate file (op.cpp
), and then use
torch.utils.cpp_extension.load()
to compile your extension. Usually, this
function will return the Python module exposing your C++ extension. However,
since we are not compiling our custom operator into its own Python module, we
only want to compile a plain shared library . Fortunately,
torch.utils.cpp_extension.load()
has an argument is_python_module
which
we can set to False
to indicate that we are only interested in building a
shared library and not a Python module. torch.utils.cpp_extension.load()
will then compile and also load the shared library into the current process,
just like torch.ops.load_library
did before:
import torch.utils.cpp_extension
torch.utils.cpp_extension.load(
name="warp_perspective",
sources=["op.cpp"],
extra_ldflags=["-lopencv_core", "-lopencv_imgproc"],
is_python_module=False,
verbose=True
)
print(torch.ops.my_ops.warp_perspective)
This should approximately print:
<built-in method my_ops::warp_perspective of PyCapsule object at 0x7f3e0f840b10>
The second flavor of JIT compilation allows you to pass the source code for your
custom TorchScript operator as a string. For this, use
torch.utils.cpp_extension.load_inline
:
import torch
import torch.utils.cpp_extension
op_source = """
#include <opencv2/opencv.hpp>
#include <torch/script.h>
torch::Tensor warp_perspective(torch::Tensor image, torch::Tensor warp) {
cv::Mat image_mat(/*rows=*/image.size(0),
/*cols=*/image.size(1),
/*type=*/CV_32FC1,
/*data=*/image.data<float>());
cv::Mat warp_mat(/*rows=*/warp.size(0),
/*cols=*/warp.size(1),
/*type=*/CV_32FC1,
/*data=*/warp.data<float>());
cv::Mat output_mat;
cv::warpPerspective(image_mat, output_mat, warp_mat, /*dsize=*/{64, 64});
torch::Tensor output =
torch::from_blob(output_mat.ptr<float>(), /*sizes=*/{64, 64});
return output.clone();
}
TORCH_LIBRARY(my_ops, m) {
m.def("warp_perspective", &warp_perspective);
}
"""
torch.utils.cpp_extension.load_inline(
name="warp_perspective",
cpp_sources=op_source,
extra_ldflags=["-lopencv_core", "-lopencv_imgproc"],
is_python_module=False,
verbose=True,
)
print(torch.ops.my_ops.warp_perspective)
Naturally, it is best practice to only use
torch.utils.cpp_extension.load_inline
if your source code is reasonably
short.
Note that if you’re using this in a Jupyter Notebook, you should not execute the cell with the registration multiple times because each execution registers a new library and re-registers the custom operator. If you need to re-execute it, please restart the Python kernel of your notebook beforehand.
Building with Setuptools¶
The second approach to building our custom operator exclusively from Python is
to use setuptools
. This has the advantage that setuptools
has a quite
powerful and extensive interface for building Python modules written in C++.
However, since setuptools
is really intended for building Python modules and
not plain shared libraries (which do not have the necessary entry points Python
expects from a module), this route can be slightly quirky. That said, all you
need is a setup.py
file in place of the CMakeLists.txt
which looks like
this:
from setuptools import setup
from torch.utils.cpp_extension import BuildExtension, CppExtension
setup(
name="warp_perspective",
ext_modules=[
CppExtension(
"warp_perspective",
["example_app/warp_perspective/op.cpp"],
libraries=["opencv_core", "opencv_imgproc"],
)
],
cmdclass={"build_ext": BuildExtension.with_options(no_python_abi_suffix=True)},
)
Notice that we enabled the no_python_abi_suffix
option in the
BuildExtension
at the bottom. This instructs setuptools
to omit any
Python-3 specific ABI suffixes in the name of the produced shared library.
Otherwise, on Python 3.7 for example, the library may be called
warp_perspective.cpython-37m-x86_64-linux-gnu.so
where
cpython-37m-x86_64-linux-gnu
is the ABI tag, but we really just want it to
be called warp_perspective.so
If we now run python setup.py build develop
in a terminal from within the
folder in which setup.py
is situated, we should see something like:
$ python setup.py build develop
running build
running build_ext
building 'warp_perspective' extension
creating build
creating build/temp.linux-x86_64-3.7
gcc -pthread -B /root/local/miniconda/compiler_compat -Wl,--sysroot=/ -Wsign-compare -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/root/local/miniconda/lib/python3.7/site-packages/torch/lib/include -I/root/local/miniconda/lib/python3.7/site-packages/torch/lib/include/torch/csrc/api/include -I/root/local/miniconda/lib/python3.7/site-packages/torch/lib/include/TH -I/root/local/miniconda/lib/python3.7/site-packages/torch/lib/include/THC -I/root/local/miniconda/include/python3.7m -c op.cpp -o build/temp.linux-x86_64-3.7/op.o -DTORCH_API_INCLUDE_EXTENSION_H -DTORCH_EXTENSION_NAME=warp_perspective -D_GLIBCXX_USE_CXX11_ABI=0 -std=c++11
cc1plus: warning: command line option ‘-Wstrict-prototypes’ is valid for C/ObjC but not for C++
creating build/lib.linux-x86_64-3.7
g++ -pthread -shared -B /root/local/miniconda/compiler_compat -L/root/local/miniconda/lib -Wl,-rpath=/root/local/miniconda/lib -Wl,--no-as-needed -Wl,--sysroot=/ build/temp.linux-x86_64-3.7/op.o -lopencv_core -lopencv_imgproc -o build/lib.linux-x86_64-3.7/warp_perspective.so
running develop
running egg_info
creating warp_perspective.egg-info
writing warp_perspective.egg-info/PKG-INFO
writing dependency_links to warp_perspective.egg-info/dependency_links.txt
writing top-level names to warp_perspective.egg-info/top_level.txt
writing manifest file 'warp_perspective.egg-info/SOURCES.txt'
reading manifest file 'warp_perspective.egg-info/SOURCES.txt'
writing manifest file 'warp_perspective.egg-info/SOURCES.txt'
running build_ext
copying build/lib.linux-x86_64-3.7/warp_perspective.so ->
Creating /root/local/miniconda/lib/python3.7/site-packages/warp-perspective.egg-link (link to .)
Adding warp-perspective 0.0.0 to easy-install.pth file
Installed /warp_perspective
Processing dependencies for warp-perspective==0.0.0
Finished processing dependencies for warp-perspective==0.0.0
This will produce a shared library called warp_perspective.so
, which we can
pass to torch.ops.load_library
as we did earlier to make our operator
visible to TorchScript:
>>> import torch
>>> torch.ops.load_library("warp_perspective.so")
>>> print(torch.ops.custom.warp_perspective)
<built-in method custom::warp_perspective of PyCapsule object at 0x7ff51c5b7bd0>