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24 changes: 24 additions & 0 deletions backends/cuda/runtime/shims/tests/targets.bzl
Original file line number Diff line number Diff line change
Expand Up @@ -42,3 +42,27 @@ def define_common_targets():
cuda_shim_cpp_unittest("aoti_torch_new_tensor_handle")
cuda_shim_cpp_unittest("aoti_torch_item_bool")
cuda_shim_cpp_unittest("aoti_torch_assign_tensors_out")

cpp_unittest(
name = "test_op__device_copy",
srcs = ["test_op__device_copy.cpp"],
deps = [
"//executorch/backends/cuda/runtime:cuda_backend",
"//executorch/kernels/portable:generated_lib",
"//executorch/kernels/portable:generated_lib_headers",
"//executorch/kernels/portable/cpu:op__device_copy",
"//executorch/runtime/core:device_allocator",
"//executorch/runtime/core/exec_aten:lib",
"//executorch/runtime/core/portable_type:portable_type",
"//executorch/runtime/kernel:kernel_runtime_context",
"//executorch/runtime/platform:platform",
],
external_deps = [
("cuda", None, "cuda-lazy"),
],
preprocessor_flags = ["-DCUDA_AVAILABLE=1"],
keep_gpu_sections = True,
remote_execution = re_test_utils.remote_execution(
platform = "gpu-remote-execution",
),
)
195 changes: 195 additions & 0 deletions backends/cuda/runtime/shims/tests/test_op__device_copy.cpp
Original file line number Diff line number Diff line change
@@ -0,0 +1,195 @@
/*
* Copyright (c) Meta Platforms, Inc. and affiliates.
* All rights reserved.
*
* This source code is licensed under the BSD-style license found in the
* LICENSE file in the root directory of this source tree.
*/

#include <cuda_runtime.h>
#include <executorch/kernels/portable/Functions.h>
#include <executorch/runtime/core/device_allocator.h>
#include <executorch/runtime/core/exec_aten/exec_aten.h>
#include <executorch/runtime/core/portable_type/tensor_impl.h>
#include <executorch/runtime/kernel/kernel_runtime_context.h>
#include <executorch/runtime/platform/runtime.h>
#include <gtest/gtest.h>

#if (defined(__has_feature) && __has_feature(address_sanitizer)) || \
defined(__SANITIZE_ADDRESS__)
#include <sanitizer/lsan_interface.h>
#define EXECUTORCH_CUDA_DEVICE_COPY_HAS_LSAN_INTERFACE 1
#else
#define EXECUTORCH_CUDA_DEVICE_COPY_HAS_LSAN_INTERFACE 0
#endif

#include <cstdint>
#include <memory>
#include <vector>

using executorch::aten::ScalarType;
using executorch::aten::Tensor;
using executorch::aten::TensorImpl;
using executorch::runtime::Error;
using executorch::runtime::get_device_allocator;
using executorch::runtime::KernelRuntimeContext;
using executorch::runtime::TensorShapeDynamism;
using executorch::runtime::etensor::DeviceIndex;
using executorch::runtime::etensor::DeviceType;

namespace {

struct CudaDeleter {
void operator()(void* ptr) const {
if (ptr != nullptr) {
cudaFree(ptr);
}
}
};

using CudaPtr = std::unique_ptr<void, CudaDeleter>;

CudaPtr allocate_cuda(size_t nbytes) {
void* ptr = nullptr;
const cudaError_t err = cudaMalloc(&ptr, nbytes);
EXPECT_EQ(err, cudaSuccess) << "cudaMalloc failed";
return CudaPtr(ptr);
}

bool is_cuda_available() {
#if EXECUTORCH_CUDA_DEVICE_COPY_HAS_LSAN_INTERFACE
__lsan_disable();
#endif
int device_count = 0;
const cudaError_t err = cudaGetDeviceCount(&device_count);
#if EXECUTORCH_CUDA_DEVICE_COPY_HAS_LSAN_INTERFACE
__lsan_enable();
#endif
return err == cudaSuccess && device_count > 0;
}

std::vector<float> copy_cuda_to_host(const void* device_ptr, size_t numel) {
std::vector<float> host(numel);
const cudaError_t err = cudaMemcpy(
host.data(), device_ptr, numel * sizeof(float), cudaMemcpyDeviceToHost);
EXPECT_EQ(err, cudaSuccess) << "cudaMemcpy D2H failed";
return host;
}

void copy_host_to_cuda(const std::vector<float>& host, void* device_ptr) {
const cudaError_t err = cudaMemcpy(
device_ptr,
host.data(),
host.size() * sizeof(float),
cudaMemcpyHostToDevice);
EXPECT_EQ(err, cudaSuccess) << "cudaMemcpy H2D failed";
}

class CudaDeviceCopyOpTest : public ::testing::Test {
protected:
static void SetUpTestSuite() {
executorch::runtime::runtime_init();
ASSERT_NE(get_device_allocator(DeviceType::CUDA), nullptr)
<< "Linking cuda_backend should auto-register the CUDA allocator";
}

void SetUp() override {
if (!is_cuda_available()) {
GTEST_SKIP() << "CUDA not available, skipping CUDA device copy op tests";
}
}

Tensor& op_h2d_copy_out(const Tensor& self, Tensor& out) {
return torch::executor::et_copy::_h2d_copy_outf(context_, self, out);
}

Tensor& op_d2h_copy_out(const Tensor& self, Tensor& out) {
return torch::executor::et_copy::_d2h_copy_outf(context_, self, out);
}

KernelRuntimeContext context_;
};

} // namespace

TEST_F(CudaDeviceCopyOpTest, H2dCopyUsesRegisteredCudaAllocator) {
std::vector<float> src_data = {1.0f, 2.0f, 3.0f, 4.0f};
auto device_data = allocate_cuda(src_data.size() * sizeof(float));
ASSERT_NE(device_data.get(), nullptr);

int32_t sizes[] = {static_cast<int32_t>(src_data.size())};
uint8_t dim_order[] = {0};
int32_t strides[] = {1};

TensorImpl src_impl(
ScalarType::Float,
1,
sizes,
src_data.data(),
dim_order,
strides,
TensorShapeDynamism::STATIC,
DeviceType::CPU,
0);
Tensor src(&src_impl);

TensorImpl dst_impl(
ScalarType::Float,
1,
sizes,
device_data.get(),
dim_order,
strides,
TensorShapeDynamism::STATIC,
DeviceType::CUDA,
0);
Tensor dst(&dst_impl);

Tensor& result = op_h2d_copy_out(src, dst);

EXPECT_EQ(context_.failure_state(), Error::Ok);
EXPECT_EQ(&result, &dst);
EXPECT_EQ(copy_cuda_to_host(device_data.get(), src_data.size()), src_data);
}

TEST_F(CudaDeviceCopyOpTest, D2hCopyUsesRegisteredCudaAllocator) {
const std::vector<float> expected = {5.0f, 6.0f, 7.0f, 8.0f};
auto device_data = allocate_cuda(expected.size() * sizeof(float));
ASSERT_NE(device_data.get(), nullptr);
copy_host_to_cuda(expected, device_data.get());

std::vector<float> dst_data(expected.size(), 0.0f);
int32_t sizes[] = {static_cast<int32_t>(expected.size())};
uint8_t dim_order[] = {0};
int32_t strides[] = {1};

TensorImpl src_impl(
ScalarType::Float,
1,
sizes,
device_data.get(),
dim_order,
strides,
TensorShapeDynamism::STATIC,
DeviceType::CUDA,
0);
Tensor src(&src_impl);

TensorImpl dst_impl(
ScalarType::Float,
1,
sizes,
dst_data.data(),
dim_order,
strides,
TensorShapeDynamism::STATIC,
DeviceType::CPU,
0);
Tensor dst(&dst_impl);

Tensor& result = op_d2h_copy_out(src, dst);

EXPECT_EQ(context_.failure_state(), Error::Ok);
EXPECT_EQ(&result, &dst);
EXPECT_EQ(dst_data, expected);
}
154 changes: 154 additions & 0 deletions kernels/portable/cpu/op__device_copy.cpp
Original file line number Diff line number Diff line change
@@ -0,0 +1,154 @@
/*
* Copyright (c) Meta Platforms, Inc. and affiliates.
* All rights reserved.
*
* This source code is licensed under the BSD-style license found in the
* LICENSE file in the root directory of this source tree.
*/

/**
* Runtime kernels for et_copy._h2d_copy and et_copy._d2h_copy ops.
*
* These ops transfer tensor data between CPU and device memory using
* the DeviceAllocator interface. The device type is inferred from the
* tensor metadata (out.device_type() for H2D, self.device_type() for D2H),
* which was set during AOT serialization by PropagateDevicePass.
*/

#include <executorch/runtime/core/device_allocator.h>
#include <executorch/runtime/core/exec_aten/exec_aten.h>
#include <executorch/runtime/kernel/kernel_includes.h>

namespace torch {
namespace executor {
namespace native {

using Tensor = executorch::aten::Tensor;
using DeviceAllocator = executorch::runtime::DeviceAllocator;
using Error = executorch::runtime::Error;

/**
* Copies tensor data from host (CPU) memory to device memory.
*
* self: source tensor on CPU
* out: destination tensor on device (memory-planned by runtime)
*
* The device type and index are inferred from out's TensorImpl metadata.
*/
Tensor&
_h2d_copy_out(KernelRuntimeContext& ctx, const Tensor& self, Tensor& out) {
auto device_type = out.unsafeGetTensorImpl()->device_type();
auto device_index = out.unsafeGetTensorImpl()->device_index();

ET_KERNEL_CHECK_MSG(
ctx,
self.unsafeGetTensorImpl()->device_type() ==
executorch::runtime::etensor::DeviceType::CPU,
InvalidArgument,
out,
"_h2d_copy: source tensor must be on CPU, got device_type=%d",
static_cast<int>(self.unsafeGetTensorImpl()->device_type()));

ET_KERNEL_CHECK_MSG(
ctx,
device_type != executorch::runtime::etensor::DeviceType::CPU,
InvalidArgument,
out,
"_h2d_copy: destination tensor must be on a non-CPU device");

auto nbytes = self.nbytes();
ET_KERNEL_CHECK_MSG(
ctx,
nbytes == out.nbytes(),
InvalidArgument,
out,
"_h2d_copy: size mismatch: self.nbytes()=%zu, out.nbytes()=%zu",
nbytes,
out.nbytes());

DeviceAllocator* allocator =
executorch::runtime::get_device_allocator(device_type);
ET_KERNEL_CHECK_MSG(
ctx,
allocator != nullptr,
NotFound,
out,
"_h2d_copy: no device allocator registered for device_type=%d",
static_cast<int>(device_type));

Error err = allocator->copy_host_to_device(
out.mutable_data_ptr(), self.const_data_ptr(), nbytes, device_index);
ET_KERNEL_CHECK_MSG(
ctx,
err == Error::Ok,
Internal,
out,
"_h2d_copy: copy_host_to_device failed");

return out;
}

/**
* Copies tensor data from device memory to host (CPU) memory.
*
* self: source tensor on device
* out: destination tensor on CPU (memory-planned by runtime)
*
* The device type and index are inferred from self's TensorImpl metadata.
*/
Tensor&
_d2h_copy_out(KernelRuntimeContext& ctx, const Tensor& self, Tensor& out) {
auto device_type = self.unsafeGetTensorImpl()->device_type();
auto device_index = self.unsafeGetTensorImpl()->device_index();

ET_KERNEL_CHECK_MSG(
ctx,
device_type != executorch::runtime::etensor::DeviceType::CPU,
InvalidArgument,
out,
"_d2h_copy: source tensor must be on a non-CPU device");

ET_KERNEL_CHECK_MSG(
ctx,
out.unsafeGetTensorImpl()->device_type() ==
executorch::runtime::etensor::DeviceType::CPU,
InvalidArgument,
out,
"_d2h_copy: destination tensor must be on CPU, got device_type=%d",
static_cast<int>(out.unsafeGetTensorImpl()->device_type()));

auto nbytes = self.nbytes();
ET_KERNEL_CHECK_MSG(
ctx,
nbytes == out.nbytes(),
InvalidArgument,
out,
"_d2h_copy: size mismatch: self.nbytes()=%zu, out.nbytes()=%zu",
nbytes,
out.nbytes());

DeviceAllocator* allocator =
executorch::runtime::get_device_allocator(device_type);
ET_KERNEL_CHECK_MSG(
ctx,
allocator != nullptr,
NotFound,
out,
"_d2h_copy: no device allocator registered for device_type=%d",
static_cast<int>(device_type));

Error err = allocator->copy_device_to_host(
out.mutable_data_ptr(), self.const_data_ptr(), nbytes, device_index);
ET_KERNEL_CHECK_MSG(
ctx,
err == Error::Ok,
Internal,
out,
"_d2h_copy: copy_device_to_host failed");

return out;
}

} // namespace native
} // namespace executor
} // namespace torch
10 changes: 10 additions & 0 deletions kernels/portable/functions.yaml
Original file line number Diff line number Diff line change
Expand Up @@ -1045,6 +1045,16 @@
- arg_meta: null
kernel_name: torch::executor::zeros_out

- func: et_copy::_h2d_copy.out(Tensor self, *, Tensor(a!) out) -> Tensor(a!)
kernels:
- arg_meta: null
kernel_name: torch::executor::_h2d_copy_out

- func: et_copy::_d2h_copy.out(Tensor self, *, Tensor(a!) out) -> Tensor(a!)
kernels:
- arg_meta: null
kernel_name: torch::executor::_d2h_copy_out

- func: dim_order_ops::_empty_dim_order.out(int[] size, *, int[]? dim_order=None, Tensor(a!) out) -> Tensor(a!)
kernels:
- arg_meta: null
Expand Down
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