onnxruntime/onnxruntime/test/framework/local_kernel_registry_test.cc
Changming Sun 201b089a36
Fix some warnings on Windows (#2560)
1. Enable warning "4503" # Decorated name length exceeded.
2. Enable warning "4146" # unary minus operator applied to unsigned type.
3. Enable float64 support for the Softmax operator
4. Enable compliance checks for Windows x86 32bits build
5. Use TryBatchParallelFor to replace some fallback code in mlas pooling.cc
6. Fix Android CI pipeline.
2020-01-22 15:59:11 -08:00

330 lines
11 KiB
C++

// Copyright (c) Microsoft Corporation. All rights reserved.
// Licensed under the MIT License.
#include "core/session/inference_session.h"
#include <algorithm>
#include <functional>
#include <iterator>
#include <thread>
#include "core/common/logging/logging.h"
#include "core/framework/execution_provider.h"
#include "core/framework/op_kernel.h"
#include "core/framework/session_state.h"
#include "core/graph/graph_viewer.h"
#include "core/graph/model.h"
#include "core/graph/op.h"
#include "core/providers/cpu/cpu_execution_provider.h"
#include "core/providers/cpu/math/element_wise_ops.h"
#include "core/framework/tensorprotoutils.h"
#include "test/capturing_sink.h"
#include "test/test_environment.h"
#include "test_utils.h"
#include "gtest/gtest.h"
#include "core/graph/schema_registry.h"
#include "core/framework/customregistry.h"
using namespace ONNX_NAMESPACE;
using namespace onnxruntime::common;
namespace onnxruntime {
namespace test {
// Foo kernel which is doing Add
template <typename T>
class FooKernel : public OpKernel {
public:
FooKernel(const OpKernelInfo& info) : OpKernel(info) {}
Status Compute(OpKernelContext* context) const {
const auto* X = context->Input<Tensor>(0);
const auto* W = context->Input<Tensor>(1);
auto X_Data = X->Data<T>();
auto W_Data = W->Data<T>();
auto shape = X->Shape().GetDims();
auto* Y = context->Output(0, shape);
auto* Y_Data = Y->MutableData<T>();
size_t size = 1;
for (size_t i = 0; i < shape.size(); i++) {
size *= shape[i];
}
for (size_t i = 0; i < size; i++) {
Y_Data[i] = X_Data[i] + W_Data[i];
}
return Status::OK();
}
};
ONNX_NAMESPACE::OpSchema GetFooSchema() {
ONNX_NAMESPACE::OpSchema schema("Foo", "unknown", 0);
schema.Input(0,
"A",
"First operand, should share the type with the second operand.",
"T");
schema.Input(
1,
"B",
"Second operand. With broadcasting can be of smaller size than A. "
"If broadcasting is disabled it should be of the same size.",
"T");
schema.Output(0, "C", "Result, has same dimensions and type as A", "T");
schema.TypeConstraint(
"T",
OpSchema::numeric_types_for_math_reduction(),
"Constrain input and output types to high-precision numeric tensors.");
schema.SinceVersion(7);
return schema;
}
//For test purpose, we register this Foo kernel to Mul op.
//Once the custom schema is ready, should update this.
KernelDefBuilder FooKernelDef(const char* schema_name) {
KernelDefBuilder def;
def.SetName(schema_name)
.SetDomain(onnxruntime::kOnnxDomain)
.SinceVersion(7)
.Provider(onnxruntime::kCpuExecutionProvider)
.TypeConstraint("T", DataTypeImpl::GetTensorType<float>());
return def;
}
OpKernel* CreateFooKernel(const OpKernelInfo& kernel_info) {
return new FooKernel<float>(kernel_info);
}
// kernel with optional outputs
KernelDefBuilder OptionalKernelDef() {
KernelDefBuilder def;
def.SetName("OptionalOp")
.SetDomain(onnxruntime::kOnnxDomain)
.SinceVersion(6)
.Provider(onnxruntime::kCpuExecutionProvider)
.TypeConstraint("T", DataTypeImpl::GetTensorType<float>());
return def;
}
ONNX_NAMESPACE::OpSchema GetOptionalOpSchema() {
ONNX_NAMESPACE::OpSchema schema("OptionalOp", "unknown", 0);
schema.Input(0,
"X",
"First operand, should share the type with the second operand.",
"T");
schema.Input(
1,
"W",
"Second operand. If provided, add it to the output",
"T",
OpSchema::Optional);
schema.Output(0, "Y", "Result, has same dimensions and type as A", "T");
schema.Output(1, "Y2", "Result, has same dimensions and type as A", "T", OpSchema::Optional);
schema.TypeConstraint(
"T",
OpSchema::numeric_types_for_math_reduction(),
"Constrain input and output types to high-precision numeric tensors.");
schema.SinceVersion(6);
return schema;
}
template <typename T>
class OptionalOpKernel : public OpKernel {
public:
OptionalOpKernel(const OpKernelInfo& info) : OpKernel(info) {}
Status Compute(OpKernelContext* context) const {
const auto* X = context->Input<Tensor>(0);
const auto* W = context->Input<Tensor>(1);
auto* X_Data = X->Data<T>();
auto& shape = X->Shape().GetDims();
auto* Y = context->Output(0, shape);
auto* Y_Data = Y->MutableData<T>();
size_t size = 1;
for (size_t i = 0; i < shape.size(); i++) {
size *= shape[i];
}
for (size_t i = 0; i < size; i++) {
Y_Data[i] = X_Data[i];
}
auto* Y2 = context->Output(1, shape);
// Y2 is used or not
if (Y2) {
auto Y2_Data = Y2->MutableData<T>();
for (size_t i = 0; i < size; i++) {
Y2_Data[i] = X_Data[i];
}
}
//W is used or not
if (W) {
auto* W_Data = W->Data<T>();
for (size_t i = 0; i < size; i++) {
Y_Data[i] += W_Data[i];
}
if (Y2) {
auto* Y2_Data = Y2->MutableData<T>();
for (size_t i = 0; i < size; i++) {
Y2_Data[i] += W_Data[i];
}
}
}
return Status::OK();
}
};
OpKernel* CreateOptionalOpKernel(const OpKernelInfo& kernel_info) {
return new OptionalOpKernel<float>(kernel_info);
}
static const std::string MUL_MODEL_URI = "testdata/mul_1.onnx";
static const std::string FOO_MODEL_URI = "testdata/foo_1.onnx";
static const std::string FOO_TRUNCATE_MODEL_URI = "testdata/foo_2.onnx";
static const std::string OPTIONAL_MODEL1_URI = "testdata/optional_1.onnx";
void RunSession(InferenceSession& session_object,
RunOptions& run_options,
std::vector<int64_t>& dims_x,
std::vector<float>& values_x,
std::vector<int64_t>& dims_y,
std::vector<float>& values_y) {
// prepare inputs
OrtValue ml_value;
CreateMLValue<float>(TestCPUExecutionProvider()->GetAllocator(0, OrtMemTypeDefault), dims_x, values_x, &ml_value);
NameMLValMap feeds;
feeds.insert(std::make_pair("X", ml_value));
// prepare outputs
std::vector<std::string> output_names;
output_names.push_back("Y");
std::vector<OrtValue> fetches;
// Now run
common::Status st = session_object.Run(run_options, feeds, output_names, &fetches);
std::cout << "Run returned status: " << st.ErrorMessage() << std::endl;
EXPECT_TRUE(st.IsOK());
ASSERT_EQ(1u, fetches.size());
auto& rtensor = fetches.front().Get<Tensor>();
TensorShape expected_shape(dims_y);
//Use reinterpret_cast to bypass a gcc bug: https://gcc.gnu.org/bugzilla/show_bug.cgi?id=51213
EXPECT_EQ(*reinterpret_cast<const std::vector<int64_t>*>(&expected_shape), *reinterpret_cast<const std::vector<int64_t>*>(&rtensor.Shape()));
const std::vector<float> found(rtensor.template Data<float>(), rtensor.template Data<float>() + expected_shape.Size());
ASSERT_EQ(values_y, found);
}
TEST(CustomKernelTests, CustomKernelWithBuildInSchema) {
SessionOptions so;
so.session_logid = "InferenceSessionTests.NoTimeout";
// Register a foo kernel which is doing Add, but bind to Mul.
std::shared_ptr<CustomRegistry> registry = std::make_shared<CustomRegistry>();
InferenceSession session_object{so, &DefaultLoggingManager()};
EXPECT_TRUE(session_object.RegisterCustomRegistry(registry).IsOK());
auto def = FooKernelDef("Mul");
EXPECT_TRUE(registry->RegisterCustomKernel(def, CreateFooKernel).IsOK());
EXPECT_TRUE(session_object.Load(MUL_MODEL_URI).IsOK());
EXPECT_TRUE(session_object.Initialize().IsOK());
RunOptions run_options;
run_options.run_tag = "one session/one tag";
// prepare inputs
std::vector<int64_t> dims_x = {3, 2};
std::vector<float> values_x = {1.0f, 2.0f, 3.0f, 4.0f, 5.0f, 6.0f};
// prepare expected inputs and outputs
std::vector<int64_t> expected_dims_y = {3, 2};
// now the expected value should be Add's result.
std::vector<float> expected_values_y = {2.0f, 4.0f, 6.0f, 8.0f, 10.0f, 12.0f};
// Now run
RunSession(session_object, run_options, dims_x, values_x, expected_dims_y, expected_values_y);
}
TEST(CustomKernelTests, CustomKernelWithCustomSchema) {
SessionOptions so;
so.session_logid = "InferenceSessionTests.NoTimeout";
std::shared_ptr<CustomRegistry> registry = std::make_shared<CustomRegistry>();
InferenceSession session_object{so, &DefaultLoggingManager()};
EXPECT_TRUE(session_object.RegisterCustomRegistry(registry).IsOK());
//register foo schema
auto foo_schema = GetFooSchema();
std::vector<OpSchema> schemas = {foo_schema};
EXPECT_TRUE(registry->RegisterOpSet(schemas, onnxruntime::kOnnxDomain, 5, 7).IsOK());
auto def = FooKernelDef("Foo");
//Register a foo kernel which is doing Add, but bind to Mul.
EXPECT_TRUE(registry->RegisterCustomKernel(def, CreateFooKernel).IsOK());
EXPECT_TRUE(session_object.Load(FOO_MODEL_URI).IsOK());
EXPECT_TRUE(session_object.Initialize().IsOK());
RunOptions run_options;
run_options.run_tag = "one session/one tag";
// prepare inputs
std::vector<int64_t> dims_x = {3, 2};
std::vector<float> values_x = {1.0f, 2.0f, 3.0f, 4.0f, 5.0f, 6.0f};
// prepare expected inputs and outputs
std::vector<int64_t> expected_dims_y = {3, 2};
// now the expected value should be Add's result.
std::vector<float> expected_values_y = {2.0f, 4.0f, 6.0f, 8.0f, 10.0f, 12.0f};
// Now run
RunSession(session_object, run_options, dims_x, values_x, expected_dims_y, expected_values_y);
}
TEST(CustomKernelTests, CustomKernelWithOptionalOutput) {
SessionOptions so;
so.session_logid = "InferenceSessionTests.NoTimeout";
//reigster optional schema
auto optional_schema = GetOptionalOpSchema();
std::vector<OpSchema> schemas = {optional_schema};
std::shared_ptr<CustomRegistry> registry = std::make_shared<CustomRegistry>();
EXPECT_TRUE(registry->RegisterOpSet(schemas, onnxruntime::kOnnxDomain, 5, 7).IsOK());
auto def = OptionalKernelDef();
//Register a foo kernel which is doing Add, but bind to Mul.
EXPECT_TRUE(registry->RegisterCustomKernel(def, CreateOptionalOpKernel).IsOK());
InferenceSession session_object{so, &DefaultLoggingManager()};
EXPECT_TRUE(session_object.RegisterCustomRegistry(registry).IsOK());
EXPECT_TRUE(session_object.Load(OPTIONAL_MODEL1_URI).IsOK());
EXPECT_TRUE(session_object.Initialize().IsOK());
RunOptions run_options;
run_options.run_tag = "one session/one tag";
// prepare inputs
std::vector<int64_t> dims_x = {3, 2};
std::vector<float> values_x = {1.0f, 2.0f, 3.0f, 4.0f, 5.0f, 6.0f};
// prepare expected inputs and outputs
std::vector<int64_t> expected_dims_y = {3, 2};
// now the expected value should be equal result.
std::vector<float> expected_values_y = {1.0f, 2.0f, 3.0f, 4.0f, 5.0f, 6.0f};
// Now run
RunSession(session_object, run_options, dims_x, values_x, expected_dims_y, expected_values_y);
}
} // namespace test
} // namespace onnxruntime