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test_lite_interpreter.cpp
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test_lite_interpreter.cpp
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#include <test/cpp/jit/test_utils.h>
#include <gtest/gtest.h>
#include <c10/core/TensorOptions.h>
#include <torch/csrc/autograd/generated/variable_factories.h>
#include <torch/csrc/jit/api/module.h>
#include <torch/csrc/jit/frontend/resolver.h>
#include <torch/csrc/jit/mobile/compatibility/backport.h>
#include <torch/csrc/jit/mobile/compatibility/backport_manager.h>
#include <torch/csrc/jit/mobile/compatibility/model_compatibility.h>
#include <torch/csrc/jit/mobile/compatibility/runtime_compatibility.h>
#include <torch/csrc/jit/mobile/import.h>
#include <torch/csrc/jit/mobile/interpreter.h>
#include <torch/csrc/jit/mobile/module.h>
#include <torch/csrc/jit/mobile/parse_bytecode.h>
#include <torch/csrc/jit/mobile/parse_operators.h>
#include <torch/csrc/jit/mobile/upgrader_mobile.h>
#include <torch/csrc/jit/serialization/export.h>
#include <torch/csrc/jit/serialization/import.h>
#include <torch/custom_class.h>
#include <torch/torch.h>
#include <torch/csrc/jit/serialization/import_export_functions.h>
#include <unordered_set>
// Tests go in torch::jit
namespace torch {
namespace jit {
TEST(LiteInterpreterTest, UpsampleNearest2d) {
Module m("m");
m.define(R"(
def forward(self, input: Tensor, scale:float):
return torch.upsample_nearest2d(input, [1, 1], float(scale), float(scale))
)");
std::vector<IValue> inputs;
inputs.emplace_back(torch::rand({1, 3, 128, 128}));
inputs.emplace_back(at::Scalar(2.0));
auto ref = m.forward(inputs);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res;
res = bc.forward(inputs);
auto resd = res.toTensor();
auto refd = ref.toTensor();
ASSERT_TRUE(resd.equal(refd));
}
TEST(LiteInterpreterTest, CheckAttrAccess) {
Module m("m");
m.register_attribute("mobile_optimized", BoolType::get(), true);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
bool mobile_optimized = bc.attr("mobile_optimized", false).toBool();
AT_ASSERT(mobile_optimized);
m.setattr("mobile_optimized", false);
ss = std::stringstream();
m._save_for_mobile(ss);
bc = _load_for_mobile(ss);
mobile_optimized = bc.attr("mobile_optimized", false).toBool();
AT_ASSERT(!mobile_optimized);
}
TEST(LiteInterpreterTest, MethodInvocation) { // NOLINT (use =delete in gtest)
const std::vector<std::string> test_programs{
// test invoking a method with default parameter
R"(
def test_func(self, x, b : int = 4):
return self.foo + x + b
)",
// inner method call with default parameter (gets inlined)
R"(
def add_with_default_arg(self, x, b : int = 4):
return self.foo + x + b
def test_func(self, x):
return self.add_with_default_arg(x) # invoke method w/ default arg
)",
// simple method call
R"(
def test_func(self, x):
b = 4
return self.foo + x + b
)",
};
for (const auto& test_program : test_programs) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(test_program);
const int fortyTwo = 42; // (keep linter happy)
auto minput = fortyTwo * torch::ones({});
auto ref = m.run_method("test_func", minput);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
const auto& test_func = bc.get_method("test_func");
IValue res;
for (int i = 0; i < 3; ++i) {
res = test_func({minput});
}
auto resd = res.toTensor().item<float>();
auto refd = ref.toTensor().item<float>();
AT_ASSERT(resd == refd);
}
}
TEST(LiteInterpreterTest, Conv) {
auto s = std::getenv("PYTORCH_TEST_WITH_TSAN");
if (s && strcmp(s, "1") == 0)
return;
std::vector<torch::jit::IValue> inputs;
Module m("m");
m.register_parameter("weight", torch::ones({20, 1, 5, 5}), false);
m.register_parameter("bias", torch::ones({20}), false);
m.define(R"(
def forward(self, input):
return torch._convolution(input, self.weight, self.bias, [1, 1], [0, 0], [1, 1], False, [0, 0], 1, False, False, True, True)
)");
// NOLINTNEXTLINE(cppcoreguidelines-avoid-magic-numbers,modernize-use-emplace)
inputs.push_back(torch::ones({1, 1, 28, 28}));
auto outputref = m.forward(inputs).toTensor();
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res;
for (int i = 0; i < 3; ++i) {
res = bc.get_method("forward")(inputs);
}
auto output = res.toTensor();
AT_ASSERT(outputref.dim() == output.dim());
AT_ASSERT(
outputref[0][0][0][0].item<int>() == output[0][0][0][0].item<int>());
}
TEST(LiteInterpreterTest, Inline) {
Module m("m");
m.define(R"JIT(
def foo1(self, x):
return x + 1
def foo2(self, x):
return self.foo1(x) + 2
def foo3(self, x):
return self.foo2(x) + 3
)JIT");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs({torch::ones({})});
auto output = bc.get_method("foo3")(inputs);
AT_ASSERT(output.toTensor().item<float>() == 7.0);
}
TEST(LiteInterpreterTest, Tuple) {
Module m("m");
m.define(R"JIT(
def foo(self, x):
return (1, 2, x + 3)
def forward(self, x):
tuple = self.foo(x)
return tuple
)JIT");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs({torch::ones({})});
auto output = bc.get_method("forward")(inputs);
AT_ASSERT(output.toTupleRef().elements()[1].toInt() == 2);
}
TEST(LiteInterpreterTest, AtenFormat) {
Module m("m");
m.define(R"""(
def forward(self, fmt:str="first {} {}", num:str="abc"):
x = 2
x = x * x
return fmt.format(num, x)
)""");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs;
auto output_bc = bc.get_method("forward")(inputs);
auto output_m = m.get_method("forward")(inputs);
// std::cout << output_m.toStringRef() << "\n"
// << output_bc.toStringRef() << std::endl;
AT_ASSERT(output_m.toStringRef() == output_bc.toStringRef());
}
TEST(LiteInterpreterTest, PrimDevice) {
Module m("m");
m.define(R"""(
def forward(self, x:torch.Tensor):
return x.device
)""");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs;
auto minput = 3.5 * torch::ones({});
inputs.emplace_back(minput);
auto output_bc = bc.get_method("forward")(inputs);
auto output_m = m.get_method("forward")(inputs);
AT_ASSERT(output_bc.toDevice().str() == output_m.toDevice().str());
}
TEST(LiteInterpreterTest, Dict) {
Module m("m");
m.define(R"JIT(
def foo(self, x):
return {"result": x + 1}
def forward(self, x):
d = self.foo(x)
return d
)JIT");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs({torch::ones({})});
auto output = bc.get_method("forward")(inputs);
AT_ASSERT(output.toGenericDict().at("result").toTensor().item().toInt() == 2);
}
TEST(LiteInterpreterTest, List) {
Module m("m");
m.define(R"JIT(
def foo(self, x):
return [x + 2]
def forward(self, x):
d = self.foo(x)
return d
)JIT");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs({torch::ones({})});
auto output = bc.get_method("forward")(inputs);
auto server_output = m.forward(inputs);
EXPECT_EQ(output.toList().get(0).toTensor().item().toInt(), 3);
EXPECT_EQ(output, server_output);
}
TEST(LiteInterpreterTest, PrimOverload) {
/*
// temporarily disabled
script::Module m("m");
m.define(R"JIT(
def forward(self, x):
result = [1, 2]
result.append(3)
return result
)JIT");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<torch::jit::IValue> inputs({torch::ones({})});
auto output = bc.get_method("forward")(inputs);
AT_ASSERT(output.toIntList()[2] == 3);
*/
}
TEST(LiteInterpreterTest, Prim) {
Module m("m");
m.define(R"JIT(
def forward(self, x):
return int(x)
)JIT");
std::vector<IValue> inputs;
auto minput = 3.5 * torch::ones({});
inputs.emplace_back(minput);
auto ref = m.run_method("forward", minput);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res;
for (int i = 0; i < 3; ++i) {
// NOLINTNEXTLINE(performance-unnecessary-copy-initialization)
auto bcinputs = inputs;
res = bc.get_method("forward")(bcinputs);
}
auto resi = res.toInt();
auto refi = ref.toInt();
AT_ASSERT(resi == refi);
}
TEST(LiteInterpreterTest, PrimScalar) {
Module m("m");
m.define(R"JIT(
def forward(self, x):
return int(x.item())
)JIT");
std::vector<IValue> inputs;
auto minput = 3.5 * torch::ones({});
inputs.emplace_back(minput);
auto ref = m.run_method("forward", minput);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res;
for (int i = 0; i < 3; ++i) {
// NOLINTNEXTLINE(performance-unnecessary-copy-initialization)
auto bcinputs = inputs;
res = bc.get_method("forward")(bcinputs);
}
auto resi = res.toInt();
auto refi = ref.toInt();
AT_ASSERT(resi == refi);
}
TEST(LiteInterpreterTest, LoadOrigJit) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def forward(self, x):
b = 4
return self.foo + x + b
)");
std::stringstream ss;
m.save(ss);
ASSERT_THROWS_WITH_MESSAGE(_load_for_mobile(ss), "file not found");
}
TEST(LiteInterpreterTest, WrongMethodName) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def add(self, x):
b = 4
return self.foo + x + b
)");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
std::vector<IValue> inputs;
auto minput = 5 * torch::ones({});
inputs.emplace_back(minput);
ASSERT_THROWS_WITH_MESSAGE(
bc.get_method("forward")(inputs), "is not defined");
}
TEST(LiteInterpreterTest, SetState) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def __getstate__(self):
return self.foo + self.foo
def __setstate__(self, a):
self.foo = a
def forward(self, x):
b = 4
return self.foo + x + b
)");
std::vector<IValue> inputs;
auto minput = 5 * torch::ones({});
inputs.emplace_back(minput);
std::stringstream ms;
m.save(ms);
auto loaded_m = load(ms);
auto ref = loaded_m.run_method("forward", minput);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res;
for (int i = 0; i < 3; ++i) {
// NOLINTNEXTLINE(performance-unnecessary-copy-initialization)
auto bcinputs = inputs;
res = bc.get_method("forward")(bcinputs);
}
auto resd = res.toTensor().item<float>();
auto refd = ref.toTensor().item<float>();
AT_ASSERT(resd == refd);
}
class TorchBindLiteInterpreterTestStruct
: public torch::jit::CustomClassHolder {
public:
std::string get(at::Tensor t) {
std::stringstream ss;
ss << "Hello! Your tensor has ";
ss << t.numel();
ss << " elements!";
return ss.str();
}
};
namespace {
struct ClassNamespaceValue : public SugaredValue {
explicit ClassNamespaceValue(c10::QualifiedName name)
: basename_(std::move(name)) {}
std::shared_ptr<SugaredValue> attr(
const SourceRange& loc,
GraphFunction& m,
const std::string& name) override {
const auto fullName = c10::QualifiedName(basename_, name);
// Check to see if it is a custom class.
if (auto custom_class = getCustomClass(fullName.qualifiedName())) {
return std::make_shared<ClassValue>(custom_class);
}
// If it's not a custom class, assume it's another namespace
// NOLINTNEXTLINE(performance-move-const-arg)
return std::make_shared<ClassNamespaceValue>(std::move(fullName));
}
std::string kind() const override {
return "Class Namespace";
}
private:
c10::QualifiedName basename_;
};
struct TestModuleResolver : public Resolver {
std::shared_ptr<SugaredValue> resolveValue(
const std::string& name,
GraphFunction& m,
const SourceRange& loc) override {
if (name == "torch") {
return std::make_shared<BuiltinModule>("aten");
} else if (name == "__torch__") {
return std::make_shared<ClassNamespaceValue>(c10::QualifiedName(name));
}
return nullptr;
}
TypePtr resolveType(const std::string& name, const SourceRange& loc)
override {
return nullptr;
}
};
} // namespace
TEST(LiteInterpreterTest, BuiltinClass) {
script::Module m("m");
auto cls = getCustomClass(
"__torch__.torch.classes._TorchScriptTesting._LiteInterpreterTest");
TORCH_INTERNAL_ASSERT(cls);
c10::intrusive_ptr<torch::CustomClassHolder> obj_holder;
m.register_attribute("my_obj", cls, IValue::make_capsule(obj_holder));
m.register_parameter("foo", torch::ones({}), false);
m.define(
R"(
def __getstate__(self):
return 1
def __setstate__(self, a):
self.my_obj = __torch__.torch.classes._TorchScriptTesting._LiteInterpreterTest()
def forward(self, x) -> str:
return self.my_obj.get(x)
)",
std::make_shared<TestModuleResolver>());
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
auto res =
bc.get_method("forward")(std::vector<IValue>{torch::zeros({3, 4})});
const auto& str = res.toStringRef();
std::string expected = "Hello! Your tensor has 12 elements!";
AT_ASSERT(str == expected);
}
TEST(LiteInterpreterTest, BuiltinFunction) {
script::Module m("m");
auto custom_class_obj =
make_custom_class<TorchBindLiteInterpreterTestStruct>();
m.register_attribute("my_obj", custom_class_obj.type(), custom_class_obj);
m.define(R"(
def forward(self, x) -> str:
return self.my_obj.get(x)
)");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
auto res =
bc.get_method("forward")(std::vector<IValue>{torch::zeros({3, 4})});
// NOLINTNEXTLINE(performance-unnecessary-copy-initialization)
auto str = res.toStringRef();
std::string expected = "Hello! Your tensor has 12 elements!";
AT_ASSERT(str == expected);
}
#if !defined FB_XPLAT_BUILD
TEST(LiteInterpreterTest, GetRuntimeByteCodeVersion) {
auto runtime_bytecode_version = _get_runtime_bytecode_version();
AT_ASSERT(
runtime_bytecode_version ==
caffe2::serialize::kMaxSupportedBytecodeVersion);
}
TEST(LiteInterpreterTest, GetRuntimeOperatorsVersion) {
auto runtime_operators_version = _get_runtime_operators_min_max_versions();
AT_ASSERT(
runtime_operators_version.first ==
caffe2::serialize::kMinSupportedFileFormatVersion &&
runtime_operators_version.second ==
caffe2::serialize::kMaxSupportedFileFormatVersion);
}
/**
* The test below is disarmed for FB internal xplat builds since
* BUCK requires us to pass in the script_module_v4.ptl file in
* as a resource dependency of the build rule for this file, and
* we would need to access it via the C++ Resources API instead
* of directly reading from disk (which is what the open source
* build/run does).
*/
TEST(LiteInterpreterTest, GetByteCodeVersion) {
std::string filePath(__FILE__);
auto test_model_file_v4 =
filePath.substr(0, filePath.find_last_of("/\\") + 1);
test_model_file_v4.append("script_module_v4.ptl");
auto version_v4 = _get_model_bytecode_version(test_model_file_v4);
AT_ASSERT(version_v4 == 4);
}
#endif // !defined(FB_XPLAT_BUILD)
TEST(LiteInterpreterTest, GetContainTypes) {
Module m("m");
m.define(R"(
def forward(self):
return 3
)");
std::stringstream ss;
m._save_for_mobile(ss, {}, true);
_get_mobile_model_contained_types(ss);
}
namespace {
void compareModelOutput(
c10::ArrayRef<IValue> actual_result_list,
const std::vector<IValue>& expect_result_list) {
AT_ASSERT(actual_result_list.size() == expect_result_list.size());
AT_ASSERT(
actual_result_list[0].toTensor().equal(expect_result_list[0].toTensor()));
AT_ASSERT(
actual_result_list[1].toTensor().dim() ==
expect_result_list[1].toTensor().dim());
AT_ASSERT(
actual_result_list[2].toTensor().equal(expect_result_list[2].toTensor()));
AT_ASSERT(
actual_result_list[3].toTensor().equal(expect_result_list[3].toTensor()));
ASSERT_EQ(
actual_result_list[4].toStringRef(), expect_result_list[4].toStringRef());
ASSERT_EQ(actual_result_list[5].toBool(), expect_result_list[5].toBool());
ASSERT_EQ(actual_result_list[6].toBool(), expect_result_list[6].toBool());
ASSERT_EQ(actual_result_list[7].toBool(), expect_result_list[7].toBool());
AT_ASSERT(
actual_result_list[8].toTensor().equal(expect_result_list[8].toTensor()));
ASSERT_EQ(
actual_result_list[9].toStringRef(), expect_result_list[9].toStringRef());
ASSERT_EQ(actual_result_list[10].toInt(), expect_result_list[10].toInt());
ASSERT_EQ(actual_result_list[11].toBool(), expect_result_list[11].toBool());
}
void runAndCheckTorchScriptModel(
std::stringstream& input_model_stream,
const std::vector<IValue>& input_data,
const std::vector<IValue>& expect_result_list,
const uint64_t expect_version) {
auto actual_version = _get_model_bytecode_version(input_model_stream);
AT_ASSERT(actual_version == expect_version);
// Load and run the backport model, then compare the result with expect
// result
Module m_mobile = load(input_model_stream);
auto actual_result = m_mobile.forward(input_data);
const auto& actual_result_list = actual_result.toTupleRef().elements();
compareModelOutput(actual_result_list, expect_result_list);
}
void runAndCheckBytecodeModel(
std::stringstream& input_model_stream,
const std::vector<IValue>& input_data,
const std::vector<IValue>& expect_result_list,
const uint64_t expect_version) {
auto actual_version = _get_model_bytecode_version(input_model_stream);
AT_ASSERT(actual_version == expect_version);
// Load and run the backport model, then compare the result with expect
// result
Module m_mobile = load(input_model_stream);
auto actual_result = m_mobile.forward(input_data);
const auto& actual_result_list = actual_result.toTupleRef().elements();
compareModelOutput(actual_result_list, expect_result_list);
}
void backportAllVersionCheck(
std::stringstream& test_model_file_stream,
std::vector<IValue>& input_data,
std::vector<IValue>& expect_result_list,
const uint64_t expect_from_version) {
auto from_version = _get_model_bytecode_version(test_model_file_stream);
EXPECT_EQ(from_version, expect_from_version);
AT_ASSERT(from_version > 0);
// Backport script_module_v5.ptl to an older version
constexpr int64_t minimum_to_version = 4;
auto current_to_version = from_version - 1;
// Verify all candidate to_version work as expected. All backport to version
// larger than minimum_to_version should success.
while (current_to_version >= minimum_to_version) {
// Do not declare std::stringstream oss outside of the while loop as
// oss.clear() doesn't reset the stream content, only clears out error state
// flag in stringstream causing a problematic stream. Instead, it's cleaner
// and safer to just declare a new std::stringstream one and swap them.
std::stringstream oss;
bool backPortSuccess =
_backport_for_mobile(test_model_file_stream, oss, current_to_version);
AT_ASSERT(backPortSuccess);
// Check backport model version
auto backport_version = _get_model_bytecode_version(oss);
backport_version = _get_model_bytecode_version(oss);
AT_ASSERT(backport_version == current_to_version);
// Load and run the backport model, then compare the result with expect
// result
runAndCheckBytecodeModel(
oss, input_data, expect_result_list, current_to_version);
oss.seekg(0, oss.beg);
runAndCheckTorchScriptModel(
oss, input_data, expect_result_list, current_to_version);
current_to_version--;
}
// backport to minimum version - 1 should fail
std::stringstream oss;
bool backPortSuccess =
_backport_for_mobile(test_model_file_stream, oss, minimum_to_version - 1);
AT_ASSERT(!backPortSuccess);
}
} // namespace
#if !defined FB_XPLAT_BUILD
TEST(LiteInterpreterTest, BackPortByteCodeModelAllVersions) {
torch::jit::Module module("m");
// NOLINTNEXTLINE(cppcoreguidelines-avoid-magic-numbers)
module.register_parameter("weight", torch::ones({20, 1, 5, 5}), false);
// NOLINTNEXTLINE(cppcoreguidelines-avoid-magic-numbers)
module.register_parameter("bias", torch::ones({20}), false);
module.define(R"(
def fn(self, x:float=1.0):
return x
def forward(self, input):
x1 = torch.zeros(2, 2)
x2 = torch.empty_like(torch.empty(2, 2))
x3 = torch._convolution(input, self.weight, self.bias, [1, 1], [0, 0], [1, 1], False, [0, 0], 1, False, False, True, True)
# Add torch.add operator to cover bytecode version bump from 6 to 7
# for bytecode version 7, the main change is to support defaults arguments with out arguments
x = 2 * torch.ones(1)
h = torch.ones(1)
torch.add(x, h, out=x)
device = torch.ones(1, 1).cpu().device.type
is_cuda = x1.is_cuda
bool_val = True
check_is = [] is None
check_is_not = [1] is not None
check_not = not bool_val
num_to_tensor = torch.tensor([self.fn()])
d = {"a": "abc"}
check_dict_index = d["a"]
check_dim = x1.dim()
return (
x1, x2, x3, x, device, is_cuda, check_is,
check_is_not, num_to_tensor, check_dict_index,
check_dim, check_not
)
)");
torch::jit::Module module_freeze = freeze(module);
std::stringstream input_model_stream;
module_freeze._save_for_mobile(
input_model_stream,
/*extra_files=*/{},
/*save_mobile_debug_info=*/false,
/*use_flatbuffer=*/true);
std::vector<IValue> input_data =
std::vector<IValue>({torch::ones({1, 1, 28, 28})});
std::vector<IValue> expect_result_list;
expect_result_list.emplace_back(at::ones({2, 2}, ScalarType::Float) * 0);
expect_result_list.emplace_back(at::ones({2, 2}, ScalarType::Float));
expect_result_list.emplace_back(
at::ones({1, 20, 24, 24}, ScalarType::Float) * 26);
expect_result_list.emplace_back(3 * at::ones({1}));
// "cpu" False, False, True, tensor(1), "abc", 2, False)
expect_result_list.emplace_back(c10::IValue("cpu"));
expect_result_list.emplace_back(c10::IValue(false));
expect_result_list.emplace_back(c10::IValue(false));
expect_result_list.emplace_back(c10::IValue(true));
expect_result_list.emplace_back(c10::IValue(at::ones({1})));
expect_result_list.emplace_back(c10::IValue("abc"));
expect_result_list.emplace_back(c10::IValue(2));
expect_result_list.emplace_back(c10::IValue(false));
backportAllVersionCheck(
input_model_stream,
input_data,
expect_result_list,
9); // flatbuffer starts at 9
}
#endif // !defined(FB_XPLAT_BUILD)
TEST(LiteInterpreterTest, GetRuntimeOpsAndInfo) {
auto runtime_ops = _get_runtime_ops_and_info();
// Ballpark estimate of the minimal number of ops; just used to
// verify API returns a reasonably large number.
AT_ASSERT(runtime_ops.size() > 2900);
}
TEST(LiteInterpreterTest, isCompatibleSuccess) {
// test trivial success case
auto runtime_info = RuntimeCompatibilityInfo::get();
std::unordered_map<std::string, OperatorInfo> model_ops;
model_ops["aten::add.Scalar"] = OperatorInfo{2};
std::unordered_set<std::string> types = {"List", "int", "NamedTuple"};
auto model_info = ModelCompatibilityInfo{
caffe2::serialize::kMaxSupportedBytecodeVersion,
model_ops,
types,
_get_runtime_bytecode_min_max_versions().first};
AT_ASSERT(
is_compatible(runtime_info, model_info).status ==
ModelCompatibilityStatus::OK);
}
TEST(LiteInterpreterTest, isCompatibleFail) {
// test trivial failure due to ops
std::unordered_map<std::string, OperatorInfo> model_ops;
model_ops["aten::add.Scalar"] = OperatorInfo{2};
auto model_info = ModelCompatibilityInfo{
caffe2::serialize::kMaxSupportedBytecodeVersion, model_ops};
std::unordered_map<std::string, OperatorInfo> runtime_ops;
runtime_ops["aten::add.Int"] = OperatorInfo{2};
auto runtime_info = RuntimeCompatibilityInfo{
std::pair<uint64_t, uint64_t>(
caffe2::serialize::kMinSupportedBytecodeVersion,
caffe2::serialize::kMaxSupportedBytecodeVersion),
runtime_ops,
_get_mobile_supported_types()};
auto result = is_compatible(runtime_info, model_info);
AT_ASSERT(result.status = ModelCompatibilityStatus::ERROR);
AT_ASSERT(
result.errors[0] ==
"Operator 'aten::add.Scalar' missing from runtime (not found)");
// test trivial failure due to bytecode greater than max supported bytecode
// version
runtime_ops["aten::add.Scalar"] = OperatorInfo{2};
runtime_info = RuntimeCompatibilityInfo{
std::pair<uint64_t, uint64_t>(
caffe2::serialize::kMinSupportedBytecodeVersion,
caffe2::serialize::kMaxSupportedBytecodeVersion),
runtime_ops,
_get_mobile_supported_types()};
model_info.bytecode_version =
caffe2::serialize::kMaxSupportedBytecodeVersion + 1;
result = is_compatible(runtime_info, model_info);
AT_ASSERT(result.status = ModelCompatibilityStatus::ERROR);
// test trivial failure due to bytecode less than min supported bytecode
// version
runtime_ops["aten::add.Scalar"] = OperatorInfo{2};
runtime_info = RuntimeCompatibilityInfo{
std::pair<uint64_t, uint64_t>(
caffe2::serialize::kMinSupportedBytecodeVersion,
caffe2::serialize::kMaxSupportedBytecodeVersion),
runtime_ops,
_get_mobile_supported_types()};
model_info.bytecode_version =
caffe2::serialize::kMinSupportedBytecodeVersion - 1;
result = is_compatible(runtime_info, model_info);
AT_ASSERT(result.status = ModelCompatibilityStatus::ERROR);
// test trivial failure due to type
runtime_info = RuntimeCompatibilityInfo::get();
std::unordered_set<std::string> types = {"List", "int", "Sequence"};
model_info = ModelCompatibilityInfo{
caffe2::serialize::kMaxSupportedBytecodeVersion,
model_ops,
types,
_get_runtime_bytecode_min_max_versions().first};
AT_ASSERT(
is_compatible(runtime_info, model_info).status ==
ModelCompatibilityStatus::ERROR);
// test trivial failure due to operator version
runtime_info = RuntimeCompatibilityInfo::get();
model_info = ModelCompatibilityInfo{
caffe2::serialize::kMaxSupportedBytecodeVersion, model_ops, {}, 0};
AT_ASSERT(
is_compatible(runtime_info, model_info).status ==
ModelCompatibilityStatus::ERROR);
}
TEST(LiteInterpreterTest, Eval) {
std::vector<torch::jit::IValue> inputs;
Module m("m");
m.define(R"(
def __init__(self, x):
self.training = True
def forward(self, input):
return torch.dropout(input, 1.0, self.training)
)");
// NOLINTNEXTLINE(cppcoreguidelines-avoid-magic-numbers,modernize-use-emplace)
inputs.push_back(torch::ones({1, 1, 28, 28}));
m.eval();
auto outputref = m.forward(inputs).toTensor();
// save m in training mode to make sure that mobile eval() will correctly
// change back to eval mode
m.train();
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
bc.eval();
IValue res;
for (int i = 0; i < 3; ++i) {
res = bc.get_method("forward")(inputs);
}
auto output = res.toTensor();
AT_ASSERT(outputref.dim() == output.dim());
AT_ASSERT(
outputref[0][0][0][0].item<int>() == output[0][0][0][0].item<int>());
}
TEST(LiteInterpreterTest, FindWrongMethodName) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def add(self, x):
b = 4
return self.foo + x + b
)");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
ASSERT_TRUE(bc.find_method("forward") == c10::nullopt);
}
TEST(LiteInterpreterTest, FindAndRunMethod) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def add_it(self, x):
b = 4
return self.foo + x + b
)");
std::vector<IValue> inputs;
auto minput = 5 * torch::ones({});
inputs.emplace_back(minput);
auto ref = m.get_method("add_it")(inputs);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res;
for (int i = 0; i < 3; ++i) {
auto bcinputs = inputs;
auto method = bc.find_method("add_it");
AT_ASSERT(method != c10::nullopt);
res = (*method)(std::move(bcinputs));
}
auto resd = res.toTensor().item<float>();
auto refd = ref.toTensor().item<float>();
AT_ASSERT(resd == refd);
}
TEST(LiteInterpreterTest, RunMethodVariadic) {
Module m("m");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def add_three(self, x, y):
return self.foo + x + y
)");
std::vector<IValue> inputs;
auto inputx = 5 * torch::ones({});
auto inputy = 4 * torch::ones({});
auto ref = m.run_method("add_three", inputx, inputy);
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
IValue res = bc.run_method("add_three", inputx, inputy);
auto resd = res.toTensor().item<float>();
auto refd = ref.toTensor().item<float>();
AT_ASSERT(resd == refd);
}
TEST(LiteInterpreterTest, DuplicateSetState) {
Module m("M");
m.register_parameter("foo", torch::ones({}), false);
m.define(R"(
def __getstate__(self):
return self.foo + self.foo
def __setstate__(self, a):
self.foo = a
def forward(self, x):
b = 4
return self.foo + x + b
)");
Module b("B");
b.register_module("M0", m);
b.register_module("M1", m);
b.define(R"(
def forward(self, x):
return self.M0.forward(x) + self.M1.forward(x)
)");
std::stringstream ss;
m._save_for_mobile(ss);
mobile::Module bc = _load_for_mobile(ss);
const auto methods = bc.get_methods();
const size_t expected_n = 3;
ASSERT_EQ(methods.size(), expected_n);
}
TEST(LiteInterpreterTest, ExtraFiles) {
const auto script = R"JIT(
def forward(self):
x = torch.rand(5, 5)
x = x.mm(x)
return x
)JIT";
auto module =
std::make_shared<Module>("Module", std::make_shared<CompilationUnit>());
module->define(script);
std::ostringstream oss;
std::unordered_map<std::string, std::string> extra_files;
extra_files["metadata.json"] = "abc";
extra_files["mobile_info.json"] = "{\"key\": 23}";
module->_save_for_mobile(oss, extra_files);
std::istringstream iss(oss.str());
std::unordered_map<std::string, std::string> loaded_extra_files;