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custom_backend.h
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#include <torch/csrc/jit/backends/backend.h>
#include <torch/csrc/jit/backends/backend_detail.h>
#include <torch/csrc/jit/api/module.h>
namespace torch {
namespace custom_backend {
// This custom JIT backend is intended to do the minimal amount of work
// necessary to test that the JIT backend registration endpoints and
// code generation are working correctly. It is not intended to
// produce numerically correct results.
class CustomBackend : public torch::jit::PyTorchBackendInterface {
public:
// Constructor.
explicit CustomBackend() {}
virtual ~CustomBackend() = default;
bool is_available() override {
return true;
}
c10::impl::GenericDict compile(
c10::IValue processed,
c10::impl::GenericDict method_compile_spec) override {
auto spec =
c10::impl::toTypedDict<std::string, at::IValue>(method_compile_spec);
// Return the same string as a value for every key in method_compile_spec.
auto handles = c10::Dict<std::string, std::string>();
for (auto it = spec.begin(), end = spec.end(); it != end; ++it) {
handles.insert(it->key(), it->key());
}
return c10::impl::toGenericDict(handles);
}
c10::impl::GenericList execute(
c10::IValue handle,
c10::impl::GenericList inputs) override {
TORCH_INTERNAL_ASSERT(handle.isString());
TORCH_INTERNAL_ASSERT(inputs.size() > 0);
c10::List<at::Tensor> output_list;
// Implement simple accumulator and negative accumulator (?) ops. Return one
// or both of them depending on the handle to make sure multiple outputs are
// handled.
c10::IValue value = inputs[0];
at::Tensor accum = value.toTensor();
accum = accum.clone();
at::Tensor sub_accum = value.toTensor();
sub_accum = sub_accum.clone();
for (size_t i = 1, e = inputs.size(); i < e; ++i) {
value = inputs[i];
accum.add_(value.toTensor(), 1.0);
sub_accum.sub_(value.toTensor(), 1.0);
}
if (handle.toStringRef() == "accum") {
output_list.emplace_back(accum);
} else if (handle.toStringRef() == "sub_accum") {
output_list.emplace_back(sub_accum);
} else if (handle.toStringRef() == "forward") {
output_list.emplace_back(accum);
output_list.emplace_back(sub_accum);
}
return c10::impl::toList(output_list);
}
};
c10::IValue preprocess(
const torch::jit::Module& mod,
const c10::Dict<c10::IValue, c10::IValue>& method_compile_spec,
const torch::jit::BackendDebugHandleGenerator& generate_debug_handles) {
return mod._ivalue();
}
// clang-format off
# if defined(_WIN32)
# if defined(custom_ops_EXPORTS)
# define CUSTOM_BACKEND_API __declspec(dllexport)
# else
# define CUSTOM_BACKEND_API __declspec(dllimport)
# endif
# else
# define CUSTOM_BACKEND_API
# endif
// clang-format on
CUSTOM_BACKEND_API std::string getBackendName();
} // namespace custom_backend
} // namespace torch