mirror of
https://github.com/zebrajr/pytorch.git
synced 2025-12-07 00:21:07 +01:00
Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/11876 Modern C++ api instead of macros, item() is aligned with Python frontend. caffe2::Tensor::capacity_nbytes is effecitvely unused and confusing w.r.t. caffe2::Tensor::nbytes(). codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCByte "item<uint8_t>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCLong "item<int64_t>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCInt "item<int32_t>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCDouble "item<double>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCFloat "item<float>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toByteData "data<uint8_t>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toLongData "data<int64_t>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toIntData "data<int32_t>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toDoubleData "data<double>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toFloatData "data<float>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCByte "item<uint8_t>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCLong "item<int64_t>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCInt "item<int32_t>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCDouble "item<double>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCFloat "item<float>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toByteData "data<uint8_t>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toLongData "data<int64_t>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toIntData "data<int32_t>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toDoubleData "data<double>" codemod -d hphp --extensions cc,cpp,cu,cuh,h,py,hpp,mm toFloatData "data<float>" codemod -d caffe2 --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCComplexDouble "item<std::complex<double>>" codemod -d tc --extensions cc,cpp,cu,cuh,h,py,hpp,mm toCFloat "item<float>" Reviewed By: ezyang Differential Revision: D9948572 fbshipit-source-id: 70c9f5390d92b82c85fdd5f8a5aebca338ab413c
447 lines
15 KiB
C++
447 lines
15 KiB
C++
#pragma once
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// Parse arguments to Python functions implemented in C++
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// This is similar to PyArg_ParseTupleAndKeywords(), but specifically handles
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// the types relevant to PyTorch and distinguishes between overloaded function
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// signatures.
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//
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// Example:
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//
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// static PythonArgParser parser({
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// "norm(Scalar p, int64_t dim, bool keepdim=False)",
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// "norm(Scalar p=2)",
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// });
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// ParsedArgs<3> parsed_args;
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// auto r = parser.parse(args, kwargs, parsed_args);
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// if (r.idx == 0) {
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// norm(r.scalar(0), r.int64(1), r.bool(0));
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// } else {
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// norm(r.scalar(0));
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// }
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//
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// We auto-generate most uses of PythonArgParser; the generated files
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// are torch/csrc/autograd/generated/python_*.cpp
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//
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// Some gotchas that you should watch out for:
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//
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// - Note [Order of overloads matters]
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// Order of overloads matters. A set of input arguments may
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// bind to multiple argument specs; we will always pick the
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// first one in PythonArgParser. However, when you are writing
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// overloads in, e.g., native_functions.yaml, you don't have to
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// worry about what order you write them, because the code
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// generation logic always gives the overloads a canonical
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// order, where Tensor overloads come first, before Scalar overloads.
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// This logic is in sort_declarations in
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// tools/autograd/gen_python_functions.py
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//
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// - Zero-dim tensors (e.g., torch.tensor(2)) bind to both
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// Scalar and Tensor, UNLESS they require grad (in which case
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// they only bind to Tensor).
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#include "torch/csrc/python_headers.h"
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#include "torch/csrc/Device.h"
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#include "torch/csrc/Dtype.h"
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#include "torch/csrc/DynamicTypes.h"
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#include "torch/csrc/Exceptions.h"
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#include "torch/csrc/Generator.h"
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#include "torch/csrc/autograd/generated/VariableType.h"
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#include "torch/csrc/autograd/python_variable.h"
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#include "torch/csrc/jit/tracer.h"
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#include "torch/csrc/tensor/python_tensor.h"
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#include "torch/csrc/utils/numpy_stub.h"
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#include "torch/csrc/utils/object_ptr.h"
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#include "torch/csrc/utils/python_numbers.h"
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#include "torch/csrc/utils/python_strings.h"
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#include "torch/csrc/autograd/variable.h"
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#include <ATen/ATen.h>
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#include <array>
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#include <cstddef>
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#include <memory>
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#include <sstream>
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#include <string>
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#include <vector>
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namespace torch {
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enum class ParameterType {
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TENSOR, SCALAR, INT64, DOUBLE, TENSOR_LIST, INT_LIST, GENERATOR,
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BOOL, STORAGE, PYOBJECT, SCALARTYPE, LAYOUT, DEVICE, STRING
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};
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struct FunctionParameter;
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struct FunctionSignature;
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struct PythonArgs;
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// Contains bound Python arguments in declaration order
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template<int N>
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struct ParsedArgs {
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PyObject* args[N];
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};
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struct PythonArgParser {
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explicit PythonArgParser(std::vector<std::string> fmts, bool traceable=false);
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template<int N>
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inline PythonArgs parse(PyObject* args, PyObject* kwargs, ParsedArgs<N>& dst);
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private:
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[[noreturn]]
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void print_error(PyObject* args, PyObject* kwargs, PyObject* parsed_args[]);
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PythonArgs raw_parse(PyObject* args, PyObject* kwargs, PyObject* parsed_args[]);
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std::vector<FunctionSignature> signatures_;
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std::string function_name;
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ssize_t max_args;
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bool traceable;
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};
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struct PythonArgs {
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PythonArgs(int idx, bool traceable, const FunctionSignature& signature, PyObject** args)
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: idx(idx)
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, traceable(traceable)
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, signature(signature)
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, args(args) {}
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int idx;
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bool traceable;
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const FunctionSignature& signature;
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PyObject** args;
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inline at::Tensor tensor(int i);
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inline at::Scalar scalar(int i);
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inline at::Scalar scalarWithDefault(int i, at::Scalar default_scalar);
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inline std::vector<at::Tensor> tensorlist(int i);
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template<int N>
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inline std::array<at::Tensor, N> tensorlist_n(int i);
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inline std::vector<int64_t> intlist(int i);
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inline std::vector<int64_t> intlistWithDefault(int i, std::vector<int64_t> default_intlist);
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inline at::Generator* generator(int i);
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inline at::Storage storage(int i);
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inline at::ScalarType scalartype(int i);
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inline at::ScalarType scalartypeWithDefault(int i, at::ScalarType default_scalartype);
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inline at::optional<at::ScalarType> scalartypeOptional(int i);
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inline const THPLayout& layout(int i);
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inline const THPLayout& layoutWithDefault(int i, const THPLayout& default_layout);
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inline at::Device device(int i);
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inline at::Device deviceWithDefault(int i, const at::Device& default_device);
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inline at::optional<at::Device> deviceOptional(int i);
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inline std::string string(int i);
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inline PyObject* pyobject(int i);
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inline int64_t toInt64(int i);
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inline int64_t toInt64WithDefault(int i, int64_t default_int);
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inline double toDouble(int i);
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inline double toDoubleWithDefault(int i, double default_double);
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inline bool toBool(int i);
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inline bool toBoolWithDefault(int i, bool default_bool);
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inline bool isNone(int i);
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};
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struct FunctionSignature {
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explicit FunctionSignature(const std::string& fmt);
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bool parse(PyObject* args, PyObject* kwargs, PyObject* dst[], bool raise_exception);
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std::string toString() const;
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std::string name;
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std::vector<FunctionParameter> params;
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ssize_t min_args;
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ssize_t max_args;
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ssize_t max_pos_args;
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bool hidden;
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bool deprecated;
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};
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struct FunctionParameter {
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FunctionParameter(const std::string& fmt, bool keyword_only);
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bool check(PyObject* obj);
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void set_default_str(const std::string& str);
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std::string type_name() const;
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ParameterType type_;
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bool optional;
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bool allow_none;
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bool keyword_only;
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bool allow_numbers_as_tensors = false;
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int size;
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std::string name;
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// having this as a raw PyObject * will presumably leak it, but these are only held by static objects
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// anyway, and Py_Finalize can already be called when this is destructed.
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PyObject *python_name;
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at::Scalar default_scalar;
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std::vector<int64_t> default_intlist;
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union {
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bool default_bool;
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int64_t default_int;
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double default_double;
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at::ScalarType default_scalartype;
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THPLayout* default_layout;
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};
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};
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template<int N>
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inline PythonArgs PythonArgParser::parse(PyObject* args, PyObject* kwargs, ParsedArgs<N>& dst) {
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if (N < max_args) {
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throw ValueError("PythonArgParser: dst ParsedArgs buffer does not have enough capacity, expected %d (got %d)",
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(int)max_args, N);
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}
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return raw_parse(args, kwargs, dst.args);
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}
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inline at::Tensor PythonArgs::tensor(int i) {
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PyObject* obj = args[i];
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if (!obj) return at::Tensor();
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if (!THPVariable_Check(obj)) {
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at::Scalar scalar;
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if (THPUtils_checkLong(obj)) {
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scalar = at::Scalar(THPUtils_unpackLong(obj));
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} else if (THPUtils_checkDouble(obj)) {
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scalar = at::Scalar(THPUtils_unpackDouble(obj));
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} else {
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// NB: Are you here because you passed None to a Variable method,
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// and you expected an undefined tensor to be returned? Don't add
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// a test for Py_None here; instead, you need to mark the argument
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// as *allowing none*; you can do this by writing 'Tensor?' instead
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// of 'Tensor' in the ATen metadata.
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throw TypeError("expected Tensor as argument %d, but got %s", i,
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Py_TYPE(obj)->tp_name);
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}
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auto tensor = scalar_to_tensor(scalar);
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tensor.unsafeGetTensorImpl()->set_wrapped_number(true);
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return autograd::make_variable(tensor);
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}
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return reinterpret_cast<THPVariable*>(obj)->cdata;
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}
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inline at::Scalar PythonArgs::scalar(int i) {
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return scalarWithDefault(i, signature.params[i].default_scalar);
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}
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inline at::Scalar PythonArgs::scalarWithDefault(int i, at::Scalar default_scalar) {
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if (!args[i]) return default_scalar;
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// Zero-dim tensors are converted to Scalars as-is. Note this doesn't currently
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// handle most NumPy scalar types except np.float64.
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if (THPVariable_Check(args[i])) {
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return at::_local_scalar(((THPVariable*)args[i])->cdata);
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}
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if (THPUtils_checkLong(args[i])) {
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return at::Scalar(static_cast<int64_t>(THPUtils_unpackLong(args[i])));
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}
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if (PyComplex_Check(args[i])) {
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return at::Scalar(THPUtils_unpackComplexDouble(args[i]));
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}
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return at::Scalar(THPUtils_unpackDouble(args[i]));
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}
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inline std::vector<at::Tensor> PythonArgs::tensorlist(int i) {
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if (!args[i]) return std::vector<at::Tensor>();
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PyObject* arg = args[i];
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auto tuple = PyTuple_Check(arg);
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auto size = tuple ? PyTuple_GET_SIZE(arg) : PyList_GET_SIZE(arg);
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std::vector<at::Tensor> res(size);
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for (int idx = 0; idx < size; idx++) {
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PyObject* obj = tuple ? PyTuple_GET_ITEM(arg, idx) : PyList_GET_ITEM(arg, idx);
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if (!THPVariable_Check(obj)) {
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throw TypeError("expected Tensor as element %d in argument %d, but got %s",
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idx, i, Py_TYPE(args[i])->tp_name);
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}
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res[idx] = reinterpret_cast<THPVariable*>(obj)->cdata;
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}
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return res;
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}
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template<int N>
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inline std::array<at::Tensor, N> PythonArgs::tensorlist_n(int i) {
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auto res = std::array<at::Tensor, N>();
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PyObject* arg = args[i];
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if (!arg) return res;
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auto tuple = PyTuple_Check(arg);
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auto size = tuple ? PyTuple_GET_SIZE(arg) : PyList_GET_SIZE(arg);
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if (size != N) {
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throw TypeError("expected tuple of %d elements but got %d", N, (int)size);
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}
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for (int idx = 0; idx < size; idx++) {
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PyObject* obj = tuple ? PyTuple_GET_ITEM(arg, idx) : PyList_GET_ITEM(arg, idx);
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if (!THPVariable_Check(obj)) {
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throw TypeError("expected Tensor as element %d in argument %d, but got %s",
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idx, i, Py_TYPE(args[i])->tp_name);
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}
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res[idx] = reinterpret_cast<THPVariable*>(obj)->cdata;
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}
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return res;
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}
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inline std::vector<int64_t> PythonArgs::intlist(int i) {
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return intlistWithDefault(i, signature.params[i].default_intlist);
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}
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inline std::vector<int64_t> PythonArgs::intlistWithDefault(int i, std::vector<int64_t> default_intlist) {
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if (!args[i]) return default_intlist;
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PyObject* arg = args[i];
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auto size = signature.params[i].size;
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if (size > 0 && THPUtils_checkLong(arg)) {
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return std::vector<int64_t>(size, THPUtils_unpackIndex(arg));
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}
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auto tuple = PyTuple_Check(arg);
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size = tuple ? PyTuple_GET_SIZE(arg) : PyList_GET_SIZE(arg);
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std::vector<int64_t> res(size);
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for (int idx = 0; idx < size; idx++) {
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PyObject* obj = tuple ? PyTuple_GET_ITEM(arg, idx) : PyList_GET_ITEM(arg, idx);
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try {
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// Elements of torch.Size are tensors during tracing, and we need to record extra
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// information before they are turned into an IntList
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if (traceable && jit::tracer::isTracing() && THPVariable_Check(obj)) {
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auto & var = THPVariable_Unpack(obj);
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jit::tracer::ArgumentStash::stashIntListElem(
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signature.params[i].name, size, idx, var);
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res[idx] = var.item<int64_t>();
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continue;
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} else {
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res[idx] = THPUtils_unpackIndex(obj);
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}
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} catch (std::runtime_error &e) {
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throw TypeError("%s(): argument '%s' must be %s, but found element of type %s at pos %d",
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signature.name.c_str(), signature.params[i].name.c_str(),
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signature.params[i].type_name().c_str(), Py_TYPE(obj)->tp_name, idx + 1);
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}
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}
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return res;
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}
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inline at::ScalarType PythonArgs::scalartypeWithDefault(int i, at::ScalarType default_scalartype) {
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if (!args[i]) return default_scalartype;
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return scalartype(i);
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}
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inline at::ScalarType PythonArgs::scalartype(int i) {
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if (!args[i]) {
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auto scalartype = signature.params[i].default_scalartype;
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return (scalartype == at::ScalarType::Undefined) ?
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torch::tensors::get_default_tensor_type().scalarType() : scalartype;
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}
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return reinterpret_cast<THPDtype*>(args[i])->scalar_type;
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}
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inline at::optional<at::ScalarType> PythonArgs::scalartypeOptional(int i) {
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if (!args[i]) return at::nullopt;
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return scalartype(i);
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}
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inline const THPLayout& PythonArgs::layout(int i) {
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if (!args[i]) return *signature.params[i].default_layout;
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return *reinterpret_cast<THPLayout*>(args[i]);
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}
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inline const THPLayout& PythonArgs::layoutWithDefault(int i, const THPLayout& default_layout) {
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if (!args[i]) return default_layout;
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return layout(i);
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}
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static std::string cuda_str = "cuda";
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static std::string cpu_str = "cpu";
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static std::string cuda_prefix = "cuda:";
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static std::string cpu_prefix = "cpu:";
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inline at::Device PythonArgs::device(int i) {
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if (!args[i]) {
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const auto& default_tensor_type = torch::tensors::get_default_tensor_type();
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return at::Device(default_tensor_type.device_type());
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}
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if (THPDevice_Check(args[i])) {
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const auto device = reinterpret_cast<THPDevice*>(args[i]);
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return device->device;
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}
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if (THPUtils_checkLong(args[i])) {
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const auto device_index = THPUtils_unpackLong(args[i]);
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AT_CHECK(device_index >= 0, "Device index must not be negative");
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return at::Device(at::DeviceType::CUDA, device_index);
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}
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const std::string device_str = THPUtils_unpackString(args[i]);
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if (device_str == cpu_str) {
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return at::Device(at::DeviceType::CPU);
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} else if (device_str == cuda_str) {
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return at::Device(at::DeviceType::CUDA);
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} else if (device_str.compare(0, cpu_prefix.length(), cpu_prefix) == 0) {
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const auto device_index = std::stoi(device_str.substr(cpu_prefix.length()));
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AT_CHECK(device_index >= 0, "Device index must not be negative");
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return at::Device(at::DeviceType::CPU, device_index);
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} else if (device_str.compare(0, cuda_prefix.length(), cuda_prefix) == 0) {
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const auto device_index = std::stoi(device_str.substr(cuda_prefix.length()));
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AT_CHECK(device_index >= 0, "Device index must not be negative");
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return at::Device(at::DeviceType::CUDA, device_index);
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}
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throw torch::TypeError("only \"cuda\" and \"cpu\" are valid device types, got %s", device_str.c_str());
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}
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inline at::Device PythonArgs::deviceWithDefault(int i, const at::Device& default_device) {
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if (!args[i]) return default_device;
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return device(i);
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}
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inline at::optional<at::Device> PythonArgs::deviceOptional(int i) {
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if (!args[i]) return at::nullopt;
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return device(i);
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}
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inline std::string PythonArgs::string(int i) {
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if (!args[i]) return "";
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return THPUtils_unpackString(args[i]);
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}
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inline int64_t PythonArgs::toInt64(int i) {
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if (!args[i]) return signature.params[i].default_int;
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return THPUtils_unpackLong(args[i]);
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}
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inline int64_t PythonArgs::toInt64WithDefault(int i, int64_t default_int) {
|
|
if (!args[i]) return default_int;
|
|
return toInt64(i);
|
|
}
|
|
|
|
inline double PythonArgs::toDouble(int i) {
|
|
if (!args[i]) return signature.params[i].default_double;
|
|
return THPUtils_unpackDouble(args[i]);
|
|
}
|
|
|
|
inline double PythonArgs::toDoubleWithDefault(int i, double default_double) {
|
|
if (!args[i]) return default_double;
|
|
return toDouble(i);
|
|
}
|
|
|
|
inline bool PythonArgs::toBool(int i) {
|
|
if (!args[i]) return signature.params[i].default_bool;
|
|
return args[i] == Py_True;
|
|
}
|
|
|
|
inline bool PythonArgs::toBoolWithDefault(int i, bool default_bool) {
|
|
if (!args[i]) return default_bool;
|
|
return toBool(i);
|
|
}
|
|
|
|
inline bool PythonArgs::isNone(int i) {
|
|
return args[i] == nullptr;
|
|
}
|
|
|
|
inline at::Generator* PythonArgs::generator(int i) {
|
|
if (!args[i]) return nullptr;
|
|
return reinterpret_cast<THPGenerator*>(args[i])->cdata;
|
|
}
|
|
|
|
inline at::Storage PythonArgs::storage(int i) {
|
|
if (!args[i]) return at::Storage();
|
|
return createStorage(args[i]);
|
|
}
|
|
|
|
inline PyObject* PythonArgs::pyobject(int i) {
|
|
if (!args[i]) return Py_None;
|
|
return args[i];
|
|
}
|
|
|
|
} // namespace torch
|