/* Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. */ #include "paddle/fluid/pybind/imperative.h" #include #include #include #include #include #include #include #include #include #include #include #include #include #include "paddle/fluid/eager/api/all.h" #include "paddle/fluid/framework/convert_utils.h" #include "paddle/fluid/framework/scope_guard.h" #include "paddle/fluid/imperative/all_reduce.h" #include "paddle/fluid/imperative/amp_auto_cast.h" #include "paddle/fluid/imperative/basic_engine.h" #include "paddle/fluid/imperative/bkcl_context.h" #include "paddle/fluid/imperative/cncl_context.h" #include "paddle/fluid/imperative/data_loader.h" #include "paddle/fluid/imperative/gloo_context.h" #include "paddle/fluid/imperative/hccl_context.h" #include "paddle/fluid/imperative/heter_ccl_context.h" #include "paddle/fluid/imperative/hooks.h" #include "paddle/fluid/imperative/layer.h" #include "paddle/fluid/imperative/nccl_context.h" #include "paddle/fluid/imperative/partial_grad_engine.h" #include "paddle/fluid/imperative/profiler.h" #include "paddle/fluid/imperative/py_layer_fwd.h" #include "paddle/fluid/imperative/reducer.h" #include "paddle/fluid/imperative/tracer.h" #include "paddle/fluid/imperative/type_defs.h" #include "paddle/fluid/memory/allocation/mmap_allocator.h" #include "paddle/fluid/operators/utils.h" #include "paddle/fluid/pybind/op_function.h" #include "paddle/fluid/pybind/pybind_boost_headers.h" #include "paddle/fluid/pybind/slice_utils.h" #include "paddle/fluid/pybind/tensor_py.h" #include "paddle/phi/core/compat/arg_map_context.h" namespace paddle { namespace pybind { PyTypeObject *g_varbase_pytype = nullptr; namespace py = ::pybind11; template static T PyObjectCast(PyObject *obj) { try { return py::cast(py::handle(obj)); } catch (py::cast_error &) { PADDLE_THROW(platform::errors::InvalidArgument( "Python object is not type of %s", typeid(T).name())); } } class PyVariableWrapperHook : public imperative::VariableWrapperHook { public: explicit PyVariableWrapperHook(PyObject *func) : py_func_(func) { Py_INCREF(py_func_); } ~PyVariableWrapperHook() { py::gil_scoped_acquire gil; Py_DECREF(py_func_); } std::shared_ptr operator()( const std::shared_ptr &var) override { py::gil_scoped_acquire gil; VLOG(3) << "Call PyVariableWrapperHook for var " << var->Name(); // 1. unpack temp VarBase from VariableWrapper std::shared_ptr tmp_varbase = std::make_shared(var); // 2. call hook and return PyObject *res = nullptr; try { res = PyObject_CallFunctionObjArgs(py_func_, py::cast(tmp_varbase).ptr(), nullptr); } catch (platform::EnforceNotMet &e) { throw std::move(e); } catch (std::exception &e) { PADDLE_THROW(platform::errors::Unavailable( "Hook function of Tensor raises an exception: %s.", e.what())); } catch (...) { PADDLE_THROW(platform::errors::Fatal( "Hook function of Tensor raises an unknown exception.")); } PADDLE_ENFORCE_NOT_NULL(res, platform::errors::Unavailable( "Hook function of Tensor return a nullptr.")); if (res == Py_None) { return var; } return PyObjectCast>(res)->SharedVar(); } private: PyObject *py_func_; }; static const platform::Place PyObjectToPlace(const py::object &place_obj) { if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else if (py::isinstance(place_obj)) { return place_obj.cast(); } else { PADDLE_THROW(platform::errors::InvalidArgument( "Place should be one of " "Place/CPUPlace/XPUPlace/CUDAPlace/CUDAPinnedPlace/NPUPlace/MLUPlace/" "CustomPlace")); } } // only initialize varbase, but not its tensor. static void InitVarBaseOnly(imperative::VarBase *self, const std::string &name, bool persistable = false, int stop_gradient = -1) { auto name_ = name == "" ? imperative::GetCurrentTracer()->GenerateUniqueName( "generated_tensor") : name; VLOG(5) << "Init Tensor as: / name: " << name_ << " / persistable: " << persistable << " / stop_gradient: " << stop_gradient; new (self) imperative::VarBase(name_); if (stop_gradient != -1) { self->SetOverridedStopGradient(stop_gradient); } self->SetPersistable(persistable); self->SetType(framework::proto::VarType::LOD_TENSOR); } // initialize varbase and its tensor. static void InitVarBaseAndTensor( imperative::VarBase *self, const py::array &array, const platform::Place &place, const std::string &name, bool persistable = false, bool zero_copy = false, int stop_gradient = -1) { InitVarBaseOnly(self, name, persistable, stop_gradient); auto *tensor = self->MutableVar()->GetMutable(); VLOG(4) << "zero_copy: " << zero_copy; if (platform::is_cpu_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else if (platform::is_xpu_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else if (platform::is_gpu_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else if (platform::is_cuda_pinned_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else if (platform::is_npu_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else if (platform::is_mlu_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else if (platform::is_custom_place(place)) { SetTensorFromPyArray(tensor, array, place, zero_copy); } else { PADDLE_THROW(platform::errors::InvalidArgument( "Place should be one of " "CPUPlace/XPUPlace/CUDAPlace/CUDAPinnedPlace/NPUPlace/MLUPlace")); } self->SetDataType(framework::TransToProtoVarType(tensor->dtype())); } static void InitVarBaseFromNumpyWithKwargs(imperative::VarBase *self, const py::kwargs &kwargs) { VLOG(4) << "Init VarBase from kwargs: "; auto persistable = kwargs.contains("persistable") ? kwargs["persistable"].cast() : false; auto zero_copy = kwargs.contains("zero_copy") ? kwargs["zero_copy"].cast() : false; auto name = kwargs.contains("name") ? kwargs["name"].cast() : ""; auto stop_gradient = kwargs.contains("stop_gradient") ? kwargs["stop_gradient"].cast() : -1; auto default_place = imperative::GetCurrentTracer()->ExpectedPlace(); if (kwargs.contains("value")) { auto array = kwargs["value"].cast(); // place is only used when array is given, otherwise, it is meaningless and // ignored auto place = kwargs.contains("place") ? PyObjectToPlace(kwargs["place"]) : default_place; InitVarBaseAndTensor(self, array, place, name, persistable, zero_copy, stop_gradient); } else { InitVarBaseOnly(self, name, persistable, stop_gradient); } } template static void InitVarBaseFromNumpyWithArg(imperative::VarBase *self, const py::array &array, const P &place, bool persistable = false, bool zero_copy = false, std::string name = "", int stop_gradient = -1) { VLOG(4) << "Init VarBase from Arg: "; // 0: self, 1: value, 2: place, 3: persistable, 4: zero_copy, 5: name , 6: // stop_gradient if (name == "") { name = imperative::GetCurrentTracer()->GenerateUniqueName("generated_tensor"); } VLOG(5) << "Init Tensor as: / name: " << name << " / persistable: " << persistable << " / zero_copy: " << zero_copy << " / stop_gradient: " << stop_gradient << " / at " << place; new (self) imperative::VarBase(name); self->SetPersistable(persistable); auto *tensor = self->MutableVar()->GetMutable(); if (stop_gradient != -1) { self->SetOverridedStopGradient(stop_gradient); } SetTensorFromPyArray

(tensor, array, place, zero_copy); self->SetType(framework::proto::VarType::LOD_TENSOR); self->SetDataType(framework::TransToProtoVarType(tensor->dtype())); } static void InitVarBaseFromNumpyWithArgDefault(imperative::VarBase *self, const py::array &array) { auto place = imperative::GetCurrentTracer()->ExpectedPlace(); VLOG(4) << "Init VarBase from numpy at " << place; InitVarBaseAndTensor(self, array, place, ""); } static void InitVarBaseFromTensorWithArgDefault(imperative::VarBase *self, const framework::Tensor &tensor, const std::string &name) { VLOG(4) << "Init VarBase"; auto place = imperative::GetCurrentTracer()->ExpectedPlace(); auto name_ = name == "" ? imperative::GetCurrentTracer()->GenerateUniqueName( "generated_tensor") : name; new (self) imperative::VarBase(name_); self->SetPersistable(false); self->SetType(framework::proto::VarType::LOD_TENSOR); self->SetDataType(framework::TransToProtoVarType(tensor.dtype())); auto *new_tensor = self->MutableVar()->GetMutable(); // Same place,share data directly if (place == tensor.place()) { new_tensor->ShareDataWith(tensor); VLOG(4) << "Same place, do ShareDataWith"; } else { framework::TensorCopy(tensor, place, new_tensor); VLOG(4) << "Different place, do TensorCopy"; } } template static void InitVarBaseFromTensorWithArg(imperative::VarBase *self, const framework::Tensor &tensor, const P &place, const std::string &name) { VLOG(4) << "Init VarBase"; auto name_ = name == "" ? imperative::GetCurrentTracer()->GenerateUniqueName( "generated_tensor") : name; new (self) imperative::VarBase(name_); self->SetPersistable(false); self->SetType(framework::proto::VarType::LOD_TENSOR); self->SetDataType(framework::TransToProtoVarType(tensor.dtype())); auto *new_tensor = self->MutableVar()->GetMutable(); // Same place,share data directly if (platform::is_same_place(place, tensor.place())) { new_tensor->ShareDataWith(tensor); VLOG(4) << "Same place, do ShareDataWith"; } else { framework::TensorCopy(tensor, place, new_tensor); VLOG(4) << "Different place, do TensorCopy"; } } static std::string GetTypeName(const imperative::VarBase &var) { if (var.Type() == framework::proto::VarType::RAW) { return "RAW"; } else if (!var.Var().IsInitialized()) { return "nullptr"; } else { return framework::ToTypeName(var.Var().Type()); } } Py_ssize_t GetSliceIndexFromPyObject(PyObject *obj) { if (py::isinstance(obj)) { VLOG(6) << "Call GetSliceIndexFromTensor in Imperative"; return GetSliceIndexFromTensor( py::cast>(obj) ->Var() .Get()); } else { PADDLE_THROW(platform::errors::InvalidArgument( "We should only get paddle::experimental::Tensor or VarBase in this " "method, when you reach this means we got another type index.")); } } bool PyCheckTensor(PyObject *obj) { return py::isinstance(obj); } using PyNameVarBaseMap = std::unordered_map; // NOTE(zjl): py::handle is a very light wrapper of PyObject *. // Unlike py::object, py::handle does not change reference count of PyObject *. static std::vector> GetVarBaseListFromPyHandle(const py::handle &handle) { PyObject *py_obj = handle.ptr(); // get underlying PyObject // Python None is not nullptr in C++! if (!py_obj || py_obj == Py_None) { return {}; } std::vector> result; if (PyList_Check(py_obj)) { // List of VarBase size_t len = PyList_GET_SIZE(py_obj); result.reserve(len); for (size_t i = 0; i < len; ++i) { PyObject *py_ivar = PyList_GET_ITEM(py_obj, i); PADDLE_ENFORCE_NOT_NULL( py_ivar, platform::errors::InvalidArgument("Python Object is NULL")); result.emplace_back( PyObjectCast>(py_ivar)); } } else if (PyTuple_Check(py_obj)) { // Tuple of VarBase size_t len = PyTuple_GET_SIZE(py_obj); result.reserve(len); for (size_t i = 0; i < len; ++i) { PyObject *py_ivar = PyTuple_GET_ITEM(py_obj, i); PADDLE_ENFORCE_NOT_NULL( py_ivar, platform::errors::InvalidArgument("Python Object is NULL")); result.emplace_back( PyObjectCast>(py_ivar)); } } else { // VarBase result.emplace_back( PyObjectCast>(py_obj)); } return result; } // cast numpy type form S to T, this may allocate new memory template static py::array_t CastNumpyType(py::array_t array) { if (std::is_same::value) { return array; } auto dim = array.ndim(); std::vector result_shape(dim); for (auto i = 0; i < dim; i++) { result_shape[i] = array.shape(i); } py::array_t result(result_shape); return py::vectorize([](S s) { return static_cast(s); })(array); } template static py::array_t CastNumpyArray(const py::object &array) { if (py::isinstance>(array)) { return CastNumpyType(array.cast>()); } else if (py::isinstance>(array)) { return CastNumpyType(array.cast>()); } else if (py::isinstance>(array)) { return CastNumpyType(array.cast>()); } else if (py::isinstance>(array)) { return CastNumpyType(array.cast>()); } else if (py::isinstance>(array)) { return CastNumpyType(array.cast>()); } else { PADDLE_THROW(platform::errors::InvalidArgument( "Value type error. The assign numpy value allows integer, float, " "double and bool, " "but received %s.", Py_TYPE(array.ptr())->tp_name)); } // can't reach here return py::array_t(); } static imperative::NameVarBaseMap ConvertToNameVarBaseMap( const PyNameVarBaseMap &map) { imperative::NameVarBaseMap result; for (auto &pair : map) { auto var_vec = GetVarBaseListFromPyHandle(pair.second); if (!var_vec.empty()) { result.emplace(pair.first, std::move(var_vec)); } } PADDLE_ENFORCE_EQ( PyErr_Occurred(), nullptr, platform::errors::InvalidArgument(py::str(py::handle(PyErr_Occurred())))); return result; } template static void VarBaseCopy(std::shared_ptr &src, // NOLINT imperative::VarBase &dst, // NOLINT const P &dst_device, const bool blocking) { if (dst.SharedVar()->IsEmpty()) { VLOG(3) << "deep copy Variable from " << src->Name() << " to " << dst.Name(); dst.SetPersistable(src->Persistable()); dst.SetDataType(src->DataType()); dst.SetType(src->Type()); dst.SetOverridedStopGradient(src->OverridedStopGradient()); if (!src->SharedVar()->IsEmpty()) { if (src->Var().IsType()) { auto &src_tensor = src->Var().Get(); auto *dst_tensor = dst.MutableVar()->GetMutable(); dst_tensor->set_lod(src_tensor.lod()); framework::TensorCopy(src_tensor, dst_device, dst_tensor); if (blocking) { platform::DeviceContextPool::Instance().Get(dst_device)->Wait(); auto src_device = src_tensor.place(); if (!(src_device == dst_device)) { platform::DeviceContextPool::Instance().Get(src_device)->Wait(); } } } else if (src->Var().IsType()) { auto &src_selected_rows = src->Var().Get(); auto *dst_selected_rows = dst.MutableVar()->GetMutable(); dst_selected_rows->set_height(src_selected_rows.height()); dst_selected_rows->set_rows(src_selected_rows.rows()); framework::TensorCopy(src_selected_rows.value(), dst_device, dst_selected_rows->mutable_value()); if (blocking) { platform::DeviceContextPool::Instance().Get(dst_device)->Wait(); auto src_device = src_selected_rows.value().place(); if (!(src_device == dst_device)) { platform::DeviceContextPool::Instance().Get(src_device)->Wait(); } } } if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(src, dst_device); } } else { PADDLE_THROW(platform::errors::InvalidArgument( "The source Tensor(%s) can not copy when it is empty.", src->Name())); } } else { PADDLE_THROW(platform::errors::InvalidArgument( "The destion Tensor(%s) can not copy when it is not empty.", dst.Name())); } } // Bind Methods void BindImperative(py::module *m_ptr) { auto &m = *m_ptr; BindOpFunctions(&m); #ifndef _WIN32 // Dygraph DataLoader signal handler m.def("_set_process_pids", [](int64_t key, py::object &obj) { PADDLE_ENFORCE_EQ( py::isinstance(obj) || py::isinstance(obj), true, platform::errors::InvalidArgument( "The subprocess ids set in DataLoader is illegal." "Expected data type is tuple or list, but received %s", obj.get_type())); py::list pids = py::cast(obj); std::set pids_set = {}; for (size_t i = 0; i < pids.size(); i++) { pids_set.insert(pids[i].cast()); } imperative::SetLoadProcessPIDs(key, pids_set); }); m.def("_erase_process_pids", [](int64_t key) { imperative::EraseLoadProcessPIDs(key); }); m.def("_set_process_signal_handler", []() { imperative::SetLoadProcessSignalHandler(); }); m.def("_throw_error_if_process_failed", []() { imperative::ThrowErrorIfLoadProcessFailed(); }); // Dygraph DataLoader reader process & thread related functions m.def( "_convert_to_tensor_list", [](py::object &obj) -> py::list { // 0. input data check PADDLE_ENFORCE( py::isinstance(obj) || py::isinstance(obj), platform::errors::InvalidArgument( "The batch data read into DataLoader is illegal." "Expected data type is tuple or list, but received %s", obj.get_type())); py::list batch = py::cast(obj); py::list tensors; for (size_t i = 0; i < batch.size(); ++i) { // 1. cast to python array auto array = batch[i].cast(); PADDLE_ENFORCE_NE( string::Sprintf("%s", array.dtype()).compare("object"), 0, platform::errors::InvalidArgument( "Faild to convert input data to a regular ndarray.\n * " "Usually this means the input data contains nested " "lists with different lengths.\n * Check the reader " "function passed to 'set_(sample/sample_list/batch)" "_generator' to locate the data causes this issue.")); // 2. construcct LoDTensor framework::LoDTensor t; SetTensorFromPyArray(&t, array, platform::CPUPlace(), true); // 3. allocate shared memory void *data_ptr = t.data(); size_t data_size = t.numel() * framework::DataTypeSize(t.dtype()); auto shared_writer_holder = memory::allocation::AllocateMemoryMapWriterAllocation(data_size); // 4. maintain mmap fd set & backup ipc_name const std::string &ipc_name = shared_writer_holder->ipc_name(); memory::allocation::MemoryMapFdSet::Instance().Insert(ipc_name); // 5. copy data & reset holder memory::Copy(platform::CPUPlace(), shared_writer_holder->ptr(), platform::CPUPlace(), data_ptr, data_size); t.ResetHolder(shared_writer_holder); // 6. append to result list tensors.append(t); } return tensors; }, py::return_value_policy::take_ownership); m.def("_array_to_share_memory_tensor", [](py::object &obj) { // 1. cast to python array auto array = obj.cast(); PADDLE_ENFORCE_NE( string::Sprintf("%s", array.dtype()).compare("object"), 0, platform::errors::InvalidArgument( "Faild to convert input data to a regular ndarray.\n * " "Usually this means the input data contains nested " "lists with different lengths.\n * Check the reader " "function passed to 'set_(sample/sample_list/batch)" "_generator' to locate the data causes this issue.")); // 2. construcct LoDTensor framework::LoDTensor t; SetTensorFromPyArray(&t, array, platform::CPUPlace(), true); // 3. allocate shared memory void *data_ptr = t.data(); size_t data_size = t.numel() * framework::DataTypeSize(t.dtype()); auto shared_writer_holder = memory::allocation::AllocateMemoryMapWriterAllocation(data_size); // 4. maintain mmap fd set & backup ipc_name const std::string &ipc_name = shared_writer_holder->ipc_name(); memory::allocation::MemoryMapFdSet::Instance().Insert(ipc_name); // 5. copy data & reset holder memory::Copy(platform::CPUPlace(), shared_writer_holder->ptr(), platform::CPUPlace(), data_ptr, data_size); t.ResetHolder(shared_writer_holder); return t; }, py::return_value_policy::take_ownership); m.def("_remove_tensor_list_mmap_fds", [](py::list &tensor_list) { for (size_t i = 0; i < tensor_list.size(); ++i) { auto t = tensor_list[i].cast(); auto *mmap_writer_allocation = dynamic_cast( t.Holder().get()); PADDLE_ENFORCE_NOT_NULL( mmap_writer_allocation, platform::errors::NotFound("The shared memory of LoDTensor in " "DataLoader's child process has been " "released.")); memory::allocation::MemoryMapFdSet::Instance().Remove( mmap_writer_allocation->ipc_name()); } }); m.def("_cleanup_mmap_fds", []() { memory::allocation::MemoryMapFdSet::Instance().Clear(); }); #endif m.def("start_imperative_gperf_profiler", []() { imperative::StartProfile(); }); m.def("_set_eager_tracer", [](const std::shared_ptr &tracer) { egr::Controller::Instance().SetCurrentTracer(tracer); }); m.def("stop_imperative_gperf_profiler", []() { imperative::StopProfile(); }); m.def("_is_dygraph_debug_enabled", []() { return imperative::IsDebugEnabled(); }); m.def("_dygraph_debug_level", []() { return imperative::GetDebugLevel(); }); m.def("_switch_tracer", [](const std::shared_ptr &tracer) { if (egr::Controller::Instance().InEagerMode()) { egr::Controller::Instance().SetCurrentTracer(tracer); } imperative::SetCurrentTracer(tracer); }); m.def("_enable_eager_mode", []() { egr::Controller::Instance().SetInEagerMode(true); }); m.def("_disable_eager_mode", []() { egr::Controller::Instance().SetInEagerMode(false); }); m.def("_in_eager_mode", []() { return egr::Controller::Instance().InEagerMode(); }); py::class_> varbase( m, "VarBase", R"DOC()DOC"); g_varbase_pytype = (PyTypeObject *)varbase.ptr(); // NOLINT varbase.def_static("_alive_vars", &imperative::VarBase::AliveVarNames) .def("__init__", [](imperative::VarBase &self) { std::string name = imperative::GetCurrentTracer()->GenerateUniqueName( "generated_tensor"); new (&self) imperative::VarBase(name); }) .def("__init__", [](imperative::VarBase &self, framework::proto::VarType::Type dtype, const std::vector &dims, const py::handle &name, framework::proto::VarType::Type type, bool persistable) { VLOG(4) << "Init VarBase"; std::string act_name = ""; if (!name.ptr() || name.ptr() == Py_None) { act_name = imperative::GetCurrentTracer()->GenerateUniqueName( "generated_tensor"); } else { act_name = name.cast(); } new (&self) imperative::VarBase(act_name); self.SetPersistable(persistable); self.SetType(type); self.SetDataType(dtype); if (type == framework::proto::VarType::LOD_TENSOR) { auto *tensor = self.MutableVar()->GetMutable(); tensor->Resize(phi::make_ddim(dims)); } }) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArg, py::arg("value"), py::arg("place"), py::arg("persistable") = false, py::arg("zero_copy") = false, py::arg("name") = "", py::arg("stop_gradient") = -1) .def("__init__", &InitVarBaseFromNumpyWithArgDefault, py::arg("value")) .def("__init__", &InitVarBaseFromTensorWithArgDefault, py::arg("tensor"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromTensorWithArg, py::arg("tensor"), py::arg("place"), py::arg("name") = "") .def("__init__", &InitVarBaseFromNumpyWithKwargs) .def( "__setitem_varbase__", [](std::shared_ptr &self, py::handle _index, py::object &value_obj) { VLOG(4) << "Call __setitem_varbase__"; auto self_tensor = self->MutableVar()->GetMutable(); // NOTE(zhiqiu): PyTuple_Pack increases refcount while PyTuple_New // https://github.com/python/cpython/blob/24b63c695ae0a95b06379eaadace66735abac1e2/Objects/tupleobject.c#L251 PyObject *index_ptr = !PyTuple_Check(_index.ptr()) ? PyTuple_Pack(1, _index.ptr()) : _index.ptr(); DEFINE_PADDLE_SCOPE_GUARD([index_ptr, &_index]() { if (!PyTuple_Check(_index.ptr())) { Py_DECREF(index_ptr); VLOG(4) << "Call Py_DECREF"; } }); auto is_tensor = [](py::handle var) { if (!var.ptr() || var.ptr() == Py_None) { return false; } try { py::cast>(var); return true; } catch (py::cast_error &) { return false; } }; // NOTE(liym27): // Increase the version of VarBase self because __setitem__ is an // inplace operator for the VarBase self. self->BumpInplaceVersion(); // 1. Check argumnets bool parse_index = true; // Check whether _index can be parsed. const int size = PyTuple_GET_SIZE(index_ptr); for (int dim = 0; dim < size; ++dim) { PyObject *slice_item = PyTuple_GetItem(index_ptr, dim); if (!(PyCheckInteger(slice_item) || PySlice_Check(slice_item) || slice_item == Py_Ellipsis || slice_item == Py_None)) { parse_index = false; break; } } // 2. Call op set_value to speed up if the condition is met, // otherwise call TensorToPyArray. // TODO(liym27): Try not to call TensorToPyArray because it always // copys data to cpu place, which reduces performance. if (parse_index) { std::vector axes, starts, ends, steps, decrease_axes, none_axes, infer_flags, list_select_idxs; // if index is a list, list_select_flag will be true bool list_select_flag = false; ParseIndexingSlice(self_tensor, index_ptr, &axes, &starts, &ends, &steps, &decrease_axes, &none_axes, &infer_flags, &list_select_idxs, &list_select_flag); framework::AttributeMap attrs = {{"axes", axes}, {"starts", starts}, {"ends", ends}, {"steps", steps}, {"decrease_axes", decrease_axes}, {"none_axes", none_axes}}; imperative::NameVarBaseMap ins = {{"Input", {self}}}; imperative::NameVarBaseMap outs = {{"Out", {self}}}; const auto &tracer = imperative::GetCurrentTracer(); if (tracer->HasGrad()) { PADDLE_ENFORCE_EQ( self->IsLeaf() && !self->OverridedStopGradient(), false, platform::errors::InvalidArgument( "Leaf Tensor (%s) that doesn't stop gradient can't use " "inplace strategy.", self->Name())); } if (PyCheckTensor(value_obj.ptr())) { auto value_tensor = value_obj.cast>(); ins.insert({"ValueTensor", {value_tensor}}); // pass the stop_gradient from value to tensor if (!value_tensor->OverridedStopGradient() && self->OverridedStopGradient()) { self->SetOverridedStopGradient(false); } } else if (py::isinstance(value_obj)) { auto value_tensor = std::shared_ptr( new imperative::VarBase(false, tracer->GenerateUniqueName())); py::object value = value_obj; if (self->DataType() == framework::proto::VarType::FP32) { if (!py::isinstance>(value_obj)) { value = CastNumpyArray(value_obj); } } else if (self->DataType() == framework::proto::VarType::FP64) { if (!py::isinstance>(value_obj)) { value = CastNumpyArray(value_obj); } } else if (self->DataType() == framework::proto::VarType::INT32) { if (!py::isinstance>(value_obj)) { value = CastNumpyArray(value_obj); } } else if (self->DataType() == framework::proto::VarType::INT64) { if (!py::isinstance>(value_obj)) { value = CastNumpyArray(value_obj); } } else if (self->DataType() == framework::proto::VarType::BOOL) { if (!py::isinstance>(value_obj)) { value = CastNumpyArray(value_obj); } } else { PADDLE_THROW(platform::errors::InvalidArgument( "When assign a numpy.np value to a paddle.Tensor, " "the data type of the paddle.Tensor must be bool, " "float32, int32 or int64, " "please check the type of tensor.")); } SetTensorFromPyArray(value_tensor->MutableVar() ->GetMutable(), value, self->Place(), false); ins.insert({"ValueTensor", {value_tensor}}); } else { // convert the value to self data type if (py::isinstance(value_obj) || py::isinstance(value_obj) || py::isinstance(value_obj)) { if (self->DataType() == framework::proto::VarType::FP32) { attrs["fp32_values"] = std::vector{value_obj.cast()}; } else if (self->DataType() == framework::proto::VarType::FP64) { attrs["fp64_values"] = std::vector{value_obj.cast()}; } else if (self->DataType() == framework::proto::VarType::INT32) { attrs["int32_values"] = std::vector{value_obj.cast()}; } else if (self->DataType() == framework::proto::VarType::INT64) { attrs["int64_values"] = std::vector{value_obj.cast()}; } else if (self->DataType() == framework::proto::VarType::BOOL) { attrs["bool_values"] = std::vector{value_obj.cast()}; } else { PADDLE_THROW(platform::errors::InvalidArgument( "When assign a value to a paddle.Tensor, " "the data type of the paddle.Tensor must be bool, " "float32, int32 or int64, " "please check the type of tensor.")); } attrs["shape"] = std::vector{1}; } else { PADDLE_THROW(platform::errors::InvalidArgument( "Value type error. The assign value allows " "numpy.ndarray, integer, float or bool, " "but received %s.", Py_TYPE(value_obj.ptr()))); } } { // Release gil and do tracing py::gil_scoped_release release; tracer->TraceOp("set_value", ins, outs, std::move(attrs), {{"Input", "Out"}}); } } else { auto self_numpy = TensorToPyArray(*self_tensor); VLOG(4) << "parse_index is false"; if (is_tensor(_index)) { VLOG(4) << "index is tensor"; auto index_var = py::cast>(_index); auto index_tensor = index_var->MutableVar()->GetMutable(); auto index_numpy = TensorToPyArray(*index_tensor); self_numpy[index_numpy] = value_obj; } else { VLOG(4) << "index is not tensor"; self_numpy[_index] = value_obj; } SetTensorFromPyArray(self_tensor, self_numpy, self_tensor->place(), false); } }) .def("_getitem_index_not_tensor", [](std::shared_ptr &self, py::handle _index) { VLOG(4) << "Call _getitem_index_not_tensor"; std::vector slice_axes, slice_starts, slice_ends, slice_strides, decrease_axis, none_axes, infer_flags, list_select_idxs; // if index is a list, list_select_flag will be true bool list_select_flag = false; auto tensor = self->MutableVar()->GetMutable(); ParseIndexingSlice(tensor, _index.ptr(), &slice_axes, &slice_starts, &slice_ends, &slice_strides, &decrease_axis, &none_axes, &infer_flags, &list_select_idxs, &list_select_flag); // release gil and do tracing py::gil_scoped_release release; const auto &tracer = imperative::GetCurrentTracer(); auto out = slice_axes.empty() && !list_select_flag ? self : std::shared_ptr( new imperative::VarBase( tracer->GenerateUniqueName())); if (!slice_axes.empty()) { imperative::NameVarBaseMap ins = {{"Input", {self}}}; framework::AttributeMap attrs = { {"axes", slice_axes}, {"starts", slice_starts}, {"ends", slice_ends}, {"infer_flags", infer_flags}, {"decrease_axis", decrease_axis}}; imperative::NameVarBaseMap outs = {{"Out", {out}}}; std::string op_type = "slice"; for (auto stride : slice_strides) { if (stride != 1) { op_type = "strided_slice"; attrs.insert({"strides", slice_strides}); attrs.erase("decrease_axis"); break; } } tracer->TraceOp(op_type, ins, outs, std::move(attrs)); } if (!none_axes.empty()) { // Deal with cases when all axes are decreased. // After slice, the shape of out is [1], which should have been // [], but Paddle doesn't support scalar. // In order to ensure the correctness of the final shape of out, // one dimension of out needs to be decreased. // For example: // # x.shape: (2,3,4) // out = x[0, 1, 1, None] # out.shape : (1) if (static_cast(decrease_axis.size()) == tensor->dims().size()) { none_axes.pop_back(); } if (!none_axes.empty()) { // Deal with cases that decrease_axes is not empty // For example: // # x.shape: (2,3,4) // out = x[0, 0:2, None] # out.shape : (2, 1, 4) for (auto &axis : none_axes) { int len = 0; for (int da : decrease_axis) { if (da < axis) { len++; } } axis -= len; } imperative::NameVarBaseMap ins = {{"X", {out}}}; framework::AttributeMap attrs = {{"axes", none_axes}}; auto new_out = std::shared_ptr( new imperative::VarBase(tracer->GenerateUniqueName())); auto out_xshape = std::shared_ptr( new imperative::VarBase(tracer->GenerateUniqueName())); imperative::NameVarBaseMap outs = {{"Out", {new_out}}, {"XShape", {out_xshape}}}; tracer->TraceOp("unsqueeze2", ins, outs, std::move(attrs)); return new_out; } } // the index is a list if (list_select_flag) { auto select_index = std::shared_ptr( new imperative::VarBase(tracer->GenerateUniqueName())); auto *idx_tensor = select_index->MutableVar() ->GetMutable(); auto *dev_ctx = platform::DeviceContextPool::Instance().Get( tracer->ExpectedPlace()); paddle::framework::TensorFromVector(list_select_idxs, *dev_ctx, idx_tensor); imperative::NameVarBaseMap ins = {{"X", {self}}, {"Index", {select_index}}}; imperative::NameVarBaseMap outs = {{"Out", {out}}}; tracer->TraceOp("index_select", ins, outs, {{"dim", 0}}); } return out; }) .def( "_getitem_from_offset", [](std::shared_ptr &self, const py::args &args) { const auto &tensor = self->Var().Get(); PADDLE_ENFORCE_EQ( tensor.IsInitialized(), true, platform::errors::InvalidArgument( "Tensor of %s is Empty, please check if it has no data.", self->Name())); const auto &tensor_dims = tensor.dims(); std::vector dims(tensor_dims.size()); std::vector strides(tensor_dims.size()); size_t numel = 1; for (int i = tensor_dims.size() - 1; i >= 0; --i) { strides[i] = numel; dims[i] = static_cast(tensor_dims[i]); numel *= dims[i]; } size_t offset = 0; if (args.empty()) { PADDLE_ENFORCE_EQ( numel, 1, platform::errors::InvalidArgument( "only one element tensors can be converted to Python " "scalars when no input coordinates")); } else if (args.size() == 1) { offset = args[0].cast(); PADDLE_ENFORCE_LT( offset, numel, platform::errors::InvalidArgument( "index %d is out of bounds for size %d", offset, numel)); } else { PADDLE_ENFORCE_EQ(args.size(), dims.size(), platform::errors::InvalidArgument( "incorrect number of indices for Tensor")); for (size_t i = 0; i < args.size(); ++i) { size_t index = args[i].cast(); PADDLE_ENFORCE_LT( index, dims[i], platform::errors::InvalidArgument( "index %d is out fo bounds for axis %d with size %d", index, i, dims[i])); offset += index * strides[i]; } } #define TENSOR_TO_PY_SCALAR(T, proto_type) \ if (framework::TransToProtoVarType(tensor.dtype()) == proto_type) { \ std::string py_dtype_str = details::TensorDTypeToPyDTypeStr(proto_type); \ T b = TensorGetElement(tensor, offset); \ return py::array(py::dtype(py_dtype_str.c_str()), {}, {}, \ static_cast(&b)); \ } _ForEachDataType_(TENSOR_TO_PY_SCALAR); #undef TENSOR_TO_PY_SCALAR PADDLE_THROW(platform::errors::Unimplemented( "Unsupported tensor data type: %s", tensor.dtype())); }, py::return_value_policy::copy) .def("_inplace_version", [](imperative::VarBase &self) -> uint32_t { const auto &var = self.MutableVar(); PADDLE_ENFORCE_EQ( var->IsInitialized(), true, platform::errors::InvalidArgument( "Tensor of %s is Empty, please check if it has no data.", self.Name())); return var->CurrentInplaceVersion(); }) .def("_bump_inplace_version", [](std::shared_ptr &self) { // NOTE(liym27): _bump_inplace_version is only used for inplace // operation self->BumpInplaceVersion(); }, R"DOC( **Notes**: **This API is ONLY available in Dygraph mode.** **This is a very low level API. Users should not use it directly. ** Bump the version whenever the Tensor is modified through an inplace operation. )DOC") .def("numpy", [](imperative::VarBase &self) -> py::array { const auto &tensor = self.MutableVar()->Get(); PADDLE_ENFORCE_EQ( tensor.IsInitialized(), true, platform::errors::InvalidArgument( "Tensor of %s is Empty, please check if it has no data.", self.Name())); return TensorToPyArray(tensor, true); }, R"DOC( Returns a numpy array shows the value of current Tensor. Returns: ndarray: The numpy value of current Tensor. Returns type: ndarray: dtype is same as current Tensor Examples: .. code-block:: python import paddle import numpy as np data = np.random.uniform(-1, 1, [30, 10, 32]).astype('float32') linear = paddle.nn.Linear(32, 64) data = paddle.to_tensor(data) x = linear(data) print(x.numpy()) )DOC") .def("detach", [](const imperative::VarBase &self) -> std::shared_ptr { PADDLE_ENFORCE_EQ( self.Var().IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self.Name())); PADDLE_ENFORCE_EQ( self.Var().IsType() || self.Var().IsType(), true, platform::errors::InvalidArgument( "Type of Tensor[%s] must be LoDTensor or SelectedRows!", self.Name())); auto detach_var = std::make_shared( true, "detach_" + self.Name()); detach_var->SetPersistable(self.Persistable()); detach_var->SetType(self.Type()); detach_var->SetDataType(self.DataType()); if (self.Var().IsType()) { const auto &origin_tensor = self.Var().Get(); PADDLE_ENFORCE_EQ( origin_tensor.IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self.Name())); auto *detach_tensor = detach_var->MutableVar()->GetMutable(); detach_tensor->ShareDataWith(origin_tensor); // NOTE(liym27): Call ShareInplaceVersionCounterWith to share the // same TensorInplaceVersion, which is used to check whether // inplace // operations are correct. detach_tensor->ShareInplaceVersionCounterWith(origin_tensor); } else { const auto &origin_selected_rows = self.Var().Get(); PADDLE_ENFORCE_EQ( origin_selected_rows.value().IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self.Name())); auto *detach_selected_rows = detach_var->MutableVar()->GetMutable(); detach_selected_rows->set_height(origin_selected_rows.height()); detach_selected_rows->set_rows(origin_selected_rows.rows()); detach_selected_rows->mutable_value()->ShareDataWith( origin_selected_rows.value()); detach_selected_rows->mutable_value() ->ShareInplaceVersionCounterWith( origin_selected_rows.value()); } VLOG(3) << "The detached Tensor(" << detach_var->Name() << ") share data with " << self.Name(); return detach_var; }, py::return_value_policy::take_ownership, R"DOC( Returns a new Tensor, detached from the current graph. It will share data with origin Tensor and always doesn't have a Tensor copy. In addition, the detached Tensor doesn't provide gradient propagation. Returns: The detached Tensor. Examples: .. code-block:: python import paddle x = paddle.to_tensor(1.0, stop_gradient=False) detach_x = x.detach() detach_x[:] = 10.0 print(x) # Tensor(shape=[1], dtype=float32, place=CPUPlace, stop_gradient=False, # [10.]) y = x**2 y.backward() print(x.grad) # [20.0] print(detach_x.grad) # None, 'stop_gradient=True' by default detach_x.stop_gradient = False # Set stop_gradient to be False, supported auto-grad z = detach_x**3 z.backward() print(x.grad) # [20.0], detach_x is detached from x's graph, not affect each other print(detach_x.grad) # [300.0], detach_x has its own graph # Due to sharing of data with origin Tensor, There are some unsafe operations: y = 2 * x detach_x[:] = 5.0 y.backward() # It will raise Error: # one of the variables needed for gradient computation has been modified by an inplace operation. )DOC") .def("clear_gradient", &imperative::VarBase::ClearGradient, py::arg("set_to_zero") = true, R"DOC( Only for Tensor that has gradient, normally we use this for Parameters since other temporary Tensor doesen't has gradient. The Gradient of current Tensor will be set to ``0`` . Returns: None Examples: .. code-block:: python import paddle input = paddle.uniform([10, 2]) linear = paddle.nn.Linear(2, 3) out = linear(input) out.backward() print("Before clear_gradient, linear.weight.grad: {}".format(linear.weight.grad)) linear.weight.clear_gradient() print("After clear_gradient, linear.weight.grad: {}".format(linear.weight.grad)) )DOC") .def("_gradient_set_empty", &imperative::VarBase::_GradientSetEmpty, py::arg("set_is_empty") = true) .def("_is_gradient_set_empty", &imperative::VarBase::_IsGradientSetEmpty) .def("clone", [](std::shared_ptr &self) { const auto &tensor = self->Var().Get(); PADDLE_ENFORCE_EQ( tensor.IsInitialized(), true, platform::errors::InvalidArgument( "%s has not been initialized", self->Name())); auto tracer = imperative::GetCurrentTracer(); auto new_var = std::make_shared( true, tracer->GenerateUniqueName(self->Name() + "_clone")); framework::AttributeMap attrs; imperative::NameVarBaseMap ins = {{"X", {self}}}; imperative::NameVarBaseMap outs = {{"Out", {new_var}}}; tracer->TraceOp("assign", ins, outs, attrs); return new_var; }, py::return_value_policy::copy, R"DOC( Returns a new Tensor, which is clone of origin Tensor, and it remains in the current graph. It will always have a Tensor copy. Tn addition, the cloned Tensor provides gradient propagation. Returns: The cloned Tensor. Examples: .. code-block:: python import paddle x = paddle.to_tensor(1.0, stop_gradient=False) clone_x = x.clone() y = clone_x**2 y.backward() print(clone_x.stop_gradient) # False print(clone_x.grad) # [2.0], support gradient propagation print(x.stop_gradient) # False print(x.grad) # [2.0], clone_x support gradient propagation for x x = paddle.to_tensor(1.0) clone_x = x.clone() clone_x.stop_gradient = False z = clone_x**3 z.backward() print(clone_x.stop_gradient) # False print(clone_x.grad) # [3.0], support gradient propagation print(x.stop_gradient) # True print(x.grad) # None )DOC") .def("_grad_name", &imperative::VarBase::GradVarName) .def("_grad_value", [](imperative::VarBase &self) { return self.MutableGradVar()->Get(); }, py::return_value_policy::reference) .def("_set_grad_type", [](imperative::VarBase &self, framework::proto::VarType::Type type) { self.MutableGradVarBase()->SetType(type); }) .def("_reset_grad_inplace_version", [](imperative::VarBase &self, bool set_to_zero) { /* *** This interfaceis a complete hack *** reset_grad_inplace_version removes all inplace related records to Grad VarBase/VariableWrapper, the essential purpose of which is to let you use inplace operations as if using its non-inplaced version, which of course will cause unexpected consequences if not used with care. Make sure you fully understand what you're doing before make use of this interface, and prepare for the worst. */ py::gil_scoped_release release; if (self.HasGradVar()) { auto grad_var = self.GradVarBase(); auto var_wrapper = grad_var->SharedVar(); if (var_wrapper) { var_wrapper->ResetInplaceVersion(set_to_zero); } } }) .def("_grad_ivar", [](const imperative::VarBase &self) { auto &grad_var = self.GradVarBase(); if (grad_var && grad_var->Var().IsInitialized()) { auto *tensor = grad_var->MutableVar()->IsType() ? grad_var->MutableVar() ->GetMutable() : grad_var->MutableVar() ->GetMutable() ->mutable_value(); if (tensor->IsInitialized()) { return grad_var; } } return std::shared_ptr(nullptr); }, py::return_value_policy::copy) .def("_set_grad_ivar", [](imperative::VarBase &self, imperative::VarBase &grad) { self.SetGradVarBase(grad); }) .def("_is_sparse", [](imperative::VarBase &self) { return self.Var().IsType(); }) .def("_allreduce", [](imperative::VarBase &self, const imperative::ParallelStrategy &strategy) { if (strategy.nranks_ > 1) { #if defined(PADDLE_WITH_NCCL) || defined(PADDLE_WITH_RCCL) #if NCCL_VERSION_CODE >= 2212 imperative::AllReduce(self.Var(), self.MutableVar(), strategy); #else if (!self.Var().IsType()) { imperative::AllReduce(self.Var(), self.MutableVar(), strategy); } else { PADDLE_THROW(platform::errors::Unimplemented( "Imperative SelectedRows allreduce is not supported when " "paddle is compiled with NCCL verison lower than v2.2.12. " "You can set is_sparse=False for the Layer containing " "this argument, such as Embedding(is_sparse=False).")); } #endif // NCCL_VERSION_CODE #else PADDLE_THROW(platform::errors::Unimplemented( "Imperative allreduce is not supported when paddle is " "not compiled with NCCL.")); #endif // PADDLE_WITH_NCCL or PADDLE_WITH_RCCL } }, py::call_guard()) .def("_register_grad_hook", [](imperative::VarBase &self, const py::handle &hook) { PADDLE_ENFORCE_EQ( !self.OverridedStopGradient() && self.HasGradVar(), true, platform::errors::InvalidArgument( "Cannot register gradient hook on a Tensor that stop " "gradient or without gradient.")); return self.GradVarBase()->AddVariableWrapperHook( std::make_shared(hook.ptr())); }) .def("_remove_grad_hook", [](imperative::VarBase &self, int64_t hook_id) { PADDLE_ENFORCE_EQ( !self.OverridedStopGradient() && self.HasGradVar(), true, platform::errors::InvalidArgument( "Cannot remove gradient hook on a Tensor that stop " "gradient or without gradient.")); return self.GradVarBase()->RemoveVariableWrapperHook(hook_id); }) .def("_register_void_function_post_hook", [](imperative::VarBase &self, const py::handle &hook) { PADDLE_ENFORCE_EQ( !self.OverridedStopGradient() && self.HasGradVar(), true, platform::errors::InvalidArgument( "Cannot register void function post hook on a Tensor that " "stop " "gradient or without gradient.")); auto py_func = PyObjectCast>(hook.ptr()); auto grad_node = self.MutableGradVarBase()->GradNode(); for (auto &cur_op : *grad_node) { cur_op.AddVoidFunctionPostHook( std::make_shared>(py_func)); } }) .def("_register_backward_hook", [](imperative::VarBase &self, const py::handle &hook) { PADDLE_ENFORCE_EQ( self.IsLeaf(), true, platform::errors::InvalidArgument( "Only can register backward hook for leaf Tensor.")); PADDLE_ENFORCE_EQ( !self.OverridedStopGradient() && self.HasGradVar(), true, platform::errors::InvalidArgument( "Cannot register backward hook on a Tensor that stop " "gradient or without gradient.")); auto py_func = PyObjectCast>(hook.ptr()); self.GradVarBase()->AddVoidHook( std::make_shared>(py_func)); }, R"DOC( Registers a backward hook for current Tensor. This hook will be called every time the gradient of current Tensor has been fully calculated. There are two differences with `_register_grad_hook`: 1. This backward hook will be executed after the gradient accumulation completed across batchs, but the hook registered by `_register_grad_hook` will be executed the gradient accumulation completed in current batch. 2. This backward hook function should have the following signature: hook() -> None It requires no input and no return value. Args: hook(function): A backward hook to be registered for Tensor.gradient Returns: None )DOC") .def("cpu", [](const std::shared_ptr &self) { if (platform::is_cpu_place(self->Place())) { return self; } else { auto new_var = self->NewVarBase(platform::CPUPlace(), true); new_var->SetOverridedStopGradient(self->OverridedStopGradient()); return new_var; } }, R"DOC( Returns a copy of this Tensor in CPU memory. If this Tensor is already in CPU memory, then no copy is performed and the original Tensor is returned. Examples: .. code-block:: python import paddle x = paddle.to_tensor(1.0, place=paddle.CUDAPlace(0)) print(x.place) # CUDAPlace(0) y = x.cpu() print(y.place) # CPUPlace )DOC") .def("pin_memory", [](const std::shared_ptr &self) { #if !defined(PADDLE_WITH_CUDA) && !defined(PADDLE_WITH_HIP) PADDLE_THROW(platform::errors::PermissionDenied( "Cannot copy this Tensor to pinned memory in CPU version " "Paddle, " "Please recompile or reinstall Paddle with CUDA support.")); #endif if (platform::is_cuda_pinned_place(self->Place())) { return self; } else { auto new_var = self->NewVarBase(platform::CUDAPinnedPlace(), true); new_var->SetOverridedStopGradient(self->OverridedStopGradient()); return new_var; } }, R"DOC( Returns a copy of this Tensor in pin memory. If this Tensor is already in pin memory, then no copy is performed and the original Tensor is returned. Examples: .. code-block:: python import paddle x = paddle.to_tensor(1.0, place=paddle.CUDAPlace(0)) print(x.place) # CUDAPlace(0) y = x.pin_memory() print(y.place) # CUDAPinnedPlace )DOC") .def("cuda", [](const std::shared_ptr &self, py::handle &handle, bool blocking) { #if !defined(PADDLE_WITH_CUDA) && !defined(PADDLE_WITH_HIP) PADDLE_THROW(platform::errors::PermissionDenied( "Cannot copy this Tensor to GPU in CPU version Paddle, " "Please recompile or reinstall Paddle with CUDA support.")); #else int device_count = platform::GetGPUDeviceCount(); int device_id = 0; if (handle == py::none()) { if (platform::is_gpu_place(self->Place())) { return self; } } else { PyObject *py_obj = handle.ptr(); PADDLE_ENFORCE_EQ( PyCheckInteger(py_obj), true, platform::errors::InvalidArgument( " 'device_id' must be a positive integer")); device_id = py::cast(handle); } PADDLE_ENFORCE_GE( device_id, 0, platform::errors::InvalidArgument( "Can not copy Tensor to Invalid CUDAPlace(%d), device id " "must inside [0, %d)", device_id, device_count)); PADDLE_ENFORCE_LT( device_id, device_count, platform::errors::InvalidArgument( "Can not copy Tensor to Invalid CUDAPlace(%d), device id " "must inside [0, %d)", device_id, device_count)); platform::CUDAPlace place = platform::CUDAPlace(device_id); if (platform::is_same_place(self->Place(), place)) { return self; } else { auto new_var = self->NewVarBase(place, blocking); new_var->SetOverridedStopGradient(self->OverridedStopGradient()); return new_var; } #endif }, py::arg("device_id") = py::none(), py::arg("blocking") = true, R"DOC( Returns a copy of this Tensor in GPU memory. If this Tensor is already in GPU memory and device_id is default, then no copy is performed and the original Tensor is returned. Args: device_id(int, optional): The destination GPU device id. Default: None, means current device. blocking(bool, optional): If False and the source is in pinned memory, the copy will be asynchronous with respect to the host. Otherwise, the argument has no effect. Default: False. Examples: .. code-block:: python # required: gpu import paddle x = paddle.to_tensor(1.0, place=paddle.CPUPlace()) print(x.place) # CPUPlace y = x.cuda() print(y.place) # CUDAPlace(0) y = x.cuda(None) print(y.place) # CUDAPlace(0) y = x.cuda(1) print(y.place) # CUDAPlace(1) )DOC") .def("_share_memory", [](const std::shared_ptr &self) { #ifndef _WIN32 PADDLE_ENFORCE_EQ( platform::is_cpu_place(self->Place()), true, platform::errors::InvalidArgument( "Sharing memory only support CPU Tensor currently")); // 1. get LoDTensor auto *t = self->MutableVar()->GetMutable(); // 2. allocate shared memory void *data_ptr = t->data(); size_t data_size = t->numel() * framework::SizeOfType( framework::TransToProtoVarType(t->dtype())); auto shared_writer_holder = memory::allocation::AllocateMemoryMapWriterAllocation( data_size); // 3. maintain mmap fd set & backup ipc_name const std::string &ipc_name = shared_writer_holder->ipc_name(); memory::allocation::MemoryMapFdSet::Instance().Insert(ipc_name); // 4. copy data & reset holder memory::Copy(platform::CPUPlace(), shared_writer_holder->ptr(), platform::CPUPlace(), data_ptr, data_size); t->ResetHolder(shared_writer_holder); return *t; #else PADDLE_THROW(platform::errors::PermissionDenied( "Sharing memory in Windows OS is not supported currently")); #endif }, py::return_value_policy::reference) #if defined(PADDLE_WITH_CUDA) .def("_uva", [](const std::shared_ptr &self, int device_id) { PADDLE_ENFORCE_EQ(platform::is_cpu_place(self->Place()), true, platform::errors::InvalidArgument( "Unified virtual addressing only support " "CPU Tensor currently.")); platform::DeviceContextPool &pool = platform::DeviceContextPool::Instance(); auto *dev_ctx = pool.Get(platform::CUDAPlace(device_id)); VLOG(4) << "Init the DeviceContext, and the place is " << dev_ctx->GetPlace(); auto *self_tensor = self->MutableVar()->GetMutable(); // Register the cpu memory as the cuda host memory const auto &data_numel = self_tensor->numel(); const size_t &need_allocate_size = data_numel * framework::SizeOfType( framework::TransToProtoVarType(self_tensor->dtype())); void *data_ptr = self_tensor->data(); auto result = cudaHostRegister(data_ptr, need_allocate_size, cudaHostRegisterDefault); if (cudaSuccess != result) { VLOG(4) << "UVA(unified virtual addressing) failed allocate:" << need_allocate_size << ", the error code:" << result; } // Get device pointer from the function of cudaHostGetDevicePointer void *cuda_device_pointer = nullptr; cudaHostGetDevicePointer( reinterpret_cast(&cuda_device_pointer), reinterpret_cast(data_ptr), 0); // Reset the memory with device pointer std::shared_ptr holder = std::make_shared( cuda_device_pointer, need_allocate_size, platform::CUDAPlace(device_id)); self_tensor->ResetHolderWithType(holder, self_tensor->dtype()); }, py::arg("device_id") = 0, py::return_value_policy::reference, R"DOC( Returns self tensor with the UVA(unified virtual addressing). Args: device_id(int, optional): The destination GPU device id. Default: None, means current device. Examples: .. code-block:: python # required: gpu import paddle x = paddle.to_tensor([1, 2, 3], place=paddle.CPUPlace()) x._uva() print(x) )DOC") #endif .def("copy_", &imperative::VarBase::CopyFrom) .def("_copy_to", [](const std::shared_ptr &self, const platform::CPUPlace &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); // Note(zhiqiu): Since NewVarBase may use GpuCopyAsync to // copy data from the tensor of self to the tensor of new varbase, // we need to ensure that the varbase self is not destructed until // the GpuCopyAsync is completed. Otherwise, the memory may be // freed // when varbase self is destructed. // To do that, we increase the reference count of self by 1 and // add a cuda event to wait the GpuCopyAsync's completion. if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("_copy_to", [](const std::shared_ptr &self, const platform::CUDAPinnedPlace &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("_copy_to", [](const std::shared_ptr &self, const platform::XPUPlace &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("_copy_to", [](const std::shared_ptr &self, const platform::CUDAPlace &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("_copy_to", [](const std::shared_ptr &self, const platform::NPUPlace &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("_copy_to", [](const std::shared_ptr &self, const platform::MLUPlace &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("_copy_to", [](const std::shared_ptr &self, const platform::Place &place, bool blocking) { auto new_var = self->NewVarBase(place, blocking); if (!blocking) { IncreaseVarbaseReferenceCountUntilCopyComplete(self, place); } return new_var; }, py::return_value_policy::copy) .def("value", [](imperative::VarBase &self) { return self.MutableVar(); }, py::return_value_policy::reference) .def("_clear", [](const std::shared_ptr &self) { auto *t = self->MutableVar()->GetMutable(); PADDLE_ENFORCE_EQ( t->IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self->Name())); t->clear(); }) .def("_offset", [](const std::shared_ptr &self) { auto *t = self->MutableVar()->GetMutable(); PADDLE_ENFORCE_EQ( t->IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self->Name())); return t->offset(); }) .def("_share_buffer_to", [](const std::shared_ptr &self, std::shared_ptr &dst) { auto *src = self->MutableVar()->GetMutable(); auto *dst_ = dst->MutableVar()->GetMutable(); PADDLE_ENFORCE_EQ( src->IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self->Name())); dst_->ShareBufferWith(*src); dst_->ShareDataTypeWith(*src); }) .def("_is_shared_buffer_with", [](const std::shared_ptr &self, std::shared_ptr &dst) { auto *src = self->MutableVar()->GetMutable(); auto *dst_ = dst->MutableVar()->GetMutable(); if (!src->IsInitialized() || !dst_->IsInitialized()) { return false; } return dst_->IsSharedBufferWith(*src); }) .def("_share_underline_tensor_to", [](const std::shared_ptr &self, std::shared_ptr &dst) { auto *src = self->MutableVar()->GetMutable(); auto *dst_ = dst->MutableVar()->GetMutable(); PADDLE_ENFORCE_EQ( src->IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self->Name())); dst_->ShareBufferWith(*src); dst_->ShareDataTypeWith(*src); dst_->Resize(src->dims()); }) .def("_is_shared_underline_tensor_with", [](const std::shared_ptr &self, std::shared_ptr &dst) { auto *src = self->MutableVar()->GetMutable(); auto *dst_ = dst->MutableVar()->GetMutable(); if (!src->IsInitialized() || !dst_->IsInitialized()) { return false; } return dst_->IsSharedBufferWith(*src); }) .def("_slice", [](const std::shared_ptr &self, int64_t begin_idx, int64_t end_idx) { auto *t = self->MutableVar()->GetMutable(); PADDLE_ENFORCE_EQ( t->IsInitialized(), true, platform::errors::InvalidArgument( "Tensor %s has not been initialized!", self->Name())); return t->Slice(begin_idx, end_idx); }) .def("_copy_gradient_from", [](std::shared_ptr &self, const imperative::VarBase &src) { self->_CopyGradientFrom(src); }) .def("_numel", [](std::shared_ptr &self) { auto *t = self->MutableVar()->GetMutable(); return t->numel(); }) .def("element_size", &imperative::VarBase::ElementSize, R"DOC( Returns the size in bytes of an element in the Tensor. Examples: .. code-block:: python import paddle x = paddle.to_tensor(1, dtype='bool') x.element_size() # 1 x = paddle.to_tensor(1, dtype='float16') x.element_size() # 2 x = paddle.to_tensor(1, dtype='float32') x.element_size() # 4 x = paddle.to_tensor(1, dtype='float64') x.element_size() # 8 x = paddle.to_tensor(1, dtype='complex128') x.element_size() # 16 )DOC") .def_property("name", &imperative::VarBase::Name, &imperative::VarBase::SetName) .def_property("stop_gradient", &imperative::VarBase::OverridedStopGradient, &imperative::VarBase::SetOverridedStopGradient) .def_property("persistable", &imperative::VarBase::Persistable, &imperative::VarBase::SetPersistable) .def_property_readonly("shape", [](imperative::VarBase &self) { if (self.Var().IsType()) { return phi::vectorize( self.Var() .Get() .dims()); } else if (self.Var() .IsType()) { return phi::vectorize( self.Var() .Get() .value() .dims()); } else if (self.Var() .IsType()) { return std::vector{static_cast( self.Var() .Get() .size())}; } else if (self.Var() .IsType()) { return std::vector{static_cast( self.Var() .Get() .size())}; } else { VLOG(2) << "It is meaningless to get shape of " "variable type " << GetTypeName(self); return std::vector(); } }) .def_property_readonly("is_leaf", &imperative::VarBase::IsLeaf, R"DOC( Whether a Tensor is leaf Tensor. For the Tensor whose stop_gradient is ``True`` , it will be leaf Tensor. For the Tensor whose stop_gradient is ``False`` , it will be leaf Tensor too if it is created by user. Returns: bool: Whether a Tensor is leaf Tensor. Examples: .. code-block:: python import paddle x = paddle.to_tensor(1.) print(x.is_leaf) # True x = paddle.to_tensor(1., stop_gradient=True) y = x + 1 print(x.is_leaf) # True print(y.is_leaf) # True x = paddle.to_tensor(1., stop_gradient=False) y = x + 1 print(x.is_leaf) # True print(y.is_leaf) # False )DOC") .def_property_readonly( "place", [](imperative::VarBase &self) { return self.Place(); }, py::return_value_policy::copy) .def_property_readonly("_place_str", [](imperative::VarBase &self) { std::stringstream ostr; ostr << self.Place(); return ostr.str(); }) .def_property_readonly("type", &imperative::VarBase::Type) .def_property_readonly("dtype", &imperative::VarBase::DataType); py::class_(m, "ProgramDescTracer", "") .def("create_program_desc", &imperative::jit::ProgramDescTracer::CreateProgramDesc) .def("reset", &imperative::jit::ProgramDescTracer::Reset); py::enum_(m, "AmpLevel", py::arithmetic()) .value("O0", paddle::imperative::AmpLevel::O0) .value("O1", paddle::imperative::AmpLevel::O1) .value("O2", paddle::imperative::AmpLevel::O2) .value("O3", paddle::imperative::AmpLevel::O3) .export_values(); py::class_>( m, "Tracer", R"DOC()DOC") .def("__init__", [](imperative::Tracer &self) { new (&self) imperative::Tracer(); }) .def_property("_enable_program_desc_tracing", &imperative::Tracer::IsProgramDescTracingEnabled, &imperative::Tracer::SetEnableProgramDescTracing) .def_property("_amp_level", &imperative::Tracer::GetAmpLevel, &imperative::Tracer::SetAmpLevel) .def_property("_amp_dtype", &imperative::Tracer::GetAmpDtype, &imperative::Tracer::SetAmpDtype) .def_property("_has_grad", &imperative::Tracer::HasGrad, &imperative::Tracer::SetHasGrad) .def_property( "_expected_place", [](const imperative::Tracer &self) -> py::object { return py::cast(self.ExpectedPlace()); }, [](imperative::Tracer &self, const py::object &obj) { if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); // TODO(jiabin): Support eager here when we need to make all // dygraph in eager mode VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else if (py::isinstance(obj)) { auto p = obj.cast(); self.SetExpectedPlace(*p); VLOG(4) << "Tracer(" << &self << ")" << " set expected place " << *p; } else { PADDLE_THROW(platform::errors::InvalidArgument( "Incompatible Place Type: supports XPUPlace, CUDAPlace, " "CPUPlace, NPUPlace, MLUPlace" "and CUDAPinnedPlace, " "but got Unknown Type!")); } }) .def("_get_program_desc_tracer", &imperative::Tracer::GetProgramDescTracer, py::return_value_policy::reference) .def("_generate_unique_name", &imperative::Tracer::GenerateUniqueName, py::arg("key") = "dygraph_tmp") .def("_set_amp_op_list", [](imperative::Tracer &self, std::unordered_set &allow_ops, std::unordered_set &block_ops) { // NOTE(zhiqiu): The automatic conversion in pybind11 between // c++ // STL and python set/list/dict involve a copy operation that // prevents pass-by-reference semantics, so it is ok to swap. // The reaseon why not directly pass // std::shared_ptr> // is that pybind11 forbid shared_ptr where T is not custom // type. imperative::AmpOperators::Instance().GetMutableAllowOps()->swap( allow_ops); imperative::AmpOperators::Instance().GetMutableBlockOps()->swap( block_ops); VLOG(5) << "AMP operators changed, " << imperative::AmpOperators::Instance(); }) .def("_get_amp_op_list", [](imperative::Tracer &self) { return std::make_tuple( *(imperative::AmpOperators::Instance().GetMutableAllowOps()), *(imperative::AmpOperators::Instance().GetMutableBlockOps())); }) .def("_get_kernel_signature", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs) { // TODO(xiongkun): move this function outside of tracer. auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { auto to_vector = [](paddle::SmallVector &vec) { return std::vector(vec.begin(), vec.end()); }; auto ret = self.GetExpectedKernelSignature(type, ins_map, outs_map, attrs); auto kernelsig_ins = to_vector(std::get<0>(ret.args)); auto kernelsig_attrs = to_vector(std::get<1>(ret.args)); auto kernelsig_outs = to_vector(std::get<2>(ret.args)); return std::make_tuple(kernelsig_ins, kernelsig_attrs, kernelsig_outs); } }) .def("trace", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs, const platform::CustomPlace &place, bool trace_backward, const std::map &inplace_map = {}) { auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { py::gil_scoped_release release; self.TraceOp( type, std::move(ins_map), std::move(outs_map), std::move(attrs), place, trace_backward, inplace_map); } }) .def("trace", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs, const platform::XPUPlace &place, bool trace_backward, const std::map &inplace_map = {}) { auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { py::gil_scoped_release release; self.TraceOp( type, std::move(ins_map), std::move(outs_map), std::move(attrs), place, trace_backward, inplace_map); } }) .def("trace", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs, const platform::CUDAPlace &place, bool trace_backward, const std::map &inplace_map = {}) { auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { py::gil_scoped_release release; self.TraceOp( type, std::move(ins_map), std::move(outs_map), std::move(attrs), place, trace_backward, inplace_map); } }) .def("trace", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs, const platform::NPUPlace &place, bool trace_backward, const std::map &inplace_map = {}) { auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { py::gil_scoped_release release; self.TraceOp( type, std::move(ins_map), std::move(outs_map), std::move(attrs), place, trace_backward, inplace_map); } }) .def("trace", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs, const platform::MLUPlace &place, bool trace_backward, const std::map &inplace_map = {}) { auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { py::gil_scoped_release release; self.TraceOp( type, std::move(ins_map), std::move(outs_map), std::move(attrs), place, trace_backward, inplace_map); } }) .def("trace", [](imperative::Tracer &self, const std::string &type, const PyNameVarBaseMap &ins, const PyNameVarBaseMap &outs, framework::AttributeMap attrs, const platform::CPUPlace &place, bool trace_backward, const std::map &inplace_map = {}) { auto ins_map = ConvertToNameVarBaseMap(ins); auto outs_map = ConvertToNameVarBaseMap(outs); { py::gil_scoped_release release; self.TraceOp( type, std::move(ins_map), std::move(outs_map), std::move(attrs), place, trace_backward, inplace_map); } }); // define parallel context py::class_ parallel_strategy( m, "ParallelStrategy", ""); parallel_strategy.def(py::init()) .def_property( "nranks", [](const imperative::ParallelStrategy &self) { return self.nranks_; }, [](imperative::ParallelStrategy &self, int nranks) { self.nranks_ = nranks; }) .def_property("local_rank", [](const imperative::ParallelStrategy &self) { return self.local_rank_; }, [](imperative::ParallelStrategy &self, int local_rank) { self.local_rank_ = local_rank; }) .def_property( "trainer_endpoints", [](const imperative::ParallelStrategy &self) { return self.trainer_endpoints_; }, [](imperative::ParallelStrategy &self, std::vector eps) { self.trainer_endpoints_ = eps; }) .def_property("current_endpoint", [](const imperative::ParallelStrategy &self) { return self.current_endpoint_; }, [](imperative::ParallelStrategy &self, const std::string &ep) { self.current_endpoint_ = ep; }) .def_property( "nrings", [](const imperative::ParallelStrategy &self) { return self.nrings_; }, [](imperative::ParallelStrategy &self, int nrings) { self.nrings_ = nrings; }); m.def("varbase_copy", &VarBaseCopy); m.def("varbase_copy", &VarBaseCopy); m.def("varbase_copy", &VarBaseCopy); m.def("varbase_copy", &VarBaseCopy); m.def("varbase_copy", &VarBaseCopy); m.def("varbase_copy", &VarBaseCopy); m.def("varbase_copy", &VarBaseCopy); m.def( "dygraph_partial_grad", [](const std::vector> &input_targets, const std::vector> &output_targets, const std::vector> &output_grads, const std::vector> &no_grad_vars, const platform::Place &place, bool create_graph, bool retain_graph, bool allow_unused, bool only_inputs) { imperative::PartialGradEngine engine( input_targets, output_targets, output_grads, no_grad_vars, place, create_graph, retain_graph, allow_unused, only_inputs); engine.Execute(); return engine.GetResult(); }, py::call_guard()); m.def( "dygraph_run_backward", [](const std::vector> &tensors, const std::vector> &grad_tensors, bool retain_graph, const imperative::Tracer &tracer) { auto *engine = tracer.GetEngine(); engine->Init(tensors, grad_tensors, retain_graph); VLOG(3) << "Start backward"; engine->Execute(); VLOG(3) << "Finish backward"; }, py::call_guard()); #if defined(PADDLE_WITH_NCCL) || defined(PADDLE_WITH_RCCL) || \ defined(PADDLE_WITH_XPU_BKCL) || defined(PADDLE_WITH_GLOO) py::class_>(m, "ParallelContext"); py::class_>( m, "Reducer", R"DOC()DOC") .def(py::init> &, const std::vector> &, const std::vector &, std::shared_ptr, const std::vector &, bool>()) .def("prepare_for_backward", &imperative::Reducer::PrepareForBackward, py::arg("vars"), py::call_guard()); m.def("assign_group_by_size", &imperative::AssignGroupBySize, py::arg("vars"), py::arg("is_sparse_gradient"), py::arg("group_size_limits") = std::vector{25 * 1024 * 1024}, py::arg("tensor_indices") = std::vector{}, py::call_guard()); #endif #if defined(PADDLE_WITH_NCCL) || defined(PADDLE_WITH_RCCL) py::class_>( m, "NCCLParallelContext") .def(py::init()) .def("init", [](imperative::NCCLParallelContext &self) { self.Init(); }) .def("init_with_ring_id", &imperative::NCCLParallelContext::InitWithRingID, py::arg("ring_id")); #endif #if defined(PADDLE_WITH_XPU_BKCL) py::class_>( m, "BKCLParallelContext") .def(py::init()) .def("init", [](imperative::BKCLParallelContext &self) { self.Init(); }) .def("init_with_ring_id", &imperative::BKCLParallelContext::InitWithRingID, py::arg("ring_id")); #endif #if defined(PADDLE_WITH_GLOO) // xiongkun py::class_>( m, "GLOOParallelContext") .def(py::init()) .def("init", [](imperative::GLOOParallelContext &self) { self.Init(); }) .def("init_with_ring_id", &imperative::GLOOParallelContext::InitWithRingID, py::arg("ring_id")); #endif #if defined(PADDLE_WITH_ASCEND_CL) py::class_>( m, "HCCLParallelContext") .def(py::init()) .def("init", [](imperative::HCCLParallelContext &self) { self.Init(); }) .def("init_with_ring_id", &imperative::HCCLParallelContext::InitWithRingID, py::arg("ring_id")); #endif #if defined(PADDLE_WITH_CNCL) py::class_>( m, "CNCLParallelContext") .def(py::init()) .def("init", [](imperative::CNCLParallelContext &self) { self.Init(); }) .def("init_with_ring_id", &imperative::CNCLParallelContext::InitWithRingID, py::arg("ring_id")); #endif #if defined(PADDLE_WITH_NCCL) || defined(PADDLE_WITH_RCCL) || \ defined(PADDLE_WITH_XPU_BKCL) || defined(PADDLE_WITH_ASCEND_CL) py::class_>( m, "HeterParallelContext") .def(py::init()) .def("init", [](imperative::HeterParallelContext &self) { self.Init(); }); #endif m.def("pylayer_apply", [](const platform::CPUPlace &place, const py::object &cls, const py::args args, const py::kwargs kwargs) { return imperative::PyLayerApply(place, cls, args, kwargs); }); m.def("pylayer_apply", [](const platform::CUDAPlace &place, const py::object &cls, const py::args args, const py::kwargs kwargs) { return imperative::PyLayerApply(place, cls, args, kwargs); }); m.def("pylayer_apply", [](const platform::XPUPlace &place, const py::object &cls, const py::args args, const py::kwargs kwargs) { return imperative::PyLayerApply(place, cls, args, kwargs); }); m.def("pylayer_apply", [](const platform::CUDAPinnedPlace &place, const py::object &cls, const py::args args, const py::kwargs kwargs) { return imperative::PyLayerApply(place, cls, args, kwargs); }); m.def("pylayer_apply", [](const platform::NPUPlace &place, const py::object &cls, const py::args args, const py::kwargs kwargs) { return imperative::PyLayerApply(place, cls, args, kwargs); }); m.def("pylayer_apply", [](const platform::MLUPlace &place, const py::object &cls, const py::args args, const py::kwargs kwargs) { return imperative::PyLayerApply(place, cls, args, kwargs); }); #if defined(PADDLE_WITH_CUDA) m.def("to_uva_tensor", [](const py::object &obj, int device_id) { const auto &tracer = imperative::GetCurrentTracer(); auto new_tensor = std::shared_ptr( new imperative::VarBase(tracer->GenerateUniqueName())); auto array = obj.cast(); if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else if (py::isinstance>( array)) { SetUVATensorFromPyArray( new_tensor, array, device_id); } else if (py::isinstance>(array)) { SetUVATensorFromPyArray(new_tensor, array, device_id); } else { // obj may be any type, obj.cast() may be failed, // then the array.dtype will be string of unknown meaning. PADDLE_THROW(platform::errors::InvalidArgument( "Input object type error or incompatible array data type. " "tensor.set() supports array with bool, float16, float32, " "float64, int8, int16, int32, int64," "please check your input or input array data type.")); } return new_tensor; }, py::arg("obj"), py::arg("device_id") = 0, py::return_value_policy::reference, R"DOC( Returns tensor with the UVA(unified virtual addressing) created from numpy array. Args: obj(numpy.ndarray): The input numpy array, supporting bool, float16, float32, float64, int8, int16, int32, int64 dtype currently. device_id(int, optional): The destination GPU device id. Default: 0, means current device. Returns: new_tensor(paddle.Tensor): Return the UVA Tensor with the sample dtype and shape with the input numpy array. Examples: .. code-block:: python # required: gpu import numpy as np import paddle data = np.random.randint(10, size=(3, 4)) tensor = paddle.fluid.core.to_uva_tensor(data) print(tensor) )DOC"); #endif #if defined(PADDLE_WITH_CUDA) m.def( "async_write", [](const imperative::VarBase &src, imperative::VarBase &dst, const imperative::VarBase &offset, const imperative::VarBase &count) { PADDLE_ENFORCE_EQ( platform::is_gpu_place(src.Place()), true, platform::errors::InvalidArgument( "Required `src` device should be CUDAPlace, but received %d. ", src.Place())); PADDLE_ENFORCE_EQ( platform::is_cuda_pinned_place(dst.Place()), true, platform::errors::InvalidArgument( "Required `dst` device should be CUDAPinnedPlace, " "but received %d. ", dst.Place())); PADDLE_ENFORCE_EQ( platform::is_cpu_place(offset.Place()), true, platform::errors::InvalidArgument("Required `offset` device should " "be CPUPlace, but received %d. ", offset.Place())); PADDLE_ENFORCE_EQ( platform::is_cpu_place(count.Place()), true, platform::errors::InvalidArgument( "Required `count` device should be CPUPlace, but received %d. ", count.Place())); // TODO(daisiming): In future, add index as arguments following // async_read. auto &src_tensor = src.Var().Get(); auto *dst_tensor = dst.MutableVar()->GetMutable(); auto &offset_tensor = offset.Var().Get(); auto &count_tensor = count.Var().Get(); const auto &deviceId = paddle::platform::GetCurrentDeviceId(); PADDLE_ENFORCE_EQ(offset_tensor.dims().size(), 1, platform::errors::InvalidArgument( "`offset` tensor should be one-dimensional.")); PADDLE_ENFORCE_EQ(count_tensor.dims().size(), 1, platform::errors::InvalidArgument( "`count` tensor should be one-dimensional.")); PADDLE_ENFORCE_EQ(offset_tensor.numel(), count_tensor.numel(), platform::errors::InvalidArgument( "`offset` and `count` tensor size dismatch.")); PADDLE_ENFORCE_EQ( src_tensor.dims().size(), dst_tensor->dims().size(), platform::errors::InvalidArgument( "`src` and `dst` should have the same tensor shape, " "except for the first dimension.")); for (int i = 1; i < src_tensor.dims().size(); i++) { PADDLE_ENFORCE_EQ( src_tensor.dims()[i], dst_tensor->dims()[i], platform::errors::InvalidArgument( "`src` and `dst` should have the same tensor shape, " "except for the first dimension.")); } auto stream = paddle::platform::stream::get_current_stream(deviceId) ->raw_stream(); int64_t size = src_tensor.numel() / src_tensor.dims()[0]; auto *src_data = src_tensor.data(); auto *dst_data = dst_tensor->mutable_data(dst.Place()); const int64_t *offset_data = offset_tensor.data(); const int64_t *count_data = count_tensor.data(); int64_t src_offset = 0, dst_offset, c; for (int64_t i = 0; i < offset_tensor.numel(); i++) { dst_offset = offset_data[i], c = count_data[i]; PADDLE_ENFORCE_LE(src_offset + c, src_tensor.dims()[0], platform::errors::InvalidArgument( "Invalid offset or count index")); PADDLE_ENFORCE_LE(dst_offset + c, dst_tensor->dims()[0], platform::errors::InvalidArgument( "Invalid offset or count index")); cudaMemcpyAsync( dst_data + (dst_offset * size), src_data + (src_offset * size), c * size * sizeof(float), cudaMemcpyDeviceToHost, stream); src_offset += c; } }, R"DOC( This api provides a way to write pieces of source tensor to destination tensor inplacely and asynchronously. In which, we use `offset` and `count` to determine where to copy. `offset` means the begin points of the copy pieces of `src`, and `count` means the lengths of the copy pieces of `src`. To be noted, the copy process will run asynchronously from cuda to pin memory. We can simply remember this as "gpu async_write to pin_memory". Arguments: src (Tensor): The source tensor, and the data type should be `float32` currently. Besides, `src` should be placed on CUDAPlace. dst (Tensor): The destination tensor, and the data type should be `float32` currently. Besides, `dst` should be placed on CUDAPinnedPlace. The shape of `dst` should be the same with `src` except for the first dimension. offset (Tensor): The offset tensor, and the data type should be `int64` currently. Besides, `offset` should be placed on CPUPlace. The shape of `offset` should be one-dimensional. count (Tensor): The count tensor, and the data type should be `int64` currently. Besides, `count` should be placed on CPUPlace. The shape of `count` should be one-dimensinal. Examples: .. code-block:: python import numpy as np import paddle from paddle.fluid import core from paddle.device import cuda if core.is_compiled_with_cuda(): src = paddle.rand(shape=[100, 50, 50]) dst = paddle.emtpy(shape=[200, 50, 50]).pin_memory() offset = paddle.to_tensor( np.array([0, 60], dtype="int64"), place=paddle.CPUPlace()) count = paddle.to_tensor( np.array([40, 60], dtype="int64"), place=paddle.CPUPlace()) stream = cuda.Stream() with cuda.stream_guard(stream): core.async_write(src, dst, offset, count) offset_a = paddle.gather(dst, paddle.to_tensor(np.arange(0, 40))) offset_b = paddle.gather(dst, paddle.to_tensor(np.arange(60, 120))) offset_array = paddle.concat([offset_a, offset_b], axis=0) print(np.allclose(src.numpy(), offset_array.numpy())) # True )DOC"); m.def( "async_read", [](const imperative::VarBase &src, imperative::VarBase &dst, const imperative::VarBase &index, imperative::VarBase &buffer, const imperative::VarBase &offset, const imperative::VarBase &count) { PADDLE_ENFORCE_EQ(platform::is_cuda_pinned_place(src.Place()), true, platform::errors::InvalidArgument( "Required `src` device should be " "CUDAPinnedPlace, but received %d.", src.Place())); PADDLE_ENFORCE_EQ( platform::is_gpu_place(dst.Place()), true, platform::errors::InvalidArgument( "Required `dst` device should be CUDAPlace, but received %d.", dst.Place())); PADDLE_ENFORCE_EQ( platform::is_cpu_place(index.Place()), true, platform::errors::InvalidArgument( "Required `index` device should be CPUPlace, but received %d.", index.Place())); PADDLE_ENFORCE_EQ( platform::is_cuda_pinned_place(buffer.Place()), true, platform::errors::InvalidArgument( "Required `buffer` device should be CUDAPinnedPlace, " "but received %d.", buffer.Place())); PADDLE_ENFORCE_EQ( platform::is_cpu_place(offset.Place()), true, platform::errors::InvalidArgument( "Required `offset` device should be CPUPlace, but received %d.", offset.Place())); PADDLE_ENFORCE_EQ( platform::is_cpu_place(count.Place()), true, platform::errors::InvalidArgument( "Required `count` device should be CPUPlace, but received %d.", count.Place())); auto &src_tensor = src.Var().Get(); auto *dst_tensor = dst.MutableVar()->GetMutable(); auto &index_tensor = index.Var().Get(); auto *buffer_tensor = buffer.MutableVar()->GetMutable(); auto &offset_tensor = offset.Var().Get(); auto &count_tensor = count.Var().Get(); auto *dst_data = dst_tensor->mutable_data(dst.Place()); const auto &deviceId = paddle::platform::GetCurrentDeviceId(); PADDLE_ENFORCE_EQ(src_tensor.dims().size(), dst_tensor->dims().size(), platform::errors::InvalidArgument( "`src` and `dst` should have same tensor shape, " "except for the first dimension.")); PADDLE_ENFORCE_EQ( src_tensor.dims().size(), buffer_tensor->dims().size(), platform::errors::InvalidArgument( "`src` and `buffer` should have same tensor shape, " "except for the first dimension.")); for (int i = 1; i < src_tensor.dims().size(); i++) { PADDLE_ENFORCE_EQ( src_tensor.dims()[i], dst_tensor->dims()[i], platform::errors::InvalidArgument( "`src` and `dst` should have the same tensor shape, " "except for the first dimension.")); PADDLE_ENFORCE_EQ( src_tensor.dims()[i], buffer_tensor->dims()[i], platform::errors::InvalidArgument( "`src` and `buffer` should have the same tensor shape, " "except for the first dimension.")); } PADDLE_ENFORCE_EQ(index_tensor.dims().size(), 1, platform::errors::InvalidArgument( "`index` tensor should be one-dimensional.")); auto stream = paddle::platform::stream::get_current_stream(deviceId) ->raw_stream(); int64_t numel = 0; // total copy length int64_t copy_flag = offset_tensor.dims()[0]; int64_t size = src_tensor.numel() / src_tensor.dims()[0]; if (copy_flag != 0) { PADDLE_ENFORCE_EQ(offset_tensor.dims().size(), 1, platform::errors::InvalidArgument( "`offset` tensor should be one-dimensional.")); PADDLE_ENFORCE_EQ(count_tensor.dims().size(), 1, platform::errors::InvalidArgument( "`count` tensor should be one-dimensional.")); PADDLE_ENFORCE_EQ(offset_tensor.numel(), count_tensor.numel(), platform::errors::InvalidArgument( "`offset` and `count` tensor size dismatch.")); auto *offset_data = offset_tensor.data(); auto *count_data = count_tensor.data(); for (int64_t i = 0; i < count_tensor.numel(); i++) { numel += count_data[i]; } PADDLE_ENFORCE_LE(numel + index_tensor.numel(), buffer_tensor->dims()[0], platform::errors::InvalidArgument( "Buffer tensor size is too small.")); PADDLE_ENFORCE_LE(numel + index_tensor.numel(), dst_tensor->dims()[0], platform::errors::InvalidArgument( "Target tensor size is too small.")); int64_t src_offset, dst_offset = 0, c; auto *src_data = src_tensor.data(); for (int64_t i = 0; i < offset_tensor.numel(); i++) { src_offset = offset_data[i], c = count_data[i]; PADDLE_ENFORCE_LE(src_offset + c, src_tensor.dims()[0], platform::errors::InvalidArgument( "Invalid offset or count index.")); PADDLE_ENFORCE_LE(dst_offset + c, dst_tensor->dims()[0], platform::errors::InvalidArgument( "Invalid offset or count index.")); cudaMemcpyAsync( dst_data + (dst_offset * size), src_data + (src_offset * size), c * size * sizeof(float), cudaMemcpyHostToDevice, stream); dst_offset += c; } } else { PADDLE_ENFORCE_LE(index_tensor.numel(), buffer_tensor->dims()[0], platform::errors::InvalidArgument( "Buffer tensor size is too small.")); } // Select the index data to the buffer auto index_select = [](const framework::Tensor &src_tensor, const framework::Tensor &index_tensor, framework::Tensor *buffer_tensor) { auto *src_data = src_tensor.data(); auto *index_data = index_tensor.data(); auto *buffer_data = buffer_tensor->mutable_data(buffer_tensor->place()); const int &slice_size = src_tensor.numel() / src_tensor.dims()[0]; const int ©_bytes = slice_size * sizeof(float); int64_t c = 0; for (int64_t i = 0; i < index_tensor.numel(); i++) { std::memcpy(buffer_data + c * slice_size, src_data + index_data[i] * slice_size, copy_bytes); c += 1; } }; index_select(src_tensor, index_tensor, buffer_tensor); // Copy the data to device memory cudaMemcpyAsync(dst_data + (numel * size), buffer_tensor->data(), index_tensor.numel() * size * sizeof(float), cudaMemcpyHostToDevice, stream); }, R"DOC( This api provides a way to read from pieces of source tensor to destination tensor asynchronously. In which, we use `index`, `offset` and `count` to determine where to read. `index` means the index position of src tensor we want to read. `offset` and count means the begin points and length of pieces of src tensor we want to read. To be noted, the copy process will run asynchronously from pin memory to cuda place. We can simply remember this as "cuda async_read from pin_memory". Arguments: src (Tensor): The source tensor, and the data type should be `float32` currently. Besides, `src` should be placed on CUDAPinnedPlace. dst (Tensor): The destination tensor, and the data type should be `float32` currently. Besides, `dst` should be placed on CUDAPlace. The shape of `dst` should be the same with `src` except for the first dimension. index (Tensor): The index tensor, and the data type should be `int64` currently. Besides, `index` should be on CPUplace. The shape of `index` should be one-dimensional. buffer (Tensor): The buffer tensor, used to buffer index copy tensor temporarily. The data type should be `float32` currently, and should be placed on CUDAPinnedPlace. The shape of `buffer` should be the same with `src` except for the first dimension. offset (Tensor): The offset tensor, and the data type should be `int64` currently. Besides, `offset` should be placed on CPUPlace. The shape of `offset` should be one-dimensional. count (Tensor): The count tensor, and the data type should be `int64` currently. Besides, `count` should be placed on CPUPlace. The shape of `count` should be one-dimensinal. Examples: .. code-block:: python import numpy as np import paddle from paddle.fluid import core from paddle.device import cuda if core.is_compiled_with_cuda(): src = paddle.rand(shape=[100, 50, 50], dtype="float32").pin_memory() dst = paddle.empty(shape=[100, 50, 50], dtype="float32") offset = paddle.to_tensor( np.array([0, 60], dtype="int64"), place=paddle.CPUPlace()) count = paddle.to_tensor( np.array([40, 60], dtype="int64"), place=paddle.CPUPlace()) buffer = paddle.empty(shape=[50, 50, 50], dtype="float32").pin_memory() index = paddle.to_tensor( np.array([1, 3, 5, 7, 9], dtype="int64")).cpu() stream = cuda.Stream() with cuda.stream_guard(stream): core.async_read(src, dst, index, buffer, offset, count) )DOC"); #endif } } // namespace pybind } // namespace paddle