pytorch/torch/csrc
Yanli Zhao ab39a55331 python udf over rpc (#23569)
Summary:
This diff is to support python user defined function over rpc for https://github.com/pytorch/pytorch/issues/23110, work flow is like this:
1. pickle python udf
2. pass pickle to C++
3. C++ pass over rpc from client to server
4. server call runPythonUDF() python function to unpickle and run python udf and pickle the udf result using python embedder
6. pass back serialized result from server to client
7. client call loadPythonUDFResult() python function to unpickle result
7. return it to python

right now, put rpc_sync_builtin() and rpc_async_builtin() as temporary interfaces for builtin operator remote calls, they accept qualified name string, this interface can execute builtin operators in C++ land.

rpc_sync() and rpc_async() accept python callables only right now, it could be user define python functions or builtin operator python functions, the python functions will be executed in python land.

once we can resolve builtin operator python callables to qualified name string, we can merge rpc_sync_builtin() into rpc_sync() then
Pull Request resolved: https://github.com/pytorch/pytorch/pull/23569

Test Plan: unit tests

Differential Revision: D16390764

Pulled By: zhaojuanmao

fbshipit-source-id: 2cf2c22a979646830b5581bd75eabf8b3cca564c
2019-08-14 23:13:33 -07:00
..
api Revert D15920763: Move TensorOptions to ATen/core 2019-08-13 12:07:18 -07:00
autograd Revert D15920763: Move TensorOptions to ATen/core 2019-08-13 12:07:18 -07:00
cuda Fix error message for a wrong fork CUDA (#23322) 2019-07-25 12:58:14 -07:00
distributed python udf over rpc (#23569) 2019-08-14 23:13:33 -07:00
generic pin_memory should not copy on already pinned tensors (#23484) 2019-07-30 21:16:23 -07:00
jit clean up import_source (#24282) 2019-08-14 11:26:26 -07:00
multiprocessing
nn
onnx
tensor Remove Type dispatch (#21964) 2019-06-30 04:11:35 -07:00
utils Remove unused parameter from FORALL macros and rename STUBS to QINTS. 2019-08-12 14:43:39 -07:00
byte_order.cpp Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
byte_order.h Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
copy_utils.h
CudaIPCTypes.cpp
CudaIPCTypes.h
DataLoader.cpp
DataLoader.h
Device.cpp
Device.h
dl.c
Dtype.cpp
Dtype.h allow passing Python built-in types as dtypes (#21215) 2019-06-06 13:17:23 -07:00
DynamicTypes.cpp Stop using Type in Python bindings (#21963) 2019-06-30 04:11:32 -07:00
DynamicTypes.h Remove Type dispatch (#21964) 2019-06-30 04:11:35 -07:00
Exceptions.cpp
Exceptions.h
Generator.cpp Remove many usages of Type (#21941) 2019-06-30 04:11:28 -07:00
Generator.h Refactor Random Number Generators in ATen (#21364) 2019-06-12 13:01:30 -07:00
Layout.cpp
Layout.h
MemoryFormat.cpp
MemoryFormat.h
Module.cpp Fix build failure on OSX (#23998) 2019-08-07 22:05:41 -07:00
Module.h Refactor Random Number Generators in ATen (#21364) 2019-06-12 13:01:30 -07:00
PtrWrapper.cpp
PtrWrapper.h
python_dimname.cpp Implement named inference rule for torch.sum 2019-07-26 08:50:40 -07:00
python_dimname.h Implement named inference rule for torch.sum 2019-07-26 08:50:40 -07:00
python_headers.h
PythonTypes.h
QScheme.cpp Add qscheme() method (#20608) 2019-06-14 16:29:29 -07:00
QScheme.h Add qscheme() method (#20608) 2019-06-14 16:29:29 -07:00
README.md
serialization.cpp Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
serialization.h Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
Size.cpp serialize torch.Size object (#20952) 2019-06-25 10:44:35 -07:00
Size.h
Storage.cpp Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
Storage.h Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
StorageDefs.h
stub.cpp
THP_export.h Initial torchbind prototype (#21098) 2019-08-02 18:45:15 -07:00
THP.h
TypeInfo.cpp Fixed Bool in IsIntegralType bug (plus review comments) (#23942) 2019-08-09 12:25:27 -07:00
TypeInfo.h
Types.h
utils.cpp Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
utils.h Enabled BFloat16 storage (#21523) 2019-07-09 21:51:06 -07:00
WindowsTorchApiMacro.h

csrc

The csrc directory contains all of the code concerned with integration with Python. This is in contrast to lib, which contains the Torch libraries that are Python agnostic. csrc depends on lib, but not vice versa.

There are a number of utilities for easing integration with Python which are worth knowing about, which we briefly describe here. But the most important gotchas:

  • DO NOT forget to take out the GIL with AutoGil before calling Python API or bringing a THPObjectPtr into scope.

  • Make sure you include Python.h first in your header files, before any system headers; otherwise, you will get error: "_XOPEN_SOURCE" redefined error. If you pay attention to warnings, you will see where you need to do this.

Notes

Note [Storage is not nullptr]

Historically, Torch supported nullptr storage, as a minor optimization to avoid having to allocate a storage object when it would be empty. However, this is actually a confusing special case to deal with, so by-in-large, PyTorch assumes that, in fact, storage is never nullptr.

One important case where this assumption is important is when tracking the CUDA device a tensor is stored in: this information is stored solely in the storage, so if a storage is nullptr, we lose this information.

Although storage is never nullptr, the data field of THStorage may be nullptr. This mostly occurs when we want to pre-allocate an output tensor struct, but then have it be resized and filled with data by some operator: there's no point in allocating data for it in this case!

Files

Exceptions.h

Frequently when working with the Python API, you may call a function which returns an error. In this case, we want to return directly to the Python interpreter, so that this exception can be propagated accordingly; however, because the Python API is C-based, what actually will happen is it will return control to whatever C++ code called it. Similarly, if we raise a C++ exception, prior to returning to the Python interpreter, we must set the Python error flags, so it turns into a C++ exception.

Exceptions defines some useful helpers: HANDLE_TH_ERRORS, END_HANDLE_TH_ERRORS and an exception class python_error. You call them like this:

// Entry point from Python interpreter
PyObject* run() {
  HANDLE_TH_ERRORS
  ...
  if (!x) throw python_error();
  ...
  END_HANDLE_TH_ERRORS
}

The HANDLE_TH_ERRORS macro will catch all exceptions and convert them into an appropriate Python signal. python_error is a special exception which doesn't contain any info, instead it says, "An error occurred in the Python API; if you return to the interpreter, Python will raise that exception, nothing else needs to be done."

utils/auto_gil.h

Whenever you make any calls to the Python API, you must have taken out the Python GIL, as none of these calls are thread safe. AutoGIL is a RAII struct which handles taking and releasing the GIL. Use it like this:

void iWantToUsePython() {
  AutoGil gil;
  ...
}

In general, the compiler will NOT warn you if you use Python functionality without taking out the GIL, so DO NOT FORGET this call.

utils/object_ptr.h

THPPointer is a smart pointer class analogous to std::shared_ptr, but which is overloaded to handle reference counting scheme of various objects which are not based on shared_ptr. The most important overloads are:

  • PyObject (so important we've aliased it as THPObjectPtr), which hooks into Python reference counting. (By the way, that means you MUST take out the GIL before bringing one of these into scope!)

  • The various TH tensor and storage types (e.g., THTensor), which hook into TH's reference counting. (TH's reference counting IS thread safe, no locks necessary.)