| torch.library |
| =================================== |
| |
| Python operator registration API provides capabilities for extending PyTorch's core library |
| of operators with user defined operators. Currently, this can be done in two ways: |
| |
| #. Creating new libraries |
| |
| * Lets you to register **new operators** and kernels for various backends and functionalities by specifying the appropriate dispatch keys. For example, |
| |
| * Consider registering a new operator ``add`` in your newly created namespace ``foo``. You can access this operator using the ``torch.ops`` API and calling into by calling ``torch.ops.foo.add``. You can also access specific registered overloads by calling ``torch.ops.foo.add.{overload_name}``. |
| |
| * If you registered a new kernel for the ``CUDA`` dispatch key for this operator, then your custom defined function will be called for CUDA tensor inputs. |
| |
| * This can be done by creating Library class objects of ``"DEF"`` kind. |
| |
| #. Extending existing C++ libraries (e.g., aten) |
| |
| * Lets you register kernels for **existing operators** corresponding to various backends and functionalities by specifying the appropriate dispatch keys. |
| |
| * This may come in handy to fill up spotty operator support for a feature implemented through a dispatch key. For example., |
| |
| * You can add operator support for Meta Tensors (by registering function to the ``Meta`` dispatch key). |
| |
| * This can be done by creating Library class objects of ``"IMPL"`` kind. |
| |
| A tutorial that walks you through some examples on how to use this API is available on `Google Colab <https://colab.research.google.com/drive/1RRhSfk7So3Cn02itzLWE9K4Fam-8U011?usp=sharing>`_. |
| |
| .. warning:: |
| Dispatcher is a complicated PyTorch concept and having a sound understanding of Dispatcher is crucial |
| to be able to do anything advanced with this API. `This blog post <http://blog.ezyang.com/2020/09/lets-talk-about-the-pytorch-dispatcher/>`_ |
| is a good starting point to learn about Dispatcher. |
| |
| .. currentmodule:: torch.library |
| |
| .. autoclass:: torch.library.Library |
| :members: |
| |
| We have also added some function decorators to make it convenient to register functions for operators: |
| |
| * :func:`torch.library.impl` |
| * :func:`torch.library.define` |