import os import warnings from modulefinder import Module import torch from torchvision import _meta_registrations, datasets, io, models, ops, transforms, utils from .extension import _HAS_OPS try: from .version import __version__ # noqa: F401 except ImportError: pass # Check if torchvision is being imported within the root folder if not _HAS_OPS and os.path.dirname(os.path.realpath(__file__)) == os.path.join( os.path.realpath(os.getcwd()), "torchvision" ): message = ( "You are importing torchvision within its own root folder ({}). " "This is not expected to work and may give errors. Please exit the " "torchvision project source and relaunch your python interpreter." ) warnings.warn(message.format(os.getcwd())) _image_backend = "PIL" _video_backend = "pyav" def set_image_backend(backend): """ Specifies the package used to load images. Args: backend (string): Name of the image backend. one of {'PIL', 'accimage'}. The :mod:`accimage` package uses the Intel IPP library. It is generally faster than PIL, but does not support as many operations. """ global _image_backend if backend not in ["PIL", "accimage"]: raise ValueError(f"Invalid backend '{backend}'. Options are 'PIL' and 'accimage'") _image_backend = backend def get_image_backend(): """ Gets the name of the package used to load images """ return _image_backend def set_video_backend(backend): """ Specifies the package used to decode videos. Args: backend (string): Name of the video backend. one of {'pyav', 'video_reader'}. The :mod:`pyav` package uses the 3rd party PyAv library. It is a Pythonic binding for the FFmpeg libraries. The :mod:`video_reader` package includes a native C++ implementation on top of FFMPEG libraries, and a python API of TorchScript custom operator. It generally decodes faster than :mod:`pyav`, but is perhaps less robust. .. note:: Building with FFMPEG is disabled by default in the latest `main`. If you want to use the 'video_reader' backend, please compile torchvision from source. """ global _video_backend if backend not in ["pyav", "video_reader", "cuda"]: raise ValueError("Invalid video backend '%s'. Options are 'pyav', 'video_reader' and 'cuda'" % backend) if backend == "video_reader" and not io._HAS_VIDEO_OPT: # TODO: better messages message = "video_reader video backend is not available. Please compile torchvision from source and try again" raise RuntimeError(message) elif backend == "cuda" and not io._HAS_GPU_VIDEO_DECODER: # TODO: better messages message = "cuda video backend is not available." raise RuntimeError(message) else: _video_backend = backend def get_video_backend(): """ Returns the currently active video backend used to decode videos. Returns: str: Name of the video backend. one of {'pyav', 'video_reader'}. """ return _video_backend def _is_tracing(): return torch._C._get_tracing_state() def disable_beta_transforms_warning(): # Noop, only exists to avoid breaking existing code. # See https://github.com/pytorch/vision/issues/7896 pass