Source code for dgenerate.pipelinewrapper.uris.transformeruri

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import diffusers

import dgenerate.hfhub as _hfhub
import dgenerate.memoize as _d_memoize
import dgenerate.memory as _memory
import dgenerate.messages as _messages
import dgenerate.pipelinewrapper.enums as _enums
import dgenerate.pipelinewrapper.util as _pipelinewrapper_util
import dgenerate.textprocessing as _textprocessing
import dgenerate.types as _types
from dgenerate.memoize import memoize as _memoize
from dgenerate.pipelinewrapper import constants as _constants
from dgenerate.pipelinewrapper.uris import exceptions as _exceptions
from dgenerate.pipelinewrapper.uris import util as _util

_transformer_uri_parser = _textprocessing.ConceptUriParser(
    'Transformer', [
        'model',
        'revision',
        'variant',
        'subfolder',
        'dtype',
        'quantizer'
    ]
)

_transformer_cache = _d_memoize.create_object_cache(
    'transformer', cache_type=_memory.SizedConstrainedObjectCache
)


[docs] class TransformerUri: """ Representation of ``--transformer`` URI. """ # pipelinewrapper.uris.util.get_uri_accepted_args_schema metadata NAMES = ['Transformer']
[docs] @staticmethod def help(): import dgenerate.arguments as _a return _a.get_raw_help_text('--transformer')
OPTION_ARGS = { 'dtype': ['float16', 'bfloat16', 'float32'] } FILE_ARGS = { 'model': {'mode': ['in', 'dir'], 'filetypes': [('Models', ['*.safetensors', '*.pt', '*.pth', '*.cpkt', '*.bin'])]} } # === @property def model(self) -> str: """ Model path, huggingface slug """ return self._model @property def revision(self) -> _types.OptionalString: """ Model repo revision """ return self._revision @property def variant(self) -> _types.OptionalString: """ Model repo revision """ return self._variant @property def subfolder(self) -> _types.OptionalPath: """ Model repo subfolder """ return self._subfolder @property def dtype(self) -> _enums.DataType | None: """ Model dtype (precision) """ return self._dtype @property def quantizer(self) -> _types.OptionalUri: """ --quantizer URI override """ return self._quantizer
[docs] def __init__(self, model: str, revision: _types.OptionalString = None, variant: _types.OptionalString = None, subfolder: _types.OptionalString = None, dtype: _enums.DataType | str | None = None, quantizer: _types.OptionalUri = None): """ :param model: model path :param revision: model revision (branch name) :param variant: model variant, for example ``fp16`` :param subfolder: model subfolder :param dtype: model data type (precision) :raises InvalidTransformerUriError: If ``dtype`` is passed an invalid data type string. """ if _hfhub.is_single_file_model_load(model): if quantizer: raise _exceptions.InvalidTextEncoderUriError( 'specifying a Transformer quantizer URI is only supported for Hugging Face ' 'repository loads from a repo slug or disk path, single file loads are not supported.') self._model = model self._revision = revision self._variant = variant self._subfolder = subfolder self._quantizer = quantizer try: self._dtype = _enums.get_data_type_enum(dtype) if dtype else None except ValueError: raise _exceptions.InvalidTransformerUriError( f'invalid dtype string, must be one of: ' f'{_textprocessing.oxford_comma(_enums.supported_data_type_strings(), "or")}')
[docs] def load(self, variant_fallback: _types.OptionalString = None, dtype_fallback: _enums.DataType = _enums.DataType.AUTO, original_config: _types.OptionalPath = None, use_auth_token: _types.OptionalString = None, local_files_only: bool = False, no_cache: bool = False, device_map: str | None = None, transformer_class: type[diffusers.SD3Transformer2DModel] | type[ diffusers.FluxTransformer2DModel] = diffusers.SD3Transformer2DModel) \ -> diffusers.SD3Transformer2DModel | diffusers.FluxTransformer2DModel: """ Load a torch :py:class:`diffusers.SD3Transformer2DModel` or :py:class:`diffusers.FluxTransformer2DModel` from a URI. :param variant_fallback: If the URI does not specify a variant, use this variant. :param dtype_fallback: If the URI does not specify a dtype, use this dtype. :param original_config: Path to original model configuration for single file checkpoints, URL or `.yaml` file on disk. :param use_auth_token: optional huggingface auth token. :param local_files_only: avoid downloading files and only look for cached files when the model path is a huggingface slug or blob link :param no_cache: If True, force the returned object not to be cached by the memoize decorator. :param device_map: device placement strategy for quantized models, defaults to ``None`` :param transformer_class: Transformer class type. :raises ModelNotFoundError: If the model could not be found. :return: :py:class:`diffusers.SD3Transformer2DModel` or :py:class:`diffusers.FluxTransformer2DModel` """ def cache_all(e): raise _exceptions.TransformerUriLoadError( f'error loading transformer "{self.model}": {e}') from e with _hfhub.with_hf_errors_as_model_not_found(cache_all): args = locals() args.pop('self') args.pop('cache_all') return self._load(**args)
@staticmethod def _enforce_cache_size(new_transformer_size): _transformer_cache.enforce_cpu_mem_constraints( _constants.TRANSFORMER_CACHE_MEMORY_CONSTRAINTS, size_var='transformer_size', new_object_size=new_transformer_size) @_memoize(_transformer_cache, exceptions={'local_files_only'}, hasher=lambda args: _d_memoize.args_cache_key(args, {'self': _d_memoize.property_hasher}), on_hit=lambda key, hit: _d_memoize.simple_cache_hit_debug("Torch Transformer", key, hit), on_create=lambda key, new: _d_memoize.simple_cache_miss_debug("Torch Transformer", key, new)) def _load(self, variant_fallback: _types.OptionalString = None, dtype_fallback: _enums.DataType = _enums.DataType.AUTO, original_config: _types.OptionalPath = None, use_auth_token: _types.OptionalString = None, local_files_only: bool = False, no_cache: bool = False, device_map: str | None = None, transformer_class: type[diffusers.SD3Transformer2DModel] | type[ diffusers.FluxTransformer2DModel] = diffusers.SD3Transformer2DModel) \ -> diffusers.SD3Transformer2DModel | diffusers.FluxTransformer2DModel: if self.dtype is None: torch_dtype = _enums.get_torch_dtype(dtype_fallback) else: torch_dtype = _enums.get_torch_dtype(self.dtype) if self.variant is None: variant = variant_fallback elif self.variant == 'null': variant = None else: variant = self.variant model_path = _hfhub.download_non_hf_slug_model(self.model) if self.quantizer: quant_config = _util.get_quantizer_uri_class( self.quantizer, _exceptions.InvalidTransformerUriError ).parse(self.quantizer).to_config(torch_dtype) else: quant_config = None if _hfhub.is_single_file_model_load(model_path): try: original_config = _hfhub.download_non_hf_slug_config( original_config) if original_config else None except _hfhub.NonHFConfigDownloadError as e: raise _exceptions.TransformerUriLoadError( f'original config file "{original_config}" for Transformer could not be downloaded: {e}' ) from e estimated_memory_use = _pipelinewrapper_util.estimate_model_memory_use( repo_id=model_path, revision=self.revision, local_files_only=local_files_only, use_auth_token=use_auth_token ) self._enforce_cache_size(estimated_memory_use) transformer = transformer_class.from_single_file( model_path, token=use_auth_token, revision=self.revision, torch_dtype=torch_dtype, original_config=original_config, local_files_only=local_files_only, quantization_config=quant_config, device_map=device_map ) else: if original_config: raise _exceptions.TransformerUriLoadError( 'specifying original_config file for Transformer ' 'is only supported for single file loads.' ) estimated_memory_use = _pipelinewrapper_util.estimate_model_memory_use( repo_id=model_path, revision=self.revision, variant=variant, subfolder=self.subfolder, local_files_only=local_files_only, use_auth_token=use_auth_token ) self._enforce_cache_size(estimated_memory_use) transformer = transformer_class.from_pretrained( model_path, revision=self.revision, variant=variant, torch_dtype=torch_dtype, subfolder=self.subfolder if self.subfolder else "", token=use_auth_token, local_files_only=local_files_only, quantization_config=quant_config, device_map=device_map ) _messages.debug_log('Estimated Torch Transformer Memory Use:', _memory.bytes_best_human_unit(estimated_memory_use)) _util._patch_module_to_for_sized_cache(_transformer_cache, transformer) # noinspection PyTypeChecker return transformer, _d_memoize.CachedObjectMetadata( size=estimated_memory_use, skip=self.quantizer or no_cache )
[docs] @staticmethod def parse(uri: _types.Uri) -> 'TransformerUri': """ Parse a ``--transformer`` uri and return an object representing its constituents :param uri: string with ``--transformer`` uri syntax :raise InvalidTransformerUriError: :return: :py:class:`.TransformerUri` """ try: r = _transformer_uri_parser.parse(uri) dtype = r.args.get('dtype') supported_dtypes = _enums.supported_data_type_strings() if dtype is not None and dtype not in supported_dtypes: raise _exceptions.InvalidTransformerUriError( f'Torch Transformer "dtype" must be {", ".join(supported_dtypes)}, ' f'or left undefined, received: {dtype}') return TransformerUri(model=r.concept, revision=r.args.get('revision', None), variant=r.args.get('variant', None), dtype=dtype, subfolder=r.args.get('subfolder', None), quantizer=r.args.get('quantizer', False)) except _textprocessing.ConceptUriParseError as e: raise _exceptions.InvalidTransformerUriError(e) from e