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stringlengths 87
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| style_context
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"""simple docstring"""
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available
lowerCamelCase_ : List[Any] = {
"""configuration_instructblip""": [
"""INSTRUCTBLIP_PRETRAINED_CONFIG_ARCHIVE_MAP""",
"""InstructBlipConfig""",
"""InstructBlipQFormerConfig""",
"""InstructBlipVisionConfig""",
],
"""processing_instructblip""": ["""InstructBlipProcessor"""],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
lowerCamelCase_ : List[str] = [
"""INSTRUCTBLIP_PRETRAINED_MODEL_ARCHIVE_LIST""",
"""InstructBlipQFormerModel""",
"""InstructBlipPreTrainedModel""",
"""InstructBlipForConditionalGeneration""",
"""InstructBlipVisionModel""",
]
if TYPE_CHECKING:
from .configuration_instructblip import (
INSTRUCTBLIP_PRETRAINED_CONFIG_ARCHIVE_MAP,
InstructBlipConfig,
InstructBlipQFormerConfig,
InstructBlipVisionConfig,
)
from .processing_instructblip import InstructBlipProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_instructblip import (
INSTRUCTBLIP_PRETRAINED_MODEL_ARCHIVE_LIST,
InstructBlipForConditionalGeneration,
InstructBlipPreTrainedModel,
InstructBlipQFormerModel,
InstructBlipVisionModel,
)
else:
import sys
lowerCamelCase_ : Tuple = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
| 81
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase = 1_000 ) -> int:
return sum(e for e in range(3 , _lowerCAmelCase ) if e % 3 == 0 or e % 5 == 0 )
if __name__ == "__main__":
print(F"{solution() = }")
| 35
| 0
|
import argparse
import glob
import logging
import os
import sys
import time
from collections import defaultdict
from pathlib import Path
from typing import Dict, List, Tuple
import numpy as np
import pytorch_lightning as pl
import torch
from callbacks import SeqaSeqLoggingCallback, get_checkpoint_callback, get_early_stopping_callback
from torch import nn
from torch.utils.data import DataLoader
from transformers import MBartTokenizer, TaForConditionalGeneration
from transformers.models.bart.modeling_bart import shift_tokens_right
from utils import (
ROUGE_KEYS,
LegacySeqaSeqDataset,
SeqaSeqDataset,
assert_all_frozen,
calculate_bleu,
calculate_rouge,
check_output_dir,
flatten_list,
freeze_embeds,
freeze_params,
get_git_info,
label_smoothed_nll_loss,
lmap,
pickle_save,
save_git_info,
save_json,
use_task_specific_params,
)
# need the parent dir module
sys.path.insert(2, str(Path(__file__).resolve().parents[1]))
from lightning_base import BaseTransformer, add_generic_args, generic_train # noqa
A__ = logging.getLogger(__name__)
class __lowerCAmelCase ( lowerCamelCase__ ):
__lowerCamelCase = '''summarization'''
__lowerCamelCase = ['''loss''']
__lowerCamelCase = ROUGE_KEYS
__lowerCamelCase = '''rouge2'''
def __init__( self , _snake_case , **_snake_case ):
"""simple docstring"""
if hparams.sortish_sampler and hparams.gpus > 1:
_lowerCAmelCase = False
elif hparams.max_tokens_per_batch is not None:
if hparams.gpus > 1:
raise NotImplementedError("""Dynamic Batch size does not work for multi-gpu training""" )
if hparams.sortish_sampler:
raise ValueError("""--sortish_sampler and --max_tokens_per_batch may not be used simultaneously""" )
super().__init__(_snake_case , num_labels=_snake_case , mode=self.mode , **_snake_case )
use_task_specific_params(self.model , """summarization""" )
save_git_info(self.hparams.output_dir )
_lowerCAmelCase = Path(self.output_dir ) / """metrics.json"""
_lowerCAmelCase = Path(self.output_dir ) / """hparams.pkl"""
pickle_save(self.hparams , self.hparams_save_path )
_lowerCAmelCase = 0
_lowerCAmelCase = defaultdict(_snake_case )
_lowerCAmelCase = self.config.model_type
_lowerCAmelCase = self.config.tgt_vocab_size if self.model_type == """fsmt""" else self.config.vocab_size
_lowerCAmelCase = {
"data_dir": self.hparams.data_dir,
"max_source_length": self.hparams.max_source_length,
"prefix": self.model.config.prefix or "",
}
_lowerCAmelCase = {
"""train""": self.hparams.n_train,
"""val""": self.hparams.n_val,
"""test""": self.hparams.n_test,
}
_lowerCAmelCase = {k: v if v >= 0 else None for k, v in n_observations_per_split.items()}
_lowerCAmelCase = {
"""train""": self.hparams.max_target_length,
"""val""": self.hparams.val_max_target_length,
"""test""": self.hparams.test_max_target_length,
}
assert self.target_lens["train"] <= self.target_lens["val"], F'target_lens: {self.target_lens}'
assert self.target_lens["train"] <= self.target_lens["test"], F'target_lens: {self.target_lens}'
if self.hparams.freeze_embeds:
freeze_embeds(self.model )
if self.hparams.freeze_encoder:
freeze_params(self.model.get_encoder() )
assert_all_frozen(self.model.get_encoder() )
_lowerCAmelCase = get_git_info()["""repo_sha"""]
_lowerCAmelCase = hparams.num_workers
_lowerCAmelCase = None # default to config
if self.model.config.decoder_start_token_id is None and isinstance(self.tokenizer , _snake_case ):
_lowerCAmelCase = self.tokenizer.lang_code_to_id[hparams.tgt_lang]
_lowerCAmelCase = self.decoder_start_token_id
_lowerCAmelCase = (
SeqaSeqDataset if hasattr(self.tokenizer , """prepare_seq2seq_batch""" ) else LegacySeqaSeqDataset
)
_lowerCAmelCase = False
_lowerCAmelCase = self.model.config.num_beams if self.hparams.eval_beams is None else self.hparams.eval_beams
if self.hparams.eval_max_gen_length is not None:
_lowerCAmelCase = self.hparams.eval_max_gen_length
else:
_lowerCAmelCase = self.model.config.max_length
_lowerCAmelCase = self.default_val_metric if self.hparams.val_metric is None else self.hparams.val_metric
def snake_case ( self , _snake_case ):
"""simple docstring"""
_lowerCAmelCase = {
k: self.tokenizer.batch_decode(v.tolist() ) if """mask""" not in k else v.shape for k, v in batch.items()
}
save_json(_snake_case , Path(self.output_dir ) / """text_batch.json""" )
save_json({k: v.tolist() for k, v in batch.items()} , Path(self.output_dir ) / """tok_batch.json""" )
_lowerCAmelCase = True
return readable_batch
def snake_case ( self , _snake_case , **_snake_case ):
"""simple docstring"""
return self.model(_snake_case , **_snake_case )
def snake_case ( self , _snake_case ):
"""simple docstring"""
_lowerCAmelCase = self.tokenizer.batch_decode(
_snake_case , skip_special_tokens=_snake_case , clean_up_tokenization_spaces=_snake_case )
return lmap(str.strip , _snake_case )
def snake_case ( self , _snake_case ):
"""simple docstring"""
_lowerCAmelCase = self.tokenizer.pad_token_id
_lowerCAmelCase , _lowerCAmelCase = batch["""input_ids"""], batch["""attention_mask"""]
_lowerCAmelCase = batch["""labels"""]
if isinstance(self.model , _snake_case ):
_lowerCAmelCase = self.model._shift_right(_snake_case )
else:
_lowerCAmelCase = shift_tokens_right(_snake_case , _snake_case )
if not self.already_saved_batch: # This would be slightly better if it only happened on rank zero
_lowerCAmelCase = decoder_input_ids
self.save_readable_batch(_snake_case )
_lowerCAmelCase = self(_snake_case , attention_mask=_snake_case , decoder_input_ids=_snake_case , use_cache=_snake_case )
_lowerCAmelCase = outputs["""logits"""]
if self.hparams.label_smoothing == 0:
# Same behavior as modeling_bart.py, besides ignoring pad_token_id
_lowerCAmelCase = nn.CrossEntropyLoss(ignore_index=_snake_case )
assert lm_logits.shape[-1] == self.vocab_size
_lowerCAmelCase = ce_loss_fct(lm_logits.view(-1 , lm_logits.shape[-1] ) , tgt_ids.view(-1 ) )
else:
_lowerCAmelCase = nn.functional.log_softmax(_snake_case , dim=-1 )
_lowerCAmelCase , _lowerCAmelCase = label_smoothed_nll_loss(
_snake_case , _snake_case , self.hparams.label_smoothing , ignore_index=_snake_case )
return (loss,)
@property
def snake_case ( self ):
"""simple docstring"""
return self.tokenizer.pad_token_id
def snake_case ( self , _snake_case , _snake_case ):
"""simple docstring"""
_lowerCAmelCase = self._step(_snake_case )
_lowerCAmelCase = dict(zip(self.loss_names , _snake_case ) )
# tokens per batch
_lowerCAmelCase = batch["""input_ids"""].ne(self.pad ).sum() + batch["""labels"""].ne(self.pad ).sum()
_lowerCAmelCase = batch["""input_ids"""].shape[0]
_lowerCAmelCase = batch["""input_ids"""].eq(self.pad ).sum()
_lowerCAmelCase = batch["""input_ids"""].eq(self.pad ).float().mean()
# TODO(SS): make a wandb summary metric for this
return {"loss": loss_tensors[0], "log": logs}
def snake_case ( self , _snake_case , _snake_case ):
"""simple docstring"""
return self._generative_step(_snake_case )
def snake_case ( self , _snake_case , _snake_case="val" ):
"""simple docstring"""
self.step_count += 1
_lowerCAmelCase = {k: torch.stack([x[k] for x in outputs] ).mean() for k in self.loss_names}
_lowerCAmelCase = losses["""loss"""]
_lowerCAmelCase = {
k: np.array([x[k] for x in outputs] ).mean() for k in self.metric_names + ["""gen_time""", """gen_len"""]
}
_lowerCAmelCase = (
generative_metrics[self.val_metric] if self.val_metric in generative_metrics else losses[self.val_metric]
)
_lowerCAmelCase = torch.tensor(_snake_case ).type_as(_snake_case )
generative_metrics.update({k: v.item() for k, v in losses.items()} )
losses.update(_snake_case )
_lowerCAmelCase = {F'{prefix}_avg_{k}': x for k, x in losses.items()}
_lowerCAmelCase = self.step_count
self.metrics[prefix].append(_snake_case ) # callback writes this to self.metrics_save_path
_lowerCAmelCase = flatten_list([x["""preds"""] for x in outputs] )
return {
"log": all_metrics,
"preds": preds,
F'{prefix}_loss': loss,
F'{prefix}_{self.val_metric}': metric_tensor,
}
def snake_case ( self , _snake_case , _snake_case ):
"""simple docstring"""
return calculate_rouge(_snake_case , _snake_case )
def snake_case ( self , _snake_case ):
"""simple docstring"""
_lowerCAmelCase = time.time()
# parser.add_argument('--eval_max_gen_length', type=int, default=None, help='never generate more than n tokens')
_lowerCAmelCase = self.model.generate(
batch["""input_ids"""] , attention_mask=batch["""attention_mask"""] , use_cache=_snake_case , decoder_start_token_id=self.decoder_start_token_id , num_beams=self.eval_beams , max_length=self.eval_max_length , )
_lowerCAmelCase = (time.time() - ta) / batch["""input_ids"""].shape[0]
_lowerCAmelCase = self.ids_to_clean_text(_snake_case )
_lowerCAmelCase = self.ids_to_clean_text(batch["""labels"""] )
_lowerCAmelCase = self._step(_snake_case )
_lowerCAmelCase = dict(zip(self.loss_names , _snake_case ) )
_lowerCAmelCase = self.calc_generative_metrics(_snake_case , _snake_case )
_lowerCAmelCase = np.mean(lmap(_snake_case , _snake_case ) )
base_metrics.update(gen_time=_snake_case , gen_len=_snake_case , preds=_snake_case , target=_snake_case , **_snake_case )
return base_metrics
def snake_case ( self , _snake_case , _snake_case ):
"""simple docstring"""
return self._generative_step(_snake_case )
def snake_case ( self , _snake_case ):
"""simple docstring"""
return self.validation_epoch_end(_snake_case , prefix="""test""" )
def snake_case ( self , _snake_case ):
"""simple docstring"""
_lowerCAmelCase = self.n_obs[type_path]
_lowerCAmelCase = self.target_lens[type_path]
_lowerCAmelCase = self.dataset_class(
self.tokenizer , type_path=_snake_case , n_obs=_snake_case , max_target_length=_snake_case , **self.dataset_kwargs , )
return dataset
def snake_case ( self , _snake_case , _snake_case , _snake_case = False ):
"""simple docstring"""
_lowerCAmelCase = self.get_dataset(_snake_case )
if self.hparams.sortish_sampler and type_path != "test" and type_path != "val":
_lowerCAmelCase = dataset.make_sortish_sampler(_snake_case , distributed=self.hparams.gpus > 1 )
return DataLoader(
_snake_case , batch_size=_snake_case , collate_fn=dataset.collate_fn , shuffle=_snake_case , num_workers=self.num_workers , sampler=_snake_case , )
elif self.hparams.max_tokens_per_batch is not None and type_path != "test" and type_path != "val":
_lowerCAmelCase = dataset.make_dynamic_sampler(
self.hparams.max_tokens_per_batch , distributed=self.hparams.gpus > 1 )
return DataLoader(
_snake_case , batch_sampler=_snake_case , collate_fn=dataset.collate_fn , num_workers=self.num_workers , )
else:
return DataLoader(
_snake_case , batch_size=_snake_case , collate_fn=dataset.collate_fn , shuffle=_snake_case , num_workers=self.num_workers , sampler=_snake_case , )
def snake_case ( self ):
"""simple docstring"""
_lowerCAmelCase = self.get_dataloader("""train""" , batch_size=self.hparams.train_batch_size , shuffle=_snake_case )
return dataloader
def snake_case ( self ):
"""simple docstring"""
return self.get_dataloader("""val""" , batch_size=self.hparams.eval_batch_size )
def snake_case ( self ):
"""simple docstring"""
return self.get_dataloader("""test""" , batch_size=self.hparams.eval_batch_size )
@staticmethod
def snake_case ( _snake_case , _snake_case ):
"""simple docstring"""
BaseTransformer.add_model_specific_args(_snake_case , _snake_case )
add_generic_args(_snake_case , _snake_case )
parser.add_argument(
"""--max_source_length""" , default=1024 , type=_snake_case , help=(
"""The maximum total input sequence length after tokenization. Sequences longer """
"""than this will be truncated, sequences shorter will be padded."""
) , )
parser.add_argument(
"""--max_target_length""" , default=56 , type=_snake_case , help=(
"""The maximum total input sequence length after tokenization. Sequences longer """
"""than this will be truncated, sequences shorter will be padded."""
) , )
parser.add_argument(
"""--val_max_target_length""" , default=142 , type=_snake_case , help=(
"""The maximum total input sequence length after tokenization. Sequences longer """
"""than this will be truncated, sequences shorter will be padded."""
) , )
parser.add_argument(
"""--test_max_target_length""" , default=142 , type=_snake_case , help=(
"""The maximum total input sequence length after tokenization. Sequences longer """
"""than this will be truncated, sequences shorter will be padded."""
) , )
parser.add_argument("""--freeze_encoder""" , action="""store_true""" )
parser.add_argument("""--freeze_embeds""" , action="""store_true""" )
parser.add_argument("""--sortish_sampler""" , action="""store_true""" , default=_snake_case )
parser.add_argument("""--overwrite_output_dir""" , action="""store_true""" , default=_snake_case )
parser.add_argument("""--max_tokens_per_batch""" , type=_snake_case , default=_snake_case )
parser.add_argument("""--logger_name""" , type=_snake_case , choices=["""default""", """wandb""", """wandb_shared"""] , default="""default""" )
parser.add_argument("""--n_train""" , type=_snake_case , default=-1 , required=_snake_case , help="""# examples. -1 means use all.""" )
parser.add_argument("""--n_val""" , type=_snake_case , default=500 , required=_snake_case , help="""# examples. -1 means use all.""" )
parser.add_argument("""--n_test""" , type=_snake_case , default=-1 , required=_snake_case , help="""# examples. -1 means use all.""" )
parser.add_argument(
"""--task""" , type=_snake_case , default="""summarization""" , required=_snake_case , help="""# examples. -1 means use all.""" )
parser.add_argument("""--label_smoothing""" , type=_snake_case , default=0.0 , required=_snake_case )
parser.add_argument("""--src_lang""" , type=_snake_case , default="""""" , required=_snake_case )
parser.add_argument("""--tgt_lang""" , type=_snake_case , default="""""" , required=_snake_case )
parser.add_argument("""--eval_beams""" , type=_snake_case , default=_snake_case , required=_snake_case )
parser.add_argument(
"""--val_metric""" , type=_snake_case , default=_snake_case , required=_snake_case , choices=["""bleu""", """rouge2""", """loss""", None] )
parser.add_argument("""--eval_max_gen_length""" , type=_snake_case , default=_snake_case , help="""never generate more than n tokens""" )
parser.add_argument("""--save_top_k""" , type=_snake_case , default=1 , required=_snake_case , help="""How many checkpoints to save""" )
parser.add_argument(
"""--early_stopping_patience""" , type=_snake_case , default=-1 , required=_snake_case , help=(
"""-1 means never early stop. early_stopping_patience is measured in validation checks, not epochs. So"""
""" val_check_interval will effect it."""
) , )
return parser
class __lowerCAmelCase ( lowerCamelCase__ ):
__lowerCamelCase = '''translation'''
__lowerCamelCase = ['''loss''']
__lowerCamelCase = ['''bleu''']
__lowerCamelCase = '''bleu'''
def __init__( self , _snake_case , **_snake_case ):
"""simple docstring"""
super().__init__(_snake_case , **_snake_case )
_lowerCAmelCase = hparams.src_lang
_lowerCAmelCase = hparams.tgt_lang
def snake_case ( self , _snake_case , _snake_case ):
"""simple docstring"""
return calculate_bleu(_snake_case , _snake_case )
def _UpperCAmelCase ( snake_case , snake_case=None ):
"""simple docstring"""
Path(args.output_dir ).mkdir(exist_ok=snake_case )
check_output_dir(snake_case , expected_items=3 )
if model is None:
if "summarization" in args.task:
_lowerCAmelCase = SummarizationModule(snake_case )
else:
_lowerCAmelCase = TranslationModule(snake_case )
_lowerCAmelCase = Path(args.data_dir ).name
if (
args.logger_name == "default"
or args.fast_dev_run
or str(args.output_dir ).startswith("""/tmp""" )
or str(args.output_dir ).startswith("""/var""" )
):
_lowerCAmelCase = True # don't pollute wandb logs unnecessarily
elif args.logger_name == "wandb":
from pytorch_lightning.loggers import WandbLogger
_lowerCAmelCase = os.environ.get("""WANDB_PROJECT""" , snake_case )
_lowerCAmelCase = WandbLogger(name=model.output_dir.name , project=snake_case )
elif args.logger_name == "wandb_shared":
from pytorch_lightning.loggers import WandbLogger
_lowerCAmelCase = WandbLogger(name=model.output_dir.name , project=F'hf_{dataset}' )
if args.early_stopping_patience >= 0:
_lowerCAmelCase = get_early_stopping_callback(model.val_metric , args.early_stopping_patience )
else:
_lowerCAmelCase = False
_lowerCAmelCase = args.val_metric == """loss"""
_lowerCAmelCase = generic_train(
snake_case , snake_case , logging_callback=SeqaSeqLoggingCallback() , checkpoint_callback=get_checkpoint_callback(
args.output_dir , model.val_metric , args.save_top_k , snake_case ) , early_stopping_callback=snake_case , logger=snake_case , )
pickle_save(model.hparams , model.output_dir / """hparams.pkl""" )
if not args.do_predict:
return model
_lowerCAmelCase = """"""
_lowerCAmelCase = sorted(glob.glob(os.path.join(args.output_dir , """*.ckpt""" ) , recursive=snake_case ) )
if checkpoints:
_lowerCAmelCase = checkpoints[-1]
_lowerCAmelCase = checkpoints[-1]
trainer.logger.log_hyperparams(model.hparams )
# test() without a model tests using the best checkpoint automatically
trainer.test()
return model
if __name__ == "__main__":
A__ = argparse.ArgumentParser()
A__ = pl.Trainer.add_argparse_args(parser)
A__ = SummarizationModule.add_model_specific_args(parser, os.getcwd())
A__ = parser.parse_args()
main(args)
| 82
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
__a = {
"configuration_bloom": ["BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP", "BloomConfig", "BloomOnnxConfig"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = ["BloomTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST",
"BloomForCausalLM",
"BloomModel",
"BloomPreTrainedModel",
"BloomForSequenceClassification",
"BloomForTokenClassification",
"BloomForQuestionAnswering",
]
if TYPE_CHECKING:
from .configuration_bloom import BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP, BloomConfig, BloomOnnxConfig
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_bloom_fast import BloomTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_bloom import (
BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST,
BloomForCausalLM,
BloomForQuestionAnswering,
BloomForSequenceClassification,
BloomForTokenClassification,
BloomModel,
BloomPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
'''simple docstring'''
import random
import unittest
import numpy as np
import torch
from diffusers import (
DPMSolverMultistepScheduler,
EulerAncestralDiscreteScheduler,
EulerDiscreteScheduler,
LMSDiscreteScheduler,
OnnxStableDiffusionUpscalePipeline,
PNDMScheduler,
)
from diffusers.utils import floats_tensor
from diffusers.utils.testing_utils import (
is_onnx_available,
load_image,
nightly,
require_onnxruntime,
require_torch_gpu,
)
from ..test_pipelines_onnx_common import OnnxPipelineTesterMixin
if is_onnx_available():
import onnxruntime as ort
class lowercase__ ( lowercase , unittest.TestCase ):
# TODO: is there an appropriate internal test set?
lowercase__ = """ssube/stable-diffusion-x4-upscaler-onnx"""
def UpperCamelCase_ ( self : List[Any] ,lowerCamelCase__ : Optional[int]=0 ):
'''simple docstring'''
_UpperCamelCase : Any = floats_tensor((1, 3, 128, 128) ,rng=random.Random(lowerCamelCase__ ) )
_UpperCamelCase : List[str] = torch.manual_seed(lowerCamelCase__ )
_UpperCamelCase : int = {
'prompt': 'A painting of a squirrel eating a burger',
'image': image,
'generator': generator,
'num_inference_steps': 3,
'guidance_scale': 7.5,
'output_type': 'numpy',
}
return inputs
def UpperCamelCase_ ( self : Dict ):
'''simple docstring'''
_UpperCamelCase : Tuple = OnnxStableDiffusionUpscalePipeline.from_pretrained(self.hub_checkpoint ,provider='CPUExecutionProvider' )
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : Optional[int] = self.get_dummy_inputs()
_UpperCamelCase : str = pipe(**lowerCamelCase__ ).images
_UpperCamelCase : Optional[Any] = image[0, -3:, -3:, -1].flatten()
# started as 128, should now be 512
assert image.shape == (1, 512, 512, 3)
_UpperCamelCase : Dict = np.array(
[0.6_9_7_4_7_8_2, 0.6_8_9_0_2_0_9_3, 0.7_0_1_3_5_8_8_5, 0.7_5_8_3_6_1_8, 0.7_8_0_4_5_4_5, 0.7_8_5_4_9_1_2, 0.7_8_6_6_7_4_2_6, 0.7_8_7_4_3_8_6_3, 0.7_8_0_7_0_2_2_3] )
assert np.abs(image_slice - expected_slice ).max() < 1E-1
def UpperCamelCase_ ( self : Optional[Any] ):
'''simple docstring'''
_UpperCamelCase : Tuple = OnnxStableDiffusionUpscalePipeline.from_pretrained(self.hub_checkpoint ,provider='CPUExecutionProvider' )
_UpperCamelCase : Optional[int] = PNDMScheduler.from_config(pipe.scheduler.config ,skip_prk_steps=lowerCamelCase__ )
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : int = self.get_dummy_inputs()
_UpperCamelCase : Tuple = pipe(**lowerCamelCase__ ).images
_UpperCamelCase : Dict = image[0, -3:, -3:, -1]
assert image.shape == (1, 512, 512, 3)
_UpperCamelCase : Optional[Any] = np.array(
[0.6_8_9_8_8_9_2, 0.5_9_2_4_0_5_5_6, 0.5_2_4_9_9_5_2_7, 0.5_8_8_6_6_2_1_5, 0.5_2_2_5_8_2_3_5, 0.5_2_5_7_2_7_1_5, 0.6_2_4_1_4_4_7_3, 0.6_1_7_4_3_8_7, 0.6_2_1_4_9_6_4] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-1
def UpperCamelCase_ ( self : Tuple ):
'''simple docstring'''
_UpperCamelCase : Dict = OnnxStableDiffusionUpscalePipeline.from_pretrained(self.hub_checkpoint ,provider='CPUExecutionProvider' )
_UpperCamelCase : Any = DPMSolverMultistepScheduler.from_config(pipe.scheduler.config )
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : Tuple = self.get_dummy_inputs()
_UpperCamelCase : Union[str, Any] = pipe(**lowerCamelCase__ ).images
_UpperCamelCase : Dict = image[0, -3:, -3:, -1]
assert image.shape == (1, 512, 512, 3)
_UpperCamelCase : Dict = np.array(
[0.7_6_5_9_2_7_8, 0.7_6_4_3_7_6_6_4, 0.7_5_5_7_9_1_0_7, 0.7_6_9_1_1_1_6, 0.7_7_6_6_6_9_8_6, 0.7_7_2_7_6_7_2, 0.7_7_5_8_6_6_4, 0.7_8_1_2_2_2_6, 0.7_6_9_4_2_5_1_5] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-1
def UpperCamelCase_ ( self : str ):
'''simple docstring'''
_UpperCamelCase : Tuple = OnnxStableDiffusionUpscalePipeline.from_pretrained(self.hub_checkpoint ,provider='CPUExecutionProvider' )
_UpperCamelCase : Optional[Any] = EulerDiscreteScheduler.from_config(pipe.scheduler.config )
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : Tuple = self.get_dummy_inputs()
_UpperCamelCase : Optional[int] = pipe(**lowerCamelCase__ ).images
_UpperCamelCase : Optional[int] = image[0, -3:, -3:, -1]
assert image.shape == (1, 512, 512, 3)
_UpperCamelCase : Union[str, Any] = np.array(
[0.6_9_7_4_7_8_2, 0.6_8_9_0_2_0_9_3, 0.7_0_1_3_5_8_8_5, 0.7_5_8_3_6_1_8, 0.7_8_0_4_5_4_5, 0.7_8_5_4_9_1_2, 0.7_8_6_6_7_4_2_6, 0.7_8_7_4_3_8_6_3, 0.7_8_0_7_0_2_2_3] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-1
def UpperCamelCase_ ( self : Any ):
'''simple docstring'''
_UpperCamelCase : str = OnnxStableDiffusionUpscalePipeline.from_pretrained(self.hub_checkpoint ,provider='CPUExecutionProvider' )
_UpperCamelCase : Tuple = EulerAncestralDiscreteScheduler.from_config(pipe.scheduler.config )
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : Dict = self.get_dummy_inputs()
_UpperCamelCase : int = pipe(**lowerCamelCase__ ).images
_UpperCamelCase : int = image[0, -3:, -3:, -1]
assert image.shape == (1, 512, 512, 3)
_UpperCamelCase : List[str] = np.array(
[0.7_7_4_2_4_4_9_6, 0.7_7_3_6_0_1, 0.7_6_4_5_2_8_8, 0.7_7_6_9_5_9_8, 0.7_7_7_2_7_3_9, 0.7_7_3_8_6_8_8, 0.7_8_1_8_7_2_3_3, 0.7_7_8_7_9_5_8_4, 0.7_6_7_0_4_3] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-1
@nightly
@require_onnxruntime
@require_torch_gpu
class lowercase__ ( unittest.TestCase ):
@property
def UpperCamelCase_ ( self : Any ):
'''simple docstring'''
return (
"CUDAExecutionProvider",
{
"gpu_mem_limit": "15000000000", # 15GB
"arena_extend_strategy": "kSameAsRequested",
},
)
@property
def UpperCamelCase_ ( self : Tuple ):
'''simple docstring'''
_UpperCamelCase : List[Any] = ort.SessionOptions()
_UpperCamelCase : Tuple = False
return options
def UpperCamelCase_ ( self : Tuple ):
'''simple docstring'''
_UpperCamelCase : Any = load_image(
'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main'
'/img2img/sketch-mountains-input.jpg' )
_UpperCamelCase : Union[str, Any] = init_image.resize((128, 128) )
# using the PNDM scheduler by default
_UpperCamelCase : Dict = OnnxStableDiffusionUpscalePipeline.from_pretrained(
'ssube/stable-diffusion-x4-upscaler-onnx' ,provider=self.gpu_provider ,sess_options=self.gpu_options ,)
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : Dict = 'A fantasy landscape, trending on artstation'
_UpperCamelCase : Optional[int] = torch.manual_seed(0 )
_UpperCamelCase : Optional[Any] = pipe(
prompt=lowerCamelCase__ ,image=lowerCamelCase__ ,guidance_scale=7.5 ,num_inference_steps=10 ,generator=lowerCamelCase__ ,output_type='np' ,)
_UpperCamelCase : Union[str, Any] = output.images
_UpperCamelCase : Any = images[0, 255:258, 383:386, -1]
assert images.shape == (1, 512, 512, 3)
_UpperCamelCase : List[Any] = np.array([0.4_8_8_3, 0.4_9_4_7, 0.4_9_8_0, 0.4_9_7_5, 0.4_9_8_2, 0.4_9_8_0, 0.5_0_0_0, 0.5_0_0_6, 0.4_9_7_2] )
# TODO: lower the tolerance after finding the cause of onnxruntime reproducibility issues
assert np.abs(image_slice.flatten() - expected_slice ).max() < 2E-2
def UpperCamelCase_ ( self : List[str] ):
'''simple docstring'''
_UpperCamelCase : Tuple = load_image(
'https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main'
'/img2img/sketch-mountains-input.jpg' )
_UpperCamelCase : List[Any] = init_image.resize((128, 128) )
_UpperCamelCase : Optional[Any] = LMSDiscreteScheduler.from_pretrained(
'ssube/stable-diffusion-x4-upscaler-onnx' ,subfolder='scheduler' )
_UpperCamelCase : Any = OnnxStableDiffusionUpscalePipeline.from_pretrained(
'ssube/stable-diffusion-x4-upscaler-onnx' ,scheduler=lowerCamelCase__ ,provider=self.gpu_provider ,sess_options=self.gpu_options ,)
pipe.set_progress_bar_config(disable=lowerCamelCase__ )
_UpperCamelCase : Optional[int] = 'A fantasy landscape, trending on artstation'
_UpperCamelCase : List[str] = torch.manual_seed(0 )
_UpperCamelCase : Union[str, Any] = pipe(
prompt=lowerCamelCase__ ,image=lowerCamelCase__ ,guidance_scale=7.5 ,num_inference_steps=20 ,generator=lowerCamelCase__ ,output_type='np' ,)
_UpperCamelCase : List[Any] = output.images
_UpperCamelCase : List[str] = images[0, 255:258, 383:386, -1]
assert images.shape == (1, 512, 512, 3)
_UpperCamelCase : List[str] = np.array(
[0.5_0_1_7_3_7_5_3, 0.5_0_2_2_3_3_5_6, 0.5_0_2_0_3_9, 0.5_0_2_3_3_0_3_6, 0.5_0_2_3_7_2_5, 0.5_0_2_2_6_0_1, 0.5_0_1_8_7_5_8, 0.5_0_2_3_4_0_8_5, 0.5_0_2_4_1_5_6_6] )
# TODO: lower the tolerance after finding the cause of onnxruntime reproducibility issues
assert np.abs(image_slice.flatten() - expected_slice ).max() < 2E-2
| 83
|
'''simple docstring'''
from PIL import Image
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Image:
def brightness(_lowerCAmelCase ) -> float:
return 128 + level + (c - 128)
if not -255.0 <= level <= 255.0:
raise ValueError("""level must be between -255.0 (black) and 255.0 (white)""" )
return img.point(_lowerCAmelCase )
if __name__ == "__main__":
# Load image
with Image.open("image_data/lena.jpg") as img:
# Change brightness to 100
__a = change_brightness(img, 100)
brigt_img.save("image_data/lena_brightness.png", format="png")
| 35
| 0
|
"""simple docstring"""
def _snake_case ( lowercase__ : int = 5_0 ) -> int:
'''simple docstring'''
lowerCAmelCase_ :Any = [1] * (length + 1)
for row_length in range(length + 1 ):
for tile_length in range(2 , 5 ):
for tile_start in range(row_length - tile_length + 1 ):
ways_number[row_length] += ways_number[
row_length - tile_start - tile_length
]
return ways_number[length]
if __name__ == "__main__":
print(F"""{solution() = }""")
| 84
|
'''simple docstring'''
import argparse
import os
import re
__a = "src/transformers"
# Pattern that looks at the indentation in a line.
__a = re.compile(R"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
__a = re.compile(R"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
__a = re.compile(R"\[([^\]]+)\]")
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : int = _re_indent.search(_lowerCAmelCase )
return "" if search is None else search.groups()[0]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase="" , _lowerCAmelCase=None , _lowerCAmelCase=None ) -> List[str]:
snake_case__ : str = 0
snake_case__ : Union[str, Any] = code.split("""\n""" )
if start_prompt is not None:
while not lines[index].startswith(_lowerCAmelCase ):
index += 1
snake_case__ : Tuple = ["""\n""".join(lines[:index] )]
else:
snake_case__ : List[str] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
snake_case__ : Optional[int] = [lines[index]]
index += 1
while index < len(_lowerCAmelCase ) and (end_prompt is None or not lines[index].startswith(_lowerCAmelCase )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(_lowerCAmelCase ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + """ """ ):
current_block.append(lines[index] )
blocks.append("""\n""".join(_lowerCAmelCase ) )
if index < len(_lowerCAmelCase ) - 1:
snake_case__ : str = [lines[index + 1]]
index += 1
else:
snake_case__ : int = []
else:
blocks.append("""\n""".join(_lowerCAmelCase ) )
snake_case__ : Optional[Any] = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(_lowerCAmelCase ) > 0:
blocks.append("""\n""".join(_lowerCAmelCase ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(_lowerCAmelCase ):
blocks.append("""\n""".join(lines[index:] ) )
return blocks
def __snake_case( _lowerCAmelCase ) -> Tuple:
def _inner(_lowerCAmelCase ):
return key(_lowerCAmelCase ).lower().replace("""_""" , """""" )
return _inner
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=None ) -> List[Any]:
# If no key is provided, we use a noop.
def noop(_lowerCAmelCase ):
return x
if key is None:
snake_case__ : Optional[int] = noop
# Constants are all uppercase, they go first.
snake_case__ : Optional[int] = [obj for obj in objects if key(_lowerCAmelCase ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
snake_case__ : int = [obj for obj in objects if key(_lowerCAmelCase )[0].isupper() and not key(_lowerCAmelCase ).isupper()]
# Functions begin with a lowercase, they go last.
snake_case__ : str = [obj for obj in objects if not key(_lowerCAmelCase )[0].isupper()]
snake_case__ : List[str] = ignore_underscore(_lowerCAmelCase )
return sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> int:
# This inner function sort imports between [ ].
def _replace(_lowerCAmelCase ):
snake_case__ : Union[str, Any] = match.groups()[0]
if "," not in imports:
return f"[{imports}]"
snake_case__ : int = [part.strip().replace("""\"""" , """""" ) for part in imports.split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
return "[" + ", ".join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] ) + "]"
snake_case__ : str = import_statement.split("""\n""" )
if len(_lowerCAmelCase ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
snake_case__ : Dict = 2 if lines[1].strip() == """[""" else 1
snake_case__ : str = [(i, _re_strip_line.search(_lowerCAmelCase ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
snake_case__ : str = sort_objects(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )
snake_case__ : Union[str, Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(_lowerCAmelCase ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
snake_case__ : Union[str, Any] = _re_bracket_content.sub(_replace , lines[1] )
else:
snake_case__ : List[Any] = [part.strip().replace("""\"""" , """""" ) for part in lines[1].split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
snake_case__ : int = get_indent(lines[1] ) + """, """.join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] )
return "\n".join(_lowerCAmelCase )
else:
# Finally we have to deal with imports fitting on one line
snake_case__ : Optional[Any] = _re_bracket_content.sub(_replace , _lowerCAmelCase )
return import_statement
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=True ) -> Dict:
with open(_lowerCAmelCase , encoding="""utf-8""" ) as f:
snake_case__ : Optional[int] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
snake_case__ : Optional[int] = split_code_in_indented_blocks(
_lowerCAmelCase , start_prompt="""_import_structure = {""" , end_prompt="""if TYPE_CHECKING:""" )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(_lowerCAmelCase ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
snake_case__ : Optional[Any] = main_blocks[block_idx]
snake_case__ : Dict = block.split("""\n""" )
# Get to the start of the imports.
snake_case__ : Dict = 0
while line_idx < len(_lowerCAmelCase ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
else:
line_idx += 1
if line_idx >= len(_lowerCAmelCase ):
continue
# Ignore beginning and last line: they don't contain anything.
snake_case__ : List[str] = """\n""".join(block_lines[line_idx:-1] )
snake_case__ : str = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
snake_case__ : Optional[int] = split_code_in_indented_blocks(_lowerCAmelCase , indent_level=_lowerCAmelCase )
# We have two categories of import key: list or _import_structure[key].append/extend
snake_case__ : Tuple = _re_direct_key if """_import_structure = {""" in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
snake_case__ : Optional[Any] = [(pattern.search(_lowerCAmelCase ).groups()[0] if pattern.search(_lowerCAmelCase ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
snake_case__ : Dict = [(i, key) for i, key in enumerate(_lowerCAmelCase ) if key is not None]
snake_case__ : Union[str, Any] = [x[0] for x in sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
snake_case__ : List[Any] = 0
snake_case__ : Optional[Any] = []
for i in range(len(_lowerCAmelCase ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
snake_case__ : Optional[Any] = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(_lowerCAmelCase )
count += 1
# And we put our main block back together with its first and last line.
snake_case__ : Dict = """\n""".join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(_lowerCAmelCase ):
if check_only:
return True
else:
print(f"Overwriting {file}." )
with open(_lowerCAmelCase , """w""" , encoding="""utf-8""" ) as f:
f.write("""\n""".join(_lowerCAmelCase ) )
def __snake_case( _lowerCAmelCase=True ) -> Tuple:
snake_case__ : str = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
snake_case__ : Union[str, Any] = sort_imports(os.path.join(_lowerCAmelCase , """__init__.py""" ) , check_only=_lowerCAmelCase )
if result:
snake_case__ : Union[str, Any] = [os.path.join(_lowerCAmelCase , """__init__.py""" )]
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"Would overwrite {len(_lowerCAmelCase )} files, run `make style`." )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
__a = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 35
| 0
|
'''simple docstring'''
def UpperCamelCase_( snake_case : str = "The quick brown fox jumps over the lazy dog" , ):
'''simple docstring'''
snake_case_ = set()
# Replace all the whitespace in our sentence
snake_case_ = input_str.replace(" " , "" )
for alpha in input_str:
if "a" <= alpha.lower() <= "z":
frequency.add(alpha.lower() )
return len(snake_case ) == 2_6
def UpperCamelCase_( snake_case : str = "The quick brown fox jumps over the lazy dog" , ):
'''simple docstring'''
snake_case_ = [False] * 2_6
for char in input_str:
if char.islower():
snake_case_ = True
elif char.isupper():
snake_case_ = True
return all(snake_case )
def UpperCamelCase_( snake_case : str = "The quick brown fox jumps over the lazy dog" , ):
'''simple docstring'''
return len({char for char in input_str.lower() if char.isalpha()} ) == 2_6
def UpperCamelCase_( ):
'''simple docstring'''
from timeit import timeit
snake_case_ = "from __main__ import is_pangram, is_pangram_faster, is_pangram_fastest"
print(timeit("is_pangram()" , setup=snake_case ) )
print(timeit("is_pangram_faster()" , setup=snake_case ) )
print(timeit("is_pangram_fastest()" , setup=snake_case ) )
# 5.348480500048026, 2.6477354579837993, 1.8470395830227062
# 5.036091582966037, 2.644472333951853, 1.8869528750656173
if __name__ == "__main__":
import doctest
doctest.testmod()
benchmark()
| 85
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available
__a = {
"configuration_timesformer": ["TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "TimesformerConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"TimesformerModel",
"TimesformerForVideoClassification",
"TimesformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_timesformer import TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, TimesformerConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_timesformer import (
TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
TimesformerForVideoClassification,
TimesformerModel,
TimesformerPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
"""simple docstring"""
import argparse
import gc
import json
import os
import re
import torch
from huggingface_hub import hf_hub_download
from transformers import AutoModelForCausalLM, AutoTokenizer, PreTrainedTokenizerFast, RwkvConfig
from transformers.modeling_utils import WEIGHTS_INDEX_NAME, shard_checkpoint
lowerCamelCase__ = {
"""169M""": 12,
"""430M""": 24,
"""1B5""": 24,
"""3B""": 32,
"""7B""": 32,
"""14B""": 40,
}
lowerCamelCase__ = {
"""169M""": 768,
"""430M""": 1_024,
"""1B5""": 2_048,
"""3B""": 2_560,
"""7B""": 4_096,
"""14B""": 5_120,
}
def __lowerCAmelCase (_UpperCamelCase ):
__lowerCAmelCase : List[Any] = list(state_dict.keys() )
for name in state_dict_keys:
__lowerCAmelCase : Any = state_dict.pop(_UpperCamelCase )
# emb -> embedding
if name.startswith('emb.' ):
__lowerCAmelCase : Optional[int] = name.replace('emb.' , 'embeddings.' )
# ln_0 -> pre_ln (only present at block 0)
if name.startswith('blocks.0.ln0' ):
__lowerCAmelCase : str = name.replace('blocks.0.ln0' , 'blocks.0.pre_ln' )
# att -> attention
__lowerCAmelCase : Optional[Any] = re.sub(r'blocks\.(\d+)\.att' , r'blocks.\1.attention' , _UpperCamelCase )
# ffn -> feed_forward
__lowerCAmelCase : Optional[int] = re.sub(r'blocks\.(\d+)\.ffn' , r'blocks.\1.feed_forward' , _UpperCamelCase )
# time_mix_k -> time_mix_key and reshape
if name.endswith('.time_mix_k' ):
__lowerCAmelCase : Tuple = name.replace('.time_mix_k' , '.time_mix_key' )
# time_mix_v -> time_mix_value and reshape
if name.endswith('.time_mix_v' ):
__lowerCAmelCase : Tuple = name.replace('.time_mix_v' , '.time_mix_value' )
# time_mix_r -> time_mix_key and reshape
if name.endswith('.time_mix_r' ):
__lowerCAmelCase : List[str] = name.replace('.time_mix_r' , '.time_mix_receptance' )
if name != "head.weight":
__lowerCAmelCase : Dict = 'rwkv.' + name
__lowerCAmelCase : int = weight
return state_dict
def __lowerCAmelCase (_UpperCamelCase , _UpperCamelCase , _UpperCamelCase , _UpperCamelCase=None , _UpperCamelCase=None , _UpperCamelCase=False , _UpperCamelCase=None ):
# 1. If possible, build the tokenizer.
if tokenizer_file is None:
print('No `--tokenizer_file` provided, we will use the default tokenizer.' )
__lowerCAmelCase : Tuple = 5_0277
__lowerCAmelCase : Union[str, Any] = AutoTokenizer.from_pretrained('EleutherAI/gpt-neox-20b' )
else:
__lowerCAmelCase : Dict = PreTrainedTokenizerFast(tokenizer_file=_UpperCamelCase )
__lowerCAmelCase : int = len(_UpperCamelCase )
tokenizer.save_pretrained(_UpperCamelCase )
# 2. Build the config
__lowerCAmelCase : Optional[int] = list(NUM_HIDDEN_LAYERS_MAPPING.keys() )
if size is None:
# Try to infer size from the checkpoint name
for candidate in possible_sizes:
if candidate in checkpoint_file:
__lowerCAmelCase : str = candidate
break
if size is None:
raise ValueError('Could not infer the size, please provide it with the `--size` argument.' )
if size not in possible_sizes:
raise ValueError(F"`size` should be one of {possible_sizes}, got {size}." )
__lowerCAmelCase : Optional[int] = RwkvConfig(
vocab_size=_UpperCamelCase , num_hidden_layers=NUM_HIDDEN_LAYERS_MAPPING[size] , hidden_size=HIDEN_SIZE_MAPPING[size] , )
config.save_pretrained(_UpperCamelCase )
# 3. Download model file then convert state_dict
__lowerCAmelCase : Union[str, Any] = hf_hub_download(_UpperCamelCase , _UpperCamelCase )
__lowerCAmelCase : Tuple = torch.load(_UpperCamelCase , map_location='cpu' )
__lowerCAmelCase : List[Any] = convert_state_dict(_UpperCamelCase )
# 4. Split in shards and save
__lowerCAmelCase , __lowerCAmelCase : Union[str, Any] = shard_checkpoint(_UpperCamelCase )
for shard_file, shard in shards.items():
torch.save(_UpperCamelCase , os.path.join(_UpperCamelCase , _UpperCamelCase ) )
if index is not None:
__lowerCAmelCase : Dict = os.path.join(_UpperCamelCase , _UpperCamelCase )
# Save the index as well
with open(_UpperCamelCase , 'w' , encoding='utf-8' ) as f:
__lowerCAmelCase : Optional[int] = json.dumps(_UpperCamelCase , indent=2 , sort_keys=_UpperCamelCase ) + '\n'
f.write(_UpperCamelCase )
# 5. Clean up shards (for some reason the file PyTorch saves take the same space as the whole state_dict
print(
'Cleaning up shards. This may error with an OOM error, it this is the case don\'t worry you still have converted the model.' )
__lowerCAmelCase : List[str] = list(shards.keys() )
del state_dict
del shards
gc.collect()
for shard_file in shard_files:
__lowerCAmelCase : Union[str, Any] = torch.load(os.path.join(_UpperCamelCase , _UpperCamelCase ) )
torch.save({k: v.cpu().clone() for k, v in state_dict.items()} , os.path.join(_UpperCamelCase , _UpperCamelCase ) )
del state_dict
gc.collect()
if push_to_hub:
if model_name is None:
raise ValueError('Please provide a `model_name` to push the model to the Hub.' )
__lowerCAmelCase : List[Any] = AutoModelForCausalLM.from_pretrained(_UpperCamelCase )
model.push_to_hub(_UpperCamelCase , max_shard_size='2GB' )
tokenizer.push_to_hub(_UpperCamelCase )
if __name__ == "__main__":
lowerCamelCase__ = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"""--repo_id""", default=None, type=str, required=True, help="""Repo ID from which to pull the checkpoint."""
)
parser.add_argument(
"""--checkpoint_file""", default=None, type=str, required=True, help="""Name of the checkpoint file in the repo."""
)
parser.add_argument(
"""--output_dir""", default=None, type=str, required=True, help="""Where to save the converted model."""
)
parser.add_argument(
"""--tokenizer_file""",
default=None,
type=str,
help="""Path to the tokenizer file to use (if not provided, only the model is converted).""",
)
parser.add_argument(
"""--size""",
default=None,
type=str,
help="""Size of the model. Will be inferred from the `checkpoint_file` if not passed.""",
)
parser.add_argument(
"""--push_to_hub""",
action="""store_true""",
help="""Push to the Hub the converted model.""",
)
parser.add_argument(
"""--model_name""",
default=None,
type=str,
help="""Name of the pushed model on the Hub, including the username / organization.""",
)
lowerCamelCase__ = parser.parse_args()
convert_rmkv_checkpoint_to_hf_format(
args.repo_id,
args.checkpoint_file,
args.output_dir,
size=args.size,
tokenizer_file=args.tokenizer_file,
push_to_hub=args.push_to_hub,
model_name=args.model_name,
)
| 86
|
'''simple docstring'''
import argparse
import json
import os
import fairseq
import torch
from torch import nn
from transformers import (
SpeechaTextaConfig,
SpeechaTextaForCausalLM,
SpeechaTextaTokenizer,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
__a = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
__a = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Union[str, Any]:
for attribute in key.split(""".""" ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
if weight_type is not None:
snake_case__ : List[Any] = getattr(_lowerCAmelCase , _lowerCAmelCase ).shape
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
assert hf_shape == value.shape, (
f"Shape of hf {key + '.' + weight_type if weight_type is not None else ''} is {hf_shape}, but should be"
f" {value.shape} for {full_name}"
)
if weight_type == "weight":
snake_case__ : int = value
elif weight_type == "weight_g":
snake_case__ : List[str] = value
elif weight_type == "weight_v":
snake_case__ : List[str] = value
elif weight_type == "bias":
snake_case__ : Optional[Any] = value
else:
snake_case__ : str = value
logger.info(f"{key + '.' + weight_type if weight_type is not None else ''} was initialized from {full_name}." )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Any:
snake_case__ : Union[str, Any] = []
snake_case__ : Dict = fairseq_model.state_dict()
snake_case__ : List[Any] = hf_model.feature_extractor
# if encoder has different dim to decoder -> use proj_weight
snake_case__ : Optional[int] = None
for name, value in fairseq_dict.items():
snake_case__ : List[Any] = False
if "conv_layers" in name:
load_conv_layer(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , hf_model.config.feat_extract_norm == """group""" , )
snake_case__ : Union[str, Any] = True
elif name.split(""".""" )[0] == "proj":
snake_case__ : Tuple = fairseq_model.proj
snake_case__ : int = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split("""w2v_model.""" )[-1] == name.split(""".""" )[0]:
snake_case__ : Optional[Any] = True
if "*" in mapped_key:
snake_case__ : Optional[int] = name.split(_lowerCAmelCase )[0].split(""".""" )[-2]
snake_case__ : Tuple = mapped_key.replace("""*""" , _lowerCAmelCase )
if "weight_g" in name:
snake_case__ : str = """weight_g"""
elif "weight_v" in name:
snake_case__ : int = """weight_v"""
elif "bias" in name:
snake_case__ : Dict = """bias"""
elif "weight" in name:
snake_case__ : Union[str, Any] = """weight"""
else:
snake_case__ : Union[str, Any] = None
set_recursively(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
continue
if not is_used:
unused_weights.append(_lowerCAmelCase )
logger.warning(f"Unused weights: {unused_weights}" )
return proj_weight
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : int = full_name.split("""conv_layers.""" )[-1]
snake_case__ : Dict = name.split(""".""" )
snake_case__ : Any = int(items[0] )
snake_case__ : Optional[Any] = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found."
)
snake_case__ : str = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
f"{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was"
" found."
)
snake_case__ : Union[str, Any] = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor[layer_id].layer_norm.weight.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
else:
unused_weights.append(_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ , snake_case__ : str = emb.weight.shape
snake_case__ : List[str] = nn.Linear(_lowerCAmelCase , _lowerCAmelCase , bias=_lowerCAmelCase )
snake_case__ : List[str] = emb.weight.data
return lin_layer
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
with open(_lowerCAmelCase , """r""" , encoding="""utf-8""" ) as f:
snake_case__ : int = f.readlines()
snake_case__ : List[Any] = [line.split(""" """ )[0] for line in lines]
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
snake_case__ : Any = {
"""<s>""": 0,
"""<pad>""": 1,
"""</s>""": 2,
"""<unk>""": 3,
}
vocab_dict.update(dict(zip(_lowerCAmelCase , range(4 , num_words + 4 ) ) ) )
return vocab_dict
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , ) -> int:
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaConfig.from_pretrained(
_lowerCAmelCase , vocab_size=_lowerCAmelCase , decoder_layers=_lowerCAmelCase , do_stable_layer_norm=_lowerCAmelCase )
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=16_000 , padding_value=0 , do_normalize=_lowerCAmelCase , return_attention_mask=_lowerCAmelCase , )
snake_case__ , snake_case__ , snake_case__ : Union[str, Any] = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={"""data""": """/""".join(dict_path.split("""/""" )[:-1] )} )
snake_case__ : Tuple = model[0].eval()
# set weights for wav2vec2 encoder
snake_case__ : Optional[Any] = WavaVecaModel(_lowerCAmelCase )
snake_case__ : Dict = recursively_load_weights_wavaveca(model.encoder , _lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaForCausalLM(_lowerCAmelCase )
snake_case__ , snake_case__ : Tuple = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=_lowerCAmelCase )
# set output linear layer
unexpected_keys.remove("""embed_out""" )
snake_case__ : Tuple = nn.Parameter(model.decoder.embed_out.detach() )
# layer norm is init to identity matrix so leaving it is fine
logger.warning(f"The following keys are missing when loading the decoder weights: {missing_keys}" )
logger.warning(f"The following keys are unexpected when loading the decoder weights: {unexpected_keys}" )
snake_case__ : List[Any] = SpeechEncoderDecoderModel(encoder=_lowerCAmelCase , decoder=_lowerCAmelCase )
snake_case__ : Tuple = False
# add projection layer
snake_case__ : Union[str, Any] = nn.Parameter(projection_layer.weight )
snake_case__ : int = nn.Parameter(projection_layer.bias )
snake_case__ : Tuple = create_vocab_dict(_lowerCAmelCase )
with open(os.path.join(_lowerCAmelCase , """vocab.json""" ) , """w""" ) as fp:
json.dump(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Tuple = SpeechaTextaTokenizer(os.path.join(_lowerCAmelCase , """vocab.json""" ) )
tokenizer.save_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Optional[Any] = tokenizer.bos_token_id
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : str = """speech_to_text_2"""
snake_case__ : List[Any] = """wav2vec2"""
snake_case__ : List[str] = SpeechEncoderDecoderConfig.from_dict(_lowerCAmelCase )
hf_wavavec.save_pretrained(_lowerCAmelCase )
feature_extractor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-large-lv60",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/s2t-small-mustc-en-fr-st",
type=str,
help="Path to hf decoder s2t checkpoint config",
)
parser.add_argument("--vocab_size", default=1_0224, type=int, help="Vocab size of decoder")
parser.add_argument("--num_decoder_layers", default=7, type=int, help="Number of decoder layers")
__a = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
vocab_size=args.vocab_size,
num_decoder_layers=args.num_decoder_layers,
)
| 35
| 0
|
import requests
def lowercase_ ( _lowerCamelCase : str , _lowerCamelCase : str):
lowercase__ : List[str] = {"Content-Type": "application/json"}
lowercase__ : List[Any] = requests.post(_lowerCamelCase , json={"text": message_body} , headers=_lowerCamelCase)
if response.status_code != 200:
lowercase__ : int = (
"Request to slack returned an error "
f'''{response.status_code}, the response is:\n{response.text}'''
)
raise ValueError(_lowerCamelCase)
if __name__ == "__main__":
# Set the slack url to the one provided by Slack when you create the webhook at
# https://my.slack.com/services/new/incoming-webhook/
send_slack_message('''<YOUR MESSAGE BODY>''', '''<SLACK CHANNEL URL>''')
| 87
|
'''simple docstring'''
import importlib
import os
import sys
# This is required to make the module import works (when the python process is running from the root of the repo)
sys.path.append(".")
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = test_file.split(os.path.sep )
if components[0:2] != ["tests", "models"]:
raise ValueError(
"""`test_file` should start with `tests/models/` (with `/` being the OS specific path separator). Got """
f"{test_file} instead." )
snake_case__ : Dict = components[-1]
if not test_fn.endswith("""py""" ):
raise ValueError(f"`test_file` should be a python file. Got {test_fn} instead." )
if not test_fn.startswith("""test_modeling_""" ):
raise ValueError(
f"`test_file` should point to a file name of the form `test_modeling_*.py`. Got {test_fn} instead." )
snake_case__ : int = components[:-1] + [test_fn.replace(""".py""" , """""" )]
snake_case__ : int = """.""".join(_lowerCAmelCase )
return test_module_path
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ : str = get_module_path(_lowerCAmelCase )
snake_case__ : Union[str, Any] = importlib.import_module(_lowerCAmelCase )
return test_module
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : List[Any] = []
snake_case__ : Optional[int] = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
if attr.endswith("""ModelTester""" ):
tester_classes.append(getattr(_lowerCAmelCase , _lowerCAmelCase ) )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : List[str] = []
snake_case__ : Any = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
# (TF/Flax)ModelTesterMixin is also an attribute in specific model test module. Let's exclude them by checking
# `all_model_classes` is not empty (which also excludes other special classes).
snake_case__ : List[str] = getattr(_lowerCAmelCase , """all_model_classes""" , [] )
if len(_lowerCAmelCase ) > 0:
test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : Any = get_test_classes(_lowerCAmelCase )
snake_case__ : Optional[Any] = set()
for test_class in test_classes:
model_classes.update(test_class.all_model_classes )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
snake_case__ : Optional[int] = test_class()
if hasattr(_lowerCAmelCase , """setUp""" ):
test.setUp()
snake_case__ : Any = None
if hasattr(_lowerCAmelCase , """model_tester""" ):
# `(TF/Flax)ModelTesterMixin` has this attribute default to `None`. Let's skip this case.
if test.model_tester is not None:
snake_case__ : Tuple = test.model_tester.__class__
return model_tester
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : Union[str, Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : str = []
for test_class in test_classes:
if model_class in test_class.all_model_classes:
target_test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Tuple:
snake_case__ : Optional[Any] = get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Union[str, Any] = []
for test_class in test_classes:
snake_case__ : Tuple = get_model_tester_from_test_class(_lowerCAmelCase )
if tester_class is not None:
tester_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Union[str, Any]:
snake_case__ : Optional[Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : Union[str, Any] = {test_class: get_model_tester_from_test_class(_lowerCAmelCase ) for test_class in test_classes}
return test_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Any = get_model_classes(_lowerCAmelCase )
snake_case__ : Any = {
model_class: get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_test_mapping
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Union[str, Any] = get_model_classes(_lowerCAmelCase )
snake_case__ : str = {
model_class: get_tester_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_to_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
if isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o.__name__
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return [to_json(_lowerCAmelCase ) for x in o]
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return {to_json(_lowerCAmelCase ): to_json(_lowerCAmelCase ) for k, v in o.items()}
else:
return o
| 35
| 0
|
import inspect
import unittest
import numpy as np
from transformers import ViTConfig, is_flax_available
from transformers.testing_utils import require_flax, slow
from ...test_configuration_common import ConfigTester
from ...test_modeling_flax_common import FlaxModelTesterMixin, floats_tensor
if is_flax_available():
import jax
from transformers.models.vit.modeling_flax_vit import FlaxViTForImageClassification, FlaxViTModel
class UpperCAmelCase_ ( unittest.TestCase ):
'''simple docstring'''
def __init__( self : Optional[int] , UpperCamelCase__ : Dict , UpperCamelCase__ : List[str]=13 , UpperCamelCase__ : int=30 , UpperCamelCase__ : Optional[int]=2 , UpperCamelCase__ : List[Any]=3 , UpperCamelCase__ : str=True , UpperCamelCase__ : Tuple=True , UpperCamelCase__ : Optional[Any]=32 , UpperCamelCase__ : int=5 , UpperCamelCase__ : List[Any]=4 , UpperCamelCase__ : List[str]=37 , UpperCamelCase__ : Any="gelu" , UpperCamelCase__ : List[Any]=0.1 , UpperCamelCase__ : Union[str, Any]=0.1 , UpperCamelCase__ : Dict=10 , UpperCamelCase__ : List[Any]=0.02 , ) -> Dict:
"""simple docstring"""
__magic_name__ = parent
__magic_name__ = batch_size
__magic_name__ = image_size
__magic_name__ = patch_size
__magic_name__ = num_channels
__magic_name__ = is_training
__magic_name__ = use_labels
__magic_name__ = hidden_size
__magic_name__ = num_hidden_layers
__magic_name__ = num_attention_heads
__magic_name__ = intermediate_size
__magic_name__ = hidden_act
__magic_name__ = hidden_dropout_prob
__magic_name__ = attention_probs_dropout_prob
__magic_name__ = type_sequence_label_size
__magic_name__ = initializer_range
# in ViT, the seq length equals the number of patches + 1 (we add 1 for the [CLS] token)
__magic_name__ = (image_size // patch_size) ** 2
__magic_name__ = num_patches + 1
def _lowercase ( self : Any ) -> Optional[int]:
"""simple docstring"""
__magic_name__ = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
__magic_name__ = ViTConfig(
image_size=self.image_size , patch_size=self.patch_size , num_channels=self.num_channels , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , is_decoder=UpperCamelCase__ , initializer_range=self.initializer_range , )
return config, pixel_values
def _lowercase ( self : List[Any] , UpperCamelCase__ : Union[str, Any] , UpperCamelCase__ : int ) -> List[Any]:
"""simple docstring"""
__magic_name__ = FlaxViTModel(config=UpperCamelCase__ )
__magic_name__ = model(UpperCamelCase__ )
# expected sequence length = num_patches + 1 (we add 1 for the [CLS] token)
__magic_name__ = (self.image_size, self.image_size)
__magic_name__ = (self.patch_size, self.patch_size)
__magic_name__ = (image_size[1] // patch_size[1]) * (image_size[0] // patch_size[0])
self.parent.assertEqual(result.last_hidden_state.shape , (self.batch_size, num_patches + 1, self.hidden_size) )
def _lowercase ( self : Optional[int] , UpperCamelCase__ : str , UpperCamelCase__ : List[Any] ) -> Any:
"""simple docstring"""
__magic_name__ = self.type_sequence_label_size
__magic_name__ = FlaxViTForImageClassification(config=UpperCamelCase__ )
__magic_name__ = model(UpperCamelCase__ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.type_sequence_label_size) )
# test greyscale images
__magic_name__ = 1
__magic_name__ = FlaxViTForImageClassification(UpperCamelCase__ )
__magic_name__ = floats_tensor([self.batch_size, 1, self.image_size, self.image_size] )
__magic_name__ = model(UpperCamelCase__ )
def _lowercase ( self : int ) -> int:
"""simple docstring"""
__magic_name__ = self.prepare_config_and_inputs()
(
(
__magic_name__
) , (
__magic_name__
) ,
) = config_and_inputs
__magic_name__ = {"""pixel_values""": pixel_values}
return config, inputs_dict
@require_flax
class UpperCAmelCase_ ( _A , unittest.TestCase ):
'''simple docstring'''
a__ = (FlaxViTModel, FlaxViTForImageClassification) if is_flax_available() else ()
def _lowercase ( self : Tuple ) -> None:
"""simple docstring"""
__magic_name__ = FlaxViTModelTester(self )
__magic_name__ = ConfigTester(self , config_class=UpperCamelCase__ , has_text_modality=UpperCamelCase__ , hidden_size=37 )
def _lowercase ( self : int ) -> Dict:
"""simple docstring"""
self.config_tester.run_common_tests()
def _lowercase ( self : Optional[Any] ) -> str:
"""simple docstring"""
__magic_name__ = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*UpperCamelCase__ )
def _lowercase ( self : Dict ) -> List[str]:
"""simple docstring"""
__magic_name__ = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*UpperCamelCase__ )
def _lowercase ( self : str ) -> Union[str, Any]:
"""simple docstring"""
__magic_name__ , __magic_name__ = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
__magic_name__ = model_class(UpperCamelCase__ )
__magic_name__ = inspect.signature(model.__call__ )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
__magic_name__ = [*signature.parameters.keys()]
__magic_name__ = ["""pixel_values"""]
self.assertListEqual(arg_names[:1] , UpperCamelCase__ )
def _lowercase ( self : Dict ) -> Optional[int]:
"""simple docstring"""
__magic_name__ , __magic_name__ = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
with self.subTest(model_class.__name__ ):
__magic_name__ = self._prepare_for_class(UpperCamelCase__ , UpperCamelCase__ )
__magic_name__ = model_class(UpperCamelCase__ )
@jax.jit
def model_jitted(UpperCamelCase__ : Optional[Any] , **UpperCamelCase__ : Dict ):
return model(pixel_values=UpperCamelCase__ , **UpperCamelCase__ )
with self.subTest("""JIT Enabled""" ):
__magic_name__ = model_jitted(**UpperCamelCase__ ).to_tuple()
with self.subTest("""JIT Disabled""" ):
with jax.disable_jit():
__magic_name__ = model_jitted(**UpperCamelCase__ ).to_tuple()
self.assertEqual(len(UpperCamelCase__ ) , len(UpperCamelCase__ ) )
for jitted_output, output in zip(UpperCamelCase__ , UpperCamelCase__ ):
self.assertEqual(jitted_output.shape , output.shape )
@slow
def _lowercase ( self : Tuple ) -> Any:
"""simple docstring"""
for model_class_name in self.all_model_classes:
__magic_name__ = model_class_name.from_pretrained("""google/vit-base-patch16-224""" )
__magic_name__ = model(np.ones((1, 3, 224, 224) ) )
self.assertIsNotNone(UpperCamelCase__ )
| 88
|
'''simple docstring'''
import argparse
import json
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import AutoImageProcessor, SwinConfig, SwinForImageClassification
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : Dict = SwinConfig()
snake_case__ : Optional[Any] = swin_name.split("""_""" )
snake_case__ : Any = name_split[1]
snake_case__ : List[Any] = int(name_split[4] )
snake_case__ : int = int(name_split[3][-1] )
if model_size == "tiny":
snake_case__ : List[Any] = 96
snake_case__ : int = (2, 2, 6, 2)
snake_case__ : int = (3, 6, 12, 24)
elif model_size == "small":
snake_case__ : Union[str, Any] = 96
snake_case__ : Optional[Any] = (2, 2, 18, 2)
snake_case__ : str = (3, 6, 12, 24)
elif model_size == "base":
snake_case__ : Dict = 128
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : Dict = (4, 8, 16, 32)
else:
snake_case__ : List[str] = 192
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : List[Any] = (6, 12, 24, 48)
if "in22k" in swin_name:
snake_case__ : str = 21_841
else:
snake_case__ : List[str] = 1_000
snake_case__ : int = """huggingface/label-files"""
snake_case__ : Any = """imagenet-1k-id2label.json"""
snake_case__ : List[Any] = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : Dict = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : Optional[int] = idalabel
snake_case__ : List[Any] = {v: k for k, v in idalabel.items()}
snake_case__ : List[Any] = img_size
snake_case__ : Dict = num_classes
snake_case__ : Dict = embed_dim
snake_case__ : Optional[int] = depths
snake_case__ : int = num_heads
snake_case__ : Optional[int] = window_size
return config
def __snake_case( _lowerCAmelCase ) -> Dict:
if "patch_embed.proj" in name:
snake_case__ : List[str] = name.replace("""patch_embed.proj""" , """embeddings.patch_embeddings.projection""" )
if "patch_embed.norm" in name:
snake_case__ : int = name.replace("""patch_embed.norm""" , """embeddings.norm""" )
if "layers" in name:
snake_case__ : str = """encoder.""" + name
if "attn.proj" in name:
snake_case__ : List[str] = name.replace("""attn.proj""" , """attention.output.dense""" )
if "attn" in name:
snake_case__ : Tuple = name.replace("""attn""" , """attention.self""" )
if "norm1" in name:
snake_case__ : List[str] = name.replace("""norm1""" , """layernorm_before""" )
if "norm2" in name:
snake_case__ : Optional[Any] = name.replace("""norm2""" , """layernorm_after""" )
if "mlp.fc1" in name:
snake_case__ : Union[str, Any] = name.replace("""mlp.fc1""" , """intermediate.dense""" )
if "mlp.fc2" in name:
snake_case__ : Dict = name.replace("""mlp.fc2""" , """output.dense""" )
if name == "norm.weight":
snake_case__ : Tuple = """layernorm.weight"""
if name == "norm.bias":
snake_case__ : Union[str, Any] = """layernorm.bias"""
if "head" in name:
snake_case__ : Optional[int] = name.replace("""head""" , """classifier""" )
else:
snake_case__ : List[str] = """swin.""" + name
return name
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Optional[Any]:
for key in orig_state_dict.copy().keys():
snake_case__ : Optional[int] = orig_state_dict.pop(_lowerCAmelCase )
if "mask" in key:
continue
elif "qkv" in key:
snake_case__ : Dict = key.split(""".""" )
snake_case__ : Optional[int] = int(key_split[1] )
snake_case__ : Union[str, Any] = int(key_split[3] )
snake_case__ : List[Any] = model.swin.encoder.layers[layer_num].blocks[block_num].attention.self.all_head_size
if "weight" in key:
snake_case__ : Optional[Any] = val[:dim, :]
snake_case__ : Tuple = val[
dim : dim * 2, :
]
snake_case__ : Dict = val[-dim:, :]
else:
snake_case__ : Tuple = val[
:dim
]
snake_case__ : int = val[
dim : dim * 2
]
snake_case__ : int = val[
-dim:
]
else:
snake_case__ : Union[str, Any] = val
return orig_state_dict
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
snake_case__ : Optional[int] = get_swin_config(_lowerCAmelCase )
snake_case__ : Optional[Any] = SwinForImageClassification(_lowerCAmelCase )
model.eval()
snake_case__ : str = convert_state_dict(timm_model.state_dict() , _lowerCAmelCase )
model.load_state_dict(_lowerCAmelCase )
snake_case__ : int = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Dict = AutoImageProcessor.from_pretrained("""microsoft/{}""".format(swin_name.replace("""_""" , """-""" ) ) )
snake_case__ : Dict = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
snake_case__ : Optional[int] = image_processor(images=_lowerCAmelCase , return_tensors="""pt""" )
snake_case__ : Optional[Any] = timm_model(inputs["""pixel_values"""] )
snake_case__ : str = model(**_lowerCAmelCase ).logits
assert torch.allclose(_lowerCAmelCase , _lowerCAmelCase , atol=1e-3 )
print(f"Saving model {swin_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--swin_name",
default="swin_tiny_patch4_window7_224",
type=str,
help="Name of the Swin timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_swin_checkpoint(args.swin_name, args.pytorch_dump_folder_path)
| 35
| 0
|
'''simple docstring'''
import functools
import operator
from ...configuration_utils import PretrainedConfig
from ...utils import logging
__lowerCAmelCase = logging.get_logger(__name__)
__lowerCAmelCase = {
'''asapp/sew-tiny-100k''': '''https://huggingface.co/asapp/sew-tiny-100k/resolve/main/config.json''',
# See all SEW models at https://huggingface.co/models?filter=sew
}
class __magic_name__ ( _UpperCamelCase ):
lowerCAmelCase : Union[str, Any] = 'sew'
def __init__( self : int ,_UpperCAmelCase : Optional[int]=32 ,_UpperCAmelCase : int=768 ,_UpperCAmelCase : List[str]=12 ,_UpperCAmelCase : str=12 ,_UpperCAmelCase : str=3072 ,_UpperCAmelCase : Dict=2 ,_UpperCAmelCase : Any="gelu" ,_UpperCAmelCase : Dict=0.1 ,_UpperCAmelCase : Tuple=0.1 ,_UpperCAmelCase : Tuple=0.1 ,_UpperCAmelCase : Union[str, Any]=0.0 ,_UpperCAmelCase : Dict=0.1 ,_UpperCAmelCase : str=0.1 ,_UpperCAmelCase : Dict=0.02 ,_UpperCAmelCase : Tuple=1E-5 ,_UpperCAmelCase : Optional[int]="group" ,_UpperCAmelCase : str="gelu" ,_UpperCAmelCase : Tuple=(64, 128, 128, 128, 128, 256, 256, 256, 256, 512, 512, 512, 512) ,_UpperCAmelCase : Dict=(5, 2, 1, 2, 1, 2, 1, 2, 1, 2, 1, 2, 1) ,_UpperCAmelCase : List[str]=(10, 3, 1, 3, 1, 3, 1, 3, 1, 2, 1, 2, 1) ,_UpperCAmelCase : Optional[int]=False ,_UpperCAmelCase : str=128 ,_UpperCAmelCase : Tuple=16 ,_UpperCAmelCase : List[str]=True ,_UpperCAmelCase : List[Any]=0.05 ,_UpperCAmelCase : List[Any]=10 ,_UpperCAmelCase : int=2 ,_UpperCAmelCase : Union[str, Any]=0.0 ,_UpperCAmelCase : List[Any]=10 ,_UpperCAmelCase : Union[str, Any]=0 ,_UpperCAmelCase : str="mean" ,_UpperCAmelCase : List[str]=False ,_UpperCAmelCase : int=False ,_UpperCAmelCase : List[Any]=256 ,_UpperCAmelCase : Dict=0 ,_UpperCAmelCase : Optional[Any]=1 ,_UpperCAmelCase : Optional[Any]=2 ,**_UpperCAmelCase : List[str] ,):
super().__init__(**_UpperCAmelCase ,pad_token_id=_UpperCAmelCase ,bos_token_id=_UpperCAmelCase ,eos_token_id=_UpperCAmelCase )
_a : Optional[int] = hidden_size
_a : int = feat_extract_norm
_a : Optional[Any] = feat_extract_activation
_a : List[str] = list(_UpperCAmelCase )
_a : List[Any] = list(_UpperCAmelCase )
_a : List[Any] = list(_UpperCAmelCase )
_a : List[Any] = conv_bias
_a : List[str] = num_conv_pos_embeddings
_a : Dict = num_conv_pos_embedding_groups
_a : List[str] = len(self.conv_dim )
_a : Dict = num_hidden_layers
_a : Tuple = intermediate_size
_a : List[str] = squeeze_factor
_a : Optional[int] = hidden_act
_a : Optional[Any] = num_attention_heads
_a : Union[str, Any] = hidden_dropout
_a : Optional[Any] = attention_dropout
_a : str = activation_dropout
_a : List[Any] = feat_proj_dropout
_a : int = final_dropout
_a : str = layerdrop
_a : int = layer_norm_eps
_a : Union[str, Any] = initializer_range
_a : List[Any] = vocab_size
if (
(len(self.conv_stride ) != self.num_feat_extract_layers)
or (len(self.conv_kernel ) != self.num_feat_extract_layers)
or (len(self.conv_dim ) != self.num_feat_extract_layers)
):
raise ValueError(
'Configuration for convolutional layers is incorrect.'
'It is required that `len(config.conv_dim)` == `len(config.conv_stride)` == `len(config.conv_kernel)`,'
F"""but is `len(config.conv_dim) = {len(self.conv_dim )}`, `len(config.conv_stride)"""
F"""= {len(self.conv_stride )}`, `len(config.conv_kernel) = {len(self.conv_kernel )}`.""" )
# fine-tuning config parameters for SpecAugment: https://arxiv.org/abs/1904.08779
_a : Union[str, Any] = apply_spec_augment
_a : List[Any] = mask_time_prob
_a : Optional[int] = mask_time_length
_a : Tuple = mask_time_min_masks
_a : Optional[Any] = mask_feature_prob
_a : Tuple = mask_feature_length
_a : Optional[int] = mask_feature_min_masks
# ctc loss
_a : int = ctc_loss_reduction
_a : Optional[int] = ctc_zero_infinity
# sequence classification
_a : str = use_weighted_layer_sum
_a : Tuple = classifier_proj_size
@property
def __lowercase ( self : List[str] ):
return functools.reduce(operator.mul ,self.conv_stride ,1 )
| 89
|
'''simple docstring'''
import warnings
from ...utils import logging
from .image_processing_beit import BeitImageProcessor
__a = logging.get_logger(__name__)
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def __init__( self : List[str] , *snake_case_ : str , **snake_case_ : List[str] ):
warnings.warn(
"""The class BeitFeatureExtractor is deprecated and will be removed in version 5 of Transformers. Please"""
""" use BeitImageProcessor instead.""" , snake_case_ , )
super().__init__(*snake_case_ , **snake_case_ )
| 35
| 0
|
def lowerCamelCase_ ( UpperCamelCase__ : int = 10 , UpperCamelCase__ : int = 1000 , UpperCamelCase__ : bool = True ) -> int:
"""simple docstring"""
assert (
isinstance(UpperCamelCase__ , UpperCamelCase__ )
and isinstance(UpperCamelCase__ , UpperCamelCase__ )
and isinstance(UpperCamelCase__ , UpperCamelCase__ )
), "Invalid type of value(s) specified to function!"
if min_val > max_val:
raise ValueError('Invalid value for min_val or max_val (min_value < max_value)' )
return min_val if option else max_val
def lowerCamelCase_ ( UpperCamelCase__ : int , UpperCamelCase__ : int ) -> int:
"""simple docstring"""
return int((number_a + number_a) / 2 )
def lowerCamelCase_ ( UpperCamelCase__ : int , UpperCamelCase__ : int , UpperCamelCase__ : int ) -> None:
"""simple docstring"""
assert (
isinstance(UpperCamelCase__ , UpperCamelCase__ ) and isinstance(UpperCamelCase__ , UpperCamelCase__ ) and isinstance(UpperCamelCase__ , UpperCamelCase__ )
), 'argument values must be type of "int"'
if lower > higher:
raise ValueError('argument value for lower and higher must be(lower > higher)' )
if not lower < to_guess < higher:
raise ValueError(
'guess value must be within the range of lower and higher value' )
def answer(UpperCamelCase__ : int ) -> str:
if number > to_guess:
return "high"
elif number < to_guess:
return "low"
else:
return "same"
print('started...' )
__lowerCamelCase = lower
__lowerCamelCase = higher
__lowerCamelCase = []
while True:
__lowerCamelCase = get_avg(UpperCamelCase__ , UpperCamelCase__ )
last_numbers.append(UpperCamelCase__ )
if answer(UpperCamelCase__ ) == "low":
__lowerCamelCase = number
elif answer(UpperCamelCase__ ) == "high":
__lowerCamelCase = number
else:
break
print(F"""guess the number : {last_numbers[-1]}""" )
print(F"""details : {last_numbers!s}""" )
def lowerCamelCase_ ( ) -> None:
"""simple docstring"""
__lowerCamelCase = int(input('Enter lower value : ' ).strip() )
__lowerCamelCase = int(input('Enter high value : ' ).strip() )
__lowerCamelCase = int(input('Enter value to guess : ' ).strip() )
guess_the_number(UpperCamelCase__ , UpperCamelCase__ , UpperCamelCase__ )
if __name__ == "__main__":
main()
| 90
|
'''simple docstring'''
import logging
from dataclasses import dataclass, field
from pathlib import Path
from typing import Optional, Union
from .generation.configuration_utils import GenerationConfig
from .training_args import TrainingArguments
from .utils import add_start_docstrings
__a = logging.getLogger(__name__)
@dataclass
@add_start_docstrings(TrainingArguments.__doc__ )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = field(default=_a , metadata={"help": "Whether to use SortishSampler or not."} )
lowercase = field(
default=_a , metadata={"help": "Whether to use generate to calculate generative metrics (ROUGE, BLEU)."} )
lowercase = field(
default=_a , metadata={
"help": (
"The `max_length` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `max_length` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": (
"The `num_beams` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `num_beams` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": "Model id, file path or url pointing to a GenerationConfig json file, to use during prediction."
} , )
def lowerCamelCase ( self : List[str] ):
snake_case__ : int = super().to_dict()
for k, v in d.items():
if isinstance(snake_case_ , snake_case_ ):
snake_case__ : Optional[int] = v.to_dict()
return d
| 35
| 0
|
"""simple docstring"""
import os
import re
import shutil
import sys
import tempfile
import unittest
import black
UpperCAmelCase_ : Optional[Any] = os.path.abspath(os.path.dirname(os.path.dirname(os.path.dirname(__file__))))
sys.path.append(os.path.join(git_repo_path, """utils"""))
import check_copies # noqa: E402
# This is the reference code that will be used in the tests.
# If BertLMPredictionHead is changed in modeling_bert.py, this code needs to be manually updated.
UpperCAmelCase_ : List[Any] = """ def __init__(self, config):
super().__init__()
self.transform = BertPredictionHeadTransform(config)
# The output weights are the same as the input embeddings, but there is
# an output-only bias for each token.
self.decoder = nn.Linear(config.hidden_size, config.vocab_size, bias=False)
self.bias = nn.Parameter(torch.zeros(config.vocab_size))
# Need a link between the two variables so that the bias is correctly resized with `resize_token_embeddings`
self.decoder.bias = self.bias
def forward(self, hidden_states):
hidden_states = self.transform(hidden_states)
hidden_states = self.decoder(hidden_states)
return hidden_states
"""
class lowerCAmelCase__ ( unittest.TestCase ):
'''simple docstring'''
def _SCREAMING_SNAKE_CASE ( self : int):
'''simple docstring'''
SCREAMING_SNAKE_CASE_ : List[str] = tempfile.mkdtemp()
os.makedirs(os.path.join(self.transformer_dir , '''models/bert/'''))
SCREAMING_SNAKE_CASE_ : Union[str, Any] = self.transformer_dir
shutil.copy(
os.path.join(lowercase_ , '''src/transformers/models/bert/modeling_bert.py''') , os.path.join(self.transformer_dir , '''models/bert/modeling_bert.py''') , )
def _SCREAMING_SNAKE_CASE ( self : Dict):
'''simple docstring'''
SCREAMING_SNAKE_CASE_ : List[Any] = '''src/transformers'''
shutil.rmtree(self.transformer_dir)
def _SCREAMING_SNAKE_CASE ( self : Dict , lowercase_ : Dict , lowercase_ : str , lowercase_ : int , lowercase_ : Tuple=None):
'''simple docstring'''
SCREAMING_SNAKE_CASE_ : Union[str, Any] = comment + F'\nclass {class_name}(nn.Module):\n' + class_code
if overwrite_result is not None:
SCREAMING_SNAKE_CASE_ : List[Any] = comment + F'\nclass {class_name}(nn.Module):\n' + overwrite_result
SCREAMING_SNAKE_CASE_ : List[Any] = black.Mode(target_versions={black.TargetVersion.PYaa} , line_length=119)
SCREAMING_SNAKE_CASE_ : Optional[int] = black.format_str(lowercase_ , mode=lowercase_)
SCREAMING_SNAKE_CASE_ : Any = os.path.join(self.transformer_dir , '''new_code.py''')
with open(lowercase_ , '''w''' , newline='''\n''') as f:
f.write(lowercase_)
if overwrite_result is None:
self.assertTrue(len(check_copies.is_copy_consistent(lowercase_)) == 0)
else:
check_copies.is_copy_consistent(f.name , overwrite=lowercase_)
with open(lowercase_ , '''r''') as f:
self.assertTrue(f.read() , lowercase_)
def _SCREAMING_SNAKE_CASE ( self : Optional[Any]):
'''simple docstring'''
SCREAMING_SNAKE_CASE_ : str = check_copies.find_code_in_transformers('''models.bert.modeling_bert.BertLMPredictionHead''')
self.assertEqual(lowercase_ , lowercase_)
def _SCREAMING_SNAKE_CASE ( self : Tuple):
'''simple docstring'''
self.check_copy_consistency(
'''# Copied from transformers.models.bert.modeling_bert.BertLMPredictionHead''' , '''BertLMPredictionHead''' , REFERENCE_CODE + '''\n''' , )
# With no empty line at the end
self.check_copy_consistency(
'''# Copied from transformers.models.bert.modeling_bert.BertLMPredictionHead''' , '''BertLMPredictionHead''' , lowercase_ , )
# Copy consistency with rename
self.check_copy_consistency(
'''# Copied from transformers.models.bert.modeling_bert.BertLMPredictionHead with Bert->TestModel''' , '''TestModelLMPredictionHead''' , re.sub('''Bert''' , '''TestModel''' , lowercase_) , )
# Copy consistency with a really long name
SCREAMING_SNAKE_CASE_ : Optional[Any] = '''TestModelWithAReallyLongNameBecauseSomePeopleLikeThatForSomeReason'''
self.check_copy_consistency(
F'# Copied from transformers.models.bert.modeling_bert.BertLMPredictionHead with Bert->{long_class_name}' , F'{long_class_name}LMPredictionHead' , re.sub('''Bert''' , lowercase_ , lowercase_) , )
# Copy consistency with overwrite
self.check_copy_consistency(
'''# Copied from transformers.models.bert.modeling_bert.BertLMPredictionHead with Bert->TestModel''' , '''TestModelLMPredictionHead''' , lowercase_ , overwrite_result=re.sub('''Bert''' , '''TestModel''' , lowercase_) , )
def _SCREAMING_SNAKE_CASE ( self : List[Any]):
'''simple docstring'''
SCREAMING_SNAKE_CASE_ : Any = check_copies.LOCALIZED_READMES['''README_zh-hans.md''']
SCREAMING_SNAKE_CASE_ : Any = (
'''1. **[ALBERT](https://huggingface.co/transformers/model_doc/albert.html)** (from Google Research and the'''
''' Toyota Technological Institute at Chicago) released with the paper [ALBERT: A Lite BERT for'''
''' Self-supervised Learning of Language Representations](https://arxiv.org/abs/1909.11942), by Zhenzhong'''
''' Lan, Mingda Chen, Sebastian Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut.\n1.'''
''' **[DistilBERT](https://huggingface.co/transformers/model_doc/distilbert.html)** (from HuggingFace),'''
''' released together with the paper [DistilBERT, a distilled version of BERT: smaller, faster, cheaper and'''
''' lighter](https://arxiv.org/abs/1910.01108) by Victor Sanh, Lysandre Debut and Thomas Wolf. The same'''
''' method has been applied to compress GPT2 into'''
''' [DistilGPT2](https://github.com/huggingface/transformers/tree/main/examples/distillation), RoBERTa into'''
''' [DistilRoBERTa](https://github.com/huggingface/transformers/tree/main/examples/distillation),'''
''' Multilingual BERT into'''
''' [DistilmBERT](https://github.com/huggingface/transformers/tree/main/examples/distillation) and a German'''
''' version of DistilBERT.\n1. **[ELECTRA](https://huggingface.co/transformers/model_doc/electra.html)**'''
''' (from Google Research/Stanford University) released with the paper [ELECTRA: Pre-training text encoders'''
''' as discriminators rather than generators](https://arxiv.org/abs/2003.10555) by Kevin Clark, Minh-Thang'''
''' Luong, Quoc V. Le, Christopher D. Manning.'''
)
SCREAMING_SNAKE_CASE_ : Tuple = (
'''1. **[ALBERT](https://huggingface.co/transformers/model_doc/albert.html)** (来自 Google Research and the'''
''' Toyota Technological Institute at Chicago) 伴随论文 [ALBERT: A Lite BERT for Self-supervised Learning of'''
''' Language Representations](https://arxiv.org/abs/1909.11942), 由 Zhenzhong Lan, Mingda Chen, Sebastian'''
''' Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut 发布。\n'''
)
SCREAMING_SNAKE_CASE_ : Optional[int] = (
'''1. **[ALBERT](https://huggingface.co/transformers/model_doc/albert.html)** (来自 Google Research and the'''
''' Toyota Technological Institute at Chicago) 伴随论文 [ALBERT: A Lite BERT for Self-supervised Learning of'''
''' Language Representations](https://arxiv.org/abs/1909.11942), 由 Zhenzhong Lan, Mingda Chen, Sebastian'''
''' Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut 发布。\n1.'''
''' **[DistilBERT](https://huggingface.co/transformers/model_doc/distilbert.html)** (来自 HuggingFace) 伴随论文'''
''' [DistilBERT, a distilled version of BERT: smaller, faster, cheaper and'''
''' lighter](https://arxiv.org/abs/1910.01108) 由 Victor Sanh, Lysandre Debut and Thomas Wolf 发布。 The same'''
''' method has been applied to compress GPT2 into'''
''' [DistilGPT2](https://github.com/huggingface/transformers/tree/main/examples/distillation), RoBERTa into'''
''' [DistilRoBERTa](https://github.com/huggingface/transformers/tree/main/examples/distillation),'''
''' Multilingual BERT into'''
''' [DistilmBERT](https://github.com/huggingface/transformers/tree/main/examples/distillation) and a German'''
''' version of DistilBERT.\n1. **[ELECTRA](https://huggingface.co/transformers/model_doc/electra.html)** (来自'''
''' Google Research/Stanford University) 伴随论文 [ELECTRA: Pre-training text encoders as discriminators rather'''
''' than generators](https://arxiv.org/abs/2003.10555) 由 Kevin Clark, Minh-Thang Luong, Quoc V. Le,'''
''' Christopher D. Manning 发布。\n'''
)
SCREAMING_SNAKE_CASE_ , SCREAMING_SNAKE_CASE_ : List[str] = check_copies.convert_to_localized_md(
lowercase_ , lowercase_ , localized_readme['''format_model_list'''])
self.assertFalse(lowercase_)
self.assertEqual(lowercase_ , lowercase_)
SCREAMING_SNAKE_CASE_ , SCREAMING_SNAKE_CASE_ : Optional[int] = check_copies.convert_to_localized_md(
lowercase_ , lowercase_ , localized_readme['''format_model_list'''])
# Check whether the number of models is equal to README.md after conversion.
self.assertTrue(lowercase_)
SCREAMING_SNAKE_CASE_ : Dict = (
'''1. **[ALBERT](https://huggingface.co/transformers/model_doc/albert.html)** (from Google Research and the'''
''' Toyota Technological Institute at Chicago) released with the paper [ALBERT: A Lite BERT for'''
''' Self-supervised Learning of Language Representations](https://arxiv.org/abs/1909.11942), by Zhenzhong'''
''' Lan, Mingda Chen, Sebastian Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut.'''
)
SCREAMING_SNAKE_CASE_ : Union[str, Any] = (
'''1. **[ALBERT](https://huggingface.co/transformers/main/model_doc/albert.html)** (来自 Google Research and'''
''' the Toyota Technological Institute at Chicago) 伴随论文 [ALBERT: A Lite BERT for Self-supervised Learning of'''
''' Language Representations](https://arxiv.org/abs/1909.11942), 由 Zhenzhong Lan, Mingda Chen, Sebastian'''
''' Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut 发布。\n'''
)
SCREAMING_SNAKE_CASE_ : Optional[Any] = (
'''1. **[ALBERT](https://huggingface.co/transformers/model_doc/albert.html)** (来自 Google Research and the'''
''' Toyota Technological Institute at Chicago) 伴随论文 [ALBERT: A Lite BERT for Self-supervised Learning of'''
''' Language Representations](https://arxiv.org/abs/1909.11942), 由 Zhenzhong Lan, Mingda Chen, Sebastian'''
''' Goodman, Kevin Gimpel, Piyush Sharma, Radu Soricut 发布。\n'''
)
SCREAMING_SNAKE_CASE_ , SCREAMING_SNAKE_CASE_ : List[str] = check_copies.convert_to_localized_md(
lowercase_ , lowercase_ , localized_readme['''format_model_list'''])
# Check if the model link is synchronized.
self.assertEqual(lowercase_ , lowercase_)
| 91
|
'''simple docstring'''
import argparse
import json
from pathlib import Path
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import DeiTConfig, DeiTForImageClassificationWithTeacher, DeiTImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=False ) -> str:
snake_case__ : Union[str, Any] = []
for i in range(config.num_hidden_layers ):
# encoder layers: output projection, 2 feedforward neural networks and 2 layernorms
rename_keys.append((f"blocks.{i}.norm1.weight", f"deit.encoder.layer.{i}.layernorm_before.weight") )
rename_keys.append((f"blocks.{i}.norm1.bias", f"deit.encoder.layer.{i}.layernorm_before.bias") )
rename_keys.append((f"blocks.{i}.attn.proj.weight", f"deit.encoder.layer.{i}.attention.output.dense.weight") )
rename_keys.append((f"blocks.{i}.attn.proj.bias", f"deit.encoder.layer.{i}.attention.output.dense.bias") )
rename_keys.append((f"blocks.{i}.norm2.weight", f"deit.encoder.layer.{i}.layernorm_after.weight") )
rename_keys.append((f"blocks.{i}.norm2.bias", f"deit.encoder.layer.{i}.layernorm_after.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc1.weight", f"deit.encoder.layer.{i}.intermediate.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc1.bias", f"deit.encoder.layer.{i}.intermediate.dense.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc2.weight", f"deit.encoder.layer.{i}.output.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc2.bias", f"deit.encoder.layer.{i}.output.dense.bias") )
# projection layer + position embeddings
rename_keys.extend(
[
("""cls_token""", """deit.embeddings.cls_token"""),
("""dist_token""", """deit.embeddings.distillation_token"""),
("""patch_embed.proj.weight""", """deit.embeddings.patch_embeddings.projection.weight"""),
("""patch_embed.proj.bias""", """deit.embeddings.patch_embeddings.projection.bias"""),
("""pos_embed""", """deit.embeddings.position_embeddings"""),
] )
if base_model:
# layernorm + pooler
rename_keys.extend(
[
("""norm.weight""", """layernorm.weight"""),
("""norm.bias""", """layernorm.bias"""),
("""pre_logits.fc.weight""", """pooler.dense.weight"""),
("""pre_logits.fc.bias""", """pooler.dense.bias"""),
] )
# if just the base model, we should remove "deit" from all keys that start with "deit"
snake_case__ : List[Any] = [(pair[0], pair[1][4:]) if pair[1].startswith("""deit""" ) else pair for pair in rename_keys]
else:
# layernorm + classification heads
rename_keys.extend(
[
("""norm.weight""", """deit.layernorm.weight"""),
("""norm.bias""", """deit.layernorm.bias"""),
("""head.weight""", """cls_classifier.weight"""),
("""head.bias""", """cls_classifier.bias"""),
("""head_dist.weight""", """distillation_classifier.weight"""),
("""head_dist.bias""", """distillation_classifier.bias"""),
] )
return rename_keys
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> Union[str, Any]:
for i in range(config.num_hidden_layers ):
if base_model:
snake_case__ : Tuple = """"""
else:
snake_case__ : Dict = """deit."""
# read in weights + bias of input projection layer (in timm, this is a single matrix + bias)
snake_case__ : Optional[Any] = state_dict.pop(f"blocks.{i}.attn.qkv.weight" )
snake_case__ : Tuple = state_dict.pop(f"blocks.{i}.attn.qkv.bias" )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[
: config.hidden_size, :
]
snake_case__ : Optional[int] = in_proj_bias[: config.hidden_size]
snake_case__ : Any = in_proj_weight[
config.hidden_size : config.hidden_size * 2, :
]
snake_case__ : str = in_proj_bias[
config.hidden_size : config.hidden_size * 2
]
snake_case__ : List[str] = in_proj_weight[
-config.hidden_size :, :
]
snake_case__ : Tuple = in_proj_bias[-config.hidden_size :]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : str = dct.pop(_lowerCAmelCase )
snake_case__ : Tuple = val
def __snake_case( ) -> Tuple:
snake_case__ : Union[str, Any] = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Optional[int] = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
return im
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> str:
snake_case__ : Optional[int] = DeiTConfig()
# all deit models have fine-tuned heads
snake_case__ : Union[str, Any] = False
# dataset (fine-tuned on ImageNet 2012), patch_size and image_size
snake_case__ : int = 1_000
snake_case__ : Any = """huggingface/label-files"""
snake_case__ : Optional[Any] = """imagenet-1k-id2label.json"""
snake_case__ : Tuple = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : List[Any] = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : List[Any] = idalabel
snake_case__ : List[str] = {v: k for k, v in idalabel.items()}
snake_case__ : Tuple = int(deit_name[-6:-4] )
snake_case__ : Optional[Any] = int(deit_name[-3:] )
# size of the architecture
if deit_name[9:].startswith("""tiny""" ):
snake_case__ : Tuple = 192
snake_case__ : Union[str, Any] = 768
snake_case__ : Tuple = 12
snake_case__ : Union[str, Any] = 3
elif deit_name[9:].startswith("""small""" ):
snake_case__ : str = 384
snake_case__ : Any = 1_536
snake_case__ : str = 12
snake_case__ : int = 6
if deit_name[9:].startswith("""base""" ):
pass
elif deit_name[4:].startswith("""large""" ):
snake_case__ : Union[str, Any] = 1_024
snake_case__ : Any = 4_096
snake_case__ : List[Any] = 24
snake_case__ : Tuple = 16
# load original model from timm
snake_case__ : List[Any] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
# load state_dict of original model, remove and rename some keys
snake_case__ : Optional[Any] = timm_model.state_dict()
snake_case__ : Optional[int] = create_rename_keys(_lowerCAmelCase , _lowerCAmelCase )
for src, dest in rename_keys:
rename_key(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
read_in_q_k_v(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
# load HuggingFace model
snake_case__ : Optional[Any] = DeiTForImageClassificationWithTeacher(_lowerCAmelCase ).eval()
model.load_state_dict(_lowerCAmelCase )
# Check outputs on an image, prepared by DeiTImageProcessor
snake_case__ : List[Any] = int(
(256 / 224) * config.image_size ) # to maintain same ratio w.r.t. 224 images, see https://github.com/facebookresearch/deit/blob/ab5715372db8c6cad5740714b2216d55aeae052e/datasets.py#L103
snake_case__ : Optional[Any] = DeiTImageProcessor(size=_lowerCAmelCase , crop_size=config.image_size )
snake_case__ : str = image_processor(images=prepare_img() , return_tensors="""pt""" )
snake_case__ : Optional[Any] = encoding["""pixel_values"""]
snake_case__ : Tuple = model(_lowerCAmelCase )
snake_case__ : Optional[int] = timm_model(_lowerCAmelCase )
assert timm_logits.shape == outputs.logits.shape
assert torch.allclose(_lowerCAmelCase , outputs.logits , atol=1e-3 )
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
print(f"Saving model {deit_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--deit_name",
default="vit_deit_base_distilled_patch16_224",
type=str,
help="Name of the DeiT timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_deit_checkpoint(args.deit_name, args.pytorch_dump_folder_path)
| 35
| 0
|
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_tf_available,
is_torch_available,
is_vision_available,
)
UpperCamelCase__ = {"""configuration_deit""": ["""DEIT_PRETRAINED_CONFIG_ARCHIVE_MAP""", """DeiTConfig""", """DeiTOnnxConfig"""]}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCamelCase__ = ["""DeiTFeatureExtractor"""]
UpperCamelCase__ = ["""DeiTImageProcessor"""]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCamelCase__ = [
"""DEIT_PRETRAINED_MODEL_ARCHIVE_LIST""",
"""DeiTForImageClassification""",
"""DeiTForImageClassificationWithTeacher""",
"""DeiTForMaskedImageModeling""",
"""DeiTModel""",
"""DeiTPreTrainedModel""",
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCamelCase__ = [
"""TF_DEIT_PRETRAINED_MODEL_ARCHIVE_LIST""",
"""TFDeiTForImageClassification""",
"""TFDeiTForImageClassificationWithTeacher""",
"""TFDeiTForMaskedImageModeling""",
"""TFDeiTModel""",
"""TFDeiTPreTrainedModel""",
]
if TYPE_CHECKING:
from .configuration_deit import DEIT_PRETRAINED_CONFIG_ARCHIVE_MAP, DeiTConfig, DeiTOnnxConfig
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .feature_extraction_deit import DeiTFeatureExtractor
from .image_processing_deit import DeiTImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_deit import (
DEIT_PRETRAINED_MODEL_ARCHIVE_LIST,
DeiTForImageClassification,
DeiTForImageClassificationWithTeacher,
DeiTForMaskedImageModeling,
DeiTModel,
DeiTPreTrainedModel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_deit import (
TF_DEIT_PRETRAINED_MODEL_ARCHIVE_LIST,
TFDeiTForImageClassification,
TFDeiTForImageClassificationWithTeacher,
TFDeiTForMaskedImageModeling,
TFDeiTModel,
TFDeiTPreTrainedModel,
)
else:
import sys
UpperCamelCase__ = _LazyModule(__name__, globals()["""__file__"""], _import_structure, module_spec=__spec__)
| 92
|
'''simple docstring'''
import string
from math import logaa
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : List[str] = document.translate(
str.maketrans("""""" , """""" , string.punctuation ) ).replace("""\n""" , """""" )
snake_case__ : List[str] = document_without_punctuation.split(""" """ ) # word tokenization
return len([word for word in tokenize_document if word.lower() == term.lower()] )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> tuple[int, int]:
snake_case__ : Dict = corpus.lower().translate(
str.maketrans("""""" , """""" , string.punctuation ) ) # strip all punctuation and replace it with ''
snake_case__ : Any = corpus_without_punctuation.split("""\n""" )
snake_case__ : int = term.lower()
return (len([doc for doc in docs if term in doc] ), len(_lowerCAmelCase ))
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> float:
if smoothing:
if n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(1 + logaa(n / (1 + df) ) , 3 )
if df == 0:
raise ZeroDivisionError("""df must be > 0""" )
elif n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(logaa(n / df ) , 3 )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> float:
return round(tf * idf , 3 )
| 35
| 0
|
'''simple docstring'''
def snake_case_ ( __SCREAMING_SNAKE_CASE : str , __SCREAMING_SNAKE_CASE : int ):
"""simple docstring"""
return [sentence[i : i + ngram_size] for i in range(len(__SCREAMING_SNAKE_CASE ) - ngram_size + 1 )]
if __name__ == "__main__":
from doctest import testmod
testmod()
| 93
|
'''simple docstring'''
from __future__ import annotations
import inspect
import unittest
import numpy as np
from transformers import ResNetConfig
from transformers.testing_utils import require_tf, require_vision, slow
from transformers.utils import cached_property, is_tf_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_tf_common import TFModelTesterMixin, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_tf_available():
import tensorflow as tf
from transformers import TFResNetForImageClassification, TFResNetModel
from transformers.models.resnet.modeling_tf_resnet import TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class UpperCAmelCase_ :
"""simple docstring"""
def __init__( self : int , snake_case_ : Tuple , snake_case_ : List[str]=3 , snake_case_ : Tuple=32 , snake_case_ : List[Any]=3 , snake_case_ : List[str]=10 , snake_case_ : List[str]=[10, 20, 30, 40] , snake_case_ : Tuple=[1, 1, 2, 1] , snake_case_ : Tuple=True , snake_case_ : str=True , snake_case_ : int="relu" , snake_case_ : List[Any]=3 , snake_case_ : str=None , ):
snake_case__ : List[Any] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : int = image_size
snake_case__ : List[Any] = num_channels
snake_case__ : Optional[Any] = embeddings_size
snake_case__ : Optional[int] = hidden_sizes
snake_case__ : Tuple = depths
snake_case__ : Any = is_training
snake_case__ : Optional[int] = use_labels
snake_case__ : Optional[int] = hidden_act
snake_case__ : Optional[int] = num_labels
snake_case__ : int = scope
snake_case__ : Tuple = len(snake_case_ )
def lowerCamelCase ( self : Any ):
snake_case__ : Union[str, Any] = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : Union[str, Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size] , self.num_labels )
snake_case__ : List[str] = self.get_config()
return config, pixel_values, labels
def lowerCamelCase ( self : int ):
return ResNetConfig(
num_channels=self.num_channels , embeddings_size=self.embeddings_size , hidden_sizes=self.hidden_sizes , depths=self.depths , hidden_act=self.hidden_act , num_labels=self.num_labels , image_size=self.image_size , )
def lowerCamelCase ( self : Tuple , snake_case_ : Tuple , snake_case_ : List[Any] , snake_case_ : Optional[int] ):
snake_case__ : Optional[Any] = TFResNetModel(config=snake_case_ )
snake_case__ : int = model(snake_case_ )
# expected last hidden states: B, C, H // 32, W // 32
self.parent.assertEqual(
result.last_hidden_state.shape , (self.batch_size, self.hidden_sizes[-1], self.image_size // 32, self.image_size // 32) , )
def lowerCamelCase ( self : List[str] , snake_case_ : List[str] , snake_case_ : str , snake_case_ : Union[str, Any] ):
snake_case__ : str = self.num_labels
snake_case__ : Optional[int] = TFResNetForImageClassification(snake_case_ )
snake_case__ : Tuple = model(snake_case_ , labels=snake_case_ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) )
def lowerCamelCase ( self : Tuple ):
snake_case__ : List[Any] = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : str = config_and_inputs
snake_case__ : int = {"""pixel_values""": pixel_values}
return config, inputs_dict
@require_tf
class UpperCAmelCase_ ( _a , _a , unittest.TestCase ):
"""simple docstring"""
lowercase = (TFResNetModel, TFResNetForImageClassification) if is_tf_available() else ()
lowercase = (
{"feature-extraction": TFResNetModel, "image-classification": TFResNetForImageClassification}
if is_tf_available()
else {}
)
lowercase = False
lowercase = False
lowercase = False
lowercase = False
lowercase = False
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Tuple = TFResNetModelTester(self )
snake_case__ : List[str] = ConfigTester(self , config_class=snake_case_ , has_text_modality=snake_case_ )
def lowerCamelCase ( self : Dict ):
self.create_and_test_config_common_properties()
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowerCamelCase ( self : str ):
return
@unittest.skip(reason="""ResNet does not use inputs_embeds""" )
def lowerCamelCase ( self : int ):
pass
@unittest.skip(reason="""ResNet does not support input and output embeddings""" )
def lowerCamelCase ( self : List[Any] ):
pass
def lowerCamelCase ( self : List[Any] ):
snake_case__ , snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Dict = model_class(snake_case_ )
snake_case__ : Optional[Any] = inspect.signature(model.call )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Union[str, Any] = [*signature.parameters.keys()]
snake_case__ : Optional[int] = ["""pixel_values"""]
self.assertListEqual(arg_names[:1] , snake_case_ )
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*snake_case_ )
def lowerCamelCase ( self : List[str] ):
def check_hidden_states_output(snake_case_ : Any , snake_case_ : Any , snake_case_ : List[str] ):
snake_case__ : List[Any] = model_class(snake_case_ )
snake_case__ : Dict = model(**self._prepare_for_class(snake_case_ , snake_case_ ) )
snake_case__ : str = outputs.encoder_hidden_states if config.is_encoder_decoder else outputs.hidden_states
snake_case__ : List[Any] = self.model_tester.num_stages
self.assertEqual(len(snake_case_ ) , expected_num_stages + 1 )
# ResNet's feature maps are of shape (batch_size, num_channels, height, width)
self.assertListEqual(
list(hidden_states[0].shape[-2:] ) , [self.model_tester.image_size // 4, self.model_tester.image_size // 4] , )
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = ["""basic""", """bottleneck"""]
for model_class in self.all_model_classes:
for layer_type in layers_type:
snake_case__ : Dict = layer_type
snake_case__ : Optional[int] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[Any] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Tuple = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*snake_case_ )
@slow
def lowerCamelCase ( self : Optional[Any] ):
for model_name in TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : str = TFResNetModel.from_pretrained(snake_case_ )
self.assertIsNotNone(snake_case_ )
def __snake_case( ) -> Optional[int]:
snake_case__ : Optional[Any] = Image.open("""./tests/fixtures/tests_samples/COCO/000000039769.png""" )
return image
@require_tf
@require_vision
class UpperCAmelCase_ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowerCamelCase ( self : List[Any] ):
return (
AutoImageProcessor.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
if is_vision_available()
else None
)
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : List[str] = TFResNetForImageClassification.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
snake_case__ : List[Any] = self.default_image_processor
snake_case__ : List[Any] = prepare_img()
snake_case__ : List[str] = image_processor(images=snake_case_ , return_tensors="""tf""" )
# forward pass
snake_case__ : Optional[Any] = model(**snake_case_ )
# verify the logits
snake_case__ : Union[str, Any] = tf.TensorShape((1, 1_000) )
self.assertEqual(outputs.logits.shape , snake_case_ )
snake_case__ : List[str] = tf.constant([-11.1069, -9.7877, -8.3777] )
self.assertTrue(np.allclose(outputs.logits[0, :3].numpy() , snake_case_ , atol=1E-4 ) )
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def __lowerCamelCase ( UpperCAmelCase_ : str = "The quick brown fox jumps over the lazy dog" , ):
"""simple docstring"""
a :Any = set()
# Replace all the whitespace in our sentence
a :str = input_str.replace(''' ''' , '''''' )
for alpha in input_str:
if "a" <= alpha.lower() <= "z":
frequency.add(alpha.lower() )
return len(UpperCAmelCase_ ) == 26
def __lowerCamelCase ( UpperCAmelCase_ : str = "The quick brown fox jumps over the lazy dog" , ):
"""simple docstring"""
a :str = [False] * 26
for char in input_str:
if char.islower():
a :int = True
elif char.isupper():
a :List[str] = True
return all(UpperCAmelCase_ )
def __lowerCamelCase ( UpperCAmelCase_ : str = "The quick brown fox jumps over the lazy dog" , ):
"""simple docstring"""
return len({char for char in input_str.lower() if char.isalpha()} ) == 26
def __lowerCamelCase ( ):
"""simple docstring"""
from timeit import timeit
a :str = '''from __main__ import is_pangram, is_pangram_faster, is_pangram_fastest'''
print(timeit('''is_pangram()''' , setup=UpperCAmelCase_ ) )
print(timeit('''is_pangram_faster()''' , setup=UpperCAmelCase_ ) )
print(timeit('''is_pangram_fastest()''' , setup=UpperCAmelCase_ ) )
# 5.348480500048026, 2.6477354579837993, 1.8470395830227062
# 5.036091582966037, 2.644472333951853, 1.8869528750656173
if __name__ == "__main__":
import doctest
doctest.testmod()
benchmark()
| 94
|
'''simple docstring'''
from ...configuration_utils import PretrainedConfig
from ...utils import logging
__a = logging.get_logger(__name__)
__a = {
"vinvino02/glpn-kitti": "https://huggingface.co/vinvino02/glpn-kitti/resolve/main/config.json",
# See all GLPN models at https://huggingface.co/models?filter=glpn
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = "glpn"
def __init__( self : Optional[Any] , snake_case_ : List[str]=3 , snake_case_ : Dict=4 , snake_case_ : List[Any]=[2, 2, 2, 2] , snake_case_ : int=[8, 4, 2, 1] , snake_case_ : List[str]=[32, 64, 160, 256] , snake_case_ : Tuple=[7, 3, 3, 3] , snake_case_ : List[Any]=[4, 2, 2, 2] , snake_case_ : Tuple=[1, 2, 5, 8] , snake_case_ : List[str]=[4, 4, 4, 4] , snake_case_ : Optional[int]="gelu" , snake_case_ : Dict=0.0 , snake_case_ : Union[str, Any]=0.0 , snake_case_ : List[Any]=0.02 , snake_case_ : Tuple=0.1 , snake_case_ : Any=1E-6 , snake_case_ : Dict=64 , snake_case_ : Tuple=10 , snake_case_ : List[Any]=-1 , **snake_case_ : Optional[Any] , ):
super().__init__(**snake_case_ )
snake_case__ : Optional[Any] = num_channels
snake_case__ : Dict = num_encoder_blocks
snake_case__ : Tuple = depths
snake_case__ : Union[str, Any] = sr_ratios
snake_case__ : Tuple = hidden_sizes
snake_case__ : Optional[Any] = patch_sizes
snake_case__ : int = strides
snake_case__ : List[Any] = mlp_ratios
snake_case__ : Optional[int] = num_attention_heads
snake_case__ : Dict = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : Optional[Any] = attention_probs_dropout_prob
snake_case__ : str = initializer_range
snake_case__ : List[str] = drop_path_rate
snake_case__ : int = layer_norm_eps
snake_case__ : Tuple = decoder_hidden_size
snake_case__ : List[Any] = max_depth
snake_case__ : Dict = head_in_index
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import gc
import unittest
import numpy as np
import torch
from transformers import CLIPTextConfig, CLIPTextModel, CLIPTokenizer
from diffusers import TransformeraDModel, VQDiffusionPipeline, VQDiffusionScheduler, VQModel
from diffusers.pipelines.vq_diffusion.pipeline_vq_diffusion import LearnedClassifierFreeSamplingEmbeddings
from diffusers.utils import load_numpy, slow, torch_device
from diffusers.utils.testing_utils import require_torch_gpu
UpperCAmelCase : Any = False
class __lowerCAmelCase ( unittest.TestCase):
def _lowercase ( self ) -> str:
'''simple docstring'''
super().tearDown()
gc.collect()
torch.cuda.empty_cache()
@property
def _lowercase ( self ) -> Optional[int]:
'''simple docstring'''
return 1_2
@property
def _lowercase ( self ) -> str:
'''simple docstring'''
return 1_2
@property
def _lowercase ( self ) -> List[Any]:
'''simple docstring'''
return 3_2
@property
def _lowercase ( self ) -> Any:
'''simple docstring'''
torch.manual_seed(0 )
a__ : Dict =VQModel(
block_out_channels=[3_2, 6_4] , in_channels=3 , out_channels=3 , down_block_types=["DownEncoderBlock2D", "DownEncoderBlock2D"] , up_block_types=["UpDecoderBlock2D", "UpDecoderBlock2D"] , latent_channels=3 , num_vq_embeddings=self.num_embed , vq_embed_dim=3 , )
return model
@property
def _lowercase ( self ) -> Optional[Any]:
'''simple docstring'''
a__ : List[Any] =CLIPTokenizer.from_pretrained("hf-internal-testing/tiny-random-clip" )
return tokenizer
@property
def _lowercase ( self ) -> Dict:
'''simple docstring'''
torch.manual_seed(0 )
a__ : Union[str, Any] =CLIPTextConfig(
bos_token_id=0 , eos_token_id=2 , hidden_size=self.text_embedder_hidden_size , intermediate_size=3_7 , layer_norm_eps=1E-05 , num_attention_heads=4 , num_hidden_layers=5 , pad_token_id=1 , vocab_size=1_0_0_0 , )
return CLIPTextModel(lowerCAmelCase__ )
@property
def _lowercase ( self ) -> int:
'''simple docstring'''
torch.manual_seed(0 )
a__ : str =1_2
a__ : List[str] =1_2
a__ : List[Any] ={
"attention_bias": True,
"cross_attention_dim": 3_2,
"attention_head_dim": height * width,
"num_attention_heads": 1,
"num_vector_embeds": self.num_embed,
"num_embeds_ada_norm": self.num_embeds_ada_norm,
"norm_num_groups": 3_2,
"sample_size": width,
"activation_fn": "geglu-approximate",
}
a__ : List[str] =TransformeraDModel(**lowerCAmelCase__ )
return model
def _lowercase ( self ) -> Tuple:
'''simple docstring'''
a__ : Optional[int] ="cpu"
a__ : int =self.dummy_vqvae
a__ : Union[str, Any] =self.dummy_text_encoder
a__ : List[Any] =self.dummy_tokenizer
a__ : Optional[int] =self.dummy_transformer
a__ : Tuple =VQDiffusionScheduler(self.num_embed )
a__ : int =LearnedClassifierFreeSamplingEmbeddings(learnable=lowerCAmelCase__ )
a__ : Any =VQDiffusionPipeline(
vqvae=lowerCAmelCase__ , text_encoder=lowerCAmelCase__ , tokenizer=lowerCAmelCase__ , transformer=lowerCAmelCase__ , scheduler=lowerCAmelCase__ , learned_classifier_free_sampling_embeddings=lowerCAmelCase__ , )
a__ : str =pipe.to(lowerCAmelCase__ )
pipe.set_progress_bar_config(disable=lowerCAmelCase__ )
a__ : int ="teddy bear playing in the pool"
a__ : int =torch.Generator(device=lowerCAmelCase__ ).manual_seed(0 )
a__ : Union[str, Any] =pipe([prompt] , generator=lowerCAmelCase__ , num_inference_steps=2 , output_type="np" )
a__ : Union[str, Any] =output.images
a__ : List[str] =torch.Generator(device=lowerCAmelCase__ ).manual_seed(0 )
a__ : Optional[Any] =pipe(
[prompt] , generator=lowerCAmelCase__ , output_type="np" , return_dict=lowerCAmelCase__ , num_inference_steps=2 )[0]
a__ : Dict =image[0, -3:, -3:, -1]
a__ : Tuple =image_from_tuple[0, -3:, -3:, -1]
assert image.shape == (1, 2_4, 2_4, 3)
a__ : Dict =np.array([0.65_51, 0.61_68, 0.50_08, 0.56_76, 0.56_59, 0.42_95, 0.60_73, 0.55_99, 0.49_92] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 1E-2
assert np.abs(image_from_tuple_slice.flatten() - expected_slice ).max() < 1E-2
def _lowercase ( self ) -> Optional[Any]:
'''simple docstring'''
a__ : Any ="cpu"
a__ : str =self.dummy_vqvae
a__ : str =self.dummy_text_encoder
a__ : Any =self.dummy_tokenizer
a__ : Union[str, Any] =self.dummy_transformer
a__ : str =VQDiffusionScheduler(self.num_embed )
a__ : Tuple =LearnedClassifierFreeSamplingEmbeddings(
learnable=lowerCAmelCase__ , hidden_size=self.text_embedder_hidden_size , length=tokenizer.model_max_length )
a__ : List[str] =VQDiffusionPipeline(
vqvae=lowerCAmelCase__ , text_encoder=lowerCAmelCase__ , tokenizer=lowerCAmelCase__ , transformer=lowerCAmelCase__ , scheduler=lowerCAmelCase__ , learned_classifier_free_sampling_embeddings=lowerCAmelCase__ , )
a__ : str =pipe.to(lowerCAmelCase__ )
pipe.set_progress_bar_config(disable=lowerCAmelCase__ )
a__ : Optional[Any] ="teddy bear playing in the pool"
a__ : Tuple =torch.Generator(device=lowerCAmelCase__ ).manual_seed(0 )
a__ : int =pipe([prompt] , generator=lowerCAmelCase__ , num_inference_steps=2 , output_type="np" )
a__ : Any =output.images
a__ : str =torch.Generator(device=lowerCAmelCase__ ).manual_seed(0 )
a__ : List[str] =pipe(
[prompt] , generator=lowerCAmelCase__ , output_type="np" , return_dict=lowerCAmelCase__ , num_inference_steps=2 )[0]
a__ : List[str] =image[0, -3:, -3:, -1]
a__ : Optional[Any] =image_from_tuple[0, -3:, -3:, -1]
assert image.shape == (1, 2_4, 2_4, 3)
a__ : Any =np.array([0.66_93, 0.60_75, 0.49_59, 0.57_01, 0.55_83, 0.43_33, 0.61_71, 0.56_84, 0.49_88] )
assert np.abs(image_slice.flatten() - expected_slice ).max() < 2.0
assert np.abs(image_from_tuple_slice.flatten() - expected_slice ).max() < 1E-2
@slow
@require_torch_gpu
class __lowerCAmelCase ( unittest.TestCase):
def _lowercase ( self ) -> Optional[Any]:
'''simple docstring'''
super().tearDown()
gc.collect()
torch.cuda.empty_cache()
def _lowercase ( self ) -> Dict:
'''simple docstring'''
a__ : Union[str, Any] =load_numpy(
"https://huggingface.co/datasets/hf-internal-testing/diffusers-images/resolve/main"
"/vq_diffusion/teddy_bear_pool_classifier_free_sampling.npy" )
a__ : Tuple =VQDiffusionPipeline.from_pretrained("microsoft/vq-diffusion-ithq" )
a__ : Optional[int] =pipeline.to(lowerCAmelCase__ )
pipeline.set_progress_bar_config(disable=lowerCAmelCase__ )
# requires GPU generator for gumbel softmax
# don't use GPU generator in tests though
a__ : Tuple =torch.Generator(device=lowerCAmelCase__ ).manual_seed(0 )
a__ : List[str] =pipeline(
"teddy bear playing in the pool" , num_images_per_prompt=1 , generator=lowerCAmelCase__ , output_type="np" , )
a__ : int =output.images[0]
assert image.shape == (2_5_6, 2_5_6, 3)
assert np.abs(expected_image - image ).max() < 2.0
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|
'''simple docstring'''
import json
from typing import List, Optional, Tuple
from tokenizers import normalizers
from tokenizers.pre_tokenizers import BertPreTokenizer, PreTokenizer
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_roformer import RoFormerTokenizer
from .tokenization_utils import JiebaPreTokenizer
__a = logging.get_logger(__name__)
__a = {"vocab_file": "vocab.txt", "tokenizer_file": "tokenizer.json"}
__a = {
"vocab_file": {
"junnyu/roformer_chinese_small": "https://huggingface.co/junnyu/roformer_chinese_small/resolve/main/vocab.txt",
"junnyu/roformer_chinese_base": "https://huggingface.co/junnyu/roformer_chinese_base/resolve/main/vocab.txt",
"junnyu/roformer_chinese_char_small": (
"https://huggingface.co/junnyu/roformer_chinese_char_small/resolve/main/vocab.txt"
),
"junnyu/roformer_chinese_char_base": (
"https://huggingface.co/junnyu/roformer_chinese_char_base/resolve/main/vocab.txt"
),
"junnyu/roformer_small_discriminator": (
"https://huggingface.co/junnyu/roformer_small_discriminator/resolve/main/vocab.txt"
),
"junnyu/roformer_small_generator": (
"https://huggingface.co/junnyu/roformer_small_generator/resolve/main/vocab.txt"
),
}
}
__a = {
"junnyu/roformer_chinese_small": 1536,
"junnyu/roformer_chinese_base": 1536,
"junnyu/roformer_chinese_char_small": 512,
"junnyu/roformer_chinese_char_base": 512,
"junnyu/roformer_small_discriminator": 128,
"junnyu/roformer_small_generator": 128,
}
__a = {
"junnyu/roformer_chinese_small": {"do_lower_case": True},
"junnyu/roformer_chinese_base": {"do_lower_case": True},
"junnyu/roformer_chinese_char_small": {"do_lower_case": True},
"junnyu/roformer_chinese_char_base": {"do_lower_case": True},
"junnyu/roformer_small_discriminator": {"do_lower_case": True},
"junnyu/roformer_small_generator": {"do_lower_case": True},
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = VOCAB_FILES_NAMES
lowercase = PRETRAINED_VOCAB_FILES_MAP
lowercase = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
lowercase = PRETRAINED_INIT_CONFIGURATION
lowercase = RoFormerTokenizer
def __init__( self : List[Any] , snake_case_ : List[str]=None , snake_case_ : Dict=None , snake_case_ : Any=True , snake_case_ : str="[UNK]" , snake_case_ : List[str]="[SEP]" , snake_case_ : Optional[Any]="[PAD]" , snake_case_ : Union[str, Any]="[CLS]" , snake_case_ : Union[str, Any]="[MASK]" , snake_case_ : List[Any]=True , snake_case_ : Optional[Any]=None , **snake_case_ : Tuple , ):
super().__init__(
snake_case_ , tokenizer_file=snake_case_ , do_lower_case=snake_case_ , unk_token=snake_case_ , sep_token=snake_case_ , pad_token=snake_case_ , cls_token=snake_case_ , mask_token=snake_case_ , tokenize_chinese_chars=snake_case_ , strip_accents=snake_case_ , **snake_case_ , )
snake_case__ : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() )
if (
pre_tok_state.get("""lowercase""" , snake_case_ ) != do_lower_case
or pre_tok_state.get("""strip_accents""" , snake_case_ ) != strip_accents
):
snake_case__ : str = getattr(snake_case_ , pre_tok_state.pop("""type""" ) )
snake_case__ : Optional[int] = do_lower_case
snake_case__ : Union[str, Any] = strip_accents
snake_case__ : Union[str, Any] = pre_tok_class(**snake_case_ )
snake_case__ : str = do_lower_case
def __getstate__( self : int ):
snake_case__ : List[Any] = self.__dict__.copy()
snake_case__ : str = BertPreTokenizer()
return state
def __setstate__( self : Dict , snake_case_ : Dict ):
snake_case__ : List[Any] = d
snake_case__ : Union[str, Any] = self.__dict__["""_tokenizer"""].get_vocab()
snake_case__ : List[Any] = PreTokenizer.custom(JiebaPreTokenizer(snake_case_ ) )
def lowerCamelCase ( self : str , snake_case_ : Optional[Any] , snake_case_ : List[str]=None ):
snake_case__ : str = [self.cls_token_id] + token_ids_a + [self.sep_token_id]
if token_ids_a:
output += token_ids_a + [self.sep_token_id]
return output
def lowerCamelCase ( self : str , snake_case_ : List[int] , snake_case_ : Optional[List[int]] = None ):
snake_case__ : int = [self.sep_token_id]
snake_case__ : str = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowerCamelCase ( self : Dict , snake_case_ : str , snake_case_ : Optional[str] = None ):
snake_case__ : Union[str, Any] = self._tokenizer.model.save(snake_case_ , name=snake_case_ )
return tuple(snake_case_ )
def lowerCamelCase ( self : Dict , snake_case_ : List[str] , snake_case_ : Tuple=None , snake_case_ : List[str]=None , snake_case_ : Union[str, Any]=False , **snake_case_ : Tuple , ):
snake_case__ : Optional[Any] = BertPreTokenizer()
return super().save_pretrained(snake_case_ , snake_case_ , snake_case_ , snake_case_ , **snake_case_ )
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"""simple docstring"""
from dataclasses import dataclass, field
from typing import Tuple
from ..utils import cached_property, is_tf_available, logging, requires_backends
from .benchmark_args_utils import BenchmarkArguments
if is_tf_available():
import tensorflow as tf
lowercase__ = logging.get_logger(__name__)
@dataclass
class lowerCAmelCase__ ( lowercase ):
'''simple docstring'''
lowerCamelCase__ = [
"""no_inference""",
"""no_cuda""",
"""no_tpu""",
"""no_speed""",
"""no_memory""",
"""no_env_print""",
"""no_multi_process""",
]
def __init__( self , **lowercase ):
for deprecated_arg in self.deprecated_args:
if deprecated_arg in kwargs:
_lowerCamelCase : Any = deprecated_arg[3:]
_lowerCamelCase : int = not kwargs.pop(lowercase )
logger.warning(
F'''{deprecated_arg} is depreciated. Please use --no-{positive_arg} or'''
F''' {positive_arg}={kwargs[positive_arg]}''' )
_lowerCamelCase : Any = kwargs.pop('tpu_name' , self.tpu_name )
_lowerCamelCase : Dict = kwargs.pop('device_idx' , self.device_idx )
_lowerCamelCase : int = kwargs.pop('eager_mode' , self.eager_mode )
_lowerCamelCase : List[str] = kwargs.pop('use_xla' , self.use_xla )
super().__init__(**lowercase )
lowerCamelCase__ = field(
default=lowercase, metadata={"""help""": """Name of TPU"""}, )
lowerCamelCase__ = field(
default=0, metadata={"""help""": """CPU / GPU device index. Defaults to 0."""}, )
lowerCamelCase__ = field(default=lowercase, metadata={"""help""": """Benchmark models in eager model."""} )
lowerCamelCase__ = field(
default=lowercase, metadata={
"""help""": """Benchmark models using XLA JIT compilation. Note that `eager_model` has to be set to `False`."""
}, )
@cached_property
def A_ ( self ):
requires_backends(self , ['tf'] )
_lowerCamelCase : int = None
if self.tpu:
try:
if self.tpu_name:
_lowerCamelCase : List[Any] = tf.distribute.cluster_resolver.TPUClusterResolver(self.tpu_name )
else:
_lowerCamelCase : str = tf.distribute.cluster_resolver.TPUClusterResolver()
except ValueError:
_lowerCamelCase : List[str] = None
return tpu
@cached_property
def A_ ( self ):
requires_backends(self , ['tf'] )
if self.is_tpu:
tf.config.experimental_connect_to_cluster(self._setup_tpu )
tf.tpu.experimental.initialize_tpu_system(self._setup_tpu )
_lowerCamelCase : Any = tf.distribute.TPUStrategy(self._setup_tpu )
else:
# currently no multi gpu is allowed
if self.is_gpu:
# TODO: Currently only single GPU is supported
tf.config.set_visible_devices(self.gpu_list[self.device_idx] , 'GPU' )
_lowerCamelCase : Dict = tf.distribute.OneDeviceStrategy(device=F'''/gpu:{self.device_idx}''' )
else:
tf.config.set_visible_devices([] , 'GPU' ) # disable GPU
_lowerCamelCase : int = tf.distribute.OneDeviceStrategy(device=F'''/cpu:{self.device_idx}''' )
return strategy
@property
def A_ ( self ):
requires_backends(self , ['tf'] )
return self._setup_tpu is not None
@property
def A_ ( self ):
requires_backends(self , ['tf'] )
return self._setup_strategy
@property
def A_ ( self ):
requires_backends(self , ['tf'] )
return tf.config.list_physical_devices('GPU' )
@property
def A_ ( self ):
requires_backends(self , ['tf'] )
if self.cuda:
return len(self.gpu_list )
return 0
@property
def A_ ( self ):
return self.n_gpu > 0
| 96
|
'''simple docstring'''
import os
import time
import pytest
from datasets.utils.filelock import FileLock, Timeout
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : int = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : Dict = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : List[str] = 0.01
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
snake_case__ : str = time.time()
locka.acquire(_lowerCAmelCase )
assert time.time() - _start > timeout
def __snake_case( _lowerCAmelCase ) -> Tuple:
snake_case__ : Dict = """a""" * 1_000 + """.lock"""
snake_case__ : int = FileLock(str(tmpdir / filename ) )
assert locka._lock_file.endswith(""".lock""" )
assert not locka._lock_file.endswith(_lowerCAmelCase )
assert len(os.path.basename(locka._lock_file ) ) <= 255
snake_case__ : Dict = FileLock(tmpdir / filename )
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
locka.acquire(0 )
| 35
| 0
|
'''simple docstring'''
import re
def a ( __a ) -> str:
'''simple docstring'''
if len(re.findall('''[ATCG]''' , __a ) ) != len(__a ):
raise ValueError('''Invalid Strand''' )
return dna.translate(dna.maketrans('''ATCG''' , '''TAGC''' ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 97
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> float:
snake_case__ : str = (num_of_terms / 2) * (2 * first_term + (num_of_terms - 1) * common_diff)
# formula for sum of series
return total
def __snake_case( ) -> List[str]:
print(sum_of_series(1 , 1 , 10 ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 35
| 0
|
"""simple docstring"""
def a_ ( lowerCamelCase , lowerCamelCase , lowerCamelCase ):
return not any(
neighbour == 1 and colored_vertices[i] == color
for i, neighbour in enumerate(lowerCamelCase ) )
def a_ ( lowerCamelCase , lowerCamelCase , lowerCamelCase , lowerCamelCase ):
# Base Case
if index == len(lowerCamelCase ):
return True
# Recursive Step
for i in range(lowerCamelCase ):
if valid_coloring(graph[index] , lowerCamelCase , lowerCamelCase ):
# Color current vertex
UpperCAmelCase__ = i
# Validate coloring
if util_color(lowerCamelCase , lowerCamelCase , lowerCamelCase , index + 1 ):
return True
# Backtrack
UpperCAmelCase__ = -1
return False
def a_ ( lowerCamelCase , lowerCamelCase ):
UpperCAmelCase__ = [-1] * len(lowerCamelCase )
if util_color(lowerCamelCase , lowerCamelCase , lowerCamelCase , 0 ):
return colored_vertices
return []
| 98
|
'''simple docstring'''
__a = frozenset(
[
"prompt",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset([])
__a = frozenset(["image"])
__a = frozenset(
[
"image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image"])
__a = frozenset(
[
"prompt",
"image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "negative_prompt"])
__a = frozenset(
[
# Text guided image variation with an image mask
"prompt",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "mask_image", "negative_prompt"])
__a = frozenset(
[
# image variation with an image mask
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image", "mask_image"])
__a = frozenset(
[
"example_image",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["example_image", "image", "mask_image"])
__a = frozenset(["class_labels"])
__a = frozenset(["class_labels"])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(
[
"prompt",
"audio_length_in_s",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset(["input_tokens"])
__a = frozenset(["input_tokens"])
| 35
| 0
|
import json
import unittest
import numpy as np
from huggingface_hub import hf_hub_download
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from transformers import OneFormerImageProcessor
from transformers.models.oneformer.image_processing_oneformer import binary_mask_to_rle
from transformers.models.oneformer.modeling_oneformer import OneFormerForUniversalSegmentationOutput
if is_vision_available():
from PIL import Image
def A_ ( A__ , A__="shi-labs/oneformer_demo" ) -> Optional[int]:
with open(hf_hub_download(A__ , A__ , repo_type='dataset' ) , 'r' ) as f:
a__ : Optional[Any] = json.load(A__ )
a__ : int = {}
a__ : List[str] = []
a__ : List[str] = []
for key, info in class_info.items():
a__ : Optional[int] = info['name']
class_names.append(info['name'] )
if info["isthing"]:
thing_ids.append(int(A__ ) )
a__ : Dict = thing_ids
a__ : List[Any] = class_names
return metadata
class A__ ( unittest.TestCase ):
"""simple docstring"""
def __init__( self , lowercase , lowercase=7 , lowercase=3 , lowercase=30 , lowercase=400 , lowercase=None , lowercase=True , lowercase=True , lowercase=[0.5, 0.5, 0.5] , lowercase=[0.5, 0.5, 0.5] , lowercase=10 , lowercase=False , lowercase=255 , lowercase="shi-labs/oneformer_demo" , lowercase="ade20k_panoptic.json" , lowercase=10 , ) -> List[Any]:
'''simple docstring'''
a__ : Optional[int] = parent
a__ : Optional[Any] = batch_size
a__ : Union[str, Any] = num_channels
a__ : Any = min_resolution
a__ : Optional[Any] = max_resolution
a__ : Optional[int] = do_resize
a__ : Any = {'shortest_edge': 32, 'longest_edge': 1333} if size is None else size
a__ : Optional[Any] = do_normalize
a__ : Tuple = image_mean
a__ : List[Any] = image_std
a__ : Optional[int] = class_info_file
a__ : Union[str, Any] = prepare_metadata(lowercase , lowercase)
a__ : List[Any] = num_text
a__ : Dict = repo_path
# for the post_process_functions
a__ : int = 2
a__ : str = 10
a__ : str = 10
a__ : List[str] = 3
a__ : Dict = 4
a__ : Optional[Any] = num_labels
a__ : Dict = do_reduce_labels
a__ : Any = ignore_index
def __lowercase ( self) -> Any:
'''simple docstring'''
return {
"do_resize": self.do_resize,
"size": self.size,
"do_normalize": self.do_normalize,
"image_mean": self.image_mean,
"image_std": self.image_std,
"num_labels": self.num_labels,
"do_reduce_labels": self.do_reduce_labels,
"ignore_index": self.ignore_index,
"class_info_file": self.class_info_file,
"metadata": self.metadata,
"num_text": self.num_text,
}
def __lowercase ( self , lowercase , lowercase=False) -> List[Any]:
'''simple docstring'''
if not batched:
a__ : Optional[int] = image_inputs[0]
if isinstance(lowercase , Image.Image):
a__ , a__ : List[Any] = image.size
else:
a__ , a__ : Optional[int] = image.shape[1], image.shape[2]
if w < h:
a__ : str = int(self.size['shortest_edge'] * h / w)
a__ : Optional[int] = self.size['shortest_edge']
elif w > h:
a__ : Optional[Any] = self.size['shortest_edge']
a__ : Dict = int(self.size['shortest_edge'] * w / h)
else:
a__ : Dict = self.size['shortest_edge']
a__ : List[Any] = self.size['shortest_edge']
else:
a__ : str = []
for image in image_inputs:
a__ , a__ : Dict = self.get_expected_values([image])
expected_values.append((expected_height, expected_width))
a__ : Any = max(lowercase , key=lambda lowercase: item[0])[0]
a__ : Any = max(lowercase , key=lambda lowercase: item[1])[1]
return expected_height, expected_width
def __lowercase ( self) -> List[Any]:
'''simple docstring'''
return OneFormerForUniversalSegmentationOutput(
# +1 for null class
class_queries_logits=torch.randn((self.batch_size, self.num_queries, self.num_classes + 1)) , masks_queries_logits=torch.randn((self.batch_size, self.num_queries, self.height, self.width)) , )
@require_torch
@require_vision
class A__ ( __UpperCAmelCase , unittest.TestCase ):
"""simple docstring"""
__A : Dict = OneFormerImageProcessor if (is_vision_available() and is_torch_available()) else None
# only for test_image_processing_common.test_image_proc_to_json_string
__A : int = image_processing_class
def __lowercase ( self) -> Dict:
'''simple docstring'''
a__ : int = OneFormerImageProcessorTester(self)
@property
def __lowercase ( self) -> List[str]:
'''simple docstring'''
return self.image_processing_tester.prepare_image_processor_dict()
def __lowercase ( self) -> Any:
'''simple docstring'''
a__ : List[Any] = self.image_processing_class(**self.image_processor_dict)
self.assertTrue(hasattr(lowercase , 'image_mean'))
self.assertTrue(hasattr(lowercase , 'image_std'))
self.assertTrue(hasattr(lowercase , 'do_normalize'))
self.assertTrue(hasattr(lowercase , 'do_resize'))
self.assertTrue(hasattr(lowercase , 'size'))
self.assertTrue(hasattr(lowercase , 'ignore_index'))
self.assertTrue(hasattr(lowercase , 'class_info_file'))
self.assertTrue(hasattr(lowercase , 'num_text'))
self.assertTrue(hasattr(lowercase , 'repo_path'))
self.assertTrue(hasattr(lowercase , 'metadata'))
self.assertTrue(hasattr(lowercase , 'do_reduce_labels'))
def __lowercase ( self) -> Union[str, Any]:
'''simple docstring'''
pass
def __lowercase ( self) -> int:
'''simple docstring'''
a__ : str = self.image_processing_class(**self.image_processor_dict)
# create random PIL images
a__ : Tuple = prepare_image_inputs(self.image_processing_tester , equal_resolution=lowercase)
for image in image_inputs:
self.assertIsInstance(lowercase , Image.Image)
# Test not batched input
a__ : Tuple = image_processor(image_inputs[0] , ['semantic'] , return_tensors='pt').pixel_values
a__ , a__ : Union[str, Any] = self.image_processing_tester.get_expected_values(lowercase)
self.assertEqual(
encoded_images.shape , (1, self.image_processing_tester.num_channels, expected_height, expected_width) , )
# Test batched
a__ , a__ : List[Any] = self.image_processing_tester.get_expected_values(lowercase , batched=lowercase)
a__ : Optional[int] = image_processor(
lowercase , ['semantic'] * len(lowercase) , return_tensors='pt').pixel_values
self.assertEqual(
encoded_images.shape , (
self.image_processing_tester.batch_size,
self.image_processing_tester.num_channels,
expected_height,
expected_width,
) , )
def __lowercase ( self) -> Union[str, Any]:
'''simple docstring'''
a__ : Dict = self.image_processing_class(**self.image_processor_dict)
# create random numpy tensors
a__ : int = prepare_image_inputs(self.image_processing_tester , equal_resolution=lowercase , numpify=lowercase)
for image in image_inputs:
self.assertIsInstance(lowercase , np.ndarray)
# Test not batched input
a__ : Optional[int] = image_processor(image_inputs[0] , ['semantic'] , return_tensors='pt').pixel_values
a__ , a__ : List[Any] = self.image_processing_tester.get_expected_values(lowercase)
self.assertEqual(
encoded_images.shape , (1, self.image_processing_tester.num_channels, expected_height, expected_width) , )
# Test batched
a__ , a__ : str = self.image_processing_tester.get_expected_values(lowercase , batched=lowercase)
a__ : Optional[int] = image_processor(
lowercase , ['semantic'] * len(lowercase) , return_tensors='pt').pixel_values
self.assertEqual(
encoded_images.shape , (
self.image_processing_tester.batch_size,
self.image_processing_tester.num_channels,
expected_height,
expected_width,
) , )
def __lowercase ( self) -> List[Any]:
'''simple docstring'''
a__ : List[str] = self.image_processing_class(**self.image_processor_dict)
# create random PyTorch tensors
a__ : Optional[Any] = prepare_image_inputs(self.image_processing_tester , equal_resolution=lowercase , torchify=lowercase)
for image in image_inputs:
self.assertIsInstance(lowercase , torch.Tensor)
# Test not batched input
a__ : str = image_processor(image_inputs[0] , ['semantic'] , return_tensors='pt').pixel_values
a__ , a__ : Optional[int] = self.image_processing_tester.get_expected_values(lowercase)
self.assertEqual(
encoded_images.shape , (1, self.image_processing_tester.num_channels, expected_height, expected_width) , )
# Test batched
a__ , a__ : Optional[Any] = self.image_processing_tester.get_expected_values(lowercase , batched=lowercase)
a__ : Optional[Any] = image_processor(
lowercase , ['semantic'] * len(lowercase) , return_tensors='pt').pixel_values
self.assertEqual(
encoded_images.shape , (
self.image_processing_tester.batch_size,
self.image_processing_tester.num_channels,
expected_height,
expected_width,
) , )
def __lowercase ( self , lowercase=False , lowercase=False , lowercase="np") -> Tuple:
'''simple docstring'''
a__ : Optional[Any] = self.image_processing_class(**self.image_processor_dict)
# prepare image and target
a__ : Optional[Any] = self.image_processing_tester.num_labels
a__ : int = None
a__ : Union[str, Any] = None
a__ : Tuple = prepare_image_inputs(self.image_processing_tester , equal_resolution=lowercase)
if with_segmentation_maps:
a__ : List[Any] = num_labels
if is_instance_map:
a__ : Dict = list(range(lowercase)) * 2
a__ : str = dict(enumerate(lowercase))
a__ : Union[str, Any] = [
np.random.randint(0 , high * 2 , (img.size[1], img.size[0])).astype(np.uinta) for img in image_inputs
]
if segmentation_type == "pil":
a__ : Union[str, Any] = [Image.fromarray(lowercase) for annotation in annotations]
a__ : Optional[int] = image_processor(
lowercase , ['semantic'] * len(lowercase) , lowercase , return_tensors='pt' , instance_id_to_semantic_id=lowercase , pad_and_return_pixel_mask=lowercase , )
return inputs
def __lowercase ( self) -> Optional[Any]:
'''simple docstring'''
pass
def __lowercase ( self) -> Optional[int]:
'''simple docstring'''
def common(lowercase=False , lowercase=None):
a__ : Union[str, Any] = self.comm_get_image_processor_inputs(
with_segmentation_maps=lowercase , is_instance_map=lowercase , segmentation_type=lowercase)
a__ : str = inputs['mask_labels']
a__ : List[Any] = inputs['class_labels']
a__ : Tuple = inputs['pixel_values']
a__ : Dict = inputs['text_inputs']
# check the batch_size
for mask_label, class_label, text_input in zip(lowercase , lowercase , lowercase):
self.assertEqual(mask_label.shape[0] , class_label.shape[0])
# this ensure padding has happened
self.assertEqual(mask_label.shape[1:] , pixel_values.shape[2:])
self.assertEqual(len(lowercase) , self.image_processing_tester.num_text)
common()
common(is_instance_map=lowercase)
common(is_instance_map=lowercase , segmentation_type='pil')
common(is_instance_map=lowercase , segmentation_type='pil')
def __lowercase ( self) -> List[str]:
'''simple docstring'''
a__ : Union[str, Any] = np.zeros((20, 50))
a__ : Optional[Any] = 1
a__ : int = 1
a__ : int = 1
a__ : Optional[int] = binary_mask_to_rle(lowercase)
self.assertEqual(len(lowercase) , 4)
self.assertEqual(rle[0] , 21)
self.assertEqual(rle[1] , 45)
def __lowercase ( self) -> List[str]:
'''simple docstring'''
a__ : Optional[int] = self.image_processing_class(
num_labels=self.image_processing_tester.num_classes , max_seq_length=77 , task_seq_length=77 , class_info_file='ade20k_panoptic.json' , num_text=self.image_processing_tester.num_text , repo_path='shi-labs/oneformer_demo' , )
a__ : List[Any] = self.image_processing_tester.get_fake_oneformer_outputs()
a__ : int = fature_extractor.post_process_semantic_segmentation(lowercase)
self.assertEqual(len(lowercase) , self.image_processing_tester.batch_size)
self.assertEqual(
segmentation[0].shape , (
self.image_processing_tester.height,
self.image_processing_tester.width,
) , )
a__ : Tuple = [(1, 4) for i in range(self.image_processing_tester.batch_size)]
a__ : Optional[int] = fature_extractor.post_process_semantic_segmentation(lowercase , target_sizes=lowercase)
self.assertEqual(segmentation[0].shape , target_sizes[0])
def __lowercase ( self) -> Union[str, Any]:
'''simple docstring'''
a__ : str = self.image_processing_class(
num_labels=self.image_processing_tester.num_classes , max_seq_length=77 , task_seq_length=77 , class_info_file='ade20k_panoptic.json' , num_text=self.image_processing_tester.num_text , repo_path='shi-labs/oneformer_demo' , )
a__ : Any = self.image_processing_tester.get_fake_oneformer_outputs()
a__ : Optional[Any] = image_processor.post_process_instance_segmentation(lowercase , threshold=0)
self.assertTrue(len(lowercase) == self.image_processing_tester.batch_size)
for el in segmentation:
self.assertTrue('segmentation' in el)
self.assertTrue('segments_info' in el)
self.assertEqual(type(el['segments_info']) , lowercase)
self.assertEqual(
el['segmentation'].shape , (self.image_processing_tester.height, self.image_processing_tester.width))
def __lowercase ( self) -> Dict:
'''simple docstring'''
a__ : Optional[int] = self.image_processing_class(
num_labels=self.image_processing_tester.num_classes , max_seq_length=77 , task_seq_length=77 , class_info_file='ade20k_panoptic.json' , num_text=self.image_processing_tester.num_text , repo_path='shi-labs/oneformer_demo' , )
a__ : str = self.image_processing_tester.get_fake_oneformer_outputs()
a__ : str = image_processor.post_process_panoptic_segmentation(lowercase , threshold=0)
self.assertTrue(len(lowercase) == self.image_processing_tester.batch_size)
for el in segmentation:
self.assertTrue('segmentation' in el)
self.assertTrue('segments_info' in el)
self.assertEqual(type(el['segments_info']) , lowercase)
self.assertEqual(
el['segmentation'].shape , (self.image_processing_tester.height, self.image_processing_tester.width))
| 99
|
'''simple docstring'''
import json
import os
import unittest
from transformers.models.gptsan_japanese.tokenization_gptsan_japanese import (
VOCAB_FILES_NAMES,
GPTSanJapaneseTokenizer,
)
from transformers.testing_utils import require_tokenizers, slow
from ...test_tokenization_common import TokenizerTesterMixin
@require_tokenizers
class UpperCAmelCase_ ( _a , unittest.TestCase ):
"""simple docstring"""
lowercase = GPTSanJapaneseTokenizer
lowercase = False
lowercase = {"do_clean_text": False, "add_prefix_space": False}
def lowerCamelCase ( self : str ):
super().setUp()
# fmt: off
snake_case__ : Optional[Any] = ["""こん""", """こんに""", """にちは""", """ばんは""", """世界,㔺界""", """、""", """。""", """<BR>""", """<SP>""", """<TAB>""", """<URL>""", """<EMAIL>""", """<TEL>""", """<DATE>""", """<PRICE>""", """<BLOCK>""", """<KIGOU>""", """<U2000U2BFF>""", """<|emoji1|>""", """<unk>""", """<|bagoftoken|>""", """<|endoftext|>"""]
# fmt: on
snake_case__ : int = {"""emoji""": {"""\ud83d\ude00""": """<|emoji1|>"""}, """emoji_inv""": {"""<|emoji1|>""": """\ud83d\ude00"""}} # 😀
snake_case__ : List[Any] = {"""unk_token""": """<unk>"""}
snake_case__ : Optional[Any] = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""vocab_file"""] )
snake_case__ : Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""emoji_file"""] )
with open(self.vocab_file , """w""" , encoding="""utf-8""" ) as vocab_writer:
vocab_writer.write("""""".join([x + """\n""" for x in vocab_tokens] ) )
with open(self.emoji_file , """w""" ) as emoji_writer:
emoji_writer.write(json.dumps(snake_case_ ) )
def lowerCamelCase ( self : Any , **snake_case_ : Union[str, Any] ):
kwargs.update(self.special_tokens_map )
return GPTSanJapaneseTokenizer.from_pretrained(self.tmpdirname , **snake_case_ )
def lowerCamelCase ( self : Any , snake_case_ : str ):
snake_case__ : Union[str, Any] = """こんにちは、世界。 \nこんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。 \nこんばんは、世界。😀"""
return input_text, output_text
def lowerCamelCase ( self : Any , snake_case_ : Dict ):
snake_case__ , snake_case__ : int = self.get_input_output_texts(snake_case_ )
snake_case__ : int = tokenizer.encode(snake_case_ , add_special_tokens=snake_case_ )
snake_case__ : List[str] = tokenizer.decode(snake_case_ , clean_up_tokenization_spaces=snake_case_ )
return text, ids
def lowerCamelCase ( self : Optional[Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Union[str, Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : List[str] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Dict ):
snake_case__ : Optional[Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : int = """こんにちは、世界。 こんばんは、㔺界。"""
snake_case__ : Optional[int] = ["""こん""", """にちは""", """、""", """世界""", """。""", """<SP>""", """こん""", """ばんは""", """、""", """㔺界""", """。"""]
snake_case__ : Dict = tokenizer.tokenize(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids without special tokens
snake_case__ : Union[str, Any] = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6]
snake_case__ : List[Any] = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids with special tokens
snake_case__ : Union[str, Any] = tokens + [tokenizer.unk_token]
snake_case__ : Dict = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6, 19]
snake_case__ : Any = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Union[str, Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : Union[str, Any] = """こんにちは、<|bagoftoken|>世界。こんばんは、<|bagoftoken|>㔺界。"""
snake_case__ : Optional[int] = """こんにちは、、、、世界。こんばんは、、、、世界。"""
snake_case__ : Any = tokenizer.encode(snake_case_ )
snake_case__ : int = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Tuple = """こんにちは、世界。"""
snake_case__ : Optional[Any] = """こんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。こんばんは、世界。😀"""
snake_case__ : Dict = tokenizer.encode(prefix_text + input_text )
snake_case__ : Dict = tokenizer.encode("""""" , prefix_text=prefix_text + input_text )
snake_case__ : int = tokenizer.encode(snake_case_ , prefix_text=snake_case_ )
snake_case__ : Optional[Any] = tokenizer.decode(snake_case_ )
snake_case__ : Union[str, Any] = tokenizer.decode(snake_case_ )
snake_case__ : str = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Dict = """こんにちは、世界。"""
snake_case__ : Optional[int] = """こんばんは、㔺界。😀"""
snake_case__ : Any = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : Optional[int] = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : List[str] = [1] + [0] * (len_prefix + len_text + 1)
snake_case__ : Optional[int] = [1] * (len_prefix + len_text + 1) + [0]
snake_case__ : int = [1] + [1] * (len_prefix) + [0] * (len_text + 1)
snake_case__ : Any = tokenizer(prefix_text + input_text ).token_type_ids
snake_case__ : str = tokenizer("""""" , prefix_text=prefix_text + input_text ).token_type_ids
snake_case__ : Optional[Any] = tokenizer(snake_case_ , prefix_text=snake_case_ ).token_type_ids
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : Union[str, Any] = tokenizer.encode("""あンいワ""" )
snake_case__ : int = tokenizer.encode("""""" , prefix_text="""あンいワ""" )
snake_case__ : Dict = tokenizer.encode("""いワ""" , prefix_text="""あン""" )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertEqual(x_token_a[1] , x_token_a[-1] ) # SEG token
self.assertEqual(x_token_a[1] , x_token_a[3] ) # SEG token
@slow
def lowerCamelCase ( self : Any ):
snake_case__ : Optional[int] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : int = [["""武田信玄""", """は、"""], ["""織田信長""", """の配下の、"""]]
snake_case__ : Optional[Any] = tokenizer(snake_case_ , padding=snake_case_ )
snake_case__ : Tuple = tokenizer.batch_encode_plus(snake_case_ , padding=snake_case_ )
# fmt: off
snake_case__ : Optional[Any] = [[35_993, 8_640, 25_948, 35_998, 30_647, 35_675, 35_999, 35_999], [35_993, 10_382, 9_868, 35_998, 30_646, 9_459, 30_646, 35_675]]
snake_case__ : Optional[Any] = [[1, 1, 1, 0, 0, 0, 0, 0], [1, 1, 1, 0, 0, 0, 0, 0]]
snake_case__ : Optional[Any] = [[1, 1, 1, 1, 1, 1, 0, 0], [1, 1, 1, 1, 1, 1, 1, 1]]
# fmt: on
self.assertListEqual(x_token.input_ids , snake_case_ )
self.assertListEqual(x_token.token_type_ids , snake_case_ )
self.assertListEqual(x_token.attention_mask , snake_case_ )
self.assertListEqual(x_token_a.input_ids , snake_case_ )
self.assertListEqual(x_token_a.token_type_ids , snake_case_ )
self.assertListEqual(x_token_a.attention_mask , snake_case_ )
def lowerCamelCase ( self : Any ):
# Intentionally convert some words to accommodate character fluctuations unique to Japanese
pass
def lowerCamelCase ( self : List[str] ):
# tokenizer has no padding token
pass
| 35
| 0
|
"""simple docstring"""
def _lowerCAmelCase ( UpperCamelCase_ , UpperCamelCase_ ):
_validate_point(UpperCamelCase_ )
_validate_point(UpperCamelCase_ )
if len(UpperCamelCase_ ) != len(UpperCamelCase_ ):
raise ValueError("""Both points must be in the same n-dimensional space""" )
return float(sum(abs(a - b ) for a, b in zip(UpperCamelCase_ , UpperCamelCase_ ) ) )
def _lowerCAmelCase ( UpperCamelCase_ ):
if point:
if isinstance(UpperCamelCase_ , UpperCamelCase_ ):
for item in point:
if not isinstance(UpperCamelCase_ , (int, float) ):
__SCREAMING_SNAKE_CASE = (
"""Expected a list of numbers as input, found """
f"{type(UpperCamelCase_ ).__name__}"
)
raise TypeError(UpperCamelCase_ )
else:
__SCREAMING_SNAKE_CASE = f"Expected a list of numbers as input, found {type(UpperCamelCase_ ).__name__}"
raise TypeError(UpperCamelCase_ )
else:
raise ValueError("""Missing an input""" )
def _lowerCAmelCase ( UpperCamelCase_ , UpperCamelCase_ ):
_validate_point(UpperCamelCase_ )
_validate_point(UpperCamelCase_ )
if len(UpperCamelCase_ ) != len(UpperCamelCase_ ):
raise ValueError("""Both points must be in the same n-dimensional space""" )
return float(sum(abs(x - y ) for x, y in zip(UpperCamelCase_ , UpperCamelCase_ ) ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 100
|
'''simple docstring'''
from transformers import BertTokenizerFast
from .custom_tokenization import CustomTokenizer
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = CustomTokenizer
pass
| 35
| 0
|
import unittest
import numpy as np
from transformers.testing_utils import require_torch, require_vision
from transformers.utils import is_torch_available, is_vision_available
from ...test_image_processing_common import ImageProcessingSavingTestMixin, prepare_image_inputs
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
from transformers import MobileNetVaImageProcessor
class lowercase ( unittest.TestCase ):
def __init__( self ,A__ ,A__=7 ,A__=3 ,A__=1_8 ,A__=3_0 ,A__=4_0_0 ,A__=True ,A__=None ,A__=True ,A__=None ,):
lowercase = size if size is not None else {'''shortest_edge''': 2_0}
lowercase = crop_size if crop_size is not None else {'''height''': 1_8, '''width''': 1_8}
lowercase = parent
lowercase = batch_size
lowercase = num_channels
lowercase = image_size
lowercase = min_resolution
lowercase = max_resolution
lowercase = do_resize
lowercase = size
lowercase = do_center_crop
lowercase = crop_size
def A__ ( self):
return {
"do_resize": self.do_resize,
"size": self.size,
"do_center_crop": self.do_center_crop,
"crop_size": self.crop_size,
}
@require_torch
@require_vision
class lowercase ( SCREAMING_SNAKE_CASE__ , unittest.TestCase ):
lowercase_ : Tuple =MobileNetVaImageProcessor if is_vision_available() else None
def A__ ( self):
lowercase = MobileNetVaImageProcessingTester(self)
@property
def A__ ( self):
return self.image_processor_tester.prepare_image_processor_dict()
def A__ ( self):
lowercase = self.image_processing_class(**self.image_processor_dict)
self.assertTrue(hasattr(A__ ,'''do_resize'''))
self.assertTrue(hasattr(A__ ,'''size'''))
self.assertTrue(hasattr(A__ ,'''do_center_crop'''))
self.assertTrue(hasattr(A__ ,'''crop_size'''))
def A__ ( self):
lowercase = self.image_processing_class.from_dict(self.image_processor_dict)
self.assertEqual(image_processor.size ,{'''shortest_edge''': 2_0})
self.assertEqual(image_processor.crop_size ,{'''height''': 1_8, '''width''': 1_8})
lowercase = self.image_processing_class.from_dict(self.image_processor_dict ,size=4_2 ,crop_size=8_4)
self.assertEqual(image_processor.size ,{'''shortest_edge''': 4_2})
self.assertEqual(image_processor.crop_size ,{'''height''': 8_4, '''width''': 8_4})
def A__ ( self):
pass
def A__ ( self):
# Initialize image_processing
lowercase = self.image_processing_class(**self.image_processor_dict)
# create random PIL images
lowercase = prepare_image_inputs(self.image_processor_tester ,equal_resolution=A__)
for image in image_inputs:
self.assertIsInstance(A__ ,Image.Image)
# Test not batched input
lowercase = image_processing(image_inputs[0] ,return_tensors='''pt''').pixel_values
self.assertEqual(
encoded_images.shape ,(
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['''height'''],
self.image_processor_tester.crop_size['''width'''],
) ,)
# Test batched
lowercase = image_processing(A__ ,return_tensors='''pt''').pixel_values
self.assertEqual(
encoded_images.shape ,(
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['''height'''],
self.image_processor_tester.crop_size['''width'''],
) ,)
def A__ ( self):
# Initialize image_processing
lowercase = self.image_processing_class(**self.image_processor_dict)
# create random numpy tensors
lowercase = prepare_image_inputs(self.image_processor_tester ,equal_resolution=A__ ,numpify=A__)
for image in image_inputs:
self.assertIsInstance(A__ ,np.ndarray)
# Test not batched input
lowercase = image_processing(image_inputs[0] ,return_tensors='''pt''').pixel_values
self.assertEqual(
encoded_images.shape ,(
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['''height'''],
self.image_processor_tester.crop_size['''width'''],
) ,)
# Test batched
lowercase = image_processing(A__ ,return_tensors='''pt''').pixel_values
self.assertEqual(
encoded_images.shape ,(
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['''height'''],
self.image_processor_tester.crop_size['''width'''],
) ,)
def A__ ( self):
# Initialize image_processing
lowercase = self.image_processing_class(**self.image_processor_dict)
# create random PyTorch tensors
lowercase = prepare_image_inputs(self.image_processor_tester ,equal_resolution=A__ ,torchify=A__)
for image in image_inputs:
self.assertIsInstance(A__ ,torch.Tensor)
# Test not batched input
lowercase = image_processing(image_inputs[0] ,return_tensors='''pt''').pixel_values
self.assertEqual(
encoded_images.shape ,(
1,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['''height'''],
self.image_processor_tester.crop_size['''width'''],
) ,)
# Test batched
lowercase = image_processing(A__ ,return_tensors='''pt''').pixel_values
self.assertEqual(
encoded_images.shape ,(
self.image_processor_tester.batch_size,
self.image_processor_tester.num_channels,
self.image_processor_tester.crop_size['''height'''],
self.image_processor_tester.crop_size['''width'''],
) ,)
| 101
|
'''simple docstring'''
import numpy as np
from transformers import Pipeline
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Optional[Any] = np.max(_lowerCAmelCase , axis=-1 , keepdims=_lowerCAmelCase )
snake_case__ : List[str] = np.exp(outputs - maxes )
return shifted_exp / shifted_exp.sum(axis=-1 , keepdims=_lowerCAmelCase )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def lowerCamelCase ( self : Optional[Any] , **snake_case_ : int ):
snake_case__ : Optional[int] = {}
if "second_text" in kwargs:
snake_case__ : Union[str, Any] = kwargs["""second_text"""]
return preprocess_kwargs, {}, {}
def lowerCamelCase ( self : str , snake_case_ : Tuple , snake_case_ : Union[str, Any]=None ):
return self.tokenizer(snake_case_ , text_pair=snake_case_ , return_tensors=self.framework )
def lowerCamelCase ( self : List[Any] , snake_case_ : Dict ):
return self.model(**snake_case_ )
def lowerCamelCase ( self : int , snake_case_ : List[Any] ):
snake_case__ : Union[str, Any] = model_outputs.logits[0].numpy()
snake_case__ : List[str] = softmax(snake_case_ )
snake_case__ : List[str] = np.argmax(snake_case_ )
snake_case__ : List[str] = self.model.config.idalabel[best_class]
snake_case__ : Optional[int] = probabilities[best_class].item()
snake_case__ : str = logits.tolist()
return {"label": label, "score": score, "logits": logits}
| 35
| 0
|
"""simple docstring"""
import math
def lowercase ( _snake_case : int ) ->bool:
"""simple docstring"""
if 1 < number < 4:
# 2 and 3 are primes
return True
elif number < 2 or number % 2 == 0 or number % 3 == 0:
# Negatives, 0, 1, all even numbers, all multiples of 3 are not primes
return False
# All primes number are in format of 6k +/- 1
for i in range(5 , int(math.sqrt(_snake_case ) + 1 ) , 6 ):
if number % i == 0 or number % (i + 2) == 0:
return False
return True
def lowercase ( _snake_case : float = 0.1 ) ->int:
"""simple docstring"""
__snake_case : Tuple = 3
__snake_case : Any = 3
while primes / (2 * j - 1) >= ratio:
for i in range(j * j + j + 1 , (j + 2) * (j + 2) , j + 1 ):
primes += is_prime(_snake_case )
j += 2
return j
if __name__ == "__main__":
import doctest
doctest.testmod()
| 102
|
'''simple docstring'''
# Function to print upper half of diamond (pyramid)
def __snake_case( _lowerCAmelCase ) -> Any:
for i in range(0 , _lowerCAmelCase ):
for _ in range(0 , n - i - 1 ): # printing spaces
print(""" """ , end="""""" )
for _ in range(0 , i + 1 ): # printing stars
print("""* """ , end="""""" )
print()
def __snake_case( _lowerCAmelCase ) -> List[str]:
for i in range(_lowerCAmelCase , 0 , -1 ):
for _ in range(_lowerCAmelCase , 0 , -1 ): # printing stars
print("""* """ , end="""""" )
print()
for _ in range(n - i + 1 , 0 , -1 ): # printing spaces
print(""" """ , end="""""" )
def __snake_case( _lowerCAmelCase ) -> List[Any]:
if n <= 0:
print(""" ... .... nothing printing :(""" )
return
floyd(_lowerCAmelCase ) # upper half
reverse_floyd(_lowerCAmelCase ) # lower half
if __name__ == "__main__":
print(R"| /\ | |- | |- |--| |\ /| |-")
print(R"|/ \| |- |_ |_ |__| | \/ | |_")
__a = 1
while K:
__a = int(input("enter the number and , and see the magic : "))
print()
pretty_print(user_number)
__a = int(input("press 0 to exit... and 1 to continue..."))
print("Good Bye...")
| 35
| 0
|
# HF Trainer benchmarking tool
#
# This tool can be used to run and compare multiple dimensions of the HF Trainers args.
#
# It then prints a report once in github format with all the information that needs to be shared
# with others and second time in a console-friendly format, so it's easier to use for tuning things up.
#
# The main idea is:
#
# ./trainer-benchmark.py --base-cmd '<cmd args that don't change>' \
# --variations '--tf32 0|--tf32 1' '--fp16 0|--fp16 1|--bf16 1' \
# --target-metric-key train_samples_per_second
#
# The variations can be any command line argument that you want to compare and not just dtype as in
# the example.
#
# --variations allows you to compare variations in multiple dimensions.
#
# as the first dimention has 2 options and the second 3 in our example, this will run the trainer 6
# times adding one of:
#
# 1. --tf32 0 --fp16 0
# 2. --tf32 0 --fp16 1
# 3. --tf32 0 --bf16 1
# 4. --tf32 1 --fp16 0
# 5. --tf32 1 --fp16 1
# 6. --tf32 1 --bf16 1
#
# and print the results. This is just a cartesian product - and more than 2 dimensions can be used.
#
# If you want to rely on defaults, this:
# --variations '--tf32 0|--tf32 1' '--fp16 0|--fp16 1|--bf16 1'
# is identical to this:
# --variations '--tf32 0|--tf32 1' '|--fp16|--bf16'
#
# the leading empty variation in the 2nd dimension is a valid variation.
#
# So here we get the following 6 variations:
#
# 1. --tf32 0
# 2. --tf32 0 --fp16
# 3. --tf32 0 --bf16
# 4. --tf32 1
# 5. --tf32 1 --fp16
# 6. --tf32 1 --bf16
#
# In this particular case we don't know what the default tf32 setting is as it's normally
# pytorch-version dependent). That's why it's best to do an explicit setting of each variation:
# `--tf32 0|--tf32 1`
#
# Here is a full example of a train:
#
# CUDA_VISIBLE_DEVICES=0 python ./scripts/benchmark/trainer-benchmark.py \
# --base-cmd \
# ' examples/pytorch/translation/run_translation.py --model_name_or_path t5-small \
# --output_dir output_dir --do_train --label_smoothing 0.1 --logging_strategy no \
# --save_strategy no --per_device_train_batch_size 32 --max_source_length 512 \
# --max_target_length 512 --num_train_epochs 1 --overwrite_output_dir \
# --source_lang en --target_lang ro --dataset_name wmt16 --dataset_config "ro-en" \
# --source_prefix "translate English to Romanian: " --warmup_steps 50 \
# --max_train_samples 20000 --dataloader_num_workers 2 ' \
# --target-metric-key train_samples_per_second --repeat-times 1 --variations \
# '|--fp16|--bf16' '--tf32 0|--tf32 1' --report-metric-keys train_loss \
# --repeat-times 1 --base-variation '--tf32 0'
#
# and here is a possible output:
#
#
# | Variation | Train | Diff | Train |
# | | samples | % | loss |
# | | per | | |
# | | second | | |
# |:----------------|----------:|-------:|--------:|
# | --tf32 0 | 285.11 | 0 | 2.51 |
# | --tf32 1 | 342.09 | 20 | 2.51 |
# | --fp16 --tf32 0 | 423.49 | 49 | 2.51 |
# | --fp16 --tf32 1 | 423.13 | 48 | 2.51 |
# | --bf16 --tf32 0 | 416.80 | 46 | 2.52 |
# | --bf16 --tf32 1 | 415.87 | 46 | 2.52 |
#
#
# So you can quickly compare the different outcomes.
#
# Typically running each experiment once is enough, but if the environment is unstable you can
# re-run each multiple times, e.g., 3 using --repeat-times 3 and it will report the averaged results.
#
# By default it'll use the lowest result as the base line to use as 100% and then compare the rest to
# it as can be seen from the table above, but you can also specify which combination is the one to use as
# the baseline, e.g., to change to another entry use: --base-variation '--tf32 1 --fp16 0'
#
# --target-metric-key is there to tell the program which metrics to compare - the different metric keys are
# inside output_dir/all_results.json. e.g., to measure eval performance instead of train use:
# --target-metric-key eval_samples_per_second
# but of course you will need to adjust the --base-cmd value in the example to perform evaluation as
# well (as currently it doesn't)
#
import argparse
import datetime
import io
import itertools
import json
import math
import os
import platform
import re
import shlex
import subprocess
import sys
from pathlib import Path
from statistics import fmean
import pandas as pd
import torch
from tqdm import tqdm
import transformers
A__ : Union[str, Any] = float('''nan''')
class __snake_case :
def __init__( self : Tuple , A_ : Optional[Any]):
lowerCAmelCase_ : str = sys.stdout
lowerCAmelCase_ : Tuple = open(A_ , '''a''')
def __getattr__( self : Dict , A_ : Optional[int]):
return getattr(self.stdout , A_)
def UpperCAmelCase__ ( self : Any , A_ : Any):
self.stdout.write(A_)
# strip tqdm codes
self.file.write(re.sub(r'''^.*\r''' , '''''' , A_ , 0 , re.M))
def UpperCamelCase( __UpperCamelCase : str=80 ,__UpperCamelCase : int=False ):
lowerCAmelCase_ : int = []
# deal with critical env vars
lowerCAmelCase_ : Union[str, Any] = ['''CUDA_VISIBLE_DEVICES''']
for key in env_keys:
lowerCAmelCase_ : Dict = os.environ.get(__UpperCamelCase ,__UpperCamelCase )
if val is not None:
cmd.append(f"""{key}={val}""" )
# python executable (not always needed if the script is executable)
lowerCAmelCase_ : Tuple = sys.executable if full_python_path else sys.executable.split('''/''' )[-1]
cmd.append(__UpperCamelCase )
# now the normal args
cmd += list(map(shlex.quote ,sys.argv ) )
# split up into up to MAX_WIDTH lines with shell multi-line escapes
lowerCAmelCase_ : List[Any] = []
lowerCAmelCase_ : Dict = ''''''
while len(__UpperCamelCase ) > 0:
current_line += f"""{cmd.pop(0 )} """
if len(__UpperCamelCase ) == 0 or len(__UpperCamelCase ) + len(cmd[0] ) + 1 > max_width - 1:
lines.append(__UpperCamelCase )
lowerCAmelCase_ : int = ''''''
return "\\\n".join(__UpperCamelCase )
def UpperCamelCase( __UpperCamelCase : Union[str, Any] ,__UpperCamelCase : Any ):
# unwrap multi-line input
lowerCAmelCase_ : Tuple = re.sub(R'''[\\\n]+''' ,''' ''' ,args.base_cmd )
# remove --output_dir if any and set our own
lowerCAmelCase_ : Optional[Any] = re.sub('''--output_dir\s+[^\s]+''' ,'''''' ,args.base_cmd )
args.base_cmd += f""" --output_dir {output_dir}"""
# ensure we have --overwrite_output_dir
lowerCAmelCase_ : Any = re.sub('''--overwrite_output_dir\s+''' ,'''''' ,args.base_cmd )
args.base_cmd += " --overwrite_output_dir"
return [sys.executable] + shlex.split(args.base_cmd )
def UpperCamelCase( __UpperCamelCase : str ,__UpperCamelCase : Union[str, Any] ,__UpperCamelCase : Union[str, Any] ,__UpperCamelCase : int ,__UpperCamelCase : List[str] ,__UpperCamelCase : Union[str, Any] ,__UpperCamelCase : Optional[int] ):
# Enable to debug everything but the run itself, to do it fast and see the progress.
# This is useful for debugging the output formatting quickly - we can remove it later once
# everybody is happy with the output
if 0:
import random
from time import sleep
sleep(0 )
return dict(
{k: random.uniform(0 ,100 ) for k in metric_keys} ,**{target_metric_key: random.choice([nan, 1_0.3_1, 1_0_0.2, 5_5.6_6_6_6, 2_2_2.2_2_2_2_2_2_2_2] )} ,)
lowerCAmelCase_ : Any = subprocess.run(__UpperCamelCase ,capture_output=__UpperCamelCase ,text=__UpperCamelCase )
if verbose:
print('''STDOUT''' ,result.stdout )
print('''STDERR''' ,result.stderr )
# save the streams
lowerCAmelCase_ : Tuple = variation.replace(''' ''' ,'''-''' )
with open(Path(__UpperCamelCase ) / f"""log.{prefix}.stdout.txt""" ,'''w''' ) as f:
f.write(result.stdout )
with open(Path(__UpperCamelCase ) / f"""log.{prefix}.stderr.txt""" ,'''w''' ) as f:
f.write(result.stderr )
if result.returncode != 0:
if verbose:
print('''failed''' )
return {target_metric_key: nan}
with io.open(f"""{output_dir}/all_results.json""" ,'''r''' ,encoding='''utf-8''' ) as f:
lowerCAmelCase_ : List[str] = json.load(__UpperCamelCase )
# filter out just the keys we want
return {k: v for k, v in metrics.items() if k in metric_keys}
def UpperCamelCase( __UpperCamelCase : Dict ,__UpperCamelCase : List[Any] ,__UpperCamelCase : Tuple ,__UpperCamelCase : Any ,__UpperCamelCase : str ,__UpperCamelCase : int ,__UpperCamelCase : Optional[Any] ,__UpperCamelCase : Tuple ,__UpperCamelCase : Optional[int] ,__UpperCamelCase : Tuple ,):
lowerCAmelCase_ : Any = []
lowerCAmelCase_ : int = []
lowerCAmelCase_ : List[Any] = f"""{id}: {variation:<{longest_variation_len}}"""
lowerCAmelCase_ : Tuple = f"""{preamble}: """
lowerCAmelCase_ : Optional[Any] = set(report_metric_keys + [target_metric_key] )
for i in tqdm(range(__UpperCamelCase ) ,desc=__UpperCamelCase ,leave=__UpperCamelCase ):
lowerCAmelCase_ : str = process_run_single(
__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase )
lowerCAmelCase_ : Tuple = single_run_metrics[target_metric_key]
if not math.isnan(__UpperCamelCase ):
metrics.append(__UpperCamelCase )
results.append(__UpperCamelCase )
outcome += "✓"
else:
outcome += "✘"
lowerCAmelCase_ : List[str] = f"""\33[2K\r{outcome}"""
if len(__UpperCamelCase ) > 0:
lowerCAmelCase_ : Dict = {k: fmean([x[k] for x in metrics] ) for k in metrics[0].keys()}
lowerCAmelCase_ : Tuple = round(mean_metrics[target_metric_key] ,2 )
lowerCAmelCase_ : Optional[int] = f"""{outcome} {mean_target}"""
if len(__UpperCamelCase ) > 1:
results_str += f""" {tuple(round(__UpperCamelCase ,2 ) for x in results )}"""
print(__UpperCamelCase )
lowerCAmelCase_ : Union[str, Any] = variation
return mean_metrics
else:
print(__UpperCamelCase )
return {variation_key: variation, target_metric_key: nan}
def UpperCamelCase( ):
lowerCAmelCase_ : Any = torch.cuda.get_device_properties(torch.device('''cuda''' ) )
return f"""
Datetime : {datetime.datetime.now().strftime("%Y-%m-%d %H:%M:%S" )}
Software:
transformers: {transformers.__version__}
torch : {torch.__version__}
cuda : {torch.version.cuda}
python : {platform.python_version()}
Hardware:
{torch.cuda.device_count()} GPUs : {properties.name}, {properties.total_memory/2**30:0.2f}GB
"""
def UpperCamelCase( __UpperCamelCase : List[str] ,__UpperCamelCase : List[str] ,__UpperCamelCase : Any ,__UpperCamelCase : Union[str, Any] ,__UpperCamelCase : List[Any] ):
lowerCAmelCase_ : Optional[Any] = pd.DataFrame(__UpperCamelCase )
lowerCAmelCase_ : Union[str, Any] = '''variation'''
lowerCAmelCase_ : List[str] = '''diff_%'''
lowerCAmelCase_ : str = nan
if base_variation is not None and len(df[df[variation_key] == base_variation] ):
# this may still return nan
lowerCAmelCase_ : List[str] = df.loc[df[variation_key] == base_variation][target_metric_key].item()
if math.isnan(__UpperCamelCase ):
# as a fallback, use the minimal value as the sentinel
lowerCAmelCase_ : Dict = df.loc[df[target_metric_key] != nan][target_metric_key].min()
# create diff column if possible
if not math.isnan(__UpperCamelCase ):
lowerCAmelCase_ : Any = df.apply(
lambda __UpperCamelCase : round(100 * (r[target_metric_key] - sentinel_value) / sentinel_value )
if not math.isnan(r[target_metric_key] )
else 0 ,axis='''columns''' ,)
# re-order columns
lowerCAmelCase_ : List[Any] = [variation_key, target_metric_key, diff_key, *report_metric_keys]
lowerCAmelCase_ : Optional[Any] = df.reindex(__UpperCamelCase ,axis='''columns''' ) # reorder cols
# capitalize
lowerCAmelCase_ : Any = df.rename(str.capitalize ,axis='''columns''' )
# make the cols as narrow as possible
lowerCAmelCase_ : Optional[Any] = df.rename(lambda __UpperCamelCase : c.replace('''_''' ,'''<br>''' ) ,axis='''columns''' )
lowerCAmelCase_ : Union[str, Any] = df.rename(lambda __UpperCamelCase : c.replace('''_''' ,'''\n''' ) ,axis='''columns''' )
lowerCAmelCase_ : List[str] = ['''''', '''Copy between the cut-here-lines and paste as is to github or a forum''']
report += ["----------8<-----------------8<--------"]
report += ["*** Results:", df_github.to_markdown(index=__UpperCamelCase ,floatfmt='''.2f''' )]
report += ["```"]
report += ["*** Setup:", get_versions()]
report += ["*** The benchmark command line was:", get_original_command()]
report += ["```"]
report += ["----------8<-----------------8<--------"]
report += ["*** Results (console):", df_console.to_markdown(index=__UpperCamelCase ,floatfmt='''.2f''' )]
print('''\n\n'''.join(__UpperCamelCase ) )
def UpperCamelCase( ):
lowerCAmelCase_ : Any = argparse.ArgumentParser()
parser.add_argument(
'''--base-cmd''' ,default=__UpperCamelCase ,type=__UpperCamelCase ,required=__UpperCamelCase ,help='''Base cmd''' ,)
parser.add_argument(
'''--variations''' ,default=__UpperCamelCase ,type=__UpperCamelCase ,nargs='''+''' ,required=__UpperCamelCase ,help='''Multi-dimensional variations, example: \'|--fp16|--bf16\' \'|--tf32\'''' ,)
parser.add_argument(
'''--base-variation''' ,default=__UpperCamelCase ,type=__UpperCamelCase ,help='''Baseline variation to compare to. if None the minimal target value will be used to compare against''' ,)
parser.add_argument(
'''--target-metric-key''' ,default=__UpperCamelCase ,type=__UpperCamelCase ,required=__UpperCamelCase ,help='''Target metric key in output_dir/all_results.json, e.g., train_samples_per_second''' ,)
parser.add_argument(
'''--report-metric-keys''' ,default='''''' ,type=__UpperCamelCase ,help='''Report metric keys - other metric keys from output_dir/all_results.json to report, e.g., train_loss. Use a single argument e.g., \'train_loss train_samples''' ,)
parser.add_argument(
'''--repeat-times''' ,default=1 ,type=__UpperCamelCase ,help='''How many times to re-run each variation - an average will be reported''' ,)
parser.add_argument(
'''--output_dir''' ,default='''output_benchmark''' ,type=__UpperCamelCase ,help='''The output directory where all the benchmark reports will go to and additionally this directory will be used to override --output_dir in the script that is being benchmarked''' ,)
parser.add_argument(
'''--verbose''' ,default=__UpperCamelCase ,action='''store_true''' ,help='''Whether to show the outputs of each run or just the benchmark progress''' ,)
lowerCAmelCase_ : List[Any] = parser.parse_args()
lowerCAmelCase_ : Union[str, Any] = args.output_dir
Path(__UpperCamelCase ).mkdir(exist_ok=__UpperCamelCase )
lowerCAmelCase_ : List[Any] = get_base_command(__UpperCamelCase ,__UpperCamelCase )
# split each dimension into its --foo variations
lowerCAmelCase_ : Dict = [list(map(str.strip ,re.split(R'''\|''' ,__UpperCamelCase ) ) ) for x in args.variations]
# build a cartesian product of dimensions and convert those back into cmd-line arg strings,
# while stripping white space for inputs that were empty
lowerCAmelCase_ : Union[str, Any] = list(map(str.strip ,map(''' '''.join ,itertools.product(*__UpperCamelCase ) ) ) )
lowerCAmelCase_ : int = max(len(__UpperCamelCase ) for x in variations )
# split wanted keys
lowerCAmelCase_ : List[str] = args.report_metric_keys.split()
# capture prints into a log file for convenience
lowerCAmelCase_ : Optional[int] = f"""benchmark-report-{datetime.datetime.now().strftime("%Y-%m-%d-%H-%M-%S" )}.txt"""
print(f"""\nNote: each run's output is also logged under {output_dir}/log.*.std*.txt""" )
print(f"""and this script's output is also piped into {report_fn}""" )
lowerCAmelCase_ : Optional[Any] = Tee(__UpperCamelCase )
print(f"""\n*** Running {len(__UpperCamelCase )} benchmarks:""" )
print(f"""Base command: {" ".join(__UpperCamelCase )}""" )
lowerCAmelCase_ : int = '''variation'''
lowerCAmelCase_ : List[Any] = []
for id, variation in enumerate(tqdm(__UpperCamelCase ,desc='''Total completion: ''' ,leave=__UpperCamelCase ) ):
lowerCAmelCase_ : int = base_cmd + variation.split()
results.append(
process_run(
id + 1 ,__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase ,__UpperCamelCase ,args.target_metric_key ,__UpperCamelCase ,args.repeat_times ,__UpperCamelCase ,args.verbose ,) )
process_results(__UpperCamelCase ,args.target_metric_key ,__UpperCamelCase ,args.base_variation ,__UpperCamelCase )
if __name__ == "__main__":
main()
| 103
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase = 1_000 ) -> int:
return sum(e for e in range(3 , _lowerCAmelCase ) if e % 3 == 0 or e % 5 == 0 )
if __name__ == "__main__":
print(F"{solution() = }")
| 35
| 0
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...file_utils import _LazyModule, is_torch_available
from ...utils import OptionalDependencyNotAvailable
lowerCAmelCase__ = {
'''configuration_gpt_neox_japanese''': ['''GPT_NEOX_JAPANESE_PRETRAINED_CONFIG_ARCHIVE_MAP''', '''GPTNeoXJapaneseConfig'''],
'''tokenization_gpt_neox_japanese''': ['''GPTNeoXJapaneseTokenizer'''],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
lowerCAmelCase__ = [
'''GPT_NEOX_JAPANESE_PRETRAINED_MODEL_ARCHIVE_LIST''',
'''GPTNeoXJapaneseForCausalLM''',
'''GPTNeoXJapaneseLayer''',
'''GPTNeoXJapaneseModel''',
'''GPTNeoXJapanesePreTrainedModel''',
]
if TYPE_CHECKING:
from .configuration_gpt_neox_japanese import GPT_NEOX_JAPANESE_PRETRAINED_CONFIG_ARCHIVE_MAP, GPTNeoXJapaneseConfig
from .tokenization_gpt_neox_japanese import GPTNeoXJapaneseTokenizer
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_gpt_neox_japanese import (
GPT_NEOX_JAPANESE_PRETRAINED_MODEL_ARCHIVE_LIST,
GPTNeoXJapaneseForCausalLM,
GPTNeoXJapaneseLayer,
GPTNeoXJapaneseModel,
GPTNeoXJapanesePreTrainedModel,
)
else:
import sys
lowerCAmelCase__ = _LazyModule(__name__, globals()['''__file__'''], _import_structure, module_spec=__spec__)
| 104
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
__a = {
"configuration_bloom": ["BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP", "BloomConfig", "BloomOnnxConfig"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = ["BloomTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST",
"BloomForCausalLM",
"BloomModel",
"BloomPreTrainedModel",
"BloomForSequenceClassification",
"BloomForTokenClassification",
"BloomForQuestionAnswering",
]
if TYPE_CHECKING:
from .configuration_bloom import BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP, BloomConfig, BloomOnnxConfig
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_bloom_fast import BloomTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_bloom import (
BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST,
BloomForCausalLM,
BloomForQuestionAnswering,
BloomForSequenceClassification,
BloomForTokenClassification,
BloomModel,
BloomPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
"""simple docstring"""
from typing import List, Optional, Tuple
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_herbert import HerbertTokenizer
a : List[str] = logging.get_logger(__name__)
a : List[Any] = {'''vocab_file''': '''vocab.json''', '''merges_file''': '''merges.txt''', '''tokenizer_file''': '''tokenizer.json'''}
a : str = {
'''vocab_file''': {
'''allegro/herbert-base-cased''': '''https://huggingface.co/allegro/herbert-base-cased/resolve/main/vocab.json'''
},
'''merges_file''': {
'''allegro/herbert-base-cased''': '''https://huggingface.co/allegro/herbert-base-cased/resolve/main/merges.txt'''
},
}
a : Tuple = {'''allegro/herbert-base-cased''': 514}
a : Optional[int] = {}
class __UpperCamelCase ( a__ ):
lowerCamelCase : str =VOCAB_FILES_NAMES
lowerCamelCase : Dict =PRETRAINED_VOCAB_FILES_MAP
lowerCamelCase : Dict =PRETRAINED_INIT_CONFIGURATION
lowerCamelCase : int =PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
lowerCamelCase : Optional[Any] =HerbertTokenizer
def __init__( self , lowerCAmelCase__=None , lowerCAmelCase__=None , lowerCAmelCase__=None , lowerCAmelCase__="<s>" , lowerCAmelCase__="<unk>" , lowerCAmelCase__="<pad>" , lowerCAmelCase__="<mask>" , lowerCAmelCase__="</s>" , **lowerCAmelCase__ , ) -> Optional[int]:
super().__init__(
lowerCAmelCase__ , lowerCAmelCase__ , tokenizer_file=lowerCAmelCase__ , cls_token=lowerCAmelCase__ , unk_token=lowerCAmelCase__ , pad_token=lowerCAmelCase__ , mask_token=lowerCAmelCase__ , sep_token=lowerCAmelCase__ , **lowerCAmelCase__ , )
def __a ( self , lowerCAmelCase__ , lowerCAmelCase__ = None ) -> List[int]:
a : Optional[Any] = [self.cls_token_id]
a : Any = [self.sep_token_id]
if token_ids_a is None:
return cls + token_ids_a + sep
return cls + token_ids_a + sep + token_ids_a + sep
def __a ( self , lowerCAmelCase__ , lowerCAmelCase__ = None , lowerCAmelCase__ = False ) -> List[int]:
if already_has_special_tokens:
return super().get_special_tokens_mask(
token_ids_a=lowerCAmelCase__ , token_ids_a=lowerCAmelCase__ , already_has_special_tokens=lowerCAmelCase__ )
if token_ids_a is None:
return [1] + ([0] * len(lowerCAmelCase__ )) + [1]
return [1] + ([0] * len(lowerCAmelCase__ )) + [1] + ([0] * len(lowerCAmelCase__ )) + [1]
def __a ( self , lowerCAmelCase__ , lowerCAmelCase__ = None ) -> List[int]:
a : Dict = [self.sep_token_id]
a : Tuple = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def __a ( self , lowerCAmelCase__ , lowerCAmelCase__ = None ) -> Tuple[str]:
a : List[str] = self._tokenizer.model.save(lowerCAmelCase__ , name=lowerCAmelCase__ )
return tuple(lowerCAmelCase__ )
| 105
|
'''simple docstring'''
from PIL import Image
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Image:
def brightness(_lowerCAmelCase ) -> float:
return 128 + level + (c - 128)
if not -255.0 <= level <= 255.0:
raise ValueError("""level must be between -255.0 (black) and 255.0 (white)""" )
return img.point(_lowerCAmelCase )
if __name__ == "__main__":
# Load image
with Image.open("image_data/lena.jpg") as img:
# Change brightness to 100
__a = change_brightness(img, 100)
brigt_img.save("image_data/lena_brightness.png", format="png")
| 35
| 0
|
"""simple docstring"""
from manim import *
class SCREAMING_SNAKE_CASE ( a_ ):
"""simple docstring"""
def __lowerCAmelCase ( self : List[Any] ):
lowerCAmelCase__ : List[Any] = Rectangle(height=0.5 ,width=0.5 )
lowerCAmelCase__ : Union[str, Any] = Rectangle(height=0.46 ,width=0.46 ).set_stroke(width=0 )
lowerCAmelCase__ : Dict = Rectangle(height=0.25 ,width=0.25 )
lowerCAmelCase__ : Tuple = [mem.copy() for i in range(6 )]
lowerCAmelCase__ : Any = [mem.copy() for i in range(6 )]
lowerCAmelCase__ : List[Any] = VGroup(*lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : Optional[int] = VGroup(*lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : Dict = VGroup(lowercase_ ,lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : Dict = Text('''CPU''' ,font_size=2_4 )
lowerCAmelCase__ : Optional[int] = Group(lowercase_ ,lowercase_ ).arrange(lowercase_ ,buff=0.5 ,aligned_edge=lowercase_ )
cpu.move_to([-2.5, -0.5, 0] )
self.add(lowercase_ )
lowerCAmelCase__ : str = [mem.copy() for i in range(4 )]
lowerCAmelCase__ : Dict = VGroup(*lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : List[Any] = Text('''GPU''' ,font_size=2_4 )
lowerCAmelCase__ : List[str] = Group(lowercase_ ,lowercase_ ).arrange(lowercase_ ,buff=0.5 ,aligned_edge=lowercase_ )
gpu.move_to([-1, -1, 0] )
self.add(lowercase_ )
lowerCAmelCase__ : int = [mem.copy() for i in range(6 )]
lowerCAmelCase__ : str = VGroup(*lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : int = Text('''Model''' ,font_size=2_4 )
lowerCAmelCase__ : Optional[int] = Group(lowercase_ ,lowercase_ ).arrange(lowercase_ ,buff=0.5 ,aligned_edge=lowercase_ )
model.move_to([3, -1.0, 0] )
self.add(lowercase_ )
lowerCAmelCase__ : Dict = []
lowerCAmelCase__ : Tuple = []
for i, rect in enumerate(lowercase_ ):
lowerCAmelCase__ : Optional[Any] = fill.copy().set_fill(lowercase_ ,opacity=0.8 )
target.move_to(lowercase_ )
model_arr.append(lowercase_ )
lowerCAmelCase__ : int = Rectangle(height=0.46 ,width=0.46 ).set_stroke(width=0.0 ).set_fill(lowercase_ ,opacity=0.8 )
cpu_target.move_to(cpu_left_col_base[i] )
model_cpu_arr.append(lowercase_ )
self.add(*lowercase_ ,*lowercase_ )
lowerCAmelCase__ : Any = [meta_mem.copy() for i in range(6 )]
lowerCAmelCase__ : Tuple = [meta_mem.copy() for i in range(6 )]
lowerCAmelCase__ : Optional[int] = VGroup(*lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : Tuple = VGroup(*lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : Tuple = VGroup(lowercase_ ,lowercase_ ).arrange(lowercase_ ,buff=0 )
lowerCAmelCase__ : Dict = Text('''Disk''' ,font_size=2_4 )
lowerCAmelCase__ : int = Group(lowercase_ ,lowercase_ ).arrange(lowercase_ ,buff=0.5 ,aligned_edge=lowercase_ )
disk.move_to([-4, -1.25, 0] )
self.add(lowercase_ ,lowercase_ )
lowerCAmelCase__ : Optional[Any] = Square(side_length=2.2 )
key.move_to([-5, 2, 0] )
lowerCAmelCase__ : str = MarkupText(
F'<b>Key:</b>\n\n<span fgcolor=\'{YELLOW}\'>●</span> Empty Model' ,font_size=1_8 ,)
key_text.move_to([-5, 2.4, 0] )
self.add(lowercase_ ,lowercase_ )
lowerCAmelCase__ : Dict = MarkupText(
F'<span fgcolor=\'{BLUE}\'>●</span> Checkpoint' ,font_size=1_8 ,)
blue_text.next_to(lowercase_ ,DOWN * 2.4 ,aligned_edge=key_text.get_left() )
self.add(lowercase_ )
lowerCAmelCase__ : List[str] = MarkupText(
F'Now watch as an input is passed through the model\nand how the memory is utilized and handled.' ,font_size=2_4 ,)
step_a.move_to([2, 2, 0] )
self.play(Write(lowercase_ ) )
lowerCAmelCase__ : List[Any] = Square(0.3 )
input.set_fill(lowercase_ ,opacity=1.0 )
input.set_stroke(width=0.0 )
input.next_to(model_base[0] ,lowercase_ ,buff=0.5 )
self.play(Write(lowercase_ ) )
input.generate_target()
input.target.next_to(model_arr[0] ,direction=lowercase_ ,buff=0.02 )
self.play(MoveToTarget(lowercase_ ) )
self.play(FadeOut(lowercase_ ) )
lowerCAmelCase__ : str = Arrow(start=lowercase_ ,end=lowercase_ ,color=lowercase_ ,buff=0.5 )
a.next_to(model_arr[0].get_left() ,lowercase_ ,buff=0.2 )
model_cpu_arr[0].generate_target()
model_cpu_arr[0].target.move_to(gpu_rect[0] )
lowerCAmelCase__ : Tuple = MarkupText(
F'As the input reaches a layer, the hook triggers\nand weights are moved from the CPU\nto the GPU and back.' ,font_size=2_4 ,)
step_a.move_to([2, 2, 0] )
self.play(Write(lowercase_ ,run_time=3 ) )
lowerCAmelCase__ : Optional[int] = {'''run_time''': 1, '''fade_in''': True, '''fade_out''': True, '''buff''': 0.02}
self.play(
Write(lowercase_ ) ,Circumscribe(model_arr[0] ,color=lowercase_ ,**lowercase_ ) ,Circumscribe(model_cpu_arr[0] ,color=lowercase_ ,**lowercase_ ) ,Circumscribe(gpu_rect[0] ,color=lowercase_ ,**lowercase_ ) ,)
self.play(MoveToTarget(model_cpu_arr[0] ) )
lowerCAmelCase__ : List[Any] = a.copy()
for i in range(6 ):
a_c.next_to(model_arr[i].get_right() + 0.02 ,lowercase_ ,buff=0.2 )
input.generate_target()
input.target.move_to(model_arr[i].get_right() + 0.02 )
lowerCAmelCase__ : List[str] = AnimationGroup(
FadeOut(lowercase_ ,run_time=0.5 ) ,MoveToTarget(lowercase_ ,run_time=0.5 ) ,FadeIn(lowercase_ ,run_time=0.5 ) ,lag_ratio=0.2 )
self.play(lowercase_ )
model_cpu_arr[i].generate_target()
model_cpu_arr[i].target.move_to(cpu_left_col_base[i] )
if i < 5:
model_cpu_arr[i + 1].generate_target()
model_cpu_arr[i + 1].target.move_to(gpu_rect[0] )
if i >= 1:
lowerCAmelCase__ : Union[str, Any] = 0.7
self.play(
Circumscribe(model_arr[i] ,**lowercase_ ) ,Circumscribe(cpu_left_col_base[i] ,**lowercase_ ) ,Circumscribe(cpu_left_col_base[i + 1] ,color=lowercase_ ,**lowercase_ ) ,Circumscribe(gpu_rect[0] ,color=lowercase_ ,**lowercase_ ) ,Circumscribe(model_arr[i + 1] ,color=lowercase_ ,**lowercase_ ) ,)
if i < 1:
self.play(
MoveToTarget(model_cpu_arr[i] ) ,MoveToTarget(model_cpu_arr[i + 1] ) ,)
else:
self.play(
MoveToTarget(model_cpu_arr[i] ,run_time=0.7 ) ,MoveToTarget(model_cpu_arr[i + 1] ,run_time=0.7 ) ,)
else:
model_cpu_arr[i].generate_target()
model_cpu_arr[i].target.move_to(cpu_left_col_base[-1] )
input.generate_target()
input.target.next_to(model_arr[-1].get_right() ,RIGHT + 0.02 ,buff=0.2 )
self.play(
Circumscribe(model_arr[-1] ,color=lowercase_ ,**lowercase_ ) ,Circumscribe(cpu_left_col_base[-1] ,color=lowercase_ ,**lowercase_ ) ,Circumscribe(gpu_rect[0] ,color=lowercase_ ,**lowercase_ ) ,)
self.play(MoveToTarget(model_cpu_arr[i] ) )
lowerCAmelCase__ : List[str] = a_c
lowerCAmelCase__ : str = a_c.copy()
input.generate_target()
input.target.next_to(model_base[-1] ,RIGHT + 0.02 ,buff=0.5 )
self.play(
FadeOut(lowercase_ ) ,FadeOut(lowercase_ ,run_time=0.5 ) ,)
lowerCAmelCase__ : List[Any] = MarkupText(F'Inference on a model too large for GPU memory\nis successfully completed.' ,font_size=2_4 )
step_a.move_to([2, 2, 0] )
self.play(Write(lowercase_ ,run_time=3 ) ,MoveToTarget(lowercase_ ) )
self.wait()
| 106
|
'''simple docstring'''
import argparse
import os
import re
__a = "src/transformers"
# Pattern that looks at the indentation in a line.
__a = re.compile(R"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
__a = re.compile(R"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
__a = re.compile(R"\[([^\]]+)\]")
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : int = _re_indent.search(_lowerCAmelCase )
return "" if search is None else search.groups()[0]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase="" , _lowerCAmelCase=None , _lowerCAmelCase=None ) -> List[str]:
snake_case__ : str = 0
snake_case__ : Union[str, Any] = code.split("""\n""" )
if start_prompt is not None:
while not lines[index].startswith(_lowerCAmelCase ):
index += 1
snake_case__ : Tuple = ["""\n""".join(lines[:index] )]
else:
snake_case__ : List[str] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
snake_case__ : Optional[int] = [lines[index]]
index += 1
while index < len(_lowerCAmelCase ) and (end_prompt is None or not lines[index].startswith(_lowerCAmelCase )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(_lowerCAmelCase ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + """ """ ):
current_block.append(lines[index] )
blocks.append("""\n""".join(_lowerCAmelCase ) )
if index < len(_lowerCAmelCase ) - 1:
snake_case__ : str = [lines[index + 1]]
index += 1
else:
snake_case__ : int = []
else:
blocks.append("""\n""".join(_lowerCAmelCase ) )
snake_case__ : Optional[Any] = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(_lowerCAmelCase ) > 0:
blocks.append("""\n""".join(_lowerCAmelCase ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(_lowerCAmelCase ):
blocks.append("""\n""".join(lines[index:] ) )
return blocks
def __snake_case( _lowerCAmelCase ) -> Tuple:
def _inner(_lowerCAmelCase ):
return key(_lowerCAmelCase ).lower().replace("""_""" , """""" )
return _inner
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=None ) -> List[Any]:
# If no key is provided, we use a noop.
def noop(_lowerCAmelCase ):
return x
if key is None:
snake_case__ : Optional[int] = noop
# Constants are all uppercase, they go first.
snake_case__ : Optional[int] = [obj for obj in objects if key(_lowerCAmelCase ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
snake_case__ : int = [obj for obj in objects if key(_lowerCAmelCase )[0].isupper() and not key(_lowerCAmelCase ).isupper()]
# Functions begin with a lowercase, they go last.
snake_case__ : str = [obj for obj in objects if not key(_lowerCAmelCase )[0].isupper()]
snake_case__ : List[str] = ignore_underscore(_lowerCAmelCase )
return sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> int:
# This inner function sort imports between [ ].
def _replace(_lowerCAmelCase ):
snake_case__ : Union[str, Any] = match.groups()[0]
if "," not in imports:
return f"[{imports}]"
snake_case__ : int = [part.strip().replace("""\"""" , """""" ) for part in imports.split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
return "[" + ", ".join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] ) + "]"
snake_case__ : str = import_statement.split("""\n""" )
if len(_lowerCAmelCase ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
snake_case__ : Dict = 2 if lines[1].strip() == """[""" else 1
snake_case__ : str = [(i, _re_strip_line.search(_lowerCAmelCase ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
snake_case__ : str = sort_objects(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )
snake_case__ : Union[str, Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(_lowerCAmelCase ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
snake_case__ : Union[str, Any] = _re_bracket_content.sub(_replace , lines[1] )
else:
snake_case__ : List[Any] = [part.strip().replace("""\"""" , """""" ) for part in lines[1].split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
snake_case__ : int = get_indent(lines[1] ) + """, """.join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] )
return "\n".join(_lowerCAmelCase )
else:
# Finally we have to deal with imports fitting on one line
snake_case__ : Optional[Any] = _re_bracket_content.sub(_replace , _lowerCAmelCase )
return import_statement
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=True ) -> Dict:
with open(_lowerCAmelCase , encoding="""utf-8""" ) as f:
snake_case__ : Optional[int] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
snake_case__ : Optional[int] = split_code_in_indented_blocks(
_lowerCAmelCase , start_prompt="""_import_structure = {""" , end_prompt="""if TYPE_CHECKING:""" )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(_lowerCAmelCase ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
snake_case__ : Optional[Any] = main_blocks[block_idx]
snake_case__ : Dict = block.split("""\n""" )
# Get to the start of the imports.
snake_case__ : Dict = 0
while line_idx < len(_lowerCAmelCase ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
else:
line_idx += 1
if line_idx >= len(_lowerCAmelCase ):
continue
# Ignore beginning and last line: they don't contain anything.
snake_case__ : List[str] = """\n""".join(block_lines[line_idx:-1] )
snake_case__ : str = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
snake_case__ : Optional[int] = split_code_in_indented_blocks(_lowerCAmelCase , indent_level=_lowerCAmelCase )
# We have two categories of import key: list or _import_structure[key].append/extend
snake_case__ : Tuple = _re_direct_key if """_import_structure = {""" in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
snake_case__ : Optional[Any] = [(pattern.search(_lowerCAmelCase ).groups()[0] if pattern.search(_lowerCAmelCase ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
snake_case__ : Dict = [(i, key) for i, key in enumerate(_lowerCAmelCase ) if key is not None]
snake_case__ : Union[str, Any] = [x[0] for x in sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
snake_case__ : List[Any] = 0
snake_case__ : Optional[Any] = []
for i in range(len(_lowerCAmelCase ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
snake_case__ : Optional[Any] = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(_lowerCAmelCase )
count += 1
# And we put our main block back together with its first and last line.
snake_case__ : Dict = """\n""".join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(_lowerCAmelCase ):
if check_only:
return True
else:
print(f"Overwriting {file}." )
with open(_lowerCAmelCase , """w""" , encoding="""utf-8""" ) as f:
f.write("""\n""".join(_lowerCAmelCase ) )
def __snake_case( _lowerCAmelCase=True ) -> Tuple:
snake_case__ : str = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
snake_case__ : Union[str, Any] = sort_imports(os.path.join(_lowerCAmelCase , """__init__.py""" ) , check_only=_lowerCAmelCase )
if result:
snake_case__ : Union[str, Any] = [os.path.join(_lowerCAmelCase , """__init__.py""" )]
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"Would overwrite {len(_lowerCAmelCase )} files, run `make style`." )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
__a = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 35
| 0
|
import importlib.metadata
import operator
import re
import sys
from typing import Optional
from packaging import version
__lowerCAmelCase : Union[str, Any] = {
'<': operator.lt,
'<=': operator.le,
'==': operator.eq,
'!=': operator.ne,
'>=': operator.ge,
'>': operator.gt,
}
def __magic_name__ ( A : List[Any], A : List[Any], A : str, A : List[str], A : Optional[Any], A : Union[str, Any] ):
'''simple docstring'''
if got_ver is None or want_ver is None:
raise ValueError(
F"""Unable to compare versions for {requirement}: need={want_ver} found={got_ver}. This is unusual. Consider"""
F""" reinstalling {pkg}.""" )
if not ops[op](version.parse(A ), version.parse(A ) ):
raise ImportError(
F"""{requirement} is required for a normal functioning of this module, but found {pkg}=={got_ver}.{hint}""" )
def __magic_name__ ( A : str, A : Optional[str] = None ):
'''simple docstring'''
a = F"""\n{hint}""" if hint is not None else ""
# non-versioned check
if re.match(R"^[\w_\-\d]+$", A ):
a , a , a = requirement, None, None
else:
a = re.findall(R"^([^!=<>\s]+)([\s!=<>]{1,2}.+)", A )
if not match:
raise ValueError(
"requirement needs to be in the pip package format, .e.g., package_a==1.23, or package_b>=1.23, but"
F""" got {requirement}""" )
a , a = match[0]
a = want_full.split("," ) # there could be multiple requirements
a = {}
for w in want_range:
a = re.findall(R"^([\s!=<>]{1,2})(.+)", A )
if not match:
raise ValueError(
"requirement needs to be in the pip package format, .e.g., package_a==1.23, or package_b>=1.23,"
F""" but got {requirement}""" )
a , a = match[0]
a = want_ver
if op not in ops:
raise ValueError(F"""{requirement}: need one of {list(ops.keys() )}, but got {op}""" )
# special case
if pkg == "python":
a = ".".join([str(A ) for x in sys.version_info[:3]] )
for op, want_ver in wanted.items():
_compare_versions(A, A, A, A, A, A )
return
# check if any version is installed
try:
a = importlib.metadata.version(A )
except importlib.metadata.PackageNotFoundError:
raise importlib.metadata.PackageNotFoundError(
F"""The '{requirement}' distribution was not found and is required by this application. {hint}""" )
# check that the right version is installed if version number or a range was provided
if want_ver is not None:
for op, want_ver in wanted.items():
_compare_versions(A, A, A, A, A, A )
def __magic_name__ ( A : Optional[int] ):
'''simple docstring'''
a = "Try: pip install transformers -U or pip install -e '.[dev]' if you're working with git main"
return require_version(A, A )
| 107
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available
__a = {
"configuration_timesformer": ["TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "TimesformerConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"TimesformerModel",
"TimesformerForVideoClassification",
"TimesformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_timesformer import TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, TimesformerConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_timesformer import (
TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
TimesformerForVideoClassification,
TimesformerModel,
TimesformerPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
"""simple docstring"""
def a__ ( SCREAMING_SNAKE_CASE : int , SCREAMING_SNAKE_CASE : int ):
'''simple docstring'''
return x if y == 0 else greatest_common_divisor(SCREAMING_SNAKE_CASE , x % y )
def a__ ( SCREAMING_SNAKE_CASE : int , SCREAMING_SNAKE_CASE : int ):
'''simple docstring'''
return (x * y) // greatest_common_divisor(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE )
def a__ ( SCREAMING_SNAKE_CASE : int = 2_0 ):
'''simple docstring'''
lowerCAmelCase : int = 1
for i in range(1 , n + 1 ):
lowerCAmelCase : List[str] = lcm(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE )
return g
if __name__ == "__main__":
print(F"{solution() = }")
| 108
|
'''simple docstring'''
import argparse
import json
import os
import fairseq
import torch
from torch import nn
from transformers import (
SpeechaTextaConfig,
SpeechaTextaForCausalLM,
SpeechaTextaTokenizer,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
__a = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
__a = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Union[str, Any]:
for attribute in key.split(""".""" ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
if weight_type is not None:
snake_case__ : List[Any] = getattr(_lowerCAmelCase , _lowerCAmelCase ).shape
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
assert hf_shape == value.shape, (
f"Shape of hf {key + '.' + weight_type if weight_type is not None else ''} is {hf_shape}, but should be"
f" {value.shape} for {full_name}"
)
if weight_type == "weight":
snake_case__ : int = value
elif weight_type == "weight_g":
snake_case__ : List[str] = value
elif weight_type == "weight_v":
snake_case__ : List[str] = value
elif weight_type == "bias":
snake_case__ : Optional[Any] = value
else:
snake_case__ : str = value
logger.info(f"{key + '.' + weight_type if weight_type is not None else ''} was initialized from {full_name}." )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Any:
snake_case__ : Union[str, Any] = []
snake_case__ : Dict = fairseq_model.state_dict()
snake_case__ : List[Any] = hf_model.feature_extractor
# if encoder has different dim to decoder -> use proj_weight
snake_case__ : Optional[int] = None
for name, value in fairseq_dict.items():
snake_case__ : List[Any] = False
if "conv_layers" in name:
load_conv_layer(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , hf_model.config.feat_extract_norm == """group""" , )
snake_case__ : Union[str, Any] = True
elif name.split(""".""" )[0] == "proj":
snake_case__ : Tuple = fairseq_model.proj
snake_case__ : int = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split("""w2v_model.""" )[-1] == name.split(""".""" )[0]:
snake_case__ : Optional[Any] = True
if "*" in mapped_key:
snake_case__ : Optional[int] = name.split(_lowerCAmelCase )[0].split(""".""" )[-2]
snake_case__ : Tuple = mapped_key.replace("""*""" , _lowerCAmelCase )
if "weight_g" in name:
snake_case__ : str = """weight_g"""
elif "weight_v" in name:
snake_case__ : int = """weight_v"""
elif "bias" in name:
snake_case__ : Dict = """bias"""
elif "weight" in name:
snake_case__ : Union[str, Any] = """weight"""
else:
snake_case__ : Union[str, Any] = None
set_recursively(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
continue
if not is_used:
unused_weights.append(_lowerCAmelCase )
logger.warning(f"Unused weights: {unused_weights}" )
return proj_weight
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : int = full_name.split("""conv_layers.""" )[-1]
snake_case__ : Dict = name.split(""".""" )
snake_case__ : Any = int(items[0] )
snake_case__ : Optional[Any] = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found."
)
snake_case__ : str = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
f"{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was"
" found."
)
snake_case__ : Union[str, Any] = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor[layer_id].layer_norm.weight.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
else:
unused_weights.append(_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ , snake_case__ : str = emb.weight.shape
snake_case__ : List[str] = nn.Linear(_lowerCAmelCase , _lowerCAmelCase , bias=_lowerCAmelCase )
snake_case__ : List[str] = emb.weight.data
return lin_layer
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
with open(_lowerCAmelCase , """r""" , encoding="""utf-8""" ) as f:
snake_case__ : int = f.readlines()
snake_case__ : List[Any] = [line.split(""" """ )[0] for line in lines]
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
snake_case__ : Any = {
"""<s>""": 0,
"""<pad>""": 1,
"""</s>""": 2,
"""<unk>""": 3,
}
vocab_dict.update(dict(zip(_lowerCAmelCase , range(4 , num_words + 4 ) ) ) )
return vocab_dict
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , ) -> int:
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaConfig.from_pretrained(
_lowerCAmelCase , vocab_size=_lowerCAmelCase , decoder_layers=_lowerCAmelCase , do_stable_layer_norm=_lowerCAmelCase )
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=16_000 , padding_value=0 , do_normalize=_lowerCAmelCase , return_attention_mask=_lowerCAmelCase , )
snake_case__ , snake_case__ , snake_case__ : Union[str, Any] = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={"""data""": """/""".join(dict_path.split("""/""" )[:-1] )} )
snake_case__ : Tuple = model[0].eval()
# set weights for wav2vec2 encoder
snake_case__ : Optional[Any] = WavaVecaModel(_lowerCAmelCase )
snake_case__ : Dict = recursively_load_weights_wavaveca(model.encoder , _lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaForCausalLM(_lowerCAmelCase )
snake_case__ , snake_case__ : Tuple = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=_lowerCAmelCase )
# set output linear layer
unexpected_keys.remove("""embed_out""" )
snake_case__ : Tuple = nn.Parameter(model.decoder.embed_out.detach() )
# layer norm is init to identity matrix so leaving it is fine
logger.warning(f"The following keys are missing when loading the decoder weights: {missing_keys}" )
logger.warning(f"The following keys are unexpected when loading the decoder weights: {unexpected_keys}" )
snake_case__ : List[Any] = SpeechEncoderDecoderModel(encoder=_lowerCAmelCase , decoder=_lowerCAmelCase )
snake_case__ : Tuple = False
# add projection layer
snake_case__ : Union[str, Any] = nn.Parameter(projection_layer.weight )
snake_case__ : int = nn.Parameter(projection_layer.bias )
snake_case__ : Tuple = create_vocab_dict(_lowerCAmelCase )
with open(os.path.join(_lowerCAmelCase , """vocab.json""" ) , """w""" ) as fp:
json.dump(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Tuple = SpeechaTextaTokenizer(os.path.join(_lowerCAmelCase , """vocab.json""" ) )
tokenizer.save_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Optional[Any] = tokenizer.bos_token_id
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : str = """speech_to_text_2"""
snake_case__ : List[Any] = """wav2vec2"""
snake_case__ : List[str] = SpeechEncoderDecoderConfig.from_dict(_lowerCAmelCase )
hf_wavavec.save_pretrained(_lowerCAmelCase )
feature_extractor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-large-lv60",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/s2t-small-mustc-en-fr-st",
type=str,
help="Path to hf decoder s2t checkpoint config",
)
parser.add_argument("--vocab_size", default=1_0224, type=int, help="Vocab size of decoder")
parser.add_argument("--num_decoder_layers", default=7, type=int, help="Number of decoder layers")
__a = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
vocab_size=args.vocab_size,
num_decoder_layers=args.num_decoder_layers,
)
| 35
| 0
|
"""simple docstring"""
import inspect
import warnings
from typing import Any, Dict, Optional, Union
from packaging import version
def _snake_case ( *UpperCamelCase : str , UpperCamelCase : Optional[Union[Dict, Any]] = None , UpperCamelCase : Tuple=True , UpperCamelCase : Optional[int]=2 ):
from .. import __version__
UpperCAmelCase : Tuple = take_from
UpperCAmelCase : Optional[Any] = ()
if not isinstance(args[0] , UpperCamelCase ):
UpperCAmelCase : List[str] = (args,)
for attribute, version_name, message in args:
if version.parse(version.parse(UpperCamelCase ).base_version ) >= version.parse(UpperCamelCase ):
raise ValueError(
F"The deprecation tuple {(attribute, version_name, message)} should be removed since diffusers'"
F" version {__version__} is >= {version_name}" )
UpperCAmelCase : Optional[int] = None
if isinstance(UpperCamelCase , UpperCamelCase ) and attribute in deprecated_kwargs:
values += (deprecated_kwargs.pop(UpperCamelCase ),)
UpperCAmelCase : List[str] = F"The `{attribute}` argument is deprecated and will be removed in version {version_name}."
elif hasattr(UpperCamelCase , UpperCamelCase ):
values += (getattr(UpperCamelCase , UpperCamelCase ),)
UpperCAmelCase : List[Any] = F"The `{attribute}` attribute is deprecated and will be removed in version {version_name}."
elif deprecated_kwargs is None:
UpperCAmelCase : int = F"`{attribute}` is deprecated and will be removed in version {version_name}."
if warning is not None:
UpperCAmelCase : Optional[Any] = warning + """ """ if standard_warn else """"""
warnings.warn(warning + message , UpperCamelCase , stacklevel=UpperCamelCase )
if isinstance(UpperCamelCase , UpperCamelCase ) and len(UpperCamelCase ) > 0:
UpperCAmelCase : Optional[int] = inspect.getouterframes(inspect.currentframe() )[1]
UpperCAmelCase : Union[str, Any] = call_frame.filename
UpperCAmelCase : List[Any] = call_frame.lineno
UpperCAmelCase : List[str] = call_frame.function
UpperCAmelCase , UpperCAmelCase : Optional[int] = next(iter(deprecated_kwargs.items() ) )
raise TypeError(F"{function} in {filename} line {line_number-1} got an unexpected keyword argument `{key}`" )
if len(UpperCamelCase ) == 0:
return
elif len(UpperCamelCase ) == 1:
return values[0]
return values
| 109
|
'''simple docstring'''
import importlib
import os
import sys
# This is required to make the module import works (when the python process is running from the root of the repo)
sys.path.append(".")
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = test_file.split(os.path.sep )
if components[0:2] != ["tests", "models"]:
raise ValueError(
"""`test_file` should start with `tests/models/` (with `/` being the OS specific path separator). Got """
f"{test_file} instead." )
snake_case__ : Dict = components[-1]
if not test_fn.endswith("""py""" ):
raise ValueError(f"`test_file` should be a python file. Got {test_fn} instead." )
if not test_fn.startswith("""test_modeling_""" ):
raise ValueError(
f"`test_file` should point to a file name of the form `test_modeling_*.py`. Got {test_fn} instead." )
snake_case__ : int = components[:-1] + [test_fn.replace(""".py""" , """""" )]
snake_case__ : int = """.""".join(_lowerCAmelCase )
return test_module_path
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ : str = get_module_path(_lowerCAmelCase )
snake_case__ : Union[str, Any] = importlib.import_module(_lowerCAmelCase )
return test_module
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : List[Any] = []
snake_case__ : Optional[int] = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
if attr.endswith("""ModelTester""" ):
tester_classes.append(getattr(_lowerCAmelCase , _lowerCAmelCase ) )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : List[str] = []
snake_case__ : Any = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
# (TF/Flax)ModelTesterMixin is also an attribute in specific model test module. Let's exclude them by checking
# `all_model_classes` is not empty (which also excludes other special classes).
snake_case__ : List[str] = getattr(_lowerCAmelCase , """all_model_classes""" , [] )
if len(_lowerCAmelCase ) > 0:
test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : Any = get_test_classes(_lowerCAmelCase )
snake_case__ : Optional[Any] = set()
for test_class in test_classes:
model_classes.update(test_class.all_model_classes )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
snake_case__ : Optional[int] = test_class()
if hasattr(_lowerCAmelCase , """setUp""" ):
test.setUp()
snake_case__ : Any = None
if hasattr(_lowerCAmelCase , """model_tester""" ):
# `(TF/Flax)ModelTesterMixin` has this attribute default to `None`. Let's skip this case.
if test.model_tester is not None:
snake_case__ : Tuple = test.model_tester.__class__
return model_tester
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : Union[str, Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : str = []
for test_class in test_classes:
if model_class in test_class.all_model_classes:
target_test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Tuple:
snake_case__ : Optional[Any] = get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Union[str, Any] = []
for test_class in test_classes:
snake_case__ : Tuple = get_model_tester_from_test_class(_lowerCAmelCase )
if tester_class is not None:
tester_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Union[str, Any]:
snake_case__ : Optional[Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : Union[str, Any] = {test_class: get_model_tester_from_test_class(_lowerCAmelCase ) for test_class in test_classes}
return test_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Any = get_model_classes(_lowerCAmelCase )
snake_case__ : Any = {
model_class: get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_test_mapping
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Union[str, Any] = get_model_classes(_lowerCAmelCase )
snake_case__ : str = {
model_class: get_tester_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_to_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
if isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o.__name__
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return [to_json(_lowerCAmelCase ) for x in o]
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return {to_json(_lowerCAmelCase ): to_json(_lowerCAmelCase ) for k, v in o.items()}
else:
return o
| 35
| 0
|
import argparse
import json
from pathlib import Path
import requests
import torch
from huggingface_hub import cached_download, hf_hub_download, hf_hub_url
from PIL import Image
from transformers import DetaConfig, DetaForObjectDetection, DetaImageProcessor, SwinConfig
from transformers.utils import logging
logging.set_verbosity_info()
lowerCAmelCase = logging.get_logger(__name__)
def _a ( SCREAMING_SNAKE_CASE ):
"""simple docstring"""
lowercase__ = SwinConfig(
embed_dim=1_92 , depths=(2, 2, 18, 2) , num_heads=(6, 12, 24, 48) , window_size=12 , out_features=['''stage2''', '''stage3''', '''stage4'''] , )
lowercase__ = DetaConfig(
backbone_config=SCREAMING_SNAKE_CASE , num_queries=9_00 , encoder_ffn_dim=20_48 , decoder_ffn_dim=20_48 , num_feature_levels=5 , assign_first_stage=SCREAMING_SNAKE_CASE , with_box_refine=SCREAMING_SNAKE_CASE , two_stage=SCREAMING_SNAKE_CASE , )
# set labels
lowercase__ = '''huggingface/label-files'''
if "o365" in model_name:
lowercase__ = 3_66
lowercase__ = '''object365-id2label.json'''
else:
lowercase__ = 91
lowercase__ = '''coco-detection-id2label.json'''
lowercase__ = num_labels
lowercase__ = json.load(open(cached_download(hf_hub_url(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , repo_type='''dataset''' ) ) , '''r''' ) )
lowercase__ = {int(SCREAMING_SNAKE_CASE ): v for k, v in idalabel.items()}
lowercase__ = idalabel
lowercase__ = {v: k for k, v in idalabel.items()}
return config
def _a ( SCREAMING_SNAKE_CASE ):
"""simple docstring"""
lowercase__ = []
# stem
# fmt: off
rename_keys.append(('''backbone.0.body.patch_embed.proj.weight''', '''model.backbone.model.embeddings.patch_embeddings.projection.weight''') )
rename_keys.append(('''backbone.0.body.patch_embed.proj.bias''', '''model.backbone.model.embeddings.patch_embeddings.projection.bias''') )
rename_keys.append(('''backbone.0.body.patch_embed.norm.weight''', '''model.backbone.model.embeddings.norm.weight''') )
rename_keys.append(('''backbone.0.body.patch_embed.norm.bias''', '''model.backbone.model.embeddings.norm.bias''') )
# stages
for i in range(len(config.backbone_config.depths ) ):
for j in range(config.backbone_config.depths[i] ):
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.norm1.weight', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.layernorm_before.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.norm1.bias', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.layernorm_before.bias') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.attn.relative_position_bias_table', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_bias_table') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.attn.relative_position_index', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.attention.self.relative_position_index') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.attn.proj.weight', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.attn.proj.bias', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.attention.output.dense.bias') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.norm2.weight', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.layernorm_after.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.norm2.bias', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.layernorm_after.bias') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.mlp.fc1.weight', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.mlp.fc1.bias', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.intermediate.dense.bias') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.mlp.fc2.weight', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.output.dense.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.blocks.{j}.mlp.fc2.bias', f'model.backbone.model.encoder.layers.{i}.blocks.{j}.output.dense.bias') )
if i < 3:
rename_keys.append((f'backbone.0.body.layers.{i}.downsample.reduction.weight', f'model.backbone.model.encoder.layers.{i}.downsample.reduction.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.downsample.norm.weight', f'model.backbone.model.encoder.layers.{i}.downsample.norm.weight') )
rename_keys.append((f'backbone.0.body.layers.{i}.downsample.norm.bias', f'model.backbone.model.encoder.layers.{i}.downsample.norm.bias') )
rename_keys.append(('''backbone.0.body.norm1.weight''', '''model.backbone.model.hidden_states_norms.stage2.weight''') )
rename_keys.append(('''backbone.0.body.norm1.bias''', '''model.backbone.model.hidden_states_norms.stage2.bias''') )
rename_keys.append(('''backbone.0.body.norm2.weight''', '''model.backbone.model.hidden_states_norms.stage3.weight''') )
rename_keys.append(('''backbone.0.body.norm2.bias''', '''model.backbone.model.hidden_states_norms.stage3.bias''') )
rename_keys.append(('''backbone.0.body.norm3.weight''', '''model.backbone.model.hidden_states_norms.stage4.weight''') )
rename_keys.append(('''backbone.0.body.norm3.bias''', '''model.backbone.model.hidden_states_norms.stage4.bias''') )
# transformer encoder
for i in range(config.encoder_layers ):
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.sampling_offsets.weight', f'model.encoder.layers.{i}.self_attn.sampling_offsets.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.sampling_offsets.bias', f'model.encoder.layers.{i}.self_attn.sampling_offsets.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.attention_weights.weight', f'model.encoder.layers.{i}.self_attn.attention_weights.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.attention_weights.bias', f'model.encoder.layers.{i}.self_attn.attention_weights.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.value_proj.weight', f'model.encoder.layers.{i}.self_attn.value_proj.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.value_proj.bias', f'model.encoder.layers.{i}.self_attn.value_proj.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.output_proj.weight', f'model.encoder.layers.{i}.self_attn.output_proj.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.self_attn.output_proj.bias', f'model.encoder.layers.{i}.self_attn.output_proj.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.norm1.weight', f'model.encoder.layers.{i}.self_attn_layer_norm.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.norm1.bias', f'model.encoder.layers.{i}.self_attn_layer_norm.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.linear1.weight', f'model.encoder.layers.{i}.fc1.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.linear1.bias', f'model.encoder.layers.{i}.fc1.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.linear2.weight', f'model.encoder.layers.{i}.fc2.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.linear2.bias', f'model.encoder.layers.{i}.fc2.bias') )
rename_keys.append((f'transformer.encoder.layers.{i}.norm2.weight', f'model.encoder.layers.{i}.final_layer_norm.weight') )
rename_keys.append((f'transformer.encoder.layers.{i}.norm2.bias', f'model.encoder.layers.{i}.final_layer_norm.bias') )
# transformer decoder
for i in range(config.decoder_layers ):
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.sampling_offsets.weight', f'model.decoder.layers.{i}.encoder_attn.sampling_offsets.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.sampling_offsets.bias', f'model.decoder.layers.{i}.encoder_attn.sampling_offsets.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.attention_weights.weight', f'model.decoder.layers.{i}.encoder_attn.attention_weights.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.attention_weights.bias', f'model.decoder.layers.{i}.encoder_attn.attention_weights.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.value_proj.weight', f'model.decoder.layers.{i}.encoder_attn.value_proj.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.value_proj.bias', f'model.decoder.layers.{i}.encoder_attn.value_proj.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.output_proj.weight', f'model.decoder.layers.{i}.encoder_attn.output_proj.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.cross_attn.output_proj.bias', f'model.decoder.layers.{i}.encoder_attn.output_proj.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.norm1.weight', f'model.decoder.layers.{i}.encoder_attn_layer_norm.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.norm1.bias', f'model.decoder.layers.{i}.encoder_attn_layer_norm.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.self_attn.out_proj.weight', f'model.decoder.layers.{i}.self_attn.out_proj.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.self_attn.out_proj.bias', f'model.decoder.layers.{i}.self_attn.out_proj.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.norm2.weight', f'model.decoder.layers.{i}.self_attn_layer_norm.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.norm2.bias', f'model.decoder.layers.{i}.self_attn_layer_norm.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.linear1.weight', f'model.decoder.layers.{i}.fc1.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.linear1.bias', f'model.decoder.layers.{i}.fc1.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.linear2.weight', f'model.decoder.layers.{i}.fc2.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.linear2.bias', f'model.decoder.layers.{i}.fc2.bias') )
rename_keys.append((f'transformer.decoder.layers.{i}.norm3.weight', f'model.decoder.layers.{i}.final_layer_norm.weight') )
rename_keys.append((f'transformer.decoder.layers.{i}.norm3.bias', f'model.decoder.layers.{i}.final_layer_norm.bias') )
# fmt: on
return rename_keys
def _a ( SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE ):
"""simple docstring"""
lowercase__ = dct.pop(SCREAMING_SNAKE_CASE )
lowercase__ = val
def _a ( SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE ):
"""simple docstring"""
lowercase__ = [int(backbone_config.embed_dim * 2**i ) for i in range(len(backbone_config.depths ) )]
for i in range(len(backbone_config.depths ) ):
lowercase__ = num_features[i]
for j in range(backbone_config.depths[i] ):
# fmt: off
# read in weights + bias of input projection layer (in original implementation, this is a single matrix + bias)
lowercase__ = state_dict.pop(f'backbone.0.body.layers.{i}.blocks.{j}.attn.qkv.weight' )
lowercase__ = state_dict.pop(f'backbone.0.body.layers.{i}.blocks.{j}.attn.qkv.bias' )
# next, add query, keys and values (in that order) to the state dict
lowercase__ = in_proj_weight[:dim, :]
lowercase__ = in_proj_bias[: dim]
lowercase__ = in_proj_weight[
dim : dim * 2, :
]
lowercase__ = in_proj_bias[
dim : dim * 2
]
lowercase__ = in_proj_weight[
-dim :, :
]
lowercase__ = in_proj_bias[-dim :]
# fmt: on
def _a ( SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE ):
"""simple docstring"""
lowercase__ = config.d_model
for i in range(config.decoder_layers ):
# read in weights + bias of input projection layer of self-attention
lowercase__ = state_dict.pop(f'transformer.decoder.layers.{i}.self_attn.in_proj_weight' )
lowercase__ = state_dict.pop(f'transformer.decoder.layers.{i}.self_attn.in_proj_bias' )
# next, add query, keys and values (in that order) to the state dict
lowercase__ = in_proj_weight[:hidden_size, :]
lowercase__ = in_proj_bias[:hidden_size]
lowercase__ = in_proj_weight[
hidden_size : hidden_size * 2, :
]
lowercase__ = in_proj_bias[hidden_size : hidden_size * 2]
lowercase__ = in_proj_weight[-hidden_size:, :]
lowercase__ = in_proj_bias[-hidden_size:]
def _a ( ):
"""simple docstring"""
lowercase__ = '''http://images.cocodataset.org/val2017/000000039769.jpg'''
lowercase__ = Image.open(requests.get(SCREAMING_SNAKE_CASE , stream=SCREAMING_SNAKE_CASE ).raw )
return im
@torch.no_grad()
def _a ( SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE ):
"""simple docstring"""
lowercase__ = get_deta_config(SCREAMING_SNAKE_CASE )
# load original state dict
if model_name == "deta-swin-large":
lowercase__ = hf_hub_download(repo_id='''nielsr/deta-checkpoints''' , filename='''adet_swin_ft.pth''' )
elif model_name == "deta-swin-large-o365":
lowercase__ = hf_hub_download(repo_id='''jozhang97/deta-swin-l-o365''' , filename='''deta_swin_pt_o365.pth''' )
else:
raise ValueError(f'Model name {model_name} not supported' )
lowercase__ = torch.load(SCREAMING_SNAKE_CASE , map_location='''cpu''' )['''model''']
# original state dict
for name, param in state_dict.items():
print(SCREAMING_SNAKE_CASE , param.shape )
# rename keys
lowercase__ = create_rename_keys(SCREAMING_SNAKE_CASE )
for src, dest in rename_keys:
rename_key(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE )
read_in_swin_q_k_v(SCREAMING_SNAKE_CASE , config.backbone_config )
read_in_decoder_q_k_v(SCREAMING_SNAKE_CASE , SCREAMING_SNAKE_CASE )
# fix some prefixes
for key in state_dict.copy().keys():
if "transformer.decoder.class_embed" in key or "transformer.decoder.bbox_embed" in key:
lowercase__ = state_dict.pop(SCREAMING_SNAKE_CASE )
lowercase__ = val
if "input_proj" in key:
lowercase__ = state_dict.pop(SCREAMING_SNAKE_CASE )
lowercase__ = val
if "level_embed" in key or "pos_trans" in key or "pix_trans" in key or "enc_output" in key:
lowercase__ = state_dict.pop(SCREAMING_SNAKE_CASE )
lowercase__ = val
# finally, create HuggingFace model and load state dict
lowercase__ = DetaForObjectDetection(SCREAMING_SNAKE_CASE )
model.load_state_dict(SCREAMING_SNAKE_CASE )
model.eval()
lowercase__ = '''cuda''' if torch.cuda.is_available() else '''cpu'''
model.to(SCREAMING_SNAKE_CASE )
# load image processor
lowercase__ = DetaImageProcessor(format='''coco_detection''' )
# verify our conversion on image
lowercase__ = prepare_img()
lowercase__ = processor(images=SCREAMING_SNAKE_CASE , return_tensors='''pt''' )
lowercase__ = encoding['''pixel_values''']
lowercase__ = model(pixel_values.to(SCREAMING_SNAKE_CASE ) )
# verify logits
print('''Logits:''' , outputs.logits[0, :3, :3] )
print('''Boxes:''' , outputs.pred_boxes[0, :3, :3] )
if model_name == "deta-swin-large":
lowercase__ = torch.tensor(
[[-7.6_308, -2.8_485, -5.3_737], [-7.2_037, -4.5_505, -4.8_027], [-7.2_943, -4.2_611, -4.6_617]] )
lowercase__ = torch.tensor([[0.4_987, 0.4_969, 0.9_999], [0.2_549, 0.5_498, 0.4_805], [0.5_498, 0.2_757, 0.0_569]] )
elif model_name == "deta-swin-large-o365":
lowercase__ = torch.tensor(
[[-8.0_122, -3.5_720, -4.9_717], [-8.1_547, -3.6_886, -4.6_389], [-7.6_610, -3.6_194, -5.0_134]] )
lowercase__ = torch.tensor([[0.2_523, 0.5_549, 0.4_881], [0.7_715, 0.4_149, 0.4_601], [0.5_503, 0.2_753, 0.0_575]] )
assert torch.allclose(outputs.logits[0, :3, :3] , expected_logits.to(SCREAMING_SNAKE_CASE ) , atol=1E-4 )
assert torch.allclose(outputs.pred_boxes[0, :3, :3] , expected_boxes.to(SCREAMING_SNAKE_CASE ) , atol=1E-4 )
print('''Everything ok!''' )
if pytorch_dump_folder_path:
# Save model and processor
logger.info(f'Saving PyTorch model and processor to {pytorch_dump_folder_path}...' )
Path(SCREAMING_SNAKE_CASE ).mkdir(exist_ok=SCREAMING_SNAKE_CASE )
model.save_pretrained(SCREAMING_SNAKE_CASE )
processor.save_pretrained(SCREAMING_SNAKE_CASE )
# Push to hub
if push_to_hub:
print('''Pushing model and processor to hub...''' )
model.push_to_hub(f'jozhang97/{model_name}' )
processor.push_to_hub(f'jozhang97/{model_name}' )
if __name__ == "__main__":
lowerCAmelCase = argparse.ArgumentParser()
parser.add_argument(
'--model_name',
type=str,
default='deta-swin-large',
choices=['deta-swin-large', 'deta-swin-large-o365'],
help='Name of the model you\'d like to convert.',
)
parser.add_argument(
'--pytorch_dump_folder_path',
default=None,
type=str,
help='Path to the folder to output PyTorch model.',
)
parser.add_argument(
'--push_to_hub', action='store_true', help='Whether or not to push the converted model to the 🤗 hub.'
)
lowerCAmelCase = parser.parse_args()
convert_deta_checkpoint(args.model_name, args.pytorch_dump_folder_path, args.push_to_hub)
| 110
|
'''simple docstring'''
import argparse
import json
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import AutoImageProcessor, SwinConfig, SwinForImageClassification
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : Dict = SwinConfig()
snake_case__ : Optional[Any] = swin_name.split("""_""" )
snake_case__ : Any = name_split[1]
snake_case__ : List[Any] = int(name_split[4] )
snake_case__ : int = int(name_split[3][-1] )
if model_size == "tiny":
snake_case__ : List[Any] = 96
snake_case__ : int = (2, 2, 6, 2)
snake_case__ : int = (3, 6, 12, 24)
elif model_size == "small":
snake_case__ : Union[str, Any] = 96
snake_case__ : Optional[Any] = (2, 2, 18, 2)
snake_case__ : str = (3, 6, 12, 24)
elif model_size == "base":
snake_case__ : Dict = 128
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : Dict = (4, 8, 16, 32)
else:
snake_case__ : List[str] = 192
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : List[Any] = (6, 12, 24, 48)
if "in22k" in swin_name:
snake_case__ : str = 21_841
else:
snake_case__ : List[str] = 1_000
snake_case__ : int = """huggingface/label-files"""
snake_case__ : Any = """imagenet-1k-id2label.json"""
snake_case__ : List[Any] = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : Dict = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : Optional[int] = idalabel
snake_case__ : List[Any] = {v: k for k, v in idalabel.items()}
snake_case__ : List[Any] = img_size
snake_case__ : Dict = num_classes
snake_case__ : Dict = embed_dim
snake_case__ : Optional[int] = depths
snake_case__ : int = num_heads
snake_case__ : Optional[int] = window_size
return config
def __snake_case( _lowerCAmelCase ) -> Dict:
if "patch_embed.proj" in name:
snake_case__ : List[str] = name.replace("""patch_embed.proj""" , """embeddings.patch_embeddings.projection""" )
if "patch_embed.norm" in name:
snake_case__ : int = name.replace("""patch_embed.norm""" , """embeddings.norm""" )
if "layers" in name:
snake_case__ : str = """encoder.""" + name
if "attn.proj" in name:
snake_case__ : List[str] = name.replace("""attn.proj""" , """attention.output.dense""" )
if "attn" in name:
snake_case__ : Tuple = name.replace("""attn""" , """attention.self""" )
if "norm1" in name:
snake_case__ : List[str] = name.replace("""norm1""" , """layernorm_before""" )
if "norm2" in name:
snake_case__ : Optional[Any] = name.replace("""norm2""" , """layernorm_after""" )
if "mlp.fc1" in name:
snake_case__ : Union[str, Any] = name.replace("""mlp.fc1""" , """intermediate.dense""" )
if "mlp.fc2" in name:
snake_case__ : Dict = name.replace("""mlp.fc2""" , """output.dense""" )
if name == "norm.weight":
snake_case__ : Tuple = """layernorm.weight"""
if name == "norm.bias":
snake_case__ : Union[str, Any] = """layernorm.bias"""
if "head" in name:
snake_case__ : Optional[int] = name.replace("""head""" , """classifier""" )
else:
snake_case__ : List[str] = """swin.""" + name
return name
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Optional[Any]:
for key in orig_state_dict.copy().keys():
snake_case__ : Optional[int] = orig_state_dict.pop(_lowerCAmelCase )
if "mask" in key:
continue
elif "qkv" in key:
snake_case__ : Dict = key.split(""".""" )
snake_case__ : Optional[int] = int(key_split[1] )
snake_case__ : Union[str, Any] = int(key_split[3] )
snake_case__ : List[Any] = model.swin.encoder.layers[layer_num].blocks[block_num].attention.self.all_head_size
if "weight" in key:
snake_case__ : Optional[Any] = val[:dim, :]
snake_case__ : Tuple = val[
dim : dim * 2, :
]
snake_case__ : Dict = val[-dim:, :]
else:
snake_case__ : Tuple = val[
:dim
]
snake_case__ : int = val[
dim : dim * 2
]
snake_case__ : int = val[
-dim:
]
else:
snake_case__ : Union[str, Any] = val
return orig_state_dict
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
snake_case__ : Optional[int] = get_swin_config(_lowerCAmelCase )
snake_case__ : Optional[Any] = SwinForImageClassification(_lowerCAmelCase )
model.eval()
snake_case__ : str = convert_state_dict(timm_model.state_dict() , _lowerCAmelCase )
model.load_state_dict(_lowerCAmelCase )
snake_case__ : int = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Dict = AutoImageProcessor.from_pretrained("""microsoft/{}""".format(swin_name.replace("""_""" , """-""" ) ) )
snake_case__ : Dict = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
snake_case__ : Optional[int] = image_processor(images=_lowerCAmelCase , return_tensors="""pt""" )
snake_case__ : Optional[Any] = timm_model(inputs["""pixel_values"""] )
snake_case__ : str = model(**_lowerCAmelCase ).logits
assert torch.allclose(_lowerCAmelCase , _lowerCAmelCase , atol=1e-3 )
print(f"Saving model {swin_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--swin_name",
default="swin_tiny_patch4_window7_224",
type=str,
help="Name of the Swin timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_swin_checkpoint(args.swin_name, args.pytorch_dump_folder_path)
| 35
| 0
|
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_flax_available,
is_tf_available,
is_tokenizers_available,
is_torch_available,
)
UpperCAmelCase_ : Union[str, Any] = {
'''configuration_electra''': ['''ELECTRA_PRETRAINED_CONFIG_ARCHIVE_MAP''', '''ElectraConfig''', '''ElectraOnnxConfig'''],
'''tokenization_electra''': ['''ElectraTokenizer'''],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCAmelCase_ : List[str] = ['''ElectraTokenizerFast''']
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCAmelCase_ : int = [
'''ELECTRA_PRETRAINED_MODEL_ARCHIVE_LIST''',
'''ElectraForCausalLM''',
'''ElectraForMaskedLM''',
'''ElectraForMultipleChoice''',
'''ElectraForPreTraining''',
'''ElectraForQuestionAnswering''',
'''ElectraForSequenceClassification''',
'''ElectraForTokenClassification''',
'''ElectraModel''',
'''ElectraPreTrainedModel''',
'''load_tf_weights_in_electra''',
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCAmelCase_ : Dict = [
'''TF_ELECTRA_PRETRAINED_MODEL_ARCHIVE_LIST''',
'''TFElectraForMaskedLM''',
'''TFElectraForMultipleChoice''',
'''TFElectraForPreTraining''',
'''TFElectraForQuestionAnswering''',
'''TFElectraForSequenceClassification''',
'''TFElectraForTokenClassification''',
'''TFElectraModel''',
'''TFElectraPreTrainedModel''',
]
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
UpperCAmelCase_ : str = [
'''FlaxElectraForCausalLM''',
'''FlaxElectraForMaskedLM''',
'''FlaxElectraForMultipleChoice''',
'''FlaxElectraForPreTraining''',
'''FlaxElectraForQuestionAnswering''',
'''FlaxElectraForSequenceClassification''',
'''FlaxElectraForTokenClassification''',
'''FlaxElectraModel''',
'''FlaxElectraPreTrainedModel''',
]
if TYPE_CHECKING:
from .configuration_electra import ELECTRA_PRETRAINED_CONFIG_ARCHIVE_MAP, ElectraConfig, ElectraOnnxConfig
from .tokenization_electra import ElectraTokenizer
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_electra_fast import ElectraTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_electra import (
ELECTRA_PRETRAINED_MODEL_ARCHIVE_LIST,
ElectraForCausalLM,
ElectraForMaskedLM,
ElectraForMultipleChoice,
ElectraForPreTraining,
ElectraForQuestionAnswering,
ElectraForSequenceClassification,
ElectraForTokenClassification,
ElectraModel,
ElectraPreTrainedModel,
load_tf_weights_in_electra,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_electra import (
TF_ELECTRA_PRETRAINED_MODEL_ARCHIVE_LIST,
TFElectraForMaskedLM,
TFElectraForMultipleChoice,
TFElectraForPreTraining,
TFElectraForQuestionAnswering,
TFElectraForSequenceClassification,
TFElectraForTokenClassification,
TFElectraModel,
TFElectraPreTrainedModel,
)
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_electra import (
FlaxElectraForCausalLM,
FlaxElectraForMaskedLM,
FlaxElectraForMultipleChoice,
FlaxElectraForPreTraining,
FlaxElectraForQuestionAnswering,
FlaxElectraForSequenceClassification,
FlaxElectraForTokenClassification,
FlaxElectraModel,
FlaxElectraPreTrainedModel,
)
else:
import sys
UpperCAmelCase_ : Optional[int] = _LazyModule(__name__, globals()['''__file__'''], _import_structure, module_spec=__spec__)
| 38
|
'''simple docstring'''
import warnings
from ...utils import logging
from .image_processing_beit import BeitImageProcessor
__a = logging.get_logger(__name__)
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def __init__( self : List[str] , *snake_case_ : str , **snake_case_ : List[str] ):
warnings.warn(
"""The class BeitFeatureExtractor is deprecated and will be removed in version 5 of Transformers. Please"""
""" use BeitImageProcessor instead.""" , snake_case_ , )
super().__init__(*snake_case_ , **snake_case_ )
| 35
| 0
|
"""simple docstring"""
import logging
import os
import sys
import warnings
from dataclasses import dataclass, field
from random import randint
from typing import Optional
import datasets
import evaluate
import numpy as np
from datasets import DatasetDict, load_dataset
import transformers
from transformers import (
AutoConfig,
AutoFeatureExtractor,
AutoModelForAudioClassification,
HfArgumentParser,
Trainer,
TrainingArguments,
set_seed,
)
from transformers.trainer_utils import get_last_checkpoint
from transformers.utils import check_min_version, send_example_telemetry
from transformers.utils.versions import require_version
_UpperCamelCase : Any = logging.getLogger(__name__)
# Will error if the minimal version of Transformers is not installed. Remove at your own risks.
check_min_version("4.31.0")
require_version("datasets>=1.14.0", "To fix: pip install -r examples/pytorch/audio-classification/requirements.txt")
def a_ ( _lowerCAmelCase : Optional[int] , _lowerCAmelCase : Dict , _lowerCAmelCase : int = 1_6000 ):
'''simple docstring'''
lowercase__ : int = int(round(sample_rate * max_length ) )
if len(_lowerCAmelCase ) <= sample_length:
return wav
lowercase__ : Optional[int] = randint(0 , len(_lowerCAmelCase ) - sample_length - 1 )
return wav[random_offset : random_offset + sample_length]
@dataclass
class UpperCAmelCase_ :
lowerCamelCase__ : List[Any] = field(default=_a , metadata={"help": "Name of a dataset from the datasets package"})
lowerCamelCase__ : List[Any] = field(
default=_a , metadata={"help": "The configuration name of the dataset to use (via the datasets library)."})
lowerCamelCase__ : Tuple = field(
default=_a , metadata={"help": "A file containing the training audio paths and labels."})
lowerCamelCase__ : Tuple = field(
default=_a , metadata={"help": "A file containing the validation audio paths and labels."})
lowerCamelCase__ : int = field(
default="train" , metadata={
"help": "The name of the training data set split to use (via the datasets library). Defaults to 'train'"
} , )
lowerCamelCase__ : str = field(
default="validation" , metadata={
"help": (
"The name of the training data set split to use (via the datasets library). Defaults to 'validation'"
)
} , )
lowerCamelCase__ : Optional[Any] = field(
default="audio" , metadata={"help": "The name of the dataset column containing the audio data. Defaults to 'audio'"} , )
lowerCamelCase__ : Tuple = field(
default="label" , metadata={"help": "The name of the dataset column containing the labels. Defaults to 'label'"})
lowerCamelCase__ : List[Any] = field(
default=_a , metadata={
"help": (
"For debugging purposes or quicker training, truncate the number of training examples to this "
"value if set."
)
} , )
lowerCamelCase__ : List[Any] = field(
default=_a , metadata={
"help": (
"For debugging purposes or quicker training, truncate the number of evaluation examples to this "
"value if set."
)
} , )
lowerCamelCase__ : Optional[int] = field(
default=2_0 , metadata={"help": "Audio clips will be randomly cut to this length during training if the value is set."} , )
@dataclass
class UpperCAmelCase_ :
lowerCamelCase__ : int = field(
default="facebook/wav2vec2-base" , metadata={"help": "Path to pretrained model or model identifier from huggingface.co/models"} , )
lowerCamelCase__ : Tuple = field(
default=_a , metadata={"help": "Pretrained config name or path if not the same as model_name"})
lowerCamelCase__ : int = field(
default=_a , metadata={"help": "Where do you want to store the pretrained models downloaded from the Hub"})
lowerCamelCase__ : Optional[Any] = field(
default="main" , metadata={"help": "The specific model version to use (can be a branch name, tag name or commit id)."} , )
lowerCamelCase__ : str = field(
default=_a , metadata={"help": "Name or path of preprocessor config."})
lowerCamelCase__ : Optional[Any] = field(
default=_a , metadata={"help": "Whether to freeze the feature encoder layers of the model."})
lowerCamelCase__ : Union[str, Any] = field(
default=_a , metadata={"help": "Whether to generate an attention mask in the feature extractor."})
lowerCamelCase__ : Tuple = field(
default=_a , metadata={
"help": (
"Will use the token generated when running `huggingface-cli login` (necessary to use this script "
"with private models)."
)
} , )
lowerCamelCase__ : Dict = field(
default=_a , metadata={"help": "Whether to freeze the feature extractor layers of the model."})
lowerCamelCase__ : str = field(
default=_a , metadata={"help": "Will enable to load a pretrained model whose head dimensions are different."} , )
def _UpperCAmelCase ( self ) -> Any:
if not self.freeze_feature_extractor and self.freeze_feature_encoder:
warnings.warn(
'The argument `--freeze_feature_extractor` is deprecated and '
'will be removed in a future version. Use `--freeze_feature_encoder`'
'instead. Setting `freeze_feature_encoder==True`.' , snake_case_ , )
if self.freeze_feature_extractor and not self.freeze_feature_encoder:
raise ValueError(
'The argument `--freeze_feature_extractor` is deprecated and '
'should not be used in combination with `--freeze_feature_encoder`.'
'Only make use of `--freeze_feature_encoder`.' )
def a_ ( ):
'''simple docstring'''
lowercase__ : Any = HfArgumentParser((ModelArguments, DataTrainingArguments, TrainingArguments) )
if len(sys.argv ) == 2 and sys.argv[1].endswith('.json' ):
# If we pass only one argument to the script and it's the path to a json file,
# let's parse it to get our arguments.
lowercase__ : Union[str, Any] = parser.parse_json_file(json_file=os.path.abspath(sys.argv[1] ) )
else:
lowercase__ : Optional[Any] = parser.parse_args_into_dataclasses()
# Sending telemetry. Tracking the example usage helps us better allocate resources to maintain them. The
# information sent is the one passed as arguments along with your Python/PyTorch versions.
send_example_telemetry('run_audio_classification' , _lowerCAmelCase , _lowerCAmelCase )
# Setup logging
logging.basicConfig(
format='%(asctime)s - %(levelname)s - %(name)s - %(message)s' , datefmt='%m/%d/%Y %H:%M:%S' , handlers=[logging.StreamHandler(sys.stdout )] , )
if training_args.should_log:
# The default of training_args.log_level is passive, so we set log level at info here to have that default.
transformers.utils.logging.set_verbosity_info()
lowercase__ : Tuple = training_args.get_process_log_level()
logger.setLevel(_lowerCAmelCase )
transformers.utils.logging.set_verbosity(_lowerCAmelCase )
transformers.utils.logging.enable_default_handler()
transformers.utils.logging.enable_explicit_format()
# Log on each process the small summary:
logger.warning(
f"""Process rank: {training_args.local_rank}, device: {training_args.device}, n_gpu: {training_args.n_gpu} """
+ f"""distributed training: {bool(training_args.local_rank != -1 )}, 16-bits training: {training_args.fpaa}""" )
logger.info(f"""Training/evaluation parameters {training_args}""" )
# Set seed before initializing model.
set_seed(training_args.seed )
# Detecting last checkpoint.
lowercase__ : Optional[Any] = None
if os.path.isdir(training_args.output_dir ) and training_args.do_train and not training_args.overwrite_output_dir:
lowercase__ : Optional[Any] = get_last_checkpoint(training_args.output_dir )
if last_checkpoint is None and len(os.listdir(training_args.output_dir ) ) > 0:
raise ValueError(
f"""Output directory ({training_args.output_dir}) already exists and is not empty. """
'Use --overwrite_output_dir to train from scratch.' )
elif last_checkpoint is not None and training_args.resume_from_checkpoint is None:
logger.info(
f"""Checkpoint detected, resuming training at {last_checkpoint}. To avoid this behavior, change """
'the `--output_dir` or add `--overwrite_output_dir` to train from scratch.' )
# Initialize our dataset and prepare it for the audio classification task.
lowercase__ : Tuple = DatasetDict()
lowercase__ : List[Any] = load_dataset(
data_args.dataset_name , data_args.dataset_config_name , split=data_args.train_split_name , use_auth_token=True if model_args.use_auth_token else None , )
lowercase__ : str = load_dataset(
data_args.dataset_name , data_args.dataset_config_name , split=data_args.eval_split_name , use_auth_token=True if model_args.use_auth_token else None , )
if data_args.audio_column_name not in raw_datasets["train"].column_names:
raise ValueError(
f"""--audio_column_name {data_args.audio_column_name} not found in dataset '{data_args.dataset_name}'. """
'Make sure to set `--audio_column_name` to the correct audio column - one of '
f"""{", ".join(raw_datasets["train"].column_names )}.""" )
if data_args.label_column_name not in raw_datasets["train"].column_names:
raise ValueError(
f"""--label_column_name {data_args.label_column_name} not found in dataset '{data_args.dataset_name}'. """
'Make sure to set `--label_column_name` to the correct text column - one of '
f"""{", ".join(raw_datasets["train"].column_names )}.""" )
# Setting `return_attention_mask=True` is the way to get a correctly masked mean-pooling over
# transformer outputs in the classifier, but it doesn't always lead to better accuracy
lowercase__ : str = AutoFeatureExtractor.from_pretrained(
model_args.feature_extractor_name or model_args.model_name_or_path , return_attention_mask=model_args.attention_mask , cache_dir=model_args.cache_dir , revision=model_args.model_revision , use_auth_token=True if model_args.use_auth_token else None , )
# `datasets` takes care of automatically loading and resampling the audio,
# so we just need to set the correct target sampling rate.
lowercase__ : Union[str, Any] = raw_datasets.cast_column(
data_args.audio_column_name , datasets.features.Audio(sampling_rate=feature_extractor.sampling_rate ) )
lowercase__ : Optional[Any] = feature_extractor.model_input_names[0]
def train_transforms(_lowerCAmelCase : Union[str, Any] ):
lowercase__ : Optional[Any] = []
for audio in batch[data_args.audio_column_name]:
lowercase__ : Optional[int] = random_subsample(
audio['array'] , max_length=data_args.max_length_seconds , sample_rate=feature_extractor.sampling_rate )
subsampled_wavs.append(_lowerCAmelCase )
lowercase__ : Optional[int] = feature_extractor(_lowerCAmelCase , sampling_rate=feature_extractor.sampling_rate )
lowercase__ : List[Any] = {model_input_name: inputs.get(_lowerCAmelCase )}
lowercase__ : Dict = list(batch[data_args.label_column_name] )
return output_batch
def val_transforms(_lowerCAmelCase : Any ):
lowercase__ : List[Any] = [audio["""array"""] for audio in batch[data_args.audio_column_name]]
lowercase__ : Optional[int] = feature_extractor(_lowerCAmelCase , sampling_rate=feature_extractor.sampling_rate )
lowercase__ : int = {model_input_name: inputs.get(_lowerCAmelCase )}
lowercase__ : Any = list(batch[data_args.label_column_name] )
return output_batch
# Prepare label mappings.
# We'll include these in the model's config to get human readable labels in the Inference API.
lowercase__ : Any = raw_datasets["""train"""].features[data_args.label_column_name].names
lowercase__ : Any = {}, {}
for i, label in enumerate(_lowerCAmelCase ):
lowercase__ : Tuple = str(_lowerCAmelCase )
lowercase__ : Optional[Any] = label
# Load the accuracy metric from the datasets package
lowercase__ : Any = evaluate.load('accuracy' )
# Define our compute_metrics function. It takes an `EvalPrediction` object (a namedtuple with
# `predictions` and `label_ids` fields) and has to return a dictionary string to float.
def compute_metrics(_lowerCAmelCase : Optional[int] ):
lowercase__ : Tuple = np.argmax(eval_pred.predictions , axis=1 )
return metric.compute(predictions=_lowerCAmelCase , references=eval_pred.label_ids )
lowercase__ : Dict = AutoConfig.from_pretrained(
model_args.config_name or model_args.model_name_or_path , num_labels=len(_lowerCAmelCase ) , labelaid=_lowerCAmelCase , idalabel=_lowerCAmelCase , finetuning_task='audio-classification' , cache_dir=model_args.cache_dir , revision=model_args.model_revision , use_auth_token=True if model_args.use_auth_token else None , )
lowercase__ : Dict = AutoModelForAudioClassification.from_pretrained(
model_args.model_name_or_path , from_tf=bool('.ckpt' in model_args.model_name_or_path ) , config=_lowerCAmelCase , cache_dir=model_args.cache_dir , revision=model_args.model_revision , use_auth_token=True if model_args.use_auth_token else None , ignore_mismatched_sizes=model_args.ignore_mismatched_sizes , )
# freeze the convolutional waveform encoder
if model_args.freeze_feature_encoder:
model.freeze_feature_encoder()
if training_args.do_train:
if data_args.max_train_samples is not None:
lowercase__ : int = (
raw_datasets["""train"""].shuffle(seed=training_args.seed ).select(range(data_args.max_train_samples ) )
)
# Set the training transforms
raw_datasets["train"].set_transform(_lowerCAmelCase , output_all_columns=_lowerCAmelCase )
if training_args.do_eval:
if data_args.max_eval_samples is not None:
lowercase__ : Optional[int] = (
raw_datasets["""eval"""].shuffle(seed=training_args.seed ).select(range(data_args.max_eval_samples ) )
)
# Set the validation transforms
raw_datasets["eval"].set_transform(_lowerCAmelCase , output_all_columns=_lowerCAmelCase )
# Initialize our trainer
lowercase__ : List[Any] = Trainer(
model=_lowerCAmelCase , args=_lowerCAmelCase , train_dataset=raw_datasets['train'] if training_args.do_train else None , eval_dataset=raw_datasets['eval'] if training_args.do_eval else None , compute_metrics=_lowerCAmelCase , tokenizer=_lowerCAmelCase , )
# Training
if training_args.do_train:
lowercase__ : Any = None
if training_args.resume_from_checkpoint is not None:
lowercase__ : List[Any] = training_args.resume_from_checkpoint
elif last_checkpoint is not None:
lowercase__ : List[str] = last_checkpoint
lowercase__ : Tuple = trainer.train(resume_from_checkpoint=_lowerCAmelCase )
trainer.save_model()
trainer.log_metrics('train' , train_result.metrics )
trainer.save_metrics('train' , train_result.metrics )
trainer.save_state()
# Evaluation
if training_args.do_eval:
lowercase__ : Union[str, Any] = trainer.evaluate()
trainer.log_metrics('eval' , _lowerCAmelCase )
trainer.save_metrics('eval' , _lowerCAmelCase )
# Write model card and (optionally) push to hub
lowercase__ : List[str] = {
"""finetuned_from""": model_args.model_name_or_path,
"""tasks""": """audio-classification""",
"""dataset""": data_args.dataset_name,
"""tags""": ["""audio-classification"""],
}
if training_args.push_to_hub:
trainer.push_to_hub(**_lowerCAmelCase )
else:
trainer.create_model_card(**_lowerCAmelCase )
if __name__ == "__main__":
main()
| 77
|
'''simple docstring'''
import logging
from dataclasses import dataclass, field
from pathlib import Path
from typing import Optional, Union
from .generation.configuration_utils import GenerationConfig
from .training_args import TrainingArguments
from .utils import add_start_docstrings
__a = logging.getLogger(__name__)
@dataclass
@add_start_docstrings(TrainingArguments.__doc__ )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = field(default=_a , metadata={"help": "Whether to use SortishSampler or not."} )
lowercase = field(
default=_a , metadata={"help": "Whether to use generate to calculate generative metrics (ROUGE, BLEU)."} )
lowercase = field(
default=_a , metadata={
"help": (
"The `max_length` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `max_length` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": (
"The `num_beams` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `num_beams` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": "Model id, file path or url pointing to a GenerationConfig json file, to use during prediction."
} , )
def lowerCamelCase ( self : List[str] ):
snake_case__ : int = super().to_dict()
for k, v in d.items():
if isinstance(snake_case_ , snake_case_ ):
snake_case__ : Optional[int] = v.to_dict()
return d
| 35
| 0
|
'''simple docstring'''
import inspect
import tempfile
from collections import OrderedDict, UserDict
from collections.abc import MutableMapping
from contextlib import ExitStack, contextmanager
from dataclasses import fields
from enum import Enum
from typing import Any, ContextManager, List, Tuple
import numpy as np
from .import_utils import is_flax_available, is_tf_available, is_torch_available, is_torch_fx_proxy
if is_flax_available():
import jax.numpy as jnp
class __A ( _a ):
def __get__(self : str , __a : Union[str, Any] , __a : Tuple=None ):
# See docs.python.org/3/howto/descriptor.html#properties
if obj is None:
return self
if self.fget is None:
raise AttributeError("unreadable attribute" )
UpperCAmelCase_ = """__cached_""" + self.fget.__name__
UpperCAmelCase_ = getattr(snake_case_ , snake_case_ , snake_case_ )
if cached is None:
UpperCAmelCase_ = self.fget(snake_case_ )
setattr(snake_case_ , snake_case_ , snake_case_ )
return cached
def lowerCAmelCase_ ( snake_case_ : Optional[int] ) -> Tuple:
'''simple docstring'''
UpperCAmelCase_ = val.lower()
if val in {"y", "yes", "t", "true", "on", "1"}:
return 1
if val in {"n", "no", "f", "false", "off", "0"}:
return 0
raise ValueError(f"""invalid truth value {val!r}""" )
def lowerCAmelCase_ ( snake_case_ : int ) -> Any:
'''simple docstring'''
if is_torch_fx_proxy(_lowerCAmelCase ):
return True
if is_torch_available():
import torch
if isinstance(_lowerCAmelCase , torch.Tensor ):
return True
if is_tf_available():
import tensorflow as tf
if isinstance(_lowerCAmelCase , tf.Tensor ):
return True
if is_flax_available():
import jax.numpy as jnp
from jax.core import Tracer
if isinstance(_lowerCAmelCase , (jnp.ndarray, Tracer) ):
return True
return isinstance(_lowerCAmelCase , np.ndarray )
def lowerCAmelCase_ ( snake_case_ : Tuple ) -> Optional[Any]:
'''simple docstring'''
return isinstance(_lowerCAmelCase , np.ndarray )
def lowerCAmelCase_ ( snake_case_ : Optional[Any] ) -> int:
'''simple docstring'''
return _is_numpy(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : Union[str, Any] ) -> List[str]:
'''simple docstring'''
import torch
return isinstance(_lowerCAmelCase , torch.Tensor )
def lowerCAmelCase_ ( snake_case_ : Optional[Any] ) -> str:
'''simple docstring'''
return False if not is_torch_available() else _is_torch(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : Any ) -> List[str]:
'''simple docstring'''
import torch
return isinstance(_lowerCAmelCase , torch.device )
def lowerCAmelCase_ ( snake_case_ : Any ) -> List[Any]:
'''simple docstring'''
return False if not is_torch_available() else _is_torch_device(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : Union[str, Any] ) -> List[Any]:
'''simple docstring'''
import torch
if isinstance(_lowerCAmelCase , _lowerCAmelCase ):
if hasattr(_lowerCAmelCase , _lowerCAmelCase ):
UpperCAmelCase_ = getattr(_lowerCAmelCase , _lowerCAmelCase )
else:
return False
return isinstance(_lowerCAmelCase , torch.dtype )
def lowerCAmelCase_ ( snake_case_ : Tuple ) -> List[Any]:
'''simple docstring'''
return False if not is_torch_available() else _is_torch_dtype(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : Union[str, Any] ) -> List[str]:
'''simple docstring'''
import tensorflow as tf
return isinstance(_lowerCAmelCase , tf.Tensor )
def lowerCAmelCase_ ( snake_case_ : int ) -> Any:
'''simple docstring'''
return False if not is_tf_available() else _is_tensorflow(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : List[Any] ) -> Optional[int]:
'''simple docstring'''
import tensorflow as tf
# the `is_symbolic_tensor` predicate is only available starting with TF 2.14
if hasattr(_lowerCAmelCase , "is_symbolic_tensor" ):
return tf.is_symbolic_tensor(_lowerCAmelCase )
return type(_lowerCAmelCase ) == tf.Tensor
def lowerCAmelCase_ ( snake_case_ : int ) -> Optional[Any]:
'''simple docstring'''
return False if not is_tf_available() else _is_tf_symbolic_tensor(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : Union[str, Any] ) -> Dict:
'''simple docstring'''
import jax.numpy as jnp # noqa: F811
return isinstance(_lowerCAmelCase , jnp.ndarray )
def lowerCAmelCase_ ( snake_case_ : int ) -> List[str]:
'''simple docstring'''
return False if not is_flax_available() else _is_jax(_lowerCAmelCase )
def lowerCAmelCase_ ( snake_case_ : str ) -> Any:
'''simple docstring'''
if isinstance(_lowerCAmelCase , (dict, UserDict) ):
return {k: to_py_obj(_lowerCAmelCase ) for k, v in obj.items()}
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return [to_py_obj(_lowerCAmelCase ) for o in obj]
elif is_tf_tensor(_lowerCAmelCase ):
return obj.numpy().tolist()
elif is_torch_tensor(_lowerCAmelCase ):
return obj.detach().cpu().tolist()
elif is_jax_tensor(_lowerCAmelCase ):
return np.asarray(_lowerCAmelCase ).tolist()
elif isinstance(_lowerCAmelCase , (np.ndarray, np.number) ): # tolist also works on 0d np arrays
return obj.tolist()
else:
return obj
def lowerCAmelCase_ ( snake_case_ : Union[str, Any] ) -> List[Any]:
'''simple docstring'''
if isinstance(_lowerCAmelCase , (dict, UserDict) ):
return {k: to_numpy(_lowerCAmelCase ) for k, v in obj.items()}
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return np.array(_lowerCAmelCase )
elif is_tf_tensor(_lowerCAmelCase ):
return obj.numpy()
elif is_torch_tensor(_lowerCAmelCase ):
return obj.detach().cpu().numpy()
elif is_jax_tensor(_lowerCAmelCase ):
return np.asarray(_lowerCAmelCase )
else:
return obj
class __A ( _a ):
def _lowercase (self : Union[str, Any] ):
UpperCAmelCase_ = fields(self )
# Safety and consistency checks
if not len(snake_case_ ):
raise ValueError(f"""{self.__class__.__name__} has no fields.""" )
if not all(field.default is None for field in class_fields[1:] ):
raise ValueError(f"""{self.__class__.__name__} should not have more than one required field.""" )
UpperCAmelCase_ = getattr(self , class_fields[0].name )
UpperCAmelCase_ = all(getattr(self , field.name ) is None for field in class_fields[1:] )
if other_fields_are_none and not is_tensor(snake_case_ ):
if isinstance(snake_case_ , snake_case_ ):
UpperCAmelCase_ = first_field.items()
UpperCAmelCase_ = True
else:
try:
UpperCAmelCase_ = iter(snake_case_ )
UpperCAmelCase_ = True
except TypeError:
UpperCAmelCase_ = False
# if we provided an iterator as first field and the iterator is a (key, value) iterator
# set the associated fields
if first_field_iterator:
for idx, element in enumerate(snake_case_ ):
if (
not isinstance(snake_case_ , (list, tuple) )
or not len(snake_case_ ) == 2
or not isinstance(element[0] , snake_case_ )
):
if idx == 0:
# If we do not have an iterator of key/values, set it as attribute
UpperCAmelCase_ = first_field
else:
# If we have a mixed iterator, raise an error
raise ValueError(
f"""Cannot set key/value for {element}. It needs to be a tuple (key, value).""" )
break
setattr(self , element[0] , element[1] )
if element[1] is not None:
UpperCAmelCase_ = element[1]
elif first_field is not None:
UpperCAmelCase_ = first_field
else:
for field in class_fields:
UpperCAmelCase_ = getattr(self , field.name )
if v is not None:
UpperCAmelCase_ = v
def __delitem__(self : Union[str, Any] , *__a : Tuple , **__a : int ):
raise Exception(f"""You cannot use ``__delitem__`` on a {self.__class__.__name__} instance.""" )
def _lowercase (self : List[str] , *__a : List[Any] , **__a : Optional[Any] ):
raise Exception(f"""You cannot use ``setdefault`` on a {self.__class__.__name__} instance.""" )
def _lowercase (self : Dict , *__a : List[Any] , **__a : str ):
raise Exception(f"""You cannot use ``pop`` on a {self.__class__.__name__} instance.""" )
def _lowercase (self : List[str] , *__a : Tuple , **__a : Tuple ):
raise Exception(f"""You cannot use ``update`` on a {self.__class__.__name__} instance.""" )
def __getitem__(self : Tuple , __a : Optional[Any] ):
if isinstance(snake_case_ , snake_case_ ):
UpperCAmelCase_ = dict(self.items() )
return inner_dict[k]
else:
return self.to_tuple()[k]
def __setattr__(self : List[str] , __a : Tuple , __a : Union[str, Any] ):
if name in self.keys() and value is not None:
# Don't call self.__setitem__ to avoid recursion errors
super().__setitem__(snake_case_ , snake_case_ )
super().__setattr__(snake_case_ , snake_case_ )
def __setitem__(self : str , __a : Union[str, Any] , __a : int ):
# Will raise a KeyException if needed
super().__setitem__(snake_case_ , snake_case_ )
# Don't call self.__setattr__ to avoid recursion errors
super().__setattr__(snake_case_ , snake_case_ )
def _lowercase (self : int ):
return tuple(self[k] for k in self.keys() )
class __A ( _a , _a ):
@classmethod
def _lowercase (cls : int , __a : List[Any] ):
raise ValueError(
f"""{value} is not a valid {cls.__name__}, please select one of {list(cls._valueamember_map_.keys() )}""" )
class __A ( _a ):
a__ : Optional[Any] = """longest"""
a__ : List[Any] = """max_length"""
a__ : Union[str, Any] = """do_not_pad"""
class __A ( _a ):
a__ : Dict = """pt"""
a__ : Any = """tf"""
a__ : List[Any] = """np"""
a__ : Dict = """jax"""
class __A :
def __init__(self : int , __a : List[ContextManager] ):
UpperCAmelCase_ = context_managers
UpperCAmelCase_ = ExitStack()
def __enter__(self : Union[str, Any] ):
for context_manager in self.context_managers:
self.stack.enter_context(snake_case_ )
def __exit__(self : Optional[int] , *__a : List[Any] , **__a : Any ):
self.stack.__exit__(*snake_case_ , **snake_case_ )
def lowerCAmelCase_ ( snake_case_ : Tuple ) -> List[str]:
'''simple docstring'''
UpperCAmelCase_ = infer_framework(_lowerCAmelCase )
if framework == "tf":
UpperCAmelCase_ = inspect.signature(model_class.call ) # TensorFlow models
elif framework == "pt":
UpperCAmelCase_ = inspect.signature(model_class.forward ) # PyTorch models
else:
UpperCAmelCase_ = inspect.signature(model_class.__call__ ) # Flax models
for p in signature.parameters:
if p == "return_loss" and signature.parameters[p].default is True:
return True
return False
def lowerCAmelCase_ ( snake_case_ : Optional[Any] ) -> Dict:
'''simple docstring'''
UpperCAmelCase_ = model_class.__name__
UpperCAmelCase_ = infer_framework(_lowerCAmelCase )
if framework == "tf":
UpperCAmelCase_ = inspect.signature(model_class.call ) # TensorFlow models
elif framework == "pt":
UpperCAmelCase_ = inspect.signature(model_class.forward ) # PyTorch models
else:
UpperCAmelCase_ = inspect.signature(model_class.__call__ ) # Flax models
if "QuestionAnswering" in model_name:
return [p for p in signature.parameters if "label" in p or p in ("start_positions", "end_positions")]
else:
return [p for p in signature.parameters if "label" in p]
def lowerCAmelCase_ ( snake_case_ : Optional[Any] , snake_case_ : Union[str, Any] = "" , snake_case_ : Union[str, Any] = "." ) -> List[str]:
'''simple docstring'''
def _flatten_dict(snake_case_ : str , snake_case_ : Optional[int]="" , snake_case_ : Any="." ):
for k, v in d.items():
UpperCAmelCase_ = str(_lowerCAmelCase ) + delimiter + str(_lowerCAmelCase ) if parent_key else k
if v and isinstance(_lowerCAmelCase , _lowerCAmelCase ):
yield from flatten_dict(_lowerCAmelCase , _lowerCAmelCase , delimiter=_lowerCAmelCase ).items()
else:
yield key, v
return dict(_flatten_dict(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) )
@contextmanager
def lowerCAmelCase_ ( snake_case_ : Dict , snake_case_ : Tuple = False ) -> Tuple:
'''simple docstring'''
if use_temp_dir:
with tempfile.TemporaryDirectory() as tmp_dir:
yield tmp_dir
else:
yield working_dir
def lowerCAmelCase_ ( snake_case_ : Dict , snake_case_ : List[str]=None ) -> Optional[Any]:
'''simple docstring'''
if is_numpy_array(_lowerCAmelCase ):
return np.transpose(_lowerCAmelCase , axes=_lowerCAmelCase )
elif is_torch_tensor(_lowerCAmelCase ):
return array.T if axes is None else array.permute(*_lowerCAmelCase )
elif is_tf_tensor(_lowerCAmelCase ):
import tensorflow as tf
return tf.transpose(_lowerCAmelCase , perm=_lowerCAmelCase )
elif is_jax_tensor(_lowerCAmelCase ):
return jnp.transpose(_lowerCAmelCase , axes=_lowerCAmelCase )
else:
raise ValueError(f"""Type not supported for transpose: {type(_lowerCAmelCase )}.""" )
def lowerCAmelCase_ ( snake_case_ : int , snake_case_ : Optional[Any] ) -> Tuple:
'''simple docstring'''
if is_numpy_array(_lowerCAmelCase ):
return np.reshape(_lowerCAmelCase , _lowerCAmelCase )
elif is_torch_tensor(_lowerCAmelCase ):
return array.reshape(*_lowerCAmelCase )
elif is_tf_tensor(_lowerCAmelCase ):
import tensorflow as tf
return tf.reshape(_lowerCAmelCase , _lowerCAmelCase )
elif is_jax_tensor(_lowerCAmelCase ):
return jnp.reshape(_lowerCAmelCase , _lowerCAmelCase )
else:
raise ValueError(f"""Type not supported for reshape: {type(_lowerCAmelCase )}.""" )
def lowerCAmelCase_ ( snake_case_ : Any , snake_case_ : Tuple=None ) -> Dict:
'''simple docstring'''
if is_numpy_array(_lowerCAmelCase ):
return np.squeeze(_lowerCAmelCase , axis=_lowerCAmelCase )
elif is_torch_tensor(_lowerCAmelCase ):
return array.squeeze() if axis is None else array.squeeze(dim=_lowerCAmelCase )
elif is_tf_tensor(_lowerCAmelCase ):
import tensorflow as tf
return tf.squeeze(_lowerCAmelCase , axis=_lowerCAmelCase )
elif is_jax_tensor(_lowerCAmelCase ):
return jnp.squeeze(_lowerCAmelCase , axis=_lowerCAmelCase )
else:
raise ValueError(f"""Type not supported for squeeze: {type(_lowerCAmelCase )}.""" )
def lowerCAmelCase_ ( snake_case_ : Optional[int] , snake_case_ : Any ) -> Tuple:
'''simple docstring'''
if is_numpy_array(_lowerCAmelCase ):
return np.expand_dims(_lowerCAmelCase , _lowerCAmelCase )
elif is_torch_tensor(_lowerCAmelCase ):
return array.unsqueeze(dim=_lowerCAmelCase )
elif is_tf_tensor(_lowerCAmelCase ):
import tensorflow as tf
return tf.expand_dims(_lowerCAmelCase , axis=_lowerCAmelCase )
elif is_jax_tensor(_lowerCAmelCase ):
return jnp.expand_dims(_lowerCAmelCase , axis=_lowerCAmelCase )
else:
raise ValueError(f"""Type not supported for expand_dims: {type(_lowerCAmelCase )}.""" )
def lowerCAmelCase_ ( snake_case_ : int ) -> Optional[Any]:
'''simple docstring'''
if is_numpy_array(_lowerCAmelCase ):
return np.size(_lowerCAmelCase )
elif is_torch_tensor(_lowerCAmelCase ):
return array.numel()
elif is_tf_tensor(_lowerCAmelCase ):
import tensorflow as tf
return tf.size(_lowerCAmelCase )
elif is_jax_tensor(_lowerCAmelCase ):
return array.size
else:
raise ValueError(f"""Type not supported for expand_dims: {type(_lowerCAmelCase )}.""" )
def lowerCAmelCase_ ( snake_case_ : Optional[int] , snake_case_ : Union[str, Any] ) -> Dict:
'''simple docstring'''
for key, value in auto_map.items():
if isinstance(_lowerCAmelCase , (tuple, list) ):
UpperCAmelCase_ = [f"""{repo_id}--{v}""" if (v is not None and """--""" not in v) else v for v in value]
elif value is not None and "--" not in value:
UpperCAmelCase_ = f"""{repo_id}--{value}"""
return auto_map
def lowerCAmelCase_ ( snake_case_ : List[str] ) -> int:
'''simple docstring'''
for base_class in inspect.getmro(_lowerCAmelCase ):
UpperCAmelCase_ = base_class.__module__
UpperCAmelCase_ = base_class.__name__
if module.startswith("tensorflow" ) or module.startswith("keras" ) or name == "TFPreTrainedModel":
return "tf"
elif module.startswith("torch" ) or name == "PreTrainedModel":
return "pt"
elif module.startswith("flax" ) or module.startswith("jax" ) or name == "FlaxPreTrainedModel":
return "flax"
else:
raise TypeError(f"""Could not infer framework from class {model_class}.""" )
| 1
|
'''simple docstring'''
import argparse
import json
from pathlib import Path
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import DeiTConfig, DeiTForImageClassificationWithTeacher, DeiTImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=False ) -> str:
snake_case__ : Union[str, Any] = []
for i in range(config.num_hidden_layers ):
# encoder layers: output projection, 2 feedforward neural networks and 2 layernorms
rename_keys.append((f"blocks.{i}.norm1.weight", f"deit.encoder.layer.{i}.layernorm_before.weight") )
rename_keys.append((f"blocks.{i}.norm1.bias", f"deit.encoder.layer.{i}.layernorm_before.bias") )
rename_keys.append((f"blocks.{i}.attn.proj.weight", f"deit.encoder.layer.{i}.attention.output.dense.weight") )
rename_keys.append((f"blocks.{i}.attn.proj.bias", f"deit.encoder.layer.{i}.attention.output.dense.bias") )
rename_keys.append((f"blocks.{i}.norm2.weight", f"deit.encoder.layer.{i}.layernorm_after.weight") )
rename_keys.append((f"blocks.{i}.norm2.bias", f"deit.encoder.layer.{i}.layernorm_after.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc1.weight", f"deit.encoder.layer.{i}.intermediate.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc1.bias", f"deit.encoder.layer.{i}.intermediate.dense.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc2.weight", f"deit.encoder.layer.{i}.output.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc2.bias", f"deit.encoder.layer.{i}.output.dense.bias") )
# projection layer + position embeddings
rename_keys.extend(
[
("""cls_token""", """deit.embeddings.cls_token"""),
("""dist_token""", """deit.embeddings.distillation_token"""),
("""patch_embed.proj.weight""", """deit.embeddings.patch_embeddings.projection.weight"""),
("""patch_embed.proj.bias""", """deit.embeddings.patch_embeddings.projection.bias"""),
("""pos_embed""", """deit.embeddings.position_embeddings"""),
] )
if base_model:
# layernorm + pooler
rename_keys.extend(
[
("""norm.weight""", """layernorm.weight"""),
("""norm.bias""", """layernorm.bias"""),
("""pre_logits.fc.weight""", """pooler.dense.weight"""),
("""pre_logits.fc.bias""", """pooler.dense.bias"""),
] )
# if just the base model, we should remove "deit" from all keys that start with "deit"
snake_case__ : List[Any] = [(pair[0], pair[1][4:]) if pair[1].startswith("""deit""" ) else pair for pair in rename_keys]
else:
# layernorm + classification heads
rename_keys.extend(
[
("""norm.weight""", """deit.layernorm.weight"""),
("""norm.bias""", """deit.layernorm.bias"""),
("""head.weight""", """cls_classifier.weight"""),
("""head.bias""", """cls_classifier.bias"""),
("""head_dist.weight""", """distillation_classifier.weight"""),
("""head_dist.bias""", """distillation_classifier.bias"""),
] )
return rename_keys
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> Union[str, Any]:
for i in range(config.num_hidden_layers ):
if base_model:
snake_case__ : Tuple = """"""
else:
snake_case__ : Dict = """deit."""
# read in weights + bias of input projection layer (in timm, this is a single matrix + bias)
snake_case__ : Optional[Any] = state_dict.pop(f"blocks.{i}.attn.qkv.weight" )
snake_case__ : Tuple = state_dict.pop(f"blocks.{i}.attn.qkv.bias" )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[
: config.hidden_size, :
]
snake_case__ : Optional[int] = in_proj_bias[: config.hidden_size]
snake_case__ : Any = in_proj_weight[
config.hidden_size : config.hidden_size * 2, :
]
snake_case__ : str = in_proj_bias[
config.hidden_size : config.hidden_size * 2
]
snake_case__ : List[str] = in_proj_weight[
-config.hidden_size :, :
]
snake_case__ : Tuple = in_proj_bias[-config.hidden_size :]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : str = dct.pop(_lowerCAmelCase )
snake_case__ : Tuple = val
def __snake_case( ) -> Tuple:
snake_case__ : Union[str, Any] = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Optional[int] = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
return im
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> str:
snake_case__ : Optional[int] = DeiTConfig()
# all deit models have fine-tuned heads
snake_case__ : Union[str, Any] = False
# dataset (fine-tuned on ImageNet 2012), patch_size and image_size
snake_case__ : int = 1_000
snake_case__ : Any = """huggingface/label-files"""
snake_case__ : Optional[Any] = """imagenet-1k-id2label.json"""
snake_case__ : Tuple = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : List[Any] = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : List[Any] = idalabel
snake_case__ : List[str] = {v: k for k, v in idalabel.items()}
snake_case__ : Tuple = int(deit_name[-6:-4] )
snake_case__ : Optional[Any] = int(deit_name[-3:] )
# size of the architecture
if deit_name[9:].startswith("""tiny""" ):
snake_case__ : Tuple = 192
snake_case__ : Union[str, Any] = 768
snake_case__ : Tuple = 12
snake_case__ : Union[str, Any] = 3
elif deit_name[9:].startswith("""small""" ):
snake_case__ : str = 384
snake_case__ : Any = 1_536
snake_case__ : str = 12
snake_case__ : int = 6
if deit_name[9:].startswith("""base""" ):
pass
elif deit_name[4:].startswith("""large""" ):
snake_case__ : Union[str, Any] = 1_024
snake_case__ : Any = 4_096
snake_case__ : List[Any] = 24
snake_case__ : Tuple = 16
# load original model from timm
snake_case__ : List[Any] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
# load state_dict of original model, remove and rename some keys
snake_case__ : Optional[Any] = timm_model.state_dict()
snake_case__ : Optional[int] = create_rename_keys(_lowerCAmelCase , _lowerCAmelCase )
for src, dest in rename_keys:
rename_key(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
read_in_q_k_v(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
# load HuggingFace model
snake_case__ : Optional[Any] = DeiTForImageClassificationWithTeacher(_lowerCAmelCase ).eval()
model.load_state_dict(_lowerCAmelCase )
# Check outputs on an image, prepared by DeiTImageProcessor
snake_case__ : List[Any] = int(
(256 / 224) * config.image_size ) # to maintain same ratio w.r.t. 224 images, see https://github.com/facebookresearch/deit/blob/ab5715372db8c6cad5740714b2216d55aeae052e/datasets.py#L103
snake_case__ : Optional[Any] = DeiTImageProcessor(size=_lowerCAmelCase , crop_size=config.image_size )
snake_case__ : str = image_processor(images=prepare_img() , return_tensors="""pt""" )
snake_case__ : Optional[Any] = encoding["""pixel_values"""]
snake_case__ : Tuple = model(_lowerCAmelCase )
snake_case__ : Optional[int] = timm_model(_lowerCAmelCase )
assert timm_logits.shape == outputs.logits.shape
assert torch.allclose(_lowerCAmelCase , outputs.logits , atol=1e-3 )
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
print(f"Saving model {deit_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--deit_name",
default="vit_deit_base_distilled_patch16_224",
type=str,
help="Name of the DeiT timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_deit_checkpoint(args.deit_name, args.pytorch_dump_folder_path)
| 35
| 0
|
import argparse
from torch import nn
# transformers_old should correspond to branch `save_old_prophetnet_model_structure` here
# original prophetnet_checkpoints are saved under `patrickvonplaten/..._old` respectively
from transformers_old.modeling_prophetnet import (
ProphetNetForConditionalGeneration as ProphetNetForConditionalGenerationOld,
)
from transformers_old.modeling_xlm_prophetnet import (
XLMProphetNetForConditionalGeneration as XLMProphetNetForConditionalGenerationOld,
)
from transformers import ProphetNetForConditionalGeneration, XLMProphetNetForConditionalGeneration, logging
lowerCamelCase : Optional[int] = logging.get_logger(__name__)
logging.set_verbosity_info()
def _SCREAMING_SNAKE_CASE ( lowercase : str , lowercase : Optional[int] ):
'''simple docstring'''
if "xprophetnet" in prophetnet_checkpoint_path:
lowerCamelCase_ = XLMProphetNetForConditionalGenerationOld.from_pretrained(_lowerCAmelCase )
lowerCamelCase_ = XLMProphetNetForConditionalGeneration.from_pretrained(
_lowerCAmelCase , output_loading_info=_lowerCAmelCase )
else:
lowerCamelCase_ = ProphetNetForConditionalGenerationOld.from_pretrained(_lowerCAmelCase )
lowerCamelCase_ = ProphetNetForConditionalGeneration.from_pretrained(
_lowerCAmelCase , output_loading_info=_lowerCAmelCase )
lowerCamelCase_ = ["""key_proj""", """value_proj""", """query_proj"""]
lowerCamelCase_ = {
"""self_attn""": """ngram_self_attn""",
"""cross_attn""": """encoder_attn""",
"""cross_attn_layer_norm""": """encoder_attn_layer_norm""",
"""feed_forward_layer_norm""": """final_layer_norm""",
"""feed_forward""": """""",
"""intermediate""": """fc1""",
"""output""": """fc2""",
"""key_proj""": """k_proj""",
"""query_proj""": """q_proj""",
"""value_proj""": """v_proj""",
"""word_embeddings""": """embed_tokens""",
"""embeddings_layer_norm""": """emb_layer_norm""",
"""relative_pos_embeddings""": """relative_linear""",
"""ngram_embeddings""": """ngram_input_embed""",
"""position_embeddings""": """embed_positions""",
}
for key in loading_info["missing_keys"]:
lowerCamelCase_ = key.split('.' )
if attributes[0] == "lm_head":
lowerCamelCase_ = prophet
lowerCamelCase_ = prophet_old
else:
lowerCamelCase_ = prophet.prophetnet
lowerCamelCase_ = prophet_old.model
lowerCamelCase_ = False
for attribute in attributes:
if attribute in mapping:
lowerCamelCase_ = mapping[attribute]
if not hasattr(_lowerCAmelCase , _lowerCAmelCase ) and len(_lowerCAmelCase ) > 0:
lowerCamelCase_ = attribute
elif hasattr(_lowerCAmelCase , _lowerCAmelCase ):
lowerCamelCase_ = attribute
if attribute == "weight":
assert old_model.weight.shape == model.weight.shape, "Shapes have to match!"
lowerCamelCase_ = old_model.weight
logger.info(f"""{attribute} is initialized.""" )
lowerCamelCase_ = True
break
elif attribute == "bias":
assert old_model.bias.shape == model.bias.shape, "Shapes have to match!"
lowerCamelCase_ = old_model.bias
logger.info(f"""{attribute} is initialized""" )
lowerCamelCase_ = True
break
elif attribute in special_keys and hasattr(_lowerCAmelCase , 'in_proj_weight' ):
lowerCamelCase_ = old_model.in_proj_weight.shape[0] // 3
lowerCamelCase_ = getattr(_lowerCAmelCase , _lowerCAmelCase )
param.weight.shape == old_model.in_proj_weight[:embed_dim, :].shape, "Shapes have to match"
param.bias.shape == old_model.in_proj_bias[:embed_dim].shape, "Shapes have to match"
if attribute == "query_proj":
lowerCamelCase_ = nn.Parameter(old_model.in_proj_weight[:embed_dim, :] )
lowerCamelCase_ = nn.Parameter(old_model.in_proj_bias[:embed_dim] )
elif attribute == "key_proj":
lowerCamelCase_ = nn.Parameter(old_model.in_proj_weight[embed_dim : 2 * embed_dim, :] )
lowerCamelCase_ = nn.Parameter(old_model.in_proj_bias[embed_dim : 2 * embed_dim] )
elif attribute == "value_proj":
lowerCamelCase_ = nn.Parameter(old_model.in_proj_weight[2 * embed_dim :, :] )
lowerCamelCase_ = nn.Parameter(old_model.in_proj_bias[2 * embed_dim :] )
lowerCamelCase_ = True
break
elif attribute == "position_embeddings":
assert (
model.position_embeddings.weight.shape[-1] == old_model.embed_positions.weight.shape[-1]
), "Hidden size has to match"
assert model.position_embeddings.weight.shape[0] == 5_12, "We want 512 position_embeddings."
lowerCamelCase_ = nn.Parameter(old_model.embed_positions.weight[:5_12, :] )
lowerCamelCase_ = True
break
if attribute.isdigit():
lowerCamelCase_ = model[int(_lowerCAmelCase )]
lowerCamelCase_ = old_model[int(_lowerCAmelCase )]
else:
lowerCamelCase_ = getattr(_lowerCAmelCase , _lowerCAmelCase )
if old_attribute == "":
lowerCamelCase_ = old_model
else:
if not hasattr(_lowerCAmelCase , _lowerCAmelCase ):
raise ValueError(f"""{old_model} does not have {old_attribute}""" )
lowerCamelCase_ = getattr(_lowerCAmelCase , _lowerCAmelCase )
if not is_key_init:
raise ValueError(f"""{key} was not correctly initialized!""" )
print(f"""Saving model to {pytorch_dump_folder_path}""" )
prophet.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
lowerCamelCase : int = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--prophetnet_checkpoint_path", default=None, type=str, required=True, help="Path the official PyTorch dump."
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, required=True, help="Path to the output PyTorch model."
)
lowerCamelCase : str = parser.parse_args()
convert_prophetnet_checkpoint_to_pytorch(args.prophetnet_checkpoint_path, args.pytorch_dump_folder_path)
| 204
|
'''simple docstring'''
import string
from math import logaa
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : List[str] = document.translate(
str.maketrans("""""" , """""" , string.punctuation ) ).replace("""\n""" , """""" )
snake_case__ : List[str] = document_without_punctuation.split(""" """ ) # word tokenization
return len([word for word in tokenize_document if word.lower() == term.lower()] )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> tuple[int, int]:
snake_case__ : Dict = corpus.lower().translate(
str.maketrans("""""" , """""" , string.punctuation ) ) # strip all punctuation and replace it with ''
snake_case__ : Any = corpus_without_punctuation.split("""\n""" )
snake_case__ : int = term.lower()
return (len([doc for doc in docs if term in doc] ), len(_lowerCAmelCase ))
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> float:
if smoothing:
if n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(1 + logaa(n / (1 + df) ) , 3 )
if df == 0:
raise ZeroDivisionError("""df must be > 0""" )
elif n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(logaa(n / df ) , 3 )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> float:
return round(tf * idf , 3 )
| 35
| 0
|
import copy
import os
import cva
import numpy as np
from matplotlib import pyplot as plt
class _a :
def __init__(self ) -> Tuple:
UpperCAmelCase_: Optional[int] = """"""
UpperCAmelCase_: List[Any] = """"""
UpperCAmelCase_: List[str] = []
UpperCAmelCase_: str = 0
UpperCAmelCase_: Union[str, Any] = 256
UpperCAmelCase_: Union[str, Any] = 0
UpperCAmelCase_: Any = 0
UpperCAmelCase_: List[Any] = 0
UpperCAmelCase_: Optional[Any] = 0
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Optional[int]:
UpperCAmelCase_: Dict = cva.imread(snake_case_, 0 )
UpperCAmelCase_: str = copy.deepcopy(self.img )
UpperCAmelCase_: List[str] = plt.hist(self.img.ravel(), 256, [0, 256], label="""x""" )
UpperCAmelCase_: str = np.sum(snake_case_ )
for i in range(len(snake_case_ ) ):
UpperCAmelCase_: str = x[i] / self.k
self.sk += prk
UpperCAmelCase_: int = (self.L - 1) * self.sk
if self.rem != 0:
UpperCAmelCase_: List[Any] = int(last % last )
UpperCAmelCase_: Tuple = int(last + 1 if self.rem >= 0.5 else last )
self.last_list.append(snake_case_ )
UpperCAmelCase_: Tuple = int(np.ma.count(self.img ) / self.img[1].size )
UpperCAmelCase_: int = self.img[1].size
for i in range(self.number_of_cols ):
for j in range(self.number_of_rows ):
UpperCAmelCase_: Tuple = self.img[j][i]
if num != self.last_list[num]:
UpperCAmelCase_: str = self.last_list[num]
cva.imwrite("""output_data/output.jpg""", self.img )
def __snake_case (self ) -> Optional[Any]:
plt.hist(self.img.ravel(), 256, [0, 256] )
def __snake_case (self ) -> str:
cva.imshow("""Output-Image""", self.img )
cva.imshow("""Input-Image""", self.original_image )
cva.waitKey(5000 )
cva.destroyAllWindows()
if __name__ == "__main__":
a : str = os.path.join(os.path.basename(__file__), 'image_data/input.jpg')
a : Dict = ConstantStretch()
stretcher.stretch(file_path)
stretcher.plot_histogram()
stretcher.show_image()
| 147
|
'''simple docstring'''
from __future__ import annotations
import inspect
import unittest
import numpy as np
from transformers import ResNetConfig
from transformers.testing_utils import require_tf, require_vision, slow
from transformers.utils import cached_property, is_tf_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_tf_common import TFModelTesterMixin, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_tf_available():
import tensorflow as tf
from transformers import TFResNetForImageClassification, TFResNetModel
from transformers.models.resnet.modeling_tf_resnet import TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class UpperCAmelCase_ :
"""simple docstring"""
def __init__( self : int , snake_case_ : Tuple , snake_case_ : List[str]=3 , snake_case_ : Tuple=32 , snake_case_ : List[Any]=3 , snake_case_ : List[str]=10 , snake_case_ : List[str]=[10, 20, 30, 40] , snake_case_ : Tuple=[1, 1, 2, 1] , snake_case_ : Tuple=True , snake_case_ : str=True , snake_case_ : int="relu" , snake_case_ : List[Any]=3 , snake_case_ : str=None , ):
snake_case__ : List[Any] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : int = image_size
snake_case__ : List[Any] = num_channels
snake_case__ : Optional[Any] = embeddings_size
snake_case__ : Optional[int] = hidden_sizes
snake_case__ : Tuple = depths
snake_case__ : Any = is_training
snake_case__ : Optional[int] = use_labels
snake_case__ : Optional[int] = hidden_act
snake_case__ : Optional[int] = num_labels
snake_case__ : int = scope
snake_case__ : Tuple = len(snake_case_ )
def lowerCamelCase ( self : Any ):
snake_case__ : Union[str, Any] = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : Union[str, Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size] , self.num_labels )
snake_case__ : List[str] = self.get_config()
return config, pixel_values, labels
def lowerCamelCase ( self : int ):
return ResNetConfig(
num_channels=self.num_channels , embeddings_size=self.embeddings_size , hidden_sizes=self.hidden_sizes , depths=self.depths , hidden_act=self.hidden_act , num_labels=self.num_labels , image_size=self.image_size , )
def lowerCamelCase ( self : Tuple , snake_case_ : Tuple , snake_case_ : List[Any] , snake_case_ : Optional[int] ):
snake_case__ : Optional[Any] = TFResNetModel(config=snake_case_ )
snake_case__ : int = model(snake_case_ )
# expected last hidden states: B, C, H // 32, W // 32
self.parent.assertEqual(
result.last_hidden_state.shape , (self.batch_size, self.hidden_sizes[-1], self.image_size // 32, self.image_size // 32) , )
def lowerCamelCase ( self : List[str] , snake_case_ : List[str] , snake_case_ : str , snake_case_ : Union[str, Any] ):
snake_case__ : str = self.num_labels
snake_case__ : Optional[int] = TFResNetForImageClassification(snake_case_ )
snake_case__ : Tuple = model(snake_case_ , labels=snake_case_ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) )
def lowerCamelCase ( self : Tuple ):
snake_case__ : List[Any] = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : str = config_and_inputs
snake_case__ : int = {"""pixel_values""": pixel_values}
return config, inputs_dict
@require_tf
class UpperCAmelCase_ ( _a , _a , unittest.TestCase ):
"""simple docstring"""
lowercase = (TFResNetModel, TFResNetForImageClassification) if is_tf_available() else ()
lowercase = (
{"feature-extraction": TFResNetModel, "image-classification": TFResNetForImageClassification}
if is_tf_available()
else {}
)
lowercase = False
lowercase = False
lowercase = False
lowercase = False
lowercase = False
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Tuple = TFResNetModelTester(self )
snake_case__ : List[str] = ConfigTester(self , config_class=snake_case_ , has_text_modality=snake_case_ )
def lowerCamelCase ( self : Dict ):
self.create_and_test_config_common_properties()
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowerCamelCase ( self : str ):
return
@unittest.skip(reason="""ResNet does not use inputs_embeds""" )
def lowerCamelCase ( self : int ):
pass
@unittest.skip(reason="""ResNet does not support input and output embeddings""" )
def lowerCamelCase ( self : List[Any] ):
pass
def lowerCamelCase ( self : List[Any] ):
snake_case__ , snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Dict = model_class(snake_case_ )
snake_case__ : Optional[Any] = inspect.signature(model.call )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Union[str, Any] = [*signature.parameters.keys()]
snake_case__ : Optional[int] = ["""pixel_values"""]
self.assertListEqual(arg_names[:1] , snake_case_ )
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*snake_case_ )
def lowerCamelCase ( self : List[str] ):
def check_hidden_states_output(snake_case_ : Any , snake_case_ : Any , snake_case_ : List[str] ):
snake_case__ : List[Any] = model_class(snake_case_ )
snake_case__ : Dict = model(**self._prepare_for_class(snake_case_ , snake_case_ ) )
snake_case__ : str = outputs.encoder_hidden_states if config.is_encoder_decoder else outputs.hidden_states
snake_case__ : List[Any] = self.model_tester.num_stages
self.assertEqual(len(snake_case_ ) , expected_num_stages + 1 )
# ResNet's feature maps are of shape (batch_size, num_channels, height, width)
self.assertListEqual(
list(hidden_states[0].shape[-2:] ) , [self.model_tester.image_size // 4, self.model_tester.image_size // 4] , )
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = ["""basic""", """bottleneck"""]
for model_class in self.all_model_classes:
for layer_type in layers_type:
snake_case__ : Dict = layer_type
snake_case__ : Optional[int] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[Any] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Tuple = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*snake_case_ )
@slow
def lowerCamelCase ( self : Optional[Any] ):
for model_name in TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : str = TFResNetModel.from_pretrained(snake_case_ )
self.assertIsNotNone(snake_case_ )
def __snake_case( ) -> Optional[int]:
snake_case__ : Optional[Any] = Image.open("""./tests/fixtures/tests_samples/COCO/000000039769.png""" )
return image
@require_tf
@require_vision
class UpperCAmelCase_ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowerCamelCase ( self : List[Any] ):
return (
AutoImageProcessor.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
if is_vision_available()
else None
)
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : List[str] = TFResNetForImageClassification.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
snake_case__ : List[Any] = self.default_image_processor
snake_case__ : List[Any] = prepare_img()
snake_case__ : List[str] = image_processor(images=snake_case_ , return_tensors="""tf""" )
# forward pass
snake_case__ : Optional[Any] = model(**snake_case_ )
# verify the logits
snake_case__ : Union[str, Any] = tf.TensorShape((1, 1_000) )
self.assertEqual(outputs.logits.shape , snake_case_ )
snake_case__ : List[str] = tf.constant([-11.1069, -9.7877, -8.3777] )
self.assertTrue(np.allclose(outputs.logits[0, :3].numpy() , snake_case_ , atol=1E-4 ) )
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def a__ ( A_ ):
'''simple docstring'''
if not isinstance(_lowerCAmelCase, _lowerCAmelCase ):
raise ValueError("""Input series is not valid, valid series - [2, 4, 6]""" )
if len(_lowerCAmelCase ) == 0:
raise ValueError("""Input list must be a non empty list""" )
if len(_lowerCAmelCase ) == 1:
return True
__magic_name__ = series[1] - series[0]
for index in range(len(_lowerCAmelCase ) - 1 ):
if series[index + 1] - series[index] != common_diff:
return False
return True
def a__ ( A_ ):
'''simple docstring'''
if not isinstance(_lowerCAmelCase, _lowerCAmelCase ):
raise ValueError("""Input series is not valid, valid series - [2, 4, 6]""" )
if len(_lowerCAmelCase ) == 0:
raise ValueError("""Input list must be a non empty list""" )
__magic_name__ = 0
for val in series:
answer += val
return answer / len(_lowerCAmelCase )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 88
|
'''simple docstring'''
from ...configuration_utils import PretrainedConfig
from ...utils import logging
__a = logging.get_logger(__name__)
__a = {
"vinvino02/glpn-kitti": "https://huggingface.co/vinvino02/glpn-kitti/resolve/main/config.json",
# See all GLPN models at https://huggingface.co/models?filter=glpn
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = "glpn"
def __init__( self : Optional[Any] , snake_case_ : List[str]=3 , snake_case_ : Dict=4 , snake_case_ : List[Any]=[2, 2, 2, 2] , snake_case_ : int=[8, 4, 2, 1] , snake_case_ : List[str]=[32, 64, 160, 256] , snake_case_ : Tuple=[7, 3, 3, 3] , snake_case_ : List[Any]=[4, 2, 2, 2] , snake_case_ : Tuple=[1, 2, 5, 8] , snake_case_ : List[str]=[4, 4, 4, 4] , snake_case_ : Optional[int]="gelu" , snake_case_ : Dict=0.0 , snake_case_ : Union[str, Any]=0.0 , snake_case_ : List[Any]=0.02 , snake_case_ : Tuple=0.1 , snake_case_ : Any=1E-6 , snake_case_ : Dict=64 , snake_case_ : Tuple=10 , snake_case_ : List[Any]=-1 , **snake_case_ : Optional[Any] , ):
super().__init__(**snake_case_ )
snake_case__ : Optional[Any] = num_channels
snake_case__ : Dict = num_encoder_blocks
snake_case__ : Tuple = depths
snake_case__ : Union[str, Any] = sr_ratios
snake_case__ : Tuple = hidden_sizes
snake_case__ : Optional[Any] = patch_sizes
snake_case__ : int = strides
snake_case__ : List[Any] = mlp_ratios
snake_case__ : Optional[int] = num_attention_heads
snake_case__ : Dict = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : Optional[Any] = attention_probs_dropout_prob
snake_case__ : str = initializer_range
snake_case__ : List[str] = drop_path_rate
snake_case__ : int = layer_norm_eps
snake_case__ : Tuple = decoder_hidden_size
snake_case__ : List[Any] = max_depth
snake_case__ : Dict = head_in_index
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|
'''simple docstring'''
def _lowerCAmelCase ( __snake_case : int ) -> int:
if n == 1 or not isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return 0
elif n == 2:
return 1
else:
__A : Optional[int] = [0, 1]
for i in range(2 , n + 1 ):
sequence.append(sequence[i - 1] + sequence[i - 2] )
return sequence[n]
def _lowerCAmelCase ( __snake_case : Optional[int] ) -> int:
__A : Union[str, Any] = 0
__A : List[str] = 2
while digits < n:
index += 1
__A : Any = len(str(fibonacci(_lowerCAmelCase ) ) )
return index
def _lowerCAmelCase ( __snake_case : Union[str, Any] = 10_00 ) -> int:
return fibonacci_digits_index(_lowerCAmelCase )
if __name__ == "__main__":
print(solution(int(str(input()).strip())))
| 190
|
'''simple docstring'''
import json
from typing import List, Optional, Tuple
from tokenizers import normalizers
from tokenizers.pre_tokenizers import BertPreTokenizer, PreTokenizer
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_roformer import RoFormerTokenizer
from .tokenization_utils import JiebaPreTokenizer
__a = logging.get_logger(__name__)
__a = {"vocab_file": "vocab.txt", "tokenizer_file": "tokenizer.json"}
__a = {
"vocab_file": {
"junnyu/roformer_chinese_small": "https://huggingface.co/junnyu/roformer_chinese_small/resolve/main/vocab.txt",
"junnyu/roformer_chinese_base": "https://huggingface.co/junnyu/roformer_chinese_base/resolve/main/vocab.txt",
"junnyu/roformer_chinese_char_small": (
"https://huggingface.co/junnyu/roformer_chinese_char_small/resolve/main/vocab.txt"
),
"junnyu/roformer_chinese_char_base": (
"https://huggingface.co/junnyu/roformer_chinese_char_base/resolve/main/vocab.txt"
),
"junnyu/roformer_small_discriminator": (
"https://huggingface.co/junnyu/roformer_small_discriminator/resolve/main/vocab.txt"
),
"junnyu/roformer_small_generator": (
"https://huggingface.co/junnyu/roformer_small_generator/resolve/main/vocab.txt"
),
}
}
__a = {
"junnyu/roformer_chinese_small": 1536,
"junnyu/roformer_chinese_base": 1536,
"junnyu/roformer_chinese_char_small": 512,
"junnyu/roformer_chinese_char_base": 512,
"junnyu/roformer_small_discriminator": 128,
"junnyu/roformer_small_generator": 128,
}
__a = {
"junnyu/roformer_chinese_small": {"do_lower_case": True},
"junnyu/roformer_chinese_base": {"do_lower_case": True},
"junnyu/roformer_chinese_char_small": {"do_lower_case": True},
"junnyu/roformer_chinese_char_base": {"do_lower_case": True},
"junnyu/roformer_small_discriminator": {"do_lower_case": True},
"junnyu/roformer_small_generator": {"do_lower_case": True},
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = VOCAB_FILES_NAMES
lowercase = PRETRAINED_VOCAB_FILES_MAP
lowercase = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
lowercase = PRETRAINED_INIT_CONFIGURATION
lowercase = RoFormerTokenizer
def __init__( self : List[Any] , snake_case_ : List[str]=None , snake_case_ : Dict=None , snake_case_ : Any=True , snake_case_ : str="[UNK]" , snake_case_ : List[str]="[SEP]" , snake_case_ : Optional[Any]="[PAD]" , snake_case_ : Union[str, Any]="[CLS]" , snake_case_ : Union[str, Any]="[MASK]" , snake_case_ : List[Any]=True , snake_case_ : Optional[Any]=None , **snake_case_ : Tuple , ):
super().__init__(
snake_case_ , tokenizer_file=snake_case_ , do_lower_case=snake_case_ , unk_token=snake_case_ , sep_token=snake_case_ , pad_token=snake_case_ , cls_token=snake_case_ , mask_token=snake_case_ , tokenize_chinese_chars=snake_case_ , strip_accents=snake_case_ , **snake_case_ , )
snake_case__ : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() )
if (
pre_tok_state.get("""lowercase""" , snake_case_ ) != do_lower_case
or pre_tok_state.get("""strip_accents""" , snake_case_ ) != strip_accents
):
snake_case__ : str = getattr(snake_case_ , pre_tok_state.pop("""type""" ) )
snake_case__ : Optional[int] = do_lower_case
snake_case__ : Union[str, Any] = strip_accents
snake_case__ : Union[str, Any] = pre_tok_class(**snake_case_ )
snake_case__ : str = do_lower_case
def __getstate__( self : int ):
snake_case__ : List[Any] = self.__dict__.copy()
snake_case__ : str = BertPreTokenizer()
return state
def __setstate__( self : Dict , snake_case_ : Dict ):
snake_case__ : List[Any] = d
snake_case__ : Union[str, Any] = self.__dict__["""_tokenizer"""].get_vocab()
snake_case__ : List[Any] = PreTokenizer.custom(JiebaPreTokenizer(snake_case_ ) )
def lowerCamelCase ( self : str , snake_case_ : Optional[Any] , snake_case_ : List[str]=None ):
snake_case__ : str = [self.cls_token_id] + token_ids_a + [self.sep_token_id]
if token_ids_a:
output += token_ids_a + [self.sep_token_id]
return output
def lowerCamelCase ( self : str , snake_case_ : List[int] , snake_case_ : Optional[List[int]] = None ):
snake_case__ : int = [self.sep_token_id]
snake_case__ : str = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowerCamelCase ( self : Dict , snake_case_ : str , snake_case_ : Optional[str] = None ):
snake_case__ : Union[str, Any] = self._tokenizer.model.save(snake_case_ , name=snake_case_ )
return tuple(snake_case_ )
def lowerCamelCase ( self : Dict , snake_case_ : List[str] , snake_case_ : Tuple=None , snake_case_ : List[str]=None , snake_case_ : Union[str, Any]=False , **snake_case_ : Tuple , ):
snake_case__ : Optional[Any] = BertPreTokenizer()
return super().save_pretrained(snake_case_ , snake_case_ , snake_case_ , snake_case_ , **snake_case_ )
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|
import argparse
from ...utils.dataclasses import (
ComputeEnvironment,
DistributedType,
DynamoBackend,
PrecisionType,
SageMakerDistributedType,
)
from ..menu import BulletMenu
__lowerCAmelCase = [
'''EAGER''',
'''AOT_EAGER''',
'''INDUCTOR''',
'''NVFUSER''',
'''AOT_NVFUSER''',
'''AOT_CUDAGRAPHS''',
'''OFI''',
'''FX2TRT''',
'''ONNXRT''',
'''IPEX''',
]
def snake_case_ ( snake_case , snake_case=None , snake_case=None , snake_case=None ) -> str:
lowercase__: Union[str, Any] = True
while ask_again:
lowercase__: Optional[Any] = input(_lowerCAmelCase )
try:
if default is not None and len(_lowerCAmelCase ) == 0:
return default
return convert_value(_lowerCAmelCase ) if convert_value is not None else result
except Exception:
if error_message is not None:
print(_lowerCAmelCase )
def snake_case_ ( snake_case , snake_case=[] , snake_case=None , snake_case=0 ) -> Optional[Any]:
lowercase__: Tuple = BulletMenu(_lowerCAmelCase , _lowerCAmelCase )
lowercase__: Any = menu.run(default_choice=_lowerCAmelCase )
return convert_value(_lowerCAmelCase ) if convert_value is not None else result
def snake_case_ ( snake_case ) -> Union[str, Any]:
lowercase__: Optional[int] = int(_lowerCAmelCase )
return ComputeEnvironment(['LOCAL_MACHINE', 'AMAZON_SAGEMAKER'][value] )
def snake_case_ ( snake_case ) -> List[str]:
lowercase__: str = int(_lowerCAmelCase )
return DistributedType(['NO', 'MULTI_CPU', 'MULTI_XPU', 'MULTI_GPU', 'MULTI_NPU', 'TPU'][value] )
def snake_case_ ( snake_case ) -> str:
lowercase__: str = int(_lowerCAmelCase )
return DynamoBackend(DYNAMO_BACKENDS[value] ).value
def snake_case_ ( snake_case ) -> str:
lowercase__: Dict = int(_lowerCAmelCase )
return PrecisionType(['no', 'fp16', 'bf16', 'fp8'][value] )
def snake_case_ ( snake_case ) -> Dict:
lowercase__: Dict = int(_lowerCAmelCase )
return SageMakerDistributedType(['NO', 'DATA_PARALLEL', 'MODEL_PARALLEL'][value] )
def snake_case_ ( snake_case ) -> Dict:
return {"yes": True, "no": False}[value.lower()]
class __a ( argparse.RawDescriptionHelpFormatter ):
def SCREAMING_SNAKE_CASE__ ( self , lowerCAmelCase__ , lowerCAmelCase__ , lowerCAmelCase__ , lowerCAmelCase__ ) -> Dict:
'''simple docstring'''
lowercase__: Tuple = super()._format_usage(snake_case_ , snake_case_ , snake_case_ , snake_case_ )
lowercase__: Optional[int] = usage.replace('<command> [<args>] ' , '' )
return usage
| 196
|
'''simple docstring'''
import os
import time
import pytest
from datasets.utils.filelock import FileLock, Timeout
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : int = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : Dict = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : List[str] = 0.01
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
snake_case__ : str = time.time()
locka.acquire(_lowerCAmelCase )
assert time.time() - _start > timeout
def __snake_case( _lowerCAmelCase ) -> Tuple:
snake_case__ : Dict = """a""" * 1_000 + """.lock"""
snake_case__ : int = FileLock(str(tmpdir / filename ) )
assert locka._lock_file.endswith(""".lock""" )
assert not locka._lock_file.endswith(_lowerCAmelCase )
assert len(os.path.basename(locka._lock_file ) ) <= 255
snake_case__ : Dict = FileLock(tmpdir / filename )
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
locka.acquire(0 )
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from collections import OrderedDict
from typing import Mapping
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
A : List[str] = logging.get_logger(__name__)
A : Dict = {
"xlm-mlm-en-2048": "https://huggingface.co/xlm-mlm-en-2048/resolve/main/config.json",
"xlm-mlm-ende-1024": "https://huggingface.co/xlm-mlm-ende-1024/resolve/main/config.json",
"xlm-mlm-enfr-1024": "https://huggingface.co/xlm-mlm-enfr-1024/resolve/main/config.json",
"xlm-mlm-enro-1024": "https://huggingface.co/xlm-mlm-enro-1024/resolve/main/config.json",
"xlm-mlm-tlm-xnli15-1024": "https://huggingface.co/xlm-mlm-tlm-xnli15-1024/resolve/main/config.json",
"xlm-mlm-xnli15-1024": "https://huggingface.co/xlm-mlm-xnli15-1024/resolve/main/config.json",
"xlm-clm-enfr-1024": "https://huggingface.co/xlm-clm-enfr-1024/resolve/main/config.json",
"xlm-clm-ende-1024": "https://huggingface.co/xlm-clm-ende-1024/resolve/main/config.json",
"xlm-mlm-17-1280": "https://huggingface.co/xlm-mlm-17-1280/resolve/main/config.json",
"xlm-mlm-100-1280": "https://huggingface.co/xlm-mlm-100-1280/resolve/main/config.json",
}
class _lowercase ( _a):
"""simple docstring"""
A__ = "xlm"
A__ = {
"hidden_size": "emb_dim",
"num_attention_heads": "n_heads",
"num_hidden_layers": "n_layers",
"n_words": "vocab_size", # For backward compatibility
}
def __init__( self : Tuple , __lowerCamelCase : Optional[int]=30145 , __lowerCamelCase : Optional[Any]=2048 , __lowerCamelCase : Optional[Any]=12 , __lowerCamelCase : Dict=16 , __lowerCamelCase : Optional[Any]=0.1 , __lowerCamelCase : str=0.1 , __lowerCamelCase : Tuple=True , __lowerCamelCase : Union[str, Any]=False , __lowerCamelCase : Dict=False , __lowerCamelCase : Optional[int]=False , __lowerCamelCase : Dict=1 , __lowerCamelCase : List[Any]=True , __lowerCamelCase : Tuple=512 , __lowerCamelCase : List[str]=2048**-0.5 , __lowerCamelCase : List[Any]=1E-1_2 , __lowerCamelCase : int=0.0_2 , __lowerCamelCase : List[str]=0 , __lowerCamelCase : Optional[int]=1 , __lowerCamelCase : List[Any]=2 , __lowerCamelCase : str=3 , __lowerCamelCase : Union[str, Any]=5 , __lowerCamelCase : List[str]=True , __lowerCamelCase : List[str]="first" , __lowerCamelCase : List[Any]=True , __lowerCamelCase : List[Any]=None , __lowerCamelCase : List[str]=True , __lowerCamelCase : Dict=0.1 , __lowerCamelCase : Any=5 , __lowerCamelCase : Optional[Any]=5 , __lowerCamelCase : List[Any]=0 , __lowerCamelCase : List[str]=0 , __lowerCamelCase : str=2 , __lowerCamelCase : Tuple=0 , **__lowerCamelCase : List[Any] , ):
'''simple docstring'''
lowerCamelCase__ : Optional[Any] = vocab_size
lowerCamelCase__ : List[Any] = emb_dim
lowerCamelCase__ : int = n_layers
lowerCamelCase__ : Dict = n_heads
lowerCamelCase__ : Union[str, Any] = dropout
lowerCamelCase__ : List[str] = attention_dropout
lowerCamelCase__ : Optional[int] = gelu_activation
lowerCamelCase__ : Union[str, Any] = sinusoidal_embeddings
lowerCamelCase__ : Union[str, Any] = causal
lowerCamelCase__ : Tuple = asm
lowerCamelCase__ : int = n_langs
lowerCamelCase__ : int = use_lang_emb
lowerCamelCase__ : List[Any] = layer_norm_eps
lowerCamelCase__ : Union[str, Any] = bos_index
lowerCamelCase__ : int = eos_index
lowerCamelCase__ : str = pad_index
lowerCamelCase__ : str = unk_index
lowerCamelCase__ : Tuple = mask_index
lowerCamelCase__ : Optional[int] = is_encoder
lowerCamelCase__ : int = max_position_embeddings
lowerCamelCase__ : List[Any] = embed_init_std
lowerCamelCase__ : List[str] = init_std
lowerCamelCase__ : Any = summary_type
lowerCamelCase__ : Tuple = summary_use_proj
lowerCamelCase__ : int = summary_activation
lowerCamelCase__ : Optional[int] = summary_proj_to_labels
lowerCamelCase__ : Optional[int] = summary_first_dropout
lowerCamelCase__ : str = start_n_top
lowerCamelCase__ : Union[str, Any] = end_n_top
lowerCamelCase__ : List[Any] = mask_token_id
lowerCamelCase__ : Optional[Any] = lang_id
if "n_words" in kwargs:
lowerCamelCase__ : Any = kwargs["""n_words"""]
super().__init__(pad_token_id=snake_case_ , bos_token_id=snake_case_ , **snake_case_ )
class _lowercase ( _a):
"""simple docstring"""
@property
def lowerCAmelCase ( self : Dict ):
'''simple docstring'''
if self.task == "multiple-choice":
lowerCamelCase__ : int = {0: """batch""", 1: """choice""", 2: """sequence"""}
else:
lowerCamelCase__ : Optional[int] = {0: """batch""", 1: """sequence"""}
return OrderedDict(
[
("input_ids", dynamic_axis),
("attention_mask", dynamic_axis),
("token_type_ids", dynamic_axis),
] )
| 184
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> float:
snake_case__ : str = (num_of_terms / 2) * (2 * first_term + (num_of_terms - 1) * common_diff)
# formula for sum of series
return total
def __snake_case( ) -> List[str]:
print(sum_of_series(1 , 1 , 10 ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 35
| 0
|
'''simple docstring'''
def lowerCAmelCase (__A , __A):
"""simple docstring"""
_a = 0
while b > 0:
if b & 1:
res += a
a += a
b >>= 1
return res
def lowerCAmelCase (__A , __A , __A):
"""simple docstring"""
_a = 0
while b > 0:
if b & 1:
_a = ((res % c) + (a % c)) % c
a += a
b >>= 1
return res
| 211
|
'''simple docstring'''
__a = frozenset(
[
"prompt",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset([])
__a = frozenset(["image"])
__a = frozenset(
[
"image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image"])
__a = frozenset(
[
"prompt",
"image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "negative_prompt"])
__a = frozenset(
[
# Text guided image variation with an image mask
"prompt",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "mask_image", "negative_prompt"])
__a = frozenset(
[
# image variation with an image mask
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image", "mask_image"])
__a = frozenset(
[
"example_image",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["example_image", "image", "mask_image"])
__a = frozenset(["class_labels"])
__a = frozenset(["class_labels"])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(
[
"prompt",
"audio_length_in_s",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset(["input_tokens"])
__a = frozenset(["input_tokens"])
| 35
| 0
|
import unittest
from transformers import is_torch_available
from transformers.testing_utils import require_sentencepiece, require_tokenizers, require_torch, slow
if is_torch_available():
import torch
from transformers import XLMRobertaModel
@require_sentencepiece
@require_tokenizers
@require_torch
class __lowerCAmelCase ( unittest.TestCase ):
@slow
def A__ ( self ) -> Dict:
'''simple docstring'''
_lowercase =XLMRobertaModel.from_pretrained('xlm-roberta-base' )
_lowercase =torch.tensor([[0, 581, 10_269, 83, 99_942, 136, 60_742, 23, 70, 80_583, 18_276, 2]] )
# The dog is cute and lives in the garden house
_lowercase =torch.Size((1, 12, 768) ) # batch_size, sequence_length, embedding_vector_dim
_lowercase =torch.tensor(
[[-0.0101, 0.1218, -0.0803, 0.0801, 0.1327, 0.0776, -0.1215, 0.2383, 0.3338, 0.3106, 0.0300, 0.0252]] )
# xlmr = torch.hub.load('pytorch/fairseq', 'xlmr.base')
# xlmr.eval()
# expected_output_values_last_dim = xlmr.extract_features(input_ids[0])[:, :, -1]
with torch.no_grad():
_lowercase =model(snake_case_ )["""last_hidden_state"""].detach()
self.assertEqual(output.shape , snake_case_ )
# compare the actual values for a slice of last dim
self.assertTrue(torch.allclose(output[:, :, -1] , snake_case_ , atol=1e-3 ) )
@slow
def A__ ( self ) -> Optional[Any]:
'''simple docstring'''
_lowercase =XLMRobertaModel.from_pretrained('xlm-roberta-large' )
_lowercase =torch.tensor([[0, 581, 10_269, 83, 99_942, 136, 60_742, 23, 70, 80_583, 18_276, 2]] )
# The dog is cute and lives in the garden house
_lowercase =torch.Size((1, 12, 1_024) ) # batch_size, sequence_length, embedding_vector_dim
_lowercase =torch.tensor(
[[-0.0699, -0.0318, 0.0705, -0.1241, 0.0999, -0.0520, 0.1004, -0.1838, -0.4704, 0.1437, 0.0821, 0.0126]] )
# xlmr = torch.hub.load('pytorch/fairseq', 'xlmr.large')
# xlmr.eval()
# expected_output_values_last_dim = xlmr.extract_features(input_ids[0])[:, :, -1]
with torch.no_grad():
_lowercase =model(snake_case_ )["""last_hidden_state"""].detach()
self.assertEqual(output.shape , snake_case_ )
# compare the actual values for a slice of last dim
self.assertTrue(torch.allclose(output[:, :, -1] , snake_case_ , atol=1e-3 ) )
| 205
|
'''simple docstring'''
import json
import os
import unittest
from transformers.models.gptsan_japanese.tokenization_gptsan_japanese import (
VOCAB_FILES_NAMES,
GPTSanJapaneseTokenizer,
)
from transformers.testing_utils import require_tokenizers, slow
from ...test_tokenization_common import TokenizerTesterMixin
@require_tokenizers
class UpperCAmelCase_ ( _a , unittest.TestCase ):
"""simple docstring"""
lowercase = GPTSanJapaneseTokenizer
lowercase = False
lowercase = {"do_clean_text": False, "add_prefix_space": False}
def lowerCamelCase ( self : str ):
super().setUp()
# fmt: off
snake_case__ : Optional[Any] = ["""こん""", """こんに""", """にちは""", """ばんは""", """世界,㔺界""", """、""", """。""", """<BR>""", """<SP>""", """<TAB>""", """<URL>""", """<EMAIL>""", """<TEL>""", """<DATE>""", """<PRICE>""", """<BLOCK>""", """<KIGOU>""", """<U2000U2BFF>""", """<|emoji1|>""", """<unk>""", """<|bagoftoken|>""", """<|endoftext|>"""]
# fmt: on
snake_case__ : int = {"""emoji""": {"""\ud83d\ude00""": """<|emoji1|>"""}, """emoji_inv""": {"""<|emoji1|>""": """\ud83d\ude00"""}} # 😀
snake_case__ : List[Any] = {"""unk_token""": """<unk>"""}
snake_case__ : Optional[Any] = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""vocab_file"""] )
snake_case__ : Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""emoji_file"""] )
with open(self.vocab_file , """w""" , encoding="""utf-8""" ) as vocab_writer:
vocab_writer.write("""""".join([x + """\n""" for x in vocab_tokens] ) )
with open(self.emoji_file , """w""" ) as emoji_writer:
emoji_writer.write(json.dumps(snake_case_ ) )
def lowerCamelCase ( self : Any , **snake_case_ : Union[str, Any] ):
kwargs.update(self.special_tokens_map )
return GPTSanJapaneseTokenizer.from_pretrained(self.tmpdirname , **snake_case_ )
def lowerCamelCase ( self : Any , snake_case_ : str ):
snake_case__ : Union[str, Any] = """こんにちは、世界。 \nこんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。 \nこんばんは、世界。😀"""
return input_text, output_text
def lowerCamelCase ( self : Any , snake_case_ : Dict ):
snake_case__ , snake_case__ : int = self.get_input_output_texts(snake_case_ )
snake_case__ : int = tokenizer.encode(snake_case_ , add_special_tokens=snake_case_ )
snake_case__ : List[str] = tokenizer.decode(snake_case_ , clean_up_tokenization_spaces=snake_case_ )
return text, ids
def lowerCamelCase ( self : Optional[Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Union[str, Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : List[str] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Dict ):
snake_case__ : Optional[Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : int = """こんにちは、世界。 こんばんは、㔺界。"""
snake_case__ : Optional[int] = ["""こん""", """にちは""", """、""", """世界""", """。""", """<SP>""", """こん""", """ばんは""", """、""", """㔺界""", """。"""]
snake_case__ : Dict = tokenizer.tokenize(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids without special tokens
snake_case__ : Union[str, Any] = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6]
snake_case__ : List[Any] = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids with special tokens
snake_case__ : Union[str, Any] = tokens + [tokenizer.unk_token]
snake_case__ : Dict = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6, 19]
snake_case__ : Any = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Union[str, Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : Union[str, Any] = """こんにちは、<|bagoftoken|>世界。こんばんは、<|bagoftoken|>㔺界。"""
snake_case__ : Optional[int] = """こんにちは、、、、世界。こんばんは、、、、世界。"""
snake_case__ : Any = tokenizer.encode(snake_case_ )
snake_case__ : int = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Tuple = """こんにちは、世界。"""
snake_case__ : Optional[Any] = """こんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。こんばんは、世界。😀"""
snake_case__ : Dict = tokenizer.encode(prefix_text + input_text )
snake_case__ : Dict = tokenizer.encode("""""" , prefix_text=prefix_text + input_text )
snake_case__ : int = tokenizer.encode(snake_case_ , prefix_text=snake_case_ )
snake_case__ : Optional[Any] = tokenizer.decode(snake_case_ )
snake_case__ : Union[str, Any] = tokenizer.decode(snake_case_ )
snake_case__ : str = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Dict = """こんにちは、世界。"""
snake_case__ : Optional[int] = """こんばんは、㔺界。😀"""
snake_case__ : Any = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : Optional[int] = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : List[str] = [1] + [0] * (len_prefix + len_text + 1)
snake_case__ : Optional[int] = [1] * (len_prefix + len_text + 1) + [0]
snake_case__ : int = [1] + [1] * (len_prefix) + [0] * (len_text + 1)
snake_case__ : Any = tokenizer(prefix_text + input_text ).token_type_ids
snake_case__ : str = tokenizer("""""" , prefix_text=prefix_text + input_text ).token_type_ids
snake_case__ : Optional[Any] = tokenizer(snake_case_ , prefix_text=snake_case_ ).token_type_ids
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : Union[str, Any] = tokenizer.encode("""あンいワ""" )
snake_case__ : int = tokenizer.encode("""""" , prefix_text="""あンいワ""" )
snake_case__ : Dict = tokenizer.encode("""いワ""" , prefix_text="""あン""" )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertEqual(x_token_a[1] , x_token_a[-1] ) # SEG token
self.assertEqual(x_token_a[1] , x_token_a[3] ) # SEG token
@slow
def lowerCamelCase ( self : Any ):
snake_case__ : Optional[int] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : int = [["""武田信玄""", """は、"""], ["""織田信長""", """の配下の、"""]]
snake_case__ : Optional[Any] = tokenizer(snake_case_ , padding=snake_case_ )
snake_case__ : Tuple = tokenizer.batch_encode_plus(snake_case_ , padding=snake_case_ )
# fmt: off
snake_case__ : Optional[Any] = [[35_993, 8_640, 25_948, 35_998, 30_647, 35_675, 35_999, 35_999], [35_993, 10_382, 9_868, 35_998, 30_646, 9_459, 30_646, 35_675]]
snake_case__ : Optional[Any] = [[1, 1, 1, 0, 0, 0, 0, 0], [1, 1, 1, 0, 0, 0, 0, 0]]
snake_case__ : Optional[Any] = [[1, 1, 1, 1, 1, 1, 0, 0], [1, 1, 1, 1, 1, 1, 1, 1]]
# fmt: on
self.assertListEqual(x_token.input_ids , snake_case_ )
self.assertListEqual(x_token.token_type_ids , snake_case_ )
self.assertListEqual(x_token.attention_mask , snake_case_ )
self.assertListEqual(x_token_a.input_ids , snake_case_ )
self.assertListEqual(x_token_a.token_type_ids , snake_case_ )
self.assertListEqual(x_token_a.attention_mask , snake_case_ )
def lowerCamelCase ( self : Any ):
# Intentionally convert some words to accommodate character fluctuations unique to Japanese
pass
def lowerCamelCase ( self : List[str] ):
# tokenizer has no padding token
pass
| 35
| 0
|
from ...configuration_utils import PretrainedConfig
from ...utils import logging
UpperCAmelCase_ : List[Any] = logging.get_logger(__name__)
UpperCAmelCase_ : List[str] = {
'''tiiuae/falcon-40b''': '''https://huggingface.co/tiiuae/falcon-40b/resolve/main/config.json''',
'''tiiuae/falcon-7b''': '''https://huggingface.co/tiiuae/falcon-7b/resolve/main/config.json''',
}
class _SCREAMING_SNAKE_CASE ( _a ):
snake_case__ : int = """falcon"""
snake_case__ : Dict = ["""past_key_values"""]
def __init__( self : List[Any] , __lowerCamelCase : List[str]=65_024 , __lowerCamelCase : str=4_544 , __lowerCamelCase : int=32 , __lowerCamelCase : str=71 , __lowerCamelCase : Union[str, Any]=1E-5 , __lowerCamelCase : Tuple=0.02 , __lowerCamelCase : Dict=True , __lowerCamelCase : Optional[int]=0.0 , __lowerCamelCase : Optional[Any]=0.0 , __lowerCamelCase : List[str]=None , __lowerCamelCase : str=False , __lowerCamelCase : Any=False , __lowerCamelCase : Dict=True , __lowerCamelCase : Tuple=True , __lowerCamelCase : Tuple=False , __lowerCamelCase : int=11 , __lowerCamelCase : Tuple=11 , **__lowerCamelCase : Union[str, Any] , ):
UpperCamelCase :List[Any] = vocab_size
# Backward compatibility with n_embed kwarg
UpperCamelCase :Any = kwargs.pop("""n_embed""" , snake_case_ )
UpperCamelCase :Optional[int] = hidden_size if n_embed is None else n_embed
UpperCamelCase :List[str] = num_hidden_layers
UpperCamelCase :Tuple = num_attention_heads
UpperCamelCase :Tuple = layer_norm_epsilon
UpperCamelCase :Optional[Any] = initializer_range
UpperCamelCase :List[str] = use_cache
UpperCamelCase :Optional[int] = hidden_dropout
UpperCamelCase :Tuple = attention_dropout
UpperCamelCase :Optional[int] = bos_token_id
UpperCamelCase :List[str] = eos_token_id
UpperCamelCase :Dict = num_attention_heads if num_kv_heads is None else num_kv_heads
UpperCamelCase :Optional[Any] = alibi
UpperCamelCase :List[Any] = new_decoder_architecture
UpperCamelCase :int = multi_query # Ignored when new_decoder_architecture is True
UpperCamelCase :Optional[Any] = parallel_attn
UpperCamelCase :int = bias
super().__init__(bos_token_id=snake_case_ , eos_token_id=snake_case_ , **snake_case_ )
@property
def _A ( self : Any ):
return self.hidden_size // self.num_attention_heads
@property
def _A ( self : str ):
return not self.alibi
| 38
|
'''simple docstring'''
from transformers import BertTokenizerFast
from .custom_tokenization import CustomTokenizer
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = CustomTokenizer
pass
| 35
| 0
|
"""simple docstring"""
import argparse
from pathlib import Path
from typing import Dict, OrderedDict, Tuple
import torch
from audiocraft.models import MusicGen
from transformers import (
AutoFeatureExtractor,
AutoTokenizer,
EncodecModel,
MusicgenDecoderConfig,
MusicgenForConditionalGeneration,
MusicgenProcessor,
TaEncoderModel,
)
from transformers.models.musicgen.modeling_musicgen import MusicgenForCausalLM
from transformers.utils import logging
logging.set_verbosity_info()
_UpperCamelCase : Union[str, Any] = logging.get_logger(__name__)
_UpperCamelCase : int = ["model.decoder.embed_positions.weights"]
def a_ ( _lowerCAmelCase : Optional[Any] ):
'''simple docstring'''
if "emb" in name:
lowercase__ : int = name.replace('emb' , 'model.decoder.embed_tokens' )
if "transformer" in name:
lowercase__ : int = name.replace('transformer' , 'model.decoder' )
if "cross_attention" in name:
lowercase__ : Optional[int] = name.replace('cross_attention' , 'encoder_attn' )
if "linear1" in name:
lowercase__ : Union[str, Any] = name.replace('linear1' , 'fc1' )
if "linear2" in name:
lowercase__ : List[Any] = name.replace('linear2' , 'fc2' )
if "norm1" in name:
lowercase__ : int = name.replace('norm1' , 'self_attn_layer_norm' )
if "norm_cross" in name:
lowercase__ : Any = name.replace('norm_cross' , 'encoder_attn_layer_norm' )
if "norm2" in name:
lowercase__ : int = name.replace('norm2' , 'final_layer_norm' )
if "out_norm" in name:
lowercase__ : str = name.replace('out_norm' , 'model.decoder.layer_norm' )
if "linears" in name:
lowercase__ : Tuple = name.replace('linears' , 'lm_heads' )
if "condition_provider.conditioners.description.output_proj" in name:
lowercase__ : int = name.replace('condition_provider.conditioners.description.output_proj' , 'enc_to_dec_proj' )
return name
def a_ ( _lowerCAmelCase : Optional[int] , _lowerCAmelCase : int ):
'''simple docstring'''
lowercase__ : Any = list(state_dict.keys() )
lowercase__ : Tuple = {}
for key in keys:
lowercase__ : Tuple = state_dict.pop(_lowerCAmelCase )
lowercase__ : List[Any] = rename_keys(_lowerCAmelCase )
if "in_proj_weight" in key:
# split fused qkv proj
lowercase__ : List[Any] = val[:hidden_size, :]
lowercase__ : List[Any] = val[hidden_size : 2 * hidden_size, :]
lowercase__ : Dict = val[-hidden_size:, :]
elif "enc_to_dec_proj" in key:
lowercase__ : Union[str, Any] = val
else:
lowercase__ : int = val
return state_dict, enc_dec_proj_state_dict
def a_ ( _lowerCAmelCase : Dict ):
'''simple docstring'''
if checkpoint == "small":
# default config values
lowercase__ : Dict = 1024
lowercase__ : Tuple = 24
lowercase__ : int = 16
elif checkpoint == "medium":
lowercase__ : List[str] = 1536
lowercase__ : List[Any] = 48
lowercase__ : int = 24
elif checkpoint == "large":
lowercase__ : Optional[Any] = 2048
lowercase__ : Optional[int] = 48
lowercase__ : List[Any] = 32
else:
raise ValueError(f"""Checkpoint should be one of `['small', 'medium', 'large']`, got {checkpoint}.""" )
lowercase__ : List[Any] = MusicgenDecoderConfig(
hidden_size=_lowerCAmelCase , ffn_dim=hidden_size * 4 , num_hidden_layers=_lowerCAmelCase , num_attention_heads=_lowerCAmelCase , )
return config
@torch.no_grad()
def a_ ( _lowerCAmelCase : Union[str, Any] , _lowerCAmelCase : Optional[int]=None , _lowerCAmelCase : Dict=None , _lowerCAmelCase : int="cpu" ):
'''simple docstring'''
lowercase__ : List[str] = MusicGen.get_pretrained(_lowerCAmelCase , device=_lowerCAmelCase )
lowercase__ : Any = decoder_config_from_checkpoint(_lowerCAmelCase )
lowercase__ : int = fairseq_model.lm.state_dict()
lowercase__ : List[Any] = rename_state_dict(
_lowerCAmelCase , hidden_size=decoder_config.hidden_size )
lowercase__ : int = TaEncoderModel.from_pretrained('t5-base' )
lowercase__ : Dict = EncodecModel.from_pretrained('facebook/encodec_32khz' )
lowercase__ : str = MusicgenForCausalLM(_lowerCAmelCase ).eval()
# load all decoder weights - expect that we'll be missing embeddings and enc-dec projection
lowercase__ : Tuple = decoder.load_state_dict(_lowerCAmelCase , strict=_lowerCAmelCase )
for key in missing_keys.copy():
if key.startswith(('text_encoder', 'audio_encoder') ) or key in EXPECTED_MISSING_KEYS:
missing_keys.remove(_lowerCAmelCase )
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"""Missing key(s) in state_dict: {missing_keys}""" )
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"""Unexpected key(s) in state_dict: {unexpected_keys}""" )
# init the composite model
lowercase__ : Tuple = MusicgenForConditionalGeneration(text_encoder=_lowerCAmelCase , audio_encoder=_lowerCAmelCase , decoder=_lowerCAmelCase )
# load the pre-trained enc-dec projection (from the decoder state dict)
model.enc_to_dec_proj.load_state_dict(_lowerCAmelCase )
# check we can do a forward pass
lowercase__ : Optional[Any] = torch.arange(0 , 8 , dtype=torch.long ).reshape(2 , -1 )
lowercase__ : List[Any] = input_ids.reshape(2 * 4 , -1 )
with torch.no_grad():
lowercase__ : Optional[int] = model(input_ids=_lowerCAmelCase , decoder_input_ids=_lowerCAmelCase ).logits
if logits.shape != (8, 1, 2048):
raise ValueError('Incorrect shape for logits' )
# now construct the processor
lowercase__ : Optional[int] = AutoTokenizer.from_pretrained('t5-base' )
lowercase__ : Union[str, Any] = AutoFeatureExtractor.from_pretrained('facebook/encodec_32khz' , padding_side='left' )
lowercase__ : Tuple = MusicgenProcessor(feature_extractor=_lowerCAmelCase , tokenizer=_lowerCAmelCase )
# set the appropriate bos/pad token ids
lowercase__ : Dict = 2048
lowercase__ : Optional[int] = 2048
# set other default generation config params
lowercase__ : Tuple = int(30 * audio_encoder.config.frame_rate )
lowercase__ : Tuple = True
lowercase__ : Tuple = 3.0
if pytorch_dump_folder is not None:
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
logger.info(f"""Saving model {checkpoint} to {pytorch_dump_folder}""" )
model.save_pretrained(_lowerCAmelCase )
processor.save_pretrained(_lowerCAmelCase )
if repo_id:
logger.info(f"""Pushing model {checkpoint} to {repo_id}""" )
model.push_to_hub(_lowerCAmelCase )
processor.push_to_hub(_lowerCAmelCase )
if __name__ == "__main__":
_UpperCamelCase : Tuple = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--checkpoint",
default="small",
type=str,
help="Checkpoint size of the MusicGen model you'd like to convert. Can be one of: `['small', 'medium', 'large']`.",
)
parser.add_argument(
"--pytorch_dump_folder",
required=True,
default=None,
type=str,
help="Path to the output PyTorch model directory.",
)
parser.add_argument(
"--push_to_hub", default=None, type=str, help="Where to upload the converted model on the 🤗 hub."
)
parser.add_argument(
"--device", default="cpu", type=str, help="Torch device to run the conversion, either cpu or cuda."
)
_UpperCamelCase : Any = parser.parse_args()
convert_musicgen_checkpoint(args.checkpoint, args.pytorch_dump_folder, args.push_to_hub)
| 77
|
'''simple docstring'''
import numpy as np
from transformers import Pipeline
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Optional[Any] = np.max(_lowerCAmelCase , axis=-1 , keepdims=_lowerCAmelCase )
snake_case__ : List[str] = np.exp(outputs - maxes )
return shifted_exp / shifted_exp.sum(axis=-1 , keepdims=_lowerCAmelCase )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def lowerCamelCase ( self : Optional[Any] , **snake_case_ : int ):
snake_case__ : Optional[int] = {}
if "second_text" in kwargs:
snake_case__ : Union[str, Any] = kwargs["""second_text"""]
return preprocess_kwargs, {}, {}
def lowerCamelCase ( self : str , snake_case_ : Tuple , snake_case_ : Union[str, Any]=None ):
return self.tokenizer(snake_case_ , text_pair=snake_case_ , return_tensors=self.framework )
def lowerCamelCase ( self : List[Any] , snake_case_ : Dict ):
return self.model(**snake_case_ )
def lowerCamelCase ( self : int , snake_case_ : List[Any] ):
snake_case__ : Union[str, Any] = model_outputs.logits[0].numpy()
snake_case__ : List[str] = softmax(snake_case_ )
snake_case__ : List[str] = np.argmax(snake_case_ )
snake_case__ : List[str] = self.model.config.idalabel[best_class]
snake_case__ : Optional[int] = probabilities[best_class].item()
snake_case__ : str = logits.tolist()
return {"label": label, "score": score, "logits": logits}
| 35
| 0
|
'''simple docstring'''
def lowerCAmelCase_ ( snake_case_ : Optional[Any] ) -> int:
'''simple docstring'''
if divisor % 5 == 0 or divisor % 2 == 0:
return 0
UpperCAmelCase_ = 1
UpperCAmelCase_ = 1
while repunit:
UpperCAmelCase_ = (10 * repunit + 1) % divisor
repunit_index += 1
return repunit_index
def lowerCAmelCase_ ( snake_case_ : List[Any] = 1_00_00_00 ) -> int:
'''simple docstring'''
UpperCAmelCase_ = limit - 1
if divisor % 2 == 0:
divisor += 1
while least_divisible_repunit(_lowerCAmelCase ) <= limit:
divisor += 2
return divisor
if __name__ == "__main__":
print(f"{solution() = }")
| 1
|
'''simple docstring'''
# Function to print upper half of diamond (pyramid)
def __snake_case( _lowerCAmelCase ) -> Any:
for i in range(0 , _lowerCAmelCase ):
for _ in range(0 , n - i - 1 ): # printing spaces
print(""" """ , end="""""" )
for _ in range(0 , i + 1 ): # printing stars
print("""* """ , end="""""" )
print()
def __snake_case( _lowerCAmelCase ) -> List[str]:
for i in range(_lowerCAmelCase , 0 , -1 ):
for _ in range(_lowerCAmelCase , 0 , -1 ): # printing stars
print("""* """ , end="""""" )
print()
for _ in range(n - i + 1 , 0 , -1 ): # printing spaces
print(""" """ , end="""""" )
def __snake_case( _lowerCAmelCase ) -> List[Any]:
if n <= 0:
print(""" ... .... nothing printing :(""" )
return
floyd(_lowerCAmelCase ) # upper half
reverse_floyd(_lowerCAmelCase ) # lower half
if __name__ == "__main__":
print(R"| /\ | |- | |- |--| |\ /| |-")
print(R"|/ \| |- |_ |_ |__| | \/ | |_")
__a = 1
while K:
__a = int(input("enter the number and , and see the magic : "))
print()
pretty_print(user_number)
__a = int(input("press 0 to exit... and 1 to continue..."))
print("Good Bye...")
| 35
| 0
|
from PIL import Image
def _SCREAMING_SNAKE_CASE ( lowercase : str , lowercase : Optional[Any] ):
'''simple docstring'''
def brightness(lowercase : Optional[int] ) -> float:
return 1_28 + level + (c - 1_28)
if not -255.0 <= level <= 255.0:
raise ValueError('level must be between -255.0 (black) and 255.0 (white)' )
return img.point(_lowerCAmelCase )
if __name__ == "__main__":
# Load image
with Image.open("image_data/lena.jpg") as img:
# Change brightness to 100
lowerCamelCase : Tuple = change_brightness(img, 100)
brigt_img.save("image_data/lena_brightness.png", format="png")
| 204
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase = 1_000 ) -> int:
return sum(e for e in range(3 , _lowerCAmelCase ) if e % 3 == 0 or e % 5 == 0 )
if __name__ == "__main__":
print(F"{solution() = }")
| 35
| 0
|
import sys
from .dependency_versions_table import deps
from .utils.versions import require_version, require_version_core
# define which module versions we always want to check at run time
# (usually the ones defined in `install_requires` in setup.py)
#
# order specific notes:
# - tqdm must be checked before tokenizers
a : Any = 'python tqdm regex requests packaging filelock numpy tokenizers'.split()
if sys.version_info < (3, 7):
pkgs_to_check_at_runtime.append('dataclasses')
if sys.version_info < (3, 8):
pkgs_to_check_at_runtime.append('importlib_metadata')
for pkg in pkgs_to_check_at_runtime:
if pkg in deps:
if pkg == "tokenizers":
# must be loaded here, or else tqdm check may fail
from .utils import is_tokenizers_available
if not is_tokenizers_available():
continue # not required, check version only if installed
require_version_core(deps[pkg])
else:
raise ValueError(F'''can\'t find {pkg} in {deps.keys()}, check dependency_versions_table.py''')
def lowerCAmelCase_ (lowerCAmelCase__: Dict , lowerCAmelCase__: List[str]=None ):
"""simple docstring"""
require_version(deps[pkg] , _lowerCAmelCase )
| 147
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
__a = {
"configuration_bloom": ["BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP", "BloomConfig", "BloomOnnxConfig"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = ["BloomTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST",
"BloomForCausalLM",
"BloomModel",
"BloomPreTrainedModel",
"BloomForSequenceClassification",
"BloomForTokenClassification",
"BloomForQuestionAnswering",
]
if TYPE_CHECKING:
from .configuration_bloom import BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP, BloomConfig, BloomOnnxConfig
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_bloom_fast import BloomTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_bloom import (
BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST,
BloomForCausalLM,
BloomForQuestionAnswering,
BloomForSequenceClassification,
BloomForTokenClassification,
BloomModel,
BloomPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
import json
import os
from typing import Dict, List, Optional, Tuple
import regex as re
from ...tokenization_utils import PreTrainedTokenizer
from ...utils import logging
__lowerCAmelCase : Dict = logging.get_logger(__name__)
__lowerCAmelCase : Dict = {
'vocab_file': 'vocab.json',
'merges_file': 'merges.txt',
'tokenizer_config_file': 'tokenizer_config.json',
}
__lowerCAmelCase : Dict = {
'vocab_file': {
'facebook/blenderbot_small-90M': 'https://huggingface.co/facebook/blenderbot_small-90M/resolve/main/vocab.json'
},
'merges_file': {
'facebook/blenderbot_small-90M': 'https://huggingface.co/facebook/blenderbot_small-90M/resolve/main/merges.txt'
},
'tokenizer_config_file': {
'facebook/blenderbot_small-90M': (
'https://huggingface.co/facebook/blenderbot_small-90M/resolve/main/tokenizer_config.json'
)
},
}
__lowerCAmelCase : Union[str, Any] = {'facebook/blenderbot_small-90M': 512}
def a__ ( A_ ):
'''simple docstring'''
__magic_name__ = set()
__magic_name__ = word[0]
for char in word[1:]:
pairs.add((prev_char, char) )
__magic_name__ = char
__magic_name__ = set(_lowerCAmelCase )
return pairs
class UpperCAmelCase_ ( _a ):
'''simple docstring'''
a__ = VOCAB_FILES_NAMES
a__ = PRETRAINED_VOCAB_FILES_MAP
a__ = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
a__ = ["""input_ids""", """attention_mask"""]
def __init__( self : str , UpperCamelCase__ : Optional[int] , UpperCamelCase__ : Optional[int] , UpperCamelCase__ : int="__start__" , UpperCamelCase__ : Optional[int]="__end__" , UpperCamelCase__ : str="__unk__" , UpperCamelCase__ : List[Any]="__null__" , **UpperCamelCase__ : int , ) -> int:
"""simple docstring"""
super().__init__(unk_token=snake_case_ , bos_token=snake_case_ , eos_token=snake_case_ , pad_token=snake_case_ , **snake_case_ )
with open(snake_case_ , encoding="""utf-8""" ) as vocab_handle:
__magic_name__ = json.load(snake_case_ )
__magic_name__ = {v: k for k, v in self.encoder.items()}
with open(snake_case_ , encoding="""utf-8""" ) as merges_handle:
__magic_name__ = merges_handle.read().split("""\n""" )[1:-1]
__magic_name__ = [tuple(merge.split() ) for merge in merges]
__magic_name__ = dict(zip(snake_case_ , range(len(snake_case_ ) ) ) )
__magic_name__ = {}
@property
def _lowercase ( self : str ) -> Any:
"""simple docstring"""
return len(self.encoder )
def _lowercase ( self : List[Any] ) -> List[str]:
"""simple docstring"""
return dict(self.encoder , **self.added_tokens_encoder )
def _lowercase ( self : Dict , UpperCamelCase__ : str ) -> Optional[Any]:
"""simple docstring"""
if token in self.cache:
return self.cache[token]
__magic_name__ = re.sub("""([.,!?()])""" , R""" \1""" , snake_case_ )
__magic_name__ = re.sub("""(')""" , R""" \1 """ , snake_case_ )
__magic_name__ = re.sub(R"""\s{2,}""" , """ """ , snake_case_ )
if "\n" in token:
__magic_name__ = token.replace("""\n""" , """ __newln__""" )
__magic_name__ = token.split(""" """ )
__magic_name__ = []
for token in tokens:
if not len(snake_case_ ):
continue
__magic_name__ = token.lower()
__magic_name__ = tuple(snake_case_ )
__magic_name__ = tuple(list(word[:-1] ) + [word[-1] + """</w>"""] )
__magic_name__ = get_pairs(snake_case_ )
if not pairs:
words.append(snake_case_ )
continue
while True:
__magic_name__ = min(snake_case_ , key=lambda UpperCamelCase__ : self.bpe_ranks.get(snake_case_ , float("""inf""" ) ) )
if bigram not in self.bpe_ranks:
break
__magic_name__ = bigram
__magic_name__ = []
__magic_name__ = 0
while i < len(snake_case_ ):
try:
__magic_name__ = word.index(snake_case_ , snake_case_ )
new_word.extend(word[i:j] )
__magic_name__ = j
except ValueError:
new_word.extend(word[i:] )
break
if word[i] == first and i < len(snake_case_ ) - 1 and word[i + 1] == second:
new_word.append(first + second )
i += 2
else:
new_word.append(word[i] )
i += 1
__magic_name__ = tuple(snake_case_ )
__magic_name__ = new_word
if len(snake_case_ ) == 1:
break
else:
__magic_name__ = get_pairs(snake_case_ )
__magic_name__ = """@@ """.join(snake_case_ )
__magic_name__ = word[:-4]
__magic_name__ = word
words.append(snake_case_ )
return " ".join(snake_case_ )
def _lowercase ( self : Tuple , UpperCamelCase__ : str ) -> int:
"""simple docstring"""
__magic_name__ = []
__magic_name__ = re.findall(R"""\S+\n?""" , snake_case_ )
for token in words:
split_tokens.extend(list(self.bpe(snake_case_ ).split(""" """ ) ) )
return split_tokens
def _lowercase ( self : Optional[Any] , UpperCamelCase__ : str ) -> List[str]:
"""simple docstring"""
__magic_name__ = token.lower()
return self.encoder.get(snake_case_ , self.encoder.get(self.unk_token ) )
def _lowercase ( self : int , UpperCamelCase__ : int ) -> str:
"""simple docstring"""
return self.decoder.get(snake_case_ , self.unk_token )
def _lowercase ( self : Any , UpperCamelCase__ : List[str] ) -> str:
"""simple docstring"""
__magic_name__ = """ """.join(snake_case_ ).replace("""@@ """ , """""" ).strip()
return out_string
def _lowercase ( self : Optional[Any] , UpperCamelCase__ : str , UpperCamelCase__ : Optional[str] = None ) -> int:
"""simple docstring"""
if not os.path.isdir(snake_case_ ):
logger.error(F'''Vocabulary path ({save_directory}) should be a directory''' )
return
__magic_name__ = os.path.join(
snake_case_ , (filename_prefix + """-""" if filename_prefix else """""") + VOCAB_FILES_NAMES["""vocab_file"""] )
__magic_name__ = os.path.join(
snake_case_ , (filename_prefix + """-""" if filename_prefix else """""") + VOCAB_FILES_NAMES["""merges_file"""] )
with open(snake_case_ , """w""" , encoding="""utf-8""" ) as f:
f.write(json.dumps(self.encoder , indent=2 , sort_keys=snake_case_ , ensure_ascii=snake_case_ ) + """\n""" )
__magic_name__ = 0
with open(snake_case_ , """w""" , encoding="""utf-8""" ) as writer:
writer.write("""#version: 0.2\n""" )
for bpe_tokens, token_index in sorted(self.bpe_ranks.items() , key=lambda UpperCamelCase__ : kv[1] ):
if index != token_index:
logger.warning(
F'''Saving vocabulary to {merge_file}: BPE merge indices are not consecutive.'''
""" Please check that the tokenizer is not corrupted!""" )
__magic_name__ = token_index
writer.write(""" """.join(snake_case_ ) + """\n""" )
index += 1
return vocab_file, merge_file
| 88
|
'''simple docstring'''
from PIL import Image
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Image:
def brightness(_lowerCAmelCase ) -> float:
return 128 + level + (c - 128)
if not -255.0 <= level <= 255.0:
raise ValueError("""level must be between -255.0 (black) and 255.0 (white)""" )
return img.point(_lowerCAmelCase )
if __name__ == "__main__":
# Load image
with Image.open("image_data/lena.jpg") as img:
# Change brightness to 100
__a = change_brightness(img, 100)
brigt_img.save("image_data/lena_brightness.png", format="png")
| 35
| 0
|
'''simple docstring'''
from dataclasses import dataclass, field
from typing import Optional
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default='''codeparrot/codeparrot''' , metadata={'''help''': '''Model name or path of model to be trained.'''} )
lowerCAmelCase = field(
default='''./''' , metadata={'''help''': '''Save dir where model repo is cloned and models updates are saved to.'''} )
lowerCAmelCase = field(
default='''codeparrot/codeparrot-clean-train''' , metadata={'''help''': '''Name or path of training dataset.'''} )
lowerCAmelCase = field(
default='''codeparrot/codeparrot-clean-valid''' , metadata={'''help''': '''Name or path of validation dataset.'''} )
lowerCAmelCase = field(default=2 , metadata={'''help''': '''Batch size for training.'''} )
lowerCAmelCase = field(default=2 , metadata={'''help''': '''Batch size for evaluation.'''} )
lowerCAmelCase = field(default=0.1 , metadata={'''help''': '''Value of weight decay.'''} )
lowerCAmelCase = field(
default=1_0000 , metadata={'''help''': '''Size of buffer used to shuffle streaming dataset.'''} )
lowerCAmelCase = field(default=2E-4 , metadata={'''help''': '''Learning rate fo training.'''} )
lowerCAmelCase = field(default='''cosine''' , metadata={'''help''': '''Learning rate.'''} )
lowerCAmelCase = field(
default=750 , metadata={'''help''': '''Number of warmup steps in the learning rate schedule.'''} )
lowerCAmelCase = field(
default=16 , metadata={'''help''': '''Number of gradient accumulation steps.'''} )
lowerCAmelCase = field(
default=_a , metadata={'''help''': '''Use gradient checkpointing to reduce memory footprint.'''} )
lowerCAmelCase = field(default=5_0000 , metadata={'''help''': '''Maximum number of training steps.'''} )
lowerCAmelCase = field(
default=-1 , metadata={'''help''': '''Maximum number of evaluation steps. If -1 the full dataset is evaluated.'''} )
lowerCAmelCase = field(default=1024 , metadata={'''help''': '''Sequence lengths used for training.'''} )
lowerCAmelCase = field(default=1 , metadata={'''help''': '''Training seed.'''} )
lowerCAmelCase = field(
default=1024 , metadata={'''help''': '''Interval to save checkpoints. Measured as number of forward passes not training steps.'''} , )
lowerCAmelCase = field(
default=_a , metadata={'''help''': '''States path if the training should continue from a checkpoint folder.'''} )
lowerCAmelCase = field(default=_a , metadata={'''help''': '''If True the data is pretokenized.'''} )
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default='''codeparrot/codeparrot''' , metadata={'''help''': '''Model name or path of model to be evaluated.'''} )
lowerCAmelCase = field(
default='''codeparrot/codeparrot-clean-valid''' , metadata={'''help''': '''Name or path of validation dataset.'''} )
lowerCAmelCase = field(default=2 , metadata={'''help''': '''Batch size used for evaluation.'''} )
lowerCAmelCase = field(
default=-1 , metadata={'''help''': '''Maximum number of evaluation steps. If -1 the full dataset is evaluated.'''} )
lowerCAmelCase = field(default=1024 , metadata={'''help''': '''Length of sequences to be evaluated.'''} )
lowerCAmelCase = field(default=1 , metadata={'''help''': '''Random seed used for evaluation.'''} )
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default='''codeparrot/codeparrot''' , metadata={'''help''': '''Model name or path of model to be evaluated.'''} )
lowerCAmelCase = field(default=_a , metadata={'''help''': '''Number of workers used for code evaluation.'''} )
lowerCAmelCase = field(
default=_a , metadata={'''help''': '''The number of human-eval tasks to run. If not included all tasks are evaluated.'''} , )
lowerCAmelCase = field(
default=_a , metadata={'''help''': '''Sample from the language model\'s output distribution.'''} )
lowerCAmelCase = field(default=0.2 , metadata={'''help''': '''Sampling temperature used for generation.'''} )
lowerCAmelCase = field(default=256 , metadata={'''help''': '''Maximum number of newly generated tokens.'''} )
lowerCAmelCase = field(default=0 , metadata={'''help''': '''Top-k parameter used for generation.'''} )
lowerCAmelCase = field(default=0.95 , metadata={'''help''': '''Top-p parameter used for nucleus sampling.'''} )
lowerCAmelCase = field(default=10 , metadata={'''help''': '''Number of generations to run in parallel.'''} )
lowerCAmelCase = field(
default=200 , metadata={'''help''': '''Number of completions to generate for each sample.'''} )
lowerCAmelCase = field(default=1 , metadata={'''help''': '''Random seed used for evaluation.'''} )
lowerCAmelCase = field(
default='''eval_results.json''' , metadata={'''help''': '''Random seed used for evaluation.'''} )
lowerCAmelCase = field(
default='''0''' , metadata={'''help''': '''Allow `code_eval` to execute Python code on machine'''} )
lowerCAmelCase = field(
default=-1 , metadata={
'''help''': (
'''Determine which device to run the `text-generation` Pipeline on. -1 is CPU and any zero or positive'''
''' number corresponds to which GPU device id to run on.'''
)
} , )
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default=_a , metadata={
'''help''': '''The number of CPU cores to use for parallel preprocessing. Default uses the maximum available.'''
} , )
lowerCAmelCase = field(
default='''transformersbook/codeparrot''' , metadata={'''help''': '''Folder or name of dataset to process.'''} )
lowerCAmelCase = field(
default='''codeparrot-clean''' , metadata={'''help''': '''Folder to save processed processed dataset.'''} )
lowerCAmelCase = field(
default=10_0000 , metadata={'''help''': '''Number of files to save per JSON output file.'''} )
lowerCAmelCase = field(default='''content''' , metadata={'''help''': '''Column containing text data to process.'''} )
lowerCAmelCase = field(
default=1000 , metadata={'''help''': '''Maximum line length in file, otherwise file is filtered.'''} )
lowerCAmelCase = field(
default=100 , metadata={'''help''': '''Maximum mean line length in file, otherwise file is filtered.'''} )
lowerCAmelCase = field(
default=0.25 , metadata={'''help''': '''Maximum fraction of non-alphanumeric characters, otherwise file is filtered.'''} )
lowerCAmelCase = field(
default=1.5 , metadata={'''help''': '''Minimum character token ratio for the file, otherwise file is filtered.'''} )
lowerCAmelCase = field(
default=0.7 , metadata={'''help''': '''Probability for filtering config, test and uncommon files.'''} )
lowerCAmelCase = field(
default='''codeparrot/codeparrot''' , metadata={'''help''': '''Name or path to the tokenizer.'''} , )
lowerCAmelCase = field(
default=_a , metadata={'''help''': '''If True, near-duplicate samples are removed.'''} )
lowerCAmelCase = field(
default=0.85 , metadata={'''help''': '''Jaccard threshold for near-duplicate samples.'''} )
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default='''gpt2''' , metadata={'''help''': '''Base tokenizer to build new tokenizer from.'''} )
lowerCAmelCase = field(
default='''transformersbook/codeparrot-train''' , metadata={'''help''': '''Dataset to train tokenizer on.'''} )
lowerCAmelCase = field(default='''content''' , metadata={'''help''': '''Column containing text data to process.'''} )
lowerCAmelCase = field(default=20_0000 , metadata={'''help''': '''Number of examples to train tokenizer on.'''} )
lowerCAmelCase = field(
default=3_2768 , metadata={'''help''': '''Number of examples to train the tokenizer on.'''} )
lowerCAmelCase = field(default='''codeparrot''' , metadata={'''help''': '''Name of new tokenizer.'''} )
lowerCAmelCase = field(default=_a , metadata={'''help''': '''Push saved tokenizer to the hub.'''} )
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default='''codeparrot/codeparrot''' , metadata={'''help''': '''Name or path to the tokenizer.'''} )
lowerCAmelCase = field(
default='''codeparrot/codeparrot-clean-train''' , metadata={'''help''': '''Name or path to the dataset to pretokenize.'''} )
lowerCAmelCase = field(
default='''tokenized-codeparrot-train''' , metadata={'''help''': '''Repo name of the pretokenized data.'''} )
lowerCAmelCase = field(default=_a , metadata={'''help''': '''Number of workers used for code evaluation.'''} )
@dataclass
class SCREAMING_SNAKE_CASE :
lowerCAmelCase = field(
default='''gpt2-large''' , metadata={'''help''': '''Configuration to use for model initialization.'''} )
lowerCAmelCase = field(
default='''codeparrot/codeparrot''' , metadata={'''help''': '''Tokenizer attached to model.'''} )
lowerCAmelCase = field(default='''codeparrot''' , metadata={'''help''': '''Name of the created model.'''} )
lowerCAmelCase = field(default=_a , metadata={'''help''': '''Push saved tokenizer to the hub.'''} )
| 190
|
'''simple docstring'''
import argparse
import os
import re
__a = "src/transformers"
# Pattern that looks at the indentation in a line.
__a = re.compile(R"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
__a = re.compile(R"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
__a = re.compile(R"\[([^\]]+)\]")
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : int = _re_indent.search(_lowerCAmelCase )
return "" if search is None else search.groups()[0]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase="" , _lowerCAmelCase=None , _lowerCAmelCase=None ) -> List[str]:
snake_case__ : str = 0
snake_case__ : Union[str, Any] = code.split("""\n""" )
if start_prompt is not None:
while not lines[index].startswith(_lowerCAmelCase ):
index += 1
snake_case__ : Tuple = ["""\n""".join(lines[:index] )]
else:
snake_case__ : List[str] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
snake_case__ : Optional[int] = [lines[index]]
index += 1
while index < len(_lowerCAmelCase ) and (end_prompt is None or not lines[index].startswith(_lowerCAmelCase )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(_lowerCAmelCase ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + """ """ ):
current_block.append(lines[index] )
blocks.append("""\n""".join(_lowerCAmelCase ) )
if index < len(_lowerCAmelCase ) - 1:
snake_case__ : str = [lines[index + 1]]
index += 1
else:
snake_case__ : int = []
else:
blocks.append("""\n""".join(_lowerCAmelCase ) )
snake_case__ : Optional[Any] = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(_lowerCAmelCase ) > 0:
blocks.append("""\n""".join(_lowerCAmelCase ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(_lowerCAmelCase ):
blocks.append("""\n""".join(lines[index:] ) )
return blocks
def __snake_case( _lowerCAmelCase ) -> Tuple:
def _inner(_lowerCAmelCase ):
return key(_lowerCAmelCase ).lower().replace("""_""" , """""" )
return _inner
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=None ) -> List[Any]:
# If no key is provided, we use a noop.
def noop(_lowerCAmelCase ):
return x
if key is None:
snake_case__ : Optional[int] = noop
# Constants are all uppercase, they go first.
snake_case__ : Optional[int] = [obj for obj in objects if key(_lowerCAmelCase ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
snake_case__ : int = [obj for obj in objects if key(_lowerCAmelCase )[0].isupper() and not key(_lowerCAmelCase ).isupper()]
# Functions begin with a lowercase, they go last.
snake_case__ : str = [obj for obj in objects if not key(_lowerCAmelCase )[0].isupper()]
snake_case__ : List[str] = ignore_underscore(_lowerCAmelCase )
return sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> int:
# This inner function sort imports between [ ].
def _replace(_lowerCAmelCase ):
snake_case__ : Union[str, Any] = match.groups()[0]
if "," not in imports:
return f"[{imports}]"
snake_case__ : int = [part.strip().replace("""\"""" , """""" ) for part in imports.split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
return "[" + ", ".join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] ) + "]"
snake_case__ : str = import_statement.split("""\n""" )
if len(_lowerCAmelCase ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
snake_case__ : Dict = 2 if lines[1].strip() == """[""" else 1
snake_case__ : str = [(i, _re_strip_line.search(_lowerCAmelCase ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
snake_case__ : str = sort_objects(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )
snake_case__ : Union[str, Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(_lowerCAmelCase ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
snake_case__ : Union[str, Any] = _re_bracket_content.sub(_replace , lines[1] )
else:
snake_case__ : List[Any] = [part.strip().replace("""\"""" , """""" ) for part in lines[1].split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
snake_case__ : int = get_indent(lines[1] ) + """, """.join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] )
return "\n".join(_lowerCAmelCase )
else:
# Finally we have to deal with imports fitting on one line
snake_case__ : Optional[Any] = _re_bracket_content.sub(_replace , _lowerCAmelCase )
return import_statement
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=True ) -> Dict:
with open(_lowerCAmelCase , encoding="""utf-8""" ) as f:
snake_case__ : Optional[int] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
snake_case__ : Optional[int] = split_code_in_indented_blocks(
_lowerCAmelCase , start_prompt="""_import_structure = {""" , end_prompt="""if TYPE_CHECKING:""" )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(_lowerCAmelCase ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
snake_case__ : Optional[Any] = main_blocks[block_idx]
snake_case__ : Dict = block.split("""\n""" )
# Get to the start of the imports.
snake_case__ : Dict = 0
while line_idx < len(_lowerCAmelCase ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
else:
line_idx += 1
if line_idx >= len(_lowerCAmelCase ):
continue
# Ignore beginning and last line: they don't contain anything.
snake_case__ : List[str] = """\n""".join(block_lines[line_idx:-1] )
snake_case__ : str = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
snake_case__ : Optional[int] = split_code_in_indented_blocks(_lowerCAmelCase , indent_level=_lowerCAmelCase )
# We have two categories of import key: list or _import_structure[key].append/extend
snake_case__ : Tuple = _re_direct_key if """_import_structure = {""" in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
snake_case__ : Optional[Any] = [(pattern.search(_lowerCAmelCase ).groups()[0] if pattern.search(_lowerCAmelCase ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
snake_case__ : Dict = [(i, key) for i, key in enumerate(_lowerCAmelCase ) if key is not None]
snake_case__ : Union[str, Any] = [x[0] for x in sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
snake_case__ : List[Any] = 0
snake_case__ : Optional[Any] = []
for i in range(len(_lowerCAmelCase ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
snake_case__ : Optional[Any] = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(_lowerCAmelCase )
count += 1
# And we put our main block back together with its first and last line.
snake_case__ : Dict = """\n""".join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(_lowerCAmelCase ):
if check_only:
return True
else:
print(f"Overwriting {file}." )
with open(_lowerCAmelCase , """w""" , encoding="""utf-8""" ) as f:
f.write("""\n""".join(_lowerCAmelCase ) )
def __snake_case( _lowerCAmelCase=True ) -> Tuple:
snake_case__ : str = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
snake_case__ : Union[str, Any] = sort_imports(os.path.join(_lowerCAmelCase , """__init__.py""" ) , check_only=_lowerCAmelCase )
if result:
snake_case__ : Union[str, Any] = [os.path.join(_lowerCAmelCase , """__init__.py""" )]
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"Would overwrite {len(_lowerCAmelCase )} files, run `make style`." )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
__a = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 35
| 0
|
from __future__ import annotations
import collections
import pprint
from pathlib import Path
def snake_case_ ( snake_case ) -> str:
return "".join(sorted(_lowerCAmelCase ) )
def snake_case_ ( snake_case ) -> list[str]:
return word_by_signature[signature(_lowerCAmelCase )]
__lowerCAmelCase = Path(__file__).parent.joinpath('''words.txt''').read_text(encoding='''utf-8''')
__lowerCAmelCase = sorted({word.strip().lower() for word in data.splitlines()})
__lowerCAmelCase = collections.defaultdict(list)
for word in word_list:
word_by_signature[signature(word)].append(word)
if __name__ == "__main__":
__lowerCAmelCase = {word: anagram(word) for word in word_list if len(anagram(word)) > 1}
with open('''anagrams.txt''', '''w''') as file:
file.write('''all_anagrams = \n ''')
file.write(pprint.pformat(all_anagrams))
| 196
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available
__a = {
"configuration_timesformer": ["TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "TimesformerConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"TimesformerModel",
"TimesformerForVideoClassification",
"TimesformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_timesformer import TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, TimesformerConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_timesformer import (
TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
TimesformerForVideoClassification,
TimesformerModel,
TimesformerPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
import argparse
import collections
import json
import os
import re
import string
import sys
import numpy as np
A : List[str] = re.compile(r"\b(a|an|the)\b", re.UNICODE)
A : int = None
def lowercase_ ( ):
"""simple docstring"""
lowerCamelCase__ : Any = argparse.ArgumentParser("Official evaluation script for SQuAD version 2.0." )
parser.add_argument("data_file" , metavar="data.json" , help="Input data JSON file." )
parser.add_argument("pred_file" , metavar="pred.json" , help="Model predictions." )
parser.add_argument(
"--out-file" , "-o" , metavar="eval.json" , help="Write accuracy metrics to file (default is stdout)." )
parser.add_argument(
"--na-prob-file" , "-n" , metavar="na_prob.json" , help="Model estimates of probability of no answer." )
parser.add_argument(
"--na-prob-thresh" , "-t" , type=_lowerCAmelCase , default=1.0 , help="Predict \"\" if no-answer probability exceeds this (default = 1.0)." , )
parser.add_argument(
"--out-image-dir" , "-p" , metavar="out_images" , default=_lowerCAmelCase , help="Save precision-recall curves to directory." )
parser.add_argument("--verbose" , "-v" , action="store_true" )
if len(sys.argv ) == 1:
parser.print_help()
sys.exit(1 )
return parser.parse_args()
def lowercase_ ( _A : Any ):
"""simple docstring"""
lowerCamelCase__ : Any = {}
for article in dataset:
for p in article["paragraphs"]:
for qa in p["qas"]:
lowerCamelCase__ : List[str] = bool(qa["answers"]["text"] )
return qid_to_has_ans
def lowercase_ ( _A : Any ):
"""simple docstring"""
def remove_articles(_A : str ):
return ARTICLES_REGEX.sub(" " , _lowerCAmelCase )
def white_space_fix(_A : Dict ):
return " ".join(text.split() )
def remove_punc(_A : Optional[Any] ):
lowerCamelCase__ : Optional[int] = set(string.punctuation )
return "".join(ch for ch in text if ch not in exclude )
def lower(_A : int ):
return text.lower()
return white_space_fix(remove_articles(remove_punc(lower(_lowerCAmelCase ) ) ) )
def lowercase_ ( _A : Union[str, Any] ):
"""simple docstring"""
if not s:
return []
return normalize_answer(_lowerCAmelCase ).split()
def lowercase_ ( _A : Optional[Any] , _A : List[Any] ):
"""simple docstring"""
return int(normalize_answer(_lowerCAmelCase ) == normalize_answer(_lowerCAmelCase ) )
def lowercase_ ( _A : str , _A : int ):
"""simple docstring"""
lowerCamelCase__ : Union[str, Any] = get_tokens(_lowerCAmelCase )
lowerCamelCase__ : Optional[Any] = get_tokens(_lowerCAmelCase )
lowerCamelCase__ : Optional[Any] = collections.Counter(_lowerCAmelCase ) & collections.Counter(_lowerCAmelCase )
lowerCamelCase__ : int = sum(common.values() )
if len(_lowerCAmelCase ) == 0 or len(_lowerCAmelCase ) == 0:
# If either is no-answer, then F1 is 1 if they agree, 0 otherwise
return int(gold_toks == pred_toks )
if num_same == 0:
return 0
lowerCamelCase__ : List[Any] = 1.0 * num_same / len(_lowerCAmelCase )
lowerCamelCase__ : Any = 1.0 * num_same / len(_lowerCAmelCase )
lowerCamelCase__ : List[str] = (2 * precision * recall) / (precision + recall)
return fa
def lowercase_ ( _A : Union[str, Any] , _A : Optional[int] ):
"""simple docstring"""
lowerCamelCase__ : Optional[Any] = {}
lowerCamelCase__ : Any = {}
for article in dataset:
for p in article["paragraphs"]:
for qa in p["qas"]:
lowerCamelCase__ : Optional[int] = qa["""id"""]
lowerCamelCase__ : Optional[Any] = [t for t in qa["""answers"""]["""text"""] if normalize_answer(_lowerCAmelCase )]
if not gold_answers:
# For unanswerable questions, only correct answer is empty string
lowerCamelCase__ : Optional[int] = [""""""]
if qid not in preds:
print(F"Missing prediction for {qid}" )
continue
lowerCamelCase__ : Tuple = preds[qid]
# Take max over all gold answers
lowerCamelCase__ : str = max(compute_exact(_lowerCAmelCase , _lowerCAmelCase ) for a in gold_answers )
lowerCamelCase__ : Any = max(compute_fa(_lowerCAmelCase , _lowerCAmelCase ) for a in gold_answers )
return exact_scores, fa_scores
def lowercase_ ( _A : List[Any] , _A : List[str] , _A : int , _A : List[str] ):
"""simple docstring"""
lowerCamelCase__ : Optional[int] = {}
for qid, s in scores.items():
lowerCamelCase__ : Optional[Any] = na_probs[qid] > na_prob_thresh
if pred_na:
lowerCamelCase__ : Optional[int] = float(not qid_to_has_ans[qid] )
else:
lowerCamelCase__ : Union[str, Any] = s
return new_scores
def lowercase_ ( _A : str , _A : Any , _A : Optional[int]=None ):
"""simple docstring"""
if not qid_list:
lowerCamelCase__ : str = len(_lowerCAmelCase )
return collections.OrderedDict(
[
("exact", 100.0 * sum(exact_scores.values() ) / total),
("f1", 100.0 * sum(fa_scores.values() ) / total),
("total", total),
] )
else:
lowerCamelCase__ : int = len(_lowerCAmelCase )
return collections.OrderedDict(
[
("exact", 100.0 * sum(exact_scores[k] for k in qid_list ) / total),
("f1", 100.0 * sum(fa_scores[k] for k in qid_list ) / total),
("total", total),
] )
def lowercase_ ( _A : Tuple , _A : str , _A : List[Any] ):
"""simple docstring"""
for k in new_eval:
lowerCamelCase__ : str = new_eval[k]
def lowercase_ ( _A : Union[str, Any] , _A : Optional[Any] , _A : int , _A : Optional[int] ):
"""simple docstring"""
plt.step(_lowerCAmelCase , _lowerCAmelCase , color="b" , alpha=0.2 , where="post" )
plt.fill_between(_lowerCAmelCase , _lowerCAmelCase , step="post" , alpha=0.2 , color="b" )
plt.xlabel("Recall" )
plt.ylabel("Precision" )
plt.xlim([0.0, 1.05] )
plt.ylim([0.0, 1.05] )
plt.title(_lowerCAmelCase )
plt.savefig(_lowerCAmelCase )
plt.clf()
def lowercase_ ( _A : List[str] , _A : Dict , _A : Optional[Any] , _A : Union[str, Any] , _A : List[Any]=None , _A : Optional[int]=None ):
"""simple docstring"""
lowerCamelCase__ : Optional[int] = sorted(_lowerCAmelCase , key=lambda _A : na_probs[k] )
lowerCamelCase__ : str = 0.0
lowerCamelCase__ : Dict = 1.0
lowerCamelCase__ : List[str] = 0.0
lowerCamelCase__ : Dict = [1.0]
lowerCamelCase__ : int = [0.0]
lowerCamelCase__ : str = 0.0
for i, qid in enumerate(_lowerCAmelCase ):
if qid_to_has_ans[qid]:
true_pos += scores[qid]
lowerCamelCase__ : Dict = true_pos / float(i + 1 )
lowerCamelCase__ : Union[str, Any] = true_pos / float(_lowerCAmelCase )
if i == len(_lowerCAmelCase ) - 1 or na_probs[qid] != na_probs[qid_list[i + 1]]:
# i.e., if we can put a threshold after this point
avg_prec += cur_p * (cur_r - recalls[-1])
precisions.append(_lowerCAmelCase )
recalls.append(_lowerCAmelCase )
if out_image:
plot_pr_curve(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
return {"ap": 100.0 * avg_prec}
def lowercase_ ( _A : int , _A : str , _A : Optional[int] , _A : List[Any] , _A : Any , _A : Any ):
"""simple docstring"""
if out_image_dir and not os.path.exists(_lowerCAmelCase ):
os.makedirs(_lowerCAmelCase )
lowerCamelCase__ : Optional[Any] = sum(1 for v in qid_to_has_ans.values() if v )
if num_true_pos == 0:
return
lowerCamelCase__ : Any = make_precision_recall_eval(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , out_image=os.path.join(_lowerCAmelCase , "pr_exact.png" ) , title="Precision-Recall curve for Exact Match score" , )
lowerCamelCase__ : Optional[Any] = make_precision_recall_eval(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , out_image=os.path.join(_lowerCAmelCase , "pr_f1.png" ) , title="Precision-Recall curve for F1 score" , )
lowerCamelCase__ : Any = {k: float(_lowerCAmelCase ) for k, v in qid_to_has_ans.items()}
lowerCamelCase__ : Union[str, Any] = make_precision_recall_eval(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , out_image=os.path.join(_lowerCAmelCase , "pr_oracle.png" ) , title="Oracle Precision-Recall curve (binary task of HasAns vs. NoAns)" , )
merge_eval(_lowerCAmelCase , _lowerCAmelCase , "pr_exact" )
merge_eval(_lowerCAmelCase , _lowerCAmelCase , "pr_f1" )
merge_eval(_lowerCAmelCase , _lowerCAmelCase , "pr_oracle" )
def lowercase_ ( _A : Tuple , _A : Union[str, Any] , _A : Any , _A : Optional[Any] ):
"""simple docstring"""
if not qid_list:
return
lowerCamelCase__ : Optional[Any] = [na_probs[k] for k in qid_list]
lowerCamelCase__ : Union[str, Any] = np.ones_like(_lowerCAmelCase ) / float(len(_lowerCAmelCase ) )
plt.hist(_lowerCAmelCase , weights=_lowerCAmelCase , bins=20 , range=(0.0, 1.0) )
plt.xlabel("Model probability of no-answer" )
plt.ylabel("Proportion of dataset" )
plt.title(F"Histogram of no-answer probability: {name}" )
plt.savefig(os.path.join(_lowerCAmelCase , F"na_prob_hist_{name}.png" ) )
plt.clf()
def lowercase_ ( _A : Optional[Any] , _A : List[Any] , _A : Dict , _A : List[Any] ):
"""simple docstring"""
lowerCamelCase__ : List[str] = sum(1 for k in qid_to_has_ans if not qid_to_has_ans[k] )
lowerCamelCase__ : Union[str, Any] = num_no_ans
lowerCamelCase__ : Optional[int] = cur_score
lowerCamelCase__ : Optional[Any] = 0.0
lowerCamelCase__ : Optional[int] = sorted(_lowerCAmelCase , key=lambda _A : na_probs[k] )
for i, qid in enumerate(_lowerCAmelCase ):
if qid not in scores:
continue
if qid_to_has_ans[qid]:
lowerCamelCase__ : List[str] = scores[qid]
else:
if preds[qid]:
lowerCamelCase__ : Tuple = -1
else:
lowerCamelCase__ : List[Any] = 0
cur_score += diff
if cur_score > best_score:
lowerCamelCase__ : Optional[Any] = cur_score
lowerCamelCase__ : Union[str, Any] = na_probs[qid]
return 100.0 * best_score / len(_lowerCAmelCase ), best_thresh
def lowercase_ ( _A : List[Any] , _A : Optional[Any] , _A : Optional[int] , _A : Any , _A : List[str] , _A : Dict ):
"""simple docstring"""
lowerCamelCase__ : List[str] = find_best_thresh(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
lowerCamelCase__ : int = find_best_thresh(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
lowerCamelCase__ : List[Any] = best_exact
lowerCamelCase__ : Dict = exact_thresh
lowerCamelCase__ : List[Any] = best_fa
lowerCamelCase__ : Dict = fa_thresh
def lowercase_ ( ):
"""simple docstring"""
with open(OPTS.data_file ) as f:
lowerCamelCase__ : Union[str, Any] = json.load(_lowerCAmelCase )
lowerCamelCase__ : Dict = dataset_json["""data"""]
with open(OPTS.pred_file ) as f:
lowerCamelCase__ : int = json.load(_lowerCAmelCase )
if OPTS.na_prob_file:
with open(OPTS.na_prob_file ) as f:
lowerCamelCase__ : Tuple = json.load(_lowerCAmelCase )
else:
lowerCamelCase__ : List[Any] = {k: 0.0 for k in preds}
lowerCamelCase__ : List[Any] = make_qid_to_has_ans(_lowerCAmelCase ) # maps qid to True/False
lowerCamelCase__ : Optional[int] = [k for k, v in qid_to_has_ans.items() if v]
lowerCamelCase__ : str = [k for k, v in qid_to_has_ans.items() if not v]
lowerCamelCase__ : int = get_raw_scores(_lowerCAmelCase , _lowerCAmelCase )
lowerCamelCase__ : Dict = apply_no_ans_threshold(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , OPTS.na_prob_thresh )
lowerCamelCase__ : Optional[Any] = apply_no_ans_threshold(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , OPTS.na_prob_thresh )
lowerCamelCase__ : List[Any] = make_eval_dict(_lowerCAmelCase , _lowerCAmelCase )
if has_ans_qids:
lowerCamelCase__ : Optional[Any] = make_eval_dict(_lowerCAmelCase , _lowerCAmelCase , qid_list=_lowerCAmelCase )
merge_eval(_lowerCAmelCase , _lowerCAmelCase , "HasAns" )
if no_ans_qids:
lowerCamelCase__ : str = make_eval_dict(_lowerCAmelCase , _lowerCAmelCase , qid_list=_lowerCAmelCase )
merge_eval(_lowerCAmelCase , _lowerCAmelCase , "NoAns" )
if OPTS.na_prob_file:
find_all_best_thresh(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
if OPTS.na_prob_file and OPTS.out_image_dir:
run_precision_recall_analysis(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , OPTS.out_image_dir )
histogram_na_prob(_lowerCAmelCase , _lowerCAmelCase , OPTS.out_image_dir , "hasAns" )
histogram_na_prob(_lowerCAmelCase , _lowerCAmelCase , OPTS.out_image_dir , "noAns" )
if OPTS.out_file:
with open(OPTS.out_file , "w" ) as f:
json.dump(_lowerCAmelCase , _lowerCAmelCase )
else:
print(json.dumps(_lowerCAmelCase , indent=2 ) )
if __name__ == "__main__":
A : Any = parse_args()
if OPTS.out_image_dir:
import matplotlib
matplotlib.use("Agg")
import matplotlib.pyplot as plt
main()
| 184
|
'''simple docstring'''
import argparse
import json
import os
import fairseq
import torch
from torch import nn
from transformers import (
SpeechaTextaConfig,
SpeechaTextaForCausalLM,
SpeechaTextaTokenizer,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
__a = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
__a = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Union[str, Any]:
for attribute in key.split(""".""" ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
if weight_type is not None:
snake_case__ : List[Any] = getattr(_lowerCAmelCase , _lowerCAmelCase ).shape
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
assert hf_shape == value.shape, (
f"Shape of hf {key + '.' + weight_type if weight_type is not None else ''} is {hf_shape}, but should be"
f" {value.shape} for {full_name}"
)
if weight_type == "weight":
snake_case__ : int = value
elif weight_type == "weight_g":
snake_case__ : List[str] = value
elif weight_type == "weight_v":
snake_case__ : List[str] = value
elif weight_type == "bias":
snake_case__ : Optional[Any] = value
else:
snake_case__ : str = value
logger.info(f"{key + '.' + weight_type if weight_type is not None else ''} was initialized from {full_name}." )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Any:
snake_case__ : Union[str, Any] = []
snake_case__ : Dict = fairseq_model.state_dict()
snake_case__ : List[Any] = hf_model.feature_extractor
# if encoder has different dim to decoder -> use proj_weight
snake_case__ : Optional[int] = None
for name, value in fairseq_dict.items():
snake_case__ : List[Any] = False
if "conv_layers" in name:
load_conv_layer(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , hf_model.config.feat_extract_norm == """group""" , )
snake_case__ : Union[str, Any] = True
elif name.split(""".""" )[0] == "proj":
snake_case__ : Tuple = fairseq_model.proj
snake_case__ : int = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split("""w2v_model.""" )[-1] == name.split(""".""" )[0]:
snake_case__ : Optional[Any] = True
if "*" in mapped_key:
snake_case__ : Optional[int] = name.split(_lowerCAmelCase )[0].split(""".""" )[-2]
snake_case__ : Tuple = mapped_key.replace("""*""" , _lowerCAmelCase )
if "weight_g" in name:
snake_case__ : str = """weight_g"""
elif "weight_v" in name:
snake_case__ : int = """weight_v"""
elif "bias" in name:
snake_case__ : Dict = """bias"""
elif "weight" in name:
snake_case__ : Union[str, Any] = """weight"""
else:
snake_case__ : Union[str, Any] = None
set_recursively(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
continue
if not is_used:
unused_weights.append(_lowerCAmelCase )
logger.warning(f"Unused weights: {unused_weights}" )
return proj_weight
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : int = full_name.split("""conv_layers.""" )[-1]
snake_case__ : Dict = name.split(""".""" )
snake_case__ : Any = int(items[0] )
snake_case__ : Optional[Any] = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found."
)
snake_case__ : str = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
f"{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was"
" found."
)
snake_case__ : Union[str, Any] = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor[layer_id].layer_norm.weight.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
else:
unused_weights.append(_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ , snake_case__ : str = emb.weight.shape
snake_case__ : List[str] = nn.Linear(_lowerCAmelCase , _lowerCAmelCase , bias=_lowerCAmelCase )
snake_case__ : List[str] = emb.weight.data
return lin_layer
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
with open(_lowerCAmelCase , """r""" , encoding="""utf-8""" ) as f:
snake_case__ : int = f.readlines()
snake_case__ : List[Any] = [line.split(""" """ )[0] for line in lines]
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
snake_case__ : Any = {
"""<s>""": 0,
"""<pad>""": 1,
"""</s>""": 2,
"""<unk>""": 3,
}
vocab_dict.update(dict(zip(_lowerCAmelCase , range(4 , num_words + 4 ) ) ) )
return vocab_dict
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , ) -> int:
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaConfig.from_pretrained(
_lowerCAmelCase , vocab_size=_lowerCAmelCase , decoder_layers=_lowerCAmelCase , do_stable_layer_norm=_lowerCAmelCase )
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=16_000 , padding_value=0 , do_normalize=_lowerCAmelCase , return_attention_mask=_lowerCAmelCase , )
snake_case__ , snake_case__ , snake_case__ : Union[str, Any] = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={"""data""": """/""".join(dict_path.split("""/""" )[:-1] )} )
snake_case__ : Tuple = model[0].eval()
# set weights for wav2vec2 encoder
snake_case__ : Optional[Any] = WavaVecaModel(_lowerCAmelCase )
snake_case__ : Dict = recursively_load_weights_wavaveca(model.encoder , _lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaForCausalLM(_lowerCAmelCase )
snake_case__ , snake_case__ : Tuple = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=_lowerCAmelCase )
# set output linear layer
unexpected_keys.remove("""embed_out""" )
snake_case__ : Tuple = nn.Parameter(model.decoder.embed_out.detach() )
# layer norm is init to identity matrix so leaving it is fine
logger.warning(f"The following keys are missing when loading the decoder weights: {missing_keys}" )
logger.warning(f"The following keys are unexpected when loading the decoder weights: {unexpected_keys}" )
snake_case__ : List[Any] = SpeechEncoderDecoderModel(encoder=_lowerCAmelCase , decoder=_lowerCAmelCase )
snake_case__ : Tuple = False
# add projection layer
snake_case__ : Union[str, Any] = nn.Parameter(projection_layer.weight )
snake_case__ : int = nn.Parameter(projection_layer.bias )
snake_case__ : Tuple = create_vocab_dict(_lowerCAmelCase )
with open(os.path.join(_lowerCAmelCase , """vocab.json""" ) , """w""" ) as fp:
json.dump(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Tuple = SpeechaTextaTokenizer(os.path.join(_lowerCAmelCase , """vocab.json""" ) )
tokenizer.save_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Optional[Any] = tokenizer.bos_token_id
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : str = """speech_to_text_2"""
snake_case__ : List[Any] = """wav2vec2"""
snake_case__ : List[str] = SpeechEncoderDecoderConfig.from_dict(_lowerCAmelCase )
hf_wavavec.save_pretrained(_lowerCAmelCase )
feature_extractor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-large-lv60",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/s2t-small-mustc-en-fr-st",
type=str,
help="Path to hf decoder s2t checkpoint config",
)
parser.add_argument("--vocab_size", default=1_0224, type=int, help="Vocab size of decoder")
parser.add_argument("--num_decoder_layers", default=7, type=int, help="Number of decoder layers")
__a = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
vocab_size=args.vocab_size,
num_decoder_layers=args.num_decoder_layers,
)
| 35
| 0
|
'''simple docstring'''
import argparse
import json
import gdown
import numpy as np
import torch
from huggingface_hub import hf_hub_download
from transformers import (
VideoMAEConfig,
VideoMAEForPreTraining,
VideoMAEForVideoClassification,
VideoMAEImageProcessor,
)
def lowerCAmelCase (__A):
"""simple docstring"""
_a = VideoMAEConfig()
set_architecture_configs(_lowerCAmelCase , _lowerCAmelCase)
if "finetuned" not in model_name:
_a = False
if "finetuned" in model_name:
_a = """huggingface/label-files"""
if "kinetics" in model_name:
_a = 400
_a = """kinetics400-id2label.json"""
elif "ssv2" in model_name:
_a = 174
_a = """something-something-v2-id2label.json"""
else:
raise ValueError('''Model name should either contain \'kinetics\' or \'ssv2\' in case it\'s fine-tuned.''')
_a = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type='''dataset''') , '''r'''))
_a = {int(_lowerCAmelCase): v for k, v in idalabel.items()}
_a = idalabel
_a = {v: k for k, v in idalabel.items()}
return config
def lowerCAmelCase (__A , __A):
"""simple docstring"""
if "small" in model_name:
_a = 384
_a = 1_536
_a = 12
_a = 16
_a = 12
_a = 3
_a = 192
_a = 768
elif "large" in model_name:
_a = 1_024
_a = 4_096
_a = 24
_a = 16
_a = 12
_a = 8
_a = 512
_a = 2_048
elif "huge" in model_name:
_a = 1_280
_a = 5_120
_a = 32
_a = 16
_a = 12
_a = 8
_a = 640
_a = 2_560
elif "base" not in model_name:
raise ValueError('''Model name should include either \"small\", \"base\", \"large\", or \"huge\"''')
def lowerCAmelCase (__A):
"""simple docstring"""
if "encoder." in name:
_a = name.replace('''encoder.''' , '''''')
if "cls_token" in name:
_a = name.replace('''cls_token''' , '''videomae.embeddings.cls_token''')
if "decoder_pos_embed" in name:
_a = name.replace('''decoder_pos_embed''' , '''decoder.decoder_pos_embed''')
if "pos_embed" in name and "decoder" not in name:
_a = name.replace('''pos_embed''' , '''videomae.embeddings.position_embeddings''')
if "patch_embed.proj" in name:
_a = name.replace('''patch_embed.proj''' , '''videomae.embeddings.patch_embeddings.projection''')
if "patch_embed.norm" in name:
_a = name.replace('''patch_embed.norm''' , '''videomae.embeddings.norm''')
if "decoder.blocks" in name:
_a = name.replace('''decoder.blocks''' , '''decoder.decoder_layers''')
if "blocks" in name:
_a = name.replace('''blocks''' , '''videomae.encoder.layer''')
if "attn.proj" in name:
_a = name.replace('''attn.proj''' , '''attention.output.dense''')
if "attn" in name and "bias" not in name:
_a = name.replace('''attn''' , '''attention.self''')
if "attn" in name:
_a = name.replace('''attn''' , '''attention.attention''')
if "norm1" in name:
_a = name.replace('''norm1''' , '''layernorm_before''')
if "norm2" in name:
_a = name.replace('''norm2''' , '''layernorm_after''')
if "mlp.fc1" in name:
_a = name.replace('''mlp.fc1''' , '''intermediate.dense''')
if "mlp.fc2" in name:
_a = name.replace('''mlp.fc2''' , '''output.dense''')
if "decoder_embed" in name:
_a = name.replace('''decoder_embed''' , '''decoder.decoder_embed''')
if "decoder_norm" in name:
_a = name.replace('''decoder_norm''' , '''decoder.decoder_norm''')
if "decoder_pred" in name:
_a = name.replace('''decoder_pred''' , '''decoder.decoder_pred''')
if "norm.weight" in name and "decoder" not in name and "fc" not in name:
_a = name.replace('''norm.weight''' , '''videomae.layernorm.weight''')
if "norm.bias" in name and "decoder" not in name and "fc" not in name:
_a = name.replace('''norm.bias''' , '''videomae.layernorm.bias''')
if "head" in name and "decoder" not in name:
_a = name.replace('''head''' , '''classifier''')
return name
def lowerCAmelCase (__A , __A):
"""simple docstring"""
for key in orig_state_dict.copy().keys():
_a = orig_state_dict.pop(_lowerCAmelCase)
if key.startswith('''encoder.'''):
_a = key.replace('''encoder.''' , '''''')
if "qkv" in key:
_a = key.split('''.''')
if key.startswith('''decoder.blocks'''):
_a = config.decoder_hidden_size
_a = int(key_split[2])
_a = """decoder.decoder_layers."""
if "weight" in key:
_a = val[:dim, :]
_a = val[dim : dim * 2, :]
_a = val[-dim:, :]
else:
_a = config.hidden_size
_a = int(key_split[1])
_a = """videomae.encoder.layer."""
if "weight" in key:
_a = val[:dim, :]
_a = val[dim : dim * 2, :]
_a = val[-dim:, :]
else:
_a = val
return orig_state_dict
def lowerCAmelCase ():
"""simple docstring"""
_a = hf_hub_download(
repo_id='''hf-internal-testing/spaghetti-video''' , filename='''eating_spaghetti.npy''' , repo_type='''dataset''')
_a = np.load(_lowerCAmelCase)
return list(_lowerCAmelCase)
def lowerCAmelCase (__A , __A , __A , __A):
"""simple docstring"""
_a = get_videomae_config(_lowerCAmelCase)
if "finetuned" in model_name:
_a = VideoMAEForVideoClassification(_lowerCAmelCase)
else:
_a = VideoMAEForPreTraining(_lowerCAmelCase)
# download original checkpoint, hosted on Google Drive
_a = """pytorch_model.bin"""
gdown.cached_download(_lowerCAmelCase , _lowerCAmelCase , quiet=_lowerCAmelCase)
_a = torch.load(_lowerCAmelCase , map_location='''cpu''')
if "model" in files:
_a = files["""model"""]
else:
_a = files["""module"""]
_a = convert_state_dict(_lowerCAmelCase , _lowerCAmelCase)
model.load_state_dict(_lowerCAmelCase)
model.eval()
# verify model on basic input
_a = VideoMAEImageProcessor(image_mean=[0.5, 0.5, 0.5] , image_std=[0.5, 0.5, 0.5])
_a = prepare_video()
_a = image_processor(_lowerCAmelCase , return_tensors='''pt''')
if "finetuned" not in model_name:
_a = hf_hub_download(repo_id='''hf-internal-testing/bool-masked-pos''' , filename='''bool_masked_pos.pt''')
_a = torch.load(_lowerCAmelCase)
_a = model(**_lowerCAmelCase)
_a = outputs.logits
_a = [
"""videomae-small-finetuned-kinetics""",
"""videomae-small-finetuned-ssv2""",
# Kinetics-400 checkpoints (short = pretrained only for 800 epochs instead of 1600)
"""videomae-base-short""",
"""videomae-base-short-finetuned-kinetics""",
"""videomae-base""",
"""videomae-base-finetuned-kinetics""",
"""videomae-large""",
"""videomae-large-finetuned-kinetics""",
"""videomae-huge-finetuned-kinetics""",
# Something-Something-v2 checkpoints (short = pretrained only for 800 epochs instead of 2400)
"""videomae-base-short-ssv2""",
"""videomae-base-short-finetuned-ssv2""",
"""videomae-base-ssv2""",
"""videomae-base-finetuned-ssv2""",
]
# NOTE: logits were tested with image_mean and image_std equal to [0.5, 0.5, 0.5] and [0.5, 0.5, 0.5]
if model_name == "videomae-small-finetuned-kinetics":
_a = torch.Size([1, 400])
_a = torch.tensor([-0.92_91, -0.40_61, -0.93_07])
elif model_name == "videomae-small-finetuned-ssv2":
_a = torch.Size([1, 174])
_a = torch.tensor([0.26_71, -0.46_89, -0.82_35])
elif model_name == "videomae-base":
_a = torch.Size([1, 1_408, 1_536])
_a = torch.tensor([[0.77_39, 0.79_68, 0.70_89], [0.67_01, 0.74_87, 0.62_09], [0.42_87, 0.51_58, 0.47_73]])
elif model_name == "videomae-base-short":
_a = torch.Size([1, 1_408, 1_536])
_a = torch.tensor([[0.79_94, 0.96_12, 0.85_08], [0.74_01, 0.89_58, 0.83_02], [0.58_62, 0.74_68, 0.73_25]])
# we verified the loss both for normalized and unnormalized targets for this one
_a = torch.tensor([0.51_42]) if config.norm_pix_loss else torch.tensor([0.64_69])
elif model_name == "videomae-large":
_a = torch.Size([1, 1_408, 1_536])
_a = torch.tensor([[0.71_49, 0.79_97, 0.69_66], [0.67_68, 0.78_69, 0.69_48], [0.51_39, 0.62_21, 0.56_05]])
elif model_name == "videomae-large-finetuned-kinetics":
_a = torch.Size([1, 400])
_a = torch.tensor([0.07_71, 0.00_11, -0.36_25])
elif model_name == "videomae-huge-finetuned-kinetics":
_a = torch.Size([1, 400])
_a = torch.tensor([0.24_33, 0.16_32, -0.48_94])
elif model_name == "videomae-base-short-finetuned-kinetics":
_a = torch.Size([1, 400])
_a = torch.tensor([0.65_88, 0.09_90, -0.24_93])
elif model_name == "videomae-base-finetuned-kinetics":
_a = torch.Size([1, 400])
_a = torch.tensor([0.36_69, -0.06_88, -0.24_21])
elif model_name == "videomae-base-short-ssv2":
_a = torch.Size([1, 1_408, 1_536])
_a = torch.tensor([[0.47_12, 0.52_96, 0.57_86], [0.22_78, 0.27_29, 0.40_26], [0.03_52, 0.07_30, 0.25_06]])
elif model_name == "videomae-base-short-finetuned-ssv2":
_a = torch.Size([1, 174])
_a = torch.tensor([-0.05_37, -0.15_39, -0.32_66])
elif model_name == "videomae-base-ssv2":
_a = torch.Size([1, 1_408, 1_536])
_a = torch.tensor([[0.81_31, 0.87_27, 0.85_46], [0.73_66, 0.93_77, 0.88_70], [0.59_35, 0.88_74, 0.85_64]])
elif model_name == "videomae-base-finetuned-ssv2":
_a = torch.Size([1, 174])
_a = torch.tensor([0.19_61, -0.83_37, -0.63_89])
else:
raise ValueError(F'''Model name not supported. Should be one of {model_names}''')
# verify logits
assert logits.shape == expected_shape
if "finetuned" in model_name:
assert torch.allclose(logits[0, :3] , _lowerCAmelCase , atol=1e-4)
else:
print('''Logits:''' , logits[0, :3, :3])
assert torch.allclose(logits[0, :3, :3] , _lowerCAmelCase , atol=1e-4)
print('''Logits ok!''')
# verify loss, if applicable
if model_name == "videomae-base-short":
_a = outputs.loss
assert torch.allclose(_lowerCAmelCase , _lowerCAmelCase , atol=1e-4)
print('''Loss ok!''')
if pytorch_dump_folder_path is not None:
print(F'''Saving model and image processor to {pytorch_dump_folder_path}''')
image_processor.save_pretrained(_lowerCAmelCase)
model.save_pretrained(_lowerCAmelCase)
if push_to_hub:
print('''Pushing to the hub...''')
model.push_to_hub(_lowerCAmelCase , organization='''nielsr''')
if __name__ == "__main__":
lowercase_ = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--checkpoint_url",
default="https://drive.google.com/u/1/uc?id=1tEhLyskjb755TJ65ptsrafUG2llSwQE1&export=download&confirm=t&uuid=aa3276eb-fb7e-482a-adec-dc7171df14c4",
type=str,
help=(
"URL of the original PyTorch checkpoint (on Google Drive) you'd like to convert. Should be a direct"
" download link."
),
)
parser.add_argument(
"--pytorch_dump_folder_path",
default="/Users/nielsrogge/Documents/VideoMAE/Test",
type=str,
help="Path to the output PyTorch model directory.",
)
parser.add_argument("--model_name", default="videomae-base", type=str, help="Name of the model.")
parser.add_argument(
"--push_to_hub", action="store_true", help="Whether or not to push the converted model to the 🤗 hub."
)
lowercase_ = parser.parse_args()
convert_videomae_checkpoint(args.checkpoint_url, args.pytorch_dump_folder_path, args.model_name, args.push_to_hub)
| 211
|
'''simple docstring'''
import importlib
import os
import sys
# This is required to make the module import works (when the python process is running from the root of the repo)
sys.path.append(".")
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = test_file.split(os.path.sep )
if components[0:2] != ["tests", "models"]:
raise ValueError(
"""`test_file` should start with `tests/models/` (with `/` being the OS specific path separator). Got """
f"{test_file} instead." )
snake_case__ : Dict = components[-1]
if not test_fn.endswith("""py""" ):
raise ValueError(f"`test_file` should be a python file. Got {test_fn} instead." )
if not test_fn.startswith("""test_modeling_""" ):
raise ValueError(
f"`test_file` should point to a file name of the form `test_modeling_*.py`. Got {test_fn} instead." )
snake_case__ : int = components[:-1] + [test_fn.replace(""".py""" , """""" )]
snake_case__ : int = """.""".join(_lowerCAmelCase )
return test_module_path
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ : str = get_module_path(_lowerCAmelCase )
snake_case__ : Union[str, Any] = importlib.import_module(_lowerCAmelCase )
return test_module
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : List[Any] = []
snake_case__ : Optional[int] = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
if attr.endswith("""ModelTester""" ):
tester_classes.append(getattr(_lowerCAmelCase , _lowerCAmelCase ) )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : List[str] = []
snake_case__ : Any = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
# (TF/Flax)ModelTesterMixin is also an attribute in specific model test module. Let's exclude them by checking
# `all_model_classes` is not empty (which also excludes other special classes).
snake_case__ : List[str] = getattr(_lowerCAmelCase , """all_model_classes""" , [] )
if len(_lowerCAmelCase ) > 0:
test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : Any = get_test_classes(_lowerCAmelCase )
snake_case__ : Optional[Any] = set()
for test_class in test_classes:
model_classes.update(test_class.all_model_classes )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
snake_case__ : Optional[int] = test_class()
if hasattr(_lowerCAmelCase , """setUp""" ):
test.setUp()
snake_case__ : Any = None
if hasattr(_lowerCAmelCase , """model_tester""" ):
# `(TF/Flax)ModelTesterMixin` has this attribute default to `None`. Let's skip this case.
if test.model_tester is not None:
snake_case__ : Tuple = test.model_tester.__class__
return model_tester
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : Union[str, Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : str = []
for test_class in test_classes:
if model_class in test_class.all_model_classes:
target_test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Tuple:
snake_case__ : Optional[Any] = get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Union[str, Any] = []
for test_class in test_classes:
snake_case__ : Tuple = get_model_tester_from_test_class(_lowerCAmelCase )
if tester_class is not None:
tester_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Union[str, Any]:
snake_case__ : Optional[Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : Union[str, Any] = {test_class: get_model_tester_from_test_class(_lowerCAmelCase ) for test_class in test_classes}
return test_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Any = get_model_classes(_lowerCAmelCase )
snake_case__ : Any = {
model_class: get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_test_mapping
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Union[str, Any] = get_model_classes(_lowerCAmelCase )
snake_case__ : str = {
model_class: get_tester_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_to_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
if isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o.__name__
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return [to_json(_lowerCAmelCase ) for x in o]
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return {to_json(_lowerCAmelCase ): to_json(_lowerCAmelCase ) for k, v in o.items()}
else:
return o
| 35
| 0
|
def a ( A__ : List[str] ) -> int:
"""simple docstring"""
if not isinstance(_lowerCAmelCase , _lowerCAmelCase ) or number < 0:
raise ValueError('Input must be a non-negative integer' )
_lowercase =0
while number:
# This way we arrive at next set bit (next 1) instead of looping
# through each bit and checking for 1s hence the
# loop won't run 32 times it will only run the number of `1` times
number &= number - 1
count += 1
return count
if __name__ == "__main__":
import doctest
doctest.testmod()
| 205
|
'''simple docstring'''
import argparse
import json
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import AutoImageProcessor, SwinConfig, SwinForImageClassification
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : Dict = SwinConfig()
snake_case__ : Optional[Any] = swin_name.split("""_""" )
snake_case__ : Any = name_split[1]
snake_case__ : List[Any] = int(name_split[4] )
snake_case__ : int = int(name_split[3][-1] )
if model_size == "tiny":
snake_case__ : List[Any] = 96
snake_case__ : int = (2, 2, 6, 2)
snake_case__ : int = (3, 6, 12, 24)
elif model_size == "small":
snake_case__ : Union[str, Any] = 96
snake_case__ : Optional[Any] = (2, 2, 18, 2)
snake_case__ : str = (3, 6, 12, 24)
elif model_size == "base":
snake_case__ : Dict = 128
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : Dict = (4, 8, 16, 32)
else:
snake_case__ : List[str] = 192
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : List[Any] = (6, 12, 24, 48)
if "in22k" in swin_name:
snake_case__ : str = 21_841
else:
snake_case__ : List[str] = 1_000
snake_case__ : int = """huggingface/label-files"""
snake_case__ : Any = """imagenet-1k-id2label.json"""
snake_case__ : List[Any] = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : Dict = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : Optional[int] = idalabel
snake_case__ : List[Any] = {v: k for k, v in idalabel.items()}
snake_case__ : List[Any] = img_size
snake_case__ : Dict = num_classes
snake_case__ : Dict = embed_dim
snake_case__ : Optional[int] = depths
snake_case__ : int = num_heads
snake_case__ : Optional[int] = window_size
return config
def __snake_case( _lowerCAmelCase ) -> Dict:
if "patch_embed.proj" in name:
snake_case__ : List[str] = name.replace("""patch_embed.proj""" , """embeddings.patch_embeddings.projection""" )
if "patch_embed.norm" in name:
snake_case__ : int = name.replace("""patch_embed.norm""" , """embeddings.norm""" )
if "layers" in name:
snake_case__ : str = """encoder.""" + name
if "attn.proj" in name:
snake_case__ : List[str] = name.replace("""attn.proj""" , """attention.output.dense""" )
if "attn" in name:
snake_case__ : Tuple = name.replace("""attn""" , """attention.self""" )
if "norm1" in name:
snake_case__ : List[str] = name.replace("""norm1""" , """layernorm_before""" )
if "norm2" in name:
snake_case__ : Optional[Any] = name.replace("""norm2""" , """layernorm_after""" )
if "mlp.fc1" in name:
snake_case__ : Union[str, Any] = name.replace("""mlp.fc1""" , """intermediate.dense""" )
if "mlp.fc2" in name:
snake_case__ : Dict = name.replace("""mlp.fc2""" , """output.dense""" )
if name == "norm.weight":
snake_case__ : Tuple = """layernorm.weight"""
if name == "norm.bias":
snake_case__ : Union[str, Any] = """layernorm.bias"""
if "head" in name:
snake_case__ : Optional[int] = name.replace("""head""" , """classifier""" )
else:
snake_case__ : List[str] = """swin.""" + name
return name
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Optional[Any]:
for key in orig_state_dict.copy().keys():
snake_case__ : Optional[int] = orig_state_dict.pop(_lowerCAmelCase )
if "mask" in key:
continue
elif "qkv" in key:
snake_case__ : Dict = key.split(""".""" )
snake_case__ : Optional[int] = int(key_split[1] )
snake_case__ : Union[str, Any] = int(key_split[3] )
snake_case__ : List[Any] = model.swin.encoder.layers[layer_num].blocks[block_num].attention.self.all_head_size
if "weight" in key:
snake_case__ : Optional[Any] = val[:dim, :]
snake_case__ : Tuple = val[
dim : dim * 2, :
]
snake_case__ : Dict = val[-dim:, :]
else:
snake_case__ : Tuple = val[
:dim
]
snake_case__ : int = val[
dim : dim * 2
]
snake_case__ : int = val[
-dim:
]
else:
snake_case__ : Union[str, Any] = val
return orig_state_dict
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
snake_case__ : Optional[int] = get_swin_config(_lowerCAmelCase )
snake_case__ : Optional[Any] = SwinForImageClassification(_lowerCAmelCase )
model.eval()
snake_case__ : str = convert_state_dict(timm_model.state_dict() , _lowerCAmelCase )
model.load_state_dict(_lowerCAmelCase )
snake_case__ : int = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Dict = AutoImageProcessor.from_pretrained("""microsoft/{}""".format(swin_name.replace("""_""" , """-""" ) ) )
snake_case__ : Dict = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
snake_case__ : Optional[int] = image_processor(images=_lowerCAmelCase , return_tensors="""pt""" )
snake_case__ : Optional[Any] = timm_model(inputs["""pixel_values"""] )
snake_case__ : str = model(**_lowerCAmelCase ).logits
assert torch.allclose(_lowerCAmelCase , _lowerCAmelCase , atol=1e-3 )
print(f"Saving model {swin_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--swin_name",
default="swin_tiny_patch4_window7_224",
type=str,
help="Name of the Swin timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_swin_checkpoint(args.swin_name, args.pytorch_dump_folder_path)
| 35
| 0
|
from collections import OrderedDict
from typing import Mapping
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
UpperCAmelCase_ : str = logging.get_logger(__name__)
UpperCAmelCase_ : Optional[Any] = {
'''andreasmadsen/efficient_mlm_m0.40''': (
'''https://huggingface.co/andreasmadsen/efficient_mlm_m0.40/resolve/main/config.json'''
),
}
class _SCREAMING_SNAKE_CASE ( _a ):
snake_case__ : Any = """roberta-prelayernorm"""
def __init__( self : Optional[int] , __lowerCamelCase : List[Any]=50_265 , __lowerCamelCase : Union[str, Any]=768 , __lowerCamelCase : List[str]=12 , __lowerCamelCase : List[str]=12 , __lowerCamelCase : int=3_072 , __lowerCamelCase : int="gelu" , __lowerCamelCase : Optional[int]=0.1 , __lowerCamelCase : str=0.1 , __lowerCamelCase : str=512 , __lowerCamelCase : str=2 , __lowerCamelCase : str=0.02 , __lowerCamelCase : str=1E-12 , __lowerCamelCase : Optional[Any]=1 , __lowerCamelCase : Union[str, Any]=0 , __lowerCamelCase : Optional[int]=2 , __lowerCamelCase : List[Any]="absolute" , __lowerCamelCase : Optional[Any]=True , __lowerCamelCase : Union[str, Any]=None , **__lowerCamelCase : List[str] , ):
super().__init__(pad_token_id=snake_case_ , bos_token_id=snake_case_ , eos_token_id=snake_case_ , **snake_case_ )
UpperCamelCase :Tuple = vocab_size
UpperCamelCase :Union[str, Any] = hidden_size
UpperCamelCase :Dict = num_hidden_layers
UpperCamelCase :Tuple = num_attention_heads
UpperCamelCase :Dict = hidden_act
UpperCamelCase :int = intermediate_size
UpperCamelCase :List[str] = hidden_dropout_prob
UpperCamelCase :List[Any] = attention_probs_dropout_prob
UpperCamelCase :Any = max_position_embeddings
UpperCamelCase :Any = type_vocab_size
UpperCamelCase :Optional[Any] = initializer_range
UpperCamelCase :Tuple = layer_norm_eps
UpperCamelCase :Optional[Any] = position_embedding_type
UpperCamelCase :int = use_cache
UpperCamelCase :List[Any] = classifier_dropout
class _SCREAMING_SNAKE_CASE ( _a ):
@property
def _A ( self : List[Any] ):
if self.task == "multiple-choice":
UpperCamelCase :Optional[Any] = {0: """batch""", 1: """choice""", 2: """sequence"""}
else:
UpperCamelCase :Optional[Any] = {0: """batch""", 1: """sequence"""}
return OrderedDict(
[
("""input_ids""", dynamic_axis),
("""attention_mask""", dynamic_axis),
] )
| 38
|
'''simple docstring'''
import warnings
from ...utils import logging
from .image_processing_beit import BeitImageProcessor
__a = logging.get_logger(__name__)
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def __init__( self : List[str] , *snake_case_ : str , **snake_case_ : List[str] ):
warnings.warn(
"""The class BeitFeatureExtractor is deprecated and will be removed in version 5 of Transformers. Please"""
""" use BeitImageProcessor instead.""" , snake_case_ , )
super().__init__(*snake_case_ , **snake_case_ )
| 35
| 0
|
"""simple docstring"""
import warnings
from ...utils import logging
from .image_processing_videomae import VideoMAEImageProcessor
_UpperCamelCase : str = logging.get_logger(__name__)
class UpperCAmelCase_ ( _a):
def __init__( self , *a , **a ) -> Dict:
warnings.warn(
'The class VideoMAEFeatureExtractor is deprecated and will be removed in version 5 of Transformers.'
' Please use VideoMAEImageProcessor instead.' , snake_case_ , )
super().__init__(*snake_case_ , **snake_case_ )
| 77
|
'''simple docstring'''
import logging
from dataclasses import dataclass, field
from pathlib import Path
from typing import Optional, Union
from .generation.configuration_utils import GenerationConfig
from .training_args import TrainingArguments
from .utils import add_start_docstrings
__a = logging.getLogger(__name__)
@dataclass
@add_start_docstrings(TrainingArguments.__doc__ )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = field(default=_a , metadata={"help": "Whether to use SortishSampler or not."} )
lowercase = field(
default=_a , metadata={"help": "Whether to use generate to calculate generative metrics (ROUGE, BLEU)."} )
lowercase = field(
default=_a , metadata={
"help": (
"The `max_length` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `max_length` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": (
"The `num_beams` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `num_beams` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": "Model id, file path or url pointing to a GenerationConfig json file, to use during prediction."
} , )
def lowerCamelCase ( self : List[str] ):
snake_case__ : int = super().to_dict()
for k, v in d.items():
if isinstance(snake_case_ , snake_case_ ):
snake_case__ : Optional[int] = v.to_dict()
return d
| 35
| 0
|
'''simple docstring'''
import torch
from diffusers import DPMSolverSDEScheduler
from diffusers.utils import torch_device
from diffusers.utils.testing_utils import require_torchsde
from .test_schedulers import SchedulerCommonTest
@require_torchsde
class __A ( _a ):
a__ : Optional[Any] = (DPMSolverSDEScheduler,)
a__ : List[str] = 10
def _lowercase (self : str , **__a : Union[str, Any] ):
UpperCAmelCase_ = {
"""num_train_timesteps""": 1100,
"""beta_start""": 0.00_01,
"""beta_end""": 0.02,
"""beta_schedule""": """linear""",
"""noise_sampler_seed""": 0,
}
config.update(**snake_case_ )
return config
def _lowercase (self : Any ):
for timesteps in [10, 50, 100, 1000]:
self.check_over_configs(num_train_timesteps=snake_case_ )
def _lowercase (self : Tuple ):
for beta_start, beta_end in zip([0.0_00_01, 0.00_01, 0.0_01] , [0.00_02, 0.0_02, 0.02] ):
self.check_over_configs(beta_start=snake_case_ , beta_end=snake_case_ )
def _lowercase (self : int ):
for schedule in ["linear", "scaled_linear"]:
self.check_over_configs(beta_schedule=snake_case_ )
def _lowercase (self : Optional[Any] ):
for prediction_type in ["epsilon", "v_prediction"]:
self.check_over_configs(prediction_type=snake_case_ )
def _lowercase (self : int ):
UpperCAmelCase_ = self.scheduler_classes[0]
UpperCAmelCase_ = self.get_scheduler_config()
UpperCAmelCase_ = scheduler_class(**snake_case_ )
scheduler.set_timesteps(self.num_inference_steps )
UpperCAmelCase_ = self.dummy_model()
UpperCAmelCase_ = self.dummy_sample_deter * scheduler.init_noise_sigma
UpperCAmelCase_ = sample.to(snake_case_ )
for i, t in enumerate(scheduler.timesteps ):
UpperCAmelCase_ = scheduler.scale_model_input(snake_case_ , snake_case_ )
UpperCAmelCase_ = model(snake_case_ , snake_case_ )
UpperCAmelCase_ = scheduler.step(snake_case_ , snake_case_ , snake_case_ )
UpperCAmelCase_ = output.prev_sample
UpperCAmelCase_ = torch.sum(torch.abs(snake_case_ ) )
UpperCAmelCase_ = torch.mean(torch.abs(snake_case_ ) )
if torch_device in ["mps"]:
assert abs(result_sum.item() - 1_67.47_82_10_44_92_18_75 ) < 1E-2
assert abs(result_mean.item() - 0.21_78_70_59_64_56_52_77 ) < 1E-3
elif torch_device in ["cuda"]:
assert abs(result_sum.item() - 1_71.59_35_21_11_81_64_06 ) < 1E-2
assert abs(result_mean.item() - 0.2_23_42_90_68_92_29_96_52 ) < 1E-3
else:
assert abs(result_sum.item() - 1_62.52_38_34_22_85_15_62 ) < 1E-2
assert abs(result_mean.item() - 0.2_11_61_95_70_85_13_26 ) < 1E-3
def _lowercase (self : List[Any] ):
UpperCAmelCase_ = self.scheduler_classes[0]
UpperCAmelCase_ = self.get_scheduler_config(prediction_type="v_prediction" )
UpperCAmelCase_ = scheduler_class(**snake_case_ )
scheduler.set_timesteps(self.num_inference_steps )
UpperCAmelCase_ = self.dummy_model()
UpperCAmelCase_ = self.dummy_sample_deter * scheduler.init_noise_sigma
UpperCAmelCase_ = sample.to(snake_case_ )
for i, t in enumerate(scheduler.timesteps ):
UpperCAmelCase_ = scheduler.scale_model_input(snake_case_ , snake_case_ )
UpperCAmelCase_ = model(snake_case_ , snake_case_ )
UpperCAmelCase_ = scheduler.step(snake_case_ , snake_case_ , snake_case_ )
UpperCAmelCase_ = output.prev_sample
UpperCAmelCase_ = torch.sum(torch.abs(snake_case_ ) )
UpperCAmelCase_ = torch.mean(torch.abs(snake_case_ ) )
if torch_device in ["mps"]:
assert abs(result_sum.item() - 1_24.77_14_92_00_43_94_53 ) < 1E-2
assert abs(result_mean.item() - 0.1_62_26_28_90_14_81_62_84 ) < 1E-3
elif torch_device in ["cuda"]:
assert abs(result_sum.item() - 1_28.1_66_33_60_59_57_03 ) < 1E-2
assert abs(result_mean.item() - 0.1_66_88_32_60_01_16_72_97 ) < 1E-3
else:
assert abs(result_sum.item() - 1_19.8_48_75_48_82_81_25 ) < 1E-2
assert abs(result_mean.item() - 0.15_60_53_06_62_53_66_21 ) < 1E-3
def _lowercase (self : int ):
UpperCAmelCase_ = self.scheduler_classes[0]
UpperCAmelCase_ = self.get_scheduler_config()
UpperCAmelCase_ = scheduler_class(**snake_case_ )
scheduler.set_timesteps(self.num_inference_steps , device=snake_case_ )
UpperCAmelCase_ = self.dummy_model()
UpperCAmelCase_ = self.dummy_sample_deter.to(snake_case_ ) * scheduler.init_noise_sigma
for t in scheduler.timesteps:
UpperCAmelCase_ = scheduler.scale_model_input(snake_case_ , snake_case_ )
UpperCAmelCase_ = model(snake_case_ , snake_case_ )
UpperCAmelCase_ = scheduler.step(snake_case_ , snake_case_ , snake_case_ )
UpperCAmelCase_ = output.prev_sample
UpperCAmelCase_ = torch.sum(torch.abs(snake_case_ ) )
UpperCAmelCase_ = torch.mean(torch.abs(snake_case_ ) )
if torch_device in ["mps"]:
assert abs(result_sum.item() - 1_67.46_95_73_97_46_09_38 ) < 1E-2
assert abs(result_mean.item() - 0.2_18_05_93_46_07_98_26_35 ) < 1E-3
elif torch_device in ["cuda"]:
assert abs(result_sum.item() - 1_71.59_35_36_37_69_53_12 ) < 1E-2
assert abs(result_mean.item() - 0.2_23_42_90_83_82_41_57_71 ) < 1E-3
else:
assert abs(result_sum.item() - 1_62.52_38_34_22_85_15_62 ) < 1E-2
assert abs(result_mean.item() - 0.2_11_61_95_70_85_13_26 ) < 1E-3
def _lowercase (self : Dict ):
UpperCAmelCase_ = self.scheduler_classes[0]
UpperCAmelCase_ = self.get_scheduler_config()
UpperCAmelCase_ = scheduler_class(**snake_case_ , use_karras_sigmas=snake_case_ )
scheduler.set_timesteps(self.num_inference_steps , device=snake_case_ )
UpperCAmelCase_ = self.dummy_model()
UpperCAmelCase_ = self.dummy_sample_deter.to(snake_case_ ) * scheduler.init_noise_sigma
UpperCAmelCase_ = sample.to(snake_case_ )
for t in scheduler.timesteps:
UpperCAmelCase_ = scheduler.scale_model_input(snake_case_ , snake_case_ )
UpperCAmelCase_ = model(snake_case_ , snake_case_ )
UpperCAmelCase_ = scheduler.step(snake_case_ , snake_case_ , snake_case_ )
UpperCAmelCase_ = output.prev_sample
UpperCAmelCase_ = torch.sum(torch.abs(snake_case_ ) )
UpperCAmelCase_ = torch.mean(torch.abs(snake_case_ ) )
if torch_device in ["mps"]:
assert abs(result_sum.item() - 1_76.66_97_41_35_74_21_88 ) < 1E-2
assert abs(result_mean.item() - 0.2_30_03_87_27_30_98_18_11 ) < 1E-2
elif torch_device in ["cuda"]:
assert abs(result_sum.item() - 1_77.63_65_35_64_45_31_25 ) < 1E-2
assert abs(result_mean.item() - 0.2_30_03_87_27_30_98_18_11 ) < 1E-2
else:
assert abs(result_sum.item() - 1_70.3_13_52_23_38_86_72 ) < 1E-2
assert abs(result_mean.item() - 0.2_30_03_87_27_30_98_18_11 ) < 1E-2
| 1
|
'''simple docstring'''
import argparse
import json
from pathlib import Path
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import DeiTConfig, DeiTForImageClassificationWithTeacher, DeiTImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=False ) -> str:
snake_case__ : Union[str, Any] = []
for i in range(config.num_hidden_layers ):
# encoder layers: output projection, 2 feedforward neural networks and 2 layernorms
rename_keys.append((f"blocks.{i}.norm1.weight", f"deit.encoder.layer.{i}.layernorm_before.weight") )
rename_keys.append((f"blocks.{i}.norm1.bias", f"deit.encoder.layer.{i}.layernorm_before.bias") )
rename_keys.append((f"blocks.{i}.attn.proj.weight", f"deit.encoder.layer.{i}.attention.output.dense.weight") )
rename_keys.append((f"blocks.{i}.attn.proj.bias", f"deit.encoder.layer.{i}.attention.output.dense.bias") )
rename_keys.append((f"blocks.{i}.norm2.weight", f"deit.encoder.layer.{i}.layernorm_after.weight") )
rename_keys.append((f"blocks.{i}.norm2.bias", f"deit.encoder.layer.{i}.layernorm_after.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc1.weight", f"deit.encoder.layer.{i}.intermediate.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc1.bias", f"deit.encoder.layer.{i}.intermediate.dense.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc2.weight", f"deit.encoder.layer.{i}.output.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc2.bias", f"deit.encoder.layer.{i}.output.dense.bias") )
# projection layer + position embeddings
rename_keys.extend(
[
("""cls_token""", """deit.embeddings.cls_token"""),
("""dist_token""", """deit.embeddings.distillation_token"""),
("""patch_embed.proj.weight""", """deit.embeddings.patch_embeddings.projection.weight"""),
("""patch_embed.proj.bias""", """deit.embeddings.patch_embeddings.projection.bias"""),
("""pos_embed""", """deit.embeddings.position_embeddings"""),
] )
if base_model:
# layernorm + pooler
rename_keys.extend(
[
("""norm.weight""", """layernorm.weight"""),
("""norm.bias""", """layernorm.bias"""),
("""pre_logits.fc.weight""", """pooler.dense.weight"""),
("""pre_logits.fc.bias""", """pooler.dense.bias"""),
] )
# if just the base model, we should remove "deit" from all keys that start with "deit"
snake_case__ : List[Any] = [(pair[0], pair[1][4:]) if pair[1].startswith("""deit""" ) else pair for pair in rename_keys]
else:
# layernorm + classification heads
rename_keys.extend(
[
("""norm.weight""", """deit.layernorm.weight"""),
("""norm.bias""", """deit.layernorm.bias"""),
("""head.weight""", """cls_classifier.weight"""),
("""head.bias""", """cls_classifier.bias"""),
("""head_dist.weight""", """distillation_classifier.weight"""),
("""head_dist.bias""", """distillation_classifier.bias"""),
] )
return rename_keys
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> Union[str, Any]:
for i in range(config.num_hidden_layers ):
if base_model:
snake_case__ : Tuple = """"""
else:
snake_case__ : Dict = """deit."""
# read in weights + bias of input projection layer (in timm, this is a single matrix + bias)
snake_case__ : Optional[Any] = state_dict.pop(f"blocks.{i}.attn.qkv.weight" )
snake_case__ : Tuple = state_dict.pop(f"blocks.{i}.attn.qkv.bias" )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[
: config.hidden_size, :
]
snake_case__ : Optional[int] = in_proj_bias[: config.hidden_size]
snake_case__ : Any = in_proj_weight[
config.hidden_size : config.hidden_size * 2, :
]
snake_case__ : str = in_proj_bias[
config.hidden_size : config.hidden_size * 2
]
snake_case__ : List[str] = in_proj_weight[
-config.hidden_size :, :
]
snake_case__ : Tuple = in_proj_bias[-config.hidden_size :]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : str = dct.pop(_lowerCAmelCase )
snake_case__ : Tuple = val
def __snake_case( ) -> Tuple:
snake_case__ : Union[str, Any] = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Optional[int] = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
return im
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> str:
snake_case__ : Optional[int] = DeiTConfig()
# all deit models have fine-tuned heads
snake_case__ : Union[str, Any] = False
# dataset (fine-tuned on ImageNet 2012), patch_size and image_size
snake_case__ : int = 1_000
snake_case__ : Any = """huggingface/label-files"""
snake_case__ : Optional[Any] = """imagenet-1k-id2label.json"""
snake_case__ : Tuple = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : List[Any] = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : List[Any] = idalabel
snake_case__ : List[str] = {v: k for k, v in idalabel.items()}
snake_case__ : Tuple = int(deit_name[-6:-4] )
snake_case__ : Optional[Any] = int(deit_name[-3:] )
# size of the architecture
if deit_name[9:].startswith("""tiny""" ):
snake_case__ : Tuple = 192
snake_case__ : Union[str, Any] = 768
snake_case__ : Tuple = 12
snake_case__ : Union[str, Any] = 3
elif deit_name[9:].startswith("""small""" ):
snake_case__ : str = 384
snake_case__ : Any = 1_536
snake_case__ : str = 12
snake_case__ : int = 6
if deit_name[9:].startswith("""base""" ):
pass
elif deit_name[4:].startswith("""large""" ):
snake_case__ : Union[str, Any] = 1_024
snake_case__ : Any = 4_096
snake_case__ : List[Any] = 24
snake_case__ : Tuple = 16
# load original model from timm
snake_case__ : List[Any] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
# load state_dict of original model, remove and rename some keys
snake_case__ : Optional[Any] = timm_model.state_dict()
snake_case__ : Optional[int] = create_rename_keys(_lowerCAmelCase , _lowerCAmelCase )
for src, dest in rename_keys:
rename_key(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
read_in_q_k_v(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
# load HuggingFace model
snake_case__ : Optional[Any] = DeiTForImageClassificationWithTeacher(_lowerCAmelCase ).eval()
model.load_state_dict(_lowerCAmelCase )
# Check outputs on an image, prepared by DeiTImageProcessor
snake_case__ : List[Any] = int(
(256 / 224) * config.image_size ) # to maintain same ratio w.r.t. 224 images, see https://github.com/facebookresearch/deit/blob/ab5715372db8c6cad5740714b2216d55aeae052e/datasets.py#L103
snake_case__ : Optional[Any] = DeiTImageProcessor(size=_lowerCAmelCase , crop_size=config.image_size )
snake_case__ : str = image_processor(images=prepare_img() , return_tensors="""pt""" )
snake_case__ : Optional[Any] = encoding["""pixel_values"""]
snake_case__ : Tuple = model(_lowerCAmelCase )
snake_case__ : Optional[int] = timm_model(_lowerCAmelCase )
assert timm_logits.shape == outputs.logits.shape
assert torch.allclose(_lowerCAmelCase , outputs.logits , atol=1e-3 )
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
print(f"Saving model {deit_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--deit_name",
default="vit_deit_base_distilled_patch16_224",
type=str,
help="Name of the DeiT timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_deit_checkpoint(args.deit_name, args.pytorch_dump_folder_path)
| 35
| 0
|
import json
import sys
import tempfile
import unittest
from pathlib import Path
import transformers
from transformers import (
CONFIG_MAPPING,
IMAGE_PROCESSOR_MAPPING,
AutoConfig,
AutoImageProcessor,
CLIPConfig,
CLIPImageProcessor,
)
from transformers.testing_utils import DUMMY_UNKNOWN_IDENTIFIER
sys.path.append(str(Path(__file__).parent.parent.parent.parent / "utils"))
from test_module.custom_configuration import CustomConfig # noqa E402
from test_module.custom_image_processing import CustomImageProcessor # noqa E402
class A( unittest.TestCase ):
'''simple docstring'''
def a__ ( self : Optional[Any] ) -> Optional[Any]:
"""simple docstring"""
lowerCamelCase_ = 0
def a__ ( self : Optional[Any] ) -> str:
"""simple docstring"""
lowerCamelCase_ = AutoImageProcessor.from_pretrained('openai/clip-vit-base-patch32' )
self.assertIsInstance(snake_case_ , snake_case_ )
def a__ ( self : Dict ) -> Any:
"""simple docstring"""
with tempfile.TemporaryDirectory() as tmpdirname:
lowerCamelCase_ = Path(snake_case_ ) / """preprocessor_config.json"""
lowerCamelCase_ = Path(snake_case_ ) / """config.json"""
json.dump(
{'image_processor_type': 'CLIPImageProcessor', 'processor_class': 'CLIPProcessor'} , open(snake_case_ , 'w' ) , )
json.dump({'model_type': 'clip'} , open(snake_case_ , 'w' ) )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ )
self.assertIsInstance(snake_case_ , snake_case_ )
def a__ ( self : Optional[Any] ) -> List[Any]:
"""simple docstring"""
with tempfile.TemporaryDirectory() as tmpdirname:
lowerCamelCase_ = Path(snake_case_ ) / """preprocessor_config.json"""
lowerCamelCase_ = Path(snake_case_ ) / """config.json"""
json.dump(
{'feature_extractor_type': 'CLIPFeatureExtractor', 'processor_class': 'CLIPProcessor'} , open(snake_case_ , 'w' ) , )
json.dump({'model_type': 'clip'} , open(snake_case_ , 'w' ) )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ )
self.assertIsInstance(snake_case_ , snake_case_ )
def a__ ( self : Optional[int] ) -> List[str]:
"""simple docstring"""
with tempfile.TemporaryDirectory() as tmpdirname:
lowerCamelCase_ = CLIPConfig()
# Create a dummy config file with image_proceesor_type
lowerCamelCase_ = Path(snake_case_ ) / """preprocessor_config.json"""
lowerCamelCase_ = Path(snake_case_ ) / """config.json"""
json.dump(
{'image_processor_type': 'CLIPImageProcessor', 'processor_class': 'CLIPProcessor'} , open(snake_case_ , 'w' ) , )
json.dump({'model_type': 'clip'} , open(snake_case_ , 'w' ) )
# remove image_processor_type to make sure config.json alone is enough to load image processor locally
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ ).to_dict()
config_dict.pop('image_processor_type' )
lowerCamelCase_ = CLIPImageProcessor(**snake_case_ )
# save in new folder
model_config.save_pretrained(snake_case_ )
config.save_pretrained(snake_case_ )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ )
# make sure private variable is not incorrectly saved
lowerCamelCase_ = json.loads(config.to_json_string() )
self.assertTrue('_processor_class' not in dict_as_saved )
self.assertIsInstance(snake_case_ , snake_case_ )
def a__ ( self : Any ) -> str:
"""simple docstring"""
with tempfile.TemporaryDirectory() as tmpdirname:
lowerCamelCase_ = Path(snake_case_ ) / """preprocessor_config.json"""
json.dump(
{'image_processor_type': 'CLIPImageProcessor', 'processor_class': 'CLIPProcessor'} , open(snake_case_ , 'w' ) , )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ )
self.assertIsInstance(snake_case_ , snake_case_ )
def a__ ( self : Optional[int] ) -> List[Any]:
"""simple docstring"""
with self.assertRaisesRegex(
snake_case_ , 'clip-base is not a local folder and is not a valid model identifier' ):
lowerCamelCase_ = AutoImageProcessor.from_pretrained('clip-base' )
def a__ ( self : Any ) -> int:
"""simple docstring"""
with self.assertRaisesRegex(
snake_case_ , r'aaaaaa is not a valid git identifier \(branch name, tag name or commit id\)' ):
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ , revision='aaaaaa' )
def a__ ( self : Any ) -> str:
"""simple docstring"""
with self.assertRaisesRegex(
snake_case_ , 'hf-internal-testing/config-no-model does not appear to have a file named preprocessor_config.json.' , ):
lowerCamelCase_ = AutoImageProcessor.from_pretrained('hf-internal-testing/config-no-model' )
def a__ ( self : List[str] ) -> List[Any]:
"""simple docstring"""
with self.assertRaises(snake_case_ ):
lowerCamelCase_ = AutoImageProcessor.from_pretrained('hf-internal-testing/test_dynamic_image_processor' )
# If remote code is disabled, we can't load this config.
with self.assertRaises(snake_case_ ):
lowerCamelCase_ = AutoImageProcessor.from_pretrained(
'hf-internal-testing/test_dynamic_image_processor' , trust_remote_code=snake_case_ )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(
'hf-internal-testing/test_dynamic_image_processor' , trust_remote_code=snake_case_ )
self.assertEqual(image_processor.__class__.__name__ , 'NewImageProcessor' )
# Test image processor can be reloaded.
with tempfile.TemporaryDirectory() as tmp_dir:
image_processor.save_pretrained(snake_case_ )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ , trust_remote_code=snake_case_ )
self.assertEqual(reloaded_image_processor.__class__.__name__ , 'NewImageProcessor' )
def a__ ( self : str ) -> Optional[Any]:
"""simple docstring"""
try:
AutoConfig.register('custom' , snake_case_ )
AutoImageProcessor.register(snake_case_ , snake_case_ )
# Trying to register something existing in the Transformers library will raise an error
with self.assertRaises(snake_case_ ):
AutoImageProcessor.register(snake_case_ , snake_case_ )
with tempfile.TemporaryDirectory() as tmpdirname:
lowerCamelCase_ = Path(snake_case_ ) / """preprocessor_config.json"""
lowerCamelCase_ = Path(snake_case_ ) / """config.json"""
json.dump(
{'feature_extractor_type': 'CLIPFeatureExtractor', 'processor_class': 'CLIPProcessor'} , open(snake_case_ , 'w' ) , )
json.dump({'model_type': 'clip'} , open(snake_case_ , 'w' ) )
lowerCamelCase_ = CustomImageProcessor.from_pretrained(snake_case_ )
# Now that the config is registered, it can be used as any other config with the auto-API
with tempfile.TemporaryDirectory() as tmp_dir:
image_processor.save_pretrained(snake_case_ )
lowerCamelCase_ = AutoImageProcessor.from_pretrained(snake_case_ )
self.assertIsInstance(snake_case_ , snake_case_ )
finally:
if "custom" in CONFIG_MAPPING._extra_content:
del CONFIG_MAPPING._extra_content["custom"]
if CustomConfig in IMAGE_PROCESSOR_MAPPING._extra_content:
del IMAGE_PROCESSOR_MAPPING._extra_content[CustomConfig]
def a__ ( self : Tuple ) -> Dict:
"""simple docstring"""
class A( _a ):
'''simple docstring'''
UpperCamelCase = True
try:
AutoConfig.register('custom' , snake_case_ )
AutoImageProcessor.register(snake_case_ , snake_case_ )
# If remote code is not set, the default is to use local
lowerCamelCase_ = AutoImageProcessor.from_pretrained('hf-internal-testing/test_dynamic_image_processor' )
self.assertEqual(image_processor.__class__.__name__ , 'NewImageProcessor' )
self.assertTrue(image_processor.is_local )
# If remote code is disabled, we load the local one.
lowerCamelCase_ = AutoImageProcessor.from_pretrained(
'hf-internal-testing/test_dynamic_image_processor' , trust_remote_code=snake_case_ )
self.assertEqual(image_processor.__class__.__name__ , 'NewImageProcessor' )
self.assertTrue(image_processor.is_local )
# If remote is enabled, we load from the Hub
lowerCamelCase_ = AutoImageProcessor.from_pretrained(
'hf-internal-testing/test_dynamic_image_processor' , trust_remote_code=snake_case_ )
self.assertEqual(image_processor.__class__.__name__ , 'NewImageProcessor' )
self.assertTrue(not hasattr(snake_case_ , 'is_local' ) )
finally:
if "custom" in CONFIG_MAPPING._extra_content:
del CONFIG_MAPPING._extra_content["custom"]
if CustomConfig in IMAGE_PROCESSOR_MAPPING._extra_content:
del IMAGE_PROCESSOR_MAPPING._extra_content[CustomConfig]
| 204
|
'''simple docstring'''
import string
from math import logaa
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : List[str] = document.translate(
str.maketrans("""""" , """""" , string.punctuation ) ).replace("""\n""" , """""" )
snake_case__ : List[str] = document_without_punctuation.split(""" """ ) # word tokenization
return len([word for word in tokenize_document if word.lower() == term.lower()] )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> tuple[int, int]:
snake_case__ : Dict = corpus.lower().translate(
str.maketrans("""""" , """""" , string.punctuation ) ) # strip all punctuation and replace it with ''
snake_case__ : Any = corpus_without_punctuation.split("""\n""" )
snake_case__ : int = term.lower()
return (len([doc for doc in docs if term in doc] ), len(_lowerCAmelCase ))
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> float:
if smoothing:
if n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(1 + logaa(n / (1 + df) ) , 3 )
if df == 0:
raise ZeroDivisionError("""df must be > 0""" )
elif n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(logaa(n / df ) , 3 )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> float:
return round(tf * idf , 3 )
| 35
| 0
|
import os
from shutil import copyfile
from typing import List, Optional, Tuple
from tokenizers import processors
from ...tokenization_utils import AddedToken, BatchEncoding
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import is_sentencepiece_available, logging
if is_sentencepiece_available():
from .tokenization_nllb import NllbTokenizer
else:
a : List[Any] = None
a : Tuple = logging.get_logger(__name__)
a : Tuple = {'vocab_file': 'sentencepiece.bpe.model', 'tokenizer_file': 'tokenizer.json'}
a : Dict = {
'vocab_file': {
'facebook/nllb-200-distilled-600M': (
'https://huggingface.co/facebook/nllb-200-distilled-600M/resolve/main/sentencepiece.bpe.model'
),
},
'tokenizer_file': {
'facebook/nllb-200-distilled-600M': (
'https://huggingface.co/facebook/nllb-200-distilled-600M/resolve/main/tokenizer.json'
),
},
}
a : Union[str, Any] = {
'facebook/nllb-large-en-ro': 1_024,
'facebook/nllb-200-distilled-600M': 1_024,
}
# fmt: off
a : Optional[int] = ['ace_Arab', 'ace_Latn', 'acm_Arab', 'acq_Arab', 'aeb_Arab', 'afr_Latn', 'ajp_Arab', 'aka_Latn', 'amh_Ethi', 'apc_Arab', 'arb_Arab', 'ars_Arab', 'ary_Arab', 'arz_Arab', 'asm_Beng', 'ast_Latn', 'awa_Deva', 'ayr_Latn', 'azb_Arab', 'azj_Latn', 'bak_Cyrl', 'bam_Latn', 'ban_Latn', 'bel_Cyrl', 'bem_Latn', 'ben_Beng', 'bho_Deva', 'bjn_Arab', 'bjn_Latn', 'bod_Tibt', 'bos_Latn', 'bug_Latn', 'bul_Cyrl', 'cat_Latn', 'ceb_Latn', 'ces_Latn', 'cjk_Latn', 'ckb_Arab', 'crh_Latn', 'cym_Latn', 'dan_Latn', 'deu_Latn', 'dik_Latn', 'dyu_Latn', 'dzo_Tibt', 'ell_Grek', 'eng_Latn', 'epo_Latn', 'est_Latn', 'eus_Latn', 'ewe_Latn', 'fao_Latn', 'pes_Arab', 'fij_Latn', 'fin_Latn', 'fon_Latn', 'fra_Latn', 'fur_Latn', 'fuv_Latn', 'gla_Latn', 'gle_Latn', 'glg_Latn', 'grn_Latn', 'guj_Gujr', 'hat_Latn', 'hau_Latn', 'heb_Hebr', 'hin_Deva', 'hne_Deva', 'hrv_Latn', 'hun_Latn', 'hye_Armn', 'ibo_Latn', 'ilo_Latn', 'ind_Latn', 'isl_Latn', 'ita_Latn', 'jav_Latn', 'jpn_Jpan', 'kab_Latn', 'kac_Latn', 'kam_Latn', 'kan_Knda', 'kas_Arab', 'kas_Deva', 'kat_Geor', 'knc_Arab', 'knc_Latn', 'kaz_Cyrl', 'kbp_Latn', 'kea_Latn', 'khm_Khmr', 'kik_Latn', 'kin_Latn', 'kir_Cyrl', 'kmb_Latn', 'kon_Latn', 'kor_Hang', 'kmr_Latn', 'lao_Laoo', 'lvs_Latn', 'lij_Latn', 'lim_Latn', 'lin_Latn', 'lit_Latn', 'lmo_Latn', 'ltg_Latn', 'ltz_Latn', 'lua_Latn', 'lug_Latn', 'luo_Latn', 'lus_Latn', 'mag_Deva', 'mai_Deva', 'mal_Mlym', 'mar_Deva', 'min_Latn', 'mkd_Cyrl', 'plt_Latn', 'mlt_Latn', 'mni_Beng', 'khk_Cyrl', 'mos_Latn', 'mri_Latn', 'zsm_Latn', 'mya_Mymr', 'nld_Latn', 'nno_Latn', 'nob_Latn', 'npi_Deva', 'nso_Latn', 'nus_Latn', 'nya_Latn', 'oci_Latn', 'gaz_Latn', 'ory_Orya', 'pag_Latn', 'pan_Guru', 'pap_Latn', 'pol_Latn', 'por_Latn', 'prs_Arab', 'pbt_Arab', 'quy_Latn', 'ron_Latn', 'run_Latn', 'rus_Cyrl', 'sag_Latn', 'san_Deva', 'sat_Beng', 'scn_Latn', 'shn_Mymr', 'sin_Sinh', 'slk_Latn', 'slv_Latn', 'smo_Latn', 'sna_Latn', 'snd_Arab', 'som_Latn', 'sot_Latn', 'spa_Latn', 'als_Latn', 'srd_Latn', 'srp_Cyrl', 'ssw_Latn', 'sun_Latn', 'swe_Latn', 'swh_Latn', 'szl_Latn', 'tam_Taml', 'tat_Cyrl', 'tel_Telu', 'tgk_Cyrl', 'tgl_Latn', 'tha_Thai', 'tir_Ethi', 'taq_Latn', 'taq_Tfng', 'tpi_Latn', 'tsn_Latn', 'tso_Latn', 'tuk_Latn', 'tum_Latn', 'tur_Latn', 'twi_Latn', 'tzm_Tfng', 'uig_Arab', 'ukr_Cyrl', 'umb_Latn', 'urd_Arab', 'uzn_Latn', 'vec_Latn', 'vie_Latn', 'war_Latn', 'wol_Latn', 'xho_Latn', 'ydd_Hebr', 'yor_Latn', 'yue_Hant', 'zho_Hans', 'zho_Hant', 'zul_Latn']
class _a ( _a ):
A = VOCAB_FILES_NAMES
A = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
A = PRETRAINED_VOCAB_FILES_MAP
A = ['''input_ids''', '''attention_mask''']
A = NllbTokenizer
A = []
A = []
def __init__(self, SCREAMING_SNAKE_CASE_=None, SCREAMING_SNAKE_CASE_=None, SCREAMING_SNAKE_CASE_="<s>", SCREAMING_SNAKE_CASE_="</s>", SCREAMING_SNAKE_CASE_="</s>", SCREAMING_SNAKE_CASE_="<s>", SCREAMING_SNAKE_CASE_="<unk>", SCREAMING_SNAKE_CASE_="<pad>", SCREAMING_SNAKE_CASE_="<mask>", SCREAMING_SNAKE_CASE_=None, SCREAMING_SNAKE_CASE_=None, SCREAMING_SNAKE_CASE_=None, SCREAMING_SNAKE_CASE_=False, **SCREAMING_SNAKE_CASE_, ) -> Optional[Any]:
# Mask token behave like a normal word, i.e. include the space before it
UpperCAmelCase_: Any = AddedToken(snake_case_, lstrip=snake_case_, rstrip=snake_case_ ) if isinstance(snake_case_, snake_case_ ) else mask_token
UpperCAmelCase_: Union[str, Any] = legacy_behaviour
super().__init__(
vocab_file=snake_case_, tokenizer_file=snake_case_, bos_token=snake_case_, eos_token=snake_case_, sep_token=snake_case_, cls_token=snake_case_, unk_token=snake_case_, pad_token=snake_case_, mask_token=snake_case_, src_lang=snake_case_, tgt_lang=snake_case_, additional_special_tokens=snake_case_, legacy_behaviour=snake_case_, **snake_case_, )
UpperCAmelCase_: Union[str, Any] = vocab_file
UpperCAmelCase_: Optional[int] = False if not self.vocab_file else True
UpperCAmelCase_: Tuple = FAIRSEQ_LANGUAGE_CODES.copy()
if additional_special_tokens is not None:
# Only add those special tokens if they are not already there.
_additional_special_tokens.extend(
[t for t in additional_special_tokens if t not in _additional_special_tokens] )
self.add_special_tokens({"""additional_special_tokens""": _additional_special_tokens} )
UpperCAmelCase_: Optional[Any] = {
lang_code: self.convert_tokens_to_ids(snake_case_ ) for lang_code in FAIRSEQ_LANGUAGE_CODES
}
UpperCAmelCase_: Tuple = src_lang if src_lang is not None else """eng_Latn"""
UpperCAmelCase_: Any = self.convert_tokens_to_ids(self._src_lang )
UpperCAmelCase_: Optional[Any] = tgt_lang
self.set_src_lang_special_tokens(self._src_lang )
@property
def __snake_case (self ) -> Tuple:
return self._src_lang
@src_lang.setter
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Any:
UpperCAmelCase_: int = new_src_lang
self.set_src_lang_special_tokens(self._src_lang )
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_ = None ) -> Any:
if token_ids_a is None:
return self.prefix_tokens + token_ids_a + self.suffix_tokens
# We don't expect to process pairs, but leave the pair logic for API consistency
return self.prefix_tokens + token_ids_a + token_ids_a + self.suffix_tokens
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_ = None ) -> Optional[int]:
UpperCAmelCase_: Tuple = [self.sep_token_id]
UpperCAmelCase_: Optional[Any] = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep + sep + token_ids_a + sep ) * [0]
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_, **SCREAMING_SNAKE_CASE_ ) -> Any:
if src_lang is None or tgt_lang is None:
raise ValueError("""Translation requires a `src_lang` and a `tgt_lang` for this model""" )
UpperCAmelCase_: Dict = src_lang
UpperCAmelCase_: int = self(snake_case_, add_special_tokens=snake_case_, return_tensors=snake_case_, **snake_case_ )
UpperCAmelCase_: int = self.convert_tokens_to_ids(snake_case_ )
UpperCAmelCase_: Dict = tgt_lang_id
return inputs
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_ = "eng_Latn", SCREAMING_SNAKE_CASE_ = None, SCREAMING_SNAKE_CASE_ = "fra_Latn", **SCREAMING_SNAKE_CASE_, ) -> Optional[int]:
UpperCAmelCase_: Dict = src_lang
UpperCAmelCase_: Dict = tgt_lang
return super().prepare_seqaseq_batch(snake_case_, snake_case_, **snake_case_ )
def __snake_case (self ) -> List[Any]:
return self.set_src_lang_special_tokens(self.src_lang )
def __snake_case (self ) -> Union[str, Any]:
return self.set_tgt_lang_special_tokens(self.tgt_lang )
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> int:
UpperCAmelCase_: List[Any] = self.convert_tokens_to_ids(snake_case_ )
if self.legacy_behaviour:
UpperCAmelCase_: Any = []
UpperCAmelCase_: Optional[int] = [self.eos_token_id, self.cur_lang_code]
else:
UpperCAmelCase_: Optional[int] = [self.cur_lang_code]
UpperCAmelCase_: Optional[Any] = [self.eos_token_id]
UpperCAmelCase_: Dict = self.convert_ids_to_tokens(self.prefix_tokens )
UpperCAmelCase_: Union[str, Any] = self.convert_ids_to_tokens(self.suffix_tokens )
UpperCAmelCase_: Dict = processors.TemplateProcessing(
single=prefix_tokens_str + ["""$A"""] + suffix_tokens_str, pair=prefix_tokens_str + ["""$A""", """$B"""] + suffix_tokens_str, special_tokens=list(zip(prefix_tokens_str + suffix_tokens_str, self.prefix_tokens + self.suffix_tokens ) ), )
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Tuple:
UpperCAmelCase_: str = self.convert_tokens_to_ids(snake_case_ )
if self.legacy_behaviour:
UpperCAmelCase_: Union[str, Any] = []
UpperCAmelCase_: int = [self.eos_token_id, self.cur_lang_code]
else:
UpperCAmelCase_: Dict = [self.cur_lang_code]
UpperCAmelCase_: Union[str, Any] = [self.eos_token_id]
UpperCAmelCase_: Any = self.convert_ids_to_tokens(self.prefix_tokens )
UpperCAmelCase_: Tuple = self.convert_ids_to_tokens(self.suffix_tokens )
UpperCAmelCase_: Optional[int] = processors.TemplateProcessing(
single=prefix_tokens_str + ["""$A"""] + suffix_tokens_str, pair=prefix_tokens_str + ["""$A""", """$B"""] + suffix_tokens_str, special_tokens=list(zip(prefix_tokens_str + suffix_tokens_str, self.prefix_tokens + self.suffix_tokens ) ), )
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_ = None ) -> Any:
if not self.can_save_slow_tokenizer:
raise ValueError(
"""Your fast tokenizer does not have the necessary information to save the vocabulary for a slow """
"""tokenizer.""" )
if not os.path.isdir(snake_case_ ):
logger.error(f'Vocabulary path ({save_directory}) should be a directory.' )
return
UpperCAmelCase_: List[Any] = os.path.join(
snake_case_, (filename_prefix + """-""" if filename_prefix else """""") + VOCAB_FILES_NAMES["""vocab_file"""] )
if os.path.abspath(self.vocab_file ) != os.path.abspath(snake_case_ ):
copyfile(self.vocab_file, snake_case_ )
return (out_vocab_file,)
| 147
|
'''simple docstring'''
from __future__ import annotations
import inspect
import unittest
import numpy as np
from transformers import ResNetConfig
from transformers.testing_utils import require_tf, require_vision, slow
from transformers.utils import cached_property, is_tf_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_tf_common import TFModelTesterMixin, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_tf_available():
import tensorflow as tf
from transformers import TFResNetForImageClassification, TFResNetModel
from transformers.models.resnet.modeling_tf_resnet import TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class UpperCAmelCase_ :
"""simple docstring"""
def __init__( self : int , snake_case_ : Tuple , snake_case_ : List[str]=3 , snake_case_ : Tuple=32 , snake_case_ : List[Any]=3 , snake_case_ : List[str]=10 , snake_case_ : List[str]=[10, 20, 30, 40] , snake_case_ : Tuple=[1, 1, 2, 1] , snake_case_ : Tuple=True , snake_case_ : str=True , snake_case_ : int="relu" , snake_case_ : List[Any]=3 , snake_case_ : str=None , ):
snake_case__ : List[Any] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : int = image_size
snake_case__ : List[Any] = num_channels
snake_case__ : Optional[Any] = embeddings_size
snake_case__ : Optional[int] = hidden_sizes
snake_case__ : Tuple = depths
snake_case__ : Any = is_training
snake_case__ : Optional[int] = use_labels
snake_case__ : Optional[int] = hidden_act
snake_case__ : Optional[int] = num_labels
snake_case__ : int = scope
snake_case__ : Tuple = len(snake_case_ )
def lowerCamelCase ( self : Any ):
snake_case__ : Union[str, Any] = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : Union[str, Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size] , self.num_labels )
snake_case__ : List[str] = self.get_config()
return config, pixel_values, labels
def lowerCamelCase ( self : int ):
return ResNetConfig(
num_channels=self.num_channels , embeddings_size=self.embeddings_size , hidden_sizes=self.hidden_sizes , depths=self.depths , hidden_act=self.hidden_act , num_labels=self.num_labels , image_size=self.image_size , )
def lowerCamelCase ( self : Tuple , snake_case_ : Tuple , snake_case_ : List[Any] , snake_case_ : Optional[int] ):
snake_case__ : Optional[Any] = TFResNetModel(config=snake_case_ )
snake_case__ : int = model(snake_case_ )
# expected last hidden states: B, C, H // 32, W // 32
self.parent.assertEqual(
result.last_hidden_state.shape , (self.batch_size, self.hidden_sizes[-1], self.image_size // 32, self.image_size // 32) , )
def lowerCamelCase ( self : List[str] , snake_case_ : List[str] , snake_case_ : str , snake_case_ : Union[str, Any] ):
snake_case__ : str = self.num_labels
snake_case__ : Optional[int] = TFResNetForImageClassification(snake_case_ )
snake_case__ : Tuple = model(snake_case_ , labels=snake_case_ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) )
def lowerCamelCase ( self : Tuple ):
snake_case__ : List[Any] = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : str = config_and_inputs
snake_case__ : int = {"""pixel_values""": pixel_values}
return config, inputs_dict
@require_tf
class UpperCAmelCase_ ( _a , _a , unittest.TestCase ):
"""simple docstring"""
lowercase = (TFResNetModel, TFResNetForImageClassification) if is_tf_available() else ()
lowercase = (
{"feature-extraction": TFResNetModel, "image-classification": TFResNetForImageClassification}
if is_tf_available()
else {}
)
lowercase = False
lowercase = False
lowercase = False
lowercase = False
lowercase = False
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Tuple = TFResNetModelTester(self )
snake_case__ : List[str] = ConfigTester(self , config_class=snake_case_ , has_text_modality=snake_case_ )
def lowerCamelCase ( self : Dict ):
self.create_and_test_config_common_properties()
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowerCamelCase ( self : str ):
return
@unittest.skip(reason="""ResNet does not use inputs_embeds""" )
def lowerCamelCase ( self : int ):
pass
@unittest.skip(reason="""ResNet does not support input and output embeddings""" )
def lowerCamelCase ( self : List[Any] ):
pass
def lowerCamelCase ( self : List[Any] ):
snake_case__ , snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Dict = model_class(snake_case_ )
snake_case__ : Optional[Any] = inspect.signature(model.call )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Union[str, Any] = [*signature.parameters.keys()]
snake_case__ : Optional[int] = ["""pixel_values"""]
self.assertListEqual(arg_names[:1] , snake_case_ )
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*snake_case_ )
def lowerCamelCase ( self : List[str] ):
def check_hidden_states_output(snake_case_ : Any , snake_case_ : Any , snake_case_ : List[str] ):
snake_case__ : List[Any] = model_class(snake_case_ )
snake_case__ : Dict = model(**self._prepare_for_class(snake_case_ , snake_case_ ) )
snake_case__ : str = outputs.encoder_hidden_states if config.is_encoder_decoder else outputs.hidden_states
snake_case__ : List[Any] = self.model_tester.num_stages
self.assertEqual(len(snake_case_ ) , expected_num_stages + 1 )
# ResNet's feature maps are of shape (batch_size, num_channels, height, width)
self.assertListEqual(
list(hidden_states[0].shape[-2:] ) , [self.model_tester.image_size // 4, self.model_tester.image_size // 4] , )
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = ["""basic""", """bottleneck"""]
for model_class in self.all_model_classes:
for layer_type in layers_type:
snake_case__ : Dict = layer_type
snake_case__ : Optional[int] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[Any] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Tuple = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*snake_case_ )
@slow
def lowerCamelCase ( self : Optional[Any] ):
for model_name in TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : str = TFResNetModel.from_pretrained(snake_case_ )
self.assertIsNotNone(snake_case_ )
def __snake_case( ) -> Optional[int]:
snake_case__ : Optional[Any] = Image.open("""./tests/fixtures/tests_samples/COCO/000000039769.png""" )
return image
@require_tf
@require_vision
class UpperCAmelCase_ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowerCamelCase ( self : List[Any] ):
return (
AutoImageProcessor.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
if is_vision_available()
else None
)
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : List[str] = TFResNetForImageClassification.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
snake_case__ : List[Any] = self.default_image_processor
snake_case__ : List[Any] = prepare_img()
snake_case__ : List[str] = image_processor(images=snake_case_ , return_tensors="""tf""" )
# forward pass
snake_case__ : Optional[Any] = model(**snake_case_ )
# verify the logits
snake_case__ : Union[str, Any] = tf.TensorShape((1, 1_000) )
self.assertEqual(outputs.logits.shape , snake_case_ )
snake_case__ : List[str] = tf.constant([-11.1069, -9.7877, -8.3777] )
self.assertTrue(np.allclose(outputs.logits[0, :3].numpy() , snake_case_ , atol=1E-4 ) )
| 35
| 0
|
from .pipelines import DiffusionPipeline, ImagePipelineOutput # noqa: F401
from .utils import deprecate
deprecate(
'pipelines_utils',
'0.22.0',
'Importing `DiffusionPipeline` or `ImagePipelineOutput` from diffusers.pipeline_utils is deprecated. Please import from diffusers.pipelines.pipeline_utils instead.',
standard_warn=False,
stacklevel=3,
)
| 88
|
'''simple docstring'''
from ...configuration_utils import PretrainedConfig
from ...utils import logging
__a = logging.get_logger(__name__)
__a = {
"vinvino02/glpn-kitti": "https://huggingface.co/vinvino02/glpn-kitti/resolve/main/config.json",
# See all GLPN models at https://huggingface.co/models?filter=glpn
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = "glpn"
def __init__( self : Optional[Any] , snake_case_ : List[str]=3 , snake_case_ : Dict=4 , snake_case_ : List[Any]=[2, 2, 2, 2] , snake_case_ : int=[8, 4, 2, 1] , snake_case_ : List[str]=[32, 64, 160, 256] , snake_case_ : Tuple=[7, 3, 3, 3] , snake_case_ : List[Any]=[4, 2, 2, 2] , snake_case_ : Tuple=[1, 2, 5, 8] , snake_case_ : List[str]=[4, 4, 4, 4] , snake_case_ : Optional[int]="gelu" , snake_case_ : Dict=0.0 , snake_case_ : Union[str, Any]=0.0 , snake_case_ : List[Any]=0.02 , snake_case_ : Tuple=0.1 , snake_case_ : Any=1E-6 , snake_case_ : Dict=64 , snake_case_ : Tuple=10 , snake_case_ : List[Any]=-1 , **snake_case_ : Optional[Any] , ):
super().__init__(**snake_case_ )
snake_case__ : Optional[Any] = num_channels
snake_case__ : Dict = num_encoder_blocks
snake_case__ : Tuple = depths
snake_case__ : Union[str, Any] = sr_ratios
snake_case__ : Tuple = hidden_sizes
snake_case__ : Optional[Any] = patch_sizes
snake_case__ : int = strides
snake_case__ : List[Any] = mlp_ratios
snake_case__ : Optional[int] = num_attention_heads
snake_case__ : Dict = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : Optional[Any] = attention_probs_dropout_prob
snake_case__ : str = initializer_range
snake_case__ : List[str] = drop_path_rate
snake_case__ : int = layer_norm_eps
snake_case__ : Tuple = decoder_hidden_size
snake_case__ : List[Any] = max_depth
snake_case__ : Dict = head_in_index
| 35
| 0
|
'''simple docstring'''
from packaging import version
from .import_utils import is_accelerate_available
if is_accelerate_available():
import accelerate
def _lowerCAmelCase ( __snake_case : List[str] ) -> Tuple:
if not is_accelerate_available():
return method
__A : List[Any] = version.parse(accelerate.__version__ ).base_version
if version.parse(_lowerCAmelCase ) < version.parse('0.17.0' ):
return method
def wrapper(self : List[str] , *__snake_case : int , **__snake_case : List[Any] ):
if hasattr(self , '_hf_hook' ) and hasattr(self._hf_hook , 'pre_forward' ):
self._hf_hook.pre_forward(self )
return method(self , *_lowerCAmelCase , **_lowerCAmelCase )
return wrapper
| 190
|
'''simple docstring'''
import json
from typing import List, Optional, Tuple
from tokenizers import normalizers
from tokenizers.pre_tokenizers import BertPreTokenizer, PreTokenizer
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_roformer import RoFormerTokenizer
from .tokenization_utils import JiebaPreTokenizer
__a = logging.get_logger(__name__)
__a = {"vocab_file": "vocab.txt", "tokenizer_file": "tokenizer.json"}
__a = {
"vocab_file": {
"junnyu/roformer_chinese_small": "https://huggingface.co/junnyu/roformer_chinese_small/resolve/main/vocab.txt",
"junnyu/roformer_chinese_base": "https://huggingface.co/junnyu/roformer_chinese_base/resolve/main/vocab.txt",
"junnyu/roformer_chinese_char_small": (
"https://huggingface.co/junnyu/roformer_chinese_char_small/resolve/main/vocab.txt"
),
"junnyu/roformer_chinese_char_base": (
"https://huggingface.co/junnyu/roformer_chinese_char_base/resolve/main/vocab.txt"
),
"junnyu/roformer_small_discriminator": (
"https://huggingface.co/junnyu/roformer_small_discriminator/resolve/main/vocab.txt"
),
"junnyu/roformer_small_generator": (
"https://huggingface.co/junnyu/roformer_small_generator/resolve/main/vocab.txt"
),
}
}
__a = {
"junnyu/roformer_chinese_small": 1536,
"junnyu/roformer_chinese_base": 1536,
"junnyu/roformer_chinese_char_small": 512,
"junnyu/roformer_chinese_char_base": 512,
"junnyu/roformer_small_discriminator": 128,
"junnyu/roformer_small_generator": 128,
}
__a = {
"junnyu/roformer_chinese_small": {"do_lower_case": True},
"junnyu/roformer_chinese_base": {"do_lower_case": True},
"junnyu/roformer_chinese_char_small": {"do_lower_case": True},
"junnyu/roformer_chinese_char_base": {"do_lower_case": True},
"junnyu/roformer_small_discriminator": {"do_lower_case": True},
"junnyu/roformer_small_generator": {"do_lower_case": True},
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = VOCAB_FILES_NAMES
lowercase = PRETRAINED_VOCAB_FILES_MAP
lowercase = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
lowercase = PRETRAINED_INIT_CONFIGURATION
lowercase = RoFormerTokenizer
def __init__( self : List[Any] , snake_case_ : List[str]=None , snake_case_ : Dict=None , snake_case_ : Any=True , snake_case_ : str="[UNK]" , snake_case_ : List[str]="[SEP]" , snake_case_ : Optional[Any]="[PAD]" , snake_case_ : Union[str, Any]="[CLS]" , snake_case_ : Union[str, Any]="[MASK]" , snake_case_ : List[Any]=True , snake_case_ : Optional[Any]=None , **snake_case_ : Tuple , ):
super().__init__(
snake_case_ , tokenizer_file=snake_case_ , do_lower_case=snake_case_ , unk_token=snake_case_ , sep_token=snake_case_ , pad_token=snake_case_ , cls_token=snake_case_ , mask_token=snake_case_ , tokenize_chinese_chars=snake_case_ , strip_accents=snake_case_ , **snake_case_ , )
snake_case__ : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() )
if (
pre_tok_state.get("""lowercase""" , snake_case_ ) != do_lower_case
or pre_tok_state.get("""strip_accents""" , snake_case_ ) != strip_accents
):
snake_case__ : str = getattr(snake_case_ , pre_tok_state.pop("""type""" ) )
snake_case__ : Optional[int] = do_lower_case
snake_case__ : Union[str, Any] = strip_accents
snake_case__ : Union[str, Any] = pre_tok_class(**snake_case_ )
snake_case__ : str = do_lower_case
def __getstate__( self : int ):
snake_case__ : List[Any] = self.__dict__.copy()
snake_case__ : str = BertPreTokenizer()
return state
def __setstate__( self : Dict , snake_case_ : Dict ):
snake_case__ : List[Any] = d
snake_case__ : Union[str, Any] = self.__dict__["""_tokenizer"""].get_vocab()
snake_case__ : List[Any] = PreTokenizer.custom(JiebaPreTokenizer(snake_case_ ) )
def lowerCamelCase ( self : str , snake_case_ : Optional[Any] , snake_case_ : List[str]=None ):
snake_case__ : str = [self.cls_token_id] + token_ids_a + [self.sep_token_id]
if token_ids_a:
output += token_ids_a + [self.sep_token_id]
return output
def lowerCamelCase ( self : str , snake_case_ : List[int] , snake_case_ : Optional[List[int]] = None ):
snake_case__ : int = [self.sep_token_id]
snake_case__ : str = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowerCamelCase ( self : Dict , snake_case_ : str , snake_case_ : Optional[str] = None ):
snake_case__ : Union[str, Any] = self._tokenizer.model.save(snake_case_ , name=snake_case_ )
return tuple(snake_case_ )
def lowerCamelCase ( self : Dict , snake_case_ : List[str] , snake_case_ : Tuple=None , snake_case_ : List[str]=None , snake_case_ : Union[str, Any]=False , **snake_case_ : Tuple , ):
snake_case__ : Optional[Any] = BertPreTokenizer()
return super().save_pretrained(snake_case_ , snake_case_ , snake_case_ , snake_case_ , **snake_case_ )
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|
import itertools
import math
def snake_case_ ( snake_case ) -> bool:
if 1 < number < 4:
# 2 and 3 are primes
return True
elif number < 2 or number % 2 == 0 or number % 3 == 0:
# Negatives, 0, 1, all even numbers, all multiples of 3 are not primes
return False
# All primes number are in format of 6k +/- 1
for i in range(5 , int(math.sqrt(_lowerCAmelCase ) + 1 ) , 6 ):
if number % i == 0 or number % (i + 2) == 0:
return False
return True
def snake_case_ ( ) -> str:
lowercase__: Optional[Any] = 2
while True:
if is_prime(_lowerCAmelCase ):
yield num
num += 1
def snake_case_ ( snake_case = 1_00_01 ) -> int:
return next(itertools.islice(prime_generator() , nth - 1 , _lowerCAmelCase ) )
if __name__ == "__main__":
print(F'''{solution() = }''')
| 196
|
'''simple docstring'''
import os
import time
import pytest
from datasets.utils.filelock import FileLock, Timeout
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : int = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : Dict = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : List[str] = 0.01
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
snake_case__ : str = time.time()
locka.acquire(_lowerCAmelCase )
assert time.time() - _start > timeout
def __snake_case( _lowerCAmelCase ) -> Tuple:
snake_case__ : Dict = """a""" * 1_000 + """.lock"""
snake_case__ : int = FileLock(str(tmpdir / filename ) )
assert locka._lock_file.endswith(""".lock""" )
assert not locka._lock_file.endswith(_lowerCAmelCase )
assert len(os.path.basename(locka._lock_file ) ) <= 255
snake_case__ : Dict = FileLock(tmpdir / filename )
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
locka.acquire(0 )
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|
from collections.abc import Sequence
def lowercase_ ( _A : str , _A : Tuple = False ):
"""simple docstring"""
if not arr:
return 0
lowerCamelCase__ : Optional[Any] = 0 if allow_empty_subarrays else float("-inf" )
lowerCamelCase__ : List[str] = 0.0
for num in arr:
lowerCamelCase__ : Any = max(0 if allow_empty_subarrays else num , curr_sum + num )
lowerCamelCase__ : Optional[Any] = max(_lowerCAmelCase , _lowerCAmelCase )
return max_sum
if __name__ == "__main__":
from doctest import testmod
testmod()
A : Optional[Any] = [-2, 1, -3, 4, -1, 2, 1, -5, 4]
print(f'{max_subarray_sum(nums) = }')
| 184
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> float:
snake_case__ : str = (num_of_terms / 2) * (2 * first_term + (num_of_terms - 1) * common_diff)
# formula for sum of series
return total
def __snake_case( ) -> List[str]:
print(sum_of_series(1 , 1 , 10 ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
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|
'''simple docstring'''
from __future__ import annotations
import unittest
from transformers import AutoTokenizer, MBartConfig, is_tf_available
from transformers.testing_utils import require_sentencepiece, require_tf, require_tokenizers, slow
from transformers.utils import cached_property
from ...test_configuration_common import ConfigTester
from ...test_modeling_tf_common import TFModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_tf_available():
import tensorflow as tf
from transformers import TFAutoModelForSeqaSeqLM, TFMBartForConditionalGeneration, TFMBartModel
@require_tf
class __A :
'''simple docstring'''
__lowerCamelCase : Tuple = MBartConfig
__lowerCamelCase : Optional[int] = {}
__lowerCamelCase : Any = 'gelu'
def __init__(self , A , A=13 , A=7 , A=True , A=False , A=99 , A=32 , A=2 , A=4 , A=37 , A=0.1 , A=0.1 , A=20 , A=2 , A=1 , A=0 , ) -> Tuple:
"""simple docstring"""
_a = parent
_a = batch_size
_a = seq_length
_a = is_training
_a = use_labels
_a = vocab_size
_a = hidden_size
_a = num_hidden_layers
_a = num_attention_heads
_a = intermediate_size
_a = hidden_dropout_prob
_a = attention_probs_dropout_prob
_a = max_position_embeddings
_a = eos_token_id
_a = pad_token_id
_a = bos_token_id
def a__ (self ) -> Optional[int]:
"""simple docstring"""
_a = ids_tensor([self.batch_size, self.seq_length - 1] , self.vocab_size )
_a = tf.expand_dims(tf.constant([self.eos_token_id] * self.batch_size ) , 1 )
_a = tf.concat([input_ids, eos_tensor] , axis=1 )
_a = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size )
_a = self.config_cls(
vocab_size=self.vocab_size , d_model=self.hidden_size , encoder_layers=self.num_hidden_layers , decoder_layers=self.num_hidden_layers , encoder_attention_heads=self.num_attention_heads , decoder_attention_heads=self.num_attention_heads , encoder_ffn_dim=self.intermediate_size , decoder_ffn_dim=self.intermediate_size , dropout=self.hidden_dropout_prob , attention_dropout=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , eos_token_ids=[2] , bos_token_id=self.bos_token_id , pad_token_id=self.pad_token_id , decoder_start_token_id=self.pad_token_id , **self.config_updates , )
_a = prepare_mbart_inputs_dict(snake_case_ , snake_case_ , snake_case_ )
return config, inputs_dict
def a__ (self , A , A ) -> List[str]:
"""simple docstring"""
_a = TFMBartModel(config=snake_case_ ).get_decoder()
_a = inputs_dict["""input_ids"""]
_a = input_ids[:1, :]
_a = inputs_dict["""attention_mask"""][:1, :]
_a = inputs_dict["""head_mask"""]
_a = 1
# first forward pass
_a = model(snake_case_ , attention_mask=snake_case_ , head_mask=snake_case_ , use_cache=snake_case_ )
_a = outputs.to_tuple()
_a = past_key_values[1]
def lowerCAmelCase (__A , __A , __A , __A=None , __A=None , __A=None , __A=None , __A=None , ):
"""simple docstring"""
if attention_mask is None:
_a = tf.cast(tf.math.not_equal(_lowerCAmelCase , config.pad_token_id) , tf.inta)
if decoder_attention_mask is None:
_a = tf.concat(
[
tf.ones(decoder_input_ids[:, :1].shape , dtype=tf.inta),
tf.cast(tf.math.not_equal(decoder_input_ids[:, 1:] , config.pad_token_id) , tf.inta),
] , axis=-1 , )
if head_mask is None:
_a = tf.ones((config.encoder_layers, config.encoder_attention_heads))
if decoder_head_mask is None:
_a = tf.ones((config.decoder_layers, config.decoder_attention_heads))
if cross_attn_head_mask is None:
_a = tf.ones((config.decoder_layers, config.decoder_attention_heads))
return {
"input_ids": input_ids,
"decoder_input_ids": decoder_input_ids,
"attention_mask": attention_mask,
"decoder_attention_mask": decoder_attention_mask,
"head_mask": head_mask,
"decoder_head_mask": decoder_head_mask,
"cross_attn_head_mask": cross_attn_head_mask,
}
@require_tf
class __A ( _a , _a , unittest.TestCase ):
'''simple docstring'''
__lowerCamelCase : int = (TFMBartForConditionalGeneration, TFMBartModel) if is_tf_available() else ()
__lowerCamelCase : Any = (TFMBartForConditionalGeneration,) if is_tf_available() else ()
__lowerCamelCase : Tuple = (
{
'conversational': TFMBartForConditionalGeneration,
'feature-extraction': TFMBartModel,
'summarization': TFMBartForConditionalGeneration,
'text2text-generation': TFMBartForConditionalGeneration,
'translation': TFMBartForConditionalGeneration,
}
if is_tf_available()
else {}
)
__lowerCamelCase : Dict = True
__lowerCamelCase : Dict = False
__lowerCamelCase : Optional[Any] = False
def a__ (self , A , A , A , A , A ) -> List[str]:
"""simple docstring"""
if pipeline_test_casse_name != "FeatureExtractionPipelineTests":
# Exception encountered when calling layer '...'
return True
return False
def a__ (self ) -> int:
"""simple docstring"""
_a = TFMBartModelTester(self )
_a = ConfigTester(self , config_class=snake_case_ )
def a__ (self ) -> List[str]:
"""simple docstring"""
self.config_tester.run_common_tests()
def a__ (self ) -> str:
"""simple docstring"""
_a = self.model_tester.prepare_config_and_inputs_for_common()
self.model_tester.check_decoder_model_past_large_inputs(*snake_case_ )
@require_sentencepiece
@require_tokenizers
@require_tf
class __A ( unittest.TestCase ):
'''simple docstring'''
__lowerCamelCase : Any = [
' UN Chief Says There Is No Military Solution in Syria',
]
__lowerCamelCase : Optional[int] = [
'Şeful ONU declară că nu există o soluţie militară în Siria',
]
__lowerCamelCase : str = 'facebook/mbart-large-en-ro'
@cached_property
def a__ (self ) -> Tuple:
"""simple docstring"""
return AutoTokenizer.from_pretrained(self.model_name )
@cached_property
def a__ (self ) -> int:
"""simple docstring"""
_a = TFAutoModelForSeqaSeqLM.from_pretrained(self.model_name )
return model
def a__ (self , **A ) -> Dict:
"""simple docstring"""
_a = self.translate_src_text(**snake_case_ )
self.assertListEqual(self.expected_text , snake_case_ )
def a__ (self , **A ) -> Optional[int]:
"""simple docstring"""
_a = self.tokenizer(self.src_text , **snake_case_ , return_tensors='''tf''' )
_a = self.model.generate(
model_inputs.input_ids , attention_mask=model_inputs.attention_mask , num_beams=2 )
_a = self.tokenizer.batch_decode(snake_case_ , skip_special_tokens=snake_case_ )
return generated_words
@slow
def a__ (self ) -> Optional[int]:
"""simple docstring"""
self._assert_generated_batch_equal_expected()
| 211
|
'''simple docstring'''
__a = frozenset(
[
"prompt",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset([])
__a = frozenset(["image"])
__a = frozenset(
[
"image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image"])
__a = frozenset(
[
"prompt",
"image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "negative_prompt"])
__a = frozenset(
[
# Text guided image variation with an image mask
"prompt",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "mask_image", "negative_prompt"])
__a = frozenset(
[
# image variation with an image mask
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image", "mask_image"])
__a = frozenset(
[
"example_image",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["example_image", "image", "mask_image"])
__a = frozenset(["class_labels"])
__a = frozenset(["class_labels"])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(
[
"prompt",
"audio_length_in_s",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset(["input_tokens"])
__a = frozenset(["input_tokens"])
| 35
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|
import argparse
import json
from pathlib import Path
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import DeiTConfig, DeiTForImageClassificationWithTeacher, DeiTImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
lowercase_ = logging.get_logger(__name__)
def a ( A__ : Optional[Any] , A__ : int=False ) -> str:
"""simple docstring"""
_lowercase =[]
for i in range(config.num_hidden_layers ):
# encoder layers: output projection, 2 feedforward neural networks and 2 layernorms
rename_keys.append((F'''blocks.{i}.norm1.weight''', F'''deit.encoder.layer.{i}.layernorm_before.weight''') )
rename_keys.append((F'''blocks.{i}.norm1.bias''', F'''deit.encoder.layer.{i}.layernorm_before.bias''') )
rename_keys.append((F'''blocks.{i}.attn.proj.weight''', F'''deit.encoder.layer.{i}.attention.output.dense.weight''') )
rename_keys.append((F'''blocks.{i}.attn.proj.bias''', F'''deit.encoder.layer.{i}.attention.output.dense.bias''') )
rename_keys.append((F'''blocks.{i}.norm2.weight''', F'''deit.encoder.layer.{i}.layernorm_after.weight''') )
rename_keys.append((F'''blocks.{i}.norm2.bias''', F'''deit.encoder.layer.{i}.layernorm_after.bias''') )
rename_keys.append((F'''blocks.{i}.mlp.fc1.weight''', F'''deit.encoder.layer.{i}.intermediate.dense.weight''') )
rename_keys.append((F'''blocks.{i}.mlp.fc1.bias''', F'''deit.encoder.layer.{i}.intermediate.dense.bias''') )
rename_keys.append((F'''blocks.{i}.mlp.fc2.weight''', F'''deit.encoder.layer.{i}.output.dense.weight''') )
rename_keys.append((F'''blocks.{i}.mlp.fc2.bias''', F'''deit.encoder.layer.{i}.output.dense.bias''') )
# projection layer + position embeddings
rename_keys.extend(
[
('cls_token', 'deit.embeddings.cls_token'),
('dist_token', 'deit.embeddings.distillation_token'),
('patch_embed.proj.weight', 'deit.embeddings.patch_embeddings.projection.weight'),
('patch_embed.proj.bias', 'deit.embeddings.patch_embeddings.projection.bias'),
('pos_embed', 'deit.embeddings.position_embeddings'),
] )
if base_model:
# layernorm + pooler
rename_keys.extend(
[
('norm.weight', 'layernorm.weight'),
('norm.bias', 'layernorm.bias'),
('pre_logits.fc.weight', 'pooler.dense.weight'),
('pre_logits.fc.bias', 'pooler.dense.bias'),
] )
# if just the base model, we should remove "deit" from all keys that start with "deit"
_lowercase =[(pair[0], pair[1][4:]) if pair[1].startswith('deit' ) else pair for pair in rename_keys]
else:
# layernorm + classification heads
rename_keys.extend(
[
('norm.weight', 'deit.layernorm.weight'),
('norm.bias', 'deit.layernorm.bias'),
('head.weight', 'cls_classifier.weight'),
('head.bias', 'cls_classifier.bias'),
('head_dist.weight', 'distillation_classifier.weight'),
('head_dist.bias', 'distillation_classifier.bias'),
] )
return rename_keys
def a ( A__ : Optional[Any] , A__ : Any , A__ : Union[str, Any]=False ) -> Union[str, Any]:
"""simple docstring"""
for i in range(config.num_hidden_layers ):
if base_model:
_lowercase =""""""
else:
_lowercase ="""deit."""
# read in weights + bias of input projection layer (in timm, this is a single matrix + bias)
_lowercase =state_dict.pop(F'''blocks.{i}.attn.qkv.weight''' )
_lowercase =state_dict.pop(F'''blocks.{i}.attn.qkv.bias''' )
# next, add query, keys and values (in that order) to the state dict
_lowercase =in_proj_weight[
: config.hidden_size, :
]
_lowercase =in_proj_bias[: config.hidden_size]
_lowercase =in_proj_weight[
config.hidden_size : config.hidden_size * 2, :
]
_lowercase =in_proj_bias[
config.hidden_size : config.hidden_size * 2
]
_lowercase =in_proj_weight[
-config.hidden_size :, :
]
_lowercase =in_proj_bias[-config.hidden_size :]
def a ( A__ : Optional[int] , A__ : Any , A__ : Any ) -> int:
"""simple docstring"""
_lowercase =dct.pop(_lowerCAmelCase )
_lowercase =val
def a ( ) -> Tuple:
"""simple docstring"""
_lowercase ="""http://images.cocodataset.org/val2017/000000039769.jpg"""
_lowercase =Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
return im
@torch.no_grad()
def a ( A__ : Any , A__ : Optional[int] ) -> str:
"""simple docstring"""
_lowercase =DeiTConfig()
# all deit models have fine-tuned heads
_lowercase =False
# dataset (fine-tuned on ImageNet 2012), patch_size and image_size
_lowercase =1000
_lowercase ="""huggingface/label-files"""
_lowercase ="""imagenet-1k-id2label.json"""
_lowercase =json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type='dataset' ) , 'r' ) )
_lowercase ={int(_lowerCAmelCase ): v for k, v in idalabel.items()}
_lowercase =idalabel
_lowercase ={v: k for k, v in idalabel.items()}
_lowercase =int(deit_name[-6:-4] )
_lowercase =int(deit_name[-3:] )
# size of the architecture
if deit_name[9:].startswith('tiny' ):
_lowercase =192
_lowercase =768
_lowercase =12
_lowercase =3
elif deit_name[9:].startswith('small' ):
_lowercase =384
_lowercase =1536
_lowercase =12
_lowercase =6
if deit_name[9:].startswith('base' ):
pass
elif deit_name[4:].startswith('large' ):
_lowercase =1024
_lowercase =4096
_lowercase =24
_lowercase =16
# load original model from timm
_lowercase =timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
# load state_dict of original model, remove and rename some keys
_lowercase =timm_model.state_dict()
_lowercase =create_rename_keys(_lowerCAmelCase , _lowerCAmelCase )
for src, dest in rename_keys:
rename_key(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
read_in_q_k_v(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
# load HuggingFace model
_lowercase =DeiTForImageClassificationWithTeacher(_lowerCAmelCase ).eval()
model.load_state_dict(_lowerCAmelCase )
# Check outputs on an image, prepared by DeiTImageProcessor
_lowercase =int(
(256 / 224) * config.image_size ) # to maintain same ratio w.r.t. 224 images, see https://github.com/facebookresearch/deit/blob/ab5715372db8c6cad5740714b2216d55aeae052e/datasets.py#L103
_lowercase =DeiTImageProcessor(size=_lowerCAmelCase , crop_size=config.image_size )
_lowercase =image_processor(images=prepare_img() , return_tensors='pt' )
_lowercase =encoding["""pixel_values"""]
_lowercase =model(_lowerCAmelCase )
_lowercase =timm_model(_lowerCAmelCase )
assert timm_logits.shape == outputs.logits.shape
assert torch.allclose(_lowerCAmelCase , outputs.logits , atol=1e-3 )
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
print(F'''Saving model {deit_name} to {pytorch_dump_folder_path}''' )
model.save_pretrained(_lowerCAmelCase )
print(F'''Saving image processor to {pytorch_dump_folder_path}''' )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
lowercase_ = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
'--deit_name',
default='vit_deit_base_distilled_patch16_224',
type=str,
help='Name of the DeiT timm model you\'d like to convert.',
)
parser.add_argument(
'--pytorch_dump_folder_path', default=None, type=str, help='Path to the output PyTorch model directory.'
)
lowercase_ = parser.parse_args()
convert_deit_checkpoint(args.deit_name, args.pytorch_dump_folder_path)
| 205
|
'''simple docstring'''
import json
import os
import unittest
from transformers.models.gptsan_japanese.tokenization_gptsan_japanese import (
VOCAB_FILES_NAMES,
GPTSanJapaneseTokenizer,
)
from transformers.testing_utils import require_tokenizers, slow
from ...test_tokenization_common import TokenizerTesterMixin
@require_tokenizers
class UpperCAmelCase_ ( _a , unittest.TestCase ):
"""simple docstring"""
lowercase = GPTSanJapaneseTokenizer
lowercase = False
lowercase = {"do_clean_text": False, "add_prefix_space": False}
def lowerCamelCase ( self : str ):
super().setUp()
# fmt: off
snake_case__ : Optional[Any] = ["""こん""", """こんに""", """にちは""", """ばんは""", """世界,㔺界""", """、""", """。""", """<BR>""", """<SP>""", """<TAB>""", """<URL>""", """<EMAIL>""", """<TEL>""", """<DATE>""", """<PRICE>""", """<BLOCK>""", """<KIGOU>""", """<U2000U2BFF>""", """<|emoji1|>""", """<unk>""", """<|bagoftoken|>""", """<|endoftext|>"""]
# fmt: on
snake_case__ : int = {"""emoji""": {"""\ud83d\ude00""": """<|emoji1|>"""}, """emoji_inv""": {"""<|emoji1|>""": """\ud83d\ude00"""}} # 😀
snake_case__ : List[Any] = {"""unk_token""": """<unk>"""}
snake_case__ : Optional[Any] = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""vocab_file"""] )
snake_case__ : Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""emoji_file"""] )
with open(self.vocab_file , """w""" , encoding="""utf-8""" ) as vocab_writer:
vocab_writer.write("""""".join([x + """\n""" for x in vocab_tokens] ) )
with open(self.emoji_file , """w""" ) as emoji_writer:
emoji_writer.write(json.dumps(snake_case_ ) )
def lowerCamelCase ( self : Any , **snake_case_ : Union[str, Any] ):
kwargs.update(self.special_tokens_map )
return GPTSanJapaneseTokenizer.from_pretrained(self.tmpdirname , **snake_case_ )
def lowerCamelCase ( self : Any , snake_case_ : str ):
snake_case__ : Union[str, Any] = """こんにちは、世界。 \nこんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。 \nこんばんは、世界。😀"""
return input_text, output_text
def lowerCamelCase ( self : Any , snake_case_ : Dict ):
snake_case__ , snake_case__ : int = self.get_input_output_texts(snake_case_ )
snake_case__ : int = tokenizer.encode(snake_case_ , add_special_tokens=snake_case_ )
snake_case__ : List[str] = tokenizer.decode(snake_case_ , clean_up_tokenization_spaces=snake_case_ )
return text, ids
def lowerCamelCase ( self : Optional[Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Union[str, Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : List[str] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Dict ):
snake_case__ : Optional[Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : int = """こんにちは、世界。 こんばんは、㔺界。"""
snake_case__ : Optional[int] = ["""こん""", """にちは""", """、""", """世界""", """。""", """<SP>""", """こん""", """ばんは""", """、""", """㔺界""", """。"""]
snake_case__ : Dict = tokenizer.tokenize(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids without special tokens
snake_case__ : Union[str, Any] = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6]
snake_case__ : List[Any] = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids with special tokens
snake_case__ : Union[str, Any] = tokens + [tokenizer.unk_token]
snake_case__ : Dict = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6, 19]
snake_case__ : Any = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Union[str, Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : Union[str, Any] = """こんにちは、<|bagoftoken|>世界。こんばんは、<|bagoftoken|>㔺界。"""
snake_case__ : Optional[int] = """こんにちは、、、、世界。こんばんは、、、、世界。"""
snake_case__ : Any = tokenizer.encode(snake_case_ )
snake_case__ : int = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Tuple = """こんにちは、世界。"""
snake_case__ : Optional[Any] = """こんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。こんばんは、世界。😀"""
snake_case__ : Dict = tokenizer.encode(prefix_text + input_text )
snake_case__ : Dict = tokenizer.encode("""""" , prefix_text=prefix_text + input_text )
snake_case__ : int = tokenizer.encode(snake_case_ , prefix_text=snake_case_ )
snake_case__ : Optional[Any] = tokenizer.decode(snake_case_ )
snake_case__ : Union[str, Any] = tokenizer.decode(snake_case_ )
snake_case__ : str = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Dict = """こんにちは、世界。"""
snake_case__ : Optional[int] = """こんばんは、㔺界。😀"""
snake_case__ : Any = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : Optional[int] = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : List[str] = [1] + [0] * (len_prefix + len_text + 1)
snake_case__ : Optional[int] = [1] * (len_prefix + len_text + 1) + [0]
snake_case__ : int = [1] + [1] * (len_prefix) + [0] * (len_text + 1)
snake_case__ : Any = tokenizer(prefix_text + input_text ).token_type_ids
snake_case__ : str = tokenizer("""""" , prefix_text=prefix_text + input_text ).token_type_ids
snake_case__ : Optional[Any] = tokenizer(snake_case_ , prefix_text=snake_case_ ).token_type_ids
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : Union[str, Any] = tokenizer.encode("""あンいワ""" )
snake_case__ : int = tokenizer.encode("""""" , prefix_text="""あンいワ""" )
snake_case__ : Dict = tokenizer.encode("""いワ""" , prefix_text="""あン""" )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertEqual(x_token_a[1] , x_token_a[-1] ) # SEG token
self.assertEqual(x_token_a[1] , x_token_a[3] ) # SEG token
@slow
def lowerCamelCase ( self : Any ):
snake_case__ : Optional[int] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : int = [["""武田信玄""", """は、"""], ["""織田信長""", """の配下の、"""]]
snake_case__ : Optional[Any] = tokenizer(snake_case_ , padding=snake_case_ )
snake_case__ : Tuple = tokenizer.batch_encode_plus(snake_case_ , padding=snake_case_ )
# fmt: off
snake_case__ : Optional[Any] = [[35_993, 8_640, 25_948, 35_998, 30_647, 35_675, 35_999, 35_999], [35_993, 10_382, 9_868, 35_998, 30_646, 9_459, 30_646, 35_675]]
snake_case__ : Optional[Any] = [[1, 1, 1, 0, 0, 0, 0, 0], [1, 1, 1, 0, 0, 0, 0, 0]]
snake_case__ : Optional[Any] = [[1, 1, 1, 1, 1, 1, 0, 0], [1, 1, 1, 1, 1, 1, 1, 1]]
# fmt: on
self.assertListEqual(x_token.input_ids , snake_case_ )
self.assertListEqual(x_token.token_type_ids , snake_case_ )
self.assertListEqual(x_token.attention_mask , snake_case_ )
self.assertListEqual(x_token_a.input_ids , snake_case_ )
self.assertListEqual(x_token_a.token_type_ids , snake_case_ )
self.assertListEqual(x_token_a.attention_mask , snake_case_ )
def lowerCamelCase ( self : Any ):
# Intentionally convert some words to accommodate character fluctuations unique to Japanese
pass
def lowerCamelCase ( self : List[str] ):
# tokenizer has no padding token
pass
| 35
| 0
|
import functools
import operator
from ...configuration_utils import PretrainedConfig
from ...utils import logging
UpperCAmelCase_ : Optional[Any] = logging.get_logger(__name__)
UpperCAmelCase_ : Tuple = {
'''asapp/sew-d-tiny-100k''': '''https://huggingface.co/asapp/sew-d-tiny-100k/resolve/main/config.json''',
# See all SEW-D models at https://huggingface.co/models?filter=sew-d
}
class _SCREAMING_SNAKE_CASE ( _a ):
snake_case__ : Union[str, Any] = """sew-d"""
def __init__( self : List[str] , __lowerCamelCase : str=32 , __lowerCamelCase : Dict=768 , __lowerCamelCase : List[Any]=12 , __lowerCamelCase : Optional[Any]=12 , __lowerCamelCase : str=3_072 , __lowerCamelCase : Dict=2 , __lowerCamelCase : Dict=512 , __lowerCamelCase : Dict=256 , __lowerCamelCase : List[str]=True , __lowerCamelCase : str=True , __lowerCamelCase : Any=("p2c", "c2p") , __lowerCamelCase : Tuple="layer_norm" , __lowerCamelCase : Dict="gelu_python" , __lowerCamelCase : str=0.1 , __lowerCamelCase : Tuple=0.1 , __lowerCamelCase : Any=0.1 , __lowerCamelCase : List[Any]=0.0 , __lowerCamelCase : Optional[Any]=0.1 , __lowerCamelCase : str=0.02 , __lowerCamelCase : str=1E-7 , __lowerCamelCase : Union[str, Any]=1E-5 , __lowerCamelCase : List[str]="group" , __lowerCamelCase : List[str]="gelu" , __lowerCamelCase : Tuple=(64, 128, 128, 128, 128, 256, 256, 256, 256, 512, 512, 512, 512) , __lowerCamelCase : Optional[int]=(5, 2, 1, 2, 1, 2, 1, 2, 1, 2, 1, 2, 1) , __lowerCamelCase : Dict=(10, 3, 1, 3, 1, 3, 1, 3, 1, 2, 1, 2, 1) , __lowerCamelCase : Tuple=False , __lowerCamelCase : Tuple=128 , __lowerCamelCase : str=16 , __lowerCamelCase : Optional[int]=True , __lowerCamelCase : List[str]=0.05 , __lowerCamelCase : List[Any]=10 , __lowerCamelCase : Union[str, Any]=2 , __lowerCamelCase : Dict=0.0 , __lowerCamelCase : Any=10 , __lowerCamelCase : Union[str, Any]=0 , __lowerCamelCase : Union[str, Any]="mean" , __lowerCamelCase : List[str]=False , __lowerCamelCase : int=False , __lowerCamelCase : Any=256 , __lowerCamelCase : Tuple=0 , __lowerCamelCase : Tuple=1 , __lowerCamelCase : Union[str, Any]=2 , **__lowerCamelCase : Any , ):
super().__init__(**snake_case_ , pad_token_id=snake_case_ , bos_token_id=snake_case_ , eos_token_id=snake_case_ )
UpperCamelCase :List[str] = hidden_size
UpperCamelCase :Optional[int] = feat_extract_norm
UpperCamelCase :str = feat_extract_activation
UpperCamelCase :List[Any] = list(snake_case_ )
UpperCamelCase :Dict = list(snake_case_ )
UpperCamelCase :Optional[int] = list(snake_case_ )
UpperCamelCase :List[str] = conv_bias
UpperCamelCase :Any = num_conv_pos_embeddings
UpperCamelCase :Dict = num_conv_pos_embedding_groups
UpperCamelCase :Dict = len(self.conv_dim )
UpperCamelCase :Optional[Any] = num_hidden_layers
UpperCamelCase :Union[str, Any] = intermediate_size
UpperCamelCase :Optional[int] = squeeze_factor
UpperCamelCase :List[str] = max_position_embeddings
UpperCamelCase :List[Any] = position_buckets
UpperCamelCase :List[str] = share_att_key
UpperCamelCase :List[Any] = relative_attention
UpperCamelCase :str = norm_rel_ebd
UpperCamelCase :List[str] = list(snake_case_ )
UpperCamelCase :Optional[int] = hidden_act
UpperCamelCase :List[Any] = num_attention_heads
UpperCamelCase :Tuple = hidden_dropout
UpperCamelCase :Tuple = attention_dropout
UpperCamelCase :Optional[Any] = activation_dropout
UpperCamelCase :List[Any] = feat_proj_dropout
UpperCamelCase :Optional[Any] = final_dropout
UpperCamelCase :Optional[int] = layer_norm_eps
UpperCamelCase :Dict = feature_layer_norm_eps
UpperCamelCase :Optional[Any] = initializer_range
UpperCamelCase :Dict = vocab_size
if (
(len(self.conv_stride ) != self.num_feat_extract_layers)
or (len(self.conv_kernel ) != self.num_feat_extract_layers)
or (len(self.conv_dim ) != self.num_feat_extract_layers)
):
raise ValueError(
"""Configuration for convolutional layers is incorrect."""
"""It is required that `len(config.conv_dim)` == `len(config.conv_stride)` == `len(config.conv_kernel)`,"""
F"""but is `len(config.conv_dim) = {len(self.conv_dim )}`, `len(config.conv_stride)"""
F"""= {len(self.conv_stride )}`, `len(config.conv_kernel) = {len(self.conv_kernel )}`.""" )
# fine-tuning config parameters for SpecAugment: https://arxiv.org/abs/1904.08779
UpperCamelCase :Dict = apply_spec_augment
UpperCamelCase :List[Any] = mask_time_prob
UpperCamelCase :Dict = mask_time_length
UpperCamelCase :Union[str, Any] = mask_time_min_masks
UpperCamelCase :List[Any] = mask_feature_prob
UpperCamelCase :List[str] = mask_feature_length
UpperCamelCase :Tuple = mask_feature_min_masks
# ctc loss
UpperCamelCase :str = ctc_loss_reduction
UpperCamelCase :Dict = ctc_zero_infinity
# sequence classification
UpperCamelCase :List[str] = use_weighted_layer_sum
UpperCamelCase :List[Any] = classifier_proj_size
@property
def _A ( self : List[Any] ):
return functools.reduce(operator.mul , self.conv_stride , 1 )
| 38
|
'''simple docstring'''
from transformers import BertTokenizerFast
from .custom_tokenization import CustomTokenizer
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = CustomTokenizer
pass
| 35
| 0
|
"""simple docstring"""
from ...configuration_utils import PretrainedConfig
from ...utils import logging
_UpperCamelCase : Any = logging.get_logger(__name__)
_UpperCamelCase : Optional[Any] = {
"microsoft/swinv2-tiny-patch4-window8-256": (
"https://huggingface.co/microsoft/swinv2-tiny-patch4-window8-256/resolve/main/config.json"
),
}
class UpperCAmelCase_ ( _a):
lowerCamelCase__ : Tuple = "swinv2"
lowerCamelCase__ : Tuple = {
"num_attention_heads": "num_heads",
"num_hidden_layers": "num_layers",
}
def __init__( self , a=2_2_4 , a=4 , a=3 , a=9_6 , a=[2, 2, 6, 2] , a=[3, 6, 1_2, 2_4] , a=7 , a=4.0 , a=True , a=0.0 , a=0.0 , a=0.1 , a="gelu" , a=False , a=0.02 , a=1e-5 , a=3_2 , **a , ) -> Tuple:
super().__init__(**snake_case_ )
lowercase__ : Optional[int] = image_size
lowercase__ : Union[str, Any] = patch_size
lowercase__ : Optional[int] = num_channels
lowercase__ : str = embed_dim
lowercase__ : List[str] = depths
lowercase__ : int = len(snake_case_ )
lowercase__ : Union[str, Any] = num_heads
lowercase__ : Tuple = window_size
lowercase__ : str = mlp_ratio
lowercase__ : Optional[Any] = qkv_bias
lowercase__ : Union[str, Any] = hidden_dropout_prob
lowercase__ : Dict = attention_probs_dropout_prob
lowercase__ : Optional[Any] = drop_path_rate
lowercase__ : Tuple = hidden_act
lowercase__ : str = use_absolute_embeddings
lowercase__ : List[str] = layer_norm_eps
lowercase__ : Optional[int] = initializer_range
lowercase__ : Dict = encoder_stride
# we set the hidden_size attribute in order to make Swinv2 work with VisionEncoderDecoderModel
# this indicates the channel dimension after the last stage of the model
lowercase__ : List[str] = int(embed_dim * 2 ** (len(snake_case_ ) - 1) )
lowercase__ : Tuple = (0, 0, 0, 0)
| 77
|
'''simple docstring'''
import numpy as np
from transformers import Pipeline
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Optional[Any] = np.max(_lowerCAmelCase , axis=-1 , keepdims=_lowerCAmelCase )
snake_case__ : List[str] = np.exp(outputs - maxes )
return shifted_exp / shifted_exp.sum(axis=-1 , keepdims=_lowerCAmelCase )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def lowerCamelCase ( self : Optional[Any] , **snake_case_ : int ):
snake_case__ : Optional[int] = {}
if "second_text" in kwargs:
snake_case__ : Union[str, Any] = kwargs["""second_text"""]
return preprocess_kwargs, {}, {}
def lowerCamelCase ( self : str , snake_case_ : Tuple , snake_case_ : Union[str, Any]=None ):
return self.tokenizer(snake_case_ , text_pair=snake_case_ , return_tensors=self.framework )
def lowerCamelCase ( self : List[Any] , snake_case_ : Dict ):
return self.model(**snake_case_ )
def lowerCamelCase ( self : int , snake_case_ : List[Any] ):
snake_case__ : Union[str, Any] = model_outputs.logits[0].numpy()
snake_case__ : List[str] = softmax(snake_case_ )
snake_case__ : List[str] = np.argmax(snake_case_ )
snake_case__ : List[str] = self.model.config.idalabel[best_class]
snake_case__ : Optional[int] = probabilities[best_class].item()
snake_case__ : str = logits.tolist()
return {"label": label, "score": score, "logits": logits}
| 35
| 0
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tf_available, is_torch_available
SCREAMING_SNAKE_CASE_: Dict ={
'configuration_xlm': ['XLM_PRETRAINED_CONFIG_ARCHIVE_MAP', 'XLMConfig', 'XLMOnnxConfig'],
'tokenization_xlm': ['XLMTokenizer'],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: Tuple =[
'XLM_PRETRAINED_MODEL_ARCHIVE_LIST',
'XLMForMultipleChoice',
'XLMForQuestionAnswering',
'XLMForQuestionAnsweringSimple',
'XLMForSequenceClassification',
'XLMForTokenClassification',
'XLMModel',
'XLMPreTrainedModel',
'XLMWithLMHeadModel',
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: int =[
'TF_XLM_PRETRAINED_MODEL_ARCHIVE_LIST',
'TFXLMForMultipleChoice',
'TFXLMForQuestionAnsweringSimple',
'TFXLMForSequenceClassification',
'TFXLMForTokenClassification',
'TFXLMMainLayer',
'TFXLMModel',
'TFXLMPreTrainedModel',
'TFXLMWithLMHeadModel',
]
if TYPE_CHECKING:
from .configuration_xlm import XLM_PRETRAINED_CONFIG_ARCHIVE_MAP, XLMConfig, XLMOnnxConfig
from .tokenization_xlm import XLMTokenizer
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_xlm import (
XLM_PRETRAINED_MODEL_ARCHIVE_LIST,
XLMForMultipleChoice,
XLMForQuestionAnswering,
XLMForQuestionAnsweringSimple,
XLMForSequenceClassification,
XLMForTokenClassification,
XLMModel,
XLMPreTrainedModel,
XLMWithLMHeadModel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_xlm import (
TF_XLM_PRETRAINED_MODEL_ARCHIVE_LIST,
TFXLMForMultipleChoice,
TFXLMForQuestionAnsweringSimple,
TFXLMForSequenceClassification,
TFXLMForTokenClassification,
TFXLMMainLayer,
TFXLMModel,
TFXLMPreTrainedModel,
TFXLMWithLMHeadModel,
)
else:
import sys
SCREAMING_SNAKE_CASE_: Optional[Any] =_LazyModule(__name__, globals()['__file__'], _import_structure, module_spec=__spec__)
| 1
|
'''simple docstring'''
# Function to print upper half of diamond (pyramid)
def __snake_case( _lowerCAmelCase ) -> Any:
for i in range(0 , _lowerCAmelCase ):
for _ in range(0 , n - i - 1 ): # printing spaces
print(""" """ , end="""""" )
for _ in range(0 , i + 1 ): # printing stars
print("""* """ , end="""""" )
print()
def __snake_case( _lowerCAmelCase ) -> List[str]:
for i in range(_lowerCAmelCase , 0 , -1 ):
for _ in range(_lowerCAmelCase , 0 , -1 ): # printing stars
print("""* """ , end="""""" )
print()
for _ in range(n - i + 1 , 0 , -1 ): # printing spaces
print(""" """ , end="""""" )
def __snake_case( _lowerCAmelCase ) -> List[Any]:
if n <= 0:
print(""" ... .... nothing printing :(""" )
return
floyd(_lowerCAmelCase ) # upper half
reverse_floyd(_lowerCAmelCase ) # lower half
if __name__ == "__main__":
print(R"| /\ | |- | |- |--| |\ /| |-")
print(R"|/ \| |- |_ |_ |__| | \/ | |_")
__a = 1
while K:
__a = int(input("enter the number and , and see the magic : "))
print()
pretty_print(user_number)
__a = int(input("press 0 to exit... and 1 to continue..."))
print("Good Bye...")
| 35
| 0
|
import json
import os
import shutil
import tempfile
import unittest
import numpy as np
import pytest
from transformers import CLIPTokenizer, CLIPTokenizerFast
from transformers.models.clip.tokenization_clip import VOCAB_FILES_NAMES
from transformers.testing_utils import require_vision
from transformers.utils import IMAGE_PROCESSOR_NAME, is_vision_available
if is_vision_available():
from PIL import Image
from transformers import OwlViTImageProcessor, OwlViTProcessor
@require_vision
class A( unittest.TestCase ):
'''simple docstring'''
def a__ ( self : Dict ) -> List[str]:
"""simple docstring"""
lowerCamelCase_ = tempfile.mkdtemp()
# fmt: off
lowerCamelCase_ = ["""""", """l""", """o""", """w""", """e""", """r""", """s""", """t""", """i""", """d""", """n""", """lo""", """l</w>""", """w</w>""", """r</w>""", """t</w>""", """low</w>""", """er</w>""", """lowest</w>""", """newer</w>""", """wider""", """<unk>""", """<|startoftext|>""", """<|endoftext|>"""]
# fmt: on
lowerCamelCase_ = dict(zip(snake_case_ , range(len(snake_case_ ) ) ) )
lowerCamelCase_ = ["""#version: 0.2""", """l o""", """lo w</w>""", """e r</w>""", """"""]
lowerCamelCase_ = {"""unk_token""": """<unk>"""}
lowerCamelCase_ = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['vocab_file'] )
lowerCamelCase_ = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES['merges_file'] )
with open(self.vocab_file , 'w' , encoding='utf-8' ) as fp:
fp.write(json.dumps(snake_case_ ) + '\n' )
with open(self.merges_file , 'w' , encoding='utf-8' ) as fp:
fp.write('\n'.join(snake_case_ ) )
lowerCamelCase_ = {
"""do_resize""": True,
"""size""": 20,
"""do_center_crop""": True,
"""crop_size""": 18,
"""do_normalize""": True,
"""image_mean""": [0.48145466, 0.4578275, 0.40821073],
"""image_std""": [0.26862954, 0.26130258, 0.27577711],
}
lowerCamelCase_ = os.path.join(self.tmpdirname , snake_case_ )
with open(self.image_processor_file , 'w' , encoding='utf-8' ) as fp:
json.dump(snake_case_ , snake_case_ )
def a__ ( self : int , **A_ : List[Any] ) -> Tuple:
"""simple docstring"""
return CLIPTokenizer.from_pretrained(self.tmpdirname , pad_token='!' , **snake_case_ )
def a__ ( self : Dict , **A_ : int ) -> List[Any]:
"""simple docstring"""
return CLIPTokenizerFast.from_pretrained(self.tmpdirname , pad_token='!' , **snake_case_ )
def a__ ( self : str , **A_ : Union[str, Any] ) -> List[str]:
"""simple docstring"""
return OwlViTImageProcessor.from_pretrained(self.tmpdirname , **snake_case_ )
def a__ ( self : Tuple ) -> Optional[int]:
"""simple docstring"""
shutil.rmtree(self.tmpdirname )
def a__ ( self : Union[str, Any] ) -> int:
"""simple docstring"""
lowerCamelCase_ = [np.random.randint(255 , size=(3, 30, 400) , dtype=np.uinta )]
lowerCamelCase_ = [Image.fromarray(np.moveaxis(snake_case_ , 0 , -1 ) ) for x in image_inputs]
return image_inputs
def a__ ( self : Optional[Any] ) -> Tuple:
"""simple docstring"""
lowerCamelCase_ = self.get_tokenizer()
lowerCamelCase_ = self.get_rust_tokenizer()
lowerCamelCase_ = self.get_image_processor()
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
processor_slow.save_pretrained(self.tmpdirname )
lowerCamelCase_ = OwlViTProcessor.from_pretrained(self.tmpdirname , use_fast=snake_case_ )
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
processor_fast.save_pretrained(self.tmpdirname )
lowerCamelCase_ = OwlViTProcessor.from_pretrained(self.tmpdirname )
self.assertEqual(processor_slow.tokenizer.get_vocab() , tokenizer_slow.get_vocab() )
self.assertEqual(processor_fast.tokenizer.get_vocab() , tokenizer_fast.get_vocab() )
self.assertEqual(tokenizer_slow.get_vocab() , tokenizer_fast.get_vocab() )
self.assertIsInstance(processor_slow.tokenizer , snake_case_ )
self.assertIsInstance(processor_fast.tokenizer , snake_case_ )
self.assertEqual(processor_slow.image_processor.to_json_string() , image_processor.to_json_string() )
self.assertEqual(processor_fast.image_processor.to_json_string() , image_processor.to_json_string() )
self.assertIsInstance(processor_slow.image_processor , snake_case_ )
self.assertIsInstance(processor_fast.image_processor , snake_case_ )
def a__ ( self : List[Any] ) -> str:
"""simple docstring"""
lowerCamelCase_ = OwlViTProcessor(tokenizer=self.get_tokenizer() , image_processor=self.get_image_processor() )
processor.save_pretrained(self.tmpdirname )
lowerCamelCase_ = self.get_tokenizer(bos_token='(BOS)' , eos_token='(EOS)' )
lowerCamelCase_ = self.get_image_processor(do_normalize=snake_case_ )
lowerCamelCase_ = OwlViTProcessor.from_pretrained(
self.tmpdirname , bos_token='(BOS)' , eos_token='(EOS)' , do_normalize=snake_case_ )
self.assertEqual(processor.tokenizer.get_vocab() , tokenizer_add_kwargs.get_vocab() )
self.assertIsInstance(processor.tokenizer , snake_case_ )
self.assertEqual(processor.image_processor.to_json_string() , image_processor_add_kwargs.to_json_string() )
self.assertIsInstance(processor.image_processor , snake_case_ )
def a__ ( self : Tuple ) -> Optional[int]:
"""simple docstring"""
lowerCamelCase_ = self.get_image_processor()
lowerCamelCase_ = self.get_tokenizer()
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
lowerCamelCase_ = self.prepare_image_inputs()
lowerCamelCase_ = image_processor(snake_case_ , return_tensors='np' )
lowerCamelCase_ = processor(images=snake_case_ , return_tensors='np' )
for key in input_image_proc.keys():
self.assertAlmostEqual(input_image_proc[key].sum() , input_processor[key].sum() , delta=1E-2 )
def a__ ( self : Dict ) -> str:
"""simple docstring"""
lowerCamelCase_ = self.get_image_processor()
lowerCamelCase_ = self.get_tokenizer()
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
lowerCamelCase_ = """lower newer"""
lowerCamelCase_ = processor(text=snake_case_ , return_tensors='np' )
lowerCamelCase_ = tokenizer(snake_case_ , return_tensors='np' )
for key in encoded_tok.keys():
self.assertListEqual(encoded_tok[key][0].tolist() , encoded_processor[key][0].tolist() )
def a__ ( self : Optional[int] ) -> int:
"""simple docstring"""
lowerCamelCase_ = self.get_image_processor()
lowerCamelCase_ = self.get_tokenizer()
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
lowerCamelCase_ = """lower newer"""
lowerCamelCase_ = self.prepare_image_inputs()
lowerCamelCase_ = processor(text=snake_case_ , images=snake_case_ )
self.assertListEqual(list(inputs.keys() ) , ['input_ids', 'attention_mask', 'pixel_values'] )
# test if it raises when no input is passed
with pytest.raises(snake_case_ ):
processor()
def a__ ( self : Dict ) -> Any:
"""simple docstring"""
lowerCamelCase_ = """google/owlvit-base-patch32"""
lowerCamelCase_ = OwlViTProcessor.from_pretrained(snake_case_ )
lowerCamelCase_ = ["""cat""", """nasa badge"""]
lowerCamelCase_ = processor(text=snake_case_ )
lowerCamelCase_ = 16
self.assertListEqual(list(inputs.keys() ) , ['input_ids', 'attention_mask'] )
self.assertEqual(inputs['input_ids'].shape , (2, seq_length) )
# test if it raises when no input is passed
with pytest.raises(snake_case_ ):
processor()
def a__ ( self : str ) -> Dict:
"""simple docstring"""
lowerCamelCase_ = """google/owlvit-base-patch32"""
lowerCamelCase_ = OwlViTProcessor.from_pretrained(snake_case_ )
lowerCamelCase_ = [["""cat""", """nasa badge"""], ["""person"""]]
lowerCamelCase_ = processor(text=snake_case_ )
lowerCamelCase_ = 16
lowerCamelCase_ = len(snake_case_ )
lowerCamelCase_ = max([len(snake_case_ ) for texts in input_texts] )
self.assertListEqual(list(inputs.keys() ) , ['input_ids', 'attention_mask'] )
self.assertEqual(inputs['input_ids'].shape , (batch_size * num_max_text_queries, seq_length) )
# test if it raises when no input is passed
with pytest.raises(snake_case_ ):
processor()
def a__ ( self : Tuple ) -> int:
"""simple docstring"""
lowerCamelCase_ = """google/owlvit-base-patch32"""
lowerCamelCase_ = OwlViTProcessor.from_pretrained(snake_case_ )
lowerCamelCase_ = ["""cat""", """nasa badge"""]
lowerCamelCase_ = processor(text=snake_case_ )
lowerCamelCase_ = 16
lowerCamelCase_ = inputs["""input_ids"""]
lowerCamelCase_ = [
[49406, 2368, 49407, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
[49406, 6841, 11301, 49407, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0],
]
self.assertListEqual(list(inputs.keys() ) , ['input_ids', 'attention_mask'] )
self.assertEqual(inputs['input_ids'].shape , (2, seq_length) )
self.assertListEqual(list(input_ids[0] ) , predicted_ids[0] )
self.assertListEqual(list(input_ids[1] ) , predicted_ids[1] )
def a__ ( self : Dict ) -> Optional[int]:
"""simple docstring"""
lowerCamelCase_ = self.get_image_processor()
lowerCamelCase_ = self.get_tokenizer()
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
lowerCamelCase_ = self.prepare_image_inputs()
lowerCamelCase_ = self.prepare_image_inputs()
lowerCamelCase_ = processor(images=snake_case_ , query_images=snake_case_ )
self.assertListEqual(list(inputs.keys() ) , ['query_pixel_values', 'pixel_values'] )
# test if it raises when no input is passed
with pytest.raises(snake_case_ ):
processor()
def a__ ( self : Dict ) -> Optional[Any]:
"""simple docstring"""
lowerCamelCase_ = self.get_image_processor()
lowerCamelCase_ = self.get_tokenizer()
lowerCamelCase_ = OwlViTProcessor(tokenizer=snake_case_ , image_processor=snake_case_ )
lowerCamelCase_ = [[1, 4, 5, 8, 1, 0, 8], [3, 4, 3, 1, 1, 8, 9]]
lowerCamelCase_ = processor.batch_decode(snake_case_ )
lowerCamelCase_ = tokenizer.batch_decode(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
| 204
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase = 1_000 ) -> int:
return sum(e for e in range(3 , _lowerCAmelCase ) if e % 3 == 0 or e % 5 == 0 )
if __name__ == "__main__":
print(F"{solution() = }")
| 35
| 0
|
import numpy as np
from transformers import Pipeline
def lowerCAmelCase_ (lowerCAmelCase__: Optional[Any] ):
"""simple docstring"""
UpperCAmelCase_: Optional[Any] = np.max(_lowerCAmelCase , axis=-1 , keepdims=_lowerCAmelCase )
UpperCAmelCase_: List[str] = np.exp(outputs - maxes )
return shifted_exp / shifted_exp.sum(axis=-1 , keepdims=_lowerCAmelCase )
class _a ( _a ):
def __snake_case (self, **SCREAMING_SNAKE_CASE_ ) -> List[Any]:
UpperCAmelCase_: Optional[int] = {}
if "second_text" in kwargs:
UpperCAmelCase_: Union[str, Any] = kwargs["""second_text"""]
return preprocess_kwargs, {}, {}
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_=None ) -> Any:
return self.tokenizer(snake_case_, text_pair=snake_case_, return_tensors=self.framework )
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Union[str, Any]:
return self.model(**snake_case_ )
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Tuple:
UpperCAmelCase_: Union[str, Any] = model_outputs.logits[0].numpy()
UpperCAmelCase_: List[str] = softmax(snake_case_ )
UpperCAmelCase_: List[str] = np.argmax(snake_case_ )
UpperCAmelCase_: List[str] = self.model.config.idalabel[best_class]
UpperCAmelCase_: Optional[int] = probabilities[best_class].item()
UpperCAmelCase_: str = logits.tolist()
return {"label": label, "score": score, "logits": logits}
| 147
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
__a = {
"configuration_bloom": ["BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP", "BloomConfig", "BloomOnnxConfig"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = ["BloomTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST",
"BloomForCausalLM",
"BloomModel",
"BloomPreTrainedModel",
"BloomForSequenceClassification",
"BloomForTokenClassification",
"BloomForQuestionAnswering",
]
if TYPE_CHECKING:
from .configuration_bloom import BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP, BloomConfig, BloomOnnxConfig
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_bloom_fast import BloomTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_bloom import (
BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST,
BloomForCausalLM,
BloomForQuestionAnswering,
BloomForSequenceClassification,
BloomForTokenClassification,
BloomModel,
BloomPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
import inspect
import re
from transformers.utils import direct_transformers_import
# All paths are set with the intent you should run this script from the root of the repo with the command
# python utils/check_config_docstrings.py
__lowerCAmelCase : List[str] = 'src/transformers'
# This is to make sure the transformers module imported is the one in the repo.
__lowerCAmelCase : Optional[int] = direct_transformers_import(PATH_TO_TRANSFORMERS)
__lowerCAmelCase : Optional[int] = transformers.models.auto.configuration_auto.CONFIG_MAPPING
# Regex pattern used to find the checkpoint mentioned in the docstring of `config_class`.
# For example, `[bert-base-uncased](https://huggingface.co/bert-base-uncased)`
__lowerCAmelCase : Optional[int] = re.compile(R'\[(.+?)\]\((https://huggingface\.co/.+?)\)')
__lowerCAmelCase : Tuple = {
'DecisionTransformerConfig',
'EncoderDecoderConfig',
'MusicgenConfig',
'RagConfig',
'SpeechEncoderDecoderConfig',
'TimmBackboneConfig',
'VisionEncoderDecoderConfig',
'VisionTextDualEncoderConfig',
'LlamaConfig',
}
def a__ ( A_ ):
'''simple docstring'''
__magic_name__ = None
# source code of `config_class`
__magic_name__ = inspect.getsource(_lowerCAmelCase )
__magic_name__ = _re_checkpoint.findall(_lowerCAmelCase )
# Each `checkpoint` is a tuple of a checkpoint name and a checkpoint link.
# For example, `('bert-base-uncased', 'https://huggingface.co/bert-base-uncased')`
for ckpt_name, ckpt_link in checkpoints:
# allow the link to end with `/`
if ckpt_link.endswith("""/""" ):
__magic_name__ = ckpt_link[:-1]
# verify the checkpoint name corresponds to the checkpoint link
__magic_name__ = f'''https://huggingface.co/{ckpt_name}'''
if ckpt_link == ckpt_link_from_name:
__magic_name__ = ckpt_name
break
return checkpoint
def a__ ( ):
'''simple docstring'''
__magic_name__ = []
for config_class in list(CONFIG_MAPPING.values() ):
# Skip deprecated models
if "models.deprecated" in config_class.__module__:
continue
__magic_name__ = get_checkpoint_from_config_class(_lowerCAmelCase )
__magic_name__ = config_class.__name__
if checkpoint is None and name not in CONFIG_CLASSES_TO_IGNORE_FOR_DOCSTRING_CHECKPOINT_CHECK:
configs_without_checkpoint.append(_lowerCAmelCase )
if len(_lowerCAmelCase ) > 0:
__magic_name__ = """\n""".join(sorted(_lowerCAmelCase ) )
raise ValueError(f'''The following configurations don\'t contain any valid checkpoint:\n{message}''' )
if __name__ == "__main__":
check_config_docstrings_have_checkpoints()
| 88
|
'''simple docstring'''
from PIL import Image
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Image:
def brightness(_lowerCAmelCase ) -> float:
return 128 + level + (c - 128)
if not -255.0 <= level <= 255.0:
raise ValueError("""level must be between -255.0 (black) and 255.0 (white)""" )
return img.point(_lowerCAmelCase )
if __name__ == "__main__":
# Load image
with Image.open("image_data/lena.jpg") as img:
# Change brightness to 100
__a = change_brightness(img, 100)
brigt_img.save("image_data/lena_brightness.png", format="png")
| 35
| 0
|
'''simple docstring'''
from math import sqrt
import numpy as np
from sympy import symbols
# Coefficient
# Speed of light (m/s)
lowercase__ : Union[str, Any] = 2_99_79_24_58
# Symbols
lowercase__ , lowercase__ , lowercase__ , lowercase__ : Tuple = symbols('''ct x y z''')
def _lowerCAmelCase ( __snake_case : int ) -> float:
if velocity > c:
raise ValueError('Speed must not exceed light speed 299,792,458 [m/s]!' )
elif velocity < 1:
# Usually the speed should be much higher than 1 (c order of magnitude)
raise ValueError('Speed must be greater than or equal to 1!' )
return velocity / c
def _lowerCAmelCase ( __snake_case : Tuple ) -> float:
return 1 / sqrt(1 - beta(_lowerCAmelCase ) ** 2 )
def _lowerCAmelCase ( __snake_case : Dict ) -> np.ndarray:
return np.array(
[
[gamma(_lowerCAmelCase ), -gamma(_lowerCAmelCase ) * beta(_lowerCAmelCase ), 0, 0],
[-gamma(_lowerCAmelCase ) * beta(_lowerCAmelCase ), gamma(_lowerCAmelCase ), 0, 0],
[0, 0, 1, 0],
[0, 0, 0, 1],
] )
def _lowerCAmelCase ( __snake_case : Optional[Any] , __snake_case : Union[str, Any] = None ) -> np.ndarray:
# Ensure event is not empty
if event is None:
__A : List[Any] = np.array([ct, x, y, z] ) # Symbolic four vector
else:
event[0] *= c # x0 is ct (speed of light * time)
return transformation_matrix(_lowerCAmelCase ) @ event
if __name__ == "__main__":
import doctest
doctest.testmod()
# Example of symbolic vector:
lowercase__ : Optional[Any] = transform(29_97_92_45)
print('''Example of four vector: ''')
print(f"""ct' = {four_vector[0]}""")
print(f"""x' = {four_vector[1]}""")
print(f"""y' = {four_vector[2]}""")
print(f"""z' = {four_vector[3]}""")
# Substitute symbols with numerical values
lowercase__ : Tuple = {ct: c, x: 1, y: 1, z: 1}
lowercase__ : Tuple = [four_vector[i].subs(sub_dict) for i in range(4)]
print(f"""\n{numerical_vector}""")
| 190
|
'''simple docstring'''
import argparse
import os
import re
__a = "src/transformers"
# Pattern that looks at the indentation in a line.
__a = re.compile(R"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
__a = re.compile(R"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
__a = re.compile(R"\[([^\]]+)\]")
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : int = _re_indent.search(_lowerCAmelCase )
return "" if search is None else search.groups()[0]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase="" , _lowerCAmelCase=None , _lowerCAmelCase=None ) -> List[str]:
snake_case__ : str = 0
snake_case__ : Union[str, Any] = code.split("""\n""" )
if start_prompt is not None:
while not lines[index].startswith(_lowerCAmelCase ):
index += 1
snake_case__ : Tuple = ["""\n""".join(lines[:index] )]
else:
snake_case__ : List[str] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
snake_case__ : Optional[int] = [lines[index]]
index += 1
while index < len(_lowerCAmelCase ) and (end_prompt is None or not lines[index].startswith(_lowerCAmelCase )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(_lowerCAmelCase ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + """ """ ):
current_block.append(lines[index] )
blocks.append("""\n""".join(_lowerCAmelCase ) )
if index < len(_lowerCAmelCase ) - 1:
snake_case__ : str = [lines[index + 1]]
index += 1
else:
snake_case__ : int = []
else:
blocks.append("""\n""".join(_lowerCAmelCase ) )
snake_case__ : Optional[Any] = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(_lowerCAmelCase ) > 0:
blocks.append("""\n""".join(_lowerCAmelCase ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(_lowerCAmelCase ):
blocks.append("""\n""".join(lines[index:] ) )
return blocks
def __snake_case( _lowerCAmelCase ) -> Tuple:
def _inner(_lowerCAmelCase ):
return key(_lowerCAmelCase ).lower().replace("""_""" , """""" )
return _inner
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=None ) -> List[Any]:
# If no key is provided, we use a noop.
def noop(_lowerCAmelCase ):
return x
if key is None:
snake_case__ : Optional[int] = noop
# Constants are all uppercase, they go first.
snake_case__ : Optional[int] = [obj for obj in objects if key(_lowerCAmelCase ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
snake_case__ : int = [obj for obj in objects if key(_lowerCAmelCase )[0].isupper() and not key(_lowerCAmelCase ).isupper()]
# Functions begin with a lowercase, they go last.
snake_case__ : str = [obj for obj in objects if not key(_lowerCAmelCase )[0].isupper()]
snake_case__ : List[str] = ignore_underscore(_lowerCAmelCase )
return sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> int:
# This inner function sort imports between [ ].
def _replace(_lowerCAmelCase ):
snake_case__ : Union[str, Any] = match.groups()[0]
if "," not in imports:
return f"[{imports}]"
snake_case__ : int = [part.strip().replace("""\"""" , """""" ) for part in imports.split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
return "[" + ", ".join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] ) + "]"
snake_case__ : str = import_statement.split("""\n""" )
if len(_lowerCAmelCase ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
snake_case__ : Dict = 2 if lines[1].strip() == """[""" else 1
snake_case__ : str = [(i, _re_strip_line.search(_lowerCAmelCase ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
snake_case__ : str = sort_objects(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )
snake_case__ : Union[str, Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(_lowerCAmelCase ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
snake_case__ : Union[str, Any] = _re_bracket_content.sub(_replace , lines[1] )
else:
snake_case__ : List[Any] = [part.strip().replace("""\"""" , """""" ) for part in lines[1].split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
snake_case__ : int = get_indent(lines[1] ) + """, """.join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] )
return "\n".join(_lowerCAmelCase )
else:
# Finally we have to deal with imports fitting on one line
snake_case__ : Optional[Any] = _re_bracket_content.sub(_replace , _lowerCAmelCase )
return import_statement
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=True ) -> Dict:
with open(_lowerCAmelCase , encoding="""utf-8""" ) as f:
snake_case__ : Optional[int] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
snake_case__ : Optional[int] = split_code_in_indented_blocks(
_lowerCAmelCase , start_prompt="""_import_structure = {""" , end_prompt="""if TYPE_CHECKING:""" )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(_lowerCAmelCase ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
snake_case__ : Optional[Any] = main_blocks[block_idx]
snake_case__ : Dict = block.split("""\n""" )
# Get to the start of the imports.
snake_case__ : Dict = 0
while line_idx < len(_lowerCAmelCase ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
else:
line_idx += 1
if line_idx >= len(_lowerCAmelCase ):
continue
# Ignore beginning and last line: they don't contain anything.
snake_case__ : List[str] = """\n""".join(block_lines[line_idx:-1] )
snake_case__ : str = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
snake_case__ : Optional[int] = split_code_in_indented_blocks(_lowerCAmelCase , indent_level=_lowerCAmelCase )
# We have two categories of import key: list or _import_structure[key].append/extend
snake_case__ : Tuple = _re_direct_key if """_import_structure = {""" in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
snake_case__ : Optional[Any] = [(pattern.search(_lowerCAmelCase ).groups()[0] if pattern.search(_lowerCAmelCase ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
snake_case__ : Dict = [(i, key) for i, key in enumerate(_lowerCAmelCase ) if key is not None]
snake_case__ : Union[str, Any] = [x[0] for x in sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
snake_case__ : List[Any] = 0
snake_case__ : Optional[Any] = []
for i in range(len(_lowerCAmelCase ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
snake_case__ : Optional[Any] = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(_lowerCAmelCase )
count += 1
# And we put our main block back together with its first and last line.
snake_case__ : Dict = """\n""".join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(_lowerCAmelCase ):
if check_only:
return True
else:
print(f"Overwriting {file}." )
with open(_lowerCAmelCase , """w""" , encoding="""utf-8""" ) as f:
f.write("""\n""".join(_lowerCAmelCase ) )
def __snake_case( _lowerCAmelCase=True ) -> Tuple:
snake_case__ : str = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
snake_case__ : Union[str, Any] = sort_imports(os.path.join(_lowerCAmelCase , """__init__.py""" ) , check_only=_lowerCAmelCase )
if result:
snake_case__ : Union[str, Any] = [os.path.join(_lowerCAmelCase , """__init__.py""" )]
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"Would overwrite {len(_lowerCAmelCase )} files, run `make style`." )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
__a = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 35
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|
__lowerCAmelCase = {
'''joule''': 1.0,
'''kilojoule''': 10_00,
'''megajoule''': 1_00_00_00,
'''gigajoule''': 10_00_00_00_00,
'''wattsecond''': 1.0,
'''watthour''': 36_00,
'''kilowatthour''': 3_60_00_00,
'''newtonmeter''': 1.0,
'''calorie_nutr''': 4186.8,
'''kilocalorie_nutr''': 4_18_68_00.00,
'''electronvolt''': 1.6_0217_6634E-19,
'''britishthermalunit_it''': 1055.05585,
'''footpound''': 1.355818,
}
def snake_case_ ( snake_case , snake_case , snake_case ) -> float:
if to_type not in ENERGY_CONVERSION or from_type not in ENERGY_CONVERSION:
lowercase__: Optional[int] = (
f'Incorrect \'from_type\' or \'to_type\' value: {from_type!r}, {to_type!r}\n'
f'Valid values are: {", ".join(_lowerCAmelCase )}'
)
raise ValueError(_lowerCAmelCase )
return value * ENERGY_CONVERSION[from_type] / ENERGY_CONVERSION[to_type]
if __name__ == "__main__":
import doctest
doctest.testmod()
| 196
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available
__a = {
"configuration_timesformer": ["TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "TimesformerConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"TimesformerModel",
"TimesformerForVideoClassification",
"TimesformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_timesformer import TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, TimesformerConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_timesformer import (
TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
TimesformerForVideoClassification,
TimesformerModel,
TimesformerPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
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|
from typing import Any
import numpy as np
def lowercase_ ( _A : int ):
"""simple docstring"""
return np.array_equal(_lowerCAmelCase , matrix.conjugate().T )
def lowercase_ ( _A : Tuple , _A : Any ):
"""simple docstring"""
lowerCamelCase__ : int = v.conjugate().T
lowerCamelCase__ : Optional[Any] = v_star.dot(_lowerCAmelCase )
assert isinstance(_lowerCAmelCase , np.ndarray )
return (v_star_dot.dot(_lowerCAmelCase )) / (v_star.dot(_lowerCAmelCase ))
def lowercase_ ( ):
"""simple docstring"""
lowerCamelCase__ : int = np.array([[2, 2 + 1J, 4], [2 - 1J, 3, 1J], [4, -1J, 1]] )
lowerCamelCase__ : List[str] = np.array([[1], [2], [3]] )
assert is_hermitian(_lowerCAmelCase ), F"{a} is not hermitian."
print(rayleigh_quotient(_lowerCAmelCase , _lowerCAmelCase ) )
lowerCamelCase__ : Optional[int] = np.array([[1, 2, 4], [2, 3, -1], [4, -1, 1]] )
assert is_hermitian(_lowerCAmelCase ), F"{a} is not hermitian."
assert rayleigh_quotient(_lowerCAmelCase , _lowerCAmelCase ) == float(3 )
if __name__ == "__main__":
import doctest
doctest.testmod()
tests()
| 184
|
'''simple docstring'''
import argparse
import json
import os
import fairseq
import torch
from torch import nn
from transformers import (
SpeechaTextaConfig,
SpeechaTextaForCausalLM,
SpeechaTextaTokenizer,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
__a = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
__a = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Union[str, Any]:
for attribute in key.split(""".""" ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
if weight_type is not None:
snake_case__ : List[Any] = getattr(_lowerCAmelCase , _lowerCAmelCase ).shape
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
assert hf_shape == value.shape, (
f"Shape of hf {key + '.' + weight_type if weight_type is not None else ''} is {hf_shape}, but should be"
f" {value.shape} for {full_name}"
)
if weight_type == "weight":
snake_case__ : int = value
elif weight_type == "weight_g":
snake_case__ : List[str] = value
elif weight_type == "weight_v":
snake_case__ : List[str] = value
elif weight_type == "bias":
snake_case__ : Optional[Any] = value
else:
snake_case__ : str = value
logger.info(f"{key + '.' + weight_type if weight_type is not None else ''} was initialized from {full_name}." )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Any:
snake_case__ : Union[str, Any] = []
snake_case__ : Dict = fairseq_model.state_dict()
snake_case__ : List[Any] = hf_model.feature_extractor
# if encoder has different dim to decoder -> use proj_weight
snake_case__ : Optional[int] = None
for name, value in fairseq_dict.items():
snake_case__ : List[Any] = False
if "conv_layers" in name:
load_conv_layer(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , hf_model.config.feat_extract_norm == """group""" , )
snake_case__ : Union[str, Any] = True
elif name.split(""".""" )[0] == "proj":
snake_case__ : Tuple = fairseq_model.proj
snake_case__ : int = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split("""w2v_model.""" )[-1] == name.split(""".""" )[0]:
snake_case__ : Optional[Any] = True
if "*" in mapped_key:
snake_case__ : Optional[int] = name.split(_lowerCAmelCase )[0].split(""".""" )[-2]
snake_case__ : Tuple = mapped_key.replace("""*""" , _lowerCAmelCase )
if "weight_g" in name:
snake_case__ : str = """weight_g"""
elif "weight_v" in name:
snake_case__ : int = """weight_v"""
elif "bias" in name:
snake_case__ : Dict = """bias"""
elif "weight" in name:
snake_case__ : Union[str, Any] = """weight"""
else:
snake_case__ : Union[str, Any] = None
set_recursively(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
continue
if not is_used:
unused_weights.append(_lowerCAmelCase )
logger.warning(f"Unused weights: {unused_weights}" )
return proj_weight
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : int = full_name.split("""conv_layers.""" )[-1]
snake_case__ : Dict = name.split(""".""" )
snake_case__ : Any = int(items[0] )
snake_case__ : Optional[Any] = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found."
)
snake_case__ : str = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
f"{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was"
" found."
)
snake_case__ : Union[str, Any] = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor[layer_id].layer_norm.weight.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
else:
unused_weights.append(_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ , snake_case__ : str = emb.weight.shape
snake_case__ : List[str] = nn.Linear(_lowerCAmelCase , _lowerCAmelCase , bias=_lowerCAmelCase )
snake_case__ : List[str] = emb.weight.data
return lin_layer
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
with open(_lowerCAmelCase , """r""" , encoding="""utf-8""" ) as f:
snake_case__ : int = f.readlines()
snake_case__ : List[Any] = [line.split(""" """ )[0] for line in lines]
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
snake_case__ : Any = {
"""<s>""": 0,
"""<pad>""": 1,
"""</s>""": 2,
"""<unk>""": 3,
}
vocab_dict.update(dict(zip(_lowerCAmelCase , range(4 , num_words + 4 ) ) ) )
return vocab_dict
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , ) -> int:
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaConfig.from_pretrained(
_lowerCAmelCase , vocab_size=_lowerCAmelCase , decoder_layers=_lowerCAmelCase , do_stable_layer_norm=_lowerCAmelCase )
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=16_000 , padding_value=0 , do_normalize=_lowerCAmelCase , return_attention_mask=_lowerCAmelCase , )
snake_case__ , snake_case__ , snake_case__ : Union[str, Any] = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={"""data""": """/""".join(dict_path.split("""/""" )[:-1] )} )
snake_case__ : Tuple = model[0].eval()
# set weights for wav2vec2 encoder
snake_case__ : Optional[Any] = WavaVecaModel(_lowerCAmelCase )
snake_case__ : Dict = recursively_load_weights_wavaveca(model.encoder , _lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaForCausalLM(_lowerCAmelCase )
snake_case__ , snake_case__ : Tuple = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=_lowerCAmelCase )
# set output linear layer
unexpected_keys.remove("""embed_out""" )
snake_case__ : Tuple = nn.Parameter(model.decoder.embed_out.detach() )
# layer norm is init to identity matrix so leaving it is fine
logger.warning(f"The following keys are missing when loading the decoder weights: {missing_keys}" )
logger.warning(f"The following keys are unexpected when loading the decoder weights: {unexpected_keys}" )
snake_case__ : List[Any] = SpeechEncoderDecoderModel(encoder=_lowerCAmelCase , decoder=_lowerCAmelCase )
snake_case__ : Tuple = False
# add projection layer
snake_case__ : Union[str, Any] = nn.Parameter(projection_layer.weight )
snake_case__ : int = nn.Parameter(projection_layer.bias )
snake_case__ : Tuple = create_vocab_dict(_lowerCAmelCase )
with open(os.path.join(_lowerCAmelCase , """vocab.json""" ) , """w""" ) as fp:
json.dump(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Tuple = SpeechaTextaTokenizer(os.path.join(_lowerCAmelCase , """vocab.json""" ) )
tokenizer.save_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Optional[Any] = tokenizer.bos_token_id
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : str = """speech_to_text_2"""
snake_case__ : List[Any] = """wav2vec2"""
snake_case__ : List[str] = SpeechEncoderDecoderConfig.from_dict(_lowerCAmelCase )
hf_wavavec.save_pretrained(_lowerCAmelCase )
feature_extractor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-large-lv60",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/s2t-small-mustc-en-fr-st",
type=str,
help="Path to hf decoder s2t checkpoint config",
)
parser.add_argument("--vocab_size", default=1_0224, type=int, help="Vocab size of decoder")
parser.add_argument("--num_decoder_layers", default=7, type=int, help="Number of decoder layers")
__a = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
vocab_size=args.vocab_size,
num_decoder_layers=args.num_decoder_layers,
)
| 35
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|
'''simple docstring'''
import tempfile
import unittest
from make_student import create_student_by_copying_alternating_layers
from transformers import AutoConfig
from transformers.file_utils import cached_property
from transformers.testing_utils import require_torch
lowercase_ = "sshleifer/bart-tiny-random"
lowercase_ = "patrickvonplaten/t5-tiny-random"
@require_torch
class __A ( unittest.TestCase ):
'''simple docstring'''
@cached_property
def a__ (self ) -> Optional[Any]:
"""simple docstring"""
return AutoConfig.from_pretrained(snake_case_ )
def a__ (self ) -> Any:
"""simple docstring"""
_a = create_student_by_copying_alternating_layers(snake_case_ , tempfile.mkdtemp() , e=1 , d=1 )
self.assertEqual(student.config.num_hidden_layers , 1 )
def a__ (self ) -> str:
"""simple docstring"""
_a = create_student_by_copying_alternating_layers(snake_case_ , tempfile.mkdtemp() , e=1 , d=snake_case_ )
def a__ (self ) -> str:
"""simple docstring"""
_a = create_student_by_copying_alternating_layers(snake_case_ , tempfile.mkdtemp() , e=1 , d=snake_case_ )
self.assertEqual(student.config.encoder_layers , 1 )
self.assertEqual(student.config.decoder_layers , self.teacher_config.encoder_layers )
def a__ (self ) -> List[str]:
"""simple docstring"""
_a = create_student_by_copying_alternating_layers(snake_case_ , tempfile.mkdtemp() , e=1 , d=1 )
self.assertEqual(student.config.encoder_layers , 1 )
self.assertEqual(student.config.decoder_layers , 1 )
def a__ (self ) -> Optional[int]:
"""simple docstring"""
with self.assertRaises(snake_case_ ):
create_student_by_copying_alternating_layers(snake_case_ , tempfile.mkdtemp() , e=snake_case_ , d=snake_case_ )
| 211
|
'''simple docstring'''
import importlib
import os
import sys
# This is required to make the module import works (when the python process is running from the root of the repo)
sys.path.append(".")
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = test_file.split(os.path.sep )
if components[0:2] != ["tests", "models"]:
raise ValueError(
"""`test_file` should start with `tests/models/` (with `/` being the OS specific path separator). Got """
f"{test_file} instead." )
snake_case__ : Dict = components[-1]
if not test_fn.endswith("""py""" ):
raise ValueError(f"`test_file` should be a python file. Got {test_fn} instead." )
if not test_fn.startswith("""test_modeling_""" ):
raise ValueError(
f"`test_file` should point to a file name of the form `test_modeling_*.py`. Got {test_fn} instead." )
snake_case__ : int = components[:-1] + [test_fn.replace(""".py""" , """""" )]
snake_case__ : int = """.""".join(_lowerCAmelCase )
return test_module_path
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ : str = get_module_path(_lowerCAmelCase )
snake_case__ : Union[str, Any] = importlib.import_module(_lowerCAmelCase )
return test_module
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : List[Any] = []
snake_case__ : Optional[int] = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
if attr.endswith("""ModelTester""" ):
tester_classes.append(getattr(_lowerCAmelCase , _lowerCAmelCase ) )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : List[str] = []
snake_case__ : Any = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
# (TF/Flax)ModelTesterMixin is also an attribute in specific model test module. Let's exclude them by checking
# `all_model_classes` is not empty (which also excludes other special classes).
snake_case__ : List[str] = getattr(_lowerCAmelCase , """all_model_classes""" , [] )
if len(_lowerCAmelCase ) > 0:
test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : Any = get_test_classes(_lowerCAmelCase )
snake_case__ : Optional[Any] = set()
for test_class in test_classes:
model_classes.update(test_class.all_model_classes )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
snake_case__ : Optional[int] = test_class()
if hasattr(_lowerCAmelCase , """setUp""" ):
test.setUp()
snake_case__ : Any = None
if hasattr(_lowerCAmelCase , """model_tester""" ):
# `(TF/Flax)ModelTesterMixin` has this attribute default to `None`. Let's skip this case.
if test.model_tester is not None:
snake_case__ : Tuple = test.model_tester.__class__
return model_tester
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : Union[str, Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : str = []
for test_class in test_classes:
if model_class in test_class.all_model_classes:
target_test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Tuple:
snake_case__ : Optional[Any] = get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Union[str, Any] = []
for test_class in test_classes:
snake_case__ : Tuple = get_model_tester_from_test_class(_lowerCAmelCase )
if tester_class is not None:
tester_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Union[str, Any]:
snake_case__ : Optional[Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : Union[str, Any] = {test_class: get_model_tester_from_test_class(_lowerCAmelCase ) for test_class in test_classes}
return test_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Any = get_model_classes(_lowerCAmelCase )
snake_case__ : Any = {
model_class: get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_test_mapping
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Union[str, Any] = get_model_classes(_lowerCAmelCase )
snake_case__ : str = {
model_class: get_tester_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_to_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
if isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o.__name__
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return [to_json(_lowerCAmelCase ) for x in o]
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return {to_json(_lowerCAmelCase ): to_json(_lowerCAmelCase ) for k, v in o.items()}
else:
return o
| 35
| 0
|
from typing import List, Optional
from ...configuration_utils import PretrainedConfig
from ...utils import logging
lowercase_ = logging.get_logger(__name__)
lowercase_ = {
'huggingface/autoformer-tourism-monthly': 'https://huggingface.co/huggingface/autoformer-tourism-monthly/resolve/main/config.json',
}
class __lowerCAmelCase ( _a ):
_a = """autoformer"""
_a = {
"""hidden_size""": """d_model""",
"""num_attention_heads""": """encoder_attention_heads""",
"""num_hidden_layers""": """encoder_layers""",
}
def __init__( self , lowerCAmelCase = None , lowerCAmelCase = None , lowerCAmelCase = "student_t" , lowerCAmelCase = "nll" , lowerCAmelCase = 1 , lowerCAmelCase = [1, 2, 3, 4, 5, 6, 7] , lowerCAmelCase = True , lowerCAmelCase = 0 , lowerCAmelCase = 0 , lowerCAmelCase = 0 , lowerCAmelCase = 0 , lowerCAmelCase = None , lowerCAmelCase = None , lowerCAmelCase = 64 , lowerCAmelCase = 2 , lowerCAmelCase = 2 , lowerCAmelCase = 2 , lowerCAmelCase = 2 , lowerCAmelCase = 32 , lowerCAmelCase = 32 , lowerCAmelCase = "gelu" , lowerCAmelCase = 0.1 , lowerCAmelCase = 0.1 , lowerCAmelCase = 0.1 , lowerCAmelCase = 0.1 , lowerCAmelCase = 0.1 , lowerCAmelCase = 100 , lowerCAmelCase = 0.02 , lowerCAmelCase = True , lowerCAmelCase=True , lowerCAmelCase = 10 , lowerCAmelCase = 25 , lowerCAmelCase = 3 , **lowerCAmelCase , ) -> Dict:
'''simple docstring'''
_lowercase =prediction_length
_lowercase =context_length if context_length is not None else prediction_length
_lowercase =distribution_output
_lowercase =loss
_lowercase =input_size
_lowercase =num_time_features
_lowercase =lags_sequence
_lowercase =scaling
_lowercase =num_dynamic_real_features
_lowercase =num_static_real_features
_lowercase =num_static_categorical_features
if cardinality is not None and num_static_categorical_features > 0:
if len(snake_case_ ) != num_static_categorical_features:
raise ValueError(
'The cardinality should be a list of the same length as `num_static_categorical_features`' )
_lowercase =cardinality
else:
_lowercase =[0]
if embedding_dimension is not None and num_static_categorical_features > 0:
if len(snake_case_ ) != num_static_categorical_features:
raise ValueError(
'The embedding dimension should be a list of the same length as `num_static_categorical_features`' )
_lowercase =embedding_dimension
else:
_lowercase =[min(50 , (cat + 1) // 2 ) for cat in self.cardinality]
_lowercase =num_parallel_samples
# Transformer architecture configuration
_lowercase =input_size * len(self.lags_sequence ) + self._number_of_features
_lowercase =d_model
_lowercase =encoder_attention_heads
_lowercase =decoder_attention_heads
_lowercase =encoder_ffn_dim
_lowercase =decoder_ffn_dim
_lowercase =encoder_layers
_lowercase =decoder_layers
_lowercase =dropout
_lowercase =attention_dropout
_lowercase =activation_dropout
_lowercase =encoder_layerdrop
_lowercase =decoder_layerdrop
_lowercase =activation_function
_lowercase =init_std
_lowercase =use_cache
# Autoformer
_lowercase =label_length
_lowercase =moving_average
_lowercase =autocorrelation_factor
super().__init__(is_encoder_decoder=snake_case_ , **snake_case_ )
@property
def A__ ( self ) -> int:
'''simple docstring'''
return (
sum(self.embedding_dimension )
+ self.num_dynamic_real_features
+ self.num_time_features
+ self.num_static_real_features
+ self.input_size * 2 # the log1p(abs(loc)) and log(scale) features
)
| 205
|
'''simple docstring'''
import argparse
import json
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import AutoImageProcessor, SwinConfig, SwinForImageClassification
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : Dict = SwinConfig()
snake_case__ : Optional[Any] = swin_name.split("""_""" )
snake_case__ : Any = name_split[1]
snake_case__ : List[Any] = int(name_split[4] )
snake_case__ : int = int(name_split[3][-1] )
if model_size == "tiny":
snake_case__ : List[Any] = 96
snake_case__ : int = (2, 2, 6, 2)
snake_case__ : int = (3, 6, 12, 24)
elif model_size == "small":
snake_case__ : Union[str, Any] = 96
snake_case__ : Optional[Any] = (2, 2, 18, 2)
snake_case__ : str = (3, 6, 12, 24)
elif model_size == "base":
snake_case__ : Dict = 128
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : Dict = (4, 8, 16, 32)
else:
snake_case__ : List[str] = 192
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : List[Any] = (6, 12, 24, 48)
if "in22k" in swin_name:
snake_case__ : str = 21_841
else:
snake_case__ : List[str] = 1_000
snake_case__ : int = """huggingface/label-files"""
snake_case__ : Any = """imagenet-1k-id2label.json"""
snake_case__ : List[Any] = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : Dict = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : Optional[int] = idalabel
snake_case__ : List[Any] = {v: k for k, v in idalabel.items()}
snake_case__ : List[Any] = img_size
snake_case__ : Dict = num_classes
snake_case__ : Dict = embed_dim
snake_case__ : Optional[int] = depths
snake_case__ : int = num_heads
snake_case__ : Optional[int] = window_size
return config
def __snake_case( _lowerCAmelCase ) -> Dict:
if "patch_embed.proj" in name:
snake_case__ : List[str] = name.replace("""patch_embed.proj""" , """embeddings.patch_embeddings.projection""" )
if "patch_embed.norm" in name:
snake_case__ : int = name.replace("""patch_embed.norm""" , """embeddings.norm""" )
if "layers" in name:
snake_case__ : str = """encoder.""" + name
if "attn.proj" in name:
snake_case__ : List[str] = name.replace("""attn.proj""" , """attention.output.dense""" )
if "attn" in name:
snake_case__ : Tuple = name.replace("""attn""" , """attention.self""" )
if "norm1" in name:
snake_case__ : List[str] = name.replace("""norm1""" , """layernorm_before""" )
if "norm2" in name:
snake_case__ : Optional[Any] = name.replace("""norm2""" , """layernorm_after""" )
if "mlp.fc1" in name:
snake_case__ : Union[str, Any] = name.replace("""mlp.fc1""" , """intermediate.dense""" )
if "mlp.fc2" in name:
snake_case__ : Dict = name.replace("""mlp.fc2""" , """output.dense""" )
if name == "norm.weight":
snake_case__ : Tuple = """layernorm.weight"""
if name == "norm.bias":
snake_case__ : Union[str, Any] = """layernorm.bias"""
if "head" in name:
snake_case__ : Optional[int] = name.replace("""head""" , """classifier""" )
else:
snake_case__ : List[str] = """swin.""" + name
return name
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Optional[Any]:
for key in orig_state_dict.copy().keys():
snake_case__ : Optional[int] = orig_state_dict.pop(_lowerCAmelCase )
if "mask" in key:
continue
elif "qkv" in key:
snake_case__ : Dict = key.split(""".""" )
snake_case__ : Optional[int] = int(key_split[1] )
snake_case__ : Union[str, Any] = int(key_split[3] )
snake_case__ : List[Any] = model.swin.encoder.layers[layer_num].blocks[block_num].attention.self.all_head_size
if "weight" in key:
snake_case__ : Optional[Any] = val[:dim, :]
snake_case__ : Tuple = val[
dim : dim * 2, :
]
snake_case__ : Dict = val[-dim:, :]
else:
snake_case__ : Tuple = val[
:dim
]
snake_case__ : int = val[
dim : dim * 2
]
snake_case__ : int = val[
-dim:
]
else:
snake_case__ : Union[str, Any] = val
return orig_state_dict
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
snake_case__ : Optional[int] = get_swin_config(_lowerCAmelCase )
snake_case__ : Optional[Any] = SwinForImageClassification(_lowerCAmelCase )
model.eval()
snake_case__ : str = convert_state_dict(timm_model.state_dict() , _lowerCAmelCase )
model.load_state_dict(_lowerCAmelCase )
snake_case__ : int = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Dict = AutoImageProcessor.from_pretrained("""microsoft/{}""".format(swin_name.replace("""_""" , """-""" ) ) )
snake_case__ : Dict = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
snake_case__ : Optional[int] = image_processor(images=_lowerCAmelCase , return_tensors="""pt""" )
snake_case__ : Optional[Any] = timm_model(inputs["""pixel_values"""] )
snake_case__ : str = model(**_lowerCAmelCase ).logits
assert torch.allclose(_lowerCAmelCase , _lowerCAmelCase , atol=1e-3 )
print(f"Saving model {swin_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--swin_name",
default="swin_tiny_patch4_window7_224",
type=str,
help="Name of the Swin timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_swin_checkpoint(args.swin_name, args.pytorch_dump_folder_path)
| 35
| 0
|
import numpy as np
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : List[Any] ) -> np.ndarray:
"""simple docstring"""
return 1 / (1 + np.exp(-vector ))
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : Tuple ) -> np.ndarray:
"""simple docstring"""
return vector * sigmoid(_lowerCAmelCase )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 38
|
'''simple docstring'''
import warnings
from ...utils import logging
from .image_processing_beit import BeitImageProcessor
__a = logging.get_logger(__name__)
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def __init__( self : List[str] , *snake_case_ : str , **snake_case_ : List[str] ):
warnings.warn(
"""The class BeitFeatureExtractor is deprecated and will be removed in version 5 of Transformers. Please"""
""" use BeitImageProcessor instead.""" , snake_case_ , )
super().__init__(*snake_case_ , **snake_case_ )
| 35
| 0
|
"""simple docstring"""
import argparse
import os
import re
_UpperCamelCase : Any = "src/transformers"
# Pattern that looks at the indentation in a line.
_UpperCamelCase : List[Any] = re.compile(r"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
_UpperCamelCase : List[str] = re.compile(r"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
_UpperCamelCase : Dict = re.compile(r"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
_UpperCamelCase : Any = re.compile(r"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
_UpperCamelCase : Union[str, Any] = re.compile(r"\[([^\]]+)\]")
def a_ ( _lowerCAmelCase : List[str] ):
'''simple docstring'''
lowercase__ : int = _re_indent.search(_lowerCAmelCase )
return "" if search is None else search.groups()[0]
def a_ ( _lowerCAmelCase : Tuple , _lowerCAmelCase : List[str]="" , _lowerCAmelCase : List[str]=None , _lowerCAmelCase : Dict=None ):
'''simple docstring'''
lowercase__ : str = 0
lowercase__ : Union[str, Any] = code.split('\n' )
if start_prompt is not None:
while not lines[index].startswith(_lowerCAmelCase ):
index += 1
lowercase__ : Tuple = ["""\n""".join(lines[:index] )]
else:
lowercase__ : List[str] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
lowercase__ : Optional[int] = [lines[index]]
index += 1
while index < len(_lowerCAmelCase ) and (end_prompt is None or not lines[index].startswith(_lowerCAmelCase )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(_lowerCAmelCase ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + ' ' ):
current_block.append(lines[index] )
blocks.append('\n'.join(_lowerCAmelCase ) )
if index < len(_lowerCAmelCase ) - 1:
lowercase__ : str = [lines[index + 1]]
index += 1
else:
lowercase__ : int = []
else:
blocks.append('\n'.join(_lowerCAmelCase ) )
lowercase__ : Optional[Any] = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(_lowerCAmelCase ) > 0:
blocks.append('\n'.join(_lowerCAmelCase ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(_lowerCAmelCase ):
blocks.append('\n'.join(lines[index:] ) )
return blocks
def a_ ( _lowerCAmelCase : str ):
'''simple docstring'''
def _inner(_lowerCAmelCase : Dict ):
return key(_lowerCAmelCase ).lower().replace('_' , '' )
return _inner
def a_ ( _lowerCAmelCase : Dict , _lowerCAmelCase : Union[str, Any]=None ):
'''simple docstring'''
def noop(_lowerCAmelCase : List[Any] ):
return x
if key is None:
lowercase__ : Optional[int] = noop
# Constants are all uppercase, they go first.
lowercase__ : Optional[int] = [obj for obj in objects if key(_lowerCAmelCase ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
lowercase__ : int = [obj for obj in objects if key(_lowerCAmelCase )[0].isupper() and not key(_lowerCAmelCase ).isupper()]
# Functions begin with a lowercase, they go last.
lowercase__ : str = [obj for obj in objects if not key(_lowerCAmelCase )[0].isupper()]
lowercase__ : List[str] = ignore_underscore(_lowerCAmelCase )
return sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase )
def a_ ( _lowerCAmelCase : List[str] ):
'''simple docstring'''
def _replace(_lowerCAmelCase : Union[str, Any] ):
lowercase__ : Union[str, Any] = match.groups()[0]
if "," not in imports:
return f"""[{imports}]"""
lowercase__ : int = [part.strip().replace('\"' , '' ) for part in imports.split(',' )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
lowercase__ : List[str] = keys[:-1]
return "[" + ", ".join([f"""\"{k}\"""" for k in sort_objects(_lowerCAmelCase )] ) + "]"
lowercase__ : str = import_statement.split('\n' )
if len(_lowerCAmelCase ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
lowercase__ : Dict = 2 if lines[1].strip() == """[""" else 1
lowercase__ : str = [(i, _re_strip_line.search(_lowerCAmelCase ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
lowercase__ : str = sort_objects(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )
lowercase__ : Union[str, Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(_lowerCAmelCase ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
lowercase__ : Union[str, Any] = _re_bracket_content.sub(_replace , lines[1] )
else:
lowercase__ : List[Any] = [part.strip().replace('\"' , '' ) for part in lines[1].split(',' )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
lowercase__ : List[str] = keys[:-1]
lowercase__ : int = get_indent(lines[1] ) + """, """.join([f"""\"{k}\"""" for k in sort_objects(_lowerCAmelCase )] )
return "\n".join(_lowerCAmelCase )
else:
# Finally we have to deal with imports fitting on one line
lowercase__ : Optional[Any] = _re_bracket_content.sub(_replace , _lowerCAmelCase )
return import_statement
def a_ ( _lowerCAmelCase : int , _lowerCAmelCase : Optional[int]=True ):
'''simple docstring'''
with open(_lowerCAmelCase , encoding='utf-8' ) as f:
lowercase__ : Optional[int] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
lowercase__ : Optional[int] = split_code_in_indented_blocks(
_lowerCAmelCase , start_prompt='_import_structure = {' , end_prompt='if TYPE_CHECKING:' )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(_lowerCAmelCase ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
lowercase__ : Optional[Any] = main_blocks[block_idx]
lowercase__ : Dict = block.split('\n' )
# Get to the start of the imports.
lowercase__ : Dict = 0
while line_idx < len(_lowerCAmelCase ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
lowercase__ : Union[str, Any] = len(_lowerCAmelCase )
else:
line_idx += 1
if line_idx >= len(_lowerCAmelCase ):
continue
# Ignore beginning and last line: they don't contain anything.
lowercase__ : List[str] = """\n""".join(block_lines[line_idx:-1] )
lowercase__ : str = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
lowercase__ : Optional[int] = split_code_in_indented_blocks(_lowerCAmelCase , indent_level=_lowerCAmelCase )
# We have two categories of import key: list or _import_structure[key].append/extend
lowercase__ : Tuple = _re_direct_key if """_import_structure = {""" in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
lowercase__ : Optional[Any] = [(pattern.search(_lowerCAmelCase ).groups()[0] if pattern.search(_lowerCAmelCase ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
lowercase__ : Dict = [(i, key) for i, key in enumerate(_lowerCAmelCase ) if key is not None]
lowercase__ : Union[str, Any] = [x[0] for x in sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
lowercase__ : List[Any] = 0
lowercase__ : Optional[Any] = []
for i in range(len(_lowerCAmelCase ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
lowercase__ : Optional[Any] = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(_lowerCAmelCase )
count += 1
# And we put our main block back together with its first and last line.
lowercase__ : Dict = """\n""".join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(_lowerCAmelCase ):
if check_only:
return True
else:
print(f"""Overwriting {file}.""" )
with open(_lowerCAmelCase , 'w' , encoding='utf-8' ) as f:
f.write('\n'.join(_lowerCAmelCase ) )
def a_ ( _lowerCAmelCase : List[Any]=True ):
'''simple docstring'''
lowercase__ : str = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
lowercase__ : Union[str, Any] = sort_imports(os.path.join(_lowerCAmelCase , '__init__.py' ) , check_only=_lowerCAmelCase )
if result:
lowercase__ : Union[str, Any] = [os.path.join(_lowerCAmelCase , '__init__.py' )]
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"""Would overwrite {len(_lowerCAmelCase )} files, run `make style`.""" )
if __name__ == "__main__":
_UpperCamelCase : Optional[int] = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
_UpperCamelCase : int = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 77
|
'''simple docstring'''
import logging
from dataclasses import dataclass, field
from pathlib import Path
from typing import Optional, Union
from .generation.configuration_utils import GenerationConfig
from .training_args import TrainingArguments
from .utils import add_start_docstrings
__a = logging.getLogger(__name__)
@dataclass
@add_start_docstrings(TrainingArguments.__doc__ )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = field(default=_a , metadata={"help": "Whether to use SortishSampler or not."} )
lowercase = field(
default=_a , metadata={"help": "Whether to use generate to calculate generative metrics (ROUGE, BLEU)."} )
lowercase = field(
default=_a , metadata={
"help": (
"The `max_length` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `max_length` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": (
"The `num_beams` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `num_beams` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": "Model id, file path or url pointing to a GenerationConfig json file, to use during prediction."
} , )
def lowerCamelCase ( self : List[str] ):
snake_case__ : int = super().to_dict()
for k, v in d.items():
if isinstance(snake_case_ , snake_case_ ):
snake_case__ : Optional[int] = v.to_dict()
return d
| 35
| 0
|
'''simple docstring'''
from transformers import BertTokenizerFast
from .custom_tokenization import CustomTokenizer
class __A ( _a ):
a__ : Tuple = CustomTokenizer
pass
| 1
|
'''simple docstring'''
import argparse
import json
from pathlib import Path
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import DeiTConfig, DeiTForImageClassificationWithTeacher, DeiTImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=False ) -> str:
snake_case__ : Union[str, Any] = []
for i in range(config.num_hidden_layers ):
# encoder layers: output projection, 2 feedforward neural networks and 2 layernorms
rename_keys.append((f"blocks.{i}.norm1.weight", f"deit.encoder.layer.{i}.layernorm_before.weight") )
rename_keys.append((f"blocks.{i}.norm1.bias", f"deit.encoder.layer.{i}.layernorm_before.bias") )
rename_keys.append((f"blocks.{i}.attn.proj.weight", f"deit.encoder.layer.{i}.attention.output.dense.weight") )
rename_keys.append((f"blocks.{i}.attn.proj.bias", f"deit.encoder.layer.{i}.attention.output.dense.bias") )
rename_keys.append((f"blocks.{i}.norm2.weight", f"deit.encoder.layer.{i}.layernorm_after.weight") )
rename_keys.append((f"blocks.{i}.norm2.bias", f"deit.encoder.layer.{i}.layernorm_after.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc1.weight", f"deit.encoder.layer.{i}.intermediate.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc1.bias", f"deit.encoder.layer.{i}.intermediate.dense.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc2.weight", f"deit.encoder.layer.{i}.output.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc2.bias", f"deit.encoder.layer.{i}.output.dense.bias") )
# projection layer + position embeddings
rename_keys.extend(
[
("""cls_token""", """deit.embeddings.cls_token"""),
("""dist_token""", """deit.embeddings.distillation_token"""),
("""patch_embed.proj.weight""", """deit.embeddings.patch_embeddings.projection.weight"""),
("""patch_embed.proj.bias""", """deit.embeddings.patch_embeddings.projection.bias"""),
("""pos_embed""", """deit.embeddings.position_embeddings"""),
] )
if base_model:
# layernorm + pooler
rename_keys.extend(
[
("""norm.weight""", """layernorm.weight"""),
("""norm.bias""", """layernorm.bias"""),
("""pre_logits.fc.weight""", """pooler.dense.weight"""),
("""pre_logits.fc.bias""", """pooler.dense.bias"""),
] )
# if just the base model, we should remove "deit" from all keys that start with "deit"
snake_case__ : List[Any] = [(pair[0], pair[1][4:]) if pair[1].startswith("""deit""" ) else pair for pair in rename_keys]
else:
# layernorm + classification heads
rename_keys.extend(
[
("""norm.weight""", """deit.layernorm.weight"""),
("""norm.bias""", """deit.layernorm.bias"""),
("""head.weight""", """cls_classifier.weight"""),
("""head.bias""", """cls_classifier.bias"""),
("""head_dist.weight""", """distillation_classifier.weight"""),
("""head_dist.bias""", """distillation_classifier.bias"""),
] )
return rename_keys
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> Union[str, Any]:
for i in range(config.num_hidden_layers ):
if base_model:
snake_case__ : Tuple = """"""
else:
snake_case__ : Dict = """deit."""
# read in weights + bias of input projection layer (in timm, this is a single matrix + bias)
snake_case__ : Optional[Any] = state_dict.pop(f"blocks.{i}.attn.qkv.weight" )
snake_case__ : Tuple = state_dict.pop(f"blocks.{i}.attn.qkv.bias" )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[
: config.hidden_size, :
]
snake_case__ : Optional[int] = in_proj_bias[: config.hidden_size]
snake_case__ : Any = in_proj_weight[
config.hidden_size : config.hidden_size * 2, :
]
snake_case__ : str = in_proj_bias[
config.hidden_size : config.hidden_size * 2
]
snake_case__ : List[str] = in_proj_weight[
-config.hidden_size :, :
]
snake_case__ : Tuple = in_proj_bias[-config.hidden_size :]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : str = dct.pop(_lowerCAmelCase )
snake_case__ : Tuple = val
def __snake_case( ) -> Tuple:
snake_case__ : Union[str, Any] = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Optional[int] = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
return im
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> str:
snake_case__ : Optional[int] = DeiTConfig()
# all deit models have fine-tuned heads
snake_case__ : Union[str, Any] = False
# dataset (fine-tuned on ImageNet 2012), patch_size and image_size
snake_case__ : int = 1_000
snake_case__ : Any = """huggingface/label-files"""
snake_case__ : Optional[Any] = """imagenet-1k-id2label.json"""
snake_case__ : Tuple = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : List[Any] = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : List[Any] = idalabel
snake_case__ : List[str] = {v: k for k, v in idalabel.items()}
snake_case__ : Tuple = int(deit_name[-6:-4] )
snake_case__ : Optional[Any] = int(deit_name[-3:] )
# size of the architecture
if deit_name[9:].startswith("""tiny""" ):
snake_case__ : Tuple = 192
snake_case__ : Union[str, Any] = 768
snake_case__ : Tuple = 12
snake_case__ : Union[str, Any] = 3
elif deit_name[9:].startswith("""small""" ):
snake_case__ : str = 384
snake_case__ : Any = 1_536
snake_case__ : str = 12
snake_case__ : int = 6
if deit_name[9:].startswith("""base""" ):
pass
elif deit_name[4:].startswith("""large""" ):
snake_case__ : Union[str, Any] = 1_024
snake_case__ : Any = 4_096
snake_case__ : List[Any] = 24
snake_case__ : Tuple = 16
# load original model from timm
snake_case__ : List[Any] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
# load state_dict of original model, remove and rename some keys
snake_case__ : Optional[Any] = timm_model.state_dict()
snake_case__ : Optional[int] = create_rename_keys(_lowerCAmelCase , _lowerCAmelCase )
for src, dest in rename_keys:
rename_key(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
read_in_q_k_v(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
# load HuggingFace model
snake_case__ : Optional[Any] = DeiTForImageClassificationWithTeacher(_lowerCAmelCase ).eval()
model.load_state_dict(_lowerCAmelCase )
# Check outputs on an image, prepared by DeiTImageProcessor
snake_case__ : List[Any] = int(
(256 / 224) * config.image_size ) # to maintain same ratio w.r.t. 224 images, see https://github.com/facebookresearch/deit/blob/ab5715372db8c6cad5740714b2216d55aeae052e/datasets.py#L103
snake_case__ : Optional[Any] = DeiTImageProcessor(size=_lowerCAmelCase , crop_size=config.image_size )
snake_case__ : str = image_processor(images=prepare_img() , return_tensors="""pt""" )
snake_case__ : Optional[Any] = encoding["""pixel_values"""]
snake_case__ : Tuple = model(_lowerCAmelCase )
snake_case__ : Optional[int] = timm_model(_lowerCAmelCase )
assert timm_logits.shape == outputs.logits.shape
assert torch.allclose(_lowerCAmelCase , outputs.logits , atol=1e-3 )
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
print(f"Saving model {deit_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--deit_name",
default="vit_deit_base_distilled_patch16_224",
type=str,
help="Name of the DeiT timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_deit_checkpoint(args.deit_name, args.pytorch_dump_folder_path)
| 35
| 0
|
import logging
import os
from dataclasses import dataclass
from typing import List, Optional, Union
import tqdm
from filelock import FileLock
from transformers import (
BartTokenizer,
BartTokenizerFast,
DataProcessor,
PreTrainedTokenizer,
RobertaTokenizer,
RobertaTokenizerFast,
XLMRobertaTokenizer,
is_tf_available,
is_torch_available,
)
lowerCamelCase : Any = logging.getLogger(__name__)
@dataclass(frozen=_a )
class A:
'''simple docstring'''
UpperCamelCase = 42
UpperCamelCase = 42
UpperCamelCase = None
UpperCamelCase = None
UpperCamelCase = None
@dataclass(frozen=_a )
class A:
'''simple docstring'''
UpperCamelCase = 42
UpperCamelCase = None
UpperCamelCase = None
UpperCamelCase = None
UpperCamelCase = None
if is_torch_available():
import torch
from torch.utils.data import Dataset
class A( _a ):
'''simple docstring'''
UpperCamelCase = 42
def __init__( self : Optional[int] , A_ : str , A_ : PreTrainedTokenizer , A_ : str , A_ : Optional[int] = None , A_ : Dict=False , A_ : bool = False , ) -> Dict:
"""simple docstring"""
lowerCamelCase_ = hans_processors[task]()
lowerCamelCase_ = os.path.join(
snake_case_ , 'cached_{}_{}_{}_{}'.format(
'dev' if evaluate else 'train' , tokenizer.__class__.__name__ , str(snake_case_ ) , snake_case_ , ) , )
lowerCamelCase_ = processor.get_labels()
if tokenizer.__class__ in (
RobertaTokenizer,
RobertaTokenizerFast,
XLMRobertaTokenizer,
BartTokenizer,
BartTokenizerFast,
):
# HACK(label indices are swapped in RoBERTa pretrained model)
lowerCamelCase_ = label_list[2], label_list[1]
lowerCamelCase_ = label_list
# Make sure only the first process in distributed training processes the dataset,
# and the others will use the cache.
lowerCamelCase_ = cached_features_file + """.lock"""
with FileLock(snake_case_ ):
if os.path.exists(snake_case_ ) and not overwrite_cache:
logger.info(f"""Loading features from cached file {cached_features_file}""" )
lowerCamelCase_ = torch.load(snake_case_ )
else:
logger.info(f"""Creating features from dataset file at {data_dir}""" )
lowerCamelCase_ = (
processor.get_dev_examples(snake_case_ ) if evaluate else processor.get_train_examples(snake_case_ )
)
logger.info('Training examples: %s' , len(snake_case_ ) )
lowerCamelCase_ = hans_convert_examples_to_features(snake_case_ , snake_case_ , snake_case_ , snake_case_ )
logger.info('Saving features into cached file %s' , snake_case_ )
torch.save(self.features , snake_case_ )
def __len__( self : Any ) -> Any:
"""simple docstring"""
return len(self.features )
def __getitem__( self : int , A_ : Optional[int] ) -> List[Any]:
"""simple docstring"""
return self.features[i]
def a__ ( self : Optional[int] ) -> List[Any]:
"""simple docstring"""
return self.label_list
if is_tf_available():
import tensorflow as tf
class A:
'''simple docstring'''
UpperCamelCase = 42
def __init__( self : Optional[int] , A_ : str , A_ : PreTrainedTokenizer , A_ : str , A_ : Optional[int] = 128 , A_ : Union[str, Any]=False , A_ : bool = False , ) -> Optional[Any]:
"""simple docstring"""
lowerCamelCase_ = hans_processors[task]()
lowerCamelCase_ = processor.get_labels()
if tokenizer.__class__ in (
RobertaTokenizer,
RobertaTokenizerFast,
XLMRobertaTokenizer,
BartTokenizer,
BartTokenizerFast,
):
# HACK(label indices are swapped in RoBERTa pretrained model)
lowerCamelCase_ = label_list[2], label_list[1]
lowerCamelCase_ = label_list
lowerCamelCase_ = processor.get_dev_examples(snake_case_ ) if evaluate else processor.get_train_examples(snake_case_ )
lowerCamelCase_ = hans_convert_examples_to_features(snake_case_ , snake_case_ , snake_case_ , snake_case_ )
def gen():
for ex_index, ex in tqdm.tqdm(enumerate(self.features ) , desc='convert examples to features' ):
if ex_index % 10000 == 0:
logger.info('Writing example %d of %d' % (ex_index, len(snake_case_ )) )
yield (
{
"example_id": 0,
"input_ids": ex.input_ids,
"attention_mask": ex.attention_mask,
"token_type_ids": ex.token_type_ids,
},
ex.label,
)
lowerCamelCase_ = tf.data.Dataset.from_generator(
snake_case_ , (
{
'example_id': tf.intaa,
'input_ids': tf.intaa,
'attention_mask': tf.intaa,
'token_type_ids': tf.intaa,
},
tf.intaa,
) , (
{
'example_id': tf.TensorShape([] ),
'input_ids': tf.TensorShape([None, None] ),
'attention_mask': tf.TensorShape([None, None] ),
'token_type_ids': tf.TensorShape([None, None] ),
},
tf.TensorShape([] ),
) , )
def a__ ( self : Optional[Any] ) -> str:
"""simple docstring"""
return self.dataset
def __len__( self : List[str] ) -> str:
"""simple docstring"""
return len(self.features )
def __getitem__( self : List[Any] , A_ : Dict ) -> Tuple:
"""simple docstring"""
return self.features[i]
def a__ ( self : Dict ) -> Any:
"""simple docstring"""
return self.label_list
class A( _a ):
'''simple docstring'''
def a__ ( self : Dict , A_ : Tuple ) -> Any:
"""simple docstring"""
return self._create_examples(self._read_tsv(os.path.join(snake_case_ , 'heuristics_train_set.txt' ) ) , 'train' )
def a__ ( self : Optional[int] , A_ : Union[str, Any] ) -> str:
"""simple docstring"""
return self._create_examples(self._read_tsv(os.path.join(snake_case_ , 'heuristics_evaluation_set.txt' ) ) , 'dev' )
def a__ ( self : List[Any] ) -> str:
"""simple docstring"""
return ["contradiction", "entailment", "neutral"]
def a__ ( self : List[Any] , A_ : int , A_ : Optional[Any] ) -> Dict:
"""simple docstring"""
lowerCamelCase_ = []
for i, line in enumerate(snake_case_ ):
if i == 0:
continue
lowerCamelCase_ = """%s-%s""" % (set_type, line[0])
lowerCamelCase_ = line[5]
lowerCamelCase_ = line[6]
lowerCamelCase_ = line[7][2:] if line[7].startswith('ex' ) else line[7]
lowerCamelCase_ = line[0]
examples.append(InputExample(guid=snake_case_ , text_a=snake_case_ , text_b=snake_case_ , label=snake_case_ , pairID=snake_case_ ) )
return examples
def _SCREAMING_SNAKE_CASE ( lowercase : Any , lowercase : List[Any] , lowercase : Tuple , lowercase : Tuple , ):
'''simple docstring'''
lowerCamelCase_ = {label: i for i, label in enumerate(_lowerCAmelCase )}
lowerCamelCase_ = []
for ex_index, example in tqdm.tqdm(enumerate(_lowerCAmelCase ) , desc='convert examples to features' ):
if ex_index % 1_00_00 == 0:
logger.info('Writing example %d' % (ex_index) )
lowerCamelCase_ = tokenizer(
example.text_a , example.text_b , add_special_tokens=_lowerCAmelCase , max_length=_lowerCAmelCase , padding='max_length' , truncation=_lowerCAmelCase , return_overflowing_tokens=_lowerCAmelCase , )
lowerCamelCase_ = label_map[example.label] if example.label in label_map else 0
lowerCamelCase_ = int(example.pairID )
features.append(InputFeatures(**_lowerCAmelCase , label=_lowerCAmelCase , pairID=_lowerCAmelCase ) )
for i, example in enumerate(examples[:5] ):
logger.info('*** Example ***' )
logger.info(f"""guid: {example}""" )
logger.info(f"""features: {features[i]}""" )
return features
lowerCamelCase : Optional[Any] = {
"hans": 3,
}
lowerCamelCase : Optional[int] = {
"hans": HansProcessor,
}
| 204
|
'''simple docstring'''
import string
from math import logaa
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : List[str] = document.translate(
str.maketrans("""""" , """""" , string.punctuation ) ).replace("""\n""" , """""" )
snake_case__ : List[str] = document_without_punctuation.split(""" """ ) # word tokenization
return len([word for word in tokenize_document if word.lower() == term.lower()] )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> tuple[int, int]:
snake_case__ : Dict = corpus.lower().translate(
str.maketrans("""""" , """""" , string.punctuation ) ) # strip all punctuation and replace it with ''
snake_case__ : Any = corpus_without_punctuation.split("""\n""" )
snake_case__ : int = term.lower()
return (len([doc for doc in docs if term in doc] ), len(_lowerCAmelCase ))
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> float:
if smoothing:
if n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(1 + logaa(n / (1 + df) ) , 3 )
if df == 0:
raise ZeroDivisionError("""df must be > 0""" )
elif n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(logaa(n / df ) , 3 )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> float:
return round(tf * idf , 3 )
| 35
| 0
|
from __future__ import annotations
from random import random
from typing import Generic, TypeVar
a : Any = TypeVar('KT')
a : Optional[Any] = TypeVar('VT')
class _a ( Generic[KT, VT] ):
def __init__(self, SCREAMING_SNAKE_CASE_ = "root", SCREAMING_SNAKE_CASE_ = None ) -> Union[str, Any]:
UpperCAmelCase_: Union[str, Any] = key
UpperCAmelCase_: str = value
UpperCAmelCase_: list[Node[KT, VT]] = []
def __repr__(self ) -> Optional[Any]:
return f'Node({self.key}: {self.value})'
@property
def __snake_case (self ) -> List[Any]:
return len(self.forward )
class _a ( Generic[KT, VT] ):
def __init__(self, SCREAMING_SNAKE_CASE_ = 0.5, SCREAMING_SNAKE_CASE_ = 16 ) -> Optional[int]:
UpperCAmelCase_: Node[KT, VT] = Node[KT, VT]()
UpperCAmelCase_: Optional[Any] = 0
UpperCAmelCase_: Union[str, Any] = p
UpperCAmelCase_: int = max_level
def __str__(self ) -> str:
UpperCAmelCase_: str = list(self )
if len(snake_case_ ) == 0:
return f'SkipList(level={self.level})'
UpperCAmelCase_: Optional[Any] = max((len(str(snake_case_ ) ) for item in items), default=4 )
UpperCAmelCase_: Optional[Any] = max(snake_case_, 4 ) + 4
UpperCAmelCase_: Optional[Any] = self.head
UpperCAmelCase_: Dict = []
UpperCAmelCase_: Tuple = node.forward.copy()
lines.append(f'[{node.key}]'.ljust(snake_case_, """-""" ) + """* """ * len(snake_case_ ) )
lines.append(""" """ * label_size + """| """ * len(snake_case_ ) )
while len(node.forward ) != 0:
UpperCAmelCase_: Tuple = node.forward[0]
lines.append(
f'[{node.key}]'.ljust(snake_case_, """-""" )
+ """ """.join(str(n.key ) if n.key == node.key else """|""" for n in forwards ) )
lines.append(""" """ * label_size + """| """ * len(snake_case_ ) )
UpperCAmelCase_: List[str] = node.forward
lines.append("""None""".ljust(snake_case_ ) + """* """ * len(snake_case_ ) )
return f'SkipList(level={self.level})\n' + "\n".join(snake_case_ )
def __iter__(self ) -> Optional[Any]:
UpperCAmelCase_: int = self.head
while len(node.forward ) != 0:
yield node.forward[0].key
UpperCAmelCase_: Dict = node.forward[0]
def __snake_case (self ) -> str:
UpperCAmelCase_: Union[str, Any] = 1
while random() < self.p and level < self.max_level:
level += 1
return level
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> str:
UpperCAmelCase_: Optional[Any] = []
UpperCAmelCase_: Tuple = self.head
for i in reversed(range(self.level ) ):
# i < node.level - When node level is lesser than `i` decrement `i`.
# node.forward[i].key < key - Jumping to node with key value higher
# or equal to searched key would result
# in skipping searched key.
while i < node.level and node.forward[i].key < key:
UpperCAmelCase_: Dict = node.forward[i]
# Each leftmost node (relative to searched node) will potentially have to
# be updated.
update_vector.append(snake_case_ )
update_vector.reverse() # Note that we were inserting values in reverse order.
# len(node.forward) != 0 - If current node doesn't contain any further
# references then searched key is not present.
# node.forward[0].key == key - Next node key should be equal to search key
# if key is present.
if len(node.forward ) != 0 and node.forward[0].key == key:
return node.forward[0], update_vector
else:
return None, update_vector
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Dict:
UpperCAmelCase_: List[str] = self._locate_node(snake_case_ )
if node is not None:
for i, update_node in enumerate(snake_case_ ):
# Remove or replace all references to removed node.
if update_node.level > i and update_node.forward[i].key == key:
if node.level > i:
UpperCAmelCase_: Union[str, Any] = node.forward[i]
else:
UpperCAmelCase_: Any = update_node.forward[:i]
def __snake_case (self, SCREAMING_SNAKE_CASE_, SCREAMING_SNAKE_CASE_ ) -> Union[str, Any]:
UpperCAmelCase_: Optional[int] = self._locate_node(snake_case_ )
if node is not None:
UpperCAmelCase_: str = value
else:
UpperCAmelCase_: Tuple = self.random_level()
if level > self.level:
# After level increase we have to add additional nodes to head.
for _ in range(self.level - 1, snake_case_ ):
update_vector.append(self.head )
UpperCAmelCase_: int = level
UpperCAmelCase_: str = Node(snake_case_, snake_case_ )
for i, update_node in enumerate(update_vector[:level] ):
# Change references to pass through new node.
if update_node.level > i:
new_node.forward.append(update_node.forward[i] )
if update_node.level < i + 1:
update_node.forward.append(snake_case_ )
else:
UpperCAmelCase_: Union[str, Any] = new_node
def __snake_case (self, SCREAMING_SNAKE_CASE_ ) -> Union[str, Any]:
UpperCAmelCase_: Optional[Any] = self._locate_node(snake_case_ )
if node is not None:
return node.value
return None
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: str = SkipList()
skip_list.insert("""Key1""" , 3 )
skip_list.insert("""Key2""" , 1_2 )
skip_list.insert("""Key3""" , 4_1 )
skip_list.insert("""Key4""" , -1_9 )
UpperCAmelCase_: Dict = skip_list.head
UpperCAmelCase_: Dict = {}
while node.level != 0:
UpperCAmelCase_: Dict = node.forward[0]
UpperCAmelCase_: List[Any] = node.value
assert len(_lowerCAmelCase ) == 4
assert all_values["Key1"] == 3
assert all_values["Key2"] == 1_2
assert all_values["Key3"] == 4_1
assert all_values["Key4"] == -1_9
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: Union[str, Any] = SkipList()
skip_list.insert("""Key1""" , 1_0 )
skip_list.insert("""Key1""" , 1_2 )
skip_list.insert("""Key5""" , 7 )
skip_list.insert("""Key7""" , 1_0 )
skip_list.insert("""Key10""" , 5 )
skip_list.insert("""Key7""" , 7 )
skip_list.insert("""Key5""" , 5 )
skip_list.insert("""Key10""" , 1_0 )
UpperCAmelCase_: Tuple = skip_list.head
UpperCAmelCase_: int = {}
while node.level != 0:
UpperCAmelCase_: Any = node.forward[0]
UpperCAmelCase_: Optional[int] = node.value
if len(_lowerCAmelCase ) != 4:
print()
assert len(_lowerCAmelCase ) == 4
assert all_values["Key1"] == 1_2
assert all_values["Key7"] == 7
assert all_values["Key5"] == 5
assert all_values["Key10"] == 1_0
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: str = SkipList()
assert skip_list.find("""Some key""" ) is None
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: Dict = SkipList()
skip_list.insert("""Key2""" , 2_0 )
assert skip_list.find("""Key2""" ) == 2_0
skip_list.insert("""Some Key""" , 1_0 )
skip_list.insert("""Key2""" , 8 )
skip_list.insert("""V""" , 1_3 )
assert skip_list.find("""Y""" ) is None
assert skip_list.find("""Key2""" ) == 8
assert skip_list.find("""Some Key""" ) == 1_0
assert skip_list.find("""V""" ) == 1_3
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: int = SkipList()
skip_list.delete("""Some key""" )
assert len(skip_list.head.forward ) == 0
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: Tuple = SkipList()
skip_list.insert("""Key1""" , 1_2 )
skip_list.insert("""V""" , 1_3 )
skip_list.insert("""X""" , 1_4 )
skip_list.insert("""Key2""" , 1_5 )
skip_list.delete("""V""" )
skip_list.delete("""Key2""" )
assert skip_list.find("""V""" ) is None
assert skip_list.find("""Key2""" ) is None
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: Dict = SkipList()
skip_list.insert("""Key1""" , 1_2 )
skip_list.insert("""V""" , 1_3 )
skip_list.insert("""X""" , 1_4 )
skip_list.insert("""Key2""" , 1_5 )
skip_list.delete("""V""" )
assert skip_list.find("""V""" ) is None
assert skip_list.find("""X""" ) == 1_4
assert skip_list.find("""Key1""" ) == 1_2
assert skip_list.find("""Key2""" ) == 1_5
skip_list.delete("""X""" )
assert skip_list.find("""V""" ) is None
assert skip_list.find("""X""" ) is None
assert skip_list.find("""Key1""" ) == 1_2
assert skip_list.find("""Key2""" ) == 1_5
skip_list.delete("""Key1""" )
assert skip_list.find("""V""" ) is None
assert skip_list.find("""X""" ) is None
assert skip_list.find("""Key1""" ) is None
assert skip_list.find("""Key2""" ) == 1_5
skip_list.delete("""Key2""" )
assert skip_list.find("""V""" ) is None
assert skip_list.find("""X""" ) is None
assert skip_list.find("""Key1""" ) is None
assert skip_list.find("""Key2""" ) is None
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: Dict = SkipList()
skip_list.insert("""Key1""" , 1_2 )
skip_list.insert("""V""" , 1_3 )
skip_list.insert("""X""" , 1_4_2 )
skip_list.insert("""Key2""" , 1_5 )
skip_list.delete("""X""" )
def traverse_keys(lowerCAmelCase__: Union[str, Any] ):
yield node.key
for forward_node in node.forward:
yield from traverse_keys(_lowerCAmelCase )
assert len(set(traverse_keys(skip_list.head ) ) ) == 4
def lowerCAmelCase_ ():
"""simple docstring"""
def is_sorted(lowerCAmelCase__: Optional[int] ):
return all(next_item >= item for item, next_item in zip(_lowerCAmelCase , lst[1:] ) )
UpperCAmelCase_: Optional[Any] = SkipList()
for i in range(1_0 ):
skip_list.insert(_lowerCAmelCase , _lowerCAmelCase )
assert is_sorted(list(_lowerCAmelCase ) )
skip_list.delete(5 )
skip_list.delete(8 )
skip_list.delete(2 )
assert is_sorted(list(_lowerCAmelCase ) )
skip_list.insert(-1_2 , -1_2 )
skip_list.insert(7_7 , 7_7 )
assert is_sorted(list(_lowerCAmelCase ) )
def lowerCAmelCase_ ():
"""simple docstring"""
for _ in range(1_0_0 ):
# Repeat test 100 times due to the probabilistic nature of skip list
# random values == random bugs
test_insert()
test_insert_overrides_existing_value()
test_searching_empty_list_returns_none()
test_search()
test_deleting_item_from_empty_list_do_nothing()
test_deleted_items_are_not_founded_by_find_method()
test_delete_removes_only_given_key()
test_delete_doesnt_leave_dead_nodes()
test_iter_always_yields_sorted_values()
def lowerCAmelCase_ ():
"""simple docstring"""
UpperCAmelCase_: Any = SkipList()
skip_list.insert(2 , """2""" )
skip_list.insert(4 , """4""" )
skip_list.insert(6 , """4""" )
skip_list.insert(4 , """5""" )
skip_list.insert(8 , """4""" )
skip_list.insert(9 , """4""" )
skip_list.delete(4 )
print(_lowerCAmelCase )
if __name__ == "__main__":
import doctest
doctest.testmod()
main()
| 147
|
'''simple docstring'''
from __future__ import annotations
import inspect
import unittest
import numpy as np
from transformers import ResNetConfig
from transformers.testing_utils import require_tf, require_vision, slow
from transformers.utils import cached_property, is_tf_available, is_vision_available
from ...test_configuration_common import ConfigTester
from ...test_modeling_tf_common import TFModelTesterMixin, floats_tensor, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_tf_available():
import tensorflow as tf
from transformers import TFResNetForImageClassification, TFResNetModel
from transformers.models.resnet.modeling_tf_resnet import TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST
if is_vision_available():
from PIL import Image
from transformers import AutoImageProcessor
class UpperCAmelCase_ :
"""simple docstring"""
def __init__( self : int , snake_case_ : Tuple , snake_case_ : List[str]=3 , snake_case_ : Tuple=32 , snake_case_ : List[Any]=3 , snake_case_ : List[str]=10 , snake_case_ : List[str]=[10, 20, 30, 40] , snake_case_ : Tuple=[1, 1, 2, 1] , snake_case_ : Tuple=True , snake_case_ : str=True , snake_case_ : int="relu" , snake_case_ : List[Any]=3 , snake_case_ : str=None , ):
snake_case__ : List[Any] = parent
snake_case__ : List[Any] = batch_size
snake_case__ : int = image_size
snake_case__ : List[Any] = num_channels
snake_case__ : Optional[Any] = embeddings_size
snake_case__ : Optional[int] = hidden_sizes
snake_case__ : Tuple = depths
snake_case__ : Any = is_training
snake_case__ : Optional[int] = use_labels
snake_case__ : Optional[int] = hidden_act
snake_case__ : Optional[int] = num_labels
snake_case__ : int = scope
snake_case__ : Tuple = len(snake_case_ )
def lowerCamelCase ( self : Any ):
snake_case__ : Union[str, Any] = floats_tensor([self.batch_size, self.num_channels, self.image_size, self.image_size] )
snake_case__ : Union[str, Any] = None
if self.use_labels:
snake_case__ : Optional[Any] = ids_tensor([self.batch_size] , self.num_labels )
snake_case__ : List[str] = self.get_config()
return config, pixel_values, labels
def lowerCamelCase ( self : int ):
return ResNetConfig(
num_channels=self.num_channels , embeddings_size=self.embeddings_size , hidden_sizes=self.hidden_sizes , depths=self.depths , hidden_act=self.hidden_act , num_labels=self.num_labels , image_size=self.image_size , )
def lowerCamelCase ( self : Tuple , snake_case_ : Tuple , snake_case_ : List[Any] , snake_case_ : Optional[int] ):
snake_case__ : Optional[Any] = TFResNetModel(config=snake_case_ )
snake_case__ : int = model(snake_case_ )
# expected last hidden states: B, C, H // 32, W // 32
self.parent.assertEqual(
result.last_hidden_state.shape , (self.batch_size, self.hidden_sizes[-1], self.image_size // 32, self.image_size // 32) , )
def lowerCamelCase ( self : List[str] , snake_case_ : List[str] , snake_case_ : str , snake_case_ : Union[str, Any] ):
snake_case__ : str = self.num_labels
snake_case__ : Optional[int] = TFResNetForImageClassification(snake_case_ )
snake_case__ : Tuple = model(snake_case_ , labels=snake_case_ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.num_labels) )
def lowerCamelCase ( self : Tuple ):
snake_case__ : List[Any] = self.prepare_config_and_inputs()
snake_case__ , snake_case__ , snake_case__ : str = config_and_inputs
snake_case__ : int = {"""pixel_values""": pixel_values}
return config, inputs_dict
@require_tf
class UpperCAmelCase_ ( _a , _a , unittest.TestCase ):
"""simple docstring"""
lowercase = (TFResNetModel, TFResNetForImageClassification) if is_tf_available() else ()
lowercase = (
{"feature-extraction": TFResNetModel, "image-classification": TFResNetForImageClassification}
if is_tf_available()
else {}
)
lowercase = False
lowercase = False
lowercase = False
lowercase = False
lowercase = False
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Tuple = TFResNetModelTester(self )
snake_case__ : List[str] = ConfigTester(self , config_class=snake_case_ , has_text_modality=snake_case_ )
def lowerCamelCase ( self : Dict ):
self.create_and_test_config_common_properties()
self.config_tester.create_and_test_config_to_json_string()
self.config_tester.create_and_test_config_to_json_file()
self.config_tester.create_and_test_config_from_and_save_pretrained()
self.config_tester.create_and_test_config_with_num_labels()
self.config_tester.check_config_can_be_init_without_params()
self.config_tester.check_config_arguments_init()
def lowerCamelCase ( self : str ):
return
@unittest.skip(reason="""ResNet does not use inputs_embeds""" )
def lowerCamelCase ( self : int ):
pass
@unittest.skip(reason="""ResNet does not support input and output embeddings""" )
def lowerCamelCase ( self : List[Any] ):
pass
def lowerCamelCase ( self : List[Any] ):
snake_case__ , snake_case__ : List[Any] = self.model_tester.prepare_config_and_inputs_for_common()
for model_class in self.all_model_classes:
snake_case__ : Dict = model_class(snake_case_ )
snake_case__ : Optional[Any] = inspect.signature(model.call )
# signature.parameters is an OrderedDict => so arg_names order is deterministic
snake_case__ : Union[str, Any] = [*signature.parameters.keys()]
snake_case__ : Optional[int] = ["""pixel_values"""]
self.assertListEqual(arg_names[:1] , snake_case_ )
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_model(*snake_case_ )
def lowerCamelCase ( self : List[str] ):
def check_hidden_states_output(snake_case_ : Any , snake_case_ : Any , snake_case_ : List[str] ):
snake_case__ : List[Any] = model_class(snake_case_ )
snake_case__ : Dict = model(**self._prepare_for_class(snake_case_ , snake_case_ ) )
snake_case__ : str = outputs.encoder_hidden_states if config.is_encoder_decoder else outputs.hidden_states
snake_case__ : List[Any] = self.model_tester.num_stages
self.assertEqual(len(snake_case_ ) , expected_num_stages + 1 )
# ResNet's feature maps are of shape (batch_size, num_channels, height, width)
self.assertListEqual(
list(hidden_states[0].shape[-2:] ) , [self.model_tester.image_size // 4, self.model_tester.image_size // 4] , )
snake_case__ , snake_case__ : Any = self.model_tester.prepare_config_and_inputs_for_common()
snake_case__ : List[Any] = ["""basic""", """bottleneck"""]
for model_class in self.all_model_classes:
for layer_type in layers_type:
snake_case__ : Dict = layer_type
snake_case__ : Optional[int] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
# check that output_hidden_states also work using config
del inputs_dict["output_hidden_states"]
snake_case__ : List[Any] = True
check_hidden_states_output(snake_case_ , snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Tuple = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_for_image_classification(*snake_case_ )
@slow
def lowerCamelCase ( self : Optional[Any] ):
for model_name in TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
snake_case__ : str = TFResNetModel.from_pretrained(snake_case_ )
self.assertIsNotNone(snake_case_ )
def __snake_case( ) -> Optional[int]:
snake_case__ : Optional[Any] = Image.open("""./tests/fixtures/tests_samples/COCO/000000039769.png""" )
return image
@require_tf
@require_vision
class UpperCAmelCase_ ( unittest.TestCase ):
"""simple docstring"""
@cached_property
def lowerCamelCase ( self : List[Any] ):
return (
AutoImageProcessor.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
if is_vision_available()
else None
)
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : List[str] = TFResNetForImageClassification.from_pretrained(TF_RESNET_PRETRAINED_MODEL_ARCHIVE_LIST[0] )
snake_case__ : List[Any] = self.default_image_processor
snake_case__ : List[Any] = prepare_img()
snake_case__ : List[str] = image_processor(images=snake_case_ , return_tensors="""tf""" )
# forward pass
snake_case__ : Optional[Any] = model(**snake_case_ )
# verify the logits
snake_case__ : Union[str, Any] = tf.TensorShape((1, 1_000) )
self.assertEqual(outputs.logits.shape , snake_case_ )
snake_case__ : List[str] = tf.constant([-11.1069, -9.7877, -8.3777] )
self.assertTrue(np.allclose(outputs.logits[0, :3].numpy() , snake_case_ , atol=1E-4 ) )
| 35
| 0
|
import inspect
import os
import torch
from transformers import AutoModel
from transformers.testing_utils import mockenv_context
from transformers.trainer_utils import set_seed
import accelerate
from accelerate.accelerator import Accelerator
from accelerate.state import AcceleratorState
from accelerate.test_utils.testing import (
AccelerateTestCase,
TempDirTestCase,
execute_subprocess_async,
require_cuda,
require_fsdp,
require_multi_gpu,
slow,
)
from accelerate.utils.constants import (
FSDP_AUTO_WRAP_POLICY,
FSDP_BACKWARD_PREFETCH,
FSDP_SHARDING_STRATEGY,
FSDP_STATE_DICT_TYPE,
)
from accelerate.utils.dataclasses import FullyShardedDataParallelPlugin
from accelerate.utils.other import patch_environment
set_seed(42)
__lowerCAmelCase : int = 'bert-base-cased'
__lowerCAmelCase : List[str] = 'fp16'
__lowerCAmelCase : Any = 'bf16'
__lowerCAmelCase : Optional[Any] = [FPaa, BFaa]
@require_fsdp
@require_cuda
class UpperCAmelCase_ ( _a ):
'''simple docstring'''
def _lowercase ( self : Optional[int] ) -> Optional[Any]:
"""simple docstring"""
super().setUp()
__magic_name__ = dict(
ACCELERATE_USE_FSDP="""true""" , MASTER_ADDR="""localhost""" , MASTER_PORT="""10999""" , RANK="""0""" , LOCAL_RANK="""0""" , WORLD_SIZE="""1""" , )
def _lowercase ( self : Union[str, Any] ) -> str:
"""simple docstring"""
from torch.distributed.fsdp.fully_sharded_data_parallel import ShardingStrategy
for i, strategy in enumerate(snake_case_ ):
__magic_name__ = self.dist_env.copy()
__magic_name__ = F'''{i + 1}'''
__magic_name__ = strategy
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
self.assertEqual(fsdp_plugin.sharding_strategy , ShardingStrategy(i + 1 ) )
def _lowercase ( self : List[str] ) -> str:
"""simple docstring"""
from torch.distributed.fsdp.fully_sharded_data_parallel import BackwardPrefetch
for i, prefetch_policy in enumerate(snake_case_ ):
__magic_name__ = self.dist_env.copy()
__magic_name__ = prefetch_policy
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
if prefetch_policy == "NO_PREFETCH":
self.assertIsNone(fsdp_plugin.backward_prefetch )
else:
self.assertEqual(fsdp_plugin.backward_prefetch , BackwardPrefetch(i + 1 ) )
def _lowercase ( self : Dict ) -> Dict:
"""simple docstring"""
from torch.distributed.fsdp.fully_sharded_data_parallel import StateDictType
for i, state_dict_type in enumerate(snake_case_ ):
__magic_name__ = self.dist_env.copy()
__magic_name__ = state_dict_type
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
self.assertEqual(fsdp_plugin.state_dict_type , StateDictType(i + 1 ) )
if state_dict_type == "FULL_STATE_DICT":
self.assertTrue(fsdp_plugin.state_dict_config.offload_to_cpu )
self.assertTrue(fsdp_plugin.state_dict_config.ranka_only )
def _lowercase ( self : Tuple ) -> Optional[int]:
"""simple docstring"""
__magic_name__ = AutoModel.from_pretrained(snake_case_ )
for policy in FSDP_AUTO_WRAP_POLICY:
__magic_name__ = self.dist_env.copy()
__magic_name__ = policy
if policy == "TRANSFORMER_BASED_WRAP":
__magic_name__ = """BertLayer"""
elif policy == "SIZE_BASED_WRAP":
__magic_name__ = """2000"""
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
fsdp_plugin.set_auto_wrap_policy(snake_case_ )
if policy == "NO_WRAP":
self.assertIsNone(fsdp_plugin.auto_wrap_policy )
else:
self.assertIsNotNone(fsdp_plugin.auto_wrap_policy )
__magic_name__ = self.dist_env.copy()
__magic_name__ = """TRANSFORMER_BASED_WRAP"""
__magic_name__ = """T5Layer"""
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
with self.assertRaises(snake_case_ ) as cm:
fsdp_plugin.set_auto_wrap_policy(snake_case_ )
self.assertTrue("""Could not find the transformer layer class to wrap in the model.""" in str(cm.exception ) )
__magic_name__ = self.dist_env.copy()
__magic_name__ = """SIZE_BASED_WRAP"""
__magic_name__ = """0"""
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
fsdp_plugin.set_auto_wrap_policy(snake_case_ )
self.assertIsNone(fsdp_plugin.auto_wrap_policy )
def _lowercase ( self : Optional[int] ) -> List[Any]:
"""simple docstring"""
from torch.distributed.fsdp.fully_sharded_data_parallel import MixedPrecision
from torch.distributed.fsdp.sharded_grad_scaler import ShardedGradScaler
for mp_dtype in dtypes:
__magic_name__ = self.dist_env.copy()
__magic_name__ = mp_dtype
with mockenv_context(**snake_case_ ):
__magic_name__ = Accelerator()
if mp_dtype == "fp16":
__magic_name__ = torch.floataa
elif mp_dtype == "bf16":
__magic_name__ = torch.bfloataa
__magic_name__ = MixedPrecision(param_dtype=snake_case_ , reduce_dtype=snake_case_ , buffer_dtype=snake_case_ )
self.assertEqual(accelerator.state.fsdp_plugin.mixed_precision_policy , snake_case_ )
if mp_dtype == FPaa:
self.assertTrue(isinstance(accelerator.scaler , snake_case_ ) )
elif mp_dtype == BFaa:
self.assertIsNone(accelerator.scaler )
AcceleratorState._reset_state(snake_case_ )
def _lowercase ( self : Tuple ) -> int:
"""simple docstring"""
from torch.distributed.fsdp.fully_sharded_data_parallel import CPUOffload
for flag in [True, False]:
__magic_name__ = self.dist_env.copy()
__magic_name__ = str(snake_case_ ).lower()
with mockenv_context(**snake_case_ ):
__magic_name__ = FullyShardedDataParallelPlugin()
self.assertEqual(fsdp_plugin.cpu_offload , CPUOffload(offload_params=snake_case_ ) )
@require_fsdp
@require_multi_gpu
@slow
class UpperCAmelCase_ ( _a ):
'''simple docstring'''
def _lowercase ( self : List[str] ) -> int:
"""simple docstring"""
super().setUp()
__magic_name__ = 0.82
__magic_name__ = [
"""fsdp_shard_grad_op_transformer_based_wrap""",
"""fsdp_full_shard_transformer_based_wrap""",
]
__magic_name__ = {
"""multi_gpu_fp16""": 3200,
"""fsdp_shard_grad_op_transformer_based_wrap_fp16""": 2000,
"""fsdp_full_shard_transformer_based_wrap_fp16""": 1900,
# Disabling below test as it overwhelms the RAM memory usage
# on CI self-hosted runner leading to tests getting killed.
# "fsdp_full_shard_cpu_offload_transformer_based_wrap_fp32": 1500, # fp16 was leading to indefinite hang
}
__magic_name__ = 160
__magic_name__ = 160
__magic_name__ = inspect.getfile(accelerate.test_utils )
__magic_name__ = os.path.sep.join(mod_file.split(os.path.sep )[:-1] + ["""scripts""", """external_deps"""] )
def _lowercase ( self : Any ) -> Tuple:
"""simple docstring"""
__magic_name__ = os.path.join(self.test_scripts_folder , """test_performance.py""" )
__magic_name__ = ["""accelerate""", """launch""", """--num_processes=2""", """--num_machines=1""", """--machine_rank=0""", """--use_fsdp"""]
for config in self.performance_configs:
__magic_name__ = cmd.copy()
for i, strategy in enumerate(snake_case_ ):
if strategy.lower() in config:
cmd_config.append(F'''--fsdp_sharding_strategy={i+1}''' )
break
if "fp32" in config:
cmd_config.append("""--mixed_precision=no""" )
else:
cmd_config.append("""--mixed_precision=fp16""" )
if "cpu_offload" in config:
cmd_config.append("""--fsdp_offload_params=True""" )
for policy in FSDP_AUTO_WRAP_POLICY:
if policy.lower() in config:
cmd_config.append(F'''--fsdp_auto_wrap_policy={policy}''' )
break
if policy == "TRANSFORMER_BASED_WRAP":
cmd_config.append("""--fsdp_transformer_layer_cls_to_wrap=BertLayer""" )
elif policy == "SIZE_BASED_WRAP":
cmd_config.append("""--fsdp_min_num_params=2000""" )
cmd_config.extend(
[
self.test_file_path,
F'''--output_dir={self.tmpdir}''',
F'''--performance_lower_bound={self.performance_lower_bound}''',
] )
with patch_environment(omp_num_threads=1 ):
execute_subprocess_async(snake_case_ , env=os.environ.copy() )
def _lowercase ( self : List[Any] ) -> List[Any]:
"""simple docstring"""
__magic_name__ = os.path.join(self.test_scripts_folder , """test_checkpointing.py""" )
__magic_name__ = [
"""accelerate""",
"""launch""",
"""--num_processes=2""",
"""--num_machines=1""",
"""--machine_rank=0""",
"""--use_fsdp""",
"""--mixed_precision=fp16""",
"""--fsdp_transformer_layer_cls_to_wrap=BertLayer""",
]
for i, strategy in enumerate(snake_case_ ):
__magic_name__ = cmd.copy()
cmd_config.append(F'''--fsdp_sharding_strategy={i+1}''' )
if strategy != "FULL_SHARD":
continue
__magic_name__ = len(snake_case_ )
for state_dict_type in FSDP_STATE_DICT_TYPE:
__magic_name__ = cmd_config[:state_dict_config_index]
cmd_config.append(F'''--fsdp_state_dict_type={state_dict_type}''' )
cmd_config.extend(
[
self.test_file_path,
F'''--output_dir={self.tmpdir}''',
"""--partial_train_epoch=1""",
] )
with patch_environment(omp_num_threads=1 ):
execute_subprocess_async(snake_case_ , env=os.environ.copy() )
__magic_name__ = cmd_config[:-1]
__magic_name__ = os.path.join(self.tmpdir , """epoch_0""" )
cmd_config.extend(
[
F'''--resume_from_checkpoint={resume_from_checkpoint}''',
] )
with patch_environment(omp_num_threads=1 ):
execute_subprocess_async(snake_case_ , env=os.environ.copy() )
def _lowercase ( self : List[str] ) -> Optional[Any]:
"""simple docstring"""
__magic_name__ = os.path.join(self.test_scripts_folder , """test_peak_memory_usage.py""" )
__magic_name__ = [
"""accelerate""",
"""launch""",
"""--num_processes=2""",
"""--num_machines=1""",
"""--machine_rank=0""",
]
for spec, peak_mem_upper_bound in self.peak_memory_usage_upper_bound.items():
__magic_name__ = cmd.copy()
if "fp16" in spec:
cmd_config.extend(["""--mixed_precision=fp16"""] )
else:
cmd_config.extend(["""--mixed_precision=no"""] )
if "multi_gpu" in spec:
continue
else:
cmd_config.extend(["""--use_fsdp"""] )
for i, strategy in enumerate(snake_case_ ):
if strategy.lower() in spec:
cmd_config.append(F'''--fsdp_sharding_strategy={i+1}''' )
break
if "cpu_offload" in spec:
cmd_config.append("""--fsdp_offload_params=True""" )
for policy in FSDP_AUTO_WRAP_POLICY:
if policy.lower() in spec:
cmd_config.append(F'''--fsdp_auto_wrap_policy={policy}''' )
break
if policy == "TRANSFORMER_BASED_WRAP":
cmd_config.append("""--fsdp_transformer_layer_cls_to_wrap=BertLayer""" )
elif policy == "SIZE_BASED_WRAP":
cmd_config.append("""--fsdp_min_num_params=2000""" )
cmd_config.extend(
[
self.test_file_path,
F'''--output_dir={self.tmpdir}''',
F'''--peak_memory_upper_bound={peak_mem_upper_bound}''',
F'''--n_train={self.n_train}''',
F'''--n_val={self.n_val}''',
] )
with patch_environment(omp_num_threads=1 ):
execute_subprocess_async(snake_case_ , env=os.environ.copy() )
| 88
|
'''simple docstring'''
from ...configuration_utils import PretrainedConfig
from ...utils import logging
__a = logging.get_logger(__name__)
__a = {
"vinvino02/glpn-kitti": "https://huggingface.co/vinvino02/glpn-kitti/resolve/main/config.json",
# See all GLPN models at https://huggingface.co/models?filter=glpn
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = "glpn"
def __init__( self : Optional[Any] , snake_case_ : List[str]=3 , snake_case_ : Dict=4 , snake_case_ : List[Any]=[2, 2, 2, 2] , snake_case_ : int=[8, 4, 2, 1] , snake_case_ : List[str]=[32, 64, 160, 256] , snake_case_ : Tuple=[7, 3, 3, 3] , snake_case_ : List[Any]=[4, 2, 2, 2] , snake_case_ : Tuple=[1, 2, 5, 8] , snake_case_ : List[str]=[4, 4, 4, 4] , snake_case_ : Optional[int]="gelu" , snake_case_ : Dict=0.0 , snake_case_ : Union[str, Any]=0.0 , snake_case_ : List[Any]=0.02 , snake_case_ : Tuple=0.1 , snake_case_ : Any=1E-6 , snake_case_ : Dict=64 , snake_case_ : Tuple=10 , snake_case_ : List[Any]=-1 , **snake_case_ : Optional[Any] , ):
super().__init__(**snake_case_ )
snake_case__ : Optional[Any] = num_channels
snake_case__ : Dict = num_encoder_blocks
snake_case__ : Tuple = depths
snake_case__ : Union[str, Any] = sr_ratios
snake_case__ : Tuple = hidden_sizes
snake_case__ : Optional[Any] = patch_sizes
snake_case__ : int = strides
snake_case__ : List[Any] = mlp_ratios
snake_case__ : Optional[int] = num_attention_heads
snake_case__ : Dict = hidden_act
snake_case__ : int = hidden_dropout_prob
snake_case__ : Optional[Any] = attention_probs_dropout_prob
snake_case__ : str = initializer_range
snake_case__ : List[str] = drop_path_rate
snake_case__ : int = layer_norm_eps
snake_case__ : Tuple = decoder_hidden_size
snake_case__ : List[Any] = max_depth
snake_case__ : Dict = head_in_index
| 35
| 0
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available, is_vision_available
lowercase__ : List[Any] = {
'''configuration_maskformer''': ['''MASKFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP''', '''MaskFormerConfig'''],
'''configuration_maskformer_swin''': ['''MaskFormerSwinConfig'''],
}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
lowercase__ : int = ['''MaskFormerFeatureExtractor''']
lowercase__ : List[str] = ['''MaskFormerImageProcessor''']
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
lowercase__ : List[str] = [
'''MASKFORMER_PRETRAINED_MODEL_ARCHIVE_LIST''',
'''MaskFormerForInstanceSegmentation''',
'''MaskFormerModel''',
'''MaskFormerPreTrainedModel''',
]
lowercase__ : Dict = [
'''MaskFormerSwinBackbone''',
'''MaskFormerSwinModel''',
'''MaskFormerSwinPreTrainedModel''',
]
if TYPE_CHECKING:
from .configuration_maskformer import MASKFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, MaskFormerConfig
from .configuration_maskformer_swin import MaskFormerSwinConfig
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .feature_extraction_maskformer import MaskFormerFeatureExtractor
from .image_processing_maskformer import MaskFormerImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_maskformer import (
MASKFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
MaskFormerForInstanceSegmentation,
MaskFormerModel,
MaskFormerPreTrainedModel,
)
from .modeling_maskformer_swin import (
MaskFormerSwinBackbone,
MaskFormerSwinModel,
MaskFormerSwinPreTrainedModel,
)
else:
import sys
lowercase__ : Optional[int] = _LazyModule(__name__, globals()['''__file__'''], _import_structure)
| 190
|
'''simple docstring'''
import json
from typing import List, Optional, Tuple
from tokenizers import normalizers
from tokenizers.pre_tokenizers import BertPreTokenizer, PreTokenizer
from ...tokenization_utils_fast import PreTrainedTokenizerFast
from ...utils import logging
from .tokenization_roformer import RoFormerTokenizer
from .tokenization_utils import JiebaPreTokenizer
__a = logging.get_logger(__name__)
__a = {"vocab_file": "vocab.txt", "tokenizer_file": "tokenizer.json"}
__a = {
"vocab_file": {
"junnyu/roformer_chinese_small": "https://huggingface.co/junnyu/roformer_chinese_small/resolve/main/vocab.txt",
"junnyu/roformer_chinese_base": "https://huggingface.co/junnyu/roformer_chinese_base/resolve/main/vocab.txt",
"junnyu/roformer_chinese_char_small": (
"https://huggingface.co/junnyu/roformer_chinese_char_small/resolve/main/vocab.txt"
),
"junnyu/roformer_chinese_char_base": (
"https://huggingface.co/junnyu/roformer_chinese_char_base/resolve/main/vocab.txt"
),
"junnyu/roformer_small_discriminator": (
"https://huggingface.co/junnyu/roformer_small_discriminator/resolve/main/vocab.txt"
),
"junnyu/roformer_small_generator": (
"https://huggingface.co/junnyu/roformer_small_generator/resolve/main/vocab.txt"
),
}
}
__a = {
"junnyu/roformer_chinese_small": 1536,
"junnyu/roformer_chinese_base": 1536,
"junnyu/roformer_chinese_char_small": 512,
"junnyu/roformer_chinese_char_base": 512,
"junnyu/roformer_small_discriminator": 128,
"junnyu/roformer_small_generator": 128,
}
__a = {
"junnyu/roformer_chinese_small": {"do_lower_case": True},
"junnyu/roformer_chinese_base": {"do_lower_case": True},
"junnyu/roformer_chinese_char_small": {"do_lower_case": True},
"junnyu/roformer_chinese_char_base": {"do_lower_case": True},
"junnyu/roformer_small_discriminator": {"do_lower_case": True},
"junnyu/roformer_small_generator": {"do_lower_case": True},
}
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = VOCAB_FILES_NAMES
lowercase = PRETRAINED_VOCAB_FILES_MAP
lowercase = PRETRAINED_POSITIONAL_EMBEDDINGS_SIZES
lowercase = PRETRAINED_INIT_CONFIGURATION
lowercase = RoFormerTokenizer
def __init__( self : List[Any] , snake_case_ : List[str]=None , snake_case_ : Dict=None , snake_case_ : Any=True , snake_case_ : str="[UNK]" , snake_case_ : List[str]="[SEP]" , snake_case_ : Optional[Any]="[PAD]" , snake_case_ : Union[str, Any]="[CLS]" , snake_case_ : Union[str, Any]="[MASK]" , snake_case_ : List[Any]=True , snake_case_ : Optional[Any]=None , **snake_case_ : Tuple , ):
super().__init__(
snake_case_ , tokenizer_file=snake_case_ , do_lower_case=snake_case_ , unk_token=snake_case_ , sep_token=snake_case_ , pad_token=snake_case_ , cls_token=snake_case_ , mask_token=snake_case_ , tokenize_chinese_chars=snake_case_ , strip_accents=snake_case_ , **snake_case_ , )
snake_case__ : str = json.loads(self.backend_tokenizer.normalizer.__getstate__() )
if (
pre_tok_state.get("""lowercase""" , snake_case_ ) != do_lower_case
or pre_tok_state.get("""strip_accents""" , snake_case_ ) != strip_accents
):
snake_case__ : str = getattr(snake_case_ , pre_tok_state.pop("""type""" ) )
snake_case__ : Optional[int] = do_lower_case
snake_case__ : Union[str, Any] = strip_accents
snake_case__ : Union[str, Any] = pre_tok_class(**snake_case_ )
snake_case__ : str = do_lower_case
def __getstate__( self : int ):
snake_case__ : List[Any] = self.__dict__.copy()
snake_case__ : str = BertPreTokenizer()
return state
def __setstate__( self : Dict , snake_case_ : Dict ):
snake_case__ : List[Any] = d
snake_case__ : Union[str, Any] = self.__dict__["""_tokenizer"""].get_vocab()
snake_case__ : List[Any] = PreTokenizer.custom(JiebaPreTokenizer(snake_case_ ) )
def lowerCamelCase ( self : str , snake_case_ : Optional[Any] , snake_case_ : List[str]=None ):
snake_case__ : str = [self.cls_token_id] + token_ids_a + [self.sep_token_id]
if token_ids_a:
output += token_ids_a + [self.sep_token_id]
return output
def lowerCamelCase ( self : str , snake_case_ : List[int] , snake_case_ : Optional[List[int]] = None ):
snake_case__ : int = [self.sep_token_id]
snake_case__ : str = [self.cls_token_id]
if token_ids_a is None:
return len(cls + token_ids_a + sep ) * [0]
return len(cls + token_ids_a + sep ) * [0] + len(token_ids_a + sep ) * [1]
def lowerCamelCase ( self : Dict , snake_case_ : str , snake_case_ : Optional[str] = None ):
snake_case__ : Union[str, Any] = self._tokenizer.model.save(snake_case_ , name=snake_case_ )
return tuple(snake_case_ )
def lowerCamelCase ( self : Dict , snake_case_ : List[str] , snake_case_ : Tuple=None , snake_case_ : List[str]=None , snake_case_ : Union[str, Any]=False , **snake_case_ : Tuple , ):
snake_case__ : Optional[Any] = BertPreTokenizer()
return super().save_pretrained(snake_case_ , snake_case_ , snake_case_ , snake_case_ , **snake_case_ )
| 35
| 0
|
import warnings
from collections import OrderedDict
from typing import Mapping
from packaging import version
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
__lowerCAmelCase = logging.get_logger(__name__)
__lowerCAmelCase = {
'''nvidia/segformer-b0-finetuned-ade-512-512''': (
'''https://huggingface.co/nvidia/segformer-b0-finetuned-ade-512-512/resolve/main/config.json'''
),
# See all SegFormer models at https://huggingface.co/models?filter=segformer
}
class __a ( _a ):
__lowercase : Any = 'segformer'
def __init__( self , lowerCAmelCase__=3 , lowerCAmelCase__=4 , lowerCAmelCase__=[2, 2, 2, 2] , lowerCAmelCase__=[8, 4, 2, 1] , lowerCAmelCase__=[32, 64, 160, 256] , lowerCAmelCase__=[7, 3, 3, 3] , lowerCAmelCase__=[4, 2, 2, 2] , lowerCAmelCase__=[1, 2, 5, 8] , lowerCAmelCase__=[4, 4, 4, 4] , lowerCAmelCase__="gelu" , lowerCAmelCase__=0.0 , lowerCAmelCase__=0.0 , lowerCAmelCase__=0.1 , lowerCAmelCase__=0.0_2 , lowerCAmelCase__=0.1 , lowerCAmelCase__=1E-6 , lowerCAmelCase__=256 , lowerCAmelCase__=255 , **lowerCAmelCase__ , ) -> Optional[Any]:
'''simple docstring'''
super().__init__(**snake_case_ )
if "reshape_last_stage" in kwargs and kwargs["reshape_last_stage"] is False:
warnings.warn(
'Reshape_last_stage is set to False in this config. This argument is deprecated and will soon be'
' removed, as the behaviour will default to that of reshape_last_stage = True.' , snake_case_ , )
lowercase__: List[str] = num_channels
lowercase__: List[str] = num_encoder_blocks
lowercase__: str = depths
lowercase__: Optional[Any] = sr_ratios
lowercase__: Optional[Any] = hidden_sizes
lowercase__: Any = patch_sizes
lowercase__: Optional[Any] = strides
lowercase__: Dict = mlp_ratios
lowercase__: Any = num_attention_heads
lowercase__: int = hidden_act
lowercase__: List[str] = hidden_dropout_prob
lowercase__: List[Any] = attention_probs_dropout_prob
lowercase__: List[Any] = classifier_dropout_prob
lowercase__: Union[str, Any] = initializer_range
lowercase__: Tuple = drop_path_rate
lowercase__: List[Any] = layer_norm_eps
lowercase__: Dict = decoder_hidden_size
lowercase__: Tuple = kwargs.get('reshape_last_stage' , snake_case_ )
lowercase__: Dict = semantic_loss_ignore_index
class __a ( _a ):
__lowercase : str = version.parse('1.11' )
@property
def SCREAMING_SNAKE_CASE__ ( self ) -> Dict:
'''simple docstring'''
return OrderedDict(
[
('pixel_values', {0: 'batch', 1: 'num_channels', 2: 'height', 3: 'width'}),
] )
@property
def SCREAMING_SNAKE_CASE__ ( self ) -> Any:
'''simple docstring'''
return 1E-4
@property
def SCREAMING_SNAKE_CASE__ ( self ) -> Dict:
'''simple docstring'''
return 12
| 196
|
'''simple docstring'''
import os
import time
import pytest
from datasets.utils.filelock import FileLock, Timeout
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : int = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : Dict = FileLock(str(tmpdir / """foo.lock""" ) )
snake_case__ : List[str] = 0.01
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
snake_case__ : str = time.time()
locka.acquire(_lowerCAmelCase )
assert time.time() - _start > timeout
def __snake_case( _lowerCAmelCase ) -> Tuple:
snake_case__ : Dict = """a""" * 1_000 + """.lock"""
snake_case__ : int = FileLock(str(tmpdir / filename ) )
assert locka._lock_file.endswith(""".lock""" )
assert not locka._lock_file.endswith(_lowerCAmelCase )
assert len(os.path.basename(locka._lock_file ) ) <= 255
snake_case__ : Dict = FileLock(tmpdir / filename )
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
locka.acquire(0 )
| 35
| 0
|
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_tokenizers_available,
is_torch_available,
is_vision_available,
)
A : str = {
"configuration_perceiver": ["PERCEIVER_PRETRAINED_CONFIG_ARCHIVE_MAP", "PerceiverConfig", "PerceiverOnnxConfig"],
"tokenization_perceiver": ["PerceiverTokenizer"],
}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
A : List[Any] = ["PerceiverFeatureExtractor"]
A : str = ["PerceiverImageProcessor"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
A : Union[str, Any] = [
"PERCEIVER_PRETRAINED_MODEL_ARCHIVE_LIST",
"PerceiverForImageClassificationConvProcessing",
"PerceiverForImageClassificationFourier",
"PerceiverForImageClassificationLearned",
"PerceiverForMaskedLM",
"PerceiverForMultimodalAutoencoding",
"PerceiverForOpticalFlow",
"PerceiverForSequenceClassification",
"PerceiverLayer",
"PerceiverModel",
"PerceiverPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_perceiver import PERCEIVER_PRETRAINED_CONFIG_ARCHIVE_MAP, PerceiverConfig, PerceiverOnnxConfig
from .tokenization_perceiver import PerceiverTokenizer
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .feature_extraction_perceiver import PerceiverFeatureExtractor
from .image_processing_perceiver import PerceiverImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_perceiver import (
PERCEIVER_PRETRAINED_MODEL_ARCHIVE_LIST,
PerceiverForImageClassificationConvProcessing,
PerceiverForImageClassificationFourier,
PerceiverForImageClassificationLearned,
PerceiverForMaskedLM,
PerceiverForMultimodalAutoencoding,
PerceiverForOpticalFlow,
PerceiverForSequenceClassification,
PerceiverLayer,
PerceiverModel,
PerceiverPreTrainedModel,
)
else:
import sys
A : Optional[Any] = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 184
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> float:
snake_case__ : str = (num_of_terms / 2) * (2 * first_term + (num_of_terms - 1) * common_diff)
# formula for sum of series
return total
def __snake_case( ) -> List[str]:
print(sum_of_series(1 , 1 , 10 ) )
if __name__ == "__main__":
import doctest
doctest.testmod()
| 35
| 0
|
'''simple docstring'''
import logging
from dataclasses import dataclass, field
from pathlib import Path
from typing import Optional, Union
from .generation.configuration_utils import GenerationConfig
from .training_args import TrainingArguments
from .utils import add_start_docstrings
lowercase_ = logging.getLogger(__name__)
@dataclass
@add_start_docstrings(TrainingArguments.__doc__ )
class __A ( _a ):
'''simple docstring'''
__lowerCamelCase : Dict = field(default=_a , metadata={'help': 'Whether to use SortishSampler or not.'} )
__lowerCamelCase : Optional[Any] = field(
default=_a , metadata={'help': 'Whether to use generate to calculate generative metrics (ROUGE, BLEU).'} )
__lowerCamelCase : Tuple = field(
default=_a , metadata={
'help': (
'The `max_length` to use on each evaluation loop when `predict_with_generate=True`. Will default '
'to the `max_length` value of the model configuration.'
)
} , )
__lowerCamelCase : Tuple = field(
default=_a , metadata={
'help': (
'The `num_beams` to use on each evaluation loop when `predict_with_generate=True`. Will default '
'to the `num_beams` value of the model configuration.'
)
} , )
__lowerCamelCase : List[str] = field(
default=_a , metadata={
'help': 'Model id, file path or url pointing to a GenerationConfig json file, to use during prediction.'
} , )
def a__ (self ) -> List[str]:
"""simple docstring"""
_a = super().to_dict()
for k, v in d.items():
if isinstance(snake_case_ , snake_case_ ):
_a = v.to_dict()
return d
| 211
|
'''simple docstring'''
__a = frozenset(
[
"prompt",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset([])
__a = frozenset(["image"])
__a = frozenset(
[
"image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image"])
__a = frozenset(
[
"prompt",
"image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "negative_prompt"])
__a = frozenset(
[
# Text guided image variation with an image mask
"prompt",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
__a = frozenset(["prompt", "image", "mask_image", "negative_prompt"])
__a = frozenset(
[
# image variation with an image mask
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["image", "mask_image"])
__a = frozenset(
[
"example_image",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
__a = frozenset(["example_image", "image", "mask_image"])
__a = frozenset(["class_labels"])
__a = frozenset(["class_labels"])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(["batch_size"])
__a = frozenset([])
__a = frozenset(
[
"prompt",
"audio_length_in_s",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
__a = frozenset(["prompt", "negative_prompt"])
__a = frozenset(["input_tokens"])
__a = frozenset(["input_tokens"])
| 35
| 0
|
from collections import OrderedDict
from typing import Mapping
from ...configuration_utils import PretrainedConfig
from ...onnx import OnnxConfig
from ...utils import logging
lowercase_ = logging.get_logger(__name__)
lowercase_ = {
'junnyu/roformer_chinese_small': 'https://huggingface.co/junnyu/roformer_chinese_small/resolve/main/config.json',
'junnyu/roformer_chinese_base': 'https://huggingface.co/junnyu/roformer_chinese_base/resolve/main/config.json',
'junnyu/roformer_chinese_char_small': (
'https://huggingface.co/junnyu/roformer_chinese_char_small/resolve/main/config.json'
),
'junnyu/roformer_chinese_char_base': (
'https://huggingface.co/junnyu/roformer_chinese_char_base/resolve/main/config.json'
),
'junnyu/roformer_small_discriminator': (
'https://huggingface.co/junnyu/roformer_small_discriminator/resolve/main/config.json'
),
'junnyu/roformer_small_generator': (
'https://huggingface.co/junnyu/roformer_small_generator/resolve/main/config.json'
),
# See all RoFormer models at https://huggingface.co/models?filter=roformer
}
class __lowerCAmelCase ( _a ):
_a = """roformer"""
def __init__( self , lowerCAmelCase=50_000 , lowerCAmelCase=None , lowerCAmelCase=768 , lowerCAmelCase=12 , lowerCAmelCase=12 , lowerCAmelCase=3_072 , lowerCAmelCase="gelu" , lowerCAmelCase=0.1 , lowerCAmelCase=0.1 , lowerCAmelCase=1_536 , lowerCAmelCase=2 , lowerCAmelCase=0.02 , lowerCAmelCase=1e-12 , lowerCAmelCase=0 , lowerCAmelCase=False , lowerCAmelCase=True , **lowerCAmelCase , ) -> Dict:
'''simple docstring'''
super().__init__(pad_token_id=snake_case_ , **snake_case_ )
_lowercase =vocab_size
_lowercase =hidden_size if embedding_size is None else embedding_size
_lowercase =hidden_size
_lowercase =num_hidden_layers
_lowercase =num_attention_heads
_lowercase =hidden_act
_lowercase =intermediate_size
_lowercase =hidden_dropout_prob
_lowercase =attention_probs_dropout_prob
_lowercase =max_position_embeddings
_lowercase =type_vocab_size
_lowercase =initializer_range
_lowercase =layer_norm_eps
_lowercase =rotary_value
_lowercase =use_cache
class __lowerCAmelCase ( _a ):
@property
def A__ ( self ) -> Tuple:
'''simple docstring'''
if self.task == "multiple-choice":
_lowercase ={0: """batch""", 1: """choice""", 2: """sequence"""}
else:
_lowercase ={0: """batch""", 1: """sequence"""}
_lowercase ={0: """batch""", 1: """sequence"""}
return OrderedDict(
[
('input_ids', dynamic_axis),
('attention_mask', dynamic_axis),
('token_type_ids', dynamic_axis),
] )
| 205
|
'''simple docstring'''
import json
import os
import unittest
from transformers.models.gptsan_japanese.tokenization_gptsan_japanese import (
VOCAB_FILES_NAMES,
GPTSanJapaneseTokenizer,
)
from transformers.testing_utils import require_tokenizers, slow
from ...test_tokenization_common import TokenizerTesterMixin
@require_tokenizers
class UpperCAmelCase_ ( _a , unittest.TestCase ):
"""simple docstring"""
lowercase = GPTSanJapaneseTokenizer
lowercase = False
lowercase = {"do_clean_text": False, "add_prefix_space": False}
def lowerCamelCase ( self : str ):
super().setUp()
# fmt: off
snake_case__ : Optional[Any] = ["""こん""", """こんに""", """にちは""", """ばんは""", """世界,㔺界""", """、""", """。""", """<BR>""", """<SP>""", """<TAB>""", """<URL>""", """<EMAIL>""", """<TEL>""", """<DATE>""", """<PRICE>""", """<BLOCK>""", """<KIGOU>""", """<U2000U2BFF>""", """<|emoji1|>""", """<unk>""", """<|bagoftoken|>""", """<|endoftext|>"""]
# fmt: on
snake_case__ : int = {"""emoji""": {"""\ud83d\ude00""": """<|emoji1|>"""}, """emoji_inv""": {"""<|emoji1|>""": """\ud83d\ude00"""}} # 😀
snake_case__ : List[Any] = {"""unk_token""": """<unk>"""}
snake_case__ : Optional[Any] = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""vocab_file"""] )
snake_case__ : Dict = os.path.join(self.tmpdirname , VOCAB_FILES_NAMES["""emoji_file"""] )
with open(self.vocab_file , """w""" , encoding="""utf-8""" ) as vocab_writer:
vocab_writer.write("""""".join([x + """\n""" for x in vocab_tokens] ) )
with open(self.emoji_file , """w""" ) as emoji_writer:
emoji_writer.write(json.dumps(snake_case_ ) )
def lowerCamelCase ( self : Any , **snake_case_ : Union[str, Any] ):
kwargs.update(self.special_tokens_map )
return GPTSanJapaneseTokenizer.from_pretrained(self.tmpdirname , **snake_case_ )
def lowerCamelCase ( self : Any , snake_case_ : str ):
snake_case__ : Union[str, Any] = """こんにちは、世界。 \nこんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。 \nこんばんは、世界。😀"""
return input_text, output_text
def lowerCamelCase ( self : Any , snake_case_ : Dict ):
snake_case__ , snake_case__ : int = self.get_input_output_texts(snake_case_ )
snake_case__ : int = tokenizer.encode(snake_case_ , add_special_tokens=snake_case_ )
snake_case__ : List[str] = tokenizer.decode(snake_case_ , clean_up_tokenization_spaces=snake_case_ )
return text, ids
def lowerCamelCase ( self : Optional[Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Union[str, Any] ):
pass # TODO add if relevant
def lowerCamelCase ( self : List[str] ):
pass # TODO add if relevant
def lowerCamelCase ( self : Dict ):
snake_case__ : Optional[Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : int = """こんにちは、世界。 こんばんは、㔺界。"""
snake_case__ : Optional[int] = ["""こん""", """にちは""", """、""", """世界""", """。""", """<SP>""", """こん""", """ばんは""", """、""", """㔺界""", """。"""]
snake_case__ : Dict = tokenizer.tokenize(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids without special tokens
snake_case__ : Union[str, Any] = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6]
snake_case__ : List[Any] = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
# Testing conversion to ids with special tokens
snake_case__ : Union[str, Any] = tokens + [tokenizer.unk_token]
snake_case__ : Dict = [0, 2, 5, 4, 6, 8, 0, 3, 5, 4, 6, 19]
snake_case__ : Any = tokenizer.convert_tokens_to_ids(snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
def lowerCamelCase ( self : Optional[Any] ):
snake_case__ : Union[str, Any] = self.get_tokenizer()
# Testing tokenization
snake_case__ : Union[str, Any] = """こんにちは、<|bagoftoken|>世界。こんばんは、<|bagoftoken|>㔺界。"""
snake_case__ : Optional[int] = """こんにちは、、、、世界。こんばんは、、、、世界。"""
snake_case__ : Any = tokenizer.encode(snake_case_ )
snake_case__ : int = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Tuple = """こんにちは、世界。"""
snake_case__ : Optional[Any] = """こんばんは、㔺界。😀"""
snake_case__ : List[str] = """こんにちは、世界。こんばんは、世界。😀"""
snake_case__ : Dict = tokenizer.encode(prefix_text + input_text )
snake_case__ : Dict = tokenizer.encode("""""" , prefix_text=prefix_text + input_text )
snake_case__ : int = tokenizer.encode(snake_case_ , prefix_text=snake_case_ )
snake_case__ : Optional[Any] = tokenizer.decode(snake_case_ )
snake_case__ : Union[str, Any] = tokenizer.decode(snake_case_ )
snake_case__ : str = tokenizer.decode(snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
self.assertEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Union[str, Any] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
# Testing tokenization
snake_case__ : Dict = """こんにちは、世界。"""
snake_case__ : Optional[int] = """こんばんは、㔺界。😀"""
snake_case__ : Any = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : Optional[int] = len(tokenizer.encode(snake_case_ ) ) - 2
snake_case__ : List[str] = [1] + [0] * (len_prefix + len_text + 1)
snake_case__ : Optional[int] = [1] * (len_prefix + len_text + 1) + [0]
snake_case__ : int = [1] + [1] * (len_prefix) + [0] * (len_text + 1)
snake_case__ : Any = tokenizer(prefix_text + input_text ).token_type_ids
snake_case__ : str = tokenizer("""""" , prefix_text=prefix_text + input_text ).token_type_ids
snake_case__ : Optional[Any] = tokenizer(snake_case_ , prefix_text=snake_case_ ).token_type_ids
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
self.assertListEqual(snake_case_ , snake_case_ )
@slow
def lowerCamelCase ( self : Optional[int] ):
snake_case__ : Optional[Any] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : Union[str, Any] = tokenizer.encode("""あンいワ""" )
snake_case__ : int = tokenizer.encode("""""" , prefix_text="""あンいワ""" )
snake_case__ : Dict = tokenizer.encode("""いワ""" , prefix_text="""あン""" )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertEqual(tokenizer.decode(snake_case_ ) , tokenizer.decode(snake_case_ ) )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertNotEqual(snake_case_ , snake_case_ )
self.assertEqual(x_token_a[1] , x_token_a[-1] ) # SEG token
self.assertEqual(x_token_a[1] , x_token_a[3] ) # SEG token
@slow
def lowerCamelCase ( self : Any ):
snake_case__ : Optional[int] = self.tokenizer_class.from_pretrained("""Tanrei/GPTSAN-japanese""" )
snake_case__ : int = [["""武田信玄""", """は、"""], ["""織田信長""", """の配下の、"""]]
snake_case__ : Optional[Any] = tokenizer(snake_case_ , padding=snake_case_ )
snake_case__ : Tuple = tokenizer.batch_encode_plus(snake_case_ , padding=snake_case_ )
# fmt: off
snake_case__ : Optional[Any] = [[35_993, 8_640, 25_948, 35_998, 30_647, 35_675, 35_999, 35_999], [35_993, 10_382, 9_868, 35_998, 30_646, 9_459, 30_646, 35_675]]
snake_case__ : Optional[Any] = [[1, 1, 1, 0, 0, 0, 0, 0], [1, 1, 1, 0, 0, 0, 0, 0]]
snake_case__ : Optional[Any] = [[1, 1, 1, 1, 1, 1, 0, 0], [1, 1, 1, 1, 1, 1, 1, 1]]
# fmt: on
self.assertListEqual(x_token.input_ids , snake_case_ )
self.assertListEqual(x_token.token_type_ids , snake_case_ )
self.assertListEqual(x_token.attention_mask , snake_case_ )
self.assertListEqual(x_token_a.input_ids , snake_case_ )
self.assertListEqual(x_token_a.token_type_ids , snake_case_ )
self.assertListEqual(x_token_a.attention_mask , snake_case_ )
def lowerCamelCase ( self : Any ):
# Intentionally convert some words to accommodate character fluctuations unique to Japanese
pass
def lowerCamelCase ( self : List[str] ):
# tokenizer has no padding token
pass
| 35
| 0
|
import os
import time
import pytest
from datasets.utils.filelock import FileLock, Timeout
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : Optional[int] ) -> Optional[int]:
"""simple docstring"""
UpperCamelCase :int = FileLock(str(tmpdir / """foo.lock""" ) )
UpperCamelCase :Dict = FileLock(str(tmpdir / """foo.lock""" ) )
UpperCamelCase :List[str] = 0.01
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
UpperCamelCase :str = time.time()
locka.acquire(_lowerCAmelCase )
assert time.time() - _start > timeout
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : Dict ) -> Tuple:
"""simple docstring"""
UpperCamelCase :Dict = """a""" * 1000 + """.lock"""
UpperCamelCase :int = FileLock(str(tmpdir / filename ) )
assert locka._lock_file.endswith(""".lock""" )
assert not locka._lock_file.endswith(_lowerCAmelCase )
assert len(os.path.basename(locka._lock_file ) ) <= 255
UpperCamelCase :Dict = FileLock(tmpdir / filename )
with locka.acquire():
with pytest.raises(_lowerCAmelCase ):
locka.acquire(0 )
| 38
|
'''simple docstring'''
from transformers import BertTokenizerFast
from .custom_tokenization import CustomTokenizer
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = CustomTokenizer
pass
| 35
| 0
|
"""simple docstring"""
_UpperCamelCase : str = frozenset(
[
"prompt",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
_UpperCamelCase : int = frozenset(["prompt", "negative_prompt"])
_UpperCamelCase : str = frozenset([])
_UpperCamelCase : List[str] = frozenset(["image"])
_UpperCamelCase : str = frozenset(
[
"image",
"height",
"width",
"guidance_scale",
]
)
_UpperCamelCase : int = frozenset(["image"])
_UpperCamelCase : Optional[Any] = frozenset(
[
"prompt",
"image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
_UpperCamelCase : int = frozenset(["prompt", "image", "negative_prompt"])
_UpperCamelCase : Optional[int] = frozenset(
[
# Text guided image variation with an image mask
"prompt",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
]
)
_UpperCamelCase : Tuple = frozenset(["prompt", "image", "mask_image", "negative_prompt"])
_UpperCamelCase : Tuple = frozenset(
[
# image variation with an image mask
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
_UpperCamelCase : List[str] = frozenset(["image", "mask_image"])
_UpperCamelCase : Union[str, Any] = frozenset(
[
"example_image",
"image",
"mask_image",
"height",
"width",
"guidance_scale",
]
)
_UpperCamelCase : Union[str, Any] = frozenset(["example_image", "image", "mask_image"])
_UpperCamelCase : int = frozenset(["class_labels"])
_UpperCamelCase : List[str] = frozenset(["class_labels"])
_UpperCamelCase : int = frozenset(["batch_size"])
_UpperCamelCase : Tuple = frozenset([])
_UpperCamelCase : List[Any] = frozenset(["batch_size"])
_UpperCamelCase : List[Any] = frozenset([])
_UpperCamelCase : Tuple = frozenset(
[
"prompt",
"audio_length_in_s",
"guidance_scale",
"negative_prompt",
"prompt_embeds",
"negative_prompt_embeds",
"cross_attention_kwargs",
]
)
_UpperCamelCase : Any = frozenset(["prompt", "negative_prompt"])
_UpperCamelCase : Union[str, Any] = frozenset(["input_tokens"])
_UpperCamelCase : List[Any] = frozenset(["input_tokens"])
| 77
|
'''simple docstring'''
import numpy as np
from transformers import Pipeline
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Optional[Any] = np.max(_lowerCAmelCase , axis=-1 , keepdims=_lowerCAmelCase )
snake_case__ : List[str] = np.exp(outputs - maxes )
return shifted_exp / shifted_exp.sum(axis=-1 , keepdims=_lowerCAmelCase )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def lowerCamelCase ( self : Optional[Any] , **snake_case_ : int ):
snake_case__ : Optional[int] = {}
if "second_text" in kwargs:
snake_case__ : Union[str, Any] = kwargs["""second_text"""]
return preprocess_kwargs, {}, {}
def lowerCamelCase ( self : str , snake_case_ : Tuple , snake_case_ : Union[str, Any]=None ):
return self.tokenizer(snake_case_ , text_pair=snake_case_ , return_tensors=self.framework )
def lowerCamelCase ( self : List[Any] , snake_case_ : Dict ):
return self.model(**snake_case_ )
def lowerCamelCase ( self : int , snake_case_ : List[Any] ):
snake_case__ : Union[str, Any] = model_outputs.logits[0].numpy()
snake_case__ : List[str] = softmax(snake_case_ )
snake_case__ : List[str] = np.argmax(snake_case_ )
snake_case__ : List[str] = self.model.config.idalabel[best_class]
snake_case__ : Optional[int] = probabilities[best_class].item()
snake_case__ : str = logits.tolist()
return {"label": label, "score": score, "logits": logits}
| 35
| 0
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import (
OptionalDependencyNotAvailable,
_LazyModule,
is_tf_available,
is_torch_available,
is_vision_available,
)
SCREAMING_SNAKE_CASE_: Dict ={'configuration_deit': ['DEIT_PRETRAINED_CONFIG_ARCHIVE_MAP', 'DeiTConfig', 'DeiTOnnxConfig']}
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: Dict =['DeiTFeatureExtractor']
SCREAMING_SNAKE_CASE_: str =['DeiTImageProcessor']
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: Any =[
'DEIT_PRETRAINED_MODEL_ARCHIVE_LIST',
'DeiTForImageClassification',
'DeiTForImageClassificationWithTeacher',
'DeiTForMaskedImageModeling',
'DeiTModel',
'DeiTPreTrainedModel',
]
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: Optional[Any] =[
'TF_DEIT_PRETRAINED_MODEL_ARCHIVE_LIST',
'TFDeiTForImageClassification',
'TFDeiTForImageClassificationWithTeacher',
'TFDeiTForMaskedImageModeling',
'TFDeiTModel',
'TFDeiTPreTrainedModel',
]
if TYPE_CHECKING:
from .configuration_deit import DEIT_PRETRAINED_CONFIG_ARCHIVE_MAP, DeiTConfig, DeiTOnnxConfig
try:
if not is_vision_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .feature_extraction_deit import DeiTFeatureExtractor
from .image_processing_deit import DeiTImageProcessor
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_deit import (
DEIT_PRETRAINED_MODEL_ARCHIVE_LIST,
DeiTForImageClassification,
DeiTForImageClassificationWithTeacher,
DeiTForMaskedImageModeling,
DeiTModel,
DeiTPreTrainedModel,
)
try:
if not is_tf_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_tf_deit import (
TF_DEIT_PRETRAINED_MODEL_ARCHIVE_LIST,
TFDeiTForImageClassification,
TFDeiTForImageClassificationWithTeacher,
TFDeiTForMaskedImageModeling,
TFDeiTModel,
TFDeiTPreTrainedModel,
)
else:
import sys
SCREAMING_SNAKE_CASE_: int =_LazyModule(__name__, globals()['__file__'], _import_structure, module_spec=__spec__)
| 1
|
'''simple docstring'''
# Function to print upper half of diamond (pyramid)
def __snake_case( _lowerCAmelCase ) -> Any:
for i in range(0 , _lowerCAmelCase ):
for _ in range(0 , n - i - 1 ): # printing spaces
print(""" """ , end="""""" )
for _ in range(0 , i + 1 ): # printing stars
print("""* """ , end="""""" )
print()
def __snake_case( _lowerCAmelCase ) -> List[str]:
for i in range(_lowerCAmelCase , 0 , -1 ):
for _ in range(_lowerCAmelCase , 0 , -1 ): # printing stars
print("""* """ , end="""""" )
print()
for _ in range(n - i + 1 , 0 , -1 ): # printing spaces
print(""" """ , end="""""" )
def __snake_case( _lowerCAmelCase ) -> List[Any]:
if n <= 0:
print(""" ... .... nothing printing :(""" )
return
floyd(_lowerCAmelCase ) # upper half
reverse_floyd(_lowerCAmelCase ) # lower half
if __name__ == "__main__":
print(R"| /\ | |- | |- |--| |\ /| |-")
print(R"|/ \| |- |_ |_ |__| | \/ | |_")
__a = 1
while K:
__a = int(input("enter the number and , and see the magic : "))
print()
pretty_print(user_number)
__a = int(input("press 0 to exit... and 1 to continue..."))
print("Good Bye...")
| 35
| 0
|
import random
import sys
import numpy as np
from matplotlib import pyplot as plt
from matplotlib.colors import ListedColormap
lowerCamelCase : Optional[int] = "Usage of script: script_name <size_of_canvas:int>"
lowerCamelCase : Dict = [0] * 100 + [1] * 10
random.shuffle(choice)
def _SCREAMING_SNAKE_CASE ( lowercase : Optional[Any] ):
'''simple docstring'''
lowerCamelCase_ = [[False for i in range(_lowerCAmelCase )] for j in range(_lowerCAmelCase )]
return canvas
def _SCREAMING_SNAKE_CASE ( lowercase : Optional[int] ):
'''simple docstring'''
for i, row in enumerate(_lowerCAmelCase ):
for j, _ in enumerate(_lowerCAmelCase ):
lowerCamelCase_ = bool(random.getrandbits(1 ) )
def _SCREAMING_SNAKE_CASE ( lowercase : Union[str, Any] ):
'''simple docstring'''
lowerCamelCase_ = np.array(_lowerCAmelCase )
lowerCamelCase_ = np.array(create_canvas(current_canvas.shape[0] ) )
for r, row in enumerate(_lowerCAmelCase ):
for c, pt in enumerate(_lowerCAmelCase ):
lowerCamelCase_ = __judge_point(
_lowerCAmelCase , current_canvas[r - 1 : r + 2, c - 1 : c + 2] )
lowerCamelCase_ = next_gen_canvas
del next_gen_canvas # cleaning memory as we move on.
lowerCamelCase_ = current_canvas.tolist()
return return_canvas
def _SCREAMING_SNAKE_CASE ( lowercase : str , lowercase : List[Any] ):
'''simple docstring'''
lowerCamelCase_ = 0
lowerCamelCase_ = 0
# finding dead or alive neighbours count.
for i in neighbours:
for status in i:
if status:
alive += 1
else:
dead += 1
# handling duplicate entry for focus pt.
if pt:
alive -= 1
else:
dead -= 1
# running the rules of game here.
lowerCamelCase_ = pt
if pt:
if alive < 2:
lowerCamelCase_ = False
elif alive == 2 or alive == 3:
lowerCamelCase_ = True
elif alive > 3:
lowerCamelCase_ = False
else:
if alive == 3:
lowerCamelCase_ = True
return state
if __name__ == "__main__":
if len(sys.argv) != 2:
raise Exception(usage_doc)
lowerCamelCase : Union[str, Any] = int(sys.argv[1])
# main working structure of this module.
lowerCamelCase : Union[str, Any] = create_canvas(canvas_size)
seed(c)
lowerCamelCase , lowerCamelCase : Optional[int] = plt.subplots()
fig.show()
lowerCamelCase : Any = ListedColormap(["w", "k"])
try:
while True:
lowerCamelCase : int = run(c)
ax.matshow(c, cmap=cmap)
fig.canvas.draw()
ax.cla()
except KeyboardInterrupt:
# do nothing.
pass
| 204
|
'''simple docstring'''
def __snake_case( _lowerCAmelCase = 1_000 ) -> int:
return sum(e for e in range(3 , _lowerCAmelCase ) if e % 3 == 0 or e % 5 == 0 )
if __name__ == "__main__":
print(F"{solution() = }")
| 35
| 0
|
import os
import shutil
import tempfile
from unittest import TestCase
from unittest.mock import patch
import numpy as np
from datasets import Dataset
from transformers.models.realm.configuration_realm import RealmConfig
from transformers.models.realm.retrieval_realm import _REALM_BLOCK_RECORDS_FILENAME, RealmRetriever
from transformers.models.realm.tokenization_realm import VOCAB_FILES_NAMES, RealmTokenizer
class _a ( _a ):
def __snake_case (self ) -> str:
UpperCAmelCase_: str = tempfile.mkdtemp()
UpperCAmelCase_: Tuple = 5
# Realm tok
UpperCAmelCase_: Union[str, Any] = [
"""[UNK]""",
"""[CLS]""",
"""[SEP]""",
"""[PAD]""",
"""[MASK]""",
"""test""",
"""question""",
"""this""",
"""is""",
"""the""",
"""first""",
"""second""",
"""third""",
"""fourth""",
"""fifth""",
"""record""",
"""want""",
"""##want""",
"""##ed""",
"""wa""",
"""un""",
"""runn""",
"""##ing""",
""",""",
"""low""",
"""lowest""",
]
UpperCAmelCase_: Optional[int] = os.path.join(self.tmpdirname, """realm_tokenizer""" )
os.makedirs(snake_case_, exist_ok=snake_case_ )
UpperCAmelCase_: Union[str, Any] = os.path.join(snake_case_, VOCAB_FILES_NAMES["""vocab_file"""] )
with open(self.vocab_file, """w""", encoding="""utf-8""" ) as vocab_writer:
vocab_writer.write("""""".join([x + """\n""" for x in vocab_tokens] ) )
UpperCAmelCase_: List[Any] = os.path.join(self.tmpdirname, """realm_block_records""" )
os.makedirs(snake_case_, exist_ok=snake_case_ )
def __snake_case (self ) -> Optional[int]:
return RealmTokenizer.from_pretrained(os.path.join(self.tmpdirname, """realm_tokenizer""" ) )
def __snake_case (self ) -> Optional[int]:
shutil.rmtree(self.tmpdirname )
def __snake_case (self ) -> List[str]:
UpperCAmelCase_: List[Any] = RealmConfig(num_block_records=self.num_block_records )
return config
def __snake_case (self ) -> Any:
UpperCAmelCase_: str = Dataset.from_dict(
{
"""id""": ["""0""", """1"""],
"""question""": ["""foo""", """bar"""],
"""answers""": [["""Foo""", """Bar"""], ["""Bar"""]],
} )
return dataset
def __snake_case (self ) -> Dict:
UpperCAmelCase_: str = np.array(
[
b"""This is the first record""",
b"""This is the second record""",
b"""This is the third record""",
b"""This is the fourth record""",
b"""This is the fifth record""",
b"""This is a longer longer longer record""",
], dtype=snake_case_, )
return block_records
def __snake_case (self ) -> List[str]:
UpperCAmelCase_: Dict = RealmRetriever(
block_records=self.get_dummy_block_records(), tokenizer=self.get_tokenizer(), )
return retriever
def __snake_case (self ) -> Any:
UpperCAmelCase_: Tuple = self.get_config()
UpperCAmelCase_: Any = self.get_dummy_retriever()
UpperCAmelCase_: str = retriever.tokenizer
UpperCAmelCase_: Optional[int] = np.array([0, 3], dtype="""long""" )
UpperCAmelCase_: List[Any] = tokenizer(["""Test question"""] ).input_ids
UpperCAmelCase_: List[str] = tokenizer(
["""the fourth"""], add_special_tokens=snake_case_, return_token_type_ids=snake_case_, return_attention_mask=snake_case_, ).input_ids
UpperCAmelCase_: List[Any] = config.reader_seq_len
UpperCAmelCase_: Optional[int] = retriever(
snake_case_, snake_case_, answer_ids=snake_case_, max_length=snake_case_, return_tensors="""np""" )
self.assertEqual(len(snake_case_ ), 2 )
self.assertEqual(len(snake_case_ ), 2 )
self.assertEqual(len(snake_case_ ), 2 )
self.assertEqual(concat_inputs.input_ids.shape, (2, 10) )
self.assertEqual(concat_inputs.attention_mask.shape, (2, 10) )
self.assertEqual(concat_inputs.token_type_ids.shape, (2, 10) )
self.assertEqual(concat_inputs.special_tokens_mask.shape, (2, 10) )
self.assertEqual(
tokenizer.convert_ids_to_tokens(concat_inputs.input_ids[0] ), ["""[CLS]""", """test""", """question""", """[SEP]""", """this""", """is""", """the""", """first""", """record""", """[SEP]"""], )
self.assertEqual(
tokenizer.convert_ids_to_tokens(concat_inputs.input_ids[1] ), ["""[CLS]""", """test""", """question""", """[SEP]""", """this""", """is""", """the""", """fourth""", """record""", """[SEP]"""], )
def __snake_case (self ) -> Optional[Any]:
UpperCAmelCase_: List[str] = self.get_config()
UpperCAmelCase_: List[str] = self.get_dummy_retriever()
UpperCAmelCase_: str = retriever.tokenizer
UpperCAmelCase_: List[Any] = np.array([0, 3, 5], dtype="""long""" )
UpperCAmelCase_: Union[str, Any] = tokenizer(["""Test question"""] ).input_ids
UpperCAmelCase_: Optional[int] = tokenizer(
["""the fourth""", """longer longer"""], add_special_tokens=snake_case_, return_token_type_ids=snake_case_, return_attention_mask=snake_case_, ).input_ids
UpperCAmelCase_: Any = config.reader_seq_len
UpperCAmelCase_: List[str] = retriever(
snake_case_, snake_case_, answer_ids=snake_case_, max_length=snake_case_, return_tensors="""np""" )
self.assertEqual([False, True, True], snake_case_ )
self.assertEqual([[-1, -1, -1], [6, -1, -1], [6, 7, 8]], snake_case_ )
self.assertEqual([[-1, -1, -1], [7, -1, -1], [7, 8, 9]], snake_case_ )
def __snake_case (self ) -> List[Any]:
UpperCAmelCase_: List[str] = self.get_dummy_retriever()
retriever.save_pretrained(os.path.join(self.tmpdirname, """realm_block_records""" ) )
# Test local path
UpperCAmelCase_: Union[str, Any] = retriever.from_pretrained(os.path.join(self.tmpdirname, """realm_block_records""" ) )
self.assertEqual(retriever.block_records[0], b"""This is the first record""" )
# Test mocked remote path
with patch("""transformers.models.realm.retrieval_realm.hf_hub_download""" ) as mock_hf_hub_download:
UpperCAmelCase_: Tuple = os.path.join(
os.path.join(self.tmpdirname, """realm_block_records""" ), _REALM_BLOCK_RECORDS_FILENAME )
UpperCAmelCase_: List[str] = RealmRetriever.from_pretrained("""google/realm-cc-news-pretrained-openqa""" )
self.assertEqual(retriever.block_records[0], b"""This is the first record""" )
| 147
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_tokenizers_available, is_torch_available
__a = {
"configuration_bloom": ["BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP", "BloomConfig", "BloomOnnxConfig"],
}
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = ["BloomTokenizerFast"]
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST",
"BloomForCausalLM",
"BloomModel",
"BloomPreTrainedModel",
"BloomForSequenceClassification",
"BloomForTokenClassification",
"BloomForQuestionAnswering",
]
if TYPE_CHECKING:
from .configuration_bloom import BLOOM_PRETRAINED_CONFIG_ARCHIVE_MAP, BloomConfig, BloomOnnxConfig
try:
if not is_tokenizers_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .tokenization_bloom_fast import BloomTokenizerFast
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_bloom import (
BLOOM_PRETRAINED_MODEL_ARCHIVE_LIST,
BloomForCausalLM,
BloomForQuestionAnswering,
BloomForSequenceClassification,
BloomForTokenClassification,
BloomModel,
BloomPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
import argparse
import os
from transformers.utils import direct_transformers_import
# All paths are set with the intent you should run this script from the root of the repo with the command
# python utils/check_task_guides.py
__lowerCAmelCase : Optional[Any] = 'src/transformers'
__lowerCAmelCase : List[Any] = 'docs/source/en/tasks'
def a__ ( A_, A_, A_ ):
'''simple docstring'''
with open(_lowerCAmelCase, """r""", encoding="""utf-8""", newline="""\n""" ) as f:
__magic_name__ = f.readlines()
# Find the start prompt.
__magic_name__ = 0
while not lines[start_index].startswith(_lowerCAmelCase ):
start_index += 1
start_index += 1
__magic_name__ = start_index
while not lines[end_index].startswith(_lowerCAmelCase ):
end_index += 1
end_index -= 1
while len(lines[start_index] ) <= 1:
start_index += 1
while len(lines[end_index] ) <= 1:
end_index -= 1
end_index += 1
return "".join(lines[start_index:end_index] ), start_index, end_index, lines
# This is to make sure the transformers module imported is the one in the repo.
__lowerCAmelCase : int = direct_transformers_import(TRANSFORMERS_PATH)
__lowerCAmelCase : str = {
'asr.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_CTC_MAPPING_NAMES,
'audio_classification.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_AUDIO_CLASSIFICATION_MAPPING_NAMES,
'language_modeling.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_CAUSAL_LM_MAPPING_NAMES,
'image_classification.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_IMAGE_CLASSIFICATION_MAPPING_NAMES,
'masked_language_modeling.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_MASKED_LM_MAPPING_NAMES,
'multiple_choice.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_MULTIPLE_CHOICE_MAPPING_NAMES,
'object_detection.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_OBJECT_DETECTION_MAPPING_NAMES,
'question_answering.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_QUESTION_ANSWERING_MAPPING_NAMES,
'semantic_segmentation.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_SEMANTIC_SEGMENTATION_MAPPING_NAMES,
'sequence_classification.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_SEQUENCE_CLASSIFICATION_MAPPING_NAMES,
'summarization.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_SEQ_TO_SEQ_CAUSAL_LM_MAPPING_NAMES,
'token_classification.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_TOKEN_CLASSIFICATION_MAPPING_NAMES,
'translation.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_SEQ_TO_SEQ_CAUSAL_LM_MAPPING_NAMES,
'video_classification.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_VIDEO_CLASSIFICATION_MAPPING_NAMES,
'document_question_answering.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_DOCUMENT_QUESTION_ANSWERING_MAPPING_NAMES,
'monocular_depth_estimation.md': transformers_module.models.auto.modeling_auto.MODEL_FOR_DEPTH_ESTIMATION_MAPPING_NAMES,
}
# This list contains model types used in some task guides that are not in `CONFIG_MAPPING_NAMES` (therefore not in any
# `MODEL_MAPPING_NAMES` or any `MODEL_FOR_XXX_MAPPING_NAMES`).
__lowerCAmelCase : Union[str, Any] = {
'summarization.md': ('nllb',),
'translation.md': ('nllb',),
}
def a__ ( A_ ):
'''simple docstring'''
__magic_name__ = TASK_GUIDE_TO_MODELS[task_guide]
__magic_name__ = SPECIAL_TASK_GUIDE_TO_MODEL_TYPES.get(_lowerCAmelCase, set() )
__magic_name__ = {
code: name
for code, name in transformers_module.MODEL_NAMES_MAPPING.items()
if (code in model_maping_names or code in special_model_types)
}
return ", ".join([f'''[{name}](../model_doc/{code})''' for code, name in model_names.items()] ) + "\n"
def a__ ( A_, A_=False ):
'''simple docstring'''
__magic_name__ = _find_text_in_file(
filename=os.path.join(_lowerCAmelCase, _lowerCAmelCase ), start_prompt="""<!--This tip is automatically generated by `make fix-copies`, do not fill manually!-->""", end_prompt="""<!--End of the generated tip-->""", )
__magic_name__ = get_model_list_for_task(_lowerCAmelCase )
if current_list != new_list:
if overwrite:
with open(os.path.join(_lowerCAmelCase, _lowerCAmelCase ), """w""", encoding="""utf-8""", newline="""\n""" ) as f:
f.writelines(lines[:start_index] + [new_list] + lines[end_index:] )
else:
raise ValueError(
f'''The list of models that can be used in the {task_guide} guide needs an update. Run `make fix-copies`'''
""" to fix this.""" )
if __name__ == "__main__":
__lowerCAmelCase : Tuple = argparse.ArgumentParser()
parser.add_argument('--fix_and_overwrite', action='store_true', help='Whether to fix inconsistencies.')
__lowerCAmelCase : Tuple = parser.parse_args()
for task_guide in TASK_GUIDE_TO_MODELS.keys():
check_model_list_for_task(task_guide, args.fix_and_overwrite)
| 88
|
'''simple docstring'''
from PIL import Image
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Image:
def brightness(_lowerCAmelCase ) -> float:
return 128 + level + (c - 128)
if not -255.0 <= level <= 255.0:
raise ValueError("""level must be between -255.0 (black) and 255.0 (white)""" )
return img.point(_lowerCAmelCase )
if __name__ == "__main__":
# Load image
with Image.open("image_data/lena.jpg") as img:
# Change brightness to 100
__a = change_brightness(img, 100)
brigt_img.save("image_data/lena_brightness.png", format="png")
| 35
| 0
|
'''simple docstring'''
import qiskit
def _lowerCAmelCase ( __snake_case : str = 2 ) -> qiskit.result.counts.Counts:
__A : Optional[Any] = qubits
# Using Aer's simulator
__A : Optional[int] = qiskit.Aer.get_backend('aer_simulator' )
# Creating a Quantum Circuit acting on the q register
__A : Any = qiskit.QuantumCircuit(_lowerCAmelCase , _lowerCAmelCase )
# Adding a H gate on qubit 0 (now q0 in superposition)
circuit.h(0 )
for i in range(1 , _lowerCAmelCase ):
# Adding CX (CNOT) gate
circuit.cx(i - 1 , _lowerCAmelCase )
# Mapping the quantum measurement to the classical bits
circuit.measure(list(range(_lowerCAmelCase ) ) , list(range(_lowerCAmelCase ) ) )
# Now measuring any one qubit would affect other qubits to collapse
# their super position and have same state as the measured one.
# Executing the circuit on the simulator
__A : Tuple = qiskit.execute(_lowerCAmelCase , _lowerCAmelCase , shots=10_00 )
return job.result().get_counts(_lowerCAmelCase )
if __name__ == "__main__":
print(f"""Total count for various states are: {quantum_entanglement(3)}""")
| 190
|
'''simple docstring'''
import argparse
import os
import re
__a = "src/transformers"
# Pattern that looks at the indentation in a line.
__a = re.compile(R"^(\s*)\S")
# Pattern that matches `"key":" and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\":")
# Pattern that matches `_import_structure["key"]` and puts `key` in group 0.
__a = re.compile(R"^\s*_import_structure\[\"([^\"]+)\"\]")
# Pattern that matches `"key",` and puts `key` in group 0.
__a = re.compile(R"^\s*\"([^\"]+)\",\s*$")
# Pattern that matches any `[stuff]` and puts `stuff` in group 0.
__a = re.compile(R"\[([^\]]+)\]")
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : int = _re_indent.search(_lowerCAmelCase )
return "" if search is None else search.groups()[0]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase="" , _lowerCAmelCase=None , _lowerCAmelCase=None ) -> List[str]:
snake_case__ : str = 0
snake_case__ : Union[str, Any] = code.split("""\n""" )
if start_prompt is not None:
while not lines[index].startswith(_lowerCAmelCase ):
index += 1
snake_case__ : Tuple = ["""\n""".join(lines[:index] )]
else:
snake_case__ : List[str] = []
# We split into blocks until we get to the `end_prompt` (or the end of the block).
snake_case__ : Optional[int] = [lines[index]]
index += 1
while index < len(_lowerCAmelCase ) and (end_prompt is None or not lines[index].startswith(_lowerCAmelCase )):
if len(lines[index] ) > 0 and get_indent(lines[index] ) == indent_level:
if len(_lowerCAmelCase ) > 0 and get_indent(current_block[-1] ).startswith(indent_level + """ """ ):
current_block.append(lines[index] )
blocks.append("""\n""".join(_lowerCAmelCase ) )
if index < len(_lowerCAmelCase ) - 1:
snake_case__ : str = [lines[index + 1]]
index += 1
else:
snake_case__ : int = []
else:
blocks.append("""\n""".join(_lowerCAmelCase ) )
snake_case__ : Optional[Any] = [lines[index]]
else:
current_block.append(lines[index] )
index += 1
# Adds current block if it's nonempty.
if len(_lowerCAmelCase ) > 0:
blocks.append("""\n""".join(_lowerCAmelCase ) )
# Add final block after end_prompt if provided.
if end_prompt is not None and index < len(_lowerCAmelCase ):
blocks.append("""\n""".join(lines[index:] ) )
return blocks
def __snake_case( _lowerCAmelCase ) -> Tuple:
def _inner(_lowerCAmelCase ):
return key(_lowerCAmelCase ).lower().replace("""_""" , """""" )
return _inner
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=None ) -> List[Any]:
# If no key is provided, we use a noop.
def noop(_lowerCAmelCase ):
return x
if key is None:
snake_case__ : Optional[int] = noop
# Constants are all uppercase, they go first.
snake_case__ : Optional[int] = [obj for obj in objects if key(_lowerCAmelCase ).isupper()]
# Classes are not all uppercase but start with a capital, they go second.
snake_case__ : int = [obj for obj in objects if key(_lowerCAmelCase )[0].isupper() and not key(_lowerCAmelCase ).isupper()]
# Functions begin with a lowercase, they go last.
snake_case__ : str = [obj for obj in objects if not key(_lowerCAmelCase )[0].isupper()]
snake_case__ : List[str] = ignore_underscore(_lowerCAmelCase )
return sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase ) + sorted(_lowerCAmelCase , key=_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> int:
# This inner function sort imports between [ ].
def _replace(_lowerCAmelCase ):
snake_case__ : Union[str, Any] = match.groups()[0]
if "," not in imports:
return f"[{imports}]"
snake_case__ : int = [part.strip().replace("""\"""" , """""" ) for part in imports.split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
return "[" + ", ".join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] ) + "]"
snake_case__ : str = import_statement.split("""\n""" )
if len(_lowerCAmelCase ) > 3:
# Here we have to sort internal imports that are on several lines (one per name):
# key: [
# "object1",
# "object2",
# ...
# ]
# We may have to ignore one or two lines on each side.
snake_case__ : Dict = 2 if lines[1].strip() == """[""" else 1
snake_case__ : str = [(i, _re_strip_line.search(_lowerCAmelCase ).groups()[0]) for i, line in enumerate(lines[idx:-idx] )]
snake_case__ : str = sort_objects(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )
snake_case__ : Union[str, Any] = [lines[x[0] + idx] for x in sorted_indices]
return "\n".join(lines[:idx] + sorted_lines + lines[-idx:] )
elif len(_lowerCAmelCase ) == 3:
# Here we have to sort internal imports that are on one separate line:
# key: [
# "object1", "object2", ...
# ]
if _re_bracket_content.search(lines[1] ) is not None:
snake_case__ : Union[str, Any] = _re_bracket_content.sub(_replace , lines[1] )
else:
snake_case__ : List[Any] = [part.strip().replace("""\"""" , """""" ) for part in lines[1].split(""",""" )]
# We will have a final empty element if the line finished with a comma.
if len(keys[-1] ) == 0:
snake_case__ : List[str] = keys[:-1]
snake_case__ : int = get_indent(lines[1] ) + """, """.join([f"\"{k}\"" for k in sort_objects(_lowerCAmelCase )] )
return "\n".join(_lowerCAmelCase )
else:
# Finally we have to deal with imports fitting on one line
snake_case__ : Optional[Any] = _re_bracket_content.sub(_replace , _lowerCAmelCase )
return import_statement
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=True ) -> Dict:
with open(_lowerCAmelCase , encoding="""utf-8""" ) as f:
snake_case__ : Optional[int] = f.read()
if "_import_structure" not in code:
return
# Blocks of indent level 0
snake_case__ : Optional[int] = split_code_in_indented_blocks(
_lowerCAmelCase , start_prompt="""_import_structure = {""" , end_prompt="""if TYPE_CHECKING:""" )
# We ignore block 0 (everything untils start_prompt) and the last block (everything after end_prompt).
for block_idx in range(1 , len(_lowerCAmelCase ) - 1 ):
# Check if the block contains some `_import_structure`s thingy to sort.
snake_case__ : Optional[Any] = main_blocks[block_idx]
snake_case__ : Dict = block.split("""\n""" )
# Get to the start of the imports.
snake_case__ : Dict = 0
while line_idx < len(_lowerCAmelCase ) and "_import_structure" not in block_lines[line_idx]:
# Skip dummy import blocks
if "import dummy" in block_lines[line_idx]:
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
else:
line_idx += 1
if line_idx >= len(_lowerCAmelCase ):
continue
# Ignore beginning and last line: they don't contain anything.
snake_case__ : List[str] = """\n""".join(block_lines[line_idx:-1] )
snake_case__ : str = get_indent(block_lines[1] )
# Slit the internal block into blocks of indent level 1.
snake_case__ : Optional[int] = split_code_in_indented_blocks(_lowerCAmelCase , indent_level=_lowerCAmelCase )
# We have two categories of import key: list or _import_structure[key].append/extend
snake_case__ : Tuple = _re_direct_key if """_import_structure = {""" in block_lines[0] else _re_indirect_key
# Grab the keys, but there is a trap: some lines are empty or just comments.
snake_case__ : Optional[Any] = [(pattern.search(_lowerCAmelCase ).groups()[0] if pattern.search(_lowerCAmelCase ) is not None else None) for b in internal_blocks]
# We only sort the lines with a key.
snake_case__ : Dict = [(i, key) for i, key in enumerate(_lowerCAmelCase ) if key is not None]
snake_case__ : Union[str, Any] = [x[0] for x in sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x[1] )]
# We reorder the blocks by leaving empty lines/comments as they were and reorder the rest.
snake_case__ : List[Any] = 0
snake_case__ : Optional[Any] = []
for i in range(len(_lowerCAmelCase ) ):
if keys[i] is None:
reorderded_blocks.append(internal_blocks[i] )
else:
snake_case__ : Optional[Any] = sort_objects_in_import(internal_blocks[sorted_indices[count]] )
reorderded_blocks.append(_lowerCAmelCase )
count += 1
# And we put our main block back together with its first and last line.
snake_case__ : Dict = """\n""".join(block_lines[:line_idx] + reorderded_blocks + [block_lines[-1]] )
if code != "\n".join(_lowerCAmelCase ):
if check_only:
return True
else:
print(f"Overwriting {file}." )
with open(_lowerCAmelCase , """w""" , encoding="""utf-8""" ) as f:
f.write("""\n""".join(_lowerCAmelCase ) )
def __snake_case( _lowerCAmelCase=True ) -> Tuple:
snake_case__ : str = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
snake_case__ : Union[str, Any] = sort_imports(os.path.join(_lowerCAmelCase , """__init__.py""" ) , check_only=_lowerCAmelCase )
if result:
snake_case__ : Union[str, Any] = [os.path.join(_lowerCAmelCase , """__init__.py""" )]
if len(_lowerCAmelCase ) > 0:
raise ValueError(f"Would overwrite {len(_lowerCAmelCase )} files, run `make style`." )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--check_only", action="store_true", help="Whether to only check or fix style.")
__a = parser.parse_args()
sort_imports_in_all_inits(check_only=args.check_only)
| 35
| 0
|
from ...configuration_utils import PretrainedConfig
from ...utils import logging
__lowerCAmelCase = logging.get_logger(__name__)
__lowerCAmelCase = {
'''bigcode/gpt_bigcode-santacoder''': '''https://huggingface.co/bigcode/gpt_bigcode-santacoder/resolve/main/config.json''',
}
class __a ( _a ):
__lowercase : Union[str, Any] = 'gpt_bigcode'
__lowercase : List[str] = ['past_key_values']
__lowercase : Dict = {
'hidden_size': 'n_embd',
'max_position_embeddings': 'n_positions',
'num_attention_heads': 'n_head',
'num_hidden_layers': 'n_layer',
}
def __init__( self , lowerCAmelCase__=50_257 , lowerCAmelCase__=1_024 , lowerCAmelCase__=768 , lowerCAmelCase__=12 , lowerCAmelCase__=12 , lowerCAmelCase__=None , lowerCAmelCase__="gelu_pytorch_tanh" , lowerCAmelCase__=0.1 , lowerCAmelCase__=0.1 , lowerCAmelCase__=0.1 , lowerCAmelCase__=1E-5 , lowerCAmelCase__=0.0_2 , lowerCAmelCase__=True , lowerCAmelCase__=True , lowerCAmelCase__=50_256 , lowerCAmelCase__=50_256 , lowerCAmelCase__=True , lowerCAmelCase__=True , lowerCAmelCase__=True , **lowerCAmelCase__ , ) -> Optional[Any]:
'''simple docstring'''
lowercase__: Optional[Any] = vocab_size
lowercase__: Tuple = n_positions
lowercase__: Any = n_embd
lowercase__: List[str] = n_layer
lowercase__: Union[str, Any] = n_head
lowercase__: Optional[int] = n_inner
lowercase__: Any = activation_function
lowercase__: List[Any] = resid_pdrop
lowercase__: Tuple = embd_pdrop
lowercase__: Tuple = attn_pdrop
lowercase__: Optional[int] = layer_norm_epsilon
lowercase__: Dict = initializer_range
lowercase__: Dict = scale_attn_weights
lowercase__: Optional[Any] = use_cache
lowercase__: str = attention_softmax_in_fpaa
lowercase__: List[Any] = scale_attention_softmax_in_fpaa
lowercase__: Tuple = multi_query
lowercase__: Optional[int] = bos_token_id
lowercase__: int = eos_token_id
super().__init__(bos_token_id=snake_case_ , eos_token_id=snake_case_ , **snake_case_ )
| 196
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_torch_available
__a = {
"configuration_timesformer": ["TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP", "TimesformerConfig"],
}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
__a = [
"TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST",
"TimesformerModel",
"TimesformerForVideoClassification",
"TimesformerPreTrainedModel",
]
if TYPE_CHECKING:
from .configuration_timesformer import TIMESFORMER_PRETRAINED_CONFIG_ARCHIVE_MAP, TimesformerConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_timesformer import (
TIMESFORMER_PRETRAINED_MODEL_ARCHIVE_LIST,
TimesformerForVideoClassification,
TimesformerModel,
TimesformerPreTrainedModel,
)
else:
import sys
__a = _LazyModule(__name__, globals()["__file__"], _import_structure, module_spec=__spec__)
| 35
| 0
|
import unittest
from transformers import DebertaConfig, is_torch_available
from transformers.testing_utils import require_sentencepiece, require_tokenizers, require_torch, slow, torch_device
from ...test_configuration_common import ConfigTester
from ...test_modeling_common import ModelTesterMixin, ids_tensor
from ...test_pipeline_mixin import PipelineTesterMixin
if is_torch_available():
import torch
from transformers import (
DebertaForMaskedLM,
DebertaForQuestionAnswering,
DebertaForSequenceClassification,
DebertaForTokenClassification,
DebertaModel,
)
from transformers.models.deberta.modeling_deberta import DEBERTA_PRETRAINED_MODEL_ARCHIVE_LIST
class _lowercase ( _a):
"""simple docstring"""
def __init__( self : Optional[Any] , __lowerCamelCase : Any , __lowerCamelCase : Tuple=13 , __lowerCamelCase : List[Any]=7 , __lowerCamelCase : Tuple=True , __lowerCamelCase : str=True , __lowerCamelCase : List[Any]=True , __lowerCamelCase : str=True , __lowerCamelCase : str=99 , __lowerCamelCase : Any=32 , __lowerCamelCase : List[Any]=5 , __lowerCamelCase : int=4 , __lowerCamelCase : Optional[int]=37 , __lowerCamelCase : str="gelu" , __lowerCamelCase : str=0.1 , __lowerCamelCase : List[str]=0.1 , __lowerCamelCase : List[str]=512 , __lowerCamelCase : Any=16 , __lowerCamelCase : int=2 , __lowerCamelCase : List[Any]=0.0_2 , __lowerCamelCase : List[str]=False , __lowerCamelCase : int=True , __lowerCamelCase : Union[str, Any]="None" , __lowerCamelCase : List[Any]=3 , __lowerCamelCase : List[str]=4 , __lowerCamelCase : Any=None , ):
'''simple docstring'''
lowerCamelCase__ : List[str] = parent
lowerCamelCase__ : Any = batch_size
lowerCamelCase__ : List[Any] = seq_length
lowerCamelCase__ : str = is_training
lowerCamelCase__ : List[str] = use_input_mask
lowerCamelCase__ : List[str] = use_token_type_ids
lowerCamelCase__ : Optional[int] = use_labels
lowerCamelCase__ : Dict = vocab_size
lowerCamelCase__ : Tuple = hidden_size
lowerCamelCase__ : Tuple = num_hidden_layers
lowerCamelCase__ : List[str] = num_attention_heads
lowerCamelCase__ : Optional[int] = intermediate_size
lowerCamelCase__ : List[Any] = hidden_act
lowerCamelCase__ : Union[str, Any] = hidden_dropout_prob
lowerCamelCase__ : List[Any] = attention_probs_dropout_prob
lowerCamelCase__ : List[str] = max_position_embeddings
lowerCamelCase__ : Optional[Any] = type_vocab_size
lowerCamelCase__ : Any = type_sequence_label_size
lowerCamelCase__ : int = initializer_range
lowerCamelCase__ : Union[str, Any] = num_labels
lowerCamelCase__ : Optional[Any] = num_choices
lowerCamelCase__ : List[Any] = relative_attention
lowerCamelCase__ : List[Any] = position_biased_input
lowerCamelCase__ : str = pos_att_type
lowerCamelCase__ : Union[str, Any] = scope
def lowerCAmelCase ( self : int ):
'''simple docstring'''
lowerCamelCase__ : Optional[int] = ids_tensor([self.batch_size, self.seq_length] , self.vocab_size )
lowerCamelCase__ : int = None
if self.use_input_mask:
lowerCamelCase__ : Any = ids_tensor([self.batch_size, self.seq_length] , vocab_size=2 )
lowerCamelCase__ : Optional[int] = None
if self.use_token_type_ids:
lowerCamelCase__ : str = ids_tensor([self.batch_size, self.seq_length] , self.type_vocab_size )
lowerCamelCase__ : Optional[Any] = None
lowerCamelCase__ : str = None
lowerCamelCase__ : Dict = None
if self.use_labels:
lowerCamelCase__ : str = ids_tensor([self.batch_size] , self.type_sequence_label_size )
lowerCamelCase__ : Dict = ids_tensor([self.batch_size, self.seq_length] , self.num_labels )
lowerCamelCase__ : Tuple = ids_tensor([self.batch_size] , self.num_choices )
lowerCamelCase__ : List[Any] = self.get_config()
return config, input_ids, token_type_ids, input_mask, sequence_labels, token_labels, choice_labels
def lowerCAmelCase ( self : Tuple ):
'''simple docstring'''
return DebertaConfig(
vocab_size=self.vocab_size , hidden_size=self.hidden_size , num_hidden_layers=self.num_hidden_layers , num_attention_heads=self.num_attention_heads , intermediate_size=self.intermediate_size , hidden_act=self.hidden_act , hidden_dropout_prob=self.hidden_dropout_prob , attention_probs_dropout_prob=self.attention_probs_dropout_prob , max_position_embeddings=self.max_position_embeddings , type_vocab_size=self.type_vocab_size , initializer_range=self.initializer_range , relative_attention=self.relative_attention , position_biased_input=self.position_biased_input , pos_att_type=self.pos_att_type , )
def lowerCAmelCase ( self : List[Any] ):
'''simple docstring'''
lowerCamelCase__ : Any = self.get_config()
lowerCamelCase__ : List[Any] = 300
return config
def lowerCAmelCase ( self : Dict , __lowerCamelCase : Optional[Any] ):
'''simple docstring'''
self.parent.assertListEqual(list(result.loss.size() ) , [] )
def lowerCAmelCase ( self : List[Any] , __lowerCamelCase : Optional[Any] , __lowerCamelCase : Tuple , __lowerCamelCase : int , __lowerCamelCase : List[str] , __lowerCamelCase : int , __lowerCamelCase : str , __lowerCamelCase : Optional[Any] ):
'''simple docstring'''
lowerCamelCase__ : Optional[int] = DebertaModel(config=snake_case_ )
model.to(snake_case_ )
model.eval()
lowerCamelCase__ : Union[str, Any] = model(snake_case_ , attention_mask=snake_case_ , token_type_ids=snake_case_ )[0]
lowerCamelCase__ : int = model(snake_case_ , token_type_ids=snake_case_ )[0]
lowerCamelCase__ : int = model(snake_case_ )[0]
self.parent.assertListEqual(list(sequence_output.size() ) , [self.batch_size, self.seq_length, self.hidden_size] )
def lowerCAmelCase ( self : Dict , __lowerCamelCase : Tuple , __lowerCamelCase : Dict , __lowerCamelCase : Dict , __lowerCamelCase : Optional[Any] , __lowerCamelCase : Union[str, Any] , __lowerCamelCase : Dict , __lowerCamelCase : str ):
'''simple docstring'''
lowerCamelCase__ : List[str] = DebertaForMaskedLM(config=snake_case_ )
model.to(snake_case_ )
model.eval()
lowerCamelCase__ : Dict = model(snake_case_ , attention_mask=snake_case_ , token_type_ids=snake_case_ , labels=snake_case_ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.vocab_size) )
def lowerCAmelCase ( self : Optional[int] , __lowerCamelCase : Optional[Any] , __lowerCamelCase : Tuple , __lowerCamelCase : Tuple , __lowerCamelCase : Union[str, Any] , __lowerCamelCase : str , __lowerCamelCase : Optional[int] , __lowerCamelCase : int ):
'''simple docstring'''
lowerCamelCase__ : int = self.num_labels
lowerCamelCase__ : Dict = DebertaForSequenceClassification(snake_case_ )
model.to(snake_case_ )
model.eval()
lowerCamelCase__ : List[str] = model(snake_case_ , attention_mask=snake_case_ , token_type_ids=snake_case_ , labels=snake_case_ )
self.parent.assertListEqual(list(result.logits.size() ) , [self.batch_size, self.num_labels] )
self.check_loss_output(snake_case_ )
def lowerCAmelCase ( self : Optional[Any] , __lowerCamelCase : List[str] , __lowerCamelCase : Optional[Any] , __lowerCamelCase : List[Any] , __lowerCamelCase : Optional[Any] , __lowerCamelCase : Dict , __lowerCamelCase : int , __lowerCamelCase : str ):
'''simple docstring'''
lowerCamelCase__ : Optional[int] = self.num_labels
lowerCamelCase__ : Tuple = DebertaForTokenClassification(config=snake_case_ )
model.to(snake_case_ )
model.eval()
lowerCamelCase__ : Optional[int] = model(snake_case_ , attention_mask=snake_case_ , token_type_ids=snake_case_ , labels=snake_case_ )
self.parent.assertEqual(result.logits.shape , (self.batch_size, self.seq_length, self.num_labels) )
def lowerCAmelCase ( self : Dict , __lowerCamelCase : Optional[Any] , __lowerCamelCase : List[Any] , __lowerCamelCase : Optional[Any] , __lowerCamelCase : Optional[int] , __lowerCamelCase : List[Any] , __lowerCamelCase : Optional[int] , __lowerCamelCase : Optional[Any] ):
'''simple docstring'''
lowerCamelCase__ : str = DebertaForQuestionAnswering(config=snake_case_ )
model.to(snake_case_ )
model.eval()
lowerCamelCase__ : Union[str, Any] = model(
snake_case_ , attention_mask=snake_case_ , token_type_ids=snake_case_ , start_positions=snake_case_ , end_positions=snake_case_ , )
self.parent.assertEqual(result.start_logits.shape , (self.batch_size, self.seq_length) )
self.parent.assertEqual(result.end_logits.shape , (self.batch_size, self.seq_length) )
def lowerCAmelCase ( self : str ):
'''simple docstring'''
lowerCamelCase__ : List[str] = self.prepare_config_and_inputs()
(
lowerCamelCase__
) : str = config_and_inputs
lowerCamelCase__ : int = {"""input_ids""": input_ids, """token_type_ids""": token_type_ids, """attention_mask""": input_mask}
return config, inputs_dict
@require_torch
class _lowercase ( _a , _a , unittest.TestCase):
"""simple docstring"""
A__ = (
(
DebertaModel,
DebertaForMaskedLM,
DebertaForSequenceClassification,
DebertaForTokenClassification,
DebertaForQuestionAnswering,
)
if is_torch_available()
else ()
)
A__ = (
{
"feature-extraction": DebertaModel,
"fill-mask": DebertaForMaskedLM,
"question-answering": DebertaForQuestionAnswering,
"text-classification": DebertaForSequenceClassification,
"token-classification": DebertaForTokenClassification,
"zero-shot": DebertaForSequenceClassification,
}
if is_torch_available()
else {}
)
A__ = True
A__ = False
A__ = False
A__ = False
A__ = False
def lowerCAmelCase ( self : int ):
'''simple docstring'''
lowerCamelCase__ : Union[str, Any] = DebertaModelTester(self )
lowerCamelCase__ : List[str] = ConfigTester(self , config_class=snake_case_ , hidden_size=37 )
def lowerCAmelCase ( self : int ):
'''simple docstring'''
self.config_tester.run_common_tests()
def lowerCAmelCase ( self : Optional[Any] ):
'''simple docstring'''
lowerCamelCase__ : List[Any] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_deberta_model(*snake_case_ )
def lowerCAmelCase ( self : int ):
'''simple docstring'''
lowerCamelCase__ : Any = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_deberta_for_sequence_classification(*snake_case_ )
def lowerCAmelCase ( self : Optional[Any] ):
'''simple docstring'''
lowerCamelCase__ : Optional[int] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_deberta_for_masked_lm(*snake_case_ )
def lowerCAmelCase ( self : Dict ):
'''simple docstring'''
lowerCamelCase__ : Dict = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_deberta_for_question_answering(*snake_case_ )
def lowerCAmelCase ( self : Dict ):
'''simple docstring'''
lowerCamelCase__ : List[str] = self.model_tester.prepare_config_and_inputs()
self.model_tester.create_and_check_deberta_for_token_classification(*snake_case_ )
@slow
def lowerCAmelCase ( self : Optional[int] ):
'''simple docstring'''
for model_name in DEBERTA_PRETRAINED_MODEL_ARCHIVE_LIST[:1]:
lowerCamelCase__ : Union[str, Any] = DebertaModel.from_pretrained(snake_case_ )
self.assertIsNotNone(snake_case_ )
@require_torch
@require_sentencepiece
@require_tokenizers
class _lowercase ( unittest.TestCase):
"""simple docstring"""
@unittest.skip(reason="Model not available yet" )
def lowerCAmelCase ( self : int ):
'''simple docstring'''
pass
@slow
def lowerCAmelCase ( self : Tuple ):
'''simple docstring'''
lowerCamelCase__ : List[str] = DebertaModel.from_pretrained("microsoft/deberta-base" )
lowerCamelCase__ : Optional[Any] = torch.tensor([[0, 31414, 232, 328, 740, 1140, 12695, 69, 46078, 1588, 2]] )
lowerCamelCase__ : int = torch.tensor([[0, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1]] )
with torch.no_grad():
lowerCamelCase__ : Any = model(snake_case_ , attention_mask=snake_case_ )[0]
# compare the actual values for a slice.
lowerCamelCase__ : Optional[int] = torch.tensor(
[[[-0.5_9_8_6, -0.8_0_5_5, -0.8_4_6_2], [1.4_4_8_4, -0.9_3_4_8, -0.8_0_5_9], [0.3_1_2_3, 0.0_0_3_2, -1.4_1_3_1]]] )
self.assertTrue(torch.allclose(output[:, 1:4, 1:4] , snake_case_ , atol=1E-4 ) , f"{output[:, 1:4, 1:4]}" )
| 184
|
'''simple docstring'''
import argparse
import json
import os
import fairseq
import torch
from torch import nn
from transformers import (
SpeechaTextaConfig,
SpeechaTextaForCausalLM,
SpeechaTextaTokenizer,
SpeechEncoderDecoderConfig,
SpeechEncoderDecoderModel,
WavaVecaConfig,
WavaVecaFeatureExtractor,
WavaVecaModel,
logging,
)
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
__a = {
"post_extract_proj": "feature_projection.projection",
"encoder.pos_conv.0": "encoder.pos_conv_embed.conv",
"self_attn.k_proj": "encoder.layers.*.attention.k_proj",
"self_attn.v_proj": "encoder.layers.*.attention.v_proj",
"self_attn.q_proj": "encoder.layers.*.attention.q_proj",
"self_attn.out_proj": "encoder.layers.*.attention.out_proj",
"self_attn_layer_norm": "encoder.layers.*.layer_norm",
"fc1": "encoder.layers.*.feed_forward.intermediate_dense",
"fc2": "encoder.layers.*.feed_forward.output_dense",
"final_layer_norm": "encoder.layers.*.final_layer_norm",
"encoder.layer_norm": "encoder.layer_norm",
"w2v_model.layer_norm": "feature_projection.layer_norm",
"quantizer.weight_proj": "quantizer.weight_proj",
"quantizer.vars": "quantizer.codevectors",
"project_q": "project_q",
"final_proj": "project_hid",
"w2v_encoder.proj": "lm_head",
"mask_emb": "masked_spec_embed",
}
__a = [
"lm_head",
"quantizer.weight_proj",
"quantizer.codevectors",
"project_q",
"project_hid",
]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Union[str, Any]:
for attribute in key.split(""".""" ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
if weight_type is not None:
snake_case__ : List[Any] = getattr(_lowerCAmelCase , _lowerCAmelCase ).shape
else:
snake_case__ : Union[str, Any] = hf_pointer.shape
assert hf_shape == value.shape, (
f"Shape of hf {key + '.' + weight_type if weight_type is not None else ''} is {hf_shape}, but should be"
f" {value.shape} for {full_name}"
)
if weight_type == "weight":
snake_case__ : int = value
elif weight_type == "weight_g":
snake_case__ : List[str] = value
elif weight_type == "weight_v":
snake_case__ : List[str] = value
elif weight_type == "bias":
snake_case__ : Optional[Any] = value
else:
snake_case__ : str = value
logger.info(f"{key + '.' + weight_type if weight_type is not None else ''} was initialized from {full_name}." )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Any:
snake_case__ : Union[str, Any] = []
snake_case__ : Dict = fairseq_model.state_dict()
snake_case__ : List[Any] = hf_model.feature_extractor
# if encoder has different dim to decoder -> use proj_weight
snake_case__ : Optional[int] = None
for name, value in fairseq_dict.items():
snake_case__ : List[Any] = False
if "conv_layers" in name:
load_conv_layer(
_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , hf_model.config.feat_extract_norm == """group""" , )
snake_case__ : Union[str, Any] = True
elif name.split(""".""" )[0] == "proj":
snake_case__ : Tuple = fairseq_model.proj
snake_case__ : int = True
else:
for key, mapped_key in MAPPING.items():
if key in name or key.split("""w2v_model.""" )[-1] == name.split(""".""" )[0]:
snake_case__ : Optional[Any] = True
if "*" in mapped_key:
snake_case__ : Optional[int] = name.split(_lowerCAmelCase )[0].split(""".""" )[-2]
snake_case__ : Tuple = mapped_key.replace("""*""" , _lowerCAmelCase )
if "weight_g" in name:
snake_case__ : str = """weight_g"""
elif "weight_v" in name:
snake_case__ : int = """weight_v"""
elif "bias" in name:
snake_case__ : Dict = """bias"""
elif "weight" in name:
snake_case__ : Union[str, Any] = """weight"""
else:
snake_case__ : Union[str, Any] = None
set_recursively(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
continue
if not is_used:
unused_weights.append(_lowerCAmelCase )
logger.warning(f"Unused weights: {unused_weights}" )
return proj_weight
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : int = full_name.split("""conv_layers.""" )[-1]
snake_case__ : Dict = name.split(""".""" )
snake_case__ : Any = int(items[0] )
snake_case__ : Optional[Any] = int(items[1] )
if type_id == 0:
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.bias.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.bias.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].conv.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor.conv_layers[layer_id].conv.weight.data.shape} was found."
)
snake_case__ : str = value
logger.info(f"Feat extract conv layer {layer_id} was initialized from {full_name}." )
elif (type_id == 2 and not use_group_norm) or (type_id == 2 and layer_id == 0 and use_group_norm):
if "bias" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.bias.data.shape, (
f"{full_name} has size {value.shape}, but {feature_extractor[layer_id].layer_norm.bias.data.shape} was"
" found."
)
snake_case__ : Union[str, Any] = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
elif "weight" in name:
assert value.shape == feature_extractor.conv_layers[layer_id].layer_norm.weight.data.shape, (
f"{full_name} has size {value.shape}, but"
f" {feature_extractor[layer_id].layer_norm.weight.data.shape} was found."
)
snake_case__ : int = value
logger.info(f"Feat extract layer norm weight of layer {layer_id} was initialized from {full_name}." )
else:
unused_weights.append(_lowerCAmelCase )
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ , snake_case__ : str = emb.weight.shape
snake_case__ : List[str] = nn.Linear(_lowerCAmelCase , _lowerCAmelCase , bias=_lowerCAmelCase )
snake_case__ : List[str] = emb.weight.data
return lin_layer
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
with open(_lowerCAmelCase , """r""" , encoding="""utf-8""" ) as f:
snake_case__ : int = f.readlines()
snake_case__ : List[Any] = [line.split(""" """ )[0] for line in lines]
snake_case__ : Union[str, Any] = len(_lowerCAmelCase )
snake_case__ : Any = {
"""<s>""": 0,
"""<pad>""": 1,
"""</s>""": 2,
"""<unk>""": 3,
}
vocab_dict.update(dict(zip(_lowerCAmelCase , range(4 , num_words + 4 ) ) ) )
return vocab_dict
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , ) -> int:
snake_case__ : Optional[Any] = WavaVecaConfig.from_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaConfig.from_pretrained(
_lowerCAmelCase , vocab_size=_lowerCAmelCase , decoder_layers=_lowerCAmelCase , do_stable_layer_norm=_lowerCAmelCase )
snake_case__ : Optional[Any] = WavaVecaFeatureExtractor(
feature_size=1 , sampling_rate=16_000 , padding_value=0 , do_normalize=_lowerCAmelCase , return_attention_mask=_lowerCAmelCase , )
snake_case__ , snake_case__ , snake_case__ : Union[str, Any] = fairseq.checkpoint_utils.load_model_ensemble_and_task(
[checkpoint_path] , arg_overrides={"""data""": """/""".join(dict_path.split("""/""" )[:-1] )} )
snake_case__ : Tuple = model[0].eval()
# set weights for wav2vec2 encoder
snake_case__ : Optional[Any] = WavaVecaModel(_lowerCAmelCase )
snake_case__ : Dict = recursively_load_weights_wavaveca(model.encoder , _lowerCAmelCase )
snake_case__ : Optional[Any] = SpeechaTextaForCausalLM(_lowerCAmelCase )
snake_case__ , snake_case__ : Tuple = hf_decoder.model.decoder.load_state_dict(model.decoder.state_dict() , strict=_lowerCAmelCase )
# set output linear layer
unexpected_keys.remove("""embed_out""" )
snake_case__ : Tuple = nn.Parameter(model.decoder.embed_out.detach() )
# layer norm is init to identity matrix so leaving it is fine
logger.warning(f"The following keys are missing when loading the decoder weights: {missing_keys}" )
logger.warning(f"The following keys are unexpected when loading the decoder weights: {unexpected_keys}" )
snake_case__ : List[Any] = SpeechEncoderDecoderModel(encoder=_lowerCAmelCase , decoder=_lowerCAmelCase )
snake_case__ : Tuple = False
# add projection layer
snake_case__ : Union[str, Any] = nn.Parameter(projection_layer.weight )
snake_case__ : int = nn.Parameter(projection_layer.bias )
snake_case__ : Tuple = create_vocab_dict(_lowerCAmelCase )
with open(os.path.join(_lowerCAmelCase , """vocab.json""" ) , """w""" ) as fp:
json.dump(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Tuple = SpeechaTextaTokenizer(os.path.join(_lowerCAmelCase , """vocab.json""" ) )
tokenizer.save_pretrained(_lowerCAmelCase )
snake_case__ : Optional[Any] = hf_wavavec.config.to_dict()
snake_case__ : Tuple = tokenizer.pad_token_id
snake_case__ : Optional[Any] = tokenizer.bos_token_id
snake_case__ : int = tokenizer.eos_token_id
snake_case__ : str = """speech_to_text_2"""
snake_case__ : List[Any] = """wav2vec2"""
snake_case__ : List[str] = SpeechEncoderDecoderConfig.from_dict(_lowerCAmelCase )
hf_wavavec.save_pretrained(_lowerCAmelCase )
feature_extractor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
parser.add_argument("--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model.")
parser.add_argument("--checkpoint_path", default=None, type=str, help="Path to fairseq checkpoint")
parser.add_argument("--dict_path", default=None, type=str, help="Path to dict of fine-tuned model")
parser.add_argument(
"--encoder_config_path",
default="facebook/wav2vec2-large-lv60",
type=str,
help="Path to hf encoder wav2vec2 checkpoint config",
)
parser.add_argument(
"--decoder_config_path",
default="facebook/s2t-small-mustc-en-fr-st",
type=str,
help="Path to hf decoder s2t checkpoint config",
)
parser.add_argument("--vocab_size", default=1_0224, type=int, help="Vocab size of decoder")
parser.add_argument("--num_decoder_layers", default=7, type=int, help="Number of decoder layers")
__a = parser.parse_args()
convert_wavaveca_checkpoint(
args.checkpoint_path,
args.pytorch_dump_folder_path,
args.dict_path,
encoder_config_path=args.encoder_config_path,
decoder_config_path=args.decoder_config_path,
vocab_size=args.vocab_size,
num_decoder_layers=args.num_decoder_layers,
)
| 35
| 0
|
'''simple docstring'''
from functools import reduce
lowercase_ = (
"73167176531330624919225119674426574742355349194934"
"96983520312774506326239578318016984801869478851843"
"85861560789112949495459501737958331952853208805511"
"12540698747158523863050715693290963295227443043557"
"66896648950445244523161731856403098711121722383113"
"62229893423380308135336276614282806444486645238749"
"30358907296290491560440772390713810515859307960866"
"70172427121883998797908792274921901699720888093776"
"65727333001053367881220235421809751254540594752243"
"52584907711670556013604839586446706324415722155397"
"53697817977846174064955149290862569321978468622482"
"83972241375657056057490261407972968652414535100474"
"82166370484403199890008895243450658541227588666881"
"16427171479924442928230863465674813919123162824586"
"17866458359124566529476545682848912883142607690042"
"24219022671055626321111109370544217506941658960408"
"07198403850962455444362981230987879927244284909188"
"84580156166097919133875499200524063689912560717606"
"05886116467109405077541002256983155200055935729725"
"71636269561882670428252483600823257530420752963450"
)
def lowerCAmelCase (__A = N):
"""simple docstring"""
return max(
# mypy cannot properly interpret reduce
int(reduce(lambda __A , __A: str(int(_lowerCAmelCase) * int(_lowerCAmelCase)) , n[i : i + 13]))
for i in range(len(_lowerCAmelCase) - 12))
if __name__ == "__main__":
print(F"""{solution() = }""")
| 211
|
'''simple docstring'''
import importlib
import os
import sys
# This is required to make the module import works (when the python process is running from the root of the repo)
sys.path.append(".")
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = test_file.split(os.path.sep )
if components[0:2] != ["tests", "models"]:
raise ValueError(
"""`test_file` should start with `tests/models/` (with `/` being the OS specific path separator). Got """
f"{test_file} instead." )
snake_case__ : Dict = components[-1]
if not test_fn.endswith("""py""" ):
raise ValueError(f"`test_file` should be a python file. Got {test_fn} instead." )
if not test_fn.startswith("""test_modeling_""" ):
raise ValueError(
f"`test_file` should point to a file name of the form `test_modeling_*.py`. Got {test_fn} instead." )
snake_case__ : int = components[:-1] + [test_fn.replace(""".py""" , """""" )]
snake_case__ : int = """.""".join(_lowerCAmelCase )
return test_module_path
def __snake_case( _lowerCAmelCase ) -> List[str]:
snake_case__ : str = get_module_path(_lowerCAmelCase )
snake_case__ : Union[str, Any] = importlib.import_module(_lowerCAmelCase )
return test_module
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : List[Any] = []
snake_case__ : Optional[int] = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
if attr.endswith("""ModelTester""" ):
tester_classes.append(getattr(_lowerCAmelCase , _lowerCAmelCase ) )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : List[str] = []
snake_case__ : Any = get_test_module(_lowerCAmelCase )
for attr in dir(_lowerCAmelCase ):
snake_case__ : Dict = getattr(_lowerCAmelCase , _lowerCAmelCase )
# (TF/Flax)ModelTesterMixin is also an attribute in specific model test module. Let's exclude them by checking
# `all_model_classes` is not empty (which also excludes other special classes).
snake_case__ : List[str] = getattr(_lowerCAmelCase , """all_model_classes""" , [] )
if len(_lowerCAmelCase ) > 0:
test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Dict:
snake_case__ : Any = get_test_classes(_lowerCAmelCase )
snake_case__ : Optional[Any] = set()
for test_class in test_classes:
model_classes.update(test_class.all_model_classes )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Optional[Any]:
snake_case__ : Optional[int] = test_class()
if hasattr(_lowerCAmelCase , """setUp""" ):
test.setUp()
snake_case__ : Any = None
if hasattr(_lowerCAmelCase , """model_tester""" ):
# `(TF/Flax)ModelTesterMixin` has this attribute default to `None`. Let's skip this case.
if test.model_tester is not None:
snake_case__ : Tuple = test.model_tester.__class__
return model_tester
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Dict:
snake_case__ : Union[str, Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : str = []
for test_class in test_classes:
if model_class in test_class.all_model_classes:
target_test_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Tuple:
snake_case__ : Optional[Any] = get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase )
snake_case__ : Union[str, Any] = []
for test_class in test_classes:
snake_case__ : Tuple = get_model_tester_from_test_class(_lowerCAmelCase )
if tester_class is not None:
tester_classes.append(_lowerCAmelCase )
# sort with class names
return sorted(_lowerCAmelCase , key=lambda _lowerCAmelCase : x.__name__ )
def __snake_case( _lowerCAmelCase ) -> Union[str, Any]:
snake_case__ : Optional[Any] = get_test_classes(_lowerCAmelCase )
snake_case__ : Union[str, Any] = {test_class: get_model_tester_from_test_class(_lowerCAmelCase ) for test_class in test_classes}
return test_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
snake_case__ : Any = get_model_classes(_lowerCAmelCase )
snake_case__ : Any = {
model_class: get_test_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_test_mapping
def __snake_case( _lowerCAmelCase ) -> Optional[int]:
snake_case__ : Union[str, Any] = get_model_classes(_lowerCAmelCase )
snake_case__ : str = {
model_class: get_tester_classes_for_model(_lowerCAmelCase , _lowerCAmelCase ) for model_class in model_classes
}
return model_to_tester_mapping
def __snake_case( _lowerCAmelCase ) -> int:
if isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return o.__name__
elif isinstance(_lowerCAmelCase , (list, tuple) ):
return [to_json(_lowerCAmelCase ) for x in o]
elif isinstance(_lowerCAmelCase , _lowerCAmelCase ):
return {to_json(_lowerCAmelCase ): to_json(_lowerCAmelCase ) for k, v in o.items()}
else:
return o
| 35
| 0
|
import argparse
import os
import shutil
from pathlib import Path
import onnx
import torch
from packaging import version
from torch.onnx import export
from diffusers import OnnxRuntimeModel, OnnxStableDiffusionPipeline, StableDiffusionPipeline
lowercase_ = version.parse(version.parse(torch.__version__).base_version) < version.parse('1.11')
def a ( A__ : int , A__ : str , A__ : Tuple , A__ : Tuple , A__ : List[str] , A__ : Optional[int] , A__ : Any , A__ : Optional[int]=False , ) -> Optional[int]:
"""simple docstring"""
output_path.parent.mkdir(parents=_lowerCAmelCase , exist_ok=_lowerCAmelCase )
# PyTorch deprecated the `enable_onnx_checker` and `use_external_data_format` arguments in v1.11,
# so we check the torch version for backwards compatibility
if is_torch_less_than_1_11:
export(
_lowerCAmelCase , _lowerCAmelCase , f=output_path.as_posix() , input_names=_lowerCAmelCase , output_names=_lowerCAmelCase , dynamic_axes=_lowerCAmelCase , do_constant_folding=_lowerCAmelCase , use_external_data_format=_lowerCAmelCase , enable_onnx_checker=_lowerCAmelCase , opset_version=_lowerCAmelCase , )
else:
export(
_lowerCAmelCase , _lowerCAmelCase , f=output_path.as_posix() , input_names=_lowerCAmelCase , output_names=_lowerCAmelCase , dynamic_axes=_lowerCAmelCase , do_constant_folding=_lowerCAmelCase , opset_version=_lowerCAmelCase , )
@torch.no_grad()
def a ( A__ : List[str] , A__ : List[Any] , A__ : List[Any] , A__ : Union[str, Any] = False ) -> List[Any]:
"""simple docstring"""
_lowercase =torch.floataa if fpaa else torch.floataa
if fpaa and torch.cuda.is_available():
_lowercase ="""cuda"""
elif fpaa and not torch.cuda.is_available():
raise ValueError('`float16` model export is only supported on GPUs with CUDA' )
else:
_lowercase ="""cpu"""
_lowercase =StableDiffusionPipeline.from_pretrained(_lowerCAmelCase , torch_dtype=_lowerCAmelCase ).to(_lowerCAmelCase )
_lowercase =Path(_lowerCAmelCase )
# TEXT ENCODER
_lowercase =pipeline.text_encoder.config.max_position_embeddings
_lowercase =pipeline.text_encoder.config.hidden_size
_lowercase =pipeline.tokenizer(
'A sample prompt' , padding='max_length' , max_length=pipeline.tokenizer.model_max_length , truncation=_lowerCAmelCase , return_tensors='pt' , )
onnx_export(
pipeline.text_encoder , model_args=(text_input.input_ids.to(device=_lowerCAmelCase , dtype=torch.intaa )) , output_path=output_path / 'text_encoder' / 'model.onnx' , ordered_input_names=['input_ids'] , output_names=['last_hidden_state', 'pooler_output'] , dynamic_axes={
'input_ids': {0: 'batch', 1: 'sequence'},
} , opset=_lowerCAmelCase , )
del pipeline.text_encoder
# UNET
_lowercase =pipeline.unet.config.in_channels
_lowercase =pipeline.unet.config.sample_size
_lowercase =output_path / """unet""" / """model.onnx"""
onnx_export(
pipeline.unet , model_args=(
torch.randn(2 , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
torch.randn(2 ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
torch.randn(2 , _lowerCAmelCase , _lowerCAmelCase ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
False,
) , output_path=_lowerCAmelCase , ordered_input_names=['sample', 'timestep', 'encoder_hidden_states', 'return_dict'] , output_names=['out_sample'] , dynamic_axes={
'sample': {0: 'batch', 1: 'channels', 2: 'height', 3: 'width'},
'timestep': {0: 'batch'},
'encoder_hidden_states': {0: 'batch', 1: 'sequence'},
} , opset=_lowerCAmelCase , use_external_data_format=_lowerCAmelCase , )
_lowercase =str(unet_path.absolute().as_posix() )
_lowercase =os.path.dirname(_lowerCAmelCase )
_lowercase =onnx.load(_lowerCAmelCase )
# clean up existing tensor files
shutil.rmtree(_lowerCAmelCase )
os.mkdir(_lowerCAmelCase )
# collate external tensor files into one
onnx.save_model(
_lowerCAmelCase , _lowerCAmelCase , save_as_external_data=_lowerCAmelCase , all_tensors_to_one_file=_lowerCAmelCase , location='weights.pb' , convert_attribute=_lowerCAmelCase , )
del pipeline.unet
# VAE ENCODER
_lowercase =pipeline.vae
_lowercase =vae_encoder.config.in_channels
_lowercase =vae_encoder.config.sample_size
# need to get the raw tensor output (sample) from the encoder
_lowercase =lambda A__ , A__ : vae_encoder.encode(_lowerCAmelCase , _lowerCAmelCase )[0].sample()
onnx_export(
_lowerCAmelCase , model_args=(
torch.randn(1 , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
False,
) , output_path=output_path / 'vae_encoder' / 'model.onnx' , ordered_input_names=['sample', 'return_dict'] , output_names=['latent_sample'] , dynamic_axes={
'sample': {0: 'batch', 1: 'channels', 2: 'height', 3: 'width'},
} , opset=_lowerCAmelCase , )
# VAE DECODER
_lowercase =pipeline.vae
_lowercase =vae_decoder.config.latent_channels
_lowercase =vae_decoder.config.out_channels
# forward only through the decoder part
_lowercase =vae_encoder.decode
onnx_export(
_lowerCAmelCase , model_args=(
torch.randn(1 , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
False,
) , output_path=output_path / 'vae_decoder' / 'model.onnx' , ordered_input_names=['latent_sample', 'return_dict'] , output_names=['sample'] , dynamic_axes={
'latent_sample': {0: 'batch', 1: 'channels', 2: 'height', 3: 'width'},
} , opset=_lowerCAmelCase , )
del pipeline.vae
# SAFETY CHECKER
if pipeline.safety_checker is not None:
_lowercase =pipeline.safety_checker
_lowercase =safety_checker.config.vision_config.num_channels
_lowercase =safety_checker.config.vision_config.image_size
_lowercase =safety_checker.forward_onnx
onnx_export(
pipeline.safety_checker , model_args=(
torch.randn(
1 , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase , ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
torch.randn(1 , _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ).to(device=_lowerCAmelCase , dtype=_lowerCAmelCase ),
) , output_path=output_path / 'safety_checker' / 'model.onnx' , ordered_input_names=['clip_input', 'images'] , output_names=['out_images', 'has_nsfw_concepts'] , dynamic_axes={
'clip_input': {0: 'batch', 1: 'channels', 2: 'height', 3: 'width'},
'images': {0: 'batch', 1: 'height', 2: 'width', 3: 'channels'},
} , opset=_lowerCAmelCase , )
del pipeline.safety_checker
_lowercase =OnnxRuntimeModel.from_pretrained(output_path / 'safety_checker' )
_lowercase =pipeline.feature_extractor
else:
_lowercase =None
_lowercase =None
_lowercase =OnnxStableDiffusionPipeline(
vae_encoder=OnnxRuntimeModel.from_pretrained(output_path / 'vae_encoder' ) , vae_decoder=OnnxRuntimeModel.from_pretrained(output_path / 'vae_decoder' ) , text_encoder=OnnxRuntimeModel.from_pretrained(output_path / 'text_encoder' ) , tokenizer=pipeline.tokenizer , unet=OnnxRuntimeModel.from_pretrained(output_path / 'unet' ) , scheduler=pipeline.scheduler , safety_checker=_lowerCAmelCase , feature_extractor=_lowerCAmelCase , requires_safety_checker=safety_checker is not None , )
onnx_pipeline.save_pretrained(_lowerCAmelCase )
print('ONNX pipeline saved to' , _lowerCAmelCase )
del pipeline
del onnx_pipeline
_lowercase =OnnxStableDiffusionPipeline.from_pretrained(_lowerCAmelCase , provider='CPUExecutionProvider' )
print('ONNX pipeline is loadable' )
if __name__ == "__main__":
lowercase_ = argparse.ArgumentParser()
parser.add_argument(
'--model_path',
type=str,
required=True,
help='Path to the `diffusers` checkpoint to convert (either a local directory or on the Hub).',
)
parser.add_argument('--output_path', type=str, required=True, help='Path to the output model.')
parser.add_argument(
'--opset',
default=1_4,
type=int,
help='The version of the ONNX operator set to use.',
)
parser.add_argument('--fp16', action='store_true', default=False, help='Export the models in `float16` mode')
lowercase_ = parser.parse_args()
convert_models(args.model_path, args.output_path, args.opset, args.fpaa)
| 205
|
'''simple docstring'''
import argparse
import json
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import AutoImageProcessor, SwinConfig, SwinForImageClassification
def __snake_case( _lowerCAmelCase ) -> List[Any]:
snake_case__ : Dict = SwinConfig()
snake_case__ : Optional[Any] = swin_name.split("""_""" )
snake_case__ : Any = name_split[1]
snake_case__ : List[Any] = int(name_split[4] )
snake_case__ : int = int(name_split[3][-1] )
if model_size == "tiny":
snake_case__ : List[Any] = 96
snake_case__ : int = (2, 2, 6, 2)
snake_case__ : int = (3, 6, 12, 24)
elif model_size == "small":
snake_case__ : Union[str, Any] = 96
snake_case__ : Optional[Any] = (2, 2, 18, 2)
snake_case__ : str = (3, 6, 12, 24)
elif model_size == "base":
snake_case__ : Dict = 128
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : Dict = (4, 8, 16, 32)
else:
snake_case__ : List[str] = 192
snake_case__ : str = (2, 2, 18, 2)
snake_case__ : List[Any] = (6, 12, 24, 48)
if "in22k" in swin_name:
snake_case__ : str = 21_841
else:
snake_case__ : List[str] = 1_000
snake_case__ : int = """huggingface/label-files"""
snake_case__ : Any = """imagenet-1k-id2label.json"""
snake_case__ : List[Any] = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : Dict = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : Optional[int] = idalabel
snake_case__ : List[Any] = {v: k for k, v in idalabel.items()}
snake_case__ : List[Any] = img_size
snake_case__ : Dict = num_classes
snake_case__ : Dict = embed_dim
snake_case__ : Optional[int] = depths
snake_case__ : int = num_heads
snake_case__ : Optional[int] = window_size
return config
def __snake_case( _lowerCAmelCase ) -> Dict:
if "patch_embed.proj" in name:
snake_case__ : List[str] = name.replace("""patch_embed.proj""" , """embeddings.patch_embeddings.projection""" )
if "patch_embed.norm" in name:
snake_case__ : int = name.replace("""patch_embed.norm""" , """embeddings.norm""" )
if "layers" in name:
snake_case__ : str = """encoder.""" + name
if "attn.proj" in name:
snake_case__ : List[str] = name.replace("""attn.proj""" , """attention.output.dense""" )
if "attn" in name:
snake_case__ : Tuple = name.replace("""attn""" , """attention.self""" )
if "norm1" in name:
snake_case__ : List[str] = name.replace("""norm1""" , """layernorm_before""" )
if "norm2" in name:
snake_case__ : Optional[Any] = name.replace("""norm2""" , """layernorm_after""" )
if "mlp.fc1" in name:
snake_case__ : Union[str, Any] = name.replace("""mlp.fc1""" , """intermediate.dense""" )
if "mlp.fc2" in name:
snake_case__ : Dict = name.replace("""mlp.fc2""" , """output.dense""" )
if name == "norm.weight":
snake_case__ : Tuple = """layernorm.weight"""
if name == "norm.bias":
snake_case__ : Union[str, Any] = """layernorm.bias"""
if "head" in name:
snake_case__ : Optional[int] = name.replace("""head""" , """classifier""" )
else:
snake_case__ : List[str] = """swin.""" + name
return name
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> Optional[Any]:
for key in orig_state_dict.copy().keys():
snake_case__ : Optional[int] = orig_state_dict.pop(_lowerCAmelCase )
if "mask" in key:
continue
elif "qkv" in key:
snake_case__ : Dict = key.split(""".""" )
snake_case__ : Optional[int] = int(key_split[1] )
snake_case__ : Union[str, Any] = int(key_split[3] )
snake_case__ : List[Any] = model.swin.encoder.layers[layer_num].blocks[block_num].attention.self.all_head_size
if "weight" in key:
snake_case__ : Optional[Any] = val[:dim, :]
snake_case__ : Tuple = val[
dim : dim * 2, :
]
snake_case__ : Dict = val[-dim:, :]
else:
snake_case__ : Tuple = val[
:dim
]
snake_case__ : int = val[
dim : dim * 2
]
snake_case__ : int = val[
-dim:
]
else:
snake_case__ : Union[str, Any] = val
return orig_state_dict
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : Optional[int] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
snake_case__ : Optional[int] = get_swin_config(_lowerCAmelCase )
snake_case__ : Optional[Any] = SwinForImageClassification(_lowerCAmelCase )
model.eval()
snake_case__ : str = convert_state_dict(timm_model.state_dict() , _lowerCAmelCase )
model.load_state_dict(_lowerCAmelCase )
snake_case__ : int = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Dict = AutoImageProcessor.from_pretrained("""microsoft/{}""".format(swin_name.replace("""_""" , """-""" ) ) )
snake_case__ : Dict = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
snake_case__ : Optional[int] = image_processor(images=_lowerCAmelCase , return_tensors="""pt""" )
snake_case__ : Optional[Any] = timm_model(inputs["""pixel_values"""] )
snake_case__ : str = model(**_lowerCAmelCase ).logits
assert torch.allclose(_lowerCAmelCase , _lowerCAmelCase , atol=1e-3 )
print(f"Saving model {swin_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--swin_name",
default="swin_tiny_patch4_window7_224",
type=str,
help="Name of the Swin timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_swin_checkpoint(args.swin_name, args.pytorch_dump_folder_path)
| 35
| 0
|
import collections
import os
import re
from pathlib import Path
UpperCAmelCase_ : int = '''src/transformers'''
# Matches is_xxx_available()
UpperCAmelCase_ : Dict = re.compile(R'''is\_([a-z_]*)_available()''')
# Catches a one-line _import_struct = {xxx}
UpperCAmelCase_ : Optional[Any] = re.compile(R'''^_import_structure\s+=\s+\{([^\}]+)\}''')
# Catches a line with a key-values pattern: "bla": ["foo", "bar"]
UpperCAmelCase_ : str = re.compile(R'''\s+\"\S*\":\s+\[([^\]]*)\]''')
# Catches a line if not is_foo_available
UpperCAmelCase_ : Any = re.compile(R'''^\s*if\s+not\s+is\_[a-z_]*\_available\(\)''')
# Catches a line _import_struct["bla"].append("foo")
UpperCAmelCase_ : int = re.compile(R'''^\s*_import_structure\[\"\S*\"\]\.append\(\"(\S*)\"\)''')
# Catches a line _import_struct["bla"].extend(["foo", "bar"]) or _import_struct["bla"] = ["foo", "bar"]
UpperCAmelCase_ : Optional[Any] = re.compile(R'''^\s*_import_structure\[\S*\](?:\.extend\(|\s*=\s+)\[([^\]]*)\]''')
# Catches a line with an object between quotes and a comma: "MyModel",
UpperCAmelCase_ : int = re.compile(R'''^\s+\"([^\"]+)\",''')
# Catches a line with objects between brackets only: ["foo", "bar"],
UpperCAmelCase_ : int = re.compile(R'''^\s+\[([^\]]+)\]''')
# Catches a line with from foo import bar, bla, boo
UpperCAmelCase_ : str = re.compile(R'''\s+from\s+\S*\s+import\s+([^\(\s].*)\n''')
# Catches a line with try:
UpperCAmelCase_ : List[Any] = re.compile(R'''^\s*try:''')
# Catches a line with else:
UpperCAmelCase_ : Any = re.compile(R'''^\s*else:''')
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : List[Any] ) -> int:
"""simple docstring"""
if _re_test_backend.search(_lowerCAmelCase ) is None:
return None
UpperCamelCase :List[str] = [b[0] for b in _re_backend.findall(_lowerCAmelCase )]
backends.sort()
return "_and_".join(_lowerCAmelCase )
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : int ) -> Optional[Any]:
"""simple docstring"""
with open(_lowerCAmelCase , """r""" , encoding="""utf-8""" , newline="""\n""" ) as f:
UpperCamelCase :List[str] = f.readlines()
UpperCamelCase :List[Any] = 0
while line_index < len(_lowerCAmelCase ) and not lines[line_index].startswith("""_import_structure = {""" ):
line_index += 1
# If this is a traditional init, just return.
if line_index >= len(_lowerCAmelCase ):
return None
# First grab the objects without a specific backend in _import_structure
UpperCamelCase :Tuple = []
while not lines[line_index].startswith("""if TYPE_CHECKING""" ) and find_backend(lines[line_index] ) is None:
UpperCamelCase :Optional[int] = lines[line_index]
# If we have everything on a single line, let's deal with it.
if _re_one_line_import_struct.search(_lowerCAmelCase ):
UpperCamelCase :Any = _re_one_line_import_struct.search(_lowerCAmelCase ).groups()[0]
UpperCamelCase :int = re.findall(R"""\[([^\]]+)\]""" , _lowerCAmelCase )
for imp in imports:
objects.extend([obj[1:-1] for obj in imp.split(""", """ )] )
line_index += 1
continue
UpperCamelCase :Any = _re_import_struct_key_value.search(_lowerCAmelCase )
if single_line_import_search is not None:
UpperCamelCase :Union[str, Any] = [obj[1:-1] for obj in single_line_import_search.groups()[0].split(""", """ ) if len(_lowerCAmelCase ) > 0]
objects.extend(_lowerCAmelCase )
elif line.startswith(""" """ * 8 + """\"""" ):
objects.append(line[9:-3] )
line_index += 1
UpperCamelCase :Optional[int] = {"""none""": objects}
# Let's continue with backend-specific objects in _import_structure
while not lines[line_index].startswith("""if TYPE_CHECKING""" ):
# If the line is an if not is_backend_available, we grab all objects associated.
UpperCamelCase :List[Any] = find_backend(lines[line_index] )
# Check if the backend declaration is inside a try block:
if _re_try.search(lines[line_index - 1] ) is None:
UpperCamelCase :Any = None
if backend is not None:
line_index += 1
# Scroll until we hit the else block of try-except-else
while _re_else.search(lines[line_index] ) is None:
line_index += 1
line_index += 1
UpperCamelCase :str = []
# Until we unindent, add backend objects to the list
while len(lines[line_index] ) <= 1 or lines[line_index].startswith(""" """ * 4 ):
UpperCamelCase :Optional[Any] = lines[line_index]
if _re_import_struct_add_one.search(_lowerCAmelCase ) is not None:
objects.append(_re_import_struct_add_one.search(_lowerCAmelCase ).groups()[0] )
elif _re_import_struct_add_many.search(_lowerCAmelCase ) is not None:
UpperCamelCase :List[str] = _re_import_struct_add_many.search(_lowerCAmelCase ).groups()[0].split(""", """ )
UpperCamelCase :Union[str, Any] = [obj[1:-1] for obj in imports if len(_lowerCAmelCase ) > 0]
objects.extend(_lowerCAmelCase )
elif _re_between_brackets.search(_lowerCAmelCase ) is not None:
UpperCamelCase :Dict = _re_between_brackets.search(_lowerCAmelCase ).groups()[0].split(""", """ )
UpperCamelCase :str = [obj[1:-1] for obj in imports if len(_lowerCAmelCase ) > 0]
objects.extend(_lowerCAmelCase )
elif _re_quote_object.search(_lowerCAmelCase ) is not None:
objects.append(_re_quote_object.search(_lowerCAmelCase ).groups()[0] )
elif line.startswith(""" """ * 8 + """\"""" ):
objects.append(line[9:-3] )
elif line.startswith(""" """ * 12 + """\"""" ):
objects.append(line[13:-3] )
line_index += 1
UpperCamelCase :Any = objects
else:
line_index += 1
# At this stage we are in the TYPE_CHECKING part, first grab the objects without a specific backend
UpperCamelCase :List[str] = []
while (
line_index < len(_lowerCAmelCase )
and find_backend(lines[line_index] ) is None
and not lines[line_index].startswith("""else""" )
):
UpperCamelCase :Tuple = lines[line_index]
UpperCamelCase :Tuple = _re_import.search(_lowerCAmelCase )
if single_line_import_search is not None:
objects.extend(single_line_import_search.groups()[0].split(""", """ ) )
elif line.startswith(""" """ * 8 ):
objects.append(line[8:-2] )
line_index += 1
UpperCamelCase :Dict = {"""none""": objects}
# Let's continue with backend-specific objects
while line_index < len(_lowerCAmelCase ):
# If the line is an if is_backend_available, we grab all objects associated.
UpperCamelCase :List[Any] = find_backend(lines[line_index] )
# Check if the backend declaration is inside a try block:
if _re_try.search(lines[line_index - 1] ) is None:
UpperCamelCase :Tuple = None
if backend is not None:
line_index += 1
# Scroll until we hit the else block of try-except-else
while _re_else.search(lines[line_index] ) is None:
line_index += 1
line_index += 1
UpperCamelCase :List[str] = []
# Until we unindent, add backend objects to the list
while len(lines[line_index] ) <= 1 or lines[line_index].startswith(""" """ * 8 ):
UpperCamelCase :Any = lines[line_index]
UpperCamelCase :Optional[Any] = _re_import.search(_lowerCAmelCase )
if single_line_import_search is not None:
objects.extend(single_line_import_search.groups()[0].split(""", """ ) )
elif line.startswith(""" """ * 12 ):
objects.append(line[12:-2] )
line_index += 1
UpperCamelCase :Any = objects
else:
line_index += 1
return import_dict_objects, type_hint_objects
def SCREAMING_SNAKE_CASE_ ( __magic_name__ : List[str] , __magic_name__ : str ) -> int:
"""simple docstring"""
def find_duplicates(__magic_name__ : Tuple ):
return [k for k, v in collections.Counter(_lowerCAmelCase ).items() if v > 1]
if list(import_dict_objects.keys() ) != list(type_hint_objects.keys() ):
return ["Both sides of the init do not have the same backends!"]
UpperCamelCase :Optional[Any] = []
for key in import_dict_objects.keys():
UpperCamelCase :int = find_duplicates(import_dict_objects[key] )
if duplicate_imports:
errors.append(f"""Duplicate _import_structure definitions for: {duplicate_imports}""" )
UpperCamelCase :List[Any] = find_duplicates(type_hint_objects[key] )
if duplicate_type_hints:
errors.append(f"""Duplicate TYPE_CHECKING objects for: {duplicate_type_hints}""" )
if sorted(set(import_dict_objects[key] ) ) != sorted(set(type_hint_objects[key] ) ):
UpperCamelCase :str = """base imports""" if key == """none""" else f"""{key} backend"""
errors.append(f"""Differences for {name}:""" )
for a in type_hint_objects[key]:
if a not in import_dict_objects[key]:
errors.append(f""" {a} in TYPE_HINT but not in _import_structure.""" )
for a in import_dict_objects[key]:
if a not in type_hint_objects[key]:
errors.append(f""" {a} in _import_structure but not in TYPE_HINT.""" )
return errors
def SCREAMING_SNAKE_CASE_ ( ) -> int:
"""simple docstring"""
UpperCamelCase :Any = []
for root, _, files in os.walk(_lowerCAmelCase ):
if "__init__.py" in files:
UpperCamelCase :Optional[int] = os.path.join(_lowerCAmelCase , """__init__.py""" )
UpperCamelCase :List[str] = parse_init(_lowerCAmelCase )
if objects is not None:
UpperCamelCase :Union[str, Any] = analyze_results(*_lowerCAmelCase )
if len(_lowerCAmelCase ) > 0:
UpperCamelCase :Optional[int] = f"""Problem in {fname}, both halves do not define the same objects.\n{errors[0]}"""
failures.append("""\n""".join(_lowerCAmelCase ) )
if len(_lowerCAmelCase ) > 0:
raise ValueError("""\n\n""".join(_lowerCAmelCase ) )
def SCREAMING_SNAKE_CASE_ ( ) -> List[str]:
"""simple docstring"""
UpperCamelCase :int = []
for path, directories, files in os.walk(_lowerCAmelCase ):
for folder in directories:
# Ignore private modules
if folder.startswith("""_""" ):
directories.remove(_lowerCAmelCase )
continue
# Ignore leftovers from branches (empty folders apart from pycache)
if len(list((Path(_lowerCAmelCase ) / folder).glob("""*.py""" ) ) ) == 0:
continue
UpperCamelCase :str = str((Path(_lowerCAmelCase ) / folder).relative_to(_lowerCAmelCase ) )
UpperCamelCase :int = short_path.replace(os.path.sep , """.""" )
submodules.append(_lowerCAmelCase )
for fname in files:
if fname == "__init__.py":
continue
UpperCamelCase :Dict = str((Path(_lowerCAmelCase ) / fname).relative_to(_lowerCAmelCase ) )
UpperCamelCase :Optional[int] = short_path.replace(""".py""" , """""" ).replace(os.path.sep , """.""" )
if len(submodule.split(""".""" ) ) == 1:
submodules.append(_lowerCAmelCase )
return submodules
UpperCAmelCase_ : Any = [
'''convert_pytorch_checkpoint_to_tf2''',
'''modeling_flax_pytorch_utils''',
'''models.esm.openfold_utils''',
]
def SCREAMING_SNAKE_CASE_ ( ) -> Any:
"""simple docstring"""
from transformers.utils import direct_transformers_import
UpperCamelCase :Optional[Any] = direct_transformers_import(_lowerCAmelCase )
UpperCamelCase :Optional[int] = set(transformers._import_structure.keys() )
# This contains all the base keys of the _import_structure object defined in the init, but if the user is missing
# some optional dependencies, they may not have all of them. Thus we read the init to read all additions and
# (potentiall re-) add them.
with open(os.path.join(_lowerCAmelCase , """__init__.py""" ) , """r""" ) as f:
UpperCamelCase :int = f.read()
import_structure_keys.update(set(re.findall(R"""import_structure\[\"([^\"]*)\"\]""" , _lowerCAmelCase ) ) )
UpperCamelCase :List[str] = [
module
for module in get_transformers_submodules()
if module not in IGNORE_SUBMODULES and module not in import_structure_keys
]
if len(_lowerCAmelCase ) > 0:
UpperCamelCase :Optional[int] = """\n""".join(f"""- {module}""" for module in module_not_registered )
raise ValueError(
"""The following submodules are not properly registed in the main init of Transformers:\n"""
f"""{list_of_modules}\n"""
"""Make sure they appear somewhere in the keys of `_import_structure` with an empty list as value.""" )
if __name__ == "__main__":
check_all_inits()
check_submodules()
| 38
|
'''simple docstring'''
import warnings
from ...utils import logging
from .image_processing_beit import BeitImageProcessor
__a = logging.get_logger(__name__)
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
def __init__( self : List[str] , *snake_case_ : str , **snake_case_ : List[str] ):
warnings.warn(
"""The class BeitFeatureExtractor is deprecated and will be removed in version 5 of Transformers. Please"""
""" use BeitImageProcessor instead.""" , snake_case_ , )
super().__init__(*snake_case_ , **snake_case_ )
| 35
| 0
|
"""simple docstring"""
import os
def a_ ( ):
'''simple docstring'''
with open(os.path.dirname(_lowerCAmelCase ) + '/p022_names.txt' ) as file:
lowercase__ : int = str(file.readlines()[0] )
lowercase__ : Tuple = names.replace('\"' , '' ).split(',' )
names.sort()
lowercase__ : Union[str, Any] = 0
lowercase__ : List[str] = 0
for i, name in enumerate(_lowerCAmelCase ):
for letter in name:
name_score += ord(_lowerCAmelCase ) - 64
total_score += (i + 1) * name_score
lowercase__ : List[Any] = 0
return total_score
if __name__ == "__main__":
print(solution())
| 77
|
'''simple docstring'''
import logging
from dataclasses import dataclass, field
from pathlib import Path
from typing import Optional, Union
from .generation.configuration_utils import GenerationConfig
from .training_args import TrainingArguments
from .utils import add_start_docstrings
__a = logging.getLogger(__name__)
@dataclass
@add_start_docstrings(TrainingArguments.__doc__ )
class UpperCAmelCase_ ( _a ):
"""simple docstring"""
lowercase = field(default=_a , metadata={"help": "Whether to use SortishSampler or not."} )
lowercase = field(
default=_a , metadata={"help": "Whether to use generate to calculate generative metrics (ROUGE, BLEU)."} )
lowercase = field(
default=_a , metadata={
"help": (
"The `max_length` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `max_length` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": (
"The `num_beams` to use on each evaluation loop when `predict_with_generate=True`. Will default "
"to the `num_beams` value of the model configuration."
)
} , )
lowercase = field(
default=_a , metadata={
"help": "Model id, file path or url pointing to a GenerationConfig json file, to use during prediction."
} , )
def lowerCamelCase ( self : List[str] ):
snake_case__ : int = super().to_dict()
for k, v in d.items():
if isinstance(snake_case_ , snake_case_ ):
snake_case__ : Optional[int] = v.to_dict()
return d
| 35
| 0
|
'''simple docstring'''
from typing import TYPE_CHECKING
from ...utils import OptionalDependencyNotAvailable, _LazyModule, is_flax_available, is_torch_available
SCREAMING_SNAKE_CASE_: Dict ={'configuration_speech_encoder_decoder': ['SpeechEncoderDecoderConfig']}
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: List[str] =['SpeechEncoderDecoderModel']
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
SCREAMING_SNAKE_CASE_: str =['FlaxSpeechEncoderDecoderModel']
if TYPE_CHECKING:
from .configuration_speech_encoder_decoder import SpeechEncoderDecoderConfig
try:
if not is_torch_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_speech_encoder_decoder import SpeechEncoderDecoderModel
try:
if not is_flax_available():
raise OptionalDependencyNotAvailable()
except OptionalDependencyNotAvailable:
pass
else:
from .modeling_flax_speech_encoder_decoder import FlaxSpeechEncoderDecoderModel
else:
import sys
SCREAMING_SNAKE_CASE_: List[Any] =_LazyModule(__name__, globals()['__file__'], _import_structure, module_spec=__spec__)
| 1
|
'''simple docstring'''
import argparse
import json
from pathlib import Path
import requests
import timm
import torch
from huggingface_hub import hf_hub_download
from PIL import Image
from transformers import DeiTConfig, DeiTForImageClassificationWithTeacher, DeiTImageProcessor
from transformers.utils import logging
logging.set_verbosity_info()
__a = logging.get_logger(__name__)
def __snake_case( _lowerCAmelCase , _lowerCAmelCase=False ) -> str:
snake_case__ : Union[str, Any] = []
for i in range(config.num_hidden_layers ):
# encoder layers: output projection, 2 feedforward neural networks and 2 layernorms
rename_keys.append((f"blocks.{i}.norm1.weight", f"deit.encoder.layer.{i}.layernorm_before.weight") )
rename_keys.append((f"blocks.{i}.norm1.bias", f"deit.encoder.layer.{i}.layernorm_before.bias") )
rename_keys.append((f"blocks.{i}.attn.proj.weight", f"deit.encoder.layer.{i}.attention.output.dense.weight") )
rename_keys.append((f"blocks.{i}.attn.proj.bias", f"deit.encoder.layer.{i}.attention.output.dense.bias") )
rename_keys.append((f"blocks.{i}.norm2.weight", f"deit.encoder.layer.{i}.layernorm_after.weight") )
rename_keys.append((f"blocks.{i}.norm2.bias", f"deit.encoder.layer.{i}.layernorm_after.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc1.weight", f"deit.encoder.layer.{i}.intermediate.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc1.bias", f"deit.encoder.layer.{i}.intermediate.dense.bias") )
rename_keys.append((f"blocks.{i}.mlp.fc2.weight", f"deit.encoder.layer.{i}.output.dense.weight") )
rename_keys.append((f"blocks.{i}.mlp.fc2.bias", f"deit.encoder.layer.{i}.output.dense.bias") )
# projection layer + position embeddings
rename_keys.extend(
[
("""cls_token""", """deit.embeddings.cls_token"""),
("""dist_token""", """deit.embeddings.distillation_token"""),
("""patch_embed.proj.weight""", """deit.embeddings.patch_embeddings.projection.weight"""),
("""patch_embed.proj.bias""", """deit.embeddings.patch_embeddings.projection.bias"""),
("""pos_embed""", """deit.embeddings.position_embeddings"""),
] )
if base_model:
# layernorm + pooler
rename_keys.extend(
[
("""norm.weight""", """layernorm.weight"""),
("""norm.bias""", """layernorm.bias"""),
("""pre_logits.fc.weight""", """pooler.dense.weight"""),
("""pre_logits.fc.bias""", """pooler.dense.bias"""),
] )
# if just the base model, we should remove "deit" from all keys that start with "deit"
snake_case__ : List[Any] = [(pair[0], pair[1][4:]) if pair[1].startswith("""deit""" ) else pair for pair in rename_keys]
else:
# layernorm + classification heads
rename_keys.extend(
[
("""norm.weight""", """deit.layernorm.weight"""),
("""norm.bias""", """deit.layernorm.bias"""),
("""head.weight""", """cls_classifier.weight"""),
("""head.bias""", """cls_classifier.bias"""),
("""head_dist.weight""", """distillation_classifier.weight"""),
("""head_dist.bias""", """distillation_classifier.bias"""),
] )
return rename_keys
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> Union[str, Any]:
for i in range(config.num_hidden_layers ):
if base_model:
snake_case__ : Tuple = """"""
else:
snake_case__ : Dict = """deit."""
# read in weights + bias of input projection layer (in timm, this is a single matrix + bias)
snake_case__ : Optional[Any] = state_dict.pop(f"blocks.{i}.attn.qkv.weight" )
snake_case__ : Tuple = state_dict.pop(f"blocks.{i}.attn.qkv.bias" )
# next, add query, keys and values (in that order) to the state dict
snake_case__ : Any = in_proj_weight[
: config.hidden_size, :
]
snake_case__ : Optional[int] = in_proj_bias[: config.hidden_size]
snake_case__ : Any = in_proj_weight[
config.hidden_size : config.hidden_size * 2, :
]
snake_case__ : str = in_proj_bias[
config.hidden_size : config.hidden_size * 2
]
snake_case__ : List[str] = in_proj_weight[
-config.hidden_size :, :
]
snake_case__ : Tuple = in_proj_bias[-config.hidden_size :]
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : str = dct.pop(_lowerCAmelCase )
snake_case__ : Tuple = val
def __snake_case( ) -> Tuple:
snake_case__ : Union[str, Any] = """http://images.cocodataset.org/val2017/000000039769.jpg"""
snake_case__ : Optional[int] = Image.open(requests.get(_lowerCAmelCase , stream=_lowerCAmelCase ).raw )
return im
@torch.no_grad()
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> str:
snake_case__ : Optional[int] = DeiTConfig()
# all deit models have fine-tuned heads
snake_case__ : Union[str, Any] = False
# dataset (fine-tuned on ImageNet 2012), patch_size and image_size
snake_case__ : int = 1_000
snake_case__ : Any = """huggingface/label-files"""
snake_case__ : Optional[Any] = """imagenet-1k-id2label.json"""
snake_case__ : Tuple = json.load(open(hf_hub_download(_lowerCAmelCase , _lowerCAmelCase , repo_type="""dataset""" ) , """r""" ) )
snake_case__ : List[Any] = {int(_lowerCAmelCase ): v for k, v in idalabel.items()}
snake_case__ : List[Any] = idalabel
snake_case__ : List[str] = {v: k for k, v in idalabel.items()}
snake_case__ : Tuple = int(deit_name[-6:-4] )
snake_case__ : Optional[Any] = int(deit_name[-3:] )
# size of the architecture
if deit_name[9:].startswith("""tiny""" ):
snake_case__ : Tuple = 192
snake_case__ : Union[str, Any] = 768
snake_case__ : Tuple = 12
snake_case__ : Union[str, Any] = 3
elif deit_name[9:].startswith("""small""" ):
snake_case__ : str = 384
snake_case__ : Any = 1_536
snake_case__ : str = 12
snake_case__ : int = 6
if deit_name[9:].startswith("""base""" ):
pass
elif deit_name[4:].startswith("""large""" ):
snake_case__ : Union[str, Any] = 1_024
snake_case__ : Any = 4_096
snake_case__ : List[Any] = 24
snake_case__ : Tuple = 16
# load original model from timm
snake_case__ : List[Any] = timm.create_model(_lowerCAmelCase , pretrained=_lowerCAmelCase )
timm_model.eval()
# load state_dict of original model, remove and rename some keys
snake_case__ : Optional[Any] = timm_model.state_dict()
snake_case__ : Optional[int] = create_rename_keys(_lowerCAmelCase , _lowerCAmelCase )
for src, dest in rename_keys:
rename_key(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
read_in_q_k_v(_lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase )
# load HuggingFace model
snake_case__ : Optional[Any] = DeiTForImageClassificationWithTeacher(_lowerCAmelCase ).eval()
model.load_state_dict(_lowerCAmelCase )
# Check outputs on an image, prepared by DeiTImageProcessor
snake_case__ : List[Any] = int(
(256 / 224) * config.image_size ) # to maintain same ratio w.r.t. 224 images, see https://github.com/facebookresearch/deit/blob/ab5715372db8c6cad5740714b2216d55aeae052e/datasets.py#L103
snake_case__ : Optional[Any] = DeiTImageProcessor(size=_lowerCAmelCase , crop_size=config.image_size )
snake_case__ : str = image_processor(images=prepare_img() , return_tensors="""pt""" )
snake_case__ : Optional[Any] = encoding["""pixel_values"""]
snake_case__ : Tuple = model(_lowerCAmelCase )
snake_case__ : Optional[int] = timm_model(_lowerCAmelCase )
assert timm_logits.shape == outputs.logits.shape
assert torch.allclose(_lowerCAmelCase , outputs.logits , atol=1e-3 )
Path(_lowerCAmelCase ).mkdir(exist_ok=_lowerCAmelCase )
print(f"Saving model {deit_name} to {pytorch_dump_folder_path}" )
model.save_pretrained(_lowerCAmelCase )
print(f"Saving image processor to {pytorch_dump_folder_path}" )
image_processor.save_pretrained(_lowerCAmelCase )
if __name__ == "__main__":
__a = argparse.ArgumentParser()
# Required parameters
parser.add_argument(
"--deit_name",
default="vit_deit_base_distilled_patch16_224",
type=str,
help="Name of the DeiT timm model you'd like to convert.",
)
parser.add_argument(
"--pytorch_dump_folder_path", default=None, type=str, help="Path to the output PyTorch model directory."
)
__a = parser.parse_args()
convert_deit_checkpoint(args.deit_name, args.pytorch_dump_folder_path)
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from ...configuration_utils import PretrainedConfig
from ...utils import logging
lowerCamelCase : Optional[Any] = logging.get_logger(__name__)
lowerCamelCase : str = {
"vinvino02/glpn-kitti": "https://huggingface.co/vinvino02/glpn-kitti/resolve/main/config.json",
# See all GLPN models at https://huggingface.co/models?filter=glpn
}
class A( _a ):
'''simple docstring'''
UpperCamelCase = '''glpn'''
def __init__( self : Optional[Any] , A_ : List[str]=3 , A_ : Dict=4 , A_ : List[Any]=[2, 2, 2, 2] , A_ : int=[8, 4, 2, 1] , A_ : List[str]=[32, 64, 160, 256] , A_ : Tuple=[7, 3, 3, 3] , A_ : List[Any]=[4, 2, 2, 2] , A_ : Tuple=[1, 2, 5, 8] , A_ : List[str]=[4, 4, 4, 4] , A_ : Optional[int]="gelu" , A_ : Dict=0.0 , A_ : Union[str, Any]=0.0 , A_ : List[Any]=0.02 , A_ : Tuple=0.1 , A_ : Any=1E-6 , A_ : Dict=64 , A_ : Tuple=10 , A_ : List[Any]=-1 , **A_ : Optional[Any] , ) -> Dict:
"""simple docstring"""
super().__init__(**snake_case_ )
lowerCamelCase_ = num_channels
lowerCamelCase_ = num_encoder_blocks
lowerCamelCase_ = depths
lowerCamelCase_ = sr_ratios
lowerCamelCase_ = hidden_sizes
lowerCamelCase_ = patch_sizes
lowerCamelCase_ = strides
lowerCamelCase_ = mlp_ratios
lowerCamelCase_ = num_attention_heads
lowerCamelCase_ = hidden_act
lowerCamelCase_ = hidden_dropout_prob
lowerCamelCase_ = attention_probs_dropout_prob
lowerCamelCase_ = initializer_range
lowerCamelCase_ = drop_path_rate
lowerCamelCase_ = layer_norm_eps
lowerCamelCase_ = decoder_hidden_size
lowerCamelCase_ = max_depth
lowerCamelCase_ = head_in_index
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|
'''simple docstring'''
import string
from math import logaa
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> int:
snake_case__ : List[str] = document.translate(
str.maketrans("""""" , """""" , string.punctuation ) ).replace("""\n""" , """""" )
snake_case__ : List[str] = document_without_punctuation.split(""" """ ) # word tokenization
return len([word for word in tokenize_document if word.lower() == term.lower()] )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> tuple[int, int]:
snake_case__ : Dict = corpus.lower().translate(
str.maketrans("""""" , """""" , string.punctuation ) ) # strip all punctuation and replace it with ''
snake_case__ : Any = corpus_without_punctuation.split("""\n""" )
snake_case__ : int = term.lower()
return (len([doc for doc in docs if term in doc] ), len(_lowerCAmelCase ))
def __snake_case( _lowerCAmelCase , _lowerCAmelCase , _lowerCAmelCase=False ) -> float:
if smoothing:
if n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(1 + logaa(n / (1 + df) ) , 3 )
if df == 0:
raise ZeroDivisionError("""df must be > 0""" )
elif n == 0:
raise ValueError("""log10(0) is undefined.""" )
return round(logaa(n / df ) , 3 )
def __snake_case( _lowerCAmelCase , _lowerCAmelCase ) -> float:
return round(tf * idf , 3 )
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