transformers/utils/check_repo.py
Yoach Lacombe cb45f71c4d
Add Seamless M4T model (#25693)
* first raw commit

* still POC

* tentative convert script

* almost working speech encoder conversion scripts

* intermediate code for encoder/decoders

* add modeling code

* first version of speech encoder

* make style

* add new adapter layer architecture

* add adapter block

* add first tentative config

* add working speech encoder conversion

* base model convert works now

* make style

* remove unnecessary classes

* remove unecessary functions

* add modeling code speech encoder

* rework logics

* forward pass of sub components work

* add modeling codes

* some config modifs and modeling code modifs

* save WIP

* new edits

* same output speech encoder

* correct attention mask

* correct attention mask

* fix generation

* new generation logics

* erase comments

* make style

* fix typo

* add some descriptions

* new state

* clean imports

* add tests

* make style

* make beam search and num_return_sequences>1 works

* correct edge case issue

* correct SeamlessM4TConformerSamePadLayer copied from

* replace ACT2FN relu by nn.relu

* remove unecessary return variable

* move back a class

* change name conformer_attention_mask ->conv_attention_mask

* better nit code

* add some Copied from statements

* small nits

* small nit in dict.get

* rename t2u model -> conditionalgeneration

* ongoing refactoring of structure

* update models architecture

* remove SeamlessM4TMultiModal classes

* add tests

* adapt tests

* some non-working code for vocoder

* add seamlessM4T vocoder

* remove buggy line

* fix some hifigan related bugs

* remove hifigan specifc config

* change

* add WIP tokenization

* add seamlessM4T working tokenzier

* update tokenization

* add tentative feature extractor

* Update converting script

* update working FE

* refactor input_values -> input_features

* update FE

* changes in generation, tokenizer and modeling

* make style and add t2u_decoder_input_ids

* add intermediate outputs for ToSpeech models

* add vocoder to speech models

* update valueerror

* update FE with languages

* add vocoder convert

* update config docstrings and names

* update generation code and configuration

* remove todos and update config.pad_token_id to generation_config.pad_token_id

* move block vocoder

* remove unecessary code and uniformize tospeech code

* add feature extractor import

* make style and fix some copies from

* correct consistency + make fix-copies

* add processor code

* remove comments

* add fast tokenizer support

* correct pad_token_id in M4TModel

* correct config

* update tests and codes  + make style

* make some suggested correstion - correct comments and change naming

* rename some attributes

* rename some attributes

* remove unecessary sequential

* remove option to use dur predictor

* nit

* refactor hifigan

* replace normalize_mean and normalize_var with do_normalize + save lang ids to generation config

* add tests

* change tgt_lang logic

* update generation ToSpeech

* add support import SeamlessM4TProcessor

* fix generate

* make tests

* update integration tests, add option to only return text and update tokenizer fast

* fix wrong function call

* update import and convert script

* update integration tests + update repo id

* correct paths and add first test

* update how new attention masks are computed

* update tests

* take first care of batching in vocoder code

* add batching with the vocoder

* add waveform lengths to model outputs

* make style

* add generate kwargs + forward kwargs of M4TModel

* add docstrings forward methods

* reformate docstrings

* add docstrings t2u model

* add another round of modeling docstrings + reformate speaker_id -> spkr_id

* make style

* fix check_repo

* make style

* add seamlessm4t to toctree

* correct check_config_attributes

* write config docstrings + some modifs

* make style

* add docstrings tokenizer

* add docstrings to processor, fe and tokenizers

* make style

* write first version of model docs

* fix FE + correct FE test

* fix tokenizer + add correct integration tests

* fix most tokenization tests

* make style

* correct most processor test

* add generation tests and fix num_return_sequences > 1

* correct integration tests -still one left

* make style

* correct position embedding

* change numbeams to 1

* refactor some modeling code and correct one test

* make style

* correct typo

* refactor intermediate fnn

* refactor feedforward conformer

* make style

* remove comments

* make style

* fix tokenizer tests

* make style

* correct processor tests

* make style

* correct S2TT integration

* Apply suggestions from Sanchit code review

Co-authored-by: Sanchit Gandhi <93869735+sanchit-gandhi@users.noreply.github.com>

* correct typo

* replace torch.nn->nn + make style

* change Output naming (waveforms -> waveform) and ordering

* nit renaming and formating

* remove return None when not necessary

* refactor SeamlessM4TConformerFeedForward

* nit typo

* remove almost copied from comments

* add a copied from comment and remove an unecessary dropout

* remove inputs_embeds from speechencoder

* remove backward compatibiliy function

* reformate class docstrings for a few components

* remove unecessary methods

* split over 2 lines smthg hard to read

* make style

* replace two steps offset by one step as suggested

* nice typo

* move warnings

* remove useless lines from processor

* make generation non-standard test more robusts

* remove torch.inference_mode from tests

* split integration tests

* enrich md

* rename control_symbol_vocoder_offset->vocoder_offset

* clean convert file

* remove tgt_lang and src_lang from FE

* change generate docstring of ToText models

* update generate docstring of tospeech models

* unify how to deal withtext_decoder_input_ids

* add default spkr_id

* unify tgt_lang for t2u_model

* simplify tgt_lang verification

* remove a todo

* change config docstring

* make style

* simplify t2u_tgt_lang_id

* make style

* enrich/correct comments

* enrich .md

* correct typo in docstrings

* add torchaudio dependency

* update tokenizer

* make style and fix copies

* modify SeamlessM4TConverter with new tokenizer behaviour

* make style

* correct small typo docs

* fix import

* update docs and add requirement to tests

* add convert_fairseq2_to_hf in utils/not_doctested.txt

* update FE

* fix imports and make style

* remove torchaudio in FE test

* add seamless_m4t.md to utils/not_doctested.txt

* nits and change the way docstring dataset is loaded

* move checkpoints from ylacombe/ to facebook/ orga

* refactor warning/error to be in the 119 line width limit

* round overly precised floats

* add stereo audio behaviour

* refactor .md and make style

* enrich docs with more precised architecture description

* readd undocumented models

* make fix-copies

* apply some suggestions

* Apply suggestions from code review

Co-authored-by: Sanchit Gandhi <93869735+sanchit-gandhi@users.noreply.github.com>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>

* correct bug from previous commit

* refactor a parameter allowing to clean the code + some small nits

* clean tokenizer

* make style and fix

* make style

* clean tokenizers arguments

* add precisions for some tests

* move docs from not_tested to slow

* modify tokenizer according to last comments

* add copied from statements in tests

* correct convert script

* correct parameter docstring style

* correct tokenization

* correct multi gpus

* make style

* clean modeling code

* make style

* add copied from statements

* add copied statements

* add support with ASR pipeline

* remove file added inadvertently

* fix docstrings seamlessM4TModel

* add seamlessM4TConfig to OBJECTS_TO_IGNORE due of unconventional markdown

* add seamlessm4t to assisted generation ignored models

---------

Co-authored-by: Sanchit Gandhi <93869735+sanchit-gandhi@users.noreply.github.com>
Co-authored-by: Arthur <48595927+ArthurZucker@users.noreply.github.com>
2023-10-23 14:49:48 +02:00

1160 lines
46 KiB
Python

# coding=utf-8
# Copyright 2020 The HuggingFace Inc. team.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
Utility that performs several consistency checks on the repo. This includes:
- checking all models are properly defined in the __init__ of models/
- checking all models are in the main __init__
- checking all models are properly tested
- checking all object in the main __init__ are documented
- checking all models are in at least one auto class
- checking all the auto mapping are properly defined (no typos, importable)
- checking the list of deprecated models is up to date
Use from the root of the repo with (as used in `make repo-consistency`):
```bash
python utils/check_repo.py
```
It has no auto-fix mode.
"""
import inspect
import os
import re
import sys
import types
import warnings
from collections import OrderedDict
from difflib import get_close_matches
from pathlib import Path
from typing import List, Tuple
from transformers import is_flax_available, is_tf_available, is_torch_available
from transformers.models.auto import get_values
from transformers.models.auto.configuration_auto import CONFIG_MAPPING_NAMES
from transformers.models.auto.feature_extraction_auto import FEATURE_EXTRACTOR_MAPPING_NAMES
from transformers.models.auto.image_processing_auto import IMAGE_PROCESSOR_MAPPING_NAMES
from transformers.models.auto.processing_auto import PROCESSOR_MAPPING_NAMES
from transformers.models.auto.tokenization_auto import TOKENIZER_MAPPING_NAMES
from transformers.utils import ENV_VARS_TRUE_VALUES, 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_repo.py
PATH_TO_TRANSFORMERS = "src/transformers"
PATH_TO_TESTS = "tests"
PATH_TO_DOC = "docs/source/en"
# Update this list with models that are supposed to be private.
PRIVATE_MODELS = [
"AltRobertaModel",
"DPRSpanPredictor",
"LongT5Stack",
"RealmBertModel",
"T5Stack",
"MT5Stack",
"UMT5Stack",
"Pop2PianoStack",
"SwitchTransformersStack",
"TFDPRSpanPredictor",
"MaskFormerSwinModel",
"MaskFormerSwinPreTrainedModel",
"BridgeTowerTextModel",
"BridgeTowerVisionModel",
]
# Update this list for models that are not tested with a comment explaining the reason it should not be.
# Being in this list is an exception and should **not** be the rule.
IGNORE_NON_TESTED = PRIVATE_MODELS.copy() + [
# models to ignore for not tested
"FuyuForCausalLM", # Not tested fort now
"InstructBlipQFormerModel", # Building part of bigger (tested) model.
"UMT5EncoderModel", # Building part of bigger (tested) model.
"Blip2QFormerModel", # Building part of bigger (tested) model.
"ErnieMForInformationExtraction",
"GraphormerDecoderHead", # Building part of bigger (tested) model.
"JukeboxVQVAE", # Building part of bigger (tested) model.
"JukeboxPrior", # Building part of bigger (tested) model.
"DecisionTransformerGPT2Model", # Building part of bigger (tested) model.
"SegformerDecodeHead", # Building part of bigger (tested) model.
"MgpstrModel", # Building part of bigger (tested) model.
"BertLMHeadModel", # Needs to be setup as decoder.
"MegatronBertLMHeadModel", # Building part of bigger (tested) model.
"RealmBertModel", # Building part of bigger (tested) model.
"RealmReader", # Not regular model.
"RealmScorer", # Not regular model.
"RealmForOpenQA", # Not regular model.
"ReformerForMaskedLM", # Needs to be setup as decoder.
"TFElectraMainLayer", # Building part of bigger (tested) model (should it be a TFPreTrainedModel ?)
"TFRobertaForMultipleChoice", # TODO: fix
"TFRobertaPreLayerNormForMultipleChoice", # TODO: fix
"SeparableConv1D", # Building part of bigger (tested) model.
"FlaxBartForCausalLM", # Building part of bigger (tested) model.
"FlaxBertForCausalLM", # Building part of bigger (tested) model. Tested implicitly through FlaxRobertaForCausalLM.
"OPTDecoderWrapper",
"TFSegformerDecodeHead", # Not a regular model.
"AltRobertaModel", # Building part of bigger (tested) model.
"BlipTextLMHeadModel", # No need to test it as it is tested by BlipTextVision models
"TFBlipTextLMHeadModel", # No need to test it as it is tested by BlipTextVision models
"BridgeTowerTextModel", # No need to test it as it is tested by BridgeTowerModel model.
"BridgeTowerVisionModel", # No need to test it as it is tested by BridgeTowerModel model.
"BarkCausalModel", # Building part of bigger (tested) model.
"BarkModel", # Does not have a forward signature - generation tested with integration tests
"SeamlessM4TTextToUnitModel", # Building part of bigger (tested) model.
"SeamlessM4TCodeHifiGan", # Building part of bigger (tested) model.
"SeamlessM4TTextToUnitForConditionalGeneration", # Building part of bigger (tested) model.
]
# Update this list with test files that don't have a tester with a `all_model_classes` variable and which don't
# trigger the common tests.
TEST_FILES_WITH_NO_COMMON_TESTS = [
"models/decision_transformer/test_modeling_decision_transformer.py",
"models/camembert/test_modeling_camembert.py",
"models/mt5/test_modeling_flax_mt5.py",
"models/mbart/test_modeling_mbart.py",
"models/mt5/test_modeling_mt5.py",
"models/pegasus/test_modeling_pegasus.py",
"models/camembert/test_modeling_tf_camembert.py",
"models/mt5/test_modeling_tf_mt5.py",
"models/xlm_roberta/test_modeling_tf_xlm_roberta.py",
"models/xlm_roberta/test_modeling_flax_xlm_roberta.py",
"models/xlm_prophetnet/test_modeling_xlm_prophetnet.py",
"models/xlm_roberta/test_modeling_xlm_roberta.py",
"models/vision_text_dual_encoder/test_modeling_vision_text_dual_encoder.py",
"models/vision_text_dual_encoder/test_modeling_tf_vision_text_dual_encoder.py",
"models/vision_text_dual_encoder/test_modeling_flax_vision_text_dual_encoder.py",
"models/decision_transformer/test_modeling_decision_transformer.py",
"models/bark/test_modeling_bark.py",
]
# Update this list for models that are not in any of the auto MODEL_XXX_MAPPING. Being in this list is an exception and
# should **not** be the rule.
IGNORE_NON_AUTO_CONFIGURED = PRIVATE_MODELS.copy() + [
# models to ignore for model xxx mapping
"AlignTextModel",
"AlignVisionModel",
"ClapTextModel",
"ClapTextModelWithProjection",
"ClapAudioModel",
"ClapAudioModelWithProjection",
"Blip2ForConditionalGeneration",
"Blip2QFormerModel",
"Blip2VisionModel",
"ErnieMForInformationExtraction",
"GitVisionModel",
"GraphormerModel",
"GraphormerForGraphClassification",
"BlipForConditionalGeneration",
"BlipForImageTextRetrieval",
"BlipForQuestionAnswering",
"BlipVisionModel",
"BlipTextLMHeadModel",
"BlipTextModel",
"BrosSpadeEEForTokenClassification",
"BrosSpadeELForTokenClassification",
"TFBlipForConditionalGeneration",
"TFBlipForImageTextRetrieval",
"TFBlipForQuestionAnswering",
"TFBlipVisionModel",
"TFBlipTextLMHeadModel",
"TFBlipTextModel",
"Swin2SRForImageSuperResolution",
"BridgeTowerForImageAndTextRetrieval",
"BridgeTowerForMaskedLM",
"BridgeTowerForContrastiveLearning",
"CLIPSegForImageSegmentation",
"CLIPSegVisionModel",
"CLIPSegTextModel",
"EsmForProteinFolding",
"GPTSanJapaneseModel",
"TimeSeriesTransformerForPrediction",
"InformerForPrediction",
"AutoformerForPrediction",
"JukeboxVQVAE",
"JukeboxPrior",
"SamModel",
"DPTForDepthEstimation",
"DecisionTransformerGPT2Model",
"GLPNForDepthEstimation",
"ViltForImagesAndTextClassification",
"ViltForImageAndTextRetrieval",
"ViltForTokenClassification",
"ViltForMaskedLM",
"PerceiverForMultimodalAutoencoding",
"PerceiverForOpticalFlow",
"SegformerDecodeHead",
"TFSegformerDecodeHead",
"FlaxBeitForMaskedImageModeling",
"BeitForMaskedImageModeling",
"ChineseCLIPTextModel",
"ChineseCLIPVisionModel",
"CLIPTextModel",
"CLIPTextModelWithProjection",
"CLIPVisionModel",
"CLIPVisionModelWithProjection",
"GroupViTTextModel",
"GroupViTVisionModel",
"TFCLIPTextModel",
"TFCLIPVisionModel",
"TFGroupViTTextModel",
"TFGroupViTVisionModel",
"FlaxCLIPTextModel",
"FlaxCLIPTextModelWithProjection",
"FlaxCLIPVisionModel",
"FlaxWav2Vec2ForCTC",
"DetrForSegmentation",
"Pix2StructVisionModel",
"Pix2StructTextModel",
"Pix2StructForConditionalGeneration",
"ConditionalDetrForSegmentation",
"DPRReader",
"FlaubertForQuestionAnswering",
"FlavaImageCodebook",
"FlavaTextModel",
"FlavaImageModel",
"FlavaMultimodalModel",
"GPT2DoubleHeadsModel",
"GPTSw3DoubleHeadsModel",
"InstructBlipVisionModel",
"InstructBlipQFormerModel",
"LayoutLMForQuestionAnswering",
"LukeForMaskedLM",
"LukeForEntityClassification",
"LukeForEntityPairClassification",
"LukeForEntitySpanClassification",
"MgpstrModel",
"OpenAIGPTDoubleHeadsModel",
"OwlViTTextModel",
"OwlViTVisionModel",
"Owlv2TextModel",
"Owlv2VisionModel",
"OwlViTForObjectDetection",
"RagModel",
"RagSequenceForGeneration",
"RagTokenForGeneration",
"RealmEmbedder",
"RealmForOpenQA",
"RealmScorer",
"RealmReader",
"TFDPRReader",
"TFGPT2DoubleHeadsModel",
"TFLayoutLMForQuestionAnswering",
"TFOpenAIGPTDoubleHeadsModel",
"TFRagModel",
"TFRagSequenceForGeneration",
"TFRagTokenForGeneration",
"Wav2Vec2ForCTC",
"HubertForCTC",
"SEWForCTC",
"SEWDForCTC",
"XLMForQuestionAnswering",
"XLNetForQuestionAnswering",
"SeparableConv1D",
"VisualBertForRegionToPhraseAlignment",
"VisualBertForVisualReasoning",
"VisualBertForQuestionAnswering",
"VisualBertForMultipleChoice",
"TFWav2Vec2ForCTC",
"TFHubertForCTC",
"XCLIPVisionModel",
"XCLIPTextModel",
"AltCLIPTextModel",
"AltCLIPVisionModel",
"AltRobertaModel",
"TvltForAudioVisualClassification",
"BarkCausalModel",
"BarkCoarseModel",
"BarkFineModel",
"BarkSemanticModel",
"MusicgenModel",
"MusicgenForConditionalGeneration",
"SpeechT5ForSpeechToSpeech",
"SpeechT5ForTextToSpeech",
"SpeechT5HifiGan",
"VitMatteForImageMatting",
"SeamlessM4TTextToUnitModel",
"SeamlessM4TTextToUnitForConditionalGeneration",
"SeamlessM4TCodeHifiGan",
"SeamlessM4TForSpeechToSpeech", # no auto class for speech-to-speech
]
# DO NOT edit this list!
# (The corresponding pytorch objects should never have been in the main `__init__`, but it's too late to remove)
OBJECT_TO_SKIP_IN_MAIN_INIT_CHECK = [
"FlaxBertLayer",
"FlaxBigBirdLayer",
"FlaxRoFormerLayer",
"TFBertLayer",
"TFLxmertEncoder",
"TFLxmertXLayer",
"TFMPNetLayer",
"TFMobileBertLayer",
"TFSegformerLayer",
"TFViTMAELayer",
]
# Update this list for models that have multiple model types for the same model doc.
MODEL_TYPE_TO_DOC_MAPPING = OrderedDict(
[
("data2vec-text", "data2vec"),
("data2vec-audio", "data2vec"),
("data2vec-vision", "data2vec"),
("donut-swin", "donut"),
]
)
# This is to make sure the transformers module imported is the one in the repo.
transformers = direct_transformers_import(PATH_TO_TRANSFORMERS)
def check_missing_backends():
"""
Checks if all backends are installed (otherwise the check of this script is incomplete). Will error in the CI if
that's not the case but only throw a warning for users running this.
"""
missing_backends = []
if not is_torch_available():
missing_backends.append("PyTorch")
if not is_tf_available():
missing_backends.append("TensorFlow")
if not is_flax_available():
missing_backends.append("Flax")
if len(missing_backends) > 0:
missing = ", ".join(missing_backends)
if os.getenv("TRANSFORMERS_IS_CI", "").upper() in ENV_VARS_TRUE_VALUES:
raise Exception(
"Full repo consistency checks require all backends to be installed (with `pip install -e .[dev]` in the "
f"Transformers repo, the following are missing: {missing}."
)
else:
warnings.warn(
"Full repo consistency checks require all backends to be installed (with `pip install -e .[dev]` in the "
f"Transformers repo, the following are missing: {missing}. While it's probably fine as long as you "
"didn't make any change in one of those backends modeling files, you should probably execute the "
"command above to be on the safe side."
)
def check_model_list():
"""
Checks the model listed as subfolders of `models` match the models available in `transformers.models`.
"""
# Get the models from the directory structure of `src/transformers/models/`
models_dir = os.path.join(PATH_TO_TRANSFORMERS, "models")
_models = []
for model in os.listdir(models_dir):
if model == "deprecated":
continue
model_dir = os.path.join(models_dir, model)
if os.path.isdir(model_dir) and "__init__.py" in os.listdir(model_dir):
_models.append(model)
# Get the models in the submodule `transformers.models`
models = [model for model in dir(transformers.models) if not model.startswith("__")]
missing_models = sorted(set(_models).difference(models))
if missing_models:
raise Exception(
f"The following models should be included in {models_dir}/__init__.py: {','.join(missing_models)}."
)
# If some modeling modules should be ignored for all checks, they should be added in the nested list
# _ignore_modules of this function.
def get_model_modules() -> List[str]:
"""Get all the model modules inside the transformers library (except deprecated models)."""
_ignore_modules = [
"modeling_auto",
"modeling_encoder_decoder",
"modeling_marian",
"modeling_mmbt",
"modeling_outputs",
"modeling_retribert",
"modeling_utils",
"modeling_flax_auto",
"modeling_flax_encoder_decoder",
"modeling_flax_utils",
"modeling_speech_encoder_decoder",
"modeling_flax_speech_encoder_decoder",
"modeling_flax_vision_encoder_decoder",
"modeling_timm_backbone",
"modeling_transfo_xl_utilities",
"modeling_tf_auto",
"modeling_tf_encoder_decoder",
"modeling_tf_outputs",
"modeling_tf_pytorch_utils",
"modeling_tf_utils",
"modeling_tf_transfo_xl_utilities",
"modeling_tf_vision_encoder_decoder",
"modeling_vision_encoder_decoder",
]
modules = []
for model in dir(transformers.models):
# There are some magic dunder attributes in the dir, we ignore them
if model == "deprecated" or model.startswith("__"):
continue
model_module = getattr(transformers.models, model)
for submodule in dir(model_module):
if submodule.startswith("modeling") and submodule not in _ignore_modules:
modeling_module = getattr(model_module, submodule)
if inspect.ismodule(modeling_module):
modules.append(modeling_module)
return modules
def get_models(module: types.ModuleType, include_pretrained: bool = False) -> List[Tuple[str, type]]:
"""
Get the objects in a module that are models.
Args:
module (`types.ModuleType`):
The module from which we are extracting models.
include_pretrained (`bool`, *optional*, defaults to `False`):
Whether or not to include the `PreTrainedModel` subclass (like `BertPreTrainedModel`) or not.
Returns:
List[Tuple[str, type]]: List of models as tuples (class name, actual class).
"""
models = []
model_classes = (transformers.PreTrainedModel, transformers.TFPreTrainedModel, transformers.FlaxPreTrainedModel)
for attr_name in dir(module):
if not include_pretrained and ("Pretrained" in attr_name or "PreTrained" in attr_name):
continue
attr = getattr(module, attr_name)
if isinstance(attr, type) and issubclass(attr, model_classes) and attr.__module__ == module.__name__:
models.append((attr_name, attr))
return models
def is_building_block(model: str) -> bool:
"""
Returns `True` if a model is a building block part of a bigger model.
"""
if model.endswith("Wrapper"):
return True
if model.endswith("Encoder"):
return True
if model.endswith("Decoder"):
return True
if model.endswith("Prenet"):
return True
def is_a_private_model(model: str) -> bool:
"""Returns `True` if the model should not be in the main init."""
if model in PRIVATE_MODELS:
return True
return is_building_block(model)
def check_models_are_in_init():
"""Checks all models defined in the library are in the main init."""
models_not_in_init = []
dir_transformers = dir(transformers)
for module in get_model_modules():
models_not_in_init += [
model[0] for model in get_models(module, include_pretrained=True) if model[0] not in dir_transformers
]
# Remove private models
models_not_in_init = [model for model in models_not_in_init if not is_a_private_model(model)]
if len(models_not_in_init) > 0:
raise Exception(f"The following models should be in the main init: {','.join(models_not_in_init)}.")
# If some test_modeling files should be ignored when checking models are all tested, they should be added in the
# nested list _ignore_files of this function.
def get_model_test_files() -> List[str]:
"""
Get the model test files.
Returns:
`List[str]`: The list of test files. The returned files will NOT contain the `tests` (i.e. `PATH_TO_TESTS`
defined in this script). They will be considered as paths relative to `tests`. A caller has to use
`os.path.join(PATH_TO_TESTS, ...)` to access the files.
"""
_ignore_files = [
"test_modeling_common",
"test_modeling_encoder_decoder",
"test_modeling_flax_encoder_decoder",
"test_modeling_flax_speech_encoder_decoder",
"test_modeling_marian",
"test_modeling_tf_common",
"test_modeling_tf_encoder_decoder",
]
test_files = []
model_test_root = os.path.join(PATH_TO_TESTS, "models")
model_test_dirs = []
for x in os.listdir(model_test_root):
x = os.path.join(model_test_root, x)
if os.path.isdir(x):
model_test_dirs.append(x)
for target_dir in [PATH_TO_TESTS] + model_test_dirs:
for file_or_dir in os.listdir(target_dir):
path = os.path.join(target_dir, file_or_dir)
if os.path.isfile(path):
filename = os.path.split(path)[-1]
if "test_modeling" in filename and os.path.splitext(filename)[0] not in _ignore_files:
file = os.path.join(*path.split(os.sep)[1:])
test_files.append(file)
return test_files
# This is a bit hacky but I didn't find a way to import the test_file as a module and read inside the tester class
# for the all_model_classes variable.
def find_tested_models(test_file: str) -> List[str]:
"""
Parse the content of test_file to detect what's in `all_model_classes`. This detects the models that inherit from
the common test class.
Args:
test_file (`str`): The path to the test file to check
Returns:
`List[str]`: The list of models tested in that file.
"""
with open(os.path.join(PATH_TO_TESTS, test_file), "r", encoding="utf-8", newline="\n") as f:
content = f.read()
all_models = re.findall(r"all_model_classes\s+=\s+\(\s*\(([^\)]*)\)", content)
# Check with one less parenthesis as well
all_models += re.findall(r"all_model_classes\s+=\s+\(([^\)]*)\)", content)
if len(all_models) > 0:
model_tested = []
for entry in all_models:
for line in entry.split(","):
name = line.strip()
if len(name) > 0:
model_tested.append(name)
return model_tested
def should_be_tested(model_name: str) -> bool:
"""
Whether or not a model should be tested.
"""
if model_name in IGNORE_NON_TESTED:
return False
return not is_building_block(model_name)
def check_models_are_tested(module: types.ModuleType, test_file: str) -> List[str]:
"""Check models defined in a module are all tested in a given file.
Args:
module (`types.ModuleType`): The module in which we get the models.
test_file (`str`): The path to the file where the module is tested.
Returns:
`List[str]`: The list of error messages corresponding to models not tested.
"""
# XxxPreTrainedModel are not tested
defined_models = get_models(module)
tested_models = find_tested_models(test_file)
if tested_models is None:
if test_file.replace(os.path.sep, "/") in TEST_FILES_WITH_NO_COMMON_TESTS:
return
return [
f"{test_file} should define `all_model_classes` to apply common tests to the models it tests. "
+ "If this intentional, add the test filename to `TEST_FILES_WITH_NO_COMMON_TESTS` in the file "
+ "`utils/check_repo.py`."
]
failures = []
for model_name, _ in defined_models:
if model_name not in tested_models and should_be_tested(model_name):
failures.append(
f"{model_name} is defined in {module.__name__} but is not tested in "
+ f"{os.path.join(PATH_TO_TESTS, test_file)}. Add it to the all_model_classes in that file."
+ "If common tests should not applied to that model, add its name to `IGNORE_NON_TESTED`"
+ "in the file `utils/check_repo.py`."
)
return failures
def check_all_models_are_tested():
"""Check all models are properly tested."""
modules = get_model_modules()
test_files = get_model_test_files()
failures = []
for module in modules:
# Matches a module to its test file.
test_file = [file for file in test_files if f"test_{module.__name__.split('.')[-1]}.py" in file]
if len(test_file) == 0:
failures.append(f"{module.__name__} does not have its corresponding test file {test_file}.")
elif len(test_file) > 1:
failures.append(f"{module.__name__} has several test files: {test_file}.")
else:
test_file = test_file[0]
new_failures = check_models_are_tested(module, test_file)
if new_failures is not None:
failures += new_failures
if len(failures) > 0:
raise Exception(f"There were {len(failures)} failures:\n" + "\n".join(failures))
def get_all_auto_configured_models() -> List[str]:
"""Return the list of all models in at least one auto class."""
result = set() # To avoid duplicates we concatenate all model classes in a set.
if is_torch_available():
for attr_name in dir(transformers.models.auto.modeling_auto):
if attr_name.startswith("MODEL_") and attr_name.endswith("MAPPING_NAMES"):
result = result | set(get_values(getattr(transformers.models.auto.modeling_auto, attr_name)))
if is_tf_available():
for attr_name in dir(transformers.models.auto.modeling_tf_auto):
if attr_name.startswith("TF_MODEL_") and attr_name.endswith("MAPPING_NAMES"):
result = result | set(get_values(getattr(transformers.models.auto.modeling_tf_auto, attr_name)))
if is_flax_available():
for attr_name in dir(transformers.models.auto.modeling_flax_auto):
if attr_name.startswith("FLAX_MODEL_") and attr_name.endswith("MAPPING_NAMES"):
result = result | set(get_values(getattr(transformers.models.auto.modeling_flax_auto, attr_name)))
return list(result)
def ignore_unautoclassed(model_name: str) -> bool:
"""Rules to determine if a model should be in an auto class."""
# Special white list
if model_name in IGNORE_NON_AUTO_CONFIGURED:
return True
# Encoder and Decoder should be ignored
if "Encoder" in model_name or "Decoder" in model_name:
return True
return False
def check_models_are_auto_configured(module: types.ModuleType, all_auto_models: List[str]) -> List[str]:
"""
Check models defined in module are each in an auto class.
Args:
module (`types.ModuleType`):
The module in which we get the models.
all_auto_models (`List[str]`):
The list of all models in an auto class (as obtained with `get_all_auto_configured_models()`).
Returns:
`List[str]`: The list of error messages corresponding to models not tested.
"""
defined_models = get_models(module)
failures = []
for model_name, _ in defined_models:
if model_name not in all_auto_models and not ignore_unautoclassed(model_name):
failures.append(
f"{model_name} is defined in {module.__name__} but is not present in any of the auto mapping. "
"If that is intended behavior, add its name to `IGNORE_NON_AUTO_CONFIGURED` in the file "
"`utils/check_repo.py`."
)
return failures
def check_all_models_are_auto_configured():
"""Check all models are each in an auto class."""
# This is where we need to check we have all backends or the check is incomplete.
check_missing_backends()
modules = get_model_modules()
all_auto_models = get_all_auto_configured_models()
failures = []
for module in modules:
new_failures = check_models_are_auto_configured(module, all_auto_models)
if new_failures is not None:
failures += new_failures
if len(failures) > 0:
raise Exception(f"There were {len(failures)} failures:\n" + "\n".join(failures))
def check_all_auto_object_names_being_defined():
"""Check all names defined in auto (name) mappings exist in the library."""
# This is where we need to check we have all backends or the check is incomplete.
check_missing_backends()
failures = []
mappings_to_check = {
"TOKENIZER_MAPPING_NAMES": TOKENIZER_MAPPING_NAMES,
"IMAGE_PROCESSOR_MAPPING_NAMES": IMAGE_PROCESSOR_MAPPING_NAMES,
"FEATURE_EXTRACTOR_MAPPING_NAMES": FEATURE_EXTRACTOR_MAPPING_NAMES,
"PROCESSOR_MAPPING_NAMES": PROCESSOR_MAPPING_NAMES,
}
# Each auto modeling files contains multiple mappings. Let's get them in a dynamic way.
for module_name in ["modeling_auto", "modeling_tf_auto", "modeling_flax_auto"]:
module = getattr(transformers.models.auto, module_name, None)
if module is None:
continue
# all mappings in a single auto modeling file
mapping_names = [x for x in dir(module) if x.endswith("_MAPPING_NAMES")]
mappings_to_check.update({name: getattr(module, name) for name in mapping_names})
for name, mapping in mappings_to_check.items():
for _, class_names in mapping.items():
if not isinstance(class_names, tuple):
class_names = (class_names,)
for class_name in class_names:
if class_name is None:
continue
# dummy object is accepted
if not hasattr(transformers, class_name):
# If the class name is in a model name mapping, let's not check if there is a definition in any modeling
# module, if it's a private model defined in this file.
if name.endswith("MODEL_MAPPING_NAMES") and is_a_private_model(class_name):
continue
failures.append(
f"`{class_name}` appears in the mapping `{name}` but it is not defined in the library."
)
if len(failures) > 0:
raise Exception(f"There were {len(failures)} failures:\n" + "\n".join(failures))
def check_all_auto_mapping_names_in_config_mapping_names():
"""Check all keys defined in auto mappings (mappings of names) appear in `CONFIG_MAPPING_NAMES`."""
# This is where we need to check we have all backends or the check is incomplete.
check_missing_backends()
failures = []
# `TOKENIZER_PROCESSOR_MAPPING_NAMES` and `AutoTokenizer` is special, and don't need to follow the rule.
mappings_to_check = {
"IMAGE_PROCESSOR_MAPPING_NAMES": IMAGE_PROCESSOR_MAPPING_NAMES,
"FEATURE_EXTRACTOR_MAPPING_NAMES": FEATURE_EXTRACTOR_MAPPING_NAMES,
"PROCESSOR_MAPPING_NAMES": PROCESSOR_MAPPING_NAMES,
}
# Each auto modeling files contains multiple mappings. Let's get them in a dynamic way.
for module_name in ["modeling_auto", "modeling_tf_auto", "modeling_flax_auto"]:
module = getattr(transformers.models.auto, module_name, None)
if module is None:
continue
# all mappings in a single auto modeling file
mapping_names = [x for x in dir(module) if x.endswith("_MAPPING_NAMES")]
mappings_to_check.update({name: getattr(module, name) for name in mapping_names})
for name, mapping in mappings_to_check.items():
for model_type in mapping:
if model_type not in CONFIG_MAPPING_NAMES:
failures.append(
f"`{model_type}` appears in the mapping `{name}` but it is not defined in the keys of "
"`CONFIG_MAPPING_NAMES`."
)
if len(failures) > 0:
raise Exception(f"There were {len(failures)} failures:\n" + "\n".join(failures))
def check_all_auto_mappings_importable():
"""Check all auto mappings can be imported."""
# This is where we need to check we have all backends or the check is incomplete.
check_missing_backends()
failures = []
mappings_to_check = {}
# Each auto modeling files contains multiple mappings. Let's get them in a dynamic way.
for module_name in ["modeling_auto", "modeling_tf_auto", "modeling_flax_auto"]:
module = getattr(transformers.models.auto, module_name, None)
if module is None:
continue
# all mappings in a single auto modeling file
mapping_names = [x for x in dir(module) if x.endswith("_MAPPING_NAMES")]
mappings_to_check.update({name: getattr(module, name) for name in mapping_names})
for name in mappings_to_check:
name = name.replace("_MAPPING_NAMES", "_MAPPING")
if not hasattr(transformers, name):
failures.append(f"`{name}`")
if len(failures) > 0:
raise Exception(f"There were {len(failures)} failures:\n" + "\n".join(failures))
def check_objects_being_equally_in_main_init():
"""
Check if a (TensorFlow or Flax) object is in the main __init__ iif its counterpart in PyTorch is.
"""
attrs = dir(transformers)
failures = []
for attr in attrs:
obj = getattr(transformers, attr)
if not hasattr(obj, "__module__") or "models.deprecated" in obj.__module__:
continue
module_path = obj.__module__
module_name = module_path.split(".")[-1]
module_dir = ".".join(module_path.split(".")[:-1])
if (
module_name.startswith("modeling_")
and not module_name.startswith("modeling_tf_")
and not module_name.startswith("modeling_flax_")
):
parent_module = sys.modules[module_dir]
frameworks = []
if is_tf_available():
frameworks.append("TF")
if is_flax_available():
frameworks.append("Flax")
for framework in frameworks:
other_module_path = module_path.replace("modeling_", f"modeling_{framework.lower()}_")
if os.path.isfile("src/" + other_module_path.replace(".", "/") + ".py"):
other_module_name = module_name.replace("modeling_", f"modeling_{framework.lower()}_")
other_module = getattr(parent_module, other_module_name)
if hasattr(other_module, f"{framework}{attr}"):
if not hasattr(transformers, f"{framework}{attr}"):
if f"{framework}{attr}" not in OBJECT_TO_SKIP_IN_MAIN_INIT_CHECK:
failures.append(f"{framework}{attr}")
if hasattr(other_module, f"{framework}_{attr}"):
if not hasattr(transformers, f"{framework}_{attr}"):
if f"{framework}_{attr}" not in OBJECT_TO_SKIP_IN_MAIN_INIT_CHECK:
failures.append(f"{framework}_{attr}")
if len(failures) > 0:
raise Exception(f"There were {len(failures)} failures:\n" + "\n".join(failures))
_re_decorator = re.compile(r"^\s*@(\S+)\s+$")
def check_decorator_order(filename: str) -> List[int]:
"""
Check that in a given test file, the slow decorator is always last.
Args:
filename (`str`): The path to a test file to check.
Returns:
`List[int]`: The list of failures as a list of indices where there are problems.
"""
with open(filename, "r", encoding="utf-8", newline="\n") as f:
lines = f.readlines()
decorator_before = None
errors = []
for i, line in enumerate(lines):
search = _re_decorator.search(line)
if search is not None:
decorator_name = search.groups()[0]
if decorator_before is not None and decorator_name.startswith("parameterized"):
errors.append(i)
decorator_before = decorator_name
elif decorator_before is not None:
decorator_before = None
return errors
def check_all_decorator_order():
"""Check that in all test files, the slow decorator is always last."""
errors = []
for fname in os.listdir(PATH_TO_TESTS):
if fname.endswith(".py"):
filename = os.path.join(PATH_TO_TESTS, fname)
new_errors = check_decorator_order(filename)
errors += [f"- {filename}, line {i}" for i in new_errors]
if len(errors) > 0:
msg = "\n".join(errors)
raise ValueError(
"The parameterized decorator (and its variants) should always be first, but this is not the case in the"
f" following files:\n{msg}"
)
def find_all_documented_objects() -> List[str]:
"""
Parse the content of all doc files to detect which classes and functions it documents.
Returns:
`List[str]`: The list of all object names being documented.
"""
documented_obj = []
for doc_file in Path(PATH_TO_DOC).glob("**/*.rst"):
with open(doc_file, "r", encoding="utf-8", newline="\n") as f:
content = f.read()
raw_doc_objs = re.findall(r"(?:autoclass|autofunction):: transformers.(\S+)\s+", content)
documented_obj += [obj.split(".")[-1] for obj in raw_doc_objs]
for doc_file in Path(PATH_TO_DOC).glob("**/*.md"):
with open(doc_file, "r", encoding="utf-8", newline="\n") as f:
content = f.read()
raw_doc_objs = re.findall(r"\[\[autodoc\]\]\s+(\S+)\s+", content)
documented_obj += [obj.split(".")[-1] for obj in raw_doc_objs]
return documented_obj
# One good reason for not being documented is to be deprecated. Put in this list deprecated objects.
DEPRECATED_OBJECTS = [
"AutoModelWithLMHead",
"BartPretrainedModel",
"DataCollator",
"DataCollatorForSOP",
"GlueDataset",
"GlueDataTrainingArguments",
"LineByLineTextDataset",
"LineByLineWithRefDataset",
"LineByLineWithSOPTextDataset",
"PretrainedBartModel",
"PretrainedFSMTModel",
"SingleSentenceClassificationProcessor",
"SquadDataTrainingArguments",
"SquadDataset",
"SquadExample",
"SquadFeatures",
"SquadV1Processor",
"SquadV2Processor",
"TFAutoModelWithLMHead",
"TFBartPretrainedModel",
"TextDataset",
"TextDatasetForNextSentencePrediction",
"Wav2Vec2ForMaskedLM",
"Wav2Vec2Tokenizer",
"glue_compute_metrics",
"glue_convert_examples_to_features",
"glue_output_modes",
"glue_processors",
"glue_tasks_num_labels",
"squad_convert_examples_to_features",
"xnli_compute_metrics",
"xnli_output_modes",
"xnli_processors",
"xnli_tasks_num_labels",
"TFTrainer",
"TFTrainingArguments",
]
# Exceptionally, some objects should not be documented after all rules passed.
# ONLY PUT SOMETHING IN THIS LIST AS A LAST RESORT!
UNDOCUMENTED_OBJECTS = [
"AddedToken", # This is a tokenizers class.
"BasicTokenizer", # Internal, should never have been in the main init.
"CharacterTokenizer", # Internal, should never have been in the main init.
"DPRPretrainedReader", # Like an Encoder.
"DummyObject", # Just picked by mistake sometimes.
"MecabTokenizer", # Internal, should never have been in the main init.
"ModelCard", # Internal type.
"SqueezeBertModule", # Internal building block (should have been called SqueezeBertLayer)
"TFDPRPretrainedReader", # Like an Encoder.
"TransfoXLCorpus", # Internal type.
"WordpieceTokenizer", # Internal, should never have been in the main init.
"absl", # External module
"add_end_docstrings", # Internal, should never have been in the main init.
"add_start_docstrings", # Internal, should never have been in the main init.
"convert_tf_weight_name_to_pt_weight_name", # Internal used to convert model weights
"logger", # Internal logger
"logging", # External module
"requires_backends", # Internal function
"AltRobertaModel", # Internal module
]
# This list should be empty. Objects in it should get their own doc page.
SHOULD_HAVE_THEIR_OWN_PAGE = [
# Benchmarks
"PyTorchBenchmark",
"PyTorchBenchmarkArguments",
"TensorFlowBenchmark",
"TensorFlowBenchmarkArguments",
"AutoBackbone",
"BitBackbone",
"ConvNextBackbone",
"ConvNextV2Backbone",
"DinatBackbone",
"Dinov2Backbone",
"FocalNetBackbone",
"MaskFormerSwinBackbone",
"MaskFormerSwinConfig",
"MaskFormerSwinModel",
"NatBackbone",
"ResNetBackbone",
"SwinBackbone",
"TimmBackbone",
"TimmBackboneConfig",
"VitDetBackbone",
]
def ignore_undocumented(name: str) -> bool:
"""Rules to determine if `name` should be undocumented (returns `True` if it should not be documented)."""
# NOT DOCUMENTED ON PURPOSE.
# Constants uppercase are not documented.
if name.isupper():
return True
# PreTrainedModels / Encoders / Decoders / Layers / Embeddings / Attention are not documented.
if (
name.endswith("PreTrainedModel")
or name.endswith("Decoder")
or name.endswith("Encoder")
or name.endswith("Layer")
or name.endswith("Embeddings")
or name.endswith("Attention")
):
return True
# Submodules are not documented.
if os.path.isdir(os.path.join(PATH_TO_TRANSFORMERS, name)) or os.path.isfile(
os.path.join(PATH_TO_TRANSFORMERS, f"{name}.py")
):
return True
# All load functions are not documented.
if name.startswith("load_tf") or name.startswith("load_pytorch"):
return True
# is_xxx_available functions are not documented.
if name.startswith("is_") and name.endswith("_available"):
return True
# Deprecated objects are not documented.
if name in DEPRECATED_OBJECTS or name in UNDOCUMENTED_OBJECTS:
return True
# MMBT model does not really work.
if name.startswith("MMBT"):
return True
if name in SHOULD_HAVE_THEIR_OWN_PAGE:
return True
return False
def check_all_objects_are_documented():
"""Check all models are properly documented."""
documented_objs = find_all_documented_objects()
modules = transformers._modules
objects = [c for c in dir(transformers) if c not in modules and not c.startswith("_")]
undocumented_objs = [c for c in objects if c not in documented_objs and not ignore_undocumented(c)]
if len(undocumented_objs) > 0:
raise Exception(
"The following objects are in the public init so should be documented:\n - "
+ "\n - ".join(undocumented_objs)
)
check_docstrings_are_in_md()
check_model_type_doc_match()
def check_model_type_doc_match():
"""Check all doc pages have a corresponding model type."""
model_doc_folder = Path(PATH_TO_DOC) / "model_doc"
model_docs = [m.stem for m in model_doc_folder.glob("*.md")]
model_types = list(transformers.models.auto.configuration_auto.MODEL_NAMES_MAPPING.keys())
model_types = [MODEL_TYPE_TO_DOC_MAPPING[m] if m in MODEL_TYPE_TO_DOC_MAPPING else m for m in model_types]
errors = []
for m in model_docs:
if m not in model_types and m != "auto":
close_matches = get_close_matches(m, model_types)
error_message = f"{m} is not a proper model identifier."
if len(close_matches) > 0:
close_matches = "/".join(close_matches)
error_message += f" Did you mean {close_matches}?"
errors.append(error_message)
if len(errors) > 0:
raise ValueError(
"Some model doc pages do not match any existing model type:\n"
+ "\n".join(errors)
+ "\nYou can add any missing model type to the `MODEL_NAMES_MAPPING` constant in "
"models/auto/configuration_auto.py."
)
# Re pattern to catch :obj:`xx`, :class:`xx`, :func:`xx` or :meth:`xx`.
_re_rst_special_words = re.compile(r":(?:obj|func|class|meth):`([^`]+)`")
# Re pattern to catch things between double backquotes.
_re_double_backquotes = re.compile(r"(^|[^`])``([^`]+)``([^`]|$)")
# Re pattern to catch example introduction.
_re_rst_example = re.compile(r"^\s*Example.*::\s*$", flags=re.MULTILINE)
def is_rst_docstring(docstring: str) -> True:
"""
Returns `True` if `docstring` is written in rst.
"""
if _re_rst_special_words.search(docstring) is not None:
return True
if _re_double_backquotes.search(docstring) is not None:
return True
if _re_rst_example.search(docstring) is not None:
return True
return False
def check_docstrings_are_in_md():
"""Check all docstrings are written in md and nor rst."""
files_with_rst = []
for file in Path(PATH_TO_TRANSFORMERS).glob("**/*.py"):
with open(file, encoding="utf-8") as f:
code = f.read()
docstrings = code.split('"""')
for idx, docstring in enumerate(docstrings):
if idx % 2 == 0 or not is_rst_docstring(docstring):
continue
files_with_rst.append(file)
break
if len(files_with_rst) > 0:
raise ValueError(
"The following files have docstrings written in rst:\n"
+ "\n".join([f"- {f}" for f in files_with_rst])
+ "\nTo fix this run `doc-builder convert path_to_py_file` after installing `doc-builder`\n"
"(`pip install git+https://github.com/huggingface/doc-builder`)"
)
def check_deprecated_constant_is_up_to_date():
"""
Check if the constant `DEPRECATED_MODELS` in `models/auto/configuration_auto.py` is up to date.
"""
deprecated_folder = os.path.join(PATH_TO_TRANSFORMERS, "models", "deprecated")
deprecated_models = [m for m in os.listdir(deprecated_folder) if not m.startswith("_")]
constant_to_check = transformers.models.auto.configuration_auto.DEPRECATED_MODELS
message = []
missing_models = sorted(set(deprecated_models) - set(constant_to_check))
if len(missing_models) != 0:
missing_models = ", ".join(missing_models)
message.append(
"The following models are in the deprecated folder, make sure to add them to `DEPRECATED_MODELS` in "
f"`models/auto/configuration_auto.py`: {missing_models}."
)
extra_models = sorted(set(constant_to_check) - set(deprecated_models))
if len(extra_models) != 0:
extra_models = ", ".join(extra_models)
message.append(
"The following models are in the `DEPRECATED_MODELS` constant but not in the deprecated folder. Either "
f"remove them from the constant or move to the deprecated folder: {extra_models}."
)
if len(message) > 0:
raise Exception("\n".join(message))
def check_repo_quality():
"""Check all models are properly tested and documented."""
print("Checking all models are included.")
check_model_list()
print("Checking all models are public.")
check_models_are_in_init()
print("Checking all models are properly tested.")
check_all_decorator_order()
check_all_models_are_tested()
print("Checking all objects are properly documented.")
check_all_objects_are_documented()
print("Checking all models are in at least one auto class.")
check_all_models_are_auto_configured()
print("Checking all names in auto name mappings are defined.")
check_all_auto_object_names_being_defined()
print("Checking all keys in auto name mappings are defined in `CONFIG_MAPPING_NAMES`.")
check_all_auto_mapping_names_in_config_mapping_names()
print("Checking all auto mappings could be imported.")
check_all_auto_mappings_importable()
print("Checking all objects are equally (across frameworks) in the main __init__.")
check_objects_being_equally_in_main_init()
print("Checking the DEPRECATED_MODELS constant is up to date.")
check_deprecated_constant_is_up_to_date()
if __name__ == "__main__":
check_repo_quality()