import logging from typing import Tuple import spacy from presidio_analyzer import RecognizerRegistry from presidio_analyzer.nlp_engine import ( NlpEngine, NlpEngineProvider, ) logger = logging.getLogger("presidio-streamlit") def create_nlp_engine_with_spacy( model_path: str, ) -> Tuple[NlpEngine, RecognizerRegistry]: """ Instantiate an NlpEngine with a spaCy model :param model_path: path to model / model name. """ nlp_configuration = { "nlp_engine_name": "spacy", "models": [{"lang_code": "en", "model_name": model_path}], "ner_model_configuration": { "model_to_presidio_entity_mapping": { "PER": "PERSON", "PERSON": "PERSON", "NORP": "NRP", "FAC": "FACILITY", "LOC": "LOCATION", "GPE": "LOCATION", "LOCATION": "LOCATION", "ORG": "ORGANIZATION", "ORGANIZATION": "ORGANIZATION", "DATE": "DATE_TIME", "TIME": "DATE_TIME", }, "low_confidence_score_multiplier": 0.4, "low_score_entity_names": ["ORG", "ORGANIZATION"], }, } nlp_engine = NlpEngineProvider(nlp_configuration=nlp_configuration).create_engine() registry = RecognizerRegistry() registry.load_predefined_recognizers(nlp_engine=nlp_engine) return nlp_engine, registry nlp_engine = NlpEngineProvider(nlp_configuration=nlp_configuration).create_engine() registry = RecognizerRegistry() registry.load_predefined_recognizers(nlp_engine=nlp_engine) return nlp_engine, registry def create_nlp_engine_with_transformers( model_path: str, ) -> Tuple[NlpEngine, RecognizerRegistry]: """ Instantiate an NlpEngine with a TransformersRecognizer and a small spaCy model. The TransformersRecognizer would return results from Transformers models, the spaCy model would return NlpArtifacts such as POS and lemmas. :param model_path: HuggingFace model path. """ print(f"Loading Transformers model: {model_path} of type {type(model_path)}") nlp_configuration = { "nlp_engine_name": "transformers", "models": [ { "lang_code": "en", "model_name": {"spacy": "en_core_web_sm", "transformers": model_path}, } ], "ner_model_configuration": { "model_to_presidio_entity_mapping": { "PER": "PERSON", "PERSON": "PERSON", "LOC": "LOCATION", "LOCATION": "LOCATION", "GPE": "LOCATION", "ORG": "ORGANIZATION", "ORGANIZATION": "ORGANIZATION", "NORP": "NRP", "AGE": "AGE", "ID": "ID", "EMAIL": "EMAIL", "PATIENT": "PERSON", "STAFF": "PERSON", "HOSP": "ORGANIZATION", "PATORG": "ORGANIZATION", "DATE": "DATE_TIME", "TIME": "DATE_TIME", "PHONE": "PHONE_NUMBER", "HCW": "PERSON", "HOSPITAL": "ORGANIZATION", "FACILITY": "LOCATION", }, "low_confidence_score_multiplier": 0.4, "low_score_entity_names": ["ID"], "labels_to_ignore": [ "CARDINAL", "EVENT", "LANGUAGE", "LAW", "MONEY", "ORDINAL", "PERCENT", "PRODUCT", "QUANTITY", "WORK_OF_ART", ], }, } nlp_engine = NlpEngineProvider(nlp_configuration=nlp_configuration).create_engine() registry = RecognizerRegistry() registry.load_predefined_recognizers(nlp_engine=nlp_engine) return nlp_engine, registry